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-#
-# 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.
-#
-
-"""
-public classes of Spark SQL:
-
- - L{SQLContext}
- Main entry point for SQL functionality.
- - L{DataFrame}
- A Resilient Distributed Dataset (RDD) with Schema information for the data contained. In
- addition to normal RDD operations, DataFrames also support SQL.
- - L{GroupedData}
- - L{Column}
- Column is a DataFrame with a single column.
- - L{Row}
- A Row of data returned by a Spark SQL query.
- - L{HiveContext}
- Main entry point for accessing data stored in Apache Hive..
-"""
-
-import sys
-import itertools
-import decimal
-import datetime
-import keyword
-import warnings
-import json
-import re
-import random
-import os
-from tempfile import NamedTemporaryFile
-from array import array
-from operator import itemgetter
-from itertools import imap
-
-from py4j.protocol import Py4JError
-from py4j.java_collections import ListConverter, MapConverter
-
-from pyspark.context import SparkContext
-from pyspark.rdd import RDD, _prepare_for_python_RDD
-from pyspark.serializers import BatchedSerializer, AutoBatchedSerializer, PickleSerializer, \
- CloudPickleSerializer, UTF8Deserializer
-from pyspark.storagelevel import StorageLevel
-from pyspark.traceback_utils import SCCallSiteSync
-
-
-__all__ = [
- "StringType", "BinaryType", "BooleanType", "DateType", "TimestampType", "DecimalType",
- "DoubleType", "FloatType", "ByteType", "IntegerType", "LongType",
- "ShortType", "ArrayType", "MapType", "StructField", "StructType",
- "SQLContext", "HiveContext", "DataFrame", "GroupedData", "Column", "Row", "Dsl",
- "SchemaRDD"]
-
-
-class DataType(object):
-
- """Spark SQL DataType"""
-
- def __repr__(self):
- return self.__class__.__name__
-
- def __hash__(self):
- return hash(str(self))
-
- def __eq__(self, other):
- return (isinstance(other, self.__class__) and
- self.__dict__ == other.__dict__)
-
- def __ne__(self, other):
- return not self.__eq__(other)
-
- @classmethod
- def typeName(cls):
- return cls.__name__[:-4].lower()
-
- def jsonValue(self):
- return self.typeName()
-
- def json(self):
- return json.dumps(self.jsonValue(),
- separators=(',', ':'),
- sort_keys=True)
-
-
-class PrimitiveTypeSingleton(type):
-
- """Metaclass for PrimitiveType"""
-
- _instances = {}
-
- def __call__(cls):
- if cls not in cls._instances:
- cls._instances[cls] = super(PrimitiveTypeSingleton, cls).__call__()
- return cls._instances[cls]
-
-
-class PrimitiveType(DataType):
-
- """Spark SQL PrimitiveType"""
-
- __metaclass__ = PrimitiveTypeSingleton
-
- def __eq__(self, other):
- # because they should be the same object
- return self is other
-
-
-class NullType(PrimitiveType):
-
- """Spark SQL NullType
-
- The data type representing None, used for the types which has not
- been inferred.
- """
-
-
-class StringType(PrimitiveType):
-
- """Spark SQL StringType
-
- The data type representing string values.
- """
-
-
-class BinaryType(PrimitiveType):
-
- """Spark SQL BinaryType
-
- The data type representing bytearray values.
- """
-
-
-class BooleanType(PrimitiveType):
-
- """Spark SQL BooleanType
-
- The data type representing bool values.
- """
-
-
-class DateType(PrimitiveType):
-
- """Spark SQL DateType
-
- The data type representing datetime.date values.
- """
-
-
-class TimestampType(PrimitiveType):
-
- """Spark SQL TimestampType
-
- The data type representing datetime.datetime values.
- """
-
-
-class DecimalType(DataType):
-
- """Spark SQL DecimalType
-
- The data type representing decimal.Decimal values.
- """
-
- def __init__(self, precision=None, scale=None):
- self.precision = precision
- self.scale = scale
- self.hasPrecisionInfo = precision is not None
-
- def jsonValue(self):
- if self.hasPrecisionInfo:
- return "decimal(%d,%d)" % (self.precision, self.scale)
- else:
- return "decimal"
-
- def __repr__(self):
- if self.hasPrecisionInfo:
- return "DecimalType(%d,%d)" % (self.precision, self.scale)
- else:
- return "DecimalType()"
-
-
-class DoubleType(PrimitiveType):
-
- """Spark SQL DoubleType
-
- The data type representing float values.
- """
-
-
-class FloatType(PrimitiveType):
-
- """Spark SQL FloatType
-
- The data type representing single precision floating-point values.
- """
-
-
-class ByteType(PrimitiveType):
-
- """Spark SQL ByteType
-
- The data type representing int values with 1 singed byte.
- """
-
-
-class IntegerType(PrimitiveType):
-
- """Spark SQL IntegerType
-
- The data type representing int values.
- """
-
-
-class LongType(PrimitiveType):
-
- """Spark SQL LongType
-
- The data type representing long values. If the any value is
- beyond the range of [-9223372036854775808, 9223372036854775807],
- please use DecimalType.
- """
-
-
-class ShortType(PrimitiveType):
-
- """Spark SQL ShortType
-
- The data type representing int values with 2 signed bytes.
- """
-
-
-class ArrayType(DataType):
-
- """Spark SQL ArrayType
-
- The data type representing list values. An ArrayType object
- comprises two fields, elementType (a DataType) and containsNull (a bool).
- The field of elementType is used to specify the type of array elements.
- The field of containsNull is used to specify if the array has None values.
-
- """
-
- def __init__(self, elementType, containsNull=True):
- """Creates an ArrayType
-
- :param elementType: the data type of elements.
- :param containsNull: indicates whether the list contains None values.
-
- >>> ArrayType(StringType) == ArrayType(StringType, True)
- True
- >>> ArrayType(StringType, False) == ArrayType(StringType)
- False
- """
- self.elementType = elementType
- self.containsNull = containsNull
-
- def __repr__(self):
- return "ArrayType(%s,%s)" % (self.elementType,
- str(self.containsNull).lower())
-
- def jsonValue(self):
- return {"type": self.typeName(),
- "elementType": self.elementType.jsonValue(),
- "containsNull": self.containsNull}
-
- @classmethod
- def fromJson(cls, json):
- return ArrayType(_parse_datatype_json_value(json["elementType"]),
- json["containsNull"])
-
-
-class MapType(DataType):
-
- """Spark SQL MapType
-
- The data type representing dict values. A MapType object comprises
- three fields, keyType (a DataType), valueType (a DataType) and
- valueContainsNull (a bool).
-
- The field of keyType is used to specify the type of keys in the map.
- The field of valueType is used to specify the type of values in the map.
- The field of valueContainsNull is used to specify if values of this
- map has None values.
-
- For values of a MapType column, keys are not allowed to have None values.
-
- """
-
- def __init__(self, keyType, valueType, valueContainsNull=True):
- """Creates a MapType
- :param keyType: the data type of keys.
- :param valueType: the data type of values.
- :param valueContainsNull: indicates whether values contains
- null values.
-
- >>> (MapType(StringType, IntegerType)
- ... == MapType(StringType, IntegerType, True))
- True
- >>> (MapType(StringType, IntegerType, False)
- ... == MapType(StringType, FloatType))
- False
- """
- self.keyType = keyType
- self.valueType = valueType
- self.valueContainsNull = valueContainsNull
-
- def __repr__(self):
- return "MapType(%s,%s,%s)" % (self.keyType, self.valueType,
- str(self.valueContainsNull).lower())
-
- def jsonValue(self):
- return {"type": self.typeName(),
- "keyType": self.keyType.jsonValue(),
- "valueType": self.valueType.jsonValue(),
- "valueContainsNull": self.valueContainsNull}
-
- @classmethod
- def fromJson(cls, json):
- return MapType(_parse_datatype_json_value(json["keyType"]),
- _parse_datatype_json_value(json["valueType"]),
- json["valueContainsNull"])
-
-
-class StructField(DataType):
-
- """Spark SQL StructField
-
- Represents a field in a StructType.
- A StructField object comprises three fields, name (a string),
- dataType (a DataType) and nullable (a bool). The field of name
- is the name of a StructField. The field of dataType specifies
- the data type of a StructField.
-
- The field of nullable specifies if values of a StructField can
- contain None values.
-
- """
-
- def __init__(self, name, dataType, nullable=True, metadata=None):
- """Creates a StructField
- :param name: the name of this field.
- :param dataType: the data type of this field.
- :param nullable: indicates whether values of this field
- can be null.
- :param metadata: metadata of this field, which is a map from string
- to simple type that can be serialized to JSON
- automatically
-
- >>> (StructField("f1", StringType, True)
- ... == StructField("f1", StringType, True))
- True
- >>> (StructField("f1", StringType, True)
- ... == StructField("f2", StringType, True))
- False
- """
- self.name = name
- self.dataType = dataType
- self.nullable = nullable
- self.metadata = metadata or {}
-
- def __repr__(self):
- return "StructField(%s,%s,%s)" % (self.name, self.dataType,
- str(self.nullable).lower())
-
- def jsonValue(self):
- return {"name": self.name,
- "type": self.dataType.jsonValue(),
- "nullable": self.nullable,
- "metadata": self.metadata}
-
- @classmethod
- def fromJson(cls, json):
- return StructField(json["name"],
- _parse_datatype_json_value(json["type"]),
- json["nullable"],
- json["metadata"])
-
-
-class StructType(DataType):
-
- """Spark SQL StructType
-
- The data type representing rows.
- A StructType object comprises a list of L{StructField}.
-
- """
-
- def __init__(self, fields):
- """Creates a StructType
-
- >>> struct1 = StructType([StructField("f1", StringType, True)])
- >>> struct2 = StructType([StructField("f1", StringType, True)])
- >>> struct1 == struct2
- True
- >>> struct1 = StructType([StructField("f1", StringType, True)])
- >>> struct2 = StructType([StructField("f1", StringType, True),
- ... [StructField("f2", IntegerType, False)]])
- >>> struct1 == struct2
- False
- """
- self.fields = fields
-
- def __repr__(self):
- return ("StructType(List(%s))" %
- ",".join(str(field) for field in self.fields))
-
- def jsonValue(self):
- return {"type": self.typeName(),
- "fields": [f.jsonValue() for f in self.fields]}
-
- @classmethod
- def fromJson(cls, json):
- return StructType([StructField.fromJson(f) for f in json["fields"]])
-
-
-class UserDefinedType(DataType):
- """
- .. note:: WARN: Spark Internal Use Only
- SQL User-Defined Type (UDT).
- """
-
- @classmethod
- def typeName(cls):
- return cls.__name__.lower()
-
- @classmethod
- def sqlType(cls):
- """
- Underlying SQL storage type for this UDT.
- """
- raise NotImplementedError("UDT must implement sqlType().")
-
- @classmethod
- def module(cls):
- """
- The Python module of the UDT.
- """
- raise NotImplementedError("UDT must implement module().")
-
- @classmethod
- def scalaUDT(cls):
- """
- The class name of the paired Scala UDT.
- """
- raise NotImplementedError("UDT must have a paired Scala UDT.")
-
- def serialize(self, obj):
- """
- Converts the a user-type object into a SQL datum.
- """
- raise NotImplementedError("UDT must implement serialize().")
-
- def deserialize(self, datum):
- """
- Converts a SQL datum into a user-type object.
- """
- raise NotImplementedError("UDT must implement deserialize().")
-
- def json(self):
- return json.dumps(self.jsonValue(), separators=(',', ':'), sort_keys=True)
-
- def jsonValue(self):
- schema = {
- "type": "udt",
- "class": self.scalaUDT(),
- "pyClass": "%s.%s" % (self.module(), type(self).__name__),
- "sqlType": self.sqlType().jsonValue()
- }
- return schema
-
- @classmethod
- def fromJson(cls, json):
- pyUDT = json["pyClass"]
- split = pyUDT.rfind(".")
- pyModule = pyUDT[:split]
- pyClass = pyUDT[split+1:]
- m = __import__(pyModule, globals(), locals(), [pyClass], -1)
- UDT = getattr(m, pyClass)
- return UDT()
-
- def __eq__(self, other):
- return type(self) == type(other)
-
-
-_all_primitive_types = dict((v.typeName(), v)
- for v in globals().itervalues()
- if type(v) is PrimitiveTypeSingleton and
- v.__base__ == PrimitiveType)
-
-
-_all_complex_types = dict((v.typeName(), v)
- for v in [ArrayType, MapType, StructType])
-
-
-def _parse_datatype_json_string(json_string):
- """Parses the given data type JSON string.
- >>> def check_datatype(datatype):
- ... scala_datatype = sqlCtx._ssql_ctx.parseDataType(datatype.json())
- ... python_datatype = _parse_datatype_json_string(scala_datatype.json())
- ... return datatype == python_datatype
- >>> all(check_datatype(cls()) for cls in _all_primitive_types.values())
- True
- >>> # Simple ArrayType.
- >>> simple_arraytype = ArrayType(StringType(), True)
- >>> check_datatype(simple_arraytype)
- True
- >>> # Simple MapType.
- >>> simple_maptype = MapType(StringType(), LongType())
- >>> check_datatype(simple_maptype)
- True
- >>> # Simple StructType.
- >>> simple_structtype = StructType([
- ... StructField("a", DecimalType(), False),
- ... StructField("b", BooleanType(), True),
- ... StructField("c", LongType(), True),
- ... StructField("d", BinaryType(), False)])
- >>> check_datatype(simple_structtype)
- True
- >>> # Complex StructType.
- >>> complex_structtype = StructType([
- ... StructField("simpleArray", simple_arraytype, True),
- ... StructField("simpleMap", simple_maptype, True),
- ... StructField("simpleStruct", simple_structtype, True),
- ... StructField("boolean", BooleanType(), False),
- ... StructField("withMeta", DoubleType(), False, {"name": "age"})])
- >>> check_datatype(complex_structtype)
- True
- >>> # Complex ArrayType.
- >>> complex_arraytype = ArrayType(complex_structtype, True)
- >>> check_datatype(complex_arraytype)
- True
- >>> # Complex MapType.
- >>> complex_maptype = MapType(complex_structtype,
- ... complex_arraytype, False)
- >>> check_datatype(complex_maptype)
- True
- >>> check_datatype(ExamplePointUDT())
- True
- >>> structtype_with_udt = StructType([StructField("label", DoubleType(), False),
- ... StructField("point", ExamplePointUDT(), False)])
- >>> check_datatype(structtype_with_udt)
- True
- """
- return _parse_datatype_json_value(json.loads(json_string))
-
-
-_FIXED_DECIMAL = re.compile("decimal\\((\\d+),(\\d+)\\)")
-
-
-def _parse_datatype_json_value(json_value):
- if type(json_value) is unicode:
- if json_value in _all_primitive_types.keys():
- return _all_primitive_types[json_value]()
- elif json_value == u'decimal':
- return DecimalType()
- elif _FIXED_DECIMAL.match(json_value):
- m = _FIXED_DECIMAL.match(json_value)
- return DecimalType(int(m.group(1)), int(m.group(2)))
- else:
- raise ValueError("Could not parse datatype: %s" % json_value)
- else:
- tpe = json_value["type"]
- if tpe in _all_complex_types:
- return _all_complex_types[tpe].fromJson(json_value)
- elif tpe == 'udt':
- return UserDefinedType.fromJson(json_value)
- else:
- raise ValueError("not supported type: %s" % tpe)
-
-
-# Mapping Python types to Spark SQL DataType
-_type_mappings = {
- type(None): NullType,
- bool: BooleanType,
- int: IntegerType,
- long: LongType,
- float: DoubleType,
- str: StringType,
- unicode: StringType,
- bytearray: BinaryType,
- decimal.Decimal: DecimalType,
- datetime.date: DateType,
- datetime.datetime: TimestampType,
- datetime.time: TimestampType,
-}
-
-
-def _infer_type(obj):
- """Infer the DataType from obj
-
- >>> p = ExamplePoint(1.0, 2.0)
- >>> _infer_type(p)
- ExamplePointUDT
- """
- if obj is None:
- raise ValueError("Can not infer type for None")
-
- if hasattr(obj, '__UDT__'):
- return obj.__UDT__
-
- dataType = _type_mappings.get(type(obj))
- if dataType is not None:
- return dataType()
-
- if isinstance(obj, dict):
- for key, value in obj.iteritems():
- if key is not None and value is not None:
- return MapType(_infer_type(key), _infer_type(value), True)
- else:
- return MapType(NullType(), NullType(), True)
- elif isinstance(obj, (list, array)):
- for v in obj:
- if v is not None:
- return ArrayType(_infer_type(obj[0]), True)
- else:
- return ArrayType(NullType(), True)
- else:
- try:
- return _infer_schema(obj)
- except ValueError:
- raise ValueError("not supported type: %s" % type(obj))
-
-
-def _infer_schema(row):
- """Infer the schema from dict/namedtuple/object"""
- if isinstance(row, dict):
- items = sorted(row.items())
-
- elif isinstance(row, tuple):
- if hasattr(row, "_fields"): # namedtuple
- items = zip(row._fields, tuple(row))
- elif hasattr(row, "__FIELDS__"): # Row
- items = zip(row.__FIELDS__, tuple(row))
- elif all(isinstance(x, tuple) and len(x) == 2 for x in row):
- items = row
- else:
- raise ValueError("Can't infer schema from tuple")
-
- elif hasattr(row, "__dict__"): # object
- items = sorted(row.__dict__.items())
-
- else:
- raise ValueError("Can not infer schema for type: %s" % type(row))
-
- fields = [StructField(k, _infer_type(v), True) for k, v in items]
- return StructType(fields)
-
-
-def _need_python_to_sql_conversion(dataType):
- """
- Checks whether we need python to sql conversion for the given type.
- For now, only UDTs need this conversion.
-
- >>> _need_python_to_sql_conversion(DoubleType())
- False
- >>> schema0 = StructType([StructField("indices", ArrayType(IntegerType(), False), False),
- ... StructField("values", ArrayType(DoubleType(), False), False)])
- >>> _need_python_to_sql_conversion(schema0)
- False
- >>> _need_python_to_sql_conversion(ExamplePointUDT())
- True
- >>> schema1 = ArrayType(ExamplePointUDT(), False)
- >>> _need_python_to_sql_conversion(schema1)
- True
- >>> schema2 = StructType([StructField("label", DoubleType(), False),
- ... StructField("point", ExamplePointUDT(), False)])
- >>> _need_python_to_sql_conversion(schema2)
- True
- """
- if isinstance(dataType, StructType):
- return any([_need_python_to_sql_conversion(f.dataType) for f in dataType.fields])
- elif isinstance(dataType, ArrayType):
- return _need_python_to_sql_conversion(dataType.elementType)
- elif isinstance(dataType, MapType):
- return _need_python_to_sql_conversion(dataType.keyType) or \
- _need_python_to_sql_conversion(dataType.valueType)
- elif isinstance(dataType, UserDefinedType):
- return True
- else:
- return False
-
-
-def _python_to_sql_converter(dataType):
- """
- Returns a converter that converts a Python object into a SQL datum for the given type.
-
- >>> conv = _python_to_sql_converter(DoubleType())
- >>> conv(1.0)
- 1.0
- >>> conv = _python_to_sql_converter(ArrayType(DoubleType(), False))
- >>> conv([1.0, 2.0])
- [1.0, 2.0]
- >>> conv = _python_to_sql_converter(ExamplePointUDT())
- >>> conv(ExamplePoint(1.0, 2.0))
- [1.0, 2.0]
- >>> schema = StructType([StructField("label", DoubleType(), False),
- ... StructField("point", ExamplePointUDT(), False)])
- >>> conv = _python_to_sql_converter(schema)
- >>> conv((1.0, ExamplePoint(1.0, 2.0)))
- (1.0, [1.0, 2.0])
- """
- if not _need_python_to_sql_conversion(dataType):
- return lambda x: x
-
- if isinstance(dataType, StructType):
- names, types = zip(*[(f.name, f.dataType) for f in dataType.fields])
- converters = map(_python_to_sql_converter, types)
-
- def converter(obj):
- if isinstance(obj, dict):
- return tuple(c(obj.get(n)) for n, c in zip(names, converters))
- elif isinstance(obj, tuple):
- if hasattr(obj, "_fields") or hasattr(obj, "__FIELDS__"):
- return tuple(c(v) for c, v in zip(converters, obj))
- elif all(isinstance(x, tuple) and len(x) == 2 for x in obj): # k-v pairs
- d = dict(obj)
- return tuple(c(d.get(n)) for n, c in zip(names, converters))
- else:
- return tuple(c(v) for c, v in zip(converters, obj))
- else:
- raise ValueError("Unexpected tuple %r with type %r" % (obj, dataType))
- return converter
- elif isinstance(dataType, ArrayType):
- element_converter = _python_to_sql_converter(dataType.elementType)
- return lambda a: [element_converter(v) for v in a]
- elif isinstance(dataType, MapType):
- key_converter = _python_to_sql_converter(dataType.keyType)
- value_converter = _python_to_sql_converter(dataType.valueType)
- return lambda m: dict([(key_converter(k), value_converter(v)) for k, v in m.items()])
- elif isinstance(dataType, UserDefinedType):
- return lambda obj: dataType.serialize(obj)
- else:
- raise ValueError("Unexpected type %r" % dataType)
-
-
-def _has_nulltype(dt):
- """ Return whether there is NullType in `dt` or not """
- if isinstance(dt, StructType):
- return any(_has_nulltype(f.dataType) for f in dt.fields)
- elif isinstance(dt, ArrayType):
- return _has_nulltype((dt.elementType))
- elif isinstance(dt, MapType):
- return _has_nulltype(dt.keyType) or _has_nulltype(dt.valueType)
- else:
- return isinstance(dt, NullType)
-
-
-def _merge_type(a, b):
- if isinstance(a, NullType):
- return b
- elif isinstance(b, NullType):
- return a
- elif type(a) is not type(b):
- # TODO: type cast (such as int -> long)
- raise TypeError("Can not merge type %s and %s" % (a, b))
-
- # same type
- if isinstance(a, StructType):
- nfs = dict((f.name, f.dataType) for f in b.fields)
- fields = [StructField(f.name, _merge_type(f.dataType, nfs.get(f.name, NullType())))
- for f in a.fields]
- names = set([f.name for f in fields])
- for n in nfs:
- if n not in names:
- fields.append(StructField(n, nfs[n]))
- return StructType(fields)
-
- elif isinstance(a, ArrayType):
- return ArrayType(_merge_type(a.elementType, b.elementType), True)
-
- elif isinstance(a, MapType):
- return MapType(_merge_type(a.keyType, b.keyType),
- _merge_type(a.valueType, b.valueType),
- True)
- else:
- return a
-
-
-def _create_converter(dataType):
- """Create an converter to drop the names of fields in obj """
- if isinstance(dataType, ArrayType):
- conv = _create_converter(dataType.elementType)
- return lambda row: map(conv, row)
-
- elif isinstance(dataType, MapType):
- kconv = _create_converter(dataType.keyType)
- vconv = _create_converter(dataType.valueType)
- return lambda row: dict((kconv(k), vconv(v)) for k, v in row.iteritems())
-
- elif isinstance(dataType, NullType):
- return lambda x: None
-
- elif not isinstance(dataType, StructType):
- return lambda x: x
-
- # dataType must be StructType
- names = [f.name for f in dataType.fields]
- converters = [_create_converter(f.dataType) for f in dataType.fields]
-
- def convert_struct(obj):
- if obj is None:
- return
-
- if isinstance(obj, tuple):
- if hasattr(obj, "_fields"):
- d = dict(zip(obj._fields, obj))
- elif hasattr(obj, "__FIELDS__"):
- d = dict(zip(obj.__FIELDS__, obj))
- elif all(isinstance(x, tuple) and len(x) == 2 for x in obj):
- d = dict(obj)
- else:
- raise ValueError("unexpected tuple: %s" % str(obj))
-
- elif isinstance(obj, dict):
- d = obj
- elif hasattr(obj, "__dict__"): # object
- d = obj.__dict__
- else:
- raise ValueError("Unexpected obj: %s" % obj)
-
- return tuple([conv(d.get(name)) for name, conv in zip(names, converters)])
-
- return convert_struct
-
-
-_BRACKETS = {'(': ')', '[': ']', '{': '}'}
-
-
-def _split_schema_abstract(s):
- """
- split the schema abstract into fields
-
- >>> _split_schema_abstract("a b c")
- ['a', 'b', 'c']
- >>> _split_schema_abstract("a(a b)")
- ['a(a b)']
- >>> _split_schema_abstract("a b[] c{a b}")
- ['a', 'b[]', 'c{a b}']
- >>> _split_schema_abstract(" ")
- []
- """
-
- r = []
- w = ''
- brackets = []
- for c in s:
- if c == ' ' and not brackets:
- if w:
- r.append(w)
- w = ''
- else:
- w += c
- if c in _BRACKETS:
- brackets.append(c)
- elif c in _BRACKETS.values():
- if not brackets or c != _BRACKETS[brackets.pop()]:
- raise ValueError("unexpected " + c)
-
- if brackets:
- raise ValueError("brackets not closed: %s" % brackets)
- if w:
- r.append(w)
- return r
-
-
-def _parse_field_abstract(s):
- """
- Parse a field in schema abstract
-
- >>> _parse_field_abstract("a")
- StructField(a,None,true)
- >>> _parse_field_abstract("b(c d)")
- StructField(b,StructType(...c,None,true),StructField(d...
- >>> _parse_field_abstract("a[]")
- StructField(a,ArrayType(None,true),true)
- >>> _parse_field_abstract("a{[]}")
- StructField(a,MapType(None,ArrayType(None,true),true),true)
- """
- if set(_BRACKETS.keys()) & set(s):
- idx = min((s.index(c) for c in _BRACKETS if c in s))
- name = s[:idx]
- return StructField(name, _parse_schema_abstract(s[idx:]), True)
- else:
- return StructField(s, None, True)
-
-
-def _parse_schema_abstract(s):
- """
- parse abstract into schema
-
- >>> _parse_schema_abstract("a b c")
- StructType...a...b...c...
- >>> _parse_schema_abstract("a[b c] b{}")
- StructType...a,ArrayType...b...c...b,MapType...
- >>> _parse_schema_abstract("c{} d{a b}")
- StructType...c,MapType...d,MapType...a...b...
- >>> _parse_schema_abstract("a b(t)").fields[1]
- StructField(b,StructType(List(StructField(t,None,true))),true)
- """
- s = s.strip()
- if not s:
- return
-
- elif s.startswith('('):
- return _parse_schema_abstract(s[1:-1])
-
- elif s.startswith('['):
- return ArrayType(_parse_schema_abstract(s[1:-1]), True)
-
- elif s.startswith('{'):
- return MapType(None, _parse_schema_abstract(s[1:-1]))
-
- parts = _split_schema_abstract(s)
- fields = [_parse_field_abstract(p) for p in parts]
- return StructType(fields)
-
-
-def _infer_schema_type(obj, dataType):
- """
- Fill the dataType with types inferred from obj
-
- >>> schema = _parse_schema_abstract("a b c d")
- >>> row = (1, 1.0, "str", datetime.date(2014, 10, 10))
- >>> _infer_schema_type(row, schema)
- StructType...IntegerType...DoubleType...StringType...DateType...
- >>> row = [[1], {"key": (1, 2.0)}]
- >>> schema = _parse_schema_abstract("a[] b{c d}")
- >>> _infer_schema_type(row, schema)
- StructType...a,ArrayType...b,MapType(StringType,...c,IntegerType...
- """
- if dataType is None:
- return _infer_type(obj)
-
- if not obj:
- return NullType()
-
- if isinstance(dataType, ArrayType):
- eType = _infer_schema_type(obj[0], dataType.elementType)
- return ArrayType(eType, True)
-
- elif isinstance(dataType, MapType):
- k, v = obj.iteritems().next()
- return MapType(_infer_schema_type(k, dataType.keyType),
- _infer_schema_type(v, dataType.valueType))
-
- elif isinstance(dataType, StructType):
- fs = dataType.fields
- assert len(fs) == len(obj), \
- "Obj(%s) have different length with fields(%s)" % (obj, fs)
- fields = [StructField(f.name, _infer_schema_type(o, f.dataType), True)
- for o, f in zip(obj, fs)]
- return StructType(fields)
-
- else:
- raise ValueError("Unexpected dataType: %s" % dataType)
-
-
-_acceptable_types = {
- BooleanType: (bool,),
- ByteType: (int, long),
- ShortType: (int, long),
- IntegerType: (int, long),
- LongType: (int, long),
- FloatType: (float,),
- DoubleType: (float,),
- DecimalType: (decimal.Decimal,),
- StringType: (str, unicode),
- BinaryType: (bytearray,),
- DateType: (datetime.date,),
- TimestampType: (datetime.datetime,),
- ArrayType: (list, tuple, array),
- MapType: (dict,),
- StructType: (tuple, list),
-}
-
-
-def _verify_type(obj, dataType):
- """
- Verify the type of obj against dataType, raise an exception if
- they do not match.
-
- >>> _verify_type(None, StructType([]))
- >>> _verify_type("", StringType())
- >>> _verify_type(0, IntegerType())
- >>> _verify_type(range(3), ArrayType(ShortType()))
- >>> _verify_type(set(), ArrayType(StringType())) # doctest: +IGNORE_EXCEPTION_DETAIL
- Traceback (most recent call last):
- ...
- TypeError:...
- >>> _verify_type({}, MapType(StringType(), IntegerType()))
- >>> _verify_type((), StructType([]))
- >>> _verify_type([], StructType([]))
- >>> _verify_type([1], StructType([])) # doctest: +IGNORE_EXCEPTION_DETAIL
- Traceback (most recent call last):
- ...
- ValueError:...
- >>> _verify_type(ExamplePoint(1.0, 2.0), ExamplePointUDT())
- >>> _verify_type([1.0, 2.0], ExamplePointUDT()) # doctest: +IGNORE_EXCEPTION_DETAIL
- Traceback (most recent call last):
- ...
- ValueError:...
- """
- # all objects are nullable
- if obj is None:
- return
-
- if isinstance(dataType, UserDefinedType):
- if not (hasattr(obj, '__UDT__') and obj.__UDT__ == dataType):
- raise ValueError("%r is not an instance of type %r" % (obj, dataType))
- _verify_type(dataType.serialize(obj), dataType.sqlType())
- return
-
- _type = type(dataType)
- assert _type in _acceptable_types, "unkown datatype: %s" % dataType
-
- # subclass of them can not be deserialized in JVM
- if type(obj) not in _acceptable_types[_type]:
- raise TypeError("%s can not accept object in type %s"
- % (dataType, type(obj)))
-
- if isinstance(dataType, ArrayType):
- for i in obj:
- _verify_type(i, dataType.elementType)
-
- elif isinstance(dataType, MapType):
- for k, v in obj.iteritems():
- _verify_type(k, dataType.keyType)
- _verify_type(v, dataType.valueType)
-
- elif isinstance(dataType, StructType):
- if len(obj) != len(dataType.fields):
- raise ValueError("Length of object (%d) does not match with"
- "length of fields (%d)" % (len(obj), len(dataType.fields)))
- for v, f in zip(obj, dataType.fields):
- _verify_type(v, f.dataType)
-
-
-_cached_cls = {}
-
-
-def _restore_object(dataType, obj):
- """ Restore object during unpickling. """
- # use id(dataType) as key to speed up lookup in dict
- # Because of batched pickling, dataType will be the
- # same object in most cases.
- k = id(dataType)
- cls = _cached_cls.get(k)
- if cls is None:
- # use dataType as key to avoid create multiple class
- cls = _cached_cls.get(dataType)
- if cls is None:
- cls = _create_cls(dataType)
- _cached_cls[dataType] = cls
- _cached_cls[k] = cls
- return cls(obj)
-
-
-def _create_object(cls, v):
- """ Create an customized object with class `cls`. """
- # datetime.date would be deserialized as datetime.datetime
- # from java type, so we need to set it back.
- if cls is datetime.date and isinstance(v, datetime.datetime):
- return v.date()
- return cls(v) if v is not None else v
-
-
-def _create_getter(dt, i):
- """ Create a getter for item `i` with schema """
- cls = _create_cls(dt)
-
- def getter(self):
- return _create_object(cls, self[i])
-
- return getter
-
-
-def _has_struct_or_date(dt):
- """Return whether `dt` is or has StructType/DateType in it"""
- if isinstance(dt, StructType):
- return True
- elif isinstance(dt, ArrayType):
- return _has_struct_or_date(dt.elementType)
- elif isinstance(dt, MapType):
- return _has_struct_or_date(dt.keyType) or _has_struct_or_date(dt.valueType)
- elif isinstance(dt, DateType):
- return True
- elif isinstance(dt, UserDefinedType):
- return True
- return False
-
-
-def _create_properties(fields):
- """Create properties according to fields"""
- ps = {}
- for i, f in enumerate(fields):
- name = f.name
- if (name.startswith("__") and name.endswith("__")
- or keyword.iskeyword(name)):
- warnings.warn("field name %s can not be accessed in Python,"
- "use position to access it instead" % name)
- if _has_struct_or_date(f.dataType):
- # delay creating object until accessing it
- getter = _create_getter(f.dataType, i)
- else:
- getter = itemgetter(i)
- ps[name] = property(getter)
- return ps
-
-
-def _create_cls(dataType):
- """
- Create an class by dataType
-
- The created class is similar to namedtuple, but can have nested schema.
-
- >>> schema = _parse_schema_abstract("a b c")
- >>> row = (1, 1.0, "str")
- >>> schema = _infer_schema_type(row, schema)
- >>> obj = _create_cls(schema)(row)
- >>> import pickle
- >>> pickle.loads(pickle.dumps(obj))
- Row(a=1, b=1.0, c='str')
-
- >>> row = [[1], {"key": (1, 2.0)}]
- >>> schema = _parse_schema_abstract("a[] b{c d}")
- >>> schema = _infer_schema_type(row, schema)
- >>> obj = _create_cls(schema)(row)
- >>> pickle.loads(pickle.dumps(obj))
- Row(a=[1], b={'key': Row(c=1, d=2.0)})
- >>> pickle.loads(pickle.dumps(obj.a))
- [1]
- >>> pickle.loads(pickle.dumps(obj.b))
- {'key': Row(c=1, d=2.0)}
- """
-
- if isinstance(dataType, ArrayType):
- cls = _create_cls(dataType.elementType)
-
- def List(l):
- if l is None:
- return
- return [_create_object(cls, v) for v in l]
-
- return List
-
- elif isinstance(dataType, MapType):
- kcls = _create_cls(dataType.keyType)
- vcls = _create_cls(dataType.valueType)
-
- def Dict(d):
- if d is None:
- return
- return dict((_create_object(kcls, k), _create_object(vcls, v)) for k, v in d.items())
-
- return Dict
-
- elif isinstance(dataType, DateType):
- return datetime.date
-
- elif isinstance(dataType, UserDefinedType):
- return lambda datum: dataType.deserialize(datum)
-
- elif not isinstance(dataType, StructType):
- # no wrapper for primitive types
- return lambda x: x
-
- class Row(tuple):
-
- """ Row in DataFrame """
- __DATATYPE__ = dataType
- __FIELDS__ = tuple(f.name for f in dataType.fields)
- __slots__ = ()
-
- # create property for fast access
- locals().update(_create_properties(dataType.fields))
-
- def asDict(self):
- """ Return as a dict """
- return dict((n, getattr(self, n)) for n in self.__FIELDS__)
-
- def __repr__(self):
- # call collect __repr__ for nested objects
- return ("Row(%s)" % ", ".join("%s=%r" % (n, getattr(self, n))
- for n in self.__FIELDS__))
-
- def __reduce__(self):
- return (_restore_object, (self.__DATATYPE__, tuple(self)))
-
- return Row
-
-
-class SQLContext(object):
-
- """Main entry point for Spark SQL functionality.
-
- A SQLContext can be used create L{DataFrame}, register L{DataFrame} 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.
- :param sqlContext: An optional JVM Scala SQLContext. If set, we do not instatiate a new
- SQLContext in the JVM, instead we make all calls to this object.
-
- >>> df = sqlCtx.inferSchema(rdd)
- >>> sqlCtx.inferSchema(df) # doctest: +IGNORE_EXCEPTION_DETAIL
- Traceback (most recent call last):
- ...
- TypeError:...
-
- >>> bad_rdd = sc.parallelize([1,2,3])
- >>> sqlCtx.inferSchema(bad_rdd) # doctest: +IGNORE_EXCEPTION_DETAIL
- Traceback (most recent call last):
- ...
- ValueError:...
-
- >>> from datetime import datetime
- >>> allTypes = sc.parallelize([Row(i=1, s="string", d=1.0, l=1L,
- ... b=True, list=[1, 2, 3], dict={"s": 0}, row=Row(a=1),
- ... time=datetime(2014, 8, 1, 14, 1, 5))])
- >>> df = sqlCtx.inferSchema(allTypes)
- >>> df.registerTempTable("allTypes")
- >>> sqlCtx.sql('select i+1, d+1, not b, list[1], dict["s"], time, row.a '
- ... 'from allTypes where b and i > 0').collect()
- [Row(c0=2, c1=2.0, c2=False, c3=2, c4=0...8, 1, 14, 1, 5), a=1)]
- >>> df.map(lambda x: (x.i, x.s, x.d, x.l, x.b, x.time,
- ... x.row.a, x.list)).collect()
- [(1, u'string', 1.0, 1, True, ...(2014, 8, 1, 14, 1, 5), 1, [1, 2, 3])]
- """
- self._sc = sparkContext
- self._jsc = self._sc._jsc
- self._jvm = self._sc._jvm
- self._scala_SQLContext = sqlContext
-
- @property
- def _ssql_ctx(self):
- """Accessor for the JVM Spark SQL context.
-
- Subclasses can override this property to provide their own
- JVM Contexts.
- """
- if self._scala_SQLContext is None:
- self._scala_SQLContext = self._jvm.SQLContext(self._jsc.sc())
- return self._scala_SQLContext
-
- def registerFunction(self, name, f, returnType=StringType()):
- """Registers a lambda function as a UDF so it can be used in SQL statements.
-
- In addition to a name and the function itself, the return type can be optionally specified.
- When the return type is not given it default to a string and conversion will automatically
- be done. For any other return type, the produced object must match the specified type.
-
- >>> sqlCtx.registerFunction("stringLengthString", lambda x: len(x))
- >>> sqlCtx.sql("SELECT stringLengthString('test')").collect()
- [Row(c0=u'4')]
- >>> sqlCtx.registerFunction("stringLengthInt", lambda x: len(x), IntegerType())
- >>> sqlCtx.sql("SELECT stringLengthInt('test')").collect()
- [Row(c0=4)]
- """
- func = lambda _, it: imap(lambda x: f(*x), it)
- ser = AutoBatchedSerializer(PickleSerializer())
- command = (func, None, ser, ser)
- pickled_cmd, bvars, env, includes = _prepare_for_python_RDD(self._sc, command, self)
- self._ssql_ctx.udf().registerPython(name,
- bytearray(pickled_cmd),
- env,
- includes,
- self._sc.pythonExec,
- bvars,
- self._sc._javaAccumulator,
- returnType.json())
-
- def inferSchema(self, rdd, samplingRatio=None):
- """Infer and apply a schema to an RDD of L{Row}.
-
- When samplingRatio is specified, the schema is inferred by looking
- at the types of each row in the sampled dataset. Otherwise, the
- first 100 rows of the RDD are inspected. Nested collections are
- supported, which can include array, dict, list, Row, tuple,
- namedtuple, or object.
-
- Each row could be L{pyspark.sql.Row} object or namedtuple or objects.
- Using top level dicts is deprecated, as dict is used to represent Maps.
-
- If a single column has multiple distinct inferred types, it may cause
- runtime exceptions.
-
- >>> rdd = sc.parallelize(
- ... [Row(field1=1, field2="row1"),
- ... Row(field1=2, field2="row2"),
- ... Row(field1=3, field2="row3")])
- >>> df = sqlCtx.inferSchema(rdd)
- >>> df.collect()[0]
- Row(field1=1, field2=u'row1')
-
- >>> NestedRow = Row("f1", "f2")
- >>> nestedRdd1 = sc.parallelize([
- ... NestedRow(array('i', [1, 2]), {"row1": 1.0}),
- ... NestedRow(array('i', [2, 3]), {"row2": 2.0})])
- >>> df = sqlCtx.inferSchema(nestedRdd1)
- >>> df.collect()
- [Row(f1=[1, 2], f2={u'row1': 1.0}), ..., f2={u'row2': 2.0})]
-
- >>> nestedRdd2 = sc.parallelize([
- ... NestedRow([[1, 2], [2, 3]], [1, 2]),
- ... NestedRow([[2, 3], [3, 4]], [2, 3])])
- >>> df = sqlCtx.inferSchema(nestedRdd2)
- >>> df.collect()
- [Row(f1=[[1, 2], [2, 3]], f2=[1, 2]), ..., f2=[2, 3])]
-
- >>> from collections import namedtuple
- >>> CustomRow = namedtuple('CustomRow', 'field1 field2')
- >>> rdd = sc.parallelize(
- ... [CustomRow(field1=1, field2="row1"),
- ... CustomRow(field1=2, field2="row2"),
- ... CustomRow(field1=3, field2="row3")])
- >>> df = sqlCtx.inferSchema(rdd)
- >>> df.collect()[0]
- Row(field1=1, field2=u'row1')
- """
-
- if isinstance(rdd, DataFrame):
- raise TypeError("Cannot apply schema to DataFrame")
-
- first = rdd.first()
- if not first:
- raise ValueError("The first row in RDD is empty, "
- "can not infer schema")
- if type(first) is dict:
- warnings.warn("Using RDD of dict to inferSchema is deprecated,"
- "please use pyspark.sql.Row instead")
-
- if samplingRatio is None:
- schema = _infer_schema(first)
- if _has_nulltype(schema):
- for row in rdd.take(100)[1:]:
- schema = _merge_type(schema, _infer_schema(row))
- if not _has_nulltype(schema):
- break
- else:
- warnings.warn("Some of types cannot be determined by the "
- "first 100 rows, please try again with sampling")
- else:
- if samplingRatio > 0.99:
- rdd = rdd.sample(False, float(samplingRatio))
- schema = rdd.map(_infer_schema).reduce(_merge_type)
-
- converter = _create_converter(schema)
- rdd = rdd.map(converter)
- return self.applySchema(rdd, schema)
-
- def applySchema(self, rdd, schema):
- """
- Applies the given schema to the given RDD of L{tuple} or L{list}.
-
- These tuples or lists can contain complex nested structures like
- lists, maps or nested rows.
-
- The schema should be a StructType.
-
- It is important that the schema matches the types of the objects
- in each row or exceptions could be thrown at runtime.
-
- >>> rdd2 = sc.parallelize([(1, "row1"), (2, "row2"), (3, "row3")])
- >>> schema = StructType([StructField("field1", IntegerType(), False),
- ... StructField("field2", StringType(), False)])
- >>> df = sqlCtx.applySchema(rdd2, schema)
- >>> sqlCtx.registerRDDAsTable(df, "table1")
- >>> df2 = sqlCtx.sql("SELECT * from table1")
- >>> df2.collect()
- [Row(field1=1, field2=u'row1'),..., Row(field1=3, field2=u'row3')]
-
- >>> from datetime import date, datetime
- >>> rdd = sc.parallelize([(127, -128L, -32768, 32767, 2147483647L, 1.0,
- ... date(2010, 1, 1),
- ... datetime(2010, 1, 1, 1, 1, 1),
- ... {"a": 1}, (2,), [1, 2, 3], None)])
- >>> schema = StructType([
- ... StructField("byte1", ByteType(), False),
- ... StructField("byte2", ByteType(), False),
- ... StructField("short1", ShortType(), False),
- ... StructField("short2", ShortType(), False),
- ... StructField("int", IntegerType(), False),
- ... StructField("float", FloatType(), False),
- ... StructField("date", DateType(), False),
- ... StructField("time", TimestampType(), False),
- ... StructField("map",
- ... MapType(StringType(), IntegerType(), False), False),
- ... StructField("struct",
- ... StructType([StructField("b", ShortType(), False)]), False),
- ... StructField("list", ArrayType(ByteType(), False), False),
- ... StructField("null", DoubleType(), True)])
- >>> df = sqlCtx.applySchema(rdd, schema)
- >>> results = df.map(
- ... lambda x: (x.byte1, x.byte2, x.short1, x.short2, x.int, x.float, x.date,
- ... x.time, x.map["a"], x.struct.b, x.list, x.null))
- >>> results.collect()[0] # doctest: +NORMALIZE_WHITESPACE
- (127, -128, -32768, 32767, 2147483647, 1.0, datetime.date(2010, 1, 1),
- datetime.datetime(2010, 1, 1, 1, 1, 1), 1, 2, [1, 2, 3], None)
-
- >>> df.registerTempTable("table2")
- >>> sqlCtx.sql(
- ... "SELECT byte1 - 1 AS byte1, byte2 + 1 AS byte2, " +
- ... "short1 + 1 AS short1, short2 - 1 AS short2, int - 1 AS int, " +
- ... "float + 1.5 as float FROM table2").collect()
- [Row(byte1=126, byte2=-127, short1=-32767, short2=32766, int=2147483646, float=2.5)]
-
- >>> rdd = sc.parallelize([(127, -32768, 1.0,
- ... datetime(2010, 1, 1, 1, 1, 1),
- ... {"a": 1}, (2,), [1, 2, 3])])
- >>> abstract = "byte short float time map{} struct(b) list[]"
- >>> schema = _parse_schema_abstract(abstract)
- >>> typedSchema = _infer_schema_type(rdd.first(), schema)
- >>> df = sqlCtx.applySchema(rdd, typedSchema)
- >>> df.collect()
- [Row(byte=127, short=-32768, float=1.0, time=..., list=[1, 2, 3])]
- """
-
- if isinstance(rdd, DataFrame):
- raise TypeError("Cannot apply schema to DataFrame")
-
- if not isinstance(schema, StructType):
- raise TypeError("schema should be StructType")
-
- # take the first few rows to verify schema
- rows = rdd.take(10)
- # Row() cannot been deserialized by Pyrolite
- if rows and isinstance(rows[0], tuple) and rows[0].__class__.__name__ == 'Row':
- rdd = rdd.map(tuple)
- rows = rdd.take(10)
-
- for row in rows:
- _verify_type(row, schema)
-
- # convert python objects to sql data
- converter = _python_to_sql_converter(schema)
- rdd = rdd.map(converter)
-
- jrdd = self._jvm.SerDeUtil.toJavaArray(rdd._to_java_object_rdd())
- df = self._ssql_ctx.applySchemaToPythonRDD(jrdd.rdd(), schema.json())
- return DataFrame(df, 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.
-
- >>> df = sqlCtx.inferSchema(rdd)
- >>> sqlCtx.registerRDDAsTable(df, "table1")
- """
- if (rdd.__class__ is DataFrame):
- df = rdd._jdf
- self._ssql_ctx.registerRDDAsTable(df, tableName)
- else:
- raise ValueError("Can only register DataFrame as table")
-
- def parquetFile(self, *paths):
- """Loads a Parquet file, returning the result as a L{DataFrame}.
-
- >>> import tempfile, shutil
- >>> parquetFile = tempfile.mkdtemp()
- >>> shutil.rmtree(parquetFile)
- >>> df = sqlCtx.inferSchema(rdd)
- >>> df.saveAsParquetFile(parquetFile)
- >>> df2 = sqlCtx.parquetFile(parquetFile)
- >>> sorted(df.collect()) == sorted(df2.collect())
- True
- """
- gateway = self._sc._gateway
- jpath = paths[0]
- jpaths = gateway.new_array(gateway.jvm.java.lang.String, len(paths) - 1)
- for i in range(1, len(paths)):
- jpaths[i] = paths[i]
- jdf = self._ssql_ctx.parquetFile(jpath, jpaths)
- return DataFrame(jdf, self)
-
- def jsonFile(self, path, schema=None, samplingRatio=1.0):
- """
- Loads a text file storing one JSON object per line as a
- L{DataFrame}.
-
- If the schema is provided, applies the given schema to this
- JSON dataset.
-
- Otherwise, it samples the dataset with ratio `samplingRatio` 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()
- >>> df1 = sqlCtx.jsonFile(jsonFile)
- >>> sqlCtx.registerRDDAsTable(df1, "table1")
- >>> df2 = sqlCtx.sql(
- ... "SELECT field1 AS f1, field2 as f2, field3 as f3, "
- ... "field6 as f4 from table1")
- >>> for r in df2.collect():
- ... print r
- Row(f1=1, f2=u'row1', f3=Row(field4=11, field5=None), f4=None)
- Row(f1=2, f2=None, f3=Row(field4=22,..., f4=[Row(field7=u'row2')])
- Row(f1=None, f2=u'row3', f3=Row(field4=33, field5=[]), f4=None)
-
- >>> df3 = sqlCtx.jsonFile(jsonFile, df1.schema())
- >>> sqlCtx.registerRDDAsTable(df3, "table2")
- >>> df4 = sqlCtx.sql(
- ... "SELECT field1 AS f1, field2 as f2, field3 as f3, "
- ... "field6 as f4 from table2")
- >>> for r in df4.collect():
- ... print r
- Row(f1=1, f2=u'row1', f3=Row(field4=11, field5=None), f4=None)
- Row(f1=2, f2=None, f3=Row(field4=22,..., f4=[Row(field7=u'row2')])
- Row(f1=None, f2=u'row3', f3=Row(field4=33, field5=[]), f4=None)
-
- >>> schema = StructType([
- ... StructField("field2", StringType(), True),
- ... StructField("field3",
- ... StructType([
- ... StructField("field5",
- ... ArrayType(IntegerType(), False), True)]), False)])
- >>> df5 = sqlCtx.jsonFile(jsonFile, schema)
- >>> sqlCtx.registerRDDAsTable(df5, "table3")
- >>> df6 = sqlCtx.sql(
- ... "SELECT field2 AS f1, field3.field5 as f2, "
- ... "field3.field5[0] as f3 from table3")
- >>> df6.collect()
- [Row(f1=u'row1', f2=None, f3=None)...Row(f1=u'row3', f2=[], f3=None)]
- """
- if schema is None:
- df = self._ssql_ctx.jsonFile(path, samplingRatio)
- else:
- scala_datatype = self._ssql_ctx.parseDataType(schema.json())
- df = self._ssql_ctx.jsonFile(path, scala_datatype)
- return DataFrame(df, self)
-
- def jsonRDD(self, rdd, schema=None, samplingRatio=1.0):
- """Loads an RDD storing one JSON object per string as a L{DataFrame}.
-
- If the schema is provided, applies the given schema to this
- JSON dataset.
-
- Otherwise, it samples the dataset with ratio `samplingRatio` to
- determine the schema.
-
- >>> df1 = sqlCtx.jsonRDD(json)
- >>> sqlCtx.registerRDDAsTable(df1, "table1")
- >>> df2 = sqlCtx.sql(
- ... "SELECT field1 AS f1, field2 as f2, field3 as f3, "
- ... "field6 as f4 from table1")
- >>> for r in df2.collect():
- ... print r
- Row(f1=1, f2=u'row1', f3=Row(field4=11, field5=None), f4=None)
- Row(f1=2, f2=None, f3=Row(field4=22..., f4=[Row(field7=u'row2')])
- Row(f1=None, f2=u'row3', f3=Row(field4=33, field5=[]), f4=None)
-
- >>> df3 = sqlCtx.jsonRDD(json, df1.schema())
- >>> sqlCtx.registerRDDAsTable(df3, "table2")
- >>> df4 = sqlCtx.sql(
- ... "SELECT field1 AS f1, field2 as f2, field3 as f3, "
- ... "field6 as f4 from table2")
- >>> for r in df4.collect():
- ... print r
- Row(f1=1, f2=u'row1', f3=Row(field4=11, field5=None), f4=None)
- Row(f1=2, f2=None, f3=Row(field4=22..., f4=[Row(field7=u'row2')])
- Row(f1=None, f2=u'row3', f3=Row(field4=33, field5=[]), f4=None)
-
- >>> schema = StructType([
- ... StructField("field2", StringType(), True),
- ... StructField("field3",
- ... StructType([
- ... StructField("field5",
- ... ArrayType(IntegerType(), False), True)]), False)])
- >>> df5 = sqlCtx.jsonRDD(json, schema)
- >>> sqlCtx.registerRDDAsTable(df5, "table3")
- >>> df6 = sqlCtx.sql(
- ... "SELECT field2 AS f1, field3.field5 as f2, "
- ... "field3.field5[0] as f3 from table3")
- >>> df6.collect()
- [Row(f1=u'row1', f2=None,...Row(f1=u'row3', f2=[], f3=None)]
-
- >>> sqlCtx.jsonRDD(sc.parallelize(['{}',
- ... '{"key0": {"key1": "value1"}}'])).collect()
- [Row(key0=None), Row(key0=Row(key1=u'value1'))]
- >>> sqlCtx.jsonRDD(sc.parallelize(['{"key0": null}',
- ... '{"key0": {"key1": "value1"}}'])).collect()
- [Row(key0=None), Row(key0=Row(key1=u'value1'))]
- """
-
- def func(iterator):
- for x in iterator:
- if not isinstance(x, basestring):
- x = unicode(x)
- if isinstance(x, unicode):
- x = x.encode("utf-8")
- yield x
- keyed = rdd.mapPartitions(func)
- keyed._bypass_serializer = True
- jrdd = keyed._jrdd.map(self._jvm.BytesToString())
- if schema is None:
- df = self._ssql_ctx.jsonRDD(jrdd.rdd(), samplingRatio)
- else:
- scala_datatype = self._ssql_ctx.parseDataType(schema.json())
- df = self._ssql_ctx.jsonRDD(jrdd.rdd(), scala_datatype)
- return DataFrame(df, self)
-
- def sql(self, sqlQuery):
- """Return a L{DataFrame} representing the result of the given query.
-
- >>> df = sqlCtx.inferSchema(rdd)
- >>> sqlCtx.registerRDDAsTable(df, "table1")
- >>> df2 = sqlCtx.sql("SELECT field1 AS f1, field2 as f2 from table1")
- >>> df2.collect()
- [Row(f1=1, f2=u'row1'), Row(f1=2, f2=u'row2'), Row(f1=3, f2=u'row3')]
- """
- return DataFrame(self._ssql_ctx.sql(sqlQuery), self)
-
- def table(self, tableName):
- """Returns the specified table as a L{DataFrame}.
-
- >>> df = sqlCtx.inferSchema(rdd)
- >>> sqlCtx.registerRDDAsTable(df, "table1")
- >>> df2 = sqlCtx.table("table1")
- >>> sorted(df.collect()) == sorted(df2.collect())
- True
- """
- return DataFrame(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.
- """
-
- def __init__(self, sparkContext, hiveContext=None):
- """Create a new HiveContext.
-
- :param sparkContext: The SparkContext to wrap.
- :param hiveContext: An optional JVM Scala HiveContext. If set, we do not instatiate a new
- HiveContext in the JVM, instead we make all calls to this object.
- """
- SQLContext.__init__(self, sparkContext)
-
- if hiveContext:
- self._scala_HiveContext = hiveContext
-
- @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 "
- "build/sbt assembly", e)
-
- def _get_hive_ctx(self):
- return self._jvm.HiveContext(self._jsc.sc())
-
-
-def _create_row(fields, values):
- row = Row(*values)
- row.__FIELDS__ = fields
- return row
-
-
-class Row(tuple):
-
- """
- A row in L{DataFrame}. The fields in it can be accessed like attributes.
-
- Row can be used to create a row object by using named arguments,
- the fields will be sorted by names.
-
- >>> row = Row(name="Alice", age=11)
- >>> row
- Row(age=11, name='Alice')
- >>> row.name, row.age
- ('Alice', 11)
-
- Row also can be used to create another Row like class, then it
- could be used to create Row objects, such as
-
- >>> Person = Row("name", "age")
- >>> Person
- <Row(name, age)>
- >>> Person("Alice", 11)
- Row(name='Alice', age=11)
- """
-
- def __new__(self, *args, **kwargs):
- if args and kwargs:
- raise ValueError("Can not use both args "
- "and kwargs to create Row")
- if args:
- # create row class or objects
- return tuple.__new__(self, args)
-
- elif kwargs:
- # create row objects
- names = sorted(kwargs.keys())
- values = tuple(kwargs[n] for n in names)
- row = tuple.__new__(self, values)
- row.__FIELDS__ = names
- return row
-
- else:
- raise ValueError("No args or kwargs")
-
- def asDict(self):
- """
- Return as an dict
- """
- if not hasattr(self, "__FIELDS__"):
- raise TypeError("Cannot convert a Row class into dict")
- return dict(zip(self.__FIELDS__, self))
-
- # let obect acs like class
- def __call__(self, *args):
- """create new Row object"""
- return _create_row(self, args)
-
- def __getattr__(self, item):
- if item.startswith("__"):
- raise AttributeError(item)
- try:
- # it will be slow when it has many fields,
- # but this will not be used in normal cases
- idx = self.__FIELDS__.index(item)
- return self[idx]
- except IndexError:
- raise AttributeError(item)
-
- def __reduce__(self):
- if hasattr(self, "__FIELDS__"):
- return (_create_row, (self.__FIELDS__, tuple(self)))
- else:
- return tuple.__reduce__(self)
-
- def __repr__(self):
- if hasattr(self, "__FIELDS__"):
- return "Row(%s)" % ", ".join("%s=%r" % (k, v)
- for k, v in zip(self.__FIELDS__, self))
- else:
- return "<Row(%s)>" % ", ".join(self)
-
-
-class DataFrame(object):
-
- """A collection of rows that have the same columns.
-
- A :class:`DataFrame` is equivalent to a relational table in Spark SQL,
- and can be created using various functions in :class:`SQLContext`::
-
- people = sqlContext.parquetFile("...")
-
- Once created, it can be manipulated using the various domain-specific-language
- (DSL) functions defined in: :class:`DataFrame`, :class:`Column`.
-
- To select a column from the data frame, use the apply method::
-
- ageCol = people.age
-
- Note that the :class:`Column` type can also be manipulated
- through its various functions::
-
- # The following creates a new column that increases everybody's age by 10.
- people.age + 10
-
-
- A more concrete example::
-
- # To create DataFrame using SQLContext
- people = sqlContext.parquetFile("...")
- department = sqlContext.parquetFile("...")
-
- people.filter(people.age > 30).join(department, people.deptId == department.id)) \
- .groupBy(department.name, "gender").agg({"salary": "avg", "age": "max"})
- """
-
- def __init__(self, jdf, sql_ctx):
- self._jdf = jdf
- self.sql_ctx = sql_ctx
- self._sc = sql_ctx and sql_ctx._sc
- self.is_cached = False
-
- @property
- def rdd(self):
- """
- Return the content of the :class:`DataFrame` as an :class:`RDD`
- of :class:`Row` s.
- """
- if not hasattr(self, '_lazy_rdd'):
- jrdd = self._jdf.javaToPython()
- rdd = RDD(jrdd, self.sql_ctx._sc, BatchedSerializer(PickleSerializer()))
- schema = self.schema()
-
- def applySchema(it):
- cls = _create_cls(schema)
- return itertools.imap(cls, it)
-
- self._lazy_rdd = rdd.mapPartitions(applySchema)
-
- return self._lazy_rdd
-
- def toJSON(self, use_unicode=False):
- """Convert a DataFrame into a MappedRDD of JSON documents; one document per row.
-
- >>> df1 = sqlCtx.jsonRDD(json)
- >>> sqlCtx.registerRDDAsTable(df1, "table1")
- >>> df2 = sqlCtx.sql( "SELECT * from table1")
- >>> df2.toJSON().take(1)[0] == '{"field1":1,"field2":"row1","field3":{"field4":11}}'
- True
- >>> df3 = sqlCtx.sql( "SELECT field3.field4 from table1")
- >>> df3.toJSON().collect() == ['{"field4":11}', '{"field4":22}', '{"field4":33}']
- True
- """
- rdd = self._jdf.toJSON()
- return RDD(rdd.toJavaRDD(), self._sc, UTF8Deserializer(use_unicode))
-
- 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 DataFrame using the L{SQLContext.parquetFile} method.
-
- >>> import tempfile, shutil
- >>> parquetFile = tempfile.mkdtemp()
- >>> shutil.rmtree(parquetFile)
- >>> df.saveAsParquetFile(parquetFile)
- >>> df2 = sqlCtx.parquetFile(parquetFile)
- >>> sorted(df2.collect()) == sorted(df.collect())
- True
- """
- self._jdf.saveAsParquetFile(path)
-
- def registerTempTable(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 DataFrame.
-
- >>> df.registerTempTable("people")
- >>> df2 = sqlCtx.sql("select * from people")
- >>> sorted(df.collect()) == sorted(df2.collect())
- True
- """
- self._jdf.registerTempTable(name)
-
- def registerAsTable(self, name):
- """DEPRECATED: use registerTempTable() instead"""
- warnings.warn("Use registerTempTable instead of registerAsTable.", DeprecationWarning)
- self.registerTempTable(name)
-
- def insertInto(self, tableName, overwrite=False):
- """Inserts the contents of this DataFrame into the specified table.
-
- Optionally overwriting any existing data.
- """
- self._jdf.insertInto(tableName, overwrite)
-
- def saveAsTable(self, tableName):
- """Creates a new table with the contents of this DataFrame."""
- self._jdf.saveAsTable(tableName)
-
- def schema(self):
- """Returns the schema of this DataFrame (represented by
- a L{StructType}).
-
- >>> df.schema()
- StructType(List(StructField(age,IntegerType,true),StructField(name,StringType,true)))
- """
- return _parse_datatype_json_string(self._jdf.schema().json())
-
- def printSchema(self):
- """Prints out the schema in the tree format.
-
- >>> df.printSchema()
- root
- |-- age: integer (nullable = true)
- |-- name: string (nullable = true)
- <BLANKLINE>
- """
- print (self._jdf.schema().treeString())
-
- 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 DataFrame,
- which supports features such as filter pushdown.
-
- >>> df.count()
- 2L
- """
- return self._jdf.count()
-
- def collect(self):
- """Return a list that contains all of the rows.
-
- Each object in the list is a Row, the fields can be accessed as
- attributes.
-
- >>> df.collect()
- [Row(age=2, name=u'Alice'), Row(age=5, name=u'Bob')]
- """
- with SCCallSiteSync(self._sc) as css:
- bytesInJava = self._jdf.javaToPython().collect().iterator()
- tempFile = NamedTemporaryFile(delete=False, dir=self._sc._temp_dir)
- tempFile.close()
- self._sc._writeToFile(bytesInJava, tempFile.name)
- # Read the data into Python and deserialize it:
- with open(tempFile.name, 'rb') as tempFile:
- rs = list(BatchedSerializer(PickleSerializer()).load_stream(tempFile))
- os.unlink(tempFile.name)
- cls = _create_cls(self.schema())
- return [cls(r) for r in rs]
-
- def limit(self, num):
- """Limit the result count to the number specified.
-
- >>> df.limit(1).collect()
- [Row(age=2, name=u'Alice')]
- >>> df.limit(0).collect()
- []
- """
- jdf = self._jdf.limit(num)
- return DataFrame(jdf, self.sql_ctx)
-
- def take(self, num):
- """Take the first num rows of the RDD.
-
- Each object in the list is a Row, the fields can be accessed as
- attributes.
-
- >>> df.take(2)
- [Row(age=2, name=u'Alice'), Row(age=5, name=u'Bob')]
- """
- return self.limit(num).collect()
-
- def map(self, f):
- """ Return a new RDD by applying a function to each Row, it's a
- shorthand for df.rdd.map()
-
- >>> df.map(lambda p: p.name).collect()
- [u'Alice', u'Bob']
- """
- return self.rdd.map(f)
-
- def mapPartitions(self, f, preservesPartitioning=False):
- """
- Return a new RDD by applying a function to each partition.
-
- >>> rdd = sc.parallelize([1, 2, 3, 4], 4)
- >>> def f(iterator): yield 1
- >>> rdd.mapPartitions(f).sum()
- 4
- """
- return self.rdd.mapPartitions(f, preservesPartitioning)
-
- def cache(self):
- """ Persist with the default storage level (C{MEMORY_ONLY_SER}).
- """
- self.is_cached = True
- self._jdf.cache()
- return self
-
- def persist(self, storageLevel=StorageLevel.MEMORY_ONLY_SER):
- """ Set the storage level to persist its values across operations
- after the first time it is computed. This can only be used to assign
- a new storage level if the RDD does not have a storage level set yet.
- If no storage level is specified defaults to (C{MEMORY_ONLY_SER}).
- """
- self.is_cached = True
- javaStorageLevel = self._sc._getJavaStorageLevel(storageLevel)
- self._jdf.persist(javaStorageLevel)
- return self
-
- def unpersist(self, blocking=True):
- """ Mark it as non-persistent, and remove all blocks for it from
- memory and disk.
- """
- self.is_cached = False
- self._jdf.unpersist(blocking)
- return self
-
- # def coalesce(self, numPartitions, shuffle=False):
- # rdd = self._jdf.coalesce(numPartitions, shuffle, None)
- # return DataFrame(rdd, self.sql_ctx)
-
- def repartition(self, numPartitions):
- """ Return a new :class:`DataFrame` that has exactly `numPartitions`
- partitions.
- """
- rdd = self._jdf.repartition(numPartitions, None)
- return DataFrame(rdd, self.sql_ctx)
-
- def sample(self, withReplacement, fraction, seed=None):
- """
- Return a sampled subset of this DataFrame.
-
- >>> df = sqlCtx.inferSchema(rdd)
- >>> df.sample(False, 0.5, 97).count()
- 2L
- """
- assert fraction >= 0.0, "Negative fraction value: %s" % fraction
- seed = seed if seed is not None else random.randint(0, sys.maxint)
- rdd = self._jdf.sample(withReplacement, fraction, long(seed))
- return DataFrame(rdd, self.sql_ctx)
-
- # def takeSample(self, withReplacement, num, seed=None):
- # """Return a fixed-size sampled subset of this DataFrame.
- #
- # >>> df = sqlCtx.inferSchema(rdd)
- # >>> df.takeSample(False, 2, 97)
- # [Row(field1=3, field2=u'row3'), Row(field1=1, field2=u'row1')]
- # """
- # seed = seed if seed is not None else random.randint(0, sys.maxint)
- # with SCCallSiteSync(self.context) as css:
- # bytesInJava = self._jdf \
- # .takeSampleToPython(withReplacement, num, long(seed)) \
- # .iterator()
- # cls = _create_cls(self.schema())
- # return map(cls, self._collect_iterator_through_file(bytesInJava))
-
- @property
- def dtypes(self):
- """Return all column names and their data types as a list.
-
- >>> df.dtypes
- [('age', 'integer'), ('name', 'string')]
- """
- return [(str(f.name), f.dataType.jsonValue()) for f in self.schema().fields]
-
- @property
- def columns(self):
- """ Return all column names as a list.
-
- >>> df.columns
- [u'age', u'name']
- """
- return [f.name for f in self.schema().fields]
-
- def join(self, other, joinExprs=None, joinType=None):
- """
- Join with another DataFrame, using the given join expression.
- The following performs a full outer join between `df1` and `df2`::
-
- :param other: Right side of the join
- :param joinExprs: Join expression
- :param joinType: One of `inner`, `outer`, `left_outer`, `right_outer`, `semijoin`.
-
- >>> df.join(df2, df.name == df2.name, 'outer').select(df.name, df2.height).collect()
- [Row(name=None, height=80), Row(name=u'Bob', height=85), Row(name=u'Alice', height=None)]
- """
-
- if joinExprs is None:
- jdf = self._jdf.join(other._jdf)
- else:
- assert isinstance(joinExprs, Column), "joinExprs should be Column"
- if joinType is None:
- jdf = self._jdf.join(other._jdf, joinExprs._jc)
- else:
- assert isinstance(joinType, basestring), "joinType should be basestring"
- jdf = self._jdf.join(other._jdf, joinExprs._jc, joinType)
- return DataFrame(jdf, self.sql_ctx)
-
- def sort(self, *cols):
- """ Return a new :class:`DataFrame` sorted by the specified column.
-
- :param cols: The columns or expressions used for sorting
-
- >>> df.sort(df.age.desc()).collect()
- [Row(age=5, name=u'Bob'), Row(age=2, name=u'Alice')]
- >>> df.sortBy(df.age.desc()).collect()
- [Row(age=5, name=u'Bob'), Row(age=2, name=u'Alice')]
- """
- if not cols:
- raise ValueError("should sort by at least one column")
- jcols = ListConverter().convert([_to_java_column(c) for c in cols],
- self._sc._gateway._gateway_client)
- jdf = self._jdf.sort(self._sc._jvm.PythonUtils.toSeq(jcols))
- return DataFrame(jdf, self.sql_ctx)
-
- sortBy = sort
-
- def head(self, n=None):
- """ Return the first `n` rows or the first row if n is None.
-
- >>> df.head()
- Row(age=2, name=u'Alice')
- >>> df.head(1)
- [Row(age=2, name=u'Alice')]
- """
- if n is None:
- rs = self.head(1)
- return rs[0] if rs else None
- return self.take(n)
-
- def first(self):
- """ Return the first row.
-
- >>> df.first()
- Row(age=2, name=u'Alice')
- """
- return self.head()
-
- def __getitem__(self, item):
- """ Return the column by given name
-
- >>> df['age'].collect()
- [Row(age=2), Row(age=5)]
- >>> df[ ["name", "age"]].collect()
- [Row(name=u'Alice', age=2), Row(name=u'Bob', age=5)]
- >>> df[ df.age > 3 ].collect()
- [Row(age=5, name=u'Bob')]
- """
- if isinstance(item, basestring):
- jc = self._jdf.apply(item)
- return Column(jc, self.sql_ctx)
- elif isinstance(item, Column):
- return self.filter(item)
- elif isinstance(item, list):
- return self.select(*item)
- else:
- raise IndexError("unexpected index: %s" % item)
-
- def __getattr__(self, name):
- """ Return the column by given name
-
- >>> df.age.collect()
- [Row(age=2), Row(age=5)]
- """
- if name.startswith("__"):
- raise AttributeError(name)
- jc = self._jdf.apply(name)
- return Column(jc, self.sql_ctx)
-
- def select(self, *cols):
- """ Selecting a set of expressions.
-
- >>> df.select().collect()
- [Row(age=2, name=u'Alice'), Row(age=5, name=u'Bob')]
- >>> df.select('*').collect()
- [Row(age=2, name=u'Alice'), Row(age=5, name=u'Bob')]
- >>> df.select('name', 'age').collect()
- [Row(name=u'Alice', age=2), Row(name=u'Bob', age=5)]
- >>> df.select(df.name, (df.age + 10).alias('age')).collect()
- [Row(name=u'Alice', age=12), Row(name=u'Bob', age=15)]
- """
- if not cols:
- cols = ["*"]
- jcols = ListConverter().convert([_to_java_column(c) for c in cols],
- self._sc._gateway._gateway_client)
- jdf = self._jdf.select(self.sql_ctx._sc._jvm.PythonUtils.toSeq(jcols))
- return DataFrame(jdf, self.sql_ctx)
-
- def selectExpr(self, *expr):
- """
- Selects a set of SQL expressions. This is a variant of
- `select` that accepts SQL expressions.
-
- >>> df.selectExpr("age * 2", "abs(age)").collect()
- [Row(('age * 2)=4, Abs('age)=2), Row(('age * 2)=10, Abs('age)=5)]
- """
- jexpr = ListConverter().convert(expr, self._sc._gateway._gateway_client)
- jdf = self._jdf.selectExpr(self._sc._jvm.PythonUtils.toSeq(jexpr))
- return DataFrame(jdf, self.sql_ctx)
-
- def filter(self, condition):
- """ Filtering rows using the given condition, which could be
- Column expression or string of SQL expression.
-
- where() is an alias for filter().
-
- >>> df.filter(df.age > 3).collect()
- [Row(age=5, name=u'Bob')]
- >>> df.where(df.age == 2).collect()
- [Row(age=2, name=u'Alice')]
-
- >>> df.filter("age > 3").collect()
- [Row(age=5, name=u'Bob')]
- >>> df.where("age = 2").collect()
- [Row(age=2, name=u'Alice')]
- """
- if isinstance(condition, basestring):
- jdf = self._jdf.filter(condition)
- elif isinstance(condition, Column):
- jdf = self._jdf.filter(condition._jc)
- else:
- raise TypeError("condition should be string or Column")
- return DataFrame(jdf, self.sql_ctx)
-
- where = filter
-
- def groupBy(self, *cols):
- """ Group the :class:`DataFrame` using the specified columns,
- so we can run aggregation on them. See :class:`GroupedData`
- for all the available aggregate functions.
-
- >>> df.groupBy().avg().collect()
- [Row(AVG(age#0)=3.5)]
- >>> df.groupBy('name').agg({'age': 'mean'}).collect()
- [Row(name=u'Bob', AVG(age#0)=5.0), Row(name=u'Alice', AVG(age#0)=2.0)]
- >>> df.groupBy(df.name).avg().collect()
- [Row(name=u'Bob', AVG(age#0)=5.0), Row(name=u'Alice', AVG(age#0)=2.0)]
- """
- jcols = ListConverter().convert([_to_java_column(c) for c in cols],
- self._sc._gateway._gateway_client)
- jdf = self._jdf.groupBy(self.sql_ctx._sc._jvm.PythonUtils.toSeq(jcols))
- return GroupedData(jdf, self.sql_ctx)
-
- def agg(self, *exprs):
- """ Aggregate on the entire :class:`DataFrame` without groups
- (shorthand for df.groupBy.agg()).
-
- >>> df.agg({"age": "max"}).collect()
- [Row(MAX(age#0)=5)]
- >>> from pyspark.sql import Dsl
- >>> df.agg(Dsl.min(df.age)).collect()
- [Row(MIN(age#0)=2)]
- """
- return self.groupBy().agg(*exprs)
-
- def unionAll(self, other):
- """ Return a new DataFrame containing union of rows in this
- frame and another frame.
-
- This is equivalent to `UNION ALL` in SQL.
- """
- return DataFrame(self._jdf.unionAll(other._jdf), self.sql_ctx)
-
- def intersect(self, other):
- """ Return a new :class:`DataFrame` containing rows only in
- both this frame and another frame.
-
- This is equivalent to `INTERSECT` in SQL.
- """
- return DataFrame(self._jdf.intersect(other._jdf), self.sql_ctx)
-
- def subtract(self, other):
- """ Return a new :class:`DataFrame` containing rows in this frame
- but not in another frame.
-
- This is equivalent to `EXCEPT` in SQL.
- """
- return DataFrame(getattr(self._jdf, "except")(other._jdf), self.sql_ctx)
-
- def addColumn(self, colName, col):
- """ Return a new :class:`DataFrame` by adding a column.
-
- >>> df.addColumn('age2', df.age + 2).collect()
- [Row(age=2, name=u'Alice', age2=4), Row(age=5, name=u'Bob', age2=7)]
- """
- return self.select('*', col.alias(colName))
-
- def to_pandas(self):
- """
- Collect all the rows and return a `pandas.DataFrame`.
-
- >>> df.to_pandas() # doctest: +SKIP
- age name
- 0 2 Alice
- 1 5 Bob
- """
- import pandas as pd
- return pd.DataFrame.from_records(self.collect(), columns=self.columns)
-
-
-# Having SchemaRDD for backward compatibility (for docs)
-class SchemaRDD(DataFrame):
- """
- SchemaRDD is deprecated, please use DataFrame
- """
-
-
-def dfapi(f):
- def _api(self):
- name = f.__name__
- jdf = getattr(self._jdf, name)()
- return DataFrame(jdf, self.sql_ctx)
- _api.__name__ = f.__name__
- _api.__doc__ = f.__doc__
- return _api
-
-
-class GroupedData(object):
-
- """
- A set of methods for aggregations on a :class:`DataFrame`,
- created by DataFrame.groupBy().
- """
-
- def __init__(self, jdf, sql_ctx):
- self._jdf = jdf
- self.sql_ctx = sql_ctx
-
- def agg(self, *exprs):
- """ Compute aggregates by specifying a map from column name
- to aggregate methods.
-
- The available aggregate methods are `avg`, `max`, `min`,
- `sum`, `count`.
-
- :param exprs: list or aggregate columns or a map from column
- name to aggregate methods.
-
- >>> gdf = df.groupBy(df.name)
- >>> gdf.agg({"age": "max"}).collect()
- [Row(name=u'Bob', MAX(age#0)=5), Row(name=u'Alice', MAX(age#0)=2)]
- >>> from pyspark.sql import Dsl
- >>> gdf.agg(Dsl.min(df.age)).collect()
- [Row(MIN(age#0)=5), Row(MIN(age#0)=2)]
- """
- assert exprs, "exprs should not be empty"
- if len(exprs) == 1 and isinstance(exprs[0], dict):
- jmap = MapConverter().convert(exprs[0],
- self.sql_ctx._sc._gateway._gateway_client)
- jdf = self._jdf.agg(jmap)
- else:
- # Columns
- assert all(isinstance(c, Column) for c in exprs), "all exprs should be Column"
- jcols = ListConverter().convert([c._jc for c in exprs[1:]],
- self.sql_ctx._sc._gateway._gateway_client)
- jdf = self._jdf.agg(exprs[0]._jc, self.sql_ctx._sc._jvm.PythonUtils.toSeq(jcols))
- return DataFrame(jdf, self.sql_ctx)
-
- @dfapi
- def count(self):
- """ Count the number of rows for each group.
-
- >>> df.groupBy(df.age).count().collect()
- [Row(age=2, count=1), Row(age=5, count=1)]
- """
-
- @dfapi
- def mean(self):
- """Compute the average value for each numeric columns
- for each group. This is an alias for `avg`."""
-
- @dfapi
- def avg(self):
- """Compute the average value for each numeric columns
- for each group."""
-
- @dfapi
- def max(self):
- """Compute the max value for each numeric columns for
- each group. """
-
- @dfapi
- def min(self):
- """Compute the min value for each numeric column for
- each group."""
-
- @dfapi
- def sum(self):
- """Compute the sum for each numeric columns for each
- group."""
-
-
-def _create_column_from_literal(literal):
- sc = SparkContext._active_spark_context
- return sc._jvm.Dsl.lit(literal)
-
-
-def _create_column_from_name(name):
- sc = SparkContext._active_spark_context
- return sc._jvm.Dsl.col(name)
-
-
-def _to_java_column(col):
- if isinstance(col, Column):
- jcol = col._jc
- else:
- jcol = _create_column_from_name(col)
- return jcol
-
-
-def _unary_op(name, doc="unary operator"):
- """ Create a method for given unary operator """
- def _(self):
- jc = getattr(self._jc, name)()
- return Column(jc, self.sql_ctx)
- _.__doc__ = doc
- return _
-
-
-def _dsl_op(name, doc=''):
- def _(self):
- jc = getattr(self._sc._jvm.Dsl, name)(self._jc)
- return Column(jc, self.sql_ctx)
- _.__doc__ = doc
- return _
-
-
-def _bin_op(name, doc="binary operator"):
- """ Create a method for given binary operator
- """
- def _(self, other):
- jc = other._jc if isinstance(other, Column) else other
- njc = getattr(self._jc, name)(jc)
- return Column(njc, self.sql_ctx)
- _.__doc__ = doc
- return _
-
-
-def _reverse_op(name, doc="binary operator"):
- """ Create a method for binary operator (this object is on right side)
- """
- def _(self, other):
- jother = _create_column_from_literal(other)
- jc = getattr(jother, name)(self._jc)
- return Column(jc, self.sql_ctx)
- _.__doc__ = doc
- return _
-
-
-class Column(DataFrame):
-
- """
- A column in a DataFrame.
-
- `Column` instances can be created by::
-
- # 1. Select a column out of a DataFrame
- df.colName
- df["colName"]
-
- # 2. Create from an expression
- df.colName + 1
- 1 / df.colName
- """
-
- def __init__(self, jc, sql_ctx=None):
- self._jc = jc
- super(Column, self).__init__(jc, sql_ctx)
-
- # arithmetic operators
- __neg__ = _dsl_op("negate")
- __add__ = _bin_op("plus")
- __sub__ = _bin_op("minus")
- __mul__ = _bin_op("multiply")
- __div__ = _bin_op("divide")
- __mod__ = _bin_op("mod")
- __radd__ = _bin_op("plus")
- __rsub__ = _reverse_op("minus")
- __rmul__ = _bin_op("multiply")
- __rdiv__ = _reverse_op("divide")
- __rmod__ = _reverse_op("mod")
-
- # logistic operators
- __eq__ = _bin_op("equalTo")
- __ne__ = _bin_op("notEqual")
- __lt__ = _bin_op("lt")
- __le__ = _bin_op("leq")
- __ge__ = _bin_op("geq")
- __gt__ = _bin_op("gt")
-
- # `and`, `or`, `not` cannot be overloaded in Python,
- # so use bitwise operators as boolean operators
- __and__ = _bin_op('and')
- __or__ = _bin_op('or')
- __invert__ = _dsl_op('not')
- __rand__ = _bin_op("and")
- __ror__ = _bin_op("or")
-
- # container operators
- __contains__ = _bin_op("contains")
- __getitem__ = _bin_op("getItem")
- getField = _bin_op("getField", "An expression that gets a field by name in a StructField.")
-
- # string methods
- rlike = _bin_op("rlike")
- like = _bin_op("like")
- startswith = _bin_op("startsWith")
- endswith = _bin_op("endsWith")
-
- def substr(self, startPos, length):
- """
- Return a Column which is a substring of the column
-
- :param startPos: start position (int or Column)
- :param length: length of the substring (int or Column)
-
- >>> df.name.substr(1, 3).collect()
- [Row(col=u'Ali'), Row(col=u'Bob')]
- """
- if type(startPos) != type(length):
- raise TypeError("Can not mix the type")
- if isinstance(startPos, (int, long)):
- jc = self._jc.substr(startPos, length)
- elif isinstance(startPos, Column):
- jc = self._jc.substr(startPos._jc, length._jc)
- else:
- raise TypeError("Unexpected type: %s" % type(startPos))
- return Column(jc, self.sql_ctx)
-
- __getslice__ = substr
-
- # order
- asc = _unary_op("asc")
- desc = _unary_op("desc")
-
- isNull = _unary_op("isNull", "True if the current expression is null.")
- isNotNull = _unary_op("isNotNull", "True if the current expression is not null.")
-
- def alias(self, alias):
- """Return a alias for this column
-
- >>> df.age.alias("age2").collect()
- [Row(age2=2), Row(age2=5)]
- """
- return Column(getattr(self._jc, "as")(alias), self.sql_ctx)
-
- def cast(self, dataType):
- """ Convert the column into type `dataType`
-
- >>> df.select(df.age.cast("string").alias('ages')).collect()
- [Row(ages=u'2'), Row(ages=u'5')]
- >>> df.select(df.age.cast(StringType()).alias('ages')).collect()
- [Row(ages=u'2'), Row(ages=u'5')]
- """
- if self.sql_ctx is None:
- sc = SparkContext._active_spark_context
- ssql_ctx = sc._jvm.SQLContext(sc._jsc.sc())
- else:
- ssql_ctx = self.sql_ctx._ssql_ctx
- if isinstance(dataType, basestring):
- jc = self._jc.cast(dataType)
- elif isinstance(dataType, DataType):
- jdt = ssql_ctx.parseDataType(dataType.json())
- jc = self._jc.cast(jdt)
- return Column(jc, self.sql_ctx)
-
- def to_pandas(self):
- """
- Return a pandas.Series from the column
-
- >>> df.age.to_pandas() # doctest: +SKIP
- 0 2
- 1 5
- dtype: int64
- """
- import pandas as pd
- data = [c for c, in self.collect()]
- return pd.Series(data)
-
-
-def _aggregate_func(name, doc=""):
- """ Create a function for aggregator by name"""
- def _(col):
- sc = SparkContext._active_spark_context
- jc = getattr(sc._jvm.Dsl, name)(_to_java_column(col))
- return Column(jc)
- _.__name__ = name
- _.__doc__ = doc
- return staticmethod(_)
-
-
-class UserDefinedFunction(object):
- def __init__(self, func, returnType):
- self.func = func
- self.returnType = returnType
- self._broadcast = None
- self._judf = self._create_judf()
-
- def _create_judf(self):
- f = self.func # put it in closure `func`
- func = lambda _, it: imap(lambda x: f(*x), it)
- ser = AutoBatchedSerializer(PickleSerializer())
- command = (func, None, ser, ser)
- sc = SparkContext._active_spark_context
- pickled_command, broadcast_vars, env, includes = _prepare_for_python_RDD(sc, command, self)
- ssql_ctx = sc._jvm.SQLContext(sc._jsc.sc())
- jdt = ssql_ctx.parseDataType(self.returnType.json())
- judf = sc._jvm.UserDefinedPythonFunction(f.__name__, bytearray(pickled_command), env,
- includes, sc.pythonExec, broadcast_vars,
- sc._javaAccumulator, jdt)
- return judf
-
- def __del__(self):
- if self._broadcast is not None:
- self._broadcast.unpersist()
- self._broadcast = None
-
- def __call__(self, *cols):
- sc = SparkContext._active_spark_context
- jcols = ListConverter().convert([_to_java_column(c) for c in cols],
- sc._gateway._gateway_client)
- jc = self._judf.apply(sc._jvm.PythonUtils.toSeq(jcols))
- return Column(jc)
-
-
-class Dsl(object):
- """
- A collections of builtin aggregators
- """
- DSLS = {
- 'lit': 'Creates a :class:`Column` of literal value.',
- 'col': 'Returns a :class:`Column` based on the given column name.',
- 'column': 'Returns a :class:`Column` based on the given column name.',
- 'upper': 'Converts a string expression to upper case.',
- 'lower': 'Converts a string expression to upper case.',
- 'sqrt': 'Computes the square root of the specified float value.',
- 'abs': 'Computes the absolutle value.',
-
- 'max': 'Aggregate function: returns the maximum value of the expression in a group.',
- 'min': 'Aggregate function: returns the minimum value of the expression in a group.',
- 'first': 'Aggregate function: returns the first value in a group.',
- 'last': 'Aggregate function: returns the last value in a group.',
- 'count': 'Aggregate function: returns the number of items in a group.',
- 'sum': 'Aggregate function: returns the sum of all values in the expression.',
- 'avg': 'Aggregate function: returns the average of the values in a group.',
- 'mean': 'Aggregate function: returns the average of the values in a group.',
- 'sumDistinct': 'Aggregate function: returns the sum of distinct values in the expression.',
- }
-
- for _name, _doc in DSLS.items():
- locals()[_name] = _aggregate_func(_name, _doc)
- del _name, _doc
-
- @staticmethod
- def countDistinct(col, *cols):
- """ Return a new Column for distinct count of (col, *cols)
-
- >>> from pyspark.sql import Dsl
- >>> df.agg(Dsl.countDistinct(df.age, df.name).alias('c')).collect()
- [Row(c=2)]
-
- >>> df.agg(Dsl.countDistinct("age", "name").alias('c')).collect()
- [Row(c=2)]
- """
- sc = SparkContext._active_spark_context
- jcols = ListConverter().convert([_to_java_column(c) for c in cols],
- sc._gateway._gateway_client)
- jc = sc._jvm.Dsl.countDistinct(_to_java_column(col),
- sc._jvm.PythonUtils.toSeq(jcols))
- return Column(jc)
-
- @staticmethod
- def approxCountDistinct(col, rsd=None):
- """ Return a new Column for approxiate distinct count of (col, *cols)
-
- >>> from pyspark.sql import Dsl
- >>> df.agg(Dsl.approxCountDistinct(df.age).alias('c')).collect()
- [Row(c=2)]
- """
- sc = SparkContext._active_spark_context
- if rsd is None:
- jc = sc._jvm.Dsl.approxCountDistinct(_to_java_column(col))
- else:
- jc = sc._jvm.Dsl.approxCountDistinct(_to_java_column(col), rsd)
- return Column(jc)
-
- @staticmethod
- def udf(f, returnType=StringType()):
- """Create a user defined function (UDF)
-
- >>> slen = Dsl.udf(lambda s: len(s), IntegerType())
- >>> df.select(slen(df.name).alias('slen')).collect()
- [Row(slen=5), Row(slen=3)]
- """
- return UserDefinedFunction(f, returnType)
-
-
-def _test():
- import doctest
- from pyspark.context import SparkContext
- # let doctest run in pyspark.sql, so DataTypes can be picklable
- import pyspark.sql
- from pyspark.sql import Row, SQLContext
- from pyspark.sql_tests import ExamplePoint, ExamplePointUDT
- globs = pyspark.sql.__dict__.copy()
- sc = SparkContext('local[4]', 'PythonTest')
- globs['sc'] = sc
- globs['sqlCtx'] = sqlCtx = SQLContext(sc)
- globs['rdd'] = sc.parallelize(
- [Row(field1=1, field2="row1"),
- Row(field1=2, field2="row2"),
- Row(field1=3, field2="row3")]
- )
- rdd2 = sc.parallelize([Row(name='Alice', age=2), Row(name='Bob', age=5)])
- rdd3 = sc.parallelize([Row(name='Tom', height=80), Row(name='Bob', height=85)])
- globs['df'] = sqlCtx.inferSchema(rdd2)
- globs['df2'] = sqlCtx.inferSchema(rdd3)
- globs['ExamplePoint'] = ExamplePoint
- globs['ExamplePointUDT'] = ExamplePointUDT
- jsonStrings = [
- '{"field1": 1, "field2": "row1", "field3":{"field4":11}}',
- '{"field1" : 2, "field3":{"field4":22, "field5": [10, 11]},'
- '"field6":[{"field7": "row2"}]}',
- '{"field1" : null, "field2": "row3", '
- '"field3":{"field4":33, "field5": []}}'
- ]
- globs['jsonStrings'] = jsonStrings
- globs['json'] = sc.parallelize(jsonStrings)
- (failure_count, test_count) = doctest.testmod(
- pyspark.sql, globs=globs, optionflags=doctest.ELLIPSIS)
- globs['sc'].stop()
- if failure_count:
- exit(-1)
-
-
-if __name__ == "__main__":
- _test()