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Best of Both Worlds: AutoML Codesign of a CNN and its Hardware Accelerator (2002.05022v2)

Published 11 Feb 2020 in eess.SP and cs.LG

Abstract: Neural architecture search (NAS) has been very successful at outperforming human-designed convolutional neural networks (CNN) in accuracy, and when hardware information is present, latency as well. However, NAS-designed CNNs typically have a complicated topology, therefore, it may be difficult to design a custom hardware (HW) accelerator for such CNNs. We automate HW-CNN codesign using NAS by including parameters from both the CNN model and the HW accelerator, and we jointly search for the best model-accelerator pair that boosts accuracy and efficiency. We call this Codesign-NAS. In this paper we focus on defining the Codesign-NAS multiobjective optimization problem, demonstrating its effectiveness, and exploring different ways of navigating the codesign search space. For CIFAR-10 image classification, we enumerate close to 4 billion model-accelerator pairs, and find the Pareto frontier within that large search space. This allows us to evaluate three different reinforcement-learning-based search strategies. Finally, compared to ResNet on its most optimal HW accelerator from within our HW design space, we improve on CIFAR-100 classification accuracy by 1.3% while simultaneously increasing performance/area by 41% in just~1000 GPU-hours of running Codesign-NAS.

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Authors (6)
  1. Mohamed S. Abdelfattah (37 papers)
  2. Ɓukasz Dudziak (41 papers)
  3. Thomas Chau (4 papers)
  4. Royson Lee (19 papers)
  5. Hyeji Kim (42 papers)
  6. Nicholas D. Lane (97 papers)
Citations (76)