Meta-learning characteristics and dynamics of quantum systems

arXiv:2503.10492v16 citationsh-index: 29
Originality Incremental advance
AI Analysis

This work addresses the challenge of adapting to new quantum systems with little data, which is incremental as it builds on prior meta-learning approaches with specific enhancements.

The paper tackled the problem of predicting quantum system characteristics with limited data by meta-learning from experimental data on spin-qubits and models, achieving improved performance over existing methods.

While machine learning holds great promise for quantum technologies, most current methods focus on predicting or controlling a specific quantum system. Meta-learning approaches, however, can adapt to new systems for which little data is available, by leveraging knowledge obtained from previous data associated with similar systems. In this paper, we meta-learn dynamics and characteristics of closed and open two-level systems, as well as the Heisenberg model. Based on experimental data of a Loss-DiVincenzo spin-qubit hosted in a Ge/Si core/shell nanowire for different gate voltage configurations, we predict qubit characteristics i.e. $g$-factor and Rabi frequency using meta-learning. The algorithm we introduce improves upon previous state-of-the-art meta-learning methods for physics-based systems by introducing novel techniques such as adaptive learning rates and a global optimizer for improved robustness and increased computational efficiency. We benchmark our method against other meta-learning methods, a vanilla transformer, and a multilayer perceptron, and demonstrate improved performance.

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