Huge Video Courses Collection Free Download – Google Drive Links

Courses:
Introduction to Computer Science
- CS 10 – The Beauty and Joy of Computing – Spring 2015 – Dan Garcia – UC Berkeley InfoCoBuild 209
- 6.0001 – Introduction to Computer Science and Programming in Python – MIT OCW 125
- 6.001 – Structure and Interpretation of Computer Programs, MIT 26
- CS 50 – Introduction to Computer Science, Harvard University 53 (cs50.tv 5)
- CS 61A – Structure and Interpretation of Computer Programs [Python], UC Berkeley 20
- CPSC 110 – Systematic Program Design [Racket], University of British Columbia 9
- CS50’s Understanding Technology 11
- CSE 142 Computer Programming I (Java Programming), Spring 2016 – University of Washington 44
- CS 1301 Intro to computing – Gatech 21
- CS 106A – Programming Methodology, Stanford University 25 (Lecture Videos 2)
- CS 106B – Programming Abstractions, Stanford University 14 (Lecture Videos 2)
- CS 106X – Programming Abstractions in C++ 40 (Lecture Videos 7)
- CS 107 – Programming Paradigms, Stanford University 10
- CmSc 150 – Introduction to Programming with Arcade Games, Simpson College 9
- LINFO 1104 – Paradigms of computer programming, Peter Van Roy, Université catholique de Louvain, Belgium – EdX 11
- FP 101x – Introduction to Functional Programming, TU Delft 14
- Introduction to Problem Solving and Programming – IIT Kanpur 51
- Introduction to programming in C – IIT Kanpur 46
- Programming in C++ – IIT Kharagpur 103
- Python Boot Camp Fall 2016 – Berkeley Institute for Data Science (BIDS) 38
- CS 101 – Introduction to Computer Science – Udacity 26
- 6.00SC – Introduction to Computer Science and Programming (Spring 2011) – MIT OCW 18
- 6.00 – Introduction to Computer Science and Programming (Fall 2008) – MIT OCW 13
- 6.01SC – Introduction to Electrical Engineering and Computer Science I – MIT OCW 12
- Modern C++ Course (2018) – Bonn University 63
Data Structures and Algorithms
- 6.006 – Introduction to Algorithms, MIT OCW 151
- Algorithms: Design and Analysis 1 – Stanford University 110
- Algorithms: Design and Analysis 2 – Stanford University 29
- COS 226 Algorithms, Youtube, Princeton – by Robert Sedgewick and Kevin Wayne 47
- CSE 331 Introduction to Algorithm Design and Analysis, SUNY University at Buffalo, NY – Fall 2017 21 (Lectures 7) (Homework Walkthroughs 2)
- CSE 373 – Analysis of Algorithms, Stony Brook – Prof Skiena 22
- COP 3530 Data Structures and Algorithms, Prof Sahni, UFL 32 (Videos 5)
- CS225 – Data Structures – University of Illinois at Urbana-Champaign 19(Video lectures 7)
- CS2 – Data Structures and Algorithms – Richard Buckland – UNSW 34
- Data Structures – Pepperdine University 15
- CS 161 – Design and Analysis of Algorithms, Prof. Tim Roughgarden, Stanford University 13
- 6.046J – Introduction to Algorithms – Fall 2005, MIT OCW 10
- 6.046 – Design and Analysis of Algorithms, Spring 2015 – MIT OCW 12
- CS 473 – Algorithms – University of Illinois at Urbana-Champaign 13 (Notes – Jeff Erickson 1) (YouTube 4)
- COMP300E – Programming Challenges, Prof Skiena, Hong Kong University of Science and Technology – 2009 14
- 16s-4102 – Algorithms, University of Virginia 11 (Youtube 5)
- CS 170 Algorithms – UCBerkeley 9 Fall 2018, Youtube 5 Fall 2018,Bilibili 1 2013 Bilibili
- ECS 122A – Algorithm Design and Analysis, UC Davis 7
- CSEP 521 – Applied Algorithms, Winter 2013 – University of Washington 7 (Videos 2)
- Data Structures And Algorithms – IIT Delhi 62
- Design and Analysis of Algorithms – IIT Bombay 26
- Programming, Data Structures and Algorithms – IIT Madras 35
- Design and Analysis of Algorithms – IIT Madras 15
- Fundamental Algorithms:Design and Analysis – IIT Kharagpur 7
- Programming and Data Structure – IIT Kharagpur 27
- Programming, Data structures and Algorithms – IIT Madras 28
- Programming, Data Structures and Algorithms in Python – IIT Madras 33
- Programming and Data structures (PDS) – IIT Madras 12
- COP 5536 Advanced Data Structures, Prof Sahni – UFL 5 (Videos 4)
- CS 261 – A Second Course in Algorithms, Stanford University 9 (Youtube 2)
- Informatics 2B – Algorithms, Data Structures and Learning- University of Edinburgh 10
- CS 224 – Advanced Algorithms, Harvard University 7 (Lecture Videos 2) (Youtube 2)
- CS 6150 – Advanced Algorithms (Fall 2016), University of Utah 7
- CS 6150 – Advanced Algorithms (Fall 2017), University of Utah 5
- ECS 222A – Graduate Level Algorithm Design and Analysis, UC Davis 8
- 6.851 – Advanced Data Structures, MIT 18 (MIT OCW)
- 6.854 – Advanced Algorithms, MIT 12 (Prof. Karger lectures 3)
- CS264 Beyond Worst-Case Analysis, Fall 2014 – Tim Roughgarden Lecture 3 (Youtube 2)
- CS364A Algorithmic Game Theory, Fall 2013 – Tim Roughgarden Lectures 4
- CS364B Advanced Mechanism Design, Winter 2014 – Tim Roughgarden Lectures 8
- Algorithms – Aduni 4
- 6.889 – Algorithms for Planar Graphs and Beyond (Fall 2011) MIT 12
- 6.890 Algorithmic Lower Bounds: Fun with Hardness Proofs – MIT OCW 5
- Computer Algorithms – 2 – IIT Kanpur 12
- Parallel Algorithm – IIT Kanpur 16
- Graph Theory – IISC Bangalore 36
Systems Programming
- 6.033 Computer System Engineering – MIT 38
- CS24 Introduction to Computing Systems – California Institute of Technology 18 (Spring 15 version 1)
- 15-213 Introduction to Computer Systems, Fall 2015 – CMU 6
- CS361 – COMPUTER SYSTEMS – UIC 8
- CS 4400 – Computer Systems Fall 2016 – UoUtah 4
- Systems – Aduni 2
- CS110: Principles of Computer Systems – Stanford 7
- Operating Systems
- CS124 Operating Systems – California Institute of Technology, Fall 2018 – Youtube 68
- CS 162 Operating Systems and Systems Programming, Spring 2015 – University of California, Berkeley 14
- CS 4414 – Operating Systems, University of Virginia (rust-class) 12
- CS 4414 Operating Systems, Fall 2018 – University of Virginia 8
- CSE 421/521 – Introduction to Operating Systems, SUNY University at Buffalo, NY – Spring 2016 5 (Lectures – YouTube 5) (Recitations 2016 1) (Assignment walkthroughs)
- CS 377 – Operating Systems, Fall 16 – Umass OS 3
- 6.828 – Operating System Engineering [Fall 2014] 8
- CSE 30341 – Operating Systems, Spr 2008 4
- CSEP 551 Operating Systems Autumn 2014 – University of Washington 7
- Introduction to Operating Systems – IIT Madras 21
- CS194 Advanced Operating Systems Structures and Implementation, Spring 2013 InfoCoBuild, UC Berkeley 7
- CSE 60641 – Graduate Operating Systems, Fall 08 9
- Distributed Systems
- CS 677 – Distributed Operating Systems, Spring 16 – Umass OS 16
- CS 436 – Distributed Computer Systems – U Waterloo 12
- 6.824 – Distributed Systems, Spring 2015 – MIT 17
- Distributed Algorithms, https://canvas.instructure.com/courses/902299 6
- CSEP 552 – PMP Distributed Systems, Spring 2013 – University of Washington 8 (Videos)
- CSE 490H – Scalable Systems: Design, Implementation and Use of Large Scale Clusters, Autumn 2008 – University of Washington 10 (Videos 2)
- MOOC – Cloud Computing Concepts – UIUC 4
- Distributed Systems (Prof. Pallab Dasgupta) 11
- EdX KTHx ID2203 Reliable Distributed Algorithms 2
- Distributed Data Management – Technische Universität Braunschweig, Germany 3
- Information Retrieval and Web Search Engines – Technische Universität Braunschweig, Germany 3
- Middleware and Distributed Systems (WS 2009/10) – Dr. Martin von Löwis – HPI 4
- Real-Time Systems
- 6.172 Performance Engineering of Software Systems – MIT OCW 1
- Performance Evaluation of Computer Systems – IIT Madras 1
- Storage Systems – IISC Bangalore 2
- MAP6264 – Queueing Theory – FAU 1(Video Lectures 1)
- EE 380 Colloquim on Computer Systems – Stanford University 5 (Lecture videos 2)
Database Systems
- CMPSC 431W Database Management Systems, Fall 2015 – Penn State University 28 Lectures – YouTube 7
- CS121 – Introduction to Relational Database Systems, Fall 2016 – Caltech 17
- CS 5530 – Database Systems, Spring 2016 – University of Utah 3
- Distributed Data Management (WT 2018/19) – HPI University of Potsdam 2
- MOOC – Database Stanford Dbclass 5
- CSEP 544, Database Management Systems, Au 2015 – University of Washington 4
- Database Design – IIT Madras 7
- Fundamentals of Database Systems – IIT Kanpur 10
- Principles of Database Management, Bart Baesens 1
- FIT9003 Database Systems Design – Monash University 4
- 15-445 – Introduction to Database Systems, CMU 4 (YouTube-2018 2, YouTube-2017)
- 15-721 – Database Systems, CMU 2 (YouTube-2017 3, YouTube-2016)
- 15-721 Advanced Database Systems (Spring 2019) – CMU 2
- CS122 – Relational Database System Implementation, Winter 2014-2015 – Caltech 3
- CS 186 – Database Systems, UC Berkeley, Spring 2015 4 (Lectures- InfoCoBuild 1)
- CS 6530 – Graduate-level Database Systems, Fall 2016, University of Utah 4 (Lectures – YouTube 1)
- 6.830/6.814 – Database Systems [Fall 2014] 4
- Informatics 1 – Data & Analysis 2014/15- University of Edinburgh 4
- Database Management Systems, Aduni 3
- D4M – Signal Processing on Databases
- In-Memory Data Management (2013)Prof. Hasso Plattner – HPI
- Distributed Data Management (WT 2019/20) – Dr. Thorsten Papenbrock – HPI 6
Software Engineering
- Object Oriented Design
- ECE 462 Object-Oriented Programming using C++ and Java – Purdue 57
- Object-oriented Program Design and Software Engineering – Aduni 20
- OOSE – Object-Oriented Software Engineering, Dr. Tim Lethbridge 5
- Object Oriented Systems Analysis and Design (Systems Analysis and Design in a Changing World) 9
- CS 251 – Intermediate Software Design (C++ version) – Vanderbilt University 6
- OOSE – Software Dev Using UML and Java 2
- Object-Oriented Analysis and Design – IIT Kharagpur 10
- CS3 – Design in Computing – Richard Buckland UNSW 4
- Informatics 1 – Object-Oriented Programming 2014/15- University of Edinburgh 3
- Software Engineering with Objects and Components 2015/16- University of Edinburgh 7
- Software Engineering
- Computer Science 169- Software Engineering – Spring 2015 – UCBerkeley 33
- CS 5150 – Software Engineering, Fall 2014 – Cornell University 8
- Introduction to Service Design and Engineering – University of Trento, Italy 4
- CS 164 Software Engineering – Harvard 15
- System Analysis and Design – IISC Bangalore 7
- Software Engineering – IIT Bombay 16
- Dependable Systems (SS 2014)- HPI University of Potsdam 3
- Software Testing – IIT Kharagpur 12
- Informatics 2C – Software Engineering 2014/15- University of Edinburgh 4
- Software Architecture
- Concurrency
- CS176 – Multiprocessor Synchronization – Brown University 2 (Videos from 2012)
- CS 282 (2014): Concurrent Java Network Programming in Android 3
- CSE P 506 – Concurrency, Spring 2011 – University of Washington 1 (Videos)
- CSEP 524 – Parallel Computation – University of Washington 1 (Videos 1)
- Parallel Programming Concepts (WT 2013/14) – HPI University of Potsdam 4
- Parallel Programming Concepts (WT 2012/13) – HPI University of Potsdam 3
- Mobile Application Development
- MOOC Programming Mobile Applications for Android Handheld Systems – University of Maryland 29
- CS 193p – Developing Applications for iOS, Stanford University 19
- CS S-76 Building Mobile Applications – Harvard 22
- CS 251 (2015): Intermediate Software Design 8
- Android App Development for Beginners Playlist – thenewboston 28
- Android Application Development Tutorials – thenewboston 10
- MOOC – Developing Android Apps – Udacity 17
- MOOC – Advanced Android App Development – Udacity 16
- CSSE490 Android Development Rose-Hulman Winter 2010-2011, Dave Fisher 8
- iOS Course, Dave Fisher 9
- Developing iPad Applications for Visualization and Insight – Carnegie Mellon University 5
- Mobile Computing – IIT Madras 15
Artificial Intelligence
- CS 188 – Introduction to Artificial Intelligence, UC Berkeley – Spring 2015 89
- 6.034 Artificial Intelligence, MIT OCW 26
- CS221: Artificial Intelligence: Principles and Techniques – Autumn 2019 – Stanford University 26
- 15-780 – Graduate Artificial Intelligence, Spring 14, CMU 14
- CSE 592 Applications of Artificial Intelligence, Winter 2003 – University of Washington 13
- CS322 – Introduction to Artificial Intelligence, Winter 2012-13 – UBC 10 (YouTube)
- CS 4804: Introduction to Artificial Intelligence, Fall 2016 11
- CS 5804: Introduction to Artificial Intelligence, Spring 2015 2
- Artificial Intelligence – IIT Kharagpur 36
- Artificial Intelligence – IIT Madras 22
- Artificial Intelligence(Prof.P.Dasgupta) – IIT Kharagpur 7
- MOOC – Intro to Artificial Intelligence – Udacity 14
- MOOC – Artificial Intelligence for Robotics – Udacity 11
- Graduate Course in Artificial Intelligence, Autumn 2012 – University of Washington 8
- Agent-Based Systems 2015/16- University of Edinburgh 3
- Informatics 2D – Reasoning and Agents 2014/15- University of Edinburgh 2
- Artificial Intelligence – Hochschule Ravensburg-Weingarten 8
- Deductive Databases and Knowledge-Based Systems – Technische Universität Braunschweig, Germany 7
- Artificial Intelligence: Knowledge Representation and Reasoning – IIT Madras 10
- Semantic Web Technologies by Dr. Harald Sack – HPI 1
- Knowledge Engineering with Semantic Web Technologies by Dr. Harald Sack – HPI 4
Machine Learning
- Introduction to Machine Learning
- MOOC Machine Learning Andrew Ng – Coursera/Stanford 85 (Notes 25)
- Introduction to Machine Learning for Coders 31
- MOOC – Statistical Learning, Stanford University 25
- Foundations of Machine Learning Boot Camp, Berkeley Simons Institute 12
- CS155 – Machine Learning & Data Mining, 2017 – Caltech 12 (Notes 2) (2016)
- CS 156 – Learning from Data, Caltech 4
- 10-601 – Introduction to Machine Learning (MS) – Tom Mitchell – 2015, CMU 9 (YouTube 3)
- 10-601 Machine Learning | CMU | Fall 2017 3
- 10-701 – Introduction to Machine Learning (PhD) – Tom Mitchell, Spring 2011, CMU 8 (Fall 2014) (Spring 2015 by Alex Smola)
- 10 – 301/601 – Introduction to Machine Learning – Spring 2020 – CMU 10
- CMS 165 Foundations of Machine Learning and Statistical Inference – 2020 – Caltech 9
- Microsoft Research – Machine Learning Course 23
- CS 446 – Machine Learning, Spring 2019, UIUC 3( Fall 2016 Lectures 2)
- undergraduate machine learning at UBC 2012, Nando de Freitas 3
- CS 229 – Machine Learning – Stanford University 4 (Autumn 2018)
- CS 189/289A Introduction to Machine Learning, Prof Jonathan Shewchuk – UCBerkeley 5
- CPSC 340: Machine Learning and Data Mining (2018) – UBC 4
- CS4780/5780 Machine Learning, Fall 2013 – Cornell University 3
- CS4780/5780 Machine Learning, Fall 2018 – Cornell University 2 (Youtube 3)
- CSE474/574 Introduction to Machine Learning – SUNY University at Buffalo 5
- CS 5350/6350 – Machine Learning, Fall 2016, University of Utah 5
- ECE 5984 Introduction to Machine Learning, Spring 2015 – Virginia Tech 4
- CSx824/ECEx242 Machine Learning, Bert Huang, Fall 2015 – Virginia Tech 1
- STA 4273H – Large Scale Machine Learning, Winter 2015 – University of Toronto 1
- CS 485/685 Machine Learning, Shai Ben-David, University of Waterloo
- STAT 441/841 Classification Winter 2017 , Waterloo 3
- 10-605 – Machine Learning with Large Datasets, Fall 2016 – CMU 6
- Information Theory, Pattern Recognition, and Neural Networks – University of Cambridge 1
- Python and machine learning – Stanford Crowd Course Initiative 9
- MOOC – Machine Learning Part 1a – Udacity/Georgia Tech 11 (Part 1b 2 Part 2 Part 3)
- Machine Learning and Pattern Recognition 2015/16- University of Edinburgh
- Introductory Applied Machine Learning 2015/16- University of Edinburgh 3
- Pattern Recognition Class (2012)- Universität Heidelberg 2
- Introduction to Machine Learning and Pattern Recognition – CBCSL OSU 3
- Introduction to Machine Learning – IIT Kharagpur 13
- Introduction to Machine Learning – IIT Madras 6
- Pattern Recognition – IISC Bangalore 5
- Pattern Recognition and Application – IIT Kharagpur 2
- Pattern Recognition – IIT Madras 3
- Machine Learning Summer School 2013 – Max Planck Institute for Intelligent Systems Tübingen 5
- Machine Learning – Professor Kogan (Spring 2016) – Rutgers 4
- CS273a: Introduction to Machine Learning 3 (YouTube)
- Machine Learning Crash Course 2015 2
- COM4509/COM6509 Machine Learning and Adaptive Intelligence 2015-16 3
- 10715 Advanced Introduction to Machine Learning 4
- Introduction to Machine Learning – Spring 2018 – ETH Zurich 3
- Machine Learning – Pedro Domingos- University of Washington 1
- Advanced Machine Learning – 2019 – ETH Zürich 9
- Machine Learning (COMP09012) 4
- Probabilistic Machine Learning 2020 – University of Tübingen 8
- Statistical Machine Learning 2020 – Ulrike von Luxburg – University of Tübingen 5
- Data Mining
- CSEP 546, Data Mining – Pedro Domingos, Sp 2016 – University of Washington 11 (YouTube 3)
- CS 5140/6140 – Data Mining, Spring 2016, University of Utah 4 (Youtube 4)
- CS 5955/6955 – Data Mining, University of Utah 3 (YouTube 2)
- Statistics 202 – Statistical Aspects of Data Mining, Summer 2007 – Google 2 (YouTube 2)
- MOOC – Text Mining and Analytics by ChengXiang Zhai 2
- Information Retrieval SS 2014, iTunes – HPI 1
- MOOC – Data Mining with Weka 2
- CS 290 DataMining Lectures 5
- CS246 – Mining Massive Data Sets, Winter 2016, Stanford University 5 (YouTube 2)
- Data Mining: Learning From Large Datasets – Fall 2017 – ETH Zurich 4
- Information Retrieval – Spring 2018 – ETH Zurich 1
- CAP6673 – Data Mining and Machine Learning – FAU 6(Video lectures 3)
- Data Warehousing and Data Mining Techniques – Technische Universität Braunschweig, Germany 9
- Data Science
- Data 8: The Foundations of Data Science – UC Berkeley 41 (Summer 17 2)
- CSE519 – Data Science Fall 2016 – Skiena, SBU 8
- CS 109 Data Science, Harvard University 13 (YouTube 6)
- 6.0002 Introduction to Computational Thinking and Data Science – MIT OCW 7
- Data 100 – Summer 19- UC Berkeley 5
- Distributed Data Analytics (WT 2017/18) – HPI University of Potsdam 4
- Statistics 133 – Concepts in Computing with Data, Fall 2013 – UC Berkeley 5
- Data Profiling and Data Cleansing (WS 2014/15) – HPI University of Potsdam 4
- AM 207 – Stochastic Methods for Data Analysis, Inference and Optimization, Harvard University 4
- CS 229r – Algorithms for Big Data, Harvard University 5 (Youtube 1)
- Algorithms for Big Data – IIT Madras 4
- Probabilistic Graphical Modeling
- MOOC – Probabilistic Graphical Models – Coursera 5
- CS 6190 – Probabilistic Modeling, Spring 2016, University of Utah 2
- 10-708 – Probabilistic Graphical Models, Carnegie Mellon University 2
- Probabilistic Graphical Models, Daphne Koller, Stanford University 2
- Probabilistic Models – UNIVERSITY OF HELSINKI 4
- Probabilistic Modelling and Reasoning 2015/16- University of Edinburgh 2
- Probabilistic Graphical Models, Spring 2018 – Notre Dame 1
- Deep Learning
- 6.S191: Introduction to Deep Learning – MIT 30
- Deep Learning CMU 6
- Part 1: Practical Deep Learning for Coders, v3 – fast.ai 12
- Part 2: Deep Learning from the Foundations – fast.ai 6
- Deep learning at Oxford 2015 – Nando de Freitas 3
- 6.S094: Deep Learning for Self-Driving Cars – MIT 9
- CS294-129 Designing, Visualizing and Understanding Deep Neural Networks 2 (YouTube 4)
- CS230: Deep Learning – Autumn 2018 – Stanford University 6
- STAT-157 Deep Learning 2019 – UC Berkeley 2
- Full Stack DL Bootcamp 2019 – UC Berkeley 15
- Deep Learning, Stanford University 11
- MOOC – Neural Networks for Machine Learning, Geoffrey Hinton 2016 – Coursera 3
- Deep Unsupervised Learning – Berkeley Spring 2020 5
- Stat 946 Deep Learning – University of Waterloo 2
- Neural networks class – Université de Sherbrooke 1 (YouTube 3)
- CS294-158 Deep Unsupervised Learning SP19 4
- DLCV – Deep Learning for Computer Vision – UPC Barcelona 4
- DLAI – Deep Learning for Artificial Intelligence @ UPC Barcelona 2
- Neural Networks and Applications – IIT Kharagpur 3
- UVA DEEP LEARNING COURSE 6
- Nvidia Machine Learning Class 11
- Reinforcement Learning
- CS234: Reinforcement Learning – Winter 2019 – Stanford University 7
- Introduction to reinforcement learning – UCL 2
- Advanced Deep Learning & Reinforcement Learning – UCL 3
- Reinforcement Learning – IIT Madras 2
- CS885 Reinforcement Learning – Spring 2018 – University of Waterloo 2
- CS 285 – Deep Reinforcement Learning- UC Berkeley
- CS 294 112 – Reinforcement Learning 1
- NUS CS 6101 – Deep Reinforcement Learning 2
- ECE 8851: Reinforcement Learning 1
- CS294-112, Deep Reinforcement Learning Sp17 1 (YouTube)
- UCL Course 2015 on Reinforcement Learning by David Silver from DeepMind 1 (YouTube)
- Deep RL Bootcamp – Berkeley Aug 2017 3
- Reinforcement Learning – IIT Madras 2
- Advanced Machine Learning
- Machine Learning 2013 – Nando de Freitas, UBC 9
- Machine Learning, 2014-2015, University of Oxford 9
- 10-702/36-702 – Statistical Machine Learning – Larry Wasserman, Spring 2016, CMU 2 (Spring 2015 1)
- 10-715 Advanced Introduction to Machine Learning – CMU (YouTube 2)
- CS 281B – Scalable Machine Learning, Alex Smola, UC Berkeley
- 18.409 Algorithmic Aspects of Machine Learning Spring 2015 – MIT 3
- CS 330 – Deep Multi-Task and Meta Learning – Fall 2019 – Stanford University 4 (Youtube 2)
- ML based Natural Language Processing and Computer Vision
- CS 224d – Deep Learning for Natural Language Processing, Stanford University 13 (Lectures – Youtube 4)
- CS 224N – Natural Language Processing, Stanford University 2 (Lecture videos 2)
- MOOC – Natural Language Processing, Dan Jurafsky & Chris Manning – Coursera 5
- fast.ai Code-First Intro to Natural Language Processing 2 (Github)
- MOOC – Natural Language Processing – Coursera, University of Michigan
- CS 231n – Convolutional Neural Networks for Visual Recognition, Stanford University
- CS224U: Natural Language Understanding – Spring 2019 – Stanford University 2
- Deep Learning for Natural Language Processing, 2017 – Oxford University
- Machine Learning for Robotics and Computer Vision, WS 2013/2014 – TU München 3 (YouTube 5)
- Informatics 1 – Cognitive Science 2015/16- University of Edinburgh 1
- Informatics 2A – Processing Formal and Natural Languages 2016-17 – University of Edinburgh 2
- Computational Cognitive Science 2015/16- University of Edinburgh 1
- Accelerated Natural Language Processing 2015/16- University of Edinburgh
- Natural Language Processing – IIT Bombay 2
- NOC:Deep Learning For Visual Computing – IIT Kharagpur 5
- CS 11-747 – Neural Nets for NLP – 2019 – CMU 2
- Time Series Analysis
- Misc Machine Learning Topics
- EE364a: Convex Optimization I – Stanford University 4
- CS 6955 – Clustering, Spring 2015, University of Utah 1
- Info 290 – Analyzing Big Data with Twitter, UC Berkeley school of information 2 (YouTube 2)
- 10-725 Convex Optimization, Spring 2015 – CMU 1
- 10-725 Convex Optimization: Fall 2016 – CMU 1
- CAM 383M – Statistical and Discrete Methods for Scientific Computing, University of Texas 1
- 9.520 – Statistical Learning Theory and Applications, Fall 2015 – MIT 4
- Reinforcement Learning – UCL 1
- Regularization Methods for Machine Learning 2016 (YouTube)
- Statistical Inference in Big Data – University of Toronto 1
- 10-725 Optimization Fall 2012 – CMU 2
- 10-801 Advanced Optimization and Randomized Methods – CMU (YouTube 1)
- Reinforcement Learning 2015/16- University of Edinburgh 1
- Reinforcement Learning – IIT Madras
- Statistical Rethinking Winter 2015 – Richard McElreath 1
- Music Information Retrieval – University of Victoria, 2014
- PURDUE Machine Learning Summer School 2011 1
- Foundations of Machine Learning – Blmmoberg Edu 2
- Introduction to reinforcement learning – UCL 2
- Advanced Deep Learning & Reinforcement Learning – UCL 3
- Web Information Retrieval (Proff. L. Becchetti – A. Vitaletti)
- Big Data Systems (WT 2019/20) – Prof. Dr. Tilmann Rabl – HPI 3
- Distributed Data Analytics (WT 2017/18) – Dr. Thorsten Papenbrock – HPI 4
Computer Networks
- 14-740 – Fundamentals of Computer Networks, Fall 2017 – CMU 48
- CS 144 Introduction to Computer Networking – Stanford University, Fall 2013 22 (Lecture videos 11)
- Computer Communication Networks, Rensselaer Polytechnic Institute – Fall 2001 9 (Videos 2) (Slides 1)
- Audio/Video Recordings and Podcasts of Professor Raj Jain’s Lectures – Washington University in St. Louis 4 (YouTube 2)
- Computer Networks, Tanenbaum, Wetherall Computer Networks 5e – Video Lectures 9
- CSEP 561 – PMP Network Systems, Fall 2013 – University of Washington 2 (Videos 1)
- CSEP 561 – Network Systems, Autumn 2008 – University of Washington 2 (Videos 1)
- Computer Networks – IIT Kharagpur 17
- Introduction to Data Communications 2013, Steven Gordon – Thammasat University, Thailand
- Introduction to Complex Networks – RIT 6
- Structural Analysis and Visualization of Networks 2
- Data Communication – IIT Kharagpur 4
- Error Correcting Codes – IISC Bangalore 4
- Information Theory and Coding – IIT Bombay
- Complex Network : Theory and Application – IIT Kharagpur 4
- Advanced 3G and 4G Wireless Mobile Communications – IIT Kanpur 5
- Broadband Networks: Concepts and Technology – IIT Bombay 2
- Coding Theory – IIT Madras 7
- Digital Communication – IIT Bombay
- Digital Voice & Picture Communication – IIT Kharagpur 1
- Wireless Ad Hoc and Sensor Networks – IIT Kharagpur 5
- Internetworking with TCP/IP by Prof. Dr. Christoph Meinel – HPI 7
Math for Computer Scientist
- List of Science & Math courses with video lectures 20
- Calculus
- Discrete Math
- 6.042J – Mathematics for Computer Science, Fall 2010, MIT OCW 13 (Spring 15 1)
- Computer Science 70, 001 – Spring 2015 7
- CSE 547 Discrete Mathematics, Prof Skiena, University of Stony Brook 18
- Discrete Structures (Summer 2011) – Rutgers, The State University of New Jersey 5
- Discrete Mathematics and Mathematical Reasoning 2015/16 – University of Edinburgh 12
- Discrete Mathematical Structures – IIT Madras 15
- Discrete Structures – Pepperdine University 6
- Probability & Statistics
- 6.041 Probabilistic Systems Analysis and Applied Probability – MIT OCW 19
- Statistics 110 – Probability – Harvard University 8
- STAT 2.1x: Descriptive Statistics | UC Berkeley 3
- STAT 2.2x: Probability | UC Berkeley 2
- MOOC – Statistics: Making Sense of Data, Coursera 4
- MOOC – Statistics One – Coursera 4
- Probability and Random Processes – IIT Kharagpur 5
- MOOC – Statistical Inference – Coursera 6
- 131B – Introduction to Probability and Statistics, UCI 8
- STATS 250 – Introduction to Statistics and Data Analysis, UMichigan 10
- Sets, Counting and Probability – Harvard 1
- Opinionated Lessons in Statistics 2 (Youtube)
- Statistics – Brandon Foltz 4
- Statistical Rethinking: A Bayesian Course Using R and Stan 2 (Lectures – Aalto University) (Book)
- 02402 Introduction to Statistics E12 – Technical University of Denmark 4 (F17)
- Linear Algebra
- 18.06 – Linear Algebra, Prof. Gilbert Strang, MIT OCW 11
- Linear Algebra (Princeton University) 4
- MOOC: Coding the Matrix: Linear Algebra through Computer Science Applications – Coursera 4
- CS 053 – Coding the Matrix – Brown University 2 (Fall 14 videos)
- Linear Algebra Review – CMU 2
- A first course in Linear Algebra – N J Wildberger – UNSW 1
- INTRODUCTION TO MATRIX ALGEBRA
- Computational Linear Algebra – fast.ai 1 (Github)
- 10-600 Math Background for ML – CMU 4
- MIT 18.065 Matrix Methods in Data Analysis, Signal Processing, and Machine Learning
- 36-705 – Intermediate Statistics – Larry Wasserman, CMU 1 (YouTube 1)
- Combinatorics – IISC Bangalore 3
- Advanced Engineering Mathematics – Notre Dame 3
- Statistical Computing for Scientists and Engineers – Notre Dame
- Statistical Computing, Fall 2017 – Notre Dame 1
Web Programming and Internet Technologies
- Web Design Decal – HTML/CSS/JavaScript Course, University of California, Berkeley 76
- CS 75 Building Dynamic Websites – Harvard University 30
- Internet Technology – IIT Kharagpur 11
- Introduction to Modern Application Development – IIT Madras 12
- CSE 199 – How the Internet Works, Fall 2016 – University of Buffalo 3
- Open Sourced Elective: Database and Rails – Intro to Ruby on Rails, University of Texas 5 (Lectures – Youtube)
- CSEP545 – Transaction Processing for E-Commerce, Winter 2012 – University of Washington 2 (Videos)
- CT 310 Web Development – Colorado State University 15
- Internet Technologies and Applications 2012, Steven Gordon – Thammasat University, Thailand 4
- CSCI 3110 Advanced Topics in Web Development, Fall 2011 – ETSU iTunes 5
- CSCI 5710 e-Commerce Implementation, Fall 2015 – ETSU iTunes
- MOOC – Web Development – Udacity 32
- Web Technologies Prof. Dr. Christoph Meinel – HPI 5
Theoretical CS and Programming Languages
- MOOC – Compilers – Stanford University 15
- CS 164 Hack your language, UC Berkeley 1 (Lectures – Youtube)
- Theory of computation – Shai Simonson 8
- CS 173 Programming Languages, Brown University 2 (Book)
- CS 421 – Programming Languages and Compilers, UIUC 7
- CSC 253 – CPython internals: A ten-hour codewalk through the Python interpreter source code, University of Rochester 4
- CSE341 – Programming Languages, Dan Grossman, Spring 2013 – University of Washington 3
- CSEP 501 – Compiler Construction, University of Washington 8 (Lectures – Youtube)
- CSEP 505 Programming Languages, Winter 2015 – University of Washington 2
- DMFP – Discrete Mathematics and Functional Programming, Wheaton College 6
- CS 374 – Algorithms & Models of Computation (Fall 2014), UIUC 1 (Lecture videos)
- 6.045 Automata, Computability, and Complexity, MIT (Lecture Videos 1)
- MOOC – Automata – Jeffrey Ullman – Coursera 3
- CS581 Theory of Computation – Portland State University 4 (Lectures – Youtube 3)
- Theory of Computation – Fall 2011 UC Davis 4
- TDA555 Introduction to Functional Programming – Chalmers University of Technology 1 (Lectures – YouTube)
- Philip Wadler Haskell lecture recordings 1
- Functional Programming – University of Edinburgh – 2016-17 1
- MOOC – Functional Programming Principles in Scala by Martin Odersky 5
- CS294 – Program Synthesis for Everyone
- MOOC – Principles of Reactive Programming, Scala – Coursera 3
- 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 1 (Videos 1)
- Compiler Design – IISC Bangalore 6
- Compiler Design – IIT Kanpur 10
- Principles of Programming Languages – IIT Delhi 3
- Principles of Compiler Design – IISC Bangalore 6
- Functional Programming in Haskell – IIT Madras
- Theory of Computation – IIT Kanpur 4
- Theory of Automata, Formal Languages and Computation – IIT Madras 5
- Theory of Computation – IIT Kanpur 5
- Logic for CS – IIT Delhi 2
- Principles of Compiler Design – Swarthmore College 6
- 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
Embedded Systems
- EE319K Embedded Systems – UT Austin 30
- EE445L Embedded Systems Design Lab, Fall 2015, UTexas 9
- CS149 Embedded Systems – Fall 2014 – UCBerkeley 5
- ECE 4760 Designing with Microcontrollers Fall 2016, Cornell University 7 (Lectures – Youtube 1)
- ECE 5760 – Advanced Microcontroller Design and system-on-chip, Spring 2016 – Cornell University 2
- CSE 438/598 Embedded Systems Programming ASU 7
- Summer Short Course on Embedded Systems Programming 10
- Internet of Things by Prof. Dr.-Ing. Dietmar P. F. Möller 10
- CSE 351 – The Hardware/Software Interface, Spring 16 – University of Washington 4 (Coursera)
- ECE 5030 – Electronic Bioinstrumentation, Spring 2014 – Cornell University 3
- ECE/CS 5780/6780 – Embedded Systems Design, Spring 14 – University of Utah 4
- Embedded Systems Class – Version 1 – 2011 – UNCC 4
- Embedded Systems using the Renesas RX63N Processor – Version 3 – UNCC 5
- ELEC2142 – Embedded Systems Design – UNSW 4
- Software Engineering for Embedded Systems (WS 2011/12) – HPI Univesrity of Potsdam 5
- Embedded Software Testing – IIT Madras 5
- Embedded Systems – IIT Delhi 6
- Embedded Systems Design – IIT Kharagpur 4
- ARM Based Development – IIT Madras 6
- Software Engineering for Self Adaptive Systems – iTunes – HPI Univesrity of Potsdam 2
- EE260 Embedded Systems by Robert Paz 4
- IoT Summer School 5
- ECSE 421 – Embedded Systems – McGill 3
- EE402 – Object-oriented Programming with Embedded Systems 7
- NOC:Advanced IOT Applications – IISc Bangalore 7
- NOC:Design for internet of things – IISc Bangalore 4
Computer Organization and Architecture
- Computer Organization
- How Computers Work – Aduni 12
- CS 61C – Machine Structures, UC Berkeley 6 (Lectures – InfoCoBuild 2)
- 6.004 – Computation Structures Spring 2013, MIT 2
- CS/ECE 3810 Computer Organization, Fall 2015, , University of Utah 2 (YouTube)
- Digital Computer Organization – IIT Kharagpur 4
- Computer Organization – IIT Madras 12
- CS-224 – Computer Organization, 2009-2010 Spring, Bilkent University 2 (YouTube playlist)
- INFORMATICS 2C – INTRODUCTION TO COMPUTER SYSTEMS (AUTUMN 2016) – University of Edinburgh 2
- Computer Architecture
- 18-447 – Introduction to Computer Architecture, CMU 11 (Lectures – YouTube – Fall 15)
- CS 152 Computer Architecture and Engineering, UC Berkeley 6
- CSEP 548 – Computer Architecture Autumn 2012 – University of Washington 4
- CS/ECE 6810 Computer Architecture, Spring 2016, University of Utah 5 (YouTube 1)
- MOOC – Computer Architecture, David Wentzlaff – Princeton University/Coursera 6
- Computer Architecture – ETH Zürich – Fall 2019 4
- Digital Circuits and Computer Architecture – ETH Zurich – Spring 2017 2
- Computer Architecture – IIT Delhi 6
- Computer Architecture – IIT Kanpur
- Computer Architecture – IIT Madras
- High Performance Computer Architecture – IIT Kharagpur 3
- Parallel Computer Architecture
- 15-418 – Parallel Computer Architecture and Programming, CMU 4 (Lecture Videos 1)
- CS 267 Applications of Parallel Computers, Spring 16 – UC Berkeley 1 (YouTube 2)
- MOOC – Heterogeneous Parallel Programming – Coursera 1
- ECE 498AL – Programming Massively Parallel Processors 3
- Parallel Computing – IIT Delhi 2
- Parallel Architectures 2012/13- University of Edinburgh 3
- Digital Systems Design
- CS1 – Higher Computing – Richard Buckland UNSW 2
- MOOC – From NAND to TetrisBuilding a Modern Computer From First Principles (YouTube)
- System Validation, TU Delft
- High Performance Computing – IISC Bangalore 6
- Introduction to ARM – Open SecurityTraining 2
- Intro x86 (32 bit) – Open SecurityTraining 1
- Intermediate x86 (32 bit) – Open SecurityTraining
- Design of Digital Circuits – ETH Zürich – Spring 2019 2
- Onur Mutlu @ TU Wien 2019 – Memory Systems 1
- Memory Systems Course – Technion, Summer 2018 3
Security
- Internet Security (WT 2018/19) – HPI University of Potsdam 19
- 6.858 Computer Systems Security – MIT OCW 3
- 6.875 – Cryptography – Spring 2018- MIT 8
- CSEP590A – Practical Aspects of Modern Cryptography, Winter 2011 – University of Washington 2 (Videos 1)
- CS461/ECE422 – Computer Security – University of Illinois at Urbana-Champaign 6 (Videos)
- Introduction to Cryptography, Christof Paar – Ruhr University Bochum, Germany 3
- ECS235B Foundations of Computer and Information Security – UC Davis 1
- CIS 4930/ CIS 5930 – Offensive Computer Security, Florida State University 3
- Introduction to Information Security I – IIT Madras 10
- Information Security – II – IIT Madras 7
- Introduction to Cryptology – IIT Roorkee 5
- Cryptography and Network Security – IIT Kharagpur 8
- 18-636 Browser Security, Stanford 2
- Internet Security – Weaknesses and Targets (WT 2015/16) 2 (WT 2012/13 (YouTube))
- IT Security, Steven Gordon – Thammasat University, Thailand 3
- Security and Cryptography, Steven Gordon – Thammasat University, Thailand 3
- MOOC – Cryptography – Coursera 6
- MOOC – Intro to Information Security – Udacity 3
- ICS 444 – Computer & Network Security 3
- Privacy and Security in Online Social Networks – IIT Madras
- Malware Dynamic Analysis – Open SecurityTraining 2 (YouTube)
- CSN09112 – Network Security and Cryptography – Bill Buchanan – Edinburgh Napier 7
- CSN10107 – Security Testing and Network Forensics – Bill Buchanan – Edinburgh Napier 3
- CSN11123 – Advanced Cloud and Network Forensics – Bill Buchanan – Edinburgh Napier
- CSN11117 – e-Security – Bill Buchanan – Edinburgh Napier 2
- CSN08704 – Telecommunications – Bill Buchanan – Edinburgh Napier
- CSN11128 – Incident Response and Malware Analysus – Bill Buchanan – Edinburgh Napier 3
- Internet Security for Beginners by Dr. Christoph Meinel – HPI 2
Computer Graphics
- CS184 – Computer Graphics, Fall 2012 – UC Berkeley 19
- ECS 175 – Computer Graphics, Fall 2009 – UC Davis 3
- 6.837 – Computer Graphics – Spring 2017 – MIT 6
- 6.838 – Shape Analysis – Spring 2017- MIT 1
- Introduction to Computer Graphics – IIT Delhi 6
- Computer Graphics – IIT Madras 8
- 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 3
- Computer Graphics Fall 2011, Barbara Hecker 4
- Introduction to Graphics Architecture 3
- Ray Tracing for Global Illumination, UCDavis 1
- Rendering / Ray Tracing Course, SS 2015 – TU Wien
- ECS 178 Introduction to Geometric Modeling, Fall 2012, UC Davis 1 (iTunes)
- Computational Geometry – IIT Delhi 3
- CS 468 – Differential Geometry for Computer Science – Stanford University 1 (Lecture videos 1)
Image Processing and Computer Vision
- MOOC – Digital Image procesing – Duke/Coursera 18
- Computer Vision 2011 – EPFL, Switzerland 5
- Digital Image Processing – IIT Kharagpur 9
- Image Processing and Analysis – UC Davis 2
- CS 543 – Computer Vision – Spring 2017 2 (Recordings 2)
- CAP 5415 – Computer Vision – University of Central Florida 1(Video Lectures)
- EE225B – Digital Image Processing, Spring 2014 – UC Berkeley 2 (Videos – Spring 2006 1)
- EE637 – Digital Image Processing I – Purdue University 2 (Videos – Sp 2011 2,Videos – Sp 2007)
- Computer Vision I: Variational Methods – TU München 4 (YouTube)
- Computer Vision II: Multiple View Geometry (IN2228), SS 2016 – TU München 1 (YouTube)
- EGGN 510 – Image and Multidimensional Signal Processing – Colorado School of Mines 1
- EENG 512/CSCI 512 – Computer Vision – Colorado School of Mines 2
- Computer Vision for Visual Effects – RPI 2 (YouTube)
- Introduction to Image Processing – RPI 2 (YouTube 2)
- CAP 6412 – Advanced Computer Vision – University of Central Florida 1(Video lectures 1) (Spring 2018)
- Digital Signal Processing – RPI
- Advanced Vision 2014 – University of Edinburgh
- Photogrammetry Course – 2015/16 – University of Bonn, Germany 3
- MOOC – Introduction to Computer Vision – Udacity 5
- ECSE-4540 – Intro to Digital Image Processing – Spring 2015 – RPI 2
- Machine Learning for Computer Vision – Winter 2017-2018 – UniHeidelberg 3
- High-Level Vision – CBCSL OSU
- Advanced Computer Vision – CBCSL OSU 1
- Introduction to Image Processing & Computer Vision – CBCSL OSU 1
- Machine Learning for Computer Vision – TU Munich 5
- Biometrics – IIT Kanpur 2
- Quantitative Big Imaging 2019 ETH Zurich 1
- Multiple View Geometry in Computer Vision 2
Computational Biology
- ECS 124 – Foundations of Algorithms for Bioinformatics – Dan Gusfield, UC Davis 8 (YouTube 1)
- CSE549 – Computational Biology – Steven Skiena – 2010 SBU 5
- 7.32 Systems Biology, Fall 2014 – MIT OCW 3
- 6.802J/ 6.874J Foundations of Computational and Systems Biology – MIT OCW 2
- 6.047/6.878 Public Lectures on Computational Biology: Genomes, Networks, Evolution – MIT 1
- Bio 84 – Your Genes and Your Health, Stanford University
- BioMedical Informatics 231 Computational Molecular Biology, Stanford University 5
- BioMedical Informatics 258 Genomics, Bioinformatics & Medicine, Stanford University 4
- 03-251: Introduction to Computational Molecular Biology – Carnegie Mellon University 4
- 03-712: Biological Modeling and Simulation – Carnegie Mellon University 2
- MOOC – Bioinformatics Algorithms: An Active Learning Approach – UC San Diego/Coursera 3
- Neural Networks and Biological Modeling – Lecturer: Prof. Wulfram Gerstner – EPFL 2
- Video Lectures of Wulfram Gerstner: Computational Neuroscience – EPFL 1
- An Introduction To Systems Biology
- Introduction to Bioinformatics, METUOpenCourseWare 5
- MOOC – Algorithms for DNA Sequencing, Coursera 3
- Frontiers of Biomedical Engineering with W. Mark Saltzman – Yale 1
- NOC:Computational Systems Biology – IIT Madras 1
- NOC:BioInformatics:Algorithms and Applications – IIT Madras 3
Quantum Computing
- 15-859BB: Quantum Computation and Quantum Information 2018 – CMU 12 (Youtube 2)
- Quantum Mechanics for Scientists and Engineers 5
- Quantum Mechanics and Quantum Computation – Umesh Vazirani 5
- Quantum Information and Computing by Prof. D.K. Ghosh 5
- Quantum Computing by Prof. Debabrata Goswami 4
- The Building Blocks of a Quantum Computer: Part 1 – TU Delft 7
- The Building Blocks of a Quantum Computer: Part 2 – TU Delft 3
- Quantum Cryptography – TU Delft 5
Robotics
- CS 223A – Introduction to Robotics, Stanford University 33
- 6.832 Underactuated Robotics – MIT OCW 7
- CS287 Advanced Robotics at UC Berkeley Fall 2019 – Instructor: Pieter Abbeel 7
- CS 287 – Advanced Robotics, Fall 2011, UC Berkeley 1 (Videos 1)
- CS235 – Applied Robot Design for Non-Robot-Designers – Stanford University 4
- Lecture: Visual Navigation for Flying Robots 3 (YouTube)
- CS 205A: Mathematical Methods for Robotics, Vision, and Graphics (Fall 2013) 5
- Robotics 1, Prof. De Luca, Università di Roma 4 (YouTube)
- Robotics 2, Prof. De Luca, Università di Roma 1 (YouTube)
- Robot Mechanics and Control, SNU 3
- Introduction to Robotics Course – UNCC 3
- SLAM Lectures 2
- Introduction to Vision and Robotics 2015/16- University of Edinburgh 1
- ME 597 – Autonomous Mobile Robotics – Fall 2014 2
- ME 780 – Perception For Autonomous Driving – Spring 2017 4
- ME780 – Nonlinear State Estimation for Robotics and Computer Vision – Spring 2017 1
- METR 4202/7202 – Robotics & Automation – University of Queensland 7
- Robotics – IIT Bombay 9
- Introduction to Machine Vision
- 6.834J Cognitive Robotics – MIT OCW 3
- Hello (Real) World with ROS – Robot Operating System – TU Delft 5
- Programming for Robotics (ROS) – ETH Zurich 6
- Mechatronic System Design – TU Delft 7
- CS 206 Evolutionary Robotics Course Spring 2020 2
- Foundations of Robotics – UTEC 2018-I 2
- Robotics – Youtube 4
- Robotics and Control: Theory and Practice IIT Roorkee 2
- Mechatronics 1
- ME142 – Mechatronics Spring 2020 – UC Merced
- Mobile Sensing and Robotics – Bonn University
- MSR2 – Sensors and State Estimation Course (2020) – Bonn University 1
- SLAM Course (2013) – Bonn University 1
- ENGR486 Robot Modeling and Control (2014W)
- Robotics by Prof. D K Pratihar – IIT Kharagpur 4
- Introduction to Mobile Robotics – SS 2019 – Universität Freiburg 5
- Robot Mapping – WS 2018/19 – Universität Freiburg 5
- Mechanism and Robot Kinematics – IIT Kharagpur 3
Computational Finance
- COMP510 – Computational Finance – Steven Skiena – 2007 HKUST 13
- MOOC – Mathematical Methods for Quantitative Finance, University of Washington/Coursera) 6
- 18.S096 Topics in Mathematics with Applications in Finance, MIT OCW 4
- Computational Finance – Universität Leipzig 1
- Machine Learning for Trading | Udacity 15
- ACT 460 / STA 2502 – Stochastic Methods for Actuarial Science – University of Toronto 2
- MMF1928H / STA 2503F – Pricing Theory I / Applied Probability for Mathematical Finance – University of Toronto 3
- STA 4505H – High Frequency & Algorithmic trading – University of Toronto 14
- Mathematical Finance – IIT Guwahati 7
- Quantitative Finance – IIT Kanpur 8
- Financial Derivatives & Risk Management – IIT Roorkee 12
- Financial Mathematics – IIT Roorkee 8
Misc
- HCI
- Game Development
- Geospatial
- SCICOMP – An Introduction to Efficient Scientific Computation, Universität Bremen 2
- CS E-259 XML with Java, Java Servlet, and JSP – Harvard 8
- CSE 40373 – Spr 2009: Multimedia Systems
- Exposing Digital Photography – Harvard Extension School 5
- MOOC – Matlab – Coursera 11
- Computing for Computer Scientists – University of Michigan 4
- Linux Implementation/Administration Practicum – Redhat by Tulio Llosa 6
- SIMS 141 – Search Engines – Fall 2005 UCBerkeley
- Innovative Computing – Harvard University
- Linux Programming & Scripting – IIT Madras 22
- Model Checking – IIT Madras 2
- Virtual Reality – IIT Madras 12
- CS 195 – Social Implications of Computing, Spring 2015 – UC Berkeley 2 (YouTube)
- Spatial Databases and Geographic Information Systems – Technische Universität Braunschweig, Germany (in German) 3
- Dependable Systems (SS 2014) – HPI University of Potsdam 3
- Business Process Compliance (WT 2013/14) – HPI University of Potsdam 2
- Design Thinking for Digital Engineering (SS 2018) – Dr. Julia von Thienen – HPI 6
- CS224w – Social Network Analysis – Autumn 2017 – Stanford University 5
- Blockchain and Cryptocurrencies
Source : Github