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CNOT Minimal Circuit Synthesis - A Reinforcement Learning Approach

  • Riccardo Romanello
  • , Daniele Lizzi Bosco
  • , Jacopo Cossio
  • , Dusan Sutulovic
  • , Giuseppe Serra
  • , Carla Piazza
  • , Paolo Burelli

Research output: Conference Article in Proceeding or Book/Report chapterArticle in proceedingsResearchpeer-review

Abstract

CNOT gates are fundamental to quantum computting, as they facilitate entanglement, a crucial resource for quantum algorithms. Certain classes of quantum circuits, such as stabilizer circuits, rely heavily on CNOT gates and exhibit a structured normal form consisting of 11 independent computational blocks, many of which are composed entirely of CNOT operations. More generally, circuits constructed exclusively from CNOT gates are referred to as linear reversible circuits. Given their widespread use, it is imperative to minimise the number of CNOT gates employed. This problem, known as CNOT minimization, remains an open challenge, with its computational complexity yet to be fully characterized. Linear reversible circuits can be naturally represented as invertible binary matrices, establishing a direct correspondence between circuit optimization and matrix transformations. In this work, we introduce a novel reinforcement learning-based approach to CNOT minimization. Instead of training multiple reinforcement learning agents for different circuit sizes, we use a single agent up to a fixed size m. Matrices of sizes different from m are preprocessed using either embedding, to increase their size, or Gaussian striping, to reduce it. To assess the efficacy of our approach we trained an agent with m = 8. We evaluated our technique on matrices of size n that ranges from 3 to 15. The results we obtained show that our method overperforms the state of the art Patel-Markov-Hayes algorithm as the value of n increases.
Original languageEnglish
Title of host publication2025 IEEE International Conference on Quantum Artificial Intelligence
Number of pages8
PublisherIEEE
Publication date2025
Pages253–260
DOIs
Publication statusPublished - 2025
EventInternational Conference on Quantum Artificial Intelligence - Naples, Italy
Duration: 2 Nov 20255 Nov 2025
https://qai2025.unina.it/

Conference

ConferenceInternational Conference on Quantum Artificial Intelligence
Country/TerritoryItaly
CityNaples
Period02/11/202505/11/2025
SponsorIEEE - Institute of Electrical and Electronics Engineers
Internet address

Keywords

  • Training
  • Quantum
  • Algorithm
  • Quantum entanglement
  • Reinforcement learning
  • Logic gates
  • Minimization
  • Circuit synthesis
  • Quantum circuit
  • Computational Complexity
  • Artificial Intelligence
  • CNOT minimization
  • Reinforcement Learning
  • Linear Reversible Circuits
  • Quantum Circuit Synthesis

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