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高等研究院與理學院聯合講座
Machine Learning Complex Dynamics
Prof. Aaron R. DINNER, Professor of Chemistry, The University of Chicago
日期 : 2021年 6月 10日 (星期四)
時間 : 上午9時至10時30分
地點 : 網上舉行 (Zoom)
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Abstract

Understanding molecular mechanisms requires estimating dynamical statistics such as expected hitting times, reaction rates, and committors. In systems with well-defined metastable states and free energy barriers, these quantities can be estimated using enhanced sampling methods combined with classical rate theories. However, calculating such statistics for more complex processes with rugged landscapes or multiple pathways requires more general numerical methods. In this lecture, the speaker will describe a machine learning framework for calculating dynamical statistics by approximating the dynamical operators of the system through a Galerkin expansion, using statistical estimates from short molecular dynamics trajectories. It will be demonstrated that this approach gives remarkably accurate results for a well-characterized protein folding reaction with relatively little computational cost. Finally, the approach will be applied to understanding the dynamics of the protein hormone insulin with a view toward designing improved therapeutics for diabetes.

 

About the speaker

Prof. Aaron R. Dinner obtained his PhD in Biophysics from Harvard University in 1999. He then furthered his postdoctoral research in the University of Oxford and the University of California, Berkeley. In 2003, he joined the University of Chicago as an Assistant Professor and is currently the Professor of Chemistry.

Prof. Dinner and his research group develop theoretical and computational approaches to understand the physical chemical basis of complex behavior in living systems. Their research particularly interested in understanding how cells harness energy from their environments to organize their molecular interactions in space and time. To this end, they are working in close collaboration with experimental researchers to design and analyze quantitative measurements of living systems, and, in turn, implement predictive physical models. One feature of biological dynamics that makes this challenging is that they span a hierarchy of length and time scales ranging from ångstrom and femtoseconds to millimeters and days.

Prof. Dinner was elected a Fellow of the American Physical Society (2016). He also received numerous awards including the Hewlett-Packard Outstanding Junior Faculty Award by the American Chemical Society (2009); the Alfred P. Sloan Fellowship in Chemistry (2008) and the CAREER Award by the US National Science Foundation (2006).

For attendees’ attention

 

  This lecture will be conducted online via Zoom.
Please join the webinar at: https://hkust.zoom.us/j/91294585976  
Passcode: JL0610

 

 

HKUST Jockey Club Institute for Advanced Study
Enquiries: ias@ust.hk / 2358 5912
http://ias.ust.hk