spark-instrumented-optimizer/python/pyspark/mllib/util.py
Matthew Rocklin 939a322c85 [SPARK-3417] Use new-style classes in PySpark
Tiny PR making SQLContext a new-style class.  This allows various type logic to work more effectively

```Python
In [1]: import pyspark

In [2]: pyspark.sql.SQLContext.mro()
Out[2]: [pyspark.sql.SQLContext, object]
```

Author: Matthew Rocklin <mrocklin@gmail.com>

Closes #2288 from mrocklin/sqlcontext-new-style-class and squashes the following commits:

4aadab6 [Matthew Rocklin] update other old-style classes
a2dc02f [Matthew Rocklin] pyspark.sql.SQLContext is new-style class
2014-09-08 15:45:36 -07:00

205 lines
8.1 KiB
Python

#
# 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.
#
import numpy as np
import warnings
from pyspark.mllib.linalg import Vectors, SparseVector
from pyspark.mllib.regression import LabeledPoint
from pyspark.mllib._common import _convert_vector, _deserialize_labeled_point
from pyspark.rdd import RDD
from pyspark.serializers import NoOpSerializer
class MLUtils(object):
"""
Helper methods to load, save and pre-process data used in MLlib.
"""
@staticmethod
def _parse_libsvm_line(line, multiclass):
warnings.warn("deprecated", DeprecationWarning)
return _parse_libsvm_line(line)
@staticmethod
def _parse_libsvm_line(line):
"""
Parses a line in LIBSVM format into (label, indices, values).
"""
items = line.split(None)
label = float(items[0])
nnz = len(items) - 1
indices = np.zeros(nnz, dtype=np.int32)
values = np.zeros(nnz)
for i in xrange(nnz):
index, value = items[1 + i].split(":")
indices[i] = int(index) - 1
values[i] = float(value)
return label, indices, values
@staticmethod
def _convert_labeled_point_to_libsvm(p):
"""Converts a LabeledPoint to a string in LIBSVM format."""
items = [str(p.label)]
v = _convert_vector(p.features)
if type(v) == np.ndarray:
for i in xrange(len(v)):
items.append(str(i + 1) + ":" + str(v[i]))
elif type(v) == SparseVector:
nnz = len(v.indices)
for i in xrange(nnz):
items.append(str(v.indices[i] + 1) + ":" + str(v.values[i]))
else:
raise TypeError("_convert_labeled_point_to_libsvm needs either ndarray or SparseVector"
" but got " % type(v))
return " ".join(items)
@staticmethod
def loadLibSVMFile(sc, path, multiclass=False, numFeatures=-1, minPartitions=None):
warnings.warn("deprecated", DeprecationWarning)
return loadLibSVMFile(sc, path, numFeatures, minPartitions)
@staticmethod
def loadLibSVMFile(sc, path, numFeatures=-1, minPartitions=None):
"""
Loads labeled data in the LIBSVM format into an RDD of
LabeledPoint. The LIBSVM format is a text-based format used by
LIBSVM and LIBLINEAR. Each line represents a labeled sparse
feature vector using the following format:
label index1:value1 index2:value2 ...
where the indices are one-based and in ascending order. This
method parses each line into a LabeledPoint, where the feature
indices are converted to zero-based.
@param sc: Spark context
@param path: file or directory path in any Hadoop-supported file
system URI
@param numFeatures: number of features, which will be determined
from the input data if a nonpositive value
is given. This is useful when the dataset is
already split into multiple files and you
want to load them separately, because some
features may not present in certain files,
which leads to inconsistent feature
dimensions.
@param minPartitions: min number of partitions
@return: labeled data stored as an RDD of LabeledPoint
>>> from tempfile import NamedTemporaryFile
>>> from pyspark.mllib.util import MLUtils
>>> tempFile = NamedTemporaryFile(delete=True)
>>> tempFile.write("+1 1:1.0 3:2.0 5:3.0\\n-1\\n-1 2:4.0 4:5.0 6:6.0")
>>> tempFile.flush()
>>> examples = MLUtils.loadLibSVMFile(sc, tempFile.name).collect()
>>> tempFile.close()
>>> type(examples[0]) == LabeledPoint
True
>>> print examples[0]
(1.0,(6,[0,2,4],[1.0,2.0,3.0]))
>>> type(examples[1]) == LabeledPoint
True
>>> print examples[1]
(-1.0,(6,[],[]))
>>> type(examples[2]) == LabeledPoint
True
>>> print examples[2]
(-1.0,(6,[1,3,5],[4.0,5.0,6.0]))
"""
lines = sc.textFile(path, minPartitions)
parsed = lines.map(lambda l: MLUtils._parse_libsvm_line(l))
if numFeatures <= 0:
parsed.cache()
numFeatures = parsed.map(lambda x: -1 if x[1].size == 0 else x[1][-1]).reduce(max) + 1
return parsed.map(lambda x: LabeledPoint(x[0], Vectors.sparse(numFeatures, x[1], x[2])))
@staticmethod
def saveAsLibSVMFile(data, dir):
"""
Save labeled data in LIBSVM format.
@param data: an RDD of LabeledPoint to be saved
@param dir: directory to save the data
>>> from tempfile import NamedTemporaryFile
>>> from fileinput import input
>>> from glob import glob
>>> from pyspark.mllib.util import MLUtils
>>> examples = [LabeledPoint(1.1, Vectors.sparse(3, [(0, 1.23), (2, 4.56)])), \
LabeledPoint(0.0, Vectors.dense([1.01, 2.02, 3.03]))]
>>> tempFile = NamedTemporaryFile(delete=True)
>>> tempFile.close()
>>> MLUtils.saveAsLibSVMFile(sc.parallelize(examples), tempFile.name)
>>> ''.join(sorted(input(glob(tempFile.name + "/part-0000*"))))
'0.0 1:1.01 2:2.02 3:3.03\\n1.1 1:1.23 3:4.56\\n'
"""
lines = data.map(lambda p: MLUtils._convert_labeled_point_to_libsvm(p))
lines.saveAsTextFile(dir)
@staticmethod
def loadLabeledPoints(sc, path, minPartitions=None):
"""
Load labeled points saved using RDD.saveAsTextFile.
@param sc: Spark context
@param path: file or directory path in any Hadoop-supported file
system URI
@param minPartitions: min number of partitions
@return: labeled data stored as an RDD of LabeledPoint
>>> from tempfile import NamedTemporaryFile
>>> from pyspark.mllib.util import MLUtils
>>> examples = [LabeledPoint(1.1, Vectors.sparse(3, [(0, -1.23), (2, 4.56e-7)])), \
LabeledPoint(0.0, Vectors.dense([1.01, 2.02, 3.03]))]
>>> tempFile = NamedTemporaryFile(delete=True)
>>> tempFile.close()
>>> sc.parallelize(examples, 1).saveAsTextFile(tempFile.name)
>>> loaded = MLUtils.loadLabeledPoints(sc, tempFile.name).collect()
>>> type(loaded[0]) == LabeledPoint
True
>>> print examples[0]
(1.1,(3,[0,2],[-1.23,4.56e-07]))
>>> type(examples[1]) == LabeledPoint
True
>>> print examples[1]
(0.0,[1.01,2.02,3.03])
"""
minPartitions = minPartitions or min(sc.defaultParallelism, 2)
jSerialized = sc._jvm.PythonMLLibAPI().loadLabeledPoints(sc._jsc, path, minPartitions)
serialized = RDD(jSerialized, sc, NoOpSerializer())
return serialized.map(lambda bytes: _deserialize_labeled_point(bytearray(bytes)))
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()