CALF: Communication-Aware Learning Framework for Distributed Reinforcement Learning
arXiv cs.AI / 3/16/2026
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Key Points
- CALF trains reinforcement learning policies under realistic network models during simulation to address delays, jitter, and packet loss in distributed deployments.
- The framework demonstrates that explicitly modeling communication constraints improves real-world deployment performance and reduces the sim-to-real gap for Wi-Fi-like networks.
- Empirical results across heterogeneous hardware show network-aware training yields robust performance under varying network conditions compared with network-agnostic baselines.
- CALF complements existing sim-to-real strategies such as physics-based and visual domain randomisation by treating network conditions as a major transfer axis.
- The work highlights network conditions as a key axis for robust distributed RL in edge-cloud environments and broad implications for practical deployment.
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