2021
DOI: 10.48550/arxiv.2105.01064
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Alternate Model Growth and Pruning for Efficient Training of Recommendation Systems

Abstract: Deep learning recommendation systems at scale have provided remarkable gains through increasing model capacity (i.e. wider and deeper neural networks), but it comes at significant training cost and infrastructure cost. Model pruning is an effective technique to reduce computation overhead for deep neural networks by removing redundant parameters. However, modern recommendation systems are still thirsty for model capacity due to the demand for handling big data. Thus, pruning a recommendation model at scale res… Show more

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