Self-Reasoning Assistant Learning for non-Abelian Gauge Fields Design
Jinyang Sun, Xi Chen, Xiumei Wang, Dandan Zhu, Xingping Zhou

TL;DR
This paper introduces a self-reasoning assistant learning framework using diffusion processes to generate non-Abelian gauge fields, facilitating the study of complex physics phenomena without manual feature engineering.
Contribution
The proposed framework enables direct generation of non-Abelian gauge fields with self-reasoning capabilities, reducing manual intervention and enhancing pattern discovery in complex datasets.
Findings
Successfully generates non-Abelian gauge fields
Captures subtle relationships in physical data
Reduces need for manual feature engineering
Abstract
Non-Abelian braiding has attracted substantial attention because of its pivotal role in describing the exchange behaviour of anyons, in which the input and outcome of non-Abelian braiding are connected by a unitary matrix. Implementing braiding in a classical system can assist the experimental investigation of non-Abelian physics. However, the design of non-Abelian gauge fields faces numerous challenges stemmed from the intricate interplay of group structures, Lie algebra properties, representation theory, topology, and symmetry breaking. The extreme diversity makes it a powerful tool for the study of condensed matter physics. Whereas the widely used artificial intelligence with data-driven approaches has greatly promoted the development of physics, most works are limited on the data-to-data design. Here we propose a self-reasoning assistant learning framework capable of directly…
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Taxonomy
TopicsRobotic Mechanisms and Dynamics · Advanced Numerical Analysis Techniques · Educational Technology and Assessment
MethodsSoftmax · Attention Is All You Need · Diffusion
