dummy-link

Top Pkgs Packages

1

Distributions

A Julia package for probability distributions and associated functions.

2

GLM

Generalized linear models in Julia

3

StatsBase

Basic statistics for Julia

4

Klara

MCMC inference in Julia

5

MLBase

A set of functions to support the development of machine learning algorithms

6

Clustering

A Julia package for data clustering

7

MultivariateStats

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

8

TimeSeries

Time series toolkit for Julia

9

Distances

A Julia package for evaluating distances (metrics) between vectors.

10

RDatasets

Julia package for loading many of the data sets available in R

11

HypothesisTests

Hypothesis tests for Julia

12

StatsModels

Specifying, fitting, and evaluating statistical models in Julia

13

Lasso

Lasso/Elastic Net linear and generalized linear models

14

GLMNet

Julia wrapper for fitting Lasso/ElasticNet GLM models using glmnet

15

NMF

A Julia package for non-negative matrix factorization

16

DataArrays

DEPRECATED: Data structures that allow missing values

17

StatsFuns

Mathematical functions related to statistics.

18

KernelDensity

Kernel density estimators for Julia

19

Stats

Convenience meta-package to load essential packages for statistics

20

StatsKit

Convenience meta-package to load essential packages for statistics

21

PGM

A Julia framework for probabilistic graphical models.

22

PDMats

Uniform Interface for positive definite matrices of various structures

23

SVM

SVM's for Julia

24

TimeModels

Modeling time series in Julia

25

NullableArrays

DEPRECATED Prototype of the new JuliaStats NullableArrays package

26

Distance

Julia module for Distance evaluation

27

Loess

Local regression, so smooooth!

28

DimensionalityReduction

Deprecated in favor of MultivariateStats.jl

29

ConjugatePriors

A Julia package to support conjugate prior distributions.

30

RegERMs

DEPRECATED: Regularised Empirical Risk Minimisation Framework (SVMs, LogReg, Linear Regression) in Julia