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Baum-Welch for all kind of Markov model

Project description


Pypi Python 3.6 PyPI - Wheel Documentation Status License

Introduction

jajapy is a python library implementing the Baum-Welch algorithm on various kinds of Markov models.

Please cite this repository if you use this library.

Main features

jajapy provides:

  • BW algorithm for Hidden Markov Models reference
  • BW algorithm for Markov Chains
  • BW algorithm for Gaussian Observation Hidden Markov Models reference
  • BW algorithm for Markov Decision Processes reference
  • Active BW algorithm for Markov Decision Processes reference
  • BW algorithm for CTMC
  • BW algorithm for asynchronous parallel composition of CTMCs

Additionally, it provides other learning algorithms:

Installation

pip install jajapy

Requirements

  • numpy
  • scipy

Documentation

Available on readthedoc

TO DO

  • Add examples in the documentation
  • link with stormpy, prism
  • errors management

Project details


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