Dependency Packages
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IncrementalInference.jl72Clique recycling non-Gaussian (multi-modal) factor graph solver; also see Caesar.jl.
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InfiniteArrays.jl72A Julia package for representing infinite-dimensional arrays
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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
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TuringGLM.jl71Bayesian Generalized Linear models using `@formula` syntax.
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IonSim.jl71A simple tool for simulating trapped ion systems
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QuantumCumulants.jl70Generalized mean-field equations in open quantum systems
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TaylorDiff.jl68Taylor-mode automatic differentiation for higher-order derivatives
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Turkie.jl68Turing + Makie = Turkie
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ODINN.jl68Global glacier model using Universal Differential Equations for climate-glacier interactions
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ToeplitzMatrices.jl66Fast matrix multiplication and division for Toeplitz matrices in Julia
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Mimi.jl66Integrated Assessment Modeling Framework
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DiffEqUncertainty.jl65Fast uncertainty quantification for scientific machine learning (SciML) and differential equations
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SciMLExpectations.jl65Fast uncertainty quantification for scientific machine learning (SciML) and differential equations
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QuantumOpticsBase.jl64Base functionality library for QuantumOptics.jl
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RoME.jl64Robot Motion Estimate: Tools, Variables, and Factors for SLAM in robotics; also see Caesar.jl.
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GaussianRandomFields.jl64A package for Gaussian random field generation in Julia
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ChemometricsTools.jl64A collection of tools for chemometrics and machine learning written in Julia.
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ChainPlots.jl64Visualization for Flux.Chain neural networks
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SingularIntegralEquations.jl62Julia package for solving singular integral equations
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ADSeismic.jl62A General Approach to Seismic Inversion Problems using Automatic Differentiation
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AtomicGraphNets.jl62Atomic graph models for molecules and crystals in Julia
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PencilArrays.jl60Distributed Julia arrays using the MPI protocol
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FluxOptTools.jl59Use Optim to train Flux models and visualize loss landscapes
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DeconvOptim.jl59A multi-dimensional, high performance deconvolution framework written in Julia Lang for CPUs and GPUs.
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FastChebInterp.jl58Fast multidimensional Chebyshev interpolation and regression in Julia
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Luna.jl58Nonlinear optical pulse propagator
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Dolo.jl57Economic modeling in Julia
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FluxMPI.jl56Distributed Data Parallel Training of Deep Neural Networks
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FourierAnalysis.jl56A Julia package for the Fourier analysis of Multivariate Data in the Frequency and Time-Frequency Domain
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BioMakie.jl56Plotting and interface tools for biology.
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FoldsCUDA.jl56Data-parallelism on CUDA using Transducers.jl and for loops (FLoops.jl)
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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.
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ITensorNetworks.jl55A package with general tools for working with higher-dimensional tensor networks based on ITensor.
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BEAST.jl54Boundary Element Analysis and Simulation Toolkit
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Sophon.jl54Efficient, Accurate, and Streamlined Training of Physics-Informed Neural Networks
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MeshViz.jl54Makie.jl recipes for visualization of Meshes.jl
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GpABC.jl54-
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ComplexityMeasures.jl54Estimators for probabilities, entropies, and other complexity measures derived from data in the context of nonlinear dynamics and complex systems
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FourierTools.jl54Tools for working with Fourier space.
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Survey.jl53Analysis of complex surveys
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