Metadata-Version: 2.0
Name: pythogic
Version: 0.2.8
Summary: Python package for deal with logical formulas and formal systems
Home-page: https://github.com/MarcoFavorito/pythogic
Author: Marco Favorito
Author-email: marco.favorito@gmail.com
License: MIT license
Description-Content-Type: UNKNOWN
Keywords: pythogic
Platform: UNKNOWN
Classifier: Development Status :: 2 - Pre-Alpha
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Natural Language :: English
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6

========
Pythogic
========

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Python package for deal with logical formulas and formal systems.


* Free software: MIT license
* Documentation: https://pythogic.readthedocs.io.

Usage
--------

First of all, create symbols and an alphabet

.. code:: python

    from pythogic.base.Alphabet import Alphabet
    from pythogic.base.Symbol import Symbol

    a_sym = Symbol("a")
    b_sym = Symbol("b")
    c_sym = Symbol("c")
    alphabet = Alphabet({a_sym, b_sym, c_sym})
    # you can also write:
    alphabet = Alphabet.fromStrings({"a", "b", "c"})

Create some formulas:

.. code:: python

    from pythogic.base.Formula import AtomicFormula, TrueFormula, FalseFormula, Not, And, Or

    # Propositions
    a = AtomicFormula(a_sym)
    b = AtomicFormula(b_sym)
    c = AtomicFormula(c_sym)

    # Elementary formulas
    not_a = Not(a)
    not_a_and_b = And(Not(a), b)
    not_a_or_c = Or(not_a, c)
    true = TrueFormula()
    false = FalseFormula()

Using Propositional Calculus:

.. code:: python

    from pythogic.pl.PL import PL
    from pythogic.pl.semantics.PLInterpretation import PLInterpretation

    # A dictionary which assign each symbol to a truth value
    symbol2truth = {
            a_sym: True,
            b_sym: False,
            c_sym: True
        }

    # The propositional interpretation
    I = PLInterpretation(alphabet, symbol2truth)

    # main class which contains useful methods
    PL = PL(alphabet)

    PL.truth(a, I)              # returns true
    PL.truth(b, I)              # returns false
    PL.truth(c, I)              # returns true
    PL.truth(not_a, I)          # returns false
    PL.truth(not_a_and_b, I)    # returns false
    PL.truth(not_a_or_c, I)     # returns true
    PL.truth(true, I)           # returns true
    PL.truth(false, I)          # returns false


Features
--------

- Compose logical formula by common syntax rules;
- Implementation of several semantics (FOL Interpretation, finite trace, etc.);
- Support for several logical formal systems: Propositional Logic, First-order Logic, REf, LTLf, LDLf;


Credits
-------

This package was created with Cookiecutter_ and the `audreyr/cookiecutter-pypackage`_ project template.

.. _Cookiecutter: https://github.com/audreyr/cookiecutter
.. _`audreyr/cookiecutter-pypackage`: https://github.com/audreyr/cookiecutter-pypackage

Many thanks to PySimpleAutomata_ for the automata support.
.. _PySimpleAutomata: https://github.com/Oneiroe/PySimpleAutomata


=======
History
=======

0.1.0 (2018-02-20)
------------------

* First release on PyPI.

0.2.0 (2018-02-23)
------------------

* First-Order logic support (Formulas, Interpretations, Assignment, Truth of the formulas).

0.2.1 (2018-02-23)
------------------

* Fix on the repo.

0.2.2 (2018-02-25)
------------------

* Refactoring of the formulas and formal systems functionalities.
* Implemented LDLf.

0.2.3 (2018-02-25)
------------------

* "To negative normal form" procedure for LDLf formulas.

0.2.4 (2018-02-06)
------------------

* Support for LDLf for Empty Traces.

0.2.6 (2018-03-09)
------------------

* Non-deterministic state automata conversion procedure for LDLf_EmptyTraces formulas.

0.2.7 (2018-03-10)
------------------

* Fix bug in delta function for NFA computation from LDLf_EmptyTraces formulas
* Fix bug in rewriting automata for PySimpleAutomata package

0.2.8 (2018-03-10)
------------------

* Implemented DFA conversion for NFAs from LDLf_EmptyTraces formulas


