I. Introduction
Quantum computing is rapidly growing and evolving. With the emergence of real-world quantum computers from companies like IBM, IonQ, and Quantinuum, the potential for solving complex problems that were previously intractable for traditional computers has become a reality. A promising application of quantum computing is in the realm of machine learning, known as quantum learning [1]–[21]. These algorithms take advantage of the unique features of quantum computing, such as superposition and entanglement, to perform highly parallel and efficient computations. The ultimate goal of quantum learning is to develop algorithms that can tackle learning problems that are too challenging for traditional computers, such as large-scale optimization problems and deep learning.