12 Review and significance of cryptography and machine learning in quantum computing
Kaushal Kishor
Abstract
Quantum machine learning, which combines quantum computers with regular machine learning, is a much contested field of research. The goal of quantum ML is to provide light on the possible applications of quantum mechanical findings to ML challenges. The exponential growth of data that must be taught to a typical computer paradigm implies that the present cutting-edge computing equipment cannot keep up with the pace. Quantum computing might be useful in this context for continuous training with enormous datasets. Scientists have resorted to quantum machine learning to reduce the development time for new learning algorithms. Traditional machine learning seeks patterns in data and uses those patterns to forecast the future. This is machine learning's ultimate objective. However, the new patterns created by quantum techniques imply that quantum computers may be more successful in machine learning than traditional computers. One of the most significant uses of cryptography is assuring user anonymity and data security over unsecure networks. In this section, we examine the history of quantum machine learning and summarize the most current results in the field.