This is a repository with the study planning that my wife Andressa and I have made. Our goal was to plan the equivalent of an entire Computer Science undergraduate program, based on the 6-3: Computer Science and Engineering 2019 MIT Curriculum, with only freely available courses. Pretty much every lecture is from top notch Universities such as MIT, Stanford and UC Berkeley. We also added some extra lectures that we will be watching as a complement to our studies.
The courses were divided in:
- Introductory
- Intermediate
- Advanced
- Extras *
* Extras not being included in the base MIT CS curriculum.
- TU Delft: Pre-University Calculus - edX
- 3Blue1Brown: Essence of calculus - YouTube ***
- MIT: Calculus 1A: Differentiation - edX
- MIT: Calculus 1B: Integration - edX
- MIT: Calculus 1C: Coordinate Systems & Infinite Series - edX
- MIT: Mathematics for Computer Science (2010) - MIT OpenCourseWare **
- MIT: Mathematics for Computer Science (2015) - MIT OpenCourseWare **
- 3Blue1Brown: Essence of Linear Algebra - YouTube ***
- MIT: Linear Algebra MIT OpenCourseWare
** These video lectures are from the same MIT course, one recorded in 2010, the other in 2015. Don't watch both, choose the one you like better.
*** 3BlueBrown is an YouTube channel.
- MIT: Introduction to Computer Science and Programming in Python - MIT OpenCourseWare
- MIT: Introduction to Computational Thinking and Data Science - MIT OpenCourseWare | edX
- Cornell: The Computing Technology Inside Your Smartphone - edX
- MIT: Computation Structures - Part 1: Digital Circuits - edX
- Stanford: Algorithms: Design and Analysis - Lagunita
- MIT: Computation Structures 2: Computer Architecture - edX
- MIT: Computation Structures 3: Computer Organization - edX
- Stanford: Algorithms: Design and Analysis, Part 2 - Lagunita
- UC Berkeley: Operating Systems and Systems Programming - YouTube
- Stanford: Introduction to Computer Networking - Lagunita
- UC Berkeley: Introduction to Database Systems - Internet Archive
- Stanford: Compilers - Lagunita
- MIT: Distributed Systems - YouTube
- MIT: Probabilistic Systems Analysis and Applied Probability - MIT OpenCourseWare
- MIT: Introduction to Probability: Part II – Inference & Processes - edX
- MIT: Machine Learning with Python: from Linear Models to Deep Learning - edX
- UC Berkeley: Intro to Artificial Intelligence - YouTube