cloudpickle
makes it possible to serialize Python constructs not supported
by the default pickle
module from the Python standard library.
cloudpickle
is especially useful for cluster computing where Python
code is shipped over the network to execute on remote hosts, possibly close
to the data.
Among other things, cloudpickle
supports pickling for lambda functions
along with functions and classes defined interactively in the
__main__
module (for instance in a script, a shell or a Jupyter notebook).
Cloudpickle can only be used to send objects between the exact same version of Python.
Using cloudpickle
for long-term object storage is not supported and
strongly discouraged.
Security notice: one should only load pickle data from trusted sources as
otherwise pickle.load
can lead to arbitrary code execution resulting in a critical
security vulnerability.
The latest release of cloudpickle
is available from
pypi:
pip install cloudpickle
Pickling a lambda expression:
>>> import cloudpickle
>>> squared = lambda x: x ** 2
>>> pickled_lambda = cloudpickle.dumps(squared)
>>> import pickle
>>> new_squared = pickle.loads(pickled_lambda)
>>> new_squared(2)
4
Pickling a function interactively defined in a Python shell session
(in the __main__
module):
>>> CONSTANT = 42
>>> def my_function(data: int) -> int:
... return data + CONSTANT
...
>>> pickled_function = cloudpickle.dumps(my_function)
>>> depickled_function = pickle.loads(pickled_function)
>>> depickled_function
<function __main__.my_function(data:int) -> int>
>>> depickled_function(43)
85
An important difference between cloudpickle
and pickle
is that
cloudpickle
can serialize a function or class by value, whereas pickle
can only serialize it by reference. Serialization by reference treats
functions and classes as attributes of modules, and pickles them through
instructions that trigger the import of their module at load time.
Serialization by reference is thus limited in that it assumes that the module
containing the function or class is available/importable in the unpickling
environment. This assumption breaks when pickling constructs defined in an
interactive session, a case that is automatically detected by cloudpickle
,
that pickles such constructs by value.
Another case where the importability assumption is expected to break is when
developing a module in a distributed execution environment: the worker
processes may not have access to the said module, for example if they live on a
different machine than the process in which the module is being developed. By
itself, cloudpickle
cannot detect such "locally importable" modules and
switch to serialization by value; instead, it relies on its default mode, which
is serialization by reference. However, since cloudpickle 2.0.0
, one can
explicitly specify modules for which serialization by value should be used,
using the
register_pickle_by_value(module)
//unregister_pickle_by_value(module)
API:
>>> import cloudpickle
>>> import my_module
>>> cloudpickle.register_pickle_by_value(my_module)
>>> cloudpickle.dumps(my_module.my_function) # my_function is pickled by value
>>> cloudpickle.unregister_pickle_by_value(my_module)
>>> cloudpickle.dumps(my_module.my_function) # my_function is pickled by reference
Using this API, there is no need to re-install the new version of the module on all the worker nodes nor to restart the workers: restarting the client Python process with the new source code is enough.
Note that this feature is still experimental, and may fail in the following situations:
-
If the body of a function/class pickled by value contains an
import
statement:>>> def f(): >>> ... from another_module import g >>> ... # calling f in the unpickling environment may fail if another_module >>> ... # is unavailable >>> ... return g() + 1
-
If a function pickled by reference uses a function pickled by value during its execution.
-
With
tox
, to test run the tests for all the supported versions of Python and PyPy:pip install tox tox
or alternatively for a specific environment:
tox -e py312
-
With
pytest
to only run the tests for your current version of Python:pip install -r dev-requirements.txt PYTHONPATH='.:tests' pytest
cloudpickle
was initially developed by picloud.com and shipped as part of
the client SDK.
A copy of cloudpickle.py
was included as part of PySpark, the Python
interface to Apache Spark. Davies Liu, Josh
Rosen, Thom Neale and other Apache Spark developers improved it significantly,
most notably to add support for PyPy and Python 3.
The aim of the cloudpickle
project is to make that work available to a wider
audience outside of the Spark ecosystem and to make it easier to improve it
further notably with the help of a dedicated non-regression test suite.