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Machine Learning for Materials Science Report 2019

Machine Learning for Materials Science Report 2019
Machine Learning for Materials Science Report 2019
This five-day workshop consisted of a two-day school introducing machine learning techniques for materials science with a mixture of presentations and hands-on tutorials, followed by a three-day conference made up of invited presentations, contributed talks, a poster session and a number of panel discussions. The event drew participants from primarily chemistry, physics and computer science backgrounds, all with a focus on applying machine learning to materials discovery or understanding. Some of the invited talks were given by industrial participants, complementing the academic research presenting, and offering a different view. Coffee breaks and a conference dinner/poster session allowed plenty of time for networking amongst this diverse group.
AI3SD, Workshop Report, Materials Science, Machine Learning
11
University of Southampton
Cumby, James
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Kanza, Samantha
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Frey, Jeremy G.
ba60c559-c4af-44f1-87e6-ce69819bf23f
Kanza, Samantha
b73bcf34-3ff8-4691-bd09-aa657dcff420
Cumby, James
f2d28653-c29c-4a5a-94d8-824aa67c852d
Frey, Jeremy G.
ba60c559-c4af-44f1-87e6-ce69819bf23f

Cumby, James , Kanza, Samantha and Frey, Jeremy G. (eds.) (2019) Machine Learning for Materials Science Report 2019 (AI3SD-Event-Series, 11) Southampton. University of Southampton 7pp. (doi:10.5258/SOTON/P0013).

Record type: Monograph (Project Report)

Abstract

This five-day workshop consisted of a two-day school introducing machine learning techniques for materials science with a mixture of presentations and hands-on tutorials, followed by a three-day conference made up of invited presentations, contributed talks, a poster session and a number of panel discussions. The event drew participants from primarily chemistry, physics and computer science backgrounds, all with a focus on applying machine learning to materials discovery or understanding. Some of the invited talks were given by industrial participants, complementing the academic research presenting, and offering a different view. Coffee breaks and a conference dinner/poster session allowed plenty of time for networking amongst this diverse group.

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AI3SD Event Series Report 11 Machine Learning For Materials Science - Version of Record
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AI3SD-Event-Series_Report-11_MachineLearningForMaterialsScience_V2 - Version of Record
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More information

In preparation date: 17 June 2019
Keywords: AI3SD, Workshop Report, Materials Science, Machine Learning

Identifiers

Local EPrints ID: 432293
URI: http://eprints.soton.ac.uk/id/eprint/432293
PURE UUID: 2cd2ad8b-8bad-4100-9655-24569c79ff61
ORCID for Samantha Kanza: ORCID iD orcid.org/0000-0002-4831-9489
ORCID for Jeremy G. Frey: ORCID iD orcid.org/0000-0003-0842-4302

Catalogue record

Date deposited: 08 Jul 2019 16:30
Last modified: 16 Mar 2024 04:36

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Contributors

Editor: Samantha Kanza ORCID iD
Author: James Cumby
Editor: Jeremy G. Frey ORCID iD

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