Skip to main content

serialize all of python (almost)

Project description

Dill extends python’s ‘pickle’ module for serializing and de-serializing python objects to the majority of the built-in python types. Serialization is the process of converting an object to a byte stream, and the inverse of which is converting a byte stream back to on python object hierarchy.

Dill provides the user the same interface as the ‘pickle’ module, and also includes some additional features. In addition to pickling python objects, dill provides the ability to save the state of an interpreter session in a single command. Hence, it would be feasable to save a interpreter session, close the interpreter, ship the pickled file to another computer, open a new interpreter, unpickle the session and thus continue from the ‘saved’ state of the original interpreter session.

Dill can be used to store python objects to a file, but the primary usage is to send python objects across the network as a byte stream. Dill is quite flexible, and allows arbitrary user defined classes and funcitons to be serialized. Thus dill is not intended to be secure against erroneously or maliciously constructed data. It is left to the user to decide whether the data they unpickle is from a trustworthy source.

Dill is part of pathos, a python framework for heterogeneous computing. Dill is in the early development stages, and any user feedback is highly appreciated. Contact Mike McKerns [mmckerns at caltech dot edu] with comments, suggestions, and any bugs you may find. A list of known issues is maintained at http://trac.mystic.cacr.caltech.edu/project/pathos/query.

Major Features

Dill can pickle the following standard types:

- none, type, bool, int, long, float, complex, str, unicode,
- tuple, list, dict, file, buffer, builtin,
- both old and new style classes,
- instances of old and new style classes,
- set, frozenset, array, functions,

Dill can also pickle more ‘exotic’ types:

- functions with yields, nested functions, lambdas
- cell, method, unboundmethod, module, code, methodwrapper,
- dictproxy, methoddescriptor, getsetdescriptor, memberdescriptor,
- wrapperdescriptor, xrange, slice,
- notimplemented, ellipsis, quit

Dill cannot yet pickle these standard types:

- frame, generator, traceback

Dill also provides the capability to:

- save and load python interpreter sessions
- save and extract the source code from functions and classes
- interactively diagnose pickling errors

Current Release

The latest released version is dill-0.2. You can download it here. The latest stable version of dill is always available at:

http://dev.danse.us/trac/pathos

Development Release

You can get the latest development release with all the shiny new features at:

http://dev.danse.us/packages

or even better, fork us on our github mirror of the svn trunk:

https://github.com/uqfoundation

Installation

Dill is packaged to install from source, so you must download the tarball, unzip, and run the installer:

[download]
$ tar -xvzf dill-0.2.tgz
$ cd dill-0.2
$ python setup py build
$ python setup py install

You will be warned of any missing dependencies and/or settings after you run the “build” step above.

Alternately, dill can be installed with easy_install or pip:

[download]
$ easy_install -f . dill

Requirements

Dill requires:

- python, version >= 2.5  *or*  version >= 3.1

Optional requirements:

- setuptools, version >= 0.6
- objgraph, version >= 1.7.2

Usage Notes

Probably the best way to get started is to look at the tests that are provide within dill. See dill.tests for a set of scripts that test dill’s ability to serialize different python objects. Since dill conforms to the ‘pickle’ interface, the examples and documentation at http://docs.python.org/library/pickle.html also apply to dill if one will import dill as pickle.

License

Dill is distributed under a 3-clause BSD license:

>>> import dill
>>> print (dill.license())

Citation

If you use dill to do research that leads to publication, we ask that you acknowledge use of dill by citing the following in your publication:

M.M. McKerns, L. Strand, T. Sullivan, A. Fang, M.A.G. Aivazis,
"Building a framework for predictive science", Proceedings of
the 10th Python in Science Conference, 2011;
http://arxiv.org/pdf/1202.1056

Michael McKerns and Michael Aivazis,
"pathos: a framework for heterogeneous computing", 2010- ;
http://dev.danse.us/trac/pathos

More Information

Please see http://dev.danse.us/trac/pathos or http://arxiv.org/pdf/1202.1056 for further information.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distributions

dill-0.2.zip (62.9 kB view hashes)

Uploaded source

dill-0.2.tgz (45.3 kB view hashes)

Uploaded source

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page