parallel_ml_tutorial

ML Tutorial

A tutorial on parallel machine learning with scikit-learn and IPython

Tutorial on scikit-learn and IPython for parallel machine learning

GitHub

2k stars
183 watching
601 forks
Language: Jupyter Notebook
last commit: about 8 years ago

Related projects:

Repository Description Stars
ogrisel/notebooks A collection of incomplete machine learning experiments in Jupyter Notebooks 565
mitmath/18337 A course project on parallel computing and scientific machine learning using Julia programming language 225
visenger/handson-ml Teaches Machine Learning fundamentals in Python using Scikit-Learn and TensorFlow 6
catboost/tutorials A collection of tutorials and guides on using the CatBoost machine learning library for various tasks 1,033
ml-tooling/ml-workspace An all-in-one web-based IDE for machine learning and data science 3,434
gaelvaroquaux/scikit-learn-tutorial A tutorial on applying machine learning to practical situations using the scikit-learn library 129
amueller/scipy_2015_sklearn_tutorial Tutorials and materials for learning machine learning with Python using popular libraries like scikit-learn. 576
pbiecek/biocoll2021 An open-source tutorial project providing materials and datasets for teaching machine learning with R 8
codingtrain/machine-learning A collection of resources and examples around machine learning for education and development 955
shanky-21/machine_learning A collection of machine learning techniques taught through interactive Jupyter Notebooks 29
lehy/ocaml-sklearn Enables machine learning with scikit-learn in OCaml 34
okerew/okrolearn A Python machine learning library providing efficient array operations and neural network functionality 3
gmonce/scikit-learn-book Source code and data for a machine learning book with Python tutorials 393
josephmisiti/machine-learning-module A collection of machine learning tutorials and lectures from Professor M. A. Girolami's 2006 course. 465
simonmar/par-tutorial A tutorial and code samples for parallel and concurrent programming in Haskell. 219