Introduction to Data Science Introduction to Data Science / tutorial / free

Tour the basic techniques of data science, including both SQL and NoSQL solutions for massive data management (e.g., MapReduce and contemporaries), algorithms for data mining (e.g., clustering and association rule mining), and basic statistical modeling (e.g., linear and non-linear regression).
2 favorites
submitted almost 3 years ago, by pineapple
Introduction to Data Science popular tutorial


Login or to comment.

Tutorials are any resources you learn from.

Examples: an intro to html5 screencast, a pdf about git, photoshop effects tutorials, meta-programming in ruby, lambda calculus, higher-order fixed-point combinators.

Tools are websites, apps or services used -on- your project (indirectly), to aid the process.

Examples: A color scheme generator, email marketing software, usability heat maps, css3 code generators, a downloadable png compressor.

Assets are downloadable files used -in- your projects, usually as code, textures, or images.

Examples: a jquery sticky menu, photoshop brushes, background textures, mvc frameworks, twitter bootstrap, 960 grid system.