AI Packages
-
Keras.jl20Run keras models with a Flux backend
-
Kernels.jl78Machine learning kernels in Julia.
-
Knet.jl1427Koç University deep learning framework.
-
KnetOnnx.jl3Move your models to Knet!
-
KUparser.jl8Dependency parsing with word vectors.
-
Ladder.jl17A reliable leaderboard algorithm for machine learning competitions
-
Languages.jl55A package for working with human languages
-
Learn.jl2Base framework library for machine learning packages.
-
LearnBase.jl17Abstractions for Julia Machine Learning Packages
-
LearningStrategies.jl28A generic and modular framework for building custom iterative algorithms in Julia
-
Levenshtein.jl14Levenshtein distance between two strings in julia
-
LIBLINEAR.jl12LIBLINEAR bindings for Julia
-
LIBSVM.jl88LIBSVM bindings for Julia
-
LightGBM.jl93Julia FFI interface to Microsoft's LightGBM package
-
Lilith.jl44Renamed to Avalon.jl
-
LossFunctions.jl147Julia package of loss functions for machine learning.
-
LTSV.jl2Labeled Tab Separated Values (LTSV) parser in Julia.
-
Lux.jl479Elegant & Performant Scientific Machine Learning in Julia
-
MachineLearning.jl116Julia Machine Learning library
-
MCTS.jl73Monte Carlo Tree Search for Markov decision processes using the POMDPs.jl framework
-
MeCab.jl21Julia binding of Japanese morphological analyzer MeCab
-
MelGeneralizedCepstrums.jl20Mel-Generalized Cepstrum analysis
-
Merlin.jl144Deep Learning for Julia
-
Metalhead.jl328Computer vision models for Flux
-
MFCC.jl33Mel Frequency Cepstral Coefficients calculation for Julia
-
MIDI.jl67A Julia library for handling MIDI files
-
Mill.jl86Build flexible hierarchical multi-instance learning models.
-
MIPVerify.jl113Evaluating Robustness of Neural Networks with Mixed Integer Programming
-
Mitosis.jl34Automatic probabilistic programming for scientific machine learning and dynamical models
-
ML4H.jl2Machine Learning for Hackers in Julia
-
MLBase.jl186A set of functions to support the development of machine learning algorithms
-
MLDataPattern.jl61Utility package for subsetting, resampling, iteration, and partitioning of various types of data sets in Machine Learning
-
MLDatasets.jl227Utility package for accessing common Machine Learning datasets in Julia
-
MLDataUtils.jl102Utility package for generating, loading, splitting, and processing Machine Learning datasets
-
MLJ.jl1779A Julia machine learning framework
-
MLJBase.jl160Core functionality for the MLJ machine learning framework
-
MLJFlux.jl145Wrapping deep learning models from the package Flux.jl for use in the MLJ.jl toolbox
-
MLJLinearModels.jl81Generalized Linear Regressions Models (penalized regressions, robust regressions, ...)
-
MLJModelInterface.jl37Lightweight package to interface with MLJ
-
MLJModels.jl80Home of the MLJ model registry and tools for model queries and mode code loading
Loading more...