Enabling Hard Constraints in Differentiable Neural Network and Accelerator Co-Exploration
Autor: | Hong, Deokki, Choi, Kanghyun, Lee, Hye Yoon, Yu, Joonsang, Park, Noseong, Kim, Youngsok, Lee, Jinho |
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Rok vydání: | 2023 |
Předmět: | |
Druh dokumentu: | Working Paper |
Popis: | Co-exploration of an optimal neural architecture and its hardware accelerator is an approach of rising interest which addresses the computational cost problem, especially in low-profile systems. The large co-exploration space is often handled by adopting the idea of differentiable neural architecture search. However, despite the superior search efficiency of the differentiable co-exploration, it faces a critical challenge of not being able to systematically satisfy hard constraints such as frame rate. To handle the hard constraint problem of differentiable co-exploration, we propose HDX, which searches for hard-constrained solutions without compromising the global design objectives. By manipulating the gradients in the interest of the given hard constraint, high-quality solutions satisfying the constraint can be obtained. Comment: publisehd at DAC'22 |
Databáze: | arXiv |
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