Derives a closed-form optimal gradient coding structure and bit allocation strategy to minimize residual error under an unbiasedness constraint for communication-efficient distributed learning in heterogeneous systems.
ErasureHead: Distributed Gradient Descent without Delays Using Approximate Gradient Coding
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abstract
We present ErasureHead, a new approach for distributed gradient descent (GD) that mitigates system delays by employing approximate gradient coding. Gradient coded distributed GD uses redundancy to exactly recover the gradient at each iteration from a subset of compute nodes. ErasureHead instead uses approximate gradient codes to recover an inexact gradient at each iteration, but with higher delay tolerance. Unlike prior work on gradient coding, we provide a performance analysis that combines both delay and convergence guarantees. We establish that down to a small noise floor, ErasureHead converges as quickly as distributed GD and has faster overall runtime under a probabilistic delay model. We conduct extensive experiments on real world datasets and distributed clusters and demonstrate that our method can lead to significant speedups over both standard and gradient coded GD.
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2026 1verdicts
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Communication-Efficient Approximate Gradient Coding for Distributed Learning in Heterogeneous Systems
Derives a closed-form optimal gradient coding structure and bit allocation strategy to minimize residual error under an unbiasedness constraint for communication-efficient distributed learning in heterogeneous systems.