28 juillet 2025 à 1 août 2025
Fuseau horaire Europe/Paris

Safe-EF: Error Feedback with Applications to Distributed Safe Reinforcement Learning

1 août 2025, 14:30
30m
F207

F207

Invited talk Machine learning ML

Orateur

Ilyas Fatkhullin (ETH Zürich)

Description

Federated learning faces severe communication bottlenecks due to the high dimensionality of model updates. Communication compression with contractive compressors (e.g., Top-K) is often preferable in practice but can degrade performance without proper handling. Error feedback (EF) mitigates such issues but has been largely restricted to smooth, unconstrained problems, limiting its real-world applicability where non-smooth objectives and safety constraints are critical. We advance our understanding of EF in the canonical non-smooth convex setting by establishing new lower complexity bounds for first-order algorithms with contractive compression. Next, we propose Safe-EF, a novel algorithm that matches our lower bound (up to a constant) while enforcing safety constraints essential for practical applications. Extending our approach to the stochastic setting, we bridge the gap between theory and practical implementation. Extensive experiments in a reinforcement learning setup, simulating distributed humanoid robot training, validate the effectiveness of Safe-EF in ensuring safety and reducing communication complexity.

Author

Ilyas Fatkhullin (ETH Zürich)

Documents de présentation

Aucun document.