Dependency Packages
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      ActuaryUtilities.jl39Common functions in actuarial and financial routines
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      InfrastructureSystems.jl39Utility package for Sienna's simulation infrastructure
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      RHEOS.jl39RHEOS - Open Source Rheology data analysis software
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      Silico.jl39Unified contact simulaton and collision detection
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      StatisticalGraphics.jl38Data visualization in Julia
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      LaplaceRedux.jl38Effortless Bayesian Deep Learning through Laplace Approximation for Flux.jl neural networks.
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      SumProductNetworks.jl38Sum-product networks in Julia.
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      ClassicalOrthogonalPolynomials.jl38A Julia package for classical orthogonal polynomials and expansions
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      MeshArrays.jl38Gridded Earth variables, domain decomposition, and climate model C-grid support
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      Robotlib.jl38Robotics library written in the Julia programming language
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      SimpleGraphs.jl38Convenient way to handle simple graphs and digraphs
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      LibSndFile.jl38Julia Interface to libsndfile
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      PEPSKit.jl37Julia package for PEPS algorithms
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      MCMCBenchmarks.jl37Comparing performance and results of mcmc options using Julia
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      SIIPExamples.jl37Examples of how to use the modeling capabilities developed under the Scalable Integrated Infrastructure Planning Initiative at NREL.
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      HiQGA.jl37High Quality Geophysical Analysis provides a general purpose Bayesian and deterministic inversion framework for various geophysical methods and spatially distributed / timeseries data
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      Korg.jl37Fast 1D LTE stellar spectral synthesis
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      Glimmer.jl37A Julia package for UI development
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      UnitfulRecipes.jl37Plots.jl recipes for Unitful.jl arrays
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      Lindenmayer.jl37Draw Lindenmayer (L-Systems) recursive graphics
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      Sole.jl37Sole.jl – Long live transparent modeling!
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      SpikingNeuralNetworks.jl37Julia Spiking Neural Network Simulator
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      OPFLearn.jl37A Julia package that efficiently creates representative datasets for machine learning approaches to AC optimal power flow
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      RootedTrees.jl37A collection of functionality around rooted trees to generate order conditions for Runge-Kutta methods in Julia for differential equations and scientific machine learning (SciML)
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      Intervals.jl36Non-iterable ranges
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      SignalDecomposition.jl36Decompose a signal/timeseries into structure and noise or seasonal and residual components
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      Dolphyn.jl36DOLPHYN: Decision Optimization for Low Carbon Power and Hydrogen Nexus
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      ClimaLSM.jl36Clima's Land Model
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      ClimaLand.jl36Clima's Land Model
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      AIBECS.jl36The ideal tool for exploring global marine biogeochemical cycles.
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      Chemfiles.jl36Julia bindings to chemfiles
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      CDDLib.jl36Cdd wrapper module for Julia. cdd is a library for polyhedra manipulation such as double description and Fourier-Motzkin elimination
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      MonteCarloIntegration.jl36A package for multi-dimensional integration using monte carlo methods
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      BlobTracking.jl36Detect and track blobs in video
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      ExactDiagonalization.jl36Julia package for the exact diagonalization method in condensed matter physics.
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      SymbolicIntegration.jl35Julia implementations of symbolic integration algorithms
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      HierarchicalEOM.jl35An efficient Julia framwork for Hierarchical Equations of Motion (HEOM) in open quantum systems
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      NoiseRobustDifferentiation.jl35Total Variation Regularized Numerical Differentiation
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      ApproximateGPs.jl35Approximations for Gaussian processes: sparse variational inducing point approximations, Laplace approximation, ...
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      OpenStreetMapXPlot.jl35Plotting functionality for the OpenStreetMapX.jl (Supports Plots.jl with GR or PythonPlot backend)
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