Advancing the Frontier
Data Science, AI, and Statistical Learning
A Symposium in Honor of Jun Liu
July 28, 2025
9am - 4:30pm
Harvard University
Winokur Hall
Science and Engineering Complex
150 Western Ave, Allston, Boston
Upload Portrait/Video/Photo Parking
Important Notice
1. Call for Contributions: As part of the workshop celebration, we warmly invite all attendees to contribute to a tribute honoring Jun. You are welcome to submit a portrait, a short video, event photos, or a short message. These contributions will be compiled into a collective tribute to be shared during the event. If you have already submitted your materials, there is no need to resubmit. We look forward to celebrating Jun’s impact together through your voices, faces, and stories.
2. Parking: Come-and-go block parking will be available from 8am to 5pm here.
3. WiFi: Choose Harvard University (no password needed); then register here as a guest.


Let's celebrate Jun!
We are gathering to celebrate Jun Liu’s remarkable contributions to Data Science, Statistical Learning, and the broader academic community since 1988. From pioneering research to mentoring nearly 80 PhD students and postdoctoral fellows, Jun has profoundly shaped modern statistics across institutions and continents. His influential work in computational biology has also built bridges between statistics and biomedical research.
The workshop will be held at Harvard University on Monday, July 28, 2025. The program will feature academic sessions and discussions on recent developments in Data Science, AI, and related fields. Special thanks to Jun’s former students, friends, and Two Sigma for their generous support, and to the Harvard Department of Statistics for graciously hosting the event. In particular, we thank Bo Jiang for leading the fundraising initiative and securing full support for the event.
Schedule
July 28
Science and Engineering Complex
150 Western Ave, Allston, Boston
Breakfast & Coffee Break @ West Atrium
Workshop @ Winokur Hall
Lunch @ West Atrium
Lightning Talks @ Winokur Hall
Breakfast & Coffee Break @ West Atrium
Workshop @ Winokur Hall
Time | Speaker | Title (Click to Abstract) |
||||
---|---|---|---|---|---|---|
1:00–2:00pm |
Chair: Linda Zhao University of Pennsylvania |
Keynote | ||||
Augustine Kong University of Oxford |
Some Reflections on How the Field of Statistics Has Changed in the Last Forty Years and the Role of Chinese Students |
|||||
2:00–2:30pm | Break | |||||
2:30–3:30pm |
Chair: Rong Chen Rurgers University Organizer: Linda Zhao |
AI in Action: From Complex Data to Credible Discovery | ||||
Tony Cai University of Pennsylvania |
Transcending Data Boundaries: Transfer Knowledge in Statistical Learning |
|||||
Edoardo Airoldi Temple University |
Valid Statistical Analyses and Reproducible Science in the Era of High-throughput Biology |
|||||
Qing Zhou University of California, Los Angeles |
Causal Discovery on Dependent Data | |||||
3:30–4:15pm |
Moderator: Tianxi Cai Harvard University Organizer: Tianxi Cai |
Panel Discussion: AI Meets Statistics — A Two-Way Power Boost |
||||
|
||||||
4:15pm | Xihong Lin Harvard University |
Closing Remark |
INFORMATION
Lodging
(Recommended hotel. No Special Rate Provided)
CitizenM Back Bay (near the club) |
Sheraton Boston Hote (near the club) |
---|---|
408 Newbury St, Boston | 39 Dalton St, Boston |
DoubleTree Suites by Hilton Hotel Boston (near workshop) |
Courtyard Boston Cambridge (on campus) |
Le Méridien Boston Cambridge (on campus) |
---|---|---|
400 Soldiers Fld Rd, Boston | 777 Memorial Dr, Cambridge | 20 Sidney St, Cambridge |
Parking
FREE block parking 8:00am to 5:00pm. 5-min walk to SEC.
The Organizing Committee
Linda Zhao (Contact)
University of Pennsylvania
lzhao@wharton.upenn.edu
Ping Ma (Contact)
University of Georgia
pingma@uga.edu
Tianxi Cai
Harvard University
Jiajun Gu
Jump Trading
Bo Jiang
Two Sigma
Sam Kou
Harvard University
Xihong Lin
Harvard University
Shirley Liu
GV20 Therapeutics
Website Design / Maintain
Jeff Cai (University of Notre Dame)
jcai2@nd.edu
Linda Zhao (University of Pennsylvania)
lzhao@wharton.upenn.edu