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.
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
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.
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)
Revisiting and advancing fast adversarial training through the lens of bi-level optimization
Y. Zhang*, G. Zhang*, P. Khanduri, M. Hong, S. Chang, S. Liu
ICML’22
How to Robustify Black-Box ML Models? A Zeroth-Order Optimization Perspective
Y. Zhang, Y. Yao, J. Jia, J. Yi, M. Hong, S. Chang, S. Liu
ICLR’22 (Spotlight)
Reverse Engineering of Imperceptible Adversarial Image Perturbations
Y. Gong*, Y. Yao*, Y. Li, Y. Zhang, X. Liu, X. Lin, S. Liu
ICLR’22
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.
Dr. Liu is selected as the recipient of the 2024 Aharon Katzir Young Investigator Award from the International Neural Network Society (INNS).
12 May 2025Excited and grateful to receive a research grant from Open Philanthropy to support our AI safety research!
2 May 2025Two papers accepted at ICML 2025! Congratulations to Changsheng Wang and Chongyu Fan on their first first-author ICML papers–well deserved!
29 April 2025Grateful to participate in the the U.S.–Southeast Asia Regional Workshop on Responsible Artificial Intelligence. Grateful for the opportunity to engage in important discussions on advancing responsible AI globally.
19. April 2025Congratulations to Yihua Zhang for winning the First-Place Award for the 2024-25 Fitch H. Beach Award!
26. February 2025Three papers in CVPR’25. Congrats to Yimeng Zhang and Yihua Zhang for their outstanding leadership!
19. February 2025Congratulations to Yihua Zhang for being selected as the CSE department’s nominee for the prestigious Fitch H. Beach Award at Michigan State University! This distinguished award honors the most outstanding graduate researchers within the College of Engineering each year.
17. February 2025Rethinking machine unlearning for large language models is now published in Nature Machine Intelligence.