Learning from Data (Fall 2021)Welcome to the class website of Learning from Data! Announcement
2021-12-30: The poster presentation information page has been added! Please make sure you checkout the poster requirement and grading policy. 2021-12-18: Please don't forget to complete the course evaluation on the Tsinghua Info site before Dec 24th and the TA evaluation before Dec 21st. 2021-12-12: PA5 is released! Due date: December 26th. 2021-11-25: Final project information is available! Please remember to fill in the team assignment form before Nov 30. 2021-11-19: PA4 is released! Due date: December 2nd. 2021-10-23: WA3 is released! Due date: November 26th. (An update is posted.) 2021-11-8 PA3 is updated with a correction. Please make sure to get the latest code! 2021-11-6 PA3 is released! Due date: November 20th. 2021-10-29: Midterm exam is next week! Off-campus students need to apply for taking the exam online with the TAs. The exam will be closed book and cover all content up to neural networks. You may bring an A4 double-sided cheat sheet to the exam. The midterm review session will be held on Saturday Oct 30th 10:00-12:00 am in Building C3-307. 2021-10-23: WA2 is released! Due date: November 3rd. No late day can be used for this homework. 2021-10-18: PA2 and WA1 updated for corrections. 2021-10-16: PA2 is released! Due date: Oct 28th 2021-9-17: Yang's office hour will be rescheduled to Wednesday, September 22nd 7-9pm. 2021-9-15: The review session will be held on Sunday, September 19th 2-5pm. Be sure to read the material and do the exercises before the review session! Class info
This introductory course gives an overview of many concepts, techniques, and algorithms in machine learning, beginning with topics such as logistic regression and SVM and ending up with more recent topics such as deep neural networks and reinforcement learning. The course will give the student the basic ideas and intuition behind modern machine learning methods as well as a bit more formal understanding of how, why, and when they work. The underlying theme in the course is statistical inference as it provides the foundation for most of the methods covered. For more information about grading, homework and exam policies, see the class syllabus Prerequisites: Undergraduate level calculus, probability and linear algebra. Basic Python programming. TeamInstructor:
TAs
Office hours:
You can also make appointments outside office hours. Recitation SessionsRecitations will be held every Friday 9:00-9:45pm in the lecture room.
Class Schedule
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