guan-yuan / Awesome-AutoML-and-Lightweight-ModelsLinks
A list of high-quality (newest) AutoML works and lightweight models including 1.) Neural Architecture Search, 2.) Lightweight Structures, 3.) Model Compression, Quantization and Acceleration, 4.) Hyperparameter Optimization, 5.) Automated Feature Engineering.
☆852Updated 4 years ago
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