Skip to main content

CS Seminar: Deep Learning Theory in the Age of Generative AI (Sadhika Malladi)

Friday, February 21, 2025 | 12:00 PM - 1:00 PM CT
Mudd Hall ( formerly Seeley G. Mudd Library), 3514, 2233 Tech Drive, Evanston, IL 60208 map it

Friday / CS Seminar
February 21st / 12:00 PM
Hybrid / Mudd 3514

Speaker
Sadhika Malladi, Princeton University

Talk Title
Deep Learning Theory in the Age of Generative AI

Abstract
Modern deep learning has achieved remarkable results, but the design of training methodologies largely relies on guess-and-check approaches. Thorough empirical studies of recent massive language models (LMs) is prohibitively expensive, underscoring the need for theoretical insights, but classical ML theory struggles to describe modern training paradigms. I present a novel approach to developing prescriptive theoretical results that can directly translate to improved training methodologies for LMs. My research has yielded actionable improvements in model training across the LM development pipeline — for example, my theory motivates the design of MeZO, a fine-tuning algorithm that reduces memory usage by up to 12x and halves the number of GPU-hours required. Throughout the talk, to underscore the prescriptiveness of my theoretical insights, I will demonstrate the success of these theory-motivated algorithms on novel empirical settings published after the theory.

Biography
Sadhika Malladi is a final-year PhD student in Computer Science at Princeton University advised by Sanjeev Arora. Her research advances deep learning theory to capture modern-day training settings, yielding practical training improvements and meaningful insights into model behavior. She has co-organized multiple workshops, including Mathematical and Empirical Understanding of Foundation Models at ICLR 2024 and Mathematics for Modern Machine Learning (M3L) at NeurIPS 2024. She was named a 2025 Siebel Scholar.

Research/Interest Areas
machine learning, theoretical machine learning, natural language processing, optimization
---
Zoom: https://northwestern.zoom.us/j/93472031147?pwd=EMcOSUapzdfxmWaIUX6EheUDmztCU3.1
Panopto: https://northwestern.hosted.panopto.com/Panopto/Pages/Viewer.aspx?id=f8cd1b02-aca0-4bc9-b475-b2820164a63f
Community Connections Topic: Implicit Bias in Technology

Cost: free

Audience

  • Faculty/Staff
  • Student
  • Post Docs/Docs
  • Graduate Students

Contact

Wynante R Charles
(847) 467-8174
Email

Interest

  • Academic (general)

Add Event To My Group

Please sign-in