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Top Pkgs Packages

91

DSP

Filter design, periodograms, window functions, and other digital signal processing functionality

92

Clustering

A Julia package for data clustering

93
94

DecisionTree

Julia implementation of Decision Tree (CART) and Random Forest algorithms

95

JLD2

HDF5-compatible file format in pure Julia

96

StatisticalRethinking

Julia version of selected functions in the R package "rethinking". Used in the StatisticalRethinkingStan and StatisticalRethinkingTuring projects.

97

Mux

Middleware for Julia

98

LanguageServer

An implementation of the Microsoft Language Server Protocol for the julia language.

99

MLStyle

Julia functional programming infrastructures and metaprogramming facilities

100

OpenCL

OpenCL Julia bindings

101

GaussianProcesses

A Julia package for Gaussian Processes

102

JSON

JSON parsing and printing

103

GeoStats

An extensible framework for high-performance geostatistics in Julia

104

MacroTools

A man has written a package. A package has no name.

105

MultivariateStats

A Julia package for multivariate statistics and data analysis (e.g. dimension reduction)

106

RCall

Call R from Julia

107

NearestNeighbors

High performance nearest neighbor data structures and algorithms for Julia.

108

TimeSeries

Time series toolkit for Julia

109

Transducers

Efficient transducers for Julia

110

Graphs

Working with graphs in Julia

111

PGFPlotsX

Create plots in Julia using the PGFPlots LaTeX package

112

CSV

Utility library for working with CSV and other delimited files in the Julia programming language

113

Calculus

Calculus functions in Julia

114

Compose

Declarative vector graphics

115

MPI

MPI wrappers for Julia

116

Modia

Domain Specific Extension of Julia for Modeling and Simulation

117

QML

Build Qt5 QML interfaces for Julia programs.

118

NLsolve

Julia solvers for systems of nonlinear equations and mixed complementarity problems

119

JLD

Saving and loading julia variables while preserving native types

120

OrdinaryDiffEq

High performance differential equation solvers for ordinary differential equations, including neural ordinary differential equations (neural ODEs) and scientific machine learning (SciML)