spark-instrumented-optimizer/python/pyspark/sql.py
Yin Huai d2f4f30b12 [SPARK-2060][SQL] Querying JSON Datasets with SQL and DSL in Spark SQL
JIRA: https://issues.apache.org/jira/browse/SPARK-2060

Programming guide: http://yhuai.github.io/site/sql-programming-guide.html

Scala doc of SQLContext: http://yhuai.github.io/site/api/scala/index.html#org.apache.spark.sql.SQLContext

Author: Yin Huai <huai@cse.ohio-state.edu>

Closes #999 from yhuai/newJson and squashes the following commits:

227e89e [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
ce8eedd [Yin Huai] rxin's comments.
bc9ac51 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
94ffdaa [Yin Huai] Remove "get" from method names.
ce31c81 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
e2773a6 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
79ea9ba [Yin Huai] Fix typos.
5428451 [Yin Huai] Newline
1f908ce [Yin Huai] Remove extra line.
d7a005c [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
7ea750e [Yin Huai] marmbrus's comments.
6a5f5ef [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
83013fb [Yin Huai] Update Java Example.
e7a6c19 [Yin Huai] SchemaRDD.javaToPython should convert a field with the StructType to a Map.
6d20b85 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
4fbddf0 [Yin Huai] Programming guide.
9df8c5a [Yin Huai] Python API.
7027634 [Yin Huai] Java API.
cff84cc [Yin Huai] Use a SchemaRDD for a JSON dataset.
d0bd412 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
ab810b0 [Yin Huai] Make JsonRDD private.
6df0891 [Yin Huai] Apache header.
8347f2e [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
66f9e76 [Yin Huai] Update docs and use the entire dataset to infer the schema.
8ffed79 [Yin Huai] Update the example.
a5a4b52 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
4325475 [Yin Huai] If a sampled dataset is used for schema inferring, update the schema of the JsonTable after first execution.
65b87f0 [Yin Huai] Fix sampling...
8846af5 [Yin Huai] API doc.
52a2275 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
0387523 [Yin Huai] Address PR comments.
666b957 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
a2313a6 [Yin Huai] Address PR comments.
f3ce176 [Yin Huai] After type conflict resolution, if a NullType is found, StringType is used.
0576406 [Yin Huai] Add Apache license header.
af91b23 [Yin Huai] Merge remote-tracking branch 'upstream/master' into newJson
f45583b [Yin Huai] Infer the schema of a JSON dataset (a text file with one JSON object per line or a RDD[String] with one JSON object per string) and returns a SchemaRDD.
f31065f [Yin Huai] A query plan or a SchemaRDD can print out its schema.
2014-06-17 19:14:59 -07:00

514 lines
19 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.
#
from pyspark.rdd import RDD, PipelinedRDD
from pyspark.serializers import BatchedSerializer, PickleSerializer
from py4j.protocol import Py4JError
__all__ = ["SQLContext", "HiveContext", "LocalHiveContext", "TestHiveContext", "SchemaRDD", "Row"]
class SQLContext:
"""Main entry point for SparkSQL functionality.
A SQLContext can be used create L{SchemaRDD}s, register L{SchemaRDD}s as
tables, execute SQL over tables, cache tables, and read parquet files.
"""
def __init__(self, sparkContext, sqlContext = None):
"""Create a new SQLContext.
@param sparkContext: The SparkContext to wrap.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> sqlCtx.inferSchema(srdd) # doctest: +IGNORE_EXCEPTION_DETAIL
Traceback (most recent call last):
...
ValueError:...
>>> bad_rdd = sc.parallelize([1,2,3])
>>> sqlCtx.inferSchema(bad_rdd) # doctest: +IGNORE_EXCEPTION_DETAIL
Traceback (most recent call last):
...
ValueError:...
>>> allTypes = sc.parallelize([{"int" : 1, "string" : "string", "double" : 1.0, "long": 1L,
... "boolean" : True}])
>>> srdd = sqlCtx.inferSchema(allTypes).map(lambda x: (x.int, x.string, x.double, x.long,
... x.boolean))
>>> srdd.collect()[0]
(1, u'string', 1.0, 1, True)
"""
self._sc = sparkContext
self._jsc = self._sc._jsc
self._jvm = self._sc._jvm
self._pythonToJavaMap = self._jvm.PythonRDD.pythonToJavaMap
if sqlContext:
self._scala_SQLContext = sqlContext
@property
def _ssql_ctx(self):
"""Accessor for the JVM SparkSQL context.
Subclasses can override this property to provide their own
JVM Contexts.
"""
if not hasattr(self, '_scala_SQLContext'):
self._scala_SQLContext = self._jvm.SQLContext(self._jsc.sc())
return self._scala_SQLContext
def inferSchema(self, rdd):
"""Infer and apply a schema to an RDD of L{dict}s.
We peek at the first row of the RDD to determine the fields names
and types, and then use that to extract all the dictionaries. Nested
collections are supported, which include array, dict, list, set, and
tuple.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> srdd.collect() == [{"field1" : 1, "field2" : "row1"}, {"field1" : 2, "field2": "row2"},
... {"field1" : 3, "field2": "row3"}]
True
>>> from array import array
>>> srdd = sqlCtx.inferSchema(nestedRdd1)
>>> srdd.collect() == [{"f1" : array('i', [1, 2]), "f2" : {"row1" : 1.0}},
... {"f1" : array('i', [2, 3]), "f2" : {"row2" : 2.0}}]
True
>>> srdd = sqlCtx.inferSchema(nestedRdd2)
>>> srdd.collect() == [{"f1" : [[1, 2], [2, 3]], "f2" : set([1, 2]), "f3" : (1, 2)},
... {"f1" : [[2, 3], [3, 4]], "f2" : set([2, 3]), "f3" : (2, 3)}]
True
"""
if (rdd.__class__ is SchemaRDD):
raise ValueError("Cannot apply schema to %s" % SchemaRDD.__name__)
elif not isinstance(rdd.first(), dict):
raise ValueError("Only RDDs with dictionaries can be converted to %s: %s" %
(SchemaRDD.__name__, rdd.first()))
jrdd = self._pythonToJavaMap(rdd._jrdd)
srdd = self._ssql_ctx.inferSchema(jrdd.rdd())
return SchemaRDD(srdd, self)
def registerRDDAsTable(self, rdd, tableName):
"""Registers the given RDD as a temporary table in the catalog.
Temporary tables exist only during the lifetime of this instance of
SQLContext.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> sqlCtx.registerRDDAsTable(srdd, "table1")
"""
if (rdd.__class__ is SchemaRDD):
jschema_rdd = rdd._jschema_rdd
self._ssql_ctx.registerRDDAsTable(jschema_rdd, tableName)
else:
raise ValueError("Can only register SchemaRDD as table")
def parquetFile(self, path):
"""Loads a Parquet file, returning the result as a L{SchemaRDD}.
>>> import tempfile, shutil
>>> parquetFile = tempfile.mkdtemp()
>>> shutil.rmtree(parquetFile)
>>> srdd = sqlCtx.inferSchema(rdd)
>>> srdd.saveAsParquetFile(parquetFile)
>>> srdd2 = sqlCtx.parquetFile(parquetFile)
>>> sorted(srdd.collect()) == sorted(srdd2.collect())
True
"""
jschema_rdd = self._ssql_ctx.parquetFile(path)
return SchemaRDD(jschema_rdd, self)
def jsonFile(self, path):
"""Loads a text file storing one JSON object per line,
returning the result as a L{SchemaRDD}.
It goes through the entire dataset once to determine the schema.
>>> import tempfile, shutil
>>> jsonFile = tempfile.mkdtemp()
>>> shutil.rmtree(jsonFile)
>>> ofn = open(jsonFile, 'w')
>>> for json in jsonStrings:
... print>>ofn, json
>>> ofn.close()
>>> srdd = sqlCtx.jsonFile(jsonFile)
>>> sqlCtx.registerRDDAsTable(srdd, "table1")
>>> srdd2 = sqlCtx.sql("SELECT field1 AS f1, field2 as f2, field3 as f3 from table1")
>>> srdd2.collect() == [{"f1": 1, "f2": "row1", "f3":{"field4":11}},
... {"f1": 2, "f2": "row2", "f3":{"field4":22}},
... {"f1": 3, "f2": "row3", "f3":{"field4":33}}]
True
"""
jschema_rdd = self._ssql_ctx.jsonFile(path)
return SchemaRDD(jschema_rdd, self)
def jsonRDD(self, rdd):
"""Loads an RDD storing one JSON object per string, returning the result as a L{SchemaRDD}.
It goes through the entire dataset once to determine the schema.
>>> srdd = sqlCtx.jsonRDD(json)
>>> sqlCtx.registerRDDAsTable(srdd, "table1")
>>> srdd2 = sqlCtx.sql("SELECT field1 AS f1, field2 as f2, field3 as f3 from table1")
>>> srdd2.collect() == [{"f1": 1, "f2": "row1", "f3":{"field4":11}},
... {"f1": 2, "f2": "row2", "f3":{"field4":22}},
... {"f1": 3, "f2": "row3", "f3":{"field4":33}}]
True
"""
def func(split, iterator):
for x in iterator:
if not isinstance(x, basestring):
x = unicode(x)
yield x.encode("utf-8")
keyed = PipelinedRDD(rdd, func)
keyed._bypass_serializer = True
jrdd = keyed._jrdd.map(self._jvm.BytesToString())
jschema_rdd = self._ssql_ctx.jsonRDD(jrdd.rdd())
return SchemaRDD(jschema_rdd, self)
def sql(self, sqlQuery):
"""Return a L{SchemaRDD} representing the result of the given query.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> sqlCtx.registerRDDAsTable(srdd, "table1")
>>> srdd2 = sqlCtx.sql("SELECT field1 AS f1, field2 as f2 from table1")
>>> srdd2.collect() == [{"f1" : 1, "f2" : "row1"}, {"f1" : 2, "f2": "row2"},
... {"f1" : 3, "f2": "row3"}]
True
"""
return SchemaRDD(self._ssql_ctx.sql(sqlQuery), self)
def table(self, tableName):
"""Returns the specified table as a L{SchemaRDD}.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> sqlCtx.registerRDDAsTable(srdd, "table1")
>>> srdd2 = sqlCtx.table("table1")
>>> sorted(srdd.collect()) == sorted(srdd2.collect())
True
"""
return SchemaRDD(self._ssql_ctx.table(tableName), self)
def cacheTable(self, tableName):
"""Caches the specified table in-memory."""
self._ssql_ctx.cacheTable(tableName)
def uncacheTable(self, tableName):
"""Removes the specified table from the in-memory cache."""
self._ssql_ctx.uncacheTable(tableName)
class HiveContext(SQLContext):
"""A variant of Spark SQL that integrates with data stored in Hive.
Configuration for Hive is read from hive-site.xml on the classpath.
It supports running both SQL and HiveQL commands.
"""
@property
def _ssql_ctx(self):
try:
if not hasattr(self, '_scala_HiveContext'):
self._scala_HiveContext = self._get_hive_ctx()
return self._scala_HiveContext
except Py4JError as e:
raise Exception("You must build Spark with Hive. Export 'SPARK_HIVE=true' and run " \
"sbt/sbt assembly" , e)
def _get_hive_ctx(self):
return self._jvm.HiveContext(self._jsc.sc())
def hiveql(self, hqlQuery):
"""
Runs a query expressed in HiveQL, returning the result as a L{SchemaRDD}.
"""
return SchemaRDD(self._ssql_ctx.hiveql(hqlQuery), self)
def hql(self, hqlQuery):
"""
Runs a query expressed in HiveQL, returning the result as a L{SchemaRDD}.
"""
return self.hiveql(hqlQuery)
class LocalHiveContext(HiveContext):
"""Starts up an instance of hive where metadata is stored locally.
An in-process metadata data is created with data stored in ./metadata.
Warehouse data is stored in in ./warehouse.
>>> import os
>>> hiveCtx = LocalHiveContext(sc)
>>> try:
... supress = hiveCtx.hql("DROP TABLE src")
... except Exception:
... pass
>>> kv1 = os.path.join(os.environ["SPARK_HOME"], 'examples/src/main/resources/kv1.txt')
>>> supress = hiveCtx.hql("CREATE TABLE IF NOT EXISTS src (key INT, value STRING)")
>>> supress = hiveCtx.hql("LOAD DATA LOCAL INPATH '%s' INTO TABLE src" % kv1)
>>> results = hiveCtx.hql("FROM src SELECT value").map(lambda r: int(r.value.split('_')[1]))
>>> num = results.count()
>>> reduce_sum = results.reduce(lambda x, y: x + y)
>>> num
500
>>> reduce_sum
130091
"""
def _get_hive_ctx(self):
return self._jvm.LocalHiveContext(self._jsc.sc())
class TestHiveContext(HiveContext):
def _get_hive_ctx(self):
return self._jvm.TestHiveContext(self._jsc.sc())
# TODO: Investigate if it is more efficient to use a namedtuple. One problem is that named tuples
# are custom classes that must be generated per Schema.
class Row(dict):
"""A row in L{SchemaRDD}.
An extended L{dict} that takes a L{dict} in its constructor, and
exposes those items as fields.
>>> r = Row({"hello" : "world", "foo" : "bar"})
>>> r.hello
'world'
>>> r.foo
'bar'
"""
def __init__(self, d):
d.update(self.__dict__)
self.__dict__ = d
dict.__init__(self, d)
class SchemaRDD(RDD):
"""An RDD of L{Row} objects that has an associated schema.
The underlying JVM object is a SchemaRDD, not a PythonRDD, so we can
utilize the relational query api exposed by SparkSQL.
For normal L{pyspark.rdd.RDD} operations (map, count, etc.) the
L{SchemaRDD} is not operated on directly, as it's underlying
implementation is an RDD composed of Java objects. Instead it is
converted to a PythonRDD in the JVM, on which Python operations can
be done.
"""
def __init__(self, jschema_rdd, sql_ctx):
self.sql_ctx = sql_ctx
self._sc = sql_ctx._sc
self._jschema_rdd = jschema_rdd
self.is_cached = False
self.is_checkpointed = False
self.ctx = self.sql_ctx._sc
self._jrdd_deserializer = self.ctx.serializer
@property
def _jrdd(self):
"""Lazy evaluation of PythonRDD object.
Only done when a user calls methods defined by the
L{pyspark.rdd.RDD} super class (map, filter, etc.).
"""
if not hasattr(self, '_lazy_jrdd'):
self._lazy_jrdd = self._toPython()._jrdd
return self._lazy_jrdd
@property
def _id(self):
return self._jrdd.id()
def saveAsParquetFile(self, path):
"""Save the contents as a Parquet file, preserving the schema.
Files that are written out using this method can be read back in as
a SchemaRDD using the L{SQLContext.parquetFile} method.
>>> import tempfile, shutil
>>> parquetFile = tempfile.mkdtemp()
>>> shutil.rmtree(parquetFile)
>>> srdd = sqlCtx.inferSchema(rdd)
>>> srdd.saveAsParquetFile(parquetFile)
>>> srdd2 = sqlCtx.parquetFile(parquetFile)
>>> sorted(srdd2.collect()) == sorted(srdd.collect())
True
"""
self._jschema_rdd.saveAsParquetFile(path)
def registerAsTable(self, name):
"""Registers this RDD as a temporary table using the given name.
The lifetime of this temporary table is tied to the L{SQLContext}
that was used to create this SchemaRDD.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> srdd.registerAsTable("test")
>>> srdd2 = sqlCtx.sql("select * from test")
>>> sorted(srdd.collect()) == sorted(srdd2.collect())
True
"""
self._jschema_rdd.registerAsTable(name)
def insertInto(self, tableName, overwrite = False):
"""Inserts the contents of this SchemaRDD into the specified table.
Optionally overwriting any existing data.
"""
self._jschema_rdd.insertInto(tableName, overwrite)
def saveAsTable(self, tableName):
"""Creates a new table with the contents of this SchemaRDD."""
self._jschema_rdd.saveAsTable(tableName)
def schemaString(self):
"""Returns the output schema in the tree format."""
return self._jschema_rdd.schemaString()
def printSchema(self):
"""Prints out the schema in the tree format."""
print self.schemaString()
def count(self):
"""Return the number of elements in this RDD.
Unlike the base RDD implementation of count, this implementation
leverages the query optimizer to compute the count on the SchemaRDD,
which supports features such as filter pushdown.
>>> srdd = sqlCtx.inferSchema(rdd)
>>> srdd.count()
3L
>>> srdd.count() == srdd.map(lambda x: x).count()
True
"""
return self._jschema_rdd.count()
def _toPython(self):
# We have to import the Row class explicitly, so that the reference Pickler has is
# pyspark.sql.Row instead of __main__.Row
from pyspark.sql import Row
jrdd = self._jschema_rdd.javaToPython()
# TODO: This is inefficient, we should construct the Python Row object
# in Java land in the javaToPython function. May require a custom
# pickle serializer in Pyrolite
return RDD(jrdd, self._sc, BatchedSerializer(
PickleSerializer())).map(lambda d: Row(d))
# We override the default cache/persist/checkpoint behavior as we want to cache the underlying
# SchemaRDD object in the JVM, not the PythonRDD checkpointed by the super class
def cache(self):
self.is_cached = True
self._jschema_rdd.cache()
return self
def persist(self, storageLevel):
self.is_cached = True
javaStorageLevel = self.ctx._getJavaStorageLevel(storageLevel)
self._jschema_rdd.persist(javaStorageLevel)
return self
def unpersist(self):
self.is_cached = False
self._jschema_rdd.unpersist()
return self
def checkpoint(self):
self.is_checkpointed = True
self._jschema_rdd.checkpoint()
def isCheckpointed(self):
return self._jschema_rdd.isCheckpointed()
def getCheckpointFile(self):
checkpointFile = self._jschema_rdd.getCheckpointFile()
if checkpointFile.isDefined():
return checkpointFile.get()
else:
return None
def coalesce(self, numPartitions, shuffle=False):
rdd = self._jschema_rdd.coalesce(numPartitions, shuffle)
return SchemaRDD(rdd, self.sql_ctx)
def distinct(self):
rdd = self._jschema_rdd.distinct()
return SchemaRDD(rdd, self.sql_ctx)
def intersection(self, other):
if (other.__class__ is SchemaRDD):
rdd = self._jschema_rdd.intersection(other._jschema_rdd)
return SchemaRDD(rdd, self.sql_ctx)
else:
raise ValueError("Can only intersect with another SchemaRDD")
def repartition(self, numPartitions):
rdd = self._jschema_rdd.repartition(numPartitions)
return SchemaRDD(rdd, self.sql_ctx)
def subtract(self, other, numPartitions=None):
if (other.__class__ is SchemaRDD):
if numPartitions is None:
rdd = self._jschema_rdd.subtract(other._jschema_rdd)
else:
rdd = self._jschema_rdd.subtract(other._jschema_rdd, numPartitions)
return SchemaRDD(rdd, self.sql_ctx)
else:
raise ValueError("Can only subtract another SchemaRDD")
def _test():
import doctest
from array import array
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:
sc = SparkContext('local[4]', 'PythonTest', batchSize=2)
globs['sc'] = sc
globs['sqlCtx'] = SQLContext(sc)
globs['rdd'] = sc.parallelize([{"field1" : 1, "field2" : "row1"},
{"field1" : 2, "field2": "row2"}, {"field1" : 3, "field2": "row3"}])
jsonStrings = ['{"field1": 1, "field2": "row1", "field3":{"field4":11}}',
'{"field1" : 2, "field2": "row2", "field3":{"field4":22}}',
'{"field1" : 3, "field2": "row3", "field3":{"field4":33}}']
globs['jsonStrings'] = jsonStrings
globs['json'] = sc.parallelize(jsonStrings)
globs['nestedRdd1'] = sc.parallelize([
{"f1" : array('i', [1, 2]), "f2" : {"row1" : 1.0}},
{"f1" : array('i', [2, 3]), "f2" : {"row2" : 2.0}}])
globs['nestedRdd2'] = sc.parallelize([
{"f1" : [[1, 2], [2, 3]], "f2" : set([1, 2]), "f3" : (1, 2)},
{"f1" : [[2, 3], [3, 4]], "f2" : set([2, 3]), "f3" : (2, 3)}])
(failure_count, test_count) = doctest.testmod(globs=globs,optionflags=doctest.ELLIPSIS)
globs['sc'].stop()
if failure_count:
exit(-1)
if __name__ == "__main__":
_test()