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Unsupervised learning of topologically ordered phases of matter

Submission Number: 11
Submission ID: 28
Submission UUID: d7868540-506d-4c5d-a866-e66b7f765f35
Submission URI: /form/project

Created: Fri, 08/30/2019 - 11:57
Completed: Fri, 08/30/2019 - 11:59
Changed: Thu, 11/18/2021 - 09:44

Remote IP address: 130.215.55.243
Submitted by: Northeast Cyberteam
Language: English

Is draft: No
Webform: Project
Unsupervised learning of topologically ordered phases of matter
Northeast

Project Leader

Chris Herdman
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(802)443-5060

Project Information

Identifying and distinguishing new phases of matter is a key challenge in condensed matter physics physics. Recent work has demonstrated that machine learning techniques can be used to identify phases of matter with a broken symmetry. Certain quantum phases of matter, such as spin liquids, have a topological order that doesn’t break conventional symmetries, and thus are harder to identify. However, supervised machine learning techniques have recently been successfully used to identify topologically ordered phases. This project seeks to extend this work to use unsupervised learning algorithms to identify topological phases of matter. In particular, this project will focus on applying dimensional reduction algorithms to study topologically ordered phases of matter. These algorithms will be implemented to take advantage of GPUs and deployed on an HPC cluster.