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Byzantine Robust Optimizer

Byzantine Robust Optimizer

Improved federated learning with Byzantine robustness

Byzantine robustness has received significant attention recently given its importance for distributed and federated learning. In spite of this, there are severe flaws in existing algorithms even when the data across the participants is identically distributed. To address these issues, we present two surprisingly simple strategies: a new robust iterative clipping procedure, and incorporating worker momentum to overcome time-coupled attacks. This is the first provably robust method for the standard stochastic optimization setting.

DecentralizedDistributed LearningTensorFlow
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Machine Learning and Optimization Laboratory

Machine Learning and Optimization Laboratory
Martin Jaggi

Prof. Martin Jaggi

The Machine Learning and Optimization Laboratory is interested in machine learning, optimization algorithms and text understanding, as well as several application domains.

This page was last edited on 2024-04-09.