AI Methods for Permutation Circuit Synthesis Across Generic Topologies

Agentic AI
Published: arXiv: 2509.16020v1
Authors

Victor Villar Juan Cruz-Benito Ismael Faro David Kremer

Abstract

This paper investigates artificial intelligence (AI) methodologies for the synthesis and transpilation of permutation circuits across generic topologies. Our approach uses Reinforcement Learning (RL) techniques to achieve near-optimal synthesis of permutation circuits up to 25 qubits. Rather than developing specialized models for individual topologies, we train a foundational model on a generic rectangular lattice, and employ masking mechanisms to dynamically select subsets of topologies during the synthesis. This enables the synthesis of permutation circuits on any topology that can be embedded within the rectangular lattice, without the need to re-train the model. In this paper we show results for 5x5 lattice and compare them to previous AI topology-oriented models and classical methods, showing that they outperform classical heuristics, and match previous specialized AI models, and performs synthesis even for topologies that were not seen during training. We further show that the model can be fine tuned to strengthen the performance for selected topologies of interest. This methodology allows a single trained model to efficiently synthesize circuits across diverse topologies, allowing its practical integration into transpilation workflows.

Paper Summary

Problem
The main problem addressed in this research paper is the challenge of quantum circuit transpilation, which is the process of transforming abstract quantum algorithms into equivalent circuits that adhere to the physical constraints of specific quantum processors. This process is computationally difficult and requires solving NP-hard optimization problems, making it impractical for large-scale quantum devices.
Key Innovation
The key innovation of this work is the development of a generalist approach to Reinforcement Learning (RL)-based quantum circuit transpilation for permutation circuits. Rather than training separate models for different device topologies, this approach trains a single model that can synthesize circuits across diverse topologies, allowing for efficient integration into transpilation workflows.
Practical Impact
This research has significant practical implications for the field of quantum computing. By enabling the synthesis of permutation circuits across generic topologies, this approach can be applied to a wide range of quantum devices, including those with complex connectivity constraints. This can lead to more efficient and scalable quantum computing architectures, which are essential for tackling complex problems in fields like chemistry, materials science, and cryptography.
Analogy / Intuitive Explanation
Imagine trying to build a complex puzzle with many interconnected pieces. Traditional approaches to quantum circuit transpilation are like trying to solve the puzzle by looking at each piece individually, without considering how they fit together as a whole. The generalist approach developed in this research is like having a "puzzle solver" that can look at the entire puzzle and figure out the best way to assemble it, taking into account the connections between each piece. This allows for more efficient and optimal solutions, even for complex puzzles (or quantum circuits).
Paper Information
Categories:
quant-ph cs.AI cs.LG
Published Date:

arXiv ID:

2509.16020v1

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