LGDCDSMLSep 20, 2018

Sparsified SGD with Memory

arXiv:1809.07599v2869 citations
Originality Incremental advance
AI Analysis

This provides a theoretical foundation for sparsification techniques in distributed optimization, addressing scalability issues for large-scale ML applications.

The paper tackles the communication bottleneck in distributed machine learning by analyzing SGD with sparsification and error compensation, showing it converges at the same rate as vanilla SGD while reducing communication by a factor of the problem dimension.

Huge scale machine learning problems are nowadays tackled by distributed optimization algorithms, i.e. algorithms that leverage the compute power of many devices for training. The communication overhead is a key bottleneck that hinders perfect scalability. Various recent works proposed to use quantization or sparsification techniques to reduce the amount of data that needs to be communicated, for instance by only sending the most significant entries of the stochastic gradient (top-k sparsification). Whilst such schemes showed very promising performance in practice, they have eluded theoretical analysis so far. In this work we analyze Stochastic Gradient Descent (SGD) with k-sparsification or compression (for instance top-k or random-k) and show that this scheme converges at the same rate as vanilla SGD when equipped with error compensation (keeping track of accumulated errors in memory). That is, communication can be reduced by a factor of the dimension of the problem (sometimes even more) whilst still converging at the same rate. We present numerical experiments to illustrate the theoretical findings and the better scalability for distributed applications.

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