Dependency Packages
- 
    
      SymbolicNumericIntegration.jl116SymbolicNumericIntegration.jl: Symbolic-Numerics for Solving Integrals
 - 
    
      InferOpt.jl113Combinatorial optimization layers for machine learning pipelines
 - 
    
      TSML.jl112A package for time series data processing, classification, clustering, and prediction.
 - 
    
      KomaMRI.jl111Koma is a Pulseq-compatible framework to efficiently simulate Magnetic Resonance Imaging (MRI) acquisitions. The main focus of this package is to simulate general scenarios that could arise in pulse sequence development.
 - 
    
      MLUtils.jl107Utilities and abstractions for Machine Learning tasks
 - 
    
      MagNav.jl101MagNav: airborne Magnetic anomaly Navigation
 - 
    
      Flux3D.jl1013D computer vision library in Julia
 - 
    
      ObjectDetector.jl90Pure Julia implementations of single-pass object detection neural networks.
 - 
    
      AdvancedMH.jl88Robust implementation for random-walk Metropolis-Hastings algorithms
 - 
    
      Dynare.jl86A Julia rewrite of Dynare: solving, simulating and estimating DSGE models.
 - 
    
      Mill.jl86Build flexible hierarchical multi-instance learning models.
 - 
    
      MRIReco.jl85Julia Package for MRI Reconstruction
 - 
    
      CalibrateEmulateSample.jl84Stochastic Optimization, Learning, Uncertainty and Sampling
 - 
    
      SolveDSGE.jl79A Julia package to solve, simulate, and analyze nonlinear DSGE models.
 - 
    
      EasyModelAnalysis.jl79High level functions for analyzing the output of simulations
 - 
    
      OutlierDetection.jl79Fast, scalable and flexible Outlier Detection with Julia
 - 
    
      AbstractMCMC.jl79Abstract types and interfaces for Markov chain Monte Carlo methods
 - 
    
      Pathfinder.jl75Preheat your MCMC
 - 
    
      DeepQLearning.jl72Implementation of the Deep Q-learning algorithm to solve MDPs
 - 
    
      HighDimPDE.jl71A Julia package for Deep Backwards Stochastic Differential Equation (Deep BSDE) and Feynman-Kac methods to solve high-dimensional PDEs without the curse of dimensionality
 - 
    
      TuringGLM.jl71Bayesian Generalized Linear models using `@formula` syntax.
 - 
    
      ODINN.jl68Global glacier model using Universal Differential Equations for climate-glacier interactions
 - 
    
      Turkie.jl68Turing + Makie = Turkie
 - 
    
      MLJTuning.jl67Hyperparameter optimization algorithms for use in the MLJ machine learning framework
 - 
    
      ChainPlots.jl64Visualization for Flux.Chain neural networks
 - 
    
      AtomicGraphNets.jl62Atomic graph models for molecules and crystals in Julia
 - 
    
      FluxOptTools.jl59Use Optim to train Flux models and visualize loss landscapes
 - 
    
      FoldsCUDA.jl56Data-parallelism on CUDA using Transducers.jl and for loops (FLoops.jl)
 - 
    
      AdvancedPS.jl56Implementation of advanced Sequential Monte Carlo and particle MCMC algorithms
 - 
    
      FluxMPI.jl56Distributed Data Parallel Training of Deep Neural Networks
 - 
    
      FMIFlux.jl55FMIFlux.jl is a free-to-use software library for the Julia programming language, which offers the ability to place FMUs (fmi-standard.org) everywhere inside of your ML topologies and still keep the resulting model trainable with a standard (or custom) FluxML training process.
 - 
    
      GlobalSensitivity.jl51Robust, Fast, and Parallel Global Sensitivity Analysis (GSA) in Julia
 - 
    
      EasyML.jl51A foolproof way of doing ML with GUI elements.
 - 
    
      MinimallyDisruptiveCurves.jl49Finds relationships between the parameters of a mathematical model
 - 
    
      UNet.jl48Generic UNet implementation written in pure Julia, based on Flux.jl
 - 
    
      RobustNeuralNetworks.jl48A Julia package for robust neural networks.
 - 
    
      Comrade.jl47-
 - 
    
      JsonGrinder.jl45Machine learning with Mill.jl for JSON documents
 - 
    
      ONNXNaiveNASflux.jl43Import/export ONNX models
 - 
    
      OperatorLearning.jl43No need to train, he's a smooth operator
 
                  Loading more...