12.1. pickle — Python object serialization — Python 3.3.7 documentation (original) (raw)

The pickle module implements binary protocols for serializing and de-serializing a Python object structure. “Pickling” is the process whereby a Python object hierarchy is converted into a byte stream, and_“unpickling”_ is the inverse operation, whereby a byte stream (from a binary file or bytes-like object) is converted back into an object hierarchy. Pickling (and unpickling) is alternatively known as “serialization”, “marshalling,” [1] or “flattening”; however, to avoid confusion, the terms used here are “pickling” and “unpickling”.

Warning

The pickle module is not intended to be secure against erroneous or maliciously constructed data. Never unpickle data received from an untrusted or unauthenticated source.

12.1.1. Relationship to other Python modules

12.1.1.1. Comparison with marshal

Python has a more primitive serialization module called marshal, but in general pickle should always be the preferred way to serialize Python objects. marshal exists primarily to support Python’s .pycfiles.

The pickle module differs from marshal in several significant ways:

12.1.1.2. Comparison with json

There are fundamental differences between the pickle protocols andJSON (JavaScript Object Notation):

See also

The json module: a standard library module allowing JSON serialization and deserialization.

12.1.2. Data stream format

The data format used by pickle is Python-specific. This has the advantage that there are no restrictions imposed by external standards such as JSON or XDR (which can’t represent pointer sharing); however it means that non-Python programs may not be able to reconstruct pickled Python objects.

By default, the pickle data format uses a relatively compact binary representation. If you need optimal size characteristics, you can efficientlycompress pickled data.

The module pickletools contains tools for analyzing data streams generated by pickle. pickletools source code has extensive comments about opcodes used by pickle protocols.

There are currently 4 different protocols which can be used for pickling.

Note

Serialization is a more primitive notion than persistence; althoughpickle reads and writes file objects, it does not handle the issue of naming persistent objects, nor the (even more complicated) issue of concurrent access to persistent objects. The pickle module can transform a complex object into a byte stream and it can transform the byte stream into an object with the same internal structure. Perhaps the most obvious thing to do with these byte streams is to write them onto a file, but it is also conceivable to send them across a network or store them in a database. The shelvemodule provides a simple interface to pickle and unpickle objects on DBM-style database files.

12.1.3. Module Interface

To serialize an object hierarchy, you simply call the dumps() function. Similarly, to de-serialize a data stream, you call the loads() function. However, if you want more control over serialization and de-serialization, you can create a Pickler or an Unpickler object, respectively.

The pickle module provides the following constants:

pickle.HIGHEST_PROTOCOL

The highest protocol version available. This value can be passed as a_protocol_ value.

pickle.DEFAULT_PROTOCOL

The default protocol used for pickling. May be less than HIGHEST_PROTOCOL. Currently the default protocol is 3, a new protocol designed for Python 3.0.

The pickle module provides the following functions to make the pickling process more convenient:

pickle.dump(obj, file, protocol=None, *, fix_imports=True)

Write a pickled representation of obj to the open file object file. This is equivalent to Pickler(file, protocol).dump(obj).

The optional protocol argument tells the pickler to use the given protocol; supported protocols are 0, 1, 2, 3. The default protocol is 3; a backward-incompatible protocol designed for Python 3.0.

Specifying a negative protocol version selects the highest protocol version supported. The higher the protocol used, the more recent the version of Python needed to read the pickle produced.

The file argument must have a write() method that accepts a single bytes argument. It can thus be an on-disk file opened for binary writing, aio.BytesIO instance, or any other custom object that meets this interface.

If fix_imports is true and protocol is less than 3, pickle will try to map the new Python 3.x names to the old module names used in Python 2.x, so that the pickle data stream is readable with Python 2.x.

pickle.dumps(obj, protocol=None, *, fix_imports=True)

Return the pickled representation of the object as a bytesobject, instead of writing it to a file.

The optional protocol argument tells the pickler to use the given protocol; supported protocols are 0, 1, 2, 3. The default protocol is 3; a backward-incompatible protocol designed for Python 3.0.

Specifying a negative protocol version selects the highest protocol version supported. The higher the protocol used, the more recent the version of Python needed to read the pickle produced.

If fix_imports is true and protocol is less than 3, pickle will try to map the new Python 3.x names to the old module names used in Python 2.x, so that the pickle data stream is readable with Python 2.x.

pickle.load(file, *, fix_imports=True, encoding="ASCII", errors="strict")

Read a pickled object representation from the open file object _file_and return the reconstituted object hierarchy specified therein. This is equivalent to Unpickler(file).load().

The protocol version of the pickle is detected automatically, so no protocol argument is needed. Bytes past the pickled object’s representation are ignored.

The argument file must have two methods, a read() method that takes an integer argument, and a readline() method that requires no arguments. Both methods should return bytes. Thus file can be an on-disk file opened for binary reading, a io.BytesIO object, or any other custom object that meets this interface.

Optional keyword arguments are fix_imports, encoding and errors, which are used to control compatibility support for pickle stream generated by Python 2.x. If fix_imports is true, pickle will try to map the old Python 2.x names to the new names used in Python 3.x. The encoding and_errors_ tell pickle how to decode 8-bit string instances pickled by Python 2.x; these default to ‘ASCII’ and ‘strict’, respectively.

pickle.loads(bytes_object, *, fix_imports=True, encoding="ASCII", errors="strict")

Read a pickled object hierarchy from a bytes object and return the reconstituted object hierarchy specified therein

The protocol version of the pickle is detected automatically, so no protocol argument is needed. Bytes past the pickled object’s representation are ignored.

Optional keyword arguments are fix_imports, encoding and errors, which are used to control compatibility support for pickle stream generated by Python 2.x. If fix_imports is true, pickle will try to map the old Python 2.x names to the new names used in Python 3.x. The encoding and_errors_ tell pickle how to decode 8-bit string instances pickled by Python 2.x; these default to ‘ASCII’ and ‘strict’, respectively.

The pickle module defines three exceptions:

exception pickle.PickleError

Common base class for the other pickling exceptions. It inheritsException.

exception pickle.PicklingError

Error raised when an unpicklable object is encountered by Pickler. It inherits PickleError.

Refer to What can be pickled and unpickled? to learn what kinds of objects can be pickled.

exception pickle.UnpicklingError

Error raised when there is a problem unpickling an object, such as a data corruption or a security violation. It inherits PickleError.

Note that other exceptions may also be raised during unpickling, including (but not necessarily limited to) AttributeError, EOFError, ImportError, and IndexError.

The pickle module exports two classes, Pickler andUnpickler:

class pickle.Pickler(file, protocol=None, *, fix_imports=True)

This takes a binary file for writing a pickle data stream.

The optional protocol argument tells the pickler to use the given protocol; supported protocols are 0, 1, 2, 3. The default protocol is 3; a backward-incompatible protocol designed for Python 3.0.

Specifying a negative protocol version selects the highest protocol version supported. The higher the protocol used, the more recent the version of Python needed to read the pickle produced.

The file argument must have a write() method that accepts a single bytes argument. It can thus be an on-disk file opened for binary writing, aio.BytesIO instance, or any other custom object that meets this interface.

If fix_imports is true and protocol is less than 3, pickle will try to map the new Python 3.x names to the old module names used in Python 2.x, so that the pickle data stream is readable with Python 2.x.

dump(obj)

Write a pickled representation of obj to the open file object given in the constructor.

persistent_id(obj)

Do nothing by default. This exists so a subclass can override it.

If persistent_id() returns None, obj is pickled as usual. Any other value causes Pickler to emit the returned value as a persistent ID for obj. The meaning of this persistent ID should be defined by Unpickler.persistent_load(). Note that the value returned by persistent_id() cannot itself have a persistent ID.

See Persistence of External Objects for details and examples of uses.

dispatch_table

A pickler object’s dispatch table is a registry of reduction functions of the kind which can be declared usingcopyreg.pickle(). It is a mapping whose keys are classes and whose values are reduction functions. A reduction function takes a single argument of the associated class and should conform to the same interface as a __reduce__()method.

By default, a pickler object will not have adispatch_table attribute, and it will instead use the global dispatch table managed by the copyreg module. However, to customize the pickling for a specific pickler object one can set the dispatch_table attribute to a dict-like object. Alternatively, if a subclass of Pickler has adispatch_table attribute then this will be used as the default dispatch table for instances of that class.

See Dispatch Tables for usage examples.

New in version 3.3.

fast

Deprecated. Enable fast mode if set to a true value. The fast mode disables the usage of memo, therefore speeding the pickling process by not generating superfluous PUT opcodes. It should not be used with self-referential objects, doing otherwise will cause Pickler to recurse infinitely.

Use pickletools.optimize() if you need more compact pickles.

class pickle.Unpickler(file, *, fix_imports=True, encoding="ASCII", errors="strict")

This takes a binary file for reading a pickle data stream.

The protocol version of the pickle is detected automatically, so no protocol argument is needed.

The argument file must have two methods, a read() method that takes an integer argument, and a readline() method that requires no arguments. Both methods should return bytes. Thus file can be an on-disk file object opened for binary reading, a io.BytesIO object, or any other custom object that meets this interface.

Optional keyword arguments are fix_imports, encoding and errors, which are used to control compatibility support for pickle stream generated by Python 2.x. If fix_imports is true, pickle will try to map the old Python 2.x names to the new names used in Python 3.x. The encoding and_errors_ tell pickle how to decode 8-bit string instances pickled by Python 2.x; these default to ‘ASCII’ and ‘strict’, respectively.

load()

Read a pickled object representation from the open file object given in the constructor, and return the reconstituted object hierarchy specified therein. Bytes past the pickled object’s representation are ignored.

persistent_load(pid)

Raise an UnpicklingError by default.

If defined, persistent_load() should return the object specified by the persistent ID pid. If an invalid persistent ID is encountered, anUnpicklingError should be raised.

See Persistence of External Objects for details and examples of uses.

find_class(module, name)

Import module if necessary and return the object called name from it, where the module and name arguments are str objects. Note, unlike its name suggests, find_class() is also used for finding functions.

Subclasses may override this to gain control over what type of objects and how they can be loaded, potentially reducing security risks. Refer toRestricting Globals for details.

12.1.4. What can be pickled and unpickled?

The following types can be pickled:

Attempts to pickle unpicklable objects will raise the PicklingErrorexception; when this happens, an unspecified number of bytes may have already been written to the underlying file. Trying to pickle a highly recursive data structure may exceed the maximum recursion depth, a RuntimeError will be raised in this case. You can carefully raise this limit withsys.setrecursionlimit().

Note that functions (built-in and user-defined) are pickled by “fully qualified” name reference, not by value. This means that only the function name is pickled, along with the name of the module the function is defined in. Neither the function’s code, nor any of its function attributes are pickled. Thus the defining module must be importable in the unpickling environment, and the module must contain the named object, otherwise an exception will be raised. [2]

Similarly, classes are pickled by named reference, so the same restrictions in the unpickling environment apply. Note that none of the class’s code or data is pickled, so in the following example the class attribute attr is not restored in the unpickling environment:

class Foo: attr = 'A class attribute'

picklestring = pickle.dumps(Foo)

These restrictions are why picklable functions and classes must be defined in the top level of a module.

Similarly, when class instances are pickled, their class’s code and data are not pickled along with them. Only the instance data are pickled. This is done on purpose, so you can fix bugs in a class or add methods to the class and still load objects that were created with an earlier version of the class. If you plan to have long-lived objects that will see many versions of a class, it may be worthwhile to put a version number in the objects so that suitable conversions can be made by the class’s __setstate__() method.

12.1.5. Pickling Class Instances

In this section, we describe the general mechanisms available to you to define, customize, and control how class instances are pickled and unpickled.

In most cases, no additional code is needed to make instances picklable. By default, pickle will retrieve the class and the attributes of an instance via introspection. When a class instance is unpickled, its __init__() method is usually not invoked. The default behaviour first creates an uninitialized instance and then restores the saved attributes. The following code shows an implementation of this behaviour:

def save(obj): return (obj.class, obj.dict)

def load(cls, attributes): obj = cls.new(cls) obj.dict.update(attributes) return obj

Classes can alter the default behaviour by providing one or several special methods:

object.__getnewargs__()

In protocol 2 and newer, classes that implements the __getnewargs__()method can dictate the values passed to the __new__() method upon unpickling. This is often needed for classes whose __new__() method requires arguments.

object.__getstate__()

Classes can further influence how their instances are pickled; if the class defines the method __getstate__(), it is called and the returned object is pickled as the contents for the instance, instead of the contents of the instance’s dictionary. If the __getstate__() method is absent, the instance’s __dict__ is pickled as usual.

object.__setstate__(state)

Upon unpickling, if the class defines __setstate__(), it is called with the unpickled state. In that case, there is no requirement for the state object to be a dictionary. Otherwise, the pickled state must be a dictionary and its items are assigned to the new instance’s dictionary.

Note

If __getstate__() returns a false value, the __setstate__()method will not be called upon unpickling.

Refer to the section Handling Stateful Objects for more information about how to use the methods __getstate__() and __setstate__().

As we shall see, pickle does not use directly the methods described above. In fact, these methods are part of the copy protocol which implements the__reduce__() special method. The copy protocol provides a unified interface for retrieving the data necessary for pickling and copying objects. [3]

Although powerful, implementing __reduce__() directly in your classes is error prone. For this reason, class designers should use the high-level interface (i.e., __getnewargs__(), __getstate__() and__setstate__()) whenever possible. We will show, however, cases where using __reduce__() is the only option or leads to more efficient pickling or both.

object.__reduce__()

The interface is currently defined as follows. The __reduce__() method takes no argument and shall return either a string or preferably a tuple (the returned object is often referred to as the “reduce value”).

If a string is returned, the string should be interpreted as the name of a global variable. It should be the object’s local name relative to its module; the pickle module searches the module namespace to determine the object’s module. This behaviour is typically useful for singletons.

When a tuple is returned, it must be between two and five items long. Optional items can either be omitted, or None can be provided as their value. The semantics of each item are in order:

object.__reduce_ex__(protocol)

Alternatively, a __reduce_ex__() method may be defined. The only difference is this method should take a single integer argument, the protocol version. When defined, pickle will prefer it over the __reduce__()method. In addition, __reduce__() automatically becomes a synonym for the extended version. The main use for this method is to provide backwards-compatible reduce values for older Python releases.

12.1.5.1. Persistence of External Objects

For the benefit of object persistence, the pickle module supports the notion of a reference to an object outside the pickled data stream. Such objects are referenced by a persistent ID, which should be either a string of alphanumeric characters (for protocol 0) [4] or just an arbitrary object (for any newer protocol).

The resolution of such persistent IDs is not defined by the picklemodule; it will delegate this resolution to the user defined methods on the pickler and unpickler, persistent_id() andpersistent_load() respectively.

To pickle objects that have an external persistent id, the pickler must have a custom persistent_id() method that takes an object as an argument and returns either None or the persistent id for that object. When None is returned, the pickler simply pickles the object as normal. When a persistent ID string is returned, the pickler will pickle that object, along with a marker so that the unpickler will recognize it as a persistent ID.

To unpickle external objects, the unpickler must have a custompersistent_load() method that takes a persistent ID object and returns the referenced object.

Here is a comprehensive example presenting how persistent ID can be used to pickle external objects by reference.

Simple example presenting how persistent ID can be used to pickle

external objects by reference.

import pickle import sqlite3 from collections import namedtuple

Simple class representing a record in our database.

MemoRecord = namedtuple("MemoRecord", "key, task")

class DBPickler(pickle.Pickler):

def persistent_id(self, obj):
    # Instead of pickling MemoRecord as a regular class instance, we emit a
    # persistent ID.
    if isinstance(obj, MemoRecord):
        # Here, our persistent ID is simply a tuple, containing a tag and a
        # key, which refers to a specific record in the database.
        return ("MemoRecord", obj.key)
    else:
        # If obj does not have a persistent ID, return None. This means obj
        # needs to be pickled as usual.
        return None

class DBUnpickler(pickle.Unpickler):

def __init__(self, file, connection):
    super().__init__(file)
    self.connection = connection

def persistent_load(self, pid):
    # This method is invoked whenever a persistent ID is encountered.
    # Here, pid is the tuple returned by DBPickler.
    cursor = self.connection.cursor()
    type_tag, key_id = pid
    if type_tag == "MemoRecord":
        # Fetch the referenced record from the database and return it.
        cursor.execute("SELECT * FROM memos WHERE key=?", (str(key_id),))
        key, task = cursor.fetchone()
        return MemoRecord(key, task)
    else:
        # Always raises an error if you cannot return the correct object.
        # Otherwise, the unpickler will think None is the object referenced
        # by the persistent ID.
        raise pickle.UnpicklingError("unsupported persistent object")

def main(): import io import pprint

# Initialize and populate our database.
conn = sqlite3.connect(":memory:")
cursor = conn.cursor()
cursor.execute("CREATE TABLE memos(key INTEGER PRIMARY KEY, task TEXT)")
tasks = (
    'give food to fish',
    'prepare group meeting',
    'fight with a zebra',
    )
for task in tasks:
    cursor.execute("INSERT INTO memos VALUES(NULL, ?)", (task,))

# Fetch the records to be pickled.
cursor.execute("SELECT * FROM memos")
memos = [MemoRecord(key, task) for key, task in cursor]
# Save the records using our custom DBPickler.
file = io.BytesIO()
DBPickler(file).dump(memos)

print("Pickled records:")
pprint.pprint(memos)

# Update a record, just for good measure.
cursor.execute("UPDATE memos SET task='learn italian' WHERE key=1")

# Load the records from the pickle data stream.
file.seek(0)
memos = DBUnpickler(file, conn).load()

print("Unpickled records:")
pprint.pprint(memos)

if name == 'main': main()

12.1.5.2. Dispatch Tables

If one wants to customize pickling of some classes without disturbing any other code which depends on pickling, then one can create a pickler with a private dispatch table.

The global dispatch table managed by the copyreg module is available as copyreg.dispatch_table. Therefore, one may choose to use a modified copy of copyreg.dispatch_table as a private dispatch table.

For example

f = io.BytesIO() p = pickle.Pickler(f) p.dispatch_table = copyreg.dispatch_table.copy() p.dispatch_table[SomeClass] = reduce_SomeClass

creates an instance of pickle.Pickler with a private dispatch table which handles the SomeClass class specially. Alternatively, the code

class MyPickler(pickle.Pickler): dispatch_table = copyreg.dispatch_table.copy() dispatch_table[SomeClass] = reduce_SomeClass f = io.BytesIO() p = MyPickler(f)

does the same, but all instances of MyPickler will by default share the same dispatch table. The equivalent code using thecopyreg module is

copyreg.pickle(SomeClass, reduce_SomeClass) f = io.BytesIO() p = pickle.Pickler(f)

12.1.5.3. Handling Stateful Objects

Here’s an example that shows how to modify pickling behavior for a class. The TextReader class opens a text file, and returns the line number and line contents each time its readline() method is called. If aTextReader instance is pickled, all attributes except the file object member are saved. When the instance is unpickled, the file is reopened, and reading resumes from the last location. The __setstate__() and__getstate__() methods are used to implement this behavior.

class TextReader: """Print and number lines in a text file."""

def __init__(self, filename):
    self.filename = filename
    self.file = open(filename)
    self.lineno = 0

def readline(self):
    self.lineno += 1
    line = self.file.readline()
    if not line:
        return None
    if line.endswith('\n'):
        line = line[:-1]
    return "%i: %s" % (self.lineno, line)

def __getstate__(self):
    # Copy the object's state from self.__dict__ which contains
    # all our instance attributes. Always use the dict.copy()
    # method to avoid modifying the original state.
    state = self.__dict__.copy()
    # Remove the unpicklable entries.
    del state['file']
    return state

def __setstate__(self, state):
    # Restore instance attributes (i.e., filename and lineno).
    self.__dict__.update(state)
    # Restore the previously opened file's state. To do so, we need to
    # reopen it and read from it until the line count is restored.
    file = open(self.filename)
    for _ in range(self.lineno):
        file.readline()
    # Finally, save the file.
    self.file = file

A sample usage might be something like this:

reader = TextReader("hello.txt") reader.readline() '1: Hello world!' reader.readline() '2: I am line number two.' new_reader = pickle.loads(pickle.dumps(reader)) new_reader.readline() '3: Goodbye!'

12.1.6. Restricting Globals

By default, unpickling will import any class or function that it finds in the pickle data. For many applications, this behaviour is unacceptable as it permits the unpickler to import and invoke arbitrary code. Just consider what this hand-crafted pickle data stream does when loaded:

import pickle pickle.loads(b"cos\nsystem\n(S'echo hello world'\ntR.") hello world 0

In this example, the unpickler imports the os.system() function and then apply the string argument “echo hello world”. Although this example is inoffensive, it is not difficult to imagine one that could damage your system.

For this reason, you may want to control what gets unpickled by customizingUnpickler.find_class(). Unlike its name suggests,Unpickler.find_class() is called whenever a global (i.e., a class or a function) is requested. Thus it is possible to either completely forbid globals or restrict them to a safe subset.

Here is an example of an unpickler allowing only few safe classes from thebuiltins module to be loaded:

import builtins import io import pickle

safe_builtins = { 'range', 'complex', 'set', 'frozenset', 'slice', }

class RestrictedUnpickler(pickle.Unpickler):

def find_class(self, module, name):
    # Only allow safe classes from builtins.
    if module == "builtins" and name in safe_builtins:
        return getattr(builtins, name)
    # Forbid everything else.
    raise pickle.UnpicklingError("global '%s.%s' is forbidden" %
                                 (module, name))

def restricted_loads(s): """Helper function analogous to pickle.loads().""" return RestrictedUnpickler(io.BytesIO(s)).load()

A sample usage of our unpickler working has intended:

restricted_loads(pickle.dumps([1, 2, range(15)])) [1, 2, range(0, 15)] restricted_loads(b"cos\nsystem\n(S'echo hello world'\ntR.") Traceback (most recent call last): ... pickle.UnpicklingError: global 'os.system' is forbidden restricted_loads(b'cbuiltins\neval\n' ... b'(S'getattr(import("os"), "system")' ... b'("echo hello world")'\ntR.') Traceback (most recent call last): ... pickle.UnpicklingError: global 'builtins.eval' is forbidden

As our examples shows, you have to be careful with what you allow to be unpickled. Therefore if security is a concern, you may want to consider alternatives such as the marshalling API in xmlrpc.client or third-party solutions.

12.1.7. Performance

Recent versions of the pickle protocol (from protocol 2 and upwards) feature efficient binary encodings for several common features and built-in types. Also, the pickle module has a transparent optimizer written in C.

12.1.8. Examples

For the simplest code, use the dump() and load() functions.

import pickle

An arbitrary collection of objects supported by pickle.

data = { 'a': [1, 2.0, 3, 4+6j], 'b': ("character string", b"byte string"), 'c': set([None, True, False]) }

with open('data.pickle', 'wb') as f: # Pickle the 'data' dictionary using the highest protocol available. pickle.dump(data, f, pickle.HIGHEST_PROTOCOL)

The following example reads the resulting pickled data.

import pickle

with open('data.pickle', 'rb') as f: # The protocol version used is detected automatically, so we do not # have to specify it. data = pickle.load(f)

See also

Module copyreg

Pickle interface constructor registration for extension types.

Module pickletools

Tools for working with and analyzing pickled data.

Module shelve

Indexed databases of objects; uses pickle.

Module copy

Shallow and deep object copying.

Module marshal

High-performance serialization of built-in types.

Footnotes

[1] Don’t confuse this with the marshal module
[2] The exception raised will likely be an ImportError or anAttributeError but it could be something else.
[3] The copy module uses this protocol for shallow and deep copying operations.
[4] The limitation on alphanumeric characters is due to the fact the persistent IDs, in protocol 0, are delimited by the newline character. Therefore if any kind of newline characters occurs in persistent IDs, the resulting pickle will become unreadable.