Observing Schrödinger’s cat with artificial intelligence: emergent classicality from information bottleneck

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Abstract

We train a generative language model on the randomized local measurement data collected from Schrödinger’s cat quantum state. We demonstrate that the classical reality emerges in the language model due to the information bottleneck: although our training data contains the full quantum information about Schrödinger’s cat, a weak language model can only learn to capture the classical reality of the cat from the data. We identify the quantum-classical boundary in terms of both the size of the quantum system and the information processing power of the classical intelligent agent, which indicates that a stronger agent can realize more quantum nature in the environmental noise surrounding the quantum system. Our approach opens up a new avenue for using the big data generated on noisy intermediate-scale quantum devices to train generative models for representation learning of quantum operators, which might be a step toward our ultimate goal of creating an artificial intelligence quantum physicist.

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APA

Zhang, Z., & You, Y. Z. (2024). Observing Schrödinger’s cat with artificial intelligence: emergent classicality from information bottleneck. Machine Learning: Science and Technology, 5(1). https://doi.org/10.1088/2632-2153/ad3330

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