From Characterization To Construction: Generative Quantum Circuit Synthesis from Gate Set Tomography Data
King Yiu Yu, Aritra Sarkar, Erbing Hua, Maximilian Rimbach-Russ, Ryoichi Ishihara, Sebastian Feld

TL;DR
This paper introduces a novel quantum circuit synthesis method using a machine learning framework that directly learns from gate-set tomography data, bypassing traditional gate characterization and decomposition steps.
Contribution
It presents a new generative approach that models the concept space of quantum devices from raw GST data, enabling direct, context-aware circuit synthesis.
Findings
The framework captures shared physical noise environments more effectively than traditional methods.
It employs a set-vision transformer and diffusion models for robust, conditional circuit generation.
The approach is suitable for near-term quantum devices with complex calibration procedures.
Abstract
High-fidelity circuit execution on noisy intermediate-scale quantum devices is bottlenecked by compilation pipelines that disregard complex, correlated noise. To address this, this methodology article proposes a quantum machine learning control (QMLC) framework for generative quantum circuit synthesis from gate-set tomography (GST) data that bypasses the traditional two-step pipeline of characterizing native quantum gates via GST followed by unitary decomposition algorithms. Instead, a generative concept space is directly learnt from GST data, enabling conditional synthesis of quantum circuits on a desired output distribution. Our approach tokenizes GST germ circuits and embeds them into a structured latent space using a curriculum-learning-motivated strategy, starting with short circuits and progressively incorporating longer ones with diverse output statistics. The embedded sequences…
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