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Universally Slimmable Networks and Improved Training Techniques
[article]
2019
arXiv
pre-print
Slimmable networks are a family of neural networks that can instantly adjust the runtime width. The width can be chosen from a predefined widths set to adaptively optimize accuracy-efficiency trade-offs at runtime. In this work, we propose a systematic approach to train universally slimmable networks (US-Nets), extending slimmable networks to execute at arbitrary width, and generalizing to networks both with and without batch normalization layers. We further propose two improved training
arXiv:1903.05134v2
fatcat:vovzmh7pyjdzta7du66ji27g6q