# # 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 Any, List, Optional, Tuple, Type from pyspark.ml._typing import ParamMap from pyspark.ml import Estimator, Model from pyspark.ml.evaluation import Evaluator from pyspark.ml.param import Param from pyspark.ml.param.shared import HasCollectSubModels, HasParallelism, HasSeed from pyspark.ml.util import MLReader, MLReadable, MLWriter, MLWritable class ParamGridBuilder: def __init__(self) -> None: ... def addGrid(self, param: Param, values: List[Any]) -> ParamGridBuilder: ... @overload def baseOn(self, __args: ParamMap) -> ParamGridBuilder: ... @overload def baseOn(self, *args: Tuple[Param, Any]) -> ParamGridBuilder: ... def build(self) -> List[ParamMap]: ... class _ValidatorParams(HasSeed): estimator: Param[Estimator] estimatorParamMaps: Param[List[ParamMap]] evaluator: Param[Evaluator] def getEstimator(self) -> Estimator: ... def getEstimatorParamMaps(self) -> List[ParamMap]: ... def getEvaluator(self) -> Evaluator: ... class _CrossValidatorParams(_ValidatorParams): numFolds: Param[int] foldCol: Param[str] def __init__(self, *args: Any): ... def getNumFolds(self) -> int: ... def getFoldCol(self) -> str: ... class CrossValidator( Estimator[CrossValidatorModel], _CrossValidatorParams, HasParallelism, HasCollectSubModels, MLReadable[CrossValidator], MLWritable, ): def __init__( self, *, estimator: Optional[Estimator] = ..., estimatorParamMaps: Optional[List[ParamMap]] = ..., evaluator: Optional[Evaluator] = ..., numFolds: int = ..., seed: Optional[int] = ..., parallelism: int = ..., collectSubModels: bool = ..., foldCol: str = ... ) -> None: ... def setParams( self, *, estimator: Optional[Estimator] = ..., estimatorParamMaps: Optional[List[ParamMap]] = ..., evaluator: Optional[Evaluator] = ..., numFolds: int = ..., seed: Optional[int] = ..., parallelism: int = ..., collectSubModels: bool = ..., foldCol: str = ... ) -> CrossValidator: ... def setEstimator(self, value: Estimator) -> CrossValidator: ... def setEstimatorParamMaps(self, value: List[ParamMap]) -> CrossValidator: ... def setEvaluator(self, value: Evaluator) -> CrossValidator: ... def setNumFolds(self, value: int) -> CrossValidator: ... def setFoldCol(self, value: str) -> CrossValidator: ... def setSeed(self, value: int) -> CrossValidator: ... def setParallelism(self, value: int) -> CrossValidator: ... def setCollectSubModels(self, value: bool) -> CrossValidator: ... def copy(self, extra: Optional[ParamMap] = ...) -> CrossValidator: ... def write(self) -> MLWriter: ... @classmethod def read(cls: Type[CrossValidator]) -> MLReader: ... class CrossValidatorModel( Model, _CrossValidatorParams, MLReadable[CrossValidatorModel], MLWritable ): bestModel: Model avgMetrics: List[float] subModels: List[List[Model]] def __init__( self, bestModel: Model, avgMetrics: Optional[List[float]] = ..., subModels: Optional[List[List[Model]]] = ..., ) -> None: ... def copy(self, extra: Optional[ParamMap] = ...) -> CrossValidatorModel: ... def write(self) -> MLWriter: ... @classmethod def read(cls: Type[CrossValidatorModel]) -> MLReader: ... class _TrainValidationSplitParams(_ValidatorParams): trainRatio: Param[float] def __init__(self, *args: Any): ... def getTrainRatio(self) -> float: ... class TrainValidationSplit( Estimator[TrainValidationSplitModel], _TrainValidationSplitParams, HasParallelism, HasCollectSubModels, MLReadable[TrainValidationSplit], MLWritable, ): def __init__( self, *, estimator: Optional[Estimator] = ..., estimatorParamMaps: Optional[List[ParamMap]] = ..., evaluator: Optional[Evaluator] = ..., trainRatio: float = ..., parallelism: int = ..., collectSubModels: bool = ..., seed: Optional[int] = ... ) -> None: ... def setParams( self, *, estimator: Optional[Estimator] = ..., estimatorParamMaps: Optional[List[ParamMap]] = ..., evaluator: Optional[Evaluator] = ..., trainRatio: float = ..., parallelism: int = ..., collectSubModels: bool = ..., seed: Optional[int] = ... ) -> TrainValidationSplit: ... def setEstimator(self, value: Estimator) -> TrainValidationSplit: ... def setEstimatorParamMaps(self, value: List[ParamMap]) -> TrainValidationSplit: ... def setEvaluator(self, value: Evaluator) -> TrainValidationSplit: ... def setTrainRatio(self, value: float) -> TrainValidationSplit: ... def setSeed(self, value: int) -> TrainValidationSplit: ... def setParallelism(self, value: int) -> TrainValidationSplit: ... def setCollectSubModels(self, value: bool) -> TrainValidationSplit: ... def copy(self, extra: Optional[ParamMap] = ...) -> TrainValidationSplit: ... def write(self) -> MLWriter: ... @classmethod def read(cls: Type[TrainValidationSplit]) -> MLReader: ... class TrainValidationSplitModel( Model, _TrainValidationSplitParams, MLReadable[TrainValidationSplitModel], MLWritable, ): bestModel: Model validationMetrics: List[float] subModels: List[Model] def __init__( self, bestModel: Model, validationMetrics: Optional[List[float]] = ..., subModels: Optional[List[Model]] = ..., ) -> None: ... def setEstimator(self, value: Estimator) -> TrainValidationSplitModel: ... def setEstimatorParamMaps( self, value: List[ParamMap] ) -> TrainValidationSplitModel: ... def setEvaluator(self, value: Evaluator) -> TrainValidationSplitModel: ... def copy(self, extra: Optional[ParamMap] = ...) -> TrainValidationSplitModel: ... def write(self) -> MLWriter: ... @classmethod def read(cls: Type[TrainValidationSplitModel]) -> MLReader: ... class CrossValidatorWriter(MLWriter): instance: CrossValidator def __init__(self, instance: CrossValidator) -> None: ... def saveImpl(self, path: str) -> None: ... class CrossValidatorReader(MLReader[CrossValidator]): cls: Type[CrossValidator] def __init__(self, cls: Type[CrossValidator]) -> None: ... def load(self, path: str) -> CrossValidator: ... class CrossValidatorModelWriter(MLWriter): instance: CrossValidatorModel def __init__(self, instance: CrossValidatorModel) -> None: ... def saveImpl(self, path: str) -> None: ... class CrossValidatorModelReader(MLReader[CrossValidatorModel]): cls: Type[CrossValidatorModel] def __init__(self, cls: Type[CrossValidatorModel]) -> None: ... def load(self, path: str) -> CrossValidatorModel: ... class TrainValidationSplitWriter(MLWriter): instance: TrainValidationSplit def __init__(self, instance: TrainValidationSplit) -> None: ... def saveImpl(self, path: str) -> None: ... class TrainValidationSplitReader(MLReader[TrainValidationSplit]): cls: Type[TrainValidationSplit] def __init__(self, cls: Type[TrainValidationSplit]) -> None: ... def load(self, path: str) -> TrainValidationSplit: ... class TrainValidationSplitModelWriter(MLWriter): instance: TrainValidationSplitModel def __init__(self, instance: TrainValidationSplitModel) -> None: ... def saveImpl(self, path: str) -> None: ... class TrainValidationSplitModelReader(MLReader[TrainValidationSplitModel]): cls: Type[TrainValidationSplitModel] def __init__(self, cls: Type[TrainValidationSplitModel]) -> None: ... def load(self, path: str) -> TrainValidationSplitModel: ...