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Discrete Hidden Markov Models with Numba

Project description

Hmmkay

Discrete Hidden Markov Models with Numba

Installation

pip install hmmkay

Requires Python 3.6 or higher.

Documentation

TODO

Status

Highly experimental, API subjet to change without deprecation.

Development

The following packages are required for testing:

pip install pytest hmmlearn scipy

For benchmarks:

pip install matplotlib hmmlearn

For docs:

pip install sphinx sphinx_rtd_theme

For development, use pre-commit hooks for black and flake8.

Project details


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