KD-MARL: Resource-Aware Knowledge Distillation in Multi-Agent Reinforcement Learning
Monirul Islam Pavel, Siyi Hu, Muhammad Anwar Masum, Mahardhika Pratama, Ryszard Kowalczyk, Zehong Jimmy Cao

TL;DR
KD MARL is a resource-aware knowledge distillation framework that transfers coordinated multi-agent behaviors from expert policies to lightweight decentralized agents, enabling efficient deployment with minimal performance loss.
Contribution
It introduces a two-stage distillation method that preserves coordination and supports heterogeneous agent architectures without relying on critics.
Findings
KD MARL retains over 90% of expert performance on benchmarks.
It reduces computational cost by up to 28.6 times FLOPs.
The method supports heterogeneous agent models with limited observations.
Abstract
Real world deployment of multi agent reinforcement learning MARL systems is fundamentally constrained by limited compute memory and inference time. While expert policies achieve high performance they rely on costly decision cycles and large scale models that are impractical for edge devices or embedded platforms. Knowledge distillation KD offers a promising path toward resource aware execution but existing KD methods in MARL focus narrowly on action imitation often neglecting coordination structure and assuming uniform agent capabilities. We propose resource aware Knowledge Distillation for Multi Agent Reinforcement Learning KD MARL a two stage framework that transfers coordinated behavior from a centralized expert to lightweight decentralized student agents. The student policies are trained without a critic relying instead on distilled advantage signals and structured policy…
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