Metadata-Version: 2.1
Name: pyprobables
Version: 0.5.4
Summary: Probabilistic data structures in python
Home-page: https://github.com/barrust/pyprobables
Author: Tyler Barrus
Author-email: barrust@gmail.com
License: MIT
Download-URL: https://github.com/barrust/pyprobables/tarball/v0.5.4
Keywords: python probabilistic data-structure bloom filter count-min sketch bloom-filter count-min-sketch cuckoo-filter
Platform: UNKNOWN
Classifier: Development Status :: 5 - Production/Stable
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: Information Technology
Classifier: Intended Audience :: Science/Research
Classifier: Topic :: Software Development :: Libraries
Classifier: Topic :: Utilities
Classifier: License :: OSI Approved
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
License-File: LICENSE

PyProbables
===========

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**pyprobables** is a pure-python library for probabilistic data structures.
The goal is to provide the developer with a pure-python implementation of
common probabilistic data-structures to use in their work.

To achieve better raw performance, it is recommended supplying an alternative
hashing algorithm that has been compiled in C. This could include using the
md5 and sha512 algorithms provided or installing a third party package and
writing your own hashing strategy. Some options include the murmur hash
`mmh3 <https://github.com/hajimes/mmh3>`__ or those from the
`pyhash <https://github.com/flier/pyfasthash>`__ library. Each data object in
**pyprobables** makes it easy to pass in a custom hashing function.

Read more about how to use `Supplying a pre-defined, alternative hashing strategies`_
or `Defining hashing function using the provided decorators`_.

Installation
------------------

Pip Installation:

::

    $ pip install pyprobables

To install from source:

To install `pyprobables`, simply clone the `repository on GitHub
<https://github.com/barrust/pyprobables>`__, then run from the folder:

::

    $ python setup.py install

`pyprobables` supports python 3.5 - 3.9+

For *python 2.7* support, install `release 0.3.2 <https://github.com/barrust/pyprobables/releases/tag/v0.3.2>`__

::

    $ pip install pyprobables==0.3.2


API Documentation
---------------------

The documentation of is hosted on
`readthedocs.io <http://pyprobables.readthedocs.io/en/latest/code.html#api>`__

You can build the documentation locally by running:

::

    $ pip install sphinx
    $ cd docs/
    $ make html



Automated Tests
------------------

To run automated tests, one must simply run the following command from the
downloaded folder:

::

  $ python setup.py test



Quickstart
------------------

Import pyprobables and setup a Bloom Filter
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

.. code:: python

    from probables import (BloomFilter)
    blm = BloomFilter(est_elements=1000, false_positive_rate=0.05)
    blm.add('google.com')
    blm.check('facebook.com')  # should return False
    blm.check('google.com')  # should return True


Import pyprobables and setup a Count-Min Sketch
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

.. code:: python

    from probables import (CountMinSketch)
    cms = CountMinSketch(width=1000, depth=5)
    cms.add('google.com')  # should return 1
    cms.add('facebook.com', 25)  # insert 25 at once; should return 25


Import pyprobables and setup a Cuckoo Filter
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

.. code:: python

    from probables import (CuckooFilter)
    cko = CuckooFilter(capacity=100, max_swaps=10)
    cko.add('google.com')
    cko.check('facebook.com')  # should return False
    cko.check('google.com')  # should return True


Supplying a pre-defined, alternative hashing strategies
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

.. code:: python

    from probables import (BloomFilter)
    from probables.hashes import (default_sha256)
    blm = BloomFilter(est_elements=1000, false_positive_rate=0.05,
                      hash_function=default_sha256)
    blm.add('google.com')
    blm.check('facebook.com')  # should return False
    blm.check('google.com')  # should return True


.. _use-custom-hashing-strategies:

Defining hashing function using the provided decorators
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^

.. code:: python

    import mmh3  # murmur hash 3 implementation (pip install mmh3)
    from pyprobables.hashes import (hash_with_depth_bytes)
    from pyprobables import (BloomFilter)

    @hash_with_depth_bytes
    def my_hash(key):
        return mmh3.hash_bytes(key)

    blm = BloomFilter(est_elements=1000, false_positive_rate=0.05, hash_function=my_hash)

.. code:: python

    import mmh3  # murmur hash 3 implementation (pip install mmh3)
    from pyprobables.hashes import (hash_with_depth_int)
    from pyprobables import (BloomFilter)

    @hash_with_depth_int
    def my_hash(key, encoding='utf-8'):
        max64mod = UINT64_T_MAX + 1
        val = int(hashlib.sha512(key.encode(encoding)).hexdigest(), 16)
        return val % max64mod

    blm = BloomFilter(est_elements=1000, false_positive_rate=0.05, hash_function=my_hash)


See the `API documentation <http://pyprobables.readthedocs.io/en/latest/code.html#api>`__
for other data structures available and the
`quickstart page <http://pyprobables.readthedocs.io/en/latest/quickstart.html#quickstart>`__
for more examples!


Changelog
------------------

Please see the `changelog
<https://github.com/barrust/pyprobables/blob/master/CHANGELOG.md>`__ for a list
of all changes.


Backward Compatible Changes
---------------------------

If you are using previously exported probablistic data structures (v0.4.1 or below)
and used the default hashing strategy, you will want to use the following code
to mimic the original default hashing algorithm.

.. code:: python

    from probables import BloomFilter
    from probables.hashes import hash_with_depth_int

    @hash_with_depth_int
    def old_fnv1a(key, depth=1):
        return tmp_fnv_1a(key)

    def tmp_fnv_1a(key):
        max64mod = UINT64_T_MAX + 1
        hval = 14695981039346656073
        fnv_64_prime = 1099511628211
        tmp = map(ord, key)
        for t_str in tmp:
            hval ^= t_str
            hval *= fnv_64_prime
            hval %= max64mod
        return hval

    blm = BloomFilter(filpath="old-file-path.blm", hash_function=old_fnv1a)


