Litcius/Paper detail

Accelerating Personalized Recommendation with Cross-level Near-Memory Processing

Haifeng Liu, Long Zheng, Yu Huang, Chaoqiang Liu, Xiangyu Ye, Jingrui Yuan, Xiaofei Liao, Hai Jin, Jingling Xue

202326 citationsDOI

Abstract

The memory-intensive embedding layers of the personalized recommendation systems are the performance bottleneck as they demand large memory bandwidth and exhibit irregular and sparse memory access patterns. Recent studies propose near memory processing (NMP) to accelerate memory-bound embedding operations. However, due to the load imbalance caused by the skewed access frequency of the embedding data, existing NMP solutions that exploit fine-grained memory parallelism fail to translate the increasingly massive internal bandwidth to performance improvements, leading to resource underutilization and hardware overhead.

Topics & Concepts

Computer scienceBottleneckOverhead (engineering)ExploitEmbeddingBandwidth (computing)Parallel computingMemory bandwidthMemory managementInterleaved memoryUniform memory accessComputer architectureEmbedded systemSemiconductor memoryComputer hardwareOperating systemComputer networkArtificial intelligenceComputer securityRecommender Systems and TechniquesCaching and Content DeliveryAdvanced Wireless Network Optimization