Dependency Packages
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RDatasets.jl160Julia package for loading many of the data sets available in R
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MadNLP.jl160A solver for nonlinear programming
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MLJBase.jl160Core functionality for the MLJ machine learning framework
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ImplicitGlobalGrid.jl159Almost trivial distributed parallelization of stencil-based GPU and CPU applications on a regular staggered grid
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Yota.jl158Reverse-mode automatic differentiation in Julia
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Finch.jl158Sparse tensors in Julia and more! Datastructure-driven array programing language.
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MethodOfLines.jl157Automatic Finite Difference PDE solving with Julia SciML
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DynamicPPL.jl157Implementation of domain-specific language (DSL) for dynamic probabilistic programming
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GPUCompiler.jl156Reusable compiler infrastructure for Julia GPU backends.
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PProf.jl155Export Julia profiles to the pprof format
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Tulip.jl154Interior-point solver in pure Julia
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Queryverse.jl153A meta package for data science in julia
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GeophysicalFlows.jl153Geophysical fluid dynamics pseudospectral solvers with Julia and FourierFlows.jl.
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Olive.jl152Pure julia notebooks
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Plasmo.jl151A Platform for Scalable Modeling and Optimization
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DifferentiableCollisions.jl151Differentiable collision detection for polytopes, capsules, cylinders, cones, spheres, and polygons.
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DistributionsAD.jl151Automatic differentiation of Distributions using Tracker, Zygote, ForwardDiff and ReverseDiff
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LinearOperators.jl150Linear Operators for Julia
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RayTracer.jl150Differentiable RayTracing in Julia
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ForneyLab.jl149Julia package for automatically generating Bayesian inference algorithms through message passing on Forney-style factor graphs.
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InvertibleNetworks.jl149A Julia framework for invertible neural networks
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AxisKeys.jl148🎹
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DoubleFloats.jl148Math with more good bits
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Gaston.jl148A julia front-end for gnuplot.
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Strided.jl147A Julia package for strided array views and efficient manipulations thereof
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CausalityTools.jl147Algorithms for quantifying associations, independence testing and causal inference from data.
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LossFunctions.jl147Julia package of loss functions for machine learning.
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Associations.jl147Algorithms for quantifying associations, independence testing and causal inference from data.
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FinEtools.jl147Finite Element tools in Julia
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TypedTables.jl146Simple, fast, column-based storage for data analysis in Julia
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NCDatasets.jl146Load and create NetCDF files in Julia
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MarketData.jl145Time series market data
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MLJFlux.jl145Wrapping deep learning models from the package Flux.jl for use in the MLJ.jl toolbox
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EAGO.jl144A development environment for robust and global optimization
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Lasso.jl143Lasso/Elastic Net linear and generalized linear models
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PastaQ.jl142Package for Simulation, Tomography and Analysis of Quantum Computers
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PowerModelsDistribution.jl142A Julia/JuMP Package for Unbalanced Power Network Optimization
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Altro.jl141-
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ArchGDAL.jl141A high level API for GDAL - Geospatial Data Abstraction Library
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LatticeQCD.jl140A native Julia code for lattice QCD with dynamical fermions in 4 dimension.
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