2019
DOI: 10.48550/arxiv.1912.12953
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RecNMP: Accelerating Personalized Recommendation with Near-Memory Processing

Abstract: Personalized recommendation systems leverage deep learning models and account for the majority of data center AI cycles. Their performance is dominated by memory-bound sparse embedding operations with unique irregular memory access patterns that pose a fundamental challenge to accelerate. This paper proposes a lightweight, commodity DRAM compliant, near-memory processing solution to accelerate personalized recommendation inference. The in-depth characterization of production-grade recommendation models shows t… Show more

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