PyBoolNet is a Python package for the generation, modification and analysis of Boolean networks.

Homepage has migrated to
https://github.com/hklarner/PyBoolNet

This page is only maintained to keep links alive.

Features

  • model checking via NuSMV
  • attractor and trap space detection via Potassco ASP
  • visualization via Graphviz
  • general network analysis via NetworkX

Project Samples

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Additional Project Details

Registered

2014-04-09