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Distributed Equivalent Substitution Training for Large-Scale Recommender Systems

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arxiv 1909.04823 v5 pith:FU6IZTF3 submitted 2019-09-10 cs.LG cs.IRstat.ML

Distributed Equivalent Substitution Training for Large-Scale Recommender Systems

classification cs.LG cs.IRstat.ML
keywords traininglarge-scalerecommendersystemscommunicationdistributedequivalentdlrms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present Distributed Equivalent Substitution (DES) training, a novel distributed training framework for large-scale recommender systems with dynamic sparse features. DES introduces fully synchronous training to large-scale recommendation system for the first time by reducing communication, thus making the training of commercial recommender systems converge faster and reach better CTR. DES requires much less communication by substituting the weights-rich operators with the computationally equivalent sub-operators and aggregating partial results instead of transmitting the huge sparse weights directly through the network. Due to the use of synchronous training on large-scale Deep Learning Recommendation Models (DLRMs), DES achieves higher AUC(Area Under ROC). We successfully apply DES training on multiple popular DLRMs of industrial scenarios. Experiments show that our implementation outperforms the state-of-the-art PS-based training framework, achieving up to 68.7% communication savings and higher throughput compared to other PS-based recommender systems.

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