R&D: Design-Technology Co-Optimization for NVM-Based Neuromorphic Processing Elements
Evaluations with recent neuromorphic hardware architecture show that proposed design-technology co-optimization approach improves performance and energy efficiency of ML inference tasks without incurring high cost-per-bit.
This is a Press Release edited by StorageNewsletter.com on May 2, 2023 at 2:00 pmACM Transactions on Embedded Computing Systems has published an article written by Shihao Song, Adarsha Balaji, Anup Das, and Nagarajan Kandasamy, Drexel University, Philadelphia, PA, USA.
Abstract: “An emerging use case of machine learning (ML) is to train a model on a high-performance system and deploy the trained model on energy-constrained embedded systems. Neuromorphic hardware platforms, which operate on principles of the biological brain, can significantly lower the energy overhead of an ML inference task, making these platforms an attractive solution for embedded ML systems. We present a design-technology tradeoff analysis to implement such inference tasks on the processing elements (PEs) of a non-volatile memory (NVM)-based neuromorphic hardware. Through detailed circuit-level simulations at scaled process technology nodes, we show the negative impact of technology scaling on the information-processing latency, which impacts the quality of service of an embedded ML system. At a finer granularity, the latency inside a PE depends on (1) the delay introduced by parasitic components on its current paths, and (2) the varying delay to sense different resistance states of its NVM cells. Based on these two observations, we make the following three contributions. First, on the technology front, we propose an optimization scheme where the NVM resistance state that takes the longest time to sense is set on current paths having the least delay, and vice versa, reducing the average PE latency, which improves the quality of service. Second, on the architecture front, we introduce isolation transistors within each PE to partition it into regions that can be individually power-gated, reducing both latency and energy. Finally, on the system-software front, we propose a mechanism to leverage the proposed technological and architectural enhancements when implementing an ML inference task on neuromorphic PEs of the hardware. Evaluations with a recent neuromorphic hardware architecture show that our proposed design-technology co-optimization approach improves both performance and energy efficiency of ML inference tasks without incurring high cost-per-bit.“