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Parle: parallelizing stochastic gradient descent

3 July 2017
Pratik Chaudhari
Carlo Baldassi
R. Zecchina
Stefano Soatto
Ameet Talwalkar
Adam M. Oberman
    ODL
    FedML
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Abstract

We propose a new algorithm called Parle for parallel training of deep networks that converges 2-4x faster than a data-parallel implementation of SGD, while achieving significantly improved error rates that are nearly state-of-the-art on several benchmarks including CIFAR-10 and CIFAR-100, without introducing any additional hyper-parameters. We exploit the phenomenon of flat minima that has been shown to lead to improved generalization error for deep networks. Parle requires very infrequent communication with the parameter server and instead performs more computation on each client, which makes it well-suited to both single-machine, multi-GPU settings and distributed implementations.

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