TensorRL-QAS: Reinforcement learning with tensor networks for improved quantum architecture search
Akash Kundu, Stefano Mangini

TL;DR
TensorRL-QAS integrates tensor network methods with reinforcement learning to enhance quantum architecture search, significantly reducing resource requirements and improving success rates for quantum circuit design on near-term hardware.
Contribution
It introduces a novel tensor network-enhanced reinforcement learning framework for scalable quantum architecture search, outperforming baseline methods in efficiency and accuracy.
Findings
Achieves up to 10-fold reduction in CNOT count and circuit depth.
Reduces classical optimizer evaluations by up to 100-fold.
Demonstrates effectiveness on systems up to 20 qubits.
Abstract
Variational quantum algorithms hold the promise to address meaningful quantum problems already on noisy intermediate-scale quantum hardware. In spite of the promise, they face the challenge of designing quantum circuits that both solve the target problem and comply with device limitations. Quantum architecture search (QAS) automates the design process of quantum circuits, with reinforcement learning (RL) emerging as a promising approach. Yet, RL-based QAS methods encounter significant scalability issues, as computational and training costs grow rapidly with the number of qubits, circuit depth, and hardware noise. To address these challenges, we introduce , an improved framework that combines tensor network methods with RL for QAS. By warm-starting the QAS with a matrix product state approximation of the target solution, TensorRL-QAS effectively narrows the search…
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