2021
DOI: 10.48550/arxiv.2105.08820
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RecPipe: Co-designing Models and Hardware to Jointly Optimize Recommendation Quality and Performance

Abstract: Deep learning recommendation systems must provide high quality, personalized content under strict tail-latency targets and high system loads. This paper presents RecPipe, a system to jointly optimize recommendation quality and inference performance. Central to RecPipe is decomposing recommendation models into multi-stage pipelines to maintain quality while reducing compute complexity and exposing distinct parallelism opportunities. RecPipe implements an inference scheduler to map multi-stage recommendation eng… Show more

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