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Tools for learning, plotting, analyzing etc. of discrete, continuous, timed, and hybrid cyber-physical systems.

Project description

# ML4CPS ML4CPS is a Python package for learning and analysis of hybrid dynamical systems, with the focus on Cyber-Physical Systems (CPS). The code was developed for several research publications ([bibtex](docs/cite.bib)).

## Data In the folder “data” there are several datasets that can be easily loaded using the example module.

## Bugs If you find any bugs, please contact us at [bugs@ai4cps.com](mailto:bugs@ai4cps.com).

## License See [LICENSE](LICENSE). If you use this code in your research, please [cite](docs/cite.bib) our work.

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