# # 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 Generic, Sequence, Optional, Tuple, TypeVar, Union from pyspark.rdd import RDD from pyspark.storagelevel import StorageLevel from pyspark.mllib.common import JavaModelWrapper from pyspark.mllib.linalg import Vector, Matrix, QRDecomposition from pyspark.mllib.stat import MultivariateStatisticalSummary import pyspark.sql.dataframe from numpy import ndarray # noqa: F401 VectorLike = Union[Vector, Sequence[Union[float, int]]] UT = TypeVar("UT") VT = TypeVar("VT") class DistributedMatrix: def numRows(self) -> int: ... def numCols(self) -> int: ... class RowMatrix(DistributedMatrix): def __init__( self, rows: Union[RDD[Vector], pyspark.sql.dataframe.DataFrame], numRows: int = ..., numCols: int = ..., ) -> None: ... @property def rows(self) -> RDD[Vector]: ... def numRows(self) -> int: ... def numCols(self) -> int: ... def computeColumnSummaryStatistics(self) -> MultivariateStatisticalSummary: ... def computeCovariance(self) -> Matrix: ... def computeGramianMatrix(self) -> Matrix: ... def columnSimilarities(self, threshold: float = ...) -> CoordinateMatrix: ... def tallSkinnyQR( self, computeQ: bool = ... ) -> QRDecomposition[RowMatrix, Matrix]: ... def computeSVD( self, k: int, computeU: bool = ..., rCond: float = ... ) -> SingularValueDecomposition[RowMatrix, Matrix]: ... def computePrincipalComponents(self, k: int) -> Matrix: ... def multiply(self, matrix: Matrix) -> RowMatrix: ... class SingularValueDecomposition(JavaModelWrapper, Generic[UT, VT]): @property def U(self) -> Optional[UT]: ... @property def s(self) -> Vector: ... @property def V(self) -> VT: ... class IndexedRow: index: int vector: VectorLike def __init__(self, index: int, vector: VectorLike) -> None: ... class IndexedRowMatrix(DistributedMatrix): def __init__( self, rows: RDD[Union[Tuple[int, VectorLike], IndexedRow]], numRows: int = ..., numCols: int = ..., ) -> None: ... @property def rows(self) -> RDD[IndexedRow]: ... def numRows(self) -> int: ... def numCols(self) -> int: ... def columnSimilarities(self) -> CoordinateMatrix: ... def computeGramianMatrix(self) -> Matrix: ... def toRowMatrix(self) -> RowMatrix: ... def toCoordinateMatrix(self) -> CoordinateMatrix: ... def toBlockMatrix( self, rowsPerBlock: int = ..., colsPerBlock: int = ... ) -> BlockMatrix: ... def computeSVD( self, k: int, computeU: bool = ..., rCond: float = ... ) -> SingularValueDecomposition[IndexedRowMatrix, Matrix]: ... def multiply(self, matrix: Matrix) -> IndexedRowMatrix: ... class MatrixEntry: i: int j: int value: float def __init__(self, i: int, j: int, value: float) -> None: ... class CoordinateMatrix(DistributedMatrix): def __init__( self, entries: RDD[Union[Tuple[int, int, float], MatrixEntry]], numRows: int = ..., numCols: int = ..., ) -> None: ... @property def entries(self) -> RDD[MatrixEntry]: ... def numRows(self) -> int: ... def numCols(self) -> int: ... def transpose(self) -> CoordinateMatrix: ... def toRowMatrix(self) -> RowMatrix: ... def toIndexedRowMatrix(self) -> IndexedRowMatrix: ... def toBlockMatrix( self, rowsPerBlock: int = ..., colsPerBlock: int = ... ) -> BlockMatrix: ... class BlockMatrix(DistributedMatrix): def __init__( self, blocks: RDD[Tuple[Tuple[int, int], Matrix]], rowsPerBlock: int, colsPerBlock: int, numRows: int = ..., numCols: int = ..., ) -> None: ... @property def blocks(self) -> RDD[Tuple[Tuple[int, int], Matrix]]: ... @property def rowsPerBlock(self) -> int: ... @property def colsPerBlock(self) -> int: ... @property def numRowBlocks(self) -> int: ... @property def numColBlocks(self) -> int: ... def numRows(self) -> int: ... def numCols(self) -> int: ... def cache(self) -> BlockMatrix: ... def persist(self, storageLevel: StorageLevel) -> BlockMatrix: ... def validate(self) -> None: ... def add(self, other: BlockMatrix) -> BlockMatrix: ... def subtract(self, other: BlockMatrix) -> BlockMatrix: ... def multiply(self, other: BlockMatrix) -> BlockMatrix: ... def transpose(self) -> BlockMatrix: ... def toLocalMatrix(self) -> Matrix: ... def toIndexedRowMatrix(self) -> IndexedRowMatrix: ... def toCoordinateMatrix(self) -> CoordinateMatrix: ...