ArXiv TLDR

Magic-Informed Quantum Architecture Search

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2605.03932

Vincenzo Lipardi, Domenica Dibenedetto, Georgios Stamoulis, Mark H. M. Winands

quant-phcs.AI

TLDR

This paper introduces a magic-informed quantum architecture search (QAS) technique that controls quantum resources and improves circuit design.

Key contributions

  • Proposes a novel magic-informed Quantum Architecture Search (QAS) technique.
  • Utilizes Monte Carlo Tree Search with a GNN to estimate and control circuit magic.
  • GNN-induced bias steers the search towards desired high or low magic regimes.
  • Benchmarked on ground-state energy and quantum state approximation, showing improved quality.

Why it matters

This paper is significant as it introduces a method to control "magic," a fundamental quantum resource, directly within circuit design. This control leads to consistent improvements in solution quality across various quantum problems, advancing quantum advantage.

Original Abstract

Nonstabilizerness, commonly referred to as magic, is a fundamental resource underpinning quantum advantage. In this paper, we propose a magic-informed quantum architecture search (QAS) technique that enables control over a quantum resource within the general framework of circuit design. Inspired by the AlphaGo approach, we tackle the problem with a Monte Carlo Tree Search technique equipped with a Graph Neural Network (GNN) that estimates the magic of candidate quantum circuits. The GNN model induces a magic-based bias that steers the search toward either high- or low-magic regimes, depending on the target objective. We benchmark the proposed magic-informed QAS technique on both the structured ground-state energy problem and on the more general quantum state approximation problem, spanning different sizes and target magic levels. Experimental results show that the proposed technique effectively influences the magic across the search tree and notably also on the resulting final circuit, even in regimes where the GNN operates on out-of-distribution instances. Although introducing a problem-agnostic magic bias could, in principle, constrain the search dynamics, we observe consistent improvements in solution quality across all problems tested.

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