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Can Machine Learning Learn

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Seminar✓ Recording AvailablePhysics of Life

Can machine learning learn new physics, or do we need to put it in by hand?"\

Workshop, Multiple Speakers

Emory University

Schedule
Thursday, June 4, 2020

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Schedule

Thursday, June 4, 2020

12:00 AM America/New_York

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Host: Emory TMLS

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Format

Recorded Seminar

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Host

Emory TMLS

Duration

70.00 minutes

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Abstract

There has been a surge of publications on using machine learning (ML) on experimental data from physical systems: social, biological, statistical, and quantum. However, can these methods discover fundamentally new physics? It can be that their biggest impact is in better data preprocessing, while inferring new physics is unrealistic without specifically adapting the learning machine to find what we are looking for — that is, without the “intuition” — and hence without having a good a priori guess about what we will find. Is machine learning a useful tool for physics discovery? Which minimal knowledge should we endow the machines with to make them useful in such tasks? How do we do this? Eight speakers below will anchor the workshop, exploring these questions in contexts of diverse systems (from quantum to biological), and from general theoretical advances to specific applications. Each speaker will deliver a 10 min talk with another 10 minutes set aside for moderated questions/discussion. We expect the talks to be broad, bold, and provocative, discussing where the field is heading, and what is needed to get us there.

Topics

a priori knowledgebehaviourbiological systemsbiophysicsdata preprocessingexperimental dataimmunologyintuitionmachine learningphysics discoveryquantum computingquantum systemssoft matterstatistical physicstheoretical advancesvirology

About the Speaker

Workshop, Multiple Speakers

Emory University

Contact & Resources

Personal Website

livingtheory.emory.edu/programs/conferences-symposiums.html

@EmoryTMLS

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