Skip to content

Latest commit

 

History

History
28 lines (21 loc) · 655 Bytes

README.md

File metadata and controls

28 lines (21 loc) · 655 Bytes

rust-ml-algo

This is collection of Machine Learning (ML) algorithms implemented in Rust Language.

The goal of this work:

  1. Understand deeply some ML algorithms
  2. Practice in Rust

For today here are:

  1. Clusterization:

    1. Agglomerative clusterization
    2. DBSCAN
    3. EM (Gaussian Mixture)
    4. K-Means
    5. Mean Shift
  2. Classification

    1. Decision tree
    2. Random forest
    3. Naive Bayes
  3. Regression

    1. Decision tree
    2. Random forest
    3. LinearRegression

Here is also rust-ml-algo-cases where benchmark tests based on real or well known datasets are written.