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'''simple docstring''' import argparse import torch from torch import nn from transformers import MaMaaaConfig, MaMaaaForConditionalGeneration def UpperCamelCase_ ( _UpperCAmelCase : int ) -> Dict: """simple docstring""" _UpperCAmelCase : Optional[int] = [ "encoder.version", "decoder.version", "model.encoder.version", "model.decoder.version", "decoder.output_projection.weight", "_float_tensor", "encoder.embed_positions._float_tensor", "decoder.embed_positions._float_tensor", ] for k in ignore_keys: state_dict.pop(_UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : List[Any] ) -> Union[str, Any]: """simple docstring""" _UpperCAmelCase , _UpperCAmelCase : List[Any] = emb.weight.shape _UpperCAmelCase : Optional[int] = nn.Linear(_UpperCAmelCase , _UpperCAmelCase , bias=_UpperCAmelCase ) _UpperCAmelCase : List[str] = emb.weight.data return lin_layer def UpperCamelCase_ ( _UpperCAmelCase : Any ) -> int: """simple docstring""" _UpperCAmelCase : List[Any] = torch.load(_UpperCAmelCase , map_location="cpu" ) _UpperCAmelCase : Any = mam_aaa["args"] or mam_aaa["cfg"]["model"] _UpperCAmelCase : List[Any] = mam_aaa["model"] remove_ignore_keys_(_UpperCAmelCase ) _UpperCAmelCase : int = state_dict["encoder.embed_tokens.weight"].shape[0] _UpperCAmelCase : Tuple = MaMaaaConfig( vocab_size=_UpperCAmelCase , max_position_embeddings=1_024 , encoder_layers=args.encoder_layers , decoder_layers=args.decoder_layers , encoder_attention_heads=args.encoder_attention_heads , decoder_attention_heads=args.decoder_attention_heads , encoder_ffn_dim=args.encoder_ffn_embed_dim , decoder_ffn_dim=args.decoder_ffn_embed_dim , d_model=args.encoder_embed_dim , encoder_layerdrop=args.encoder_layerdrop , decoder_layerdrop=args.decoder_layerdrop , dropout=args.dropout , attention_dropout=args.attention_dropout , activation_dropout=args.activation_dropout , activation_function="relu" , ) _UpperCAmelCase : Union[str, Any] = state_dict["decoder.embed_tokens.weight"] _UpperCAmelCase : Union[str, Any] = MaMaaaForConditionalGeneration(_UpperCAmelCase ) model.model.load_state_dict(_UpperCAmelCase , strict=_UpperCAmelCase ) _UpperCAmelCase : Optional[Any] = make_linear_from_emb(model.model.shared ) return model if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Union[str, Any] = argparse.ArgumentParser() # Required parameters parser.add_argument("""fairseq_path""", type=str, help="""path to a model.pt on local filesystem.""") parser.add_argument("""pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model.""") __SCREAMING_SNAKE_CASE : int = parser.parse_args() __SCREAMING_SNAKE_CASE : Optional[int] = convert_fairseq_mamaaa_checkpoint_from_disk(args.fairseq_pathß) model.save_pretrained(args.pytorch_dump_folder_path)
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : list ) -> list: """simple docstring""" _UpperCAmelCase : List[Any] = len(_UpperCAmelCase ) for _ in range(_UpperCAmelCase ): for i in range(_ % 2 , arr_size - 1 , 2 ): if arr[i + 1] < arr[i]: _UpperCAmelCase , _UpperCAmelCase : int = arr[i + 1], arr[i] return arr if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = list(range(10, 0, -1)) print(F'Original: {arr}. Sorted: {odd_even_transposition(arr)}')
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'''simple docstring''' import bza import gzip import lzma import os import shutil import struct import tarfile import warnings import zipfile from abc import ABC, abstractmethod from pathlib import Path from typing import Dict, List, Optional, Type, Union from .. import config from .filelock import FileLock from .logging import get_logger __SCREAMING_SNAKE_CASE : Dict = get_logger(__name__) class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[str] , A : Optional[str] = None ): _UpperCAmelCase : Dict = ( os.path.join(A , config.EXTRACTED_DATASETS_DIR ) if cache_dir else config.EXTRACTED_DATASETS_PATH ) _UpperCAmelCase : Union[str, Any] = Extractor def _A ( self : Tuple , A : str ): from .file_utils import hash_url_to_filename # Path where we extract compressed archives # We extract in the cache dir, and get the extracted path name by hashing the original path" _UpperCAmelCase : Dict = os.path.abspath(A ) return os.path.join(self.extract_dir , hash_url_to_filename(A ) ) def _A ( self : int , A : str , A : bool ): return force_extract or ( not os.path.isfile(A ) and not (os.path.isdir(A ) and os.listdir(A )) ) def _A ( self : Optional[int] , A : str , A : bool = False ): _UpperCAmelCase : Union[str, Any] = self.extractor.infer_extractor_format(A ) if not extractor_format: return input_path _UpperCAmelCase : Optional[Any] = self._get_output_path(A ) if self._do_extract(A , A ): self.extractor.extract(A , A , A ) return output_path class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod @abstractmethod def _A ( cls : str , A : Union[Path, str] , **A : Dict ): ... @staticmethod @abstractmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): ... class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: List[bytes] = [] @staticmethod def _A ( A : Union[Path, str] , A : int ): with open(A , "rb" ) as f: return f.read(A ) @classmethod def _A ( cls : Any , A : Union[Path, str] , A : bytes = b"" ): if not magic_number: _UpperCAmelCase : Any = max(len(A ) for cls_magic_number in cls.magic_numbers ) try: _UpperCAmelCase : int = cls.read_magic_number(A , A ) except OSError: return False return any(magic_number.startswith(A ) for cls_magic_number in cls.magic_numbers ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod def _A ( cls : str , A : Union[Path, str] , **A : List[Any] ): return tarfile.is_tarfile(A ) @staticmethod def _A ( A : Union[str, Any] , A : str ): def resolved(A : str ) -> str: return os.path.realpath(os.path.abspath(A ) ) def badpath(A : str , A : str ) -> bool: # joinpath will ignore base if path is absolute return not resolved(os.path.join(A , A ) ).startswith(A ) def badlink(A : str , A : str ) -> bool: # Links are interpreted relative to the directory containing the link _UpperCAmelCase : List[str] = resolved(os.path.join(A , os.path.dirname(info.name ) ) ) return badpath(info.linkname , base=A ) _UpperCAmelCase : Optional[int] = resolved(A ) for finfo in members: if badpath(finfo.name , A ): logger.error(F"""Extraction of {finfo.name} is blocked (illegal path)""" ) elif finfo.issym() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Symlink to {finfo.linkname}""" ) elif finfo.islnk() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Hard link to {finfo.linkname}""" ) else: yield finfo @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) _UpperCAmelCase : int = tarfile.open(A ) tar_file.extractall(A , members=TarExtractor.safemembers(A , A ) ) tar_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = [b"\x1F\x8B"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with gzip.open(A , "rb" ) as gzip_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [ b"PK\x03\x04", b"PK\x05\x06", # empty archive b"PK\x07\x08", # spanned archive ] @classmethod def _A ( cls : Dict , A : Union[Path, str] , A : bytes = b"" ): if super().is_extractable(A , magic_number=A ): return True try: # Alternative version of zipfile.is_zipfile that has less false positives, but misses executable zip archives. # From: https://github.com/python/cpython/pull/5053 from zipfile import ( _CD_SIGNATURE, _ECD_DISK_NUMBER, _ECD_DISK_START, _ECD_ENTRIES_TOTAL, _ECD_OFFSET, _ECD_SIZE, _EndRecData, sizeCentralDir, stringCentralDir, structCentralDir, ) with open(A , "rb" ) as fp: _UpperCAmelCase : Tuple = _EndRecData(A ) if endrec: if endrec[_ECD_ENTRIES_TOTAL] == 0 and endrec[_ECD_SIZE] == 0 and endrec[_ECD_OFFSET] == 0: return True # Empty zipfiles are still zipfiles elif endrec[_ECD_DISK_NUMBER] == endrec[_ECD_DISK_START]: fp.seek(endrec[_ECD_OFFSET] ) # Central directory is on the same disk if fp.tell() == endrec[_ECD_OFFSET] and endrec[_ECD_SIZE] >= sizeCentralDir: _UpperCAmelCase : Dict = fp.read(A ) # CD is where we expect it to be if len(A ) == sizeCentralDir: _UpperCAmelCase : Any = struct.unpack(A , A ) # CD is the right size if centdir[_CD_SIGNATURE] == stringCentralDir: return True # First central directory entry has correct magic number return False except Exception: # catch all errors in case future python versions change the zipfile internals return False @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) with zipfile.ZipFile(A , "r" ) as zip_file: zip_file.extractall(A ) zip_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [b"\xFD\x37\x7A\x58\x5A\x00"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with lzma.open(A ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = [b"Rar!\x1a\x07\x00", b"Rar!\x1a\x07\x01\x00"] # RAR_ID # RAR5_ID @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.RARFILE_AVAILABLE: raise ImportError("Please pip install rarfile" ) import rarfile os.makedirs(A , exist_ok=A ) _UpperCAmelCase : List[str] = rarfile.RarFile(A ) rf.extractall(A ) rf.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x28\xb5\x2F\xFD"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.ZSTANDARD_AVAILABLE: raise ImportError("Please pip install zstandard" ) import zstandard as zstd _UpperCAmelCase : Optional[Any] = zstd.ZstdDecompressor() with open(A , "rb" ) as ifh, open(A , "wb" ) as ofh: dctx.copy_stream(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x42\x5A\x68"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with bza.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = [b"\x37\x7A\xBC\xAF\x27\x1C"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.PY7ZR_AVAILABLE: raise ImportError("Please pip install py7zr" ) import pyazr os.makedirs(A , exist_ok=A ) with pyazr.SevenZipFile(A , "r" ) as archive: archive.extractall(A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = [b"\x04\x22\x4D\x18"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.LZ4_AVAILABLE: raise ImportError("Please pip install lz4" ) import lza.frame with lza.frame.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: Dict[str, Type[BaseExtractor]] = { "tar": TarExtractor, "gzip": GzipExtractor, "zip": ZipExtractor, "xz": XzExtractor, "rar": RarExtractor, "zstd": ZstdExtractor, "bz2": BzipaExtractor, "7z": SevenZipExtractor, # <Added version="2.4.0"/> "lz4": LzaExtractor, # <Added version="2.4.0"/> } @classmethod def _A ( cls : List[Any] ): return max( len(A ) for extractor in cls.extractors.values() if issubclass(A , A ) for extractor_magic_number in extractor.magic_numbers ) @staticmethod def _A ( A : Union[Path, str] , A : int ): try: return MagicNumberBaseExtractor.read_magic_number(A , magic_number_length=A ) except OSError: return b"" @classmethod def _A ( cls : Optional[Any] , A : Union[Path, str] , A : bool = False ): warnings.warn( "Method 'is_extractable' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'infer_extractor_format' instead." , category=A , ) _UpperCAmelCase : Union[str, Any] = cls.infer_extractor_format(A ) if extractor_format: return True if not return_extractor else (True, cls.extractors[extractor_format]) return False if not return_extractor else (False, None) @classmethod def _A ( cls : Dict , A : Union[Path, str] ): # <Added version="2.4.0"/> _UpperCAmelCase : Optional[int] = cls._get_magic_number_max_length() _UpperCAmelCase : str = cls._read_magic_number(A , A ) for extractor_format, extractor in cls.extractors.items(): if extractor.is_extractable(A , magic_number=A ): return extractor_format @classmethod def _A ( cls : List[str] , A : Union[Path, str] , A : Union[Path, str] , A : Optional[str] = None , A : Optional[BaseExtractor] = "deprecated" , ): os.makedirs(os.path.dirname(A ) , exist_ok=A ) # Prevent parallel extractions _UpperCAmelCase : Tuple = str(Path(A ).with_suffix(".lock" ) ) with FileLock(A ): shutil.rmtree(A , ignore_errors=A ) if extractor_format or extractor != "deprecated": if extractor != "deprecated" or not isinstance(A , A ): # passed as positional arg warnings.warn( "Parameter 'extractor' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'extractor_format' instead." , category=A , ) _UpperCAmelCase : Tuple = extractor if extractor != "deprecated" else extractor_format else: _UpperCAmelCase : Tuple = cls.extractors[extractor_format] return extractor.extract(A , A ) else: warnings.warn( "Parameter 'extractor_format' was made required in version 2.4.0 and not passing it will raise an " "exception in 3.0.0." , category=A , ) for extractor in cls.extractors.values(): if extractor.is_extractable(A ): return extractor.extract(A , A )
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'''simple docstring''' import os from typing import Any, Callable, Dict, List, Optional, Tuple, Union import torch from torch import nn from ...models.controlnet import ControlNetModel, ControlNetOutput from ...models.modeling_utils import ModelMixin from ...utils import logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[List[ControlNetModel], Tuple[ControlNetModel]] ): super().__init__() _UpperCAmelCase : Optional[int] = nn.ModuleList(A ) def _A ( self : Dict , A : torch.FloatTensor , A : Union[torch.Tensor, float, int] , A : torch.Tensor , A : List[torch.tensor] , A : List[float] , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[Dict[str, Any]] = None , A : bool = False , A : bool = True , ): for i, (image, scale, controlnet) in enumerate(zip(A , A , self.nets ) ): _UpperCAmelCase , _UpperCAmelCase : str = controlnet( A , A , A , A , A , A , A , A , A , A , A , ) # merge samples if i == 0: _UpperCAmelCase , _UpperCAmelCase : List[Any] = down_samples, mid_sample else: _UpperCAmelCase : Optional[int] = [ samples_prev + samples_curr for samples_prev, samples_curr in zip(A , A ) ] mid_block_res_sample += mid_sample return down_block_res_samples, mid_block_res_sample def _A ( self : List[str] , A : Union[str, os.PathLike] , A : bool = True , A : Callable = None , A : bool = False , A : Optional[str] = None , ): _UpperCAmelCase : str = 0 _UpperCAmelCase : str = save_directory for controlnet in self.nets: controlnet.save_pretrained( A , is_main_process=A , save_function=A , safe_serialization=A , variant=A , ) idx += 1 _UpperCAmelCase : Tuple = model_path_to_save + F"""_{idx}""" @classmethod def _A ( cls : int , A : Optional[Union[str, os.PathLike]] , **A : Tuple ): _UpperCAmelCase : str = 0 _UpperCAmelCase : int = [] # load controlnet and append to list until no controlnet directory exists anymore # first controlnet has to be saved under `./mydirectory/controlnet` to be compliant with `DiffusionPipeline.from_prertained` # second, third, ... controlnets have to be saved under `./mydirectory/controlnet_1`, `./mydirectory/controlnet_2`, ... _UpperCAmelCase : int = pretrained_model_path while os.path.isdir(A ): _UpperCAmelCase : List[str] = ControlNetModel.from_pretrained(A , **A ) controlnets.append(A ) idx += 1 _UpperCAmelCase : Dict = pretrained_model_path + F"""_{idx}""" logger.info(F"""{len(A )} controlnets loaded from {pretrained_model_path}.""" ) if len(A ) == 0: raise ValueError( F"""No ControlNets found under {os.path.dirname(A )}. Expected at least {pretrained_model_path + '_0'}.""" ) return cls(A )
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'''simple docstring''' import os import re import warnings from shutil import copyfile from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import is_sentencepiece_available, logging if is_sentencepiece_available(): from .tokenization_ta import TaTokenizer else: __SCREAMING_SNAKE_CASE : Tuple = None __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = {"""vocab_file""": """spiece.model""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : str = { """vocab_file""": { """t5-small""": """https://huggingface.co/t5-small/resolve/main/spiece.model""", """t5-base""": """https://huggingface.co/t5-base/resolve/main/spiece.model""", """t5-large""": """https://huggingface.co/t5-large/resolve/main/spiece.model""", """t5-3b""": """https://huggingface.co/t5-3b/resolve/main/spiece.model""", """t5-11b""": """https://huggingface.co/t5-11b/resolve/main/spiece.model""", }, """tokenizer_file""": { """t5-small""": """https://huggingface.co/t5-small/resolve/main/tokenizer.json""", """t5-base""": """https://huggingface.co/t5-base/resolve/main/tokenizer.json""", """t5-large""": """https://huggingface.co/t5-large/resolve/main/tokenizer.json""", """t5-3b""": """https://huggingface.co/t5-3b/resolve/main/tokenizer.json""", """t5-11b""": """https://huggingface.co/t5-11b/resolve/main/tokenizer.json""", }, } # TODO(PVP) - this should be removed in Transformers v5 __SCREAMING_SNAKE_CASE : List[str] = { """t5-small""": 512, """t5-base""": 512, """t5-large""": 512, """t5-3b""": 512, """t5-11b""": 512, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = VOCAB_FILES_NAMES __UpperCamelCase: Dict = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: Union[str, Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Optional[Any] = ["input_ids", "attention_mask"] __UpperCamelCase: Optional[Any] = TaTokenizer __UpperCamelCase: List[int] = [] def __init__( self : str , A : Optional[Any]=None , A : Tuple=None , A : Dict="</s>" , A : Dict="<unk>" , A : Dict="<pad>" , A : str=100 , A : int=None , **A : int , ): # Add extra_ids to the special token list if extra_ids > 0 and additional_special_tokens is None: _UpperCAmelCase : Tuple = [F"""<extra_id_{i}>""" for i in range(A )] elif extra_ids > 0 and additional_special_tokens is not None: # Check that we have the right number of extra special tokens _UpperCAmelCase : List[str] = len(set(filter(lambda A : bool("extra_id_" in str(A ) ) , A ) ) ) if extra_tokens != extra_ids: raise ValueError( F"""Both extra_ids ({extra_ids}) and additional_special_tokens ({additional_special_tokens}) are""" " provided to T5Tokenizer. In this case the additional_special_tokens must include the extra_ids" " tokens" ) super().__init__( A , tokenizer_file=A , eos_token=A , unk_token=A , pad_token=A , extra_ids=A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[Any] = vocab_file _UpperCAmelCase : Union[str, Any] = False if not self.vocab_file else True _UpperCAmelCase : Union[str, Any] = extra_ids @staticmethod def _A ( A : List[str] , A : int , A : Union[str, Any] ): if pretrained_model_name_or_path in TaTokenizerFast.max_model_input_sizes: _UpperCAmelCase : List[Any] = TaTokenizerFast.max_model_input_sizes[pretrained_model_name_or_path] if init_max_model_length is not None and init_max_model_length != max_model_length: return init_max_model_length elif init_max_model_length is None: warnings.warn( "This tokenizer was incorrectly instantiated with a model max length of" F""" {deprecated_max_model_length} which will be corrected in Transformers v5.\nFor now, this""" " behavior is kept to avoid breaking backwards compatibility when padding/encoding with" " `truncation is True`.\n- Be aware that you SHOULD NOT rely on" F""" {pretrained_model_name_or_path} automatically truncating your input to""" F""" {deprecated_max_model_length} when padding/encoding.\n- If you want to encode/pad to sequences""" F""" longer than {deprecated_max_model_length} you can either instantiate this tokenizer with""" " `model_max_length` or pass `max_length` when encoding/padding.\n- To avoid this warning, please" " instantiate this tokenizer with `model_max_length` set to your preferred value." , A , ) return max_model_length def _A ( self : Any , A : str , A : Optional[str] = None ): if not self.can_save_slow_tokenizer: raise ValueError( "Your fast tokenizer does not have the necessary information to save the vocabulary for a slow " "tokenizer." ) if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : Tuple = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ): copyfile(self.vocab_file , A ) logger.info(F"""Copy vocab file to {out_vocab_file}""" ) return (out_vocab_file,) def _A ( self : Tuple , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : str = token_ids_a + [self.eos_token_id] if token_ids_a is None: return self.prefix_tokens + token_ids_a else: _UpperCAmelCase : List[str] = token_ids_a + [self.eos_token_id] return self.prefix_tokens + token_ids_a + token_ids_a def _A ( self : List[str] , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : List[Any] = [self.eos_token_id] if token_ids_a is None: return len(token_ids_a + eos ) * [0] return len(token_ids_a + eos + token_ids_a + eos ) * [0] def _A ( self : Dict ): return list( set(filter(lambda A : bool(re.search(R"<extra_id_\d+>" , A ) ) is not None , self.additional_special_tokens ) ) ) def _A ( self : Optional[Any] ): return [self.convert_tokens_to_ids(A ) for token in self.get_sentinel_tokens()]
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'''simple docstring''' import argparse import json import pickle from pathlib import Path import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig from transformers.utils import logging logging.set_verbosity_info() __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : str ) -> Optional[Any]: """simple docstring""" _UpperCAmelCase : int = SwinConfig.from_pretrained( "microsoft/swin-tiny-patch4-window7-224" , out_features=["stage1", "stage2", "stage3", "stage4"] ) _UpperCAmelCase : List[Any] = MaskFormerConfig(backbone_config=_UpperCAmelCase ) _UpperCAmelCase : Tuple = "huggingface/label-files" if "ade20k-full" in model_name: # this should be ok _UpperCAmelCase : Dict = 847 _UpperCAmelCase : Any = "maskformer-ade20k-full-id2label.json" elif "ade" in model_name: # this should be ok _UpperCAmelCase : Any = 150 _UpperCAmelCase : Any = "ade20k-id2label.json" elif "coco-stuff" in model_name: # this should be ok _UpperCAmelCase : Tuple = 171 _UpperCAmelCase : Union[str, Any] = "maskformer-coco-stuff-id2label.json" elif "coco" in model_name: # TODO _UpperCAmelCase : Any = 133 _UpperCAmelCase : int = "coco-panoptic-id2label.json" elif "cityscapes" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 19 _UpperCAmelCase : str = "cityscapes-id2label.json" elif "vistas" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 65 _UpperCAmelCase : Tuple = "mapillary-vistas-id2label.json" _UpperCAmelCase : List[Any] = json.load(open(hf_hub_download(_UpperCAmelCase , _UpperCAmelCase , repo_type="dataset" ) , "r" ) ) _UpperCAmelCase : Tuple = {int(_UpperCAmelCase ): v for k, v in idalabel.items()} return config def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] ) -> List[Any]: """simple docstring""" _UpperCAmelCase : Dict = [] # stem # fmt: off rename_keys.append(("backbone.patch_embed.proj.weight", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight") ) rename_keys.append(("backbone.patch_embed.proj.bias", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias") ) rename_keys.append(("backbone.patch_embed.norm.weight", "model.pixel_level_module.encoder.model.embeddings.norm.weight") ) rename_keys.append(("backbone.patch_embed.norm.bias", "model.pixel_level_module.encoder.model.embeddings.norm.bias") ) # stages for i in range(len(config.backbone_config.depths ) ): for j in range(config.backbone_config.depths[i] ): rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_index""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias""") ) if i < 3: rename_keys.append((F"""backbone.layers.{i}.downsample.reduction.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias""") ) rename_keys.append((F"""backbone.norm{i}.weight""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.weight""") ) rename_keys.append((F"""backbone.norm{i}.bias""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.bias""") ) # FPN rename_keys.append(("sem_seg_head.layer_4.weight", "model.pixel_level_module.decoder.fpn.stem.0.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.weight", "model.pixel_level_module.decoder.fpn.stem.1.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.bias", "model.pixel_level_module.decoder.fpn.stem.1.bias") ) for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ): rename_keys.append((F"""sem_seg_head.adapter_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias""") ) rename_keys.append(("sem_seg_head.mask_features.weight", "model.pixel_level_module.decoder.mask_projection.weight") ) rename_keys.append(("sem_seg_head.mask_features.bias", "model.pixel_level_module.decoder.mask_projection.bias") ) # Transformer decoder for idx in range(config.decoder_config.decoder_layers ): # self-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias""") ) # cross-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias""") ) # MLP 1 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc1.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc1.bias""") ) # MLP 2 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc2.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc2.bias""") ) # layernorm 1 (self-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias""") ) # layernorm 2 (cross-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias""") ) # layernorm 3 (final layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias""") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.weight", "model.transformer_module.decoder.layernorm.weight") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.bias", "model.transformer_module.decoder.layernorm.bias") ) # heads on top rename_keys.append(("sem_seg_head.predictor.query_embed.weight", "model.transformer_module.queries_embedder.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.weight", "model.transformer_module.input_projection.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.bias", "model.transformer_module.input_projection.bias") ) rename_keys.append(("sem_seg_head.predictor.class_embed.weight", "class_predictor.weight") ) rename_keys.append(("sem_seg_head.predictor.class_embed.bias", "class_predictor.bias") ) for i in range(3 ): rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.weight""", F"""mask_embedder.{i}.0.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.bias""", F"""mask_embedder.{i}.0.bias""") ) # fmt: on return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Tuple , _UpperCAmelCase : List[Any] ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : List[str] = val def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : Tuple ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : List[str] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )] for i in range(len(backbone_config.depths ) ): _UpperCAmelCase : Optional[int] = num_features[i] for j in range(backbone_config.depths[i] ): # fmt: off # read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias) _UpperCAmelCase : Any = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.weight""" ) _UpperCAmelCase : Optional[int] = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : List[str] = in_proj_weight[:dim, :] _UpperCAmelCase : Tuple = in_proj_bias[: dim] _UpperCAmelCase : List[Any] = in_proj_weight[ dim : dim * 2, : ] _UpperCAmelCase : List[str] = in_proj_bias[ dim : dim * 2 ] _UpperCAmelCase : Optional[Any] = in_proj_weight[ -dim :, : ] _UpperCAmelCase : Dict = in_proj_bias[-dim :] # fmt: on def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : str ) -> Dict: """simple docstring""" _UpperCAmelCase : Union[str, Any] = config.decoder_config.hidden_size for idx in range(config.decoder_config.decoder_layers ): # read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight""" ) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : int = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[:config.hidden_size] _UpperCAmelCase : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : List[str] = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : int = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Optional[Any] = in_proj_bias[-hidden_size :] # read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Optional[Any] = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight""" ) _UpperCAmelCase : Tuple = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : Any = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Tuple = in_proj_bias[:config.hidden_size] _UpperCAmelCase : Dict = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : Dict = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : Optional[int] = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[-hidden_size :] # fmt: on def UpperCamelCase_ ( ) -> torch.Tensor: """simple docstring""" _UpperCAmelCase : int = "http://images.cocodataset.org/val2017/000000039769.jpg" _UpperCAmelCase : Any = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ) return im @torch.no_grad() def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : bool = False ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = get_maskformer_config(_UpperCAmelCase ) # load original state_dict with open(_UpperCAmelCase , "rb" ) as f: _UpperCAmelCase : Optional[int] = pickle.load(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = data["model"] # for name, param in state_dict.items(): # print(name, param.shape) # rename keys _UpperCAmelCase : Any = create_rename_keys(_UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_swin_q_k_v(_UpperCAmelCase , config.backbone_config ) read_in_decoder_q_k_v(_UpperCAmelCase , _UpperCAmelCase ) # update to torch tensors for key, value in state_dict.items(): _UpperCAmelCase : Tuple = torch.from_numpy(_UpperCAmelCase ) # load 🤗 model _UpperCAmelCase : Union[str, Any] = MaskFormerForInstanceSegmentation(_UpperCAmelCase ) model.eval() for name, param in model.named_parameters(): print(_UpperCAmelCase , param.shape ) _UpperCAmelCase , _UpperCAmelCase : Any = model.load_state_dict(_UpperCAmelCase , strict=_UpperCAmelCase ) assert missing_keys == [ "model.pixel_level_module.encoder.model.layernorm.weight", "model.pixel_level_module.encoder.model.layernorm.bias", ] assert len(_UpperCAmelCase ) == 0, F"""Unexpected keys: {unexpected_keys}""" # verify results _UpperCAmelCase : Optional[int] = prepare_img() if "vistas" in model_name: _UpperCAmelCase : int = 65 elif "cityscapes" in model_name: _UpperCAmelCase : Tuple = 65_535 else: _UpperCAmelCase : Any = 255 _UpperCAmelCase : Optional[Any] = True if "ade" in model_name else False _UpperCAmelCase : Optional[int] = MaskFormerImageProcessor(ignore_index=_UpperCAmelCase , reduce_labels=_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = image_processor(_UpperCAmelCase , return_tensors="pt" ) _UpperCAmelCase : List[Any] = model(**_UpperCAmelCase ) print("Logits:" , outputs.class_queries_logits[0, :3, :3] ) if model_name == "maskformer-swin-tiny-ade": _UpperCAmelCase : Tuple = torch.tensor( [[3.6_3_5_3, -4.4_7_7_0, -2.6_0_6_5], [0.5_0_8_1, -4.2_3_9_4, -3.5_3_4_3], [2.1_9_0_9, -5.0_3_5_3, -1.9_3_2_3]] ) assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , _UpperCAmelCase , atol=1e-4 ) print("Looks ok!" ) if pytorch_dump_folder_path is not None: print(F"""Saving model and image processor to {pytorch_dump_folder_path}""" ) Path(_UpperCAmelCase ).mkdir(exist_ok=_UpperCAmelCase ) model.save_pretrained(_UpperCAmelCase ) image_processor.save_pretrained(_UpperCAmelCase ) if push_to_hub: print("Pushing model and image processor to the hub..." ) model.push_to_hub(F"""nielsr/{model_name}""" ) image_processor.push_to_hub(F"""nielsr/{model_name}""" ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""maskformer-swin-tiny-ade""", type=str, help=("""Name of the MaskFormer model you'd like to convert""",), ) parser.add_argument( """--checkpoint_path""", default="""/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl""", type=str, help="""Path to the original state dict (.pth file).""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) __SCREAMING_SNAKE_CASE : int = parser.parse_args() convert_maskformer_checkpoint( args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub )
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1
'''simple docstring''' import gc import random import unittest import numpy as np import torch from PIL import Image from transformers import XLMRobertaTokenizerFast from diffusers import DDIMScheduler, KandinskyImgaImgPipeline, KandinskyPriorPipeline, UNetaDConditionModel, VQModel from diffusers.pipelines.kandinsky.text_encoder import MCLIPConfig, MultilingualCLIP from diffusers.utils import floats_tensor, load_image, load_numpy, slow, torch_device from diffusers.utils.testing_utils import enable_full_determinism, require_torch_gpu from ..test_pipelines_common import PipelineTesterMixin, assert_mean_pixel_difference enable_full_determinism() class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: int = KandinskyImgaImgPipeline __UpperCamelCase: Optional[int] = ["prompt", "image_embeds", "negative_image_embeds", "image"] __UpperCamelCase: Optional[Any] = [ "prompt", "negative_prompt", "image_embeds", "negative_image_embeds", "image", ] __UpperCamelCase: int = [ "generator", "height", "width", "strength", "guidance_scale", "negative_prompt", "num_inference_steps", "return_dict", "guidance_scale", "num_images_per_prompt", "output_type", "return_dict", ] __UpperCamelCase: Tuple = False @property def _A ( self : Optional[Any] ): return 32 @property def _A ( self : Dict ): return 32 @property def _A ( self : List[str] ): return self.time_input_dim @property def _A ( self : str ): return self.time_input_dim * 4 @property def _A ( self : Dict ): return 100 @property def _A ( self : Optional[Any] ): _UpperCAmelCase : Optional[int] = XLMRobertaTokenizerFast.from_pretrained("YiYiXu/tiny-random-mclip-base" ) return tokenizer @property def _A ( self : List[Any] ): torch.manual_seed(0 ) _UpperCAmelCase : Any = MCLIPConfig( numDims=self.cross_attention_dim , transformerDimensions=self.text_embedder_hidden_size , hidden_size=self.text_embedder_hidden_size , intermediate_size=37 , num_attention_heads=4 , num_hidden_layers=5 , vocab_size=1005 , ) _UpperCAmelCase : Optional[int] = MultilingualCLIP(A ) _UpperCAmelCase : Dict = text_encoder.eval() return text_encoder @property def _A ( self : Dict ): torch.manual_seed(0 ) _UpperCAmelCase : str = { "in_channels": 4, # Out channels is double in channels because predicts mean and variance "out_channels": 8, "addition_embed_type": "text_image", "down_block_types": ("ResnetDownsampleBlock2D", "SimpleCrossAttnDownBlock2D"), "up_block_types": ("SimpleCrossAttnUpBlock2D", "ResnetUpsampleBlock2D"), "mid_block_type": "UNetMidBlock2DSimpleCrossAttn", "block_out_channels": (self.block_out_channels_a, self.block_out_channels_a * 2), "layers_per_block": 1, "encoder_hid_dim": self.text_embedder_hidden_size, "encoder_hid_dim_type": "text_image_proj", "cross_attention_dim": self.cross_attention_dim, "attention_head_dim": 4, "resnet_time_scale_shift": "scale_shift", "class_embed_type": None, } _UpperCAmelCase : str = UNetaDConditionModel(**A ) return model @property def _A ( self : str ): return { "block_out_channels": [32, 64], "down_block_types": ["DownEncoderBlock2D", "AttnDownEncoderBlock2D"], "in_channels": 3, "latent_channels": 4, "layers_per_block": 1, "norm_num_groups": 8, "norm_type": "spatial", "num_vq_embeddings": 12, "out_channels": 3, "up_block_types": [ "AttnUpDecoderBlock2D", "UpDecoderBlock2D", ], "vq_embed_dim": 4, } @property def _A ( self : int ): torch.manual_seed(0 ) _UpperCAmelCase : str = VQModel(**self.dummy_movq_kwargs ) return model def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = self.dummy_text_encoder _UpperCAmelCase : str = self.dummy_tokenizer _UpperCAmelCase : int = self.dummy_unet _UpperCAmelCase : List[str] = self.dummy_movq _UpperCAmelCase : int = { "num_train_timesteps": 1000, "beta_schedule": "linear", "beta_start": 0.00_085, "beta_end": 0.012, "clip_sample": False, "set_alpha_to_one": False, "steps_offset": 0, "prediction_type": "epsilon", "thresholding": False, } _UpperCAmelCase : List[Any] = DDIMScheduler(**A ) _UpperCAmelCase : List[Any] = { "text_encoder": text_encoder, "tokenizer": tokenizer, "unet": unet, "scheduler": scheduler, "movq": movq, } return components def _A ( self : Dict , A : Any , A : Dict=0 ): _UpperCAmelCase : Dict = floats_tensor((1, self.cross_attention_dim) , rng=random.Random(A ) ).to(A ) _UpperCAmelCase : int = floats_tensor((1, self.cross_attention_dim) , rng=random.Random(seed + 1 ) ).to(A ) # create init_image _UpperCAmelCase : int = floats_tensor((1, 3, 64, 64) , rng=random.Random(A ) ).to(A ) _UpperCAmelCase : Union[str, Any] = image.cpu().permute(0 , 2 , 3 , 1 )[0] _UpperCAmelCase : Union[str, Any] = Image.fromarray(np.uinta(A ) ).convert("RGB" ).resize((256, 256) ) if str(A ).startswith("mps" ): _UpperCAmelCase : str = torch.manual_seed(A ) else: _UpperCAmelCase : Dict = torch.Generator(device=A ).manual_seed(A ) _UpperCAmelCase : Union[str, Any] = { "prompt": "horse", "image": init_image, "image_embeds": image_embeds, "negative_image_embeds": negative_image_embeds, "generator": generator, "height": 64, "width": 64, "num_inference_steps": 10, "guidance_scale": 7.0, "strength": 0.2, "output_type": "np", } return inputs def _A ( self : List[Any] ): _UpperCAmelCase : str = "cpu" _UpperCAmelCase : Tuple = self.get_dummy_components() _UpperCAmelCase : Optional[Any] = self.pipeline_class(**A ) _UpperCAmelCase : Dict = pipe.to(A ) pipe.set_progress_bar_config(disable=A ) _UpperCAmelCase : Optional[Any] = pipe(**self.get_dummy_inputs(A ) ) _UpperCAmelCase : Union[str, Any] = output.images _UpperCAmelCase : str = pipe( **self.get_dummy_inputs(A ) , return_dict=A , )[0] _UpperCAmelCase : Optional[Any] = image[0, -3:, -3:, -1] _UpperCAmelCase : Optional[Any] = image_from_tuple[0, -3:, -3:, -1] assert image.shape == (1, 64, 64, 3) _UpperCAmelCase : int = np.array( [0.61_474_943, 0.6_073_539, 0.43_308_544, 0.5_928_269, 0.47_493_595, 0.46_755_973, 0.4_613_838, 0.45_368_797, 0.50_119_233] ) assert ( np.abs(image_slice.flatten() - expected_slice ).max() < 1E-2 ), F""" expected_slice {expected_slice}, but got {image_slice.flatten()}""" assert ( np.abs(image_from_tuple_slice.flatten() - expected_slice ).max() < 1E-2 ), F""" expected_slice {expected_slice}, but got {image_from_tuple_slice.flatten()}""" @slow @require_torch_gpu class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Union[str, Any] ): # clean up the VRAM after each test super().tearDown() gc.collect() torch.cuda.empty_cache() def _A ( self : Optional[int] ): _UpperCAmelCase : Any = load_numpy( "https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main" "/kandinsky/kandinsky_img2img_frog.npy" ) _UpperCAmelCase : int = load_image( "https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main" "/kandinsky/cat.png" ) _UpperCAmelCase : Optional[Any] = "A red cartoon frog, 4k" _UpperCAmelCase : Any = KandinskyPriorPipeline.from_pretrained( "kandinsky-community/kandinsky-2-1-prior" , torch_dtype=torch.floataa ) pipe_prior.to(A ) _UpperCAmelCase : List[str] = KandinskyImgaImgPipeline.from_pretrained( "kandinsky-community/kandinsky-2-1" , torch_dtype=torch.floataa ) _UpperCAmelCase : List[Any] = pipeline.to(A ) pipeline.set_progress_bar_config(disable=A ) _UpperCAmelCase : int = torch.Generator(device="cpu" ).manual_seed(0 ) _UpperCAmelCase , _UpperCAmelCase : Any = pipe_prior( A , generator=A , num_inference_steps=5 , negative_prompt="" , ).to_tuple() _UpperCAmelCase : int = pipeline( A , image=A , image_embeds=A , negative_image_embeds=A , generator=A , num_inference_steps=100 , height=768 , width=768 , strength=0.2 , output_type="np" , ) _UpperCAmelCase : List[Any] = output.images[0] assert image.shape == (768, 768, 3) assert_mean_pixel_difference(A , A )
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'''simple docstring''' import bza import gzip import lzma import os import shutil import struct import tarfile import warnings import zipfile from abc import ABC, abstractmethod from pathlib import Path from typing import Dict, List, Optional, Type, Union from .. import config from .filelock import FileLock from .logging import get_logger __SCREAMING_SNAKE_CASE : Dict = get_logger(__name__) class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[str] , A : Optional[str] = None ): _UpperCAmelCase : Dict = ( os.path.join(A , config.EXTRACTED_DATASETS_DIR ) if cache_dir else config.EXTRACTED_DATASETS_PATH ) _UpperCAmelCase : Union[str, Any] = Extractor def _A ( self : Tuple , A : str ): from .file_utils import hash_url_to_filename # Path where we extract compressed archives # We extract in the cache dir, and get the extracted path name by hashing the original path" _UpperCAmelCase : Dict = os.path.abspath(A ) return os.path.join(self.extract_dir , hash_url_to_filename(A ) ) def _A ( self : int , A : str , A : bool ): return force_extract or ( not os.path.isfile(A ) and not (os.path.isdir(A ) and os.listdir(A )) ) def _A ( self : Optional[int] , A : str , A : bool = False ): _UpperCAmelCase : Union[str, Any] = self.extractor.infer_extractor_format(A ) if not extractor_format: return input_path _UpperCAmelCase : Optional[Any] = self._get_output_path(A ) if self._do_extract(A , A ): self.extractor.extract(A , A , A ) return output_path class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod @abstractmethod def _A ( cls : str , A : Union[Path, str] , **A : Dict ): ... @staticmethod @abstractmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): ... class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: List[bytes] = [] @staticmethod def _A ( A : Union[Path, str] , A : int ): with open(A , "rb" ) as f: return f.read(A ) @classmethod def _A ( cls : Any , A : Union[Path, str] , A : bytes = b"" ): if not magic_number: _UpperCAmelCase : Any = max(len(A ) for cls_magic_number in cls.magic_numbers ) try: _UpperCAmelCase : int = cls.read_magic_number(A , A ) except OSError: return False return any(magic_number.startswith(A ) for cls_magic_number in cls.magic_numbers ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod def _A ( cls : str , A : Union[Path, str] , **A : List[Any] ): return tarfile.is_tarfile(A ) @staticmethod def _A ( A : Union[str, Any] , A : str ): def resolved(A : str ) -> str: return os.path.realpath(os.path.abspath(A ) ) def badpath(A : str , A : str ) -> bool: # joinpath will ignore base if path is absolute return not resolved(os.path.join(A , A ) ).startswith(A ) def badlink(A : str , A : str ) -> bool: # Links are interpreted relative to the directory containing the link _UpperCAmelCase : List[str] = resolved(os.path.join(A , os.path.dirname(info.name ) ) ) return badpath(info.linkname , base=A ) _UpperCAmelCase : Optional[int] = resolved(A ) for finfo in members: if badpath(finfo.name , A ): logger.error(F"""Extraction of {finfo.name} is blocked (illegal path)""" ) elif finfo.issym() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Symlink to {finfo.linkname}""" ) elif finfo.islnk() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Hard link to {finfo.linkname}""" ) else: yield finfo @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) _UpperCAmelCase : int = tarfile.open(A ) tar_file.extractall(A , members=TarExtractor.safemembers(A , A ) ) tar_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = [b"\x1F\x8B"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with gzip.open(A , "rb" ) as gzip_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [ b"PK\x03\x04", b"PK\x05\x06", # empty archive b"PK\x07\x08", # spanned archive ] @classmethod def _A ( cls : Dict , A : Union[Path, str] , A : bytes = b"" ): if super().is_extractable(A , magic_number=A ): return True try: # Alternative version of zipfile.is_zipfile that has less false positives, but misses executable zip archives. # From: https://github.com/python/cpython/pull/5053 from zipfile import ( _CD_SIGNATURE, _ECD_DISK_NUMBER, _ECD_DISK_START, _ECD_ENTRIES_TOTAL, _ECD_OFFSET, _ECD_SIZE, _EndRecData, sizeCentralDir, stringCentralDir, structCentralDir, ) with open(A , "rb" ) as fp: _UpperCAmelCase : Tuple = _EndRecData(A ) if endrec: if endrec[_ECD_ENTRIES_TOTAL] == 0 and endrec[_ECD_SIZE] == 0 and endrec[_ECD_OFFSET] == 0: return True # Empty zipfiles are still zipfiles elif endrec[_ECD_DISK_NUMBER] == endrec[_ECD_DISK_START]: fp.seek(endrec[_ECD_OFFSET] ) # Central directory is on the same disk if fp.tell() == endrec[_ECD_OFFSET] and endrec[_ECD_SIZE] >= sizeCentralDir: _UpperCAmelCase : Dict = fp.read(A ) # CD is where we expect it to be if len(A ) == sizeCentralDir: _UpperCAmelCase : Any = struct.unpack(A , A ) # CD is the right size if centdir[_CD_SIGNATURE] == stringCentralDir: return True # First central directory entry has correct magic number return False except Exception: # catch all errors in case future python versions change the zipfile internals return False @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) with zipfile.ZipFile(A , "r" ) as zip_file: zip_file.extractall(A ) zip_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [b"\xFD\x37\x7A\x58\x5A\x00"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with lzma.open(A ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = [b"Rar!\x1a\x07\x00", b"Rar!\x1a\x07\x01\x00"] # RAR_ID # RAR5_ID @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.RARFILE_AVAILABLE: raise ImportError("Please pip install rarfile" ) import rarfile os.makedirs(A , exist_ok=A ) _UpperCAmelCase : List[str] = rarfile.RarFile(A ) rf.extractall(A ) rf.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x28\xb5\x2F\xFD"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.ZSTANDARD_AVAILABLE: raise ImportError("Please pip install zstandard" ) import zstandard as zstd _UpperCAmelCase : Optional[Any] = zstd.ZstdDecompressor() with open(A , "rb" ) as ifh, open(A , "wb" ) as ofh: dctx.copy_stream(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x42\x5A\x68"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with bza.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = [b"\x37\x7A\xBC\xAF\x27\x1C"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.PY7ZR_AVAILABLE: raise ImportError("Please pip install py7zr" ) import pyazr os.makedirs(A , exist_ok=A ) with pyazr.SevenZipFile(A , "r" ) as archive: archive.extractall(A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = [b"\x04\x22\x4D\x18"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.LZ4_AVAILABLE: raise ImportError("Please pip install lz4" ) import lza.frame with lza.frame.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: Dict[str, Type[BaseExtractor]] = { "tar": TarExtractor, "gzip": GzipExtractor, "zip": ZipExtractor, "xz": XzExtractor, "rar": RarExtractor, "zstd": ZstdExtractor, "bz2": BzipaExtractor, "7z": SevenZipExtractor, # <Added version="2.4.0"/> "lz4": LzaExtractor, # <Added version="2.4.0"/> } @classmethod def _A ( cls : List[Any] ): return max( len(A ) for extractor in cls.extractors.values() if issubclass(A , A ) for extractor_magic_number in extractor.magic_numbers ) @staticmethod def _A ( A : Union[Path, str] , A : int ): try: return MagicNumberBaseExtractor.read_magic_number(A , magic_number_length=A ) except OSError: return b"" @classmethod def _A ( cls : Optional[Any] , A : Union[Path, str] , A : bool = False ): warnings.warn( "Method 'is_extractable' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'infer_extractor_format' instead." , category=A , ) _UpperCAmelCase : Union[str, Any] = cls.infer_extractor_format(A ) if extractor_format: return True if not return_extractor else (True, cls.extractors[extractor_format]) return False if not return_extractor else (False, None) @classmethod def _A ( cls : Dict , A : Union[Path, str] ): # <Added version="2.4.0"/> _UpperCAmelCase : Optional[int] = cls._get_magic_number_max_length() _UpperCAmelCase : str = cls._read_magic_number(A , A ) for extractor_format, extractor in cls.extractors.items(): if extractor.is_extractable(A , magic_number=A ): return extractor_format @classmethod def _A ( cls : List[str] , A : Union[Path, str] , A : Union[Path, str] , A : Optional[str] = None , A : Optional[BaseExtractor] = "deprecated" , ): os.makedirs(os.path.dirname(A ) , exist_ok=A ) # Prevent parallel extractions _UpperCAmelCase : Tuple = str(Path(A ).with_suffix(".lock" ) ) with FileLock(A ): shutil.rmtree(A , ignore_errors=A ) if extractor_format or extractor != "deprecated": if extractor != "deprecated" or not isinstance(A , A ): # passed as positional arg warnings.warn( "Parameter 'extractor' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'extractor_format' instead." , category=A , ) _UpperCAmelCase : Tuple = extractor if extractor != "deprecated" else extractor_format else: _UpperCAmelCase : Tuple = cls.extractors[extractor_format] return extractor.extract(A , A ) else: warnings.warn( "Parameter 'extractor_format' was made required in version 2.4.0 and not passing it will raise an " "exception in 3.0.0." , category=A , ) for extractor in cls.extractors.values(): if extractor.is_extractable(A ): return extractor.extract(A , A )
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" if n == 1 or not isinstance(_UpperCAmelCase , _UpperCAmelCase ): return 0 elif n == 2: return 1 else: _UpperCAmelCase : List[Any] = [0, 1] for i in range(2 , n + 1 ): sequence.append(sequence[i - 1] + sequence[i - 2] ) return sequence[n] def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 0 _UpperCAmelCase : Dict = 2 while digits < n: index += 1 _UpperCAmelCase : Union[str, Any] = len(str(fibonacci(_UpperCAmelCase ) ) ) return index def UpperCamelCase_ ( _UpperCAmelCase : int = 1_000 ) -> int: """simple docstring""" return fibonacci_digits_index(_UpperCAmelCase ) if __name__ == "__main__": print(solution(int(str(input()).strip())))
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'''simple docstring''' from typing import Any def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : dict , _UpperCAmelCase : dict , _UpperCAmelCase : dict , ) -> list: """simple docstring""" _validation( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) # Creates data structures and fill initial step _UpperCAmelCase : dict = {} _UpperCAmelCase : dict = {} for state in states_space: _UpperCAmelCase : Union[str, Any] = observations_space[0] _UpperCAmelCase : Tuple = ( initial_probabilities[state] * emission_probabilities[state][observation] ) _UpperCAmelCase : List[str] = None # Fills the data structure with the probabilities of # different transitions and pointers to previous states for o in range(1 , len(_UpperCAmelCase ) ): _UpperCAmelCase : Optional[Any] = observations_space[o] _UpperCAmelCase : int = observations_space[o - 1] for state in states_space: # Calculates the argmax for probability function _UpperCAmelCase : str = "" _UpperCAmelCase : Tuple = -1 for k_state in states_space: _UpperCAmelCase : Any = ( probabilities[(k_state, prior_observation)] * transition_probabilities[k_state][state] * emission_probabilities[state][observation] ) if probability > max_probability: _UpperCAmelCase : Union[str, Any] = probability _UpperCAmelCase : str = k_state # Update probabilities and pointers dicts _UpperCAmelCase : Optional[int] = ( probabilities[(arg_max, prior_observation)] * transition_probabilities[arg_max][state] * emission_probabilities[state][observation] ) _UpperCAmelCase : Tuple = arg_max # The final observation _UpperCAmelCase : Optional[Any] = observations_space[len(_UpperCAmelCase ) - 1] # argmax for given final observation _UpperCAmelCase : List[str] = "" _UpperCAmelCase : Any = -1 for k_state in states_space: _UpperCAmelCase : Optional[int] = probabilities[(k_state, final_observation)] if probability > max_probability: _UpperCAmelCase : int = probability _UpperCAmelCase : Dict = k_state _UpperCAmelCase : Dict = arg_max # Process pointers backwards _UpperCAmelCase : List[Any] = last_state _UpperCAmelCase : str = [] for o in range(len(_UpperCAmelCase ) - 1 , -1 , -1 ): result.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = pointers[previous, observations_space[o]] result.reverse() return result def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_not_empty( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) _validate_lists(_UpperCAmelCase , _UpperCAmelCase ) _validate_dicts( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" if not all( [ observations_space, states_space, initial_probabilities, transition_probabilities, emission_probabilities, ] ): raise ValueError("There's an empty parameter" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any ) -> None: """simple docstring""" _validate_list(_UpperCAmelCase , "observations_space" ) _validate_list(_UpperCAmelCase , "states_space" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list""" raise ValueError(_UpperCAmelCase ) else: for x in _object: if not isinstance(_UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list of strings""" raise ValueError(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_dict(_UpperCAmelCase , "initial_probabilities" , _UpperCAmelCase ) _validate_nested_dict(_UpperCAmelCase , "transition_probabilities" ) _validate_nested_dict(_UpperCAmelCase , "emission_probabilities" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" _validate_dict(_object , _UpperCAmelCase , _UpperCAmelCase ) for x in _object.values(): _validate_dict(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str , _UpperCAmelCase : type , _UpperCAmelCase : bool = False ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Any = F"""{var_name} must be a dict""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object ): _UpperCAmelCase : Tuple = F"""{var_name} all keys must be strings""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object.values() ): _UpperCAmelCase : List[str] = "nested dictionary " if nested else "" _UpperCAmelCase : List[str] = F"""{var_name} {nested_text}all values must be {value_type.__name__}""" raise ValueError(_UpperCAmelCase ) if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' __SCREAMING_SNAKE_CASE : int = """Alexander Joslin""" import operator as op from .stack import Stack def UpperCamelCase_ ( _UpperCAmelCase : str ) -> int: """simple docstring""" _UpperCAmelCase : Tuple = {"*": op.mul, "/": op.truediv, "+": op.add, "-": op.sub} _UpperCAmelCase : Stack[int] = Stack() _UpperCAmelCase : Stack[str] = Stack() for i in equation: if i.isdigit(): # RULE 1 operand_stack.push(int(_UpperCAmelCase ) ) elif i in operators: # RULE 2 operator_stack.push(_UpperCAmelCase ) elif i == ")": # RULE 4 _UpperCAmelCase : str = operator_stack.peek() operator_stack.pop() _UpperCAmelCase : List[str] = operand_stack.peek() operand_stack.pop() _UpperCAmelCase : List[str] = operand_stack.peek() operand_stack.pop() _UpperCAmelCase : List[Any] = operators[opr](_UpperCAmelCase , _UpperCAmelCase ) operand_stack.push(_UpperCAmelCase ) # RULE 5 return operand_stack.peek() if __name__ == "__main__": __SCREAMING_SNAKE_CASE : List[str] = """(5 + ((4 * 2) * (2 + 3)))""" # answer = 45 print(F'{equation} = {dijkstras_two_stack_algorithm(equation)}')
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import MobileViTImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : Optional[Any] , A : Dict , A : Dict=7 , A : Optional[int]=3 , A : Optional[int]=18 , A : Dict=30 , A : List[Any]=400 , A : Union[str, Any]=True , A : Tuple=None , A : List[Any]=True , A : int=None , A : Optional[int]=True , ): _UpperCAmelCase : Optional[int] = size if size is not None else {"shortest_edge": 20} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Union[str, Any] = batch_size _UpperCAmelCase : Optional[Any] = num_channels _UpperCAmelCase : Union[str, Any] = image_size _UpperCAmelCase : int = min_resolution _UpperCAmelCase : Optional[int] = max_resolution _UpperCAmelCase : List[str] = do_resize _UpperCAmelCase : Optional[Any] = size _UpperCAmelCase : Tuple = do_center_crop _UpperCAmelCase : Optional[int] = crop_size _UpperCAmelCase : Optional[Any] = do_flip_channel_order def _A ( self : Dict ): return { "do_resize": self.do_resize, "size": self.size, "do_center_crop": self.do_center_crop, "crop_size": self.crop_size, "do_flip_channel_order": self.do_flip_channel_order, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Tuple = MobileViTImageProcessor if is_vision_available() else None def _A ( self : List[Any] ): _UpperCAmelCase : Any = MobileViTImageProcessingTester(self ) @property def _A ( self : int ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Tuple ): _UpperCAmelCase : int = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "size" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "center_crop" ) ) self.assertTrue(hasattr(A , "do_flip_channel_order" ) ) def _A ( self : Any ): _UpperCAmelCase : List[str] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 20} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Dict = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Any ): pass def _A ( self : Dict ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random PIL images _UpperCAmelCase : Union[str, Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A ) for image in image_inputs: self.assertIsInstance(A , Image.Image ) # Test not batched input _UpperCAmelCase : List[Any] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Union[str, Any] ): # Initialize image_processing _UpperCAmelCase : Dict = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for image in image_inputs: self.assertIsInstance(A , np.ndarray ) # Test not batched input _UpperCAmelCase : Optional[int] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Any ): # Initialize image_processing _UpperCAmelCase : Any = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for image in image_inputs: self.assertIsInstance(A , torch.Tensor ) # Test not batched input _UpperCAmelCase : List[str] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Any = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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'''simple docstring''' import unittest import numpy as np import torch from diffusers import PNDMPipeline, PNDMScheduler, UNetaDModel from diffusers.utils.testing_utils import enable_full_determinism, require_torch, slow, torch_device enable_full_determinism() class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' @property def _A ( self : List[Any] ): torch.manual_seed(0 ) _UpperCAmelCase : Optional[int] = UNetaDModel( block_out_channels=(32, 64) , layers_per_block=2 , sample_size=32 , in_channels=3 , out_channels=3 , down_block_types=("DownBlock2D", "AttnDownBlock2D") , up_block_types=("AttnUpBlock2D", "UpBlock2D") , ) return model def _A ( self : Optional[Any] ): _UpperCAmelCase : str = self.dummy_uncond_unet _UpperCAmelCase : List[str] = PNDMScheduler() _UpperCAmelCase : Optional[int] = PNDMPipeline(unet=A , scheduler=A ) pndm.to(A ) pndm.set_progress_bar_config(disable=A ) _UpperCAmelCase : Any = torch.manual_seed(0 ) _UpperCAmelCase : str = pndm(generator=A , num_inference_steps=20 , output_type="numpy" ).images _UpperCAmelCase : List[str] = torch.manual_seed(0 ) _UpperCAmelCase : Any = pndm(generator=A , num_inference_steps=20 , output_type="numpy" , return_dict=A )[0] _UpperCAmelCase : Dict = image[0, -3:, -3:, -1] _UpperCAmelCase : int = image_from_tuple[0, -3:, -3:, -1] assert image.shape == (1, 32, 32, 3) _UpperCAmelCase : List[str] = np.array([1.0, 1.0, 0.0, 1.0, 0.0, 1.0, 0.0, 0.0, 0.0] ) assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-2 assert np.abs(image_from_tuple_slice.flatten() - expected_slice ).max() < 1E-2 @slow @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Union[str, Any] ): _UpperCAmelCase : List[Any] = "google/ddpm-cifar10-32" _UpperCAmelCase : int = UNetaDModel.from_pretrained(A ) _UpperCAmelCase : Dict = PNDMScheduler() _UpperCAmelCase : str = PNDMPipeline(unet=A , scheduler=A ) pndm.to(A ) pndm.set_progress_bar_config(disable=A ) _UpperCAmelCase : str = torch.manual_seed(0 ) _UpperCAmelCase : Optional[int] = pndm(generator=A , output_type="numpy" ).images _UpperCAmelCase : str = image[0, -3:, -3:, -1] assert image.shape == (1, 32, 32, 3) _UpperCAmelCase : str = np.array([0.1_564, 0.14_645, 0.1_406, 0.14_715, 0.12_425, 0.14_045, 0.13_115, 0.12_175, 0.125] ) assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-2
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 1 # To kept the Calculated Value # Since C(n, k) = C(n, n-k) if k > (n - k): _UpperCAmelCase : Any = n - k # Calculate C(n,k) for i in range(_UpperCAmelCase ): result *= n - i result //= i + 1 return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return binomial_coefficient(2 * node_count , _UpperCAmelCase ) // (node_count + 1) def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" if n < 0: raise ValueError("factorial() not defined for negative values" ) _UpperCAmelCase : List[str] = 1 for i in range(1 , n + 1 ): result *= i return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return catalan_number(_UpperCAmelCase ) * factorial(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Dict = int(input("""Enter the number of nodes: """).strip() or 0) if node_count <= 0: raise ValueError("""We need some nodes to work with.""") print( F'Given {node_count} nodes, there are {binary_tree_count(node_count)} ' F'binary trees and {catalan_number(node_count)} binary search trees.' )
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'''simple docstring''' import os from shutil import copyfile from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import is_sentencepiece_available, logging if is_sentencepiece_available(): from .tokenization_pegasus import PegasusTokenizer else: __SCREAMING_SNAKE_CASE : Optional[Any] = None __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = """▁""" __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """spiece.model""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : int = { """vocab_file""": {"""google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/spiece.model"""}, """tokenizer_file""": { """google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/tokenizer.json""" }, } __SCREAMING_SNAKE_CASE : str = { """google/pegasus-xsum""": 512, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = VOCAB_FILES_NAMES __UpperCamelCase: Dict = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: List[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Optional[int] = PegasusTokenizer __UpperCamelCase: Optional[Any] = ["input_ids", "attention_mask"] def __init__( self : Dict , A : List[str]=None , A : Union[str, Any]=None , A : Optional[int]="<pad>" , A : Tuple="</s>" , A : Union[str, Any]="<unk>" , A : Union[str, Any]="<mask_2>" , A : Dict="<mask_1>" , A : Union[str, Any]=None , A : int=103 , **A : Optional[Any] , ): _UpperCAmelCase : Dict = offset if additional_special_tokens is not None: if not isinstance(A , A ): raise TypeError( F"""additional_special_tokens should be of type {type(A )}, but is""" F""" {type(A )}""" ) _UpperCAmelCase : Optional[int] = ( ([mask_token_sent] + additional_special_tokens) if mask_token_sent not in additional_special_tokens and mask_token_sent is not None else additional_special_tokens ) # fill additional tokens with ..., <unk_token_102> in case not all additional tokens are already taken additional_special_tokens_extended += [ F"""<unk_{i}>""" for i in range(len(A ) , self.offset - 1 ) ] if len(set(A ) ) != len(A ): raise ValueError( "Please make sure that the provided additional_special_tokens do not contain an incorrectly" F""" shifted list of <unk_x> tokens. Found {additional_special_tokens_extended}.""" ) _UpperCAmelCase : Any = additional_special_tokens_extended else: _UpperCAmelCase : Dict = [mask_token_sent] if mask_token_sent is not None else [] additional_special_tokens += [F"""<unk_{i}>""" for i in range(2 , self.offset )] super().__init__( A , tokenizer_file=A , pad_token=A , eos_token=A , unk_token=A , mask_token=A , mask_token_sent=A , offset=A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[Any] = vocab_file _UpperCAmelCase : Optional[Any] = False if not self.vocab_file else True def _A ( self : List[str] , A : Optional[Any] ): _UpperCAmelCase : Any = set(self.all_special_ids ) # call it once instead of inside list comp all_special_ids.remove(self.unk_token_id ) # <unk> is only sometimes special if all_special_ids != set(range(len(self.additional_special_tokens ) + 3 ) ): raise ValueError( "There should be 3 special tokens: mask_token, pad_token, and eos_token +" F""" {len(self.additional_special_tokens )} additional_special_tokens, but got {all_special_ids}""" ) return [1 if x in all_special_ids else 0 for x in seq] def _A ( self : str , A : List , A : Optional[List] = None , A : bool = False ): if already_has_special_tokens: return self._special_token_mask(A ) elif token_ids_a is None: return self._special_token_mask(A ) + [1] else: return self._special_token_mask(token_ids_a + token_ids_a ) + [1] def _A ( self : Optional[int] , A : Union[str, Any] , A : int=None ): if token_ids_a is None: return token_ids_a + [self.eos_token_id] # We don't expect to process pairs, but leave the pair logic for API consistency return token_ids_a + token_ids_a + [self.eos_token_id] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): if not self.can_save_slow_tokenizer: raise ValueError( "Your fast tokenizer does not have the necessary information to save the vocabulary for a slow " "tokenizer." ) if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : List[Any] = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ): copyfile(self.vocab_file , A ) return (out_vocab_file,)
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'''simple docstring''' import json from typing import List, Optional, Tuple from tokenizers import normalizers from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import logging from .tokenization_distilbert import DistilBertTokenizer __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """vocab.txt""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : Dict = { """vocab_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/vocab.txt""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/vocab.txt""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-german-cased""": """https://huggingface.co/distilbert-base-german-cased/resolve/main/vocab.txt""", """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/vocab.txt""" ), }, """tokenizer_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/tokenizer.json""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/tokenizer.json""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-german-cased""": ( """https://huggingface.co/distilbert-base-german-cased/resolve/main/tokenizer.json""" ), """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/tokenizer.json""" ), }, } __SCREAMING_SNAKE_CASE : Optional[Any] = { """distilbert-base-uncased""": 512, """distilbert-base-uncased-distilled-squad""": 512, """distilbert-base-cased""": 512, """distilbert-base-cased-distilled-squad""": 512, """distilbert-base-german-cased""": 512, """distilbert-base-multilingual-cased""": 512, } __SCREAMING_SNAKE_CASE : List[Any] = { """distilbert-base-uncased""": {"""do_lower_case""": True}, """distilbert-base-uncased-distilled-squad""": {"""do_lower_case""": True}, """distilbert-base-cased""": {"""do_lower_case""": False}, """distilbert-base-cased-distilled-squad""": {"""do_lower_case""": False}, """distilbert-base-german-cased""": {"""do_lower_case""": False}, """distilbert-base-multilingual-cased""": {"""do_lower_case""": False}, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = VOCAB_FILES_NAMES __UpperCamelCase: str = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: Optional[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Any = PRETRAINED_INIT_CONFIGURATION __UpperCamelCase: str = ["input_ids", "attention_mask"] __UpperCamelCase: List[str] = DistilBertTokenizer def __init__( self : str , A : int=None , A : Tuple=None , A : Tuple=True , A : Dict="[UNK]" , A : List[Any]="[SEP]" , A : Optional[Any]="[PAD]" , A : Dict="[CLS]" , A : Tuple="[MASK]" , A : str=True , A : Dict=None , **A : List[Any] , ): super().__init__( A , tokenizer_file=A , do_lower_case=A , unk_token=A , sep_token=A , pad_token=A , cls_token=A , mask_token=A , tokenize_chinese_chars=A , strip_accents=A , **A , ) _UpperCAmelCase : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() ) if ( normalizer_state.get("lowercase" , A ) != do_lower_case or normalizer_state.get("strip_accents" , A ) != strip_accents or normalizer_state.get("handle_chinese_chars" , A ) != tokenize_chinese_chars ): _UpperCAmelCase : Dict = getattr(A , normalizer_state.pop("type" ) ) _UpperCAmelCase : int = do_lower_case _UpperCAmelCase : Optional[int] = strip_accents _UpperCAmelCase : str = tokenize_chinese_chars _UpperCAmelCase : List[Any] = normalizer_class(**A ) _UpperCAmelCase : Dict = do_lower_case def _A ( self : List[Any] , A : Tuple , A : Any=None ): _UpperCAmelCase : Optional[int] = [self.cls_token_id] + token_ids_a + [self.sep_token_id] if token_ids_a: output += token_ids_a + [self.sep_token_id] return output def _A ( self : int , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Any = [self.sep_token_id] _UpperCAmelCase : str = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Dict , A : str , A : Optional[str] = None ): _UpperCAmelCase : Any = self._tokenizer.model.save(A , name=A ) return tuple(A )
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'''simple docstring''' from collections import defaultdict from graphs.minimum_spanning_tree_prims import prisms_algorithm as mst def UpperCamelCase_ ( ) -> Tuple: """simple docstring""" _UpperCAmelCase , _UpperCAmelCase : int = 9, 14 # noqa: F841 _UpperCAmelCase : int = [ [0, 1, 4], [0, 7, 8], [1, 2, 8], [7, 8, 7], [7, 6, 1], [2, 8, 2], [8, 6, 6], [2, 3, 7], [2, 5, 4], [6, 5, 2], [3, 5, 14], [3, 4, 9], [5, 4, 10], [1, 7, 11], ] _UpperCAmelCase : Any = defaultdict(_UpperCAmelCase ) for nodea, nodea, cost in edges: adjancency[nodea].append([nodea, cost] ) adjancency[nodea].append([nodea, cost] ) _UpperCAmelCase : Tuple = mst(_UpperCAmelCase ) _UpperCAmelCase : str = [ [7, 6, 1], [2, 8, 2], [6, 5, 2], [0, 1, 4], [2, 5, 4], [2, 3, 7], [0, 7, 8], [3, 4, 9], ] for answer in expected: _UpperCAmelCase : Union[str, Any] = tuple(answer[:2] ) _UpperCAmelCase : Optional[Any] = tuple(edge[::-1] ) assert edge in result or reverse in result
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'''simple docstring''' import shutil import tempfile import unittest from unittest.mock import patch from transformers import ( DefaultFlowCallback, IntervalStrategy, PrinterCallback, ProgressCallback, Trainer, TrainerCallback, TrainingArguments, is_torch_available, ) from transformers.testing_utils import require_torch if is_torch_available(): from transformers.trainer import DEFAULT_CALLBACKS from .test_trainer import RegressionDataset, RegressionModelConfig, RegressionPreTrainedModel class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = [] def _A ( self : Any , A : Union[str, Any] , A : Optional[int] , A : List[str] , **A : Tuple ): self.events.append("on_init_end" ) def _A ( self : Any , A : str , A : List[Any] , A : List[Any] , **A : Tuple ): self.events.append("on_train_begin" ) def _A ( self : Tuple , A : List[str] , A : Tuple , A : int , **A : List[str] ): self.events.append("on_train_end" ) def _A ( self : Optional[Any] , A : Dict , A : Any , A : Optional[Any] , **A : List[Any] ): self.events.append("on_epoch_begin" ) def _A ( self : Optional[Any] , A : List[Any] , A : List[str] , A : Optional[int] , **A : Optional[int] ): self.events.append("on_epoch_end" ) def _A ( self : List[str] , A : Optional[int] , A : List[Any] , A : Union[str, Any] , **A : Any ): self.events.append("on_step_begin" ) def _A ( self : Tuple , A : Union[str, Any] , A : int , A : Optional[int] , **A : int ): self.events.append("on_step_end" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Union[str, Any] , A : str , **A : Union[str, Any] ): self.events.append("on_evaluate" ) def _A ( self : Optional[Any] , A : Optional[int] , A : Dict , A : List[Any] , **A : Dict ): self.events.append("on_predict" ) def _A ( self : Dict , A : Dict , A : List[Any] , A : Dict , **A : str ): self.events.append("on_save" ) def _A ( self : Tuple , A : Optional[Any] , A : Union[str, Any] , A : Optional[int] , **A : Dict ): self.events.append("on_log" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Tuple , A : Tuple , **A : List[str] ): self.events.append("on_prediction_step" ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[int] ): _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() def _A ( self : List[Any] ): shutil.rmtree(self.output_dir ) def _A ( self : Union[str, Any] , A : Optional[int]=0 , A : Optional[Any]=0 , A : Optional[Any]=64 , A : Dict=64 , A : Any=None , A : Tuple=False , **A : Optional[int] ): # disable_tqdm in TrainingArguments has a flaky default since it depends on the level of logging. We make sure # its set to False since the tests later on depend on its value. _UpperCAmelCase : str = RegressionDataset(length=A ) _UpperCAmelCase : Union[str, Any] = RegressionDataset(length=A ) _UpperCAmelCase : Any = RegressionModelConfig(a=A , b=A ) _UpperCAmelCase : List[Any] = RegressionPreTrainedModel(A ) _UpperCAmelCase : Dict = TrainingArguments(self.output_dir , disable_tqdm=A , report_to=[] , **A ) return Trainer( A , A , train_dataset=A , eval_dataset=A , callbacks=A , ) def _A ( self : str , A : List[str] , A : List[str] ): self.assertEqual(len(A ) , len(A ) ) # Order doesn't matter _UpperCAmelCase : Tuple = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) _UpperCAmelCase : Any = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) for cba, cba in zip(A , A ): if isinstance(A , A ) and isinstance(A , A ): self.assertEqual(A , A ) elif isinstance(A , A ) and not isinstance(A , A ): self.assertEqual(A , cba.__class__ ) elif not isinstance(A , A ) and isinstance(A , A ): self.assertEqual(cba.__class__ , A ) else: self.assertEqual(A , A ) def _A ( self : int , A : List[str] ): _UpperCAmelCase : List[str] = ["on_init_end", "on_train_begin"] _UpperCAmelCase : str = 0 _UpperCAmelCase : Optional[Any] = len(trainer.get_eval_dataloader() ) _UpperCAmelCase : Optional[int] = ["on_prediction_step"] * len(trainer.get_eval_dataloader() ) + ["on_log", "on_evaluate"] for _ in range(trainer.state.num_train_epochs ): expected_events.append("on_epoch_begin" ) for _ in range(A ): step += 1 expected_events += ["on_step_begin", "on_step_end"] if step % trainer.args.logging_steps == 0: expected_events.append("on_log" ) if trainer.args.evaluation_strategy == IntervalStrategy.STEPS and step % trainer.args.eval_steps == 0: expected_events += evaluation_events.copy() if step % trainer.args.save_steps == 0: expected_events.append("on_save" ) expected_events.append("on_epoch_end" ) if trainer.args.evaluation_strategy == IntervalStrategy.EPOCH: expected_events += evaluation_events.copy() expected_events += ["on_log", "on_train_end"] return expected_events def _A ( self : str ): _UpperCAmelCase : Any = self.get_trainer() _UpperCAmelCase : int = DEFAULT_CALLBACKS.copy() + [ProgressCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # Callbacks passed at init are added to the default callbacks _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) expected_callbacks.append(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # TrainingArguments.disable_tqdm controls if use ProgressCallback or PrinterCallback _UpperCAmelCase : List[Any] = self.get_trainer(disable_tqdm=A ) _UpperCAmelCase : Tuple = DEFAULT_CALLBACKS.copy() + [PrinterCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = DEFAULT_CALLBACKS.copy() + [ProgressCallback] _UpperCAmelCase : Dict = self.get_trainer() # We can add, pop, or remove by class name trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : Optional[Any] = self.get_trainer() _UpperCAmelCase : Any = trainer.pop_callback(A ) self.assertEqual(cb.__class__ , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # We can also add, pop, or remove by instance _UpperCAmelCase : Union[str, Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : List[Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] _UpperCAmelCase : Union[str, Any] = trainer.pop_callback(A ) self.assertEqual(A , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): import warnings # XXX: for now ignore scatter_gather warnings in this test since it's not relevant to what's being tested warnings.simplefilter(action="ignore" , category=A ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) trainer.train() _UpperCAmelCase : Union[str, Any] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # Independent log/save/eval _UpperCAmelCase : Tuple = self.get_trainer(callbacks=[MyTestTrainerCallback] , logging_steps=5 ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : List[str] = self.get_trainer(callbacks=[MyTestTrainerCallback] , save_steps=5 ) trainer.train() _UpperCAmelCase : Tuple = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : int = self.get_trainer(callbacks=[MyTestTrainerCallback] , eval_steps=5 , evaluation_strategy="steps" ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] , evaluation_strategy="epoch" ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # A bit of everything _UpperCAmelCase : int = self.get_trainer( callbacks=[MyTestTrainerCallback] , logging_steps=3 , save_steps=10 , eval_steps=5 , evaluation_strategy="steps" , ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # warning should be emitted for duplicated callbacks with patch("transformers.trainer_callback.logger.warning" ) as warn_mock: _UpperCAmelCase : Optional[Any] = self.get_trainer( callbacks=[MyTestTrainerCallback, MyTestTrainerCallback] , ) assert str(A ) in warn_mock.call_args[0][0]
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'''simple docstring''' import math from numpy import inf from scipy.integrate import quad def UpperCamelCase_ ( _UpperCAmelCase : float ) -> float: """simple docstring""" if num <= 0: raise ValueError("math domain error" ) return quad(_UpperCAmelCase , 0 , _UpperCAmelCase , args=(_UpperCAmelCase) )[0] def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" return math.pow(_UpperCAmelCase , z - 1 ) * math.exp(-x ) if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_video_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import VivitImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : int , A : Dict , A : Optional[int]=7 , A : Tuple=3 , A : Optional[Any]=10 , A : int=18 , A : Dict=30 , A : List[str]=400 , A : int=True , A : Optional[Any]=None , A : Optional[Any]=True , A : List[Any]=[0.5, 0.5, 0.5] , A : List[str]=[0.5, 0.5, 0.5] , A : Optional[int]=None , ): _UpperCAmelCase : Dict = size if size is not None else {"shortest_edge": 18} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : Tuple = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : Optional[int] = num_channels _UpperCAmelCase : Optional[Any] = num_frames _UpperCAmelCase : Any = image_size _UpperCAmelCase : Dict = min_resolution _UpperCAmelCase : Any = max_resolution _UpperCAmelCase : Optional[int] = do_resize _UpperCAmelCase : str = size _UpperCAmelCase : List[Any] = do_normalize _UpperCAmelCase : Any = image_mean _UpperCAmelCase : Tuple = image_std _UpperCAmelCase : Any = crop_size def _A ( self : List[Any] ): return { "image_mean": self.image_mean, "image_std": self.image_std, "do_normalize": self.do_normalize, "do_resize": self.do_resize, "size": self.size, "crop_size": self.crop_size, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = VivitImageProcessor if is_vision_available() else None def _A ( self : int ): _UpperCAmelCase : Tuple = VivitImageProcessingTester(self ) @property def _A ( self : Optional[Any] ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Union[str, Any] ): _UpperCAmelCase : str = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "image_mean" ) ) self.assertTrue(hasattr(A , "image_std" ) ) self.assertTrue(hasattr(A , "do_normalize" ) ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "size" ) ) def _A ( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 18} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Optional[int] = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Tuple ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PIL videos _UpperCAmelCase : Any = prepare_video_inputs(self.image_processor_tester , equal_resolution=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , Image.Image ) # Test not batched input _UpperCAmelCase : str = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : List[Any] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , np.ndarray ) # Test not batched input _UpperCAmelCase : Tuple = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[int] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , torch.Tensor ) # Test not batched input _UpperCAmelCase : Optional[Any] = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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'''simple docstring''' from __future__ import annotations from dataclasses import dataclass @dataclass class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: float __UpperCamelCase: TreeNode | None = None __UpperCamelCase: TreeNode | None = None def UpperCamelCase_ ( _UpperCAmelCase : TreeNode | None ) -> bool: """simple docstring""" def is_valid_tree(_UpperCAmelCase : TreeNode | None ) -> bool: if node is None: return True if not isinstance(_UpperCAmelCase , _UpperCAmelCase ): return False try: float(node.data ) except (TypeError, ValueError): return False return is_valid_tree(node.left ) and is_valid_tree(node.right ) if not is_valid_tree(_UpperCAmelCase ): raise ValueError( "Each node should be type of TreeNode and data should be float." ) def is_binary_search_tree_recursive_check( _UpperCAmelCase : TreeNode | None , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> bool: if node is None: return True return ( left_bound < node.data < right_bound and is_binary_search_tree_recursive_check(node.left , _UpperCAmelCase , node.data ) and is_binary_search_tree_recursive_check( node.right , node.data , _UpperCAmelCase ) ) return is_binary_search_tree_recursive_check(_UpperCAmelCase , -float("inf" ) , float("inf" ) ) if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' import math from typing import Optional import numpy as np from ...configuration_utils import PretrainedConfig from ...utils import logging __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : List[Any] = { """facebook/encodec_24khz""": """https://huggingface.co/facebook/encodec_24khz/resolve/main/config.json""", """facebook/encodec_48khz""": """https://huggingface.co/facebook/encodec_48khz/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = "encodec" def __init__( self : Optional[int] , A : Union[str, Any]=[1.5, 3.0, 6.0, 12.0, 24.0] , A : List[Any]=24000 , A : Union[str, Any]=1 , A : List[Any]=False , A : Optional[int]=None , A : int=None , A : str=128 , A : List[Any]=32 , A : List[Any]=1 , A : int=[8, 5, 4, 2] , A : Optional[int]="weight_norm" , A : List[Any]=7 , A : Any=7 , A : Dict=3 , A : Optional[int]=2 , A : Dict=True , A : Dict="reflect" , A : Any=2 , A : Dict=2 , A : str=1.0 , A : Optional[int]=1024 , A : Any=None , A : Any=True , **A : str , ): _UpperCAmelCase : Optional[int] = target_bandwidths _UpperCAmelCase : List[str] = sampling_rate _UpperCAmelCase : Optional[int] = audio_channels _UpperCAmelCase : str = normalize _UpperCAmelCase : int = chunk_length_s _UpperCAmelCase : str = overlap _UpperCAmelCase : Optional[Any] = hidden_size _UpperCAmelCase : int = num_filters _UpperCAmelCase : Optional[Any] = num_residual_layers _UpperCAmelCase : Optional[int] = upsampling_ratios _UpperCAmelCase : int = norm_type _UpperCAmelCase : List[Any] = kernel_size _UpperCAmelCase : List[Any] = last_kernel_size _UpperCAmelCase : List[Any] = residual_kernel_size _UpperCAmelCase : List[str] = dilation_growth_rate _UpperCAmelCase : Dict = use_causal_conv _UpperCAmelCase : Tuple = pad_mode _UpperCAmelCase : Tuple = compress _UpperCAmelCase : List[str] = num_lstm_layers _UpperCAmelCase : List[Any] = trim_right_ratio _UpperCAmelCase : int = codebook_size _UpperCAmelCase : Optional[Any] = codebook_dim if codebook_dim is not None else hidden_size _UpperCAmelCase : Optional[int] = use_conv_shortcut if self.norm_type not in ["weight_norm", "time_group_norm"]: raise ValueError( F"""self.norm_type must be one of `\"weight_norm\"`, `\"time_group_norm\"`), got {self.norm_type}""" ) super().__init__(**A ) @property def _A ( self : Any ): if self.chunk_length_s is None: return None else: return int(self.chunk_length_s * self.sampling_rate ) @property def _A ( self : Union[str, Any] ): if self.chunk_length_s is None or self.overlap is None: return None else: return max(1 , int((1.0 - self.overlap) * self.chunk_length ) ) @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = np.prod(self.upsampling_ratios ) return math.ceil(self.sampling_rate / hop_length ) @property def _A ( self : str ): return int(1000 * self.target_bandwidths[-1] // (self.frame_rate * 10) )
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'''simple docstring''' from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tf_available, is_torch_available __SCREAMING_SNAKE_CASE : List[Any] = { """configuration_rag""": ["""RagConfig"""], """retrieval_rag""": ["""RagRetriever"""], """tokenization_rag""": ["""RagTokenizer"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : int = [ """RagModel""", """RagPreTrainedModel""", """RagSequenceForGeneration""", """RagTokenForGeneration""", ] try: if not is_tf_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Any = [ """TFRagModel""", """TFRagPreTrainedModel""", """TFRagSequenceForGeneration""", """TFRagTokenForGeneration""", ] if TYPE_CHECKING: from .configuration_rag import RagConfig from .retrieval_rag import RagRetriever from .tokenization_rag import RagTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_rag import RagModel, RagPreTrainedModel, RagSequenceForGeneration, RagTokenForGeneration try: if not is_tf_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_tf_rag import ( TFRagModel, TFRagPreTrainedModel, TFRagSequenceForGeneration, TFRagTokenForGeneration, ) else: import sys __SCREAMING_SNAKE_CASE : Optional[int] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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'''simple docstring''' from typing import Any, Dict, List, Optional, Tuple, Union import torch from torch import nn from torch.utils.data import DistributedSampler, RandomSampler from transformers import PreTrainedModel, Trainer, logging from transformers.integrations import is_fairscale_available from transformers.models.fsmt.configuration_fsmt import FSMTConfig from transformers.optimization import ( Adafactor, AdamW, get_constant_schedule, get_constant_schedule_with_warmup, get_cosine_schedule_with_warmup, get_cosine_with_hard_restarts_schedule_with_warmup, get_linear_schedule_with_warmup, get_polynomial_decay_schedule_with_warmup, ) from transformers.trainer_pt_utils import get_tpu_sampler from transformers.training_args import ParallelMode from transformers.utils import is_torch_tpu_available if is_fairscale_available(): from fairscale.optim import OSS __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = { """linear""": get_linear_schedule_with_warmup, """cosine""": get_cosine_schedule_with_warmup, """cosine_w_restarts""": get_cosine_with_hard_restarts_schedule_with_warmup, """polynomial""": get_polynomial_decay_schedule_with_warmup, """constant""": get_constant_schedule, """constant_w_warmup""": get_constant_schedule_with_warmup, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Any , A : Optional[int]=None , A : Tuple=None , *A : Tuple , **A : List[str] ): super().__init__(*A , **A ) if config is None: assert isinstance(self.model , A ), ( "If no `config` is passed the model to be trained has to be of type `PreTrainedModel`, but is" F""" {self.model.__class__}""" ) _UpperCAmelCase : str = self.model.config else: _UpperCAmelCase : List[str] = config _UpperCAmelCase : List[Any] = data_args _UpperCAmelCase : str = self.config.tgt_vocab_size if isinstance(self.config , A ) else self.config.vocab_size if self.args.label_smoothing != 0 or (self.data_args is not None and self.data_args.ignore_pad_token_for_loss): assert self.config.pad_token_id is not None, ( "Make sure that `config.pad_token_id` is correcly defined when ignoring `pad_token` for loss" " calculation or doing label smoothing." ) if self.config.pad_token_id is None and self.config.eos_token_id is not None: logger.warning( F"""The `config.pad_token_id` is `None`. Using `config.eos_token_id` = {self.config.eos_token_id} for""" " padding.." ) if self.args.label_smoothing == 0: _UpperCAmelCase : Optional[Any] = torch.nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id ) else: # dynamically import label_smoothed_nll_loss from utils import label_smoothed_nll_loss _UpperCAmelCase : Dict = label_smoothed_nll_loss def _A ( self : Tuple , A : int ): if self.optimizer is None: _UpperCAmelCase : Tuple = ["bias", "LayerNorm.weight"] _UpperCAmelCase : str = [ { "params": [p for n, p in self.model.named_parameters() if not any(nd in n for nd in no_decay )], "weight_decay": self.args.weight_decay, }, { "params": [p for n, p in self.model.named_parameters() if any(nd in n for nd in no_decay )], "weight_decay": 0.0, }, ] _UpperCAmelCase : int = Adafactor if self.args.adafactor else AdamW if self.args.adafactor: _UpperCAmelCase : List[str] = Adafactor _UpperCAmelCase : List[Any] = {"scale_parameter": False, "relative_step": False} else: _UpperCAmelCase : List[str] = AdamW _UpperCAmelCase : List[str] = { "betas": (self.args.adam_betaa, self.args.adam_betaa), "eps": self.args.adam_epsilon, } _UpperCAmelCase : List[Any] = self.args.learning_rate if self.sharded_ddp: _UpperCAmelCase : List[Any] = OSS( params=A , optim=A , **A , ) else: _UpperCAmelCase : Union[str, Any] = optimizer_cls(A , **A ) if self.lr_scheduler is None: _UpperCAmelCase : List[str] = self._get_lr_scheduler(A ) else: # ignoring --lr_scheduler logger.warning("scheduler is passed to `Seq2SeqTrainer`, `--lr_scheduler` arg is ignored." ) def _A ( self : List[str] , A : Optional[int] ): _UpperCAmelCase : List[str] = arg_to_scheduler[self.args.lr_scheduler] if self.args.lr_scheduler == "constant": _UpperCAmelCase : Optional[Any] = schedule_func(self.optimizer ) elif self.args.lr_scheduler == "constant_w_warmup": _UpperCAmelCase : str = schedule_func(self.optimizer , num_warmup_steps=self.args.warmup_steps ) else: _UpperCAmelCase : str = schedule_func( self.optimizer , num_warmup_steps=self.args.warmup_steps , num_training_steps=A ) return scheduler def _A ( self : Tuple ): if isinstance(self.train_dataset , torch.utils.data.IterableDataset ): return None elif is_torch_tpu_available(): return get_tpu_sampler(self.train_dataset ) else: if self.args.sortish_sampler: self.train_dataset.make_sortish_sampler( self.args.per_device_train_batch_size , distributed=(self.args.parallel_mode == ParallelMode.DISTRIBUTED) , ) return ( RandomSampler(self.train_dataset ) if self.args.local_rank == -1 else DistributedSampler(self.train_dataset ) ) def _A ( self : Any , A : Union[str, Any] , A : Union[str, Any] , A : List[Any] ): if self.args.label_smoothing == 0: if self.data_args is not None and self.data_args.ignore_pad_token_for_loss: # force training to ignore pad token _UpperCAmelCase : List[str] = model(**A , use_cache=A )[0] _UpperCAmelCase : int = self.loss_fn(logits.view(-1 , logits.shape[-1] ) , labels.view(-1 ) ) else: # compute usual loss via models _UpperCAmelCase , _UpperCAmelCase : Any = model(**A , labels=A , use_cache=A )[:2] else: # compute label smoothed loss _UpperCAmelCase : Optional[int] = model(**A , use_cache=A )[0] _UpperCAmelCase : List[str] = torch.nn.functional.log_softmax(A , dim=-1 ) _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = self.loss_fn(A , A , self.args.label_smoothing , ignore_index=self.config.pad_token_id ) return loss, logits def _A ( self : List[str] , A : Optional[int] , A : Optional[int] ): _UpperCAmelCase : Union[str, Any] = inputs.pop("labels" ) _UpperCAmelCase , _UpperCAmelCase : Optional[int] = self._compute_loss(A , A , A ) return loss def _A ( self : List[str] , A : nn.Module , A : Dict[str, Union[torch.Tensor, Any]] , A : bool , A : Optional[List[str]] = None , ): _UpperCAmelCase : List[str] = self._prepare_inputs(A ) _UpperCAmelCase : Dict = { "max_length": self.data_args.val_max_target_length if self.data_args is not None else self.config.max_length, "num_beams": self.data_args.eval_beams if self.data_args is not None else self.config.num_beams, } if self.args.predict_with_generate and not self.args.prediction_loss_only: _UpperCAmelCase : Dict = self.model.generate( inputs["input_ids"] , attention_mask=inputs["attention_mask"] , **A , ) # in case the batch is shorter than max length, the output should be padded if generated_tokens.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : int = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) _UpperCAmelCase : Any = inputs.pop("labels" ) with torch.no_grad(): # compute loss on predict data _UpperCAmelCase , _UpperCAmelCase : str = self._compute_loss(A , A , A ) _UpperCAmelCase : List[str] = loss.mean().detach() if self.args.prediction_loss_only: return (loss, None, None) _UpperCAmelCase : str = generated_tokens if self.args.predict_with_generate else logits if labels.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : Optional[Any] = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) return (loss, logits, labels) def _A ( self : Dict , A : int , A : List[str] ): # If PAD token is not defined at least EOS token has to be defined _UpperCAmelCase : Union[str, Any] = self.config.pad_token_id if self.config.pad_token_id is not None else self.config.eos_token_id if pad_token_id is None: raise ValueError( "Make sure that either `config.pad_token_id` or `config.eos_token_id` is defined if tensor has to be" F""" padded to `max_length`={max_length}""" ) _UpperCAmelCase : Tuple = pad_token_id * torch.ones( (tensor.shape[0], max_length) , dtype=tensor.dtype , device=tensor.device ) _UpperCAmelCase : Tuple = tensor return padded_tensor
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'''simple docstring''' import math def UpperCamelCase_ ( _UpperCAmelCase : int ) -> bool: """simple docstring""" if 1 < number < 4: # 2 and 3 are primes return True elif number < 2 or number % 2 == 0 or number % 3 == 0: # Negatives, 0, 1, all even numbers, all multiples of 3 are not primes return False # All primes number are in format of 6k +/- 1 for i in range(5 , int(math.sqrt(_UpperCAmelCase ) + 1 ) , 6 ): if number % i == 0 or number % (i + 2) == 0: return False return True def UpperCamelCase_ ( _UpperCAmelCase : float = 0.1 ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 3 _UpperCAmelCase : Union[str, Any] = 3 while primes / (2 * j - 1) >= ratio: for i in range(j * j + j + 1 , (j + 2) * (j + 2) , j + 1 ): primes += is_prime(_UpperCAmelCase ) j += 2 return j if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' import copy from typing import Any, Dict, List, Optional, Union import numpy as np import torch from ...audio_utils import mel_filter_bank, spectrogram, window_function from ...feature_extraction_sequence_utils import SequenceFeatureExtractor from ...feature_extraction_utils import BatchFeature from ...utils import TensorType, logging __SCREAMING_SNAKE_CASE : List[str] = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["input_features", "is_longer"] def __init__( self : str , A : int=64 , A : Dict=48000 , A : str=480 , A : List[Any]=10 , A : Optional[Any]=1024 , A : Tuple=0.0 , A : List[Any]=False , A : float = 0 , A : float = 14000 , A : int = None , A : str = "fusion" , A : str = "repeatpad" , **A : Dict , ): super().__init__( feature_size=A , sampling_rate=A , padding_value=A , return_attention_mask=A , **A , ) _UpperCAmelCase : Optional[Any] = top_db _UpperCAmelCase : Dict = truncation _UpperCAmelCase : List[Any] = padding _UpperCAmelCase : Optional[Any] = fft_window_size _UpperCAmelCase : Dict = (fft_window_size >> 1) + 1 _UpperCAmelCase : Any = hop_length _UpperCAmelCase : Tuple = max_length_s _UpperCAmelCase : str = max_length_s * sampling_rate _UpperCAmelCase : Any = sampling_rate _UpperCAmelCase : Optional[int] = frequency_min _UpperCAmelCase : str = frequency_max _UpperCAmelCase : Union[str, Any] = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm=A , mel_scale="htk" , ) _UpperCAmelCase : Tuple = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm="slaney" , mel_scale="slaney" , ) def _A ( self : List[str] ): _UpperCAmelCase : Union[str, Any] = copy.deepcopy(self.__dict__ ) _UpperCAmelCase : Dict = self.__class__.__name__ if "mel_filters" in output: del output["mel_filters"] if "mel_filters_slaney" in output: del output["mel_filters_slaney"] return output def _A ( self : Optional[Any] , A : np.array , A : Optional[np.array] = None ): _UpperCAmelCase : Dict = spectrogram( A , window_function(self.fft_window_size , "hann" ) , frame_length=self.fft_window_size , hop_length=self.hop_length , power=2.0 , mel_filters=A , log_mel="dB" , ) return log_mel_spectrogram.T def _A ( self : str , A : str , A : List[str] , A : List[Any] ): _UpperCAmelCase : List[str] = np.array_split(list(range(0 , total_frames - chunk_frames + 1 ) ) , 3 ) if len(ranges[1] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Optional[Any] = [0] if len(ranges[2] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Tuple = [0] # randomly choose index for each part _UpperCAmelCase : Dict = np.random.choice(ranges[0] ) _UpperCAmelCase : str = np.random.choice(ranges[1] ) _UpperCAmelCase : Tuple = np.random.choice(ranges[2] ) _UpperCAmelCase : str = mel[idx_front : idx_front + chunk_frames, :] _UpperCAmelCase : str = mel[idx_middle : idx_middle + chunk_frames, :] _UpperCAmelCase : List[Any] = mel[idx_back : idx_back + chunk_frames, :] _UpperCAmelCase : Dict = torch.tensor(mel[None, None, :] ) _UpperCAmelCase : Optional[Any] = torch.nn.functional.interpolate( A , size=[chunk_frames, 64] , mode="bilinear" , align_corners=A ) _UpperCAmelCase : List[str] = mel_shrink[0][0].numpy() _UpperCAmelCase : str = np.stack([mel_shrink, mel_chunk_front, mel_chunk_middle, mel_chunk_back] , axis=0 ) return mel_fusion def _A ( self : List[Any] , A : np.array , A : List[str] , A : Any , A : Optional[int] ): if waveform.shape[0] > max_length: if truncation == "rand_trunc": _UpperCAmelCase : int = True # random crop to max_length (for compatibility) -> this should be handled by self.pad _UpperCAmelCase : str = len(A ) - max_length _UpperCAmelCase : str = np.random.randint(0 , overflow + 1 ) _UpperCAmelCase : int = waveform[idx : idx + max_length] _UpperCAmelCase : Any = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] elif truncation == "fusion": _UpperCAmelCase : Tuple = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : List[str] = max_length // self.hop_length + 1 # the +1 related to how the spectrogram is computed _UpperCAmelCase : Optional[Any] = mel.shape[0] if chunk_frames == total_frames: # there is a corner case where the audio length is larger than max_length but smaller than max_length+hop_length. # In this case, we just use the whole audio. _UpperCAmelCase : Any = np.stack([mel, mel, mel, mel] , axis=0 ) _UpperCAmelCase : int = False else: _UpperCAmelCase : Tuple = self._random_mel_fusion(A , A , A ) _UpperCAmelCase : Any = True else: raise NotImplementedError(F"""data_truncating {truncation} not implemented""" ) else: _UpperCAmelCase : Optional[Any] = False # only use repeat as a new possible value for padding. you repeat the audio before applying the usual max_length padding if waveform.shape[0] < max_length: if padding == "repeat": _UpperCAmelCase : str = int(max_length / len(A ) ) _UpperCAmelCase : Dict = np.stack(np.tile(A , n_repeat + 1 ) )[:max_length] if padding == "repeatpad": _UpperCAmelCase : Dict = int(max_length / len(A ) ) _UpperCAmelCase : List[str] = np.stack(np.tile(A , A ) ) _UpperCAmelCase : Optional[Any] = np.pad(A , (0, max_length - waveform.shape[0]) , mode="constant" , constant_values=0 ) if truncation == "fusion": _UpperCAmelCase : str = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : Optional[int] = np.stack([input_mel, input_mel, input_mel, input_mel] , axis=0 ) else: _UpperCAmelCase : List[str] = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] return input_mel, longer def __call__( self : Union[str, Any] , A : Union[np.ndarray, List[float], List[np.ndarray], List[List[float]]] , A : str = None , A : Optional[str] = None , A : Optional[int] = None , A : Optional[int] = None , A : Optional[Union[str, TensorType]] = None , **A : List[str] , ): _UpperCAmelCase : int = truncation if truncation is not None else self.truncation _UpperCAmelCase : Optional[int] = padding if padding else self.padding if sampling_rate is not None: if sampling_rate != self.sampling_rate: raise ValueError( F"""The model corresponding to this feature extractor: {self.__class__.__name__} was trained using a""" F""" sampling rate of {self.sampling_rate}. Please make sure that the provided `raw_speech` input""" F""" was sampled with {self.sampling_rate} and not {sampling_rate}.""" ) else: logger.warning( "It is strongly recommended to pass the `sampling_rate` argument to this function. " "Failing to do so can result in silent errors that might be hard to debug." ) _UpperCAmelCase : Any = isinstance(A , np.ndarray ) and len(raw_speech.shape ) > 1 if is_batched_numpy and len(raw_speech.shape ) > 2: raise ValueError(F"""Only mono-channel audio is supported for input to {self}""" ) _UpperCAmelCase : Optional[Any] = is_batched_numpy or ( isinstance(A , (list, tuple) ) and (isinstance(raw_speech[0] , (np.ndarray, tuple, list) )) ) if is_batched: _UpperCAmelCase : int = [np.asarray(A , dtype=np.floataa ) for speech in raw_speech] elif not is_batched and not isinstance(A , np.ndarray ): _UpperCAmelCase : List[str] = np.asarray(A , dtype=np.floataa ) elif isinstance(A , np.ndarray ) and raw_speech.dtype is np.dtype(np.floataa ): _UpperCAmelCase : Any = raw_speech.astype(np.floataa ) # always return batch if not is_batched: _UpperCAmelCase : List[str] = [np.asarray(A )] # convert to mel spectrogram, truncate and pad if needed. _UpperCAmelCase : Dict = [ self._get_input_mel(A , max_length if max_length else self.nb_max_samples , A , A ) for waveform in raw_speech ] _UpperCAmelCase : int = [] _UpperCAmelCase : Optional[Any] = [] for mel, longer in padded_inputs: input_mel.append(A ) is_longer.append(A ) if truncation == "fusion" and sum(A ) == 0: # if no audio is longer than 10s, then randomly select one audio to be longer _UpperCAmelCase : Union[str, Any] = np.random.randint(0 , len(A ) ) _UpperCAmelCase : Optional[Any] = True if isinstance(input_mel[0] , A ): _UpperCAmelCase : List[str] = [np.asarray(A , dtype=np.floataa ) for feature in input_mel] # is_longer is a list of bool _UpperCAmelCase : Tuple = [[longer] for longer in is_longer] _UpperCAmelCase : Optional[Any] = {"input_features": input_mel, "is_longer": is_longer} _UpperCAmelCase : Tuple = BatchFeature(A ) if return_tensors is not None: _UpperCAmelCase : List[Any] = input_features.convert_to_tensors(A ) return input_features
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'''simple docstring''' from __future__ import annotations def UpperCamelCase_ ( _UpperCAmelCase : list[int | str] ) -> None: """simple docstring""" create_state_space_tree(_UpperCAmelCase , [] , 0 , [0 for i in range(len(_UpperCAmelCase ) )] ) def UpperCamelCase_ ( _UpperCAmelCase : list[int | str] , _UpperCAmelCase : list[int | str] , _UpperCAmelCase : int , _UpperCAmelCase : list[int] , ) -> None: """simple docstring""" if index == len(_UpperCAmelCase ): print(_UpperCAmelCase ) return for i in range(len(_UpperCAmelCase ) ): if not index_used[i]: current_sequence.append(sequence[i] ) _UpperCAmelCase : List[str] = True create_state_space_tree(_UpperCAmelCase , _UpperCAmelCase , index + 1 , _UpperCAmelCase ) current_sequence.pop() _UpperCAmelCase : int = False __SCREAMING_SNAKE_CASE : list[int | str] = [3, 1, 2, 4] generate_all_permutations(sequence) __SCREAMING_SNAKE_CASE : list[int | str] = ["A", "B", "C"] generate_all_permutations(sequence_a)
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'''simple docstring''' from typing import TYPE_CHECKING from ...file_utils import _LazyModule, is_tokenizers_available, is_torch_available from ...utils import OptionalDependencyNotAvailable __SCREAMING_SNAKE_CASE : Optional[int] = {"""configuration_gpt_neox""": ["""GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP""", """GPTNeoXConfig"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Tuple = ["""GPTNeoXTokenizerFast"""] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Dict = [ """GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST""", """GPTNeoXForCausalLM""", """GPTNeoXForQuestionAnswering""", """GPTNeoXForSequenceClassification""", """GPTNeoXForTokenClassification""", """GPTNeoXLayer""", """GPTNeoXModel""", """GPTNeoXPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_gpt_neox import GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP, GPTNeoXConfig try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_gpt_neox_fast import GPTNeoXTokenizerFast try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_gpt_neox import ( GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST, GPTNeoXForCausalLM, GPTNeoXForQuestionAnswering, GPTNeoXForSequenceClassification, GPTNeoXForTokenClassification, GPTNeoXLayer, GPTNeoXModel, GPTNeoXPreTrainedModel, ) else: import sys __SCREAMING_SNAKE_CASE : Any = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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'''simple docstring''' from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tf_available, is_torch_available __SCREAMING_SNAKE_CASE : Dict = { """configuration_data2vec_audio""": ["""DATA2VEC_AUDIO_PRETRAINED_CONFIG_ARCHIVE_MAP""", """Data2VecAudioConfig"""], """configuration_data2vec_text""": [ """DATA2VEC_TEXT_PRETRAINED_CONFIG_ARCHIVE_MAP""", """Data2VecTextConfig""", """Data2VecTextOnnxConfig""", ], """configuration_data2vec_vision""": [ """DATA2VEC_VISION_PRETRAINED_CONFIG_ARCHIVE_MAP""", """Data2VecVisionConfig""", """Data2VecVisionOnnxConfig""", ], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Tuple = [ """DATA2VEC_AUDIO_PRETRAINED_MODEL_ARCHIVE_LIST""", """Data2VecAudioForAudioFrameClassification""", """Data2VecAudioForCTC""", """Data2VecAudioForSequenceClassification""", """Data2VecAudioForXVector""", """Data2VecAudioModel""", """Data2VecAudioPreTrainedModel""", ] __SCREAMING_SNAKE_CASE : str = [ """DATA2VEC_TEXT_PRETRAINED_MODEL_ARCHIVE_LIST""", """Data2VecTextForCausalLM""", """Data2VecTextForMaskedLM""", """Data2VecTextForMultipleChoice""", """Data2VecTextForQuestionAnswering""", """Data2VecTextForSequenceClassification""", """Data2VecTextForTokenClassification""", """Data2VecTextModel""", """Data2VecTextPreTrainedModel""", ] __SCREAMING_SNAKE_CASE : Tuple = [ """DATA2VEC_VISION_PRETRAINED_MODEL_ARCHIVE_LIST""", """Data2VecVisionForImageClassification""", """Data2VecVisionForMaskedImageModeling""", """Data2VecVisionForSemanticSegmentation""", """Data2VecVisionModel""", """Data2VecVisionPreTrainedModel""", ] if is_tf_available(): __SCREAMING_SNAKE_CASE : Optional[Any] = [ """TFData2VecVisionForImageClassification""", """TFData2VecVisionForSemanticSegmentation""", """TFData2VecVisionModel""", """TFData2VecVisionPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_dataavec_audio import DATA2VEC_AUDIO_PRETRAINED_CONFIG_ARCHIVE_MAP, DataaVecAudioConfig from .configuration_dataavec_text import ( DATA2VEC_TEXT_PRETRAINED_CONFIG_ARCHIVE_MAP, DataaVecTextConfig, DataaVecTextOnnxConfig, ) from .configuration_dataavec_vision import ( DATA2VEC_VISION_PRETRAINED_CONFIG_ARCHIVE_MAP, DataaVecVisionConfig, DataaVecVisionOnnxConfig, ) try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_dataavec_audio import ( DATA2VEC_AUDIO_PRETRAINED_MODEL_ARCHIVE_LIST, DataaVecAudioForAudioFrameClassification, DataaVecAudioForCTC, DataaVecAudioForSequenceClassification, DataaVecAudioForXVector, DataaVecAudioModel, DataaVecAudioPreTrainedModel, ) from .modeling_dataavec_text import ( DATA2VEC_TEXT_PRETRAINED_MODEL_ARCHIVE_LIST, DataaVecTextForCausalLM, DataaVecTextForMaskedLM, DataaVecTextForMultipleChoice, DataaVecTextForQuestionAnswering, DataaVecTextForSequenceClassification, DataaVecTextForTokenClassification, DataaVecTextModel, DataaVecTextPreTrainedModel, ) from .modeling_dataavec_vision import ( DATA2VEC_VISION_PRETRAINED_MODEL_ARCHIVE_LIST, DataaVecVisionForImageClassification, DataaVecVisionForMaskedImageModeling, DataaVecVisionForSemanticSegmentation, DataaVecVisionModel, DataaVecVisionPreTrainedModel, ) if is_tf_available(): from .modeling_tf_dataavec_vision import ( TFDataaVecVisionForImageClassification, TFDataaVecVisionForSemanticSegmentation, TFDataaVecVisionModel, TFDataaVecVisionPreTrainedModel, ) else: import sys __SCREAMING_SNAKE_CASE : Optional[Any] = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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'''simple docstring''' class lowerCamelCase_ : '''simple docstring''' def __init__( self : Tuple , A : Any , A : str , A : Union[str, Any] ): _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = graph self._normalize_graph(A , A ) _UpperCAmelCase : List[str] = len(A ) _UpperCAmelCase : Tuple = None def _A ( self : Any , A : List[Any] , A : str ): if sources is int: _UpperCAmelCase : List[Any] = [sources] if sinks is int: _UpperCAmelCase : List[Any] = [sinks] if len(A ) == 0 or len(A ) == 0: return _UpperCAmelCase : str = sources[0] _UpperCAmelCase : Union[str, Any] = sinks[0] # make fake vertex if there are more # than one source or sink if len(A ) > 1 or len(A ) > 1: _UpperCAmelCase : Dict = 0 for i in sources: max_input_flow += sum(self.graph[i] ) _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.insert(0 , 0 ) self.graph.insert(0 , [0] * size ) for i in sources: _UpperCAmelCase : Optional[Any] = max_input_flow _UpperCAmelCase : List[str] = 0 _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.append(0 ) self.graph.append([0] * size ) for i in sinks: _UpperCAmelCase : Dict = max_input_flow _UpperCAmelCase : List[Any] = size - 1 def _A ( self : Union[str, Any] ): if self.maximum_flow_algorithm is None: raise Exception("You need to set maximum flow algorithm before." ) if self.source_index is None or self.sink_index is None: return 0 self.maximum_flow_algorithm.execute() return self.maximum_flow_algorithm.getMaximumFlow() def _A ( self : Tuple , A : Dict ): _UpperCAmelCase : str = algorithm(self ) class lowerCamelCase_ : '''simple docstring''' def __init__( self : Any , A : str ): _UpperCAmelCase : Optional[int] = flow_network _UpperCAmelCase : Any = flow_network.verticesCount _UpperCAmelCase : List[str] = flow_network.sourceIndex _UpperCAmelCase : Union[str, Any] = flow_network.sinkIndex # it's just a reference, so you shouldn't change # it in your algorithms, use deep copy before doing that _UpperCAmelCase : Any = flow_network.graph _UpperCAmelCase : Union[str, Any] = False def _A ( self : List[str] ): if not self.executed: self._algorithm() _UpperCAmelCase : int = True def _A ( self : List[Any] ): pass class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[str, Any] ): super().__init__(A ) # use this to save your result _UpperCAmelCase : Any = -1 def _A ( self : Union[str, Any] ): if not self.executed: raise Exception("You should execute algorithm before using its result!" ) return self.maximum_flow class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Tuple , A : int ): super().__init__(A ) _UpperCAmelCase : List[str] = [[0] * self.verticies_count for i in range(self.verticies_count )] _UpperCAmelCase : Union[str, Any] = [0] * self.verticies_count _UpperCAmelCase : int = [0] * self.verticies_count def _A ( self : Dict ): _UpperCAmelCase : Dict = self.verticies_count # push some substance to graph for nextvertex_index, bandwidth in enumerate(self.graph[self.source_index] ): self.preflow[self.source_index][nextvertex_index] += bandwidth self.preflow[nextvertex_index][self.source_index] -= bandwidth self.excesses[nextvertex_index] += bandwidth # Relabel-to-front selection rule _UpperCAmelCase : Optional[int] = [ i for i in range(self.verticies_count ) if i != self.source_index and i != self.sink_index ] # move through list _UpperCAmelCase : Any = 0 while i < len(A ): _UpperCAmelCase : int = vertices_list[i] _UpperCAmelCase : int = self.heights[vertex_index] self.process_vertex(A ) if self.heights[vertex_index] > previous_height: # if it was relabeled, swap elements # and start from 0 index vertices_list.insert(0 , vertices_list.pop(A ) ) _UpperCAmelCase : Union[str, Any] = 0 else: i += 1 _UpperCAmelCase : List[Any] = sum(self.preflow[self.source_index] ) def _A ( self : Union[str, Any] , A : str ): while self.excesses[vertex_index] > 0: for neighbour_index in range(self.verticies_count ): # if it's neighbour and current vertex is higher if ( self.graph[vertex_index][neighbour_index] - self.preflow[vertex_index][neighbour_index] > 0 and self.heights[vertex_index] > self.heights[neighbour_index] ): self.push(A , A ) self.relabel(A ) def _A ( self : int , A : Dict , A : List[str] ): _UpperCAmelCase : int = min( self.excesses[from_index] , self.graph[from_index][to_index] - self.preflow[from_index][to_index] , ) self.preflow[from_index][to_index] += preflow_delta self.preflow[to_index][from_index] -= preflow_delta self.excesses[from_index] -= preflow_delta self.excesses[to_index] += preflow_delta def _A ( self : Optional[int] , A : Union[str, Any] ): _UpperCAmelCase : str = None for to_index in range(self.verticies_count ): if ( self.graph[vertex_index][to_index] - self.preflow[vertex_index][to_index] > 0 ) and (min_height is None or self.heights[to_index] < min_height): _UpperCAmelCase : Tuple = self.heights[to_index] if min_height is not None: _UpperCAmelCase : Optional[Any] = min_height + 1 if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[int] = [0] __SCREAMING_SNAKE_CASE : Union[str, Any] = [3] # graph = [ # [0, 0, 4, 6, 0, 0], # [0, 0, 5, 2, 0, 0], # [0, 0, 0, 0, 4, 4], # [0, 0, 0, 0, 6, 6], # [0, 0, 0, 0, 0, 0], # [0, 0, 0, 0, 0, 0], # ] __SCREAMING_SNAKE_CASE : List[Any] = [[0, 7, 0, 0], [0, 0, 6, 0], [0, 0, 0, 8], [9, 0, 0, 0]] # prepare our network __SCREAMING_SNAKE_CASE : Union[str, Any] = FlowNetwork(graph, entrances, exits) # set algorithm flow_network.set_maximum_flow_algorithm(PushRelabelExecutor) # and calculate __SCREAMING_SNAKE_CASE : Optional[Any] = flow_network.find_maximum_flow() print(F'maximum flow is {maximum_flow}')
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1
'''simple docstring''' import math from typing import List, Optional, Tuple, Union import numpy as np import torch from ..configuration_utils import ConfigMixin, register_to_config from .scheduling_utils import SchedulerMixin, SchedulerOutput class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = 1 @register_to_config def __init__( self : Optional[int] , A : int = 1000 , A : Optional[Union[np.ndarray, List[float]]] = None ): # set `betas`, `alphas`, `timesteps` self.set_timesteps(A ) # standard deviation of the initial noise distribution _UpperCAmelCase : int = 1.0 # For now we only support F-PNDM, i.e. the runge-kutta method # For more information on the algorithm please take a look at the paper: https://arxiv.org/pdf/2202.09778.pdf # mainly at formula (9), (12), (13) and the Algorithm 2. _UpperCAmelCase : int = 4 # running values _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : int , A : Union[str, torch.device] = None ): _UpperCAmelCase : int = num_inference_steps _UpperCAmelCase : Union[str, Any] = torch.linspace(1 , 0 , num_inference_steps + 1 )[:-1] _UpperCAmelCase : Any = torch.cat([steps, torch.tensor([0.0] )] ) if self.config.trained_betas is not None: _UpperCAmelCase : str = torch.tensor(self.config.trained_betas , dtype=torch.floataa ) else: _UpperCAmelCase : Dict = torch.sin(steps * math.pi / 2 ) ** 2 _UpperCAmelCase : List[Any] = (1.0 - self.betas**2) ** 0.5 _UpperCAmelCase : List[str] = (torch.atana(self.betas , self.alphas ) / math.pi * 2)[:-1] _UpperCAmelCase : Dict = timesteps.to(A ) _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : bool = True , ): if self.num_inference_steps is None: raise ValueError( "Number of inference steps is 'None', you need to run 'set_timesteps' after creating the scheduler" ) _UpperCAmelCase : Tuple = (self.timesteps == timestep).nonzero().item() _UpperCAmelCase : Optional[Any] = timestep_index + 1 _UpperCAmelCase : int = sample * self.betas[timestep_index] + model_output * self.alphas[timestep_index] self.ets.append(A ) if len(self.ets ) == 1: _UpperCAmelCase : List[Any] = self.ets[-1] elif len(self.ets ) == 2: _UpperCAmelCase : str = (3 * self.ets[-1] - self.ets[-2]) / 2 elif len(self.ets ) == 3: _UpperCAmelCase : Tuple = (23 * self.ets[-1] - 16 * self.ets[-2] + 5 * self.ets[-3]) / 12 else: _UpperCAmelCase : Union[str, Any] = (1 / 24) * (55 * self.ets[-1] - 59 * self.ets[-2] + 37 * self.ets[-3] - 9 * self.ets[-4]) _UpperCAmelCase : Union[str, Any] = self._get_prev_sample(A , A , A , A ) if not return_dict: return (prev_sample,) return SchedulerOutput(prev_sample=A ) def _A ( self : Union[str, Any] , A : torch.FloatTensor , *A : Union[str, Any] , **A : Dict ): return sample def _A ( self : Optional[Any] , A : Optional[int] , A : int , A : Optional[Any] , A : List[str] ): _UpperCAmelCase : List[str] = self.alphas[timestep_index] _UpperCAmelCase : List[Any] = self.betas[timestep_index] _UpperCAmelCase : Optional[Any] = self.alphas[prev_timestep_index] _UpperCAmelCase : Dict = self.betas[prev_timestep_index] _UpperCAmelCase : Tuple = (sample - sigma * ets) / max(A , 1E-8 ) _UpperCAmelCase : List[str] = next_alpha * pred + ets * next_sigma return prev_sample def __len__( self : Union[str, Any] ): return self.config.num_train_timesteps
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> float: """simple docstring""" def get_matched_characters(_UpperCAmelCase : str , _UpperCAmelCase : str ) -> str: _UpperCAmelCase : Tuple = [] _UpperCAmelCase : Dict = min(len(_stra ) , len(_stra ) ) // 2 for i, l in enumerate(_stra ): _UpperCAmelCase : int = int(max(0 , i - limit ) ) _UpperCAmelCase : Any = int(min(i + limit + 1 , len(_stra ) ) ) if l in _stra[left:right]: matched.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = F"""{_stra[0:_stra.index(_UpperCAmelCase )]} {_stra[_stra.index(_UpperCAmelCase ) + 1:]}""" return "".join(_UpperCAmelCase ) # matching characters _UpperCAmelCase : Union[str, Any] = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = len(_UpperCAmelCase ) # transposition _UpperCAmelCase : Optional[Any] = ( len([(ca, ca) for ca, ca in zip(_UpperCAmelCase , _UpperCAmelCase ) if ca != ca] ) // 2 ) if not match_count: _UpperCAmelCase : Dict = 0.0 else: _UpperCAmelCase : Optional[int] = ( 1 / 3 * ( match_count / len(_UpperCAmelCase ) + match_count / len(_UpperCAmelCase ) + (match_count - transpositions) / match_count ) ) # common prefix up to 4 characters _UpperCAmelCase : str = 0 for ca, ca in zip(stra[:4] , stra[:4] ): if ca == ca: prefix_len += 1 else: break return jaro + 0.1 * prefix_len * (1 - jaro) if __name__ == "__main__": import doctest doctest.testmod() print(jaro_winkler("""hello""", """world"""))
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'''simple docstring''' from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import logging from .tokenization_herbert import HerbertTokenizer __SCREAMING_SNAKE_CASE : int = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Any = {"""vocab_file""": """vocab.json""", """merges_file""": """merges.txt""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : Union[str, Any] = { """vocab_file""": { """allegro/herbert-base-cased""": """https://huggingface.co/allegro/herbert-base-cased/resolve/main/vocab.json""" }, """merges_file""": { """allegro/herbert-base-cased""": """https://huggingface.co/allegro/herbert-base-cased/resolve/main/merges.txt""" }, } __SCREAMING_SNAKE_CASE : Any = {"""allegro/herbert-base-cased""": 514} __SCREAMING_SNAKE_CASE : Optional[int] = {} class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = VOCAB_FILES_NAMES __UpperCamelCase: Union[str, Any] = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: List[str] = PRETRAINED_INIT_CONFIGURATION __UpperCamelCase: Dict = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: List[str] = HerbertTokenizer def __init__( self : int , A : Dict=None , A : Optional[int]=None , A : List[str]=None , A : Dict="<s>" , A : Dict="<unk>" , A : Union[str, Any]="<pad>" , A : Tuple="<mask>" , A : Any="</s>" , **A : str , ): super().__init__( A , A , tokenizer_file=A , cls_token=A , unk_token=A , pad_token=A , mask_token=A , sep_token=A , **A , ) def _A ( self : Optional[int] , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : str = [self.cls_token_id] _UpperCAmelCase : Dict = [self.sep_token_id] if token_ids_a is None: return cls + token_ids_a + sep return cls + token_ids_a + sep + token_ids_a + sep def _A ( self : Dict , A : List[int] , A : Optional[List[int]] = None , A : bool = False ): if already_has_special_tokens: return super().get_special_tokens_mask( token_ids_a=A , token_ids_a=A , already_has_special_tokens=A ) if token_ids_a is None: return [1] + ([0] * len(A )) + [1] return [1] + ([0] * len(A )) + [1] + ([0] * len(A )) + [1] def _A ( self : Tuple , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Dict = [self.sep_token_id] _UpperCAmelCase : Tuple = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): _UpperCAmelCase : Optional[int] = self._tokenizer.model.save(A , name=A ) return tuple(A )
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'''simple docstring''' import math from typing import List, Optional, Tuple, Union import numpy as np import torch from ..configuration_utils import ConfigMixin, register_to_config from .scheduling_utils import SchedulerMixin, SchedulerOutput class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = 1 @register_to_config def __init__( self : Optional[int] , A : int = 1000 , A : Optional[Union[np.ndarray, List[float]]] = None ): # set `betas`, `alphas`, `timesteps` self.set_timesteps(A ) # standard deviation of the initial noise distribution _UpperCAmelCase : int = 1.0 # For now we only support F-PNDM, i.e. the runge-kutta method # For more information on the algorithm please take a look at the paper: https://arxiv.org/pdf/2202.09778.pdf # mainly at formula (9), (12), (13) and the Algorithm 2. _UpperCAmelCase : int = 4 # running values _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : int , A : Union[str, torch.device] = None ): _UpperCAmelCase : int = num_inference_steps _UpperCAmelCase : Union[str, Any] = torch.linspace(1 , 0 , num_inference_steps + 1 )[:-1] _UpperCAmelCase : Any = torch.cat([steps, torch.tensor([0.0] )] ) if self.config.trained_betas is not None: _UpperCAmelCase : str = torch.tensor(self.config.trained_betas , dtype=torch.floataa ) else: _UpperCAmelCase : Dict = torch.sin(steps * math.pi / 2 ) ** 2 _UpperCAmelCase : List[Any] = (1.0 - self.betas**2) ** 0.5 _UpperCAmelCase : List[str] = (torch.atana(self.betas , self.alphas ) / math.pi * 2)[:-1] _UpperCAmelCase : Dict = timesteps.to(A ) _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : bool = True , ): if self.num_inference_steps is None: raise ValueError( "Number of inference steps is 'None', you need to run 'set_timesteps' after creating the scheduler" ) _UpperCAmelCase : Tuple = (self.timesteps == timestep).nonzero().item() _UpperCAmelCase : Optional[Any] = timestep_index + 1 _UpperCAmelCase : int = sample * self.betas[timestep_index] + model_output * self.alphas[timestep_index] self.ets.append(A ) if len(self.ets ) == 1: _UpperCAmelCase : List[Any] = self.ets[-1] elif len(self.ets ) == 2: _UpperCAmelCase : str = (3 * self.ets[-1] - self.ets[-2]) / 2 elif len(self.ets ) == 3: _UpperCAmelCase : Tuple = (23 * self.ets[-1] - 16 * self.ets[-2] + 5 * self.ets[-3]) / 12 else: _UpperCAmelCase : Union[str, Any] = (1 / 24) * (55 * self.ets[-1] - 59 * self.ets[-2] + 37 * self.ets[-3] - 9 * self.ets[-4]) _UpperCAmelCase : Union[str, Any] = self._get_prev_sample(A , A , A , A ) if not return_dict: return (prev_sample,) return SchedulerOutput(prev_sample=A ) def _A ( self : Union[str, Any] , A : torch.FloatTensor , *A : Union[str, Any] , **A : Dict ): return sample def _A ( self : Optional[Any] , A : Optional[int] , A : int , A : Optional[Any] , A : List[str] ): _UpperCAmelCase : List[str] = self.alphas[timestep_index] _UpperCAmelCase : List[Any] = self.betas[timestep_index] _UpperCAmelCase : Optional[Any] = self.alphas[prev_timestep_index] _UpperCAmelCase : Dict = self.betas[prev_timestep_index] _UpperCAmelCase : Tuple = (sample - sigma * ets) / max(A , 1E-8 ) _UpperCAmelCase : List[str] = next_alpha * pred + ets * next_sigma return prev_sample def __len__( self : Union[str, Any] ): return self.config.num_train_timesteps
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1
'''simple docstring''' import math import unittest from transformers import BioGptConfig, is_torch_available from transformers.testing_utils import require_torch, slow, torch_device from ...generation.test_utils import GenerationTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import ( BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification, BioGptModel, BioGptTokenizer, ) from transformers.models.biogpt.modeling_biogpt import BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[Any] , A : Dict , A : Optional[Any]=13 , A : Optional[Any]=7 , A : Union[str, Any]=True , A : Optional[Any]=True , A : int=False , A : str=True , A : Optional[Any]=99 , A : Union[str, Any]=32 , A : int=5 , A : Tuple=4 , A : Union[str, Any]=37 , A : Dict="gelu" , A : Union[str, Any]=0.1 , A : str=0.1 , A : Union[str, Any]=512 , A : int=16 , A : List[str]=2 , A : Tuple=0.02 , A : int=3 , A : List[str]=4 , A : str=None , ): _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : int = seq_length _UpperCAmelCase : Union[str, Any] = is_training _UpperCAmelCase : Any = use_input_mask _UpperCAmelCase : Optional[Any] = use_token_type_ids _UpperCAmelCase : str = use_labels _UpperCAmelCase : Union[str, Any] = vocab_size _UpperCAmelCase : Tuple = hidden_size _UpperCAmelCase : Union[str, Any] = num_hidden_layers _UpperCAmelCase : Optional[Any] = num_attention_heads _UpperCAmelCase : Union[str, Any] = intermediate_size _UpperCAmelCase : Union[str, Any] = hidden_act _UpperCAmelCase : List[Any] = hidden_dropout_prob _UpperCAmelCase : List[Any] = attention_probs_dropout_prob _UpperCAmelCase : Optional[int] = max_position_embeddings _UpperCAmelCase : str = type_vocab_size _UpperCAmelCase : str = type_sequence_label_size _UpperCAmelCase : int = initializer_range _UpperCAmelCase : Optional[Any] = num_labels _UpperCAmelCase : List[str] = num_choices _UpperCAmelCase : List[str] = scope def _A ( self : Optional[int] ): _UpperCAmelCase : Dict = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) _UpperCAmelCase : Union[str, Any] = None if self.use_input_mask: _UpperCAmelCase : List[Any] = random_attention_mask([self.batch_size, self.seq_length] ) _UpperCAmelCase : Any = None if self.use_token_type_ids: _UpperCAmelCase : List[str] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = None _UpperCAmelCase : Optional[int] = None if self.use_labels: _UpperCAmelCase : Optional[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) _UpperCAmelCase : Tuple = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) _UpperCAmelCase : List[str] = ids_tensor([self.batch_size] , self.num_choices ) _UpperCAmelCase : List[Any] = self.get_config() return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def _A ( self : Dict ): return BioGptConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , is_decoder=A , initializer_range=self.initializer_range , ) def _A ( self : int , A : List[Any] , A : Any , A : int , A : Union[str, Any] , A : Dict , A : List[Any] , A : Dict ): _UpperCAmelCase : List[str] = BioGptModel(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A ) _UpperCAmelCase : int = model(A ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _A ( self : List[Any] , A : str , A : List[Any] , A : Dict , A : List[Any] , A : List[str] , A : Union[str, Any] , A : int , A : List[str] , A : Dict , ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A , labels=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _A ( self : List[Any] , A : str , A : str , A : str , A : Any , A : List[str] , *A : Optional[int] ): _UpperCAmelCase : str = BioGptModel(config=A ) model.to(A ) model.eval() # create attention mask _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) _UpperCAmelCase : Optional[int] = self.seq_length // 2 _UpperCAmelCase : List[Any] = 0 # first forward pass _UpperCAmelCase , _UpperCAmelCase : List[str] = model(A , attention_mask=A ).to_tuple() # create hypothetical next token and extent to next_input_ids _UpperCAmelCase : List[str] = ids_tensor((self.batch_size, 1) , config.vocab_size ) # change a random masked slice from input_ids _UpperCAmelCase : List[str] = ids_tensor((1,) , A ).item() + 1 _UpperCAmelCase : str = ids_tensor((self.batch_size, 1) , config.vocab_size ).squeeze(-1 ) _UpperCAmelCase : Any = random_other_next_tokens # append to next input_ids and attn_mask _UpperCAmelCase : List[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Optional[int] = torch.cat( [attn_mask, torch.ones((attn_mask.shape[0], 1) , dtype=torch.long , device=A )] , dim=1 , ) # get two different outputs _UpperCAmelCase : List[Any] = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Optional[Any] = model(A , past_key_values=A , attention_mask=A )["last_hidden_state"] # select random slice _UpperCAmelCase : Any = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Optional[Any] = output_from_no_past[:, -1, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, 0, random_slice_idx].detach() # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : int , A : Dict , A : str , A : Dict , A : Union[str, Any] , A : Any , *A : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = BioGptModel(config=A ).to(A ).eval() _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) # first forward pass _UpperCAmelCase : Union[str, Any] = model(A , attention_mask=A , use_cache=A ) _UpperCAmelCase , _UpperCAmelCase : Dict = outputs.to_tuple() # create hypothetical multiple next token and extent to next_input_ids _UpperCAmelCase : str = ids_tensor((self.batch_size, 3) , config.vocab_size ) _UpperCAmelCase : Any = ids_tensor((self.batch_size, 3) , 2 ) # append to next input_ids and _UpperCAmelCase : Optional[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Dict = torch.cat([attention_mask, next_attn_mask] , dim=-1 ) _UpperCAmelCase : Any = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Dict = model(A , attention_mask=A , past_key_values=A )[ "last_hidden_state" ] # select random slice _UpperCAmelCase : Dict = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Dict = output_from_no_past[:, -3:, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, :, random_slice_idx].detach() self.parent.assertTrue(output_from_past_slice.shape[1] == next_tokens.shape[1] ) # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : Optional[Any] , A : Tuple , A : List[str] , A : Tuple , A : Dict , A : List[Any] , *A : Tuple , A : List[str]=False ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(A ) model.to(A ) if gradient_checkpointing: model.gradient_checkpointing_enable() _UpperCAmelCase : Union[str, Any] = model(A , labels=A ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) result.loss.backward() def _A ( self : Optional[Any] , A : Any , *A : Optional[Any] ): _UpperCAmelCase : Tuple = BioGptModel(A ) _UpperCAmelCase : int = model.config.initializer_range / math.sqrt(2 * model.config.num_hidden_layers ) for key in model.state_dict().keys(): if "c_proj" in key and "weight" in key: self.parent.assertLessEqual(abs(torch.std(model.state_dict()[key] ) - model_std ) , 0.001 ) self.parent.assertLessEqual(abs(torch.mean(model.state_dict()[key] ) - 0.0 ) , 0.01 ) def _A ( self : Optional[int] , A : Dict , A : Tuple , A : Optional[int] , A : int , A : List[str] , *A : Dict ): _UpperCAmelCase : Any = self.num_labels _UpperCAmelCase : Any = BioGptForTokenClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def _A ( self : int ): _UpperCAmelCase : Dict = self.prepare_config_and_inputs() ( ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ) : List[str] = config_and_inputs _UpperCAmelCase : Optional[int] = {"input_ids": input_ids, "attention_mask": input_mask} return config, inputs_dict @require_torch class lowerCamelCase_ (snake_case__ , snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[str] = ( (BioGptModel, BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification) if is_torch_available() else () ) __UpperCamelCase: List[str] = (BioGptForCausalLM,) if is_torch_available() else () __UpperCamelCase: str = ( { "feature-extraction": BioGptModel, "text-classification": BioGptForSequenceClassification, "text-generation": BioGptForCausalLM, "token-classification": BioGptForTokenClassification, "zero-shot": BioGptForSequenceClassification, } if is_torch_available() else {} ) __UpperCamelCase: Union[str, Any] = False def _A ( self : Optional[Any] ): _UpperCAmelCase : List[Any] = BioGptModelTester(self ) _UpperCAmelCase : str = ConfigTester(self , config_class=A , hidden_size=37 ) def _A ( self : Union[str, Any] ): self.config_tester.run_common_tests() def _A ( self : Any ): _UpperCAmelCase : Any = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*A ) def _A ( self : Any ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() for type in ["absolute", "relative_key", "relative_key_query"]: _UpperCAmelCase : Tuple = type self.model_tester.create_and_check_model(*A ) def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_attention_mask_past(*A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : List[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_forward_and_backwards(*A , gradient_checkpointing=A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_past_large_inputs(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_weight_initialization(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_for_token_classification(*A ) @slow def _A ( self : List[str] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) _UpperCAmelCase : Tuple = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : str = "left" # Define PAD Token = EOS Token = 50256 _UpperCAmelCase : Any = tokenizer.eos_token _UpperCAmelCase : int = model.config.eos_token_id # use different length sentences to test batching _UpperCAmelCase : Any = [ "Hello, my dog is a little", "Today, I", ] _UpperCAmelCase : Tuple = tokenizer(A , return_tensors="pt" , padding=A ) _UpperCAmelCase : Optional[Any] = inputs["input_ids"].to(A ) _UpperCAmelCase : Any = model.generate( input_ids=A , attention_mask=inputs["attention_mask"].to(A ) , ) _UpperCAmelCase : int = tokenizer(sentences[0] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : List[Any] = model.generate(input_ids=A ) _UpperCAmelCase : List[Any] = inputs_non_padded.shape[-1] - inputs["attention_mask"][-1].long().sum().cpu().item() _UpperCAmelCase : int = tokenizer(sentences[1] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : int = model.generate(input_ids=A , max_length=model.config.max_length - num_paddings ) _UpperCAmelCase : Dict = tokenizer.batch_decode(A , skip_special_tokens=A ) _UpperCAmelCase : Any = tokenizer.decode(output_non_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : Optional[int] = tokenizer.decode(output_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : str = [ "Hello, my dog is a little bit bigger than a little bit.", "Today, I have a good idea of how to use the information", ] self.assertListEqual(A , A ) self.assertListEqual(A , [non_padded_sentence, padded_sentence] ) @slow def _A ( self : str ): for model_name in BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: _UpperCAmelCase : Optional[Any] = BioGptModel.from_pretrained(A ) self.assertIsNotNone(A ) def _A ( self : List[str] ): _UpperCAmelCase , _UpperCAmelCase : int = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : str = 3 _UpperCAmelCase : List[str] = input_dict["input_ids"] _UpperCAmelCase : Dict = input_ids.ne(1 ).to(A ) _UpperCAmelCase : List[Any] = ids_tensor([self.model_tester.batch_size] , self.model_tester.type_sequence_label_size ) _UpperCAmelCase : List[str] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : List[str] = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) def _A ( self : int ): _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : int = 3 _UpperCAmelCase : Dict = "multi_label_classification" _UpperCAmelCase : Optional[Any] = input_dict["input_ids"] _UpperCAmelCase : Optional[int] = input_ids.ne(1 ).to(A ) _UpperCAmelCase : Tuple = ids_tensor( [self.model_tester.batch_size, config.num_labels] , self.model_tester.type_sequence_label_size ).to(torch.float ) _UpperCAmelCase : Optional[Any] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' @slow def _A ( self : List[Any] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : List[str] = torch.tensor([[2, 4805, 9, 656, 21]] ) _UpperCAmelCase : List[Any] = model(A )[0] _UpperCAmelCase : int = 42384 _UpperCAmelCase : int = torch.Size((1, 5, vocab_size) ) self.assertEqual(output.shape , A ) _UpperCAmelCase : Any = torch.tensor( [[[-9.5_236, -9.8_918, 10.4_557], [-11.0_469, -9.6_423, 8.1_022], [-8.8_664, -7.8_826, 5.5_325]]] ) self.assertTrue(torch.allclose(output[:, :3, :3] , A , atol=1E-4 ) ) @slow def _A ( self : Any ): _UpperCAmelCase : str = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : Tuple = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) torch.manual_seed(0 ) _UpperCAmelCase : Optional[Any] = tokenizer("COVID-19 is" , return_tensors="pt" ).to(A ) _UpperCAmelCase : Dict = model.generate( **A , min_length=100 , max_length=1024 , num_beams=5 , early_stopping=A , ) _UpperCAmelCase : Optional[Any] = tokenizer.decode(output_ids[0] , skip_special_tokens=A ) _UpperCAmelCase : List[str] = ( "COVID-19 is a global pandemic caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the" " causative agent of coronavirus disease 2019 (COVID-19), which has spread to more than 200 countries and" " territories, including the United States (US), Canada, Australia, New Zealand, the United Kingdom (UK)," " and the United States of America (USA), as of March 11, 2020, with more than 800,000 confirmed cases and" " more than 800,000 deaths." ) self.assertEqual(A , A )
31
'''simple docstring''' import numpy as np from matplotlib import pyplot as plt from sklearn.datasets import load_iris from sklearn.metrics import ConfusionMatrixDisplay from sklearn.model_selection import train_test_split from xgboost import XGBClassifier def UpperCamelCase_ ( _UpperCAmelCase : dict ) -> tuple: """simple docstring""" return (data["data"], data["target"]) def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray ) -> XGBClassifier: """simple docstring""" _UpperCAmelCase : Any = XGBClassifier() classifier.fit(_UpperCAmelCase , _UpperCAmelCase ) return classifier def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : List[str] = load_iris() _UpperCAmelCase , _UpperCAmelCase : Dict = data_handling(_UpperCAmelCase ) _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : str = train_test_split( _UpperCAmelCase , _UpperCAmelCase , test_size=0.2_5 ) _UpperCAmelCase : Optional[Any] = iris["target_names"] # Create an XGBoost Classifier from the training data _UpperCAmelCase : Tuple = xgboost(_UpperCAmelCase , _UpperCAmelCase ) # Display the confusion matrix of the classifier with both training and test sets ConfusionMatrixDisplay.from_estimator( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , display_labels=_UpperCAmelCase , cmap="Blues" , normalize="true" , ) plt.title("Normalized Confusion Matrix - IRIS Dataset" ) plt.show() if __name__ == "__main__": import doctest doctest.testmod(verbose=True) main()
31
1
'''simple docstring''' from __future__ import annotations def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float , ) -> tuple[str, float]: """simple docstring""" if (stress, tangential_force, area).count(0 ) != 1: raise ValueError("You cannot supply more or less than 2 values" ) elif stress < 0: raise ValueError("Stress cannot be negative" ) elif tangential_force < 0: raise ValueError("Tangential Force cannot be negative" ) elif area < 0: raise ValueError("Area cannot be negative" ) elif stress == 0: return ( "stress", tangential_force / area, ) elif tangential_force == 0: return ( "tangential_force", stress * area, ) else: return ( "area", tangential_force / stress, ) if __name__ == "__main__": import doctest doctest.testmod()
31
'''simple docstring''' import math import unittest from transformers import BioGptConfig, is_torch_available from transformers.testing_utils import require_torch, slow, torch_device from ...generation.test_utils import GenerationTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import ( BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification, BioGptModel, BioGptTokenizer, ) from transformers.models.biogpt.modeling_biogpt import BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[Any] , A : Dict , A : Optional[Any]=13 , A : Optional[Any]=7 , A : Union[str, Any]=True , A : Optional[Any]=True , A : int=False , A : str=True , A : Optional[Any]=99 , A : Union[str, Any]=32 , A : int=5 , A : Tuple=4 , A : Union[str, Any]=37 , A : Dict="gelu" , A : Union[str, Any]=0.1 , A : str=0.1 , A : Union[str, Any]=512 , A : int=16 , A : List[str]=2 , A : Tuple=0.02 , A : int=3 , A : List[str]=4 , A : str=None , ): _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : int = seq_length _UpperCAmelCase : Union[str, Any] = is_training _UpperCAmelCase : Any = use_input_mask _UpperCAmelCase : Optional[Any] = use_token_type_ids _UpperCAmelCase : str = use_labels _UpperCAmelCase : Union[str, Any] = vocab_size _UpperCAmelCase : Tuple = hidden_size _UpperCAmelCase : Union[str, Any] = num_hidden_layers _UpperCAmelCase : Optional[Any] = num_attention_heads _UpperCAmelCase : Union[str, Any] = intermediate_size _UpperCAmelCase : Union[str, Any] = hidden_act _UpperCAmelCase : List[Any] = hidden_dropout_prob _UpperCAmelCase : List[Any] = attention_probs_dropout_prob _UpperCAmelCase : Optional[int] = max_position_embeddings _UpperCAmelCase : str = type_vocab_size _UpperCAmelCase : str = type_sequence_label_size _UpperCAmelCase : int = initializer_range _UpperCAmelCase : Optional[Any] = num_labels _UpperCAmelCase : List[str] = num_choices _UpperCAmelCase : List[str] = scope def _A ( self : Optional[int] ): _UpperCAmelCase : Dict = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) _UpperCAmelCase : Union[str, Any] = None if self.use_input_mask: _UpperCAmelCase : List[Any] = random_attention_mask([self.batch_size, self.seq_length] ) _UpperCAmelCase : Any = None if self.use_token_type_ids: _UpperCAmelCase : List[str] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = None _UpperCAmelCase : Optional[int] = None if self.use_labels: _UpperCAmelCase : Optional[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) _UpperCAmelCase : Tuple = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) _UpperCAmelCase : List[str] = ids_tensor([self.batch_size] , self.num_choices ) _UpperCAmelCase : List[Any] = self.get_config() return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def _A ( self : Dict ): return BioGptConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , is_decoder=A , initializer_range=self.initializer_range , ) def _A ( self : int , A : List[Any] , A : Any , A : int , A : Union[str, Any] , A : Dict , A : List[Any] , A : Dict ): _UpperCAmelCase : List[str] = BioGptModel(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A ) _UpperCAmelCase : int = model(A ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _A ( self : List[Any] , A : str , A : List[Any] , A : Dict , A : List[Any] , A : List[str] , A : Union[str, Any] , A : int , A : List[str] , A : Dict , ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A , labels=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _A ( self : List[Any] , A : str , A : str , A : str , A : Any , A : List[str] , *A : Optional[int] ): _UpperCAmelCase : str = BioGptModel(config=A ) model.to(A ) model.eval() # create attention mask _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) _UpperCAmelCase : Optional[int] = self.seq_length // 2 _UpperCAmelCase : List[Any] = 0 # first forward pass _UpperCAmelCase , _UpperCAmelCase : List[str] = model(A , attention_mask=A ).to_tuple() # create hypothetical next token and extent to next_input_ids _UpperCAmelCase : List[str] = ids_tensor((self.batch_size, 1) , config.vocab_size ) # change a random masked slice from input_ids _UpperCAmelCase : List[str] = ids_tensor((1,) , A ).item() + 1 _UpperCAmelCase : str = ids_tensor((self.batch_size, 1) , config.vocab_size ).squeeze(-1 ) _UpperCAmelCase : Any = random_other_next_tokens # append to next input_ids and attn_mask _UpperCAmelCase : List[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Optional[int] = torch.cat( [attn_mask, torch.ones((attn_mask.shape[0], 1) , dtype=torch.long , device=A )] , dim=1 , ) # get two different outputs _UpperCAmelCase : List[Any] = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Optional[Any] = model(A , past_key_values=A , attention_mask=A )["last_hidden_state"] # select random slice _UpperCAmelCase : Any = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Optional[Any] = output_from_no_past[:, -1, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, 0, random_slice_idx].detach() # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : int , A : Dict , A : str , A : Dict , A : Union[str, Any] , A : Any , *A : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = BioGptModel(config=A ).to(A ).eval() _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) # first forward pass _UpperCAmelCase : Union[str, Any] = model(A , attention_mask=A , use_cache=A ) _UpperCAmelCase , _UpperCAmelCase : Dict = outputs.to_tuple() # create hypothetical multiple next token and extent to next_input_ids _UpperCAmelCase : str = ids_tensor((self.batch_size, 3) , config.vocab_size ) _UpperCAmelCase : Any = ids_tensor((self.batch_size, 3) , 2 ) # append to next input_ids and _UpperCAmelCase : Optional[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Dict = torch.cat([attention_mask, next_attn_mask] , dim=-1 ) _UpperCAmelCase : Any = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Dict = model(A , attention_mask=A , past_key_values=A )[ "last_hidden_state" ] # select random slice _UpperCAmelCase : Dict = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Dict = output_from_no_past[:, -3:, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, :, random_slice_idx].detach() self.parent.assertTrue(output_from_past_slice.shape[1] == next_tokens.shape[1] ) # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : Optional[Any] , A : Tuple , A : List[str] , A : Tuple , A : Dict , A : List[Any] , *A : Tuple , A : List[str]=False ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(A ) model.to(A ) if gradient_checkpointing: model.gradient_checkpointing_enable() _UpperCAmelCase : Union[str, Any] = model(A , labels=A ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) result.loss.backward() def _A ( self : Optional[Any] , A : Any , *A : Optional[Any] ): _UpperCAmelCase : Tuple = BioGptModel(A ) _UpperCAmelCase : int = model.config.initializer_range / math.sqrt(2 * model.config.num_hidden_layers ) for key in model.state_dict().keys(): if "c_proj" in key and "weight" in key: self.parent.assertLessEqual(abs(torch.std(model.state_dict()[key] ) - model_std ) , 0.001 ) self.parent.assertLessEqual(abs(torch.mean(model.state_dict()[key] ) - 0.0 ) , 0.01 ) def _A ( self : Optional[int] , A : Dict , A : Tuple , A : Optional[int] , A : int , A : List[str] , *A : Dict ): _UpperCAmelCase : Any = self.num_labels _UpperCAmelCase : Any = BioGptForTokenClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def _A ( self : int ): _UpperCAmelCase : Dict = self.prepare_config_and_inputs() ( ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ) : List[str] = config_and_inputs _UpperCAmelCase : Optional[int] = {"input_ids": input_ids, "attention_mask": input_mask} return config, inputs_dict @require_torch class lowerCamelCase_ (snake_case__ , snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[str] = ( (BioGptModel, BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification) if is_torch_available() else () ) __UpperCamelCase: List[str] = (BioGptForCausalLM,) if is_torch_available() else () __UpperCamelCase: str = ( { "feature-extraction": BioGptModel, "text-classification": BioGptForSequenceClassification, "text-generation": BioGptForCausalLM, "token-classification": BioGptForTokenClassification, "zero-shot": BioGptForSequenceClassification, } if is_torch_available() else {} ) __UpperCamelCase: Union[str, Any] = False def _A ( self : Optional[Any] ): _UpperCAmelCase : List[Any] = BioGptModelTester(self ) _UpperCAmelCase : str = ConfigTester(self , config_class=A , hidden_size=37 ) def _A ( self : Union[str, Any] ): self.config_tester.run_common_tests() def _A ( self : Any ): _UpperCAmelCase : Any = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*A ) def _A ( self : Any ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() for type in ["absolute", "relative_key", "relative_key_query"]: _UpperCAmelCase : Tuple = type self.model_tester.create_and_check_model(*A ) def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_attention_mask_past(*A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : List[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_forward_and_backwards(*A , gradient_checkpointing=A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_past_large_inputs(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_weight_initialization(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_for_token_classification(*A ) @slow def _A ( self : List[str] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) _UpperCAmelCase : Tuple = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : str = "left" # Define PAD Token = EOS Token = 50256 _UpperCAmelCase : Any = tokenizer.eos_token _UpperCAmelCase : int = model.config.eos_token_id # use different length sentences to test batching _UpperCAmelCase : Any = [ "Hello, my dog is a little", "Today, I", ] _UpperCAmelCase : Tuple = tokenizer(A , return_tensors="pt" , padding=A ) _UpperCAmelCase : Optional[Any] = inputs["input_ids"].to(A ) _UpperCAmelCase : Any = model.generate( input_ids=A , attention_mask=inputs["attention_mask"].to(A ) , ) _UpperCAmelCase : int = tokenizer(sentences[0] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : List[Any] = model.generate(input_ids=A ) _UpperCAmelCase : List[Any] = inputs_non_padded.shape[-1] - inputs["attention_mask"][-1].long().sum().cpu().item() _UpperCAmelCase : int = tokenizer(sentences[1] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : int = model.generate(input_ids=A , max_length=model.config.max_length - num_paddings ) _UpperCAmelCase : Dict = tokenizer.batch_decode(A , skip_special_tokens=A ) _UpperCAmelCase : Any = tokenizer.decode(output_non_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : Optional[int] = tokenizer.decode(output_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : str = [ "Hello, my dog is a little bit bigger than a little bit.", "Today, I have a good idea of how to use the information", ] self.assertListEqual(A , A ) self.assertListEqual(A , [non_padded_sentence, padded_sentence] ) @slow def _A ( self : str ): for model_name in BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: _UpperCAmelCase : Optional[Any] = BioGptModel.from_pretrained(A ) self.assertIsNotNone(A ) def _A ( self : List[str] ): _UpperCAmelCase , _UpperCAmelCase : int = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : str = 3 _UpperCAmelCase : List[str] = input_dict["input_ids"] _UpperCAmelCase : Dict = input_ids.ne(1 ).to(A ) _UpperCAmelCase : List[Any] = ids_tensor([self.model_tester.batch_size] , self.model_tester.type_sequence_label_size ) _UpperCAmelCase : List[str] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : List[str] = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) def _A ( self : int ): _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : int = 3 _UpperCAmelCase : Dict = "multi_label_classification" _UpperCAmelCase : Optional[Any] = input_dict["input_ids"] _UpperCAmelCase : Optional[int] = input_ids.ne(1 ).to(A ) _UpperCAmelCase : Tuple = ids_tensor( [self.model_tester.batch_size, config.num_labels] , self.model_tester.type_sequence_label_size ).to(torch.float ) _UpperCAmelCase : Optional[Any] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' @slow def _A ( self : List[Any] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : List[str] = torch.tensor([[2, 4805, 9, 656, 21]] ) _UpperCAmelCase : List[Any] = model(A )[0] _UpperCAmelCase : int = 42384 _UpperCAmelCase : int = torch.Size((1, 5, vocab_size) ) self.assertEqual(output.shape , A ) _UpperCAmelCase : Any = torch.tensor( [[[-9.5_236, -9.8_918, 10.4_557], [-11.0_469, -9.6_423, 8.1_022], [-8.8_664, -7.8_826, 5.5_325]]] ) self.assertTrue(torch.allclose(output[:, :3, :3] , A , atol=1E-4 ) ) @slow def _A ( self : Any ): _UpperCAmelCase : str = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : Tuple = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) torch.manual_seed(0 ) _UpperCAmelCase : Optional[Any] = tokenizer("COVID-19 is" , return_tensors="pt" ).to(A ) _UpperCAmelCase : Dict = model.generate( **A , min_length=100 , max_length=1024 , num_beams=5 , early_stopping=A , ) _UpperCAmelCase : Optional[Any] = tokenizer.decode(output_ids[0] , skip_special_tokens=A ) _UpperCAmelCase : List[str] = ( "COVID-19 is a global pandemic caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the" " causative agent of coronavirus disease 2019 (COVID-19), which has spread to more than 200 countries and" " territories, including the United States (US), Canada, Australia, New Zealand, the United Kingdom (UK)," " and the United States of America (USA), as of March 11, 2020, with more than 800,000 confirmed cases and" " more than 800,000 deaths." ) self.assertEqual(A , A )
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'''simple docstring''' import os import sys import unittest __SCREAMING_SNAKE_CASE : List[str] = os.path.abspath(os.path.dirname(os.path.dirname(os.path.dirname(__file__)))) sys.path.append(os.path.join(git_repo_path, """utils""")) import check_dummies # noqa: E402 from check_dummies import create_dummy_files, create_dummy_object, find_backend, read_init # noqa: E402 # Align TRANSFORMERS_PATH in check_dummies with the current path __SCREAMING_SNAKE_CASE : Optional[Any] = os.path.join(git_repo_path, """src""", """transformers""") __SCREAMING_SNAKE_CASE : Optional[int] = """ {0} = None """ __SCREAMING_SNAKE_CASE : Dict = """ class {0}(metaclass=DummyObject): _backends = {1} def __init__(self, *args, **kwargs): requires_backends(self, {1}) """ __SCREAMING_SNAKE_CASE : Union[str, Any] = """ def {0}(*args, **kwargs): requires_backends({0}, {1}) """ class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Any ): _UpperCAmelCase : Optional[Any] = find_backend(" _import_structure[\"models.albert\"].append(\"AlbertTokenizerFast\")" ) self.assertIsNone(A ) _UpperCAmelCase : int = find_backend(" if not is_tokenizers_available():" ) self.assertEqual(A , "tokenizers" ) _UpperCAmelCase : Optional[int] = find_backend(" if not is_tensorflow_text_available():" ) self.assertEqual(A , "tensorflow_text" ) _UpperCAmelCase : List[str] = find_backend(" if not (is_sentencepiece_available() and is_tokenizers_available()):" ) self.assertEqual(A , "sentencepiece_and_tokenizers" ) _UpperCAmelCase : Any = find_backend( " if not (is_sentencepiece_available() and is_tensorflow_text_available()):" ) self.assertEqual(A , "sentencepiece_and_tensorflow_text" ) _UpperCAmelCase : Union[str, Any] = find_backend( " if not (is_sentencepiece_available() and is_tokenizers_available() and is_vision_available()):" ) self.assertEqual(A , "sentencepiece_and_tokenizers_and_vision" ) def _A ( self : Any ): _UpperCAmelCase : str = read_init() # We don't assert on the exact list of keys to allow for smooth grow of backend-specific objects self.assertIn("torch" , A ) self.assertIn("tensorflow_text" , A ) self.assertIn("sentencepiece_and_tokenizers" , A ) # Likewise, we can't assert on the exact content of a key self.assertIn("BertModel" , objects["torch"] ) self.assertIn("TFBertModel" , objects["tf"] ) self.assertIn("FlaxBertModel" , objects["flax"] ) self.assertIn("BertModel" , objects["torch"] ) self.assertIn("TFBertTokenizer" , objects["tensorflow_text"] ) self.assertIn("convert_slow_tokenizer" , objects["sentencepiece_and_tokenizers"] ) def _A ( self : Dict ): _UpperCAmelCase : List[str] = create_dummy_object("CONSTANT" , "'torch'" ) self.assertEqual(A , "\nCONSTANT = None\n" ) _UpperCAmelCase : Union[str, Any] = create_dummy_object("function" , "'torch'" ) self.assertEqual( A , "\ndef function(*args, **kwargs):\n requires_backends(function, 'torch')\n" ) _UpperCAmelCase : List[str] = "\nclass FakeClass(metaclass=DummyObject):\n _backends = 'torch'\n\n def __init__(self, *args, **kwargs):\n requires_backends(self, 'torch')\n" _UpperCAmelCase : Any = create_dummy_object("FakeClass" , "'torch'" ) self.assertEqual(A , A ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = "# This file is autogenerated by the command `make fix-copies`, do not edit.\nfrom ..utils import DummyObject, requires_backends\n\n\nCONSTANT = None\n\n\ndef function(*args, **kwargs):\n requires_backends(function, [\"torch\"])\n\n\nclass FakeClass(metaclass=DummyObject):\n _backends = [\"torch\"]\n\n def __init__(self, *args, **kwargs):\n requires_backends(self, [\"torch\"])\n" _UpperCAmelCase : Tuple = create_dummy_files({"torch": ["CONSTANT", "function", "FakeClass"]} ) self.assertEqual(dummy_files["torch"] , A )
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'''simple docstring''' __SCREAMING_SNAKE_CASE : Dict = 8.3_1_4_4_6_2 # Unit - J mol-1 K-1 def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or volume < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / volume def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or pressure < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / pressure if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' import math from typing import Optional import numpy as np from ...configuration_utils import PretrainedConfig from ...utils import logging __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : List[Any] = { """facebook/encodec_24khz""": """https://huggingface.co/facebook/encodec_24khz/resolve/main/config.json""", """facebook/encodec_48khz""": """https://huggingface.co/facebook/encodec_48khz/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = "encodec" def __init__( self : Optional[int] , A : Union[str, Any]=[1.5, 3.0, 6.0, 12.0, 24.0] , A : List[Any]=24000 , A : Union[str, Any]=1 , A : List[Any]=False , A : Optional[int]=None , A : int=None , A : str=128 , A : List[Any]=32 , A : List[Any]=1 , A : int=[8, 5, 4, 2] , A : Optional[int]="weight_norm" , A : List[Any]=7 , A : Any=7 , A : Dict=3 , A : Optional[int]=2 , A : Dict=True , A : Dict="reflect" , A : Any=2 , A : Dict=2 , A : str=1.0 , A : Optional[int]=1024 , A : Any=None , A : Any=True , **A : str , ): _UpperCAmelCase : Optional[int] = target_bandwidths _UpperCAmelCase : List[str] = sampling_rate _UpperCAmelCase : Optional[int] = audio_channels _UpperCAmelCase : str = normalize _UpperCAmelCase : int = chunk_length_s _UpperCAmelCase : str = overlap _UpperCAmelCase : Optional[Any] = hidden_size _UpperCAmelCase : int = num_filters _UpperCAmelCase : Optional[Any] = num_residual_layers _UpperCAmelCase : Optional[int] = upsampling_ratios _UpperCAmelCase : int = norm_type _UpperCAmelCase : List[Any] = kernel_size _UpperCAmelCase : List[Any] = last_kernel_size _UpperCAmelCase : List[Any] = residual_kernel_size _UpperCAmelCase : List[str] = dilation_growth_rate _UpperCAmelCase : Dict = use_causal_conv _UpperCAmelCase : Tuple = pad_mode _UpperCAmelCase : Tuple = compress _UpperCAmelCase : List[str] = num_lstm_layers _UpperCAmelCase : List[Any] = trim_right_ratio _UpperCAmelCase : int = codebook_size _UpperCAmelCase : Optional[Any] = codebook_dim if codebook_dim is not None else hidden_size _UpperCAmelCase : Optional[int] = use_conv_shortcut if self.norm_type not in ["weight_norm", "time_group_norm"]: raise ValueError( F"""self.norm_type must be one of `\"weight_norm\"`, `\"time_group_norm\"`), got {self.norm_type}""" ) super().__init__(**A ) @property def _A ( self : Any ): if self.chunk_length_s is None: return None else: return int(self.chunk_length_s * self.sampling_rate ) @property def _A ( self : Union[str, Any] ): if self.chunk_length_s is None or self.overlap is None: return None else: return max(1 , int((1.0 - self.overlap) * self.chunk_length ) ) @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = np.prod(self.upsampling_ratios ) return math.ceil(self.sampling_rate / hop_length ) @property def _A ( self : str ): return int(1000 * self.target_bandwidths[-1] // (self.frame_rate * 10) )
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'''simple docstring''' import os from shutil import copyfile from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import is_sentencepiece_available, logging if is_sentencepiece_available(): from .tokenization_pegasus import PegasusTokenizer else: __SCREAMING_SNAKE_CASE : Optional[Any] = None __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = """▁""" __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """spiece.model""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : int = { """vocab_file""": {"""google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/spiece.model"""}, """tokenizer_file""": { """google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/tokenizer.json""" }, } __SCREAMING_SNAKE_CASE : str = { """google/pegasus-xsum""": 512, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = VOCAB_FILES_NAMES __UpperCamelCase: Dict = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: List[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Optional[int] = PegasusTokenizer __UpperCamelCase: Optional[Any] = ["input_ids", "attention_mask"] def __init__( self : Dict , A : List[str]=None , A : Union[str, Any]=None , A : Optional[int]="<pad>" , A : Tuple="</s>" , A : Union[str, Any]="<unk>" , A : Union[str, Any]="<mask_2>" , A : Dict="<mask_1>" , A : Union[str, Any]=None , A : int=103 , **A : Optional[Any] , ): _UpperCAmelCase : Dict = offset if additional_special_tokens is not None: if not isinstance(A , A ): raise TypeError( F"""additional_special_tokens should be of type {type(A )}, but is""" F""" {type(A )}""" ) _UpperCAmelCase : Optional[int] = ( ([mask_token_sent] + additional_special_tokens) if mask_token_sent not in additional_special_tokens and mask_token_sent is not None else additional_special_tokens ) # fill additional tokens with ..., <unk_token_102> in case not all additional tokens are already taken additional_special_tokens_extended += [ F"""<unk_{i}>""" for i in range(len(A ) , self.offset - 1 ) ] if len(set(A ) ) != len(A ): raise ValueError( "Please make sure that the provided additional_special_tokens do not contain an incorrectly" F""" shifted list of <unk_x> tokens. Found {additional_special_tokens_extended}.""" ) _UpperCAmelCase : Any = additional_special_tokens_extended else: _UpperCAmelCase : Dict = [mask_token_sent] if mask_token_sent is not None else [] additional_special_tokens += [F"""<unk_{i}>""" for i in range(2 , self.offset )] super().__init__( A , tokenizer_file=A , pad_token=A , eos_token=A , unk_token=A , mask_token=A , mask_token_sent=A , offset=A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[Any] = vocab_file _UpperCAmelCase : Optional[Any] = False if not self.vocab_file else True def _A ( self : List[str] , A : Optional[Any] ): _UpperCAmelCase : Any = set(self.all_special_ids ) # call it once instead of inside list comp all_special_ids.remove(self.unk_token_id ) # <unk> is only sometimes special if all_special_ids != set(range(len(self.additional_special_tokens ) + 3 ) ): raise ValueError( "There should be 3 special tokens: mask_token, pad_token, and eos_token +" F""" {len(self.additional_special_tokens )} additional_special_tokens, but got {all_special_ids}""" ) return [1 if x in all_special_ids else 0 for x in seq] def _A ( self : str , A : List , A : Optional[List] = None , A : bool = False ): if already_has_special_tokens: return self._special_token_mask(A ) elif token_ids_a is None: return self._special_token_mask(A ) + [1] else: return self._special_token_mask(token_ids_a + token_ids_a ) + [1] def _A ( self : Optional[int] , A : Union[str, Any] , A : int=None ): if token_ids_a is None: return token_ids_a + [self.eos_token_id] # We don't expect to process pairs, but leave the pair logic for API consistency return token_ids_a + token_ids_a + [self.eos_token_id] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): if not self.can_save_slow_tokenizer: raise ValueError( "Your fast tokenizer does not have the necessary information to save the vocabulary for a slow " "tokenizer." ) if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : List[Any] = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ): copyfile(self.vocab_file , A ) return (out_vocab_file,)
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1
'''simple docstring''' import copy from typing import Any, Dict, List, Optional, Union import numpy as np import torch from ...audio_utils import mel_filter_bank, spectrogram, window_function from ...feature_extraction_sequence_utils import SequenceFeatureExtractor from ...feature_extraction_utils import BatchFeature from ...utils import TensorType, logging __SCREAMING_SNAKE_CASE : List[str] = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["input_features", "is_longer"] def __init__( self : str , A : int=64 , A : Dict=48000 , A : str=480 , A : List[Any]=10 , A : Optional[Any]=1024 , A : Tuple=0.0 , A : List[Any]=False , A : float = 0 , A : float = 14000 , A : int = None , A : str = "fusion" , A : str = "repeatpad" , **A : Dict , ): super().__init__( feature_size=A , sampling_rate=A , padding_value=A , return_attention_mask=A , **A , ) _UpperCAmelCase : Optional[Any] = top_db _UpperCAmelCase : Dict = truncation _UpperCAmelCase : List[Any] = padding _UpperCAmelCase : Optional[Any] = fft_window_size _UpperCAmelCase : Dict = (fft_window_size >> 1) + 1 _UpperCAmelCase : Any = hop_length _UpperCAmelCase : Tuple = max_length_s _UpperCAmelCase : str = max_length_s * sampling_rate _UpperCAmelCase : Any = sampling_rate _UpperCAmelCase : Optional[int] = frequency_min _UpperCAmelCase : str = frequency_max _UpperCAmelCase : Union[str, Any] = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm=A , mel_scale="htk" , ) _UpperCAmelCase : Tuple = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm="slaney" , mel_scale="slaney" , ) def _A ( self : List[str] ): _UpperCAmelCase : Union[str, Any] = copy.deepcopy(self.__dict__ ) _UpperCAmelCase : Dict = self.__class__.__name__ if "mel_filters" in output: del output["mel_filters"] if "mel_filters_slaney" in output: del output["mel_filters_slaney"] return output def _A ( self : Optional[Any] , A : np.array , A : Optional[np.array] = None ): _UpperCAmelCase : Dict = spectrogram( A , window_function(self.fft_window_size , "hann" ) , frame_length=self.fft_window_size , hop_length=self.hop_length , power=2.0 , mel_filters=A , log_mel="dB" , ) return log_mel_spectrogram.T def _A ( self : str , A : str , A : List[str] , A : List[Any] ): _UpperCAmelCase : List[str] = np.array_split(list(range(0 , total_frames - chunk_frames + 1 ) ) , 3 ) if len(ranges[1] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Optional[Any] = [0] if len(ranges[2] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Tuple = [0] # randomly choose index for each part _UpperCAmelCase : Dict = np.random.choice(ranges[0] ) _UpperCAmelCase : str = np.random.choice(ranges[1] ) _UpperCAmelCase : Tuple = np.random.choice(ranges[2] ) _UpperCAmelCase : str = mel[idx_front : idx_front + chunk_frames, :] _UpperCAmelCase : str = mel[idx_middle : idx_middle + chunk_frames, :] _UpperCAmelCase : List[Any] = mel[idx_back : idx_back + chunk_frames, :] _UpperCAmelCase : Dict = torch.tensor(mel[None, None, :] ) _UpperCAmelCase : Optional[Any] = torch.nn.functional.interpolate( A , size=[chunk_frames, 64] , mode="bilinear" , align_corners=A ) _UpperCAmelCase : List[str] = mel_shrink[0][0].numpy() _UpperCAmelCase : str = np.stack([mel_shrink, mel_chunk_front, mel_chunk_middle, mel_chunk_back] , axis=0 ) return mel_fusion def _A ( self : List[Any] , A : np.array , A : List[str] , A : Any , A : Optional[int] ): if waveform.shape[0] > max_length: if truncation == "rand_trunc": _UpperCAmelCase : int = True # random crop to max_length (for compatibility) -> this should be handled by self.pad _UpperCAmelCase : str = len(A ) - max_length _UpperCAmelCase : str = np.random.randint(0 , overflow + 1 ) _UpperCAmelCase : int = waveform[idx : idx + max_length] _UpperCAmelCase : Any = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] elif truncation == "fusion": _UpperCAmelCase : Tuple = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : List[str] = max_length // self.hop_length + 1 # the +1 related to how the spectrogram is computed _UpperCAmelCase : Optional[Any] = mel.shape[0] if chunk_frames == total_frames: # there is a corner case where the audio length is larger than max_length but smaller than max_length+hop_length. # In this case, we just use the whole audio. _UpperCAmelCase : Any = np.stack([mel, mel, mel, mel] , axis=0 ) _UpperCAmelCase : int = False else: _UpperCAmelCase : Tuple = self._random_mel_fusion(A , A , A ) _UpperCAmelCase : Any = True else: raise NotImplementedError(F"""data_truncating {truncation} not implemented""" ) else: _UpperCAmelCase : Optional[Any] = False # only use repeat as a new possible value for padding. you repeat the audio before applying the usual max_length padding if waveform.shape[0] < max_length: if padding == "repeat": _UpperCAmelCase : str = int(max_length / len(A ) ) _UpperCAmelCase : Dict = np.stack(np.tile(A , n_repeat + 1 ) )[:max_length] if padding == "repeatpad": _UpperCAmelCase : Dict = int(max_length / len(A ) ) _UpperCAmelCase : List[str] = np.stack(np.tile(A , A ) ) _UpperCAmelCase : Optional[Any] = np.pad(A , (0, max_length - waveform.shape[0]) , mode="constant" , constant_values=0 ) if truncation == "fusion": _UpperCAmelCase : str = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : Optional[int] = np.stack([input_mel, input_mel, input_mel, input_mel] , axis=0 ) else: _UpperCAmelCase : List[str] = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] return input_mel, longer def __call__( self : Union[str, Any] , A : Union[np.ndarray, List[float], List[np.ndarray], List[List[float]]] , A : str = None , A : Optional[str] = None , A : Optional[int] = None , A : Optional[int] = None , A : Optional[Union[str, TensorType]] = None , **A : List[str] , ): _UpperCAmelCase : int = truncation if truncation is not None else self.truncation _UpperCAmelCase : Optional[int] = padding if padding else self.padding if sampling_rate is not None: if sampling_rate != self.sampling_rate: raise ValueError( F"""The model corresponding to this feature extractor: {self.__class__.__name__} was trained using a""" F""" sampling rate of {self.sampling_rate}. Please make sure that the provided `raw_speech` input""" F""" was sampled with {self.sampling_rate} and not {sampling_rate}.""" ) else: logger.warning( "It is strongly recommended to pass the `sampling_rate` argument to this function. " "Failing to do so can result in silent errors that might be hard to debug." ) _UpperCAmelCase : Any = isinstance(A , np.ndarray ) and len(raw_speech.shape ) > 1 if is_batched_numpy and len(raw_speech.shape ) > 2: raise ValueError(F"""Only mono-channel audio is supported for input to {self}""" ) _UpperCAmelCase : Optional[Any] = is_batched_numpy or ( isinstance(A , (list, tuple) ) and (isinstance(raw_speech[0] , (np.ndarray, tuple, list) )) ) if is_batched: _UpperCAmelCase : int = [np.asarray(A , dtype=np.floataa ) for speech in raw_speech] elif not is_batched and not isinstance(A , np.ndarray ): _UpperCAmelCase : List[str] = np.asarray(A , dtype=np.floataa ) elif isinstance(A , np.ndarray ) and raw_speech.dtype is np.dtype(np.floataa ): _UpperCAmelCase : Any = raw_speech.astype(np.floataa ) # always return batch if not is_batched: _UpperCAmelCase : List[str] = [np.asarray(A )] # convert to mel spectrogram, truncate and pad if needed. _UpperCAmelCase : Dict = [ self._get_input_mel(A , max_length if max_length else self.nb_max_samples , A , A ) for waveform in raw_speech ] _UpperCAmelCase : int = [] _UpperCAmelCase : Optional[Any] = [] for mel, longer in padded_inputs: input_mel.append(A ) is_longer.append(A ) if truncation == "fusion" and sum(A ) == 0: # if no audio is longer than 10s, then randomly select one audio to be longer _UpperCAmelCase : Union[str, Any] = np.random.randint(0 , len(A ) ) _UpperCAmelCase : Optional[Any] = True if isinstance(input_mel[0] , A ): _UpperCAmelCase : List[str] = [np.asarray(A , dtype=np.floataa ) for feature in input_mel] # is_longer is a list of bool _UpperCAmelCase : Tuple = [[longer] for longer in is_longer] _UpperCAmelCase : Optional[Any] = {"input_features": input_mel, "is_longer": is_longer} _UpperCAmelCase : Tuple = BatchFeature(A ) if return_tensors is not None: _UpperCAmelCase : List[Any] = input_features.convert_to_tensors(A ) return input_features
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'''simple docstring''' import shutil import tempfile import unittest from transformers import ( SPIECE_UNDERLINE, AddedToken, BatchEncoding, NllbTokenizer, NllbTokenizerFast, is_torch_available, ) from transformers.testing_utils import ( get_tests_dir, nested_simplify, require_sentencepiece, require_tokenizers, require_torch, ) from ...test_tokenization_common import TokenizerTesterMixin __SCREAMING_SNAKE_CASE : Union[str, Any] = get_tests_dir("""fixtures/test_sentencepiece.model""") if is_torch_available(): from transformers.models.mam_aaa.modeling_mam_aaa import shift_tokens_right __SCREAMING_SNAKE_CASE : Optional[int] = 256_047 __SCREAMING_SNAKE_CASE : Optional[int] = 256_145 @require_sentencepiece @require_tokenizers class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: int = NllbTokenizer __UpperCamelCase: Tuple = NllbTokenizerFast __UpperCamelCase: Union[str, Any] = True __UpperCamelCase: Dict = True __UpperCamelCase: Optional[Any] = {} def _A ( self : Union[str, Any] ): super().setUp() # We have a SentencePiece fixture for testing _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) tokenizer.save_pretrained(self.tmpdirname ) def _A ( self : Dict ): _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) _UpperCAmelCase : Optional[Any] = tokenizer.tokenize("This is a test" ) self.assertListEqual(A , ["▁This", "▁is", "▁a", "▁t", "est"] ) self.assertListEqual( tokenizer.convert_tokens_to_ids(A ) , [value + tokenizer.fairseq_offset for value in [285, 46, 10, 170, 382]] , ) _UpperCAmelCase : List[str] = tokenizer.tokenize("I was born in 92000, and this is falsé." ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "9", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "é", ".", ] , ) _UpperCAmelCase : Optional[Any] = tokenizer.convert_tokens_to_ids(A ) self.assertListEqual( A , [ value + tokenizer.fairseq_offset for value in [8, 21, 84, 55, 24, 19, 7, 2, 602, 347, 347, 347, 3, 12, 66, 46, 72, 80, 6, 2, 4] ] , ) _UpperCAmelCase : Union[str, Any] = tokenizer.convert_ids_to_tokens(A ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "<unk>", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "<unk>", ".", ] , ) def _A ( self : List[Any] ): _UpperCAmelCase : Any = (self.rust_tokenizer_class, "hf-internal-testing/tiny-random-nllb", {}) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : str = self.tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Dict = tokenizer_r.save_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it save with the same files + the tokenizer.json file for the fast one self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) _UpperCAmelCase : Optional[int] = tuple(f for f in tokenizer_r_files if "tokenizer.json" not in f ) self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : List[str] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=True _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() _UpperCAmelCase : str = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : str = tokenizer_p.save_pretrained(A ) # Checks it save with the same files self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : Optional[int] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=False _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Optional[int] = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it saved the tokenizer.json file self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Optional[int] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) @require_torch def _A ( self : Tuple ): if not self.test_seqaseq: return _UpperCAmelCase : Union[str, Any] = self.get_tokenizers() for tokenizer in tokenizers: with self.subTest(F"""{tokenizer.__class__.__name__}""" ): # Longer text that will definitely require truncation. _UpperCAmelCase : Optional[Any] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for" " Syria is that 'there is no military solution' to the nearly five-year conflict and more weapons" " will only worsen the violence and misery for millions of people.", ] _UpperCAmelCase : Optional[Any] = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al" " Rusiei pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi" " că noi arme nu vor face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] try: _UpperCAmelCase : Optional[int] = tokenizer.prepare_seqaseq_batch( src_texts=A , tgt_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="ron_Latn" , ) except NotImplementedError: return self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 10 ) # max_target_length will default to max_length if not specified _UpperCAmelCase : Tuple = tokenizer.prepare_seqaseq_batch( A , tgt_texts=A , max_length=3 , return_tensors="pt" ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 3 ) _UpperCAmelCase : Union[str, Any] = tokenizer.prepare_seqaseq_batch( src_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" ) self.assertEqual(batch_encoder_only.input_ids.shape[1] , 3 ) self.assertEqual(batch_encoder_only.attention_mask.shape[1] , 3 ) self.assertNotIn("decoder_input_ids" , A ) @unittest.skip("Unfortunately way too slow to build a BPE with SentencePiece." ) def _A ( self : List[Any] ): pass def _A ( self : Union[str, Any] ): for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Any = [AddedToken("<special>" , lstrip=A )] _UpperCAmelCase : List[Any] = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Dict = tokenizer_r.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_r.encode("<special>" , add_special_tokens=A )[0] self.assertTrue(special_token_id in r_output ) if self.test_slow_tokenizer: _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[int] = self.tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Union[str, Any] = tokenizer_p.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_cr.encode("Hey this is a <special> token" ) self.assertEqual(A , A ) self.assertEqual(A , A ) self.assertTrue(special_token_id in p_output ) self.assertTrue(special_token_id in cr_output ) @require_torch @require_sentencepiece @require_tokenizers class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = "facebook/nllb-200-distilled-600M" __UpperCamelCase: Optional[int] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for Syria is that \"there is no military solution\" to the nearly five-year conflict and more weapons will only worsen the violence and misery for millions of people.", ] __UpperCamelCase: str = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al Rusiei" " pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi că noi arme nu vor" " face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] __UpperCamelCase: str = [ 2_5_6_0_4_7, 1_6_2_9_7, 1_3_4_4_0_8, 8_1_6_5, 2_4_8_0_6_6, 1_4_7_3_4, 9_5_0, 1_1_3_5, 1_0_5_7_2_1, 3_5_7_3, 8_3, 2_7_3_5_2, 1_0_8, 4_9_4_8_6, 2, ] @classmethod def _A ( cls : int ): _UpperCAmelCase : NllbTokenizer = NllbTokenizer.from_pretrained( cls.checkpoint_name , src_lang="eng_Latn" , tgt_lang="ron_Latn" ) _UpperCAmelCase : Union[str, Any] = 1 return cls def _A ( self : Any ): self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Arab"] , 256001 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Latn"] , 256002 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["fra_Latn"] , 256057 ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[int] = self.tokenizer.batch_encode_plus(self.src_text ).input_ids[0] self.assertListEqual(self.expected_src_tokens , A ) def _A ( self : Tuple ): self.assertIn(A , self.tokenizer.all_special_ids ) # fmt: off _UpperCAmelCase : List[Any] = [RO_CODE, 4254, 98068, 112923, 39072, 3909, 713, 102767, 26, 17314, 35642, 14683, 33118, 2022, 66987, 2, 256047] # fmt: on _UpperCAmelCase : Tuple = self.tokenizer.decode(A , skip_special_tokens=A ) _UpperCAmelCase : Optional[Any] = self.tokenizer.decode(generated_ids[1:] , skip_special_tokens=A ) self.assertEqual(A , A ) self.assertNotIn(self.tokenizer.eos_token , A ) def _A ( self : Optional[int] ): _UpperCAmelCase : List[Any] = ["this is gunna be a long sentence " * 20] assert isinstance(src_text[0] , A ) _UpperCAmelCase : Dict = 10 _UpperCAmelCase : Tuple = self.tokenizer(A , max_length=A , truncation=A ).input_ids[0] self.assertEqual(ids[-1] , 2 ) self.assertEqual(ids[0] , A ) self.assertEqual(len(A ) , A ) def _A ( self : Dict ): self.assertListEqual(self.tokenizer.convert_tokens_to_ids(["<mask>", "ar_AR"] ) , [256203, 3] ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = tempfile.mkdtemp() _UpperCAmelCase : str = self.tokenizer.fairseq_tokens_to_ids self.tokenizer.save_pretrained(A ) _UpperCAmelCase : Tuple = NllbTokenizer.from_pretrained(A ) self.assertDictEqual(new_tok.fairseq_tokens_to_ids , A ) @require_torch def _A ( self : Dict ): _UpperCAmelCase : List[str] = self.tokenizer( self.src_text , text_target=self.tgt_text , padding=A , truncation=A , max_length=len(self.expected_src_tokens ) , return_tensors="pt" , ) _UpperCAmelCase : Tuple = shift_tokens_right( batch["labels"] , self.tokenizer.pad_token_id , self.tokenizer.lang_code_to_id["ron_Latn"] ) self.assertIsInstance(A , A ) self.assertEqual((2, 15) , batch.input_ids.shape ) self.assertEqual((2, 15) , batch.attention_mask.shape ) _UpperCAmelCase : Dict = batch.input_ids.tolist()[0] self.assertListEqual(self.expected_src_tokens , A ) self.assertEqual(A , batch.decoder_input_ids[0, 0] ) # EOS # Test that special tokens are reset self.assertEqual(self.tokenizer.prefix_tokens , [EN_CODE] ) self.assertEqual(self.tokenizer.suffix_tokens , [self.tokenizer.eos_token_id] ) def _A ( self : str ): _UpperCAmelCase : Optional[Any] = self.tokenizer(self.src_text , padding=A , truncation=A , max_length=3 , return_tensors="pt" ) _UpperCAmelCase : Dict = self.tokenizer( text_target=self.tgt_text , padding=A , truncation=A , max_length=10 , return_tensors="pt" ) _UpperCAmelCase : List[Any] = targets["input_ids"] _UpperCAmelCase : Union[str, Any] = shift_tokens_right( A , self.tokenizer.pad_token_id , decoder_start_token_id=self.tokenizer.lang_code_to_id[self.tokenizer.tgt_lang] , ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.decoder_input_ids.shape[1] , 10 ) @require_torch def _A ( self : List[Any] ): _UpperCAmelCase : str = self.tokenizer._build_translation_inputs( "A test" , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( nested_simplify(A ) , { # A, test, EOS, en_XX "input_ids": [[256047, 70, 7356, 2]], "attention_mask": [[1, 1, 1, 1]], # ar_AR "forced_bos_token_id": 256057, } , ) @require_torch def _A ( self : Any ): _UpperCAmelCase : Dict = True _UpperCAmelCase : Any = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2, 256047] ) _UpperCAmelCase : Optional[int] = False _UpperCAmelCase : str = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [256047, 16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2] )
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1
'''simple docstring''' from __future__ import annotations import math from collections.abc import Callable def UpperCamelCase_ ( _UpperCAmelCase : Callable[[int | float], int | float] , _UpperCAmelCase : int | float , _UpperCAmelCase : int | float , _UpperCAmelCase : int = 100 , ) -> float: """simple docstring""" _UpperCAmelCase : Tuple = x_start _UpperCAmelCase : int = fnc(_UpperCAmelCase ) _UpperCAmelCase : str = 0.0 for _ in range(_UpperCAmelCase ): # Approximates curve as a sequence of linear lines and sums their length _UpperCAmelCase : List[str] = (x_end - x_start) / steps + xa _UpperCAmelCase : str = fnc(_UpperCAmelCase ) length += math.hypot(xa - xa , fxa - fxa ) # Increment step _UpperCAmelCase : Dict = xa _UpperCAmelCase : Union[str, Any] = fxa return length if __name__ == "__main__": def UpperCamelCase_ ( _UpperCAmelCase : int ) -> List[str]: """simple docstring""" return math.sin(10 * x ) print("""f(x) = sin(10 * x)""") print("""The length of the curve from x = -10 to x = 10 is:""") __SCREAMING_SNAKE_CASE : str = 10 while i <= 100_000: print(F'With {i} steps: {line_length(f, -10, 10, i)}') i *= 10
31
'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : list ) -> list: """simple docstring""" _UpperCAmelCase : List[Any] = len(_UpperCAmelCase ) for _ in range(_UpperCAmelCase ): for i in range(_ % 2 , arr_size - 1 , 2 ): if arr[i + 1] < arr[i]: _UpperCAmelCase , _UpperCAmelCase : int = arr[i + 1], arr[i] return arr if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = list(range(10, 0, -1)) print(F'Original: {arr}. Sorted: {odd_even_transposition(arr)}')
31
1
'''simple docstring''' import math import sys def UpperCamelCase_ ( _UpperCAmelCase : str ) -> str: """simple docstring""" _UpperCAmelCase : Any = "" try: with open(_UpperCAmelCase , "rb" ) as binary_file: _UpperCAmelCase : Union[str, Any] = binary_file.read() for dat in data: _UpperCAmelCase : int = F"""{dat:08b}""" result += curr_byte return result except OSError: print("File not accessible" ) sys.exit() def UpperCamelCase_ ( _UpperCAmelCase : str ) -> str: """simple docstring""" _UpperCAmelCase : Optional[Any] = {"0": "0", "1": "1"} _UpperCAmelCase , _UpperCAmelCase : str = "", "" _UpperCAmelCase : Any = len(_UpperCAmelCase ) for i in range(len(_UpperCAmelCase ) ): curr_string += data_bits[i] if curr_string not in lexicon: continue _UpperCAmelCase : List[Any] = lexicon[curr_string] result += last_match_id _UpperCAmelCase : Tuple = last_match_id + "0" if math.loga(_UpperCAmelCase ).is_integer(): _UpperCAmelCase : List[Any] = {} for curr_key in list(_UpperCAmelCase ): _UpperCAmelCase : Any = lexicon.pop(_UpperCAmelCase ) _UpperCAmelCase : int = new_lex _UpperCAmelCase : Dict = last_match_id + "1" index += 1 _UpperCAmelCase : Tuple = "" return result def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> None: """simple docstring""" _UpperCAmelCase : Tuple = 8 try: with open(_UpperCAmelCase , "wb" ) as opened_file: _UpperCAmelCase : str = [ to_write[i : i + byte_length] for i in range(0 , len(_UpperCAmelCase ) , _UpperCAmelCase ) ] if len(result_byte_array[-1] ) % byte_length == 0: result_byte_array.append("10000000" ) else: result_byte_array[-1] += "1" + "0" * ( byte_length - len(result_byte_array[-1] ) - 1 ) for elem in result_byte_array[:-1]: opened_file.write(int(_UpperCAmelCase , 2 ).to_bytes(1 , byteorder="big" ) ) except OSError: print("File not accessible" ) sys.exit() def UpperCamelCase_ ( _UpperCAmelCase : str ) -> str: """simple docstring""" _UpperCAmelCase : Tuple = 0 for letter in data_bits: if letter == "1": break counter += 1 _UpperCAmelCase : List[Any] = data_bits[counter:] _UpperCAmelCase : Union[str, Any] = data_bits[counter + 1 :] return data_bits def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> None: """simple docstring""" _UpperCAmelCase : Optional[int] = read_file_binary(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = remove_prefix(_UpperCAmelCase ) _UpperCAmelCase : Tuple = decompress_data(_UpperCAmelCase ) write_file_binary(_UpperCAmelCase , _UpperCAmelCase ) if __name__ == "__main__": compress(sys.argv[1], sys.argv[2])
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'''simple docstring''' import os from typing import Any, Callable, Dict, List, Optional, Tuple, Union import torch from torch import nn from ...models.controlnet import ControlNetModel, ControlNetOutput from ...models.modeling_utils import ModelMixin from ...utils import logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[List[ControlNetModel], Tuple[ControlNetModel]] ): super().__init__() _UpperCAmelCase : Optional[int] = nn.ModuleList(A ) def _A ( self : Dict , A : torch.FloatTensor , A : Union[torch.Tensor, float, int] , A : torch.Tensor , A : List[torch.tensor] , A : List[float] , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[Dict[str, Any]] = None , A : bool = False , A : bool = True , ): for i, (image, scale, controlnet) in enumerate(zip(A , A , self.nets ) ): _UpperCAmelCase , _UpperCAmelCase : str = controlnet( A , A , A , A , A , A , A , A , A , A , A , ) # merge samples if i == 0: _UpperCAmelCase , _UpperCAmelCase : List[Any] = down_samples, mid_sample else: _UpperCAmelCase : Optional[int] = [ samples_prev + samples_curr for samples_prev, samples_curr in zip(A , A ) ] mid_block_res_sample += mid_sample return down_block_res_samples, mid_block_res_sample def _A ( self : List[str] , A : Union[str, os.PathLike] , A : bool = True , A : Callable = None , A : bool = False , A : Optional[str] = None , ): _UpperCAmelCase : str = 0 _UpperCAmelCase : str = save_directory for controlnet in self.nets: controlnet.save_pretrained( A , is_main_process=A , save_function=A , safe_serialization=A , variant=A , ) idx += 1 _UpperCAmelCase : Tuple = model_path_to_save + F"""_{idx}""" @classmethod def _A ( cls : int , A : Optional[Union[str, os.PathLike]] , **A : Tuple ): _UpperCAmelCase : str = 0 _UpperCAmelCase : int = [] # load controlnet and append to list until no controlnet directory exists anymore # first controlnet has to be saved under `./mydirectory/controlnet` to be compliant with `DiffusionPipeline.from_prertained` # second, third, ... controlnets have to be saved under `./mydirectory/controlnet_1`, `./mydirectory/controlnet_2`, ... _UpperCAmelCase : int = pretrained_model_path while os.path.isdir(A ): _UpperCAmelCase : List[str] = ControlNetModel.from_pretrained(A , **A ) controlnets.append(A ) idx += 1 _UpperCAmelCase : Dict = pretrained_model_path + F"""_{idx}""" logger.info(F"""{len(A )} controlnets loaded from {pretrained_model_path}.""" ) if len(A ) == 0: raise ValueError( F"""No ControlNets found under {os.path.dirname(A )}. Expected at least {pretrained_model_path + '_0'}.""" ) return cls(A )
31
1
'''simple docstring''' import unittest from diffusers import FlaxAutoencoderKL from diffusers.utils import is_flax_available from diffusers.utils.testing_utils import require_flax from .test_modeling_common_flax import FlaxModelTesterMixin if is_flax_available(): import jax @require_flax class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[str] = FlaxAutoencoderKL @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[int] = 4 _UpperCAmelCase : str = 3 _UpperCAmelCase : int = (32, 32) _UpperCAmelCase : List[str] = jax.random.PRNGKey(0 ) _UpperCAmelCase : Optional[Any] = jax.random.uniform(A , ((batch_size, num_channels) + sizes) ) return {"sample": image, "prng_key": prng_key} def _A ( self : Tuple ): _UpperCAmelCase : Tuple = { "block_out_channels": [32, 64], "in_channels": 3, "out_channels": 3, "down_block_types": ["DownEncoderBlock2D", "DownEncoderBlock2D"], "up_block_types": ["UpDecoderBlock2D", "UpDecoderBlock2D"], "latent_channels": 4, } _UpperCAmelCase : Union[str, Any] = self.dummy_input return init_dict, inputs_dict
31
'''simple docstring''' import argparse import json import pickle from pathlib import Path import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig from transformers.utils import logging logging.set_verbosity_info() __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : str ) -> Optional[Any]: """simple docstring""" _UpperCAmelCase : int = SwinConfig.from_pretrained( "microsoft/swin-tiny-patch4-window7-224" , out_features=["stage1", "stage2", "stage3", "stage4"] ) _UpperCAmelCase : List[Any] = MaskFormerConfig(backbone_config=_UpperCAmelCase ) _UpperCAmelCase : Tuple = "huggingface/label-files" if "ade20k-full" in model_name: # this should be ok _UpperCAmelCase : Dict = 847 _UpperCAmelCase : Any = "maskformer-ade20k-full-id2label.json" elif "ade" in model_name: # this should be ok _UpperCAmelCase : Any = 150 _UpperCAmelCase : Any = "ade20k-id2label.json" elif "coco-stuff" in model_name: # this should be ok _UpperCAmelCase : Tuple = 171 _UpperCAmelCase : Union[str, Any] = "maskformer-coco-stuff-id2label.json" elif "coco" in model_name: # TODO _UpperCAmelCase : Any = 133 _UpperCAmelCase : int = "coco-panoptic-id2label.json" elif "cityscapes" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 19 _UpperCAmelCase : str = "cityscapes-id2label.json" elif "vistas" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 65 _UpperCAmelCase : Tuple = "mapillary-vistas-id2label.json" _UpperCAmelCase : List[Any] = json.load(open(hf_hub_download(_UpperCAmelCase , _UpperCAmelCase , repo_type="dataset" ) , "r" ) ) _UpperCAmelCase : Tuple = {int(_UpperCAmelCase ): v for k, v in idalabel.items()} return config def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] ) -> List[Any]: """simple docstring""" _UpperCAmelCase : Dict = [] # stem # fmt: off rename_keys.append(("backbone.patch_embed.proj.weight", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight") ) rename_keys.append(("backbone.patch_embed.proj.bias", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias") ) rename_keys.append(("backbone.patch_embed.norm.weight", "model.pixel_level_module.encoder.model.embeddings.norm.weight") ) rename_keys.append(("backbone.patch_embed.norm.bias", "model.pixel_level_module.encoder.model.embeddings.norm.bias") ) # stages for i in range(len(config.backbone_config.depths ) ): for j in range(config.backbone_config.depths[i] ): rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_index""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias""") ) if i < 3: rename_keys.append((F"""backbone.layers.{i}.downsample.reduction.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias""") ) rename_keys.append((F"""backbone.norm{i}.weight""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.weight""") ) rename_keys.append((F"""backbone.norm{i}.bias""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.bias""") ) # FPN rename_keys.append(("sem_seg_head.layer_4.weight", "model.pixel_level_module.decoder.fpn.stem.0.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.weight", "model.pixel_level_module.decoder.fpn.stem.1.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.bias", "model.pixel_level_module.decoder.fpn.stem.1.bias") ) for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ): rename_keys.append((F"""sem_seg_head.adapter_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias""") ) rename_keys.append(("sem_seg_head.mask_features.weight", "model.pixel_level_module.decoder.mask_projection.weight") ) rename_keys.append(("sem_seg_head.mask_features.bias", "model.pixel_level_module.decoder.mask_projection.bias") ) # Transformer decoder for idx in range(config.decoder_config.decoder_layers ): # self-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias""") ) # cross-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias""") ) # MLP 1 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc1.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc1.bias""") ) # MLP 2 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc2.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc2.bias""") ) # layernorm 1 (self-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias""") ) # layernorm 2 (cross-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias""") ) # layernorm 3 (final layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias""") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.weight", "model.transformer_module.decoder.layernorm.weight") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.bias", "model.transformer_module.decoder.layernorm.bias") ) # heads on top rename_keys.append(("sem_seg_head.predictor.query_embed.weight", "model.transformer_module.queries_embedder.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.weight", "model.transformer_module.input_projection.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.bias", "model.transformer_module.input_projection.bias") ) rename_keys.append(("sem_seg_head.predictor.class_embed.weight", "class_predictor.weight") ) rename_keys.append(("sem_seg_head.predictor.class_embed.bias", "class_predictor.bias") ) for i in range(3 ): rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.weight""", F"""mask_embedder.{i}.0.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.bias""", F"""mask_embedder.{i}.0.bias""") ) # fmt: on return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Tuple , _UpperCAmelCase : List[Any] ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : List[str] = val def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : Tuple ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : List[str] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )] for i in range(len(backbone_config.depths ) ): _UpperCAmelCase : Optional[int] = num_features[i] for j in range(backbone_config.depths[i] ): # fmt: off # read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias) _UpperCAmelCase : Any = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.weight""" ) _UpperCAmelCase : Optional[int] = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : List[str] = in_proj_weight[:dim, :] _UpperCAmelCase : Tuple = in_proj_bias[: dim] _UpperCAmelCase : List[Any] = in_proj_weight[ dim : dim * 2, : ] _UpperCAmelCase : List[str] = in_proj_bias[ dim : dim * 2 ] _UpperCAmelCase : Optional[Any] = in_proj_weight[ -dim :, : ] _UpperCAmelCase : Dict = in_proj_bias[-dim :] # fmt: on def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : str ) -> Dict: """simple docstring""" _UpperCAmelCase : Union[str, Any] = config.decoder_config.hidden_size for idx in range(config.decoder_config.decoder_layers ): # read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight""" ) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : int = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[:config.hidden_size] _UpperCAmelCase : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : List[str] = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : int = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Optional[Any] = in_proj_bias[-hidden_size :] # read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Optional[Any] = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight""" ) _UpperCAmelCase : Tuple = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : Any = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Tuple = in_proj_bias[:config.hidden_size] _UpperCAmelCase : Dict = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : Dict = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : Optional[int] = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[-hidden_size :] # fmt: on def UpperCamelCase_ ( ) -> torch.Tensor: """simple docstring""" _UpperCAmelCase : int = "http://images.cocodataset.org/val2017/000000039769.jpg" _UpperCAmelCase : Any = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ) return im @torch.no_grad() def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : bool = False ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = get_maskformer_config(_UpperCAmelCase ) # load original state_dict with open(_UpperCAmelCase , "rb" ) as f: _UpperCAmelCase : Optional[int] = pickle.load(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = data["model"] # for name, param in state_dict.items(): # print(name, param.shape) # rename keys _UpperCAmelCase : Any = create_rename_keys(_UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_swin_q_k_v(_UpperCAmelCase , config.backbone_config ) read_in_decoder_q_k_v(_UpperCAmelCase , _UpperCAmelCase ) # update to torch tensors for key, value in state_dict.items(): _UpperCAmelCase : Tuple = torch.from_numpy(_UpperCAmelCase ) # load 🤗 model _UpperCAmelCase : Union[str, Any] = MaskFormerForInstanceSegmentation(_UpperCAmelCase ) model.eval() for name, param in model.named_parameters(): print(_UpperCAmelCase , param.shape ) _UpperCAmelCase , _UpperCAmelCase : Any = model.load_state_dict(_UpperCAmelCase , strict=_UpperCAmelCase ) assert missing_keys == [ "model.pixel_level_module.encoder.model.layernorm.weight", "model.pixel_level_module.encoder.model.layernorm.bias", ] assert len(_UpperCAmelCase ) == 0, F"""Unexpected keys: {unexpected_keys}""" # verify results _UpperCAmelCase : Optional[int] = prepare_img() if "vistas" in model_name: _UpperCAmelCase : int = 65 elif "cityscapes" in model_name: _UpperCAmelCase : Tuple = 65_535 else: _UpperCAmelCase : Any = 255 _UpperCAmelCase : Optional[Any] = True if "ade" in model_name else False _UpperCAmelCase : Optional[int] = MaskFormerImageProcessor(ignore_index=_UpperCAmelCase , reduce_labels=_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = image_processor(_UpperCAmelCase , return_tensors="pt" ) _UpperCAmelCase : List[Any] = model(**_UpperCAmelCase ) print("Logits:" , outputs.class_queries_logits[0, :3, :3] ) if model_name == "maskformer-swin-tiny-ade": _UpperCAmelCase : Tuple = torch.tensor( [[3.6_3_5_3, -4.4_7_7_0, -2.6_0_6_5], [0.5_0_8_1, -4.2_3_9_4, -3.5_3_4_3], [2.1_9_0_9, -5.0_3_5_3, -1.9_3_2_3]] ) assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , _UpperCAmelCase , atol=1e-4 ) print("Looks ok!" ) if pytorch_dump_folder_path is not None: print(F"""Saving model and image processor to {pytorch_dump_folder_path}""" ) Path(_UpperCAmelCase ).mkdir(exist_ok=_UpperCAmelCase ) model.save_pretrained(_UpperCAmelCase ) image_processor.save_pretrained(_UpperCAmelCase ) if push_to_hub: print("Pushing model and image processor to the hub..." ) model.push_to_hub(F"""nielsr/{model_name}""" ) image_processor.push_to_hub(F"""nielsr/{model_name}""" ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""maskformer-swin-tiny-ade""", type=str, help=("""Name of the MaskFormer model you'd like to convert""",), ) parser.add_argument( """--checkpoint_path""", default="""/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl""", type=str, help="""Path to the original state dict (.pth file).""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) __SCREAMING_SNAKE_CASE : int = parser.parse_args() convert_maskformer_checkpoint( args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub )
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1
'''simple docstring''' import argparse import glob import importlib.util import os import re import black from doc_builder.style_doc import style_docstrings_in_code # All paths are set with the intent you should run this script from the root of the repo with the command # python utils/check_copies.py __SCREAMING_SNAKE_CASE : Optional[Any] = """src/diffusers""" __SCREAMING_SNAKE_CASE : int = """.""" # This is to make sure the diffusers module imported is the one in the repo. __SCREAMING_SNAKE_CASE : Dict = importlib.util.spec_from_file_location( """diffusers""", os.path.join(DIFFUSERS_PATH, """__init__.py"""), submodule_search_locations=[DIFFUSERS_PATH], ) __SCREAMING_SNAKE_CASE : Tuple = spec.loader.load_module() def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : List[Any] ) -> int: """simple docstring""" return line.startswith(_UpperCAmelCase ) or len(_UpperCAmelCase ) <= 1 or re.search(R"^\s*\)(\s*->.*:|:)\s*$" , _UpperCAmelCase ) is not None def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : int = object_name.split("." ) _UpperCAmelCase : Optional[Any] = 0 # First let's find the module where our object lives. _UpperCAmelCase : int = parts[i] while i < len(_UpperCAmelCase ) and not os.path.isfile(os.path.join(_UpperCAmelCase , F"""{module}.py""" ) ): i += 1 if i < len(_UpperCAmelCase ): _UpperCAmelCase : Any = os.path.join(_UpperCAmelCase , parts[i] ) if i >= len(_UpperCAmelCase ): raise ValueError(F"""`object_name` should begin with the name of a module of diffusers but got {object_name}.""" ) with open(os.path.join(_UpperCAmelCase , F"""{module}.py""" ) , "r" , encoding="utf-8" , newline="\n" ) as f: _UpperCAmelCase : Optional[int] = f.readlines() # Now let's find the class / func in the code! _UpperCAmelCase : Dict = "" _UpperCAmelCase : List[Any] = 0 for name in parts[i + 1 :]: while ( line_index < len(_UpperCAmelCase ) and re.search(RF"""^{indent}(class|def)\s+{name}(\(|\:)""" , lines[line_index] ) is None ): line_index += 1 indent += " " line_index += 1 if line_index >= len(_UpperCAmelCase ): raise ValueError(F""" {object_name} does not match any function or class in {module}.""" ) # We found the beginning of the class / func, now let's find the end (when the indent diminishes). _UpperCAmelCase : Any = line_index while line_index < len(_UpperCAmelCase ) and _should_continue(lines[line_index] , _UpperCAmelCase ): line_index += 1 # Clean up empty lines at the end (if any). while len(lines[line_index - 1] ) <= 1: line_index -= 1 _UpperCAmelCase : List[str] = lines[start_index:line_index] return "".join(_UpperCAmelCase ) __SCREAMING_SNAKE_CASE : int = re.compile(R"""^(\s*)#\s*Copied from\s+diffusers\.(\S+\.\S+)\s*($|\S.*$)""") __SCREAMING_SNAKE_CASE : Tuple = re.compile(R"""^\s*(\S+)->(\S+)(\s+.*|$)""") __SCREAMING_SNAKE_CASE : str = re.compile(R"""<FILL\s+[^>]*>""") def UpperCamelCase_ ( _UpperCAmelCase : List[str] ) -> Union[str, Any]: """simple docstring""" _UpperCAmelCase : List[Any] = code.split("\n" ) _UpperCAmelCase : Tuple = 0 while idx < len(_UpperCAmelCase ) and len(lines[idx] ) == 0: idx += 1 if idx < len(_UpperCAmelCase ): return re.search(R"^(\s*)\S" , lines[idx] ).groups()[0] return "" def UpperCamelCase_ ( _UpperCAmelCase : Dict ) -> List[str]: """simple docstring""" _UpperCAmelCase : Tuple = len(get_indent(_UpperCAmelCase ) ) > 0 if has_indent: _UpperCAmelCase : Optional[Any] = F"""class Bla:\n{code}""" _UpperCAmelCase : str = black.Mode(target_versions={black.TargetVersion.PYaa} , line_length=119 , preview=_UpperCAmelCase ) _UpperCAmelCase : Tuple = black.format_str(_UpperCAmelCase , mode=_UpperCAmelCase ) _UpperCAmelCase , _UpperCAmelCase : Tuple = style_docstrings_in_code(_UpperCAmelCase ) return result[len("class Bla:\n" ) :] if has_indent else result def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : List[str]=False ) -> Tuple: """simple docstring""" with open(_UpperCAmelCase , "r" , encoding="utf-8" , newline="\n" ) as f: _UpperCAmelCase : Optional[int] = f.readlines() _UpperCAmelCase : List[Any] = [] _UpperCAmelCase : Any = 0 # Not a for loop cause `lines` is going to change (if `overwrite=True`). while line_index < len(_UpperCAmelCase ): _UpperCAmelCase : List[str] = _re_copy_warning.search(lines[line_index] ) if search is None: line_index += 1 continue # There is some copied code here, let's retrieve the original. _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : str = search.groups() _UpperCAmelCase : List[Any] = find_code_in_diffusers(_UpperCAmelCase ) _UpperCAmelCase : Optional[Any] = get_indent(_UpperCAmelCase ) _UpperCAmelCase : List[str] = line_index + 1 if indent == theoretical_indent else line_index + 2 _UpperCAmelCase : int = theoretical_indent _UpperCAmelCase : List[str] = start_index # Loop to check the observed code, stop when indentation diminishes or if we see a End copy comment. _UpperCAmelCase : int = True while line_index < len(_UpperCAmelCase ) and should_continue: line_index += 1 if line_index >= len(_UpperCAmelCase ): break _UpperCAmelCase : Optional[int] = lines[line_index] _UpperCAmelCase : Tuple = _should_continue(_UpperCAmelCase , _UpperCAmelCase ) and re.search(F"""^{indent}# End copy""" , _UpperCAmelCase ) is None # Clean up empty lines at the end (if any). while len(lines[line_index - 1] ) <= 1: line_index -= 1 _UpperCAmelCase : Any = lines[start_index:line_index] _UpperCAmelCase : Union[str, Any] = "".join(_UpperCAmelCase ) # Remove any nested `Copied from` comments to avoid circular copies _UpperCAmelCase : List[Any] = [line for line in theoretical_code.split("\n" ) if _re_copy_warning.search(_UpperCAmelCase ) is None] _UpperCAmelCase : str = "\n".join(_UpperCAmelCase ) # Before comparing, use the `replace_pattern` on the original code. if len(_UpperCAmelCase ) > 0: _UpperCAmelCase : Optional[Any] = replace_pattern.replace("with" , "" ).split("," ) _UpperCAmelCase : str = [_re_replace_pattern.search(_UpperCAmelCase ) for p in patterns] for pattern in patterns: if pattern is None: continue _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = pattern.groups() _UpperCAmelCase : Tuple = re.sub(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) if option.strip() == "all-casing": _UpperCAmelCase : int = re.sub(obja.lower() , obja.lower() , _UpperCAmelCase ) _UpperCAmelCase : List[Any] = re.sub(obja.upper() , obja.upper() , _UpperCAmelCase ) # Blackify after replacement. To be able to do that, we need the header (class or function definition) # from the previous line _UpperCAmelCase : Dict = blackify(lines[start_index - 1] + theoretical_code ) _UpperCAmelCase : Dict = theoretical_code[len(lines[start_index - 1] ) :] # Test for a diff and act accordingly. if observed_code != theoretical_code: diffs.append([object_name, start_index] ) if overwrite: _UpperCAmelCase : Union[str, Any] = lines[:start_index] + [theoretical_code] + lines[line_index:] _UpperCAmelCase : int = start_index + 1 if overwrite and len(_UpperCAmelCase ) > 0: # Warn the user a file has been modified. print(F"""Detected changes, rewriting {filename}.""" ) with open(_UpperCAmelCase , "w" , encoding="utf-8" , newline="\n" ) as f: f.writelines(_UpperCAmelCase ) return diffs def UpperCamelCase_ ( _UpperCAmelCase : bool = False ) -> Union[str, Any]: """simple docstring""" _UpperCAmelCase : Optional[Any] = glob.glob(os.path.join(_UpperCAmelCase , "**/*.py" ) , recursive=_UpperCAmelCase ) _UpperCAmelCase : str = [] for filename in all_files: _UpperCAmelCase : Any = is_copy_consistent(_UpperCAmelCase , _UpperCAmelCase ) diffs += [F"""- {filename}: copy does not match {d[0]} at line {d[1]}""" for d in new_diffs] if not overwrite and len(_UpperCAmelCase ) > 0: _UpperCAmelCase : str = "\n".join(_UpperCAmelCase ) raise Exception( "Found the following copy inconsistencies:\n" + diff + "\nRun `make fix-copies` or `python utils/check_copies.py --fix_and_overwrite` to fix them." ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = argparse.ArgumentParser() parser.add_argument("""--fix_and_overwrite""", action="""store_true""", help="""Whether to fix inconsistencies.""") __SCREAMING_SNAKE_CASE : int = parser.parse_args() check_copies(args.fix_and_overwrite)
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'''simple docstring''' import bza import gzip import lzma import os import shutil import struct import tarfile import warnings import zipfile from abc import ABC, abstractmethod from pathlib import Path from typing import Dict, List, Optional, Type, Union from .. import config from .filelock import FileLock from .logging import get_logger __SCREAMING_SNAKE_CASE : Dict = get_logger(__name__) class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[str] , A : Optional[str] = None ): _UpperCAmelCase : Dict = ( os.path.join(A , config.EXTRACTED_DATASETS_DIR ) if cache_dir else config.EXTRACTED_DATASETS_PATH ) _UpperCAmelCase : Union[str, Any] = Extractor def _A ( self : Tuple , A : str ): from .file_utils import hash_url_to_filename # Path where we extract compressed archives # We extract in the cache dir, and get the extracted path name by hashing the original path" _UpperCAmelCase : Dict = os.path.abspath(A ) return os.path.join(self.extract_dir , hash_url_to_filename(A ) ) def _A ( self : int , A : str , A : bool ): return force_extract or ( not os.path.isfile(A ) and not (os.path.isdir(A ) and os.listdir(A )) ) def _A ( self : Optional[int] , A : str , A : bool = False ): _UpperCAmelCase : Union[str, Any] = self.extractor.infer_extractor_format(A ) if not extractor_format: return input_path _UpperCAmelCase : Optional[Any] = self._get_output_path(A ) if self._do_extract(A , A ): self.extractor.extract(A , A , A ) return output_path class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod @abstractmethod def _A ( cls : str , A : Union[Path, str] , **A : Dict ): ... @staticmethod @abstractmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): ... class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: List[bytes] = [] @staticmethod def _A ( A : Union[Path, str] , A : int ): with open(A , "rb" ) as f: return f.read(A ) @classmethod def _A ( cls : Any , A : Union[Path, str] , A : bytes = b"" ): if not magic_number: _UpperCAmelCase : Any = max(len(A ) for cls_magic_number in cls.magic_numbers ) try: _UpperCAmelCase : int = cls.read_magic_number(A , A ) except OSError: return False return any(magic_number.startswith(A ) for cls_magic_number in cls.magic_numbers ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod def _A ( cls : str , A : Union[Path, str] , **A : List[Any] ): return tarfile.is_tarfile(A ) @staticmethod def _A ( A : Union[str, Any] , A : str ): def resolved(A : str ) -> str: return os.path.realpath(os.path.abspath(A ) ) def badpath(A : str , A : str ) -> bool: # joinpath will ignore base if path is absolute return not resolved(os.path.join(A , A ) ).startswith(A ) def badlink(A : str , A : str ) -> bool: # Links are interpreted relative to the directory containing the link _UpperCAmelCase : List[str] = resolved(os.path.join(A , os.path.dirname(info.name ) ) ) return badpath(info.linkname , base=A ) _UpperCAmelCase : Optional[int] = resolved(A ) for finfo in members: if badpath(finfo.name , A ): logger.error(F"""Extraction of {finfo.name} is blocked (illegal path)""" ) elif finfo.issym() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Symlink to {finfo.linkname}""" ) elif finfo.islnk() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Hard link to {finfo.linkname}""" ) else: yield finfo @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) _UpperCAmelCase : int = tarfile.open(A ) tar_file.extractall(A , members=TarExtractor.safemembers(A , A ) ) tar_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = [b"\x1F\x8B"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with gzip.open(A , "rb" ) as gzip_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [ b"PK\x03\x04", b"PK\x05\x06", # empty archive b"PK\x07\x08", # spanned archive ] @classmethod def _A ( cls : Dict , A : Union[Path, str] , A : bytes = b"" ): if super().is_extractable(A , magic_number=A ): return True try: # Alternative version of zipfile.is_zipfile that has less false positives, but misses executable zip archives. # From: https://github.com/python/cpython/pull/5053 from zipfile import ( _CD_SIGNATURE, _ECD_DISK_NUMBER, _ECD_DISK_START, _ECD_ENTRIES_TOTAL, _ECD_OFFSET, _ECD_SIZE, _EndRecData, sizeCentralDir, stringCentralDir, structCentralDir, ) with open(A , "rb" ) as fp: _UpperCAmelCase : Tuple = _EndRecData(A ) if endrec: if endrec[_ECD_ENTRIES_TOTAL] == 0 and endrec[_ECD_SIZE] == 0 and endrec[_ECD_OFFSET] == 0: return True # Empty zipfiles are still zipfiles elif endrec[_ECD_DISK_NUMBER] == endrec[_ECD_DISK_START]: fp.seek(endrec[_ECD_OFFSET] ) # Central directory is on the same disk if fp.tell() == endrec[_ECD_OFFSET] and endrec[_ECD_SIZE] >= sizeCentralDir: _UpperCAmelCase : Dict = fp.read(A ) # CD is where we expect it to be if len(A ) == sizeCentralDir: _UpperCAmelCase : Any = struct.unpack(A , A ) # CD is the right size if centdir[_CD_SIGNATURE] == stringCentralDir: return True # First central directory entry has correct magic number return False except Exception: # catch all errors in case future python versions change the zipfile internals return False @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) with zipfile.ZipFile(A , "r" ) as zip_file: zip_file.extractall(A ) zip_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [b"\xFD\x37\x7A\x58\x5A\x00"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with lzma.open(A ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = [b"Rar!\x1a\x07\x00", b"Rar!\x1a\x07\x01\x00"] # RAR_ID # RAR5_ID @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.RARFILE_AVAILABLE: raise ImportError("Please pip install rarfile" ) import rarfile os.makedirs(A , exist_ok=A ) _UpperCAmelCase : List[str] = rarfile.RarFile(A ) rf.extractall(A ) rf.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x28\xb5\x2F\xFD"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.ZSTANDARD_AVAILABLE: raise ImportError("Please pip install zstandard" ) import zstandard as zstd _UpperCAmelCase : Optional[Any] = zstd.ZstdDecompressor() with open(A , "rb" ) as ifh, open(A , "wb" ) as ofh: dctx.copy_stream(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x42\x5A\x68"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with bza.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = [b"\x37\x7A\xBC\xAF\x27\x1C"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.PY7ZR_AVAILABLE: raise ImportError("Please pip install py7zr" ) import pyazr os.makedirs(A , exist_ok=A ) with pyazr.SevenZipFile(A , "r" ) as archive: archive.extractall(A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = [b"\x04\x22\x4D\x18"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.LZ4_AVAILABLE: raise ImportError("Please pip install lz4" ) import lza.frame with lza.frame.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: Dict[str, Type[BaseExtractor]] = { "tar": TarExtractor, "gzip": GzipExtractor, "zip": ZipExtractor, "xz": XzExtractor, "rar": RarExtractor, "zstd": ZstdExtractor, "bz2": BzipaExtractor, "7z": SevenZipExtractor, # <Added version="2.4.0"/> "lz4": LzaExtractor, # <Added version="2.4.0"/> } @classmethod def _A ( cls : List[Any] ): return max( len(A ) for extractor in cls.extractors.values() if issubclass(A , A ) for extractor_magic_number in extractor.magic_numbers ) @staticmethod def _A ( A : Union[Path, str] , A : int ): try: return MagicNumberBaseExtractor.read_magic_number(A , magic_number_length=A ) except OSError: return b"" @classmethod def _A ( cls : Optional[Any] , A : Union[Path, str] , A : bool = False ): warnings.warn( "Method 'is_extractable' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'infer_extractor_format' instead." , category=A , ) _UpperCAmelCase : Union[str, Any] = cls.infer_extractor_format(A ) if extractor_format: return True if not return_extractor else (True, cls.extractors[extractor_format]) return False if not return_extractor else (False, None) @classmethod def _A ( cls : Dict , A : Union[Path, str] ): # <Added version="2.4.0"/> _UpperCAmelCase : Optional[int] = cls._get_magic_number_max_length() _UpperCAmelCase : str = cls._read_magic_number(A , A ) for extractor_format, extractor in cls.extractors.items(): if extractor.is_extractable(A , magic_number=A ): return extractor_format @classmethod def _A ( cls : List[str] , A : Union[Path, str] , A : Union[Path, str] , A : Optional[str] = None , A : Optional[BaseExtractor] = "deprecated" , ): os.makedirs(os.path.dirname(A ) , exist_ok=A ) # Prevent parallel extractions _UpperCAmelCase : Tuple = str(Path(A ).with_suffix(".lock" ) ) with FileLock(A ): shutil.rmtree(A , ignore_errors=A ) if extractor_format or extractor != "deprecated": if extractor != "deprecated" or not isinstance(A , A ): # passed as positional arg warnings.warn( "Parameter 'extractor' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'extractor_format' instead." , category=A , ) _UpperCAmelCase : Tuple = extractor if extractor != "deprecated" else extractor_format else: _UpperCAmelCase : Tuple = cls.extractors[extractor_format] return extractor.extract(A , A ) else: warnings.warn( "Parameter 'extractor_format' was made required in version 2.4.0 and not passing it will raise an " "exception in 3.0.0." , category=A , ) for extractor in cls.extractors.values(): if extractor.is_extractable(A ): return extractor.extract(A , A )
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'''simple docstring''' import argparse import json import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import ViTImageProcessor, ViTMSNConfig, ViTMSNModel from transformers.image_utils import IMAGENET_DEFAULT_MEAN, IMAGENET_DEFAULT_STD torch.set_grad_enabled(False) def UpperCamelCase_ ( _UpperCAmelCase : Union[str, Any] , _UpperCAmelCase : Optional[Any]=False ) -> Any: """simple docstring""" _UpperCAmelCase : Optional[int] = [] for i in range(config.num_hidden_layers ): # encoder layers: output projection, 2 feedforward neural networks and 2 layernorms rename_keys.append((F"""module.blocks.{i}.norm1.weight""", F"""vit.encoder.layer.{i}.layernorm_before.weight""") ) rename_keys.append((F"""module.blocks.{i}.norm1.bias""", F"""vit.encoder.layer.{i}.layernorm_before.bias""") ) rename_keys.append( (F"""module.blocks.{i}.attn.proj.weight""", F"""vit.encoder.layer.{i}.attention.output.dense.weight""") ) rename_keys.append((F"""module.blocks.{i}.attn.proj.bias""", F"""vit.encoder.layer.{i}.attention.output.dense.bias""") ) rename_keys.append((F"""module.blocks.{i}.norm2.weight""", F"""vit.encoder.layer.{i}.layernorm_after.weight""") ) rename_keys.append((F"""module.blocks.{i}.norm2.bias""", F"""vit.encoder.layer.{i}.layernorm_after.bias""") ) rename_keys.append((F"""module.blocks.{i}.mlp.fc1.weight""", F"""vit.encoder.layer.{i}.intermediate.dense.weight""") ) rename_keys.append((F"""module.blocks.{i}.mlp.fc1.bias""", F"""vit.encoder.layer.{i}.intermediate.dense.bias""") ) rename_keys.append((F"""module.blocks.{i}.mlp.fc2.weight""", F"""vit.encoder.layer.{i}.output.dense.weight""") ) rename_keys.append((F"""module.blocks.{i}.mlp.fc2.bias""", F"""vit.encoder.layer.{i}.output.dense.bias""") ) # projection layer + position embeddings rename_keys.extend( [ ("module.cls_token", "vit.embeddings.cls_token"), ("module.patch_embed.proj.weight", "vit.embeddings.patch_embeddings.projection.weight"), ("module.patch_embed.proj.bias", "vit.embeddings.patch_embeddings.projection.bias"), ("module.pos_embed", "vit.embeddings.position_embeddings"), ] ) if base_model: # layernorm + pooler rename_keys.extend( [ ("module.norm.weight", "layernorm.weight"), ("module.norm.bias", "layernorm.bias"), ] ) # if just the base model, we should remove "vit" from all keys that start with "vit" _UpperCAmelCase : str = [(pair[0], pair[1][4:]) if pair[1].startswith("vit" ) else pair for pair in rename_keys] else: # layernorm + classification head rename_keys.extend( [ ("norm.weight", "vit.layernorm.weight"), ("norm.bias", "vit.layernorm.bias"), ("head.weight", "classifier.weight"), ("head.bias", "classifier.bias"), ] ) return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Union[str, Any] , _UpperCAmelCase : Dict=False ) -> Optional[Any]: """simple docstring""" for i in range(config.num_hidden_layers ): if base_model: _UpperCAmelCase : int = "" else: _UpperCAmelCase : Any = "vit." # read in weights + bias of input projection layer (in timm, this is a single matrix + bias) _UpperCAmelCase : List[Any] = state_dict.pop(F"""module.blocks.{i}.attn.qkv.weight""" ) _UpperCAmelCase : Optional[int] = state_dict.pop(F"""module.blocks.{i}.attn.qkv.bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : List[Any] = in_proj_weight[ : config.hidden_size, : ] _UpperCAmelCase : List[str] = in_proj_bias[: config.hidden_size] _UpperCAmelCase : Any = in_proj_weight[ config.hidden_size : config.hidden_size * 2, : ] _UpperCAmelCase : str = in_proj_bias[ config.hidden_size : config.hidden_size * 2 ] _UpperCAmelCase : Optional[Any] = in_proj_weight[ -config.hidden_size :, : ] _UpperCAmelCase : List[str] = in_proj_bias[-config.hidden_size :] def UpperCamelCase_ ( _UpperCAmelCase : List[str] ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : str = ["head.weight", "head.bias"] for k in ignore_keys: state_dict.pop(_UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : List[Any] ) -> Optional[Any]: """simple docstring""" _UpperCAmelCase : List[str] = [ "module.fc.fc1.weight", "module.fc.fc1.bias", "module.fc.bn1.weight", "module.fc.bn1.bias", "module.fc.bn1.running_mean", "module.fc.bn1.running_var", "module.fc.bn1.num_batches_tracked", "module.fc.fc2.weight", "module.fc.fc2.bias", "module.fc.bn2.weight", "module.fc.bn2.bias", "module.fc.bn2.running_mean", "module.fc.bn2.running_var", "module.fc.bn2.num_batches_tracked", "module.fc.fc3.weight", "module.fc.fc3.bias", ] for k in ignore_keys: state_dict.pop(_UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : Any , _UpperCAmelCase : Tuple ) -> List[str]: """simple docstring""" _UpperCAmelCase : List[Any] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : int = val def UpperCamelCase_ ( _UpperCAmelCase : Union[str, Any] , _UpperCAmelCase : Dict ) -> str: """simple docstring""" _UpperCAmelCase : List[Any] = ViTMSNConfig() _UpperCAmelCase : Optional[int] = 1_000 _UpperCAmelCase : str = "datasets/huggingface/label-files" _UpperCAmelCase : List[str] = "imagenet-1k-id2label.json" _UpperCAmelCase : Optional[Any] = json.load(open(hf_hub_download(_UpperCAmelCase , _UpperCAmelCase ) , "r" ) ) _UpperCAmelCase : List[Any] = {int(_UpperCAmelCase ): v for k, v in idalabel.items()} _UpperCAmelCase : Tuple = idalabel _UpperCAmelCase : Dict = {v: k for k, v in idalabel.items()} if "s16" in checkpoint_url: _UpperCAmelCase : Dict = 384 _UpperCAmelCase : Any = 1_536 _UpperCAmelCase : str = 6 elif "l16" in checkpoint_url: _UpperCAmelCase : Union[str, Any] = 1_024 _UpperCAmelCase : Any = 4_096 _UpperCAmelCase : List[Any] = 24 _UpperCAmelCase : Tuple = 16 _UpperCAmelCase : Optional[Any] = 0.1 elif "b4" in checkpoint_url: _UpperCAmelCase : Optional[Any] = 4 elif "l7" in checkpoint_url: _UpperCAmelCase : List[str] = 7 _UpperCAmelCase : Optional[Any] = 1_024 _UpperCAmelCase : List[str] = 4_096 _UpperCAmelCase : Optional[int] = 24 _UpperCAmelCase : Union[str, Any] = 16 _UpperCAmelCase : Optional[int] = 0.1 _UpperCAmelCase : Tuple = ViTMSNModel(_UpperCAmelCase ) _UpperCAmelCase : int = torch.hub.load_state_dict_from_url(_UpperCAmelCase , map_location="cpu" )["target_encoder"] _UpperCAmelCase : List[Any] = ViTImageProcessor(size=config.image_size ) remove_projection_head(_UpperCAmelCase ) _UpperCAmelCase : str = create_rename_keys(_UpperCAmelCase , base_model=_UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_q_k_v(_UpperCAmelCase , _UpperCAmelCase , base_model=_UpperCAmelCase ) model.load_state_dict(_UpperCAmelCase ) model.eval() _UpperCAmelCase : Any = "http://images.cocodataset.org/val2017/000000039769.jpg" _UpperCAmelCase : List[Any] = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ) _UpperCAmelCase : Any = ViTImageProcessor( size=config.image_size , image_mean=_UpperCAmelCase , image_std=_UpperCAmelCase ) _UpperCAmelCase : Dict = image_processor(images=_UpperCAmelCase , return_tensors="pt" ) # forward pass torch.manual_seed(2 ) _UpperCAmelCase : Tuple = model(**_UpperCAmelCase ) _UpperCAmelCase : int = outputs.last_hidden_state # The following Colab Notebook was used to generate these outputs: # https://colab.research.google.com/gist/sayakpaul/3672419a04f5997827503fd84079bdd1/scratchpad.ipynb if "s16" in checkpoint_url: _UpperCAmelCase : Optional[int] = torch.tensor([[-1.0_9_1_5, -1.4_8_7_6, -1.1_8_0_9]] ) elif "b16" in checkpoint_url: _UpperCAmelCase : List[str] = torch.tensor([[1_4.2_8_8_9, -1_8.9_0_4_5, 1_1.7_2_8_1]] ) elif "l16" in checkpoint_url: _UpperCAmelCase : Optional[int] = torch.tensor([[4_1.5_0_2_8, -2_2.8_6_8_1, 4_5.6_4_7_5]] ) elif "b4" in checkpoint_url: _UpperCAmelCase : List[str] = torch.tensor([[-4.3_8_6_8, 5.2_9_3_2, -0.4_1_3_7]] ) else: _UpperCAmelCase : str = torch.tensor([[-0.1_7_9_2, -0.6_4_6_5, 2.4_2_6_3]] ) # verify logits assert torch.allclose(last_hidden_state[:, 0, :3] , _UpperCAmelCase , atol=1e-4 ) print(F"""Saving model to {pytorch_dump_folder_path}""" ) model.save_pretrained(_UpperCAmelCase ) print(F"""Saving image processor to {pytorch_dump_folder_path}""" ) image_processor.save_pretrained(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Any = argparse.ArgumentParser() # Required parameters parser.add_argument( """--checkpoint_url""", default="""https://dl.fbaipublicfiles.com/msn/vits16_800ep.pth.tar""", type=str, help="""URL of the checkpoint you'd like to convert.""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) __SCREAMING_SNAKE_CASE : Union[str, Any] = parser.parse_args() convert_vit_msn_checkpoint(args.checkpoint_url, args.pytorch_dump_folder_path)
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'''simple docstring''' from typing import Any def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : dict , _UpperCAmelCase : dict , _UpperCAmelCase : dict , ) -> list: """simple docstring""" _validation( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) # Creates data structures and fill initial step _UpperCAmelCase : dict = {} _UpperCAmelCase : dict = {} for state in states_space: _UpperCAmelCase : Union[str, Any] = observations_space[0] _UpperCAmelCase : Tuple = ( initial_probabilities[state] * emission_probabilities[state][observation] ) _UpperCAmelCase : List[str] = None # Fills the data structure with the probabilities of # different transitions and pointers to previous states for o in range(1 , len(_UpperCAmelCase ) ): _UpperCAmelCase : Optional[Any] = observations_space[o] _UpperCAmelCase : int = observations_space[o - 1] for state in states_space: # Calculates the argmax for probability function _UpperCAmelCase : str = "" _UpperCAmelCase : Tuple = -1 for k_state in states_space: _UpperCAmelCase : Any = ( probabilities[(k_state, prior_observation)] * transition_probabilities[k_state][state] * emission_probabilities[state][observation] ) if probability > max_probability: _UpperCAmelCase : Union[str, Any] = probability _UpperCAmelCase : str = k_state # Update probabilities and pointers dicts _UpperCAmelCase : Optional[int] = ( probabilities[(arg_max, prior_observation)] * transition_probabilities[arg_max][state] * emission_probabilities[state][observation] ) _UpperCAmelCase : Tuple = arg_max # The final observation _UpperCAmelCase : Optional[Any] = observations_space[len(_UpperCAmelCase ) - 1] # argmax for given final observation _UpperCAmelCase : List[str] = "" _UpperCAmelCase : Any = -1 for k_state in states_space: _UpperCAmelCase : Optional[int] = probabilities[(k_state, final_observation)] if probability > max_probability: _UpperCAmelCase : int = probability _UpperCAmelCase : Dict = k_state _UpperCAmelCase : Dict = arg_max # Process pointers backwards _UpperCAmelCase : List[Any] = last_state _UpperCAmelCase : str = [] for o in range(len(_UpperCAmelCase ) - 1 , -1 , -1 ): result.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = pointers[previous, observations_space[o]] result.reverse() return result def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_not_empty( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) _validate_lists(_UpperCAmelCase , _UpperCAmelCase ) _validate_dicts( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" if not all( [ observations_space, states_space, initial_probabilities, transition_probabilities, emission_probabilities, ] ): raise ValueError("There's an empty parameter" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any ) -> None: """simple docstring""" _validate_list(_UpperCAmelCase , "observations_space" ) _validate_list(_UpperCAmelCase , "states_space" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list""" raise ValueError(_UpperCAmelCase ) else: for x in _object: if not isinstance(_UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list of strings""" raise ValueError(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_dict(_UpperCAmelCase , "initial_probabilities" , _UpperCAmelCase ) _validate_nested_dict(_UpperCAmelCase , "transition_probabilities" ) _validate_nested_dict(_UpperCAmelCase , "emission_probabilities" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" _validate_dict(_object , _UpperCAmelCase , _UpperCAmelCase ) for x in _object.values(): _validate_dict(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str , _UpperCAmelCase : type , _UpperCAmelCase : bool = False ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Any = F"""{var_name} must be a dict""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object ): _UpperCAmelCase : Tuple = F"""{var_name} all keys must be strings""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object.values() ): _UpperCAmelCase : List[str] = "nested dictionary " if nested else "" _UpperCAmelCase : List[str] = F"""{var_name} {nested_text}all values must be {value_type.__name__}""" raise ValueError(_UpperCAmelCase ) if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' import torch from diffusers import UnCLIPScheduler from .test_schedulers import SchedulerCommonTest class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = (UnCLIPScheduler,) def _A ( self : List[Any] , **A : Optional[int] ): _UpperCAmelCase : Dict = { "num_train_timesteps": 1000, "variance_type": "fixed_small_log", "clip_sample": True, "clip_sample_range": 1.0, "prediction_type": "epsilon", } config.update(**A ) return config def _A ( self : Any ): for timesteps in [1, 5, 100, 1000]: self.check_over_configs(num_train_timesteps=A ) def _A ( self : Any ): for variance in ["fixed_small_log", "learned_range"]: self.check_over_configs(variance_type=A ) def _A ( self : Tuple ): for clip_sample in [True, False]: self.check_over_configs(clip_sample=A ) def _A ( self : Optional[Any] ): for clip_sample_range in [1, 5, 10, 20]: self.check_over_configs(clip_sample_range=A ) def _A ( self : Any ): for prediction_type in ["epsilon", "sample"]: self.check_over_configs(prediction_type=A ) def _A ( self : Dict ): for time_step in [0, 500, 999]: for prev_timestep in [None, 5, 100, 250, 500, 750]: if prev_timestep is not None and prev_timestep >= time_step: continue self.check_over_forward(time_step=A , prev_timestep=A ) def _A ( self : int ): _UpperCAmelCase : Tuple = self.scheduler_classes[0] _UpperCAmelCase : Union[str, Any] = self.get_scheduler_config(variance_type="fixed_small_log" ) _UpperCAmelCase : Any = scheduler_class(**A ) assert torch.sum(torch.abs(scheduler._get_variance(0 ) - 1.00_00E-10 ) ) < 1E-5 assert torch.sum(torch.abs(scheduler._get_variance(487 ) - 0.0_549_625 ) ) < 1E-5 assert torch.sum(torch.abs(scheduler._get_variance(999 ) - 0.9_994_987 ) ) < 1E-5 def _A ( self : int ): _UpperCAmelCase : Optional[Any] = self.scheduler_classes[0] _UpperCAmelCase : Tuple = self.get_scheduler_config(variance_type="learned_range" ) _UpperCAmelCase : int = scheduler_class(**A ) _UpperCAmelCase : int = 0.5 assert scheduler._get_variance(1 , predicted_variance=A ) - -10.1_712_790 < 1E-5 assert scheduler._get_variance(487 , predicted_variance=A ) - -5.7_998_052 < 1E-5 assert scheduler._get_variance(999 , predicted_variance=A ) - -0.0_010_011 < 1E-5 def _A ( self : Optional[int] ): _UpperCAmelCase : str = self.scheduler_classes[0] _UpperCAmelCase : Union[str, Any] = self.get_scheduler_config() _UpperCAmelCase : Union[str, Any] = scheduler_class(**A ) _UpperCAmelCase : Union[str, Any] = scheduler.timesteps _UpperCAmelCase : int = self.dummy_model() _UpperCAmelCase : Optional[int] = self.dummy_sample_deter _UpperCAmelCase : Tuple = torch.manual_seed(0 ) for i, t in enumerate(A ): # 1. predict noise residual _UpperCAmelCase : Dict = model(A , A ) # 2. predict previous mean of sample x_t-1 _UpperCAmelCase : List[str] = scheduler.step(A , A , A , generator=A ).prev_sample _UpperCAmelCase : str = pred_prev_sample _UpperCAmelCase : Union[str, Any] = torch.sum(torch.abs(A ) ) _UpperCAmelCase : List[str] = torch.mean(torch.abs(A ) ) assert abs(result_sum.item() - 252.2_682_495 ) < 1E-2 assert abs(result_mean.item() - 0.3_284_743 ) < 1E-3 def _A ( self : List[str] ): _UpperCAmelCase : List[Any] = self.scheduler_classes[0] _UpperCAmelCase : Dict = self.get_scheduler_config() _UpperCAmelCase : Dict = scheduler_class(**A ) scheduler.set_timesteps(25 ) _UpperCAmelCase : List[str] = scheduler.timesteps _UpperCAmelCase : Union[str, Any] = self.dummy_model() _UpperCAmelCase : List[str] = self.dummy_sample_deter _UpperCAmelCase : Tuple = torch.manual_seed(0 ) for i, t in enumerate(A ): # 1. predict noise residual _UpperCAmelCase : Any = model(A , A ) if i + 1 == timesteps.shape[0]: _UpperCAmelCase : List[Any] = None else: _UpperCAmelCase : Any = timesteps[i + 1] # 2. predict previous mean of sample x_t-1 _UpperCAmelCase : Union[str, Any] = scheduler.step( A , A , A , prev_timestep=A , generator=A ).prev_sample _UpperCAmelCase : List[Any] = pred_prev_sample _UpperCAmelCase : Optional[Any] = torch.sum(torch.abs(A ) ) _UpperCAmelCase : int = torch.mean(torch.abs(A ) ) assert abs(result_sum.item() - 258.2_044_983 ) < 1E-2 assert abs(result_mean.item() - 0.3_362_038 ) < 1E-3 def _A ( self : Dict ): pass def _A ( self : int ): pass
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import MobileViTImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : Optional[Any] , A : Dict , A : Dict=7 , A : Optional[int]=3 , A : Optional[int]=18 , A : Dict=30 , A : List[Any]=400 , A : Union[str, Any]=True , A : Tuple=None , A : List[Any]=True , A : int=None , A : Optional[int]=True , ): _UpperCAmelCase : Optional[int] = size if size is not None else {"shortest_edge": 20} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Union[str, Any] = batch_size _UpperCAmelCase : Optional[Any] = num_channels _UpperCAmelCase : Union[str, Any] = image_size _UpperCAmelCase : int = min_resolution _UpperCAmelCase : Optional[int] = max_resolution _UpperCAmelCase : List[str] = do_resize _UpperCAmelCase : Optional[Any] = size _UpperCAmelCase : Tuple = do_center_crop _UpperCAmelCase : Optional[int] = crop_size _UpperCAmelCase : Optional[Any] = do_flip_channel_order def _A ( self : Dict ): return { "do_resize": self.do_resize, "size": self.size, "do_center_crop": self.do_center_crop, "crop_size": self.crop_size, "do_flip_channel_order": self.do_flip_channel_order, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Tuple = MobileViTImageProcessor if is_vision_available() else None def _A ( self : List[Any] ): _UpperCAmelCase : Any = MobileViTImageProcessingTester(self ) @property def _A ( self : int ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Tuple ): _UpperCAmelCase : int = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "size" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "center_crop" ) ) self.assertTrue(hasattr(A , "do_flip_channel_order" ) ) def _A ( self : Any ): _UpperCAmelCase : List[str] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 20} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Dict = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Any ): pass def _A ( self : Dict ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random PIL images _UpperCAmelCase : Union[str, Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A ) for image in image_inputs: self.assertIsInstance(A , Image.Image ) # Test not batched input _UpperCAmelCase : List[Any] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Union[str, Any] ): # Initialize image_processing _UpperCAmelCase : Dict = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for image in image_inputs: self.assertIsInstance(A , np.ndarray ) # Test not batched input _UpperCAmelCase : Optional[int] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Any ): # Initialize image_processing _UpperCAmelCase : Any = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for image in image_inputs: self.assertIsInstance(A , torch.Tensor ) # Test not batched input _UpperCAmelCase : List[str] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Any = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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'''simple docstring''' __SCREAMING_SNAKE_CASE : Dict = 8.3_1_4_4_6_2 # Unit - J mol-1 K-1 def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or volume < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / volume def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or pressure < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / pressure if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 1 # To kept the Calculated Value # Since C(n, k) = C(n, n-k) if k > (n - k): _UpperCAmelCase : Any = n - k # Calculate C(n,k) for i in range(_UpperCAmelCase ): result *= n - i result //= i + 1 return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return binomial_coefficient(2 * node_count , _UpperCAmelCase ) // (node_count + 1) def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" if n < 0: raise ValueError("factorial() not defined for negative values" ) _UpperCAmelCase : List[str] = 1 for i in range(1 , n + 1 ): result *= i return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return catalan_number(_UpperCAmelCase ) * factorial(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Dict = int(input("""Enter the number of nodes: """).strip() or 0) if node_count <= 0: raise ValueError("""We need some nodes to work with.""") print( F'Given {node_count} nodes, there are {binary_tree_count(node_count)} ' F'binary trees and {catalan_number(node_count)} binary search trees.' )
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'''simple docstring''' import argparse import os import pickle import sys import torch from transformers import TransfoXLConfig, TransfoXLLMHeadModel, load_tf_weights_in_transfo_xl from transformers.models.transfo_xl import tokenization_transfo_xl as data_utils from transformers.models.transfo_xl.tokenization_transfo_xl import CORPUS_NAME, VOCAB_FILES_NAMES from transformers.utils import CONFIG_NAME, WEIGHTS_NAME, logging logging.set_verbosity_info() # We do this to be able to load python 2 datasets pickles # See e.g. https://stackoverflow.com/questions/2121874/python-pickling-after-changing-a-modules-directory/2121918#2121918 __SCREAMING_SNAKE_CASE : Dict = data_utils.TransfoXLTokenizer __SCREAMING_SNAKE_CASE : List[str] = data_utils.TransfoXLCorpus __SCREAMING_SNAKE_CASE : str = data_utils __SCREAMING_SNAKE_CASE : Union[str, Any] = data_utils def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : Optional[Any] , _UpperCAmelCase : int , _UpperCAmelCase : Tuple ) -> Any: """simple docstring""" if transfo_xl_dataset_file: # Convert a pre-processed corpus (see original TensorFlow repo) with open(_UpperCAmelCase , "rb" ) as fp: _UpperCAmelCase : Optional[Any] = pickle.load(_UpperCAmelCase , encoding="latin1" ) # Save vocabulary and dataset cache as Dictionaries (should be better than pickles for the long-term) _UpperCAmelCase : List[str] = pytorch_dump_folder_path + "/" + VOCAB_FILES_NAMES["pretrained_vocab_file"] print(F"""Save vocabulary to {pytorch_vocab_dump_path}""" ) _UpperCAmelCase : Any = corpus.vocab.__dict__ torch.save(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : str = corpus.__dict__ corpus_dict_no_vocab.pop("vocab" , _UpperCAmelCase ) _UpperCAmelCase : int = pytorch_dump_folder_path + "/" + CORPUS_NAME print(F"""Save dataset to {pytorch_dataset_dump_path}""" ) torch.save(_UpperCAmelCase , _UpperCAmelCase ) if tf_checkpoint_path: # Convert a pre-trained TensorFlow model _UpperCAmelCase : Tuple = os.path.abspath(_UpperCAmelCase ) _UpperCAmelCase : Union[str, Any] = os.path.abspath(_UpperCAmelCase ) print(F"""Converting Transformer XL checkpoint from {tf_path} with config at {config_path}.""" ) # Initialise PyTorch model if transfo_xl_config_file == "": _UpperCAmelCase : Tuple = TransfoXLConfig() else: _UpperCAmelCase : Union[str, Any] = TransfoXLConfig.from_json_file(_UpperCAmelCase ) print(F"""Building PyTorch model from configuration: {config}""" ) _UpperCAmelCase : Any = TransfoXLLMHeadModel(_UpperCAmelCase ) _UpperCAmelCase : Tuple = load_tf_weights_in_transfo_xl(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) # Save pytorch-model _UpperCAmelCase : Any = os.path.join(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : List[Any] = os.path.join(_UpperCAmelCase , _UpperCAmelCase ) print(F"""Save PyTorch model to {os.path.abspath(_UpperCAmelCase )}""" ) torch.save(model.state_dict() , _UpperCAmelCase ) print(F"""Save configuration file to {os.path.abspath(_UpperCAmelCase )}""" ) with open(_UpperCAmelCase , "w" , encoding="utf-8" ) as f: f.write(config.to_json_string() ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Union[str, Any] = argparse.ArgumentParser() parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, required=True, help="""Path to the folder to store the PyTorch model or dataset/vocab.""", ) parser.add_argument( """--tf_checkpoint_path""", default="""""", type=str, help="""An optional path to a TensorFlow checkpoint path to be converted.""", ) parser.add_argument( """--transfo_xl_config_file""", default="""""", type=str, help=( """An optional config json file corresponding to the pre-trained BERT model. \n""" """This specifies the model architecture.""" ), ) parser.add_argument( """--transfo_xl_dataset_file""", default="""""", type=str, help="""An optional dataset file to be converted in a vocabulary.""", ) __SCREAMING_SNAKE_CASE : Union[str, Any] = parser.parse_args() convert_transfo_xl_checkpoint_to_pytorch( args.tf_checkpoint_path, args.transfo_xl_config_file, args.pytorch_dump_folder_path, args.transfo_xl_dataset_file, )
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'''simple docstring''' import json from typing import List, Optional, Tuple from tokenizers import normalizers from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import logging from .tokenization_distilbert import DistilBertTokenizer __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """vocab.txt""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : Dict = { """vocab_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/vocab.txt""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/vocab.txt""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-german-cased""": """https://huggingface.co/distilbert-base-german-cased/resolve/main/vocab.txt""", """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/vocab.txt""" ), }, """tokenizer_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/tokenizer.json""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/tokenizer.json""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-german-cased""": ( """https://huggingface.co/distilbert-base-german-cased/resolve/main/tokenizer.json""" ), """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/tokenizer.json""" ), }, } __SCREAMING_SNAKE_CASE : Optional[Any] = { """distilbert-base-uncased""": 512, """distilbert-base-uncased-distilled-squad""": 512, """distilbert-base-cased""": 512, """distilbert-base-cased-distilled-squad""": 512, """distilbert-base-german-cased""": 512, """distilbert-base-multilingual-cased""": 512, } __SCREAMING_SNAKE_CASE : List[Any] = { """distilbert-base-uncased""": {"""do_lower_case""": True}, """distilbert-base-uncased-distilled-squad""": {"""do_lower_case""": True}, """distilbert-base-cased""": {"""do_lower_case""": False}, """distilbert-base-cased-distilled-squad""": {"""do_lower_case""": False}, """distilbert-base-german-cased""": {"""do_lower_case""": False}, """distilbert-base-multilingual-cased""": {"""do_lower_case""": False}, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = VOCAB_FILES_NAMES __UpperCamelCase: str = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: Optional[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Any = PRETRAINED_INIT_CONFIGURATION __UpperCamelCase: str = ["input_ids", "attention_mask"] __UpperCamelCase: List[str] = DistilBertTokenizer def __init__( self : str , A : int=None , A : Tuple=None , A : Tuple=True , A : Dict="[UNK]" , A : List[Any]="[SEP]" , A : Optional[Any]="[PAD]" , A : Dict="[CLS]" , A : Tuple="[MASK]" , A : str=True , A : Dict=None , **A : List[Any] , ): super().__init__( A , tokenizer_file=A , do_lower_case=A , unk_token=A , sep_token=A , pad_token=A , cls_token=A , mask_token=A , tokenize_chinese_chars=A , strip_accents=A , **A , ) _UpperCAmelCase : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() ) if ( normalizer_state.get("lowercase" , A ) != do_lower_case or normalizer_state.get("strip_accents" , A ) != strip_accents or normalizer_state.get("handle_chinese_chars" , A ) != tokenize_chinese_chars ): _UpperCAmelCase : Dict = getattr(A , normalizer_state.pop("type" ) ) _UpperCAmelCase : int = do_lower_case _UpperCAmelCase : Optional[int] = strip_accents _UpperCAmelCase : str = tokenize_chinese_chars _UpperCAmelCase : List[Any] = normalizer_class(**A ) _UpperCAmelCase : Dict = do_lower_case def _A ( self : List[Any] , A : Tuple , A : Any=None ): _UpperCAmelCase : Optional[int] = [self.cls_token_id] + token_ids_a + [self.sep_token_id] if token_ids_a: output += token_ids_a + [self.sep_token_id] return output def _A ( self : int , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Any = [self.sep_token_id] _UpperCAmelCase : str = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Dict , A : str , A : Optional[str] = None ): _UpperCAmelCase : Any = self._tokenizer.model.save(A , name=A ) return tuple(A )
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'''simple docstring''' from torch import nn def UpperCamelCase_ ( _UpperCAmelCase : int ) -> Optional[int]: """simple docstring""" if act_fn in ["swish", "silu"]: return nn.SiLU() elif act_fn == "mish": return nn.Mish() elif act_fn == "gelu": return nn.GELU() else: raise ValueError(F"""Unsupported activation function: {act_fn}""" )
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'''simple docstring''' import shutil import tempfile import unittest from unittest.mock import patch from transformers import ( DefaultFlowCallback, IntervalStrategy, PrinterCallback, ProgressCallback, Trainer, TrainerCallback, TrainingArguments, is_torch_available, ) from transformers.testing_utils import require_torch if is_torch_available(): from transformers.trainer import DEFAULT_CALLBACKS from .test_trainer import RegressionDataset, RegressionModelConfig, RegressionPreTrainedModel class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = [] def _A ( self : Any , A : Union[str, Any] , A : Optional[int] , A : List[str] , **A : Tuple ): self.events.append("on_init_end" ) def _A ( self : Any , A : str , A : List[Any] , A : List[Any] , **A : Tuple ): self.events.append("on_train_begin" ) def _A ( self : Tuple , A : List[str] , A : Tuple , A : int , **A : List[str] ): self.events.append("on_train_end" ) def _A ( self : Optional[Any] , A : Dict , A : Any , A : Optional[Any] , **A : List[Any] ): self.events.append("on_epoch_begin" ) def _A ( self : Optional[Any] , A : List[Any] , A : List[str] , A : Optional[int] , **A : Optional[int] ): self.events.append("on_epoch_end" ) def _A ( self : List[str] , A : Optional[int] , A : List[Any] , A : Union[str, Any] , **A : Any ): self.events.append("on_step_begin" ) def _A ( self : Tuple , A : Union[str, Any] , A : int , A : Optional[int] , **A : int ): self.events.append("on_step_end" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Union[str, Any] , A : str , **A : Union[str, Any] ): self.events.append("on_evaluate" ) def _A ( self : Optional[Any] , A : Optional[int] , A : Dict , A : List[Any] , **A : Dict ): self.events.append("on_predict" ) def _A ( self : Dict , A : Dict , A : List[Any] , A : Dict , **A : str ): self.events.append("on_save" ) def _A ( self : Tuple , A : Optional[Any] , A : Union[str, Any] , A : Optional[int] , **A : Dict ): self.events.append("on_log" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Tuple , A : Tuple , **A : List[str] ): self.events.append("on_prediction_step" ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[int] ): _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() def _A ( self : List[Any] ): shutil.rmtree(self.output_dir ) def _A ( self : Union[str, Any] , A : Optional[int]=0 , A : Optional[Any]=0 , A : Optional[Any]=64 , A : Dict=64 , A : Any=None , A : Tuple=False , **A : Optional[int] ): # disable_tqdm in TrainingArguments has a flaky default since it depends on the level of logging. We make sure # its set to False since the tests later on depend on its value. _UpperCAmelCase : str = RegressionDataset(length=A ) _UpperCAmelCase : Union[str, Any] = RegressionDataset(length=A ) _UpperCAmelCase : Any = RegressionModelConfig(a=A , b=A ) _UpperCAmelCase : List[Any] = RegressionPreTrainedModel(A ) _UpperCAmelCase : Dict = TrainingArguments(self.output_dir , disable_tqdm=A , report_to=[] , **A ) return Trainer( A , A , train_dataset=A , eval_dataset=A , callbacks=A , ) def _A ( self : str , A : List[str] , A : List[str] ): self.assertEqual(len(A ) , len(A ) ) # Order doesn't matter _UpperCAmelCase : Tuple = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) _UpperCAmelCase : Any = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) for cba, cba in zip(A , A ): if isinstance(A , A ) and isinstance(A , A ): self.assertEqual(A , A ) elif isinstance(A , A ) and not isinstance(A , A ): self.assertEqual(A , cba.__class__ ) elif not isinstance(A , A ) and isinstance(A , A ): self.assertEqual(cba.__class__ , A ) else: self.assertEqual(A , A ) def _A ( self : int , A : List[str] ): _UpperCAmelCase : List[str] = ["on_init_end", "on_train_begin"] _UpperCAmelCase : str = 0 _UpperCAmelCase : Optional[Any] = len(trainer.get_eval_dataloader() ) _UpperCAmelCase : Optional[int] = ["on_prediction_step"] * len(trainer.get_eval_dataloader() ) + ["on_log", "on_evaluate"] for _ in range(trainer.state.num_train_epochs ): expected_events.append("on_epoch_begin" ) for _ in range(A ): step += 1 expected_events += ["on_step_begin", "on_step_end"] if step % trainer.args.logging_steps == 0: expected_events.append("on_log" ) if trainer.args.evaluation_strategy == IntervalStrategy.STEPS and step % trainer.args.eval_steps == 0: expected_events += evaluation_events.copy() if step % trainer.args.save_steps == 0: expected_events.append("on_save" ) expected_events.append("on_epoch_end" ) if trainer.args.evaluation_strategy == IntervalStrategy.EPOCH: expected_events += evaluation_events.copy() expected_events += ["on_log", "on_train_end"] return expected_events def _A ( self : str ): _UpperCAmelCase : Any = self.get_trainer() _UpperCAmelCase : int = DEFAULT_CALLBACKS.copy() + [ProgressCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # Callbacks passed at init are added to the default callbacks _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) expected_callbacks.append(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # TrainingArguments.disable_tqdm controls if use ProgressCallback or PrinterCallback _UpperCAmelCase : List[Any] = self.get_trainer(disable_tqdm=A ) _UpperCAmelCase : Tuple = DEFAULT_CALLBACKS.copy() + [PrinterCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = DEFAULT_CALLBACKS.copy() + [ProgressCallback] _UpperCAmelCase : Dict = self.get_trainer() # We can add, pop, or remove by class name trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : Optional[Any] = self.get_trainer() _UpperCAmelCase : Any = trainer.pop_callback(A ) self.assertEqual(cb.__class__ , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # We can also add, pop, or remove by instance _UpperCAmelCase : Union[str, Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : List[Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] _UpperCAmelCase : Union[str, Any] = trainer.pop_callback(A ) self.assertEqual(A , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): import warnings # XXX: for now ignore scatter_gather warnings in this test since it's not relevant to what's being tested warnings.simplefilter(action="ignore" , category=A ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) trainer.train() _UpperCAmelCase : Union[str, Any] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # Independent log/save/eval _UpperCAmelCase : Tuple = self.get_trainer(callbacks=[MyTestTrainerCallback] , logging_steps=5 ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : List[str] = self.get_trainer(callbacks=[MyTestTrainerCallback] , save_steps=5 ) trainer.train() _UpperCAmelCase : Tuple = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : int = self.get_trainer(callbacks=[MyTestTrainerCallback] , eval_steps=5 , evaluation_strategy="steps" ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] , evaluation_strategy="epoch" ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # A bit of everything _UpperCAmelCase : int = self.get_trainer( callbacks=[MyTestTrainerCallback] , logging_steps=3 , save_steps=10 , eval_steps=5 , evaluation_strategy="steps" , ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # warning should be emitted for duplicated callbacks with patch("transformers.trainer_callback.logger.warning" ) as warn_mock: _UpperCAmelCase : Optional[Any] = self.get_trainer( callbacks=[MyTestTrainerCallback, MyTestTrainerCallback] , ) assert str(A ) in warn_mock.call_args[0][0]
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'''simple docstring''' import unittest from pathlib import Path from tempfile import TemporaryDirectory from transformers import AutoConfig, TFAutoModel, is_tensorflow_text_available, is_tf_available from transformers.models.bert.tokenization_bert import BertTokenizer from transformers.testing_utils import require_tensorflow_text, require_tf, slow if is_tf_available(): import tensorflow as tf if is_tensorflow_text_available(): from transformers.models.bert import TFBertTokenizer __SCREAMING_SNAKE_CASE : Union[str, Any] = ["""bert-base-uncased""", """bert-base-cased"""] __SCREAMING_SNAKE_CASE : List[str] = """hf-internal-testing/tiny-bert-tf-only""" if is_tf_available(): class lowerCamelCase_ (tf.keras.Model ): '''simple docstring''' def __init__( self : Union[str, Any] , A : Tuple ): super().__init__() _UpperCAmelCase : Any = tokenizer _UpperCAmelCase : int = AutoConfig.from_pretrained(A ) _UpperCAmelCase : str = TFAutoModel.from_config(A ) def _A ( self : Union[str, Any] , A : Dict ): _UpperCAmelCase : Any = self.tokenizer(A ) _UpperCAmelCase : Union[str, Any] = self.bert(**A ) return out["pooler_output"] @require_tf @require_tensorflow_text class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : List[str] ): super().setUp() _UpperCAmelCase : Union[str, Any] = [ BertTokenizer.from_pretrained(A ) for checkpoint in (TOKENIZER_CHECKPOINTS * 2) ] # repeat for when fast_bert_tokenizer=false _UpperCAmelCase : List[Any] = [TFBertTokenizer.from_pretrained(A ) for checkpoint in TOKENIZER_CHECKPOINTS] + [ TFBertTokenizer.from_pretrained(A , use_fast_bert_tokenizer=A ) for checkpoint in TOKENIZER_CHECKPOINTS ] assert len(self.tokenizers ) == len(self.tf_tokenizers ) _UpperCAmelCase : Dict = [ "This is a straightforward English test sentence.", "This one has some weird characters\rto\nsee\r\nif those\u00E9break things.", "Now we're going to add some Chinese: 一 二 三 一二三", "And some much more rare Chinese: 齉 堃 齉堃", "Je vais aussi écrire en français pour tester les accents", "Classical Irish also has some unusual characters, so in they go: Gaelaċ, ꝼ", ] _UpperCAmelCase : str = list(zip(self.test_sentences , self.test_sentences[::-1] ) ) def _A ( self : Optional[Any] ): for tokenizer, tf_tokenizer in zip(self.tokenizers , self.tf_tokenizers ): for test_inputs in (self.test_sentences, self.paired_sentences): _UpperCAmelCase : Any = tokenizer(A , return_tensors="tf" , padding="longest" ) _UpperCAmelCase : str = tf_tokenizer(A ) for key in python_outputs.keys(): self.assertTrue(tf.reduce_all(python_outputs[key].shape == tf_outputs[key].shape ) ) self.assertTrue(tf.reduce_all(tf.cast(python_outputs[key] , tf.intaa ) == tf_outputs[key] ) ) @slow def _A ( self : int ): for tf_tokenizer in self.tf_tokenizers: _UpperCAmelCase : str = tf_tokenizer(self.paired_sentences ) _UpperCAmelCase : int = tf_tokenizer( text=[sentence[0] for sentence in self.paired_sentences] , text_pair=[sentence[1] for sentence in self.paired_sentences] , ) for key in merged_outputs.keys(): self.assertTrue(tf.reduce_all(tf.cast(merged_outputs[key] , tf.intaa ) == separated_outputs[key] ) ) @slow def _A ( self : Tuple ): for tf_tokenizer in self.tf_tokenizers: _UpperCAmelCase : List[Any] = tf.function(A ) for test_inputs in (self.test_sentences, self.paired_sentences): _UpperCAmelCase : int = tf.constant(A ) _UpperCAmelCase : Optional[Any] = compiled_tokenizer(A ) _UpperCAmelCase : int = tf_tokenizer(A ) for key in eager_outputs.keys(): self.assertTrue(tf.reduce_all(eager_outputs[key] == compiled_outputs[key] ) ) @slow def _A ( self : List[Any] ): for tf_tokenizer in self.tf_tokenizers: _UpperCAmelCase : Any = ModelToSave(tokenizer=A ) _UpperCAmelCase : Optional[int] = tf.convert_to_tensor(self.test_sentences ) _UpperCAmelCase : Optional[Any] = model(A ) # Build model with some sample inputs with TemporaryDirectory() as tempdir: _UpperCAmelCase : Union[str, Any] = Path(A ) / "saved.model" model.save(A ) _UpperCAmelCase : Dict = tf.keras.models.load_model(A ) _UpperCAmelCase : str = loaded_model(A ) # We may see small differences because the loaded model is compiled, so we need an epsilon for the test self.assertLessEqual(tf.reduce_max(tf.abs(out - loaded_output ) ) , 1E-5 )
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_video_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import VivitImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : int , A : Dict , A : Optional[int]=7 , A : Tuple=3 , A : Optional[Any]=10 , A : int=18 , A : Dict=30 , A : List[str]=400 , A : int=True , A : Optional[Any]=None , A : Optional[Any]=True , A : List[Any]=[0.5, 0.5, 0.5] , A : List[str]=[0.5, 0.5, 0.5] , A : Optional[int]=None , ): _UpperCAmelCase : Dict = size if size is not None else {"shortest_edge": 18} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : Tuple = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : Optional[int] = num_channels _UpperCAmelCase : Optional[Any] = num_frames _UpperCAmelCase : Any = image_size _UpperCAmelCase : Dict = min_resolution _UpperCAmelCase : Any = max_resolution _UpperCAmelCase : Optional[int] = do_resize _UpperCAmelCase : str = size _UpperCAmelCase : List[Any] = do_normalize _UpperCAmelCase : Any = image_mean _UpperCAmelCase : Tuple = image_std _UpperCAmelCase : Any = crop_size def _A ( self : List[Any] ): return { "image_mean": self.image_mean, "image_std": self.image_std, "do_normalize": self.do_normalize, "do_resize": self.do_resize, "size": self.size, "crop_size": self.crop_size, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = VivitImageProcessor if is_vision_available() else None def _A ( self : int ): _UpperCAmelCase : Tuple = VivitImageProcessingTester(self ) @property def _A ( self : Optional[Any] ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Union[str, Any] ): _UpperCAmelCase : str = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "image_mean" ) ) self.assertTrue(hasattr(A , "image_std" ) ) self.assertTrue(hasattr(A , "do_normalize" ) ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "size" ) ) def _A ( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 18} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Optional[int] = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Tuple ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PIL videos _UpperCAmelCase : Any = prepare_video_inputs(self.image_processor_tester , equal_resolution=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , Image.Image ) # Test not batched input _UpperCAmelCase : str = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : List[Any] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , np.ndarray ) # Test not batched input _UpperCAmelCase : Tuple = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[int] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , torch.Tensor ) # Test not batched input _UpperCAmelCase : Optional[Any] = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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'''simple docstring''' import random import unittest import torch from diffusers import IFInpaintingSuperResolutionPipeline from diffusers.utils import floats_tensor from diffusers.utils.import_utils import is_xformers_available from diffusers.utils.testing_utils import skip_mps, torch_device from ..pipeline_params import ( TEXT_GUIDED_IMAGE_INPAINTING_BATCH_PARAMS, TEXT_GUIDED_IMAGE_INPAINTING_PARAMS, ) from ..test_pipelines_common import PipelineTesterMixin from . import IFPipelineTesterMixin @skip_mps class lowerCamelCase_ (snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = IFInpaintingSuperResolutionPipeline __UpperCamelCase: Any = TEXT_GUIDED_IMAGE_INPAINTING_PARAMS - {"width", "height"} __UpperCamelCase: Optional[Any] = TEXT_GUIDED_IMAGE_INPAINTING_BATCH_PARAMS.union({"original_image"} ) __UpperCamelCase: Optional[Any] = PipelineTesterMixin.required_optional_params - {"latents"} def _A ( self : Optional[Any] ): return self._get_superresolution_dummy_components() def _A ( self : List[str] , A : Any , A : str=0 ): if str(A ).startswith("mps" ): _UpperCAmelCase : List[Any] = torch.manual_seed(A ) else: _UpperCAmelCase : int = torch.Generator(device=A ).manual_seed(A ) _UpperCAmelCase : Any = floats_tensor((1, 3, 16, 16) , rng=random.Random(A ) ).to(A ) _UpperCAmelCase : List[Any] = floats_tensor((1, 3, 32, 32) , rng=random.Random(A ) ).to(A ) _UpperCAmelCase : Union[str, Any] = floats_tensor((1, 3, 32, 32) , rng=random.Random(A ) ).to(A ) _UpperCAmelCase : int = { "prompt": "A painting of a squirrel eating a burger", "image": image, "original_image": original_image, "mask_image": mask_image, "generator": generator, "num_inference_steps": 2, "output_type": "numpy", } return inputs @unittest.skipIf( torch_device != "cuda" or not is_xformers_available() , reason="XFormers attention is only available with CUDA and `xformers` installed" , ) def _A ( self : List[str] ): self._test_xformers_attention_forwardGenerator_pass(expected_max_diff=1E-3 ) def _A ( self : Optional[Any] ): self._test_save_load_optional_components() @unittest.skipIf(torch_device != "cuda" , reason="float16 requires CUDA" ) def _A ( self : List[str] ): # Due to non-determinism in save load of the hf-internal-testing/tiny-random-t5 text encoder super().test_save_load_floataa(expected_max_diff=1E-1 ) def _A ( self : Optional[Any] ): self._test_attention_slicing_forward_pass(expected_max_diff=1E-2 ) def _A ( self : int ): self._test_save_load_local() def _A ( self : Union[str, Any] ): self._test_inference_batch_single_identical( expected_max_diff=1E-2 , )
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'''simple docstring''' import math from typing import Optional import numpy as np from ...configuration_utils import PretrainedConfig from ...utils import logging __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : List[Any] = { """facebook/encodec_24khz""": """https://huggingface.co/facebook/encodec_24khz/resolve/main/config.json""", """facebook/encodec_48khz""": """https://huggingface.co/facebook/encodec_48khz/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = "encodec" def __init__( self : Optional[int] , A : Union[str, Any]=[1.5, 3.0, 6.0, 12.0, 24.0] , A : List[Any]=24000 , A : Union[str, Any]=1 , A : List[Any]=False , A : Optional[int]=None , A : int=None , A : str=128 , A : List[Any]=32 , A : List[Any]=1 , A : int=[8, 5, 4, 2] , A : Optional[int]="weight_norm" , A : List[Any]=7 , A : Any=7 , A : Dict=3 , A : Optional[int]=2 , A : Dict=True , A : Dict="reflect" , A : Any=2 , A : Dict=2 , A : str=1.0 , A : Optional[int]=1024 , A : Any=None , A : Any=True , **A : str , ): _UpperCAmelCase : Optional[int] = target_bandwidths _UpperCAmelCase : List[str] = sampling_rate _UpperCAmelCase : Optional[int] = audio_channels _UpperCAmelCase : str = normalize _UpperCAmelCase : int = chunk_length_s _UpperCAmelCase : str = overlap _UpperCAmelCase : Optional[Any] = hidden_size _UpperCAmelCase : int = num_filters _UpperCAmelCase : Optional[Any] = num_residual_layers _UpperCAmelCase : Optional[int] = upsampling_ratios _UpperCAmelCase : int = norm_type _UpperCAmelCase : List[Any] = kernel_size _UpperCAmelCase : List[Any] = last_kernel_size _UpperCAmelCase : List[Any] = residual_kernel_size _UpperCAmelCase : List[str] = dilation_growth_rate _UpperCAmelCase : Dict = use_causal_conv _UpperCAmelCase : Tuple = pad_mode _UpperCAmelCase : Tuple = compress _UpperCAmelCase : List[str] = num_lstm_layers _UpperCAmelCase : List[Any] = trim_right_ratio _UpperCAmelCase : int = codebook_size _UpperCAmelCase : Optional[Any] = codebook_dim if codebook_dim is not None else hidden_size _UpperCAmelCase : Optional[int] = use_conv_shortcut if self.norm_type not in ["weight_norm", "time_group_norm"]: raise ValueError( F"""self.norm_type must be one of `\"weight_norm\"`, `\"time_group_norm\"`), got {self.norm_type}""" ) super().__init__(**A ) @property def _A ( self : Any ): if self.chunk_length_s is None: return None else: return int(self.chunk_length_s * self.sampling_rate ) @property def _A ( self : Union[str, Any] ): if self.chunk_length_s is None or self.overlap is None: return None else: return max(1 , int((1.0 - self.overlap) * self.chunk_length ) ) @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = np.prod(self.upsampling_ratios ) return math.ceil(self.sampling_rate / hop_length ) @property def _A ( self : str ): return int(1000 * self.target_bandwidths[-1] // (self.frame_rate * 10) )
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'''simple docstring''' import os import unicodedata from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import AddedToken, PreTrainedTokenizer from ...utils import logging __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Tuple = {"""vocab_file""": """spiece.model"""} __SCREAMING_SNAKE_CASE : int = { """vocab_file""": { """albert-base-v1""": """https://huggingface.co/albert-base-v1/resolve/main/spiece.model""", """albert-large-v1""": """https://huggingface.co/albert-large-v1/resolve/main/spiece.model""", """albert-xlarge-v1""": """https://huggingface.co/albert-xlarge-v1/resolve/main/spiece.model""", """albert-xxlarge-v1""": """https://huggingface.co/albert-xxlarge-v1/resolve/main/spiece.model""", """albert-base-v2""": """https://huggingface.co/albert-base-v2/resolve/main/spiece.model""", """albert-large-v2""": """https://huggingface.co/albert-large-v2/resolve/main/spiece.model""", """albert-xlarge-v2""": """https://huggingface.co/albert-xlarge-v2/resolve/main/spiece.model""", """albert-xxlarge-v2""": """https://huggingface.co/albert-xxlarge-v2/resolve/main/spiece.model""", } } __SCREAMING_SNAKE_CASE : int = { """albert-base-v1""": 512, """albert-large-v1""": 512, """albert-xlarge-v1""": 512, """albert-xxlarge-v1""": 512, """albert-base-v2""": 512, """albert-large-v2""": 512, """albert-xlarge-v2""": 512, """albert-xxlarge-v2""": 512, } __SCREAMING_SNAKE_CASE : Tuple = """▁""" class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = VOCAB_FILES_NAMES __UpperCamelCase: List[Any] = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: int = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES def __init__( self : Dict , A : Optional[int] , A : Any=True , A : List[Any]=True , A : Optional[Any]=False , A : Any="[CLS]" , A : List[str]="[SEP]" , A : str="<unk>" , A : Any="[SEP]" , A : int="<pad>" , A : Union[str, Any]="[CLS]" , A : List[str]="[MASK]" , A : Optional[Dict[str, Any]] = None , **A : int , ): # Mask token behave like a normal word, i.e. include the space before it and # is included in the raw text, there should be a match in a non-normalized sentence. _UpperCAmelCase : Any = ( AddedToken(A , lstrip=A , rstrip=A , normalized=A ) if isinstance(A , A ) else mask_token ) _UpperCAmelCase : Any = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( do_lower_case=A , remove_space=A , keep_accents=A , bos_token=A , eos_token=A , unk_token=A , sep_token=A , pad_token=A , cls_token=A , mask_token=A , sp_model_kwargs=self.sp_model_kwargs , **A , ) _UpperCAmelCase : List[Any] = do_lower_case _UpperCAmelCase : str = remove_space _UpperCAmelCase : Optional[Any] = keep_accents _UpperCAmelCase : Optional[int] = vocab_file _UpperCAmelCase : Optional[int] = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(A ) @property def _A ( self : str ): return len(self.sp_model ) def _A ( self : Any ): _UpperCAmelCase : Any = {self.convert_ids_to_tokens(A ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def __getstate__( self : Optional[int] ): _UpperCAmelCase : int = self.__dict__.copy() _UpperCAmelCase : List[str] = None return state def __setstate__( self : List[str] , A : int ): _UpperCAmelCase : Dict = d # for backward compatibility if not hasattr(self , "sp_model_kwargs" ): _UpperCAmelCase : Optional[int] = {} _UpperCAmelCase : str = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def _A ( self : List[Any] , A : Optional[int] ): if self.remove_space: _UpperCAmelCase : int = " ".join(inputs.strip().split() ) else: _UpperCAmelCase : Tuple = inputs _UpperCAmelCase : Optional[Any] = outputs.replace("``" , "\"" ).replace("''" , "\"" ) if not self.keep_accents: _UpperCAmelCase : Union[str, Any] = unicodedata.normalize("NFKD" , A ) _UpperCAmelCase : List[Any] = "".join([c for c in outputs if not unicodedata.combining(A )] ) if self.do_lower_case: _UpperCAmelCase : int = outputs.lower() return outputs def _A ( self : str , A : str ): _UpperCAmelCase : Union[str, Any] = self.preprocess_text(A ) _UpperCAmelCase : Optional[int] = self.sp_model.encode(A , out_type=A ) _UpperCAmelCase : int = [] for piece in pieces: if len(A ) > 1 and piece[-1] == str("," ) and piece[-2].isdigit(): _UpperCAmelCase : Dict = self.sp_model.EncodeAsPieces(piece[:-1].replace(A , "" ) ) if piece[0] != SPIECE_UNDERLINE and cur_pieces[0][0] == SPIECE_UNDERLINE: if len(cur_pieces[0] ) == 1: _UpperCAmelCase : Optional[Any] = cur_pieces[1:] else: _UpperCAmelCase : Dict = cur_pieces[0][1:] cur_pieces.append(piece[-1] ) new_pieces.extend(A ) else: new_pieces.append(A ) return new_pieces def _A ( self : Union[str, Any] , A : Optional[Any] ): return self.sp_model.PieceToId(A ) def _A ( self : int , A : Optional[Any] ): return self.sp_model.IdToPiece(A ) def _A ( self : int , A : Tuple ): _UpperCAmelCase : List[str] = [] _UpperCAmelCase : List[Any] = "" _UpperCAmelCase : Tuple = False for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: if not prev_is_special: out_string += " " out_string += self.sp_model.decode(A ) + token _UpperCAmelCase : Optional[int] = True _UpperCAmelCase : List[str] = [] else: current_sub_tokens.append(A ) _UpperCAmelCase : List[Any] = False out_string += self.sp_model.decode(A ) return out_string.strip() def _A ( self : List[Any] , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : List[str] = [self.sep_token_id] _UpperCAmelCase : Tuple = [self.cls_token_id] if token_ids_a is None: return cls + token_ids_a + sep return cls + token_ids_a + sep + token_ids_a + sep def _A ( self : Tuple , A : List[int] , A : Optional[List[int]] = None , A : bool = False ): if already_has_special_tokens: return super().get_special_tokens_mask( token_ids_a=A , token_ids_a=A , already_has_special_tokens=A ) if token_ids_a is not None: return [1] + ([0] * len(A )) + [1] + ([0] * len(A )) + [1] return [1] + ([0] * len(A )) + [1] def _A ( self : int , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Tuple = [self.sep_token_id] _UpperCAmelCase : List[str] = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : Union[str, Any] = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , A ) elif not os.path.isfile(self.vocab_file ): with open(A , "wb" ) as fi: _UpperCAmelCase : int = self.sp_model.serialized_model_proto() fi.write(A ) return (out_vocab_file,)
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'''simple docstring''' from typing import Any, Dict, List, Optional, Tuple, Union import torch from torch import nn from torch.utils.data import DistributedSampler, RandomSampler from transformers import PreTrainedModel, Trainer, logging from transformers.integrations import is_fairscale_available from transformers.models.fsmt.configuration_fsmt import FSMTConfig from transformers.optimization import ( Adafactor, AdamW, get_constant_schedule, get_constant_schedule_with_warmup, get_cosine_schedule_with_warmup, get_cosine_with_hard_restarts_schedule_with_warmup, get_linear_schedule_with_warmup, get_polynomial_decay_schedule_with_warmup, ) from transformers.trainer_pt_utils import get_tpu_sampler from transformers.training_args import ParallelMode from transformers.utils import is_torch_tpu_available if is_fairscale_available(): from fairscale.optim import OSS __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = { """linear""": get_linear_schedule_with_warmup, """cosine""": get_cosine_schedule_with_warmup, """cosine_w_restarts""": get_cosine_with_hard_restarts_schedule_with_warmup, """polynomial""": get_polynomial_decay_schedule_with_warmup, """constant""": get_constant_schedule, """constant_w_warmup""": get_constant_schedule_with_warmup, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Any , A : Optional[int]=None , A : Tuple=None , *A : Tuple , **A : List[str] ): super().__init__(*A , **A ) if config is None: assert isinstance(self.model , A ), ( "If no `config` is passed the model to be trained has to be of type `PreTrainedModel`, but is" F""" {self.model.__class__}""" ) _UpperCAmelCase : str = self.model.config else: _UpperCAmelCase : List[str] = config _UpperCAmelCase : List[Any] = data_args _UpperCAmelCase : str = self.config.tgt_vocab_size if isinstance(self.config , A ) else self.config.vocab_size if self.args.label_smoothing != 0 or (self.data_args is not None and self.data_args.ignore_pad_token_for_loss): assert self.config.pad_token_id is not None, ( "Make sure that `config.pad_token_id` is correcly defined when ignoring `pad_token` for loss" " calculation or doing label smoothing." ) if self.config.pad_token_id is None and self.config.eos_token_id is not None: logger.warning( F"""The `config.pad_token_id` is `None`. Using `config.eos_token_id` = {self.config.eos_token_id} for""" " padding.." ) if self.args.label_smoothing == 0: _UpperCAmelCase : Optional[Any] = torch.nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id ) else: # dynamically import label_smoothed_nll_loss from utils import label_smoothed_nll_loss _UpperCAmelCase : Dict = label_smoothed_nll_loss def _A ( self : Tuple , A : int ): if self.optimizer is None: _UpperCAmelCase : Tuple = ["bias", "LayerNorm.weight"] _UpperCAmelCase : str = [ { "params": [p for n, p in self.model.named_parameters() if not any(nd in n for nd in no_decay )], "weight_decay": self.args.weight_decay, }, { "params": [p for n, p in self.model.named_parameters() if any(nd in n for nd in no_decay )], "weight_decay": 0.0, }, ] _UpperCAmelCase : int = Adafactor if self.args.adafactor else AdamW if self.args.adafactor: _UpperCAmelCase : List[str] = Adafactor _UpperCAmelCase : List[Any] = {"scale_parameter": False, "relative_step": False} else: _UpperCAmelCase : List[str] = AdamW _UpperCAmelCase : List[str] = { "betas": (self.args.adam_betaa, self.args.adam_betaa), "eps": self.args.adam_epsilon, } _UpperCAmelCase : List[Any] = self.args.learning_rate if self.sharded_ddp: _UpperCAmelCase : List[Any] = OSS( params=A , optim=A , **A , ) else: _UpperCAmelCase : Union[str, Any] = optimizer_cls(A , **A ) if self.lr_scheduler is None: _UpperCAmelCase : List[str] = self._get_lr_scheduler(A ) else: # ignoring --lr_scheduler logger.warning("scheduler is passed to `Seq2SeqTrainer`, `--lr_scheduler` arg is ignored." ) def _A ( self : List[str] , A : Optional[int] ): _UpperCAmelCase : List[str] = arg_to_scheduler[self.args.lr_scheduler] if self.args.lr_scheduler == "constant": _UpperCAmelCase : Optional[Any] = schedule_func(self.optimizer ) elif self.args.lr_scheduler == "constant_w_warmup": _UpperCAmelCase : str = schedule_func(self.optimizer , num_warmup_steps=self.args.warmup_steps ) else: _UpperCAmelCase : str = schedule_func( self.optimizer , num_warmup_steps=self.args.warmup_steps , num_training_steps=A ) return scheduler def _A ( self : Tuple ): if isinstance(self.train_dataset , torch.utils.data.IterableDataset ): return None elif is_torch_tpu_available(): return get_tpu_sampler(self.train_dataset ) else: if self.args.sortish_sampler: self.train_dataset.make_sortish_sampler( self.args.per_device_train_batch_size , distributed=(self.args.parallel_mode == ParallelMode.DISTRIBUTED) , ) return ( RandomSampler(self.train_dataset ) if self.args.local_rank == -1 else DistributedSampler(self.train_dataset ) ) def _A ( self : Any , A : Union[str, Any] , A : Union[str, Any] , A : List[Any] ): if self.args.label_smoothing == 0: if self.data_args is not None and self.data_args.ignore_pad_token_for_loss: # force training to ignore pad token _UpperCAmelCase : List[str] = model(**A , use_cache=A )[0] _UpperCAmelCase : int = self.loss_fn(logits.view(-1 , logits.shape[-1] ) , labels.view(-1 ) ) else: # compute usual loss via models _UpperCAmelCase , _UpperCAmelCase : Any = model(**A , labels=A , use_cache=A )[:2] else: # compute label smoothed loss _UpperCAmelCase : Optional[int] = model(**A , use_cache=A )[0] _UpperCAmelCase : List[str] = torch.nn.functional.log_softmax(A , dim=-1 ) _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = self.loss_fn(A , A , self.args.label_smoothing , ignore_index=self.config.pad_token_id ) return loss, logits def _A ( self : List[str] , A : Optional[int] , A : Optional[int] ): _UpperCAmelCase : Union[str, Any] = inputs.pop("labels" ) _UpperCAmelCase , _UpperCAmelCase : Optional[int] = self._compute_loss(A , A , A ) return loss def _A ( self : List[str] , A : nn.Module , A : Dict[str, Union[torch.Tensor, Any]] , A : bool , A : Optional[List[str]] = None , ): _UpperCAmelCase : List[str] = self._prepare_inputs(A ) _UpperCAmelCase : Dict = { "max_length": self.data_args.val_max_target_length if self.data_args is not None else self.config.max_length, "num_beams": self.data_args.eval_beams if self.data_args is not None else self.config.num_beams, } if self.args.predict_with_generate and not self.args.prediction_loss_only: _UpperCAmelCase : Dict = self.model.generate( inputs["input_ids"] , attention_mask=inputs["attention_mask"] , **A , ) # in case the batch is shorter than max length, the output should be padded if generated_tokens.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : int = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) _UpperCAmelCase : Any = inputs.pop("labels" ) with torch.no_grad(): # compute loss on predict data _UpperCAmelCase , _UpperCAmelCase : str = self._compute_loss(A , A , A ) _UpperCAmelCase : List[str] = loss.mean().detach() if self.args.prediction_loss_only: return (loss, None, None) _UpperCAmelCase : str = generated_tokens if self.args.predict_with_generate else logits if labels.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : Optional[Any] = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) return (loss, logits, labels) def _A ( self : Dict , A : int , A : List[str] ): # If PAD token is not defined at least EOS token has to be defined _UpperCAmelCase : Union[str, Any] = self.config.pad_token_id if self.config.pad_token_id is not None else self.config.eos_token_id if pad_token_id is None: raise ValueError( "Make sure that either `config.pad_token_id` or `config.eos_token_id` is defined if tensor has to be" F""" padded to `max_length`={max_length}""" ) _UpperCAmelCase : Tuple = pad_token_id * torch.ones( (tensor.shape[0], max_length) , dtype=tensor.dtype , device=tensor.device ) _UpperCAmelCase : Tuple = tensor return padded_tensor
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1
'''simple docstring''' import importlib import inspect import json import os import re import shutil import sys from pathlib import Path from typing import Dict, Optional, Union from urllib import request from huggingface_hub import HfFolder, cached_download, hf_hub_download, model_info from packaging import version from .. import __version__ from . import DIFFUSERS_DYNAMIC_MODULE_NAME, HF_MODULES_CACHE, logging __SCREAMING_SNAKE_CASE : Dict = ( """https://raw.githubusercontent.com/huggingface/diffusers/{revision}/examples/community/{pipeline}.py""" ) __SCREAMING_SNAKE_CASE : List[Any] = logging.get_logger(__name__) # pylint: disable=invalid-name def UpperCamelCase_ ( ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : int = "https://pypi.org/pypi/diffusers/json" _UpperCAmelCase : Optional[int] = json.loads(request.urlopen(_UpperCAmelCase ).read() )["releases"].keys() return sorted(_UpperCAmelCase , key=lambda _UpperCAmelCase : version.Version(_UpperCAmelCase ) ) def UpperCamelCase_ ( ) -> List[Any]: """simple docstring""" if HF_MODULES_CACHE in sys.path: return sys.path.append(_UpperCAmelCase ) os.makedirs(_UpperCAmelCase , exist_ok=_UpperCAmelCase ) _UpperCAmelCase : List[Any] = Path(_UpperCAmelCase ) / "__init__.py" if not init_path.exists(): init_path.touch() def UpperCamelCase_ ( _UpperCAmelCase : Union[str, os.PathLike] ) -> List[str]: """simple docstring""" init_hf_modules() _UpperCAmelCase : List[Any] = Path(_UpperCAmelCase ) / name # If the parent module does not exist yet, recursively create it. if not dynamic_module_path.parent.exists(): create_dynamic_module(dynamic_module_path.parent ) os.makedirs(_UpperCAmelCase , exist_ok=_UpperCAmelCase ) _UpperCAmelCase : str = dynamic_module_path / "__init__.py" if not init_path.exists(): init_path.touch() def UpperCamelCase_ ( _UpperCAmelCase : Optional[Any] ) -> Dict: """simple docstring""" with open(_UpperCAmelCase , "r" , encoding="utf-8" ) as f: _UpperCAmelCase : Optional[int] = f.read() # Imports of the form `import .xxx` _UpperCAmelCase : str = re.findall("^\s*import\s+\.(\S+)\s*$" , _UpperCAmelCase , flags=re.MULTILINE ) # Imports of the form `from .xxx import yyy` relative_imports += re.findall("^\s*from\s+\.(\S+)\s+import" , _UpperCAmelCase , flags=re.MULTILINE ) # Unique-ify return list(set(_UpperCAmelCase ) ) def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] ) -> Any: """simple docstring""" _UpperCAmelCase : Optional[Any] = False _UpperCAmelCase : Dict = [module_file] _UpperCAmelCase : Optional[int] = [] # Let's recurse through all relative imports while not no_change: _UpperCAmelCase : List[str] = [] for f in files_to_check: new_imports.extend(get_relative_imports(_UpperCAmelCase ) ) _UpperCAmelCase : str = Path(_UpperCAmelCase ).parent _UpperCAmelCase : Optional[Any] = [str(module_path / m ) for m in new_imports] _UpperCAmelCase : List[Any] = [f for f in new_import_files if f not in all_relative_imports] _UpperCAmelCase : Tuple = [F"""{f}.py""" for f in new_import_files] _UpperCAmelCase : Tuple = len(_UpperCAmelCase ) == 0 all_relative_imports.extend(_UpperCAmelCase ) return all_relative_imports def UpperCamelCase_ ( _UpperCAmelCase : Union[str, Any] ) -> Optional[int]: """simple docstring""" with open(_UpperCAmelCase , "r" , encoding="utf-8" ) as f: _UpperCAmelCase : Optional[Any] = f.read() # Imports of the form `import xxx` _UpperCAmelCase : List[Any] = re.findall("^\s*import\s+(\S+)\s*$" , _UpperCAmelCase , flags=re.MULTILINE ) # Imports of the form `from xxx import yyy` imports += re.findall("^\s*from\s+(\S+)\s+import" , _UpperCAmelCase , flags=re.MULTILINE ) # Only keep the top-level module _UpperCAmelCase : Union[str, Any] = [imp.split("." )[0] for imp in imports if not imp.startswith("." )] # Unique-ify and test we got them all _UpperCAmelCase : str = list(set(_UpperCAmelCase ) ) _UpperCAmelCase : Tuple = [] for imp in imports: try: importlib.import_module(_UpperCAmelCase ) except ImportError: missing_packages.append(_UpperCAmelCase ) if len(_UpperCAmelCase ) > 0: raise ImportError( "This modeling file requires the following packages that were not found in your environment: " F"""{', '.join(_UpperCAmelCase )}. Run `pip install {' '.join(_UpperCAmelCase )}`""" ) return get_relative_imports(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : Any ) -> Any: """simple docstring""" _UpperCAmelCase : Any = module_path.replace(os.path.sep , "." ) _UpperCAmelCase : str = importlib.import_module(_UpperCAmelCase ) if class_name is None: return find_pipeline_class(_UpperCAmelCase ) return getattr(_UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : List[str] ) -> Optional[Any]: """simple docstring""" from ..pipelines import DiffusionPipeline _UpperCAmelCase : List[Any] = dict(inspect.getmembers(_UpperCAmelCase , inspect.isclass ) ) _UpperCAmelCase : int = None for cls_name, cls in cls_members.items(): if ( cls_name != DiffusionPipeline.__name__ and issubclass(cls , _UpperCAmelCase ) and cls.__module__.split("." )[0] != "diffusers" ): if pipeline_class is not None: raise ValueError( F"""Multiple classes that inherit from {DiffusionPipeline.__name__} have been found:""" F""" {pipeline_class.__name__}, and {cls_name}. Please make sure to define only one in""" F""" {loaded_module}.""" ) _UpperCAmelCase : Dict = cls return pipeline_class def UpperCamelCase_ ( _UpperCAmelCase : Union[str, os.PathLike] , _UpperCAmelCase : str , _UpperCAmelCase : Optional[Union[str, os.PathLike]] = None , _UpperCAmelCase : bool = False , _UpperCAmelCase : bool = False , _UpperCAmelCase : Optional[Dict[str, str]] = None , _UpperCAmelCase : Optional[Union[bool, str]] = None , _UpperCAmelCase : Optional[str] = None , _UpperCAmelCase : bool = False , ) -> str: """simple docstring""" _UpperCAmelCase : Tuple = str(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = os.path.join(_UpperCAmelCase , _UpperCAmelCase ) if os.path.isfile(_UpperCAmelCase ): _UpperCAmelCase : Union[str, Any] = module_file_or_url _UpperCAmelCase : Optional[Any] = "local" elif pretrained_model_name_or_path.count("/" ) == 0: _UpperCAmelCase : Tuple = get_diffusers_versions() # cut ".dev0" _UpperCAmelCase : str = "v" + ".".join(__version__.split("." )[:3] ) # retrieve github version that matches if revision is None: _UpperCAmelCase : Tuple = latest_version if latest_version[1:] in available_versions else "main" logger.info(F"""Defaulting to latest_version: {revision}.""" ) elif revision in available_versions: _UpperCAmelCase : Tuple = F"""v{revision}""" elif revision == "main": _UpperCAmelCase : Tuple = revision else: raise ValueError( F"""`custom_revision`: {revision} does not exist. Please make sure to choose one of""" F""" {', '.join(available_versions + ['main'] )}.""" ) # community pipeline on GitHub _UpperCAmelCase : List[str] = COMMUNITY_PIPELINES_URL.format(revision=_UpperCAmelCase , pipeline=_UpperCAmelCase ) try: _UpperCAmelCase : str = cached_download( _UpperCAmelCase , cache_dir=_UpperCAmelCase , force_download=_UpperCAmelCase , proxies=_UpperCAmelCase , resume_download=_UpperCAmelCase , local_files_only=_UpperCAmelCase , use_auth_token=_UpperCAmelCase , ) _UpperCAmelCase : int = "git" _UpperCAmelCase : Tuple = pretrained_model_name_or_path + ".py" except EnvironmentError: logger.error(F"""Could not locate the {module_file} inside {pretrained_model_name_or_path}.""" ) raise else: try: # Load from URL or cache if already cached _UpperCAmelCase : Union[str, Any] = hf_hub_download( _UpperCAmelCase , _UpperCAmelCase , cache_dir=_UpperCAmelCase , force_download=_UpperCAmelCase , proxies=_UpperCAmelCase , resume_download=_UpperCAmelCase , local_files_only=_UpperCAmelCase , use_auth_token=_UpperCAmelCase , ) _UpperCAmelCase : Tuple = os.path.join("local" , "--".join(pretrained_model_name_or_path.split("/" ) ) ) except EnvironmentError: logger.error(F"""Could not locate the {module_file} inside {pretrained_model_name_or_path}.""" ) raise # Check we have all the requirements in our environment _UpperCAmelCase : Optional[Any] = check_imports(_UpperCAmelCase ) # Now we move the module inside our cached dynamic modules. _UpperCAmelCase : Optional[Any] = DIFFUSERS_DYNAMIC_MODULE_NAME + os.path.sep + submodule create_dynamic_module(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = Path(_UpperCAmelCase ) / full_submodule if submodule == "local" or submodule == "git": # We always copy local files (we could hash the file to see if there was a change, and give them the name of # that hash, to only copy when there is a modification but it seems overkill for now). # The only reason we do the copy is to avoid putting too many folders in sys.path. shutil.copy(_UpperCAmelCase , submodule_path / module_file ) for module_needed in modules_needed: _UpperCAmelCase : Optional[int] = F"""{module_needed}.py""" shutil.copy(os.path.join(_UpperCAmelCase , _UpperCAmelCase ) , submodule_path / module_needed ) else: # Get the commit hash # TODO: we will get this info in the etag soon, so retrieve it from there and not here. if isinstance(_UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : List[Any] = use_auth_token elif use_auth_token is True: _UpperCAmelCase : Tuple = HfFolder.get_token() else: _UpperCAmelCase : Dict = None _UpperCAmelCase : Tuple = model_info(_UpperCAmelCase , revision=_UpperCAmelCase , token=_UpperCAmelCase ).sha # The module file will end up being placed in a subfolder with the git hash of the repo. This way we get the # benefit of versioning. _UpperCAmelCase : Any = submodule_path / commit_hash _UpperCAmelCase : List[str] = full_submodule + os.path.sep + commit_hash create_dynamic_module(_UpperCAmelCase ) if not (submodule_path / module_file).exists(): shutil.copy(_UpperCAmelCase , submodule_path / module_file ) # Make sure we also have every file with relative for module_needed in modules_needed: if not (submodule_path / module_needed).exists(): get_cached_module_file( _UpperCAmelCase , F"""{module_needed}.py""" , cache_dir=_UpperCAmelCase , force_download=_UpperCAmelCase , resume_download=_UpperCAmelCase , proxies=_UpperCAmelCase , use_auth_token=_UpperCAmelCase , revision=_UpperCAmelCase , local_files_only=_UpperCAmelCase , ) return os.path.join(_UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Union[str, os.PathLike] , _UpperCAmelCase : str , _UpperCAmelCase : Optional[str] = None , _UpperCAmelCase : Optional[Union[str, os.PathLike]] = None , _UpperCAmelCase : bool = False , _UpperCAmelCase : bool = False , _UpperCAmelCase : Optional[Dict[str, str]] = None , _UpperCAmelCase : Optional[Union[bool, str]] = None , _UpperCAmelCase : Optional[str] = None , _UpperCAmelCase : bool = False , **_UpperCAmelCase : Any , ) -> List[str]: """simple docstring""" _UpperCAmelCase : int = get_cached_module_file( _UpperCAmelCase , _UpperCAmelCase , cache_dir=_UpperCAmelCase , force_download=_UpperCAmelCase , resume_download=_UpperCAmelCase , proxies=_UpperCAmelCase , use_auth_token=_UpperCAmelCase , revision=_UpperCAmelCase , local_files_only=_UpperCAmelCase , ) return get_class_in_module(_UpperCAmelCase , final_module.replace(".py" , "" ) )
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'''simple docstring''' import copy from typing import Any, Dict, List, Optional, Union import numpy as np import torch from ...audio_utils import mel_filter_bank, spectrogram, window_function from ...feature_extraction_sequence_utils import SequenceFeatureExtractor from ...feature_extraction_utils import BatchFeature from ...utils import TensorType, logging __SCREAMING_SNAKE_CASE : List[str] = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["input_features", "is_longer"] def __init__( self : str , A : int=64 , A : Dict=48000 , A : str=480 , A : List[Any]=10 , A : Optional[Any]=1024 , A : Tuple=0.0 , A : List[Any]=False , A : float = 0 , A : float = 14000 , A : int = None , A : str = "fusion" , A : str = "repeatpad" , **A : Dict , ): super().__init__( feature_size=A , sampling_rate=A , padding_value=A , return_attention_mask=A , **A , ) _UpperCAmelCase : Optional[Any] = top_db _UpperCAmelCase : Dict = truncation _UpperCAmelCase : List[Any] = padding _UpperCAmelCase : Optional[Any] = fft_window_size _UpperCAmelCase : Dict = (fft_window_size >> 1) + 1 _UpperCAmelCase : Any = hop_length _UpperCAmelCase : Tuple = max_length_s _UpperCAmelCase : str = max_length_s * sampling_rate _UpperCAmelCase : Any = sampling_rate _UpperCAmelCase : Optional[int] = frequency_min _UpperCAmelCase : str = frequency_max _UpperCAmelCase : Union[str, Any] = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm=A , mel_scale="htk" , ) _UpperCAmelCase : Tuple = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm="slaney" , mel_scale="slaney" , ) def _A ( self : List[str] ): _UpperCAmelCase : Union[str, Any] = copy.deepcopy(self.__dict__ ) _UpperCAmelCase : Dict = self.__class__.__name__ if "mel_filters" in output: del output["mel_filters"] if "mel_filters_slaney" in output: del output["mel_filters_slaney"] return output def _A ( self : Optional[Any] , A : np.array , A : Optional[np.array] = None ): _UpperCAmelCase : Dict = spectrogram( A , window_function(self.fft_window_size , "hann" ) , frame_length=self.fft_window_size , hop_length=self.hop_length , power=2.0 , mel_filters=A , log_mel="dB" , ) return log_mel_spectrogram.T def _A ( self : str , A : str , A : List[str] , A : List[Any] ): _UpperCAmelCase : List[str] = np.array_split(list(range(0 , total_frames - chunk_frames + 1 ) ) , 3 ) if len(ranges[1] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Optional[Any] = [0] if len(ranges[2] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Tuple = [0] # randomly choose index for each part _UpperCAmelCase : Dict = np.random.choice(ranges[0] ) _UpperCAmelCase : str = np.random.choice(ranges[1] ) _UpperCAmelCase : Tuple = np.random.choice(ranges[2] ) _UpperCAmelCase : str = mel[idx_front : idx_front + chunk_frames, :] _UpperCAmelCase : str = mel[idx_middle : idx_middle + chunk_frames, :] _UpperCAmelCase : List[Any] = mel[idx_back : idx_back + chunk_frames, :] _UpperCAmelCase : Dict = torch.tensor(mel[None, None, :] ) _UpperCAmelCase : Optional[Any] = torch.nn.functional.interpolate( A , size=[chunk_frames, 64] , mode="bilinear" , align_corners=A ) _UpperCAmelCase : List[str] = mel_shrink[0][0].numpy() _UpperCAmelCase : str = np.stack([mel_shrink, mel_chunk_front, mel_chunk_middle, mel_chunk_back] , axis=0 ) return mel_fusion def _A ( self : List[Any] , A : np.array , A : List[str] , A : Any , A : Optional[int] ): if waveform.shape[0] > max_length: if truncation == "rand_trunc": _UpperCAmelCase : int = True # random crop to max_length (for compatibility) -> this should be handled by self.pad _UpperCAmelCase : str = len(A ) - max_length _UpperCAmelCase : str = np.random.randint(0 , overflow + 1 ) _UpperCAmelCase : int = waveform[idx : idx + max_length] _UpperCAmelCase : Any = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] elif truncation == "fusion": _UpperCAmelCase : Tuple = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : List[str] = max_length // self.hop_length + 1 # the +1 related to how the spectrogram is computed _UpperCAmelCase : Optional[Any] = mel.shape[0] if chunk_frames == total_frames: # there is a corner case where the audio length is larger than max_length but smaller than max_length+hop_length. # In this case, we just use the whole audio. _UpperCAmelCase : Any = np.stack([mel, mel, mel, mel] , axis=0 ) _UpperCAmelCase : int = False else: _UpperCAmelCase : Tuple = self._random_mel_fusion(A , A , A ) _UpperCAmelCase : Any = True else: raise NotImplementedError(F"""data_truncating {truncation} not implemented""" ) else: _UpperCAmelCase : Optional[Any] = False # only use repeat as a new possible value for padding. you repeat the audio before applying the usual max_length padding if waveform.shape[0] < max_length: if padding == "repeat": _UpperCAmelCase : str = int(max_length / len(A ) ) _UpperCAmelCase : Dict = np.stack(np.tile(A , n_repeat + 1 ) )[:max_length] if padding == "repeatpad": _UpperCAmelCase : Dict = int(max_length / len(A ) ) _UpperCAmelCase : List[str] = np.stack(np.tile(A , A ) ) _UpperCAmelCase : Optional[Any] = np.pad(A , (0, max_length - waveform.shape[0]) , mode="constant" , constant_values=0 ) if truncation == "fusion": _UpperCAmelCase : str = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : Optional[int] = np.stack([input_mel, input_mel, input_mel, input_mel] , axis=0 ) else: _UpperCAmelCase : List[str] = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] return input_mel, longer def __call__( self : Union[str, Any] , A : Union[np.ndarray, List[float], List[np.ndarray], List[List[float]]] , A : str = None , A : Optional[str] = None , A : Optional[int] = None , A : Optional[int] = None , A : Optional[Union[str, TensorType]] = None , **A : List[str] , ): _UpperCAmelCase : int = truncation if truncation is not None else self.truncation _UpperCAmelCase : Optional[int] = padding if padding else self.padding if sampling_rate is not None: if sampling_rate != self.sampling_rate: raise ValueError( F"""The model corresponding to this feature extractor: {self.__class__.__name__} was trained using a""" F""" sampling rate of {self.sampling_rate}. Please make sure that the provided `raw_speech` input""" F""" was sampled with {self.sampling_rate} and not {sampling_rate}.""" ) else: logger.warning( "It is strongly recommended to pass the `sampling_rate` argument to this function. " "Failing to do so can result in silent errors that might be hard to debug." ) _UpperCAmelCase : Any = isinstance(A , np.ndarray ) and len(raw_speech.shape ) > 1 if is_batched_numpy and len(raw_speech.shape ) > 2: raise ValueError(F"""Only mono-channel audio is supported for input to {self}""" ) _UpperCAmelCase : Optional[Any] = is_batched_numpy or ( isinstance(A , (list, tuple) ) and (isinstance(raw_speech[0] , (np.ndarray, tuple, list) )) ) if is_batched: _UpperCAmelCase : int = [np.asarray(A , dtype=np.floataa ) for speech in raw_speech] elif not is_batched and not isinstance(A , np.ndarray ): _UpperCAmelCase : List[str] = np.asarray(A , dtype=np.floataa ) elif isinstance(A , np.ndarray ) and raw_speech.dtype is np.dtype(np.floataa ): _UpperCAmelCase : Any = raw_speech.astype(np.floataa ) # always return batch if not is_batched: _UpperCAmelCase : List[str] = [np.asarray(A )] # convert to mel spectrogram, truncate and pad if needed. _UpperCAmelCase : Dict = [ self._get_input_mel(A , max_length if max_length else self.nb_max_samples , A , A ) for waveform in raw_speech ] _UpperCAmelCase : int = [] _UpperCAmelCase : Optional[Any] = [] for mel, longer in padded_inputs: input_mel.append(A ) is_longer.append(A ) if truncation == "fusion" and sum(A ) == 0: # if no audio is longer than 10s, then randomly select one audio to be longer _UpperCAmelCase : Union[str, Any] = np.random.randint(0 , len(A ) ) _UpperCAmelCase : Optional[Any] = True if isinstance(input_mel[0] , A ): _UpperCAmelCase : List[str] = [np.asarray(A , dtype=np.floataa ) for feature in input_mel] # is_longer is a list of bool _UpperCAmelCase : Tuple = [[longer] for longer in is_longer] _UpperCAmelCase : Optional[Any] = {"input_features": input_mel, "is_longer": is_longer} _UpperCAmelCase : Tuple = BatchFeature(A ) if return_tensors is not None: _UpperCAmelCase : List[Any] = input_features.convert_to_tensors(A ) return input_features
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'''simple docstring''' import numpy as np import pandas as pd from sklearn.preprocessing import Normalizer from sklearn.svm import SVR from statsmodels.tsa.statespace.sarimax import SARIMAX def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : list ) -> float: """simple docstring""" _UpperCAmelCase : Dict = np.array([[1, item, train_mtch[i]] for i, item in enumerate(_UpperCAmelCase )] ) _UpperCAmelCase : List[str] = np.array(_UpperCAmelCase ) _UpperCAmelCase : str = np.dot(np.dot(np.linalg.inv(np.dot(x.transpose() , _UpperCAmelCase ) ) , x.transpose() ) , _UpperCAmelCase ) return abs(beta[0] + test_dt[0] * beta[1] + test_mtch[0] + beta[2] ) def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : list ) -> float: """simple docstring""" _UpperCAmelCase : Any = (1, 2, 1) _UpperCAmelCase : List[str] = (1, 1, 0, 7) _UpperCAmelCase : Optional[Any] = SARIMAX( _UpperCAmelCase , exog=_UpperCAmelCase , order=_UpperCAmelCase , seasonal_order=_UpperCAmelCase ) _UpperCAmelCase : Tuple = model.fit(disp=_UpperCAmelCase , maxiter=600 , method="nm" ) _UpperCAmelCase : int = model_fit.predict(1 , len(_UpperCAmelCase ) , exog=[test_match] ) return result[0] def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : list ) -> float: """simple docstring""" _UpperCAmelCase : int = SVR(kernel="rbf" , C=1 , gamma=0.1 , epsilon=0.1 ) regressor.fit(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Optional[Any] = regressor.predict(_UpperCAmelCase ) return y_pred[0] def UpperCamelCase_ ( _UpperCAmelCase : list ) -> float: """simple docstring""" train_user.sort() _UpperCAmelCase : str = np.percentile(_UpperCAmelCase , 25 ) _UpperCAmelCase : Tuple = np.percentile(_UpperCAmelCase , 75 ) _UpperCAmelCase : Tuple = qa - qa _UpperCAmelCase : str = qa - (iqr * 0.1) return low_lim def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : float ) -> bool: """simple docstring""" _UpperCAmelCase : int = 0 _UpperCAmelCase : Any = 0 for i in list_vote: if i > actual_result: _UpperCAmelCase : int = not_safe + 1 else: if abs(abs(_UpperCAmelCase ) - abs(_UpperCAmelCase ) ) <= 0.1: safe += 1 else: not_safe += 1 return safe > not_safe if __name__ == "__main__": # data_input_df = pd.read_csv("ex_data.csv", header=None) __SCREAMING_SNAKE_CASE : Union[str, Any] = [[18_231, 0.0, 1], [22_621, 1.0, 2], [15_675, 0.0, 3], [23_583, 1.0, 4]] __SCREAMING_SNAKE_CASE : Dict = pd.DataFrame( data_input, columns=["""total_user""", """total_even""", """days"""] ) __SCREAMING_SNAKE_CASE : Optional[int] = Normalizer().fit_transform(data_input_df.values) # split data __SCREAMING_SNAKE_CASE : List[Any] = normalize_df[:, 2].tolist() __SCREAMING_SNAKE_CASE : int = normalize_df[:, 0].tolist() __SCREAMING_SNAKE_CASE : str = normalize_df[:, 1].tolist() # for svr (input variable = total date and total match) __SCREAMING_SNAKE_CASE : str = normalize_df[:, [1, 2]].tolist() __SCREAMING_SNAKE_CASE : str = x[: len(x) - 1] __SCREAMING_SNAKE_CASE : Optional[Any] = x[len(x) - 1 :] # for linear regression & sarimax __SCREAMING_SNAKE_CASE : Any = total_date[: len(total_date) - 1] __SCREAMING_SNAKE_CASE : str = total_user[: len(total_user) - 1] __SCREAMING_SNAKE_CASE : str = total_match[: len(total_match) - 1] __SCREAMING_SNAKE_CASE : int = total_date[len(total_date) - 1 :] __SCREAMING_SNAKE_CASE : Optional[int] = total_user[len(total_user) - 1 :] __SCREAMING_SNAKE_CASE : List[Any] = total_match[len(total_match) - 1 :] # voting system with forecasting __SCREAMING_SNAKE_CASE : Optional[Any] = [ linear_regression_prediction( trn_date, trn_user, trn_match, tst_date, tst_match ), sarimax_predictor(trn_user, trn_match, tst_match), support_vector_regressor(x_train, x_test, trn_user), ] # check the safety of today's data __SCREAMING_SNAKE_CASE : List[str] = """""" if data_safety_checker(res_vote, tst_user) else """not """ print("""Today's data is {not_str}safe.""")
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'''simple docstring''' from typing import TYPE_CHECKING from ...file_utils import _LazyModule, is_tokenizers_available, is_torch_available from ...utils import OptionalDependencyNotAvailable __SCREAMING_SNAKE_CASE : Optional[int] = {"""configuration_gpt_neox""": ["""GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP""", """GPTNeoXConfig"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Tuple = ["""GPTNeoXTokenizerFast"""] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Dict = [ """GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST""", """GPTNeoXForCausalLM""", """GPTNeoXForQuestionAnswering""", """GPTNeoXForSequenceClassification""", """GPTNeoXForTokenClassification""", """GPTNeoXLayer""", """GPTNeoXModel""", """GPTNeoXPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_gpt_neox import GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP, GPTNeoXConfig try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_gpt_neox_fast import GPTNeoXTokenizerFast try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_gpt_neox import ( GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST, GPTNeoXForCausalLM, GPTNeoXForQuestionAnswering, GPTNeoXForSequenceClassification, GPTNeoXForTokenClassification, GPTNeoXLayer, GPTNeoXModel, GPTNeoXPreTrainedModel, ) else: import sys __SCREAMING_SNAKE_CASE : Any = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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'''simple docstring''' from collections import OrderedDict from typing import Mapping from ...configuration_utils import PretrainedConfig from ...onnx import OnnxConfig from ...utils import logging __SCREAMING_SNAKE_CASE : List[str] = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Optional[Any] = { """camembert-base""": """https://huggingface.co/camembert-base/resolve/main/config.json""", """umberto-commoncrawl-cased-v1""": ( """https://huggingface.co/Musixmatch/umberto-commoncrawl-cased-v1/resolve/main/config.json""" ), """umberto-wikipedia-uncased-v1""": ( """https://huggingface.co/Musixmatch/umberto-wikipedia-uncased-v1/resolve/main/config.json""" ), } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Any = "camembert" def __init__( self : List[str] , A : Any=30522 , A : Union[str, Any]=768 , A : Any=12 , A : int=12 , A : Any=3072 , A : Dict="gelu" , A : Dict=0.1 , A : str=0.1 , A : int=512 , A : str=2 , A : Dict=0.02 , A : Dict=1E-12 , A : str=1 , A : Dict=0 , A : Any=2 , A : Optional[int]="absolute" , A : List[Any]=True , A : str=None , **A : str , ): super().__init__(pad_token_id=A , bos_token_id=A , eos_token_id=A , **A ) _UpperCAmelCase : Tuple = vocab_size _UpperCAmelCase : int = hidden_size _UpperCAmelCase : Tuple = num_hidden_layers _UpperCAmelCase : Tuple = num_attention_heads _UpperCAmelCase : Any = hidden_act _UpperCAmelCase : Optional[int] = intermediate_size _UpperCAmelCase : Optional[Any] = hidden_dropout_prob _UpperCAmelCase : int = attention_probs_dropout_prob _UpperCAmelCase : Tuple = max_position_embeddings _UpperCAmelCase : Union[str, Any] = type_vocab_size _UpperCAmelCase : Optional[Any] = initializer_range _UpperCAmelCase : Tuple = layer_norm_eps _UpperCAmelCase : Dict = position_embedding_type _UpperCAmelCase : Tuple = use_cache _UpperCAmelCase : str = classifier_dropout class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @property def _A ( self : Union[str, Any] ): if self.task == "multiple-choice": _UpperCAmelCase : str = {0: "batch", 1: "choice", 2: "sequence"} else: _UpperCAmelCase : Tuple = {0: "batch", 1: "sequence"} return OrderedDict( [ ("input_ids", dynamic_axis), ("attention_mask", dynamic_axis), ] )
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'''simple docstring''' class lowerCamelCase_ : '''simple docstring''' def __init__( self : Tuple , A : Any , A : str , A : Union[str, Any] ): _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = graph self._normalize_graph(A , A ) _UpperCAmelCase : List[str] = len(A ) _UpperCAmelCase : Tuple = None def _A ( self : Any , A : List[Any] , A : str ): if sources is int: _UpperCAmelCase : List[Any] = [sources] if sinks is int: _UpperCAmelCase : List[Any] = [sinks] if len(A ) == 0 or len(A ) == 0: return _UpperCAmelCase : str = sources[0] _UpperCAmelCase : Union[str, Any] = sinks[0] # make fake vertex if there are more # than one source or sink if len(A ) > 1 or len(A ) > 1: _UpperCAmelCase : Dict = 0 for i in sources: max_input_flow += sum(self.graph[i] ) _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.insert(0 , 0 ) self.graph.insert(0 , [0] * size ) for i in sources: _UpperCAmelCase : Optional[Any] = max_input_flow _UpperCAmelCase : List[str] = 0 _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.append(0 ) self.graph.append([0] * size ) for i in sinks: _UpperCAmelCase : Dict = max_input_flow _UpperCAmelCase : List[Any] = size - 1 def _A ( self : Union[str, Any] ): if self.maximum_flow_algorithm is None: raise Exception("You need to set maximum flow algorithm before." ) if self.source_index is None or self.sink_index is None: return 0 self.maximum_flow_algorithm.execute() return self.maximum_flow_algorithm.getMaximumFlow() def _A ( self : Tuple , A : Dict ): _UpperCAmelCase : str = algorithm(self ) class lowerCamelCase_ : '''simple docstring''' def __init__( self : Any , A : str ): _UpperCAmelCase : Optional[int] = flow_network _UpperCAmelCase : Any = flow_network.verticesCount _UpperCAmelCase : List[str] = flow_network.sourceIndex _UpperCAmelCase : Union[str, Any] = flow_network.sinkIndex # it's just a reference, so you shouldn't change # it in your algorithms, use deep copy before doing that _UpperCAmelCase : Any = flow_network.graph _UpperCAmelCase : Union[str, Any] = False def _A ( self : List[str] ): if not self.executed: self._algorithm() _UpperCAmelCase : int = True def _A ( self : List[Any] ): pass class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[str, Any] ): super().__init__(A ) # use this to save your result _UpperCAmelCase : Any = -1 def _A ( self : Union[str, Any] ): if not self.executed: raise Exception("You should execute algorithm before using its result!" ) return self.maximum_flow class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Tuple , A : int ): super().__init__(A ) _UpperCAmelCase : List[str] = [[0] * self.verticies_count for i in range(self.verticies_count )] _UpperCAmelCase : Union[str, Any] = [0] * self.verticies_count _UpperCAmelCase : int = [0] * self.verticies_count def _A ( self : Dict ): _UpperCAmelCase : Dict = self.verticies_count # push some substance to graph for nextvertex_index, bandwidth in enumerate(self.graph[self.source_index] ): self.preflow[self.source_index][nextvertex_index] += bandwidth self.preflow[nextvertex_index][self.source_index] -= bandwidth self.excesses[nextvertex_index] += bandwidth # Relabel-to-front selection rule _UpperCAmelCase : Optional[int] = [ i for i in range(self.verticies_count ) if i != self.source_index and i != self.sink_index ] # move through list _UpperCAmelCase : Any = 0 while i < len(A ): _UpperCAmelCase : int = vertices_list[i] _UpperCAmelCase : int = self.heights[vertex_index] self.process_vertex(A ) if self.heights[vertex_index] > previous_height: # if it was relabeled, swap elements # and start from 0 index vertices_list.insert(0 , vertices_list.pop(A ) ) _UpperCAmelCase : Union[str, Any] = 0 else: i += 1 _UpperCAmelCase : List[Any] = sum(self.preflow[self.source_index] ) def _A ( self : Union[str, Any] , A : str ): while self.excesses[vertex_index] > 0: for neighbour_index in range(self.verticies_count ): # if it's neighbour and current vertex is higher if ( self.graph[vertex_index][neighbour_index] - self.preflow[vertex_index][neighbour_index] > 0 and self.heights[vertex_index] > self.heights[neighbour_index] ): self.push(A , A ) self.relabel(A ) def _A ( self : int , A : Dict , A : List[str] ): _UpperCAmelCase : int = min( self.excesses[from_index] , self.graph[from_index][to_index] - self.preflow[from_index][to_index] , ) self.preflow[from_index][to_index] += preflow_delta self.preflow[to_index][from_index] -= preflow_delta self.excesses[from_index] -= preflow_delta self.excesses[to_index] += preflow_delta def _A ( self : Optional[int] , A : Union[str, Any] ): _UpperCAmelCase : str = None for to_index in range(self.verticies_count ): if ( self.graph[vertex_index][to_index] - self.preflow[vertex_index][to_index] > 0 ) and (min_height is None or self.heights[to_index] < min_height): _UpperCAmelCase : Tuple = self.heights[to_index] if min_height is not None: _UpperCAmelCase : Optional[Any] = min_height + 1 if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[int] = [0] __SCREAMING_SNAKE_CASE : Union[str, Any] = [3] # graph = [ # [0, 0, 4, 6, 0, 0], # [0, 0, 5, 2, 0, 0], # [0, 0, 0, 0, 4, 4], # [0, 0, 0, 0, 6, 6], # [0, 0, 0, 0, 0, 0], # [0, 0, 0, 0, 0, 0], # ] __SCREAMING_SNAKE_CASE : List[Any] = [[0, 7, 0, 0], [0, 0, 6, 0], [0, 0, 0, 8], [9, 0, 0, 0]] # prepare our network __SCREAMING_SNAKE_CASE : Union[str, Any] = FlowNetwork(graph, entrances, exits) # set algorithm flow_network.set_maximum_flow_algorithm(PushRelabelExecutor) # and calculate __SCREAMING_SNAKE_CASE : Optional[Any] = flow_network.find_maximum_flow() print(F'maximum flow is {maximum_flow}')
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'''simple docstring''' from ...utils import ( OptionalDependencyNotAvailable, is_flax_available, is_torch_available, is_transformers_available, ) try: if not (is_transformers_available() and is_torch_available()): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: from ...utils.dummy_torch_and_transformers_objects import * # noqa F403 else: from .multicontrolnet import MultiControlNetModel from .pipeline_controlnet import StableDiffusionControlNetPipeline from .pipeline_controlnet_imgaimg import StableDiffusionControlNetImgaImgPipeline from .pipeline_controlnet_inpaint import StableDiffusionControlNetInpaintPipeline if is_transformers_available() and is_flax_available(): from .pipeline_flax_controlnet import FlaxStableDiffusionControlNetPipeline
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> float: """simple docstring""" def get_matched_characters(_UpperCAmelCase : str , _UpperCAmelCase : str ) -> str: _UpperCAmelCase : Tuple = [] _UpperCAmelCase : Dict = min(len(_stra ) , len(_stra ) ) // 2 for i, l in enumerate(_stra ): _UpperCAmelCase : int = int(max(0 , i - limit ) ) _UpperCAmelCase : Any = int(min(i + limit + 1 , len(_stra ) ) ) if l in _stra[left:right]: matched.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = F"""{_stra[0:_stra.index(_UpperCAmelCase )]} {_stra[_stra.index(_UpperCAmelCase ) + 1:]}""" return "".join(_UpperCAmelCase ) # matching characters _UpperCAmelCase : Union[str, Any] = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = len(_UpperCAmelCase ) # transposition _UpperCAmelCase : Optional[Any] = ( len([(ca, ca) for ca, ca in zip(_UpperCAmelCase , _UpperCAmelCase ) if ca != ca] ) // 2 ) if not match_count: _UpperCAmelCase : Dict = 0.0 else: _UpperCAmelCase : Optional[int] = ( 1 / 3 * ( match_count / len(_UpperCAmelCase ) + match_count / len(_UpperCAmelCase ) + (match_count - transpositions) / match_count ) ) # common prefix up to 4 characters _UpperCAmelCase : str = 0 for ca, ca in zip(stra[:4] , stra[:4] ): if ca == ca: prefix_len += 1 else: break return jaro + 0.1 * prefix_len * (1 - jaro) if __name__ == "__main__": import doctest doctest.testmod() print(jaro_winkler("""hello""", """world"""))
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'''simple docstring''' import inspect import unittest from transformers import DPTConfig from transformers.file_utils import is_torch_available, is_vision_available from transformers.models.auto import get_values from transformers.testing_utils import require_torch, require_vision, slow, torch_device from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, _config_zero_init, floats_tensor, ids_tensor from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from torch import nn from transformers import MODEL_MAPPING, DPTForDepthEstimation, DPTForSemanticSegmentation, DPTModel from transformers.models.dpt.modeling_dpt import DPT_PRETRAINED_MODEL_ARCHIVE_LIST if is_vision_available(): from PIL import Image from transformers import DPTImageProcessor class lowerCamelCase_ : '''simple docstring''' def __init__( self : Tuple , A : Optional[Any] , A : Any=2 , A : Union[str, Any]=32 , A : Any=16 , A : Any=3 , A : Optional[Any]=True , A : Optional[Any]=True , A : Any=32 , A : Tuple=4 , A : int=[0, 1, 2, 3] , A : Tuple=4 , A : Union[str, Any]=37 , A : List[Any]="gelu" , A : Any=0.1 , A : Optional[Any]=0.1 , A : Tuple=0.02 , A : int=3 , A : Union[str, Any]=[1, 384, 24, 24] , A : Optional[Any]=True , A : Optional[int]=None , ): _UpperCAmelCase : Union[str, Any] = parent _UpperCAmelCase : Union[str, Any] = batch_size _UpperCAmelCase : int = image_size _UpperCAmelCase : Tuple = patch_size _UpperCAmelCase : int = num_channels _UpperCAmelCase : Union[str, Any] = is_training _UpperCAmelCase : int = use_labels _UpperCAmelCase : List[Any] = hidden_size _UpperCAmelCase : List[str] = num_hidden_layers _UpperCAmelCase : List[str] = backbone_out_indices _UpperCAmelCase : List[Any] = num_attention_heads _UpperCAmelCase : Union[str, Any] = intermediate_size _UpperCAmelCase : Optional[int] = hidden_act _UpperCAmelCase : Tuple = hidden_dropout_prob _UpperCAmelCase : Optional[Any] = attention_probs_dropout_prob _UpperCAmelCase : Optional[int] = initializer_range _UpperCAmelCase : int = num_labels _UpperCAmelCase : Tuple = backbone_featmap_shape _UpperCAmelCase : List[str] = scope _UpperCAmelCase : List[str] = is_hybrid # sequence length of DPT = num_patches + 1 (we add 1 for the [CLS] token) _UpperCAmelCase : List[Any] = (image_size // patch_size) ** 2 _UpperCAmelCase : Optional[Any] = num_patches + 1 def _A ( self : Union[str, Any] ): _UpperCAmelCase : Any = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] ) _UpperCAmelCase : str = None if self.use_labels: _UpperCAmelCase : Optional[Any] = ids_tensor([self.batch_size, self.image_size, self.image_size] , self.num_labels ) _UpperCAmelCase : Any = self.get_config() return config, pixel_values, labels def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = { "global_padding": "same", "layer_type": "bottleneck", "depths": [3, 4, 9], "out_features": ["stage1", "stage2", "stage3"], "embedding_dynamic_padding": True, "hidden_sizes": [96, 192, 384, 768], "num_groups": 2, } return DPTConfig( image_size=self.image_size , patch_size=self.patch_size , num_channels=self.num_channels , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , backbone_out_indices=self.backbone_out_indices , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , is_decoder=A , initializer_range=self.initializer_range , is_hybrid=self.is_hybrid , backbone_config=A , backbone_featmap_shape=self.backbone_featmap_shape , ) def _A ( self : Any , A : Optional[int] , A : List[Any] , A : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = DPTModel(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _A ( self : Dict , A : Union[str, Any] , A : List[Any] , A : int ): _UpperCAmelCase : Union[str, Any] = self.num_labels _UpperCAmelCase : int = DPTForDepthEstimation(A ) model.to(A ) model.eval() _UpperCAmelCase : List[Any] = model(A ) self.parent.assertEqual(result.predicted_depth.shape , (self.batch_size, self.image_size, self.image_size) ) def _A ( self : int , A : List[str] , A : Tuple , A : List[str] ): _UpperCAmelCase : Dict = self.num_labels _UpperCAmelCase : List[Any] = DPTForSemanticSegmentation(A ) model.to(A ) model.eval() _UpperCAmelCase : Union[str, Any] = model(A , labels=A ) self.parent.assertEqual( result.logits.shape , (self.batch_size, self.num_labels, self.image_size, self.image_size) ) def _A ( self : Optional[int] ): _UpperCAmelCase : Optional[int] = self.prepare_config_and_inputs() _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : List[str] = config_and_inputs _UpperCAmelCase : Optional[Any] = {"pixel_values": pixel_values} return config, inputs_dict @require_torch class lowerCamelCase_ (snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[Any] = (DPTModel, DPTForDepthEstimation, DPTForSemanticSegmentation) if is_torch_available() else () __UpperCamelCase: Union[str, Any] = ( { "depth-estimation": DPTForDepthEstimation, "feature-extraction": DPTModel, "image-segmentation": DPTForSemanticSegmentation, } if is_torch_available() else {} ) __UpperCamelCase: Optional[int] = False __UpperCamelCase: str = False __UpperCamelCase: Tuple = False def _A ( self : List[Any] ): _UpperCAmelCase : Optional[int] = DPTModelTester(self ) _UpperCAmelCase : Optional[int] = ConfigTester(self , config_class=A , has_text_modality=A , hidden_size=37 ) def _A ( self : Union[str, Any] ): self.config_tester.run_common_tests() @unittest.skip(reason="DPT does not use inputs_embeds" ) def _A ( self : int ): pass def _A ( self : List[str] ): _UpperCAmelCase , _UpperCAmelCase : Tuple = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: _UpperCAmelCase : Union[str, Any] = model_class(A ) self.assertIsInstance(model.get_input_embeddings() , (nn.Module) ) _UpperCAmelCase : List[str] = model.get_output_embeddings() self.assertTrue(x is None or isinstance(A , nn.Linear ) ) def _A ( self : int ): _UpperCAmelCase , _UpperCAmelCase : Tuple = self.model_tester.prepare_config_and_inputs_for_common() for model_class in self.all_model_classes: _UpperCAmelCase : Optional[int] = model_class(A ) _UpperCAmelCase : Optional[Any] = inspect.signature(model.forward ) # signature.parameters is an OrderedDict => so arg_names order is deterministic _UpperCAmelCase : str = [*signature.parameters.keys()] _UpperCAmelCase : int = ["pixel_values"] self.assertListEqual(arg_names[:1] , A ) def _A ( self : int ): _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*A ) def _A ( self : List[Any] ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_depth_estimation(*A ) def _A ( self : Tuple ): _UpperCAmelCase : str = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_for_semantic_segmentation(*A ) def _A ( self : str ): for model_class in self.all_model_classes: if model_class.__name__ == "DPTForDepthEstimation": continue _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : Union[str, Any] = True if model_class in get_values(A ): continue _UpperCAmelCase : int = model_class(A ) model.to(A ) model.train() _UpperCAmelCase : str = self._prepare_for_class(A , A , return_labels=A ) _UpperCAmelCase : Dict = model(**A ).loss loss.backward() def _A ( self : Tuple ): for model_class in self.all_model_classes: if model_class.__name__ == "DPTForDepthEstimation": continue _UpperCAmelCase , _UpperCAmelCase : List[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : Dict = False _UpperCAmelCase : List[Any] = True if model_class in get_values(A ) or not model_class.supports_gradient_checkpointing: continue _UpperCAmelCase : Tuple = model_class(A ) model.to(A ) model.gradient_checkpointing_enable() model.train() _UpperCAmelCase : List[Any] = self._prepare_for_class(A , A , return_labels=A ) _UpperCAmelCase : Tuple = model(**A ).loss loss.backward() def _A ( self : Optional[int] ): _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : List[str] = _config_zero_init(A ) for model_class in self.all_model_classes: _UpperCAmelCase : List[Any] = model_class(config=A ) # Skip the check for the backbone _UpperCAmelCase : Union[str, Any] = [] for name, module in model.named_modules(): if module.__class__.__name__ == "DPTViTHybridEmbeddings": _UpperCAmelCase : Union[str, Any] = [F"""{name}.{key}""" for key in module.state_dict().keys()] break for name, param in model.named_parameters(): if param.requires_grad: if name in backbone_params: continue self.assertIn( ((param.data.mean() * 1E9).round() / 1E9).item() , [0.0, 1.0] , msg=F"""Parameter {name} of model {model_class} seems not properly initialized""" , ) @unittest.skip("Will be fixed soon by reducing the size of the model used for common tests." ) def _A ( self : Union[str, Any] ): pass @slow def _A ( self : List[Any] ): for model_name in DPT_PRETRAINED_MODEL_ARCHIVE_LIST[1:]: _UpperCAmelCase : Optional[int] = DPTModel.from_pretrained(A ) self.assertIsNotNone(A ) def _A ( self : Tuple ): # We do this test only for DPTForDepthEstimation since it is the only model that uses readout_type _UpperCAmelCase , _UpperCAmelCase : Tuple = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : str = "add" with self.assertRaises(A ): _UpperCAmelCase : List[str] = DPTForDepthEstimation(A ) def UpperCamelCase_ ( ) -> Any: """simple docstring""" _UpperCAmelCase : Optional[Any] = Image.open("./tests/fixtures/tests_samples/COCO/000000039769.png" ) return image @require_torch @require_vision @slow class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : str ): _UpperCAmelCase : int = DPTImageProcessor.from_pretrained("Intel/dpt-hybrid-midas" ) _UpperCAmelCase : List[str] = DPTForDepthEstimation.from_pretrained("Intel/dpt-hybrid-midas" ).to(A ) _UpperCAmelCase : List[Any] = prepare_img() _UpperCAmelCase : int = image_processor(images=A , return_tensors="pt" ).to(A ) # forward pass with torch.no_grad(): _UpperCAmelCase : Union[str, Any] = model(**A ) _UpperCAmelCase : List[Any] = outputs.predicted_depth # verify the predicted depth _UpperCAmelCase : List[str] = torch.Size((1, 384, 384) ) self.assertEqual(predicted_depth.shape , A ) _UpperCAmelCase : Tuple = torch.tensor( [[[5.6_437, 5.6_146, 5.6_511], [5.4_371, 5.5_649, 5.5_958], [5.5_215, 5.5_184, 5.5_293]]] ).to(A ) self.assertTrue(torch.allclose(outputs.predicted_depth[:3, :3, :3] / 100 , A , atol=1E-4 ) )
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'''simple docstring''' import math from typing import List, Optional, Tuple, Union import numpy as np import torch from ..configuration_utils import ConfigMixin, register_to_config from .scheduling_utils import SchedulerMixin, SchedulerOutput class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = 1 @register_to_config def __init__( self : Optional[int] , A : int = 1000 , A : Optional[Union[np.ndarray, List[float]]] = None ): # set `betas`, `alphas`, `timesteps` self.set_timesteps(A ) # standard deviation of the initial noise distribution _UpperCAmelCase : int = 1.0 # For now we only support F-PNDM, i.e. the runge-kutta method # For more information on the algorithm please take a look at the paper: https://arxiv.org/pdf/2202.09778.pdf # mainly at formula (9), (12), (13) and the Algorithm 2. _UpperCAmelCase : int = 4 # running values _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : int , A : Union[str, torch.device] = None ): _UpperCAmelCase : int = num_inference_steps _UpperCAmelCase : Union[str, Any] = torch.linspace(1 , 0 , num_inference_steps + 1 )[:-1] _UpperCAmelCase : Any = torch.cat([steps, torch.tensor([0.0] )] ) if self.config.trained_betas is not None: _UpperCAmelCase : str = torch.tensor(self.config.trained_betas , dtype=torch.floataa ) else: _UpperCAmelCase : Dict = torch.sin(steps * math.pi / 2 ) ** 2 _UpperCAmelCase : List[Any] = (1.0 - self.betas**2) ** 0.5 _UpperCAmelCase : List[str] = (torch.atana(self.betas , self.alphas ) / math.pi * 2)[:-1] _UpperCAmelCase : Dict = timesteps.to(A ) _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : bool = True , ): if self.num_inference_steps is None: raise ValueError( "Number of inference steps is 'None', you need to run 'set_timesteps' after creating the scheduler" ) _UpperCAmelCase : Tuple = (self.timesteps == timestep).nonzero().item() _UpperCAmelCase : Optional[Any] = timestep_index + 1 _UpperCAmelCase : int = sample * self.betas[timestep_index] + model_output * self.alphas[timestep_index] self.ets.append(A ) if len(self.ets ) == 1: _UpperCAmelCase : List[Any] = self.ets[-1] elif len(self.ets ) == 2: _UpperCAmelCase : str = (3 * self.ets[-1] - self.ets[-2]) / 2 elif len(self.ets ) == 3: _UpperCAmelCase : Tuple = (23 * self.ets[-1] - 16 * self.ets[-2] + 5 * self.ets[-3]) / 12 else: _UpperCAmelCase : Union[str, Any] = (1 / 24) * (55 * self.ets[-1] - 59 * self.ets[-2] + 37 * self.ets[-3] - 9 * self.ets[-4]) _UpperCAmelCase : Union[str, Any] = self._get_prev_sample(A , A , A , A ) if not return_dict: return (prev_sample,) return SchedulerOutput(prev_sample=A ) def _A ( self : Union[str, Any] , A : torch.FloatTensor , *A : Union[str, Any] , **A : Dict ): return sample def _A ( self : Optional[Any] , A : Optional[int] , A : int , A : Optional[Any] , A : List[str] ): _UpperCAmelCase : List[str] = self.alphas[timestep_index] _UpperCAmelCase : List[Any] = self.betas[timestep_index] _UpperCAmelCase : Optional[Any] = self.alphas[prev_timestep_index] _UpperCAmelCase : Dict = self.betas[prev_timestep_index] _UpperCAmelCase : Tuple = (sample - sigma * ets) / max(A , 1E-8 ) _UpperCAmelCase : List[str] = next_alpha * pred + ets * next_sigma return prev_sample def __len__( self : Union[str, Any] ): return self.config.num_train_timesteps
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'''simple docstring''' import os import sys import tempfile import unittest import unittest.mock as mock from pathlib import Path from huggingface_hub import HfFolder, delete_repo from huggingface_hub.file_download import http_get from requests.exceptions import HTTPError from transformers import ( AlbertTokenizer, AutoTokenizer, BertTokenizer, BertTokenizerFast, GPTaTokenizerFast, is_tokenizers_available, ) from transformers.testing_utils import TOKEN, USER, is_staging_test, require_tokenizers from transformers.tokenization_utils import Trie sys.path.append(str(Path(__file__).parent.parent / """utils""")) from test_module.custom_tokenization import CustomTokenizer # noqa E402 if is_tokenizers_available(): from test_module.custom_tokenization_fast import CustomTokenizerFast class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : List[str] ): # A mock response for an HTTP head request to emulate server down _UpperCAmelCase : Optional[Any] = mock.Mock() _UpperCAmelCase : Optional[int] = 500 _UpperCAmelCase : Tuple = {} _UpperCAmelCase : Optional[int] = HTTPError _UpperCAmelCase : Any = {} # Download this model to make sure it's in the cache. _UpperCAmelCase : List[str] = BertTokenizer.from_pretrained("hf-internal-testing/tiny-random-bert" ) # Under the mock environment we get a 500 error when trying to reach the tokenizer. with mock.patch("requests.Session.request" , return_value=A ) as mock_head: _UpperCAmelCase : Union[str, Any] = BertTokenizer.from_pretrained("hf-internal-testing/tiny-random-bert" ) # This check we did call the fake head request mock_head.assert_called() @require_tokenizers def _A ( self : int ): # A mock response for an HTTP head request to emulate server down _UpperCAmelCase : List[Any] = mock.Mock() _UpperCAmelCase : Union[str, Any] = 500 _UpperCAmelCase : Tuple = {} _UpperCAmelCase : Union[str, Any] = HTTPError _UpperCAmelCase : Optional[Any] = {} # Download this model to make sure it's in the cache. _UpperCAmelCase : Any = GPTaTokenizerFast.from_pretrained("gpt2" ) # Under the mock environment we get a 500 error when trying to reach the tokenizer. with mock.patch("requests.Session.request" , return_value=A ) as mock_head: _UpperCAmelCase : Dict = GPTaTokenizerFast.from_pretrained("gpt2" ) # This check we did call the fake head request mock_head.assert_called() def _A ( self : str ): # This test is for deprecated behavior and can be removed in v5 try: _UpperCAmelCase : Any = tempfile.mktemp() with open(A , "wb" ) as f: http_get("https://huggingface.co/albert-base-v1/resolve/main/spiece.model" , A ) _UpperCAmelCase : Union[str, Any] = AlbertTokenizer.from_pretrained(A ) finally: os.remove(A ) # Supporting this legacy load introduced a weird bug where the tokenizer would load local files if they are in # the current folder and have the right name. if os.path.isfile("tokenizer.json" ): # We skip the test if the user has a `tokenizer.json` in this folder to avoid deleting it. return try: with open("tokenizer.json" , "wb" ) as f: http_get("https://huggingface.co/hf-internal-testing/tiny-random-bert/blob/main/tokenizer.json" , A ) _UpperCAmelCase : Optional[Any] = AutoTokenizer.from_pretrained("hf-internal-testing/tiny-random-gpt2" ) # The tiny random BERT has a vocab size of 1024, tiny gpt2 as a vocab size of 1000 self.assertEqual(tokenizer.vocab_size , 1000 ) # Tokenizer should depend on the remote checkpoint, not the local tokenizer.json file. finally: os.remove("tokenizer.json" ) def _A ( self : Any ): # This test is for deprecated behavior and can be removed in v5 _UpperCAmelCase : Optional[Any] = AlbertTokenizer.from_pretrained("https://huggingface.co/albert-base-v1/resolve/main/spiece.model" ) @is_staging_test class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = ["[UNK]", "[CLS]", "[SEP]", "[PAD]", "[MASK]", "bla", "blou"] @classmethod def _A ( cls : List[Any] ): _UpperCAmelCase : Union[str, Any] = TOKEN HfFolder.save_token(A ) @classmethod def _A ( cls : int ): try: delete_repo(token=cls._token , repo_id="test-tokenizer" ) except HTTPError: pass try: delete_repo(token=cls._token , repo_id="valid_org/test-tokenizer-org" ) except HTTPError: pass try: delete_repo(token=cls._token , repo_id="test-dynamic-tokenizer" ) except HTTPError: pass def _A ( self : Optional[int] ): with tempfile.TemporaryDirectory() as tmp_dir: _UpperCAmelCase : Any = os.path.join(A , "vocab.txt" ) with open(A , "w" , encoding="utf-8" ) as vocab_writer: vocab_writer.write("".join([x + "\n" for x in self.vocab_tokens] ) ) _UpperCAmelCase : Optional[Any] = BertTokenizer(A ) tokenizer.push_to_hub("test-tokenizer" , use_auth_token=self._token ) _UpperCAmelCase : Optional[Any] = BertTokenizer.from_pretrained(F"""{USER}/test-tokenizer""" ) self.assertDictEqual(new_tokenizer.vocab , tokenizer.vocab ) # Reset repo delete_repo(token=self._token , repo_id="test-tokenizer" ) # Push to hub via save_pretrained with tempfile.TemporaryDirectory() as tmp_dir: tokenizer.save_pretrained(A , repo_id="test-tokenizer" , push_to_hub=A , use_auth_token=self._token ) _UpperCAmelCase : Any = BertTokenizer.from_pretrained(F"""{USER}/test-tokenizer""" ) self.assertDictEqual(new_tokenizer.vocab , tokenizer.vocab ) def _A ( self : List[Any] ): with tempfile.TemporaryDirectory() as tmp_dir: _UpperCAmelCase : Optional[Any] = os.path.join(A , "vocab.txt" ) with open(A , "w" , encoding="utf-8" ) as vocab_writer: vocab_writer.write("".join([x + "\n" for x in self.vocab_tokens] ) ) _UpperCAmelCase : str = BertTokenizer(A ) tokenizer.push_to_hub("valid_org/test-tokenizer-org" , use_auth_token=self._token ) _UpperCAmelCase : int = BertTokenizer.from_pretrained("valid_org/test-tokenizer-org" ) self.assertDictEqual(new_tokenizer.vocab , tokenizer.vocab ) # Reset repo delete_repo(token=self._token , repo_id="valid_org/test-tokenizer-org" ) # Push to hub via save_pretrained with tempfile.TemporaryDirectory() as tmp_dir: tokenizer.save_pretrained( A , repo_id="valid_org/test-tokenizer-org" , push_to_hub=A , use_auth_token=self._token ) _UpperCAmelCase : Optional[Any] = BertTokenizer.from_pretrained("valid_org/test-tokenizer-org" ) self.assertDictEqual(new_tokenizer.vocab , tokenizer.vocab ) @require_tokenizers def _A ( self : List[Any] ): CustomTokenizer.register_for_auto_class() with tempfile.TemporaryDirectory() as tmp_dir: _UpperCAmelCase : Tuple = os.path.join(A , "vocab.txt" ) with open(A , "w" , encoding="utf-8" ) as vocab_writer: vocab_writer.write("".join([x + "\n" for x in self.vocab_tokens] ) ) _UpperCAmelCase : List[Any] = CustomTokenizer(A ) # No fast custom tokenizer tokenizer.push_to_hub("test-dynamic-tokenizer" , use_auth_token=self._token ) _UpperCAmelCase : Optional[int] = AutoTokenizer.from_pretrained(F"""{USER}/test-dynamic-tokenizer""" , trust_remote_code=A ) # Can't make an isinstance check because the new_model.config is from the CustomTokenizer class of a dynamic module self.assertEqual(tokenizer.__class__.__name__ , "CustomTokenizer" ) # Fast and slow custom tokenizer CustomTokenizerFast.register_for_auto_class() with tempfile.TemporaryDirectory() as tmp_dir: _UpperCAmelCase : Union[str, Any] = os.path.join(A , "vocab.txt" ) with open(A , "w" , encoding="utf-8" ) as vocab_writer: vocab_writer.write("".join([x + "\n" for x in self.vocab_tokens] ) ) _UpperCAmelCase : Optional[Any] = BertTokenizerFast.from_pretrained(A ) bert_tokenizer.save_pretrained(A ) _UpperCAmelCase : List[str] = CustomTokenizerFast.from_pretrained(A ) tokenizer.push_to_hub("test-dynamic-tokenizer" , use_auth_token=self._token ) _UpperCAmelCase : Union[str, Any] = AutoTokenizer.from_pretrained(F"""{USER}/test-dynamic-tokenizer""" , trust_remote_code=A ) # Can't make an isinstance check because the new_model.config is from the FakeConfig class of a dynamic module self.assertEqual(tokenizer.__class__.__name__ , "CustomTokenizerFast" ) _UpperCAmelCase : Tuple = AutoTokenizer.from_pretrained( F"""{USER}/test-dynamic-tokenizer""" , use_fast=A , trust_remote_code=A ) # Can't make an isinstance check because the new_model.config is from the FakeConfig class of a dynamic module self.assertEqual(tokenizer.__class__.__name__ , "CustomTokenizer" ) class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[Any] ): _UpperCAmelCase : Optional[Any] = Trie() trie.add("Hello 友達" ) self.assertEqual(trie.data , {"H": {"e": {"l": {"l": {"o": {" ": {"友": {"達": {"": 1}}}}}}}}} ) trie.add("Hello" ) trie.data self.assertEqual(trie.data , {"H": {"e": {"l": {"l": {"o": {"": 1, " ": {"友": {"達": {"": 1}}}}}}}}} ) def _A ( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = Trie() self.assertEqual(trie.split("[CLS] This is a extra_id_100" ) , ["[CLS] This is a extra_id_100"] ) trie.add("[CLS]" ) trie.add("extra_id_1" ) trie.add("extra_id_100" ) self.assertEqual(trie.split("[CLS] This is a extra_id_100" ) , ["[CLS]", " This is a ", "extra_id_100"] ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : int = Trie() trie.add("A" ) self.assertEqual(trie.split("ABC" ) , ["A", "BC"] ) self.assertEqual(trie.split("BCA" ) , ["BC", "A"] ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Tuple = Trie() trie.add("TOKEN]" ) trie.add("[SPECIAL_TOKEN]" ) self.assertEqual(trie.split("This is something [SPECIAL_TOKEN]" ) , ["This is something ", "[SPECIAL_TOKEN]"] ) def _A ( self : Optional[Any] ): _UpperCAmelCase : int = Trie() trie.add("A" ) trie.add("P" ) trie.add("[SPECIAL_TOKEN]" ) self.assertEqual(trie.split("This is something [SPECIAL_TOKEN]" ) , ["This is something ", "[SPECIAL_TOKEN]"] ) def _A ( self : Optional[int] ): _UpperCAmelCase : int = Trie() trie.add("AB" ) trie.add("B" ) trie.add("C" ) self.assertEqual(trie.split("ABC" ) , ["AB", "C"] ) def _A ( self : List[Any] ): _UpperCAmelCase : List[Any] = Trie() trie.add("ABC" ) trie.add("B" ) trie.add("CD" ) self.assertEqual(trie.split("ABCD" ) , ["ABC", "D"] ) def _A ( self : Optional[Any] ): # Even if the offsets are wrong, we necessarily output correct string # parts. _UpperCAmelCase : List[str] = Trie() _UpperCAmelCase : Optional[int] = trie.cut_text("ABC" , [0, 0, 2, 1, 2, 3] ) self.assertEqual(A , ["AB", "C"] )
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'''simple docstring''' import numpy as np from matplotlib import pyplot as plt from sklearn.datasets import load_iris from sklearn.metrics import ConfusionMatrixDisplay from sklearn.model_selection import train_test_split from xgboost import XGBClassifier def UpperCamelCase_ ( _UpperCAmelCase : dict ) -> tuple: """simple docstring""" return (data["data"], data["target"]) def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray ) -> XGBClassifier: """simple docstring""" _UpperCAmelCase : Any = XGBClassifier() classifier.fit(_UpperCAmelCase , _UpperCAmelCase ) return classifier def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : List[str] = load_iris() _UpperCAmelCase , _UpperCAmelCase : Dict = data_handling(_UpperCAmelCase ) _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : str = train_test_split( _UpperCAmelCase , _UpperCAmelCase , test_size=0.2_5 ) _UpperCAmelCase : Optional[Any] = iris["target_names"] # Create an XGBoost Classifier from the training data _UpperCAmelCase : Tuple = xgboost(_UpperCAmelCase , _UpperCAmelCase ) # Display the confusion matrix of the classifier with both training and test sets ConfusionMatrixDisplay.from_estimator( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , display_labels=_UpperCAmelCase , cmap="Blues" , normalize="true" , ) plt.title("Normalized Confusion Matrix - IRIS Dataset" ) plt.show() if __name__ == "__main__": import doctest doctest.testmod(verbose=True) main()
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1
'''simple docstring''' import json import os import shutil import tempfile import unittest import numpy as np import pytest from transformers import BertTokenizer, BertTokenizerFast from transformers.models.bert.tokenization_bert import VOCAB_FILES_NAMES from transformers.testing_utils import require_vision from transformers.utils import IMAGE_PROCESSOR_NAME, is_vision_available if is_vision_available(): from PIL import Image from transformers import AlignProcessor, EfficientNetImageProcessor @require_vision class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[int] ): _UpperCAmelCase : Dict = tempfile.mkdtemp() _UpperCAmelCase : Any = [ "[UNK]", "[CLS]", "[SEP]", "[PAD]", "[MASK]", "want", "##want", "##ed", "wa", "un", "runn", "##ing", ",", "low", "lowest", ] _UpperCAmelCase : Any = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["vocab_file"] ) with open(self.vocab_file , "w" , encoding="utf-8" ) as vocab_writer: vocab_writer.write("".join([x + "\n" for x in vocab_tokens] ) ) _UpperCAmelCase : int = { "do_resize": True, "size": 20, "do_center_crop": True, "crop_size": 18, "do_normalize": True, "image_mean": [0.48_145_466, 0.4_578_275, 0.40_821_073], "image_std": [0.26_862_954, 0.26_130_258, 0.27_577_711], } _UpperCAmelCase : List[Any] = os.path.join(self.tmpdirname , A ) with open(self.image_processor_file , "w" , encoding="utf-8" ) as fp: json.dump(A , A ) def _A ( self : Dict , **A : List[Any] ): return BertTokenizer.from_pretrained(self.tmpdirname , **A ) def _A ( self : List[str] , **A : Tuple ): return BertTokenizerFast.from_pretrained(self.tmpdirname , **A ) def _A ( self : Dict , **A : Dict ): return EfficientNetImageProcessor.from_pretrained(self.tmpdirname , **A ) def _A ( self : str ): shutil.rmtree(self.tmpdirname ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Any = [np.random.randint(255 , size=(3, 30, 400) , dtype=np.uinta )] _UpperCAmelCase : Any = [Image.fromarray(np.moveaxis(A , 0 , -1 ) ) for x in image_inputs] return image_inputs def _A ( self : List[str] ): _UpperCAmelCase : Optional[Any] = self.get_tokenizer() _UpperCAmelCase : Optional[int] = self.get_rust_tokenizer() _UpperCAmelCase : Union[str, Any] = self.get_image_processor() _UpperCAmelCase : Optional[Any] = AlignProcessor(tokenizer=A , image_processor=A ) processor_slow.save_pretrained(self.tmpdirname ) _UpperCAmelCase : str = AlignProcessor.from_pretrained(self.tmpdirname , use_fast=A ) _UpperCAmelCase : List[Any] = AlignProcessor(tokenizer=A , image_processor=A ) processor_fast.save_pretrained(self.tmpdirname ) _UpperCAmelCase : Optional[Any] = AlignProcessor.from_pretrained(self.tmpdirname ) self.assertEqual(processor_slow.tokenizer.get_vocab() , tokenizer_slow.get_vocab() ) self.assertEqual(processor_fast.tokenizer.get_vocab() , tokenizer_fast.get_vocab() ) self.assertEqual(tokenizer_slow.get_vocab() , tokenizer_fast.get_vocab() ) self.assertIsInstance(processor_slow.tokenizer , A ) self.assertIsInstance(processor_fast.tokenizer , A ) self.assertEqual(processor_slow.image_processor.to_json_string() , image_processor.to_json_string() ) self.assertEqual(processor_fast.image_processor.to_json_string() , image_processor.to_json_string() ) self.assertIsInstance(processor_slow.image_processor , A ) self.assertIsInstance(processor_fast.image_processor , A ) def _A ( self : List[Any] ): _UpperCAmelCase : Tuple = AlignProcessor(tokenizer=self.get_tokenizer() , image_processor=self.get_image_processor() ) processor.save_pretrained(self.tmpdirname ) _UpperCAmelCase : Dict = self.get_tokenizer(bos_token="(BOS)" , eos_token="(EOS)" ) _UpperCAmelCase : Optional[int] = self.get_image_processor(do_normalize=A , padding_value=1.0 ) _UpperCAmelCase : Optional[int] = AlignProcessor.from_pretrained( self.tmpdirname , bos_token="(BOS)" , eos_token="(EOS)" , do_normalize=A , padding_value=1.0 ) self.assertEqual(processor.tokenizer.get_vocab() , tokenizer_add_kwargs.get_vocab() ) self.assertIsInstance(processor.tokenizer , A ) self.assertEqual(processor.image_processor.to_json_string() , image_processor_add_kwargs.to_json_string() ) self.assertIsInstance(processor.image_processor , A ) def _A ( self : List[str] ): _UpperCAmelCase : List[str] = self.get_image_processor() _UpperCAmelCase : Any = self.get_tokenizer() _UpperCAmelCase : str = AlignProcessor(tokenizer=A , image_processor=A ) _UpperCAmelCase : Optional[int] = self.prepare_image_inputs() _UpperCAmelCase : Dict = image_processor(A , return_tensors="np" ) _UpperCAmelCase : Optional[Any] = processor(images=A , return_tensors="np" ) for key in input_image_proc.keys(): self.assertAlmostEqual(input_image_proc[key].sum() , input_processor[key].sum() , delta=1E-2 ) def _A ( self : Tuple ): _UpperCAmelCase : List[Any] = self.get_image_processor() _UpperCAmelCase : Union[str, Any] = self.get_tokenizer() _UpperCAmelCase : Optional[int] = AlignProcessor(tokenizer=A , image_processor=A ) _UpperCAmelCase : List[str] = "lower newer" _UpperCAmelCase : Any = processor(text=A ) _UpperCAmelCase : Optional[Any] = tokenizer(A , padding="max_length" , max_length=64 ) for key in encoded_tok.keys(): self.assertListEqual(encoded_tok[key] , encoded_processor[key] ) def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.get_image_processor() _UpperCAmelCase : Any = self.get_tokenizer() _UpperCAmelCase : str = AlignProcessor(tokenizer=A , image_processor=A ) _UpperCAmelCase : Tuple = "lower newer" _UpperCAmelCase : Union[str, Any] = self.prepare_image_inputs() _UpperCAmelCase : Dict = processor(text=A , images=A ) self.assertListEqual(list(inputs.keys() ) , ["input_ids", "token_type_ids", "attention_mask", "pixel_values"] ) # test if it raises when no input is passed with pytest.raises(A ): processor() def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.get_image_processor() _UpperCAmelCase : Tuple = self.get_tokenizer() _UpperCAmelCase : str = AlignProcessor(tokenizer=A , image_processor=A ) _UpperCAmelCase : Optional[Any] = [[1, 4, 5, 8, 1, 0, 8], [3, 4, 3, 1, 1, 8, 9]] _UpperCAmelCase : str = processor.batch_decode(A ) _UpperCAmelCase : Optional[Any] = tokenizer.batch_decode(A ) self.assertListEqual(A , A ) def _A ( self : Tuple ): _UpperCAmelCase : int = self.get_image_processor() _UpperCAmelCase : Tuple = self.get_tokenizer() _UpperCAmelCase : Optional[Any] = AlignProcessor(tokenizer=A , image_processor=A ) _UpperCAmelCase : List[Any] = "lower newer" _UpperCAmelCase : int = self.prepare_image_inputs() _UpperCAmelCase : Optional[int] = processor(text=A , images=A ) self.assertListEqual(list(inputs.keys() ) , processor.model_input_names )
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'''simple docstring''' import math import unittest from transformers import BioGptConfig, is_torch_available from transformers.testing_utils import require_torch, slow, torch_device from ...generation.test_utils import GenerationTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import ( BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification, BioGptModel, BioGptTokenizer, ) from transformers.models.biogpt.modeling_biogpt import BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[Any] , A : Dict , A : Optional[Any]=13 , A : Optional[Any]=7 , A : Union[str, Any]=True , A : Optional[Any]=True , A : int=False , A : str=True , A : Optional[Any]=99 , A : Union[str, Any]=32 , A : int=5 , A : Tuple=4 , A : Union[str, Any]=37 , A : Dict="gelu" , A : Union[str, Any]=0.1 , A : str=0.1 , A : Union[str, Any]=512 , A : int=16 , A : List[str]=2 , A : Tuple=0.02 , A : int=3 , A : List[str]=4 , A : str=None , ): _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : int = seq_length _UpperCAmelCase : Union[str, Any] = is_training _UpperCAmelCase : Any = use_input_mask _UpperCAmelCase : Optional[Any] = use_token_type_ids _UpperCAmelCase : str = use_labels _UpperCAmelCase : Union[str, Any] = vocab_size _UpperCAmelCase : Tuple = hidden_size _UpperCAmelCase : Union[str, Any] = num_hidden_layers _UpperCAmelCase : Optional[Any] = num_attention_heads _UpperCAmelCase : Union[str, Any] = intermediate_size _UpperCAmelCase : Union[str, Any] = hidden_act _UpperCAmelCase : List[Any] = hidden_dropout_prob _UpperCAmelCase : List[Any] = attention_probs_dropout_prob _UpperCAmelCase : Optional[int] = max_position_embeddings _UpperCAmelCase : str = type_vocab_size _UpperCAmelCase : str = type_sequence_label_size _UpperCAmelCase : int = initializer_range _UpperCAmelCase : Optional[Any] = num_labels _UpperCAmelCase : List[str] = num_choices _UpperCAmelCase : List[str] = scope def _A ( self : Optional[int] ): _UpperCAmelCase : Dict = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) _UpperCAmelCase : Union[str, Any] = None if self.use_input_mask: _UpperCAmelCase : List[Any] = random_attention_mask([self.batch_size, self.seq_length] ) _UpperCAmelCase : Any = None if self.use_token_type_ids: _UpperCAmelCase : List[str] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = None _UpperCAmelCase : Optional[int] = None if self.use_labels: _UpperCAmelCase : Optional[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) _UpperCAmelCase : Tuple = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) _UpperCAmelCase : List[str] = ids_tensor([self.batch_size] , self.num_choices ) _UpperCAmelCase : List[Any] = self.get_config() return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def _A ( self : Dict ): return BioGptConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , is_decoder=A , initializer_range=self.initializer_range , ) def _A ( self : int , A : List[Any] , A : Any , A : int , A : Union[str, Any] , A : Dict , A : List[Any] , A : Dict ): _UpperCAmelCase : List[str] = BioGptModel(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A ) _UpperCAmelCase : int = model(A ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _A ( self : List[Any] , A : str , A : List[Any] , A : Dict , A : List[Any] , A : List[str] , A : Union[str, Any] , A : int , A : List[str] , A : Dict , ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A , labels=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _A ( self : List[Any] , A : str , A : str , A : str , A : Any , A : List[str] , *A : Optional[int] ): _UpperCAmelCase : str = BioGptModel(config=A ) model.to(A ) model.eval() # create attention mask _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) _UpperCAmelCase : Optional[int] = self.seq_length // 2 _UpperCAmelCase : List[Any] = 0 # first forward pass _UpperCAmelCase , _UpperCAmelCase : List[str] = model(A , attention_mask=A ).to_tuple() # create hypothetical next token and extent to next_input_ids _UpperCAmelCase : List[str] = ids_tensor((self.batch_size, 1) , config.vocab_size ) # change a random masked slice from input_ids _UpperCAmelCase : List[str] = ids_tensor((1,) , A ).item() + 1 _UpperCAmelCase : str = ids_tensor((self.batch_size, 1) , config.vocab_size ).squeeze(-1 ) _UpperCAmelCase : Any = random_other_next_tokens # append to next input_ids and attn_mask _UpperCAmelCase : List[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Optional[int] = torch.cat( [attn_mask, torch.ones((attn_mask.shape[0], 1) , dtype=torch.long , device=A )] , dim=1 , ) # get two different outputs _UpperCAmelCase : List[Any] = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Optional[Any] = model(A , past_key_values=A , attention_mask=A )["last_hidden_state"] # select random slice _UpperCAmelCase : Any = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Optional[Any] = output_from_no_past[:, -1, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, 0, random_slice_idx].detach() # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : int , A : Dict , A : str , A : Dict , A : Union[str, Any] , A : Any , *A : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = BioGptModel(config=A ).to(A ).eval() _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) # first forward pass _UpperCAmelCase : Union[str, Any] = model(A , attention_mask=A , use_cache=A ) _UpperCAmelCase , _UpperCAmelCase : Dict = outputs.to_tuple() # create hypothetical multiple next token and extent to next_input_ids _UpperCAmelCase : str = ids_tensor((self.batch_size, 3) , config.vocab_size ) _UpperCAmelCase : Any = ids_tensor((self.batch_size, 3) , 2 ) # append to next input_ids and _UpperCAmelCase : Optional[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Dict = torch.cat([attention_mask, next_attn_mask] , dim=-1 ) _UpperCAmelCase : Any = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Dict = model(A , attention_mask=A , past_key_values=A )[ "last_hidden_state" ] # select random slice _UpperCAmelCase : Dict = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Dict = output_from_no_past[:, -3:, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, :, random_slice_idx].detach() self.parent.assertTrue(output_from_past_slice.shape[1] == next_tokens.shape[1] ) # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : Optional[Any] , A : Tuple , A : List[str] , A : Tuple , A : Dict , A : List[Any] , *A : Tuple , A : List[str]=False ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(A ) model.to(A ) if gradient_checkpointing: model.gradient_checkpointing_enable() _UpperCAmelCase : Union[str, Any] = model(A , labels=A ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) result.loss.backward() def _A ( self : Optional[Any] , A : Any , *A : Optional[Any] ): _UpperCAmelCase : Tuple = BioGptModel(A ) _UpperCAmelCase : int = model.config.initializer_range / math.sqrt(2 * model.config.num_hidden_layers ) for key in model.state_dict().keys(): if "c_proj" in key and "weight" in key: self.parent.assertLessEqual(abs(torch.std(model.state_dict()[key] ) - model_std ) , 0.001 ) self.parent.assertLessEqual(abs(torch.mean(model.state_dict()[key] ) - 0.0 ) , 0.01 ) def _A ( self : Optional[int] , A : Dict , A : Tuple , A : Optional[int] , A : int , A : List[str] , *A : Dict ): _UpperCAmelCase : Any = self.num_labels _UpperCAmelCase : Any = BioGptForTokenClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def _A ( self : int ): _UpperCAmelCase : Dict = self.prepare_config_and_inputs() ( ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ) : List[str] = config_and_inputs _UpperCAmelCase : Optional[int] = {"input_ids": input_ids, "attention_mask": input_mask} return config, inputs_dict @require_torch class lowerCamelCase_ (snake_case__ , snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[str] = ( (BioGptModel, BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification) if is_torch_available() else () ) __UpperCamelCase: List[str] = (BioGptForCausalLM,) if is_torch_available() else () __UpperCamelCase: str = ( { "feature-extraction": BioGptModel, "text-classification": BioGptForSequenceClassification, "text-generation": BioGptForCausalLM, "token-classification": BioGptForTokenClassification, "zero-shot": BioGptForSequenceClassification, } if is_torch_available() else {} ) __UpperCamelCase: Union[str, Any] = False def _A ( self : Optional[Any] ): _UpperCAmelCase : List[Any] = BioGptModelTester(self ) _UpperCAmelCase : str = ConfigTester(self , config_class=A , hidden_size=37 ) def _A ( self : Union[str, Any] ): self.config_tester.run_common_tests() def _A ( self : Any ): _UpperCAmelCase : Any = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*A ) def _A ( self : Any ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() for type in ["absolute", "relative_key", "relative_key_query"]: _UpperCAmelCase : Tuple = type self.model_tester.create_and_check_model(*A ) def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_attention_mask_past(*A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : List[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_forward_and_backwards(*A , gradient_checkpointing=A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_past_large_inputs(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_weight_initialization(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_for_token_classification(*A ) @slow def _A ( self : List[str] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) _UpperCAmelCase : Tuple = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : str = "left" # Define PAD Token = EOS Token = 50256 _UpperCAmelCase : Any = tokenizer.eos_token _UpperCAmelCase : int = model.config.eos_token_id # use different length sentences to test batching _UpperCAmelCase : Any = [ "Hello, my dog is a little", "Today, I", ] _UpperCAmelCase : Tuple = tokenizer(A , return_tensors="pt" , padding=A ) _UpperCAmelCase : Optional[Any] = inputs["input_ids"].to(A ) _UpperCAmelCase : Any = model.generate( input_ids=A , attention_mask=inputs["attention_mask"].to(A ) , ) _UpperCAmelCase : int = tokenizer(sentences[0] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : List[Any] = model.generate(input_ids=A ) _UpperCAmelCase : List[Any] = inputs_non_padded.shape[-1] - inputs["attention_mask"][-1].long().sum().cpu().item() _UpperCAmelCase : int = tokenizer(sentences[1] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : int = model.generate(input_ids=A , max_length=model.config.max_length - num_paddings ) _UpperCAmelCase : Dict = tokenizer.batch_decode(A , skip_special_tokens=A ) _UpperCAmelCase : Any = tokenizer.decode(output_non_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : Optional[int] = tokenizer.decode(output_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : str = [ "Hello, my dog is a little bit bigger than a little bit.", "Today, I have a good idea of how to use the information", ] self.assertListEqual(A , A ) self.assertListEqual(A , [non_padded_sentence, padded_sentence] ) @slow def _A ( self : str ): for model_name in BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: _UpperCAmelCase : Optional[Any] = BioGptModel.from_pretrained(A ) self.assertIsNotNone(A ) def _A ( self : List[str] ): _UpperCAmelCase , _UpperCAmelCase : int = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : str = 3 _UpperCAmelCase : List[str] = input_dict["input_ids"] _UpperCAmelCase : Dict = input_ids.ne(1 ).to(A ) _UpperCAmelCase : List[Any] = ids_tensor([self.model_tester.batch_size] , self.model_tester.type_sequence_label_size ) _UpperCAmelCase : List[str] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : List[str] = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) def _A ( self : int ): _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : int = 3 _UpperCAmelCase : Dict = "multi_label_classification" _UpperCAmelCase : Optional[Any] = input_dict["input_ids"] _UpperCAmelCase : Optional[int] = input_ids.ne(1 ).to(A ) _UpperCAmelCase : Tuple = ids_tensor( [self.model_tester.batch_size, config.num_labels] , self.model_tester.type_sequence_label_size ).to(torch.float ) _UpperCAmelCase : Optional[Any] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' @slow def _A ( self : List[Any] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : List[str] = torch.tensor([[2, 4805, 9, 656, 21]] ) _UpperCAmelCase : List[Any] = model(A )[0] _UpperCAmelCase : int = 42384 _UpperCAmelCase : int = torch.Size((1, 5, vocab_size) ) self.assertEqual(output.shape , A ) _UpperCAmelCase : Any = torch.tensor( [[[-9.5_236, -9.8_918, 10.4_557], [-11.0_469, -9.6_423, 8.1_022], [-8.8_664, -7.8_826, 5.5_325]]] ) self.assertTrue(torch.allclose(output[:, :3, :3] , A , atol=1E-4 ) ) @slow def _A ( self : Any ): _UpperCAmelCase : str = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : Tuple = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) torch.manual_seed(0 ) _UpperCAmelCase : Optional[Any] = tokenizer("COVID-19 is" , return_tensors="pt" ).to(A ) _UpperCAmelCase : Dict = model.generate( **A , min_length=100 , max_length=1024 , num_beams=5 , early_stopping=A , ) _UpperCAmelCase : Optional[Any] = tokenizer.decode(output_ids[0] , skip_special_tokens=A ) _UpperCAmelCase : List[str] = ( "COVID-19 is a global pandemic caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the" " causative agent of coronavirus disease 2019 (COVID-19), which has spread to more than 200 countries and" " territories, including the United States (US), Canada, Australia, New Zealand, the United Kingdom (UK)," " and the United States of America (USA), as of March 11, 2020, with more than 800,000 confirmed cases and" " more than 800,000 deaths." ) self.assertEqual(A , A )
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'''simple docstring''' import logging import numpy as np import pytest from scipy.linalg import eigh logging.basicConfig(level=logging.INFO, format="""%(message)s""") def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray ) -> np.ndarray: """simple docstring""" return input_array.reshape((input_array.size, 1) ) def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray , _UpperCAmelCase : int ) -> np.ndarray: """simple docstring""" _UpperCAmelCase : Dict = np.nan for i in range(_UpperCAmelCase ): _UpperCAmelCase : Union[str, Any] = features[:, labels == i] _UpperCAmelCase : Dict = data.mean(1 ) # Centralize the data of class i _UpperCAmelCase : Any = data - column_reshape(_UpperCAmelCase ) if i > 0: # If covariance_sum is not None covariance_sum += np.dot(_UpperCAmelCase , centered_data.T ) else: # If covariance_sum is np.nan (i.e. first loop) _UpperCAmelCase : Tuple = np.dot(_UpperCAmelCase , centered_data.T ) return covariance_sum / features.shape[1] def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray , _UpperCAmelCase : int ) -> np.ndarray: """simple docstring""" _UpperCAmelCase : Any = features.mean(1 ) _UpperCAmelCase : Tuple = np.nan for i in range(_UpperCAmelCase ): _UpperCAmelCase : int = features[:, labels == i] _UpperCAmelCase : Dict = data.shape[1] _UpperCAmelCase : Dict = data.mean(1 ) if i > 0: # If covariance_sum is not None covariance_sum += device_data * np.dot( column_reshape(_UpperCAmelCase ) - column_reshape(_UpperCAmelCase ) , (column_reshape(_UpperCAmelCase ) - column_reshape(_UpperCAmelCase )).T , ) else: # If covariance_sum is np.nan (i.e. first loop) _UpperCAmelCase : int = device_data * np.dot( column_reshape(_UpperCAmelCase ) - column_reshape(_UpperCAmelCase ) , (column_reshape(_UpperCAmelCase ) - column_reshape(_UpperCAmelCase )).T , ) return covariance_sum / features.shape[1] def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : int ) -> np.ndarray: """simple docstring""" if features.any(): _UpperCAmelCase : Any = features.mean(1 ) # Center the dataset _UpperCAmelCase : Tuple = features - np.reshape(_UpperCAmelCase , (data_mean.size, 1) ) _UpperCAmelCase : List[str] = np.dot(_UpperCAmelCase , centered_data.T ) / features.shape[1] _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = np.linalg.eigh(_UpperCAmelCase ) # Take all the columns in the reverse order (-1), and then takes only the first _UpperCAmelCase : Tuple = eigenvectors[:, ::-1][:, 0:dimensions] # Project the database on the new space _UpperCAmelCase : List[Any] = np.dot(filtered_eigenvectors.T , _UpperCAmelCase ) logging.info("Principal Component Analysis computed" ) return projected_data else: logging.basicConfig(level=logging.ERROR , format="%(message)s" , force=_UpperCAmelCase ) logging.error("Dataset empty" ) raise AssertionError def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray , _UpperCAmelCase : int , _UpperCAmelCase : int ) -> np.ndarray: """simple docstring""" assert classes > dimensions # Check if features have been already loaded if features.any: _UpperCAmelCase , _UpperCAmelCase : str = eigh( covariance_between_classes(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) , covariance_within_classes(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) , ) _UpperCAmelCase : Any = eigenvectors[:, ::-1][:, :dimensions] _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : List[Any] = np.linalg.svd(_UpperCAmelCase ) _UpperCAmelCase : Union[str, Any] = svd_matrix[:, 0:dimensions] _UpperCAmelCase : List[str] = np.dot(filtered_svd_matrix.T , _UpperCAmelCase ) logging.info("Linear Discriminant Analysis computed" ) return projected_data else: logging.basicConfig(level=logging.ERROR , format="%(message)s" , force=_UpperCAmelCase ) logging.error("Dataset empty" ) raise AssertionError def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : Dict = np.array([[1, 2, 3, 4, 5], [2, 3, 4, 5, 6], [3, 4, 5, 6, 7]] ) _UpperCAmelCase : Dict = np.array([0, 0, 0, 1, 1] ) _UpperCAmelCase : Tuple = 2 _UpperCAmelCase : int = 2 # Assert that the function raises an AssertionError if dimensions > classes with pytest.raises(_UpperCAmelCase ) as error_info: _UpperCAmelCase : Any = linear_discriminant_analysis( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) if isinstance(_UpperCAmelCase , np.ndarray ): raise AssertionError( "Did not raise AssertionError for dimensions > classes" ) assert error_info.type is AssertionError def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : Optional[int] = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]] ) _UpperCAmelCase : Optional[int] = 2 _UpperCAmelCase : List[Any] = np.array([[6.9_2_8_2_0_3_2_3, 8.6_6_0_2_5_4_0_4, 1_0.3_9_2_3_0_4_8_5], [3.0, 3.0, 3.0]] ) with pytest.raises(_UpperCAmelCase ) as error_info: _UpperCAmelCase : Optional[Any] = principal_component_analysis(_UpperCAmelCase , _UpperCAmelCase ) if not np.allclose(_UpperCAmelCase , _UpperCAmelCase ): raise AssertionError assert error_info.type is AssertionError if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' __SCREAMING_SNAKE_CASE : Dict = 8.3_1_4_4_6_2 # Unit - J mol-1 K-1 def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or volume < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / volume def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or pressure < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / pressure if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' from typing import Dict, List, Optional, Union import numpy as np from ...image_processing_utils import BaseImageProcessor, BatchFeature, get_size_dict from ...image_transforms import ( center_crop, get_resize_output_image_size, normalize, rescale, resize, to_channel_dimension_format, ) from ...image_utils import ( IMAGENET_DEFAULT_MEAN, IMAGENET_DEFAULT_STD, ChannelDimension, ImageInput, PILImageResampling, make_list_of_images, to_numpy_array, valid_images, ) from ...utils import TensorType, is_vision_available, logging if is_vision_available(): import PIL __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = ["pixel_values"] def __init__( self : Tuple , A : bool = True , A : Dict[str, int] = None , A : int = 0.9 , A : PILImageResampling = PILImageResampling.BICUBIC , A : bool = True , A : Dict[str, int] = None , A : Union[int, float] = 1 / 255 , A : bool = True , A : bool = True , A : Optional[Union[float, List[float]]] = None , A : Optional[Union[float, List[float]]] = None , **A : Dict , ): super().__init__(**A ) _UpperCAmelCase : Tuple = size if size is not None else {"shortest_edge": 224} _UpperCAmelCase : List[Any] = get_size_dict(A , default_to_square=A ) _UpperCAmelCase : Any = crop_size if crop_size is not None else {"height": 224, "width": 224} _UpperCAmelCase : Tuple = get_size_dict(A , param_name="crop_size" ) _UpperCAmelCase : Dict = do_resize _UpperCAmelCase : List[str] = size _UpperCAmelCase : Optional[Any] = crop_pct _UpperCAmelCase : Union[str, Any] = resample _UpperCAmelCase : List[str] = do_center_crop _UpperCAmelCase : Any = crop_size _UpperCAmelCase : Tuple = do_rescale _UpperCAmelCase : Union[str, Any] = rescale_factor _UpperCAmelCase : Union[str, Any] = do_normalize _UpperCAmelCase : Optional[Any] = image_mean if image_mean is not None else IMAGENET_DEFAULT_MEAN _UpperCAmelCase : Optional[int] = image_std if image_std is not None else IMAGENET_DEFAULT_STD def _A ( self : Optional[Any] , A : np.ndarray , A : Dict[str, int] , A : Optional[float] = None , A : PILImageResampling = PILImageResampling.BICUBIC , A : Optional[Union[str, ChannelDimension]] = None , **A : Any , ): _UpperCAmelCase : List[str] = get_size_dict(A , default_to_square=A ) if "shortest_edge" not in size and ("height" not in size or "width" not in size): raise ValueError(F"""size must contain 'height' and 'width' or 'shortest_edge' as keys. Got {size.keys()}""" ) if crop_pct is not None: if "shortest_edge" in size: _UpperCAmelCase : Optional[int] = int(size["shortest_edge"] / crop_pct ) elif "height" in size and "width" in size: if size["height"] == size["width"]: _UpperCAmelCase : Any = int(size["height"] / crop_pct ) else: _UpperCAmelCase : List[Any] = (int(size["height"] / crop_pct ), int(size["width"] / crop_pct )) else: raise ValueError("Invalid size for resize: {}".format(A ) ) _UpperCAmelCase : Optional[int] = get_resize_output_image_size(A , size=A , default_to_square=A ) else: if "shortest_edge" in size: _UpperCAmelCase : Dict = get_resize_output_image_size(A , size=size["shortest_edge"] , default_to_square=A ) elif "height" in size and "width" in size: _UpperCAmelCase : List[str] = (size["height"], size["width"]) else: raise ValueError("Invalid size for resize: {}".format(A ) ) return resize(A , size=A , resample=A , data_format=A , **A ) def _A ( self : Dict , A : np.ndarray , A : Dict[str, int] , A : Optional[Union[str, ChannelDimension]] = None , **A : List[Any] , ): _UpperCAmelCase : Tuple = get_size_dict(A ) if "height" not in size or "width" not in size: raise ValueError(F"""size must contain 'height' and 'width' as keys. Got {size.keys()}""" ) return center_crop(A , size=(size["height"], size["width"]) , data_format=A , **A ) def _A ( self : List[str] , A : np.ndarray , A : Union[int, float] , A : Optional[Union[str, ChannelDimension]] = None , **A : Any , ): return rescale(A , scale=A , data_format=A , **A ) def _A ( self : Optional[int] , A : np.ndarray , A : Union[float, List[float]] , A : Union[float, List[float]] , A : Optional[Union[str, ChannelDimension]] = None , **A : Optional[int] , ): return normalize(A , mean=A , std=A , data_format=A , **A ) def _A ( self : int , A : ImageInput , A : bool = None , A : Dict[str, int] = None , A : int = None , A : PILImageResampling = None , A : bool = None , A : Dict[str, int] = None , A : bool = None , A : float = None , A : bool = None , A : Optional[Union[float, List[float]]] = None , A : Optional[Union[float, List[float]]] = None , A : Optional[Union[str, TensorType]] = None , A : ChannelDimension = ChannelDimension.FIRST , **A : Optional[Any] , ): _UpperCAmelCase : Dict = do_resize if do_resize is not None else self.do_resize _UpperCAmelCase : List[Any] = crop_pct if crop_pct is not None else self.crop_pct _UpperCAmelCase : Dict = resample if resample is not None else self.resample _UpperCAmelCase : Dict = do_center_crop if do_center_crop is not None else self.do_center_crop _UpperCAmelCase : Tuple = do_rescale if do_rescale is not None else self.do_rescale _UpperCAmelCase : List[Any] = rescale_factor if rescale_factor is not None else self.rescale_factor _UpperCAmelCase : List[Any] = do_normalize if do_normalize is not None else self.do_normalize _UpperCAmelCase : Union[str, Any] = image_mean if image_mean is not None else self.image_mean _UpperCAmelCase : Tuple = image_std if image_std is not None else self.image_std _UpperCAmelCase : List[str] = size if size is not None else self.size _UpperCAmelCase : str = get_size_dict(A , default_to_square=A ) _UpperCAmelCase : Dict = crop_size if crop_size is not None else self.crop_size _UpperCAmelCase : List[Any] = get_size_dict(A , param_name="crop_size" ) _UpperCAmelCase : List[str] = make_list_of_images(A ) if not valid_images(A ): raise ValueError( "Invalid image type. Must be of type PIL.Image.Image, numpy.ndarray, " "torch.Tensor, tf.Tensor or jax.ndarray." ) if do_resize and size is None or resample is None: raise ValueError("Size and resample must be specified if do_resize is True." ) if do_center_crop and crop_pct is None: raise ValueError("Crop_pct must be specified if do_center_crop is True." ) if do_rescale and rescale_factor is None: raise ValueError("Rescale factor must be specified if do_rescale is True." ) if do_normalize and (image_mean is None or image_std is None): raise ValueError("Image mean and std must be specified if do_normalize is True." ) # All transformations expect numpy arrays. _UpperCAmelCase : Optional[int] = [to_numpy_array(A ) for image in images] if do_resize: _UpperCAmelCase : Optional[int] = [self.resize(image=A , size=A , crop_pct=A , resample=A ) for image in images] if do_center_crop: _UpperCAmelCase : str = [self.center_crop(image=A , size=A ) for image in images] if do_rescale: _UpperCAmelCase : List[str] = [self.rescale(image=A , scale=A ) for image in images] if do_normalize: _UpperCAmelCase : Union[str, Any] = [self.normalize(image=A , mean=A , std=A ) for image in images] _UpperCAmelCase : Union[str, Any] = [to_channel_dimension_format(A , A ) for image in images] _UpperCAmelCase : str = {"pixel_values": images} return BatchFeature(data=A , tensor_type=A )
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'''simple docstring''' import os from shutil import copyfile from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import is_sentencepiece_available, logging if is_sentencepiece_available(): from .tokenization_pegasus import PegasusTokenizer else: __SCREAMING_SNAKE_CASE : Optional[Any] = None __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = """▁""" __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """spiece.model""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : int = { """vocab_file""": {"""google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/spiece.model"""}, """tokenizer_file""": { """google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/tokenizer.json""" }, } __SCREAMING_SNAKE_CASE : str = { """google/pegasus-xsum""": 512, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = VOCAB_FILES_NAMES __UpperCamelCase: Dict = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: List[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Optional[int] = PegasusTokenizer __UpperCamelCase: Optional[Any] = ["input_ids", "attention_mask"] def __init__( self : Dict , A : List[str]=None , A : Union[str, Any]=None , A : Optional[int]="<pad>" , A : Tuple="</s>" , A : Union[str, Any]="<unk>" , A : Union[str, Any]="<mask_2>" , A : Dict="<mask_1>" , A : Union[str, Any]=None , A : int=103 , **A : Optional[Any] , ): _UpperCAmelCase : Dict = offset if additional_special_tokens is not None: if not isinstance(A , A ): raise TypeError( F"""additional_special_tokens should be of type {type(A )}, but is""" F""" {type(A )}""" ) _UpperCAmelCase : Optional[int] = ( ([mask_token_sent] + additional_special_tokens) if mask_token_sent not in additional_special_tokens and mask_token_sent is not None else additional_special_tokens ) # fill additional tokens with ..., <unk_token_102> in case not all additional tokens are already taken additional_special_tokens_extended += [ F"""<unk_{i}>""" for i in range(len(A ) , self.offset - 1 ) ] if len(set(A ) ) != len(A ): raise ValueError( "Please make sure that the provided additional_special_tokens do not contain an incorrectly" F""" shifted list of <unk_x> tokens. Found {additional_special_tokens_extended}.""" ) _UpperCAmelCase : Any = additional_special_tokens_extended else: _UpperCAmelCase : Dict = [mask_token_sent] if mask_token_sent is not None else [] additional_special_tokens += [F"""<unk_{i}>""" for i in range(2 , self.offset )] super().__init__( A , tokenizer_file=A , pad_token=A , eos_token=A , unk_token=A , mask_token=A , mask_token_sent=A , offset=A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[Any] = vocab_file _UpperCAmelCase : Optional[Any] = False if not self.vocab_file else True def _A ( self : List[str] , A : Optional[Any] ): _UpperCAmelCase : Any = set(self.all_special_ids ) # call it once instead of inside list comp all_special_ids.remove(self.unk_token_id ) # <unk> is only sometimes special if all_special_ids != set(range(len(self.additional_special_tokens ) + 3 ) ): raise ValueError( "There should be 3 special tokens: mask_token, pad_token, and eos_token +" F""" {len(self.additional_special_tokens )} additional_special_tokens, but got {all_special_ids}""" ) return [1 if x in all_special_ids else 0 for x in seq] def _A ( self : str , A : List , A : Optional[List] = None , A : bool = False ): if already_has_special_tokens: return self._special_token_mask(A ) elif token_ids_a is None: return self._special_token_mask(A ) + [1] else: return self._special_token_mask(token_ids_a + token_ids_a ) + [1] def _A ( self : Optional[int] , A : Union[str, Any] , A : int=None ): if token_ids_a is None: return token_ids_a + [self.eos_token_id] # We don't expect to process pairs, but leave the pair logic for API consistency return token_ids_a + token_ids_a + [self.eos_token_id] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): if not self.can_save_slow_tokenizer: raise ValueError( "Your fast tokenizer does not have the necessary information to save the vocabulary for a slow " "tokenizer." ) if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : List[Any] = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ): copyfile(self.vocab_file , A ) return (out_vocab_file,)
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1
'''simple docstring''' from __future__ import annotations class lowerCamelCase_ : '''simple docstring''' def __init__( self : Union[str, Any] , A : list[list[int]] ): _UpperCAmelCase : Union[str, Any] = TypeError( "Matrices must be formed from a list of zero or more lists containing at " "least one and the same number of values, each of which must be of type " "int or float." ) if len(A ) != 0: _UpperCAmelCase : List[str] = len(rows[0] ) if cols == 0: raise error for row in rows: if len(A ) != cols: raise error for value in row: if not isinstance(A , (int, float) ): raise error _UpperCAmelCase : Tuple = rows else: _UpperCAmelCase : Dict = [] def _A ( self : Union[str, Any] ): return [[row[i] for row in self.rows] for i in range(len(self.rows[0] ) )] @property def _A ( self : Union[str, Any] ): return len(self.rows ) @property def _A ( self : Tuple ): return len(self.rows[0] ) @property def _A ( self : Optional[int] ): return (self.num_rows, self.num_columns) @property def _A ( self : str ): return self.order[0] == self.order[1] def _A ( self : Optional[int] ): _UpperCAmelCase : Any = [ [0 if column_num != row_num else 1 for column_num in range(self.num_rows )] for row_num in range(self.num_rows ) ] return Matrix(A ) def _A ( self : int ): if not self.is_square: return 0 if self.order == (0, 0): return 1 if self.order == (1, 1): return int(self.rows[0][0] ) if self.order == (2, 2): return int( (self.rows[0][0] * self.rows[1][1]) - (self.rows[0][1] * self.rows[1][0]) ) else: return sum( self.rows[0][column] * self.cofactors().rows[0][column] for column in range(self.num_columns ) ) def _A ( self : Any ): return bool(self.determinant() ) def _A ( self : Dict , A : int , A : int ): _UpperCAmelCase : str = [ [ self.rows[other_row][other_column] for other_column in range(self.num_columns ) if other_column != column ] for other_row in range(self.num_rows ) if other_row != row ] return Matrix(A ).determinant() def _A ( self : Dict , A : int , A : int ): if (row + column) % 2 == 0: return self.get_minor(A , A ) return -1 * self.get_minor(A , A ) def _A ( self : List[str] ): return Matrix( [ [self.get_minor(A , A ) for column in range(self.num_columns )] for row in range(self.num_rows ) ] ) def _A ( self : Union[str, Any] ): return Matrix( [ [ self.minors().rows[row][column] if (row + column) % 2 == 0 else self.minors().rows[row][column] * -1 for column in range(self.minors().num_columns ) ] for row in range(self.minors().num_rows ) ] ) def _A ( self : List[str] ): _UpperCAmelCase : Dict = [ [self.cofactors().rows[column][row] for column in range(self.num_columns )] for row in range(self.num_rows ) ] return Matrix(A ) def _A ( self : str ): _UpperCAmelCase : Optional[int] = self.determinant() if not determinant: raise TypeError("Only matrices with a non-zero determinant have an inverse" ) return self.adjugate() * (1 / determinant) def __repr__( self : Optional[Any] ): return str(self.rows ) def __str__( self : int ): if self.num_rows == 0: return "[]" if self.num_rows == 1: return "[[" + ". ".join(str(self.rows[0] ) ) + "]]" return ( "[" + "\n ".join( [ "[" + ". ".join([str(A ) for value in row] ) + ".]" for row in self.rows ] ) + "]" ) def _A ( self : Dict , A : list[int] , A : int | None = None ): _UpperCAmelCase : int = TypeError("Row must be a list containing all ints and/or floats" ) if not isinstance(A , A ): raise type_error for value in row: if not isinstance(A , (int, float) ): raise type_error if len(A ) != self.num_columns: raise ValueError( "Row must be equal in length to the other rows in the matrix" ) if position is None: self.rows.append(A ) else: _UpperCAmelCase : List[Any] = self.rows[0:position] + [row] + self.rows[position:] def _A ( self : str , A : list[int] , A : int | None = None ): _UpperCAmelCase : str = TypeError( "Column must be a list containing all ints and/or floats" ) if not isinstance(A , A ): raise type_error for value in column: if not isinstance(A , (int, float) ): raise type_error if len(A ) != self.num_rows: raise ValueError( "Column must be equal in length to the other columns in the matrix" ) if position is None: _UpperCAmelCase : Tuple = [self.rows[i] + [column[i]] for i in range(self.num_rows )] else: _UpperCAmelCase : str = [ self.rows[i][0:position] + [column[i]] + self.rows[i][position:] for i in range(self.num_rows ) ] def __eq__( self : str , A : object ): if not isinstance(A , A ): return NotImplemented return self.rows == other.rows def __ne__( self : Union[str, Any] , A : object ): return not self == other def __neg__( self : Union[str, Any] ): return self * -1 def __add__( self : str , A : Matrix ): if self.order != other.order: raise ValueError("Addition requires matrices of the same order" ) return Matrix( [ [self.rows[i][j] + other.rows[i][j] for j in range(self.num_columns )] for i in range(self.num_rows ) ] ) def __sub__( self : List[str] , A : Matrix ): if self.order != other.order: raise ValueError("Subtraction requires matrices of the same order" ) return Matrix( [ [self.rows[i][j] - other.rows[i][j] for j in range(self.num_columns )] for i in range(self.num_rows ) ] ) def __mul__( self : Optional[Any] , A : Matrix | int | float ): if isinstance(A , (int, float) ): return Matrix( [[int(element * other ) for element in row] for row in self.rows] ) elif isinstance(A , A ): if self.num_columns != other.num_rows: raise ValueError( "The number of columns in the first matrix must " "be equal to the number of rows in the second" ) return Matrix( [ [Matrix.dot_product(A , A ) for column in other.columns()] for row in self.rows ] ) else: raise TypeError( "A Matrix can only be multiplied by an int, float, or another matrix" ) def __pow__( self : List[str] , A : int ): if not isinstance(A , A ): raise TypeError("A Matrix can only be raised to the power of an int" ) if not self.is_square: raise ValueError("Only square matrices can be raised to a power" ) if other == 0: return self.identity() if other < 0: if self.is_invertable(): return self.inverse() ** (-other) raise ValueError( "Only invertable matrices can be raised to a negative power" ) _UpperCAmelCase : Union[str, Any] = self for _ in range(other - 1 ): result *= self return result @classmethod def _A ( cls : Optional[Any] , A : list[int] , A : list[int] ): return sum(row[i] * column[i] for i in range(len(A ) ) ) if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' import shutil import tempfile import unittest from transformers import ( SPIECE_UNDERLINE, AddedToken, BatchEncoding, NllbTokenizer, NllbTokenizerFast, is_torch_available, ) from transformers.testing_utils import ( get_tests_dir, nested_simplify, require_sentencepiece, require_tokenizers, require_torch, ) from ...test_tokenization_common import TokenizerTesterMixin __SCREAMING_SNAKE_CASE : Union[str, Any] = get_tests_dir("""fixtures/test_sentencepiece.model""") if is_torch_available(): from transformers.models.mam_aaa.modeling_mam_aaa import shift_tokens_right __SCREAMING_SNAKE_CASE : Optional[int] = 256_047 __SCREAMING_SNAKE_CASE : Optional[int] = 256_145 @require_sentencepiece @require_tokenizers class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: int = NllbTokenizer __UpperCamelCase: Tuple = NllbTokenizerFast __UpperCamelCase: Union[str, Any] = True __UpperCamelCase: Dict = True __UpperCamelCase: Optional[Any] = {} def _A ( self : Union[str, Any] ): super().setUp() # We have a SentencePiece fixture for testing _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) tokenizer.save_pretrained(self.tmpdirname ) def _A ( self : Dict ): _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) _UpperCAmelCase : Optional[Any] = tokenizer.tokenize("This is a test" ) self.assertListEqual(A , ["▁This", "▁is", "▁a", "▁t", "est"] ) self.assertListEqual( tokenizer.convert_tokens_to_ids(A ) , [value + tokenizer.fairseq_offset for value in [285, 46, 10, 170, 382]] , ) _UpperCAmelCase : List[str] = tokenizer.tokenize("I was born in 92000, and this is falsé." ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "9", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "é", ".", ] , ) _UpperCAmelCase : Optional[Any] = tokenizer.convert_tokens_to_ids(A ) self.assertListEqual( A , [ value + tokenizer.fairseq_offset for value in [8, 21, 84, 55, 24, 19, 7, 2, 602, 347, 347, 347, 3, 12, 66, 46, 72, 80, 6, 2, 4] ] , ) _UpperCAmelCase : Union[str, Any] = tokenizer.convert_ids_to_tokens(A ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "<unk>", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "<unk>", ".", ] , ) def _A ( self : List[Any] ): _UpperCAmelCase : Any = (self.rust_tokenizer_class, "hf-internal-testing/tiny-random-nllb", {}) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : str = self.tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Dict = tokenizer_r.save_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it save with the same files + the tokenizer.json file for the fast one self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) _UpperCAmelCase : Optional[int] = tuple(f for f in tokenizer_r_files if "tokenizer.json" not in f ) self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : List[str] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=True _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() _UpperCAmelCase : str = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : str = tokenizer_p.save_pretrained(A ) # Checks it save with the same files self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : Optional[int] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=False _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Optional[int] = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it saved the tokenizer.json file self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Optional[int] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) @require_torch def _A ( self : Tuple ): if not self.test_seqaseq: return _UpperCAmelCase : Union[str, Any] = self.get_tokenizers() for tokenizer in tokenizers: with self.subTest(F"""{tokenizer.__class__.__name__}""" ): # Longer text that will definitely require truncation. _UpperCAmelCase : Optional[Any] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for" " Syria is that 'there is no military solution' to the nearly five-year conflict and more weapons" " will only worsen the violence and misery for millions of people.", ] _UpperCAmelCase : Optional[Any] = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al" " Rusiei pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi" " că noi arme nu vor face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] try: _UpperCAmelCase : Optional[int] = tokenizer.prepare_seqaseq_batch( src_texts=A , tgt_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="ron_Latn" , ) except NotImplementedError: return self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 10 ) # max_target_length will default to max_length if not specified _UpperCAmelCase : Tuple = tokenizer.prepare_seqaseq_batch( A , tgt_texts=A , max_length=3 , return_tensors="pt" ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 3 ) _UpperCAmelCase : Union[str, Any] = tokenizer.prepare_seqaseq_batch( src_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" ) self.assertEqual(batch_encoder_only.input_ids.shape[1] , 3 ) self.assertEqual(batch_encoder_only.attention_mask.shape[1] , 3 ) self.assertNotIn("decoder_input_ids" , A ) @unittest.skip("Unfortunately way too slow to build a BPE with SentencePiece." ) def _A ( self : List[Any] ): pass def _A ( self : Union[str, Any] ): for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Any = [AddedToken("<special>" , lstrip=A )] _UpperCAmelCase : List[Any] = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Dict = tokenizer_r.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_r.encode("<special>" , add_special_tokens=A )[0] self.assertTrue(special_token_id in r_output ) if self.test_slow_tokenizer: _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[int] = self.tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Union[str, Any] = tokenizer_p.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_cr.encode("Hey this is a <special> token" ) self.assertEqual(A , A ) self.assertEqual(A , A ) self.assertTrue(special_token_id in p_output ) self.assertTrue(special_token_id in cr_output ) @require_torch @require_sentencepiece @require_tokenizers class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = "facebook/nllb-200-distilled-600M" __UpperCamelCase: Optional[int] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for Syria is that \"there is no military solution\" to the nearly five-year conflict and more weapons will only worsen the violence and misery for millions of people.", ] __UpperCamelCase: str = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al Rusiei" " pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi că noi arme nu vor" " face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] __UpperCamelCase: str = [ 2_5_6_0_4_7, 1_6_2_9_7, 1_3_4_4_0_8, 8_1_6_5, 2_4_8_0_6_6, 1_4_7_3_4, 9_5_0, 1_1_3_5, 1_0_5_7_2_1, 3_5_7_3, 8_3, 2_7_3_5_2, 1_0_8, 4_9_4_8_6, 2, ] @classmethod def _A ( cls : int ): _UpperCAmelCase : NllbTokenizer = NllbTokenizer.from_pretrained( cls.checkpoint_name , src_lang="eng_Latn" , tgt_lang="ron_Latn" ) _UpperCAmelCase : Union[str, Any] = 1 return cls def _A ( self : Any ): self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Arab"] , 256001 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Latn"] , 256002 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["fra_Latn"] , 256057 ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[int] = self.tokenizer.batch_encode_plus(self.src_text ).input_ids[0] self.assertListEqual(self.expected_src_tokens , A ) def _A ( self : Tuple ): self.assertIn(A , self.tokenizer.all_special_ids ) # fmt: off _UpperCAmelCase : List[Any] = [RO_CODE, 4254, 98068, 112923, 39072, 3909, 713, 102767, 26, 17314, 35642, 14683, 33118, 2022, 66987, 2, 256047] # fmt: on _UpperCAmelCase : Tuple = self.tokenizer.decode(A , skip_special_tokens=A ) _UpperCAmelCase : Optional[Any] = self.tokenizer.decode(generated_ids[1:] , skip_special_tokens=A ) self.assertEqual(A , A ) self.assertNotIn(self.tokenizer.eos_token , A ) def _A ( self : Optional[int] ): _UpperCAmelCase : List[Any] = ["this is gunna be a long sentence " * 20] assert isinstance(src_text[0] , A ) _UpperCAmelCase : Dict = 10 _UpperCAmelCase : Tuple = self.tokenizer(A , max_length=A , truncation=A ).input_ids[0] self.assertEqual(ids[-1] , 2 ) self.assertEqual(ids[0] , A ) self.assertEqual(len(A ) , A ) def _A ( self : Dict ): self.assertListEqual(self.tokenizer.convert_tokens_to_ids(["<mask>", "ar_AR"] ) , [256203, 3] ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = tempfile.mkdtemp() _UpperCAmelCase : str = self.tokenizer.fairseq_tokens_to_ids self.tokenizer.save_pretrained(A ) _UpperCAmelCase : Tuple = NllbTokenizer.from_pretrained(A ) self.assertDictEqual(new_tok.fairseq_tokens_to_ids , A ) @require_torch def _A ( self : Dict ): _UpperCAmelCase : List[str] = self.tokenizer( self.src_text , text_target=self.tgt_text , padding=A , truncation=A , max_length=len(self.expected_src_tokens ) , return_tensors="pt" , ) _UpperCAmelCase : Tuple = shift_tokens_right( batch["labels"] , self.tokenizer.pad_token_id , self.tokenizer.lang_code_to_id["ron_Latn"] ) self.assertIsInstance(A , A ) self.assertEqual((2, 15) , batch.input_ids.shape ) self.assertEqual((2, 15) , batch.attention_mask.shape ) _UpperCAmelCase : Dict = batch.input_ids.tolist()[0] self.assertListEqual(self.expected_src_tokens , A ) self.assertEqual(A , batch.decoder_input_ids[0, 0] ) # EOS # Test that special tokens are reset self.assertEqual(self.tokenizer.prefix_tokens , [EN_CODE] ) self.assertEqual(self.tokenizer.suffix_tokens , [self.tokenizer.eos_token_id] ) def _A ( self : str ): _UpperCAmelCase : Optional[Any] = self.tokenizer(self.src_text , padding=A , truncation=A , max_length=3 , return_tensors="pt" ) _UpperCAmelCase : Dict = self.tokenizer( text_target=self.tgt_text , padding=A , truncation=A , max_length=10 , return_tensors="pt" ) _UpperCAmelCase : List[Any] = targets["input_ids"] _UpperCAmelCase : Union[str, Any] = shift_tokens_right( A , self.tokenizer.pad_token_id , decoder_start_token_id=self.tokenizer.lang_code_to_id[self.tokenizer.tgt_lang] , ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.decoder_input_ids.shape[1] , 10 ) @require_torch def _A ( self : List[Any] ): _UpperCAmelCase : str = self.tokenizer._build_translation_inputs( "A test" , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( nested_simplify(A ) , { # A, test, EOS, en_XX "input_ids": [[256047, 70, 7356, 2]], "attention_mask": [[1, 1, 1, 1]], # ar_AR "forced_bos_token_id": 256057, } , ) @require_torch def _A ( self : Any ): _UpperCAmelCase : Dict = True _UpperCAmelCase : Any = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2, 256047] ) _UpperCAmelCase : Optional[int] = False _UpperCAmelCase : str = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [256047, 16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2] )
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'''simple docstring''' from ..utils import DummyObject, requires_backends class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["sentencepiece"] def __init__( self : Any , *A : Any , **A : Optional[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = ["sentencepiece"] def __init__( self : Dict , *A : Optional[int] , **A : Union[str, Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = ["sentencepiece"] def __init__( self : List[Any] , *A : List[Any] , **A : List[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = ["sentencepiece"] def __init__( self : Optional[int] , *A : Optional[Any] , **A : int ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = ["sentencepiece"] def __init__( self : List[str] , *A : Tuple , **A : str ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = ["sentencepiece"] def __init__( self : Optional[int] , *A : Union[str, Any] , **A : Optional[int] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = ["sentencepiece"] def __init__( self : Optional[Any] , *A : Union[str, Any] , **A : List[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = ["sentencepiece"] def __init__( self : List[str] , *A : List[str] , **A : List[str] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: str = ["sentencepiece"] def __init__( self : Optional[int] , *A : List[str] , **A : str ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = ["sentencepiece"] def __init__( self : List[str] , *A : Optional[int] , **A : str ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = ["sentencepiece"] def __init__( self : Optional[Any] , *A : str , **A : Any ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = ["sentencepiece"] def __init__( self : Tuple , *A : Tuple , **A : List[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: str = ["sentencepiece"] def __init__( self : str , *A : Tuple , **A : int ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = ["sentencepiece"] def __init__( self : Dict , *A : Union[str, Any] , **A : Union[str, Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = ["sentencepiece"] def __init__( self : str , *A : str , **A : Optional[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = ["sentencepiece"] def __init__( self : Tuple , *A : Any , **A : int ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = ["sentencepiece"] def __init__( self : Dict , *A : Dict , **A : Union[str, Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = ["sentencepiece"] def __init__( self : Dict , *A : List[Any] , **A : str ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["sentencepiece"] def __init__( self : Tuple , *A : List[str] , **A : List[str] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = ["sentencepiece"] def __init__( self : Union[str, Any] , *A : Tuple , **A : Union[str, Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: int = ["sentencepiece"] def __init__( self : Any , *A : Optional[int] , **A : Tuple ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: str = ["sentencepiece"] def __init__( self : Optional[int] , *A : int , **A : List[str] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = ["sentencepiece"] def __init__( self : Any , *A : Tuple , **A : int ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = ["sentencepiece"] def __init__( self : Dict , *A : Dict , **A : Union[str, Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = ["sentencepiece"] def __init__( self : Dict , *A : Union[str, Any] , **A : Tuple ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: int = ["sentencepiece"] def __init__( self : Any , *A : List[Any] , **A : str ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = ["sentencepiece"] def __init__( self : Dict , *A : Tuple , **A : Optional[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = ["sentencepiece"] def __init__( self : int , *A : Tuple , **A : Optional[int] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: int = ["sentencepiece"] def __init__( self : List[Any] , *A : Tuple , **A : Dict ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: Tuple = ["sentencepiece"] def __init__( self : List[Any] , *A : Optional[int] , **A : List[Any] ): requires_backends(self , ["sentencepiece"] ) class lowerCamelCase_ (metaclass=snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = ["sentencepiece"] def __init__( self : List[Any] , *A : Any , **A : int ): requires_backends(self , ["sentencepiece"] )
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : list ) -> list: """simple docstring""" _UpperCAmelCase : List[Any] = len(_UpperCAmelCase ) for _ in range(_UpperCAmelCase ): for i in range(_ % 2 , arr_size - 1 , 2 ): if arr[i + 1] < arr[i]: _UpperCAmelCase , _UpperCAmelCase : int = arr[i + 1], arr[i] return arr if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = list(range(10, 0, -1)) print(F'Original: {arr}. Sorted: {odd_even_transposition(arr)}')
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'''simple docstring''' from __future__ import annotations import math def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : int , _UpperCAmelCase : bool , _UpperCAmelCase : list[int] , _UpperCAmelCase : float ) -> int: """simple docstring""" if depth < 0: raise ValueError("Depth cannot be less than 0" ) if len(_UpperCAmelCase ) == 0: raise ValueError("Scores cannot be empty" ) if depth == height: return scores[node_index] if is_max: return max( minimax(depth + 1 , node_index * 2 , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) , minimax(depth + 1 , node_index * 2 + 1 , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) , ) return min( minimax(depth + 1 , node_index * 2 , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) , minimax(depth + 1 , node_index * 2 + 1 , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) , ) def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : int = [90, 23, 6, 33, 21, 65, 123, 34_423] _UpperCAmelCase : List[Any] = math.log(len(_UpperCAmelCase ) , 2 ) print("Optimal value : " , end="" ) print(minimax(0 , 0 , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) ) if __name__ == "__main__": import doctest doctest.testmod() main()
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'''simple docstring''' import os from typing import Any, Callable, Dict, List, Optional, Tuple, Union import torch from torch import nn from ...models.controlnet import ControlNetModel, ControlNetOutput from ...models.modeling_utils import ModelMixin from ...utils import logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[List[ControlNetModel], Tuple[ControlNetModel]] ): super().__init__() _UpperCAmelCase : Optional[int] = nn.ModuleList(A ) def _A ( self : Dict , A : torch.FloatTensor , A : Union[torch.Tensor, float, int] , A : torch.Tensor , A : List[torch.tensor] , A : List[float] , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[Dict[str, Any]] = None , A : bool = False , A : bool = True , ): for i, (image, scale, controlnet) in enumerate(zip(A , A , self.nets ) ): _UpperCAmelCase , _UpperCAmelCase : str = controlnet( A , A , A , A , A , A , A , A , A , A , A , ) # merge samples if i == 0: _UpperCAmelCase , _UpperCAmelCase : List[Any] = down_samples, mid_sample else: _UpperCAmelCase : Optional[int] = [ samples_prev + samples_curr for samples_prev, samples_curr in zip(A , A ) ] mid_block_res_sample += mid_sample return down_block_res_samples, mid_block_res_sample def _A ( self : List[str] , A : Union[str, os.PathLike] , A : bool = True , A : Callable = None , A : bool = False , A : Optional[str] = None , ): _UpperCAmelCase : str = 0 _UpperCAmelCase : str = save_directory for controlnet in self.nets: controlnet.save_pretrained( A , is_main_process=A , save_function=A , safe_serialization=A , variant=A , ) idx += 1 _UpperCAmelCase : Tuple = model_path_to_save + F"""_{idx}""" @classmethod def _A ( cls : int , A : Optional[Union[str, os.PathLike]] , **A : Tuple ): _UpperCAmelCase : str = 0 _UpperCAmelCase : int = [] # load controlnet and append to list until no controlnet directory exists anymore # first controlnet has to be saved under `./mydirectory/controlnet` to be compliant with `DiffusionPipeline.from_prertained` # second, third, ... controlnets have to be saved under `./mydirectory/controlnet_1`, `./mydirectory/controlnet_2`, ... _UpperCAmelCase : int = pretrained_model_path while os.path.isdir(A ): _UpperCAmelCase : List[str] = ControlNetModel.from_pretrained(A , **A ) controlnets.append(A ) idx += 1 _UpperCAmelCase : Dict = pretrained_model_path + F"""_{idx}""" logger.info(F"""{len(A )} controlnets loaded from {pretrained_model_path}.""" ) if len(A ) == 0: raise ValueError( F"""No ControlNets found under {os.path.dirname(A )}. Expected at least {pretrained_model_path + '_0'}.""" ) return cls(A )
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'''simple docstring''' from typing import Dict, List, Optional, Union import numpy as np from ...image_processing_utils import BaseImageProcessor, BatchFeature, get_size_dict from ...image_transforms import ( center_crop, get_resize_output_image_size, normalize, rescale, resize, to_channel_dimension_format, ) from ...image_utils import ( IMAGENET_STANDARD_MEAN, IMAGENET_STANDARD_STD, ChannelDimension, ImageInput, PILImageResampling, make_list_of_images, to_numpy_array, valid_images, ) from ...utils import TensorType, logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: int = ["pixel_values"] def __init__( self : int , A : bool = True , A : Optional[Dict[str, int]] = None , A : PILImageResampling = PILImageResampling.BILINEAR , A : bool = True , A : Dict[str, int] = None , A : bool = True , A : Union[int, float] = 1 / 255 , A : bool = True , A : Optional[Union[float, List[float]]] = None , A : Optional[Union[float, List[float]]] = None , **A : Any , ): super().__init__(**A ) _UpperCAmelCase : Dict = size if size is not None else {"shortest_edge": 256} _UpperCAmelCase : Optional[int] = get_size_dict(A , default_to_square=A ) _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 224, "width": 224} _UpperCAmelCase : List[str] = get_size_dict(A ) _UpperCAmelCase : str = do_resize _UpperCAmelCase : Union[str, Any] = size _UpperCAmelCase : Any = resample _UpperCAmelCase : int = do_center_crop _UpperCAmelCase : Union[str, Any] = crop_size _UpperCAmelCase : int = do_rescale _UpperCAmelCase : List[Any] = rescale_factor _UpperCAmelCase : List[Any] = do_normalize _UpperCAmelCase : Any = image_mean if image_mean is not None else IMAGENET_STANDARD_MEAN _UpperCAmelCase : Tuple = image_std if image_std is not None else IMAGENET_STANDARD_STD def _A ( self : Optional[int] , A : np.ndarray , A : Dict[str, int] , A : PILImageResampling = PILImageResampling.BICUBIC , A : Optional[Union[str, ChannelDimension]] = None , **A : Tuple , ): _UpperCAmelCase : List[Any] = get_size_dict(A , default_to_square=A ) if "shortest_edge" not in size: raise ValueError(F"""The `size` parameter must contain the key `shortest_edge`. Got {size.keys()}""" ) _UpperCAmelCase : int = get_resize_output_image_size(A , size=size["shortest_edge"] , default_to_square=A ) return resize(A , size=A , resample=A , data_format=A , **A ) def _A ( self : Optional[int] , A : np.ndarray , A : Dict[str, int] , A : Optional[Union[str, ChannelDimension]] = None , **A : str , ): _UpperCAmelCase : int = get_size_dict(A ) return center_crop(A , size=(size["height"], size["width"]) , data_format=A , **A ) def _A ( self : Any , A : np.ndarray , A : float , A : Optional[Union[str, ChannelDimension]] = None , **A : Any ): return rescale(A , scale=A , data_format=A , **A ) def _A ( self : List[Any] , A : np.ndarray , A : Union[float, List[float]] , A : Union[float, List[float]] , A : Optional[Union[str, ChannelDimension]] = None , **A : int , ): return normalize(A , mean=A , std=A , data_format=A , **A ) def _A ( self : Optional[int] , A : ImageInput , A : Optional[bool] = None , A : Dict[str, int] = None , A : PILImageResampling = None , A : bool = None , A : Dict[str, int] = None , A : Optional[bool] = None , A : Optional[float] = None , A : Optional[bool] = None , A : Optional[Union[float, List[float]]] = None , A : Optional[Union[float, List[float]]] = None , A : Optional[Union[str, TensorType]] = None , A : Union[str, ChannelDimension] = ChannelDimension.FIRST , **A : Dict , ): _UpperCAmelCase : Any = do_resize if do_resize is not None else self.do_resize _UpperCAmelCase : Any = size if size is not None else self.size _UpperCAmelCase : List[str] = get_size_dict(A , default_to_square=A ) _UpperCAmelCase : Optional[int] = resample if resample is not None else self.resample _UpperCAmelCase : Dict = do_center_crop if do_center_crop is not None else self.do_center_crop _UpperCAmelCase : List[Any] = crop_size if crop_size is not None else self.crop_size _UpperCAmelCase : Optional[int] = get_size_dict(A ) _UpperCAmelCase : Dict = do_rescale if do_rescale is not None else self.do_rescale _UpperCAmelCase : Any = rescale_factor if rescale_factor is not None else self.rescale_factor _UpperCAmelCase : Any = do_normalize if do_normalize is not None else self.do_normalize _UpperCAmelCase : Union[str, Any] = image_mean if image_mean is not None else self.image_mean _UpperCAmelCase : Optional[Any] = image_std if image_std is not None else self.image_std _UpperCAmelCase : List[Any] = make_list_of_images(A ) if not valid_images(A ): raise ValueError( "Invalid image type. Must be of type PIL.Image.Image, numpy.ndarray, " "torch.Tensor, tf.Tensor or jax.ndarray." ) if do_resize and size is None: raise ValueError("Size must be specified if do_resize is True." ) if do_center_crop and crop_size is None: raise ValueError("Crop size must be specified if do_center_crop is True." ) if do_rescale and rescale_factor is None: raise ValueError("Rescale factor must be specified if do_rescale is True." ) if do_normalize and (image_mean is None or image_std is None): raise ValueError("Image mean and std must be specified if do_normalize is True." ) # All transformations expect numpy arrays. _UpperCAmelCase : Dict = [to_numpy_array(A ) for image in images] if do_resize: _UpperCAmelCase : Dict = [self.resize(image=A , size=A , resample=A ) for image in images] if do_center_crop: _UpperCAmelCase : Optional[Any] = [self.center_crop(image=A , size=A ) for image in images] if do_rescale: _UpperCAmelCase : List[str] = [self.rescale(image=A , scale=A ) for image in images] if do_normalize: _UpperCAmelCase : Optional[Any] = [self.normalize(image=A , mean=A , std=A ) for image in images] _UpperCAmelCase : List[str] = [to_channel_dimension_format(A , A ) for image in images] _UpperCAmelCase : Optional[Any] = {"pixel_values": images} return BatchFeature(data=A , tensor_type=A )
31
'''simple docstring''' import argparse import json import pickle from pathlib import Path import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig from transformers.utils import logging logging.set_verbosity_info() __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : str ) -> Optional[Any]: """simple docstring""" _UpperCAmelCase : int = SwinConfig.from_pretrained( "microsoft/swin-tiny-patch4-window7-224" , out_features=["stage1", "stage2", "stage3", "stage4"] ) _UpperCAmelCase : List[Any] = MaskFormerConfig(backbone_config=_UpperCAmelCase ) _UpperCAmelCase : Tuple = "huggingface/label-files" if "ade20k-full" in model_name: # this should be ok _UpperCAmelCase : Dict = 847 _UpperCAmelCase : Any = "maskformer-ade20k-full-id2label.json" elif "ade" in model_name: # this should be ok _UpperCAmelCase : Any = 150 _UpperCAmelCase : Any = "ade20k-id2label.json" elif "coco-stuff" in model_name: # this should be ok _UpperCAmelCase : Tuple = 171 _UpperCAmelCase : Union[str, Any] = "maskformer-coco-stuff-id2label.json" elif "coco" in model_name: # TODO _UpperCAmelCase : Any = 133 _UpperCAmelCase : int = "coco-panoptic-id2label.json" elif "cityscapes" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 19 _UpperCAmelCase : str = "cityscapes-id2label.json" elif "vistas" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 65 _UpperCAmelCase : Tuple = "mapillary-vistas-id2label.json" _UpperCAmelCase : List[Any] = json.load(open(hf_hub_download(_UpperCAmelCase , _UpperCAmelCase , repo_type="dataset" ) , "r" ) ) _UpperCAmelCase : Tuple = {int(_UpperCAmelCase ): v for k, v in idalabel.items()} return config def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] ) -> List[Any]: """simple docstring""" _UpperCAmelCase : Dict = [] # stem # fmt: off rename_keys.append(("backbone.patch_embed.proj.weight", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight") ) rename_keys.append(("backbone.patch_embed.proj.bias", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias") ) rename_keys.append(("backbone.patch_embed.norm.weight", "model.pixel_level_module.encoder.model.embeddings.norm.weight") ) rename_keys.append(("backbone.patch_embed.norm.bias", "model.pixel_level_module.encoder.model.embeddings.norm.bias") ) # stages for i in range(len(config.backbone_config.depths ) ): for j in range(config.backbone_config.depths[i] ): rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_index""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias""") ) if i < 3: rename_keys.append((F"""backbone.layers.{i}.downsample.reduction.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias""") ) rename_keys.append((F"""backbone.norm{i}.weight""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.weight""") ) rename_keys.append((F"""backbone.norm{i}.bias""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.bias""") ) # FPN rename_keys.append(("sem_seg_head.layer_4.weight", "model.pixel_level_module.decoder.fpn.stem.0.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.weight", "model.pixel_level_module.decoder.fpn.stem.1.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.bias", "model.pixel_level_module.decoder.fpn.stem.1.bias") ) for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ): rename_keys.append((F"""sem_seg_head.adapter_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias""") ) rename_keys.append(("sem_seg_head.mask_features.weight", "model.pixel_level_module.decoder.mask_projection.weight") ) rename_keys.append(("sem_seg_head.mask_features.bias", "model.pixel_level_module.decoder.mask_projection.bias") ) # Transformer decoder for idx in range(config.decoder_config.decoder_layers ): # self-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias""") ) # cross-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias""") ) # MLP 1 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc1.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc1.bias""") ) # MLP 2 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc2.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc2.bias""") ) # layernorm 1 (self-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias""") ) # layernorm 2 (cross-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias""") ) # layernorm 3 (final layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias""") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.weight", "model.transformer_module.decoder.layernorm.weight") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.bias", "model.transformer_module.decoder.layernorm.bias") ) # heads on top rename_keys.append(("sem_seg_head.predictor.query_embed.weight", "model.transformer_module.queries_embedder.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.weight", "model.transformer_module.input_projection.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.bias", "model.transformer_module.input_projection.bias") ) rename_keys.append(("sem_seg_head.predictor.class_embed.weight", "class_predictor.weight") ) rename_keys.append(("sem_seg_head.predictor.class_embed.bias", "class_predictor.bias") ) for i in range(3 ): rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.weight""", F"""mask_embedder.{i}.0.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.bias""", F"""mask_embedder.{i}.0.bias""") ) # fmt: on return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Tuple , _UpperCAmelCase : List[Any] ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : List[str] = val def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : Tuple ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : List[str] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )] for i in range(len(backbone_config.depths ) ): _UpperCAmelCase : Optional[int] = num_features[i] for j in range(backbone_config.depths[i] ): # fmt: off # read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias) _UpperCAmelCase : Any = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.weight""" ) _UpperCAmelCase : Optional[int] = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : List[str] = in_proj_weight[:dim, :] _UpperCAmelCase : Tuple = in_proj_bias[: dim] _UpperCAmelCase : List[Any] = in_proj_weight[ dim : dim * 2, : ] _UpperCAmelCase : List[str] = in_proj_bias[ dim : dim * 2 ] _UpperCAmelCase : Optional[Any] = in_proj_weight[ -dim :, : ] _UpperCAmelCase : Dict = in_proj_bias[-dim :] # fmt: on def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : str ) -> Dict: """simple docstring""" _UpperCAmelCase : Union[str, Any] = config.decoder_config.hidden_size for idx in range(config.decoder_config.decoder_layers ): # read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight""" ) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : int = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[:config.hidden_size] _UpperCAmelCase : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : List[str] = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : int = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Optional[Any] = in_proj_bias[-hidden_size :] # read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Optional[Any] = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight""" ) _UpperCAmelCase : Tuple = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : Any = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Tuple = in_proj_bias[:config.hidden_size] _UpperCAmelCase : Dict = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : Dict = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : Optional[int] = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[-hidden_size :] # fmt: on def UpperCamelCase_ ( ) -> torch.Tensor: """simple docstring""" _UpperCAmelCase : int = "http://images.cocodataset.org/val2017/000000039769.jpg" _UpperCAmelCase : Any = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ) return im @torch.no_grad() def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : bool = False ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = get_maskformer_config(_UpperCAmelCase ) # load original state_dict with open(_UpperCAmelCase , "rb" ) as f: _UpperCAmelCase : Optional[int] = pickle.load(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = data["model"] # for name, param in state_dict.items(): # print(name, param.shape) # rename keys _UpperCAmelCase : Any = create_rename_keys(_UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_swin_q_k_v(_UpperCAmelCase , config.backbone_config ) read_in_decoder_q_k_v(_UpperCAmelCase , _UpperCAmelCase ) # update to torch tensors for key, value in state_dict.items(): _UpperCAmelCase : Tuple = torch.from_numpy(_UpperCAmelCase ) # load 🤗 model _UpperCAmelCase : Union[str, Any] = MaskFormerForInstanceSegmentation(_UpperCAmelCase ) model.eval() for name, param in model.named_parameters(): print(_UpperCAmelCase , param.shape ) _UpperCAmelCase , _UpperCAmelCase : Any = model.load_state_dict(_UpperCAmelCase , strict=_UpperCAmelCase ) assert missing_keys == [ "model.pixel_level_module.encoder.model.layernorm.weight", "model.pixel_level_module.encoder.model.layernorm.bias", ] assert len(_UpperCAmelCase ) == 0, F"""Unexpected keys: {unexpected_keys}""" # verify results _UpperCAmelCase : Optional[int] = prepare_img() if "vistas" in model_name: _UpperCAmelCase : int = 65 elif "cityscapes" in model_name: _UpperCAmelCase : Tuple = 65_535 else: _UpperCAmelCase : Any = 255 _UpperCAmelCase : Optional[Any] = True if "ade" in model_name else False _UpperCAmelCase : Optional[int] = MaskFormerImageProcessor(ignore_index=_UpperCAmelCase , reduce_labels=_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = image_processor(_UpperCAmelCase , return_tensors="pt" ) _UpperCAmelCase : List[Any] = model(**_UpperCAmelCase ) print("Logits:" , outputs.class_queries_logits[0, :3, :3] ) if model_name == "maskformer-swin-tiny-ade": _UpperCAmelCase : Tuple = torch.tensor( [[3.6_3_5_3, -4.4_7_7_0, -2.6_0_6_5], [0.5_0_8_1, -4.2_3_9_4, -3.5_3_4_3], [2.1_9_0_9, -5.0_3_5_3, -1.9_3_2_3]] ) assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , _UpperCAmelCase , atol=1e-4 ) print("Looks ok!" ) if pytorch_dump_folder_path is not None: print(F"""Saving model and image processor to {pytorch_dump_folder_path}""" ) Path(_UpperCAmelCase ).mkdir(exist_ok=_UpperCAmelCase ) model.save_pretrained(_UpperCAmelCase ) image_processor.save_pretrained(_UpperCAmelCase ) if push_to_hub: print("Pushing model and image processor to the hub..." ) model.push_to_hub(F"""nielsr/{model_name}""" ) image_processor.push_to_hub(F"""nielsr/{model_name}""" ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""maskformer-swin-tiny-ade""", type=str, help=("""Name of the MaskFormer model you'd like to convert""",), ) parser.add_argument( """--checkpoint_path""", default="""/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl""", type=str, help="""Path to the original state dict (.pth file).""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) __SCREAMING_SNAKE_CASE : int = parser.parse_args() convert_maskformer_checkpoint( args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub )
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'''simple docstring''' from collections.abc import Callable from math import pi, sqrt from random import uniform from statistics import mean def UpperCamelCase_ ( _UpperCAmelCase : int ) -> Tuple: """simple docstring""" def is_in_circle(_UpperCAmelCase : float , _UpperCAmelCase : float ) -> bool: _UpperCAmelCase : Optional[int] = sqrt((x**2) + (y**2) ) # Our circle has a radius of 1, so a distance # greater than 1 would land outside the circle. return distance_from_centre <= 1 # The proportion of guesses that landed in the circle _UpperCAmelCase : Optional[Any] = mean( int(is_in_circle(uniform(-1.0 , 1.0 ) , uniform(-1.0 , 1.0 ) ) ) for _ in range(_UpperCAmelCase ) ) # The ratio of the area for circle to square is pi/4. _UpperCAmelCase : List[Any] = proportion * 4 print(F"""The estimated value of pi is {pi_estimate}""" ) print(F"""The numpy value of pi is {pi}""" ) print(F"""The total error is {abs(pi - pi_estimate )}""" ) def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Callable[[float], float] , _UpperCAmelCase : float = 0.0 , _UpperCAmelCase : float = 1.0 , ) -> float: """simple docstring""" return mean( function_to_integrate(uniform(_UpperCAmelCase , _UpperCAmelCase ) ) for _ in range(_UpperCAmelCase ) ) * (max_value - min_value) def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : float = 0.0 , _UpperCAmelCase : float = 1.0 ) -> None: """simple docstring""" def identity_function(_UpperCAmelCase : float ) -> float: return x _UpperCAmelCase : str = area_under_curve_estimator( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Optional[Any] = (max_value * max_value - min_value * min_value) / 2 print("******************" ) print(F"""Estimating area under y=x where x varies from {min_value} to {max_value}""" ) print(F"""Estimated value is {estimated_value}""" ) print(F"""Expected value is {expected_value}""" ) print(F"""Total error is {abs(estimated_value - expected_value )}""" ) print("******************" ) def UpperCamelCase_ ( _UpperCAmelCase : int ) -> None: """simple docstring""" def function_to_integrate(_UpperCAmelCase : float ) -> float: return sqrt(4.0 - x * x ) _UpperCAmelCase : int = area_under_curve_estimator( _UpperCAmelCase , _UpperCAmelCase , 0.0 , 2.0 ) print("******************" ) print("Estimating pi using area_under_curve_estimator" ) print(F"""Estimated value is {estimated_value}""" ) print(F"""Expected value is {pi}""" ) print(F"""Total error is {abs(estimated_value - pi )}""" ) print("******************" ) if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' import bza import gzip import lzma import os import shutil import struct import tarfile import warnings import zipfile from abc import ABC, abstractmethod from pathlib import Path from typing import Dict, List, Optional, Type, Union from .. import config from .filelock import FileLock from .logging import get_logger __SCREAMING_SNAKE_CASE : Dict = get_logger(__name__) class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[str] , A : Optional[str] = None ): _UpperCAmelCase : Dict = ( os.path.join(A , config.EXTRACTED_DATASETS_DIR ) if cache_dir else config.EXTRACTED_DATASETS_PATH ) _UpperCAmelCase : Union[str, Any] = Extractor def _A ( self : Tuple , A : str ): from .file_utils import hash_url_to_filename # Path where we extract compressed archives # We extract in the cache dir, and get the extracted path name by hashing the original path" _UpperCAmelCase : Dict = os.path.abspath(A ) return os.path.join(self.extract_dir , hash_url_to_filename(A ) ) def _A ( self : int , A : str , A : bool ): return force_extract or ( not os.path.isfile(A ) and not (os.path.isdir(A ) and os.listdir(A )) ) def _A ( self : Optional[int] , A : str , A : bool = False ): _UpperCAmelCase : Union[str, Any] = self.extractor.infer_extractor_format(A ) if not extractor_format: return input_path _UpperCAmelCase : Optional[Any] = self._get_output_path(A ) if self._do_extract(A , A ): self.extractor.extract(A , A , A ) return output_path class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod @abstractmethod def _A ( cls : str , A : Union[Path, str] , **A : Dict ): ... @staticmethod @abstractmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): ... class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: List[bytes] = [] @staticmethod def _A ( A : Union[Path, str] , A : int ): with open(A , "rb" ) as f: return f.read(A ) @classmethod def _A ( cls : Any , A : Union[Path, str] , A : bytes = b"" ): if not magic_number: _UpperCAmelCase : Any = max(len(A ) for cls_magic_number in cls.magic_numbers ) try: _UpperCAmelCase : int = cls.read_magic_number(A , A ) except OSError: return False return any(magic_number.startswith(A ) for cls_magic_number in cls.magic_numbers ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod def _A ( cls : str , A : Union[Path, str] , **A : List[Any] ): return tarfile.is_tarfile(A ) @staticmethod def _A ( A : Union[str, Any] , A : str ): def resolved(A : str ) -> str: return os.path.realpath(os.path.abspath(A ) ) def badpath(A : str , A : str ) -> bool: # joinpath will ignore base if path is absolute return not resolved(os.path.join(A , A ) ).startswith(A ) def badlink(A : str , A : str ) -> bool: # Links are interpreted relative to the directory containing the link _UpperCAmelCase : List[str] = resolved(os.path.join(A , os.path.dirname(info.name ) ) ) return badpath(info.linkname , base=A ) _UpperCAmelCase : Optional[int] = resolved(A ) for finfo in members: if badpath(finfo.name , A ): logger.error(F"""Extraction of {finfo.name} is blocked (illegal path)""" ) elif finfo.issym() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Symlink to {finfo.linkname}""" ) elif finfo.islnk() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Hard link to {finfo.linkname}""" ) else: yield finfo @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) _UpperCAmelCase : int = tarfile.open(A ) tar_file.extractall(A , members=TarExtractor.safemembers(A , A ) ) tar_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = [b"\x1F\x8B"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with gzip.open(A , "rb" ) as gzip_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [ b"PK\x03\x04", b"PK\x05\x06", # empty archive b"PK\x07\x08", # spanned archive ] @classmethod def _A ( cls : Dict , A : Union[Path, str] , A : bytes = b"" ): if super().is_extractable(A , magic_number=A ): return True try: # Alternative version of zipfile.is_zipfile that has less false positives, but misses executable zip archives. # From: https://github.com/python/cpython/pull/5053 from zipfile import ( _CD_SIGNATURE, _ECD_DISK_NUMBER, _ECD_DISK_START, _ECD_ENTRIES_TOTAL, _ECD_OFFSET, _ECD_SIZE, _EndRecData, sizeCentralDir, stringCentralDir, structCentralDir, ) with open(A , "rb" ) as fp: _UpperCAmelCase : Tuple = _EndRecData(A ) if endrec: if endrec[_ECD_ENTRIES_TOTAL] == 0 and endrec[_ECD_SIZE] == 0 and endrec[_ECD_OFFSET] == 0: return True # Empty zipfiles are still zipfiles elif endrec[_ECD_DISK_NUMBER] == endrec[_ECD_DISK_START]: fp.seek(endrec[_ECD_OFFSET] ) # Central directory is on the same disk if fp.tell() == endrec[_ECD_OFFSET] and endrec[_ECD_SIZE] >= sizeCentralDir: _UpperCAmelCase : Dict = fp.read(A ) # CD is where we expect it to be if len(A ) == sizeCentralDir: _UpperCAmelCase : Any = struct.unpack(A , A ) # CD is the right size if centdir[_CD_SIGNATURE] == stringCentralDir: return True # First central directory entry has correct magic number return False except Exception: # catch all errors in case future python versions change the zipfile internals return False @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) with zipfile.ZipFile(A , "r" ) as zip_file: zip_file.extractall(A ) zip_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [b"\xFD\x37\x7A\x58\x5A\x00"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with lzma.open(A ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = [b"Rar!\x1a\x07\x00", b"Rar!\x1a\x07\x01\x00"] # RAR_ID # RAR5_ID @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.RARFILE_AVAILABLE: raise ImportError("Please pip install rarfile" ) import rarfile os.makedirs(A , exist_ok=A ) _UpperCAmelCase : List[str] = rarfile.RarFile(A ) rf.extractall(A ) rf.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x28\xb5\x2F\xFD"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.ZSTANDARD_AVAILABLE: raise ImportError("Please pip install zstandard" ) import zstandard as zstd _UpperCAmelCase : Optional[Any] = zstd.ZstdDecompressor() with open(A , "rb" ) as ifh, open(A , "wb" ) as ofh: dctx.copy_stream(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x42\x5A\x68"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with bza.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = [b"\x37\x7A\xBC\xAF\x27\x1C"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.PY7ZR_AVAILABLE: raise ImportError("Please pip install py7zr" ) import pyazr os.makedirs(A , exist_ok=A ) with pyazr.SevenZipFile(A , "r" ) as archive: archive.extractall(A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = [b"\x04\x22\x4D\x18"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.LZ4_AVAILABLE: raise ImportError("Please pip install lz4" ) import lza.frame with lza.frame.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: Dict[str, Type[BaseExtractor]] = { "tar": TarExtractor, "gzip": GzipExtractor, "zip": ZipExtractor, "xz": XzExtractor, "rar": RarExtractor, "zstd": ZstdExtractor, "bz2": BzipaExtractor, "7z": SevenZipExtractor, # <Added version="2.4.0"/> "lz4": LzaExtractor, # <Added version="2.4.0"/> } @classmethod def _A ( cls : List[Any] ): return max( len(A ) for extractor in cls.extractors.values() if issubclass(A , A ) for extractor_magic_number in extractor.magic_numbers ) @staticmethod def _A ( A : Union[Path, str] , A : int ): try: return MagicNumberBaseExtractor.read_magic_number(A , magic_number_length=A ) except OSError: return b"" @classmethod def _A ( cls : Optional[Any] , A : Union[Path, str] , A : bool = False ): warnings.warn( "Method 'is_extractable' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'infer_extractor_format' instead." , category=A , ) _UpperCAmelCase : Union[str, Any] = cls.infer_extractor_format(A ) if extractor_format: return True if not return_extractor else (True, cls.extractors[extractor_format]) return False if not return_extractor else (False, None) @classmethod def _A ( cls : Dict , A : Union[Path, str] ): # <Added version="2.4.0"/> _UpperCAmelCase : Optional[int] = cls._get_magic_number_max_length() _UpperCAmelCase : str = cls._read_magic_number(A , A ) for extractor_format, extractor in cls.extractors.items(): if extractor.is_extractable(A , magic_number=A ): return extractor_format @classmethod def _A ( cls : List[str] , A : Union[Path, str] , A : Union[Path, str] , A : Optional[str] = None , A : Optional[BaseExtractor] = "deprecated" , ): os.makedirs(os.path.dirname(A ) , exist_ok=A ) # Prevent parallel extractions _UpperCAmelCase : Tuple = str(Path(A ).with_suffix(".lock" ) ) with FileLock(A ): shutil.rmtree(A , ignore_errors=A ) if extractor_format or extractor != "deprecated": if extractor != "deprecated" or not isinstance(A , A ): # passed as positional arg warnings.warn( "Parameter 'extractor' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'extractor_format' instead." , category=A , ) _UpperCAmelCase : Tuple = extractor if extractor != "deprecated" else extractor_format else: _UpperCAmelCase : Tuple = cls.extractors[extractor_format] return extractor.extract(A , A ) else: warnings.warn( "Parameter 'extractor_format' was made required in version 2.4.0 and not passing it will raise an " "exception in 3.0.0." , category=A , ) for extractor in cls.extractors.values(): if extractor.is_extractable(A ): return extractor.extract(A , A )
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'''simple docstring''' import torch import torch.nn as nn from transformers.modeling_utils import ModuleUtilsMixin from transformers.models.ta.modeling_ta import TaBlock, TaConfig, TaLayerNorm from ...configuration_utils import ConfigMixin, register_to_config from ...models import ModelMixin class lowerCamelCase_ (snake_case__ , snake_case__ , snake_case__ ): '''simple docstring''' @register_to_config def __init__( self : Tuple , A : int , A : int , A : int , A : float , A : int , A : int , A : int , A : int , A : str , A : bool = False , ): super().__init__() _UpperCAmelCase : List[Any] = nn.Embedding(A , A ) _UpperCAmelCase : Union[str, Any] = nn.Embedding(A , A ) _UpperCAmelCase : List[Any] = False _UpperCAmelCase : List[Any] = nn.Dropout(p=A ) _UpperCAmelCase : str = TaConfig( vocab_size=A , d_model=A , num_heads=A , d_kv=A , d_ff=A , dropout_rate=A , feed_forward_proj=A , is_decoder=A , is_encoder_decoder=A , ) _UpperCAmelCase : Optional[int] = nn.ModuleList() for lyr_num in range(A ): _UpperCAmelCase : List[Any] = TaBlock(A ) self.encoders.append(A ) _UpperCAmelCase : List[str] = TaLayerNorm(A ) _UpperCAmelCase : Optional[int] = nn.Dropout(p=A ) def _A ( self : Union[str, Any] , A : Optional[int] , A : int ): _UpperCAmelCase : Union[str, Any] = self.token_embedder(A ) _UpperCAmelCase : List[Any] = encoder_input_tokens.shape[1] _UpperCAmelCase : Tuple = torch.arange(A , device=encoder_input_tokens.device ) x += self.position_encoding(A ) _UpperCAmelCase : List[str] = self.dropout_pre(A ) # inverted the attention mask _UpperCAmelCase : str = encoder_input_tokens.size() _UpperCAmelCase : Dict = self.get_extended_attention_mask(A , A ) for lyr in self.encoders: _UpperCAmelCase : Union[str, Any] = lyr(A , A )[0] _UpperCAmelCase : Tuple = self.layer_norm(A ) return self.dropout_post(A ), encoder_inputs_mask
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'''simple docstring''' from typing import Any def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : dict , _UpperCAmelCase : dict , _UpperCAmelCase : dict , ) -> list: """simple docstring""" _validation( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) # Creates data structures and fill initial step _UpperCAmelCase : dict = {} _UpperCAmelCase : dict = {} for state in states_space: _UpperCAmelCase : Union[str, Any] = observations_space[0] _UpperCAmelCase : Tuple = ( initial_probabilities[state] * emission_probabilities[state][observation] ) _UpperCAmelCase : List[str] = None # Fills the data structure with the probabilities of # different transitions and pointers to previous states for o in range(1 , len(_UpperCAmelCase ) ): _UpperCAmelCase : Optional[Any] = observations_space[o] _UpperCAmelCase : int = observations_space[o - 1] for state in states_space: # Calculates the argmax for probability function _UpperCAmelCase : str = "" _UpperCAmelCase : Tuple = -1 for k_state in states_space: _UpperCAmelCase : Any = ( probabilities[(k_state, prior_observation)] * transition_probabilities[k_state][state] * emission_probabilities[state][observation] ) if probability > max_probability: _UpperCAmelCase : Union[str, Any] = probability _UpperCAmelCase : str = k_state # Update probabilities and pointers dicts _UpperCAmelCase : Optional[int] = ( probabilities[(arg_max, prior_observation)] * transition_probabilities[arg_max][state] * emission_probabilities[state][observation] ) _UpperCAmelCase : Tuple = arg_max # The final observation _UpperCAmelCase : Optional[Any] = observations_space[len(_UpperCAmelCase ) - 1] # argmax for given final observation _UpperCAmelCase : List[str] = "" _UpperCAmelCase : Any = -1 for k_state in states_space: _UpperCAmelCase : Optional[int] = probabilities[(k_state, final_observation)] if probability > max_probability: _UpperCAmelCase : int = probability _UpperCAmelCase : Dict = k_state _UpperCAmelCase : Dict = arg_max # Process pointers backwards _UpperCAmelCase : List[Any] = last_state _UpperCAmelCase : str = [] for o in range(len(_UpperCAmelCase ) - 1 , -1 , -1 ): result.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = pointers[previous, observations_space[o]] result.reverse() return result def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_not_empty( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) _validate_lists(_UpperCAmelCase , _UpperCAmelCase ) _validate_dicts( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" if not all( [ observations_space, states_space, initial_probabilities, transition_probabilities, emission_probabilities, ] ): raise ValueError("There's an empty parameter" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any ) -> None: """simple docstring""" _validate_list(_UpperCAmelCase , "observations_space" ) _validate_list(_UpperCAmelCase , "states_space" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list""" raise ValueError(_UpperCAmelCase ) else: for x in _object: if not isinstance(_UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list of strings""" raise ValueError(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_dict(_UpperCAmelCase , "initial_probabilities" , _UpperCAmelCase ) _validate_nested_dict(_UpperCAmelCase , "transition_probabilities" ) _validate_nested_dict(_UpperCAmelCase , "emission_probabilities" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" _validate_dict(_object , _UpperCAmelCase , _UpperCAmelCase ) for x in _object.values(): _validate_dict(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str , _UpperCAmelCase : type , _UpperCAmelCase : bool = False ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Any = F"""{var_name} must be a dict""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object ): _UpperCAmelCase : Tuple = F"""{var_name} all keys must be strings""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object.values() ): _UpperCAmelCase : List[str] = "nested dictionary " if nested else "" _UpperCAmelCase : List[str] = F"""{var_name} {nested_text}all values must be {value_type.__name__}""" raise ValueError(_UpperCAmelCase ) if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' import math from collections import defaultdict from typing import List, Optional, Tuple, Union import numpy as np import torch from ..configuration_utils import ConfigMixin, register_to_config from .scheduling_utils import KarrasDiffusionSchedulers, SchedulerMixin, SchedulerOutput def UpperCamelCase_ ( _UpperCAmelCase : Union[str, Any] , _UpperCAmelCase : List[str]=0.9_9_9 , _UpperCAmelCase : Tuple="cosine" , ) -> int: """simple docstring""" if alpha_transform_type == "cosine": def alpha_bar_fn(_UpperCAmelCase : Optional[int] ): return math.cos((t + 0.0_0_8) / 1.0_0_8 * math.pi / 2 ) ** 2 elif alpha_transform_type == "exp": def alpha_bar_fn(_UpperCAmelCase : Optional[int] ): return math.exp(t * -1_2.0 ) else: raise ValueError(F"""Unsupported alpha_tranform_type: {alpha_transform_type}""" ) _UpperCAmelCase : str = [] for i in range(_UpperCAmelCase ): _UpperCAmelCase : int = i / num_diffusion_timesteps _UpperCAmelCase : Union[str, Any] = (i + 1) / num_diffusion_timesteps betas.append(min(1 - alpha_bar_fn(_UpperCAmelCase ) / alpha_bar_fn(_UpperCAmelCase ) , _UpperCAmelCase ) ) return torch.tensor(_UpperCAmelCase , dtype=torch.floataa ) class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: int = [e.name for e in KarrasDiffusionSchedulers] __UpperCamelCase: List[Any] = 2 @register_to_config def __init__( self : str , A : int = 1000 , A : float = 0.00_085 , A : float = 0.012 , A : str = "linear" , A : Optional[Union[np.ndarray, List[float]]] = None , A : str = "epsilon" , A : Optional[bool] = False , A : Optional[bool] = False , A : float = 1.0 , A : str = "linspace" , A : int = 0 , ): if trained_betas is not None: _UpperCAmelCase : Optional[Any] = torch.tensor(A , dtype=torch.floataa ) elif beta_schedule == "linear": _UpperCAmelCase : Dict = torch.linspace(A , A , A , dtype=torch.floataa ) elif beta_schedule == "scaled_linear": # this schedule is very specific to the latent diffusion model. _UpperCAmelCase : int = ( torch.linspace(beta_start**0.5 , beta_end**0.5 , A , dtype=torch.floataa ) ** 2 ) elif beta_schedule == "squaredcos_cap_v2": # Glide cosine schedule _UpperCAmelCase : Optional[Any] = betas_for_alpha_bar(A , alpha_transform_type="cosine" ) elif beta_schedule == "exp": _UpperCAmelCase : List[str] = betas_for_alpha_bar(A , alpha_transform_type="exp" ) else: raise NotImplementedError(F"""{beta_schedule} does is not implemented for {self.__class__}""" ) _UpperCAmelCase : Optional[int] = 1.0 - self.betas _UpperCAmelCase : Tuple = torch.cumprod(self.alphas , dim=0 ) # set all values self.set_timesteps(A , A , A ) _UpperCAmelCase : Union[str, Any] = use_karras_sigmas def _A ( self : Tuple , A : List[Any] , A : str=None ): if schedule_timesteps is None: _UpperCAmelCase : Dict = self.timesteps _UpperCAmelCase : Union[str, Any] = (schedule_timesteps == timestep).nonzero() # The sigma index that is taken for the **very** first `step` # is always the second index (or the last index if there is only 1) # This way we can ensure we don't accidentally skip a sigma in # case we start in the middle of the denoising schedule (e.g. for image-to-image) if len(self._index_counter ) == 0: _UpperCAmelCase : Optional[int] = 1 if len(A ) > 1 else 0 else: _UpperCAmelCase : List[str] = timestep.cpu().item() if torch.is_tensor(A ) else timestep _UpperCAmelCase : Any = self._index_counter[timestep_int] return indices[pos].item() @property def _A ( self : List[str] ): # standard deviation of the initial noise distribution if self.config.timestep_spacing in ["linspace", "trailing"]: return self.sigmas.max() return (self.sigmas.max() ** 2 + 1) ** 0.5 def _A ( self : Optional[Any] , A : torch.FloatTensor , A : Union[float, torch.FloatTensor] , ): _UpperCAmelCase : List[str] = self.index_for_timestep(A ) _UpperCAmelCase : int = self.sigmas[step_index] _UpperCAmelCase : Union[str, Any] = sample / ((sigma**2 + 1) ** 0.5) return sample def _A ( self : Optional[Any] , A : int , A : Union[str, torch.device] = None , A : Optional[int] = None , ): _UpperCAmelCase : str = num_inference_steps _UpperCAmelCase : Union[str, Any] = num_train_timesteps or self.config.num_train_timesteps # "linspace", "leading", "trailing" corresponds to annotation of Table 2. of https://arxiv.org/abs/2305.08891 if self.config.timestep_spacing == "linspace": _UpperCAmelCase : List[str] = np.linspace(0 , num_train_timesteps - 1 , A , dtype=A )[::-1].copy() elif self.config.timestep_spacing == "leading": _UpperCAmelCase : Union[str, Any] = num_train_timesteps // self.num_inference_steps # creates integer timesteps by multiplying by ratio # casting to int to avoid issues when num_inference_step is power of 3 _UpperCAmelCase : Tuple = (np.arange(0 , A ) * step_ratio).round()[::-1].copy().astype(A ) timesteps += self.config.steps_offset elif self.config.timestep_spacing == "trailing": _UpperCAmelCase : Tuple = num_train_timesteps / self.num_inference_steps # creates integer timesteps by multiplying by ratio # casting to int to avoid issues when num_inference_step is power of 3 _UpperCAmelCase : Optional[Any] = (np.arange(A , 0 , -step_ratio )).round().copy().astype(A ) timesteps -= 1 else: raise ValueError( F"""{self.config.timestep_spacing} is not supported. Please make sure to choose one of 'linspace', 'leading' or 'trailing'.""" ) _UpperCAmelCase : Dict = np.array(((1 - self.alphas_cumprod) / self.alphas_cumprod) ** 0.5 ) _UpperCAmelCase : List[Any] = np.log(A ) _UpperCAmelCase : int = np.interp(A , np.arange(0 , len(A ) ) , A ) if self.config.use_karras_sigmas: _UpperCAmelCase : List[str] = self._convert_to_karras(in_sigmas=A , num_inference_steps=self.num_inference_steps ) _UpperCAmelCase : str = np.array([self._sigma_to_t(A , A ) for sigma in sigmas] ) _UpperCAmelCase : Optional[Any] = np.concatenate([sigmas, [0.0]] ).astype(np.floataa ) _UpperCAmelCase : List[str] = torch.from_numpy(A ).to(device=A ) _UpperCAmelCase : Tuple = torch.cat([sigmas[:1], sigmas[1:-1].repeat_interleave(2 ), sigmas[-1:]] ) _UpperCAmelCase : Optional[Any] = torch.from_numpy(A ) _UpperCAmelCase : Optional[Any] = torch.cat([timesteps[:1], timesteps[1:].repeat_interleave(2 )] ) if str(A ).startswith("mps" ): # mps does not support float64 _UpperCAmelCase : Union[str, Any] = timesteps.to(A , dtype=torch.floataa ) else: _UpperCAmelCase : List[str] = timesteps.to(device=A ) # empty dt and derivative _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Optional[Any] = None # for exp beta schedules, such as the one for `pipeline_shap_e.py` # we need an index counter _UpperCAmelCase : int = defaultdict(A ) def _A ( self : Tuple , A : Optional[int] , A : Tuple ): # get log sigma _UpperCAmelCase : Dict = np.log(A ) # get distribution _UpperCAmelCase : Union[str, Any] = log_sigma - log_sigmas[:, np.newaxis] # get sigmas range _UpperCAmelCase : Union[str, Any] = np.cumsum((dists >= 0) , axis=0 ).argmax(axis=0 ).clip(max=log_sigmas.shape[0] - 2 ) _UpperCAmelCase : List[Any] = low_idx + 1 _UpperCAmelCase : List[Any] = log_sigmas[low_idx] _UpperCAmelCase : Optional[Any] = log_sigmas[high_idx] # interpolate sigmas _UpperCAmelCase : Optional[Any] = (low - log_sigma) / (low - high) _UpperCAmelCase : List[str] = np.clip(A , 0 , 1 ) # transform interpolation to time range _UpperCAmelCase : Tuple = (1 - w) * low_idx + w * high_idx _UpperCAmelCase : Optional[Any] = t.reshape(sigma.shape ) return t def _A ( self : Tuple , A : torch.FloatTensor , A : List[str] ): _UpperCAmelCase : float = in_sigmas[-1].item() _UpperCAmelCase : float = in_sigmas[0].item() _UpperCAmelCase : Union[str, Any] = 7.0 # 7.0 is the value used in the paper _UpperCAmelCase : List[Any] = np.linspace(0 , 1 , A ) _UpperCAmelCase : List[Any] = sigma_min ** (1 / rho) _UpperCAmelCase : Tuple = sigma_max ** (1 / rho) _UpperCAmelCase : List[Any] = (max_inv_rho + ramp * (min_inv_rho - max_inv_rho)) ** rho return sigmas @property def _A ( self : List[Any] ): return self.dt is None def _A ( self : Tuple , A : Union[torch.FloatTensor, np.ndarray] , A : Union[float, torch.FloatTensor] , A : Union[torch.FloatTensor, np.ndarray] , A : bool = True , ): _UpperCAmelCase : Dict = self.index_for_timestep(A ) # advance index counter by 1 _UpperCAmelCase : int = timestep.cpu().item() if torch.is_tensor(A ) else timestep self._index_counter[timestep_int] += 1 if self.state_in_first_order: _UpperCAmelCase : Any = self.sigmas[step_index] _UpperCAmelCase : Any = self.sigmas[step_index + 1] else: # 2nd order / Heun's method _UpperCAmelCase : Optional[int] = self.sigmas[step_index - 1] _UpperCAmelCase : List[str] = self.sigmas[step_index] # currently only gamma=0 is supported. This usually works best anyways. # We can support gamma in the future but then need to scale the timestep before # passing it to the model which requires a change in API _UpperCAmelCase : Union[str, Any] = 0 _UpperCAmelCase : str = sigma * (gamma + 1) # Note: sigma_hat == sigma for now # 1. compute predicted original sample (x_0) from sigma-scaled predicted noise if self.config.prediction_type == "epsilon": _UpperCAmelCase : str = sigma_hat if self.state_in_first_order else sigma_next _UpperCAmelCase : Tuple = sample - sigma_input * model_output elif self.config.prediction_type == "v_prediction": _UpperCAmelCase : int = sigma_hat if self.state_in_first_order else sigma_next _UpperCAmelCase : str = model_output * (-sigma_input / (sigma_input**2 + 1) ** 0.5) + ( sample / (sigma_input**2 + 1) ) elif self.config.prediction_type == "sample": _UpperCAmelCase : Tuple = model_output else: raise ValueError( F"""prediction_type given as {self.config.prediction_type} must be one of `epsilon`, or `v_prediction`""" ) if self.config.clip_sample: _UpperCAmelCase : Optional[int] = pred_original_sample.clamp( -self.config.clip_sample_range , self.config.clip_sample_range ) if self.state_in_first_order: # 2. Convert to an ODE derivative for 1st order _UpperCAmelCase : Optional[Any] = (sample - pred_original_sample) / sigma_hat # 3. delta timestep _UpperCAmelCase : List[str] = sigma_next - sigma_hat # store for 2nd order step _UpperCAmelCase : Optional[int] = derivative _UpperCAmelCase : List[str] = dt _UpperCAmelCase : int = sample else: # 2. 2nd order / Heun's method _UpperCAmelCase : str = (sample - pred_original_sample) / sigma_next _UpperCAmelCase : Optional[int] = (self.prev_derivative + derivative) / 2 # 3. take prev timestep & sample _UpperCAmelCase : Union[str, Any] = self.dt _UpperCAmelCase : Optional[Any] = self.sample # free dt and derivative # Note, this puts the scheduler in "first order mode" _UpperCAmelCase : List[str] = None _UpperCAmelCase : str = None _UpperCAmelCase : List[str] = None _UpperCAmelCase : Any = sample + derivative * dt if not return_dict: return (prev_sample,) return SchedulerOutput(prev_sample=A ) def _A ( self : Optional[Any] , A : torch.FloatTensor , A : torch.FloatTensor , A : torch.FloatTensor , ): # Make sure sigmas and timesteps have the same device and dtype as original_samples _UpperCAmelCase : int = self.sigmas.to(device=original_samples.device , dtype=original_samples.dtype ) if original_samples.device.type == "mps" and torch.is_floating_point(A ): # mps does not support float64 _UpperCAmelCase : Tuple = self.timesteps.to(original_samples.device , dtype=torch.floataa ) _UpperCAmelCase : int = timesteps.to(original_samples.device , dtype=torch.floataa ) else: _UpperCAmelCase : Tuple = self.timesteps.to(original_samples.device ) _UpperCAmelCase : int = timesteps.to(original_samples.device ) _UpperCAmelCase : Optional[Any] = [self.index_for_timestep(A , A ) for t in timesteps] _UpperCAmelCase : Any = sigmas[step_indices].flatten() while len(sigma.shape ) < len(original_samples.shape ): _UpperCAmelCase : Dict = sigma.unsqueeze(-1 ) _UpperCAmelCase : List[Any] = original_samples + noise * sigma return noisy_samples def __len__( self : List[str] ): return self.config.num_train_timesteps
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import MobileViTImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : Optional[Any] , A : Dict , A : Dict=7 , A : Optional[int]=3 , A : Optional[int]=18 , A : Dict=30 , A : List[Any]=400 , A : Union[str, Any]=True , A : Tuple=None , A : List[Any]=True , A : int=None , A : Optional[int]=True , ): _UpperCAmelCase : Optional[int] = size if size is not None else {"shortest_edge": 20} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Union[str, Any] = batch_size _UpperCAmelCase : Optional[Any] = num_channels _UpperCAmelCase : Union[str, Any] = image_size _UpperCAmelCase : int = min_resolution _UpperCAmelCase : Optional[int] = max_resolution _UpperCAmelCase : List[str] = do_resize _UpperCAmelCase : Optional[Any] = size _UpperCAmelCase : Tuple = do_center_crop _UpperCAmelCase : Optional[int] = crop_size _UpperCAmelCase : Optional[Any] = do_flip_channel_order def _A ( self : Dict ): return { "do_resize": self.do_resize, "size": self.size, "do_center_crop": self.do_center_crop, "crop_size": self.crop_size, "do_flip_channel_order": self.do_flip_channel_order, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Tuple = MobileViTImageProcessor if is_vision_available() else None def _A ( self : List[Any] ): _UpperCAmelCase : Any = MobileViTImageProcessingTester(self ) @property def _A ( self : int ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Tuple ): _UpperCAmelCase : int = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "size" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "center_crop" ) ) self.assertTrue(hasattr(A , "do_flip_channel_order" ) ) def _A ( self : Any ): _UpperCAmelCase : List[str] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 20} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Dict = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Any ): pass def _A ( self : Dict ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random PIL images _UpperCAmelCase : Union[str, Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A ) for image in image_inputs: self.assertIsInstance(A , Image.Image ) # Test not batched input _UpperCAmelCase : List[Any] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Union[str, Any] ): # Initialize image_processing _UpperCAmelCase : Dict = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for image in image_inputs: self.assertIsInstance(A , np.ndarray ) # Test not batched input _UpperCAmelCase : Optional[int] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Any ): # Initialize image_processing _UpperCAmelCase : Any = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for image in image_inputs: self.assertIsInstance(A , torch.Tensor ) # Test not batched input _UpperCAmelCase : List[str] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Any = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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1
'''simple docstring''' import inspect import os import torch from transformers import AutoModel from transformers.testing_utils import mockenv_context from transformers.trainer_utils import set_seed import accelerate from accelerate.accelerator import Accelerator from accelerate.state import AcceleratorState from accelerate.test_utils.testing import ( AccelerateTestCase, TempDirTestCase, execute_subprocess_async, require_cuda, require_fsdp, require_multi_gpu, slow, ) from accelerate.utils.constants import ( FSDP_AUTO_WRAP_POLICY, FSDP_BACKWARD_PREFETCH, FSDP_SHARDING_STRATEGY, FSDP_STATE_DICT_TYPE, ) from accelerate.utils.dataclasses import FullyShardedDataParallelPlugin from accelerate.utils.other import patch_environment set_seed(42) __SCREAMING_SNAKE_CASE : Any = """bert-base-cased""" __SCREAMING_SNAKE_CASE : Any = """fp16""" __SCREAMING_SNAKE_CASE : Optional[Any] = """bf16""" __SCREAMING_SNAKE_CASE : Dict = [FPaa, BFaa] @require_fsdp @require_cuda class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def _A ( self : Union[str, Any] ): super().setUp() _UpperCAmelCase : Optional[int] = dict( ACCELERATE_USE_FSDP="true" , MASTER_ADDR="localhost" , MASTER_PORT="10999" , RANK="0" , LOCAL_RANK="0" , WORLD_SIZE="1" , ) def _A ( self : Optional[Any] ): from torch.distributed.fsdp.fully_sharded_data_parallel import ShardingStrategy for i, strategy in enumerate(A ): _UpperCAmelCase : Union[str, Any] = self.dist_env.copy() _UpperCAmelCase : Any = F"""{i + 1}""" _UpperCAmelCase : str = strategy with mockenv_context(**A ): _UpperCAmelCase : Any = FullyShardedDataParallelPlugin() self.assertEqual(fsdp_plugin.sharding_strategy , ShardingStrategy(i + 1 ) ) def _A ( self : Any ): from torch.distributed.fsdp.fully_sharded_data_parallel import BackwardPrefetch for i, prefetch_policy in enumerate(A ): _UpperCAmelCase : Union[str, Any] = self.dist_env.copy() _UpperCAmelCase : Optional[Any] = prefetch_policy with mockenv_context(**A ): _UpperCAmelCase : Union[str, Any] = FullyShardedDataParallelPlugin() if prefetch_policy == "NO_PREFETCH": self.assertIsNone(fsdp_plugin.backward_prefetch ) else: self.assertEqual(fsdp_plugin.backward_prefetch , BackwardPrefetch(i + 1 ) ) def _A ( self : int ): from torch.distributed.fsdp.fully_sharded_data_parallel import StateDictType for i, state_dict_type in enumerate(A ): _UpperCAmelCase : Optional[int] = self.dist_env.copy() _UpperCAmelCase : Tuple = state_dict_type with mockenv_context(**A ): _UpperCAmelCase : List[str] = FullyShardedDataParallelPlugin() self.assertEqual(fsdp_plugin.state_dict_type , StateDictType(i + 1 ) ) if state_dict_type == "FULL_STATE_DICT": self.assertTrue(fsdp_plugin.state_dict_config.offload_to_cpu ) self.assertTrue(fsdp_plugin.state_dict_config.ranka_only ) def _A ( self : List[str] ): _UpperCAmelCase : List[str] = AutoModel.from_pretrained(A ) for policy in FSDP_AUTO_WRAP_POLICY: _UpperCAmelCase : Any = self.dist_env.copy() _UpperCAmelCase : Optional[int] = policy if policy == "TRANSFORMER_BASED_WRAP": _UpperCAmelCase : Optional[Any] = "BertLayer" elif policy == "SIZE_BASED_WRAP": _UpperCAmelCase : Any = "2000" with mockenv_context(**A ): _UpperCAmelCase : List[Any] = FullyShardedDataParallelPlugin() fsdp_plugin.set_auto_wrap_policy(A ) if policy == "NO_WRAP": self.assertIsNone(fsdp_plugin.auto_wrap_policy ) else: self.assertIsNotNone(fsdp_plugin.auto_wrap_policy ) _UpperCAmelCase : Any = self.dist_env.copy() _UpperCAmelCase : Tuple = "TRANSFORMER_BASED_WRAP" _UpperCAmelCase : Tuple = "T5Layer" with mockenv_context(**A ): _UpperCAmelCase : Dict = FullyShardedDataParallelPlugin() with self.assertRaises(A ) as cm: fsdp_plugin.set_auto_wrap_policy(A ) self.assertTrue("Could not find the transformer layer class to wrap in the model." in str(cm.exception ) ) _UpperCAmelCase : str = self.dist_env.copy() _UpperCAmelCase : Optional[int] = "SIZE_BASED_WRAP" _UpperCAmelCase : List[str] = "0" with mockenv_context(**A ): _UpperCAmelCase : List[Any] = FullyShardedDataParallelPlugin() fsdp_plugin.set_auto_wrap_policy(A ) self.assertIsNone(fsdp_plugin.auto_wrap_policy ) def _A ( self : List[str] ): from torch.distributed.fsdp.fully_sharded_data_parallel import MixedPrecision from torch.distributed.fsdp.sharded_grad_scaler import ShardedGradScaler for mp_dtype in dtypes: _UpperCAmelCase : str = self.dist_env.copy() _UpperCAmelCase : str = mp_dtype with mockenv_context(**A ): _UpperCAmelCase : int = Accelerator() if mp_dtype == "fp16": _UpperCAmelCase : Union[str, Any] = torch.floataa elif mp_dtype == "bf16": _UpperCAmelCase : Union[str, Any] = torch.bfloataa _UpperCAmelCase : Optional[int] = MixedPrecision(param_dtype=A , reduce_dtype=A , buffer_dtype=A ) self.assertEqual(accelerator.state.fsdp_plugin.mixed_precision_policy , A ) if mp_dtype == FPaa: self.assertTrue(isinstance(accelerator.scaler , A ) ) elif mp_dtype == BFaa: self.assertIsNone(accelerator.scaler ) AcceleratorState._reset_state(A ) def _A ( self : Optional[Any] ): from torch.distributed.fsdp.fully_sharded_data_parallel import CPUOffload for flag in [True, False]: _UpperCAmelCase : str = self.dist_env.copy() _UpperCAmelCase : Dict = str(A ).lower() with mockenv_context(**A ): _UpperCAmelCase : Tuple = FullyShardedDataParallelPlugin() self.assertEqual(fsdp_plugin.cpu_offload , CPUOffload(offload_params=A ) ) @require_fsdp @require_multi_gpu @slow class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def _A ( self : List[Any] ): super().setUp() _UpperCAmelCase : Optional[int] = 0.82 _UpperCAmelCase : int = [ "fsdp_shard_grad_op_transformer_based_wrap", "fsdp_full_shard_transformer_based_wrap", ] _UpperCAmelCase : Tuple = { "multi_gpu_fp16": 3200, "fsdp_shard_grad_op_transformer_based_wrap_fp16": 2000, "fsdp_full_shard_transformer_based_wrap_fp16": 1900, # Disabling below test as it overwhelms the RAM memory usage # on CI self-hosted runner leading to tests getting killed. # "fsdp_full_shard_cpu_offload_transformer_based_wrap_fp32": 1500, # fp16 was leading to indefinite hang } _UpperCAmelCase : Tuple = 160 _UpperCAmelCase : Any = 160 _UpperCAmelCase : List[str] = inspect.getfile(accelerate.test_utils ) _UpperCAmelCase : int = os.path.sep.join(mod_file.split(os.path.sep )[:-1] + ["scripts", "external_deps"] ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Union[str, Any] = os.path.join(self.test_scripts_folder , "test_performance.py" ) _UpperCAmelCase : Optional[int] = ["accelerate", "launch", "--num_processes=2", "--num_machines=1", "--machine_rank=0", "--use_fsdp"] for config in self.performance_configs: _UpperCAmelCase : Tuple = cmd.copy() for i, strategy in enumerate(A ): if strategy.lower() in config: cmd_config.append(F"""--fsdp_sharding_strategy={i+1}""" ) break if "fp32" in config: cmd_config.append("--mixed_precision=no" ) else: cmd_config.append("--mixed_precision=fp16" ) if "cpu_offload" in config: cmd_config.append("--fsdp_offload_params=True" ) for policy in FSDP_AUTO_WRAP_POLICY: if policy.lower() in config: cmd_config.append(F"""--fsdp_auto_wrap_policy={policy}""" ) break if policy == "TRANSFORMER_BASED_WRAP": cmd_config.append("--fsdp_transformer_layer_cls_to_wrap=BertLayer" ) elif policy == "SIZE_BASED_WRAP": cmd_config.append("--fsdp_min_num_params=2000" ) cmd_config.extend( [ self.test_file_path, F"""--output_dir={self.tmpdir}""", F"""--performance_lower_bound={self.performance_lower_bound}""", ] ) with patch_environment(omp_num_threads=1 ): execute_subprocess_async(A , env=os.environ.copy() ) def _A ( self : List[Any] ): _UpperCAmelCase : Dict = os.path.join(self.test_scripts_folder , "test_checkpointing.py" ) _UpperCAmelCase : Union[str, Any] = [ "accelerate", "launch", "--num_processes=2", "--num_machines=1", "--machine_rank=0", "--use_fsdp", "--mixed_precision=fp16", "--fsdp_transformer_layer_cls_to_wrap=BertLayer", ] for i, strategy in enumerate(A ): _UpperCAmelCase : Optional[Any] = cmd.copy() cmd_config.append(F"""--fsdp_sharding_strategy={i+1}""" ) if strategy != "FULL_SHARD": continue _UpperCAmelCase : Optional[Any] = len(A ) for state_dict_type in FSDP_STATE_DICT_TYPE: _UpperCAmelCase : Optional[Any] = cmd_config[:state_dict_config_index] cmd_config.append(F"""--fsdp_state_dict_type={state_dict_type}""" ) cmd_config.extend( [ self.test_file_path, F"""--output_dir={self.tmpdir}""", "--partial_train_epoch=1", ] ) with patch_environment(omp_num_threads=1 ): execute_subprocess_async(A , env=os.environ.copy() ) _UpperCAmelCase : Optional[int] = cmd_config[:-1] _UpperCAmelCase : List[str] = os.path.join(self.tmpdir , "epoch_0" ) cmd_config.extend( [ F"""--resume_from_checkpoint={resume_from_checkpoint}""", ] ) with patch_environment(omp_num_threads=1 ): execute_subprocess_async(A , env=os.environ.copy() ) def _A ( self : List[Any] ): _UpperCAmelCase : str = os.path.join(self.test_scripts_folder , "test_peak_memory_usage.py" ) _UpperCAmelCase : Tuple = [ "accelerate", "launch", "--num_processes=2", "--num_machines=1", "--machine_rank=0", ] for spec, peak_mem_upper_bound in self.peak_memory_usage_upper_bound.items(): _UpperCAmelCase : str = cmd.copy() if "fp16" in spec: cmd_config.extend(["--mixed_precision=fp16"] ) else: cmd_config.extend(["--mixed_precision=no"] ) if "multi_gpu" in spec: continue else: cmd_config.extend(["--use_fsdp"] ) for i, strategy in enumerate(A ): if strategy.lower() in spec: cmd_config.append(F"""--fsdp_sharding_strategy={i+1}""" ) break if "cpu_offload" in spec: cmd_config.append("--fsdp_offload_params=True" ) for policy in FSDP_AUTO_WRAP_POLICY: if policy.lower() in spec: cmd_config.append(F"""--fsdp_auto_wrap_policy={policy}""" ) break if policy == "TRANSFORMER_BASED_WRAP": cmd_config.append("--fsdp_transformer_layer_cls_to_wrap=BertLayer" ) elif policy == "SIZE_BASED_WRAP": cmd_config.append("--fsdp_min_num_params=2000" ) cmd_config.extend( [ self.test_file_path, F"""--output_dir={self.tmpdir}""", F"""--peak_memory_upper_bound={peak_mem_upper_bound}""", F"""--n_train={self.n_train}""", F"""--n_val={self.n_val}""", ] ) with patch_environment(omp_num_threads=1 ): execute_subprocess_async(A , env=os.environ.copy() )
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 1 # To kept the Calculated Value # Since C(n, k) = C(n, n-k) if k > (n - k): _UpperCAmelCase : Any = n - k # Calculate C(n,k) for i in range(_UpperCAmelCase ): result *= n - i result //= i + 1 return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return binomial_coefficient(2 * node_count , _UpperCAmelCase ) // (node_count + 1) def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" if n < 0: raise ValueError("factorial() not defined for negative values" ) _UpperCAmelCase : List[str] = 1 for i in range(1 , n + 1 ): result *= i return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return catalan_number(_UpperCAmelCase ) * factorial(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Dict = int(input("""Enter the number of nodes: """).strip() or 0) if node_count <= 0: raise ValueError("""We need some nodes to work with.""") print( F'Given {node_count} nodes, there are {binary_tree_count(node_count)} ' F'binary trees and {catalan_number(node_count)} binary search trees.' )
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1
'''simple docstring''' import numpy as np from matplotlib import pyplot as plt from sklearn.datasets import load_iris from sklearn.metrics import ConfusionMatrixDisplay from sklearn.model_selection import train_test_split from xgboost import XGBClassifier def UpperCamelCase_ ( _UpperCAmelCase : dict ) -> tuple: """simple docstring""" return (data["data"], data["target"]) def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray ) -> XGBClassifier: """simple docstring""" _UpperCAmelCase : Any = XGBClassifier() classifier.fit(_UpperCAmelCase , _UpperCAmelCase ) return classifier def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : List[str] = load_iris() _UpperCAmelCase , _UpperCAmelCase : Dict = data_handling(_UpperCAmelCase ) _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : str = train_test_split( _UpperCAmelCase , _UpperCAmelCase , test_size=0.2_5 ) _UpperCAmelCase : Optional[Any] = iris["target_names"] # Create an XGBoost Classifier from the training data _UpperCAmelCase : Tuple = xgboost(_UpperCAmelCase , _UpperCAmelCase ) # Display the confusion matrix of the classifier with both training and test sets ConfusionMatrixDisplay.from_estimator( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , display_labels=_UpperCAmelCase , cmap="Blues" , normalize="true" , ) plt.title("Normalized Confusion Matrix - IRIS Dataset" ) plt.show() if __name__ == "__main__": import doctest doctest.testmod(verbose=True) main()
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'''simple docstring''' import json from typing import List, Optional, Tuple from tokenizers import normalizers from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import logging from .tokenization_distilbert import DistilBertTokenizer __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """vocab.txt""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : Dict = { """vocab_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/vocab.txt""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/vocab.txt""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-german-cased""": """https://huggingface.co/distilbert-base-german-cased/resolve/main/vocab.txt""", """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/vocab.txt""" ), }, """tokenizer_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/tokenizer.json""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/tokenizer.json""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-german-cased""": ( """https://huggingface.co/distilbert-base-german-cased/resolve/main/tokenizer.json""" ), """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/tokenizer.json""" ), }, } __SCREAMING_SNAKE_CASE : Optional[Any] = { """distilbert-base-uncased""": 512, """distilbert-base-uncased-distilled-squad""": 512, """distilbert-base-cased""": 512, """distilbert-base-cased-distilled-squad""": 512, """distilbert-base-german-cased""": 512, """distilbert-base-multilingual-cased""": 512, } __SCREAMING_SNAKE_CASE : List[Any] = { """distilbert-base-uncased""": {"""do_lower_case""": True}, """distilbert-base-uncased-distilled-squad""": {"""do_lower_case""": True}, """distilbert-base-cased""": {"""do_lower_case""": False}, """distilbert-base-cased-distilled-squad""": {"""do_lower_case""": False}, """distilbert-base-german-cased""": {"""do_lower_case""": False}, """distilbert-base-multilingual-cased""": {"""do_lower_case""": False}, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = VOCAB_FILES_NAMES __UpperCamelCase: str = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: Optional[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Any = PRETRAINED_INIT_CONFIGURATION __UpperCamelCase: str = ["input_ids", "attention_mask"] __UpperCamelCase: List[str] = DistilBertTokenizer def __init__( self : str , A : int=None , A : Tuple=None , A : Tuple=True , A : Dict="[UNK]" , A : List[Any]="[SEP]" , A : Optional[Any]="[PAD]" , A : Dict="[CLS]" , A : Tuple="[MASK]" , A : str=True , A : Dict=None , **A : List[Any] , ): super().__init__( A , tokenizer_file=A , do_lower_case=A , unk_token=A , sep_token=A , pad_token=A , cls_token=A , mask_token=A , tokenize_chinese_chars=A , strip_accents=A , **A , ) _UpperCAmelCase : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() ) if ( normalizer_state.get("lowercase" , A ) != do_lower_case or normalizer_state.get("strip_accents" , A ) != strip_accents or normalizer_state.get("handle_chinese_chars" , A ) != tokenize_chinese_chars ): _UpperCAmelCase : Dict = getattr(A , normalizer_state.pop("type" ) ) _UpperCAmelCase : int = do_lower_case _UpperCAmelCase : Optional[int] = strip_accents _UpperCAmelCase : str = tokenize_chinese_chars _UpperCAmelCase : List[Any] = normalizer_class(**A ) _UpperCAmelCase : Dict = do_lower_case def _A ( self : List[Any] , A : Tuple , A : Any=None ): _UpperCAmelCase : Optional[int] = [self.cls_token_id] + token_ids_a + [self.sep_token_id] if token_ids_a: output += token_ids_a + [self.sep_token_id] return output def _A ( self : int , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Any = [self.sep_token_id] _UpperCAmelCase : str = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Dict , A : str , A : Optional[str] = None ): _UpperCAmelCase : Any = self._tokenizer.model.save(A , name=A ) return tuple(A )
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1
'''simple docstring''' import os from pickle import UnpicklingError from typing import Dict, Tuple import jax import jax.numpy as jnp import numpy as np from flax.serialization import from_bytes from flax.traverse_util import flatten_dict, unflatten_dict import transformers from .utils import logging __SCREAMING_SNAKE_CASE : Optional[int] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : List[Any] , _UpperCAmelCase : List[Any] , _UpperCAmelCase : List[Any]=False ) -> str: """simple docstring""" try: import torch # noqa: F401 except ImportError: logger.error( "Loading a PyTorch model in Flax, requires both PyTorch and Flax to be installed. Please see" " https://pytorch.org/ and https://flax.readthedocs.io/en/latest/installation.html for installation" " instructions." ) raise if not is_sharded: _UpperCAmelCase : Optional[int] = os.path.abspath(_UpperCAmelCase ) logger.info(F"""Loading PyTorch weights from {pt_path}""" ) _UpperCAmelCase : Tuple = torch.load(_UpperCAmelCase , map_location="cpu" ) logger.info(F"""PyTorch checkpoint contains {sum(t.numel() for t in pt_state_dict.values() ):,} parameters.""" ) _UpperCAmelCase : Tuple = convert_pytorch_state_dict_to_flax(_UpperCAmelCase , _UpperCAmelCase ) else: # model is sharded and pytorch_checkpoint_path already contains the list of .pt shard files _UpperCAmelCase : Optional[Any] = convert_pytorch_sharded_state_dict_to_flax(_UpperCAmelCase , _UpperCAmelCase ) return flax_state_dict def UpperCamelCase_ ( _UpperCAmelCase : Tuple[str] , _UpperCAmelCase : np.ndarray , _UpperCAmelCase : Dict[str, jnp.ndarray] , _UpperCAmelCase : str , ) -> (Tuple[str], np.ndarray): """simple docstring""" def is_key_or_prefix_key_in_dict(_UpperCAmelCase : Tuple[str] ) -> bool: return len(set(_UpperCAmelCase ) & {key, (model_prefix,) + key} ) > 0 # layer norm _UpperCAmelCase : int = pt_tuple_key[:-1] + ("scale",) if pt_tuple_key[-1] in ["weight", "gamma"] and is_key_or_prefix_key_in_dict(_UpperCAmelCase ): return renamed_pt_tuple_key, pt_tensor # batch norm layer mean _UpperCAmelCase : Tuple = pt_tuple_key[:-1] + ("mean",) if pt_tuple_key[-1] == "running_mean" and not is_key_or_prefix_key_in_dict(_UpperCAmelCase ): return renamed_pt_tuple_key, pt_tensor # batch norm layer var _UpperCAmelCase : List[str] = pt_tuple_key[:-1] + ("var",) if pt_tuple_key[-1] == "running_var" and not is_key_or_prefix_key_in_dict(_UpperCAmelCase ): return renamed_pt_tuple_key, pt_tensor # embedding _UpperCAmelCase : Optional[Any] = pt_tuple_key[:-1] + ("embedding",) if pt_tuple_key[-1] == "weight" and is_key_or_prefix_key_in_dict(_UpperCAmelCase ): return renamed_pt_tuple_key, pt_tensor # conv layer _UpperCAmelCase : int = pt_tuple_key[:-1] + ("kernel",) if pt_tuple_key[-1] == "weight" and pt_tensor.ndim == 4 and not is_key_or_prefix_key_in_dict(_UpperCAmelCase ): _UpperCAmelCase : int = pt_tensor.transpose(2 , 3 , 1 , 0 ) return renamed_pt_tuple_key, pt_tensor # linear layer _UpperCAmelCase : Tuple = pt_tuple_key[:-1] + ("kernel",) if pt_tuple_key[-1] == "weight" and not is_key_or_prefix_key_in_dict(_UpperCAmelCase ): _UpperCAmelCase : Tuple = pt_tensor.T return renamed_pt_tuple_key, pt_tensor # old PyTorch layer norm weight _UpperCAmelCase : Any = pt_tuple_key[:-1] + ("weight",) if pt_tuple_key[-1] == "gamma": return renamed_pt_tuple_key, pt_tensor # old PyTorch layer norm bias _UpperCAmelCase : Tuple = pt_tuple_key[:-1] + ("bias",) if pt_tuple_key[-1] == "beta": return renamed_pt_tuple_key, pt_tensor # New `weight_norm` from https://github.com/huggingface/transformers/pull/24030 _UpperCAmelCase : List[str] = None if pt_tuple_key[-3::2] == ("parametrizations", "original0"): _UpperCAmelCase : List[str] = pt_tuple_key[-2] + "_g" elif pt_tuple_key[-3::2] == ("parametrizations", "original1"): _UpperCAmelCase : int = pt_tuple_key[-2] + "_v" if name is not None: _UpperCAmelCase : Tuple = pt_tuple_key[:-3] + (name,) return renamed_pt_tuple_key, pt_tensor return pt_tuple_key, pt_tensor def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : List[Any] ) -> Tuple: """simple docstring""" _UpperCAmelCase : Optional[int] = {k: v.numpy() for k, v in pt_state_dict.items()} _UpperCAmelCase : Optional[Any] = flax_model.base_model_prefix # use params dict if the model contains batch norm layers if "params" in flax_model.params: _UpperCAmelCase : str = flax_model.params["params"] else: _UpperCAmelCase : Union[str, Any] = flax_model.params _UpperCAmelCase : List[Any] = flatten_dict(_UpperCAmelCase ) # add batch_stats keys,values to dict if "batch_stats" in flax_model.params: _UpperCAmelCase : Dict = flatten_dict(flax_model.params["batch_stats"] ) random_flax_state_dict.update(_UpperCAmelCase ) _UpperCAmelCase : str = {} _UpperCAmelCase : List[Any] = (model_prefix not in flax_model_params) and ( model_prefix in {k.split("." )[0] for k in pt_state_dict.keys()} ) _UpperCAmelCase : List[str] = (model_prefix in flax_model_params) and ( model_prefix not in {k.split("." )[0] for k in pt_state_dict.keys()} ) # Need to change some parameters name to match Flax names for pt_key, pt_tensor in pt_state_dict.items(): _UpperCAmelCase : int = tuple(pt_key.split("." ) ) # remove base model prefix if necessary _UpperCAmelCase : Any = pt_tuple_key[0] == model_prefix if load_model_with_head_into_base_model and has_base_model_prefix: _UpperCAmelCase : Tuple = pt_tuple_key[1:] # Correctly rename weight parameters _UpperCAmelCase , _UpperCAmelCase : List[Any] = rename_key_and_reshape_tensor( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) # add model prefix if necessary _UpperCAmelCase : Optional[int] = (model_prefix,) + flax_key in random_flax_state_dict if load_base_model_into_model_with_head and require_base_model_prefix: _UpperCAmelCase : Union[str, Any] = (model_prefix,) + flax_key if flax_key in random_flax_state_dict: if flax_tensor.shape != random_flax_state_dict[flax_key].shape: raise ValueError( F"""PyTorch checkpoint seems to be incorrect. Weight {pt_key} was expected to be of shape """ F"""{random_flax_state_dict[flax_key].shape}, but is {flax_tensor.shape}.""" ) # add batch stats if the model contains batchnorm layers if "batch_stats" in flax_model.params: if "mean" in flax_key[-1] or "var" in flax_key[-1]: _UpperCAmelCase : List[str] = jnp.asarray(_UpperCAmelCase ) continue # remove num_batches_tracked key if "num_batches_tracked" in flax_key[-1]: flax_state_dict.pop(_UpperCAmelCase , _UpperCAmelCase ) continue # also add unexpected weight so that warning is thrown _UpperCAmelCase : Union[str, Any] = jnp.asarray(_UpperCAmelCase ) else: # also add unexpected weight so that warning is thrown _UpperCAmelCase : Optional[int] = jnp.asarray(_UpperCAmelCase ) return unflatten_dict(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Tuple , _UpperCAmelCase : Optional[Any] ) -> Optional[int]: """simple docstring""" import torch # Load the index _UpperCAmelCase : Union[str, Any] = {} for shard_file in shard_filenames: # load using msgpack utils _UpperCAmelCase : List[str] = torch.load(_UpperCAmelCase ) _UpperCAmelCase : int = {k: v.numpy() for k, v in pt_state_dict.items()} _UpperCAmelCase : List[Any] = flax_model.base_model_prefix # use params dict if the model contains batch norm layers and then add batch_stats keys,values to dict if "batch_stats" in flax_model.params: _UpperCAmelCase : Optional[Any] = flax_model.params["params"] _UpperCAmelCase : List[Any] = flatten_dict(_UpperCAmelCase ) random_flax_state_dict.update(flatten_dict(flax_model.params["batch_stats"] ) ) else: _UpperCAmelCase : List[Any] = flax_model.params _UpperCAmelCase : List[str] = flatten_dict(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = (model_prefix not in flax_model_params) and ( model_prefix in {k.split("." )[0] for k in pt_state_dict.keys()} ) _UpperCAmelCase : int = (model_prefix in flax_model_params) and ( model_prefix not in {k.split("." )[0] for k in pt_state_dict.keys()} ) # Need to change some parameters name to match Flax names for pt_key, pt_tensor in pt_state_dict.items(): _UpperCAmelCase : int = tuple(pt_key.split("." ) ) # remove base model prefix if necessary _UpperCAmelCase : List[Any] = pt_tuple_key[0] == model_prefix if load_model_with_head_into_base_model and has_base_model_prefix: _UpperCAmelCase : str = pt_tuple_key[1:] # Correctly rename weight parameters _UpperCAmelCase , _UpperCAmelCase : Tuple = rename_key_and_reshape_tensor( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) # add model prefix if necessary _UpperCAmelCase : Tuple = (model_prefix,) + flax_key in random_flax_state_dict if load_base_model_into_model_with_head and require_base_model_prefix: _UpperCAmelCase : Tuple = (model_prefix,) + flax_key if flax_key in random_flax_state_dict: if flax_tensor.shape != random_flax_state_dict[flax_key].shape: raise ValueError( F"""PyTorch checkpoint seems to be incorrect. Weight {pt_key} was expected to be of shape """ F"""{random_flax_state_dict[flax_key].shape}, but is {flax_tensor.shape}.""" ) # add batch stats if the model contains batchnorm layers if "batch_stats" in flax_model.params: if "mean" in flax_key[-1]: _UpperCAmelCase : Union[str, Any] = jnp.asarray(_UpperCAmelCase ) continue if "var" in flax_key[-1]: _UpperCAmelCase : str = jnp.asarray(_UpperCAmelCase ) continue # remove num_batches_tracked key if "num_batches_tracked" in flax_key[-1]: flax_state_dict.pop(_UpperCAmelCase , _UpperCAmelCase ) continue # also add unexpected weight so that warning is thrown _UpperCAmelCase : List[str] = jnp.asarray(_UpperCAmelCase ) else: # also add unexpected weight so that warning is thrown _UpperCAmelCase : Any = jnp.asarray(_UpperCAmelCase ) return unflatten_dict(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] , _UpperCAmelCase : Any ) -> str: """simple docstring""" _UpperCAmelCase : List[Any] = os.path.abspath(_UpperCAmelCase ) logger.info(F"""Loading Flax weights from {flax_checkpoint_path}""" ) # import correct flax class _UpperCAmelCase : List[str] = getattr(_UpperCAmelCase , "Flax" + model.__class__.__name__ ) # load flax weight dict with open(_UpperCAmelCase , "rb" ) as state_f: try: _UpperCAmelCase : Dict = from_bytes(_UpperCAmelCase , state_f.read() ) except UnpicklingError: raise EnvironmentError(F"""Unable to convert {flax_checkpoint_path} to Flax deserializable object. """ ) return load_flax_weights_in_pytorch_model(_UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Optional[Any] , _UpperCAmelCase : int ) -> int: """simple docstring""" try: import torch # noqa: F401 except ImportError: logger.error( "Loading a Flax weights in PyTorch, requires both PyTorch and Flax to be installed. Please see" " https://pytorch.org/ and https://flax.readthedocs.io/en/latest/installation.html for installation" " instructions." ) raise # check if we have bf16 weights _UpperCAmelCase : List[str] = flatten_dict(jax.tree_util.tree_map(lambda _UpperCAmelCase : x.dtype == jnp.bfloataa , _UpperCAmelCase ) ).values() if any(_UpperCAmelCase ): # convert all weights to fp32 if the are bf16 since torch.from_numpy can-not handle bf16 # and bf16 is not fully supported in PT yet. logger.warning( "Found ``bfloat16`` weights in Flax model. Casting all ``bfloat16`` weights to ``float32`` " "before loading those in PyTorch model." ) _UpperCAmelCase : Optional[int] = jax.tree_util.tree_map( lambda _UpperCAmelCase : params.astype(np.floataa ) if params.dtype == jnp.bfloataa else params , _UpperCAmelCase ) _UpperCAmelCase : Tuple = flatten_dict(_UpperCAmelCase ) _UpperCAmelCase : List[str] = pt_model.state_dict() _UpperCAmelCase : Tuple = (pt_model.base_model_prefix in flax_state) and ( pt_model.base_model_prefix not in {k.split("." )[0] for k in pt_model_dict.keys()} ) _UpperCAmelCase : Union[str, Any] = (pt_model.base_model_prefix not in flax_state) and ( pt_model.base_model_prefix in {k.split("." )[0] for k in pt_model_dict.keys()} ) # keep track of unexpected & missing keys _UpperCAmelCase : List[Any] = [] _UpperCAmelCase : str = set(pt_model_dict.keys() ) for flax_key_tuple, flax_tensor in flax_state_dict.items(): _UpperCAmelCase : Tuple = flax_key_tuple[0] == pt_model.base_model_prefix _UpperCAmelCase : Optional[Any] = ".".join((pt_model.base_model_prefix,) + flax_key_tuple ) in pt_model_dict # adapt flax_key to prepare for loading from/to base model only if load_model_with_head_into_base_model and has_base_model_prefix: _UpperCAmelCase : str = flax_key_tuple[1:] elif load_base_model_into_model_with_head and require_base_model_prefix: _UpperCAmelCase : int = (pt_model.base_model_prefix,) + flax_key_tuple # rename flax weights to PyTorch format if flax_key_tuple[-1] == "kernel" and flax_tensor.ndim == 4 and ".".join(_UpperCAmelCase ) not in pt_model_dict: # conv layer _UpperCAmelCase : int = flax_key_tuple[:-1] + ("weight",) _UpperCAmelCase : Optional[Any] = jnp.transpose(_UpperCAmelCase , (3, 2, 0, 1) ) elif flax_key_tuple[-1] == "kernel" and ".".join(_UpperCAmelCase ) not in pt_model_dict: # linear layer _UpperCAmelCase : List[Any] = flax_key_tuple[:-1] + ("weight",) _UpperCAmelCase : List[Any] = flax_tensor.T elif flax_key_tuple[-1] in ["scale", "embedding"]: _UpperCAmelCase : int = flax_key_tuple[:-1] + ("weight",) # adding batch stats from flax batch norm to pt elif "mean" in flax_key_tuple[-1]: _UpperCAmelCase : Optional[Any] = flax_key_tuple[:-1] + ("running_mean",) elif "var" in flax_key_tuple[-1]: _UpperCAmelCase : List[str] = flax_key_tuple[:-1] + ("running_var",) if "batch_stats" in flax_state: _UpperCAmelCase : Union[str, Any] = ".".join(flax_key_tuple[1:] ) # Remove the params/batch_stats header else: _UpperCAmelCase : Optional[Any] = ".".join(_UpperCAmelCase ) # We also need to look at `pt_model_dict` and see if there are keys requiring further transformation. _UpperCAmelCase : Optional[Any] = {} # New `weight_norm` from https://github.com/huggingface/transformers/pull/24030 for key in pt_model_dict: _UpperCAmelCase : Optional[int] = key.split("." ) _UpperCAmelCase : Tuple = None if key_components[-3::2] == ["parametrizations", "original0"]: _UpperCAmelCase : Union[str, Any] = key_components[-2] + "_g" elif key_components[-3::2] == ["parametrizations", "original1"]: _UpperCAmelCase : int = key_components[-2] + "_v" if name is not None: _UpperCAmelCase : List[str] = key_components[:-3] + [name] _UpperCAmelCase : Optional[Any] = ".".join(_UpperCAmelCase ) _UpperCAmelCase : Any = key if flax_key in special_pt_names: _UpperCAmelCase : Union[str, Any] = special_pt_names[flax_key] if flax_key in pt_model_dict: if flax_tensor.shape != pt_model_dict[flax_key].shape: raise ValueError( F"""Flax checkpoint seems to be incorrect. Weight {flax_key_tuple} was expected """ F"""to be of shape {pt_model_dict[flax_key].shape}, but is {flax_tensor.shape}.""" ) else: # add weight to pytorch dict _UpperCAmelCase : Optional[Any] = np.asarray(_UpperCAmelCase ) if not isinstance(_UpperCAmelCase , np.ndarray ) else flax_tensor _UpperCAmelCase : int = torch.from_numpy(_UpperCAmelCase ) # remove from missing keys missing_keys.remove(_UpperCAmelCase ) else: # weight is not expected by PyTorch model unexpected_keys.append(_UpperCAmelCase ) pt_model.load_state_dict(_UpperCAmelCase ) # re-transform missing_keys to list _UpperCAmelCase : Optional[int] = list(_UpperCAmelCase ) if len(_UpperCAmelCase ) > 0: logger.warning( "Some weights of the Flax model were not used when initializing the PyTorch model" F""" {pt_model.__class__.__name__}: {unexpected_keys}\n- This IS expected if you are initializing""" F""" {pt_model.__class__.__name__} from a Flax model trained on another task or with another architecture""" " (e.g. initializing a BertForSequenceClassification model from a FlaxBertForPreTraining model).\n- This" F""" IS NOT expected if you are initializing {pt_model.__class__.__name__} from a Flax model that you expect""" " to be exactly identical (e.g. initializing a BertForSequenceClassification model from a" " FlaxBertForSequenceClassification model)." ) else: logger.warning(F"""All Flax model weights were used when initializing {pt_model.__class__.__name__}.\n""" ) if len(_UpperCAmelCase ) > 0: logger.warning( F"""Some weights of {pt_model.__class__.__name__} were not initialized from the Flax model and are newly""" F""" initialized: {missing_keys}\nYou should probably TRAIN this model on a down-stream task to be able to""" " use it for predictions and inference." ) else: logger.warning( F"""All the weights of {pt_model.__class__.__name__} were initialized from the Flax model.\n""" "If your task is similar to the task the model of the checkpoint was trained on, " F"""you can already use {pt_model.__class__.__name__} for predictions without further training.""" ) return pt_model
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'''simple docstring''' import shutil import tempfile import unittest from unittest.mock import patch from transformers import ( DefaultFlowCallback, IntervalStrategy, PrinterCallback, ProgressCallback, Trainer, TrainerCallback, TrainingArguments, is_torch_available, ) from transformers.testing_utils import require_torch if is_torch_available(): from transformers.trainer import DEFAULT_CALLBACKS from .test_trainer import RegressionDataset, RegressionModelConfig, RegressionPreTrainedModel class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = [] def _A ( self : Any , A : Union[str, Any] , A : Optional[int] , A : List[str] , **A : Tuple ): self.events.append("on_init_end" ) def _A ( self : Any , A : str , A : List[Any] , A : List[Any] , **A : Tuple ): self.events.append("on_train_begin" ) def _A ( self : Tuple , A : List[str] , A : Tuple , A : int , **A : List[str] ): self.events.append("on_train_end" ) def _A ( self : Optional[Any] , A : Dict , A : Any , A : Optional[Any] , **A : List[Any] ): self.events.append("on_epoch_begin" ) def _A ( self : Optional[Any] , A : List[Any] , A : List[str] , A : Optional[int] , **A : Optional[int] ): self.events.append("on_epoch_end" ) def _A ( self : List[str] , A : Optional[int] , A : List[Any] , A : Union[str, Any] , **A : Any ): self.events.append("on_step_begin" ) def _A ( self : Tuple , A : Union[str, Any] , A : int , A : Optional[int] , **A : int ): self.events.append("on_step_end" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Union[str, Any] , A : str , **A : Union[str, Any] ): self.events.append("on_evaluate" ) def _A ( self : Optional[Any] , A : Optional[int] , A : Dict , A : List[Any] , **A : Dict ): self.events.append("on_predict" ) def _A ( self : Dict , A : Dict , A : List[Any] , A : Dict , **A : str ): self.events.append("on_save" ) def _A ( self : Tuple , A : Optional[Any] , A : Union[str, Any] , A : Optional[int] , **A : Dict ): self.events.append("on_log" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Tuple , A : Tuple , **A : List[str] ): self.events.append("on_prediction_step" ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[int] ): _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() def _A ( self : List[Any] ): shutil.rmtree(self.output_dir ) def _A ( self : Union[str, Any] , A : Optional[int]=0 , A : Optional[Any]=0 , A : Optional[Any]=64 , A : Dict=64 , A : Any=None , A : Tuple=False , **A : Optional[int] ): # disable_tqdm in TrainingArguments has a flaky default since it depends on the level of logging. We make sure # its set to False since the tests later on depend on its value. _UpperCAmelCase : str = RegressionDataset(length=A ) _UpperCAmelCase : Union[str, Any] = RegressionDataset(length=A ) _UpperCAmelCase : Any = RegressionModelConfig(a=A , b=A ) _UpperCAmelCase : List[Any] = RegressionPreTrainedModel(A ) _UpperCAmelCase : Dict = TrainingArguments(self.output_dir , disable_tqdm=A , report_to=[] , **A ) return Trainer( A , A , train_dataset=A , eval_dataset=A , callbacks=A , ) def _A ( self : str , A : List[str] , A : List[str] ): self.assertEqual(len(A ) , len(A ) ) # Order doesn't matter _UpperCAmelCase : Tuple = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) _UpperCAmelCase : Any = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) for cba, cba in zip(A , A ): if isinstance(A , A ) and isinstance(A , A ): self.assertEqual(A , A ) elif isinstance(A , A ) and not isinstance(A , A ): self.assertEqual(A , cba.__class__ ) elif not isinstance(A , A ) and isinstance(A , A ): self.assertEqual(cba.__class__ , A ) else: self.assertEqual(A , A ) def _A ( self : int , A : List[str] ): _UpperCAmelCase : List[str] = ["on_init_end", "on_train_begin"] _UpperCAmelCase : str = 0 _UpperCAmelCase : Optional[Any] = len(trainer.get_eval_dataloader() ) _UpperCAmelCase : Optional[int] = ["on_prediction_step"] * len(trainer.get_eval_dataloader() ) + ["on_log", "on_evaluate"] for _ in range(trainer.state.num_train_epochs ): expected_events.append("on_epoch_begin" ) for _ in range(A ): step += 1 expected_events += ["on_step_begin", "on_step_end"] if step % trainer.args.logging_steps == 0: expected_events.append("on_log" ) if trainer.args.evaluation_strategy == IntervalStrategy.STEPS and step % trainer.args.eval_steps == 0: expected_events += evaluation_events.copy() if step % trainer.args.save_steps == 0: expected_events.append("on_save" ) expected_events.append("on_epoch_end" ) if trainer.args.evaluation_strategy == IntervalStrategy.EPOCH: expected_events += evaluation_events.copy() expected_events += ["on_log", "on_train_end"] return expected_events def _A ( self : str ): _UpperCAmelCase : Any = self.get_trainer() _UpperCAmelCase : int = DEFAULT_CALLBACKS.copy() + [ProgressCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # Callbacks passed at init are added to the default callbacks _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) expected_callbacks.append(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # TrainingArguments.disable_tqdm controls if use ProgressCallback or PrinterCallback _UpperCAmelCase : List[Any] = self.get_trainer(disable_tqdm=A ) _UpperCAmelCase : Tuple = DEFAULT_CALLBACKS.copy() + [PrinterCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = DEFAULT_CALLBACKS.copy() + [ProgressCallback] _UpperCAmelCase : Dict = self.get_trainer() # We can add, pop, or remove by class name trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : Optional[Any] = self.get_trainer() _UpperCAmelCase : Any = trainer.pop_callback(A ) self.assertEqual(cb.__class__ , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # We can also add, pop, or remove by instance _UpperCAmelCase : Union[str, Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : List[Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] _UpperCAmelCase : Union[str, Any] = trainer.pop_callback(A ) self.assertEqual(A , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): import warnings # XXX: for now ignore scatter_gather warnings in this test since it's not relevant to what's being tested warnings.simplefilter(action="ignore" , category=A ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) trainer.train() _UpperCAmelCase : Union[str, Any] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # Independent log/save/eval _UpperCAmelCase : Tuple = self.get_trainer(callbacks=[MyTestTrainerCallback] , logging_steps=5 ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : List[str] = self.get_trainer(callbacks=[MyTestTrainerCallback] , save_steps=5 ) trainer.train() _UpperCAmelCase : Tuple = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : int = self.get_trainer(callbacks=[MyTestTrainerCallback] , eval_steps=5 , evaluation_strategy="steps" ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] , evaluation_strategy="epoch" ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # A bit of everything _UpperCAmelCase : int = self.get_trainer( callbacks=[MyTestTrainerCallback] , logging_steps=3 , save_steps=10 , eval_steps=5 , evaluation_strategy="steps" , ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # warning should be emitted for duplicated callbacks with patch("transformers.trainer_callback.logger.warning" ) as warn_mock: _UpperCAmelCase : Optional[Any] = self.get_trainer( callbacks=[MyTestTrainerCallback, MyTestTrainerCallback] , ) assert str(A ) in warn_mock.call_args[0][0]
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1
'''simple docstring''' from __future__ import annotations from collections.abc import Sequence from typing import Literal def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> str | Literal[False]: """simple docstring""" _UpperCAmelCase : Optional[Any] = list(_UpperCAmelCase ) _UpperCAmelCase : Dict = list(_UpperCAmelCase ) _UpperCAmelCase : List[str] = 0 for i in range(len(_UpperCAmelCase ) ): if lista[i] != lista[i]: count += 1 _UpperCAmelCase : Tuple = "_" if count > 1: return False else: return "".join(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : list[str] ) -> list[str]: """simple docstring""" _UpperCAmelCase : List[Any] = [] while True: _UpperCAmelCase : List[str] = ["$"] * len(_UpperCAmelCase ) _UpperCAmelCase : Union[str, Any] = [] for i in range(len(_UpperCAmelCase ) ): for j in range(i + 1 , len(_UpperCAmelCase ) ): _UpperCAmelCase : str = compare_string(binary[i] , binary[j] ) if k is False: _UpperCAmelCase : Optional[Any] = "*" _UpperCAmelCase : Optional[Any] = "*" temp.append("X" ) for i in range(len(_UpperCAmelCase ) ): if checka[i] == "$": pi.append(binary[i] ) if len(_UpperCAmelCase ) == 0: return pi _UpperCAmelCase : Dict = list(set(_UpperCAmelCase ) ) def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Sequence[float] ) -> list[str]: """simple docstring""" _UpperCAmelCase : int = [] for minterm in minterms: _UpperCAmelCase : str = "" for _ in range(_UpperCAmelCase ): _UpperCAmelCase : List[Any] = str(minterm % 2 ) + string minterm //= 2 temp.append(_UpperCAmelCase ) return temp def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : int ) -> bool: """simple docstring""" _UpperCAmelCase : Tuple = list(_UpperCAmelCase ) _UpperCAmelCase : Dict = list(_UpperCAmelCase ) _UpperCAmelCase : Union[str, Any] = 0 for i in range(len(_UpperCAmelCase ) ): if lista[i] != lista[i]: count_n += 1 return count_n == count def UpperCamelCase_ ( _UpperCAmelCase : list[list[int]] , _UpperCAmelCase : list[str] ) -> list[str]: """simple docstring""" _UpperCAmelCase : str = [] _UpperCAmelCase : str = [0] * len(_UpperCAmelCase ) for i in range(len(chart[0] ) ): _UpperCAmelCase : List[str] = 0 _UpperCAmelCase : Dict = -1 for j in range(len(_UpperCAmelCase ) ): if chart[j][i] == 1: count += 1 _UpperCAmelCase : int = j if count == 1: _UpperCAmelCase : int = 1 for i in range(len(_UpperCAmelCase ) ): if select[i] == 1: for j in range(len(chart[0] ) ): if chart[i][j] == 1: for k in range(len(_UpperCAmelCase ) ): _UpperCAmelCase : Dict = 0 temp.append(prime_implicants[i] ) while True: _UpperCAmelCase : Union[str, Any] = 0 _UpperCAmelCase : Any = -1 _UpperCAmelCase : Tuple = 0 for i in range(len(_UpperCAmelCase ) ): _UpperCAmelCase : List[Any] = chart[i].count(1 ) if count_n > max_n: _UpperCAmelCase : Optional[int] = count_n _UpperCAmelCase : Dict = i if max_n == 0: return temp temp.append(prime_implicants[rem] ) for i in range(len(chart[0] ) ): if chart[rem][i] == 1: for j in range(len(_UpperCAmelCase ) ): _UpperCAmelCase : Tuple = 0 def UpperCamelCase_ ( _UpperCAmelCase : list[str] , _UpperCAmelCase : list[str] ) -> list[list[int]]: """simple docstring""" _UpperCAmelCase : int = [[0 for x in range(len(_UpperCAmelCase ) )] for x in range(len(_UpperCAmelCase ) )] for i in range(len(_UpperCAmelCase ) ): _UpperCAmelCase : Optional[int] = prime_implicants[i].count("_" ) for j in range(len(_UpperCAmelCase ) ): if is_for_table(prime_implicants[i] , binary[j] , _UpperCAmelCase ): _UpperCAmelCase : List[Any] = 1 return chart def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : Dict = int(input("Enter the no. of variables\n" ) ) _UpperCAmelCase : Dict = [ float(_UpperCAmelCase ) for x in input( "Enter the decimal representation of Minterms 'Spaces Separated'\n" ).split() ] _UpperCAmelCase : List[str] = decimal_to_binary(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : int = check(_UpperCAmelCase ) print("Prime Implicants are:" ) print(_UpperCAmelCase ) _UpperCAmelCase : Tuple = prime_implicant_chart(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = selection(_UpperCAmelCase , _UpperCAmelCase ) print("Essential Prime Implicants are:" ) print(_UpperCAmelCase ) if __name__ == "__main__": import doctest doctest.testmod() main()
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_video_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import VivitImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : int , A : Dict , A : Optional[int]=7 , A : Tuple=3 , A : Optional[Any]=10 , A : int=18 , A : Dict=30 , A : List[str]=400 , A : int=True , A : Optional[Any]=None , A : Optional[Any]=True , A : List[Any]=[0.5, 0.5, 0.5] , A : List[str]=[0.5, 0.5, 0.5] , A : Optional[int]=None , ): _UpperCAmelCase : Dict = size if size is not None else {"shortest_edge": 18} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : Tuple = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : Optional[int] = num_channels _UpperCAmelCase : Optional[Any] = num_frames _UpperCAmelCase : Any = image_size _UpperCAmelCase : Dict = min_resolution _UpperCAmelCase : Any = max_resolution _UpperCAmelCase : Optional[int] = do_resize _UpperCAmelCase : str = size _UpperCAmelCase : List[Any] = do_normalize _UpperCAmelCase : Any = image_mean _UpperCAmelCase : Tuple = image_std _UpperCAmelCase : Any = crop_size def _A ( self : List[Any] ): return { "image_mean": self.image_mean, "image_std": self.image_std, "do_normalize": self.do_normalize, "do_resize": self.do_resize, "size": self.size, "crop_size": self.crop_size, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = VivitImageProcessor if is_vision_available() else None def _A ( self : int ): _UpperCAmelCase : Tuple = VivitImageProcessingTester(self ) @property def _A ( self : Optional[Any] ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Union[str, Any] ): _UpperCAmelCase : str = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "image_mean" ) ) self.assertTrue(hasattr(A , "image_std" ) ) self.assertTrue(hasattr(A , "do_normalize" ) ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "size" ) ) def _A ( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 18} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Optional[int] = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Tuple ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PIL videos _UpperCAmelCase : Any = prepare_video_inputs(self.image_processor_tester , equal_resolution=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , Image.Image ) # Test not batched input _UpperCAmelCase : str = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : List[Any] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , np.ndarray ) # Test not batched input _UpperCAmelCase : Tuple = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[int] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , torch.Tensor ) # Test not batched input _UpperCAmelCase : Optional[Any] = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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'''simple docstring''' from typing import Mapping from ...configuration_utils import PretrainedConfig from ...onnx import OnnxSeqaSeqConfigWithPast from ...utils import logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Tuple = { """t5-small""": """https://huggingface.co/t5-small/resolve/main/config.json""", """t5-base""": """https://huggingface.co/t5-base/resolve/main/config.json""", """t5-large""": """https://huggingface.co/t5-large/resolve/main/config.json""", """t5-3b""": """https://huggingface.co/t5-3b/resolve/main/config.json""", """t5-11b""": """https://huggingface.co/t5-11b/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = "t5" __UpperCamelCase: Optional[int] = ["past_key_values"] __UpperCamelCase: Dict = {"hidden_size": "d_model", "num_attention_heads": "num_heads", "num_hidden_layers": "num_layers"} def __init__( self : str , A : Optional[Any]=32128 , A : List[Any]=512 , A : int=64 , A : Union[str, Any]=2048 , A : Dict=6 , A : int=None , A : Any=8 , A : List[str]=32 , A : Optional[Any]=128 , A : Tuple=0.1 , A : Any=1E-6 , A : List[Any]=1.0 , A : List[Any]="relu" , A : int=True , A : Any=True , A : List[str]=0 , A : Optional[Any]=1 , **A : int , ): _UpperCAmelCase : List[Any] = vocab_size _UpperCAmelCase : Optional[int] = d_model _UpperCAmelCase : Tuple = d_kv _UpperCAmelCase : List[str] = d_ff _UpperCAmelCase : Optional[Any] = num_layers _UpperCAmelCase : List[str] = ( num_decoder_layers if num_decoder_layers is not None else self.num_layers ) # default = symmetry _UpperCAmelCase : Optional[Any] = num_heads _UpperCAmelCase : int = relative_attention_num_buckets _UpperCAmelCase : str = relative_attention_max_distance _UpperCAmelCase : str = dropout_rate _UpperCAmelCase : int = layer_norm_epsilon _UpperCAmelCase : Dict = initializer_factor _UpperCAmelCase : str = feed_forward_proj _UpperCAmelCase : List[str] = use_cache _UpperCAmelCase : Union[str, Any] = self.feed_forward_proj.split("-" ) _UpperCAmelCase : Optional[int] = act_info[-1] _UpperCAmelCase : str = act_info[0] == "gated" if len(A ) > 1 and act_info[0] != "gated" or len(A ) > 2: raise ValueError( F"""`feed_forward_proj`: {feed_forward_proj} is not a valid activation function of the dense layer.""" "Please make sure `feed_forward_proj` is of the format `gated-{ACT_FN}` or `{ACT_FN}`, e.g. " "'gated-gelu' or 'relu'" ) # for backwards compatibility if feed_forward_proj == "gated-gelu": _UpperCAmelCase : Union[str, Any] = "gelu_new" super().__init__( pad_token_id=A , eos_token_id=A , is_encoder_decoder=A , **A , ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @property def _A ( self : Dict ): _UpperCAmelCase : Tuple = { "input_ids": {0: "batch", 1: "encoder_sequence"}, "attention_mask": {0: "batch", 1: "encoder_sequence"}, } if self.use_past: _UpperCAmelCase : Dict = "past_encoder_sequence + sequence" _UpperCAmelCase : Union[str, Any] = {0: "batch"} _UpperCAmelCase : Optional[int] = {0: "batch", 1: "past_decoder_sequence + sequence"} else: _UpperCAmelCase : int = {0: "batch", 1: "decoder_sequence"} _UpperCAmelCase : Any = {0: "batch", 1: "decoder_sequence"} if self.use_past: self.fill_with_past_key_values_(A , direction="inputs" ) return common_inputs @property def _A ( self : Optional[Any] ): return 13
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'''simple docstring''' import math from typing import Optional import numpy as np from ...configuration_utils import PretrainedConfig from ...utils import logging __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : List[Any] = { """facebook/encodec_24khz""": """https://huggingface.co/facebook/encodec_24khz/resolve/main/config.json""", """facebook/encodec_48khz""": """https://huggingface.co/facebook/encodec_48khz/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = "encodec" def __init__( self : Optional[int] , A : Union[str, Any]=[1.5, 3.0, 6.0, 12.0, 24.0] , A : List[Any]=24000 , A : Union[str, Any]=1 , A : List[Any]=False , A : Optional[int]=None , A : int=None , A : str=128 , A : List[Any]=32 , A : List[Any]=1 , A : int=[8, 5, 4, 2] , A : Optional[int]="weight_norm" , A : List[Any]=7 , A : Any=7 , A : Dict=3 , A : Optional[int]=2 , A : Dict=True , A : Dict="reflect" , A : Any=2 , A : Dict=2 , A : str=1.0 , A : Optional[int]=1024 , A : Any=None , A : Any=True , **A : str , ): _UpperCAmelCase : Optional[int] = target_bandwidths _UpperCAmelCase : List[str] = sampling_rate _UpperCAmelCase : Optional[int] = audio_channels _UpperCAmelCase : str = normalize _UpperCAmelCase : int = chunk_length_s _UpperCAmelCase : str = overlap _UpperCAmelCase : Optional[Any] = hidden_size _UpperCAmelCase : int = num_filters _UpperCAmelCase : Optional[Any] = num_residual_layers _UpperCAmelCase : Optional[int] = upsampling_ratios _UpperCAmelCase : int = norm_type _UpperCAmelCase : List[Any] = kernel_size _UpperCAmelCase : List[Any] = last_kernel_size _UpperCAmelCase : List[Any] = residual_kernel_size _UpperCAmelCase : List[str] = dilation_growth_rate _UpperCAmelCase : Dict = use_causal_conv _UpperCAmelCase : Tuple = pad_mode _UpperCAmelCase : Tuple = compress _UpperCAmelCase : List[str] = num_lstm_layers _UpperCAmelCase : List[Any] = trim_right_ratio _UpperCAmelCase : int = codebook_size _UpperCAmelCase : Optional[Any] = codebook_dim if codebook_dim is not None else hidden_size _UpperCAmelCase : Optional[int] = use_conv_shortcut if self.norm_type not in ["weight_norm", "time_group_norm"]: raise ValueError( F"""self.norm_type must be one of `\"weight_norm\"`, `\"time_group_norm\"`), got {self.norm_type}""" ) super().__init__(**A ) @property def _A ( self : Any ): if self.chunk_length_s is None: return None else: return int(self.chunk_length_s * self.sampling_rate ) @property def _A ( self : Union[str, Any] ): if self.chunk_length_s is None or self.overlap is None: return None else: return max(1 , int((1.0 - self.overlap) * self.chunk_length ) ) @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = np.prod(self.upsampling_ratios ) return math.ceil(self.sampling_rate / hop_length ) @property def _A ( self : str ): return int(1000 * self.target_bandwidths[-1] // (self.frame_rate * 10) )
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'''simple docstring''' from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available __SCREAMING_SNAKE_CASE : Optional[Any] = {"""configuration_speech_encoder_decoder""": ["""SpeechEncoderDecoderConfig"""]} try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Any = ["""SpeechEncoderDecoderModel"""] try: if not is_flax_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : List[str] = ["""FlaxSpeechEncoderDecoderModel"""] if TYPE_CHECKING: from .configuration_speech_encoder_decoder import SpeechEncoderDecoderConfig try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_speech_encoder_decoder import SpeechEncoderDecoderModel try: if not is_flax_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_flax_speech_encoder_decoder import FlaxSpeechEncoderDecoderModel else: import sys __SCREAMING_SNAKE_CASE : Any = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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'''simple docstring''' from typing import Any, Dict, List, Optional, Tuple, Union import torch from torch import nn from torch.utils.data import DistributedSampler, RandomSampler from transformers import PreTrainedModel, Trainer, logging from transformers.integrations import is_fairscale_available from transformers.models.fsmt.configuration_fsmt import FSMTConfig from transformers.optimization import ( Adafactor, AdamW, get_constant_schedule, get_constant_schedule_with_warmup, get_cosine_schedule_with_warmup, get_cosine_with_hard_restarts_schedule_with_warmup, get_linear_schedule_with_warmup, get_polynomial_decay_schedule_with_warmup, ) from transformers.trainer_pt_utils import get_tpu_sampler from transformers.training_args import ParallelMode from transformers.utils import is_torch_tpu_available if is_fairscale_available(): from fairscale.optim import OSS __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = { """linear""": get_linear_schedule_with_warmup, """cosine""": get_cosine_schedule_with_warmup, """cosine_w_restarts""": get_cosine_with_hard_restarts_schedule_with_warmup, """polynomial""": get_polynomial_decay_schedule_with_warmup, """constant""": get_constant_schedule, """constant_w_warmup""": get_constant_schedule_with_warmup, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Any , A : Optional[int]=None , A : Tuple=None , *A : Tuple , **A : List[str] ): super().__init__(*A , **A ) if config is None: assert isinstance(self.model , A ), ( "If no `config` is passed the model to be trained has to be of type `PreTrainedModel`, but is" F""" {self.model.__class__}""" ) _UpperCAmelCase : str = self.model.config else: _UpperCAmelCase : List[str] = config _UpperCAmelCase : List[Any] = data_args _UpperCAmelCase : str = self.config.tgt_vocab_size if isinstance(self.config , A ) else self.config.vocab_size if self.args.label_smoothing != 0 or (self.data_args is not None and self.data_args.ignore_pad_token_for_loss): assert self.config.pad_token_id is not None, ( "Make sure that `config.pad_token_id` is correcly defined when ignoring `pad_token` for loss" " calculation or doing label smoothing." ) if self.config.pad_token_id is None and self.config.eos_token_id is not None: logger.warning( F"""The `config.pad_token_id` is `None`. Using `config.eos_token_id` = {self.config.eos_token_id} for""" " padding.." ) if self.args.label_smoothing == 0: _UpperCAmelCase : Optional[Any] = torch.nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id ) else: # dynamically import label_smoothed_nll_loss from utils import label_smoothed_nll_loss _UpperCAmelCase : Dict = label_smoothed_nll_loss def _A ( self : Tuple , A : int ): if self.optimizer is None: _UpperCAmelCase : Tuple = ["bias", "LayerNorm.weight"] _UpperCAmelCase : str = [ { "params": [p for n, p in self.model.named_parameters() if not any(nd in n for nd in no_decay )], "weight_decay": self.args.weight_decay, }, { "params": [p for n, p in self.model.named_parameters() if any(nd in n for nd in no_decay )], "weight_decay": 0.0, }, ] _UpperCAmelCase : int = Adafactor if self.args.adafactor else AdamW if self.args.adafactor: _UpperCAmelCase : List[str] = Adafactor _UpperCAmelCase : List[Any] = {"scale_parameter": False, "relative_step": False} else: _UpperCAmelCase : List[str] = AdamW _UpperCAmelCase : List[str] = { "betas": (self.args.adam_betaa, self.args.adam_betaa), "eps": self.args.adam_epsilon, } _UpperCAmelCase : List[Any] = self.args.learning_rate if self.sharded_ddp: _UpperCAmelCase : List[Any] = OSS( params=A , optim=A , **A , ) else: _UpperCAmelCase : Union[str, Any] = optimizer_cls(A , **A ) if self.lr_scheduler is None: _UpperCAmelCase : List[str] = self._get_lr_scheduler(A ) else: # ignoring --lr_scheduler logger.warning("scheduler is passed to `Seq2SeqTrainer`, `--lr_scheduler` arg is ignored." ) def _A ( self : List[str] , A : Optional[int] ): _UpperCAmelCase : List[str] = arg_to_scheduler[self.args.lr_scheduler] if self.args.lr_scheduler == "constant": _UpperCAmelCase : Optional[Any] = schedule_func(self.optimizer ) elif self.args.lr_scheduler == "constant_w_warmup": _UpperCAmelCase : str = schedule_func(self.optimizer , num_warmup_steps=self.args.warmup_steps ) else: _UpperCAmelCase : str = schedule_func( self.optimizer , num_warmup_steps=self.args.warmup_steps , num_training_steps=A ) return scheduler def _A ( self : Tuple ): if isinstance(self.train_dataset , torch.utils.data.IterableDataset ): return None elif is_torch_tpu_available(): return get_tpu_sampler(self.train_dataset ) else: if self.args.sortish_sampler: self.train_dataset.make_sortish_sampler( self.args.per_device_train_batch_size , distributed=(self.args.parallel_mode == ParallelMode.DISTRIBUTED) , ) return ( RandomSampler(self.train_dataset ) if self.args.local_rank == -1 else DistributedSampler(self.train_dataset ) ) def _A ( self : Any , A : Union[str, Any] , A : Union[str, Any] , A : List[Any] ): if self.args.label_smoothing == 0: if self.data_args is not None and self.data_args.ignore_pad_token_for_loss: # force training to ignore pad token _UpperCAmelCase : List[str] = model(**A , use_cache=A )[0] _UpperCAmelCase : int = self.loss_fn(logits.view(-1 , logits.shape[-1] ) , labels.view(-1 ) ) else: # compute usual loss via models _UpperCAmelCase , _UpperCAmelCase : Any = model(**A , labels=A , use_cache=A )[:2] else: # compute label smoothed loss _UpperCAmelCase : Optional[int] = model(**A , use_cache=A )[0] _UpperCAmelCase : List[str] = torch.nn.functional.log_softmax(A , dim=-1 ) _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = self.loss_fn(A , A , self.args.label_smoothing , ignore_index=self.config.pad_token_id ) return loss, logits def _A ( self : List[str] , A : Optional[int] , A : Optional[int] ): _UpperCAmelCase : Union[str, Any] = inputs.pop("labels" ) _UpperCAmelCase , _UpperCAmelCase : Optional[int] = self._compute_loss(A , A , A ) return loss def _A ( self : List[str] , A : nn.Module , A : Dict[str, Union[torch.Tensor, Any]] , A : bool , A : Optional[List[str]] = None , ): _UpperCAmelCase : List[str] = self._prepare_inputs(A ) _UpperCAmelCase : Dict = { "max_length": self.data_args.val_max_target_length if self.data_args is not None else self.config.max_length, "num_beams": self.data_args.eval_beams if self.data_args is not None else self.config.num_beams, } if self.args.predict_with_generate and not self.args.prediction_loss_only: _UpperCAmelCase : Dict = self.model.generate( inputs["input_ids"] , attention_mask=inputs["attention_mask"] , **A , ) # in case the batch is shorter than max length, the output should be padded if generated_tokens.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : int = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) _UpperCAmelCase : Any = inputs.pop("labels" ) with torch.no_grad(): # compute loss on predict data _UpperCAmelCase , _UpperCAmelCase : str = self._compute_loss(A , A , A ) _UpperCAmelCase : List[str] = loss.mean().detach() if self.args.prediction_loss_only: return (loss, None, None) _UpperCAmelCase : str = generated_tokens if self.args.predict_with_generate else logits if labels.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : Optional[Any] = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) return (loss, logits, labels) def _A ( self : Dict , A : int , A : List[str] ): # If PAD token is not defined at least EOS token has to be defined _UpperCAmelCase : Union[str, Any] = self.config.pad_token_id if self.config.pad_token_id is not None else self.config.eos_token_id if pad_token_id is None: raise ValueError( "Make sure that either `config.pad_token_id` or `config.eos_token_id` is defined if tensor has to be" F""" padded to `max_length`={max_length}""" ) _UpperCAmelCase : Tuple = pad_token_id * torch.ones( (tensor.shape[0], max_length) , dtype=tensor.dtype , device=tensor.device ) _UpperCAmelCase : Tuple = tensor return padded_tensor
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'''simple docstring''' import argparse from pathlib import Path import requests import torch from PIL import Image from transformers import ( RobertaTokenizer, TrOCRConfig, TrOCRForCausalLM, TrOCRProcessor, VisionEncoderDecoderModel, ViTConfig, ViTImageProcessor, ViTModel, ) from transformers.utils import logging logging.set_verbosity_info() __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : List[str] , _UpperCAmelCase : List[Any] ) -> Tuple: """simple docstring""" _UpperCAmelCase : int = [] for i in range(encoder_config.num_hidden_layers ): # encoder layers: output projection, 2 feedforward neural networks and 2 layernorms rename_keys.append( (F"""encoder.deit.blocks.{i}.norm1.weight""", F"""encoder.encoder.layer.{i}.layernorm_before.weight""") ) rename_keys.append((F"""encoder.deit.blocks.{i}.norm1.bias""", F"""encoder.encoder.layer.{i}.layernorm_before.bias""") ) rename_keys.append( (F"""encoder.deit.blocks.{i}.attn.proj.weight""", F"""encoder.encoder.layer.{i}.attention.output.dense.weight""") ) rename_keys.append( (F"""encoder.deit.blocks.{i}.attn.proj.bias""", F"""encoder.encoder.layer.{i}.attention.output.dense.bias""") ) rename_keys.append( (F"""encoder.deit.blocks.{i}.norm2.weight""", F"""encoder.encoder.layer.{i}.layernorm_after.weight""") ) rename_keys.append((F"""encoder.deit.blocks.{i}.norm2.bias""", F"""encoder.encoder.layer.{i}.layernorm_after.bias""") ) rename_keys.append( (F"""encoder.deit.blocks.{i}.mlp.fc1.weight""", F"""encoder.encoder.layer.{i}.intermediate.dense.weight""") ) rename_keys.append( (F"""encoder.deit.blocks.{i}.mlp.fc1.bias""", F"""encoder.encoder.layer.{i}.intermediate.dense.bias""") ) rename_keys.append( (F"""encoder.deit.blocks.{i}.mlp.fc2.weight""", F"""encoder.encoder.layer.{i}.output.dense.weight""") ) rename_keys.append((F"""encoder.deit.blocks.{i}.mlp.fc2.bias""", F"""encoder.encoder.layer.{i}.output.dense.bias""") ) # cls token, position embeddings and patch embeddings of encoder rename_keys.extend( [ ("encoder.deit.cls_token", "encoder.embeddings.cls_token"), ("encoder.deit.pos_embed", "encoder.embeddings.position_embeddings"), ("encoder.deit.patch_embed.proj.weight", "encoder.embeddings.patch_embeddings.projection.weight"), ("encoder.deit.patch_embed.proj.bias", "encoder.embeddings.patch_embeddings.projection.bias"), ("encoder.deit.norm.weight", "encoder.layernorm.weight"), ("encoder.deit.norm.bias", "encoder.layernorm.bias"), ] ) return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : str ) -> List[Any]: """simple docstring""" for i in range(encoder_config.num_hidden_layers ): # queries, keys and values (only weights, no biases) _UpperCAmelCase : List[Any] = state_dict.pop(F"""encoder.deit.blocks.{i}.attn.qkv.weight""" ) _UpperCAmelCase : List[str] = in_proj_weight[ : encoder_config.hidden_size, : ] _UpperCAmelCase : Dict = in_proj_weight[ encoder_config.hidden_size : encoder_config.hidden_size * 2, : ] _UpperCAmelCase : Tuple = in_proj_weight[ -encoder_config.hidden_size :, : ] def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Optional[int] , _UpperCAmelCase : int ) -> Tuple: """simple docstring""" _UpperCAmelCase : List[str] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : Tuple = val def UpperCamelCase_ ( _UpperCAmelCase : List[Any] ) -> Any: """simple docstring""" if "handwritten" in checkpoint_url: _UpperCAmelCase : Optional[Any] = "https://fki.tic.heia-fr.ch/static/img/a01-122-02-00.jpg" # industry # url = "https://fki.tic.heia-fr.ch/static/img/a01-122-02-12.jpg" # have # url = "https://fki.tic.heia-fr.ch/static/img/a01-122-02-10.jpg" # let # url = "https://fki.tic.heia-fr.ch/static/img/a01-122-02.jpg" # # url = "https://fki.tic.heia-fr.ch/static/img/a01-122.jpg" elif "printed" in checkpoint_url or "stage1" in checkpoint_url: _UpperCAmelCase : List[Any] = "https://www.researchgate.net/profile/Dinh-Sang/publication/338099565/figure/fig8/AS:840413229350922@1577381536857/An-receipt-example-in-the-SROIE-2019-dataset_Q640.jpg" _UpperCAmelCase : List[str] = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ).convert("RGB" ) return im @torch.no_grad() def UpperCamelCase_ ( _UpperCAmelCase : Optional[Any] , _UpperCAmelCase : Tuple ) -> List[Any]: """simple docstring""" _UpperCAmelCase : Union[str, Any] = ViTConfig(image_size=384 , qkv_bias=_UpperCAmelCase ) _UpperCAmelCase : List[Any] = TrOCRConfig() # size of the architecture if "base" in checkpoint_url: _UpperCAmelCase : Optional[Any] = 768 elif "large" in checkpoint_url: # use ViT-large encoder _UpperCAmelCase : Dict = 1_024 _UpperCAmelCase : Union[str, Any] = 4_096 _UpperCAmelCase : int = 24 _UpperCAmelCase : Dict = 16 _UpperCAmelCase : int = 1_024 else: raise ValueError("Should either find 'base' or 'large' in checkpoint URL" ) # the large-printed + stage1 checkpoints uses sinusoidal position embeddings, no layernorm afterwards if "large-printed" in checkpoint_url or "stage1" in checkpoint_url: _UpperCAmelCase : List[str] = False _UpperCAmelCase : str = "relu" _UpperCAmelCase : Dict = 1_024 _UpperCAmelCase : int = True _UpperCAmelCase : int = False _UpperCAmelCase : Union[str, Any] = False # load HuggingFace model _UpperCAmelCase : List[Any] = ViTModel(_UpperCAmelCase , add_pooling_layer=_UpperCAmelCase ) _UpperCAmelCase : List[str] = TrOCRForCausalLM(_UpperCAmelCase ) _UpperCAmelCase : Optional[Any] = VisionEncoderDecoderModel(encoder=_UpperCAmelCase , decoder=_UpperCAmelCase ) model.eval() # load state_dict of original model, rename some keys _UpperCAmelCase : Union[str, Any] = torch.hub.load_state_dict_from_url(_UpperCAmelCase , map_location="cpu" , check_hash=_UpperCAmelCase )["model"] _UpperCAmelCase : str = create_rename_keys(_UpperCAmelCase , _UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_q_k_v(_UpperCAmelCase , _UpperCAmelCase ) # remove parameters we don't need del state_dict["encoder.deit.head.weight"] del state_dict["encoder.deit.head.bias"] del state_dict["decoder.version"] # add prefix to decoder keys for key, val in state_dict.copy().items(): _UpperCAmelCase : Any = state_dict.pop(_UpperCAmelCase ) if key.startswith("decoder" ) and "output_projection" not in key: _UpperCAmelCase : int = val else: _UpperCAmelCase : int = val # load state dict model.load_state_dict(_UpperCAmelCase ) # Check outputs on an image _UpperCAmelCase : Union[str, Any] = ViTImageProcessor(size=encoder_config.image_size ) _UpperCAmelCase : Tuple = RobertaTokenizer.from_pretrained("roberta-large" ) _UpperCAmelCase : Optional[Any] = TrOCRProcessor(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : int = processor(images=prepare_img(_UpperCAmelCase ) , return_tensors="pt" ).pixel_values # verify logits _UpperCAmelCase : List[Any] = torch.tensor([[model.config.decoder.decoder_start_token_id]] ) _UpperCAmelCase : List[str] = model(pixel_values=_UpperCAmelCase , decoder_input_ids=_UpperCAmelCase ) _UpperCAmelCase : List[str] = outputs.logits _UpperCAmelCase : Any = torch.Size([1, 1, 50_265] ) if "trocr-base-handwritten" in checkpoint_url: _UpperCAmelCase : Dict = torch.tensor( [-1.4_5_0_2, -4.6_6_8_3, -0.5_3_4_7, -2.9_2_9_1, 9.1_4_3_5, -3.0_5_7_1, 8.9_7_6_4, 1.7_5_6_0, 8.7_3_5_8, -1.5_3_1_1] ) elif "trocr-large-handwritten" in checkpoint_url: _UpperCAmelCase : Optional[int] = torch.tensor( [-2.6_4_3_7, -1.3_1_2_9, -2.2_5_9_6, -5.3_4_5_5, 6.3_5_3_9, 1.7_6_0_4, 5.4_9_9_1, 1.4_7_0_2, 5.6_1_1_3, 2.0_1_7_0] ) elif "trocr-base-printed" in checkpoint_url: _UpperCAmelCase : Optional[Any] = torch.tensor( [-5.6_8_1_6, -5.8_3_8_8, 1.1_3_9_8, -6.9_0_3_4, 6.8_5_0_5, -2.4_3_9_3, 1.2_2_8_4, -1.0_2_3_2, -1.9_6_6_1, -3.9_2_1_0] ) elif "trocr-large-printed" in checkpoint_url: _UpperCAmelCase : int = torch.tensor( [-6.0_1_6_2, -7.0_9_5_9, 4.4_1_5_5, -5.1_0_6_3, 7.0_4_6_8, -3.1_6_3_1, 2.6_4_6_6, -0.3_0_8_1, -0.8_1_0_6, -1.7_5_3_5] ) if "stage1" not in checkpoint_url: assert logits.shape == expected_shape, "Shape of logits not as expected" assert torch.allclose(logits[0, 0, :10] , _UpperCAmelCase , atol=1e-3 ), "First elements of logits not as expected" Path(_UpperCAmelCase ).mkdir(exist_ok=_UpperCAmelCase ) print(F"""Saving model to {pytorch_dump_folder_path}""" ) model.save_pretrained(_UpperCAmelCase ) print(F"""Saving processor to {pytorch_dump_folder_path}""" ) processor.save_pretrained(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Union[str, Any] = argparse.ArgumentParser() parser.add_argument( """--checkpoint_url""", default="""https://layoutlm.blob.core.windows.net/trocr/model_zoo/fairseq/trocr-base-handwritten.pt""", type=str, help="""URL to the original PyTorch checkpoint (.pth file).""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the folder to output PyTorch model.""" ) __SCREAMING_SNAKE_CASE : str = parser.parse_args() convert_tr_ocr_checkpoint(args.checkpoint_url, args.pytorch_dump_folder_path)
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'''simple docstring''' import copy from typing import Any, Dict, List, Optional, Union import numpy as np import torch from ...audio_utils import mel_filter_bank, spectrogram, window_function from ...feature_extraction_sequence_utils import SequenceFeatureExtractor from ...feature_extraction_utils import BatchFeature from ...utils import TensorType, logging __SCREAMING_SNAKE_CASE : List[str] = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["input_features", "is_longer"] def __init__( self : str , A : int=64 , A : Dict=48000 , A : str=480 , A : List[Any]=10 , A : Optional[Any]=1024 , A : Tuple=0.0 , A : List[Any]=False , A : float = 0 , A : float = 14000 , A : int = None , A : str = "fusion" , A : str = "repeatpad" , **A : Dict , ): super().__init__( feature_size=A , sampling_rate=A , padding_value=A , return_attention_mask=A , **A , ) _UpperCAmelCase : Optional[Any] = top_db _UpperCAmelCase : Dict = truncation _UpperCAmelCase : List[Any] = padding _UpperCAmelCase : Optional[Any] = fft_window_size _UpperCAmelCase : Dict = (fft_window_size >> 1) + 1 _UpperCAmelCase : Any = hop_length _UpperCAmelCase : Tuple = max_length_s _UpperCAmelCase : str = max_length_s * sampling_rate _UpperCAmelCase : Any = sampling_rate _UpperCAmelCase : Optional[int] = frequency_min _UpperCAmelCase : str = frequency_max _UpperCAmelCase : Union[str, Any] = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm=A , mel_scale="htk" , ) _UpperCAmelCase : Tuple = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm="slaney" , mel_scale="slaney" , ) def _A ( self : List[str] ): _UpperCAmelCase : Union[str, Any] = copy.deepcopy(self.__dict__ ) _UpperCAmelCase : Dict = self.__class__.__name__ if "mel_filters" in output: del output["mel_filters"] if "mel_filters_slaney" in output: del output["mel_filters_slaney"] return output def _A ( self : Optional[Any] , A : np.array , A : Optional[np.array] = None ): _UpperCAmelCase : Dict = spectrogram( A , window_function(self.fft_window_size , "hann" ) , frame_length=self.fft_window_size , hop_length=self.hop_length , power=2.0 , mel_filters=A , log_mel="dB" , ) return log_mel_spectrogram.T def _A ( self : str , A : str , A : List[str] , A : List[Any] ): _UpperCAmelCase : List[str] = np.array_split(list(range(0 , total_frames - chunk_frames + 1 ) ) , 3 ) if len(ranges[1] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Optional[Any] = [0] if len(ranges[2] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Tuple = [0] # randomly choose index for each part _UpperCAmelCase : Dict = np.random.choice(ranges[0] ) _UpperCAmelCase : str = np.random.choice(ranges[1] ) _UpperCAmelCase : Tuple = np.random.choice(ranges[2] ) _UpperCAmelCase : str = mel[idx_front : idx_front + chunk_frames, :] _UpperCAmelCase : str = mel[idx_middle : idx_middle + chunk_frames, :] _UpperCAmelCase : List[Any] = mel[idx_back : idx_back + chunk_frames, :] _UpperCAmelCase : Dict = torch.tensor(mel[None, None, :] ) _UpperCAmelCase : Optional[Any] = torch.nn.functional.interpolate( A , size=[chunk_frames, 64] , mode="bilinear" , align_corners=A ) _UpperCAmelCase : List[str] = mel_shrink[0][0].numpy() _UpperCAmelCase : str = np.stack([mel_shrink, mel_chunk_front, mel_chunk_middle, mel_chunk_back] , axis=0 ) return mel_fusion def _A ( self : List[Any] , A : np.array , A : List[str] , A : Any , A : Optional[int] ): if waveform.shape[0] > max_length: if truncation == "rand_trunc": _UpperCAmelCase : int = True # random crop to max_length (for compatibility) -> this should be handled by self.pad _UpperCAmelCase : str = len(A ) - max_length _UpperCAmelCase : str = np.random.randint(0 , overflow + 1 ) _UpperCAmelCase : int = waveform[idx : idx + max_length] _UpperCAmelCase : Any = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] elif truncation == "fusion": _UpperCAmelCase : Tuple = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : List[str] = max_length // self.hop_length + 1 # the +1 related to how the spectrogram is computed _UpperCAmelCase : Optional[Any] = mel.shape[0] if chunk_frames == total_frames: # there is a corner case where the audio length is larger than max_length but smaller than max_length+hop_length. # In this case, we just use the whole audio. _UpperCAmelCase : Any = np.stack([mel, mel, mel, mel] , axis=0 ) _UpperCAmelCase : int = False else: _UpperCAmelCase : Tuple = self._random_mel_fusion(A , A , A ) _UpperCAmelCase : Any = True else: raise NotImplementedError(F"""data_truncating {truncation} not implemented""" ) else: _UpperCAmelCase : Optional[Any] = False # only use repeat as a new possible value for padding. you repeat the audio before applying the usual max_length padding if waveform.shape[0] < max_length: if padding == "repeat": _UpperCAmelCase : str = int(max_length / len(A ) ) _UpperCAmelCase : Dict = np.stack(np.tile(A , n_repeat + 1 ) )[:max_length] if padding == "repeatpad": _UpperCAmelCase : Dict = int(max_length / len(A ) ) _UpperCAmelCase : List[str] = np.stack(np.tile(A , A ) ) _UpperCAmelCase : Optional[Any] = np.pad(A , (0, max_length - waveform.shape[0]) , mode="constant" , constant_values=0 ) if truncation == "fusion": _UpperCAmelCase : str = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : Optional[int] = np.stack([input_mel, input_mel, input_mel, input_mel] , axis=0 ) else: _UpperCAmelCase : List[str] = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] return input_mel, longer def __call__( self : Union[str, Any] , A : Union[np.ndarray, List[float], List[np.ndarray], List[List[float]]] , A : str = None , A : Optional[str] = None , A : Optional[int] = None , A : Optional[int] = None , A : Optional[Union[str, TensorType]] = None , **A : List[str] , ): _UpperCAmelCase : int = truncation if truncation is not None else self.truncation _UpperCAmelCase : Optional[int] = padding if padding else self.padding if sampling_rate is not None: if sampling_rate != self.sampling_rate: raise ValueError( F"""The model corresponding to this feature extractor: {self.__class__.__name__} was trained using a""" F""" sampling rate of {self.sampling_rate}. Please make sure that the provided `raw_speech` input""" F""" was sampled with {self.sampling_rate} and not {sampling_rate}.""" ) else: logger.warning( "It is strongly recommended to pass the `sampling_rate` argument to this function. " "Failing to do so can result in silent errors that might be hard to debug." ) _UpperCAmelCase : Any = isinstance(A , np.ndarray ) and len(raw_speech.shape ) > 1 if is_batched_numpy and len(raw_speech.shape ) > 2: raise ValueError(F"""Only mono-channel audio is supported for input to {self}""" ) _UpperCAmelCase : Optional[Any] = is_batched_numpy or ( isinstance(A , (list, tuple) ) and (isinstance(raw_speech[0] , (np.ndarray, tuple, list) )) ) if is_batched: _UpperCAmelCase : int = [np.asarray(A , dtype=np.floataa ) for speech in raw_speech] elif not is_batched and not isinstance(A , np.ndarray ): _UpperCAmelCase : List[str] = np.asarray(A , dtype=np.floataa ) elif isinstance(A , np.ndarray ) and raw_speech.dtype is np.dtype(np.floataa ): _UpperCAmelCase : Any = raw_speech.astype(np.floataa ) # always return batch if not is_batched: _UpperCAmelCase : List[str] = [np.asarray(A )] # convert to mel spectrogram, truncate and pad if needed. _UpperCAmelCase : Dict = [ self._get_input_mel(A , max_length if max_length else self.nb_max_samples , A , A ) for waveform in raw_speech ] _UpperCAmelCase : int = [] _UpperCAmelCase : Optional[Any] = [] for mel, longer in padded_inputs: input_mel.append(A ) is_longer.append(A ) if truncation == "fusion" and sum(A ) == 0: # if no audio is longer than 10s, then randomly select one audio to be longer _UpperCAmelCase : Union[str, Any] = np.random.randint(0 , len(A ) ) _UpperCAmelCase : Optional[Any] = True if isinstance(input_mel[0] , A ): _UpperCAmelCase : List[str] = [np.asarray(A , dtype=np.floataa ) for feature in input_mel] # is_longer is a list of bool _UpperCAmelCase : Tuple = [[longer] for longer in is_longer] _UpperCAmelCase : Optional[Any] = {"input_features": input_mel, "is_longer": is_longer} _UpperCAmelCase : Tuple = BatchFeature(A ) if return_tensors is not None: _UpperCAmelCase : List[Any] = input_features.convert_to_tensors(A ) return input_features
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'''simple docstring''' from __future__ import annotations __SCREAMING_SNAKE_CASE : Optional[int] = list[list[int]] # assigning initial values to the grid __SCREAMING_SNAKE_CASE : Matrix = [ [3, 0, 6, 5, 0, 8, 4, 0, 0], [5, 2, 0, 0, 0, 0, 0, 0, 0], [0, 8, 7, 0, 0, 0, 0, 3, 1], [0, 0, 3, 0, 1, 0, 0, 8, 0], [9, 0, 0, 8, 6, 3, 0, 0, 5], [0, 5, 0, 0, 9, 0, 6, 0, 0], [1, 3, 0, 0, 0, 0, 2, 5, 0], [0, 0, 0, 0, 0, 0, 0, 7, 4], [0, 0, 5, 2, 0, 6, 3, 0, 0], ] # a grid with no solution __SCREAMING_SNAKE_CASE : Matrix = [ [5, 0, 6, 5, 0, 8, 4, 0, 3], [5, 2, 0, 0, 0, 0, 0, 0, 2], [1, 8, 7, 0, 0, 0, 0, 3, 1], [0, 0, 3, 0, 1, 0, 0, 8, 0], [9, 0, 0, 8, 6, 3, 0, 0, 5], [0, 5, 0, 0, 9, 0, 6, 0, 0], [1, 3, 0, 0, 0, 0, 2, 5, 0], [0, 0, 0, 0, 0, 0, 0, 7, 4], [0, 0, 5, 2, 0, 6, 3, 0, 0], ] def UpperCamelCase_ ( _UpperCAmelCase : Matrix , _UpperCAmelCase : int , _UpperCAmelCase : int , _UpperCAmelCase : int ) -> bool: """simple docstring""" for i in range(9 ): if grid[row][i] == n or grid[i][column] == n: return False for i in range(3 ): for j in range(3 ): if grid[(row - row % 3) + i][(column - column % 3) + j] == n: return False return True def UpperCamelCase_ ( _UpperCAmelCase : Matrix ) -> tuple[int, int] | None: """simple docstring""" for i in range(9 ): for j in range(9 ): if grid[i][j] == 0: return i, j return None def UpperCamelCase_ ( _UpperCAmelCase : Matrix ) -> Matrix | None: """simple docstring""" if location := find_empty_location(_UpperCAmelCase ): _UpperCAmelCase , _UpperCAmelCase : int = location else: # If the location is ``None``, then the grid is solved. return grid for digit in range(1 , 10 ): if is_safe(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : Dict = digit if sudoku(_UpperCAmelCase ) is not None: return grid _UpperCAmelCase : Tuple = 0 return None def UpperCamelCase_ ( _UpperCAmelCase : Matrix ) -> None: """simple docstring""" for row in grid: for cell in row: print(_UpperCAmelCase , end=" " ) print() if __name__ == "__main__": # make a copy of grid so that you can compare with the unmodified grid for example_grid in (initial_grid, no_solution): print("""\nExample grid:\n""" + """=""" * 20) print_solution(example_grid) print("""\nExample grid solution:""") __SCREAMING_SNAKE_CASE : Tuple = sudoku(example_grid) if solution is not None: print_solution(solution) else: print("""Cannot find a solution.""")
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'''simple docstring''' from typing import TYPE_CHECKING from ...file_utils import _LazyModule, is_tokenizers_available, is_torch_available from ...utils import OptionalDependencyNotAvailable __SCREAMING_SNAKE_CASE : Optional[int] = {"""configuration_gpt_neox""": ["""GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP""", """GPTNeoXConfig"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Tuple = ["""GPTNeoXTokenizerFast"""] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Dict = [ """GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST""", """GPTNeoXForCausalLM""", """GPTNeoXForQuestionAnswering""", """GPTNeoXForSequenceClassification""", """GPTNeoXForTokenClassification""", """GPTNeoXLayer""", """GPTNeoXModel""", """GPTNeoXPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_gpt_neox import GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP, GPTNeoXConfig try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_gpt_neox_fast import GPTNeoXTokenizerFast try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_gpt_neox import ( GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST, GPTNeoXForCausalLM, GPTNeoXForQuestionAnswering, GPTNeoXForSequenceClassification, GPTNeoXForTokenClassification, GPTNeoXLayer, GPTNeoXModel, GPTNeoXPreTrainedModel, ) else: import sys __SCREAMING_SNAKE_CASE : Any = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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1
'''simple docstring''' import random def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : float , _UpperCAmelCase : bool = False ) -> dict: """simple docstring""" _UpperCAmelCase : dict = {i: [] for i in range(_UpperCAmelCase )} # if probability is greater or equal than 1, then generate a complete graph if probability >= 1: return complete_graph(_UpperCAmelCase ) # if probability is lower or equal than 0, then return a graph without edges if probability <= 0: return graph # for each couple of nodes, add an edge from u to v # if the number randomly generated is greater than probability probability for i in range(_UpperCAmelCase ): for j in range(i + 1 , _UpperCAmelCase ): if random.random() < probability: graph[i].append(_UpperCAmelCase ) if not directed: # if the graph is undirected, add an edge in from j to i, either graph[j].append(_UpperCAmelCase ) return graph def UpperCamelCase_ ( _UpperCAmelCase : int ) -> dict: """simple docstring""" return { i: [j for j in range(_UpperCAmelCase ) if i != j] for i in range(_UpperCAmelCase ) } if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' class lowerCamelCase_ : '''simple docstring''' def __init__( self : Tuple , A : Any , A : str , A : Union[str, Any] ): _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = graph self._normalize_graph(A , A ) _UpperCAmelCase : List[str] = len(A ) _UpperCAmelCase : Tuple = None def _A ( self : Any , A : List[Any] , A : str ): if sources is int: _UpperCAmelCase : List[Any] = [sources] if sinks is int: _UpperCAmelCase : List[Any] = [sinks] if len(A ) == 0 or len(A ) == 0: return _UpperCAmelCase : str = sources[0] _UpperCAmelCase : Union[str, Any] = sinks[0] # make fake vertex if there are more # than one source or sink if len(A ) > 1 or len(A ) > 1: _UpperCAmelCase : Dict = 0 for i in sources: max_input_flow += sum(self.graph[i] ) _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.insert(0 , 0 ) self.graph.insert(0 , [0] * size ) for i in sources: _UpperCAmelCase : Optional[Any] = max_input_flow _UpperCAmelCase : List[str] = 0 _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.append(0 ) self.graph.append([0] * size ) for i in sinks: _UpperCAmelCase : Dict = max_input_flow _UpperCAmelCase : List[Any] = size - 1 def _A ( self : Union[str, Any] ): if self.maximum_flow_algorithm is None: raise Exception("You need to set maximum flow algorithm before." ) if self.source_index is None or self.sink_index is None: return 0 self.maximum_flow_algorithm.execute() return self.maximum_flow_algorithm.getMaximumFlow() def _A ( self : Tuple , A : Dict ): _UpperCAmelCase : str = algorithm(self ) class lowerCamelCase_ : '''simple docstring''' def __init__( self : Any , A : str ): _UpperCAmelCase : Optional[int] = flow_network _UpperCAmelCase : Any = flow_network.verticesCount _UpperCAmelCase : List[str] = flow_network.sourceIndex _UpperCAmelCase : Union[str, Any] = flow_network.sinkIndex # it's just a reference, so you shouldn't change # it in your algorithms, use deep copy before doing that _UpperCAmelCase : Any = flow_network.graph _UpperCAmelCase : Union[str, Any] = False def _A ( self : List[str] ): if not self.executed: self._algorithm() _UpperCAmelCase : int = True def _A ( self : List[Any] ): pass class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[str, Any] ): super().__init__(A ) # use this to save your result _UpperCAmelCase : Any = -1 def _A ( self : Union[str, Any] ): if not self.executed: raise Exception("You should execute algorithm before using its result!" ) return self.maximum_flow class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Tuple , A : int ): super().__init__(A ) _UpperCAmelCase : List[str] = [[0] * self.verticies_count for i in range(self.verticies_count )] _UpperCAmelCase : Union[str, Any] = [0] * self.verticies_count _UpperCAmelCase : int = [0] * self.verticies_count def _A ( self : Dict ): _UpperCAmelCase : Dict = self.verticies_count # push some substance to graph for nextvertex_index, bandwidth in enumerate(self.graph[self.source_index] ): self.preflow[self.source_index][nextvertex_index] += bandwidth self.preflow[nextvertex_index][self.source_index] -= bandwidth self.excesses[nextvertex_index] += bandwidth # Relabel-to-front selection rule _UpperCAmelCase : Optional[int] = [ i for i in range(self.verticies_count ) if i != self.source_index and i != self.sink_index ] # move through list _UpperCAmelCase : Any = 0 while i < len(A ): _UpperCAmelCase : int = vertices_list[i] _UpperCAmelCase : int = self.heights[vertex_index] self.process_vertex(A ) if self.heights[vertex_index] > previous_height: # if it was relabeled, swap elements # and start from 0 index vertices_list.insert(0 , vertices_list.pop(A ) ) _UpperCAmelCase : Union[str, Any] = 0 else: i += 1 _UpperCAmelCase : List[Any] = sum(self.preflow[self.source_index] ) def _A ( self : Union[str, Any] , A : str ): while self.excesses[vertex_index] > 0: for neighbour_index in range(self.verticies_count ): # if it's neighbour and current vertex is higher if ( self.graph[vertex_index][neighbour_index] - self.preflow[vertex_index][neighbour_index] > 0 and self.heights[vertex_index] > self.heights[neighbour_index] ): self.push(A , A ) self.relabel(A ) def _A ( self : int , A : Dict , A : List[str] ): _UpperCAmelCase : int = min( self.excesses[from_index] , self.graph[from_index][to_index] - self.preflow[from_index][to_index] , ) self.preflow[from_index][to_index] += preflow_delta self.preflow[to_index][from_index] -= preflow_delta self.excesses[from_index] -= preflow_delta self.excesses[to_index] += preflow_delta def _A ( self : Optional[int] , A : Union[str, Any] ): _UpperCAmelCase : str = None for to_index in range(self.verticies_count ): if ( self.graph[vertex_index][to_index] - self.preflow[vertex_index][to_index] > 0 ) and (min_height is None or self.heights[to_index] < min_height): _UpperCAmelCase : Tuple = self.heights[to_index] if min_height is not None: _UpperCAmelCase : Optional[Any] = min_height + 1 if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[int] = [0] __SCREAMING_SNAKE_CASE : Union[str, Any] = [3] # graph = [ # [0, 0, 4, 6, 0, 0], # [0, 0, 5, 2, 0, 0], # [0, 0, 0, 0, 4, 4], # [0, 0, 0, 0, 6, 6], # [0, 0, 0, 0, 0, 0], # [0, 0, 0, 0, 0, 0], # ] __SCREAMING_SNAKE_CASE : List[Any] = [[0, 7, 0, 0], [0, 0, 6, 0], [0, 0, 0, 8], [9, 0, 0, 0]] # prepare our network __SCREAMING_SNAKE_CASE : Union[str, Any] = FlowNetwork(graph, entrances, exits) # set algorithm flow_network.set_maximum_flow_algorithm(PushRelabelExecutor) # and calculate __SCREAMING_SNAKE_CASE : Optional[Any] = flow_network.find_maximum_flow() print(F'maximum flow is {maximum_flow}')
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1
'''simple docstring''' __SCREAMING_SNAKE_CASE : Optional[Any] = """ # Transformers installation ! pip install transformers datasets # To install from source instead of the last release, comment the command above and uncomment the following one. # ! pip install git+https://github.com/huggingface/transformers.git """ __SCREAMING_SNAKE_CASE : Any = [{"""type""": """code""", """content""": INSTALL_CONTENT}] __SCREAMING_SNAKE_CASE : Union[str, Any] = { """{processor_class}""": """FakeProcessorClass""", """{model_class}""": """FakeModelClass""", """{object_class}""": """FakeObjectClass""", }
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> float: """simple docstring""" def get_matched_characters(_UpperCAmelCase : str , _UpperCAmelCase : str ) -> str: _UpperCAmelCase : Tuple = [] _UpperCAmelCase : Dict = min(len(_stra ) , len(_stra ) ) // 2 for i, l in enumerate(_stra ): _UpperCAmelCase : int = int(max(0 , i - limit ) ) _UpperCAmelCase : Any = int(min(i + limit + 1 , len(_stra ) ) ) if l in _stra[left:right]: matched.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = F"""{_stra[0:_stra.index(_UpperCAmelCase )]} {_stra[_stra.index(_UpperCAmelCase ) + 1:]}""" return "".join(_UpperCAmelCase ) # matching characters _UpperCAmelCase : Union[str, Any] = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = len(_UpperCAmelCase ) # transposition _UpperCAmelCase : Optional[Any] = ( len([(ca, ca) for ca, ca in zip(_UpperCAmelCase , _UpperCAmelCase ) if ca != ca] ) // 2 ) if not match_count: _UpperCAmelCase : Dict = 0.0 else: _UpperCAmelCase : Optional[int] = ( 1 / 3 * ( match_count / len(_UpperCAmelCase ) + match_count / len(_UpperCAmelCase ) + (match_count - transpositions) / match_count ) ) # common prefix up to 4 characters _UpperCAmelCase : str = 0 for ca, ca in zip(stra[:4] , stra[:4] ): if ca == ca: prefix_len += 1 else: break return jaro + 0.1 * prefix_len * (1 - jaro) if __name__ == "__main__": import doctest doctest.testmod() print(jaro_winkler("""hello""", """world"""))
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from typing import TYPE_CHECKING from ...utils import ( OptionalDependencyNotAvailable, _LazyModule, is_sentencepiece_available, is_tokenizers_available, is_torch_available, ) UpperCAmelCase__ = {"configuration_plbart": ["PLBART_PRETRAINED_CONFIG_ARCHIVE_MAP", "PLBartConfig"]} try: if not is_sentencepiece_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: UpperCAmelCase__ = ["PLBartTokenizer"] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: UpperCAmelCase__ = [ "PLBART_PRETRAINED_MODEL_ARCHIVE_LIST", "PLBartForCausalLM", "PLBartForConditionalGeneration", "PLBartForSequenceClassification", "PLBartModel", "PLBartPreTrainedModel", ] if TYPE_CHECKING: from .configuration_plbart import PLBART_PRETRAINED_CONFIG_ARCHIVE_MAP, PLBartConfig try: if not is_sentencepiece_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_plbart import PLBartTokenizer try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_plbart import ( PLBART_PRETRAINED_MODEL_ARCHIVE_LIST, PLBartForCausalLM, PLBartForConditionalGeneration, PLBartForSequenceClassification, PLBartModel, PLBartPreTrainedModel, ) else: import sys UpperCAmelCase__ = _LazyModule(__name__, globals()["__file__"], _import_structure)
0
'''simple docstring''' import math from typing import List, Optional, Tuple, Union import numpy as np import torch from ..configuration_utils import ConfigMixin, register_to_config from .scheduling_utils import SchedulerMixin, SchedulerOutput class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = 1 @register_to_config def __init__( self : Optional[int] , A : int = 1000 , A : Optional[Union[np.ndarray, List[float]]] = None ): # set `betas`, `alphas`, `timesteps` self.set_timesteps(A ) # standard deviation of the initial noise distribution _UpperCAmelCase : int = 1.0 # For now we only support F-PNDM, i.e. the runge-kutta method # For more information on the algorithm please take a look at the paper: https://arxiv.org/pdf/2202.09778.pdf # mainly at formula (9), (12), (13) and the Algorithm 2. _UpperCAmelCase : int = 4 # running values _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : int , A : Union[str, torch.device] = None ): _UpperCAmelCase : int = num_inference_steps _UpperCAmelCase : Union[str, Any] = torch.linspace(1 , 0 , num_inference_steps + 1 )[:-1] _UpperCAmelCase : Any = torch.cat([steps, torch.tensor([0.0] )] ) if self.config.trained_betas is not None: _UpperCAmelCase : str = torch.tensor(self.config.trained_betas , dtype=torch.floataa ) else: _UpperCAmelCase : Dict = torch.sin(steps * math.pi / 2 ) ** 2 _UpperCAmelCase : List[Any] = (1.0 - self.betas**2) ** 0.5 _UpperCAmelCase : List[str] = (torch.atana(self.betas , self.alphas ) / math.pi * 2)[:-1] _UpperCAmelCase : Dict = timesteps.to(A ) _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : bool = True , ): if self.num_inference_steps is None: raise ValueError( "Number of inference steps is 'None', you need to run 'set_timesteps' after creating the scheduler" ) _UpperCAmelCase : Tuple = (self.timesteps == timestep).nonzero().item() _UpperCAmelCase : Optional[Any] = timestep_index + 1 _UpperCAmelCase : int = sample * self.betas[timestep_index] + model_output * self.alphas[timestep_index] self.ets.append(A ) if len(self.ets ) == 1: _UpperCAmelCase : List[Any] = self.ets[-1] elif len(self.ets ) == 2: _UpperCAmelCase : str = (3 * self.ets[-1] - self.ets[-2]) / 2 elif len(self.ets ) == 3: _UpperCAmelCase : Tuple = (23 * self.ets[-1] - 16 * self.ets[-2] + 5 * self.ets[-3]) / 12 else: _UpperCAmelCase : Union[str, Any] = (1 / 24) * (55 * self.ets[-1] - 59 * self.ets[-2] + 37 * self.ets[-3] - 9 * self.ets[-4]) _UpperCAmelCase : Union[str, Any] = self._get_prev_sample(A , A , A , A ) if not return_dict: return (prev_sample,) return SchedulerOutput(prev_sample=A ) def _A ( self : Union[str, Any] , A : torch.FloatTensor , *A : Union[str, Any] , **A : Dict ): return sample def _A ( self : Optional[Any] , A : Optional[int] , A : int , A : Optional[Any] , A : List[str] ): _UpperCAmelCase : List[str] = self.alphas[timestep_index] _UpperCAmelCase : List[Any] = self.betas[timestep_index] _UpperCAmelCase : Optional[Any] = self.alphas[prev_timestep_index] _UpperCAmelCase : Dict = self.betas[prev_timestep_index] _UpperCAmelCase : Tuple = (sample - sigma * ets) / max(A , 1E-8 ) _UpperCAmelCase : List[str] = next_alpha * pred + ets * next_sigma return prev_sample def __len__( self : Union[str, Any] ): return self.config.num_train_timesteps
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'''simple docstring''' SCREAMING_SNAKE_CASE_: str =2_56 # Modulus to hash a string SCREAMING_SNAKE_CASE_: int =1_00_00_03 def lowerCAmelCase_ ( snake_case_ : str , snake_case_ : str ) -> bool: '''simple docstring''' UpperCAmelCase_ = len(snake_case_ ) UpperCAmelCase_ = len(snake_case_ ) if p_len > t_len: return False UpperCAmelCase_ = 0 UpperCAmelCase_ = 0 UpperCAmelCase_ = 1 # Calculating the hash of pattern and substring of text for i in range(snake_case_ ): UpperCAmelCase_ = (ord(pattern[i] ) + p_hash * alphabet_size) % modulus UpperCAmelCase_ = (ord(text[i] ) + text_hash * alphabet_size) % modulus if i == p_len - 1: continue UpperCAmelCase_ = (modulus_power * alphabet_size) % modulus for i in range(0 , t_len - p_len + 1 ): if text_hash == p_hash and text[i : i + p_len] == pattern: return True if i == t_len - p_len: continue # Calculate the https://en.wikipedia.org/wiki/Rolling_hash UpperCAmelCase_ = ( (text_hash - ord(text[i] ) * modulus_power) * alphabet_size + ord(text[i + p_len] ) ) % modulus return False def lowerCAmelCase_ ( ) -> None: '''simple docstring''' UpperCAmelCase_ = "abc1abc12" UpperCAmelCase_ = "alskfjaldsabc1abc1abc12k23adsfabcabc" UpperCAmelCase_ = "alskfjaldsk23adsfabcabc" assert rabin_karp(snake_case_ , snake_case_ ) and not rabin_karp(snake_case_ , snake_case_ ) # Test 2) UpperCAmelCase_ = "ABABX" UpperCAmelCase_ = "ABABZABABYABABX" assert rabin_karp(snake_case_ , snake_case_ ) # Test 3) UpperCAmelCase_ = "AAAB" UpperCAmelCase_ = "ABAAAAAB" assert rabin_karp(snake_case_ , snake_case_ ) # Test 4) UpperCAmelCase_ = "abcdabcy" UpperCAmelCase_ = "abcxabcdabxabcdabcdabcy" assert rabin_karp(snake_case_ , snake_case_ ) # Test 5) UpperCAmelCase_ = "Lü" UpperCAmelCase_ = "Lüsai" assert rabin_karp(snake_case_ , snake_case_ ) UpperCAmelCase_ = "Lue" assert not rabin_karp(snake_case_ , snake_case_ ) print("Success." ) if __name__ == "__main__": test_rabin_karp()
1
'''simple docstring''' import numpy as np from matplotlib import pyplot as plt from sklearn.datasets import load_iris from sklearn.metrics import ConfusionMatrixDisplay from sklearn.model_selection import train_test_split from xgboost import XGBClassifier def UpperCamelCase_ ( _UpperCAmelCase : dict ) -> tuple: """simple docstring""" return (data["data"], data["target"]) def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray ) -> XGBClassifier: """simple docstring""" _UpperCAmelCase : Any = XGBClassifier() classifier.fit(_UpperCAmelCase , _UpperCAmelCase ) return classifier def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : List[str] = load_iris() _UpperCAmelCase , _UpperCAmelCase : Dict = data_handling(_UpperCAmelCase ) _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : str = train_test_split( _UpperCAmelCase , _UpperCAmelCase , test_size=0.2_5 ) _UpperCAmelCase : Optional[Any] = iris["target_names"] # Create an XGBoost Classifier from the training data _UpperCAmelCase : Tuple = xgboost(_UpperCAmelCase , _UpperCAmelCase ) # Display the confusion matrix of the classifier with both training and test sets ConfusionMatrixDisplay.from_estimator( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , display_labels=_UpperCAmelCase , cmap="Blues" , normalize="true" , ) plt.title("Normalized Confusion Matrix - IRIS Dataset" ) plt.show() if __name__ == "__main__": import doctest doctest.testmod(verbose=True) main()
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'''simple docstring''' from typing import Dict, List, Optional, Union import numpy as np from ...image_processing_utils import BaseImageProcessor, BatchFeature, get_size_dict from ...image_transforms import ( center_crop, convert_to_rgb, get_resize_output_image_size, normalize, rescale, resize, to_channel_dimension_format, ) from ...image_utils import ( OPENAI_CLIP_MEAN, OPENAI_CLIP_STD, ChannelDimension, ImageInput, PILImageResampling, make_list_of_images, to_numpy_array, valid_images, ) from ...utils import TensorType, is_vision_available, logging lowerCamelCase : List[str] = logging.get_logger(__name__) if is_vision_available(): import PIL class __lowerCAmelCase (lowercase_ ): '''simple docstring''' lowerCAmelCase__ : Dict = ["""pixel_values"""] def __init__(self : Any , UpperCamelCase : bool = True , UpperCamelCase : Dict[str, int] = None , UpperCamelCase : PILImageResampling = PILImageResampling.BICUBIC , UpperCamelCase : bool = True , UpperCamelCase : Dict[str, int] = None , UpperCamelCase : bool = True , UpperCamelCase : Union[int, float] = 1 / 255 , UpperCamelCase : bool = True , UpperCamelCase : Optional[Union[float, List[float]]] = None , UpperCamelCase : Optional[Union[float, List[float]]] = None , UpperCamelCase : bool = True , **UpperCamelCase : Any , ): '''simple docstring''' super().__init__(**UpperCamelCase ) lowercase__ = size if size is not None else {'''shortest_edge''': 224} lowercase__ = get_size_dict(UpperCamelCase , default_to_square=UpperCamelCase ) lowercase__ = crop_size if crop_size is not None else {'''height''': 224, '''width''': 224} lowercase__ = get_size_dict(UpperCamelCase , default_to_square=UpperCamelCase , param_name='''crop_size''' ) lowercase__ = do_resize lowercase__ = size lowercase__ = resample lowercase__ = do_center_crop lowercase__ = crop_size lowercase__ = do_rescale lowercase__ = rescale_factor lowercase__ = do_normalize lowercase__ = image_mean if image_mean is not None else OPENAI_CLIP_MEAN lowercase__ = image_std if image_std is not None else OPENAI_CLIP_STD lowercase__ = do_convert_rgb def UpperCamelCase__ (self : int , UpperCamelCase : np.ndarray , UpperCamelCase : Dict[str, int] , UpperCamelCase : PILImageResampling = PILImageResampling.BICUBIC , UpperCamelCase : Optional[Union[str, ChannelDimension]] = None , **UpperCamelCase : List[Any] , ): '''simple docstring''' lowercase__ = get_size_dict(UpperCamelCase , default_to_square=UpperCamelCase ) if "shortest_edge" not in size: raise ValueError(f"The `size` parameter must contain the key `shortest_edge`. Got {size.keys()}" ) lowercase__ = get_resize_output_image_size(UpperCamelCase , size=size['''shortest_edge'''] , default_to_square=UpperCamelCase ) return resize(UpperCamelCase , size=UpperCamelCase , resample=UpperCamelCase , data_format=UpperCamelCase , **UpperCamelCase ) def UpperCamelCase__ (self : int , UpperCamelCase : np.ndarray , UpperCamelCase : Dict[str, int] , UpperCamelCase : Optional[Union[str, ChannelDimension]] = None , **UpperCamelCase : str , ): '''simple docstring''' lowercase__ = get_size_dict(UpperCamelCase ) if "height" not in size or "width" not in size: raise ValueError(f"The `size` parameter must contain the keys (height, width). Got {size.keys()}" ) return center_crop(UpperCamelCase , size=(size['''height'''], size['''width''']) , data_format=UpperCamelCase , **UpperCamelCase ) def UpperCamelCase__ (self : Dict , UpperCamelCase : np.ndarray , UpperCamelCase : Union[int, float] , UpperCamelCase : Optional[Union[str, ChannelDimension]] = None , **UpperCamelCase : List[Any] , ): '''simple docstring''' return rescale(UpperCamelCase , scale=UpperCamelCase , data_format=UpperCamelCase , **UpperCamelCase ) def UpperCamelCase__ (self : Any , UpperCamelCase : np.ndarray , UpperCamelCase : Union[float, List[float]] , UpperCamelCase : Union[float, List[float]] , UpperCamelCase : Optional[Union[str, ChannelDimension]] = None , **UpperCamelCase : List[str] , ): '''simple docstring''' return normalize(UpperCamelCase , mean=UpperCamelCase , std=UpperCamelCase , data_format=UpperCamelCase , **UpperCamelCase ) def UpperCamelCase__ (self : List[str] , UpperCamelCase : ImageInput , UpperCamelCase : bool = None , UpperCamelCase : Dict[str, int] = None , UpperCamelCase : PILImageResampling = None , UpperCamelCase : bool = None , UpperCamelCase : int = None , UpperCamelCase : bool = None , UpperCamelCase : float = None , UpperCamelCase : bool = None , UpperCamelCase : Optional[Union[float, List[float]]] = None , UpperCamelCase : Optional[Union[float, List[float]]] = None , UpperCamelCase : bool = None , UpperCamelCase : Optional[Union[str, TensorType]] = None , UpperCamelCase : Optional[ChannelDimension] = ChannelDimension.FIRST , **UpperCamelCase : Optional[int] , ): '''simple docstring''' lowercase__ = do_resize if do_resize is not None else self.do_resize lowercase__ = size if size is not None else self.size lowercase__ = get_size_dict(UpperCamelCase , param_name='''size''' , default_to_square=UpperCamelCase ) lowercase__ = resample if resample is not None else self.resample lowercase__ = do_center_crop if do_center_crop is not None else self.do_center_crop lowercase__ = crop_size if crop_size is not None else self.crop_size lowercase__ = get_size_dict(UpperCamelCase , param_name='''crop_size''' , default_to_square=UpperCamelCase ) lowercase__ = do_rescale if do_rescale is not None else self.do_rescale lowercase__ = rescale_factor if rescale_factor is not None else self.rescale_factor lowercase__ = do_normalize if do_normalize is not None else self.do_normalize lowercase__ = image_mean if image_mean is not None else self.image_mean lowercase__ = image_std if image_std is not None else self.image_std lowercase__ = do_convert_rgb if do_convert_rgb is not None else self.do_convert_rgb lowercase__ = make_list_of_images(UpperCamelCase ) if not valid_images(UpperCamelCase ): raise ValueError( '''Invalid image type. Must be of type PIL.Image.Image, numpy.ndarray, ''' '''torch.Tensor, tf.Tensor or jax.ndarray.''' ) if do_resize and size is None: raise ValueError('''Size must be specified if do_resize is True.''' ) if do_center_crop and crop_size is None: raise ValueError('''Crop size must be specified if do_center_crop is True.''' ) if do_rescale and rescale_factor is None: raise ValueError('''Rescale factor must be specified if do_rescale is True.''' ) if do_normalize and (image_mean is None or image_std is None): raise ValueError('''Image mean and std must be specified if do_normalize is True.''' ) # PIL RGBA images are converted to RGB if do_convert_rgb: lowercase__ = [convert_to_rgb(UpperCamelCase ) for image in images] # All transformations expect numpy arrays. lowercase__ = [to_numpy_array(UpperCamelCase ) for image in images] if do_resize: lowercase__ = [self.resize(image=UpperCamelCase , size=UpperCamelCase , resample=UpperCamelCase ) for image in images] if do_center_crop: lowercase__ = [self.center_crop(image=UpperCamelCase , size=UpperCamelCase ) for image in images] if do_rescale: lowercase__ = [self.rescale(image=UpperCamelCase , scale=UpperCamelCase ) for image in images] if do_normalize: lowercase__ = [self.normalize(image=UpperCamelCase , mean=UpperCamelCase , std=UpperCamelCase ) for image in images] lowercase__ = [to_channel_dimension_format(UpperCamelCase , UpperCamelCase ) for image in images] lowercase__ = {'''pixel_values''': images} return BatchFeature(data=UpperCamelCase , tensor_type=UpperCamelCase )
2
'''simple docstring''' import math import unittest from transformers import BioGptConfig, is_torch_available from transformers.testing_utils import require_torch, slow, torch_device from ...generation.test_utils import GenerationTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import ( BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification, BioGptModel, BioGptTokenizer, ) from transformers.models.biogpt.modeling_biogpt import BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[Any] , A : Dict , A : Optional[Any]=13 , A : Optional[Any]=7 , A : Union[str, Any]=True , A : Optional[Any]=True , A : int=False , A : str=True , A : Optional[Any]=99 , A : Union[str, Any]=32 , A : int=5 , A : Tuple=4 , A : Union[str, Any]=37 , A : Dict="gelu" , A : Union[str, Any]=0.1 , A : str=0.1 , A : Union[str, Any]=512 , A : int=16 , A : List[str]=2 , A : Tuple=0.02 , A : int=3 , A : List[str]=4 , A : str=None , ): _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : int = seq_length _UpperCAmelCase : Union[str, Any] = is_training _UpperCAmelCase : Any = use_input_mask _UpperCAmelCase : Optional[Any] = use_token_type_ids _UpperCAmelCase : str = use_labels _UpperCAmelCase : Union[str, Any] = vocab_size _UpperCAmelCase : Tuple = hidden_size _UpperCAmelCase : Union[str, Any] = num_hidden_layers _UpperCAmelCase : Optional[Any] = num_attention_heads _UpperCAmelCase : Union[str, Any] = intermediate_size _UpperCAmelCase : Union[str, Any] = hidden_act _UpperCAmelCase : List[Any] = hidden_dropout_prob _UpperCAmelCase : List[Any] = attention_probs_dropout_prob _UpperCAmelCase : Optional[int] = max_position_embeddings _UpperCAmelCase : str = type_vocab_size _UpperCAmelCase : str = type_sequence_label_size _UpperCAmelCase : int = initializer_range _UpperCAmelCase : Optional[Any] = num_labels _UpperCAmelCase : List[str] = num_choices _UpperCAmelCase : List[str] = scope def _A ( self : Optional[int] ): _UpperCAmelCase : Dict = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) _UpperCAmelCase : Union[str, Any] = None if self.use_input_mask: _UpperCAmelCase : List[Any] = random_attention_mask([self.batch_size, self.seq_length] ) _UpperCAmelCase : Any = None if self.use_token_type_ids: _UpperCAmelCase : List[str] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = None _UpperCAmelCase : Optional[int] = None if self.use_labels: _UpperCAmelCase : Optional[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) _UpperCAmelCase : Tuple = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) _UpperCAmelCase : List[str] = ids_tensor([self.batch_size] , self.num_choices ) _UpperCAmelCase : List[Any] = self.get_config() return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def _A ( self : Dict ): return BioGptConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , is_decoder=A , initializer_range=self.initializer_range , ) def _A ( self : int , A : List[Any] , A : Any , A : int , A : Union[str, Any] , A : Dict , A : List[Any] , A : Dict ): _UpperCAmelCase : List[str] = BioGptModel(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A ) _UpperCAmelCase : int = model(A ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _A ( self : List[Any] , A : str , A : List[Any] , A : Dict , A : List[Any] , A : List[str] , A : Union[str, Any] , A : int , A : List[str] , A : Dict , ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A , labels=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _A ( self : List[Any] , A : str , A : str , A : str , A : Any , A : List[str] , *A : Optional[int] ): _UpperCAmelCase : str = BioGptModel(config=A ) model.to(A ) model.eval() # create attention mask _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) _UpperCAmelCase : Optional[int] = self.seq_length // 2 _UpperCAmelCase : List[Any] = 0 # first forward pass _UpperCAmelCase , _UpperCAmelCase : List[str] = model(A , attention_mask=A ).to_tuple() # create hypothetical next token and extent to next_input_ids _UpperCAmelCase : List[str] = ids_tensor((self.batch_size, 1) , config.vocab_size ) # change a random masked slice from input_ids _UpperCAmelCase : List[str] = ids_tensor((1,) , A ).item() + 1 _UpperCAmelCase : str = ids_tensor((self.batch_size, 1) , config.vocab_size ).squeeze(-1 ) _UpperCAmelCase : Any = random_other_next_tokens # append to next input_ids and attn_mask _UpperCAmelCase : List[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Optional[int] = torch.cat( [attn_mask, torch.ones((attn_mask.shape[0], 1) , dtype=torch.long , device=A )] , dim=1 , ) # get two different outputs _UpperCAmelCase : List[Any] = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Optional[Any] = model(A , past_key_values=A , attention_mask=A )["last_hidden_state"] # select random slice _UpperCAmelCase : Any = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Optional[Any] = output_from_no_past[:, -1, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, 0, random_slice_idx].detach() # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : int , A : Dict , A : str , A : Dict , A : Union[str, Any] , A : Any , *A : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = BioGptModel(config=A ).to(A ).eval() _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) # first forward pass _UpperCAmelCase : Union[str, Any] = model(A , attention_mask=A , use_cache=A ) _UpperCAmelCase , _UpperCAmelCase : Dict = outputs.to_tuple() # create hypothetical multiple next token and extent to next_input_ids _UpperCAmelCase : str = ids_tensor((self.batch_size, 3) , config.vocab_size ) _UpperCAmelCase : Any = ids_tensor((self.batch_size, 3) , 2 ) # append to next input_ids and _UpperCAmelCase : Optional[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Dict = torch.cat([attention_mask, next_attn_mask] , dim=-1 ) _UpperCAmelCase : Any = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Dict = model(A , attention_mask=A , past_key_values=A )[ "last_hidden_state" ] # select random slice _UpperCAmelCase : Dict = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Dict = output_from_no_past[:, -3:, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, :, random_slice_idx].detach() self.parent.assertTrue(output_from_past_slice.shape[1] == next_tokens.shape[1] ) # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : Optional[Any] , A : Tuple , A : List[str] , A : Tuple , A : Dict , A : List[Any] , *A : Tuple , A : List[str]=False ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(A ) model.to(A ) if gradient_checkpointing: model.gradient_checkpointing_enable() _UpperCAmelCase : Union[str, Any] = model(A , labels=A ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) result.loss.backward() def _A ( self : Optional[Any] , A : Any , *A : Optional[Any] ): _UpperCAmelCase : Tuple = BioGptModel(A ) _UpperCAmelCase : int = model.config.initializer_range / math.sqrt(2 * model.config.num_hidden_layers ) for key in model.state_dict().keys(): if "c_proj" in key and "weight" in key: self.parent.assertLessEqual(abs(torch.std(model.state_dict()[key] ) - model_std ) , 0.001 ) self.parent.assertLessEqual(abs(torch.mean(model.state_dict()[key] ) - 0.0 ) , 0.01 ) def _A ( self : Optional[int] , A : Dict , A : Tuple , A : Optional[int] , A : int , A : List[str] , *A : Dict ): _UpperCAmelCase : Any = self.num_labels _UpperCAmelCase : Any = BioGptForTokenClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def _A ( self : int ): _UpperCAmelCase : Dict = self.prepare_config_and_inputs() ( ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ) : List[str] = config_and_inputs _UpperCAmelCase : Optional[int] = {"input_ids": input_ids, "attention_mask": input_mask} return config, inputs_dict @require_torch class lowerCamelCase_ (snake_case__ , snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[str] = ( (BioGptModel, BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification) if is_torch_available() else () ) __UpperCamelCase: List[str] = (BioGptForCausalLM,) if is_torch_available() else () __UpperCamelCase: str = ( { "feature-extraction": BioGptModel, "text-classification": BioGptForSequenceClassification, "text-generation": BioGptForCausalLM, "token-classification": BioGptForTokenClassification, "zero-shot": BioGptForSequenceClassification, } if is_torch_available() else {} ) __UpperCamelCase: Union[str, Any] = False def _A ( self : Optional[Any] ): _UpperCAmelCase : List[Any] = BioGptModelTester(self ) _UpperCAmelCase : str = ConfigTester(self , config_class=A , hidden_size=37 ) def _A ( self : Union[str, Any] ): self.config_tester.run_common_tests() def _A ( self : Any ): _UpperCAmelCase : Any = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*A ) def _A ( self : Any ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() for type in ["absolute", "relative_key", "relative_key_query"]: _UpperCAmelCase : Tuple = type self.model_tester.create_and_check_model(*A ) def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_attention_mask_past(*A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : List[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_forward_and_backwards(*A , gradient_checkpointing=A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_past_large_inputs(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_weight_initialization(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_for_token_classification(*A ) @slow def _A ( self : List[str] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) _UpperCAmelCase : Tuple = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : str = "left" # Define PAD Token = EOS Token = 50256 _UpperCAmelCase : Any = tokenizer.eos_token _UpperCAmelCase : int = model.config.eos_token_id # use different length sentences to test batching _UpperCAmelCase : Any = [ "Hello, my dog is a little", "Today, I", ] _UpperCAmelCase : Tuple = tokenizer(A , return_tensors="pt" , padding=A ) _UpperCAmelCase : Optional[Any] = inputs["input_ids"].to(A ) _UpperCAmelCase : Any = model.generate( input_ids=A , attention_mask=inputs["attention_mask"].to(A ) , ) _UpperCAmelCase : int = tokenizer(sentences[0] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : List[Any] = model.generate(input_ids=A ) _UpperCAmelCase : List[Any] = inputs_non_padded.shape[-1] - inputs["attention_mask"][-1].long().sum().cpu().item() _UpperCAmelCase : int = tokenizer(sentences[1] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : int = model.generate(input_ids=A , max_length=model.config.max_length - num_paddings ) _UpperCAmelCase : Dict = tokenizer.batch_decode(A , skip_special_tokens=A ) _UpperCAmelCase : Any = tokenizer.decode(output_non_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : Optional[int] = tokenizer.decode(output_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : str = [ "Hello, my dog is a little bit bigger than a little bit.", "Today, I have a good idea of how to use the information", ] self.assertListEqual(A , A ) self.assertListEqual(A , [non_padded_sentence, padded_sentence] ) @slow def _A ( self : str ): for model_name in BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: _UpperCAmelCase : Optional[Any] = BioGptModel.from_pretrained(A ) self.assertIsNotNone(A ) def _A ( self : List[str] ): _UpperCAmelCase , _UpperCAmelCase : int = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : str = 3 _UpperCAmelCase : List[str] = input_dict["input_ids"] _UpperCAmelCase : Dict = input_ids.ne(1 ).to(A ) _UpperCAmelCase : List[Any] = ids_tensor([self.model_tester.batch_size] , self.model_tester.type_sequence_label_size ) _UpperCAmelCase : List[str] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : List[str] = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) def _A ( self : int ): _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : int = 3 _UpperCAmelCase : Dict = "multi_label_classification" _UpperCAmelCase : Optional[Any] = input_dict["input_ids"] _UpperCAmelCase : Optional[int] = input_ids.ne(1 ).to(A ) _UpperCAmelCase : Tuple = ids_tensor( [self.model_tester.batch_size, config.num_labels] , self.model_tester.type_sequence_label_size ).to(torch.float ) _UpperCAmelCase : Optional[Any] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' @slow def _A ( self : List[Any] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : List[str] = torch.tensor([[2, 4805, 9, 656, 21]] ) _UpperCAmelCase : List[Any] = model(A )[0] _UpperCAmelCase : int = 42384 _UpperCAmelCase : int = torch.Size((1, 5, vocab_size) ) self.assertEqual(output.shape , A ) _UpperCAmelCase : Any = torch.tensor( [[[-9.5_236, -9.8_918, 10.4_557], [-11.0_469, -9.6_423, 8.1_022], [-8.8_664, -7.8_826, 5.5_325]]] ) self.assertTrue(torch.allclose(output[:, :3, :3] , A , atol=1E-4 ) ) @slow def _A ( self : Any ): _UpperCAmelCase : str = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : Tuple = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) torch.manual_seed(0 ) _UpperCAmelCase : Optional[Any] = tokenizer("COVID-19 is" , return_tensors="pt" ).to(A ) _UpperCAmelCase : Dict = model.generate( **A , min_length=100 , max_length=1024 , num_beams=5 , early_stopping=A , ) _UpperCAmelCase : Optional[Any] = tokenizer.decode(output_ids[0] , skip_special_tokens=A ) _UpperCAmelCase : List[str] = ( "COVID-19 is a global pandemic caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the" " causative agent of coronavirus disease 2019 (COVID-19), which has spread to more than 200 countries and" " territories, including the United States (US), Canada, Australia, New Zealand, the United Kingdom (UK)," " and the United States of America (USA), as of March 11, 2020, with more than 800,000 confirmed cases and" " more than 800,000 deaths." ) self.assertEqual(A , A )
31
0
'''simple docstring''' from __future__ import annotations def lowerCAmelCase_ ( snake_case__ , snake_case__ ): '''simple docstring''' if len(snake_case__ ) < k or k < 0: raise ValueError('''Invalid Input''' ) A : Any = sum(array[:k] ) for i in range(len(snake_case__ ) - k ): A : Union[str, Any] = current_sum - array[i] + array[i + k] A : List[Any] = max(snake_case__ , snake_case__ ) return max_sum if __name__ == "__main__": from doctest import testmod from random import randint testmod() lowercase : int = [randint(-10_00, 10_00) for i in range(1_00)] lowercase : List[str] = randint(0, 1_10) print(f'''The maximum sum of {k} consecutive elements is {max_sum_in_array(array,k)}''')
3
'''simple docstring''' __SCREAMING_SNAKE_CASE : Dict = 8.3_1_4_4_6_2 # Unit - J mol-1 K-1 def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or volume < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / volume def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or pressure < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / pressure if __name__ == "__main__": from doctest import testmod testmod()
31
0
'''simple docstring''' from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available __snake_case ={ """configuration_lilt""": ["""LILT_PRETRAINED_CONFIG_ARCHIVE_MAP""", """LiltConfig"""], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __snake_case =[ """LILT_PRETRAINED_MODEL_ARCHIVE_LIST""", """LiltForQuestionAnswering""", """LiltForSequenceClassification""", """LiltForTokenClassification""", """LiltModel""", """LiltPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_lilt import LILT_PRETRAINED_CONFIG_ARCHIVE_MAP, LiltConfig try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_lilt import ( LILT_PRETRAINED_MODEL_ARCHIVE_LIST, LiltForQuestionAnswering, LiltForSequenceClassification, LiltForTokenClassification, LiltModel, LiltPreTrainedModel, ) else: import sys __snake_case =_LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
4
'''simple docstring''' import os from shutil import copyfile from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import is_sentencepiece_available, logging if is_sentencepiece_available(): from .tokenization_pegasus import PegasusTokenizer else: __SCREAMING_SNAKE_CASE : Optional[Any] = None __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = """▁""" __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """spiece.model""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : int = { """vocab_file""": {"""google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/spiece.model"""}, """tokenizer_file""": { """google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/tokenizer.json""" }, } __SCREAMING_SNAKE_CASE : str = { """google/pegasus-xsum""": 512, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = VOCAB_FILES_NAMES __UpperCamelCase: Dict = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: List[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Optional[int] = PegasusTokenizer __UpperCamelCase: Optional[Any] = ["input_ids", "attention_mask"] def __init__( self : Dict , A : List[str]=None , A : Union[str, Any]=None , A : Optional[int]="<pad>" , A : Tuple="</s>" , A : Union[str, Any]="<unk>" , A : Union[str, Any]="<mask_2>" , A : Dict="<mask_1>" , A : Union[str, Any]=None , A : int=103 , **A : Optional[Any] , ): _UpperCAmelCase : Dict = offset if additional_special_tokens is not None: if not isinstance(A , A ): raise TypeError( F"""additional_special_tokens should be of type {type(A )}, but is""" F""" {type(A )}""" ) _UpperCAmelCase : Optional[int] = ( ([mask_token_sent] + additional_special_tokens) if mask_token_sent not in additional_special_tokens and mask_token_sent is not None else additional_special_tokens ) # fill additional tokens with ..., <unk_token_102> in case not all additional tokens are already taken additional_special_tokens_extended += [ F"""<unk_{i}>""" for i in range(len(A ) , self.offset - 1 ) ] if len(set(A ) ) != len(A ): raise ValueError( "Please make sure that the provided additional_special_tokens do not contain an incorrectly" F""" shifted list of <unk_x> tokens. Found {additional_special_tokens_extended}.""" ) _UpperCAmelCase : Any = additional_special_tokens_extended else: _UpperCAmelCase : Dict = [mask_token_sent] if mask_token_sent is not None else [] additional_special_tokens += [F"""<unk_{i}>""" for i in range(2 , self.offset )] super().__init__( A , tokenizer_file=A , pad_token=A , eos_token=A , unk_token=A , mask_token=A , mask_token_sent=A , offset=A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[Any] = vocab_file _UpperCAmelCase : Optional[Any] = False if not self.vocab_file else True def _A ( self : List[str] , A : Optional[Any] ): _UpperCAmelCase : Any = set(self.all_special_ids ) # call it once instead of inside list comp all_special_ids.remove(self.unk_token_id ) # <unk> is only sometimes special if all_special_ids != set(range(len(self.additional_special_tokens ) + 3 ) ): raise ValueError( "There should be 3 special tokens: mask_token, pad_token, and eos_token +" F""" {len(self.additional_special_tokens )} additional_special_tokens, but got {all_special_ids}""" ) return [1 if x in all_special_ids else 0 for x in seq] def _A ( self : str , A : List , A : Optional[List] = None , A : bool = False ): if already_has_special_tokens: return self._special_token_mask(A ) elif token_ids_a is None: return self._special_token_mask(A ) + [1] else: return self._special_token_mask(token_ids_a + token_ids_a ) + [1] def _A ( self : Optional[int] , A : Union[str, Any] , A : int=None ): if token_ids_a is None: return token_ids_a + [self.eos_token_id] # We don't expect to process pairs, but leave the pair logic for API consistency return token_ids_a + token_ids_a + [self.eos_token_id] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): if not self.can_save_slow_tokenizer: raise ValueError( "Your fast tokenizer does not have the necessary information to save the vocabulary for a slow " "tokenizer." ) if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : List[Any] = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ): copyfile(self.vocab_file , A ) return (out_vocab_file,)
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0
# DISCLAIMER: This file is strongly influenced by https://github.com/yang-song/score_sde_pytorch import math from typing import Union import torch from ..configuration_utils import ConfigMixin, register_to_config from ..utils import randn_tensor from .scheduling_utils import SchedulerMixin class lowerCamelCase__ ( lowerCAmelCase , lowerCAmelCase): SCREAMING_SNAKE_CASE__ = 1 @register_to_config def __init__(self , UpperCAmelCase=2_0_0_0 , UpperCAmelCase=0.1 , UpperCAmelCase=2_0 , UpperCAmelCase=1e-3 ) -> List[str]: _lowercase =None _lowercase =None _lowercase =None def __A (self , UpperCAmelCase , UpperCAmelCase = None ) -> str: _lowercase =torch.linspace(1 , self.config.sampling_eps , UpperCAmelCase , device=UpperCAmelCase ) def __A (self , UpperCAmelCase , UpperCAmelCase , UpperCAmelCase , UpperCAmelCase=None ) -> Optional[int]: if self.timesteps is None: raise ValueError( '''`self.timesteps` is not set, you need to run \'set_timesteps\' after creating the scheduler''' ) # TODO(Patrick) better comments + non-PyTorch # postprocess model score _lowercase =( -0.25 * t**2 * (self.config.beta_max - self.config.beta_min) - 0.5 * t * self.config.beta_min ) _lowercase =torch.sqrt(1.0 - torch.exp(2.0 * log_mean_coeff ) ) _lowercase =std.flatten() while len(std.shape ) < len(score.shape ): _lowercase =std.unsqueeze(-1 ) _lowercase =-score / std # compute _lowercase =-1.0 / len(self.timesteps ) _lowercase =self.config.beta_min + t * (self.config.beta_max - self.config.beta_min) _lowercase =beta_t.flatten() while len(beta_t.shape ) < len(x.shape ): _lowercase =beta_t.unsqueeze(-1 ) _lowercase =-0.5 * beta_t * x _lowercase =torch.sqrt(UpperCAmelCase ) _lowercase =drift - diffusion**2 * score _lowercase =x + drift * dt # add noise _lowercase =randn_tensor(x.shape , layout=x.layout , generator=UpperCAmelCase , device=x.device , dtype=x.dtype ) _lowercase =x_mean + diffusion * math.sqrt(-dt ) * noise return x, x_mean def __len__(self ) -> str: return self.config.num_train_timesteps
5
'''simple docstring''' import shutil import tempfile import unittest from transformers import ( SPIECE_UNDERLINE, AddedToken, BatchEncoding, NllbTokenizer, NllbTokenizerFast, is_torch_available, ) from transformers.testing_utils import ( get_tests_dir, nested_simplify, require_sentencepiece, require_tokenizers, require_torch, ) from ...test_tokenization_common import TokenizerTesterMixin __SCREAMING_SNAKE_CASE : Union[str, Any] = get_tests_dir("""fixtures/test_sentencepiece.model""") if is_torch_available(): from transformers.models.mam_aaa.modeling_mam_aaa import shift_tokens_right __SCREAMING_SNAKE_CASE : Optional[int] = 256_047 __SCREAMING_SNAKE_CASE : Optional[int] = 256_145 @require_sentencepiece @require_tokenizers class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: int = NllbTokenizer __UpperCamelCase: Tuple = NllbTokenizerFast __UpperCamelCase: Union[str, Any] = True __UpperCamelCase: Dict = True __UpperCamelCase: Optional[Any] = {} def _A ( self : Union[str, Any] ): super().setUp() # We have a SentencePiece fixture for testing _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) tokenizer.save_pretrained(self.tmpdirname ) def _A ( self : Dict ): _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) _UpperCAmelCase : Optional[Any] = tokenizer.tokenize("This is a test" ) self.assertListEqual(A , ["▁This", "▁is", "▁a", "▁t", "est"] ) self.assertListEqual( tokenizer.convert_tokens_to_ids(A ) , [value + tokenizer.fairseq_offset for value in [285, 46, 10, 170, 382]] , ) _UpperCAmelCase : List[str] = tokenizer.tokenize("I was born in 92000, and this is falsé." ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "9", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "é", ".", ] , ) _UpperCAmelCase : Optional[Any] = tokenizer.convert_tokens_to_ids(A ) self.assertListEqual( A , [ value + tokenizer.fairseq_offset for value in [8, 21, 84, 55, 24, 19, 7, 2, 602, 347, 347, 347, 3, 12, 66, 46, 72, 80, 6, 2, 4] ] , ) _UpperCAmelCase : Union[str, Any] = tokenizer.convert_ids_to_tokens(A ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "<unk>", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "<unk>", ".", ] , ) def _A ( self : List[Any] ): _UpperCAmelCase : Any = (self.rust_tokenizer_class, "hf-internal-testing/tiny-random-nllb", {}) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : str = self.tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Dict = tokenizer_r.save_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it save with the same files + the tokenizer.json file for the fast one self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) _UpperCAmelCase : Optional[int] = tuple(f for f in tokenizer_r_files if "tokenizer.json" not in f ) self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : List[str] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=True _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() _UpperCAmelCase : str = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : str = tokenizer_p.save_pretrained(A ) # Checks it save with the same files self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : Optional[int] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=False _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Optional[int] = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it saved the tokenizer.json file self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Optional[int] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) @require_torch def _A ( self : Tuple ): if not self.test_seqaseq: return _UpperCAmelCase : Union[str, Any] = self.get_tokenizers() for tokenizer in tokenizers: with self.subTest(F"""{tokenizer.__class__.__name__}""" ): # Longer text that will definitely require truncation. _UpperCAmelCase : Optional[Any] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for" " Syria is that 'there is no military solution' to the nearly five-year conflict and more weapons" " will only worsen the violence and misery for millions of people.", ] _UpperCAmelCase : Optional[Any] = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al" " Rusiei pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi" " că noi arme nu vor face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] try: _UpperCAmelCase : Optional[int] = tokenizer.prepare_seqaseq_batch( src_texts=A , tgt_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="ron_Latn" , ) except NotImplementedError: return self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 10 ) # max_target_length will default to max_length if not specified _UpperCAmelCase : Tuple = tokenizer.prepare_seqaseq_batch( A , tgt_texts=A , max_length=3 , return_tensors="pt" ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 3 ) _UpperCAmelCase : Union[str, Any] = tokenizer.prepare_seqaseq_batch( src_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" ) self.assertEqual(batch_encoder_only.input_ids.shape[1] , 3 ) self.assertEqual(batch_encoder_only.attention_mask.shape[1] , 3 ) self.assertNotIn("decoder_input_ids" , A ) @unittest.skip("Unfortunately way too slow to build a BPE with SentencePiece." ) def _A ( self : List[Any] ): pass def _A ( self : Union[str, Any] ): for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Any = [AddedToken("<special>" , lstrip=A )] _UpperCAmelCase : List[Any] = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Dict = tokenizer_r.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_r.encode("<special>" , add_special_tokens=A )[0] self.assertTrue(special_token_id in r_output ) if self.test_slow_tokenizer: _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[int] = self.tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Union[str, Any] = tokenizer_p.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_cr.encode("Hey this is a <special> token" ) self.assertEqual(A , A ) self.assertEqual(A , A ) self.assertTrue(special_token_id in p_output ) self.assertTrue(special_token_id in cr_output ) @require_torch @require_sentencepiece @require_tokenizers class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = "facebook/nllb-200-distilled-600M" __UpperCamelCase: Optional[int] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for Syria is that \"there is no military solution\" to the nearly five-year conflict and more weapons will only worsen the violence and misery for millions of people.", ] __UpperCamelCase: str = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al Rusiei" " pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi că noi arme nu vor" " face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] __UpperCamelCase: str = [ 2_5_6_0_4_7, 1_6_2_9_7, 1_3_4_4_0_8, 8_1_6_5, 2_4_8_0_6_6, 1_4_7_3_4, 9_5_0, 1_1_3_5, 1_0_5_7_2_1, 3_5_7_3, 8_3, 2_7_3_5_2, 1_0_8, 4_9_4_8_6, 2, ] @classmethod def _A ( cls : int ): _UpperCAmelCase : NllbTokenizer = NllbTokenizer.from_pretrained( cls.checkpoint_name , src_lang="eng_Latn" , tgt_lang="ron_Latn" ) _UpperCAmelCase : Union[str, Any] = 1 return cls def _A ( self : Any ): self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Arab"] , 256001 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Latn"] , 256002 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["fra_Latn"] , 256057 ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[int] = self.tokenizer.batch_encode_plus(self.src_text ).input_ids[0] self.assertListEqual(self.expected_src_tokens , A ) def _A ( self : Tuple ): self.assertIn(A , self.tokenizer.all_special_ids ) # fmt: off _UpperCAmelCase : List[Any] = [RO_CODE, 4254, 98068, 112923, 39072, 3909, 713, 102767, 26, 17314, 35642, 14683, 33118, 2022, 66987, 2, 256047] # fmt: on _UpperCAmelCase : Tuple = self.tokenizer.decode(A , skip_special_tokens=A ) _UpperCAmelCase : Optional[Any] = self.tokenizer.decode(generated_ids[1:] , skip_special_tokens=A ) self.assertEqual(A , A ) self.assertNotIn(self.tokenizer.eos_token , A ) def _A ( self : Optional[int] ): _UpperCAmelCase : List[Any] = ["this is gunna be a long sentence " * 20] assert isinstance(src_text[0] , A ) _UpperCAmelCase : Dict = 10 _UpperCAmelCase : Tuple = self.tokenizer(A , max_length=A , truncation=A ).input_ids[0] self.assertEqual(ids[-1] , 2 ) self.assertEqual(ids[0] , A ) self.assertEqual(len(A ) , A ) def _A ( self : Dict ): self.assertListEqual(self.tokenizer.convert_tokens_to_ids(["<mask>", "ar_AR"] ) , [256203, 3] ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = tempfile.mkdtemp() _UpperCAmelCase : str = self.tokenizer.fairseq_tokens_to_ids self.tokenizer.save_pretrained(A ) _UpperCAmelCase : Tuple = NllbTokenizer.from_pretrained(A ) self.assertDictEqual(new_tok.fairseq_tokens_to_ids , A ) @require_torch def _A ( self : Dict ): _UpperCAmelCase : List[str] = self.tokenizer( self.src_text , text_target=self.tgt_text , padding=A , truncation=A , max_length=len(self.expected_src_tokens ) , return_tensors="pt" , ) _UpperCAmelCase : Tuple = shift_tokens_right( batch["labels"] , self.tokenizer.pad_token_id , self.tokenizer.lang_code_to_id["ron_Latn"] ) self.assertIsInstance(A , A ) self.assertEqual((2, 15) , batch.input_ids.shape ) self.assertEqual((2, 15) , batch.attention_mask.shape ) _UpperCAmelCase : Dict = batch.input_ids.tolist()[0] self.assertListEqual(self.expected_src_tokens , A ) self.assertEqual(A , batch.decoder_input_ids[0, 0] ) # EOS # Test that special tokens are reset self.assertEqual(self.tokenizer.prefix_tokens , [EN_CODE] ) self.assertEqual(self.tokenizer.suffix_tokens , [self.tokenizer.eos_token_id] ) def _A ( self : str ): _UpperCAmelCase : Optional[Any] = self.tokenizer(self.src_text , padding=A , truncation=A , max_length=3 , return_tensors="pt" ) _UpperCAmelCase : Dict = self.tokenizer( text_target=self.tgt_text , padding=A , truncation=A , max_length=10 , return_tensors="pt" ) _UpperCAmelCase : List[Any] = targets["input_ids"] _UpperCAmelCase : Union[str, Any] = shift_tokens_right( A , self.tokenizer.pad_token_id , decoder_start_token_id=self.tokenizer.lang_code_to_id[self.tokenizer.tgt_lang] , ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.decoder_input_ids.shape[1] , 10 ) @require_torch def _A ( self : List[Any] ): _UpperCAmelCase : str = self.tokenizer._build_translation_inputs( "A test" , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( nested_simplify(A ) , { # A, test, EOS, en_XX "input_ids": [[256047, 70, 7356, 2]], "attention_mask": [[1, 1, 1, 1]], # ar_AR "forced_bos_token_id": 256057, } , ) @require_torch def _A ( self : Any ): _UpperCAmelCase : Dict = True _UpperCAmelCase : Any = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2, 256047] ) _UpperCAmelCase : Optional[int] = False _UpperCAmelCase : str = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [256047, 16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2] )
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import json import os from dataclasses import dataclass from functools import partial from typing import Callable import flax.linen as nn import jax import jax.numpy as jnp import joblib import optax import wandb from flax import jax_utils, struct, traverse_util from flax.serialization import from_bytes, to_bytes from flax.training import train_state from flax.training.common_utils import shard from tqdm.auto import tqdm from transformers import BigBirdConfig, FlaxBigBirdForQuestionAnswering from transformers.models.big_bird.modeling_flax_big_bird import FlaxBigBirdForQuestionAnsweringModule class __A( a ): snake_case_ = 42 snake_case_ = jnp.floataa snake_case_ = True def SCREAMING_SNAKE_CASE_ ( self ) -> List[Any]: '''simple docstring''' super().setup() __a = nn.Dense(5 , dtype=self.dtype ) def __call__( self , *_snake_case , **_snake_case ) -> str: '''simple docstring''' __a = super().__call__(*_snake_case , **_snake_case ) __a = self.cls(outputs[2] ) return outputs[:2] + (cls_out,) class __A( a ): snake_case_ = FlaxBigBirdForNaturalQuestionsModule def __lowerCAmelCase ( a__ , a__ , a__ , a__ , a__ , a__ ) -> Dict: def cross_entropy(a__ , a__ , a__=None ): __a = logits.shape[-1] __a = (labels[..., None] == jnp.arange(a__ )[None]).astype('''f4''' ) __a = jax.nn.log_softmax(a__ , axis=-1 ) __a = -jnp.sum(labels * logits , axis=-1 ) if reduction is not None: __a = reduction(a__ ) return loss __a = partial(a__ , reduction=jnp.mean ) __a = cross_entropy(a__ , a__ ) __a = cross_entropy(a__ , a__ ) __a = cross_entropy(a__ , a__ ) return (start_loss + end_loss + pooled_loss) / 3 @dataclass class __A: snake_case_ = "google/bigbird-roberta-base" snake_case_ = 3_0_0_0 snake_case_ = 1_0_5_0_0 snake_case_ = 1_2_8 snake_case_ = 3 snake_case_ = 1 snake_case_ = 5 # tx_args snake_case_ = 3E-5 snake_case_ = 0.0 snake_case_ = 2_0_0_0_0 snake_case_ = 0.0_095 snake_case_ = "bigbird-roberta-natural-questions" snake_case_ = "training-expt" snake_case_ = "data/nq-training.jsonl" snake_case_ = "data/nq-validation.jsonl" def SCREAMING_SNAKE_CASE_ ( self ) -> int: '''simple docstring''' os.makedirs(self.base_dir , exist_ok=_snake_case ) __a = os.path.join(self.base_dir , self.save_dir ) __a = self.batch_size_per_device * jax.device_count() @dataclass class __A: snake_case_ = 42 snake_case_ = 4_0_9_6 # no dynamic padding on TPUs def __call__( self , _snake_case ) -> int: '''simple docstring''' __a = self.collate_fn(_snake_case ) __a = jax.tree_util.tree_map(_snake_case , _snake_case ) return batch def SCREAMING_SNAKE_CASE_ ( self , _snake_case ) -> int: '''simple docstring''' __a , __a = self.fetch_inputs(features['''input_ids'''] ) __a = { '''input_ids''': jnp.array(_snake_case , dtype=jnp.intaa ), '''attention_mask''': jnp.array(_snake_case , dtype=jnp.intaa ), '''start_labels''': jnp.array(features['''start_token'''] , dtype=jnp.intaa ), '''end_labels''': jnp.array(features['''end_token'''] , dtype=jnp.intaa ), '''pooled_labels''': jnp.array(features['''category'''] , dtype=jnp.intaa ), } return batch def SCREAMING_SNAKE_CASE_ ( self , _snake_case ) -> Tuple: '''simple docstring''' __a = [self._fetch_inputs(_snake_case ) for ids in input_ids] return zip(*_snake_case ) def SCREAMING_SNAKE_CASE_ ( self , _snake_case ) -> List[str]: '''simple docstring''' __a = [1 for _ in range(len(_snake_case ) )] while len(_snake_case ) < self.max_length: input_ids.append(self.pad_id ) attention_mask.append(0 ) return input_ids, attention_mask def __lowerCAmelCase ( a__ , a__ , a__=None ) -> List[str]: if seed is not None: __a = dataset.shuffle(seed=a__ ) for i in range(len(a__ ) // batch_size ): __a = dataset[i * batch_size : (i + 1) * batch_size] yield dict(a__ ) @partial(jax.pmap , axis_name='''batch''' ) def __lowerCAmelCase ( a__ , a__ , **a__ ) -> Any: def loss_fn(a__ ): __a = model_inputs.pop('''start_labels''' ) __a = model_inputs.pop('''end_labels''' ) __a = model_inputs.pop('''pooled_labels''' ) __a = state.apply_fn(**a__ , params=a__ , dropout_rng=a__ , train=a__ ) __a , __a , __a = outputs return state.loss_fn( a__ , a__ , a__ , a__ , a__ , a__ , ) __a , __a = jax.random.split(a__ ) __a = jax.value_and_grad(a__ ) __a , __a = grad_fn(state.params ) __a = jax.lax.pmean({'''loss''': loss} , axis_name='''batch''' ) __a = jax.lax.pmean(a__ , '''batch''' ) __a = state.apply_gradients(grads=a__ ) return state, metrics, new_drp_rng @partial(jax.pmap , axis_name='''batch''' ) def __lowerCAmelCase ( a__ , **a__ ) -> str: __a = model_inputs.pop('''start_labels''' ) __a = model_inputs.pop('''end_labels''' ) __a = model_inputs.pop('''pooled_labels''' ) __a = state.apply_fn(**a__ , params=state.params , train=a__ ) __a , __a , __a = outputs __a = state.loss_fn(a__ , a__ , a__ , a__ , a__ , a__ ) __a = jax.lax.pmean({'''loss''': loss} , axis_name='''batch''' ) return metrics class __A( train_state.TrainState ): snake_case_ = struct.field(pytree_node=a ) @dataclass class __A: snake_case_ = 42 snake_case_ = 42 snake_case_ = 42 snake_case_ = 42 snake_case_ = 42 snake_case_ = 42 snake_case_ = None def SCREAMING_SNAKE_CASE_ ( self , _snake_case , _snake_case , _snake_case , _snake_case=None ) -> Union[str, Any]: '''simple docstring''' __a = model.params __a = TrainState.create( apply_fn=model.__call__ , params=_snake_case , tx=_snake_case , loss_fn=_snake_case , ) if ckpt_dir is not None: __a , __a , __a , __a , __a = restore_checkpoint(_snake_case , _snake_case ) __a = { '''lr''': args.lr, '''init_lr''': args.init_lr, '''warmup_steps''': args.warmup_steps, '''num_train_steps''': num_train_steps, '''weight_decay''': args.weight_decay, } __a , __a = build_tx(**_snake_case ) __a = train_state.TrainState( step=_snake_case , apply_fn=model.__call__ , params=_snake_case , tx=_snake_case , opt_state=_snake_case , ) __a = args __a = data_collator __a = lr __a = params __a = jax_utils.replicate(_snake_case ) return state def SCREAMING_SNAKE_CASE_ ( self , _snake_case , _snake_case , _snake_case ) -> Tuple: '''simple docstring''' __a = self.args __a = len(_snake_case ) // args.batch_size __a = jax.random.PRNGKey(0 ) __a = jax.random.split(_snake_case , jax.device_count() ) for epoch in range(args.max_epochs ): __a = jnp.array(0 , dtype=jnp.floataa ) __a = get_batched_dataset(_snake_case , args.batch_size , seed=_snake_case ) __a = 0 for batch in tqdm(_snake_case , total=_snake_case , desc=F"""Running EPOCH-{epoch}""" ): __a = self.data_collator(_snake_case ) __a , __a , __a = self.train_step_fn(_snake_case , _snake_case , **_snake_case ) running_loss += jax_utils.unreplicate(metrics['''loss'''] ) i += 1 if i % args.logging_steps == 0: __a = jax_utils.unreplicate(state.step ) __a = running_loss.item() / i __a = self.scheduler_fn(state_step - 1 ) __a = self.evaluate(_snake_case , _snake_case ) __a = { '''step''': state_step.item(), '''eval_loss''': eval_loss.item(), '''tr_loss''': tr_loss, '''lr''': lr.item(), } tqdm.write(str(_snake_case ) ) self.logger.log(_snake_case , commit=_snake_case ) if i % args.save_steps == 0: self.save_checkpoint(args.save_dir + F"""-e{epoch}-s{i}""" , state=_snake_case ) def SCREAMING_SNAKE_CASE_ ( self , _snake_case , _snake_case ) -> Optional[int]: '''simple docstring''' __a = get_batched_dataset(_snake_case , self.args.batch_size ) __a = len(_snake_case ) // self.args.batch_size __a = jnp.array(0 , dtype=jnp.floataa ) __a = 0 for batch in tqdm(_snake_case , total=_snake_case , desc='''Evaluating ... ''' ): __a = self.data_collator(_snake_case ) __a = self.val_step_fn(_snake_case , **_snake_case ) running_loss += jax_utils.unreplicate(metrics['''loss'''] ) i += 1 return running_loss / i def SCREAMING_SNAKE_CASE_ ( self , _snake_case , _snake_case ) -> List[str]: '''simple docstring''' __a = jax_utils.unreplicate(_snake_case ) print(F"""SAVING CHECKPOINT IN {save_dir}""" , end=''' ... ''' ) self.model_save_fn(_snake_case , params=state.params ) with open(os.path.join(_snake_case , '''opt_state.msgpack''' ) , '''wb''' ) as f: f.write(to_bytes(state.opt_state ) ) joblib.dump(self.args , os.path.join(_snake_case , '''args.joblib''' ) ) joblib.dump(self.data_collator , os.path.join(_snake_case , '''data_collator.joblib''' ) ) with open(os.path.join(_snake_case , '''training_state.json''' ) , '''w''' ) as f: json.dump({'''step''': state.step.item()} , _snake_case ) print('''DONE''' ) def __lowerCAmelCase ( a__ , a__ ) -> List[Any]: print(F"""RESTORING CHECKPOINT FROM {save_dir}""" , end=''' ... ''' ) with open(os.path.join(a__ , '''flax_model.msgpack''' ) , '''rb''' ) as f: __a = from_bytes(state.params , f.read() ) with open(os.path.join(a__ , '''opt_state.msgpack''' ) , '''rb''' ) as f: __a = from_bytes(state.opt_state , f.read() ) __a = joblib.load(os.path.join(a__ , '''args.joblib''' ) ) __a = joblib.load(os.path.join(a__ , '''data_collator.joblib''' ) ) with open(os.path.join(a__ , '''training_state.json''' ) , '''r''' ) as f: __a = json.load(a__ ) __a = training_state['''step'''] print('''DONE''' ) return params, opt_state, step, args, data_collator def __lowerCAmelCase ( a__ , a__ , a__ , a__ ) -> Optional[Any]: __a = num_train_steps - warmup_steps __a = optax.linear_schedule(init_value=a__ , end_value=a__ , transition_steps=a__ ) __a = optax.linear_schedule(init_value=a__ , end_value=1e-7 , transition_steps=a__ ) __a = optax.join_schedules(schedules=[warmup_fn, decay_fn] , boundaries=[warmup_steps] ) return lr def __lowerCAmelCase ( a__ , a__ , a__ , a__ , a__ ) -> str: def weight_decay_mask(a__ ): __a = traverse_util.flatten_dict(a__ ) __a = {k: (v[-1] != '''bias''' and v[-2:] != ('''LayerNorm''', '''scale''')) for k, v in params.items()} return traverse_util.unflatten_dict(a__ ) __a = scheduler_fn(a__ , a__ , a__ , a__ ) __a = optax.adamw(learning_rate=a__ , weight_decay=a__ , mask=a__ ) return tx, lr
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : list ) -> list: """simple docstring""" _UpperCAmelCase : List[Any] = len(_UpperCAmelCase ) for _ in range(_UpperCAmelCase ): for i in range(_ % 2 , arr_size - 1 , 2 ): if arr[i + 1] < arr[i]: _UpperCAmelCase , _UpperCAmelCase : int = arr[i + 1], arr[i] return arr if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = list(range(10, 0, -1)) print(F'Original: {arr}. Sorted: {odd_even_transposition(arr)}')
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import dataclasses import re import string from typing import Any, Dict, Iterator, List, Mapping, Optional, Sequence, Tuple import numpy as np from . import residue_constants lowercase_ = Mapping[str, np.ndarray] lowercase_ = Mapping[str, Any] # Is a nested dict. lowercase_ = 0.01 @dataclasses.dataclass(frozen=_UpperCAmelCase ) class A : """simple docstring""" lowerCamelCase = 42 # [num_res, num_atom_type, 3] # Amino-acid type for each residue represented as an integer between 0 and # 20, where 20 is 'X'. lowerCamelCase = 42 # [num_res] # Binary float mask to indicate presence of a particular atom. 1.0 if an atom # is present and 0.0 if not. This should be used for loss masking. lowerCamelCase = 42 # [num_res, num_atom_type] # Residue index as used in PDB. It is not necessarily continuous or 0-indexed. lowerCamelCase = 42 # [num_res] # B-factors, or temperature factors, of each residue (in sq. angstroms units), # representing the displacement of the residue from its ground truth mean # value. lowerCamelCase = 42 # [num_res, num_atom_type] # Chain indices for multi-chain predictions lowerCamelCase = None # Optional remark about the protein. Included as a comment in output PDB # files lowerCamelCase = None # Templates used to generate this protein (prediction-only) lowerCamelCase = None # Chain corresponding to each parent lowerCamelCase = None def _snake_case( SCREAMING_SNAKE_CASE__ : str ) -> Protein: '''simple docstring''' A__ = R'(\[[A-Z]+\]\n)' A__ = [tag.strip() for tag in re.split(SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ ) if len(SCREAMING_SNAKE_CASE__ ) > 0] A__ = zip(tags[0::2] , [l.split('\n' ) for l in tags[1::2]] ) A__ = ["N", "CA", "C"] A__ = None A__ = None A__ = None for g in groups: if "[PRIMARY]" == g[0]: A__ = g[1][0].strip() for i in range(len(SCREAMING_SNAKE_CASE__ ) ): if seq[i] not in residue_constants.restypes: A__ = 'X' # FIXME: strings are immutable A__ = np.array( [residue_constants.restype_order.get(SCREAMING_SNAKE_CASE__ , residue_constants.restype_num ) for res_symbol in seq] ) elif "[TERTIARY]" == g[0]: A__ = [] for axis in range(3 ): tertiary.append(list(map(SCREAMING_SNAKE_CASE__ , g[1][axis].split() ) ) ) A__ = np.array(SCREAMING_SNAKE_CASE__ ) A__ = np.zeros((len(tertiary[0] ) // 3, residue_constants.atom_type_num, 3) ).astype(np.floataa ) for i, atom in enumerate(SCREAMING_SNAKE_CASE__ ): A__ = np.transpose(tertiary_np[:, i::3] ) atom_positions *= PICO_TO_ANGSTROM elif "[MASK]" == g[0]: A__ = np.array(list(map({'-': 0, '+': 1}.get , g[1][0].strip() ) ) ) A__ = np.zeros( ( len(SCREAMING_SNAKE_CASE__ ), residue_constants.atom_type_num, ) ).astype(np.floataa ) for i, atom in enumerate(SCREAMING_SNAKE_CASE__ ): A__ = 1 atom_mask *= mask[..., None] assert aatype is not None return Protein( atom_positions=SCREAMING_SNAKE_CASE__ , atom_mask=SCREAMING_SNAKE_CASE__ , aatype=SCREAMING_SNAKE_CASE__ , residue_index=np.arange(len(SCREAMING_SNAKE_CASE__ ) ) , b_factors=SCREAMING_SNAKE_CASE__ , ) def _snake_case( SCREAMING_SNAKE_CASE__ : Protein , SCREAMING_SNAKE_CASE__ : int = 0 ) -> List[str]: '''simple docstring''' A__ = [] A__ = prot.remark if remark is not None: pdb_headers.append(f'REMARK {remark}' ) A__ = prot.parents A__ = prot.parents_chain_index if parents is not None and parents_chain_index is not None: A__ = [p for i, p in zip(SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ ) if i == chain_id] if parents is None or len(SCREAMING_SNAKE_CASE__ ) == 0: A__ = ['N/A'] pdb_headers.append(f'PARENT {" ".join(SCREAMING_SNAKE_CASE__ )}' ) return pdb_headers def _snake_case( SCREAMING_SNAKE_CASE__ : Protein , SCREAMING_SNAKE_CASE__ : str ) -> str: '''simple docstring''' A__ = [] A__ = pdb_str.split('\n' ) A__ = prot.remark if remark is not None: out_pdb_lines.append(f'REMARK {remark}' ) A__ = 42 if prot.parents is not None and len(prot.parents ) > 0: A__ = [] if prot.parents_chain_index is not None: A__ = {} for p, i in zip(prot.parents , prot.parents_chain_index ): parent_dict.setdefault(str(SCREAMING_SNAKE_CASE__ ) , [] ) parent_dict[str(SCREAMING_SNAKE_CASE__ )].append(SCREAMING_SNAKE_CASE__ ) A__ = max([int(SCREAMING_SNAKE_CASE__ ) for chain_idx in parent_dict] ) for i in range(max_idx + 1 ): A__ = parent_dict.get(str(SCREAMING_SNAKE_CASE__ ) , ['N/A'] ) parents_per_chain.append(SCREAMING_SNAKE_CASE__ ) else: parents_per_chain.append(list(prot.parents ) ) else: A__ = [['N/A']] def make_parent_line(SCREAMING_SNAKE_CASE__ : Sequence[str] ) -> str: return f'PARENT {" ".join(SCREAMING_SNAKE_CASE__ )}' out_pdb_lines.append(make_parent_line(parents_per_chain[0] ) ) A__ = 0 for i, l in enumerate(SCREAMING_SNAKE_CASE__ ): if "PARENT" not in l and "REMARK" not in l: out_pdb_lines.append(SCREAMING_SNAKE_CASE__ ) if "TER" in l and "END" not in lines[i + 1]: chain_counter += 1 if not chain_counter >= len(SCREAMING_SNAKE_CASE__ ): A__ = parents_per_chain[chain_counter] else: A__ = ['N/A'] out_pdb_lines.append(make_parent_line(SCREAMING_SNAKE_CASE__ ) ) return "\n".join(SCREAMING_SNAKE_CASE__ ) def _snake_case( SCREAMING_SNAKE_CASE__ : Protein ) -> str: '''simple docstring''' A__ = residue_constants.restypes + ['X'] def res_atoa(SCREAMING_SNAKE_CASE__ : int ) -> str: return residue_constants.restype_atoa.get(restypes[r] , 'UNK' ) A__ = residue_constants.atom_types A__ = [] A__ = prot.atom_mask A__ = prot.aatype A__ = prot.atom_positions A__ = prot.residue_index.astype(np.intaa ) A__ = prot.b_factors A__ = prot.chain_index if np.any(aatype > residue_constants.restype_num ): raise ValueError('Invalid aatypes.' ) A__ = get_pdb_headers(SCREAMING_SNAKE_CASE__ ) if len(SCREAMING_SNAKE_CASE__ ) > 0: pdb_lines.extend(SCREAMING_SNAKE_CASE__ ) A__ = aatype.shape[0] A__ = 1 A__ = 0 A__ = string.ascii_uppercase A__ = None # Add all atom sites. for i in range(SCREAMING_SNAKE_CASE__ ): A__ = res_atoa(aatype[i] ) for atom_name, pos, mask, b_factor in zip(SCREAMING_SNAKE_CASE__ , atom_positions[i] , atom_mask[i] , b_factors[i] ): if mask < 0.5: continue A__ = 'ATOM' A__ = atom_name if len(SCREAMING_SNAKE_CASE__ ) == 4 else f' {atom_name}' A__ = '' A__ = '' A__ = 1.00 A__ = atom_name[0] # Protein supports only C, N, O, S, this works. A__ = '' A__ = 'A' if chain_index is not None: A__ = chain_tags[chain_index[i]] # PDB is a columnar format, every space matters here! A__ = ( f'{record_type:<6}{atom_index:>5} {name:<4}{alt_loc:>1}' f'{res_name_a:>3} {chain_tag:>1}' f'{residue_index[i]:>4}{insertion_code:>1} ' f'{pos[0]:>8.3f}{pos[1]:>8.3f}{pos[2]:>8.3f}' f'{occupancy:>6.2f}{b_factor:>6.2f} ' f'{element:>2}{charge:>2}' ) pdb_lines.append(SCREAMING_SNAKE_CASE__ ) atom_index += 1 A__ = i == n - 1 if chain_index is not None: if i != n - 1 and chain_index[i + 1] != prev_chain_index: A__ = True A__ = chain_index[i + 1] if should_terminate: # Close the chain. A__ = 'TER' A__ = ( f'{chain_end:<6}{atom_index:>5} {res_atoa(aatype[i] ):>3} {chain_tag:>1}{residue_index[i]:>4}' ) pdb_lines.append(SCREAMING_SNAKE_CASE__ ) atom_index += 1 if i != n - 1: # "prev" is a misnomer here. This happens at the beginning of # each new chain. pdb_lines.extend(get_pdb_headers(SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ ) ) pdb_lines.append('END' ) pdb_lines.append('' ) return "\n".join(SCREAMING_SNAKE_CASE__ ) def _snake_case( SCREAMING_SNAKE_CASE__ : Protein ) -> np.ndarray: '''simple docstring''' return residue_constants.STANDARD_ATOM_MASK[prot.aatype] def _snake_case( SCREAMING_SNAKE_CASE__ : FeatureDict , SCREAMING_SNAKE_CASE__ : ModelOutput , SCREAMING_SNAKE_CASE__ : Optional[np.ndarray] = None , SCREAMING_SNAKE_CASE__ : Optional[np.ndarray] = None , SCREAMING_SNAKE_CASE__ : Optional[str] = None , SCREAMING_SNAKE_CASE__ : Optional[Sequence[str]] = None , SCREAMING_SNAKE_CASE__ : Optional[Sequence[int]] = None , ) -> Protein: '''simple docstring''' return Protein( aatype=features['aatype'] , atom_positions=result['final_atom_positions'] , atom_mask=result['final_atom_mask'] , residue_index=features['residue_index'] + 1 , b_factors=b_factors if b_factors is not None else np.zeros_like(result['final_atom_mask'] ) , chain_index=SCREAMING_SNAKE_CASE__ , remark=SCREAMING_SNAKE_CASE__ , parents=SCREAMING_SNAKE_CASE__ , parents_chain_index=SCREAMING_SNAKE_CASE__ , )
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'''simple docstring''' import os from typing import Any, Callable, Dict, List, Optional, Tuple, Union import torch from torch import nn from ...models.controlnet import ControlNetModel, ControlNetOutput from ...models.modeling_utils import ModelMixin from ...utils import logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[List[ControlNetModel], Tuple[ControlNetModel]] ): super().__init__() _UpperCAmelCase : Optional[int] = nn.ModuleList(A ) def _A ( self : Dict , A : torch.FloatTensor , A : Union[torch.Tensor, float, int] , A : torch.Tensor , A : List[torch.tensor] , A : List[float] , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[Dict[str, Any]] = None , A : bool = False , A : bool = True , ): for i, (image, scale, controlnet) in enumerate(zip(A , A , self.nets ) ): _UpperCAmelCase , _UpperCAmelCase : str = controlnet( A , A , A , A , A , A , A , A , A , A , A , ) # merge samples if i == 0: _UpperCAmelCase , _UpperCAmelCase : List[Any] = down_samples, mid_sample else: _UpperCAmelCase : Optional[int] = [ samples_prev + samples_curr for samples_prev, samples_curr in zip(A , A ) ] mid_block_res_sample += mid_sample return down_block_res_samples, mid_block_res_sample def _A ( self : List[str] , A : Union[str, os.PathLike] , A : bool = True , A : Callable = None , A : bool = False , A : Optional[str] = None , ): _UpperCAmelCase : str = 0 _UpperCAmelCase : str = save_directory for controlnet in self.nets: controlnet.save_pretrained( A , is_main_process=A , save_function=A , safe_serialization=A , variant=A , ) idx += 1 _UpperCAmelCase : Tuple = model_path_to_save + F"""_{idx}""" @classmethod def _A ( cls : int , A : Optional[Union[str, os.PathLike]] , **A : Tuple ): _UpperCAmelCase : str = 0 _UpperCAmelCase : int = [] # load controlnet and append to list until no controlnet directory exists anymore # first controlnet has to be saved under `./mydirectory/controlnet` to be compliant with `DiffusionPipeline.from_prertained` # second, third, ... controlnets have to be saved under `./mydirectory/controlnet_1`, `./mydirectory/controlnet_2`, ... _UpperCAmelCase : int = pretrained_model_path while os.path.isdir(A ): _UpperCAmelCase : List[str] = ControlNetModel.from_pretrained(A , **A ) controlnets.append(A ) idx += 1 _UpperCAmelCase : Dict = pretrained_model_path + F"""_{idx}""" logger.info(F"""{len(A )} controlnets loaded from {pretrained_model_path}.""" ) if len(A ) == 0: raise ValueError( F"""No ControlNets found under {os.path.dirname(A )}. Expected at least {pretrained_model_path + '_0'}.""" ) return cls(A )
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0
import os from shutil import copyfile from typing import Any, Dict, List, Optional, Tuple import sentencepiece as spm from ...tokenization_utils import AddedToken, PreTrainedTokenizer from ...utils import logging lowerCAmelCase_ = logging.get_logger(__name__) lowerCAmelCase_ = {'''vocab_file''': '''sentencepiece.bpe.model'''} lowerCAmelCase_ = { '''vocab_file''': { '''camembert-base''': '''https://huggingface.co/camembert-base/resolve/main/sentencepiece.bpe.model''', } } lowerCAmelCase_ = { '''camembert-base''': 5_12, } lowerCAmelCase_ = '''▁''' class snake_case_ ( __A ): '''simple docstring''' SCREAMING_SNAKE_CASE : List[str] = VOCAB_FILES_NAMES SCREAMING_SNAKE_CASE : str = PRETRAINED_VOCAB_FILES_MAP SCREAMING_SNAKE_CASE : Tuple = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES SCREAMING_SNAKE_CASE : str = ["input_ids", "attention_mask"] def __init__( self : Optional[Any] , _UpperCamelCase : Tuple , _UpperCamelCase : Dict="<s>" , _UpperCamelCase : str="</s>" , _UpperCamelCase : Dict="</s>" , _UpperCamelCase : List[Any]="<s>" , _UpperCamelCase : Optional[Any]="<unk>" , _UpperCamelCase : List[str]="<pad>" , _UpperCamelCase : Dict="<mask>" , _UpperCamelCase : List[str]=["<s>NOTUSED", "</s>NOTUSED"] , _UpperCamelCase : Optional[Dict[str, Any]] = None , **_UpperCamelCase : Dict , ) ->None: # Mask token behave like a normal word, i.e. include the space before it snake_case_ = AddedToken(_UpperCamelCase , lstrip=_UpperCamelCase , rstrip=_UpperCamelCase ) if isinstance(_UpperCamelCase , _UpperCamelCase ) else mask_token snake_case_ = {} if sp_model_kwargs is None else sp_model_kwargs super().__init__( bos_token=_UpperCamelCase , eos_token=_UpperCamelCase , unk_token=_UpperCamelCase , sep_token=_UpperCamelCase , cls_token=_UpperCamelCase , pad_token=_UpperCamelCase , mask_token=_UpperCamelCase , additional_special_tokens=_UpperCamelCase , sp_model_kwargs=self.sp_model_kwargs , **_UpperCamelCase , ) snake_case_ = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(str(_UpperCamelCase ) ) snake_case_ = vocab_file # HACK: These tokens were added by fairseq but don't seem to be actually used when duplicated in the actual # sentencepiece vocabulary (this is the case for <s> and </s> snake_case_ = {'''<s>NOTUSED''': 0, '''<pad>''': 1, '''</s>NOTUSED''': 2, '''<unk>''': 3} snake_case_ = len(self.fairseq_tokens_to_ids ) snake_case_ = len(self.sp_model ) + len(self.fairseq_tokens_to_ids ) snake_case_ = {v: k for k, v in self.fairseq_tokens_to_ids.items()} def snake_case__( self : Dict , _UpperCamelCase : List[int] , _UpperCamelCase : Optional[List[int]] = None ) ->List[int]: if token_ids_a is None: return [self.cls_token_id] + token_ids_a + [self.sep_token_id] snake_case_ = [self.cls_token_id] snake_case_ = [self.sep_token_id] return cls + token_ids_a + sep + sep + token_ids_a + sep def snake_case__( self : str , _UpperCamelCase : List[int] , _UpperCamelCase : Optional[List[int]] = None , _UpperCamelCase : bool = False ) ->List[int]: if already_has_special_tokens: return super().get_special_tokens_mask( token_ids_a=_UpperCamelCase , token_ids_a=_UpperCamelCase , already_has_special_tokens=_UpperCamelCase ) if token_ids_a is None: return [1] + ([0] * len(_UpperCamelCase )) + [1] return [1] + ([0] * len(_UpperCamelCase )) + [1, 1] + ([0] * len(_UpperCamelCase )) + [1] def snake_case__( self : Any , _UpperCamelCase : List[int] , _UpperCamelCase : Optional[List[int]] = None ) ->List[int]: snake_case_ = [self.sep_token_id] snake_case_ = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep + sep + token_ids_a + sep ) * [0] @property def snake_case__( self : Any ) ->Union[str, Any]: return len(self.fairseq_tokens_to_ids ) + len(self.sp_model ) def snake_case__( self : Any ) ->List[Any]: snake_case_ = {self.convert_ids_to_tokens(_UpperCamelCase ): i for i in range(self.vocab_size )} vocab.update(self.added_tokens_encoder ) return vocab def snake_case__( self : Tuple , _UpperCamelCase : str ) ->List[str]: return self.sp_model.encode(_UpperCamelCase , out_type=_UpperCamelCase ) def snake_case__( self : List[str] , _UpperCamelCase : int ) ->Union[str, Any]: if token in self.fairseq_tokens_to_ids: return self.fairseq_tokens_to_ids[token] elif self.sp_model.PieceToId(_UpperCamelCase ) == 0: # Convert sentence piece unk token to fairseq unk token index return self.unk_token_id return self.fairseq_offset + self.sp_model.PieceToId(_UpperCamelCase ) def snake_case__( self : List[Any] , _UpperCamelCase : Tuple ) ->Any: if index in self.fairseq_ids_to_tokens: return self.fairseq_ids_to_tokens[index] return self.sp_model.IdToPiece(index - self.fairseq_offset ) def snake_case__( self : Any , _UpperCamelCase : str ) ->Any: snake_case_ = [] snake_case_ = '''''' snake_case_ = False for token in tokens: # make sure that special tokens are not decoded using sentencepiece model if token in self.all_special_tokens: if not prev_is_special: out_string += " " out_string += self.sp_model.decode(_UpperCamelCase ) + token snake_case_ = True snake_case_ = [] else: current_sub_tokens.append(_UpperCamelCase ) snake_case_ = False out_string += self.sp_model.decode(_UpperCamelCase ) return out_string.strip() def __getstate__( self : List[Any] ) ->str: snake_case_ = self.__dict__.copy() snake_case_ = None return state def __setstate__( self : int , _UpperCamelCase : str ) ->str: snake_case_ = d # for backward compatibility if not hasattr(self , '''sp_model_kwargs''' ): snake_case_ = {} snake_case_ = spm.SentencePieceProcessor(**self.sp_model_kwargs ) self.sp_model.Load(self.vocab_file ) def snake_case__( self : Dict , _UpperCamelCase : str , _UpperCamelCase : Optional[str] = None ) ->Tuple[str]: if not os.path.isdir(_UpperCamelCase ): logger.error(f'''Vocabulary path ({save_directory}) should be a directory''' ) return snake_case_ = os.path.join( _UpperCamelCase , (filename_prefix + '''-''' if filename_prefix else '''''') + VOCAB_FILES_NAMES['''vocab_file'''] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(_UpperCamelCase ) and os.path.isfile(self.vocab_file ): copyfile(self.vocab_file , _UpperCamelCase ) elif not os.path.isfile(self.vocab_file ): with open(_UpperCamelCase , '''wb''' ) as fi: snake_case_ = self.sp_model.serialized_model_proto() fi.write(_UpperCamelCase ) return (out_vocab_file,)
8
'''simple docstring''' import argparse import json import pickle from pathlib import Path import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig from transformers.utils import logging logging.set_verbosity_info() __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : str ) -> Optional[Any]: """simple docstring""" _UpperCAmelCase : int = SwinConfig.from_pretrained( "microsoft/swin-tiny-patch4-window7-224" , out_features=["stage1", "stage2", "stage3", "stage4"] ) _UpperCAmelCase : List[Any] = MaskFormerConfig(backbone_config=_UpperCAmelCase ) _UpperCAmelCase : Tuple = "huggingface/label-files" if "ade20k-full" in model_name: # this should be ok _UpperCAmelCase : Dict = 847 _UpperCAmelCase : Any = "maskformer-ade20k-full-id2label.json" elif "ade" in model_name: # this should be ok _UpperCAmelCase : Any = 150 _UpperCAmelCase : Any = "ade20k-id2label.json" elif "coco-stuff" in model_name: # this should be ok _UpperCAmelCase : Tuple = 171 _UpperCAmelCase : Union[str, Any] = "maskformer-coco-stuff-id2label.json" elif "coco" in model_name: # TODO _UpperCAmelCase : Any = 133 _UpperCAmelCase : int = "coco-panoptic-id2label.json" elif "cityscapes" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 19 _UpperCAmelCase : str = "cityscapes-id2label.json" elif "vistas" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 65 _UpperCAmelCase : Tuple = "mapillary-vistas-id2label.json" _UpperCAmelCase : List[Any] = json.load(open(hf_hub_download(_UpperCAmelCase , _UpperCAmelCase , repo_type="dataset" ) , "r" ) ) _UpperCAmelCase : Tuple = {int(_UpperCAmelCase ): v for k, v in idalabel.items()} return config def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] ) -> List[Any]: """simple docstring""" _UpperCAmelCase : Dict = [] # stem # fmt: off rename_keys.append(("backbone.patch_embed.proj.weight", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight") ) rename_keys.append(("backbone.patch_embed.proj.bias", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias") ) rename_keys.append(("backbone.patch_embed.norm.weight", "model.pixel_level_module.encoder.model.embeddings.norm.weight") ) rename_keys.append(("backbone.patch_embed.norm.bias", "model.pixel_level_module.encoder.model.embeddings.norm.bias") ) # stages for i in range(len(config.backbone_config.depths ) ): for j in range(config.backbone_config.depths[i] ): rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_index""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias""") ) if i < 3: rename_keys.append((F"""backbone.layers.{i}.downsample.reduction.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias""") ) rename_keys.append((F"""backbone.norm{i}.weight""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.weight""") ) rename_keys.append((F"""backbone.norm{i}.bias""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.bias""") ) # FPN rename_keys.append(("sem_seg_head.layer_4.weight", "model.pixel_level_module.decoder.fpn.stem.0.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.weight", "model.pixel_level_module.decoder.fpn.stem.1.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.bias", "model.pixel_level_module.decoder.fpn.stem.1.bias") ) for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ): rename_keys.append((F"""sem_seg_head.adapter_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias""") ) rename_keys.append(("sem_seg_head.mask_features.weight", "model.pixel_level_module.decoder.mask_projection.weight") ) rename_keys.append(("sem_seg_head.mask_features.bias", "model.pixel_level_module.decoder.mask_projection.bias") ) # Transformer decoder for idx in range(config.decoder_config.decoder_layers ): # self-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias""") ) # cross-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias""") ) # MLP 1 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc1.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc1.bias""") ) # MLP 2 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc2.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc2.bias""") ) # layernorm 1 (self-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias""") ) # layernorm 2 (cross-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias""") ) # layernorm 3 (final layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias""") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.weight", "model.transformer_module.decoder.layernorm.weight") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.bias", "model.transformer_module.decoder.layernorm.bias") ) # heads on top rename_keys.append(("sem_seg_head.predictor.query_embed.weight", "model.transformer_module.queries_embedder.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.weight", "model.transformer_module.input_projection.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.bias", "model.transformer_module.input_projection.bias") ) rename_keys.append(("sem_seg_head.predictor.class_embed.weight", "class_predictor.weight") ) rename_keys.append(("sem_seg_head.predictor.class_embed.bias", "class_predictor.bias") ) for i in range(3 ): rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.weight""", F"""mask_embedder.{i}.0.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.bias""", F"""mask_embedder.{i}.0.bias""") ) # fmt: on return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Tuple , _UpperCAmelCase : List[Any] ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : List[str] = val def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : Tuple ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : List[str] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )] for i in range(len(backbone_config.depths ) ): _UpperCAmelCase : Optional[int] = num_features[i] for j in range(backbone_config.depths[i] ): # fmt: off # read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias) _UpperCAmelCase : Any = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.weight""" ) _UpperCAmelCase : Optional[int] = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : List[str] = in_proj_weight[:dim, :] _UpperCAmelCase : Tuple = in_proj_bias[: dim] _UpperCAmelCase : List[Any] = in_proj_weight[ dim : dim * 2, : ] _UpperCAmelCase : List[str] = in_proj_bias[ dim : dim * 2 ] _UpperCAmelCase : Optional[Any] = in_proj_weight[ -dim :, : ] _UpperCAmelCase : Dict = in_proj_bias[-dim :] # fmt: on def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : str ) -> Dict: """simple docstring""" _UpperCAmelCase : Union[str, Any] = config.decoder_config.hidden_size for idx in range(config.decoder_config.decoder_layers ): # read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight""" ) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : int = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[:config.hidden_size] _UpperCAmelCase : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : List[str] = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : int = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Optional[Any] = in_proj_bias[-hidden_size :] # read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Optional[Any] = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight""" ) _UpperCAmelCase : Tuple = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : Any = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Tuple = in_proj_bias[:config.hidden_size] _UpperCAmelCase : Dict = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : Dict = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : Optional[int] = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[-hidden_size :] # fmt: on def UpperCamelCase_ ( ) -> torch.Tensor: """simple docstring""" _UpperCAmelCase : int = "http://images.cocodataset.org/val2017/000000039769.jpg" _UpperCAmelCase : Any = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ) return im @torch.no_grad() def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : bool = False ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = get_maskformer_config(_UpperCAmelCase ) # load original state_dict with open(_UpperCAmelCase , "rb" ) as f: _UpperCAmelCase : Optional[int] = pickle.load(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = data["model"] # for name, param in state_dict.items(): # print(name, param.shape) # rename keys _UpperCAmelCase : Any = create_rename_keys(_UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_swin_q_k_v(_UpperCAmelCase , config.backbone_config ) read_in_decoder_q_k_v(_UpperCAmelCase , _UpperCAmelCase ) # update to torch tensors for key, value in state_dict.items(): _UpperCAmelCase : Tuple = torch.from_numpy(_UpperCAmelCase ) # load 🤗 model _UpperCAmelCase : Union[str, Any] = MaskFormerForInstanceSegmentation(_UpperCAmelCase ) model.eval() for name, param in model.named_parameters(): print(_UpperCAmelCase , param.shape ) _UpperCAmelCase , _UpperCAmelCase : Any = model.load_state_dict(_UpperCAmelCase , strict=_UpperCAmelCase ) assert missing_keys == [ "model.pixel_level_module.encoder.model.layernorm.weight", "model.pixel_level_module.encoder.model.layernorm.bias", ] assert len(_UpperCAmelCase ) == 0, F"""Unexpected keys: {unexpected_keys}""" # verify results _UpperCAmelCase : Optional[int] = prepare_img() if "vistas" in model_name: _UpperCAmelCase : int = 65 elif "cityscapes" in model_name: _UpperCAmelCase : Tuple = 65_535 else: _UpperCAmelCase : Any = 255 _UpperCAmelCase : Optional[Any] = True if "ade" in model_name else False _UpperCAmelCase : Optional[int] = MaskFormerImageProcessor(ignore_index=_UpperCAmelCase , reduce_labels=_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = image_processor(_UpperCAmelCase , return_tensors="pt" ) _UpperCAmelCase : List[Any] = model(**_UpperCAmelCase ) print("Logits:" , outputs.class_queries_logits[0, :3, :3] ) if model_name == "maskformer-swin-tiny-ade": _UpperCAmelCase : Tuple = torch.tensor( [[3.6_3_5_3, -4.4_7_7_0, -2.6_0_6_5], [0.5_0_8_1, -4.2_3_9_4, -3.5_3_4_3], [2.1_9_0_9, -5.0_3_5_3, -1.9_3_2_3]] ) assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , _UpperCAmelCase , atol=1e-4 ) print("Looks ok!" ) if pytorch_dump_folder_path is not None: print(F"""Saving model and image processor to {pytorch_dump_folder_path}""" ) Path(_UpperCAmelCase ).mkdir(exist_ok=_UpperCAmelCase ) model.save_pretrained(_UpperCAmelCase ) image_processor.save_pretrained(_UpperCAmelCase ) if push_to_hub: print("Pushing model and image processor to the hub..." ) model.push_to_hub(F"""nielsr/{model_name}""" ) image_processor.push_to_hub(F"""nielsr/{model_name}""" ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""maskformer-swin-tiny-ade""", type=str, help=("""Name of the MaskFormer model you'd like to convert""",), ) parser.add_argument( """--checkpoint_path""", default="""/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl""", type=str, help="""Path to the original state dict (.pth file).""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) __SCREAMING_SNAKE_CASE : int = parser.parse_args() convert_maskformer_checkpoint( args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub )
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import argparse import os import evaluate import torch from datasets import load_dataset from torch.optim import AdamW from torch.utils.data import DataLoader from transformers import AutoModelForSequenceClassification, AutoTokenizer, get_linear_schedule_with_warmup, set_seed from accelerate import Accelerator, DistributedType ######################################################################## # This is a fully working simple example to use Accelerate, # specifically showcasing how to properly calculate the metrics on the # validation dataset when in a distributed system, and builds off the # `nlp_example.py` script. # # This example trains a Bert base model on GLUE MRPC # in any of the following settings (with the same script): # - single CPU or single GPU # - multi GPUS (using PyTorch distributed mode) # - (multi) TPUs # - fp16 (mixed-precision) or fp32 (normal precision) # # To help focus on the differences in the code, building `DataLoaders` # was refactored into its own function. # New additions from the base script can be found quickly by # looking for the # New Code # tags # # To run it in each of these various modes, follow the instructions # in the readme for examples: # https://github.com/huggingface/accelerate/tree/main/examples # ######################################################################## __lowerCAmelCase : Dict =1_6 __lowerCAmelCase : List[str] =3_2 def _UpperCamelCase ( lowercase__ , lowercase__ = 16 ): __SCREAMING_SNAKE_CASE : Dict = AutoTokenizer.from_pretrained('''bert-base-cased''' ) __SCREAMING_SNAKE_CASE : Optional[int] = load_dataset('''glue''' , '''mrpc''' ) def tokenize_function(lowercase__ ): # max_length=None => use the model max length (it's actually the default) __SCREAMING_SNAKE_CASE : Optional[int] = tokenizer(examples['''sentence1'''] , examples['''sentence2'''] , truncation=lowercase__ , max_length=lowercase__ ) return outputs # Apply the method we just defined to all the examples in all the splits of the dataset # starting with the main process first: with accelerator.main_process_first(): __SCREAMING_SNAKE_CASE : Dict = datasets.map( lowercase__ , batched=lowercase__ , remove_columns=['''idx''', '''sentence1''', '''sentence2'''] , ) # We also rename the 'label' column to 'labels' which is the expected name for labels by the models of the # transformers library __SCREAMING_SNAKE_CASE : List[Any] = tokenized_datasets.rename_column('''label''' , '''labels''' ) def collate_fn(lowercase__ ): # On TPU it's best to pad everything to the same length or training will be very slow. __SCREAMING_SNAKE_CASE : List[str] = 128 if accelerator.distributed_type == DistributedType.TPU else None # When using mixed precision we want round multiples of 8/16 if accelerator.mixed_precision == "fp8": __SCREAMING_SNAKE_CASE : str = 16 elif accelerator.mixed_precision != "no": __SCREAMING_SNAKE_CASE : Tuple = 8 else: __SCREAMING_SNAKE_CASE : Dict = None return tokenizer.pad( lowercase__ , padding='''longest''' , max_length=lowercase__ , pad_to_multiple_of=lowercase__ , return_tensors='''pt''' , ) # Instantiate dataloaders. __SCREAMING_SNAKE_CASE : Tuple = DataLoader( tokenized_datasets['''train'''] , shuffle=lowercase__ , collate_fn=lowercase__ , batch_size=lowercase__ ) __SCREAMING_SNAKE_CASE : Optional[Any] = DataLoader( tokenized_datasets['''validation'''] , shuffle=lowercase__ , collate_fn=lowercase__ , batch_size=lowercase__ ) return train_dataloader, eval_dataloader # For testing only if os.environ.get('TESTING_MOCKED_DATALOADERS', None) == "1": from accelerate.test_utils.training import mocked_dataloaders __lowerCAmelCase : Dict =mocked_dataloaders # noqa: F811 def _UpperCamelCase ( lowercase__ , lowercase__ ): # For testing only if os.environ.get('''TESTING_MOCKED_DATALOADERS''' , lowercase__ ) == "1": __SCREAMING_SNAKE_CASE : Dict = 2 # Initialize accelerator __SCREAMING_SNAKE_CASE : List[str] = Accelerator(cpu=args.cpu , mixed_precision=args.mixed_precision ) # Sample hyper-parameters for learning rate, batch size, seed and a few other HPs __SCREAMING_SNAKE_CASE : str = config['''lr'''] __SCREAMING_SNAKE_CASE : Tuple = int(config['''num_epochs'''] ) __SCREAMING_SNAKE_CASE : Optional[Any] = int(config['''seed'''] ) __SCREAMING_SNAKE_CASE : Optional[int] = int(config['''batch_size'''] ) __SCREAMING_SNAKE_CASE : Dict = evaluate.load('''glue''' , '''mrpc''' ) # If the batch size is too big we use gradient accumulation __SCREAMING_SNAKE_CASE : List[Any] = 1 if batch_size > MAX_GPU_BATCH_SIZE and accelerator.distributed_type != DistributedType.TPU: __SCREAMING_SNAKE_CASE : List[Any] = batch_size // MAX_GPU_BATCH_SIZE __SCREAMING_SNAKE_CASE : List[str] = MAX_GPU_BATCH_SIZE set_seed(lowercase__ ) __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE : Tuple = get_dataloaders(lowercase__ , lowercase__ ) # Instantiate the model (we build the model here so that the seed also control new weights initialization) __SCREAMING_SNAKE_CASE : List[Any] = AutoModelForSequenceClassification.from_pretrained('''bert-base-cased''' , return_dict=lowercase__ ) # We could avoid this line since the accelerator is set with `device_placement=True` (default value). # Note that if you are placing tensors on devices manually, this line absolutely needs to be before the optimizer # creation otherwise training will not work on TPU (`accelerate` will kindly throw an error to make us aware of that). __SCREAMING_SNAKE_CASE : Union[str, Any] = model.to(accelerator.device ) # Instantiate optimizer __SCREAMING_SNAKE_CASE : List[Any] = AdamW(params=model.parameters() , lr=lowercase__ ) # Instantiate scheduler __SCREAMING_SNAKE_CASE : str = get_linear_schedule_with_warmup( optimizer=lowercase__ , num_warmup_steps=100 , num_training_steps=(len(lowercase__ ) * num_epochs) // gradient_accumulation_steps , ) # Prepare everything # There is no specific order to remember, we just need to unpack the objects in the same order we gave them to the # prepare method. __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE : Any = accelerator.prepare( lowercase__ , lowercase__ , lowercase__ , lowercase__ , lowercase__ ) # Now we train the model for epoch in range(lowercase__ ): model.train() for step, batch in enumerate(lowercase__ ): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device ) __SCREAMING_SNAKE_CASE : Union[str, Any] = model(**lowercase__ ) __SCREAMING_SNAKE_CASE : Any = outputs.loss __SCREAMING_SNAKE_CASE : Tuple = loss / gradient_accumulation_steps accelerator.backward(lowercase__ ) if step % gradient_accumulation_steps == 0: optimizer.step() lr_scheduler.step() optimizer.zero_grad() model.eval() __SCREAMING_SNAKE_CASE : Dict = 0 for step, batch in enumerate(lowercase__ ): # We could avoid this line since we set the accelerator with `device_placement=True`. batch.to(accelerator.device ) with torch.no_grad(): __SCREAMING_SNAKE_CASE : Union[str, Any] = model(**lowercase__ ) __SCREAMING_SNAKE_CASE : Optional[int] = outputs.logits.argmax(dim=-1 ) __SCREAMING_SNAKE_CASE , __SCREAMING_SNAKE_CASE : Optional[int] = accelerator.gather((predictions, batch['''labels''']) ) # New Code # # First we check if it's a distributed system if accelerator.use_distributed: # Then see if we're on the last batch of our eval dataloader if step == len(lowercase__ ) - 1: # Last batch needs to be truncated on distributed systems as it contains additional samples __SCREAMING_SNAKE_CASE : int = predictions[: len(eval_dataloader.dataset ) - samples_seen] __SCREAMING_SNAKE_CASE : Any = references[: len(eval_dataloader.dataset ) - samples_seen] else: # Otherwise we add the number of samples seen samples_seen += references.shape[0] # All of this can be avoided if you use `Accelerator.gather_for_metrics` instead of `Accelerator.gather`: # accelerator.gather_for_metrics((predictions, batch["labels"])) metric.add_batch( predictions=lowercase__ , references=lowercase__ , ) __SCREAMING_SNAKE_CASE : Dict = metric.compute() # Use accelerator.print to print only on the main process. accelerator.print(F'''epoch {epoch}:''' , lowercase__ ) def _UpperCamelCase ( ): __SCREAMING_SNAKE_CASE : int = argparse.ArgumentParser(description='''Simple example of training script.''' ) parser.add_argument( '''--mixed_precision''' , type=lowercase__ , default=lowercase__ , choices=['''no''', '''fp16''', '''bf16''', '''fp8'''] , help='''Whether to use mixed precision. Choose''' '''between fp16 and bf16 (bfloat16). Bf16 requires PyTorch >= 1.10.''' '''and an Nvidia Ampere GPU.''' , ) parser.add_argument('''--cpu''' , action='''store_true''' , help='''If passed, will train on the CPU.''' ) __SCREAMING_SNAKE_CASE : str = parser.parse_args() __SCREAMING_SNAKE_CASE : Dict = {'''lr''': 2e-5, '''num_epochs''': 3, '''seed''': 42, '''batch_size''': 16} training_function(lowercase__ , lowercase__ ) if __name__ == "__main__": main()
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'''simple docstring''' import bza import gzip import lzma import os import shutil import struct import tarfile import warnings import zipfile from abc import ABC, abstractmethod from pathlib import Path from typing import Dict, List, Optional, Type, Union from .. import config from .filelock import FileLock from .logging import get_logger __SCREAMING_SNAKE_CASE : Dict = get_logger(__name__) class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[str] , A : Optional[str] = None ): _UpperCAmelCase : Dict = ( os.path.join(A , config.EXTRACTED_DATASETS_DIR ) if cache_dir else config.EXTRACTED_DATASETS_PATH ) _UpperCAmelCase : Union[str, Any] = Extractor def _A ( self : Tuple , A : str ): from .file_utils import hash_url_to_filename # Path where we extract compressed archives # We extract in the cache dir, and get the extracted path name by hashing the original path" _UpperCAmelCase : Dict = os.path.abspath(A ) return os.path.join(self.extract_dir , hash_url_to_filename(A ) ) def _A ( self : int , A : str , A : bool ): return force_extract or ( not os.path.isfile(A ) and not (os.path.isdir(A ) and os.listdir(A )) ) def _A ( self : Optional[int] , A : str , A : bool = False ): _UpperCAmelCase : Union[str, Any] = self.extractor.infer_extractor_format(A ) if not extractor_format: return input_path _UpperCAmelCase : Optional[Any] = self._get_output_path(A ) if self._do_extract(A , A ): self.extractor.extract(A , A , A ) return output_path class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod @abstractmethod def _A ( cls : str , A : Union[Path, str] , **A : Dict ): ... @staticmethod @abstractmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): ... class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: List[bytes] = [] @staticmethod def _A ( A : Union[Path, str] , A : int ): with open(A , "rb" ) as f: return f.read(A ) @classmethod def _A ( cls : Any , A : Union[Path, str] , A : bytes = b"" ): if not magic_number: _UpperCAmelCase : Any = max(len(A ) for cls_magic_number in cls.magic_numbers ) try: _UpperCAmelCase : int = cls.read_magic_number(A , A ) except OSError: return False return any(magic_number.startswith(A ) for cls_magic_number in cls.magic_numbers ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod def _A ( cls : str , A : Union[Path, str] , **A : List[Any] ): return tarfile.is_tarfile(A ) @staticmethod def _A ( A : Union[str, Any] , A : str ): def resolved(A : str ) -> str: return os.path.realpath(os.path.abspath(A ) ) def badpath(A : str , A : str ) -> bool: # joinpath will ignore base if path is absolute return not resolved(os.path.join(A , A ) ).startswith(A ) def badlink(A : str , A : str ) -> bool: # Links are interpreted relative to the directory containing the link _UpperCAmelCase : List[str] = resolved(os.path.join(A , os.path.dirname(info.name ) ) ) return badpath(info.linkname , base=A ) _UpperCAmelCase : Optional[int] = resolved(A ) for finfo in members: if badpath(finfo.name , A ): logger.error(F"""Extraction of {finfo.name} is blocked (illegal path)""" ) elif finfo.issym() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Symlink to {finfo.linkname}""" ) elif finfo.islnk() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Hard link to {finfo.linkname}""" ) else: yield finfo @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) _UpperCAmelCase : int = tarfile.open(A ) tar_file.extractall(A , members=TarExtractor.safemembers(A , A ) ) tar_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = [b"\x1F\x8B"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with gzip.open(A , "rb" ) as gzip_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [ b"PK\x03\x04", b"PK\x05\x06", # empty archive b"PK\x07\x08", # spanned archive ] @classmethod def _A ( cls : Dict , A : Union[Path, str] , A : bytes = b"" ): if super().is_extractable(A , magic_number=A ): return True try: # Alternative version of zipfile.is_zipfile that has less false positives, but misses executable zip archives. # From: https://github.com/python/cpython/pull/5053 from zipfile import ( _CD_SIGNATURE, _ECD_DISK_NUMBER, _ECD_DISK_START, _ECD_ENTRIES_TOTAL, _ECD_OFFSET, _ECD_SIZE, _EndRecData, sizeCentralDir, stringCentralDir, structCentralDir, ) with open(A , "rb" ) as fp: _UpperCAmelCase : Tuple = _EndRecData(A ) if endrec: if endrec[_ECD_ENTRIES_TOTAL] == 0 and endrec[_ECD_SIZE] == 0 and endrec[_ECD_OFFSET] == 0: return True # Empty zipfiles are still zipfiles elif endrec[_ECD_DISK_NUMBER] == endrec[_ECD_DISK_START]: fp.seek(endrec[_ECD_OFFSET] ) # Central directory is on the same disk if fp.tell() == endrec[_ECD_OFFSET] and endrec[_ECD_SIZE] >= sizeCentralDir: _UpperCAmelCase : Dict = fp.read(A ) # CD is where we expect it to be if len(A ) == sizeCentralDir: _UpperCAmelCase : Any = struct.unpack(A , A ) # CD is the right size if centdir[_CD_SIGNATURE] == stringCentralDir: return True # First central directory entry has correct magic number return False except Exception: # catch all errors in case future python versions change the zipfile internals return False @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) with zipfile.ZipFile(A , "r" ) as zip_file: zip_file.extractall(A ) zip_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [b"\xFD\x37\x7A\x58\x5A\x00"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with lzma.open(A ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = [b"Rar!\x1a\x07\x00", b"Rar!\x1a\x07\x01\x00"] # RAR_ID # RAR5_ID @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.RARFILE_AVAILABLE: raise ImportError("Please pip install rarfile" ) import rarfile os.makedirs(A , exist_ok=A ) _UpperCAmelCase : List[str] = rarfile.RarFile(A ) rf.extractall(A ) rf.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x28\xb5\x2F\xFD"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.ZSTANDARD_AVAILABLE: raise ImportError("Please pip install zstandard" ) import zstandard as zstd _UpperCAmelCase : Optional[Any] = zstd.ZstdDecompressor() with open(A , "rb" ) as ifh, open(A , "wb" ) as ofh: dctx.copy_stream(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x42\x5A\x68"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with bza.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = [b"\x37\x7A\xBC\xAF\x27\x1C"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.PY7ZR_AVAILABLE: raise ImportError("Please pip install py7zr" ) import pyazr os.makedirs(A , exist_ok=A ) with pyazr.SevenZipFile(A , "r" ) as archive: archive.extractall(A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = [b"\x04\x22\x4D\x18"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.LZ4_AVAILABLE: raise ImportError("Please pip install lz4" ) import lza.frame with lza.frame.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: Dict[str, Type[BaseExtractor]] = { "tar": TarExtractor, "gzip": GzipExtractor, "zip": ZipExtractor, "xz": XzExtractor, "rar": RarExtractor, "zstd": ZstdExtractor, "bz2": BzipaExtractor, "7z": SevenZipExtractor, # <Added version="2.4.0"/> "lz4": LzaExtractor, # <Added version="2.4.0"/> } @classmethod def _A ( cls : List[Any] ): return max( len(A ) for extractor in cls.extractors.values() if issubclass(A , A ) for extractor_magic_number in extractor.magic_numbers ) @staticmethod def _A ( A : Union[Path, str] , A : int ): try: return MagicNumberBaseExtractor.read_magic_number(A , magic_number_length=A ) except OSError: return b"" @classmethod def _A ( cls : Optional[Any] , A : Union[Path, str] , A : bool = False ): warnings.warn( "Method 'is_extractable' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'infer_extractor_format' instead." , category=A , ) _UpperCAmelCase : Union[str, Any] = cls.infer_extractor_format(A ) if extractor_format: return True if not return_extractor else (True, cls.extractors[extractor_format]) return False if not return_extractor else (False, None) @classmethod def _A ( cls : Dict , A : Union[Path, str] ): # <Added version="2.4.0"/> _UpperCAmelCase : Optional[int] = cls._get_magic_number_max_length() _UpperCAmelCase : str = cls._read_magic_number(A , A ) for extractor_format, extractor in cls.extractors.items(): if extractor.is_extractable(A , magic_number=A ): return extractor_format @classmethod def _A ( cls : List[str] , A : Union[Path, str] , A : Union[Path, str] , A : Optional[str] = None , A : Optional[BaseExtractor] = "deprecated" , ): os.makedirs(os.path.dirname(A ) , exist_ok=A ) # Prevent parallel extractions _UpperCAmelCase : Tuple = str(Path(A ).with_suffix(".lock" ) ) with FileLock(A ): shutil.rmtree(A , ignore_errors=A ) if extractor_format or extractor != "deprecated": if extractor != "deprecated" or not isinstance(A , A ): # passed as positional arg warnings.warn( "Parameter 'extractor' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'extractor_format' instead." , category=A , ) _UpperCAmelCase : Tuple = extractor if extractor != "deprecated" else extractor_format else: _UpperCAmelCase : Tuple = cls.extractors[extractor_format] return extractor.extract(A , A ) else: warnings.warn( "Parameter 'extractor_format' was made required in version 2.4.0 and not passing it will raise an " "exception in 3.0.0." , category=A , ) for extractor in cls.extractors.values(): if extractor.is_extractable(A ): return extractor.extract(A , A )
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class _SCREAMING_SNAKE_CASE : '''simple docstring''' def __init__(self : Any , UpperCAmelCase_ : str = "" , UpperCAmelCase_ : bool = False) ->None: '''simple docstring''' lowerCamelCase__: dict[str, RadixNode] ={} # A node will be a leaf if the tree contains its word lowerCamelCase__: Any =is_leaf lowerCamelCase__: List[str] =prefix def SCREAMING_SNAKE_CASE_ (self : List[str] , UpperCAmelCase_ : str) ->tuple[str, str, str]: '''simple docstring''' lowerCamelCase__: Any =0 for q, w in zip(self.prefix , UpperCAmelCase_): if q != w: break x += 1 return self.prefix[:x], self.prefix[x:], word[x:] def SCREAMING_SNAKE_CASE_ (self : Optional[Any] , UpperCAmelCase_ : list[str]) ->None: '''simple docstring''' for word in words: self.insert(UpperCAmelCase_) def SCREAMING_SNAKE_CASE_ (self : List[str] , UpperCAmelCase_ : str) ->None: '''simple docstring''' if self.prefix == word: lowerCamelCase__: Optional[int] =True # Case 2: The node has no edges that have a prefix to the word # Solution: We create an edge from the current node to a new one # containing the word elif word[0] not in self.nodes: lowerCamelCase__: Any =RadixNode(prefix=UpperCAmelCase_ , is_leaf=UpperCAmelCase_) else: lowerCamelCase__: Union[str, Any] =self.nodes[word[0]] lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__: Tuple =incoming_node.match( UpperCAmelCase_) # Case 3: The node prefix is equal to the matching # Solution: We insert remaining word on the next node if remaining_prefix == "": self.nodes[matching_string[0]].insert(UpperCAmelCase_) # Case 4: The word is greater equal to the matching # Solution: Create a node in between both nodes, change # prefixes and add the new node for the remaining word else: lowerCamelCase__: Union[str, Any] =remaining_prefix lowerCamelCase__: Optional[int] =self.nodes[matching_string[0]] lowerCamelCase__: Dict =RadixNode(UpperCAmelCase_ , UpperCAmelCase_) lowerCamelCase__: Tuple =aux_node if remaining_word == "": lowerCamelCase__: Dict =True else: self.nodes[matching_string[0]].insert(UpperCAmelCase_) def SCREAMING_SNAKE_CASE_ (self : int , UpperCAmelCase_ : str) ->bool: '''simple docstring''' lowerCamelCase__: Dict =self.nodes.get(word[0] , UpperCAmelCase_) if not incoming_node: return False else: lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__: str =incoming_node.match( UpperCAmelCase_) # If there is remaining prefix, the word can't be on the tree if remaining_prefix != "": return False # This applies when the word and the prefix are equal elif remaining_word == "": return incoming_node.is_leaf # We have word remaining so we check the next node else: return incoming_node.find(UpperCAmelCase_) def SCREAMING_SNAKE_CASE_ (self : Any , UpperCAmelCase_ : str) ->bool: '''simple docstring''' lowerCamelCase__: Union[str, Any] =self.nodes.get(word[0] , UpperCAmelCase_) if not incoming_node: return False else: lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__: List[Any] =incoming_node.match( UpperCAmelCase_) # If there is remaining prefix, the word can't be on the tree if remaining_prefix != "": return False # We have word remaining so we check the next node elif remaining_word != "": return incoming_node.delete(UpperCAmelCase_) else: # If it is not a leaf, we don't have to delete if not incoming_node.is_leaf: return False else: # We delete the nodes if no edges go from it if len(incoming_node.nodes) == 0: del self.nodes[word[0]] # We merge the current node with its only child if len(self.nodes) == 1 and not self.is_leaf: lowerCamelCase__: int =list(self.nodes.values())[0] lowerCamelCase__: Any =merging_node.is_leaf self.prefix += merging_node.prefix lowerCamelCase__: Tuple =merging_node.nodes # If there is more than 1 edge, we just mark it as non-leaf elif len(incoming_node.nodes) > 1: lowerCamelCase__: Dict =False # If there is 1 edge, we merge it with its child else: lowerCamelCase__: str =list(incoming_node.nodes.values())[0] lowerCamelCase__: Any =merging_node.is_leaf incoming_node.prefix += merging_node.prefix lowerCamelCase__: Optional[Any] =merging_node.nodes return True def SCREAMING_SNAKE_CASE_ (self : List[Any] , UpperCAmelCase_ : int = 0) ->None: '''simple docstring''' if self.prefix != "": print("-" * height , self.prefix , " (leaf)" if self.is_leaf else "") for value in self.nodes.values(): value.print_tree(height + 1) def lowerCAmelCase_ ( ) -> bool: """simple docstring""" lowerCamelCase__: str ="banana bananas bandana band apple all beast".split() lowerCamelCase__: List[Any] =RadixNode() root.insert_many(__a ) assert all(root.find(__a ) for word in words ) assert not root.find("bandanas" ) assert not root.find("apps" ) root.delete("all" ) assert not root.find("all" ) root.delete("banana" ) assert not root.find("banana" ) assert root.find("bananas" ) return True def lowerCAmelCase_ ( ) -> None: """simple docstring""" assert test_trie() def lowerCAmelCase_ ( ) -> None: """simple docstring""" lowerCamelCase__: Optional[int] =RadixNode() lowerCamelCase__: Optional[int] ="banana bananas bandanas bandana band apple all beast".split() root.insert_many(__a ) print("Words:" , __a ) print("Tree:" ) root.print_tree() if __name__ == "__main__": main()
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'''simple docstring''' from typing import Any def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : dict , _UpperCAmelCase : dict , _UpperCAmelCase : dict , ) -> list: """simple docstring""" _validation( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) # Creates data structures and fill initial step _UpperCAmelCase : dict = {} _UpperCAmelCase : dict = {} for state in states_space: _UpperCAmelCase : Union[str, Any] = observations_space[0] _UpperCAmelCase : Tuple = ( initial_probabilities[state] * emission_probabilities[state][observation] ) _UpperCAmelCase : List[str] = None # Fills the data structure with the probabilities of # different transitions and pointers to previous states for o in range(1 , len(_UpperCAmelCase ) ): _UpperCAmelCase : Optional[Any] = observations_space[o] _UpperCAmelCase : int = observations_space[o - 1] for state in states_space: # Calculates the argmax for probability function _UpperCAmelCase : str = "" _UpperCAmelCase : Tuple = -1 for k_state in states_space: _UpperCAmelCase : Any = ( probabilities[(k_state, prior_observation)] * transition_probabilities[k_state][state] * emission_probabilities[state][observation] ) if probability > max_probability: _UpperCAmelCase : Union[str, Any] = probability _UpperCAmelCase : str = k_state # Update probabilities and pointers dicts _UpperCAmelCase : Optional[int] = ( probabilities[(arg_max, prior_observation)] * transition_probabilities[arg_max][state] * emission_probabilities[state][observation] ) _UpperCAmelCase : Tuple = arg_max # The final observation _UpperCAmelCase : Optional[Any] = observations_space[len(_UpperCAmelCase ) - 1] # argmax for given final observation _UpperCAmelCase : List[str] = "" _UpperCAmelCase : Any = -1 for k_state in states_space: _UpperCAmelCase : Optional[int] = probabilities[(k_state, final_observation)] if probability > max_probability: _UpperCAmelCase : int = probability _UpperCAmelCase : Dict = k_state _UpperCAmelCase : Dict = arg_max # Process pointers backwards _UpperCAmelCase : List[Any] = last_state _UpperCAmelCase : str = [] for o in range(len(_UpperCAmelCase ) - 1 , -1 , -1 ): result.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = pointers[previous, observations_space[o]] result.reverse() return result def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_not_empty( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) _validate_lists(_UpperCAmelCase , _UpperCAmelCase ) _validate_dicts( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" if not all( [ observations_space, states_space, initial_probabilities, transition_probabilities, emission_probabilities, ] ): raise ValueError("There's an empty parameter" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any ) -> None: """simple docstring""" _validate_list(_UpperCAmelCase , "observations_space" ) _validate_list(_UpperCAmelCase , "states_space" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list""" raise ValueError(_UpperCAmelCase ) else: for x in _object: if not isinstance(_UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list of strings""" raise ValueError(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_dict(_UpperCAmelCase , "initial_probabilities" , _UpperCAmelCase ) _validate_nested_dict(_UpperCAmelCase , "transition_probabilities" ) _validate_nested_dict(_UpperCAmelCase , "emission_probabilities" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" _validate_dict(_object , _UpperCAmelCase , _UpperCAmelCase ) for x in _object.values(): _validate_dict(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str , _UpperCAmelCase : type , _UpperCAmelCase : bool = False ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Any = F"""{var_name} must be a dict""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object ): _UpperCAmelCase : Tuple = F"""{var_name} all keys must be strings""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object.values() ): _UpperCAmelCase : List[str] = "nested dictionary " if nested else "" _UpperCAmelCase : List[str] = F"""{var_name} {nested_text}all values must be {value_type.__name__}""" raise ValueError(_UpperCAmelCase ) if __name__ == "__main__": from doctest import testmod testmod()
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import csv from collections import defaultdict from dataclasses import dataclass, field from typing import List, Optional import matplotlib.pyplot as plt import numpy as np from matplotlib.ticker import ScalarFormatter from transformers import HfArgumentParser def _UpperCAmelCase (UpperCamelCase__ : Optional[Any]=None , UpperCamelCase__ : int=None ): return field(default_factory=lambda: default , metadata=UpperCamelCase__ ) @dataclass class lowerCAmelCase__ : '''simple docstring''' __SCREAMING_SNAKE_CASE = field( metadata={"help": "The csv file to plot."} , ) __SCREAMING_SNAKE_CASE = field( default=a , metadata={"help": "Whether to plot along batch size or sequence length. Defaults to sequence length."} , ) __SCREAMING_SNAKE_CASE = field( default=a , metadata={"help": "Whether the csv file has time results or memory results. Defaults to memory results."} , ) __SCREAMING_SNAKE_CASE = field( default=a , metadata={"help": "Disable logarithmic scale when plotting"} , ) __SCREAMING_SNAKE_CASE = field( default=a , metadata={ "help": "Whether the csv file has training results or inference results. Defaults to inference results." } , ) __SCREAMING_SNAKE_CASE = field( default=a , metadata={"help": "Filename under which the plot will be saved. If unused no plot is saved."} , ) __SCREAMING_SNAKE_CASE = list_field( default=a , metadata={"help": "List of model names that are used instead of the ones in the csv file."}) def _UpperCAmelCase (UpperCamelCase__ : Union[str, Any] ): try: int(UpperCamelCase__ ) return True except ValueError: return False def _UpperCAmelCase (UpperCamelCase__ : List[str] ): try: float(UpperCamelCase__ ) return True except ValueError: return False class lowerCAmelCase__ : '''simple docstring''' def __init__( self , __lowerCamelCase) -> Dict: _A : Any = args _A : Optional[Any] = defaultdict(lambda: {"bsz": [], "seq_len": [], "result": {}}) with open(self.args.csv_file , newline="") as csv_file: _A : Union[str, Any] = csv.DictReader(__lowerCamelCase) for row in reader: _A : Tuple = row["model"] self.result_dict[model_name]["bsz"].append(int(row["batch_size"])) self.result_dict[model_name]["seq_len"].append(int(row["sequence_length"])) if can_convert_to_int(row["result"]): # value is not None _A : Union[str, Any] = int(row["result"]) elif can_convert_to_float(row["result"]): # value is not None _A : Tuple = float(row["result"]) def _lowerCamelCase ( self) -> int: _A , _A : Union[str, Any] = plt.subplots() _A : str = "Time usage" if self.args.is_time else "Memory usage" _A : Dict = title_str + " for training" if self.args.is_train else title_str + " for inference" if not self.args.no_log_scale: # set logarithm scales ax.set_xscale("log") ax.set_yscale("log") for axis in [ax.xaxis, ax.yaxis]: axis.set_major_formatter(ScalarFormatter()) for model_name_idx, model_name in enumerate(self.result_dict.keys()): _A : List[str] = sorted(set(self.result_dict[model_name]["bsz"])) _A : int = sorted(set(self.result_dict[model_name]["seq_len"])) _A : List[str] = self.result_dict[model_name]["result"] ((_A) , (_A)) : Dict = ( (batch_sizes, sequence_lengths) if self.args.plot_along_batch else (sequence_lengths, batch_sizes) ) _A : Any = ( model_name if self.args.short_model_names is None else self.args.short_model_names[model_name_idx] ) for inner_loop_value in inner_loop_array: if self.args.plot_along_batch: _A : Optional[int] = np.asarray( [results[(x, inner_loop_value)] for x in x_axis_array if (x, inner_loop_value) in results] , dtype=__lowerCamelCase , ) else: _A : List[str] = np.asarray( [results[(inner_loop_value, x)] for x in x_axis_array if (inner_loop_value, x) in results] , dtype=np.floataa , ) ((_A) , (_A)) : Union[str, Any] = ( ("batch_size", "len") if self.args.plot_along_batch else ("in #tokens", "bsz") ) _A : int = np.asarray(__lowerCamelCase , __lowerCamelCase)[: len(__lowerCamelCase)] plt.scatter( __lowerCamelCase , __lowerCamelCase , label=F"{label_model_name} - {inner_loop_label}: {inner_loop_value}") plt.plot(__lowerCamelCase , __lowerCamelCase , "--") title_str += F" {label_model_name} vs." _A : str = title_str[:-4] _A : int = "Time in s" if self.args.is_time else "Memory in MB" # plot plt.title(__lowerCamelCase) plt.xlabel(__lowerCamelCase) plt.ylabel(__lowerCamelCase) plt.legend() if self.args.figure_png_file is not None: plt.savefig(self.args.figure_png_file) else: plt.show() def _UpperCAmelCase (): _A : List[str] = HfArgumentParser(UpperCamelCase__ ) _A : Union[str, Any] = parser.parse_args_into_dataclasses()[0] _A : Any = Plot(args=UpperCamelCase__ ) plot.plot() if __name__ == "__main__": main()
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import MobileViTImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : Optional[Any] , A : Dict , A : Dict=7 , A : Optional[int]=3 , A : Optional[int]=18 , A : Dict=30 , A : List[Any]=400 , A : Union[str, Any]=True , A : Tuple=None , A : List[Any]=True , A : int=None , A : Optional[int]=True , ): _UpperCAmelCase : Optional[int] = size if size is not None else {"shortest_edge": 20} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Union[str, Any] = batch_size _UpperCAmelCase : Optional[Any] = num_channels _UpperCAmelCase : Union[str, Any] = image_size _UpperCAmelCase : int = min_resolution _UpperCAmelCase : Optional[int] = max_resolution _UpperCAmelCase : List[str] = do_resize _UpperCAmelCase : Optional[Any] = size _UpperCAmelCase : Tuple = do_center_crop _UpperCAmelCase : Optional[int] = crop_size _UpperCAmelCase : Optional[Any] = do_flip_channel_order def _A ( self : Dict ): return { "do_resize": self.do_resize, "size": self.size, "do_center_crop": self.do_center_crop, "crop_size": self.crop_size, "do_flip_channel_order": self.do_flip_channel_order, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Tuple = MobileViTImageProcessor if is_vision_available() else None def _A ( self : List[Any] ): _UpperCAmelCase : Any = MobileViTImageProcessingTester(self ) @property def _A ( self : int ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Tuple ): _UpperCAmelCase : int = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "size" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "center_crop" ) ) self.assertTrue(hasattr(A , "do_flip_channel_order" ) ) def _A ( self : Any ): _UpperCAmelCase : List[str] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 20} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Dict = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Any ): pass def _A ( self : Dict ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random PIL images _UpperCAmelCase : Union[str, Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A ) for image in image_inputs: self.assertIsInstance(A , Image.Image ) # Test not batched input _UpperCAmelCase : List[Any] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Union[str, Any] ): # Initialize image_processing _UpperCAmelCase : Dict = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for image in image_inputs: self.assertIsInstance(A , np.ndarray ) # Test not batched input _UpperCAmelCase : Optional[int] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Any ): # Initialize image_processing _UpperCAmelCase : Any = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for image in image_inputs: self.assertIsInstance(A , torch.Tensor ) # Test not batched input _UpperCAmelCase : List[str] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Any = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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import argparse import torch from transformers import ( WavaVecaConfig, WavaVecaFeatureExtractor, WavaVecaForAudioFrameClassification, WavaVecaForSequenceClassification, WavaVecaForXVector, logging, ) logging.set_verbosity_info() UpperCAmelCase_ = logging.get_logger(__name__) def lowerCamelCase__ ( A__ : Tuple , A__ : int , A__ : Any ): '''simple docstring''' __lowerCamelCase = WavaVecaForSequenceClassification.from_pretrained(A__ , config=A__ ) __lowerCamelCase = downstream_dict["""projector.weight"""] __lowerCamelCase = downstream_dict["""projector.bias"""] __lowerCamelCase = downstream_dict["""model.post_net.linear.weight"""] __lowerCamelCase = downstream_dict["""model.post_net.linear.bias"""] return model def lowerCamelCase__ ( A__ : Optional[Any] , A__ : Optional[Any] , A__ : Union[str, Any] ): '''simple docstring''' __lowerCamelCase = WavaVecaForAudioFrameClassification.from_pretrained(A__ , config=A__ ) __lowerCamelCase = downstream_dict["""model.linear.weight"""] __lowerCamelCase = downstream_dict["""model.linear.bias"""] return model def lowerCamelCase__ ( A__ : Optional[int] , A__ : Tuple , A__ : Dict ): '''simple docstring''' __lowerCamelCase = WavaVecaForXVector.from_pretrained(A__ , config=A__ ) __lowerCamelCase = downstream_dict["""connector.weight"""] __lowerCamelCase = downstream_dict["""connector.bias"""] for i, kernel_size in enumerate(hf_config.tdnn_kernel ): __lowerCamelCase = downstream_dict[ f'model.framelevel_feature_extractor.module.{i}.kernel.weight' ] __lowerCamelCase = downstream_dict[f'model.framelevel_feature_extractor.module.{i}.kernel.bias'] __lowerCamelCase = downstream_dict["""model.utterancelevel_feature_extractor.linear1.weight"""] __lowerCamelCase = downstream_dict["""model.utterancelevel_feature_extractor.linear1.bias"""] __lowerCamelCase = downstream_dict["""model.utterancelevel_feature_extractor.linear2.weight"""] __lowerCamelCase = downstream_dict["""model.utterancelevel_feature_extractor.linear2.bias"""] __lowerCamelCase = downstream_dict["""objective.W"""] return model @torch.no_grad() def lowerCamelCase__ ( A__ : List[str] , A__ : Dict , A__ : List[str] , A__ : Tuple ): '''simple docstring''' __lowerCamelCase = torch.load(A__ , map_location="""cpu""" ) __lowerCamelCase = checkpoint["""Downstream"""] __lowerCamelCase = WavaVecaConfig.from_pretrained(A__ ) __lowerCamelCase = WavaVecaFeatureExtractor.from_pretrained( A__ , return_attention_mask=A__ , do_normalize=A__ ) __lowerCamelCase = hf_config.architectures[0] if arch.endswith("""ForSequenceClassification""" ): __lowerCamelCase = convert_classification(A__ , A__ , A__ ) elif arch.endswith("""ForAudioFrameClassification""" ): __lowerCamelCase = convert_diarization(A__ , A__ , A__ ) elif arch.endswith("""ForXVector""" ): __lowerCamelCase = convert_xvector(A__ , A__ , A__ ) else: raise NotImplementedError(f'S3PRL weights conversion is not supported for {arch}' ) if hf_config.use_weighted_layer_sum: __lowerCamelCase = checkpoint["""Featurizer"""]["""weights"""] hf_feature_extractor.save_pretrained(A__ ) hf_model.save_pretrained(A__ ) if __name__ == "__main__": UpperCAmelCase_ = argparse.ArgumentParser() parser.add_argument( '--base_model_name', default=None, type=str, help='Name of the huggingface pretrained base model.' ) parser.add_argument('--config_path', default=None, type=str, help='Path to the huggingface classifier config.') parser.add_argument('--checkpoint_path', default=None, type=str, help='Path to the s3prl checkpoint.') parser.add_argument('--model_dump_path', default=None, type=str, help='Path to the final converted model.') UpperCAmelCase_ = parser.parse_args() convert_saprl_checkpoint(args.base_model_name, args.config_path, args.checkpoint_path, args.model_dump_path)
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 1 # To kept the Calculated Value # Since C(n, k) = C(n, n-k) if k > (n - k): _UpperCAmelCase : Any = n - k # Calculate C(n,k) for i in range(_UpperCAmelCase ): result *= n - i result //= i + 1 return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return binomial_coefficient(2 * node_count , _UpperCAmelCase ) // (node_count + 1) def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" if n < 0: raise ValueError("factorial() not defined for negative values" ) _UpperCAmelCase : List[str] = 1 for i in range(1 , n + 1 ): result *= i return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return catalan_number(_UpperCAmelCase ) * factorial(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Dict = int(input("""Enter the number of nodes: """).strip() or 0) if node_count <= 0: raise ValueError("""We need some nodes to work with.""") print( F'Given {node_count} nodes, there are {binary_tree_count(node_count)} ' F'binary trees and {catalan_number(node_count)} binary search trees.' )
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from __future__ import annotations import os import tempfile import unittest import numpy as np from huggingface_hub import hf_hub_download from transformers import is_tensorflow_text_available, is_tf_available from transformers.testing_utils import require_tensorflow_text, require_tf, slow from ..test_modeling_tf_common import floats_tensor from .test_framework_agnostic import GenerationIntegrationTestsMixin if is_tf_available(): import tensorflow as tf from transformers import ( AutoTokenizer, TFAutoModelForCausalLM, TFAutoModelForSeqaSeqLM, TFAutoModelForSpeechSeqaSeq, TFAutoModelForVisionaSeq, TFBartForConditionalGeneration, TFLogitsProcessorList, TFMinLengthLogitsProcessor, tf_top_k_top_p_filtering, ) if is_tensorflow_text_available(): import tensorflow_text as text @require_tf class __lowercase ( unittest.TestCase ): """simple docstring""" def _SCREAMING_SNAKE_CASE ( self : str): SCREAMING_SNAKE_CASE_: Union[str, Any] = tf.convert_to_tensor( [ [ 8.222_0991, # 3rd highest value; idx. 0 -0.562_0044, 5.2322_9752, 4.038_6393, -6.879_8378, -0.5478_5802, -3.201_2153, 2.9277_7176, 1.8817_1953, 7.3534_1276, # 5th highest value; idx. 9 8.4320_7833, # 2nd highest value; idx. 10 -9.8571_1836, -5.9620_9236, -1.1303_9161, -7.111_5294, -0.836_9633, -5.318_6408, 7.0642_7407, 0.8136_9344, -0.8202_3817, -5.917_9796, 0.5881_3443, -6.9977_8438, 4.7155_1189, -0.1877_1637, 7.4402_0759, # 4th highest value; idx. 25 9.3845_0987, # 1st highest value; idx. 26 2.1266_2941, -9.3256_2038, 2.3565_2522, ], # cummulative prob of 5 highest values <= 0.6 [ 0.5842_5518, 4.5313_9238, -5.5751_0464, -6.2803_0699, -7.1952_9503, -4.0212_2551, 1.3933_7037, -6.0670_7057, 1.5948_0517, -9.64_3119, 0.0390_7799, 0.6723_1762, -8.8820_6726, 6.2711_5922, # 4th highest value; idx. 13 2.2852_0723, 4.8276_7506, 4.3042_1368, 8.827_5313, # 2nd highest value; idx. 17 5.4402_9958, # 5th highest value; idx. 18 -4.473_5794, 7.3857_9536, # 3rd highest value; idx. 20 -2.9105_1663, 2.6194_6077, -2.567_4762, -9.4895_9302, -4.0292_2645, -1.3541_6918, 9.6770_2323, # 1st highest value; idx. 27 -5.8947_8553, 1.8537_0467, ], # cummulative prob of 5 highest values <= 0.6 ] , dtype=tf.floataa , ) SCREAMING_SNAKE_CASE_: Union[str, Any] = tf.convert_to_tensor( [[0, 0], [0, 9], [0, 10], [0, 25], [0, 26], [1, 13], [1, 17], [1, 18], [1, 20], [1, 27]] , dtype=tf.intaa , ) # expected non filtered idx as noted above SCREAMING_SNAKE_CASE_: List[str] = tf.convert_to_tensor( [8.22_2099, 7.353_4126, 8.43_2078, 7.440_2075, 9.3_8451, 6.27_1159, 8.82_7531, 5.440_2995, 7.385_7956, 9.67_7023] , dtype=tf.floataa , ) # expected non filtered values as noted above SCREAMING_SNAKE_CASE_: List[Any] = tf_top_k_top_p_filtering(lowerCAmelCase__ , top_k=10 , top_p=0.6 , min_tokens_to_keep=4) SCREAMING_SNAKE_CASE_: List[str] = output[output != -float("inf")] SCREAMING_SNAKE_CASE_: Optional[Any] = tf.cast( tf.where(tf.not_equal(lowerCAmelCase__ , tf.constant(-float("inf") , dtype=tf.floataa))) , dtype=tf.intaa , ) tf.debugging.assert_near(lowerCAmelCase__ , lowerCAmelCase__ , rtol=1E-12) tf.debugging.assert_equal(lowerCAmelCase__ , lowerCAmelCase__) @require_tf class __lowercase ( unittest.TestCase , UpperCAmelCase_ ): """simple docstring""" if is_tf_available(): _UpperCAmelCase : List[Any] = { '''AutoModelForCausalLM''': TFAutoModelForCausalLM, '''AutoModelForSpeechSeq2Seq''': TFAutoModelForSpeechSeqaSeq, '''AutoModelForSeq2SeqLM''': TFAutoModelForSeqaSeqLM, '''AutoModelForVision2Seq''': TFAutoModelForVisionaSeq, '''LogitsProcessorList''': TFLogitsProcessorList, '''MinLengthLogitsProcessor''': TFMinLengthLogitsProcessor, '''create_tensor_fn''': tf.convert_to_tensor, '''floats_tensor''': floats_tensor, '''return_tensors''': '''tf''', } @slow def _SCREAMING_SNAKE_CASE ( self : List[Any]): # TF-only test: tf.saved_model export SCREAMING_SNAKE_CASE_: Any = TFAutoModelForCausalLM.from_pretrained("hf-internal-testing/tiny-random-gpt2") SCREAMING_SNAKE_CASE_: Union[str, Any] = 2 SCREAMING_SNAKE_CASE_: int = 2 class __lowercase ( tf.Module ): """simple docstring""" def __init__( self : Union[str, Any] , lowerCAmelCase__ : str): super(lowerCAmelCase__ , self).__init__() SCREAMING_SNAKE_CASE_: Any = model @tf.function( input_signature=( tf.TensorSpec((None, input_length) , tf.intaa , name="input_ids"), tf.TensorSpec((None, input_length) , tf.intaa , name="attention_mask"), ) , jit_compile=lowerCAmelCase__ , ) def _SCREAMING_SNAKE_CASE ( self : Optional[int] , lowerCAmelCase__ : List[str] , lowerCAmelCase__ : List[str]): SCREAMING_SNAKE_CASE_: Any = self.model.generate( input_ids=lowerCAmelCase__ , attention_mask=lowerCAmelCase__ , max_new_tokens=lowerCAmelCase__ , return_dict_in_generate=lowerCAmelCase__ , ) return {"sequences": outputs["sequences"]} SCREAMING_SNAKE_CASE_: Union[str, Any] = [[2, 0], [102, 103]] SCREAMING_SNAKE_CASE_: int = [[1, 0], [1, 1]] SCREAMING_SNAKE_CASE_: List[str] = DummyModel(model=lowerCAmelCase__) with tempfile.TemporaryDirectory() as tmp_dir: tf.saved_model.save(lowerCAmelCase__ , lowerCAmelCase__ , signatures={"serving_default": dummy_model.serving}) SCREAMING_SNAKE_CASE_: Optional[Any] = tf.saved_model.load(lowerCAmelCase__).signatures["serving_default"] for batch_size in range(1 , len(lowerCAmelCase__) + 1): SCREAMING_SNAKE_CASE_: List[Any] = { "input_ids": tf.constant(dummy_input_ids[:batch_size]), "attention_mask": tf.constant(dummy_attention_masks[:batch_size]), } SCREAMING_SNAKE_CASE_: List[str] = serving_func(**lowerCAmelCase__)["sequences"] SCREAMING_SNAKE_CASE_: Optional[Any] = test_model.generate(**lowerCAmelCase__ , max_new_tokens=lowerCAmelCase__) tf.debugging.assert_equal(lowerCAmelCase__ , lowerCAmelCase__) @slow def _SCREAMING_SNAKE_CASE ( self : List[str]): # TF-only test: tf.saved_model export SCREAMING_SNAKE_CASE_: Optional[int] = TFAutoModelForCausalLM.from_pretrained("hf-internal-testing/tiny-random-gpt2") SCREAMING_SNAKE_CASE_: Any = 1 SCREAMING_SNAKE_CASE_: Optional[int] = 2 class __lowercase ( tf.Module ): """simple docstring""" def __init__( self : str , lowerCAmelCase__ : Tuple): super(lowerCAmelCase__ , self).__init__() SCREAMING_SNAKE_CASE_: Optional[Any] = model @tf.function( input_signature=( tf.TensorSpec((batch_size, None) , tf.intaa , name="input_ids"), tf.TensorSpec((batch_size, None) , tf.intaa , name="attention_mask"), ) , jit_compile=lowerCAmelCase__ , ) def _SCREAMING_SNAKE_CASE ( self : List[Any] , lowerCAmelCase__ : str , lowerCAmelCase__ : Optional[Any]): SCREAMING_SNAKE_CASE_: Optional[int] = self.model.generate( input_ids=lowerCAmelCase__ , attention_mask=lowerCAmelCase__ , max_new_tokens=lowerCAmelCase__ , return_dict_in_generate=lowerCAmelCase__ , ) return {"sequences": outputs["sequences"]} SCREAMING_SNAKE_CASE_: List[str] = [[2], [102, 103]] SCREAMING_SNAKE_CASE_: Dict = [[1], [1, 1]] SCREAMING_SNAKE_CASE_: Dict = DummyModel(model=lowerCAmelCase__) with tempfile.TemporaryDirectory() as tmp_dir: tf.saved_model.save(lowerCAmelCase__ , lowerCAmelCase__ , signatures={"serving_default": dummy_model.serving}) SCREAMING_SNAKE_CASE_: List[str] = tf.saved_model.load(lowerCAmelCase__).signatures["serving_default"] for input_row in range(len(lowerCAmelCase__)): SCREAMING_SNAKE_CASE_: Dict = { "input_ids": tf.constant([dummy_input_ids[input_row]]), "attention_mask": tf.constant([dummy_attention_masks[input_row]]), } SCREAMING_SNAKE_CASE_: Optional[int] = serving_func(**lowerCAmelCase__)["sequences"] SCREAMING_SNAKE_CASE_: Dict = test_model.generate(**lowerCAmelCase__ , max_new_tokens=lowerCAmelCase__) tf.debugging.assert_equal(lowerCAmelCase__ , lowerCAmelCase__) @slow @require_tensorflow_text def _SCREAMING_SNAKE_CASE ( self : Any): # TF-only test: tf.saved_model export with tempfile.TemporaryDirectory() as tmp_dir: # file needed to load the TF tokenizer hf_hub_download(repo_id="google/flan-t5-small" , filename="spiece.model" , local_dir=lowerCAmelCase__) class __lowercase ( tf.keras.layers.Layer ): """simple docstring""" def __init__( self : List[Any]): super().__init__() SCREAMING_SNAKE_CASE_: int = text.SentencepieceTokenizer( model=tf.io.gfile.GFile(os.path.join(lowerCAmelCase__ , "spiece.model") , "rb").read()) SCREAMING_SNAKE_CASE_: int = TFAutoModelForSeqaSeqLM.from_pretrained("hf-internal-testing/tiny-random-t5") def _SCREAMING_SNAKE_CASE ( self : Tuple , lowerCAmelCase__ : Tuple , *lowerCAmelCase__ : List[Any] , **lowerCAmelCase__ : Dict): SCREAMING_SNAKE_CASE_: Tuple = self.tokenizer.tokenize(lowerCAmelCase__) SCREAMING_SNAKE_CASE_ , SCREAMING_SNAKE_CASE_: Dict = text.pad_model_inputs( lowerCAmelCase__ , max_seq_length=64 , pad_value=self.model.config.pad_token_id) SCREAMING_SNAKE_CASE_: Optional[int] = self.model.generate(input_ids=lowerCAmelCase__ , attention_mask=lowerCAmelCase__) return self.tokenizer.detokenize(lowerCAmelCase__) SCREAMING_SNAKE_CASE_: Optional[Any] = CompleteSentenceTransformer() SCREAMING_SNAKE_CASE_: Any = tf.keras.layers.Input(shape=(1,) , dtype=tf.string , name="inputs") SCREAMING_SNAKE_CASE_: Any = complete_model(lowerCAmelCase__) SCREAMING_SNAKE_CASE_: Optional[Any] = tf.keras.Model(lowerCAmelCase__ , lowerCAmelCase__) keras_model.save(lowerCAmelCase__) def _SCREAMING_SNAKE_CASE ( self : str): # Has PT equivalent: this test relies on random sampling SCREAMING_SNAKE_CASE_: Tuple = { "do_sample": True, "num_beams": 1, "top_p": 0.7, "top_k": 10, "temperature": 0.7, } SCREAMING_SNAKE_CASE_: List[str] = 14 SCREAMING_SNAKE_CASE_: Any = AutoTokenizer.from_pretrained("hf-internal-testing/tiny-random-gpt2") SCREAMING_SNAKE_CASE_: Optional[Any] = "Hello, my dog is cute and" SCREAMING_SNAKE_CASE_: Any = tokenizer(lowerCAmelCase__ , return_tensors="tf") SCREAMING_SNAKE_CASE_: Optional[int] = TFAutoModelForCausalLM.from_pretrained("hf-internal-testing/tiny-random-gpt2") SCREAMING_SNAKE_CASE_: List[Any] = 638 # forces the generation to happen on CPU, to avoid GPU-related quirks with tf.device(":/CPU:0"): tf.random.set_seed(0) SCREAMING_SNAKE_CASE_: Optional[int] = model.generate(**lowerCAmelCase__ , eos_token_id=lowerCAmelCase__ , **lowerCAmelCase__) self.assertTrue(expectation == len(generated_tokens[0])) SCREAMING_SNAKE_CASE_: int = [638, 198] with tf.device(":/CPU:0"): tf.random.set_seed(0) SCREAMING_SNAKE_CASE_: Union[str, Any] = model.generate(**lowerCAmelCase__ , eos_token_id=lowerCAmelCase__ , **lowerCAmelCase__) self.assertTrue(expectation == len(generated_tokens[0])) def _SCREAMING_SNAKE_CASE ( self : Tuple): # Has PT equivalent: ample use of framework-specific code SCREAMING_SNAKE_CASE_: Any = AutoTokenizer.from_pretrained("hf-internal-testing/tiny-random-bart") SCREAMING_SNAKE_CASE_: Tuple = "Hugging Face is a technology company based in New York and Paris." SCREAMING_SNAKE_CASE_: Union[str, Any] = bart_tokenizer(lowerCAmelCase__ , return_tensors="tf").input_ids SCREAMING_SNAKE_CASE_: Any = TFBartForConditionalGeneration.from_pretrained("hf-internal-testing/tiny-random-bart") SCREAMING_SNAKE_CASE_: List[Any] = bart_model.generate(lowerCAmelCase__).numpy() class __lowercase ( UpperCAmelCase_ ): """simple docstring""" def _SCREAMING_SNAKE_CASE ( self : Tuple , lowerCAmelCase__ : Union[str, Any] , lowerCAmelCase__ : Tuple=None , **lowerCAmelCase__ : List[Any]): return super().call(lowerCAmelCase__ , **lowerCAmelCase__) SCREAMING_SNAKE_CASE_: Optional[Any] = FakeBart.from_pretrained("hf-internal-testing/tiny-random-bart") SCREAMING_SNAKE_CASE_: Dict = bart_model.generate(lowerCAmelCase__ , foo="bar").numpy() self.assertTrue(np.array_equal(lowerCAmelCase__ , lowerCAmelCase__)) class __lowercase ( bart_model.model.encoder.__class__ ): """simple docstring""" def _SCREAMING_SNAKE_CASE ( self : List[str] , lowerCAmelCase__ : Tuple , **lowerCAmelCase__ : Tuple): return super().call(lowerCAmelCase__ , **lowerCAmelCase__) SCREAMING_SNAKE_CASE_: Optional[Any] = FakeEncoder(bart_model.config , bart_model.model.shared) SCREAMING_SNAKE_CASE_: Dict = fake_encoder # Normal generation still works (the output will be different because the encoder weights are different) SCREAMING_SNAKE_CASE_: Optional[int] = bart_model.generate(lowerCAmelCase__).numpy() with self.assertRaises(lowerCAmelCase__): # FakeEncoder.call() accepts **kwargs -> no filtering -> value error due to unexpected input "foo" bart_model.generate(lowerCAmelCase__ , foo="bar")
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'''simple docstring''' import json from typing import List, Optional, Tuple from tokenizers import normalizers from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import logging from .tokenization_distilbert import DistilBertTokenizer __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """vocab.txt""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : Dict = { """vocab_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/vocab.txt""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/vocab.txt""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-german-cased""": """https://huggingface.co/distilbert-base-german-cased/resolve/main/vocab.txt""", """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/vocab.txt""" ), }, """tokenizer_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/tokenizer.json""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/tokenizer.json""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-german-cased""": ( """https://huggingface.co/distilbert-base-german-cased/resolve/main/tokenizer.json""" ), """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/tokenizer.json""" ), }, } __SCREAMING_SNAKE_CASE : Optional[Any] = { """distilbert-base-uncased""": 512, """distilbert-base-uncased-distilled-squad""": 512, """distilbert-base-cased""": 512, """distilbert-base-cased-distilled-squad""": 512, """distilbert-base-german-cased""": 512, """distilbert-base-multilingual-cased""": 512, } __SCREAMING_SNAKE_CASE : List[Any] = { """distilbert-base-uncased""": {"""do_lower_case""": True}, """distilbert-base-uncased-distilled-squad""": {"""do_lower_case""": True}, """distilbert-base-cased""": {"""do_lower_case""": False}, """distilbert-base-cased-distilled-squad""": {"""do_lower_case""": False}, """distilbert-base-german-cased""": {"""do_lower_case""": False}, """distilbert-base-multilingual-cased""": {"""do_lower_case""": False}, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = VOCAB_FILES_NAMES __UpperCamelCase: str = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: Optional[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Any = PRETRAINED_INIT_CONFIGURATION __UpperCamelCase: str = ["input_ids", "attention_mask"] __UpperCamelCase: List[str] = DistilBertTokenizer def __init__( self : str , A : int=None , A : Tuple=None , A : Tuple=True , A : Dict="[UNK]" , A : List[Any]="[SEP]" , A : Optional[Any]="[PAD]" , A : Dict="[CLS]" , A : Tuple="[MASK]" , A : str=True , A : Dict=None , **A : List[Any] , ): super().__init__( A , tokenizer_file=A , do_lower_case=A , unk_token=A , sep_token=A , pad_token=A , cls_token=A , mask_token=A , tokenize_chinese_chars=A , strip_accents=A , **A , ) _UpperCAmelCase : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() ) if ( normalizer_state.get("lowercase" , A ) != do_lower_case or normalizer_state.get("strip_accents" , A ) != strip_accents or normalizer_state.get("handle_chinese_chars" , A ) != tokenize_chinese_chars ): _UpperCAmelCase : Dict = getattr(A , normalizer_state.pop("type" ) ) _UpperCAmelCase : int = do_lower_case _UpperCAmelCase : Optional[int] = strip_accents _UpperCAmelCase : str = tokenize_chinese_chars _UpperCAmelCase : List[Any] = normalizer_class(**A ) _UpperCAmelCase : Dict = do_lower_case def _A ( self : List[Any] , A : Tuple , A : Any=None ): _UpperCAmelCase : Optional[int] = [self.cls_token_id] + token_ids_a + [self.sep_token_id] if token_ids_a: output += token_ids_a + [self.sep_token_id] return output def _A ( self : int , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Any = [self.sep_token_id] _UpperCAmelCase : str = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Dict , A : str , A : Optional[str] = None ): _UpperCAmelCase : Any = self._tokenizer.model.save(A , name=A ) return tuple(A )
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# Lint as: python3 import dataclasses import re from dataclasses import dataclass from functools import total_ordering from typing import Optional, Union _lowerCamelCase : Tuple = re.compile(r"""^(?P<major>\d+)""" r"""\.(?P<minor>\d+)""" r"""\.(?P<patch>\d+)$""") @total_ordering @dataclass class UpperCamelCase_ : '''simple docstring''' UpperCAmelCase__ = 42 UpperCAmelCase__ = None UpperCAmelCase__ = None UpperCAmelCase__ = None UpperCAmelCase__ = None def SCREAMING_SNAKE_CASE ( self : Any) ->Any: '''simple docstring''' A__ , A__ , A__ = _str_to_version_tuple(self.version_str) def __repr__( self : Dict) ->List[str]: '''simple docstring''' return f"""{self.tuple[0]}.{self.tuple[1]}.{self.tuple[2]}""" @property def SCREAMING_SNAKE_CASE ( self : Optional[int]) ->List[str]: '''simple docstring''' return self.major, self.minor, self.patch def SCREAMING_SNAKE_CASE ( self : Optional[int] , UpperCAmelCase__ : Union[str, Any]) ->List[Any]: '''simple docstring''' if isinstance(UpperCAmelCase__ , UpperCAmelCase__): return Version(UpperCAmelCase__) elif isinstance(UpperCAmelCase__ , UpperCAmelCase__): return other raise TypeError(f"""{other} (type {type(UpperCAmelCase__)}) cannot be compared to version.""") def __eq__( self : Tuple , UpperCAmelCase__ : int) ->Union[str, Any]: '''simple docstring''' try: A__ = self._validate_operand(UpperCAmelCase__) except (TypeError, ValueError): return False else: return self.tuple == other.tuple def __lt__( self : List[Any] , UpperCAmelCase__ : Union[str, Any]) ->List[str]: '''simple docstring''' A__ = self._validate_operand(UpperCAmelCase__) return self.tuple < other.tuple def __hash__( self : int) ->Any: '''simple docstring''' return hash(_version_tuple_to_str(self.tuple)) @classmethod def SCREAMING_SNAKE_CASE ( cls : Optional[int] , UpperCAmelCase__ : int) ->List[str]: '''simple docstring''' A__ = {f.name for f in dataclasses.fields(cls)} return cls(**{k: v for k, v in dic.items() if k in field_names}) def SCREAMING_SNAKE_CASE ( self : Dict) ->str: '''simple docstring''' return self.version_str def SCREAMING_SNAKE_CASE ( lowercase_ ) -> Union[str, Any]: """simple docstring""" A__ = _VERSION_REG.match(lowercase_ ) if not res: raise ValueError(f"""Invalid version '{version_str}'. Format should be x.y.z with {{x,y,z}} being digits.""" ) return tuple(int(lowercase_ ) for v in [res.group('''major''' ), res.group('''minor''' ), res.group('''patch''' )] ) def SCREAMING_SNAKE_CASE ( lowercase_ ) -> Union[str, Any]: """simple docstring""" return ".".join(str(lowercase_ ) for v in version_tuple )
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'''simple docstring''' import shutil import tempfile import unittest from unittest.mock import patch from transformers import ( DefaultFlowCallback, IntervalStrategy, PrinterCallback, ProgressCallback, Trainer, TrainerCallback, TrainingArguments, is_torch_available, ) from transformers.testing_utils import require_torch if is_torch_available(): from transformers.trainer import DEFAULT_CALLBACKS from .test_trainer import RegressionDataset, RegressionModelConfig, RegressionPreTrainedModel class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = [] def _A ( self : Any , A : Union[str, Any] , A : Optional[int] , A : List[str] , **A : Tuple ): self.events.append("on_init_end" ) def _A ( self : Any , A : str , A : List[Any] , A : List[Any] , **A : Tuple ): self.events.append("on_train_begin" ) def _A ( self : Tuple , A : List[str] , A : Tuple , A : int , **A : List[str] ): self.events.append("on_train_end" ) def _A ( self : Optional[Any] , A : Dict , A : Any , A : Optional[Any] , **A : List[Any] ): self.events.append("on_epoch_begin" ) def _A ( self : Optional[Any] , A : List[Any] , A : List[str] , A : Optional[int] , **A : Optional[int] ): self.events.append("on_epoch_end" ) def _A ( self : List[str] , A : Optional[int] , A : List[Any] , A : Union[str, Any] , **A : Any ): self.events.append("on_step_begin" ) def _A ( self : Tuple , A : Union[str, Any] , A : int , A : Optional[int] , **A : int ): self.events.append("on_step_end" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Union[str, Any] , A : str , **A : Union[str, Any] ): self.events.append("on_evaluate" ) def _A ( self : Optional[Any] , A : Optional[int] , A : Dict , A : List[Any] , **A : Dict ): self.events.append("on_predict" ) def _A ( self : Dict , A : Dict , A : List[Any] , A : Dict , **A : str ): self.events.append("on_save" ) def _A ( self : Tuple , A : Optional[Any] , A : Union[str, Any] , A : Optional[int] , **A : Dict ): self.events.append("on_log" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Tuple , A : Tuple , **A : List[str] ): self.events.append("on_prediction_step" ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[int] ): _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() def _A ( self : List[Any] ): shutil.rmtree(self.output_dir ) def _A ( self : Union[str, Any] , A : Optional[int]=0 , A : Optional[Any]=0 , A : Optional[Any]=64 , A : Dict=64 , A : Any=None , A : Tuple=False , **A : Optional[int] ): # disable_tqdm in TrainingArguments has a flaky default since it depends on the level of logging. We make sure # its set to False since the tests later on depend on its value. _UpperCAmelCase : str = RegressionDataset(length=A ) _UpperCAmelCase : Union[str, Any] = RegressionDataset(length=A ) _UpperCAmelCase : Any = RegressionModelConfig(a=A , b=A ) _UpperCAmelCase : List[Any] = RegressionPreTrainedModel(A ) _UpperCAmelCase : Dict = TrainingArguments(self.output_dir , disable_tqdm=A , report_to=[] , **A ) return Trainer( A , A , train_dataset=A , eval_dataset=A , callbacks=A , ) def _A ( self : str , A : List[str] , A : List[str] ): self.assertEqual(len(A ) , len(A ) ) # Order doesn't matter _UpperCAmelCase : Tuple = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) _UpperCAmelCase : Any = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) for cba, cba in zip(A , A ): if isinstance(A , A ) and isinstance(A , A ): self.assertEqual(A , A ) elif isinstance(A , A ) and not isinstance(A , A ): self.assertEqual(A , cba.__class__ ) elif not isinstance(A , A ) and isinstance(A , A ): self.assertEqual(cba.__class__ , A ) else: self.assertEqual(A , A ) def _A ( self : int , A : List[str] ): _UpperCAmelCase : List[str] = ["on_init_end", "on_train_begin"] _UpperCAmelCase : str = 0 _UpperCAmelCase : Optional[Any] = len(trainer.get_eval_dataloader() ) _UpperCAmelCase : Optional[int] = ["on_prediction_step"] * len(trainer.get_eval_dataloader() ) + ["on_log", "on_evaluate"] for _ in range(trainer.state.num_train_epochs ): expected_events.append("on_epoch_begin" ) for _ in range(A ): step += 1 expected_events += ["on_step_begin", "on_step_end"] if step % trainer.args.logging_steps == 0: expected_events.append("on_log" ) if trainer.args.evaluation_strategy == IntervalStrategy.STEPS and step % trainer.args.eval_steps == 0: expected_events += evaluation_events.copy() if step % trainer.args.save_steps == 0: expected_events.append("on_save" ) expected_events.append("on_epoch_end" ) if trainer.args.evaluation_strategy == IntervalStrategy.EPOCH: expected_events += evaluation_events.copy() expected_events += ["on_log", "on_train_end"] return expected_events def _A ( self : str ): _UpperCAmelCase : Any = self.get_trainer() _UpperCAmelCase : int = DEFAULT_CALLBACKS.copy() + [ProgressCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # Callbacks passed at init are added to the default callbacks _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) expected_callbacks.append(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # TrainingArguments.disable_tqdm controls if use ProgressCallback or PrinterCallback _UpperCAmelCase : List[Any] = self.get_trainer(disable_tqdm=A ) _UpperCAmelCase : Tuple = DEFAULT_CALLBACKS.copy() + [PrinterCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = DEFAULT_CALLBACKS.copy() + [ProgressCallback] _UpperCAmelCase : Dict = self.get_trainer() # We can add, pop, or remove by class name trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : Optional[Any] = self.get_trainer() _UpperCAmelCase : Any = trainer.pop_callback(A ) self.assertEqual(cb.__class__ , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # We can also add, pop, or remove by instance _UpperCAmelCase : Union[str, Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : List[Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] _UpperCAmelCase : Union[str, Any] = trainer.pop_callback(A ) self.assertEqual(A , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): import warnings # XXX: for now ignore scatter_gather warnings in this test since it's not relevant to what's being tested warnings.simplefilter(action="ignore" , category=A ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) trainer.train() _UpperCAmelCase : Union[str, Any] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # Independent log/save/eval _UpperCAmelCase : Tuple = self.get_trainer(callbacks=[MyTestTrainerCallback] , logging_steps=5 ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : List[str] = self.get_trainer(callbacks=[MyTestTrainerCallback] , save_steps=5 ) trainer.train() _UpperCAmelCase : Tuple = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : int = self.get_trainer(callbacks=[MyTestTrainerCallback] , eval_steps=5 , evaluation_strategy="steps" ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] , evaluation_strategy="epoch" ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # A bit of everything _UpperCAmelCase : int = self.get_trainer( callbacks=[MyTestTrainerCallback] , logging_steps=3 , save_steps=10 , eval_steps=5 , evaluation_strategy="steps" , ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # warning should be emitted for duplicated callbacks with patch("transformers.trainer_callback.logger.warning" ) as warn_mock: _UpperCAmelCase : Optional[Any] = self.get_trainer( callbacks=[MyTestTrainerCallback, MyTestTrainerCallback] , ) assert str(A ) in warn_mock.call_args[0][0]
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from typing import Dict, List, Optional, Union import numpy as np from ...image_processing_utils import BaseImageProcessor, BatchFeature, get_size_dict from ...image_transforms import convert_to_rgb, normalize, rescale, resize, to_channel_dimension_format from ...image_utils import ( OPENAI_CLIP_MEAN, OPENAI_CLIP_STD, ChannelDimension, ImageInput, PILImageResampling, make_list_of_images, to_numpy_array, valid_images, ) from ...utils import TensorType, is_vision_available, logging if is_vision_available(): import PIL SCREAMING_SNAKE_CASE :List[Any] = logging.get_logger(__name__) class UpperCAmelCase ( __SCREAMING_SNAKE_CASE ): '''simple docstring''' snake_case_ = ["pixel_values"] def __init__( self : Optional[int] ,A : bool = True ,A : Dict[str, int] = None ,A : PILImageResampling = PILImageResampling.BICUBIC ,A : bool = True ,A : Union[int, float] = 1 / 2_55 ,A : bool = True ,A : Optional[Union[float, List[float]]] = None ,A : Optional[Union[float, List[float]]] = None ,A : bool = True ,**A : str ,): super().__init__(**A ) __A = size if size is not None else {"height": 3_84, "width": 3_84} __A = get_size_dict(A ,default_to_square=A ) __A = do_resize __A = size __A = resample __A = do_rescale __A = rescale_factor __A = do_normalize __A = image_mean if image_mean is not None else OPENAI_CLIP_MEAN __A = image_std if image_std is not None else OPENAI_CLIP_STD __A = do_convert_rgb def UpperCamelCase_ ( self : Any ,A : np.ndarray ,A : Dict[str, int] ,A : PILImageResampling = PILImageResampling.BICUBIC ,A : Optional[Union[str, ChannelDimension]] = None ,**A : Optional[Any] ,): __A = get_size_dict(A ,default_to_square=A ) if "height" not in size or "width" not in size: raise ValueError(f'''The `size` dictionary must contain the keys `height` and `width`. Got {size.keys()}''' ) __A = (size["height"], size["width"]) return resize(A ,size=A ,resample=A ,data_format=A ,**A ) def UpperCamelCase_ ( self : Any ,A : np.ndarray ,A : Union[int, float] ,A : Optional[Union[str, ChannelDimension]] = None ,**A : Any ,): return rescale(A ,scale=A ,data_format=A ,**A ) def UpperCamelCase_ ( self : Any ,A : np.ndarray ,A : Union[float, List[float]] ,A : Union[float, List[float]] ,A : Optional[Union[str, ChannelDimension]] = None ,**A : Optional[Any] ,): return normalize(A ,mean=A ,std=A ,data_format=A ,**A ) def UpperCamelCase_ ( self : Optional[Any] ,A : ImageInput ,A : Optional[bool] = None ,A : Optional[Dict[str, int]] = None ,A : PILImageResampling = None ,A : Optional[bool] = None ,A : Optional[float] = None ,A : Optional[bool] = None ,A : Optional[Union[float, List[float]]] = None ,A : Optional[Union[float, List[float]]] = None ,A : Optional[Union[str, TensorType]] = None ,A : bool = None ,A : ChannelDimension = ChannelDimension.FIRST ,**A : Dict ,): __A = do_resize if do_resize is not None else self.do_resize __A = resample if resample is not None else self.resample __A = do_rescale if do_rescale is not None else self.do_rescale __A = rescale_factor if rescale_factor is not None else self.rescale_factor __A = do_normalize if do_normalize is not None else self.do_normalize __A = image_mean if image_mean is not None else self.image_mean __A = image_std if image_std is not None else self.image_std __A = do_convert_rgb if do_convert_rgb is not None else self.do_convert_rgb __A = size if size is not None else self.size __A = get_size_dict(A ,default_to_square=A ) __A = make_list_of_images(A ) if not valid_images(A ): raise ValueError( "Invalid image type. Must be of type PIL.Image.Image, numpy.ndarray, " "torch.Tensor, tf.Tensor or jax.ndarray." ) if do_resize and size is None or resample is None: raise ValueError("Size and resample must be specified if do_resize is True." ) if do_rescale and rescale_factor is None: raise ValueError("Rescale factor must be specified if do_rescale is True." ) if do_normalize and (image_mean is None or image_std is None): raise ValueError("Image mean and std must be specified if do_normalize is True." ) # PIL RGBA images are converted to RGB if do_convert_rgb: __A = [convert_to_rgb(A ) for image in images] # All transformations expect numpy arrays. __A = [to_numpy_array(A ) for image in images] if do_resize: __A = [self.resize(image=A ,size=A ,resample=A ) for image in images] if do_rescale: __A = [self.rescale(image=A ,scale=A ) for image in images] if do_normalize: __A = [self.normalize(image=A ,mean=A ,std=A ) for image in images] __A = [to_channel_dimension_format(A ,A ) for image in images] __A = BatchFeature(data={"pixel_values": images} ,tensor_type=A ) return encoded_outputs
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_video_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import VivitImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : int , A : Dict , A : Optional[int]=7 , A : Tuple=3 , A : Optional[Any]=10 , A : int=18 , A : Dict=30 , A : List[str]=400 , A : int=True , A : Optional[Any]=None , A : Optional[Any]=True , A : List[Any]=[0.5, 0.5, 0.5] , A : List[str]=[0.5, 0.5, 0.5] , A : Optional[int]=None , ): _UpperCAmelCase : Dict = size if size is not None else {"shortest_edge": 18} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : Tuple = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : Optional[int] = num_channels _UpperCAmelCase : Optional[Any] = num_frames _UpperCAmelCase : Any = image_size _UpperCAmelCase : Dict = min_resolution _UpperCAmelCase : Any = max_resolution _UpperCAmelCase : Optional[int] = do_resize _UpperCAmelCase : str = size _UpperCAmelCase : List[Any] = do_normalize _UpperCAmelCase : Any = image_mean _UpperCAmelCase : Tuple = image_std _UpperCAmelCase : Any = crop_size def _A ( self : List[Any] ): return { "image_mean": self.image_mean, "image_std": self.image_std, "do_normalize": self.do_normalize, "do_resize": self.do_resize, "size": self.size, "crop_size": self.crop_size, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = VivitImageProcessor if is_vision_available() else None def _A ( self : int ): _UpperCAmelCase : Tuple = VivitImageProcessingTester(self ) @property def _A ( self : Optional[Any] ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Union[str, Any] ): _UpperCAmelCase : str = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "image_mean" ) ) self.assertTrue(hasattr(A , "image_std" ) ) self.assertTrue(hasattr(A , "do_normalize" ) ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "size" ) ) def _A ( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 18} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Optional[int] = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Tuple ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PIL videos _UpperCAmelCase : Any = prepare_video_inputs(self.image_processor_tester , equal_resolution=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , Image.Image ) # Test not batched input _UpperCAmelCase : str = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : List[Any] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , np.ndarray ) # Test not batched input _UpperCAmelCase : Tuple = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[int] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , torch.Tensor ) # Test not batched input _UpperCAmelCase : Optional[Any] = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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"""simple docstring""" from __future__ import annotations import math def __UpperCAmelCase ( __lowerCamelCase , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase ) -> int: if depth < 0: raise ValueError('''Depth cannot be less than 0''' ) if not scores: raise ValueError('''Scores cannot be empty''' ) if depth == height: return scores[node_index] return ( max( minimax(depth + 1 , node_index * 2 , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase ) , minimax(depth + 1 , node_index * 2 + 1 , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase ) , ) if is_max else min( minimax(depth + 1 , node_index * 2 , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase ) , minimax(depth + 1 , node_index * 2 + 1 , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase ) , ) ) def __UpperCAmelCase ( ) -> None: lowercase__ : Any = [90, 23, 6, 33, 21, 65, 1_23, 3_44_23] lowercase__ : Optional[Any] = math.log(len(__lowerCamelCase ) , 2 ) print(f"""Optimal value : {minimax(0 , 0 , __lowerCamelCase , __lowerCamelCase , __lowerCamelCase )}""" ) if __name__ == "__main__": import doctest doctest.testmod() main()
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'''simple docstring''' import math from typing import Optional import numpy as np from ...configuration_utils import PretrainedConfig from ...utils import logging __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : List[Any] = { """facebook/encodec_24khz""": """https://huggingface.co/facebook/encodec_24khz/resolve/main/config.json""", """facebook/encodec_48khz""": """https://huggingface.co/facebook/encodec_48khz/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = "encodec" def __init__( self : Optional[int] , A : Union[str, Any]=[1.5, 3.0, 6.0, 12.0, 24.0] , A : List[Any]=24000 , A : Union[str, Any]=1 , A : List[Any]=False , A : Optional[int]=None , A : int=None , A : str=128 , A : List[Any]=32 , A : List[Any]=1 , A : int=[8, 5, 4, 2] , A : Optional[int]="weight_norm" , A : List[Any]=7 , A : Any=7 , A : Dict=3 , A : Optional[int]=2 , A : Dict=True , A : Dict="reflect" , A : Any=2 , A : Dict=2 , A : str=1.0 , A : Optional[int]=1024 , A : Any=None , A : Any=True , **A : str , ): _UpperCAmelCase : Optional[int] = target_bandwidths _UpperCAmelCase : List[str] = sampling_rate _UpperCAmelCase : Optional[int] = audio_channels _UpperCAmelCase : str = normalize _UpperCAmelCase : int = chunk_length_s _UpperCAmelCase : str = overlap _UpperCAmelCase : Optional[Any] = hidden_size _UpperCAmelCase : int = num_filters _UpperCAmelCase : Optional[Any] = num_residual_layers _UpperCAmelCase : Optional[int] = upsampling_ratios _UpperCAmelCase : int = norm_type _UpperCAmelCase : List[Any] = kernel_size _UpperCAmelCase : List[Any] = last_kernel_size _UpperCAmelCase : List[Any] = residual_kernel_size _UpperCAmelCase : List[str] = dilation_growth_rate _UpperCAmelCase : Dict = use_causal_conv _UpperCAmelCase : Tuple = pad_mode _UpperCAmelCase : Tuple = compress _UpperCAmelCase : List[str] = num_lstm_layers _UpperCAmelCase : List[Any] = trim_right_ratio _UpperCAmelCase : int = codebook_size _UpperCAmelCase : Optional[Any] = codebook_dim if codebook_dim is not None else hidden_size _UpperCAmelCase : Optional[int] = use_conv_shortcut if self.norm_type not in ["weight_norm", "time_group_norm"]: raise ValueError( F"""self.norm_type must be one of `\"weight_norm\"`, `\"time_group_norm\"`), got {self.norm_type}""" ) super().__init__(**A ) @property def _A ( self : Any ): if self.chunk_length_s is None: return None else: return int(self.chunk_length_s * self.sampling_rate ) @property def _A ( self : Union[str, Any] ): if self.chunk_length_s is None or self.overlap is None: return None else: return max(1 , int((1.0 - self.overlap) * self.chunk_length ) ) @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = np.prod(self.upsampling_ratios ) return math.ceil(self.sampling_rate / hop_length ) @property def _A ( self : str ): return int(1000 * self.target_bandwidths[-1] // (self.frame_rate * 10) )
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"""simple docstring""" import gc import random import unittest import numpy as np import torch from PIL import Image from diffusers import ( DDIMScheduler, KandinskyVaaImgaImgPipeline, KandinskyVaaPriorPipeline, UNetaDConditionModel, VQModel, ) from diffusers.utils import floats_tensor, load_image, load_numpy, slow, torch_device from diffusers.utils.testing_utils import enable_full_determinism, require_torch_gpu from ..test_pipelines_common import PipelineTesterMixin, assert_mean_pixel_difference enable_full_determinism() class _lowerCAmelCase ( lowercase ,unittest.TestCase ): """simple docstring""" __UpperCAmelCase : int = KandinskyVaaImgaImgPipeline __UpperCAmelCase : Optional[Any] = ["image_embeds", "negative_image_embeds", "image"] __UpperCAmelCase : int = [ "image_embeds", "negative_image_embeds", "image", ] __UpperCAmelCase : List[str] = [ "generator", "height", "width", "strength", "guidance_scale", "num_inference_steps", "return_dict", "guidance_scale", "num_images_per_prompt", "output_type", "return_dict", ] __UpperCAmelCase : List[Any] = False @property def _lowercase ( self : Optional[int] ): return 3_2 @property def _lowercase ( self : Union[str, Any] ): return 3_2 @property def _lowercase ( self : Optional[int] ): return self.time_input_dim @property def _lowercase ( self : Any ): return self.time_input_dim * 4 @property def _lowercase ( self : Any ): return 1_0_0 @property def _lowercase ( self : Any ): torch.manual_seed(0 ) __lowercase = { "in_channels": 4, # Out channels is double in channels because predicts mean and variance "out_channels": 8, "addition_embed_type": "image", "down_block_types": ("ResnetDownsampleBlock2D", "SimpleCrossAttnDownBlock2D"), "up_block_types": ("SimpleCrossAttnUpBlock2D", "ResnetUpsampleBlock2D"), "mid_block_type": "UNetMidBlock2DSimpleCrossAttn", "block_out_channels": (self.block_out_channels_a, self.block_out_channels_a * 2), "layers_per_block": 1, "encoder_hid_dim": self.text_embedder_hidden_size, "encoder_hid_dim_type": "image_proj", "cross_attention_dim": self.cross_attention_dim, "attention_head_dim": 4, "resnet_time_scale_shift": "scale_shift", "class_embed_type": None, } __lowercase = UNetaDConditionModel(**UpperCAmelCase__ ) return model @property def _lowercase ( self : Optional[Any] ): return { "block_out_channels": [3_2, 6_4], "down_block_types": ["DownEncoderBlock2D", "AttnDownEncoderBlock2D"], "in_channels": 3, "latent_channels": 4, "layers_per_block": 1, "norm_num_groups": 8, "norm_type": "spatial", "num_vq_embeddings": 1_2, "out_channels": 3, "up_block_types": [ "AttnUpDecoderBlock2D", "UpDecoderBlock2D", ], "vq_embed_dim": 4, } @property def _lowercase ( self : Optional[Any] ): torch.manual_seed(0 ) __lowercase = VQModel(**self.dummy_movq_kwargs ) return model def _lowercase ( self : Union[str, Any] ): __lowercase = self.dummy_unet __lowercase = self.dummy_movq __lowercase = { "num_train_timesteps": 1_0_0_0, "beta_schedule": "linear", "beta_start": 0.00_085, "beta_end": 0.012, "clip_sample": False, "set_alpha_to_one": False, "steps_offset": 0, "prediction_type": "epsilon", "thresholding": False, } __lowercase = DDIMScheduler(**UpperCAmelCase__ ) __lowercase = { "unet": unet, "scheduler": scheduler, "movq": movq, } return components def _lowercase ( self : Union[str, Any], UpperCAmelCase__ : List[Any], UpperCAmelCase__ : List[Any]=0 ): __lowercase = floats_tensor((1, self.text_embedder_hidden_size), rng=random.Random(UpperCAmelCase__ ) ).to(UpperCAmelCase__ ) __lowercase = floats_tensor((1, self.text_embedder_hidden_size), rng=random.Random(seed + 1 ) ).to( UpperCAmelCase__ ) # create init_image __lowercase = floats_tensor((1, 3, 6_4, 6_4), rng=random.Random(UpperCAmelCase__ ) ).to(UpperCAmelCase__ ) __lowercase = image.cpu().permute(0, 2, 3, 1 )[0] __lowercase = Image.fromarray(np.uinta(UpperCAmelCase__ ) ).convert("RGB" ).resize((2_5_6, 2_5_6) ) if str(UpperCAmelCase__ ).startswith("mps" ): __lowercase = torch.manual_seed(UpperCAmelCase__ ) else: __lowercase = torch.Generator(device=UpperCAmelCase__ ).manual_seed(UpperCAmelCase__ ) __lowercase = { "image": init_image, "image_embeds": image_embeds, "negative_image_embeds": negative_image_embeds, "generator": generator, "height": 6_4, "width": 6_4, "num_inference_steps": 1_0, "guidance_scale": 7.0, "strength": 0.2, "output_type": "np", } return inputs def _lowercase ( self : Optional[Any] ): __lowercase = "cpu" __lowercase = self.get_dummy_components() __lowercase = self.pipeline_class(**UpperCAmelCase__ ) __lowercase = pipe.to(UpperCAmelCase__ ) pipe.set_progress_bar_config(disable=UpperCAmelCase__ ) __lowercase = pipe(**self.get_dummy_inputs(UpperCAmelCase__ ) ) __lowercase = output.images __lowercase = pipe( **self.get_dummy_inputs(UpperCAmelCase__ ), return_dict=UpperCAmelCase__, )[0] __lowercase = image[0, -3:, -3:, -1] __lowercase = image_from_tuple[0, -3:, -3:, -1] assert image.shape == (1, 6_4, 6_4, 3) __lowercase = np.array( [0.6_199_778, 0.63_984_406, 0.46_145_785, 0.62_944_984, 0.5_622_215, 0.47_306_132, 0.47_441_456, 0.4_607_606, 0.48_719_263] ) assert ( np.abs(image_slice.flatten() - expected_slice ).max() < 1E-2 ), F""" expected_slice {expected_slice}, but got {image_slice.flatten()}""" assert ( np.abs(image_from_tuple_slice.flatten() - expected_slice ).max() < 1E-2 ), F""" expected_slice {expected_slice}, but got {image_from_tuple_slice.flatten()}""" @slow @require_torch_gpu class _lowerCAmelCase ( unittest.TestCase ): """simple docstring""" def _lowercase ( self : Optional[int] ): # clean up the VRAM after each test super().tearDown() gc.collect() torch.cuda.empty_cache() def _lowercase ( self : Dict ): __lowercase = load_numpy( "https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main" "/kandinskyv22/kandinskyv22_img2img_frog.npy" ) __lowercase = load_image( "https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main" "/kandinsky/cat.png" ) __lowercase = "A red cartoon frog, 4k" __lowercase = KandinskyVaaPriorPipeline.from_pretrained( "kandinsky-community/kandinsky-2-2-prior", torch_dtype=torch.floataa ) pipe_prior.to(UpperCAmelCase__ ) __lowercase = KandinskyVaaImgaImgPipeline.from_pretrained( "kandinsky-community/kandinsky-2-2-decoder", torch_dtype=torch.floataa ) __lowercase = pipeline.to(UpperCAmelCase__ ) pipeline.set_progress_bar_config(disable=UpperCAmelCase__ ) __lowercase = torch.Generator(device="cpu" ).manual_seed(0 ) __lowercase ,__lowercase = pipe_prior( UpperCAmelCase__, generator=UpperCAmelCase__, num_inference_steps=5, negative_prompt="", ).to_tuple() __lowercase = pipeline( image=UpperCAmelCase__, image_embeds=UpperCAmelCase__, negative_image_embeds=UpperCAmelCase__, generator=UpperCAmelCase__, num_inference_steps=1_0_0, height=7_6_8, width=7_6_8, strength=0.2, output_type="np", ) __lowercase = output.images[0] assert image.shape == (7_6_8, 7_6_8, 3) assert_mean_pixel_difference(UpperCAmelCase__, UpperCAmelCase__ )
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'''simple docstring''' from typing import Any, Dict, List, Optional, Tuple, Union import torch from torch import nn from torch.utils.data import DistributedSampler, RandomSampler from transformers import PreTrainedModel, Trainer, logging from transformers.integrations import is_fairscale_available from transformers.models.fsmt.configuration_fsmt import FSMTConfig from transformers.optimization import ( Adafactor, AdamW, get_constant_schedule, get_constant_schedule_with_warmup, get_cosine_schedule_with_warmup, get_cosine_with_hard_restarts_schedule_with_warmup, get_linear_schedule_with_warmup, get_polynomial_decay_schedule_with_warmup, ) from transformers.trainer_pt_utils import get_tpu_sampler from transformers.training_args import ParallelMode from transformers.utils import is_torch_tpu_available if is_fairscale_available(): from fairscale.optim import OSS __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = { """linear""": get_linear_schedule_with_warmup, """cosine""": get_cosine_schedule_with_warmup, """cosine_w_restarts""": get_cosine_with_hard_restarts_schedule_with_warmup, """polynomial""": get_polynomial_decay_schedule_with_warmup, """constant""": get_constant_schedule, """constant_w_warmup""": get_constant_schedule_with_warmup, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Any , A : Optional[int]=None , A : Tuple=None , *A : Tuple , **A : List[str] ): super().__init__(*A , **A ) if config is None: assert isinstance(self.model , A ), ( "If no `config` is passed the model to be trained has to be of type `PreTrainedModel`, but is" F""" {self.model.__class__}""" ) _UpperCAmelCase : str = self.model.config else: _UpperCAmelCase : List[str] = config _UpperCAmelCase : List[Any] = data_args _UpperCAmelCase : str = self.config.tgt_vocab_size if isinstance(self.config , A ) else self.config.vocab_size if self.args.label_smoothing != 0 or (self.data_args is not None and self.data_args.ignore_pad_token_for_loss): assert self.config.pad_token_id is not None, ( "Make sure that `config.pad_token_id` is correcly defined when ignoring `pad_token` for loss" " calculation or doing label smoothing." ) if self.config.pad_token_id is None and self.config.eos_token_id is not None: logger.warning( F"""The `config.pad_token_id` is `None`. Using `config.eos_token_id` = {self.config.eos_token_id} for""" " padding.." ) if self.args.label_smoothing == 0: _UpperCAmelCase : Optional[Any] = torch.nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id ) else: # dynamically import label_smoothed_nll_loss from utils import label_smoothed_nll_loss _UpperCAmelCase : Dict = label_smoothed_nll_loss def _A ( self : Tuple , A : int ): if self.optimizer is None: _UpperCAmelCase : Tuple = ["bias", "LayerNorm.weight"] _UpperCAmelCase : str = [ { "params": [p for n, p in self.model.named_parameters() if not any(nd in n for nd in no_decay )], "weight_decay": self.args.weight_decay, }, { "params": [p for n, p in self.model.named_parameters() if any(nd in n for nd in no_decay )], "weight_decay": 0.0, }, ] _UpperCAmelCase : int = Adafactor if self.args.adafactor else AdamW if self.args.adafactor: _UpperCAmelCase : List[str] = Adafactor _UpperCAmelCase : List[Any] = {"scale_parameter": False, "relative_step": False} else: _UpperCAmelCase : List[str] = AdamW _UpperCAmelCase : List[str] = { "betas": (self.args.adam_betaa, self.args.adam_betaa), "eps": self.args.adam_epsilon, } _UpperCAmelCase : List[Any] = self.args.learning_rate if self.sharded_ddp: _UpperCAmelCase : List[Any] = OSS( params=A , optim=A , **A , ) else: _UpperCAmelCase : Union[str, Any] = optimizer_cls(A , **A ) if self.lr_scheduler is None: _UpperCAmelCase : List[str] = self._get_lr_scheduler(A ) else: # ignoring --lr_scheduler logger.warning("scheduler is passed to `Seq2SeqTrainer`, `--lr_scheduler` arg is ignored." ) def _A ( self : List[str] , A : Optional[int] ): _UpperCAmelCase : List[str] = arg_to_scheduler[self.args.lr_scheduler] if self.args.lr_scheduler == "constant": _UpperCAmelCase : Optional[Any] = schedule_func(self.optimizer ) elif self.args.lr_scheduler == "constant_w_warmup": _UpperCAmelCase : str = schedule_func(self.optimizer , num_warmup_steps=self.args.warmup_steps ) else: _UpperCAmelCase : str = schedule_func( self.optimizer , num_warmup_steps=self.args.warmup_steps , num_training_steps=A ) return scheduler def _A ( self : Tuple ): if isinstance(self.train_dataset , torch.utils.data.IterableDataset ): return None elif is_torch_tpu_available(): return get_tpu_sampler(self.train_dataset ) else: if self.args.sortish_sampler: self.train_dataset.make_sortish_sampler( self.args.per_device_train_batch_size , distributed=(self.args.parallel_mode == ParallelMode.DISTRIBUTED) , ) return ( RandomSampler(self.train_dataset ) if self.args.local_rank == -1 else DistributedSampler(self.train_dataset ) ) def _A ( self : Any , A : Union[str, Any] , A : Union[str, Any] , A : List[Any] ): if self.args.label_smoothing == 0: if self.data_args is not None and self.data_args.ignore_pad_token_for_loss: # force training to ignore pad token _UpperCAmelCase : List[str] = model(**A , use_cache=A )[0] _UpperCAmelCase : int = self.loss_fn(logits.view(-1 , logits.shape[-1] ) , labels.view(-1 ) ) else: # compute usual loss via models _UpperCAmelCase , _UpperCAmelCase : Any = model(**A , labels=A , use_cache=A )[:2] else: # compute label smoothed loss _UpperCAmelCase : Optional[int] = model(**A , use_cache=A )[0] _UpperCAmelCase : List[str] = torch.nn.functional.log_softmax(A , dim=-1 ) _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = self.loss_fn(A , A , self.args.label_smoothing , ignore_index=self.config.pad_token_id ) return loss, logits def _A ( self : List[str] , A : Optional[int] , A : Optional[int] ): _UpperCAmelCase : Union[str, Any] = inputs.pop("labels" ) _UpperCAmelCase , _UpperCAmelCase : Optional[int] = self._compute_loss(A , A , A ) return loss def _A ( self : List[str] , A : nn.Module , A : Dict[str, Union[torch.Tensor, Any]] , A : bool , A : Optional[List[str]] = None , ): _UpperCAmelCase : List[str] = self._prepare_inputs(A ) _UpperCAmelCase : Dict = { "max_length": self.data_args.val_max_target_length if self.data_args is not None else self.config.max_length, "num_beams": self.data_args.eval_beams if self.data_args is not None else self.config.num_beams, } if self.args.predict_with_generate and not self.args.prediction_loss_only: _UpperCAmelCase : Dict = self.model.generate( inputs["input_ids"] , attention_mask=inputs["attention_mask"] , **A , ) # in case the batch is shorter than max length, the output should be padded if generated_tokens.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : int = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) _UpperCAmelCase : Any = inputs.pop("labels" ) with torch.no_grad(): # compute loss on predict data _UpperCAmelCase , _UpperCAmelCase : str = self._compute_loss(A , A , A ) _UpperCAmelCase : List[str] = loss.mean().detach() if self.args.prediction_loss_only: return (loss, None, None) _UpperCAmelCase : str = generated_tokens if self.args.predict_with_generate else logits if labels.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : Optional[Any] = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) return (loss, logits, labels) def _A ( self : Dict , A : int , A : List[str] ): # If PAD token is not defined at least EOS token has to be defined _UpperCAmelCase : Union[str, Any] = self.config.pad_token_id if self.config.pad_token_id is not None else self.config.eos_token_id if pad_token_id is None: raise ValueError( "Make sure that either `config.pad_token_id` or `config.eos_token_id` is defined if tensor has to be" F""" padded to `max_length`={max_length}""" ) _UpperCAmelCase : Tuple = pad_token_id * torch.ones( (tensor.shape[0], max_length) , dtype=tensor.dtype , device=tensor.device ) _UpperCAmelCase : Tuple = tensor return padded_tensor
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import unittest from transformers import AlbertTokenizer, AlbertTokenizerFast from transformers.testing_utils import get_tests_dir, require_sentencepiece, require_tokenizers, slow from ...test_tokenization_common import TokenizerTesterMixin __lowerCamelCase : Optional[Any] = get_tests_dir('''fixtures/spiece.model''') @require_sentencepiece @require_tokenizers class a__ ( A__ , unittest.TestCase ): A = AlbertTokenizer A = AlbertTokenizerFast A = True A = True A = True def __UpperCamelCase ( self : Optional[int] ): """simple docstring""" super().setUp() # We have a SentencePiece fixture for testing SCREAMING_SNAKE_CASE_ : Optional[int] = AlbertTokenizer(_A ) tokenizer.save_pretrained(self.tmpdirname ) def __UpperCamelCase ( self : Union[str, Any],_A : Optional[int] ): """simple docstring""" SCREAMING_SNAKE_CASE_ : Optional[Any] = "this is a test" SCREAMING_SNAKE_CASE_ : Optional[Any] = "this is a test" return input_text, output_text def __UpperCamelCase ( self : List[Any] ): """simple docstring""" SCREAMING_SNAKE_CASE_ : Tuple = "<pad>" SCREAMING_SNAKE_CASE_ : str = 0 self.assertEqual(self.get_tokenizer()._convert_token_to_id(_A ),_A ) self.assertEqual(self.get_tokenizer()._convert_id_to_token(_A ),_A ) def __UpperCamelCase ( self : List[str] ): """simple docstring""" SCREAMING_SNAKE_CASE_ : Tuple = list(self.get_tokenizer().get_vocab().keys() ) self.assertEqual(vocab_keys[0],"<pad>" ) self.assertEqual(vocab_keys[1],"<unk>" ) self.assertEqual(vocab_keys[-1],"▁eloquent" ) self.assertEqual(len(_A ),3_0000 ) def __UpperCamelCase ( self : List[Any] ): """simple docstring""" self.assertEqual(self.get_tokenizer().vocab_size,3_0000 ) def __UpperCamelCase ( self : Optional[int] ): """simple docstring""" if not self.test_rust_tokenizer: return SCREAMING_SNAKE_CASE_ : List[str] = self.get_tokenizer() SCREAMING_SNAKE_CASE_ : Tuple = self.get_rust_tokenizer() SCREAMING_SNAKE_CASE_ : List[str] = "I was born in 92000, and this is falsé." SCREAMING_SNAKE_CASE_ : str = tokenizer.tokenize(_A ) SCREAMING_SNAKE_CASE_ : List[Any] = rust_tokenizer.tokenize(_A ) self.assertListEqual(_A,_A ) SCREAMING_SNAKE_CASE_ : Any = tokenizer.encode(_A,add_special_tokens=_A ) SCREAMING_SNAKE_CASE_ : List[str] = rust_tokenizer.encode(_A,add_special_tokens=_A ) self.assertListEqual(_A,_A ) SCREAMING_SNAKE_CASE_ : List[str] = self.get_rust_tokenizer() SCREAMING_SNAKE_CASE_ : Tuple = tokenizer.encode(_A ) SCREAMING_SNAKE_CASE_ : Any = rust_tokenizer.encode(_A ) self.assertListEqual(_A,_A ) def __UpperCamelCase ( self : Tuple ): """simple docstring""" SCREAMING_SNAKE_CASE_ : Any = AlbertTokenizer(_A,keep_accents=_A ) SCREAMING_SNAKE_CASE_ : List[Any] = tokenizer.tokenize("This is a test" ) self.assertListEqual(_A,["▁this", "▁is", "▁a", "▁test"] ) self.assertListEqual(tokenizer.convert_tokens_to_ids(_A ),[48, 25, 21, 1289] ) SCREAMING_SNAKE_CASE_ : int = tokenizer.tokenize("I was born in 92000, and this is falsé." ) self.assertListEqual( _A,["▁i", "▁was", "▁born", "▁in", "▁9", "2000", ",", "▁and", "▁this", "▁is", "▁fal", "s", "é", "."] ) SCREAMING_SNAKE_CASE_ : int = tokenizer.convert_tokens_to_ids(_A ) self.assertListEqual(_A,[31, 23, 386, 19, 561, 3050, 15, 17, 48, 25, 8256, 18, 1, 9] ) SCREAMING_SNAKE_CASE_ : List[str] = tokenizer.convert_ids_to_tokens(_A ) self.assertListEqual( _A,["▁i", "▁was", "▁born", "▁in", "▁9", "2000", ",", "▁and", "▁this", "▁is", "▁fal", "s", "<unk>", "."],) def __UpperCamelCase ( self : int ): """simple docstring""" SCREAMING_SNAKE_CASE_ : List[str] = AlbertTokenizer(_A ) SCREAMING_SNAKE_CASE_ : List[str] = tokenizer.encode("sequence builders" ) SCREAMING_SNAKE_CASE_ : Dict = tokenizer.encode("multi-sequence build" ) SCREAMING_SNAKE_CASE_ : Tuple = tokenizer.build_inputs_with_special_tokens(_A ) SCREAMING_SNAKE_CASE_ : Union[str, Any] = tokenizer.build_inputs_with_special_tokens(_A,_A ) assert encoded_sentence == [tokenizer.cls_token_id] + text + [tokenizer.sep_token_id] assert encoded_pair == [tokenizer.cls_token_id] + text + [tokenizer.sep_token_id] + text_a + [ tokenizer.sep_token_id ] @slow def __UpperCamelCase ( self : Tuple ): """simple docstring""" SCREAMING_SNAKE_CASE_ : List[str] = {"attention_mask": [[1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1], [1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0], [1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0]], "input_ids": [[2, 2_1970, 13, 5, 6092, 167, 28, 7103, 2153, 673, 8, 7028, 1_2051, 18, 17, 7103, 2153, 673, 8, 3515, 1_8684, 8, 4461, 6, 1927, 297, 8, 1_2060, 2607, 18, 13, 5, 4461, 15, 1_0538, 38, 8, 135, 15, 822, 58, 15, 993, 1_0363, 15, 1460, 8005, 4461, 15, 993, 255, 2328, 9, 9, 9, 6, 26, 1112, 816, 3260, 13, 5, 103, 2377, 6, 17, 1112, 816, 2782, 13, 5, 103, 1_0641, 6, 29, 84, 2512, 2430, 782, 1_8684, 2761, 19, 808, 2430, 2556, 17, 855, 1480, 9477, 4091, 128, 1_1712, 15, 7103, 2153, 673, 17, 2_4883, 9990, 9, 3], [2, 1_1502, 25, 1006, 20, 782, 8, 1_1809, 855, 1732, 1_9393, 1_8667, 37, 367, 2_1018, 69, 1854, 34, 1_1860, 1_9124, 27, 156, 225, 17, 193, 4141, 19, 65, 9124, 9, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0], [2, 14, 2231, 886, 2385, 1_7659, 84, 14, 1_6792, 1952, 9, 3, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0]], "token_type_ids": [[0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0], [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0], [0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0]]} # noqa: E501 # fmt: on self.tokenizer_integration_test_util( expected_encoding=_A,model_name="albert-base-v2",revision="6b6560eaf5ff2e250b00c50f380c5389a9c2d82e",)
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'''simple docstring''' import copy from typing import Any, Dict, List, Optional, Union import numpy as np import torch from ...audio_utils import mel_filter_bank, spectrogram, window_function from ...feature_extraction_sequence_utils import SequenceFeatureExtractor from ...feature_extraction_utils import BatchFeature from ...utils import TensorType, logging __SCREAMING_SNAKE_CASE : List[str] = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = ["input_features", "is_longer"] def __init__( self : str , A : int=64 , A : Dict=48000 , A : str=480 , A : List[Any]=10 , A : Optional[Any]=1024 , A : Tuple=0.0 , A : List[Any]=False , A : float = 0 , A : float = 14000 , A : int = None , A : str = "fusion" , A : str = "repeatpad" , **A : Dict , ): super().__init__( feature_size=A , sampling_rate=A , padding_value=A , return_attention_mask=A , **A , ) _UpperCAmelCase : Optional[Any] = top_db _UpperCAmelCase : Dict = truncation _UpperCAmelCase : List[Any] = padding _UpperCAmelCase : Optional[Any] = fft_window_size _UpperCAmelCase : Dict = (fft_window_size >> 1) + 1 _UpperCAmelCase : Any = hop_length _UpperCAmelCase : Tuple = max_length_s _UpperCAmelCase : str = max_length_s * sampling_rate _UpperCAmelCase : Any = sampling_rate _UpperCAmelCase : Optional[int] = frequency_min _UpperCAmelCase : str = frequency_max _UpperCAmelCase : Union[str, Any] = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm=A , mel_scale="htk" , ) _UpperCAmelCase : Tuple = mel_filter_bank( num_frequency_bins=self.nb_frequency_bins , num_mel_filters=A , min_frequency=A , max_frequency=A , sampling_rate=A , norm="slaney" , mel_scale="slaney" , ) def _A ( self : List[str] ): _UpperCAmelCase : Union[str, Any] = copy.deepcopy(self.__dict__ ) _UpperCAmelCase : Dict = self.__class__.__name__ if "mel_filters" in output: del output["mel_filters"] if "mel_filters_slaney" in output: del output["mel_filters_slaney"] return output def _A ( self : Optional[Any] , A : np.array , A : Optional[np.array] = None ): _UpperCAmelCase : Dict = spectrogram( A , window_function(self.fft_window_size , "hann" ) , frame_length=self.fft_window_size , hop_length=self.hop_length , power=2.0 , mel_filters=A , log_mel="dB" , ) return log_mel_spectrogram.T def _A ( self : str , A : str , A : List[str] , A : List[Any] ): _UpperCAmelCase : List[str] = np.array_split(list(range(0 , total_frames - chunk_frames + 1 ) ) , 3 ) if len(ranges[1] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Optional[Any] = [0] if len(ranges[2] ) == 0: # if the audio is too short, we just use the first chunk _UpperCAmelCase : Tuple = [0] # randomly choose index for each part _UpperCAmelCase : Dict = np.random.choice(ranges[0] ) _UpperCAmelCase : str = np.random.choice(ranges[1] ) _UpperCAmelCase : Tuple = np.random.choice(ranges[2] ) _UpperCAmelCase : str = mel[idx_front : idx_front + chunk_frames, :] _UpperCAmelCase : str = mel[idx_middle : idx_middle + chunk_frames, :] _UpperCAmelCase : List[Any] = mel[idx_back : idx_back + chunk_frames, :] _UpperCAmelCase : Dict = torch.tensor(mel[None, None, :] ) _UpperCAmelCase : Optional[Any] = torch.nn.functional.interpolate( A , size=[chunk_frames, 64] , mode="bilinear" , align_corners=A ) _UpperCAmelCase : List[str] = mel_shrink[0][0].numpy() _UpperCAmelCase : str = np.stack([mel_shrink, mel_chunk_front, mel_chunk_middle, mel_chunk_back] , axis=0 ) return mel_fusion def _A ( self : List[Any] , A : np.array , A : List[str] , A : Any , A : Optional[int] ): if waveform.shape[0] > max_length: if truncation == "rand_trunc": _UpperCAmelCase : int = True # random crop to max_length (for compatibility) -> this should be handled by self.pad _UpperCAmelCase : str = len(A ) - max_length _UpperCAmelCase : str = np.random.randint(0 , overflow + 1 ) _UpperCAmelCase : int = waveform[idx : idx + max_length] _UpperCAmelCase : Any = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] elif truncation == "fusion": _UpperCAmelCase : Tuple = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : List[str] = max_length // self.hop_length + 1 # the +1 related to how the spectrogram is computed _UpperCAmelCase : Optional[Any] = mel.shape[0] if chunk_frames == total_frames: # there is a corner case where the audio length is larger than max_length but smaller than max_length+hop_length. # In this case, we just use the whole audio. _UpperCAmelCase : Any = np.stack([mel, mel, mel, mel] , axis=0 ) _UpperCAmelCase : int = False else: _UpperCAmelCase : Tuple = self._random_mel_fusion(A , A , A ) _UpperCAmelCase : Any = True else: raise NotImplementedError(F"""data_truncating {truncation} not implemented""" ) else: _UpperCAmelCase : Optional[Any] = False # only use repeat as a new possible value for padding. you repeat the audio before applying the usual max_length padding if waveform.shape[0] < max_length: if padding == "repeat": _UpperCAmelCase : str = int(max_length / len(A ) ) _UpperCAmelCase : Dict = np.stack(np.tile(A , n_repeat + 1 ) )[:max_length] if padding == "repeatpad": _UpperCAmelCase : Dict = int(max_length / len(A ) ) _UpperCAmelCase : List[str] = np.stack(np.tile(A , A ) ) _UpperCAmelCase : Optional[Any] = np.pad(A , (0, max_length - waveform.shape[0]) , mode="constant" , constant_values=0 ) if truncation == "fusion": _UpperCAmelCase : str = self._np_extract_fbank_features(A , self.mel_filters ) _UpperCAmelCase : Optional[int] = np.stack([input_mel, input_mel, input_mel, input_mel] , axis=0 ) else: _UpperCAmelCase : List[str] = self._np_extract_fbank_features(A , self.mel_filters_slaney )[None, :] return input_mel, longer def __call__( self : Union[str, Any] , A : Union[np.ndarray, List[float], List[np.ndarray], List[List[float]]] , A : str = None , A : Optional[str] = None , A : Optional[int] = None , A : Optional[int] = None , A : Optional[Union[str, TensorType]] = None , **A : List[str] , ): _UpperCAmelCase : int = truncation if truncation is not None else self.truncation _UpperCAmelCase : Optional[int] = padding if padding else self.padding if sampling_rate is not None: if sampling_rate != self.sampling_rate: raise ValueError( F"""The model corresponding to this feature extractor: {self.__class__.__name__} was trained using a""" F""" sampling rate of {self.sampling_rate}. Please make sure that the provided `raw_speech` input""" F""" was sampled with {self.sampling_rate} and not {sampling_rate}.""" ) else: logger.warning( "It is strongly recommended to pass the `sampling_rate` argument to this function. " "Failing to do so can result in silent errors that might be hard to debug." ) _UpperCAmelCase : Any = isinstance(A , np.ndarray ) and len(raw_speech.shape ) > 1 if is_batched_numpy and len(raw_speech.shape ) > 2: raise ValueError(F"""Only mono-channel audio is supported for input to {self}""" ) _UpperCAmelCase : Optional[Any] = is_batched_numpy or ( isinstance(A , (list, tuple) ) and (isinstance(raw_speech[0] , (np.ndarray, tuple, list) )) ) if is_batched: _UpperCAmelCase : int = [np.asarray(A , dtype=np.floataa ) for speech in raw_speech] elif not is_batched and not isinstance(A , np.ndarray ): _UpperCAmelCase : List[str] = np.asarray(A , dtype=np.floataa ) elif isinstance(A , np.ndarray ) and raw_speech.dtype is np.dtype(np.floataa ): _UpperCAmelCase : Any = raw_speech.astype(np.floataa ) # always return batch if not is_batched: _UpperCAmelCase : List[str] = [np.asarray(A )] # convert to mel spectrogram, truncate and pad if needed. _UpperCAmelCase : Dict = [ self._get_input_mel(A , max_length if max_length else self.nb_max_samples , A , A ) for waveform in raw_speech ] _UpperCAmelCase : int = [] _UpperCAmelCase : Optional[Any] = [] for mel, longer in padded_inputs: input_mel.append(A ) is_longer.append(A ) if truncation == "fusion" and sum(A ) == 0: # if no audio is longer than 10s, then randomly select one audio to be longer _UpperCAmelCase : Union[str, Any] = np.random.randint(0 , len(A ) ) _UpperCAmelCase : Optional[Any] = True if isinstance(input_mel[0] , A ): _UpperCAmelCase : List[str] = [np.asarray(A , dtype=np.floataa ) for feature in input_mel] # is_longer is a list of bool _UpperCAmelCase : Tuple = [[longer] for longer in is_longer] _UpperCAmelCase : Optional[Any] = {"input_features": input_mel, "is_longer": is_longer} _UpperCAmelCase : Tuple = BatchFeature(A ) if return_tensors is not None: _UpperCAmelCase : List[Any] = input_features.convert_to_tensors(A ) return input_features
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from __future__ import annotations __A =list[list[int]] # assigning initial values to the grid __A =[ [3, 0, 6, 5, 0, 8, 4, 0, 0], [5, 2, 0, 0, 0, 0, 0, 0, 0], [0, 8, 7, 0, 0, 0, 0, 3, 1], [0, 0, 3, 0, 1, 0, 0, 8, 0], [9, 0, 0, 8, 6, 3, 0, 0, 5], [0, 5, 0, 0, 9, 0, 6, 0, 0], [1, 3, 0, 0, 0, 0, 2, 5, 0], [0, 0, 0, 0, 0, 0, 0, 7, 4], [0, 0, 5, 2, 0, 6, 3, 0, 0], ] # a grid with no solution __A =[ [5, 0, 6, 5, 0, 8, 4, 0, 3], [5, 2, 0, 0, 0, 0, 0, 0, 2], [1, 8, 7, 0, 0, 0, 0, 3, 1], [0, 0, 3, 0, 1, 0, 0, 8, 0], [9, 0, 0, 8, 6, 3, 0, 0, 5], [0, 5, 0, 0, 9, 0, 6, 0, 0], [1, 3, 0, 0, 0, 0, 2, 5, 0], [0, 0, 0, 0, 0, 0, 0, 7, 4], [0, 0, 5, 2, 0, 6, 3, 0, 0], ] def lowerCamelCase_ ( lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__ ): for i in range(9 ): if grid[row][i] == n or grid[i][column] == n: return False for i in range(3 ): for j in range(3 ): if grid[(row - row % 3) + i][(column - column % 3) + j] == n: return False return True def lowerCamelCase_ ( lowerCamelCase__ ): for i in range(9 ): for j in range(9 ): if grid[i][j] == 0: return i, j return None def lowerCamelCase_ ( lowerCamelCase__ ): if location := find_empty_location(lowerCamelCase__ ): lowerCamelCase_ , lowerCamelCase_ = location else: # If the location is ``None``, then the grid is solved. return grid for digit in range(1 , 1_0 ): if is_safe(lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__ , lowerCamelCase__ ): lowerCamelCase_ = digit if sudoku(lowerCamelCase__ ) is not None: return grid lowerCamelCase_ = 0 return None def lowerCamelCase_ ( lowerCamelCase__ ): for row in grid: for cell in row: print(lowerCamelCase__ , end=" " ) print() if __name__ == "__main__": # make a copy of grid so that you can compare with the unmodified grid for example_grid in (initial_grid, no_solution): print('''\nExample grid:\n''' + '''=''' * 2_0) print_solution(example_grid) print('''\nExample grid solution:''') __A =sudoku(example_grid) if solution is not None: print_solution(solution) else: print('''Cannot find a solution.''')
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'''simple docstring''' from typing import TYPE_CHECKING from ...file_utils import _LazyModule, is_tokenizers_available, is_torch_available from ...utils import OptionalDependencyNotAvailable __SCREAMING_SNAKE_CASE : Optional[int] = {"""configuration_gpt_neox""": ["""GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP""", """GPTNeoXConfig"""]} try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Tuple = ["""GPTNeoXTokenizerFast"""] try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __SCREAMING_SNAKE_CASE : Dict = [ """GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST""", """GPTNeoXForCausalLM""", """GPTNeoXForQuestionAnswering""", """GPTNeoXForSequenceClassification""", """GPTNeoXForTokenClassification""", """GPTNeoXLayer""", """GPTNeoXModel""", """GPTNeoXPreTrainedModel""", ] if TYPE_CHECKING: from .configuration_gpt_neox import GPT_NEOX_PRETRAINED_CONFIG_ARCHIVE_MAP, GPTNeoXConfig try: if not is_tokenizers_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .tokenization_gpt_neox_fast import GPTNeoXTokenizerFast try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_gpt_neox import ( GPT_NEOX_PRETRAINED_MODEL_ARCHIVE_LIST, GPTNeoXForCausalLM, GPTNeoXForQuestionAnswering, GPTNeoXForSequenceClassification, GPTNeoXForTokenClassification, GPTNeoXLayer, GPTNeoXModel, GPTNeoXPreTrainedModel, ) else: import sys __SCREAMING_SNAKE_CASE : Any = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
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# Copyright 2023 The HuggingFace Inc. 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. import torch from ..models.speechta import SpeechTaForTextToSpeech, SpeechTaHifiGan, SpeechTaProcessor from ..utils import is_datasets_available from .base import PipelineTool if is_datasets_available(): from datasets import load_dataset class __snake_case ( lowerCAmelCase ): _a : Union[str, Any]= "microsoft/speecht5_tts" _a : Tuple= ( "This is a tool that reads an English text out loud. It takes an input named `text` which should contain the " "text to read (in English) and returns a waveform object containing the sound." ) _a : Dict= "text_reader" _a : Optional[Any]= SpeechTaProcessor _a : Tuple= SpeechTaForTextToSpeech _a : Optional[int]= SpeechTaHifiGan _a : Union[str, Any]= ["text"] _a : Optional[int]= ["audio"] def _SCREAMING_SNAKE_CASE ( self ): '''simple docstring''' if self.post_processor is None: lowercase : Any = """microsoft/speecht5_hifigan""" super().setup() def _SCREAMING_SNAKE_CASE ( self ,snake_case ,snake_case=None ): '''simple docstring''' lowercase : int = self.pre_processor(text=snake_case ,return_tensors="""pt""" ,truncation=snake_case ) if speaker_embeddings is None: if not is_datasets_available(): raise ImportError("""Datasets needs to be installed if not passing speaker embeddings.""" ) lowercase : Tuple = load_dataset("""Matthijs/cmu-arctic-xvectors""" ,split="""validation""" ) lowercase : List[str] = torch.tensor(embeddings_dataset[7305]["""xvector"""] ).unsqueeze(0 ) return {"input_ids": inputs["input_ids"], "speaker_embeddings": speaker_embeddings} def _SCREAMING_SNAKE_CASE ( self ,snake_case ): '''simple docstring''' with torch.no_grad(): return self.model.generate_speech(**snake_case ) def _SCREAMING_SNAKE_CASE ( self ,snake_case ): '''simple docstring''' with torch.no_grad(): return self.post_processor(snake_case ).cpu().detach()
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'''simple docstring''' class lowerCamelCase_ : '''simple docstring''' def __init__( self : Tuple , A : Any , A : str , A : Union[str, Any] ): _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = graph self._normalize_graph(A , A ) _UpperCAmelCase : List[str] = len(A ) _UpperCAmelCase : Tuple = None def _A ( self : Any , A : List[Any] , A : str ): if sources is int: _UpperCAmelCase : List[Any] = [sources] if sinks is int: _UpperCAmelCase : List[Any] = [sinks] if len(A ) == 0 or len(A ) == 0: return _UpperCAmelCase : str = sources[0] _UpperCAmelCase : Union[str, Any] = sinks[0] # make fake vertex if there are more # than one source or sink if len(A ) > 1 or len(A ) > 1: _UpperCAmelCase : Dict = 0 for i in sources: max_input_flow += sum(self.graph[i] ) _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.insert(0 , 0 ) self.graph.insert(0 , [0] * size ) for i in sources: _UpperCAmelCase : Optional[Any] = max_input_flow _UpperCAmelCase : List[str] = 0 _UpperCAmelCase : str = len(self.graph ) + 1 for room in self.graph: room.append(0 ) self.graph.append([0] * size ) for i in sinks: _UpperCAmelCase : Dict = max_input_flow _UpperCAmelCase : List[Any] = size - 1 def _A ( self : Union[str, Any] ): if self.maximum_flow_algorithm is None: raise Exception("You need to set maximum flow algorithm before." ) if self.source_index is None or self.sink_index is None: return 0 self.maximum_flow_algorithm.execute() return self.maximum_flow_algorithm.getMaximumFlow() def _A ( self : Tuple , A : Dict ): _UpperCAmelCase : str = algorithm(self ) class lowerCamelCase_ : '''simple docstring''' def __init__( self : Any , A : str ): _UpperCAmelCase : Optional[int] = flow_network _UpperCAmelCase : Any = flow_network.verticesCount _UpperCAmelCase : List[str] = flow_network.sourceIndex _UpperCAmelCase : Union[str, Any] = flow_network.sinkIndex # it's just a reference, so you shouldn't change # it in your algorithms, use deep copy before doing that _UpperCAmelCase : Any = flow_network.graph _UpperCAmelCase : Union[str, Any] = False def _A ( self : List[str] ): if not self.executed: self._algorithm() _UpperCAmelCase : int = True def _A ( self : List[Any] ): pass class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[str, Any] ): super().__init__(A ) # use this to save your result _UpperCAmelCase : Any = -1 def _A ( self : Union[str, Any] ): if not self.executed: raise Exception("You should execute algorithm before using its result!" ) return self.maximum_flow class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Tuple , A : int ): super().__init__(A ) _UpperCAmelCase : List[str] = [[0] * self.verticies_count for i in range(self.verticies_count )] _UpperCAmelCase : Union[str, Any] = [0] * self.verticies_count _UpperCAmelCase : int = [0] * self.verticies_count def _A ( self : Dict ): _UpperCAmelCase : Dict = self.verticies_count # push some substance to graph for nextvertex_index, bandwidth in enumerate(self.graph[self.source_index] ): self.preflow[self.source_index][nextvertex_index] += bandwidth self.preflow[nextvertex_index][self.source_index] -= bandwidth self.excesses[nextvertex_index] += bandwidth # Relabel-to-front selection rule _UpperCAmelCase : Optional[int] = [ i for i in range(self.verticies_count ) if i != self.source_index and i != self.sink_index ] # move through list _UpperCAmelCase : Any = 0 while i < len(A ): _UpperCAmelCase : int = vertices_list[i] _UpperCAmelCase : int = self.heights[vertex_index] self.process_vertex(A ) if self.heights[vertex_index] > previous_height: # if it was relabeled, swap elements # and start from 0 index vertices_list.insert(0 , vertices_list.pop(A ) ) _UpperCAmelCase : Union[str, Any] = 0 else: i += 1 _UpperCAmelCase : List[Any] = sum(self.preflow[self.source_index] ) def _A ( self : Union[str, Any] , A : str ): while self.excesses[vertex_index] > 0: for neighbour_index in range(self.verticies_count ): # if it's neighbour and current vertex is higher if ( self.graph[vertex_index][neighbour_index] - self.preflow[vertex_index][neighbour_index] > 0 and self.heights[vertex_index] > self.heights[neighbour_index] ): self.push(A , A ) self.relabel(A ) def _A ( self : int , A : Dict , A : List[str] ): _UpperCAmelCase : int = min( self.excesses[from_index] , self.graph[from_index][to_index] - self.preflow[from_index][to_index] , ) self.preflow[from_index][to_index] += preflow_delta self.preflow[to_index][from_index] -= preflow_delta self.excesses[from_index] -= preflow_delta self.excesses[to_index] += preflow_delta def _A ( self : Optional[int] , A : Union[str, Any] ): _UpperCAmelCase : str = None for to_index in range(self.verticies_count ): if ( self.graph[vertex_index][to_index] - self.preflow[vertex_index][to_index] > 0 ) and (min_height is None or self.heights[to_index] < min_height): _UpperCAmelCase : Tuple = self.heights[to_index] if min_height is not None: _UpperCAmelCase : Optional[Any] = min_height + 1 if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[int] = [0] __SCREAMING_SNAKE_CASE : Union[str, Any] = [3] # graph = [ # [0, 0, 4, 6, 0, 0], # [0, 0, 5, 2, 0, 0], # [0, 0, 0, 0, 4, 4], # [0, 0, 0, 0, 6, 6], # [0, 0, 0, 0, 0, 0], # [0, 0, 0, 0, 0, 0], # ] __SCREAMING_SNAKE_CASE : List[Any] = [[0, 7, 0, 0], [0, 0, 6, 0], [0, 0, 0, 8], [9, 0, 0, 0]] # prepare our network __SCREAMING_SNAKE_CASE : Union[str, Any] = FlowNetwork(graph, entrances, exits) # set algorithm flow_network.set_maximum_flow_algorithm(PushRelabelExecutor) # and calculate __SCREAMING_SNAKE_CASE : Optional[Any] = flow_network.find_maximum_flow() print(F'maximum flow is {maximum_flow}')
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import gc import random import unittest import numpy as np import torch from transformers import CLIPTextConfig, CLIPTextModel, CLIPTokenizer from diffusers import AutoencoderKL, CycleDiffusionPipeline, DDIMScheduler, UNetaDConditionModel from diffusers.utils import floats_tensor, load_image, load_numpy, slow, torch_device from diffusers.utils.testing_utils import enable_full_determinism, require_torch_gpu, skip_mps from ..pipeline_params import ( IMAGE_TO_IMAGE_IMAGE_PARAMS, TEXT_GUIDED_IMAGE_VARIATION_BATCH_PARAMS, TEXT_GUIDED_IMAGE_VARIATION_PARAMS, ) from ..test_pipelines_common import PipelineLatentTesterMixin, PipelineTesterMixin enable_full_determinism() class _lowerCamelCase( _a, _a, unittest.TestCase ): lowercase_ : List[str] = CycleDiffusionPipeline lowercase_ : Dict = TEXT_GUIDED_IMAGE_VARIATION_PARAMS - { """negative_prompt""", """height""", """width""", """negative_prompt_embeds""", } lowercase_ : int = PipelineTesterMixin.required_optional_params - {"""latents"""} lowercase_ : Any = TEXT_GUIDED_IMAGE_VARIATION_BATCH_PARAMS.union({"""source_prompt"""} ) lowercase_ : Any = IMAGE_TO_IMAGE_IMAGE_PARAMS lowercase_ : Optional[int] = IMAGE_TO_IMAGE_IMAGE_PARAMS def UpperCamelCase ( self) -> Union[str, Any]: """simple docstring""" torch.manual_seed(0) _lowercase : int = UNetaDConditionModel( block_out_channels=(32, 64), layers_per_block=2, sample_size=32, in_channels=4, out_channels=4, down_block_types=('DownBlock2D', 'CrossAttnDownBlock2D'), up_block_types=('CrossAttnUpBlock2D', 'UpBlock2D'), cross_attention_dim=32, ) _lowercase : List[str] = DDIMScheduler( beta_start=0.0_0_0_8_5, beta_end=0.0_1_2, beta_schedule='scaled_linear', num_train_timesteps=10_00, clip_sample=lowerCamelCase, set_alpha_to_one=lowerCamelCase, ) torch.manual_seed(0) _lowercase : List[Any] = AutoencoderKL( block_out_channels=[32, 64], in_channels=3, out_channels=3, down_block_types=['DownEncoderBlock2D', 'DownEncoderBlock2D'], up_block_types=['UpDecoderBlock2D', 'UpDecoderBlock2D'], latent_channels=4, ) torch.manual_seed(0) _lowercase : List[str] = CLIPTextConfig( bos_token_id=0, eos_token_id=2, hidden_size=32, intermediate_size=37, layer_norm_eps=1E-05, num_attention_heads=4, num_hidden_layers=5, pad_token_id=1, vocab_size=10_00, ) _lowercase : List[Any] = CLIPTextModel(lowerCamelCase) _lowercase : List[str] = CLIPTokenizer.from_pretrained('hf-internal-testing/tiny-random-clip') _lowercase : int = { 'unet': unet, 'scheduler': scheduler, 'vae': vae, 'text_encoder': text_encoder, 'tokenizer': tokenizer, 'safety_checker': None, 'feature_extractor': None, } return components def UpperCamelCase ( self, lowerCamelCase, lowerCamelCase=0) -> str: """simple docstring""" _lowercase : Dict = floats_tensor((1, 3, 32, 32), rng=random.Random(lowerCamelCase)).to(lowerCamelCase) _lowercase : List[Any] = image / 2 + 0.5 if str(lowerCamelCase).startswith('mps'): _lowercase : str = torch.manual_seed(lowerCamelCase) else: _lowercase : List[str] = torch.Generator(device=lowerCamelCase).manual_seed(lowerCamelCase) _lowercase : str = { 'prompt': 'An astronaut riding an elephant', 'source_prompt': 'An astronaut riding a horse', 'image': image, 'generator': generator, 'num_inference_steps': 2, 'eta': 0.1, 'strength': 0.8, 'guidance_scale': 3, 'source_guidance_scale': 1, 'output_type': 'numpy', } return inputs def UpperCamelCase ( self) -> List[Any]: """simple docstring""" _lowercase : Any = 'cpu' # ensure determinism for the device-dependent torch.Generator _lowercase : str = self.get_dummy_components() _lowercase : str = CycleDiffusionPipeline(**lowerCamelCase) _lowercase : List[Any] = pipe.to(lowerCamelCase) pipe.set_progress_bar_config(disable=lowerCamelCase) _lowercase : Optional[Any] = self.get_dummy_inputs(lowerCamelCase) _lowercase : Dict = pipe(**lowerCamelCase) _lowercase : Any = output.images _lowercase : Any = images[0, -3:, -3:, -1] assert images.shape == (1, 32, 32, 3) _lowercase : Tuple = np.array([0.4_4_5_9, 0.4_9_4_3, 0.4_5_4_4, 0.6_6_4_3, 0.5_4_7_4, 0.4_3_2_7, 0.5_7_0_1, 0.5_9_5_9, 0.5_1_7_9]) assert np.abs(image_slice.flatten() - expected_slice).max() < 1E-2 @unittest.skipIf(torch_device != 'cuda', 'This test requires a GPU') def UpperCamelCase ( self) -> List[str]: """simple docstring""" _lowercase : List[Any] = self.get_dummy_components() for name, module in components.items(): if hasattr(lowerCamelCase, 'half'): _lowercase : Optional[int] = module.half() _lowercase : List[str] = CycleDiffusionPipeline(**lowerCamelCase) _lowercase : int = pipe.to(lowerCamelCase) pipe.set_progress_bar_config(disable=lowerCamelCase) _lowercase : List[Any] = self.get_dummy_inputs(lowerCamelCase) _lowercase : Optional[int] = pipe(**lowerCamelCase) _lowercase : List[Any] = output.images _lowercase : Optional[Any] = images[0, -3:, -3:, -1] assert images.shape == (1, 32, 32, 3) _lowercase : List[Any] = np.array([0.3_5_0_6, 0.4_5_4_3, 0.4_4_6, 0.4_5_7_5, 0.5_1_9_5, 0.4_1_5_5, 0.5_2_7_3, 0.5_1_8, 0.4_1_1_6]) assert np.abs(image_slice.flatten() - expected_slice).max() < 1E-2 @skip_mps def UpperCamelCase ( self) -> Union[str, Any]: """simple docstring""" return super().test_save_load_local() @unittest.skip('non-deterministic pipeline') def UpperCamelCase ( self) -> Union[str, Any]: """simple docstring""" return super().test_inference_batch_single_identical() @skip_mps def UpperCamelCase ( self) -> Union[str, Any]: """simple docstring""" return super().test_dict_tuple_outputs_equivalent() @skip_mps def UpperCamelCase ( self) -> Optional[int]: """simple docstring""" return super().test_save_load_optional_components() @skip_mps def UpperCamelCase ( self) -> Optional[Any]: """simple docstring""" return super().test_attention_slicing_forward_pass() @slow @require_torch_gpu class _lowerCamelCase( unittest.TestCase ): def UpperCamelCase ( self) -> Optional[int]: """simple docstring""" super().tearDown() gc.collect() torch.cuda.empty_cache() def UpperCamelCase ( self) -> List[Any]: """simple docstring""" _lowercase : Union[str, Any] = load_image( 'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main' '/cycle-diffusion/black_colored_car.png') _lowercase : Any = load_numpy( 'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main/cycle-diffusion/blue_colored_car_fp16.npy') _lowercase : str = init_image.resize((5_12, 5_12)) _lowercase : Dict = 'CompVis/stable-diffusion-v1-4' _lowercase : Optional[int] = DDIMScheduler.from_pretrained(lowerCamelCase, subfolder='scheduler') _lowercase : Optional[int] = CycleDiffusionPipeline.from_pretrained( lowerCamelCase, scheduler=lowerCamelCase, safety_checker=lowerCamelCase, torch_dtype=torch.floataa, revision='fp16') pipe.to(lowerCamelCase) pipe.set_progress_bar_config(disable=lowerCamelCase) pipe.enable_attention_slicing() _lowercase : int = 'A black colored car' _lowercase : Union[str, Any] = 'A blue colored car' _lowercase : Tuple = torch.manual_seed(0) _lowercase : Tuple = pipe( prompt=lowerCamelCase, source_prompt=lowerCamelCase, image=lowerCamelCase, num_inference_steps=1_00, eta=0.1, strength=0.8_5, guidance_scale=3, source_guidance_scale=1, generator=lowerCamelCase, output_type='np', ) _lowercase : Optional[int] = output.images # the values aren't exactly equal, but the images look the same visually assert np.abs(image - expected_image).max() < 5E-1 def UpperCamelCase ( self) -> Optional[Any]: """simple docstring""" _lowercase : List[Any] = load_image( 'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main' '/cycle-diffusion/black_colored_car.png') _lowercase : Union[str, Any] = load_numpy( 'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main/cycle-diffusion/blue_colored_car.npy') _lowercase : Optional[Any] = init_image.resize((5_12, 5_12)) _lowercase : Optional[Any] = 'CompVis/stable-diffusion-v1-4' _lowercase : Tuple = DDIMScheduler.from_pretrained(lowerCamelCase, subfolder='scheduler') _lowercase : Any = CycleDiffusionPipeline.from_pretrained(lowerCamelCase, scheduler=lowerCamelCase, safety_checker=lowerCamelCase) pipe.to(lowerCamelCase) pipe.set_progress_bar_config(disable=lowerCamelCase) pipe.enable_attention_slicing() _lowercase : List[str] = 'A black colored car' _lowercase : Tuple = 'A blue colored car' _lowercase : int = torch.manual_seed(0) _lowercase : Tuple = pipe( prompt=lowerCamelCase, source_prompt=lowerCamelCase, image=lowerCamelCase, num_inference_steps=1_00, eta=0.1, strength=0.8_5, guidance_scale=3, source_guidance_scale=1, generator=lowerCamelCase, output_type='np', ) _lowercase : Tuple = output.images assert np.abs(image - expected_image).max() < 2E-2
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str ) -> float: """simple docstring""" def get_matched_characters(_UpperCAmelCase : str , _UpperCAmelCase : str ) -> str: _UpperCAmelCase : Tuple = [] _UpperCAmelCase : Dict = min(len(_stra ) , len(_stra ) ) // 2 for i, l in enumerate(_stra ): _UpperCAmelCase : int = int(max(0 , i - limit ) ) _UpperCAmelCase : Any = int(min(i + limit + 1 , len(_stra ) ) ) if l in _stra[left:right]: matched.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = F"""{_stra[0:_stra.index(_UpperCAmelCase )]} {_stra[_stra.index(_UpperCAmelCase ) + 1:]}""" return "".join(_UpperCAmelCase ) # matching characters _UpperCAmelCase : Union[str, Any] = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = get_matched_characters(_UpperCAmelCase , _UpperCAmelCase ) _UpperCAmelCase : Tuple = len(_UpperCAmelCase ) # transposition _UpperCAmelCase : Optional[Any] = ( len([(ca, ca) for ca, ca in zip(_UpperCAmelCase , _UpperCAmelCase ) if ca != ca] ) // 2 ) if not match_count: _UpperCAmelCase : Dict = 0.0 else: _UpperCAmelCase : Optional[int] = ( 1 / 3 * ( match_count / len(_UpperCAmelCase ) + match_count / len(_UpperCAmelCase ) + (match_count - transpositions) / match_count ) ) # common prefix up to 4 characters _UpperCAmelCase : str = 0 for ca, ca in zip(stra[:4] , stra[:4] ): if ca == ca: prefix_len += 1 else: break return jaro + 0.1 * prefix_len * (1 - jaro) if __name__ == "__main__": import doctest doctest.testmod() print(jaro_winkler("""hello""", """world"""))
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'''simple docstring''' import pytest from datasets.splits import SplitDict, SplitInfo from datasets.utils.py_utils import asdict @pytest.mark.parametrize( "split_dict" , [ SplitDict(), SplitDict({"train": SplitInfo(name="train" , num_bytes=1337 , num_examples=42 , dataset_name="my_dataset" )} ), SplitDict({"train": SplitInfo(name="train" , num_bytes=1337 , num_examples=42 )} ), SplitDict({"train": SplitInfo()} ), ] , ) def UpperCAmelCase_ ( __lowercase : SplitDict ) -> int: '''simple docstring''' _UpperCAmelCase = split_dict._to_yaml_list() assert len(__lowercase ) == len(__lowercase ) _UpperCAmelCase = SplitDict._from_yaml_list(__lowercase ) for split_name, split_info in split_dict.items(): # dataset_name field is deprecated, and is therefore not part of the YAML dump _UpperCAmelCase = None # the split name of split_dict takes over the name of the split info object _UpperCAmelCase = split_name assert split_dict == reloaded @pytest.mark.parametrize( "split_info" , [SplitInfo(), SplitInfo(dataset_name=__lowercase ), SplitInfo(dataset_name="my_dataset" )] ) def UpperCAmelCase_ ( __lowercase : List[Any] ) -> Dict: '''simple docstring''' _UpperCAmelCase = asdict(SplitDict({"train": split_info} ) ) assert "dataset_name" in split_dict_asdict["train"] assert split_dict_asdict["train"]["dataset_name"] == split_info.dataset_name
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'''simple docstring''' import math from typing import List, Optional, Tuple, Union import numpy as np import torch from ..configuration_utils import ConfigMixin, register_to_config from .scheduling_utils import SchedulerMixin, SchedulerOutput class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = 1 @register_to_config def __init__( self : Optional[int] , A : int = 1000 , A : Optional[Union[np.ndarray, List[float]]] = None ): # set `betas`, `alphas`, `timesteps` self.set_timesteps(A ) # standard deviation of the initial noise distribution _UpperCAmelCase : int = 1.0 # For now we only support F-PNDM, i.e. the runge-kutta method # For more information on the algorithm please take a look at the paper: https://arxiv.org/pdf/2202.09778.pdf # mainly at formula (9), (12), (13) and the Algorithm 2. _UpperCAmelCase : int = 4 # running values _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : int , A : Union[str, torch.device] = None ): _UpperCAmelCase : int = num_inference_steps _UpperCAmelCase : Union[str, Any] = torch.linspace(1 , 0 , num_inference_steps + 1 )[:-1] _UpperCAmelCase : Any = torch.cat([steps, torch.tensor([0.0] )] ) if self.config.trained_betas is not None: _UpperCAmelCase : str = torch.tensor(self.config.trained_betas , dtype=torch.floataa ) else: _UpperCAmelCase : Dict = torch.sin(steps * math.pi / 2 ) ** 2 _UpperCAmelCase : List[Any] = (1.0 - self.betas**2) ** 0.5 _UpperCAmelCase : List[str] = (torch.atana(self.betas , self.alphas ) / math.pi * 2)[:-1] _UpperCAmelCase : Dict = timesteps.to(A ) _UpperCAmelCase : Dict = [] def _A ( self : Optional[int] , A : torch.FloatTensor , A : int , A : torch.FloatTensor , A : bool = True , ): if self.num_inference_steps is None: raise ValueError( "Number of inference steps is 'None', you need to run 'set_timesteps' after creating the scheduler" ) _UpperCAmelCase : Tuple = (self.timesteps == timestep).nonzero().item() _UpperCAmelCase : Optional[Any] = timestep_index + 1 _UpperCAmelCase : int = sample * self.betas[timestep_index] + model_output * self.alphas[timestep_index] self.ets.append(A ) if len(self.ets ) == 1: _UpperCAmelCase : List[Any] = self.ets[-1] elif len(self.ets ) == 2: _UpperCAmelCase : str = (3 * self.ets[-1] - self.ets[-2]) / 2 elif len(self.ets ) == 3: _UpperCAmelCase : Tuple = (23 * self.ets[-1] - 16 * self.ets[-2] + 5 * self.ets[-3]) / 12 else: _UpperCAmelCase : Union[str, Any] = (1 / 24) * (55 * self.ets[-1] - 59 * self.ets[-2] + 37 * self.ets[-3] - 9 * self.ets[-4]) _UpperCAmelCase : Union[str, Any] = self._get_prev_sample(A , A , A , A ) if not return_dict: return (prev_sample,) return SchedulerOutput(prev_sample=A ) def _A ( self : Union[str, Any] , A : torch.FloatTensor , *A : Union[str, Any] , **A : Dict ): return sample def _A ( self : Optional[Any] , A : Optional[int] , A : int , A : Optional[Any] , A : List[str] ): _UpperCAmelCase : List[str] = self.alphas[timestep_index] _UpperCAmelCase : List[Any] = self.betas[timestep_index] _UpperCAmelCase : Optional[Any] = self.alphas[prev_timestep_index] _UpperCAmelCase : Dict = self.betas[prev_timestep_index] _UpperCAmelCase : Tuple = (sample - sigma * ets) / max(A , 1E-8 ) _UpperCAmelCase : List[str] = next_alpha * pred + ets * next_sigma return prev_sample def __len__( self : Union[str, Any] ): return self.config.num_train_timesteps
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'''simple docstring''' import sys from collections import defaultdict class SCREAMING_SNAKE_CASE: """simple docstring""" def __init__( self : Any ) -> str: UpperCAmelCase : Union[str, Any] = [] def A ( self : str , __snake_case : Any ) -> Optional[int]: return self.node_position[vertex] def A ( self : Dict , __snake_case : Optional[int] , __snake_case : Optional[Any] ) -> Union[str, Any]: UpperCAmelCase : Optional[Any] = pos def A ( self : Union[str, Any] , __snake_case : Optional[int] , __snake_case : Dict , __snake_case : Dict , __snake_case : str ) -> Dict: if start > size // 2 - 1: return else: if 2 * start + 2 >= size: UpperCAmelCase : Union[str, Any] = 2 * start + 1 else: if heap[2 * start + 1] < heap[2 * start + 2]: UpperCAmelCase : Tuple = 2 * start + 1 else: UpperCAmelCase : List[str] = 2 * start + 2 if heap[smallest_child] < heap[start]: UpperCAmelCase , UpperCAmelCase : str = heap[smallest_child], positions[smallest_child] UpperCAmelCase , UpperCAmelCase : str = ( heap[start], positions[start], ) UpperCAmelCase , UpperCAmelCase : Any = temp, tempa UpperCAmelCase : Union[str, Any] = self.get_position(positions[smallest_child] ) self.set_position( positions[smallest_child] , self.get_position(positions[start] ) ) self.set_position(positions[start] , __snake_case ) self.top_to_bottom(__snake_case , __snake_case , __snake_case , __snake_case ) def A ( self : Tuple , __snake_case : Any , __snake_case : Optional[Any] , __snake_case : Tuple , __snake_case : str ) -> Dict: UpperCAmelCase : Union[str, Any] = position[index] while index != 0: UpperCAmelCase : List[str] = int((index - 2) / 2 ) if index % 2 == 0 else int((index - 1) / 2 ) if val < heap[parent]: UpperCAmelCase : List[Any] = heap[parent] UpperCAmelCase : str = position[parent] self.set_position(position[parent] , __snake_case ) else: UpperCAmelCase : Optional[Any] = val UpperCAmelCase : Dict = temp self.set_position(__snake_case , __snake_case ) break UpperCAmelCase : Optional[int] = parent else: UpperCAmelCase : Any = val UpperCAmelCase : Optional[int] = temp self.set_position(__snake_case , 0 ) def A ( self : Optional[Any] , __snake_case : Union[str, Any] , __snake_case : List[Any] ) -> Any: UpperCAmelCase : Tuple = len(__snake_case ) // 2 - 1 for i in range(__snake_case , -1 , -1 ): self.top_to_bottom(__snake_case , __snake_case , len(__snake_case ) , __snake_case ) def A ( self : Dict , __snake_case : Optional[Any] , __snake_case : int ) -> int: UpperCAmelCase : List[Any] = positions[0] UpperCAmelCase : Optional[int] = sys.maxsize self.top_to_bottom(__snake_case , 0 , len(__snake_case ) , __snake_case ) return temp def snake_case_ ( _lowerCAmelCase : List[str] ) -> str: UpperCAmelCase : Union[str, Any] = Heap() UpperCAmelCase : str = [0] * len(_lowerCAmelCase ) UpperCAmelCase : str = [-1] * len(_lowerCAmelCase ) # Neighboring Tree Vertex of selected vertex # Minimum Distance of explored vertex with neighboring vertex of partial tree # formed in graph UpperCAmelCase : Optional[int] = [] # Heap of Distance of vertices from their neighboring vertex UpperCAmelCase : List[str] = [] for vertex in range(len(_lowerCAmelCase ) ): distance_tv.append(sys.maxsize ) positions.append(_lowerCAmelCase ) heap.node_position.append(_lowerCAmelCase ) UpperCAmelCase : List[str] = [] UpperCAmelCase : Tuple = 1 UpperCAmelCase : Union[str, Any] = sys.maxsize for neighbor, distance in adjacency_list[0]: UpperCAmelCase : List[Any] = 0 UpperCAmelCase : Tuple = distance heap.heapify(_lowerCAmelCase , _lowerCAmelCase ) for _ in range(1 , len(_lowerCAmelCase ) ): UpperCAmelCase : str = heap.delete_minimum(_lowerCAmelCase , _lowerCAmelCase ) if visited[vertex] == 0: tree_edges.append((nbr_tv[vertex], vertex) ) UpperCAmelCase : Optional[Any] = 1 for neighbor, distance in adjacency_list[vertex]: if ( visited[neighbor] == 0 and distance < distance_tv[heap.get_position(_lowerCAmelCase )] ): UpperCAmelCase : Tuple = distance heap.bottom_to_top( _lowerCAmelCase , heap.get_position(_lowerCAmelCase ) , _lowerCAmelCase , _lowerCAmelCase ) UpperCAmelCase : Optional[Any] = vertex return tree_edges if __name__ == "__main__": # pragma: no cover # < --------- Prims Algorithm --------- > UpperCamelCase__: Any = int(input("Enter number of edges: ").strip()) UpperCamelCase__: Any = defaultdict(list) for _ in range(edges_number): UpperCamelCase__: Tuple = [int(x) for x in input().strip().split()] adjacency_list[edge[0]].append([edge[1], edge[2]]) adjacency_list[edge[1]].append([edge[0], edge[2]]) print(prisms_algorithm(adjacency_list))
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'''simple docstring''' import numpy as np from matplotlib import pyplot as plt from sklearn.datasets import load_iris from sklearn.metrics import ConfusionMatrixDisplay from sklearn.model_selection import train_test_split from xgboost import XGBClassifier def UpperCamelCase_ ( _UpperCAmelCase : dict ) -> tuple: """simple docstring""" return (data["data"], data["target"]) def UpperCamelCase_ ( _UpperCAmelCase : np.ndarray , _UpperCAmelCase : np.ndarray ) -> XGBClassifier: """simple docstring""" _UpperCAmelCase : Any = XGBClassifier() classifier.fit(_UpperCAmelCase , _UpperCAmelCase ) return classifier def UpperCamelCase_ ( ) -> None: """simple docstring""" _UpperCAmelCase : List[str] = load_iris() _UpperCAmelCase , _UpperCAmelCase : Dict = data_handling(_UpperCAmelCase ) _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase : str = train_test_split( _UpperCAmelCase , _UpperCAmelCase , test_size=0.2_5 ) _UpperCAmelCase : Optional[Any] = iris["target_names"] # Create an XGBoost Classifier from the training data _UpperCAmelCase : Tuple = xgboost(_UpperCAmelCase , _UpperCAmelCase ) # Display the confusion matrix of the classifier with both training and test sets ConfusionMatrixDisplay.from_estimator( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , display_labels=_UpperCAmelCase , cmap="Blues" , normalize="true" , ) plt.title("Normalized Confusion Matrix - IRIS Dataset" ) plt.show() if __name__ == "__main__": import doctest doctest.testmod(verbose=True) main()
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import os import pytest from transformers.dynamic_module_utils import get_imports snake_case_ = '\nimport os\n' snake_case_ = '\ndef foo():\n import os\n return False\n' snake_case_ = '\ndef foo():\n def bar():\n if True:\n import os\n return False\n return bar()\n' snake_case_ = '\nimport os\n\ntry:\n import bar\nexcept ImportError:\n raise ValueError()\n' snake_case_ = '\nimport os\n\ndef foo():\n try:\n import bar\n except ImportError:\n raise ValueError()\n' snake_case_ = '\nimport os\n\ntry:\n import bar\nexcept (ImportError, AttributeError):\n raise ValueError()\n' snake_case_ = '\nimport os\n\ntry:\n import bar\nexcept ImportError as e:\n raise ValueError()\n' snake_case_ = '\nimport os\n\ntry:\n import bar\nexcept:\n raise ValueError()\n' snake_case_ = '\nimport os\n\ntry:\n import bar\n import baz\nexcept ImportError:\n raise ValueError()\n' snake_case_ = '\nimport os\n\ntry:\n import bar\n import baz\nexcept ImportError:\n x = 1\n raise ValueError()\n' snake_case_ = [ TOP_LEVEL_IMPORT, IMPORT_IN_FUNCTION, DEEPLY_NESTED_IMPORT, TOP_LEVEL_TRY_IMPORT, GENERIC_EXCEPT_IMPORT, MULTILINE_TRY_IMPORT, MULTILINE_BOTH_IMPORT, MULTIPLE_EXCEPTS_IMPORT, EXCEPT_AS_IMPORT, TRY_IMPORT_IN_FUNCTION, ] @pytest.mark.parametrize('''case''' , snake_case_ ) def lowerCamelCase__ ( snake_case_ : str , snake_case_ : Optional[int] ) -> Dict: __snake_case = os.path.join(snake_case_ , '''test_file.py''' ) with open(snake_case_ , '''w''' ) as _tmp_file: _tmp_file.write(snake_case_ ) __snake_case = get_imports(snake_case_ ) assert parsed_imports == ["os"]
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'''simple docstring''' import math import unittest from transformers import BioGptConfig, is_torch_available from transformers.testing_utils import require_torch, slow, torch_device from ...generation.test_utils import GenerationTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor, random_attention_mask from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import ( BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification, BioGptModel, BioGptTokenizer, ) from transformers.models.biogpt.modeling_biogpt import BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[Any] , A : Dict , A : Optional[Any]=13 , A : Optional[Any]=7 , A : Union[str, Any]=True , A : Optional[Any]=True , A : int=False , A : str=True , A : Optional[Any]=99 , A : Union[str, Any]=32 , A : int=5 , A : Tuple=4 , A : Union[str, Any]=37 , A : Dict="gelu" , A : Union[str, Any]=0.1 , A : str=0.1 , A : Union[str, Any]=512 , A : int=16 , A : List[str]=2 , A : Tuple=0.02 , A : int=3 , A : List[str]=4 , A : str=None , ): _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : int = seq_length _UpperCAmelCase : Union[str, Any] = is_training _UpperCAmelCase : Any = use_input_mask _UpperCAmelCase : Optional[Any] = use_token_type_ids _UpperCAmelCase : str = use_labels _UpperCAmelCase : Union[str, Any] = vocab_size _UpperCAmelCase : Tuple = hidden_size _UpperCAmelCase : Union[str, Any] = num_hidden_layers _UpperCAmelCase : Optional[Any] = num_attention_heads _UpperCAmelCase : Union[str, Any] = intermediate_size _UpperCAmelCase : Union[str, Any] = hidden_act _UpperCAmelCase : List[Any] = hidden_dropout_prob _UpperCAmelCase : List[Any] = attention_probs_dropout_prob _UpperCAmelCase : Optional[int] = max_position_embeddings _UpperCAmelCase : str = type_vocab_size _UpperCAmelCase : str = type_sequence_label_size _UpperCAmelCase : int = initializer_range _UpperCAmelCase : Optional[Any] = num_labels _UpperCAmelCase : List[str] = num_choices _UpperCAmelCase : List[str] = scope def _A ( self : Optional[int] ): _UpperCAmelCase : Dict = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) _UpperCAmelCase : Union[str, Any] = None if self.use_input_mask: _UpperCAmelCase : List[Any] = random_attention_mask([self.batch_size, self.seq_length] ) _UpperCAmelCase : Any = None if self.use_token_type_ids: _UpperCAmelCase : List[str] = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) _UpperCAmelCase : Optional[int] = None _UpperCAmelCase : Any = None _UpperCAmelCase : Optional[int] = None if self.use_labels: _UpperCAmelCase : Optional[Any] = ids_tensor([self.batch_size] , self.type_sequence_label_size ) _UpperCAmelCase : Tuple = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) _UpperCAmelCase : List[str] = ids_tensor([self.batch_size] , self.num_choices ) _UpperCAmelCase : List[Any] = self.get_config() return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels def _A ( self : Dict ): return BioGptConfig( vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , is_decoder=A , initializer_range=self.initializer_range , ) def _A ( self : int , A : List[Any] , A : Any , A : int , A : Union[str, Any] , A : Dict , A : List[Any] , A : Dict ): _UpperCAmelCase : List[str] = BioGptModel(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A ) _UpperCAmelCase : int = model(A ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def _A ( self : List[Any] , A : str , A : List[Any] , A : Dict , A : List[Any] , A : List[str] , A : Union[str, Any] , A : int , A : List[str] , A : Dict , ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(config=A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A , labels=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def _A ( self : List[Any] , A : str , A : str , A : str , A : Any , A : List[str] , *A : Optional[int] ): _UpperCAmelCase : str = BioGptModel(config=A ) model.to(A ) model.eval() # create attention mask _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) _UpperCAmelCase : Optional[int] = self.seq_length // 2 _UpperCAmelCase : List[Any] = 0 # first forward pass _UpperCAmelCase , _UpperCAmelCase : List[str] = model(A , attention_mask=A ).to_tuple() # create hypothetical next token and extent to next_input_ids _UpperCAmelCase : List[str] = ids_tensor((self.batch_size, 1) , config.vocab_size ) # change a random masked slice from input_ids _UpperCAmelCase : List[str] = ids_tensor((1,) , A ).item() + 1 _UpperCAmelCase : str = ids_tensor((self.batch_size, 1) , config.vocab_size ).squeeze(-1 ) _UpperCAmelCase : Any = random_other_next_tokens # append to next input_ids and attn_mask _UpperCAmelCase : List[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Optional[int] = torch.cat( [attn_mask, torch.ones((attn_mask.shape[0], 1) , dtype=torch.long , device=A )] , dim=1 , ) # get two different outputs _UpperCAmelCase : List[Any] = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Optional[Any] = model(A , past_key_values=A , attention_mask=A )["last_hidden_state"] # select random slice _UpperCAmelCase : Any = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Optional[Any] = output_from_no_past[:, -1, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, 0, random_slice_idx].detach() # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : int , A : Dict , A : str , A : Dict , A : Union[str, Any] , A : Any , *A : Union[str, Any] ): _UpperCAmelCase : Optional[Any] = BioGptModel(config=A ).to(A ).eval() _UpperCAmelCase : List[Any] = torch.ones(input_ids.shape , dtype=torch.long , device=A ) # first forward pass _UpperCAmelCase : Union[str, Any] = model(A , attention_mask=A , use_cache=A ) _UpperCAmelCase , _UpperCAmelCase : Dict = outputs.to_tuple() # create hypothetical multiple next token and extent to next_input_ids _UpperCAmelCase : str = ids_tensor((self.batch_size, 3) , config.vocab_size ) _UpperCAmelCase : Any = ids_tensor((self.batch_size, 3) , 2 ) # append to next input_ids and _UpperCAmelCase : Optional[Any] = torch.cat([input_ids, next_tokens] , dim=-1 ) _UpperCAmelCase : Dict = torch.cat([attention_mask, next_attn_mask] , dim=-1 ) _UpperCAmelCase : Any = model(A , attention_mask=A )["last_hidden_state"] _UpperCAmelCase : Dict = model(A , attention_mask=A , past_key_values=A )[ "last_hidden_state" ] # select random slice _UpperCAmelCase : Dict = ids_tensor((1,) , output_from_past.shape[-1] ).item() _UpperCAmelCase : Dict = output_from_no_past[:, -3:, random_slice_idx].detach() _UpperCAmelCase : Any = output_from_past[:, :, random_slice_idx].detach() self.parent.assertTrue(output_from_past_slice.shape[1] == next_tokens.shape[1] ) # test that outputs are equal for slice self.parent.assertTrue(torch.allclose(A , A , atol=1E-3 ) ) def _A ( self : Optional[Any] , A : Tuple , A : List[str] , A : Tuple , A : Dict , A : List[Any] , *A : Tuple , A : List[str]=False ): _UpperCAmelCase : Optional[int] = BioGptForCausalLM(A ) model.to(A ) if gradient_checkpointing: model.gradient_checkpointing_enable() _UpperCAmelCase : Union[str, Any] = model(A , labels=A ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) result.loss.backward() def _A ( self : Optional[Any] , A : Any , *A : Optional[Any] ): _UpperCAmelCase : Tuple = BioGptModel(A ) _UpperCAmelCase : int = model.config.initializer_range / math.sqrt(2 * model.config.num_hidden_layers ) for key in model.state_dict().keys(): if "c_proj" in key and "weight" in key: self.parent.assertLessEqual(abs(torch.std(model.state_dict()[key] ) - model_std ) , 0.001 ) self.parent.assertLessEqual(abs(torch.mean(model.state_dict()[key] ) - 0.0 ) , 0.01 ) def _A ( self : Optional[int] , A : Dict , A : Tuple , A : Optional[int] , A : int , A : List[str] , *A : Dict ): _UpperCAmelCase : Any = self.num_labels _UpperCAmelCase : Any = BioGptForTokenClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Optional[int] = model(A , attention_mask=A , token_type_ids=A ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) ) def _A ( self : int ): _UpperCAmelCase : Dict = self.prepare_config_and_inputs() ( ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ( _UpperCAmelCase ) , ) : List[str] = config_and_inputs _UpperCAmelCase : Optional[int] = {"input_ids": input_ids, "attention_mask": input_mask} return config, inputs_dict @require_torch class lowerCamelCase_ (snake_case__ , snake_case__ , snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: List[str] = ( (BioGptModel, BioGptForCausalLM, BioGptForSequenceClassification, BioGptForTokenClassification) if is_torch_available() else () ) __UpperCamelCase: List[str] = (BioGptForCausalLM,) if is_torch_available() else () __UpperCamelCase: str = ( { "feature-extraction": BioGptModel, "text-classification": BioGptForSequenceClassification, "text-generation": BioGptForCausalLM, "token-classification": BioGptForTokenClassification, "zero-shot": BioGptForSequenceClassification, } if is_torch_available() else {} ) __UpperCamelCase: Union[str, Any] = False def _A ( self : Optional[Any] ): _UpperCAmelCase : List[Any] = BioGptModelTester(self ) _UpperCAmelCase : str = ConfigTester(self , config_class=A , hidden_size=37 ) def _A ( self : Union[str, Any] ): self.config_tester.run_common_tests() def _A ( self : Any ): _UpperCAmelCase : Any = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_model(*A ) def _A ( self : Any ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() for type in ["absolute", "relative_key", "relative_key_query"]: _UpperCAmelCase : Tuple = type self.model_tester.create_and_check_model(*A ) def _A ( self : int ): _UpperCAmelCase : Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_attention_mask_past(*A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : List[Any] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_forward_and_backwards(*A , gradient_checkpointing=A ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_model_past_large_inputs(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_weight_initialization(*A ) def _A ( self : Dict ): _UpperCAmelCase : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_biogpt_for_token_classification(*A ) @slow def _A ( self : List[str] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) _UpperCAmelCase : Tuple = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : str = "left" # Define PAD Token = EOS Token = 50256 _UpperCAmelCase : Any = tokenizer.eos_token _UpperCAmelCase : int = model.config.eos_token_id # use different length sentences to test batching _UpperCAmelCase : Any = [ "Hello, my dog is a little", "Today, I", ] _UpperCAmelCase : Tuple = tokenizer(A , return_tensors="pt" , padding=A ) _UpperCAmelCase : Optional[Any] = inputs["input_ids"].to(A ) _UpperCAmelCase : Any = model.generate( input_ids=A , attention_mask=inputs["attention_mask"].to(A ) , ) _UpperCAmelCase : int = tokenizer(sentences[0] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : List[Any] = model.generate(input_ids=A ) _UpperCAmelCase : List[Any] = inputs_non_padded.shape[-1] - inputs["attention_mask"][-1].long().sum().cpu().item() _UpperCAmelCase : int = tokenizer(sentences[1] , return_tensors="pt" ).input_ids.to(A ) _UpperCAmelCase : int = model.generate(input_ids=A , max_length=model.config.max_length - num_paddings ) _UpperCAmelCase : Dict = tokenizer.batch_decode(A , skip_special_tokens=A ) _UpperCAmelCase : Any = tokenizer.decode(output_non_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : Optional[int] = tokenizer.decode(output_padded[0] , skip_special_tokens=A ) _UpperCAmelCase : str = [ "Hello, my dog is a little bit bigger than a little bit.", "Today, I have a good idea of how to use the information", ] self.assertListEqual(A , A ) self.assertListEqual(A , [non_padded_sentence, padded_sentence] ) @slow def _A ( self : str ): for model_name in BIOGPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: _UpperCAmelCase : Optional[Any] = BioGptModel.from_pretrained(A ) self.assertIsNotNone(A ) def _A ( self : List[str] ): _UpperCAmelCase , _UpperCAmelCase : int = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : str = 3 _UpperCAmelCase : List[str] = input_dict["input_ids"] _UpperCAmelCase : Dict = input_ids.ne(1 ).to(A ) _UpperCAmelCase : List[Any] = ids_tensor([self.model_tester.batch_size] , self.model_tester.type_sequence_label_size ) _UpperCAmelCase : List[str] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : List[str] = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) def _A ( self : int ): _UpperCAmelCase , _UpperCAmelCase : Optional[Any] = self.model_tester.prepare_config_and_inputs_for_common() _UpperCAmelCase : int = 3 _UpperCAmelCase : Dict = "multi_label_classification" _UpperCAmelCase : Optional[Any] = input_dict["input_ids"] _UpperCAmelCase : Optional[int] = input_ids.ne(1 ).to(A ) _UpperCAmelCase : Tuple = ids_tensor( [self.model_tester.batch_size, config.num_labels] , self.model_tester.type_sequence_label_size ).to(torch.float ) _UpperCAmelCase : Optional[Any] = BioGptForSequenceClassification(A ) model.to(A ) model.eval() _UpperCAmelCase : Tuple = model(A , attention_mask=A , labels=A ) self.assertEqual(result.logits.shape , (self.model_tester.batch_size, self.model_tester.num_labels) ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' @slow def _A ( self : List[Any] ): _UpperCAmelCase : Optional[Any] = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : List[str] = torch.tensor([[2, 4805, 9, 656, 21]] ) _UpperCAmelCase : List[Any] = model(A )[0] _UpperCAmelCase : int = 42384 _UpperCAmelCase : int = torch.Size((1, 5, vocab_size) ) self.assertEqual(output.shape , A ) _UpperCAmelCase : Any = torch.tensor( [[[-9.5_236, -9.8_918, 10.4_557], [-11.0_469, -9.6_423, 8.1_022], [-8.8_664, -7.8_826, 5.5_325]]] ) self.assertTrue(torch.allclose(output[:, :3, :3] , A , atol=1E-4 ) ) @slow def _A ( self : Any ): _UpperCAmelCase : str = BioGptTokenizer.from_pretrained("microsoft/biogpt" ) _UpperCAmelCase : Tuple = BioGptForCausalLM.from_pretrained("microsoft/biogpt" ) model.to(A ) torch.manual_seed(0 ) _UpperCAmelCase : Optional[Any] = tokenizer("COVID-19 is" , return_tensors="pt" ).to(A ) _UpperCAmelCase : Dict = model.generate( **A , min_length=100 , max_length=1024 , num_beams=5 , early_stopping=A , ) _UpperCAmelCase : Optional[Any] = tokenizer.decode(output_ids[0] , skip_special_tokens=A ) _UpperCAmelCase : List[str] = ( "COVID-19 is a global pandemic caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), the" " causative agent of coronavirus disease 2019 (COVID-19), which has spread to more than 200 countries and" " territories, including the United States (US), Canada, Australia, New Zealand, the United Kingdom (UK)," " and the United States of America (USA), as of March 11, 2020, with more than 800,000 confirmed cases and" " more than 800,000 deaths." ) self.assertEqual(A , A )
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"""simple docstring""" def lowercase_ ( _snake_case ): if a < 0: raise ValueError("""Input value must be a positive integer""" ) elif isinstance(_snake_case ,_snake_case ): raise TypeError("""Input value must be a 'int' type""" ) return bin(_snake_case ).count("""1""" ) if __name__ == "__main__": import doctest doctest.testmod()
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'''simple docstring''' __SCREAMING_SNAKE_CASE : Dict = 8.3_1_4_4_6_2 # Unit - J mol-1 K-1 def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or volume < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / volume def UpperCamelCase_ ( _UpperCAmelCase : float , _UpperCAmelCase : float , _UpperCAmelCase : float ) -> float: """simple docstring""" if moles < 0 or kelvin < 0 or pressure < 0: raise ValueError("Invalid inputs. Enter positive value." ) return moles * kelvin * UNIVERSAL_GAS_CONSTANT / pressure if __name__ == "__main__": from doctest import testmod testmod()
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# # This a `torch.distributed` diagnostics script that checks that all GPUs in the cluster (one or # many nodes) can talk to each other via nccl and allocate gpu memory. # # To run first adjust the number of processes and nodes: # # python -m torch.distributed.run --nproc_per_node 2 --nnodes 1 torch-distributed-gpu-test.py # # You may need to add --master_addr $MASTER_ADDR --master_port $MASTER_PORT if using a custom addr:port # # You can also use the rdzv API: --rdzv_endpoint $MASTER_ADDR:$MASTER_PORT --rdzv_backend c10d # # use torch.distributed.launch instead of torch.distributed.run for torch < 1.9 # # If you get a hanging in `barrier` calls you have some network issues, you may try to debug this with: # # NCCL_DEBUG=INFO python -m torch.distributed.run --nproc_per_node 2 --nnodes 1 torch-distributed-gpu-test.py # # which should tell you what's going on behind the scenes. # # # This script can be run via `srun` in the SLURM environment as well. Here is a SLURM script that # runs on 2 nodes of 4 gpus per node: # # #SBATCH --job-name=test-nodes # name # #SBATCH --nodes=2 # nodes # #SBATCH --ntasks-per-node=1 # crucial - only 1 task per dist per node! # #SBATCH --cpus-per-task=10 # number of cores per tasks # #SBATCH --gres=gpu:4 # number of gpus # #SBATCH --time 0:05:00 # maximum execution time (HH:MM:SS) # #SBATCH --output=%x-%j.out # output file name # # GPUS_PER_NODE=4 # MASTER_ADDR=$(scontrol show hostnames $SLURM_JOB_NODELIST | head -n 1) # MASTER_PORT=6000 # # srun --jobid $SLURM_JOBID bash -c 'python -m torch.distributed.run \ # --nproc_per_node $GPUS_PER_NODE --nnodes $SLURM_NNODES --node_rank $SLURM_PROCID \ # --master_addr $MASTER_ADDR --master_port $MASTER_PORT \ # torch-distributed-gpu-test.py' # import fcntl import os import socket import torch import torch.distributed as dist def lowerCAmelCase_ ( *snake_case_ ): with open(snake_case_,"""r""" ) as fh: fcntl.flock(snake_case_,fcntl.LOCK_EX ) try: print(*snake_case_ ) finally: fcntl.flock(snake_case_,fcntl.LOCK_UN ) _snake_case = int(os.environ["LOCAL_RANK"]) torch.cuda.set_device(local_rank) _snake_case = torch.device("cuda", local_rank) _snake_case = socket.gethostname() _snake_case = f"""[{hostname}-{local_rank}]""" try: # test distributed dist.init_process_group("nccl") dist.all_reduce(torch.ones(1).to(device), op=dist.ReduceOp.SUM) dist.barrier() # test cuda is available and can allocate memory torch.cuda.is_available() torch.ones(1).cuda(local_rank) # global rank _snake_case = dist.get_rank() _snake_case = dist.get_world_size() printflock(f"""{gpu} is OK (global rank: {rank}/{world_size})""") dist.barrier() if rank == 0: printflock(f"""pt={torch.__version__}, cuda={torch.version.cuda}, nccl={torch.cuda.nccl.version()}""") except Exception: printflock(f"""{gpu} is broken""") raise
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'''simple docstring''' import os from shutil import copyfile from typing import List, Optional, Tuple from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import is_sentencepiece_available, logging if is_sentencepiece_available(): from .tokenization_pegasus import PegasusTokenizer else: __SCREAMING_SNAKE_CASE : Optional[Any] = None __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = """▁""" __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """spiece.model""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : int = { """vocab_file""": {"""google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/spiece.model"""}, """tokenizer_file""": { """google/pegasus-xsum""": """https://huggingface.co/google/pegasus-xsum/resolve/main/tokenizer.json""" }, } __SCREAMING_SNAKE_CASE : str = { """google/pegasus-xsum""": 512, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = VOCAB_FILES_NAMES __UpperCamelCase: Dict = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: List[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Optional[int] = PegasusTokenizer __UpperCamelCase: Optional[Any] = ["input_ids", "attention_mask"] def __init__( self : Dict , A : List[str]=None , A : Union[str, Any]=None , A : Optional[int]="<pad>" , A : Tuple="</s>" , A : Union[str, Any]="<unk>" , A : Union[str, Any]="<mask_2>" , A : Dict="<mask_1>" , A : Union[str, Any]=None , A : int=103 , **A : Optional[Any] , ): _UpperCAmelCase : Dict = offset if additional_special_tokens is not None: if not isinstance(A , A ): raise TypeError( F"""additional_special_tokens should be of type {type(A )}, but is""" F""" {type(A )}""" ) _UpperCAmelCase : Optional[int] = ( ([mask_token_sent] + additional_special_tokens) if mask_token_sent not in additional_special_tokens and mask_token_sent is not None else additional_special_tokens ) # fill additional tokens with ..., <unk_token_102> in case not all additional tokens are already taken additional_special_tokens_extended += [ F"""<unk_{i}>""" for i in range(len(A ) , self.offset - 1 ) ] if len(set(A ) ) != len(A ): raise ValueError( "Please make sure that the provided additional_special_tokens do not contain an incorrectly" F""" shifted list of <unk_x> tokens. Found {additional_special_tokens_extended}.""" ) _UpperCAmelCase : Any = additional_special_tokens_extended else: _UpperCAmelCase : Dict = [mask_token_sent] if mask_token_sent is not None else [] additional_special_tokens += [F"""<unk_{i}>""" for i in range(2 , self.offset )] super().__init__( A , tokenizer_file=A , pad_token=A , eos_token=A , unk_token=A , mask_token=A , mask_token_sent=A , offset=A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[Any] = vocab_file _UpperCAmelCase : Optional[Any] = False if not self.vocab_file else True def _A ( self : List[str] , A : Optional[Any] ): _UpperCAmelCase : Any = set(self.all_special_ids ) # call it once instead of inside list comp all_special_ids.remove(self.unk_token_id ) # <unk> is only sometimes special if all_special_ids != set(range(len(self.additional_special_tokens ) + 3 ) ): raise ValueError( "There should be 3 special tokens: mask_token, pad_token, and eos_token +" F""" {len(self.additional_special_tokens )} additional_special_tokens, but got {all_special_ids}""" ) return [1 if x in all_special_ids else 0 for x in seq] def _A ( self : str , A : List , A : Optional[List] = None , A : bool = False ): if already_has_special_tokens: return self._special_token_mask(A ) elif token_ids_a is None: return self._special_token_mask(A ) + [1] else: return self._special_token_mask(token_ids_a + token_ids_a ) + [1] def _A ( self : Optional[int] , A : Union[str, Any] , A : int=None ): if token_ids_a is None: return token_ids_a + [self.eos_token_id] # We don't expect to process pairs, but leave the pair logic for API consistency return token_ids_a + token_ids_a + [self.eos_token_id] def _A ( self : Union[str, Any] , A : str , A : Optional[str] = None ): if not self.can_save_slow_tokenizer: raise ValueError( "Your fast tokenizer does not have the necessary information to save the vocabulary for a slow " "tokenizer." ) if not os.path.isdir(A ): logger.error(F"""Vocabulary path ({save_directory}) should be a directory""" ) return _UpperCAmelCase : List[Any] = os.path.join( A , (filename_prefix + "-" if filename_prefix else "") + VOCAB_FILES_NAMES["vocab_file"] ) if os.path.abspath(self.vocab_file ) != os.path.abspath(A ): copyfile(self.vocab_file , A ) return (out_vocab_file,)
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'''simple docstring''' import warnings from functools import wraps from typing import Callable def lowerCamelCase (_SCREAMING_SNAKE_CASE : Callable ): @wraps(_SCREAMING_SNAKE_CASE ) def _inner_fn(*_SCREAMING_SNAKE_CASE : List[str] , **_SCREAMING_SNAKE_CASE : List[str] ): warnings.warn( (F"""'{fn.__name__}' is experimental and might be subject to breaking changes in the future.""") , _SCREAMING_SNAKE_CASE , ) return fn(*_SCREAMING_SNAKE_CASE , **_SCREAMING_SNAKE_CASE ) return _inner_fn
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'''simple docstring''' import shutil import tempfile import unittest from transformers import ( SPIECE_UNDERLINE, AddedToken, BatchEncoding, NllbTokenizer, NllbTokenizerFast, is_torch_available, ) from transformers.testing_utils import ( get_tests_dir, nested_simplify, require_sentencepiece, require_tokenizers, require_torch, ) from ...test_tokenization_common import TokenizerTesterMixin __SCREAMING_SNAKE_CASE : Union[str, Any] = get_tests_dir("""fixtures/test_sentencepiece.model""") if is_torch_available(): from transformers.models.mam_aaa.modeling_mam_aaa import shift_tokens_right __SCREAMING_SNAKE_CASE : Optional[int] = 256_047 __SCREAMING_SNAKE_CASE : Optional[int] = 256_145 @require_sentencepiece @require_tokenizers class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: int = NllbTokenizer __UpperCamelCase: Tuple = NllbTokenizerFast __UpperCamelCase: Union[str, Any] = True __UpperCamelCase: Dict = True __UpperCamelCase: Optional[Any] = {} def _A ( self : Union[str, Any] ): super().setUp() # We have a SentencePiece fixture for testing _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) tokenizer.save_pretrained(self.tmpdirname ) def _A ( self : Dict ): _UpperCAmelCase : Tuple = NllbTokenizer(A , keep_accents=A ) _UpperCAmelCase : Optional[Any] = tokenizer.tokenize("This is a test" ) self.assertListEqual(A , ["▁This", "▁is", "▁a", "▁t", "est"] ) self.assertListEqual( tokenizer.convert_tokens_to_ids(A ) , [value + tokenizer.fairseq_offset for value in [285, 46, 10, 170, 382]] , ) _UpperCAmelCase : List[str] = tokenizer.tokenize("I was born in 92000, and this is falsé." ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "9", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "é", ".", ] , ) _UpperCAmelCase : Optional[Any] = tokenizer.convert_tokens_to_ids(A ) self.assertListEqual( A , [ value + tokenizer.fairseq_offset for value in [8, 21, 84, 55, 24, 19, 7, 2, 602, 347, 347, 347, 3, 12, 66, 46, 72, 80, 6, 2, 4] ] , ) _UpperCAmelCase : Union[str, Any] = tokenizer.convert_ids_to_tokens(A ) self.assertListEqual( A , [ SPIECE_UNDERLINE + "I", SPIECE_UNDERLINE + "was", SPIECE_UNDERLINE + "b", "or", "n", SPIECE_UNDERLINE + "in", SPIECE_UNDERLINE + "", "<unk>", "2", "0", "0", "0", ",", SPIECE_UNDERLINE + "and", SPIECE_UNDERLINE + "this", SPIECE_UNDERLINE + "is", SPIECE_UNDERLINE + "f", "al", "s", "<unk>", ".", ] , ) def _A ( self : List[Any] ): _UpperCAmelCase : Any = (self.rust_tokenizer_class, "hf-internal-testing/tiny-random-nllb", {}) for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : str = self.tokenizer_class.from_pretrained(A , **A ) _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Dict = tokenizer_r.save_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it save with the same files + the tokenizer.json file for the fast one self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) _UpperCAmelCase : Optional[int] = tuple(f for f in tokenizer_r_files if "tokenizer.json" not in f ) self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : List[str] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=True _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() _UpperCAmelCase : str = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : str = tokenizer_p.save_pretrained(A ) # Checks it save with the same files self.assertSequenceEqual(A , A ) # Checks everything loads correctly in the same way _UpperCAmelCase : Optional[int] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Dict = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) # Save tokenizer rust, legacy_format=False _UpperCAmelCase : Optional[int] = tempfile.mkdtemp() _UpperCAmelCase : Optional[int] = tokenizer_r.save_pretrained(A , legacy_format=A ) _UpperCAmelCase : Dict = tokenizer_p.save_pretrained(A ) # Checks it saved the tokenizer.json file self.assertTrue(any("tokenizer.json" in f for f in tokenizer_r_files ) ) # Checks everything loads correctly in the same way _UpperCAmelCase : List[Any] = tokenizer_r.from_pretrained(A ) _UpperCAmelCase : Optional[int] = tokenizer_p.from_pretrained(A ) # Check special tokens are set accordingly on Rust and Python for key in tokenizer_pp.special_tokens_map: self.assertTrue(hasattr(A , A ) ) shutil.rmtree(A ) @require_torch def _A ( self : Tuple ): if not self.test_seqaseq: return _UpperCAmelCase : Union[str, Any] = self.get_tokenizers() for tokenizer in tokenizers: with self.subTest(F"""{tokenizer.__class__.__name__}""" ): # Longer text that will definitely require truncation. _UpperCAmelCase : Optional[Any] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for" " Syria is that 'there is no military solution' to the nearly five-year conflict and more weapons" " will only worsen the violence and misery for millions of people.", ] _UpperCAmelCase : Optional[Any] = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al" " Rusiei pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi" " că noi arme nu vor face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] try: _UpperCAmelCase : Optional[int] = tokenizer.prepare_seqaseq_batch( src_texts=A , tgt_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="ron_Latn" , ) except NotImplementedError: return self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 10 ) # max_target_length will default to max_length if not specified _UpperCAmelCase : Tuple = tokenizer.prepare_seqaseq_batch( A , tgt_texts=A , max_length=3 , return_tensors="pt" ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.labels.shape[1] , 3 ) _UpperCAmelCase : Union[str, Any] = tokenizer.prepare_seqaseq_batch( src_texts=A , max_length=3 , max_target_length=10 , return_tensors="pt" ) self.assertEqual(batch_encoder_only.input_ids.shape[1] , 3 ) self.assertEqual(batch_encoder_only.attention_mask.shape[1] , 3 ) self.assertNotIn("decoder_input_ids" , A ) @unittest.skip("Unfortunately way too slow to build a BPE with SentencePiece." ) def _A ( self : List[Any] ): pass def _A ( self : Union[str, Any] ): for tokenizer, pretrained_name, kwargs in self.tokenizers_list: with self.subTest(F"""{tokenizer.__class__.__name__} ({pretrained_name})""" ): _UpperCAmelCase : Any = [AddedToken("<special>" , lstrip=A )] _UpperCAmelCase : List[Any] = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Dict = tokenizer_r.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_r.encode("<special>" , add_special_tokens=A )[0] self.assertTrue(special_token_id in r_output ) if self.test_slow_tokenizer: _UpperCAmelCase : Dict = self.rust_tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A , ) _UpperCAmelCase : Optional[int] = self.tokenizer_class.from_pretrained( A , additional_special_tokens=A , **A ) _UpperCAmelCase : Union[str, Any] = tokenizer_p.encode("Hey this is a <special> token" ) _UpperCAmelCase : Any = tokenizer_cr.encode("Hey this is a <special> token" ) self.assertEqual(A , A ) self.assertEqual(A , A ) self.assertTrue(special_token_id in p_output ) self.assertTrue(special_token_id in cr_output ) @require_torch @require_sentencepiece @require_tokenizers class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = "facebook/nllb-200-distilled-600M" __UpperCamelCase: Optional[int] = [ " UN Chief Says There Is No Military Solution in Syria", " Secretary-General Ban Ki-moon says his response to Russia's stepped up military support for Syria is that \"there is no military solution\" to the nearly five-year conflict and more weapons will only worsen the violence and misery for millions of people.", ] __UpperCamelCase: str = [ "Şeful ONU declară că nu există o soluţie militară în Siria", "Secretarul General Ban Ki-moon declară că răspunsul său la intensificarea sprijinului militar al Rusiei" " pentru Siria este că \"nu există o soluţie militară\" la conflictul de aproape cinci ani şi că noi arme nu vor" " face decât să înrăutăţească violenţele şi mizeria pentru milioane de oameni.", ] __UpperCamelCase: str = [ 2_5_6_0_4_7, 1_6_2_9_7, 1_3_4_4_0_8, 8_1_6_5, 2_4_8_0_6_6, 1_4_7_3_4, 9_5_0, 1_1_3_5, 1_0_5_7_2_1, 3_5_7_3, 8_3, 2_7_3_5_2, 1_0_8, 4_9_4_8_6, 2, ] @classmethod def _A ( cls : int ): _UpperCAmelCase : NllbTokenizer = NllbTokenizer.from_pretrained( cls.checkpoint_name , src_lang="eng_Latn" , tgt_lang="ron_Latn" ) _UpperCAmelCase : Union[str, Any] = 1 return cls def _A ( self : Any ): self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Arab"] , 256001 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["ace_Latn"] , 256002 ) self.assertEqual(self.tokenizer.fairseq_tokens_to_ids["fra_Latn"] , 256057 ) def _A ( self : Union[str, Any] ): _UpperCAmelCase : Optional[int] = self.tokenizer.batch_encode_plus(self.src_text ).input_ids[0] self.assertListEqual(self.expected_src_tokens , A ) def _A ( self : Tuple ): self.assertIn(A , self.tokenizer.all_special_ids ) # fmt: off _UpperCAmelCase : List[Any] = [RO_CODE, 4254, 98068, 112923, 39072, 3909, 713, 102767, 26, 17314, 35642, 14683, 33118, 2022, 66987, 2, 256047] # fmt: on _UpperCAmelCase : Tuple = self.tokenizer.decode(A , skip_special_tokens=A ) _UpperCAmelCase : Optional[Any] = self.tokenizer.decode(generated_ids[1:] , skip_special_tokens=A ) self.assertEqual(A , A ) self.assertNotIn(self.tokenizer.eos_token , A ) def _A ( self : Optional[int] ): _UpperCAmelCase : List[Any] = ["this is gunna be a long sentence " * 20] assert isinstance(src_text[0] , A ) _UpperCAmelCase : Dict = 10 _UpperCAmelCase : Tuple = self.tokenizer(A , max_length=A , truncation=A ).input_ids[0] self.assertEqual(ids[-1] , 2 ) self.assertEqual(ids[0] , A ) self.assertEqual(len(A ) , A ) def _A ( self : Dict ): self.assertListEqual(self.tokenizer.convert_tokens_to_ids(["<mask>", "ar_AR"] ) , [256203, 3] ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = tempfile.mkdtemp() _UpperCAmelCase : str = self.tokenizer.fairseq_tokens_to_ids self.tokenizer.save_pretrained(A ) _UpperCAmelCase : Tuple = NllbTokenizer.from_pretrained(A ) self.assertDictEqual(new_tok.fairseq_tokens_to_ids , A ) @require_torch def _A ( self : Dict ): _UpperCAmelCase : List[str] = self.tokenizer( self.src_text , text_target=self.tgt_text , padding=A , truncation=A , max_length=len(self.expected_src_tokens ) , return_tensors="pt" , ) _UpperCAmelCase : Tuple = shift_tokens_right( batch["labels"] , self.tokenizer.pad_token_id , self.tokenizer.lang_code_to_id["ron_Latn"] ) self.assertIsInstance(A , A ) self.assertEqual((2, 15) , batch.input_ids.shape ) self.assertEqual((2, 15) , batch.attention_mask.shape ) _UpperCAmelCase : Dict = batch.input_ids.tolist()[0] self.assertListEqual(self.expected_src_tokens , A ) self.assertEqual(A , batch.decoder_input_ids[0, 0] ) # EOS # Test that special tokens are reset self.assertEqual(self.tokenizer.prefix_tokens , [EN_CODE] ) self.assertEqual(self.tokenizer.suffix_tokens , [self.tokenizer.eos_token_id] ) def _A ( self : str ): _UpperCAmelCase : Optional[Any] = self.tokenizer(self.src_text , padding=A , truncation=A , max_length=3 , return_tensors="pt" ) _UpperCAmelCase : Dict = self.tokenizer( text_target=self.tgt_text , padding=A , truncation=A , max_length=10 , return_tensors="pt" ) _UpperCAmelCase : List[Any] = targets["input_ids"] _UpperCAmelCase : Union[str, Any] = shift_tokens_right( A , self.tokenizer.pad_token_id , decoder_start_token_id=self.tokenizer.lang_code_to_id[self.tokenizer.tgt_lang] , ) self.assertEqual(batch.input_ids.shape[1] , 3 ) self.assertEqual(batch.decoder_input_ids.shape[1] , 10 ) @require_torch def _A ( self : List[Any] ): _UpperCAmelCase : str = self.tokenizer._build_translation_inputs( "A test" , return_tensors="pt" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( nested_simplify(A ) , { # A, test, EOS, en_XX "input_ids": [[256047, 70, 7356, 2]], "attention_mask": [[1, 1, 1, 1]], # ar_AR "forced_bos_token_id": 256057, } , ) @require_torch def _A ( self : Any ): _UpperCAmelCase : Dict = True _UpperCAmelCase : Any = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2, 256047] ) _UpperCAmelCase : Optional[int] = False _UpperCAmelCase : str = self.tokenizer( "UN Chief says there is no military solution in Syria" , src_lang="eng_Latn" , tgt_lang="fra_Latn" ) self.assertEqual( inputs.input_ids , [256047, 16297, 134408, 25653, 6370, 248, 254, 103929, 94995, 108, 49486, 2] )
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'''simple docstring''' def __lowerCamelCase ( A__ , A__ ) -> list: """simple docstring""" UpperCamelCase = len(A__ ) UpperCamelCase = [] for i in range(len(A__ ) - pat_len + 1 ): UpperCamelCase = True for j in range(A__ ): if s[i + j] != pattern[j]: UpperCamelCase = False break if match_found: position.append(A__ ) return position if __name__ == "__main__": assert naive_pattern_search("ABCDEFG", "DE") == [3] print(naive_pattern_search("ABAAABCDBBABCDDEBCABC", "ABC"))
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : list ) -> list: """simple docstring""" _UpperCAmelCase : List[Any] = len(_UpperCAmelCase ) for _ in range(_UpperCAmelCase ): for i in range(_ % 2 , arr_size - 1 , 2 ): if arr[i + 1] < arr[i]: _UpperCAmelCase , _UpperCAmelCase : int = arr[i + 1], arr[i] return arr if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = list(range(10, 0, -1)) print(F'Original: {arr}. Sorted: {odd_even_transposition(arr)}')
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# Imports import numpy as np class lowerCamelCase : '''simple docstring''' def __init__( self , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None ) -> Tuple: self.set_matricies(red=_UpperCamelCase , green=_UpperCamelCase , blue=_UpperCamelCase , red_edge=_UpperCamelCase , nir=_UpperCamelCase ) def __UpperCAmelCase ( self , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None ) -> Dict: if red is not None: UpperCAmelCase_ : int = red if green is not None: UpperCAmelCase_ : Dict = green if blue is not None: UpperCAmelCase_ : str = blue if red_edge is not None: UpperCAmelCase_ : int = red_edge if nir is not None: UpperCAmelCase_ : Tuple = nir return True def __UpperCAmelCase ( self , _UpperCamelCase="" , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=None ) -> List[Any]: self.set_matricies(red=_UpperCamelCase , green=_UpperCamelCase , blue=_UpperCamelCase , red_edge=_UpperCamelCase , nir=_UpperCamelCase ) UpperCAmelCase_ : Optional[int] = { 'ARVI2': self.arvaa, 'CCCI': self.ccci, 'CVI': self.cvi, 'GLI': self.gli, 'NDVI': self.ndvi, 'BNDVI': self.bndvi, 'redEdgeNDVI': self.red_edge_ndvi, 'GNDVI': self.gndvi, 'GBNDVI': self.gbndvi, 'GRNDVI': self.grndvi, 'RBNDVI': self.rbndvi, 'PNDVI': self.pndvi, 'ATSAVI': self.atsavi, 'BWDRVI': self.bwdrvi, 'CIgreen': self.ci_green, 'CIrededge': self.ci_rededge, 'CI': self.ci, 'CTVI': self.ctvi, 'GDVI': self.gdvi, 'EVI': self.evi, 'GEMI': self.gemi, 'GOSAVI': self.gosavi, 'GSAVI': self.gsavi, 'Hue': self.hue, 'IVI': self.ivi, 'IPVI': self.ipvi, 'I': self.i, 'RVI': self.rvi, 'MRVI': self.mrvi, 'MSAVI': self.m_savi, 'NormG': self.norm_g, 'NormNIR': self.norm_nir, 'NormR': self.norm_r, 'NGRDI': self.ngrdi, 'RI': self.ri, 'S': self.s, 'IF': self._if, 'DVI': self.dvi, 'TVI': self.tvi, 'NDRE': self.ndre, } try: return funcs[index]() except KeyError: print('Index not in the list!' ) return False def __UpperCAmelCase ( self ) -> str: return -0.18 + (1.17 * ((self.nir - self.red) / (self.nir + self.red))) def __UpperCAmelCase ( self ) -> Tuple: return ((self.nir - self.redEdge) / (self.nir + self.redEdge)) / ( (self.nir - self.red) / (self.nir + self.red) ) def __UpperCAmelCase ( self ) -> Union[str, Any]: return self.nir * (self.red / (self.green**2)) def __UpperCAmelCase ( self ) -> Any: return (2 * self.green - self.red - self.blue) / ( 2 * self.green + self.red + self.blue ) def __UpperCAmelCase ( self ) -> Union[str, Any]: return (self.nir - self.red) / (self.nir + self.red) def __UpperCAmelCase ( self ) -> Union[str, Any]: return (self.nir - self.blue) / (self.nir + self.blue) def __UpperCAmelCase ( self ) -> List[str]: return (self.redEdge - self.red) / (self.redEdge + self.red) def __UpperCAmelCase ( self ) -> Optional[int]: return (self.nir - self.green) / (self.nir + self.green) def __UpperCAmelCase ( self ) -> Any: return (self.nir - (self.green + self.blue)) / ( self.nir + (self.green + self.blue) ) def __UpperCAmelCase ( self ) -> Optional[Any]: return (self.nir - (self.green + self.red)) / ( self.nir + (self.green + self.red) ) def __UpperCAmelCase ( self ) -> Tuple: return (self.nir - (self.blue + self.red)) / (self.nir + (self.blue + self.red)) def __UpperCAmelCase ( self ) -> Optional[int]: return (self.nir - (self.green + self.red + self.blue)) / ( self.nir + (self.green + self.red + self.blue) ) def __UpperCAmelCase ( self , _UpperCamelCase=0.08 , _UpperCamelCase=1.22 , _UpperCamelCase=0.03 ) -> Tuple: return a * ( (self.nir - a * self.red - b) / (a * self.nir + self.red - a * b + x * (1 + a**2)) ) def __UpperCAmelCase ( self ) -> List[Any]: return (0.1 * self.nir - self.blue) / (0.1 * self.nir + self.blue) def __UpperCAmelCase ( self ) -> Tuple: return (self.nir / self.green) - 1 def __UpperCAmelCase ( self ) -> List[str]: return (self.nir / self.redEdge) - 1 def __UpperCAmelCase ( self ) -> Any: return (self.red - self.blue) / self.red def __UpperCAmelCase ( self ) -> List[Any]: UpperCAmelCase_ : str = self.ndvi() return ((ndvi + 0.5) / (abs(ndvi + 0.5 ))) * (abs(ndvi + 0.5 ) ** (1 / 2)) def __UpperCAmelCase ( self ) -> Any: return self.nir - self.green def __UpperCAmelCase ( self ) -> Tuple: return 2.5 * ( (self.nir - self.red) / (self.nir + 6 * self.red - 7.5 * self.blue + 1) ) def __UpperCAmelCase ( self ) -> Tuple: UpperCAmelCase_ : List[Any] = (2 * (self.nir**2 - self.red**2) + 1.5 * self.nir + 0.5 * self.red) / ( self.nir + self.red + 0.5 ) return n * (1 - 0.25 * n) - (self.red - 0.1_25) / (1 - self.red) def __UpperCAmelCase ( self , _UpperCamelCase=0.16 ) -> List[Any]: return (self.nir - self.green) / (self.nir + self.green + y) def __UpperCAmelCase ( self , _UpperCamelCase=0.5 ) -> Union[str, Any]: return ((self.nir - self.green) / (self.nir + self.green + n)) * (1 + n) def __UpperCAmelCase ( self ) -> Any: return np.arctan( ((2 * self.red - self.green - self.blue) / 30.5) * (self.green - self.blue) ) def __UpperCAmelCase ( self , _UpperCamelCase=None , _UpperCamelCase=None ) -> Dict: return (self.nir - b) / (a * self.red) def __UpperCAmelCase ( self ) -> Any: return (self.nir / ((self.nir + self.red) / 2)) * (self.ndvi() + 1) def __UpperCAmelCase ( self ) -> List[str]: return (self.red + self.green + self.blue) / 30.5 def __UpperCAmelCase ( self ) -> Optional[int]: return self.nir / self.red def __UpperCAmelCase ( self ) -> Tuple: return (self.rvi() - 1) / (self.rvi() + 1) def __UpperCAmelCase ( self ) -> str: return ( (2 * self.nir + 1) - ((2 * self.nir + 1) ** 2 - 8 * (self.nir - self.red)) ** (1 / 2) ) / 2 def __UpperCAmelCase ( self ) -> Optional[Any]: return self.green / (self.nir + self.red + self.green) def __UpperCAmelCase ( self ) -> List[Any]: return self.nir / (self.nir + self.red + self.green) def __UpperCAmelCase ( self ) -> str: return self.red / (self.nir + self.red + self.green) def __UpperCAmelCase ( self ) -> List[Any]: return (self.green - self.red) / (self.green + self.red) def __UpperCAmelCase ( self ) -> List[Any]: return (self.red - self.green) / (self.red + self.green) def __UpperCAmelCase ( self ) -> Union[str, Any]: UpperCAmelCase_ : List[str] = np.max([np.max(self.red ), np.max(self.green ), np.max(self.blue )] ) UpperCAmelCase_ : List[str] = np.min([np.min(self.red ), np.min(self.green ), np.min(self.blue )] ) return (max_value - min_value) / max_value def __UpperCAmelCase ( self ) -> List[str]: return (2 * self.red - self.green - self.blue) / (self.green - self.blue) def __UpperCAmelCase ( self ) -> str: return self.nir / self.red def __UpperCAmelCase ( self ) -> List[str]: return (self.ndvi() + 0.5) ** (1 / 2) def __UpperCAmelCase ( self ) -> str: return (self.nir - self.redEdge) / (self.nir + self.redEdge)
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'''simple docstring''' import os from typing import Any, Callable, Dict, List, Optional, Tuple, Union import torch from torch import nn from ...models.controlnet import ControlNetModel, ControlNetOutput from ...models.modeling_utils import ModelMixin from ...utils import logging __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Optional[int] , A : Union[List[ControlNetModel], Tuple[ControlNetModel]] ): super().__init__() _UpperCAmelCase : Optional[int] = nn.ModuleList(A ) def _A ( self : Dict , A : torch.FloatTensor , A : Union[torch.Tensor, float, int] , A : torch.Tensor , A : List[torch.tensor] , A : List[float] , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[torch.Tensor] = None , A : Optional[Dict[str, Any]] = None , A : bool = False , A : bool = True , ): for i, (image, scale, controlnet) in enumerate(zip(A , A , self.nets ) ): _UpperCAmelCase , _UpperCAmelCase : str = controlnet( A , A , A , A , A , A , A , A , A , A , A , ) # merge samples if i == 0: _UpperCAmelCase , _UpperCAmelCase : List[Any] = down_samples, mid_sample else: _UpperCAmelCase : Optional[int] = [ samples_prev + samples_curr for samples_prev, samples_curr in zip(A , A ) ] mid_block_res_sample += mid_sample return down_block_res_samples, mid_block_res_sample def _A ( self : List[str] , A : Union[str, os.PathLike] , A : bool = True , A : Callable = None , A : bool = False , A : Optional[str] = None , ): _UpperCAmelCase : str = 0 _UpperCAmelCase : str = save_directory for controlnet in self.nets: controlnet.save_pretrained( A , is_main_process=A , save_function=A , safe_serialization=A , variant=A , ) idx += 1 _UpperCAmelCase : Tuple = model_path_to_save + F"""_{idx}""" @classmethod def _A ( cls : int , A : Optional[Union[str, os.PathLike]] , **A : Tuple ): _UpperCAmelCase : str = 0 _UpperCAmelCase : int = [] # load controlnet and append to list until no controlnet directory exists anymore # first controlnet has to be saved under `./mydirectory/controlnet` to be compliant with `DiffusionPipeline.from_prertained` # second, third, ... controlnets have to be saved under `./mydirectory/controlnet_1`, `./mydirectory/controlnet_2`, ... _UpperCAmelCase : int = pretrained_model_path while os.path.isdir(A ): _UpperCAmelCase : List[str] = ControlNetModel.from_pretrained(A , **A ) controlnets.append(A ) idx += 1 _UpperCAmelCase : Dict = pretrained_model_path + F"""_{idx}""" logger.info(F"""{len(A )} controlnets loaded from {pretrained_model_path}.""" ) if len(A ) == 0: raise ValueError( F"""No ControlNets found under {os.path.dirname(A )}. Expected at least {pretrained_model_path + '_0'}.""" ) return cls(A )
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0
from math import factorial def a ( snake_case__: int , snake_case__: int , snake_case__: float ): '''simple docstring''' if successes > trials: raise ValueError('''successes must be lower or equal to trials''' ) if trials < 0 or successes < 0: raise ValueError('''the function is defined for non-negative integers''' ) if not isinstance(snake_case__ , snake_case__ ) or not isinstance(snake_case__ , snake_case__ ): raise ValueError('''the function is defined for non-negative integers''' ) if not 0 < prob < 1: raise ValueError('''prob has to be in range of 1 - 0''' ) lowercase_ = (prob**successes) * ((1 - prob) ** (trials - successes)) # Calculate the binomial coefficient: n! / k!(n-k)! lowercase_ = float(factorial(snake_case__ ) ) coefficient /= factorial(snake_case__ ) * factorial(trials - successes ) return probability * coefficient if __name__ == "__main__": from doctest import testmod testmod() print('Probability of 2 successes out of 4 trails') print('with probability of 0.75 is:', end=' ') print(binomial_distribution(2, 4, 0.75))
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'''simple docstring''' import argparse import json import pickle from pathlib import Path import requests import torch from huggingface_hub import hf_hub_download from PIL import Image from transformers import MaskFormerConfig, MaskFormerForInstanceSegmentation, MaskFormerImageProcessor, SwinConfig from transformers.utils import logging logging.set_verbosity_info() __SCREAMING_SNAKE_CASE : Union[str, Any] = logging.get_logger(__name__) def UpperCamelCase_ ( _UpperCAmelCase : str ) -> Optional[Any]: """simple docstring""" _UpperCAmelCase : int = SwinConfig.from_pretrained( "microsoft/swin-tiny-patch4-window7-224" , out_features=["stage1", "stage2", "stage3", "stage4"] ) _UpperCAmelCase : List[Any] = MaskFormerConfig(backbone_config=_UpperCAmelCase ) _UpperCAmelCase : Tuple = "huggingface/label-files" if "ade20k-full" in model_name: # this should be ok _UpperCAmelCase : Dict = 847 _UpperCAmelCase : Any = "maskformer-ade20k-full-id2label.json" elif "ade" in model_name: # this should be ok _UpperCAmelCase : Any = 150 _UpperCAmelCase : Any = "ade20k-id2label.json" elif "coco-stuff" in model_name: # this should be ok _UpperCAmelCase : Tuple = 171 _UpperCAmelCase : Union[str, Any] = "maskformer-coco-stuff-id2label.json" elif "coco" in model_name: # TODO _UpperCAmelCase : Any = 133 _UpperCAmelCase : int = "coco-panoptic-id2label.json" elif "cityscapes" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 19 _UpperCAmelCase : str = "cityscapes-id2label.json" elif "vistas" in model_name: # this should be ok _UpperCAmelCase : Optional[int] = 65 _UpperCAmelCase : Tuple = "mapillary-vistas-id2label.json" _UpperCAmelCase : List[Any] = json.load(open(hf_hub_download(_UpperCAmelCase , _UpperCAmelCase , repo_type="dataset" ) , "r" ) ) _UpperCAmelCase : Tuple = {int(_UpperCAmelCase ): v for k, v in idalabel.items()} return config def UpperCamelCase_ ( _UpperCAmelCase : Optional[int] ) -> List[Any]: """simple docstring""" _UpperCAmelCase : Dict = [] # stem # fmt: off rename_keys.append(("backbone.patch_embed.proj.weight", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.weight") ) rename_keys.append(("backbone.patch_embed.proj.bias", "model.pixel_level_module.encoder.model.embeddings.patch_embeddings.projection.bias") ) rename_keys.append(("backbone.patch_embed.norm.weight", "model.pixel_level_module.encoder.model.embeddings.norm.weight") ) rename_keys.append(("backbone.patch_embed.norm.bias", "model.pixel_level_module.encoder.model.embeddings.norm.bias") ) # stages for i in range(len(config.backbone_config.depths ) ): for j in range(config.backbone_config.depths[i] ): rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_bias_table""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.relative_position_index""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.attn.proj.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.norm2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc1.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.weight""") ) rename_keys.append((F"""backbone.layers.{i}.blocks.{j}.mlp.fc2.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.blocks.{j}.output.dense.bias""") ) if i < 3: rename_keys.append((F"""backbone.layers.{i}.downsample.reduction.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.reduction.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.weight""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.weight""") ) rename_keys.append((F"""backbone.layers.{i}.downsample.norm.bias""", F"""model.pixel_level_module.encoder.model.encoder.layers.{i}.downsample.norm.bias""") ) rename_keys.append((F"""backbone.norm{i}.weight""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.weight""") ) rename_keys.append((F"""backbone.norm{i}.bias""", F"""model.pixel_level_module.encoder.hidden_states_norms.{i}.bias""") ) # FPN rename_keys.append(("sem_seg_head.layer_4.weight", "model.pixel_level_module.decoder.fpn.stem.0.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.weight", "model.pixel_level_module.decoder.fpn.stem.1.weight") ) rename_keys.append(("sem_seg_head.layer_4.norm.bias", "model.pixel_level_module.decoder.fpn.stem.1.bias") ) for source_index, target_index in zip(range(3 , 0 , -1 ) , range(0 , 3 ) ): rename_keys.append((F"""sem_seg_head.adapter_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.0.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.weight""") ) rename_keys.append((F"""sem_seg_head.adapter_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.proj.1.bias""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.0.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.weight""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.weight""") ) rename_keys.append((F"""sem_seg_head.layer_{source_index}.norm.bias""", F"""model.pixel_level_module.decoder.fpn.layers.{target_index}.block.1.bias""") ) rename_keys.append(("sem_seg_head.mask_features.weight", "model.pixel_level_module.decoder.mask_projection.weight") ) rename_keys.append(("sem_seg_head.mask_features.bias", "model.pixel_level_module.decoder.mask_projection.bias") ) # Transformer decoder for idx in range(config.decoder_config.decoder_layers ): # self-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn.out_proj.bias""") ) # cross-attention out projection rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.out_proj.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn.out_proj.bias""") ) # MLP 1 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc1.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear1.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc1.bias""") ) # MLP 2 rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.weight""", F"""model.transformer_module.decoder.layers.{idx}.fc2.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.linear2.bias""", F"""model.transformer_module.decoder.layers.{idx}.fc2.bias""") ) # layernorm 1 (self-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.weight""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm1.bias""", F"""model.transformer_module.decoder.layers.{idx}.self_attn_layer_norm.bias""") ) # layernorm 2 (cross-attention layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.weight""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm2.bias""", F"""model.transformer_module.decoder.layers.{idx}.encoder_attn_layer_norm.bias""") ) # layernorm 3 (final layernorm) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.weight""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.norm3.bias""", F"""model.transformer_module.decoder.layers.{idx}.final_layer_norm.bias""") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.weight", "model.transformer_module.decoder.layernorm.weight") ) rename_keys.append(("sem_seg_head.predictor.transformer.decoder.norm.bias", "model.transformer_module.decoder.layernorm.bias") ) # heads on top rename_keys.append(("sem_seg_head.predictor.query_embed.weight", "model.transformer_module.queries_embedder.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.weight", "model.transformer_module.input_projection.weight") ) rename_keys.append(("sem_seg_head.predictor.input_proj.bias", "model.transformer_module.input_projection.bias") ) rename_keys.append(("sem_seg_head.predictor.class_embed.weight", "class_predictor.weight") ) rename_keys.append(("sem_seg_head.predictor.class_embed.bias", "class_predictor.bias") ) for i in range(3 ): rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.weight""", F"""mask_embedder.{i}.0.weight""") ) rename_keys.append((F"""sem_seg_head.predictor.mask_embed.layers.{i}.bias""", F"""mask_embedder.{i}.0.bias""") ) # fmt: on return rename_keys def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : Tuple , _UpperCAmelCase : List[Any] ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = dct.pop(_UpperCAmelCase ) _UpperCAmelCase : List[str] = val def UpperCamelCase_ ( _UpperCAmelCase : List[Any] , _UpperCAmelCase : Tuple ) -> Optional[int]: """simple docstring""" _UpperCAmelCase : List[str] = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )] for i in range(len(backbone_config.depths ) ): _UpperCAmelCase : Optional[int] = num_features[i] for j in range(backbone_config.depths[i] ): # fmt: off # read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias) _UpperCAmelCase : Any = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.weight""" ) _UpperCAmelCase : Optional[int] = state_dict.pop(F"""backbone.layers.{i}.blocks.{j}.attn.qkv.bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : List[str] = in_proj_weight[:dim, :] _UpperCAmelCase : Tuple = in_proj_bias[: dim] _UpperCAmelCase : List[Any] = in_proj_weight[ dim : dim * 2, : ] _UpperCAmelCase : List[str] = in_proj_bias[ dim : dim * 2 ] _UpperCAmelCase : Optional[Any] = in_proj_weight[ -dim :, : ] _UpperCAmelCase : Dict = in_proj_bias[-dim :] # fmt: on def UpperCamelCase_ ( _UpperCAmelCase : Dict , _UpperCAmelCase : str ) -> Dict: """simple docstring""" _UpperCAmelCase : Union[str, Any] = config.decoder_config.hidden_size for idx in range(config.decoder_config.decoder_layers ): # read in weights + bias of self-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_weight""" ) _UpperCAmelCase : Dict = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.self_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : int = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[:config.hidden_size] _UpperCAmelCase : List[str] = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : List[str] = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : int = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Optional[Any] = in_proj_bias[-hidden_size :] # read in weights + bias of cross-attention input projection layer (in the original implementation, this is a single matrix + bias) _UpperCAmelCase : Optional[Any] = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_weight""" ) _UpperCAmelCase : Tuple = state_dict.pop(F"""sem_seg_head.predictor.transformer.decoder.layers.{idx}.multihead_attn.in_proj_bias""" ) # next, add query, keys and values (in that order) to the state dict _UpperCAmelCase : Any = in_proj_weight[: hidden_size, :] _UpperCAmelCase : Tuple = in_proj_bias[:config.hidden_size] _UpperCAmelCase : Dict = in_proj_weight[hidden_size : hidden_size * 2, :] _UpperCAmelCase : Dict = in_proj_bias[hidden_size : hidden_size * 2] _UpperCAmelCase : Optional[int] = in_proj_weight[-hidden_size :, :] _UpperCAmelCase : Union[str, Any] = in_proj_bias[-hidden_size :] # fmt: on def UpperCamelCase_ ( ) -> torch.Tensor: """simple docstring""" _UpperCAmelCase : int = "http://images.cocodataset.org/val2017/000000039769.jpg" _UpperCAmelCase : Any = Image.open(requests.get(_UpperCAmelCase , stream=_UpperCAmelCase ).raw ) return im @torch.no_grad() def UpperCamelCase_ ( _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : str , _UpperCAmelCase : bool = False ) -> List[str]: """simple docstring""" _UpperCAmelCase : Optional[int] = get_maskformer_config(_UpperCAmelCase ) # load original state_dict with open(_UpperCAmelCase , "rb" ) as f: _UpperCAmelCase : Optional[int] = pickle.load(_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = data["model"] # for name, param in state_dict.items(): # print(name, param.shape) # rename keys _UpperCAmelCase : Any = create_rename_keys(_UpperCAmelCase ) for src, dest in rename_keys: rename_key(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) read_in_swin_q_k_v(_UpperCAmelCase , config.backbone_config ) read_in_decoder_q_k_v(_UpperCAmelCase , _UpperCAmelCase ) # update to torch tensors for key, value in state_dict.items(): _UpperCAmelCase : Tuple = torch.from_numpy(_UpperCAmelCase ) # load 🤗 model _UpperCAmelCase : Union[str, Any] = MaskFormerForInstanceSegmentation(_UpperCAmelCase ) model.eval() for name, param in model.named_parameters(): print(_UpperCAmelCase , param.shape ) _UpperCAmelCase , _UpperCAmelCase : Any = model.load_state_dict(_UpperCAmelCase , strict=_UpperCAmelCase ) assert missing_keys == [ "model.pixel_level_module.encoder.model.layernorm.weight", "model.pixel_level_module.encoder.model.layernorm.bias", ] assert len(_UpperCAmelCase ) == 0, F"""Unexpected keys: {unexpected_keys}""" # verify results _UpperCAmelCase : Optional[int] = prepare_img() if "vistas" in model_name: _UpperCAmelCase : int = 65 elif "cityscapes" in model_name: _UpperCAmelCase : Tuple = 65_535 else: _UpperCAmelCase : Any = 255 _UpperCAmelCase : Optional[Any] = True if "ade" in model_name else False _UpperCAmelCase : Optional[int] = MaskFormerImageProcessor(ignore_index=_UpperCAmelCase , reduce_labels=_UpperCAmelCase ) _UpperCAmelCase : Optional[int] = image_processor(_UpperCAmelCase , return_tensors="pt" ) _UpperCAmelCase : List[Any] = model(**_UpperCAmelCase ) print("Logits:" , outputs.class_queries_logits[0, :3, :3] ) if model_name == "maskformer-swin-tiny-ade": _UpperCAmelCase : Tuple = torch.tensor( [[3.6_3_5_3, -4.4_7_7_0, -2.6_0_6_5], [0.5_0_8_1, -4.2_3_9_4, -3.5_3_4_3], [2.1_9_0_9, -5.0_3_5_3, -1.9_3_2_3]] ) assert torch.allclose(outputs.class_queries_logits[0, :3, :3] , _UpperCAmelCase , atol=1e-4 ) print("Looks ok!" ) if pytorch_dump_folder_path is not None: print(F"""Saving model and image processor to {pytorch_dump_folder_path}""" ) Path(_UpperCAmelCase ).mkdir(exist_ok=_UpperCAmelCase ) model.save_pretrained(_UpperCAmelCase ) image_processor.save_pretrained(_UpperCAmelCase ) if push_to_hub: print("Pushing model and image processor to the hub..." ) model.push_to_hub(F"""nielsr/{model_name}""" ) image_processor.push_to_hub(F"""nielsr/{model_name}""" ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Optional[Any] = argparse.ArgumentParser() # Required parameters parser.add_argument( """--model_name""", default="""maskformer-swin-tiny-ade""", type=str, help=("""Name of the MaskFormer model you'd like to convert""",), ) parser.add_argument( """--checkpoint_path""", default="""/Users/nielsrogge/Documents/MaskFormer_checkpoints/MaskFormer-Swin-tiny-ADE20k/model.pkl""", type=str, help="""Path to the original state dict (.pth file).""", ) parser.add_argument( """--pytorch_dump_folder_path""", default=None, type=str, help="""Path to the output PyTorch model directory.""" ) parser.add_argument( """--push_to_hub""", action="""store_true""", help="""Whether or not to push the converted model to the 🤗 hub.""" ) __SCREAMING_SNAKE_CASE : int = parser.parse_args() convert_maskformer_checkpoint( args.model_name, args.checkpoint_path, args.pytorch_dump_folder_path, args.push_to_hub )
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0
import unittest from transformers import is_torch_available from transformers.testing_utils import require_torch, slow, torch_device from ...generation.test_utils import GenerationTesterMixin from ...test_configuration_common import ConfigTester from ...test_modeling_common import ModelTesterMixin, ids_tensor from ...test_pipeline_mixin import PipelineTesterMixin if is_torch_available(): import torch from transformers import ( OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST, OpenAIGPTConfig, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification, OpenAIGPTLMHeadModel, OpenAIGPTModel, ) class SCREAMING_SNAKE_CASE__ : def __init__( self : List[str] , SCREAMING_SNAKE_CASE__ : Dict , SCREAMING_SNAKE_CASE__ : Tuple=1_3 , SCREAMING_SNAKE_CASE__ : str=7 , SCREAMING_SNAKE_CASE__ : List[str]=True , SCREAMING_SNAKE_CASE__ : Optional[Any]=True , SCREAMING_SNAKE_CASE__ : Union[str, Any]=True , SCREAMING_SNAKE_CASE__ : Optional[Any]=9_9 , SCREAMING_SNAKE_CASE__ : Optional[Any]=3_2 , SCREAMING_SNAKE_CASE__ : List[str]=5 , SCREAMING_SNAKE_CASE__ : List[Any]=4 , SCREAMING_SNAKE_CASE__ : Tuple=3_7 , SCREAMING_SNAKE_CASE__ : Any="gelu" , SCREAMING_SNAKE_CASE__ : Dict=0.1 , SCREAMING_SNAKE_CASE__ : Dict=0.1 , SCREAMING_SNAKE_CASE__ : int=5_1_2 , SCREAMING_SNAKE_CASE__ : int=1_6 , SCREAMING_SNAKE_CASE__ : Optional[int]=2 , SCREAMING_SNAKE_CASE__ : Any=0.02 , SCREAMING_SNAKE_CASE__ : Union[str, Any]=3 , SCREAMING_SNAKE_CASE__ : Optional[Any]=4 , SCREAMING_SNAKE_CASE__ : Optional[int]=None , ) -> Any: a_ : Tuple = parent a_ : int = batch_size a_ : Tuple = seq_length a_ : List[Any] = is_training a_ : List[str] = use_token_type_ids a_ : Dict = use_labels a_ : Any = vocab_size a_ : List[str] = hidden_size a_ : Tuple = num_hidden_layers a_ : List[Any] = num_attention_heads a_ : Dict = intermediate_size a_ : Any = hidden_act a_ : List[str] = hidden_dropout_prob a_ : Tuple = attention_probs_dropout_prob a_ : Optional[Any] = max_position_embeddings a_ : List[Any] = type_vocab_size a_ : int = type_sequence_label_size a_ : List[Any] = initializer_range a_ : List[str] = num_labels a_ : Union[str, Any] = num_choices a_ : str = scope a_ : Tuple = self.vocab_size - 1 def SCREAMING_SNAKE_CASE ( self : Union[str, Any] ) -> Any: a_ : Optional[int] = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size ) a_ : Any = None if self.use_token_type_ids: a_ : Tuple = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size ) a_ : List[Any] = None a_ : Union[str, Any] = None a_ : List[Any] = None if self.use_labels: a_ : Tuple = ids_tensor([self.batch_size] , self.type_sequence_label_size ) a_ : Any = ids_tensor([self.batch_size, self.seq_length] , self.num_labels ) a_ : List[Any] = ids_tensor([self.batch_size] , self.num_choices ) a_ : Union[str, Any] = OpenAIGPTConfig( vocab_size=self.vocab_size , n_embd=self.hidden_size , n_layer=self.num_hidden_layers , n_head=self.num_attention_heads , n_positions=self.max_position_embeddings , pad_token_id=self.pad_token_id , ) a_ : List[str] = ids_tensor([self.num_hidden_layers, self.num_attention_heads] , 2 ) return ( config, input_ids, head_mask, token_type_ids, sequence_labels, token_labels, choice_labels, ) def SCREAMING_SNAKE_CASE ( self : List[str] , SCREAMING_SNAKE_CASE__ : Any , SCREAMING_SNAKE_CASE__ : Union[str, Any] , SCREAMING_SNAKE_CASE__ : Any , SCREAMING_SNAKE_CASE__ : List[str] , *SCREAMING_SNAKE_CASE__ : Tuple ) -> Union[str, Any]: a_ : Dict = OpenAIGPTModel(config=SCREAMING_SNAKE_CASE__ ) model.to(SCREAMING_SNAKE_CASE__ ) model.eval() a_ : str = model(SCREAMING_SNAKE_CASE__ , token_type_ids=SCREAMING_SNAKE_CASE__ , head_mask=SCREAMING_SNAKE_CASE__ ) a_ : Dict = model(SCREAMING_SNAKE_CASE__ , token_type_ids=SCREAMING_SNAKE_CASE__ ) a_ : Dict = model(SCREAMING_SNAKE_CASE__ ) self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, self.seq_length, self.hidden_size) ) def SCREAMING_SNAKE_CASE ( self : Optional[int] , SCREAMING_SNAKE_CASE__ : List[str] , SCREAMING_SNAKE_CASE__ : Tuple , SCREAMING_SNAKE_CASE__ : Tuple , SCREAMING_SNAKE_CASE__ : Union[str, Any] , *SCREAMING_SNAKE_CASE__ : Optional[int] ) -> Any: a_ : str = OpenAIGPTLMHeadModel(SCREAMING_SNAKE_CASE__ ) model.to(SCREAMING_SNAKE_CASE__ ) model.eval() a_ : Optional[int] = model(SCREAMING_SNAKE_CASE__ , token_type_ids=SCREAMING_SNAKE_CASE__ , labels=SCREAMING_SNAKE_CASE__ ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def SCREAMING_SNAKE_CASE ( self : Optional[Any] , SCREAMING_SNAKE_CASE__ : Optional[Any] , SCREAMING_SNAKE_CASE__ : int , SCREAMING_SNAKE_CASE__ : Optional[int] , SCREAMING_SNAKE_CASE__ : Optional[Any] , *SCREAMING_SNAKE_CASE__ : Union[str, Any] ) -> Dict: a_ : int = OpenAIGPTDoubleHeadsModel(SCREAMING_SNAKE_CASE__ ) model.to(SCREAMING_SNAKE_CASE__ ) model.eval() a_ : str = model(SCREAMING_SNAKE_CASE__ , token_type_ids=SCREAMING_SNAKE_CASE__ , labels=SCREAMING_SNAKE_CASE__ ) self.parent.assertEqual(result.loss.shape , () ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) ) def SCREAMING_SNAKE_CASE ( self : Tuple , SCREAMING_SNAKE_CASE__ : Dict , SCREAMING_SNAKE_CASE__ : Dict , SCREAMING_SNAKE_CASE__ : List[Any] , SCREAMING_SNAKE_CASE__ : Union[str, Any] , *SCREAMING_SNAKE_CASE__ : str ) -> List[str]: a_ : Any = self.num_labels a_ : Dict = OpenAIGPTForSequenceClassification(SCREAMING_SNAKE_CASE__ ) model.to(SCREAMING_SNAKE_CASE__ ) model.eval() a_ : Dict = ids_tensor([self.batch_size] , self.type_sequence_label_size ) a_ : Any = model(SCREAMING_SNAKE_CASE__ , token_type_ids=SCREAMING_SNAKE_CASE__ , labels=SCREAMING_SNAKE_CASE__ ) self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) ) def SCREAMING_SNAKE_CASE ( self : Union[str, Any] ) -> Tuple: a_ : Optional[Any] = self.prepare_config_and_inputs() ( ( a_ ) , ( a_ ) , ( a_ ) , ( a_ ) , ( a_ ) , ( a_ ) , ( a_ ) , ) : Optional[Any] = config_and_inputs a_ : Optional[int] = { 'input_ids': input_ids, 'token_type_ids': token_type_ids, 'head_mask': head_mask, } return config, inputs_dict @require_torch class SCREAMING_SNAKE_CASE__ ( lowercase__ , lowercase__ , lowercase__ , unittest.TestCase ): snake_case__ : Tuple = ( (OpenAIGPTModel, OpenAIGPTLMHeadModel, OpenAIGPTDoubleHeadsModel, OpenAIGPTForSequenceClassification) if is_torch_available() else () ) snake_case__ : List[str] = ( (OpenAIGPTLMHeadModel,) if is_torch_available() else () ) # TODO (PVP): Add Double HeadsModel when generate() function is changed accordingly snake_case__ : Dict = ( { '''feature-extraction''': OpenAIGPTModel, '''text-classification''': OpenAIGPTForSequenceClassification, '''text-generation''': OpenAIGPTLMHeadModel, '''zero-shot''': OpenAIGPTForSequenceClassification, } if is_torch_available() else {} ) def SCREAMING_SNAKE_CASE ( self : List[str] , SCREAMING_SNAKE_CASE__ : Tuple , SCREAMING_SNAKE_CASE__ : Optional[Any] , SCREAMING_SNAKE_CASE__ : Tuple , SCREAMING_SNAKE_CASE__ : Dict , SCREAMING_SNAKE_CASE__ : List[str] ) -> Dict: if pipeline_test_casse_name == "ZeroShotClassificationPipelineTests": # Get `tokenizer does not have a padding token` error for both fast/slow tokenizers. # `OpenAIGPTConfig` was never used in pipeline tests, either because of a missing checkpoint or because a # tiny config could not be created. return True return False def SCREAMING_SNAKE_CASE ( self : int , SCREAMING_SNAKE_CASE__ : Dict , SCREAMING_SNAKE_CASE__ : Dict , SCREAMING_SNAKE_CASE__ : Any=False ) -> List[str]: a_ : str = super()._prepare_for_class(SCREAMING_SNAKE_CASE__ , SCREAMING_SNAKE_CASE__ , return_labels=SCREAMING_SNAKE_CASE__ ) if return_labels: if model_class.__name__ == "OpenAIGPTDoubleHeadsModel": a_ : Optional[Any] = torch.zeros( (self.model_tester.batch_size, self.model_tester.num_choices, self.model_tester.seq_length) , dtype=torch.long , device=SCREAMING_SNAKE_CASE__ , ) a_ : str = inputs_dict['labels'] a_ : Optional[int] = inputs_dict['labels'] a_ : Optional[int] = torch.zeros( (self.model_tester.batch_size, self.model_tester.num_choices) , dtype=torch.long , device=SCREAMING_SNAKE_CASE__ , ) a_ : Union[str, Any] = torch.zeros( self.model_tester.batch_size , dtype=torch.long , device=SCREAMING_SNAKE_CASE__ ) return inputs_dict def SCREAMING_SNAKE_CASE ( self : str ) -> List[Any]: a_ : str = OpenAIGPTModelTester(self ) a_ : int = ConfigTester(self , config_class=SCREAMING_SNAKE_CASE__ , n_embd=3_7 ) def SCREAMING_SNAKE_CASE ( self : Tuple ) -> Tuple: self.config_tester.run_common_tests() def SCREAMING_SNAKE_CASE ( self : List[Any] ) -> Tuple: a_ : Dict = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_openai_gpt_model(*SCREAMING_SNAKE_CASE__ ) def SCREAMING_SNAKE_CASE ( self : Optional[int] ) -> Tuple: a_ : Any = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_lm_head_model(*SCREAMING_SNAKE_CASE__ ) def SCREAMING_SNAKE_CASE ( self : Any ) -> Optional[Any]: a_ : Optional[int] = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_double_lm_head_model(*SCREAMING_SNAKE_CASE__ ) def SCREAMING_SNAKE_CASE ( self : Optional[Any] ) -> Optional[Any]: a_ : int = self.model_tester.prepare_config_and_inputs() self.model_tester.create_and_check_openai_gpt_for_sequence_classification(*SCREAMING_SNAKE_CASE__ ) @slow def SCREAMING_SNAKE_CASE ( self : List[str] ) -> str: for model_name in OPENAI_GPT_PRETRAINED_MODEL_ARCHIVE_LIST[:1]: a_ : str = OpenAIGPTModel.from_pretrained(SCREAMING_SNAKE_CASE__ ) self.assertIsNotNone(SCREAMING_SNAKE_CASE__ ) @require_torch class SCREAMING_SNAKE_CASE__ ( unittest.TestCase ): @slow def SCREAMING_SNAKE_CASE ( self : Dict ) -> int: a_ : Dict = OpenAIGPTLMHeadModel.from_pretrained('openai-gpt' ) model.to(SCREAMING_SNAKE_CASE__ ) a_ : List[Any] = torch.tensor([[4_8_1, 4_7_3_5, 5_4_4]] , dtype=torch.long , device=SCREAMING_SNAKE_CASE__ ) # the president is a_ : Tuple = [ 4_8_1, 4_7_3_5, 5_4_4, 2_4_6, 9_6_3, 8_7_0, 7_6_2, 2_3_9, 2_4_4, 4_0_4_7_7, 2_4_4, 2_4_9, 7_1_9, 8_8_1, 4_8_7, 5_4_4, 2_4_0, 2_4_4, 6_0_3, 4_8_1, ] # the president is a very good man. " \n " i\'m sure he is, " said the a_ : Dict = model.generate(SCREAMING_SNAKE_CASE__ , do_sample=SCREAMING_SNAKE_CASE__ ) self.assertListEqual(output_ids[0].tolist() , SCREAMING_SNAKE_CASE__ )
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'''simple docstring''' import bza import gzip import lzma import os import shutil import struct import tarfile import warnings import zipfile from abc import ABC, abstractmethod from pathlib import Path from typing import Dict, List, Optional, Type, Union from .. import config from .filelock import FileLock from .logging import get_logger __SCREAMING_SNAKE_CASE : Dict = get_logger(__name__) class lowerCamelCase_ : '''simple docstring''' def __init__( self : List[str] , A : Optional[str] = None ): _UpperCAmelCase : Dict = ( os.path.join(A , config.EXTRACTED_DATASETS_DIR ) if cache_dir else config.EXTRACTED_DATASETS_PATH ) _UpperCAmelCase : Union[str, Any] = Extractor def _A ( self : Tuple , A : str ): from .file_utils import hash_url_to_filename # Path where we extract compressed archives # We extract in the cache dir, and get the extracted path name by hashing the original path" _UpperCAmelCase : Dict = os.path.abspath(A ) return os.path.join(self.extract_dir , hash_url_to_filename(A ) ) def _A ( self : int , A : str , A : bool ): return force_extract or ( not os.path.isfile(A ) and not (os.path.isdir(A ) and os.listdir(A )) ) def _A ( self : Optional[int] , A : str , A : bool = False ): _UpperCAmelCase : Union[str, Any] = self.extractor.infer_extractor_format(A ) if not extractor_format: return input_path _UpperCAmelCase : Optional[Any] = self._get_output_path(A ) if self._do_extract(A , A ): self.extractor.extract(A , A , A ) return output_path class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod @abstractmethod def _A ( cls : str , A : Union[Path, str] , **A : Dict ): ... @staticmethod @abstractmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): ... class lowerCamelCase_ (snake_case__ , snake_case__ ): '''simple docstring''' __UpperCamelCase: List[bytes] = [] @staticmethod def _A ( A : Union[Path, str] , A : int ): with open(A , "rb" ) as f: return f.read(A ) @classmethod def _A ( cls : Any , A : Union[Path, str] , A : bytes = b"" ): if not magic_number: _UpperCAmelCase : Any = max(len(A ) for cls_magic_number in cls.magic_numbers ) try: _UpperCAmelCase : int = cls.read_magic_number(A , A ) except OSError: return False return any(magic_number.startswith(A ) for cls_magic_number in cls.magic_numbers ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' @classmethod def _A ( cls : str , A : Union[Path, str] , **A : List[Any] ): return tarfile.is_tarfile(A ) @staticmethod def _A ( A : Union[str, Any] , A : str ): def resolved(A : str ) -> str: return os.path.realpath(os.path.abspath(A ) ) def badpath(A : str , A : str ) -> bool: # joinpath will ignore base if path is absolute return not resolved(os.path.join(A , A ) ).startswith(A ) def badlink(A : str , A : str ) -> bool: # Links are interpreted relative to the directory containing the link _UpperCAmelCase : List[str] = resolved(os.path.join(A , os.path.dirname(info.name ) ) ) return badpath(info.linkname , base=A ) _UpperCAmelCase : Optional[int] = resolved(A ) for finfo in members: if badpath(finfo.name , A ): logger.error(F"""Extraction of {finfo.name} is blocked (illegal path)""" ) elif finfo.issym() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Symlink to {finfo.linkname}""" ) elif finfo.islnk() and badlink(A , A ): logger.error(F"""Extraction of {finfo.name} is blocked: Hard link to {finfo.linkname}""" ) else: yield finfo @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) _UpperCAmelCase : int = tarfile.open(A ) tar_file.extractall(A , members=TarExtractor.safemembers(A , A ) ) tar_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = [b"\x1F\x8B"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with gzip.open(A , "rb" ) as gzip_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [ b"PK\x03\x04", b"PK\x05\x06", # empty archive b"PK\x07\x08", # spanned archive ] @classmethod def _A ( cls : Dict , A : Union[Path, str] , A : bytes = b"" ): if super().is_extractable(A , magic_number=A ): return True try: # Alternative version of zipfile.is_zipfile that has less false positives, but misses executable zip archives. # From: https://github.com/python/cpython/pull/5053 from zipfile import ( _CD_SIGNATURE, _ECD_DISK_NUMBER, _ECD_DISK_START, _ECD_ENTRIES_TOTAL, _ECD_OFFSET, _ECD_SIZE, _EndRecData, sizeCentralDir, stringCentralDir, structCentralDir, ) with open(A , "rb" ) as fp: _UpperCAmelCase : Tuple = _EndRecData(A ) if endrec: if endrec[_ECD_ENTRIES_TOTAL] == 0 and endrec[_ECD_SIZE] == 0 and endrec[_ECD_OFFSET] == 0: return True # Empty zipfiles are still zipfiles elif endrec[_ECD_DISK_NUMBER] == endrec[_ECD_DISK_START]: fp.seek(endrec[_ECD_OFFSET] ) # Central directory is on the same disk if fp.tell() == endrec[_ECD_OFFSET] and endrec[_ECD_SIZE] >= sizeCentralDir: _UpperCAmelCase : Dict = fp.read(A ) # CD is where we expect it to be if len(A ) == sizeCentralDir: _UpperCAmelCase : Any = struct.unpack(A , A ) # CD is the right size if centdir[_CD_SIGNATURE] == stringCentralDir: return True # First central directory entry has correct magic number return False except Exception: # catch all errors in case future python versions change the zipfile internals return False @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): os.makedirs(A , exist_ok=A ) with zipfile.ZipFile(A , "r" ) as zip_file: zip_file.extractall(A ) zip_file.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Dict = [b"\xFD\x37\x7A\x58\x5A\x00"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with lzma.open(A ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[str] = [b"Rar!\x1a\x07\x00", b"Rar!\x1a\x07\x01\x00"] # RAR_ID # RAR5_ID @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.RARFILE_AVAILABLE: raise ImportError("Please pip install rarfile" ) import rarfile os.makedirs(A , exist_ok=A ) _UpperCAmelCase : List[str] = rarfile.RarFile(A ) rf.extractall(A ) rf.close() class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x28\xb5\x2F\xFD"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.ZSTANDARD_AVAILABLE: raise ImportError("Please pip install zstandard" ) import zstandard as zstd _UpperCAmelCase : Optional[Any] = zstd.ZstdDecompressor() with open(A , "rb" ) as ifh, open(A , "wb" ) as ofh: dctx.copy_stream(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[Any] = [b"\x42\x5A\x68"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): with bza.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: List[Any] = [b"\x37\x7A\xBC\xAF\x27\x1C"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.PY7ZR_AVAILABLE: raise ImportError("Please pip install py7zr" ) import pyazr os.makedirs(A , exist_ok=A ) with pyazr.SevenZipFile(A , "r" ) as archive: archive.extractall(A ) class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Optional[int] = [b"\x04\x22\x4D\x18"] @staticmethod def _A ( A : Union[Path, str] , A : Union[Path, str] ): if not config.LZ4_AVAILABLE: raise ImportError("Please pip install lz4" ) import lza.frame with lza.frame.open(A , "rb" ) as compressed_file: with open(A , "wb" ) as extracted_file: shutil.copyfileobj(A , A ) class lowerCamelCase_ : '''simple docstring''' __UpperCamelCase: Dict[str, Type[BaseExtractor]] = { "tar": TarExtractor, "gzip": GzipExtractor, "zip": ZipExtractor, "xz": XzExtractor, "rar": RarExtractor, "zstd": ZstdExtractor, "bz2": BzipaExtractor, "7z": SevenZipExtractor, # <Added version="2.4.0"/> "lz4": LzaExtractor, # <Added version="2.4.0"/> } @classmethod def _A ( cls : List[Any] ): return max( len(A ) for extractor in cls.extractors.values() if issubclass(A , A ) for extractor_magic_number in extractor.magic_numbers ) @staticmethod def _A ( A : Union[Path, str] , A : int ): try: return MagicNumberBaseExtractor.read_magic_number(A , magic_number_length=A ) except OSError: return b"" @classmethod def _A ( cls : Optional[Any] , A : Union[Path, str] , A : bool = False ): warnings.warn( "Method 'is_extractable' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'infer_extractor_format' instead." , category=A , ) _UpperCAmelCase : Union[str, Any] = cls.infer_extractor_format(A ) if extractor_format: return True if not return_extractor else (True, cls.extractors[extractor_format]) return False if not return_extractor else (False, None) @classmethod def _A ( cls : Dict , A : Union[Path, str] ): # <Added version="2.4.0"/> _UpperCAmelCase : Optional[int] = cls._get_magic_number_max_length() _UpperCAmelCase : str = cls._read_magic_number(A , A ) for extractor_format, extractor in cls.extractors.items(): if extractor.is_extractable(A , magic_number=A ): return extractor_format @classmethod def _A ( cls : List[str] , A : Union[Path, str] , A : Union[Path, str] , A : Optional[str] = None , A : Optional[BaseExtractor] = "deprecated" , ): os.makedirs(os.path.dirname(A ) , exist_ok=A ) # Prevent parallel extractions _UpperCAmelCase : Tuple = str(Path(A ).with_suffix(".lock" ) ) with FileLock(A ): shutil.rmtree(A , ignore_errors=A ) if extractor_format or extractor != "deprecated": if extractor != "deprecated" or not isinstance(A , A ): # passed as positional arg warnings.warn( "Parameter 'extractor' was deprecated in version 2.4.0 and will be removed in 3.0.0. " "Use 'extractor_format' instead." , category=A , ) _UpperCAmelCase : Tuple = extractor if extractor != "deprecated" else extractor_format else: _UpperCAmelCase : Tuple = cls.extractors[extractor_format] return extractor.extract(A , A ) else: warnings.warn( "Parameter 'extractor_format' was made required in version 2.4.0 and not passing it will raise an " "exception in 3.0.0." , category=A , ) for extractor in cls.extractors.values(): if extractor.is_extractable(A ): return extractor.extract(A , A )
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"""simple docstring""" import unittest from queue import Empty from threading import Thread from transformers import AutoTokenizer, TextIteratorStreamer, TextStreamer, is_torch_available from transformers.testing_utils import CaptureStdout, require_torch, torch_device from ..test_modeling_common import ids_tensor if is_torch_available(): import torch from transformers import AutoModelForCausalLM @require_torch class _UpperCAmelCase ( unittest.TestCase ): def A ( self : Optional[int] ) -> Tuple: lowercase_ : Optional[int] = AutoTokenizer.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ) lowercase_ : List[str] = AutoModelForCausalLM.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ).to(A ) lowercase_ : Any = -1 lowercase_ : List[Any] = ids_tensor((1, 5) , vocab_size=model.config.vocab_size ).to(A ) lowercase_ : str = model.generate(A , max_new_tokens=10 , do_sample=A ) lowercase_ : Optional[int] = tokenizer.decode(greedy_ids[0] ) with CaptureStdout() as cs: lowercase_ : Dict = TextStreamer(A ) model.generate(A , max_new_tokens=10 , do_sample=A , streamer=A ) # The greedy text should be printed to stdout, except for the final "\n" in the streamer lowercase_ : Any = cs.out[:-1] self.assertEqual(A , A ) def A ( self : List[Any] ) -> int: lowercase_ : int = AutoTokenizer.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ) lowercase_ : List[Any] = AutoModelForCausalLM.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ).to(A ) lowercase_ : Optional[int] = -1 lowercase_ : Dict = ids_tensor((1, 5) , vocab_size=model.config.vocab_size ).to(A ) lowercase_ : List[str] = model.generate(A , max_new_tokens=10 , do_sample=A ) lowercase_ : List[str] = tokenizer.decode(greedy_ids[0] ) lowercase_ : Any = TextIteratorStreamer(A ) lowercase_ : int = {'''input_ids''': input_ids, '''max_new_tokens''': 10, '''do_sample''': False, '''streamer''': streamer} lowercase_ : int = Thread(target=model.generate , kwargs=A ) thread.start() lowercase_ : List[Any] = '''''' for new_text in streamer: streamer_text += new_text self.assertEqual(A , A ) def A ( self : Optional[Any] ) -> Dict: lowercase_ : Dict = AutoTokenizer.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ) lowercase_ : List[Any] = AutoModelForCausalLM.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ).to(A ) lowercase_ : Any = -1 lowercase_ : List[str] = ids_tensor((1, 5) , vocab_size=model.config.vocab_size ).to(A ) lowercase_ : List[str] = model.generate(A , max_new_tokens=10 , do_sample=A ) lowercase_ : Union[str, Any] = greedy_ids[:, input_ids.shape[1] :] lowercase_ : Optional[int] = tokenizer.decode(new_greedy_ids[0] ) with CaptureStdout() as cs: lowercase_ : Union[str, Any] = TextStreamer(A , skip_prompt=A ) model.generate(A , max_new_tokens=10 , do_sample=A , streamer=A ) # The greedy text should be printed to stdout, except for the final "\n" in the streamer lowercase_ : List[str] = cs.out[:-1] self.assertEqual(A , A ) def A ( self : Any ) -> Any: # Tests that we can pass `decode_kwargs` to the streamer to control how the tokens are decoded. Must be tested # with actual models -- the dummy models' tokenizers are not aligned with their models, and # `skip_special_tokens=True` has no effect on them lowercase_ : int = AutoTokenizer.from_pretrained('''distilgpt2''' ) lowercase_ : str = AutoModelForCausalLM.from_pretrained('''distilgpt2''' ).to(A ) lowercase_ : str = -1 lowercase_ : Dict = torch.ones((1, 5) , device=A ).long() * model.config.bos_token_id with CaptureStdout() as cs: lowercase_ : List[str] = TextStreamer(A , skip_special_tokens=A ) model.generate(A , max_new_tokens=1 , do_sample=A , streamer=A ) # The prompt contains a special token, so the streamer should not print it. As such, the output text, when # re-tokenized, must only contain one token lowercase_ : str = cs.out[:-1] # Remove the final "\n" lowercase_ : Union[str, Any] = tokenizer(A , return_tensors='''pt''' ) self.assertEqual(streamer_text_tokenized.input_ids.shape , (1, 1) ) def A ( self : List[str] ) -> List[Any]: lowercase_ : List[Any] = AutoTokenizer.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ) lowercase_ : Optional[Any] = AutoModelForCausalLM.from_pretrained('''hf-internal-testing/tiny-random-gpt2''' ).to(A ) lowercase_ : Optional[int] = -1 lowercase_ : Optional[Any] = ids_tensor((1, 5) , vocab_size=model.config.vocab_size ).to(A ) lowercase_ : Optional[Any] = TextIteratorStreamer(A , timeout=0.001 ) lowercase_ : List[Any] = {'''input_ids''': input_ids, '''max_new_tokens''': 10, '''do_sample''': False, '''streamer''': streamer} lowercase_ : Optional[int] = Thread(target=model.generate , kwargs=A ) thread.start() # The streamer will timeout after 0.001 seconds, so an exception will be raised with self.assertRaises(A ): lowercase_ : Union[str, Any] = '''''' for new_text in streamer: streamer_text += new_text
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'''simple docstring''' from typing import Any def UpperCamelCase_ ( _UpperCAmelCase : list , _UpperCAmelCase : list , _UpperCAmelCase : dict , _UpperCAmelCase : dict , _UpperCAmelCase : dict , ) -> list: """simple docstring""" _validation( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) # Creates data structures and fill initial step _UpperCAmelCase : dict = {} _UpperCAmelCase : dict = {} for state in states_space: _UpperCAmelCase : Union[str, Any] = observations_space[0] _UpperCAmelCase : Tuple = ( initial_probabilities[state] * emission_probabilities[state][observation] ) _UpperCAmelCase : List[str] = None # Fills the data structure with the probabilities of # different transitions and pointers to previous states for o in range(1 , len(_UpperCAmelCase ) ): _UpperCAmelCase : Optional[Any] = observations_space[o] _UpperCAmelCase : int = observations_space[o - 1] for state in states_space: # Calculates the argmax for probability function _UpperCAmelCase : str = "" _UpperCAmelCase : Tuple = -1 for k_state in states_space: _UpperCAmelCase : Any = ( probabilities[(k_state, prior_observation)] * transition_probabilities[k_state][state] * emission_probabilities[state][observation] ) if probability > max_probability: _UpperCAmelCase : Union[str, Any] = probability _UpperCAmelCase : str = k_state # Update probabilities and pointers dicts _UpperCAmelCase : Optional[int] = ( probabilities[(arg_max, prior_observation)] * transition_probabilities[arg_max][state] * emission_probabilities[state][observation] ) _UpperCAmelCase : Tuple = arg_max # The final observation _UpperCAmelCase : Optional[Any] = observations_space[len(_UpperCAmelCase ) - 1] # argmax for given final observation _UpperCAmelCase : List[str] = "" _UpperCAmelCase : Any = -1 for k_state in states_space: _UpperCAmelCase : Optional[int] = probabilities[(k_state, final_observation)] if probability > max_probability: _UpperCAmelCase : int = probability _UpperCAmelCase : Dict = k_state _UpperCAmelCase : Dict = arg_max # Process pointers backwards _UpperCAmelCase : List[Any] = last_state _UpperCAmelCase : str = [] for o in range(len(_UpperCAmelCase ) - 1 , -1 , -1 ): result.append(_UpperCAmelCase ) _UpperCAmelCase : List[Any] = pointers[previous, observations_space[o]] result.reverse() return result def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_not_empty( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , ) _validate_lists(_UpperCAmelCase , _UpperCAmelCase ) _validate_dicts( _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" if not all( [ observations_space, states_space, initial_probabilities, transition_probabilities, emission_probabilities, ] ): raise ValueError("There's an empty parameter" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any ) -> None: """simple docstring""" _validate_list(_UpperCAmelCase , "observations_space" ) _validate_list(_UpperCAmelCase , "states_space" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list""" raise ValueError(_UpperCAmelCase ) else: for x in _object: if not isinstance(_UpperCAmelCase , _UpperCAmelCase ): _UpperCAmelCase : Optional[int] = F"""{var_name} must be a list of strings""" raise ValueError(_UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : Any , _UpperCAmelCase : Any , ) -> None: """simple docstring""" _validate_dict(_UpperCAmelCase , "initial_probabilities" , _UpperCAmelCase ) _validate_nested_dict(_UpperCAmelCase , "transition_probabilities" ) _validate_nested_dict(_UpperCAmelCase , "emission_probabilities" ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str ) -> None: """simple docstring""" _validate_dict(_object , _UpperCAmelCase , _UpperCAmelCase ) for x in _object.values(): _validate_dict(_UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase , _UpperCAmelCase ) def UpperCamelCase_ ( _UpperCAmelCase : Any , _UpperCAmelCase : str , _UpperCAmelCase : type , _UpperCAmelCase : bool = False ) -> None: """simple docstring""" if not isinstance(_object , _UpperCAmelCase ): _UpperCAmelCase : Any = F"""{var_name} must be a dict""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object ): _UpperCAmelCase : Tuple = F"""{var_name} all keys must be strings""" raise ValueError(_UpperCAmelCase ) if not all(isinstance(_UpperCAmelCase , _UpperCAmelCase ) for x in _object.values() ): _UpperCAmelCase : List[str] = "nested dictionary " if nested else "" _UpperCAmelCase : List[str] = F"""{var_name} {nested_text}all values must be {value_type.__name__}""" raise ValueError(_UpperCAmelCase ) if __name__ == "__main__": from doctest import testmod testmod()
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'''simple docstring''' from typing import List, Optional, Union from ...image_utils import ImageInput from ...processing_utils import ProcessorMixin from ...tokenization_utils_base import BatchEncoding, PaddingStrategy, PreTokenizedInput, TextInput, TruncationStrategy from ...utils import TensorType class _a ( __a ): __a : List[str] = ["""image_processor""", """tokenizer"""] __a : List[str] = """BlipImageProcessor""" __a : Union[str, Any] = ("""BertTokenizer""", """BertTokenizerFast""") def __init__( self : Any , lowercase : List[str] , lowercase : Union[str, Any] ): '''simple docstring''' UpperCAmelCase = False super().__init__(lowercase , lowercase ) UpperCAmelCase = self.image_processor def __call__( self : Optional[Any] , lowercase : ImageInput = None , lowercase : Union[TextInput, PreTokenizedInput, List[TextInput], List[PreTokenizedInput]] = None , lowercase : bool = True , lowercase : Union[bool, str, PaddingStrategy] = False , lowercase : Union[bool, str, TruncationStrategy] = None , lowercase : Optional[int] = None , lowercase : int = 0 , lowercase : Optional[int] = None , lowercase : Optional[bool] = None , lowercase : bool = False , lowercase : bool = False , lowercase : bool = False , lowercase : bool = False , lowercase : bool = False , lowercase : bool = True , lowercase : Optional[Union[str, TensorType]] = None , **lowercase : Any , ): '''simple docstring''' if images is None and text is None: raise ValueError('''You have to specify either images or text.''' ) # Get only text if images is None: UpperCAmelCase = self.tokenizer UpperCAmelCase = self.tokenizer( text=lowercase , add_special_tokens=lowercase , padding=lowercase , truncation=lowercase , max_length=lowercase , stride=lowercase , pad_to_multiple_of=lowercase , return_attention_mask=lowercase , return_overflowing_tokens=lowercase , return_special_tokens_mask=lowercase , return_offsets_mapping=lowercase , return_token_type_ids=lowercase , return_length=lowercase , verbose=lowercase , return_tensors=lowercase , **lowercase , ) return text_encoding # add pixel_values UpperCAmelCase = self.image_processor(lowercase , return_tensors=lowercase ) if text is not None: UpperCAmelCase = self.tokenizer( text=lowercase , add_special_tokens=lowercase , padding=lowercase , truncation=lowercase , max_length=lowercase , stride=lowercase , pad_to_multiple_of=lowercase , return_attention_mask=lowercase , return_overflowing_tokens=lowercase , return_special_tokens_mask=lowercase , return_offsets_mapping=lowercase , return_token_type_ids=lowercase , return_length=lowercase , verbose=lowercase , return_tensors=lowercase , **lowercase , ) else: UpperCAmelCase = None if text_encoding is not None: encoding_image_processor.update(lowercase ) return encoding_image_processor def A ( self : Union[str, Any] , *lowercase : Union[str, Any] , **lowercase : Optional[Any] ): '''simple docstring''' return self.tokenizer.batch_decode(*lowercase , **lowercase ) def A ( self : Dict , *lowercase : List[str] , **lowercase : Optional[Any] ): '''simple docstring''' return self.tokenizer.decode(*lowercase , **lowercase ) @property def A ( self : str ): '''simple docstring''' UpperCAmelCase = self.tokenizer.model_input_names UpperCAmelCase = self.image_processor.model_input_names return list(dict.fromkeys(tokenizer_input_names + image_processor_input_names ) )
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import MobileViTImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : Optional[Any] , A : Dict , A : Dict=7 , A : Optional[int]=3 , A : Optional[int]=18 , A : Dict=30 , A : List[Any]=400 , A : Union[str, Any]=True , A : Tuple=None , A : List[Any]=True , A : int=None , A : Optional[int]=True , ): _UpperCAmelCase : Optional[int] = size if size is not None else {"shortest_edge": 20} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : List[Any] = parent _UpperCAmelCase : Union[str, Any] = batch_size _UpperCAmelCase : Optional[Any] = num_channels _UpperCAmelCase : Union[str, Any] = image_size _UpperCAmelCase : int = min_resolution _UpperCAmelCase : Optional[int] = max_resolution _UpperCAmelCase : List[str] = do_resize _UpperCAmelCase : Optional[Any] = size _UpperCAmelCase : Tuple = do_center_crop _UpperCAmelCase : Optional[int] = crop_size _UpperCAmelCase : Optional[Any] = do_flip_channel_order def _A ( self : Dict ): return { "do_resize": self.do_resize, "size": self.size, "do_center_crop": self.do_center_crop, "crop_size": self.crop_size, "do_flip_channel_order": self.do_flip_channel_order, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Tuple = MobileViTImageProcessor if is_vision_available() else None def _A ( self : List[Any] ): _UpperCAmelCase : Any = MobileViTImageProcessingTester(self ) @property def _A ( self : int ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Tuple ): _UpperCAmelCase : int = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "size" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "center_crop" ) ) self.assertTrue(hasattr(A , "do_flip_channel_order" ) ) def _A ( self : Any ): _UpperCAmelCase : List[str] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 20} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Dict = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Any ): pass def _A ( self : Dict ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random PIL images _UpperCAmelCase : Union[str, Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A ) for image in image_inputs: self.assertIsInstance(A , Image.Image ) # Test not batched input _UpperCAmelCase : List[Any] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Union[str, Any] ): # Initialize image_processing _UpperCAmelCase : Dict = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for image in image_inputs: self.assertIsInstance(A , np.ndarray ) # Test not batched input _UpperCAmelCase : Optional[int] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : Any ): # Initialize image_processing _UpperCAmelCase : Any = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[Any] = prepare_image_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for image in image_inputs: self.assertIsInstance(A , torch.Tensor ) # Test not batched input _UpperCAmelCase : List[str] = image_processing(image_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( 1, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Any = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_images.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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'''simple docstring''' from typing import TYPE_CHECKING from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available __a = { "configuration_timesformer": ["TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "TimesformerConfig"], } try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: __a = [ "TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST", "TimesformerModel", "TimesformerForVideoClassification", "TimesformerPreTrainedModel", ] if TYPE_CHECKING: from .configuration_timesformer import TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, TimesformerConfig try: if not is_torch_available(): raise OptionalDependencyNotAvailable() except OptionalDependencyNotAvailable: pass else: from .modeling_timesformer import ( TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST, TimesformerForVideoClassification, TimesformerModel, TimesformerPreTrainedModel, ) else: import sys __a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
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'''simple docstring''' def UpperCamelCase_ ( _UpperCAmelCase : int , _UpperCAmelCase : int ) -> int: """simple docstring""" _UpperCAmelCase : List[str] = 1 # To kept the Calculated Value # Since C(n, k) = C(n, n-k) if k > (n - k): _UpperCAmelCase : Any = n - k # Calculate C(n,k) for i in range(_UpperCAmelCase ): result *= n - i result //= i + 1 return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return binomial_coefficient(2 * node_count , _UpperCAmelCase ) // (node_count + 1) def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" if n < 0: raise ValueError("factorial() not defined for negative values" ) _UpperCAmelCase : List[str] = 1 for i in range(1 , n + 1 ): result *= i return result def UpperCamelCase_ ( _UpperCAmelCase : int ) -> int: """simple docstring""" return catalan_number(_UpperCAmelCase ) * factorial(_UpperCAmelCase ) if __name__ == "__main__": __SCREAMING_SNAKE_CASE : Dict = int(input("""Enter the number of nodes: """).strip() or 0) if node_count <= 0: raise ValueError("""We need some nodes to work with.""") print( F'Given {node_count} nodes, there are {binary_tree_count(node_count)} ' F'binary trees and {catalan_number(node_count)} binary search trees.' )
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from typing import Optional import torch import torch.utils.checkpoint from torch import Tensor, nn from torch.nn import BCEWithLogitsLoss, CrossEntropyLoss, MSELoss from ...activations import ACTaFN from ...modeling_outputs import ( BackboneOutput, BaseModelOutputWithNoAttention, BaseModelOutputWithPoolingAndNoAttention, ImageClassifierOutputWithNoAttention, ) from ...modeling_utils import PreTrainedModel from ...utils import ( add_code_sample_docstrings, add_start_docstrings, add_start_docstrings_to_model_forward, logging, replace_return_docstrings, ) from ...utils.backbone_utils import BackboneMixin from .configuration_resnet import ResNetConfig _snake_case = logging.get_logger(__name__) # General docstring _snake_case = "ResNetConfig" # Base docstring _snake_case = "microsoft/resnet-50" _snake_case = [1, 2048, 7, 7] # Image classification docstring _snake_case = "microsoft/resnet-50" _snake_case = "tiger cat" _snake_case = [ "microsoft/resnet-50", # See all resnet models at https://huggingface.co/models?filter=resnet ] class UpperCAmelCase_ ( nn.Module): def __init__( self, __a, __a, __a = 3, __a = 1, __a = "relu"): '''simple docstring''' super().__init__() _lowerCAmelCase : Optional[Any] = nn.Convad( __a, __a, kernel_size=__a, stride=__a, padding=kernel_size // 2, bias=__a) _lowerCAmelCase : List[Any] = nn.BatchNormad(__a) _lowerCAmelCase : Optional[Any] = ACTaFN[activation] if activation is not None else nn.Identity() def snake_case__ ( self, __a): '''simple docstring''' _lowerCAmelCase : List[Any] = self.convolution(__a) _lowerCAmelCase : Dict = self.normalization(__a) _lowerCAmelCase : List[Any] = self.activation(__a) return hidden_state class UpperCAmelCase_ ( nn.Module): def __init__( self, __a): '''simple docstring''' super().__init__() _lowerCAmelCase : Optional[int] = ResNetConvLayer( config.num_channels, config.embedding_size, kernel_size=7, stride=2, activation=config.hidden_act) _lowerCAmelCase : Dict = nn.MaxPoolad(kernel_size=3, stride=2, padding=1) _lowerCAmelCase : Tuple = config.num_channels def snake_case__ ( self, __a): '''simple docstring''' _lowerCAmelCase : Optional[Any] = pixel_values.shape[1] if num_channels != self.num_channels: raise ValueError( "Make sure that the channel dimension of the pixel values match with the one set in the configuration.") _lowerCAmelCase : int = self.embedder(__a) _lowerCAmelCase : Tuple = self.pooler(__a) return embedding class UpperCAmelCase_ ( nn.Module): def __init__( self, __a, __a, __a = 2): '''simple docstring''' super().__init__() _lowerCAmelCase : Union[str, Any] = nn.Convad(__a, __a, kernel_size=1, stride=__a, bias=__a) _lowerCAmelCase : int = nn.BatchNormad(__a) def snake_case__ ( self, __a): '''simple docstring''' _lowerCAmelCase : Optional[Any] = self.convolution(__a) _lowerCAmelCase : Dict = self.normalization(__a) return hidden_state class UpperCAmelCase_ ( nn.Module): def __init__( self, __a, __a, __a = 1, __a = "relu"): '''simple docstring''' super().__init__() _lowerCAmelCase : Tuple = in_channels != out_channels or stride != 1 _lowerCAmelCase : Tuple = ( ResNetShortCut(__a, __a, stride=__a) if should_apply_shortcut else nn.Identity() ) _lowerCAmelCase : str = nn.Sequential( ResNetConvLayer(__a, __a, stride=__a), ResNetConvLayer(__a, __a, activation=__a), ) _lowerCAmelCase : Union[str, Any] = ACTaFN[activation] def snake_case__ ( self, __a): '''simple docstring''' _lowerCAmelCase : int = hidden_state _lowerCAmelCase : Dict = self.layer(__a) _lowerCAmelCase : Optional[int] = self.shortcut(__a) hidden_state += residual _lowerCAmelCase : Tuple = self.activation(__a) return hidden_state class UpperCAmelCase_ ( nn.Module): def __init__( self, __a, __a, __a = 1, __a = "relu", __a = 4): '''simple docstring''' super().__init__() _lowerCAmelCase : int = in_channels != out_channels or stride != 1 _lowerCAmelCase : str = out_channels // reduction _lowerCAmelCase : Optional[int] = ( ResNetShortCut(__a, __a, stride=__a) if should_apply_shortcut else nn.Identity() ) _lowerCAmelCase : Tuple = nn.Sequential( ResNetConvLayer(__a, __a, kernel_size=1), ResNetConvLayer(__a, __a, stride=__a), ResNetConvLayer(__a, __a, kernel_size=1, activation=__a), ) _lowerCAmelCase : Optional[int] = ACTaFN[activation] def snake_case__ ( self, __a): '''simple docstring''' _lowerCAmelCase : Any = hidden_state _lowerCAmelCase : Any = self.layer(__a) _lowerCAmelCase : str = self.shortcut(__a) hidden_state += residual _lowerCAmelCase : int = self.activation(__a) return hidden_state class UpperCAmelCase_ ( nn.Module): def __init__( self, __a, __a, __a, __a = 2, __a = 2, ): '''simple docstring''' super().__init__() _lowerCAmelCase : List[str] = ResNetBottleNeckLayer if config.layer_type == "bottleneck" else ResNetBasicLayer _lowerCAmelCase : Dict = nn.Sequential( # downsampling is done in the first layer with stride of 2 layer(__a, __a, stride=__a, activation=config.hidden_act), *[layer(__a, __a, activation=config.hidden_act) for _ in range(depth - 1)], ) def snake_case__ ( self, __a): '''simple docstring''' _lowerCAmelCase : Tuple = input for layer in self.layers: _lowerCAmelCase : Tuple = layer(__a) return hidden_state class UpperCAmelCase_ ( nn.Module): def __init__( self, __a): '''simple docstring''' super().__init__() _lowerCAmelCase : Any = nn.ModuleList([]) # based on `downsample_in_first_stage` the first layer of the first stage may or may not downsample the input self.stages.append( ResNetStage( __a, config.embedding_size, config.hidden_sizes[0], stride=2 if config.downsample_in_first_stage else 1, depth=config.depths[0], )) _lowerCAmelCase : Union[str, Any] = zip(config.hidden_sizes, config.hidden_sizes[1:]) for (in_channels, out_channels), depth in zip(__a, config.depths[1:]): self.stages.append(ResNetStage(__a, __a, __a, depth=__a)) def snake_case__ ( self, __a, __a = False, __a = True): '''simple docstring''' _lowerCAmelCase : Optional[int] = () if output_hidden_states else None for stage_module in self.stages: if output_hidden_states: _lowerCAmelCase : Optional[Any] = hidden_states + (hidden_state,) _lowerCAmelCase : List[str] = stage_module(__a) if output_hidden_states: _lowerCAmelCase : str = hidden_states + (hidden_state,) if not return_dict: return tuple(v for v in [hidden_state, hidden_states] if v is not None) return BaseModelOutputWithNoAttention( last_hidden_state=__a, hidden_states=__a, ) class UpperCAmelCase_ ( a): lowerCamelCase__ = ResNetConfig lowerCamelCase__ = 'resnet' lowerCamelCase__ = 'pixel_values' lowerCamelCase__ = True def snake_case__ ( self, __a): '''simple docstring''' if isinstance(__a, nn.Convad): nn.init.kaiming_normal_(module.weight, mode="fan_out", nonlinearity="relu") elif isinstance(__a, (nn.BatchNormad, nn.GroupNorm)): nn.init.constant_(module.weight, 1) nn.init.constant_(module.bias, 0) def snake_case__ ( self, __a, __a=False): '''simple docstring''' if isinstance(__a, __a): _lowerCAmelCase : Tuple = value _snake_case = R"\n This model is a PyTorch [torch.nn.Module](https://pytorch.org/docs/stable/nn.html#torch.nn.Module) subclass. Use it\n as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage and\n behavior.\n\n Parameters:\n config ([`ResNetConfig`]): Model configuration class with all the parameters of the model.\n Initializing with a config file does not load the weights associated with the model, only the\n configuration. Check out the [`~PreTrainedModel.from_pretrained`] method to load the model weights.\n" _snake_case = R"\n Args:\n pixel_values (`torch.FloatTensor` of shape `(batch_size, num_channels, height, width)`):\n Pixel values. Pixel values can be obtained using [`AutoImageProcessor`]. See\n [`ConvNextImageProcessor.__call__`] for details.\n\n output_hidden_states (`bool`, *optional*):\n Whether or not to return the hidden states of all layers. See `hidden_states` under returned tensors for\n more detail.\n return_dict (`bool`, *optional*):\n Whether or not to return a [`~utils.ModelOutput`] instead of a plain tuple.\n" @add_start_docstrings( 'The bare ResNet model outputting raw features without any specific head on top.' , a , ) class UpperCAmelCase_ ( a): def __init__( self, __a): '''simple docstring''' super().__init__(__a) _lowerCAmelCase : Tuple = config _lowerCAmelCase : List[str] = ResNetEmbeddings(__a) _lowerCAmelCase : List[str] = ResNetEncoder(__a) _lowerCAmelCase : Any = nn.AdaptiveAvgPoolad((1, 1)) # Initialize weights and apply final processing self.post_init() @add_start_docstrings_to_model_forward(__a) @add_code_sample_docstrings( checkpoint=_CHECKPOINT_FOR_DOC, output_type=__a, config_class=_CONFIG_FOR_DOC, modality="vision", expected_output=_EXPECTED_OUTPUT_SHAPE, ) def snake_case__ ( self, __a, __a = None, __a = None): '''simple docstring''' _lowerCAmelCase : Union[str, Any] = ( output_hidden_states if output_hidden_states is not None else self.config.output_hidden_states ) _lowerCAmelCase : List[str] = return_dict if return_dict is not None else self.config.use_return_dict _lowerCAmelCase : List[str] = self.embedder(__a) _lowerCAmelCase : int = self.encoder( __a, output_hidden_states=__a, return_dict=__a) _lowerCAmelCase : int = encoder_outputs[0] _lowerCAmelCase : List[Any] = self.pooler(__a) if not return_dict: return (last_hidden_state, pooled_output) + encoder_outputs[1:] return BaseModelOutputWithPoolingAndNoAttention( last_hidden_state=__a, pooler_output=__a, hidden_states=encoder_outputs.hidden_states, ) @add_start_docstrings( '\n ResNet Model with an image classification head on top (a linear layer on top of the pooled features), e.g. for\n ImageNet.\n ' , a , ) class UpperCAmelCase_ ( a): def __init__( self, __a): '''simple docstring''' super().__init__(__a) _lowerCAmelCase : Tuple = config.num_labels _lowerCAmelCase : str = ResNetModel(__a) # classification head _lowerCAmelCase : str = nn.Sequential( nn.Flatten(), nn.Linear(config.hidden_sizes[-1], config.num_labels) if config.num_labels > 0 else nn.Identity(), ) # initialize weights and apply final processing self.post_init() @add_start_docstrings_to_model_forward(__a) @add_code_sample_docstrings( checkpoint=_IMAGE_CLASS_CHECKPOINT, output_type=__a, config_class=_CONFIG_FOR_DOC, expected_output=_IMAGE_CLASS_EXPECTED_OUTPUT, ) def snake_case__ ( self, __a = None, __a = None, __a = None, __a = None, ): '''simple docstring''' _lowerCAmelCase : List[Any] = return_dict if return_dict is not None else self.config.use_return_dict _lowerCAmelCase : List[Any] = self.resnet(__a, output_hidden_states=__a, return_dict=__a) _lowerCAmelCase : Tuple = outputs.pooler_output if return_dict else outputs[1] _lowerCAmelCase : int = self.classifier(__a) _lowerCAmelCase : Optional[Any] = None if labels is not None: if self.config.problem_type is None: if self.num_labels == 1: _lowerCAmelCase : Optional[int] = "regression" elif self.num_labels > 1 and (labels.dtype == torch.long or labels.dtype == torch.int): _lowerCAmelCase : Optional[Any] = "single_label_classification" else: _lowerCAmelCase : Tuple = "multi_label_classification" if self.config.problem_type == "regression": _lowerCAmelCase : Optional[int] = MSELoss() if self.num_labels == 1: _lowerCAmelCase : int = loss_fct(logits.squeeze(), labels.squeeze()) else: _lowerCAmelCase : Optional[Any] = loss_fct(__a, __a) elif self.config.problem_type == "single_label_classification": _lowerCAmelCase : List[str] = CrossEntropyLoss() _lowerCAmelCase : Any = loss_fct(logits.view(-1, self.num_labels), labels.view(-1)) elif self.config.problem_type == "multi_label_classification": _lowerCAmelCase : Any = BCEWithLogitsLoss() _lowerCAmelCase : str = loss_fct(__a, __a) if not return_dict: _lowerCAmelCase : Dict = (logits,) + outputs[2:] return (loss,) + output if loss is not None else output return ImageClassifierOutputWithNoAttention(loss=__a, logits=__a, hidden_states=outputs.hidden_states) @add_start_docstrings( '\n ResNet backbone, to be used with frameworks like DETR and MaskFormer.\n ' , a , ) class UpperCAmelCase_ ( a , a): def __init__( self, __a): '''simple docstring''' super().__init__(__a) super()._init_backbone(__a) _lowerCAmelCase : Dict = [config.embedding_size] + config.hidden_sizes _lowerCAmelCase : List[Any] = ResNetEmbeddings(__a) _lowerCAmelCase : Union[str, Any] = ResNetEncoder(__a) # initialize weights and apply final processing self.post_init() @add_start_docstrings_to_model_forward(__a) @replace_return_docstrings(output_type=__a, config_class=_CONFIG_FOR_DOC) def snake_case__ ( self, __a, __a = None, __a = None): '''simple docstring''' _lowerCAmelCase : Tuple = return_dict if return_dict is not None else self.config.use_return_dict _lowerCAmelCase : Optional[Any] = ( output_hidden_states if output_hidden_states is not None else self.config.output_hidden_states ) _lowerCAmelCase : Union[str, Any] = self.embedder(__a) _lowerCAmelCase : Union[str, Any] = self.encoder(__a, output_hidden_states=__a, return_dict=__a) _lowerCAmelCase : Tuple = outputs.hidden_states _lowerCAmelCase : Dict = () for idx, stage in enumerate(self.stage_names): if stage in self.out_features: feature_maps += (hidden_states[idx],) if not return_dict: _lowerCAmelCase : str = (feature_maps,) if output_hidden_states: output += (outputs.hidden_states,) return output return BackboneOutput( feature_maps=__a, hidden_states=outputs.hidden_states if output_hidden_states else None, attentions=__a, )
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'''simple docstring''' import json from typing import List, Optional, Tuple from tokenizers import normalizers from ...tokenization_utils_fast import PreTrainedTokenizerFast from ...utils import logging from .tokenization_distilbert import DistilBertTokenizer __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : str = {"""vocab_file""": """vocab.txt""", """tokenizer_file""": """tokenizer.json"""} __SCREAMING_SNAKE_CASE : Dict = { """vocab_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/vocab.txt""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/vocab.txt""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/vocab.txt""" ), """distilbert-base-german-cased""": """https://huggingface.co/distilbert-base-german-cased/resolve/main/vocab.txt""", """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/vocab.txt""" ), }, """tokenizer_file""": { """distilbert-base-uncased""": """https://huggingface.co/distilbert-base-uncased/resolve/main/tokenizer.json""", """distilbert-base-uncased-distilled-squad""": ( """https://huggingface.co/distilbert-base-uncased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-cased""": """https://huggingface.co/distilbert-base-cased/resolve/main/tokenizer.json""", """distilbert-base-cased-distilled-squad""": ( """https://huggingface.co/distilbert-base-cased-distilled-squad/resolve/main/tokenizer.json""" ), """distilbert-base-german-cased""": ( """https://huggingface.co/distilbert-base-german-cased/resolve/main/tokenizer.json""" ), """distilbert-base-multilingual-cased""": ( """https://huggingface.co/distilbert-base-multilingual-cased/resolve/main/tokenizer.json""" ), }, } __SCREAMING_SNAKE_CASE : Optional[Any] = { """distilbert-base-uncased""": 512, """distilbert-base-uncased-distilled-squad""": 512, """distilbert-base-cased""": 512, """distilbert-base-cased-distilled-squad""": 512, """distilbert-base-german-cased""": 512, """distilbert-base-multilingual-cased""": 512, } __SCREAMING_SNAKE_CASE : List[Any] = { """distilbert-base-uncased""": {"""do_lower_case""": True}, """distilbert-base-uncased-distilled-squad""": {"""do_lower_case""": True}, """distilbert-base-cased""": {"""do_lower_case""": False}, """distilbert-base-cased-distilled-squad""": {"""do_lower_case""": False}, """distilbert-base-german-cased""": {"""do_lower_case""": False}, """distilbert-base-multilingual-cased""": {"""do_lower_case""": False}, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: Union[str, Any] = VOCAB_FILES_NAMES __UpperCamelCase: str = PRETRAINED_VOCAB_FILES_MAP __UpperCamelCase: Optional[Any] = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES __UpperCamelCase: Any = PRETRAINED_INIT_CONFIGURATION __UpperCamelCase: str = ["input_ids", "attention_mask"] __UpperCamelCase: List[str] = DistilBertTokenizer def __init__( self : str , A : int=None , A : Tuple=None , A : Tuple=True , A : Dict="[UNK]" , A : List[Any]="[SEP]" , A : Optional[Any]="[PAD]" , A : Dict="[CLS]" , A : Tuple="[MASK]" , A : str=True , A : Dict=None , **A : List[Any] , ): super().__init__( A , tokenizer_file=A , do_lower_case=A , unk_token=A , sep_token=A , pad_token=A , cls_token=A , mask_token=A , tokenize_chinese_chars=A , strip_accents=A , **A , ) _UpperCAmelCase : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() ) if ( normalizer_state.get("lowercase" , A ) != do_lower_case or normalizer_state.get("strip_accents" , A ) != strip_accents or normalizer_state.get("handle_chinese_chars" , A ) != tokenize_chinese_chars ): _UpperCAmelCase : Dict = getattr(A , normalizer_state.pop("type" ) ) _UpperCAmelCase : int = do_lower_case _UpperCAmelCase : Optional[int] = strip_accents _UpperCAmelCase : str = tokenize_chinese_chars _UpperCAmelCase : List[Any] = normalizer_class(**A ) _UpperCAmelCase : Dict = do_lower_case def _A ( self : List[Any] , A : Tuple , A : Any=None ): _UpperCAmelCase : Optional[int] = [self.cls_token_id] + token_ids_a + [self.sep_token_id] if token_ids_a: output += token_ids_a + [self.sep_token_id] return output def _A ( self : int , A : List[int] , A : Optional[List[int]] = None ): _UpperCAmelCase : Any = [self.sep_token_id] _UpperCAmelCase : str = [self.cls_token_id] if token_ids_a is None: return len(cls + token_ids_a + sep ) * [0] return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1] def _A ( self : Dict , A : str , A : Optional[str] = None ): _UpperCAmelCase : Any = self._tokenizer.model.save(A , name=A ) return tuple(A )
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0
'''simple docstring''' from __future__ import annotations import math def _SCREAMING_SNAKE_CASE ( UpperCamelCase , UpperCamelCase , UpperCamelCase , UpperCamelCase , UpperCamelCase ): """simple docstring""" if depth < 0: raise ValueError("""Depth cannot be less than 0""" ) if not scores: raise ValueError("""Scores cannot be empty""" ) if depth == height: return scores[node_index] return ( max( minimax(depth + 1 , node_index * 2 , UpperCamelCase , UpperCamelCase , UpperCamelCase ) , minimax(depth + 1 , node_index * 2 + 1 , UpperCamelCase , UpperCamelCase , UpperCamelCase ) , ) if is_max else min( minimax(depth + 1 , node_index * 2 , UpperCamelCase , UpperCamelCase , UpperCamelCase ) , minimax(depth + 1 , node_index * 2 + 1 , UpperCamelCase , UpperCamelCase , UpperCamelCase ) , ) ) def _SCREAMING_SNAKE_CASE ( ): """simple docstring""" lowerCAmelCase__ : Tuple = [90, 23, 6, 33, 21, 65, 123, 34423] lowerCAmelCase__ : Optional[int] = math.log(len(UpperCamelCase ) , 2 ) print(f"""Optimal value : {minimax(0 , 0 , UpperCamelCase , UpperCamelCase , UpperCamelCase )}""" ) if __name__ == "__main__": import doctest doctest.testmod() main()
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'''simple docstring''' import shutil import tempfile import unittest from unittest.mock import patch from transformers import ( DefaultFlowCallback, IntervalStrategy, PrinterCallback, ProgressCallback, Trainer, TrainerCallback, TrainingArguments, is_torch_available, ) from transformers.testing_utils import require_torch if is_torch_available(): from transformers.trainer import DEFAULT_CALLBACKS from .test_trainer import RegressionDataset, RegressionModelConfig, RegressionPreTrainedModel class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = [] def _A ( self : Any , A : Union[str, Any] , A : Optional[int] , A : List[str] , **A : Tuple ): self.events.append("on_init_end" ) def _A ( self : Any , A : str , A : List[Any] , A : List[Any] , **A : Tuple ): self.events.append("on_train_begin" ) def _A ( self : Tuple , A : List[str] , A : Tuple , A : int , **A : List[str] ): self.events.append("on_train_end" ) def _A ( self : Optional[Any] , A : Dict , A : Any , A : Optional[Any] , **A : List[Any] ): self.events.append("on_epoch_begin" ) def _A ( self : Optional[Any] , A : List[Any] , A : List[str] , A : Optional[int] , **A : Optional[int] ): self.events.append("on_epoch_end" ) def _A ( self : List[str] , A : Optional[int] , A : List[Any] , A : Union[str, Any] , **A : Any ): self.events.append("on_step_begin" ) def _A ( self : Tuple , A : Union[str, Any] , A : int , A : Optional[int] , **A : int ): self.events.append("on_step_end" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Union[str, Any] , A : str , **A : Union[str, Any] ): self.events.append("on_evaluate" ) def _A ( self : Optional[Any] , A : Optional[int] , A : Dict , A : List[Any] , **A : Dict ): self.events.append("on_predict" ) def _A ( self : Dict , A : Dict , A : List[Any] , A : Dict , **A : str ): self.events.append("on_save" ) def _A ( self : Tuple , A : Optional[Any] , A : Union[str, Any] , A : Optional[int] , **A : Dict ): self.events.append("on_log" ) def _A ( self : Optional[int] , A : Optional[Any] , A : Tuple , A : Tuple , **A : List[str] ): self.events.append("on_prediction_step" ) @require_torch class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def _A ( self : Optional[int] ): _UpperCAmelCase : Optional[Any] = tempfile.mkdtemp() def _A ( self : List[Any] ): shutil.rmtree(self.output_dir ) def _A ( self : Union[str, Any] , A : Optional[int]=0 , A : Optional[Any]=0 , A : Optional[Any]=64 , A : Dict=64 , A : Any=None , A : Tuple=False , **A : Optional[int] ): # disable_tqdm in TrainingArguments has a flaky default since it depends on the level of logging. We make sure # its set to False since the tests later on depend on its value. _UpperCAmelCase : str = RegressionDataset(length=A ) _UpperCAmelCase : Union[str, Any] = RegressionDataset(length=A ) _UpperCAmelCase : Any = RegressionModelConfig(a=A , b=A ) _UpperCAmelCase : List[Any] = RegressionPreTrainedModel(A ) _UpperCAmelCase : Dict = TrainingArguments(self.output_dir , disable_tqdm=A , report_to=[] , **A ) return Trainer( A , A , train_dataset=A , eval_dataset=A , callbacks=A , ) def _A ( self : str , A : List[str] , A : List[str] ): self.assertEqual(len(A ) , len(A ) ) # Order doesn't matter _UpperCAmelCase : Tuple = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) _UpperCAmelCase : Any = sorted(A , key=lambda A : cb.__name__ if isinstance(A , A ) else cb.__class__.__name__ ) for cba, cba in zip(A , A ): if isinstance(A , A ) and isinstance(A , A ): self.assertEqual(A , A ) elif isinstance(A , A ) and not isinstance(A , A ): self.assertEqual(A , cba.__class__ ) elif not isinstance(A , A ) and isinstance(A , A ): self.assertEqual(cba.__class__ , A ) else: self.assertEqual(A , A ) def _A ( self : int , A : List[str] ): _UpperCAmelCase : List[str] = ["on_init_end", "on_train_begin"] _UpperCAmelCase : str = 0 _UpperCAmelCase : Optional[Any] = len(trainer.get_eval_dataloader() ) _UpperCAmelCase : Optional[int] = ["on_prediction_step"] * len(trainer.get_eval_dataloader() ) + ["on_log", "on_evaluate"] for _ in range(trainer.state.num_train_epochs ): expected_events.append("on_epoch_begin" ) for _ in range(A ): step += 1 expected_events += ["on_step_begin", "on_step_end"] if step % trainer.args.logging_steps == 0: expected_events.append("on_log" ) if trainer.args.evaluation_strategy == IntervalStrategy.STEPS and step % trainer.args.eval_steps == 0: expected_events += evaluation_events.copy() if step % trainer.args.save_steps == 0: expected_events.append("on_save" ) expected_events.append("on_epoch_end" ) if trainer.args.evaluation_strategy == IntervalStrategy.EPOCH: expected_events += evaluation_events.copy() expected_events += ["on_log", "on_train_end"] return expected_events def _A ( self : str ): _UpperCAmelCase : Any = self.get_trainer() _UpperCAmelCase : int = DEFAULT_CALLBACKS.copy() + [ProgressCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # Callbacks passed at init are added to the default callbacks _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) expected_callbacks.append(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # TrainingArguments.disable_tqdm controls if use ProgressCallback or PrinterCallback _UpperCAmelCase : List[Any] = self.get_trainer(disable_tqdm=A ) _UpperCAmelCase : Tuple = DEFAULT_CALLBACKS.copy() + [PrinterCallback] self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): _UpperCAmelCase : Dict = DEFAULT_CALLBACKS.copy() + [ProgressCallback] _UpperCAmelCase : Dict = self.get_trainer() # We can add, pop, or remove by class name trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : Optional[Any] = self.get_trainer() _UpperCAmelCase : Any = trainer.pop_callback(A ) self.assertEqual(cb.__class__ , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) # We can also add, pop, or remove by instance _UpperCAmelCase : Union[str, Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] trainer.remove_callback(A ) expected_callbacks.remove(A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) _UpperCAmelCase : List[Any] = self.get_trainer() _UpperCAmelCase : List[Any] = trainer.callback_handler.callbacks[0] _UpperCAmelCase : Union[str, Any] = trainer.pop_callback(A ) self.assertEqual(A , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) trainer.add_callback(A ) expected_callbacks.insert(0 , A ) self.check_callbacks_equality(trainer.callback_handler.callbacks , A ) def _A ( self : Optional[Any] ): import warnings # XXX: for now ignore scatter_gather warnings in this test since it's not relevant to what's being tested warnings.simplefilter(action="ignore" , category=A ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] ) trainer.train() _UpperCAmelCase : Union[str, Any] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # Independent log/save/eval _UpperCAmelCase : Tuple = self.get_trainer(callbacks=[MyTestTrainerCallback] , logging_steps=5 ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : List[str] = self.get_trainer(callbacks=[MyTestTrainerCallback] , save_steps=5 ) trainer.train() _UpperCAmelCase : Tuple = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : int = self.get_trainer(callbacks=[MyTestTrainerCallback] , eval_steps=5 , evaluation_strategy="steps" ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) _UpperCAmelCase : Optional[int] = self.get_trainer(callbacks=[MyTestTrainerCallback] , evaluation_strategy="epoch" ) trainer.train() _UpperCAmelCase : int = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # A bit of everything _UpperCAmelCase : int = self.get_trainer( callbacks=[MyTestTrainerCallback] , logging_steps=3 , save_steps=10 , eval_steps=5 , evaluation_strategy="steps" , ) trainer.train() _UpperCAmelCase : Optional[int] = trainer.callback_handler.callbacks[-2].events self.assertEqual(A , self.get_expected_events(A ) ) # warning should be emitted for duplicated callbacks with patch("transformers.trainer_callback.logger.warning" ) as warn_mock: _UpperCAmelCase : Optional[Any] = self.get_trainer( callbacks=[MyTestTrainerCallback, MyTestTrainerCallback] , ) assert str(A ) in warn_mock.call_args[0][0]
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UpperCAmelCase_ : dict[tuple[int, int, int], int] = {} def SCREAMING_SNAKE_CASE_ ( __magic_name__ : int , __magic_name__ : int , __magic_name__ : int ) -> int: """simple docstring""" if late == 3 or absent == 2: return 0 # if we have no days left, and have not failed any other rules, # we have a prize string if days == 0: return 1 # No easy solution, so now we need to do the recursive calculation # First, check if the combination is already in the cache, and # if yes, return the stored value from there since we already # know the number of possible prize strings from this point on UpperCamelCase :List[str] = (days, absent, late) if key in cache: return cache[key] # now we calculate the three possible ways that can unfold from # this point on, depending on our attendance today # 1) if we are late (but not absent), the "absent" counter stays as # it is, but the "late" counter increases by one UpperCamelCase :List[str] = _calculate(days - 1 , __magic_name__ , late + 1 ) # 2) if we are absent, the "absent" counter increases by 1, and the # "late" counter resets to 0 UpperCamelCase :Union[str, Any] = _calculate(days - 1 , absent + 1 , 0 ) # 3) if we are on time, this resets the "late" counter and keeps the # absent counter UpperCamelCase :List[str] = _calculate(days - 1 , __magic_name__ , 0 ) UpperCamelCase :Union[str, Any] = state_late + state_absent + state_ontime UpperCamelCase :Optional[int] = prizestrings return prizestrings def SCREAMING_SNAKE_CASE_ ( __magic_name__ : int = 30 ) -> int: """simple docstring""" return _calculate(__magic_name__ , absent=0 , late=0 ) if __name__ == "__main__": print(solution())
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'''simple docstring''' import unittest import numpy as np from transformers.testing_utils import require_torch, require_vision from transformers.utils import is_torch_available, is_vision_available from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_video_inputs if is_torch_available(): import torch if is_vision_available(): from PIL import Image from transformers import VivitImageProcessor class lowerCamelCase_ (unittest.TestCase ): '''simple docstring''' def __init__( self : int , A : Dict , A : Optional[int]=7 , A : Tuple=3 , A : Optional[Any]=10 , A : int=18 , A : Dict=30 , A : List[str]=400 , A : int=True , A : Optional[Any]=None , A : Optional[Any]=True , A : List[Any]=[0.5, 0.5, 0.5] , A : List[str]=[0.5, 0.5, 0.5] , A : Optional[int]=None , ): _UpperCAmelCase : Dict = size if size is not None else {"shortest_edge": 18} _UpperCAmelCase : Optional[Any] = crop_size if crop_size is not None else {"height": 18, "width": 18} _UpperCAmelCase : Tuple = parent _UpperCAmelCase : Any = batch_size _UpperCAmelCase : Optional[int] = num_channels _UpperCAmelCase : Optional[Any] = num_frames _UpperCAmelCase : Any = image_size _UpperCAmelCase : Dict = min_resolution _UpperCAmelCase : Any = max_resolution _UpperCAmelCase : Optional[int] = do_resize _UpperCAmelCase : str = size _UpperCAmelCase : List[Any] = do_normalize _UpperCAmelCase : Any = image_mean _UpperCAmelCase : Tuple = image_std _UpperCAmelCase : Any = crop_size def _A ( self : List[Any] ): return { "image_mean": self.image_mean, "image_std": self.image_std, "do_normalize": self.do_normalize, "do_resize": self.do_resize, "size": self.size, "crop_size": self.crop_size, } @require_torch @require_vision class lowerCamelCase_ (snake_case__ , unittest.TestCase ): '''simple docstring''' __UpperCamelCase: Dict = VivitImageProcessor if is_vision_available() else None def _A ( self : int ): _UpperCAmelCase : Tuple = VivitImageProcessingTester(self ) @property def _A ( self : Optional[Any] ): return self.image_processor_tester.prepare_image_processor_dict() def _A ( self : Union[str, Any] ): _UpperCAmelCase : str = self.image_processing_class(**self.image_processor_dict ) self.assertTrue(hasattr(A , "image_mean" ) ) self.assertTrue(hasattr(A , "image_std" ) ) self.assertTrue(hasattr(A , "do_normalize" ) ) self.assertTrue(hasattr(A , "do_resize" ) ) self.assertTrue(hasattr(A , "do_center_crop" ) ) self.assertTrue(hasattr(A , "size" ) ) def _A ( self : List[Any] ): _UpperCAmelCase : Union[str, Any] = self.image_processing_class.from_dict(self.image_processor_dict ) self.assertEqual(image_processor.size , {"shortest_edge": 18} ) self.assertEqual(image_processor.crop_size , {"height": 18, "width": 18} ) _UpperCAmelCase : Optional[int] = self.image_processing_class.from_dict(self.image_processor_dict , size=42 , crop_size=84 ) self.assertEqual(image_processor.size , {"shortest_edge": 42} ) self.assertEqual(image_processor.crop_size , {"height": 84, "width": 84} ) def _A ( self : Tuple ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PIL videos _UpperCAmelCase : Any = prepare_video_inputs(self.image_processor_tester , equal_resolution=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , Image.Image ) # Test not batched input _UpperCAmelCase : str = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : List[str] = self.image_processing_class(**self.image_processor_dict ) # create random numpy tensors _UpperCAmelCase : List[Any] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , numpify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , np.ndarray ) # Test not batched input _UpperCAmelCase : Tuple = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : Optional[int] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) def _A ( self : List[Any] ): # Initialize image_processing _UpperCAmelCase : Optional[Any] = self.image_processing_class(**self.image_processor_dict ) # create random PyTorch tensors _UpperCAmelCase : Optional[int] = prepare_video_inputs(self.image_processor_tester , equal_resolution=A , torchify=A ) for video in video_inputs: self.assertIsInstance(A , A ) self.assertIsInstance(video[0] , torch.Tensor ) # Test not batched input _UpperCAmelCase : Optional[Any] = image_processing(video_inputs[0] , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( 1, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , ) # Test batched _UpperCAmelCase : List[Any] = image_processing(A , return_tensors="pt" ).pixel_values self.assertEqual( encoded_videos.shape , ( self.image_processor_tester.batch_size, self.image_processor_tester.num_frames, self.image_processor_tester.num_channels, self.image_processor_tester.crop_size["height"], self.image_processor_tester.crop_size["width"], ) , )
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def __A ( __lowerCAmelCase )-> int: """simple docstring""" _UpperCAmelCase = abs(__lowerCAmelCase ) _UpperCAmelCase = 0 while n > 0: res += n % 10 n //= 10 return res def __A ( __lowerCAmelCase )-> int: """simple docstring""" _UpperCAmelCase = abs(__lowerCAmelCase ) return n if n < 10 else n % 10 + sum_of_digits(n // 10 ) def __A ( __lowerCAmelCase )-> int: """simple docstring""" return sum(int(__lowerCAmelCase ) for c in str(abs(__lowerCAmelCase ) ) ) def __A ( )-> None: """simple docstring""" from collections.abc import Callable from timeit import timeit def benchmark_a_function(__lowerCAmelCase , __lowerCAmelCase ) -> None: _UpperCAmelCase = F"""{func.__name__}({value})""" _UpperCAmelCase = timeit(F"""__main__.{call}""" , setup='import __main__' ) print(F"""{call:56} = {func(__lowerCAmelCase )} -- {timing:.4f} seconds""" ) for value in (262_144, 1_125_899_906_842_624, 1_267_650_600_228_229_401_496_703_205_376): for func in (sum_of_digits, sum_of_digits_recursion, sum_of_digits_compact): benchmark_a_function(__lowerCAmelCase , __lowerCAmelCase ) print() if __name__ == "__main__": import doctest doctest.testmod() benchmark()
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'''simple docstring''' import math from typing import Optional import numpy as np from ...configuration_utils import PretrainedConfig from ...utils import logging __SCREAMING_SNAKE_CASE : Dict = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : List[Any] = { """facebook/encodec_24khz""": """https://huggingface.co/facebook/encodec_24khz/resolve/main/config.json""", """facebook/encodec_48khz""": """https://huggingface.co/facebook/encodec_48khz/resolve/main/config.json""", } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' __UpperCamelCase: str = "encodec" def __init__( self : Optional[int] , A : Union[str, Any]=[1.5, 3.0, 6.0, 12.0, 24.0] , A : List[Any]=24000 , A : Union[str, Any]=1 , A : List[Any]=False , A : Optional[int]=None , A : int=None , A : str=128 , A : List[Any]=32 , A : List[Any]=1 , A : int=[8, 5, 4, 2] , A : Optional[int]="weight_norm" , A : List[Any]=7 , A : Any=7 , A : Dict=3 , A : Optional[int]=2 , A : Dict=True , A : Dict="reflect" , A : Any=2 , A : Dict=2 , A : str=1.0 , A : Optional[int]=1024 , A : Any=None , A : Any=True , **A : str , ): _UpperCAmelCase : Optional[int] = target_bandwidths _UpperCAmelCase : List[str] = sampling_rate _UpperCAmelCase : Optional[int] = audio_channels _UpperCAmelCase : str = normalize _UpperCAmelCase : int = chunk_length_s _UpperCAmelCase : str = overlap _UpperCAmelCase : Optional[Any] = hidden_size _UpperCAmelCase : int = num_filters _UpperCAmelCase : Optional[Any] = num_residual_layers _UpperCAmelCase : Optional[int] = upsampling_ratios _UpperCAmelCase : int = norm_type _UpperCAmelCase : List[Any] = kernel_size _UpperCAmelCase : List[Any] = last_kernel_size _UpperCAmelCase : List[Any] = residual_kernel_size _UpperCAmelCase : List[str] = dilation_growth_rate _UpperCAmelCase : Dict = use_causal_conv _UpperCAmelCase : Tuple = pad_mode _UpperCAmelCase : Tuple = compress _UpperCAmelCase : List[str] = num_lstm_layers _UpperCAmelCase : List[Any] = trim_right_ratio _UpperCAmelCase : int = codebook_size _UpperCAmelCase : Optional[Any] = codebook_dim if codebook_dim is not None else hidden_size _UpperCAmelCase : Optional[int] = use_conv_shortcut if self.norm_type not in ["weight_norm", "time_group_norm"]: raise ValueError( F"""self.norm_type must be one of `\"weight_norm\"`, `\"time_group_norm\"`), got {self.norm_type}""" ) super().__init__(**A ) @property def _A ( self : Any ): if self.chunk_length_s is None: return None else: return int(self.chunk_length_s * self.sampling_rate ) @property def _A ( self : Union[str, Any] ): if self.chunk_length_s is None or self.overlap is None: return None else: return max(1 , int((1.0 - self.overlap) * self.chunk_length ) ) @property def _A ( self : Union[str, Any] ): _UpperCAmelCase : Dict = np.prod(self.upsampling_ratios ) return math.ceil(self.sampling_rate / hop_length ) @property def _A ( self : str ): return int(1000 * self.target_bandwidths[-1] // (self.frame_rate * 10) )
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"""simple docstring""" import random def lowercase ( A_ , A_ )-> tuple: '''simple docstring''' a , a , a : List[str] = [], [], [] for element in data: if element < pivot: less.append(A_ ) elif element > pivot: greater.append(A_ ) else: equal.append(A_ ) return less, equal, greater def lowercase ( A_ , A_ )-> Dict: '''simple docstring''' if index >= len(A_ ) or index < 0: return None a : Optional[Any] = items[random.randint(0 , len(A_ ) - 1 )] a : int = 0 a , a , a : Any = _partition(A_ , A_ ) a : Union[str, Any] = len(A_ ) a : Any = len(A_ ) # index is the pivot if m <= index < m + count: return pivot # must be in smaller elif m > index: return quick_select(A_ , A_ ) # must be in larger else: return quick_select(A_ , index - (m + count) )
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'''simple docstring''' from typing import Any, Dict, List, Optional, Tuple, Union import torch from torch import nn from torch.utils.data import DistributedSampler, RandomSampler from transformers import PreTrainedModel, Trainer, logging from transformers.integrations import is_fairscale_available from transformers.models.fsmt.configuration_fsmt import FSMTConfig from transformers.optimization import ( Adafactor, AdamW, get_constant_schedule, get_constant_schedule_with_warmup, get_cosine_schedule_with_warmup, get_cosine_with_hard_restarts_schedule_with_warmup, get_linear_schedule_with_warmup, get_polynomial_decay_schedule_with_warmup, ) from transformers.trainer_pt_utils import get_tpu_sampler from transformers.training_args import ParallelMode from transformers.utils import is_torch_tpu_available if is_fairscale_available(): from fairscale.optim import OSS __SCREAMING_SNAKE_CASE : str = logging.get_logger(__name__) __SCREAMING_SNAKE_CASE : Union[str, Any] = { """linear""": get_linear_schedule_with_warmup, """cosine""": get_cosine_schedule_with_warmup, """cosine_w_restarts""": get_cosine_with_hard_restarts_schedule_with_warmup, """polynomial""": get_polynomial_decay_schedule_with_warmup, """constant""": get_constant_schedule, """constant_w_warmup""": get_constant_schedule_with_warmup, } class lowerCamelCase_ (snake_case__ ): '''simple docstring''' def __init__( self : Any , A : Optional[int]=None , A : Tuple=None , *A : Tuple , **A : List[str] ): super().__init__(*A , **A ) if config is None: assert isinstance(self.model , A ), ( "If no `config` is passed the model to be trained has to be of type `PreTrainedModel`, but is" F""" {self.model.__class__}""" ) _UpperCAmelCase : str = self.model.config else: _UpperCAmelCase : List[str] = config _UpperCAmelCase : List[Any] = data_args _UpperCAmelCase : str = self.config.tgt_vocab_size if isinstance(self.config , A ) else self.config.vocab_size if self.args.label_smoothing != 0 or (self.data_args is not None and self.data_args.ignore_pad_token_for_loss): assert self.config.pad_token_id is not None, ( "Make sure that `config.pad_token_id` is correcly defined when ignoring `pad_token` for loss" " calculation or doing label smoothing." ) if self.config.pad_token_id is None and self.config.eos_token_id is not None: logger.warning( F"""The `config.pad_token_id` is `None`. Using `config.eos_token_id` = {self.config.eos_token_id} for""" " padding.." ) if self.args.label_smoothing == 0: _UpperCAmelCase : Optional[Any] = torch.nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id ) else: # dynamically import label_smoothed_nll_loss from utils import label_smoothed_nll_loss _UpperCAmelCase : Dict = label_smoothed_nll_loss def _A ( self : Tuple , A : int ): if self.optimizer is None: _UpperCAmelCase : Tuple = ["bias", "LayerNorm.weight"] _UpperCAmelCase : str = [ { "params": [p for n, p in self.model.named_parameters() if not any(nd in n for nd in no_decay )], "weight_decay": self.args.weight_decay, }, { "params": [p for n, p in self.model.named_parameters() if any(nd in n for nd in no_decay )], "weight_decay": 0.0, }, ] _UpperCAmelCase : int = Adafactor if self.args.adafactor else AdamW if self.args.adafactor: _UpperCAmelCase : List[str] = Adafactor _UpperCAmelCase : List[Any] = {"scale_parameter": False, "relative_step": False} else: _UpperCAmelCase : List[str] = AdamW _UpperCAmelCase : List[str] = { "betas": (self.args.adam_betaa, self.args.adam_betaa), "eps": self.args.adam_epsilon, } _UpperCAmelCase : List[Any] = self.args.learning_rate if self.sharded_ddp: _UpperCAmelCase : List[Any] = OSS( params=A , optim=A , **A , ) else: _UpperCAmelCase : Union[str, Any] = optimizer_cls(A , **A ) if self.lr_scheduler is None: _UpperCAmelCase : List[str] = self._get_lr_scheduler(A ) else: # ignoring --lr_scheduler logger.warning("scheduler is passed to `Seq2SeqTrainer`, `--lr_scheduler` arg is ignored." ) def _A ( self : List[str] , A : Optional[int] ): _UpperCAmelCase : List[str] = arg_to_scheduler[self.args.lr_scheduler] if self.args.lr_scheduler == "constant": _UpperCAmelCase : Optional[Any] = schedule_func(self.optimizer ) elif self.args.lr_scheduler == "constant_w_warmup": _UpperCAmelCase : str = schedule_func(self.optimizer , num_warmup_steps=self.args.warmup_steps ) else: _UpperCAmelCase : str = schedule_func( self.optimizer , num_warmup_steps=self.args.warmup_steps , num_training_steps=A ) return scheduler def _A ( self : Tuple ): if isinstance(self.train_dataset , torch.utils.data.IterableDataset ): return None elif is_torch_tpu_available(): return get_tpu_sampler(self.train_dataset ) else: if self.args.sortish_sampler: self.train_dataset.make_sortish_sampler( self.args.per_device_train_batch_size , distributed=(self.args.parallel_mode == ParallelMode.DISTRIBUTED) , ) return ( RandomSampler(self.train_dataset ) if self.args.local_rank == -1 else DistributedSampler(self.train_dataset ) ) def _A ( self : Any , A : Union[str, Any] , A : Union[str, Any] , A : List[Any] ): if self.args.label_smoothing == 0: if self.data_args is not None and self.data_args.ignore_pad_token_for_loss: # force training to ignore pad token _UpperCAmelCase : List[str] = model(**A , use_cache=A )[0] _UpperCAmelCase : int = self.loss_fn(logits.view(-1 , logits.shape[-1] ) , labels.view(-1 ) ) else: # compute usual loss via models _UpperCAmelCase , _UpperCAmelCase : Any = model(**A , labels=A , use_cache=A )[:2] else: # compute label smoothed loss _UpperCAmelCase : Optional[int] = model(**A , use_cache=A )[0] _UpperCAmelCase : List[str] = torch.nn.functional.log_softmax(A , dim=-1 ) _UpperCAmelCase , _UpperCAmelCase : Union[str, Any] = self.loss_fn(A , A , self.args.label_smoothing , ignore_index=self.config.pad_token_id ) return loss, logits def _A ( self : List[str] , A : Optional[int] , A : Optional[int] ): _UpperCAmelCase : Union[str, Any] = inputs.pop("labels" ) _UpperCAmelCase , _UpperCAmelCase : Optional[int] = self._compute_loss(A , A , A ) return loss def _A ( self : List[str] , A : nn.Module , A : Dict[str, Union[torch.Tensor, Any]] , A : bool , A : Optional[List[str]] = None , ): _UpperCAmelCase : List[str] = self._prepare_inputs(A ) _UpperCAmelCase : Dict = { "max_length": self.data_args.val_max_target_length if self.data_args is not None else self.config.max_length, "num_beams": self.data_args.eval_beams if self.data_args is not None else self.config.num_beams, } if self.args.predict_with_generate and not self.args.prediction_loss_only: _UpperCAmelCase : Dict = self.model.generate( inputs["input_ids"] , attention_mask=inputs["attention_mask"] , **A , ) # in case the batch is shorter than max length, the output should be padded if generated_tokens.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : int = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) _UpperCAmelCase : Any = inputs.pop("labels" ) with torch.no_grad(): # compute loss on predict data _UpperCAmelCase , _UpperCAmelCase : str = self._compute_loss(A , A , A ) _UpperCAmelCase : List[str] = loss.mean().detach() if self.args.prediction_loss_only: return (loss, None, None) _UpperCAmelCase : str = generated_tokens if self.args.predict_with_generate else logits if labels.shape[-1] < gen_kwargs["max_length"]: _UpperCAmelCase : Optional[Any] = self._pad_tensors_to_max_len(A , gen_kwargs["max_length"] ) return (loss, logits, labels) def _A ( self : Dict , A : int , A : List[str] ): # If PAD token is not defined at least EOS token has to be defined _UpperCAmelCase : Union[str, Any] = self.config.pad_token_id if self.config.pad_token_id is not None else self.config.eos_token_id if pad_token_id is None: raise ValueError( "Make sure that either `config.pad_token_id` or `config.eos_token_id` is defined if tensor has to be" F""" padded to `max_length`={max_length}""" ) _UpperCAmelCase : Tuple = pad_token_id * torch.ones( (tensor.shape[0], max_length) , dtype=tensor.dtype , device=tensor.device ) _UpperCAmelCase : Tuple = tensor return padded_tensor
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