# ProtoTorch Models [![GitHub tag (latest by date)](https://img.shields.io/github/v/tag/si-cim/prototorch_models?color=yellow&label=version)](https://github.com/si-cim/prototorch_models/releases) [![PyPI](https://img.shields.io/pypi/v/prototorch_models)](https://pypi.org/project/prototorch_models/) [![GitHub license](https://img.shields.io/github/license/si-cim/prototorch_models)](https://github.com/si-cim/prototorch_models/blob/master/LICENSE) Pre-packaged prototype-based machine learning models using ProtoTorch and PyTorch-Lightning. ## Installation To install this plugin, simply run the following command: ```sh pip install prototorch_models ``` **Installing the models plugin should automatically install a suitable version of** [ProtoTorch](https://github.com/si-cim/prototorch). The plugin should then be available for use in your Python environment as `prototorch.models`. ## Available models ### LVQ Family - Learning Vector Quantization 1 (LVQ1) - Generalized Learning Vector Quantization (GLVQ) - Generalized Relevance Learning Vector Quantization (GRLVQ) - Generalized Matrix Learning Vector Quantization (GMLVQ) - Limited-Rank Matrix Learning Vector Quantization (LiRaMLVQ) - Localized and Generalized Matrix Learning Vector Quantization (LGMLVQ) - Learning Vector Quantization Multi-Layer Network (LVQMLN) - Siamese GLVQ - Cross-Entropy Learning Vector Quantization (CELVQ) - Soft Learning Vector Quantization (SLVQ) - Robust Soft Learning Vector Quantization (RSLVQ) - Probabilistic Learning Vector Quantization (PLVQ) - Median-LVQ ### Other - k-Nearest Neighbors (KNN) - Neural Gas (NG) - Growing Neural Gas (GNG) ## Work in Progress - Classification-By-Components Network (CBC) - Learning Vector Quantization 2.1 (LVQ2.1) - Self-Organizing-Map (SOM) ## Planned models - Generalized Tangent Learning Vector Quantization (GTLVQ) - Self-Incremental Learning Vector Quantization (SILVQ) ## Development setup It is recommended that you use a virtual environment for development. If you do not use `conda`, the easiest way to work with virtual environments is by using [virtualenvwrapper](https://virtualenvwrapper.readthedocs.io/en/latest/). Once you've installed it with `pip install virtualenvwrapper`, you can do the following: ```sh export WORKON_HOME=~/pyenvs mkdir -p $WORKON_HOME source /usr/local/bin/virtualenvwrapper.sh # location may vary mkvirtualenv pt ``` Once you have a virtual environment setup, you can start install the `models` plugin with: ```sh workon pt git clone git@github.com:si-cim/prototorch_models.git cd prototorch_models git checkout dev pip install -e .[all] # \[all\] if you are using zsh or MacOS ``` To assist in the development process, you may also find it useful to install `yapf`, `isort` and `autoflake`. You can install them easily with `pip`. **Also, please avoid installing Tensorflow in this environment. It is known to cause problems with PyTorch-Lightning.** ## Contribution This repository contains definition for [git hooks](https://githooks.com). [Pre-commit](https://pre-commit.com) is automatically installed as development dependency with prototorch or you can install it manually with `pip install pre-commit`. Please install the hooks by running: ```bash pre-commit install pre-commit install --hook-type commit-msg ``` before creating the first commit. The commit will fail if the commit message does not follow the specification provided [here](https://www.conventionalcommits.org/en/v1.0.0/#specification). ## FAQ ### How do I update the plugin? If you have already cloned and installed `prototorch` and the `prototorch_models` plugin with the `-e` flag via `pip`, all you have to do is navigate to those folders from your terminal and do `git pull` to update.