2016
DOI: 10.48550/arxiv.1610.02273
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Near-Data Processing for Differentiable Machine Learning Models

Hyeokjun Choe,
Seil Lee,
Hyunha Nam
et al.

Abstract: Near-data processing (NDP) refers to augmenting memory or storage with processing power. Despite its potential for acceleration computing and reducing power requirements, only limited progress has been made in popularizing NDP for various reasons. Recently, two major changes have occurred that have ignited renewed interest and caused a resurgence of NDP. The first is the success of machine learning (ML), which often demands a great deal of computation for training, requiring frequent transfers of big data. The… Show more

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