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Classical Machine Learning for Quantum Simulations: Detection of Phases, Order Parameters, and Hamiltonians

Offered By: ICTP Condensed Matter and Statistical Physics via YouTube

Tags

Machine Learning Courses Quantum Physics Courses Condensed Matter Physics Courses Statistical Physics Courses Quantum Simulation Courses

Course Description

Overview

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Explore a comprehensive lecture on the application of classical machine learning techniques in quantum simulations, focusing on the detection of phases, order parameters, and Hamiltonians. Delivered by Anna DAWID from the Flatiron Institute, this 49-minute talk delves into cutting-edge research at the intersection of machine learning and quantum physics. Gain insights into how traditional computational methods are being adapted to tackle complex quantum systems, potentially revolutionizing our understanding and simulation capabilities in condensed matter physics and statistical mechanics.

Syllabus

Classical machine learning for quantum simulations: detection of phases, order parameters, and ...


Taught by

ICTP Condensed Matter and Statistical Physics

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