Category encoders integrated with Fast.ai
Project description
fastai-category-encoders
Get Started
Install as a Python package
pip install git+https://github.com/kireygroup/fastai-category-encoders
Prerequisites
To run this project you need to install Docker or Nvidia-Docker.
Build the image
An utility script can be found in bin/build.sh
:
./bin/build.sh
Run the image
If you want to use Docker (on CPU):
./bin/run-cpu.sh
If you want to run the container using Nvidia-Docker:
./bin/run-cuda.sh
Note: if you plan on using Nvidia-Docker, you should use one of the images available on the Nvidia Container Repository.
The container will start a new Jupyter Notebook server on port 8888.
Note that the fastai_category_encoders folder will be mounted inside the container, so any change you make to the source files or notebooks will be replicated on both systems.
Project details
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