| CARVIEW |
Select Language
HTTP/2 301
server: GitHub.com
content-type: text/html
location: https://druvpai.github.io/coursework/
access-control-allow-origin: *
expires: Mon, 29 Dec 2025 00:09:48 GMT
cache-control: max-age=600
x-proxy-cache: MISS
x-github-request-id: 224E:1F53DD:819184:9181C6:6951C473
accept-ranges: bytes
age: 0
date: Sun, 28 Dec 2025 23:59:48 GMT
via: 1.1 varnish
x-served-by: cache-bom-vanm7210076-BOM
x-cache: MISS
x-cache-hits: 0
x-timer: S1766966389.556828,VS0,VE207
vary: Accept-Encoding
x-fastly-request-id: 5b482003d6060e0273653adc8a09d36422796eac
content-length: 162
HTTP/2 200
server: GitHub.com
content-type: text/html; charset=utf-8
last-modified: Sat, 27 Sep 2025 21:54:23 GMT
access-control-allow-origin: *
etag: W/"68d85d0f-33fa"
expires: Mon, 29 Dec 2025 00:09:48 GMT
cache-control: max-age=600
content-encoding: gzip
x-proxy-cache: MISS
x-github-request-id: 18A5:2DDCFF:8152E1:913F47:6951C474
accept-ranges: bytes
age: 0
date: Sun, 28 Dec 2025 23:59:48 GMT
via: 1.1 varnish
x-served-by: cache-bom-vanm7210076-BOM
x-cache: MISS
x-cache-hits: 0
x-timer: S1766966389.777934,VS0,VE209
vary: Accept-Encoding
x-fastly-request-id: df56ee8da5a413975f8fab288d965b7b30dbf769
content-length: 3799
Coursework - Druv Pai

Druv Pai
Ph.D. student @ UC Berkeley developing theory for large-scale empirical deep learning.
- Bay Area, CA, USA
- Github
- Google Scholar
Coursework
The following is a summary of the university-level coursework I completed at UC Berkeley. This includes courses I self-studied, which generally meant going along with a past or current iteration of the course, watching lectures and completing assignments, without receiving a grade.
Graduate Level Coursework
Electrical Engineering
- EE 221A (Linear System Theory)
- EE 223 (Stochastic Systems: Estimation and Control)
- EE 225A (Statistical Signal Processing)
- EE 226A (Random Processes in Systems)
- EE 227C (Convex Optimization and Approximation)
- EE 229A (Information Theory)
- EE 290-002 (High-Dimensional Data Analysis with Low-Dimensional Models)
- EE 290-008 (Design of Societal Scale Systems: Games, Incentives, Adaptation and Learning)
Computer Science
- CS 270 (Combinatorial Algorithms and Data Structures)
- CS 294-182 (Theoretical Foundations of Learning, Decisions, and Games)
- CS 294-214 (Efficient Algorithms and Computational Intractability in Statistics)
- CS 294-220 (Computational Learning Theory)
Mathematics
- Math 202A (Introduction to Topology and Analysis I)
- Math 202B (Introduction to Topology and Analysis II)
- Math 206 (Functional Analysis)
- Math 214 (Differentiable Manifolds)
- Math 240 (Riemannian Geometry)
- Math 258 (Harmonic Analysis)
- Math 279 (Stochastic Partial Differential Equations)
Statistics
- Stat 205A (Probability Theory)
- Stat 210A (Introduction to Theoretical Statistics I)
- Stat 210B (Introduction to Theoretical Statistics II)
Undergraduate Level Coursework
Electrical Engineering
- EE 16B (Designing Information Devices and Systems II)
- EE 126 (Probability and Random Processes)
- EE 127 (Optimization Models in Engineering)
Computer Science
- CS 61A (The Structure and Interpretation of Computer Programs)
- CS 61B (Data Structures)
- CS 61C (Great Ideas of Computer Architecture)
- CS 70 (Discrete Mathematics and Probability Theory)
- CS 161 (Computer Security)
- CS 162 (Operating Systems and Systems Programming)
- CS 170 (Efficient Algorithms and Intractable Problems)
- CS 182 (Designing, Visualizing and Understanding Deep Neural Networks)
- CS 189 (Introduction to Machine Learning)