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A Frequency-aware Software Cache for Large Recommendation System Embeddings

Authors :
Fang, Jiarui
Zhang, Geng
Han, Jiatong
Li, Shenggui
Bian, Zhengda
Li, Yongbin
Liu, Jin
You, Yang
Publication Year :
2022

Abstract

Deep learning recommendation models (DLRMs) have been widely applied in Internet companies. The embedding tables of DLRMs are too large to fit on GPU memory entirely. We propose a GPU-based software cache approaches to dynamically manage the embedding table in the CPU and GPU memory space by leveraging the id's frequency statistics of the target dataset. Our proposed software cache is efficient in training entire DLRMs on GPU in a synchronized update manner. It is also scaled to multiple GPUs in combination with the widely used hybrid parallel training approaches. Evaluating our prototype system shows that we can keep only 1.5% of the embedding parameters in the GPU to obtain a decent end-to-end training speed.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.05321
Document Type :
Working Paper