A Design Methodology for Fault-Tolerant Computing Using Astrocyte Neural Networks
POSTER
Abstract
We propose a design methodology to facilitate fault tolerance of deep learning models. First, we implement a many-core fault-tolerant neuromorphic hardware design, where neuron and synapse circuitries in each neuromorphic core are enclosed with astrocyte circuitries, the star-shaped glial cells of the brain that facilitate self-repair by restoring the spike firing frequency of a failed neuron using a closed-loop retrograde feedback signal. Next, we introduce astrocytes in a deep-learning model to achieve the required degree of tolerance to hardware faults. Finally, we use a system software to partition the astrocyte-enabled model into clusters and implement them on the proposed fault-tolerant neuromorphic design. We evaluate this design methodology using seven deep-learning inference models and show that it is both area- and power-efficient
Publication: Isik, Murat, et al. "A design methodology for fault-tolerant computing using astrocyte neural networks." Proceedings of the 19th ACM International Conference on Computing Frontiers. 2022.<br><br>Huynh, P. K., Varshika, M. L., Paul, A., Isik, M., Balaji, A., & Das, A. (2022). Implementing spiking neural networks on neuromorphic architectures: A review. arXiv preprint arXiv:2202.08897.<br><br>Derebasi, O., Isik, M., Demirag, O., Duru, D. G., & Das, A. (2022). A Coupled Neural Circuit Design for Guillain-Barre Syndrome. arXiv preprint arXiv:2206.13056.
Presenters
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Murat Isik
Drexel University
Authors
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Murat Isik
Drexel University