Search Results for author: Matthias Pallasch

Found 3 papers, 1 papers with code

Memory Gym: Towards Endless Tasks to Benchmark Memory Capabilities of Agents

1 code implementation29 Sep 2023 Marco Pleines, Matthias Pallasch, Frank Zimmer, Mike Preuss

Memory Gym presents a suite of 2D partially observable environments, namely Mortar Mayhem, Mystery Path, and Searing Spotlights, designed to benchmark memory capabilities in decision-making agents.

Decision Making

Generalization, Mayhems and Limits in Recurrent Proximal Policy Optimization

no code implementations23 May 2022 Marco Pleines, Matthias Pallasch, Frank Zimmer, Mike Preuss

At first sight it may seem straightforward to use recurrent layers in Deep Reinforcement Learning algorithms to enable agents to make use of memory in the setting of partially observable environments.

Benchmarking

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