Dependency Packages
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MLJ.jl1779A Julia machine learning framework
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MLJBase.jl160Core functionality for the MLJ machine learning framework
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ConformalPrediction.jl135Predictive Uncertainty Quantification through Conformal Prediction for Machine Learning models trained in MLJ.
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CounterfactualExplanations.jl117A package for Counterfactual Explanations and Algorithmic Recourse in Julia.
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OutlierDetection.jl79Fast, scalable and flexible Outlier Detection with Julia
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MLJTuning.jl67Hyperparameter optimization algorithms for use in the MLJ machine learning framework
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LaplaceRedux.jl38Effortless Bayesian Deep Learning through Laplace Approximation for Flux.jl neural networks.
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TreeParzen.jl35TreeParzen.jl, a pure Julia hyperparameter optimiser with MLJ integration
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Fairness.jl31Julia Toolkit with fairness metrics and bias mitigation algorithms
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SIRUS.jl30Interpretable Machine Learning via Rule Extraction
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Imbalance.jl28A Julia toolbox with resampling methods to correct for class imbalance.
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ContinuousNormalizingFlows.jl22Implementations of Infinitesimal Continuous Normalizing Flows Algorithms in Julia
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RAPIDS.jl17An unofficial Julia wrapper for the RAPIDS.ai ecosystem using PythonCall.jl
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TMLE.jl16A pure Julia implementation of the Targeted Minimum Loss-based Estimation
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SossMLJ.jl15SossMLJ makes it easy to build MLJ machines from user-defined models from the Soss probabilistic programming language
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StatisticalMeasures.jl14Measures (metrics) for statistics and machine learning
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ADRIA.jl12ADRIA: Adaptive Dynamic Reef Intervention Algorithms. A multi-criteria decision support platform for informing reef restoration and adaptation interventions.
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MLJIteration.jl10A package for wrapping iterative MLJ models in a control strategy
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JLBoostMLJ.jl9MLJ.jl interface for JLBoost.jl
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MLJJLBoost.jl9MLJ.jl interface for JLBoost.jl
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MLJFlow.jl8Connecting MLJ and MLFlow
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CEEDesigns.jl7A decision-making framework for the cost-efficient design of experiments, balancing the value of acquired experimental evidence and incurred costs.
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MLJParticleSwarmOptimization.jl7-
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AlgorithmicRecourseDynamics.jl6A Julia package for modelling Algorithmic Recourse Dynamics.
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MLJEnsembles.jl6-
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Recommenders.jl6-
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AutomationLabs.jl5A powerful, no code solution for control and systems engineering
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SigmaRidgeRegression.jl5Optimally tuned ridge regression when features can be partitioned into groups.
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MLJBalancing.jl5A package with exported learning networks that combine resampling methods from Imbalance.jl and classification models from MLJ
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ModelMiner.jl4One package to train them all
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MLJTestIntegration.jl4Utilities to test implementations of the MLJ model interface and provide integration tests for the MLJ ecosystem
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AutomationLabsIdentification.jl4Dynamical systems identification
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EBayes.jl4Empirical Bayes shrinkage in Julia
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GenerativeTopographicMapping.jl3A Julia package for Generative Topographic Mapping
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InvariantCausalPrediction.jl3Invariant Causal Prediction in pure Julia
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MulticlassPerceptron.jl3MulticlassPerceptron.jl
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OutlierDetectionTest.jl2Test Toolkit for Outlier Detection Algorithms
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Kinbiont.jl2Ecosystem of numerical methods for microbial kinetics data analysis, from preprocessing to result interpretation.
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OutlierDetectionData.jl2Easy way to use public outlier detection datasets with Julia
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SmartML.jl2-
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