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X-WR-CALNAME;VALUE=TEXT:Stefano Ermon: Measuring Economic Development from Space with Machine Learning
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SUMMARY:Stefano Ermon: Measuring Economic Development from Space with Machine Learning
DESCRIPTION:<p><strong>Title</strong>: Measuring Economic Development from Space with Machine Learning<br><br><strong>Abstract</strong>: Recent technological developments are creating new spatio-temporal data streams that contain a wealth of information relevant to climate adaptation strategies. Modern AI techniques have the potential to yield accurate, inexpensive, and highly scalable models to inform research and policy. A key challenge, however, is the lack of large quantities of labeled data that often characterize successful machine learning applications. In this talk, I will present new approaches for learning useful spatio-temporal models in contexts where labeled training data is scarce or not available at all. I will show applications to predict and map poverty in developing countries, monitor &nbsp;agricultural productivity and food security outcomes, and map infrastructure access in Africa. Our methods can reliably predict economic well-being using only high-resolution satellite imagery. Because images are passively collected in every corner of the world, our methods can provide timely and accurate measurements in a very scalable end economic way, and could significantly improve the effectiveness of climate adaptation efforts.</p><p>Recording of the talk:&nbsp;<a href="https://youtu.be/saF5sETylRI">https://youtu.be/saF5sETylRI</a></p><h2>Stefano Ermon (Stanford University)</h2><p>&nbsp;</p><drupal-media alt="Stefano Ermon" data-entity-type="media" data-entity-uuid="011fe055-4a48-4b80-807b-b222f43a90d0" data-align="left">&nbsp;</drupal-media><p>I am an Assistant Professor in the Department of Computer Science at Stanford University, where I am affiliated with the Artificial Intelligence Laboratory and a fellow of the Woods Institute for the Environment.</p><p>My research is centered on techniques for scalable and accurate inference in graphical models, statistical modeling of data, large-scale combinatorial optimization, and robust decision making under uncertainty, and is motivated by a range of applications, in particular ones in the emerging field of computational sustainability.</p><p>&nbsp;</p><p>&nbsp;</p><p>&nbsp;</p><p>&nbsp;</p>
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STATUS:CONFIRMED
DTSTART:20200928T180000Z
DTEND:20200928T180000Z
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