There are no reviews yet. Be the first to send feedback to the community and the maintainers!
MITx_6.86x
Notes of MITx 6.86x - Machine Learning with Python: from Linear Models to Deep LearningBetaML.jl
Beta Machine Learning Toolkitjuliatutorial
A tutorial for the Julia language inspired by the Python tutorialSPMLJ
Introduction to Scientific Programming and Machine Learning with JuliaStrategicGames.jl
A set of functions in pure Julia for Game TheoryOdsIO.jl
ODS (LibreOffice, OpenOffice and many more..) I/O for Julia using the python ezodf moduleLAJuliaUtils.jl
Utility functions for Julia, mainly dataframes operationsMyAwesomePackage.jl
A dummy package for the Julia Concise TutorialMITx_18.6501x_fundamental_of_statistics
Students notes on the MITx course 18.6501x "Fundamental of Statistics"MITx-MicroMaster-Statistics-and-Data-Science
Cheatsheets for the subjects in the MITx MicroMaster in Statistics and Data ScienceJuliaMLCourse
Introduction to Scientific Programming and Machine Learning with JuliacommonDistributionsInJuliaPythonR
Common probability distributions in Julia, Python and RMITx_-_6.041x_Introduction_to_Probability
Cheatsheets for the MITx course 6.041x "Introduction to Probability"IntroductionToProbability
Clone of the (now open-sourced) Grinstead and Snell 1998 "Introduction to probability" book and related algorithmsGameTheoryNotes
Student's note on Game Theory, mainly from the Coursera "Game Theory" (Jackson, Leyton-Brown & Shoham) MOOCLove Open Source and this site? Check out how you can help us