2021
DOI: 10.48550/arxiv.2103.01206
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Gradient Coding with Dynamic Clustering for Straggler-Tolerant Distributed Learning

Abstract: Distributed implementations are crucial in speeding up large scale machine learning applications.Distributed gradient descent (GD) is widely employed to parallelize the learning task by distributing the dataset across multiple workers. A significant performance bottleneck for the per-iteration completion time in distributed synchronous GD is straggling workers. Coded distributed computation techniques have been introduced recently to mitigate stragglers and to speed up GD iterations by assigning redundant comp… Show more

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