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1
Intro
2
Image Neural Networks
3
Evolving Layers
4
Search Space
5
Method Search
6
Mutation
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Tournament
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Pareto Frontier
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Rejection Step
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Rejection Criteria
11
Results
Description:
Explore the evolution of normalization-activation layers in deep neural networks through this informative video. Dive into a proposed evolutionary search method aimed at discovering the optimal combined normalization-activation layer for specific settings. Learn about EvoNorms, a set of newly discovered layers that surpass existing design patterns, with some being independent from batch statistics. Examine the effectiveness of these layers across various image classification models, including ResNets, MobileNets, and EfficientNets, as well as their transferability to instance segmentation and image synthesis tasks. Gain insights into the search algorithm, mutation process, tournament selection, Pareto frontier, and rejection criteria used in the evolutionary approach. Understand the implications of this research for improving deep neural network performance across different applications.

Evolving Normalization-Activation Layers

Yannic Kilcher
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