Quantum Machine Learning Playground
This work addresses the problem of accessibility for learners and researchers in quantum computing by providing a visualization tool, though it is incremental as it adapts classical visualization concepts to QML.
The authors tackled the lack of visualization tools for quantum machine learning (QML) by developing an interactive web application that demystifies QML algorithms, aiming to lower the entry barrier to quantum computing.
This article introduces an innovative interactive visualization tool designed to demystify quantum machine learning (QML) algorithms. Our work is inspired by the success of classical machine learning visualization tools, such as TensorFlow Playground, and aims to bridge the gap in visualization resources specifically for the field of QML. The article includes a comprehensive overview of relevant visualization metaphors from both quantum computing and classical machine learning, the development of an algorithm visualization concept, and the design of a concrete implementation as an interactive web application. By combining common visualization metaphors for the so-called data re-uploading universal quantum classifier as a representative QML model, this article aims to lower the entry barrier to quantum computing and encourage further innovation in the field. The accompanying interactive application is a proposal for the first version of a quantum machine learning playground for learning and exploring QML models.