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types.py
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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.
#
import sys
import decimal
import time
import datetime
import calendar
import json
import re
import base64
from array import array
import ctypes
if sys.version >= "3":
long = int
basestring = unicode = str
from py4j.protocol import register_input_converter
from py4j.java_gateway import JavaClass
from pyspark import SparkContext
from pyspark.serializers import CloudPickleSerializer
from pyspark.util import _exception_message
__all__ = [
"DataType", "NullType", "StringType", "BinaryType", "BooleanType", "DateType",
"TimestampType", "DecimalType", "DoubleType", "FloatType", "ByteType", "IntegerType",
"LongType", "ShortType", "ArrayType", "MapType", "StructField", "StructType"]
class DataType(object):
"""Base class for data types."""
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 simpleString(self):
return self.typeName()
def jsonValue(self):
return self.typeName()
def json(self):
return json.dumps(self.jsonValue(),
separators=(',', ':'),
sort_keys=True)
def needConversion(self):
"""
Does this type need to conversion between Python object and internal SQL object.
This is used to avoid the unnecessary conversion for ArrayType/MapType/StructType.
"""
return False
def toInternal(self, obj):
"""
Converts a Python object into an internal SQL object.
"""
return obj
def fromInternal(self, obj):
"""
Converts an internal SQL object into a native Python object.
"""
return obj
# This singleton pattern does not work with pickle, you will get
# another object after pickle and unpickle
class DataTypeSingleton(type):
"""Metaclass for DataType"""
_instances = {}
def __call__(cls):
if cls not in cls._instances:
cls._instances[cls] = super(DataTypeSingleton, cls).__call__()
return cls._instances[cls]
class NullType(DataType):
"""Null type.
The data type representing None, used for the types that cannot be inferred.
"""
__metaclass__ = DataTypeSingleton
class AtomicType(DataType):
"""An internal type used to represent everything that is not
null, UDTs, arrays, structs, and maps."""
class NumericType(AtomicType):
"""Numeric data types.
"""
class IntegralType(NumericType):
"""Integral data types.
"""
__metaclass__ = DataTypeSingleton
class FractionalType(NumericType):
"""Fractional data types.
"""
class StringType(AtomicType):
"""String data type.
"""
__metaclass__ = DataTypeSingleton
class BinaryType(AtomicType):
"""Binary (byte array) data type.
"""
__metaclass__ = DataTypeSingleton
class BooleanType(AtomicType):
"""Boolean data type.
"""
__metaclass__ = DataTypeSingleton
class DateType(AtomicType):
"""Date (datetime.date) data type.
"""
__metaclass__ = DataTypeSingleton
EPOCH_ORDINAL = datetime.datetime(1970, 1, 1).toordinal()
def needConversion(self):
return True
def toInternal(self, d):
if d is not None:
return d.toordinal() - self.EPOCH_ORDINAL
def fromInternal(self, v):
if v is not None:
return datetime.date.fromordinal(v + self.EPOCH_ORDINAL)
class TimestampType(AtomicType):
"""Timestamp (datetime.datetime) data type.
"""
__metaclass__ = DataTypeSingleton
def needConversion(self):
return True
def toInternal(self, dt):
if dt is not None:
seconds = (calendar.timegm(dt.utctimetuple()) if dt.tzinfo
else time.mktime(dt.timetuple()))
return int(seconds) * 1000000 + dt.microsecond
def fromInternal(self, ts):
if ts is not None:
# using int to avoid precision loss in float
return datetime.datetime.fromtimestamp(ts // 1000000).replace(microsecond=ts % 1000000)
class DecimalType(FractionalType):
"""Decimal (decimal.Decimal) data type.
The DecimalType must have fixed precision (the maximum total number of digits)
and scale (the number of digits on the right of dot). For example, (5, 2) can
support the value from [-999.99 to 999.99].
The precision can be up to 38, the scale must less or equal to precision.
When create a DecimalType, the default precision and scale is (10, 0). When infer
schema from decimal.Decimal objects, it will be DecimalType(38, 18).
:param precision: the maximum total number of digits (default: 10)
:param scale: the number of digits on right side of dot. (default: 0)
"""
def __init__(self, precision=10, scale=0):
self.precision = precision
self.scale = scale
self.hasPrecisionInfo = True # this is public API
def simpleString(self):
return "decimal(%d,%d)" % (self.precision, self.scale)
def jsonValue(self):
return "decimal(%d,%d)" % (self.precision, self.scale)
def __repr__(self):
return "DecimalType(%d,%d)" % (self.precision, self.scale)
class DoubleType(FractionalType):
"""Double data type, representing double precision floats.
"""
__metaclass__ = DataTypeSingleton
class FloatType(FractionalType):
"""Float data type, representing single precision floats.
"""
__metaclass__ = DataTypeSingleton
class ByteType(IntegralType):
"""Byte data type, i.e. a signed integer in a single byte.
"""
def simpleString(self):
return 'tinyint'
class IntegerType(IntegralType):
"""Int data type, i.e. a signed 32-bit integer.
"""
def simpleString(self):
return 'int'
class LongType(IntegralType):
"""Long data type, i.e. a signed 64-bit integer.
If the values are beyond the range of [-9223372036854775808, 9223372036854775807],
please use :class:`DecimalType`.
"""
def simpleString(self):
return 'bigint'
class ShortType(IntegralType):
"""Short data type, i.e. a signed 16-bit integer.
"""
def simpleString(self):
return 'smallint'
class ArrayType(DataType):
"""Array data type.
:param elementType: :class:`DataType` of each element in the array.
:param containsNull: boolean, whether the array can contain null (None) values.
"""
def __init__(self, elementType, containsNull=True):
"""
>>> ArrayType(StringType()) == ArrayType(StringType(), True)
True
>>> ArrayType(StringType(), False) == ArrayType(StringType())
False
"""
assert isinstance(elementType, DataType), "elementType should be DataType"
self.elementType = elementType
self.containsNull = containsNull
def simpleString(self):
return 'array<%s>' % self.elementType.simpleString()
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"])
def needConversion(self):
return self.elementType.needConversion()
def toInternal(self, obj):
if not self.needConversion():
return obj
return obj and [self.elementType.toInternal(v) for v in obj]
def fromInternal(self, obj):
if not self.needConversion():
return obj
return obj and [self.elementType.fromInternal(v) for v in obj]
class MapType(DataType):
"""Map data type.
:param keyType: :class:`DataType` of the keys in the map.
:param valueType: :class:`DataType` of the values in the map.
:param valueContainsNull: indicates whether values can contain null (None) values.
Keys in a map data type are not allowed to be null (None).
"""
def __init__(self, keyType, valueType, valueContainsNull=True):
"""
>>> (MapType(StringType(), IntegerType())
... == MapType(StringType(), IntegerType(), True))
True
>>> (MapType(StringType(), IntegerType(), False)
... == MapType(StringType(), FloatType()))
False
"""
assert isinstance(keyType, DataType), "keyType should be DataType"
assert isinstance(valueType, DataType), "valueType should be DataType"
self.keyType = keyType
self.valueType = valueType
self.valueContainsNull = valueContainsNull
def simpleString(self):
return 'map<%s,%s>' % (self.keyType.simpleString(), self.valueType.simpleString())
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"])
def needConversion(self):
return self.keyType.needConversion() or self.valueType.needConversion()
def toInternal(self, obj):
if not self.needConversion():
return obj
return obj and dict((self.keyType.toInternal(k), self.valueType.toInternal(v))
for k, v in obj.items())
def fromInternal(self, obj):
if not self.needConversion():
return obj
return obj and dict((self.keyType.fromInternal(k), self.valueType.fromInternal(v))
for k, v in obj.items())
class StructField(DataType):
"""A field in :class:`StructType`.
:param name: string, name of the field.
:param dataType: :class:`DataType` of the field.
:param nullable: boolean, whether the field can be null (None) or not.
:param metadata: a dict from string to simple type that can be toInternald to JSON automatically
"""
def __init__(self, name, dataType, nullable=True, metadata=None):
"""
>>> (StructField("f1", StringType(), True)
... == StructField("f1", StringType(), True))
True
>>> (StructField("f1", StringType(), True)
... == StructField("f2", StringType(), True))
False
"""
assert isinstance(dataType, DataType), "dataType should be DataType"
assert isinstance(name, basestring), "field name should be string"
if not isinstance(name, str):
name = name.encode('utf-8')
self.name = name
self.dataType = dataType
self.nullable = nullable
self.metadata = metadata or {}
def simpleString(self):
return '%s:%s' % (self.name, self.dataType.simpleString())
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"])
def needConversion(self):
return self.dataType.needConversion()
def toInternal(self, obj):
return self.dataType.toInternal(obj)
def fromInternal(self, obj):
return self.dataType.fromInternal(obj)
def typeName(self):
raise TypeError(
"StructField does not have typeName. "
"Use typeName on its type explicitly instead.")
class StructType(DataType):
"""Struct type, consisting of a list of :class:`StructField`.
This is the data type representing a :class:`Row`.
Iterating a :class:`StructType` will iterate its :class:`StructField`\\s.
A contained :class:`StructField` can be accessed by name or position.
.. note:: `names` attribute is deprecated in 2.3. Use `fieldNames` method instead
to get a list of field names.
>>> struct1 = StructType([StructField("f1", StringType(), True)])
>>> struct1["f1"]
StructField(f1,StringType,true)
>>> struct1[0]
StructField(f1,StringType,true)
"""
def __init__(self, fields=None):
"""
>>> 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
"""
if not fields:
self.fields = []
self.names = []
else:
self.fields = fields
self.names = [f.name for f in fields]
assert all(isinstance(f, StructField) for f in fields),\
"fields should be a list of StructField"
# Precalculated list of fields that need conversion with fromInternal/toInternal functions
self._needConversion = [f.needConversion() for f in self]
self._needSerializeAnyField = any(self._needConversion)
def add(self, field, data_type=None, nullable=True, metadata=None):
"""
Construct a StructType by adding new elements to it to define the schema. The method accepts
either:
a) A single parameter which is a StructField object.
b) Between 2 and 4 parameters as (name, data_type, nullable (optional),
metadata(optional). The data_type parameter may be either a String or a
DataType object.
>>> struct1 = StructType().add("f1", StringType(), True).add("f2", StringType(), True, None)
>>> struct2 = StructType([StructField("f1", StringType(), True), \\
... StructField("f2", StringType(), True, None)])
>>> struct1 == struct2
True
>>> struct1 = StructType().add(StructField("f1", StringType(), True))
>>> struct2 = StructType([StructField("f1", StringType(), True)])
>>> struct1 == struct2
True
>>> struct1 = StructType().add("f1", "string", True)
>>> struct2 = StructType([StructField("f1", StringType(), True)])
>>> struct1 == struct2
True
:param field: Either the name of the field or a StructField object
:param data_type: If present, the DataType of the StructField to create
:param nullable: Whether the field to add should be nullable (default True)
:param metadata: Any additional metadata (default None)
:return: a new updated StructType
"""
if isinstance(field, StructField):
self.fields.append(field)
self.names.append(field.name)
else:
if isinstance(field, str) and data_type is None:
raise ValueError("Must specify DataType if passing name of struct_field to create.")
if isinstance(data_type, str):
data_type_f = _parse_datatype_json_value(data_type)
else:
data_type_f = data_type
self.fields.append(StructField(field, data_type_f, nullable, metadata))
self.names.append(field)
# Precalculated list of fields that need conversion with fromInternal/toInternal functions
self._needConversion = [f.needConversion() for f in self]
self._needSerializeAnyField = any(self._needConversion)
return self
def __iter__(self):
"""Iterate the fields"""
return iter(self.fields)
def __len__(self):
"""Return the number of fields."""
return len(self.fields)
def __getitem__(self, key):
"""Access fields by name or slice."""
if isinstance(key, str):
for field in self:
if field.name == key:
return field
raise KeyError('No StructField named {0}'.format(key))
elif isinstance(key, int):
try:
return self.fields[key]
except IndexError:
raise IndexError('StructType index out of range')
elif isinstance(key, slice):
return StructType(self.fields[key])
else:
raise TypeError('StructType keys should be strings, integers or slices')
def simpleString(self):
return 'struct<%s>' % (','.join(f.simpleString() for f in self))
def __repr__(self):
return ("StructType(List(%s))" %
",".join(str(field) for field in self))
def jsonValue(self):
return {"type": self.typeName(),
"fields": [f.jsonValue() for f in self]}
@classmethod
def fromJson(cls, json):
return StructType([StructField.fromJson(f) for f in json["fields"]])
def fieldNames(self):
"""
Returns all field names in a list.
>>> struct = StructType([StructField("f1", StringType(), True)])
>>> struct.fieldNames()
['f1']
"""
return list(self.names)
def needConversion(self):
# We need convert Row()/namedtuple into tuple()
return True
def toInternal(self, obj):
if obj is None:
return
if self._needSerializeAnyField:
# Only calling toInternal function for fields that need conversion
if isinstance(obj, dict):
return tuple(f.toInternal(obj.get(n)) if c else obj.get(n)
for n, f, c in zip(self.names, self.fields, self._needConversion))
elif isinstance(obj, (tuple, list)):
return tuple(f.toInternal(v) if c else v
for f, v, c in zip(self.fields, obj, self._needConversion))
elif hasattr(obj, "__dict__"):
d = obj.__dict__
return tuple(f.toInternal(d.get(n)) if c else d.get(n)
for n, f, c in zip(self.names, self.fields, self._needConversion))
else:
raise ValueError("Unexpected tuple %r with StructType" % obj)
else:
if isinstance(obj, dict):
return tuple(obj.get(n) for n in self.names)
elif isinstance(obj, Row) and getattr(obj, "__from_dict__", False):
return tuple(obj[n] for n in self.names)
elif isinstance(obj, (list, tuple)):
return tuple(obj)
elif hasattr(obj, "__dict__"):
d = obj.__dict__
return tuple(d.get(n) for n in self.names)
else:
raise ValueError("Unexpected tuple %r with StructType" % obj)
def fromInternal(self, obj):
if obj is None:
return
if isinstance(obj, Row):
# it's already converted by pickler
return obj
if self._needSerializeAnyField:
# Only calling fromInternal function for fields that need conversion
values = [f.fromInternal(v) if c else v
for f, v, c in zip(self.fields, obj, self._needConversion)]
else:
values = obj
return _create_row(self.names, values)
class UserDefinedType(DataType):
"""User-defined type (UDT).
.. note:: WARN: Spark Internal Use Only
"""
@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 (could be '', if there
is no corresponding one).
"""
return ''
def needConversion(self):
return True
@classmethod
def _cachedSqlType(cls):
"""
Cache the sqlType() into class, because it's heavy used in `toInternal`.
"""
if not hasattr(cls, "_cached_sql_type"):
cls._cached_sql_type = cls.sqlType()
return cls._cached_sql_type
def toInternal(self, obj):
if obj is not None:
return self._cachedSqlType().toInternal(self.serialize(obj))
def fromInternal(self, obj):
v = self._cachedSqlType().fromInternal(obj)
if v is not None:
return self.deserialize(v)
def serialize(self, obj):
"""
Converts the a user-type object into a SQL datum.
"""
raise NotImplementedError("UDT must implement toInternal().")
def deserialize(self, datum):
"""
Converts a SQL datum into a user-type object.
"""
raise NotImplementedError("UDT must implement fromInternal().")
def simpleString(self):
return 'udt'
def json(self):
return json.dumps(self.jsonValue(), separators=(',', ':'), sort_keys=True)
def jsonValue(self):
if self.scalaUDT():
assert self.module() != '__main__', 'UDT in __main__ cannot work with ScalaUDT'
schema = {
"type": "udt",
"class": self.scalaUDT(),
"pyClass": "%s.%s" % (self.module(), type(self).__name__),
"sqlType": self.sqlType().jsonValue()
}
else:
ser = CloudPickleSerializer()
b = ser.dumps(type(self))
schema = {
"type": "udt",
"pyClass": "%s.%s" % (self.module(), type(self).__name__),
"serializedClass": base64.b64encode(b).decode('utf8'),
"sqlType": self.sqlType().jsonValue()
}
return schema
@classmethod
def fromJson(cls, json):
pyUDT = str(json["pyClass"]) # convert unicode to str
split = pyUDT.rfind(".")
pyModule = pyUDT[:split]
pyClass = pyUDT[split+1:]
m = __import__(pyModule, globals(), locals(), [pyClass])
if not hasattr(m, pyClass):
s = base64.b64decode(json['serializedClass'].encode('utf-8'))
UDT = CloudPickleSerializer().loads(s)
else:
UDT = getattr(m, pyClass)
return UDT()
def __eq__(self, other):
return type(self) == type(other)
_atomic_types = [StringType, BinaryType, BooleanType, DecimalType, FloatType, DoubleType,
ByteType, ShortType, IntegerType, LongType, DateType, TimestampType, NullType]
_all_atomic_types = dict((t.typeName(), t) for t in _atomic_types)
_all_complex_types = dict((v.typeName(), v)
for v in [ArrayType, MapType, StructType])
_FIXED_DECIMAL = re.compile("decimal\\(\\s*(\\d+)\\s*,\\s*(\\d+)\\s*\\)")
_BRACKETS = {'(': ')', '[': ']', '{': '}'}
def _ignore_brackets_split(s, separator):
"""
Splits the given string by given separator, but ignore separators inside brackets pairs, e.g.
given "a,b" and separator ",", it will return ["a", "b"], but given "a<b,c>, d", it will return
["a<b,c>", "d"].
"""
parts = []
buf = ""
level = 0
for c in s:
if c in _BRACKETS.keys():
level += 1
buf += c
elif c in _BRACKETS.values():
if level == 0:
raise ValueError("Brackets are not correctly paired: %s" % s)
level -= 1
buf += c
elif c == separator and level > 0:
buf += c
elif c == separator:
parts.append(buf)
buf = ""
else:
buf += c
if len(buf) == 0:
raise ValueError("The %s cannot be the last char: %s" % (separator, s))
parts.append(buf)
return parts
def _parse_datatype_string(s):
"""
Parses the given data type string to a :class:`DataType`. The data type string format equals
to :class:`DataType.simpleString`, except that top level struct type can omit
the ``struct<>`` and atomic types use ``typeName()`` as their format, e.g. use ``byte`` instead
of ``tinyint`` for :class:`ByteType`. We can also use ``int`` as a short name
for :class:`IntegerType`. Since Spark 2.3, this also supports a schema in a DDL-formatted
string and case-insensitive strings.
>>> _parse_datatype_string("int ")
IntegerType
>>> _parse_datatype_string("INT ")
IntegerType
>>> _parse_datatype_string("a: byte, b: decimal( 16 , 8 ) ")
StructType(List(StructField(a,ByteType,true),StructField(b,DecimalType(16,8),true)))
>>> _parse_datatype_string("a DOUBLE, b STRING")
StructType(List(StructField(a,DoubleType,true),StructField(b,StringType,true)))
>>> _parse_datatype_string("a: array< short>")
StructType(List(StructField(a,ArrayType(ShortType,true),true)))
>>> _parse_datatype_string(" map<string , string > ")
MapType(StringType,StringType,true)
>>> # Error cases
>>> _parse_datatype_string("blabla") # doctest: +IGNORE_EXCEPTION_DETAIL
Traceback (most recent call last):
...
ParseException:...
>>> _parse_datatype_string("a: int,") # doctest: +IGNORE_EXCEPTION_DETAIL
Traceback (most recent call last):
...
ParseException:...
>>> _parse_datatype_string("array<int") # doctest: +IGNORE_EXCEPTION_DETAIL
Traceback (most recent call last):
...
ParseException:...
>>> _parse_datatype_string("map<int, boolean>>") # doctest: +IGNORE_EXCEPTION_DETAIL
Traceback (most recent call last):
...
ParseException:...
"""
sc = SparkContext._active_spark_context
def from_ddl_schema(type_str):
return _parse_datatype_json_string(
sc._jvm.org.apache.spark.sql.types.StructType.fromDDL(type_str).json())
def from_ddl_datatype(type_str):
return _parse_datatype_json_string(
sc._jvm.org.apache.spark.sql.api.python.PythonSQLUtils.parseDataType(type_str).json())
try:
# DDL format, "fieldname datatype, fieldname datatype".
return from_ddl_schema(s)
except Exception as e:
try:
# For backwards compatibility, "integer", "struct<fieldname: datatype>" and etc.
return from_ddl_datatype(s)
except:
try:
# For backwards compatibility, "fieldname: datatype, fieldname: datatype" case.
return from_ddl_datatype("struct<%s>" % s.strip())
except:
raise e
def _parse_datatype_json_string(json_string):
"""Parses the given data type JSON string.
>>> import pickle
>>> def check_datatype(datatype):
... pickled = pickle.loads(pickle.dumps(datatype))
... assert datatype == pickled
... scala_datatype = spark._jsparkSession.parseDataType(datatype.json())
... python_datatype = _parse_datatype_json_string(scala_datatype.json())
... assert datatype == python_datatype
>>> for cls in _all_atomic_types.values():
... check_datatype(cls())
>>> # Simple ArrayType.
>>> simple_arraytype = ArrayType(StringType(), True)
>>> check_datatype(simple_arraytype)
>>> # Simple MapType.
>>> simple_maptype = MapType(StringType(), LongType())
>>> check_datatype(simple_maptype)
>>> # 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)
>>> # 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)
>>> # Complex ArrayType.
>>> complex_arraytype = ArrayType(complex_structtype, True)
>>> check_datatype(complex_arraytype)
>>> # Complex MapType.
>>> complex_maptype = MapType(complex_structtype,
... complex_arraytype, False)
>>> check_datatype(complex_maptype)
"""
return _parse_datatype_json_value(json.loads(json_string))
def _parse_datatype_json_value(json_value):
if not isinstance(json_value, dict):
if json_value in _all_atomic_types.keys():
return _all_atomic_types[json_value]()
elif json_value == '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: LongType,
float: DoubleType,
str: StringType,
bytearray: BinaryType,
decimal.Decimal: DecimalType,
datetime.date: DateType,
datetime.datetime: TimestampType,
datetime.time: TimestampType,
}
if sys.version < "3":
_type_mappings.update({
unicode: StringType,
long: LongType,
})
# Mapping Python array types to Spark SQL DataType
# We should be careful here. The size of these types in python depends on C
# implementation. We need to make sure that this conversion does not lose any
# precision. Also, JVM only support signed types, when converting unsigned types,
# keep in mind that it required 1 more bit when stored as singed types.
#
# Reference for C integer size, see:
# ISO/IEC 9899:201x specification, chapter 5.2.4.2.1 Sizes of integer types <limits.h>.
# Reference for python array typecode, see:
# https://docs.python.org/2/library/array.html
# https://docs.python.org/3.6/library/array.html
# Reference for JVM's supported integral types:
# http://docs.oracle.com/javase/specs/jvms/se8/html/jvms-2.html#jvms-2.3.1
_array_signed_int_typecode_ctype_mappings = {
'b': ctypes.c_byte,
'h': ctypes.c_short,
'i': ctypes.c_int,
'l': ctypes.c_long,
}
_array_unsigned_int_typecode_ctype_mappings = {
'B': ctypes.c_ubyte,
'H': ctypes.c_ushort,
'I': ctypes.c_uint,
'L': ctypes.c_ulong
}
def _int_size_to_type(size):
"""
Return the Catalyst datatype from the size of integers.
"""
if size <= 8:
return ByteType
if size <= 16:
return ShortType
if size <= 32:
return IntegerType
if size <= 64:
return LongType
# The list of all supported array typecodes is stored here
_array_type_mappings = {
# Warning: Actual properties for float and double in C is not specified in C.
# On almost every system supported by both python and JVM, they are IEEE 754
# single-precision binary floating-point format and IEEE 754 double-precision
# binary floating-point format. And we do assume the same thing here for now.
'f': FloatType,
'd': DoubleType
}
# compute array typecode mappings for signed integer types