Machine learning applications in cold atom quantum simulators
- URL: http://arxiv.org/abs/2509.08011v1
- Date: Mon, 08 Sep 2025 17:07:40 GMT
- Title: Machine learning applications in cold atom quantum simulators
- Authors: Henning Schlömer, Annabelle Bohrdt,
- Abstract summary: We provide a perspective on how machine learning is being applied across various aspects of quantum simulation.<n>We focus on the physical insights enabled by ML and the kinds of problems in quantum simulation where these methods offer tangible benefits.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As ultracold atom experiments become highly controlled and scalable quantum simulators, they require sophisticated control over high-dimensional parameter spaces and generate increasingly complex measurement data that need to be analyzed and interpreted efficiently. Machine learning (ML) techniques have been established as versatile tools for addressing these challenges, offering strategies for data interpretation, experimental control, and theoretical modeling. In this review, we provide a perspective on how machine learning is being applied across various aspects of quantum simulation, with a focus on cold atomic systems. Emphasis is placed on practical use cases -- from classifying many-body phases to optimizing experimental protocols and representing quantum states -- highlighting the specific contexts in which different ML approaches prove effective. Rather than presenting algorithmic details, we focus on the physical insights enabled by ML and the kinds of problems in quantum simulation where these methods offer tangible benefits.
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