Dependency Packages
-
MultivariateStats.jl375A Julia package for multivariate statistics and data analysis (e.g. dimension reduction)
-
Stheno.jl339Probabilistic Programming with Gaussian processes in Julia
-
DiffEqSensitivity.jl329A component of the DiffEq ecosystem for enabling sensitivity analysis for scientific machine learning (SciML). Optimize-then-discretize, discretize-then-optimize, adjoint methods, and more for ODEs, SDEs, DDEs, DAEs, etc.
-
Surrogates.jl329Surrogate modeling and optimization for scientific machine learning (SciML)
-
SciMLSensitivity.jl329A component of the DiffEq ecosystem for enabling sensitivity analysis for scientific machine learning (SciML). Optimize-then-discretize, discretize-then-optimize, adjoint methods, and more for ODEs, SDEs, DDEs, DAEs, etc.
-
Modia.jl321Modeling and simulation of multidomain engineering systems
-
LsqFit.jl313Simple curve fitting in Julia
-
GaussianProcesses.jl308A Julia package for Gaussian Processes
-
HypothesisTests.jl296Hypothesis tests for Julia
-
StateSpaceModels.jl271StateSpaceModels.jl is a Julia package for time-series analysis using state-space models.
-
MCMCChain.jl266Types and utility functions for summarizing Markov chain Monte Carlo simulations
-
MCMCChains.jl266Types and utility functions for summarizing Markov chain Monte Carlo simulations
-
MonteCarloMeasurements.jl261Propagation of distributions by Monte-Carlo sampling: Real number types with uncertainty represented by samples.
-
RxInfer.jl260Julia package for automated Bayesian inference on a factor graph with reactive message passing
-
Mamba.jl253Markov chain Monte Carlo (MCMC) for Bayesian analysis in julia
-
InfiniteOpt.jl251An intuitive modeling interface for infinite-dimensional optimization problems.
-
StochasticDiffEq.jl248Solvers for stochastic differential equations which connect with the scientific machine learning (SciML) ecosystem
-
Integrals.jl225A common interface for quadrature and numerical integration for the SciML scientific machine learning organization
-
BayesNets.jl217Bayesian Networks for Julia
-
AbstractGPs.jl217Abstract types and methods for Gaussian Processes.
-
TidierPlots.jl214Tidier data visualization in Julia, modeled after the ggplot2 R package.
-
Stan.jl211Stan.jl illustrates the usage of the 'single method' packages, e.g. StanSample, StanOptimize, etc.
-
ReservoirComputing.jl206Reservoir computing utilities for scientific machine learning (SciML)
-
Reinforce.jl201Abstractions, algorithms, and utilities for reinforcement learning in Julia
-
Hyperopt.jl200Hyperparameter optimization in Julia.
-
Bijectors.jl200Implementation of normalising flows and constrained random variable transformations
-
StochasticAD.jl199Research package for automatic differentiation of programs containing discrete randomness.
-
BAT.jl198A Bayesian Analysis Toolkit in Julia
-
Clapeyron.jl194Clapeyron provides a framework for the development and use of fluid-thermodynamic models, including SAFT, cubic, activity, multi-parameter, and COSMO-SAC.
-
VoronoiFVM.jl194Solution of nonlinear multiphysics partial differential equation systems using the Voronoi finite volume method
-
CausalInference.jl189Causal inference, graphical models and structure learning in Julia
-
ChaosTools.jl187Tools for the exploration of chaos and nonlinear dynamics
-
Caesar.jl184Robust robotic localization and mapping, together with NavAbility(TM). Reach out to info@wherewhen.ai for help.
-
HomotopyContinuation.jl181A Julia package for solving systems of polynomials via homotopy continuation.
-
TopOpt.jl181A package for binary and continuous, single and multi-material, truss and continuum, 2D and 3D topology optimization on unstructured meshes using automatic differentiation in Julia.
-
KernelDensity.jl177Kernel density estimators for Julia
-
EvoTrees.jl175Boosted trees in Julia
-
InteractiveChaos.jl173Fast, general-purpose interactive applications for complex systems
-
SeaPearl.jl168Julia hybrid constraint programming solver enhanced by a reinforcement learning driven search.
-
TuringModels.jl163Implementations of the models from the Statistical Rethinking book with Turing.jl
Loading more...