Prabhat on deep learning for science - a podcast by OReilly Media

from 2017-04-03T11:10

:: ::

The O’Reilly Bots Podcast: Solutions from big data sets.

In this episode of theO’Reilly Bots Podcast, I talk about deep learning at the extremes of scale and computing power withPrabhat, who leads the data and analytics group at Lawrence Berkeley National Laboratory’s supercomputing center. If you’re working on commercial AI, it’s worth glancing across the divide at scientific AI.

Prabhat talks about his work at the theNational Energy Research Scientific Computing Center(NERSC), including aproject that aims to locate and quantify extreme weather events. He explains how this moves climate data analysis from a focus on core statistics—especially the change in the average mean temperature of the Earth in any given year—to analyzing the impact of extreme events. He’s also working on theCeleste project, which uses telescope data to create a unified catalog of all objects in the visible universe.

Looking ahead, Prabhat sees broad applications for deep learning in scientific research beyond climate science—especially in astronomy, cosmology, neuroscience, material science, and physics.

Links:

Further episodes of O

Further podcasts by O'Reilly Media

Website of O'Reilly Media