Ecosyste.ms: Awesome

An open API service indexing awesome lists of open source software.

Awesome Lists | Featured Topics | Projects

awesome-julia-datasciences

Resources about Julia for DataSciences / Machine Learning
https://github.com/widged/awesome-julia-datasciences

Last synced: about 22 hours ago
JSON representation

  • APL

      • IJulia - language backend combined with the Jupyter interactive environment
    • General-Purpose Machine Learning

      • MachineLearning - Julia Machine Learning library.
      • MLBase - A set of functions to support the development of machine learning algorithms.
      • PGM - A Julia framework for probabilistic graphical models.
      • DA - Julia package for Regularized Discriminant Analysis.
      • Regression - Algorithms for regression analysis (e.g. linear regression and logistic regression).
      • Local Regression - Local regression, so smooooth!.
      • Naive Bayes - Simple Naive Bayes implementation in Julia.
      • Mixed Models - A Julia package for fitting (statistical) mixed-effects models.
      • Simple MCMC - basic mcmc sampler implemented in Julia.
      • Distance - Julia module for Distance evaluation.
      • Decision Tree - Decision Tree Classifier and Regressor.
      • Neural - A neural network in Julia.
      • MCMC - MCMC tools for Julia.
      • Mamba - Markov chain Monte Carlo (MCMC) for Bayesian analysis in Julia.
      • GLM - Generalized linear models in Julia.
      • Gaussian Processes - Julia package for Gaussian processes.
      • Online Learning
      • GLMNet - Julia wrapper for fitting Lasso/ElasticNet GLM models using glmnet.
      • Clustering - Basic functions for clustering data: k-means, dp-means, etc.
      • SVM - SVM's for Julia.
      • Kernel Density - Kernel density estimators for julia.
      • Dimensionality Reduction - Methods for dimensionality reduction.
      • NMF - A Julia package for non-negative matrix factorization.
      • ANN - Julia artificial neural networks.
      • Mocha - Deep Learning framework for Julia inspired by Caffe.
      • XGBoost - eXtreme Gradient Boosting Package in Julia.
      • ManifoldLearning - A Julia package for manifold learning and nonlinear dimensionality reduction.
      • Merlin - Flexible Deep Learning Framework in Julia.
      • ROCAnalysis - Receiver Operating Characteristics and functions for evaluation probabilistic binary classifiers.
      • GaussianMixtures - Large scale Gaussian Mixture Models.
      • ScikitLearn - Julia implementation of the scikit-learn API.
      • Knet - Koç University Deep Learning Framework.
      • Topic Models - TopicModels for Julia.
    • Data Analysis / Data Visualization

      • Graph Layout - Graph layout algorithms in pure Julia.
      • LightGraphs - Graph modeling and analysis.
      • Julia Data - library for working with tabular data in Julia.
      • Data Read - Read files from Stata, SAS, and SPSS.
      • Hypothesis Tests - Hypothesis tests for Julia.
      • Gadfly - Crafty statistical graphics for Julia.
      • Stats - Statistical tests for Julia.
      • RDataSets - Julia package for loading many of the data sets available in R.
      • Distributions - A Julia package for probability distributions and associated functions.
      • Data Arrays - Data structures that allow missing values.
      • Time Series - Time series toolkit for Julia.
      • Sampling - Basic sampling algorithms for Julia.
    • Misc Stuff / Presentations

      • DSP - Digital Signal Processing (filtering, periodograms, spectrograms, window functions).
      • JuliaCon Presentations - Presentations for JuliaCon.
      • SignalProcessing - Signal Processing tools for Julia.
      • Images - An image library for Julia.