Decentralized Deep Learning with Arbitrary Communication Compression
Decentralized training of deep learning models is a key element for enabling data privacy and on-device learning over networks, as well as for efficient scaling to large compute clusters. As current approaches suffer from limited bandwidth of the network, we propose the use of communication compress...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
22.07.2019
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Subjects | |
Online Access | Get full text |
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Summary: | Decentralized training of deep learning models is a key element for enabling
data privacy and on-device learning over networks, as well as for efficient
scaling to large compute clusters. As current approaches suffer from limited
bandwidth of the network, we propose the use of communication compression in
the decentralized training context. We show that Choco-SGD $-$ recently
introduced and analyzed for strongly-convex objectives only $-$ converges under
arbitrary high compression ratio on general non-convex functions at the rate
$O\bigl(1/\sqrt{nT}\bigr)$ where $T$ denotes the number of iterations and $n$
the number of workers. The algorithm achieves linear speedup in the number of
workers and supports higher compression than previous state-of-the art methods.
We demonstrate the practical performance of the algorithm in two key scenarios:
the training of deep learning models (i) over distributed user devices,
connected by a social network and (ii) in a datacenter (outperforming
all-reduce time-wise). |
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DOI: | 10.48550/arxiv.1907.09356 |