Top of page Skip to main content
Facilities Mobile homeCourses home
Detail
Top of main content

Fundamentals of Deep Learning

COS 514

1262
Info tab content
Mathematical and conceptual introduction to Deep Learning: basic concepts, model classes, paradigms, and attempts at analysis. Covers some ML theory (learning rate, SGD, generalization, etc.) and then some advanced topics: Normalization, Implicit Bias, Generative Models, Recurrent Nets, Contrastive Learning, Self-Supervised Learning, Transformers, Diffusion Models, Private Learning, Interpretability, Fine-tuning of Large Pretrained Models, etc. (Varies year to year.) 4 home-works. Term project done in groups of 2-3 --- can be experimental or theoretical. Course text available from Instructor's homepage.
Instructors tab content
Sections tab content

Section L01

  • Type: Lecture
  • Section: L01
  • Status: O
  • Enrollment: 4
  • Capacity: 30
  • Class Number: 22215
  • Schedule: MW 03:00 PM-04:30 PM