Symmetry-guided and AI-assisted design of quantum defects in two-dimensional materials
ORAL · Invited
Abstract
Being atomically thin and amenable to external controls, two-dimensional (2D) materials offer a new paradigm for quantum information technologies. In this talk, I will discuss how data-driven material science can be combined with symmetry-based physical principles to guide the search for quantum defects in 2D materials for quantum information technologies and beyond. In our initial work, the use of local bonding symmetry as a material design hypothesis enables the identification of anion antisite defects as promising spin qubits and quantum emitters in six monolayer transition metal dichalcogenides. Going toward data-driven quantum defect discovery, to enable high-throughput search of quantum defects in a vast material space, we propose two machine learning (ML) models that are specially designed for learning defect properties, taking advantage of the topological object (Betti numbers) as node feature and the Siamese equivariant network architecture. By incorporating the local environment information associated with those defects, the proposed ML models outperform the state-of-the-art models in predicting the formation energies of point defects. This ML capability enables the fast screening of energetically favorable quantum defects in 2D materials, and the high-throughput search in all known binary 2D materials led to the identification of more than 45 quantum defect candidates that can be utilized as qubits and/or quantum emitters. At the end of the talk, I will discuss future directions to accelerate the discovery of “defect genome” in a vast space of material systems.
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Presenters
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Qimin Yan
Northeastern University
Authors
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Qimin Yan
Northeastern University