OPtimization and Trustworthy Machine Learning (OPTML) group is an active research group at Michigan State University. Our research interests span the areas of machine learning (ML)/ deep learning (DL), optimization, computer vision, security, signal processing and data science, with a focus on developing learning algorithms and theory, as well as robust and explainable artificial intelligence (AI). These research themes provide a solid foundation for reaching the long-term research objective: Making AI systems scalable and trustworthy.
📖 For a more detailed introduction, see our Welcome2OPTML Booklet.
As AI moves from the lab into the real world (e.g., autonomous vehicles), ensuring its safety becomes a paramount requirement prior to its deployment. Moreover, as datasets, ML/DL models, and learning tasks become increasingly complex, getting ML/DL to scale calls for new advances in learning algorithm design. More broadly, the study towards robust and scalable AI could make a significant impact on machine learning theories, and induce more promising applications in, e.g., automated ML, meta-learning, privacy and security, hardware design, and big data analysis. We seek a new learning frontier when the current learning algorithms become infeasible, and formalize foundations of secure learning.
We always look for passionate students to join the team in terms of RA/TA/externship/internship/visiting students (more info)!
Authors marked in bold indicate our group members, and “*” indicates equal contribution.
Trustworthy AI: Robustness, fairness, and model explanation
The Fragile Truth of Saliency: Improving LLM Input Attribution via Attention Bias Optimization
Y. Zhang, C. Wang, Y. Chen, C. Fan, J. Jia, S. Liu,
NeurIPS’25 (Spotlight)
Rethinking Machine Unlearning for Large Language Models
S. Liu, Y. Yao, J. Jia, S. Casper, N. Baracaldo, P. Hase, Y. Yao, C. Y. Liu, X. Xu, H. Li, K. R. Varshney, M. Bansal, S. Koyejo, Y. Liu
Nature Machine Intelligence, 2025.
Salun: Empowering Machine Unlearning Via Gradient-based Weight Saliency In Both Image Classification And Generation
C. Fan*, J. Liu*, Y. Zhang, E. Wong, D. Wei, S. Liu
ICLR’24 (Spotlight)
Model sparsification can simplify machine unlearning
J. Jia*, J. Liu*, P. Ram, Y. Yao, G. Liu, Y. Liu, P. Sharma, S. Liu
NeurIPS’23 (Spotlight)
Scalable AI: Model & data compression, distributed learning, black-box optimization, and automated ML
Selectivity Drives Productivity: Efficient Dataset Pruning for Enhanced Transfer Learning
Y. Zhang*, Y. Zhang*, A. Chen, J. Jia, J. Liu, G. Liu, M. Hong, S. Chang, S. Liu
NeurIPS’23
Advancing Model Pruning via Bi-level Optimization
Y. Zhang*, Y. Yao*, P. Ram, P. Zhao, T. Chen, M. Hong, Y. Wang, S. Liu
NeurIPS’22
Distributed Adversarial Training to Robustify Deep Neural Networks at Scale
G. Zhang*, S. Lu*, Y. Zhang, X. Chen, P.-Y. Chen, Q. Fan, L. Martie, L. Horesh, M. Hong, S. Liu
UAI’22 (Best Paper Runner-Up Award)
Min-Max Optimization without Gradients: Convergence and Applications to Adversarial ML
S. Liu, S. Lu, X. Chen, Y. Feng, K. Xu, A. Al-Dujaili, M. Hong, U.-M. O’Reilly
ICML’20
A Primer on Zeroth-Order Optimization in Signal Processing and Machine Learning
S. Liu, P.-Y. Chen, B. Kailkhura, G. Zhang, A. O. Hero, P. K. Varshney
IEEE Signal Processing Magazine, 2020
We are grateful for funding from Michigan State University, MIT-IBM Watson AI Lab, DARPA, Cisco Research, NSF, DSO National Laboratories, LLNL, ARO, Amazon Research, Open Philanthropy, Schmidt Sciences and CAIS (Center for AI Safety).
We released the Welcome2OPTML Booklet as a detailed introduction to our lab and an open invitation for strong prospective candidates to join us in 2026!
1 June 2026Honor PI Liu has been selected to participate in the National Academy of Engineering (NAE) US Frontiers of Engineering (US FOE) 2026 Symposium, which recognizes 100 of the nation’s most outstanding early-career engineers from academia, industry, and government laboratories.
15 May 2026Workshop Organization The AdvML-Frontiers × CoTMA Workshop has been accepted and will be co-located with COLM 2026 in San Francisco. Call for papers opens on June 23, 2026, and applications for the AdvML Rising Star Award are due on July 24, 2026.
10 May 2026Papers Our book, Machine Unlearning for Governance of Foundation Models, has been published by Springer Nature.
25 April 2026Papers Four papers have been accepted at ICML 2026, including one spotlight paper.
19 April 2026Honor Congratulations to Jinghan Jia on receiving the 2025–2026 Fitch H. Beach Award (First Place), the highest student honor in the College of Engineering. This marks another outstanding recognition for OPTMLers, following Yihua Zhang’s first-place award in 2024–2025.
4 April 2026Papers Two papers accepted at ACL 2026, including a Main Conference paper led by our (remote) summer intern, Renjie.
25 March 2026GrantGrateful to receive a research grant from the IARPA BENGAL program and to serve as a co-PI, collaborating with IBM (lead PI institution).