Statistics with Julia: Fundamentals for Data Science, Machine Learning and Artificial Intelligence

This repository is a collection of all 200+ code blocks contained in the book. See the Book's website, or go directly to Springer:

bookCoverImage

The book is comprised of the following ten chapters and three appendices:

  1. Introducing Julia
  2. Basic Probability
  3. Probability Distributions
  4. Processing and Summarizing Data
  5. Statistical Inference Concepts
  6. Confidence Intervals
  7. Hypothesis Testing
  8. Linear Regression and Extensions
  9. Machine Learning Basics
  10. Simulation of Dynamic Models
  1. How-to in Julia
  2. Additional Language Features
  3. Additional Packages

Usage instructions:

  1. Clone or download this repository or a fork of it.
  2. Have Julia 1.4 or above installed.
  3. Run init.jl to install and precompile the required packages.
  4. Run individual code examples.

An alternative is to use Pluto. See StatisticsWithJuliaPlutoNotebooks.jl

We hope you find this an enjoyable and instructive resource.

H.Klok Y.Nazarathy