mirror of https://github.com/python/cpython
Issue #18840: Introduce the json module in the tutorial, and deemphasize the pickle module.
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@ -78,6 +78,13 @@ Glossary
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Benevolent Dictator For Life, a.k.a. `Guido van Rossum
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<http://www.python.org/~guido/>`_, Python's creator.
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binary file
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A :term:`file object` able to read and write
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:term:`bytes-like objects <bytes-like object>`.
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.. seealso::
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A :term:`text file` reads and writes :class:`str` objects.
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bytes-like object
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An object that supports the :ref:`bufferobjects`, like :class:`bytes`,
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:class:`bytearray` or :class:`memoryview`. Bytes-like objects can
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@ -225,10 +232,11 @@ Glossary
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etc.). File objects are also called :dfn:`file-like objects` or
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:dfn:`streams`.
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There are actually three categories of file objects: raw binary files,
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buffered binary files and text files. Their interfaces are defined in the
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:mod:`io` module. The canonical way to create a file object is by using
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the :func:`open` function.
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There are actually three categories of file objects: raw
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:term:`binary files <binary file>`, buffered
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:term:`binary files <binary file>` and :term:`text files <text file>`.
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Their interfaces are defined in the :mod:`io` module. The canonical
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way to create a file object is by using the :func:`open` function.
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file-like object
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A synonym for :term:`file object`.
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@ -800,6 +808,14 @@ Glossary
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:meth:`~collections.somenamedtuple._asdict`. Examples of struct sequences
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include :data:`sys.float_info` and the return value of :func:`os.stat`.
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text file
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A :term:`file object` able to read and write :class:`str` objects.
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Often, a text file actually accesses a byte-oriented datastream
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and handles the text encoding automatically.
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.. seealso::
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A :term:`binary file` reads and write :class:`bytes` objects.
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triple-quoted string
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A string which is bound by three instances of either a quotation mark
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(") or an apostrophe ('). While they don't provide any functionality
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@ -377,47 +377,64 @@ File objects have some additional methods, such as :meth:`~file.isatty` and
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Reference for a complete guide to file objects.
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.. _tut-pickle:
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.. _tut-json:
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The :mod:`pickle` Module
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------------------------
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Saving structured data with :mod:`json`
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---------------------------------------
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.. index:: module: pickle
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.. index:: module: json
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Strings can easily be written to and read from a file. Numbers take a bit more
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Strings can easily be written to and read from a file. Numbers take a bit more
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effort, since the :meth:`read` method only returns strings, which will have to
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be passed to a function like :func:`int`, which takes a string like ``'123'``
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and returns its numeric value 123. However, when you want to save more complex
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data types like lists, dictionaries, or class instances, things get a lot more
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complicated.
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and returns its numeric value 123. When you want to save more complex data
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types like nested lists and dictionaries, parsing and serializing by hand
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becomes complicated.
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Rather than have users be constantly writing and debugging code to save
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complicated data types, Python provides a standard module called :mod:`pickle`.
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This is an amazing module that can take almost any Python object (even some
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forms of Python code!), and convert it to a string representation; this process
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is called :dfn:`pickling`. Reconstructing the object from the string
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representation is called :dfn:`unpickling`. Between pickling and unpickling,
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the string representing the object may have been stored in a file or data, or
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Rather than having users constantly writing and debugging code to save
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complicated data types to files, Python allows you to use the popular data
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interchange format called `JSON (JavaScript Object Notation)
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<http://json.org>`_. The standard module called :mod:`json` can take Python
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data hierarchies, and convert them to string representations; this process is
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called :dfn:`serializing`. Reconstructing the data from the string representation
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is called :dfn:`deserializing`. Between serializing and deserializing, the
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string representing the object may have been stored in a file or data, or
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sent over a network connection to some distant machine.
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If you have an object ``x``, and a file object ``f`` that's been opened for
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writing, the simplest way to pickle the object takes only one line of code::
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.. note::
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The JSON format is commonly used by modern applications to allow for data
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exchange. Many programmers are already familiar with it, which makes
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it a good choice for interoperability.
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pickle.dump(x, f)
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If you have an object ``x``, you can view its JSON string representation with a
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simple line of code::
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To unpickle the object again, if ``f`` is a file object which has been opened
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for reading::
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>>> json.dumps([1, 'simple', 'list'])
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'[1, "simple", "list"]'
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x = pickle.load(f)
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Another variant of the :func:`~json.dumps` function, called :func:`~json.dump`,
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simply serializes the object to a :term:`text file`. So if ``f`` is a
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:term:`text file` object opened for writing, we can do this::
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(There are other variants of this, used when pickling many objects or when you
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don't want to write the pickled data to a file; consult the complete
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documentation for :mod:`pickle` in the Python Library Reference.)
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json.dump(x, f)
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:mod:`pickle` is the standard way to make Python objects which can be stored and
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reused by other programs or by a future invocation of the same program; the
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technical term for this is a :dfn:`persistent` object. Because :mod:`pickle` is
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so widely used, many authors who write Python extensions take care to ensure
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that new data types such as matrices can be properly pickled and unpickled.
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To decode the object again, if ``f`` is a :term:`text file` object which has
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been opened for reading::
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x = json.load(f)
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This simple serialization technique can handle lists and dictionaries, but
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serializing arbitrary class instances in JSON requires a bit of extra effort.
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The reference for the :mod:`json` module contains an explanation of this.
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.. seealso::
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:mod:`pickle` - the pickle module
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Contrary to :ref:`JSON <tut-json>`, *pickle* is a protocol which allows
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the serialization of arbitrarily complex Python objects. As such, it is
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specific to Python and cannot be used to communicate with applications
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written in other languages. It is also insecure by default:
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deserializing pickle data coming from an untrusted source can execute
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arbitrary code, if the data was crafted by a skilled attacker.
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