FlowQ-Net: A Generative Framework for Automated Quantum Circuit Design
Jun Dai, Michael Rizvi-Martel, Guillaume Rabusseau

TL;DR
FlowQ-Net is a novel generative framework that automates quantum circuit design, optimizing for multiple objectives and producing diverse, high-quality circuits for near-term quantum computing applications.
Contribution
It introduces a flow-based generative model for quantum circuit synthesis that outperforms traditional methods in efficiency and diversity, tailored for NISQ devices.
Findings
Circuits are 10-30x more compact than baselines.
Achieves high accuracy with error resilience.
Demonstrates effectiveness across multiple quantum tasks.
Abstract
Designing efficient quantum circuits is a central bottleneck to exploring the potential of quantum computing, particularly for noisy intermediate-scale quantum (NISQ) devices, where circuit efficiency and resilience to errors are paramount. The search space of gate sequences grows combinatorially, and handcrafted templates often waste scarce qubit and depth budgets. We introduce \textsc{FlowQ-Net} (Flow-based Quantum design Network), a generative framework for automated quantum circuit synthesis based on Generative Flow Networks (GFlowNets). This framework learns a stochastic policy to construct circuits sequentially, sampling them in proportion to a flexible, user-defined reward function that can encode multiple design objectives such as performance, depth, and gate count. This approach uniquely enables the generation of a diverse ensemble of high-quality circuits, moving beyond…
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