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Using Existing Reinforcement Learning Libraries in Multi-Agent Scenarios

  • ISAAI’19 Proceedings — Artificial Intelligence
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Digitale Welt

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References

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Correspondence to Carsten Hahn or Markus Friedrich.

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Carsten Hahn Carsten Hahn is a researcher at the LMU Munich. His research interests are artificial intelligence and autonomous systems.

Markus Friedrich Markus Friedrich is a researcher at the LMU Munich. His research focuses on 3D reconstruction based on point clouds/image series and machine learning.

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Hahn, C., Friedrich, M. Using Existing Reinforcement Learning Libraries in Multi-Agent Scenarios. Digitale Welt 4, 62–66 (2020). https://doi.org/10.1007/s42354-019-0236-1

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  • DOI: https://doi.org/10.1007/s42354-019-0236-1

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