2023
DOI: 10.1109/access.2023.3324375
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Framework for In-Memory Computing Based on Memristor and Memcapacitor for On-Chip Training

Ankur Singh,
Byung-Geun Lee

Abstract: Memristive crossbar arrays have gained considerable attention from researchers to perform analog in-memory vector-matrix multiplications in machine learning accelerators with low power and constant computational time. This work introduces a comprehensive framework for co-designing the software and hardware for deep neural networks (DNN) based on memristive and memcapacitive crossbars while considering various non-idealities. The model takes into account device-level factors, including conductance variation, cy… Show more

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