Core functionality for the MLJ machine learning framework
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Updated
Jul 19, 2024 - Julia
Core functionality for the MLJ machine learning framework
A set of tutorials to show how to use Julia for data science (DataFrames, MLJ, ...)
An API for dispatching on the "scientific" type of data instead of the machine type
Generalized Linear Regressions Models (penalized regressions, robust regressions, ...)
Home of the MLJ model registry and tools for model queries and mode code loading
Hyperparameter optimization algorithms for use in the MLJ machine learning framework
Parallel & lightning fast implementation of available classic and contemporary variants of the KMeans clustering algorithm
Julia Toolkit with fairness metrics and bias mitigation algorithms
Package providing K-nearest neighbor regressors and classifiers, for use with the MLJ machine learning framework.
SossMLJ makes it easy to build MLJ machines from user-defined models from the Soss probabilistic programming language
MLJ.jl interface for GLM.jl models
An Introduction to Artificial Intelligence with Julia
Connecting MLJ and MLFlow
MLJ.jl interface for JLBoost.jl
Repository implementing MLJ interface for MultivariateStats models.
One package to train them all
Julia learning resources collected from various Julia Computing repos!
A Least Squares Support Vector Machine implementation in pure Julia
Repository housing feature selection algorithms for use with the machine learning toolbox MLJ.
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