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RecSSD: Near Data Processing for Solid State Drive Based Recommendation Inference

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arxiv 2102.00075 v1 pith:AKZANACM submitted 2021-01-29 cs.AR cs.LG

RecSSD: Near Data Processing for Solid State Drive Based Recommendation Inference

classification cs.AR cs.LG
keywords inferencelargemodelsrecommendationacrossdatalatencymemory
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural personalized recommendation models are used across a wide variety of datacenter applications including search, social media, and entertainment. State-of-the-art models comprise large embedding tables that have billions of parameters requiring large memory capacities. Unfortunately, large and fast DRAM-based memories levy high infrastructure costs. Conventional SSD-based storage solutions offer an order of magnitude larger capacity, but have worse read latency and bandwidth, degrading inference performance. RecSSD is a near data processing based SSD memory system customized for neural recommendation inference that reduces end-to-end model inference latency by 2X compared to using COTS SSDs across eight industry-representative models.

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