Experimental quantum reservoir computing with a circuit quantum electrodynamics system
- URL: http://arxiv.org/abs/2506.22016v1
- Date: Fri, 27 Jun 2025 08:31:36 GMT
- Title: Experimental quantum reservoir computing with a circuit quantum electrodynamics system
- Authors: Baptiste Carles, Julien Dudas, Léo Balembois, Julie Grollier, Danijela Marković,
- Abstract summary: Quantum reservoir computing is a machine learning framework that offers ease of training compared to other quantum neural network models.<n>We propose and experimentally implement a novel quantum reservoir computing platform based on a circuit quantum electrodynamics architecture.<n>Our work demonstrates a hardware-efficient quantum neural network implementation that can be further scaled up and generalized to other quantum machine learning models.
- Score: 0.9786690381850356
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum reservoir computing is a machine learning framework that offers ease of training compared to other quantum neural network models, as it does not rely on gradient-based optimization. Learning is performed in a single step on the output features measured from the quantum system. Various implementations of quantum reservoir computing have been explored in simulations, with different measured features. Although simulations have shown that quantum reservoirs present advantages in performance compared to classical reservoirs, experimental implementations have remained scarce. This is due to the challenge of obtaining a large number of output features that are nonlinear transformations of the input data. In this work, we propose and experimentally implement a novel quantum reservoir computing platform based on a circuit quantum electrodynamics architecture, consisting of a single cavity mode coupled to a superconducting qubit. We obtain a large number of nonlinear features from a single physical system by encoding the input data in the amplitude of a coherent drive and measuring the cavity state in the Fock basis. We demonstrate classification of two classical tasks with significantly smaller hardware resources and fewer measured features compared to classical neural networks. Our experimental results are supported by numerical simulations that show additional Kerr nonlinearity is beneficial to reservoir performance. Our work demonstrates a hardware-efficient quantum neural network implementation that can be further scaled up and generalized to other quantum machine learning models.
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