- Please check NOTES for general information about this list.
- Please refer CONTRIBUTING.md for contribution guidelines.
- Please feel free to raise any genuine issue you may have, however, it has been noticed that few people open empty issues to raise their GitHub contribution on their account. Such spammers will be blocked.
- You are welcome to contribute, please create PR for actual college/University level courses. Please do not add links for small MOOCs, basic tutorials, or advertisements for some sites/channels.
Table of Contents
- Introduction to Computer Science
- Data Structures and Algorithms
- Systems Programming
- Database Systems
- Software Engineering
- Artificial Intelligence
- Machine Learning
- Computer Networks
- Math for Computer Scientist
- Web Programming and Internet Technologies
- Theoretical CS and Programming Languages
- Embedded Systems
- Real time system evaluation
- Computer Organization and Architecture
- Security
- Computer Graphics
- Image Processing and Computer Vision
- Computational Physics
- Computational Biology
- Quantum Computing
- Robotics and Control
- Computational Finance
- Blockchain Development
- Misc
- CS 10 - The Beauty and Joy of Computing - Spring 2015 - Dan Garcia - UC Berkeley InfoCoBuild
- 6.0001 - Introduction to Computer Science and Programming in Python - MIT OCW
- 6.001 - Structure and Interpretation of Computer Programs, MIT
- Introduction to Computational Thinking - MIT
- CS 50 - Introduction to Computer Science, Harvard University (cs50.tv)
- CS50R - Introduction to Programming with R (Lecture Videos)
- CS 61A - Structure and Interpretation of Computer Programs [Python], UC Berkeley
- CPSC 110 - Systematic Program Design [Racket], University of British Columbia
- CS50's Understanding Technology
- CSE 142 Computer Programming I (Java Programming), Spring 2016 - University of Washington
- CS 1301 Intro to computing - Gatech
- CS 106A - Programming Methodology, Stanford University (Lecture Videos)
- CS 106B - Programming Abstractions, Stanford University (Lecture Videos)
- CS 106L - Standard C++ Programming(Lecture Videos)
- CS 106X - Programming Abstractions in C++ (Lecture Videos)
- CS 107 - Programming Paradigms, Stanford University
- CmSc 150 - Introduction to Programming with Arcade Games, Simpson College
- LINFO 1104 - Paradigms of computer programming, Peter Van Roy, Université catholique de Louvain, Belgium - EdX
- FP 101x - Introduction to Functional Programming, TU Delft
- Introduction to Problem Solving and Programming - IIT Kanpur
- Introduction to programming in C - IIT Kanpur
- Programming in C++ - IIT Kharagpur
- Python Boot Camp Fall 2016 - Berkeley Institute for Data Science (BIDS)
- CS 101 - Introduction to Computer Science - Udacity
- 6.00SC - Introduction to Computer Science and Programming (Spring 2011) - MIT OCW
- 6.00 - Introduction to Computer Science and Programming (Fall 2008) - MIT OCW
- 6.01SC - Introduction to Electrical Engineering and Computer Science I - MIT OCW
- Modern C++ Course (2018) - Bonn University
- Modern C++ (Lecture & Tutorials, 2020, Vizzo & Stachniss) - University of Bonn
- UW Madison CS 368 C++ for Java Programmers Fall 2020, by Michael Doescher
- UW Madison CS 354 Machine Organization and Programming spring 2020, 2021, by Michael Doescher
- Cornell ECE 4960 Computational and Software Engineering spring 2017, by Edwin Kan
- ECS 36C - Data Structures and Algorithms (C++) - Spring 2020 - Joël Porquet-Lupine - UC Davis
- Programming and Data Structures with Python, 2021-2022, Sem I - by Prof. Madhavan Mukund, CMI
- 6.006 - Introduction to Algorithms, MIT OCW
- MIT 6.006 Introduction to Algorithms, Spring 2020
- Algorithms: Design and Analysis 1 - Stanford University
- Algorithms: Design and Analysis 2 - Stanford University
- COS 226 Algorithms, Youtube, Princeton - by Robert Sedgewick and Kevin Wayne
- CSE 331 Introduction to Algorithm Design and Analysis, SUNY University at Buffalo, NY - Fall 2017 (Lectures) (Homework Walkthroughs)
- CSE 373 - Analysis of Algorithms, Stony Brook - Prof Skiena
- COP 3530 Data Structures and Algorithms, Prof Sahni, UFL (Videos)
- CS225 - Data Structures - University of Illinois at Urbana-Champaign(Video lectures)
- CS2 - Data Structures and Algorithms - Richard Buckland - UNSW
- Data Structures - Pepperdine University
- CS 161 - Design and Analysis of Algorithms, Prof. Tim Roughgarden, Stanford University
- 6.046J - Introduction to Algorithms - Fall 2005, MIT OCW
- Introduction to Algorithms (Spring 2020), MIT OCW
- 6.046 - Design and Analysis of Algorithms, Spring 2015 - MIT OCW
- CS 473 - Algorithms - University of Illinois at Urbana-Champaign (Notes - Jeff Erickson) (YouTube)
- COMP300E - Programming Challenges, Prof Skiena, Hong Kong University of Science and Technology - 2009
- 16s-4102 - Algorithms, University of Virginia (Youtube)
- CS 61B - Data Structures (Java) - UC Berkeley(Youtube)
- CS 170 Algorithms - UCBerkeley Fall 2018, Youtube Fall 2018,Bilibili 2013 Bilibili
- ECS 122A - Algorithm Design and Analysis, UC Davis
- CSEP 521 - Applied Algorithms, Winter 2013 - University of Washington (Videos)
- Data Structures And Algorithms - IIT Delhi
- Design and Analysis of Algorithms - IIT Bombay
- Programming, Data Structures and Algorithms - IIT Madras
- Design and Analysis of Algorithms - IIT Madras
- Fundamental Algorithms:Design and Analysis - IIT Kharagpur
- Programming and Data Structure - IIT Kharagpur
- Programming, Data structures and Algorithms - IIT Madras
- Programming, Data Structures and Algorithms in Python - IIT Madras
- Programming and Data structures (PDS) - IIT Madras
- COP 5536 Advanced Data Structures, Prof Sahni - UFL (Videos)
- CS 261 - A Second Course in Algorithms, Stanford University (Youtube)
- CS 224 - Advanced Algorithms, Harvard University (Lecture Videos) (Youtube)
- CS 6150 - Advanced Algorithms (Fall 2016), University of Utah
- CS 6150 - Advanced Algorithms (Fall 2017), University of Utah
- ECS 222A - Graduate Level Algorithm Design and Analysis, UC Davis
- 6.851 - Advanced Data Structures, MIT (MIT OCW)
- 6.854 - Advanced Algorithms, MIT (Prof. Karger lectures)
- CS264 Beyond Worst-Case Analysis, Fall 2014 - Tim Roughgarden Lecture (Youtube)
- CS364A Algorithmic Game Theory, Fall 2013 - Tim Roughgarden Lectures
- CS364B Advanced Mechanism Design, Winter 2014 - Tim Roughgarden Lectures
- Algorithms - Aduni
- 6.889 - Algorithms for Planar Graphs and Beyond (Fall 2011) MIT
- 6.890 Algorithmic Lower Bounds: Fun with Hardness Proofs - MIT OCW
- Computer Algorithms - 2 - IIT Kanpur
- Parallel Algorithm - IIT Kanpur
- Graph Theory - IISC Bangalore
- Data Structures - mycodeschool
- Algorithmic Game Theory, Winter 2020/21 - Uni Bonn
- NETS 4120: Algorithmic Game Theory, Spring 2023 - UPenn
- Introduction to Game Theory and Mechanism Design - IIT Kanpur
- 15-850 Advanced Algorithms - CMU Spring 2023
- CS 270. Combinatorial Algorithms and Data Structures, Spring 2021 (Youtube)
- CMU 15 850 Advanced Algorithms spring 2023, by Anupam Gupta
- UC Berkeley CS 294-165 Sketching Algorithms fall 2020, by Jelani Nelson
- UIUC CS 498 ABD / CS 598 CSC Algorithms for Big Data fall 2020, by Chandra Chekuri
- Algorithms for Data Science spring 2021, by Anil Maheshwari
- CMU 15 859 Algorithms for Big Data fall 2020, by David Woodruff
- CO 642 Graph Theory - University of Waterloo
- COMS W4241 Numerical Algorithms spring 2006, by Henryk Wozniakowski - Columbia
- Bonn Algorithms and Uncertainty summer 2021, by Thomas Kesselheim
- Harvard Information Theory 2022, by Gregory Falkovich
- Math 510 - Linear Programming and Network Flows - Colorado State University
- LINFO 2266 Advanced Algorithms for Optimization 2021, by Pierre Schaus - UCLouvain
- 15-213 Introduction to Computer Systems, Fall 2015 - CMU
- CS361 - COMPUTER SYSTEMS - UIC
- CS 3650 - Computer Systems - Fall 2020 - Nat Tuck - NEU (Lectures - YouTube)
- CS 4400 – Computer Systems Fall 2016 - UoUtah
- Systems - Aduni
- CS110: Principles of Computer Systems - Stanford
-
- ECS 150 - Operating Systems and Systems Programming - Fall 2020 - Joël Porquet-Lupine - UC Davis
- CS124 Operating Systems - California Institute of Technology, Fall 2018 - Youtube
- CS 162 Operating Systems and Systems Programming, Spring 2015 - University of California, Berkeley
- CS 4414 - Operating Systems, University of Virginia (rust-class)
- CS 4414 Operating Systems, Fall 2018 - University of Virginia
- CSE 421/521 - Introduction to Operating Systems, SUNY University at Buffalo, NY - Spring 2016 (Lectures - YouTube) (Recitations 2016) (Assignment walkthroughs)
- CS 377 - Operating Systems, Fall 16 - Umass OS
- CS 577 - Operating Systems, Spring 20 - Umass OS
- 6.828 - Operating System Engineering [Fall 2014]
- 6.S081 - Operating System Engineering [Fall 2020]
- CSE 30341 - Operating Systems, Spr 2008
- CSEP 551 Operating Systems Autumn 2014 - University of Washington
- Introduction to Operating Systems - IIT Madras
- CS194 Advanced Operating Systems Structures and Implementation, Spring 2013 InfoCoBuild, UC Berkeley
- CSE 60641 - Graduate Operating Systems, Fall 08
- Advanced Programming in the UNIX Environment
-
- CS 677 - Distributed Operating Systems, Spring 24 - Umass OS
- CS 436 - Distributed Computer Systems - U Waterloo
- 6.824 - Distributed Systems, Spring 2015 - MIT
- 6.824 Distributed Systems - Spring 2020 - MIT (Youtube)
- Distributed Systems Lecture Series
- Distributed Algorithms, https://canvas.instructure.com/courses/902299
- CSEP 552 - PMP Distributed Systems, Spring 2013 - University of Washington (Videos)
- CSE 490H - Scalable Systems: Design, Implementation and Use of Large Scale Clusters, Autumn 2008 - University of Washington (Videos)
- MOOC - Cloud Computing Concepts - UIUC
- Distributed Systems (Prof. Pallab Dasgupta)
- EdX KTHx ID2203 Reliable Distributed Algorithms
- Distributed Data Management - Technische Universität Braunschweig, Germany
- Information Retrieval and Web Search Engines - Technische Universität Braunschweig, Germany
- Middleware and Distributed Systems (WS 2009/10) - Dr. Martin von Löwis - HPI
- CSE 138 - Distributed Systems - UC Santa Cruz, Spring 2020 (2021)
- CMU 15 440 / 640 Distributed Systems Spring 2022, by Mahadev Satyanarayanan, Padmanabhan Pillai
- UNC Comp533 - Distributed Systems Spring 2020
- 6.172 Performance Engineering of Software Systems - MIT OCW
- Performance Evaluation of Computer Systems - IIT Madras
- Storage Systems - IISC Bangalore
- MAP6264 - Queueing Theory - FAU(Video Lectures)
- EE 380 Colloquium on Computer Systems - Stanford University (Lecture videos)
- CMPSC 431W Database Management Systems, Fall 2015 - Penn State University Lectures - YouTube
- CS121 - Introduction to Relational Database Systems, Fall 2016 - Caltech
- CS 5530 - Database Systems, Spring 2016 - University of Utah
- Distributed Data Management (WT 2018/19) - HPI University of Potsdam
- MOOC - Database Stanford Dbclass
- CSEP 544, Database Management Systems, Au 2015 - University of Washington
- Database Design - IIT Madras
- Fundamentals of Database Systems - IIT Kanpur
- Principles of Database Management, Bart Baesens
- FIT9003 Database Systems Design - Monash University
- 15-445 - Introduction to Database Systems, CMU (YouTube-2017, YouTube-2018, YouTube-2019, YouTube-2021, YouTube-2022)
- 15-721 - Database Systems, CMU (YouTube-2017, YouTube-2016)
- 15-721 Advanced Database Systems (Spring 2019) - CMU
- CS122 - Relational Database System Implementation, Winter 2014-2015 - Caltech
- CS 186 - Database Systems, UC Berkeley, Spring 2015
- CS 6530 - Graduate-level Database Systems, Fall 2016, University of Utah (Lectures - YouTube)
- 6.830/6.814 - Database Systems [Fall 2014]
- Informatics 1 - Data & Analysis 2014/15- University of Edinburgh
- Database Management Systems, Aduni
- D4M - Signal Processing on Databases
- In-Memory Data Management (2013)Prof. Hasso Plattner - HPI
- Distributed Data Management (WT 2019/20) - Dr. Thorsten Papenbrock - HPI
- CS122d - NoSQL Data Management (Spring 21) - Prof. Mike Carey - UC Irvine
-
- ECE 462 Object-Oriented Programming using C++ and Java - Purdue
- Object-oriented Program Design and Software Engineering - Aduni
- OOSE - Object-Oriented Software Engineering, Dr. Tim Lethbridge
- Object Oriented Systems Analysis and Design (Systems Analysis and Design in a Changing World)
- CS 251 - Intermediate Software Design (C++ version) - Vanderbilt University
- OOSE - Software Dev Using UML and Java
- Object-Oriented Analysis and Design - IIT Kharagpur
- CS3 - Design in Computing - Richard Buckland UNSW
- Informatics 1 - Object-Oriented Programming 2014/15- University of Edinburgh
- Software Engineering with Objects and Components 2015/16- University of Edinburgh
-
- Computer Science 169- Software Engineering - Spring 2015 - UCBerkeley
- Computer Science 169- Software Engineering - Fall 2019 - UCBerkeley
- CS 5150 - Software Engineering, Fall 2014 - Cornell University
- Introduction to Service Design and Engineering - University of Trento, Italy
- CS 164 Software Engineering - Harvard
- System Analysis and Design - IISC Bangalore
- Software Engineering - IIT Bombay
- Dependable Systems (SS 2014)- HPI University of Potsdam
- Software Testing - IIT Kharagpur
- Software Testing - Udacity, course-cs258 | 2015
- Software Debugging - Udacity, course-cs259 | 2015
- Software Engineering - Bauhaus-Uni Weimar
- CMU 17-445 Software Engineering for AI-Enabled Systems summer 2020, by Christian Kaestner
-
- CS176 - Multiprocessor Synchronization - Brown University (Videos from 2012)
- CS 282 (2014): Concurrent Java Network Programming in Android
- CSE P 506 – Concurrency, Spring 2011 - University of Washington (Videos)
- CSEP 524 - Parallel Computation - University of Washington (Videos)
- Parallel Programming Concepts (WT 2013/14) - HPI University of Potsdam
- Parallel Programming Concepts (WT 2012/13) - HPI University of Potsdam
- UIUC ECE 408 / CS 408 Applied Parallel Programming spring 2018, fall 2022, by Wen-mei Hwu, Sanjay Patel
- UIUC ECE 508 / CS 508 Manycore Parallel Algorithms spring 2019, by Wen-mei Hwu
- UIUC CS 420 / ECE 492 / CSE 402 Introduction to Parallel Programming for Scientists and Engineers fall 2015, by Sanjay Kale
- Stanford CME 213 Introduction to Parallel Computing using MPI, openMP, and CUDA winter 2020, by Eric Darve
-
- MOOC Programming Mobile Applications for Android Handheld Systems - University of Maryland
- CS 193p - Developing Applications for iOS, Stanford University
- CS S-76 Building Mobile Applications - Harvard
- CS 251 (2015): Intermediate Software Design
- Android App Development for Beginners Playlist - thenewboston
- Android Application Development Tutorials - thenewboston
- MOOC - Developing Android Apps - Udacity
- MOOC - Advanced Android App Development - Udacity
- CSSE490 Android Development Rose-Hulman Winter 2010-2011, Dave Fisher
- iOS Course, Dave Fisher
- Developing iPad Applications for Visualization and Insight - Carnegie Mellon University
- Mobile Computing - IIT Madras
- Mobile Information Systems - Bauhaus-Uni Weimar
- CS50 - Introduction to Artificial Intelligence with Python (and Machine Learning), Harvard OCW
- CS 188 - Introduction to Artificial Intelligence, UC Berkeley - Spring 2023
- 6.034 Artificial Intelligence, MIT OCW
- CS221: Artificial Intelligence: Principles and Techniques - Autumn 2019 - Stanford University
- 15-780 - Graduate Artificial Intelligence, Spring 14, CMU
- CSE 592 Applications of Artificial Intelligence, Winter 2003 - University of Washington
- CS322 - Introduction to Artificial Intelligence, Winter 2012-13 - UBC (YouTube)
- CS 4804: Introduction to Artificial Intelligence, Fall 2016
- CS 5804: Introduction to Artificial Intelligence, Spring 2015
- Artificial Intelligence - IIT Kharagpur
- Artificial Intelligence - IIT Madras
- Artificial Intelligence(Prof.P.Dasgupta) - IIT Kharagpur
- MOOC - Intro to Artificial Intelligence - Udacity
- MOOC - Artificial Intelligence for Robotics - Udacity
- Graduate Course in Artificial Intelligence, Autumn 2012 - University of Washington
- Agent-Based Systems 2015/16- University of Edinburgh
- Informatics 2D - Reasoning and Agents 2014/15- University of Edinburgh
- Artificial Intelligence - Hochschule Ravensburg-Weingarten
- Deductive Databases and Knowledge-Based Systems - Technische Universität Braunschweig, Germany
- Artificial Intelligence: Knowledge Representation and Reasoning - IIT Madras
- Semantic Web Technologies by Dr. Harald Sack - HPI
- Knowledge Engineering with Semantic Web Technologies by Dr. Harald Sack - HPI
- T81-558: Applications of Deep Neural Networks by Jeff Heaton, 2022, Washington University in St. Louis
- MSU programming for AI
-
- Introduction to Machine Learning for Coders
- MOOC - Statistical Learning, Stanford University
- Statistical Learning with Python - Stanford Online
- Foundations of Machine Learning Boot Camp, Berkeley Simons Institute
- CS155 - Machine Learning & Data Mining, 2017 - Caltech (Notes) (2016)
- CS 156 - Learning from Data, Caltech
- 10-601 - Introduction to Machine Learning (MS) - Tom Mitchell - 2015, CMU (YouTube)
- 10-601 Machine Learning | CMU | Fall 2017
- 10-701 - Introduction to Machine Learning (PhD) - Tom Mitchell, Spring 2011, CMU (Fall 2014) (Spring 2015 by Alex Smola)
- 10 - 301/601 - Introduction to Machine Learning - Spring 2020 - CMU
- 10 - 301/601 - Introduction to Machine Learning - Fall 2023 - CMU
- 6.036 - Machine Learning, Broderick - MIT Fall 2020
- Mediterranean Machine Learning summer school 2023
- Applied Machine Learning (Cornell Tech CS 5787, Fall 2020)
- Stanford CS229: Machine Learning Course | Summer 2019 (Anand Avati) (Spring 2022)
- CMS 165 Foundations of Machine Learning and Statistical Inference - 2020 - Caltech
- Microsoft Research - Machine Learning Course
- CS 446 - Machine Learning, Fall 2016, UIUC
- undergraduate machine learning at UBC 2012, Nando de Freitas
- CS 229 - Machine Learning - Stanford University (Autumn 2018)
- CS 189/289A Introduction to Machine Learning, Prof Jonathan Shewchuk - UCBerkeley
- CPSC 340: Machine Learning and Data Mining (2018) - UBC
- CS4780/5780 Machine Learning, Fall 2013 - Cornell University
- CS4780/5780 Machine Learning, Fall 2018 - Cornell University (Youtube)
- CSE474/574 Introduction to Machine Learning - SUNY University at Buffalo
- CS 5350/6350 - Machine Learning, Spring 2024, University of Utah (Youtube)
- ECE 5984 Introduction to Machine Learning, Spring 2015 - Virginia Tech
- CSx824/ECEx242 Machine Learning, Bert Huang, Fall 2015 - Virginia Tech
- STA 4273H - Large Scale Machine Learning, Winter 2015 - University of Toronto
- CS 485/685 Machine Learning, Shai Ben-David, University of Waterloo
- STAT 441/841 Classification Winter 2017 , Waterloo
- 10-605 - Machine Learning with Large Datasets, Fall 2016 - CMU
- Information Theory, Pattern Recognition, and Neural Networks - University of Cambridge
- Python and machine learning - Stanford Crowd Course Initiative
- MOOC - Machine Learning Part 1a - Udacity/Georgia Tech (Part 1b Part 2 Part 3)
- Machine Learning and Pattern Recognition 2015/16- University of Edinburgh
- Introductory Applied Machine Learning 2015/16- University of Edinburgh
- Pattern Recognition Class (2012)- Universität Heidelberg
- Introduction to Machine Learning and Pattern Recognition - CBCSL OSU
- Introduction to Machine Learning - IIT Kharagpur
- Introduction to Machine Learning - IIT Madras
- Pattern Recognition - IISC Bangalore
- Pattern Recognition and Application - IIT Kharagpur
- Pattern Recognition - IIT Madras
- Machine Learning Summer School 2013 - Max Planck Institute for Intelligent Systems Tübingen
- Machine Learning - Professor Kogan (Spring 2016) - Rutgers
- CS273a: Introduction to Machine Learning (YouTube)
- Machine Learning Crash Course 2015
- COM4509/COM6509 Machine Learning and Adaptive Intelligence 2015-16
- 10715 Advanced Introduction to Machine Learning
- Introduction to Machine Learning - Spring 2018 - ETH Zurich
- Machine Learning - Pedro Domingos- University of Washington
- Advanced Machine Learning - 2019 - ETH Zürich
- Machine Learning (COMP09012)
- Probabilistic Machine Learning 2020 - University of Tübingen
- Statistical Machine Learning 2020 - Ulrike von Luxburg - University of Tübingen
- COMS W4995 - Applied Machine Learning - Spring 2020 - Columbia University
- Machine Learning for Engineers 2022 (YouTube)
- 10-418 / 10-618 (Fall 2019) Machine Learning for Structured Data
- ORIE 4741/5741: Learning with Big Messy Data - Cornell
- Machine Learning in IoT
- Stanford CS229M: Machine Learning Theory - Fall 2021
- Intro to Machine Learning and Statistical Pattern Classification - Prof Sebastian Raschka
- CMU's Multimodal Machine Learning course (11-777), Fall 2020
- EE104: Introduction to Machine Learning - Stanford University
- CPSC 330: Applied Machine Learning (2020) - UBC
- Machine Learning 2013 - Nando de Freitas, UBC
- Machine Learning, 2014-2015, University of Oxford
- 10-702/36-702 - Statistical Machine Learning - Larry Wasserman, Spring 2016, CMU (Spring 2015)
- 10-715 Advanced Introduction to Machine Learning - CMU (YouTube)
- CS 281B - Scalable Machine Learning, Alex Smola, UC Berkeley
- 100 Days of Machine Learning - CampusX (Hindi)
- CampusX Data Science Mentorship Program 2022-23 (Hindi)
- Statistical Machine Learning - S2023 - Benyamin Ghojogh
- MIT 6.5940 EfficientML.ai Lecture, Fall 2023
- TinyML - Tiny Machine Learning at UPenn
- Machine Learning Hardware and Systems (Cornell Tech, Spring 2022)
- ECE 4760 (Digital Systems Design Using Microcontrollers) at Cornell for the Fall, 2022
- EfficientML.ai Lecture, Fall 2023, MIT 6.5940
- CS189 Machine Learning 2022 - UCB
- ETH Zurich Statistical Learning Theory spring 2021, by Joachim M. Buhmann
- SFU CMPT 727 Statistical Machine Learning spring 2022, 2023, by Maxwell Libbrecht
- UC Berkeley CS 189 / 289A Introduction to Machine Learning fall 2023, by Jennifer Listgarten & Jitendra Malik
- UC Berkeley CS 189 / 289A Introduction to Machine Learning spring 2022, by Jonathan Shewchuk
- UC Berkeley CS 189 Introduction to Machine Learning (CDSS offering) spring 2022, by Marvin Zhang
- MIT 6.036 Introduction to Machine Learning spring 2019, by Leslie Kaelbling
- UCLA STAT C161 Introduction to Pattern Recognition and Machine Learning winter 2023, by Arash Amini
- UT Austin Machine Learning Algorithms & Statistical Learning by Adam Klivans & Qiang Liu
- MSU Machine Learning
- EPFL CS 233 Introduction to Machine Learning fall 2022, by Mathieu Salzmann
- Data Science for Dynamical Systems, by Oliver Wallscheid & Sebastian Peitz
- STATS C161/C261 - Introduction to Pattern Recognition and Machine Learning Winter 2024
- Cambridge Statistical Learning in Practice 2021, by Alberto J. Coca
- Data 8: The Foundations of Data Science - UC Berkeley (Summer 17)
- CSE519 - Data Science Fall 2016 - Skiena, SBU
- CS 109 Data Science, Harvard University (YouTube)
- 6.0002 Introduction to Computational Thinking and Data Science - MIT OCW
- Data 100 - Summer 19- UC Berkeley
- Distributed Data Analytics (WT 2017/18) - HPI University of Potsdam
- Statistics 133 - Concepts in Computing with Data, Fall 2013 - UC Berkeley
- Data Profiling and Data Cleansing (WS 2014/15) - HPI University of Potsdam
- CS 229r - Algorithms for Big Data, Harvard University (Youtube)
- Algorithms for Big Data - IIT Madras
- Python Data Science with the TCLab (YouTube)
-
- CSEP 546, Data Mining - Pedro Domingos, Sp 2016 - University of Washington (YouTube)
- CS 5140/6140 - Data Mining, Spring 2020, University of Utah by Prof. Jeff Phillips (Youtube)
- CS 5140/6140 - Data Mining, Spring 2023, University of Utah by Prof. Ana Marasović (Youtube)
- CS 5955/6955 - Data Mining, University of Utah (YouTube)
- Statistics 202 - Statistical Aspects of Data Mining, Summer 2007 - Google (YouTube)
- MOOC - Text Mining and Analytics by ChengXiang Zhai
- Information Retrieval SS 2014, iTunes - HPI
- MOOC - Data Mining with Weka
- CS 290 DataMining Lectures
- CS246 - Mining Massive Data Sets, Winter 2016, Stanford University (YouTube)
- Data Mining: Learning From Large Datasets - Fall 2017 - ETH Zurich
- Information Retrieval - Spring 2018 - ETH Zurich
- CAP6673 - Data Mining and Machine Learning - FAU(Video lectures)
- Data Warehousing and Data Mining Techniques - Technische Universität Braunschweig, Germany
-
- MOOC - Probabilistic Graphical Models - Coursera
- CS 6190 - Probabilistic Modeling, Spring 2016, University of Utah
- 10-708 - Probabilistic Graphical Models, Carnegie Mellon University
- Probabilistic Graphical Models, Daphne Koller, Stanford University
- Probabilistic Models - UNIVERSITY OF HELSINKI
- Probabilistic Modelling and Reasoning 2015/16- University of Edinburgh
- Probabilistic Graphical Models, Spring 2018 - Notre Dame
-
- Full Stack Deep Learning - Course 2022
- Full Stack Deep Learning - Course 2021
- NYU Deep Learning Spring 2020
- NYU Deep Learning Spring 2021
- 6.S191: Introduction to Deep Learning - MIT
- Intro to Deep Learning and Generative Models Course - Prof Sebastian Raschka
- Deep Learning CMU
- CS231n Deep Learning for Computer Vision - Winter 2016 Andrej Karpathy - Stanford University
- Deep Learning: CS 182 Spring 2021
- 10-414/714: Deep Learning Systems - CMU (Youtube)
- Part 1: Practical Deep Learning for Coders, v3 - fast.ai
- Part 2: Deep Learning from the Foundations - fast.ai
- Deep learning at Oxford 2015 - Nando de Freitas
- Self-Driving Cars — Andreas Geiger, 2021/22 (YouTube)
- 6.S094: Deep Learning for Self-Driving Cars - MIT
- CS294-129 Designing, Visualizing and Understanding Deep Neural Networks (YouTube)
- CS230: Deep Learning - Autumn 2018 - Stanford University
- STAT-157 Deep Learning 2019 - UC Berkeley
- Deep Learning, Stanford University
- MOOC - Neural Networks for Machine Learning, Geoffrey Hinton 2016 - Coursera
- Deep Unsupervised Learning -- Berkeley Spring 2020
- Stat 946 Deep Learning - University of Waterloo
- Neural networks class - Université de Sherbrooke (YouTube)
- CS294-158 Deep Unsupervised Learning SP19
- DLCV - Deep Learning for Computer Vision - UPC Barcelona
- DLAI - Deep Learning for Artificial Intelligence @ UPC Barcelona
- Neural Networks and Applications - IIT Kharagpur
- UVA DEEP LEARNING COURSE
- Nvidia Machine Learning Class
- Deep Learning - Winter 2020-21 - Tübingen Machine Learning
- Geometric Deep Learning - AMMI
- Math for Deep Learning — Andreas Geiger
- Applied Deep Learning 2022 - TU Wien
- Neural Networks: Zero to Hero - Andrej Karpathy
- CIS 522 - Deep Learning - U Penn
- UVA DEEP LEARNING COURSE
- Deep Learning (Fall 2020) - Georgia Tech
- CS7015 - Deep Learning - Prof. Mitesh M. Khapra - IIT Madras
- ETH Zürich | Deep Learning in Scientific Computing 2023
- CMU 10 707 Deep Learning fall 2017 by Ruslan Salakhutdinov
- UT Austin CS 394D Deep Learning fall 2021, by Philipp KrahenBühl
- CMU 10 417 / 10 617 Intermediate Deep Learning fall 2022, by Ruslan Salakhutdinov
- CS294 Deep Unsupervised Learning Spring 2024
- Applied Deep Learning Maziar Raissi
- STATS 385 Analysis of Deep Learning - Stanford
- STATS 385 Theories of Deep Learning - Stanford
-
- CS234: Reinforcement Learning - Winter 2019 - Stanford University
- Introduction to reinforcement learning - UCL
- Advanced Deep Learning & Reinforcement Learning - UCL
- Reinforcement Learning - IIT Madras
- CS885 Reinforcement Learning - Spring 2018 - University of Waterloo
- CS 285 - Deep Reinforcement Learning- UC Berkeley
- CS 294 112 - Reinforcement Learning
- NUS CS 6101 - Deep Reinforcement Learning
- ECE 8851: Reinforcement Learning
- CS294-112, Deep Reinforcement Learning Sp17 (YouTube)
- UCL Course 2015 on Reinforcement Learning by David Silver from DeepMind (YouTube)
- Deep RL Bootcamp - Berkeley Aug 2017
- Reinforcement Learning - IIT Madras
- Reinforcement Learning Course at KTH (FDD3359 - 2022)
- Reinforcement Learning Course at ASU, Spring 2022
- CS 4789/5789: Introduction to Reinforcement Learning - Cornell
- S20/IE613 - Online (Machine) Learning/ Bandit Algorithms
- Reinforcement Learning - Fall 2021 chandar-lab
- CMU 10 703 Deep Reinforcement Learning & Control fall 2022, by Katerina Fragkiadaki
- ECE524 Foundations of Reinforcement Learning at Princeton University, Spring 2024
- REINFORCEMENT LEARNING AND OPTIMAL CONTROL - Dimitri P. Bertsekas, ASU
-
- Advanced Machine Learning, 2021-2022, Sem I - by Prof. Madhavan Mukund, CMI
- 18.409 Algorithmic Aspects of Machine Learning Spring 2015 - MIT
- CS 330 - Deep Multi-Task and Meta Learning - Fall 2019 - Stanford University (Youtube)
- Stanford CS330: Deep Multi-Task and Meta Learning I Autumn 2022
- ES 661 (2023): Probabilistic Machine Learning - IIT Gandhinagar
- Information Retrieval in High Dimensional Data
-
- CS 224N -Natural Language Processing with Deep Learning - Stanford University (Lectures - Winter 2019) (Lectures - Winter 2021)
- CS 224N - Natural Language Processing, Stanford University (Lecture videos)
- Stanford XCS224U: Natural Language Understanding I Spring 2023
- CS388: Natural Language Processing - UT Austin
- CS 124 - From Languages to Information - Stanford University
- CS 6340/5340 - Natural Language Processing - University of Utah - Spring 2024 (Youtube)
- Neural Networks: Zero to Hero - Andrej Karpathy
- fast.ai Code-First Intro to Natural Language Processing (Github)
- MOOC - Natural Language Processing - Coursera, University of Michigan
- Natural Language Processing at UT Austin (Greg Durrett)
- CS224U: Natural Language Understanding - Spring 2019 - Stanford University
- Deep Learning for Natural Language Processing, 2017 - Oxford University
- Accelerated Natural Language Processing 2015/16- University of Edinburgh
- Natural Language Processing - IIT Bombay
- CMU Advanced NLP 2021
- CMU Neural Nets for NLP 2021
- Natural Language Processing - Michael Collins - Columbia University
- CMU CS11-737 - Multilingual Natural Language Processing
- UMass CS685: Advanced Natural Language Processing (Spring 2022)
- Natural Language Processing (CMSC 470)
- Stanford CS25 - Transformers United 2023
- Natural Language Processing (IN2361) - TUM
- CS 886: Recent Advances on Foundation Models Winter 2024 - University of Waterloo
-
- CS 231n - Convolutional Neural Networks for Visual Recognition, Stanford University
- CS 198-126: Modern Computer Vision Fall 2022 (UC Berkeley)
- Machine Learning for Robotics and Computer Vision, WS 2013/2014 - TU München (YouTube)
- Informatics 1 - Cognitive Science 2015/16- University of Edinburgh
- Informatics 2A - Processing Formal and Natural Languages 2016-17 - University of Edinburgh
- Computational Cognitive Science 2015/16- University of Edinburgh
- NOC:Deep Learning For Visual Computing - IIT Kharagpur
- Deep Learning for Computer Vision - University of Michigan
- Extreme Classification
- EECS 498/598 - Deep Learning for Computer Vision - University of Michigan - Fall 2019 (Youtube)
-
- Optimisation for Machine Learning: Theory and Implementation (Hindi) - IIT
- EE364a: Convex Optimization I - Stanford University
- 10-725 Convex Optimization, Spring 2015 - CMU
- 10-725 Convex Optimization: Fall 2016 - CMU
- 10-725 Optimization Fall 2012 - CMU
- 10-801 Advanced Optimization and Randomized Methods - CMU (YouTube)
- AM 207 - Stochastic Methods for Data Analysis, Inference and Optimization, Harvard University
-
- Quantum Machine Learning | 2021 Qiskit Global Summer School
- CS 6955 - Clustering, Spring 2015, University of Utah
- Info 290 - Analyzing Big Data with Twitter, UC Berkeley school of information (YouTube)
- CAM 383M - Statistical and Discrete Methods for Scientific Computing, University of Texas
- CS224W Machine Learning with Graphs | Spring 2021 | Stanford University
- 9.520 - Statistical Learning Theory and Applications, Fall 2015 - MIT
- Reinforcement Learning - UCL
- Regularization Methods for Machine Learning 2016 (YouTube)
- Statistical Inference in Big Data - University of Toronto
- Reinforcement Learning 2015/16- University of Edinburgh
- Reinforcement Learning - IIT Madras
- Statistical Rethinking Winter 2015 - Richard McElreath
- Music Information Retrieval - University of Victoria, 2014
- PURDUE Machine Learning Summer School 2011
- Foundations of Machine Learning - Blmmoberg Edu
- Introduction to reinforcement learning - UCL
- Advanced Deep Learning & Reinforcement Learning - UCL
- Web Information Retrieval (Proff. L. Becchetti - A. Vitaletti)
- Big Data Systems (WT 2019/20) - Prof. Dr. Tilmann Rabl - HPI
- Distributed Data Analytics (WT 2017/18) - Dr. Thorsten Papenbrock - HPI
- Introduction to Data-Centric AI - MIT
- Parallel Computing and Scientific Machine Learning
- Machine Learning System Design - System Design Fight Club
- UT Austin ECE 381V Bandits and Online Learning fall 2021, by Sanjay Shakkottai
- UCSD MATH 273B Information Geometry and its Applications winter 2022, by Melvin Leok
- Cornell ECE 5545 Machine Learning Hardware and Systems spring 2022, by Mohamed Abdelfattah
- High Dimensional Analysis: Random Matrices and Machine Learning by Roland Speicher(Youtube)
- ACP SUMMER SCHOOL 2023 on Machine Learning for Constraint Programming
- EPFL COM 516 Markov Chains and Algorithmic Applications spring 2020, by Olivier Leveque
- UC Irvine CS 274B Learning in Graphical Models spring 2021, by Erik Sudderth
- CS 144 Introduction to Computer Networking - Stanford University, Fall 2013 (Lecture videos)
- Computer Networking: A Top-Down Approach
- Computer Communication Networks, Rensselaer Polytechnic Institute - Fall 2001 (Videos) (Slides)
- Audio/Video Recordings and Podcasts of Professor Raj Jain's Lectures - Washington University in St. Louis (YouTube)
- Computer Networks, Tanenbaum, Wetherall Computer Networks 5e - Video Lectures
- CSEP 561 - PMP Network Systems, Fall 2013 - University of Washington (Videos)
- CSEP 561 – Network Systems, Autumn 2008 - University of Washington (Videos)
- Computer Networks - IIT Kharagpur
- Introduction to Data Communications 2013, Steven Gordon - Thammasat University, Thailand
- Introduction to Complex Networks - RIT
- Structural Analysis and Visualization of Networks
- Data Communication - IIT Kharagpur
- Error Correcting Codes - IISC Bangalore
- Information Theory and Coding - IIT Bombay
- Complex Network : Theory and Application - IIT Kharagpur
- Advanced 3G and 4G Wireless Mobile Communications - IIT Kanpur
- Broadband Networks: Concepts and Technology - IIT Bombay
- Coding Theory - IIT Madras
- Digital Communication - IIT Bombay
- Digital Voice & Picture Communication - IIT Kharagpur
- Wireless Ad Hoc and Sensor Networks - IIT Kharagpur
- Internetworking with TCP/IP by Prof. Dr. Christoph Meinel - HPI
- CS798: Mathematical Foundations of Computer Networking - University of Waterloo
- Maths courses all topics covered - Khan Academy
- Calculus
- Discrete Math
- 6.042J - Mathematics for Computer Science, MIT OCW
- Computer Science 70, 001 - Spring 2015
- CSE 547 Discrete Mathematics, Prof Skiena, University of Stony Brook
- Discrete Structures (Summer 2011) - Rutgers, The State University of New Jersey
- Discrete Mathematics and Mathematical Reasoning 2015/16 - University of Edinburgh
- Discrete Mathematical Structures - IIT Madras
- Discrete Structures - Pepperdine University
- CMU 21 228 Discrete Mathematics spring 2021, by Po-Shen Loh
- Probability & Statistics
- Statistics - CrashCourse
- 6.041 Probabilistic Systems Analysis and Applied Probability - MIT OCW
- Stanford CS109 Introduction to Probability for Computer Scientists I 2022 I Chris Piech
- MIT RES.6-012 Introduction to Probability, Spring 2018 - MIT
- Statistics 110 - Probability - Harvard University
- STAT 2.1x: Descriptive Statistics | UC Berkeley
- STAT 2.2x: Probability | UC Berkeley
- MOOC - Statistics: Making Sense of Data, Coursera
- MOOC - Statistics One - Coursera
- Probability and Random Processes - IIT Kharagpur
- MOOC - Statistical Inference - Coursera
- 131B - Introduction to Probability and Statistics, UCI
- STATS 250 - Introduction to Statistics and Data Analysis, UMichigan
- Sets, Counting and Probability - Harvard
- Opinionated Lessons in Statistics (Youtube)
- Statistics - Brandon Foltz
- Statistical Rethinking: A Bayesian Course Using R and Stan (Lectures) (Book)
- 02402 Introduction to Statistics E12 - Technical University of Denmark (F17)
- Engineering Probability (ECSE-2500) - RPI
- Purdue ECE302 Introduction to Probability for Data Science
- Undergraduate Probability with Professor Roman Vershynin
- High-Dimensional Probability
- Mathematical Statistics
- Bayesian Data Analysis
- Markov Processes - Spring 2023
- Causal Inference Course - Brady Neal
- Causal Inference -- Online Lectures (M.Sc/PhD Level)
- Machine Learning & Causal Inference: A Short Course
- Causal Inference Jonas Peters
- UIUC ECE 534 Random Processes fall 2020 - Ilan Shomorony
- ISyE 320 Simulation and Probabilistic Modeling spring 2022, by Qiaomin Xie - University of Wisconsin-Madison
- Cambridge Principles of Statistics 2020, by Alberto J. Coca
- UC Berkeley STAT 150 Stochastic Processes spring 2021, by Brett Kolesnik
- UIUC Math 564 Applied Stochastic Processes fall 2016, by Kay Kirkpatrick
- CS/ECE 561 - Probability and Info Theory in Machine Learning
- Linear Algebra
- Mathematical Foundations of Machine Learning (Fall 2021) - University of Chicago - Rebecca Willett
- 18.06 - Linear Algebra, Prof. Gilbert Strang, MIT OCW
- 18.065 Matrix Methods in Data Analysis, Signal Processing, and Machine Learning - MIT OCW
- Linear Algebra (Princeton University)
- MOOC: Coding the Matrix: Linear Algebra through Computer Science Applications - Coursera
- CS 053 - Coding the Matrix - Brown University (Fall 14 videos)
- Linear Algebra Review - CMU
- A first course in Linear Algebra - N J Wildberger - UNSW
- INTRODUCTION TO MATRIX ALGEBRA
- Computational Linear Algebra - fast.ai (Github)
- ENGR108: Introduction to Applied Linear Algebra—Vectors, Matrices, and Least Squares - Stanford University
- MIT 18.S096 Matrix Calculus For Machine Learning And Beyond
- Cornell MATH 2940 Linear Algebra for Engineers spring 2009, by Andy Ruina
- 10-600 Math Background for ML - CMU
- MIT 18.065 Matrix Methods in Data Analysis, Signal Processing, and Machine Learning
- Direct Methods for Sparse Linear Systems - Prof Tim Davis - UFL
- 36-705 - Intermediate Statistics - Larry Wasserman, CMU (YouTube)
- Combinatorics - IISC Bangalore
- Advanced Engineering Mathematics - Notre Dame
- Statistical Computing for Scientists and Engineers - Notre Dame
- Statistical Computing, Fall 2017 - Notre Dame
- Mathematics for Machine Learning, Lectures by Ulrike von Luxburg - Tübingen Machine Learning
- Essential Mathematics for Machine Learning- July 2018 - IIT Roorkee - YouTube Lectures
- Numerics of Machine Learning (Winter 2022/23) - Tübingen Machine Learning
- Nonlinear Dynamics and Chaos - Steven Strogatz, Cornell University
- Nonlinear Dynamics & Chaos - Virginia Tech
- An introduction to Optimization on smooth manifolds (with book) - EPFL
- Math Modelling
- Large-Scale Convex Optimization: Algorithms & Analyses via Monotone Operators by Ernest Ryu and Wotao Yin
- An Overview of Variational Analysis 2021 by Tyrrell Rockafellar
- UW AMATH 584 Applied Linear Algebra & Numerical Analysis by Nathan Kutz
- UW AMATH 584 Applied Linear Algebra & Introductory Numerical Analysis fall 2005, by Loyce Adams
- Stanford CME 206 Introduction to Numerical Methods for Engineering spring 2005, by Charbel Farhat
- Stanford CME 200 Linear Algebra with Application to Engineering Computations autumn 2004, by Margot Gerritsen
- Stanford CME 302 Numerical Linear Algebra autumn 2007, by Gene Golub
- TUe Numerical Linear Algebra 2021, by Martijn Anthonissen
- Numerical Linear Algebra fall 2018, by Jaegul Choo
- MIT 6.S955 Applied Numerical Algorithms fall 2023, by Justin Solomon
- UC Berkeley Math 55 Discrete Mathematics fall 2021, by Nikhil Srivastava
- Fundamental Mathematics for Robotics spring 2020, by Ken Tomiyama
- Short Course on Casual Inference, by Sanjay Shakkottai
- UCLA STAT 100C Linear Models spring 2023, by Arash Amini
- MSU Math for Computing
- Mathematics of Data Science - ETH Zurich
- CS50's Web Programming with Python and JavaScript
- Web Design Decal - HTML/CSS/JavaScript Course, University of California, Berkeley
- CS 75 Building Dynamic Websites - Harvard University
- Internet Technology - IIT Kharagpur
- Introduction to Modern Application Development - IIT Madras
- CSE 199 - How the Internet Works, Fall 2016 - University of Buffalo
- Open Sourced Elective: Database and Rails - Intro to Ruby on Rails, University of Texas (Lectures - Youtube)
- CSEP545 - Transaction Processing for E-Commerce, Winter 2012 - University of Washington (Videos)
- CT 310 Web Development - Colorado State University
- Internet Technologies and Applications 2012, Steven Gordon - Thammasat University, Thailand
- CSCI 3110 Advanced Topics in Web Development, Fall 2011 - ETSU iTunes
- CSCI 5710 e-Commerce Implementation, Fall 2015 - ETSU iTunes
- MOOC - Web Development - Udacity
- Web Technologies Prof. Dr. Christoph Meinel - HPI
- MOOC - Compilers - Stanford University
- CS 6120: Advanced Compilers: The Self-Guided Online Course - Cornell University
- CS 164 Hack your language, UC Berkeley (Lectures - Youtube)
- Theory of computation - Shai Simonson
- CS 173 Programming Languages, Brown University (Book)
- CS Theory Toolkit at CMU 2020
- CS 421 - Programming Languages and Compilers, UIUC
- CSC 253 - CPython internals: A ten-hour codewalk through the Python interpreter source code, University of Rochester
- CSE341 - Programming Languages, Dan Grossman, Spring 2013 - University of Washington
- CSEP 501 - Compiler Construction, University of Washington (Lectures - Youtube)
- CSEP 505 Programming Languages, Winter 2015 - University of Washington
- DMFP - Discrete Mathematics and Functional Programming, Wheaton College
- CS 374 - Algorithms & Models of Computation (Fall 2014), UIUC (Lecture videos)
- 6.045 Automata, Computability, and Complexity, MIT (Lecture Videos)
- MOOC - Automata - Jeffrey Ullman - Coursera
- CS581 Theory of Computation - Portland State University (Lectures - Youtube)
- Theory of Computation - Fall 2011 UC Davis
- TDA555 Introduction to Functional Programming - Chalmers University of Technology (Lectures - YouTube)
- Ryan O'Donnell Theoretical Computer Science Talks
- Philip Wadler Haskell lecture recordings
- Functional Programming (2021) - University of Nottingham
- Functional Programming - University of Edinburgh - 2016-17
- MOOC - Functional Programming Principles in Scala by Martin Odersky
- CS294 - Program Synthesis for Everyone
- MOOC - Principles of Reactive Programming, Scala - Coursera
- Category Theory for Programmers, 2014 - Bartosz Milewski (YouTube)
- Oregon Programming Languages Summer School (Proof theory, type theory, category theory, verification)
- Inf1 - Computation and Logic 2015 - University of Edinburgh
- INFORMATICS 1 - FUNCTIONAL PROGRAMMING - University of Edinburgh (Videos)
- Compiler Design - IISC Bangalore
- Compiler Design - IIT Kanpur
- Principles of Programming Languages - IIT Delhi
- Principles of Compiler Design - IISC Bangalore
- Functional Programming in Haskell - IIT Madras
- Theory of Computation - IIT Kanpur
- Theory of Automata, Formal Languages and Computation - IIT Madras
- Theory of Computation - IIT Kanpur
- Logic for CS - IIT Delhi
- Principles of Compiler Design - Swarthmore College
- Undergrad Complexity Theory at CMU
- Graduate Complexity Theory at CMU
- Great Ideas in Theoretical Computer Science at CMU
- Analysis of Boolean Functions at CMU
- Theoretical Computer Science (Bridging Course)(Tutorial) - SS 2015
- Languages & Translators - UCLouvain LINFO2132
- Compiler Design by Sorav Bansal
- OCaml Programming: Correct + Efficient + Beautiful
- Columbia ELEN E6711 Stochastic Models in Information Systems fall 2005, by Yuliy Barsyhnikov
- Columbia ELEN E6717 Information Theory fall 2003, by Vittorio Castelli
- CMU 21 738 Extremal Combinatorics spring 2020, by Po-Shen Loh
- EE319K Embedded Systems - UT Austin
- EE445L Embedded Systems Design Lab, Fall 2015, UTexas
- CS149 Introduction to Embedded Systems - Spring 2011 - UCBerkeley
- ECE 4760 Designing with Microcontrollers Fall 2016, Cornell University (Lectures - Youtube)
- ECE 5760 - Advanced Microcontroller Design and system-on-chip, Spring 2016 - Cornell University
- Internet of Things by Prof. Dr.-Ing. Dietmar P. F. Möller
- CSE 351 - The Hardware/Software Interface, Spring 16 - University of Washington (Coursera)
- ECE 5030 - Electronic Bioinstrumentation, Spring 2014 - Cornell University
- ECE/CS 5780/6780 - Embedded Systems Design, Spring 14 - University of Utah
- Embedded Systems Class - Version 1 - 2011 - UNCC
- Embedded Systems using the Renesas RX63N Processor - Version 3 - UNCC
- Software Engineering for Embedded Systems (WS 2011/12) - HPI University of Potsdam
- Embedded Software Testing - IIT Madras
- Embedded Systems - IIT Delhi
- Embedded Systems Design - IIT Kharagpur
- ARM Based Development - IIT Madras
- Software Engineering for Self Adaptive Systems - iTunes - HPI University of Potsdam
- EE260 Embedded Systems by Robert Paz
- IoT Summer School
- ECSE 421 - Embedded Systems - McGill
- NOC:Advanced IOT Applications - IISc Bangalore
- NOC:Design for internet of things - IISc Bangalore
- Performance evaluation of Computer systems - IIT Madras
- Real Time systems - IIT Karaghpur
- EE 380 Colloquium on Computer Systems - Stanford University
- System storages - IISc Bangalore
- High Performance Computing - IISC Bangalore
- 2023 High Performance Computing Course Prof Dr - Ing Morris Riedel (2022)
- High Performance Computing | Udacity
- Computer Organization
- How Computers Work - Aduni
- CS 61C - Machine Structures, UC Berkeley Spring 2015
- 6.004 - Computation Structures Spring 2013, MIT
- CS/ECE 3810 Computer Organization, Fall 2015, , University of Utah (YouTube)
- Digital Computer Organization - IIT Kharagpur
- Computer Organization - IIT Madras
- CS-224 - Computer Organization, 2009-2010 Spring, Bilkent University (YouTube playlist)
- INFORMATICS 2C - INTRODUCTION TO COMPUTER SYSTEMS (AUTUMN 2016) - University of Edinburgh
- Computer Architecture
- 18-447 - Introduction to Computer Architecture, CMU (Lectures - YouTube - Fall 15)
- CSEP 548 - Computer Architecture Autumn 2012 - University of Washington
- CS/ECE 6810 Computer Architecture, Spring 2016, University of Utah (YouTube)
- MOOC - Computer Architecture, David Wentzlaff - Princeton University/Coursera
- Computer Architecture - ETH Zürich - Fall 2019
- Digital Circuits and Computer Architecture - ETH Zurich - Spring 2017
- Computer Architecture - IIT Delhi
- Computer Architecture - IIT Kanpur
- Computer Architecture - IIT Madras
- High Performance Computer Architecture - IIT Kharagpur
- BE5B35APO - Computer Architectures, Spring 2022, CTU - FEE (YouTube - Spring 2022) (RISC-V simulator - QtRvSim)
- Parallel Computer Architecture
- 15-418 - Parallel Computer Architecture and Programming, CMU (Lecture Videos)
- CS 267 Applications of Parallel Computers, Spring 16 - UC Berkeley (YouTube)
- MOOC - Heterogeneous Parallel Programming - Coursera
- ECE 498AL - Programming Massively Parallel Processors
- Parallel Computing - IIT Delhi
- Parallel Architectures 2012/13- University of Edinburgh
- Digital Systems Design
- CS1 - Higher Computing - Richard Buckland UNSW
- MOOC - From NAND to Tetris - Building a Modern Computer From First Principles (YouTube)
- System Validation, TU Delft
- High Performance Computing - IISC Bangalore
- Introduction to ARM - Open SecurityTraining
- Intro x86 (32 bit) - Open SecurityTraining
- Intermediate x86 (32 bit) - Open SecurityTraining
- Design of Digital Circuits - ETH Zürich - Spring 2019
- Onur Mutlu @ TU Wien 2019 - Memory Systems
- Memory Systems Course - Technion, Summer 2018
- UC Berkeley EECS16A Designing Information Devices and Systems I summer 2020, by Grace Kuo, Panos Zarkos, Urmita Sikder
- UC Berkeley EECS 16B Designing Information Devices and Systems II fall 2020, by Seth Sanders, Miki Lustig
- ELEN E4896 - MUSIC SIGNAL PROCESSING - Spring 2016 - Columbia
- Columbia ELEN E6820 Speech and Audio Processing spring 2006, by Dan Ellis
- CMU 11 751 / 18 781 Speech Recognition and Understanding fall 2022, by Shinji Watanabe
- CMU 11 492 Speech Processing fall 2021, by Alan W. Black
- Internet Security (WT 2018/19) - HPI University of Potsdam
- 6.858 Computer Systems Security - MIT OCW
- CS 253 Web Security - Stanford University
- CS 161: Computer Security, UC Berkeley (Videos)
- 6.875 - Cryptography - Spring 2018- MIT
- CSEP590A - Practical Aspects of Modern Cryptography, Winter 2011 - University of Washington (Videos)
- CS461/ECE422 - Computer Security - University of Illinois at Urbana-Champaign (Videos)
- Introduction to Cryptography, Christof Paar - Ruhr University Bochum, Germany
- ECS235B Foundations of Computer and Information Security - UC Davis
- CIS 4930/ CIS 5930 - Offensive Computer Security, Florida State University
- Introduction to Information Security I - IIT Madras
- Information Security - II - IIT Madras
- Introduction to Cryptology - IIT Roorkee
- Cryptography and Network Security - IIT Kharagpur
- 18-636 Browser Security, Stanford
- Internet Security - Weaknesses and Targets (WT 2015/16) (WT 2012/13 (YouTube))
- IT Security, Steven Gordon - Thammasat University, Thailand
- Security and Cryptography, Steven Gordon - Thammasat University, Thailand
- MOOC - Cryptography - Coursera
- MOOC - Intro to Information Security - Udacity
- ICS 444 - Computer & Network Security
- Privacy and Security in Online Social Networks - IIT Madras
- Malware Dynamic Analysis - Open SecurityTraining (YouTube)
- CSN09112 - Network Security and Cryptography - Bill Buchanan - Edinburgh Napier
- CSN10107 - Security Testing and Network Forensics - Bill Buchanan - Edinburgh Napier
- CSN11123 - Advanced Cloud and Network Forensics - Bill Buchanan - Edinburgh Napier
- CSN11117 - e-Security - Bill Buchanan - Edinburgh Napier
- CSN08704 - Telecommunications - Bill Buchanan - Edinburgh Napier
- CSN11128 - Incident Response and Malware Analysis - Bill Buchanan - Edinburgh Napier
- Internet Security for Beginners by Dr. Christoph Meinel - HPI
- Offensive Security and Reverse Engineering, Chaplain University by Ali Hadi
- Computer Systems Security
- ECS 175 - Computer Graphics, Fall 2009 - UC Davis
- 6.837 - Computer Graphics - Spring 2017 - MIT
- 6.838 - Shape Analysis - Spring 2017- MIT
- Introduction to Computer Graphics - IIT Delhi
- Computer Graphics - IIT Madras
- Computer Graphics 2012, Wolfgang Huerst, Utrecht University
- CS 5630/6630 - Visualization, Fall 2016, University of Utah (Lectures - Youtube)
- Advanced Visualization UC Davis
- CSCI E-234 - Introduction to Computer Graphics and GPU Programming, Harvard Extension School
- Computer Graphics Fall 2011, Barbara Hecker
- Introduction to Graphics Architecture
- Ray Tracing for Global Illumination, UCDavis
- Rendering / Ray Tracing Course, SS 2015 - TU Wien
- ECS 178 Introduction to Geometric Modeling, Fall 2012, UC Davis (iTunes)
- Computational Geometry - IIT Delhi
- CS 468 - Differential Geometry for Computer Science - Stanford University (Lecture videos)
- CMU 15-462/662: Computer Graphics
- Columbia COMS W4195 Computational Techniques in Pixel Processing fall 2004, by George Wolberg
- MOOC - Digital Image processing - Duke/Coursera
- Digital Image Processing - IIT Kharagpur
- Image Processing and Analysis - UC Davis
- CS 543 - Computer Vision – Spring 2017 (Recordings)
- CAP 5415 - Computer Vision - University of Central Florida(Video Lectures)
- EE637 - Digital Image Processing I - Purdue University (Videos - Sp 2011,Videos - Sp 2007)
- Computer Vision I: Variational Methods - TU München (YouTube)
- Computer Vision II: Multiple View Geometry (IN2228), SS 2016 - TU München (YouTube)
- EGGN 510 - Image and Multidimensional Signal Processing - Colorado School of Mines
- EENG 512/CSCI 512 - Computer Vision - Colorado School of Mines
- Computer Vision for Visual Effects - RPI (YouTube)
- Introduction to Image Processing - RPI (YouTube)
- CAP 6412 - Advanced Computer Vision - University of Central Florida(Video lectures) (Spring 2018)
- Digital Signal Processing - RPI
- Advanced Vision 2014 - University of Edinburgh
- Photogrammetry Course - 2015/16 - University of Bonn, Germany
- MOOC - Introduction to Computer Vision - Udacity
- ECSE-4540 - Intro to Digital Image Processing - Spring 2015 - RPI
- Machine Learning for Computer Vision - Winter 2017-2018 - UniHeidelberg
- High-Level Vision - CBCSL OSU
- Advanced Computer Vision - CBCSL OSU
- Introduction to Image Processing & Computer Vision - CBCSL OSU
- Machine Learning for Computer Vision - TU Munich
- Biometrics - IIT Kanpur
- Quantitative Big Imaging 2019 ETH Zurich
- Multiple View Geometry in Computer Vision
- 3D Coordinate Systems – Remote Course (GE, 2020) - University of Bonn (2013 lectures)
- Modern C++ Course For CV (2020) - University of Bonn
- Photogrammetry 1 Course – 2020 - University of Bonn
- Photogrammetry II Course 2020/21 - University of Bonn
- 3D Computer Vision - National University of Singapore
- Statistics and Machine Learning for Astronomy
- Astronomical data analysis using Python 2021 - NRC IUCAA
- SPARC Workshop on Machine Learning in Solar Physics and Space Weather - CESSI IISER Kolkata
- Data-Driven Methods and Machine Learning in Atmospheric Sciences - IISC
- Computational Astrophysics - AstroTwinCoLo, 2015
- Astroinformatics 2019 Conference - Caltech
- Space Science with Python - Astroniz
- Computational Physics Course in Python, Rutgers 2021
- Landau Computational Physics Course
- Statistical Methods and Machine Learning in High Energy Physics
- ECS 124 - Foundations of Algorithms for Bioinformatics - Dan Gusfield, UC Davis (YouTube)
- CSE549 - Computational Biology - Steven Skiena - 2010 SBU
- 7.32 Systems Biology, Fall 2014 - MIT OCW
- 6.802J/ 6.874J Foundations of Computational and Systems Biology - MIT OCW
- 6.S897 Machine Learning For Healthcare
- 6.047/6.878 Machine Learning for Genomics Fall 2020 - MIT
- 6.874 MIT Deep Learning in Life Sciences - Spring 2021 - MIT
- 6.047/6.878 Public Lectures on Computational Biology: Genomes, Networks, Evolution - MIT
- Bio 84 - Your Genes and Your Health, Stanford University
- BioMedical Informatics 231 Computational Molecular Biology, Stanford University
- BioMedical Informatics 258 Genomics, Bioinformatics & Medicine, Stanford University
- 03-251: Introduction to Computational Molecular Biology - Carnegie Mellon University
- 03-712: Biological Modeling and Simulation - Carnegie Mellon University
- MOOC - Bioinformatics Algorithms: An Active Learning Approach - UC San Diego/Coursera
- Neural Networks and Biological Modeling - Lecturer: Prof. Wulfram Gerstner - EPFL
- Video Lectures of Wulfram Gerstner: Computational Neuroscience - EPFL
- An Introduction To Systems Biology
- Introduction to Bioinformatics, METUOpenCourseWare
- MOOC - Algorithms for DNA Sequencing, Coursera
- Frontiers of Biomedical Engineering with W. Mark Saltzman - Yale
- NOC:Computational Systems Biology - IIT Madras
- NOC:BioInformatics:Algorithms and Applications - IIT Madras
- Data Science and AI for Neuroscience Summer School - Caltech Neuroscience
- Neuroscience 299: Computing with High-Dimensional Vectors - Fall 2021 - UC Berkeley
- BIO410/510 Bioinformatics - California State University, Monterey Bay
- BIO412: Comparative Genomics - California State University, Monterey Bay
- CENG 465 - Introduction to Bioinformatics (Spring 2020-2021)
- 15-859BB: Quantum Computation and Quantum Information 2018 - CMU (Youtube)
- Quantum Computation and Information at CMU
- Ph/CS 219A Quantum Computation - Prof Preskill - Caltech
- Quantum Mechanics and Quantum Computation - Umesh Vazirani
- Introduction to quantum computing course 2022 - NYU
- Phys 1470 - Foundations of Quantum Computing and Quantum Information - U of Pittsburgh
- Introduction to Quantum Computing From a Layperson to a Programmer in 30 Steps (EE225 SJSU)
- Quantum Computing Hardware and Architecture (EE274 SJSU)
- Quantum Physics for Non-Physicists 2021 - ETH Zurich (2020)
- Introduction to Quantum Computing and Quantum Hardware - Qiskit
- Understanding Quantum Information and Computation - Qiskit
- Lectures in Quantum Computation and Quantum Information (IIT Madras)
- Quantum Information and Computing by Prof. D.K. Ghosh
- Quantum Computing by Prof. Debabrata Goswami
- The Building Blocks of a Quantum Computer: Part 1 - TU Delft
- The Building Blocks of a Quantum Computer: Part 2 - TU Delft
- Quantum Cryptography - TU Delft
- Introduction to Quantum Information
- Quantum Computing for Everyone -- Part 1 (Part 2)
- Quantum Computer Systems – UChicago
- Quantum computing for the determined - Michael Nielsen
- Quantum Computing
- ROB 101: Computational Linear Algebra - University of Michigan (Youtube - Fall 2021)
- ROB 102: Introduction to AI and Programming - University of Michigan
- ROB 311: How to Build Robots and Make Them Move - University of Michigan
- ROB 320: Robot Operating Systems - University of Michigan
- ROB 501: Mathematics for Robotics - University of Michigan (Youtube)
- ROB 530 MOBILE ROBOTICS at U of Michigan - WINTER 2022 -- Instructor: Maani Ghaffari
- Autorob Winter 2022 - University of Michigan
- DeepRob Winter 2023 - University of Michigan
- CS 223A - Introduction to Robotics, Stanford University
- 6.832 Underactuated Robotics - MIT OCW
- CS287 Advanced Robotics at UC Berkeley Fall 2019 -- Instructor: Pieter Abbeel
- CS 287 - Advanced Robotics, Fall 2011, UC Berkeley (Videos)
- CMU 16-715 Robot Dynamics 2022 - CMU
- CMU 16-745 Optimal Control 2023 - CMU
- CS235 - Applied Robot Design for Non-Robot-Designers - Stanford University
- Lecture: Visual Navigation for Flying Robots (YouTube)
- CS 205A: Mathematical Methods for Robotics, Vision, and Graphics (Fall 2013)
- Robotics 1, Prof. De Luca, Università di Roma (YouTube)
- Robotics 2, Prof. De Luca, Università di Roma (YouTube)
- Robot Mechanics and Control, SNU
- Introduction to Robotics Course - UNCC
- SLAM Lectures
- Introduction to Vision and Robotics 2015/16- University of Edinburgh
- ME 597 – Autonomous Mobile Robotics – Fall 2014
- ME 780 – Perception For Autonomous Driving – Spring 2017
- ME780 – Nonlinear State Estimation for Robotics and Computer Vision – Spring 2017
- METR 4202/7202 -- Robotics & Automation - University of Queensland
- Robotics - IIT Bombay
- Introduction to Machine Vision
- 6.834J Cognitive Robotics - MIT OCW
- Hello (Real) World with ROS – Robot Operating System - TU Delft
- Programming for Robotics (ROS) - ETH Zurich
- Mechatronic System Design - TU Delft
- CS 206 Evolutionary Robotics Course Spring 2020
- Foundations of Robotics - UTEC 2018-I
- Robotics - Youtube
- Robotics and Control: Theory and Practice IIT Roorkee
- Mechatronics
- ME142 - Mechatronics Spring 2020 - UC Merced
- Mobile Sensing and Robotics - Bonn University
- MSR2 - Sensors and State Estimation Course (2020) - Bonn University
- SLAM Course (2013) - Bonn University
- ENGR486 Robot Modeling and Control (2014W)
- Robotics by Prof. D K Pratihar - IIT Kharagpur
- Introduction to Mobile Robotics - SS 2019 - Universität Freiburg
- Robot Mapping - WS 2018/19 - Universität Freiburg
- Mechanism and Robot Kinematics - IIT Kharagpur
- Self-Driving Cars - Cyrill Stachniss - Winter 2020/21 - University of Bonn)
- Mobile Sensing and Robotics 1 – Part Stachniss (Jointly taught with PhoRS) - University of Bonn
- Mobile Sensing and Robotics 2 – Stachniss & Klingbeil/Holst - University of Bonn
- Aerial Robotics - University of Pennsylvania (UPenn)
- Modern Robotics - Northwestern University
- MIT 6.4210/6.4212 - Robotic Manipulation - MIT (Youtube)
- Industrial Robotics and Automation - IIT (ISM) Dhanbad
- MEE5114 Advanced Control for Robotics from Southern University of Science and Technology
- Self-Driving Cars — Andreas Geiger
- Signal Processing: An Introduction by Nathan Kutz
- UC Santa Barbara ME 269 Network Systems, Dynamics and Control fall 2021, by Francesco Bullo
- EPFL EE 611 Linear System Theory spring 2020, by Philippe Müllhaupt
- EPFL ME 427 Networked Control Systems spring 2020, by Giancarlo Ferrari Trecate
- EPFL ME 422 Multivariable Control spring 2020, by Giancarlo Ferrari Trecate
- CMU 16 299 Introduction to Feedback Control Systems spring 2022, by Chris Atkeson
- MAE 509 Linear Matrix Inequality Methods in Optimal and Robust Control, by Matthew M. Peet
- UIUC CS 588 Autonomous Vehicle System Engineering fall 2021, by David Forsyth
- EPFL ME 425 Model Predictive Control fall 2020, by Colin Jones
- UW EE 549 State Estimation and Kalman Filtering spring 2009, by Kristi Morgansen
- COMP510 - Computational Finance - Steven Skiena - 2007 HKUST
- Computational Finance Course - Prof Grzelak
- Financial Engineering Course: Interest Rates and xVA - Prof Grzelak
- MOOC - Mathematical Methods for Quantitative Finance, University of Washington/Coursera)
- 18.S096 Topics in Mathematics with Applications in Finance, MIT OCW
- Computational Finance - Universität Leipzig
- Machine Learning for Trading | Udacity
- ACT 460 / STA 2502 – Stochastic Methods for Actuarial Science - University of Toronto
- MMF1928H / STA 2503F – Pricing Theory I / Applied Probability for Mathematical Finance - University of Toronto
- STA 4505H – High Frequency & Algorithmic trading - University of Toronto
- Mathematical Finance - IIT Guwahati
- Quantitative Finance - IIT Kanpur
- Financial Derivatives & Risk Management - IIT Roorkee
- Financial Mathematics - IIT Roorkee
- Blockchain and Cryptocurrencies
- Blockchain, Solidity, and Full Stack Web3 Development with JavaScript
- Blockchain Fundamentals Decal 2018 - Berkeley DeCal
- Blockchain for Developers Decal - Spring 2018 - Berkeley DeCal
- Cryptocurrency Engineering and Design - Spring 2018 - MIT
- 15.S12 Blockchain and Money, Fall 2018 - MIT
- Blockchain - Foundations and Use Cases
- Become Blockchain Developer
- HCI
- Game Development
- Geospatial
- SCICOMP - An Introduction to Efficient Scientific Computation, Universität Bremen
- CS E-259 XML with Java, Java Servlet, and JSP - Harvard
- CSE 40373 - Spr 2009: Multimedia Systems
- Exposing Digital Photography - Harvard Extension School
- MOOC - Matlab - Coursera
- Computing for Computer Scientists - University of Michigan
- Linux Implementation/Administration Practicum - Redhat by Tulio Llosa
- SIMS 141 - Search Engines - Fall 2005 UCBerkeley
- Innovative Computing - Harvard University
- Linux Programming & Scripting - IIT Madras
- Model Checking - IIT Madras
- Virtual Reality - IIT Madras
- CS 195 - Social Implications of Computing, Spring 2015 - UC Berkeley (YouTube)
- Spatial Databases and Geographic Information Systems - Technische Universität Braunschweig, Germany (in German)
- Dependable Systems (SS 2014) - HPI University of Potsdam
- Business Process Compliance (WT 2013/14) - HPI University of Potsdam
- Design Thinking for Digital Engineering (SS 2018) - Dr. Julia von Thienen - HPI
- CS224w – Social Network Analysis – Autumn 2017 - Stanford University
- The Missing Semester of Your CS Education
- University of Crete, Computer Science video lectures (mostly Greek language lectures, very few 100% English-speaking courses). Very popular CS destination for European Erasmus students
- Stanford EE274 I Data Compression: Theory and Applications I 2023
- Probabilistic Methods - University of Waterloo
- LINGI 2365 Constraint Programming 2021, by Pierre Schaus - UCLouvain