DS1 spectrogram: CAMAR: Continuous Actions Multi-Agent Routing

CAMAR: Continuous Actions Multi-Agent Routing

2508.12845

Authors

Alexey Skrynnik,Artem Pshenitsyn,Aleksandr Panov

Abstract

Multi-agent reinforcement learning (MARL) is a powerful paradigm for solving cooperative and competitive decision-making problems. While many MARL benchmarks have been proposed, few combine continuous state and action spaces with challenging coordination and planning tasks.

We introduce CAMAR, a new MARL benchmark designed explicitly for multi-agent pathfinding in environments with continuous actions. CAMAR supports cooperative and competitive interactions between agents and runs efficiently at up to 100,000 environment steps per second.

We also propose a three-tier evaluation protocol to better track algorithmic progress and enable deeper analysis of performance. In addition, CAMAR allows the integration of classical planning methods such as RRT and RRT* into MARL pipelines.

We use them as standalone baselines and combine RRT* with popular MARL algorithms to create hybrid approaches. We provide a suite of test scenarios and benchmarking tools to ensure reproducibility and fair comparison.

Experiments show that CAMAR presents a challenging and realistic testbed for the MARL community.

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