Asynchronous Decentralized Optimization with Constraints: Achievable Speeds of Convergence for Directed Graphs

Published: 22 Jan 2025, Last Modified: 09 Mar 2025AISTATS 2025 PosterEveryoneRevisionsBibTeXCC BY 4.0
Abstract: We propose a novel decentralized convex optimization algorithm called ASY-DAGP, where each agent has its own distinct objective function and constraint set. Agents compute at different speeds, and their communication is delayed and directed. Employing local buffers, ASY-DAGP enhances asynchronous communication and is robust to challenging scenarios such as message failure. We validate these features by numerical experiments. By analyzing ASY-DAGP, we provide the first sublinear convergence rate for the above setup under mild assumptions. This rate depends on a novel characterization of delay profiles, which we term the delay factor. We calculate the delay factor for the well-known bounded delay profiles, providing new insights for these scenarios. Our analysis is conducted by introducing a novel approach tied to the celebrated PEP framework. Our approach does not require the design of Lyapunov functions and instead provides a novel insight into the optimization algorithms as linear systems.
Submission Number: 872
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