Machine learning algorithms
A collection of minimal and clean implementations of machine learning algorithms.
Why?
This project is targeting people who want to learn internals of ml algorithms or implement them from scratch.
The code is much easier to follow than the optimized libraries and easier to play with.
All algorithms are implemented in Python, using numpy, scipy and autograd.
Implemented:
- [Deep learning (MLP, CNN, RNN, LSTM)] (mla/neuralnet)
- [Linear regression, logistic regression] (mla/linear_models.py)
- [Random Forests] (mla/ensemble/random_forest.py)
- [SVM with kernels (Linear, Poly, RBF)] (mla/svm)
- [K-Means] (mla/kmeans.py)
- [Gaussian Mixture Model] (mla/gaussian_mixture.py)
- [K-nearest neighbors] (mla/knn.py)
- [Naive bayes] (mla/naive_bayes.py)
- [PCA] (mla/pca.py)
- [Factorization machines] (mla/fm.py)
- [Gradient Boosting trees (also known as GBDT, GBRT, GBM, XGBoost)] (mla/ensemble/gbm.py)
TODO:
- t-SNE
- MCMC
- Word2vec
- Adaboost
- HMM
- Restricted Boltzmann machine
Installation
git clone https://github.com/rushter/MLAlgorithms
cd MLAlgorithms
pip install scipy numpy
pip install .
How to run examples without installation
cd MLAlgorithms
python -m examples.linear_models
How to run examples within Docker
cd MLAlgorithms
docker build -t mlalgorithms .
docker run --rm -it mlalgorithms bash
python -m examples.linear_models
Contributing
Your contributions are always welcome!