Deep learning acceleration based on in-memory computing

Volume: 63, Issue: 6, Pages: 7:1 - 7:16
Published: Nov 1, 2019
Abstract
Performing computations on conventional von Neumann computing systems results in a significant amount of data being moved back and forth between the physically separated memory and processing units. This costs time and energy, and constitutes an inherent performance bottleneck. In-memory computing is a novel non-von Neumann approach, where certain computational tasks are performed in the memory itself. This is enabled by the physical attributes...
Paper Details
Title
Deep learning acceleration based on in-memory computing
Published Date
Nov 1, 2019
Volume
63
Issue
6
Pages
7:1 - 7:16
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