spark-instrumented-optimizer/python/pyspark/mllib/regression.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, Optional, Tuple, TypeVar
from pyspark.rdd import RDD
from pyspark.mllib._typing import VectorLike
from pyspark.context import SparkContext
from pyspark.mllib.linalg import Vector
from pyspark.mllib.util import Saveable, Loader
from pyspark.streaming.dstream import DStream
from numpy import ndarray # type: ignore[import]
K = TypeVar("K")
class LabeledPoint:
label: int
features: Vector
def __init__(self, label: float, features: Iterable[float]) -> None: ...
def __reduce__(self) -> Tuple[type, Tuple[bytes]]: ...
class LinearModel:
def __init__(self, weights: Vector, intercept: float) -> None: ...
@property
def weights(self) -> Vector: ...
@property
def intercept(self) -> float: ...
class LinearRegressionModelBase(LinearModel):
@overload
def predict(self, x: Vector) -> float: ...
@overload
def predict(self, x: RDD[Vector]) -> RDD[float]: ...
class LinearRegressionModel(LinearRegressionModelBase):
def save(self, sc: SparkContext, path: str) -> None: ...
@classmethod
def load(cls, sc: SparkContext, path: str) -> LinearRegressionModel: ...
class LinearRegressionWithSGD:
@classmethod
def train(
cls,
data: RDD[LabeledPoint],
iterations: int = ...,
step: float = ...,
miniBatchFraction: float = ...,
initialWeights: Optional[VectorLike] = ...,
regParam: float = ...,
regType: Optional[str] = ...,
intercept: bool = ...,
validateData: bool = ...,
convergenceTol: float = ...,
) -> LinearRegressionModel: ...
class LassoModel(LinearRegressionModelBase):
def save(self, sc: SparkContext, path: str) -> None: ...
@classmethod
def load(cls, sc: SparkContext, path: str) -> LassoModel: ...
class LassoWithSGD:
@classmethod
def train(
cls,
data: RDD[LabeledPoint],
iterations: int = ...,
step: float = ...,
regParam: float = ...,
miniBatchFraction: float = ...,
initialWeights: Optional[VectorLike] = ...,
intercept: bool = ...,
validateData: bool = ...,
convergenceTol: float = ...,
) -> LassoModel: ...
class RidgeRegressionModel(LinearRegressionModelBase):
def save(self, sc: SparkContext, path: str) -> None: ...
@classmethod
def load(cls, sc: SparkContext, path: str) -> RidgeRegressionModel: ...
class RidgeRegressionWithSGD:
@classmethod
def train(
cls,
data: RDD[LabeledPoint],
iterations: int = ...,
step: float = ...,
regParam: float = ...,
miniBatchFraction: float = ...,
initialWeights: Optional[VectorLike] = ...,
intercept: bool = ...,
validateData: bool = ...,
convergenceTol: float = ...,
) -> RidgeRegressionModel: ...
class IsotonicRegressionModel(Saveable, Loader[IsotonicRegressionModel]):
boundaries: ndarray
predictions: ndarray
isotonic: bool
def __init__(
self, boundaries: ndarray, predictions: ndarray, isotonic: bool
) -> None: ...
@overload
def predict(self, x: Vector) -> ndarray: ...
@overload
def predict(self, x: RDD[Vector]) -> RDD[ndarray]: ...
def save(self, sc: SparkContext, path: str) -> None: ...
@classmethod
def load(cls, sc: SparkContext, path: str) -> IsotonicRegressionModel: ...
class IsotonicRegression:
@classmethod
def train(
cls, data: RDD[VectorLike], isotonic: bool = ...
) -> IsotonicRegressionModel: ...
class StreamingLinearAlgorithm:
def __init__(self, model: LinearModel) -> None: ...
def latestModel(self) -> LinearModel: ...
def predictOn(self, dstream: DStream[VectorLike]) -> DStream[float]: ...
def predictOnValues(
self, dstream: DStream[Tuple[K, VectorLike]]
) -> DStream[Tuple[K, float]]: ...
class StreamingLinearRegressionWithSGD(StreamingLinearAlgorithm):
stepSize: float
numIterations: int
miniBatchFraction: float
convergenceTol: float
def __init__(
self,
stepSize: float = ...,
numIterations: int = ...,
miniBatchFraction: float = ...,
convergenceTol: float = ...,
) -> None: ...
def setInitialWeights(
self, initialWeights: VectorLike
) -> StreamingLinearRegressionWithSGD: ...
def trainOn(self, dstream: DStream[LabeledPoint]) -> None: ...