spark-instrumented-optimizer/python/pyspark/mllib/feature.pyi

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#
# Licensed to the Apache Software Foundation (ASF) under one
# or more contributor license agreements. See the NOTICE file
# distributed with this work for additional information
# regarding copyright ownership. The ASF licenses this file
# to you under the Apache License, Version 2.0 (the
# "License"); you may not use this file except in compliance
# with the License. You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing,
# software distributed under the License is distributed on an
# "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
# KIND, either express or implied. See the License for the
# specific language governing permissions and limitations
# under the License.
from typing import overload
from typing import Iterable, Hashable, List, Tuple, Union
from pyspark.mllib._typing import VectorLike
from pyspark.context import SparkContext
from pyspark.rdd import RDD
from pyspark.mllib.common import JavaModelWrapper
from pyspark.mllib.linalg import Vector
from pyspark.mllib.regression import LabeledPoint
from pyspark.mllib.util import JavaLoader, JavaSaveable
from py4j.java_collections import JavaMap # type: ignore[import]
class VectorTransformer:
@overload
def transform(self, vector: VectorLike) -> Vector: ...
@overload
def transform(self, vector: RDD[VectorLike]) -> RDD[Vector]: ...
class Normalizer(VectorTransformer):
p: float
def __init__(self, p: float = ...) -> None: ...
@overload
def transform(self, vector: VectorLike) -> Vector: ...
@overload
def transform(self, vector: RDD[VectorLike]) -> RDD[Vector]: ...
class JavaVectorTransformer(JavaModelWrapper, VectorTransformer):
@overload
def transform(self, vector: VectorLike) -> Vector: ...
@overload
def transform(self, vector: RDD[VectorLike]) -> RDD[Vector]: ...
class StandardScalerModel(JavaVectorTransformer):
@overload
def transform(self, vector: VectorLike) -> Vector: ...
@overload
def transform(self, vector: RDD[VectorLike]) -> RDD[Vector]: ...
def setWithMean(self, withMean: bool) -> StandardScalerModel: ...
def setWithStd(self, withStd: bool) -> StandardScalerModel: ...
@property
def withStd(self) -> bool: ...
@property
def withMean(self) -> bool: ...
@property
def std(self) -> Vector: ...
@property
def mean(self) -> Vector: ...
class StandardScaler:
withMean: bool
withStd: bool
def __init__(self, withMean: bool = ..., withStd: bool = ...) -> None: ...
def fit(self, dataset: RDD[VectorLike]) -> StandardScalerModel: ...
class ChiSqSelectorModel(JavaVectorTransformer):
@overload
def transform(self, vector: VectorLike) -> Vector: ...
@overload
def transform(self, vector: RDD[VectorLike]) -> RDD[Vector]: ...
class ChiSqSelector:
numTopFeatures: int
selectorType: str
percentile: float
fpr: float
fdr: float
fwe: float
def __init__(
self,
numTopFeatures: int = ...,
selectorType: str = ...,
percentile: float = ...,
fpr: float = ...,
fdr: float = ...,
fwe: float = ...,
) -> None: ...
def setNumTopFeatures(self, numTopFeatures: int) -> ChiSqSelector: ...
def setPercentile(self, percentile: float) -> ChiSqSelector: ...
def setFpr(self, fpr: float) -> ChiSqSelector: ...
def setFdr(self, fdr: float) -> ChiSqSelector: ...
def setFwe(self, fwe: float) -> ChiSqSelector: ...
def setSelectorType(self, selectorType: str) -> ChiSqSelector: ...
def fit(self, data: RDD[LabeledPoint]) -> ChiSqSelectorModel: ...
class PCAModel(JavaVectorTransformer): ...
class PCA:
k: int
def __init__(self, k: int) -> None: ...
def fit(self, data: RDD[VectorLike]) -> PCAModel: ...
class HashingTF:
numFeatures: int
binary: bool
def __init__(self, numFeatures: int = ...) -> None: ...
def setBinary(self, value: bool) -> HashingTF: ...
def indexOf(self, term: Hashable) -> int: ...
@overload
def transform(self, document: Iterable[Hashable]) -> Vector: ...
@overload
def transform(self, document: RDD[Iterable[Hashable]]) -> RDD[Vector]: ...
class IDFModel(JavaVectorTransformer):
@overload
def transform(self, x: VectorLike) -> Vector: ...
@overload
def transform(self, x: RDD[VectorLike]) -> RDD[Vector]: ...
def idf(self) -> Vector: ...
def docFreq(self) -> List[int]: ...
def numDocs(self) -> int: ...
class IDF:
minDocFreq: int
def __init__(self, minDocFreq: int = ...) -> None: ...
def fit(self, dataset: RDD[VectorLike]) -> IDFModel: ...
class Word2VecModel(JavaVectorTransformer, JavaSaveable, JavaLoader[Word2VecModel]):
def transform(self, word: str) -> Vector: ... # type: ignore
def findSynonyms(self, word: Union[str, VectorLike], num: int) -> Iterable[Tuple[str, float]]: ...
def getVectors(self) -> JavaMap: ...
@classmethod
def load(cls, sc: SparkContext, path: str) -> Word2VecModel: ...
class Word2Vec:
vectorSize: int
learningRate: float
numPartitions: int
numIterations: int
seed: int
minCount: int
windowSize: int
def __init__(self) -> None: ...
def setVectorSize(self, vectorSize: int) -> Word2Vec: ...
def setLearningRate(self, learningRate: float) -> Word2Vec: ...
def setNumPartitions(self, numPartitions: int) -> Word2Vec: ...
def setNumIterations(self, numIterations: int) -> Word2Vec: ...
def setSeed(self, seed: int) -> Word2Vec: ...
def setMinCount(self, minCount: int) -> Word2Vec: ...
def setWindowSize(self, windowSize: int) -> Word2Vec: ...
def fit(self, data: RDD[List[str]]) -> Word2VecModel: ...
class ElementwiseProduct(VectorTransformer):
scalingVector: Vector
def __init__(self, scalingVector: Vector) -> None: ...
@overload
def transform(self, vector: VectorLike) -> Vector: ...
@overload
def transform(self, vector: RDD[VectorLike]) -> RDD[Vector]: ...