2020
DOI: 10.48550/arxiv.2012.13645
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Fundamental Limits on Energy-Delay-Accuracy of In-memory Architectures in Inference Applications

Abstract: This paper obtains fundamental limits on the computational precision of in-memory computing architectures (IMCs). An IMC noise model and associated SNR metrics are defined and their interrelationships analyzed to show that the accuracy of IMCs is fundamentally limited by the compute SNR (SNRa) of its analog core, and that activation, weight and output precision needs to be assigned appropriately for the final output SNR SNRT → SNRa. The minimum precision criterion (MPC) is proposed to minimize the ADC precisio… Show more

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“…This lack of understanding hinders the development of CAD optimization methods for IMCs. This article fills this gap (preliminary results in [31], preprint at [32]) by analytically deriving achievable SNR of commonly employed IMC topologies and quantifies their energy versus accuracy tradeoffs. Specifically, the contributions of this article are as follows.…”
mentioning
confidence: 99%
“…This lack of understanding hinders the development of CAD optimization methods for IMCs. This article fills this gap (preliminary results in [31], preprint at [32]) by analytically deriving achievable SNR of commonly employed IMC topologies and quantifies their energy versus accuracy tradeoffs. Specifically, the contributions of this article are as follows.…”
mentioning
confidence: 99%