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  4. DL-RSIM: A simulation framework to enable reliable ReRAM-based accelerators for deep learning
 
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DL-RSIM: A simulation framework to enable reliable ReRAM-based accelerators for deep learning

Journal
IEEE/ACM International Conference on Computer-Aided Design, Digest of Technical Papers, ICCAD
Date Issued
2018
Author(s)
Lin, M.-Y.
Cheng, H.-Y.
Lin, W.-T.
Yang, T.-H.
Tseng, I.-C.
Yang, C.-L.
Hu, H.-W.
Chang, H.-S.
Li, H.-P.
CHIA-LIN YANG  
DOI
10.1145/3240765.3240800
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/487719
URL
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85058160814&doi=10.1145%2f3240765.3240800&partnerID=40&md5=14a0105cb1e5abbb0b5831902d7fd955
Abstract
Memristor-based deep learning accelerators provide a promising solution to improve the energy efficiency of neuromorphic computing systems. However, the electrical properties and crossbar structure of memristors make these accelerators error-prone. To enable reliable memristor-based accelerators, a simulation platform is needed to precisely analyze the impact of non-ideal circuit and device properties on the inference accuracy. In this paper, we propose a flexible simulation framework, DL-RSIM, to tackle this challenge. DL-RSIM simulates the error rates of every sum-of-products computation in the memristor-based accelerator and injects the errors in the targeted TensorFlow-based neural network model. A rich set of reliability impact factors are explored by DL-RSIM, and it can be incorporated with any deep learning neural network implemented by TensorFlow. Using three representative convolutional neural networks as case studies, we show that DL-RSIM can guide chip designers to choose a reliability-friendly design option and develop reliability optimization techniques. © 2018 ACM.
SDGs

[SDGs]SDG7

Other Subjects
Acceleration; Computer aided design; Energy efficiency; Errors; Green computing; Memristors; Neural networks; Reliability; RRAM; Convolutional neural network; Cross-bar structures; Flexible simulation; Learning neural networks; Neural network model; Neuromorphic computing; Reliability optimization; Simulation framework; Deep learning
Type
conference paper

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