Byzantine-Resilient Learning Beyond Gradients: Distributing Evolutionary Search

April 20, 2023 Β· Declared Dead Β· πŸ› GECCO Companion

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Authors Andrei Kucharavy, Matteo Monti, Rachid Guerraoui, Ljiljana Dolamic arXiv ID 2304.13540 Category cs.DC: Distributed Computing Cross-listed cs.LG, cs.NE Citations 1 Venue GECCO Companion Last Checked 3 months ago
Abstract
Modern machine learning (ML) models are capable of impressive performances. However, their prowess is not due only to the improvements in their architecture and training algorithms but also to a drastic increase in computational power used to train them. Such a drastic increase led to a growing interest in distributed ML, which in turn made worker failures and adversarial attacks an increasingly pressing concern. While distributed byzantine resilient algorithms have been proposed in a differentiable setting, none exist in a gradient-free setting. The goal of this work is to address this shortcoming. For that, we introduce a more general definition of byzantine-resilience in ML - the \textit{model-consensus}, that extends the definition of the classical distributed consensus. We then leverage this definition to show that a general class of gradient-free ML algorithms - ($1,Ξ»$)-Evolutionary Search - can be combined with classical distributed consensus algorithms to generate gradient-free byzantine-resilient distributed learning algorithms. We provide proofs and pseudo-code for two specific cases - the Total Order Broadcast and proof-of-work leader election.
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