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Hardware-aware training for large-scale and diverse deep learning inference workloads using in-memory computing-based accelerators.

Authors :
Rasch MJ
Mackin C
Le Gallo M
Chen A
Fasoli A
Odermatt F
Li N
Nandakumar SR
Narayanan P
Tsai H
Burr GW
Sebastian A
Narayanan V
Source :
Nature communications [Nat Commun] 2023 Aug 30; Vol. 14 (1), pp. 5282. Date of Electronic Publication: 2023 Aug 30.
Publication Year :
2023

Abstract

Analog in-memory computing-a promising approach for energy-efficient acceleration of deep learning workloads-computes matrix-vector multiplications but only approximately, due to nonidealities that often are non-deterministic or nonlinear. This can adversely impact the achievable inference accuracy. Here, we develop an hardware-aware retraining approach to systematically examine the accuracy of analog in-memory computing across multiple network topologies, and investigate sensitivity and robustness to a broad set of nonidealities. By introducing a realistic crossbar model, we improve significantly on earlier retraining approaches. We show that many larger-scale deep neural networks-including convnets, recurrent networks, and transformers-can in fact be successfully retrained to show iso-accuracy with the floating point implementation. Our results further suggest that nonidealities that add noise to the inputs or outputs, not the weights, have the largest impact on accuracy, and that recurrent networks are particularly robust to all nonidealities.<br /> (© 2023. Springer Nature Limited.)

Details

Language :
English
ISSN :
2041-1723
Volume :
14
Issue :
1
Database :
MEDLINE
Journal :
Nature communications
Publication Type :
Academic Journal
Accession number :
37648721
Full Text :
https://doi.org/10.1038/s41467-023-40770-4