This course, Recommender Systems: Behind the Screen, is a great opportunity to explore and learn the best methods and practices in recommender systems. It is developed by IVADO, HEC Montréal and Université de Montréal and guided by seven international experts from both Academia and Industry. The course is designed for industry professionals and academics with basic knowledge in mathematics and programming, and graduate students in science and engineering. It covers topics such as machine learning, evaluation methods, advanced modelling, contextual bandits, ranking methods and fairness and discrimination in recommender systems. It takes 6 weeks to complete the course and there are comprehensive quizzes and tutorials to evaluate your understanding. Register now and join this special learning journey!
Recommender Systems
2.0
Coursera0 learners
Learn More
This course is perfect for anyone interested in learning about Recommender Systems. It covers the basic concept, Collaborative Filtering, Recommender System with Deep Learning, and Further Issues of Recommender Systems. It requires basic knowledge of Python programming and mathematics including matrix multiplications, conditional probability, and basic machine learning algorithms. With this course, you will gain a comprehensive understanding of the fundamentals of Recommender Systems and be able to apply them to real-world problems. So, if you are looking to learn more about Recommender Systems, this course is for you.
Building a Music Recommendation Engine
1.5
Youtube0 learners
Learn More
This course will teach you how to build a music recommendation engine using the AudiSet dataset, embedding generator, and ANNOY. You will learn how to generate embedding from WAV files, process AudioSet data, and understand the ANNOY algorithm. Finally, you will be able to code a recommendation engine with ANNOY. This course is perfect for anyone interested in learning how to build a music recommendation engine.
Build a Recommender System in Python
2.5
Coursera0 learners
Learn More
This 2-hour long project-based course will teach you how to build a Recommender System in Python. Learn how to code by hand 4 different types of recommender systems that mimic the techniques of Amazon, Netflix, and YouTube. Discover the 'magic' algorithms that these well-known services use to uncannily predict what videos or movies they would enjoy or what products they might be interested in buying. This course is best suited for learners based in the North America region, with plans to expand to other regions. Sign up now and start building your own Recommender System in Python!
1. Programming Courses: These online courses cover a wide range of programming languages such as Python, Java, C++, and more. They also teach students web development, software engineering, and other technical skills.
2. Business Courses: These courses cover topics such as entrepreneurship, marketing, accounting, and financial management. Students can learn about business strategy, banking, investment, and more.
3. Language Courses: Online courses in languages such as Spanish, French, Mandarin, and more are available for students looking to improve their language skills or learn a new language.
4. Healthcare Courses: These courses cover topics such as nursing, medical coding, healthcare management, and more. Students can also learn about public health, nutrition, and other related topics.
5. Arts & Design Courses: Online courses in graphic design, animation, photography, and other artistic subjects are available for students interested in creative fields.
6. Personal Development Courses: These courses cover topics such as time management, communication skills, mindfulness, and more to help students improve their personal and professional lives.
7. STEM Courses: Science, Technology, Engineering, and Mathematics (STEM) courses cover subjects such as biology, physics, engineering, and more. Students can learn about cutting-edge technologies and scientific advancements.
Click Allow to get free Recommender Systems courses!