Lee Lab @ UW Madison
Research focus: Theory and algorithms for foundation models.
Research Highlights
Efficient Adaptation of Foundation Models
- Arxiv’24 / Parameter-Efficient Fine-Tuning of State Space Models / Summary / Github
- Arxiv’24 / Everything Everywhere All at Once: LLMs can In-Context Learn Multiple Tasks in Superposition / Summary
- Arxiv’24 / ENTP: Encoder-only Next Token Prediction / Summary / Github
- Arxiv’24 / Looped Transformers for Length Generalization / Summary
- ICML’24 / Dual operating modes of ICL / Summary / Github
- ICLR’24 / Expressive power of LoRA / Summary / Github
- NeurIPS’23 / RL for (text-to-image) diffusion model finetuning / Summary / Github
- ICML’23 / RL for diffusion model finetuning / Summary / Github
- NeurIPS’22 / Finetuning LLMs on non-textual data / Summary / Github
Understanding and Improving Foundation Models
- ICML’24 / Mamba + Transformer / Github
- ICLR’24 / Teaching arithmetic to small TFs / Summary / Github
- ICLR’24 / Looepd Transformer for meta ICL / Summary / Github
We sincerely appreciate the support provided by our sponsors: NSF, Amazon, and FuriosaAI.
Openings
- [postdocs] We are looking for a postdoc interested in the theoretical and algorithmic aspects of foundation models, particularly LLMs. If you want to work with us, please email me your CV and a research statement. I strongly recommend reading our lab’s recent papers.
- [PhD students] We are looking for PhD students (ECE or CS) interested in the theoretical and algorithmic aspects of foundation models, particularly LLMs. If you want to work with us, please email me your CV and a research statement. I strongly recommend reading our lab’s recent papers.
- [MS students] I am not currently looking for MS students.
- [undergraduate students] You might want to consider taking my class first. I teach various machine learning courses (ECE 532, 539, 561, 570, 761, …).
News
- (Nov. 2024) Dr. Jungtaek Kim joined our lab as a postdoc! Welcome!
- (July 2024) [COLM’24] Can MLLMs Perform Text-to-Image In-Context Learning?
- (June 2024) [Arxiv’24] Improving Retrieval Capabilities in LLMs by Finetuning on Synthetic Data / Summary
- (June 2024) [TMLR’24] Mini-Batch Optimization of Contrastive Loss
- (April 2024) [UAI’24] Memorization capacity of additive fine-Tuning
- (Apr. 2024) Amazon Research Awards
Our group will develop principled approaches to prompt engineering through the information/coding-theoretic lens. Huge thanks to Amazon and my amazing collaborators and students! - (Mar. 2024) NSF CAREER Award
Our group will develop a unified theory and new algorithms with provable guarantees for learning with frozen pretrained models, also known as foundation models. Huge thanks to NSF and my amazing collaborators and students!
Selected Talks on Foundation Models
- (Apr. 2024) The Johns Hopkins University CIS/MINDS seminar
Title: Theoretical Exploration of Foundation Model Adaptation Methods - (Mar. 2024) The 58th Annual Conference on Information Sciences and Systems @ Princeton University
Title: A Probabilistic Framework for Understanding In-Context Task Learning and Retrieval - (Feb. 2024) 2024 Information Theory and Applications Workshop
Title: The Expressive Power of Low-Rank Adaptation (LoRA) - (Feb. 2024) Foundations of Data Science - Virtual Talk Series @ UCSD/NSF TRIPODS Institute on Emerging CORE Methods in Data Science (EnCORE)
Title: Theoretical Exploration of Foundation Model Adaptation Methods - (Dec. 2023) CSP Seminar @ University of Michigan
Title: Towards a Theoretical Understanding of Parameter-Efficient Fine-Tuning (and Beyond) - (Nov. 2023) Efficient ML workshop @ Google Research New York
Title: The Expressive Power of Low-Rank Adaptation (LoRA)