summaryrefslogtreecommitdiff
path: root/Doc/library/pickle.rst
blob: 0d64191d79dd2e1117ba1bd7dcc8cd985a218c07 (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
859
860
861
862
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
:mod:`pickle` --- Python object serialization
=============================================

.. module:: pickle
   :synopsis: Convert Python objects to streams of bytes and back.

.. sectionauthor:: Jim Kerr <jbkerr@sr.hp.com>.
.. sectionauthor:: Barry Warsaw <barry@python.org>

**Source code:** :source:`Lib/pickle.py`

.. index::
   single: persistence
   pair: persistent; objects
   pair: serializing; objects
   pair: marshalling; objects
   pair: flattening; objects
   pair: pickling; objects

--------------

The :mod:`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 :term:`binary file` or :term:`bytes-like object`) is converted
back into an object hierarchy.  Pickling (and unpickling) is alternatively
known as "serialization", "marshalling," [#]_ or "flattening"; however, to
avoid confusion, the terms used here are "pickling" and "unpickling".

.. warning::

   The :mod:`pickle` module is not secure against erroneous or maliciously
   constructed data.  Never unpickle data received from an untrusted or
   unauthenticated source.


Relationship to other Python modules
------------------------------------

Comparison with ``marshal``
^^^^^^^^^^^^^^^^^^^^^^^^^^^

Python has a more primitive serialization module called :mod:`marshal`, but in
general :mod:`pickle` should always be the preferred way to serialize Python
objects.  :mod:`marshal` exists primarily to support Python's :file:`.pyc`
files.

The :mod:`pickle` module differs from :mod:`marshal` in several significant ways:

* The :mod:`pickle` module keeps track of the objects it has already serialized,
  so that later references to the same object won't be serialized again.
  :mod:`marshal` doesn't do this.

  This has implications both for recursive objects and object sharing.  Recursive
  objects are objects that contain references to themselves.  These are not
  handled by marshal, and in fact, attempting to marshal recursive objects will
  crash your Python interpreter.  Object sharing happens when there are multiple
  references to the same object in different places in the object hierarchy being
  serialized.  :mod:`pickle` stores such objects only once, and ensures that all
  other references point to the master copy.  Shared objects remain shared, which
  can be very important for mutable objects.

* :mod:`marshal` cannot be used to serialize user-defined classes and their
  instances.  :mod:`pickle` can save and restore class instances transparently,
  however the class definition must be importable and live in the same module as
  when the object was stored.

* The :mod:`marshal` serialization format is not guaranteed to be portable
  across Python versions.  Because its primary job in life is to support
  :file:`.pyc` files, the Python implementers reserve the right to change the
  serialization format in non-backwards compatible ways should the need arise.
  The :mod:`pickle` serialization format is guaranteed to be backwards compatible
  across Python releases.

Comparison with ``json``
^^^^^^^^^^^^^^^^^^^^^^^^

There are fundamental differences between the pickle protocols and
`JSON (JavaScript Object Notation) <http://json.org>`_:

* JSON is a text serialization format (it outputs unicode text, although
  most of the time it is then encoded to ``utf-8``), while pickle is
  a binary serialization format;

* JSON is human-readable, while pickle is not;

* JSON is interoperable and widely used outside of the Python ecosystem,
  while pickle is Python-specific;

* JSON, by default, can only represent a subset of the Python built-in
  types, and no custom classes; pickle can represent an extremely large
  number of Python types (many of them automatically, by clever usage
  of Python's introspection facilities; complex cases can be tackled by
  implementing :ref:`specific object APIs <pickle-inst>`).

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


.. _pickle-protocols:

Data stream format
------------------

.. index::
   single: External Data Representation

The data format used by :mod:`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 :mod:`pickle` data format uses a relatively compact binary
representation.  If you need optimal size characteristics, you can efficiently
:doc:`compress <archiving>` pickled data.

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

There are currently 5 different protocols which can be used for pickling.
The higher the protocol used, the more recent the version of Python needed
to read the pickle produced.

* Protocol version 0 is the original "human-readable" protocol and is
  backwards compatible with earlier versions of Python.

* Protocol version 1 is an old binary format which is also compatible with
  earlier versions of Python.

* Protocol version 2 was introduced in Python 2.3.  It provides much more
  efficient pickling of :term:`new-style class`\es.  Refer to :pep:`307` for
  information about improvements brought by protocol 2.

* Protocol version 3 was added in Python 3.0.  It has explicit support for
  :class:`bytes` objects and cannot be unpickled by Python 2.x.  This is
  the default protocol, and the recommended protocol when compatibility with
  other Python 3 versions is required.

* Protocol version 4 was added in Python 3.4.  It adds support for very large
  objects, pickling more kinds of objects, and some data format
  optimizations.  Refer to :pep:`3154` for information about improvements
  brought by protocol 4.

.. note::
   Serialization is a more primitive notion than persistence; although
   :mod:`pickle` 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 :mod:`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 :mod:`shelve`
   module provides a simple interface to pickle and unpickle objects on
   DBM-style database files.


Module Interface
----------------

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

The :mod:`pickle` module provides the following constants:


.. data:: HIGHEST_PROTOCOL

   An integer, the highest :ref:`protocol version <pickle-protocols>`
   available.  This value can be passed as a *protocol* value to functions
   :func:`dump` and :func:`dumps` as well as the :class:`Pickler`
   constructor.

.. data:: DEFAULT_PROTOCOL

   An integer, the default :ref:`protocol version <pickle-protocols>` used
   for pickling.  May be less than :data:`HIGHEST_PROTOCOL`.  Currently the
   default protocol is 3, a new protocol designed for Python 3.


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

.. function:: dump(obj, file, protocol=None, \*, fix_imports=True)

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

   The optional *protocol* argument, an integer, tells the pickler to use
   the given protocol; supported protocols are 0 to :data:`HIGHEST_PROTOCOL`.
   If not specified, the default is :data:`DEFAULT_PROTOCOL`.  If a negative
   number is specified, :data:`HIGHEST_PROTOCOL` is selected.

   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, an
   :class:`io.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 names to the old module names used in Python 2, so
   that the pickle data stream is readable with Python 2.

.. function:: dumps(obj, protocol=None, \*, fix_imports=True)

   Return the pickled representation of the object as a :class:`bytes` object,
   instead of writing it to a file.

   Arguments *protocol* and *fix_imports* have the same meaning as in
   :func:`dump`.

.. function:: load(file, \*, fix_imports=True, encoding="ASCII", errors="strict")

   Read a pickled object representation from the open :term:`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, an :class:`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.  If *fix_imports* is true, pickle will try to map the old
   Python 2 names to the new names used in Python 3.  The *encoding* and
   *errors* tell pickle how to decode 8-bit string instances pickled by Python
   2; these default to 'ASCII' and 'strict', respectively.  The *encoding* can
   be 'bytes' to read these 8-bit string instances as bytes objects.

.. function:: loads(bytes_object, \*, fix_imports=True, encoding="ASCII", errors="strict")

   Read a pickled object hierarchy from a :class:`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.  If *fix_imports* is true, pickle will try to map the old
   Python 2 names to the new names used in Python 3.  The *encoding* and
   *errors* tell pickle how to decode 8-bit string instances pickled by Python
   2; these default to 'ASCII' and 'strict', respectively.  The *encoding* can
   be 'bytes' to read these 8-bit string instances as bytes objects.


The :mod:`pickle` module defines three exceptions:

.. exception:: PickleError

   Common base class for the other pickling exceptions.  It inherits
   :exc:`Exception`.

.. exception:: PicklingError

   Error raised when an unpicklable object is encountered by :class:`Pickler`.
   It inherits :exc:`PickleError`.

   Refer to :ref:`pickle-picklable` to learn what kinds of objects can be
   pickled.

.. exception:: UnpicklingError

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

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


The :mod:`pickle` module exports two classes, :class:`Pickler` and
:class:`Unpickler`:

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

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

   The optional *protocol* argument, an integer, tells the pickler to use
   the given protocol; supported protocols are 0 to :data:`HIGHEST_PROTOCOL`.
   If not specified, the default is :data:`DEFAULT_PROTOCOL`.  If a negative
   number is specified, :data:`HIGHEST_PROTOCOL` is selected.

   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, an
   :class:`io.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 names to the old module names used in Python 2, so
   that the pickle data stream is readable with Python 2.

   .. method:: dump(obj)

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

   .. method:: persistent_id(obj)

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

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

      See :ref:`pickle-persistent` for details and examples of uses.

   .. attribute:: dispatch_table

      A pickler object's dispatch table is a registry of *reduction
      functions* of the kind which can be declared using
      :func:`copyreg.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 :meth:`__reduce__`
      method.

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

      See :ref:`pickle-dispatch` for usage examples.

      .. versionadded:: 3.3

   .. attribute:: 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 :class:`Pickler` to
      recurse infinitely.

      Use :func:`pickletools.optimize` if you need more compact pickles.


.. class:: 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, an :class:`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.  If *fix_imports* is true, pickle will try to map the old
   Python 2 names to the new names used in Python 3.  The *encoding* and
   *errors* tell pickle how to decode 8-bit string instances pickled by Python
   2; these default to 'ASCII' and 'strict', respectively.  The *encoding* can
   be 'bytes' to read these ß8-bit string instances as bytes objects.

   .. method:: 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.

   .. method:: persistent_load(pid)

      Raise an :exc:`UnpicklingError` by default.

      If defined, :meth:`persistent_load` should return the object specified by
      the persistent ID *pid*.  If an invalid persistent ID is encountered, an
      :exc:`UnpicklingError` should be raised.

      See :ref:`pickle-persistent` for details and examples of uses.

   .. method:: find_class(module, name)

      Import *module* if necessary and return the object called *name* from it,
      where the *module* and *name* arguments are :class:`str` objects.  Note,
      unlike its name suggests, :meth:`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 to
      :ref:`pickle-restrict` for details.


.. _pickle-picklable:

What can be pickled and unpickled?
----------------------------------

The following types can be pickled:

* ``None``, ``True``, and ``False``

* integers, floating point numbers, complex numbers

* strings, bytes, bytearrays

* tuples, lists, sets, and dictionaries containing only picklable objects

* functions defined at the top level of a module (using :keyword:`def`, not
  :keyword:`lambda`)

* built-in functions defined at the top level of a module

* classes that are defined at the top level of a module

* instances of such classes whose :attr:`~object.__dict__` or the result of
  calling :meth:`__getstate__` is picklable  (see section :ref:`pickle-inst` for
  details).

Attempts to pickle unpicklable objects will raise the :exc:`PicklingError`
exception; 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 :exc:`RecursionError` will be
raised in this case.  You can carefully raise this limit with
:func:`sys.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. [#]_

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 :meth:`__setstate__` method.


.. _pickle-inst:

Pickling Class Instances
------------------------

.. currentmodule:: None

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 :meth:`__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:

.. method:: object.__getnewargs_ex__()

   In protocols 4 and newer, classes that implements the
   :meth:`__getnewargs_ex__` method can dictate the values passed to the
   :meth:`__new__` method upon unpickling.  The method must return a pair
   ``(args, kwargs)`` where *args* is a tuple of positional arguments
   and *kwargs* a dictionary of named arguments for constructing the
   object.  Those will be passed to the :meth:`__new__` method upon
   unpickling.

   You should implement this method if the :meth:`__new__` method of your
   class requires keyword-only arguments.  Otherwise, it is recommended for
   compatibility to implement :meth:`__getnewargs__`.


.. method:: object.__getnewargs__()

   This method serve a similar purpose as :meth:`__getnewargs_ex__` but
   for protocols 2 and newer.  It must return a tuple of arguments ``args``
   which will be passed to the :meth:`__new__` method upon unpickling.

   In protocols 4 and newer, :meth:`__getnewargs__` will not be called if
   :meth:`__getnewargs_ex__` is defined.


.. method:: object.__getstate__()

   Classes can further influence how their instances are pickled; if the class
   defines the method :meth:`__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 :meth:`__getstate__` method is absent, the
   instance's :attr:`~object.__dict__` is pickled as usual.


.. method:: object.__setstate__(state)

   Upon unpickling, if the class defines :meth:`__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 :meth:`__getstate__` returns a false value, the :meth:`__setstate__`
      method will not be called upon unpickling.


Refer to the section :ref:`pickle-state` for more information about how to use
the methods :meth:`__getstate__` and :meth:`__setstate__`.

.. note::

   At unpickling time, some methods like :meth:`__getattr__`,
   :meth:`__getattribute__`, or :meth:`__setattr__` may be called upon the
   instance.  In case those methods rely on some internal invariant being
   true, the type should implement :meth:`__getnewargs__` or
   :meth:`__getnewargs_ex__` to establish such an invariant; otherwise,
   neither :meth:`__new__` nor :meth:`__init__` will be called.

.. index:: pair: copy; protocol

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
:meth:`__reduce__` special method.  The copy protocol provides a unified
interface for retrieving the data necessary for pickling and copying
objects. [#]_

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

.. method:: object.__reduce__()

   The interface is currently defined as follows.  The :meth:`__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:

   .. XXX Mention __newobj__ special-case?

   * A callable object that will be called to create the initial version of the
     object.

   * A tuple of arguments for the callable object.  An empty tuple must be given
     if the callable does not accept any argument.

   * Optionally, the object's state, which will be passed to the object's
     :meth:`__setstate__` method as previously described.  If the object has no
     such method then, the value must be a dictionary and it will be added to
     the object's :attr:`~object.__dict__` attribute.

   * Optionally, an iterator (and not a sequence) yielding successive items.
     These items will be appended to the object either using
     ``obj.append(item)`` or, in batch, using ``obj.extend(list_of_items)``.
     This is primarily used for list subclasses, but may be used by other
     classes as long as they have :meth:`append` and :meth:`extend` methods with
     the appropriate signature.  (Whether :meth:`append` or :meth:`extend` is
     used depends on which pickle protocol version is used as well as the number
     of items to append, so both must be supported.)

   * Optionally, an iterator (not a sequence) yielding successive key-value
     pairs.  These items will be stored to the object using ``obj[key] =
     value``.  This is primarily used for dictionary subclasses, but may be used
     by other classes as long as they implement :meth:`__setitem__`.


.. method:: object.__reduce_ex__(protocol)

   Alternatively, a :meth:`__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 :meth:`__reduce__`
   method.  In addition, :meth:`__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.

.. currentmodule:: pickle

.. _pickle-persistent:

Persistence of External Objects
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

.. index::
   single: persistent_id (pickle protocol)
   single: persistent_load (pickle protocol)

For the benefit of object persistence, the :mod:`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) [#]_ or just an arbitrary object (for
any newer protocol).

The resolution of such persistent IDs is not defined by the :mod:`pickle`
module; it will delegate this resolution to the user defined methods on the
pickler and unpickler, :meth:`~Pickler.persistent_id` and
:meth:`~Unpickler.persistent_load` respectively.

To pickle objects that have an external persistent id, the pickler must have a
custom :meth:`~Pickler.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 custom
:meth:`~Unpickler.persistent_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.

.. literalinclude:: ../includes/dbpickle.py

.. _pickle-dispatch:

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 :mod:`copyreg` module is
available as :data:`copyreg.dispatch_table`.  Therefore, one may
choose to use a modified copy of :data:`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 :class:`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 the
:mod:`copyreg` module is ::

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

.. _pickle-state:

Handling Stateful Objects
^^^^^^^^^^^^^^^^^^^^^^^^^

.. index::
   single: __getstate__() (copy protocol)
   single: __setstate__() (copy protocol)

Here's an example that shows how to modify pickling behavior for a class.
The :class:`TextReader` class opens a text file, and returns the line number and
line contents each time its :meth:`!readline` method is called. If a
:class:`TextReader` 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 :meth:`__setstate__` and
:meth:`__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!'


.. _pickle-restrict:

Restricting Globals
-------------------

.. index::
   single: find_class() (pickle protocol)

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 :func:`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 customizing
:meth:`Unpickler.find_class`.  Unlike its name suggests,
:meth:`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 the
:mod:`builtins` 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


.. XXX Add note about how extension codes could evade our protection
   mechanism (e.g. cached classes do not invokes find_class()).

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 :mod:`xmlrpc.client` or
third-party solutions.


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 :mod:`pickle` module has a transparent optimizer written in C.


.. _pickle-example:

Examples
--------

For the simplest code, use the :func:`dump` and :func:`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': {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)


.. XXX: Add examples showing how to optimize pickles for size (like using
.. pickletools.optimize() or the gzip module).


.. seealso::

   Module :mod:`copyreg`
      Pickle interface constructor registration for extension types.

   Module :mod:`pickletools`
      Tools for working with and analyzing pickled data.

   Module :mod:`shelve`
      Indexed databases of objects; uses :mod:`pickle`.

   Module :mod:`copy`
      Shallow and deep object copying.

   Module :mod:`marshal`
      High-performance serialization of built-in types.


.. rubric:: Footnotes

.. [#] Don't confuse this with the :mod:`marshal` module

.. [#] This is why :keyword:`lambda` functions cannot be pickled:  all
    :keyword:`lambda` functions share the same name:  ``<lambda>``.

.. [#] The exception raised will likely be an :exc:`ImportError` or an
   :exc:`AttributeError` but it could be something else.

.. [#] The :mod:`copy` module uses this protocol for shallow and deep copying
   operations.

.. [#] 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.