- This event has passed.
MICDE Seminar Series: Jamie Holber
November 14, 2023 @ 12:30 pm - 1:00 pm

Active Learning for Physics Informed Data Sampling and Construction of Free Energy Representations
presented by
Jamie Holber
Ph.D. Candidate
Applied Physics and Scientific Computing
RSVP Here
Abstract
Using automation technology to gather and disseminate information to the public is commonly viewed as a government-led effort to enhance oversight and address the principal-agent problem in bureaucracy. However, focusing on the expansion of China’s automatic ambient air quality monitoring network in the last decade (2012-2022), I argue that technology is being utilized as a tool to emphasize optics but overlook the substantive problems. I illustrate the idea with multiple original georeferenced data sets on the automatic monitoring network, pollution sources, and satellite-derived vegetation density across time and space. I show that, while the automation initiative has improved the data quality in some ways, the undersupply of automatic monitoring stations, over-represented clean locations, and non-random missing pollution records continue to contribute to inaccurate air pollution information. As long as political incentives to manipulate information persist, actors can mold technology that operates without human intervention to serve their own interests.
Bio
Jamie Holber is a PhD Candidate in Applied Physics and Scientific Computing working in the Computational Physics Group in the Mechanical Engineering Department.
Advisor: Krishna Garikipati