Towards Foundation Models for Quantum Unitary Synthesis via Zero-Shot {MDL}
Quantum unitary synthesis addresses the problem of translating abstract quantum algorithms into sequences of hardware-executable quantum gates. Solving this task exactly is infeasible in general due to the exponential growth of the underlying combinatorial search space. Existing approaches suffer from misaligned optimization objectives, substantial training costs and limited generalization across different qubit counts. We mitigate these limitations by using supervised learning to approximate the minimum description length of residual unitaries and combining this estimate with stochastic beam search to identify near optimal gate sequences. Our method relies on a lightweight model with zero-shot generalization, substantially reducing training overhead compared to prior baselines. Across multiple benchmarks, we achieve faster wall-clock synthesis times while exceeding state-of-the-art methods in terms of success rate for complex circuits.
- Veröffentlicht in:
Proceedings of the ICLR Workshop FM4Science - Typ:
Inproceedings - Autoren:
- Jahr:
2026 - Source:
https://openreview.net/forum?id=Xus2cYFrH6
Informationen zur Zitierung
: Towards Foundation Models for Quantum Unitary Synthesis via Zero-Shot {MDL}, Proceedings of the ICLR Workshop FM4Science, 2026, https://openreview.net/forum?id=Xus2cYFrH6, Theissinger.etal.2026a,
@Inproceedings{Theissinger.etal.2026a,
author={Theißinger, Lukas; Gerlach, Thore; Berghaus, David; Bauckhage, Christian},
title={Towards Foundation Models for Quantum Unitary Synthesis via Zero-Shot {MDL}},
booktitle={Proceedings of the ICLR Workshop FM4Science},
url={https://openreview.net/forum?id=Xus2cYFrH6},
year={2026},
abstract={Quantum unitary synthesis addresses the problem of translating abstract quantum algorithms into sequences of hardware-executable quantum gates. Solving this task exactly is infeasible in general due to the exponential growth of the underlying combinatorial search space. Existing approaches suffer from misaligned optimization objectives, substantial training costs and limited generalization across...}}