Data Science 2: Advanced Topics in Data Science
APCOMP 209B
Subject & Catalog Number
Course Information
Description
Data Science 2 is the second half of a one-year introduction to data science. Building upon the material in Data Science 1, the course introduces advanced methods for statistical modeling, representation, and prediction. Topics include multiple deep learning architectures such as CNNs, RNNs, transformers, language models, autoencoders, and generative models as well as basic Bayesian methods, and unsupervised learning. Students are strongly encouraged to enroll in both the fall and spring course within the same academic year. Part two of a two-part series.
Course Notes
Can only be taken after successful completion of CS 1090a, CS 109a, AC 209a, Stat 109a, or Stat 121a, or equivalent.
Available for Harvard Cross Registration
NOTE: This course requires additional sections; you will be prompted to choose secondary components during the Add to Cart process