Using AI to Design Energy-Efficient AI Accelerators for the Edge

Using AI to Design Energy-Efficient AI Accelerators for the Edge

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TinyML for all developers Dataset

24 of 25

24 of 25

TinyML for all developers Dataset

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Using AI to Design Energy-Efficient AI Accelerators for the Edge

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  1. 1 Intro
  2. 2 Next tiny ML Talks
  3. 3 Computing Hardware Has Been in Every Corner
  4. 4 Today's New Challenges
  5. 5 One Network Cannot work for All Platforms
  6. 6 Datasets/Applications, Hardware, and Neural Networks
  7. 7 Outline of Talk
  8. 8 AutoML: Neural Architecture Search (NAS)
  9. 9 AutoML: Differentiable Architecture Search
  10. 10 AutoML: Hardware-Aware NAS
  11. 11 AutoML: Network-FPGA Co-Design Using NAS
  12. 12 Two Paths from Cloud to Tiny ML
  13. 13 Motivation: Template Pool
  14. 14 Motivation: Heterogeneous ASICS
  15. 15 Problem Statement
  16. 16 ASICNAS Framework
  17. 17 ASICNAS: Controller and Selector
  18. 18 ASICNAS: Evaluator
  19. 19 Results: Design Space Exploration
  20. 20 Comparison Results on Multi-Dataset Workloads
  21. 21 Future Work: Network-CIM Co-Design to Resolve Memory Bot
  22. 22 Conclusion: Take Away (1)
  23. 23 Arm: The Software and Hardware Foundation for tiny
  24. 24 TinyML for all developers Dataset
  25. 25 Qeexo AutoML for.Embedded Al

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