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SwarmRL: Building the Future of Smart Active Systems

25 April 2024
S. Tovey
Christoph Lohrmann
Tobias Merkt
David Zimmer
Konstantin Nikolaou
Simon Koppenhoefer
Anna Bushmakina
Jonas Scheunemann
Christian Holm
    AI4CE
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Abstract

This work introduces SwarmRL, a Python package designed to study intelligent active particles. SwarmRL provides an easy-to-use interface for developing models to control microscopic colloids using classical control and deep reinforcement learning approaches. These models may be deployed in simulations or real-world environments under a common framework. We explain the structure of the software and its key features and demonstrate how it can be used to accelerate research. With SwarmRL, we aim to streamline research into micro-robotic control while bridging the gap between experimental and simulation-driven sciences. SwarmRL is available open-source on GitHub at https://github.com/SwarmRL/SwarmRL.

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