QUANT-PHAILGMLMar 22, 2023

The power and limitations of learning quantum dynamics incoherently

arXiv:2303.12834v119 citationsh-index: 55
Originality Incremental advance
AI Analysis

This addresses the challenge of transpiling quantum processes across different platforms without hybrid entanglement, offering a practical but incremental advance for quantum computing.

The paper tackles the problem of learning quantum dynamics without direct quantum interactions, proving that any efficiently representable unitary can be learned incoherently with arbitrary measurements, but only low-entangling unitaries with shallow-depth measurements, and demonstrates this by learning a 16-qubit unitary on ibmq_kolkata.

Quantum process learning is emerging as an important tool to study quantum systems. While studied extensively in coherent frameworks, where the target and model system can share quantum information, less attention has been paid to whether the dynamics of quantum systems can be learned without the system and target directly interacting. Such incoherent frameworks are practically appealing since they open up methods of transpiling quantum processes between the different physical platforms without the need for technically challenging hybrid entanglement schemes. Here we provide bounds on the sample complexity of learning unitary processes incoherently by analyzing the number of measurements that are required to emulate well-established coherent learning strategies. We prove that if arbitrary measurements are allowed, then any efficiently representable unitary can be efficiently learned within the incoherent framework; however, when restricted to shallow-depth measurements only low-entangling unitaries can be learned. We demonstrate our incoherent learning algorithm for low entangling unitaries by successfully learning a 16-qubit unitary on \texttt{ibmq\_kolkata}, and further demonstrate the scalabilty of our proposed algorithm through extensive numerical experiments.

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