awesome-AutoML-and-Lightweight-Models
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.
How to download and setup awesome-AutoML-and-Lightweight-Models
Open terminal and run command
git clone https://github.com/guan-yuan/awesome-AutoML-and-Lightweight-Models.git
git clone is used to create a copy or clone of awesome-AutoML-and-Lightweight-Models repositories.
You pass git clone a repository URL. it supports a few different network protocols and corresponding URL formats.
Also you may download zip file with awesome-AutoML-and-Lightweight-Models https://github.com/guan-yuan/awesome-AutoML-and-Lightweight-Models/archive/master.zip
Or simply clone awesome-AutoML-and-Lightweight-Models with SSH
[email protected]:guan-yuan/awesome-AutoML-and-Lightweight-Models.git
If you have some problems with awesome-AutoML-and-Lightweight-Models
You may open issue on awesome-AutoML-and-Lightweight-Models support forum (system) here: https://github.com/guan-yuan/awesome-AutoML-and-Lightweight-Models/issuesSimilar to awesome-AutoML-and-Lightweight-Models repositories
Here you may see awesome-AutoML-and-Lightweight-Models alternatives and analogs
gold-miner tensorflow keras TensorFlow-Examples data-science-ipython-notebooks machine-learning-curriculum handson-ml tflearn EffectiveTensorflow TensorFlow-Tutorials TensorLayer seq2seq onnx tutorials TensorFlow-World tensorflow_cookbook tensorflow-nlp darkflow sketch-code deepo faceai gocv object_detector_app ChosunTruck lambda-packs TensorFlow-Book DeepSpeech Mask_RCNN stanford-tensorflow-tutorials facenet