Source code for pyspark.mllib.linalg

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# The ASF licenses this file to You under the Apache License, Version 2.0
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#    http://www.apache.org/licenses/LICENSE-2.0
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"""
MLlib utilities for linear algebra. For dense vectors, MLlib
uses the NumPy C{array} type, so you can simply pass NumPy arrays
around. For sparse vectors, users can construct a L{SparseVector}
object from MLlib or pass SciPy C{scipy.sparse} column vectors if
SciPy is available in their environment.
"""

import sys
import array
import copy_reg

import numpy as np

from pyspark.sql.types import UserDefinedType, StructField, StructType, ArrayType, DoubleType, \
    IntegerType, ByteType


__all__ = ['Vector', 'DenseVector', 'SparseVector', 'Vectors', 'DenseMatrix', 'Matrices']


if sys.version_info[:2] == (2, 7):
    # speed up pickling array in Python 2.7
    def fast_pickle_array(ar):
        return array.array, (ar.typecode, ar.tostring())
    copy_reg.pickle(array.array, fast_pickle_array)


# Check whether we have SciPy. MLlib works without it too, but if we have it, some methods,
# such as _dot and _serialize_double_vector, start to support scipy.sparse matrices.

try:
    import scipy.sparse
    _have_scipy = True
except:
    # No SciPy in environment, but that's okay
    _have_scipy = False


def _convert_to_vector(l):
    if isinstance(l, Vector):
        return l
    elif type(l) in (array.array, np.array, np.ndarray, list, tuple):
        return DenseVector(l)
    elif _have_scipy and scipy.sparse.issparse(l):
        assert l.shape[1] == 1, "Expected column vector"
        csc = l.tocsc()
        return SparseVector(l.shape[0], csc.indices, csc.data)
    else:
        raise TypeError("Cannot convert type %s into Vector" % type(l))


def _vector_size(v):
    """
    Returns the size of the vector.

    >>> _vector_size([1., 2., 3.])
    3
    >>> _vector_size((1., 2., 3.))
    3
    >>> _vector_size(array.array('d', [1., 2., 3.]))
    3
    >>> _vector_size(np.zeros(3))
    3
    >>> _vector_size(np.zeros((3, 1)))
    3
    >>> _vector_size(np.zeros((1, 3)))
    Traceback (most recent call last):
        ...
    ValueError: Cannot treat an ndarray of shape (1, 3) as a vector
    """
    if isinstance(v, Vector):
        return len(v)
    elif type(v) in (array.array, list, tuple):
        return len(v)
    elif type(v) == np.ndarray:
        if v.ndim == 1 or (v.ndim == 2 and v.shape[1] == 1):
            return len(v)
        else:
            raise ValueError("Cannot treat an ndarray of shape %s as a vector" % str(v.shape))
    elif _have_scipy and scipy.sparse.issparse(v):
        assert v.shape[1] == 1, "Expected column vector"
        return v.shape[0]
    else:
        raise TypeError("Cannot treat type %s as a vector" % type(v))


def _format_float(f, digits=4):
    s = str(round(f, digits))
    if '.' in s:
        s = s[:s.index('.') + 1 + digits]
    return s


class VectorUDT(UserDefinedType):
    """
    SQL user-defined type (UDT) for Vector.
    """

    @classmethod
    def sqlType(cls):
        return StructType([
            StructField("type", ByteType(), False),
            StructField("size", IntegerType(), True),
            StructField("indices", ArrayType(IntegerType(), False), True),
            StructField("values", ArrayType(DoubleType(), False), True)])

    @classmethod
    def module(cls):
        return "pyspark.mllib.linalg"

    @classmethod
    def scalaUDT(cls):
        return "org.apache.spark.mllib.linalg.VectorUDT"

    def serialize(self, obj):
        if isinstance(obj, SparseVector):
            indices = [int(i) for i in obj.indices]
            values = [float(v) for v in obj.values]
            return (0, obj.size, indices, values)
        elif isinstance(obj, DenseVector):
            values = [float(v) for v in obj]
            return (1, None, None, values)
        else:
            raise ValueError("cannot serialize %r of type %r" % (obj, type(obj)))

    def deserialize(self, datum):
        assert len(datum) == 4, \
            "VectorUDT.deserialize given row with length %d but requires 4" % len(datum)
        tpe = datum[0]
        if tpe == 0:
            return SparseVector(datum[1], datum[2], datum[3])
        elif tpe == 1:
            return DenseVector(datum[3])
        else:
            raise ValueError("do not recognize type %r" % tpe)

    def simpleString(self):
        return "vector"


[docs]class Vector(object): __UDT__ = VectorUDT() """ Abstract class for DenseVector and SparseVector """
[docs] def toArray(self): """ Convert the vector into an numpy.ndarray :return: numpy.ndarray """ raise NotImplementedError
[docs]class DenseVector(Vector): """ A dense vector represented by a value array. """ def __init__(self, ar): if isinstance(ar, basestring): ar = np.frombuffer(ar, dtype=np.float64) elif not isinstance(ar, np.ndarray): ar = np.array(ar, dtype=np.float64) if ar.dtype != np.float64: ar = ar.astype(np.float64) self.array = ar def __reduce__(self): return DenseVector, (self.array.tostring(),)
[docs] def dot(self, other): """ Compute the dot product of two Vectors. We support (Numpy array, list, SparseVector, or SciPy sparse) and a target NumPy array that is either 1- or 2-dimensional. Equivalent to calling numpy.dot of the two vectors. >>> dense = DenseVector(array.array('d', [1., 2.])) >>> dense.dot(dense) 5.0 >>> dense.dot(SparseVector(2, [0, 1], [2., 1.])) 4.0 >>> dense.dot(range(1, 3)) 5.0 >>> dense.dot(np.array(range(1, 3))) 5.0 >>> dense.dot([1.,]) Traceback (most recent call last): ... AssertionError: dimension mismatch >>> dense.dot(np.reshape([1., 2., 3., 4.], (2, 2), order='F')) array([ 5., 11.]) >>> dense.dot(np.reshape([1., 2., 3.], (3, 1), order='F')) Traceback (most recent call last): ... AssertionError: dimension mismatch """ if type(other) == np.ndarray: if other.ndim > 1: assert len(self) == other.shape[0], "dimension mismatch" return np.dot(self.array, other) elif _have_scipy and scipy.sparse.issparse(other): assert len(self) == other.shape[0], "dimension mismatch" return other.transpose().dot(self.toArray()) else: assert len(self) == _vector_size(other), "dimension mismatch" if isinstance(other, SparseVector): return other.dot(self) elif isinstance(other, Vector): return np.dot(self.toArray(), other.toArray()) else: return np.dot(self.toArray(), other)
[docs] def squared_distance(self, other): """ Squared distance of two Vectors. >>> dense1 = DenseVector(array.array('d', [1., 2.])) >>> dense1.squared_distance(dense1) 0.0 >>> dense2 = np.array([2., 1.]) >>> dense1.squared_distance(dense2) 2.0 >>> dense3 = [2., 1.] >>> dense1.squared_distance(dense3) 2.0 >>> sparse1 = SparseVector(2, [0, 1], [2., 1.]) >>> dense1.squared_distance(sparse1) 2.0 >>> dense1.squared_distance([1.,]) Traceback (most recent call last): ... AssertionError: dimension mismatch >>> dense1.squared_distance(SparseVector(1, [0,], [1.,])) Traceback (most recent call last): ... AssertionError: dimension mismatch """ assert len(self) == _vector_size(other), "dimension mismatch" if isinstance(other, SparseVector): return other.squared_distance(self) elif _have_scipy and scipy.sparse.issparse(other): return _convert_to_vector(other).squared_distance(self) if isinstance(other, Vector): other = other.toArray() elif not isinstance(other, np.ndarray): other = np.array(other) diff = self.toArray() - other return np.dot(diff, diff)
[docs] def toArray(self): return self.array
def __getitem__(self, item): return self.array[item] def __len__(self): return len(self.array) def __str__(self): return "[" + ",".join([str(v) for v in self.array]) + "]" def __repr__(self): return "DenseVector([%s])" % (', '.join(_format_float(i) for i in self.array)) def __eq__(self, other): return isinstance(other, DenseVector) and np.array_equal(self.array, other.array) def __ne__(self, other): return not self == other def __getattr__(self, item): return getattr(self.array, item)
[docs]class SparseVector(Vector): """ A simple sparse vector class for passing data to MLlib. Users may alternatively pass SciPy's {scipy.sparse} data types. """ def __init__(self, size, *args): """ Create a sparse vector, using either a dictionary, a list of (index, value) pairs, or two separate arrays of indices and values (sorted by index). :param size: Size of the vector. :param args: Non-zero entries, as a dictionary, list of tupes, or two sorted lists containing indices and values. >>> print SparseVector(4, {1: 1.0, 3: 5.5}) (4,[1,3],[1.0,5.5]) >>> print SparseVector(4, [(1, 1.0), (3, 5.5)]) (4,[1,3],[1.0,5.5]) >>> print SparseVector(4, [1, 3], [1.0, 5.5]) (4,[1,3],[1.0,5.5]) """ self.size = int(size) assert 1 <= len(args) <= 2, "must pass either 2 or 3 arguments" if len(args) == 1: pairs = args[0] if type(pairs) == dict: pairs = pairs.items() pairs = sorted(pairs) self.indices = np.array([p[0] for p in pairs], dtype=np.int32) self.values = np.array([p[1] for p in pairs], dtype=np.float64) else: if isinstance(args[0], basestring): assert isinstance(args[1], str), "values should be string too" if args[0]: self.indices = np.frombuffer(args[0], np.int32) self.values = np.frombuffer(args[1], np.float64) else: # np.frombuffer() doesn't work well with empty string in older version self.indices = np.array([], dtype=np.int32) self.values = np.array([], dtype=np.float64) else: self.indices = np.array(args[0], dtype=np.int32) self.values = np.array(args[1], dtype=np.float64) assert len(self.indices) == len(self.values), "index and value arrays not same length" for i in xrange(len(self.indices) - 1): if self.indices[i] >= self.indices[i + 1]: raise TypeError("indices array must be sorted") def __reduce__(self): return (SparseVector, (self.size, self.indices.tostring(), self.values.tostring()))
[docs] def dot(self, other): """ Dot product with a SparseVector or 1- or 2-dimensional Numpy array. >>> a = SparseVector(4, [1, 3], [3.0, 4.0]) >>> a.dot(a) 25.0 >>> a.dot(array.array('d', [1., 2., 3., 4.])) 22.0 >>> b = SparseVector(4, [2, 4], [1.0, 2.0]) >>> a.dot(b) 0.0 >>> a.dot(np.array([[1, 1], [2, 2], [3, 3], [4, 4]])) array([ 22., 22.]) >>> a.dot([1., 2., 3.]) Traceback (most recent call last): ... AssertionError: dimension mismatch >>> a.dot(np.array([1., 2.])) Traceback (most recent call last): ... AssertionError: dimension mismatch >>> a.dot(DenseVector([1., 2.])) Traceback (most recent call last): ... AssertionError: dimension mismatch >>> a.dot(np.zeros((3, 2))) Traceback (most recent call last): ... AssertionError: dimension mismatch """ if type(other) == np.ndarray: if other.ndim == 2: results = [self.dot(other[:, i]) for i in xrange(other.shape[1])] return np.array(results) elif other.ndim > 2: raise ValueError("Cannot call dot with %d-dimensional array" % other.ndim) assert len(self) == _vector_size(other), "dimension mismatch" if type(other) in (np.ndarray, array.array, DenseVector): result = 0.0 for i in xrange(len(self.indices)): result += self.values[i] * other[self.indices[i]] return result elif type(other) is SparseVector: result = 0.0 i, j = 0, 0 while i < len(self.indices) and j < len(other.indices): if self.indices[i] == other.indices[j]: result += self.values[i] * other.values[j] i += 1 j += 1 elif self.indices[i] < other.indices[j]: i += 1 else: j += 1 return result else: return self.dot(_convert_to_vector(other))
[docs] def squared_distance(self, other): """ Squared distance from a SparseVector or 1-dimensional NumPy array. >>> a = SparseVector(4, [1, 3], [3.0, 4.0]) >>> a.squared_distance(a) 0.0 >>> a.squared_distance(array.array('d', [1., 2., 3., 4.])) 11.0 >>> a.squared_distance(np.array([1., 2., 3., 4.])) 11.0 >>> b = SparseVector(4, [2, 4], [1.0, 2.0]) >>> a.squared_distance(b) 30.0 >>> b.squared_distance(a) 30.0 >>> b.squared_distance([1., 2.]) Traceback (most recent call last): ... AssertionError: dimension mismatch >>> b.squared_distance(SparseVector(3, [1,], [1.0,])) Traceback (most recent call last): ... AssertionError: dimension mismatch """ assert len(self) == _vector_size(other), "dimension mismatch" if type(other) in (list, array.array, DenseVector, np.array, np.ndarray): if type(other) is np.array and other.ndim != 1: raise Exception("Cannot call squared_distance with %d-dimensional array" % other.ndim) result = 0.0 j = 0 # index into our own array for i in xrange(len(other)): if j < len(self.indices) and self.indices[j] == i: diff = self.values[j] - other[i] result += diff * diff j += 1 else: result += other[i] * other[i] return result elif type(other) is SparseVector: result = 0.0 i, j = 0, 0 while i < len(self.indices) and j < len(other.indices): if self.indices[i] == other.indices[j]: diff = self.values[i] - other.values[j] result += diff * diff i += 1 j += 1 elif self.indices[i] < other.indices[j]: result += self.values[i] * self.values[i] i += 1 else: result += other.values[j] * other.values[j] j += 1 while i < len(self.indices): result += self.values[i] * self.values[i] i += 1 while j < len(other.indices): result += other.values[j] * other.values[j] j += 1 return result else: return self.squared_distance(_convert_to_vector(other))
[docs] def toArray(self): """ Returns a copy of this SparseVector as a 1-dimensional NumPy array. """ arr = np.zeros((self.size,), dtype=np.float64) arr[self.indices] = self.values return arr
def __len__(self): return self.size def __str__(self): inds = "[" + ",".join([str(i) for i in self.indices]) + "]" vals = "[" + ",".join([str(v) for v in self.values]) + "]" return "(" + ",".join((str(self.size), inds, vals)) + ")" def __repr__(self): inds = self.indices vals = self.values entries = ", ".join(["{0}: {1}".format(inds[i], _format_float(vals[i])) for i in xrange(len(inds))]) return "SparseVector({0}, {{{1}}})".format(self.size, entries) def __eq__(self, other): """ Test SparseVectors for equality. >>> v1 = SparseVector(4, [(1, 1.0), (3, 5.5)]) >>> v2 = SparseVector(4, [(1, 1.0), (3, 5.5)]) >>> v1 == v2 True >>> v1 != v2 False """ return (isinstance(other, self.__class__) and other.size == self.size and np.array_equal(other.indices, self.indices) and np.array_equal(other.values, self.values)) def __getitem__(self, index): inds = self.indices vals = self.values if not isinstance(index, int): raise ValueError( "Indices must be of type integer, got type %s" % type(index)) if index < 0: index += self.size if index >= self.size or index < 0: raise ValueError("Index %d out of bounds." % index) insert_index = np.searchsorted(inds, index) row_ind = inds[insert_index] if row_ind == index: return vals[insert_index] return 0. def __ne__(self, other): return not self.__eq__(other)
[docs]class Vectors(object): """ Factory methods for working with vectors. Note that dense vectors are simply represented as NumPy array objects, so there is no need to covert them for use in MLlib. For sparse vectors, the factory methods in this class create an MLlib-compatible type, or users can pass in SciPy's C{scipy.sparse} column vectors. """ @staticmethod
[docs] def sparse(size, *args): """ Create a sparse vector, using either a dictionary, a list of (index, value) pairs, or two separate arrays of indices and values (sorted by index). :param size: Size of the vector. :param args: Non-zero entries, as a dictionary, list of tupes, or two sorted lists containing indices and values. >>> print Vectors.sparse(4, {1: 1.0, 3: 5.5}) (4,[1,3],[1.0,5.5]) >>> print Vectors.sparse(4, [(1, 1.0), (3, 5.5)]) (4,[1,3],[1.0,5.5]) >>> print Vectors.sparse(4, [1, 3], [1.0, 5.5]) (4,[1,3],[1.0,5.5]) """ return SparseVector(size, *args)
@staticmethod
[docs] def dense(elements): """ Create a dense vector of 64-bit floats from a Python list. Always returns a NumPy array. >>> Vectors.dense([1, 2, 3]) DenseVector([1.0, 2.0, 3.0]) """ return DenseVector(elements)
@staticmethod
[docs] def stringify(vector): """ Converts a vector into a string, which can be recognized by Vectors.parse(). >>> Vectors.stringify(Vectors.sparse(2, [1], [1.0])) '(2,[1],[1.0])' >>> Vectors.stringify(Vectors.dense([0.0, 1.0])) '[0.0,1.0]' """ return str(vector)
class Matrix(object): """ Represents a local matrix. """ def __init__(self, numRows, numCols): self.numRows = numRows self.numCols = numCols def toArray(self): """ Returns its elements in a NumPy ndarray. """ raise NotImplementedError
[docs]class DenseMatrix(Matrix): """ Column-major dense matrix. """ def __init__(self, numRows, numCols, values): Matrix.__init__(self, numRows, numCols) if isinstance(values, basestring): values = np.frombuffer(values, dtype=np.float64) elif not isinstance(values, np.ndarray): values = np.array(values, dtype=np.float64) assert len(values) == numRows * numCols if values.dtype != np.float64: values.astype(np.float64) self.values = values def __reduce__(self): return DenseMatrix, (self.numRows, self.numCols, self.values.tostring())
[docs] def toArray(self): """ Return an numpy.ndarray >>> m = DenseMatrix(2, 2, range(4)) >>> m.toArray() array([[ 0., 2.], [ 1., 3.]]) """ return self.values.reshape((self.numRows, self.numCols), order='F')
def __eq__(self, other): return (isinstance(other, DenseMatrix) and self.numRows == other.numRows and self.numCols == other.numCols and all(self.values == other.values))
[docs]class Matrices(object): @staticmethod
[docs] def dense(numRows, numCols, values): """ Create a DenseMatrix """ return DenseMatrix(numRows, numCols, values)
def _test(): import doctest (failure_count, test_count) = doctest.testmod(optionflags=doctest.ELLIPSIS) if failure_count: exit(-1) if __name__ == "__main__": _test()