af0cd6bd27
Also remove takePartition from PythonRDD and use collectPartition in rdd.py.
362 lines
14 KiB
Python
362 lines
14 KiB
Python
#
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# Licensed to the Apache Software Foundation (ASF) under one or more
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# contributor license agreements. See the NOTICE file distributed with
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# this work for additional information regarding copyright ownership.
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# The ASF licenses this file to You under the Apache License, Version 2.0
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# (the "License"); you may not use this file except in compliance with
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# the License. You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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#
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import os
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import shutil
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import sys
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from threading import Lock
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from tempfile import NamedTemporaryFile
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from pyspark import accumulators
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from pyspark.accumulators import Accumulator
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from pyspark.broadcast import Broadcast
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from pyspark.files import SparkFiles
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from pyspark.java_gateway import launch_gateway
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from pyspark.serializers import PickleSerializer, BatchedSerializer, MUTF8Deserializer
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from pyspark.storagelevel import StorageLevel
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from pyspark.rdd import RDD
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from py4j.java_collections import ListConverter
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class SparkContext(object):
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"""
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Main entry point for Spark functionality. A SparkContext represents the
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connection to a Spark cluster, and can be used to create L{RDD}s and
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broadcast variables on that cluster.
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"""
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_gateway = None
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_jvm = None
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_writeToFile = None
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_next_accum_id = 0
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_active_spark_context = None
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_lock = Lock()
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_python_includes = None # zip and egg files that need to be added to PYTHONPATH
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def __init__(self, master, jobName, sparkHome=None, pyFiles=None,
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environment=None, batchSize=1024, serializer=PickleSerializer()):
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"""
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Create a new SparkContext.
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@param master: Cluster URL to connect to
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(e.g. mesos://host:port, spark://host:port, local[4]).
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@param jobName: A name for your job, to display on the cluster web UI
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@param sparkHome: Location where Spark is installed on cluster nodes.
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@param pyFiles: Collection of .zip or .py files to send to the cluster
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and add to PYTHONPATH. These can be paths on the local file
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system or HDFS, HTTP, HTTPS, or FTP URLs.
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@param environment: A dictionary of environment variables to set on
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worker nodes.
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@param batchSize: The number of Python objects represented as a single
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Java object. Set 1 to disable batching or -1 to use an
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unlimited batch size.
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@param serializer: The serializer for RDDs.
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>>> from pyspark.context import SparkContext
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>>> sc = SparkContext('local', 'test')
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>>> sc2 = SparkContext('local', 'test2') # doctest: +IGNORE_EXCEPTION_DETAIL
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Traceback (most recent call last):
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...
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ValueError:...
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"""
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SparkContext._ensure_initialized(self)
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self.master = master
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self.jobName = jobName
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self.sparkHome = sparkHome or None # None becomes null in Py4J
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self.environment = environment or {}
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self._batchSize = batchSize # -1 represents an unlimited batch size
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self._unbatched_serializer = serializer
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if batchSize == 1:
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self.serializer = self._unbatched_serializer
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else:
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self.serializer = BatchedSerializer(self._unbatched_serializer,
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batchSize)
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# Create the Java SparkContext through Py4J
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empty_string_array = self._gateway.new_array(self._jvm.String, 0)
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self._jsc = self._jvm.JavaSparkContext(master, jobName, sparkHome,
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empty_string_array)
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# Create a single Accumulator in Java that we'll send all our updates through;
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# they will be passed back to us through a TCP server
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self._accumulatorServer = accumulators._start_update_server()
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(host, port) = self._accumulatorServer.server_address
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self._javaAccumulator = self._jsc.accumulator(
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self._jvm.java.util.ArrayList(),
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self._jvm.PythonAccumulatorParam(host, port))
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self.pythonExec = os.environ.get("PYSPARK_PYTHON", 'python')
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# Broadcast's __reduce__ method stores Broadcast instances here.
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# This allows other code to determine which Broadcast instances have
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# been pickled, so it can determine which Java broadcast objects to
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# send.
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self._pickled_broadcast_vars = set()
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SparkFiles._sc = self
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root_dir = SparkFiles.getRootDirectory()
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sys.path.append(root_dir)
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# Deploy any code dependencies specified in the constructor
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self._python_includes = list()
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for path in (pyFiles or []):
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self.addPyFile(path)
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# Create a temporary directory inside spark.local.dir:
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local_dir = self._jvm.org.apache.spark.util.Utils.getLocalDir()
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self._temp_dir = \
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self._jvm.org.apache.spark.util.Utils.createTempDir(local_dir).getAbsolutePath()
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@classmethod
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def _ensure_initialized(cls, instance=None):
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with SparkContext._lock:
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if not SparkContext._gateway:
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SparkContext._gateway = launch_gateway()
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SparkContext._jvm = SparkContext._gateway.jvm
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SparkContext._writeToFile = \
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SparkContext._jvm.PythonRDD.writeToFile
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if instance:
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if SparkContext._active_spark_context and SparkContext._active_spark_context != instance:
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raise ValueError("Cannot run multiple SparkContexts at once")
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else:
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SparkContext._active_spark_context = instance
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@classmethod
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def setSystemProperty(cls, key, value):
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"""
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Set a system property, such as spark.executor.memory. This must be
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invoked before instantiating SparkContext.
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"""
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SparkContext._ensure_initialized()
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SparkContext._jvm.java.lang.System.setProperty(key, value)
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@property
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def defaultParallelism(self):
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"""
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Default level of parallelism to use when not given by user (e.g. for
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reduce tasks)
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"""
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return self._jsc.sc().defaultParallelism()
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def __del__(self):
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self.stop()
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def stop(self):
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"""
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Shut down the SparkContext.
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"""
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if self._jsc:
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self._jsc.stop()
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self._jsc = None
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if self._accumulatorServer:
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self._accumulatorServer.shutdown()
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self._accumulatorServer = None
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with SparkContext._lock:
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SparkContext._active_spark_context = None
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def parallelize(self, c, numSlices=None):
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"""
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Distribute a local Python collection to form an RDD.
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>>> sc.parallelize(range(5), 5).glom().collect()
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[[0], [1], [2], [3], [4]]
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"""
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numSlices = numSlices or self.defaultParallelism
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# Calling the Java parallelize() method with an ArrayList is too slow,
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# because it sends O(n) Py4J commands. As an alternative, serialized
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# objects are written to a file and loaded through textFile().
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tempFile = NamedTemporaryFile(delete=False, dir=self._temp_dir)
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# Make sure we distribute data evenly if it's smaller than self.batchSize
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if "__len__" not in dir(c):
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c = list(c) # Make it a list so we can compute its length
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batchSize = min(len(c) // numSlices, self._batchSize)
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if batchSize > 1:
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serializer = BatchedSerializer(self._unbatched_serializer,
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batchSize)
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else:
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serializer = self._unbatched_serializer
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serializer.dump_stream(c, tempFile)
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tempFile.close()
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readRDDFromFile = self._jvm.PythonRDD.readRDDFromFile
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jrdd = readRDDFromFile(self._jsc, tempFile.name, numSlices)
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return RDD(jrdd, self, serializer)
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def textFile(self, name, minSplits=None):
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"""
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Read a text file from HDFS, a local file system (available on all
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nodes), or any Hadoop-supported file system URI, and return it as an
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RDD of Strings.
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"""
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minSplits = minSplits or min(self.defaultParallelism, 2)
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return RDD(self._jsc.textFile(name, minSplits), self,
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MUTF8Deserializer())
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def _checkpointFile(self, name, input_deserializer):
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jrdd = self._jsc.checkpointFile(name)
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return RDD(jrdd, self, input_deserializer)
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def union(self, rdds):
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"""
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Build the union of a list of RDDs.
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This supports unions() of RDDs with different serialized formats,
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although this forces them to be reserialized using the default
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serializer:
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>>> path = os.path.join(tempdir, "union-text.txt")
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>>> with open(path, "w") as testFile:
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... testFile.write("Hello")
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>>> textFile = sc.textFile(path)
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>>> textFile.collect()
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[u'Hello']
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>>> parallelized = sc.parallelize(["World!"])
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>>> sorted(sc.union([textFile, parallelized]).collect())
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[u'Hello', 'World!']
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"""
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first_jrdd_deserializer = rdds[0]._jrdd_deserializer
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if any(x._jrdd_deserializer != first_jrdd_deserializer for x in rdds):
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rdds = [x._reserialize() for x in rdds]
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first = rdds[0]._jrdd
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rest = [x._jrdd for x in rdds[1:]]
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rest = ListConverter().convert(rest, self._gateway._gateway_client)
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return RDD(self._jsc.union(first, rest), self,
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rdds[0]._jrdd_deserializer)
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def broadcast(self, value):
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"""
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Broadcast a read-only variable to the cluster, returning a C{Broadcast}
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object for reading it in distributed functions. The variable will be
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sent to each cluster only once.
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"""
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pickleSer = PickleSerializer()
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pickled = pickleSer.dumps(value)
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jbroadcast = self._jsc.broadcast(bytearray(pickled))
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return Broadcast(jbroadcast.id(), value, jbroadcast,
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self._pickled_broadcast_vars)
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def accumulator(self, value, accum_param=None):
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"""
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Create an L{Accumulator} with the given initial value, using a given
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L{AccumulatorParam} helper object to define how to add values of the
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data type if provided. Default AccumulatorParams are used for integers
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and floating-point numbers if you do not provide one. For other types,
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a custom AccumulatorParam can be used.
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"""
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if accum_param is None:
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if isinstance(value, int):
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accum_param = accumulators.INT_ACCUMULATOR_PARAM
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elif isinstance(value, float):
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accum_param = accumulators.FLOAT_ACCUMULATOR_PARAM
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elif isinstance(value, complex):
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accum_param = accumulators.COMPLEX_ACCUMULATOR_PARAM
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else:
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raise Exception("No default accumulator param for type %s" % type(value))
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SparkContext._next_accum_id += 1
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return Accumulator(SparkContext._next_accum_id - 1, value, accum_param)
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def addFile(self, path):
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"""
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Add a file to be downloaded with this Spark job on every node.
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The C{path} passed can be either a local file, a file in HDFS
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(or other Hadoop-supported filesystems), or an HTTP, HTTPS or
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FTP URI.
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To access the file in Spark jobs, use
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L{SparkFiles.get(path)<pyspark.files.SparkFiles.get>} to find its
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download location.
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>>> from pyspark import SparkFiles
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>>> path = os.path.join(tempdir, "test.txt")
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>>> with open(path, "w") as testFile:
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... testFile.write("100")
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>>> sc.addFile(path)
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>>> def func(iterator):
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... with open(SparkFiles.get("test.txt")) as testFile:
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... fileVal = int(testFile.readline())
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... return [x * 100 for x in iterator]
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>>> sc.parallelize([1, 2, 3, 4]).mapPartitions(func).collect()
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[100, 200, 300, 400]
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"""
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self._jsc.sc().addFile(path)
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def clearFiles(self):
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"""
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Clear the job's list of files added by L{addFile} or L{addPyFile} so
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that they do not get downloaded to any new nodes.
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"""
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# TODO: remove added .py or .zip files from the PYTHONPATH?
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self._jsc.sc().clearFiles()
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def addPyFile(self, path):
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"""
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Add a .py or .zip dependency for all tasks to be executed on this
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SparkContext in the future. The C{path} passed can be either a local
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file, a file in HDFS (or other Hadoop-supported filesystems), or an
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HTTP, HTTPS or FTP URI.
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"""
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self.addFile(path)
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(dirname, filename) = os.path.split(path) # dirname may be directory or HDFS/S3 prefix
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if filename.endswith('.zip') or filename.endswith('.ZIP') or filename.endswith('.egg'):
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self._python_includes.append(filename)
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sys.path.append(os.path.join(SparkFiles.getRootDirectory(), filename)) # for tests in local mode
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def setCheckpointDir(self, dirName, useExisting=False):
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"""
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Set the directory under which RDDs are going to be checkpointed. The
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directory must be a HDFS path if running on a cluster.
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If the directory does not exist, it will be created. If the directory
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exists and C{useExisting} is set to true, then the exisiting directory
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will be used. Otherwise an exception will be thrown to prevent
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accidental overriding of checkpoint files in the existing directory.
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"""
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self._jsc.sc().setCheckpointDir(dirName, useExisting)
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def _getJavaStorageLevel(self, storageLevel):
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"""
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Returns a Java StorageLevel based on a pyspark.StorageLevel.
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"""
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if not isinstance(storageLevel, StorageLevel):
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raise Exception("storageLevel must be of type pyspark.StorageLevel")
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newStorageLevel = self._jvm.org.apache.spark.storage.StorageLevel
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return newStorageLevel(storageLevel.useDisk, storageLevel.useMemory,
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storageLevel.deserialized, storageLevel.replication)
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def _test():
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import atexit
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import doctest
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import tempfile
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globs = globals().copy()
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globs['sc'] = SparkContext('local[4]', 'PythonTest', batchSize=2)
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globs['tempdir'] = tempfile.mkdtemp()
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atexit.register(lambda: shutil.rmtree(globs['tempdir']))
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(failure_count, test_count) = doctest.testmod(globs=globs)
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globs['sc'].stop()
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if failure_count:
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exit(-1)
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if __name__ == "__main__":
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_test()
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