Mathematica (Computer program language)See also what's at Wikipedia, your library, or elsewhere.
Broader term: |
Filed under: Mathematica (Computer program language)
Items below (if any) are from related and broader terms.
Filed under: AWK (Computer program language)Filed under: AppleScript (Computer program language)Filed under: JavaScript (Computer program language) Learning JavaScript Design Patterns (free online version 1.7, c2017), by Addy Osmani (HTML with commentary at addyosmani.com) Eloquent JavaScript: A Modern Introduction to Programming (second edition, 2015), by Marijn Haverbeke (illustrated HTML with commentary at eloquentjavascript.net) Speaking JavaScript: An In-Depth Guide for Programmers (originally published 2014), by Axel Rauschmayer (HTML with commentary at speakingjs.com) Developing Backbone.js Applications (originally published 2013), by Addy Osmani (HTML with commentary at addyosmani.com) Customizing Vendor Systems for Better User Experiences: The Innovative Librarian's Guide (Santa Barbara and Denver: Libraries Unlimited, c2016), by Matthew Reidsma (PDF at gvsu.edu) D3.js Tips and Tricks, by Malcolm Maclean (JavaScript-dependent illustrated HTML at leanpub.com) JavaScript Enlightenment (online version for ES2015 and later), by Cody Lindley (HTML at frontendmasters.com) JavaScript Guide (current online edition), by MDN Web Docs (HTML at mozilla.org) You Don't Know JS (online prepublication editions of booklets in this series), by Kyle Simpson (illustrated HTML with commentary at GitHub)
Filed under: JavaScript (Computer program language) -- Handbooks, manuals, etc.Filed under: Job Control Language (Computer program language)
Filed under: Job Control Language (Computer program language) -- Programmed instructionFiled under: MUMPS (Computer program language)Filed under: R (Computer program language) Efficient R Programming (Creative Commons online edition, 2021), by Colin Gillespie and Robin Lovelace (illustrated HTML with commentary at github.io) Introduction to Data Science: Data Analysis and Prediction Algorithms With R (Creative Commons online edition, 2021), by Rafael A. Irizarry (illustrated HTML with commentary at github.uio) Text Mining with R: A Tidy Approach (Creative Commons online edition; ca. 2019), by Julia Silge and David Robinson (illustrated HTML with commentary at tidytextmining.com) The R Inferno (2011), by Patrick Burns (PDF with commentary at burns-stat.com) An Introduction to R: Notes on R, A Programming Environment for Data Analysis and Graphics (electronic edition, 2008), by W. N. Venables, D. M. Smith, and R Development Core Team Statistical Inference via Data Science: A ModernDive into R and the Tidyverse (Creative Commons online edition, 2021), by Chester Ismay and Albert Young-Sun Kim (illustrated HTML with commentary at moderndive.com) R for Data Science (prepublication version, c2016), by Hadley Wickham and Garrett Grolemund (HTML with commentary in New Zealand) Time Series Analysis and its Applications, With R Examples (authors' free electronic edition, similar to published fourth edition; 2016), by Robert H. Shumway and David S. Stoffer (PDF with commentary at Pitt) Practical Regression and Anova using R (final web version, 2002), by Julian James Faraway (PDF with commentary at r-project.org) An Introduction to Statistical Learning, With Applications in R (corrected first edition and second edition; 2017 and 2021), by Gareth James, Daniela Witten, Trevor Hastie, and Robert Tibshirani (PDF with commentary at statlearning.com) Learning Statistics With R, by Danielle Navarro (multiple formats with commentary at learningstatisticswithr.com)
Filed under: R (Computer program language) -- Textbooks |