O-HAS: Optical Hardware Accelerator Search for Boosting Both Acceleration Performance and Development Speed
Mengquan Li, Zhongzhi Yu, Yongan Zhang, Yonggan Fu, Yingyan Lin

TL;DR
O-HAS is a pioneering framework that automates the search for optical DNN accelerators, significantly enhancing both their performance and development speed through integrated predictive and exploration tools.
Contribution
This paper introduces the first automated search framework for optical DNN accelerators, combining an energy and latency predictor with a design space exploration engine.
Findings
O-HAS effectively predicts optical accelerator performance metrics.
The framework identifies optimal accelerator designs with improved efficiency.
Experimental results validate the framework's accuracy and efficiency.
Abstract
The recent breakthroughs and prohibitive complexities of Deep Neural Networks (DNNs) have excited extensive interest in domain-specific DNN accelerators, among which optical DNN accelerators are particularly promising thanks to their unprecedented potential of achieving superior performance-per-watt. However, the development of optical DNN accelerators is much slower than that of electrical DNN accelerators. One key challenge is that while many techniques have been developed to facilitate the development of electrical DNN accelerators, techniques that support or expedite optical DNN accelerator design remain much less explored, limiting both the achievable performance and the innovation development of optical DNN accelerators. To this end, we develop the first-of-its-kind framework dubbed O-HAS, which for the first time demonstrates automated Optical Hardware Accelerator Search for…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Neural Network Applications · Ferroelectric and Negative Capacitance Devices
