Resources

These lists are by no means comprehensive.

Professional opportunities

Courses

I somehow ended up taking a ridiculous number of classes in grad school.

Signal processing/statistics/machine learning (ML) Theory

  • 10715 Advanced Intro to ML
  • 10716 Advanced ML Theory
  • 36705 Intermediate Statistics
  • 36709 Advanced Statistical Theory I: High-dimensional Statistics
  • 36741 Statistics meets Optimization: Random Sketching
  • 10725 Convex Optimization
  • 10708 Probabilistic Graphical Models
  • 18898G Sparsity, Structure, Inference
  • 6.860 Statistical Learning Theory and Applications (MIT)
  • 6.252 Discrete Stochastic Processes (MIT)

Biomedical ML/statistics/signal processing

  • 36661 Statistical Methods in Epidemiology (audit)
  • 36759 Statistical Models of the Brain
  • 6.S897 ML for Healthcare (MIT)
  • 6.872 Biomedical Computing (MIT)

Other signal processing/ML applications

  • 18667 Algorithms for Large-scale Distributed ML and Optimization (audit)
  • 10703 Deep Reinforcement Learning and Control
  • 11785 Intro to Deep Learning
  • 16720 Computer Vision
  • 18793 Image and Video Processing

Other technical readings

Things I read on my own (or with friends) that I enjoyed.