TinyML for All: Full-stack Optimization for Diverse Edge AI Platforms

TinyML for All: Full-stack Optimization for Diverse Edge AI Platforms

tinyML via YouTube Direct link

Differentiable Augmentation

14 of 21

14 of 21

Differentiable Augmentation

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TinyML for All: Full-stack Optimization for Diverse Edge AI Platforms

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  1. 1 Intro
  2. 2 TinyML is about Constraints
  3. 3 Everything Together: Real-world Al on Tiny MCUS
  4. 4 Brief History of MCUNets
  5. 5 Opportunity in Fundamental ML Algorithms
  6. 6 New Problem: Imbalanced Memory Distribution of CNNS
  7. 7 Solving the Imbalance with Patch-based Inference
  8. 8 MCUNet-v2 Takeaways
  9. 9 Once-for-All Network
  10. 10 Problem in Training for Tiny Models
  11. 11 NetAug for TinyML
  12. 12 Problem: Training Memory is much larger
  13. 13 TinyTL: Up to 6.5x Memory Saving without Accuracy Loss
  14. 14 Differentiable Augmentation
  15. 15 TinyML for LIDAR & Point Cloud
  16. 16 Full Stack LIDAR & Point Cloud Processing
  17. 17 Takeaways: Coming Back to MCUNets
  18. 18 Fundamental Problems in TinyML
  19. 19 OmniML "Compress" the Model Before Training
  20. 20 OmniML: Enable TinyML for All Vision Tasks
  21. 21 Founding Team

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