diff --git a/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__init__.py b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..74e0deeab3f5904260ac2d36d64fbdec7e0ee0bf --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__init__.py @@ -0,0 +1,432 @@ +import math +import sys +import types +from dataclasses import dataclass +from datetime import tzinfo +from typing import TYPE_CHECKING, Any, Callable, Iterator, Optional, SupportsFloat, SupportsIndex, TypeVar, Union + +if sys.version_info < (3, 8): + from typing_extensions import Protocol, runtime_checkable +else: + from typing import Protocol, runtime_checkable + +if sys.version_info < (3, 9): + from typing_extensions import Annotated, Literal +else: + from typing import Annotated, Literal + +if sys.version_info < (3, 10): + EllipsisType = type(Ellipsis) + KW_ONLY = {} + SLOTS = {} +else: + from types import EllipsisType + + KW_ONLY = {"kw_only": True} + SLOTS = {"slots": True} + + +__all__ = ( + 'BaseMetadata', + 'GroupedMetadata', + 'Gt', + 'Ge', + 'Lt', + 'Le', + 'Interval', + 'MultipleOf', + 'MinLen', + 'MaxLen', + 'Len', + 'Timezone', + 'Predicate', + 'LowerCase', + 'UpperCase', + 'IsDigits', + 'IsFinite', + 'IsNotFinite', + 'IsNan', + 'IsNotNan', + 'IsInfinite', + 'IsNotInfinite', + 'doc', + 'DocInfo', + '__version__', +) + +__version__ = '0.7.0' + + +T = TypeVar('T') + + +# arguments that start with __ are considered +# positional only +# see https://peps.python.org/pep-0484/#positional-only-arguments + + +class SupportsGt(Protocol): + def __gt__(self: T, __other: T) -> bool: + ... + + +class SupportsGe(Protocol): + def __ge__(self: T, __other: T) -> bool: + ... + + +class SupportsLt(Protocol): + def __lt__(self: T, __other: T) -> bool: + ... + + +class SupportsLe(Protocol): + def __le__(self: T, __other: T) -> bool: + ... + + +class SupportsMod(Protocol): + def __mod__(self: T, __other: T) -> T: + ... + + +class SupportsDiv(Protocol): + def __div__(self: T, __other: T) -> T: + ... + + +class BaseMetadata: + """Base class for all metadata. + + This exists mainly so that implementers + can do `isinstance(..., BaseMetadata)` while traversing field annotations. + """ + + __slots__ = () + + +@dataclass(frozen=True, **SLOTS) +class Gt(BaseMetadata): + """Gt(gt=x) implies that the value must be greater than x. + + It can be used with any type that supports the ``>`` operator, + including numbers, dates and times, strings, sets, and so on. + """ + + gt: SupportsGt + + +@dataclass(frozen=True, **SLOTS) +class Ge(BaseMetadata): + """Ge(ge=x) implies that the value must be greater than or equal to x. + + It can be used with any type that supports the ``>=`` operator, + including numbers, dates and times, strings, sets, and so on. + """ + + ge: SupportsGe + + +@dataclass(frozen=True, **SLOTS) +class Lt(BaseMetadata): + """Lt(lt=x) implies that the value must be less than x. + + It can be used with any type that supports the ``<`` operator, + including numbers, dates and times, strings, sets, and so on. + """ + + lt: SupportsLt + + +@dataclass(frozen=True, **SLOTS) +class Le(BaseMetadata): + """Le(le=x) implies that the value must be less than or equal to x. + + It can be used with any type that supports the ``<=`` operator, + including numbers, dates and times, strings, sets, and so on. + """ + + le: SupportsLe + + +@runtime_checkable +class GroupedMetadata(Protocol): + """A grouping of multiple objects, like typing.Unpack. + + `GroupedMetadata` on its own is not metadata and has no meaning. + All of the constraints and metadata should be fully expressable + in terms of the `BaseMetadata`'s returned by `GroupedMetadata.__iter__()`. + + Concrete implementations should override `GroupedMetadata.__iter__()` + to add their own metadata. + For example: + + >>> @dataclass + >>> class Field(GroupedMetadata): + >>> gt: float | None = None + >>> description: str | None = None + ... + >>> def __iter__(self) -> Iterable[object]: + >>> if self.gt is not None: + >>> yield Gt(self.gt) + >>> if self.description is not None: + >>> yield Description(self.gt) + + Also see the implementation of `Interval` below for an example. + + Parsers should recognize this and unpack it so that it can be used + both with and without unpacking: + + - `Annotated[int, Field(...)]` (parser must unpack Field) + - `Annotated[int, *Field(...)]` (PEP-646) + """ # noqa: trailing-whitespace + + @property + def __is_annotated_types_grouped_metadata__(self) -> Literal[True]: + return True + + def __iter__(self) -> Iterator[object]: + ... + + if not TYPE_CHECKING: + __slots__ = () # allow subclasses to use slots + + def __init_subclass__(cls, *args: Any, **kwargs: Any) -> None: + # Basic ABC like functionality without the complexity of an ABC + super().__init_subclass__(*args, **kwargs) + if cls.__iter__ is GroupedMetadata.__iter__: + raise TypeError("Can't subclass GroupedMetadata without implementing __iter__") + + def __iter__(self) -> Iterator[object]: # noqa: F811 + raise NotImplementedError # more helpful than "None has no attribute..." type errors + + +@dataclass(frozen=True, **KW_ONLY, **SLOTS) +class Interval(GroupedMetadata): + """Interval can express inclusive or exclusive bounds with a single object. + + It accepts keyword arguments ``gt``, ``ge``, ``lt``, and/or ``le``, which + are interpreted the same way as the single-bound constraints. + """ + + gt: Union[SupportsGt, None] = None + ge: Union[SupportsGe, None] = None + lt: Union[SupportsLt, None] = None + le: Union[SupportsLe, None] = None + + def __iter__(self) -> Iterator[BaseMetadata]: + """Unpack an Interval into zero or more single-bounds.""" + if self.gt is not None: + yield Gt(self.gt) + if self.ge is not None: + yield Ge(self.ge) + if self.lt is not None: + yield Lt(self.lt) + if self.le is not None: + yield Le(self.le) + + +@dataclass(frozen=True, **SLOTS) +class MultipleOf(BaseMetadata): + """MultipleOf(multiple_of=x) might be interpreted in two ways: + + 1. Python semantics, implying ``value % multiple_of == 0``, or + 2. JSONschema semantics, where ``int(value / multiple_of) == value / multiple_of`` + + We encourage users to be aware of these two common interpretations, + and libraries to carefully document which they implement. + """ + + multiple_of: Union[SupportsDiv, SupportsMod] + + +@dataclass(frozen=True, **SLOTS) +class MinLen(BaseMetadata): + """ + MinLen() implies minimum inclusive length, + e.g. ``len(value) >= min_length``. + """ + + min_length: Annotated[int, Ge(0)] + + +@dataclass(frozen=True, **SLOTS) +class MaxLen(BaseMetadata): + """ + MaxLen() implies maximum inclusive length, + e.g. ``len(value) <= max_length``. + """ + + max_length: Annotated[int, Ge(0)] + + +@dataclass(frozen=True, **SLOTS) +class Len(GroupedMetadata): + """ + Len() implies that ``min_length <= len(value) <= max_length``. + + Upper bound may be omitted or ``None`` to indicate no upper length bound. + """ + + min_length: Annotated[int, Ge(0)] = 0 + max_length: Optional[Annotated[int, Ge(0)]] = None + + def __iter__(self) -> Iterator[BaseMetadata]: + """Unpack a Len into zone or more single-bounds.""" + if self.min_length > 0: + yield MinLen(self.min_length) + if self.max_length is not None: + yield MaxLen(self.max_length) + + +@dataclass(frozen=True, **SLOTS) +class Timezone(BaseMetadata): + """Timezone(tz=...) requires a datetime to be aware (or ``tz=None``, naive). + + ``Annotated[datetime, Timezone(None)]`` must be a naive datetime. + ``Timezone[...]`` (the ellipsis literal) expresses that the datetime must be + tz-aware but any timezone is allowed. + + You may also pass a specific timezone string or tzinfo object such as + ``Timezone(timezone.utc)`` or ``Timezone("Africa/Abidjan")`` to express that + you only allow a specific timezone, though we note that this is often + a symptom of poor design. + """ + + tz: Union[str, tzinfo, EllipsisType, None] + + +@dataclass(frozen=True, **SLOTS) +class Unit(BaseMetadata): + """Indicates that the value is a physical quantity with the specified unit. + + It is intended for usage with numeric types, where the value represents the + magnitude of the quantity. For example, ``distance: Annotated[float, Unit('m')]`` + or ``speed: Annotated[float, Unit('m/s')]``. + + Interpretation of the unit string is left to the discretion of the consumer. + It is suggested to follow conventions established by python libraries that work + with physical quantities, such as + + - ``pint`` : + - ``astropy.units``: + + For indicating a quantity with a certain dimensionality but without a specific unit + it is recommended to use square brackets, e.g. `Annotated[float, Unit('[time]')]`. + Note, however, ``annotated_types`` itself makes no use of the unit string. + """ + + unit: str + + +@dataclass(frozen=True, **SLOTS) +class Predicate(BaseMetadata): + """``Predicate(func: Callable)`` implies `func(value)` is truthy for valid values. + + Users should prefer statically inspectable metadata, but if you need the full + power and flexibility of arbitrary runtime predicates... here it is. + + We provide a few predefined predicates for common string constraints: + ``IsLower = Predicate(str.islower)``, ``IsUpper = Predicate(str.isupper)``, and + ``IsDigits = Predicate(str.isdigit)``. Users are encouraged to use methods which + can be given special handling, and avoid indirection like ``lambda s: s.lower()``. + + Some libraries might have special logic to handle certain predicates, e.g. by + checking for `str.isdigit` and using its presence to both call custom logic to + enforce digit-only strings, and customise some generated external schema. + + We do not specify what behaviour should be expected for predicates that raise + an exception. For example `Annotated[int, Predicate(str.isdigit)]` might silently + skip invalid constraints, or statically raise an error; or it might try calling it + and then propagate or discard the resulting exception. + """ + + func: Callable[[Any], bool] + + def __repr__(self) -> str: + if getattr(self.func, "__name__", "") == "": + return f"{self.__class__.__name__}({self.func!r})" + if isinstance(self.func, (types.MethodType, types.BuiltinMethodType)) and ( + namespace := getattr(self.func.__self__, "__name__", None) + ): + return f"{self.__class__.__name__}({namespace}.{self.func.__name__})" + if isinstance(self.func, type(str.isascii)): # method descriptor + return f"{self.__class__.__name__}({self.func.__qualname__})" + return f"{self.__class__.__name__}({self.func.__name__})" + + +@dataclass +class Not: + func: Callable[[Any], bool] + + def __call__(self, __v: Any) -> bool: + return not self.func(__v) + + +_StrType = TypeVar("_StrType", bound=str) + +LowerCase = Annotated[_StrType, Predicate(str.islower)] +""" +Return True if the string is a lowercase string, False otherwise. + +A string is lowercase if all cased characters in the string are lowercase and there is at least one cased character in the string. +""" # noqa: E501 +UpperCase = Annotated[_StrType, Predicate(str.isupper)] +""" +Return True if the string is an uppercase string, False otherwise. + +A string is uppercase if all cased characters in the string are uppercase and there is at least one cased character in the string. +""" # noqa: E501 +IsDigit = Annotated[_StrType, Predicate(str.isdigit)] +IsDigits = IsDigit # type: ignore # plural for backwards compatibility, see #63 +""" +Return True if the string is a digit string, False otherwise. + +A string is a digit string if all characters in the string are digits and there is at least one character in the string. +""" # noqa: E501 +IsAscii = Annotated[_StrType, Predicate(str.isascii)] +""" +Return True if all characters in the string are ASCII, False otherwise. + +ASCII characters have code points in the range U+0000-U+007F. Empty string is ASCII too. +""" + +_NumericType = TypeVar('_NumericType', bound=Union[SupportsFloat, SupportsIndex]) +IsFinite = Annotated[_NumericType, Predicate(math.isfinite)] +"""Return True if x is neither an infinity nor a NaN, and False otherwise.""" +IsNotFinite = Annotated[_NumericType, Predicate(Not(math.isfinite))] +"""Return True if x is one of infinity or NaN, and False otherwise""" +IsNan = Annotated[_NumericType, Predicate(math.isnan)] +"""Return True if x is a NaN (not a number), and False otherwise.""" +IsNotNan = Annotated[_NumericType, Predicate(Not(math.isnan))] +"""Return True if x is anything but NaN (not a number), and False otherwise.""" +IsInfinite = Annotated[_NumericType, Predicate(math.isinf)] +"""Return True if x is a positive or negative infinity, and False otherwise.""" +IsNotInfinite = Annotated[_NumericType, Predicate(Not(math.isinf))] +"""Return True if x is neither a positive or negative infinity, and False otherwise.""" + +try: + from typing_extensions import DocInfo, doc # type: ignore [attr-defined] +except ImportError: + + @dataclass(frozen=True, **SLOTS) + class DocInfo: # type: ignore [no-redef] + """ " + The return value of doc(), mainly to be used by tools that want to extract the + Annotated documentation at runtime. + """ + + documentation: str + """The documentation string passed to doc().""" + + def doc( + documentation: str, + ) -> DocInfo: + """ + Add documentation to a type annotation inside of Annotated. + + For example: + + >>> def hi(name: Annotated[int, doc("The name of the user")]) -> None: ... + """ + return DocInfo(documentation) diff --git a/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__pycache__/__init__.cpython-310.pyc b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..16792b847a7c9cfb7537d0ee53f4e7e00cefab06 Binary files /dev/null and b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__pycache__/__init__.cpython-310.pyc differ diff --git a/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__pycache__/test_cases.cpython-310.pyc b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__pycache__/test_cases.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..ed756df2c4d5b13ada979b2f9f4c9ec55a183ae5 Binary files /dev/null and b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/__pycache__/test_cases.cpython-310.pyc differ diff --git a/evalkit_internvl/lib/python3.10/site-packages/annotated_types/py.typed b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/py.typed new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/evalkit_internvl/lib/python3.10/site-packages/annotated_types/test_cases.py b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/test_cases.py new file mode 100644 index 0000000000000000000000000000000000000000..d9164d6883d2dd47cb766b483592ca3730f6f09d --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/annotated_types/test_cases.py @@ -0,0 +1,151 @@ +import math +import sys +from datetime import date, datetime, timedelta, timezone +from decimal import Decimal +from typing import Any, Dict, Iterable, Iterator, List, NamedTuple, Set, Tuple + +if sys.version_info < (3, 9): + from typing_extensions import Annotated +else: + from typing import Annotated + +import annotated_types as at + + +class Case(NamedTuple): + """ + A test case for `annotated_types`. + """ + + annotation: Any + valid_cases: Iterable[Any] + invalid_cases: Iterable[Any] + + +def cases() -> Iterable[Case]: + # Gt, Ge, Lt, Le + yield Case(Annotated[int, at.Gt(4)], (5, 6, 1000), (4, 0, -1)) + yield Case(Annotated[float, at.Gt(0.5)], (0.6, 0.7, 0.8, 0.9), (0.5, 0.0, -0.1)) + yield Case( + Annotated[datetime, at.Gt(datetime(2000, 1, 1))], + [datetime(2000, 1, 2), datetime(2000, 1, 3)], + [datetime(2000, 1, 1), datetime(1999, 12, 31)], + ) + yield Case( + Annotated[datetime, at.Gt(date(2000, 1, 1))], + [date(2000, 1, 2), date(2000, 1, 3)], + [date(2000, 1, 1), date(1999, 12, 31)], + ) + yield Case( + Annotated[datetime, at.Gt(Decimal('1.123'))], + [Decimal('1.1231'), Decimal('123')], + [Decimal('1.123'), Decimal('0')], + ) + + yield Case(Annotated[int, at.Ge(4)], (4, 5, 6, 1000, 4), (0, -1)) + yield Case(Annotated[float, at.Ge(0.5)], (0.5, 0.6, 0.7, 0.8, 0.9), (0.4, 0.0, -0.1)) + yield Case( + Annotated[datetime, at.Ge(datetime(2000, 1, 1))], + [datetime(2000, 1, 2), datetime(2000, 1, 3)], + [datetime(1998, 1, 1), datetime(1999, 12, 31)], + ) + + yield Case(Annotated[int, at.Lt(4)], (0, -1), (4, 5, 6, 1000, 4)) + yield Case(Annotated[float, at.Lt(0.5)], (0.4, 0.0, -0.1), (0.5, 0.6, 0.7, 0.8, 0.9)) + yield Case( + Annotated[datetime, at.Lt(datetime(2000, 1, 1))], + [datetime(1999, 12, 31), datetime(1999, 12, 31)], + [datetime(2000, 1, 2), datetime(2000, 1, 3)], + ) + + yield Case(Annotated[int, at.Le(4)], (4, 0, -1), (5, 6, 1000)) + yield Case(Annotated[float, at.Le(0.5)], (0.5, 0.0, -0.1), (0.6, 0.7, 0.8, 0.9)) + yield Case( + Annotated[datetime, at.Le(datetime(2000, 1, 1))], + [datetime(2000, 1, 1), datetime(1999, 12, 31)], + [datetime(2000, 1, 2), datetime(2000, 1, 3)], + ) + + # Interval + yield Case(Annotated[int, at.Interval(gt=4)], (5, 6, 1000), (4, 0, -1)) + yield Case(Annotated[int, at.Interval(gt=4, lt=10)], (5, 6), (4, 10, 1000, 0, -1)) + yield Case(Annotated[float, at.Interval(ge=0.5, le=1)], (0.5, 0.9, 1), (0.49, 1.1)) + yield Case( + Annotated[datetime, at.Interval(gt=datetime(2000, 1, 1), le=datetime(2000, 1, 3))], + [datetime(2000, 1, 2), datetime(2000, 1, 3)], + [datetime(2000, 1, 1), datetime(2000, 1, 4)], + ) + + yield Case(Annotated[int, at.MultipleOf(multiple_of=3)], (0, 3, 9), (1, 2, 4)) + yield Case(Annotated[float, at.MultipleOf(multiple_of=0.5)], (0, 0.5, 1, 1.5), (0.4, 1.1)) + + # lengths + + yield Case(Annotated[str, at.MinLen(3)], ('123', '1234', 'x' * 10), ('', '1', '12')) + yield Case(Annotated[str, at.Len(3)], ('123', '1234', 'x' * 10), ('', '1', '12')) + yield Case(Annotated[List[int], at.MinLen(3)], ([1, 2, 3], [1, 2, 3, 4], [1] * 10), ([], [1], [1, 2])) + yield Case(Annotated[List[int], at.Len(3)], ([1, 2, 3], [1, 2, 3, 4], [1] * 10), ([], [1], [1, 2])) + + yield Case(Annotated[str, at.MaxLen(4)], ('', '1234'), ('12345', 'x' * 10)) + yield Case(Annotated[str, at.Len(0, 4)], ('', '1234'), ('12345', 'x' * 10)) + yield Case(Annotated[List[str], at.MaxLen(4)], ([], ['a', 'bcdef'], ['a', 'b', 'c']), (['a'] * 5, ['b'] * 10)) + yield Case(Annotated[List[str], at.Len(0, 4)], ([], ['a', 'bcdef'], ['a', 'b', 'c']), (['a'] * 5, ['b'] * 10)) + + yield Case(Annotated[str, at.Len(3, 5)], ('123', '12345'), ('', '1', '12', '123456', 'x' * 10)) + yield Case(Annotated[str, at.Len(3, 3)], ('123',), ('12', '1234')) + + yield Case(Annotated[Dict[int, int], at.Len(2, 3)], [{1: 1, 2: 2}], [{}, {1: 1}, {1: 1, 2: 2, 3: 3, 4: 4}]) + yield Case(Annotated[Set[int], at.Len(2, 3)], ({1, 2}, {1, 2, 3}), (set(), {1}, {1, 2, 3, 4})) + yield Case(Annotated[Tuple[int, ...], at.Len(2, 3)], ((1, 2), (1, 2, 3)), ((), (1,), (1, 2, 3, 4))) + + # Timezone + + yield Case( + Annotated[datetime, at.Timezone(None)], [datetime(2000, 1, 1)], [datetime(2000, 1, 1, tzinfo=timezone.utc)] + ) + yield Case( + Annotated[datetime, at.Timezone(...)], [datetime(2000, 1, 1, tzinfo=timezone.utc)], [datetime(2000, 1, 1)] + ) + yield Case( + Annotated[datetime, at.Timezone(timezone.utc)], + [datetime(2000, 1, 1, tzinfo=timezone.utc)], + [datetime(2000, 1, 1), datetime(2000, 1, 1, tzinfo=timezone(timedelta(hours=6)))], + ) + yield Case( + Annotated[datetime, at.Timezone('Europe/London')], + [datetime(2000, 1, 1, tzinfo=timezone(timedelta(0), name='Europe/London'))], + [datetime(2000, 1, 1), datetime(2000, 1, 1, tzinfo=timezone(timedelta(hours=6)))], + ) + + # Quantity + + yield Case(Annotated[float, at.Unit(unit='m')], (5, 4.2), ('5m', '4.2m')) + + # predicate types + + yield Case(at.LowerCase[str], ['abc', 'foobar'], ['', 'A', 'Boom']) + yield Case(at.UpperCase[str], ['ABC', 'DEFO'], ['', 'a', 'abc', 'AbC']) + yield Case(at.IsDigit[str], ['123'], ['', 'ab', 'a1b2']) + yield Case(at.IsAscii[str], ['123', 'foo bar'], ['£100', '😊', 'whatever 👀']) + + yield Case(Annotated[int, at.Predicate(lambda x: x % 2 == 0)], [0, 2, 4], [1, 3, 5]) + + yield Case(at.IsFinite[float], [1.23], [math.nan, math.inf, -math.inf]) + yield Case(at.IsNotFinite[float], [math.nan, math.inf], [1.23]) + yield Case(at.IsNan[float], [math.nan], [1.23, math.inf]) + yield Case(at.IsNotNan[float], [1.23, math.inf], [math.nan]) + yield Case(at.IsInfinite[float], [math.inf], [math.nan, 1.23]) + yield Case(at.IsNotInfinite[float], [math.nan, 1.23], [math.inf]) + + # check stacked predicates + yield Case(at.IsInfinite[Annotated[float, at.Predicate(lambda x: x > 0)]], [math.inf], [-math.inf, 1.23, math.nan]) + + # doc + yield Case(Annotated[int, at.doc("A number")], [1, 2], []) + + # custom GroupedMetadata + class MyCustomGroupedMetadata(at.GroupedMetadata): + def __iter__(self) -> Iterator[at.Predicate]: + yield at.Predicate(lambda x: float(x).is_integer()) + + yield Case(Annotated[float, MyCustomGroupedMetadata()], [0, 2.0], [0.01, 1.5]) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/__init__.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..f01f208f5c013e5988373210ae83bfacf432fc5d --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/__init__.py @@ -0,0 +1,1002 @@ +# Copyright 2020 The HuggingFace Team. All rights reserved. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. + +# *********** +# `huggingface_hub` init has 2 modes: +# - Normal usage: +# If imported to use it, all modules and functions are lazy-loaded. This means +# they exist at top level in module but are imported only the first time they are +# used. This way, `from huggingface_hub import something` will import `something` +# quickly without the hassle of importing all the features from `huggingface_hub`. +# - Static check: +# If statically analyzed, all modules and functions are loaded normally. This way +# static typing check works properly as well as autocomplete in text editors and +# IDEs. +# +# The static model imports are done inside the `if TYPE_CHECKING:` statement at +# the bottom of this file. Since module/functions imports are duplicated, it is +# mandatory to make sure to add them twice when adding one. This is checked in the +# `make quality` command. +# +# To update the static imports, please run the following command and commit the changes. +# ``` +# # Use script +# python utils/check_static_imports.py --update-file +# +# # Or run style on codebase +# make style +# ``` +# +# *********** +# Lazy loader vendored from https://github.com/scientific-python/lazy_loader +import importlib +import os +import sys +from typing import TYPE_CHECKING + + +__version__ = "0.26.2" + +# Alphabetical order of definitions is ensured in tests +# WARNING: any comment added in this dictionary definition will be lost when +# re-generating the file ! +_SUBMOD_ATTRS = { + "_commit_scheduler": [ + "CommitScheduler", + ], + "_inference_endpoints": [ + "InferenceEndpoint", + "InferenceEndpointError", + "InferenceEndpointStatus", + "InferenceEndpointTimeoutError", + "InferenceEndpointType", + ], + "_login": [ + "auth_list", + "auth_switch", + "interpreter_login", + "login", + "logout", + "notebook_login", + ], + "_multi_commits": [ + "MultiCommitException", + "plan_multi_commits", + ], + "_snapshot_download": [ + "snapshot_download", + ], + "_space_api": [ + "SpaceHardware", + "SpaceRuntime", + "SpaceStage", + "SpaceStorage", + "SpaceVariable", + ], + "_tensorboard_logger": [ + "HFSummaryWriter", + ], + "_webhooks_payload": [ + "WebhookPayload", + "WebhookPayloadComment", + "WebhookPayloadDiscussion", + "WebhookPayloadDiscussionChanges", + "WebhookPayloadEvent", + "WebhookPayloadMovedTo", + "WebhookPayloadRepo", + "WebhookPayloadUrl", + "WebhookPayloadWebhook", + ], + "_webhooks_server": [ + "WebhooksServer", + "webhook_endpoint", + ], + "community": [ + "Discussion", + "DiscussionComment", + "DiscussionCommit", + "DiscussionEvent", + "DiscussionStatusChange", + "DiscussionTitleChange", + "DiscussionWithDetails", + ], + "constants": [ + "CONFIG_NAME", + "FLAX_WEIGHTS_NAME", + "HUGGINGFACE_CO_URL_HOME", + "HUGGINGFACE_CO_URL_TEMPLATE", + "PYTORCH_WEIGHTS_NAME", + "REPO_TYPE_DATASET", + "REPO_TYPE_MODEL", + "REPO_TYPE_SPACE", + "TF2_WEIGHTS_NAME", + "TF_WEIGHTS_NAME", + ], + "fastai_utils": [ + "_save_pretrained_fastai", + "from_pretrained_fastai", + "push_to_hub_fastai", + ], + "file_download": [ + "HfFileMetadata", + "_CACHED_NO_EXIST", + "get_hf_file_metadata", + "hf_hub_download", + "hf_hub_url", + "try_to_load_from_cache", + ], + "hf_api": [ + "Collection", + "CollectionItem", + "CommitInfo", + "CommitOperation", + "CommitOperationAdd", + "CommitOperationCopy", + "CommitOperationDelete", + "DatasetInfo", + "GitCommitInfo", + "GitRefInfo", + "GitRefs", + "HfApi", + "ModelInfo", + "RepoUrl", + "SpaceInfo", + "User", + "UserLikes", + "WebhookInfo", + "WebhookWatchedItem", + "accept_access_request", + "add_collection_item", + "add_space_secret", + "add_space_variable", + "auth_check", + "cancel_access_request", + "change_discussion_status", + "comment_discussion", + "create_branch", + "create_collection", + "create_commit", + "create_commits_on_pr", + "create_discussion", + "create_inference_endpoint", + "create_pull_request", + "create_repo", + "create_tag", + "create_webhook", + "dataset_info", + "delete_branch", + "delete_collection", + "delete_collection_item", + "delete_file", + "delete_folder", + "delete_inference_endpoint", + "delete_repo", + "delete_space_secret", + "delete_space_storage", + "delete_space_variable", + "delete_tag", + "delete_webhook", + "disable_webhook", + "duplicate_space", + "edit_discussion_comment", + "enable_webhook", + "file_exists", + "get_collection", + "get_dataset_tags", + "get_discussion_details", + "get_full_repo_name", + "get_inference_endpoint", + "get_model_tags", + "get_paths_info", + "get_repo_discussions", + "get_safetensors_metadata", + "get_space_runtime", + "get_space_variables", + "get_token_permission", + "get_user_overview", + "get_webhook", + "grant_access", + "like", + "list_accepted_access_requests", + "list_collections", + "list_datasets", + "list_inference_endpoints", + "list_liked_repos", + "list_metrics", + "list_models", + "list_organization_members", + "list_papers", + "list_pending_access_requests", + "list_rejected_access_requests", + "list_repo_commits", + "list_repo_files", + "list_repo_likers", + "list_repo_refs", + "list_repo_tree", + "list_spaces", + "list_user_followers", + "list_user_following", + "list_webhooks", + "merge_pull_request", + "model_info", + "move_repo", + "paper_info", + "parse_safetensors_file_metadata", + "pause_inference_endpoint", + "pause_space", + "preupload_lfs_files", + "reject_access_request", + "rename_discussion", + "repo_exists", + "repo_info", + "repo_type_and_id_from_hf_id", + "request_space_hardware", + "request_space_storage", + "restart_space", + "resume_inference_endpoint", + "revision_exists", + "run_as_future", + "scale_to_zero_inference_endpoint", + "set_space_sleep_time", + "space_info", + "super_squash_history", + "unlike", + "update_collection_item", + "update_collection_metadata", + "update_inference_endpoint", + "update_repo_settings", + "update_repo_visibility", + "update_webhook", + "upload_file", + "upload_folder", + "upload_large_folder", + "whoami", + ], + "hf_file_system": [ + "HfFileSystem", + "HfFileSystemFile", + "HfFileSystemResolvedPath", + "HfFileSystemStreamFile", + ], + "hub_mixin": [ + "ModelHubMixin", + "PyTorchModelHubMixin", + ], + "inference._client": [ + "InferenceClient", + "InferenceTimeoutError", + ], + "inference._generated._async_client": [ + "AsyncInferenceClient", + ], + "inference._generated.types": [ + "AudioClassificationInput", + "AudioClassificationOutputElement", + "AudioClassificationOutputTransform", + "AudioClassificationParameters", + "AudioToAudioInput", + "AudioToAudioOutputElement", + "AutomaticSpeechRecognitionEarlyStoppingEnum", + "AutomaticSpeechRecognitionGenerationParameters", + "AutomaticSpeechRecognitionInput", + "AutomaticSpeechRecognitionOutput", + "AutomaticSpeechRecognitionOutputChunk", + "AutomaticSpeechRecognitionParameters", + "ChatCompletionInput", + "ChatCompletionInputFunctionDefinition", + "ChatCompletionInputFunctionName", + "ChatCompletionInputGrammarType", + "ChatCompletionInputMessage", + "ChatCompletionInputMessageChunk", + "ChatCompletionInputStreamOptions", + "ChatCompletionInputToolType", + "ChatCompletionInputURL", + "ChatCompletionOutput", + "ChatCompletionOutputComplete", + "ChatCompletionOutputFunctionDefinition", + "ChatCompletionOutputLogprob", + "ChatCompletionOutputLogprobs", + "ChatCompletionOutputMessage", + "ChatCompletionOutputToolCall", + "ChatCompletionOutputTopLogprob", + "ChatCompletionOutputUsage", + "ChatCompletionStreamOutput", + "ChatCompletionStreamOutputChoice", + "ChatCompletionStreamOutputDelta", + "ChatCompletionStreamOutputDeltaToolCall", + "ChatCompletionStreamOutputFunction", + "ChatCompletionStreamOutputLogprob", + "ChatCompletionStreamOutputLogprobs", + "ChatCompletionStreamOutputTopLogprob", + "ChatCompletionStreamOutputUsage", + "DepthEstimationInput", + "DepthEstimationOutput", + "DocumentQuestionAnsweringInput", + "DocumentQuestionAnsweringInputData", + "DocumentQuestionAnsweringOutputElement", + "DocumentQuestionAnsweringParameters", + "FeatureExtractionInput", + "FillMaskInput", + "FillMaskOutputElement", + "FillMaskParameters", + "ImageClassificationInput", + "ImageClassificationOutputElement", + "ImageClassificationOutputTransform", + "ImageClassificationParameters", + "ImageSegmentationInput", + "ImageSegmentationOutputElement", + "ImageSegmentationParameters", + "ImageToImageInput", + "ImageToImageOutput", + "ImageToImageParameters", + "ImageToImageTargetSize", + "ImageToTextEarlyStoppingEnum", + "ImageToTextGenerationParameters", + "ImageToTextInput", + "ImageToTextOutput", + "ImageToTextParameters", + "ObjectDetectionBoundingBox", + "ObjectDetectionInput", + "ObjectDetectionOutputElement", + "ObjectDetectionParameters", + "QuestionAnsweringInput", + "QuestionAnsweringInputData", + "QuestionAnsweringOutputElement", + "QuestionAnsweringParameters", + "SentenceSimilarityInput", + "SentenceSimilarityInputData", + "SummarizationInput", + "SummarizationOutput", + "SummarizationParameters", + "TableQuestionAnsweringInput", + "TableQuestionAnsweringInputData", + "TableQuestionAnsweringOutputElement", + "Text2TextGenerationInput", + "Text2TextGenerationOutput", + "Text2TextGenerationParameters", + "TextClassificationInput", + "TextClassificationOutputElement", + "TextClassificationOutputTransform", + "TextClassificationParameters", + "TextGenerationInput", + "TextGenerationInputGenerateParameters", + "TextGenerationInputGrammarType", + "TextGenerationOutput", + "TextGenerationOutputBestOfSequence", + "TextGenerationOutputDetails", + "TextGenerationOutputPrefillToken", + "TextGenerationOutputToken", + "TextGenerationStreamOutput", + "TextGenerationStreamOutputStreamDetails", + "TextGenerationStreamOutputToken", + "TextToAudioEarlyStoppingEnum", + "TextToAudioGenerationParameters", + "TextToAudioInput", + "TextToAudioOutput", + "TextToAudioParameters", + "TextToImageInput", + "TextToImageOutput", + "TextToImageParameters", + "TextToImageTargetSize", + "TextToSpeechEarlyStoppingEnum", + "TextToSpeechGenerationParameters", + "TextToSpeechInput", + "TextToSpeechOutput", + "TextToSpeechParameters", + "TokenClassificationInput", + "TokenClassificationOutputElement", + "TokenClassificationParameters", + "ToolElement", + "TranslationInput", + "TranslationOutput", + "TranslationParameters", + "VideoClassificationInput", + "VideoClassificationOutputElement", + "VideoClassificationOutputTransform", + "VideoClassificationParameters", + "VisualQuestionAnsweringInput", + "VisualQuestionAnsweringInputData", + "VisualQuestionAnsweringOutputElement", + "VisualQuestionAnsweringParameters", + "ZeroShotClassificationInput", + "ZeroShotClassificationInputData", + "ZeroShotClassificationOutputElement", + "ZeroShotClassificationParameters", + "ZeroShotImageClassificationInput", + "ZeroShotImageClassificationInputData", + "ZeroShotImageClassificationOutputElement", + "ZeroShotImageClassificationParameters", + "ZeroShotObjectDetectionBoundingBox", + "ZeroShotObjectDetectionInput", + "ZeroShotObjectDetectionInputData", + "ZeroShotObjectDetectionOutputElement", + ], + "inference_api": [ + "InferenceApi", + ], + "keras_mixin": [ + "KerasModelHubMixin", + "from_pretrained_keras", + "push_to_hub_keras", + "save_pretrained_keras", + ], + "repocard": [ + "DatasetCard", + "ModelCard", + "RepoCard", + "SpaceCard", + "metadata_eval_result", + "metadata_load", + "metadata_save", + "metadata_update", + ], + "repocard_data": [ + "CardData", + "DatasetCardData", + "EvalResult", + "ModelCardData", + "SpaceCardData", + ], + "repository": [ + "Repository", + ], + "serialization": [ + "StateDictSplit", + "get_tf_storage_size", + "get_torch_storage_id", + "get_torch_storage_size", + "save_torch_model", + "save_torch_state_dict", + "split_state_dict_into_shards_factory", + "split_tf_state_dict_into_shards", + "split_torch_state_dict_into_shards", + ], + "utils": [ + "CacheNotFound", + "CachedFileInfo", + "CachedRepoInfo", + "CachedRevisionInfo", + "CorruptedCacheException", + "DeleteCacheStrategy", + "HFCacheInfo", + "HfFolder", + "cached_assets_path", + "configure_http_backend", + "dump_environment_info", + "get_session", + "get_token", + "logging", + "scan_cache_dir", + ], +} + + +def _attach(package_name, submodules=None, submod_attrs=None): + """Attach lazily loaded submodules, functions, or other attributes. + + Typically, modules import submodules and attributes as follows: + + ```py + import mysubmodule + import anothersubmodule + + from .foo import someattr + ``` + + The idea is to replace a package's `__getattr__`, `__dir__`, and + `__all__`, such that all imports work exactly the way they would + with normal imports, except that the import occurs upon first use. + + The typical way to call this function, replacing the above imports, is: + + ```python + __getattr__, __dir__, __all__ = lazy.attach( + __name__, + ['mysubmodule', 'anothersubmodule'], + {'foo': ['someattr']} + ) + ``` + This functionality requires Python 3.7 or higher. + + Args: + package_name (`str`): + Typically use `__name__`. + submodules (`set`): + List of submodules to attach. + submod_attrs (`dict`): + Dictionary of submodule -> list of attributes / functions. + These attributes are imported as they are used. + + Returns: + __getattr__, __dir__, __all__ + + """ + if submod_attrs is None: + submod_attrs = {} + + if submodules is None: + submodules = set() + else: + submodules = set(submodules) + + attr_to_modules = {attr: mod for mod, attrs in submod_attrs.items() for attr in attrs} + + __all__ = list(submodules | attr_to_modules.keys()) + + def __getattr__(name): + if name in submodules: + try: + return importlib.import_module(f"{package_name}.{name}") + except Exception as e: + print(f"Error importing {package_name}.{name}: {e}") + raise + elif name in attr_to_modules: + submod_path = f"{package_name}.{attr_to_modules[name]}" + try: + submod = importlib.import_module(submod_path) + except Exception as e: + print(f"Error importing {submod_path}: {e}") + raise + attr = getattr(submod, name) + + # If the attribute lives in a file (module) with the same + # name as the attribute, ensure that the attribute and *not* + # the module is accessible on the package. + if name == attr_to_modules[name]: + pkg = sys.modules[package_name] + pkg.__dict__[name] = attr + + return attr + else: + raise AttributeError(f"No {package_name} attribute {name}") + + def __dir__(): + return __all__ + + return __getattr__, __dir__, list(__all__) + + +__getattr__, __dir__, __all__ = _attach(__name__, submodules=[], submod_attrs=_SUBMOD_ATTRS) + +if os.environ.get("EAGER_IMPORT", ""): + for attr in __all__: + __getattr__(attr) + +# WARNING: any content below this statement is generated automatically. Any manual edit +# will be lost when re-generating this file ! +# +# To update the static imports, please run the following command and commit the changes. +# ``` +# # Use script +# python utils/check_static_imports.py --update-file +# +# # Or run style on codebase +# make style +# ``` +if TYPE_CHECKING: # pragma: no cover + from ._commit_scheduler import CommitScheduler # noqa: F401 + from ._inference_endpoints import ( + InferenceEndpoint, # noqa: F401 + InferenceEndpointError, # noqa: F401 + InferenceEndpointStatus, # noqa: F401 + InferenceEndpointTimeoutError, # noqa: F401 + InferenceEndpointType, # noqa: F401 + ) + from ._login import ( + auth_list, # noqa: F401 + auth_switch, # noqa: F401 + interpreter_login, # noqa: F401 + login, # noqa: F401 + logout, # noqa: F401 + notebook_login, # noqa: F401 + ) + from ._multi_commits import ( + MultiCommitException, # noqa: F401 + plan_multi_commits, # noqa: F401 + ) + from ._snapshot_download import snapshot_download # noqa: F401 + from ._space_api import ( + SpaceHardware, # noqa: F401 + SpaceRuntime, # noqa: F401 + SpaceStage, # noqa: F401 + SpaceStorage, # noqa: F401 + SpaceVariable, # noqa: F401 + ) + from ._tensorboard_logger import HFSummaryWriter # noqa: F401 + from ._webhooks_payload import ( + WebhookPayload, # noqa: F401 + WebhookPayloadComment, # noqa: F401 + WebhookPayloadDiscussion, # noqa: F401 + WebhookPayloadDiscussionChanges, # noqa: F401 + WebhookPayloadEvent, # noqa: F401 + WebhookPayloadMovedTo, # noqa: F401 + WebhookPayloadRepo, # noqa: F401 + WebhookPayloadUrl, # noqa: F401 + WebhookPayloadWebhook, # noqa: F401 + ) + from ._webhooks_server import ( + WebhooksServer, # noqa: F401 + webhook_endpoint, # noqa: F401 + ) + from .community import ( + Discussion, # noqa: F401 + DiscussionComment, # noqa: F401 + DiscussionCommit, # noqa: F401 + DiscussionEvent, # noqa: F401 + DiscussionStatusChange, # noqa: F401 + DiscussionTitleChange, # noqa: F401 + DiscussionWithDetails, # noqa: F401 + ) + from .constants import ( + CONFIG_NAME, # noqa: F401 + FLAX_WEIGHTS_NAME, # noqa: F401 + HUGGINGFACE_CO_URL_HOME, # noqa: F401 + HUGGINGFACE_CO_URL_TEMPLATE, # noqa: F401 + PYTORCH_WEIGHTS_NAME, # noqa: F401 + REPO_TYPE_DATASET, # noqa: F401 + REPO_TYPE_MODEL, # noqa: F401 + REPO_TYPE_SPACE, # noqa: F401 + TF2_WEIGHTS_NAME, # noqa: F401 + TF_WEIGHTS_NAME, # noqa: F401 + ) + from .fastai_utils import ( + _save_pretrained_fastai, # noqa: F401 + from_pretrained_fastai, # noqa: F401 + push_to_hub_fastai, # noqa: F401 + ) + from .file_download import ( + _CACHED_NO_EXIST, # noqa: F401 + HfFileMetadata, # noqa: F401 + get_hf_file_metadata, # noqa: F401 + hf_hub_download, # noqa: F401 + hf_hub_url, # noqa: F401 + try_to_load_from_cache, # noqa: F401 + ) + from .hf_api import ( + Collection, # noqa: F401 + CollectionItem, # noqa: F401 + CommitInfo, # noqa: F401 + CommitOperation, # noqa: F401 + CommitOperationAdd, # noqa: F401 + CommitOperationCopy, # noqa: F401 + CommitOperationDelete, # noqa: F401 + DatasetInfo, # noqa: F401 + GitCommitInfo, # noqa: F401 + GitRefInfo, # noqa: F401 + GitRefs, # noqa: F401 + HfApi, # noqa: F401 + ModelInfo, # noqa: F401 + RepoUrl, # noqa: F401 + SpaceInfo, # noqa: F401 + User, # noqa: F401 + UserLikes, # noqa: F401 + WebhookInfo, # noqa: F401 + WebhookWatchedItem, # noqa: F401 + accept_access_request, # noqa: F401 + add_collection_item, # noqa: F401 + add_space_secret, # noqa: F401 + add_space_variable, # noqa: F401 + auth_check, # noqa: F401 + cancel_access_request, # noqa: F401 + change_discussion_status, # noqa: F401 + comment_discussion, # noqa: F401 + create_branch, # noqa: F401 + create_collection, # noqa: F401 + create_commit, # noqa: F401 + create_commits_on_pr, # noqa: F401 + create_discussion, # noqa: F401 + create_inference_endpoint, # noqa: F401 + create_pull_request, # noqa: F401 + create_repo, # noqa: F401 + create_tag, # noqa: F401 + create_webhook, # noqa: F401 + dataset_info, # noqa: F401 + delete_branch, # noqa: F401 + delete_collection, # noqa: F401 + delete_collection_item, # noqa: F401 + delete_file, # noqa: F401 + delete_folder, # noqa: F401 + delete_inference_endpoint, # noqa: F401 + delete_repo, # noqa: F401 + delete_space_secret, # noqa: F401 + delete_space_storage, # noqa: F401 + delete_space_variable, # noqa: F401 + delete_tag, # noqa: F401 + delete_webhook, # noqa: F401 + disable_webhook, # noqa: F401 + duplicate_space, # noqa: F401 + edit_discussion_comment, # noqa: F401 + enable_webhook, # noqa: F401 + file_exists, # noqa: F401 + get_collection, # noqa: F401 + get_dataset_tags, # noqa: F401 + get_discussion_details, # noqa: F401 + get_full_repo_name, # noqa: F401 + get_inference_endpoint, # noqa: F401 + get_model_tags, # noqa: F401 + get_paths_info, # noqa: F401 + get_repo_discussions, # noqa: F401 + get_safetensors_metadata, # noqa: F401 + get_space_runtime, # noqa: F401 + get_space_variables, # noqa: F401 + get_token_permission, # noqa: F401 + get_user_overview, # noqa: F401 + get_webhook, # noqa: F401 + grant_access, # noqa: F401 + like, # noqa: F401 + list_accepted_access_requests, # noqa: F401 + list_collections, # noqa: F401 + list_datasets, # noqa: F401 + list_inference_endpoints, # noqa: F401 + list_liked_repos, # noqa: F401 + list_metrics, # noqa: F401 + list_models, # noqa: F401 + list_organization_members, # noqa: F401 + list_papers, # noqa: F401 + list_pending_access_requests, # noqa: F401 + list_rejected_access_requests, # noqa: F401 + list_repo_commits, # noqa: F401 + list_repo_files, # noqa: F401 + list_repo_likers, # noqa: F401 + list_repo_refs, # noqa: F401 + list_repo_tree, # noqa: F401 + list_spaces, # noqa: F401 + list_user_followers, # noqa: F401 + list_user_following, # noqa: F401 + list_webhooks, # noqa: F401 + merge_pull_request, # noqa: F401 + model_info, # noqa: F401 + move_repo, # noqa: F401 + paper_info, # noqa: F401 + parse_safetensors_file_metadata, # noqa: F401 + pause_inference_endpoint, # noqa: F401 + pause_space, # noqa: F401 + preupload_lfs_files, # noqa: F401 + reject_access_request, # noqa: F401 + rename_discussion, # noqa: F401 + repo_exists, # noqa: F401 + repo_info, # noqa: F401 + repo_type_and_id_from_hf_id, # noqa: F401 + request_space_hardware, # noqa: F401 + request_space_storage, # noqa: F401 + restart_space, # noqa: F401 + resume_inference_endpoint, # noqa: F401 + revision_exists, # noqa: F401 + run_as_future, # noqa: F401 + scale_to_zero_inference_endpoint, # noqa: F401 + set_space_sleep_time, # noqa: F401 + space_info, # noqa: F401 + super_squash_history, # noqa: F401 + unlike, # noqa: F401 + update_collection_item, # noqa: F401 + update_collection_metadata, # noqa: F401 + update_inference_endpoint, # noqa: F401 + update_repo_settings, # noqa: F401 + update_repo_visibility, # noqa: F401 + update_webhook, # noqa: F401 + upload_file, # noqa: F401 + upload_folder, # noqa: F401 + upload_large_folder, # noqa: F401 + whoami, # noqa: F401 + ) + from .hf_file_system import ( + HfFileSystem, # noqa: F401 + HfFileSystemFile, # noqa: F401 + HfFileSystemResolvedPath, # noqa: F401 + HfFileSystemStreamFile, # noqa: F401 + ) + from .hub_mixin import ( + ModelHubMixin, # noqa: F401 + PyTorchModelHubMixin, # noqa: F401 + ) + from .inference._client import ( + InferenceClient, # noqa: F401 + InferenceTimeoutError, # noqa: F401 + ) + from .inference._generated._async_client import AsyncInferenceClient # noqa: F401 + from .inference._generated.types import ( + AudioClassificationInput, # noqa: F401 + AudioClassificationOutputElement, # noqa: F401 + AudioClassificationOutputTransform, # noqa: F401 + AudioClassificationParameters, # noqa: F401 + AudioToAudioInput, # noqa: F401 + AudioToAudioOutputElement, # noqa: F401 + AutomaticSpeechRecognitionEarlyStoppingEnum, # noqa: F401 + AutomaticSpeechRecognitionGenerationParameters, # noqa: F401 + AutomaticSpeechRecognitionInput, # noqa: F401 + AutomaticSpeechRecognitionOutput, # noqa: F401 + AutomaticSpeechRecognitionOutputChunk, # noqa: F401 + AutomaticSpeechRecognitionParameters, # noqa: F401 + ChatCompletionInput, # noqa: F401 + ChatCompletionInputFunctionDefinition, # noqa: F401 + ChatCompletionInputFunctionName, # noqa: F401 + ChatCompletionInputGrammarType, # noqa: F401 + ChatCompletionInputMessage, # noqa: F401 + ChatCompletionInputMessageChunk, # noqa: F401 + ChatCompletionInputStreamOptions, # noqa: F401 + ChatCompletionInputToolType, # noqa: F401 + ChatCompletionInputURL, # noqa: F401 + ChatCompletionOutput, # noqa: F401 + ChatCompletionOutputComplete, # noqa: F401 + ChatCompletionOutputFunctionDefinition, # noqa: F401 + ChatCompletionOutputLogprob, # noqa: F401 + ChatCompletionOutputLogprobs, # noqa: F401 + ChatCompletionOutputMessage, # noqa: F401 + ChatCompletionOutputToolCall, # noqa: F401 + ChatCompletionOutputTopLogprob, # noqa: F401 + ChatCompletionOutputUsage, # noqa: F401 + ChatCompletionStreamOutput, # noqa: F401 + ChatCompletionStreamOutputChoice, # noqa: F401 + ChatCompletionStreamOutputDelta, # noqa: F401 + ChatCompletionStreamOutputDeltaToolCall, # noqa: F401 + ChatCompletionStreamOutputFunction, # noqa: F401 + ChatCompletionStreamOutputLogprob, # noqa: F401 + ChatCompletionStreamOutputLogprobs, # noqa: F401 + ChatCompletionStreamOutputTopLogprob, # noqa: F401 + ChatCompletionStreamOutputUsage, # noqa: F401 + DepthEstimationInput, # noqa: F401 + DepthEstimationOutput, # noqa: F401 + DocumentQuestionAnsweringInput, # noqa: F401 + DocumentQuestionAnsweringInputData, # noqa: F401 + DocumentQuestionAnsweringOutputElement, # noqa: F401 + DocumentQuestionAnsweringParameters, # noqa: F401 + FeatureExtractionInput, # noqa: F401 + FillMaskInput, # noqa: F401 + FillMaskOutputElement, # noqa: F401 + FillMaskParameters, # noqa: F401 + ImageClassificationInput, # noqa: F401 + ImageClassificationOutputElement, # noqa: F401 + ImageClassificationOutputTransform, # noqa: F401 + ImageClassificationParameters, # noqa: F401 + ImageSegmentationInput, # noqa: F401 + ImageSegmentationOutputElement, # noqa: F401 + ImageSegmentationParameters, # noqa: F401 + ImageToImageInput, # noqa: F401 + ImageToImageOutput, # noqa: F401 + ImageToImageParameters, # noqa: F401 + ImageToImageTargetSize, # noqa: F401 + ImageToTextEarlyStoppingEnum, # noqa: F401 + ImageToTextGenerationParameters, # noqa: F401 + ImageToTextInput, # noqa: F401 + ImageToTextOutput, # noqa: F401 + ImageToTextParameters, # noqa: F401 + ObjectDetectionBoundingBox, # noqa: F401 + ObjectDetectionInput, # noqa: F401 + ObjectDetectionOutputElement, # noqa: F401 + ObjectDetectionParameters, # noqa: F401 + QuestionAnsweringInput, # noqa: F401 + QuestionAnsweringInputData, # noqa: F401 + QuestionAnsweringOutputElement, # noqa: F401 + QuestionAnsweringParameters, # noqa: F401 + SentenceSimilarityInput, # noqa: F401 + SentenceSimilarityInputData, # noqa: F401 + SummarizationInput, # noqa: F401 + SummarizationOutput, # noqa: F401 + SummarizationParameters, # noqa: F401 + TableQuestionAnsweringInput, # noqa: F401 + TableQuestionAnsweringInputData, # noqa: F401 + TableQuestionAnsweringOutputElement, # noqa: F401 + Text2TextGenerationInput, # noqa: F401 + Text2TextGenerationOutput, # noqa: F401 + Text2TextGenerationParameters, # noqa: F401 + TextClassificationInput, # noqa: F401 + TextClassificationOutputElement, # noqa: F401 + TextClassificationOutputTransform, # noqa: F401 + TextClassificationParameters, # noqa: F401 + TextGenerationInput, # noqa: F401 + TextGenerationInputGenerateParameters, # noqa: F401 + TextGenerationInputGrammarType, # noqa: F401 + TextGenerationOutput, # noqa: F401 + TextGenerationOutputBestOfSequence, # noqa: F401 + TextGenerationOutputDetails, # noqa: F401 + TextGenerationOutputPrefillToken, # noqa: F401 + TextGenerationOutputToken, # noqa: F401 + TextGenerationStreamOutput, # noqa: F401 + TextGenerationStreamOutputStreamDetails, # noqa: F401 + TextGenerationStreamOutputToken, # noqa: F401 + TextToAudioEarlyStoppingEnum, # noqa: F401 + TextToAudioGenerationParameters, # noqa: F401 + TextToAudioInput, # noqa: F401 + TextToAudioOutput, # noqa: F401 + TextToAudioParameters, # noqa: F401 + TextToImageInput, # noqa: F401 + TextToImageOutput, # noqa: F401 + TextToImageParameters, # noqa: F401 + TextToImageTargetSize, # noqa: F401 + TextToSpeechEarlyStoppingEnum, # noqa: F401 + TextToSpeechGenerationParameters, # noqa: F401 + TextToSpeechInput, # noqa: F401 + TextToSpeechOutput, # noqa: F401 + TextToSpeechParameters, # noqa: F401 + TokenClassificationInput, # noqa: F401 + TokenClassificationOutputElement, # noqa: F401 + TokenClassificationParameters, # noqa: F401 + ToolElement, # noqa: F401 + TranslationInput, # noqa: F401 + TranslationOutput, # noqa: F401 + TranslationParameters, # noqa: F401 + VideoClassificationInput, # noqa: F401 + VideoClassificationOutputElement, # noqa: F401 + VideoClassificationOutputTransform, # noqa: F401 + VideoClassificationParameters, # noqa: F401 + VisualQuestionAnsweringInput, # noqa: F401 + VisualQuestionAnsweringInputData, # noqa: F401 + VisualQuestionAnsweringOutputElement, # noqa: F401 + VisualQuestionAnsweringParameters, # noqa: F401 + ZeroShotClassificationInput, # noqa: F401 + ZeroShotClassificationInputData, # noqa: F401 + ZeroShotClassificationOutputElement, # noqa: F401 + ZeroShotClassificationParameters, # noqa: F401 + ZeroShotImageClassificationInput, # noqa: F401 + ZeroShotImageClassificationInputData, # noqa: F401 + ZeroShotImageClassificationOutputElement, # noqa: F401 + ZeroShotImageClassificationParameters, # noqa: F401 + ZeroShotObjectDetectionBoundingBox, # noqa: F401 + ZeroShotObjectDetectionInput, # noqa: F401 + ZeroShotObjectDetectionInputData, # noqa: F401 + ZeroShotObjectDetectionOutputElement, # noqa: F401 + ) + from .inference_api import InferenceApi # noqa: F401 + from .keras_mixin import ( + KerasModelHubMixin, # noqa: F401 + from_pretrained_keras, # noqa: F401 + push_to_hub_keras, # noqa: F401 + save_pretrained_keras, # noqa: F401 + ) + from .repocard import ( + DatasetCard, # noqa: F401 + ModelCard, # noqa: F401 + RepoCard, # noqa: F401 + SpaceCard, # noqa: F401 + metadata_eval_result, # noqa: F401 + metadata_load, # noqa: F401 + metadata_save, # noqa: F401 + metadata_update, # noqa: F401 + ) + from .repocard_data import ( + CardData, # noqa: F401 + DatasetCardData, # noqa: F401 + EvalResult, # noqa: F401 + ModelCardData, # noqa: F401 + SpaceCardData, # noqa: F401 + ) + from .repository import Repository # noqa: F401 + from .serialization import ( + StateDictSplit, # noqa: F401 + get_tf_storage_size, # noqa: F401 + get_torch_storage_id, # noqa: F401 + get_torch_storage_size, # noqa: F401 + save_torch_model, # noqa: F401 + save_torch_state_dict, # noqa: F401 + split_state_dict_into_shards_factory, # noqa: F401 + split_tf_state_dict_into_shards, # noqa: F401 + split_torch_state_dict_into_shards, # noqa: F401 + ) + from .utils import ( + CachedFileInfo, # noqa: F401 + CachedRepoInfo, # noqa: F401 + CachedRevisionInfo, # noqa: F401 + CacheNotFound, # noqa: F401 + CorruptedCacheException, # noqa: F401 + DeleteCacheStrategy, # noqa: F401 + HFCacheInfo, # noqa: F401 + HfFolder, # noqa: F401 + cached_assets_path, # noqa: F401 + configure_http_backend, # noqa: F401 + dump_environment_info, # noqa: F401 + get_session, # noqa: F401 + get_token, # noqa: F401 + logging, # noqa: F401 + scan_cache_dir, # noqa: F401 + ) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_commit_scheduler.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_commit_scheduler.py new file mode 100644 index 0000000000000000000000000000000000000000..62d7bf1d0d4395fb980bc4d17af028182d0e8361 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_commit_scheduler.py @@ -0,0 +1,327 @@ +import atexit +import logging +import os +import time +from concurrent.futures import Future +from dataclasses import dataclass +from io import SEEK_END, SEEK_SET, BytesIO +from pathlib import Path +from threading import Lock, Thread +from typing import Dict, List, Optional, Union + +from .hf_api import DEFAULT_IGNORE_PATTERNS, CommitInfo, CommitOperationAdd, HfApi +from .utils import filter_repo_objects + + +logger = logging.getLogger(__name__) + + +@dataclass(frozen=True) +class _FileToUpload: + """Temporary dataclass to store info about files to upload. Not meant to be used directly.""" + + local_path: Path + path_in_repo: str + size_limit: int + last_modified: float + + +class CommitScheduler: + """ + Scheduler to upload a local folder to the Hub at regular intervals (e.g. push to hub every 5 minutes). + + The scheduler is started when instantiated and run indefinitely. At the end of your script, a last commit is + triggered. Checkout the [upload guide](https://huggingface.co/docs/huggingface_hub/guides/upload#scheduled-uploads) + to learn more about how to use it. + + Args: + repo_id (`str`): + The id of the repo to commit to. + folder_path (`str` or `Path`): + Path to the local folder to upload regularly. + every (`int` or `float`, *optional*): + The number of minutes between each commit. Defaults to 5 minutes. + path_in_repo (`str`, *optional*): + Relative path of the directory in the repo, for example: `"checkpoints/"`. Defaults to the root folder + of the repository. + repo_type (`str`, *optional*): + The type of the repo to commit to. Defaults to `model`. + revision (`str`, *optional*): + The revision of the repo to commit to. Defaults to `main`. + private (`bool`, *optional*): + Whether to make the repo private. Defaults to `False`. This value is ignored if the repo already exist. + token (`str`, *optional*): + The token to use to commit to the repo. Defaults to the token saved on the machine. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are uploaded. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not uploaded. + squash_history (`bool`, *optional*): + Whether to squash the history of the repo after each commit. Defaults to `False`. Squashing commits is + useful to avoid degraded performances on the repo when it grows too large. + hf_api (`HfApi`, *optional*): + The [`HfApi`] client to use to commit to the Hub. Can be set with custom settings (user agent, token,...). + + Example: + ```py + >>> from pathlib import Path + >>> from huggingface_hub import CommitScheduler + + # Scheduler uploads every 10 minutes + >>> csv_path = Path("watched_folder/data.csv") + >>> CommitScheduler(repo_id="test_scheduler", repo_type="dataset", folder_path=csv_path.parent, every=10) + + >>> with csv_path.open("a") as f: + ... f.write("first line") + + # Some time later (...) + >>> with csv_path.open("a") as f: + ... f.write("second line") + ``` + """ + + def __init__( + self, + *, + repo_id: str, + folder_path: Union[str, Path], + every: Union[int, float] = 5, + path_in_repo: Optional[str] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + private: bool = False, + token: Optional[str] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + squash_history: bool = False, + hf_api: Optional["HfApi"] = None, + ) -> None: + self.api = hf_api or HfApi(token=token) + + # Folder + self.folder_path = Path(folder_path).expanduser().resolve() + self.path_in_repo = path_in_repo or "" + self.allow_patterns = allow_patterns + + if ignore_patterns is None: + ignore_patterns = [] + elif isinstance(ignore_patterns, str): + ignore_patterns = [ignore_patterns] + self.ignore_patterns = ignore_patterns + DEFAULT_IGNORE_PATTERNS + + if self.folder_path.is_file(): + raise ValueError(f"'folder_path' must be a directory, not a file: '{self.folder_path}'.") + self.folder_path.mkdir(parents=True, exist_ok=True) + + # Repository + repo_url = self.api.create_repo(repo_id=repo_id, private=private, repo_type=repo_type, exist_ok=True) + self.repo_id = repo_url.repo_id + self.repo_type = repo_type + self.revision = revision + self.token = token + + # Keep track of already uploaded files + self.last_uploaded: Dict[Path, float] = {} # key is local path, value is timestamp + + # Scheduler + if not every > 0: + raise ValueError(f"'every' must be a positive integer, not '{every}'.") + self.lock = Lock() + self.every = every + self.squash_history = squash_history + + logger.info(f"Scheduled job to push '{self.folder_path}' to '{self.repo_id}' every {self.every} minutes.") + self._scheduler_thread = Thread(target=self._run_scheduler, daemon=True) + self._scheduler_thread.start() + atexit.register(self._push_to_hub) + + self.__stopped = False + + def stop(self) -> None: + """Stop the scheduler. + + A stopped scheduler cannot be restarted. Mostly for tests purposes. + """ + self.__stopped = True + + def _run_scheduler(self) -> None: + """Dumb thread waiting between each scheduled push to Hub.""" + while True: + self.last_future = self.trigger() + time.sleep(self.every * 60) + if self.__stopped: + break + + def trigger(self) -> Future: + """Trigger a `push_to_hub` and return a future. + + This method is automatically called every `every` minutes. You can also call it manually to trigger a commit + immediately, without waiting for the next scheduled commit. + """ + return self.api.run_as_future(self._push_to_hub) + + def _push_to_hub(self) -> Optional[CommitInfo]: + if self.__stopped: # If stopped, already scheduled commits are ignored + return None + + logger.info("(Background) scheduled commit triggered.") + try: + value = self.push_to_hub() + if self.squash_history: + logger.info("(Background) squashing repo history.") + self.api.super_squash_history(repo_id=self.repo_id, repo_type=self.repo_type, branch=self.revision) + return value + except Exception as e: + logger.error(f"Error while pushing to Hub: {e}") # Depending on the setup, error might be silenced + raise + + def push_to_hub(self) -> Optional[CommitInfo]: + """ + Push folder to the Hub and return the commit info. + + + + This method is not meant to be called directly. It is run in the background by the scheduler, respecting a + queue mechanism to avoid concurrent commits. Making a direct call to the method might lead to concurrency + issues. + + + + The default behavior of `push_to_hub` is to assume an append-only folder. It lists all files in the folder and + uploads only changed files. If no changes are found, the method returns without committing anything. If you want + to change this behavior, you can inherit from [`CommitScheduler`] and override this method. This can be useful + for example to compress data together in a single file before committing. For more details and examples, check + out our [integration guide](https://huggingface.co/docs/huggingface_hub/main/en/guides/upload#scheduled-uploads). + """ + # Check files to upload (with lock) + with self.lock: + logger.debug("Listing files to upload for scheduled commit.") + + # List files from folder (taken from `_prepare_upload_folder_additions`) + relpath_to_abspath = { + path.relative_to(self.folder_path).as_posix(): path + for path in sorted(self.folder_path.glob("**/*")) # sorted to be deterministic + if path.is_file() + } + prefix = f"{self.path_in_repo.strip('/')}/" if self.path_in_repo else "" + + # Filter with pattern + filter out unchanged files + retrieve current file size + files_to_upload: List[_FileToUpload] = [] + for relpath in filter_repo_objects( + relpath_to_abspath.keys(), allow_patterns=self.allow_patterns, ignore_patterns=self.ignore_patterns + ): + local_path = relpath_to_abspath[relpath] + stat = local_path.stat() + if self.last_uploaded.get(local_path) is None or self.last_uploaded[local_path] != stat.st_mtime: + files_to_upload.append( + _FileToUpload( + local_path=local_path, + path_in_repo=prefix + relpath, + size_limit=stat.st_size, + last_modified=stat.st_mtime, + ) + ) + + # Return if nothing to upload + if len(files_to_upload) == 0: + logger.debug("Dropping schedule commit: no changed file to upload.") + return None + + # Convert `_FileToUpload` as `CommitOperationAdd` (=> compute file shas + limit to file size) + logger.debug("Removing unchanged files since previous scheduled commit.") + add_operations = [ + CommitOperationAdd( + # Cap the file to its current size, even if the user append data to it while a scheduled commit is happening + path_or_fileobj=PartialFileIO(file_to_upload.local_path, size_limit=file_to_upload.size_limit), + path_in_repo=file_to_upload.path_in_repo, + ) + for file_to_upload in files_to_upload + ] + + # Upload files (append mode expected - no need for lock) + logger.debug("Uploading files for scheduled commit.") + commit_info = self.api.create_commit( + repo_id=self.repo_id, + repo_type=self.repo_type, + operations=add_operations, + commit_message="Scheduled Commit", + revision=self.revision, + ) + + # Successful commit: keep track of the latest "last_modified" for each file + for file in files_to_upload: + self.last_uploaded[file.local_path] = file.last_modified + return commit_info + + +class PartialFileIO(BytesIO): + """A file-like object that reads only the first part of a file. + + Useful to upload a file to the Hub when the user might still be appending data to it. Only the first part of the + file is uploaded (i.e. the part that was available when the filesystem was first scanned). + + In practice, only used internally by the CommitScheduler to regularly push a folder to the Hub with minimal + disturbance for the user. The object is passed to `CommitOperationAdd`. + + Only supports `read`, `tell` and `seek` methods. + + Args: + file_path (`str` or `Path`): + Path to the file to read. + size_limit (`int`): + The maximum number of bytes to read from the file. If the file is larger than this, only the first part + will be read (and uploaded). + """ + + def __init__(self, file_path: Union[str, Path], size_limit: int) -> None: + self._file_path = Path(file_path) + self._file = self._file_path.open("rb") + self._size_limit = min(size_limit, os.fstat(self._file.fileno()).st_size) + + def __del__(self) -> None: + self._file.close() + return super().__del__() + + def __repr__(self) -> str: + return f"" + + def __len__(self) -> int: + return self._size_limit + + def __getattribute__(self, name: str): + if name.startswith("_") or name in ("read", "tell", "seek"): # only 3 public methods supported + return super().__getattribute__(name) + raise NotImplementedError(f"PartialFileIO does not support '{name}'.") + + def tell(self) -> int: + """Return the current file position.""" + return self._file.tell() + + def seek(self, __offset: int, __whence: int = SEEK_SET) -> int: + """Change the stream position to the given offset. + + Behavior is the same as a regular file, except that the position is capped to the size limit. + """ + if __whence == SEEK_END: + # SEEK_END => set from the truncated end + __offset = len(self) + __offset + __whence = SEEK_SET + + pos = self._file.seek(__offset, __whence) + if pos > self._size_limit: + return self._file.seek(self._size_limit) + return pos + + def read(self, __size: Optional[int] = -1) -> bytes: + """Read at most `__size` bytes from the file. + + Behavior is the same as a regular file, except that it is capped to the size limit. + """ + current = self._file.tell() + if __size is None or __size < 0: + # Read until file limit + truncated_size = self._size_limit - current + else: + # Read until file limit or __size + truncated_size = min(__size, self._size_limit - current) + return self._file.read(truncated_size) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_inference_endpoints.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_inference_endpoints.py new file mode 100644 index 0000000000000000000000000000000000000000..282b627b54489751bb5e8098f87881e52eda637a --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_inference_endpoints.py @@ -0,0 +1,396 @@ +import time +from dataclasses import dataclass, field +from datetime import datetime +from enum import Enum +from typing import TYPE_CHECKING, Dict, Optional, Union + +from huggingface_hub.errors import InferenceEndpointError, InferenceEndpointTimeoutError + +from .inference._client import InferenceClient +from .inference._generated._async_client import AsyncInferenceClient +from .utils import get_session, logging, parse_datetime + + +if TYPE_CHECKING: + from .hf_api import HfApi + + +logger = logging.get_logger(__name__) + + +class InferenceEndpointStatus(str, Enum): + PENDING = "pending" + INITIALIZING = "initializing" + UPDATING = "updating" + UPDATE_FAILED = "updateFailed" + RUNNING = "running" + PAUSED = "paused" + FAILED = "failed" + SCALED_TO_ZERO = "scaledToZero" + + +class InferenceEndpointType(str, Enum): + PUBlIC = "public" + PROTECTED = "protected" + PRIVATE = "private" + + +@dataclass +class InferenceEndpoint: + """ + Contains information about a deployed Inference Endpoint. + + Args: + name (`str`): + The unique name of the Inference Endpoint. + namespace (`str`): + The namespace where the Inference Endpoint is located. + repository (`str`): + The name of the model repository deployed on this Inference Endpoint. + status ([`InferenceEndpointStatus`]): + The current status of the Inference Endpoint. + url (`str`, *optional*): + The URL of the Inference Endpoint, if available. Only a deployed Inference Endpoint will have a URL. + framework (`str`): + The machine learning framework used for the model. + revision (`str`): + The specific model revision deployed on the Inference Endpoint. + task (`str`): + The task associated with the deployed model. + created_at (`datetime.datetime`): + The timestamp when the Inference Endpoint was created. + updated_at (`datetime.datetime`): + The timestamp of the last update of the Inference Endpoint. + type ([`InferenceEndpointType`]): + The type of the Inference Endpoint (public, protected, private). + raw (`Dict`): + The raw dictionary data returned from the API. + token (`str` or `bool`, *optional*): + Authentication token for the Inference Endpoint, if set when requesting the API. Will default to the + locally saved token if not provided. Pass `token=False` if you don't want to send your token to the server. + + Example: + ```python + >>> from huggingface_hub import get_inference_endpoint + >>> endpoint = get_inference_endpoint("my-text-to-image") + >>> endpoint + InferenceEndpoint(name='my-text-to-image', ...) + + # Get status + >>> endpoint.status + 'running' + >>> endpoint.url + 'https://my-text-to-image.region.vendor.endpoints.huggingface.cloud' + + # Run inference + >>> endpoint.client.text_to_image(...) + + # Pause endpoint to save $$$ + >>> endpoint.pause() + + # ... + # Resume and wait for deployment + >>> endpoint.resume() + >>> endpoint.wait() + >>> endpoint.client.text_to_image(...) + ``` + """ + + # Field in __repr__ + name: str = field(init=False) + namespace: str + repository: str = field(init=False) + status: InferenceEndpointStatus = field(init=False) + url: Optional[str] = field(init=False) + + # Other fields + framework: str = field(repr=False, init=False) + revision: str = field(repr=False, init=False) + task: str = field(repr=False, init=False) + created_at: datetime = field(repr=False, init=False) + updated_at: datetime = field(repr=False, init=False) + type: InferenceEndpointType = field(repr=False, init=False) + + # Raw dict from the API + raw: Dict = field(repr=False) + + # Internal fields + _token: Union[str, bool, None] = field(repr=False, compare=False) + _api: "HfApi" = field(repr=False, compare=False) + + @classmethod + def from_raw( + cls, raw: Dict, namespace: str, token: Union[str, bool, None] = None, api: Optional["HfApi"] = None + ) -> "InferenceEndpoint": + """Initialize object from raw dictionary.""" + if api is None: + from .hf_api import HfApi + + api = HfApi() + if token is None: + token = api.token + + # All other fields are populated in __post_init__ + return cls(raw=raw, namespace=namespace, _token=token, _api=api) + + def __post_init__(self) -> None: + """Populate fields from raw dictionary.""" + self._populate_from_raw() + + @property + def client(self) -> InferenceClient: + """Returns a client to make predictions on this Inference Endpoint. + + Returns: + [`InferenceClient`]: an inference client pointing to the deployed endpoint. + + Raises: + [`InferenceEndpointError`]: If the Inference Endpoint is not yet deployed. + """ + if self.url is None: + raise InferenceEndpointError( + "Cannot create a client for this Inference Endpoint as it is not yet deployed. " + "Please wait for the Inference Endpoint to be deployed using `endpoint.wait()` and try again." + ) + return InferenceClient(model=self.url, token=self._token) + + @property + def async_client(self) -> AsyncInferenceClient: + """Returns a client to make predictions on this Inference Endpoint. + + Returns: + [`AsyncInferenceClient`]: an asyncio-compatible inference client pointing to the deployed endpoint. + + Raises: + [`InferenceEndpointError`]: If the Inference Endpoint is not yet deployed. + """ + if self.url is None: + raise InferenceEndpointError( + "Cannot create a client for this Inference Endpoint as it is not yet deployed. " + "Please wait for the Inference Endpoint to be deployed using `endpoint.wait()` and try again." + ) + return AsyncInferenceClient(model=self.url, token=self._token) + + def wait(self, timeout: Optional[int] = None, refresh_every: int = 5) -> "InferenceEndpoint": + """Wait for the Inference Endpoint to be deployed. + + Information from the server will be fetched every 1s. If the Inference Endpoint is not deployed after `timeout` + seconds, a [`InferenceEndpointTimeoutError`] will be raised. The [`InferenceEndpoint`] will be mutated in place with the latest + data. + + Args: + timeout (`int`, *optional*): + The maximum time to wait for the Inference Endpoint to be deployed, in seconds. If `None`, will wait + indefinitely. + refresh_every (`int`, *optional*): + The time to wait between each fetch of the Inference Endpoint status, in seconds. Defaults to 5s. + + Returns: + [`InferenceEndpoint`]: the same Inference Endpoint, mutated in place with the latest data. + + Raises: + [`InferenceEndpointError`] + If the Inference Endpoint ended up in a failed state. + [`InferenceEndpointTimeoutError`] + If the Inference Endpoint is not deployed after `timeout` seconds. + """ + if timeout is not None and timeout < 0: + raise ValueError("`timeout` cannot be negative.") + if refresh_every <= 0: + raise ValueError("`refresh_every` must be positive.") + + start = time.time() + while True: + if self.url is not None: + # Means the URL is provisioned => check if the endpoint is reachable + response = get_session().get(self.url, headers=self._api._build_hf_headers(token=self._token)) + if response.status_code == 200: + logger.info("Inference Endpoint is ready to be used.") + return self + if self.status == InferenceEndpointStatus.FAILED: + raise InferenceEndpointError( + f"Inference Endpoint {self.name} failed to deploy. Please check the logs for more information." + ) + if timeout is not None: + if time.time() - start > timeout: + raise InferenceEndpointTimeoutError("Timeout while waiting for Inference Endpoint to be deployed.") + logger.info(f"Inference Endpoint is not deployed yet ({self.status}). Waiting {refresh_every}s...") + time.sleep(refresh_every) + self.fetch() + + def fetch(self) -> "InferenceEndpoint": + """Fetch latest information about the Inference Endpoint. + + Returns: + [`InferenceEndpoint`]: the same Inference Endpoint, mutated in place with the latest data. + """ + obj = self._api.get_inference_endpoint(name=self.name, namespace=self.namespace, token=self._token) # type: ignore [arg-type] + self.raw = obj.raw + self._populate_from_raw() + return self + + def update( + self, + *, + # Compute update + accelerator: Optional[str] = None, + instance_size: Optional[str] = None, + instance_type: Optional[str] = None, + min_replica: Optional[int] = None, + max_replica: Optional[int] = None, + scale_to_zero_timeout: Optional[int] = None, + # Model update + repository: Optional[str] = None, + framework: Optional[str] = None, + revision: Optional[str] = None, + task: Optional[str] = None, + custom_image: Optional[Dict] = None, + secrets: Optional[Dict[str, str]] = None, + ) -> "InferenceEndpoint": + """Update the Inference Endpoint. + + This method allows the update of either the compute configuration, the deployed model, or both. All arguments are + optional but at least one must be provided. + + This is an alias for [`HfApi.update_inference_endpoint`]. The current object is mutated in place with the + latest data from the server. + + Args: + accelerator (`str`, *optional*): + The hardware accelerator to be used for inference (e.g. `"cpu"`). + instance_size (`str`, *optional*): + The size or type of the instance to be used for hosting the model (e.g. `"x4"`). + instance_type (`str`, *optional*): + The cloud instance type where the Inference Endpoint will be deployed (e.g. `"intel-icl"`). + min_replica (`int`, *optional*): + The minimum number of replicas (instances) to keep running for the Inference Endpoint. + max_replica (`int`, *optional*): + The maximum number of replicas (instances) to scale to for the Inference Endpoint. + scale_to_zero_timeout (`int`, *optional*): + The duration in minutes before an inactive endpoint is scaled to zero. + + repository (`str`, *optional*): + The name of the model repository associated with the Inference Endpoint (e.g. `"gpt2"`). + framework (`str`, *optional*): + The machine learning framework used for the model (e.g. `"custom"`). + revision (`str`, *optional*): + The specific model revision to deploy on the Inference Endpoint (e.g. `"6c0e6080953db56375760c0471a8c5f2929baf11"`). + task (`str`, *optional*): + The task on which to deploy the model (e.g. `"text-classification"`). + custom_image (`Dict`, *optional*): + A custom Docker image to use for the Inference Endpoint. This is useful if you want to deploy an + Inference Endpoint running on the `text-generation-inference` (TGI) framework (see examples). + secrets (`Dict[str, str]`, *optional*): + Secret values to inject in the container environment. + Returns: + [`InferenceEndpoint`]: the same Inference Endpoint, mutated in place with the latest data. + """ + # Make API call + obj = self._api.update_inference_endpoint( + name=self.name, + namespace=self.namespace, + accelerator=accelerator, + instance_size=instance_size, + instance_type=instance_type, + min_replica=min_replica, + max_replica=max_replica, + scale_to_zero_timeout=scale_to_zero_timeout, + repository=repository, + framework=framework, + revision=revision, + task=task, + custom_image=custom_image, + secrets=secrets, + token=self._token, # type: ignore [arg-type] + ) + + # Mutate current object + self.raw = obj.raw + self._populate_from_raw() + return self + + def pause(self) -> "InferenceEndpoint": + """Pause the Inference Endpoint. + + A paused Inference Endpoint will not be charged. It can be resumed at any time using [`InferenceEndpoint.resume`]. + This is different than scaling the Inference Endpoint to zero with [`InferenceEndpoint.scale_to_zero`], which + would be automatically restarted when a request is made to it. + + This is an alias for [`HfApi.pause_inference_endpoint`]. The current object is mutated in place with the + latest data from the server. + + Returns: + [`InferenceEndpoint`]: the same Inference Endpoint, mutated in place with the latest data. + """ + obj = self._api.pause_inference_endpoint(name=self.name, namespace=self.namespace, token=self._token) # type: ignore [arg-type] + self.raw = obj.raw + self._populate_from_raw() + return self + + def resume(self, running_ok: bool = True) -> "InferenceEndpoint": + """Resume the Inference Endpoint. + + This is an alias for [`HfApi.resume_inference_endpoint`]. The current object is mutated in place with the + latest data from the server. + + Args: + running_ok (`bool`, *optional*): + If `True`, the method will not raise an error if the Inference Endpoint is already running. Defaults to + `True`. + + Returns: + [`InferenceEndpoint`]: the same Inference Endpoint, mutated in place with the latest data. + """ + obj = self._api.resume_inference_endpoint( + name=self.name, namespace=self.namespace, running_ok=running_ok, token=self._token + ) # type: ignore [arg-type] + self.raw = obj.raw + self._populate_from_raw() + return self + + def scale_to_zero(self) -> "InferenceEndpoint": + """Scale Inference Endpoint to zero. + + An Inference Endpoint scaled to zero will not be charged. It will be resume on the next request to it, with a + cold start delay. This is different than pausing the Inference Endpoint with [`InferenceEndpoint.pause`], which + would require a manual resume with [`InferenceEndpoint.resume`]. + + This is an alias for [`HfApi.scale_to_zero_inference_endpoint`]. The current object is mutated in place with the + latest data from the server. + + Returns: + [`InferenceEndpoint`]: the same Inference Endpoint, mutated in place with the latest data. + """ + obj = self._api.scale_to_zero_inference_endpoint(name=self.name, namespace=self.namespace, token=self._token) # type: ignore [arg-type] + self.raw = obj.raw + self._populate_from_raw() + return self + + def delete(self) -> None: + """Delete the Inference Endpoint. + + This operation is not reversible. If you don't want to be charged for an Inference Endpoint, it is preferable + to pause it with [`InferenceEndpoint.pause`] or scale it to zero with [`InferenceEndpoint.scale_to_zero`]. + + This is an alias for [`HfApi.delete_inference_endpoint`]. + """ + self._api.delete_inference_endpoint(name=self.name, namespace=self.namespace, token=self._token) # type: ignore [arg-type] + + def _populate_from_raw(self) -> None: + """Populate fields from raw dictionary. + + Called in __post_init__ + each time the Inference Endpoint is updated. + """ + # Repr fields + self.name = self.raw["name"] + self.repository = self.raw["model"]["repository"] + self.status = self.raw["status"]["state"] + self.url = self.raw["status"].get("url") + + # Other fields + self.framework = self.raw["model"]["framework"] + self.revision = self.raw["model"]["revision"] + self.task = self.raw["model"]["task"] + self.created_at = parse_datetime(self.raw["status"]["createdAt"]) + self.updated_at = parse_datetime(self.raw["status"]["updatedAt"]) + self.type = self.raw["type"] diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_local_folder.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_local_folder.py new file mode 100644 index 0000000000000000000000000000000000000000..049394af1dc15925d01de3f4c87eee33c3f6a161 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_local_folder.py @@ -0,0 +1,425 @@ +# coding=utf-8 +# Copyright 2024-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains utilities to handle the `../.cache/huggingface` folder in local directories. + +First discussed in https://github.com/huggingface/huggingface_hub/issues/1738 to store +download metadata when downloading files from the hub to a local directory (without +using the cache). + +./.cache/huggingface folder structure: +[4.0K] data +├── [4.0K] .cache +│ └── [4.0K] huggingface +│ └── [4.0K] download +│ ├── [ 16] file.parquet.metadata +│ ├── [ 16] file.txt.metadata +│ └── [4.0K] folder +│ └── [ 16] file.parquet.metadata +│ +├── [6.5G] file.parquet +├── [1.5K] file.txt +└── [4.0K] folder + └── [ 16] file.parquet + + +Download metadata file structure: +``` +# file.txt.metadata +11c5a3d5811f50298f278a704980280950aedb10 +a16a55fda99d2f2e7b69cce5cf93ff4ad3049930 +1712656091.123 + +# file.parquet.metadata +11c5a3d5811f50298f278a704980280950aedb10 +7c5d3f4b8b76583b422fcb9189ad6c89d5d97a094541ce8932dce3ecabde1421 +1712656091.123 +} +``` +""" + +import logging +import os +import time +from dataclasses import dataclass +from functools import lru_cache +from pathlib import Path +from typing import Optional + +from .utils import WeakFileLock + + +logger = logging.getLogger(__name__) + + +@dataclass +class LocalDownloadFilePaths: + """ + Paths to the files related to a download process in a local dir. + + Returned by [`get_local_download_paths`]. + + Attributes: + file_path (`Path`): + Path where the file will be saved. + lock_path (`Path`): + Path to the lock file used to ensure atomicity when reading/writing metadata. + metadata_path (`Path`): + Path to the metadata file. + """ + + file_path: Path + lock_path: Path + metadata_path: Path + + def incomplete_path(self, etag: str) -> Path: + """Return the path where a file will be temporarily downloaded before being moved to `file_path`.""" + return self.metadata_path.with_suffix(f".{etag}.incomplete") + + +@dataclass(frozen=True) +class LocalUploadFilePaths: + """ + Paths to the files related to an upload process in a local dir. + + Returned by [`get_local_upload_paths`]. + + Attributes: + path_in_repo (`str`): + Path of the file in the repo. + file_path (`Path`): + Path where the file will be saved. + lock_path (`Path`): + Path to the lock file used to ensure atomicity when reading/writing metadata. + metadata_path (`Path`): + Path to the metadata file. + """ + + path_in_repo: str + file_path: Path + lock_path: Path + metadata_path: Path + + +@dataclass +class LocalDownloadFileMetadata: + """ + Metadata about a file in the local directory related to a download process. + + Attributes: + filename (`str`): + Path of the file in the repo. + commit_hash (`str`): + Commit hash of the file in the repo. + etag (`str`): + ETag of the file in the repo. Used to check if the file has changed. + For LFS files, this is the sha256 of the file. For regular files, it corresponds to the git hash. + timestamp (`int`): + Unix timestamp of when the metadata was saved i.e. when the metadata was accurate. + """ + + filename: str + commit_hash: str + etag: str + timestamp: float + + +@dataclass +class LocalUploadFileMetadata: + """ + Metadata about a file in the local directory related to an upload process. + """ + + size: int + + # Default values correspond to "we don't know yet" + timestamp: Optional[float] = None + should_ignore: Optional[bool] = None + sha256: Optional[str] = None + upload_mode: Optional[str] = None + is_uploaded: bool = False + is_committed: bool = False + + def save(self, paths: LocalUploadFilePaths) -> None: + """Save the metadata to disk.""" + with WeakFileLock(paths.lock_path): + with paths.metadata_path.open("w") as f: + new_timestamp = time.time() + f.write(str(new_timestamp) + "\n") + + f.write(str(self.size)) # never None + f.write("\n") + + if self.should_ignore is not None: + f.write(str(int(self.should_ignore))) + f.write("\n") + + if self.sha256 is not None: + f.write(self.sha256) + f.write("\n") + + if self.upload_mode is not None: + f.write(self.upload_mode) + f.write("\n") + + f.write(str(int(self.is_uploaded)) + "\n") + f.write(str(int(self.is_committed)) + "\n") + + self.timestamp = new_timestamp + + +@lru_cache(maxsize=128) # ensure singleton +def get_local_download_paths(local_dir: Path, filename: str) -> LocalDownloadFilePaths: + """Compute paths to the files related to a download process. + + Folders containing the paths are all guaranteed to exist. + + Args: + local_dir (`Path`): + Path to the local directory in which files are downloaded. + filename (`str`): + Path of the file in the repo. + + Return: + [`LocalDownloadFilePaths`]: the paths to the files (file_path, lock_path, metadata_path, incomplete_path). + """ + # filename is the path in the Hub repository (separated by '/') + # make sure to have a cross platform transcription + sanitized_filename = os.path.join(*filename.split("/")) + if os.name == "nt": + if sanitized_filename.startswith("..\\") or "\\..\\" in sanitized_filename: + raise ValueError( + f"Invalid filename: cannot handle filename '{sanitized_filename}' on Windows. Please ask the repository" + " owner to rename this file." + ) + file_path = local_dir / sanitized_filename + metadata_path = _huggingface_dir(local_dir) / "download" / f"{sanitized_filename}.metadata" + lock_path = metadata_path.with_suffix(".lock") + + # Some Windows versions do not allow for paths longer than 255 characters. + # In this case, we must specify it as an extended path by using the "\\?\" prefix + if os.name == "nt": + if not str(local_dir).startswith("\\\\?\\") and len(os.path.abspath(lock_path)) > 255: + file_path = Path("\\\\?\\" + os.path.abspath(file_path)) + lock_path = Path("\\\\?\\" + os.path.abspath(lock_path)) + metadata_path = Path("\\\\?\\" + os.path.abspath(metadata_path)) + + file_path.parent.mkdir(parents=True, exist_ok=True) + metadata_path.parent.mkdir(parents=True, exist_ok=True) + return LocalDownloadFilePaths(file_path=file_path, lock_path=lock_path, metadata_path=metadata_path) + + +@lru_cache(maxsize=128) # ensure singleton +def get_local_upload_paths(local_dir: Path, filename: str) -> LocalUploadFilePaths: + """Compute paths to the files related to an upload process. + + Folders containing the paths are all guaranteed to exist. + + Args: + local_dir (`Path`): + Path to the local directory that is uploaded. + filename (`str`): + Path of the file in the repo. + + Return: + [`LocalUploadFilePaths`]: the paths to the files (file_path, lock_path, metadata_path). + """ + # filename is the path in the Hub repository (separated by '/') + # make sure to have a cross platform transcription + sanitized_filename = os.path.join(*filename.split("/")) + if os.name == "nt": + if sanitized_filename.startswith("..\\") or "\\..\\" in sanitized_filename: + raise ValueError( + f"Invalid filename: cannot handle filename '{sanitized_filename}' on Windows. Please ask the repository" + " owner to rename this file." + ) + file_path = local_dir / sanitized_filename + metadata_path = _huggingface_dir(local_dir) / "upload" / f"{sanitized_filename}.metadata" + lock_path = metadata_path.with_suffix(".lock") + + # Some Windows versions do not allow for paths longer than 255 characters. + # In this case, we must specify it as an extended path by using the "\\?\" prefix + if os.name == "nt": + if not str(local_dir).startswith("\\\\?\\") and len(os.path.abspath(lock_path)) > 255: + file_path = Path("\\\\?\\" + os.path.abspath(file_path)) + lock_path = Path("\\\\?\\" + os.path.abspath(lock_path)) + metadata_path = Path("\\\\?\\" + os.path.abspath(metadata_path)) + + file_path.parent.mkdir(parents=True, exist_ok=True) + metadata_path.parent.mkdir(parents=True, exist_ok=True) + return LocalUploadFilePaths( + path_in_repo=filename, file_path=file_path, lock_path=lock_path, metadata_path=metadata_path + ) + + +def read_download_metadata(local_dir: Path, filename: str) -> Optional[LocalDownloadFileMetadata]: + """Read metadata about a file in the local directory related to a download process. + + Args: + local_dir (`Path`): + Path to the local directory in which files are downloaded. + filename (`str`): + Path of the file in the repo. + + Return: + `[LocalDownloadFileMetadata]` or `None`: the metadata if it exists, `None` otherwise. + """ + paths = get_local_download_paths(local_dir, filename) + with WeakFileLock(paths.lock_path): + if paths.metadata_path.exists(): + try: + with paths.metadata_path.open() as f: + commit_hash = f.readline().strip() + etag = f.readline().strip() + timestamp = float(f.readline().strip()) + metadata = LocalDownloadFileMetadata( + filename=filename, + commit_hash=commit_hash, + etag=etag, + timestamp=timestamp, + ) + except Exception as e: + # remove the metadata file if it is corrupted / not the right format + logger.warning( + f"Invalid metadata file {paths.metadata_path}: {e}. Removing it from disk and continue." + ) + try: + paths.metadata_path.unlink() + except Exception as e: + logger.warning(f"Could not remove corrupted metadata file {paths.metadata_path}: {e}") + + try: + # check if the file exists and hasn't been modified since the metadata was saved + stat = paths.file_path.stat() + if ( + stat.st_mtime - 1 <= metadata.timestamp + ): # allow 1s difference as stat.st_mtime might not be precise + return metadata + logger.info(f"Ignored metadata for '{filename}' (outdated). Will re-compute hash.") + except FileNotFoundError: + # file does not exist => metadata is outdated + return None + return None + + +def read_upload_metadata(local_dir: Path, filename: str) -> LocalUploadFileMetadata: + """Read metadata about a file in the local directory related to an upload process. + + TODO: factorize logic with `read_download_metadata`. + + Args: + local_dir (`Path`): + Path to the local directory in which files are downloaded. + filename (`str`): + Path of the file in the repo. + + Return: + `[LocalUploadFileMetadata]` or `None`: the metadata if it exists, `None` otherwise. + """ + paths = get_local_upload_paths(local_dir, filename) + with WeakFileLock(paths.lock_path): + if paths.metadata_path.exists(): + try: + with paths.metadata_path.open() as f: + timestamp = float(f.readline().strip()) + + size = int(f.readline().strip()) # never None + + _should_ignore = f.readline().strip() + should_ignore = None if _should_ignore == "" else bool(int(_should_ignore)) + + _sha256 = f.readline().strip() + sha256 = None if _sha256 == "" else _sha256 + + _upload_mode = f.readline().strip() + upload_mode = None if _upload_mode == "" else _upload_mode + if upload_mode not in (None, "regular", "lfs"): + raise ValueError(f"Invalid upload mode in metadata {paths.path_in_repo}: {upload_mode}") + + is_uploaded = bool(int(f.readline().strip())) + is_committed = bool(int(f.readline().strip())) + + metadata = LocalUploadFileMetadata( + timestamp=timestamp, + size=size, + should_ignore=should_ignore, + sha256=sha256, + upload_mode=upload_mode, + is_uploaded=is_uploaded, + is_committed=is_committed, + ) + except Exception as e: + # remove the metadata file if it is corrupted / not the right format + logger.warning( + f"Invalid metadata file {paths.metadata_path}: {e}. Removing it from disk and continue." + ) + try: + paths.metadata_path.unlink() + except Exception as e: + logger.warning(f"Could not remove corrupted metadata file {paths.metadata_path}: {e}") + + # TODO: can we do better? + if ( + metadata.timestamp is not None + and metadata.is_uploaded # file was uploaded + and not metadata.is_committed # but not committed + and time.time() - metadata.timestamp > 20 * 3600 # and it's been more than 20 hours + ): # => we consider it as garbage-collected by S3 + metadata.is_uploaded = False + + # check if the file exists and hasn't been modified since the metadata was saved + try: + if metadata.timestamp is not None and paths.file_path.stat().st_mtime <= metadata.timestamp: + return metadata + logger.info(f"Ignored metadata for '{filename}' (outdated). Will re-compute hash.") + except FileNotFoundError: + # file does not exist => metadata is outdated + pass + + # empty metadata => we don't know anything expect its size + return LocalUploadFileMetadata(size=paths.file_path.stat().st_size) + + +def write_download_metadata(local_dir: Path, filename: str, commit_hash: str, etag: str) -> None: + """Write metadata about a file in the local directory related to a download process. + + Args: + local_dir (`Path`): + Path to the local directory in which files are downloaded. + """ + paths = get_local_download_paths(local_dir, filename) + with WeakFileLock(paths.lock_path): + with paths.metadata_path.open("w") as f: + f.write(f"{commit_hash}\n{etag}\n{time.time()}\n") + + +@lru_cache() +def _huggingface_dir(local_dir: Path) -> Path: + """Return the path to the `.cache/huggingface` directory in a local directory.""" + # Wrap in lru_cache to avoid overwriting the .gitignore file if called multiple times + path = local_dir / ".cache" / "huggingface" + path.mkdir(exist_ok=True, parents=True) + + # Create a .gitignore file in the .cache/huggingface directory if it doesn't exist + # Should be thread-safe enough like this. + gitignore = path / ".gitignore" + gitignore_lock = path / ".gitignore.lock" + if not gitignore.exists(): + try: + with WeakFileLock(gitignore_lock): + gitignore.write_text("*") + gitignore_lock.unlink() + except OSError: # FileNotFoundError, PermissionError, etc. + pass + return path diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_login.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_login.py new file mode 100644 index 0000000000000000000000000000000000000000..29014377520948cf34905502e36d1d87a379543e --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_login.py @@ -0,0 +1,536 @@ +# Copyright 2020 The HuggingFace Team. All rights reserved. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains methods to log in to the Hub.""" + +import os +import subprocess +from functools import partial +from getpass import getpass +from pathlib import Path +from typing import Optional + +from . import constants +from .commands._cli_utils import ANSI +from .utils import ( + capture_output, + get_token, + is_google_colab, + is_notebook, + list_credential_helpers, + logging, + run_subprocess, + set_git_credential, + unset_git_credential, +) +from .utils._auth import ( + _get_token_by_name, + _get_token_from_environment, + _get_token_from_file, + _get_token_from_google_colab, + _save_stored_tokens, + _save_token, + get_stored_tokens, +) + + +logger = logging.get_logger(__name__) + +_HF_LOGO_ASCII = """ + _| _| _| _| _|_|_| _|_|_| _|_|_| _| _| _|_|_| _|_|_|_| _|_| _|_|_| _|_|_|_| + _| _| _| _| _| _| _| _|_| _| _| _| _| _| _| _| + _|_|_|_| _| _| _| _|_| _| _|_| _| _| _| _| _| _|_| _|_|_| _|_|_|_| _| _|_|_| + _| _| _| _| _| _| _| _| _| _| _|_| _| _| _| _| _| _| _| + _| _| _|_| _|_|_| _|_|_| _|_|_| _| _| _|_|_| _| _| _| _|_|_| _|_|_|_| +""" + + +def login( + token: Optional[str] = None, + add_to_git_credential: bool = False, + new_session: bool = True, + write_permission: bool = False, +) -> None: + """Login the machine to access the Hub. + + The `token` is persisted in cache and set as a git credential. Once done, the machine + is logged in and the access token will be available across all `huggingface_hub` + components. If `token` is not provided, it will be prompted to the user either with + a widget (in a notebook) or via the terminal. + + To log in from outside of a script, one can also use `huggingface-cli login` which is + a cli command that wraps [`login`]. + + + + [`login`] is a drop-in replacement method for [`notebook_login`] as it wraps and + extends its capabilities. + + + + + + When the token is not passed, [`login`] will automatically detect if the script runs + in a notebook or not. However, this detection might not be accurate due to the + variety of notebooks that exists nowadays. If that is the case, you can always force + the UI by using [`notebook_login`] or [`interpreter_login`]. + + + + Args: + token (`str`, *optional*): + User access token to generate from https://huggingface.co/settings/token. + add_to_git_credential (`bool`, defaults to `False`): + If `True`, token will be set as git credential. If no git credential helper + is configured, a warning will be displayed to the user. If `token` is `None`, + the value of `add_to_git_credential` is ignored and will be prompted again + to the end user. + new_session (`bool`, defaults to `True`): + If `True`, will request a token even if one is already saved on the machine. + write_permission (`bool`, defaults to `False`): + If `True`, requires a token with write permission. + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If an organization token is passed. Only personal account tokens are valid + to log in. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If token is invalid. + [`ImportError`](https://docs.python.org/3/library/exceptions.html#ImportError) + If running in a notebook but `ipywidgets` is not installed. + """ + if token is not None: + if not add_to_git_credential: + logger.info( + "The token has not been saved to the git credentials helper. Pass " + "`add_to_git_credential=True` in this function directly or " + "`--add-to-git-credential` if using via `huggingface-cli` if " + "you want to set the git credential as well." + ) + _login(token, add_to_git_credential=add_to_git_credential, write_permission=write_permission) + elif is_notebook(): + notebook_login(new_session=new_session, write_permission=write_permission) + else: + interpreter_login(new_session=new_session, write_permission=write_permission) + + +def logout(token_name: Optional[str] = None) -> None: + """Logout the machine from the Hub. + + Token is deleted from the machine and removed from git credential. + + Args: + token_name (`str`, *optional*): + Name of the access token to logout from. If `None`, will logout from all saved access tokens. + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError): + If the access token name is not found. + """ + if get_token() is None and not get_stored_tokens(): # No active token and no saved access tokens + logger.warning("Not logged in!") + return + if not token_name: + # Delete all saved access tokens and token + for file_path in (constants.HF_TOKEN_PATH, constants.HF_STORED_TOKENS_PATH): + try: + Path(file_path).unlink() + except FileNotFoundError: + pass + logger.info("Successfully logged out from all access tokens.") + else: + _logout_from_token(token_name) + logger.info(f"Successfully logged out from access token: {token_name}.") + + unset_git_credential() + + # Check if still logged in + if _get_token_from_google_colab() is not None: + raise EnvironmentError( + "You are automatically logged in using a Google Colab secret.\n" + "To log out, you must unset the `HF_TOKEN` secret in your Colab settings." + ) + if _get_token_from_environment() is not None: + raise EnvironmentError( + "Token has been deleted from your machine but you are still logged in.\n" + "To log out, you must clear out both `HF_TOKEN` and `HUGGING_FACE_HUB_TOKEN` environment variables." + ) + + +def auth_switch(token_name: str, add_to_git_credential: bool = False) -> None: + """Switch to a different access token. + + Args: + token_name (`str`): + Name of the access token to switch to. + add_to_git_credential (`bool`, defaults to `False`): + If `True`, token will be set as git credential. If no git credential helper + is configured, a warning will be displayed to the user. If `token` is `None`, + the value of `add_to_git_credential` is ignored and will be prompted again + to the end user. + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError): + If the access token name is not found. + """ + token = _get_token_by_name(token_name) + if not token: + raise ValueError(f"Access token {token_name} not found in {constants.HF_STORED_TOKENS_PATH}") + # Write token to HF_TOKEN_PATH + _set_active_token(token_name, add_to_git_credential) + logger.info(f"The current active token is: {token_name}") + token_from_environment = _get_token_from_environment() + if token_from_environment is not None and token_from_environment != token: + logger.warning( + "The environment variable `HF_TOKEN` is set and will override the access token you've just switched to." + ) + + +def auth_list() -> None: + """List all stored access tokens.""" + tokens = get_stored_tokens() + + if not tokens: + logger.info("No access tokens found.") + return + # Find current token + current_token = get_token() + current_token_name = None + for token_name in tokens: + if tokens.get(token_name) == current_token: + current_token_name = token_name + # Print header + max_offset = max(len("token"), max(len(token) for token in tokens)) + 2 + print(f" {{:<{max_offset}}}| {{:<15}}".format("name", "token")) + print("-" * (max_offset + 2) + "|" + "-" * 15) + + # Print saved access tokens + for token_name in tokens: + token = tokens.get(token_name, "") + masked_token = f"{token[:3]}****{token[-4:]}" if token != "" else token + is_current = "*" if token == current_token else " " + + print(f"{is_current} {{:<{max_offset}}}| {{:<15}}".format(token_name, masked_token)) + + if _get_token_from_environment(): + logger.warning( + "\nNote: Environment variable `HF_TOKEN` is set and is the current active token independently from the stored tokens listed above." + ) + elif current_token_name is None: + logger.warning( + "\nNote: No active token is set and no environment variable `HF_TOKEN` is found. Use `huggingface-cli login` to log in." + ) + + +### +# Interpreter-based login (text) +### + + +def interpreter_login(new_session: bool = True, write_permission: bool = False) -> None: + """ + Displays a prompt to log in to the HF website and store the token. + + This is equivalent to [`login`] without passing a token when not run in a notebook. + [`interpreter_login`] is useful if you want to force the use of the terminal prompt + instead of a notebook widget. + + For more details, see [`login`]. + + Args: + new_session (`bool`, defaults to `True`): + If `True`, will request a token even if one is already saved on the machine. + write_permission (`bool`, defaults to `False`): + If `True`, requires a token with write permission. + + """ + if not new_session and _current_token_okay(write_permission=write_permission): + logger.info("User is already logged in.") + return + + from .commands.delete_cache import _ask_for_confirmation_no_tui + + print(_HF_LOGO_ASCII) + if get_token() is not None: + logger.info( + " A token is already saved on your machine. Run `huggingface-cli" + " whoami` to get more information or `huggingface-cli logout` if you want" + " to log out." + ) + logger.info(" Setting a new token will erase the existing one.") + + logger.info( + " To log in, `huggingface_hub` requires a token generated from https://huggingface.co/settings/tokens ." + ) + if os.name == "nt": + logger.info("Token can be pasted using 'Right-Click'.") + token = getpass("Enter your token (input will not be visible): ") + add_to_git_credential = _ask_for_confirmation_no_tui("Add token as git credential?") + + _login( + token=token, + add_to_git_credential=add_to_git_credential, + write_permission=write_permission, + ) + + +### +# Notebook-based login (widget) +### + +NOTEBOOK_LOGIN_PASSWORD_HTML = """

Immediately click login after typing your password or +it might be stored in plain text in this notebook file.
""" + + +NOTEBOOK_LOGIN_TOKEN_HTML_START = """

Copy a token from your Hugging Face +tokens page and paste it below.
Immediately click login after copying +your token or it might be stored in plain text in this notebook file.
""" + + +NOTEBOOK_LOGIN_TOKEN_HTML_END = """ +Pro Tip: If you don't already have one, you can create a dedicated +'notebooks' token with 'write' access, that you can then easily reuse for all +notebooks. """ + + +def notebook_login(new_session: bool = True, write_permission: bool = False) -> None: + """ + Displays a widget to log in to the HF website and store the token. + + This is equivalent to [`login`] without passing a token when run in a notebook. + [`notebook_login`] is useful if you want to force the use of the notebook widget + instead of a prompt in the terminal. + + For more details, see [`login`]. + + Args: + new_session (`bool`, defaults to `True`): + If `True`, will request a token even if one is already saved on the machine. + write_permission (`bool`, defaults to `False`): + If `True`, requires a token with write permission. + """ + try: + import ipywidgets.widgets as widgets # type: ignore + from IPython.display import display # type: ignore + except ImportError: + raise ImportError( + "The `notebook_login` function can only be used in a notebook (Jupyter or" + " Colab) and you need the `ipywidgets` module: `pip install ipywidgets`." + ) + if not new_session and _current_token_okay(write_permission=write_permission): + logger.info("User is already logged in.") + return + + box_layout = widgets.Layout(display="flex", flex_flow="column", align_items="center", width="50%") + + token_widget = widgets.Password(description="Token:") + git_checkbox_widget = widgets.Checkbox(value=True, description="Add token as git credential?") + token_finish_button = widgets.Button(description="Login") + + login_token_widget = widgets.VBox( + [ + widgets.HTML(NOTEBOOK_LOGIN_TOKEN_HTML_START), + token_widget, + git_checkbox_widget, + token_finish_button, + widgets.HTML(NOTEBOOK_LOGIN_TOKEN_HTML_END), + ], + layout=box_layout, + ) + display(login_token_widget) + + # On click events + def login_token_event(t, write_permission: bool = False): + """ + Event handler for the login button. + + Args: + write_permission (`bool`, defaults to `False`): + If `True`, requires a token with write permission. + """ + token = token_widget.value + add_to_git_credential = git_checkbox_widget.value + # Erase token and clear value to make sure it's not saved in the notebook. + token_widget.value = "" + # Hide inputs + login_token_widget.children = [widgets.Label("Connecting...")] + try: + with capture_output() as captured: + _login(token, add_to_git_credential=add_to_git_credential, write_permission=write_permission) + message = captured.getvalue() + except Exception as error: + message = str(error) + # Print result (success message or error) + login_token_widget.children = [widgets.Label(line) for line in message.split("\n") if line.strip()] + + token_finish_button.on_click(partial(login_token_event, write_permission=write_permission)) + + +### +# Login private helpers +### + + +def _login( + token: str, + add_to_git_credential: bool, + write_permission: bool = False, +) -> None: + from .hf_api import whoami # avoid circular import + + if token.startswith("api_org"): + raise ValueError("You must use your personal account token, not an organization token.") + + token_info = whoami(token) + permission = token_info["auth"]["accessToken"]["role"] + if write_permission and permission != "write": + raise ValueError( + "Token is valid but is 'read-only' and a 'write' token is required.\nPlease provide a new token with" + " correct permission." + ) + logger.info(f"Token is valid (permission: {permission}).") + + token_name = token_info["auth"]["accessToken"]["displayName"] + # Store token locally + _save_token(token=token, token_name=token_name) + # Set active token + _set_active_token(token_name=token_name, add_to_git_credential=add_to_git_credential) + logger.info("Login successful.") + if _get_token_from_environment(): + logger.warning( + "Note: Environment variable`HF_TOKEN` is set and is the current active token independently from the token you've just configured." + ) + else: + logger.info(f"The current active token is: `{token_name}`") + + +def _logout_from_token(token_name: str) -> None: + """Logout from a specific access token. + + Args: + token_name (`str`): + The name of the access token to logout from. + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError): + If the access token name is not found. + """ + stored_tokens = get_stored_tokens() + # If there is no access tokens saved or the access token name is not found, do nothing + if not stored_tokens or token_name not in stored_tokens: + return + + token = stored_tokens.pop(token_name) + _save_stored_tokens(stored_tokens) + + if token == _get_token_from_file(): + logger.warning(f"Active token '{token_name}' has been deleted.") + Path(constants.HF_TOKEN_PATH).unlink(missing_ok=True) + + +def _set_active_token( + token_name: str, + add_to_git_credential: bool, +) -> None: + """Set the active access token. + + Args: + token_name (`str`): + The name of the token to set as active. + """ + token = _get_token_by_name(token_name) + if not token: + raise ValueError(f"Token {token_name} not found in {constants.HF_STORED_TOKENS_PATH}") + if add_to_git_credential: + if _is_git_credential_helper_configured(): + set_git_credential(token) + logger.info( + "Your token has been saved in your configured git credential helpers" + + f" ({','.join(list_credential_helpers())})." + ) + else: + logger.warning("Token has not been saved to git credential helper.") + # Write token to HF_TOKEN_PATH + path = Path(constants.HF_TOKEN_PATH) + path.parent.mkdir(parents=True, exist_ok=True) + path.write_text(token) + logger.info(f"Your token has been saved to {constants.HF_TOKEN_PATH}") + + +def _current_token_okay(write_permission: bool = False): + """Check if the current token is valid. + + Args: + write_permission (`bool`, defaults to `False`): + If `True`, requires a token with write permission. + + Returns: + `bool`: `True` if the current token is valid, `False` otherwise. + """ + from .hf_api import get_token_permission # avoid circular import + + permission = get_token_permission() + if permission is None or (write_permission and permission != "write"): + return False + return True + + +def _is_git_credential_helper_configured() -> bool: + """Check if a git credential helper is configured. + + Warns user if not the case (except for Google Colab where "store" is set by default + by `huggingface_hub`). + """ + helpers = list_credential_helpers() + if len(helpers) > 0: + return True # Do not warn: at least 1 helper is set + + # Only in Google Colab to avoid the warning message + # See https://github.com/huggingface/huggingface_hub/issues/1043#issuecomment-1247010710 + if is_google_colab(): + _set_store_as_git_credential_helper_globally() + return True # Do not warn: "store" is used by default in Google Colab + + # Otherwise, warn user + print( + ANSI.red( + "Cannot authenticate through git-credential as no helper is defined on your" + " machine.\nYou might have to re-authenticate when pushing to the Hugging" + " Face Hub.\nRun the following command in your terminal in case you want to" + " set the 'store' credential helper as default.\n\ngit config --global" + " credential.helper store\n\nRead" + " https://git-scm.com/book/en/v2/Git-Tools-Credential-Storage for more" + " details." + ) + ) + return False + + +def _set_store_as_git_credential_helper_globally() -> None: + """Set globally the credential.helper to `store`. + + To be used only in Google Colab as we assume the user doesn't care about the git + credential config. It is the only particular case where we don't want to display the + warning message in [`notebook_login()`]. + + Related: + - https://github.com/huggingface/huggingface_hub/issues/1043 + - https://github.com/huggingface/huggingface_hub/issues/1051 + - https://git-scm.com/docs/git-credential-store + """ + try: + run_subprocess("git config --global credential.helper store") + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_multi_commits.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_multi_commits.py new file mode 100644 index 0000000000000000000000000000000000000000..c79377b092096140be8297087fa5ba1b1a813d43 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_multi_commits.py @@ -0,0 +1,306 @@ +# coding=utf-8 +# Copyright 2023-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains utilities to multi-commits (i.e. push changes iteratively on a PR).""" + +import re +from dataclasses import dataclass, field +from typing import TYPE_CHECKING, Iterable, List, Optional, Set, Tuple, Union + +from ._commit_api import CommitOperationAdd, CommitOperationDelete +from .community import DiscussionWithDetails +from .utils import experimental +from .utils._cache_manager import _format_size +from .utils.insecure_hashlib import sha256 + + +if TYPE_CHECKING: + from .hf_api import HfApi + + +class MultiCommitException(Exception): + """Base exception for any exception happening while doing a multi-commit.""" + + +MULTI_COMMIT_PR_DESCRIPTION_TEMPLATE = """ +## {commit_message} + +{commit_description} + +**Multi commit ID:** {multi_commit_id} + +Scheduled commits: + +{multi_commit_strategy} + +_This is a PR opened using the `huggingface_hub` library in the context of a multi-commit. PR can be commented as a usual PR. However, please be aware that manually updating the PR description, changing the PR status, or pushing new commits, is not recommended as it might corrupt the commit process. Learn more about multi-commits [in this guide](https://huggingface.co/docs/huggingface_hub/main/guides/upload)._ +""" + +MULTI_COMMIT_PR_COMPLETION_COMMENT_TEMPLATE = """ +Multi-commit is now completed! You can ping the repo owner to review the changes. This PR can now be commented or modified without risking to corrupt it. + +_This is a comment posted using the `huggingface_hub` library in the context of a multi-commit. Learn more about multi-commits [in this guide](https://huggingface.co/docs/huggingface_hub/main/guides/upload)._ +""" + +MULTI_COMMIT_PR_CLOSING_COMMENT_TEMPLATE = """ +`create_pr=False` has been passed so PR is automatically merged. + +_This is a comment posted using the `huggingface_hub` library in the context of a multi-commit. Learn more about multi-commits [in this guide](https://huggingface.co/docs/huggingface_hub/main/guides/upload)._ +""" + +MULTI_COMMIT_PR_CLOSE_COMMENT_FAILURE_NO_CHANGES_TEMPLATE = """ +Cannot merge Pull Requests as no changes are associated. This PR will be closed automatically. + +_This is a comment posted using the `huggingface_hub` library in the context of a multi-commit. Learn more about multi-commits [in this guide](https://huggingface.co/docs/huggingface_hub/main/guides/upload)._ +""" + +MULTI_COMMIT_PR_CLOSE_COMMENT_FAILURE_BAD_REQUEST_TEMPLATE = """ +An error occurred while trying to merge the Pull Request: `{error_message}`. + +_This is a comment posted using the `huggingface_hub` library in the context of a multi-commit. Learn more about multi-commits [in this guide](https://huggingface.co/docs/huggingface_hub/main/guides/upload)._ +""" + + +STEP_ID_REGEX = re.compile(r"- \[(?P[ |x])\].*(?P[a-fA-F0-9]{64})", flags=re.MULTILINE) + + +@experimental +def plan_multi_commits( + operations: Iterable[Union[CommitOperationAdd, CommitOperationDelete]], + max_operations_per_commit: int = 50, + max_upload_size_per_commit: int = 2 * 1024 * 1024 * 1024, +) -> Tuple[List[List[CommitOperationAdd]], List[List[CommitOperationDelete]]]: + """Split a list of operations in a list of commits to perform. + + Implementation follows a sub-optimal (yet simple) algorithm: + 1. Delete operations are grouped together by commits of maximum `max_operations_per_commits` operations. + 2. All additions exceeding `max_upload_size_per_commit` are committed 1 by 1. + 3. All remaining additions are grouped together and split each time the `max_operations_per_commit` or the + `max_upload_size_per_commit` limit is reached. + + We do not try to optimize the splitting to get the lowest number of commits as this is a NP-hard problem (see + [bin packing problem](https://en.wikipedia.org/wiki/Bin_packing_problem)). For our use case, it is not problematic + to use a sub-optimal solution so we favored an easy-to-explain implementation. + + Args: + operations (`List` of [`~hf_api.CommitOperation`]): + The list of operations to split into commits. + max_operations_per_commit (`int`): + Maximum number of operations in a single commit. Defaults to 50. + max_upload_size_per_commit (`int`): + Maximum size to upload (in bytes) in a single commit. Defaults to 2GB. Files bigger than this limit are + uploaded, 1 per commit. + + Returns: + `Tuple[List[List[CommitOperationAdd]], List[List[CommitOperationDelete]]]`: a tuple. First item is a list of + lists of [`CommitOperationAdd`] representing the addition commits to push. The second item is a list of lists + of [`CommitOperationDelete`] representing the deletion commits. + + + + `plan_multi_commits` is experimental. Its API and behavior is subject to change in the future without prior notice. + + + + Example: + ```python + >>> from huggingface_hub import HfApi, plan_multi_commits + >>> addition_commits, deletion_commits = plan_multi_commits( + ... operations=[ + ... CommitOperationAdd(...), + ... CommitOperationAdd(...), + ... CommitOperationDelete(...), + ... CommitOperationDelete(...), + ... CommitOperationAdd(...), + ... ], + ... ) + >>> HfApi().create_commits_on_pr( + ... repo_id="my-cool-model", + ... addition_commits=addition_commits, + ... deletion_commits=deletion_commits, + ... (...) + ... verbose=True, + ... ) + ``` + + + + The initial order of the operations is not guaranteed! All deletions will be performed before additions. If you are + not updating multiple times the same file, you are fine. + + + """ + addition_commits: List[List[CommitOperationAdd]] = [] + deletion_commits: List[List[CommitOperationDelete]] = [] + + additions: List[CommitOperationAdd] = [] + additions_size = 0 + deletions: List[CommitOperationDelete] = [] + for op in operations: + if isinstance(op, CommitOperationDelete): + # Group delete operations together + deletions.append(op) + if len(deletions) >= max_operations_per_commit: + deletion_commits.append(deletions) + deletions = [] + + elif op.upload_info.size >= max_upload_size_per_commit: + # Upload huge files 1 by 1 + addition_commits.append([op]) + + elif additions_size + op.upload_info.size < max_upload_size_per_commit: + # Group other additions and split if size limit is reached (either max_nb_files or max_upload_size) + additions.append(op) + additions_size += op.upload_info.size + + else: + addition_commits.append(additions) + additions = [op] + additions_size = op.upload_info.size + + if len(additions) >= max_operations_per_commit: + addition_commits.append(additions) + additions = [] + additions_size = 0 + + if len(additions) > 0: + addition_commits.append(additions) + if len(deletions) > 0: + deletion_commits.append(deletions) + + return addition_commits, deletion_commits + + +@dataclass +class MultiCommitStep: + """Dataclass containing a list of CommitOperation to commit at once. + + A [`MultiCommitStep`] is one atomic part of a [`MultiCommitStrategy`]. Each step is identified by its own + deterministic ID based on the list of commit operations (hexadecimal sha256). ID is persistent between re-runs if + the list of commits is kept the same. + """ + + operations: List[Union[CommitOperationAdd, CommitOperationDelete]] + + id: str = field(init=False) + completed: bool = False + + def __post_init__(self) -> None: + if len(self.operations) == 0: + raise ValueError("A MultiCommitStep must have at least 1 commit operation, got 0.") + + # Generate commit id + sha = sha256() + for op in self.operations: + if isinstance(op, CommitOperationAdd): + sha.update(b"ADD") + sha.update(op.path_in_repo.encode()) + sha.update(op.upload_info.sha256) + elif isinstance(op, CommitOperationDelete): + sha.update(b"DELETE") + sha.update(op.path_in_repo.encode()) + sha.update(str(op.is_folder).encode()) + else: + NotImplementedError() + self.id = sha.hexdigest() + + def __str__(self) -> str: + """Format a step for PR description. + + Formatting can be changed in the future as long as it is single line, starts with `- [ ]`/`- [x]` and contains + `self.id`. Must be able to match `STEP_ID_REGEX`. + """ + additions = [op for op in self.operations if isinstance(op, CommitOperationAdd)] + file_deletions = [op for op in self.operations if isinstance(op, CommitOperationDelete) and not op.is_folder] + folder_deletions = [op for op in self.operations if isinstance(op, CommitOperationDelete) and op.is_folder] + if len(additions) > 0: + return ( + f"- [{'x' if self.completed else ' '}] Upload {len(additions)} file(s) " + f"totalling {_format_size(sum(add.upload_info.size for add in additions))}" + f" ({self.id})" + ) + else: + return ( + f"- [{'x' if self.completed else ' '}] Delete {len(file_deletions)} file(s) and" + f" {len(folder_deletions)} folder(s) ({self.id})" + ) + + +@dataclass +class MultiCommitStrategy: + """Dataclass containing a list of [`MultiCommitStep`] to commit iteratively. + + A strategy is identified by its own deterministic ID based on the list of its steps (hexadecimal sha256). ID is + persistent between re-runs if the list of commits is kept the same. + """ + + addition_commits: List[MultiCommitStep] + deletion_commits: List[MultiCommitStep] + + id: str = field(init=False) + all_steps: Set[str] = field(init=False) + + def __post_init__(self) -> None: + self.all_steps = {step.id for step in self.addition_commits + self.deletion_commits} + if len(self.all_steps) < len(self.addition_commits) + len(self.deletion_commits): + raise ValueError("Got duplicate commits in MultiCommitStrategy. All commits must be unique.") + + if len(self.all_steps) == 0: + raise ValueError("A MultiCommitStrategy must have at least 1 commit, got 0.") + + # Generate strategy id + sha = sha256() + for step in self.addition_commits + self.deletion_commits: + sha.update("new step".encode()) + sha.update(step.id.encode()) + self.id = sha.hexdigest() + + +def multi_commit_create_pull_request( + api: "HfApi", + repo_id: str, + commit_message: str, + commit_description: Optional[str], + strategy: MultiCommitStrategy, + repo_type: Optional[str], + token: Union[str, bool, None] = None, +) -> DiscussionWithDetails: + return api.create_pull_request( + repo_id=repo_id, + title=f"[WIP] {commit_message} (multi-commit {strategy.id})", + description=multi_commit_generate_comment( + commit_message=commit_message, commit_description=commit_description, strategy=strategy + ), + token=token, + repo_type=repo_type, + ) + + +def multi_commit_generate_comment( + commit_message: str, + commit_description: Optional[str], + strategy: MultiCommitStrategy, +) -> str: + return MULTI_COMMIT_PR_DESCRIPTION_TEMPLATE.format( + commit_message=commit_message, + commit_description=commit_description or "", + multi_commit_id=strategy.id, + multi_commit_strategy="\n".join( + str(commit) for commit in strategy.deletion_commits + strategy.addition_commits + ), + ) + + +def multi_commit_parse_pr_description(description: str) -> Set[str]: + return {match[1] for match in STEP_ID_REGEX.findall(description)} diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_snapshot_download.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_snapshot_download.py new file mode 100644 index 0000000000000000000000000000000000000000..90b9246e5322abb8bc605df6169ac7f07e6cdff8 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_snapshot_download.py @@ -0,0 +1,304 @@ +import os +from pathlib import Path +from typing import Dict, List, Literal, Optional, Union + +import requests +from tqdm.auto import tqdm as base_tqdm +from tqdm.contrib.concurrent import thread_map + +from . import constants +from .errors import GatedRepoError, LocalEntryNotFoundError, RepositoryNotFoundError, RevisionNotFoundError +from .file_download import REGEX_COMMIT_HASH, hf_hub_download, repo_folder_name +from .hf_api import DatasetInfo, HfApi, ModelInfo, SpaceInfo +from .utils import OfflineModeIsEnabled, filter_repo_objects, logging, validate_hf_hub_args +from .utils import tqdm as hf_tqdm + + +logger = logging.get_logger(__name__) + + +@validate_hf_hub_args +def snapshot_download( + repo_id: str, + *, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + cache_dir: Union[str, Path, None] = None, + local_dir: Union[str, Path, None] = None, + library_name: Optional[str] = None, + library_version: Optional[str] = None, + user_agent: Optional[Union[Dict, str]] = None, + proxies: Optional[Dict] = None, + etag_timeout: float = constants.DEFAULT_ETAG_TIMEOUT, + force_download: bool = False, + token: Optional[Union[bool, str]] = None, + local_files_only: bool = False, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + max_workers: int = 8, + tqdm_class: Optional[base_tqdm] = None, + headers: Optional[Dict[str, str]] = None, + endpoint: Optional[str] = None, + # Deprecated args + local_dir_use_symlinks: Union[bool, Literal["auto"]] = "auto", + resume_download: Optional[bool] = None, +) -> str: + """Download repo files. + + Download a whole snapshot of a repo's files at the specified revision. This is useful when you want all files from + a repo, because you don't know which ones you will need a priori. All files are nested inside a folder in order + to keep their actual filename relative to that folder. You can also filter which files to download using + `allow_patterns` and `ignore_patterns`. + + If `local_dir` is provided, the file structure from the repo will be replicated in this location. When using this + option, the `cache_dir` will not be used and a `.cache/huggingface/` folder will be created at the root of `local_dir` + to store some metadata related to the downloaded files. While this mechanism is not as robust as the main + cache-system, it's optimized for regularly pulling the latest version of a repository. + + An alternative would be to clone the repo but this requires git and git-lfs to be installed and properly + configured. It is also not possible to filter which files to download when cloning a repository using git. + + Args: + repo_id (`str`): + A user or an organization name and a repo name separated by a `/`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if downloading from a dataset or space, + `None` or `"model"` if downloading from a model. Default is `None`. + revision (`str`, *optional*): + An optional Git revision id which can be a branch name, a tag, or a + commit hash. + cache_dir (`str`, `Path`, *optional*): + Path to the folder where cached files are stored. + local_dir (`str` or `Path`, *optional*): + If provided, the downloaded files will be placed under this directory. + library_name (`str`, *optional*): + The name of the library to which the object corresponds. + library_version (`str`, *optional*): + The version of the library. + user_agent (`str`, `dict`, *optional*): + The user-agent info in the form of a dictionary or a string. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to + `requests.request`. + etag_timeout (`float`, *optional*, defaults to `10`): + When fetching ETag, how many seconds to wait for the server to send + data before giving up which is passed to `requests.request`. + force_download (`bool`, *optional*, defaults to `False`): + Whether the file should be downloaded even if it already exists in the local cache. + token (`str`, `bool`, *optional*): + A token to be used for the download. + - If `True`, the token is read from the HuggingFace config + folder. + - If a string, it's used as the authentication token. + headers (`dict`, *optional*): + Additional headers to include in the request. Those headers take precedence over the others. + local_files_only (`bool`, *optional*, defaults to `False`): + If `True`, avoid downloading the file and return the path to the + local cached file if it exists. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are downloaded. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not downloaded. + max_workers (`int`, *optional*): + Number of concurrent threads to download files (1 thread = 1 file download). + Defaults to 8. + tqdm_class (`tqdm`, *optional*): + If provided, overwrites the default behavior for the progress bar. Passed + argument must inherit from `tqdm.auto.tqdm` or at least mimic its behavior. + Note that the `tqdm_class` is not passed to each individual download. + Defaults to the custom HF progress bar that can be disabled by setting + `HF_HUB_DISABLE_PROGRESS_BARS` environment variable. + + Returns: + `str`: folder path of the repo snapshot. + + Raises: + [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + If `token=True` and the token cannot be found. + [`OSError`](https://docs.python.org/3/library/exceptions.html#OSError) if + ETag cannot be determined. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid. + """ + if cache_dir is None: + cache_dir = constants.HF_HUB_CACHE + if revision is None: + revision = constants.DEFAULT_REVISION + if isinstance(cache_dir, Path): + cache_dir = str(cache_dir) + + if repo_type is None: + repo_type = "model" + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type: {repo_type}. Accepted repo types are: {str(constants.REPO_TYPES)}") + + storage_folder = os.path.join(cache_dir, repo_folder_name(repo_id=repo_id, repo_type=repo_type)) + + repo_info: Union[ModelInfo, DatasetInfo, SpaceInfo, None] = None + api_call_error: Optional[Exception] = None + if not local_files_only: + # try/except logic to handle different errors => taken from `hf_hub_download` + try: + # if we have internet connection we want to list files to download + api = HfApi( + library_name=library_name, + library_version=library_version, + user_agent=user_agent, + endpoint=endpoint, + headers=headers, + ) + repo_info = api.repo_info(repo_id=repo_id, repo_type=repo_type, revision=revision, token=token) + except (requests.exceptions.SSLError, requests.exceptions.ProxyError): + # Actually raise for those subclasses of ConnectionError + raise + except ( + requests.exceptions.ConnectionError, + requests.exceptions.Timeout, + OfflineModeIsEnabled, + ) as error: + # Internet connection is down + # => will try to use local files only + api_call_error = error + pass + except RevisionNotFoundError: + # The repo was found but the revision doesn't exist on the Hub (never existed or got deleted) + raise + except requests.HTTPError as error: + # Multiple reasons for an http error: + # - Repository is private and invalid/missing token sent + # - Repository is gated and invalid/missing token sent + # - Hub is down (error 500 or 504) + # => let's switch to 'local_files_only=True' to check if the files are already cached. + # (if it's not the case, the error will be re-raised) + api_call_error = error + pass + + # At this stage, if `repo_info` is None it means either: + # - internet connection is down + # - internet connection is deactivated (local_files_only=True or HF_HUB_OFFLINE=True) + # - repo is private/gated and invalid/missing token sent + # - Hub is down + # => let's look if we can find the appropriate folder in the cache: + # - if the specified revision is a commit hash, look inside "snapshots". + # - f the specified revision is a branch or tag, look inside "refs". + # => if local_dir is not None, we will return the path to the local folder if it exists. + if repo_info is None: + # Try to get which commit hash corresponds to the specified revision + commit_hash = None + if REGEX_COMMIT_HASH.match(revision): + commit_hash = revision + else: + ref_path = os.path.join(storage_folder, "refs", revision) + if os.path.exists(ref_path): + # retrieve commit_hash from refs file + with open(ref_path) as f: + commit_hash = f.read() + + # Try to locate snapshot folder for this commit hash + if commit_hash is not None: + snapshot_folder = os.path.join(storage_folder, "snapshots", commit_hash) + if os.path.exists(snapshot_folder): + # Snapshot folder exists => let's return it + # (but we can't check if all the files are actually there) + return snapshot_folder + # If local_dir is not None, return it if it exists and is not empty + if local_dir is not None: + local_dir = Path(local_dir) + if local_dir.is_dir() and any(local_dir.iterdir()): + logger.warning( + f"Returning existing local_dir `{local_dir}` as remote repo cannot be accessed in `snapshot_download` ({api_call_error})." + ) + return str(local_dir.resolve()) + # If we couldn't find the appropriate folder on disk, raise an error. + if local_files_only: + raise LocalEntryNotFoundError( + "Cannot find an appropriate cached snapshot folder for the specified revision on the local disk and " + "outgoing traffic has been disabled. To enable repo look-ups and downloads online, pass " + "'local_files_only=False' as input." + ) + elif isinstance(api_call_error, OfflineModeIsEnabled): + raise LocalEntryNotFoundError( + "Cannot find an appropriate cached snapshot folder for the specified revision on the local disk and " + "outgoing traffic has been disabled. To enable repo look-ups and downloads online, set " + "'HF_HUB_OFFLINE=0' as environment variable." + ) from api_call_error + elif isinstance(api_call_error, RepositoryNotFoundError) or isinstance(api_call_error, GatedRepoError): + # Repo not found => let's raise the actual error + raise api_call_error + else: + # Otherwise: most likely a connection issue or Hub downtime => let's warn the user + raise LocalEntryNotFoundError( + "An error happened while trying to locate the files on the Hub and we cannot find the appropriate" + " snapshot folder for the specified revision on the local disk. Please check your internet connection" + " and try again." + ) from api_call_error + + # At this stage, internet connection is up and running + # => let's download the files! + assert repo_info.sha is not None, "Repo info returned from server must have a revision sha." + assert repo_info.siblings is not None, "Repo info returned from server must have a siblings list." + filtered_repo_files = list( + filter_repo_objects( + items=[f.rfilename for f in repo_info.siblings], + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + ) + ) + commit_hash = repo_info.sha + snapshot_folder = os.path.join(storage_folder, "snapshots", commit_hash) + # if passed revision is not identical to commit_hash + # then revision has to be a branch name or tag name. + # In that case store a ref. + if revision != commit_hash: + ref_path = os.path.join(storage_folder, "refs", revision) + os.makedirs(os.path.dirname(ref_path), exist_ok=True) + with open(ref_path, "w") as f: + f.write(commit_hash) + + # we pass the commit_hash to hf_hub_download + # so no network call happens if we already + # have the file locally. + def _inner_hf_hub_download(repo_file: str): + return hf_hub_download( + repo_id, + filename=repo_file, + repo_type=repo_type, + revision=commit_hash, + endpoint=endpoint, + cache_dir=cache_dir, + local_dir=local_dir, + local_dir_use_symlinks=local_dir_use_symlinks, + library_name=library_name, + library_version=library_version, + user_agent=user_agent, + proxies=proxies, + etag_timeout=etag_timeout, + resume_download=resume_download, + force_download=force_download, + token=token, + headers=headers, + ) + + if constants.HF_HUB_ENABLE_HF_TRANSFER: + # when using hf_transfer we don't want extra parallelism + # from the one hf_transfer provides + for file in filtered_repo_files: + _inner_hf_hub_download(file) + else: + thread_map( + _inner_hf_hub_download, + filtered_repo_files, + desc=f"Fetching {len(filtered_repo_files)} files", + max_workers=max_workers, + # User can use its own tqdm class or the default one from `huggingface_hub.utils` + tqdm_class=tqdm_class or hf_tqdm, + ) + + if local_dir is not None: + return str(os.path.realpath(local_dir)) + return snapshot_folder diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_space_api.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_space_api.py new file mode 100644 index 0000000000000000000000000000000000000000..51d14b1f6d7f9d5ccc1d185805f52d28c90ad495 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_space_api.py @@ -0,0 +1,160 @@ +# coding=utf-8 +# Copyright 2019-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +from dataclasses import dataclass +from datetime import datetime +from enum import Enum +from typing import Dict, Optional + +from huggingface_hub.utils import parse_datetime + + +class SpaceStage(str, Enum): + """ + Enumeration of possible stage of a Space on the Hub. + + Value can be compared to a string: + ```py + assert SpaceStage.BUILDING == "BUILDING" + ``` + + Taken from https://github.com/huggingface/moon-landing/blob/main/server/repo_types/SpaceInfo.ts#L61 (private url). + """ + + # Copied from moon-landing > server > repo_types > SpaceInfo.ts (private repo) + NO_APP_FILE = "NO_APP_FILE" + CONFIG_ERROR = "CONFIG_ERROR" + BUILDING = "BUILDING" + BUILD_ERROR = "BUILD_ERROR" + RUNNING = "RUNNING" + RUNNING_BUILDING = "RUNNING_BUILDING" + RUNTIME_ERROR = "RUNTIME_ERROR" + DELETING = "DELETING" + STOPPED = "STOPPED" + PAUSED = "PAUSED" + + +class SpaceHardware(str, Enum): + """ + Enumeration of hardwares available to run your Space on the Hub. + + Value can be compared to a string: + ```py + assert SpaceHardware.CPU_BASIC == "cpu-basic" + ``` + + Taken from https://github.com/huggingface/moon-landing/blob/main/server/repo_types/SpaceInfo.ts#L73 (private url). + """ + + CPU_BASIC = "cpu-basic" + CPU_UPGRADE = "cpu-upgrade" + T4_SMALL = "t4-small" + T4_MEDIUM = "t4-medium" + L4X1 = "l4x1" + L4X4 = "l4x4" + ZERO_A10G = "zero-a10g" + A10G_SMALL = "a10g-small" + A10G_LARGE = "a10g-large" + A10G_LARGEX2 = "a10g-largex2" + A10G_LARGEX4 = "a10g-largex4" + A100_LARGE = "a100-large" + V5E_1X1 = "v5e-1x1" + V5E_2X2 = "v5e-2x2" + V5E_2X4 = "v5e-2x4" + + +class SpaceStorage(str, Enum): + """ + Enumeration of persistent storage available for your Space on the Hub. + + Value can be compared to a string: + ```py + assert SpaceStorage.SMALL == "small" + ``` + + Taken from https://github.com/huggingface/moon-landing/blob/main/server/repo_types/SpaceHardwareFlavor.ts#L24 (private url). + """ + + SMALL = "small" + MEDIUM = "medium" + LARGE = "large" + + +@dataclass +class SpaceRuntime: + """ + Contains information about the current runtime of a Space. + + Args: + stage (`str`): + Current stage of the space. Example: RUNNING. + hardware (`str` or `None`): + Current hardware of the space. Example: "cpu-basic". Can be `None` if Space + is `BUILDING` for the first time. + requested_hardware (`str` or `None`): + Requested hardware. Can be different than `hardware` especially if the request + has just been made. Example: "t4-medium". Can be `None` if no hardware has + been requested yet. + sleep_time (`int` or `None`): + Number of seconds the Space will be kept alive after the last request. By default (if value is `None`), the + Space will never go to sleep if it's running on an upgraded hardware, while it will go to sleep after 48 + hours on a free 'cpu-basic' hardware. For more details, see https://huggingface.co/docs/hub/spaces-gpus#sleep-time. + raw (`dict`): + Raw response from the server. Contains more information about the Space + runtime like number of replicas, number of cpu, memory size,... + """ + + stage: SpaceStage + hardware: Optional[SpaceHardware] + requested_hardware: Optional[SpaceHardware] + sleep_time: Optional[int] + storage: Optional[SpaceStorage] + raw: Dict + + def __init__(self, data: Dict) -> None: + self.stage = data["stage"] + self.hardware = data.get("hardware", {}).get("current") + self.requested_hardware = data.get("hardware", {}).get("requested") + self.sleep_time = data.get("gcTimeout") + self.storage = data.get("storage") + self.raw = data + + +@dataclass +class SpaceVariable: + """ + Contains information about the current variables of a Space. + + Args: + key (`str`): + Variable key. Example: `"MODEL_REPO_ID"` + value (`str`): + Variable value. Example: `"the_model_repo_id"`. + description (`str` or None): + Description of the variable. Example: `"Model Repo ID of the implemented model"`. + updatedAt (`datetime` or None): + datetime of the last update of the variable (if the variable has been updated at least once). + """ + + key: str + value: str + description: Optional[str] + updated_at: Optional[datetime] + + def __init__(self, key: str, values: Dict) -> None: + self.key = key + self.value = values["value"] + self.description = values.get("description") + updated_at = values.get("updatedAt") + self.updated_at = parse_datetime(updated_at) if updated_at is not None else None diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_upload_large_folder.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_upload_large_folder.py new file mode 100644 index 0000000000000000000000000000000000000000..bb336de17219a4753dfbb5f5ee1b4f55ead52743 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_upload_large_folder.py @@ -0,0 +1,621 @@ +# coding=utf-8 +# Copyright 2024-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +import enum +import logging +import os +import queue +import shutil +import sys +import threading +import time +import traceback +from datetime import datetime +from pathlib import Path +from threading import Lock +from typing import TYPE_CHECKING, List, Optional, Tuple, Union + +from . import constants +from ._commit_api import CommitOperationAdd, UploadInfo, _fetch_upload_modes +from ._local_folder import LocalUploadFileMetadata, LocalUploadFilePaths, get_local_upload_paths, read_upload_metadata +from .constants import DEFAULT_REVISION, REPO_TYPES +from .utils import DEFAULT_IGNORE_PATTERNS, filter_repo_objects, tqdm +from .utils._cache_manager import _format_size +from .utils.sha import sha_fileobj + + +if TYPE_CHECKING: + from .hf_api import HfApi + +logger = logging.getLogger(__name__) + +WAITING_TIME_IF_NO_TASKS = 10 # seconds +MAX_NB_REGULAR_FILES_PER_COMMIT = 75 +MAX_NB_LFS_FILES_PER_COMMIT = 150 + + +def upload_large_folder_internal( + api: "HfApi", + repo_id: str, + folder_path: Union[str, Path], + *, + repo_type: str, # Repo type is required! + revision: Optional[str] = None, + private: bool = False, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + num_workers: Optional[int] = None, + print_report: bool = True, + print_report_every: int = 60, +): + """Upload a large folder to the Hub in the most resilient way possible. + + See [`HfApi.upload_large_folder`] for the full documentation. + """ + # 1. Check args and setup + if repo_type is None: + raise ValueError( + "For large uploads, `repo_type` is explicitly required. Please set it to `model`, `dataset` or `space`." + " If you are using the CLI, pass it as `--repo-type=model`." + ) + if repo_type not in REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {REPO_TYPES}") + if revision is None: + revision = DEFAULT_REVISION + + folder_path = Path(folder_path).expanduser().resolve() + if not folder_path.is_dir(): + raise ValueError(f"Provided path: '{folder_path}' is not a directory") + + if ignore_patterns is None: + ignore_patterns = [] + elif isinstance(ignore_patterns, str): + ignore_patterns = [ignore_patterns] + ignore_patterns += DEFAULT_IGNORE_PATTERNS + + if num_workers is None: + nb_cores = os.cpu_count() or 1 + num_workers = max(nb_cores - 2, 2) # Use all but 2 cores, or at least 2 cores + + # 2. Create repo if missing + repo_url = api.create_repo(repo_id=repo_id, repo_type=repo_type, private=private, exist_ok=True) + logger.info(f"Repo created: {repo_url}") + repo_id = repo_url.repo_id + + # 3. List files to upload + filtered_paths_list = filter_repo_objects( + (path.relative_to(folder_path).as_posix() for path in folder_path.glob("**/*") if path.is_file()), + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + ) + paths_list = [get_local_upload_paths(folder_path, relpath) for relpath in filtered_paths_list] + logger.info(f"Found {len(paths_list)} candidate files to upload") + + # Read metadata for each file + items = [ + (paths, read_upload_metadata(folder_path, paths.path_in_repo)) + for paths in tqdm(paths_list, desc="Recovering from metadata files") + ] + + # 4. Start workers + status = LargeUploadStatus(items) + threads = [ + threading.Thread( + target=_worker_job, + kwargs={ + "status": status, + "api": api, + "repo_id": repo_id, + "repo_type": repo_type, + "revision": revision, + }, + ) + for _ in range(num_workers) + ] + + for thread in threads: + thread.start() + + # 5. Print regular reports + if print_report: + print("\n\n" + status.current_report()) + last_report_ts = time.time() + while True: + time.sleep(1) + if time.time() - last_report_ts >= print_report_every: + if print_report: + _print_overwrite(status.current_report()) + last_report_ts = time.time() + if status.is_done(): + logging.info("Is done: exiting main loop") + break + + for thread in threads: + thread.join() + + logger.info(status.current_report()) + logging.info("Upload is complete!") + + +#################### +# Logic to manage workers and synchronize tasks +#################### + + +class WorkerJob(enum.Enum): + SHA256 = enum.auto() + GET_UPLOAD_MODE = enum.auto() + PREUPLOAD_LFS = enum.auto() + COMMIT = enum.auto() + WAIT = enum.auto() # if no tasks are available but we don't want to exit + + +JOB_ITEM_T = Tuple[LocalUploadFilePaths, LocalUploadFileMetadata] + + +class LargeUploadStatus: + """Contains information, queues and tasks for a large upload process.""" + + def __init__(self, items: List[JOB_ITEM_T]): + self.items = items + self.queue_sha256: "queue.Queue[JOB_ITEM_T]" = queue.Queue() + self.queue_get_upload_mode: "queue.Queue[JOB_ITEM_T]" = queue.Queue() + self.queue_preupload_lfs: "queue.Queue[JOB_ITEM_T]" = queue.Queue() + self.queue_commit: "queue.Queue[JOB_ITEM_T]" = queue.Queue() + self.lock = Lock() + + self.nb_workers_sha256: int = 0 + self.nb_workers_get_upload_mode: int = 0 + self.nb_workers_preupload_lfs: int = 0 + self.nb_workers_commit: int = 0 + self.nb_workers_waiting: int = 0 + self.last_commit_attempt: Optional[float] = None + + self._started_at = datetime.now() + + # Setup queues + for item in self.items: + paths, metadata = item + if metadata.sha256 is None: + self.queue_sha256.put(item) + elif metadata.upload_mode is None: + self.queue_get_upload_mode.put(item) + elif metadata.upload_mode == "lfs" and not metadata.is_uploaded: + self.queue_preupload_lfs.put(item) + elif not metadata.is_committed: + self.queue_commit.put(item) + else: + logger.debug(f"Skipping file {paths.path_in_repo} (already uploaded and committed)") + + def current_report(self) -> str: + """Generate a report of the current status of the large upload.""" + nb_hashed = 0 + size_hashed = 0 + nb_preuploaded = 0 + nb_lfs = 0 + nb_lfs_unsure = 0 + size_preuploaded = 0 + nb_committed = 0 + size_committed = 0 + total_size = 0 + ignored_files = 0 + total_files = 0 + + with self.lock: + for _, metadata in self.items: + if metadata.should_ignore: + ignored_files += 1 + continue + total_size += metadata.size + total_files += 1 + if metadata.sha256 is not None: + nb_hashed += 1 + size_hashed += metadata.size + if metadata.upload_mode == "lfs": + nb_lfs += 1 + if metadata.upload_mode is None: + nb_lfs_unsure += 1 + if metadata.is_uploaded: + nb_preuploaded += 1 + size_preuploaded += metadata.size + if metadata.is_committed: + nb_committed += 1 + size_committed += metadata.size + total_size_str = _format_size(total_size) + + now = datetime.now() + now_str = now.strftime("%Y-%m-%d %H:%M:%S") + elapsed = now - self._started_at + elapsed_str = str(elapsed).split(".")[0] # remove milliseconds + + message = "\n" + "-" * 10 + message += f" {now_str} ({elapsed_str}) " + message += "-" * 10 + "\n" + + message += "Files: " + message += f"hashed {nb_hashed}/{total_files} ({_format_size(size_hashed)}/{total_size_str}) | " + message += f"pre-uploaded: {nb_preuploaded}/{nb_lfs} ({_format_size(size_preuploaded)}/{total_size_str})" + if nb_lfs_unsure > 0: + message += f" (+{nb_lfs_unsure} unsure)" + message += f" | committed: {nb_committed}/{total_files} ({_format_size(size_committed)}/{total_size_str})" + message += f" | ignored: {ignored_files}\n" + + message += "Workers: " + message += f"hashing: {self.nb_workers_sha256} | " + message += f"get upload mode: {self.nb_workers_get_upload_mode} | " + message += f"pre-uploading: {self.nb_workers_preupload_lfs} | " + message += f"committing: {self.nb_workers_commit} | " + message += f"waiting: {self.nb_workers_waiting}\n" + message += "-" * 51 + + return message + + def is_done(self) -> bool: + with self.lock: + return all(metadata.is_committed or metadata.should_ignore for _, metadata in self.items) + + +def _worker_job( + status: LargeUploadStatus, + api: "HfApi", + repo_id: str, + repo_type: str, + revision: str, +): + """ + Main process for a worker. The worker will perform tasks based on the priority list until all files are uploaded + and committed. If no tasks are available, the worker will wait for 10 seconds before checking again. + + If a task fails for any reason, the item(s) are put back in the queue for another worker to pick up. + + Read `upload_large_folder` docstring for more information on how tasks are prioritized. + """ + while True: + next_job: Optional[Tuple[WorkerJob, List[JOB_ITEM_T]]] = None + + # Determine next task + next_job = _determine_next_job(status) + if next_job is None: + return + job, items = next_job + + # Perform task + if job == WorkerJob.SHA256: + item = items[0] # single item + try: + _compute_sha256(item) + status.queue_get_upload_mode.put(item) + except KeyboardInterrupt: + raise + except Exception as e: + logger.error(f"Failed to compute sha256: {e}") + traceback.format_exc() + status.queue_sha256.put(item) + + with status.lock: + status.nb_workers_sha256 -= 1 + + elif job == WorkerJob.GET_UPLOAD_MODE: + try: + _get_upload_mode(items, api=api, repo_id=repo_id, repo_type=repo_type, revision=revision) + except KeyboardInterrupt: + raise + except Exception as e: + logger.error(f"Failed to get upload mode: {e}") + traceback.format_exc() + + # Items are either: + # - dropped (if should_ignore) + # - put in LFS queue (if LFS) + # - put in commit queue (if regular) + # - or put back (if error occurred). + for item in items: + _, metadata = item + if metadata.should_ignore: + continue + if metadata.upload_mode == "lfs": + status.queue_preupload_lfs.put(item) + elif metadata.upload_mode == "regular": + status.queue_commit.put(item) + else: + status.queue_get_upload_mode.put(item) + + with status.lock: + status.nb_workers_get_upload_mode -= 1 + + elif job == WorkerJob.PREUPLOAD_LFS: + item = items[0] # single item + try: + _preupload_lfs(item, api=api, repo_id=repo_id, repo_type=repo_type, revision=revision) + status.queue_commit.put(item) + except KeyboardInterrupt: + raise + except Exception as e: + logger.error(f"Failed to preupload LFS: {e}") + traceback.format_exc() + status.queue_preupload_lfs.put(item) + + with status.lock: + status.nb_workers_preupload_lfs -= 1 + + elif job == WorkerJob.COMMIT: + try: + _commit(items, api=api, repo_id=repo_id, repo_type=repo_type, revision=revision) + except KeyboardInterrupt: + raise + except Exception as e: + logger.error(f"Failed to commit: {e}") + traceback.format_exc() + for item in items: + status.queue_commit.put(item) + with status.lock: + status.last_commit_attempt = time.time() + status.nb_workers_commit -= 1 + + elif job == WorkerJob.WAIT: + time.sleep(WAITING_TIME_IF_NO_TASKS) + with status.lock: + status.nb_workers_waiting -= 1 + + +def _determine_next_job(status: LargeUploadStatus) -> Optional[Tuple[WorkerJob, List[JOB_ITEM_T]]]: + with status.lock: + # 1. Commit if more than 5 minutes since last commit attempt (and at least 1 file) + if ( + status.nb_workers_commit == 0 + and status.queue_commit.qsize() > 0 + and status.last_commit_attempt is not None + and time.time() - status.last_commit_attempt > 5 * 60 + ): + status.nb_workers_commit += 1 + logger.debug("Job: commit (more than 5 minutes since last commit attempt)") + return (WorkerJob.COMMIT, _get_items_to_commit(status.queue_commit)) + + # 2. Commit if at least 100 files are ready to commit + elif status.nb_workers_commit == 0 and status.queue_commit.qsize() >= 150: + status.nb_workers_commit += 1 + logger.debug("Job: commit (>100 files ready)") + return (WorkerJob.COMMIT, _get_items_to_commit(status.queue_commit)) + + # 3. Get upload mode if at least 10 files + elif status.queue_get_upload_mode.qsize() >= 10: + status.nb_workers_get_upload_mode += 1 + logger.debug("Job: get upload mode (>10 files ready)") + return (WorkerJob.GET_UPLOAD_MODE, _get_n(status.queue_get_upload_mode, 50)) + + # 4. Preupload LFS file if at least 1 file and no worker is preuploading LFS + elif status.queue_preupload_lfs.qsize() > 0 and status.nb_workers_preupload_lfs == 0: + status.nb_workers_preupload_lfs += 1 + logger.debug("Job: preupload LFS (no other worker preuploading LFS)") + return (WorkerJob.PREUPLOAD_LFS, _get_one(status.queue_preupload_lfs)) + + # 5. Compute sha256 if at least 1 file and no worker is computing sha256 + elif status.queue_sha256.qsize() > 0 and status.nb_workers_sha256 == 0: + status.nb_workers_sha256 += 1 + logger.debug("Job: sha256 (no other worker computing sha256)") + return (WorkerJob.SHA256, _get_one(status.queue_sha256)) + + # 6. Get upload mode if at least 1 file and no worker is getting upload mode + elif status.queue_get_upload_mode.qsize() > 0 and status.nb_workers_get_upload_mode == 0: + status.nb_workers_get_upload_mode += 1 + logger.debug("Job: get upload mode (no other worker getting upload mode)") + return (WorkerJob.GET_UPLOAD_MODE, _get_n(status.queue_get_upload_mode, 50)) + + # 7. Preupload LFS file if at least 1 file + # Skip if hf_transfer is enabled and there is already a worker preuploading LFS + elif status.queue_preupload_lfs.qsize() > 0 and ( + status.nb_workers_preupload_lfs == 0 or not constants.HF_HUB_ENABLE_HF_TRANSFER + ): + status.nb_workers_preupload_lfs += 1 + logger.debug("Job: preupload LFS") + return (WorkerJob.PREUPLOAD_LFS, _get_one(status.queue_preupload_lfs)) + + # 8. Compute sha256 if at least 1 file + elif status.queue_sha256.qsize() > 0: + status.nb_workers_sha256 += 1 + logger.debug("Job: sha256") + return (WorkerJob.SHA256, _get_one(status.queue_sha256)) + + # 9. Get upload mode if at least 1 file + elif status.queue_get_upload_mode.qsize() > 0: + status.nb_workers_get_upload_mode += 1 + logger.debug("Job: get upload mode") + return (WorkerJob.GET_UPLOAD_MODE, _get_n(status.queue_get_upload_mode, 50)) + + # 10. Commit if at least 1 file and 1 min since last commit attempt + elif ( + status.nb_workers_commit == 0 + and status.queue_commit.qsize() > 0 + and status.last_commit_attempt is not None + and time.time() - status.last_commit_attempt > 1 * 60 + ): + status.nb_workers_commit += 1 + logger.debug("Job: commit (1 min since last commit attempt)") + return (WorkerJob.COMMIT, _get_items_to_commit(status.queue_commit)) + + # 11. Commit if at least 1 file all other queues are empty and all workers are waiting + # e.g. when it's the last commit + elif ( + status.nb_workers_commit == 0 + and status.queue_commit.qsize() > 0 + and status.queue_sha256.qsize() == 0 + and status.queue_get_upload_mode.qsize() == 0 + and status.queue_preupload_lfs.qsize() == 0 + and status.nb_workers_sha256 == 0 + and status.nb_workers_get_upload_mode == 0 + and status.nb_workers_preupload_lfs == 0 + ): + status.nb_workers_commit += 1 + logger.debug("Job: commit") + return (WorkerJob.COMMIT, _get_items_to_commit(status.queue_commit)) + + # 12. If all queues are empty, exit + elif all(metadata.is_committed or metadata.should_ignore for _, metadata in status.items): + logger.info("All files have been processed! Exiting worker.") + return None + + # 13. If no task is available, wait + else: + status.nb_workers_waiting += 1 + logger.debug(f"No task available, waiting... ({WAITING_TIME_IF_NO_TASKS}s)") + return (WorkerJob.WAIT, []) + + +#################### +# Atomic jobs (sha256, get_upload_mode, preupload_lfs, commit) +#################### + + +def _compute_sha256(item: JOB_ITEM_T) -> None: + """Compute sha256 of a file and save it in metadata.""" + paths, metadata = item + if metadata.sha256 is None: + with paths.file_path.open("rb") as f: + metadata.sha256 = sha_fileobj(f).hex() + metadata.save(paths) + + +def _get_upload_mode(items: List[JOB_ITEM_T], api: "HfApi", repo_id: str, repo_type: str, revision: str) -> None: + """Get upload mode for each file and update metadata. + + Also receive info if the file should be ignored. + """ + additions = [_build_hacky_operation(item) for item in items] + _fetch_upload_modes( + additions=additions, + repo_type=repo_type, + repo_id=repo_id, + headers=api._build_hf_headers(), + revision=revision, + ) + for item, addition in zip(items, additions): + paths, metadata = item + metadata.upload_mode = addition._upload_mode + metadata.should_ignore = addition._should_ignore + metadata.save(paths) + + +def _preupload_lfs(item: JOB_ITEM_T, api: "HfApi", repo_id: str, repo_type: str, revision: str) -> None: + """Preupload LFS file and update metadata.""" + paths, metadata = item + addition = _build_hacky_operation(item) + api.preupload_lfs_files( + repo_id=repo_id, + repo_type=repo_type, + revision=revision, + additions=[addition], + ) + + metadata.is_uploaded = True + metadata.save(paths) + + +def _commit(items: List[JOB_ITEM_T], api: "HfApi", repo_id: str, repo_type: str, revision: str) -> None: + """Commit files to the repo.""" + additions = [_build_hacky_operation(item) for item in items] + api.create_commit( + repo_id=repo_id, + repo_type=repo_type, + revision=revision, + operations=additions, + commit_message="Add files using upload-large-folder tool", + ) + for paths, metadata in items: + metadata.is_committed = True + metadata.save(paths) + + +#################### +# Hacks with CommitOperationAdd to bypass checks/sha256 calculation +#################### + + +class HackyCommitOperationAdd(CommitOperationAdd): + def __post_init__(self) -> None: + if isinstance(self.path_or_fileobj, Path): + self.path_or_fileobj = str(self.path_or_fileobj) + + +def _build_hacky_operation(item: JOB_ITEM_T) -> HackyCommitOperationAdd: + paths, metadata = item + operation = HackyCommitOperationAdd(path_in_repo=paths.path_in_repo, path_or_fileobj=paths.file_path) + with paths.file_path.open("rb") as file: + sample = file.peek(512)[:512] + if metadata.sha256 is None: + raise ValueError("sha256 must have been computed by now!") + operation.upload_info = UploadInfo(sha256=bytes.fromhex(metadata.sha256), size=metadata.size, sample=sample) + return operation + + +#################### +# Misc helpers +#################### + + +def _get_one(queue: "queue.Queue[JOB_ITEM_T]") -> List[JOB_ITEM_T]: + return [queue.get()] + + +def _get_n(queue: "queue.Queue[JOB_ITEM_T]", n: int) -> List[JOB_ITEM_T]: + return [queue.get() for _ in range(min(queue.qsize(), n))] + + +def _get_items_to_commit(queue: "queue.Queue[JOB_ITEM_T]") -> List[JOB_ITEM_T]: + """Special case for commit job: the number of items to commit depends on the type of files.""" + # Can take at most 50 regular files and/or 100 LFS files in a single commit + items: List[JOB_ITEM_T] = [] + nb_lfs, nb_regular = 0, 0 + while True: + # If empty queue => commit everything + if queue.qsize() == 0: + return items + + # If we have enough items => commit them + if nb_lfs >= MAX_NB_LFS_FILES_PER_COMMIT or nb_regular >= MAX_NB_REGULAR_FILES_PER_COMMIT: + return items + + # Else, get a new item and increase counter + item = queue.get() + items.append(item) + _, metadata = item + if metadata.upload_mode == "lfs": + nb_lfs += 1 + else: + nb_regular += 1 + + +def _print_overwrite(report: str) -> None: + """Print a report, overwriting the previous lines. + + Since tqdm in using `sys.stderr` to (re-)write progress bars, we need to use `sys.stdout` + to print the report. + + Note: works well only if no other process is writing to `sys.stdout`! + """ + report += "\n" + # Get terminal width + terminal_width = shutil.get_terminal_size().columns + + # Count number of lines that should be cleared + nb_lines = sum(len(line) // terminal_width + 1 for line in report.splitlines()) + + # Clear previous lines based on the number of lines in the report + for _ in range(nb_lines): + sys.stdout.write("\r\033[K") # Clear line + sys.stdout.write("\033[F") # Move cursor up one line + + # Print the new report, filling remaining space with whitespace + sys.stdout.write(report) + sys.stdout.write(" " * (terminal_width - len(report.splitlines()[-1]))) + sys.stdout.flush() diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_webhooks_payload.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_webhooks_payload.py new file mode 100644 index 0000000000000000000000000000000000000000..288f4b08b9428980e99ca06703442eab62fad277 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_webhooks_payload.py @@ -0,0 +1,137 @@ +# coding=utf-8 +# Copyright 2023-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains data structures to parse the webhooks payload.""" + +from typing import List, Literal, Optional + +from .utils import is_pydantic_available + + +if is_pydantic_available(): + from pydantic import BaseModel +else: + # Define a dummy BaseModel to avoid import errors when pydantic is not installed + # Import error will be raised when trying to use the class + + class BaseModel: # type: ignore [no-redef] + def __init__(self, *args, **kwargs) -> None: + raise ImportError( + "You must have `pydantic` installed to use `WebhookPayload`. This is an optional dependency that" + " should be installed separately. Please run `pip install --upgrade pydantic` and retry." + ) + + +# This is an adaptation of the ReportV3 interface implemented in moon-landing. V0, V1 and V2 have been ignored as they +# are not in used anymore. To keep in sync when format is updated in +# https://github.com/huggingface/moon-landing/blob/main/server/lib/HFWebhooks.ts (internal link). + + +WebhookEvent_T = Literal[ + "create", + "delete", + "move", + "update", +] +RepoChangeEvent_T = Literal[ + "add", + "move", + "remove", + "update", +] +RepoType_T = Literal[ + "dataset", + "model", + "space", +] +DiscussionStatus_T = Literal[ + "closed", + "draft", + "open", + "merged", +] +SupportedWebhookVersion = Literal[3] + + +class ObjectId(BaseModel): + id: str + + +class WebhookPayloadUrl(BaseModel): + web: str + api: Optional[str] = None + + +class WebhookPayloadMovedTo(BaseModel): + name: str + owner: ObjectId + + +class WebhookPayloadWebhook(ObjectId): + version: SupportedWebhookVersion + + +class WebhookPayloadEvent(BaseModel): + action: WebhookEvent_T + scope: str + + +class WebhookPayloadDiscussionChanges(BaseModel): + base: str + mergeCommitId: Optional[str] = None + + +class WebhookPayloadComment(ObjectId): + author: ObjectId + hidden: bool + content: Optional[str] = None + url: WebhookPayloadUrl + + +class WebhookPayloadDiscussion(ObjectId): + num: int + author: ObjectId + url: WebhookPayloadUrl + title: str + isPullRequest: bool + status: DiscussionStatus_T + changes: Optional[WebhookPayloadDiscussionChanges] = None + pinned: Optional[bool] = None + + +class WebhookPayloadRepo(ObjectId): + owner: ObjectId + head_sha: Optional[str] = None + name: str + private: bool + subdomain: Optional[str] = None + tags: Optional[List[str]] = None + type: Literal["dataset", "model", "space"] + url: WebhookPayloadUrl + + +class WebhookPayloadUpdatedRef(BaseModel): + ref: str + oldSha: Optional[str] = None + newSha: Optional[str] = None + + +class WebhookPayload(BaseModel): + event: WebhookPayloadEvent + repo: WebhookPayloadRepo + discussion: Optional[WebhookPayloadDiscussion] = None + comment: Optional[WebhookPayloadComment] = None + webhook: WebhookPayloadWebhook + movedTo: Optional[WebhookPayloadMovedTo] = None + updatedRefs: Optional[List[WebhookPayloadUpdatedRef]] = None diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_webhooks_server.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_webhooks_server.py new file mode 100644 index 0000000000000000000000000000000000000000..c0c08e0092b373db189bc9a4d3deb3fe5692b559 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/_webhooks_server.py @@ -0,0 +1,386 @@ +# coding=utf-8 +# Copyright 2023-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains `WebhooksServer` and `webhook_endpoint` to create a webhook server easily.""" + +import atexit +import inspect +import os +from functools import wraps +from typing import TYPE_CHECKING, Any, Callable, Dict, Optional + +from .utils import experimental, is_fastapi_available, is_gradio_available + + +if TYPE_CHECKING: + import gradio as gr + from fastapi import Request + +if is_fastapi_available(): + from fastapi import FastAPI, Request + from fastapi.responses import JSONResponse +else: + # Will fail at runtime if FastAPI is not available + FastAPI = Request = JSONResponse = None # type: ignore [misc, assignment] + + +_global_app: Optional["WebhooksServer"] = None +_is_local = os.environ.get("SPACE_ID") is None + + +@experimental +class WebhooksServer: + """ + The [`WebhooksServer`] class lets you create an instance of a Gradio app that can receive Huggingface webhooks. + These webhooks can be registered using the [`~WebhooksServer.add_webhook`] decorator. Webhook endpoints are added to + the app as a POST endpoint to the FastAPI router. Once all the webhooks are registered, the `launch` method has to be + called to start the app. + + It is recommended to accept [`WebhookPayload`] as the first argument of the webhook function. It is a Pydantic + model that contains all the information about the webhook event. The data will be parsed automatically for you. + + Check out the [webhooks guide](../guides/webhooks_server) for a step-by-step tutorial on how to setup your + WebhooksServer and deploy it on a Space. + + + + `WebhooksServer` is experimental. Its API is subject to change in the future. + + + + + + You must have `gradio` installed to use `WebhooksServer` (`pip install --upgrade gradio`). + + + + Args: + ui (`gradio.Blocks`, optional): + A Gradio UI instance to be used as the Space landing page. If `None`, a UI displaying instructions + about the configured webhooks is created. + webhook_secret (`str`, optional): + A secret key to verify incoming webhook requests. You can set this value to any secret you want as long as + you also configure it in your [webhooks settings panel](https://huggingface.co/settings/webhooks). You + can also set this value as the `WEBHOOK_SECRET` environment variable. If no secret is provided, the + webhook endpoints are opened without any security. + + Example: + + ```python + import gradio as gr + from huggingface_hub import WebhooksServer, WebhookPayload + + with gr.Blocks() as ui: + ... + + app = WebhooksServer(ui=ui, webhook_secret="my_secret_key") + + @app.add_webhook("/say_hello") + async def hello(payload: WebhookPayload): + return {"message": "hello"} + + app.launch() + ``` + """ + + def __new__(cls, *args, **kwargs) -> "WebhooksServer": + if not is_gradio_available(): + raise ImportError( + "You must have `gradio` installed to use `WebhooksServer`. Please run `pip install --upgrade gradio`" + " first." + ) + if not is_fastapi_available(): + raise ImportError( + "You must have `fastapi` installed to use `WebhooksServer`. Please run `pip install --upgrade fastapi`" + " first." + ) + return super().__new__(cls) + + def __init__( + self, + ui: Optional["gr.Blocks"] = None, + webhook_secret: Optional[str] = None, + ) -> None: + self._ui = ui + + self.webhook_secret = webhook_secret or os.getenv("WEBHOOK_SECRET") + self.registered_webhooks: Dict[str, Callable] = {} + _warn_on_empty_secret(self.webhook_secret) + + def add_webhook(self, path: Optional[str] = None) -> Callable: + """ + Decorator to add a webhook to the [`WebhooksServer`] server. + + Args: + path (`str`, optional): + The URL path to register the webhook function. If not provided, the function name will be used as the + path. In any case, all webhooks are registered under `/webhooks`. + + Raises: + ValueError: If the provided path is already registered as a webhook. + + Example: + ```python + from huggingface_hub import WebhooksServer, WebhookPayload + + app = WebhooksServer() + + @app.add_webhook + async def trigger_training(payload: WebhookPayload): + if payload.repo.type == "dataset" and payload.event.action == "update": + # Trigger a training job if a dataset is updated + ... + + app.launch() + ``` + """ + # Usage: directly as decorator. Example: `@app.add_webhook` + if callable(path): + # If path is a function, it means it was used as a decorator without arguments + return self.add_webhook()(path) + + # Usage: provide a path. Example: `@app.add_webhook(...)` + @wraps(FastAPI.post) + def _inner_post(*args, **kwargs): + func = args[0] + abs_path = f"/webhooks/{(path or func.__name__).strip('/')}" + if abs_path in self.registered_webhooks: + raise ValueError(f"Webhook {abs_path} already exists.") + self.registered_webhooks[abs_path] = func + + return _inner_post + + def launch(self, prevent_thread_lock: bool = False, **launch_kwargs: Any) -> None: + """Launch the Gradio app and register webhooks to the underlying FastAPI server. + + Input parameters are forwarded to Gradio when launching the app. + """ + ui = self._ui or self._get_default_ui() + + # Start Gradio App + # - as non-blocking so that webhooks can be added afterwards + # - as shared if launch locally (to debug webhooks) + launch_kwargs.setdefault("share", _is_local) + self.fastapi_app, _, _ = ui.launch(prevent_thread_lock=True, **launch_kwargs) + + # Register webhooks to FastAPI app + for path, func in self.registered_webhooks.items(): + # Add secret check if required + if self.webhook_secret is not None: + func = _wrap_webhook_to_check_secret(func, webhook_secret=self.webhook_secret) + + # Add route to FastAPI app + self.fastapi_app.post(path)(func) + + # Print instructions and block main thread + space_host = os.environ.get("SPACE_HOST") + url = "https://" + space_host if space_host is not None else (ui.share_url or ui.local_url) + url = url.strip("/") + message = "\nWebhooks are correctly setup and ready to use:" + message += "\n" + "\n".join(f" - POST {url}{webhook}" for webhook in self.registered_webhooks) + message += "\nGo to https://huggingface.co/settings/webhooks to setup your webhooks." + print(message) + + if not prevent_thread_lock: + ui.block_thread() + + def _get_default_ui(self) -> "gr.Blocks": + """Default UI if not provided (lists webhooks and provides basic instructions).""" + import gradio as gr + + with gr.Blocks() as ui: + gr.Markdown("# This is an app to process 🤗 Webhooks") + gr.Markdown( + "Webhooks are a foundation for MLOps-related features. They allow you to listen for new changes on" + " specific repos or to all repos belonging to particular set of users/organizations (not just your" + " repos, but any repo). Check out this [guide](https://huggingface.co/docs/hub/webhooks) to get to" + " know more about webhooks on the Huggingface Hub." + ) + gr.Markdown( + f"{len(self.registered_webhooks)} webhook(s) are registered:" + + "\n\n" + + "\n ".join( + f"- [{webhook_path}]({_get_webhook_doc_url(webhook.__name__, webhook_path)})" + for webhook_path, webhook in self.registered_webhooks.items() + ) + ) + gr.Markdown( + "Go to https://huggingface.co/settings/webhooks to setup your webhooks." + + "\nYou app is running locally. Please look at the logs to check the full URL you need to set." + if _is_local + else ( + "\nThis app is running on a Space. You can find the corresponding URL in the options menu" + " (top-right) > 'Embed the Space'. The URL looks like 'https://{username}-{repo_name}.hf.space'." + ) + ) + return ui + + +@experimental +def webhook_endpoint(path: Optional[str] = None) -> Callable: + """Decorator to start a [`WebhooksServer`] and register the decorated function as a webhook endpoint. + + This is a helper to get started quickly. If you need more flexibility (custom landing page or webhook secret), + you can use [`WebhooksServer`] directly. You can register multiple webhook endpoints (to the same server) by using + this decorator multiple times. + + Check out the [webhooks guide](../guides/webhooks_server) for a step-by-step tutorial on how to setup your + server and deploy it on a Space. + + + + `webhook_endpoint` is experimental. Its API is subject to change in the future. + + + + + + You must have `gradio` installed to use `webhook_endpoint` (`pip install --upgrade gradio`). + + + + Args: + path (`str`, optional): + The URL path to register the webhook function. If not provided, the function name will be used as the path. + In any case, all webhooks are registered under `/webhooks`. + + Examples: + The default usage is to register a function as a webhook endpoint. The function name will be used as the path. + The server will be started automatically at exit (i.e. at the end of the script). + + ```python + from huggingface_hub import webhook_endpoint, WebhookPayload + + @webhook_endpoint + async def trigger_training(payload: WebhookPayload): + if payload.repo.type == "dataset" and payload.event.action == "update": + # Trigger a training job if a dataset is updated + ... + + # Server is automatically started at the end of the script. + ``` + + Advanced usage: register a function as a webhook endpoint and start the server manually. This is useful if you + are running it in a notebook. + + ```python + from huggingface_hub import webhook_endpoint, WebhookPayload + + @webhook_endpoint + async def trigger_training(payload: WebhookPayload): + if payload.repo.type == "dataset" and payload.event.action == "update": + # Trigger a training job if a dataset is updated + ... + + # Start the server manually + trigger_training.launch() + ``` + """ + if callable(path): + # If path is a function, it means it was used as a decorator without arguments + return webhook_endpoint()(path) + + @wraps(WebhooksServer.add_webhook) + def _inner(func: Callable) -> Callable: + app = _get_global_app() + app.add_webhook(path)(func) + if len(app.registered_webhooks) == 1: + # Register `app.launch` to run at exit (only once) + atexit.register(app.launch) + + @wraps(app.launch) + def _launch_now(): + # Run the app directly (without waiting atexit) + atexit.unregister(app.launch) + app.launch() + + func.launch = _launch_now # type: ignore + return func + + return _inner + + +def _get_global_app() -> WebhooksServer: + global _global_app + if _global_app is None: + _global_app = WebhooksServer() + return _global_app + + +def _warn_on_empty_secret(webhook_secret: Optional[str]) -> None: + if webhook_secret is None: + print("Webhook secret is not defined. This means your webhook endpoints will be open to everyone.") + print( + "To add a secret, set `WEBHOOK_SECRET` as environment variable or pass it at initialization: " + "\n\t`app = WebhooksServer(webhook_secret='my_secret', ...)`" + ) + print( + "For more details about webhook secrets, please refer to" + " https://huggingface.co/docs/hub/webhooks#webhook-secret." + ) + else: + print("Webhook secret is correctly defined.") + + +def _get_webhook_doc_url(webhook_name: str, webhook_path: str) -> str: + """Returns the anchor to a given webhook in the docs (experimental)""" + return "/docs#/default/" + webhook_name + webhook_path.replace("/", "_") + "_post" + + +def _wrap_webhook_to_check_secret(func: Callable, webhook_secret: str) -> Callable: + """Wraps a webhook function to check the webhook secret before calling the function. + + This is a hacky way to add the `request` parameter to the function signature. Since FastAPI based itself on route + parameters to inject the values to the function, we need to hack the function signature to retrieve the `Request` + object (and hence the headers). A far cleaner solution would be to use a middleware. However, since + `fastapi==0.90.1`, a middleware cannot be added once the app has started. And since the FastAPI app is started by + Gradio internals (and not by us), we cannot add a middleware. + + This method is called only when a secret has been defined by the user. If a request is sent without the + "x-webhook-secret", the function will return a 401 error (unauthorized). If the header is sent but is incorrect, + the function will return a 403 error (forbidden). + + Inspired by https://stackoverflow.com/a/33112180. + """ + initial_sig = inspect.signature(func) + + @wraps(func) + async def _protected_func(request: Request, **kwargs): + request_secret = request.headers.get("x-webhook-secret") + if request_secret is None: + return JSONResponse({"error": "x-webhook-secret header not set."}, status_code=401) + if request_secret != webhook_secret: + return JSONResponse({"error": "Invalid webhook secret."}, status_code=403) + + # Inject `request` in kwargs if required + if "request" in initial_sig.parameters: + kwargs["request"] = request + + # Handle both sync and async routes + if inspect.iscoroutinefunction(func): + return await func(**kwargs) + else: + return func(**kwargs) + + # Update signature to include request + if "request" not in initial_sig.parameters: + _protected_func.__signature__ = initial_sig.replace( # type: ignore + parameters=( + inspect.Parameter(name="request", kind=inspect.Parameter.POSITIONAL_OR_KEYWORD, annotation=Request), + ) + + tuple(initial_sig.parameters.values()) + ) + + # Return protected route + return _protected_func diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/community.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/community.py new file mode 100644 index 0000000000000000000000000000000000000000..16f2f02428dd5c2ce6437534af0397801bda45c5 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/community.py @@ -0,0 +1,355 @@ +""" +Data structures to interact with Discussions and Pull Requests on the Hub. + +See [the Discussions and Pull Requests guide](https://huggingface.co/docs/hub/repositories-pull-requests-discussions) +for more information on Pull Requests, Discussions, and the community tab. +""" + +from dataclasses import dataclass +from datetime import datetime +from typing import List, Literal, Optional, Union + +from . import constants +from .utils import parse_datetime + + +DiscussionStatus = Literal["open", "closed", "merged", "draft"] + + +@dataclass +class Discussion: + """ + A Discussion or Pull Request on the Hub. + + This dataclass is not intended to be instantiated directly. + + Attributes: + title (`str`): + The title of the Discussion / Pull Request + status (`str`): + The status of the Discussion / Pull Request. + It must be one of: + * `"open"` + * `"closed"` + * `"merged"` (only for Pull Requests ) + * `"draft"` (only for Pull Requests ) + num (`int`): + The number of the Discussion / Pull Request. + repo_id (`str`): + The id (`"{namespace}/{repo_name}"`) of the repo on which + the Discussion / Pull Request was open. + repo_type (`str`): + The type of the repo on which the Discussion / Pull Request was open. + Possible values are: `"model"`, `"dataset"`, `"space"`. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + is_pull_request (`bool`): + Whether or not this is a Pull Request. + created_at (`datetime`): + The `datetime` of creation of the Discussion / Pull Request. + endpoint (`str`): + Endpoint of the Hub. Default is https://huggingface.co. + git_reference (`str`, *optional*): + (property) Git reference to which changes can be pushed if this is a Pull Request, `None` otherwise. + url (`str`): + (property) URL of the discussion on the Hub. + """ + + title: str + status: DiscussionStatus + num: int + repo_id: str + repo_type: str + author: str + is_pull_request: bool + created_at: datetime + endpoint: str + + @property + def git_reference(self) -> Optional[str]: + """ + If this is a Pull Request , returns the git reference to which changes can be pushed. + Returns `None` otherwise. + """ + if self.is_pull_request: + return f"refs/pr/{self.num}" + return None + + @property + def url(self) -> str: + """Returns the URL of the discussion on the Hub.""" + if self.repo_type is None or self.repo_type == constants.REPO_TYPE_MODEL: + return f"{self.endpoint}/{self.repo_id}/discussions/{self.num}" + return f"{self.endpoint}/{self.repo_type}s/{self.repo_id}/discussions/{self.num}" + + +@dataclass +class DiscussionWithDetails(Discussion): + """ + Subclass of [`Discussion`]. + + Attributes: + title (`str`): + The title of the Discussion / Pull Request + status (`str`): + The status of the Discussion / Pull Request. + It can be one of: + * `"open"` + * `"closed"` + * `"merged"` (only for Pull Requests ) + * `"draft"` (only for Pull Requests ) + num (`int`): + The number of the Discussion / Pull Request. + repo_id (`str`): + The id (`"{namespace}/{repo_name}"`) of the repo on which + the Discussion / Pull Request was open. + repo_type (`str`): + The type of the repo on which the Discussion / Pull Request was open. + Possible values are: `"model"`, `"dataset"`, `"space"`. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + is_pull_request (`bool`): + Whether or not this is a Pull Request. + created_at (`datetime`): + The `datetime` of creation of the Discussion / Pull Request. + events (`list` of [`DiscussionEvent`]) + The list of [`DiscussionEvents`] in this Discussion or Pull Request. + conflicting_files (`Union[List[str], bool, None]`, *optional*): + A list of conflicting files if this is a Pull Request. + `None` if `self.is_pull_request` is `False`. + `True` if there are conflicting files but the list can't be retrieved. + target_branch (`str`, *optional*): + The branch into which changes are to be merged if this is a + Pull Request . `None` if `self.is_pull_request` is `False`. + merge_commit_oid (`str`, *optional*): + If this is a merged Pull Request , this is set to the OID / SHA of + the merge commit, `None` otherwise. + diff (`str`, *optional*): + The git diff if this is a Pull Request , `None` otherwise. + endpoint (`str`): + Endpoint of the Hub. Default is https://huggingface.co. + git_reference (`str`, *optional*): + (property) Git reference to which changes can be pushed if this is a Pull Request, `None` otherwise. + url (`str`): + (property) URL of the discussion on the Hub. + """ + + events: List["DiscussionEvent"] + conflicting_files: Union[List[str], bool, None] + target_branch: Optional[str] + merge_commit_oid: Optional[str] + diff: Optional[str] + + +@dataclass +class DiscussionEvent: + """ + An event in a Discussion or Pull Request. + + Use concrete classes: + * [`DiscussionComment`] + * [`DiscussionStatusChange`] + * [`DiscussionCommit`] + * [`DiscussionTitleChange`] + + Attributes: + id (`str`): + The ID of the event. An hexadecimal string. + type (`str`): + The type of the event. + created_at (`datetime`): + A [`datetime`](https://docs.python.org/3/library/datetime.html?highlight=datetime#datetime.datetime) + object holding the creation timestamp for the event. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + """ + + id: str + type: str + created_at: datetime + author: str + + _event: dict + """Stores the original event data, in case we need to access it later.""" + + +@dataclass +class DiscussionComment(DiscussionEvent): + """A comment in a Discussion / Pull Request. + + Subclass of [`DiscussionEvent`]. + + + Attributes: + id (`str`): + The ID of the event. An hexadecimal string. + type (`str`): + The type of the event. + created_at (`datetime`): + A [`datetime`](https://docs.python.org/3/library/datetime.html?highlight=datetime#datetime.datetime) + object holding the creation timestamp for the event. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + content (`str`): + The raw markdown content of the comment. Mentions, links and images are not rendered. + edited (`bool`): + Whether or not this comment has been edited. + hidden (`bool`): + Whether or not this comment has been hidden. + """ + + content: str + edited: bool + hidden: bool + + @property + def rendered(self) -> str: + """The rendered comment, as a HTML string""" + return self._event["data"]["latest"]["html"] + + @property + def last_edited_at(self) -> datetime: + """The last edit time, as a `datetime` object.""" + return parse_datetime(self._event["data"]["latest"]["updatedAt"]) + + @property + def last_edited_by(self) -> str: + """The last edit time, as a `datetime` object.""" + return self._event["data"]["latest"].get("author", {}).get("name", "deleted") + + @property + def edit_history(self) -> List[dict]: + """The edit history of the comment""" + return self._event["data"]["history"] + + @property + def number_of_edits(self) -> int: + return len(self.edit_history) + + +@dataclass +class DiscussionStatusChange(DiscussionEvent): + """A change of status in a Discussion / Pull Request. + + Subclass of [`DiscussionEvent`]. + + Attributes: + id (`str`): + The ID of the event. An hexadecimal string. + type (`str`): + The type of the event. + created_at (`datetime`): + A [`datetime`](https://docs.python.org/3/library/datetime.html?highlight=datetime#datetime.datetime) + object holding the creation timestamp for the event. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + new_status (`str`): + The status of the Discussion / Pull Request after the change. + It can be one of: + * `"open"` + * `"closed"` + * `"merged"` (only for Pull Requests ) + """ + + new_status: str + + +@dataclass +class DiscussionCommit(DiscussionEvent): + """A commit in a Pull Request. + + Subclass of [`DiscussionEvent`]. + + Attributes: + id (`str`): + The ID of the event. An hexadecimal string. + type (`str`): + The type of the event. + created_at (`datetime`): + A [`datetime`](https://docs.python.org/3/library/datetime.html?highlight=datetime#datetime.datetime) + object holding the creation timestamp for the event. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + summary (`str`): + The summary of the commit. + oid (`str`): + The OID / SHA of the commit, as a hexadecimal string. + """ + + summary: str + oid: str + + +@dataclass +class DiscussionTitleChange(DiscussionEvent): + """A rename event in a Discussion / Pull Request. + + Subclass of [`DiscussionEvent`]. + + Attributes: + id (`str`): + The ID of the event. An hexadecimal string. + type (`str`): + The type of the event. + created_at (`datetime`): + A [`datetime`](https://docs.python.org/3/library/datetime.html?highlight=datetime#datetime.datetime) + object holding the creation timestamp for the event. + author (`str`): + The username of the Discussion / Pull Request author. + Can be `"deleted"` if the user has been deleted since. + old_title (`str`): + The previous title for the Discussion / Pull Request. + new_title (`str`): + The new title. + """ + + old_title: str + new_title: str + + +def deserialize_event(event: dict) -> DiscussionEvent: + """Instantiates a [`DiscussionEvent`] from a dict""" + event_id: str = event["id"] + event_type: str = event["type"] + created_at = parse_datetime(event["createdAt"]) + + common_args = dict( + id=event_id, + type=event_type, + created_at=created_at, + author=event.get("author", {}).get("name", "deleted"), + _event=event, + ) + + if event_type == "comment": + return DiscussionComment( + **common_args, + edited=event["data"]["edited"], + hidden=event["data"]["hidden"], + content=event["data"]["latest"]["raw"], + ) + if event_type == "status-change": + return DiscussionStatusChange( + **common_args, + new_status=event["data"]["status"], + ) + if event_type == "commit": + return DiscussionCommit( + **common_args, + summary=event["data"]["subject"], + oid=event["data"]["oid"], + ) + if event_type == "title-change": + return DiscussionTitleChange( + **common_args, + old_title=event["data"]["from"], + new_title=event["data"]["to"], + ) + + return DiscussionEvent(**common_args) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/constants.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/constants.py new file mode 100644 index 0000000000000000000000000000000000000000..b123517eeb6e9d5de9dee146f29352fa4e95d997 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/constants.py @@ -0,0 +1,225 @@ +import os +import re +import typing +from typing import Literal, Optional, Tuple + + +# Possible values for env variables + + +ENV_VARS_TRUE_VALUES = {"1", "ON", "YES", "TRUE"} +ENV_VARS_TRUE_AND_AUTO_VALUES = ENV_VARS_TRUE_VALUES.union({"AUTO"}) + + +def _is_true(value: Optional[str]) -> bool: + if value is None: + return False + return value.upper() in ENV_VARS_TRUE_VALUES + + +def _as_int(value: Optional[str]) -> Optional[int]: + if value is None: + return None + return int(value) + + +# Constants for file downloads + +PYTORCH_WEIGHTS_NAME = "pytorch_model.bin" +TF2_WEIGHTS_NAME = "tf_model.h5" +TF_WEIGHTS_NAME = "model.ckpt" +FLAX_WEIGHTS_NAME = "flax_model.msgpack" +CONFIG_NAME = "config.json" +REPOCARD_NAME = "README.md" +DEFAULT_ETAG_TIMEOUT = 10 +DEFAULT_DOWNLOAD_TIMEOUT = 10 +DEFAULT_REQUEST_TIMEOUT = 10 +DOWNLOAD_CHUNK_SIZE = 10 * 1024 * 1024 +HF_TRANSFER_CONCURRENCY = 100 + +# Constants for serialization + +PYTORCH_WEIGHTS_FILE_PATTERN = "pytorch_model{suffix}.bin" # Unsafe pickle: use safetensors instead +SAFETENSORS_WEIGHTS_FILE_PATTERN = "model{suffix}.safetensors" +TF2_WEIGHTS_FILE_PATTERN = "tf_model{suffix}.h5" + +# Constants for safetensors repos + +SAFETENSORS_SINGLE_FILE = "model.safetensors" +SAFETENSORS_INDEX_FILE = "model.safetensors.index.json" +SAFETENSORS_MAX_HEADER_LENGTH = 25_000_000 + +# Timeout of aquiring file lock and logging the attempt +FILELOCK_LOG_EVERY_SECONDS = 10 + +# Git-related constants + +DEFAULT_REVISION = "main" +REGEX_COMMIT_OID = re.compile(r"[A-Fa-f0-9]{5,40}") + +HUGGINGFACE_CO_URL_HOME = "https://huggingface.co/" + +_staging_mode = _is_true(os.environ.get("HUGGINGFACE_CO_STAGING")) + +_HF_DEFAULT_ENDPOINT = "https://huggingface.co" +_HF_DEFAULT_STAGING_ENDPOINT = "https://hub-ci.huggingface.co" +ENDPOINT = os.getenv("HF_ENDPOINT") or (_HF_DEFAULT_STAGING_ENDPOINT if _staging_mode else _HF_DEFAULT_ENDPOINT) + +HUGGINGFACE_CO_URL_TEMPLATE = ENDPOINT + "/{repo_id}/resolve/{revision}/{filename}" +HUGGINGFACE_HEADER_X_REPO_COMMIT = "X-Repo-Commit" +HUGGINGFACE_HEADER_X_LINKED_ETAG = "X-Linked-Etag" +HUGGINGFACE_HEADER_X_LINKED_SIZE = "X-Linked-Size" + +INFERENCE_ENDPOINT = os.environ.get("HF_INFERENCE_ENDPOINT", "https://api-inference.huggingface.co") + +# See https://huggingface.co/docs/inference-endpoints/index +INFERENCE_ENDPOINTS_ENDPOINT = "https://api.endpoints.huggingface.cloud/v2" + + +REPO_ID_SEPARATOR = "--" +# ^ this substring is not allowed in repo_ids on hf.co +# and is the canonical one we use for serialization of repo ids elsewhere. + + +REPO_TYPE_DATASET = "dataset" +REPO_TYPE_SPACE = "space" +REPO_TYPE_MODEL = "model" +REPO_TYPES = [None, REPO_TYPE_MODEL, REPO_TYPE_DATASET, REPO_TYPE_SPACE] +SPACES_SDK_TYPES = ["gradio", "streamlit", "docker", "static"] + +REPO_TYPES_URL_PREFIXES = { + REPO_TYPE_DATASET: "datasets/", + REPO_TYPE_SPACE: "spaces/", +} +REPO_TYPES_MAPPING = { + "datasets": REPO_TYPE_DATASET, + "spaces": REPO_TYPE_SPACE, + "models": REPO_TYPE_MODEL, +} + +DiscussionTypeFilter = Literal["all", "discussion", "pull_request"] +DISCUSSION_TYPES: Tuple[DiscussionTypeFilter, ...] = typing.get_args(DiscussionTypeFilter) +DiscussionStatusFilter = Literal["all", "open", "closed"] +DISCUSSION_STATUS: Tuple[DiscussionTypeFilter, ...] = typing.get_args(DiscussionStatusFilter) + +# Webhook subscription types +WEBHOOK_DOMAIN_T = Literal["repo", "discussions"] + +# default cache +default_home = os.path.join(os.path.expanduser("~"), ".cache") +HF_HOME = os.path.expanduser( + os.getenv( + "HF_HOME", + os.path.join(os.getenv("XDG_CACHE_HOME", default_home), "huggingface"), + ) +) +hf_cache_home = HF_HOME # for backward compatibility. TODO: remove this in 1.0.0 + +default_cache_path = os.path.join(HF_HOME, "hub") +default_assets_cache_path = os.path.join(HF_HOME, "assets") + +# Legacy env variables +HUGGINGFACE_HUB_CACHE = os.getenv("HUGGINGFACE_HUB_CACHE", default_cache_path) +HUGGINGFACE_ASSETS_CACHE = os.getenv("HUGGINGFACE_ASSETS_CACHE", default_assets_cache_path) + +# New env variables +HF_HUB_CACHE = os.getenv("HF_HUB_CACHE", HUGGINGFACE_HUB_CACHE) +HF_ASSETS_CACHE = os.getenv("HF_ASSETS_CACHE", HUGGINGFACE_ASSETS_CACHE) + +HF_HUB_OFFLINE = _is_true(os.environ.get("HF_HUB_OFFLINE") or os.environ.get("TRANSFORMERS_OFFLINE")) + +# Opt-out from telemetry requests +HF_HUB_DISABLE_TELEMETRY = ( + _is_true(os.environ.get("HF_HUB_DISABLE_TELEMETRY")) # HF-specific env variable + or _is_true(os.environ.get("DISABLE_TELEMETRY")) + or _is_true(os.environ.get("DO_NOT_TRACK")) # https://consoledonottrack.com/ +) + +# In the past, token was stored in a hardcoded location +# `_OLD_HF_TOKEN_PATH` is deprecated and will be removed "at some point". +# See https://github.com/huggingface/huggingface_hub/issues/1232 +_OLD_HF_TOKEN_PATH = os.path.expanduser("~/.huggingface/token") +HF_TOKEN_PATH = os.environ.get("HF_TOKEN_PATH", os.path.join(HF_HOME, "token")) +HF_STORED_TOKENS_PATH = os.path.join(os.path.dirname(HF_TOKEN_PATH), "stored_tokens") + +if _staging_mode: + # In staging mode, we use a different cache to ensure we don't mix up production and staging data or tokens + _staging_home = os.path.join(os.path.expanduser("~"), ".cache", "huggingface_staging") + HUGGINGFACE_HUB_CACHE = os.path.join(_staging_home, "hub") + _OLD_HF_TOKEN_PATH = os.path.join(_staging_home, "_old_token") + HF_TOKEN_PATH = os.path.join(_staging_home, "token") + +# Here, `True` will disable progress bars globally without possibility of enabling it +# programmatically. `False` will enable them without possibility of disabling them. +# If environment variable is not set (None), then the user is free to enable/disable +# them programmatically. +# TL;DR: env variable has priority over code +__HF_HUB_DISABLE_PROGRESS_BARS = os.environ.get("HF_HUB_DISABLE_PROGRESS_BARS") +HF_HUB_DISABLE_PROGRESS_BARS: Optional[bool] = ( + _is_true(__HF_HUB_DISABLE_PROGRESS_BARS) if __HF_HUB_DISABLE_PROGRESS_BARS is not None else None +) + +# Disable warning on machines that do not support symlinks (e.g. Windows non-developer) +HF_HUB_DISABLE_SYMLINKS_WARNING: bool = _is_true(os.environ.get("HF_HUB_DISABLE_SYMLINKS_WARNING")) + +# Disable warning when using experimental features +HF_HUB_DISABLE_EXPERIMENTAL_WARNING: bool = _is_true(os.environ.get("HF_HUB_DISABLE_EXPERIMENTAL_WARNING")) + +# Disable sending the cached token by default is all HTTP requests to the Hub +HF_HUB_DISABLE_IMPLICIT_TOKEN: bool = _is_true(os.environ.get("HF_HUB_DISABLE_IMPLICIT_TOKEN")) + +# Enable fast-download using external dependency "hf_transfer" +# See: +# - https://pypi.org/project/hf-transfer/ +# - https://github.com/huggingface/hf_transfer (private) +HF_HUB_ENABLE_HF_TRANSFER: bool = _is_true(os.environ.get("HF_HUB_ENABLE_HF_TRANSFER")) + + +# UNUSED +# We don't use symlinks in local dir anymore. +HF_HUB_LOCAL_DIR_AUTO_SYMLINK_THRESHOLD: int = ( + _as_int(os.environ.get("HF_HUB_LOCAL_DIR_AUTO_SYMLINK_THRESHOLD")) or 5 * 1024 * 1024 +) + +# Used to override the etag timeout on a system level +HF_HUB_ETAG_TIMEOUT: int = _as_int(os.environ.get("HF_HUB_ETAG_TIMEOUT")) or DEFAULT_ETAG_TIMEOUT + +# Used to override the get request timeout on a system level +HF_HUB_DOWNLOAD_TIMEOUT: int = _as_int(os.environ.get("HF_HUB_DOWNLOAD_TIMEOUT")) or DEFAULT_DOWNLOAD_TIMEOUT + +# List frameworks that are handled by the InferenceAPI service. Useful to scan endpoints and check which models are +# deployed and running. Since 95% of the models are using the top 4 frameworks listed below, we scan only those by +# default. We still keep the full list of supported frameworks in case we want to scan all of them. +MAIN_INFERENCE_API_FRAMEWORKS = [ + "diffusers", + "sentence-transformers", + "text-generation-inference", + "transformers", +] + +ALL_INFERENCE_API_FRAMEWORKS = MAIN_INFERENCE_API_FRAMEWORKS + [ + "adapter-transformers", + "allennlp", + "asteroid", + "bertopic", + "doctr", + "espnet", + "fairseq", + "fastai", + "fasttext", + "flair", + "k2", + "keras", + "mindspore", + "nemo", + "open_clip", + "paddlenlp", + "peft", + "pyannote-audio", + "sklearn", + "spacy", + "span-marker", + "speechbrain", + "stanza", + "timm", +] diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/errors.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/errors.py new file mode 100644 index 0000000000000000000000000000000000000000..1dae6ddf978ba806a476eb8e8bf5aec2b30f4028 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/errors.py @@ -0,0 +1,310 @@ +"""Contains all custom errors.""" + +from pathlib import Path +from typing import Optional, Union + +from requests import HTTPError, Response + + +# CACHE ERRORS + + +class CacheNotFound(Exception): + """Exception thrown when the Huggingface cache is not found.""" + + cache_dir: Union[str, Path] + + def __init__(self, msg: str, cache_dir: Union[str, Path], *args, **kwargs): + super().__init__(msg, *args, **kwargs) + self.cache_dir = cache_dir + + +class CorruptedCacheException(Exception): + """Exception for any unexpected structure in the Huggingface cache-system.""" + + +# HEADERS ERRORS + + +class LocalTokenNotFoundError(EnvironmentError): + """Raised if local token is required but not found.""" + + +# HTTP ERRORS + + +class OfflineModeIsEnabled(ConnectionError): + """Raised when a request is made but `HF_HUB_OFFLINE=1` is set as environment variable.""" + + +class HfHubHTTPError(HTTPError): + """ + HTTPError to inherit from for any custom HTTP Error raised in HF Hub. + + Any HTTPError is converted at least into a `HfHubHTTPError`. If some information is + sent back by the server, it will be added to the error message. + + Added details: + - Request id from "X-Request-Id" header if exists. If not, fallback to "X-Amzn-Trace-Id" header if exists. + - Server error message from the header "X-Error-Message". + - Server error message if we can found one in the response body. + + Example: + ```py + import requests + from huggingface_hub.utils import get_session, hf_raise_for_status, HfHubHTTPError + + response = get_session().post(...) + try: + hf_raise_for_status(response) + except HfHubHTTPError as e: + print(str(e)) # formatted message + e.request_id, e.server_message # details returned by server + + # Complete the error message with additional information once it's raised + e.append_to_message("\n`create_commit` expects the repository to exist.") + raise + ``` + """ + + def __init__(self, message: str, response: Optional[Response] = None, *, server_message: Optional[str] = None): + self.request_id = ( + response.headers.get("x-request-id") or response.headers.get("X-Amzn-Trace-Id") + if response is not None + else None + ) + self.server_message = server_message + + super().__init__( + message, + response=response, # type: ignore [arg-type] + request=response.request if response is not None else None, # type: ignore [arg-type] + ) + + def append_to_message(self, additional_message: str) -> None: + """Append additional information to the `HfHubHTTPError` initial message.""" + self.args = (self.args[0] + additional_message,) + self.args[1:] + + +# INFERENCE CLIENT ERRORS + + +class InferenceTimeoutError(HTTPError, TimeoutError): + """Error raised when a model is unavailable or the request times out.""" + + +# INFERENCE ENDPOINT ERRORS + + +class InferenceEndpointError(Exception): + """Generic exception when dealing with Inference Endpoints.""" + + +class InferenceEndpointTimeoutError(InferenceEndpointError, TimeoutError): + """Exception for timeouts while waiting for Inference Endpoint.""" + + +# SAFETENSORS ERRORS + + +class SafetensorsParsingError(Exception): + """Raised when failing to parse a safetensors file metadata. + + This can be the case if the file is not a safetensors file or does not respect the specification. + """ + + +class NotASafetensorsRepoError(Exception): + """Raised when a repo is not a Safetensors repo i.e. doesn't have either a `model.safetensors` or a + `model.safetensors.index.json` file. + """ + + +# TEXT GENERATION ERRORS + + +class TextGenerationError(HTTPError): + """Generic error raised if text-generation went wrong.""" + + +# Text Generation Inference Errors +class ValidationError(TextGenerationError): + """Server-side validation error.""" + + +class GenerationError(TextGenerationError): + pass + + +class OverloadedError(TextGenerationError): + pass + + +class IncompleteGenerationError(TextGenerationError): + pass + + +class UnknownError(TextGenerationError): + pass + + +# VALIDATION ERRORS + + +class HFValidationError(ValueError): + """Generic exception thrown by `huggingface_hub` validators. + + Inherits from [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError). + """ + + +# FILE METADATA ERRORS + + +class FileMetadataError(OSError): + """Error triggered when the metadata of a file on the Hub cannot be retrieved (missing ETag or commit_hash). + + Inherits from `OSError` for backward compatibility. + """ + + +# REPOSITORY ERRORS + + +class RepositoryNotFoundError(HfHubHTTPError): + """ + Raised when trying to access a hf.co URL with an invalid repository name, or + with a private repo name the user does not have access to. + + Example: + + ```py + >>> from huggingface_hub import model_info + >>> model_info("") + (...) + huggingface_hub.utils._errors.RepositoryNotFoundError: 401 Client Error. (Request ID: PvMw_VjBMjVdMz53WKIzP) + + Repository Not Found for url: https://huggingface.co/api/models/%3Cnon_existent_repository%3E. + Please make sure you specified the correct `repo_id` and `repo_type`. + If the repo is private, make sure you are authenticated. + Invalid username or password. + ``` + """ + + +class GatedRepoError(RepositoryNotFoundError): + """ + Raised when trying to access a gated repository for which the user is not on the + authorized list. + + Note: derives from `RepositoryNotFoundError` to ensure backward compatibility. + + Example: + + ```py + >>> from huggingface_hub import model_info + >>> model_info("") + (...) + huggingface_hub.utils._errors.GatedRepoError: 403 Client Error. (Request ID: ViT1Bf7O_026LGSQuVqfa) + + Cannot access gated repo for url https://huggingface.co/api/models/ardent-figment/gated-model. + Access to model ardent-figment/gated-model is restricted and you are not in the authorized list. + Visit https://huggingface.co/ardent-figment/gated-model to ask for access. + ``` + """ + + +class DisabledRepoError(HfHubHTTPError): + """ + Raised when trying to access a repository that has been disabled by its author. + + Example: + + ```py + >>> from huggingface_hub import dataset_info + >>> dataset_info("laion/laion-art") + (...) + huggingface_hub.utils._errors.DisabledRepoError: 403 Client Error. (Request ID: Root=1-659fc3fa-3031673e0f92c71a2260dbe2;bc6f4dfb-b30a-4862-af0a-5cfe827610d8) + + Cannot access repository for url https://huggingface.co/api/datasets/laion/laion-art. + Access to this resource is disabled. + ``` + """ + + +# REVISION ERROR + + +class RevisionNotFoundError(HfHubHTTPError): + """ + Raised when trying to access a hf.co URL with a valid repository but an invalid + revision. + + Example: + + ```py + >>> from huggingface_hub import hf_hub_download + >>> hf_hub_download('bert-base-cased', 'config.json', revision='') + (...) + huggingface_hub.utils._errors.RevisionNotFoundError: 404 Client Error. (Request ID: Mwhe_c3Kt650GcdKEFomX) + + Revision Not Found for url: https://huggingface.co/bert-base-cased/resolve/%3Cnon-existent-revision%3E/config.json. + ``` + """ + + +# ENTRY ERRORS +class EntryNotFoundError(HfHubHTTPError): + """ + Raised when trying to access a hf.co URL with a valid repository and revision + but an invalid filename. + + Example: + + ```py + >>> from huggingface_hub import hf_hub_download + >>> hf_hub_download('bert-base-cased', '') + (...) + huggingface_hub.utils._errors.EntryNotFoundError: 404 Client Error. (Request ID: 53pNl6M0MxsnG5Sw8JA6x) + + Entry Not Found for url: https://huggingface.co/bert-base-cased/resolve/main/%3Cnon-existent-file%3E. + ``` + """ + + +class LocalEntryNotFoundError(EntryNotFoundError, FileNotFoundError, ValueError): + """ + Raised when trying to access a file or snapshot that is not on the disk when network is + disabled or unavailable (connection issue). The entry may exist on the Hub. + + Note: `ValueError` type is to ensure backward compatibility. + Note: `LocalEntryNotFoundError` derives from `HTTPError` because of `EntryNotFoundError` + even when it is not a network issue. + + Example: + + ```py + >>> from huggingface_hub import hf_hub_download + >>> hf_hub_download('bert-base-cased', '', local_files_only=True) + (...) + huggingface_hub.utils._errors.LocalEntryNotFoundError: Cannot find the requested files in the disk cache and outgoing traffic has been disabled. To enable hf.co look-ups and downloads online, set 'local_files_only' to False. + ``` + """ + + def __init__(self, message: str): + super().__init__(message, response=None) + + +# REQUEST ERROR +class BadRequestError(HfHubHTTPError, ValueError): + """ + Raised by `hf_raise_for_status` when the server returns a HTTP 400 error. + + Example: + + ```py + >>> resp = requests.post("hf.co/api/check", ...) + >>> hf_raise_for_status(resp, endpoint_name="check") + huggingface_hub.utils._errors.BadRequestError: Bad request for check endpoint: {details} (Request ID: XXX) + ``` + """ diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/fastai_utils.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/fastai_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..3a9bf25f449991d9213105da9cc93fc41780123b --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/fastai_utils.py @@ -0,0 +1,424 @@ +import json +import os +from pathlib import Path +from pickle import DEFAULT_PROTOCOL, PicklingError +from typing import Any, Dict, List, Optional, Union + +from packaging import version + +from huggingface_hub import constants, snapshot_download +from huggingface_hub.hf_api import HfApi +from huggingface_hub.utils import ( + SoftTemporaryDirectory, + get_fastai_version, + get_fastcore_version, + get_python_version, +) + +from .utils import logging, validate_hf_hub_args +from .utils._runtime import _PY_VERSION # noqa: F401 # for backward compatibility... + + +logger = logging.get_logger(__name__) + + +def _check_fastai_fastcore_versions( + fastai_min_version: str = "2.4", + fastcore_min_version: str = "1.3.27", +): + """ + Checks that the installed fastai and fastcore versions are compatible for pickle serialization. + + Args: + fastai_min_version (`str`, *optional*): + The minimum fastai version supported. + fastcore_min_version (`str`, *optional*): + The minimum fastcore version supported. + + + Raises the following error: + + - [`ImportError`](https://docs.python.org/3/library/exceptions.html#ImportError) + if the fastai or fastcore libraries are not available or are of an invalid version. + + + """ + + if (get_fastcore_version() or get_fastai_version()) == "N/A": + raise ImportError( + f"fastai>={fastai_min_version} and fastcore>={fastcore_min_version} are" + f" required. Currently using fastai=={get_fastai_version()} and" + f" fastcore=={get_fastcore_version()}." + ) + + current_fastai_version = version.Version(get_fastai_version()) + current_fastcore_version = version.Version(get_fastcore_version()) + + if current_fastai_version < version.Version(fastai_min_version): + raise ImportError( + "`push_to_hub_fastai` and `from_pretrained_fastai` require a" + f" fastai>={fastai_min_version} version, but you are using fastai version" + f" {get_fastai_version()} which is incompatible. Upgrade with `pip install" + " fastai==2.5.6`." + ) + + if current_fastcore_version < version.Version(fastcore_min_version): + raise ImportError( + "`push_to_hub_fastai` and `from_pretrained_fastai` require a" + f" fastcore>={fastcore_min_version} version, but you are using fastcore" + f" version {get_fastcore_version()} which is incompatible. Upgrade with" + " `pip install fastcore==1.3.27`." + ) + + +def _check_fastai_fastcore_pyproject_versions( + storage_folder: str, + fastai_min_version: str = "2.4", + fastcore_min_version: str = "1.3.27", +): + """ + Checks that the `pyproject.toml` file in the directory `storage_folder` has fastai and fastcore versions + that are compatible with `from_pretrained_fastai` and `push_to_hub_fastai`. If `pyproject.toml` does not exist + or does not contain versions for fastai and fastcore, then it logs a warning. + + Args: + storage_folder (`str`): + Folder to look for the `pyproject.toml` file. + fastai_min_version (`str`, *optional*): + The minimum fastai version supported. + fastcore_min_version (`str`, *optional*): + The minimum fastcore version supported. + + + Raises the following errors: + + - [`ImportError`](https://docs.python.org/3/library/exceptions.html#ImportError) + if the `toml` module is not installed. + - [`ImportError`](https://docs.python.org/3/library/exceptions.html#ImportError) + if the `pyproject.toml` indicates a lower than minimum supported version of fastai or fastcore. + + + """ + + try: + import toml + except ModuleNotFoundError: + raise ImportError( + "`push_to_hub_fastai` and `from_pretrained_fastai` require the toml module." + " Install it with `pip install toml`." + ) + + # Checks that a `pyproject.toml`, with `build-system` and `requires` sections, exists in the repository. If so, get a list of required packages. + if not os.path.isfile(f"{storage_folder}/pyproject.toml"): + logger.warning( + "There is no `pyproject.toml` in the repository that contains the fastai" + " `Learner`. The `pyproject.toml` would allow us to verify that your fastai" + " and fastcore versions are compatible with those of the model you want to" + " load." + ) + return + pyproject_toml = toml.load(f"{storage_folder}/pyproject.toml") + + if "build-system" not in pyproject_toml.keys(): + logger.warning( + "There is no `build-system` section in the pyproject.toml of the repository" + " that contains the fastai `Learner`. The `build-system` would allow us to" + " verify that your fastai and fastcore versions are compatible with those" + " of the model you want to load." + ) + return + build_system_toml = pyproject_toml["build-system"] + + if "requires" not in build_system_toml.keys(): + logger.warning( + "There is no `requires` section in the pyproject.toml of the repository" + " that contains the fastai `Learner`. The `requires` would allow us to" + " verify that your fastai and fastcore versions are compatible with those" + " of the model you want to load." + ) + return + package_versions = build_system_toml["requires"] + + # Extracts contains fastai and fastcore versions from `pyproject.toml` if available. + # If the package is specified but not the version (e.g. "fastai" instead of "fastai=2.4"), the default versions are the highest. + fastai_packages = [pck for pck in package_versions if pck.startswith("fastai")] + if len(fastai_packages) == 0: + logger.warning("The repository does not have a fastai version specified in the `pyproject.toml`.") + # fastai_version is an empty string if not specified + else: + fastai_version = str(fastai_packages[0]).partition("=")[2] + if fastai_version != "" and version.Version(fastai_version) < version.Version(fastai_min_version): + raise ImportError( + "`from_pretrained_fastai` requires" + f" fastai>={fastai_min_version} version but the model to load uses" + f" {fastai_version} which is incompatible." + ) + + fastcore_packages = [pck for pck in package_versions if pck.startswith("fastcore")] + if len(fastcore_packages) == 0: + logger.warning("The repository does not have a fastcore version specified in the `pyproject.toml`.") + # fastcore_version is an empty string if not specified + else: + fastcore_version = str(fastcore_packages[0]).partition("=")[2] + if fastcore_version != "" and version.Version(fastcore_version) < version.Version(fastcore_min_version): + raise ImportError( + "`from_pretrained_fastai` requires" + f" fastcore>={fastcore_min_version} version, but you are using fastcore" + f" version {fastcore_version} which is incompatible." + ) + + +README_TEMPLATE = """--- +tags: +- fastai +--- + +# Amazing! + +🥳 Congratulations on hosting your fastai model on the Hugging Face Hub! + +# Some next steps +1. Fill out this model card with more information (see the template below and the [documentation here](https://huggingface.co/docs/hub/model-repos))! + +2. Create a demo in Gradio or Streamlit using 🤗 Spaces ([documentation here](https://huggingface.co/docs/hub/spaces)). + +3. Join the fastai community on the [Fastai Discord](https://discord.com/invite/YKrxeNn)! + +Greetings fellow fastlearner 🤝! Don't forget to delete this content from your model card. + + +--- + + +# Model card + +## Model description +More information needed + +## Intended uses & limitations +More information needed + +## Training and evaluation data +More information needed +""" + +PYPROJECT_TEMPLATE = f"""[build-system] +requires = ["setuptools>=40.8.0", "wheel", "python={get_python_version()}", "fastai={get_fastai_version()}", "fastcore={get_fastcore_version()}"] +build-backend = "setuptools.build_meta:__legacy__" +""" + + +def _create_model_card(repo_dir: Path): + """ + Creates a model card for the repository. + + Args: + repo_dir (`Path`): + Directory where model card is created. + """ + readme_path = repo_dir / "README.md" + + if not readme_path.exists(): + with readme_path.open("w", encoding="utf-8") as f: + f.write(README_TEMPLATE) + + +def _create_model_pyproject(repo_dir: Path): + """ + Creates a `pyproject.toml` for the repository. + + Args: + repo_dir (`Path`): + Directory where `pyproject.toml` is created. + """ + pyproject_path = repo_dir / "pyproject.toml" + + if not pyproject_path.exists(): + with pyproject_path.open("w", encoding="utf-8") as f: + f.write(PYPROJECT_TEMPLATE) + + +def _save_pretrained_fastai( + learner, + save_directory: Union[str, Path], + config: Optional[Dict[str, Any]] = None, +): + """ + Saves a fastai learner to `save_directory` in pickle format using the default pickle protocol for the version of python used. + + Args: + learner (`Learner`): + The `fastai.Learner` you'd like to save. + save_directory (`str` or `Path`): + Specific directory in which you want to save the fastai learner. + config (`dict`, *optional*): + Configuration object. Will be uploaded as a .json file. Example: 'https://huggingface.co/espejelomar/fastai-pet-breeds-classification/blob/main/config.json'. + + + + Raises the following error: + + - [`RuntimeError`](https://docs.python.org/3/library/exceptions.html#RuntimeError) + if the config file provided is not a dictionary. + + + """ + _check_fastai_fastcore_versions() + + os.makedirs(save_directory, exist_ok=True) + + # if the user provides config then we update it with the fastai and fastcore versions in CONFIG_TEMPLATE. + if config is not None: + if not isinstance(config, dict): + raise RuntimeError(f"Provided config should be a dict. Got: '{type(config)}'") + path = os.path.join(save_directory, constants.CONFIG_NAME) + with open(path, "w") as f: + json.dump(config, f) + + _create_model_card(Path(save_directory)) + _create_model_pyproject(Path(save_directory)) + + # learner.export saves the model in `self.path`. + learner.path = Path(save_directory) + os.makedirs(save_directory, exist_ok=True) + try: + learner.export( + fname="model.pkl", + pickle_protocol=DEFAULT_PROTOCOL, + ) + except PicklingError: + raise PicklingError( + "You are using a lambda function, i.e., an anonymous function. `pickle`" + " cannot pickle function objects and requires that all functions have" + " names. One possible solution is to name the function." + ) + + +@validate_hf_hub_args +def from_pretrained_fastai( + repo_id: str, + revision: Optional[str] = None, +): + """ + Load pretrained fastai model from the Hub or from a local directory. + + Args: + repo_id (`str`): + The location where the pickled fastai.Learner is. It can be either of the two: + - Hosted on the Hugging Face Hub. E.g.: 'espejelomar/fatai-pet-breeds-classification' or 'distilgpt2'. + You can add a `revision` by appending `@` at the end of `repo_id`. E.g.: `dbmdz/bert-base-german-cased@main`. + Revision is the specific model version to use. Since we use a git-based system for storing models and other + artifacts on the Hugging Face Hub, it can be a branch name, a tag name, or a commit id. + - Hosted locally. `repo_id` would be a directory containing the pickle and a pyproject.toml + indicating the fastai and fastcore versions used to build the `fastai.Learner`. E.g.: `./my_model_directory/`. + revision (`str`, *optional*): + Revision at which the repo's files are downloaded. See documentation of `snapshot_download`. + + Returns: + The `fastai.Learner` model in the `repo_id` repo. + """ + _check_fastai_fastcore_versions() + + # Load the `repo_id` repo. + # `snapshot_download` returns the folder where the model was stored. + # `cache_dir` will be the default '/root/.cache/huggingface/hub' + if not os.path.isdir(repo_id): + storage_folder = snapshot_download( + repo_id=repo_id, + revision=revision, + library_name="fastai", + library_version=get_fastai_version(), + ) + else: + storage_folder = repo_id + + _check_fastai_fastcore_pyproject_versions(storage_folder) + + from fastai.learner import load_learner # type: ignore + + return load_learner(os.path.join(storage_folder, "model.pkl")) + + +@validate_hf_hub_args +def push_to_hub_fastai( + learner, + *, + repo_id: str, + commit_message: str = "Push FastAI model using huggingface_hub.", + private: bool = False, + token: Optional[str] = None, + config: Optional[dict] = None, + branch: Optional[str] = None, + create_pr: Optional[bool] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + api_endpoint: Optional[str] = None, +): + """ + Upload learner checkpoint files to the Hub. + + Use `allow_patterns` and `ignore_patterns` to precisely filter which files should be pushed to the hub. Use + `delete_patterns` to delete existing remote files in the same commit. See [`upload_folder`] reference for more + details. + + Args: + learner (`Learner`): + The `fastai.Learner' you'd like to push to the Hub. + repo_id (`str`): + The repository id for your model in Hub in the format of "namespace/repo_name". The namespace can be your individual account or an organization to which you have write access (for example, 'stanfordnlp/stanza-de'). + commit_message (`str`, *optional*): + Message to commit while pushing. Will default to :obj:`"add model"`. + private (`bool`, *optional*, defaults to `False`): + Whether or not the repository created should be private. + token (`str`, *optional*): + The Hugging Face account token to use as HTTP bearer authorization for remote files. If :obj:`None`, the token will be asked by a prompt. + config (`dict`, *optional*): + Configuration object to be saved alongside the model weights. + branch (`str`, *optional*): + The git branch on which to push the model. This defaults to + the default branch as specified in your repository, which + defaults to `"main"`. + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request from `branch` with that commit. + Defaults to `False`. + api_endpoint (`str`, *optional*): + The API endpoint to use when pushing the model to the hub. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are pushed. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not pushed. + delete_patterns (`List[str]` or `str`, *optional*): + If provided, remote files matching any of the patterns will be deleted from the repo. + + Returns: + The url of the commit of your model in the given repository. + + + + Raises the following error: + + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if the user is not log on to the Hugging Face Hub. + + + """ + _check_fastai_fastcore_versions() + api = HfApi(endpoint=api_endpoint) + repo_id = api.create_repo(repo_id=repo_id, token=token, private=private, exist_ok=True).repo_id + + # Push the files to the repo in a single commit + with SoftTemporaryDirectory() as tmp: + saved_path = Path(tmp) / repo_id + _save_pretrained_fastai(learner, saved_path, config=config) + return api.upload_folder( + repo_id=repo_id, + token=token, + folder_path=saved_path, + commit_message=commit_message, + revision=branch, + create_pr=create_pr, + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + delete_patterns=delete_patterns, + ) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/file_download.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/file_download.py new file mode 100644 index 0000000000000000000000000000000000000000..def44b3a342c7a235e0e3a535c4f6ab5e018c979 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/file_download.py @@ -0,0 +1,1624 @@ +import contextlib +import copy +import errno +import inspect +import os +import re +import shutil +import stat +import time +import uuid +import warnings +from dataclasses import dataclass +from pathlib import Path +from typing import Any, BinaryIO, Dict, Literal, NoReturn, Optional, Tuple, Union +from urllib.parse import quote, urlparse + +import requests + +from . import ( + __version__, # noqa: F401 # for backward compatibility + constants, +) +from ._local_folder import get_local_download_paths, read_download_metadata, write_download_metadata +from .constants import ( + HUGGINGFACE_CO_URL_TEMPLATE, # noqa: F401 # for backward compatibility + HUGGINGFACE_HUB_CACHE, # noqa: F401 # for backward compatibility +) +from .errors import ( + EntryNotFoundError, + FileMetadataError, + GatedRepoError, + LocalEntryNotFoundError, + RepositoryNotFoundError, + RevisionNotFoundError, +) +from .utils import ( + OfflineModeIsEnabled, + SoftTemporaryDirectory, + WeakFileLock, + build_hf_headers, + get_fastai_version, # noqa: F401 # for backward compatibility + get_fastcore_version, # noqa: F401 # for backward compatibility + get_graphviz_version, # noqa: F401 # for backward compatibility + get_jinja_version, # noqa: F401 # for backward compatibility + get_pydot_version, # noqa: F401 # for backward compatibility + get_session, + get_tf_version, # noqa: F401 # for backward compatibility + get_torch_version, # noqa: F401 # for backward compatibility + hf_raise_for_status, + is_fastai_available, # noqa: F401 # for backward compatibility + is_fastcore_available, # noqa: F401 # for backward compatibility + is_graphviz_available, # noqa: F401 # for backward compatibility + is_jinja_available, # noqa: F401 # for backward compatibility + is_pydot_available, # noqa: F401 # for backward compatibility + is_tf_available, # noqa: F401 # for backward compatibility + is_torch_available, # noqa: F401 # for backward compatibility + logging, + reset_sessions, + tqdm, + validate_hf_hub_args, +) +from .utils._runtime import _PY_VERSION # noqa: F401 # for backward compatibility +from .utils._typing import HTTP_METHOD_T +from .utils.sha import sha_fileobj + + +logger = logging.get_logger(__name__) + +# Return value when trying to load a file from cache but the file does not exist in the distant repo. +_CACHED_NO_EXIST = object() +_CACHED_NO_EXIST_T = Any + +# Regex to get filename from a "Content-Disposition" header for CDN-served files +HEADER_FILENAME_PATTERN = re.compile(r'filename="(?P.*?)";') + +# Regex to check if the revision IS directly a commit_hash +REGEX_COMMIT_HASH = re.compile(r"^[0-9a-f]{40}$") + +# Regex to check if the file etag IS a valid sha256 +REGEX_SHA256 = re.compile(r"^[0-9a-f]{64}$") + +_are_symlinks_supported_in_dir: Dict[str, bool] = {} + + +def are_symlinks_supported(cache_dir: Union[str, Path, None] = None) -> bool: + """Return whether the symlinks are supported on the machine. + + Since symlinks support can change depending on the mounted disk, we need to check + on the precise cache folder. By default, the default HF cache directory is checked. + + Args: + cache_dir (`str`, `Path`, *optional*): + Path to the folder where cached files are stored. + + Returns: [bool] Whether symlinks are supported in the directory. + """ + # Defaults to HF cache + if cache_dir is None: + cache_dir = constants.HF_HUB_CACHE + cache_dir = str(Path(cache_dir).expanduser().resolve()) # make it unique + + # Check symlink compatibility only once (per cache directory) at first time use + if cache_dir not in _are_symlinks_supported_in_dir: + _are_symlinks_supported_in_dir[cache_dir] = True + + os.makedirs(cache_dir, exist_ok=True) + with SoftTemporaryDirectory(dir=cache_dir) as tmpdir: + src_path = Path(tmpdir) / "dummy_file_src" + src_path.touch() + dst_path = Path(tmpdir) / "dummy_file_dst" + + # Relative source path as in `_create_symlink`` + relative_src = os.path.relpath(src_path, start=os.path.dirname(dst_path)) + try: + os.symlink(relative_src, dst_path) + except OSError: + # Likely running on Windows + _are_symlinks_supported_in_dir[cache_dir] = False + + if not constants.HF_HUB_DISABLE_SYMLINKS_WARNING: + message = ( + "`huggingface_hub` cache-system uses symlinks by default to" + " efficiently store duplicated files but your machine does not" + f" support them in {cache_dir}. Caching files will still work" + " but in a degraded version that might require more space on" + " your disk. This warning can be disabled by setting the" + " `HF_HUB_DISABLE_SYMLINKS_WARNING` environment variable. For" + " more details, see" + " https://huggingface.co/docs/huggingface_hub/how-to-cache#limitations." + ) + if os.name == "nt": + message += ( + "\nTo support symlinks on Windows, you either need to" + " activate Developer Mode or to run Python as an" + " administrator. In order to activate developer mode," + " see this article:" + " https://docs.microsoft.com/en-us/windows/apps/get-started/enable-your-device-for-development" + ) + warnings.warn(message) + + return _are_symlinks_supported_in_dir[cache_dir] + + +@dataclass(frozen=True) +class HfFileMetadata: + """Data structure containing information about a file versioned on the Hub. + + Returned by [`get_hf_file_metadata`] based on a URL. + + Args: + commit_hash (`str`, *optional*): + The commit_hash related to the file. + etag (`str`, *optional*): + Etag of the file on the server. + location (`str`): + Location where to download the file. Can be a Hub url or not (CDN). + size (`size`): + Size of the file. In case of an LFS file, contains the size of the actual + LFS file, not the pointer. + """ + + commit_hash: Optional[str] + etag: Optional[str] + location: str + size: Optional[int] + + +@validate_hf_hub_args +def hf_hub_url( + repo_id: str, + filename: str, + *, + subfolder: Optional[str] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + endpoint: Optional[str] = None, +) -> str: + """Construct the URL of a file from the given information. + + The resolved address can either be a huggingface.co-hosted url, or a link to + Cloudfront (a Content Delivery Network, or CDN) for large files which are + more than a few MBs. + + Args: + repo_id (`str`): + A namespace (user or an organization) name and a repo name separated + by a `/`. + filename (`str`): + The name of the file in the repo. + subfolder (`str`, *optional*): + An optional value corresponding to a folder inside the repo. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if downloading from a dataset or space, + `None` or `"model"` if downloading from a model. Default is `None`. + revision (`str`, *optional*): + An optional Git revision id which can be a branch name, a tag, or a + commit hash. + + Example: + + ```python + >>> from huggingface_hub import hf_hub_url + + >>> hf_hub_url( + ... repo_id="julien-c/EsperBERTo-small", filename="pytorch_model.bin" + ... ) + 'https://huggingface.co/julien-c/EsperBERTo-small/resolve/main/pytorch_model.bin' + ``` + + + + Notes: + + Cloudfront is replicated over the globe so downloads are way faster for + the end user (and it also lowers our bandwidth costs). + + Cloudfront aggressively caches files by default (default TTL is 24 + hours), however this is not an issue here because we implement a + git-based versioning system on huggingface.co, which means that we store + the files on S3/Cloudfront in a content-addressable way (i.e., the file + name is its hash). Using content-addressable filenames means cache can't + ever be stale. + + In terms of client-side caching from this library, we base our caching + on the objects' entity tag (`ETag`), which is an identifier of a + specific version of a resource [1]_. An object's ETag is: its git-sha1 + if stored in git, or its sha256 if stored in git-lfs. + + + + References: + + - [1] https://developer.mozilla.org/en-US/docs/Web/HTTP/Headers/ETag + """ + if subfolder == "": + subfolder = None + if subfolder is not None: + filename = f"{subfolder}/{filename}" + + if repo_type not in constants.REPO_TYPES: + raise ValueError("Invalid repo type") + + if repo_type in constants.REPO_TYPES_URL_PREFIXES: + repo_id = constants.REPO_TYPES_URL_PREFIXES[repo_type] + repo_id + + if revision is None: + revision = constants.DEFAULT_REVISION + url = HUGGINGFACE_CO_URL_TEMPLATE.format( + repo_id=repo_id, revision=quote(revision, safe=""), filename=quote(filename) + ) + # Update endpoint if provided + if endpoint is not None and url.startswith(constants.ENDPOINT): + url = endpoint + url[len(constants.ENDPOINT) :] + return url + + +def _request_wrapper( + method: HTTP_METHOD_T, url: str, *, follow_relative_redirects: bool = False, **params +) -> requests.Response: + """Wrapper around requests methods to follow relative redirects if `follow_relative_redirects=True` even when + `allow_redirection=False`. + + Args: + method (`str`): + HTTP method, such as 'GET' or 'HEAD'. + url (`str`): + The URL of the resource to fetch. + follow_relative_redirects (`bool`, *optional*, defaults to `False`) + If True, relative redirection (redirection to the same site) will be resolved even when `allow_redirection` + kwarg is set to False. Useful when we want to follow a redirection to a renamed repository without + following redirection to a CDN. + **params (`dict`, *optional*): + Params to pass to `requests.request`. + """ + # Recursively follow relative redirects + if follow_relative_redirects: + response = _request_wrapper( + method=method, + url=url, + follow_relative_redirects=False, + **params, + ) + + # If redirection, we redirect only relative paths. + # This is useful in case of a renamed repository. + if 300 <= response.status_code <= 399: + parsed_target = urlparse(response.headers["Location"]) + if parsed_target.netloc == "": + # This means it is a relative 'location' headers, as allowed by RFC 7231. + # (e.g. '/path/to/resource' instead of 'http://domain.tld/path/to/resource') + # We want to follow this relative redirect ! + # + # Highly inspired by `resolve_redirects` from requests library. + # See https://github.com/psf/requests/blob/main/requests/sessions.py#L159 + next_url = urlparse(url)._replace(path=parsed_target.path).geturl() + return _request_wrapper(method=method, url=next_url, follow_relative_redirects=True, **params) + return response + + # Perform request and return if status_code is not in the retry list. + response = get_session().request(method=method, url=url, **params) + hf_raise_for_status(response) + return response + + +def http_get( + url: str, + temp_file: BinaryIO, + *, + proxies: Optional[Dict] = None, + resume_size: float = 0, + headers: Optional[Dict[str, str]] = None, + expected_size: Optional[int] = None, + displayed_filename: Optional[str] = None, + _nb_retries: int = 5, + _tqdm_bar: Optional[tqdm] = None, +) -> None: + """ + Download a remote file. Do not gobble up errors, and will return errors tailored to the Hugging Face Hub. + + If ConnectionError (SSLError) or ReadTimeout happen while streaming data from the server, it is most likely a + transient error (network outage?). We log a warning message and try to resume the download a few times before + giving up. The method gives up after 5 attempts if no new data has being received from the server. + + Args: + url (`str`): + The URL of the file to download. + temp_file (`BinaryIO`): + The file-like object where to save the file. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to `requests.request`. + resume_size (`float`, *optional*): + The number of bytes already downloaded. If set to 0 (default), the whole file is download. If set to a + positive number, the download will resume at the given position. + headers (`dict`, *optional*): + Dictionary of HTTP Headers to send with the request. + expected_size (`int`, *optional*): + The expected size of the file to download. If set, the download will raise an error if the size of the + received content is different from the expected one. + displayed_filename (`str`, *optional*): + The filename of the file that is being downloaded. Value is used only to display a nice progress bar. If + not set, the filename is guessed from the URL or the `Content-Disposition` header. + """ + if expected_size is not None and resume_size == expected_size: + # If the file is already fully downloaded, we don't need to download it again. + return + + hf_transfer = None + if constants.HF_HUB_ENABLE_HF_TRANSFER: + if resume_size != 0: + warnings.warn("'hf_transfer' does not support `resume_size`: falling back to regular download method") + elif proxies is not None: + warnings.warn("'hf_transfer' does not support `proxies`: falling back to regular download method") + else: + try: + import hf_transfer # type: ignore[no-redef] + except ImportError: + raise ValueError( + "Fast download using 'hf_transfer' is enabled" + " (HF_HUB_ENABLE_HF_TRANSFER=1) but 'hf_transfer' package is not" + " available in your environment. Try `pip install hf_transfer`." + ) + + initial_headers = headers + headers = copy.deepcopy(headers) or {} + if resume_size > 0: + headers["Range"] = "bytes=%d-" % (resume_size,) + + r = _request_wrapper( + method="GET", url=url, stream=True, proxies=proxies, headers=headers, timeout=constants.HF_HUB_DOWNLOAD_TIMEOUT + ) + hf_raise_for_status(r) + content_length = r.headers.get("Content-Length") + + # NOTE: 'total' is the total number of bytes to download, not the number of bytes in the file. + # If the file is compressed, the number of bytes in the saved file will be higher than 'total'. + total = resume_size + int(content_length) if content_length is not None else None + + if displayed_filename is None: + displayed_filename = url + content_disposition = r.headers.get("Content-Disposition") + if content_disposition is not None: + match = HEADER_FILENAME_PATTERN.search(content_disposition) + if match is not None: + # Means file is on CDN + displayed_filename = match.groupdict()["filename"] + + # Truncate filename if too long to display + if len(displayed_filename) > 40: + displayed_filename = f"(…){displayed_filename[-40:]}" + + consistency_error_message = ( + f"Consistency check failed: file should be of size {expected_size} but has size" + f" {{actual_size}} ({displayed_filename}).\nWe are sorry for the inconvenience. Please retry" + " with `force_download=True`.\nIf the issue persists, please let us know by opening an issue " + "on https://github.com/huggingface/huggingface_hub." + ) + + # Stream file to buffer + progress_cm: tqdm = ( + tqdm( # type: ignore[assignment] + unit="B", + unit_scale=True, + total=total, + initial=resume_size, + desc=displayed_filename, + disable=True if (logger.getEffectiveLevel() == logging.NOTSET) else None, + # ^ set `disable=None` rather than `disable=False` by default to disable progress bar when no TTY attached + # see https://github.com/huggingface/huggingface_hub/pull/2000 + name="huggingface_hub.http_get", + ) + if _tqdm_bar is None + else contextlib.nullcontext(_tqdm_bar) + # ^ `contextlib.nullcontext` mimics a context manager that does nothing + # Makes it easier to use the same code path for both cases but in the later + # case, the progress bar is not closed when exiting the context manager. + ) + + with progress_cm as progress: + if hf_transfer and total is not None and total > 5 * constants.DOWNLOAD_CHUNK_SIZE: + supports_callback = "callback" in inspect.signature(hf_transfer.download).parameters + if not supports_callback: + warnings.warn( + "You are using an outdated version of `hf_transfer`. " + "Consider upgrading to latest version to enable progress bars " + "using `pip install -U hf_transfer`." + ) + try: + hf_transfer.download( + url=url, + filename=temp_file.name, + max_files=constants.HF_TRANSFER_CONCURRENCY, + chunk_size=constants.DOWNLOAD_CHUNK_SIZE, + headers=headers, + parallel_failures=3, + max_retries=5, + **({"callback": progress.update} if supports_callback else {}), + ) + except Exception as e: + raise RuntimeError( + "An error occurred while downloading using `hf_transfer`. Consider" + " disabling HF_HUB_ENABLE_HF_TRANSFER for better error handling." + ) from e + if not supports_callback: + progress.update(total) + if expected_size is not None and expected_size != os.path.getsize(temp_file.name): + raise EnvironmentError( + consistency_error_message.format( + actual_size=os.path.getsize(temp_file.name), + ) + ) + return + new_resume_size = resume_size + try: + for chunk in r.iter_content(chunk_size=constants.DOWNLOAD_CHUNK_SIZE): + if chunk: # filter out keep-alive new chunks + progress.update(len(chunk)) + temp_file.write(chunk) + new_resume_size += len(chunk) + # Some data has been downloaded from the server so we reset the number of retries. + _nb_retries = 5 + except (requests.ConnectionError, requests.ReadTimeout) as e: + # If ConnectionError (SSLError) or ReadTimeout happen while streaming data from the server, it is most likely + # a transient error (network outage?). We log a warning message and try to resume the download a few times + # before giving up. Tre retry mechanism is basic but should be enough in most cases. + if _nb_retries <= 0: + logger.warning("Error while downloading from %s: %s\nMax retries exceeded.", url, str(e)) + raise + logger.warning("Error while downloading from %s: %s\nTrying to resume download...", url, str(e)) + time.sleep(1) + reset_sessions() # In case of SSLError it's best to reset the shared requests.Session objects + return http_get( + url=url, + temp_file=temp_file, + proxies=proxies, + resume_size=new_resume_size, + headers=initial_headers, + expected_size=expected_size, + _nb_retries=_nb_retries - 1, + _tqdm_bar=_tqdm_bar, + ) + + if expected_size is not None and expected_size != temp_file.tell(): + raise EnvironmentError( + consistency_error_message.format( + actual_size=temp_file.tell(), + ) + ) + + +def _normalize_etag(etag: Optional[str]) -> Optional[str]: + """Normalize ETag HTTP header, so it can be used to create nice filepaths. + + The HTTP spec allows two forms of ETag: + ETag: W/"" + ETag: "" + + For now, we only expect the second form from the server, but we want to be future-proof so we support both. For + more context, see `TestNormalizeEtag` tests and https://github.com/huggingface/huggingface_hub/pull/1428. + + Args: + etag (`str`, *optional*): HTTP header + + Returns: + `str` or `None`: string that can be used as a nice directory name. + Returns `None` if input is None. + """ + if etag is None: + return None + return etag.lstrip("W/").strip('"') + + +def _create_relative_symlink(src: str, dst: str, new_blob: bool = False) -> None: + """Alias method used in `transformers` conversion script.""" + return _create_symlink(src=src, dst=dst, new_blob=new_blob) + + +def _create_symlink(src: str, dst: str, new_blob: bool = False) -> None: + """Create a symbolic link named dst pointing to src. + + By default, it will try to create a symlink using a relative path. Relative paths have 2 advantages: + - If the cache_folder is moved (example: back-up on a shared drive), relative paths within the cache folder will + not break. + - Relative paths seems to be better handled on Windows. Issue was reported 3 times in less than a week when + changing from relative to absolute paths. See https://github.com/huggingface/huggingface_hub/issues/1398, + https://github.com/huggingface/diffusers/issues/2729 and https://github.com/huggingface/transformers/pull/22228. + NOTE: The issue with absolute paths doesn't happen on admin mode. + When creating a symlink from the cache to a local folder, it is possible that a relative path cannot be created. + This happens when paths are not on the same volume. In that case, we use absolute paths. + + + The result layout looks something like + └── [ 128] snapshots + ├── [ 128] 2439f60ef33a0d46d85da5001d52aeda5b00ce9f + │ ├── [ 52] README.md -> ../../../blobs/d7edf6bd2a681fb0175f7735299831ee1b22b812 + │ └── [ 76] pytorch_model.bin -> ../../../blobs/403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + + If symlinks cannot be created on this platform (most likely to be Windows), the workaround is to avoid symlinks by + having the actual file in `dst`. If it is a new file (`new_blob=True`), we move it to `dst`. If it is not a new file + (`new_blob=False`), we don't know if the blob file is already referenced elsewhere. To avoid breaking existing + cache, the file is duplicated on the disk. + + In case symlinks are not supported, a warning message is displayed to the user once when loading `huggingface_hub`. + The warning message can be disabled with the `DISABLE_SYMLINKS_WARNING` environment variable. + """ + try: + os.remove(dst) + except OSError: + pass + + abs_src = os.path.abspath(os.path.expanduser(src)) + abs_dst = os.path.abspath(os.path.expanduser(dst)) + abs_dst_folder = os.path.dirname(abs_dst) + + # Use relative_dst in priority + try: + relative_src = os.path.relpath(abs_src, abs_dst_folder) + except ValueError: + # Raised on Windows if src and dst are not on the same volume. This is the case when creating a symlink to a + # local_dir instead of within the cache directory. + # See https://docs.python.org/3/library/os.path.html#os.path.relpath + relative_src = None + + try: + commonpath = os.path.commonpath([abs_src, abs_dst]) + _support_symlinks = are_symlinks_supported(commonpath) + except ValueError: + # Raised if src and dst are not on the same volume. Symlinks will still work on Linux/Macos. + # See https://docs.python.org/3/library/os.path.html#os.path.commonpath + _support_symlinks = os.name != "nt" + except PermissionError: + # Permission error means src and dst are not in the same volume (e.g. destination path has been provided + # by the user via `local_dir`. Let's test symlink support there) + _support_symlinks = are_symlinks_supported(abs_dst_folder) + except OSError as e: + # OS error (errno=30) means that the commonpath is readonly on Linux/MacOS. + if e.errno == errno.EROFS: + _support_symlinks = are_symlinks_supported(abs_dst_folder) + else: + raise + + # Symlinks are supported => let's create a symlink. + if _support_symlinks: + src_rel_or_abs = relative_src or abs_src + logger.debug(f"Creating pointer from {src_rel_or_abs} to {abs_dst}") + try: + os.symlink(src_rel_or_abs, abs_dst) + return + except FileExistsError: + if os.path.islink(abs_dst) and os.path.realpath(abs_dst) == os.path.realpath(abs_src): + # `abs_dst` already exists and is a symlink to the `abs_src` blob. It is most likely that the file has + # been cached twice concurrently (exactly between `os.remove` and `os.symlink`). Do nothing. + return + else: + # Very unlikely to happen. Means a file `dst` has been created exactly between `os.remove` and + # `os.symlink` and is not a symlink to the `abs_src` blob file. Raise exception. + raise + except PermissionError: + # Permission error means src and dst are not in the same volume (e.g. download to local dir) and symlink + # is supported on both volumes but not between them. Let's just make a hard copy in that case. + pass + + # Symlinks are not supported => let's move or copy the file. + if new_blob: + logger.info(f"Symlink not supported. Moving file from {abs_src} to {abs_dst}") + shutil.move(abs_src, abs_dst, copy_function=_copy_no_matter_what) + else: + logger.info(f"Symlink not supported. Copying file from {abs_src} to {abs_dst}") + shutil.copyfile(abs_src, abs_dst) + + +def _cache_commit_hash_for_specific_revision(storage_folder: str, revision: str, commit_hash: str) -> None: + """Cache reference between a revision (tag, branch or truncated commit hash) and the corresponding commit hash. + + Does nothing if `revision` is already a proper `commit_hash` or reference is already cached. + """ + if revision != commit_hash: + ref_path = Path(storage_folder) / "refs" / revision + ref_path.parent.mkdir(parents=True, exist_ok=True) + if not ref_path.exists() or commit_hash != ref_path.read_text(): + # Update ref only if has been updated. Could cause useless error in case + # repo is already cached and user doesn't have write access to cache folder. + # See https://github.com/huggingface/huggingface_hub/issues/1216. + ref_path.write_text(commit_hash) + + +@validate_hf_hub_args +def repo_folder_name(*, repo_id: str, repo_type: str) -> str: + """Return a serialized version of a hf.co repo name and type, safe for disk storage + as a single non-nested folder. + + Example: models--julien-c--EsperBERTo-small + """ + # remove all `/` occurrences to correctly convert repo to directory name + parts = [f"{repo_type}s", *repo_id.split("/")] + return constants.REPO_ID_SEPARATOR.join(parts) + + +def _check_disk_space(expected_size: int, target_dir: Union[str, Path]) -> None: + """Check disk usage and log a warning if there is not enough disk space to download the file. + + Args: + expected_size (`int`): + The expected size of the file in bytes. + target_dir (`str`): + The directory where the file will be stored after downloading. + """ + + target_dir = Path(target_dir) # format as `Path` + for path in [target_dir] + list(target_dir.parents): # first check target_dir, then each parents one by one + try: + target_dir_free = shutil.disk_usage(path).free + if target_dir_free < expected_size: + warnings.warn( + "Not enough free disk space to download the file. " + f"The expected file size is: {expected_size / 1e6:.2f} MB. " + f"The target location {target_dir} only has {target_dir_free / 1e6:.2f} MB free disk space." + ) + return + except OSError: # raise on anything: file does not exist or space disk cannot be checked + pass + + +@validate_hf_hub_args +def hf_hub_download( + repo_id: str, + filename: str, + *, + subfolder: Optional[str] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + library_name: Optional[str] = None, + library_version: Optional[str] = None, + cache_dir: Union[str, Path, None] = None, + local_dir: Union[str, Path, None] = None, + user_agent: Union[Dict, str, None] = None, + force_download: bool = False, + proxies: Optional[Dict] = None, + etag_timeout: float = constants.DEFAULT_ETAG_TIMEOUT, + token: Union[bool, str, None] = None, + local_files_only: bool = False, + headers: Optional[Dict[str, str]] = None, + endpoint: Optional[str] = None, + resume_download: Optional[bool] = None, + force_filename: Optional[str] = None, + local_dir_use_symlinks: Union[bool, Literal["auto"]] = "auto", +) -> str: + """Download a given file if it's not already present in the local cache. + + The new cache file layout looks like this: + - The cache directory contains one subfolder per repo_id (namespaced by repo type) + - inside each repo folder: + - refs is a list of the latest known revision => commit_hash pairs + - blobs contains the actual file blobs (identified by their git-sha or sha256, depending on + whether they're LFS files or not) + - snapshots contains one subfolder per commit, each "commit" contains the subset of the files + that have been resolved at that particular commit. Each filename is a symlink to the blob + at that particular commit. + + ``` + [ 96] . + └── [ 160] models--julien-c--EsperBERTo-small + ├── [ 160] blobs + │ ├── [321M] 403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + │ ├── [ 398] 7cb18dc9bafbfcf74629a4b760af1b160957a83e + │ └── [1.4K] d7edf6bd2a681fb0175f7735299831ee1b22b812 + ├── [ 96] refs + │ └── [ 40] main + └── [ 128] snapshots + ├── [ 128] 2439f60ef33a0d46d85da5001d52aeda5b00ce9f + │ ├── [ 52] README.md -> ../../blobs/d7edf6bd2a681fb0175f7735299831ee1b22b812 + │ └── [ 76] pytorch_model.bin -> ../../blobs/403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + └── [ 128] bbc77c8132af1cc5cf678da3f1ddf2de43606d48 + ├── [ 52] README.md -> ../../blobs/7cb18dc9bafbfcf74629a4b760af1b160957a83e + └── [ 76] pytorch_model.bin -> ../../blobs/403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + ``` + + If `local_dir` is provided, the file structure from the repo will be replicated in this location. When using this + option, the `cache_dir` will not be used and a `.cache/huggingface/` folder will be created at the root of `local_dir` + to store some metadata related to the downloaded files. While this mechanism is not as robust as the main + cache-system, it's optimized for regularly pulling the latest version of a repository. + + Args: + repo_id (`str`): + A user or an organization name and a repo name separated by a `/`. + filename (`str`): + The name of the file in the repo. + subfolder (`str`, *optional*): + An optional value corresponding to a folder inside the model repo. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if downloading from a dataset or space, + `None` or `"model"` if downloading from a model. Default is `None`. + revision (`str`, *optional*): + An optional Git revision id which can be a branch name, a tag, or a + commit hash. + library_name (`str`, *optional*): + The name of the library to which the object corresponds. + library_version (`str`, *optional*): + The version of the library. + cache_dir (`str`, `Path`, *optional*): + Path to the folder where cached files are stored. + local_dir (`str` or `Path`, *optional*): + If provided, the downloaded file will be placed under this directory. + user_agent (`dict`, `str`, *optional*): + The user-agent info in the form of a dictionary or a string. + force_download (`bool`, *optional*, defaults to `False`): + Whether the file should be downloaded even if it already exists in + the local cache. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to + `requests.request`. + etag_timeout (`float`, *optional*, defaults to `10`): + When fetching ETag, how many seconds to wait for the server to send + data before giving up which is passed to `requests.request`. + token (`str`, `bool`, *optional*): + A token to be used for the download. + - If `True`, the token is read from the HuggingFace config + folder. + - If a string, it's used as the authentication token. + local_files_only (`bool`, *optional*, defaults to `False`): + If `True`, avoid downloading the file and return the path to the + local cached file if it exists. + headers (`dict`, *optional*): + Additional headers to be sent with the request. + + Returns: + `str`: Local path of file or if networking is off, last version of file cached on disk. + + Raises: + [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + [`~utils.EntryNotFoundError`] + If the file to download cannot be found. + [`~utils.LocalEntryNotFoundError`] + If network is disabled or unavailable and file is not found in cache. + [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + If `token=True` but the token cannot be found. + [`OSError`](https://docs.python.org/3/library/exceptions.html#OSError) + If ETag cannot be determined. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If some parameter value is invalid. + + """ + if constants.HF_HUB_ETAG_TIMEOUT != constants.DEFAULT_ETAG_TIMEOUT: + # Respect environment variable above user value + etag_timeout = constants.HF_HUB_ETAG_TIMEOUT + + if force_filename is not None: + warnings.warn( + "The `force_filename` parameter is deprecated as a new caching system, " + "which keeps the filenames as they are on the Hub, is now in place.", + FutureWarning, + ) + if resume_download is not None: + warnings.warn( + "`resume_download` is deprecated and will be removed in version 1.0.0. " + "Downloads always resume when possible. " + "If you want to force a new download, use `force_download=True`.", + FutureWarning, + ) + + if cache_dir is None: + cache_dir = constants.HF_HUB_CACHE + if revision is None: + revision = constants.DEFAULT_REVISION + if isinstance(cache_dir, Path): + cache_dir = str(cache_dir) + if isinstance(local_dir, Path): + local_dir = str(local_dir) + + if subfolder == "": + subfolder = None + if subfolder is not None: + # This is used to create a URL, and not a local path, hence the forward slash. + filename = f"{subfolder}/{filename}" + + if repo_type is None: + repo_type = "model" + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type: {repo_type}. Accepted repo types are: {str(constants.REPO_TYPES)}") + + headers = build_hf_headers( + token=token, + library_name=library_name, + library_version=library_version, + user_agent=user_agent, + headers=headers, + ) + + if local_dir is not None: + if local_dir_use_symlinks != "auto": + warnings.warn( + "`local_dir_use_symlinks` parameter is deprecated and will be ignored. " + "The process to download files to a local folder has been updated and do " + "not rely on symlinks anymore. You only need to pass a destination folder " + "as`local_dir`.\n" + "For more details, check out https://huggingface.co/docs/huggingface_hub/main/en/guides/download#download-files-to-local-folder." + ) + + return _hf_hub_download_to_local_dir( + # Destination + local_dir=local_dir, + # File info + repo_id=repo_id, + repo_type=repo_type, + filename=filename, + revision=revision, + # HTTP info + endpoint=endpoint, + etag_timeout=etag_timeout, + headers=headers, + proxies=proxies, + token=token, + # Additional options + cache_dir=cache_dir, + force_download=force_download, + local_files_only=local_files_only, + ) + else: + return _hf_hub_download_to_cache_dir( + # Destination + cache_dir=cache_dir, + # File info + repo_id=repo_id, + filename=filename, + repo_type=repo_type, + revision=revision, + # HTTP info + endpoint=endpoint, + etag_timeout=etag_timeout, + headers=headers, + proxies=proxies, + token=token, + # Additional options + local_files_only=local_files_only, + force_download=force_download, + ) + + +def _hf_hub_download_to_cache_dir( + *, + # Destination + cache_dir: str, + # File info + repo_id: str, + filename: str, + repo_type: str, + revision: str, + # HTTP info + endpoint: Optional[str], + etag_timeout: float, + headers: Dict[str, str], + proxies: Optional[Dict], + token: Optional[Union[bool, str]], + # Additional options + local_files_only: bool, + force_download: bool, +) -> str: + """Download a given file to a cache folder, if not already present. + + Method should not be called directly. Please use `hf_hub_download` instead. + """ + locks_dir = os.path.join(cache_dir, ".locks") + storage_folder = os.path.join(cache_dir, repo_folder_name(repo_id=repo_id, repo_type=repo_type)) + + # cross platform transcription of filename, to be used as a local file path. + relative_filename = os.path.join(*filename.split("/")) + if os.name == "nt": + if relative_filename.startswith("..\\") or "\\..\\" in relative_filename: + raise ValueError( + f"Invalid filename: cannot handle filename '{relative_filename}' on Windows. Please ask the repository" + " owner to rename this file." + ) + + # if user provides a commit_hash and they already have the file on disk, shortcut everything. + if REGEX_COMMIT_HASH.match(revision): + pointer_path = _get_pointer_path(storage_folder, revision, relative_filename) + if os.path.exists(pointer_path) and not force_download: + return pointer_path + + # Try to get metadata (etag, commit_hash, url, size) from the server. + # If we can't, a HEAD request error is returned. + (url_to_download, etag, commit_hash, expected_size, head_call_error) = _get_metadata_or_catch_error( + repo_id=repo_id, + filename=filename, + repo_type=repo_type, + revision=revision, + endpoint=endpoint, + proxies=proxies, + etag_timeout=etag_timeout, + headers=headers, + token=token, + local_files_only=local_files_only, + storage_folder=storage_folder, + relative_filename=relative_filename, + ) + + # etag can be None for several reasons: + # 1. we passed local_files_only. + # 2. we don't have a connection + # 3. Hub is down (HTTP 500, 503, 504) + # 4. repo is not found -for example private or gated- and invalid/missing token sent + # 5. Hub is blocked by a firewall or proxy is not set correctly. + # => Try to get the last downloaded one from the specified revision. + # + # If the specified revision is a commit hash, look inside "snapshots". + # If the specified revision is a branch or tag, look inside "refs". + if head_call_error is not None: + # Couldn't make a HEAD call => let's try to find a local file + if not force_download: + commit_hash = None + if REGEX_COMMIT_HASH.match(revision): + commit_hash = revision + else: + ref_path = os.path.join(storage_folder, "refs", revision) + if os.path.isfile(ref_path): + with open(ref_path) as f: + commit_hash = f.read() + + # Return pointer file if exists + if commit_hash is not None: + pointer_path = _get_pointer_path(storage_folder, commit_hash, relative_filename) + if os.path.exists(pointer_path) and not force_download: + return pointer_path + + # Otherwise, raise appropriate error + _raise_on_head_call_error(head_call_error, force_download, local_files_only) + + # From now on, etag, commit_hash, url and size are not None. + assert etag is not None, "etag must have been retrieved from server" + assert commit_hash is not None, "commit_hash must have been retrieved from server" + assert url_to_download is not None, "file location must have been retrieved from server" + assert expected_size is not None, "expected_size must have been retrieved from server" + blob_path = os.path.join(storage_folder, "blobs", etag) + pointer_path = _get_pointer_path(storage_folder, commit_hash, relative_filename) + + os.makedirs(os.path.dirname(blob_path), exist_ok=True) + os.makedirs(os.path.dirname(pointer_path), exist_ok=True) + + # if passed revision is not identical to commit_hash + # then revision has to be a branch name or tag name. + # In that case store a ref. + _cache_commit_hash_for_specific_revision(storage_folder, revision, commit_hash) + + # If file already exists, return it (except if force_download=True) + if not force_download: + if os.path.exists(pointer_path): + return pointer_path + + if os.path.exists(blob_path): + # we have the blob already, but not the pointer + _create_symlink(blob_path, pointer_path, new_blob=False) + return pointer_path + + # Prevent parallel downloads of the same file with a lock. + # etag could be duplicated across repos, + lock_path = os.path.join(locks_dir, repo_folder_name(repo_id=repo_id, repo_type=repo_type), f"{etag}.lock") + + # Some Windows versions do not allow for paths longer than 255 characters. + # In this case, we must specify it as an extended path by using the "\\?\" prefix. + if os.name == "nt" and len(os.path.abspath(lock_path)) > 255: + lock_path = "\\\\?\\" + os.path.abspath(lock_path) + + if os.name == "nt" and len(os.path.abspath(blob_path)) > 255: + blob_path = "\\\\?\\" + os.path.abspath(blob_path) + + Path(lock_path).parent.mkdir(parents=True, exist_ok=True) + with WeakFileLock(lock_path): + _download_to_tmp_and_move( + incomplete_path=Path(blob_path + ".incomplete"), + destination_path=Path(blob_path), + url_to_download=url_to_download, + proxies=proxies, + headers=headers, + expected_size=expected_size, + filename=filename, + force_download=force_download, + ) + if not os.path.exists(pointer_path): + _create_symlink(blob_path, pointer_path, new_blob=True) + + return pointer_path + + +def _hf_hub_download_to_local_dir( + *, + # Destination + local_dir: Union[str, Path], + # File info + repo_id: str, + repo_type: str, + filename: str, + revision: str, + # HTTP info + endpoint: Optional[str], + etag_timeout: float, + headers: Dict[str, str], + proxies: Optional[Dict], + token: Union[bool, str, None], + # Additional options + cache_dir: str, + force_download: bool, + local_files_only: bool, +) -> str: + """Download a given file to a local folder, if not already present. + + Method should not be called directly. Please use `hf_hub_download` instead. + """ + # Some Windows versions do not allow for paths longer than 255 characters. + # In this case, we must specify it as an extended path by using the "\\?\" prefix. + if os.name == "nt" and len(os.path.abspath(local_dir)) > 255: + local_dir = "\\\\?\\" + os.path.abspath(local_dir) + local_dir = Path(local_dir) + paths = get_local_download_paths(local_dir=local_dir, filename=filename) + local_metadata = read_download_metadata(local_dir=local_dir, filename=filename) + + # Local file exists + metadata exists + commit_hash matches => return file + if ( + not force_download + and REGEX_COMMIT_HASH.match(revision) + and paths.file_path.is_file() + and local_metadata is not None + and local_metadata.commit_hash == revision + ): + return str(paths.file_path) + + # Local file doesn't exist or commit_hash doesn't match => we need the etag + (url_to_download, etag, commit_hash, expected_size, head_call_error) = _get_metadata_or_catch_error( + repo_id=repo_id, + filename=filename, + repo_type=repo_type, + revision=revision, + endpoint=endpoint, + proxies=proxies, + etag_timeout=etag_timeout, + headers=headers, + token=token, + local_files_only=local_files_only, + ) + + if head_call_error is not None: + # No HEAD call but local file exists => default to local file + if not force_download and paths.file_path.is_file(): + logger.warning( + f"Couldn't access the Hub to check for update but local file already exists. Defaulting to existing file. (error: {head_call_error})" + ) + return str(paths.file_path) + # Otherwise => raise + _raise_on_head_call_error(head_call_error, force_download, local_files_only) + + # From now on, etag, commit_hash, url and size are not None. + assert etag is not None, "etag must have been retrieved from server" + assert commit_hash is not None, "commit_hash must have been retrieved from server" + assert url_to_download is not None, "file location must have been retrieved from server" + assert expected_size is not None, "expected_size must have been retrieved from server" + + # Local file exists => check if it's up-to-date + if not force_download and paths.file_path.is_file(): + # etag matches => update metadata and return file + if local_metadata is not None and local_metadata.etag == etag: + write_download_metadata(local_dir=local_dir, filename=filename, commit_hash=commit_hash, etag=etag) + return str(paths.file_path) + + # metadata is outdated + etag is a sha256 + # => means it's an LFS file (large) + # => let's compute local hash and compare + # => if match, update metadata and return file + if local_metadata is None and REGEX_SHA256.match(etag) is not None: + with open(paths.file_path, "rb") as f: + file_hash = sha_fileobj(f).hex() + if file_hash == etag: + write_download_metadata(local_dir=local_dir, filename=filename, commit_hash=commit_hash, etag=etag) + return str(paths.file_path) + + # Local file doesn't exist or etag isn't a match => retrieve file from remote (or cache) + + # If we are lucky enough, the file is already in the cache => copy it + if not force_download: + cached_path = try_to_load_from_cache( + repo_id=repo_id, + filename=filename, + cache_dir=cache_dir, + revision=commit_hash, + repo_type=repo_type, + ) + if isinstance(cached_path, str): + with WeakFileLock(paths.lock_path): + paths.file_path.parent.mkdir(parents=True, exist_ok=True) + shutil.copyfile(cached_path, paths.file_path) + write_download_metadata(local_dir=local_dir, filename=filename, commit_hash=commit_hash, etag=etag) + return str(paths.file_path) + + # Otherwise, let's download the file! + with WeakFileLock(paths.lock_path): + paths.file_path.unlink(missing_ok=True) # delete outdated file first + _download_to_tmp_and_move( + incomplete_path=paths.incomplete_path(etag), + destination_path=paths.file_path, + url_to_download=url_to_download, + proxies=proxies, + headers=headers, + expected_size=expected_size, + filename=filename, + force_download=force_download, + ) + + write_download_metadata(local_dir=local_dir, filename=filename, commit_hash=commit_hash, etag=etag) + return str(paths.file_path) + + +@validate_hf_hub_args +def try_to_load_from_cache( + repo_id: str, + filename: str, + cache_dir: Union[str, Path, None] = None, + revision: Optional[str] = None, + repo_type: Optional[str] = None, +) -> Union[str, _CACHED_NO_EXIST_T, None]: + """ + Explores the cache to return the latest cached file for a given revision if found. + + This function will not raise any exception if the file in not cached. + + Args: + cache_dir (`str` or `os.PathLike`): + The folder where the cached files lie. + repo_id (`str`): + The ID of the repo on huggingface.co. + filename (`str`): + The filename to look for inside `repo_id`. + revision (`str`, *optional*): + The specific model version to use. Will default to `"main"` if it's not provided and no `commit_hash` is + provided either. + repo_type (`str`, *optional*): + The type of the repository. Will default to `"model"`. + + Returns: + `Optional[str]` or `_CACHED_NO_EXIST`: + Will return `None` if the file was not cached. Otherwise: + - The exact path to the cached file if it's found in the cache + - A special value `_CACHED_NO_EXIST` if the file does not exist at the given commit hash and this fact was + cached. + + Example: + + ```python + from huggingface_hub import try_to_load_from_cache, _CACHED_NO_EXIST + + filepath = try_to_load_from_cache() + if isinstance(filepath, str): + # file exists and is cached + ... + elif filepath is _CACHED_NO_EXIST: + # non-existence of file is cached + ... + else: + # file is not cached + ... + ``` + """ + if revision is None: + revision = "main" + if repo_type is None: + repo_type = "model" + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type: {repo_type}. Accepted repo types are: {str(constants.REPO_TYPES)}") + if cache_dir is None: + cache_dir = constants.HF_HUB_CACHE + + object_id = repo_id.replace("/", "--") + repo_cache = os.path.join(cache_dir, f"{repo_type}s--{object_id}") + if not os.path.isdir(repo_cache): + # No cache for this model + return None + + refs_dir = os.path.join(repo_cache, "refs") + snapshots_dir = os.path.join(repo_cache, "snapshots") + no_exist_dir = os.path.join(repo_cache, ".no_exist") + + # Resolve refs (for instance to convert main to the associated commit sha) + if os.path.isdir(refs_dir): + revision_file = os.path.join(refs_dir, revision) + if os.path.isfile(revision_file): + with open(revision_file) as f: + revision = f.read() + + # Check if file is cached as "no_exist" + if os.path.isfile(os.path.join(no_exist_dir, revision, filename)): + return _CACHED_NO_EXIST + + # Check if revision folder exists + if not os.path.exists(snapshots_dir): + return None + cached_shas = os.listdir(snapshots_dir) + if revision not in cached_shas: + # No cache for this revision and we won't try to return a random revision + return None + + # Check if file exists in cache + cached_file = os.path.join(snapshots_dir, revision, filename) + return cached_file if os.path.isfile(cached_file) else None + + +@validate_hf_hub_args +def get_hf_file_metadata( + url: str, + token: Union[bool, str, None] = None, + proxies: Optional[Dict] = None, + timeout: Optional[float] = constants.DEFAULT_REQUEST_TIMEOUT, + library_name: Optional[str] = None, + library_version: Optional[str] = None, + user_agent: Union[Dict, str, None] = None, + headers: Optional[Dict[str, str]] = None, +) -> HfFileMetadata: + """Fetch metadata of a file versioned on the Hub for a given url. + + Args: + url (`str`): + File url, for example returned by [`hf_hub_url`]. + token (`str` or `bool`, *optional*): + A token to be used for the download. + - If `True`, the token is read from the HuggingFace config + folder. + - If `False` or `None`, no token is provided. + - If a string, it's used as the authentication token. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to + `requests.request`. + timeout (`float`, *optional*, defaults to 10): + How many seconds to wait for the server to send metadata before giving up. + library_name (`str`, *optional*): + The name of the library to which the object corresponds. + library_version (`str`, *optional*): + The version of the library. + user_agent (`dict`, `str`, *optional*): + The user-agent info in the form of a dictionary or a string. + headers (`dict`, *optional*): + Additional headers to be sent with the request. + + Returns: + A [`HfFileMetadata`] object containing metadata such as location, etag, size and + commit_hash. + """ + headers = build_hf_headers( + token=token, + library_name=library_name, + library_version=library_version, + user_agent=user_agent, + headers=headers, + ) + headers["Accept-Encoding"] = "identity" # prevent any compression => we want to know the real size of the file + + # Retrieve metadata + r = _request_wrapper( + method="HEAD", + url=url, + headers=headers, + allow_redirects=False, + follow_relative_redirects=True, + proxies=proxies, + timeout=timeout, + ) + hf_raise_for_status(r) + + # Return + return HfFileMetadata( + commit_hash=r.headers.get(constants.HUGGINGFACE_HEADER_X_REPO_COMMIT), + # We favor a custom header indicating the etag of the linked resource, and + # we fallback to the regular etag header. + etag=_normalize_etag(r.headers.get(constants.HUGGINGFACE_HEADER_X_LINKED_ETAG) or r.headers.get("ETag")), + # Either from response headers (if redirected) or defaults to request url + # Do not use directly `url`, as `_request_wrapper` might have followed relative + # redirects. + location=r.headers.get("Location") or r.request.url, # type: ignore + size=_int_or_none( + r.headers.get(constants.HUGGINGFACE_HEADER_X_LINKED_SIZE) or r.headers.get("Content-Length") + ), + ) + + +def _get_metadata_or_catch_error( + *, + repo_id: str, + filename: str, + repo_type: str, + revision: str, + endpoint: Optional[str], + proxies: Optional[Dict], + etag_timeout: Optional[float], + headers: Dict[str, str], # mutated inplace! + token: Union[bool, str, None], + local_files_only: bool, + relative_filename: Optional[str] = None, # only used to store `.no_exists` in cache + storage_folder: Optional[str] = None, # only used to store `.no_exists` in cache +) -> Union[ + # Either an exception is caught and returned + Tuple[None, None, None, None, Exception], + # Or the metadata is returned as + # `(url_to_download, etag, commit_hash, expected_size, None)` + Tuple[str, str, str, int, None], +]: + """Get metadata for a file on the Hub, safely handling network issues. + + Returns either the etag, commit_hash and expected size of the file, or the error + raised while fetching the metadata. + + NOTE: This function mutates `headers` inplace! It removes the `authorization` header + if the file is a LFS blob and the domain of the url is different from the + domain of the location (typically an S3 bucket). + """ + if local_files_only: + return ( + None, + None, + None, + None, + OfflineModeIsEnabled( + f"Cannot access file since 'local_files_only=True' as been set. (repo_id: {repo_id}, repo_type: {repo_type}, revision: {revision}, filename: {filename})" + ), + ) + + url = hf_hub_url(repo_id, filename, repo_type=repo_type, revision=revision, endpoint=endpoint) + url_to_download: str = url + etag: Optional[str] = None + commit_hash: Optional[str] = None + expected_size: Optional[int] = None + head_error_call: Optional[Exception] = None + + # Try to get metadata from the server. + # Do not raise yet if the file is not found or not accessible. + if not local_files_only: + try: + try: + metadata = get_hf_file_metadata( + url=url, proxies=proxies, timeout=etag_timeout, headers=headers, token=token + ) + except EntryNotFoundError as http_error: + if storage_folder is not None and relative_filename is not None: + # Cache the non-existence of the file + commit_hash = http_error.response.headers.get(constants.HUGGINGFACE_HEADER_X_REPO_COMMIT) + if commit_hash is not None: + no_exist_file_path = Path(storage_folder) / ".no_exist" / commit_hash / relative_filename + try: + no_exist_file_path.parent.mkdir(parents=True, exist_ok=True) + no_exist_file_path.touch() + except OSError as e: + logger.error( + f"Could not cache non-existence of file. Will ignore error and continue. Error: {e}" + ) + _cache_commit_hash_for_specific_revision(storage_folder, revision, commit_hash) + raise + + # Commit hash must exist + commit_hash = metadata.commit_hash + if commit_hash is None: + raise FileMetadataError( + "Distant resource does not seem to be on huggingface.co. It is possible that a configuration issue" + " prevents you from downloading resources from https://huggingface.co. Please check your firewall" + " and proxy settings and make sure your SSL certificates are updated." + ) + + # Etag must exist + # If we don't have any of those, raise an error. + etag = metadata.etag + if etag is None: + raise FileMetadataError( + "Distant resource does not have an ETag, we won't be able to reliably ensure reproducibility." + ) + + # Size must exist + expected_size = metadata.size + if expected_size is None: + raise FileMetadataError("Distant resource does not have a Content-Length.") + + # In case of a redirect, save an extra redirect on the request.get call, + # and ensure we download the exact atomic version even if it changed + # between the HEAD and the GET (unlikely, but hey). + # + # If url domain is different => we are downloading from a CDN => url is signed => don't send auth + # If url domain is the same => redirect due to repo rename AND downloading a regular file => keep auth + if url != metadata.location: + url_to_download = metadata.location + if urlparse(url).netloc != urlparse(metadata.location).netloc: + # Remove authorization header when downloading a LFS blob + headers.pop("authorization", None) + except (requests.exceptions.SSLError, requests.exceptions.ProxyError): + # Actually raise for those subclasses of ConnectionError + raise + except ( + requests.exceptions.ConnectionError, + requests.exceptions.Timeout, + OfflineModeIsEnabled, + ) as error: + # Otherwise, our Internet connection is down. + # etag is None + head_error_call = error + except (RevisionNotFoundError, EntryNotFoundError): + # The repo was found but the revision or entry doesn't exist on the Hub (never existed or got deleted) + raise + except requests.HTTPError as error: + # Multiple reasons for an http error: + # - Repository is private and invalid/missing token sent + # - Repository is gated and invalid/missing token sent + # - Hub is down (error 500 or 504) + # => let's switch to 'local_files_only=True' to check if the files are already cached. + # (if it's not the case, the error will be re-raised) + head_error_call = error + except FileMetadataError as error: + # Multiple reasons for a FileMetadataError: + # - Wrong network configuration (proxy, firewall, SSL certificates) + # - Inconsistency on the Hub + # => let's switch to 'local_files_only=True' to check if the files are already cached. + # (if it's not the case, the error will be re-raised) + head_error_call = error + + if not (local_files_only or etag is not None or head_error_call is not None): + raise RuntimeError("etag is empty due to uncovered problems") + + return (url_to_download, etag, commit_hash, expected_size, head_error_call) # type: ignore [return-value] + + +def _raise_on_head_call_error(head_call_error: Exception, force_download: bool, local_files_only: bool) -> NoReturn: + """Raise an appropriate error when the HEAD call failed and we cannot locate a local file.""" + + # No head call => we cannot force download. + if force_download: + if local_files_only: + raise ValueError("Cannot pass 'force_download=True' and 'local_files_only=True' at the same time.") + elif isinstance(head_call_error, OfflineModeIsEnabled): + raise ValueError("Cannot pass 'force_download=True' when offline mode is enabled.") from head_call_error + else: + raise ValueError("Force download failed due to the above error.") from head_call_error + + # No head call + couldn't find an appropriate file on disk => raise an error. + if local_files_only: + raise LocalEntryNotFoundError( + "Cannot find the requested files in the disk cache and outgoing traffic has been disabled. To enable" + " hf.co look-ups and downloads online, set 'local_files_only' to False." + ) + elif isinstance(head_call_error, RepositoryNotFoundError) or isinstance(head_call_error, GatedRepoError): + # Repo not found or gated => let's raise the actual error + raise head_call_error + else: + # Otherwise: most likely a connection issue or Hub downtime => let's warn the user + raise LocalEntryNotFoundError( + "An error happened while trying to locate the file on the Hub and we cannot find the requested files" + " in the local cache. Please check your connection and try again or make sure your Internet connection" + " is on." + ) from head_call_error + + +def _download_to_tmp_and_move( + incomplete_path: Path, + destination_path: Path, + url_to_download: str, + proxies: Optional[Dict], + headers: Dict[str, str], + expected_size: Optional[int], + filename: str, + force_download: bool, +) -> None: + """Download content from a URL to a destination path. + + Internal logic: + - return early if file is already downloaded + - resume download if possible (from incomplete file) + - do not resume download if `force_download=True` or `HF_HUB_ENABLE_HF_TRANSFER=True` + - check disk space before downloading + - download content to a temporary file + - set correct permissions on temporary file + - move the temporary file to the destination path + + Both `incomplete_path` and `destination_path` must be on the same volume to avoid a local copy. + """ + if destination_path.exists() and not force_download: + # Do nothing if already exists (except if force_download=True) + return + + if incomplete_path.exists() and (force_download or (constants.HF_HUB_ENABLE_HF_TRANSFER and not proxies)): + # By default, we will try to resume the download if possible. + # However, if the user has set `force_download=True` or if `hf_transfer` is enabled, then we should + # not resume the download => delete the incomplete file. + message = f"Removing incomplete file '{incomplete_path}'" + if force_download: + message += " (force_download=True)" + elif constants.HF_HUB_ENABLE_HF_TRANSFER and not proxies: + message += " (hf_transfer=True)" + logger.info(message) + incomplete_path.unlink(missing_ok=True) + + with incomplete_path.open("ab") as f: + resume_size = f.tell() + message = f"Downloading '{filename}' to '{incomplete_path}'" + if resume_size > 0 and expected_size is not None: + message += f" (resume from {resume_size}/{expected_size})" + logger.info(message) + + if expected_size is not None: # might be None if HTTP header not set correctly + # Check disk space in both tmp and destination path + _check_disk_space(expected_size, incomplete_path.parent) + _check_disk_space(expected_size, destination_path.parent) + + http_get( + url_to_download, + f, + proxies=proxies, + resume_size=resume_size, + headers=headers, + expected_size=expected_size, + ) + + logger.info(f"Download complete. Moving file to {destination_path}") + _chmod_and_move(incomplete_path, destination_path) + + +def _int_or_none(value: Optional[str]) -> Optional[int]: + try: + return int(value) # type: ignore + except (TypeError, ValueError): + return None + + +def _chmod_and_move(src: Path, dst: Path) -> None: + """Set correct permission before moving a blob from tmp directory to cache dir. + + Do not take into account the `umask` from the process as there is no convenient way + to get it that is thread-safe. + + See: + - About umask: https://docs.python.org/3/library/os.html#os.umask + - Thread-safety: https://stackoverflow.com/a/70343066 + - About solution: https://github.com/huggingface/huggingface_hub/pull/1220#issuecomment-1326211591 + - Fix issue: https://github.com/huggingface/huggingface_hub/issues/1141 + - Fix issue: https://github.com/huggingface/huggingface_hub/issues/1215 + """ + # Get umask by creating a temporary file in the cached repo folder. + tmp_file = dst.parent.parent / f"tmp_{uuid.uuid4()}" + try: + tmp_file.touch() + cache_dir_mode = Path(tmp_file).stat().st_mode + os.chmod(str(src), stat.S_IMODE(cache_dir_mode)) + except OSError as e: + logger.warning( + f"Could not set the permissions on the file '{src}'. " + f"Error: {e}.\nContinuing without setting permissions." + ) + finally: + try: + tmp_file.unlink() + except OSError: + # fails if `tmp_file.touch()` failed => do nothing + # See https://github.com/huggingface/huggingface_hub/issues/2359 + pass + + shutil.move(str(src), str(dst), copy_function=_copy_no_matter_what) + + +def _copy_no_matter_what(src: str, dst: str) -> None: + """Copy file from src to dst. + + If `shutil.copy2` fails, fallback to `shutil.copyfile`. + """ + try: + # Copy file with metadata and permission + # Can fail e.g. if dst is an S3 mount + shutil.copy2(src, dst) + except OSError: + # Copy only file content + shutil.copyfile(src, dst) + + +def _get_pointer_path(storage_folder: str, revision: str, relative_filename: str) -> str: + # Using `os.path.abspath` instead of `Path.resolve()` to avoid resolving symlinks + snapshot_path = os.path.join(storage_folder, "snapshots") + pointer_path = os.path.join(snapshot_path, revision, relative_filename) + if Path(os.path.abspath(snapshot_path)) not in Path(os.path.abspath(pointer_path)).parents: + raise ValueError( + "Invalid pointer path: cannot create pointer path in snapshot folder if" + f" `storage_folder='{storage_folder}'`, `revision='{revision}'` and" + f" `relative_filename='{relative_filename}'`." + ) + return pointer_path diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/hf_api.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/hf_api.py new file mode 100644 index 0000000000000000000000000000000000000000..3149430e214ed1b7dd5dcc45ce670da18298497e --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/hf_api.py @@ -0,0 +1,10030 @@ +# coding=utf-8 +# Copyright 2019-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +from __future__ import annotations + +import inspect +import json +import re +import struct +import warnings +from collections import defaultdict +from concurrent.futures import Future, ThreadPoolExecutor +from dataclasses import asdict, dataclass, field +from datetime import datetime +from functools import wraps +from itertools import islice +from pathlib import Path +from typing import ( + Any, + BinaryIO, + Callable, + Dict, + Iterable, + Iterator, + List, + Literal, + Optional, + Tuple, + TypeVar, + Union, + overload, +) +from urllib.parse import quote + +import requests +from requests.exceptions import HTTPError +from tqdm.auto import tqdm as base_tqdm +from tqdm.contrib.concurrent import thread_map + +from . import constants +from ._commit_api import ( + CommitOperation, + CommitOperationAdd, + CommitOperationCopy, + CommitOperationDelete, + _fetch_files_to_copy, + _fetch_upload_modes, + _prepare_commit_payload, + _upload_lfs_files, + _warn_on_overwriting_operations, +) +from ._inference_endpoints import InferenceEndpoint, InferenceEndpointType +from ._multi_commits import ( + MULTI_COMMIT_PR_CLOSE_COMMENT_FAILURE_BAD_REQUEST_TEMPLATE, + MULTI_COMMIT_PR_CLOSE_COMMENT_FAILURE_NO_CHANGES_TEMPLATE, + MULTI_COMMIT_PR_CLOSING_COMMENT_TEMPLATE, + MULTI_COMMIT_PR_COMPLETION_COMMENT_TEMPLATE, + MultiCommitException, + MultiCommitStep, + MultiCommitStrategy, + multi_commit_create_pull_request, + multi_commit_generate_comment, + multi_commit_parse_pr_description, + plan_multi_commits, +) +from ._space_api import SpaceHardware, SpaceRuntime, SpaceStorage, SpaceVariable +from ._upload_large_folder import upload_large_folder_internal +from .community import ( + Discussion, + DiscussionComment, + DiscussionStatusChange, + DiscussionTitleChange, + DiscussionWithDetails, + deserialize_event, +) +from .constants import ( + DEFAULT_ETAG_TIMEOUT, # noqa: F401 # kept for backward compatibility + DEFAULT_REQUEST_TIMEOUT, # noqa: F401 # kept for backward compatibility + DEFAULT_REVISION, # noqa: F401 # kept for backward compatibility + DISCUSSION_STATUS, # noqa: F401 # kept for backward compatibility + DISCUSSION_TYPES, # noqa: F401 # kept for backward compatibility + ENDPOINT, # noqa: F401 # kept for backward compatibility + INFERENCE_ENDPOINTS_ENDPOINT, # noqa: F401 # kept for backward compatibility + REGEX_COMMIT_OID, # noqa: F401 # kept for backward compatibility + REPO_TYPE_MODEL, # noqa: F401 # kept for backward compatibility + REPO_TYPES, # noqa: F401 # kept for backward compatibility + REPO_TYPES_MAPPING, # noqa: F401 # kept for backward compatibility + REPO_TYPES_URL_PREFIXES, # noqa: F401 # kept for backward compatibility + SAFETENSORS_INDEX_FILE, # noqa: F401 # kept for backward compatibility + SAFETENSORS_MAX_HEADER_LENGTH, # noqa: F401 # kept for backward compatibility + SAFETENSORS_SINGLE_FILE, # noqa: F401 # kept for backward compatibility + SPACES_SDK_TYPES, # noqa: F401 # kept for backward compatibility + WEBHOOK_DOMAIN_T, # noqa: F401 # kept for backward compatibility + DiscussionStatusFilter, # noqa: F401 # kept for backward compatibility + DiscussionTypeFilter, # noqa: F401 # kept for backward compatibility +) +from .errors import ( + BadRequestError, + EntryNotFoundError, + GatedRepoError, + HfHubHTTPError, + RepositoryNotFoundError, + RevisionNotFoundError, +) +from .file_download import HfFileMetadata, get_hf_file_metadata, hf_hub_url +from .repocard_data import DatasetCardData, ModelCardData, SpaceCardData +from .utils import ( + DEFAULT_IGNORE_PATTERNS, + HfFolder, # noqa: F401 # kept for backward compatibility + LocalTokenNotFoundError, + NotASafetensorsRepoError, + SafetensorsFileMetadata, + SafetensorsParsingError, + SafetensorsRepoMetadata, + TensorInfo, + build_hf_headers, + experimental, + filter_repo_objects, + fix_hf_endpoint_in_url, + get_session, + hf_raise_for_status, + logging, + paginate, + parse_datetime, + validate_hf_hub_args, +) +from .utils import tqdm as hf_tqdm +from .utils._deprecation import _deprecate_method +from .utils._typing import CallableT +from .utils.endpoint_helpers import _is_emission_within_threshold + + +R = TypeVar("R") # Return type +CollectionItemType_T = Literal["model", "dataset", "space", "paper"] + +ExpandModelProperty_T = Literal[ + "author", + "baseModels", + "cardData", + "childrenModelCount", + "config", + "createdAt", + "disabled", + "downloads", + "downloadsAllTime", + "gated", + "gguf", + "inference", + "lastModified", + "library_name", + "likes", + "mask_token", + "model-index", + "pipeline_tag", + "private", + "safetensors", + "sha", + "siblings", + "spaces", + "tags", + "transformersInfo", + "trendingScore", + "widgetData", +] + +ExpandDatasetProperty_T = Literal[ + "author", + "cardData", + "citation", + "createdAt", + "disabled", + "description", + "downloads", + "downloadsAllTime", + "gated", + "lastModified", + "likes", + "paperswithcode_id", + "private", + "siblings", + "sha", + "trendingScore", + "tags", +] + +ExpandSpaceProperty_T = Literal[ + "author", + "cardData", + "createdAt", + "datasets", + "disabled", + "lastModified", + "likes", + "models", + "private", + "runtime", + "sdk", + "siblings", + "sha", + "subdomain", + "tags", + "trendingScore", +] + +USERNAME_PLACEHOLDER = "hf_user" +_REGEX_DISCUSSION_URL = re.compile(r".*/discussions/(\d+)$") + +_CREATE_COMMIT_NO_REPO_ERROR_MESSAGE = ( + "\nNote: Creating a commit assumes that the repo already exists on the" + " Huggingface Hub. Please use `create_repo` if it's not the case." +) +_AUTH_CHECK_NO_REPO_ERROR_MESSAGE = ( + "\nNote: The repository either does not exist or you do not have access rights." + " Please check the repository ID and your access permissions." + " If this is a private repository, ensure that your token is correct." +) +logger = logging.get_logger(__name__) + + +def repo_type_and_id_from_hf_id(hf_id: str, hub_url: Optional[str] = None) -> Tuple[Optional[str], Optional[str], str]: + """ + Returns the repo type and ID from a huggingface.co URL linking to a + repository + + Args: + hf_id (`str`): + An URL or ID of a repository on the HF hub. Accepted values are: + + - https://huggingface.co/// + - https://huggingface.co// + - hf://// + - hf:/// + - // + - / + - + hub_url (`str`, *optional*): + The URL of the HuggingFace Hub, defaults to https://huggingface.co + + Returns: + A tuple with three items: repo_type (`str` or `None`), namespace (`str` or + `None`) and repo_id (`str`). + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If URL cannot be parsed. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If `repo_type` is unknown. + """ + input_hf_id = hf_id + + hub_url = re.sub(r"https?://", "", hub_url if hub_url is not None else constants.ENDPOINT) + is_hf_url = hub_url in hf_id and "@" not in hf_id + + HFFS_PREFIX = "hf://" + if hf_id.startswith(HFFS_PREFIX): # Remove "hf://" prefix if exists + hf_id = hf_id[len(HFFS_PREFIX) :] + + url_segments = hf_id.split("/") + is_hf_id = len(url_segments) <= 3 + + namespace: Optional[str] + if is_hf_url: + namespace, repo_id = url_segments[-2:] + if namespace == hub_url: + namespace = None + if len(url_segments) > 2 and hub_url not in url_segments[-3]: + repo_type = url_segments[-3] + elif namespace in constants.REPO_TYPES_MAPPING: + # Mean canonical dataset or model + repo_type = constants.REPO_TYPES_MAPPING[namespace] + namespace = None + else: + repo_type = None + elif is_hf_id: + if len(url_segments) == 3: + # Passed // or // + repo_type, namespace, repo_id = url_segments[-3:] + elif len(url_segments) == 2: + if url_segments[0] in constants.REPO_TYPES_MAPPING: + # Passed '' or 'datasets/' for a canonical model or dataset + repo_type = constants.REPO_TYPES_MAPPING[url_segments[0]] + namespace = None + repo_id = hf_id.split("/")[-1] + else: + # Passed / or / + namespace, repo_id = hf_id.split("/")[-2:] + repo_type = None + else: + # Passed + repo_id = url_segments[0] + namespace, repo_type = None, None + else: + raise ValueError(f"Unable to retrieve user and repo ID from the passed HF ID: {hf_id}") + + # Check if repo type is known (mapping "spaces" => "space" + empty value => `None`) + if repo_type in constants.REPO_TYPES_MAPPING: + repo_type = constants.REPO_TYPES_MAPPING[repo_type] + if repo_type == "": + repo_type = None + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Unknown `repo_type`: '{repo_type}' ('{input_hf_id}')") + + return repo_type, namespace, repo_id + + +@dataclass +class LastCommitInfo(dict): + oid: str + title: str + date: datetime + + def __post_init__(self): # hack to make LastCommitInfo backward compatible + self.update(asdict(self)) + + +@dataclass +class BlobLfsInfo(dict): + size: int + sha256: str + pointer_size: int + + def __post_init__(self): # hack to make BlobLfsInfo backward compatible + self.update(asdict(self)) + + +@dataclass +class BlobSecurityInfo(dict): + safe: bool # duplicate information with "status" field, keeping it for backward compatibility + status: str + av_scan: Optional[Dict] + pickle_import_scan: Optional[Dict] + + def __post_init__(self): # hack to make BlogSecurityInfo backward compatible + self.update(asdict(self)) + + +@dataclass +class TransformersInfo(dict): + auto_model: str + custom_class: Optional[str] = None + # possible `pipeline_tag` values: https://github.com/huggingface/huggingface.js/blob/3ee32554b8620644a6287e786b2a83bf5caf559c/packages/tasks/src/pipelines.ts#L72 + pipeline_tag: Optional[str] = None + processor: Optional[str] = None + + def __post_init__(self): # hack to make TransformersInfo backward compatible + self.update(asdict(self)) + + +@dataclass +class SafeTensorsInfo(dict): + parameters: Dict[str, int] + total: int + + def __post_init__(self): # hack to make SafeTensorsInfo backward compatible + self.update(asdict(self)) + + +@dataclass +class CommitInfo(str): + """Data structure containing information about a newly created commit. + + Returned by any method that creates a commit on the Hub: [`create_commit`], [`upload_file`], [`upload_folder`], + [`delete_file`], [`delete_folder`]. It inherits from `str` for backward compatibility but using methods specific + to `str` is deprecated. + + Attributes: + commit_url (`str`): + Url where to find the commit. + + commit_message (`str`): + The summary (first line) of the commit that has been created. + + commit_description (`str`): + Description of the commit that has been created. Can be empty. + + oid (`str`): + Commit hash id. Example: `"91c54ad1727ee830252e457677f467be0bfd8a57"`. + + pr_url (`str`, *optional*): + Url to the PR that has been created, if any. Populated when `create_pr=True` + is passed. + + pr_revision (`str`, *optional*): + Revision of the PR that has been created, if any. Populated when + `create_pr=True` is passed. Example: `"refs/pr/1"`. + + pr_num (`int`, *optional*): + Number of the PR discussion that has been created, if any. Populated when + `create_pr=True` is passed. Can be passed as `discussion_num` in + [`get_discussion_details`]. Example: `1`. + + repo_url (`RepoUrl`): + Repo URL of the commit containing info like repo_id, repo_type, etc. + + _url (`str`, *optional*): + Legacy url for `str` compatibility. Can be the url to the uploaded file on the Hub (if returned by + [`upload_file`]), to the uploaded folder on the Hub (if returned by [`upload_folder`]) or to the commit on + the Hub (if returned by [`create_commit`]). Defaults to `commit_url`. It is deprecated to use this + attribute. Please use `commit_url` instead. + """ + + commit_url: str + commit_message: str + commit_description: str + oid: str + pr_url: Optional[str] = None + + # Computed from `commit_url` in `__post_init__` + repo_url: RepoUrl = field(init=False) + + # Computed from `pr_url` in `__post_init__` + pr_revision: Optional[str] = field(init=False) + pr_num: Optional[str] = field(init=False) + + # legacy url for `str` compatibility (ex: url to uploaded file, url to uploaded folder, url to PR, etc.) + _url: str = field(repr=False, default=None) # type: ignore # defaults to `commit_url` + + def __new__(cls, *args, commit_url: str, _url: Optional[str] = None, **kwargs): + return str.__new__(cls, _url or commit_url) + + def __post_init__(self): + """Populate pr-related fields after initialization. + + See https://docs.python.org/3.10/library/dataclasses.html#post-init-processing. + """ + # Repo info + self.repo_url = RepoUrl(self.commit_url.split("/commit/")[0]) + + # PR info + if self.pr_url is not None: + self.pr_revision = _parse_revision_from_pr_url(self.pr_url) + self.pr_num = int(self.pr_revision.split("/")[-1]) + else: + self.pr_revision = None + self.pr_num = None + + +@dataclass +class AccessRequest: + """Data structure containing information about a user access request. + + Attributes: + username (`str`): + Username of the user who requested access. + fullname (`str`): + Fullname of the user who requested access. + email (`Optional[str]`): + Email of the user who requested access. + Can only be `None` in the /accepted list if the user was granted access manually. + timestamp (`datetime`): + Timestamp of the request. + status (`Literal["pending", "accepted", "rejected"]`): + Status of the request. Can be one of `["pending", "accepted", "rejected"]`. + fields (`Dict[str, Any]`, *optional*): + Additional fields filled by the user in the gate form. + """ + + username: str + fullname: str + email: Optional[str] + timestamp: datetime + status: Literal["pending", "accepted", "rejected"] + + # Additional fields filled by the user in the gate form + fields: Optional[Dict[str, Any]] = None + + +@dataclass +class WebhookWatchedItem: + """Data structure containing information about the items watched by a webhook. + + Attributes: + type (`Literal["dataset", "model", "org", "space", "user"]`): + Type of the item to be watched. Can be one of `["dataset", "model", "org", "space", "user"]`. + name (`str`): + Name of the item to be watched. Can be the username, organization name, model name, dataset name or space name. + """ + + type: Literal["dataset", "model", "org", "space", "user"] + name: str + + +@dataclass +class WebhookInfo: + """Data structure containing information about a webhook. + + Attributes: + id (`str`): + ID of the webhook. + url (`str`): + URL of the webhook. + watched (`List[WebhookWatchedItem]`): + List of items watched by the webhook, see [`WebhookWatchedItem`]. + domains (`List[WEBHOOK_DOMAIN_T]`): + List of domains the webhook is watching. Can be one of `["repo", "discussions"]`. + secret (`str`, *optional*): + Secret of the webhook. + disabled (`bool`): + Whether the webhook is disabled or not. + """ + + id: str + url: str + watched: List[WebhookWatchedItem] + domains: List[constants.WEBHOOK_DOMAIN_T] + secret: Optional[str] + disabled: bool + + +class RepoUrl(str): + """Subclass of `str` describing a repo URL on the Hub. + + `RepoUrl` is returned by `HfApi.create_repo`. It inherits from `str` for backward + compatibility. At initialization, the URL is parsed to populate properties: + - endpoint (`str`) + - namespace (`Optional[str]`) + - repo_name (`str`) + - repo_id (`str`) + - repo_type (`Literal["model", "dataset", "space"]`) + - url (`str`) + + Args: + url (`Any`): + String value of the repo url. + endpoint (`str`, *optional*): + Endpoint of the Hub. Defaults to . + + Example: + ```py + >>> RepoUrl('https://huggingface.co/gpt2') + RepoUrl('https://huggingface.co/gpt2', endpoint='https://huggingface.co', repo_type='model', repo_id='gpt2') + + >>> RepoUrl('https://hub-ci.huggingface.co/datasets/dummy_user/dummy_dataset', endpoint='https://hub-ci.huggingface.co') + RepoUrl('https://hub-ci.huggingface.co/datasets/dummy_user/dummy_dataset', endpoint='https://hub-ci.huggingface.co', repo_type='dataset', repo_id='dummy_user/dummy_dataset') + + >>> RepoUrl('hf://datasets/my-user/my-dataset') + RepoUrl('hf://datasets/my-user/my-dataset', endpoint='https://huggingface.co', repo_type='dataset', repo_id='user/dataset') + + >>> HfApi.create_repo("dummy_model") + RepoUrl('https://huggingface.co/Wauplin/dummy_model', endpoint='https://huggingface.co', repo_type='model', repo_id='Wauplin/dummy_model') + ``` + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If URL cannot be parsed. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If `repo_type` is unknown. + """ + + def __new__(cls, url: Any, endpoint: Optional[str] = None): + url = fix_hf_endpoint_in_url(url, endpoint=endpoint) + return super(RepoUrl, cls).__new__(cls, url) + + def __init__(self, url: Any, endpoint: Optional[str] = None) -> None: + super().__init__() + # Parse URL + self.endpoint = endpoint or constants.ENDPOINT + repo_type, namespace, repo_name = repo_type_and_id_from_hf_id(self, hub_url=self.endpoint) + + # Populate fields + self.namespace = namespace + self.repo_name = repo_name + self.repo_id = repo_name if namespace is None else f"{namespace}/{repo_name}" + self.repo_type = repo_type or constants.REPO_TYPE_MODEL + self.url = str(self) # just in case it's needed + + def __repr__(self) -> str: + return f"RepoUrl('{self}', endpoint='{self.endpoint}', repo_type='{self.repo_type}', repo_id='{self.repo_id}')" + + +@dataclass +class RepoSibling: + """ + Contains basic information about a repo file inside a repo on the Hub. + + + + All attributes of this class are optional except `rfilename`. This is because only the file names are returned when + listing repositories on the Hub (with [`list_models`], [`list_datasets`] or [`list_spaces`]). If you need more + information like file size, blob id or lfs details, you must request them specifically from one repo at a time + (using [`model_info`], [`dataset_info`] or [`space_info`]) as it adds more constraints on the backend server to + retrieve these. + + + + Attributes: + rfilename (str): + file name, relative to the repo root. + size (`int`, *optional*): + The file's size, in bytes. This attribute is defined when `files_metadata` argument of [`repo_info`] is set + to `True`. It's `None` otherwise. + blob_id (`str`, *optional*): + The file's git OID. This attribute is defined when `files_metadata` argument of [`repo_info`] is set to + `True`. It's `None` otherwise. + lfs (`BlobLfsInfo`, *optional*): + The file's LFS metadata. This attribute is defined when`files_metadata` argument of [`repo_info`] is set to + `True` and the file is stored with Git LFS. It's `None` otherwise. + """ + + rfilename: str + size: Optional[int] = None + blob_id: Optional[str] = None + lfs: Optional[BlobLfsInfo] = None + + +@dataclass +class RepoFile: + """ + Contains information about a file on the Hub. + + Attributes: + path (str): + file path relative to the repo root. + size (`int`): + The file's size, in bytes. + blob_id (`str`): + The file's git OID. + lfs (`BlobLfsInfo`): + The file's LFS metadata. + last_commit (`LastCommitInfo`, *optional*): + The file's last commit metadata. Only defined if [`list_repo_tree`] and [`get_paths_info`] + are called with `expand=True`. + security (`BlobSecurityInfo`, *optional*): + The file's security scan metadata. Only defined if [`list_repo_tree`] and [`get_paths_info`] + are called with `expand=True`. + """ + + path: str + size: int + blob_id: str + lfs: Optional[BlobLfsInfo] = None + last_commit: Optional[LastCommitInfo] = None + security: Optional[BlobSecurityInfo] = None + + def __init__(self, **kwargs): + self.path = kwargs.pop("path") + self.size = kwargs.pop("size") + self.blob_id = kwargs.pop("oid") + lfs = kwargs.pop("lfs", None) + if lfs is not None: + lfs = BlobLfsInfo(size=lfs["size"], sha256=lfs["oid"], pointer_size=lfs["pointerSize"]) + self.lfs = lfs + last_commit = kwargs.pop("lastCommit", None) or kwargs.pop("last_commit", None) + if last_commit is not None: + last_commit = LastCommitInfo( + oid=last_commit["id"], title=last_commit["title"], date=parse_datetime(last_commit["date"]) + ) + self.last_commit = last_commit + security = kwargs.pop("securityFileStatus", None) + if security is not None: + safe = security["status"] == "safe" + security = BlobSecurityInfo( + safe=safe, + status=security["status"], + av_scan=security["avScan"], + pickle_import_scan=security["pickleImportScan"], + ) + self.security = security + + # backwards compatibility + self.rfilename = self.path + self.lastCommit = self.last_commit + + +@dataclass +class RepoFolder: + """ + Contains information about a folder on the Hub. + + Attributes: + path (str): + folder path relative to the repo root. + tree_id (`str`): + The folder's git OID. + last_commit (`LastCommitInfo`, *optional*): + The folder's last commit metadata. Only defined if [`list_repo_tree`] and [`get_paths_info`] + are called with `expand=True`. + """ + + path: str + tree_id: str + last_commit: Optional[LastCommitInfo] = None + + def __init__(self, **kwargs): + self.path = kwargs.pop("path") + self.tree_id = kwargs.pop("oid") + last_commit = kwargs.pop("lastCommit", None) or kwargs.pop("last_commit", None) + if last_commit is not None: + last_commit = LastCommitInfo( + oid=last_commit["id"], title=last_commit["title"], date=parse_datetime(last_commit["date"]) + ) + self.last_commit = last_commit + + +@dataclass +class ModelInfo: + """ + Contains information about a model on the Hub. + + + + Most attributes of this class are optional. This is because the data returned by the Hub depends on the query made. + In general, the more specific the query, the more information is returned. On the contrary, when listing models + using [`list_models`] only a subset of the attributes are returned. + + + + Attributes: + id (`str`): + ID of model. + author (`str`, *optional*): + Author of the model. + sha (`str`, *optional*): + Repo SHA at this particular revision. + created_at (`datetime`, *optional*): + Date of creation of the repo on the Hub. Note that the lowest value is `2022-03-02T23:29:04.000Z`, + corresponding to the date when we began to store creation dates. + last_modified (`datetime`, *optional*): + Date of last commit to the repo. + private (`bool`): + Is the repo private. + disabled (`bool`, *optional*): + Is the repo disabled. + downloads (`int`): + Number of downloads of the model over the last 30 days. + downloads_all_time (`int`): + Cumulated number of downloads of the model since its creation. + gated (`Literal["auto", "manual", False]`, *optional*): + Is the repo gated. + If so, whether there is manual or automatic approval. + gguf (`Dict`, *optional*): + GGUF information of the model. + inference (`Literal["cold", "frozen", "warm"]`, *optional*): + Status of the model on the inference API. + Warm models are available for immediate use. Cold models will be loaded on first inference call. + Frozen models are not available in Inference API. + likes (`int`): + Number of likes of the model. + library_name (`str`, *optional*): + Library associated with the model. + tags (`List[str]`): + List of tags of the model. Compared to `card_data.tags`, contains extra tags computed by the Hub + (e.g. supported libraries, model's arXiv). + pipeline_tag (`str`, *optional*): + Pipeline tag associated with the model. + mask_token (`str`, *optional*): + Mask token used by the model. + widget_data (`Any`, *optional*): + Widget data associated with the model. + model_index (`Dict`, *optional*): + Model index for evaluation. + config (`Dict`, *optional*): + Model configuration. + transformers_info (`TransformersInfo`, *optional*): + Transformers-specific info (auto class, processor, etc.) associated with the model. + trending_score (`int`, *optional*): + Trending score of the model. + card_data (`ModelCardData`, *optional*): + Model Card Metadata as a [`huggingface_hub.repocard_data.ModelCardData`] object. + siblings (`List[RepoSibling]`): + List of [`huggingface_hub.hf_api.RepoSibling`] objects that constitute the model. + spaces (`List[str]`, *optional*): + List of spaces using the model. + safetensors (`SafeTensorsInfo`, *optional*): + Model's safetensors information. + security_repo_status (`Dict`, *optional*): + Model's security scan status. + """ + + id: str + author: Optional[str] + sha: Optional[str] + created_at: Optional[datetime] + last_modified: Optional[datetime] + private: Optional[bool] + disabled: Optional[bool] + downloads: Optional[int] + downloads_all_time: Optional[int] + gated: Optional[Literal["auto", "manual", False]] + gguf: Optional[Dict] + inference: Optional[Literal["warm", "cold", "frozen"]] + likes: Optional[int] + library_name: Optional[str] + tags: Optional[List[str]] + pipeline_tag: Optional[str] + mask_token: Optional[str] + card_data: Optional[ModelCardData] + widget_data: Optional[Any] + model_index: Optional[Dict] + config: Optional[Dict] + transformers_info: Optional[TransformersInfo] + trending_score: Optional[int] + siblings: Optional[List[RepoSibling]] + spaces: Optional[List[str]] + safetensors: Optional[SafeTensorsInfo] + security_repo_status: Optional[Dict] + + def __init__(self, **kwargs): + self.id = kwargs.pop("id") + self.author = kwargs.pop("author", None) + self.sha = kwargs.pop("sha", None) + last_modified = kwargs.pop("lastModified", None) or kwargs.pop("last_modified", None) + self.last_modified = parse_datetime(last_modified) if last_modified else None + created_at = kwargs.pop("createdAt", None) or kwargs.pop("created_at", None) + self.created_at = parse_datetime(created_at) if created_at else None + self.private = kwargs.pop("private", None) + self.gated = kwargs.pop("gated", None) + self.disabled = kwargs.pop("disabled", None) + self.downloads = kwargs.pop("downloads", None) + self.downloads_all_time = kwargs.pop("downloadsAllTime", None) + self.likes = kwargs.pop("likes", None) + self.library_name = kwargs.pop("library_name", None) + self.gguf = kwargs.pop("gguf", None) + self.inference = kwargs.pop("inference", None) + self.tags = kwargs.pop("tags", None) + self.pipeline_tag = kwargs.pop("pipeline_tag", None) + self.mask_token = kwargs.pop("mask_token", None) + self.trending_score = kwargs.pop("trendingScore", None) + + card_data = kwargs.pop("cardData", None) or kwargs.pop("card_data", None) + self.card_data = ( + ModelCardData(**card_data, ignore_metadata_errors=True) if isinstance(card_data, dict) else card_data + ) + + self.widget_data = kwargs.pop("widgetData", None) + self.model_index = kwargs.pop("model-index", None) or kwargs.pop("model_index", None) + self.config = kwargs.pop("config", None) + transformers_info = kwargs.pop("transformersInfo", None) or kwargs.pop("transformers_info", None) + self.transformers_info = TransformersInfo(**transformers_info) if transformers_info else None + siblings = kwargs.pop("siblings", None) + self.siblings = ( + [ + RepoSibling( + rfilename=sibling["rfilename"], + size=sibling.get("size"), + blob_id=sibling.get("blobId"), + lfs=( + BlobLfsInfo( + size=sibling["lfs"]["size"], + sha256=sibling["lfs"]["sha256"], + pointer_size=sibling["lfs"]["pointerSize"], + ) + if sibling.get("lfs") + else None + ), + ) + for sibling in siblings + ] + if siblings is not None + else None + ) + self.spaces = kwargs.pop("spaces", None) + safetensors = kwargs.pop("safetensors", None) + self.safetensors = ( + SafeTensorsInfo( + parameters=safetensors["parameters"], + total=safetensors["total"], + ) + if safetensors + else None + ) + self.security_repo_status = kwargs.pop("securityRepoStatus", None) + # backwards compatibility + self.lastModified = self.last_modified + self.cardData = self.card_data + self.transformersInfo = self.transformers_info + self.__dict__.update(**kwargs) + + +@dataclass +class DatasetInfo: + """ + Contains information about a dataset on the Hub. + + + + Most attributes of this class are optional. This is because the data returned by the Hub depends on the query made. + In general, the more specific the query, the more information is returned. On the contrary, when listing datasets + using [`list_datasets`] only a subset of the attributes are returned. + + + + Attributes: + id (`str`): + ID of dataset. + author (`str`): + Author of the dataset. + sha (`str`): + Repo SHA at this particular revision. + created_at (`datetime`, *optional*): + Date of creation of the repo on the Hub. Note that the lowest value is `2022-03-02T23:29:04.000Z`, + corresponding to the date when we began to store creation dates. + last_modified (`datetime`, *optional*): + Date of last commit to the repo. + private (`bool`): + Is the repo private. + disabled (`bool`, *optional*): + Is the repo disabled. + gated (`Literal["auto", "manual", False]`, *optional*): + Is the repo gated. + If so, whether there is manual or automatic approval. + downloads (`int`): + Number of downloads of the dataset over the last 30 days. + downloads_all_time (`int`): + Cumulated number of downloads of the model since its creation. + likes (`int`): + Number of likes of the dataset. + tags (`List[str]`): + List of tags of the dataset. + card_data (`DatasetCardData`, *optional*): + Model Card Metadata as a [`huggingface_hub.repocard_data.DatasetCardData`] object. + siblings (`List[RepoSibling]`): + List of [`huggingface_hub.hf_api.RepoSibling`] objects that constitute the dataset. + paperswithcode_id (`str`, *optional*): + Papers with code ID of the dataset. + trending_score (`int`, *optional*): + Trending score of the dataset. + """ + + id: str + author: Optional[str] + sha: Optional[str] + created_at: Optional[datetime] + last_modified: Optional[datetime] + private: Optional[bool] + gated: Optional[Literal["auto", "manual", False]] + disabled: Optional[bool] + downloads: Optional[int] + downloads_all_time: Optional[int] + likes: Optional[int] + paperswithcode_id: Optional[str] + tags: Optional[List[str]] + trending_score: Optional[int] + card_data: Optional[DatasetCardData] + siblings: Optional[List[RepoSibling]] + + def __init__(self, **kwargs): + self.id = kwargs.pop("id") + self.author = kwargs.pop("author", None) + self.sha = kwargs.pop("sha", None) + created_at = kwargs.pop("createdAt", None) or kwargs.pop("created_at", None) + self.created_at = parse_datetime(created_at) if created_at else None + last_modified = kwargs.pop("lastModified", None) or kwargs.pop("last_modified", None) + self.last_modified = parse_datetime(last_modified) if last_modified else None + self.private = kwargs.pop("private", None) + self.gated = kwargs.pop("gated", None) + self.disabled = kwargs.pop("disabled", None) + self.downloads = kwargs.pop("downloads", None) + self.downloads_all_time = kwargs.pop("downloadsAllTime", None) + self.likes = kwargs.pop("likes", None) + self.paperswithcode_id = kwargs.pop("paperswithcode_id", None) + self.tags = kwargs.pop("tags", None) + self.trending_score = kwargs.pop("trendingScore", None) + + card_data = kwargs.pop("cardData", None) or kwargs.pop("card_data", None) + self.card_data = ( + DatasetCardData(**card_data, ignore_metadata_errors=True) if isinstance(card_data, dict) else card_data + ) + siblings = kwargs.pop("siblings", None) + self.siblings = ( + [ + RepoSibling( + rfilename=sibling["rfilename"], + size=sibling.get("size"), + blob_id=sibling.get("blobId"), + lfs=( + BlobLfsInfo( + size=sibling["lfs"]["size"], + sha256=sibling["lfs"]["sha256"], + pointer_size=sibling["lfs"]["pointerSize"], + ) + if sibling.get("lfs") + else None + ), + ) + for sibling in siblings + ] + if siblings is not None + else None + ) + + # backwards compatibility + self.lastModified = self.last_modified + self.cardData = self.card_data + self.__dict__.update(**kwargs) + + +@dataclass +class SpaceInfo: + """ + Contains information about a Space on the Hub. + + + + Most attributes of this class are optional. This is because the data returned by the Hub depends on the query made. + In general, the more specific the query, the more information is returned. On the contrary, when listing spaces + using [`list_spaces`] only a subset of the attributes are returned. + + + + Attributes: + id (`str`): + ID of the Space. + author (`str`, *optional*): + Author of the Space. + sha (`str`, *optional*): + Repo SHA at this particular revision. + created_at (`datetime`, *optional*): + Date of creation of the repo on the Hub. Note that the lowest value is `2022-03-02T23:29:04.000Z`, + corresponding to the date when we began to store creation dates. + last_modified (`datetime`, *optional*): + Date of last commit to the repo. + private (`bool`): + Is the repo private. + gated (`Literal["auto", "manual", False]`, *optional*): + Is the repo gated. + If so, whether there is manual or automatic approval. + disabled (`bool`, *optional*): + Is the Space disabled. + host (`str`, *optional*): + Host URL of the Space. + subdomain (`str`, *optional*): + Subdomain of the Space. + likes (`int`): + Number of likes of the Space. + tags (`List[str]`): + List of tags of the Space. + siblings (`List[RepoSibling]`): + List of [`huggingface_hub.hf_api.RepoSibling`] objects that constitute the Space. + card_data (`SpaceCardData`, *optional*): + Space Card Metadata as a [`huggingface_hub.repocard_data.SpaceCardData`] object. + runtime (`SpaceRuntime`, *optional*): + Space runtime information as a [`huggingface_hub.hf_api.SpaceRuntime`] object. + sdk (`str`, *optional*): + SDK used by the Space. + models (`List[str]`, *optional*): + List of models used by the Space. + datasets (`List[str]`, *optional*): + List of datasets used by the Space. + trending_score (`int`, *optional*): + Trending score of the Space. + """ + + id: str + author: Optional[str] + sha: Optional[str] + created_at: Optional[datetime] + last_modified: Optional[datetime] + private: Optional[bool] + gated: Optional[Literal["auto", "manual", False]] + disabled: Optional[bool] + host: Optional[str] + subdomain: Optional[str] + likes: Optional[int] + sdk: Optional[str] + tags: Optional[List[str]] + siblings: Optional[List[RepoSibling]] + trending_score: Optional[int] + card_data: Optional[SpaceCardData] + runtime: Optional[SpaceRuntime] + models: Optional[List[str]] + datasets: Optional[List[str]] + + def __init__(self, **kwargs): + self.id = kwargs.pop("id") + self.author = kwargs.pop("author", None) + self.sha = kwargs.pop("sha", None) + created_at = kwargs.pop("createdAt", None) or kwargs.pop("created_at", None) + self.created_at = parse_datetime(created_at) if created_at else None + last_modified = kwargs.pop("lastModified", None) or kwargs.pop("last_modified", None) + self.last_modified = parse_datetime(last_modified) if last_modified else None + self.private = kwargs.pop("private", None) + self.gated = kwargs.pop("gated", None) + self.disabled = kwargs.pop("disabled", None) + self.host = kwargs.pop("host", None) + self.subdomain = kwargs.pop("subdomain", None) + self.likes = kwargs.pop("likes", None) + self.sdk = kwargs.pop("sdk", None) + self.tags = kwargs.pop("tags", None) + self.trending_score = kwargs.pop("trendingScore", None) + card_data = kwargs.pop("cardData", None) or kwargs.pop("card_data", None) + self.card_data = ( + SpaceCardData(**card_data, ignore_metadata_errors=True) if isinstance(card_data, dict) else card_data + ) + siblings = kwargs.pop("siblings", None) + self.siblings = ( + [ + RepoSibling( + rfilename=sibling["rfilename"], + size=sibling.get("size"), + blob_id=sibling.get("blobId"), + lfs=( + BlobLfsInfo( + size=sibling["lfs"]["size"], + sha256=sibling["lfs"]["sha256"], + pointer_size=sibling["lfs"]["pointerSize"], + ) + if sibling.get("lfs") + else None + ), + ) + for sibling in siblings + ] + if siblings is not None + else None + ) + runtime = kwargs.pop("runtime", None) + self.runtime = SpaceRuntime(runtime) if runtime else None + self.models = kwargs.pop("models", None) + self.datasets = kwargs.pop("datasets", None) + + # backwards compatibility + self.lastModified = self.last_modified + self.cardData = self.card_data + self.__dict__.update(**kwargs) + + +@dataclass +class MetricInfo: + """ + Contains information about a metric on the Hub. + + Attributes: + id (`str`): + ID of the metric. E.g. `"accuracy"`. + space_id (`str`): + ID of the space associated with the metric. E.g. `"Accuracy"`. + description (`str`): + Description of the metric. + """ + + id: str + space_id: str + description: Optional[str] + + def __init__(self, **kwargs): + self.id = kwargs.pop("id") + self.space_id = kwargs.pop("spaceId") + self.description = kwargs.pop("description", None) + # backwards compatibility + self.spaceId = self.space_id + self.__dict__.update(**kwargs) + + +@dataclass +class CollectionItem: + """ + Contains information about an item of a Collection (model, dataset, Space or paper). + + Attributes: + item_object_id (`str`): + Unique ID of the item in the collection. + item_id (`str`): + ID of the underlying object on the Hub. Can be either a repo_id or a paper id + e.g. `"jbilcke-hf/ai-comic-factory"`, `"2307.09288"`. + item_type (`str`): + Type of the underlying object. Can be one of `"model"`, `"dataset"`, `"space"` or `"paper"`. + position (`int`): + Position of the item in the collection. + note (`str`, *optional*): + Note associated with the item, as plain text. + """ + + item_object_id: str # id in database + item_id: str # repo_id or paper id + item_type: str + position: int + note: Optional[str] = None + + def __init__( + self, _id: str, id: str, type: CollectionItemType_T, position: int, note: Optional[Dict] = None, **kwargs + ) -> None: + self.item_object_id: str = _id # id in database + self.item_id: str = id # repo_id or paper id + self.item_type: CollectionItemType_T = type + self.position: int = position + self.note: str = note["text"] if note is not None else None + + +@dataclass +class Collection: + """ + Contains information about a Collection on the Hub. + + Attributes: + slug (`str`): + Slug of the collection. E.g. `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + title (`str`): + Title of the collection. E.g. `"Recent models"`. + owner (`str`): + Owner of the collection. E.g. `"TheBloke"`. + items (`List[CollectionItem]`): + List of items in the collection. + last_updated (`datetime`): + Date of the last update of the collection. + position (`int`): + Position of the collection in the list of collections of the owner. + private (`bool`): + Whether the collection is private or not. + theme (`str`): + Theme of the collection. E.g. `"green"`. + upvotes (`int`): + Number of upvotes of the collection. + description (`str`, *optional*): + Description of the collection, as plain text. + url (`str`): + (property) URL of the collection on the Hub. + """ + + slug: str + title: str + owner: str + items: List[CollectionItem] + last_updated: datetime + position: int + private: bool + theme: str + upvotes: int + description: Optional[str] = None + + def __init__(self, **kwargs) -> None: + self.slug = kwargs.pop("slug") + self.title = kwargs.pop("title") + self.owner = kwargs.pop("owner") + self.items = [CollectionItem(**item) for item in kwargs.pop("items")] + self.last_updated = parse_datetime(kwargs.pop("lastUpdated")) + self.position = kwargs.pop("position") + self.private = kwargs.pop("private") + self.theme = kwargs.pop("theme") + self.upvotes = kwargs.pop("upvotes") + self.description = kwargs.pop("description", None) + endpoint = kwargs.pop("endpoint", None) + if endpoint is None: + endpoint = constants.ENDPOINT + self._url = f"{endpoint}/collections/{self.slug}" + + @property + def url(self) -> str: + """Returns the URL of the collection on the Hub.""" + return self._url + + +@dataclass +class GitRefInfo: + """ + Contains information about a git reference for a repo on the Hub. + + Attributes: + name (`str`): + Name of the reference (e.g. tag name or branch name). + ref (`str`): + Full git ref on the Hub (e.g. `"refs/heads/main"` or `"refs/tags/v1.0"`). + target_commit (`str`): + OID of the target commit for the ref (e.g. `"e7da7f221d5bf496a48136c0cd264e630fe9fcc8"`) + """ + + name: str + ref: str + target_commit: str + + +@dataclass +class GitRefs: + """ + Contains information about all git references for a repo on the Hub. + + Object is returned by [`list_repo_refs`]. + + Attributes: + branches (`List[GitRefInfo]`): + A list of [`GitRefInfo`] containing information about branches on the repo. + converts (`List[GitRefInfo]`): + A list of [`GitRefInfo`] containing information about "convert" refs on the repo. + Converts are refs used (internally) to push preprocessed data in Dataset repos. + tags (`List[GitRefInfo]`): + A list of [`GitRefInfo`] containing information about tags on the repo. + pull_requests (`List[GitRefInfo]`, *optional*): + A list of [`GitRefInfo`] containing information about pull requests on the repo. + Only returned if `include_prs=True` is set. + """ + + branches: List[GitRefInfo] + converts: List[GitRefInfo] + tags: List[GitRefInfo] + pull_requests: Optional[List[GitRefInfo]] = None + + +@dataclass +class GitCommitInfo: + """ + Contains information about a git commit for a repo on the Hub. Check out [`list_repo_commits`] for more details. + + Attributes: + commit_id (`str`): + OID of the commit (e.g. `"e7da7f221d5bf496a48136c0cd264e630fe9fcc8"`) + authors (`List[str]`): + List of authors of the commit. + created_at (`datetime`): + Datetime when the commit was created. + title (`str`): + Title of the commit. This is a free-text value entered by the authors. + message (`str`): + Description of the commit. This is a free-text value entered by the authors. + formatted_title (`str`): + Title of the commit formatted as HTML. Only returned if `formatted=True` is set. + formatted_message (`str`): + Description of the commit formatted as HTML. Only returned if `formatted=True` is set. + """ + + commit_id: str + + authors: List[str] + created_at: datetime + title: str + message: str + + formatted_title: Optional[str] + formatted_message: Optional[str] + + +@dataclass +class UserLikes: + """ + Contains information about a user likes on the Hub. + + Attributes: + user (`str`): + Name of the user for which we fetched the likes. + total (`int`): + Total number of likes. + datasets (`List[str]`): + List of datasets liked by the user (as repo_ids). + models (`List[str]`): + List of models liked by the user (as repo_ids). + spaces (`List[str]`): + List of spaces liked by the user (as repo_ids). + """ + + # Metadata + user: str + total: int + + # User likes + datasets: List[str] + models: List[str] + spaces: List[str] + + +@dataclass +class Organization: + """ + Contains information about an organization on the Hub. + + Attributes: + avatar_url (`str`): + URL of the organization's avatar. + name (`str`): + Name of the organization on the Hub (unique). + fullname (`str`): + Organization's full name. + """ + + avatar_url: str + name: str + fullname: str + + def __init__(self, **kwargs) -> None: + self.avatar_url = kwargs.pop("avatarUrl", "") + self.name = kwargs.pop("name", "") + self.fullname = kwargs.pop("fullname", "") + + # forward compatibility + self.__dict__.update(**kwargs) + + +@dataclass +class User: + """ + Contains information about a user on the Hub. + + Attributes: + username (`str`): + Name of the user on the Hub (unique). + fullname (`str`): + User's full name. + avatar_url (`str`): + URL of the user's avatar. + details (`str`, *optional*): + User's details. + is_following (`bool`, *optional*): + Whether the authenticated user is following this user. + is_pro (`bool`, *optional*): + Whether the user is a pro user. + num_models (`int`, *optional*): + Number of models created by the user. + num_datasets (`int`, *optional*): + Number of datasets created by the user. + num_spaces (`int`, *optional*): + Number of spaces created by the user. + num_discussions (`int`, *optional*): + Number of discussions initiated by the user. + num_papers (`int`, *optional*): + Number of papers authored by the user. + num_upvotes (`int`, *optional*): + Number of upvotes received by the user. + num_likes (`int`, *optional*): + Number of likes given by the user. + num_following (`int`, *optional*): + Number of users this user is following. + num_followers (`int`, *optional*): + Number of users following this user. + orgs (list of [`Organization`]): + List of organizations the user is part of. + """ + + # Metadata + username: str + fullname: str + avatar_url: str + details: Optional[str] = None + is_following: Optional[bool] = None + is_pro: Optional[bool] = None + num_models: Optional[int] = None + num_datasets: Optional[int] = None + num_spaces: Optional[int] = None + num_discussions: Optional[int] = None + num_papers: Optional[int] = None + num_upvotes: Optional[int] = None + num_likes: Optional[int] = None + num_following: Optional[int] = None + num_followers: Optional[int] = None + orgs: List[Organization] = field(default_factory=list) + + def __init__(self, **kwargs) -> None: + self.username = kwargs.pop("user", "") + self.fullname = kwargs.pop("fullname", "") + self.avatar_url = kwargs.pop("avatarUrl", "") + self.is_following = kwargs.pop("isFollowing", None) + self.is_pro = kwargs.pop("isPro", None) + self.details = kwargs.pop("details", None) + self.num_models = kwargs.pop("numModels", None) + self.num_datasets = kwargs.pop("numDatasets", None) + self.num_spaces = kwargs.pop("numSpaces", None) + self.num_discussions = kwargs.pop("numDiscussions", None) + self.num_papers = kwargs.pop("numPapers", None) + self.num_upvotes = kwargs.pop("numUpvotes", None) + self.num_likes = kwargs.pop("numLikes", None) + self.num_following = kwargs.pop("numFollowing", None) + self.num_followers = kwargs.pop("numFollowers", None) + self.user_type = kwargs.pop("type", None) + self.orgs = [Organization(**org) for org in kwargs.pop("orgs", [])] + + # forward compatibility + self.__dict__.update(**kwargs) + + +@dataclass +class PaperInfo: + """ + Contains information about a paper on the Hub. + + Attributes: + id (`str`): + arXiv paper ID. + authors (`List[str]`, **optional**): + Names of paper authors + published_at (`datetime`, **optional**): + Date paper published. + title (`str`, **optional**): + Title of the paper. + summary (`str`, **optional**): + Summary of the paper. + upvotes (`int`, **optional**): + Number of upvotes for the paper on the Hub. + discussion_id (`str`, **optional**): + Discussion ID for the paper on the Hub. + source (`str`, **optional**): + Source of the paper. + comments (`int`, **optional**): + Number of comments for the paper on the Hub. + submitted_at (`datetime`, **optional**): + Date paper appeared in daily papers on the Hub. + submitted_by (`User`, **optional**): + Information about who submitted the daily paper. + """ + + id: str + authors: Optional[List[str]] + published_at: Optional[datetime] + title: Optional[str] + summary: Optional[str] + upvotes: Optional[int] + discussion_id: Optional[str] + source: Optional[str] + comments: Optional[int] + submitted_at: Optional[datetime] + submitted_by: Optional[User] + + def __init__(self, **kwargs) -> None: + paper = kwargs.pop("paper", {}) + self.id = kwargs.pop("id", None) or paper.pop("id", None) + authors = paper.pop("authors", None) or kwargs.pop("authors", None) + self.authors = [author.pop("name", None) for author in authors] if authors else None + published_at = paper.pop("publishedAt", None) or kwargs.pop("publishedAt", None) + self.published_at = parse_datetime(published_at) if published_at else None + self.title = kwargs.pop("title", None) + self.source = kwargs.pop("source", None) + self.summary = paper.pop("summary", None) or kwargs.pop("summary", None) + self.upvotes = paper.pop("upvotes", None) or kwargs.pop("upvotes", None) + self.discussion_id = paper.pop("discussionId", None) or kwargs.pop("discussionId", None) + self.comments = kwargs.pop("numComments", 0) + submitted_at = kwargs.pop("publishedAt", None) or kwargs.pop("submittedOnDailyAt", None) + self.submitted_at = parse_datetime(submitted_at) if submitted_at else None + submitted_by = kwargs.pop("submittedBy", None) or kwargs.pop("submittedOnDailyBy", None) + self.submitted_by = User(**submitted_by) if submitted_by else None + + # forward compatibility + self.__dict__.update(**kwargs) + + +def future_compatible(fn: CallableT) -> CallableT: + """Wrap a method of `HfApi` to handle `run_as_future=True`. + + A method flagged as "future_compatible" will be called in a thread if `run_as_future=True` and return a + `concurrent.futures.Future` instance. Otherwise, it will be called normally and return the result. + """ + sig = inspect.signature(fn) + args_params = list(sig.parameters)[1:] # remove "self" from list + + @wraps(fn) + def _inner(self, *args, **kwargs): + # Get `run_as_future` value if provided (default to False) + if "run_as_future" in kwargs: + run_as_future = kwargs["run_as_future"] + kwargs["run_as_future"] = False # avoid recursion error + else: + run_as_future = False + for param, value in zip(args_params, args): + if param == "run_as_future": + run_as_future = value + break + + # Call the function in a thread if `run_as_future=True` + if run_as_future: + return self.run_as_future(fn, self, *args, **kwargs) + + # Otherwise, call the function normally + return fn(self, *args, **kwargs) + + _inner.is_future_compatible = True # type: ignore + return _inner # type: ignore + + +class HfApi: + def __init__( + self, + endpoint: Optional[str] = None, + token: Union[str, bool, None] = None, + library_name: Optional[str] = None, + library_version: Optional[str] = None, + user_agent: Union[Dict, str, None] = None, + headers: Optional[Dict[str, str]] = None, + ) -> None: + """Create a HF client to interact with the Hub via HTTP. + + The client is initialized with some high-level settings used in all requests + made to the Hub (HF endpoint, authentication, user agents...). Using the `HfApi` + client is preferred but not mandatory as all of its public methods are exposed + directly at the root of `huggingface_hub`. + + Args: + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + library_name (`str`, *optional*): + The name of the library that is making the HTTP request. Will be added to + the user-agent header. Example: `"transformers"`. + library_version (`str`, *optional*): + The version of the library that is making the HTTP request. Will be added + to the user-agent header. Example: `"4.24.0"`. + user_agent (`str`, `dict`, *optional*): + The user agent info in the form of a dictionary or a single string. It will + be completed with information about the installed packages. + headers (`dict`, *optional*): + Additional headers to be sent with each request. Example: `{"X-My-Header": "value"}`. + Headers passed here are taking precedence over the default headers. + """ + self.endpoint = endpoint if endpoint is not None else constants.ENDPOINT + self.token = token + self.library_name = library_name + self.library_version = library_version + self.user_agent = user_agent + self.headers = headers + self._thread_pool: Optional[ThreadPoolExecutor] = None + + def run_as_future(self, fn: Callable[..., R], *args, **kwargs) -> Future[R]: + """ + Run a method in the background and return a Future instance. + + The main goal is to run methods without blocking the main thread (e.g. to push data during a training). + Background jobs are queued to preserve order but are not ran in parallel. If you need to speed-up your scripts + by parallelizing lots of call to the API, you must setup and use your own [ThreadPoolExecutor](https://docs.python.org/3/library/concurrent.futures.html#threadpoolexecutor). + + Note: Most-used methods like [`upload_file`], [`upload_folder`] and [`create_commit`] have a `run_as_future: bool` + argument to directly call them in the background. This is equivalent to calling `api.run_as_future(...)` on them + but less verbose. + + Args: + fn (`Callable`): + The method to run in the background. + *args, **kwargs: + Arguments with which the method will be called. + + Return: + `Future`: a [Future](https://docs.python.org/3/library/concurrent.futures.html#future-objects) instance to + get the result of the task. + + Example: + ```py + >>> from huggingface_hub import HfApi + >>> api = HfApi() + >>> future = api.run_as_future(api.whoami) # instant + >>> future.done() + False + >>> future.result() # wait until complete and return result + (...) + >>> future.done() + True + ``` + """ + if self._thread_pool is None: + self._thread_pool = ThreadPoolExecutor(max_workers=1) + self._thread_pool + return self._thread_pool.submit(fn, *args, **kwargs) + + @validate_hf_hub_args + def whoami(self, token: Union[bool, str, None] = None) -> Dict: + """ + Call HF API to know "whoami". + + Args: + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + r = get_session().get( + f"{self.endpoint}/api/whoami-v2", + headers=self._build_hf_headers( + # If `token` is provided and not `None`, it will be used by default. + # Otherwise, the token must be retrieved from cache or env variable. + token=(token or self.token or True), + ), + ) + try: + hf_raise_for_status(r) + except HTTPError as e: + raise HTTPError( + "Invalid user token. If you didn't pass a user token, make sure you " + "are properly logged in by executing `huggingface-cli login`, and " + "if you did pass a user token, double-check it's correct.", + request=e.request, + response=e.response, + ) from e + return r.json() + + def get_token_permission(self, token: Union[bool, str, None] = None) -> Literal["read", "write", None]: + """ + Check if a given `token` is valid and return its permissions. + + For more details about tokens, please refer to https://huggingface.co/docs/hub/security-tokens#what-are-user-access-tokens. + + Args: + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Literal["read", "write", None]`: Permission granted by the token ("read" or "write"). Returns `None` if no + token passed or token is invalid. + """ + try: + return self.whoami(token=token)["auth"]["accessToken"]["role"] + except (LocalTokenNotFoundError, HTTPError): + return None + + def get_model_tags(self) -> Dict: + """ + List all valid model tags as a nested namespace object + """ + path = f"{self.endpoint}/api/models-tags-by-type" + r = get_session().get(path) + hf_raise_for_status(r) + return r.json() + + def get_dataset_tags(self) -> Dict: + """ + List all valid dataset tags as a nested namespace object. + """ + path = f"{self.endpoint}/api/datasets-tags-by-type" + r = get_session().get(path) + hf_raise_for_status(r) + return r.json() + + @validate_hf_hub_args + def list_models( + self, + *, + # Search-query parameter + filter: Union[str, Iterable[str], None] = None, + author: Optional[str] = None, + gated: Optional[bool] = None, + inference: Optional[Literal["cold", "frozen", "warm"]] = None, + library: Optional[Union[str, List[str]]] = None, + language: Optional[Union[str, List[str]]] = None, + model_name: Optional[str] = None, + task: Optional[Union[str, List[str]]] = None, + trained_dataset: Optional[Union[str, List[str]]] = None, + tags: Optional[Union[str, List[str]]] = None, + search: Optional[str] = None, + pipeline_tag: Optional[str] = None, + emissions_thresholds: Optional[Tuple[float, float]] = None, + # Sorting and pagination parameters + sort: Union[Literal["last_modified"], str, None] = None, + direction: Optional[Literal[-1]] = None, + limit: Optional[int] = None, + # Additional data to fetch + expand: Optional[List[ExpandModelProperty_T]] = None, + full: Optional[bool] = None, + cardData: bool = False, + fetch_config: bool = False, + token: Union[bool, str, None] = None, + ) -> Iterable[ModelInfo]: + """ + List models hosted on the Huggingface Hub, given some filters. + + Args: + filter (`str` or `Iterable[str]`, *optional*): + A string or list of string to filter models on the Hub. + author (`str`, *optional*): + A string which identify the author (user or organization) of the + returned models. + gated (`bool`, *optional*): + A boolean to filter models on the Hub that are gated or not. By default, all models are returned. + If `gated=True` is passed, only gated models are returned. + If `gated=False` is passed, only non-gated models are returned. + inference (`Literal["cold", "frozen", "warm"]`, *optional*): + A string to filter models on the Hub by their state on the Inference API. + Warm models are available for immediate use. Cold models will be loaded on first inference call. + Frozen models are not available in Inference API. + library (`str` or `List`, *optional*): + A string or list of strings of foundational libraries models were + originally trained from, such as pytorch, tensorflow, or allennlp. + language (`str` or `List`, *optional*): + A string or list of strings of languages, both by name and country + code, such as "en" or "English" + model_name (`str`, *optional*): + A string that contain complete or partial names for models on the + Hub, such as "bert" or "bert-base-cased" + task (`str` or `List`, *optional*): + A string or list of strings of tasks models were designed for, such + as: "fill-mask" or "automatic-speech-recognition" + trained_dataset (`str` or `List`, *optional*): + A string tag or a list of string tags of the trained dataset for a + model on the Hub. + tags (`str` or `List`, *optional*): + A string tag or a list of tags to filter models on the Hub by, such + as `text-generation` or `spacy`. + search (`str`, *optional*): + A string that will be contained in the returned model ids. + pipeline_tag (`str`, *optional*): + A string pipeline tag to filter models on the Hub by, such as `summarization`. + emissions_thresholds (`Tuple`, *optional*): + A tuple of two ints or floats representing a minimum and maximum + carbon footprint to filter the resulting models with in grams. + sort (`Literal["last_modified"]` or `str`, *optional*): + The key with which to sort the resulting models. Possible values + are the properties of the [`huggingface_hub.hf_api.ModelInfo`] class. + direction (`Literal[-1]` or `int`, *optional*): + Direction in which to sort. The value `-1` sorts by descending + order while all other values sort by ascending order. + limit (`int`, *optional*): + The limit on the number of models fetched. Leaving this option + to `None` fetches all models. + expand (`List[ExpandModelProperty_T]`, *optional*): + List properties to return in the response. When used, only the properties in the list will be returned. + This parameter cannot be used if `full`, `cardData` or `fetch_config` are passed. + Possible values are `"author"`, `"baseModels"`, `"cardData"`, `"childrenModelCount"`, `"config"`, `"createdAt"`, `"disabled"`, `"downloads"`, `"downloadsAllTime"`, `"gated"`, `"gguf"`, `"inference"`, `"lastModified"`, `"library_name"`, `"likes"`, `"mask_token"`, `"model-index"`, `"pipeline_tag"`, `"private"`, `"safetensors"`, `"sha"`, `"siblings"`, `"spaces"`, `"tags"`, `"transformersInfo"`, `"trendingScore"` and `"widgetData"`. + full (`bool`, *optional*): + Whether to fetch all model data, including the `last_modified`, + the `sha`, the files and the `tags`. This is set to `True` by + default when using a filter. + cardData (`bool`, *optional*): + Whether to grab the metadata for the model as well. Can contain + useful information such as carbon emissions, metrics, and + datasets trained on. + fetch_config (`bool`, *optional*): + Whether to fetch the model configs as well. This is not included + in `full` due to its size. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + + Returns: + `Iterable[ModelInfo]`: an iterable of [`huggingface_hub.hf_api.ModelInfo`] objects. + + Example usage with the `filter` argument: + + ```python + >>> from huggingface_hub import HfApi + + >>> api = HfApi() + + # List all models + >>> api.list_models() + + # List only the text classification models + >>> api.list_models(filter="text-classification") + + # List only models from the AllenNLP library + >>> api.list_models(filter="allennlp") + ``` + + Example usage with the `search` argument: + + ```python + >>> from huggingface_hub import HfApi + + >>> api = HfApi() + + # List all models with "bert" in their name + >>> api.list_models(search="bert") + + # List all models with "bert" in their name made by google + >>> api.list_models(search="bert", author="google") + ``` + """ + if expand and (full or cardData or fetch_config): + raise ValueError("`expand` cannot be used if `full`, `cardData` or `fetch_config` are passed.") + + if emissions_thresholds is not None and cardData is None: + raise ValueError("`emissions_thresholds` were passed without setting `cardData=True`.") + + path = f"{self.endpoint}/api/models" + headers = self._build_hf_headers(token=token) + params: Dict[str, Any] = {} + + # Build the filter list + filter_list: List[str] = [] + if filter: + filter_list.extend([filter] if isinstance(filter, str) else filter) + if library: + filter_list.extend([library] if isinstance(library, str) else library) + if task: + filter_list.extend([task] if isinstance(task, str) else task) + if trained_dataset: + if isinstance(trained_dataset, str): + trained_dataset = [trained_dataset] + for dataset in trained_dataset: + if not dataset.startswith("dataset:"): + dataset = f"dataset:{dataset}" + filter_list.append(dataset) + if language: + filter_list.extend([language] if isinstance(language, str) else language) + if tags: + filter_list.extend([tags] if isinstance(tags, str) else tags) + if len(filter_list) > 0: + params["filter"] = filter_list + + # Handle other query params + if author: + params["author"] = author + if gated is not None: + params["gated"] = gated + if inference is not None: + params["inference"] = inference + if pipeline_tag: + params["pipeline_tag"] = pipeline_tag + search_list = [] + if model_name: + search_list.append(model_name) + if search: + search_list.append(search) + if len(search_list) > 0: + params["search"] = search_list + if sort is not None: + params["sort"] = "lastModified" if sort == "last_modified" else sort + if direction is not None: + params["direction"] = direction + if limit is not None: + params["limit"] = limit + + # Request additional data + if full: + params["full"] = True + if fetch_config: + params["config"] = True + if cardData: + params["cardData"] = True + if expand: + params["expand"] = expand + + # `items` is a generator + items = paginate(path, params=params, headers=headers) + if limit is not None: + items = islice(items, limit) # Do not iterate over all pages + for item in items: + if "siblings" not in item: + item["siblings"] = None + model_info = ModelInfo(**item) + if emissions_thresholds is None or _is_emission_within_threshold(model_info, *emissions_thresholds): + yield model_info + + @validate_hf_hub_args + def list_datasets( + self, + *, + # Search-query parameter + filter: Union[str, Iterable[str], None] = None, + author: Optional[str] = None, + benchmark: Optional[Union[str, List[str]]] = None, + dataset_name: Optional[str] = None, + gated: Optional[bool] = None, + language_creators: Optional[Union[str, List[str]]] = None, + language: Optional[Union[str, List[str]]] = None, + multilinguality: Optional[Union[str, List[str]]] = None, + size_categories: Optional[Union[str, List[str]]] = None, + tags: Optional[Union[str, List[str]]] = None, + task_categories: Optional[Union[str, List[str]]] = None, + task_ids: Optional[Union[str, List[str]]] = None, + search: Optional[str] = None, + # Sorting and pagination parameters + sort: Optional[Union[Literal["last_modified"], str]] = None, + direction: Optional[Literal[-1]] = None, + limit: Optional[int] = None, + # Additional data to fetch + expand: Optional[List[ExpandDatasetProperty_T]] = None, + full: Optional[bool] = None, + token: Union[bool, str, None] = None, + ) -> Iterable[DatasetInfo]: + """ + List datasets hosted on the Huggingface Hub, given some filters. + + Args: + filter (`str` or `Iterable[str]`, *optional*): + A string or list of string to filter datasets on the hub. + author (`str`, *optional*): + A string which identify the author of the returned datasets. + benchmark (`str` or `List`, *optional*): + A string or list of strings that can be used to identify datasets on + the Hub by their official benchmark. + dataset_name (`str`, *optional*): + A string or list of strings that can be used to identify datasets on + the Hub by its name, such as `SQAC` or `wikineural` + gated (`bool`, *optional*): + A boolean to filter datasets on the Hub that are gated or not. By default, all datasets are returned. + If `gated=True` is passed, only gated datasets are returned. + If `gated=False` is passed, only non-gated datasets are returned. + language_creators (`str` or `List`, *optional*): + A string or list of strings that can be used to identify datasets on + the Hub with how the data was curated, such as `crowdsourced` or + `machine_generated`. + language (`str` or `List`, *optional*): + A string or list of strings representing a two-character language to + filter datasets by on the Hub. + multilinguality (`str` or `List`, *optional*): + A string or list of strings representing a filter for datasets that + contain multiple languages. + size_categories (`str` or `List`, *optional*): + A string or list of strings that can be used to identify datasets on + the Hub by the size of the dataset such as `100K>> from huggingface_hub import HfApi + + >>> api = HfApi() + + # List all datasets + >>> api.list_datasets() + + + # List only the text classification datasets + >>> api.list_datasets(filter="task_categories:text-classification") + + + # List only the datasets in russian for language modeling + >>> api.list_datasets( + ... filter=("language:ru", "task_ids:language-modeling") + ... ) + + # List FiftyOne datasets (identified by the tag "fiftyone" in dataset card) + >>> api.list_datasets(tags="fiftyone") + ``` + + Example usage with the `search` argument: + + ```python + >>> from huggingface_hub import HfApi + + >>> api = HfApi() + + # List all datasets with "text" in their name + >>> api.list_datasets(search="text") + + # List all datasets with "text" in their name made by google + >>> api.list_datasets(search="text", author="google") + ``` + """ + if expand and full: + raise ValueError("`expand` cannot be used if `full` is passed.") + + path = f"{self.endpoint}/api/datasets" + headers = self._build_hf_headers(token=token) + params: Dict[str, Any] = {} + + # Build `filter` list + filter_list = [] + if filter is not None: + if isinstance(filter, str): + filter_list.append(filter) + else: + filter_list.extend(filter) + for key, value in ( + ("benchmark", benchmark), + ("language_creators", language_creators), + ("language", language), + ("multilinguality", multilinguality), + ("size_categories", size_categories), + ("task_categories", task_categories), + ("task_ids", task_ids), + ): + if value: + if isinstance(value, str): + value = [value] + for value_item in value: + if not value_item.startswith(f"{key}:"): + data = f"{key}:{value_item}" + filter_list.append(data) + if tags is not None: + filter_list.extend([tags] if isinstance(tags, str) else tags) + if len(filter_list) > 0: + params["filter"] = filter_list + + # Handle other query params + if author: + params["author"] = author + if gated is not None: + params["gated"] = gated + search_list = [] + if dataset_name: + search_list.append(dataset_name) + if search: + search_list.append(search) + if len(search_list) > 0: + params["search"] = search_list + if sort is not None: + params["sort"] = "lastModified" if sort == "last_modified" else sort + if direction is not None: + params["direction"] = direction + if limit is not None: + params["limit"] = limit + + # Request additional data + if expand: + params["expand"] = expand + if full: + params["full"] = True + + items = paginate(path, params=params, headers=headers) + if limit is not None: + items = islice(items, limit) # Do not iterate over all pages + for item in items: + if "siblings" not in item: + item["siblings"] = None + yield DatasetInfo(**item) + + def list_metrics(self) -> List[MetricInfo]: + """ + Get the public list of all the metrics on huggingface.co + + Returns: + `List[MetricInfo]`: a list of [`MetricInfo`] objects which. + """ + path = f"{self.endpoint}/api/metrics" + r = get_session().get(path) + hf_raise_for_status(r) + d = r.json() + return [MetricInfo(**x) for x in d] + + @validate_hf_hub_args + def list_spaces( + self, + *, + # Search-query parameter + filter: Union[str, Iterable[str], None] = None, + author: Optional[str] = None, + search: Optional[str] = None, + datasets: Union[str, Iterable[str], None] = None, + models: Union[str, Iterable[str], None] = None, + linked: bool = False, + # Sorting and pagination parameters + sort: Union[Literal["last_modified"], str, None] = None, + direction: Optional[Literal[-1]] = None, + limit: Optional[int] = None, + # Additional data to fetch + expand: Optional[List[ExpandSpaceProperty_T]] = None, + full: Optional[bool] = None, + token: Union[bool, str, None] = None, + ) -> Iterable[SpaceInfo]: + """ + List spaces hosted on the Huggingface Hub, given some filters. + + Args: + filter (`str` or `Iterable`, *optional*): + A string tag or list of tags that can be used to identify Spaces on the Hub. + author (`str`, *optional*): + A string which identify the author of the returned Spaces. + search (`str`, *optional*): + A string that will be contained in the returned Spaces. + datasets (`str` or `Iterable`, *optional*): + Whether to return Spaces that make use of a dataset. + The name of a specific dataset can be passed as a string. + models (`str` or `Iterable`, *optional*): + Whether to return Spaces that make use of a model. + The name of a specific model can be passed as a string. + linked (`bool`, *optional*): + Whether to return Spaces that make use of either a model or a dataset. + sort (`Literal["last_modified"]` or `str`, *optional*): + The key with which to sort the resulting Spaces. Possible + values are the properties of the [`huggingface_hub.hf_api.SpaceInfo`]` class. + direction (`Literal[-1]` or `int`, *optional*): + Direction in which to sort. The value `-1` sorts by descending + order while all other values sort by ascending order. + limit (`int`, *optional*): + The limit on the number of Spaces fetched. Leaving this option + to `None` fetches all Spaces. + expand (`List[ExpandSpaceProperty_T]`, *optional*): + List properties to return in the response. When used, only the properties in the list will be returned. + This parameter cannot be used if `full` is passed. + Possible values are `"author"`, `"cardData"`, `"datasets"`, `"disabled"`, `"lastModified"`, `"createdAt"`, `"likes"`, `"models"`, `"private"`, `"runtime"`, `"sdk"`, `"siblings"`, `"sha"`, `"subdomain"`, `"tags"` and `"trendingScore"`. + full (`bool`, *optional*): + Whether to fetch all Spaces data, including the `last_modified`, `siblings` + and `card_data` fields. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[SpaceInfo]`: an iterable of [`huggingface_hub.hf_api.SpaceInfo`] objects. + """ + if expand and full: + raise ValueError("`expand` cannot be used if `full` is passed.") + + path = f"{self.endpoint}/api/spaces" + headers = self._build_hf_headers(token=token) + params: Dict[str, Any] = {} + if filter is not None: + params["filter"] = filter + if author is not None: + params["author"] = author + if search is not None: + params["search"] = search + if sort is not None: + params["sort"] = "lastModified" if sort == "last_modified" else sort + if direction is not None: + params["direction"] = direction + if limit is not None: + params["limit"] = limit + if linked: + params["linked"] = True + if datasets is not None: + params["datasets"] = datasets + if models is not None: + params["models"] = models + + # Request additional data + if expand: + params["expand"] = expand + if full: + params["full"] = True + + items = paginate(path, params=params, headers=headers) + if limit is not None: + items = islice(items, limit) # Do not iterate over all pages + for item in items: + if "siblings" not in item: + item["siblings"] = None + yield SpaceInfo(**item) + + @validate_hf_hub_args + def like( + self, + repo_id: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> None: + """ + Like a given repo on the Hub (e.g. set as favorite). + + See also [`unlike`] and [`list_liked_repos`]. + + Args: + repo_id (`str`): + The repository to like. Example: `"user/my-cool-model"`. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if liking a dataset or space, `None` or + `"model"` if liking a model. Default is `None`. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + + Example: + ```python + >>> from huggingface_hub import like, list_liked_repos, unlike + >>> like("gpt2") + >>> "gpt2" in list_liked_repos().models + True + >>> unlike("gpt2") + >>> "gpt2" in list_liked_repos().models + False + ``` + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + response = get_session().post( + url=f"{self.endpoint}/api/{repo_type}s/{repo_id}/like", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + @validate_hf_hub_args + def unlike( + self, + repo_id: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> None: + """ + Unlike a given repo on the Hub (e.g. remove from favorite list). + + See also [`like`] and [`list_liked_repos`]. + + Args: + repo_id (`str`): + The repository to unlike. Example: `"user/my-cool-model"`. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if unliking a dataset or space, `None` or + `"model"` if unliking a model. Default is `None`. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + + Example: + ```python + >>> from huggingface_hub import like, list_liked_repos, unlike + >>> like("gpt2") + >>> "gpt2" in list_liked_repos().models + True + >>> unlike("gpt2") + >>> "gpt2" in list_liked_repos().models + False + ``` + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + response = get_session().delete( + url=f"{self.endpoint}/api/{repo_type}s/{repo_id}/like", headers=self._build_hf_headers(token=token) + ) + hf_raise_for_status(response) + + @validate_hf_hub_args + def list_liked_repos( + self, + user: Optional[str] = None, + *, + token: Union[bool, str, None] = None, + ) -> UserLikes: + """ + List all public repos liked by a user on huggingface.co. + + This list is public so token is optional. If `user` is not passed, it defaults to + the logged in user. + + See also [`like`] and [`unlike`]. + + Args: + user (`str`, *optional*): + Name of the user for which you want to fetch the likes. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`UserLikes`]: object containing the user name and 3 lists of repo ids (1 for + models, 1 for datasets and 1 for Spaces). + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If `user` is not passed and no token found (either from argument or from machine). + + Example: + ```python + >>> from huggingface_hub import list_liked_repos + + >>> likes = list_liked_repos("julien-c") + + >>> likes.user + "julien-c" + + >>> likes.models + ["osanseviero/streamlit_1.15", "Xhaheen/ChatGPT_HF", ...] + ``` + """ + # User is either provided explicitly or retrieved from current token. + if user is None: + me = self.whoami(token=token) + if me["type"] == "user": + user = me["name"] + else: + raise ValueError( + "Cannot list liked repos. You must provide a 'user' as input or be logged in as a user." + ) + + path = f"{self.endpoint}/api/users/{user}/likes" + headers = self._build_hf_headers(token=token) + + likes = list(paginate(path, params={}, headers=headers)) + # Looping over a list of items similar to: + # { + # 'createdAt': '2021-09-09T21:53:27.000Z', + # 'repo': { + # 'name': 'PaddlePaddle/PaddleOCR', + # 'type': 'space' + # } + # } + # Let's loop 3 times over the received list. Less efficient but more straightforward to read. + return UserLikes( + user=user, + total=len(likes), + models=[like["repo"]["name"] for like in likes if like["repo"]["type"] == "model"], + datasets=[like["repo"]["name"] for like in likes if like["repo"]["type"] == "dataset"], + spaces=[like["repo"]["name"] for like in likes if like["repo"]["type"] == "space"], + ) + + @validate_hf_hub_args + def list_repo_likers( + self, + repo_id: str, + *, + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> Iterable[User]: + """ + List all users who liked a given repo on the hugging Face Hub. + + See also [`like`] and [`list_liked_repos`]. + + Args: + repo_id (`str`): + The repository to retrieve . Example: `"user/my-cool-model"`. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + + Returns: + `Iterable[User]`: an iterable of [`huggingface_hub.hf_api.User`] objects. + """ + + # Construct the API endpoint + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + path = f"{self.endpoint}/api/{repo_type}s/{repo_id}/likers" + for liker in paginate(path, params={}, headers=self._build_hf_headers(token=token)): + yield User(username=liker["user"], fullname=liker["fullname"], avatar_url=liker["avatarUrl"]) + + @validate_hf_hub_args + def model_info( + self, + repo_id: str, + *, + revision: Optional[str] = None, + timeout: Optional[float] = None, + securityStatus: Optional[bool] = None, + files_metadata: bool = False, + expand: Optional[List[ExpandModelProperty_T]] = None, + token: Union[bool, str, None] = None, + ) -> ModelInfo: + """ + Get info on one specific model on huggingface.co + + Model can be private if you pass an acceptable token or are logged in. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + revision (`str`, *optional*): + The revision of the model repository from which to get the + information. + timeout (`float`, *optional*): + Whether to set a timeout for the request to the Hub. + securityStatus (`bool`, *optional*): + Whether to retrieve the security status from the model + repository as well. The security status will be returned in the `security_repo_status` field. + files_metadata (`bool`, *optional*): + Whether or not to retrieve metadata for files in the repository + (size, LFS metadata, etc). Defaults to `False`. + expand (`List[ExpandModelProperty_T]`, *optional*): + List properties to return in the response. When used, only the properties in the list will be returned. + This parameter cannot be used if `securityStatus` or `files_metadata` are passed. + Possible values are `"author"`, `"baseModels"`, `"cardData"`, `"childrenModelCount"`, `"config"`, `"createdAt"`, `"disabled"`, `"downloads"`, `"downloadsAllTime"`, `"gated"`, `"gguf"`, `"inference"`, `"lastModified"`, `"library_name"`, `"likes"`, `"mask_token"`, `"model-index"`, `"pipeline_tag"`, `"private"`, `"safetensors"`, `"sha"`, `"siblings"`, `"spaces"`, `"tags"`, `"transformersInfo"`, `"trendingScore"` and `"widgetData"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`huggingface_hub.hf_api.ModelInfo`]: The model repository information. + + + + Raises the following errors: + + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + - [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + + + """ + if expand and (securityStatus or files_metadata): + raise ValueError("`expand` cannot be used if `securityStatus` or `files_metadata` are set.") + + headers = self._build_hf_headers(token=token) + path = ( + f"{self.endpoint}/api/models/{repo_id}" + if revision is None + else (f"{self.endpoint}/api/models/{repo_id}/revision/{quote(revision, safe='')}") + ) + params: Dict = {} + if securityStatus: + params["securityStatus"] = True + if files_metadata: + params["blobs"] = True + if expand: + params["expand"] = expand + r = get_session().get(path, headers=headers, timeout=timeout, params=params) + hf_raise_for_status(r) + data = r.json() + return ModelInfo(**data) + + @validate_hf_hub_args + def dataset_info( + self, + repo_id: str, + *, + revision: Optional[str] = None, + timeout: Optional[float] = None, + files_metadata: bool = False, + expand: Optional[List[ExpandDatasetProperty_T]] = None, + token: Union[bool, str, None] = None, + ) -> DatasetInfo: + """ + Get info on one specific dataset on huggingface.co. + + Dataset can be private if you pass an acceptable token. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + revision (`str`, *optional*): + The revision of the dataset repository from which to get the + information. + timeout (`float`, *optional*): + Whether to set a timeout for the request to the Hub. + files_metadata (`bool`, *optional*): + Whether or not to retrieve metadata for files in the repository + (size, LFS metadata, etc). Defaults to `False`. + expand (`List[ExpandDatasetProperty_T]`, *optional*): + List properties to return in the response. When used, only the properties in the list will be returned. + This parameter cannot be used if `files_metadata` is passed. + Possible values are `"author"`, `"cardData"`, `"citation"`, `"createdAt"`, `"disabled"`, `"description"`, `"downloads"`, `"downloadsAllTime"`, `"gated"`, `"lastModified"`, `"likes"`, `"paperswithcode_id"`, `"private"`, `"siblings"`, `"sha"`, `"tags"` and `"trendingScore"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`hf_api.DatasetInfo`]: The dataset repository information. + + + + Raises the following errors: + + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + - [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + + + """ + if expand and files_metadata: + raise ValueError("`expand` cannot be used if `files_metadata` is set.") + + headers = self._build_hf_headers(token=token) + path = ( + f"{self.endpoint}/api/datasets/{repo_id}" + if revision is None + else (f"{self.endpoint}/api/datasets/{repo_id}/revision/{quote(revision, safe='')}") + ) + params: Dict = {} + if files_metadata: + params["blobs"] = True + if expand: + params["expand"] = expand + + r = get_session().get(path, headers=headers, timeout=timeout, params=params) + hf_raise_for_status(r) + data = r.json() + return DatasetInfo(**data) + + @validate_hf_hub_args + def space_info( + self, + repo_id: str, + *, + revision: Optional[str] = None, + timeout: Optional[float] = None, + files_metadata: bool = False, + expand: Optional[List[ExpandModelProperty_T]] = None, + token: Union[bool, str, None] = None, + ) -> SpaceInfo: + """ + Get info on one specific Space on huggingface.co. + + Space can be private if you pass an acceptable token. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + revision (`str`, *optional*): + The revision of the space repository from which to get the + information. + timeout (`float`, *optional*): + Whether to set a timeout for the request to the Hub. + files_metadata (`bool`, *optional*): + Whether or not to retrieve metadata for files in the repository + (size, LFS metadata, etc). Defaults to `False`. + expand (`List[ExpandSpaceProperty_T]`, *optional*): + List properties to return in the response. When used, only the properties in the list will be returned. + This parameter cannot be used if `full` is passed. + Possible values are `"author"`, `"cardData"`, `"createdAt"`, `"datasets"`, `"disabled"`, `"lastModified"`, `"likes"`, `"models"`, `"private"`, `"runtime"`, `"sdk"`, `"siblings"`, `"sha"`, `"subdomain"`, `"tags"` and `"trendingScore"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`~hf_api.SpaceInfo`]: The space repository information. + + + + Raises the following errors: + + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + - [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + + + """ + if expand and files_metadata: + raise ValueError("`expand` cannot be used if `files_metadata` is set.") + + headers = self._build_hf_headers(token=token) + path = ( + f"{self.endpoint}/api/spaces/{repo_id}" + if revision is None + else (f"{self.endpoint}/api/spaces/{repo_id}/revision/{quote(revision, safe='')}") + ) + params: Dict = {} + if files_metadata: + params["blobs"] = True + if expand: + params["expand"] = expand + + r = get_session().get(path, headers=headers, timeout=timeout, params=params) + hf_raise_for_status(r) + data = r.json() + return SpaceInfo(**data) + + @validate_hf_hub_args + def repo_info( + self, + repo_id: str, + *, + revision: Optional[str] = None, + repo_type: Optional[str] = None, + timeout: Optional[float] = None, + files_metadata: bool = False, + expand: Optional[Union[ExpandModelProperty_T, ExpandDatasetProperty_T, ExpandSpaceProperty_T]] = None, + token: Union[bool, str, None] = None, + ) -> Union[ModelInfo, DatasetInfo, SpaceInfo]: + """ + Get the info object for a given repo of a given type. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + revision (`str`, *optional*): + The revision of the repository from which to get the + information. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if getting repository info from a dataset or a space, + `None` or `"model"` if getting repository info from a model. Default is `None`. + timeout (`float`, *optional*): + Whether to set a timeout for the request to the Hub. + expand (`ExpandModelProperty_T` or `ExpandDatasetProperty_T` or `ExpandSpaceProperty_T`, *optional*): + List properties to return in the response. When used, only the properties in the list will be returned. + This parameter cannot be used if `files_metadata` is passed. + For an exhaustive list of available properties, check out [`model_info`], [`dataset_info`] or [`space_info`]. + files_metadata (`bool`, *optional*): + Whether or not to retrieve metadata for files in the repository + (size, LFS metadata, etc). Defaults to `False`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Union[SpaceInfo, DatasetInfo, ModelInfo]`: The repository information, as a + [`huggingface_hub.hf_api.DatasetInfo`], [`huggingface_hub.hf_api.ModelInfo`] + or [`huggingface_hub.hf_api.SpaceInfo`] object. + + + + Raises the following errors: + + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + - [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + + + """ + if repo_type is None or repo_type == "model": + method = self.model_info + elif repo_type == "dataset": + method = self.dataset_info # type: ignore + elif repo_type == "space": + method = self.space_info # type: ignore + else: + raise ValueError("Unsupported repo type.") + return method( + repo_id, + revision=revision, + token=token, + timeout=timeout, + expand=expand, # type: ignore[arg-type] + files_metadata=files_metadata, + ) + + @validate_hf_hub_args + def repo_exists( + self, + repo_id: str, + *, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> bool: + """ + Checks if a repository exists on the Hugging Face Hub. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if getting repository info from a dataset or a space, + `None` or `"model"` if getting repository info from a model. Default is `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + True if the repository exists, False otherwise. + + Examples: + ```py + >>> from huggingface_hub import repo_exists + >>> repo_exists("google/gemma-7b") + True + >>> repo_exists("google/not-a-repo") + False + ``` + """ + try: + self.repo_info(repo_id=repo_id, repo_type=repo_type, token=token) + return True + except GatedRepoError: + return True # we don't have access but it exists + except RepositoryNotFoundError: + return False + + @validate_hf_hub_args + def revision_exists( + self, + repo_id: str, + revision: str, + *, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> bool: + """ + Checks if a specific revision exists on a repo on the Hugging Face Hub. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + revision (`str`): + The revision of the repository to check. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if getting repository info from a dataset or a space, + `None` or `"model"` if getting repository info from a model. Default is `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + True if the repository and the revision exists, False otherwise. + + Examples: + ```py + >>> from huggingface_hub import revision_exists + >>> revision_exists("google/gemma-7b", "float16") + True + >>> revision_exists("google/gemma-7b", "not-a-revision") + False + ``` + """ + try: + self.repo_info(repo_id=repo_id, revision=revision, repo_type=repo_type, token=token) + return True + except RevisionNotFoundError: + return False + except RepositoryNotFoundError: + return False + + @validate_hf_hub_args + def file_exists( + self, + repo_id: str, + filename: str, + *, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> bool: + """ + Checks if a file exists in a repository on the Hugging Face Hub. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + filename (`str`): + The name of the file to check, for example: + `"config.json"` + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if getting repository info from a dataset or a space, + `None` or `"model"` if getting repository info from a model. Default is `None`. + revision (`str`, *optional*): + The revision of the repository from which to get the information. Defaults to `"main"` branch. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + True if the file exists, False otherwise. + + Examples: + ```py + >>> from huggingface_hub import file_exists + >>> file_exists("bigcode/starcoder", "config.json") + True + >>> file_exists("bigcode/starcoder", "not-a-file") + False + >>> file_exists("bigcode/not-a-repo", "config.json") + False + ``` + """ + url = hf_hub_url( + repo_id=repo_id, repo_type=repo_type, revision=revision, filename=filename, endpoint=self.endpoint + ) + try: + if token is None: + token = self.token + get_hf_file_metadata(url, token=token) + return True + except GatedRepoError: # raise specifically on gated repo + raise + except (RepositoryNotFoundError, EntryNotFoundError, RevisionNotFoundError): + return False + + @validate_hf_hub_args + def list_repo_files( + self, + repo_id: str, + *, + revision: Optional[str] = None, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> List[str]: + """ + Get the list of files in a given repo. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated by a `/`. + revision (`str`, *optional*): + The revision of the model repository from which to get the information. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or space, `None` or `"model"` if uploading to + a model. Default is `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `List[str]`: the list of files in a given repository. + """ + return [ + f.rfilename + for f in self.list_repo_tree( + repo_id=repo_id, recursive=True, revision=revision, repo_type=repo_type, token=token + ) + if isinstance(f, RepoFile) + ] + + @validate_hf_hub_args + def list_repo_tree( + self, + repo_id: str, + path_in_repo: Optional[str] = None, + *, + recursive: bool = False, + expand: bool = False, + revision: Optional[str] = None, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> Iterable[Union[RepoFile, RepoFolder]]: + """ + List a repo tree's files and folders and get information about them. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated by a `/`. + path_in_repo (`str`, *optional*): + Relative path of the tree (folder) in the repo, for example: + `"checkpoints/1fec34a/results"`. Will default to the root tree (folder) of the repository. + recursive (`bool`, *optional*, defaults to `False`): + Whether to list tree's files and folders recursively. + expand (`bool`, *optional*, defaults to `False`): + Whether to fetch more information about the tree's files and folders (e.g. last commit and files' security scan results). This + operation is more expensive for the server so only 50 results are returned per page (instead of 1000). + As pagination is implemented in `huggingface_hub`, this is transparent for you except for the time it + takes to get the results. + revision (`str`, *optional*): + The revision of the repository from which to get the tree. Defaults to `"main"` branch. + repo_type (`str`, *optional*): + The type of the repository from which to get the tree (`"model"`, `"dataset"` or `"space"`. + Defaults to `"model"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[Union[RepoFile, RepoFolder]]`: + The information about the tree's files and folders, as an iterable of [`RepoFile`] and [`RepoFolder`] objects. The order of the files and folders is + not guaranteed. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private but not authenticated or repo + does not exist. + [`~utils.RevisionNotFoundError`]: + If revision is not found (error 404) on the repo. + [`~utils.EntryNotFoundError`]: + If the tree (folder) does not exist (error 404) on the repo. + + Examples: + + Get information about a repo's tree. + ```py + >>> from huggingface_hub import list_repo_tree + >>> repo_tree = list_repo_tree("lysandre/arxiv-nlp") + >>> repo_tree + + >>> list(repo_tree) + [ + RepoFile(path='.gitattributes', size=391, blob_id='ae8c63daedbd4206d7d40126955d4e6ab1c80f8f', lfs=None, last_commit=None, security=None), + RepoFile(path='README.md', size=391, blob_id='43bd404b159de6fba7c2f4d3264347668d43af25', lfs=None, last_commit=None, security=None), + RepoFile(path='config.json', size=554, blob_id='2f9618c3a19b9a61add74f70bfb121335aeef666', lfs=None, last_commit=None, security=None), + RepoFile( + path='flax_model.msgpack', size=497764107, blob_id='8095a62ccb4d806da7666fcda07467e2d150218e', + lfs={'size': 497764107, 'sha256': 'd88b0d6a6ff9c3f8151f9d3228f57092aaea997f09af009eefd7373a77b5abb9', 'pointer_size': 134}, last_commit=None, security=None + ), + RepoFile(path='merges.txt', size=456318, blob_id='226b0752cac7789c48f0cb3ec53eda48b7be36cc', lfs=None, last_commit=None, security=None), + RepoFile( + path='pytorch_model.bin', size=548123560, blob_id='64eaa9c526867e404b68f2c5d66fd78e27026523', + lfs={'size': 548123560, 'sha256': '9be78edb5b928eba33aa88f431551348f7466ba9f5ef3daf1d552398722a5436', 'pointer_size': 134}, last_commit=None, security=None + ), + RepoFile(path='vocab.json', size=898669, blob_id='b00361fece0387ca34b4b8b8539ed830d644dbeb', lfs=None, last_commit=None, security=None)] + ] + ``` + + Get even more information about a repo's tree (last commit and files' security scan results) + ```py + >>> from huggingface_hub import list_repo_tree + >>> repo_tree = list_repo_tree("prompthero/openjourney-v4", expand=True) + >>> list(repo_tree) + [ + RepoFolder( + path='feature_extractor', + tree_id='aa536c4ea18073388b5b0bc791057a7296a00398', + last_commit={ + 'oid': '47b62b20b20e06b9de610e840282b7e6c3d51190', + 'title': 'Upload diffusers weights (#48)', + 'date': datetime.datetime(2023, 3, 21, 9, 5, 27, tzinfo=datetime.timezone.utc) + } + ), + RepoFolder( + path='safety_checker', + tree_id='65aef9d787e5557373fdf714d6c34d4fcdd70440', + last_commit={ + 'oid': '47b62b20b20e06b9de610e840282b7e6c3d51190', + 'title': 'Upload diffusers weights (#48)', + 'date': datetime.datetime(2023, 3, 21, 9, 5, 27, tzinfo=datetime.timezone.utc) + } + ), + RepoFile( + path='model_index.json', + size=582, + blob_id='d3d7c1e8c3e78eeb1640b8e2041ee256e24c9ee1', + lfs=None, + last_commit={ + 'oid': 'b195ed2d503f3eb29637050a886d77bd81d35f0e', + 'title': 'Fix deprecation warning by changing `CLIPFeatureExtractor` to `CLIPImageProcessor`. (#54)', + 'date': datetime.datetime(2023, 5, 15, 21, 41, 59, tzinfo=datetime.timezone.utc) + }, + security={ + 'safe': True, + 'av_scan': {'virusFound': False, 'virusNames': None}, + 'pickle_import_scan': None + } + ) + ... + ] + ``` + """ + repo_type = repo_type or constants.REPO_TYPE_MODEL + revision = quote(revision, safe="") if revision is not None else constants.DEFAULT_REVISION + headers = self._build_hf_headers(token=token) + + encoded_path_in_repo = "/" + quote(path_in_repo, safe="") if path_in_repo else "" + tree_url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/tree/{revision}{encoded_path_in_repo}" + for path_info in paginate(path=tree_url, headers=headers, params={"recursive": recursive, "expand": expand}): + yield (RepoFile(**path_info) if path_info["type"] == "file" else RepoFolder(**path_info)) + + @validate_hf_hub_args + def list_repo_refs( + self, + repo_id: str, + *, + repo_type: Optional[str] = None, + include_pull_requests: bool = False, + token: Union[str, bool, None] = None, + ) -> GitRefs: + """ + Get the list of refs of a given repo (both tags and branches). + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if listing refs from a dataset or a Space, + `None` or `"model"` if listing from a model. Default is `None`. + include_pull_requests (`bool`, *optional*): + Whether to include refs from pull requests in the list. Defaults to `False`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Example: + ```py + >>> from huggingface_hub import HfApi + >>> api = HfApi() + >>> api.list_repo_refs("gpt2") + GitRefs(branches=[GitRefInfo(name='main', ref='refs/heads/main', target_commit='e7da7f221d5bf496a48136c0cd264e630fe9fcc8')], converts=[], tags=[]) + + >>> api.list_repo_refs("bigcode/the-stack", repo_type='dataset') + GitRefs( + branches=[ + GitRefInfo(name='main', ref='refs/heads/main', target_commit='18edc1591d9ce72aa82f56c4431b3c969b210ae3'), + GitRefInfo(name='v1.1.a1', ref='refs/heads/v1.1.a1', target_commit='f9826b862d1567f3822d3d25649b0d6d22ace714') + ], + converts=[], + tags=[ + GitRefInfo(name='v1.0', ref='refs/tags/v1.0', target_commit='c37a8cd1e382064d8aced5e05543c5f7753834da') + ] + ) + ``` + + Returns: + [`GitRefs`]: object containing all information about branches and tags for a + repo on the Hub. + """ + repo_type = repo_type or constants.REPO_TYPE_MODEL + response = get_session().get( + f"{self.endpoint}/api/{repo_type}s/{repo_id}/refs", + headers=self._build_hf_headers(token=token), + params={"include_prs": 1} if include_pull_requests else {}, + ) + hf_raise_for_status(response) + data = response.json() + + def _format_as_git_ref_info(item: Dict) -> GitRefInfo: + return GitRefInfo(name=item["name"], ref=item["ref"], target_commit=item["targetCommit"]) + + return GitRefs( + branches=[_format_as_git_ref_info(item) for item in data["branches"]], + converts=[_format_as_git_ref_info(item) for item in data["converts"]], + tags=[_format_as_git_ref_info(item) for item in data["tags"]], + pull_requests=[_format_as_git_ref_info(item) for item in data["pullRequests"]] + if include_pull_requests + else None, + ) + + @validate_hf_hub_args + def list_repo_commits( + self, + repo_id: str, + *, + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + revision: Optional[str] = None, + formatted: bool = False, + ) -> List[GitCommitInfo]: + """ + Get the list of commits of a given revision for a repo on the Hub. + + Commits are sorted by date (last commit first). + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated by a `/`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if listing commits from a dataset or a Space, `None` or `"model"` if + listing from a model. Default is `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + formatted (`bool`): + Whether to return the HTML-formatted title and description of the commits. Defaults to False. + + Example: + ```py + >>> from huggingface_hub import HfApi + >>> api = HfApi() + + # Commits are sorted by date (last commit first) + >>> initial_commit = api.list_repo_commits("gpt2")[-1] + + # Initial commit is always a system commit containing the `.gitattributes` file. + >>> initial_commit + GitCommitInfo( + commit_id='9b865efde13a30c13e0a33e536cf3e4a5a9d71d8', + authors=['system'], + created_at=datetime.datetime(2019, 2, 18, 10, 36, 15, tzinfo=datetime.timezone.utc), + title='initial commit', + message='', + formatted_title=None, + formatted_message=None + ) + + # Create an empty branch by deriving from initial commit + >>> api.create_branch("gpt2", "new_empty_branch", revision=initial_commit.commit_id) + ``` + + Returns: + List[[`GitCommitInfo`]]: list of objects containing information about the commits for a repo on the Hub. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private but not authenticated or repo + does not exist. + [`~utils.RevisionNotFoundError`]: + If revision is not found (error 404) on the repo. + """ + repo_type = repo_type or constants.REPO_TYPE_MODEL + revision = quote(revision, safe="") if revision is not None else constants.DEFAULT_REVISION + + # Paginate over results and return the list of commits. + return [ + GitCommitInfo( + commit_id=item["id"], + authors=[author["user"] for author in item["authors"]], + created_at=parse_datetime(item["date"]), + title=item["title"], + message=item["message"], + formatted_title=item.get("formatted", {}).get("title"), + formatted_message=item.get("formatted", {}).get("message"), + ) + for item in paginate( + f"{self.endpoint}/api/{repo_type}s/{repo_id}/commits/{revision}", + headers=self._build_hf_headers(token=token), + params={"expand[]": "formatted"} if formatted else {}, + ) + ] + + @validate_hf_hub_args + def get_paths_info( + self, + repo_id: str, + paths: Union[List[str], str], + *, + expand: bool = False, + revision: Optional[str] = None, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> List[Union[RepoFile, RepoFolder]]: + """ + Get information about a repo's paths. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated by a `/`. + paths (`Union[List[str], str]`, *optional*): + The paths to get information about. If a path do not exist, it is ignored without raising + an exception. + expand (`bool`, *optional*, defaults to `False`): + Whether to fetch more information about the paths (e.g. last commit and files' security scan results). This + operation is more expensive for the server so only 50 results are returned per page (instead of 1000). + As pagination is implemented in `huggingface_hub`, this is transparent for you except for the time it + takes to get the results. + revision (`str`, *optional*): + The revision of the repository from which to get the information. Defaults to `"main"` branch. + repo_type (`str`, *optional*): + The type of the repository from which to get the information (`"model"`, `"dataset"` or `"space"`. + Defaults to `"model"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `List[Union[RepoFile, RepoFolder]]`: + The information about the paths, as a list of [`RepoFile`] and [`RepoFolder`] objects. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private but not authenticated or repo + does not exist. + [`~utils.RevisionNotFoundError`]: + If revision is not found (error 404) on the repo. + + Example: + ```py + >>> from huggingface_hub import get_paths_info + >>> paths_info = get_paths_info("allenai/c4", ["README.md", "en"], repo_type="dataset") + >>> paths_info + [ + RepoFile(path='README.md', size=2379, blob_id='f84cb4c97182890fc1dbdeaf1a6a468fd27b4fff', lfs=None, last_commit=None, security=None), + RepoFolder(path='en', tree_id='dc943c4c40f53d02b31ced1defa7e5f438d5862e', last_commit=None) + ] + ``` + """ + repo_type = repo_type or constants.REPO_TYPE_MODEL + revision = quote(revision, safe="") if revision is not None else constants.DEFAULT_REVISION + headers = self._build_hf_headers(token=token) + + response = get_session().post( + f"{self.endpoint}/api/{repo_type}s/{repo_id}/paths-info/{revision}", + data={ + "paths": paths if isinstance(paths, list) else [paths], + "expand": expand, + }, + headers=headers, + ) + hf_raise_for_status(response) + paths_info = response.json() + return [ + RepoFile(**path_info) if path_info["type"] == "file" else RepoFolder(**path_info) + for path_info in paths_info + ] + + @validate_hf_hub_args + def super_squash_history( + self, + repo_id: str, + *, + branch: Optional[str] = None, + commit_message: Optional[str] = None, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ) -> None: + """Squash commit history on a branch for a repo on the Hub. + + Squashing the repo history is useful when you know you'll make hundreds of commits and you don't want to + clutter the history. Squashing commits can only be performed from the head of a branch. + + + + Once squashed, the commit history cannot be retrieved. This is a non-revertible operation. + + + + + + Once the history of a branch has been squashed, it is not possible to merge it back into another branch since + their history will have diverged. + + + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated by a `/`. + branch (`str`, *optional*): + The branch to squash. Defaults to the head of the `"main"` branch. + commit_message (`str`, *optional*): + The commit message to use for the squashed commit. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if listing commits from a dataset or a Space, `None` or `"model"` if + listing from a model. Default is `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private but not authenticated or repo + does not exist. + [`~utils.RevisionNotFoundError`]: + If the branch to squash cannot be found. + [`~utils.BadRequestError`]: + If invalid reference for a branch. You cannot squash history on tags. + + Example: + ```py + >>> from huggingface_hub import HfApi + >>> api = HfApi() + + # Create repo + >>> repo_id = api.create_repo("test-squash").repo_id + + # Make a lot of commits. + >>> api.upload_file(repo_id=repo_id, path_in_repo="file.txt", path_or_fileobj=b"content") + >>> api.upload_file(repo_id=repo_id, path_in_repo="lfs.bin", path_or_fileobj=b"content") + >>> api.upload_file(repo_id=repo_id, path_in_repo="file.txt", path_or_fileobj=b"another_content") + + # Squash history + >>> api.super_squash_history(repo_id=repo_id) + ``` + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + if repo_type not in constants.REPO_TYPES: + raise ValueError("Invalid repo type") + if branch is None: + branch = constants.DEFAULT_REVISION + + # Prepare request + url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/super-squash/{branch}" + headers = self._build_hf_headers(token=token) + commit_message = commit_message or f"Super-squash branch '{branch}' using huggingface_hub" + + # Super-squash + response = get_session().post(url=url, headers=headers, json={"message": commit_message}) + hf_raise_for_status(response) + + @validate_hf_hub_args + def create_repo( + self, + repo_id: str, + *, + token: Union[str, bool, None] = None, + private: bool = False, + repo_type: Optional[str] = None, + exist_ok: bool = False, + resource_group_id: Optional[str] = None, + space_sdk: Optional[str] = None, + space_hardware: Optional[SpaceHardware] = None, + space_storage: Optional[SpaceStorage] = None, + space_sleep_time: Optional[int] = None, + space_secrets: Optional[List[Dict[str, str]]] = None, + space_variables: Optional[List[Dict[str, str]]] = None, + ) -> RepoUrl: + """Create an empty repo on the HuggingFace Hub. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + private (`bool`, *optional*, defaults to `False`): + Whether the model repo should be private. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + exist_ok (`bool`, *optional*, defaults to `False`): + If `True`, do not raise an error if repo already exists. + resource_group_id (`str`, *optional*): + Resource group in which to create the repo. Resource groups is only available for organizations and + allow to define which members of the organization can access the resource. The ID of a resource group + can be found in the URL of the resource's page on the Hub (e.g. `"66670e5163145ca562cb1988"`). + To learn more about resource groups, see https://huggingface.co/docs/hub/en/security-resource-groups. + space_sdk (`str`, *optional*): + Choice of SDK to use if repo_type is "space". Can be "streamlit", "gradio", "docker", or "static". + space_hardware (`SpaceHardware` or `str`, *optional*): + Choice of Hardware if repo_type is "space". See [`SpaceHardware`] for a complete list. + space_storage (`SpaceStorage` or `str`, *optional*): + Choice of persistent storage tier. Example: `"small"`. See [`SpaceStorage`] for a complete list. + space_sleep_time (`int`, *optional*): + Number of seconds of inactivity to wait before a Space is put to sleep. Set to `-1` if you don't want + your Space to sleep (default behavior for upgraded hardware). For free hardware, you can't configure + the sleep time (value is fixed to 48 hours of inactivity). + See https://huggingface.co/docs/hub/spaces-gpus#sleep-time for more details. + space_secrets (`List[Dict[str, str]]`, *optional*): + A list of secret keys to set in your Space. Each item is in the form `{"key": ..., "value": ..., "description": ...}` where description is optional. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets. + space_variables (`List[Dict[str, str]]`, *optional*): + A list of public environment variables to set in your Space. Each item is in the form `{"key": ..., "value": ..., "description": ...}` where description is optional. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets-and-environment-variables. + + Returns: + [`RepoUrl`]: URL to the newly created repo. Value is a subclass of `str` containing + attributes like `endpoint`, `repo_type` and `repo_id`. + """ + organization, name = repo_id.split("/") if "/" in repo_id else (None, repo_id) + + path = f"{self.endpoint}/api/repos/create" + + if repo_type not in constants.REPO_TYPES: + raise ValueError("Invalid repo type") + + json: Dict[str, Any] = {"name": name, "organization": organization, "private": private} + if repo_type is not None: + json["type"] = repo_type + if repo_type == "space": + if space_sdk is None: + raise ValueError( + "No space_sdk provided. `create_repo` expects space_sdk to be one" + f" of {constants.SPACES_SDK_TYPES} when repo_type is 'space'`" + ) + if space_sdk not in constants.SPACES_SDK_TYPES: + raise ValueError(f"Invalid space_sdk. Please choose one of {constants.SPACES_SDK_TYPES}.") + json["sdk"] = space_sdk + + if space_sdk is not None and repo_type != "space": + warnings.warn("Ignoring provided space_sdk because repo_type is not 'space'.") + + function_args = [ + "space_hardware", + "space_storage", + "space_sleep_time", + "space_secrets", + "space_variables", + ] + json_keys = ["hardware", "storageTier", "sleepTimeSeconds", "secrets", "variables"] + values = [space_hardware, space_storage, space_sleep_time, space_secrets, space_variables] + + if repo_type == "space": + json.update({k: v for k, v in zip(json_keys, values) if v is not None}) + else: + provided_space_args = [key for key, value in zip(function_args, values) if value is not None] + + if provided_space_args: + warnings.warn(f"Ignoring provided {', '.join(provided_space_args)} because repo_type is not 'space'.") + + if getattr(self, "_lfsmultipartthresh", None): + # Testing purposes only. + # See https://github.com/huggingface/huggingface_hub/pull/733/files#r820604472 + json["lfsmultipartthresh"] = self._lfsmultipartthresh # type: ignore + + if resource_group_id is not None: + json["resourceGroupId"] = resource_group_id + + headers = self._build_hf_headers(token=token) + while True: + r = get_session().post(path, headers=headers, json=json) + if r.status_code == 409 and "Cannot create repo: another conflicting operation is in progress" in r.text: + # Since https://github.com/huggingface/moon-landing/pull/7272 (private repo), it is not possible to + # concurrently create repos on the Hub for a same user. This is rarely an issue, except when running + # tests. To avoid any inconvenience, we retry to create the repo for this specific error. + # NOTE: This could have being fixed directly in the tests but adding it here should fixed CIs for all + # dependent libraries. + # NOTE: If a fix is implemented server-side, we should be able to remove this retry mechanism. + logger.debug("Create repo failed due to a concurrency issue. Retrying...") + continue + break + + try: + hf_raise_for_status(r) + except HTTPError as err: + if exist_ok and err.response.status_code == 409: + # Repo already exists and `exist_ok=True` + pass + elif exist_ok and err.response.status_code == 403: + # No write permission on the namespace but repo might already exist + try: + self.repo_info(repo_id=repo_id, repo_type=repo_type, token=token) + if repo_type is None or repo_type == constants.REPO_TYPE_MODEL: + return RepoUrl(f"{self.endpoint}/{repo_id}") + return RepoUrl(f"{self.endpoint}/{repo_type}/{repo_id}") + except HfHubHTTPError: + raise err + else: + raise + + d = r.json() + return RepoUrl(d["url"], endpoint=self.endpoint) + + @validate_hf_hub_args + def delete_repo( + self, + repo_id: str, + *, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + missing_ok: bool = False, + ) -> None: + """ + Delete a repo from the HuggingFace Hub. CAUTION: this is irreversible. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. + missing_ok (`bool`, *optional*, defaults to `False`): + If `True`, do not raise an error if repo does not exist. + + Raises: + [`~utils.RepositoryNotFoundError`] + If the repository to delete from cannot be found and `missing_ok` is set to False (default). + """ + organization, name = repo_id.split("/") if "/" in repo_id else (None, repo_id) + + path = f"{self.endpoint}/api/repos/delete" + + if repo_type not in constants.REPO_TYPES: + raise ValueError("Invalid repo type") + + json = {"name": name, "organization": organization} + if repo_type is not None: + json["type"] = repo_type + + headers = self._build_hf_headers(token=token) + r = get_session().delete(path, headers=headers, json=json) + try: + hf_raise_for_status(r) + except RepositoryNotFoundError: + if not missing_ok: + raise + + @_deprecate_method(version="0.29", message="Please use `update_repo_settings` instead.") + @validate_hf_hub_args + def update_repo_visibility( + self, + repo_id: str, + private: bool = False, + *, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + ) -> Dict[str, bool]: + """Update the visibility setting of a repository. + + Deprecated. Use `update_repo_settings` instead. + + Args: + repo_id (`str`, *optional*): + A namespace (user or an organization) and a repo name separated by a `/`. + private (`bool`, *optional*, defaults to `False`): + Whether the model repo should be private. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + + Returns: + The HTTP response in json. + + + + Raises the following errors: + + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL # default repo type + + r = get_session().put( + url=f"{self.endpoint}/api/{repo_type}s/{repo_id}/settings", + headers=self._build_hf_headers(token=token), + json={"private": private}, + ) + hf_raise_for_status(r) + return r.json() + + @validate_hf_hub_args + def update_repo_settings( + self, + repo_id: str, + *, + gated: Optional[Literal["auto", "manual", False]] = None, + private: Optional[bool] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + ) -> None: + """ + Update the settings of a repository, including gated access and visibility. + + To give more control over how repos are used, the Hub allows repo authors to enable + access requests for their repos, and also to set the visibility of the repo to private. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated by a /. + gated (`Literal["auto", "manual", False]`, *optional*): + The gated status for the repository. If set to `None` (default), the `gated` setting of the repository won't be updated. + * "auto": The repository is gated, and access requests are automatically approved or denied based on predefined criteria. + * "manual": The repository is gated, and access requests require manual approval. + * False : The repository is not gated, and anyone can access it. + private (`bool`, *optional*): + Whether the model repo should be private. + token (`Union[str, bool, None]`, *optional*): + A valid user access token (string). Defaults to the locally saved token, + which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass False. + repo_type (`str`, *optional*): + The type of the repository to update settings from (`"model"`, `"dataset"` or `"space"`). + Defaults to `"model"`. + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If gated is not one of "auto", "manual", or False. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If repo_type is not one of the values in constants.REPO_TYPES. + [`~utils.HfHubHTTPError`]: + If the request to the Hugging Face Hub API fails. + [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + """ + + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL # default repo type + + # Check if both gated and private are None + if gated is None and private is None: + raise ValueError("At least one of 'gated' or 'private' must be provided.") + + # Build headers + headers = self._build_hf_headers(token=token) + + # Prepare the JSON payload for the PUT request + payload: Dict = {} + + if gated is not None: + if gated not in ["auto", "manual", False]: + raise ValueError(f"Invalid gated status, must be one of 'auto', 'manual', or False. Got '{gated}'.") + payload["gated"] = gated + + if private is not None: + payload["private"] = private + + r = get_session().put( + url=f"{self.endpoint}/api/{repo_type}s/{repo_id}/settings", + headers=headers, + json=payload, + ) + hf_raise_for_status(r) + + def move_repo( + self, + from_id: str, + to_id: str, + *, + repo_type: Optional[str] = None, + token: Union[str, bool, None] = None, + ): + """ + Moving a repository from namespace1/repo_name1 to namespace2/repo_name2 + + Note there are certain limitations. For more information about moving + repositories, please see + https://hf.co/docs/hub/repositories-settings#renaming-or-transferring-a-repo. + + Args: + from_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. Original repository identifier. + to_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. Final repository identifier. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + + + Raises the following errors: + + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + if len(from_id.split("/")) != 2: + raise ValueError(f"Invalid repo_id: {from_id}. It should have a namespace (:namespace:/:repo_name:)") + + if len(to_id.split("/")) != 2: + raise ValueError(f"Invalid repo_id: {to_id}. It should have a namespace (:namespace:/:repo_name:)") + + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL # Hub won't accept `None`. + + json = {"fromRepo": from_id, "toRepo": to_id, "type": repo_type} + + path = f"{self.endpoint}/api/repos/move" + headers = self._build_hf_headers(token=token) + r = get_session().post(path, headers=headers, json=json) + try: + hf_raise_for_status(r) + except HfHubHTTPError as e: + e.append_to_message( + "\nFor additional documentation please see" + " https://hf.co/docs/hub/repositories-settings#renaming-or-transferring-a-repo." + ) + raise + + @overload + def create_commit( # type: ignore + self, + repo_id: str, + operations: Iterable[CommitOperation], + *, + commit_message: str, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + num_threads: int = 5, + parent_commit: Optional[str] = None, + run_as_future: Literal[False] = ..., + ) -> CommitInfo: ... + + @overload + def create_commit( + self, + repo_id: str, + operations: Iterable[CommitOperation], + *, + commit_message: str, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + num_threads: int = 5, + parent_commit: Optional[str] = None, + run_as_future: Literal[True] = ..., + ) -> Future[CommitInfo]: ... + + @validate_hf_hub_args + @future_compatible + def create_commit( + self, + repo_id: str, + operations: Iterable[CommitOperation], + *, + commit_message: str, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + num_threads: int = 5, + parent_commit: Optional[str] = None, + run_as_future: bool = False, + ) -> Union[CommitInfo, Future[CommitInfo]]: + """ + Creates a commit in the given repo, deleting & uploading files as needed. + + + + The input list of `CommitOperation` will be mutated during the commit process. Do not reuse the same objects + for multiple commits. + + + + + + `create_commit` assumes that the repo already exists on the Hub. If you get a + Client error 404, please make sure you are authenticated and that `repo_id` and + `repo_type` are set correctly. If repo does not exist, create it first using + [`~hf_api.create_repo`]. + + + + + + `create_commit` is limited to 25k LFS files and a 1GB payload for regular files. + + + + Args: + repo_id (`str`): + The repository in which the commit will be created, for example: + `"username/custom_transformers"` + + operations (`Iterable` of [`~hf_api.CommitOperation`]): + An iterable of operations to include in the commit, either: + + - [`~hf_api.CommitOperationAdd`] to upload a file + - [`~hf_api.CommitOperationDelete`] to delete a file + - [`~hf_api.CommitOperationCopy`] to copy a file + + Operation objects will be mutated to include information relative to the upload. Do not reuse the + same objects for multiple commits. + + commit_message (`str`): + The summary (first line) of the commit that will be created. + + commit_description (`str`, *optional*): + The description of the commit that will be created + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request with that commit. Defaults to `False`. + If `revision` is not set, PR is opened against the `"main"` branch. If + `revision` is set and is a branch, PR is opened against this branch. If + `revision` is set and is not a branch name (example: a commit oid), an + `RevisionNotFoundError` is returned by the server. + + num_threads (`int`, *optional*): + Number of concurrent threads for uploading files. Defaults to 5. + Setting it to 2 means at most 2 files will be uploaded concurrently. + + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. + Shorthands (7 first characters) are also supported. If specified and `create_pr` is `False`, + the commit will fail if `revision` does not point to `parent_commit`. If specified and `create_pr` + is `True`, the pull request will be created from `parent_commit`. Specifying `parent_commit` + ensures the repo has not changed before committing the changes, and can be especially useful + if the repo is updated / committed to concurrently. + run_as_future (`bool`, *optional*): + Whether or not to run this method in the background. Background jobs are run sequentially without + blocking the main thread. Passing `run_as_future=True` will return a [Future](https://docs.python.org/3/library/concurrent.futures.html#future-objects) + object. Defaults to `False`. + + Returns: + [`CommitInfo`] or `Future`: + Instance of [`CommitInfo`] containing information about the newly created commit (commit hash, commit + url, pr url, commit message,...). If `run_as_future=True` is passed, returns a Future object which will + contain the result when executed. + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If commit message is empty. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If parent commit is not a valid commit OID. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If a README.md file with an invalid metadata section is committed. In this case, the commit will fail + early, before trying to upload any file. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If `create_pr` is `True` and revision is neither `None` nor `"main"`. + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + """ + if parent_commit is not None and not constants.REGEX_COMMIT_OID.fullmatch(parent_commit): + raise ValueError( + f"`parent_commit` is not a valid commit OID. It must match the following regex: {constants.REGEX_COMMIT_OID}" + ) + + if commit_message is None or len(commit_message) == 0: + raise ValueError("`commit_message` can't be empty, please pass a value.") + + commit_description = commit_description if commit_description is not None else "" + repo_type = repo_type if repo_type is not None else constants.REPO_TYPE_MODEL + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + unquoted_revision = revision or constants.DEFAULT_REVISION + revision = quote(unquoted_revision, safe="") + create_pr = create_pr if create_pr is not None else False + + headers = self._build_hf_headers(token=token) + + operations = list(operations) + additions = [op for op in operations if isinstance(op, CommitOperationAdd)] + copies = [op for op in operations if isinstance(op, CommitOperationCopy)] + nb_additions = len(additions) + nb_copies = len(copies) + nb_deletions = len(operations) - nb_additions - nb_copies + + for addition in additions: + if addition._is_committed: + raise ValueError( + f"CommitOperationAdd {addition} has already being committed and cannot be reused. Please create a" + " new CommitOperationAdd object if you want to create a new commit." + ) + + if repo_type != "dataset": + for addition in additions: + if addition.path_in_repo.endswith((".arrow", ".parquet")): + warnings.warn( + f"It seems that you are about to commit a data file ({addition.path_in_repo}) to a {repo_type}" + " repository. You are sure this is intended? If you are trying to upload a dataset, please" + " set `repo_type='dataset'` or `--repo-type=dataset` in a CLI." + ) + + logger.debug( + f"About to commit to the hub: {len(additions)} addition(s), {len(copies)} copie(s) and" + f" {nb_deletions} deletion(s)." + ) + + # If updating a README.md file, make sure the metadata format is valid + # It's better to fail early than to fail after all the files have been uploaded. + for addition in additions: + if addition.path_in_repo == "README.md": + with addition.as_file() as file: + content = file.read().decode() + self._validate_yaml(content, repo_type=repo_type, token=token) + # Skip other additions after `README.md` has been processed + break + + # If updating twice the same file or update then delete a file in a single commit + _warn_on_overwriting_operations(operations) + + self.preupload_lfs_files( + repo_id=repo_id, + additions=additions, + token=token, + repo_type=repo_type, + revision=unquoted_revision, # first-class methods take unquoted revision + create_pr=create_pr, + num_threads=num_threads, + free_memory=False, # do not remove `CommitOperationAdd.path_or_fileobj` on LFS files for "normal" users + ) + + # Remove no-op operations (files that have not changed) + operations_without_no_op = [] + for operation in operations: + if ( + isinstance(operation, CommitOperationAdd) + and operation._remote_oid is not None + and operation._remote_oid == operation._local_oid + ): + # File already exists on the Hub and has not changed: we can skip it. + logger.debug(f"Skipping upload for '{operation.path_in_repo}' as the file has not changed.") + continue + operations_without_no_op.append(operation) + if len(operations) != len(operations_without_no_op): + logger.info( + f"Removing {len(operations) - len(operations_without_no_op)} file(s) from commit that have not changed." + ) + + # Return early if empty commit + if len(operations_without_no_op) == 0: + logger.warning("No files have been modified since last commit. Skipping to prevent empty commit.") + + # Get latest commit info + try: + info = self.repo_info(repo_id=repo_id, repo_type=repo_type, revision=unquoted_revision, token=token) + except RepositoryNotFoundError as e: + e.append_to_message(_CREATE_COMMIT_NO_REPO_ERROR_MESSAGE) + raise + + # Return commit info based on latest commit + url_prefix = self.endpoint + if repo_type is not None and repo_type != constants.REPO_TYPE_MODEL: + url_prefix = f"{url_prefix}/{repo_type}s" + return CommitInfo( + commit_url=f"{url_prefix}/{repo_id}/commit/{info.sha}", + commit_message=commit_message, + commit_description=commit_description, + oid=info.sha, # type: ignore[arg-type] + ) + + files_to_copy = _fetch_files_to_copy( + copies=copies, + repo_type=repo_type, + repo_id=repo_id, + headers=headers, + revision=unquoted_revision, + endpoint=self.endpoint, + ) + commit_payload = _prepare_commit_payload( + operations=operations, + files_to_copy=files_to_copy, + commit_message=commit_message, + commit_description=commit_description, + parent_commit=parent_commit, + ) + commit_url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/commit/{revision}" + + def _payload_as_ndjson() -> Iterable[bytes]: + for item in commit_payload: + yield json.dumps(item).encode() + yield b"\n" + + headers = { + # See https://github.com/huggingface/huggingface_hub/issues/1085#issuecomment-1265208073 + "Content-Type": "application/x-ndjson", + **headers, + } + data = b"".join(_payload_as_ndjson()) + params = {"create_pr": "1"} if create_pr else None + + try: + commit_resp = get_session().post(url=commit_url, headers=headers, data=data, params=params) + hf_raise_for_status(commit_resp, endpoint_name="commit") + except RepositoryNotFoundError as e: + e.append_to_message(_CREATE_COMMIT_NO_REPO_ERROR_MESSAGE) + raise + except EntryNotFoundError as e: + if nb_deletions > 0 and "A file with this name doesn't exist" in str(e): + e.append_to_message( + "\nMake sure to differentiate file and folder paths in delete" + " operations with a trailing '/' or using `is_folder=True/False`." + ) + raise + + # Mark additions as committed (cannot be reused in another commit) + for addition in additions: + addition._is_committed = True + + commit_data = commit_resp.json() + return CommitInfo( + commit_url=commit_data["commitUrl"], + commit_message=commit_message, + commit_description=commit_description, + oid=commit_data["commitOid"], + pr_url=commit_data["pullRequestUrl"] if create_pr else None, + ) + + @experimental + @validate_hf_hub_args + @_deprecate_method( + version="0.27", message="This is an experimental feature. Please use `upload_large_folder` instead." + ) + def create_commits_on_pr( + self, + *, + repo_id: str, + addition_commits: List[List[CommitOperationAdd]], + deletion_commits: List[List[CommitOperationDelete]], + commit_message: str, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + merge_pr: bool = True, + num_threads: int = 5, # TODO: use to multithread uploads + verbose: bool = False, + ) -> str: + """Push changes to the Hub in multiple commits. + + Commits are pushed to a draft PR branch. If the upload fails or gets interrupted, it can be resumed. Progress + is tracked in the PR description. At the end of the process, the PR is set as open and the title is updated to + match the initial commit message. If `merge_pr=True` is passed, the PR is merged automatically. + + All deletion commits are pushed first, followed by the addition commits. The order of the commits is not + guaranteed as we might implement parallel commits in the future. Be sure that your are not updating several + times the same file. + + + + `create_commits_on_pr` is experimental. Its API and behavior is subject to change in the future without prior notice. + + + + + + `create_commits_on_pr` assumes that the repo already exists on the Hub. If you get a Client error 404, please + make sure you are authenticated and that `repo_id` and `repo_type` are set correctly. If repo does not exist, + create it first using [`~hf_api.create_repo`]. + + + + Args: + repo_id (`str`): + The repository in which the commits will be pushed. Example: `"username/my-cool-model"`. + + addition_commits (`List` of `List` of [`~hf_api.CommitOperationAdd`]): + A list containing lists of [`~hf_api.CommitOperationAdd`]. Each sublist will result in a commit on the + PR. + + deletion_commits + A list containing lists of [`~hf_api.CommitOperationDelete`]. Each sublist will result in a commit on + the PR. Deletion commits are pushed before addition commits. + + commit_message (`str`): + The summary (first line) of the commit that will be created. Will also be the title of the PR. + + commit_description (`str`, *optional*): + The description of the commit that will be created. The description will be added to the PR. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or space, `None` or `"model"` if uploading to + a model. Default is `None`. + + merge_pr (`bool`): + If set to `True`, the Pull Request is merged at the end of the process. Defaults to `True`. + + num_threads (`int`, *optional*): + Number of concurrent threads for uploading files. Defaults to 5. + + verbose (`bool`): + If set to `True`, process will run on verbose mode i.e. print information about the ongoing tasks. + Defaults to `False`. + + Returns: + `str`: URL to the created PR. + + Example: + ```python + >>> from huggingface_hub import HfApi, plan_multi_commits + >>> addition_commits, deletion_commits = plan_multi_commits( + ... operations=[ + ... CommitOperationAdd(...), + ... CommitOperationAdd(...), + ... CommitOperationDelete(...), + ... CommitOperationDelete(...), + ... CommitOperationAdd(...), + ... ], + ... ) + >>> HfApi().create_commits_on_pr( + ... repo_id="my-cool-model", + ... addition_commits=addition_commits, + ... deletion_commits=deletion_commits, + ... (...) + ... verbose=True, + ... ) + ``` + + Raises: + [`MultiCommitException`]: + If an unexpected issue occur in the process: empty commits, unexpected commits in a PR, unexpected PR + description, etc. + """ + logger = logging.get_logger(__name__ + ".create_commits_on_pr") + if verbose: + logger.setLevel("INFO") + + # 1. Get strategy ID + logger.info( + f"Will create {len(deletion_commits)} deletion commit(s) and {len(addition_commits)} addition commit(s)," + f" totalling {sum(len(ops) for ops in addition_commits+deletion_commits)} atomic operations." + ) + strategy = MultiCommitStrategy( + addition_commits=[MultiCommitStep(operations=operations) for operations in addition_commits], # type: ignore + deletion_commits=[MultiCommitStep(operations=operations) for operations in deletion_commits], # type: ignore + ) + logger.info(f"Multi-commits strategy with ID {strategy.id}.") + + # 2. Get or create a PR with this strategy ID + for discussion in self.get_repo_discussions(repo_id=repo_id, repo_type=repo_type, token=token): + # search for a draft PR with strategy ID + if discussion.is_pull_request and discussion.status == "draft" and strategy.id in discussion.title: + pr = self.get_discussion_details( + repo_id=repo_id, discussion_num=discussion.num, repo_type=repo_type, token=token + ) + logger.info(f"PR already exists: {pr.url}. Will resume process where it stopped.") + break + else: + # did not find a PR matching the strategy ID + pr = multi_commit_create_pull_request( + self, + repo_id=repo_id, + commit_message=commit_message, + commit_description=commit_description, + strategy=strategy, + token=token, + repo_type=repo_type, + ) + logger.info(f"New PR created: {pr.url}") + + # 3. Parse PR description to check consistency with strategy (e.g. same commits are scheduled) + for event in pr.events: + if isinstance(event, DiscussionComment): + pr_comment = event + break + else: + raise MultiCommitException(f"PR #{pr.num} must have at least 1 comment") + + description_commits = multi_commit_parse_pr_description(pr_comment.content) + if len(description_commits) != len(strategy.all_steps): + raise MultiCommitException( + f"Corrupted multi-commit PR #{pr.num}: got {len(description_commits)} steps in" + f" description but {len(strategy.all_steps)} in strategy." + ) + for step_id in strategy.all_steps: + if step_id not in description_commits: + raise MultiCommitException( + f"Corrupted multi-commit PR #{pr.num}: expected step {step_id} but didn't find" + f" it (have {', '.join(description_commits)})." + ) + + # 4. Retrieve commit history (and check consistency) + commits_on_main_branch = { + commit.commit_id + for commit in self.list_repo_commits( + repo_id=repo_id, repo_type=repo_type, token=token, revision=constants.DEFAULT_REVISION + ) + } + pr_commits = [ + commit + for commit in self.list_repo_commits( + repo_id=repo_id, repo_type=repo_type, token=token, revision=pr.git_reference + ) + if commit.commit_id not in commits_on_main_branch + ] + if len(pr_commits) > 0: + logger.info(f"Found {len(pr_commits)} existing commits on the PR.") + + # At this point `pr_commits` is a list of commits pushed to the PR. We expect all of these commits (if any) to have + # a step_id as title. We raise exception if an unexpected commit has been pushed. + if len(pr_commits) > len(strategy.all_steps): + raise MultiCommitException( + f"Corrupted multi-commit PR #{pr.num}: scheduled {len(strategy.all_steps)} steps but" + f" {len(pr_commits)} commits have already been pushed to the PR." + ) + + # Check which steps are already completed + remaining_additions = {step.id: step for step in strategy.addition_commits} + remaining_deletions = {step.id: step for step in strategy.deletion_commits} + for commit in pr_commits: + if commit.title in remaining_additions: + step = remaining_additions.pop(commit.title) + step.completed = True + elif commit.title in remaining_deletions: + step = remaining_deletions.pop(commit.title) + step.completed = True + + if len(remaining_deletions) > 0 and len(remaining_additions) < len(strategy.addition_commits): + raise MultiCommitException( + f"Corrupted multi-commit PR #{pr.num}: some addition commits have already been pushed to the PR but" + " deletion commits are not all completed yet." + ) + nb_remaining = len(remaining_deletions) + len(remaining_additions) + if len(pr_commits) > 0: + logger.info( + f"{nb_remaining} commits remaining ({len(remaining_deletions)} deletion commits and" + f" {len(remaining_additions)} addition commits)" + ) + + # 5. Push remaining commits to the PR + update description + # TODO: multi-thread this + for step in list(remaining_deletions.values()) + list(remaining_additions.values()): + # Push new commit + self.create_commit( + repo_id=repo_id, + repo_type=repo_type, + token=token, + commit_message=step.id, + revision=pr.git_reference, + num_threads=num_threads, + operations=step.operations, + create_pr=False, + ) + step.completed = True + nb_remaining -= 1 + logger.info(f" step {step.id} completed (still {nb_remaining} to go).") + + # Update PR description + self.edit_discussion_comment( + repo_id=repo_id, + repo_type=repo_type, + token=token, + discussion_num=pr.num, + comment_id=pr_comment.id, + new_content=multi_commit_generate_comment( + commit_message=commit_message, commit_description=commit_description, strategy=strategy + ), + ) + logger.info("All commits have been pushed.") + + # 6. Update PR (and merge) + self.rename_discussion( + repo_id=repo_id, + repo_type=repo_type, + token=token, + discussion_num=pr.num, + new_title=commit_message, + ) + self.change_discussion_status( + repo_id=repo_id, + repo_type=repo_type, + token=token, + discussion_num=pr.num, + new_status="open", + comment=MULTI_COMMIT_PR_COMPLETION_COMMENT_TEMPLATE, + ) + logger.info("PR is now open for reviews.") + + if merge_pr: # User don't want a PR => merge it + try: + self.merge_pull_request( + repo_id=repo_id, + repo_type=repo_type, + token=token, + discussion_num=pr.num, + comment=MULTI_COMMIT_PR_CLOSING_COMMENT_TEMPLATE, + ) + logger.info("PR has been automatically merged (`merge_pr=True` was passed).") + except BadRequestError as error: + if error.server_message is not None and "no associated changes" in error.server_message: + # PR cannot be merged as no changes are associated. We close the PR without merging with a comment to + # explain. + self.change_discussion_status( + repo_id=repo_id, + repo_type=repo_type, + token=token, + discussion_num=pr.num, + comment=MULTI_COMMIT_PR_CLOSE_COMMENT_FAILURE_NO_CHANGES_TEMPLATE, + new_status="closed", + ) + logger.warning("Couldn't merge the PR: no associated changes.") + else: + # PR cannot be merged for another reason (conflicting files for example). We comment the PR to explain + # and re-raise the exception. + self.comment_discussion( + repo_id=repo_id, + repo_type=repo_type, + token=token, + discussion_num=pr.num, + comment=MULTI_COMMIT_PR_CLOSE_COMMENT_FAILURE_BAD_REQUEST_TEMPLATE.format( + error_message=error.server_message + ), + ) + raise MultiCommitException( + f"Couldn't merge Pull Request in multi-commit: {error.server_message}" + ) from error + + return pr.url + + def preupload_lfs_files( + self, + repo_id: str, + additions: Iterable[CommitOperationAdd], + *, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + num_threads: int = 5, + free_memory: bool = True, + gitignore_content: Optional[str] = None, + ): + """Pre-upload LFS files to S3 in preparation on a future commit. + + This method is useful if you are generating the files to upload on-the-fly and you don't want to store them + in memory before uploading them all at once. + + + + This is a power-user method. You shouldn't need to call it directly to make a normal commit. + Use [`create_commit`] directly instead. + + + + + + Commit operations will be mutated during the process. In particular, the attached `path_or_fileobj` will be + removed after the upload to save memory (and replaced by an empty `bytes` object). Do not reuse the same + objects except to pass them to [`create_commit`]. If you don't want to remove the attached content from the + commit operation object, pass `free_memory=False`. + + + + Args: + repo_id (`str`): + The repository in which you will commit the files, for example: `"username/custom_transformers"`. + + operations (`Iterable` of [`CommitOperationAdd`]): + The list of files to upload. Warning: the objects in this list will be mutated to include information + relative to the upload. Do not reuse the same objects for multiple commits. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + The type of repository to upload to (e.g. `"model"` -default-, `"dataset"` or `"space"`). + + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + + create_pr (`boolean`, *optional*): + Whether or not you plan to create a Pull Request with that commit. Defaults to `False`. + + num_threads (`int`, *optional*): + Number of concurrent threads for uploading files. Defaults to 5. + Setting it to 2 means at most 2 files will be uploaded concurrently. + + gitignore_content (`str`, *optional*): + The content of the `.gitignore` file to know which files should be ignored. The order of priority + is to first check if `gitignore_content` is passed, then check if the `.gitignore` file is present + in the list of files to commit and finally default to the `.gitignore` file already hosted on the Hub + (if any). + + Example: + ```py + >>> from huggingface_hub import CommitOperationAdd, preupload_lfs_files, create_commit, create_repo + + >>> repo_id = create_repo("test_preupload").repo_id + + # Generate and preupload LFS files one by one + >>> operations = [] # List of all `CommitOperationAdd` objects that will be generated + >>> for i in range(5): + ... content = ... # generate binary content + ... addition = CommitOperationAdd(path_in_repo=f"shard_{i}_of_5.bin", path_or_fileobj=content) + ... preupload_lfs_files(repo_id, additions=[addition]) # upload + free memory + ... operations.append(addition) + + # Create commit + >>> create_commit(repo_id, operations=operations, commit_message="Commit all shards") + ``` + """ + repo_type = repo_type if repo_type is not None else constants.REPO_TYPE_MODEL + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + revision = quote(revision, safe="") if revision is not None else constants.DEFAULT_REVISION + create_pr = create_pr if create_pr is not None else False + headers = self._build_hf_headers(token=token) + + # Check if a `gitignore` file is being committed to the Hub. + additions = list(additions) + if gitignore_content is None: + for addition in additions: + if addition.path_in_repo == ".gitignore": + with addition.as_file() as f: + gitignore_content = f.read().decode() + break + + # Filter out already uploaded files + new_additions = [addition for addition in additions if not addition._is_uploaded] + + # Check which new files are LFS + try: + _fetch_upload_modes( + additions=new_additions, + repo_type=repo_type, + repo_id=repo_id, + headers=headers, + revision=revision, + endpoint=self.endpoint, + create_pr=create_pr or False, + gitignore_content=gitignore_content, + ) + except RepositoryNotFoundError as e: + e.append_to_message(_CREATE_COMMIT_NO_REPO_ERROR_MESSAGE) + raise + + # Filter out regular files + new_lfs_additions = [addition for addition in new_additions if addition._upload_mode == "lfs"] + + # Filter out files listed in .gitignore + new_lfs_additions_to_upload = [] + for addition in new_lfs_additions: + if addition._should_ignore: + logger.debug(f"Skipping upload for LFS file '{addition.path_in_repo}' (ignored by gitignore file).") + else: + new_lfs_additions_to_upload.append(addition) + if len(new_lfs_additions) != len(new_lfs_additions_to_upload): + logger.info( + f"Skipped upload for {len(new_lfs_additions) - len(new_lfs_additions_to_upload)} LFS file(s) " + "(ignored by gitignore file)." + ) + + # Upload new LFS files + _upload_lfs_files( + additions=new_lfs_additions_to_upload, + repo_type=repo_type, + repo_id=repo_id, + headers=headers, + endpoint=self.endpoint, + num_threads=num_threads, + # If `create_pr`, we don't want to check user permission on the revision as users with read permission + # should still be able to create PRs even if they don't have write permission on the target branch of the + # PR (i.e. `revision`). + revision=revision if not create_pr else None, + ) + for addition in new_lfs_additions_to_upload: + addition._is_uploaded = True + if free_memory: + addition.path_or_fileobj = b"" + + @overload + def upload_file( # type: ignore + self, + *, + path_or_fileobj: Union[str, Path, bytes, BinaryIO], + path_in_repo: str, + repo_id: str, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + run_as_future: Literal[False] = ..., + ) -> CommitInfo: ... + + @overload + def upload_file( + self, + *, + path_or_fileobj: Union[str, Path, bytes, BinaryIO], + path_in_repo: str, + repo_id: str, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + run_as_future: Literal[True] = ..., + ) -> Future[CommitInfo]: ... + + @validate_hf_hub_args + @future_compatible + def upload_file( + self, + *, + path_or_fileobj: Union[str, Path, bytes, BinaryIO], + path_in_repo: str, + repo_id: str, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + run_as_future: bool = False, + ) -> Union[CommitInfo, Future[CommitInfo]]: + """ + Upload a local file (up to 50 GB) to the given repo. The upload is done + through a HTTP post request, and doesn't require git or git-lfs to be + installed. + + Args: + path_or_fileobj (`str`, `Path`, `bytes`, or `IO`): + Path to a file on the local machine or binary data stream / + fileobj / buffer. + path_in_repo (`str`): + Relative filepath in the repo, for example: + `"checkpoints/1fec34a/weights.bin"` + repo_id (`str`): + The repository to which the file will be uploaded, for example: + `"username/custom_transformers"` + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + commit_message (`str`, *optional*): + The summary / title / first line of the generated commit + commit_description (`str` *optional*) + The description of the generated commit + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request with that commit. Defaults to `False`. + If `revision` is not set, PR is opened against the `"main"` branch. If + `revision` is set and is a branch, PR is opened against this branch. If + `revision` is set and is not a branch name (example: a commit oid), an + `RevisionNotFoundError` is returned by the server. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + run_as_future (`bool`, *optional*): + Whether or not to run this method in the background. Background jobs are run sequentially without + blocking the main thread. Passing `run_as_future=True` will return a [Future](https://docs.python.org/3/library/concurrent.futures.html#future-objects) + object. Defaults to `False`. + + + Returns: + [`CommitInfo`] or `Future`: + Instance of [`CommitInfo`] containing information about the newly created commit (commit hash, commit + url, pr url, commit message,...). If `run_as_future=True` is passed, returns a Future object which will + contain the result when executed. + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + - [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + + + + + + `upload_file` assumes that the repo already exists on the Hub. If you get a + Client error 404, please make sure you are authenticated and that `repo_id` and + `repo_type` are set correctly. If repo does not exist, create it first using + [`~hf_api.create_repo`]. + + + + Example: + + ```python + >>> from huggingface_hub import upload_file + + >>> with open("./local/filepath", "rb") as fobj: + ... upload_file( + ... path_or_fileobj=fileobj, + ... path_in_repo="remote/file/path.h5", + ... repo_id="username/my-dataset", + ... repo_type="dataset", + ... token="my_token", + ... ) + "https://huggingface.co/datasets/username/my-dataset/blob/main/remote/file/path.h5" + + >>> upload_file( + ... path_or_fileobj=".\\\\local\\\\file\\\\path", + ... path_in_repo="remote/file/path.h5", + ... repo_id="username/my-model", + ... token="my_token", + ... ) + "https://huggingface.co/username/my-model/blob/main/remote/file/path.h5" + + >>> upload_file( + ... path_or_fileobj=".\\\\local\\\\file\\\\path", + ... path_in_repo="remote/file/path.h5", + ... repo_id="username/my-model", + ... token="my_token", + ... create_pr=True, + ... ) + "https://huggingface.co/username/my-model/blob/refs%2Fpr%2F1/remote/file/path.h5" + ``` + """ + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + + commit_message = ( + commit_message if commit_message is not None else f"Upload {path_in_repo} with huggingface_hub" + ) + operation = CommitOperationAdd( + path_or_fileobj=path_or_fileobj, + path_in_repo=path_in_repo, + ) + + commit_info = self.create_commit( + repo_id=repo_id, + repo_type=repo_type, + operations=[operation], + commit_message=commit_message, + commit_description=commit_description, + token=token, + revision=revision, + create_pr=create_pr, + parent_commit=parent_commit, + ) + + if commit_info.pr_url is not None: + revision = quote(_parse_revision_from_pr_url(commit_info.pr_url), safe="") + if repo_type in constants.REPO_TYPES_URL_PREFIXES: + repo_id = constants.REPO_TYPES_URL_PREFIXES[repo_type] + repo_id + revision = revision if revision is not None else constants.DEFAULT_REVISION + + return CommitInfo( + commit_url=commit_info.commit_url, + commit_message=commit_info.commit_message, + commit_description=commit_info.commit_description, + oid=commit_info.oid, + pr_url=commit_info.pr_url, + # Similar to `hf_hub_url` but it's "blob" instead of "resolve" + # TODO: remove this in v1.0 + _url=f"{self.endpoint}/{repo_id}/blob/{revision}/{path_in_repo}", + ) + + @overload + def upload_folder( # type: ignore + self, + *, + repo_id: str, + folder_path: Union[str, Path], + path_in_repo: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + multi_commits: Literal[False] = ..., + multi_commits_verbose: bool = False, + run_as_future: Literal[False] = ..., + ) -> CommitInfo: ... + + @overload + def upload_folder( # type: ignore + self, + *, + repo_id: str, + folder_path: Union[str, Path], + path_in_repo: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + multi_commits: Literal[True] = ..., + multi_commits_verbose: bool = False, + run_as_future: Literal[False] = ..., + ) -> str: # Only the PR url in multi-commits mode + ... + + @overload + def upload_folder( # type: ignore + self, + *, + repo_id: str, + folder_path: Union[str, Path], + path_in_repo: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + multi_commits: Literal[False] = ..., + multi_commits_verbose: bool = False, + run_as_future: Literal[True] = ..., + ) -> Future[CommitInfo]: ... + + @overload + def upload_folder( + self, + *, + repo_id: str, + folder_path: Union[str, Path], + path_in_repo: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + multi_commits: Literal[True] = ..., + multi_commits_verbose: bool = False, + run_as_future: Literal[True] = ..., + ) -> Future[str]: # Only the PR url in multi-commits mode + ... + + @validate_hf_hub_args + @future_compatible + def upload_folder( + self, + *, + repo_id: str, + folder_path: Union[str, Path], + path_in_repo: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + multi_commits: bool = False, + multi_commits_verbose: bool = False, + run_as_future: bool = False, + ) -> Union[CommitInfo, str, Future[CommitInfo], Future[str]]: + """ + Upload a local folder to the given repo. The upload is done through a HTTP requests, and doesn't require git or + git-lfs to be installed. + + The structure of the folder will be preserved. Files with the same name already present in the repository will + be overwritten. Others will be left untouched. + + Use the `allow_patterns` and `ignore_patterns` arguments to specify which files to upload. These parameters + accept either a single pattern or a list of patterns. Patterns are Standard Wildcards (globbing patterns) as + documented [here](https://tldp.org/LDP/GNU-Linux-Tools-Summary/html/x11655.htm). If both `allow_patterns` and + `ignore_patterns` are provided, both constraints apply. By default, all files from the folder are uploaded. + + Use the `delete_patterns` argument to specify remote files you want to delete. Input type is the same as for + `allow_patterns` (see above). If `path_in_repo` is also provided, the patterns are matched against paths + relative to this folder. For example, `upload_folder(..., path_in_repo="experiment", delete_patterns="logs/*")` + will delete any remote file under `./experiment/logs/`. Note that the `.gitattributes` file will not be deleted + even if it matches the patterns. + + Any `.git/` folder present in any subdirectory will be ignored. However, please be aware that the `.gitignore` + file is not taken into account. + + Uses `HfApi.create_commit` under the hood. + + Args: + repo_id (`str`): + The repository to which the file will be uploaded, for example: + `"username/custom_transformers"` + folder_path (`str` or `Path`): + Path to the folder to upload on the local file system + path_in_repo (`str`, *optional*): + Relative path of the directory in the repo, for example: + `"checkpoints/1fec34a/results"`. Will default to the root folder of the repository. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + commit_message (`str`, *optional*): + The summary / title / first line of the generated commit. Defaults to: + `f"Upload {path_in_repo} with huggingface_hub"` + commit_description (`str` *optional*): + The description of the generated commit + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request with that commit. Defaults to `False`. If `revision` is not + set, PR is opened against the `"main"` branch. If `revision` is set and is a branch, PR is opened + against this branch. If `revision` is set and is not a branch name (example: a commit oid), an + `RevisionNotFoundError` is returned by the server. If both `multi_commits` and `create_pr` are True, + the PR created in the multi-commit process is kept opened. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are uploaded. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not uploaded. + delete_patterns (`List[str]` or `str`, *optional*): + If provided, remote files matching any of the patterns will be deleted from the repo while committing + new files. This is useful if you don't know which files have already been uploaded. + Note: to avoid discrepancies the `.gitattributes` file is not deleted even if it matches the pattern. + multi_commits (`bool`): + Deprecated. For large uploads, use `upload_large_folder` instead. + If True, changes are pushed to a PR using a multi-commit process. Defaults to `False`. + multi_commits_verbose (`bool`): + Deprecated. For large uploads, use `upload_large_folder` instead. + If True and `multi_commits` is used, more information will be displayed to the user. + run_as_future (`bool`, *optional*): + Whether or not to run this method in the background. Background jobs are run sequentially without + blocking the main thread. Passing `run_as_future=True` will return a [Future](https://docs.python.org/3/library/concurrent.futures.html#future-objects) + object. Defaults to `False`. + + Returns: + [`CommitInfo`] or `Future`: + Instance of [`CommitInfo`] containing information about the newly created commit (commit hash, commit + url, pr url, commit message,...). If `run_as_future=True` is passed, returns a Future object which will + contain the result when executed. + [`str`] or `Future`: + If `multi_commits=True`, returns the url of the PR created to push the changes. If `run_as_future=True` + is passed, returns a Future object which will contain the result when executed. + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + + + + + + `upload_folder` assumes that the repo already exists on the Hub. If you get a Client error 404, please make + sure you are authenticated and that `repo_id` and `repo_type` are set correctly. If repo does not exist, create + it first using [`~hf_api.create_repo`]. + + + + + + `multi_commits` is experimental. Its API and behavior is subject to change in the future without prior notice. + + + + Example: + + ```python + # Upload checkpoints folder except the log files + >>> upload_folder( + ... folder_path="local/checkpoints", + ... path_in_repo="remote/experiment/checkpoints", + ... repo_id="username/my-dataset", + ... repo_type="datasets", + ... token="my_token", + ... ignore_patterns="**/logs/*.txt", + ... ) + # "https://huggingface.co/datasets/username/my-dataset/tree/main/remote/experiment/checkpoints" + + # Upload checkpoints folder including logs while deleting existing logs from the repo + # Useful if you don't know exactly which log files have already being pushed + >>> upload_folder( + ... folder_path="local/checkpoints", + ... path_in_repo="remote/experiment/checkpoints", + ... repo_id="username/my-dataset", + ... repo_type="datasets", + ... token="my_token", + ... delete_patterns="**/logs/*.txt", + ... ) + "https://huggingface.co/datasets/username/my-dataset/tree/main/remote/experiment/checkpoints" + + # Upload checkpoints folder while creating a PR + >>> upload_folder( + ... folder_path="local/checkpoints", + ... path_in_repo="remote/experiment/checkpoints", + ... repo_id="username/my-dataset", + ... repo_type="datasets", + ... token="my_token", + ... create_pr=True, + ... ) + "https://huggingface.co/datasets/username/my-dataset/tree/refs%2Fpr%2F1/remote/experiment/checkpoints" + + ``` + """ + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + + if multi_commits: + if revision is not None and revision != constants.DEFAULT_REVISION: + raise ValueError("Cannot use `multi_commit` to commit changes other than the main branch.") + + # By default, upload folder to the root directory in repo. + if path_in_repo is None: + path_in_repo = "" + + # Do not upload .git folder + if ignore_patterns is None: + ignore_patterns = [] + elif isinstance(ignore_patterns, str): + ignore_patterns = [ignore_patterns] + ignore_patterns += DEFAULT_IGNORE_PATTERNS + + delete_operations = self._prepare_folder_deletions( + repo_id=repo_id, + repo_type=repo_type, + revision=constants.DEFAULT_REVISION if create_pr else revision, + token=token, + path_in_repo=path_in_repo, + delete_patterns=delete_patterns, + ) + add_operations = self._prepare_upload_folder_additions( + folder_path, + path_in_repo, + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + token=token, + repo_type=repo_type, + ) + + # Optimize operations: if some files will be overwritten, we don't need to delete them first + if len(add_operations) > 0: + added_paths = set(op.path_in_repo for op in add_operations) + delete_operations = [ + delete_op for delete_op in delete_operations if delete_op.path_in_repo not in added_paths + ] + commit_operations = delete_operations + add_operations + + commit_message = commit_message or "Upload folder using huggingface_hub" + if multi_commits: + addition_commits, deletion_commits = plan_multi_commits(operations=commit_operations) + pr_url = self.create_commits_on_pr( + repo_id=repo_id, + repo_type=repo_type, + addition_commits=addition_commits, + deletion_commits=deletion_commits, + commit_message=commit_message, + commit_description=commit_description, + token=token, + merge_pr=not create_pr, + verbose=multi_commits_verbose, + ) + # Defining a CommitInfo object is not really relevant in this case + # Let's return early with pr_url only (as string). + return pr_url + + commit_info = self.create_commit( + repo_type=repo_type, + repo_id=repo_id, + operations=commit_operations, + commit_message=commit_message, + commit_description=commit_description, + token=token, + revision=revision, + create_pr=create_pr, + parent_commit=parent_commit, + ) + + # Create url to uploaded folder (for legacy return value) + if create_pr and commit_info.pr_url is not None: + revision = quote(_parse_revision_from_pr_url(commit_info.pr_url), safe="") + if repo_type in constants.REPO_TYPES_URL_PREFIXES: + repo_id = constants.REPO_TYPES_URL_PREFIXES[repo_type] + repo_id + revision = revision if revision is not None else constants.DEFAULT_REVISION + + return CommitInfo( + commit_url=commit_info.commit_url, + commit_message=commit_info.commit_message, + commit_description=commit_info.commit_description, + oid=commit_info.oid, + pr_url=commit_info.pr_url, + # Similar to `hf_hub_url` but it's "tree" instead of "resolve" + # TODO: remove this in v1.0 + _url=f"{self.endpoint}/{repo_id}/tree/{revision}/{path_in_repo}", + ) + + @validate_hf_hub_args + def delete_file( + self, + path_in_repo: str, + repo_id: str, + *, + token: Union[str, bool, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + ) -> CommitInfo: + """ + Deletes a file in the given repo. + + Args: + path_in_repo (`str`): + Relative filepath in the repo, for example: + `"checkpoints/1fec34a/weights.bin"` + repo_id (`str`): + The repository from which the file will be deleted, for example: + `"username/custom_transformers"` + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if the file is in a dataset or + space, `None` or `"model"` if in a model. Default is `None`. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + commit_message (`str`, *optional*): + The summary / title / first line of the generated commit. Defaults to + `f"Delete {path_in_repo} with huggingface_hub"`. + commit_description (`str` *optional*) + The description of the generated commit + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request with that commit. Defaults to `False`. + If `revision` is not set, PR is opened against the `"main"` branch. If + `revision` is set and is a branch, PR is opened against this branch. If + `revision` is set and is not a branch name (example: a commit oid), an + `RevisionNotFoundError` is returned by the server. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + - [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + - [`~utils.EntryNotFoundError`] + If the file to download cannot be found. + + + + """ + commit_message = ( + commit_message if commit_message is not None else f"Delete {path_in_repo} with huggingface_hub" + ) + + operations = [CommitOperationDelete(path_in_repo=path_in_repo)] + + return self.create_commit( + repo_id=repo_id, + repo_type=repo_type, + token=token, + operations=operations, + revision=revision, + commit_message=commit_message, + commit_description=commit_description, + create_pr=create_pr, + parent_commit=parent_commit, + ) + + @validate_hf_hub_args + def delete_files( + self, + repo_id: str, + delete_patterns: List[str], + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + ) -> CommitInfo: + """ + Delete files from a repository on the Hub. + + If a folder path is provided, the entire folder is deleted as well as + all files it contained. + + Args: + repo_id (`str`): + The repository from which the folder will be deleted, for example: + `"username/custom_transformers"` + delete_patterns (`List[str]`): + List of files or folders to delete. Each string can either be + a file path, a folder path or a Unix shell-style wildcard. + E.g. `["file.txt", "folder/", "data/*.parquet"]` + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + to the stored token. + repo_type (`str`, *optional*): + Type of the repo to delete files from. Can be `"model"`, + `"dataset"` or `"space"`. Defaults to `"model"`. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + commit_message (`str`, *optional*): + The summary (first line) of the generated commit. Defaults to + `f"Delete files using huggingface_hub"`. + commit_description (`str` *optional*) + The description of the generated commit. + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request with that commit. Defaults to `False`. + If `revision` is not set, PR is opened against the `"main"` branch. If + `revision` is set and is a branch, PR is opened against this branch. If + `revision` is set and is not a branch name (example: a commit oid), an + `RevisionNotFoundError` is returned by the server. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + """ + operations = self._prepare_folder_deletions( + repo_id=repo_id, repo_type=repo_type, delete_patterns=delete_patterns, path_in_repo="", revision=revision + ) + + if commit_message is None: + commit_message = f"Delete files {' '.join(delete_patterns)} with huggingface_hub" + + return self.create_commit( + repo_id=repo_id, + repo_type=repo_type, + token=token, + operations=operations, + revision=revision, + commit_message=commit_message, + commit_description=commit_description, + create_pr=create_pr, + parent_commit=parent_commit, + ) + + @validate_hf_hub_args + def delete_folder( + self, + path_in_repo: str, + repo_id: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + ) -> CommitInfo: + """ + Deletes a folder in the given repo. + + Simple wrapper around [`create_commit`] method. + + Args: + path_in_repo (`str`): + Relative folder path in the repo, for example: `"checkpoints/1fec34a"`. + repo_id (`str`): + The repository from which the folder will be deleted, for example: + `"username/custom_transformers"` + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + to the stored token. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if the folder is in a dataset or + space, `None` or `"model"` if in a model. Default is `None`. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + commit_message (`str`, *optional*): + The summary / title / first line of the generated commit. Defaults to + `f"Delete folder {path_in_repo} with huggingface_hub"`. + commit_description (`str` *optional*) + The description of the generated commit. + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request with that commit. Defaults to `False`. + If `revision` is not set, PR is opened against the `"main"` branch. If + `revision` is set and is a branch, PR is opened against this branch. If + `revision` is set and is not a branch name (example: a commit oid), an + `RevisionNotFoundError` is returned by the server. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + """ + return self.create_commit( + repo_id=repo_id, + repo_type=repo_type, + token=token, + operations=[CommitOperationDelete(path_in_repo=path_in_repo, is_folder=True)], + revision=revision, + commit_message=( + commit_message if commit_message is not None else f"Delete folder {path_in_repo} with huggingface_hub" + ), + commit_description=commit_description, + create_pr=create_pr, + parent_commit=parent_commit, + ) + + def upload_large_folder( + self, + repo_id: str, + folder_path: Union[str, Path], + *, + repo_type: str, # Repo type is required! + revision: Optional[str] = None, + private: bool = False, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + num_workers: Optional[int] = None, + print_report: bool = True, + print_report_every: int = 60, + ) -> None: + """Upload a large folder to the Hub in the most resilient way possible. + + Several workers are started to upload files in an optimized way. Before being committed to a repo, files must be + hashed and be pre-uploaded if they are LFS files. Workers will perform these tasks for each file in the folder. + At each step, some metadata information about the upload process is saved in the folder under `.cache/.huggingface/` + to be able to resume the process if interrupted. The whole process might result in several commits. + + Args: + repo_id (`str`): + The repository to which the file will be uploaded. + E.g. `"HuggingFaceTB/smollm-corpus"`. + folder_path (`str` or `Path`): + Path to the folder to upload on the local file system. + repo_type (`str`): + Type of the repository. Must be one of `"model"`, `"dataset"` or `"space"`. + Unlike in all other `HfApi` methods, `repo_type` is explicitly required here. This is to avoid + any mistake when uploading a large folder to the Hub, and therefore prevent from having to re-upload + everything. + revision (`str`, `optional`): + The branch to commit to. If not provided, the `main` branch will be used. + private (`bool`, `optional`): + Whether the repository should be private. Defaults to False. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are uploaded. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not uploaded. + num_workers (`int`, *optional*): + Number of workers to start. Defaults to `os.cpu_count() - 2` (minimum 2). + A higher number of workers may speed up the process if your machine allows it. However, on machines with a + slower connection, it is recommended to keep the number of workers low to ensure better resumability. + Indeed, partially uploaded files will have to be completely re-uploaded if the process is interrupted. + print_report (`bool`, *optional*): + Whether to print a report of the upload progress. Defaults to True. + Report is printed to `sys.stdout` every X seconds (60 by defaults) and overwrites the previous report. + print_report_every (`int`, *optional*): + Frequency at which the report is printed. Defaults to 60 seconds. + + + + A few things to keep in mind: + - Repository limits still apply: https://huggingface.co/docs/hub/repositories-recommendations + - Do not start several processes in parallel. + - You can interrupt and resume the process at any time. + - Do not upload the same folder to several repositories. If you need to do so, you must delete the local `.cache/.huggingface/` folder first. + + + + + + While being much more robust to upload large folders, `upload_large_folder` is more limited than [`upload_folder`] feature-wise. In practice: + - you cannot set a custom `path_in_repo`. If you want to upload to a subfolder, you need to set the proper structure locally. + - you cannot set a custom `commit_message` and `commit_description` since multiple commits are created. + - you cannot delete from the repo while uploading. Please make a separate commit first. + - you cannot create a PR directly. Please create a PR first (from the UI or using [`create_pull_request`]) and then commit to it by passing `revision`. + + + + **Technical details:** + + `upload_large_folder` process is as follow: + 1. (Check parameters and setup.) + 2. Create repo if missing. + 3. List local files to upload. + 4. Start workers. Workers can perform the following tasks: + - Hash a file. + - Get upload mode (regular or LFS) for a list of files. + - Pre-upload an LFS file. + - Commit a bunch of files. + Once a worker finishes a task, it will move on to the next task based on the priority list (see below) until + all files are uploaded and committed. + 5. While workers are up, regularly print a report to sys.stdout. + + Order of priority: + 1. Commit if more than 5 minutes since last commit attempt (and at least 1 file). + 2. Commit if at least 150 files are ready to commit. + 3. Get upload mode if at least 10 files have been hashed. + 4. Pre-upload LFS file if at least 1 file and no worker is pre-uploading. + 5. Hash file if at least 1 file and no worker is hashing. + 6. Get upload mode if at least 1 file and no worker is getting upload mode. + 7. Pre-upload LFS file if at least 1 file (exception: if hf_transfer is enabled, only 1 worker can preupload LFS at a time). + 8. Hash file if at least 1 file to hash. + 9. Get upload mode if at least 1 file to get upload mode. + 10. Commit if at least 1 file to commit and at least 1 min since last commit attempt. + 11. Commit if at least 1 file to commit and all other queues are empty. + + Special rules: + - If `hf_transfer` is enabled, only 1 LFS uploader at a time. Otherwise the CPU would be bloated by `hf_transfer`. + - Only one worker can commit at a time. + - If no tasks are available, the worker waits for 10 seconds before checking again. + """ + return upload_large_folder_internal( + self, + repo_id=repo_id, + folder_path=folder_path, + repo_type=repo_type, + revision=revision, + private=private, + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + num_workers=num_workers, + print_report=print_report, + print_report_every=print_report_every, + ) + + @validate_hf_hub_args + def get_hf_file_metadata( + self, + *, + url: str, + token: Union[bool, str, None] = None, + proxies: Optional[Dict] = None, + timeout: Optional[float] = constants.DEFAULT_REQUEST_TIMEOUT, + ) -> HfFileMetadata: + """Fetch metadata of a file versioned on the Hub for a given url. + + Args: + url (`str`): + File url, for example returned by [`hf_hub_url`]. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to `requests.request`. + timeout (`float`, *optional*, defaults to 10): + How many seconds to wait for the server to send metadata before giving up. + + Returns: + A [`HfFileMetadata`] object containing metadata such as location, etag, size and commit_hash. + """ + if token is None: + # Cannot do `token = token or self.token` as token can be `False`. + token = self.token + + return get_hf_file_metadata( + url=url, + token=token, + proxies=proxies, + timeout=timeout, + library_name=self.library_name, + library_version=self.library_version, + user_agent=self.user_agent, + ) + + @validate_hf_hub_args + def hf_hub_download( + self, + repo_id: str, + filename: str, + *, + subfolder: Optional[str] = None, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + cache_dir: Union[str, Path, None] = None, + local_dir: Union[str, Path, None] = None, + force_download: bool = False, + proxies: Optional[Dict] = None, + etag_timeout: float = constants.DEFAULT_ETAG_TIMEOUT, + token: Union[bool, str, None] = None, + local_files_only: bool = False, + # Deprecated args + resume_download: Optional[bool] = None, + force_filename: Optional[str] = None, + local_dir_use_symlinks: Union[bool, Literal["auto"]] = "auto", + ) -> str: + """Download a given file if it's not already present in the local cache. + + The new cache file layout looks like this: + - The cache directory contains one subfolder per repo_id (namespaced by repo type) + - inside each repo folder: + - refs is a list of the latest known revision => commit_hash pairs + - blobs contains the actual file blobs (identified by their git-sha or sha256, depending on + whether they're LFS files or not) + - snapshots contains one subfolder per commit, each "commit" contains the subset of the files + that have been resolved at that particular commit. Each filename is a symlink to the blob + at that particular commit. + + ``` + [ 96] . + └── [ 160] models--julien-c--EsperBERTo-small + ├── [ 160] blobs + │ ├── [321M] 403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + │ ├── [ 398] 7cb18dc9bafbfcf74629a4b760af1b160957a83e + │ └── [1.4K] d7edf6bd2a681fb0175f7735299831ee1b22b812 + ├── [ 96] refs + │ └── [ 40] main + └── [ 128] snapshots + ├── [ 128] 2439f60ef33a0d46d85da5001d52aeda5b00ce9f + │ ├── [ 52] README.md -> ../../blobs/d7edf6bd2a681fb0175f7735299831ee1b22b812 + │ └── [ 76] pytorch_model.bin -> ../../blobs/403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + └── [ 128] bbc77c8132af1cc5cf678da3f1ddf2de43606d48 + ├── [ 52] README.md -> ../../blobs/7cb18dc9bafbfcf74629a4b760af1b160957a83e + └── [ 76] pytorch_model.bin -> ../../blobs/403450e234d65943a7dcf7e05a771ce3c92faa84dd07db4ac20f592037a1e4bd + ``` + + If `local_dir` is provided, the file structure from the repo will be replicated in this location. When using this + option, the `cache_dir` will not be used and a `.cache/huggingface/` folder will be created at the root of `local_dir` + to store some metadata related to the downloaded files. While this mechanism is not as robust as the main + cache-system, it's optimized for regularly pulling the latest version of a repository. + + Args: + repo_id (`str`): + A user or an organization name and a repo name separated by a `/`. + filename (`str`): + The name of the file in the repo. + subfolder (`str`, *optional*): + An optional value corresponding to a folder inside the model repo. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if downloading from a dataset or space, + `None` or `"model"` if downloading from a model. Default is `None`. + revision (`str`, *optional*): + An optional Git revision id which can be a branch name, a tag, or a + commit hash. + cache_dir (`str`, `Path`, *optional*): + Path to the folder where cached files are stored. + local_dir (`str` or `Path`, *optional*): + If provided, the downloaded file will be placed under this directory. + force_download (`bool`, *optional*, defaults to `False`): + Whether the file should be downloaded even if it already exists in + the local cache. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to + `requests.request`. + etag_timeout (`float`, *optional*, defaults to `10`): + When fetching ETag, how many seconds to wait for the server to send + data before giving up which is passed to `requests.request`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + local_files_only (`bool`, *optional*, defaults to `False`): + If `True`, avoid downloading the file and return the path to the + local cached file if it exists. + + Returns: + `str`: Local path of file or if networking is off, last version of file cached on disk. + + Raises: + [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + [`~utils.EntryNotFoundError`] + If the file to download cannot be found. + [`~utils.LocalEntryNotFoundError`] + If network is disabled or unavailable and file is not found in cache. + [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + If `token=True` but the token cannot be found. + [`OSError`](https://docs.python.org/3/library/exceptions.html#OSError) + If ETag cannot be determined. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If some parameter value is invalid. + """ + from .file_download import hf_hub_download + + if token is None: + # Cannot do `token = token or self.token` as token can be `False`. + token = self.token + + return hf_hub_download( + repo_id=repo_id, + filename=filename, + subfolder=subfolder, + repo_type=repo_type, + revision=revision, + endpoint=self.endpoint, + library_name=self.library_name, + library_version=self.library_version, + cache_dir=cache_dir, + local_dir=local_dir, + local_dir_use_symlinks=local_dir_use_symlinks, + user_agent=self.user_agent, + force_download=force_download, + force_filename=force_filename, + proxies=proxies, + etag_timeout=etag_timeout, + resume_download=resume_download, + token=token, + headers=self.headers, + local_files_only=local_files_only, + ) + + @validate_hf_hub_args + def snapshot_download( + self, + repo_id: str, + *, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + cache_dir: Union[str, Path, None] = None, + local_dir: Union[str, Path, None] = None, + proxies: Optional[Dict] = None, + etag_timeout: float = constants.DEFAULT_ETAG_TIMEOUT, + force_download: bool = False, + token: Union[bool, str, None] = None, + local_files_only: bool = False, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + max_workers: int = 8, + tqdm_class: Optional[base_tqdm] = None, + # Deprecated args + local_dir_use_symlinks: Union[bool, Literal["auto"]] = "auto", + resume_download: Optional[bool] = None, + ) -> str: + """Download repo files. + + Download a whole snapshot of a repo's files at the specified revision. This is useful when you want all files from + a repo, because you don't know which ones you will need a priori. All files are nested inside a folder in order + to keep their actual filename relative to that folder. You can also filter which files to download using + `allow_patterns` and `ignore_patterns`. + + If `local_dir` is provided, the file structure from the repo will be replicated in this location. When using this + option, the `cache_dir` will not be used and a `.cache/huggingface/` folder will be created at the root of `local_dir` + to store some metadata related to the downloaded files.While this mechanism is not as robust as the main + cache-system, it's optimized for regularly pulling the latest version of a repository. + + An alternative would be to clone the repo but this requires git and git-lfs to be installed and properly + configured. It is also not possible to filter which files to download when cloning a repository using git. + + Args: + repo_id (`str`): + A user or an organization name and a repo name separated by a `/`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if downloading from a dataset or space, + `None` or `"model"` if downloading from a model. Default is `None`. + revision (`str`, *optional*): + An optional Git revision id which can be a branch name, a tag, or a + commit hash. + cache_dir (`str`, `Path`, *optional*): + Path to the folder where cached files are stored. + local_dir (`str` or `Path`, *optional*): + If provided, the downloaded files will be placed under this directory. + proxies (`dict`, *optional*): + Dictionary mapping protocol to the URL of the proxy passed to + `requests.request`. + etag_timeout (`float`, *optional*, defaults to `10`): + When fetching ETag, how many seconds to wait for the server to send + data before giving up which is passed to `requests.request`. + force_download (`bool`, *optional*, defaults to `False`): + Whether the file should be downloaded even if it already exists in the local cache. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + local_files_only (`bool`, *optional*, defaults to `False`): + If `True`, avoid downloading the file and return the path to the + local cached file if it exists. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are downloaded. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not downloaded. + max_workers (`int`, *optional*): + Number of concurrent threads to download files (1 thread = 1 file download). + Defaults to 8. + tqdm_class (`tqdm`, *optional*): + If provided, overwrites the default behavior for the progress bar. Passed + argument must inherit from `tqdm.auto.tqdm` or at least mimic its behavior. + Note that the `tqdm_class` is not passed to each individual download. + Defaults to the custom HF progress bar that can be disabled by setting + `HF_HUB_DISABLE_PROGRESS_BARS` environment variable. + + Returns: + `str`: folder path of the repo snapshot. + + Raises: + [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + [`~utils.RevisionNotFoundError`] + If the revision to download from cannot be found. + [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + If `token=True` and the token cannot be found. + [`OSError`](https://docs.python.org/3/library/exceptions.html#OSError) if + ETag cannot be determined. + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid. + """ + from ._snapshot_download import snapshot_download + + if token is None: + # Cannot do `token = token or self.token` as token can be `False`. + token = self.token + + return snapshot_download( + repo_id=repo_id, + repo_type=repo_type, + revision=revision, + endpoint=self.endpoint, + cache_dir=cache_dir, + local_dir=local_dir, + local_dir_use_symlinks=local_dir_use_symlinks, + library_name=self.library_name, + library_version=self.library_version, + user_agent=self.user_agent, + proxies=proxies, + etag_timeout=etag_timeout, + resume_download=resume_download, + force_download=force_download, + token=token, + local_files_only=local_files_only, + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + max_workers=max_workers, + tqdm_class=tqdm_class, + ) + + def get_safetensors_metadata( + self, + repo_id: str, + *, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> SafetensorsRepoMetadata: + """ + Parse metadata for a safetensors repo on the Hub. + + We first check if the repo has a single safetensors file or a sharded safetensors repo. If it's a single + safetensors file, we parse the metadata from this file. If it's a sharded safetensors repo, we parse the + metadata from the index file and then parse the metadata from each shard. + + To parse metadata from a single safetensors file, use [`parse_safetensors_file_metadata`]. + + For more details regarding the safetensors format, check out https://huggingface.co/docs/safetensors/index#format. + + Args: + repo_id (`str`): + A user or an organization name and a repo name separated by a `/`. + filename (`str`): + The name of the file in the repo. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if the file is in a dataset or space, `None` or `"model"` if in a + model. Default is `None`. + revision (`str`, *optional*): + The git revision to fetch the file from. Can be a branch name, a tag, or a commit hash. Defaults to the + head of the `"main"` branch. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`SafetensorsRepoMetadata`]: information related to safetensors repo. + + Raises: + [`NotASafetensorsRepoError`] + If the repo is not a safetensors repo i.e. doesn't have either a + `model.safetensors` or a `model.safetensors.index.json` file. + [`SafetensorsParsingError`] + If a safetensors file header couldn't be parsed correctly. + + Example: + ```py + # Parse repo with single weights file + >>> metadata = get_safetensors_metadata("bigscience/bloomz-560m") + >>> metadata + SafetensorsRepoMetadata( + metadata=None, + sharded=False, + weight_map={'h.0.input_layernorm.bias': 'model.safetensors', ...}, + files_metadata={'model.safetensors': SafetensorsFileMetadata(...)} + ) + >>> metadata.files_metadata["model.safetensors"].metadata + {'format': 'pt'} + + # Parse repo with sharded model + >>> metadata = get_safetensors_metadata("bigscience/bloom") + Parse safetensors files: 100%|██████████████████████████████████████████| 72/72 [00:12<00:00, 5.78it/s] + >>> metadata + SafetensorsRepoMetadata(metadata={'total_size': 352494542848}, sharded=True, weight_map={...}, files_metadata={...}) + >>> len(metadata.files_metadata) + 72 # All safetensors files have been fetched + + # Parse repo with sharded model + >>> get_safetensors_metadata("runwayml/stable-diffusion-v1-5") + NotASafetensorsRepoError: 'runwayml/stable-diffusion-v1-5' is not a safetensors repo. Couldn't find 'model.safetensors.index.json' or 'model.safetensors' files. + ``` + """ + if self.file_exists( # Single safetensors file => non-sharded model + repo_id=repo_id, + filename=constants.SAFETENSORS_SINGLE_FILE, + repo_type=repo_type, + revision=revision, + token=token, + ): + file_metadata = self.parse_safetensors_file_metadata( + repo_id=repo_id, + filename=constants.SAFETENSORS_SINGLE_FILE, + repo_type=repo_type, + revision=revision, + token=token, + ) + return SafetensorsRepoMetadata( + metadata=None, + sharded=False, + weight_map={ + tensor_name: constants.SAFETENSORS_SINGLE_FILE for tensor_name in file_metadata.tensors.keys() + }, + files_metadata={constants.SAFETENSORS_SINGLE_FILE: file_metadata}, + ) + elif self.file_exists( # Multiple safetensors files => sharded with index + repo_id=repo_id, + filename=constants.SAFETENSORS_INDEX_FILE, + repo_type=repo_type, + revision=revision, + token=token, + ): + # Fetch index + index_file = self.hf_hub_download( + repo_id=repo_id, + filename=constants.SAFETENSORS_INDEX_FILE, + repo_type=repo_type, + revision=revision, + token=token, + ) + with open(index_file) as f: + index = json.load(f) + + weight_map = index.get("weight_map", {}) + + # Fetch metadata per shard + files_metadata = {} + + def _parse(filename: str) -> None: + files_metadata[filename] = self.parse_safetensors_file_metadata( + repo_id=repo_id, filename=filename, repo_type=repo_type, revision=revision, token=token + ) + + thread_map( + _parse, + set(weight_map.values()), + desc="Parse safetensors files", + tqdm_class=hf_tqdm, + ) + + return SafetensorsRepoMetadata( + metadata=index.get("metadata", None), + sharded=True, + weight_map=weight_map, + files_metadata=files_metadata, + ) + else: + # Not a safetensors repo + raise NotASafetensorsRepoError( + f"'{repo_id}' is not a safetensors repo. Couldn't find '{constants.SAFETENSORS_INDEX_FILE}' or '{constants.SAFETENSORS_SINGLE_FILE}' files." + ) + + def parse_safetensors_file_metadata( + self, + repo_id: str, + filename: str, + *, + repo_type: Optional[str] = None, + revision: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> SafetensorsFileMetadata: + """ + Parse metadata from a safetensors file on the Hub. + + To parse metadata from all safetensors files in a repo at once, use [`get_safetensors_metadata`]. + + For more details regarding the safetensors format, check out https://huggingface.co/docs/safetensors/index#format. + + Args: + repo_id (`str`): + A user or an organization name and a repo name separated by a `/`. + filename (`str`): + The name of the file in the repo. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if the file is in a dataset or space, `None` or `"model"` if in a + model. Default is `None`. + revision (`str`, *optional*): + The git revision to fetch the file from. Can be a branch name, a tag, or a commit hash. Defaults to the + head of the `"main"` branch. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`SafetensorsFileMetadata`]: information related to a safetensors file. + + Raises: + [`NotASafetensorsRepoError`]: + If the repo is not a safetensors repo i.e. doesn't have either a + `model.safetensors` or a `model.safetensors.index.json` file. + [`SafetensorsParsingError`]: + If a safetensors file header couldn't be parsed correctly. + """ + url = hf_hub_url( + repo_id=repo_id, filename=filename, repo_type=repo_type, revision=revision, endpoint=self.endpoint + ) + _headers = self._build_hf_headers(token=token) + + # 1. Fetch first 100kb + # Empirically, 97% of safetensors files have a metadata size < 100kb (over the top 1000 models on the Hub). + # We assume fetching 100kb is faster than making 2 GET requests. Therefore we always fetch the first 100kb to + # avoid the 2nd GET in most cases. + # See https://github.com/huggingface/huggingface_hub/pull/1855#discussion_r1404286419. + response = get_session().get(url, headers={**_headers, "range": "bytes=0-100000"}) + hf_raise_for_status(response) + + # 2. Parse metadata size + metadata_size = struct.unpack(" constants.SAFETENSORS_MAX_HEADER_LENGTH: + raise SafetensorsParsingError( + f"Failed to parse safetensors header for '{filename}' (repo '{repo_id}', revision " + f"'{revision or constants.DEFAULT_REVISION}'): safetensors header is too big. Maximum supported size is " + f"{constants.SAFETENSORS_MAX_HEADER_LENGTH} bytes (got {metadata_size})." + ) + + # 3.a. Get metadata from payload + if metadata_size <= 100000: + metadata_as_bytes = response.content[8 : 8 + metadata_size] + else: # 3.b. Request full metadata + response = get_session().get(url, headers={**_headers, "range": f"bytes=8-{metadata_size+7}"}) + hf_raise_for_status(response) + metadata_as_bytes = response.content + + # 4. Parse json header + try: + metadata_as_dict = json.loads(metadata_as_bytes.decode(errors="ignore")) + except json.JSONDecodeError as e: + raise SafetensorsParsingError( + f"Failed to parse safetensors header for '{filename}' (repo '{repo_id}', revision " + f"'{revision or constants.DEFAULT_REVISION}'): header is not json-encoded string. Please make sure this is a " + "correctly formatted safetensors file." + ) from e + + try: + return SafetensorsFileMetadata( + metadata=metadata_as_dict.get("__metadata__", {}), + tensors={ + key: TensorInfo( + dtype=tensor["dtype"], + shape=tensor["shape"], + data_offsets=tuple(tensor["data_offsets"]), # type: ignore + ) + for key, tensor in metadata_as_dict.items() + if key != "__metadata__" + }, + ) + except (KeyError, IndexError) as e: + raise SafetensorsParsingError( + f"Failed to parse safetensors header for '{filename}' (repo '{repo_id}', revision " + f"'{revision or constants.DEFAULT_REVISION}'): header format not recognized. Please make sure this is a correctly" + " formatted safetensors file." + ) from e + + @validate_hf_hub_args + def create_branch( + self, + repo_id: str, + *, + branch: str, + revision: Optional[str] = None, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + exist_ok: bool = False, + ) -> None: + """ + Create a new branch for a repo on the Hub, starting from the specified revision (defaults to `main`). + To find a revision suiting your needs, you can use [`list_repo_refs`] or [`list_repo_commits`]. + + Args: + repo_id (`str`): + The repository in which the branch will be created. + Example: `"user/my-cool-model"`. + + branch (`str`): + The name of the branch to create. + + revision (`str`, *optional*): + The git revision to create the branch from. It can be a branch name or + the OID/SHA of a commit, as a hexadecimal string. Defaults to the head + of the `"main"` branch. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if creating a branch on a dataset or + space, `None` or `"model"` if tagging a model. Default is `None`. + + exist_ok (`bool`, *optional*, defaults to `False`): + If `True`, do not raise an error if branch already exists. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + [`~utils.BadRequestError`]: + If invalid reference for a branch. Ex: `refs/pr/5` or 'refs/foo/bar'. + [`~utils.HfHubHTTPError`]: + If the branch already exists on the repo (error 409) and `exist_ok` is + set to `False`. + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + branch = quote(branch, safe="") + + # Prepare request + branch_url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/branch/{branch}" + headers = self._build_hf_headers(token=token) + payload = {} + if revision is not None: + payload["startingPoint"] = revision + + # Create branch + response = get_session().post(url=branch_url, headers=headers, json=payload) + try: + hf_raise_for_status(response) + except HfHubHTTPError as e: + if exist_ok and e.response.status_code == 409: + return + elif exist_ok and e.response.status_code == 403: + # No write permission on the namespace but branch might already exist + try: + refs = self.list_repo_refs(repo_id=repo_id, repo_type=repo_type, token=token) + for branch_ref in refs.branches: + if branch_ref.name == branch: + return # Branch already exists => do not raise + except HfHubHTTPError: + pass # We raise the original error if the branch does not exist + raise + + @validate_hf_hub_args + def delete_branch( + self, + repo_id: str, + *, + branch: str, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> None: + """ + Delete a branch from a repo on the Hub. + + Args: + repo_id (`str`): + The repository in which a branch will be deleted. + Example: `"user/my-cool-model"`. + + branch (`str`): + The name of the branch to delete. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if creating a branch on a dataset or + space, `None` or `"model"` if tagging a model. Default is `None`. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + [`~utils.HfHubHTTPError`]: + If trying to delete a protected branch. Ex: `main` cannot be deleted. + [`~utils.HfHubHTTPError`]: + If trying to delete a branch that does not exist. + + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + branch = quote(branch, safe="") + + # Prepare request + branch_url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/branch/{branch}" + headers = self._build_hf_headers(token=token) + + # Delete branch + response = get_session().delete(url=branch_url, headers=headers) + hf_raise_for_status(response) + + @validate_hf_hub_args + def create_tag( + self, + repo_id: str, + *, + tag: str, + tag_message: Optional[str] = None, + revision: Optional[str] = None, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + exist_ok: bool = False, + ) -> None: + """ + Tag a given commit of a repo on the Hub. + + Args: + repo_id (`str`): + The repository in which a commit will be tagged. + Example: `"user/my-cool-model"`. + + tag (`str`): + The name of the tag to create. + + tag_message (`str`, *optional*): + The description of the tag to create. + + revision (`str`, *optional*): + The git revision to tag. It can be a branch name or the OID/SHA of a + commit, as a hexadecimal string. Shorthands (7 first characters) are + also supported. Defaults to the head of the `"main"` branch. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if tagging a dataset or + space, `None` or `"model"` if tagging a model. Default is + `None`. + + exist_ok (`bool`, *optional*, defaults to `False`): + If `True`, do not raise an error if tag already exists. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + [`~utils.RevisionNotFoundError`]: + If revision is not found (error 404) on the repo. + [`~utils.HfHubHTTPError`]: + If the branch already exists on the repo (error 409) and `exist_ok` is + set to `False`. + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + revision = quote(revision, safe="") if revision is not None else constants.DEFAULT_REVISION + + # Prepare request + tag_url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/tag/{revision}" + headers = self._build_hf_headers(token=token) + payload = {"tag": tag} + if tag_message is not None: + payload["message"] = tag_message + + # Tag + response = get_session().post(url=tag_url, headers=headers, json=payload) + try: + hf_raise_for_status(response) + except HfHubHTTPError as e: + if not (e.response.status_code == 409 and exist_ok): + raise + + @validate_hf_hub_args + def delete_tag( + self, + repo_id: str, + *, + tag: str, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> None: + """ + Delete a tag from a repo on the Hub. + + Args: + repo_id (`str`): + The repository in which a tag will be deleted. + Example: `"user/my-cool-model"`. + + tag (`str`): + The name of the tag to delete. + + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if tagging a dataset or space, `None` or + `"model"` if tagging a model. Default is `None`. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If repository is not found (error 404): wrong repo_id/repo_type, private + but not authenticated or repo does not exist. + [`~utils.RevisionNotFoundError`]: + If tag is not found. + """ + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + tag = quote(tag, safe="") + + # Prepare request + tag_url = f"{self.endpoint}/api/{repo_type}s/{repo_id}/tag/{tag}" + headers = self._build_hf_headers(token=token) + + # Un-tag + response = get_session().delete(url=tag_url, headers=headers) + hf_raise_for_status(response) + + @validate_hf_hub_args + def get_full_repo_name( + self, + model_id: str, + *, + organization: Optional[str] = None, + token: Union[bool, str, None] = None, + ): + """ + Returns the repository name for a given model ID and optional + organization. + + Args: + model_id (`str`): + The name of the model. + organization (`str`, *optional*): + If passed, the repository name will be in the organization + namespace instead of the user namespace. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `str`: The repository name in the user's namespace + ({username}/{model_id}) if no organization is passed, and under the + organization namespace ({organization}/{model_id}) otherwise. + """ + if organization is None: + if "/" in model_id: + username = model_id.split("/")[0] + else: + username = self.whoami(token=token)["name"] # type: ignore + return f"{username}/{model_id}" + else: + return f"{organization}/{model_id}" + + @validate_hf_hub_args + def get_repo_discussions( + self, + repo_id: str, + *, + author: Optional[str] = None, + discussion_type: Optional[constants.DiscussionTypeFilter] = None, + discussion_status: Optional[constants.DiscussionStatusFilter] = None, + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> Iterator[Discussion]: + """ + Fetches Discussions and Pull Requests for the given repo. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + author (`str`, *optional*): + Pass a value to filter by discussion author. `None` means no filter. + Default is `None`. + discussion_type (`str`, *optional*): + Set to `"pull_request"` to fetch only pull requests, `"discussion"` + to fetch only discussions. Set to `"all"` or `None` to fetch both. + Default is `None`. + discussion_status (`str`, *optional*): + Set to `"open"` (respectively `"closed"`) to fetch only open + (respectively closed) discussions. Set to `"all"` or `None` + to fetch both. + Default is `None`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if fetching from a dataset or + space, `None` or `"model"` if fetching from a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterator[Discussion]`: An iterator of [`Discussion`] objects. + + Example: + Collecting all discussions of a repo in a list: + + ```python + >>> from huggingface_hub import get_repo_discussions + >>> discussions_list = list(get_repo_discussions(repo_id="bert-base-uncased")) + ``` + + Iterating over discussions of a repo: + + ```python + >>> from huggingface_hub import get_repo_discussions + >>> for discussion in get_repo_discussions(repo_id="bert-base-uncased"): + ... print(discussion.num, discussion.title) + ``` + """ + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + if discussion_type is not None and discussion_type not in constants.DISCUSSION_TYPES: + raise ValueError(f"Invalid discussion_type, must be one of {constants.DISCUSSION_TYPES}") + if discussion_status is not None and discussion_status not in constants.DISCUSSION_STATUS: + raise ValueError(f"Invalid discussion_status, must be one of {constants.DISCUSSION_STATUS}") + + headers = self._build_hf_headers(token=token) + path = f"{self.endpoint}/api/{repo_type}s/{repo_id}/discussions" + + params: Dict[str, Union[str, int]] = {} + if discussion_type is not None: + params["type"] = discussion_type + if discussion_status is not None: + params["status"] = discussion_status + if author is not None: + params["author"] = author + + def _fetch_discussion_page(page_index: int): + params["p"] = page_index + resp = get_session().get(path, headers=headers, params=params) + hf_raise_for_status(resp) + paginated_discussions = resp.json() + total = paginated_discussions["count"] + start = paginated_discussions["start"] + discussions = paginated_discussions["discussions"] + has_next = (start + len(discussions)) < total + return discussions, has_next + + has_next, page_index = True, 0 + + while has_next: + discussions, has_next = _fetch_discussion_page(page_index=page_index) + for discussion in discussions: + yield Discussion( + title=discussion["title"], + num=discussion["num"], + author=discussion.get("author", {}).get("name", "deleted"), + created_at=parse_datetime(discussion["createdAt"]), + status=discussion["status"], + repo_id=discussion["repo"]["name"], + repo_type=discussion["repo"]["type"], + is_pull_request=discussion["isPullRequest"], + endpoint=self.endpoint, + ) + page_index = page_index + 1 + + @validate_hf_hub_args + def get_discussion_details( + self, + repo_id: str, + discussion_num: int, + *, + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> DiscussionWithDetails: + """Fetches a Discussion's / Pull Request 's details from the Hub. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: [`DiscussionWithDetails`] + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + if not isinstance(discussion_num, int) or discussion_num <= 0: + raise ValueError("Invalid discussion_num, must be a positive integer") + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + + path = f"{self.endpoint}/api/{repo_type}s/{repo_id}/discussions/{discussion_num}" + headers = self._build_hf_headers(token=token) + resp = get_session().get(path, params={"diff": "1"}, headers=headers) + hf_raise_for_status(resp) + + discussion_details = resp.json() + is_pull_request = discussion_details["isPullRequest"] + + target_branch = discussion_details["changes"]["base"] if is_pull_request else None + conflicting_files = discussion_details["filesWithConflicts"] if is_pull_request else None + merge_commit_oid = discussion_details["changes"].get("mergeCommitId", None) if is_pull_request else None + + return DiscussionWithDetails( + title=discussion_details["title"], + num=discussion_details["num"], + author=discussion_details.get("author", {}).get("name", "deleted"), + created_at=parse_datetime(discussion_details["createdAt"]), + status=discussion_details["status"], + repo_id=discussion_details["repo"]["name"], + repo_type=discussion_details["repo"]["type"], + is_pull_request=discussion_details["isPullRequest"], + events=[deserialize_event(evt) for evt in discussion_details["events"]], + conflicting_files=conflicting_files, + target_branch=target_branch, + merge_commit_oid=merge_commit_oid, + diff=discussion_details.get("diff"), + endpoint=self.endpoint, + ) + + @validate_hf_hub_args + def create_discussion( + self, + repo_id: str, + title: str, + *, + token: Union[bool, str, None] = None, + description: Optional[str] = None, + repo_type: Optional[str] = None, + pull_request: bool = False, + ) -> DiscussionWithDetails: + """Creates a Discussion or Pull Request. + + Pull Requests created programmatically will be in `"draft"` status. + + Creating a Pull Request with changes can also be done at once with [`HfApi.create_commit`]. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + title (`str`): + The title of the discussion. It can be up to 200 characters long, + and must be at least 3 characters long. Leading and trailing whitespaces + will be stripped. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + description (`str`, *optional*): + An optional description for the Pull Request. + Defaults to `"Discussion opened with the huggingface_hub Python library"` + pull_request (`bool`, *optional*): + Whether to create a Pull Request or discussion. If `True`, creates a Pull Request. + If `False`, creates a discussion. Defaults to `False`. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + + Returns: [`DiscussionWithDetails`] + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + """ + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + + if description is not None: + description = description.strip() + description = ( + description + if description + else ( + f"{'Pull Request' if pull_request else 'Discussion'} opened with the" + " [huggingface_hub Python" + " library](https://huggingface.co/docs/huggingface_hub)" + ) + ) + + headers = self._build_hf_headers(token=token) + resp = get_session().post( + f"{self.endpoint}/api/{repo_type}s/{repo_id}/discussions", + json={ + "title": title.strip(), + "description": description, + "pullRequest": pull_request, + }, + headers=headers, + ) + hf_raise_for_status(resp) + num = resp.json()["num"] + return self.get_discussion_details( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=num, + token=token, + ) + + @validate_hf_hub_args + def create_pull_request( + self, + repo_id: str, + title: str, + *, + token: Union[bool, str, None] = None, + description: Optional[str] = None, + repo_type: Optional[str] = None, + ) -> DiscussionWithDetails: + """Creates a Pull Request . Pull Requests created programmatically will be in `"draft"` status. + + Creating a Pull Request with changes can also be done at once with [`HfApi.create_commit`]; + + This is a wrapper around [`HfApi.create_discussion`]. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + title (`str`): + The title of the discussion. It can be up to 200 characters long, + and must be at least 3 characters long. Leading and trailing whitespaces + will be stripped. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + description (`str`, *optional*): + An optional description for the Pull Request. + Defaults to `"Discussion opened with the huggingface_hub Python library"` + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + + Returns: [`DiscussionWithDetails`] + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + """ + return self.create_discussion( + repo_id=repo_id, + title=title, + token=token, + description=description, + repo_type=repo_type, + pull_request=True, + ) + + def _post_discussion_changes( + self, + *, + repo_id: str, + discussion_num: int, + resource: str, + body: Optional[dict] = None, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> requests.Response: + """Internal utility to POST changes to a Discussion or Pull Request""" + if not isinstance(discussion_num, int) or discussion_num <= 0: + raise ValueError("Invalid discussion_num, must be a positive integer") + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + repo_id = f"{repo_type}s/{repo_id}" + + path = f"{self.endpoint}/api/{repo_id}/discussions/{discussion_num}/{resource}" + + headers = self._build_hf_headers(token=token) + resp = requests.post(path, headers=headers, json=body) + hf_raise_for_status(resp) + return resp + + @validate_hf_hub_args + def comment_discussion( + self, + repo_id: str, + discussion_num: int, + comment: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> DiscussionComment: + """Creates a new comment on the given Discussion. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + comment (`str`): + The content of the comment to create. Comments support markdown formatting. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`DiscussionComment`]: the newly created comment + + + Examples: + ```python + + >>> comment = \"\"\" + ... Hello @otheruser! + ... + ... # This is a title + ... + ... **This is bold**, *this is italic* and ~this is strikethrough~ + ... And [this](http://url) is a link + ... \"\"\" + + >>> HfApi().comment_discussion( + ... repo_id="username/repo_name", + ... discussion_num=34 + ... comment=comment + ... ) + # DiscussionComment(id='deadbeef0000000', type='comment', ...) + + ``` + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + resp = self._post_discussion_changes( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=discussion_num, + token=token, + resource="comment", + body={"comment": comment}, + ) + return deserialize_event(resp.json()["newMessage"]) # type: ignore + + @validate_hf_hub_args + def rename_discussion( + self, + repo_id: str, + discussion_num: int, + new_title: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> DiscussionTitleChange: + """Renames a Discussion. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + new_title (`str`): + The new title for the discussion + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`DiscussionTitleChange`]: the title change event + + + Examples: + ```python + >>> new_title = "New title, fixing a typo" + >>> HfApi().rename_discussion( + ... repo_id="username/repo_name", + ... discussion_num=34 + ... new_title=new_title + ... ) + # DiscussionTitleChange(id='deadbeef0000000', type='title-change', ...) + + ``` + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + resp = self._post_discussion_changes( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=discussion_num, + token=token, + resource="title", + body={"title": new_title}, + ) + return deserialize_event(resp.json()["newTitle"]) # type: ignore + + @validate_hf_hub_args + def change_discussion_status( + self, + repo_id: str, + discussion_num: int, + new_status: Literal["open", "closed"], + *, + token: Union[bool, str, None] = None, + comment: Optional[str] = None, + repo_type: Optional[str] = None, + ) -> DiscussionStatusChange: + """Closes or re-opens a Discussion or Pull Request. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + new_status (`str`): + The new status for the discussion, either `"open"` or `"closed"`. + comment (`str`, *optional*): + An optional comment to post with the status change. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`DiscussionStatusChange`]: the status change event + + + Examples: + ```python + >>> new_title = "New title, fixing a typo" + >>> HfApi().rename_discussion( + ... repo_id="username/repo_name", + ... discussion_num=34 + ... new_title=new_title + ... ) + # DiscussionStatusChange(id='deadbeef0000000', type='status-change', ...) + + ``` + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + if new_status not in ["open", "closed"]: + raise ValueError("Invalid status, valid statuses are: 'open' and 'closed'") + body: Dict[str, str] = {"status": new_status} + if comment and comment.strip(): + body["comment"] = comment.strip() + resp = self._post_discussion_changes( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=discussion_num, + token=token, + resource="status", + body=body, + ) + return deserialize_event(resp.json()["newStatus"]) # type: ignore + + @validate_hf_hub_args + def merge_pull_request( + self, + repo_id: str, + discussion_num: int, + *, + token: Union[bool, str, None] = None, + comment: Optional[str] = None, + repo_type: Optional[str] = None, + ): + """Merges a Pull Request. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + comment (`str`, *optional*): + An optional comment to post with the status change. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`DiscussionStatusChange`]: the status change event + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + self._post_discussion_changes( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=discussion_num, + token=token, + resource="merge", + body={"comment": comment.strip()} if comment and comment.strip() else None, + ) + + @validate_hf_hub_args + def edit_discussion_comment( + self, + repo_id: str, + discussion_num: int, + comment_id: str, + new_content: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> DiscussionComment: + """Edits a comment on a Discussion / Pull Request. + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + comment_id (`str`): + The ID of the comment to edit. + new_content (`str`): + The new content of the comment. Comments support markdown formatting. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`DiscussionComment`]: the edited comment + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + resp = self._post_discussion_changes( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=discussion_num, + token=token, + resource=f"comment/{comment_id.lower()}/edit", + body={"content": new_content}, + ) + return deserialize_event(resp.json()["updatedComment"]) # type: ignore + + @validate_hf_hub_args + def hide_discussion_comment( + self, + repo_id: str, + discussion_num: int, + comment_id: str, + *, + token: Union[bool, str, None] = None, + repo_type: Optional[str] = None, + ) -> DiscussionComment: + """Hides a comment on a Discussion / Pull Request. + + + Hidden comments' content cannot be retrieved anymore. Hiding a comment is irreversible. + + + Args: + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + discussion_num (`int`): + The number of the Discussion or Pull Request . Must be a strictly positive integer. + comment_id (`str`): + The ID of the comment to edit. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if uploading to a dataset or + space, `None` or `"model"` if uploading to a model. Default is + `None`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`DiscussionComment`]: the hidden comment + + + + Raises the following errors: + + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the HuggingFace API returned an error + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if some parameter value is invalid + - [`~utils.RepositoryNotFoundError`] + If the repository to download from cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + + + """ + warnings.warn( + "Hidden comments' content cannot be retrieved anymore. Hiding a comment is irreversible.", + UserWarning, + ) + resp = self._post_discussion_changes( + repo_id=repo_id, + repo_type=repo_type, + discussion_num=discussion_num, + token=token, + resource=f"comment/{comment_id.lower()}/hide", + ) + return deserialize_event(resp.json()["updatedComment"]) # type: ignore + + @validate_hf_hub_args + def add_space_secret( + self, + repo_id: str, + key: str, + value: str, + *, + description: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> None: + """Adds or updates a secret in a Space. + + Secrets allow to set secret keys or tokens to a Space without hardcoding them. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets. + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + key (`str`): + Secret key. Example: `"GITHUB_API_KEY"` + value (`str`): + Secret value. Example: `"your_github_api_key"`. + description (`str`, *optional*): + Secret description. Example: `"Github API key to access the Github API"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + payload = {"key": key, "value": value} + if description is not None: + payload["description"] = description + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/secrets", + headers=self._build_hf_headers(token=token), + json=payload, + ) + hf_raise_for_status(r) + + @validate_hf_hub_args + def delete_space_secret(self, repo_id: str, key: str, *, token: Union[bool, str, None] = None) -> None: + """Deletes a secret from a Space. + + Secrets allow to set secret keys or tokens to a Space without hardcoding them. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets. + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + key (`str`): + Secret key. Example: `"GITHUB_API_KEY"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + r = get_session().delete( + f"{self.endpoint}/api/spaces/{repo_id}/secrets", + headers=self._build_hf_headers(token=token), + json={"key": key}, + ) + hf_raise_for_status(r) + + @validate_hf_hub_args + def get_space_variables(self, repo_id: str, *, token: Union[bool, str, None] = None) -> Dict[str, SpaceVariable]: + """Gets all variables from a Space. + + Variables allow to set environment variables to a Space without hardcoding them. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets-and-environment-variables + + Args: + repo_id (`str`): + ID of the repo to query. Example: `"bigcode/in-the-stack"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + r = get_session().get( + f"{self.endpoint}/api/spaces/{repo_id}/variables", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(r) + return {k: SpaceVariable(k, v) for k, v in r.json().items()} + + @validate_hf_hub_args + def add_space_variable( + self, + repo_id: str, + key: str, + value: str, + *, + description: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> Dict[str, SpaceVariable]: + """Adds or updates a variable in a Space. + + Variables allow to set environment variables to a Space without hardcoding them. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets-and-environment-variables + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + key (`str`): + Variable key. Example: `"MODEL_REPO_ID"` + value (`str`): + Variable value. Example: `"the_model_repo_id"`. + description (`str`): + Description of the variable. Example: `"Model Repo ID of the implemented model"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + payload = {"key": key, "value": value} + if description is not None: + payload["description"] = description + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/variables", + headers=self._build_hf_headers(token=token), + json=payload, + ) + hf_raise_for_status(r) + return {k: SpaceVariable(k, v) for k, v in r.json().items()} + + @validate_hf_hub_args + def delete_space_variable( + self, repo_id: str, key: str, *, token: Union[bool, str, None] = None + ) -> Dict[str, SpaceVariable]: + """Deletes a variable from a Space. + + Variables allow to set environment variables to a Space without hardcoding them. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets-and-environment-variables + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + key (`str`): + Variable key. Example: `"MODEL_REPO_ID"` + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + r = get_session().delete( + f"{self.endpoint}/api/spaces/{repo_id}/variables", + headers=self._build_hf_headers(token=token), + json={"key": key}, + ) + hf_raise_for_status(r) + return {k: SpaceVariable(k, v) for k, v in r.json().items()} + + @validate_hf_hub_args + def get_space_runtime(self, repo_id: str, *, token: Union[bool, str, None] = None) -> SpaceRuntime: + """Gets runtime information about a Space. + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + Returns: + [`SpaceRuntime`]: Runtime information about a Space including Space stage and hardware. + """ + r = get_session().get( + f"{self.endpoint}/api/spaces/{repo_id}/runtime", headers=self._build_hf_headers(token=token) + ) + hf_raise_for_status(r) + return SpaceRuntime(r.json()) + + @validate_hf_hub_args + def request_space_hardware( + self, + repo_id: str, + hardware: SpaceHardware, + *, + token: Union[bool, str, None] = None, + sleep_time: Optional[int] = None, + ) -> SpaceRuntime: + """Request new hardware for a Space. + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + hardware (`str` or [`SpaceHardware`]): + Hardware on which to run the Space. Example: `"t4-medium"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + sleep_time (`int`, *optional*): + Number of seconds of inactivity to wait before a Space is put to sleep. Set to `-1` if you don't want + your Space to sleep (default behavior for upgraded hardware). For free hardware, you can't configure + the sleep time (value is fixed to 48 hours of inactivity). + See https://huggingface.co/docs/hub/spaces-gpus#sleep-time for more details. + Returns: + [`SpaceRuntime`]: Runtime information about a Space including Space stage and hardware. + + + + It is also possible to request hardware directly when creating the Space repo! See [`create_repo`] for details. + + + """ + if sleep_time is not None and hardware == SpaceHardware.CPU_BASIC: + warnings.warn( + "If your Space runs on the default 'cpu-basic' hardware, it will go to sleep if inactive for more" + " than 48 hours. This value is not configurable. If you don't want your Space to deactivate or if" + " you want to set a custom sleep time, you need to upgrade to a paid Hardware.", + UserWarning, + ) + payload: Dict[str, Any] = {"flavor": hardware} + if sleep_time is not None: + payload["sleepTimeSeconds"] = sleep_time + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/hardware", + headers=self._build_hf_headers(token=token), + json=payload, + ) + hf_raise_for_status(r) + return SpaceRuntime(r.json()) + + @validate_hf_hub_args + def set_space_sleep_time( + self, repo_id: str, sleep_time: int, *, token: Union[bool, str, None] = None + ) -> SpaceRuntime: + """Set a custom sleep time for a Space running on upgraded hardware.. + + Your Space will go to sleep after X seconds of inactivity. You are not billed when your Space is in "sleep" + mode. If a new visitor lands on your Space, it will "wake it up". Only upgraded hardware can have a + configurable sleep time. To know more about the sleep stage, please refer to + https://huggingface.co/docs/hub/spaces-gpus#sleep-time. + + Args: + repo_id (`str`): + ID of the repo to update. Example: `"bigcode/in-the-stack"`. + sleep_time (`int`, *optional*): + Number of seconds of inactivity to wait before a Space is put to sleep. Set to `-1` if you don't want + your Space to pause (default behavior for upgraded hardware). For free hardware, you can't configure + the sleep time (value is fixed to 48 hours of inactivity). + See https://huggingface.co/docs/hub/spaces-gpus#sleep-time for more details. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + Returns: + [`SpaceRuntime`]: Runtime information about a Space including Space stage and hardware. + + + + It is also possible to set a custom sleep time when requesting hardware with [`request_space_hardware`]. + + + """ + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/sleeptime", + headers=self._build_hf_headers(token=token), + json={"seconds": sleep_time}, + ) + hf_raise_for_status(r) + runtime = SpaceRuntime(r.json()) + + hardware = runtime.requested_hardware or runtime.hardware + if hardware == SpaceHardware.CPU_BASIC: + warnings.warn( + "If your Space runs on the default 'cpu-basic' hardware, it will go to sleep if inactive for more" + " than 48 hours. This value is not configurable. If you don't want your Space to deactivate or if" + " you want to set a custom sleep time, you need to upgrade to a paid Hardware.", + UserWarning, + ) + return runtime + + @validate_hf_hub_args + def pause_space(self, repo_id: str, *, token: Union[bool, str, None] = None) -> SpaceRuntime: + """Pause your Space. + + A paused Space stops executing until manually restarted by its owner. This is different from the sleeping + state in which free Spaces go after 48h of inactivity. Paused time is not billed to your account, no matter the + hardware you've selected. To restart your Space, use [`restart_space`] and go to your Space settings page. + + For more details, please visit [the docs](https://huggingface.co/docs/hub/spaces-gpus#pause). + + Args: + repo_id (`str`): + ID of the Space to pause. Example: `"Salesforce/BLIP2"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`SpaceRuntime`]: Runtime information about your Space including `stage=PAUSED` and requested hardware. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If your Space is not found (error 404). Most probably wrong repo_id or your space is private but you + are not authenticated. + [`~utils.HfHubHTTPError`]: + 403 Forbidden: only the owner of a Space can pause it. If you want to manage a Space that you don't + own, either ask the owner by opening a Discussion or duplicate the Space. + [`~utils.BadRequestError`]: + If your Space is a static Space. Static Spaces are always running and never billed. If you want to hide + a static Space, you can set it to private. + """ + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/pause", headers=self._build_hf_headers(token=token) + ) + hf_raise_for_status(r) + return SpaceRuntime(r.json()) + + @validate_hf_hub_args + def restart_space( + self, repo_id: str, *, token: Union[bool, str, None] = None, factory_reboot: bool = False + ) -> SpaceRuntime: + """Restart your Space. + + This is the only way to programmatically restart a Space if you've put it on Pause (see [`pause_space`]). You + must be the owner of the Space to restart it. If you are using an upgraded hardware, your account will be + billed as soon as the Space is restarted. You can trigger a restart no matter the current state of a Space. + + For more details, please visit [the docs](https://huggingface.co/docs/hub/spaces-gpus#pause). + + Args: + repo_id (`str`): + ID of the Space to restart. Example: `"Salesforce/BLIP2"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + factory_reboot (`bool`, *optional*): + If `True`, the Space will be rebuilt from scratch without caching any requirements. + + Returns: + [`SpaceRuntime`]: Runtime information about your Space. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If your Space is not found (error 404). Most probably wrong repo_id or your space is private but you + are not authenticated. + [`~utils.HfHubHTTPError`]: + 403 Forbidden: only the owner of a Space can restart it. If you want to restart a Space that you don't + own, either ask the owner by opening a Discussion or duplicate the Space. + [`~utils.BadRequestError`]: + If your Space is a static Space. Static Spaces are always running and never billed. If you want to hide + a static Space, you can set it to private. + """ + params = {} + if factory_reboot: + params["factory"] = "true" + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/restart", headers=self._build_hf_headers(token=token), params=params + ) + hf_raise_for_status(r) + return SpaceRuntime(r.json()) + + @validate_hf_hub_args + def duplicate_space( + self, + from_id: str, + to_id: Optional[str] = None, + *, + private: Optional[bool] = None, + token: Union[bool, str, None] = None, + exist_ok: bool = False, + hardware: Optional[SpaceHardware] = None, + storage: Optional[SpaceStorage] = None, + sleep_time: Optional[int] = None, + secrets: Optional[List[Dict[str, str]]] = None, + variables: Optional[List[Dict[str, str]]] = None, + ) -> RepoUrl: + """Duplicate a Space. + + Programmatically duplicate a Space. The new Space will be created in your account and will be in the same state + as the original Space (running or paused). You can duplicate a Space no matter the current state of a Space. + + Args: + from_id (`str`): + ID of the Space to duplicate. Example: `"pharma/CLIP-Interrogator"`. + to_id (`str`, *optional*): + ID of the new Space. Example: `"dog/CLIP-Interrogator"`. If not provided, the new Space will have the same + name as the original Space, but in your account. + private (`bool`, *optional*): + Whether the new Space should be private or not. Defaults to the same privacy as the original Space. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + exist_ok (`bool`, *optional*, defaults to `False`): + If `True`, do not raise an error if repo already exists. + hardware (`SpaceHardware` or `str`, *optional*): + Choice of Hardware. Example: `"t4-medium"`. See [`SpaceHardware`] for a complete list. + storage (`SpaceStorage` or `str`, *optional*): + Choice of persistent storage tier. Example: `"small"`. See [`SpaceStorage`] for a complete list. + sleep_time (`int`, *optional*): + Number of seconds of inactivity to wait before a Space is put to sleep. Set to `-1` if you don't want + your Space to sleep (default behavior for upgraded hardware). For free hardware, you can't configure + the sleep time (value is fixed to 48 hours of inactivity). + See https://huggingface.co/docs/hub/spaces-gpus#sleep-time for more details. + secrets (`List[Dict[str, str]]`, *optional*): + A list of secret keys to set in your Space. Each item is in the form `{"key": ..., "value": ..., "description": ...}` where description is optional. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets. + variables (`List[Dict[str, str]]`, *optional*): + A list of public environment variables to set in your Space. Each item is in the form `{"key": ..., "value": ..., "description": ...}` where description is optional. + For more details, see https://huggingface.co/docs/hub/spaces-overview#managing-secrets-and-environment-variables. + + Returns: + [`RepoUrl`]: URL to the newly created repo. Value is a subclass of `str` containing + attributes like `endpoint`, `repo_type` and `repo_id`. + + Raises: + [`~utils.RepositoryNotFoundError`]: + If one of `from_id` or `to_id` cannot be found. This may be because it doesn't exist, + or because it is set to `private` and you do not have access. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + If the HuggingFace API returned an error + + Example: + ```python + >>> from huggingface_hub import duplicate_space + + # Duplicate a Space to your account + >>> duplicate_space("multimodalart/dreambooth-training") + RepoUrl('https://huggingface.co/spaces/nateraw/dreambooth-training',...) + + # Can set custom destination id and visibility flag. + >>> duplicate_space("multimodalart/dreambooth-training", to_id="my-dreambooth", private=True) + RepoUrl('https://huggingface.co/spaces/nateraw/my-dreambooth',...) + ``` + """ + # Parse to_id if provided + parsed_to_id = RepoUrl(to_id) if to_id is not None else None + + # Infer target repo_id + to_namespace = ( # set namespace manually or default to username + parsed_to_id.namespace + if parsed_to_id is not None and parsed_to_id.namespace is not None + else self.whoami(token)["name"] + ) + to_repo_name = parsed_to_id.repo_name if to_id is not None else RepoUrl(from_id).repo_name # type: ignore + + # repository must be a valid repo_id (namespace/repo_name). + payload: Dict[str, Any] = {"repository": f"{to_namespace}/{to_repo_name}"} + + keys = ["private", "hardware", "storageTier", "sleepTimeSeconds", "secrets", "variables"] + values = [private, hardware, storage, sleep_time, secrets, variables] + payload.update({k: v for k, v in zip(keys, values) if v is not None}) + + if sleep_time is not None and hardware == SpaceHardware.CPU_BASIC: + warnings.warn( + "If your Space runs on the default 'cpu-basic' hardware, it will go to sleep if inactive for more" + " than 48 hours. This value is not configurable. If you don't want your Space to deactivate or if" + " you want to set a custom sleep time, you need to upgrade to a paid Hardware.", + UserWarning, + ) + + r = get_session().post( + f"{self.endpoint}/api/spaces/{from_id}/duplicate", + headers=self._build_hf_headers(token=token), + json=payload, + ) + + try: + hf_raise_for_status(r) + except HTTPError as err: + if exist_ok and err.response.status_code == 409: + # Repo already exists and `exist_ok=True` + pass + else: + raise + + return RepoUrl(r.json()["url"], endpoint=self.endpoint) + + @validate_hf_hub_args + def request_space_storage( + self, + repo_id: str, + storage: SpaceStorage, + *, + token: Union[bool, str, None] = None, + ) -> SpaceRuntime: + """Request persistent storage for a Space. + + Args: + repo_id (`str`): + ID of the Space to update. Example: `"open-llm-leaderboard/open_llm_leaderboard"`. + storage (`str` or [`SpaceStorage`]): + Storage tier. Either 'small', 'medium', or 'large'. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + Returns: + [`SpaceRuntime`]: Runtime information about a Space including Space stage and hardware. + + + + It is not possible to decrease persistent storage after its granted. To do so, you must delete it + via [`delete_space_storage`]. + + + """ + payload: Dict[str, SpaceStorage] = {"tier": storage} + r = get_session().post( + f"{self.endpoint}/api/spaces/{repo_id}/storage", + headers=self._build_hf_headers(token=token), + json=payload, + ) + hf_raise_for_status(r) + return SpaceRuntime(r.json()) + + @validate_hf_hub_args + def delete_space_storage( + self, + repo_id: str, + *, + token: Union[bool, str, None] = None, + ) -> SpaceRuntime: + """Delete persistent storage for a Space. + + Args: + repo_id (`str`): + ID of the Space to update. Example: `"open-llm-leaderboard/open_llm_leaderboard"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + Returns: + [`SpaceRuntime`]: Runtime information about a Space including Space stage and hardware. + Raises: + [`BadRequestError`] + If space has no persistent storage. + + """ + r = get_session().delete( + f"{self.endpoint}/api/spaces/{repo_id}/storage", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(r) + return SpaceRuntime(r.json()) + + ####################### + # Inference Endpoints # + ####################### + + def list_inference_endpoints( + self, namespace: Optional[str] = None, *, token: Union[bool, str, None] = None + ) -> List[InferenceEndpoint]: + """Lists all inference endpoints for the given namespace. + + Args: + namespace (`str`, *optional*): + The namespace to list endpoints for. Defaults to the current user. Set to `"*"` to list all endpoints + from all namespaces (i.e. personal namespace and all orgs the user belongs to). + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + List[`InferenceEndpoint`]: A list of all inference endpoints for the given namespace. + + Example: + ```python + >>> from huggingface_hub import HfApi + >>> api = HfApi() + >>> api.list_inference_endpoints() + [InferenceEndpoint(name='my-endpoint', ...), ...] + ``` + """ + # Special case: list all endpoints for all namespaces the user has access to + if namespace == "*": + user = self.whoami(token=token) + + # List personal endpoints first + endpoints: List[InferenceEndpoint] = list_inference_endpoints(namespace=self._get_namespace(token=token)) + + # Then list endpoints for all orgs the user belongs to and ignore 401 errors (no billing or no access) + for org in user.get("orgs", []): + try: + endpoints += list_inference_endpoints(namespace=org["name"], token=token) + except HfHubHTTPError as error: + if error.response.status_code == 401: # Either no billing or user don't have access) + logger.debug("Cannot list Inference Endpoints for org '%s': %s", org["name"], error) + pass + + return endpoints + + # Normal case: list endpoints for a specific namespace + namespace = namespace or self._get_namespace(token=token) + + response = get_session().get( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + return [ + InferenceEndpoint.from_raw(endpoint, namespace=namespace, token=token) + for endpoint in response.json()["items"] + ] + + def create_inference_endpoint( + self, + name: str, + *, + repository: str, + framework: str, + accelerator: str, + instance_size: str, + instance_type: str, + region: str, + vendor: str, + account_id: Optional[str] = None, + min_replica: int = 0, + max_replica: int = 1, + scale_to_zero_timeout: int = 15, + revision: Optional[str] = None, + task: Optional[str] = None, + custom_image: Optional[Dict] = None, + secrets: Optional[Dict[str, str]] = None, + type: InferenceEndpointType = InferenceEndpointType.PROTECTED, + namespace: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> InferenceEndpoint: + """Create a new Inference Endpoint. + + Args: + name (`str`): + The unique name for the new Inference Endpoint. + repository (`str`): + The name of the model repository associated with the Inference Endpoint (e.g. `"gpt2"`). + framework (`str`): + The machine learning framework used for the model (e.g. `"custom"`). + accelerator (`str`): + The hardware accelerator to be used for inference (e.g. `"cpu"`). + instance_size (`str`): + The size or type of the instance to be used for hosting the model (e.g. `"x4"`). + instance_type (`str`): + The cloud instance type where the Inference Endpoint will be deployed (e.g. `"intel-icl"`). + region (`str`): + The cloud region in which the Inference Endpoint will be created (e.g. `"us-east-1"`). + vendor (`str`): + The cloud provider or vendor where the Inference Endpoint will be hosted (e.g. `"aws"`). + account_id (`str`, *optional*): + The account ID used to link a VPC to a private Inference Endpoint (if applicable). + min_replica (`int`, *optional*): + The minimum number of replicas (instances) to keep running for the Inference Endpoint. Defaults to 0. + max_replica (`int`, *optional*): + The maximum number of replicas (instances) to scale to for the Inference Endpoint. Defaults to 1. + scale_to_zero_timeout (`int`, *optional*): + The duration in minutes before an inactive endpoint is scaled to zero. Defaults to 15. + revision (`str`, *optional*): + The specific model revision to deploy on the Inference Endpoint (e.g. `"6c0e6080953db56375760c0471a8c5f2929baf11"`). + task (`str`, *optional*): + The task on which to deploy the model (e.g. `"text-classification"`). + custom_image (`Dict`, *optional*): + A custom Docker image to use for the Inference Endpoint. This is useful if you want to deploy an + Inference Endpoint running on the `text-generation-inference` (TGI) framework (see examples). + secrets (`Dict[str, str]`, *optional*): + Secret values to inject in the container environment. + type ([`InferenceEndpointType]`, *optional*): + The type of the Inference Endpoint, which can be `"protected"` (default), `"public"` or `"private"`. + namespace (`str`, *optional*): + The namespace where the Inference Endpoint will be created. Defaults to the current user's namespace. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`InferenceEndpoint`]: information about the updated Inference Endpoint. + + Example: + ```python + >>> from huggingface_hub import HfApi + >>> api = HfApi() + >>> endpoint = api.create_inference_endpoint( + ... "my-endpoint-name", + ... repository="gpt2", + ... framework="pytorch", + ... task="text-generation", + ... accelerator="cpu", + ... vendor="aws", + ... region="us-east-1", + ... type="protected", + ... instance_size="x2", + ... instance_type="intel-icl", + ... ) + >>> endpoint + InferenceEndpoint(name='my-endpoint-name', status="pending",...) + + # Run inference on the endpoint + >>> endpoint.client.text_generation(...) + "..." + ``` + + ```python + # Start an Inference Endpoint running Zephyr-7b-beta on TGI + >>> from huggingface_hub import HfApi + >>> api = HfApi() + >>> endpoint = api.create_inference_endpoint( + ... "aws-zephyr-7b-beta-0486", + ... repository="HuggingFaceH4/zephyr-7b-beta", + ... framework="pytorch", + ... task="text-generation", + ... accelerator="gpu", + ... vendor="aws", + ... region="us-east-1", + ... type="protected", + ... instance_size="x1", + ... instance_type="nvidia-a10g", + ... custom_image={ + ... "health_route": "/health", + ... "env": { + ... "MAX_BATCH_PREFILL_TOKENS": "2048", + ... "MAX_INPUT_LENGTH": "1024", + ... "MAX_TOTAL_TOKENS": "1512", + ... "MODEL_ID": "/repository" + ... }, + ... "url": "ghcr.io/huggingface/text-generation-inference:1.1.0", + ... }, + ... secrets={"MY_SECRET_KEY": "secret_value"}, + ... ) + + ``` + """ + namespace = namespace or self._get_namespace(token=token) + + image = {"custom": custom_image} if custom_image is not None else {"huggingface": {}} + payload: Dict = { + "accountId": account_id, + "compute": { + "accelerator": accelerator, + "instanceSize": instance_size, + "instanceType": instance_type, + "scaling": { + "maxReplica": max_replica, + "minReplica": min_replica, + "scaleToZeroTimeout": scale_to_zero_timeout, + }, + }, + "model": { + "framework": framework, + "repository": repository, + "revision": revision, + "task": task, + "image": image, + }, + "name": name, + "provider": { + "region": region, + "vendor": vendor, + }, + "type": type, + } + if secrets: + payload["model"]["secrets"] = secrets + response = get_session().post( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}", + headers=self._build_hf_headers(token=token), + json=payload, + ) + hf_raise_for_status(response) + + return InferenceEndpoint.from_raw(response.json(), namespace=namespace, token=token) + + def get_inference_endpoint( + self, name: str, *, namespace: Optional[str] = None, token: Union[bool, str, None] = None + ) -> InferenceEndpoint: + """Get information about an Inference Endpoint. + + Args: + name (`str`): + The name of the Inference Endpoint to retrieve information about. + namespace (`str`, *optional*): + The namespace in which the Inference Endpoint is located. Defaults to the current user. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`InferenceEndpoint`]: information about the requested Inference Endpoint. + + Example: + ```python + >>> from huggingface_hub import HfApi + >>> api = HfApi() + >>> endpoint = api.get_inference_endpoint("my-text-to-image") + >>> endpoint + InferenceEndpoint(name='my-text-to-image', ...) + + # Get status + >>> endpoint.status + 'running' + >>> endpoint.url + 'https://my-text-to-image.region.vendor.endpoints.huggingface.cloud' + + # Run inference + >>> endpoint.client.text_to_image(...) + ``` + """ + namespace = namespace or self._get_namespace(token=token) + + response = get_session().get( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}/{name}", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + return InferenceEndpoint.from_raw(response.json(), namespace=namespace, token=token) + + def update_inference_endpoint( + self, + name: str, + *, + # Compute update + accelerator: Optional[str] = None, + instance_size: Optional[str] = None, + instance_type: Optional[str] = None, + min_replica: Optional[int] = None, + max_replica: Optional[int] = None, + scale_to_zero_timeout: Optional[int] = None, + # Model update + repository: Optional[str] = None, + framework: Optional[str] = None, + revision: Optional[str] = None, + task: Optional[str] = None, + custom_image: Optional[Dict] = None, + secrets: Optional[Dict[str, str]] = None, + # Other + namespace: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> InferenceEndpoint: + """Update an Inference Endpoint. + + This method allows the update of either the compute configuration, the deployed model, or both. All arguments are + optional but at least one must be provided. + + For convenience, you can also update an Inference Endpoint using [`InferenceEndpoint.update`]. + + Args: + name (`str`): + The name of the Inference Endpoint to update. + + accelerator (`str`, *optional*): + The hardware accelerator to be used for inference (e.g. `"cpu"`). + instance_size (`str`, *optional*): + The size or type of the instance to be used for hosting the model (e.g. `"x4"`). + instance_type (`str`, *optional*): + The cloud instance type where the Inference Endpoint will be deployed (e.g. `"intel-icl"`). + min_replica (`int`, *optional*): + The minimum number of replicas (instances) to keep running for the Inference Endpoint. + max_replica (`int`, *optional*): + The maximum number of replicas (instances) to scale to for the Inference Endpoint. + scale_to_zero_timeout (`int`, *optional*): + The duration in minutes before an inactive endpoint is scaled to zero. + + repository (`str`, *optional*): + The name of the model repository associated with the Inference Endpoint (e.g. `"gpt2"`). + framework (`str`, *optional*): + The machine learning framework used for the model (e.g. `"custom"`). + revision (`str`, *optional*): + The specific model revision to deploy on the Inference Endpoint (e.g. `"6c0e6080953db56375760c0471a8c5f2929baf11"`). + task (`str`, *optional*): + The task on which to deploy the model (e.g. `"text-classification"`). + custom_image (`Dict`, *optional*): + A custom Docker image to use for the Inference Endpoint. This is useful if you want to deploy an + Inference Endpoint running on the `text-generation-inference` (TGI) framework (see examples). + secrets (`Dict[str, str]`, *optional*): + Secret values to inject in the container environment. + namespace (`str`, *optional*): + The namespace where the Inference Endpoint will be updated. Defaults to the current user's namespace. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`InferenceEndpoint`]: information about the updated Inference Endpoint. + """ + namespace = namespace or self._get_namespace(token=token) + + # Populate only the fields that are not None + payload: Dict = defaultdict(lambda: defaultdict(dict)) + if accelerator is not None: + payload["compute"]["accelerator"] = accelerator + if instance_size is not None: + payload["compute"]["instanceSize"] = instance_size + if instance_type is not None: + payload["compute"]["instanceType"] = instance_type + if max_replica is not None: + payload["compute"]["scaling"]["maxReplica"] = max_replica + if min_replica is not None: + payload["compute"]["scaling"]["minReplica"] = min_replica + if scale_to_zero_timeout is not None: + payload["compute"]["scaling"]["scaleToZeroTimeout"] = scale_to_zero_timeout + if repository is not None: + payload["model"]["repository"] = repository + if framework is not None: + payload["model"]["framework"] = framework + if revision is not None: + payload["model"]["revision"] = revision + if task is not None: + payload["model"]["task"] = task + if custom_image is not None: + payload["model"]["image"] = {"custom": custom_image} + if secrets is not None: + payload["model"]["secrets"] = secrets + + response = get_session().put( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}/{name}", + headers=self._build_hf_headers(token=token), + json=payload, + ) + hf_raise_for_status(response) + + return InferenceEndpoint.from_raw(response.json(), namespace=namespace, token=token) + + def delete_inference_endpoint( + self, name: str, *, namespace: Optional[str] = None, token: Union[bool, str, None] = None + ) -> None: + """Delete an Inference Endpoint. + + This operation is not reversible. If you don't want to be charged for an Inference Endpoint, it is preferable + to pause it with [`pause_inference_endpoint`] or scale it to zero with [`scale_to_zero_inference_endpoint`]. + + For convenience, you can also delete an Inference Endpoint using [`InferenceEndpoint.delete`]. + + Args: + name (`str`): + The name of the Inference Endpoint to delete. + namespace (`str`, *optional*): + The namespace in which the Inference Endpoint is located. Defaults to the current user. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + """ + namespace = namespace or self._get_namespace(token=token) + response = get_session().delete( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}/{name}", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + def pause_inference_endpoint( + self, name: str, *, namespace: Optional[str] = None, token: Union[bool, str, None] = None + ) -> InferenceEndpoint: + """Pause an Inference Endpoint. + + A paused Inference Endpoint will not be charged. It can be resumed at any time using [`resume_inference_endpoint`]. + This is different than scaling the Inference Endpoint to zero with [`scale_to_zero_inference_endpoint`], which + would be automatically restarted when a request is made to it. + + For convenience, you can also pause an Inference Endpoint using [`pause_inference_endpoint`]. + + Args: + name (`str`): + The name of the Inference Endpoint to pause. + namespace (`str`, *optional*): + The namespace in which the Inference Endpoint is located. Defaults to the current user. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`InferenceEndpoint`]: information about the paused Inference Endpoint. + """ + namespace = namespace or self._get_namespace(token=token) + + response = get_session().post( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}/{name}/pause", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + return InferenceEndpoint.from_raw(response.json(), namespace=namespace, token=token) + + def resume_inference_endpoint( + self, + name: str, + *, + namespace: Optional[str] = None, + running_ok: bool = True, + token: Union[bool, str, None] = None, + ) -> InferenceEndpoint: + """Resume an Inference Endpoint. + + For convenience, you can also resume an Inference Endpoint using [`InferenceEndpoint.resume`]. + + Args: + name (`str`): + The name of the Inference Endpoint to resume. + namespace (`str`, *optional*): + The namespace in which the Inference Endpoint is located. Defaults to the current user. + running_ok (`bool`, *optional*): + If `True`, the method will not raise an error if the Inference Endpoint is already running. Defaults to + `True`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`InferenceEndpoint`]: information about the resumed Inference Endpoint. + """ + namespace = namespace or self._get_namespace(token=token) + + response = get_session().post( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}/{name}/resume", + headers=self._build_hf_headers(token=token), + ) + try: + hf_raise_for_status(response) + except HfHubHTTPError as error: + # If already running (and it's ok), then fetch current status and return + if running_ok and error.response.status_code == 400 and "already running" in error.response.text: + return self.get_inference_endpoint(name, namespace=namespace, token=token) + # Otherwise, raise the error + raise + + return InferenceEndpoint.from_raw(response.json(), namespace=namespace, token=token) + + def scale_to_zero_inference_endpoint( + self, name: str, *, namespace: Optional[str] = None, token: Union[bool, str, None] = None + ) -> InferenceEndpoint: + """Scale Inference Endpoint to zero. + + An Inference Endpoint scaled to zero will not be charged. It will be resume on the next request to it, with a + cold start delay. This is different than pausing the Inference Endpoint with [`pause_inference_endpoint`], which + would require a manual resume with [`resume_inference_endpoint`]. + + For convenience, you can also scale an Inference Endpoint to zero using [`InferenceEndpoint.scale_to_zero`]. + + Args: + name (`str`): + The name of the Inference Endpoint to scale to zero. + namespace (`str`, *optional*): + The namespace in which the Inference Endpoint is located. Defaults to the current user. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`InferenceEndpoint`]: information about the scaled-to-zero Inference Endpoint. + """ + namespace = namespace or self._get_namespace(token=token) + + response = get_session().post( + f"{constants.INFERENCE_ENDPOINTS_ENDPOINT}/endpoint/{namespace}/{name}/scale-to-zero", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + return InferenceEndpoint.from_raw(response.json(), namespace=namespace, token=token) + + def _get_namespace(self, token: Union[bool, str, None] = None) -> str: + """Get the default namespace for the current user.""" + me = self.whoami(token=token) + if me["type"] == "user": + return me["name"] + else: + raise ValueError( + "Cannot determine default namespace. You must provide a 'namespace' as input or be logged in as a" + " user." + ) + + ######################## + # Collection Endpoints # + ######################## + @validate_hf_hub_args + def list_collections( + self, + *, + owner: Union[List[str], str, None] = None, + item: Union[List[str], str, None] = None, + sort: Optional[Literal["lastModified", "trending", "upvotes"]] = None, + limit: Optional[int] = None, + token: Union[bool, str, None] = None, + ) -> Iterable[Collection]: + """List collections on the Huggingface Hub, given some filters. + + + + When listing collections, the item list per collection is truncated to 4 items maximum. To retrieve all items + from a collection, you must use [`get_collection`]. + + + + Args: + owner (`List[str]` or `str`, *optional*): + Filter by owner's username. + item (`List[str]` or `str`, *optional*): + Filter collections containing a particular items. Example: `"models/teknium/OpenHermes-2.5-Mistral-7B"`, `"datasets/squad"` or `"papers/2311.12983"`. + sort (`Literal["lastModified", "trending", "upvotes"]`, *optional*): + Sort collections by last modified, trending or upvotes. + limit (`int`, *optional*): + Maximum number of collections to be returned. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[Collection]`: an iterable of [`Collection`] objects. + """ + # Construct the API endpoint + path = f"{self.endpoint}/api/collections" + headers = self._build_hf_headers(token=token) + params: Dict = {} + if owner is not None: + params.update({"owner": owner}) + if item is not None: + params.update({"item": item}) + if sort is not None: + params.update({"sort": sort}) + if limit is not None: + params.update({"limit": limit}) + + # Paginate over the results until limit is reached + items = paginate(path, headers=headers, params=params) + if limit is not None: + items = islice(items, limit) # Do not iterate over all pages + + # Parse as Collection and return + for position, collection_data in enumerate(items): + yield Collection(position=position, **collection_data) + + def get_collection(self, collection_slug: str, *, token: Union[bool, str, None] = None) -> Collection: + """Gets information about a Collection on the Hub. + + Args: + collection_slug (`str`): + Slug of the collection of the Hub. Example: `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: [`Collection`] + + Example: + + ```py + >>> from huggingface_hub import get_collection + >>> collection = get_collection("TheBloke/recent-models-64f9a55bb3115b4f513ec026") + >>> collection.title + 'Recent models' + >>> len(collection.items) + 37 + >>> collection.items[0] + CollectionItem( + item_object_id='651446103cd773a050bf64c2', + item_id='TheBloke/U-Amethyst-20B-AWQ', + item_type='model', + position=88, + note=None + ) + ``` + """ + r = get_session().get( + f"{self.endpoint}/api/collections/{collection_slug}", headers=self._build_hf_headers(token=token) + ) + hf_raise_for_status(r) + return Collection(**{**r.json(), "endpoint": self.endpoint}) + + def create_collection( + self, + title: str, + *, + namespace: Optional[str] = None, + description: Optional[str] = None, + private: bool = False, + exists_ok: bool = False, + token: Union[bool, str, None] = None, + ) -> Collection: + """Create a new Collection on the Hub. + + Args: + title (`str`): + Title of the collection to create. Example: `"Recent models"`. + namespace (`str`, *optional*): + Namespace of the collection to create (username or org). Will default to the owner name. + description (`str`, *optional*): + Description of the collection to create. + private (`bool`, *optional*): + Whether the collection should be private or not. Defaults to `False` (i.e. public collection). + exists_ok (`bool`, *optional*): + If `True`, do not raise an error if collection already exists. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: [`Collection`] + + Example: + + ```py + >>> from huggingface_hub import create_collection + >>> collection = create_collection( + ... title="ICCV 2023", + ... description="Portfolio of models, papers and demos I presented at ICCV 2023", + ... ) + >>> collection.slug + "username/iccv-2023-64f9a55bb3115b4f513ec026" + ``` + """ + if namespace is None: + namespace = self.whoami(token)["name"] + + payload = { + "title": title, + "namespace": namespace, + "private": private, + } + if description is not None: + payload["description"] = description + + r = get_session().post( + f"{self.endpoint}/api/collections", headers=self._build_hf_headers(token=token), json=payload + ) + try: + hf_raise_for_status(r) + except HTTPError as err: + if exists_ok and err.response.status_code == 409: + # Collection already exists and `exists_ok=True` + slug = r.json()["slug"] + return self.get_collection(slug, token=token) + else: + raise + return Collection(**{**r.json(), "endpoint": self.endpoint}) + + def update_collection_metadata( + self, + collection_slug: str, + *, + title: Optional[str] = None, + description: Optional[str] = None, + position: Optional[int] = None, + private: Optional[bool] = None, + theme: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> Collection: + """Update metadata of a collection on the Hub. + + All arguments are optional. Only provided metadata will be updated. + + Args: + collection_slug (`str`): + Slug of the collection to update. Example: `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + title (`str`): + Title of the collection to update. + description (`str`, *optional*): + Description of the collection to update. + position (`int`, *optional*): + New position of the collection in the list of collections of the user. + private (`bool`, *optional*): + Whether the collection should be private or not. + theme (`str`, *optional*): + Theme of the collection on the Hub. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: [`Collection`] + + Example: + + ```py + >>> from huggingface_hub import update_collection_metadata + >>> collection = update_collection_metadata( + ... collection_slug="username/iccv-2023-64f9a55bb3115b4f513ec026", + ... title="ICCV Oct. 2023" + ... description="Portfolio of models, datasets, papers and demos I presented at ICCV Oct. 2023", + ... private=False, + ... theme="pink", + ... ) + >>> collection.slug + "username/iccv-oct-2023-64f9a55bb3115b4f513ec026" + # ^collection slug got updated but not the trailing ID + ``` + """ + payload = { + "position": position, + "private": private, + "theme": theme, + "title": title, + "description": description, + } + r = get_session().patch( + f"{self.endpoint}/api/collections/{collection_slug}", + headers=self._build_hf_headers(token=token), + # Only send not-none values to the API + json={key: value for key, value in payload.items() if value is not None}, + ) + hf_raise_for_status(r) + return Collection(**{**r.json()["data"], "endpoint": self.endpoint}) + + def delete_collection( + self, collection_slug: str, *, missing_ok: bool = False, token: Union[bool, str, None] = None + ) -> None: + """Delete a collection on the Hub. + + Args: + collection_slug (`str`): + Slug of the collection to delete. Example: `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + missing_ok (`bool`, *optional*): + If `True`, do not raise an error if collection doesn't exists. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Example: + + ```py + >>> from huggingface_hub import delete_collection + >>> collection = delete_collection("username/useless-collection-64f9a55bb3115b4f513ec026", missing_ok=True) + ``` + + + + This is a non-revertible action. A deleted collection cannot be restored. + + + """ + r = get_session().delete( + f"{self.endpoint}/api/collections/{collection_slug}", headers=self._build_hf_headers(token=token) + ) + try: + hf_raise_for_status(r) + except HTTPError as err: + if missing_ok and err.response.status_code == 404: + # Collection doesn't exists and `missing_ok=True` + return + else: + raise + + def add_collection_item( + self, + collection_slug: str, + item_id: str, + item_type: CollectionItemType_T, + *, + note: Optional[str] = None, + exists_ok: bool = False, + token: Union[bool, str, None] = None, + ) -> Collection: + """Add an item to a collection on the Hub. + + Args: + collection_slug (`str`): + Slug of the collection to update. Example: `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + item_id (`str`): + ID of the item to add to the collection. It can be the ID of a repo on the Hub (e.g. `"facebook/bart-large-mnli"`) + or a paper id (e.g. `"2307.09288"`). + item_type (`str`): + Type of the item to add. Can be one of `"model"`, `"dataset"`, `"space"` or `"paper"`. + note (`str`, *optional*): + A note to attach to the item in the collection. The maximum size for a note is 500 characters. + exists_ok (`bool`, *optional*): + If `True`, do not raise an error if item already exists. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: [`Collection`] + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the item you try to add to the collection does not exist on the Hub. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 409 if the item you try to add to the collection is already in the collection (and exists_ok=False) + + Example: + + ```py + >>> from huggingface_hub import add_collection_item + >>> collection = add_collection_item( + ... collection_slug="davanstrien/climate-64f99dc2a5067f6b65531bab", + ... item_id="pierre-loic/climate-news-articles", + ... item_type="dataset" + ... ) + >>> collection.items[-1].item_id + "pierre-loic/climate-news-articles" + # ^item got added to the collection on last position + + # Add item with a note + >>> add_collection_item( + ... collection_slug="davanstrien/climate-64f99dc2a5067f6b65531bab", + ... item_id="datasets/climate_fever", + ... item_type="dataset" + ... note="This dataset adopts the FEVER methodology that consists of 1,535 real-world claims regarding climate-change collected on the internet." + ... ) + (...) + ``` + """ + payload: Dict[str, Any] = {"item": {"id": item_id, "type": item_type}} + if note is not None: + payload["note"] = note + r = get_session().post( + f"{self.endpoint}/api/collections/{collection_slug}/items", + headers=self._build_hf_headers(token=token), + json=payload, + ) + try: + hf_raise_for_status(r) + except HTTPError as err: + if exists_ok and err.response.status_code == 409: + # Item already exists and `exists_ok=True` + return self.get_collection(collection_slug, token=token) + else: + raise + return Collection(**{**r.json(), "endpoint": self.endpoint}) + + def update_collection_item( + self, + collection_slug: str, + item_object_id: str, + *, + note: Optional[str] = None, + position: Optional[int] = None, + token: Union[bool, str, None] = None, + ) -> None: + """Update an item in a collection. + + Args: + collection_slug (`str`): + Slug of the collection to update. Example: `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + item_object_id (`str`): + ID of the item in the collection. This is not the id of the item on the Hub (repo_id or paper id). + It must be retrieved from a [`CollectionItem`] object. Example: `collection.items[0].item_object_id`. + note (`str`, *optional*): + A note to attach to the item in the collection. The maximum size for a note is 500 characters. + position (`int`, *optional*): + New position of the item in the collection. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Example: + + ```py + >>> from huggingface_hub import get_collection, update_collection_item + + # Get collection first + >>> collection = get_collection("TheBloke/recent-models-64f9a55bb3115b4f513ec026") + + # Update item based on its ID (add note + update position) + >>> update_collection_item( + ... collection_slug="TheBloke/recent-models-64f9a55bb3115b4f513ec026", + ... item_object_id=collection.items[-1].item_object_id, + ... note="Newly updated model!" + ... position=0, + ... ) + ``` + """ + payload = {"position": position, "note": note} + r = get_session().patch( + f"{self.endpoint}/api/collections/{collection_slug}/items/{item_object_id}", + headers=self._build_hf_headers(token=token), + # Only send not-none values to the API + json={key: value for key, value in payload.items() if value is not None}, + ) + hf_raise_for_status(r) + + def delete_collection_item( + self, + collection_slug: str, + item_object_id: str, + *, + missing_ok: bool = False, + token: Union[bool, str, None] = None, + ) -> None: + """Delete an item from a collection. + + Args: + collection_slug (`str`): + Slug of the collection to update. Example: `"TheBloke/recent-models-64f9a55bb3115b4f513ec026"`. + item_object_id (`str`): + ID of the item in the collection. This is not the id of the item on the Hub (repo_id or paper id). + It must be retrieved from a [`CollectionItem`] object. Example: `collection.items[0]._id`. + missing_ok (`bool`, *optional*): + If `True`, do not raise an error if item doesn't exists. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Example: + + ```py + >>> from huggingface_hub import get_collection, delete_collection_item + + # Get collection first + >>> collection = get_collection("TheBloke/recent-models-64f9a55bb3115b4f513ec026") + + # Delete item based on its ID + >>> delete_collection_item( + ... collection_slug="TheBloke/recent-models-64f9a55bb3115b4f513ec026", + ... item_object_id=collection.items[-1].item_object_id, + ... ) + ``` + """ + r = get_session().delete( + f"{self.endpoint}/api/collections/{collection_slug}/items/{item_object_id}", + headers=self._build_hf_headers(token=token), + ) + try: + hf_raise_for_status(r) + except HTTPError as err: + if missing_ok and err.response.status_code == 404: + # Item already deleted and `missing_ok=True` + return + else: + raise + + ########################## + # Manage access requests # + ########################## + + @validate_hf_hub_args + def list_pending_access_requests( + self, repo_id: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> List[AccessRequest]: + """ + Get pending access requests for a given gated repo. + + A pending request means the user has requested access to the repo but the request has not been processed yet. + If the approval mode is automatic, this list should be empty. Pending requests can be accepted or rejected + using [`accept_access_request`] and [`reject_access_request`]. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to get access requests for. + repo_type (`str`, *optional*): + The type of the repo to get access requests for. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `List[AccessRequest]`: A list of [`AccessRequest`] objects. Each time contains a `username`, `email`, + `status` and `timestamp` attribute. If the gated repo has a custom form, the `fields` attribute will + be populated with user's answers. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + + Example: + ```py + >>> from huggingface_hub import list_pending_access_requests, accept_access_request + + # List pending requests + >>> requests = list_pending_access_requests("meta-llama/Llama-2-7b") + >>> len(requests) + 411 + >>> requests[0] + [ + AccessRequest( + username='clem', + fullname='Clem 🤗', + email='***', + timestamp=datetime.datetime(2023, 11, 23, 18, 4, 53, 828000, tzinfo=datetime.timezone.utc), + status='pending', + fields=None, + ), + ... + ] + + # Accept Clem's request + >>> accept_access_request("meta-llama/Llama-2-7b", "clem") + ``` + """ + return self._list_access_requests(repo_id, "pending", repo_type=repo_type, token=token) + + @validate_hf_hub_args + def list_accepted_access_requests( + self, repo_id: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> List[AccessRequest]: + """ + Get accepted access requests for a given gated repo. + + An accepted request means the user has requested access to the repo and the request has been accepted. The user + can download any file of the repo. If the approval mode is automatic, this list should contains by default all + requests. Accepted requests can be cancelled or rejected at any time using [`cancel_access_request`] and + [`reject_access_request`]. A cancelled request will go back to the pending list while a rejected request will + go to the rejected list. In both cases, the user will lose access to the repo. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to get access requests for. + repo_type (`str`, *optional*): + The type of the repo to get access requests for. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `List[AccessRequest]`: A list of [`AccessRequest`] objects. Each time contains a `username`, `email`, + `status` and `timestamp` attribute. If the gated repo has a custom form, the `fields` attribute will + be populated with user's answers. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + + Example: + ```py + >>> from huggingface_hub import list_accepted_access_requests + + >>> requests = list_accepted_access_requests("meta-llama/Llama-2-7b") + >>> len(requests) + 411 + >>> requests[0] + [ + AccessRequest( + username='clem', + fullname='Clem 🤗', + email='***', + timestamp=datetime.datetime(2023, 11, 23, 18, 4, 53, 828000, tzinfo=datetime.timezone.utc), + status='accepted', + fields=None, + ), + ... + ] + ``` + """ + return self._list_access_requests(repo_id, "accepted", repo_type=repo_type, token=token) + + @validate_hf_hub_args + def list_rejected_access_requests( + self, repo_id: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> List[AccessRequest]: + """ + Get rejected access requests for a given gated repo. + + A rejected request means the user has requested access to the repo and the request has been explicitly rejected + by a repo owner (either you or another user from your organization). The user cannot download any file of the + repo. Rejected requests can be accepted or cancelled at any time using [`accept_access_request`] and + [`cancel_access_request`]. A cancelled request will go back to the pending list while an accepted request will + go to the accepted list. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to get access requests for. + repo_type (`str`, *optional*): + The type of the repo to get access requests for. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `List[AccessRequest]`: A list of [`AccessRequest`] objects. Each time contains a `username`, `email`, + `status` and `timestamp` attribute. If the gated repo has a custom form, the `fields` attribute will + be populated with user's answers. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + + Example: + ```py + >>> from huggingface_hub import list_rejected_access_requests + + >>> requests = list_rejected_access_requests("meta-llama/Llama-2-7b") + >>> len(requests) + 411 + >>> requests[0] + [ + AccessRequest( + username='clem', + fullname='Clem 🤗', + email='***', + timestamp=datetime.datetime(2023, 11, 23, 18, 4, 53, 828000, tzinfo=datetime.timezone.utc), + status='rejected', + fields=None, + ), + ... + ] + ``` + """ + return self._list_access_requests(repo_id, "rejected", repo_type=repo_type, token=token) + + def _list_access_requests( + self, + repo_id: str, + status: Literal["accepted", "rejected", "pending"], + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> List[AccessRequest]: + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + + response = get_session().get( + f"{constants.ENDPOINT}/api/{repo_type}s/{repo_id}/user-access-request/{status}", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + return [ + AccessRequest( + username=request["user"]["user"], + fullname=request["user"]["fullname"], + email=request["user"].get("email"), + status=request["status"], + timestamp=parse_datetime(request["timestamp"]), + fields=request.get("fields"), # only if custom fields in form + ) + for request in response.json() + ] + + @validate_hf_hub_args + def cancel_access_request( + self, repo_id: str, user: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> None: + """ + Cancel an access request from a user for a given gated repo. + + A cancelled request will go back to the pending list and the user will lose access to the repo. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to cancel access request for. + user (`str`): + The username of the user which access request should be cancelled. + repo_type (`str`, *optional*): + The type of the repo to cancel access request for. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user does not exist on the Hub. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user access request cannot be found. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user access request is already in the pending list. + """ + self._handle_access_request(repo_id, user, "pending", repo_type=repo_type, token=token) + + @validate_hf_hub_args + def accept_access_request( + self, repo_id: str, user: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> None: + """ + Accept an access request from a user for a given gated repo. + + Once the request is accepted, the user will be able to download any file of the repo and access the community + tab. If the approval mode is automatic, you don't have to accept requests manually. An accepted request can be + cancelled or rejected at any time using [`cancel_access_request`] and [`reject_access_request`]. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to accept access request for. + user (`str`): + The username of the user which access request should be accepted. + repo_type (`str`, *optional*): + The type of the repo to accept access request for. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user does not exist on the Hub. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user access request cannot be found. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user access request is already in the accepted list. + """ + self._handle_access_request(repo_id, user, "accepted", repo_type=repo_type, token=token) + + @validate_hf_hub_args + def reject_access_request( + self, repo_id: str, user: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> None: + """ + Reject an access request from a user for a given gated repo. + + A rejected request will go to the rejected list. The user cannot download any file of the repo. Rejected + requests can be accepted or cancelled at any time using [`accept_access_request`] and [`cancel_access_request`]. + A cancelled request will go back to the pending list while an accepted request will go to the accepted list. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to reject access request for. + user (`str`): + The username of the user which access request should be rejected. + repo_type (`str`, *optional*): + The type of the repo to reject access request for. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user does not exist on the Hub. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user access request cannot be found. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user access request is already in the rejected list. + """ + self._handle_access_request(repo_id, user, "rejected", repo_type=repo_type, token=token) + + @validate_hf_hub_args + def _handle_access_request( + self, + repo_id: str, + user: str, + status: Literal["accepted", "rejected", "pending"], + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> None: + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + + response = get_session().post( + f"{constants.ENDPOINT}/api/{repo_type}s/{repo_id}/user-access-request/handle", + headers=self._build_hf_headers(token=token), + json={"user": user, "status": status}, + ) + hf_raise_for_status(response) + + @validate_hf_hub_args + def grant_access( + self, repo_id: str, user: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> None: + """ + Grant access to a user for a given gated repo. + + Granting access don't require for the user to send an access request by themselves. The user is automatically + added to the accepted list meaning they can download the files You can revoke the granted access at any time + using [`cancel_access_request`] or [`reject_access_request`]. + + For more info about gated repos, see https://huggingface.co/docs/hub/models-gated. + + Args: + repo_id (`str`): + The id of the repo to grant access to. + user (`str`): + The username of the user to grant access. + repo_type (`str`, *optional*): + The type of the repo to grant access to. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the repo is not gated. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 400 if the user already has access to the repo. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 403 if you only have read-only access to the repo. This can be the case if you don't have `write` + or `admin` role in the organization the repo belongs to or if you passed a `read` token. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 if the user does not exist on the Hub. + """ + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + + response = get_session().post( + f"{constants.ENDPOINT}/api/{repo_type}s/{repo_id}/user-access-request/grant", + headers=self._build_hf_headers(token=token), + json={"user": user}, + ) + hf_raise_for_status(response) + return response.json() + + ################### + # Manage webhooks # + ################### + + @validate_hf_hub_args + def get_webhook(self, webhook_id: str, *, token: Union[bool, str, None] = None) -> WebhookInfo: + """Get a webhook by its id. + + Args: + webhook_id (`str`): + The unique identifier of the webhook to get. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`WebhookInfo`]: + Info about the webhook. + + Example: + ```python + >>> from huggingface_hub import get_webhook + >>> webhook = get_webhook("654bbbc16f2ec14d77f109cc") + >>> print(webhook) + WebhookInfo( + id="654bbbc16f2ec14d77f109cc", + watched=[WebhookWatchedItem(type="user", name="julien-c"), WebhookWatchedItem(type="org", name="HuggingFaceH4")], + url="https://webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + secret="my-secret", + domains=["repo", "discussion"], + disabled=False, + ) + ``` + """ + response = get_session().get( + f"{constants.ENDPOINT}/api/settings/webhooks/{webhook_id}", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + webhook_data = response.json()["webhook"] + + watched_items = [WebhookWatchedItem(type=item["type"], name=item["name"]) for item in webhook_data["watched"]] + + webhook = WebhookInfo( + id=webhook_data["id"], + url=webhook_data["url"], + watched=watched_items, + domains=webhook_data["domains"], + secret=webhook_data.get("secret"), + disabled=webhook_data["disabled"], + ) + + return webhook + + @validate_hf_hub_args + def list_webhooks(self, *, token: Union[bool, str, None] = None) -> List[WebhookInfo]: + """List all configured webhooks. + + Args: + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `List[WebhookInfo]`: + List of webhook info objects. + + Example: + ```python + >>> from huggingface_hub import list_webhooks + >>> webhooks = list_webhooks() + >>> len(webhooks) + 2 + >>> webhooks[0] + WebhookInfo( + id="654bbbc16f2ec14d77f109cc", + watched=[WebhookWatchedItem(type="user", name="julien-c"), WebhookWatchedItem(type="org", name="HuggingFaceH4")], + url="https://webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + secret="my-secret", + domains=["repo", "discussion"], + disabled=False, + ) + ``` + """ + response = get_session().get( + f"{constants.ENDPOINT}/api/settings/webhooks", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + webhooks_data = response.json() + + return [ + WebhookInfo( + id=webhook["id"], + url=webhook["url"], + watched=[WebhookWatchedItem(type=item["type"], name=item["name"]) for item in webhook["watched"]], + domains=webhook["domains"], + secret=webhook.get("secret"), + disabled=webhook["disabled"], + ) + for webhook in webhooks_data + ] + + @validate_hf_hub_args + def create_webhook( + self, + *, + url: str, + watched: List[Union[Dict, WebhookWatchedItem]], + domains: Optional[List[constants.WEBHOOK_DOMAIN_T]] = None, + secret: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> WebhookInfo: + """Create a new webhook. + + Args: + url (`str`): + URL to send the payload to. + watched (`List[WebhookWatchedItem]`): + List of [`WebhookWatchedItem`] to be watched by the webhook. It can be users, orgs, models, datasets or spaces. + Watched items can also be provided as plain dictionaries. + domains (`List[Literal["repo", "discussion"]]`, optional): + List of domains to watch. It can be "repo", "discussion" or both. + secret (`str`, optional): + A secret to sign the payload with. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`WebhookInfo`]: + Info about the newly created webhook. + + Example: + ```python + >>> from huggingface_hub import create_webhook + >>> payload = create_webhook( + ... watched=[{"type": "user", "name": "julien-c"}, {"type": "org", "name": "HuggingFaceH4"}], + ... url="https://webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + ... domains=["repo", "discussion"], + ... secret="my-secret", + ... ) + >>> print(payload) + WebhookInfo( + id="654bbbc16f2ec14d77f109cc", + url="https://webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + watched=[WebhookWatchedItem(type="user", name="julien-c"), WebhookWatchedItem(type="org", name="HuggingFaceH4")], + domains=["repo", "discussion"], + secret="my-secret", + disabled=False, + ) + ``` + """ + watched_dicts = [asdict(item) if isinstance(item, WebhookWatchedItem) else item for item in watched] + + response = get_session().post( + f"{constants.ENDPOINT}/api/settings/webhooks", + json={"watched": watched_dicts, "url": url, "domains": domains, "secret": secret}, + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + webhook_data = response.json()["webhook"] + watched_items = [WebhookWatchedItem(type=item["type"], name=item["name"]) for item in webhook_data["watched"]] + + webhook = WebhookInfo( + id=webhook_data["id"], + url=webhook_data["url"], + watched=watched_items, + domains=webhook_data["domains"], + secret=webhook_data.get("secret"), + disabled=webhook_data["disabled"], + ) + + return webhook + + @validate_hf_hub_args + def update_webhook( + self, + webhook_id: str, + *, + url: Optional[str] = None, + watched: Optional[List[Union[Dict, WebhookWatchedItem]]] = None, + domains: Optional[List[constants.WEBHOOK_DOMAIN_T]] = None, + secret: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> WebhookInfo: + """Update an existing webhook. + + Args: + webhook_id (`str`): + The unique identifier of the webhook to be updated. + url (`str`, optional): + The URL to which the payload will be sent. + watched (`List[WebhookWatchedItem]`, optional): + List of items to watch. It can be users, orgs, models, datasets, or spaces. + Refer to [`WebhookWatchedItem`] for more details. Watched items can also be provided as plain dictionaries. + domains (`List[Literal["repo", "discussion"]]`, optional): + The domains to watch. This can include "repo", "discussion", or both. + secret (`str`, optional): + A secret to sign the payload with, providing an additional layer of security. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`WebhookInfo`]: + Info about the updated webhook. + + Example: + ```python + >>> from huggingface_hub import update_webhook + >>> updated_payload = update_webhook( + ... webhook_id="654bbbc16f2ec14d77f109cc", + ... url="https://new.webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + ... watched=[{"type": "user", "name": "julien-c"}, {"type": "org", "name": "HuggingFaceH4"}], + ... domains=["repo"], + ... secret="my-secret", + ... ) + >>> print(updated_payload) + WebhookInfo( + id="654bbbc16f2ec14d77f109cc", + url="https://new.webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + watched=[WebhookWatchedItem(type="user", name="julien-c"), WebhookWatchedItem(type="org", name="HuggingFaceH4")], + domains=["repo"], + secret="my-secret", + disabled=False, + ``` + """ + if watched is None: + watched = [] + watched_dicts = [asdict(item) if isinstance(item, WebhookWatchedItem) else item for item in watched] + + response = get_session().post( + f"{constants.ENDPOINT}/api/settings/webhooks/{webhook_id}", + json={"watched": watched_dicts, "url": url, "domains": domains, "secret": secret}, + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + webhook_data = response.json()["webhook"] + + watched_items = [WebhookWatchedItem(type=item["type"], name=item["name"]) for item in webhook_data["watched"]] + + webhook = WebhookInfo( + id=webhook_data["id"], + url=webhook_data["url"], + watched=watched_items, + domains=webhook_data["domains"], + secret=webhook_data.get("secret"), + disabled=webhook_data["disabled"], + ) + + return webhook + + @validate_hf_hub_args + def enable_webhook(self, webhook_id: str, *, token: Union[bool, str, None] = None) -> WebhookInfo: + """Enable a webhook (makes it "active"). + + Args: + webhook_id (`str`): + The unique identifier of the webhook to enable. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`WebhookInfo`]: + Info about the enabled webhook. + + Example: + ```python + >>> from huggingface_hub import enable_webhook + >>> enabled_webhook = enable_webhook("654bbbc16f2ec14d77f109cc") + >>> enabled_webhook + WebhookInfo( + id="654bbbc16f2ec14d77f109cc", + url="https://webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + watched=[WebhookWatchedItem(type="user", name="julien-c"), WebhookWatchedItem(type="org", name="HuggingFaceH4")], + domains=["repo", "discussion"], + secret="my-secret", + disabled=False, + ) + ``` + """ + response = get_session().post( + f"{constants.ENDPOINT}/api/settings/webhooks/{webhook_id}/enable", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + webhook_data = response.json()["webhook"] + + watched_items = [WebhookWatchedItem(type=item["type"], name=item["name"]) for item in webhook_data["watched"]] + + webhook = WebhookInfo( + id=webhook_data["id"], + url=webhook_data["url"], + watched=watched_items, + domains=webhook_data["domains"], + secret=webhook_data.get("secret"), + disabled=webhook_data["disabled"], + ) + + return webhook + + @validate_hf_hub_args + def disable_webhook(self, webhook_id: str, *, token: Union[bool, str, None] = None) -> WebhookInfo: + """Disable a webhook (makes it "disabled"). + + Args: + webhook_id (`str`): + The unique identifier of the webhook to disable. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + [`WebhookInfo`]: + Info about the disabled webhook. + + Example: + ```python + >>> from huggingface_hub import disable_webhook + >>> disabled_webhook = disable_webhook("654bbbc16f2ec14d77f109cc") + >>> disabled_webhook + WebhookInfo( + id="654bbbc16f2ec14d77f109cc", + url="https://webhook.site/a2176e82-5720-43ee-9e06-f91cb4c91548", + watched=[WebhookWatchedItem(type="user", name="julien-c"), WebhookWatchedItem(type="org", name="HuggingFaceH4")], + domains=["repo", "discussion"], + secret="my-secret", + disabled=True, + ) + ``` + """ + response = get_session().post( + f"{constants.ENDPOINT}/api/settings/webhooks/{webhook_id}/disable", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + webhook_data = response.json()["webhook"] + + watched_items = [WebhookWatchedItem(type=item["type"], name=item["name"]) for item in webhook_data["watched"]] + + webhook = WebhookInfo( + id=webhook_data["id"], + url=webhook_data["url"], + watched=watched_items, + domains=webhook_data["domains"], + secret=webhook_data.get("secret"), + disabled=webhook_data["disabled"], + ) + + return webhook + + @validate_hf_hub_args + def delete_webhook(self, webhook_id: str, *, token: Union[bool, str, None] = None) -> None: + """Delete a webhook. + + Args: + webhook_id (`str`): + The unique identifier of the webhook to delete. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved token, which is the recommended + method for authentication (see https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `None` + + Example: + ```python + >>> from huggingface_hub import delete_webhook + >>> delete_webhook("654bbbc16f2ec14d77f109cc") + ``` + """ + response = get_session().delete( + f"{constants.ENDPOINT}/api/settings/webhooks/{webhook_id}", + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(response) + + ############# + # Internals # + ############# + + def _build_hf_headers( + self, + token: Union[bool, str, None] = None, + is_write_action: bool = False, + library_name: Optional[str] = None, + library_version: Optional[str] = None, + user_agent: Union[Dict, str, None] = None, + ) -> Dict[str, str]: + """ + Alias for [`build_hf_headers`] that uses the token from [`HfApi`] client + when `token` is not provided. + """ + if token is None: + # Cannot do `token = token or self.token` as token can be `False`. + token = self.token + return build_hf_headers( + token=token, + is_write_action=is_write_action, + library_name=library_name or self.library_name, + library_version=library_version or self.library_version, + user_agent=user_agent or self.user_agent, + headers=self.headers, + ) + + def _prepare_folder_deletions( + self, + repo_id: str, + repo_type: Optional[str], + revision: Optional[str], + path_in_repo: str, + delete_patterns: Optional[Union[List[str], str]], + token: Union[bool, str, None] = None, + ) -> List[CommitOperationDelete]: + """Generate the list of Delete operations for a commit to delete files from a repo. + + List remote files and match them against the `delete_patterns` constraints. Returns a list of [`CommitOperationDelete`] + with the matching items. + + Note: `.gitattributes` file is essential to make a repo work properly on the Hub. This file will always be + kept even if it matches the `delete_patterns` constraints. + """ + if delete_patterns is None: + # If no delete patterns, no need to list and filter remote files + return [] + + # List remote files + filenames = self.list_repo_files(repo_id=repo_id, revision=revision, repo_type=repo_type, token=token) + + # Compute relative path in repo + if path_in_repo and path_in_repo not in (".", "./"): + path_in_repo = path_in_repo.strip("/") + "/" # harmonize + relpath_to_abspath = { + file[len(path_in_repo) :]: file for file in filenames if file.startswith(path_in_repo) + } + else: + relpath_to_abspath = {file: file for file in filenames} + + # Apply filter on relative paths and return + return [ + CommitOperationDelete(path_in_repo=relpath_to_abspath[relpath], is_folder=False) + for relpath in filter_repo_objects(relpath_to_abspath.keys(), allow_patterns=delete_patterns) + if relpath_to_abspath[relpath] != ".gitattributes" + ] + + def _prepare_upload_folder_additions( + self, + folder_path: Union[str, Path], + path_in_repo: str, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + repo_type: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> List[CommitOperationAdd]: + """Generate the list of Add operations for a commit to upload a folder. + + Files not matching the `allow_patterns` (allowlist) and `ignore_patterns` (denylist) + constraints are discarded. + """ + + folder_path = Path(folder_path).expanduser().resolve() + if not folder_path.is_dir(): + raise ValueError(f"Provided path: '{folder_path}' is not a directory") + + # List files from folder + relpath_to_abspath = { + path.relative_to(folder_path).as_posix(): path + for path in sorted(folder_path.glob("**/*")) # sorted to be deterministic + if path.is_file() + } + + # Filter files + # Patterns are applied on the path relative to `folder_path`. `path_in_repo` is prefixed after the filtering. + filtered_repo_objects = list( + filter_repo_objects( + relpath_to_abspath.keys(), allow_patterns=allow_patterns, ignore_patterns=ignore_patterns + ) + ) + + prefix = f"{path_in_repo.strip('/')}/" if path_in_repo else "" + + # If updating a README.md file, make sure the metadata format is valid + # It's better to fail early than to fail after all the files have been hashed. + if "README.md" in filtered_repo_objects: + self._validate_yaml( + content=relpath_to_abspath["README.md"].read_text(), + repo_type=repo_type, + token=token, + ) + if len(filtered_repo_objects) > 30: + logger.info( + "It seems you are trying to upload a large folder at once. This might take some time and then fail if " + "the folder is too large. For such cases, it is recommended to upload in smaller batches or to use " + "`HfApi().upload_large_folder(...)`/`huggingface-cli upload-large-folder` instead. For more details, " + "check out https://huggingface.co/docs/huggingface_hub/main/en/guides/upload#upload-a-large-folder." + ) + + logger.info(f"Start hashing {len(filtered_repo_objects)} files.") + operations = [ + CommitOperationAdd( + path_or_fileobj=relpath_to_abspath[relpath], # absolute path on disk + path_in_repo=prefix + relpath, # "absolute" path in repo + ) + for relpath in filtered_repo_objects + ] + logger.info(f"Finished hashing {len(filtered_repo_objects)} files.") + return operations + + def _validate_yaml(self, content: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None): + """ + Validate YAML from `README.md`, used before file hashing and upload. + + Args: + content (`str`): + Content of `README.md` to validate. + repo_type (`str`, *optional*): + The type of the repo to grant access to. Must be one of `model`, `dataset` or `space`. + Defaults to `model`. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Raises: + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if YAML is invalid + """ + repo_type = repo_type if repo_type is not None else constants.REPO_TYPE_MODEL + headers = self._build_hf_headers(token=token) + + response = get_session().post( + f"{self.endpoint}/api/validate-yaml", + json={"content": content, "repoType": repo_type}, + headers=headers, + ) + # Handle warnings (example: empty metadata) + response_content = response.json() + message = "\n".join([f"- {warning.get('message')}" for warning in response_content.get("warnings", [])]) + if message: + warnings.warn(f"Warnings while validating metadata in README.md:\n{message}") + + # Raise on errors + try: + hf_raise_for_status(response) + except BadRequestError as e: + errors = response_content.get("errors", []) + message = "\n".join([f"- {error.get('message')}" for error in errors]) + raise ValueError(f"Invalid metadata in README.md.\n{message}") from e + + def get_user_overview(self, username: str, token: Union[bool, str, None] = None) -> User: + """ + Get an overview of a user on the Hub. + + Args: + username (`str`): + Username of the user to get an overview of. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `User`: A [`User`] object with the user's overview. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 If the user does not exist on the Hub. + """ + r = get_session().get( + f"{constants.ENDPOINT}/api/users/{username}/overview", headers=self._build_hf_headers(token=token) + ) + hf_raise_for_status(r) + return User(**r.json()) + + def list_organization_members(self, organization: str, token: Union[bool, str, None] = None) -> Iterable[User]: + """ + List of members of an organization on the Hub. + + Args: + organization (`str`): + Name of the organization to get the members of. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[User]`: A list of [`User`] objects with the members of the organization. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 If the organization does not exist on the Hub. + + """ + for member in paginate( + path=f"{constants.ENDPOINT}/api/organizations/{organization}/members", + params={}, + headers=self._build_hf_headers(token=token), + ): + yield User(**member) + + def list_user_followers(self, username: str, token: Union[bool, str, None] = None) -> Iterable[User]: + """ + Get the list of followers of a user on the Hub. + + Args: + username (`str`): + Username of the user to get the followers of. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[User]`: A list of [`User`] objects with the followers of the user. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 If the user does not exist on the Hub. + + """ + for follower in paginate( + path=f"{constants.ENDPOINT}/api/users/{username}/followers", + params={}, + headers=self._build_hf_headers(token=token), + ): + yield User(**follower) + + def list_user_following(self, username: str, token: Union[bool, str, None] = None) -> Iterable[User]: + """ + Get the list of users followed by a user on the Hub. + + Args: + username (`str`): + Username of the user to get the users followed by. + token (Union[bool, str, None], optional): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[User]`: A list of [`User`] objects with the users followed by the user. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 If the user does not exist on the Hub. + + """ + for followed_user in paginate( + path=f"{constants.ENDPOINT}/api/users/{username}/following", + params={}, + headers=self._build_hf_headers(token=token), + ): + yield User(**followed_user) + + def list_papers( + self, + *, + query: Optional[str] = None, + token: Union[bool, str, None] = None, + ) -> Iterable[PaperInfo]: + """ + List daily papers on the Hugging Face Hub given a search query. + + Args: + query (`str`, *optional*): + A search query string to find papers. + If provided, returns papers that match the query. + token (Union[bool, str, None], *optional*): + A valid user access token (string). Defaults to the locally saved + token, which is the recommended method for authentication (see + https://huggingface.co/docs/huggingface_hub/quick-start#authentication). + To disable authentication, pass `False`. + + Returns: + `Iterable[PaperInfo]`: an iterable of [`huggingface_hub.hf_api.PaperInfo`] objects. + + Example: + + ```python + >>> from huggingface_hub import HfApi + + >>> api = HfApi() + + # List all papers with "attention" in their title + >>> api.list_papers(query="attention") + ``` + """ + path = f"{self.endpoint}/api/papers/search" + params = {} + if query: + params["q"] = query + r = get_session().get( + path, + params=params, + headers=self._build_hf_headers(token=token), + ) + hf_raise_for_status(r) + for paper in r.json(): + yield PaperInfo(**paper) + + def paper_info(self, id: str) -> PaperInfo: + """ + Get information for a paper on the Hub. + + Args: + id (`str`, **optional**): + ArXiv id of the paper. + + Returns: + `PaperInfo`: A `PaperInfo` object. + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError): + HTTP 404 If the paper does not exist on the Hub. + """ + path = f"{self.endpoint}/api/papers/{id}" + r = get_session().get(path) + hf_raise_for_status(r) + return PaperInfo(**r.json()) + + def auth_check( + self, repo_id: str, *, repo_type: Optional[str] = None, token: Union[bool, str, None] = None + ) -> None: + """ + Check if the provided user token has access to a specific repository on the Hugging Face Hub. + + This method verifies whether the user, authenticated via the provided token, has access to the specified + repository. If the repository is not found or if the user lacks the required permissions to access it, + the method raises an appropriate exception. + + Args: + repo_id (`str`): + The repository to check for access. Format should be `"user/repo_name"`. + Example: `"user/my-cool-model"`. + + repo_type (`str`, *optional*): + The type of the repository. Should be one of `"model"`, `"dataset"`, or `"space"`. + If not specified, the default is `"model"`. + + token `(Union[bool, str, None]`, *optional*): + A valid user access token. If not provided, the locally saved token will be used, which is the + recommended authentication method. Set to `False` to disable authentication. + Refer to: https://huggingface.co/docs/huggingface_hub/quick-start#authentication. + + Raises: + [`~utils.RepositoryNotFoundError`]: + Raised if the repository does not exist, is private, or the user does not have access. This can + occur if the `repo_id` or `repo_type` is incorrect or if the repository is private but the user + is not authenticated. + + [`~utils.GatedRepoError`]: + Raised if the repository exists but is gated and the user is not authorized to access it. + + Example: + Check if the user has access to a repository: + + ```python + >>> from huggingface_hub import auth_check + >>> from huggingface_hub.utils import GatedRepoError, RepositoryNotFoundError + + try: + auth_check("user/my-cool-model") + except GatedRepoError: + # Handle gated repository error + print("You do not have permission to access this gated repository.") + except RepositoryNotFoundError: + # Handle repository not found error + print("The repository was not found or you do not have access.") + ``` + + In this example: + - If the user has access, the method completes successfully. + - If the repository is gated or does not exist, appropriate exceptions are raised, allowing the user + to handle them accordingly. + """ + headers = self._build_hf_headers(token=token) + if repo_type is None: + repo_type = constants.REPO_TYPE_MODEL + if repo_type not in constants.REPO_TYPES: + raise ValueError(f"Invalid repo type, must be one of {constants.REPO_TYPES}") + path = f"{self.endpoint}/api/{repo_type}s/{repo_id}/auth-check" + r = get_session().get(path, headers=headers) + hf_raise_for_status(r) + + +def _parse_revision_from_pr_url(pr_url: str) -> str: + """Safely parse revision number from a PR url. + + Example: + ```py + >>> _parse_revision_from_pr_url("https://huggingface.co/bigscience/bloom/discussions/2") + "refs/pr/2" + ``` + """ + re_match = re.match(_REGEX_DISCUSSION_URL, pr_url) + if re_match is None: + raise RuntimeError(f"Unexpected response from the hub, expected a Pull Request URL but got: '{pr_url}'") + return f"refs/pr/{re_match[1]}" + + +api = HfApi() + +whoami = api.whoami +auth_check = api.auth_check +get_token_permission = api.get_token_permission + +list_models = api.list_models +model_info = api.model_info + +list_datasets = api.list_datasets +dataset_info = api.dataset_info + +list_spaces = api.list_spaces +space_info = api.space_info + +list_papers = api.list_papers +paper_info = api.paper_info + +repo_exists = api.repo_exists +revision_exists = api.revision_exists +file_exists = api.file_exists +repo_info = api.repo_info +list_repo_files = api.list_repo_files +list_repo_refs = api.list_repo_refs +list_repo_commits = api.list_repo_commits +list_repo_tree = api.list_repo_tree +get_paths_info = api.get_paths_info +list_metrics = api.list_metrics + +get_model_tags = api.get_model_tags +get_dataset_tags = api.get_dataset_tags + +create_commit = api.create_commit +create_repo = api.create_repo +delete_repo = api.delete_repo +update_repo_visibility = api.update_repo_visibility +update_repo_settings = api.update_repo_settings +super_squash_history = api.super_squash_history +move_repo = api.move_repo +upload_file = api.upload_file +upload_folder = api.upload_folder +delete_file = api.delete_file +delete_folder = api.delete_folder +delete_files = api.delete_files +create_commits_on_pr = api.create_commits_on_pr +upload_large_folder = api.upload_large_folder +preupload_lfs_files = api.preupload_lfs_files +create_branch = api.create_branch +delete_branch = api.delete_branch +create_tag = api.create_tag +delete_tag = api.delete_tag +get_full_repo_name = api.get_full_repo_name + +# Safetensors helpers +get_safetensors_metadata = api.get_safetensors_metadata +parse_safetensors_file_metadata = api.parse_safetensors_file_metadata + +# Background jobs +run_as_future = api.run_as_future + +# Activity API +list_liked_repos = api.list_liked_repos +list_repo_likers = api.list_repo_likers +like = api.like +unlike = api.unlike + +# Community API +get_discussion_details = api.get_discussion_details +get_repo_discussions = api.get_repo_discussions +create_discussion = api.create_discussion +create_pull_request = api.create_pull_request +change_discussion_status = api.change_discussion_status +comment_discussion = api.comment_discussion +edit_discussion_comment = api.edit_discussion_comment +rename_discussion = api.rename_discussion +merge_pull_request = api.merge_pull_request + +# Space API +add_space_secret = api.add_space_secret +delete_space_secret = api.delete_space_secret +get_space_variables = api.get_space_variables +add_space_variable = api.add_space_variable +delete_space_variable = api.delete_space_variable +get_space_runtime = api.get_space_runtime +request_space_hardware = api.request_space_hardware +set_space_sleep_time = api.set_space_sleep_time +pause_space = api.pause_space +restart_space = api.restart_space +duplicate_space = api.duplicate_space +request_space_storage = api.request_space_storage +delete_space_storage = api.delete_space_storage + +# Inference Endpoint API +list_inference_endpoints = api.list_inference_endpoints +create_inference_endpoint = api.create_inference_endpoint +get_inference_endpoint = api.get_inference_endpoint +update_inference_endpoint = api.update_inference_endpoint +delete_inference_endpoint = api.delete_inference_endpoint +pause_inference_endpoint = api.pause_inference_endpoint +resume_inference_endpoint = api.resume_inference_endpoint +scale_to_zero_inference_endpoint = api.scale_to_zero_inference_endpoint + +# Collections API +get_collection = api.get_collection +list_collections = api.list_collections +create_collection = api.create_collection +update_collection_metadata = api.update_collection_metadata +delete_collection = api.delete_collection +add_collection_item = api.add_collection_item +update_collection_item = api.update_collection_item +delete_collection_item = api.delete_collection_item +delete_collection_item = api.delete_collection_item + +# Access requests API +list_pending_access_requests = api.list_pending_access_requests +list_accepted_access_requests = api.list_accepted_access_requests +list_rejected_access_requests = api.list_rejected_access_requests +cancel_access_request = api.cancel_access_request +accept_access_request = api.accept_access_request +reject_access_request = api.reject_access_request +grant_access = api.grant_access + +# Webhooks API +create_webhook = api.create_webhook +disable_webhook = api.disable_webhook +delete_webhook = api.delete_webhook +enable_webhook = api.enable_webhook +get_webhook = api.get_webhook +list_webhooks = api.list_webhooks +update_webhook = api.update_webhook + + +# User API +get_user_overview = api.get_user_overview +list_organization_members = api.list_organization_members +list_user_followers = api.list_user_followers +list_user_following = api.list_user_following diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/__init__.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff 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a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_client.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_client.py new file mode 100644 index 0000000000000000000000000000000000000000..8d5a8e6a38d259ddc4f5cd13ac037ba8df550163 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_client.py @@ -0,0 +1,3144 @@ +# coding=utf-8 +# Copyright 2023-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +# +# Related resources: +# https://huggingface.co/tasks +# https://huggingface.co/docs/huggingface.js/inference/README +# https://github.com/huggingface/huggingface.js/tree/main/packages/inference/src +# https://github.com/huggingface/text-generation-inference/tree/main/clients/python +# https://github.com/huggingface/text-generation-inference/blob/main/clients/python/text_generation/client.py +# https://huggingface.slack.com/archives/C03E4DQ9LAJ/p1680169099087869 +# https://github.com/huggingface/unity-api#tasks +# +# Some TODO: +# - add all tasks +# +# NOTE: the philosophy of this client is "let's make it as easy as possible to use it, even if less optimized". Some +# examples of how it translates: +# - Timeout / Server unavailable is handled by the client in a single "timeout" parameter. +# - Files can be provided as bytes, file paths, or URLs and the client will try to "guess" the type. +# - Images are parsed as PIL.Image for easier manipulation. +# - Provides a "recommended model" for each task => suboptimal but user-wise quicker to get a first script running. +# - Only the main parameters are publicly exposed. Power users can always read the docs for more options. +import base64 +import logging +import re +import time +import warnings +from typing import TYPE_CHECKING, Any, Dict, Iterable, List, Literal, Optional, Union, overload + +from requests import HTTPError +from requests.structures import CaseInsensitiveDict + +from huggingface_hub.constants import ALL_INFERENCE_API_FRAMEWORKS, INFERENCE_ENDPOINT, MAIN_INFERENCE_API_FRAMEWORKS +from huggingface_hub.errors import BadRequestError, InferenceTimeoutError +from huggingface_hub.inference._common import ( + TASKS_EXPECTING_IMAGES, + ContentT, + ModelStatus, + _b64_encode, + _b64_to_image, + _bytes_to_dict, + _bytes_to_image, + _bytes_to_list, + _fetch_recommended_models, + _get_unsupported_text_generation_kwargs, + _import_numpy, + _open_as_binary, + _prepare_payload, + _set_unsupported_text_generation_kwargs, + _stream_chat_completion_response, + _stream_text_generation_response, + raise_text_generation_error, +) +from huggingface_hub.inference._generated.types import ( + AudioClassificationOutputElement, + AudioClassificationOutputTransform, + AudioToAudioOutputElement, + AutomaticSpeechRecognitionOutput, + ChatCompletionInputGrammarType, + ChatCompletionInputStreamOptions, + ChatCompletionInputToolType, + ChatCompletionOutput, + ChatCompletionStreamOutput, + DocumentQuestionAnsweringOutputElement, + FillMaskOutputElement, + ImageClassificationOutputElement, + ImageSegmentationOutputElement, + ImageToTextOutput, + ObjectDetectionOutputElement, + QuestionAnsweringOutputElement, + SummarizationOutput, + TableQuestionAnsweringOutputElement, + TextClassificationOutputElement, + TextClassificationOutputTransform, + TextGenerationInputGrammarType, + TextGenerationOutput, + TextGenerationStreamOutput, + TextToImageTargetSize, + TextToSpeechEarlyStoppingEnum, + TokenClassificationOutputElement, + ToolElement, + TranslationOutput, + VisualQuestionAnsweringOutputElement, + ZeroShotClassificationOutputElement, + ZeroShotImageClassificationOutputElement, +) +from huggingface_hub.utils import build_hf_headers, get_session, hf_raise_for_status +from huggingface_hub.utils._deprecation import _deprecate_arguments + + +if TYPE_CHECKING: + import numpy as np + from PIL.Image import Image + +logger = logging.getLogger(__name__) + + +MODEL_KWARGS_NOT_USED_REGEX = re.compile(r"The following `model_kwargs` are not used by the model: \[(.*?)\]") + + +class InferenceClient: + """ + Initialize a new Inference Client. + + [`InferenceClient`] aims to provide a unified experience to perform inference. The client can be used + seamlessly with either the (free) Inference API or self-hosted Inference Endpoints. + + Args: + model (`str`, `optional`): + The model to run inference with. Can be a model id hosted on the Hugging Face Hub, e.g. `meta-llama/Meta-Llama-3-8B-Instruct` + or a URL to a deployed Inference Endpoint. Defaults to None, in which case a recommended model is + automatically selected for the task. + Note: for better compatibility with OpenAI's client, `model` has been aliased as `base_url`. Those 2 + arguments are mutually exclusive. If using `base_url` for chat completion, the `/chat/completions` suffix + path will be appended to the base URL (see the [TGI Messages API](https://huggingface.co/docs/text-generation-inference/en/messages_api) + documentation for details). When passing a URL as `model`, the client will not append any suffix path to it. + token (`str` or `bool`, *optional*): + Hugging Face token. Will default to the locally saved token if not provided. + Pass `token=False` if you don't want to send your token to the server. + Note: for better compatibility with OpenAI's client, `token` has been aliased as `api_key`. Those 2 + arguments are mutually exclusive and have the exact same behavior. + timeout (`float`, `optional`): + The maximum number of seconds to wait for a response from the server. Loading a new model in Inference + API can take up to several minutes. Defaults to None, meaning it will loop until the server is available. + headers (`Dict[str, str]`, `optional`): + Additional headers to send to the server. By default only the authorization and user-agent headers are sent. + Values in this dictionary will override the default values. + cookies (`Dict[str, str]`, `optional`): + Additional cookies to send to the server. + proxies (`Any`, `optional`): + Proxies to use for the request. + base_url (`str`, `optional`): + Base URL to run inference. This is a duplicated argument from `model` to make [`InferenceClient`] + follow the same pattern as `openai.OpenAI` client. Cannot be used if `model` is set. Defaults to None. + api_key (`str`, `optional`): + Token to use for authentication. This is a duplicated argument from `token` to make [`InferenceClient`] + follow the same pattern as `openai.OpenAI` client. Cannot be used if `token` is set. Defaults to None. + """ + + def __init__( + self, + model: Optional[str] = None, + *, + token: Union[str, bool, None] = None, + timeout: Optional[float] = None, + headers: Optional[Dict[str, str]] = None, + cookies: Optional[Dict[str, str]] = None, + proxies: Optional[Any] = None, + # OpenAI compatibility + base_url: Optional[str] = None, + api_key: Optional[str] = None, + ) -> None: + if model is not None and base_url is not None: + raise ValueError( + "Received both `model` and `base_url` arguments. Please provide only one of them." + " `base_url` is an alias for `model` to make the API compatible with OpenAI's client." + " If using `base_url` for chat completion, the `/chat/completions` suffix path will be appended to the base url." + " When passing a URL as `model`, the client will not append any suffix path to it." + ) + if token is not None and api_key is not None: + raise ValueError( + "Received both `token` and `api_key` arguments. Please provide only one of them." + " `api_key` is an alias for `token` to make the API compatible with OpenAI's client." + " It has the exact same behavior as `token`." + ) + + self.model: Optional[str] = model + self.token: Union[str, bool, None] = token if token is not None else api_key + self.headers = CaseInsensitiveDict(build_hf_headers(token=self.token)) # 'authorization' + 'user-agent' + if headers is not None: + self.headers.update(headers) + self.cookies = cookies + self.timeout = timeout + self.proxies = proxies + + # OpenAI compatibility + self.base_url = base_url + + def __repr__(self): + return f"" + + @overload + def post( # type: ignore[misc] + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: Literal[False] = ..., + ) -> bytes: ... + + @overload + def post( # type: ignore[misc] + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: Literal[True] = ..., + ) -> Iterable[bytes]: ... + + @overload + def post( + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: bool = False, + ) -> Union[bytes, Iterable[bytes]]: ... + + def post( + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: bool = False, + ) -> Union[bytes, Iterable[bytes]]: + """ + Make a POST request to the inference server. + + Args: + json (`Union[str, Dict, List]`, *optional*): + The JSON data to send in the request body, specific to each task. Defaults to None. + data (`Union[str, Path, bytes, BinaryIO]`, *optional*): + The content to send in the request body, specific to each task. + It can be raw bytes, a pointer to an opened file, a local file path, + or a URL to an online resource (image, audio file,...). If both `json` and `data` are passed, + `data` will take precedence. At least `json` or `data` must be provided. Defaults to None. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. Will override the model defined at the instance level. Defaults to None. + task (`str`, *optional*): + The task to perform on the inference. All available tasks can be found + [here](https://huggingface.co/tasks). Used only to default to a recommended model if `model` is not + provided. At least `model` or `task` must be provided. Defaults to None. + stream (`bool`, *optional*): + Whether to iterate over streaming APIs. + + Returns: + bytes: The raw bytes returned by the server. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + """ + url = self._resolve_url(model, task) + + if data is not None and json is not None: + warnings.warn("Ignoring `json` as `data` is passed as binary.") + + # Set Accept header if relevant + headers = self.headers.copy() + if task in TASKS_EXPECTING_IMAGES and "Accept" not in headers: + headers["Accept"] = "image/png" + + t0 = time.time() + timeout = self.timeout + while True: + with _open_as_binary(data) as data_as_binary: + try: + response = get_session().post( + url, + json=json, + data=data_as_binary, + headers=headers, + cookies=self.cookies, + timeout=self.timeout, + stream=stream, + proxies=self.proxies, + ) + except TimeoutError as error: + # Convert any `TimeoutError` to a `InferenceTimeoutError` + raise InferenceTimeoutError(f"Inference call timed out: {url}") from error # type: ignore + + try: + hf_raise_for_status(response) + return response.iter_lines() if stream else response.content + except HTTPError as error: + if error.response.status_code == 422 and task is not None: + error.args = ( + f"{error.args[0]}\nMake sure '{task}' task is supported by the model.", + ) + error.args[1:] + if error.response.status_code == 503: + # If Model is unavailable, either raise a TimeoutError... + if timeout is not None and time.time() - t0 > timeout: + raise InferenceTimeoutError( + f"Model not loaded on the server: {url}. Please retry with a higher timeout (current:" + f" {self.timeout}).", + request=error.request, + response=error.response, + ) from error + # ...or wait 1s and retry + logger.info(f"Waiting for model to be loaded on the server: {error}") + time.sleep(1) + if "X-wait-for-model" not in headers and url.startswith(INFERENCE_ENDPOINT): + headers["X-wait-for-model"] = "1" + if timeout is not None: + timeout = max(self.timeout - (time.time() - t0), 1) # type: ignore + continue + raise + + def audio_classification( + self, + audio: ContentT, + *, + model: Optional[str] = None, + top_k: Optional[int] = None, + function_to_apply: Optional["AudioClassificationOutputTransform"] = None, + ) -> List[AudioClassificationOutputElement]: + """ + Perform audio classification on the provided audio content. + + Args: + audio (Union[str, Path, bytes, BinaryIO]): + The audio content to classify. It can be raw audio bytes, a local audio file, or a URL pointing to an + audio file. + model (`str`, *optional*): + The model to use for audio classification. Can be a model ID hosted on the Hugging Face Hub + or a URL to a deployed Inference Endpoint. If not provided, the default recommended model for + audio classification will be used. + top_k (`int`, *optional*): + When specified, limits the output to the top K most probable classes. + function_to_apply (`"AudioClassificationOutputTransform"`, *optional*): + The function to apply to the output. + + Returns: + `List[AudioClassificationOutputElement]`: List of [`AudioClassificationOutputElement`] items containing the predicted labels and their confidence. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.audio_classification("audio.flac") + [ + AudioClassificationOutputElement(score=0.4976358711719513, label='hap'), + AudioClassificationOutputElement(score=0.3677836060523987, label='neu'), + ... + ] + ``` + """ + parameters = {"function_to_apply": function_to_apply, "top_k": top_k} + payload = _prepare_payload(audio, parameters=parameters, expect_binary=True) + response = self.post(**payload, model=model, task="audio-classification") + return AudioClassificationOutputElement.parse_obj_as_list(response) + + def audio_to_audio( + self, + audio: ContentT, + *, + model: Optional[str] = None, + ) -> List[AudioToAudioOutputElement]: + """ + Performs multiple tasks related to audio-to-audio depending on the model (eg: speech enhancement, source separation). + + Args: + audio (Union[str, Path, bytes, BinaryIO]): + The audio content for the model. It can be raw audio bytes, a local audio file, or a URL pointing to an + audio file. + model (`str`, *optional*): + The model can be any model which takes an audio file and returns another audio file. Can be a model ID hosted on the Hugging Face Hub + or a URL to a deployed Inference Endpoint. If not provided, the default recommended model for + audio_to_audio will be used. + + Returns: + `List[AudioToAudioOutputElement]`: A list of [`AudioToAudioOutputElement`] items containing audios label, content-type, and audio content in blob. + + Raises: + `InferenceTimeoutError`: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> audio_output = client.audio_to_audio("audio.flac") + >>> for i, item in enumerate(audio_output): + >>> with open(f"output_{i}.flac", "wb") as f: + f.write(item.blob) + ``` + """ + response = self.post(data=audio, model=model, task="audio-to-audio") + audio_output = AudioToAudioOutputElement.parse_obj_as_list(response) + for item in audio_output: + item.blob = base64.b64decode(item.blob) + return audio_output + + def automatic_speech_recognition( + self, + audio: ContentT, + *, + model: Optional[str] = None, + ) -> AutomaticSpeechRecognitionOutput: + """ + Perform automatic speech recognition (ASR or audio-to-text) on the given audio content. + + Args: + audio (Union[str, Path, bytes, BinaryIO]): + The content to transcribe. It can be raw audio bytes, local audio file, or a URL to an audio file. + model (`str`, *optional*): + The model to use for ASR. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended model for ASR will be used. + + Returns: + [`AutomaticSpeechRecognitionOutput`]: An item containing the transcribed text and optionally the timestamp chunks. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.automatic_speech_recognition("hello_world.flac").text + "hello world" + ``` + """ + response = self.post(data=audio, model=model, task="automatic-speech-recognition") + return AutomaticSpeechRecognitionOutput.parse_obj_as_instance(response) + + @overload + def chat_completion( # type: ignore + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: Literal[False] = False, + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> ChatCompletionOutput: ... + + @overload + def chat_completion( # type: ignore + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: Literal[True] = True, + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> Iterable[ChatCompletionStreamOutput]: ... + + @overload + def chat_completion( + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: bool = False, + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> Union[ChatCompletionOutput, Iterable[ChatCompletionStreamOutput]]: ... + + def chat_completion( + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: bool = False, + # Parameters from ChatCompletionInput (handled manually) + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> Union[ChatCompletionOutput, Iterable[ChatCompletionStreamOutput]]: + """ + A method for completing conversations using a specified language model. + + + + The `client.chat_completion` method is aliased as `client.chat.completions.create` for compatibility with OpenAI's client. + Inputs and outputs are strictly the same and using either syntax will yield the same results. + Check out the [Inference guide](https://huggingface.co/docs/huggingface_hub/guides/inference#openai-compatibility) + for more details about OpenAI's compatibility. + + + + Args: + messages (List of [`ChatCompletionInputMessage`]): + Conversation history consisting of roles and content pairs. + model (`str`, *optional*): + The model to use for chat-completion. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended model for chat-based text-generation will be used. + See https://huggingface.co/tasks/text-generation for more details. + + If `model` is a model ID, it is passed to the server as the `model` parameter. If you want to define a + custom URL while setting `model` in the request payload, you must set `base_url` when initializing [`InferenceClient`]. + frequency_penalty (`float`, *optional*): + Penalizes new tokens based on their existing frequency + in the text so far. Range: [-2.0, 2.0]. Defaults to 0.0. + logit_bias (`List[float]`, *optional*): + Modify the likelihood of specified tokens appearing in the completion. Accepts a JSON object that maps tokens + (specified by their token ID in the tokenizer) to an associated bias value from -100 to 100. Mathematically, + the bias is added to the logits generated by the model prior to sampling. The exact effect will vary per model, + but values between -1 and 1 should decrease or increase likelihood of selection; values like -100 or 100 should + result in a ban or exclusive selection of the relevant token. Defaults to None. + logprobs (`bool`, *optional*): + Whether to return log probabilities of the output tokens or not. If true, returns the log + probabilities of each output token returned in the content of message. + max_tokens (`int`, *optional*): + Maximum number of tokens allowed in the response. Defaults to 20. + n (`int`, *optional*): + UNUSED. + presence_penalty (`float`, *optional*): + Number between -2.0 and 2.0. Positive values penalize new tokens based on whether they appear in the + text so far, increasing the model's likelihood to talk about new topics. + response_format ([`ChatCompletionInputGrammarType`], *optional*): + Grammar constraints. Can be either a JSONSchema or a regex. + seed (Optional[`int`], *optional*): + Seed for reproducible control flow. Defaults to None. + stop (Optional[`str`], *optional*): + Up to four strings which trigger the end of the response. + Defaults to None. + stream (`bool`, *optional*): + Enable realtime streaming of responses. Defaults to False. + stream_options ([`ChatCompletionInputStreamOptions`], *optional*): + Options for streaming completions. + temperature (`float`, *optional*): + Controls randomness of the generations. Lower values ensure + less random completions. Range: [0, 2]. Defaults to 1.0. + top_logprobs (`int`, *optional*): + An integer between 0 and 5 specifying the number of most likely tokens to return at each token + position, each with an associated log probability. logprobs must be set to true if this parameter is + used. + top_p (`float`, *optional*): + Fraction of the most likely next words to sample from. + Must be between 0 and 1. Defaults to 1.0. + tool_choice ([`ChatCompletionInputToolType`] or `str`, *optional*): + The tool to use for the completion. Defaults to "auto". + tool_prompt (`str`, *optional*): + A prompt to be appended before the tools. + tools (List of [`ToolElement`], *optional*): + A list of tools the model may call. Currently, only functions are supported as a tool. Use this to + provide a list of functions the model may generate JSON inputs for. + + Returns: + [`ChatCompletionOutput`] or Iterable of [`ChatCompletionStreamOutput`]: + Generated text returned from the server: + - if `stream=False`, the generated text is returned as a [`ChatCompletionOutput`] (default). + - if `stream=True`, the generated text is returned token by token as a sequence of [`ChatCompletionStreamOutput`]. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + + ```py + >>> from huggingface_hub import InferenceClient + >>> messages = [{"role": "user", "content": "What is the capital of France?"}] + >>> client = InferenceClient("meta-llama/Meta-Llama-3-8B-Instruct") + >>> client.chat_completion(messages, max_tokens=100) + ChatCompletionOutput( + choices=[ + ChatCompletionOutputComplete( + finish_reason='eos_token', + index=0, + message=ChatCompletionOutputMessage( + role='assistant', + content='The capital of France is Paris.', + name=None, + tool_calls=None + ), + logprobs=None + ) + ], + created=1719907176, + id='', + model='meta-llama/Meta-Llama-3-8B-Instruct', + object='text_completion', + system_fingerprint='2.0.4-sha-f426a33', + usage=ChatCompletionOutputUsage( + completion_tokens=8, + prompt_tokens=17, + total_tokens=25 + ) + ) + ``` + + Example using streaming: + ```py + >>> from huggingface_hub import InferenceClient + >>> messages = [{"role": "user", "content": "What is the capital of France?"}] + >>> client = InferenceClient("meta-llama/Meta-Llama-3-8B-Instruct") + >>> for token in client.chat_completion(messages, max_tokens=10, stream=True): + ... print(token) + ChatCompletionStreamOutput(choices=[ChatCompletionStreamOutputChoice(delta=ChatCompletionStreamOutputDelta(content='The', role='assistant'), index=0, finish_reason=None)], created=1710498504) + ChatCompletionStreamOutput(choices=[ChatCompletionStreamOutputChoice(delta=ChatCompletionStreamOutputDelta(content=' capital', role='assistant'), index=0, finish_reason=None)], created=1710498504) + (...) + ChatCompletionStreamOutput(choices=[ChatCompletionStreamOutputChoice(delta=ChatCompletionStreamOutputDelta(content=' may', role='assistant'), index=0, finish_reason=None)], created=1710498504) + ``` + + Example using OpenAI's syntax: + ```py + # instead of `from openai import OpenAI` + from huggingface_hub import InferenceClient + + # instead of `client = OpenAI(...)` + client = InferenceClient( + base_url=..., + api_key=..., + ) + + output = client.chat.completions.create( + model="meta-llama/Meta-Llama-3-8B-Instruct", + messages=[ + {"role": "system", "content": "You are a helpful assistant."}, + {"role": "user", "content": "Count to 10"}, + ], + stream=True, + max_tokens=1024, + ) + + for chunk in output: + print(chunk.choices[0].delta.content) + ``` + + Example using Image + Text as input: + ```py + >>> from huggingface_hub import InferenceClient + + # provide a remote URL + >>> image_url ="https://cdn.britannica.com/61/93061-050-99147DCE/Statue-of-Liberty-Island-New-York-Bay.jpg" + # or a base64-encoded image + >>> image_path = "/path/to/image.jpeg" + >>> with open(image_path, "rb") as f: + ... base64_image = base64.b64encode(f.read()).decode("utf-8") + >>> image_url = f"data:image/jpeg;base64,{base64_image}" + + >>> client = InferenceClient("meta-llama/Llama-3.2-11B-Vision-Instruct") + >>> output = client.chat.completions.create( + ... messages=[ + ... { + ... "role": "user", + ... "content": [ + ... { + ... "type": "image_url", + ... "image_url": {"url": image_url}, + ... }, + ... { + ... "type": "text", + ... "text": "Describe this image in one sentence.", + ... }, + ... ], + ... }, + ... ], + ... ) + >>> output + The image depicts the iconic Statue of Liberty situated in New York Harbor, New York, on a clear day. + ``` + + Example using tools: + ```py + >>> client = InferenceClient("meta-llama/Meta-Llama-3-70B-Instruct") + >>> messages = [ + ... { + ... "role": "system", + ... "content": "Don't make assumptions about what values to plug into functions. Ask for clarification if a user request is ambiguous.", + ... }, + ... { + ... "role": "user", + ... "content": "What's the weather like the next 3 days in San Francisco, CA?", + ... }, + ... ] + >>> tools = [ + ... { + ... "type": "function", + ... "function": { + ... "name": "get_current_weather", + ... "description": "Get the current weather", + ... "parameters": { + ... "type": "object", + ... "properties": { + ... "location": { + ... "type": "string", + ... "description": "The city and state, e.g. San Francisco, CA", + ... }, + ... "format": { + ... "type": "string", + ... "enum": ["celsius", "fahrenheit"], + ... "description": "The temperature unit to use. Infer this from the users location.", + ... }, + ... }, + ... "required": ["location", "format"], + ... }, + ... }, + ... }, + ... { + ... "type": "function", + ... "function": { + ... "name": "get_n_day_weather_forecast", + ... "description": "Get an N-day weather forecast", + ... "parameters": { + ... "type": "object", + ... "properties": { + ... "location": { + ... "type": "string", + ... "description": "The city and state, e.g. San Francisco, CA", + ... }, + ... "format": { + ... "type": "string", + ... "enum": ["celsius", "fahrenheit"], + ... "description": "The temperature unit to use. Infer this from the users location.", + ... }, + ... "num_days": { + ... "type": "integer", + ... "description": "The number of days to forecast", + ... }, + ... }, + ... "required": ["location", "format", "num_days"], + ... }, + ... }, + ... }, + ... ] + + >>> response = client.chat_completion( + ... model="meta-llama/Meta-Llama-3-70B-Instruct", + ... messages=messages, + ... tools=tools, + ... tool_choice="auto", + ... max_tokens=500, + ... ) + >>> response.choices[0].message.tool_calls[0].function + ChatCompletionOutputFunctionDefinition( + arguments={ + 'location': 'San Francisco, CA', + 'format': 'fahrenheit', + 'num_days': 3 + }, + name='get_n_day_weather_forecast', + description=None + ) + ``` + + Example using response_format: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient("meta-llama/Meta-Llama-3-70B-Instruct") + >>> messages = [ + ... { + ... "role": "user", + ... "content": "I saw a puppy a cat and a raccoon during my bike ride in the park. What did I saw and when?", + ... }, + ... ] + >>> response_format = { + ... "type": "json", + ... "value": { + ... "properties": { + ... "location": {"type": "string"}, + ... "activity": {"type": "string"}, + ... "animals_seen": {"type": "integer", "minimum": 1, "maximum": 5}, + ... "animals": {"type": "array", "items": {"type": "string"}}, + ... }, + ... "required": ["location", "activity", "animals_seen", "animals"], + ... }, + ... } + >>> response = client.chat_completion( + ... messages=messages, + ... response_format=response_format, + ... max_tokens=500, + ) + >>> response.choices[0].message.content + '{\n\n"activity": "bike ride",\n"animals": ["puppy", "cat", "raccoon"],\n"animals_seen": 3,\n"location": "park"}' + ``` + """ + model_url = self._resolve_chat_completion_url(model) + + # `model` is sent in the payload. Not used by the server but can be useful for debugging/routing. + # If it's a ID on the Hub => use it. Otherwise, we use a random string. + model_id = model or self.model or "tgi" + if model_id.startswith(("http://", "https://")): + model_id = "tgi" # dummy value + + payload = dict( + model=model_id, + messages=messages, + frequency_penalty=frequency_penalty, + logit_bias=logit_bias, + logprobs=logprobs, + max_tokens=max_tokens, + n=n, + presence_penalty=presence_penalty, + response_format=response_format, + seed=seed, + stop=stop, + temperature=temperature, + tool_choice=tool_choice, + tool_prompt=tool_prompt, + tools=tools, + top_logprobs=top_logprobs, + top_p=top_p, + stream=stream, + stream_options=stream_options, + ) + payload = {key: value for key, value in payload.items() if value is not None} + data = self.post(model=model_url, json=payload, stream=stream) + + if stream: + return _stream_chat_completion_response(data) # type: ignore[arg-type] + + return ChatCompletionOutput.parse_obj_as_instance(data) # type: ignore[arg-type] + + def _resolve_chat_completion_url(self, model: Optional[str] = None) -> str: + # Since `chat_completion(..., model=xxx)` is also a payload parameter for the server, we need to handle 'model' differently. + # `self.base_url` and `self.model` takes precedence over 'model' argument only in `chat_completion`. + model_id_or_url = self.base_url or self.model or model or self.get_recommended_model("text-generation") + + # Resolve URL if it's a model ID + model_url = ( + model_id_or_url + if model_id_or_url.startswith(("http://", "https://")) + else self._resolve_url(model_id_or_url, task="text-generation") + ) + + # Strip trailing / + model_url = model_url.rstrip("/") + + # Append /chat/completions if not already present + if model_url.endswith("/v1"): + model_url += "/chat/completions" + + # Append /v1/chat/completions if not already present + if not model_url.endswith("/chat/completions"): + model_url += "/v1/chat/completions" + + return model_url + + def document_question_answering( + self, + image: ContentT, + question: str, + *, + model: Optional[str] = None, + doc_stride: Optional[int] = None, + handle_impossible_answer: Optional[bool] = None, + lang: Optional[str] = None, + max_answer_len: Optional[int] = None, + max_question_len: Optional[int] = None, + max_seq_len: Optional[int] = None, + top_k: Optional[int] = None, + word_boxes: Optional[List[Union[List[float], str]]] = None, + ) -> List[DocumentQuestionAnsweringOutputElement]: + """ + Answer questions on document images. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image for the context. It can be raw bytes, an image file, or a URL to an online image. + question (`str`): + Question to be answered. + model (`str`, *optional*): + The model to use for the document question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended document question answering model will be used. + Defaults to None. + doc_stride (`int`, *optional*): + If the words in the document are too long to fit with the question for the model, it will + be split in several chunks with some overlap. This argument controls the size of that + overlap. + handle_impossible_answer (`bool`, *optional*): + Whether to accept impossible as an answer. + lang (`str`, *optional*): + Language to use while running OCR. + max_answer_len (`int`, *optional*): + The maximum length of predicted answers (e.g., only answers with a shorter length are + considered). + max_question_len (`int`, *optional*): + The maximum length of the question after tokenization. It will be truncated if needed. + max_seq_len (`int`, *optional*): + The maximum length of the total sentence (context + question) in tokens of each chunk + passed to the model. The context will be split in several chunks (using doc_stride as + overlap) if needed. + top_k (`int`, *optional*): + The number of answers to return (will be chosen by order of likelihood). Can return less + than top_k answers if there are not enough options available within the context. + word_boxes (`List[Union[List[float], str]]`, *optional*): + A list of words and bounding boxes (normalized 0->1000). If provided, the inference will + skip the OCR step and use the provided bounding boxes instead. + Returns: + `List[DocumentQuestionAnsweringOutputElement]`: a list of [`DocumentQuestionAnsweringOutputElement`] items containing the predicted label, associated probability, word ids, and page number. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.document_question_answering(image="https://huggingface.co/spaces/impira/docquery/resolve/2359223c1837a7587402bda0f2643382a6eefeab/invoice.png", question="What is the invoice number?") + [DocumentQuestionAnsweringOutputElement(answer='us-001', end=16, score=0.9999666213989258, start=16, words=None)] + ``` + """ + inputs: Dict[str, Any] = {"question": question, "image": _b64_encode(image)} + parameters = { + "doc_stride": doc_stride, + "handle_impossible_answer": handle_impossible_answer, + "lang": lang, + "max_answer_len": max_answer_len, + "max_question_len": max_question_len, + "max_seq_len": max_seq_len, + "top_k": top_k, + "word_boxes": word_boxes, + } + payload = _prepare_payload(inputs, parameters=parameters) + response = self.post(**payload, model=model, task="document-question-answering") + return DocumentQuestionAnsweringOutputElement.parse_obj_as_list(response) + + def feature_extraction( + self, + text: str, + *, + normalize: Optional[bool] = None, + prompt_name: Optional[str] = None, + truncate: Optional[bool] = None, + truncation_direction: Optional[Literal["Left", "Right"]] = None, + model: Optional[str] = None, + ) -> "np.ndarray": + """ + Generate embeddings for a given text. + + Args: + text (`str`): + The text to embed. + model (`str`, *optional*): + The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used. + Defaults to None. + normalize (`bool`, *optional*): + Whether to normalize the embeddings or not. + Only available on server powered by Text-Embedding-Inference. + prompt_name (`str`, *optional*): + The name of the prompt that should be used by for encoding. If not set, no prompt will be applied. + Must be a key in the `Sentence Transformers` configuration `prompts` dictionary. + For example if ``prompt_name`` is "query" and the ``prompts`` is {"query": "query: ",...}, + then the sentence "What is the capital of France?" will be encoded as "query: What is the capital of France?" + because the prompt text will be prepended before any text to encode. + truncate (`bool`, *optional*): + Whether to truncate the embeddings or not. + Only available on server powered by Text-Embedding-Inference. + truncation_direction (`Literal["Left", "Right"]`, *optional*): + Which side of the input should be truncated when `truncate=True` is passed. + + Returns: + `np.ndarray`: The embedding representing the input text as a float32 numpy array. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.feature_extraction("Hi, who are you?") + array([[ 2.424802 , 2.93384 , 1.1750331 , ..., 1.240499, -0.13776633, -0.7889173 ], + [-0.42943227, -0.6364878 , -1.693462 , ..., 0.41978157, -2.4336355 , 0.6162071 ], + ..., + [ 0.28552425, -0.928395 , -1.2077185 , ..., 0.76810825, -2.1069427 , 0.6236161 ]], dtype=float32) + ``` + """ + parameters = { + "normalize": normalize, + "prompt_name": prompt_name, + "truncate": truncate, + "truncation_direction": truncation_direction, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post(**payload, model=model, task="feature-extraction") + np = _import_numpy() + return np.array(_bytes_to_dict(response), dtype="float32") + + def fill_mask( + self, + text: str, + *, + model: Optional[str] = None, + targets: Optional[List[str]] = None, + top_k: Optional[int] = None, + ) -> List[FillMaskOutputElement]: + """ + Fill in a hole with a missing word (token to be precise). + + Args: + text (`str`): + a string to be filled from, must contain the [MASK] token (check model card for exact name of the mask). + model (`str`, *optional*): + The model to use for the fill mask task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended fill mask model will be used. + targets (`List[str]`, *optional*): + When passed, the model will limit the scores to the passed targets instead of looking up + in the whole vocabulary. If the provided targets are not in the model vocab, they will be + tokenized and the first resulting token will be used (with a warning, and that might be + slower). + top_k (`int`, *optional*): + When passed, overrides the number of predictions to return. + Returns: + `List[FillMaskOutputElement]`: a list of [`FillMaskOutputElement`] items containing the predicted label, associated + probability, token reference, and completed text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.fill_mask("The goal of life is .") + [ + FillMaskOutputElement(score=0.06897063553333282, token=11098, token_str=' happiness', sequence='The goal of life is happiness.'), + FillMaskOutputElement(score=0.06554922461509705, token=45075, token_str=' immortality', sequence='The goal of life is immortality.') + ] + ``` + """ + parameters = {"targets": targets, "top_k": top_k} + payload = _prepare_payload(text, parameters=parameters) + response = self.post(**payload, model=model, task="fill-mask") + return FillMaskOutputElement.parse_obj_as_list(response) + + def image_classification( + self, + image: ContentT, + *, + model: Optional[str] = None, + function_to_apply: Optional[Literal["sigmoid", "softmax", "none"]] = None, + top_k: Optional[int] = None, + ) -> List[ImageClassificationOutputElement]: + """ + Perform image classification on the given image using the specified model. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The image to classify. It can be raw bytes, an image file, or a URL to an online image. + model (`str`, *optional*): + The model to use for image classification. Can be a model ID hosted on the Hugging Face Hub or a URL to a + deployed Inference Endpoint. If not provided, the default recommended model for image classification will be used. + function_to_apply (`Literal["sigmoid", "softmax", "none"]`, *optional*): + The function to apply to the output scores. + top_k (`int`, *optional*): + When specified, limits the output to the top K most probable classes. + Returns: + `List[ImageClassificationOutputElement]`: a list of [`ImageClassificationOutputElement`] items containing the predicted label and associated probability. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.image_classification("https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg") + [ImageClassificationOutputElement(label='Blenheim spaniel', score=0.9779096841812134), ...] + ``` + """ + parameters = {"function_to_apply": function_to_apply, "top_k": top_k} + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = self.post(**payload, model=model, task="image-classification") + return ImageClassificationOutputElement.parse_obj_as_list(response) + + def image_segmentation( + self, + image: ContentT, + *, + model: Optional[str] = None, + mask_threshold: Optional[float] = None, + overlap_mask_area_threshold: Optional[float] = None, + subtask: Optional[Literal["instance", "panoptic", "semantic"]] = None, + threshold: Optional[float] = None, + ) -> List[ImageSegmentationOutputElement]: + """ + Perform image segmentation on the given image using the specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The image to segment. It can be raw bytes, an image file, or a URL to an online image. + model (`str`, *optional*): + The model to use for image segmentation. Can be a model ID hosted on the Hugging Face Hub or a URL to a + deployed Inference Endpoint. If not provided, the default recommended model for image segmentation will be used. + mask_threshold (`float`, *optional*): + Threshold to use when turning the predicted masks into binary values. + overlap_mask_area_threshold (`float`, *optional*): + Mask overlap threshold to eliminate small, disconnected segments. + subtask (`Literal["instance", "panoptic", "semantic"]`, *optional*): + Segmentation task to be performed, depending on model capabilities. + threshold (`float`, *optional*): + Probability threshold to filter out predicted masks. + Returns: + `List[ImageSegmentationOutputElement]`: A list of [`ImageSegmentationOutputElement`] items containing the segmented masks and associated attributes. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.image_segmentation("cat.jpg") + [ImageSegmentationOutputElement(score=0.989008, label='LABEL_184', mask=), ...] + ``` + """ + parameters = { + "mask_threshold": mask_threshold, + "overlap_mask_area_threshold": overlap_mask_area_threshold, + "subtask": subtask, + "threshold": threshold, + } + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = self.post(**payload, model=model, task="image-segmentation") + output = ImageSegmentationOutputElement.parse_obj_as_list(response) + for item in output: + item.mask = _b64_to_image(item.mask) # type: ignore [assignment] + return output + + def image_to_image( + self, + image: ContentT, + prompt: Optional[str] = None, + *, + negative_prompt: Optional[str] = None, + height: Optional[int] = None, + width: Optional[int] = None, + num_inference_steps: Optional[int] = None, + guidance_scale: Optional[float] = None, + model: Optional[str] = None, + **kwargs, + ) -> "Image": + """ + Perform image-to-image translation using a specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image for translation. It can be raw bytes, an image file, or a URL to an online image. + prompt (`str`, *optional*): + The text prompt to guide the image generation. + negative_prompt (`str`, *optional*): + A negative prompt to guide the translation process. + height (`int`, *optional*): + The height in pixels of the generated image. + width (`int`, *optional*): + The width in pixels of the generated image. + num_inference_steps (`int`, *optional*): + The number of denoising steps. More denoising steps usually lead to a higher quality image at the + expense of slower inference. + guidance_scale (`float`, *optional*): + Higher guidance scale encourages to generate images that are closely linked to the text `prompt`, + usually at the expense of lower image quality. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + `Image`: The translated image. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> image = client.image_to_image("cat.jpg", prompt="turn the cat into a tiger") + >>> image.save("tiger.jpg") + ``` + """ + parameters = { + "prompt": prompt, + "negative_prompt": negative_prompt, + "height": height, + "width": width, + "num_inference_steps": num_inference_steps, + "guidance_scale": guidance_scale, + **kwargs, + } + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = self.post(**payload, model=model, task="image-to-image") + return _bytes_to_image(response) + + def image_to_text(self, image: ContentT, *, model: Optional[str] = None) -> ImageToTextOutput: + """ + Takes an input image and return text. + + Models can have very different outputs depending on your use case (image captioning, optical character recognition + (OCR), Pix2Struct, etc). Please have a look to the model card to learn more about a model's specificities. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image to caption. It can be raw bytes, an image file, or a URL to an online image.. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + [`ImageToTextOutput`]: The generated text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.image_to_text("cat.jpg") + 'a cat standing in a grassy field ' + >>> client.image_to_text("https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg") + 'a dog laying on the grass next to a flower pot ' + ``` + """ + response = self.post(data=image, model=model, task="image-to-text") + output = ImageToTextOutput.parse_obj(response) + return output[0] if isinstance(output, list) else output + + def list_deployed_models( + self, frameworks: Union[None, str, Literal["all"], List[str]] = None + ) -> Dict[str, List[str]]: + """ + List models deployed on the Serverless Inference API service. + + This helper checks deployed models framework by framework. By default, it will check the 4 main frameworks that + are supported and account for 95% of the hosted models. However, if you want a complete list of models you can + specify `frameworks="all"` as input. Alternatively, if you know before-hand which framework you are interested + in, you can also restrict to search to this one (e.g. `frameworks="text-generation-inference"`). The more + frameworks are checked, the more time it will take. + + + + This endpoint method does not return a live list of all models available for the Serverless Inference API service. + It searches over a cached list of models that were recently available and the list may not be up to date. + If you want to know the live status of a specific model, use [`~InferenceClient.get_model_status`]. + + + + + + This endpoint method is mostly useful for discoverability. If you already know which model you want to use and want to + check its availability, you can directly use [`~InferenceClient.get_model_status`]. + + + + Args: + frameworks (`Literal["all"]` or `List[str]` or `str`, *optional*): + The frameworks to filter on. By default only a subset of the available frameworks are tested. If set to + "all", all available frameworks will be tested. It is also possible to provide a single framework or a + custom set of frameworks to check. + + Returns: + `Dict[str, List[str]]`: A dictionary mapping task names to a sorted list of model IDs. + + Example: + ```python + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + + # Discover zero-shot-classification models currently deployed + >>> models = client.list_deployed_models() + >>> models["zero-shot-classification"] + ['Narsil/deberta-large-mnli-zero-cls', 'facebook/bart-large-mnli', ...] + + # List from only 1 framework + >>> client.list_deployed_models("text-generation-inference") + {'text-generation': ['bigcode/starcoder', 'meta-llama/Llama-2-70b-chat-hf', ...], ...} + ``` + """ + # Resolve which frameworks to check + if frameworks is None: + frameworks = MAIN_INFERENCE_API_FRAMEWORKS + elif frameworks == "all": + frameworks = ALL_INFERENCE_API_FRAMEWORKS + elif isinstance(frameworks, str): + frameworks = [frameworks] + frameworks = list(set(frameworks)) + + # Fetch them iteratively + models_by_task: Dict[str, List[str]] = {} + + def _unpack_response(framework: str, items: List[Dict]) -> None: + for model in items: + if framework == "sentence-transformers": + # Model running with the `sentence-transformers` framework can work with both tasks even if not + # branded as such in the API response + models_by_task.setdefault("feature-extraction", []).append(model["model_id"]) + models_by_task.setdefault("sentence-similarity", []).append(model["model_id"]) + else: + models_by_task.setdefault(model["task"], []).append(model["model_id"]) + + for framework in frameworks: + response = get_session().get(f"{INFERENCE_ENDPOINT}/framework/{framework}", headers=self.headers) + hf_raise_for_status(response) + _unpack_response(framework, response.json()) + + # Sort alphabetically for discoverability and return + for task, models in models_by_task.items(): + models_by_task[task] = sorted(set(models), key=lambda x: x.lower()) + return models_by_task + + def object_detection( + self, image: ContentT, *, model: Optional[str] = None, threshold: Optional[float] = None + ) -> List[ObjectDetectionOutputElement]: + """ + Perform object detection on the given image using the specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The image to detect objects on. It can be raw bytes, an image file, or a URL to an online image. + model (`str`, *optional*): + The model to use for object detection. Can be a model ID hosted on the Hugging Face Hub or a URL to a + deployed Inference Endpoint. If not provided, the default recommended model for object detection (DETR) will be used. + threshold (`float`, *optional*): + The probability necessary to make a prediction. + Returns: + `List[ObjectDetectionOutputElement]`: A list of [`ObjectDetectionOutputElement`] items containing the bounding boxes and associated attributes. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + `ValueError`: + If the request output is not a List. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.object_detection("people.jpg") + [ObjectDetectionOutputElement(score=0.9486683011054993, label='person', box=ObjectDetectionBoundingBox(xmin=59, ymin=39, xmax=420, ymax=510)), ...] + ``` + """ + parameters = { + "threshold": threshold, + } + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = self.post(**payload, model=model, task="object-detection") + return ObjectDetectionOutputElement.parse_obj_as_list(response) + + def question_answering( + self, + question: str, + context: str, + *, + model: Optional[str] = None, + align_to_words: Optional[bool] = None, + doc_stride: Optional[int] = None, + handle_impossible_answer: Optional[bool] = None, + max_answer_len: Optional[int] = None, + max_question_len: Optional[int] = None, + max_seq_len: Optional[int] = None, + top_k: Optional[int] = None, + ) -> Union[QuestionAnsweringOutputElement, List[QuestionAnsweringOutputElement]]: + """ + Retrieve the answer to a question from a given text. + + Args: + question (`str`): + Question to be answered. + context (`str`): + The context of the question. + model (`str`): + The model to use for the question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. + align_to_words (`bool`, *optional*): + Attempts to align the answer to real words. Improves quality on space separated + languages. Might hurt on non-space-separated languages (like Japanese or Chinese). + doc_stride (`int`, *optional*): + If the context is too long to fit with the question for the model, it will be split in + several chunks with some overlap. This argument controls the size of that overlap. + handle_impossible_answer (`bool`, *optional*): + Whether to accept impossible as an answer. + max_answer_len (`int`, *optional*): + The maximum length of predicted answers (e.g., only answers with a shorter length are + considered). + max_question_len (`int`, *optional*): + The maximum length of the question after tokenization. It will be truncated if needed. + max_seq_len (`int`, *optional*): + The maximum length of the total sentence (context + question) in tokens of each chunk + passed to the model. The context will be split in several chunks (using docStride as + overlap) if needed. + top_k (`int`, *optional*): + The number of answers to return (will be chosen by order of likelihood). Note that we + return less than topk answers if there are not enough options available within the + context. + Returns: + Union[`QuestionAnsweringOutputElement`, List[`QuestionAnsweringOutputElement`]]: + When top_k is 1 or not provided, it returns a single `QuestionAnsweringOutputElement`. + When top_k is greater than 1, it returns a list of `QuestionAnsweringOutputElement`. + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.question_answering(question="What's my name?", context="My name is Clara and I live in Berkeley.") + QuestionAnsweringOutputElement(answer='Clara', end=16, score=0.9326565265655518, start=11) + ``` + """ + parameters = { + "align_to_words": align_to_words, + "doc_stride": doc_stride, + "handle_impossible_answer": handle_impossible_answer, + "max_answer_len": max_answer_len, + "max_question_len": max_question_len, + "max_seq_len": max_seq_len, + "top_k": top_k, + } + inputs: Dict[str, Any] = {"question": question, "context": context} + payload = _prepare_payload(inputs, parameters=parameters) + response = self.post( + **payload, + model=model, + task="question-answering", + ) + # Parse the response as a single `QuestionAnsweringOutputElement` when top_k is 1 or not provided, or a list of `QuestionAnsweringOutputElement` to ensure backward compatibility. + output = QuestionAnsweringOutputElement.parse_obj(response) + return output + + def sentence_similarity( + self, sentence: str, other_sentences: List[str], *, model: Optional[str] = None + ) -> List[float]: + """ + Compute the semantic similarity between a sentence and a list of other sentences by comparing their embeddings. + + Args: + sentence (`str`): + The main sentence to compare to others. + other_sentences (`List[str]`): + The list of sentences to compare to. + model (`str`, *optional*): + The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used. + Defaults to None. + + Returns: + `List[float]`: The embedding representing the input text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.sentence_similarity( + ... "Machine learning is so easy.", + ... other_sentences=[ + ... "Deep learning is so straightforward.", + ... "This is so difficult, like rocket science.", + ... "I can't believe how much I struggled with this.", + ... ], + ... ) + [0.7785726189613342, 0.45876261591911316, 0.2906220555305481] + ``` + """ + response = self.post( + json={"inputs": {"source_sentence": sentence, "sentences": other_sentences}}, + model=model, + task="sentence-similarity", + ) + return _bytes_to_list(response) + + @_deprecate_arguments( + version="0.29", + deprecated_args=["parameters"], + custom_message=( + "The `parameters` argument is deprecated and will be removed in a future version. " + "Provide individual parameters instead: `clean_up_tokenization_spaces`, `generate_parameters`, and `truncation`." + ), + ) + def summarization( + self, + text: str, + *, + parameters: Optional[Dict[str, Any]] = None, + model: Optional[str] = None, + clean_up_tokenization_spaces: Optional[bool] = None, + generate_parameters: Optional[Dict[str, Any]] = None, + truncation: Optional[Literal["do_not_truncate", "longest_first", "only_first", "only_second"]] = None, + ) -> SummarizationOutput: + """ + Generate a summary of a given text using a specified model. + + Args: + text (`str`): + The input text to summarize. + parameters (`Dict[str, Any]`, *optional*): + Additional parameters for summarization. Check out this [page](https://huggingface.co/docs/api-inference/detailed_parameters#summarization-task) + for more details. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended model for summarization will be used. + clean_up_tokenization_spaces (`bool`, *optional*): + Whether to clean up the potential extra spaces in the text output. + generate_parameters (`Dict[str, Any]`, *optional*): + Additional parametrization of the text generation algorithm. + truncation (`Literal["do_not_truncate", "longest_first", "only_first", "only_second"]`, *optional*): + The truncation strategy to use. + Returns: + [`SummarizationOutput`]: The generated summary text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.summarization("The Eiffel tower...") + SummarizationOutput(generated_text="The Eiffel tower is one of the most famous landmarks in the world....") + ``` + """ + if parameters is None: + parameters = { + "clean_up_tokenization_spaces": clean_up_tokenization_spaces, + "generate_parameters": generate_parameters, + "truncation": truncation, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post(**payload, model=model, task="summarization") + return SummarizationOutput.parse_obj_as_list(response)[0] + + def table_question_answering( + self, + table: Dict[str, Any], + query: str, + *, + model: Optional[str] = None, + parameters: Optional[Dict[str, Any]] = None, + ) -> TableQuestionAnsweringOutputElement: + """ + Retrieve the answer to a question from information given in a table. + + Args: + table (`str`): + A table of data represented as a dict of lists where entries are headers and the lists are all the + values, all lists must have the same size. + query (`str`): + The query in plain text that you want to ask the table. + model (`str`): + The model to use for the table-question-answering task. Can be a model ID hosted on the Hugging Face + Hub or a URL to a deployed Inference Endpoint. + parameters (`Dict[str, Any]`, *optional*): + Additional inference parameters. Defaults to None. + + Returns: + [`TableQuestionAnsweringOutputElement`]: a table question answering output containing the answer, coordinates, cells and the aggregator used. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> query = "How many stars does the transformers repository have?" + >>> table = {"Repository": ["Transformers", "Datasets", "Tokenizers"], "Stars": ["36542", "4512", "3934"]} + >>> client.table_question_answering(table, query, model="google/tapas-base-finetuned-wtq") + TableQuestionAnsweringOutputElement(answer='36542', coordinates=[[0, 1]], cells=['36542'], aggregator='AVERAGE') + ``` + """ + inputs = { + "query": query, + "table": table, + } + payload = _prepare_payload(inputs, parameters=parameters) + response = self.post( + **payload, + model=model, + task="table-question-answering", + ) + return TableQuestionAnsweringOutputElement.parse_obj_as_instance(response) + + def tabular_classification(self, table: Dict[str, Any], *, model: Optional[str] = None) -> List[str]: + """ + Classifying a target category (a group) based on a set of attributes. + + Args: + table (`Dict[str, Any]`): + Set of attributes to classify. + model (`str`, *optional*): + The model to use for the tabular classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended tabular classification model will be used. + Defaults to None. + + Returns: + `List`: a list of labels, one per row in the initial table. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> table = { + ... "fixed_acidity": ["7.4", "7.8", "10.3"], + ... "volatile_acidity": ["0.7", "0.88", "0.32"], + ... "citric_acid": ["0", "0", "0.45"], + ... "residual_sugar": ["1.9", "2.6", "6.4"], + ... "chlorides": ["0.076", "0.098", "0.073"], + ... "free_sulfur_dioxide": ["11", "25", "5"], + ... "total_sulfur_dioxide": ["34", "67", "13"], + ... "density": ["0.9978", "0.9968", "0.9976"], + ... "pH": ["3.51", "3.2", "3.23"], + ... "sulphates": ["0.56", "0.68", "0.82"], + ... "alcohol": ["9.4", "9.8", "12.6"], + ... } + >>> client.tabular_classification(table=table, model="julien-c/wine-quality") + ["5", "5", "5"] + ``` + """ + response = self.post( + json={"table": table}, + model=model, + task="tabular-classification", + ) + return _bytes_to_list(response) + + def tabular_regression(self, table: Dict[str, Any], *, model: Optional[str] = None) -> List[float]: + """ + Predicting a numerical target value given a set of attributes/features in a table. + + Args: + table (`Dict[str, Any]`): + Set of attributes stored in a table. The attributes used to predict the target can be both numerical and categorical. + model (`str`, *optional*): + The model to use for the tabular regression task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended tabular regression model will be used. + Defaults to None. + + Returns: + `List`: a list of predicted numerical target values. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> table = { + ... "Height": ["11.52", "12.48", "12.3778"], + ... "Length1": ["23.2", "24", "23.9"], + ... "Length2": ["25.4", "26.3", "26.5"], + ... "Length3": ["30", "31.2", "31.1"], + ... "Species": ["Bream", "Bream", "Bream"], + ... "Width": ["4.02", "4.3056", "4.6961"], + ... } + >>> client.tabular_regression(table, model="scikit-learn/Fish-Weight") + [110, 120, 130] + ``` + """ + response = self.post(json={"table": table}, model=model, task="tabular-regression") + return _bytes_to_list(response) + + def text_classification( + self, + text: str, + *, + model: Optional[str] = None, + top_k: Optional[int] = None, + function_to_apply: Optional["TextClassificationOutputTransform"] = None, + ) -> List[TextClassificationOutputElement]: + """ + Perform text classification (e.g. sentiment-analysis) on the given text. + + Args: + text (`str`): + A string to be classified. + model (`str`, *optional*): + The model to use for the text classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended text classification model will be used. + Defaults to None. + top_k (`int`, *optional*): + When specified, limits the output to the top K most probable classes. + function_to_apply (`"TextClassificationOutputTransform"`, *optional*): + The function to apply to the output. + + Returns: + `List[TextClassificationOutputElement]`: a list of [`TextClassificationOutputElement`] items containing the predicted label and associated probability. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.text_classification("I like you") + [ + TextClassificationOutputElement(label='POSITIVE', score=0.9998695850372314), + TextClassificationOutputElement(label='NEGATIVE', score=0.0001304351753788069), + ] + ``` + """ + parameters = { + "function_to_apply": function_to_apply, + "top_k": top_k, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post( + **payload, + model=model, + task="text-classification", + ) + return TextClassificationOutputElement.parse_obj_as_list(response)[0] # type: ignore [return-value] + + @overload + def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[False] = ..., + stream: Literal[False] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> str: ... + + @overload + def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[True] = ..., + stream: Literal[False] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> TextGenerationOutput: ... + + @overload + def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[False] = ..., + stream: Literal[True] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> Iterable[str]: ... + + @overload + def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[True] = ..., + stream: Literal[True] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> Iterable[TextGenerationStreamOutput]: ... + + @overload + def text_generation( + self, + prompt: str, + *, + details: Literal[True] = ..., + stream: bool = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> Union[TextGenerationOutput, Iterable[TextGenerationStreamOutput]]: ... + + def text_generation( + self, + prompt: str, + *, + details: bool = False, + stream: bool = False, + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> Union[str, TextGenerationOutput, Iterable[str], Iterable[TextGenerationStreamOutput]]: + """ + Given a prompt, generate the following text. + + API endpoint is supposed to run with the `text-generation-inference` backend (TGI). This backend is the + go-to solution to run large language models at scale. However, for some smaller models (e.g. "gpt2") the + default `transformers` + `api-inference` solution is still in use. Both approaches have very similar APIs, but + not exactly the same. This method is compatible with both approaches but some parameters are only available for + `text-generation-inference`. If some parameters are ignored, a warning message is triggered but the process + continues correctly. + + To learn more about the TGI project, please refer to https://github.com/huggingface/text-generation-inference. + + + + If you want to generate a response from chat messages, you should use the [`InferenceClient.chat_completion`] method. + It accepts a list of messages instead of a single text prompt and handles the chat templating for you. + + + + Args: + prompt (`str`): + Input text. + details (`bool`, *optional*): + By default, text_generation returns a string. Pass `details=True` if you want a detailed output (tokens, + probabilities, seed, finish reason, etc.). Only available for models running on with the + `text-generation-inference` backend. + stream (`bool`, *optional*): + By default, text_generation returns the full generated text. Pass `stream=True` if you want a stream of + tokens to be returned. Only available for models running on with the `text-generation-inference` + backend. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + adapter_id (`str`, *optional*): + Lora adapter id. + best_of (`int`, *optional*): + Generate best_of sequences and return the one if the highest token logprobs. + decoder_input_details (`bool`, *optional*): + Return the decoder input token logprobs and ids. You must set `details=True` as well for it to be taken + into account. Defaults to `False`. + do_sample (`bool`, *optional*): + Activate logits sampling + frequency_penalty (`float`, *optional*): + Number between -2.0 and 2.0. Positive values penalize new tokens based on their existing frequency in + the text so far, decreasing the model's likelihood to repeat the same line verbatim. + grammar ([`TextGenerationInputGrammarType`], *optional*): + Grammar constraints. Can be either a JSONSchema or a regex. + max_new_tokens (`int`, *optional*): + Maximum number of generated tokens + repetition_penalty (`float`, *optional*): + The parameter for repetition penalty. 1.0 means no penalty. See [this + paper](https://arxiv.org/pdf/1909.05858.pdf) for more details. + return_full_text (`bool`, *optional*): + Whether to prepend the prompt to the generated text + seed (`int`, *optional*): + Random sampling seed + stop (`List[str]`, *optional*): + Stop generating tokens if a member of `stop` is generated. + stop_sequences (`List[str]`, *optional*): + Deprecated argument. Use `stop` instead. + temperature (`float`, *optional*): + The value used to module the logits distribution. + top_n_tokens (`int`, *optional*): + Return information about the `top_n_tokens` most likely tokens at each generation step, instead of + just the sampled token. + top_k (`int`, *optional`): + The number of highest probability vocabulary tokens to keep for top-k-filtering. + top_p (`float`, *optional`): + If set to < 1, only the smallest set of most probable tokens with probabilities that add up to `top_p` or + higher are kept for generation. + truncate (`int`, *optional`): + Truncate inputs tokens to the given size. + typical_p (`float`, *optional`): + Typical Decoding mass + See [Typical Decoding for Natural Language Generation](https://arxiv.org/abs/2202.00666) for more information + watermark (`bool`, *optional`): + Watermarking with [A Watermark for Large Language Models](https://arxiv.org/abs/2301.10226) + + Returns: + `Union[str, TextGenerationOutput, Iterable[str], Iterable[TextGenerationStreamOutput]]`: + Generated text returned from the server: + - if `stream=False` and `details=False`, the generated text is returned as a `str` (default) + - if `stream=True` and `details=False`, the generated text is returned token by token as a `Iterable[str]` + - if `stream=False` and `details=True`, the generated text is returned with more details as a [`~huggingface_hub.TextGenerationOutput`] + - if `details=True` and `stream=True`, the generated text is returned token by token as a iterable of [`~huggingface_hub.TextGenerationStreamOutput`] + + Raises: + `ValidationError`: + If input values are not valid. No HTTP call is made to the server. + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + + # Case 1: generate text + >>> client.text_generation("The huggingface_hub library is ", max_new_tokens=12) + '100% open source and built to be easy to use.' + + # Case 2: iterate over the generated tokens. Useful for large generation. + >>> for token in client.text_generation("The huggingface_hub library is ", max_new_tokens=12, stream=True): + ... print(token) + 100 + % + open + source + and + built + to + be + easy + to + use + . + + # Case 3: get more details about the generation process. + >>> client.text_generation("The huggingface_hub library is ", max_new_tokens=12, details=True) + TextGenerationOutput( + generated_text='100% open source and built to be easy to use.', + details=TextGenerationDetails( + finish_reason='length', + generated_tokens=12, + seed=None, + prefill=[ + TextGenerationPrefillOutputToken(id=487, text='The', logprob=None), + TextGenerationPrefillOutputToken(id=53789, text=' hugging', logprob=-13.171875), + (...) + TextGenerationPrefillOutputToken(id=204, text=' ', logprob=-7.0390625) + ], + tokens=[ + TokenElement(id=1425, text='100', logprob=-1.0175781, special=False), + TokenElement(id=16, text='%', logprob=-0.0463562, special=False), + (...) + TokenElement(id=25, text='.', logprob=-0.5703125, special=False) + ], + best_of_sequences=None + ) + ) + + # Case 4: iterate over the generated tokens with more details. + # Last object is more complete, containing the full generated text and the finish reason. + >>> for details in client.text_generation("The huggingface_hub library is ", max_new_tokens=12, details=True, stream=True): + ... print(details) + ... + TextGenerationStreamOutput(token=TokenElement(id=1425, text='100', logprob=-1.0175781, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=16, text='%', logprob=-0.0463562, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=1314, text=' open', logprob=-1.3359375, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=3178, text=' source', logprob=-0.28100586, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=273, text=' and', logprob=-0.5961914, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=3426, text=' built', logprob=-1.9423828, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=271, text=' to', logprob=-1.4121094, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=314, text=' be', logprob=-1.5224609, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=1833, text=' easy', logprob=-2.1132812, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=271, text=' to', logprob=-0.08520508, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=745, text=' use', logprob=-0.39453125, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement( + id=25, + text='.', + logprob=-0.5703125, + special=False), + generated_text='100% open source and built to be easy to use.', + details=TextGenerationStreamOutputStreamDetails(finish_reason='length', generated_tokens=12, seed=None) + ) + + # Case 5: generate constrained output using grammar + >>> response = client.text_generation( + ... prompt="I saw a puppy a cat and a raccoon during my bike ride in the park", + ... model="HuggingFaceH4/zephyr-orpo-141b-A35b-v0.1", + ... max_new_tokens=100, + ... repetition_penalty=1.3, + ... grammar={ + ... "type": "json", + ... "value": { + ... "properties": { + ... "location": {"type": "string"}, + ... "activity": {"type": "string"}, + ... "animals_seen": {"type": "integer", "minimum": 1, "maximum": 5}, + ... "animals": {"type": "array", "items": {"type": "string"}}, + ... }, + ... "required": ["location", "activity", "animals_seen", "animals"], + ... }, + ... }, + ... ) + >>> json.loads(response) + { + "activity": "bike riding", + "animals": ["puppy", "cat", "raccoon"], + "animals_seen": 3, + "location": "park" + } + ``` + """ + if decoder_input_details and not details: + warnings.warn( + "`decoder_input_details=True` has been passed to the server but `details=False` is set meaning that" + " the output from the server will be truncated." + ) + decoder_input_details = False + + if stop_sequences is not None: + warnings.warn( + "`stop_sequences` is a deprecated argument for `text_generation` task" + " and will be removed in version '0.28.0'. Use `stop` instead.", + FutureWarning, + ) + if stop is None: + stop = stop_sequences # use deprecated arg if provided + + # Build payload + parameters = { + "adapter_id": adapter_id, + "best_of": best_of, + "decoder_input_details": decoder_input_details, + "details": details, + "do_sample": do_sample, + "frequency_penalty": frequency_penalty, + "grammar": grammar, + "max_new_tokens": max_new_tokens, + "repetition_penalty": repetition_penalty, + "return_full_text": return_full_text, + "seed": seed, + "stop": stop if stop is not None else [], + "temperature": temperature, + "top_k": top_k, + "top_n_tokens": top_n_tokens, + "top_p": top_p, + "truncate": truncate, + "typical_p": typical_p, + "watermark": watermark, + } + parameters = {k: v for k, v in parameters.items() if v is not None} + payload = { + "inputs": prompt, + "parameters": parameters, + "stream": stream, + } + + # Remove some parameters if not a TGI server + unsupported_kwargs = _get_unsupported_text_generation_kwargs(model) + if len(unsupported_kwargs) > 0: + # The server does not support some parameters + # => means it is not a TGI server + # => remove unsupported parameters and warn the user + + ignored_parameters = [] + for key in unsupported_kwargs: + if parameters.get(key): + ignored_parameters.append(key) + parameters.pop(key, None) + if len(ignored_parameters) > 0: + warnings.warn( + "API endpoint/model for text-generation is not served via TGI. Ignoring following parameters:" + f" {', '.join(ignored_parameters)}.", + UserWarning, + ) + if details: + warnings.warn( + "API endpoint/model for text-generation is not served via TGI. Parameter `details=True` will" + " be ignored meaning only the generated text will be returned.", + UserWarning, + ) + details = False + if stream: + raise ValueError( + "API endpoint/model for text-generation is not served via TGI. Cannot return output as a stream." + " Please pass `stream=False` as input." + ) + + # Handle errors separately for more precise error messages + try: + bytes_output = self.post(json=payload, model=model, task="text-generation", stream=stream) # type: ignore + except HTTPError as e: + match = MODEL_KWARGS_NOT_USED_REGEX.search(str(e)) + if isinstance(e, BadRequestError) and match: + unused_params = [kwarg.strip("' ") for kwarg in match.group(1).split(",")] + _set_unsupported_text_generation_kwargs(model, unused_params) + return self.text_generation( # type: ignore + prompt=prompt, + details=details, + stream=stream, + model=model, + adapter_id=adapter_id, + best_of=best_of, + decoder_input_details=decoder_input_details, + do_sample=do_sample, + frequency_penalty=frequency_penalty, + grammar=grammar, + max_new_tokens=max_new_tokens, + repetition_penalty=repetition_penalty, + return_full_text=return_full_text, + seed=seed, + stop=stop, + temperature=temperature, + top_k=top_k, + top_n_tokens=top_n_tokens, + top_p=top_p, + truncate=truncate, + typical_p=typical_p, + watermark=watermark, + ) + raise_text_generation_error(e) + + # Parse output + if stream: + return _stream_text_generation_response(bytes_output, details) # type: ignore + + data = _bytes_to_dict(bytes_output) # type: ignore[arg-type] + + # Data can be a single element (dict) or an iterable of dicts where we select the first element of. + if isinstance(data, list): + data = data[0] + + return TextGenerationOutput.parse_obj_as_instance(data) if details else data["generated_text"] + + def text_to_image( + self, + prompt: str, + *, + negative_prompt: Optional[str] = None, + height: Optional[float] = None, + width: Optional[float] = None, + num_inference_steps: Optional[float] = None, + guidance_scale: Optional[float] = None, + model: Optional[str] = None, + scheduler: Optional[str] = None, + target_size: Optional[TextToImageTargetSize] = None, + seed: Optional[int] = None, + **kwargs, + ) -> "Image": + """ + Generate an image based on a given text using a specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + prompt (`str`): + The prompt to generate an image from. + negative_prompt (`str`, *optional*): + An optional negative prompt for the image generation. + height (`float`, *optional*): + The height in pixels of the image to generate. + width (`float`, *optional*): + The width in pixels of the image to generate. + num_inference_steps (`int`, *optional*): + The number of denoising steps. More denoising steps usually lead to a higher quality image at the + expense of slower inference. + guidance_scale (`float`, *optional*): + Higher guidance scale encourages to generate images that are closely linked to the text `prompt`, + usually at the expense of lower image quality. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended text-to-image model will be used. + Defaults to None. + scheduler (`str`, *optional*): + Override the scheduler with a compatible one. + target_size (`TextToImageTargetSize`, *optional*): + The size in pixel of the output image + seed (`int`, *optional*): + Seed for the random number generator. + + Returns: + `Image`: The generated image. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + + >>> image = client.text_to_image("An astronaut riding a horse on the moon.") + >>> image.save("astronaut.png") + + >>> image = client.text_to_image( + ... "An astronaut riding a horse on the moon.", + ... negative_prompt="low resolution, blurry", + ... model="stabilityai/stable-diffusion-2-1", + ... ) + >>> image.save("better_astronaut.png") + ``` + """ + + parameters = { + "negative_prompt": negative_prompt, + "height": height, + "width": width, + "num_inference_steps": num_inference_steps, + "guidance_scale": guidance_scale, + "scheduler": scheduler, + "target_size": target_size, + "seed": seed, + **kwargs, + } + payload = _prepare_payload(prompt, parameters=parameters) + response = self.post(**payload, model=model, task="text-to-image") + return _bytes_to_image(response) + + def text_to_speech( + self, + text: str, + *, + model: Optional[str] = None, + do_sample: Optional[bool] = None, + early_stopping: Optional[Union[bool, "TextToSpeechEarlyStoppingEnum"]] = None, + epsilon_cutoff: Optional[float] = None, + eta_cutoff: Optional[float] = None, + max_length: Optional[int] = None, + max_new_tokens: Optional[int] = None, + min_length: Optional[int] = None, + min_new_tokens: Optional[int] = None, + num_beam_groups: Optional[int] = None, + num_beams: Optional[int] = None, + penalty_alpha: Optional[float] = None, + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_p: Optional[float] = None, + typical_p: Optional[float] = None, + use_cache: Optional[bool] = None, + ) -> bytes: + """ + Synthesize an audio of a voice pronouncing a given text. + + Args: + text (`str`): + The text to synthesize. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended text-to-speech model will be used. + Defaults to None. + do_sample (`bool`, *optional*): + Whether to use sampling instead of greedy decoding when generating new tokens. + early_stopping (`Union[bool, "TextToSpeechEarlyStoppingEnum"`, *optional*): + Controls the stopping condition for beam-based methods. + epsilon_cutoff (`float`, *optional*): + If set to float strictly between 0 and 1, only tokens with a conditional probability + greater than epsilon_cutoff will be sampled. In the paper, suggested values range from + 3e-4 to 9e-4, depending on the size of the model. See [Truncation Sampling as Language + Model Desmoothing](https://hf.co/papers/2210.15191) for more details. + eta_cutoff (`float`, *optional*): + Eta sampling is a hybrid of locally typical sampling and epsilon sampling. If set to + float strictly between 0 and 1, a token is only considered if it is greater than either + eta_cutoff or sqrt(eta_cutoff) * exp(-entropy(softmax(next_token_logits))). The latter + term is intuitively the expected next token probability, scaled by sqrt(eta_cutoff). In + the paper, suggested values range from 3e-4 to 2e-3, depending on the size of the model. + See [Truncation Sampling as Language Model Desmoothing](https://hf.co/papers/2210.15191) + for more details. + max_length (`int`, *optional*): + The maximum length (in tokens) of the generated text, including the input. + max_new_tokens (`int`, *optional*): + The maximum number of tokens to generate. Takes precedence over maxLength. + min_length (`int`, *optional*): + The minimum length (in tokens) of the generated text, including the input. + min_new_tokens (`int`, *optional*): + The minimum number of tokens to generate. Takes precedence over maxLength. + num_beam_groups (`int`, *optional*): + Number of groups to divide num_beams into in order to ensure diversity among different + groups of beams. See [this paper](https://hf.co/papers/1610.02424) for more details. + num_beams (`int`, *optional*): + Number of beams to use for beam search. + penalty_alpha (`float`, *optional*): + The value balances the model confidence and the degeneration penalty in contrastive + search decoding. + temperature (`float`, *optional*): + The value used to modulate the next token probabilities. + top_k (`int`, *optional*): + The number of highest probability vocabulary tokens to keep for top-k-filtering. + top_p (`float`, *optional*): + If set to float < 1, only the smallest set of most probable tokens with probabilities + that add up to top_p or higher are kept for generation. + typical_p (`float`, *optional*): + Local typicality measures how similar the conditional probability of predicting a target token next is + to the expected conditional probability of predicting a random token next, given the partial text + already generated. If set to float < 1, the smallest set of the most locally typical tokens with + probabilities that add up to typical_p or higher are kept for generation. See [this + paper](https://hf.co/papers/2202.00666) for more details. + use_cache (`bool`, *optional*): + Whether the model should use the past last key/values attentions to speed up decoding + + Returns: + `bytes`: The generated audio. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from pathlib import Path + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + + >>> audio = client.text_to_speech("Hello world") + >>> Path("hello_world.flac").write_bytes(audio) + ``` + """ + parameters = { + "do_sample": do_sample, + "early_stopping": early_stopping, + "epsilon_cutoff": epsilon_cutoff, + "eta_cutoff": eta_cutoff, + "max_length": max_length, + "max_new_tokens": max_new_tokens, + "min_length": min_length, + "min_new_tokens": min_new_tokens, + "num_beam_groups": num_beam_groups, + "num_beams": num_beams, + "penalty_alpha": penalty_alpha, + "temperature": temperature, + "top_k": top_k, + "top_p": top_p, + "typical_p": typical_p, + "use_cache": use_cache, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post(**payload, model=model, task="text-to-speech") + return response + + def token_classification( + self, + text: str, + *, + model: Optional[str] = None, + aggregation_strategy: Optional[Literal["none", "simple", "first", "average", "max"]] = None, + ignore_labels: Optional[List[str]] = None, + stride: Optional[int] = None, + ) -> List[TokenClassificationOutputElement]: + """ + Perform token classification on the given text. + Usually used for sentence parsing, either grammatical, or Named Entity Recognition (NER) to understand keywords contained within text. + + Args: + text (`str`): + A string to be classified. + model (`str`, *optional*): + The model to use for the token classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended token classification model will be used. + Defaults to None. + aggregation_strategy (`Literal["none", "simple", "first", "average", "max"]`, *optional*): + The strategy used to fuse tokens based on model predictions. + ignore_labels (`List[str]`, *optional*): + A list of labels to ignore. + stride (`int`, *optional*): + The number of overlapping tokens between chunks when splitting the input text. + + Returns: + `List[TokenClassificationOutputElement]`: List of [`TokenClassificationOutputElement`] items containing the entity group, confidence score, word, start and end index. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.token_classification("My name is Sarah Jessica Parker but you can call me Jessica") + [ + TokenClassificationOutputElement( + entity_group='PER', + score=0.9971321225166321, + word='Sarah Jessica Parker', + start=11, + end=31, + ), + TokenClassificationOutputElement( + entity_group='PER', + score=0.9773476123809814, + word='Jessica', + start=52, + end=59, + ) + ] + ``` + """ + + parameters = { + "aggregation_strategy": aggregation_strategy, + "ignore_labels": ignore_labels, + "stride": stride, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post( + **payload, + model=model, + task="token-classification", + ) + return TokenClassificationOutputElement.parse_obj_as_list(response) + + def translation( + self, + text: str, + *, + model: Optional[str] = None, + src_lang: Optional[str] = None, + tgt_lang: Optional[str] = None, + clean_up_tokenization_spaces: Optional[bool] = None, + truncation: Optional[Literal["do_not_truncate", "longest_first", "only_first", "only_second"]] = None, + generate_parameters: Optional[Dict[str, Any]] = None, + ) -> TranslationOutput: + """ + Convert text from one language to another. + + Check out https://huggingface.co/tasks/translation for more information on how to choose the best model for + your specific use case. Source and target languages usually depend on the model. + However, it is possible to specify source and target languages for certain models. If you are working with one of these models, + you can use `src_lang` and `tgt_lang` arguments to pass the relevant information. + + Args: + text (`str`): + A string to be translated. + model (`str`, *optional*): + The model to use for the translation task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended translation model will be used. + Defaults to None. + src_lang (`str`, *optional*): + The source language of the text. Required for models that can translate from multiple languages. + tgt_lang (`str`, *optional*): + Target language to translate to. Required for models that can translate to multiple languages. + clean_up_tokenization_spaces (`bool`, *optional*): + Whether to clean up the potential extra spaces in the text output. + truncation (`Literal["do_not_truncate", "longest_first", "only_first", "only_second"]`, *optional*): + The truncation strategy to use. + generate_parameters (`Dict[str, Any]`, *optional*): + Additional parametrization of the text generation algorithm. + + Returns: + [`TranslationOutput`]: The generated translated text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + `ValueError`: + If only one of the `src_lang` and `tgt_lang` arguments are provided. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.translation("My name is Wolfgang and I live in Berlin") + 'Mein Name ist Wolfgang und ich lebe in Berlin.' + >>> client.translation("My name is Wolfgang and I live in Berlin", model="Helsinki-NLP/opus-mt-en-fr") + TranslationOutput(translation_text='Je m\'appelle Wolfgang et je vis à Berlin.') + ``` + + Specifying languages: + ```py + >>> client.translation("My name is Sarah Jessica Parker but you can call me Jessica", model="facebook/mbart-large-50-many-to-many-mmt", src_lang="en_XX", tgt_lang="fr_XX") + "Mon nom est Sarah Jessica Parker mais vous pouvez m\'appeler Jessica" + ``` + """ + # Throw error if only one of `src_lang` and `tgt_lang` was given + if src_lang is not None and tgt_lang is None: + raise ValueError("You cannot specify `src_lang` without specifying `tgt_lang`.") + + if src_lang is None and tgt_lang is not None: + raise ValueError("You cannot specify `tgt_lang` without specifying `src_lang`.") + parameters = { + "src_lang": src_lang, + "tgt_lang": tgt_lang, + "clean_up_tokenization_spaces": clean_up_tokenization_spaces, + "truncation": truncation, + "generate_parameters": generate_parameters, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post(**payload, model=model, task="translation") + return TranslationOutput.parse_obj_as_list(response)[0] + + def visual_question_answering( + self, + image: ContentT, + question: str, + *, + model: Optional[str] = None, + top_k: Optional[int] = None, + ) -> List[VisualQuestionAnsweringOutputElement]: + """ + Answering open-ended questions based on an image. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image for the context. It can be raw bytes, an image file, or a URL to an online image. + question (`str`): + Question to be answered. + model (`str`, *optional*): + The model to use for the visual question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended visual question answering model will be used. + Defaults to None. + top_k (`int`, *optional*): + The number of answers to return (will be chosen by order of likelihood). Note that we + return less than topk answers if there are not enough options available within the + context. + Returns: + `List[VisualQuestionAnsweringOutputElement]`: a list of [`VisualQuestionAnsweringOutputElement`] items containing the predicted label and associated probability. + + Raises: + `InferenceTimeoutError`: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.visual_question_answering( + ... image="https://huggingface.co/datasets/mishig/sample_images/resolve/main/tiger.jpg", + ... question="What is the animal doing?" + ... ) + [ + VisualQuestionAnsweringOutputElement(score=0.778609573841095, answer='laying down'), + VisualQuestionAnsweringOutputElement(score=0.6957435607910156, answer='sitting'), + ] + ``` + """ + payload: Dict[str, Any] = {"question": question, "image": _b64_encode(image)} + if top_k is not None: + payload.setdefault("parameters", {})["top_k"] = top_k + response = self.post(json=payload, model=model, task="visual-question-answering") + return VisualQuestionAnsweringOutputElement.parse_obj_as_list(response) + + def zero_shot_classification( + self, + text: str, + labels: List[str], + *, + multi_label: bool = False, + hypothesis_template: Optional[str] = None, + model: Optional[str] = None, + ) -> List[ZeroShotClassificationOutputElement]: + """ + Provide as input a text and a set of candidate labels to classify the input text. + + Args: + text (`str`): + The input text to classify. + labels (`List[str]`): + List of strings. Each string is the verbalization of a possible label for the input text. + multi_label (`bool`): + Boolean. If True, the probability for each label is evaluated independently and multiple labels can have a probability close to 1 simultaneously or all probabilities can be close to 0. + If False, the labels are considered mutually exclusive and the probability over all labels always sums to 1. Defaults to False. + hypothesis_template (`str`, *optional*): + A template sentence string with curly brackets to which the label strings are added. The label strings are added at the position of the curly brackets "{}". + Zero-shot classifiers are based on NLI models, which evaluate if a hypothesis is entailed in another text or not. + For example, with hypothesis_template="This text is about {}." and labels=["economics", "politics"], the system internally creates the two hypotheses "This text is about economics." and "This text is about politics.". + The model then evaluates for both hypotheses if they are entailed in the provided `text` or not. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. If not provided, the default recommended zero-shot classification model will be used. + + Returns: + `List[ZeroShotClassificationOutputElement]`: List of [`ZeroShotClassificationOutputElement`] items containing the predicted labels and their confidence. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example with `multi_label=False`: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> text = ( + ... "A new model offers an explanation for how the Galilean satellites formed around the solar system's" + ... "largest world. Konstantin Batygin did not set out to solve one of the solar system's most puzzling" + ... " mysteries when he went for a run up a hill in Nice, France." + ... ) + >>> labels = ["space & cosmos", "scientific discovery", "microbiology", "robots", "archeology"] + >>> client.zero_shot_classification(text, labels) + [ + ZeroShotClassificationOutputElement(label='scientific discovery', score=0.7961668968200684), + ZeroShotClassificationOutputElement(label='space & cosmos', score=0.18570658564567566), + ZeroShotClassificationOutputElement(label='microbiology', score=0.00730885099619627), + ZeroShotClassificationOutputElement(label='archeology', score=0.006258360575884581), + ZeroShotClassificationOutputElement(label='robots', score=0.004559356719255447), + ] + >>> client.zero_shot_classification(text, labels, multi_label=True) + [ + ZeroShotClassificationOutputElement(label='scientific discovery', score=0.9829297661781311), + ZeroShotClassificationOutputElement(label='space & cosmos', score=0.755190908908844), + ZeroShotClassificationOutputElement(label='microbiology', score=0.0005462635890580714), + ZeroShotClassificationOutputElement(label='archeology', score=0.00047131875180639327), + ZeroShotClassificationOutputElement(label='robots', score=0.00030448526376858354), + ] + ``` + + Example with `multi_label=True` and a custom `hypothesis_template`: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.zero_shot_classification( + ... text="I really like our dinner and I'm very happy. I don't like the weather though.", + ... labels=["positive", "negative", "pessimistic", "optimistic"], + ... multi_label=True, + ... hypothesis_template="This text is {} towards the weather" + ... ) + [ + ZeroShotClassificationOutputElement(label='negative', score=0.9231801629066467), + ZeroShotClassificationOutputElement(label='pessimistic', score=0.8760990500450134), + ZeroShotClassificationOutputElement(label='optimistic', score=0.0008674879791215062), + ZeroShotClassificationOutputElement(label='positive', score=0.0005250611575320363) + ] + ``` + """ + + parameters = { + "candidate_labels": labels, + "multi_label": multi_label, + "hypothesis_template": hypothesis_template, + } + payload = _prepare_payload(text, parameters=parameters) + response = self.post( + **payload, + task="zero-shot-classification", + model=model, + ) + output = _bytes_to_dict(response) + return [ + ZeroShotClassificationOutputElement.parse_obj_as_instance({"label": label, "score": score}) + for label, score in zip(output["labels"], output["scores"]) + ] + + def zero_shot_image_classification( + self, + image: ContentT, + labels: List[str], + *, + model: Optional[str] = None, + hypothesis_template: Optional[str] = None, + ) -> List[ZeroShotImageClassificationOutputElement]: + """ + Provide input image and text labels to predict text labels for the image. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image to caption. It can be raw bytes, an image file, or a URL to an online image. + labels (`List[str]`): + List of string possible labels. There must be at least 2 labels. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. If not provided, the default recommended zero-shot image classification model will be used. + hypothesis_template (`str`, *optional*): + The sentence used in conjunction with `labels` to attempt the text classification by replacing the + placeholder with the candidate labels. + Returns: + `List[ZeroShotImageClassificationOutputElement]`: List of [`ZeroShotImageClassificationOutputElement`] items containing the predicted labels and their confidence. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `HTTPError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + + >>> client.zero_shot_image_classification( + ... "https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg", + ... labels=["dog", "cat", "horse"], + ... ) + [ZeroShotImageClassificationOutputElement(label='dog', score=0.956),...] + ``` + """ + # Raise ValueError if input is less than 2 labels + if len(labels) < 2: + raise ValueError("You must specify at least 2 classes to compare.") + + inputs = {"image": _b64_encode(image), "candidateLabels": ",".join(labels)} + parameters = {"hypothesis_template": hypothesis_template} + payload = _prepare_payload(inputs, parameters=parameters) + response = self.post( + **payload, + model=model, + task="zero-shot-image-classification", + ) + return ZeroShotImageClassificationOutputElement.parse_obj_as_list(response) + + def _resolve_url(self, model: Optional[str] = None, task: Optional[str] = None) -> str: + model = model or self.model or self.base_url + + # If model is already a URL, ignore `task` and return directly + if model is not None and (model.startswith("http://") or model.startswith("https://")): + return model + + # # If no model but task is set => fetch the recommended one for this task + if model is None: + if task is None: + raise ValueError( + "You must specify at least a model (repo_id or URL) or a task, either when instantiating" + " `InferenceClient` or when making a request." + ) + model = self.get_recommended_model(task) + logger.info( + f"Using recommended model {model} for task {task}. Note that it is" + f" encouraged to explicitly set `model='{model}'` as the recommended" + " models list might get updated without prior notice." + ) + + # Compute InferenceAPI url + return ( + # Feature-extraction and sentence-similarity are the only cases where we handle models with several tasks. + f"{INFERENCE_ENDPOINT}/pipeline/{task}/{model}" + if task in ("feature-extraction", "sentence-similarity") + # Otherwise, we use the default endpoint + else f"{INFERENCE_ENDPOINT}/models/{model}" + ) + + @staticmethod + def get_recommended_model(task: str) -> str: + """ + Get the model Hugging Face recommends for the input task. + + Args: + task (`str`): + The Hugging Face task to get which model Hugging Face recommends. + All available tasks can be found [here](https://huggingface.co/tasks). + + Returns: + `str`: Name of the model recommended for the input task. + + Raises: + `ValueError`: If Hugging Face has no recommendation for the input task. + """ + model = _fetch_recommended_models().get(task) + if model is None: + raise ValueError( + f"Task {task} has no recommended model. Please specify a model" + " explicitly. Visit https://huggingface.co/tasks for more info." + ) + return model + + def get_endpoint_info(self, *, model: Optional[str] = None) -> Dict[str, Any]: + """ + Get information about the deployed endpoint. + + This endpoint is only available on endpoints powered by Text-Generation-Inference (TGI) or Text-Embedding-Inference (TEI). + Endpoints powered by `transformers` return an empty payload. + + Args: + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + `Dict[str, Any]`: Information about the endpoint. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient("meta-llama/Meta-Llama-3-70B-Instruct") + >>> client.get_endpoint_info() + { + 'model_id': 'meta-llama/Meta-Llama-3-70B-Instruct', + 'model_sha': None, + 'model_dtype': 'torch.float16', + 'model_device_type': 'cuda', + 'model_pipeline_tag': None, + 'max_concurrent_requests': 128, + 'max_best_of': 2, + 'max_stop_sequences': 4, + 'max_input_length': 8191, + 'max_total_tokens': 8192, + 'waiting_served_ratio': 0.3, + 'max_batch_total_tokens': 1259392, + 'max_waiting_tokens': 20, + 'max_batch_size': None, + 'validation_workers': 32, + 'max_client_batch_size': 4, + 'version': '2.0.2', + 'sha': 'dccab72549635c7eb5ddb17f43f0b7cdff07c214', + 'docker_label': 'sha-dccab72' + } + ``` + """ + model = model or self.model + if model is None: + raise ValueError("Model id not provided.") + if model.startswith(("http://", "https://")): + url = model.rstrip("/") + "/info" + else: + url = f"{INFERENCE_ENDPOINT}/models/{model}/info" + + response = get_session().get(url, headers=self.headers) + hf_raise_for_status(response) + return response.json() + + def health_check(self, model: Optional[str] = None) -> bool: + """ + Check the health of the deployed endpoint. + + Health check is only available with Inference Endpoints powered by Text-Generation-Inference (TGI) or Text-Embedding-Inference (TEI). + For Inference API, please use [`InferenceClient.get_model_status`] instead. + + Args: + model (`str`, *optional*): + URL of the Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + `bool`: True if everything is working fine. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient("https://jzgu0buei5.us-east-1.aws.endpoints.huggingface.cloud") + >>> client.health_check() + True + ``` + """ + model = model or self.model + if model is None: + raise ValueError("Model id not provided.") + if not model.startswith(("http://", "https://")): + raise ValueError( + "Model must be an Inference Endpoint URL. For serverless Inference API, please use `InferenceClient.get_model_status`." + ) + url = model.rstrip("/") + "/health" + + response = get_session().get(url, headers=self.headers) + return response.status_code == 200 + + def get_model_status(self, model: Optional[str] = None) -> ModelStatus: + """ + Get the status of a model hosted on the Inference API. + + + + This endpoint is mostly useful when you already know which model you want to use and want to check its + availability. If you want to discover already deployed models, you should rather use [`~InferenceClient.list_deployed_models`]. + + + + Args: + model (`str`, *optional*): + Identifier of the model for witch the status gonna be checked. If model is not provided, + the model associated with this instance of [`InferenceClient`] will be used. Only InferenceAPI service can be checked so the + identifier cannot be a URL. + + + Returns: + [`ModelStatus`]: An instance of ModelStatus dataclass, containing information, + about the state of the model: load, state, compute type and framework. + + Example: + ```py + >>> from huggingface_hub import InferenceClient + >>> client = InferenceClient() + >>> client.get_model_status("meta-llama/Meta-Llama-3-8B-Instruct") + ModelStatus(loaded=True, state='Loaded', compute_type='gpu', framework='text-generation-inference') + ``` + """ + model = model or self.model + if model is None: + raise ValueError("Model id not provided.") + if model.startswith("https://"): + raise NotImplementedError("Model status is only available for Inference API endpoints.") + url = f"{INFERENCE_ENDPOINT}/status/{model}" + + response = get_session().get(url, headers=self.headers) + hf_raise_for_status(response) + response_data = response.json() + + if "error" in response_data: + raise ValueError(response_data["error"]) + + return ModelStatus( + loaded=response_data["loaded"], + state=response_data["state"], + compute_type=response_data["compute_type"], + framework=response_data["framework"], + ) + + @property + def chat(self) -> "ProxyClientChat": + return ProxyClientChat(self) + + +class _ProxyClient: + """Proxy class to be able to call `client.chat.completion.create(...)` as OpenAI client.""" + + def __init__(self, client: InferenceClient): + self._client = client + + +class ProxyClientChat(_ProxyClient): + """Proxy class to be able to call `client.chat.completion.create(...)` as OpenAI client.""" + + @property + def completions(self) -> "ProxyClientChatCompletions": + return ProxyClientChatCompletions(self._client) + + +class ProxyClientChatCompletions(_ProxyClient): + """Proxy class to be able to call `client.chat.completion.create(...)` as OpenAI client.""" + + @property + def create(self): + return self._client.chat_completion diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_common.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_common.py new file mode 100644 index 0000000000000000000000000000000000000000..a19636a5060f85abfc4252589906ff073d753d9a --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_common.py @@ -0,0 +1,478 @@ +# coding=utf-8 +# Copyright 2023-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains utilities used by both the sync and async inference clients.""" + +import base64 +import io +import json +import logging +from contextlib import contextmanager +from dataclasses import dataclass +from pathlib import Path +from typing import ( + TYPE_CHECKING, + Any, + AsyncIterable, + BinaryIO, + ContextManager, + Dict, + Generator, + Iterable, + List, + Literal, + NoReturn, + Optional, + Union, + overload, +) + +from requests import HTTPError + +from huggingface_hub.errors import ( + GenerationError, + IncompleteGenerationError, + OverloadedError, + TextGenerationError, + UnknownError, + ValidationError, +) + +from ..constants import ENDPOINT +from ..utils import ( + build_hf_headers, + get_session, + hf_raise_for_status, + is_aiohttp_available, + is_numpy_available, + is_pillow_available, +) +from ._generated.types import ChatCompletionStreamOutput, TextGenerationStreamOutput + + +if TYPE_CHECKING: + from aiohttp import ClientResponse, ClientSession + from PIL.Image import Image + +# TYPES +UrlT = str +PathT = Union[str, Path] +BinaryT = Union[bytes, BinaryIO] +ContentT = Union[BinaryT, PathT, UrlT] + +# Use to set a Accept: image/png header +TASKS_EXPECTING_IMAGES = {"text-to-image", "image-to-image"} + +logger = logging.getLogger(__name__) + + +# Add dataclass for ModelStatus. We use this dataclass in get_model_status function. +@dataclass +class ModelStatus: + """ + This Dataclass represents the the model status in the Hugging Face Inference API. + + Args: + loaded (`bool`): + If the model is currently loaded into Hugging Face's InferenceAPI. Models + are loaded on-demand, leading to the user's first request taking longer. + If a model is loaded, you can be assured that it is in a healthy state. + state (`str`): + The current state of the model. This can be 'Loaded', 'Loadable', 'TooBig'. + If a model's state is 'Loadable', it's not too big and has a supported + backend. Loadable models are automatically loaded when the user first + requests inference on the endpoint. This means it is transparent for the + user to load a model, except that the first call takes longer to complete. + compute_type (`Dict`): + Information about the compute resource the model is using or will use, such as 'gpu' type and number of + replicas. + framework (`str`): + The name of the framework that the model was built with, such as 'transformers' + or 'text-generation-inference'. + """ + + loaded: bool + state: str + compute_type: Dict + framework: str + + +## IMPORT UTILS + + +def _import_aiohttp(): + # Make sure `aiohttp` is installed on the machine. + if not is_aiohttp_available(): + raise ImportError("Please install aiohttp to use `AsyncInferenceClient` (`pip install aiohttp`).") + import aiohttp + + return aiohttp + + +def _import_numpy(): + """Make sure `numpy` is installed on the machine.""" + if not is_numpy_available(): + raise ImportError("Please install numpy to use deal with embeddings (`pip install numpy`).") + import numpy + + return numpy + + +def _import_pil_image(): + """Make sure `PIL` is installed on the machine.""" + if not is_pillow_available(): + raise ImportError( + "Please install Pillow to use deal with images (`pip install Pillow`). If you don't want the image to be" + " post-processed, use `client.post(...)` and get the raw response from the server." + ) + from PIL import Image + + return Image + + +## RECOMMENDED MODELS + +# Will be globally fetched only once (see '_fetch_recommended_models') +_RECOMMENDED_MODELS: Optional[Dict[str, Optional[str]]] = None + + +def _fetch_recommended_models() -> Dict[str, Optional[str]]: + global _RECOMMENDED_MODELS + if _RECOMMENDED_MODELS is None: + response = get_session().get(f"{ENDPOINT}/api/tasks", headers=build_hf_headers()) + hf_raise_for_status(response) + _RECOMMENDED_MODELS = { + task: _first_or_none(details["widgetModels"]) for task, details in response.json().items() + } + return _RECOMMENDED_MODELS + + +def _first_or_none(items: List[Any]) -> Optional[Any]: + try: + return items[0] or None + except IndexError: + return None + + +## ENCODING / DECODING UTILS + + +@overload +def _open_as_binary( + content: ContentT, +) -> ContextManager[BinaryT]: ... # means "if input is not None, output is not None" + + +@overload +def _open_as_binary( + content: Literal[None], +) -> ContextManager[Literal[None]]: ... # means "if input is None, output is None" + + +@contextmanager # type: ignore +def _open_as_binary(content: Optional[ContentT]) -> Generator[Optional[BinaryT], None, None]: + """Open `content` as a binary file, either from a URL, a local path, or raw bytes. + + Do nothing if `content` is None, + + TODO: handle a PIL.Image as input + TODO: handle base64 as input + """ + # If content is a string => must be either a URL or a path + if isinstance(content, str): + if content.startswith("https://") or content.startswith("http://"): + logger.debug(f"Downloading content from {content}") + yield get_session().get(content).content # TODO: retrieve as stream and pipe to post request ? + return + content = Path(content) + if not content.exists(): + raise FileNotFoundError( + f"File not found at {content}. If `data` is a string, it must either be a URL or a path to a local" + " file. To pass raw content, please encode it as bytes first." + ) + + # If content is a Path => open it + if isinstance(content, Path): + logger.debug(f"Opening content from {content}") + with content.open("rb") as f: + yield f + else: + # Otherwise: already a file-like object or None + yield content + + +def _b64_encode(content: ContentT) -> str: + """Encode a raw file (image, audio) into base64. Can be byes, an opened file, a path or a URL.""" + with _open_as_binary(content) as data: + data_as_bytes = data if isinstance(data, bytes) else data.read() + return base64.b64encode(data_as_bytes).decode() + + +def _b64_to_image(encoded_image: str) -> "Image": + """Parse a base64-encoded string into a PIL Image.""" + Image = _import_pil_image() + return Image.open(io.BytesIO(base64.b64decode(encoded_image))) + + +def _bytes_to_list(content: bytes) -> List: + """Parse bytes from a Response object into a Python list. + + Expects the response body to be JSON-encoded data. + + NOTE: This is exactly the same implementation as `_bytes_to_dict` and will not complain if the returned data is a + dictionary. The only advantage of having both is to help the user (and mypy) understand what kind of data to expect. + """ + return json.loads(content.decode()) + + +def _bytes_to_dict(content: bytes) -> Dict: + """Parse bytes from a Response object into a Python dictionary. + + Expects the response body to be JSON-encoded data. + + NOTE: This is exactly the same implementation as `_bytes_to_list` and will not complain if the returned data is a + list. The only advantage of having both is to help the user (and mypy) understand what kind of data to expect. + """ + return json.loads(content.decode()) + + +def _bytes_to_image(content: bytes) -> "Image": + """Parse bytes from a Response object into a PIL Image. + + Expects the response body to be raw bytes. To deal with b64 encoded images, use `_b64_to_image` instead. + """ + Image = _import_pil_image() + return Image.open(io.BytesIO(content)) + + +## PAYLOAD UTILS + + +def _prepare_payload( + inputs: Union[str, Dict[str, Any], ContentT], + parameters: Optional[Dict[str, Any]], + expect_binary: bool = False, +) -> Dict[str, Any]: + """ + Used in `InferenceClient` and `AsyncInferenceClient` to prepare the payload for an API request, handling various input types and parameters. + `expect_binary` is set to `True` when the inputs are a binary object or a local path or URL. This is the case for image and audio inputs. + """ + if parameters is None: + parameters = {} + parameters = {k: v for k, v in parameters.items() if v is not None} + has_parameters = len(parameters) > 0 + + is_binary = isinstance(inputs, (bytes, Path)) + # If expect_binary is True, inputs must be a binary object or a local path or a URL. + if expect_binary and not is_binary and not isinstance(inputs, str): + raise ValueError(f"Expected binary inputs or a local path or a URL. Got {inputs}") # type: ignore + # Send inputs as raw content when no parameters are provided + if expect_binary and not has_parameters: + return {"data": inputs} + # If expect_binary is False, inputs must not be a binary object. + if not expect_binary and is_binary: + raise ValueError(f"Unexpected binary inputs. Got {inputs}") # type: ignore + + json: Dict[str, Any] = {} + # If inputs is a bytes-like object, encode it to base64 + if expect_binary: + json["inputs"] = _b64_encode(inputs) # type: ignore + # Otherwise (string, dict, list) send it as is + else: + json["inputs"] = inputs + # Add parameters to the json payload if any + if has_parameters: + json["parameters"] = parameters + return {"json": json} + + +## STREAMING UTILS + + +def _stream_text_generation_response( + bytes_output_as_lines: Iterable[bytes], details: bool +) -> Union[Iterable[str], Iterable[TextGenerationStreamOutput]]: + """Used in `InferenceClient.text_generation`.""" + # Parse ServerSentEvents + for byte_payload in bytes_output_as_lines: + try: + output = _format_text_generation_stream_output(byte_payload, details) + except StopIteration: + break + if output is not None: + yield output + + +async def _async_stream_text_generation_response( + bytes_output_as_lines: AsyncIterable[bytes], details: bool +) -> Union[AsyncIterable[str], AsyncIterable[TextGenerationStreamOutput]]: + """Used in `AsyncInferenceClient.text_generation`.""" + # Parse ServerSentEvents + async for byte_payload in bytes_output_as_lines: + try: + output = _format_text_generation_stream_output(byte_payload, details) + except StopIteration: + break + if output is not None: + yield output + + +def _format_text_generation_stream_output( + byte_payload: bytes, details: bool +) -> Optional[Union[str, TextGenerationStreamOutput]]: + if not byte_payload.startswith(b"data:"): + return None # empty line + + if byte_payload.strip() == b"data: [DONE]": + raise StopIteration("[DONE] signal received.") + + # Decode payload + payload = byte_payload.decode("utf-8") + json_payload = json.loads(payload.lstrip("data:").rstrip("/n")) + + # Either an error as being returned + if json_payload.get("error") is not None: + raise _parse_text_generation_error(json_payload["error"], json_payload.get("error_type")) + + # Or parse token payload + output = TextGenerationStreamOutput.parse_obj_as_instance(json_payload) + return output.token.text if not details else output + + +def _stream_chat_completion_response( + bytes_lines: Iterable[bytes], +) -> Iterable[ChatCompletionStreamOutput]: + """Used in `InferenceClient.chat_completion` if model is served with TGI.""" + for item in bytes_lines: + try: + output = _format_chat_completion_stream_output(item) + except StopIteration: + break + if output is not None: + yield output + + +async def _async_stream_chat_completion_response( + bytes_lines: AsyncIterable[bytes], +) -> AsyncIterable[ChatCompletionStreamOutput]: + """Used in `AsyncInferenceClient.chat_completion`.""" + async for item in bytes_lines: + try: + output = _format_chat_completion_stream_output(item) + except StopIteration: + break + if output is not None: + yield output + + +def _format_chat_completion_stream_output( + byte_payload: bytes, +) -> Optional[ChatCompletionStreamOutput]: + if not byte_payload.startswith(b"data:"): + return None # empty line + + if byte_payload.strip() == b"data: [DONE]": + raise StopIteration("[DONE] signal received.") + + # Decode payload + payload = byte_payload.decode("utf-8") + json_payload = json.loads(payload.lstrip("data:").rstrip("/n")) + + # Either an error as being returned + if json_payload.get("error") is not None: + raise _parse_text_generation_error(json_payload["error"], json_payload.get("error_type")) + + # Or parse token payload + return ChatCompletionStreamOutput.parse_obj_as_instance(json_payload) + + +async def _async_yield_from(client: "ClientSession", response: "ClientResponse") -> AsyncIterable[bytes]: + async for byte_payload in response.content: + yield byte_payload.strip() + await client.close() + + +# "TGI servers" are servers running with the `text-generation-inference` backend. +# This backend is the go-to solution to run large language models at scale. However, +# for some smaller models (e.g. "gpt2") the default `transformers` + `api-inference` +# solution is still in use. +# +# Both approaches have very similar APIs, but not exactly the same. What we do first in +# the `text_generation` method is to assume the model is served via TGI. If we realize +# it's not the case (i.e. we receive an HTTP 400 Bad Request), we fallback to the +# default API with a warning message. When that's the case, We remember the unsupported +# attributes for this model in the `_UNSUPPORTED_TEXT_GENERATION_KWARGS` global variable. +# +# In addition, TGI servers have a built-in API route for chat-completion, which is not +# available on the default API. We use this route to provide a more consistent behavior +# when available. +# +# For more details, see https://github.com/huggingface/text-generation-inference and +# https://huggingface.co/docs/api-inference/detailed_parameters#text-generation-task. + +_UNSUPPORTED_TEXT_GENERATION_KWARGS: Dict[Optional[str], List[str]] = {} + + +def _set_unsupported_text_generation_kwargs(model: Optional[str], unsupported_kwargs: List[str]) -> None: + _UNSUPPORTED_TEXT_GENERATION_KWARGS.setdefault(model, []).extend(unsupported_kwargs) + + +def _get_unsupported_text_generation_kwargs(model: Optional[str]) -> List[str]: + return _UNSUPPORTED_TEXT_GENERATION_KWARGS.get(model, []) + + +# TEXT GENERATION ERRORS +# ---------------------- +# Text-generation errors are parsed separately to handle as much as possible the errors returned by the text generation +# inference project (https://github.com/huggingface/text-generation-inference). +# ---------------------- + + +def raise_text_generation_error(http_error: HTTPError) -> NoReturn: + """ + Try to parse text-generation-inference error message and raise HTTPError in any case. + + Args: + error (`HTTPError`): + The HTTPError that have been raised. + """ + # Try to parse a Text Generation Inference error + + try: + # Hacky way to retrieve payload in case of aiohttp error + payload = getattr(http_error, "response_error_payload", None) or http_error.response.json() + error = payload.get("error") + error_type = payload.get("error_type") + except Exception: # no payload + raise http_error + + # If error_type => more information than `hf_raise_for_status` + if error_type is not None: + exception = _parse_text_generation_error(error, error_type) + raise exception from http_error + + # Otherwise, fallback to default error + raise http_error + + +def _parse_text_generation_error(error: Optional[str], error_type: Optional[str]) -> TextGenerationError: + if error_type == "generation": + return GenerationError(error) # type: ignore + if error_type == "incomplete_generation": + return IncompleteGenerationError(error) # type: ignore + if error_type == "overloaded": + return OverloadedError(error) # type: ignore + if error_type == "validation": + return ValidationError(error) # type: ignore + return UnknownError(error) # type: ignore diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/__init__.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/__pycache__/__init__.cpython-310.pyc b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..34e8712e8f3be2e8475c932dbbdb4d68d379fc3f Binary files /dev/null and b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/__pycache__/__init__.cpython-310.pyc differ diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/_async_client.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/_async_client.py new file mode 100644 index 0000000000000000000000000000000000000000..5c3a8044fc5f879aa7cdc6801c65f5f7f90cf367 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/_async_client.py @@ -0,0 +1,3263 @@ +# coding=utf-8 +# Copyright 2023-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +# +# WARNING +# This entire file has been adapted from the sync-client code in `src/huggingface_hub/inference/_client.py`. +# Any change in InferenceClient will be automatically reflected in AsyncInferenceClient. +# To re-generate the code, run `make style` or `python ./utils/generate_async_inference_client.py --update`. +# WARNING +import asyncio +import base64 +import logging +import re +import time +import warnings +from typing import TYPE_CHECKING, Any, AsyncIterable, Dict, List, Literal, Optional, Set, Union, overload + +from requests.structures import CaseInsensitiveDict + +from huggingface_hub.constants import ALL_INFERENCE_API_FRAMEWORKS, INFERENCE_ENDPOINT, MAIN_INFERENCE_API_FRAMEWORKS +from huggingface_hub.errors import InferenceTimeoutError +from huggingface_hub.inference._common import ( + TASKS_EXPECTING_IMAGES, + ContentT, + ModelStatus, + _async_stream_chat_completion_response, + _async_stream_text_generation_response, + _b64_encode, + _b64_to_image, + _bytes_to_dict, + _bytes_to_image, + _bytes_to_list, + _fetch_recommended_models, + _get_unsupported_text_generation_kwargs, + _import_numpy, + _open_as_binary, + _prepare_payload, + _set_unsupported_text_generation_kwargs, + raise_text_generation_error, +) +from huggingface_hub.inference._generated.types import ( + AudioClassificationOutputElement, + AudioClassificationOutputTransform, + AudioToAudioOutputElement, + AutomaticSpeechRecognitionOutput, + ChatCompletionInputGrammarType, + ChatCompletionInputStreamOptions, + ChatCompletionInputToolType, + ChatCompletionOutput, + ChatCompletionStreamOutput, + DocumentQuestionAnsweringOutputElement, + FillMaskOutputElement, + ImageClassificationOutputElement, + ImageSegmentationOutputElement, + ImageToTextOutput, + ObjectDetectionOutputElement, + QuestionAnsweringOutputElement, + SummarizationOutput, + TableQuestionAnsweringOutputElement, + TextClassificationOutputElement, + TextClassificationOutputTransform, + TextGenerationInputGrammarType, + TextGenerationOutput, + TextGenerationStreamOutput, + TextToImageTargetSize, + TextToSpeechEarlyStoppingEnum, + TokenClassificationOutputElement, + ToolElement, + TranslationOutput, + VisualQuestionAnsweringOutputElement, + ZeroShotClassificationOutputElement, + ZeroShotImageClassificationOutputElement, +) +from huggingface_hub.utils import build_hf_headers +from huggingface_hub.utils._deprecation import _deprecate_arguments + +from .._common import _async_yield_from, _import_aiohttp + + +if TYPE_CHECKING: + import numpy as np + from aiohttp import ClientResponse, ClientSession + from PIL.Image import Image + +logger = logging.getLogger(__name__) + + +MODEL_KWARGS_NOT_USED_REGEX = re.compile(r"The following `model_kwargs` are not used by the model: \[(.*?)\]") + + +class AsyncInferenceClient: + """ + Initialize a new Inference Client. + + [`InferenceClient`] aims to provide a unified experience to perform inference. The client can be used + seamlessly with either the (free) Inference API or self-hosted Inference Endpoints. + + Args: + model (`str`, `optional`): + The model to run inference with. Can be a model id hosted on the Hugging Face Hub, e.g. `meta-llama/Meta-Llama-3-8B-Instruct` + or a URL to a deployed Inference Endpoint. Defaults to None, in which case a recommended model is + automatically selected for the task. + Note: for better compatibility with OpenAI's client, `model` has been aliased as `base_url`. Those 2 + arguments are mutually exclusive. If using `base_url` for chat completion, the `/chat/completions` suffix + path will be appended to the base URL (see the [TGI Messages API](https://huggingface.co/docs/text-generation-inference/en/messages_api) + documentation for details). When passing a URL as `model`, the client will not append any suffix path to it. + token (`str` or `bool`, *optional*): + Hugging Face token. Will default to the locally saved token if not provided. + Pass `token=False` if you don't want to send your token to the server. + Note: for better compatibility with OpenAI's client, `token` has been aliased as `api_key`. Those 2 + arguments are mutually exclusive and have the exact same behavior. + timeout (`float`, `optional`): + The maximum number of seconds to wait for a response from the server. Loading a new model in Inference + API can take up to several minutes. Defaults to None, meaning it will loop until the server is available. + headers (`Dict[str, str]`, `optional`): + Additional headers to send to the server. By default only the authorization and user-agent headers are sent. + Values in this dictionary will override the default values. + cookies (`Dict[str, str]`, `optional`): + Additional cookies to send to the server. + trust_env ('bool', 'optional'): + Trust environment settings for proxy configuration if the parameter is `True` (`False` by default). + proxies (`Any`, `optional`): + Proxies to use for the request. + base_url (`str`, `optional`): + Base URL to run inference. This is a duplicated argument from `model` to make [`InferenceClient`] + follow the same pattern as `openai.OpenAI` client. Cannot be used if `model` is set. Defaults to None. + api_key (`str`, `optional`): + Token to use for authentication. This is a duplicated argument from `token` to make [`InferenceClient`] + follow the same pattern as `openai.OpenAI` client. Cannot be used if `token` is set. Defaults to None. + """ + + def __init__( + self, + model: Optional[str] = None, + *, + token: Union[str, bool, None] = None, + timeout: Optional[float] = None, + headers: Optional[Dict[str, str]] = None, + cookies: Optional[Dict[str, str]] = None, + trust_env: bool = False, + proxies: Optional[Any] = None, + # OpenAI compatibility + base_url: Optional[str] = None, + api_key: Optional[str] = None, + ) -> None: + if model is not None and base_url is not None: + raise ValueError( + "Received both `model` and `base_url` arguments. Please provide only one of them." + " `base_url` is an alias for `model` to make the API compatible with OpenAI's client." + " If using `base_url` for chat completion, the `/chat/completions` suffix path will be appended to the base url." + " When passing a URL as `model`, the client will not append any suffix path to it." + ) + if token is not None and api_key is not None: + raise ValueError( + "Received both `token` and `api_key` arguments. Please provide only one of them." + " `api_key` is an alias for `token` to make the API compatible with OpenAI's client." + " It has the exact same behavior as `token`." + ) + + self.model: Optional[str] = model + self.token: Union[str, bool, None] = token if token is not None else api_key + self.headers = CaseInsensitiveDict(build_hf_headers(token=self.token)) # 'authorization' + 'user-agent' + if headers is not None: + self.headers.update(headers) + self.cookies = cookies + self.timeout = timeout + self.trust_env = trust_env + self.proxies = proxies + + # OpenAI compatibility + self.base_url = base_url + + # Keep track of the sessions to close them properly + self._sessions: Dict["ClientSession", Set["ClientResponse"]] = dict() + + def __repr__(self): + return f"" + + @overload + async def post( # type: ignore[misc] + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: Literal[False] = ..., + ) -> bytes: ... + + @overload + async def post( # type: ignore[misc] + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: Literal[True] = ..., + ) -> AsyncIterable[bytes]: ... + + @overload + async def post( + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: bool = False, + ) -> Union[bytes, AsyncIterable[bytes]]: ... + + async def post( + self, + *, + json: Optional[Union[str, Dict, List]] = None, + data: Optional[ContentT] = None, + model: Optional[str] = None, + task: Optional[str] = None, + stream: bool = False, + ) -> Union[bytes, AsyncIterable[bytes]]: + """ + Make a POST request to the inference server. + + Args: + json (`Union[str, Dict, List]`, *optional*): + The JSON data to send in the request body, specific to each task. Defaults to None. + data (`Union[str, Path, bytes, BinaryIO]`, *optional*): + The content to send in the request body, specific to each task. + It can be raw bytes, a pointer to an opened file, a local file path, + or a URL to an online resource (image, audio file,...). If both `json` and `data` are passed, + `data` will take precedence. At least `json` or `data` must be provided. Defaults to None. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. Will override the model defined at the instance level. Defaults to None. + task (`str`, *optional*): + The task to perform on the inference. All available tasks can be found + [here](https://huggingface.co/tasks). Used only to default to a recommended model if `model` is not + provided. At least `model` or `task` must be provided. Defaults to None. + stream (`bool`, *optional*): + Whether to iterate over streaming APIs. + + Returns: + bytes: The raw bytes returned by the server. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + """ + + aiohttp = _import_aiohttp() + + url = self._resolve_url(model, task) + + if data is not None and json is not None: + warnings.warn("Ignoring `json` as `data` is passed as binary.") + + # Set Accept header if relevant + headers = dict() + if task in TASKS_EXPECTING_IMAGES and "Accept" not in headers: + headers["Accept"] = "image/png" + + t0 = time.time() + timeout = self.timeout + while True: + with _open_as_binary(data) as data_as_binary: + # Do not use context manager as we don't want to close the connection immediately when returning + # a stream + session = self._get_client_session(headers=headers) + + try: + response = await session.post(url, json=json, data=data_as_binary, proxy=self.proxies) + response_error_payload = None + if response.status != 200: + try: + response_error_payload = await response.json() # get payload before connection closed + except Exception: + pass + response.raise_for_status() + if stream: + return _async_yield_from(session, response) + else: + content = await response.read() + await session.close() + return content + except asyncio.TimeoutError as error: + await session.close() + # Convert any `TimeoutError` to a `InferenceTimeoutError` + raise InferenceTimeoutError(f"Inference call timed out: {url}") from error # type: ignore + except aiohttp.ClientResponseError as error: + error.response_error_payload = response_error_payload + await session.close() + if response.status == 422 and task is not None: + error.message += f". Make sure '{task}' task is supported by the model." + if response.status == 503: + # If Model is unavailable, either raise a TimeoutError... + if timeout is not None and time.time() - t0 > timeout: + raise InferenceTimeoutError( + f"Model not loaded on the server: {url}. Please retry with a higher timeout" + f" (current: {self.timeout}).", + request=error.request, + response=error.response, + ) from error + # ...or wait 1s and retry + logger.info(f"Waiting for model to be loaded on the server: {error}") + if "X-wait-for-model" not in headers and url.startswith(INFERENCE_ENDPOINT): + headers["X-wait-for-model"] = "1" + time.sleep(1) + if timeout is not None: + timeout = max(self.timeout - (time.time() - t0), 1) # type: ignore + continue + raise error + except Exception: + await session.close() + raise + + async def __aenter__(self): + return self + + async def __aexit__(self, exc_type, exc_value, traceback): + await self.close() + + def __del__(self): + if len(self._sessions) > 0: + warnings.warn( + "Deleting 'AsyncInferenceClient' client but some sessions are still open. " + "This can happen if you've stopped streaming data from the server before the stream was complete. " + "To close the client properly, you must call `await client.close()` " + "or use an async context (e.g. `async with AsyncInferenceClient(): ...`." + ) + + async def close(self): + """Close all open sessions. + + By default, 'aiohttp.ClientSession' objects are closed automatically when a call is completed. However, if you + are streaming data from the server and you stop before the stream is complete, you must call this method to + close the session properly. + + Another possibility is to use an async context (e.g. `async with AsyncInferenceClient(): ...`). + """ + await asyncio.gather(*[session.close() for session in self._sessions.keys()]) + + async def audio_classification( + self, + audio: ContentT, + *, + model: Optional[str] = None, + top_k: Optional[int] = None, + function_to_apply: Optional["AudioClassificationOutputTransform"] = None, + ) -> List[AudioClassificationOutputElement]: + """ + Perform audio classification on the provided audio content. + + Args: + audio (Union[str, Path, bytes, BinaryIO]): + The audio content to classify. It can be raw audio bytes, a local audio file, or a URL pointing to an + audio file. + model (`str`, *optional*): + The model to use for audio classification. Can be a model ID hosted on the Hugging Face Hub + or a URL to a deployed Inference Endpoint. If not provided, the default recommended model for + audio classification will be used. + top_k (`int`, *optional*): + When specified, limits the output to the top K most probable classes. + function_to_apply (`"AudioClassificationOutputTransform"`, *optional*): + The function to apply to the output. + + Returns: + `List[AudioClassificationOutputElement]`: List of [`AudioClassificationOutputElement`] items containing the predicted labels and their confidence. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.audio_classification("audio.flac") + [ + AudioClassificationOutputElement(score=0.4976358711719513, label='hap'), + AudioClassificationOutputElement(score=0.3677836060523987, label='neu'), + ... + ] + ``` + """ + parameters = {"function_to_apply": function_to_apply, "top_k": top_k} + payload = _prepare_payload(audio, parameters=parameters, expect_binary=True) + response = await self.post(**payload, model=model, task="audio-classification") + return AudioClassificationOutputElement.parse_obj_as_list(response) + + async def audio_to_audio( + self, + audio: ContentT, + *, + model: Optional[str] = None, + ) -> List[AudioToAudioOutputElement]: + """ + Performs multiple tasks related to audio-to-audio depending on the model (eg: speech enhancement, source separation). + + Args: + audio (Union[str, Path, bytes, BinaryIO]): + The audio content for the model. It can be raw audio bytes, a local audio file, or a URL pointing to an + audio file. + model (`str`, *optional*): + The model can be any model which takes an audio file and returns another audio file. Can be a model ID hosted on the Hugging Face Hub + or a URL to a deployed Inference Endpoint. If not provided, the default recommended model for + audio_to_audio will be used. + + Returns: + `List[AudioToAudioOutputElement]`: A list of [`AudioToAudioOutputElement`] items containing audios label, content-type, and audio content in blob. + + Raises: + `InferenceTimeoutError`: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> audio_output = await client.audio_to_audio("audio.flac") + >>> async for i, item in enumerate(audio_output): + >>> with open(f"output_{i}.flac", "wb") as f: + f.write(item.blob) + ``` + """ + response = await self.post(data=audio, model=model, task="audio-to-audio") + audio_output = AudioToAudioOutputElement.parse_obj_as_list(response) + for item in audio_output: + item.blob = base64.b64decode(item.blob) + return audio_output + + async def automatic_speech_recognition( + self, + audio: ContentT, + *, + model: Optional[str] = None, + ) -> AutomaticSpeechRecognitionOutput: + """ + Perform automatic speech recognition (ASR or audio-to-text) on the given audio content. + + Args: + audio (Union[str, Path, bytes, BinaryIO]): + The content to transcribe. It can be raw audio bytes, local audio file, or a URL to an audio file. + model (`str`, *optional*): + The model to use for ASR. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended model for ASR will be used. + + Returns: + [`AutomaticSpeechRecognitionOutput`]: An item containing the transcribed text and optionally the timestamp chunks. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.automatic_speech_recognition("hello_world.flac").text + "hello world" + ``` + """ + response = await self.post(data=audio, model=model, task="automatic-speech-recognition") + return AutomaticSpeechRecognitionOutput.parse_obj_as_instance(response) + + @overload + async def chat_completion( # type: ignore + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: Literal[False] = False, + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> ChatCompletionOutput: ... + + @overload + async def chat_completion( # type: ignore + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: Literal[True] = True, + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> AsyncIterable[ChatCompletionStreamOutput]: ... + + @overload + async def chat_completion( + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: bool = False, + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> Union[ChatCompletionOutput, AsyncIterable[ChatCompletionStreamOutput]]: ... + + async def chat_completion( + self, + messages: List[Dict], + *, + model: Optional[str] = None, + stream: bool = False, + # Parameters from ChatCompletionInput (handled manually) + frequency_penalty: Optional[float] = None, + logit_bias: Optional[List[float]] = None, + logprobs: Optional[bool] = None, + max_tokens: Optional[int] = None, + n: Optional[int] = None, + presence_penalty: Optional[float] = None, + response_format: Optional[ChatCompletionInputGrammarType] = None, + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stream_options: Optional[ChatCompletionInputStreamOptions] = None, + temperature: Optional[float] = None, + tool_choice: Optional[Union[ChatCompletionInputToolType, str]] = None, + tool_prompt: Optional[str] = None, + tools: Optional[List[ToolElement]] = None, + top_logprobs: Optional[int] = None, + top_p: Optional[float] = None, + ) -> Union[ChatCompletionOutput, AsyncIterable[ChatCompletionStreamOutput]]: + """ + A method for completing conversations using a specified language model. + + + + The `client.chat_completion` method is aliased as `client.chat.completions.create` for compatibility with OpenAI's client. + Inputs and outputs are strictly the same and using either syntax will yield the same results. + Check out the [Inference guide](https://huggingface.co/docs/huggingface_hub/guides/inference#openai-compatibility) + for more details about OpenAI's compatibility. + + + + Args: + messages (List of [`ChatCompletionInputMessage`]): + Conversation history consisting of roles and content pairs. + model (`str`, *optional*): + The model to use for chat-completion. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended model for chat-based text-generation will be used. + See https://huggingface.co/tasks/text-generation for more details. + + If `model` is a model ID, it is passed to the server as the `model` parameter. If you want to define a + custom URL while setting `model` in the request payload, you must set `base_url` when initializing [`InferenceClient`]. + frequency_penalty (`float`, *optional*): + Penalizes new tokens based on their existing frequency + in the text so far. Range: [-2.0, 2.0]. Defaults to 0.0. + logit_bias (`List[float]`, *optional*): + Modify the likelihood of specified tokens appearing in the completion. Accepts a JSON object that maps tokens + (specified by their token ID in the tokenizer) to an associated bias value from -100 to 100. Mathematically, + the bias is added to the logits generated by the model prior to sampling. The exact effect will vary per model, + but values between -1 and 1 should decrease or increase likelihood of selection; values like -100 or 100 should + result in a ban or exclusive selection of the relevant token. Defaults to None. + logprobs (`bool`, *optional*): + Whether to return log probabilities of the output tokens or not. If true, returns the log + probabilities of each output token returned in the content of message. + max_tokens (`int`, *optional*): + Maximum number of tokens allowed in the response. Defaults to 20. + n (`int`, *optional*): + UNUSED. + presence_penalty (`float`, *optional*): + Number between -2.0 and 2.0. Positive values penalize new tokens based on whether they appear in the + text so far, increasing the model's likelihood to talk about new topics. + response_format ([`ChatCompletionInputGrammarType`], *optional*): + Grammar constraints. Can be either a JSONSchema or a regex. + seed (Optional[`int`], *optional*): + Seed for reproducible control flow. Defaults to None. + stop (Optional[`str`], *optional*): + Up to four strings which trigger the end of the response. + Defaults to None. + stream (`bool`, *optional*): + Enable realtime streaming of responses. Defaults to False. + stream_options ([`ChatCompletionInputStreamOptions`], *optional*): + Options for streaming completions. + temperature (`float`, *optional*): + Controls randomness of the generations. Lower values ensure + less random completions. Range: [0, 2]. Defaults to 1.0. + top_logprobs (`int`, *optional*): + An integer between 0 and 5 specifying the number of most likely tokens to return at each token + position, each with an associated log probability. logprobs must be set to true if this parameter is + used. + top_p (`float`, *optional*): + Fraction of the most likely next words to sample from. + Must be between 0 and 1. Defaults to 1.0. + tool_choice ([`ChatCompletionInputToolType`] or `str`, *optional*): + The tool to use for the completion. Defaults to "auto". + tool_prompt (`str`, *optional*): + A prompt to be appended before the tools. + tools (List of [`ToolElement`], *optional*): + A list of tools the model may call. Currently, only functions are supported as a tool. Use this to + provide a list of functions the model may generate JSON inputs for. + + Returns: + [`ChatCompletionOutput`] or Iterable of [`ChatCompletionStreamOutput`]: + Generated text returned from the server: + - if `stream=False`, the generated text is returned as a [`ChatCompletionOutput`] (default). + - if `stream=True`, the generated text is returned token by token as a sequence of [`ChatCompletionStreamOutput`]. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> messages = [{"role": "user", "content": "What is the capital of France?"}] + >>> client = AsyncInferenceClient("meta-llama/Meta-Llama-3-8B-Instruct") + >>> await client.chat_completion(messages, max_tokens=100) + ChatCompletionOutput( + choices=[ + ChatCompletionOutputComplete( + finish_reason='eos_token', + index=0, + message=ChatCompletionOutputMessage( + role='assistant', + content='The capital of France is Paris.', + name=None, + tool_calls=None + ), + logprobs=None + ) + ], + created=1719907176, + id='', + model='meta-llama/Meta-Llama-3-8B-Instruct', + object='text_completion', + system_fingerprint='2.0.4-sha-f426a33', + usage=ChatCompletionOutputUsage( + completion_tokens=8, + prompt_tokens=17, + total_tokens=25 + ) + ) + ``` + + Example using streaming: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> messages = [{"role": "user", "content": "What is the capital of France?"}] + >>> client = AsyncInferenceClient("meta-llama/Meta-Llama-3-8B-Instruct") + >>> async for token in await client.chat_completion(messages, max_tokens=10, stream=True): + ... print(token) + ChatCompletionStreamOutput(choices=[ChatCompletionStreamOutputChoice(delta=ChatCompletionStreamOutputDelta(content='The', role='assistant'), index=0, finish_reason=None)], created=1710498504) + ChatCompletionStreamOutput(choices=[ChatCompletionStreamOutputChoice(delta=ChatCompletionStreamOutputDelta(content=' capital', role='assistant'), index=0, finish_reason=None)], created=1710498504) + (...) + ChatCompletionStreamOutput(choices=[ChatCompletionStreamOutputChoice(delta=ChatCompletionStreamOutputDelta(content=' may', role='assistant'), index=0, finish_reason=None)], created=1710498504) + ``` + + Example using OpenAI's syntax: + ```py + # Must be run in an async context + # instead of `from openai import OpenAI` + from huggingface_hub import AsyncInferenceClient + + # instead of `client = OpenAI(...)` + client = AsyncInferenceClient( + base_url=..., + api_key=..., + ) + + output = await client.chat.completions.create( + model="meta-llama/Meta-Llama-3-8B-Instruct", + messages=[ + {"role": "system", "content": "You are a helpful assistant."}, + {"role": "user", "content": "Count to 10"}, + ], + stream=True, + max_tokens=1024, + ) + + for chunk in output: + print(chunk.choices[0].delta.content) + ``` + + Example using Image + Text as input: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + + # provide a remote URL + >>> image_url ="https://cdn.britannica.com/61/93061-050-99147DCE/Statue-of-Liberty-Island-New-York-Bay.jpg" + # or a base64-encoded image + >>> image_path = "/path/to/image.jpeg" + >>> with open(image_path, "rb") as f: + ... base64_image = base64.b64encode(f.read()).decode("utf-8") + >>> image_url = f"data:image/jpeg;base64,{base64_image}" + + >>> client = AsyncInferenceClient("meta-llama/Llama-3.2-11B-Vision-Instruct") + >>> output = await client.chat.completions.create( + ... messages=[ + ... { + ... "role": "user", + ... "content": [ + ... { + ... "type": "image_url", + ... "image_url": {"url": image_url}, + ... }, + ... { + ... "type": "text", + ... "text": "Describe this image in one sentence.", + ... }, + ... ], + ... }, + ... ], + ... ) + >>> output + The image depicts the iconic Statue of Liberty situated in New York Harbor, New York, on a clear day. + ``` + + Example using tools: + ```py + # Must be run in an async context + >>> client = AsyncInferenceClient("meta-llama/Meta-Llama-3-70B-Instruct") + >>> messages = [ + ... { + ... "role": "system", + ... "content": "Don't make assumptions about what values to plug into functions. Ask for clarification if a user request is ambiguous.", + ... }, + ... { + ... "role": "user", + ... "content": "What's the weather like the next 3 days in San Francisco, CA?", + ... }, + ... ] + >>> tools = [ + ... { + ... "type": "function", + ... "function": { + ... "name": "get_current_weather", + ... "description": "Get the current weather", + ... "parameters": { + ... "type": "object", + ... "properties": { + ... "location": { + ... "type": "string", + ... "description": "The city and state, e.g. San Francisco, CA", + ... }, + ... "format": { + ... "type": "string", + ... "enum": ["celsius", "fahrenheit"], + ... "description": "The temperature unit to use. Infer this from the users location.", + ... }, + ... }, + ... "required": ["location", "format"], + ... }, + ... }, + ... }, + ... { + ... "type": "function", + ... "function": { + ... "name": "get_n_day_weather_forecast", + ... "description": "Get an N-day weather forecast", + ... "parameters": { + ... "type": "object", + ... "properties": { + ... "location": { + ... "type": "string", + ... "description": "The city and state, e.g. San Francisco, CA", + ... }, + ... "format": { + ... "type": "string", + ... "enum": ["celsius", "fahrenheit"], + ... "description": "The temperature unit to use. Infer this from the users location.", + ... }, + ... "num_days": { + ... "type": "integer", + ... "description": "The number of days to forecast", + ... }, + ... }, + ... "required": ["location", "format", "num_days"], + ... }, + ... }, + ... }, + ... ] + + >>> response = await client.chat_completion( + ... model="meta-llama/Meta-Llama-3-70B-Instruct", + ... messages=messages, + ... tools=tools, + ... tool_choice="auto", + ... max_tokens=500, + ... ) + >>> response.choices[0].message.tool_calls[0].function + ChatCompletionOutputFunctionDefinition( + arguments={ + 'location': 'San Francisco, CA', + 'format': 'fahrenheit', + 'num_days': 3 + }, + name='get_n_day_weather_forecast', + description=None + ) + ``` + + Example using response_format: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient("meta-llama/Meta-Llama-3-70B-Instruct") + >>> messages = [ + ... { + ... "role": "user", + ... "content": "I saw a puppy a cat and a raccoon during my bike ride in the park. What did I saw and when?", + ... }, + ... ] + >>> response_format = { + ... "type": "json", + ... "value": { + ... "properties": { + ... "location": {"type": "string"}, + ... "activity": {"type": "string"}, + ... "animals_seen": {"type": "integer", "minimum": 1, "maximum": 5}, + ... "animals": {"type": "array", "items": {"type": "string"}}, + ... }, + ... "required": ["location", "activity", "animals_seen", "animals"], + ... }, + ... } + >>> response = await client.chat_completion( + ... messages=messages, + ... response_format=response_format, + ... max_tokens=500, + ) + >>> response.choices[0].message.content + '{\n\n"activity": "bike ride",\n"animals": ["puppy", "cat", "raccoon"],\n"animals_seen": 3,\n"location": "park"}' + ``` + """ + model_url = self._resolve_chat_completion_url(model) + + # `model` is sent in the payload. Not used by the server but can be useful for debugging/routing. + # If it's a ID on the Hub => use it. Otherwise, we use a random string. + model_id = model or self.model or "tgi" + if model_id.startswith(("http://", "https://")): + model_id = "tgi" # dummy value + + payload = dict( + model=model_id, + messages=messages, + frequency_penalty=frequency_penalty, + logit_bias=logit_bias, + logprobs=logprobs, + max_tokens=max_tokens, + n=n, + presence_penalty=presence_penalty, + response_format=response_format, + seed=seed, + stop=stop, + temperature=temperature, + tool_choice=tool_choice, + tool_prompt=tool_prompt, + tools=tools, + top_logprobs=top_logprobs, + top_p=top_p, + stream=stream, + stream_options=stream_options, + ) + payload = {key: value for key, value in payload.items() if value is not None} + data = await self.post(model=model_url, json=payload, stream=stream) + + if stream: + return _async_stream_chat_completion_response(data) # type: ignore[arg-type] + + return ChatCompletionOutput.parse_obj_as_instance(data) # type: ignore[arg-type] + + def _resolve_chat_completion_url(self, model: Optional[str] = None) -> str: + # Since `chat_completion(..., model=xxx)` is also a payload parameter for the server, we need to handle 'model' differently. + # `self.base_url` and `self.model` takes precedence over 'model' argument only in `chat_completion`. + model_id_or_url = self.base_url or self.model or model or self.get_recommended_model("text-generation") + + # Resolve URL if it's a model ID + model_url = ( + model_id_or_url + if model_id_or_url.startswith(("http://", "https://")) + else self._resolve_url(model_id_or_url, task="text-generation") + ) + + # Strip trailing / + model_url = model_url.rstrip("/") + + # Append /chat/completions if not already present + if model_url.endswith("/v1"): + model_url += "/chat/completions" + + # Append /v1/chat/completions if not already present + if not model_url.endswith("/chat/completions"): + model_url += "/v1/chat/completions" + + return model_url + + async def document_question_answering( + self, + image: ContentT, + question: str, + *, + model: Optional[str] = None, + doc_stride: Optional[int] = None, + handle_impossible_answer: Optional[bool] = None, + lang: Optional[str] = None, + max_answer_len: Optional[int] = None, + max_question_len: Optional[int] = None, + max_seq_len: Optional[int] = None, + top_k: Optional[int] = None, + word_boxes: Optional[List[Union[List[float], str]]] = None, + ) -> List[DocumentQuestionAnsweringOutputElement]: + """ + Answer questions on document images. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image for the context. It can be raw bytes, an image file, or a URL to an online image. + question (`str`): + Question to be answered. + model (`str`, *optional*): + The model to use for the document question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended document question answering model will be used. + Defaults to None. + doc_stride (`int`, *optional*): + If the words in the document are too long to fit with the question for the model, it will + be split in several chunks with some overlap. This argument controls the size of that + overlap. + handle_impossible_answer (`bool`, *optional*): + Whether to accept impossible as an answer. + lang (`str`, *optional*): + Language to use while running OCR. + max_answer_len (`int`, *optional*): + The maximum length of predicted answers (e.g., only answers with a shorter length are + considered). + max_question_len (`int`, *optional*): + The maximum length of the question after tokenization. It will be truncated if needed. + max_seq_len (`int`, *optional*): + The maximum length of the total sentence (context + question) in tokens of each chunk + passed to the model. The context will be split in several chunks (using doc_stride as + overlap) if needed. + top_k (`int`, *optional*): + The number of answers to return (will be chosen by order of likelihood). Can return less + than top_k answers if there are not enough options available within the context. + word_boxes (`List[Union[List[float], str]]`, *optional*): + A list of words and bounding boxes (normalized 0->1000). If provided, the inference will + skip the OCR step and use the provided bounding boxes instead. + Returns: + `List[DocumentQuestionAnsweringOutputElement]`: a list of [`DocumentQuestionAnsweringOutputElement`] items containing the predicted label, associated probability, word ids, and page number. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.document_question_answering(image="https://huggingface.co/spaces/impira/docquery/resolve/2359223c1837a7587402bda0f2643382a6eefeab/invoice.png", question="What is the invoice number?") + [DocumentQuestionAnsweringOutputElement(answer='us-001', end=16, score=0.9999666213989258, start=16, words=None)] + ``` + """ + inputs: Dict[str, Any] = {"question": question, "image": _b64_encode(image)} + parameters = { + "doc_stride": doc_stride, + "handle_impossible_answer": handle_impossible_answer, + "lang": lang, + "max_answer_len": max_answer_len, + "max_question_len": max_question_len, + "max_seq_len": max_seq_len, + "top_k": top_k, + "word_boxes": word_boxes, + } + payload = _prepare_payload(inputs, parameters=parameters) + response = await self.post(**payload, model=model, task="document-question-answering") + return DocumentQuestionAnsweringOutputElement.parse_obj_as_list(response) + + async def feature_extraction( + self, + text: str, + *, + normalize: Optional[bool] = None, + prompt_name: Optional[str] = None, + truncate: Optional[bool] = None, + truncation_direction: Optional[Literal["Left", "Right"]] = None, + model: Optional[str] = None, + ) -> "np.ndarray": + """ + Generate embeddings for a given text. + + Args: + text (`str`): + The text to embed. + model (`str`, *optional*): + The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used. + Defaults to None. + normalize (`bool`, *optional*): + Whether to normalize the embeddings or not. + Only available on server powered by Text-Embedding-Inference. + prompt_name (`str`, *optional*): + The name of the prompt that should be used by for encoding. If not set, no prompt will be applied. + Must be a key in the `Sentence Transformers` configuration `prompts` dictionary. + For example if ``prompt_name`` is "query" and the ``prompts`` is {"query": "query: ",...}, + then the sentence "What is the capital of France?" will be encoded as "query: What is the capital of France?" + because the prompt text will be prepended before any text to encode. + truncate (`bool`, *optional*): + Whether to truncate the embeddings or not. + Only available on server powered by Text-Embedding-Inference. + truncation_direction (`Literal["Left", "Right"]`, *optional*): + Which side of the input should be truncated when `truncate=True` is passed. + + Returns: + `np.ndarray`: The embedding representing the input text as a float32 numpy array. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.feature_extraction("Hi, who are you?") + array([[ 2.424802 , 2.93384 , 1.1750331 , ..., 1.240499, -0.13776633, -0.7889173 ], + [-0.42943227, -0.6364878 , -1.693462 , ..., 0.41978157, -2.4336355 , 0.6162071 ], + ..., + [ 0.28552425, -0.928395 , -1.2077185 , ..., 0.76810825, -2.1069427 , 0.6236161 ]], dtype=float32) + ``` + """ + parameters = { + "normalize": normalize, + "prompt_name": prompt_name, + "truncate": truncate, + "truncation_direction": truncation_direction, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post(**payload, model=model, task="feature-extraction") + np = _import_numpy() + return np.array(_bytes_to_dict(response), dtype="float32") + + async def fill_mask( + self, + text: str, + *, + model: Optional[str] = None, + targets: Optional[List[str]] = None, + top_k: Optional[int] = None, + ) -> List[FillMaskOutputElement]: + """ + Fill in a hole with a missing word (token to be precise). + + Args: + text (`str`): + a string to be filled from, must contain the [MASK] token (check model card for exact name of the mask). + model (`str`, *optional*): + The model to use for the fill mask task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended fill mask model will be used. + targets (`List[str]`, *optional*): + When passed, the model will limit the scores to the passed targets instead of looking up + in the whole vocabulary. If the provided targets are not in the model vocab, they will be + tokenized and the first resulting token will be used (with a warning, and that might be + slower). + top_k (`int`, *optional*): + When passed, overrides the number of predictions to return. + Returns: + `List[FillMaskOutputElement]`: a list of [`FillMaskOutputElement`] items containing the predicted label, associated + probability, token reference, and completed text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.fill_mask("The goal of life is .") + [ + FillMaskOutputElement(score=0.06897063553333282, token=11098, token_str=' happiness', sequence='The goal of life is happiness.'), + FillMaskOutputElement(score=0.06554922461509705, token=45075, token_str=' immortality', sequence='The goal of life is immortality.') + ] + ``` + """ + parameters = {"targets": targets, "top_k": top_k} + payload = _prepare_payload(text, parameters=parameters) + response = await self.post(**payload, model=model, task="fill-mask") + return FillMaskOutputElement.parse_obj_as_list(response) + + async def image_classification( + self, + image: ContentT, + *, + model: Optional[str] = None, + function_to_apply: Optional[Literal["sigmoid", "softmax", "none"]] = None, + top_k: Optional[int] = None, + ) -> List[ImageClassificationOutputElement]: + """ + Perform image classification on the given image using the specified model. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The image to classify. It can be raw bytes, an image file, or a URL to an online image. + model (`str`, *optional*): + The model to use for image classification. Can be a model ID hosted on the Hugging Face Hub or a URL to a + deployed Inference Endpoint. If not provided, the default recommended model for image classification will be used. + function_to_apply (`Literal["sigmoid", "softmax", "none"]`, *optional*): + The function to apply to the output scores. + top_k (`int`, *optional*): + When specified, limits the output to the top K most probable classes. + Returns: + `List[ImageClassificationOutputElement]`: a list of [`ImageClassificationOutputElement`] items containing the predicted label and associated probability. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.image_classification("https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg") + [ImageClassificationOutputElement(label='Blenheim spaniel', score=0.9779096841812134), ...] + ``` + """ + parameters = {"function_to_apply": function_to_apply, "top_k": top_k} + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = await self.post(**payload, model=model, task="image-classification") + return ImageClassificationOutputElement.parse_obj_as_list(response) + + async def image_segmentation( + self, + image: ContentT, + *, + model: Optional[str] = None, + mask_threshold: Optional[float] = None, + overlap_mask_area_threshold: Optional[float] = None, + subtask: Optional[Literal["instance", "panoptic", "semantic"]] = None, + threshold: Optional[float] = None, + ) -> List[ImageSegmentationOutputElement]: + """ + Perform image segmentation on the given image using the specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The image to segment. It can be raw bytes, an image file, or a URL to an online image. + model (`str`, *optional*): + The model to use for image segmentation. Can be a model ID hosted on the Hugging Face Hub or a URL to a + deployed Inference Endpoint. If not provided, the default recommended model for image segmentation will be used. + mask_threshold (`float`, *optional*): + Threshold to use when turning the predicted masks into binary values. + overlap_mask_area_threshold (`float`, *optional*): + Mask overlap threshold to eliminate small, disconnected segments. + subtask (`Literal["instance", "panoptic", "semantic"]`, *optional*): + Segmentation task to be performed, depending on model capabilities. + threshold (`float`, *optional*): + Probability threshold to filter out predicted masks. + Returns: + `List[ImageSegmentationOutputElement]`: A list of [`ImageSegmentationOutputElement`] items containing the segmented masks and associated attributes. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.image_segmentation("cat.jpg") + [ImageSegmentationOutputElement(score=0.989008, label='LABEL_184', mask=), ...] + ``` + """ + parameters = { + "mask_threshold": mask_threshold, + "overlap_mask_area_threshold": overlap_mask_area_threshold, + "subtask": subtask, + "threshold": threshold, + } + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = await self.post(**payload, model=model, task="image-segmentation") + output = ImageSegmentationOutputElement.parse_obj_as_list(response) + for item in output: + item.mask = _b64_to_image(item.mask) # type: ignore [assignment] + return output + + async def image_to_image( + self, + image: ContentT, + prompt: Optional[str] = None, + *, + negative_prompt: Optional[str] = None, + height: Optional[int] = None, + width: Optional[int] = None, + num_inference_steps: Optional[int] = None, + guidance_scale: Optional[float] = None, + model: Optional[str] = None, + **kwargs, + ) -> "Image": + """ + Perform image-to-image translation using a specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image for translation. It can be raw bytes, an image file, or a URL to an online image. + prompt (`str`, *optional*): + The text prompt to guide the image generation. + negative_prompt (`str`, *optional*): + A negative prompt to guide the translation process. + height (`int`, *optional*): + The height in pixels of the generated image. + width (`int`, *optional*): + The width in pixels of the generated image. + num_inference_steps (`int`, *optional*): + The number of denoising steps. More denoising steps usually lead to a higher quality image at the + expense of slower inference. + guidance_scale (`float`, *optional*): + Higher guidance scale encourages to generate images that are closely linked to the text `prompt`, + usually at the expense of lower image quality. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + `Image`: The translated image. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> image = await client.image_to_image("cat.jpg", prompt="turn the cat into a tiger") + >>> image.save("tiger.jpg") + ``` + """ + parameters = { + "prompt": prompt, + "negative_prompt": negative_prompt, + "height": height, + "width": width, + "num_inference_steps": num_inference_steps, + "guidance_scale": guidance_scale, + **kwargs, + } + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = await self.post(**payload, model=model, task="image-to-image") + return _bytes_to_image(response) + + async def image_to_text(self, image: ContentT, *, model: Optional[str] = None) -> ImageToTextOutput: + """ + Takes an input image and return text. + + Models can have very different outputs depending on your use case (image captioning, optical character recognition + (OCR), Pix2Struct, etc). Please have a look to the model card to learn more about a model's specificities. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image to caption. It can be raw bytes, an image file, or a URL to an online image.. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + [`ImageToTextOutput`]: The generated text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.image_to_text("cat.jpg") + 'a cat standing in a grassy field ' + >>> await client.image_to_text("https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg") + 'a dog laying on the grass next to a flower pot ' + ``` + """ + response = await self.post(data=image, model=model, task="image-to-text") + output = ImageToTextOutput.parse_obj(response) + return output[0] if isinstance(output, list) else output + + async def list_deployed_models( + self, frameworks: Union[None, str, Literal["all"], List[str]] = None + ) -> Dict[str, List[str]]: + """ + List models deployed on the Serverless Inference API service. + + This helper checks deployed models framework by framework. By default, it will check the 4 main frameworks that + are supported and account for 95% of the hosted models. However, if you want a complete list of models you can + specify `frameworks="all"` as input. Alternatively, if you know before-hand which framework you are interested + in, you can also restrict to search to this one (e.g. `frameworks="text-generation-inference"`). The more + frameworks are checked, the more time it will take. + + + + This endpoint method does not return a live list of all models available for the Serverless Inference API service. + It searches over a cached list of models that were recently available and the list may not be up to date. + If you want to know the live status of a specific model, use [`~InferenceClient.get_model_status`]. + + + + + + This endpoint method is mostly useful for discoverability. If you already know which model you want to use and want to + check its availability, you can directly use [`~InferenceClient.get_model_status`]. + + + + Args: + frameworks (`Literal["all"]` or `List[str]` or `str`, *optional*): + The frameworks to filter on. By default only a subset of the available frameworks are tested. If set to + "all", all available frameworks will be tested. It is also possible to provide a single framework or a + custom set of frameworks to check. + + Returns: + `Dict[str, List[str]]`: A dictionary mapping task names to a sorted list of model IDs. + + Example: + ```py + # Must be run in an async contextthon + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + + # Discover zero-shot-classification models currently deployed + >>> models = await client.list_deployed_models() + >>> models["zero-shot-classification"] + ['Narsil/deberta-large-mnli-zero-cls', 'facebook/bart-large-mnli', ...] + + # List from only 1 framework + >>> await client.list_deployed_models("text-generation-inference") + {'text-generation': ['bigcode/starcoder', 'meta-llama/Llama-2-70b-chat-hf', ...], ...} + ``` + """ + # Resolve which frameworks to check + if frameworks is None: + frameworks = MAIN_INFERENCE_API_FRAMEWORKS + elif frameworks == "all": + frameworks = ALL_INFERENCE_API_FRAMEWORKS + elif isinstance(frameworks, str): + frameworks = [frameworks] + frameworks = list(set(frameworks)) + + # Fetch them iteratively + models_by_task: Dict[str, List[str]] = {} + + def _unpack_response(framework: str, items: List[Dict]) -> None: + for model in items: + if framework == "sentence-transformers": + # Model running with the `sentence-transformers` framework can work with both tasks even if not + # branded as such in the API response + models_by_task.setdefault("feature-extraction", []).append(model["model_id"]) + models_by_task.setdefault("sentence-similarity", []).append(model["model_id"]) + else: + models_by_task.setdefault(model["task"], []).append(model["model_id"]) + + async def _fetch_framework(framework: str) -> None: + async with self._get_client_session() as client: + response = await client.get(f"{INFERENCE_ENDPOINT}/framework/{framework}", proxy=self.proxies) + response.raise_for_status() + _unpack_response(framework, await response.json()) + + import asyncio + + await asyncio.gather(*[_fetch_framework(framework) for framework in frameworks]) + + # Sort alphabetically for discoverability and return + for task, models in models_by_task.items(): + models_by_task[task] = sorted(set(models), key=lambda x: x.lower()) + return models_by_task + + async def object_detection( + self, image: ContentT, *, model: Optional[str] = None, threshold: Optional[float] = None + ) -> List[ObjectDetectionOutputElement]: + """ + Perform object detection on the given image using the specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The image to detect objects on. It can be raw bytes, an image file, or a URL to an online image. + model (`str`, *optional*): + The model to use for object detection. Can be a model ID hosted on the Hugging Face Hub or a URL to a + deployed Inference Endpoint. If not provided, the default recommended model for object detection (DETR) will be used. + threshold (`float`, *optional*): + The probability necessary to make a prediction. + Returns: + `List[ObjectDetectionOutputElement]`: A list of [`ObjectDetectionOutputElement`] items containing the bounding boxes and associated attributes. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + `ValueError`: + If the request output is not a List. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.object_detection("people.jpg") + [ObjectDetectionOutputElement(score=0.9486683011054993, label='person', box=ObjectDetectionBoundingBox(xmin=59, ymin=39, xmax=420, ymax=510)), ...] + ``` + """ + parameters = { + "threshold": threshold, + } + payload = _prepare_payload(image, parameters=parameters, expect_binary=True) + response = await self.post(**payload, model=model, task="object-detection") + return ObjectDetectionOutputElement.parse_obj_as_list(response) + + async def question_answering( + self, + question: str, + context: str, + *, + model: Optional[str] = None, + align_to_words: Optional[bool] = None, + doc_stride: Optional[int] = None, + handle_impossible_answer: Optional[bool] = None, + max_answer_len: Optional[int] = None, + max_question_len: Optional[int] = None, + max_seq_len: Optional[int] = None, + top_k: Optional[int] = None, + ) -> Union[QuestionAnsweringOutputElement, List[QuestionAnsweringOutputElement]]: + """ + Retrieve the answer to a question from a given text. + + Args: + question (`str`): + Question to be answered. + context (`str`): + The context of the question. + model (`str`): + The model to use for the question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. + align_to_words (`bool`, *optional*): + Attempts to align the answer to real words. Improves quality on space separated + languages. Might hurt on non-space-separated languages (like Japanese or Chinese). + doc_stride (`int`, *optional*): + If the context is too long to fit with the question for the model, it will be split in + several chunks with some overlap. This argument controls the size of that overlap. + handle_impossible_answer (`bool`, *optional*): + Whether to accept impossible as an answer. + max_answer_len (`int`, *optional*): + The maximum length of predicted answers (e.g., only answers with a shorter length are + considered). + max_question_len (`int`, *optional*): + The maximum length of the question after tokenization. It will be truncated if needed. + max_seq_len (`int`, *optional*): + The maximum length of the total sentence (context + question) in tokens of each chunk + passed to the model. The context will be split in several chunks (using docStride as + overlap) if needed. + top_k (`int`, *optional*): + The number of answers to return (will be chosen by order of likelihood). Note that we + return less than topk answers if there are not enough options available within the + context. + Returns: + Union[`QuestionAnsweringOutputElement`, List[`QuestionAnsweringOutputElement`]]: + When top_k is 1 or not provided, it returns a single `QuestionAnsweringOutputElement`. + When top_k is greater than 1, it returns a list of `QuestionAnsweringOutputElement`. + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.question_answering(question="What's my name?", context="My name is Clara and I live in Berkeley.") + QuestionAnsweringOutputElement(answer='Clara', end=16, score=0.9326565265655518, start=11) + ``` + """ + parameters = { + "align_to_words": align_to_words, + "doc_stride": doc_stride, + "handle_impossible_answer": handle_impossible_answer, + "max_answer_len": max_answer_len, + "max_question_len": max_question_len, + "max_seq_len": max_seq_len, + "top_k": top_k, + } + inputs: Dict[str, Any] = {"question": question, "context": context} + payload = _prepare_payload(inputs, parameters=parameters) + response = await self.post( + **payload, + model=model, + task="question-answering", + ) + # Parse the response as a single `QuestionAnsweringOutputElement` when top_k is 1 or not provided, or a list of `QuestionAnsweringOutputElement` to ensure backward compatibility. + output = QuestionAnsweringOutputElement.parse_obj(response) + return output + + async def sentence_similarity( + self, sentence: str, other_sentences: List[str], *, model: Optional[str] = None + ) -> List[float]: + """ + Compute the semantic similarity between a sentence and a list of other sentences by comparing their embeddings. + + Args: + sentence (`str`): + The main sentence to compare to others. + other_sentences (`List[str]`): + The list of sentences to compare to. + model (`str`, *optional*): + The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used. + Defaults to None. + + Returns: + `List[float]`: The embedding representing the input text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.sentence_similarity( + ... "Machine learning is so easy.", + ... other_sentences=[ + ... "Deep learning is so straightforward.", + ... "This is so difficult, like rocket science.", + ... "I can't believe how much I struggled with this.", + ... ], + ... ) + [0.7785726189613342, 0.45876261591911316, 0.2906220555305481] + ``` + """ + response = await self.post( + json={"inputs": {"source_sentence": sentence, "sentences": other_sentences}}, + model=model, + task="sentence-similarity", + ) + return _bytes_to_list(response) + + @_deprecate_arguments( + version="0.29", + deprecated_args=["parameters"], + custom_message=( + "The `parameters` argument is deprecated and will be removed in a future version. " + "Provide individual parameters instead: `clean_up_tokenization_spaces`, `generate_parameters`, and `truncation`." + ), + ) + async def summarization( + self, + text: str, + *, + parameters: Optional[Dict[str, Any]] = None, + model: Optional[str] = None, + clean_up_tokenization_spaces: Optional[bool] = None, + generate_parameters: Optional[Dict[str, Any]] = None, + truncation: Optional[Literal["do_not_truncate", "longest_first", "only_first", "only_second"]] = None, + ) -> SummarizationOutput: + """ + Generate a summary of a given text using a specified model. + + Args: + text (`str`): + The input text to summarize. + parameters (`Dict[str, Any]`, *optional*): + Additional parameters for summarization. Check out this [page](https://huggingface.co/docs/api-inference/detailed_parameters#summarization-task) + for more details. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended model for summarization will be used. + clean_up_tokenization_spaces (`bool`, *optional*): + Whether to clean up the potential extra spaces in the text output. + generate_parameters (`Dict[str, Any]`, *optional*): + Additional parametrization of the text generation algorithm. + truncation (`Literal["do_not_truncate", "longest_first", "only_first", "only_second"]`, *optional*): + The truncation strategy to use. + Returns: + [`SummarizationOutput`]: The generated summary text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.summarization("The Eiffel tower...") + SummarizationOutput(generated_text="The Eiffel tower is one of the most famous landmarks in the world....") + ``` + """ + if parameters is None: + parameters = { + "clean_up_tokenization_spaces": clean_up_tokenization_spaces, + "generate_parameters": generate_parameters, + "truncation": truncation, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post(**payload, model=model, task="summarization") + return SummarizationOutput.parse_obj_as_list(response)[0] + + async def table_question_answering( + self, + table: Dict[str, Any], + query: str, + *, + model: Optional[str] = None, + parameters: Optional[Dict[str, Any]] = None, + ) -> TableQuestionAnsweringOutputElement: + """ + Retrieve the answer to a question from information given in a table. + + Args: + table (`str`): + A table of data represented as a dict of lists where entries are headers and the lists are all the + values, all lists must have the same size. + query (`str`): + The query in plain text that you want to ask the table. + model (`str`): + The model to use for the table-question-answering task. Can be a model ID hosted on the Hugging Face + Hub or a URL to a deployed Inference Endpoint. + parameters (`Dict[str, Any]`, *optional*): + Additional inference parameters. Defaults to None. + + Returns: + [`TableQuestionAnsweringOutputElement`]: a table question answering output containing the answer, coordinates, cells and the aggregator used. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> query = "How many stars does the transformers repository have?" + >>> table = {"Repository": ["Transformers", "Datasets", "Tokenizers"], "Stars": ["36542", "4512", "3934"]} + >>> await client.table_question_answering(table, query, model="google/tapas-base-finetuned-wtq") + TableQuestionAnsweringOutputElement(answer='36542', coordinates=[[0, 1]], cells=['36542'], aggregator='AVERAGE') + ``` + """ + inputs = { + "query": query, + "table": table, + } + payload = _prepare_payload(inputs, parameters=parameters) + response = await self.post( + **payload, + model=model, + task="table-question-answering", + ) + return TableQuestionAnsweringOutputElement.parse_obj_as_instance(response) + + async def tabular_classification(self, table: Dict[str, Any], *, model: Optional[str] = None) -> List[str]: + """ + Classifying a target category (a group) based on a set of attributes. + + Args: + table (`Dict[str, Any]`): + Set of attributes to classify. + model (`str`, *optional*): + The model to use for the tabular classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended tabular classification model will be used. + Defaults to None. + + Returns: + `List`: a list of labels, one per row in the initial table. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> table = { + ... "fixed_acidity": ["7.4", "7.8", "10.3"], + ... "volatile_acidity": ["0.7", "0.88", "0.32"], + ... "citric_acid": ["0", "0", "0.45"], + ... "residual_sugar": ["1.9", "2.6", "6.4"], + ... "chlorides": ["0.076", "0.098", "0.073"], + ... "free_sulfur_dioxide": ["11", "25", "5"], + ... "total_sulfur_dioxide": ["34", "67", "13"], + ... "density": ["0.9978", "0.9968", "0.9976"], + ... "pH": ["3.51", "3.2", "3.23"], + ... "sulphates": ["0.56", "0.68", "0.82"], + ... "alcohol": ["9.4", "9.8", "12.6"], + ... } + >>> await client.tabular_classification(table=table, model="julien-c/wine-quality") + ["5", "5", "5"] + ``` + """ + response = await self.post( + json={"table": table}, + model=model, + task="tabular-classification", + ) + return _bytes_to_list(response) + + async def tabular_regression(self, table: Dict[str, Any], *, model: Optional[str] = None) -> List[float]: + """ + Predicting a numerical target value given a set of attributes/features in a table. + + Args: + table (`Dict[str, Any]`): + Set of attributes stored in a table. The attributes used to predict the target can be both numerical and categorical. + model (`str`, *optional*): + The model to use for the tabular regression task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended tabular regression model will be used. + Defaults to None. + + Returns: + `List`: a list of predicted numerical target values. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> table = { + ... "Height": ["11.52", "12.48", "12.3778"], + ... "Length1": ["23.2", "24", "23.9"], + ... "Length2": ["25.4", "26.3", "26.5"], + ... "Length3": ["30", "31.2", "31.1"], + ... "Species": ["Bream", "Bream", "Bream"], + ... "Width": ["4.02", "4.3056", "4.6961"], + ... } + >>> await client.tabular_regression(table, model="scikit-learn/Fish-Weight") + [110, 120, 130] + ``` + """ + response = await self.post(json={"table": table}, model=model, task="tabular-regression") + return _bytes_to_list(response) + + async def text_classification( + self, + text: str, + *, + model: Optional[str] = None, + top_k: Optional[int] = None, + function_to_apply: Optional["TextClassificationOutputTransform"] = None, + ) -> List[TextClassificationOutputElement]: + """ + Perform text classification (e.g. sentiment-analysis) on the given text. + + Args: + text (`str`): + A string to be classified. + model (`str`, *optional*): + The model to use for the text classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended text classification model will be used. + Defaults to None. + top_k (`int`, *optional*): + When specified, limits the output to the top K most probable classes. + function_to_apply (`"TextClassificationOutputTransform"`, *optional*): + The function to apply to the output. + + Returns: + `List[TextClassificationOutputElement]`: a list of [`TextClassificationOutputElement`] items containing the predicted label and associated probability. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.text_classification("I like you") + [ + TextClassificationOutputElement(label='POSITIVE', score=0.9998695850372314), + TextClassificationOutputElement(label='NEGATIVE', score=0.0001304351753788069), + ] + ``` + """ + parameters = { + "function_to_apply": function_to_apply, + "top_k": top_k, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post( + **payload, + model=model, + task="text-classification", + ) + return TextClassificationOutputElement.parse_obj_as_list(response)[0] # type: ignore [return-value] + + @overload + async def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[False] = ..., + stream: Literal[False] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> str: ... + + @overload + async def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[True] = ..., + stream: Literal[False] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> TextGenerationOutput: ... + + @overload + async def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[False] = ..., + stream: Literal[True] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> AsyncIterable[str]: ... + + @overload + async def text_generation( # type: ignore + self, + prompt: str, + *, + details: Literal[True] = ..., + stream: Literal[True] = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> AsyncIterable[TextGenerationStreamOutput]: ... + + @overload + async def text_generation( + self, + prompt: str, + *, + details: Literal[True] = ..., + stream: bool = ..., + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> Union[TextGenerationOutput, AsyncIterable[TextGenerationStreamOutput]]: ... + + async def text_generation( + self, + prompt: str, + *, + details: bool = False, + stream: bool = False, + model: Optional[str] = None, + # Parameters from `TextGenerationInputGenerateParameters` (maintained manually) + adapter_id: Optional[str] = None, + best_of: Optional[int] = None, + decoder_input_details: Optional[bool] = None, + do_sample: Optional[bool] = False, # Manual default value + frequency_penalty: Optional[float] = None, + grammar: Optional[TextGenerationInputGrammarType] = None, + max_new_tokens: Optional[int] = None, + repetition_penalty: Optional[float] = None, + return_full_text: Optional[bool] = False, # Manual default value + seed: Optional[int] = None, + stop: Optional[List[str]] = None, + stop_sequences: Optional[List[str]] = None, # Deprecated, use `stop` instead + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_n_tokens: Optional[int] = None, + top_p: Optional[float] = None, + truncate: Optional[int] = None, + typical_p: Optional[float] = None, + watermark: Optional[bool] = None, + ) -> Union[str, TextGenerationOutput, AsyncIterable[str], AsyncIterable[TextGenerationStreamOutput]]: + """ + Given a prompt, generate the following text. + + API endpoint is supposed to run with the `text-generation-inference` backend (TGI). This backend is the + go-to solution to run large language models at scale. However, for some smaller models (e.g. "gpt2") the + default `transformers` + `api-inference` solution is still in use. Both approaches have very similar APIs, but + not exactly the same. This method is compatible with both approaches but some parameters are only available for + `text-generation-inference`. If some parameters are ignored, a warning message is triggered but the process + continues correctly. + + To learn more about the TGI project, please refer to https://github.com/huggingface/text-generation-inference. + + + + If you want to generate a response from chat messages, you should use the [`InferenceClient.chat_completion`] method. + It accepts a list of messages instead of a single text prompt and handles the chat templating for you. + + + + Args: + prompt (`str`): + Input text. + details (`bool`, *optional*): + By default, text_generation returns a string. Pass `details=True` if you want a detailed output (tokens, + probabilities, seed, finish reason, etc.). Only available for models running on with the + `text-generation-inference` backend. + stream (`bool`, *optional*): + By default, text_generation returns the full generated text. Pass `stream=True` if you want a stream of + tokens to be returned. Only available for models running on with the `text-generation-inference` + backend. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + adapter_id (`str`, *optional*): + Lora adapter id. + best_of (`int`, *optional*): + Generate best_of sequences and return the one if the highest token logprobs. + decoder_input_details (`bool`, *optional*): + Return the decoder input token logprobs and ids. You must set `details=True` as well for it to be taken + into account. Defaults to `False`. + do_sample (`bool`, *optional*): + Activate logits sampling + frequency_penalty (`float`, *optional*): + Number between -2.0 and 2.0. Positive values penalize new tokens based on their existing frequency in + the text so far, decreasing the model's likelihood to repeat the same line verbatim. + grammar ([`TextGenerationInputGrammarType`], *optional*): + Grammar constraints. Can be either a JSONSchema or a regex. + max_new_tokens (`int`, *optional*): + Maximum number of generated tokens + repetition_penalty (`float`, *optional*): + The parameter for repetition penalty. 1.0 means no penalty. See [this + paper](https://arxiv.org/pdf/1909.05858.pdf) for more details. + return_full_text (`bool`, *optional*): + Whether to prepend the prompt to the generated text + seed (`int`, *optional*): + Random sampling seed + stop (`List[str]`, *optional*): + Stop generating tokens if a member of `stop` is generated. + stop_sequences (`List[str]`, *optional*): + Deprecated argument. Use `stop` instead. + temperature (`float`, *optional*): + The value used to module the logits distribution. + top_n_tokens (`int`, *optional*): + Return information about the `top_n_tokens` most likely tokens at each generation step, instead of + just the sampled token. + top_k (`int`, *optional`): + The number of highest probability vocabulary tokens to keep for top-k-filtering. + top_p (`float`, *optional`): + If set to < 1, only the smallest set of most probable tokens with probabilities that add up to `top_p` or + higher are kept for generation. + truncate (`int`, *optional`): + Truncate inputs tokens to the given size. + typical_p (`float`, *optional`): + Typical Decoding mass + See [Typical Decoding for Natural Language Generation](https://arxiv.org/abs/2202.00666) for more information + watermark (`bool`, *optional`): + Watermarking with [A Watermark for Large Language Models](https://arxiv.org/abs/2301.10226) + + Returns: + `Union[str, TextGenerationOutput, Iterable[str], Iterable[TextGenerationStreamOutput]]`: + Generated text returned from the server: + - if `stream=False` and `details=False`, the generated text is returned as a `str` (default) + - if `stream=True` and `details=False`, the generated text is returned token by token as a `Iterable[str]` + - if `stream=False` and `details=True`, the generated text is returned with more details as a [`~huggingface_hub.TextGenerationOutput`] + - if `details=True` and `stream=True`, the generated text is returned token by token as a iterable of [`~huggingface_hub.TextGenerationStreamOutput`] + + Raises: + `ValidationError`: + If input values are not valid. No HTTP call is made to the server. + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + + # Case 1: generate text + >>> await client.text_generation("The huggingface_hub library is ", max_new_tokens=12) + '100% open source and built to be easy to use.' + + # Case 2: iterate over the generated tokens. Useful for large generation. + >>> async for token in await client.text_generation("The huggingface_hub library is ", max_new_tokens=12, stream=True): + ... print(token) + 100 + % + open + source + and + built + to + be + easy + to + use + . + + # Case 3: get more details about the generation process. + >>> await client.text_generation("The huggingface_hub library is ", max_new_tokens=12, details=True) + TextGenerationOutput( + generated_text='100% open source and built to be easy to use.', + details=TextGenerationDetails( + finish_reason='length', + generated_tokens=12, + seed=None, + prefill=[ + TextGenerationPrefillOutputToken(id=487, text='The', logprob=None), + TextGenerationPrefillOutputToken(id=53789, text=' hugging', logprob=-13.171875), + (...) + TextGenerationPrefillOutputToken(id=204, text=' ', logprob=-7.0390625) + ], + tokens=[ + TokenElement(id=1425, text='100', logprob=-1.0175781, special=False), + TokenElement(id=16, text='%', logprob=-0.0463562, special=False), + (...) + TokenElement(id=25, text='.', logprob=-0.5703125, special=False) + ], + best_of_sequences=None + ) + ) + + # Case 4: iterate over the generated tokens with more details. + # Last object is more complete, containing the full generated text and the finish reason. + >>> async for details in await client.text_generation("The huggingface_hub library is ", max_new_tokens=12, details=True, stream=True): + ... print(details) + ... + TextGenerationStreamOutput(token=TokenElement(id=1425, text='100', logprob=-1.0175781, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=16, text='%', logprob=-0.0463562, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=1314, text=' open', logprob=-1.3359375, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=3178, text=' source', logprob=-0.28100586, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=273, text=' and', logprob=-0.5961914, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=3426, text=' built', logprob=-1.9423828, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=271, text=' to', logprob=-1.4121094, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=314, text=' be', logprob=-1.5224609, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=1833, text=' easy', logprob=-2.1132812, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=271, text=' to', logprob=-0.08520508, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement(id=745, text=' use', logprob=-0.39453125, special=False), generated_text=None, details=None) + TextGenerationStreamOutput(token=TokenElement( + id=25, + text='.', + logprob=-0.5703125, + special=False), + generated_text='100% open source and built to be easy to use.', + details=TextGenerationStreamOutputStreamDetails(finish_reason='length', generated_tokens=12, seed=None) + ) + + # Case 5: generate constrained output using grammar + >>> response = await client.text_generation( + ... prompt="I saw a puppy a cat and a raccoon during my bike ride in the park", + ... model="HuggingFaceH4/zephyr-orpo-141b-A35b-v0.1", + ... max_new_tokens=100, + ... repetition_penalty=1.3, + ... grammar={ + ... "type": "json", + ... "value": { + ... "properties": { + ... "location": {"type": "string"}, + ... "activity": {"type": "string"}, + ... "animals_seen": {"type": "integer", "minimum": 1, "maximum": 5}, + ... "animals": {"type": "array", "items": {"type": "string"}}, + ... }, + ... "required": ["location", "activity", "animals_seen", "animals"], + ... }, + ... }, + ... ) + >>> json.loads(response) + { + "activity": "bike riding", + "animals": ["puppy", "cat", "raccoon"], + "animals_seen": 3, + "location": "park" + } + ``` + """ + if decoder_input_details and not details: + warnings.warn( + "`decoder_input_details=True` has been passed to the server but `details=False` is set meaning that" + " the output from the server will be truncated." + ) + decoder_input_details = False + + if stop_sequences is not None: + warnings.warn( + "`stop_sequences` is a deprecated argument for `text_generation` task" + " and will be removed in version '0.28.0'. Use `stop` instead.", + FutureWarning, + ) + if stop is None: + stop = stop_sequences # use deprecated arg if provided + + # Build payload + parameters = { + "adapter_id": adapter_id, + "best_of": best_of, + "decoder_input_details": decoder_input_details, + "details": details, + "do_sample": do_sample, + "frequency_penalty": frequency_penalty, + "grammar": grammar, + "max_new_tokens": max_new_tokens, + "repetition_penalty": repetition_penalty, + "return_full_text": return_full_text, + "seed": seed, + "stop": stop if stop is not None else [], + "temperature": temperature, + "top_k": top_k, + "top_n_tokens": top_n_tokens, + "top_p": top_p, + "truncate": truncate, + "typical_p": typical_p, + "watermark": watermark, + } + parameters = {k: v for k, v in parameters.items() if v is not None} + payload = { + "inputs": prompt, + "parameters": parameters, + "stream": stream, + } + + # Remove some parameters if not a TGI server + unsupported_kwargs = _get_unsupported_text_generation_kwargs(model) + if len(unsupported_kwargs) > 0: + # The server does not support some parameters + # => means it is not a TGI server + # => remove unsupported parameters and warn the user + + ignored_parameters = [] + for key in unsupported_kwargs: + if parameters.get(key): + ignored_parameters.append(key) + parameters.pop(key, None) + if len(ignored_parameters) > 0: + warnings.warn( + "API endpoint/model for text-generation is not served via TGI. Ignoring following parameters:" + f" {', '.join(ignored_parameters)}.", + UserWarning, + ) + if details: + warnings.warn( + "API endpoint/model for text-generation is not served via TGI. Parameter `details=True` will" + " be ignored meaning only the generated text will be returned.", + UserWarning, + ) + details = False + if stream: + raise ValueError( + "API endpoint/model for text-generation is not served via TGI. Cannot return output as a stream." + " Please pass `stream=False` as input." + ) + + # Handle errors separately for more precise error messages + try: + bytes_output = await self.post(json=payload, model=model, task="text-generation", stream=stream) # type: ignore + except _import_aiohttp().ClientResponseError as e: + match = MODEL_KWARGS_NOT_USED_REGEX.search(e.response_error_payload["error"]) + if e.status == 400 and match: + unused_params = [kwarg.strip("' ") for kwarg in match.group(1).split(",")] + _set_unsupported_text_generation_kwargs(model, unused_params) + return await self.text_generation( # type: ignore + prompt=prompt, + details=details, + stream=stream, + model=model, + adapter_id=adapter_id, + best_of=best_of, + decoder_input_details=decoder_input_details, + do_sample=do_sample, + frequency_penalty=frequency_penalty, + grammar=grammar, + max_new_tokens=max_new_tokens, + repetition_penalty=repetition_penalty, + return_full_text=return_full_text, + seed=seed, + stop=stop, + temperature=temperature, + top_k=top_k, + top_n_tokens=top_n_tokens, + top_p=top_p, + truncate=truncate, + typical_p=typical_p, + watermark=watermark, + ) + raise_text_generation_error(e) + + # Parse output + if stream: + return _async_stream_text_generation_response(bytes_output, details) # type: ignore + + data = _bytes_to_dict(bytes_output) # type: ignore[arg-type] + + # Data can be a single element (dict) or an iterable of dicts where we select the first element of. + if isinstance(data, list): + data = data[0] + + return TextGenerationOutput.parse_obj_as_instance(data) if details else data["generated_text"] + + async def text_to_image( + self, + prompt: str, + *, + negative_prompt: Optional[str] = None, + height: Optional[float] = None, + width: Optional[float] = None, + num_inference_steps: Optional[float] = None, + guidance_scale: Optional[float] = None, + model: Optional[str] = None, + scheduler: Optional[str] = None, + target_size: Optional[TextToImageTargetSize] = None, + seed: Optional[int] = None, + **kwargs, + ) -> "Image": + """ + Generate an image based on a given text using a specified model. + + + + You must have `PIL` installed if you want to work with images (`pip install Pillow`). + + + + Args: + prompt (`str`): + The prompt to generate an image from. + negative_prompt (`str`, *optional*): + An optional negative prompt for the image generation. + height (`float`, *optional*): + The height in pixels of the image to generate. + width (`float`, *optional*): + The width in pixels of the image to generate. + num_inference_steps (`int`, *optional*): + The number of denoising steps. More denoising steps usually lead to a higher quality image at the + expense of slower inference. + guidance_scale (`float`, *optional*): + Higher guidance scale encourages to generate images that are closely linked to the text `prompt`, + usually at the expense of lower image quality. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended text-to-image model will be used. + Defaults to None. + scheduler (`str`, *optional*): + Override the scheduler with a compatible one. + target_size (`TextToImageTargetSize`, *optional*): + The size in pixel of the output image + seed (`int`, *optional*): + Seed for the random number generator. + + Returns: + `Image`: The generated image. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + + >>> image = await client.text_to_image("An astronaut riding a horse on the moon.") + >>> image.save("astronaut.png") + + >>> image = await client.text_to_image( + ... "An astronaut riding a horse on the moon.", + ... negative_prompt="low resolution, blurry", + ... model="stabilityai/stable-diffusion-2-1", + ... ) + >>> image.save("better_astronaut.png") + ``` + """ + + parameters = { + "negative_prompt": negative_prompt, + "height": height, + "width": width, + "num_inference_steps": num_inference_steps, + "guidance_scale": guidance_scale, + "scheduler": scheduler, + "target_size": target_size, + "seed": seed, + **kwargs, + } + payload = _prepare_payload(prompt, parameters=parameters) + response = await self.post(**payload, model=model, task="text-to-image") + return _bytes_to_image(response) + + async def text_to_speech( + self, + text: str, + *, + model: Optional[str] = None, + do_sample: Optional[bool] = None, + early_stopping: Optional[Union[bool, "TextToSpeechEarlyStoppingEnum"]] = None, + epsilon_cutoff: Optional[float] = None, + eta_cutoff: Optional[float] = None, + max_length: Optional[int] = None, + max_new_tokens: Optional[int] = None, + min_length: Optional[int] = None, + min_new_tokens: Optional[int] = None, + num_beam_groups: Optional[int] = None, + num_beams: Optional[int] = None, + penalty_alpha: Optional[float] = None, + temperature: Optional[float] = None, + top_k: Optional[int] = None, + top_p: Optional[float] = None, + typical_p: Optional[float] = None, + use_cache: Optional[bool] = None, + ) -> bytes: + """ + Synthesize an audio of a voice pronouncing a given text. + + Args: + text (`str`): + The text to synthesize. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. If not provided, the default recommended text-to-speech model will be used. + Defaults to None. + do_sample (`bool`, *optional*): + Whether to use sampling instead of greedy decoding when generating new tokens. + early_stopping (`Union[bool, "TextToSpeechEarlyStoppingEnum"`, *optional*): + Controls the stopping condition for beam-based methods. + epsilon_cutoff (`float`, *optional*): + If set to float strictly between 0 and 1, only tokens with a conditional probability + greater than epsilon_cutoff will be sampled. In the paper, suggested values range from + 3e-4 to 9e-4, depending on the size of the model. See [Truncation Sampling as Language + Model Desmoothing](https://hf.co/papers/2210.15191) for more details. + eta_cutoff (`float`, *optional*): + Eta sampling is a hybrid of locally typical sampling and epsilon sampling. If set to + float strictly between 0 and 1, a token is only considered if it is greater than either + eta_cutoff or sqrt(eta_cutoff) * exp(-entropy(softmax(next_token_logits))). The latter + term is intuitively the expected next token probability, scaled by sqrt(eta_cutoff). In + the paper, suggested values range from 3e-4 to 2e-3, depending on the size of the model. + See [Truncation Sampling as Language Model Desmoothing](https://hf.co/papers/2210.15191) + for more details. + max_length (`int`, *optional*): + The maximum length (in tokens) of the generated text, including the input. + max_new_tokens (`int`, *optional*): + The maximum number of tokens to generate. Takes precedence over maxLength. + min_length (`int`, *optional*): + The minimum length (in tokens) of the generated text, including the input. + min_new_tokens (`int`, *optional*): + The minimum number of tokens to generate. Takes precedence over maxLength. + num_beam_groups (`int`, *optional*): + Number of groups to divide num_beams into in order to ensure diversity among different + groups of beams. See [this paper](https://hf.co/papers/1610.02424) for more details. + num_beams (`int`, *optional*): + Number of beams to use for beam search. + penalty_alpha (`float`, *optional*): + The value balances the model confidence and the degeneration penalty in contrastive + search decoding. + temperature (`float`, *optional*): + The value used to modulate the next token probabilities. + top_k (`int`, *optional*): + The number of highest probability vocabulary tokens to keep for top-k-filtering. + top_p (`float`, *optional*): + If set to float < 1, only the smallest set of most probable tokens with probabilities + that add up to top_p or higher are kept for generation. + typical_p (`float`, *optional*): + Local typicality measures how similar the conditional probability of predicting a target token next is + to the expected conditional probability of predicting a random token next, given the partial text + already generated. If set to float < 1, the smallest set of the most locally typical tokens with + probabilities that add up to typical_p or higher are kept for generation. See [this + paper](https://hf.co/papers/2202.00666) for more details. + use_cache (`bool`, *optional*): + Whether the model should use the past last key/values attentions to speed up decoding + + Returns: + `bytes`: The generated audio. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from pathlib import Path + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + + >>> audio = await client.text_to_speech("Hello world") + >>> Path("hello_world.flac").write_bytes(audio) + ``` + """ + parameters = { + "do_sample": do_sample, + "early_stopping": early_stopping, + "epsilon_cutoff": epsilon_cutoff, + "eta_cutoff": eta_cutoff, + "max_length": max_length, + "max_new_tokens": max_new_tokens, + "min_length": min_length, + "min_new_tokens": min_new_tokens, + "num_beam_groups": num_beam_groups, + "num_beams": num_beams, + "penalty_alpha": penalty_alpha, + "temperature": temperature, + "top_k": top_k, + "top_p": top_p, + "typical_p": typical_p, + "use_cache": use_cache, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post(**payload, model=model, task="text-to-speech") + return response + + async def token_classification( + self, + text: str, + *, + model: Optional[str] = None, + aggregation_strategy: Optional[Literal["none", "simple", "first", "average", "max"]] = None, + ignore_labels: Optional[List[str]] = None, + stride: Optional[int] = None, + ) -> List[TokenClassificationOutputElement]: + """ + Perform token classification on the given text. + Usually used for sentence parsing, either grammatical, or Named Entity Recognition (NER) to understand keywords contained within text. + + Args: + text (`str`): + A string to be classified. + model (`str`, *optional*): + The model to use for the token classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended token classification model will be used. + Defaults to None. + aggregation_strategy (`Literal["none", "simple", "first", "average", "max"]`, *optional*): + The strategy used to fuse tokens based on model predictions. + ignore_labels (`List[str]`, *optional*): + A list of labels to ignore. + stride (`int`, *optional*): + The number of overlapping tokens between chunks when splitting the input text. + + Returns: + `List[TokenClassificationOutputElement]`: List of [`TokenClassificationOutputElement`] items containing the entity group, confidence score, word, start and end index. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.token_classification("My name is Sarah Jessica Parker but you can call me Jessica") + [ + TokenClassificationOutputElement( + entity_group='PER', + score=0.9971321225166321, + word='Sarah Jessica Parker', + start=11, + end=31, + ), + TokenClassificationOutputElement( + entity_group='PER', + score=0.9773476123809814, + word='Jessica', + start=52, + end=59, + ) + ] + ``` + """ + + parameters = { + "aggregation_strategy": aggregation_strategy, + "ignore_labels": ignore_labels, + "stride": stride, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post( + **payload, + model=model, + task="token-classification", + ) + return TokenClassificationOutputElement.parse_obj_as_list(response) + + async def translation( + self, + text: str, + *, + model: Optional[str] = None, + src_lang: Optional[str] = None, + tgt_lang: Optional[str] = None, + clean_up_tokenization_spaces: Optional[bool] = None, + truncation: Optional[Literal["do_not_truncate", "longest_first", "only_first", "only_second"]] = None, + generate_parameters: Optional[Dict[str, Any]] = None, + ) -> TranslationOutput: + """ + Convert text from one language to another. + + Check out https://huggingface.co/tasks/translation for more information on how to choose the best model for + your specific use case. Source and target languages usually depend on the model. + However, it is possible to specify source and target languages for certain models. If you are working with one of these models, + you can use `src_lang` and `tgt_lang` arguments to pass the relevant information. + + Args: + text (`str`): + A string to be translated. + model (`str`, *optional*): + The model to use for the translation task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended translation model will be used. + Defaults to None. + src_lang (`str`, *optional*): + The source language of the text. Required for models that can translate from multiple languages. + tgt_lang (`str`, *optional*): + Target language to translate to. Required for models that can translate to multiple languages. + clean_up_tokenization_spaces (`bool`, *optional*): + Whether to clean up the potential extra spaces in the text output. + truncation (`Literal["do_not_truncate", "longest_first", "only_first", "only_second"]`, *optional*): + The truncation strategy to use. + generate_parameters (`Dict[str, Any]`, *optional*): + Additional parametrization of the text generation algorithm. + + Returns: + [`TranslationOutput`]: The generated translated text. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + `ValueError`: + If only one of the `src_lang` and `tgt_lang` arguments are provided. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.translation("My name is Wolfgang and I live in Berlin") + 'Mein Name ist Wolfgang und ich lebe in Berlin.' + >>> await client.translation("My name is Wolfgang and I live in Berlin", model="Helsinki-NLP/opus-mt-en-fr") + TranslationOutput(translation_text='Je m\'appelle Wolfgang et je vis à Berlin.') + ``` + + Specifying languages: + ```py + >>> client.translation("My name is Sarah Jessica Parker but you can call me Jessica", model="facebook/mbart-large-50-many-to-many-mmt", src_lang="en_XX", tgt_lang="fr_XX") + "Mon nom est Sarah Jessica Parker mais vous pouvez m\'appeler Jessica" + ``` + """ + # Throw error if only one of `src_lang` and `tgt_lang` was given + if src_lang is not None and tgt_lang is None: + raise ValueError("You cannot specify `src_lang` without specifying `tgt_lang`.") + + if src_lang is None and tgt_lang is not None: + raise ValueError("You cannot specify `tgt_lang` without specifying `src_lang`.") + parameters = { + "src_lang": src_lang, + "tgt_lang": tgt_lang, + "clean_up_tokenization_spaces": clean_up_tokenization_spaces, + "truncation": truncation, + "generate_parameters": generate_parameters, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post(**payload, model=model, task="translation") + return TranslationOutput.parse_obj_as_list(response)[0] + + async def visual_question_answering( + self, + image: ContentT, + question: str, + *, + model: Optional[str] = None, + top_k: Optional[int] = None, + ) -> List[VisualQuestionAnsweringOutputElement]: + """ + Answering open-ended questions based on an image. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image for the context. It can be raw bytes, an image file, or a URL to an online image. + question (`str`): + Question to be answered. + model (`str`, *optional*): + The model to use for the visual question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to + a deployed Inference Endpoint. If not provided, the default recommended visual question answering model will be used. + Defaults to None. + top_k (`int`, *optional*): + The number of answers to return (will be chosen by order of likelihood). Note that we + return less than topk answers if there are not enough options available within the + context. + Returns: + `List[VisualQuestionAnsweringOutputElement]`: a list of [`VisualQuestionAnsweringOutputElement`] items containing the predicted label and associated probability. + + Raises: + `InferenceTimeoutError`: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.visual_question_answering( + ... image="https://huggingface.co/datasets/mishig/sample_images/resolve/main/tiger.jpg", + ... question="What is the animal doing?" + ... ) + [ + VisualQuestionAnsweringOutputElement(score=0.778609573841095, answer='laying down'), + VisualQuestionAnsweringOutputElement(score=0.6957435607910156, answer='sitting'), + ] + ``` + """ + payload: Dict[str, Any] = {"question": question, "image": _b64_encode(image)} + if top_k is not None: + payload.setdefault("parameters", {})["top_k"] = top_k + response = await self.post(json=payload, model=model, task="visual-question-answering") + return VisualQuestionAnsweringOutputElement.parse_obj_as_list(response) + + async def zero_shot_classification( + self, + text: str, + labels: List[str], + *, + multi_label: bool = False, + hypothesis_template: Optional[str] = None, + model: Optional[str] = None, + ) -> List[ZeroShotClassificationOutputElement]: + """ + Provide as input a text and a set of candidate labels to classify the input text. + + Args: + text (`str`): + The input text to classify. + labels (`List[str]`): + List of strings. Each string is the verbalization of a possible label for the input text. + multi_label (`bool`): + Boolean. If True, the probability for each label is evaluated independently and multiple labels can have a probability close to 1 simultaneously or all probabilities can be close to 0. + If False, the labels are considered mutually exclusive and the probability over all labels always sums to 1. Defaults to False. + hypothesis_template (`str`, *optional*): + A template sentence string with curly brackets to which the label strings are added. The label strings are added at the position of the curly brackets "{}". + Zero-shot classifiers are based on NLI models, which evaluate if a hypothesis is entailed in another text or not. + For example, with hypothesis_template="This text is about {}." and labels=["economics", "politics"], the system internally creates the two hypotheses "This text is about economics." and "This text is about politics.". + The model then evaluates for both hypotheses if they are entailed in the provided `text` or not. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. If not provided, the default recommended zero-shot classification model will be used. + + Returns: + `List[ZeroShotClassificationOutputElement]`: List of [`ZeroShotClassificationOutputElement`] items containing the predicted labels and their confidence. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example with `multi_label=False`: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> text = ( + ... "A new model offers an explanation for how the Galilean satellites formed around the solar system's" + ... "largest world. Konstantin Batygin did not set out to solve one of the solar system's most puzzling" + ... " mysteries when he went for a run up a hill in Nice, France." + ... ) + >>> labels = ["space & cosmos", "scientific discovery", "microbiology", "robots", "archeology"] + >>> await client.zero_shot_classification(text, labels) + [ + ZeroShotClassificationOutputElement(label='scientific discovery', score=0.7961668968200684), + ZeroShotClassificationOutputElement(label='space & cosmos', score=0.18570658564567566), + ZeroShotClassificationOutputElement(label='microbiology', score=0.00730885099619627), + ZeroShotClassificationOutputElement(label='archeology', score=0.006258360575884581), + ZeroShotClassificationOutputElement(label='robots', score=0.004559356719255447), + ] + >>> await client.zero_shot_classification(text, labels, multi_label=True) + [ + ZeroShotClassificationOutputElement(label='scientific discovery', score=0.9829297661781311), + ZeroShotClassificationOutputElement(label='space & cosmos', score=0.755190908908844), + ZeroShotClassificationOutputElement(label='microbiology', score=0.0005462635890580714), + ZeroShotClassificationOutputElement(label='archeology', score=0.00047131875180639327), + ZeroShotClassificationOutputElement(label='robots', score=0.00030448526376858354), + ] + ``` + + Example with `multi_label=True` and a custom `hypothesis_template`: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.zero_shot_classification( + ... text="I really like our dinner and I'm very happy. I don't like the weather though.", + ... labels=["positive", "negative", "pessimistic", "optimistic"], + ... multi_label=True, + ... hypothesis_template="This text is {} towards the weather" + ... ) + [ + ZeroShotClassificationOutputElement(label='negative', score=0.9231801629066467), + ZeroShotClassificationOutputElement(label='pessimistic', score=0.8760990500450134), + ZeroShotClassificationOutputElement(label='optimistic', score=0.0008674879791215062), + ZeroShotClassificationOutputElement(label='positive', score=0.0005250611575320363) + ] + ``` + """ + + parameters = { + "candidate_labels": labels, + "multi_label": multi_label, + "hypothesis_template": hypothesis_template, + } + payload = _prepare_payload(text, parameters=parameters) + response = await self.post( + **payload, + task="zero-shot-classification", + model=model, + ) + output = _bytes_to_dict(response) + return [ + ZeroShotClassificationOutputElement.parse_obj_as_instance({"label": label, "score": score}) + for label, score in zip(output["labels"], output["scores"]) + ] + + async def zero_shot_image_classification( + self, + image: ContentT, + labels: List[str], + *, + model: Optional[str] = None, + hypothesis_template: Optional[str] = None, + ) -> List[ZeroShotImageClassificationOutputElement]: + """ + Provide input image and text labels to predict text labels for the image. + + Args: + image (`Union[str, Path, bytes, BinaryIO]`): + The input image to caption. It can be raw bytes, an image file, or a URL to an online image. + labels (`List[str]`): + List of string possible labels. There must be at least 2 labels. + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. If not provided, the default recommended zero-shot image classification model will be used. + hypothesis_template (`str`, *optional*): + The sentence used in conjunction with `labels` to attempt the text classification by replacing the + placeholder with the candidate labels. + Returns: + `List[ZeroShotImageClassificationOutputElement]`: List of [`ZeroShotImageClassificationOutputElement`] items containing the predicted labels and their confidence. + + Raises: + [`InferenceTimeoutError`]: + If the model is unavailable or the request times out. + `aiohttp.ClientResponseError`: + If the request fails with an HTTP error status code other than HTTP 503. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + + >>> await client.zero_shot_image_classification( + ... "https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg", + ... labels=["dog", "cat", "horse"], + ... ) + [ZeroShotImageClassificationOutputElement(label='dog', score=0.956),...] + ``` + """ + # Raise ValueError if input is less than 2 labels + if len(labels) < 2: + raise ValueError("You must specify at least 2 classes to compare.") + + inputs = {"image": _b64_encode(image), "candidateLabels": ",".join(labels)} + parameters = {"hypothesis_template": hypothesis_template} + payload = _prepare_payload(inputs, parameters=parameters) + response = await self.post( + **payload, + model=model, + task="zero-shot-image-classification", + ) + return ZeroShotImageClassificationOutputElement.parse_obj_as_list(response) + + def _get_client_session(self, headers: Optional[Dict] = None) -> "ClientSession": + aiohttp = _import_aiohttp() + client_headers = self.headers.copy() + if headers is not None: + client_headers.update(headers) + + # Return a new aiohttp ClientSession with correct settings. + session = aiohttp.ClientSession( + headers=client_headers, + cookies=self.cookies, + timeout=aiohttp.ClientTimeout(self.timeout), + trust_env=self.trust_env, + ) + + # Keep track of sessions to close them later + self._sessions[session] = set() + + # Override the `._request` method to register responses to be closed + session._wrapped_request = session._request + + async def _request(method, url, **kwargs): + response = await session._wrapped_request(method, url, **kwargs) + self._sessions[session].add(response) + return response + + session._request = _request + + # Override the 'close' method to + # 1. close ongoing responses + # 2. deregister the session when closed + session._close = session.close + + async def close_session(): + for response in self._sessions[session]: + response.close() + await session._close() + self._sessions.pop(session, None) + + session.close = close_session + return session + + def _resolve_url(self, model: Optional[str] = None, task: Optional[str] = None) -> str: + model = model or self.model or self.base_url + + # If model is already a URL, ignore `task` and return directly + if model is not None and (model.startswith("http://") or model.startswith("https://")): + return model + + # # If no model but task is set => fetch the recommended one for this task + if model is None: + if task is None: + raise ValueError( + "You must specify at least a model (repo_id or URL) or a task, either when instantiating" + " `InferenceClient` or when making a request." + ) + model = self.get_recommended_model(task) + logger.info( + f"Using recommended model {model} for task {task}. Note that it is" + f" encouraged to explicitly set `model='{model}'` as the recommended" + " models list might get updated without prior notice." + ) + + # Compute InferenceAPI url + return ( + # Feature-extraction and sentence-similarity are the only cases where we handle models with several tasks. + f"{INFERENCE_ENDPOINT}/pipeline/{task}/{model}" + if task in ("feature-extraction", "sentence-similarity") + # Otherwise, we use the default endpoint + else f"{INFERENCE_ENDPOINT}/models/{model}" + ) + + @staticmethod + def get_recommended_model(task: str) -> str: + """ + Get the model Hugging Face recommends for the input task. + + Args: + task (`str`): + The Hugging Face task to get which model Hugging Face recommends. + All available tasks can be found [here](https://huggingface.co/tasks). + + Returns: + `str`: Name of the model recommended for the input task. + + Raises: + `ValueError`: If Hugging Face has no recommendation for the input task. + """ + model = _fetch_recommended_models().get(task) + if model is None: + raise ValueError( + f"Task {task} has no recommended model. Please specify a model" + " explicitly. Visit https://huggingface.co/tasks for more info." + ) + return model + + async def get_endpoint_info(self, *, model: Optional[str] = None) -> Dict[str, Any]: + """ + Get information about the deployed endpoint. + + This endpoint is only available on endpoints powered by Text-Generation-Inference (TGI) or Text-Embedding-Inference (TEI). + Endpoints powered by `transformers` return an empty payload. + + Args: + model (`str`, *optional*): + The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed + Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + `Dict[str, Any]`: Information about the endpoint. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient("meta-llama/Meta-Llama-3-70B-Instruct") + >>> await client.get_endpoint_info() + { + 'model_id': 'meta-llama/Meta-Llama-3-70B-Instruct', + 'model_sha': None, + 'model_dtype': 'torch.float16', + 'model_device_type': 'cuda', + 'model_pipeline_tag': None, + 'max_concurrent_requests': 128, + 'max_best_of': 2, + 'max_stop_sequences': 4, + 'max_input_length': 8191, + 'max_total_tokens': 8192, + 'waiting_served_ratio': 0.3, + 'max_batch_total_tokens': 1259392, + 'max_waiting_tokens': 20, + 'max_batch_size': None, + 'validation_workers': 32, + 'max_client_batch_size': 4, + 'version': '2.0.2', + 'sha': 'dccab72549635c7eb5ddb17f43f0b7cdff07c214', + 'docker_label': 'sha-dccab72' + } + ``` + """ + model = model or self.model + if model is None: + raise ValueError("Model id not provided.") + if model.startswith(("http://", "https://")): + url = model.rstrip("/") + "/info" + else: + url = f"{INFERENCE_ENDPOINT}/models/{model}/info" + + async with self._get_client_session() as client: + response = await client.get(url, proxy=self.proxies) + response.raise_for_status() + return await response.json() + + async def health_check(self, model: Optional[str] = None) -> bool: + """ + Check the health of the deployed endpoint. + + Health check is only available with Inference Endpoints powered by Text-Generation-Inference (TGI) or Text-Embedding-Inference (TEI). + For Inference API, please use [`InferenceClient.get_model_status`] instead. + + Args: + model (`str`, *optional*): + URL of the Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None. + + Returns: + `bool`: True if everything is working fine. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient("https://jzgu0buei5.us-east-1.aws.endpoints.huggingface.cloud") + >>> await client.health_check() + True + ``` + """ + model = model or self.model + if model is None: + raise ValueError("Model id not provided.") + if not model.startswith(("http://", "https://")): + raise ValueError( + "Model must be an Inference Endpoint URL. For serverless Inference API, please use `InferenceClient.get_model_status`." + ) + url = model.rstrip("/") + "/health" + + async with self._get_client_session() as client: + response = await client.get(url, proxy=self.proxies) + return response.status == 200 + + async def get_model_status(self, model: Optional[str] = None) -> ModelStatus: + """ + Get the status of a model hosted on the Inference API. + + + + This endpoint is mostly useful when you already know which model you want to use and want to check its + availability. If you want to discover already deployed models, you should rather use [`~InferenceClient.list_deployed_models`]. + + + + Args: + model (`str`, *optional*): + Identifier of the model for witch the status gonna be checked. If model is not provided, + the model associated with this instance of [`InferenceClient`] will be used. Only InferenceAPI service can be checked so the + identifier cannot be a URL. + + + Returns: + [`ModelStatus`]: An instance of ModelStatus dataclass, containing information, + about the state of the model: load, state, compute type and framework. + + Example: + ```py + # Must be run in an async context + >>> from huggingface_hub import AsyncInferenceClient + >>> client = AsyncInferenceClient() + >>> await client.get_model_status("meta-llama/Meta-Llama-3-8B-Instruct") + ModelStatus(loaded=True, state='Loaded', compute_type='gpu', framework='text-generation-inference') + ``` + """ + model = model or self.model + if model is None: + raise ValueError("Model id not provided.") + if model.startswith("https://"): + raise NotImplementedError("Model status is only available for Inference API endpoints.") + url = f"{INFERENCE_ENDPOINT}/status/{model}" + + async with self._get_client_session() as client: + response = await client.get(url, proxy=self.proxies) + response.raise_for_status() + response_data = await response.json() + + if "error" in response_data: + raise ValueError(response_data["error"]) + + return ModelStatus( + loaded=response_data["loaded"], + state=response_data["state"], + compute_type=response_data["compute_type"], + framework=response_data["framework"], + ) + + @property + def chat(self) -> "ProxyClientChat": + return ProxyClientChat(self) + + +class _ProxyClient: + """Proxy class to be able to call `client.chat.completion.create(...)` as OpenAI client.""" + + def __init__(self, client: AsyncInferenceClient): + self._client = client + + +class ProxyClientChat(_ProxyClient): + """Proxy class to be able to call `client.chat.completion.create(...)` as OpenAI client.""" + + @property + def completions(self) -> "ProxyClientChatCompletions": + return ProxyClientChatCompletions(self._client) + + +class ProxyClientChatCompletions(_ProxyClient): + """Proxy class to be able to call `client.chat.completion.create(...)` as OpenAI client.""" + + @property + def create(self): + return self._client.chat_completion diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/__init__.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..caa46d05fc64d0ff634cd6616a0095d3f4a76d06 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/__init__.py @@ -0,0 +1,165 @@ +# This file is auto-generated by `utils/generate_inference_types.py`. +# Do not modify it manually. +# +# ruff: noqa: F401 + +from .audio_classification import ( + AudioClassificationInput, + AudioClassificationOutputElement, + AudioClassificationOutputTransform, + AudioClassificationParameters, +) +from .audio_to_audio import AudioToAudioInput, AudioToAudioOutputElement +from .automatic_speech_recognition import ( + AutomaticSpeechRecognitionEarlyStoppingEnum, + AutomaticSpeechRecognitionGenerationParameters, + AutomaticSpeechRecognitionInput, + AutomaticSpeechRecognitionOutput, + AutomaticSpeechRecognitionOutputChunk, + AutomaticSpeechRecognitionParameters, +) +from .base import BaseInferenceType +from .chat_completion import ( + ChatCompletionInput, + ChatCompletionInputFunctionDefinition, + ChatCompletionInputFunctionName, + ChatCompletionInputGrammarType, + ChatCompletionInputMessage, + ChatCompletionInputMessageChunk, + ChatCompletionInputStreamOptions, + ChatCompletionInputToolType, + ChatCompletionInputURL, + ChatCompletionOutput, + ChatCompletionOutputComplete, + ChatCompletionOutputFunctionDefinition, + ChatCompletionOutputLogprob, + ChatCompletionOutputLogprobs, + ChatCompletionOutputMessage, + ChatCompletionOutputToolCall, + ChatCompletionOutputTopLogprob, + ChatCompletionOutputUsage, + ChatCompletionStreamOutput, + ChatCompletionStreamOutputChoice, + ChatCompletionStreamOutputDelta, + ChatCompletionStreamOutputDeltaToolCall, + ChatCompletionStreamOutputFunction, + ChatCompletionStreamOutputLogprob, + ChatCompletionStreamOutputLogprobs, + ChatCompletionStreamOutputTopLogprob, + ChatCompletionStreamOutputUsage, + ToolElement, +) +from .depth_estimation import DepthEstimationInput, DepthEstimationOutput +from .document_question_answering import ( + DocumentQuestionAnsweringInput, + DocumentQuestionAnsweringInputData, + DocumentQuestionAnsweringOutputElement, + DocumentQuestionAnsweringParameters, +) +from .feature_extraction import FeatureExtractionInput +from .fill_mask import FillMaskInput, FillMaskOutputElement, FillMaskParameters +from .image_classification import ( + ImageClassificationInput, + ImageClassificationOutputElement, + ImageClassificationOutputTransform, + ImageClassificationParameters, +) +from .image_segmentation import ImageSegmentationInput, ImageSegmentationOutputElement, ImageSegmentationParameters +from .image_to_image import ImageToImageInput, ImageToImageOutput, ImageToImageParameters, ImageToImageTargetSize +from .image_to_text import ( + ImageToTextEarlyStoppingEnum, + ImageToTextGenerationParameters, + ImageToTextInput, + ImageToTextOutput, + ImageToTextParameters, +) +from .object_detection import ( + ObjectDetectionBoundingBox, + ObjectDetectionInput, + ObjectDetectionOutputElement, + ObjectDetectionParameters, +) +from .question_answering import ( + QuestionAnsweringInput, + QuestionAnsweringInputData, + QuestionAnsweringOutputElement, + QuestionAnsweringParameters, +) +from .sentence_similarity import SentenceSimilarityInput, SentenceSimilarityInputData +from .summarization import SummarizationInput, SummarizationOutput, SummarizationParameters +from .table_question_answering import ( + TableQuestionAnsweringInput, + TableQuestionAnsweringInputData, + TableQuestionAnsweringOutputElement, +) +from .text2text_generation import Text2TextGenerationInput, Text2TextGenerationOutput, Text2TextGenerationParameters +from .text_classification import ( + TextClassificationInput, + TextClassificationOutputElement, + TextClassificationOutputTransform, + TextClassificationParameters, +) +from .text_generation import ( + TextGenerationInput, + TextGenerationInputGenerateParameters, + TextGenerationInputGrammarType, + TextGenerationOutput, + TextGenerationOutputBestOfSequence, + TextGenerationOutputDetails, + TextGenerationOutputPrefillToken, + TextGenerationOutputToken, + TextGenerationStreamOutput, + TextGenerationStreamOutputStreamDetails, + TextGenerationStreamOutputToken, +) +from .text_to_audio import ( + TextToAudioEarlyStoppingEnum, + TextToAudioGenerationParameters, + TextToAudioInput, + TextToAudioOutput, + TextToAudioParameters, +) +from .text_to_image import TextToImageInput, TextToImageOutput, TextToImageParameters, TextToImageTargetSize +from .text_to_speech import ( + TextToSpeechEarlyStoppingEnum, + TextToSpeechGenerationParameters, + TextToSpeechInput, + TextToSpeechOutput, + TextToSpeechParameters, +) +from .token_classification import ( + TokenClassificationInput, + TokenClassificationOutputElement, + TokenClassificationParameters, +) +from .translation import TranslationInput, TranslationOutput, TranslationParameters +from .video_classification import ( + VideoClassificationInput, + VideoClassificationOutputElement, + VideoClassificationOutputTransform, + VideoClassificationParameters, +) +from .visual_question_answering import ( + VisualQuestionAnsweringInput, + VisualQuestionAnsweringInputData, + VisualQuestionAnsweringOutputElement, + VisualQuestionAnsweringParameters, +) +from .zero_shot_classification import ( + ZeroShotClassificationInput, + ZeroShotClassificationInputData, + ZeroShotClassificationOutputElement, + ZeroShotClassificationParameters, +) +from .zero_shot_image_classification import ( + ZeroShotImageClassificationInput, + ZeroShotImageClassificationInputData, + ZeroShotImageClassificationOutputElement, + ZeroShotImageClassificationParameters, +) +from .zero_shot_object_detection import ( + ZeroShotObjectDetectionBoundingBox, + ZeroShotObjectDetectionInput, + ZeroShotObjectDetectionInputData, + ZeroShotObjectDetectionOutputElement, +) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/audio_classification.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/audio_classification.py new file mode 100644 index 0000000000000000000000000000000000000000..f02447e3a2eea65f089de6f9ac9a3e9fcd9fe155 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/audio_classification.py @@ -0,0 +1,46 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Literal, Optional + +from .base import BaseInferenceType + + +AudioClassificationOutputTransform = Literal["sigmoid", "softmax", "none"] + + +@dataclass +class AudioClassificationParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Audio Classification + """ + + function_to_apply: Optional["AudioClassificationOutputTransform"] = None + """The function to apply to the output.""" + top_k: Optional[int] = None + """When specified, limits the output to the top K most probable classes.""" + + +@dataclass +class AudioClassificationInput(BaseInferenceType): + """Inputs for Audio Classification inference""" + + inputs: str + """The input audio data as a base64-encoded string. If no `parameters` are provided, you can + also provide the audio data as a raw bytes payload. + """ + parameters: Optional[AudioClassificationParameters] = None + """Additional inference parameters""" + + +@dataclass +class AudioClassificationOutputElement(BaseInferenceType): + """Outputs for Audio Classification inference""" + + label: str + """The predicted class label.""" + score: float + """The corresponding probability.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/audio_to_audio.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/audio_to_audio.py new file mode 100644 index 0000000000000000000000000000000000000000..4f473ed106c7d168784ae8e96db18f46237d065e --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/audio_to_audio.py @@ -0,0 +1,31 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any + +from .base import BaseInferenceType + + +@dataclass +class AudioToAudioInput(BaseInferenceType): + """Inputs for Audio to Audio inference""" + + inputs: Any + """The input audio data""" + + +@dataclass +class AudioToAudioOutputElement(BaseInferenceType): + """Outputs of inference for the Audio To Audio task + A generated audio file with its label. + """ + + blob: Any + """The generated audio file.""" + content_type: str + """The content type of audio file.""" + label: str + """The label of the audio file.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/base.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/base.py new file mode 100644 index 0000000000000000000000000000000000000000..e57b9e8c1e6c677b5b0ea6367e8db58212092014 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/base.py @@ -0,0 +1,140 @@ +# Copyright 2024 The HuggingFace Team. All rights reserved. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains a base class for all inference types.""" + +import inspect +import json +from dataclasses import asdict, dataclass +from typing import Any, Dict, List, Type, TypeVar, Union, get_args + + +T = TypeVar("T", bound="BaseInferenceType") + + +@dataclass +class BaseInferenceType(dict): + """Base class for all inference types. + + Object is a dataclass and a dict for backward compatibility but plan is to remove the dict part in the future. + + Handle parsing from dict, list and json strings in a permissive way to ensure future-compatibility (e.g. all fields + are made optional, and non-expected fields are added as dict attributes). + """ + + @classmethod + def parse_obj_as_list(cls: Type[T], data: Union[bytes, str, List, Dict]) -> List[T]: + """Alias to parse server response and return a single instance. + + See `parse_obj` for more details. + """ + output = cls.parse_obj(data) + if not isinstance(output, list): + raise ValueError(f"Invalid input data for {cls}. Expected a list, but got {type(output)}.") + return output + + @classmethod + def parse_obj_as_instance(cls: Type[T], data: Union[bytes, str, List, Dict]) -> T: + """Alias to parse server response and return a single instance. + + See `parse_obj` for more details. + """ + output = cls.parse_obj(data) + if isinstance(output, list): + raise ValueError(f"Invalid input data for {cls}. Expected a single instance, but got a list.") + return output + + @classmethod + def parse_obj(cls: Type[T], data: Union[bytes, str, List, Dict]) -> Union[List[T], T]: + """Parse server response as a dataclass or list of dataclasses. + + To enable future-compatibility, we want to handle cases where the server return more fields than expected. + In such cases, we don't want to raise an error but still create the dataclass object. Remaining fields are + added as dict attributes. + """ + # Parse server response (from bytes) + if isinstance(data, bytes): + data = data.decode() + if isinstance(data, str): + data = json.loads(data) + + # If a list, parse each item individually + if isinstance(data, List): + return [cls.parse_obj(d) for d in data] # type: ignore [misc] + + # At this point, we expect a dict + if not isinstance(data, dict): + raise ValueError(f"Invalid data type: {type(data)}") + + init_values = {} + other_values = {} + for key, value in data.items(): + key = normalize_key(key) + if key in cls.__dataclass_fields__ and cls.__dataclass_fields__[key].init: + if isinstance(value, dict) or isinstance(value, list): + field_type = cls.__dataclass_fields__[key].type + + # if `field_type` is a `BaseInferenceType`, parse it + if inspect.isclass(field_type) and issubclass(field_type, BaseInferenceType): + value = field_type.parse_obj(value) + + # otherwise, recursively parse nested dataclasses (if possible) + # `get_args` returns handle Union and Optional for us + else: + expected_types = get_args(field_type) + for expected_type in expected_types: + if getattr(expected_type, "_name", None) == "List": + expected_type = get_args(expected_type)[ + 0 + ] # assume same type for all items in the list + if inspect.isclass(expected_type) and issubclass(expected_type, BaseInferenceType): + value = expected_type.parse_obj(value) + break + init_values[key] = value + else: + other_values[key] = value + + # Make all missing fields default to None + # => ensure that dataclass initialization will never fail even if the server does not return all fields. + for key in cls.__dataclass_fields__: + if key not in init_values: + init_values[key] = None + + # Initialize dataclass with expected values + item = cls(**init_values) + + # Add remaining fields as dict attributes + item.update(other_values) + return item + + def __post_init__(self): + self.update(asdict(self)) + + def __setitem__(self, __key: Any, __value: Any) -> None: + # Hacky way to keep dataclass values in sync when dict is updated + super().__setitem__(__key, __value) + if __key in self.__dataclass_fields__ and getattr(self, __key, None) != __value: + self.__setattr__(__key, __value) + return + + def __setattr__(self, __name: str, __value: Any) -> None: + # Hacky way to keep dict values is sync when dataclass is updated + super().__setattr__(__name, __value) + if self.get(__name) != __value: + self[__name] = __value + return + + +def normalize_key(key: str) -> str: + # e.g "content-type" -> "content_type", "Accept" -> "accept" + return key.replace("-", "_").replace(" ", "_").lower() diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/document_question_answering.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/document_question_answering.py new file mode 100644 index 0000000000000000000000000000000000000000..c68be4bde00a98fbce46a2ef6a93bb549d4d920b --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/document_question_answering.py @@ -0,0 +1,85 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, List, Optional, Union + +from .base import BaseInferenceType + + +@dataclass +class DocumentQuestionAnsweringInputData(BaseInferenceType): + """One (document, question) pair to answer""" + + image: Any + """The image on which the question is asked""" + question: str + """A question to ask of the document""" + + +@dataclass +class DocumentQuestionAnsweringParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Document Question Answering + """ + + doc_stride: Optional[int] = None + """If the words in the document are too long to fit with the question for the model, it will + be split in several chunks with some overlap. This argument controls the size of that + overlap. + """ + handle_impossible_answer: Optional[bool] = None + """Whether to accept impossible as an answer""" + lang: Optional[str] = None + """Language to use while running OCR. Defaults to english.""" + max_answer_len: Optional[int] = None + """The maximum length of predicted answers (e.g., only answers with a shorter length are + considered). + """ + max_question_len: Optional[int] = None + """The maximum length of the question after tokenization. It will be truncated if needed.""" + max_seq_len: Optional[int] = None + """The maximum length of the total sentence (context + question) in tokens of each chunk + passed to the model. The context will be split in several chunks (using doc_stride as + overlap) if needed. + """ + top_k: Optional[int] = None + """The number of answers to return (will be chosen by order of likelihood). Can return less + than top_k answers if there are not enough options available within the context. + """ + word_boxes: Optional[List[Union[List[float], str]]] = None + """A list of words and bounding boxes (normalized 0->1000). If provided, the inference will + skip the OCR step and use the provided bounding boxes instead. + """ + + +@dataclass +class DocumentQuestionAnsweringInput(BaseInferenceType): + """Inputs for Document Question Answering inference""" + + inputs: DocumentQuestionAnsweringInputData + """One (document, question) pair to answer""" + parameters: Optional[DocumentQuestionAnsweringParameters] = None + """Additional inference parameters""" + + +@dataclass +class DocumentQuestionAnsweringOutputElement(BaseInferenceType): + """Outputs of inference for the Document Question Answering task""" + + answer: str + """The answer to the question.""" + end: int + """The end word index of the answer (in the OCR’d version of the input or provided word + boxes). + """ + score: float + """The probability associated to the answer.""" + start: int + """The start word index of the answer (in the OCR’d version of the input or provided word + boxes). + """ + words: List[int] + """The index of each word/box pair that is in the answer""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/feature_extraction.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/feature_extraction.py new file mode 100644 index 0000000000000000000000000000000000000000..e706269de1187056f98aad582498976597019f18 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/feature_extraction.py @@ -0,0 +1,37 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Literal, Optional + +from .base import BaseInferenceType + + +FeatureExtractionInputTruncationDirection = Literal["Left", "Right"] + + +@dataclass +class FeatureExtractionInput(BaseInferenceType): + """Feature Extraction Input. + Auto-generated from TEI specs. + For more details, check out + https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-tei-import.ts. + """ + + inputs: str + """The text to embed.""" + normalize: Optional[bool] = None + prompt_name: Optional[str] = None + """The name of the prompt that should be used by for encoding. If not set, no prompt + will be applied. + Must be a key in the `Sentence Transformers` configuration `prompts` dictionary. + For example if ``prompt_name`` is "query" and the ``prompts`` is {"query": "query: ", + ...}, + then the sentence "What is the capital of France?" will be encoded as + "query: What is the capital of France?" because the prompt text will be prepended before + any text to encode. + """ + truncate: Optional[bool] = None + truncation_direction: Optional["FeatureExtractionInputTruncationDirection"] = None diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_classification.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_classification.py new file mode 100644 index 0000000000000000000000000000000000000000..3f47bb0acd42ce3abe7bb6d5930b65007a23bb4b --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_classification.py @@ -0,0 +1,46 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Literal, Optional + +from .base import BaseInferenceType + + +ImageClassificationOutputTransform = Literal["sigmoid", "softmax", "none"] + + +@dataclass +class ImageClassificationParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Image Classification + """ + + function_to_apply: Optional["ImageClassificationOutputTransform"] = None + """The function to apply to the output.""" + top_k: Optional[int] = None + """When specified, limits the output to the top K most probable classes.""" + + +@dataclass +class ImageClassificationInput(BaseInferenceType): + """Inputs for Image Classification inference""" + + inputs: str + """The input image data as a base64-encoded string. If no `parameters` are provided, you can + also provide the image data as a raw bytes payload. + """ + parameters: Optional[ImageClassificationParameters] = None + """Additional inference parameters""" + + +@dataclass +class ImageClassificationOutputElement(BaseInferenceType): + """Outputs of inference for the Image Classification task""" + + label: str + """The predicted class label.""" + score: float + """The corresponding probability.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_segmentation.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_segmentation.py new file mode 100644 index 0000000000000000000000000000000000000000..25781059abef36f1c1bdeb1bcdfe696fab8dcf74 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_segmentation.py @@ -0,0 +1,54 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Literal, Optional + +from .base import BaseInferenceType + + +ImageSegmentationSubtask = Literal["instance", "panoptic", "semantic"] + + +@dataclass +class ImageSegmentationParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Image Segmentation + """ + + mask_threshold: Optional[float] = None + """Threshold to use when turning the predicted masks into binary values.""" + overlap_mask_area_threshold: Optional[float] = None + """Mask overlap threshold to eliminate small, disconnected segments.""" + subtask: Optional["ImageSegmentationSubtask"] = None + """Segmentation task to be performed, depending on model capabilities.""" + threshold: Optional[float] = None + """Probability threshold to filter out predicted masks.""" + + +@dataclass +class ImageSegmentationInput(BaseInferenceType): + """Inputs for Image Segmentation inference""" + + inputs: str + """The input image data as a base64-encoded string. If no `parameters` are provided, you can + also provide the image data as a raw bytes payload. + """ + parameters: Optional[ImageSegmentationParameters] = None + """Additional inference parameters""" + + +@dataclass +class ImageSegmentationOutputElement(BaseInferenceType): + """Outputs of inference for the Image Segmentation task + A predicted mask / segment + """ + + label: str + """The label of the predicted segment.""" + mask: str + """The corresponding mask as a black-and-white image (base64-encoded).""" + score: Optional[float] = None + """The score or confidence degree the model has.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_to_image.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_to_image.py new file mode 100644 index 0000000000000000000000000000000000000000..3bfe2983e397b574c775cc13c726ff96d10e0f7e --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/image_to_image.py @@ -0,0 +1,57 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, List, Optional + +from .base import BaseInferenceType + + +@dataclass +class ImageToImageTargetSize(BaseInferenceType): + """The size in pixel of the output image.""" + + height: int + width: int + + +@dataclass +class ImageToImageParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Image To Image + """ + + guidance_scale: Optional[float] = None + """For diffusion models. A higher guidance scale value encourages the model to generate + images closely linked to the text prompt at the expense of lower image quality. + """ + negative_prompt: Optional[List[str]] = None + """One or several prompt to guide what NOT to include in image generation.""" + num_inference_steps: Optional[int] = None + """For diffusion models. The number of denoising steps. More denoising steps usually lead to + a higher quality image at the expense of slower inference. + """ + target_size: Optional[ImageToImageTargetSize] = None + """The size in pixel of the output image.""" + + +@dataclass +class ImageToImageInput(BaseInferenceType): + """Inputs for Image To Image inference""" + + inputs: str + """The input image data as a base64-encoded string. If no `parameters` are provided, you can + also provide the image data as a raw bytes payload. + """ + parameters: Optional[ImageToImageParameters] = None + """Additional inference parameters""" + + +@dataclass +class ImageToImageOutput(BaseInferenceType): + """Outputs of inference for the Image To Image task""" + + image: Any + """The output image returned as raw bytes in the payload.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/summarization.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/summarization.py new file mode 100644 index 0000000000000000000000000000000000000000..7bc546b4cb86ba0f696256ef51cb9c994db453eb --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/summarization.py @@ -0,0 +1,44 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Dict, Literal, Optional + +from .base import BaseInferenceType + + +SummarizationTruncationStrategy = Literal["do_not_truncate", "longest_first", "only_first", "only_second"] + + +@dataclass +class SummarizationParameters(BaseInferenceType): + """Additional inference parameters. + Additional inference parameters for summarization. + """ + + clean_up_tokenization_spaces: Optional[bool] = None + """Whether to clean up the potential extra spaces in the text output.""" + generate_parameters: Optional[Dict[str, Any]] = None + """Additional parametrization of the text generation algorithm.""" + truncation: Optional["SummarizationTruncationStrategy"] = None + """The truncation strategy to use.""" + + +@dataclass +class SummarizationInput(BaseInferenceType): + """Inputs for Summarization inference""" + + inputs: str + """The input text to summarize.""" + parameters: Optional[SummarizationParameters] = None + """Additional inference parameters.""" + + +@dataclass +class SummarizationOutput(BaseInferenceType): + """Outputs of inference for the Summarization task""" + + summary_text: str + """The summarized text.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/table_question_answering.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/table_question_answering.py new file mode 100644 index 0000000000000000000000000000000000000000..6cb9fff641fd4ed2d8e797e59ae7b5f21f94c838 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/table_question_answering.py @@ -0,0 +1,45 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Dict, List, Optional + +from .base import BaseInferenceType + + +@dataclass +class TableQuestionAnsweringInputData(BaseInferenceType): + """One (table, question) pair to answer""" + + question: str + """The question to be answered about the table""" + table: Dict[str, List[str]] + """The table to serve as context for the questions""" + + +@dataclass +class TableQuestionAnsweringInput(BaseInferenceType): + """Inputs for Table Question Answering inference""" + + inputs: TableQuestionAnsweringInputData + """One (table, question) pair to answer""" + parameters: Optional[Dict[str, Any]] = None + """Additional inference parameters""" + + +@dataclass +class TableQuestionAnsweringOutputElement(BaseInferenceType): + """Outputs of inference for the Table Question Answering task""" + + answer: str + """The answer of the question given the table. If there is an aggregator, the answer will be + preceded by `AGGREGATOR >`. + """ + cells: List[str] + """List of strings made up of the answer cell values.""" + coordinates: List[List[int]] + """Coordinates of the cells of the answers.""" + aggregator: Optional[str] = None + """If the model has an aggregator, this returns the aggregator.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text2text_generation.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text2text_generation.py new file mode 100644 index 0000000000000000000000000000000000000000..955494c5ef6b86e12b3927dfd90e44a5db25c2e6 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text2text_generation.py @@ -0,0 +1,45 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Dict, Literal, Optional + +from .base import BaseInferenceType + + +Text2TextGenerationTruncationStrategy = Literal["do_not_truncate", "longest_first", "only_first", "only_second"] + + +@dataclass +class Text2TextGenerationParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Text2text Generation + """ + + clean_up_tokenization_spaces: Optional[bool] = None + """Whether to clean up the potential extra spaces in the text output.""" + generate_parameters: Optional[Dict[str, Any]] = None + """Additional parametrization of the text generation algorithm""" + truncation: Optional["Text2TextGenerationTruncationStrategy"] = None + """The truncation strategy to use""" + + +@dataclass +class Text2TextGenerationInput(BaseInferenceType): + """Inputs for Text2text Generation inference""" + + inputs: str + """The input text data""" + parameters: Optional[Text2TextGenerationParameters] = None + """Additional inference parameters""" + + +@dataclass +class Text2TextGenerationOutput(BaseInferenceType): + """Outputs of inference for the Text2text Generation task""" + + generated_text: Any + text2_text_generation_output_generated_text: Optional[str] = None + """The generated text.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_classification.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_classification.py new file mode 100644 index 0000000000000000000000000000000000000000..830fd6bbd16fdb4b8a6cbafc2cae7857f01ebccd --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_classification.py @@ -0,0 +1,48 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Literal, Optional + +from .base import BaseInferenceType + + +TextClassificationOutputTransform = Literal["sigmoid", "softmax", "none"] + + +@dataclass +class TextClassificationParameters(BaseInferenceType): + """ + Additional inference parameters for Text Classification. + """ + + function_to_apply: Optional["TextClassificationOutputTransform"] = None + """ + The function to apply to the output. + """ + top_k: Optional[int] = None + """ + When specified, limits the output to the top K most probable classes. + """ + + +@dataclass +class TextClassificationInput(BaseInferenceType): + """Inputs for Text Classification inference""" + + inputs: str + """The text to classify""" + parameters: Optional[TextClassificationParameters] = None + """Additional inference parameters""" + + +@dataclass +class TextClassificationOutputElement(BaseInferenceType): + """Outputs of inference for the Text Classification task""" + + label: str + """The predicted class label.""" + score: float + """The corresponding probability.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_generation.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_generation.py new file mode 100644 index 0000000000000000000000000000000000000000..5e902600d88a3fc2cc3343262a1d40d6b8d730a3 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_generation.py @@ -0,0 +1,169 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, List, Literal, Optional + +from .base import BaseInferenceType + + +TypeEnum = Literal["json", "regex"] + + +@dataclass +class TextGenerationInputGrammarType(BaseInferenceType): + type: "TypeEnum" + value: Any + """A string that represents a [JSON Schema](https://json-schema.org/). + JSON Schema is a declarative language that allows to annotate JSON documents + with types and descriptions. + """ + + +@dataclass +class TextGenerationInputGenerateParameters(BaseInferenceType): + adapter_id: Optional[str] = None + """Lora adapter id""" + best_of: Optional[int] = None + """Generate best_of sequences and return the one if the highest token logprobs.""" + decoder_input_details: Optional[bool] = None + """Whether to return decoder input token logprobs and ids.""" + details: Optional[bool] = None + """Whether to return generation details.""" + do_sample: Optional[bool] = None + """Activate logits sampling.""" + frequency_penalty: Optional[float] = None + """The parameter for frequency penalty. 1.0 means no penalty + Penalize new tokens based on their existing frequency in the text so far, + decreasing the model's likelihood to repeat the same line verbatim. + """ + grammar: Optional[TextGenerationInputGrammarType] = None + max_new_tokens: Optional[int] = None + """Maximum number of tokens to generate.""" + repetition_penalty: Optional[float] = None + """The parameter for repetition penalty. 1.0 means no penalty. + See [this paper](https://arxiv.org/pdf/1909.05858.pdf) for more details. + """ + return_full_text: Optional[bool] = None + """Whether to prepend the prompt to the generated text""" + seed: Optional[int] = None + """Random sampling seed.""" + stop: Optional[List[str]] = None + """Stop generating tokens if a member of `stop` is generated.""" + temperature: Optional[float] = None + """The value used to module the logits distribution.""" + top_k: Optional[int] = None + """The number of highest probability vocabulary tokens to keep for top-k-filtering.""" + top_n_tokens: Optional[int] = None + """The number of highest probability vocabulary tokens to keep for top-n-filtering.""" + top_p: Optional[float] = None + """Top-p value for nucleus sampling.""" + truncate: Optional[int] = None + """Truncate inputs tokens to the given size.""" + typical_p: Optional[float] = None + """Typical Decoding mass + See [Typical Decoding for Natural Language Generation](https://arxiv.org/abs/2202.00666) + for more information. + """ + watermark: Optional[bool] = None + """Watermarking with [A Watermark for Large Language + Models](https://arxiv.org/abs/2301.10226). + """ + + +@dataclass +class TextGenerationInput(BaseInferenceType): + """Text Generation Input. + Auto-generated from TGI specs. + For more details, check out + https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-tgi-import.ts. + """ + + inputs: str + parameters: Optional[TextGenerationInputGenerateParameters] = None + stream: Optional[bool] = None + + +TextGenerationOutputFinishReason = Literal["length", "eos_token", "stop_sequence"] + + +@dataclass +class TextGenerationOutputPrefillToken(BaseInferenceType): + id: int + logprob: float + text: str + + +@dataclass +class TextGenerationOutputToken(BaseInferenceType): + id: int + logprob: float + special: bool + text: str + + +@dataclass +class TextGenerationOutputBestOfSequence(BaseInferenceType): + finish_reason: "TextGenerationOutputFinishReason" + generated_text: str + generated_tokens: int + prefill: List[TextGenerationOutputPrefillToken] + tokens: List[TextGenerationOutputToken] + seed: Optional[int] = None + top_tokens: Optional[List[List[TextGenerationOutputToken]]] = None + + +@dataclass +class TextGenerationOutputDetails(BaseInferenceType): + finish_reason: "TextGenerationOutputFinishReason" + generated_tokens: int + prefill: List[TextGenerationOutputPrefillToken] + tokens: List[TextGenerationOutputToken] + best_of_sequences: Optional[List[TextGenerationOutputBestOfSequence]] = None + seed: Optional[int] = None + top_tokens: Optional[List[List[TextGenerationOutputToken]]] = None + + +@dataclass +class TextGenerationOutput(BaseInferenceType): + """Text Generation Output. + Auto-generated from TGI specs. + For more details, check out + https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-tgi-import.ts. + """ + + generated_text: str + details: Optional[TextGenerationOutputDetails] = None + + +@dataclass +class TextGenerationStreamOutputStreamDetails(BaseInferenceType): + finish_reason: "TextGenerationOutputFinishReason" + generated_tokens: int + input_length: int + seed: Optional[int] = None + + +@dataclass +class TextGenerationStreamOutputToken(BaseInferenceType): + id: int + logprob: float + special: bool + text: str + + +@dataclass +class TextGenerationStreamOutput(BaseInferenceType): + """Text Generation Stream Output. + Auto-generated from TGI specs. + For more details, check out + https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-tgi-import.ts. + """ + + index: int + token: TextGenerationStreamOutputToken + details: Optional[TextGenerationStreamOutputStreamDetails] = None + generated_text: Optional[str] = None + top_tokens: Optional[List[TextGenerationStreamOutputToken]] = None diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_to_audio.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_to_audio.py new file mode 100644 index 0000000000000000000000000000000000000000..e9a26d0431211e5112bbaf445a92d6e2fed17b26 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_to_audio.py @@ -0,0 +1,105 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Literal, Optional, Union + +from .base import BaseInferenceType + + +TextToAudioEarlyStoppingEnum = Literal["never"] + + +@dataclass +class TextToAudioGenerationParameters(BaseInferenceType): + """Parametrization of the text generation process + Ad-hoc parametrization of the text generation process + """ + + do_sample: Optional[bool] = None + """Whether to use sampling instead of greedy decoding when generating new tokens.""" + early_stopping: Optional[Union[bool, "TextToAudioEarlyStoppingEnum"]] = None + """Controls the stopping condition for beam-based methods.""" + epsilon_cutoff: Optional[float] = None + """If set to float strictly between 0 and 1, only tokens with a conditional probability + greater than epsilon_cutoff will be sampled. In the paper, suggested values range from + 3e-4 to 9e-4, depending on the size of the model. See [Truncation Sampling as Language + Model Desmoothing](https://hf.co/papers/2210.15191) for more details. + """ + eta_cutoff: Optional[float] = None + """Eta sampling is a hybrid of locally typical sampling and epsilon sampling. If set to + float strictly between 0 and 1, a token is only considered if it is greater than either + eta_cutoff or sqrt(eta_cutoff) * exp(-entropy(softmax(next_token_logits))). The latter + term is intuitively the expected next token probability, scaled by sqrt(eta_cutoff). In + the paper, suggested values range from 3e-4 to 2e-3, depending on the size of the model. + See [Truncation Sampling as Language Model Desmoothing](https://hf.co/papers/2210.15191) + for more details. + """ + max_length: Optional[int] = None + """The maximum length (in tokens) of the generated text, including the input.""" + max_new_tokens: Optional[int] = None + """The maximum number of tokens to generate. Takes precedence over maxLength.""" + min_length: Optional[int] = None + """The minimum length (in tokens) of the generated text, including the input.""" + min_new_tokens: Optional[int] = None + """The minimum number of tokens to generate. Takes precedence over maxLength.""" + num_beam_groups: Optional[int] = None + """Number of groups to divide num_beams into in order to ensure diversity among different + groups of beams. See [this paper](https://hf.co/papers/1610.02424) for more details. + """ + num_beams: Optional[int] = None + """Number of beams to use for beam search.""" + penalty_alpha: Optional[float] = None + """The value balances the model confidence and the degeneration penalty in contrastive + search decoding. + """ + temperature: Optional[float] = None + """The value used to modulate the next token probabilities.""" + top_k: Optional[int] = None + """The number of highest probability vocabulary tokens to keep for top-k-filtering.""" + top_p: Optional[float] = None + """If set to float < 1, only the smallest set of most probable tokens with probabilities + that add up to top_p or higher are kept for generation. + """ + typical_p: Optional[float] = None + """Local typicality measures how similar the conditional probability of predicting a target + token next is to the expected conditional probability of predicting a random token next, + given the partial text already generated. If set to float < 1, the smallest set of the + most locally typical tokens with probabilities that add up to typical_p or higher are + kept for generation. See [this paper](https://hf.co/papers/2202.00666) for more details. + """ + use_cache: Optional[bool] = None + """Whether the model should use the past last key/values attentions to speed up decoding""" + + +@dataclass +class TextToAudioParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Text To Audio + """ + + generate: Optional[TextToAudioGenerationParameters] = None + """Parametrization of the text generation process""" + + +@dataclass +class TextToAudioInput(BaseInferenceType): + """Inputs for Text To Audio inference""" + + inputs: str + """The input text data""" + parameters: Optional[TextToAudioParameters] = None + """Additional inference parameters""" + + +@dataclass +class TextToAudioOutput(BaseInferenceType): + """Outputs of inference for the Text To Audio task""" + + audio: Any + """The generated audio waveform.""" + sampling_rate: Any + text_to_audio_output_sampling_rate: Optional[float] = None + """The sampling rate of the generated audio waveform.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_to_speech.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_to_speech.py new file mode 100644 index 0000000000000000000000000000000000000000..fa96e885eed38d377e7fb90971f8f0d641ceee9b --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/text_to_speech.py @@ -0,0 +1,107 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Literal, Optional, Union + +from .base import BaseInferenceType + + +TextToSpeechEarlyStoppingEnum = Literal["never"] + + +@dataclass +class TextToSpeechGenerationParameters(BaseInferenceType): + """Parametrization of the text generation process + Ad-hoc parametrization of the text generation process + """ + + do_sample: Optional[bool] = None + """Whether to use sampling instead of greedy decoding when generating new tokens.""" + early_stopping: Optional[Union[bool, "TextToSpeechEarlyStoppingEnum"]] = None + """Controls the stopping condition for beam-based methods.""" + epsilon_cutoff: Optional[float] = None + """If set to float strictly between 0 and 1, only tokens with a conditional probability + greater than epsilon_cutoff will be sampled. In the paper, suggested values range from + 3e-4 to 9e-4, depending on the size of the model. See [Truncation Sampling as Language + Model Desmoothing](https://hf.co/papers/2210.15191) for more details. + """ + eta_cutoff: Optional[float] = None + """Eta sampling is a hybrid of locally typical sampling and epsilon sampling. If set to + float strictly between 0 and 1, a token is only considered if it is greater than either + eta_cutoff or sqrt(eta_cutoff) * exp(-entropy(softmax(next_token_logits))). The latter + term is intuitively the expected next token probability, scaled by sqrt(eta_cutoff). In + the paper, suggested values range from 3e-4 to 2e-3, depending on the size of the model. + See [Truncation Sampling as Language Model Desmoothing](https://hf.co/papers/2210.15191) + for more details. + """ + max_length: Optional[int] = None + """The maximum length (in tokens) of the generated text, including the input.""" + max_new_tokens: Optional[int] = None + """The maximum number of tokens to generate. Takes precedence over maxLength.""" + min_length: Optional[int] = None + """The minimum length (in tokens) of the generated text, including the input.""" + min_new_tokens: Optional[int] = None + """The minimum number of tokens to generate. Takes precedence over maxLength.""" + num_beam_groups: Optional[int] = None + """Number of groups to divide num_beams into in order to ensure diversity among different + groups of beams. See [this paper](https://hf.co/papers/1610.02424) for more details. + """ + num_beams: Optional[int] = None + """Number of beams to use for beam search.""" + penalty_alpha: Optional[float] = None + """The value balances the model confidence and the degeneration penalty in contrastive + search decoding. + """ + temperature: Optional[float] = None + """The value used to modulate the next token probabilities.""" + top_k: Optional[int] = None + """The number of highest probability vocabulary tokens to keep for top-k-filtering.""" + top_p: Optional[float] = None + """If set to float < 1, only the smallest set of most probable tokens with probabilities + that add up to top_p or higher are kept for generation. + """ + typical_p: Optional[float] = None + """Local typicality measures how similar the conditional probability of predicting a target + token next is to the expected conditional probability of predicting a random token next, + given the partial text already generated. If set to float < 1, the smallest set of the + most locally typical tokens with probabilities that add up to typical_p or higher are + kept for generation. See [this paper](https://hf.co/papers/2202.00666) for more details. + """ + use_cache: Optional[bool] = None + """Whether the model should use the past last key/values attentions to speed up decoding""" + + +@dataclass +class TextToSpeechParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Text To Speech + """ + + generate: Optional[TextToSpeechGenerationParameters] = None + """Parametrization of the text generation process""" + + +@dataclass +class TextToSpeechInput(BaseInferenceType): + """Inputs for Text To Speech inference""" + + inputs: str + """The input text data""" + parameters: Optional[TextToSpeechParameters] = None + """Additional inference parameters""" + + +@dataclass +class TextToSpeechOutput(BaseInferenceType): + """Outputs for Text to Speech inference + Outputs of inference for the Text To Audio task + """ + + audio: Any + """The generated audio waveform.""" + sampling_rate: Any + text_to_speech_output_sampling_rate: Optional[float] = None + """The sampling rate of the generated audio waveform.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/video_classification.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/video_classification.py new file mode 100644 index 0000000000000000000000000000000000000000..a32249dc1210576162e4c46ac37b0e1e2d57c6e5 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/video_classification.py @@ -0,0 +1,47 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Literal, Optional + +from .base import BaseInferenceType + + +VideoClassificationOutputTransform = Literal["sigmoid", "softmax", "none"] + + +@dataclass +class VideoClassificationParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Video Classification + """ + + frame_sampling_rate: Optional[int] = None + """The sampling rate used to select frames from the video.""" + function_to_apply: Optional["VideoClassificationOutputTransform"] = None + num_frames: Optional[int] = None + """The number of sampled frames to consider for classification.""" + top_k: Optional[int] = None + """When specified, limits the output to the top K most probable classes.""" + + +@dataclass +class VideoClassificationInput(BaseInferenceType): + """Inputs for Video Classification inference""" + + inputs: Any + """The input video data""" + parameters: Optional[VideoClassificationParameters] = None + """Additional inference parameters""" + + +@dataclass +class VideoClassificationOutputElement(BaseInferenceType): + """Outputs of inference for the Video Classification task""" + + label: str + """The predicted class label.""" + score: float + """The corresponding probability.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/zero_shot_classification.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/zero_shot_classification.py new file mode 100644 index 0000000000000000000000000000000000000000..6c55ebf218ca3314993aacd7eaa8c1910b5ab63e --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/zero_shot_classification.py @@ -0,0 +1,56 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import List, Optional + +from .base import BaseInferenceType + + +@dataclass +class ZeroShotClassificationInputData(BaseInferenceType): + """The input text data, with candidate labels""" + + candidate_labels: List[str] + """The set of possible class labels to classify the text into.""" + text: str + """The text to classify""" + + +@dataclass +class ZeroShotClassificationParameters(BaseInferenceType): + """Additional inference parameters + Additional inference parameters for Zero Shot Classification + """ + + hypothesis_template: Optional[str] = None + """The sentence used in conjunction with candidateLabels to attempt the text classification + by replacing the placeholder with the candidate labels. + """ + multi_label: Optional[bool] = None + """Whether multiple candidate labels can be true. If false, the scores are normalized such + that the sum of the label likelihoods for each sequence is 1. If true, the labels are + considered independent and probabilities are normalized for each candidate. + """ + + +@dataclass +class ZeroShotClassificationInput(BaseInferenceType): + """Inputs for Zero Shot Classification inference""" + + inputs: ZeroShotClassificationInputData + """The input text data, with candidate labels""" + parameters: Optional[ZeroShotClassificationParameters] = None + """Additional inference parameters""" + + +@dataclass +class ZeroShotClassificationOutputElement(BaseInferenceType): + """Outputs of inference for the Zero Shot Classification task""" + + label: str + """The predicted class label.""" + score: float + """The corresponding probability.""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/zero_shot_object_detection.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/zero_shot_object_detection.py new file mode 100644 index 0000000000000000000000000000000000000000..42a21568c9c652eb307cf2bd44ee9aa06ab4df7b --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference/_generated/types/zero_shot_object_detection.py @@ -0,0 +1,55 @@ +# Inference code generated from the JSON schema spec in @huggingface/tasks. +# +# See: +# - script: https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/scripts/inference-codegen.ts +# - specs: https://github.com/huggingface/huggingface.js/tree/main/packages/tasks/src/tasks. +from dataclasses import dataclass +from typing import Any, Dict, List, Optional + +from .base import BaseInferenceType + + +@dataclass +class ZeroShotObjectDetectionInputData(BaseInferenceType): + """The input image data, with candidate labels""" + + candidate_labels: List[str] + """The candidate labels for this image""" + image: Any + """The image data to generate bounding boxes from""" + + +@dataclass +class ZeroShotObjectDetectionInput(BaseInferenceType): + """Inputs for Zero Shot Object Detection inference""" + + inputs: ZeroShotObjectDetectionInputData + """The input image data, with candidate labels""" + parameters: Optional[Dict[str, Any]] = None + """Additional inference parameters""" + + +@dataclass +class ZeroShotObjectDetectionBoundingBox(BaseInferenceType): + """The predicted bounding box. Coordinates are relative to the top left corner of the input + image. + """ + + xmax: int + xmin: int + ymax: int + ymin: int + + +@dataclass +class ZeroShotObjectDetectionOutputElement(BaseInferenceType): + """Outputs of inference for the Zero Shot Object Detection task""" + + box: ZeroShotObjectDetectionBoundingBox + """The predicted bounding box. Coordinates are relative to the top left corner of the input + image. + """ + label: str + """A candidate label""" + score: float + """The associated score / probability""" diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference_api.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference_api.py new file mode 100644 index 0000000000000000000000000000000000000000..f895fcc61c3867838b013ecd3f6789cbc010b5b3 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/inference_api.py @@ -0,0 +1,217 @@ +import io +from typing import Any, Dict, List, Optional, Union + +from . import constants +from .hf_api import HfApi +from .utils import build_hf_headers, get_session, is_pillow_available, logging, validate_hf_hub_args +from .utils._deprecation import _deprecate_method + + +logger = logging.get_logger(__name__) + + +ALL_TASKS = [ + # NLP + "text-classification", + "token-classification", + "table-question-answering", + "question-answering", + "zero-shot-classification", + "translation", + "summarization", + "conversational", + "feature-extraction", + "text-generation", + "text2text-generation", + "fill-mask", + "sentence-similarity", + # Audio + "text-to-speech", + "automatic-speech-recognition", + "audio-to-audio", + "audio-classification", + "voice-activity-detection", + # Computer vision + "image-classification", + "object-detection", + "image-segmentation", + "text-to-image", + "image-to-image", + # Others + "tabular-classification", + "tabular-regression", +] + + +class InferenceApi: + """Client to configure requests and make calls to the HuggingFace Inference API. + + Example: + + ```python + >>> from huggingface_hub.inference_api import InferenceApi + + >>> # Mask-fill example + >>> inference = InferenceApi("bert-base-uncased") + >>> inference(inputs="The goal of life is [MASK].") + [{'sequence': 'the goal of life is life.', 'score': 0.10933292657136917, 'token': 2166, 'token_str': 'life'}] + + >>> # Question Answering example + >>> inference = InferenceApi("deepset/roberta-base-squad2") + >>> inputs = { + ... "question": "What's my name?", + ... "context": "My name is Clara and I live in Berkeley.", + ... } + >>> inference(inputs) + {'score': 0.9326569437980652, 'start': 11, 'end': 16, 'answer': 'Clara'} + + >>> # Zero-shot example + >>> inference = InferenceApi("typeform/distilbert-base-uncased-mnli") + >>> inputs = "Hi, I recently bought a device from your company but it is not working as advertised and I would like to get reimbursed!" + >>> params = {"candidate_labels": ["refund", "legal", "faq"]} + >>> inference(inputs, params) + {'sequence': 'Hi, I recently bought a device from your company but it is not working as advertised and I would like to get reimbursed!', 'labels': ['refund', 'faq', 'legal'], 'scores': [0.9378499388694763, 0.04914155602455139, 0.013008488342165947]} + + >>> # Overriding configured task + >>> inference = InferenceApi("bert-base-uncased", task="feature-extraction") + + >>> # Text-to-image + >>> inference = InferenceApi("stabilityai/stable-diffusion-2-1") + >>> inference("cat") + + + >>> # Return as raw response to parse the output yourself + >>> inference = InferenceApi("mio/amadeus") + >>> response = inference("hello world", raw_response=True) + >>> response.headers + {"Content-Type": "audio/flac", ...} + >>> response.content # raw bytes from server + b'(...)' + ``` + """ + + @validate_hf_hub_args + @_deprecate_method( + version="1.0", + message=( + "`InferenceApi` client is deprecated in favor of the more feature-complete `InferenceClient`. Check out" + " this guide to learn how to convert your script to use it:" + " https://huggingface.co/docs/huggingface_hub/guides/inference#legacy-inferenceapi-client." + ), + ) + def __init__( + self, + repo_id: str, + task: Optional[str] = None, + token: Optional[str] = None, + gpu: bool = False, + ): + """Inits headers and API call information. + + Args: + repo_id (``str``): + Id of repository (e.g. `user/bert-base-uncased`). + task (``str``, `optional`, defaults ``None``): + Whether to force a task instead of using task specified in the + repository. + token (`str`, `optional`): + The API token to use as HTTP bearer authorization. This is not + the authentication token. You can find the token in + https://huggingface.co/settings/token. Alternatively, you can + find both your organizations and personal API tokens using + `HfApi().whoami(token)`. + gpu (`bool`, `optional`, defaults `False`): + Whether to use GPU instead of CPU for inference(requires Startup + plan at least). + """ + self.options = {"wait_for_model": True, "use_gpu": gpu} + self.headers = build_hf_headers(token=token) + + # Configure task + model_info = HfApi(token=token).model_info(repo_id=repo_id) + if not model_info.pipeline_tag and not task: + raise ValueError( + "Task not specified in the repository. Please add it to the model card" + " using pipeline_tag" + " (https://huggingface.co/docs#how-is-a-models-type-of-inference-api-and-widget-determined)" + ) + + if task and task != model_info.pipeline_tag: + if task not in ALL_TASKS: + raise ValueError(f"Invalid task {task}. Make sure it's valid.") + + logger.warning( + "You're using a different task than the one specified in the" + " repository. Be sure to know what you're doing :)" + ) + self.task = task + else: + assert model_info.pipeline_tag is not None, "Pipeline tag cannot be None" + self.task = model_info.pipeline_tag + + self.api_url = f"{constants.INFERENCE_ENDPOINT}/pipeline/{self.task}/{repo_id}" + + def __repr__(self): + # Do not add headers to repr to avoid leaking token. + return f"InferenceAPI(api_url='{self.api_url}', task='{self.task}', options={self.options})" + + def __call__( + self, + inputs: Optional[Union[str, Dict, List[str], List[List[str]]]] = None, + params: Optional[Dict] = None, + data: Optional[bytes] = None, + raw_response: bool = False, + ) -> Any: + """Make a call to the Inference API. + + Args: + inputs (`str` or `Dict` or `List[str]` or `List[List[str]]`, *optional*): + Inputs for the prediction. + params (`Dict`, *optional*): + Additional parameters for the models. Will be sent as `parameters` in the + payload. + data (`bytes`, *optional*): + Bytes content of the request. In this case, leave `inputs` and `params` empty. + raw_response (`bool`, defaults to `False`): + If `True`, the raw `Response` object is returned. You can parse its content + as preferred. By default, the content is parsed into a more practical format + (json dictionary or PIL Image for example). + """ + # Build payload + payload: Dict[str, Any] = { + "options": self.options, + } + if inputs: + payload["inputs"] = inputs + if params: + payload["parameters"] = params + + # Make API call + response = get_session().post(self.api_url, headers=self.headers, json=payload, data=data) + + # Let the user handle the response + if raw_response: + return response + + # By default, parse the response for the user. + content_type = response.headers.get("Content-Type") or "" + if content_type.startswith("image"): + if not is_pillow_available(): + raise ImportError( + f"Task '{self.task}' returned as image but Pillow is not installed." + " Please install it (`pip install Pillow`) or pass" + " `raw_response=True` to get the raw `Response` object and parse" + " the image by yourself." + ) + + from PIL import Image + + return Image.open(io.BytesIO(response.content)) + elif content_type == "application/json": + return response.json() + else: + raise NotImplementedError( + f"{content_type} output type is not implemented yet. You can pass" + " `raw_response=True` to get the raw `Response` object and parse the" + " output by yourself." + ) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/keras_mixin.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/keras_mixin.py new file mode 100644 index 0000000000000000000000000000000000000000..f5d9edf37af27a061c0f4088c6f7ed87ec8aa962 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/keras_mixin.py @@ -0,0 +1,499 @@ +import collections.abc as collections +import json +import os +import warnings +from functools import wraps +from pathlib import Path +from shutil import copytree +from typing import Any, Dict, List, Optional, Union + +from huggingface_hub import ModelHubMixin, snapshot_download +from huggingface_hub.utils import ( + get_tf_version, + is_graphviz_available, + is_pydot_available, + is_tf_available, + yaml_dump, +) + +from . import constants +from .hf_api import HfApi +from .utils import SoftTemporaryDirectory, logging, validate_hf_hub_args +from .utils._typing import CallableT + + +logger = logging.get_logger(__name__) + +keras = None +if is_tf_available(): + # Depending on which version of TensorFlow is installed, we need to import + # keras from the correct location. + # See https://github.com/tensorflow/tensorflow/releases/tag/v2.16.1. + # Note: saving a keras model only works with Keras<3.0. + try: + import tf_keras as keras # type: ignore + except ImportError: + import tensorflow as tf # type: ignore + + keras = tf.keras + + +def _requires_keras_2_model(fn: CallableT) -> CallableT: + # Wrapper to raise if user tries to save a Keras 3.x model + @wraps(fn) + def _inner(model, *args, **kwargs): + if not hasattr(model, "history"): # hacky way to check if model is Keras 2.x + raise NotImplementedError( + f"Cannot use '{fn.__name__}': Keras 3.x is not supported." + " Please save models manually and upload them using `upload_folder` or `huggingface-cli upload`." + ) + return fn(model, *args, **kwargs) + + return _inner # type: ignore [return-value] + + +def _flatten_dict(dictionary, parent_key=""): + """Flatten a nested dictionary. + Reference: https://stackoverflow.com/a/6027615/10319735 + + Args: + dictionary (`dict`): + The nested dictionary to be flattened. + parent_key (`str`): + The parent key to be prefixed to the children keys. + Necessary for recursing over the nested dictionary. + + Returns: + The flattened dictionary. + """ + items = [] + for key, value in dictionary.items(): + new_key = f"{parent_key}.{key}" if parent_key else key + if isinstance(value, collections.MutableMapping): + items.extend( + _flatten_dict( + value, + new_key, + ).items() + ) + else: + items.append((new_key, value)) + return dict(items) + + +def _create_hyperparameter_table(model): + """Parse hyperparameter dictionary into a markdown table.""" + table = None + if model.optimizer is not None: + optimizer_params = model.optimizer.get_config() + # flatten the configuration + optimizer_params = _flatten_dict(optimizer_params) + optimizer_params["training_precision"] = keras.mixed_precision.global_policy().name + table = "| Hyperparameters | Value |\n| :-- | :-- |\n" + for key, value in optimizer_params.items(): + table += f"| {key} | {value} |\n" + return table + + +def _plot_network(model, save_directory): + keras.utils.plot_model( + model, + to_file=f"{save_directory}/model.png", + show_shapes=False, + show_dtype=False, + show_layer_names=True, + rankdir="TB", + expand_nested=False, + dpi=96, + layer_range=None, + ) + + +def _create_model_card( + model, + repo_dir: Path, + plot_model: bool = True, + metadata: Optional[dict] = None, +): + """ + Creates a model card for the repository. + + Do not overwrite an existing README.md file. + """ + readme_path = repo_dir / "README.md" + if readme_path.exists(): + return + + hyperparameters = _create_hyperparameter_table(model) + if plot_model and is_graphviz_available() and is_pydot_available(): + _plot_network(model, repo_dir) + if metadata is None: + metadata = {} + metadata["library_name"] = "keras" + model_card: str = "---\n" + model_card += yaml_dump(metadata, default_flow_style=False) + model_card += "---\n" + model_card += "\n## Model description\n\nMore information needed\n" + model_card += "\n## Intended uses & limitations\n\nMore information needed\n" + model_card += "\n## Training and evaluation data\n\nMore information needed\n" + if hyperparameters is not None: + model_card += "\n## Training procedure\n" + model_card += "\n### Training hyperparameters\n" + model_card += "\nThe following hyperparameters were used during training:\n\n" + model_card += hyperparameters + model_card += "\n" + if plot_model and os.path.exists(f"{repo_dir}/model.png"): + model_card += "\n ## Model Plot\n" + model_card += "\n
" + model_card += "\nView Model Plot\n" + path_to_plot = "./model.png" + model_card += f"\n![Model Image]({path_to_plot})\n" + model_card += "\n
" + + readme_path.write_text(model_card) + + +@_requires_keras_2_model +def save_pretrained_keras( + model, + save_directory: Union[str, Path], + config: Optional[Dict[str, Any]] = None, + include_optimizer: bool = False, + plot_model: bool = True, + tags: Optional[Union[list, str]] = None, + **model_save_kwargs, +): + """ + Saves a Keras model to save_directory in SavedModel format. Use this if + you're using the Functional or Sequential APIs. + + Args: + model (`Keras.Model`): + The [Keras + model](https://www.tensorflow.org/api_docs/python/tf/keras/Model) + you'd like to save. The model must be compiled and built. + save_directory (`str` or `Path`): + Specify directory in which you want to save the Keras model. + config (`dict`, *optional*): + Configuration object to be saved alongside the model weights. + include_optimizer(`bool`, *optional*, defaults to `False`): + Whether or not to include optimizer in serialization. + plot_model (`bool`, *optional*, defaults to `True`): + Setting this to `True` will plot the model and put it in the model + card. Requires graphviz and pydot to be installed. + tags (Union[`str`,`list`], *optional*): + List of tags that are related to model or string of a single tag. See example tags + [here](https://github.com/huggingface/hub-docs/blob/main/modelcard.md?plain=1). + model_save_kwargs(`dict`, *optional*): + model_save_kwargs will be passed to + [`tf.keras.models.save_model()`](https://www.tensorflow.org/api_docs/python/tf/keras/models/save_model). + """ + if keras is None: + raise ImportError("Called a Tensorflow-specific function but could not import it.") + + if not model.built: + raise ValueError("Model should be built before trying to save") + + save_directory = Path(save_directory) + save_directory.mkdir(parents=True, exist_ok=True) + + # saving config + if config: + if not isinstance(config, dict): + raise RuntimeError(f"Provided config to save_pretrained_keras should be a dict. Got: '{type(config)}'") + + with (save_directory / constants.CONFIG_NAME).open("w") as f: + json.dump(config, f) + + metadata = {} + if isinstance(tags, list): + metadata["tags"] = tags + elif isinstance(tags, str): + metadata["tags"] = [tags] + + task_name = model_save_kwargs.pop("task_name", None) + if task_name is not None: + warnings.warn( + "`task_name` input argument is deprecated. Pass `tags` instead.", + FutureWarning, + ) + if "tags" in metadata: + metadata["tags"].append(task_name) + else: + metadata["tags"] = [task_name] + + if model.history is not None: + if model.history.history != {}: + path = save_directory / "history.json" + if path.exists(): + warnings.warn( + "`history.json` file already exists, it will be overwritten by the history of this version.", + UserWarning, + ) + with path.open("w", encoding="utf-8") as f: + json.dump(model.history.history, f, indent=2, sort_keys=True) + + _create_model_card(model, save_directory, plot_model, metadata) + keras.models.save_model(model, save_directory, include_optimizer=include_optimizer, **model_save_kwargs) + + +def from_pretrained_keras(*args, **kwargs) -> "KerasModelHubMixin": + r""" + Instantiate a pretrained Keras model from a pre-trained model from the Hub. + The model is expected to be in `SavedModel` format. + + Args: + pretrained_model_name_or_path (`str` or `os.PathLike`): + Can be either: + - A string, the `model id` of a pretrained model hosted inside a + model repo on huggingface.co. Valid model ids can be located + at the root-level, like `bert-base-uncased`, or namespaced + under a user or organization name, like + `dbmdz/bert-base-german-cased`. + - You can add `revision` by appending `@` at the end of model_id + simply like this: `dbmdz/bert-base-german-cased@main` Revision + is the specific model version to use. It can be a branch name, + a tag name, or a commit id, since we use a git-based system + for storing models and other artifacts on huggingface.co, so + `revision` can be any identifier allowed by git. + - A path to a `directory` containing model weights saved using + [`~transformers.PreTrainedModel.save_pretrained`], e.g., + `./my_model_directory/`. + - `None` if you are both providing the configuration and state + dictionary (resp. with keyword arguments `config` and + `state_dict`). + force_download (`bool`, *optional*, defaults to `False`): + Whether to force the (re-)download of the model weights and + configuration files, overriding the cached versions if they exist. + proxies (`Dict[str, str]`, *optional*): + A dictionary of proxy servers to use by protocol or endpoint, e.g., + `{'http': 'foo.bar:3128', 'http://hostname': 'foo.bar:4012'}`. The + proxies are used on each request. + token (`str` or `bool`, *optional*): + The token to use as HTTP bearer authorization for remote files. If + `True`, will use the token generated when running `transformers-cli + login` (stored in `~/.huggingface`). + cache_dir (`Union[str, os.PathLike]`, *optional*): + Path to a directory in which a downloaded pretrained model + configuration should be cached if the standard cache should not be + used. + local_files_only(`bool`, *optional*, defaults to `False`): + Whether to only look at local files (i.e., do not try to download + the model). + model_kwargs (`Dict`, *optional*): + model_kwargs will be passed to the model during initialization + + + + Passing `token=True` is required when you want to use a private + model. + + + """ + return KerasModelHubMixin.from_pretrained(*args, **kwargs) + + +@validate_hf_hub_args +@_requires_keras_2_model +def push_to_hub_keras( + model, + repo_id: str, + *, + config: Optional[dict] = None, + commit_message: str = "Push Keras model using huggingface_hub.", + private: bool = False, + api_endpoint: Optional[str] = None, + token: Optional[str] = None, + branch: Optional[str] = None, + create_pr: Optional[bool] = None, + allow_patterns: Optional[Union[List[str], str]] = None, + ignore_patterns: Optional[Union[List[str], str]] = None, + delete_patterns: Optional[Union[List[str], str]] = None, + log_dir: Optional[str] = None, + include_optimizer: bool = False, + tags: Optional[Union[list, str]] = None, + plot_model: bool = True, + **model_save_kwargs, +): + """ + Upload model checkpoint to the Hub. + + Use `allow_patterns` and `ignore_patterns` to precisely filter which files should be pushed to the hub. Use + `delete_patterns` to delete existing remote files in the same commit. See [`upload_folder`] reference for more + details. + + Args: + model (`Keras.Model`): + The [Keras model](`https://www.tensorflow.org/api_docs/python/tf/keras/Model`) you'd like to push to the + Hub. The model must be compiled and built. + repo_id (`str`): + ID of the repository to push to (example: `"username/my-model"`). + commit_message (`str`, *optional*, defaults to "Add Keras model"): + Message to commit while pushing. + private (`bool`, *optional*, defaults to `False`): + Whether the repository created should be private. + api_endpoint (`str`, *optional*): + The API endpoint to use when pushing the model to the hub. + token (`str`, *optional*): + The token to use as HTTP bearer authorization for remote files. If + not set, will use the token set when logging in with + `huggingface-cli login` (stored in `~/.huggingface`). + branch (`str`, *optional*): + The git branch on which to push the model. This defaults to + the default branch as specified in your repository, which + defaults to `"main"`. + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request from `branch` with that commit. + Defaults to `False`. + config (`dict`, *optional*): + Configuration object to be saved alongside the model weights. + allow_patterns (`List[str]` or `str`, *optional*): + If provided, only files matching at least one pattern are pushed. + ignore_patterns (`List[str]` or `str`, *optional*): + If provided, files matching any of the patterns are not pushed. + delete_patterns (`List[str]` or `str`, *optional*): + If provided, remote files matching any of the patterns will be deleted from the repo. + log_dir (`str`, *optional*): + TensorBoard logging directory to be pushed. The Hub automatically + hosts and displays a TensorBoard instance if log files are included + in the repository. + include_optimizer (`bool`, *optional*, defaults to `False`): + Whether or not to include optimizer during serialization. + tags (Union[`list`, `str`], *optional*): + List of tags that are related to model or string of a single tag. See example tags + [here](https://github.com/huggingface/hub-docs/blob/main/modelcard.md?plain=1). + plot_model (`bool`, *optional*, defaults to `True`): + Setting this to `True` will plot the model and put it in the model + card. Requires graphviz and pydot to be installed. + model_save_kwargs(`dict`, *optional*): + model_save_kwargs will be passed to + [`tf.keras.models.save_model()`](https://www.tensorflow.org/api_docs/python/tf/keras/models/save_model). + + Returns: + The url of the commit of your model in the given repository. + """ + api = HfApi(endpoint=api_endpoint) + repo_id = api.create_repo(repo_id=repo_id, token=token, private=private, exist_ok=True).repo_id + + # Push the files to the repo in a single commit + with SoftTemporaryDirectory() as tmp: + saved_path = Path(tmp) / repo_id + save_pretrained_keras( + model, + saved_path, + config=config, + include_optimizer=include_optimizer, + tags=tags, + plot_model=plot_model, + **model_save_kwargs, + ) + + # If `log_dir` provided, delete remote logs and upload new ones + if log_dir is not None: + delete_patterns = ( + [] + if delete_patterns is None + else ( + [delete_patterns] # convert `delete_patterns` to a list + if isinstance(delete_patterns, str) + else delete_patterns + ) + ) + delete_patterns.append("logs/*") + copytree(log_dir, saved_path / "logs") + + return api.upload_folder( + repo_type="model", + repo_id=repo_id, + folder_path=saved_path, + commit_message=commit_message, + token=token, + revision=branch, + create_pr=create_pr, + allow_patterns=allow_patterns, + ignore_patterns=ignore_patterns, + delete_patterns=delete_patterns, + ) + + +class KerasModelHubMixin(ModelHubMixin): + """ + Implementation of [`ModelHubMixin`] to provide model Hub upload/download + capabilities to Keras models. + + + ```python + >>> import tensorflow as tf + >>> from huggingface_hub import KerasModelHubMixin + + + >>> class MyModel(tf.keras.Model, KerasModelHubMixin): + ... def __init__(self, **kwargs): + ... super().__init__() + ... self.config = kwargs.pop("config", None) + ... self.dummy_inputs = ... + ... self.layer = ... + + ... def call(self, *args): + ... return ... + + + >>> # Initialize and compile the model as you normally would + >>> model = MyModel() + >>> model.compile(...) + >>> # Build the graph by training it or passing dummy inputs + >>> _ = model(model.dummy_inputs) + >>> # Save model weights to local directory + >>> model.save_pretrained("my-awesome-model") + >>> # Push model weights to the Hub + >>> model.push_to_hub("my-awesome-model") + >>> # Download and initialize weights from the Hub + >>> model = MyModel.from_pretrained("username/super-cool-model") + ``` + """ + + def _save_pretrained(self, save_directory): + save_pretrained_keras(self, save_directory) + + @classmethod + def _from_pretrained( + cls, + model_id, + revision, + cache_dir, + force_download, + proxies, + resume_download, + local_files_only, + token, + config: Optional[Dict[str, Any]] = None, + **model_kwargs, + ): + """Here we just call [`from_pretrained_keras`] function so both the mixin and + functional APIs stay in sync. + + TODO - Some args above aren't used since we are calling + snapshot_download instead of hf_hub_download. + """ + if keras is None: + raise ImportError("Called a TensorFlow-specific function but could not import it.") + + # Root is either a local filepath matching model_id or a cached snapshot + if not os.path.isdir(model_id): + storage_folder = snapshot_download( + repo_id=model_id, + revision=revision, + cache_dir=cache_dir, + library_name="keras", + library_version=get_tf_version(), + ) + else: + storage_folder = model_id + + # TODO: change this in a future PR. We are not returning a KerasModelHubMixin instance here... + model = keras.models.load_model(storage_folder) + + # For now, we add a new attribute, config, to store the config loaded from the hub/a local dir. + model.config = config + + return model diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/lfs.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/lfs.py new file mode 100644 index 0000000000000000000000000000000000000000..2ea852601e8c8dd653f5cf70ea21b5f47fa195a5 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/lfs.py @@ -0,0 +1,463 @@ +# coding=utf-8 +# Copyright 2019-present, the HuggingFace Inc. team. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Git LFS related type definitions and utilities""" + +import inspect +import io +import re +import warnings +from dataclasses import dataclass +from math import ceil +from os.path import getsize +from pathlib import Path +from typing import TYPE_CHECKING, BinaryIO, Dict, Iterable, List, Optional, Tuple, TypedDict +from urllib.parse import unquote + +from huggingface_hub import constants + +from .utils import ( + build_hf_headers, + fix_hf_endpoint_in_url, + get_session, + hf_raise_for_status, + http_backoff, + logging, + tqdm, + validate_hf_hub_args, +) +from .utils._lfs import SliceFileObj +from .utils.sha import sha256, sha_fileobj + + +if TYPE_CHECKING: + from ._commit_api import CommitOperationAdd + +logger = logging.get_logger(__name__) + +OID_REGEX = re.compile(r"^[0-9a-f]{40}$") + +LFS_MULTIPART_UPLOAD_COMMAND = "lfs-multipart-upload" + +LFS_HEADERS = { + "Accept": "application/vnd.git-lfs+json", + "Content-Type": "application/vnd.git-lfs+json", +} + + +@dataclass +class UploadInfo: + """ + Dataclass holding required information to determine whether a blob + should be uploaded to the hub using the LFS protocol or the regular protocol + + Args: + sha256 (`bytes`): + SHA256 hash of the blob + size (`int`): + Size in bytes of the blob + sample (`bytes`): + First 512 bytes of the blob + """ + + sha256: bytes + size: int + sample: bytes + + @classmethod + def from_path(cls, path: str): + size = getsize(path) + with io.open(path, "rb") as file: + sample = file.peek(512)[:512] + sha = sha_fileobj(file) + return cls(size=size, sha256=sha, sample=sample) + + @classmethod + def from_bytes(cls, data: bytes): + sha = sha256(data).digest() + return cls(size=len(data), sample=data[:512], sha256=sha) + + @classmethod + def from_fileobj(cls, fileobj: BinaryIO): + sample = fileobj.read(512) + fileobj.seek(0, io.SEEK_SET) + sha = sha_fileobj(fileobj) + size = fileobj.tell() + fileobj.seek(0, io.SEEK_SET) + return cls(size=size, sha256=sha, sample=sample) + + +@validate_hf_hub_args +def post_lfs_batch_info( + upload_infos: Iterable[UploadInfo], + token: Optional[str], + repo_type: str, + repo_id: str, + revision: Optional[str] = None, + endpoint: Optional[str] = None, + headers: Optional[Dict[str, str]] = None, +) -> Tuple[List[dict], List[dict]]: + """ + Requests the LFS batch endpoint to retrieve upload instructions + + Learn more: https://github.com/git-lfs/git-lfs/blob/main/docs/api/batch.md + + Args: + upload_infos (`Iterable` of `UploadInfo`): + `UploadInfo` for the files that are being uploaded, typically obtained + from `CommitOperationAdd.upload_info` + repo_type (`str`): + Type of the repo to upload to: `"model"`, `"dataset"` or `"space"`. + repo_id (`str`): + A namespace (user or an organization) and a repo name separated + by a `/`. + revision (`str`, *optional*): + The git revision to upload to. + headers (`dict`, *optional*): + Additional headers to include in the request + + Returns: + `LfsBatchInfo`: 2-tuple: + - First element is the list of upload instructions from the server + - Second element is an list of errors, if any + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If an argument is invalid or the server response is malformed. + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + If the server returned an error. + """ + endpoint = endpoint if endpoint is not None else constants.ENDPOINT + url_prefix = "" + if repo_type in constants.REPO_TYPES_URL_PREFIXES: + url_prefix = constants.REPO_TYPES_URL_PREFIXES[repo_type] + batch_url = f"{endpoint}/{url_prefix}{repo_id}.git/info/lfs/objects/batch" + payload: Dict = { + "operation": "upload", + "transfers": ["basic", "multipart"], + "objects": [ + { + "oid": upload.sha256.hex(), + "size": upload.size, + } + for upload in upload_infos + ], + "hash_algo": "sha256", + } + if revision is not None: + payload["ref"] = {"name": unquote(revision)} # revision has been previously 'quoted' + + headers = { + **LFS_HEADERS, + **build_hf_headers(token=token), + **(headers or {}), + } + resp = get_session().post(batch_url, headers=headers, json=payload) + hf_raise_for_status(resp) + batch_info = resp.json() + + objects = batch_info.get("objects", None) + if not isinstance(objects, list): + raise ValueError("Malformed response from server") + + return ( + [_validate_batch_actions(obj) for obj in objects if "error" not in obj], + [_validate_batch_error(obj) for obj in objects if "error" in obj], + ) + + +class PayloadPartT(TypedDict): + partNumber: int + etag: str + + +class CompletionPayloadT(TypedDict): + """Payload that will be sent to the Hub when uploading multi-part.""" + + oid: str + parts: List[PayloadPartT] + + +def lfs_upload( + operation: "CommitOperationAdd", + lfs_batch_action: Dict, + token: Optional[str] = None, + headers: Optional[Dict[str, str]] = None, + endpoint: Optional[str] = None, +) -> None: + """ + Handles uploading a given object to the Hub with the LFS protocol. + + Can be a No-op if the content of the file is already present on the hub large file storage. + + Args: + operation (`CommitOperationAdd`): + The add operation triggering this upload. + lfs_batch_action (`dict`): + Upload instructions from the LFS batch endpoint for this object. See [`~utils.lfs.post_lfs_batch_info`] for + more details. + headers (`dict`, *optional*): + Headers to include in the request, including authentication and user agent headers. + + Raises: + [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + If `lfs_batch_action` is improperly formatted + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + If the upload resulted in an error + """ + # 0. If LFS file is already present, skip upload + _validate_batch_actions(lfs_batch_action) + actions = lfs_batch_action.get("actions") + if actions is None: + # The file was already uploaded + logger.debug(f"Content of file {operation.path_in_repo} is already present upstream - skipping upload") + return + + # 1. Validate server response (check required keys in dict) + upload_action = lfs_batch_action["actions"]["upload"] + _validate_lfs_action(upload_action) + verify_action = lfs_batch_action["actions"].get("verify") + if verify_action is not None: + _validate_lfs_action(verify_action) + + # 2. Upload file (either single part or multi-part) + header = upload_action.get("header", {}) + chunk_size = header.get("chunk_size") + upload_url = fix_hf_endpoint_in_url(upload_action["href"], endpoint=endpoint) + if chunk_size is not None: + try: + chunk_size = int(chunk_size) + except (ValueError, TypeError): + raise ValueError( + f"Malformed response from LFS batch endpoint: `chunk_size` should be an integer. Got '{chunk_size}'." + ) + _upload_multi_part(operation=operation, header=header, chunk_size=chunk_size, upload_url=upload_url) + else: + _upload_single_part(operation=operation, upload_url=upload_url) + + # 3. Verify upload went well + if verify_action is not None: + _validate_lfs_action(verify_action) + verify_url = fix_hf_endpoint_in_url(verify_action["href"], endpoint) + verify_resp = get_session().post( + verify_url, + headers=build_hf_headers(token=token, headers=headers), + json={"oid": operation.upload_info.sha256.hex(), "size": operation.upload_info.size}, + ) + hf_raise_for_status(verify_resp) + logger.debug(f"{operation.path_in_repo}: Upload successful") + + +def _validate_lfs_action(lfs_action: dict): + """validates response from the LFS batch endpoint""" + if not ( + isinstance(lfs_action.get("href"), str) + and (lfs_action.get("header") is None or isinstance(lfs_action.get("header"), dict)) + ): + raise ValueError("lfs_action is improperly formatted") + return lfs_action + + +def _validate_batch_actions(lfs_batch_actions: dict): + """validates response from the LFS batch endpoint""" + if not (isinstance(lfs_batch_actions.get("oid"), str) and isinstance(lfs_batch_actions.get("size"), int)): + raise ValueError("lfs_batch_actions is improperly formatted") + + upload_action = lfs_batch_actions.get("actions", {}).get("upload") + verify_action = lfs_batch_actions.get("actions", {}).get("verify") + if upload_action is not None: + _validate_lfs_action(upload_action) + if verify_action is not None: + _validate_lfs_action(verify_action) + return lfs_batch_actions + + +def _validate_batch_error(lfs_batch_error: dict): + """validates response from the LFS batch endpoint""" + if not (isinstance(lfs_batch_error.get("oid"), str) and isinstance(lfs_batch_error.get("size"), int)): + raise ValueError("lfs_batch_error is improperly formatted") + error_info = lfs_batch_error.get("error") + if not ( + isinstance(error_info, dict) + and isinstance(error_info.get("message"), str) + and isinstance(error_info.get("code"), int) + ): + raise ValueError("lfs_batch_error is improperly formatted") + return lfs_batch_error + + +def _upload_single_part(operation: "CommitOperationAdd", upload_url: str) -> None: + """ + Uploads `fileobj` as a single PUT HTTP request (basic LFS transfer protocol) + + Args: + upload_url (`str`): + The URL to PUT the file to. + fileobj: + The file-like object holding the data to upload. + + Returns: `requests.Response` + + Raises: + [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + If the upload resulted in an error. + """ + with operation.as_file(with_tqdm=True) as fileobj: + # S3 might raise a transient 500 error -> let's retry if that happens + response = http_backoff("PUT", upload_url, data=fileobj, retry_on_status_codes=(500, 502, 503, 504)) + hf_raise_for_status(response) + + +def _upload_multi_part(operation: "CommitOperationAdd", header: Dict, chunk_size: int, upload_url: str) -> None: + """ + Uploads file using HF multipart LFS transfer protocol. + """ + # 1. Get upload URLs for each part + sorted_parts_urls = _get_sorted_parts_urls(header=header, upload_info=operation.upload_info, chunk_size=chunk_size) + + # 2. Upload parts (either with hf_transfer or in pure Python) + use_hf_transfer = constants.HF_HUB_ENABLE_HF_TRANSFER + if ( + constants.HF_HUB_ENABLE_HF_TRANSFER + and not isinstance(operation.path_or_fileobj, str) + and not isinstance(operation.path_or_fileobj, Path) + ): + warnings.warn( + "hf_transfer is enabled but does not support uploading from bytes or BinaryIO, falling back to regular" + " upload" + ) + use_hf_transfer = False + + response_headers = ( + _upload_parts_hf_transfer(operation=operation, sorted_parts_urls=sorted_parts_urls, chunk_size=chunk_size) + if use_hf_transfer + else _upload_parts_iteratively(operation=operation, sorted_parts_urls=sorted_parts_urls, chunk_size=chunk_size) + ) + + # 3. Send completion request + completion_res = get_session().post( + upload_url, + json=_get_completion_payload(response_headers, operation.upload_info.sha256.hex()), + headers=LFS_HEADERS, + ) + hf_raise_for_status(completion_res) + + +def _get_sorted_parts_urls(header: Dict, upload_info: UploadInfo, chunk_size: int) -> List[str]: + sorted_part_upload_urls = [ + upload_url + for _, upload_url in sorted( + [ + (int(part_num, 10), upload_url) + for part_num, upload_url in header.items() + if part_num.isdigit() and len(part_num) > 0 + ], + key=lambda t: t[0], + ) + ] + num_parts = len(sorted_part_upload_urls) + if num_parts != ceil(upload_info.size / chunk_size): + raise ValueError("Invalid server response to upload large LFS file") + return sorted_part_upload_urls + + +def _get_completion_payload(response_headers: List[Dict], oid: str) -> CompletionPayloadT: + parts: List[PayloadPartT] = [] + for part_number, header in enumerate(response_headers): + etag = header.get("etag") + if etag is None or etag == "": + raise ValueError(f"Invalid etag (`{etag}`) returned for part {part_number + 1}") + parts.append( + { + "partNumber": part_number + 1, + "etag": etag, + } + ) + return {"oid": oid, "parts": parts} + + +def _upload_parts_iteratively( + operation: "CommitOperationAdd", sorted_parts_urls: List[str], chunk_size: int +) -> List[Dict]: + headers = [] + with operation.as_file(with_tqdm=True) as fileobj: + for part_idx, part_upload_url in enumerate(sorted_parts_urls): + with SliceFileObj( + fileobj, + seek_from=chunk_size * part_idx, + read_limit=chunk_size, + ) as fileobj_slice: + # S3 might raise a transient 500 error -> let's retry if that happens + part_upload_res = http_backoff( + "PUT", part_upload_url, data=fileobj_slice, retry_on_status_codes=(500, 502, 503, 504) + ) + hf_raise_for_status(part_upload_res) + headers.append(part_upload_res.headers) + return headers # type: ignore + + +def _upload_parts_hf_transfer( + operation: "CommitOperationAdd", sorted_parts_urls: List[str], chunk_size: int +) -> List[Dict]: + # Upload file using an external Rust-based package. Upload is faster but support less features (no progress bars). + try: + from hf_transfer import multipart_upload + except ImportError: + raise ValueError( + "Fast uploading using 'hf_transfer' is enabled (HF_HUB_ENABLE_HF_TRANSFER=1) but 'hf_transfer' package is" + " not available in your environment. Try `pip install hf_transfer`." + ) + + supports_callback = "callback" in inspect.signature(multipart_upload).parameters + if not supports_callback: + warnings.warn( + "You are using an outdated version of `hf_transfer`. Consider upgrading to latest version to enable progress bars using `pip install -U hf_transfer`." + ) + + total = operation.upload_info.size + desc = operation.path_in_repo + if len(desc) > 40: + desc = f"(…){desc[-40:]}" + + # set `disable=None` rather than `disable=False` by default to disable progress bar when no TTY attached + # see https://github.com/huggingface/huggingface_hub/pull/2000 + disable = True if (logger.getEffectiveLevel() == logging.NOTSET) else None + + with tqdm( + unit="B", + unit_scale=True, + total=total, + initial=0, + desc=desc, + disable=disable, + name="huggingface_hub.lfs_upload", + ) as progress: + try: + output = multipart_upload( + file_path=operation.path_or_fileobj, + parts_urls=sorted_parts_urls, + chunk_size=chunk_size, + max_files=128, + parallel_failures=127, # could be removed + max_retries=5, + **({"callback": progress.update} if supports_callback else {}), + ) + except Exception as e: + raise RuntimeError( + "An error occurred while uploading using `hf_transfer`. Consider disabling HF_HUB_ENABLE_HF_TRANSFER for" + " better error handling." + ) from e + if not supports_callback: + progress.update(total) + return output diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repocard.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repocard.py new file mode 100644 index 0000000000000000000000000000000000000000..2daefbb5fb625f1c644408ec141ac21ca9be92f5 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repocard.py @@ -0,0 +1,830 @@ +import os +import re +from pathlib import Path +from typing import Any, Dict, Literal, Optional, Type, Union + +import requests +import yaml + +from huggingface_hub.file_download import hf_hub_download +from huggingface_hub.hf_api import upload_file +from huggingface_hub.repocard_data import ( + CardData, + DatasetCardData, + EvalResult, + ModelCardData, + SpaceCardData, + eval_results_to_model_index, + model_index_to_eval_results, +) +from huggingface_hub.utils import get_session, is_jinja_available, yaml_dump + +from . import constants +from .errors import EntryNotFoundError +from .utils import SoftTemporaryDirectory, logging, validate_hf_hub_args + + +logger = logging.get_logger(__name__) + + +TEMPLATE_MODELCARD_PATH = Path(__file__).parent / "templates" / "modelcard_template.md" +TEMPLATE_DATASETCARD_PATH = Path(__file__).parent / "templates" / "datasetcard_template.md" + +# exact same regex as in the Hub server. Please keep in sync. +# See https://github.com/huggingface/moon-landing/blob/main/server/lib/ViewMarkdown.ts#L18 +REGEX_YAML_BLOCK = re.compile(r"^(\s*---[\r\n]+)([\S\s]*?)([\r\n]+---(\r\n|\n|$))") + + +class RepoCard: + card_data_class = CardData + default_template_path = TEMPLATE_MODELCARD_PATH + repo_type = "model" + + def __init__(self, content: str, ignore_metadata_errors: bool = False): + """Initialize a RepoCard from string content. The content should be a + Markdown file with a YAML block at the beginning and a Markdown body. + + Args: + content (`str`): The content of the Markdown file. + + Example: + ```python + >>> from huggingface_hub.repocard import RepoCard + >>> text = ''' + ... --- + ... language: en + ... license: mit + ... --- + ... + ... # My repo + ... ''' + >>> card = RepoCard(text) + >>> card.data.to_dict() + {'language': 'en', 'license': 'mit'} + >>> card.text + '\\n# My repo\\n' + + ``` + + Raises the following error: + + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + when the content of the repo card metadata is not a dictionary. + + + """ + + # Set the content of the RepoCard, as well as underlying .data and .text attributes. + # See the `content` property setter for more details. + self.ignore_metadata_errors = ignore_metadata_errors + self.content = content + + @property + def content(self): + """The content of the RepoCard, including the YAML block and the Markdown body.""" + line_break = _detect_line_ending(self._content) or "\n" + return f"---{line_break}{self.data.to_yaml(line_break=line_break, original_order=self._original_order)}{line_break}---{line_break}{self.text}" + + @content.setter + def content(self, content: str): + """Set the content of the RepoCard.""" + self._content = content + + match = REGEX_YAML_BLOCK.search(content) + if match: + # Metadata found in the YAML block + yaml_block = match.group(2) + self.text = content[match.end() :] + data_dict = yaml.safe_load(yaml_block) + + if data_dict is None: + data_dict = {} + + # The YAML block's data should be a dictionary + if not isinstance(data_dict, dict): + raise ValueError("repo card metadata block should be a dict") + else: + # Model card without metadata... create empty metadata + logger.warning("Repo card metadata block was not found. Setting CardData to empty.") + data_dict = {} + self.text = content + + self.data = self.card_data_class(**data_dict, ignore_metadata_errors=self.ignore_metadata_errors) + self._original_order = list(data_dict.keys()) + + def __str__(self): + return self.content + + def save(self, filepath: Union[Path, str]): + r"""Save a RepoCard to a file. + + Args: + filepath (`Union[Path, str]`): Filepath to the markdown file to save. + + Example: + ```python + >>> from huggingface_hub.repocard import RepoCard + >>> card = RepoCard("---\nlanguage: en\n---\n# This is a test repo card") + >>> card.save("/tmp/test.md") + + ``` + """ + filepath = Path(filepath) + filepath.parent.mkdir(parents=True, exist_ok=True) + # Preserve newlines as in the existing file. + with open(filepath, mode="w", newline="", encoding="utf-8") as f: + f.write(str(self)) + + @classmethod + def load( + cls, + repo_id_or_path: Union[str, Path], + repo_type: Optional[str] = None, + token: Optional[str] = None, + ignore_metadata_errors: bool = False, + ): + """Initialize a RepoCard from a Hugging Face Hub repo's README.md or a local filepath. + + Args: + repo_id_or_path (`Union[str, Path]`): + The repo ID associated with a Hugging Face Hub repo or a local filepath. + repo_type (`str`, *optional*): + The type of Hugging Face repo to push to. Defaults to None, which will use use "model". Other options + are "dataset" and "space". Not used when loading from a local filepath. If this is called from a child + class, the default value will be the child class's `repo_type`. + token (`str`, *optional*): + Authentication token, obtained with `huggingface_hub.HfApi.login` method. Will default to the stored token. + ignore_metadata_errors (`str`): + If True, errors while parsing the metadata section will be ignored. Some information might be lost during + the process. Use it at your own risk. + + Returns: + [`huggingface_hub.repocard.RepoCard`]: The RepoCard (or subclass) initialized from the repo's + README.md file or filepath. + + Example: + ```python + >>> from huggingface_hub.repocard import RepoCard + >>> card = RepoCard.load("nateraw/food") + >>> assert card.data.tags == ["generated_from_trainer", "image-classification", "pytorch"] + + ``` + """ + + if Path(repo_id_or_path).exists(): + card_path = Path(repo_id_or_path) + elif isinstance(repo_id_or_path, str): + card_path = Path( + hf_hub_download( + repo_id_or_path, + constants.REPOCARD_NAME, + repo_type=repo_type or cls.repo_type, + token=token, + ) + ) + else: + raise ValueError(f"Cannot load RepoCard: path not found on disk ({repo_id_or_path}).") + + # Preserve newlines in the existing file. + with card_path.open(mode="r", newline="", encoding="utf-8") as f: + return cls(f.read(), ignore_metadata_errors=ignore_metadata_errors) + + def validate(self, repo_type: Optional[str] = None): + """Validates card against Hugging Face Hub's card validation logic. + Using this function requires access to the internet, so it is only called + internally by [`huggingface_hub.repocard.RepoCard.push_to_hub`]. + + Args: + repo_type (`str`, *optional*, defaults to "model"): + The type of Hugging Face repo to push to. Options are "model", "dataset", and "space". + If this function is called from a child class, the default will be the child class's `repo_type`. + + + Raises the following errors: + + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if the card fails validation checks. + - [`HTTPError`](https://requests.readthedocs.io/en/latest/api/#requests.HTTPError) + if the request to the Hub API fails for any other reason. + + + """ + + # If repo type is provided, otherwise, use the repo type of the card. + repo_type = repo_type or self.repo_type + + body = { + "repoType": repo_type, + "content": str(self), + } + headers = {"Accept": "text/plain"} + + try: + r = get_session().post("https://huggingface.co/api/validate-yaml", body, headers=headers) + r.raise_for_status() + except requests.exceptions.HTTPError as exc: + if r.status_code == 400: + raise ValueError(r.text) + else: + raise exc + + def push_to_hub( + self, + repo_id: str, + token: Optional[str] = None, + repo_type: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + revision: Optional[str] = None, + create_pr: Optional[bool] = None, + parent_commit: Optional[str] = None, + ): + """Push a RepoCard to a Hugging Face Hub repo. + + Args: + repo_id (`str`): + The repo ID of the Hugging Face Hub repo to push to. Example: "nateraw/food". + token (`str`, *optional*): + Authentication token, obtained with `huggingface_hub.HfApi.login` method. Will default to + the stored token. + repo_type (`str`, *optional*, defaults to "model"): + The type of Hugging Face repo to push to. Options are "model", "dataset", and "space". If this + function is called by a child class, it will default to the child class's `repo_type`. + commit_message (`str`, *optional*): + The summary / title / first line of the generated commit. + commit_description (`str`, *optional*) + The description of the generated commit. + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the `"main"` branch. + create_pr (`bool`, *optional*): + Whether or not to create a Pull Request with this commit. Defaults to `False`. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + Returns: + `str`: URL of the commit which updated the card metadata. + """ + + # If repo type is provided, otherwise, use the repo type of the card. + repo_type = repo_type or self.repo_type + + # Validate card before pushing to hub + self.validate(repo_type=repo_type) + + with SoftTemporaryDirectory() as tmpdir: + tmp_path = Path(tmpdir) / constants.REPOCARD_NAME + tmp_path.write_text(str(self)) + url = upload_file( + path_or_fileobj=str(tmp_path), + path_in_repo=constants.REPOCARD_NAME, + repo_id=repo_id, + token=token, + repo_type=repo_type, + commit_message=commit_message, + commit_description=commit_description, + create_pr=create_pr, + revision=revision, + parent_commit=parent_commit, + ) + return url + + @classmethod + def from_template( + cls, + card_data: CardData, + template_path: Optional[str] = None, + template_str: Optional[str] = None, + **template_kwargs, + ): + """Initialize a RepoCard from a template. By default, it uses the default template. + + Templates are Jinja2 templates that can be customized by passing keyword arguments. + + Args: + card_data (`huggingface_hub.CardData`): + A huggingface_hub.CardData instance containing the metadata you want to include in the YAML + header of the repo card on the Hugging Face Hub. + template_path (`str`, *optional*): + A path to a markdown file with optional Jinja template variables that can be filled + in with `template_kwargs`. Defaults to the default template. + + Returns: + [`huggingface_hub.repocard.RepoCard`]: A RepoCard instance with the specified card data and content from the + template. + """ + if is_jinja_available(): + import jinja2 + else: + raise ImportError( + "Using RepoCard.from_template requires Jinja2 to be installed. Please" + " install it with `pip install Jinja2`." + ) + + kwargs = card_data.to_dict().copy() + kwargs.update(template_kwargs) # Template_kwargs have priority + + if template_path is not None: + template_str = Path(template_path).read_text() + if template_str is None: + template_str = Path(cls.default_template_path).read_text() + template = jinja2.Template(template_str) + content = template.render(card_data=card_data.to_yaml(), **kwargs) + return cls(content) + + +class ModelCard(RepoCard): + card_data_class = ModelCardData + default_template_path = TEMPLATE_MODELCARD_PATH + repo_type = "model" + + @classmethod + def from_template( # type: ignore # violates Liskov property but easier to use + cls, + card_data: ModelCardData, + template_path: Optional[str] = None, + template_str: Optional[str] = None, + **template_kwargs, + ): + """Initialize a ModelCard from a template. By default, it uses the default template, which can be found here: + https://github.com/huggingface/huggingface_hub/blob/main/src/huggingface_hub/templates/modelcard_template.md + + Templates are Jinja2 templates that can be customized by passing keyword arguments. + + Args: + card_data (`huggingface_hub.ModelCardData`): + A huggingface_hub.ModelCardData instance containing the metadata you want to include in the YAML + header of the model card on the Hugging Face Hub. + template_path (`str`, *optional*): + A path to a markdown file with optional Jinja template variables that can be filled + in with `template_kwargs`. Defaults to the default template. + + Returns: + [`huggingface_hub.ModelCard`]: A ModelCard instance with the specified card data and content from the + template. + + Example: + ```python + >>> from huggingface_hub import ModelCard, ModelCardData, EvalResult + + >>> # Using the Default Template + >>> card_data = ModelCardData( + ... language='en', + ... license='mit', + ... library_name='timm', + ... tags=['image-classification', 'resnet'], + ... datasets=['beans'], + ... metrics=['accuracy'], + ... ) + >>> card = ModelCard.from_template( + ... card_data, + ... model_description='This model does x + y...' + ... ) + + >>> # Including Evaluation Results + >>> card_data = ModelCardData( + ... language='en', + ... tags=['image-classification', 'resnet'], + ... eval_results=[ + ... EvalResult( + ... task_type='image-classification', + ... dataset_type='beans', + ... dataset_name='Beans', + ... metric_type='accuracy', + ... metric_value=0.9, + ... ), + ... ], + ... model_name='my-cool-model', + ... ) + >>> card = ModelCard.from_template(card_data) + + >>> # Using a Custom Template + >>> card_data = ModelCardData( + ... language='en', + ... tags=['image-classification', 'resnet'] + ... ) + >>> card = ModelCard.from_template( + ... card_data=card_data, + ... template_path='./src/huggingface_hub/templates/modelcard_template.md', + ... custom_template_var='custom value', # will be replaced in template if it exists + ... ) + + ``` + """ + return super().from_template(card_data, template_path, template_str, **template_kwargs) + + +class DatasetCard(RepoCard): + card_data_class = DatasetCardData + default_template_path = TEMPLATE_DATASETCARD_PATH + repo_type = "dataset" + + @classmethod + def from_template( # type: ignore # violates Liskov property but easier to use + cls, + card_data: DatasetCardData, + template_path: Optional[str] = None, + template_str: Optional[str] = None, + **template_kwargs, + ): + """Initialize a DatasetCard from a template. By default, it uses the default template, which can be found here: + https://github.com/huggingface/huggingface_hub/blob/main/src/huggingface_hub/templates/datasetcard_template.md + + Templates are Jinja2 templates that can be customized by passing keyword arguments. + + Args: + card_data (`huggingface_hub.DatasetCardData`): + A huggingface_hub.DatasetCardData instance containing the metadata you want to include in the YAML + header of the dataset card on the Hugging Face Hub. + template_path (`str`, *optional*): + A path to a markdown file with optional Jinja template variables that can be filled + in with `template_kwargs`. Defaults to the default template. + + Returns: + [`huggingface_hub.DatasetCard`]: A DatasetCard instance with the specified card data and content from the + template. + + Example: + ```python + >>> from huggingface_hub import DatasetCard, DatasetCardData + + >>> # Using the Default Template + >>> card_data = DatasetCardData( + ... language='en', + ... license='mit', + ... annotations_creators='crowdsourced', + ... task_categories=['text-classification'], + ... task_ids=['sentiment-classification', 'text-scoring'], + ... multilinguality='monolingual', + ... pretty_name='My Text Classification Dataset', + ... ) + >>> card = DatasetCard.from_template( + ... card_data, + ... pretty_name=card_data.pretty_name, + ... ) + + >>> # Using a Custom Template + >>> card_data = DatasetCardData( + ... language='en', + ... license='mit', + ... ) + >>> card = DatasetCard.from_template( + ... card_data=card_data, + ... template_path='./src/huggingface_hub/templates/datasetcard_template.md', + ... custom_template_var='custom value', # will be replaced in template if it exists + ... ) + + ``` + """ + return super().from_template(card_data, template_path, template_str, **template_kwargs) + + +class SpaceCard(RepoCard): + card_data_class = SpaceCardData + default_template_path = TEMPLATE_MODELCARD_PATH + repo_type = "space" + + +def _detect_line_ending(content: str) -> Literal["\r", "\n", "\r\n", None]: # noqa: F722 + """Detect the line ending of a string. Used by RepoCard to avoid making huge diff on newlines. + + Uses same implementation as in Hub server, keep it in sync. + + Returns: + str: The detected line ending of the string. + """ + cr = content.count("\r") + lf = content.count("\n") + crlf = content.count("\r\n") + if cr + lf == 0: + return None + if crlf == cr and crlf == lf: + return "\r\n" + if cr > lf: + return "\r" + else: + return "\n" + + +def metadata_load(local_path: Union[str, Path]) -> Optional[Dict]: + content = Path(local_path).read_text() + match = REGEX_YAML_BLOCK.search(content) + if match: + yaml_block = match.group(2) + data = yaml.safe_load(yaml_block) + if data is None or isinstance(data, dict): + return data + raise ValueError("repo card metadata block should be a dict") + else: + return None + + +def metadata_save(local_path: Union[str, Path], data: Dict) -> None: + """ + Save the metadata dict in the upper YAML part Trying to preserve newlines as + in the existing file. Docs about open() with newline="" parameter: + https://docs.python.org/3/library/functions.html?highlight=open#open Does + not work with "^M" linebreaks, which are replaced by \n + """ + line_break = "\n" + content = "" + # try to detect existing newline character + if os.path.exists(local_path): + with open(local_path, "r", newline="", encoding="utf8") as readme: + content = readme.read() + if isinstance(readme.newlines, tuple): + line_break = readme.newlines[0] + elif isinstance(readme.newlines, str): + line_break = readme.newlines + + # creates a new file if it not + with open(local_path, "w", newline="", encoding="utf8") as readme: + data_yaml = yaml_dump(data, sort_keys=False, line_break=line_break) + # sort_keys: keep dict order + match = REGEX_YAML_BLOCK.search(content) + if match: + output = content[: match.start()] + f"---{line_break}{data_yaml}---{line_break}" + content[match.end() :] + else: + output = f"---{line_break}{data_yaml}---{line_break}{content}" + + readme.write(output) + readme.close() + + +def metadata_eval_result( + *, + model_pretty_name: str, + task_pretty_name: str, + task_id: str, + metrics_pretty_name: str, + metrics_id: str, + metrics_value: Any, + dataset_pretty_name: str, + dataset_id: str, + metrics_config: Optional[str] = None, + metrics_verified: bool = False, + dataset_config: Optional[str] = None, + dataset_split: Optional[str] = None, + dataset_revision: Optional[str] = None, + metrics_verification_token: Optional[str] = None, +) -> Dict: + """ + Creates a metadata dict with the result from a model evaluated on a dataset. + + Args: + model_pretty_name (`str`): + The name of the model in natural language. + task_pretty_name (`str`): + The name of a task in natural language. + task_id (`str`): + Example: automatic-speech-recognition. A task id. + metrics_pretty_name (`str`): + A name for the metric in natural language. Example: Test WER. + metrics_id (`str`): + Example: wer. A metric id from https://hf.co/metrics. + metrics_value (`Any`): + The value from the metric. Example: 20.0 or "20.0 ± 1.2". + dataset_pretty_name (`str`): + The name of the dataset in natural language. + dataset_id (`str`): + Example: common_voice. A dataset id from https://hf.co/datasets. + metrics_config (`str`, *optional*): + The name of the metric configuration used in `load_metric()`. + Example: bleurt-large-512 in `load_metric("bleurt", "bleurt-large-512")`. + metrics_verified (`bool`, *optional*, defaults to `False`): + Indicates whether the metrics originate from Hugging Face's [evaluation service](https://huggingface.co/spaces/autoevaluate/model-evaluator) or not. Automatically computed by Hugging Face, do not set. + dataset_config (`str`, *optional*): + Example: fr. The name of the dataset configuration used in `load_dataset()`. + dataset_split (`str`, *optional*): + Example: test. The name of the dataset split used in `load_dataset()`. + dataset_revision (`str`, *optional*): + Example: 5503434ddd753f426f4b38109466949a1217c2bb. The name of the dataset dataset revision + used in `load_dataset()`. + metrics_verification_token (`bool`, *optional*): + A JSON Web Token that is used to verify whether the metrics originate from Hugging Face's [evaluation service](https://huggingface.co/spaces/autoevaluate/model-evaluator) or not. + + Returns: + `dict`: a metadata dict with the result from a model evaluated on a dataset. + + Example: + ```python + >>> from huggingface_hub import metadata_eval_result + >>> results = metadata_eval_result( + ... model_pretty_name="RoBERTa fine-tuned on ReactionGIF", + ... task_pretty_name="Text Classification", + ... task_id="text-classification", + ... metrics_pretty_name="Accuracy", + ... metrics_id="accuracy", + ... metrics_value=0.2662102282047272, + ... dataset_pretty_name="ReactionJPEG", + ... dataset_id="julien-c/reactionjpeg", + ... dataset_config="default", + ... dataset_split="test", + ... ) + >>> results == { + ... 'model-index': [ + ... { + ... 'name': 'RoBERTa fine-tuned on ReactionGIF', + ... 'results': [ + ... { + ... 'task': { + ... 'type': 'text-classification', + ... 'name': 'Text Classification' + ... }, + ... 'dataset': { + ... 'name': 'ReactionJPEG', + ... 'type': 'julien-c/reactionjpeg', + ... 'config': 'default', + ... 'split': 'test' + ... }, + ... 'metrics': [ + ... { + ... 'type': 'accuracy', + ... 'value': 0.2662102282047272, + ... 'name': 'Accuracy', + ... 'verified': False + ... } + ... ] + ... } + ... ] + ... } + ... ] + ... } + True + + ``` + """ + + return { + "model-index": eval_results_to_model_index( + model_name=model_pretty_name, + eval_results=[ + EvalResult( + task_name=task_pretty_name, + task_type=task_id, + metric_name=metrics_pretty_name, + metric_type=metrics_id, + metric_value=metrics_value, + dataset_name=dataset_pretty_name, + dataset_type=dataset_id, + metric_config=metrics_config, + verified=metrics_verified, + verify_token=metrics_verification_token, + dataset_config=dataset_config, + dataset_split=dataset_split, + dataset_revision=dataset_revision, + ) + ], + ) + } + + +@validate_hf_hub_args +def metadata_update( + repo_id: str, + metadata: Dict, + *, + repo_type: Optional[str] = None, + overwrite: bool = False, + token: Optional[str] = None, + commit_message: Optional[str] = None, + commit_description: Optional[str] = None, + revision: Optional[str] = None, + create_pr: bool = False, + parent_commit: Optional[str] = None, +) -> str: + """ + Updates the metadata in the README.md of a repository on the Hugging Face Hub. + If the README.md file doesn't exist yet, a new one is created with metadata and an + the default ModelCard or DatasetCard template. For `space` repo, an error is thrown + as a Space cannot exist without a `README.md` file. + + Args: + repo_id (`str`): + The name of the repository. + metadata (`dict`): + A dictionary containing the metadata to be updated. + repo_type (`str`, *optional*): + Set to `"dataset"` or `"space"` if updating to a dataset or space, + `None` or `"model"` if updating to a model. Default is `None`. + overwrite (`bool`, *optional*, defaults to `False`): + If set to `True` an existing field can be overwritten, otherwise + attempting to overwrite an existing field will cause an error. + token (`str`, *optional*): + The Hugging Face authentication token. + commit_message (`str`, *optional*): + The summary / title / first line of the generated commit. Defaults to + `f"Update metadata with huggingface_hub"` + commit_description (`str` *optional*) + The description of the generated commit + revision (`str`, *optional*): + The git revision to commit from. Defaults to the head of the + `"main"` branch. + create_pr (`boolean`, *optional*): + Whether or not to create a Pull Request from `revision` with that commit. + Defaults to `False`. + parent_commit (`str`, *optional*): + The OID / SHA of the parent commit, as a hexadecimal string. Shorthands (7 first characters) are also supported. + If specified and `create_pr` is `False`, the commit will fail if `revision` does not point to `parent_commit`. + If specified and `create_pr` is `True`, the pull request will be created from `parent_commit`. + Specifying `parent_commit` ensures the repo has not changed before committing the changes, and can be + especially useful if the repo is updated / committed to concurrently. + Returns: + `str`: URL of the commit which updated the card metadata. + + Example: + ```python + >>> from huggingface_hub import metadata_update + >>> metadata = {'model-index': [{'name': 'RoBERTa fine-tuned on ReactionGIF', + ... 'results': [{'dataset': {'name': 'ReactionGIF', + ... 'type': 'julien-c/reactiongif'}, + ... 'metrics': [{'name': 'Recall', + ... 'type': 'recall', + ... 'value': 0.7762102282047272}], + ... 'task': {'name': 'Text Classification', + ... 'type': 'text-classification'}}]}]} + >>> url = metadata_update("hf-internal-testing/reactiongif-roberta-card", metadata) + + ``` + """ + commit_message = commit_message if commit_message is not None else "Update metadata with huggingface_hub" + + # Card class given repo_type + card_class: Type[RepoCard] + if repo_type is None or repo_type == "model": + card_class = ModelCard + elif repo_type == "dataset": + card_class = DatasetCard + elif repo_type == "space": + card_class = RepoCard + else: + raise ValueError(f"Unknown repo_type: {repo_type}") + + # Either load repo_card from the Hub or create an empty one. + # NOTE: Will not create the repo if it doesn't exist. + try: + card = card_class.load(repo_id, token=token, repo_type=repo_type) + except EntryNotFoundError: + if repo_type == "space": + raise ValueError("Cannot update metadata on a Space that doesn't contain a `README.md` file.") + + # Initialize a ModelCard or DatasetCard from default template and no data. + card = card_class.from_template(CardData()) + + for key, value in metadata.items(): + if key == "model-index": + # if the new metadata doesn't include a name, either use existing one or repo name + if "name" not in value[0]: + value[0]["name"] = getattr(card, "model_name", repo_id) + model_name, new_results = model_index_to_eval_results(value) + if card.data.eval_results is None: + card.data.eval_results = new_results + card.data.model_name = model_name + else: + existing_results = card.data.eval_results + + # Iterate over new results + # Iterate over existing results + # If both results describe the same metric but value is different: + # If overwrite=True: overwrite the metric value + # Else: raise ValueError + # Else: append new result to existing ones. + for new_result in new_results: + result_found = False + for existing_result in existing_results: + if new_result.is_equal_except_value(existing_result): + if new_result != existing_result and not overwrite: + raise ValueError( + "You passed a new value for the existing metric" + f" 'name: {new_result.metric_name}, type: " + f"{new_result.metric_type}'. Set `overwrite=True`" + " to overwrite existing metrics." + ) + result_found = True + existing_result.metric_value = new_result.metric_value + if existing_result.verified is True: + existing_result.verify_token = new_result.verify_token + if not result_found: + card.data.eval_results.append(new_result) + else: + # Any metadata that is not a result metric + if card.data.get(key) is not None and not overwrite and card.data.get(key) != value: + raise ValueError( + f"You passed a new value for the existing meta data field '{key}'." + " Set `overwrite=True` to overwrite existing metadata." + ) + else: + card.data[key] = value + + return card.push_to_hub( + repo_id, + token=token, + repo_type=repo_type, + commit_message=commit_message, + commit_description=commit_description, + create_pr=create_pr, + revision=revision, + parent_commit=parent_commit, + ) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repocard_data.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repocard_data.py new file mode 100644 index 0000000000000000000000000000000000000000..855d3a1f138390be131fe8dbe52180944c765645 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repocard_data.py @@ -0,0 +1,749 @@ +import copy +from collections import defaultdict +from dataclasses import dataclass +from typing import Any, Dict, List, Optional, Tuple, Union + +from huggingface_hub.utils import logging, yaml_dump + + +logger = logging.get_logger(__name__) + + +@dataclass +class EvalResult: + """ + Flattened representation of individual evaluation results found in model-index of Model Cards. + + For more information on the model-index spec, see https://github.com/huggingface/hub-docs/blob/main/modelcard.md?plain=1. + + Args: + task_type (`str`): + The task identifier. Example: "image-classification". + dataset_type (`str`): + The dataset identifier. Example: "common_voice". Use dataset id from https://hf.co/datasets. + dataset_name (`str`): + A pretty name for the dataset. Example: "Common Voice (French)". + metric_type (`str`): + The metric identifier. Example: "wer". Use metric id from https://hf.co/metrics. + metric_value (`Any`): + The metric value. Example: 0.9 or "20.0 ± 1.2". + task_name (`str`, *optional*): + A pretty name for the task. Example: "Speech Recognition". + dataset_config (`str`, *optional*): + The name of the dataset configuration used in `load_dataset()`. + Example: fr in `load_dataset("common_voice", "fr")`. See the `datasets` docs for more info: + https://hf.co/docs/datasets/package_reference/loading_methods#datasets.load_dataset.name + dataset_split (`str`, *optional*): + The split used in `load_dataset()`. Example: "test". + dataset_revision (`str`, *optional*): + The revision (AKA Git Sha) of the dataset used in `load_dataset()`. + Example: 5503434ddd753f426f4b38109466949a1217c2bb + dataset_args (`Dict[str, Any]`, *optional*): + The arguments passed during `Metric.compute()`. Example for `bleu`: `{"max_order": 4}` + metric_name (`str`, *optional*): + A pretty name for the metric. Example: "Test WER". + metric_config (`str`, *optional*): + The name of the metric configuration used in `load_metric()`. + Example: bleurt-large-512 in `load_metric("bleurt", "bleurt-large-512")`. + See the `datasets` docs for more info: https://huggingface.co/docs/datasets/v2.1.0/en/loading#load-configurations + metric_args (`Dict[str, Any]`, *optional*): + The arguments passed during `Metric.compute()`. Example for `bleu`: max_order: 4 + verified (`bool`, *optional*): + Indicates whether the metrics originate from Hugging Face's [evaluation service](https://huggingface.co/spaces/autoevaluate/model-evaluator) or not. Automatically computed by Hugging Face, do not set. + verify_token (`str`, *optional*): + A JSON Web Token that is used to verify whether the metrics originate from Hugging Face's [evaluation service](https://huggingface.co/spaces/autoevaluate/model-evaluator) or not. + source_name (`str`, *optional*): + The name of the source of the evaluation result. Example: "Open LLM Leaderboard". + source_url (`str`, *optional*): + The URL of the source of the evaluation result. Example: "https://huggingface.co/spaces/open-llm-leaderboard/open_llm_leaderboard". + """ + + # Required + + # The task identifier + # Example: automatic-speech-recognition + task_type: str + + # The dataset identifier + # Example: common_voice. Use dataset id from https://hf.co/datasets + dataset_type: str + + # A pretty name for the dataset. + # Example: Common Voice (French) + dataset_name: str + + # The metric identifier + # Example: wer. Use metric id from https://hf.co/metrics + metric_type: str + + # Value of the metric. + # Example: 20.0 or "20.0 ± 1.2" + metric_value: Any + + # Optional + + # A pretty name for the task. + # Example: Speech Recognition + task_name: Optional[str] = None + + # The name of the dataset configuration used in `load_dataset()`. + # Example: fr in `load_dataset("common_voice", "fr")`. + # See the `datasets` docs for more info: + # https://huggingface.co/docs/datasets/package_reference/loading_methods#datasets.load_dataset.name + dataset_config: Optional[str] = None + + # The split used in `load_dataset()`. + # Example: test + dataset_split: Optional[str] = None + + # The revision (AKA Git Sha) of the dataset used in `load_dataset()`. + # Example: 5503434ddd753f426f4b38109466949a1217c2bb + dataset_revision: Optional[str] = None + + # The arguments passed during `Metric.compute()`. + # Example for `bleu`: max_order: 4 + dataset_args: Optional[Dict[str, Any]] = None + + # A pretty name for the metric. + # Example: Test WER + metric_name: Optional[str] = None + + # The name of the metric configuration used in `load_metric()`. + # Example: bleurt-large-512 in `load_metric("bleurt", "bleurt-large-512")`. + # See the `datasets` docs for more info: https://huggingface.co/docs/datasets/v2.1.0/en/loading#load-configurations + metric_config: Optional[str] = None + + # The arguments passed during `Metric.compute()`. + # Example for `bleu`: max_order: 4 + metric_args: Optional[Dict[str, Any]] = None + + # Indicates whether the metrics originate from Hugging Face's [evaluation service](https://huggingface.co/spaces/autoevaluate/model-evaluator) or not. Automatically computed by Hugging Face, do not set. + verified: Optional[bool] = None + + # A JSON Web Token that is used to verify whether the metrics originate from Hugging Face's [evaluation service](https://huggingface.co/spaces/autoevaluate/model-evaluator) or not. + verify_token: Optional[str] = None + + # The name of the source of the evaluation result. + # Example: Open LLM Leaderboard + source_name: Optional[str] = None + + # The URL of the source of the evaluation result. + # Example: https://huggingface.co/spaces/open-llm-leaderboard/open_llm_leaderboard + source_url: Optional[str] = None + + @property + def unique_identifier(self) -> tuple: + """Returns a tuple that uniquely identifies this evaluation.""" + return ( + self.task_type, + self.dataset_type, + self.dataset_config, + self.dataset_split, + self.dataset_revision, + ) + + def is_equal_except_value(self, other: "EvalResult") -> bool: + """ + Return True if `self` and `other` describe exactly the same metric but with a + different value. + """ + for key, _ in self.__dict__.items(): + if key == "metric_value": + continue + # For metrics computed by Hugging Face's evaluation service, `verify_token` is derived from `metric_value`, + # so we exclude it here in the comparison. + if key != "verify_token" and getattr(self, key) != getattr(other, key): + return False + return True + + def __post_init__(self) -> None: + if self.source_name is not None and self.source_url is None: + raise ValueError("If `source_name` is provided, `source_url` must also be provided.") + + +@dataclass +class CardData: + """Structure containing metadata from a RepoCard. + + [`CardData`] is the parent class of [`ModelCardData`] and [`DatasetCardData`]. + + Metadata can be exported as a dictionary or YAML. Export can be customized to alter the representation of the data + (example: flatten evaluation results). `CardData` behaves as a dictionary (can get, pop, set values) but do not + inherit from `dict` to allow this export step. + """ + + def __init__(self, ignore_metadata_errors: bool = False, **kwargs): + self.__dict__.update(kwargs) + + def to_dict(self): + """Converts CardData to a dict. + + Returns: + `dict`: CardData represented as a dictionary ready to be dumped to a YAML + block for inclusion in a README.md file. + """ + + data_dict = copy.deepcopy(self.__dict__) + self._to_dict(data_dict) + return _remove_none(data_dict) + + def _to_dict(self, data_dict): + """Use this method in child classes to alter the dict representation of the data. Alter the dict in-place. + + Args: + data_dict (`dict`): The raw dict representation of the card data. + """ + pass + + def to_yaml(self, line_break=None, original_order: Optional[List[str]] = None) -> str: + """Dumps CardData to a YAML block for inclusion in a README.md file. + + Args: + line_break (str, *optional*): + The line break to use when dumping to yaml. + + Returns: + `str`: CardData represented as a YAML block. + """ + if original_order: + self.__dict__ = { + k: self.__dict__[k] + for k in original_order + list(set(self.__dict__.keys()) - set(original_order)) + if k in self.__dict__ + } + return yaml_dump(self.to_dict(), sort_keys=False, line_break=line_break).strip() + + def __repr__(self): + return repr(self.__dict__) + + def __str__(self): + return self.to_yaml() + + def get(self, key: str, default: Any = None) -> Any: + """Get value for a given metadata key.""" + return self.__dict__.get(key, default) + + def pop(self, key: str, default: Any = None) -> Any: + """Pop value for a given metadata key.""" + return self.__dict__.pop(key, default) + + def __getitem__(self, key: str) -> Any: + """Get value for a given metadata key.""" + return self.__dict__[key] + + def __setitem__(self, key: str, value: Any) -> None: + """Set value for a given metadata key.""" + self.__dict__[key] = value + + def __contains__(self, key: str) -> bool: + """Check if a given metadata key is set.""" + return key in self.__dict__ + + def __len__(self) -> int: + """Return the number of metadata keys set.""" + return len(self.__dict__) + + +class ModelCardData(CardData): + """Model Card Metadata that is used by Hugging Face Hub when included at the top of your README.md + + Args: + base_model (`str` or `List[str]`, *optional*): + The identifier of the base model from which the model derives. This is applicable for example if your model is a + fine-tune or adapter of an existing model. The value must be the ID of a model on the Hub (or a list of IDs + if your model derives from multiple models). Defaults to None. + datasets (`List[str]`, *optional*): + List of datasets that were used to train this model. Should be a dataset ID + found on https://hf.co/datasets. Defaults to None. + eval_results (`Union[List[EvalResult], EvalResult]`, *optional*): + List of `huggingface_hub.EvalResult` that define evaluation results of the model. If provided, + `model_name` is used to as a name on PapersWithCode's leaderboards. Defaults to `None`. + language (`Union[str, List[str]]`, *optional*): + Language of model's training data or metadata. It must be an ISO 639-1, 639-2 or + 639-3 code (two/three letters), or a special value like "code", "multilingual". Defaults to `None`. + library_name (`str`, *optional*): + Name of library used by this model. Example: keras or any library from + https://github.com/huggingface/huggingface.js/blob/main/packages/tasks/src/model-libraries.ts. + Defaults to None. + license (`str`, *optional*): + License of this model. Example: apache-2.0 or any license from + https://huggingface.co/docs/hub/repositories-licenses. Defaults to None. + license_name (`str`, *optional*): + Name of the license of this model. Defaults to None. To be used in conjunction with `license_link`. + Common licenses (Apache-2.0, MIT, CC-BY-SA-4.0) do not need a name. In that case, use `license` instead. + license_link (`str`, *optional*): + Link to the license of this model. Defaults to None. To be used in conjunction with `license_name`. + Common licenses (Apache-2.0, MIT, CC-BY-SA-4.0) do not need a link. In that case, use `license` instead. + metrics (`List[str]`, *optional*): + List of metrics used to evaluate this model. Should be a metric name that can be found + at https://hf.co/metrics. Example: 'accuracy'. Defaults to None. + model_name (`str`, *optional*): + A name for this model. It is used along with + `eval_results` to construct the `model-index` within the card's metadata. The name + you supply here is what will be used on PapersWithCode's leaderboards. If None is provided + then the repo name is used as a default. Defaults to None. + pipeline_tag (`str`, *optional*): + The pipeline tag associated with the model. Example: "text-classification". + tags (`List[str]`, *optional*): + List of tags to add to your model that can be used when filtering on the Hugging + Face Hub. Defaults to None. + ignore_metadata_errors (`str`): + If True, errors while parsing the metadata section will be ignored. Some information might be lost during + the process. Use it at your own risk. + kwargs (`dict`, *optional*): + Additional metadata that will be added to the model card. Defaults to None. + + Example: + ```python + >>> from huggingface_hub import ModelCardData + >>> card_data = ModelCardData( + ... language="en", + ... license="mit", + ... library_name="timm", + ... tags=['image-classification', 'resnet'], + ... ) + >>> card_data.to_dict() + {'language': 'en', 'license': 'mit', 'library_name': 'timm', 'tags': ['image-classification', 'resnet']} + + ``` + """ + + def __init__( + self, + *, + base_model: Optional[Union[str, List[str]]] = None, + datasets: Optional[List[str]] = None, + eval_results: Optional[List[EvalResult]] = None, + language: Optional[Union[str, List[str]]] = None, + library_name: Optional[str] = None, + license: Optional[str] = None, + license_name: Optional[str] = None, + license_link: Optional[str] = None, + metrics: Optional[List[str]] = None, + model_name: Optional[str] = None, + pipeline_tag: Optional[str] = None, + tags: Optional[List[str]] = None, + ignore_metadata_errors: bool = False, + **kwargs, + ): + self.base_model = base_model + self.datasets = datasets + self.eval_results = eval_results + self.language = language + self.library_name = library_name + self.license = license + self.license_name = license_name + self.license_link = license_link + self.metrics = metrics + self.model_name = model_name + self.pipeline_tag = pipeline_tag + self.tags = _to_unique_list(tags) + + model_index = kwargs.pop("model-index", None) + if model_index: + try: + model_name, eval_results = model_index_to_eval_results(model_index) + self.model_name = model_name + self.eval_results = eval_results + except (KeyError, TypeError) as error: + if ignore_metadata_errors: + logger.warning("Invalid model-index. Not loading eval results into CardData.") + else: + raise ValueError( + f"Invalid `model_index` in metadata cannot be parsed: {error.__class__} {error}. Pass" + " `ignore_metadata_errors=True` to ignore this error while loading a Model Card. Warning:" + " some information will be lost. Use it at your own risk." + ) + + super().__init__(**kwargs) + + if self.eval_results: + if isinstance(self.eval_results, EvalResult): + self.eval_results = [self.eval_results] + if self.model_name is None: + raise ValueError("Passing `eval_results` requires `model_name` to be set.") + + def _to_dict(self, data_dict): + """Format the internal data dict. In this case, we convert eval results to a valid model index""" + if self.eval_results is not None: + data_dict["model-index"] = eval_results_to_model_index(self.model_name, self.eval_results) + del data_dict["eval_results"], data_dict["model_name"] + + +class DatasetCardData(CardData): + """Dataset Card Metadata that is used by Hugging Face Hub when included at the top of your README.md + + Args: + language (`List[str]`, *optional*): + Language of dataset's data or metadata. It must be an ISO 639-1, 639-2 or + 639-3 code (two/three letters), or a special value like "code", "multilingual". + license (`Union[str, List[str]]`, *optional*): + License(s) of this dataset. Example: apache-2.0 or any license from + https://huggingface.co/docs/hub/repositories-licenses. + annotations_creators (`Union[str, List[str]]`, *optional*): + How the annotations for the dataset were created. + Options are: 'found', 'crowdsourced', 'expert-generated', 'machine-generated', 'no-annotation', 'other'. + language_creators (`Union[str, List[str]]`, *optional*): + How the text-based data in the dataset was created. + Options are: 'found', 'crowdsourced', 'expert-generated', 'machine-generated', 'other' + multilinguality (`Union[str, List[str]]`, *optional*): + Whether the dataset is multilingual. + Options are: 'monolingual', 'multilingual', 'translation', 'other'. + size_categories (`Union[str, List[str]]`, *optional*): + The number of examples in the dataset. Options are: 'n<1K', '1K1T', and 'other'. + source_datasets (`List[str]]`, *optional*): + Indicates whether the dataset is an original dataset or extended from another existing dataset. + Options are: 'original' and 'extended'. + task_categories (`Union[str, List[str]]`, *optional*): + What categories of task does the dataset support? + task_ids (`Union[str, List[str]]`, *optional*): + What specific tasks does the dataset support? + paperswithcode_id (`str`, *optional*): + ID of the dataset on PapersWithCode. + pretty_name (`str`, *optional*): + A more human-readable name for the dataset. (ex. "Cats vs. Dogs") + train_eval_index (`Dict`, *optional*): + A dictionary that describes the necessary spec for doing evaluation on the Hub. + If not provided, it will be gathered from the 'train-eval-index' key of the kwargs. + config_names (`Union[str, List[str]]`, *optional*): + A list of the available dataset configs for the dataset. + """ + + def __init__( + self, + *, + language: Optional[Union[str, List[str]]] = None, + license: Optional[Union[str, List[str]]] = None, + annotations_creators: Optional[Union[str, List[str]]] = None, + language_creators: Optional[Union[str, List[str]]] = None, + multilinguality: Optional[Union[str, List[str]]] = None, + size_categories: Optional[Union[str, List[str]]] = None, + source_datasets: Optional[List[str]] = None, + task_categories: Optional[Union[str, List[str]]] = None, + task_ids: Optional[Union[str, List[str]]] = None, + paperswithcode_id: Optional[str] = None, + pretty_name: Optional[str] = None, + train_eval_index: Optional[Dict] = None, + config_names: Optional[Union[str, List[str]]] = None, + ignore_metadata_errors: bool = False, + **kwargs, + ): + self.annotations_creators = annotations_creators + self.language_creators = language_creators + self.language = language + self.license = license + self.multilinguality = multilinguality + self.size_categories = size_categories + self.source_datasets = source_datasets + self.task_categories = task_categories + self.task_ids = task_ids + self.paperswithcode_id = paperswithcode_id + self.pretty_name = pretty_name + self.config_names = config_names + + # TODO - maybe handle this similarly to EvalResult? + self.train_eval_index = train_eval_index or kwargs.pop("train-eval-index", None) + super().__init__(**kwargs) + + def _to_dict(self, data_dict): + data_dict["train-eval-index"] = data_dict.pop("train_eval_index") + + +class SpaceCardData(CardData): + """Space Card Metadata that is used by Hugging Face Hub when included at the top of your README.md + + To get an exhaustive reference of Spaces configuration, please visit https://huggingface.co/docs/hub/spaces-config-reference#spaces-configuration-reference. + + Args: + title (`str`, *optional*) + Title of the Space. + sdk (`str`, *optional*) + SDK of the Space (one of `gradio`, `streamlit`, `docker`, or `static`). + sdk_version (`str`, *optional*) + Version of the used SDK (if Gradio/Streamlit sdk). + python_version (`str`, *optional*) + Python version used in the Space (if Gradio/Streamlit sdk). + app_file (`str`, *optional*) + Path to your main application file (which contains either gradio or streamlit Python code, or static html code). + Path is relative to the root of the repository. + app_port (`str`, *optional*) + Port on which your application is running. Used only if sdk is `docker`. + license (`str`, *optional*) + License of this model. Example: apache-2.0 or any license from + https://huggingface.co/docs/hub/repositories-licenses. + duplicated_from (`str`, *optional*) + ID of the original Space if this is a duplicated Space. + models (List[`str`], *optional*) + List of models related to this Space. Should be a dataset ID found on https://hf.co/models. + datasets (`List[str]`, *optional*) + List of datasets related to this Space. Should be a dataset ID found on https://hf.co/datasets. + tags (`List[str]`, *optional*) + List of tags to add to your Space that can be used when filtering on the Hub. + ignore_metadata_errors (`str`): + If True, errors while parsing the metadata section will be ignored. Some information might be lost during + the process. Use it at your own risk. + kwargs (`dict`, *optional*): + Additional metadata that will be added to the space card. + + Example: + ```python + >>> from huggingface_hub import SpaceCardData + >>> card_data = SpaceCardData( + ... title="Dreambooth Training", + ... license="mit", + ... sdk="gradio", + ... duplicated_from="multimodalart/dreambooth-training" + ... ) + >>> card_data.to_dict() + {'title': 'Dreambooth Training', 'sdk': 'gradio', 'license': 'mit', 'duplicated_from': 'multimodalart/dreambooth-training'} + ``` + """ + + def __init__( + self, + *, + title: Optional[str] = None, + sdk: Optional[str] = None, + sdk_version: Optional[str] = None, + python_version: Optional[str] = None, + app_file: Optional[str] = None, + app_port: Optional[int] = None, + license: Optional[str] = None, + duplicated_from: Optional[str] = None, + models: Optional[List[str]] = None, + datasets: Optional[List[str]] = None, + tags: Optional[List[str]] = None, + ignore_metadata_errors: bool = False, + **kwargs, + ): + self.title = title + self.sdk = sdk + self.sdk_version = sdk_version + self.python_version = python_version + self.app_file = app_file + self.app_port = app_port + self.license = license + self.duplicated_from = duplicated_from + self.models = models + self.datasets = datasets + self.tags = _to_unique_list(tags) + super().__init__(**kwargs) + + +def model_index_to_eval_results(model_index: List[Dict[str, Any]]) -> Tuple[str, List[EvalResult]]: + """Takes in a model index and returns the model name and a list of `huggingface_hub.EvalResult` objects. + + A detailed spec of the model index can be found here: + https://github.com/huggingface/hub-docs/blob/main/modelcard.md?plain=1 + + Args: + model_index (`List[Dict[str, Any]]`): + A model index data structure, likely coming from a README.md file on the + Hugging Face Hub. + + Returns: + model_name (`str`): + The name of the model as found in the model index. This is used as the + identifier for the model on leaderboards like PapersWithCode. + eval_results (`List[EvalResult]`): + A list of `huggingface_hub.EvalResult` objects containing the metrics + reported in the provided model_index. + + Example: + ```python + >>> from huggingface_hub.repocard_data import model_index_to_eval_results + >>> # Define a minimal model index + >>> model_index = [ + ... { + ... "name": "my-cool-model", + ... "results": [ + ... { + ... "task": { + ... "type": "image-classification" + ... }, + ... "dataset": { + ... "type": "beans", + ... "name": "Beans" + ... }, + ... "metrics": [ + ... { + ... "type": "accuracy", + ... "value": 0.9 + ... } + ... ] + ... } + ... ] + ... } + ... ] + >>> model_name, eval_results = model_index_to_eval_results(model_index) + >>> model_name + 'my-cool-model' + >>> eval_results[0].task_type + 'image-classification' + >>> eval_results[0].metric_type + 'accuracy' + + ``` + """ + + eval_results = [] + for elem in model_index: + name = elem["name"] + results = elem["results"] + for result in results: + task_type = result["task"]["type"] + task_name = result["task"].get("name") + dataset_type = result["dataset"]["type"] + dataset_name = result["dataset"]["name"] + dataset_config = result["dataset"].get("config") + dataset_split = result["dataset"].get("split") + dataset_revision = result["dataset"].get("revision") + dataset_args = result["dataset"].get("args") + source_name = result.get("source", {}).get("name") + source_url = result.get("source", {}).get("url") + + for metric in result["metrics"]: + metric_type = metric["type"] + metric_value = metric["value"] + metric_name = metric.get("name") + metric_args = metric.get("args") + metric_config = metric.get("config") + verified = metric.get("verified") + verify_token = metric.get("verifyToken") + + eval_result = EvalResult( + task_type=task_type, # Required + dataset_type=dataset_type, # Required + dataset_name=dataset_name, # Required + metric_type=metric_type, # Required + metric_value=metric_value, # Required + task_name=task_name, + dataset_config=dataset_config, + dataset_split=dataset_split, + dataset_revision=dataset_revision, + dataset_args=dataset_args, + metric_name=metric_name, + metric_args=metric_args, + metric_config=metric_config, + verified=verified, + verify_token=verify_token, + source_name=source_name, + source_url=source_url, + ) + eval_results.append(eval_result) + return name, eval_results + + +def _remove_none(obj): + """ + Recursively remove `None` values from a dict. Borrowed from: https://stackoverflow.com/a/20558778 + """ + if isinstance(obj, (list, tuple, set)): + return type(obj)(_remove_none(x) for x in obj if x is not None) + elif isinstance(obj, dict): + return type(obj)((_remove_none(k), _remove_none(v)) for k, v in obj.items() if k is not None and v is not None) + else: + return obj + + +def eval_results_to_model_index(model_name: str, eval_results: List[EvalResult]) -> List[Dict[str, Any]]: + """Takes in given model name and list of `huggingface_hub.EvalResult` and returns a + valid model-index that will be compatible with the format expected by the + Hugging Face Hub. + + Args: + model_name (`str`): + Name of the model (ex. "my-cool-model"). This is used as the identifier + for the model on leaderboards like PapersWithCode. + eval_results (`List[EvalResult]`): + List of `huggingface_hub.EvalResult` objects containing the metrics to be + reported in the model-index. + + Returns: + model_index (`List[Dict[str, Any]]`): The eval_results converted to a model-index. + + Example: + ```python + >>> from huggingface_hub.repocard_data import eval_results_to_model_index, EvalResult + >>> # Define minimal eval_results + >>> eval_results = [ + ... EvalResult( + ... task_type="image-classification", # Required + ... dataset_type="beans", # Required + ... dataset_name="Beans", # Required + ... metric_type="accuracy", # Required + ... metric_value=0.9, # Required + ... ) + ... ] + >>> eval_results_to_model_index("my-cool-model", eval_results) + [{'name': 'my-cool-model', 'results': [{'task': {'type': 'image-classification'}, 'dataset': {'name': 'Beans', 'type': 'beans'}, 'metrics': [{'type': 'accuracy', 'value': 0.9}]}]}] + + ``` + """ + + # Metrics are reported on a unique task-and-dataset basis. + # Here, we make a map of those pairs and the associated EvalResults. + task_and_ds_types_map: Dict[Any, List[EvalResult]] = defaultdict(list) + for eval_result in eval_results: + task_and_ds_types_map[eval_result.unique_identifier].append(eval_result) + + # Use the map from above to generate the model index data. + model_index_data = [] + for results in task_and_ds_types_map.values(): + # All items from `results` share same metadata + sample_result = results[0] + data = { + "task": { + "type": sample_result.task_type, + "name": sample_result.task_name, + }, + "dataset": { + "name": sample_result.dataset_name, + "type": sample_result.dataset_type, + "config": sample_result.dataset_config, + "split": sample_result.dataset_split, + "revision": sample_result.dataset_revision, + "args": sample_result.dataset_args, + }, + "metrics": [ + { + "type": result.metric_type, + "value": result.metric_value, + "name": result.metric_name, + "config": result.metric_config, + "args": result.metric_args, + "verified": result.verified, + "verifyToken": result.verify_token, + } + for result in results + ], + } + if sample_result.source_url is not None: + source = { + "url": sample_result.source_url, + } + if sample_result.source_name is not None: + source["name"] = sample_result.source_name + data["source"] = source + model_index_data.append(data) + + # TODO - Check if there cases where this list is longer than one? + # Finally, the model index itself is list of dicts. + model_index = [ + { + "name": model_name, + "results": model_index_data, + } + ] + return _remove_none(model_index) + + +def _to_unique_list(tags: Optional[List[str]]) -> Optional[List[str]]: + if tags is None: + return tags + unique_tags = [] # make tags unique + keep order explicitly + for tag in tags: + if tag not in unique_tags: + unique_tags.append(tag) + return unique_tags diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repository.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repository.py new file mode 100644 index 0000000000000000000000000000000000000000..af1ab72fb458340f3fc211f0c5ef577b6471fda1 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/repository.py @@ -0,0 +1,1477 @@ +import atexit +import os +import re +import subprocess +import threading +import time +from contextlib import contextmanager +from pathlib import Path +from typing import Callable, Dict, Iterator, List, Optional, Tuple, TypedDict, Union +from urllib.parse import urlparse + +from huggingface_hub import constants +from huggingface_hub.repocard import metadata_load, metadata_save + +from .hf_api import HfApi, repo_type_and_id_from_hf_id +from .lfs import LFS_MULTIPART_UPLOAD_COMMAND +from .utils import ( + SoftTemporaryDirectory, + get_token, + logging, + run_subprocess, + tqdm, + validate_hf_hub_args, +) +from .utils._deprecation import _deprecate_method + + +logger = logging.get_logger(__name__) + + +class CommandInProgress: + """ + Utility to follow commands launched asynchronously. + """ + + def __init__( + self, + title: str, + is_done_method: Callable, + status_method: Callable, + process: subprocess.Popen, + post_method: Optional[Callable] = None, + ): + self.title = title + self._is_done = is_done_method + self._status = status_method + self._process = process + self._stderr = "" + self._stdout = "" + self._post_method = post_method + + @property + def is_done(self) -> bool: + """ + Whether the process is done. + """ + result = self._is_done() + + if result and self._post_method is not None: + self._post_method() + self._post_method = None + + return result + + @property + def status(self) -> int: + """ + The exit code/status of the current action. Will return `0` if the + command has completed successfully, and a number between 1 and 255 if + the process errored-out. + + Will return -1 if the command is still ongoing. + """ + return self._status() + + @property + def failed(self) -> bool: + """ + Whether the process errored-out. + """ + return self.status > 0 + + @property + def stderr(self) -> str: + """ + The current output message on the standard error. + """ + if self._process.stderr is not None: + self._stderr += self._process.stderr.read() + return self._stderr + + @property + def stdout(self) -> str: + """ + The current output message on the standard output. + """ + if self._process.stdout is not None: + self._stdout += self._process.stdout.read() + return self._stdout + + def __repr__(self): + status = self.status + + if status == -1: + status = "running" + + return ( + f"[{self.title} command, status code: {status}," + f" {'in progress.' if not self.is_done else 'finished.'} PID:" + f" {self._process.pid}]" + ) + + +def is_git_repo(folder: Union[str, Path]) -> bool: + """ + Check if the folder is the root or part of a git repository + + Args: + folder (`str`): + The folder in which to run the command. + + Returns: + `bool`: `True` if the repository is part of a repository, `False` + otherwise. + """ + folder_exists = os.path.exists(os.path.join(folder, ".git")) + git_branch = subprocess.run("git branch".split(), cwd=folder, stdout=subprocess.PIPE, stderr=subprocess.PIPE) + return folder_exists and git_branch.returncode == 0 + + +def is_local_clone(folder: Union[str, Path], remote_url: str) -> bool: + """ + Check if the folder is a local clone of the remote_url + + Args: + folder (`str` or `Path`): + The folder in which to run the command. + remote_url (`str`): + The url of a git repository. + + Returns: + `bool`: `True` if the repository is a local clone of the remote + repository specified, `False` otherwise. + """ + if not is_git_repo(folder): + return False + + remotes = run_subprocess("git remote -v", folder).stdout + + # Remove token for the test with remotes. + remote_url = re.sub(r"https://.*@", "https://", remote_url) + remotes = [re.sub(r"https://.*@", "https://", remote) for remote in remotes.split()] + return remote_url in remotes + + +def is_tracked_with_lfs(filename: Union[str, Path]) -> bool: + """ + Check if the file passed is tracked with git-lfs. + + Args: + filename (`str` or `Path`): + The filename to check. + + Returns: + `bool`: `True` if the file passed is tracked with git-lfs, `False` + otherwise. + """ + folder = Path(filename).parent + filename = Path(filename).name + + try: + p = run_subprocess("git check-attr -a".split() + [filename], folder) + attributes = p.stdout.strip() + except subprocess.CalledProcessError as exc: + if not is_git_repo(folder): + return False + else: + raise OSError(exc.stderr) + + if len(attributes) == 0: + return False + + found_lfs_tag = {"diff": False, "merge": False, "filter": False} + + for attribute in attributes.split("\n"): + for tag in found_lfs_tag.keys(): + if tag in attribute and "lfs" in attribute: + found_lfs_tag[tag] = True + + return all(found_lfs_tag.values()) + + +def is_git_ignored(filename: Union[str, Path]) -> bool: + """ + Check if file is git-ignored. Supports nested .gitignore files. + + Args: + filename (`str` or `Path`): + The filename to check. + + Returns: + `bool`: `True` if the file passed is ignored by `git`, `False` + otherwise. + """ + folder = Path(filename).parent + filename = Path(filename).name + + try: + p = run_subprocess("git check-ignore".split() + [filename], folder, check=False) + # Will return exit code 1 if not gitignored + is_ignored = not bool(p.returncode) + except subprocess.CalledProcessError as exc: + raise OSError(exc.stderr) + + return is_ignored + + +def is_binary_file(filename: Union[str, Path]) -> bool: + """ + Check if file is a binary file. + + Args: + filename (`str` or `Path`): + The filename to check. + + Returns: + `bool`: `True` if the file passed is a binary file, `False` otherwise. + """ + try: + with open(filename, "rb") as f: + content = f.read(10 * (1024**2)) # Read a maximum of 10MB + + # Code sample taken from the following stack overflow thread + # https://stackoverflow.com/questions/898669/how-can-i-detect-if-a-file-is-binary-non-text-in-python/7392391#7392391 + text_chars = bytearray({7, 8, 9, 10, 12, 13, 27} | set(range(0x20, 0x100)) - {0x7F}) + return bool(content.translate(None, text_chars)) + except UnicodeDecodeError: + return True + + +def files_to_be_staged(pattern: str = ".", folder: Union[str, Path, None] = None) -> List[str]: + """ + Returns a list of filenames that are to be staged. + + Args: + pattern (`str` or `Path`): + The pattern of filenames to check. Put `.` to get all files. + folder (`str` or `Path`): + The folder in which to run the command. + + Returns: + `List[str]`: List of files that are to be staged. + """ + try: + p = run_subprocess("git ls-files --exclude-standard -mo".split() + [pattern], folder) + if len(p.stdout.strip()): + files = p.stdout.strip().split("\n") + else: + files = [] + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + return files + + +def is_tracked_upstream(folder: Union[str, Path]) -> bool: + """ + Check if the current checked-out branch is tracked upstream. + + Args: + folder (`str` or `Path`): + The folder in which to run the command. + + Returns: + `bool`: `True` if the current checked-out branch is tracked upstream, + `False` otherwise. + """ + try: + run_subprocess("git rev-parse --symbolic-full-name --abbrev-ref @{u}", folder) + return True + except subprocess.CalledProcessError as exc: + if "HEAD" in exc.stderr: + raise OSError("No branch checked out") + + return False + + +def commits_to_push(folder: Union[str, Path], upstream: Optional[str] = None) -> int: + """ + Check the number of commits that would be pushed upstream + + Args: + folder (`str` or `Path`): + The folder in which to run the command. + upstream (`str`, *optional*): + The name of the upstream repository with which the comparison should be + made. + + Returns: + `int`: Number of commits that would be pushed upstream were a `git + push` to proceed. + """ + try: + result = run_subprocess(f"git cherry -v {upstream or ''}", folder) + return len(result.stdout.split("\n")) - 1 + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + +class PbarT(TypedDict): + # Used to store an opened progress bar in `_lfs_log_progress` + bar: tqdm + past_bytes: int + + +@contextmanager +def _lfs_log_progress(): + """ + This is a context manager that will log the Git LFS progress of cleaning, + smudging, pulling and pushing. + """ + + if logger.getEffectiveLevel() >= logging.ERROR: + try: + yield + except Exception: + pass + return + + def output_progress(stopping_event: threading.Event): + """ + To be launched as a separate thread with an event meaning it should stop + the tail. + """ + # Key is tuple(state, filename), value is a dict(tqdm bar and a previous value) + pbars: Dict[Tuple[str, str], PbarT] = {} + + def close_pbars(): + for pbar in pbars.values(): + pbar["bar"].update(pbar["bar"].total - pbar["past_bytes"]) + pbar["bar"].refresh() + pbar["bar"].close() + + def tail_file(filename) -> Iterator[str]: + """ + Creates a generator to be iterated through, which will return each + line one by one. Will stop tailing the file if the stopping_event is + set. + """ + with open(filename, "r") as file: + current_line = "" + while True: + if stopping_event.is_set(): + close_pbars() + break + + line_bit = file.readline() + if line_bit is not None and not len(line_bit.strip()) == 0: + current_line += line_bit + if current_line.endswith("\n"): + yield current_line + current_line = "" + else: + time.sleep(1) + + # If the file isn't created yet, wait for a few seconds before trying again. + # Can be interrupted with the stopping_event. + while not os.path.exists(os.environ["GIT_LFS_PROGRESS"]): + if stopping_event.is_set(): + close_pbars() + return + + time.sleep(2) + + for line in tail_file(os.environ["GIT_LFS_PROGRESS"]): + try: + state, file_progress, byte_progress, filename = line.split() + except ValueError as error: + # Try/except to ease debugging. See https://github.com/huggingface/huggingface_hub/issues/1373. + raise ValueError(f"Cannot unpack LFS progress line:\n{line}") from error + description = f"{state.capitalize()} file {filename}" + + current_bytes, total_bytes = byte_progress.split("/") + current_bytes_int = int(current_bytes) + total_bytes_int = int(total_bytes) + + pbar = pbars.get((state, filename)) + if pbar is None: + # Initialize progress bar + pbars[(state, filename)] = { + "bar": tqdm( + desc=description, + initial=current_bytes_int, + total=total_bytes_int, + unit="B", + unit_scale=True, + unit_divisor=1024, + name="huggingface_hub.lfs_upload", + ), + "past_bytes": int(current_bytes), + } + else: + # Update progress bar + pbar["bar"].update(current_bytes_int - pbar["past_bytes"]) + pbar["past_bytes"] = current_bytes_int + + current_lfs_progress_value = os.environ.get("GIT_LFS_PROGRESS", "") + + with SoftTemporaryDirectory() as tmpdir: + os.environ["GIT_LFS_PROGRESS"] = os.path.join(tmpdir, "lfs_progress") + logger.debug(f"Following progress in {os.environ['GIT_LFS_PROGRESS']}") + + exit_event = threading.Event() + x = threading.Thread(target=output_progress, args=(exit_event,), daemon=True) + x.start() + + try: + yield + finally: + exit_event.set() + x.join() + + os.environ["GIT_LFS_PROGRESS"] = current_lfs_progress_value + + +class Repository: + """ + Helper class to wrap the git and git-lfs commands. + + The aim is to facilitate interacting with huggingface.co hosted model or + dataset repos, though not a lot here (if any) is actually specific to + huggingface.co. + + + + [`Repository`] is deprecated in favor of the http-based alternatives implemented in + [`HfApi`]. Given its large adoption in legacy code, the complete removal of + [`Repository`] will only happen in release `v1.0`. For more details, please read + https://huggingface.co/docs/huggingface_hub/concepts/git_vs_http. + + + """ + + command_queue: List[CommandInProgress] + + @validate_hf_hub_args + @_deprecate_method( + version="1.0", + message=( + "Please prefer the http-based alternatives instead. Given its large adoption in legacy code, the complete" + " removal is only planned on next major release.\nFor more details, please read" + " https://huggingface.co/docs/huggingface_hub/concepts/git_vs_http." + ), + ) + def __init__( + self, + local_dir: Union[str, Path], + clone_from: Optional[str] = None, + repo_type: Optional[str] = None, + token: Union[bool, str] = True, + git_user: Optional[str] = None, + git_email: Optional[str] = None, + revision: Optional[str] = None, + skip_lfs_files: bool = False, + client: Optional[HfApi] = None, + ): + """ + Instantiate a local clone of a git repo. + + If `clone_from` is set, the repo will be cloned from an existing remote repository. + If the remote repo does not exist, a `EnvironmentError` exception will be thrown. + Please create the remote repo first using [`create_repo`]. + + `Repository` uses the local git credentials by default. If explicitly set, the `token` + or the `git_user`/`git_email` pair will be used instead. + + Args: + local_dir (`str` or `Path`): + path (e.g. `'my_trained_model/'`) to the local directory, where + the `Repository` will be initialized. + clone_from (`str`, *optional*): + Either a repository url or `repo_id`. + Example: + - `"https://huggingface.co/philschmid/playground-tests"` + - `"philschmid/playground-tests"` + repo_type (`str`, *optional*): + To set when cloning a repo from a repo_id. Default is model. + token (`bool` or `str`, *optional*): + A valid authentication token (see https://huggingface.co/settings/token). + If `None` or `True` and machine is logged in (through `huggingface-cli login` + or [`~huggingface_hub.login`]), token will be retrieved from the cache. + If `False`, token is not sent in the request header. + git_user (`str`, *optional*): + will override the `git config user.name` for committing and + pushing files to the hub. + git_email (`str`, *optional*): + will override the `git config user.email` for committing and + pushing files to the hub. + revision (`str`, *optional*): + Revision to checkout after initializing the repository. If the + revision doesn't exist, a branch will be created with that + revision name from the default branch's current HEAD. + skip_lfs_files (`bool`, *optional*, defaults to `False`): + whether to skip git-LFS files or not. + client (`HfApi`, *optional*): + Instance of [`HfApi`] to use when calling the HF Hub API. A new + instance will be created if this is left to `None`. + + Raises: + [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + If the remote repository set in `clone_from` does not exist. + """ + if isinstance(local_dir, Path): + local_dir = str(local_dir) + os.makedirs(local_dir, exist_ok=True) + self.local_dir = os.path.join(os.getcwd(), local_dir) + self._repo_type = repo_type + self.command_queue = [] + self.skip_lfs_files = skip_lfs_files + self.client = client if client is not None else HfApi() + + self.check_git_versions() + + if isinstance(token, str): + self.huggingface_token: Optional[str] = token + elif token is False: + self.huggingface_token = None + else: + # if `True` -> explicit use of the cached token + # if `None` -> implicit use of the cached token + self.huggingface_token = get_token() + + if clone_from is not None: + self.clone_from(repo_url=clone_from) + else: + if is_git_repo(self.local_dir): + logger.debug("[Repository] is a valid git repo") + else: + raise ValueError("If not specifying `clone_from`, you need to pass Repository a valid git clone.") + + if self.huggingface_token is not None and (git_email is None or git_user is None): + user = self.client.whoami(self.huggingface_token) + + if git_email is None: + git_email = user.get("email") + + if git_user is None: + git_user = user.get("fullname") + + if git_user is not None or git_email is not None: + self.git_config_username_and_email(git_user, git_email) + + self.lfs_enable_largefiles() + self.git_credential_helper_store() + + if revision is not None: + self.git_checkout(revision, create_branch_ok=True) + + # This ensures that all commands exit before exiting the Python runtime. + # This will ensure all pushes register on the hub, even if other errors happen in subsequent operations. + atexit.register(self.wait_for_commands) + + @property + def current_branch(self) -> str: + """ + Returns the current checked out branch. + + Returns: + `str`: Current checked out branch. + """ + try: + result = run_subprocess("git rev-parse --abbrev-ref HEAD", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + return result + + def check_git_versions(self): + """ + Checks that `git` and `git-lfs` can be run. + + Raises: + [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + If `git` or `git-lfs` are not installed. + """ + try: + git_version = run_subprocess("git --version", self.local_dir).stdout.strip() + except FileNotFoundError: + raise EnvironmentError("Looks like you do not have git installed, please install.") + + try: + lfs_version = run_subprocess("git-lfs --version", self.local_dir).stdout.strip() + except FileNotFoundError: + raise EnvironmentError( + "Looks like you do not have git-lfs installed, please install." + " You can install from https://git-lfs.github.com/." + " Then run `git lfs install` (you only have to do this once)." + ) + logger.info(git_version + "\n" + lfs_version) + + @validate_hf_hub_args + def clone_from(self, repo_url: str, token: Union[bool, str, None] = None): + """ + Clone from a remote. If the folder already exists, will try to clone the + repository within it. + + If this folder is a git repository with linked history, will try to + update the repository. + + Args: + repo_url (`str`): + The URL from which to clone the repository + token (`Union[str, bool]`, *optional*): + Whether to use the authentication token. It can be: + - a string which is the token itself + - `False`, which would not use the authentication token + - `True`, which would fetch the authentication token from the + local folder and use it (you should be logged in for this to + work). + - `None`, which would retrieve the value of + `self.huggingface_token`. + + + + Raises the following error: + + - [`ValueError`](https://docs.python.org/3/library/exceptions.html#ValueError) + if an organization token (starts with "api_org") is passed. Use must use + your own personal access token (see https://hf.co/settings/tokens). + + - [`EnvironmentError`](https://docs.python.org/3/library/exceptions.html#EnvironmentError) + if you are trying to clone the repository in a non-empty folder, or if the + `git` operations raise errors. + + + """ + token = ( + token # str -> use it + if isinstance(token, str) + else ( + None # `False` -> explicit no token + if token is False + else self.huggingface_token # `None` or `True` -> use default + ) + ) + if token is not None and token.startswith("api_org"): + raise ValueError( + "You must use your personal access token, not an Organization token" + " (see https://hf.co/settings/tokens)." + ) + + hub_url = self.client.endpoint + if hub_url in repo_url or ("http" not in repo_url and len(repo_url.split("/")) <= 2): + repo_type, namespace, repo_name = repo_type_and_id_from_hf_id(repo_url, hub_url=hub_url) + repo_id = f"{namespace}/{repo_name}" if namespace is not None else repo_name + + if repo_type is not None: + self._repo_type = repo_type + + repo_url = hub_url + "/" + + if self._repo_type in constants.REPO_TYPES_URL_PREFIXES: + repo_url += constants.REPO_TYPES_URL_PREFIXES[self._repo_type] + + if token is not None: + # Add token in git url when provided + scheme = urlparse(repo_url).scheme + repo_url = repo_url.replace(f"{scheme}://", f"{scheme}://user:{token}@") + + repo_url += repo_id + + # For error messages, it's cleaner to show the repo url without the token. + clean_repo_url = re.sub(r"(https?)://.*@", r"\1://", repo_url) + try: + run_subprocess("git lfs install", self.local_dir) + + # checks if repository is initialized in a empty repository or in one with files + if len(os.listdir(self.local_dir)) == 0: + logger.warning(f"Cloning {clean_repo_url} into local empty directory.") + + with _lfs_log_progress(): + env = os.environ.copy() + + if self.skip_lfs_files: + env.update({"GIT_LFS_SKIP_SMUDGE": "1"}) + + run_subprocess( + # 'git lfs clone' is deprecated (will display a warning in the terminal) + # but we still use it as it provides a nicer UX when downloading large + # files (shows progress). + f"{'git clone' if self.skip_lfs_files else 'git lfs clone'} {repo_url} .", + self.local_dir, + env=env, + ) + else: + # Check if the folder is the root of a git repository + if not is_git_repo(self.local_dir): + raise EnvironmentError( + "Tried to clone a repository in a non-empty folder that isn't" + f" a git repository ('{self.local_dir}'). If you really want to" + f" do this, do it manually:\n cd {self.local_dir} && git init" + " && git remote add origin && git pull origin main\n or clone" + " repo to a new folder and move your existing files there" + " afterwards." + ) + + if is_local_clone(self.local_dir, repo_url): + logger.warning( + f"{self.local_dir} is already a clone of {clean_repo_url}." + " Make sure you pull the latest changes with" + " `repo.git_pull()`." + ) + else: + output = run_subprocess("git remote get-url origin", self.local_dir, check=False) + + error_msg = ( + f"Tried to clone {clean_repo_url} in an unrelated git" + " repository.\nIf you believe this is an error, please add" + f" a remote with the following URL: {clean_repo_url}." + ) + if output.returncode == 0: + clean_local_remote_url = re.sub(r"https://.*@", "https://", output.stdout) + error_msg += f"\nLocal path has its origin defined as: {clean_local_remote_url}" + raise EnvironmentError(error_msg) + + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_config_username_and_email(self, git_user: Optional[str] = None, git_email: Optional[str] = None): + """ + Sets git username and email (only in the current repo). + + Args: + git_user (`str`, *optional*): + The username to register through `git`. + git_email (`str`, *optional*): + The email to register through `git`. + """ + try: + if git_user is not None: + run_subprocess("git config user.name".split() + [git_user], self.local_dir) + + if git_email is not None: + run_subprocess(f"git config user.email {git_email}".split(), self.local_dir) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_credential_helper_store(self): + """ + Sets the git credential helper to `store` + """ + try: + run_subprocess("git config credential.helper store", self.local_dir) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_head_hash(self) -> str: + """ + Get commit sha on top of HEAD. + + Returns: + `str`: The current checked out commit SHA. + """ + try: + p = run_subprocess("git rev-parse HEAD", self.local_dir) + return p.stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_remote_url(self) -> str: + """ + Get URL to origin remote. + + Returns: + `str`: The URL of the `origin` remote. + """ + try: + p = run_subprocess("git config --get remote.origin.url", self.local_dir) + url = p.stdout.strip() + # Strip basic auth info. + return re.sub(r"https://.*@", "https://", url) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_head_commit_url(self) -> str: + """ + Get URL to last commit on HEAD. We assume it's been pushed, and the url + scheme is the same one as for GitHub or HuggingFace. + + Returns: + `str`: The URL to the current checked-out commit. + """ + sha = self.git_head_hash() + url = self.git_remote_url() + if url.endswith("/"): + url = url[:-1] + return f"{url}/commit/{sha}" + + def list_deleted_files(self) -> List[str]: + """ + Returns a list of the files that are deleted in the working directory or + index. + + Returns: + `List[str]`: A list of files that have been deleted in the working + directory or index. + """ + try: + git_status = run_subprocess("git status -s", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + if len(git_status) == 0: + return [] + + # Receives a status like the following + # D .gitignore + # D new_file.json + # AD new_file1.json + # ?? new_file2.json + # ?? new_file4.json + + # Strip each line of whitespaces + modified_files_statuses = [status.strip() for status in git_status.split("\n")] + + # Only keep files that are deleted using the D prefix + deleted_files_statuses = [status for status in modified_files_statuses if "D" in status.split()[0]] + + # Remove the D prefix and strip to keep only the relevant filename + deleted_files = [status.split()[-1].strip() for status in deleted_files_statuses] + + return deleted_files + + def lfs_track(self, patterns: Union[str, List[str]], filename: bool = False): + """ + Tell git-lfs to track files according to a pattern. + + Setting the `filename` argument to `True` will treat the arguments as + literal filenames, not as patterns. Any special glob characters in the + filename will be escaped when writing to the `.gitattributes` file. + + Args: + patterns (`Union[str, List[str]]`): + The pattern, or list of patterns, to track with git-lfs. + filename (`bool`, *optional*, defaults to `False`): + Whether to use the patterns as literal filenames. + """ + if isinstance(patterns, str): + patterns = [patterns] + try: + for pattern in patterns: + run_subprocess( + f"git lfs track {'--filename' if filename else ''} {pattern}", + self.local_dir, + ) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def lfs_untrack(self, patterns: Union[str, List[str]]): + """ + Tell git-lfs to untrack those files. + + Args: + patterns (`Union[str, List[str]]`): + The pattern, or list of patterns, to untrack with git-lfs. + """ + if isinstance(patterns, str): + patterns = [patterns] + try: + for pattern in patterns: + run_subprocess("git lfs untrack".split() + [pattern], self.local_dir) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def lfs_enable_largefiles(self): + """ + HF-specific. This enables upload support of files >5GB. + """ + try: + lfs_config = "git config lfs.customtransfer.multipart" + run_subprocess(f"{lfs_config}.path huggingface-cli", self.local_dir) + run_subprocess( + f"{lfs_config}.args {LFS_MULTIPART_UPLOAD_COMMAND}", + self.local_dir, + ) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def auto_track_binary_files(self, pattern: str = ".") -> List[str]: + """ + Automatically track binary files with git-lfs. + + Args: + pattern (`str`, *optional*, defaults to "."): + The pattern with which to track files that are binary. + + Returns: + `List[str]`: List of filenames that are now tracked due to being + binary files + """ + files_to_be_tracked_with_lfs = [] + + deleted_files = self.list_deleted_files() + + for filename in files_to_be_staged(pattern, folder=self.local_dir): + if filename in deleted_files: + continue + + path_to_file = os.path.join(os.getcwd(), self.local_dir, filename) + + if not (is_tracked_with_lfs(path_to_file) or is_git_ignored(path_to_file)): + size_in_mb = os.path.getsize(path_to_file) / (1024 * 1024) + + if size_in_mb >= 10: + logger.warning( + "Parsing a large file to check if binary or not. Tracking large" + " files using `repository.auto_track_large_files` is" + " recommended so as to not load the full file in memory." + ) + + is_binary = is_binary_file(path_to_file) + + if is_binary: + self.lfs_track(filename) + files_to_be_tracked_with_lfs.append(filename) + + # Cleanup the .gitattributes if files were deleted + self.lfs_untrack(deleted_files) + + return files_to_be_tracked_with_lfs + + def auto_track_large_files(self, pattern: str = ".") -> List[str]: + """ + Automatically track large files (files that weigh more than 10MBs) with + git-lfs. + + Args: + pattern (`str`, *optional*, defaults to "."): + The pattern with which to track files that are above 10MBs. + + Returns: + `List[str]`: List of filenames that are now tracked due to their + size. + """ + files_to_be_tracked_with_lfs = [] + + deleted_files = self.list_deleted_files() + + for filename in files_to_be_staged(pattern, folder=self.local_dir): + if filename in deleted_files: + continue + + path_to_file = os.path.join(os.getcwd(), self.local_dir, filename) + size_in_mb = os.path.getsize(path_to_file) / (1024 * 1024) + + if size_in_mb >= 10 and not is_tracked_with_lfs(path_to_file) and not is_git_ignored(path_to_file): + self.lfs_track(filename) + files_to_be_tracked_with_lfs.append(filename) + + # Cleanup the .gitattributes if files were deleted + self.lfs_untrack(deleted_files) + + return files_to_be_tracked_with_lfs + + def lfs_prune(self, recent=False): + """ + git lfs prune + + Args: + recent (`bool`, *optional*, defaults to `False`): + Whether to prune files even if they were referenced by recent + commits. See the following + [link](https://github.com/git-lfs/git-lfs/blob/f3d43f0428a84fc4f1e5405b76b5a73ec2437e65/docs/man/git-lfs-prune.1.ronn#recent-files) + for more information. + """ + try: + with _lfs_log_progress(): + result = run_subprocess(f"git lfs prune {'--recent' if recent else ''}", self.local_dir) + logger.info(result.stdout) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_pull(self, rebase: bool = False, lfs: bool = False): + """ + git pull + + Args: + rebase (`bool`, *optional*, defaults to `False`): + Whether to rebase the current branch on top of the upstream + branch after fetching. + lfs (`bool`, *optional*, defaults to `False`): + Whether to fetch the LFS files too. This option only changes the + behavior when a repository was cloned without fetching the LFS + files; calling `repo.git_pull(lfs=True)` will then fetch the LFS + file from the remote repository. + """ + command = "git pull" if not lfs else "git lfs pull" + if rebase: + command += " --rebase" + try: + with _lfs_log_progress(): + result = run_subprocess(command, self.local_dir) + logger.info(result.stdout) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_add(self, pattern: str = ".", auto_lfs_track: bool = False): + """ + git add + + Setting the `auto_lfs_track` parameter to `True` will automatically + track files that are larger than 10MB with `git-lfs`. + + Args: + pattern (`str`, *optional*, defaults to "."): + The pattern with which to add files to staging. + auto_lfs_track (`bool`, *optional*, defaults to `False`): + Whether to automatically track large and binary files with + git-lfs. Any file over 10MB in size, or in binary format, will + be automatically tracked. + """ + if auto_lfs_track: + # Track files according to their size (>=10MB) + tracked_files = self.auto_track_large_files(pattern) + + # Read the remaining files and track them if they're binary + tracked_files.extend(self.auto_track_binary_files(pattern)) + + if tracked_files: + logger.warning( + f"Adding files tracked by Git LFS: {tracked_files}. This may take a" + " bit of time if the files are large." + ) + + try: + result = run_subprocess("git add -v".split() + [pattern], self.local_dir) + logger.info(f"Adding to index:\n{result.stdout}\n") + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def git_commit(self, commit_message: str = "commit files to HF hub"): + """ + git commit + + Args: + commit_message (`str`, *optional*, defaults to "commit files to HF hub"): + The message attributed to the commit. + """ + try: + result = run_subprocess("git commit -v -m".split() + [commit_message], self.local_dir) + logger.info(f"Committed:\n{result.stdout}\n") + except subprocess.CalledProcessError as exc: + if len(exc.stderr) > 0: + raise EnvironmentError(exc.stderr) + else: + raise EnvironmentError(exc.stdout) + + def git_push( + self, + upstream: Optional[str] = None, + blocking: bool = True, + auto_lfs_prune: bool = False, + ) -> Union[str, Tuple[str, CommandInProgress]]: + """ + git push + + If used without setting `blocking`, will return url to commit on remote + repo. If used with `blocking=True`, will return a tuple containing the + url to commit and the command object to follow for information about the + process. + + Args: + upstream (`str`, *optional*): + Upstream to which this should push. If not specified, will push + to the lastly defined upstream or to the default one (`origin + main`). + blocking (`bool`, *optional*, defaults to `True`): + Whether the function should return only when the push has + finished. Setting this to `False` will return an + `CommandInProgress` object which has an `is_done` property. This + property will be set to `True` when the push is finished. + auto_lfs_prune (`bool`, *optional*, defaults to `False`): + Whether to automatically prune files once they have been pushed + to the remote. + """ + command = "git push" + + if upstream: + command += f" --set-upstream {upstream}" + + number_of_commits = commits_to_push(self.local_dir, upstream) + + if number_of_commits > 1: + logger.warning(f"Several commits ({number_of_commits}) will be pushed upstream.") + if blocking: + logger.warning("The progress bars may be unreliable.") + + try: + with _lfs_log_progress(): + process = subprocess.Popen( + command.split(), + stderr=subprocess.PIPE, + stdout=subprocess.PIPE, + encoding="utf-8", + cwd=self.local_dir, + ) + + if blocking: + stdout, stderr = process.communicate() + return_code = process.poll() + process.kill() + + if len(stderr): + logger.warning(stderr) + + if return_code: + raise subprocess.CalledProcessError(return_code, process.args, output=stdout, stderr=stderr) + + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + if not blocking: + + def status_method(): + status = process.poll() + if status is None: + return -1 + else: + return status + + command_in_progress = CommandInProgress( + "push", + is_done_method=lambda: process.poll() is not None, + status_method=status_method, + process=process, + post_method=self.lfs_prune if auto_lfs_prune else None, + ) + + self.command_queue.append(command_in_progress) + + return self.git_head_commit_url(), command_in_progress + + if auto_lfs_prune: + self.lfs_prune() + + return self.git_head_commit_url() + + def git_checkout(self, revision: str, create_branch_ok: bool = False): + """ + git checkout a given revision + + Specifying `create_branch_ok` to `True` will create the branch to the + given revision if that revision doesn't exist. + + Args: + revision (`str`): + The revision to checkout. + create_branch_ok (`str`, *optional*, defaults to `False`): + Whether creating a branch named with the `revision` passed at + the current checked-out reference if `revision` isn't an + existing revision is allowed. + """ + try: + result = run_subprocess(f"git checkout {revision}", self.local_dir) + logger.warning(f"Checked out {revision} from {self.current_branch}.") + logger.warning(result.stdout) + except subprocess.CalledProcessError as exc: + if not create_branch_ok: + raise EnvironmentError(exc.stderr) + else: + try: + result = run_subprocess(f"git checkout -b {revision}", self.local_dir) + logger.warning( + f"Revision `{revision}` does not exist. Created and checked out branch `{revision}`." + ) + logger.warning(result.stdout) + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def tag_exists(self, tag_name: str, remote: Optional[str] = None) -> bool: + """ + Check if a tag exists or not. + + Args: + tag_name (`str`): + The name of the tag to check. + remote (`str`, *optional*): + Whether to check if the tag exists on a remote. This parameter + should be the identifier of the remote. + + Returns: + `bool`: Whether the tag exists. + """ + if remote: + try: + result = run_subprocess(f"git ls-remote origin refs/tags/{tag_name}", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + return len(result) != 0 + else: + try: + git_tags = run_subprocess("git tag", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + git_tags = git_tags.split("\n") + return tag_name in git_tags + + def delete_tag(self, tag_name: str, remote: Optional[str] = None) -> bool: + """ + Delete a tag, both local and remote, if it exists + + Args: + tag_name (`str`): + The tag name to delete. + remote (`str`, *optional*): + The remote on which to delete the tag. + + Returns: + `bool`: `True` if deleted, `False` if the tag didn't exist. + If remote is not passed, will just be updated locally + """ + delete_locally = True + delete_remotely = True + + if not self.tag_exists(tag_name): + delete_locally = False + + if not self.tag_exists(tag_name, remote=remote): + delete_remotely = False + + if delete_locally: + try: + run_subprocess(["git", "tag", "-d", tag_name], self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + if remote and delete_remotely: + try: + run_subprocess(f"git push {remote} --delete {tag_name}", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + return True + + def add_tag(self, tag_name: str, message: Optional[str] = None, remote: Optional[str] = None): + """ + Add a tag at the current head and push it + + If remote is None, will just be updated locally + + If no message is provided, the tag will be lightweight. if a message is + provided, the tag will be annotated. + + Args: + tag_name (`str`): + The name of the tag to be added. + message (`str`, *optional*): + The message that accompanies the tag. The tag will turn into an + annotated tag if a message is passed. + remote (`str`, *optional*): + The remote on which to add the tag. + """ + if message: + tag_args = ["git", "tag", "-a", tag_name, "-m", message] + else: + tag_args = ["git", "tag", tag_name] + + try: + run_subprocess(tag_args, self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + if remote: + try: + run_subprocess(f"git push {remote} {tag_name}", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + def is_repo_clean(self) -> bool: + """ + Return whether or not the git status is clean or not + + Returns: + `bool`: `True` if the git status is clean, `False` otherwise. + """ + try: + git_status = run_subprocess("git status --porcelain", self.local_dir).stdout.strip() + except subprocess.CalledProcessError as exc: + raise EnvironmentError(exc.stderr) + + return len(git_status) == 0 + + def push_to_hub( + self, + commit_message: str = "commit files to HF hub", + blocking: bool = True, + clean_ok: bool = True, + auto_lfs_prune: bool = False, + ) -> Union[None, str, Tuple[str, CommandInProgress]]: + """ + Helper to add, commit, and push files to remote repository on the + HuggingFace Hub. Will automatically track large files (>10MB). + + Args: + commit_message (`str`): + Message to use for the commit. + blocking (`bool`, *optional*, defaults to `True`): + Whether the function should return only when the `git push` has + finished. + clean_ok (`bool`, *optional*, defaults to `True`): + If True, this function will return None if the repo is + untouched. Default behavior is to fail because the git command + fails. + auto_lfs_prune (`bool`, *optional*, defaults to `False`): + Whether to automatically prune files once they have been pushed + to the remote. + """ + if clean_ok and self.is_repo_clean(): + logger.info("Repo currently clean. Ignoring push_to_hub") + return None + self.git_add(auto_lfs_track=True) + self.git_commit(commit_message) + return self.git_push( + upstream=f"origin {self.current_branch}", + blocking=blocking, + auto_lfs_prune=auto_lfs_prune, + ) + + @contextmanager + def commit( + self, + commit_message: str, + branch: Optional[str] = None, + track_large_files: bool = True, + blocking: bool = True, + auto_lfs_prune: bool = False, + ): + """ + Context manager utility to handle committing to a repository. This + automatically tracks large files (>10Mb) with git-lfs. Set the + `track_large_files` argument to `False` if you wish to ignore that + behavior. + + Args: + commit_message (`str`): + Message to use for the commit. + branch (`str`, *optional*): + The branch on which the commit will appear. This branch will be + checked-out before any operation. + track_large_files (`bool`, *optional*, defaults to `True`): + Whether to automatically track large files or not. Will do so by + default. + blocking (`bool`, *optional*, defaults to `True`): + Whether the function should return only when the `git push` has + finished. + auto_lfs_prune (`bool`, defaults to `True`): + Whether to automatically prune files once they have been pushed + to the remote. + + Examples: + + ```python + >>> with Repository( + ... "text-files", + ... clone_from="/text-files", + ... token=True, + >>> ).commit("My first file :)"): + ... with open("file.txt", "w+") as f: + ... f.write(json.dumps({"hey": 8})) + + >>> import torch + + >>> model = torch.nn.Transformer() + >>> with Repository( + ... "torch-model", + ... clone_from="/torch-model", + ... token=True, + >>> ).commit("My cool model :)"): + ... torch.save(model.state_dict(), "model.pt") + ``` + + """ + + files_to_stage = files_to_be_staged(".", folder=self.local_dir) + + if len(files_to_stage): + files_in_msg = str(files_to_stage[:5])[:-1] + ", ...]" if len(files_to_stage) > 5 else str(files_to_stage) + logger.error( + "There exists some updated files in the local repository that are not" + f" committed: {files_in_msg}. This may lead to errors if checking out" + " a branch. These files and their modifications will be added to the" + " current commit." + ) + + if branch is not None: + self.git_checkout(branch, create_branch_ok=True) + + if is_tracked_upstream(self.local_dir): + logger.warning("Pulling changes ...") + self.git_pull(rebase=True) + else: + logger.warning(f"The current branch has no upstream branch. Will push to 'origin {self.current_branch}'") + + current_working_directory = os.getcwd() + os.chdir(os.path.join(current_working_directory, self.local_dir)) + + try: + yield self + finally: + self.git_add(auto_lfs_track=track_large_files) + + try: + self.git_commit(commit_message) + except OSError as e: + # If no changes are detected, there is nothing to commit. + if "nothing to commit" not in str(e): + raise e + + try: + self.git_push( + upstream=f"origin {self.current_branch}", + blocking=blocking, + auto_lfs_prune=auto_lfs_prune, + ) + except OSError as e: + # If no changes are detected, there is nothing to commit. + if "could not read Username" in str(e): + raise OSError("Couldn't authenticate user for push. Did you set `token` to `True`?") from e + else: + raise e + + os.chdir(current_working_directory) + + def repocard_metadata_load(self) -> Optional[Dict]: + filepath = os.path.join(self.local_dir, constants.REPOCARD_NAME) + if os.path.isfile(filepath): + return metadata_load(filepath) + return None + + def repocard_metadata_save(self, data: Dict) -> None: + return metadata_save(os.path.join(self.local_dir, constants.REPOCARD_NAME), data) + + @property + def commands_failed(self): + """ + Returns the asynchronous commands that failed. + """ + return [c for c in self.command_queue if c.status > 0] + + @property + def commands_in_progress(self): + """ + Returns the asynchronous commands that are currently in progress. + """ + return [c for c in self.command_queue if not c.is_done] + + def wait_for_commands(self): + """ + Blocking method: blocks all subsequent execution until all commands have + been processed. + """ + index = 0 + for command_failed in self.commands_failed: + logger.error(f"The {command_failed.title} command with PID {command_failed._process.pid} failed.") + logger.error(command_failed.stderr) + + while self.commands_in_progress: + if index % 10 == 0: + logger.warning( + f"Waiting for the following commands to finish before shutting down: {self.commands_in_progress}." + ) + + index += 1 + + time.sleep(1) diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/serialization/_tensorflow.py b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/serialization/_tensorflow.py new file mode 100644 index 0000000000000000000000000000000000000000..59ed8110b28f4891d67e754fdfbfa47a26f85be1 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/serialization/_tensorflow.py @@ -0,0 +1,95 @@ +# Copyright 2024 The HuggingFace Team. All rights reserved. +# +# Licensed under the Apache License, Version 2.0 (the "License"); +# you may not use this file except in compliance with the License. +# You may obtain a copy of the License at +# +# http://www.apache.org/licenses/LICENSE-2.0 +# +# Unless required by applicable law or agreed to in writing, software +# distributed under the License is distributed on an "AS IS" BASIS, +# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. +# See the License for the specific language governing permissions and +# limitations under the License. +"""Contains tensorflow-specific helpers.""" + +import math +import re +from typing import TYPE_CHECKING, Dict, Union + +from .. import constants +from ._base import MAX_SHARD_SIZE, StateDictSplit, split_state_dict_into_shards_factory + + +if TYPE_CHECKING: + import tensorflow as tf + + +def split_tf_state_dict_into_shards( + state_dict: Dict[str, "tf.Tensor"], + *, + filename_pattern: str = constants.TF2_WEIGHTS_FILE_PATTERN, + max_shard_size: Union[int, str] = MAX_SHARD_SIZE, +) -> StateDictSplit: + """ + Split a model state dictionary in shards so that each shard is smaller than a given size. + + The shards are determined by iterating through the `state_dict` in the order of its keys. There is no optimization + made to make each shard as close as possible to the maximum size passed. For example, if the limit is 10GB and we + have tensors of sizes [6GB, 6GB, 2GB, 6GB, 2GB, 2GB] they will get sharded as [6GB], [6+2GB], [6+2+2GB] and not + [6+2+2GB], [6+2GB], [6GB]. + + + + If one of the model's tensor is bigger than `max_shard_size`, it will end up in its own shard which will have a + size greater than `max_shard_size`. + + + + Args: + state_dict (`Dict[str, Tensor]`): + The state dictionary to save. + filename_pattern (`str`, *optional*): + The pattern to generate the files names in which the model will be saved. Pattern must be a string that + can be formatted with `filename_pattern.format(suffix=...)` and must contain the keyword `suffix` + Defaults to `"tf_model{suffix}.h5"`. + max_shard_size (`int` or `str`, *optional*): + The maximum size of each shard, in bytes. Defaults to 5GB. + + Returns: + [`StateDictSplit`]: A `StateDictSplit` object containing the shards and the index to retrieve them. + """ + return split_state_dict_into_shards_factory( + state_dict, + max_shard_size=max_shard_size, + filename_pattern=filename_pattern, + get_storage_size=get_tf_storage_size, + ) + + +def get_tf_storage_size(tensor: "tf.Tensor") -> int: + # Return `math.ceil` since dtype byte size can be a float (e.g., 0.125 for tf.bool). + # Better to overestimate than underestimate. + return math.ceil(tensor.numpy().size * _dtype_byte_size_tf(tensor.dtype)) + + +def _dtype_byte_size_tf(dtype) -> float: + """ + Returns the size (in bytes) occupied by one parameter of type `dtype`. + Taken from https://github.com/huggingface/transformers/blob/74d9d0cebb0263a3f8ab9c280569170cc74651d0/src/transformers/modeling_tf_utils.py#L608. + NOTE: why not `tensor.numpy().nbytes`? + Example: + ```py + >>> _dtype_byte_size(tf.float32) + 4 + ``` + """ + import tensorflow as tf + + if dtype == tf.bool: + return 1 / 8 + bit_search = re.search(r"[^\d](\d+)$", dtype.name) + if bit_search is None: + raise ValueError(f"`dtype` is not a valid dtype: {dtype}.") + bit_size = int(bit_search.groups()[0]) + return bit_size // 8 diff --git a/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/templates/datasetcard_template.md b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/templates/datasetcard_template.md new file mode 100644 index 0000000000000000000000000000000000000000..9af29ebbed93653ec74a8952e314e7554323ef15 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/huggingface_hub/templates/datasetcard_template.md @@ -0,0 +1,143 @@ +--- +# For reference on dataset card metadata, see the spec: https://github.com/huggingface/hub-docs/blob/main/datasetcard.md?plain=1 +# Doc / guide: https://huggingface.co/docs/hub/datasets-cards +{{ card_data }} +--- + +# Dataset Card for {{ pretty_name | default("Dataset Name", true) }} + + + +{{ dataset_summary | default("", true) }} + +## Dataset Details + +### Dataset Description + + + +{{ dataset_description | default("", true) }} + +- **Curated by:** {{ curators | default("[More Information Needed]", true)}} +- **Funded by [optional]:** {{ funded_by | default("[More Information Needed]", true)}} +- **Shared by [optional]:** {{ shared_by | default("[More Information Needed]", true)}} +- **Language(s) (NLP):** {{ language | default("[More Information Needed]", true)}} +- **License:** {{ license | default("[More Information Needed]", true)}} + +### Dataset Sources [optional] + + + +- **Repository:** {{ repo | default("[More Information Needed]", true)}} +- **Paper [optional]:** {{ paper | default("[More Information Needed]", true)}} +- **Demo [optional]:** {{ demo | default("[More Information Needed]", true)}} + +## Uses + + + +### Direct Use + + + +{{ direct_use | default("[More Information Needed]", true)}} + +### Out-of-Scope Use + + + +{{ out_of_scope_use | default("[More Information Needed]", true)}} + +## Dataset Structure + + + +{{ dataset_structure | default("[More Information Needed]", true)}} + +## Dataset Creation + +### Curation Rationale + + + +{{ curation_rationale_section | default("[More Information Needed]", true)}} + +### Source Data + + + +#### Data Collection and Processing + + + +{{ data_collection_and_processing_section | default("[More Information Needed]", true)}} + +#### Who are the source data producers? + + + +{{ source_data_producers_section | default("[More Information Needed]", true)}} + +### Annotations [optional] + + + +#### Annotation process + + + +{{ annotation_process_section | default("[More Information Needed]", true)}} + +#### Who are the annotators? + + + +{{ who_are_annotators_section | default("[More Information Needed]", true)}} + +#### Personal and Sensitive Information + + + +{{ personal_and_sensitive_information | default("[More Information Needed]", true)}} + +## Bias, Risks, and Limitations + + + +{{ bias_risks_limitations | default("[More Information Needed]", true)}} + +### Recommendations + + + +{{ bias_recommendations | default("Users should be made aware of the risks, biases and limitations of the dataset. More information needed for further recommendations.", true)}} + +## Citation [optional] + + + +**BibTeX:** + +{{ citation_bibtex | default("[More Information Needed]", true)}} + +**APA:** + +{{ citation_apa | default("[More Information Needed]", true)}} + +## Glossary [optional] + + + +{{ glossary | default("[More Information Needed]", true)}} + +## More Information [optional] + +{{ more_information | default("[More Information Needed]", true)}} + +## Dataset Card Authors [optional] + +{{ dataset_card_authors | default("[More Information Needed]", true)}} + +## Dataset Card Contact + +{{ dataset_card_contact | default("[More Information Needed]", true)}} diff --git a/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/RECORD b/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/RECORD new file mode 100644 index 0000000000000000000000000000000000000000..68941fdadfcabcf5cc9c8f228d82ff7514676e7d --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/RECORD @@ -0,0 +1,14 @@ +kiwisolver-1.4.7.dist-info/INSTALLER,sha256=zuuue4knoyJ-UwPPXg8fezS7VCrXJQrAP7zeNuwvFQg,4 +kiwisolver-1.4.7.dist-info/LICENSE,sha256=I45pkG1-UHqUgyuYMRMYYsQXbVjAArOI4umdtdg2d9I,3289 +kiwisolver-1.4.7.dist-info/METADATA,sha256=IckUCDHkXNUbqlPRm8lnS6Zi7c4fkNAxYTh3YzHI2b8,6286 +kiwisolver-1.4.7.dist-info/RECORD,, +kiwisolver-1.4.7.dist-info/REQUESTED,sha256=47DEQpj8HBSa-_TImW-5JCeuQeRkm5NMpJWZG3hSuFU,0 +kiwisolver-1.4.7.dist-info/WHEEL,sha256=_Z2A8arJSp8XfwLJG84Q-KfTikUdMYidmtdTL6j-PeU,151 +kiwisolver-1.4.7.dist-info/top_level.txt,sha256=xqwWj7oSHlpIjcw2QMJb8puTFPdjDBO78AZp9gjTh9c,11 +kiwisolver/__init__.py,sha256=Q5XXSw01orUWGJihEQ0lE-1sJwIWfkjnMRjAAXb9MCM,1013 +kiwisolver/__pycache__/__init__.cpython-310.pyc,, +kiwisolver/__pycache__/exceptions.cpython-310.pyc,, +kiwisolver/_cext.cpython-310-x86_64-linux-gnu.so,sha256=LUAYF7CxKyanOAD7YQXNyaPegKIOux0yOTPoj9oLq_E,6639216 +kiwisolver/_cext.pyi,sha256=gVh6qcWL7gX5Ys-avWKPBOZKrnjC05JnQddCF4WLOAs,8659 +kiwisolver/exceptions.py,sha256=haGECAifFjVqwT5esQ1sEiqsajW6Jydip16ieHPeL04,1242 +kiwisolver/py.typed,sha256=47DEQpj8HBSa-_TImW-5JCeuQeRkm5NMpJWZG3hSuFU,0 diff --git a/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/REQUESTED b/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/REQUESTED new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/top_level.txt b/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/top_level.txt new file mode 100644 index 0000000000000000000000000000000000000000..9b85884d1a91ed346d4f939d15d27ad1e33a5894 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/kiwisolver-1.4.7.dist-info/top_level.txt @@ -0,0 +1 @@ +kiwisolver diff --git a/evalkit_internvl/lib/python3.10/site-packages/narwhals-1.30.0.dist-info/INSTALLER b/evalkit_internvl/lib/python3.10/site-packages/narwhals-1.30.0.dist-info/INSTALLER new file mode 100644 index 0000000000000000000000000000000000000000..a1b589e38a32041e49332e5e81c2d363dc418d68 --- /dev/null +++ b/evalkit_internvl/lib/python3.10/site-packages/narwhals-1.30.0.dist-info/INSTALLER @@ -0,0 +1 @@ +pip diff --git a/evalkit_internvl/lib/python3.10/site-packages/narwhals-1.30.0.dist-info/REQUESTED b/evalkit_internvl/lib/python3.10/site-packages/narwhals-1.30.0.dist-info/REQUESTED new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/autograd/functions/sendrpc_backward.h b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/autograd/functions/sendrpc_backward.h new file mode 100644 index 0000000000000000000000000000000000000000..ff576ace174fdfae29abafdec3678532e03cc29d --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/autograd/functions/sendrpc_backward.h @@ -0,0 +1,37 @@ +#pragma once + +#include + +namespace torch { +namespace distributed { +namespace autograd { + +// As part of our distributed autograd implementation, whenever we send an RPC +// from one node to another, we add a 'SendRpcBackward' autograd function to the +// autograd graph. This is more or less a placeholder function that is used to +// kickoff the autograd engine on the current worker on the backward pass. The +// edges for this autograd function are the inputs to the RPC method. +// +// During the backward pass, this function is queued for execution in the +// autograd engine which eventually runs the rest of the autograd graph. +struct TORCH_API SendRpcBackward : public torch::autograd::Node { + public: + torch::autograd::variable_list apply( + torch::autograd::variable_list&& inputs) override; + + // SendRpcBackward is actually the root of an autograd graph on the local + // node. As a result, it doesn't receive any 'inputs', but rather the RPC + // framework passes gradients over to this function to kickoff local autograd + // computation. + void setGrads(const torch::autograd::variable_list& grads); + + // Retrieve the grads for the function. + const torch::autograd::variable_list& getGrads() const; + + private: + torch::autograd::variable_list grads_; +}; + +} // namespace autograd +} // namespace distributed +} // namespace torch diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/autograd/rpc_messages/rpc_with_autograd.h b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/autograd/rpc_messages/rpc_with_autograd.h new file mode 100644 index 0000000000000000000000000000000000000000..6d0b6111cc88cd5a1df33d334851f8d17e166941 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/autograd/rpc_messages/rpc_with_autograd.h @@ -0,0 +1,98 @@ +#pragma once + +#include +#include +#include + +namespace torch { +namespace distributed { +namespace autograd { + +// Represents an RPC that includes autograd information. This class basically +// wraps another `RpcCommandBase` object which represents the actual RPC and has +// additional autograd information associated with that RPC. +class TORCH_API RpcWithAutograd final : public rpc::RpcCommandBase { + public: + // Used when we are sending an RPC over the wire. + RpcWithAutograd( + rpc::worker_id_t fromWorkerId, + rpc::MessageType messageType, + const AutogradMetadata& autogradMetadata, + c10::intrusive_ptr wrappedMessage, + rpc::DeviceMap deviceMap = {}); + + // Used when receiving an RPC over the wire. + RpcWithAutograd( + rpc::worker_id_t fromWorkerId, + rpc::MessageType messageType, + const AutogradMetadata& autogradMetadata, + std::unique_ptr wrappedRpc, + rpc::MessageType wrappedMessageType, + std::vector tensors, + rpc::DeviceMap deviceMap = {}); + + c10::intrusive_ptr toMessageImpl() && override; + + static std::unique_ptr fromMessage( + const rpc::Message& message); + + // Retrieves tensors as part of this RPC, which need to be considered for + // autograd computations. + std::vector& tensors(); + + const AutogradMetadata& autogradMetadata() const; + + RpcCommandBase& wrappedRpc(); + + void setWrappedRpc(std::unique_ptr wrappedRpc); + + std::unique_ptr moveWrappedRpc() &&; + + // Message type of the wrapped RPC. + rpc::MessageType wrappedMessageType() const; + + // Retrieve the worker id from which the RPC originated. + rpc::worker_id_t fromWorkerId() const; + + // Retrieve the device map. + const rpc::DeviceMap& deviceMap(); + + private: + // WorkerId from which this RPC originated. This is necessary for knowing + // which worker we need to contact during the backward pass. + rpc::worker_id_t fromWorkerId_; + + // Message type for this call. + rpc::MessageType messageType_; + + AutogradMetadata autogradMetadata_; + + // Since wrappedMessage_ is destructively constructed from wrappedRpc_, + // they are valid exclusively. They are used for different purpose. + // wrappedRpc_ is used while constructing receive rpcWithAutograd; + // wrappedMessage_ is used while constructing send rpcWithAutograd; + + // When receive rpcWithAutograd is constructed fromMessage, it is valid; + // When send rpcWithAutograd is constructed before toMessage, it is nullptr; + std::unique_ptr wrappedRpc_; + + // Serialized message representing wrappedRpc_. Used mostly as a cache to + // avoid serializing the request twice. + // When receive rpcWithAutograd is constructed fromMessage, it is nullptr; + // When send rpcWithAutograd is constructed before toMessage, it is valid; + c10::intrusive_ptr wrappedMessage_; + + // message type of the wrappedMessage, this is stored separately since + // wrappedMessage_ is not always guaranteed to be populated. + rpc::MessageType wrappedMessageType_; + + // Tensors part of the wrappedRpc that need to be considered for autograd. + std::vector tensors_; + + // Device mapping for tensors that are sent across an RPC to another node. + rpc::DeviceMap deviceMap_; +}; + +} // namespace autograd +} // namespace distributed +} // namespace torch diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/PrefixStore.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/PrefixStore.hpp new file mode 100644 index 0000000000000000000000000000000000000000..74399554b8cd0d000b43c55a72dd37bd9fdc8d1f --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/PrefixStore.hpp @@ -0,0 +1,64 @@ +#pragma once + +#include +#include + +namespace c10d { + +class TORCH_API PrefixStore : public Store { + public: + explicit PrefixStore(std::string prefix, c10::intrusive_ptr store); + + using Store::set; + void set(const std::string& key, const std::vector& value) override; + + using Store::compareSet; + std::vector compareSet( + const std::string& key, + const std::vector& expectedValue, + const std::vector& desiredValue) override; + + std::vector get(const std::string& key) override; + + int64_t add(const std::string& key, int64_t value) override; + + bool deleteKey(const std::string& key) override; + + int64_t getNumKeys() override; + + bool check(const std::vector& keys) override; + + void wait(const std::vector& keys) override; + + void wait( + const std::vector& keys, + const std::chrono::milliseconds& timeout) override; + + const std::chrono::milliseconds& getTimeout() const noexcept override; + + void setTimeout(const std::chrono::milliseconds& timeout) override; + + void append(const std::string& key, const std::vector& value) + override; + + std::vector> multiGet( + const std::vector& keys) override; + + void multiSet( + const std::vector& keys, + const std::vector>& values) override; + + // Returns true if this store support append, multiGet and multiSet + bool hasExtendedApi() const override; + + c10::intrusive_ptr getUnderlyingStore(); + + protected: + std::string prefix_; + c10::intrusive_ptr store_; + + std::string joinKey(const std::string& key); + std::vector joinKeys(const std::vector& keys); +}; + +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/ProcessGroupRoundRobin.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/ProcessGroupRoundRobin.hpp new file mode 100644 index 0000000000000000000000000000000000000000..8255bceebd6cf2c0d2d4c2b98e0396c1020a3d6b --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/ProcessGroupRoundRobin.hpp @@ -0,0 +1,113 @@ +#pragma once + +#include + +#include + +namespace c10d { + +constexpr const char* ROUND_ROBIN_BACKEND_NAME = "round_robin"; + +// ProcessGroupRoundRobin implements simple load balancing. +// +// It is constructed with multiple processes groups. Each call is dispatched to +// one of the specified process groups in a round robin fashion. Each process +// group instance must have the same rank and size. +// +// All functions of the class are expected to be called in the same order +// across all processes in the process group. This is the only way that we +// can guarantee to match up the same calls among all processes. +// +class TORCH_API ProcessGroupRoundRobin final : public ProcessGroup { + public: + explicit ProcessGroupRoundRobin( + int rank, + int size, + std::vector> processGroups); + + ~ProcessGroupRoundRobin() override; + + const std::string getBackendName() const override { + return std::string(ROUND_ROBIN_BACKEND_NAME); + } + + c10::intrusive_ptr broadcast( + std::vector& tensors, + const BroadcastOptions& opts = BroadcastOptions()) override; + + c10::intrusive_ptr allreduce( + std::vector& tensors, + const AllreduceOptions& opts = AllreduceOptions()) override; + + c10::intrusive_ptr allreduce_coalesced( + std::vector& tensors, + const AllreduceCoalescedOptions& opts = + AllreduceCoalescedOptions()) override; + + c10::intrusive_ptr reduce( + std::vector& tensors, + const ReduceOptions& opts = ReduceOptions()) override; + + c10::intrusive_ptr allgather( + std::vector>& outputs, + std::vector& inputs, + const AllgatherOptions& opts = AllgatherOptions()) override; + + c10::intrusive_ptr _allgather_base( + at::Tensor& outputBuffer, + at::Tensor& inputBuffer, + const AllgatherOptions& opts = AllgatherOptions()) override; + + c10::intrusive_ptr allgather_coalesced( + std::vector>& outputTensorLists, + std::vector& inputTensors, + const AllgatherOptions& opts = AllgatherOptions()) override; + + c10::intrusive_ptr gather( + std::vector>& outputs, + std::vector& inputs, + const GatherOptions& opts = GatherOptions()) override; + + c10::intrusive_ptr scatter( + std::vector& outputs, + std::vector>& inputs, + const ScatterOptions& opts = ScatterOptions()) override; + + c10::intrusive_ptr reduce_scatter( + std::vector& outputs, + std::vector>& inputs, + const ReduceScatterOptions& opts = ReduceScatterOptions()) override; + + c10::intrusive_ptr alltoall_base( + at::Tensor& outputTensor, + at::Tensor& inputTensor, + std::vector& outputSplitSizes, + std::vector& inputSplitSizes, + const AllToAllOptions& opts = AllToAllOptions()) override; + + c10::intrusive_ptr send( + std::vector& tensors, + int dstRank, + int tag) override; + + c10::intrusive_ptr recv( + std::vector& tensors, + int srcRank, + int tag) override; + + c10::intrusive_ptr recvAnysource( + std::vector& tensors, + int tag) override; + + c10::intrusive_ptr barrier( + const BarrierOptions& opts = BarrierOptions()) override; + + private: + std::vector> processGroups_; + std::vector>::const_iterator iterator_; + + // Returns the next ProcessGroup to use. + const c10::intrusive_ptr& next(); +}; + +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/ProcessGroupUCC.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/ProcessGroupUCC.hpp new file mode 100644 index 0000000000000000000000000000000000000000..22fc58134566c67fd455bd5abbedbe0cc2a8df41 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/ProcessGroupUCC.hpp @@ -0,0 +1,353 @@ +#pragma once + +#ifdef USE_C10D_UCC + +#include + +#include +#include +#include +#include +#include +#include + +#include +#include +#include +#include +#ifdef USE_CUDA +#include +#include +#endif + +namespace c10d { + +#define TORCH_UCC_DEVICE_NOT_SET -2 + +#ifdef USE_CUDA +#define SAVE_TENSORS(_TENSORS, _DATA) \ + do { \ + if ((_TENSORS)[0].device().is_cuda()) { \ + for (const auto i : c10::irange((_TENSORS).size())) { \ + c10::cuda::CUDACachingAllocator::recordStream( \ + (_TENSORS)[i].storage().data_ptr(), (*stream)); \ + } \ + } else { \ + (_DATA) = (_TENSORS); \ + } \ + } while (0) + +#else +#define SAVE_TENSORS(_TENSORS, _DATA) (_DATA) = (_TENSORS); +#endif + +constexpr const char* UCC_BACKEND_NAME = "ucc"; + +struct event_pool_t { +#ifdef USE_CUDA + std::queue> event_pool; +#endif + std::mutex event_pool_mutex; +}; + +class Comm; + +// UCC does not support multiple CUDA devices per process. +class TORCH_API ProcessGroupUCC : public Backend { + private: + void set_timeout(ucc_coll_args_t& args); + + public: + class WorkData { + public: + std::vector src; + std::vector dst; + std::vector flat; + WorkData() {} + virtual ~WorkData() = default; + }; + class AlltoallWorkData : public WorkData { + public: + AlltoallWorkData(int size) + : send_lengths(size), + send_offsets(size), + recv_lengths(size), + recv_offsets(size) {} + std::vector send_lengths; + std::vector send_offsets; + std::vector recv_lengths; + std::vector recv_offsets; + }; + + class AllgathervWorkData : public WorkData { + public: + AllgathervWorkData(int size) : recv_lengths(size), recv_offsets(size) {} + std::vector recv_lengths; + std::vector recv_offsets; + }; + + class ScattervWorkData : public WorkData { + public: + ScattervWorkData(int size) : send_lengths(size), send_offsets(size) {} + std::vector send_lengths; + std::vector send_offsets; + }; + + class ProgressEntry { + friend class ProcessGroupUCC; + friend class Comm; + + public: + ProgressEntry(CommBase* comm, ucc_coll_req_h request) + : status_(UCC_INPROGRESS), comm_(comm), request_(request) {} + // Finalizes UCC status or exception of collective request. + void finalize(std::exception_ptr eptr = nullptr); + ucc_status_t status_; + CommBase* comm_; + ucc_coll_req_h request_; + std::unique_ptr data; + c10::intrusive_ptr future_; + std::exception_ptr eptr_; + }; + + class WorkUCC : public Work { + friend class ProcessGroupUCC; + friend class Comm; + + public: + WorkUCC( + OpType opType, + uint64_t seq, + const char* prof_title, + const c10::optional>& inputs, + const c10::intrusive_ptr& logger) + : Work(-1, opType, prof_title, inputs), logger_(logger), seq_(seq) {} + ~WorkUCC(); + void setException(); + void setAndThrowException(); + bool isCompleted() override; + bool isSuccess() const override; + bool wait(std::chrono::milliseconds timeout = kUnsetTimeout) override; + c10::intrusive_ptr getFuture() override; + std::vector result() override; + int sourceRank() const override; +#ifdef USE_CUDA + std::unique_ptr fence = nullptr; + event_pool_t* ep = nullptr; +#endif + int sourceRank_; + + protected: + std::shared_ptr entry_; + c10::intrusive_ptr logger_; + uint64_t seq_; + + private: + // The future returned by getFuture. + c10::intrusive_ptr future_; + // Store a reference to collective's outputs, used by result + std::shared_ptr> outputs_; + }; + + explicit ProcessGroupUCC( + const c10::intrusive_ptr& store, + int rank = -1, + int size = -1, + std::chrono::duration timeout = kBackendDefaultTimeout); + + void initComm(c10::Device dev); + + ~ProcessGroupUCC() override; + + const std::string getBackendName() const override { + return std::string(UCC_BACKEND_NAME); + } + +#ifdef USE_CUDA + std::unique_ptr getPooledEvent(); +#endif + + // Performs a health check by initializing dummy UCC & UCX communicators and + // then destroying them. This will help indicate and signal any + // UCC/UCX-related issues prior to the first collective. The actual + // initialization and subsequent destruction is ran on a separate thread and + // the main thread is signalled about timeouts/errors to report to the + // application. + void runHealthCheck(); + + template + c10::intrusive_ptr collective_post( + OpType opType, + PreProcess preproc, + PostProcess postproc, + ucc_coll_args_t& coll, + std::unique_ptr data, + c10::Device dev, + std::vector& inputTensors, + std::vector& outputTensors, + const char* prof_title); + + c10::intrusive_ptr broadcast( + std::vector& data, + const BroadcastOptions& opts = BroadcastOptions()) override; + + c10::intrusive_ptr allreduce( + std::vector& tensors, + const AllreduceOptions& opts = AllreduceOptions()) override; + + c10::intrusive_ptr allreduce_coalesced( + std::vector& tensors, + const AllreduceCoalescedOptions& opts = + AllreduceCoalescedOptions()) override; + + c10::intrusive_ptr reduce( + std::vector& tensors, + const ReduceOptions& opts = ReduceOptions()) override; + + c10::intrusive_ptr allgather( + std::vector>& outputTensors, + std::vector& inputTensors, + const AllgatherOptions& opts = AllgatherOptions()) override; + + c10::intrusive_ptr _allgather_base( + at::Tensor& outputBuffer, + at::Tensor& inputBuffer, + const AllgatherOptions& opts = AllgatherOptions()) override; + + c10::intrusive_ptr barrier( + const BarrierOptions& opts = BarrierOptions()) override; + + c10::intrusive_ptr gather( + std::vector>& outputTensors, + std::vector& inputTensors, + const GatherOptions& opts = GatherOptions()) override; + + c10::intrusive_ptr scatter( + std::vector& outputTensors, + std::vector>& inputTensors, + const ScatterOptions& opts = ScatterOptions()) override; + + c10::intrusive_ptr reduce_scatter( + std::vector& outputTensors, + std::vector>& inputTensors, + const ReduceScatterOptions& opts = ReduceScatterOptions()) override; + + c10::intrusive_ptr alltoall_base( + at::Tensor& outputTensor, + at::Tensor& inputTensor, + std::vector& outputSplitSizes, + std::vector& inputSplitSizes, + const AllToAllOptions& opts = AllToAllOptions()) override; + + c10::intrusive_ptr alltoall( + std::vector& outputTensors, + std::vector& inputTensors, + const AllToAllOptions& opts = AllToAllOptions()) override; + + c10::intrusive_ptr send( + std::vector& tensors, + int dstRank, + int tag) override; + + c10::intrusive_ptr recv( + std::vector& tensors, + int srcRank, + int tag) override; + + // Counting for the sequential number of UCC collective_post call. + uint64_t seq_{0}; + + // Agrees on an initial sequence number for the whole group by having rank 0 + // create it and broadcast it to other ranks using the store. + void setSequenceNumberForGroup() override; + + // Retrieves the current sequence number for the whole group, which should be + // in sync. If the returned number is not consistent across the group, it + // may indicate that there is some sort of collective desynchronization. + uint64_t getSequenceNumberForGroup() override; + + static c10::intrusive_ptr createProcessGroupUCC( + const c10::intrusive_ptr<::c10d::Store>& store, + int rank, + int size, + const std::chrono::duration& timeout); + + protected: + const std::chrono::duration timeout_; + std::shared_ptr oob; + std::shared_ptr comm = {nullptr}; + uint32_t comm_id; + ucc_team_h team{nullptr}; + ucc_ee_h cuda_ee{nullptr}; + ucc_ee_h cuda_ee_p2p[2]{nullptr, nullptr}; + +#ifdef USE_CUDA + std::unique_ptr stream = nullptr; + std::unique_ptr stream_p2p[2] = {nullptr, nullptr}; + event_pool_t ep; +#endif + c10::intrusive_ptr logger; +}; + +class Comm { + c10::intrusive_ptr logger; + std::shared_ptr oob; + CommUCC ucc_comm; + std::mutex mutex; + std::thread progress_thread; + std::condition_variable queue_produce_cv; + std::condition_variable queue_consume_cv; + std::deque> progress_queue; + bool stop_progress_loop; + bool collective_inprogress; + torch_ucc_phase_t finalize_phase; + + public: + c10::DeviceIndex cuda_device_index; + Comm( + const c10::intrusive_ptr& logger, + std::shared_ptr oob, + c10::Device dev, + bool is_health_check); + + ~Comm(); + + void ucc_create_team( + ucc_team_h& team, + std::shared_ptr oob); + + void ucc_destroy_team(ucc_team_h& team); + + c10::intrusive_ptr enqueue_p2p( + OpType opType, + ucc_coll_req_h request, + const char* prof_title); + +#ifdef USE_CUDA + void enqueue_cuda_collective( + std::unique_ptr data, + c10::intrusive_ptr work, + ucc_coll_args_t& coll, + ucc_team_h team, + ucc_ee_h ee); +#endif + + void enqueue_collective( + std::unique_ptr data, + c10::intrusive_ptr work, + ucc_coll_args_t& coll, + ucc_team_h team); + + static std::shared_ptr get_comm( + uint32_t& id, + c10::Device dev, + std::shared_ptr oob, + const c10::intrusive_ptr& logger, + bool is_health_check = false); + + void progress_loop(); +}; + +} // namespace c10d + +#endif // USE_C10D_UCC diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/TCPStore.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/TCPStore.hpp new file mode 100644 index 0000000000000000000000000000000000000000..6771baaf7373946ac9ed6acc0f61e432db995427 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/TCPStore.hpp @@ -0,0 +1,161 @@ +#pragma once + +#include +#include +#include + +#include + +namespace c10d { +namespace detail { + +class TCPServer; + +class TCPClient; + +struct SocketAddress { + std::string host{}; + std::uint16_t port{}; +}; + +class Counter { + public: + void update(double val); + std::unordered_map observe() const; + + double mean() const noexcept { + return mean_; + } + int64_t count() const noexcept { + return count_; + } + double variance() const noexcept { + return m2_ / count_; + } + double sample_variance() const noexcept { + return m2_ / (count_ - 1); + } + + private: + int64_t count_ = 0; + double mean_ = 0; + double m2_ = 0; +}; + +} // namespace detail + +struct TCPStoreOptions { + static constexpr std::uint16_t kDefaultPort = 29500; + + std::uint16_t port = kDefaultPort; + bool isServer = false; + c10::optional numWorkers = c10::nullopt; + bool waitWorkers = true; + std::chrono::milliseconds timeout = Store::kDefaultTimeout; + + // A boolean value indicating whether multiple store instances can be + // initialized with the same host:port pair. + bool multiTenant = false; + + // If specified, and if isServer is true, the underlying TCPServer will take + // over the bound socket associated to this fd. This option is useful to avoid + // port assignment races in certain scenarios. + c10::optional masterListenFd = c10::nullopt; + + // A boolean value indicating whether to use the experimental libUV backend. + bool useLibUV = false; +}; + +class TORCH_API TCPStore : public Store { + public: + explicit TCPStore(std::string host, const TCPStoreOptions& opts = {}); + + [[deprecated("Use TCPStore(host, opts) instead.")]] explicit TCPStore( + const std::string& masterAddr, + std::uint16_t masterPort, + c10::optional numWorkers = c10::nullopt, + bool isServer = false, + const std::chrono::milliseconds& timeout = kDefaultTimeout, + bool waitWorkers = true); + + ~TCPStore() override; + + void set(const std::string& key, const std::vector& value) override; + + std::vector compareSet( + const std::string& key, + const std::vector& expectedValue, + const std::vector& desiredValue) override; + + std::vector get(const std::string& key) override; + + int64_t add(const std::string& key, int64_t value) override; + + bool deleteKey(const std::string& key) override; + + bool check(const std::vector& keys) override; + + int64_t getNumKeys() override; + + void wait(const std::vector& keys) override; + + void wait( + const std::vector& keys, + const std::chrono::milliseconds& timeout) override; + + void append(const std::string& key, const std::vector& value) + override; + + std::vector> multiGet( + const std::vector& keys) override; + + void multiSet( + const std::vector& keys, + const std::vector>& values) override; + + bool hasExtendedApi() const override; + + // Waits for all workers to join. + void waitForWorkers(); + + // Returns the hostname used by the TCPStore. + const std::string& getHost() const noexcept { + return addr_.host; + } + + // Returns the port used by the TCPStore. + std::uint16_t getPort() const noexcept { + return addr_.port; + } + + std::unordered_map> + collectClientCounters() const noexcept; + + bool isLibUvBackend() const noexcept { + return usingLibUv_; + } + + private: + int64_t incrementValueBy(const std::string& key, int64_t delta); + + void validate(void); + + std::vector doGet(const std::string& key); + + void doWait( + c10::ArrayRef keys, + std::chrono::milliseconds timeout); + + detail::SocketAddress addr_; + std::shared_ptr server_; + std::unique_ptr client_; + c10::optional numWorkers_; + + const std::string initKey_ = "init/"; + const std::string keyPrefix_ = "/"; + std::mutex activeOpLock_; + std::unordered_map clientCounters_; + bool usingLibUv_ = false; +}; + +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/Types.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/Types.hpp new file mode 100644 index 0000000000000000000000000000000000000000..dc9a9856965addb9792796d4928c7592ea38c64a --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/Types.hpp @@ -0,0 +1,180 @@ +#pragma once + +#include + +#include +#include + +#include +#include + +#include +#include + +namespace c10d { + +// Base class for supplementary data potentially needed by ReduceOps +struct TORCH_API _SupplementBase : torch::CustomClassHolder { + ~_SupplementBase() override = default; +}; + +// Supplementary data specific to NCCL PREMUL_SUM +// The point of use in ProcessGroupNCCL knows how to unpack it. +struct NCCLPreMulSumSupplement : _SupplementBase { + double double_factor{0.0}; + at::Tensor tensor_factor; + NCCLPreMulSumSupplement(double f) : double_factor{f} {} + NCCLPreMulSumSupplement(at::Tensor t) : tensor_factor{std::move(t)} { + TORCH_CHECK_EQ(tensor_factor.numel(), 1); + } +}; + +// Other ReduceOps that need different supplementary data can also +// derive from _SupplementBase. +struct TORCH_API ReduceOp : torch::CustomClassHolder { + // note(crcrpar): RedOpType could be defined outside of `ReduceOp` + enum RedOpType : uint8_t { + SUM = 0, + AVG = 1, + PRODUCT = 2, + MIN = 3, + MAX = 4, + BAND = 5, // Bitwise AND + BOR = 6, // Bitwise OR + BXOR = 7, // Bitwise XOR + PREMUL_SUM = 8, // Multiply by a user-supplied constant before summing. + UNUSED = 9 + }; + + ReduceOp() = default; + + ReduceOp(RedOpType op) : op_(op) { + TORCH_INTERNAL_ASSERT( + op_ != PREMUL_SUM, + "Use `torch.distributed._make_nccl_premul_sum` to create an instance of ReduceOp with PREMUL_SUM"); + } + + ReduceOp( + RedOpType op, + c10::intrusive_ptr<_SupplementBase> optional_supplement) { + if (optional_supplement.get()) { + op_ = op; + } else { + supplement_ = optional_supplement; + } + } + + // The heap resource supplement_, if it exists, is managed by a + // c10::intrusive_ptr, so constructors and operator= can be simple + ReduceOp(const ReduceOp& other) + : op_(other.op_), supplement_(other.supplement_) {} + + const ReduceOp& operator=(const ReduceOp& other) { + op_ = other.op_; + supplement_ = other.supplement_; + return *this; + } + + operator RedOpType() const { + return op_; + } + + bool operator==(const std::uint8_t other) { + TORCH_INTERNAL_ASSERT(other < 9, "Invalid other op value"); + return other == op_; + } + + bool operator==(const ReduceOp::RedOpType other) { + return *this == static_cast(other); + } + + // todo(crcrpar): Handle `RedOpType::PREMUL_SUM` with its scaling factor. + bool operator==(const ReduceOp& other) { + return *this == other.op_; + } + + RedOpType op_ = SUM; + // supplement_ is "type-erased" storage for optional supplementary + // data the op might need. + // The point of use will know the derived type supplement_ really is, + // and downcast its pointer to extract the data as the needed type(s). + // Right now, only PREMUL_SUM needs supplementary data, but the same + // mechanism could extend to support other nontrivial reduce ops with + // different supplementary payloads. + c10::intrusive_ptr<_SupplementBase> supplement_; +}; + +template +ReduceOp makeNCCLPreMulSum(const T& factor) { + ReduceOp rop; + rop.op_ = ReduceOp::PREMUL_SUM; + rop.supplement_ = c10::make_intrusive(factor); + return rop; +} + +constexpr auto kUnsetTimeout = std::chrono::milliseconds(-1); + +struct BroadcastOptions { + int64_t rootRank = 0; + int64_t rootTensor = 0; + std::chrono::milliseconds timeout = kUnsetTimeout; + bool asyncOp = true; +}; + +struct AllreduceOptions { + ReduceOp reduceOp = ReduceOp::SUM; + std::chrono::milliseconds timeout = kUnsetTimeout; + c10::optional sparseIndices = c10::nullopt; +}; + +struct AllreduceCoalescedOptions : AllreduceOptions {}; + +struct ReduceOptions { + ReduceOp reduceOp = ReduceOp::SUM; + int64_t rootRank = 0; + int64_t rootTensor = 0; + std::chrono::milliseconds timeout = kUnsetTimeout; +}; + +struct AllgatherOptions { + std::chrono::milliseconds timeout = kUnsetTimeout; + bool asyncOp = true; +}; + +struct GatherOptions { + int64_t rootRank = 0; + std::chrono::milliseconds timeout = kUnsetTimeout; +}; + +struct ScatterOptions { + int64_t rootRank = 0; + std::chrono::milliseconds timeout = kUnsetTimeout; + bool asyncOp = true; +}; + +struct ReduceScatterOptions { + ReduceOp reduceOp = ReduceOp::SUM; + std::chrono::milliseconds timeout = kUnsetTimeout; + bool asyncOp = true; +}; + +struct AllToAllOptions { + std::chrono::milliseconds timeout = kUnsetTimeout; +}; + +struct BarrierOptions { + std::vector device_ids; + std::chrono::milliseconds timeout = kUnsetTimeout; + c10::optional device; +}; + +struct DistributedBackendOptions { + c10::intrusive_ptr<::c10d::Store> store; + int group_rank; + int group_size; + std::chrono::duration timeout; + std::string group_id; + std::vector global_ranks_in_group; +}; + +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/WinSockUtils.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/WinSockUtils.hpp new file mode 100644 index 0000000000000000000000000000000000000000..9b2b1aa245f841eac7d61f2238bf7a8385846612 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/WinSockUtils.hpp @@ -0,0 +1,27 @@ +#pragma once + +#include + +namespace c10d { +namespace tcputil { + +#define CONNECT_SOCKET_OFFSET 1 + +inline int poll(struct pollfd* fdArray, unsigned long fds, int timeout) { + return WSAPoll(fdArray, fds, timeout); +} + +inline void addPollfd( + std::vector& fds, + int socket, + short events) { + fds.push_back({(SOCKET)socket, events}); +} + +inline struct ::pollfd getPollfd(int socket, short events) { + struct ::pollfd res = {(SOCKET)socket, events}; + return res; +} + +} // namespace tcputil +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/c10d.h b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/c10d.h new file mode 100644 index 0000000000000000000000000000000000000000..5151a33f7ee351184e53daa68155dcc6c7390358 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/c10d.h @@ -0,0 +1,13 @@ +#pragma once + +#include + +namespace torch { +namespace distributed { +namespace c10d { + +PyMethodDef* python_functions(); + +} // namespace c10d +} // namespace distributed +} // namespace torch diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/exception.h b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/exception.h new file mode 100644 index 0000000000000000000000000000000000000000..a00b6f70653aaa8d4456033800c5dc69942e3b03 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/exception.h @@ -0,0 +1,33 @@ +// Copyright (c) Facebook, Inc. and its affiliates. +// All rights reserved. +// +// This source code is licensed under the BSD-style license found in the +// LICENSE file in the root directory of this source tree. + +#pragma once + +#include + +#include +#include + +// Utility macro similar to C10_THROW_ERROR, the major difference is that this +// macro handles exception types defined in the c10d namespace, whereas +// C10_THROW_ERROR requires an exception to be defined in the c10 namespace. +#define C10D_THROW_ERROR(err_type, msg) \ + throw ::c10d::err_type( \ + {__func__, __FILE__, static_cast(__LINE__)}, msg) + +namespace c10d { + +using c10::DistNetworkError; + +class TORCH_API SocketError : public DistNetworkError { + using DistNetworkError::DistNetworkError; +}; + +class TORCH_API TimeoutError : public DistNetworkError { + using DistNetworkError::DistNetworkError; +}; + +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/reducer_timer.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/reducer_timer.hpp new file mode 100644 index 0000000000000000000000000000000000000000..acd8975c4d2db13cac2e988238a0a8a2a191df68 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/reducer_timer.hpp @@ -0,0 +1,81 @@ +#pragma once +#include +#include + +namespace c10d { +constexpr int kUnsetTime = -1; + +inline int64_t current_time_in_nanos() { + return c10::getTime(); +} + +class TORCH_API Timer { + private: + // The timestamp of forward call start time in each iteration. + int64_t forward_start_time = kUnsetTime; + // The timestamp of backward computation start and end time in each + // iteration. + int64_t backward_compute_start_time = kUnsetTime; + int64_t backward_compute_end_time = kUnsetTime; + // The timestamp of first communication call start time in each iteration. + int64_t backward_comm_start_time = kUnsetTime; + // The timestamp of last communication call end time in each iteration. + int64_t backward_comm_end_time = kUnsetTime; + + public: + enum class Event { + kForwardStart, + kBackwardComputeStart, + kBackwardComputeEnd, + kBackwardCommStart, + kBackwardCommEnd, + }; + + // Record the current event, i.e., mark it as having occurred now. Default + // CPU implementation. + virtual void record(Event event) { + getTimeRef(event) = current_time_in_nanos(); + } + + // Return the difference between when two events occurred, in nanoseconds. + // Or nullopt if one of them hasn't been recorded. + virtual c10::optional measureDifference(Event start, Event end) = 0; + + virtual ~Timer() = default; + + // Return host-side timestamp, or nullopt if it has not yet been recorded. + c10::optional getTimestamp(Event event) { + auto time = getTimeRef(event); + if (time == kUnsetTime) { + return c10::nullopt; + } else { + return time; + } + } + + // Return host-side time member variable corresponding to the given event. + int64_t& getTimeRef(Event event) { + switch (event) { + case Event::kForwardStart: + return forward_start_time; + case Event::kBackwardComputeStart: + return backward_compute_start_time; + case Event::kBackwardComputeEnd: + return backward_compute_end_time; + case Event::kBackwardCommStart: + return backward_comm_start_time; + case Event::kBackwardCommEnd: + return backward_comm_end_time; + default: + TORCH_INTERNAL_ASSERT(false); + } + } +}; + +TORCH_DECLARE_TYPED_REGISTRY( + TimerRegistry, + c10::DeviceType, + Timer, + std::unique_ptr, + c10::Device); +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/sequence_num.hpp b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/sequence_num.hpp new file mode 100644 index 0000000000000000000000000000000000000000..50c800e8d7980d20fc942043e0a6894a9d31872c --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/sequence_num.hpp @@ -0,0 +1,65 @@ +#pragma once + +#include +#include +#include +#include + +namespace c10d { +const int kUnsetSeqNum = 0; + +namespace { +constexpr int kByteOffset = 8; +} + +// Converts from int to char vec to write in store +template +inline std::vector toVec(uint64_t num, int numBytes) { + std::vector values; + // Read off bytes from right to left, pushing them into + // char array. + for (const auto i : c10::irange(numBytes)) { + uint8_t x = (num >> (kByteOffset * i)) & 0xff; + values.push_back(static_cast(x)); + } + return values; +} + +// Converts from char vec (such as from store read) to int. +template +inline uint64_t fromVec(const std::vector& values) { + uint64_t num = 0; + // Set each byte at the correct location on num + for (const auto i : c10::irange(values.size())) { + uint8_t x = static_cast(values[i]); + num |= (static_cast(x) << (kByteOffset * i)); + } + return num; +} + +class TORCH_API SequenceNum { + public: + SequenceNum(); + explicit SequenceNum(const uint64_t num); + // Retrieve num_. Will throw if not set. + uint64_t get() const; + // Increment num_. Will throw if not set. + void increment(); + // Increment num_ and return the old value. Will throw if not set. + uint64_t getAndIncrement(); + // Sets num_ + void set(const uint64_t num); + // Returns true if this SequenceNum is properly initialized with a value, else + // false. + bool isSet() const; + + SequenceNum& operator=(const SequenceNum& other); + + SequenceNum(const SequenceNum& other); + + private: + c10::optional num_; + mutable std::mutex lock_; +}; + +} // namespace c10d diff --git a/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/socket.h b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/socket.h new file mode 100644 index 0000000000000000000000000000000000000000..52832722304cf651b6333f849f29fd9d96a0fc42 --- /dev/null +++ b/evalkit_tf437/lib/python3.10/site-packages/torch/include/torch/csrc/distributed/c10d/socket.h @@ -0,0 +1,93 @@ +// Copyright (c) Meta Platforms, Inc. and its affiliates. +// All rights reserved. +// +// This source code is licensed under the BSD-style license found in the +// LICENSE file in the root directory of this source tree. + +#pragma once + +#include +#include +#include +#include + +#include +#include +#include + +namespace c10d { +namespace detail { + +class SocketOptions { + public: + SocketOptions& prefer_ipv6(bool value) noexcept { + prefer_ipv6_ = value; + + return *this; + } + + bool prefer_ipv6() const noexcept { + return prefer_ipv6_; + } + + SocketOptions& connect_timeout(std::chrono::seconds value) noexcept { + connect_timeout_ = value; + + return *this; + } + + std::chrono::seconds connect_timeout() const noexcept { + return connect_timeout_; + } + + private: + bool prefer_ipv6_ = true; + std::chrono::seconds connect_timeout_{30}; +}; + +class SocketImpl; + +class Socket { + public: + // This function initializes the underlying socket library and must be called + // before any other socket function. + static void initialize(); + + static Socket listen(std::uint16_t port, const SocketOptions& opts = {}); + + static Socket listenFromFd(int fd, std::uint16_t expected_port); + + static Socket connect( + const std::string& host, + std::uint16_t port, + const SocketOptions& opts = {}); + + Socket() noexcept = default; + + Socket(const Socket& other) = delete; + + Socket& operator=(const Socket& other) = delete; + + Socket(Socket&& other) noexcept; + + Socket& operator=(Socket&& other) noexcept; + + ~Socket(); + + Socket accept() const; + + int handle() const noexcept; + + std::uint16_t port() const; + + bool waitForInput(std::chrono::milliseconds timeout); + + private: + explicit Socket(std::unique_ptr&& impl) noexcept; + + std::unique_ptr impl_; +}; + +} // namespace detail + +} // namespace c10d