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QML Essentials -- A framework for working with Quantum Fourier Models

QML Essentials -- A framework for working with Quantum Fourier Models

来源:Arxiv_logoArxiv
英文摘要

In this work, we propose a framework in the form of a Python package, specifically designed for the analysis of Quantum Machine Learning models. This framework is based on the PennyLane simulator and facilitates the evaluation and training of Variational Quantum Circuits. It provides additional functionality ranging from the ability to add different types of noise to the classical simulation, over different parameter initialisation strategies, to the calculation of expressibility and entanglement for a given model. As an intrinsic property of Quantum Fourier Models, it provides two methods for calculating the corresponding Fourier spectrum: one via the Fast Fourier Transform and another analytical method based on the expansion of the expectation value using trigonometric polynomials. It also provides a set of predefined approaches that allow a fast and straightforward implementation of Quantum Machine Learning models. With this framework, we extend the PennyLane simulator with a set of tools that allow researchers a more convenient start with Quantum Fourier Models and aim to unify the analysis of Variational Quantum Circuits.

Melvin Strobl、Maja Franz、Eileen Kuehn、Wolfgang Mauerer、Achim Streit

物理学计算技术、计算机技术

Melvin Strobl,Maja Franz,Eileen Kuehn,Wolfgang Mauerer,Achim Streit.QML Essentials -- A framework for working with Quantum Fourier Models[EB/OL].(2025-06-07)[2025-07-17].https://arxiv.org/abs/2506.06695.点此复制

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