#
# 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.
#
"""
Python package for random data generation.
"""
from functools import wraps
from pyspark.mllib.common import callMLlibFunc
__all__ = ['RandomRDDs', ]
def toArray(f):
@wraps(f)
def func(sc, *a, **kw):
rdd = f(sc, *a, **kw)
return rdd.map(lambda vec: vec.toArray())
return func
[docs]class RandomRDDs(object):
"""
Generator methods for creating RDDs comprised of i.i.d samples from
some distribution.
"""
@staticmethod
@staticmethod
[docs] def normalRDD(sc, size, numPartitions=None, seed=None):
"""
Generates an RDD comprised of i.i.d. samples from the standard normal
distribution.
To transform the distribution in the generated RDD from standard normal
to some other normal N(mean, sigma^2), use
C{RandomRDDs.normal(sc, n, p, seed)\
.map(lambda v: mean + sigma * v)}
:param sc: SparkContext used to create the RDD.
:param size: Size of the RDD.
:param numPartitions: Number of partitions in the RDD (default: `sc.defaultParallelism`).
:param seed: Random seed (default: a random long integer).
:return: RDD of float comprised of i.i.d. samples ~ N(0.0, 1.0).
>>> x = RandomRDDs.normalRDD(sc, 1000, seed=1L)
>>> stats = x.stats()
>>> stats.count()
1000L
>>> abs(stats.mean() - 0.0) < 0.1
True
>>> abs(stats.stdev() - 1.0) < 0.1
True
"""
return callMLlibFunc("normalRDD", sc._jsc, size, numPartitions, seed)
@staticmethod
[docs] def poissonRDD(sc, mean, size, numPartitions=None, seed=None):
"""
Generates an RDD comprised of i.i.d. samples from the Poisson
distribution with the input mean.
:param sc: SparkContext used to create the RDD.
:param mean: Mean, or lambda, for the Poisson distribution.
:param size: Size of the RDD.
:param numPartitions: Number of partitions in the RDD (default: `sc.defaultParallelism`).
:param seed: Random seed (default: a random long integer).
:return: RDD of float comprised of i.i.d. samples ~ Pois(mean).
>>> mean = 100.0
>>> x = RandomRDDs.poissonRDD(sc, mean, 1000, seed=2L)
>>> stats = x.stats()
>>> stats.count()
1000L
>>> abs(stats.mean() - mean) < 0.5
True
>>> from math import sqrt
>>> abs(stats.stdev() - sqrt(mean)) < 0.5
True
"""
return callMLlibFunc("poissonRDD", sc._jsc, float(mean), size, numPartitions, seed)
@staticmethod
@toArray
@staticmethod
@toArray
[docs] def normalVectorRDD(sc, numRows, numCols, numPartitions=None, seed=None):
"""
Generates an RDD comprised of vectors containing i.i.d. samples drawn
from the standard normal distribution.
:param sc: SparkContext used to create the RDD.
:param numRows: Number of Vectors in the RDD.
:param numCols: Number of elements in each Vector.
:param numPartitions: Number of partitions in the RDD (default: `sc.defaultParallelism`).
:param seed: Random seed (default: a random long integer).
:return: RDD of Vector with vectors containing i.i.d. samples ~ `N(0.0, 1.0)`.
>>> import numpy as np
>>> mat = np.matrix(RandomRDDs.normalVectorRDD(sc, 100, 100, seed=1L).collect())
>>> mat.shape
(100, 100)
>>> abs(mat.mean() - 0.0) < 0.1
True
>>> abs(mat.std() - 1.0) < 0.1
True
"""
return callMLlibFunc("normalVectorRDD", sc._jsc, numRows, numCols, numPartitions, seed)
@staticmethod
@toArray
[docs] def poissonVectorRDD(sc, mean, numRows, numCols, numPartitions=None, seed=None):
"""
Generates an RDD comprised of vectors containing i.i.d. samples drawn
from the Poisson distribution with the input mean.
:param sc: SparkContext used to create the RDD.
:param mean: Mean, or lambda, for the Poisson distribution.
:param numRows: Number of Vectors in the RDD.
:param numCols: Number of elements in each Vector.
:param numPartitions: Number of partitions in the RDD (default: `sc.defaultParallelism`)
:param seed: Random seed (default: a random long integer).
:return: RDD of Vector with vectors containing i.i.d. samples ~ Pois(mean).
>>> import numpy as np
>>> mean = 100.0
>>> rdd = RandomRDDs.poissonVectorRDD(sc, mean, 100, 100, seed=1L)
>>> mat = np.mat(rdd.collect())
>>> mat.shape
(100, 100)
>>> abs(mat.mean() - mean) < 0.5
True
>>> from math import sqrt
>>> abs(mat.std() - sqrt(mean)) < 0.5
True
"""
return callMLlibFunc("poissonVectorRDD", sc._jsc, float(mean), numRows, numCols,
numPartitions, seed)
def _test():
import doctest
from pyspark.context import SparkContext
globs = globals().copy()
# The small batch size here ensures that we see multiple batches,
# even in these small test examples:
globs['sc'] = SparkContext('local[2]', 'PythonTest', batchSize=2)
(failure_count, test_count) = doctest.testmod(globs=globs, optionflags=doctest.ELLIPSIS)
globs['sc'].stop()
if failure_count:
exit(-1)
if __name__ == "__main__":
_test()