INSTRUCTION stringlengths 1 46.3k | RESPONSE stringlengths 75 80.2k |
|---|---|
Infer schema from an RDD of Row or tuple.
:param rdd: an RDD of Row or tuple
:param samplingRatio: sampling ratio, or no sampling (default)
:return: :class:`pyspark.sql.types.StructType` | def _inferSchema(self, rdd, samplingRatio=None, names=None):
"""
Infer schema from an RDD of Row or tuple.
:param rdd: an RDD of Row or tuple
:param samplingRatio: sampling ratio, or no sampling (default)
:return: :class:`pyspark.sql.types.StructType`
"""
first =... |
Create an RDD for DataFrame from an existing RDD, returns the RDD and schema. | def _createFromRDD(self, rdd, schema, samplingRatio):
"""
Create an RDD for DataFrame from an existing RDD, returns the RDD and schema.
"""
if schema is None or isinstance(schema, (list, tuple)):
struct = self._inferSchema(rdd, samplingRatio, names=schema)
convert... |
Create an RDD for DataFrame from a list or pandas.DataFrame, returns
the RDD and schema. | def _createFromLocal(self, data, schema):
"""
Create an RDD for DataFrame from a list or pandas.DataFrame, returns
the RDD and schema.
"""
# make sure data could consumed multiple times
if not isinstance(data, list):
data = list(data)
if schema is Non... |
Used when converting a pandas.DataFrame to Spark using to_records(), this will correct
the dtypes of fields in a record so they can be properly loaded into Spark.
:param rec: a numpy record to check field dtypes
:return corrected dtype for a numpy.record or None if no correction needed | def _get_numpy_record_dtype(self, rec):
"""
Used when converting a pandas.DataFrame to Spark using to_records(), this will correct
the dtypes of fields in a record so they can be properly loaded into Spark.
:param rec: a numpy record to check field dtypes
:return corrected dtype ... |
Convert a pandas.DataFrame to list of records that can be used to make a DataFrame
:return list of records | def _convert_from_pandas(self, pdf, schema, timezone):
"""
Convert a pandas.DataFrame to list of records that can be used to make a DataFrame
:return list of records
"""
if timezone is not None:
from pyspark.sql.types import _check_series_convert_timestamps_tz_local... |
Create a DataFrame from a given pandas.DataFrame by slicing it into partitions, converting
to Arrow data, then sending to the JVM to parallelize. If a schema is passed in, the
data types will be used to coerce the data in Pandas to Arrow conversion. | def _create_from_pandas_with_arrow(self, pdf, schema, timezone):
"""
Create a DataFrame from a given pandas.DataFrame by slicing it into partitions, converting
to Arrow data, then sending to the JVM to parallelize. If a schema is passed in, the
data types will be used to coerce the data ... |
Initialize a SparkSession for a pyspark shell session. This is called from shell.py
to make error handling simpler without needing to declare local variables in that
script, which would expose those to users. | def _create_shell_session():
"""
Initialize a SparkSession for a pyspark shell session. This is called from shell.py
to make error handling simpler without needing to declare local variables in that
script, which would expose those to users.
"""
import py4j
from p... |
Creates a :class:`DataFrame` from an :class:`RDD`, a list or a :class:`pandas.DataFrame`.
When ``schema`` is a list of column names, the type of each column
will be inferred from ``data``.
When ``schema`` is ``None``, it will try to infer the schema (column names and types)
from ``data... | def createDataFrame(self, data, schema=None, samplingRatio=None, verifySchema=True):
"""
Creates a :class:`DataFrame` from an :class:`RDD`, a list or a :class:`pandas.DataFrame`.
When ``schema`` is a list of column names, the type of each column
will be inferred from ``data``.
... |
Returns a :class:`DataFrame` representing the result of the given query.
:return: :class:`DataFrame`
>>> df.createOrReplaceTempView("table1")
>>> df2 = spark.sql("SELECT field1 AS f1, field2 as f2 from table1")
>>> df2.collect()
[Row(f1=1, f2=u'row1'), Row(f1=2, f2=u'row2'), Ro... | def sql(self, sqlQuery):
"""Returns a :class:`DataFrame` representing the result of the given query.
:return: :class:`DataFrame`
>>> df.createOrReplaceTempView("table1")
>>> df2 = spark.sql("SELECT field1 AS f1, field2 as f2 from table1")
>>> df2.collect()
[Row(f1=1, f2... |
Returns the specified table as a :class:`DataFrame`.
:return: :class:`DataFrame`
>>> df.createOrReplaceTempView("table1")
>>> df2 = spark.table("table1")
>>> sorted(df.collect()) == sorted(df2.collect())
True | def table(self, tableName):
"""Returns the specified table as a :class:`DataFrame`.
:return: :class:`DataFrame`
>>> df.createOrReplaceTempView("table1")
>>> df2 = spark.table("table1")
>>> sorted(df.collect()) == sorted(df2.collect())
True
"""
return Dat... |
Returns a :class:`StreamingQueryManager` that allows managing all the
:class:`StreamingQuery` StreamingQueries active on `this` context.
.. note:: Evolving.
:return: :class:`StreamingQueryManager` | def streams(self):
"""Returns a :class:`StreamingQueryManager` that allows managing all the
:class:`StreamingQuery` StreamingQueries active on `this` context.
.. note:: Evolving.
:return: :class:`StreamingQueryManager`
"""
from pyspark.sql.streaming import StreamingQuer... |
Stop the underlying :class:`SparkContext`. | def stop(self):
"""Stop the underlying :class:`SparkContext`.
"""
self._sc.stop()
# We should clean the default session up. See SPARK-23228.
self._jvm.SparkSession.clearDefaultSession()
self._jvm.SparkSession.clearActiveSession()
SparkSession._instantiatedSession ... |
Returns a :class:`SparkJobInfo` object, or None if the job info
could not be found or was garbage collected. | def getJobInfo(self, jobId):
"""
Returns a :class:`SparkJobInfo` object, or None if the job info
could not be found or was garbage collected.
"""
job = self._jtracker.getJobInfo(jobId)
if job is not None:
return SparkJobInfo(jobId, job.stageIds(), str(job.stat... |
Returns a :class:`SparkStageInfo` object, or None if the stage
info could not be found or was garbage collected. | def getStageInfo(self, stageId):
"""
Returns a :class:`SparkStageInfo` object, or None if the stage
info could not be found or was garbage collected.
"""
stage = self._jtracker.getStageInfo(stageId)
if stage is not None:
# TODO: fetch them in batch for better ... |
Restore an object of namedtuple | def _restore(name, fields, value):
""" Restore an object of namedtuple"""
k = (name, fields)
cls = __cls.get(k)
if cls is None:
cls = collections.namedtuple(name, fields)
__cls[k] = cls
return cls(*value) |
Make class generated by namedtuple picklable | def _hack_namedtuple(cls):
""" Make class generated by namedtuple picklable """
name = cls.__name__
fields = cls._fields
def __reduce__(self):
return (_restore, (name, fields, tuple(self)))
cls.__reduce__ = __reduce__
cls._is_namedtuple_ = True
return cls |
Hack namedtuple() to make it picklable | def _hijack_namedtuple():
""" Hack namedtuple() to make it picklable """
# hijack only one time
if hasattr(collections.namedtuple, "__hijack"):
return
global _old_namedtuple # or it will put in closure
global _old_namedtuple_kwdefaults # or it will put in closure too
def _copy_func(f... |
Load a stream of un-ordered Arrow RecordBatches, where the last iteration yields
a list of indices that can be used to put the RecordBatches in the correct order. | def load_stream(self, stream):
"""
Load a stream of un-ordered Arrow RecordBatches, where the last iteration yields
a list of indices that can be used to put the RecordBatches in the correct order.
"""
# load the batches
for batch in self.serializer.load_stream(stream):
... |
Create an Arrow record batch from the given pandas.Series or list of Series,
with optional type.
:param series: A single pandas.Series, list of Series, or list of (series, arrow_type)
:return: Arrow RecordBatch | def _create_batch(self, series):
"""
Create an Arrow record batch from the given pandas.Series or list of Series,
with optional type.
:param series: A single pandas.Series, list of Series, or list of (series, arrow_type)
:return: Arrow RecordBatch
"""
import pand... |
Make ArrowRecordBatches from Pandas Series and serialize. Input is a single series or
a list of series accompanied by an optional pyarrow type to coerce the data to. | def dump_stream(self, iterator, stream):
"""
Make ArrowRecordBatches from Pandas Series and serialize. Input is a single series or
a list of series accompanied by an optional pyarrow type to coerce the data to.
"""
batches = (self._create_batch(series) for series in iterator)
... |
Deserialize ArrowRecordBatches to an Arrow table and return as a list of pandas.Series. | def load_stream(self, stream):
"""
Deserialize ArrowRecordBatches to an Arrow table and return as a list of pandas.Series.
"""
batches = super(ArrowStreamPandasSerializer, self).load_stream(stream)
import pyarrow as pa
for batch in batches:
yield [self.arrow_t... |
Override because Pandas UDFs require a START_ARROW_STREAM before the Arrow stream is sent.
This should be sent after creating the first record batch so in case of an error, it can
be sent back to the JVM before the Arrow stream starts. | def dump_stream(self, iterator, stream):
"""
Override because Pandas UDFs require a START_ARROW_STREAM before the Arrow stream is sent.
This should be sent after creating the first record batch so in case of an error, it can
be sent back to the JVM before the Arrow stream starts.
... |
Waits for the termination of `this` query, either by :func:`query.stop()` or by an
exception. If the query has terminated with an exception, then the exception will be thrown.
If `timeout` is set, it returns whether the query has terminated or not within the
`timeout` seconds.
If the qu... | def awaitTermination(self, timeout=None):
"""Waits for the termination of `this` query, either by :func:`query.stop()` or by an
exception. If the query has terminated with an exception, then the exception will be thrown.
If `timeout` is set, it returns whether the query has terminated or not wit... |
Returns an array of the most recent [[StreamingQueryProgress]] updates for this query.
The number of progress updates retained for each stream is configured by Spark session
configuration `spark.sql.streaming.numRecentProgressUpdates`. | def recentProgress(self):
"""Returns an array of the most recent [[StreamingQueryProgress]] updates for this query.
The number of progress updates retained for each stream is configured by Spark session
configuration `spark.sql.streaming.numRecentProgressUpdates`.
"""
return [jso... |
Returns the most recent :class:`StreamingQueryProgress` update of this streaming query or
None if there were no progress updates
:return: a map | def lastProgress(self):
"""
Returns the most recent :class:`StreamingQueryProgress` update of this streaming query or
None if there were no progress updates
:return: a map
"""
lastProgress = self._jsq.lastProgress()
if lastProgress:
return json.loads(l... |
:return: the StreamingQueryException if the query was terminated by an exception, or None. | def exception(self):
"""
:return: the StreamingQueryException if the query was terminated by an exception, or None.
"""
if self._jsq.exception().isDefined():
je = self._jsq.exception().get()
msg = je.toString().split(': ', 1)[1] # Drop the Java StreamingQueryExce... |
Wait until any of the queries on the associated SQLContext has terminated since the
creation of the context, or since :func:`resetTerminated()` was called. If any query was
terminated with an exception, then the exception will be thrown.
If `timeout` is set, it returns whether the query has term... | def awaitAnyTermination(self, timeout=None):
"""Wait until any of the queries on the associated SQLContext has terminated since the
creation of the context, or since :func:`resetTerminated()` was called. If any query was
terminated with an exception, then the exception will be thrown.
If... |
Loads a data stream from a data source and returns it as a :class`DataFrame`.
.. note:: Evolving.
:param path: optional string for file-system backed data sources.
:param format: optional string for format of the data source. Default to 'parquet'.
:param schema: optional :class:`pyspar... | def load(self, path=None, format=None, schema=None, **options):
"""Loads a data stream from a data source and returns it as a :class`DataFrame`.
.. note:: Evolving.
:param path: optional string for file-system backed data sources.
:param format: optional string for format of the data s... |
Loads a JSON file stream and returns the results as a :class:`DataFrame`.
`JSON Lines <http://jsonlines.org/>`_ (newline-delimited JSON) is supported by default.
For JSON (one record per file), set the ``multiLine`` parameter to ``true``.
If the ``schema`` parameter is not specified, this func... | def json(self, path, schema=None, primitivesAsString=None, prefersDecimal=None,
allowComments=None, allowUnquotedFieldNames=None, allowSingleQuotes=None,
allowNumericLeadingZero=None, allowBackslashEscapingAnyCharacter=None,
mode=None, columnNameOfCorruptRecord=None, dateFormat=No... |
Loads a ORC file stream, returning the result as a :class:`DataFrame`.
.. note:: Evolving.
>>> orc_sdf = spark.readStream.schema(sdf_schema).orc(tempfile.mkdtemp())
>>> orc_sdf.isStreaming
True
>>> orc_sdf.schema == sdf_schema
True | def orc(self, path):
"""Loads a ORC file stream, returning the result as a :class:`DataFrame`.
.. note:: Evolving.
>>> orc_sdf = spark.readStream.schema(sdf_schema).orc(tempfile.mkdtemp())
>>> orc_sdf.isStreaming
True
>>> orc_sdf.schema == sdf_schema
True
... |
Loads a Parquet file stream, returning the result as a :class:`DataFrame`.
You can set the following Parquet-specific option(s) for reading Parquet files:
* ``mergeSchema``: sets whether we should merge schemas collected from all \
Parquet part-files. This will override ``spark.sql.... | def parquet(self, path):
"""Loads a Parquet file stream, returning the result as a :class:`DataFrame`.
You can set the following Parquet-specific option(s) for reading Parquet files:
* ``mergeSchema``: sets whether we should merge schemas collected from all \
Parquet part-fi... |
Loads a text file stream and returns a :class:`DataFrame` whose schema starts with a
string column named "value", and followed by partitioned columns if there
are any.
The text files must be encoded as UTF-8.
By default, each line in the text file is a new row in the resulting DataFrame... | def text(self, path, wholetext=False, lineSep=None):
"""
Loads a text file stream and returns a :class:`DataFrame` whose schema starts with a
string column named "value", and followed by partitioned columns if there
are any.
The text files must be encoded as UTF-8.
By de... |
r"""Loads a CSV file stream and returns the result as a :class:`DataFrame`.
This function will go through the input once to determine the input schema if
``inferSchema`` is enabled. To avoid going through the entire data once, disable
``inferSchema`` option or specify the schema explicitly usin... | def csv(self, path, schema=None, sep=None, encoding=None, quote=None, escape=None,
comment=None, header=None, inferSchema=None, ignoreLeadingWhiteSpace=None,
ignoreTrailingWhiteSpace=None, nullValue=None, nanValue=None, positiveInf=None,
negativeInf=None, dateFormat=None, timestampFo... |
Specifies how data of a streaming DataFrame/Dataset is written to a streaming sink.
Options include:
* `append`:Only the new rows in the streaming DataFrame/Dataset will be written to
the sink
* `complete`:All the rows in the streaming DataFrame/Dataset will be written to the sink
... | def outputMode(self, outputMode):
"""Specifies how data of a streaming DataFrame/Dataset is written to a streaming sink.
Options include:
* `append`:Only the new rows in the streaming DataFrame/Dataset will be written to
the sink
* `complete`:All the rows in the streaming Da... |
Specifies the name of the :class:`StreamingQuery` that can be started with
:func:`start`. This name must be unique among all the currently active queries
in the associated SparkSession.
.. note:: Evolving.
:param queryName: unique name for the query
>>> writer = sdf.writeStrea... | def queryName(self, queryName):
"""Specifies the name of the :class:`StreamingQuery` that can be started with
:func:`start`. This name must be unique among all the currently active queries
in the associated SparkSession.
.. note:: Evolving.
:param queryName: unique name for the... |
Set the trigger for the stream query. If this is not set it will run the query as fast
as possible, which is equivalent to setting the trigger to ``processingTime='0 seconds'``.
.. note:: Evolving.
:param processingTime: a processing time interval as a string, e.g. '5 seconds', '1 minute'.
... | def trigger(self, processingTime=None, once=None, continuous=None):
"""Set the trigger for the stream query. If this is not set it will run the query as fast
as possible, which is equivalent to setting the trigger to ``processingTime='0 seconds'``.
.. note:: Evolving.
:param processing... |
Sets the output of the streaming query to be processed using the provided writer ``f``.
This is often used to write the output of a streaming query to arbitrary storage systems.
The processing logic can be specified in two ways.
#. A **function** that takes a row as input.
This is a... | def foreach(self, f):
"""
Sets the output of the streaming query to be processed using the provided writer ``f``.
This is often used to write the output of a streaming query to arbitrary storage systems.
The processing logic can be specified in two ways.
#. A **function** that t... |
Sets the output of the streaming query to be processed using the provided
function. This is supported only the in the micro-batch execution modes (that is, when the
trigger is not continuous). In every micro-batch, the provided function will be called in
every micro-batch with (i) the output row... | def foreachBatch(self, func):
"""
Sets the output of the streaming query to be processed using the provided
function. This is supported only the in the micro-batch execution modes (that is, when the
trigger is not continuous). In every micro-batch, the provided function will be called in... |
Streams the contents of the :class:`DataFrame` to a data source.
The data source is specified by the ``format`` and a set of ``options``.
If ``format`` is not specified, the default data source configured by
``spark.sql.sources.default`` will be used.
.. note:: Evolving.
:para... | def start(self, path=None, format=None, outputMode=None, partitionBy=None, queryName=None,
**options):
"""Streams the contents of the :class:`DataFrame` to a data source.
The data source is specified by the ``format`` and a set of ``options``.
If ``format`` is not specified, the d... |
Get the Python compiler to emit LOAD_FAST(arg); STORE_DEREF
Notes
-----
In Python 3, we could use an easier function:
.. code-block:: python
def f():
cell = None
def _stub(value):
nonlocal cell
cell = value
return _stub
... | def _make_cell_set_template_code():
"""Get the Python compiler to emit LOAD_FAST(arg); STORE_DEREF
Notes
-----
In Python 3, we could use an easier function:
.. code-block:: python
def f():
cell = None
def _stub(value):
nonlocal cell
cell... |
Return whether *func* is a Tornado coroutine function.
Running coroutines are not supported. | def is_tornado_coroutine(func):
"""
Return whether *func* is a Tornado coroutine function.
Running coroutines are not supported.
"""
if 'tornado.gen' not in sys.modules:
return False
gen = sys.modules['tornado.gen']
if not hasattr(gen, "is_coroutine_function"):
# Tornado vers... |
Serialize obj as bytes streamed into file
protocol defaults to cloudpickle.DEFAULT_PROTOCOL which is an alias to
pickle.HIGHEST_PROTOCOL. This setting favors maximum communication speed
between processes running the same Python version.
Set protocol=pickle.DEFAULT_PROTOCOL instead if you need to ensur... | def dump(obj, file, protocol=None):
"""Serialize obj as bytes streamed into file
protocol defaults to cloudpickle.DEFAULT_PROTOCOL which is an alias to
pickle.HIGHEST_PROTOCOL. This setting favors maximum communication speed
between processes running the same Python version.
Set protocol=pickle.DE... |
Serialize obj as a string of bytes allocated in memory
protocol defaults to cloudpickle.DEFAULT_PROTOCOL which is an alias to
pickle.HIGHEST_PROTOCOL. This setting favors maximum communication speed
between processes running the same Python version.
Set protocol=pickle.DEFAULT_PROTOCOL instead if you ... | def dumps(obj, protocol=None):
"""Serialize obj as a string of bytes allocated in memory
protocol defaults to cloudpickle.DEFAULT_PROTOCOL which is an alias to
pickle.HIGHEST_PROTOCOL. This setting favors maximum communication speed
between processes running the same Python version.
Set protocol=p... |
Fills in the rest of function data into the skeleton function object
The skeleton itself is create by _make_skel_func(). | def _fill_function(*args):
"""Fills in the rest of function data into the skeleton function object
The skeleton itself is create by _make_skel_func().
"""
if len(args) == 2:
func = args[0]
state = args[1]
elif len(args) == 5:
# Backwards compat for cloudpickle v0.4.0, after ... |
Put attributes from `class_dict` back on `skeleton_class`.
See CloudPickler.save_dynamic_class for more info. | def _rehydrate_skeleton_class(skeleton_class, class_dict):
"""Put attributes from `class_dict` back on `skeleton_class`.
See CloudPickler.save_dynamic_class for more info.
"""
registry = None
for attrname, attr in class_dict.items():
if attrname == "_abc_impl":
registry = attr
... |
Return True if the module is special module that cannot be imported by its
name. | def _is_dynamic(module):
"""
Return True if the module is special module that cannot be imported by its
name.
"""
# Quick check: module that have __file__ attribute are not dynamic modules.
if hasattr(module, '__file__'):
return False
if hasattr(module, '__spec__'):
return m... |
Save a code object | def save_codeobject(self, obj):
"""
Save a code object
"""
if PY3: # pragma: no branch
args = (
obj.co_argcount, obj.co_kwonlyargcount, obj.co_nlocals, obj.co_stacksize,
obj.co_flags, obj.co_code, obj.co_consts, obj.co_names, obj.co_varnames,
... |
Registered with the dispatch to handle all function types.
Determines what kind of function obj is (e.g. lambda, defined at
interactive prompt, etc) and handles the pickling appropriately. | def save_function(self, obj, name=None):
""" Registered with the dispatch to handle all function types.
Determines what kind of function obj is (e.g. lambda, defined at
interactive prompt, etc) and handles the pickling appropriately.
"""
try:
should_special_case = ob... |
Save a class that can't be stored as module global.
This method is used to serialize classes that are defined inside
functions, or that otherwise can't be serialized as attribute lookups
from global modules. | def save_dynamic_class(self, obj):
"""
Save a class that can't be stored as module global.
This method is used to serialize classes that are defined inside
functions, or that otherwise can't be serialized as attribute lookups
from global modules.
"""
clsdict = di... |
Pickles an actual func object.
A func comprises: code, globals, defaults, closure, and dict. We
extract and save these, injecting reducing functions at certain points
to recreate the func object. Keep in mind that some of these pieces
can contain a ref to the func itself. Thus, a nai... | def save_function_tuple(self, func):
""" Pickles an actual func object.
A func comprises: code, globals, defaults, closure, and dict. We
extract and save these, injecting reducing functions at certain points
to recreate the func object. Keep in mind that some of these pieces
... |
Save a "global".
The name of this method is somewhat misleading: all types get
dispatched here. | def save_global(self, obj, name=None, pack=struct.pack):
"""
Save a "global".
The name of this method is somewhat misleading: all types get
dispatched here.
"""
if obj is type(None):
return self.save_reduce(type, (None,), obj=obj)
elif obj is type(Ell... |
Inner logic to save instance. Based off pickle.save_inst | def save_inst(self, obj):
"""Inner logic to save instance. Based off pickle.save_inst"""
cls = obj.__class__
# Try the dispatch table (pickle module doesn't do it)
f = self.dispatch.get(cls)
if f:
f(self, obj) # Call unbound method with explicit self
ret... |
itemgetter serializer (needed for namedtuple support) | def save_itemgetter(self, obj):
"""itemgetter serializer (needed for namedtuple support)"""
class Dummy:
def __getitem__(self, item):
return item
items = obj(Dummy())
if not isinstance(items, tuple):
items = (items,)
return self.save_reduce... |
attrgetter serializer | def save_attrgetter(self, obj):
"""attrgetter serializer"""
class Dummy(object):
def __init__(self, attrs, index=None):
self.attrs = attrs
self.index = index
def __getattribute__(self, item):
attrs = object.__getattribute__(self, "a... |
Copy the current param to a new parent, must be a dummy param. | def _copy_new_parent(self, parent):
"""Copy the current param to a new parent, must be a dummy param."""
if self.parent == "undefined":
param = copy.copy(self)
param.parent = parent.uid
return param
else:
raise ValueError("Cannot copy from non-dumm... |
Convert a value to a list, if possible. | def toList(value):
"""
Convert a value to a list, if possible.
"""
if type(value) == list:
return value
elif type(value) in [np.ndarray, tuple, xrange, array.array]:
return list(value)
elif isinstance(value, Vector):
return list(value.t... |
Convert a value to list of floats, if possible. | def toListFloat(value):
"""
Convert a value to list of floats, if possible.
"""
if TypeConverters._can_convert_to_list(value):
value = TypeConverters.toList(value)
if all(map(lambda v: TypeConverters._is_numeric(v), value)):
return [float(v) for v ... |
Convert a value to list of ints, if possible. | def toListInt(value):
"""
Convert a value to list of ints, if possible.
"""
if TypeConverters._can_convert_to_list(value):
value = TypeConverters.toList(value)
if all(map(lambda v: TypeConverters._is_integer(v), value)):
return [int(v) for v in val... |
Convert a value to list of strings, if possible. | def toListString(value):
"""
Convert a value to list of strings, if possible.
"""
if TypeConverters._can_convert_to_list(value):
value = TypeConverters.toList(value)
if all(map(lambda v: TypeConverters._can_convert_to_string(v), value)):
return [Ty... |
Convert a value to a MLlib Vector, if possible. | def toVector(value):
"""
Convert a value to a MLlib Vector, if possible.
"""
if isinstance(value, Vector):
return value
elif TypeConverters._can_convert_to_list(value):
value = TypeConverters.toList(value)
if all(map(lambda v: TypeConverters._i... |
Convert a value to a string, if possible. | def toString(value):
"""
Convert a value to a string, if possible.
"""
if isinstance(value, basestring):
return value
elif type(value) in [np.string_, np.str_]:
return str(value)
elif type(value) == np.unicode_:
return unicode(value)
... |
Copy all params defined on the class to current object. | def _copy_params(self):
"""
Copy all params defined on the class to current object.
"""
cls = type(self)
src_name_attrs = [(x, getattr(cls, x)) for x in dir(cls)]
src_params = list(filter(lambda nameAttr: isinstance(nameAttr[1], Param), src_name_attrs))
for name, ... |
Returns all params ordered by name. The default implementation
uses :py:func:`dir` to get all attributes of type
:py:class:`Param`. | def params(self):
"""
Returns all params ordered by name. The default implementation
uses :py:func:`dir` to get all attributes of type
:py:class:`Param`.
"""
if self._params is None:
self._params = list(filter(lambda attr: isinstance(attr, Param),
... |
Explains a single param and returns its name, doc, and optional
default value and user-supplied value in a string. | def explainParam(self, param):
"""
Explains a single param and returns its name, doc, and optional
default value and user-supplied value in a string.
"""
param = self._resolveParam(param)
values = []
if self.isDefined(param):
if param in self._defaultP... |
Gets a param by its name. | def getParam(self, paramName):
"""
Gets a param by its name.
"""
param = getattr(self, paramName)
if isinstance(param, Param):
return param
else:
raise ValueError("Cannot find param with name %s." % paramName) |
Checks whether a param is explicitly set by user. | def isSet(self, param):
"""
Checks whether a param is explicitly set by user.
"""
param = self._resolveParam(param)
return param in self._paramMap |
Checks whether a param has a default value. | def hasDefault(self, param):
"""
Checks whether a param has a default value.
"""
param = self._resolveParam(param)
return param in self._defaultParamMap |
Tests whether this instance contains a param with a given
(string) name. | def hasParam(self, paramName):
"""
Tests whether this instance contains a param with a given
(string) name.
"""
if isinstance(paramName, basestring):
p = getattr(self, paramName, None)
return isinstance(p, Param)
else:
raise TypeError("... |
Gets the value of a param in the user-supplied param map or its
default value. Raises an error if neither is set. | def getOrDefault(self, param):
"""
Gets the value of a param in the user-supplied param map or its
default value. Raises an error if neither is set.
"""
param = self._resolveParam(param)
if param in self._paramMap:
return self._paramMap[param]
else:
... |
Extracts the embedded default param values and user-supplied
values, and then merges them with extra values from input into
a flat param map, where the latter value is used if there exist
conflicts, i.e., with ordering: default param values <
user-supplied values < extra.
:param... | def extractParamMap(self, extra=None):
"""
Extracts the embedded default param values and user-supplied
values, and then merges them with extra values from input into
a flat param map, where the latter value is used if there exist
conflicts, i.e., with ordering: default param val... |
Creates a copy of this instance with the same uid and some
extra params. The default implementation creates a
shallow copy using :py:func:`copy.copy`, and then copies the
embedded and extra parameters over and returns the copy.
Subclasses should override this method if the default approa... | def copy(self, extra=None):
"""
Creates a copy of this instance with the same uid and some
extra params. The default implementation creates a
shallow copy using :py:func:`copy.copy`, and then copies the
embedded and extra parameters over and returns the copy.
Subclasses s... |
Sets a parameter in the embedded param map. | def set(self, param, value):
"""
Sets a parameter in the embedded param map.
"""
self._shouldOwn(param)
try:
value = param.typeConverter(value)
except ValueError as e:
raise ValueError('Invalid param value given for param "%s". %s' % (param.name, e... |
Validates that the input param belongs to this Params instance. | def _shouldOwn(self, param):
"""
Validates that the input param belongs to this Params instance.
"""
if not (self.uid == param.parent and self.hasParam(param.name)):
raise ValueError("Param %r does not belong to %r." % (param, self)) |
Resolves a param and validates the ownership.
:param param: param name or the param instance, which must
belong to this Params instance
:return: resolved param instance | def _resolveParam(self, param):
"""
Resolves a param and validates the ownership.
:param param: param name or the param instance, which must
belong to this Params instance
:return: resolved param instance
"""
if isinstance(param, Param):
... |
Sets user-supplied params. | def _set(self, **kwargs):
"""
Sets user-supplied params.
"""
for param, value in kwargs.items():
p = getattr(self, param)
if value is not None:
try:
value = p.typeConverter(value)
except TypeError as e:
... |
Sets default params. | def _setDefault(self, **kwargs):
"""
Sets default params.
"""
for param, value in kwargs.items():
p = getattr(self, param)
if value is not None and not isinstance(value, JavaObject):
try:
value = p.typeConverter(value)
... |
Copies param values from this instance to another instance for
params shared by them.
:param to: the target instance
:param extra: extra params to be copied
:return: the target instance with param values copied | def _copyValues(self, to, extra=None):
"""
Copies param values from this instance to another instance for
params shared by them.
:param to: the target instance
:param extra: extra params to be copied
:return: the target instance with param values copied
"""
... |
Changes the uid of this instance. This updates both
the stored uid and the parent uid of params and param maps.
This is used by persistence (loading).
:param newUid: new uid to use, which is converted to unicode
:return: same instance, but with the uid and Param.parent values
... | def _resetUid(self, newUid):
"""
Changes the uid of this instance. This updates both
the stored uid and the parent uid of params and param maps.
This is used by persistence (loading).
:param newUid: new uid to use, which is converted to unicode
:return: same instance, but... |
Return an JavaRDD of Object by unpickling
It will convert each Python object into Java object by Pyrolite, whenever the
RDD is serialized in batch or not. | def _to_java_object_rdd(rdd):
""" Return an JavaRDD of Object by unpickling
It will convert each Python object into Java object by Pyrolite, whenever the
RDD is serialized in batch or not.
"""
rdd = rdd._reserialize(AutoBatchedSerializer(PickleSerializer()))
return rdd.ctx._jvm.org.apache.spark... |
Return the broadcasted value | def value(self):
""" Return the broadcasted value
"""
if not hasattr(self, "_value") and self._path is not None:
# we only need to decrypt it here when encryption is enabled and
# if its on the driver, since executor decryption is handled already
if self._sc i... |
Delete cached copies of this broadcast on the executors. If the
broadcast is used after this is called, it will need to be
re-sent to each executor.
:param blocking: Whether to block until unpersisting has completed | def unpersist(self, blocking=False):
"""
Delete cached copies of this broadcast on the executors. If the
broadcast is used after this is called, it will need to be
re-sent to each executor.
:param blocking: Whether to block until unpersisting has completed
"""
if... |
Destroy all data and metadata related to this broadcast variable.
Use this with caution; once a broadcast variable has been destroyed,
it cannot be used again.
.. versionchanged:: 3.0.0
Added optional argument `blocking` to specify whether to block until all
blocks are del... | def destroy(self, blocking=False):
"""
Destroy all data and metadata related to this broadcast variable.
Use this with caution; once a broadcast variable has been destroyed,
it cannot be used again.
.. versionchanged:: 3.0.0
Added optional argument `blocking` to speci... |
Wrap this udf with a function and attach docstring from func | def _wrapped(self):
"""
Wrap this udf with a function and attach docstring from func
"""
# It is possible for a callable instance without __name__ attribute or/and
# __module__ attribute to be wrapped here. For example, functools.partial. In this case,
# we should avoid ... |
Register a Python function (including lambda function) or a user-defined function
as a SQL function.
:param name: name of the user-defined function in SQL statements.
:param f: a Python function, or a user-defined function. The user-defined function can
be either row-at-a-time or ve... | def register(self, name, f, returnType=None):
"""Register a Python function (including lambda function) or a user-defined function
as a SQL function.
:param name: name of the user-defined function in SQL statements.
:param f: a Python function, or a user-defined function. The user-defin... |
Register a Java user-defined function as a SQL function.
In addition to a name and the function itself, the return type can be optionally specified.
When the return type is not specified we would infer it via reflection.
:param name: name of the user-defined function
:param javaClassNa... | def registerJavaFunction(self, name, javaClassName, returnType=None):
"""Register a Java user-defined function as a SQL function.
In addition to a name and the function itself, the return type can be optionally specified.
When the return type is not specified we would infer it via reflection.
... |
Register a Java user-defined aggregate function as a SQL function.
:param name: name of the user-defined aggregate function
:param javaClassName: fully qualified name of java class
>>> spark.udf.registerJavaUDAF("javaUDAF", "test.org.apache.spark.sql.MyDoubleAvg")
>>> df = spark.create... | def registerJavaUDAF(self, name, javaClassName):
"""Register a Java user-defined aggregate function as a SQL function.
:param name: name of the user-defined aggregate function
:param javaClassName: fully qualified name of java class
>>> spark.udf.registerJavaUDAF("javaUDAF", "test.org.... |
Either recreate a StreamingContext from checkpoint data or create a new StreamingContext.
If checkpoint data exists in the provided `checkpointPath`, then StreamingContext will be
recreated from the checkpoint data. If the data does not exist, then the provided setupFunc
will be used to create a... | def getOrCreate(cls, checkpointPath, setupFunc):
"""
Either recreate a StreamingContext from checkpoint data or create a new StreamingContext.
If checkpoint data exists in the provided `checkpointPath`, then StreamingContext will be
recreated from the checkpoint data. If the data does no... |
Return either the currently active StreamingContext (i.e., if there is a context started
but not stopped) or None. | def getActive(cls):
"""
Return either the currently active StreamingContext (i.e., if there is a context started
but not stopped) or None.
"""
activePythonContext = cls._activeContext
if activePythonContext is not None:
# Verify that the current running Java S... |
Either return the active StreamingContext (i.e. currently started but not stopped),
or recreate a StreamingContext from checkpoint data or create a new StreamingContext
using the provided setupFunc function. If the checkpointPath is None or does not contain
valid checkpoint data, then setupFunc ... | def getActiveOrCreate(cls, checkpointPath, setupFunc):
"""
Either return the active StreamingContext (i.e. currently started but not stopped),
or recreate a StreamingContext from checkpoint data or create a new StreamingContext
using the provided setupFunc function. If the checkpointPath... |
Wait for the execution to stop.
@param timeout: time to wait in seconds | def awaitTermination(self, timeout=None):
"""
Wait for the execution to stop.
@param timeout: time to wait in seconds
"""
if timeout is None:
self._jssc.awaitTermination()
else:
self._jssc.awaitTerminationOrTimeout(int(timeout * 1000)) |
Stop the execution of the streams, with option of ensuring all
received data has been processed.
@param stopSparkContext: Stop the associated SparkContext or not
@param stopGracefully: Stop gracefully by waiting for the processing
of all received data to be complet... | def stop(self, stopSparkContext=True, stopGraceFully=False):
"""
Stop the execution of the streams, with option of ensuring all
received data has been processed.
@param stopSparkContext: Stop the associated SparkContext or not
@param stopGracefully: Stop gracefully by waiting fo... |
Create an input from TCP source hostname:port. Data is received using
a TCP socket and receive byte is interpreted as UTF8 encoded ``\\n`` delimited
lines.
@param hostname: Hostname to connect to for receiving data
@param port: Port to connect to for receiving data
... | def socketTextStream(self, hostname, port, storageLevel=StorageLevel.MEMORY_AND_DISK_2):
"""
Create an input from TCP source hostname:port. Data is received using
a TCP socket and receive byte is interpreted as UTF8 encoded ``\\n`` delimited
lines.
@param hostname: Hostname... |
Create an input stream that monitors a Hadoop-compatible file system
for new files and reads them as text files. Files must be wrriten to the
monitored directory by "moving" them from another location within the same
file system. File names starting with . are ignored.
The text files mus... | def textFileStream(self, directory):
"""
Create an input stream that monitors a Hadoop-compatible file system
for new files and reads them as text files. Files must be wrriten to the
monitored directory by "moving" them from another location within the same
file system. File name... |
Create an input stream that monitors a Hadoop-compatible file system
for new files and reads them as flat binary files with records of
fixed length. Files must be written to the monitored directory by "moving"
them from another location within the same file system.
File names starting wi... | def binaryRecordsStream(self, directory, recordLength):
"""
Create an input stream that monitors a Hadoop-compatible file system
for new files and reads them as flat binary files with records of
fixed length. Files must be written to the monitored directory by "moving"
them from ... |
Create an input stream from a queue of RDDs or list. In each batch,
it will process either one or all of the RDDs returned by the queue.
.. note:: Changes to the queue after the stream is created will not be recognized.
@param rdds: Queue of RDDs
@param oneAtATime: pick one rdd e... | def queueStream(self, rdds, oneAtATime=True, default=None):
"""
Create an input stream from a queue of RDDs or list. In each batch,
it will process either one or all of the RDDs returned by the queue.
.. note:: Changes to the queue after the stream is created will not be recognized.
... |
Create a new DStream in which each RDD is generated by applying
a function on RDDs of the DStreams. The order of the JavaRDDs in
the transform function parameter will be the same as the order
of corresponding DStreams in the list. | def transform(self, dstreams, transformFunc):
"""
Create a new DStream in which each RDD is generated by applying
a function on RDDs of the DStreams. The order of the JavaRDDs in
the transform function parameter will be the same as the order
of corresponding DStreams in the list.... |
Create a unified DStream from multiple DStreams of the same
type and same slide duration. | def union(self, *dstreams):
"""
Create a unified DStream from multiple DStreams of the same
type and same slide duration.
"""
if not dstreams:
raise ValueError("should have at least one DStream to union")
if len(dstreams) == 1:
return dstreams[0]
... |
Add a [[org.apache.spark.streaming.scheduler.StreamingListener]] object for
receiving system events related to streaming. | def addStreamingListener(self, streamingListener):
"""
Add a [[org.apache.spark.streaming.scheduler.StreamingListener]] object for
receiving system events related to streaming.
"""
self._jssc.addStreamingListener(self._jvm.JavaStreamingListenerWrapper(
self._jvm.Pytho... |
Load tf checkpoints in a pytorch model | def load_tf_weights_in_gpt2(model, gpt2_checkpoint_path):
""" Load tf checkpoints in a pytorch model
"""
try:
import re
import numpy as np
import tensorflow as tf
except ImportError:
print("Loading a TensorFlow models in PyTorch, requires TensorFlow to be installed. Pleas... |
Constructs a `GPT2Config` from a json file of parameters. | def from_json_file(cls, json_file):
"""Constructs a `GPT2Config` from a json file of parameters."""
with open(json_file, "r", encoding="utf-8") as reader:
text = reader.read()
return cls.from_dict(json.loads(text)) |
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