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DeepRecSys: A System for Optimizing End-To-End At-scale Neural Recommendation Inference

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arxiv 2001.02772 v1 pith:IC7IKOK7 submitted 2020-01-08 cs.DC

DeepRecSys: A System for Optimizing End-To-End At-scale Neural Recommendation Inference

classification cs.DC
keywords recommendationinfrastructureneuralsystemacrossat-scalecloudend-to-end
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural personalized recommendation is the corner-stone of a wide collection of cloud services and products, constituting significant compute demand of the cloud infrastructure. Thus, improving the execution efficiency of neural recommendation directly translates into infrastructure capacity saving. In this paper, we devise a novel end-to-end modeling infrastructure, DeepRecInfra, that adopts an algorithm and system co-design methodology to custom-design systems for recommendation use cases. Leveraging the insights from the recommendation characterization, a new dynamic scheduler, DeepRecSched, is proposed to maximize latency-bounded throughput by taking into account characteristics of inference query size and arrival patterns, recommendation model architectures, and underlying hardware systems. By doing so, system throughput is doubled across the eight industry-representative recommendation models. Finally, design, deployment, and evaluation in at-scale production datacenter shows over 30% latency reduction across a wide variety of recommendation models running on hundreds of machines.

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