Over the first 24 months of the project, we explored how quantum systems can process and transform classical data. Using the framework of quantum reservoir computing, we implemented an experimental setup with a superconducting resonator and a transmon qubit. We have shown that by encoding the classical information in the amplitude of a quantum state, and measuring it in the photon number basis, we achieve data expansion, which allows us to perform classification tasks. We also found that additional Kerr nonlinearity further improves classification performance. To account for the effects of this nonlinearity, we developed new methods for encoding the input data more effectively.
In parallel, our simulations revealed that quantum properties like coherence play a direct role in improving classification accuracy—when compared to a classical system of the equivalent size. Furthermore, we developed a new approach to training our quantum system. By combining machine learning techniques like backpropagation with concepts from gaussian boson sampling, we were able to fine-tune the parameters that govern how different parts of the system interact. With this approach, we successfully demonstrated learning on a widely used dataset of handwritten digits. Notably, the learning performance we achieved with six coupled quantum modes is impossible with only data expansion using the same hardware.