MIT 6.S183 A Practical Introduction to Diffusion Models, Lecture 1
MIT 6.S183 A Practical Introduction to Diffusion Models, IAP 2025 Instructors: Chenyang Yuan, Cole Becker, Boyuan Chen, Chris Scarvelis, Artem Lukoianov YouTube playlist: • MIT 6.S183 A Practical Introduction to Dif... View the complete course materials: https://6-s183-diffusion.github.io More courses at https://soul.mit.edu. Support SOUL at https://mitsoul.org/donate/. A note about the recording quality: These recordings were made using a retrofit automatic recording system (https://ist.mit.edu/lecture-capture) that is relatively inexpensive. It was installed in some MIT classrooms during the covid pandemic to make it easy to record classes for students who could not make it to class. Ideally, we would've been able to record these lectures at much higher video and audio quality. If you want to support such efforts, consider donating. We encourage constructive comments and discussion on our YouTube and other social media channels. Personal attacks, hate speech, trolling, and inappropriate comments are not allowed and may be removed. We follow the OCW's policy on comments available here: https://ocw.mit.edu/comments.

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MIT 6.S183 A Practical Introduction to Diffusion Models, Lecture 4

