Quantum Kernel Machine Learning for Autonomous Materials Science

arXiv:2601.11775v12 citationsh-index: 24
Originality Incremental advance
AI Analysis

This work addresses the challenge of accelerating materials discovery with limited data, though it is incremental as it builds on prior quantum kernel theory and applies it to a specific domain.

The paper tackled the problem of autonomous materials discovery by comparing quantum and classical kernel models for navigating compositional phase space, finding that a quantum kernel model outperformed some classical models on x-ray diffraction data from an Fe-Ga-Pd ternary library, with experimental verification on quantum hardware and simulators.

Autonomous materials science, where active learning is used to navigate large compositional phase space, has emerged as a powerful vehicle to rapidly explore new materials. A crucial aspect of autonomous materials science is exploring new materials using as little data as possible. Gaussian process-based active learning allows effective charting of multi-dimensional parameter space with a limited number of training data, and thus is a common algorithmic choice for autonomous materials science. An integral part of the autonomous workflow is the application of kernel functions for quantifying similarities among measured data points. A recent theoretical breakthrough has shown that quantum kernel models can achieve similar performance with less training data than classical models. This signals the possible advantage of applying quantum kernel machine learning to autonomous materials discovery. In this work, we compare quantum and classical kernels for their utility in sequential phase space navigation for autonomous materials science. Specifically, we compute a quantum kernel and several classical kernels for x-ray diffraction patterns taken from an Fe-Ga-Pd ternary composition spread library. We conduct our study on both IonQ's Aria trapped ion quantum computer hardware and the corresponding classical noisy simulator. We experimentally verify that a quantum kernel model can outperform some classical kernel models. The results highlight the potential of quantum kernel machine learning methods for accelerating materials discovery and suggest complex x-ray diffraction data is a candidate for robust quantum kernel model advantage.

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