18337

Parallel ML course

A course project on parallel computing and scientific machine learning using Julia programming language

18.337 - Parallel Computing and Scientific Machine Learning

GitHub

226 stars
7 watching
42 forks
Language: Jupyter Notebook
last commit: over 1 year ago

Related projects:

Repository Description Stars
ogrisel/parallel_ml_tutorial A tutorial on parallel machine learning with scikit-learn and IPython 1,593
zlpure/machine-learning--coursera A comprehensive solution to machine learning assignments on Coursera with MATLAB code 55
ml-tooling/ml-workspace An all-in-one web-based IDE for machine learning and data science 3,446
cstjean/scikitlearn.jl A Julia implementation of popular machine learning algorithms and interfaces. 547
josephmisiti/machine-learning-module A collection of machine learning tutorials and lectures from Professor M. A. Girolami's 2006 course. 465
ryuk17/machinelearning This is a collection of machine learning algorithms implemented in Python 3.6. 103
benhamner/machinelearning.jl A Julia library providing a consistent API for common machine learning algorithms 116
rishirdua/machine-learning-matlab Matlab implementation of machine learning algorithms 59
mitmath/18338 A repository for course materials and research on the mathematics of random matrices, focusing on theoretical foundations and computational methods. 94
apress/matlab-machine-learning Source code accompanying a textbook on machine learning in MATLAB 84
1094401996/machine-learning-coursera A collection of resources and exercises for learning machine learning using Matlab 95
pmerienne/trident-ml A real-time online machine learning library built on top of Storm and Trident. 381
dask/dask-ml A Python library for scalable machine learning using Dask alongside popular ML libraries 907
mostafa-samir/how-machine-learning-works An implementation of Manning Publications' How Machine Learning Works book in Python using Jupyter Notebook 4
sjhwang82/advancedml A comprehensive online course repository with lecture notes, schedules, and reading lists for advanced machine learning topics 368