A collection of (mostly) technical things every data scientist should know π π
βοΈ These are resources I can recommend to every data scientist regardless of their skill level or tech stack
This is a s/programmer/data-scientist/g
of every-programmer-should-know by @mtdvio. That means two things: 1. I take no credit for the idea of creating this page, I just wanted one for data-science and 2. things that are purely related to software development will not be the focus of this page, though there may be limited duplication.
(see Contributions)
As in the original, all of the following applies:
Highly opinionated π£. Not backed by science.
Comes in no particular order β»οΈ
U like it? β it and share with a friendly data scientis! U don't like it? Watch the doggo πΆ
P.S. You don't need to know all of that by heart to be a data scientist.
But knowing the stuff will help you become better! πͺ
P.P.S. Contributions are welcome!*
π - paper
π - book
π - blog
β
- checklist
π - github/lab repo
π - website (other)
π₯ - video
- ππTheme issue βThe ethical impact of data scienceβ Phil. Trans. R. Soc.
- πWeapons of Math Destruction: How Big Data Increases Inequality and Threatens Democracy
- πMachine Learning Flashcards
- πGaussian Processes for Machine Learning
- π10 Machine Learning Algorithms You Should Know to Become a Data Scientist
- ππ« Cheatsheets for Machine/Deep Learning for Stanford's CS 229
- π₯But what is a Neural Network? | Chapter 1, deep learning
- πAwesome Tensorflow
- π«Stanford Course on Deep Learning for NLP
- π Financial Times Visual Vocabulary
- π Color Brewer 2
- π Color on the Web
- π« + π₯ UC Berkeley, Data Structures Course + lectures
- π Machine Learning: The High Interest Credit Card of Technical Debt
- πHadoop HDFS Architecture Explained
- πAwesome Big Data
- πR for Data Science
- πPython Data Science Handbook
- πYou Don't Know JS (Not Data Science Specific)
- πHyperpolyglot - Programming Languages - commonly used features in a side-by-side format (Not Data Science Specific)
- Trello Data Science
- Hadley Wickhams - Stats 337: Readings in Applied Data Science
- Open Source Data Science Masters
- the morning paper / @adriancolyer
- @BecomingDataSci
- @DynamicWebPaige
- @zeynep
- @hardmaru
- @KordingLab
- @math_rachel
- @hmason
This work is licensed under a Creative Commons Attribution 4.0 International License.