QUANT-PHLGMLNov 11, 2021

Quantum Model-Discovery

arXiv:2111.06376v111 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of applying quantum computing to model discovery in science and engineering, representing an incremental advancement by integrating classical and quantum machine learning approaches.

The paper tackles the problem of extending near-term quantum computers to scientific machine learning tasks, specifically discovering differential equations from measurement data, and demonstrates successful parameter inference and equation discovery on both ordinary and partial differential equations.

Quantum computing promises to speed up some of the most challenging problems in science and engineering. Quantum algorithms have been proposed showing theoretical advantages in applications ranging from chemistry to logistics optimization. Many problems appearing in science and engineering can be rewritten as a set of differential equations. Quantum algorithms for solving differential equations have shown a provable advantage in the fault-tolerant quantum computing regime, where deep and wide quantum circuits can be used to solve large linear systems like partial differential equations (PDEs) efficiently. Recently, variational approaches to solving non-linear PDEs also with near-term quantum devices were proposed. One of the most promising general approaches is based on recent developments in the field of scientific machine learning for solving PDEs. We extend the applicability of near-term quantum computers to more general scientific machine learning tasks, including the discovery of differential equations from a dataset of measurements. We use differentiable quantum circuits (DQCs) to solve equations parameterized by a library of operators, and perform regression on a combination of data and equations. Our results show a promising path to Quantum Model Discovery (QMoD), on the interface between classical and quantum machine learning approaches. We demonstrate successful parameter inference and equation discovery using QMoD on different systems including a second-order, ordinary differential equation and a non-linear, partial differential equation.

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