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BenchRL-QAS: Benchmarking reinforcement learning algorithms for quantum architecture search

Published: July 16, 2025 | arXiv ID: 2507.12189v2

By: Azhar Ikhtiarudin , Aditi Das , Param Thakkar and more

Potential Business Impact:

Finds best quantum computer designs for tasks.

Business Areas:
Quantum Computing Science and Engineering

We present BenchRL-QAS, a unified benchmarking framework for reinforcement learning (RL) in quantum architecture search (QAS) across a spectrum of variational quantum algorithm tasks on 2- to 8-qubit systems. Our study systematically evaluates 9 different RL agents, including both value-based and policy-gradient methods, on quantum problems such as variational eigensolver, quantum state diagonalization, variational quantum classification (VQC), and state preparation, under both noiseless and noisy execution settings. To ensure fair comparison, we propose a weighted ranking metric that integrates accuracy, circuit depth, gate count, and training time. Results demonstrate that no single RL method dominates universally, the performance dependents on task type, qubit count, and noise conditions providing strong evidence of no free lunch principle in RL-QAS. As a byproduct we observe that a carefully chosen RL algorithm in RL-based VQC outperforms baseline VQCs. BenchRL-QAS establishes the most extensive benchmark for RL-based QAS to date, codes and experimental made publicly available for reproducibility and future advances.

Country of Origin
🇫🇮 Finland

Repos / Data Links

Page Count
10 pages

Category
Physics:
Quantum Physics