Saved in:
Bibliographic Details
Main Authors: Yan, Ge, Wu, Wenjie, Chen, Yuheng, Pan, Kaisen, Lu, Xudong, Zhou, Zixiang, Wang, Yuhan, Wang, Ruocheng, Yan, Junchi
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.00736
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912645155651584
author Yan, Ge
Wu, Wenjie
Chen, Yuheng
Pan, Kaisen
Lu, Xudong
Zhou, Zixiang
Wang, Yuhan
Wang, Ruocheng
Yan, Junchi
author_facet Yan, Ge
Wu, Wenjie
Chen, Yuheng
Pan, Kaisen
Lu, Xudong
Zhou, Zixiang
Wang, Yuhan
Wang, Ruocheng
Yan, Junchi
contents Quantum computing is a promising paradigm that may overcome the current computational power bottlenecks. The increasing maturity of quantum processors provides more possibilities for the development and implementation of quantum algorithms. As the crucial stages for quantum algorithm implementation, the logic circuit design and quantum compiling have also received significant attention, which covers key technologies, e.g., quantum logic circuit synthesis (also widely known as quantum architecture search) and optimization, as well as qubit mapping and routing. Recent studies suggest that the scale and precision of related algorithms are steadily increasing, especially with the integration of artificial intelligence methods. In this survey, we systematically review and summarize a vast body of literature, exploring the feasibility of an integrated design and optimization scheme that spans from the algorithmic level to quantum hardware, combining the steps of logic circuit design and compilation optimization. Leveraging the exceptional cognitive and learning capabilities of AI algorithms, it becomes more possible to reduce manual design costs, enhance the precision and efficiency of execution, and facilitate the implementation and validation of the superiority of quantum algorithms on hardware.
format Preprint
id arxiv_https___arxiv_org_abs_2407_00736
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Quantum Circuit Synthesis and Compilation Optimization: Overview and Prospects
Yan, Ge
Wu, Wenjie
Chen, Yuheng
Pan, Kaisen
Lu, Xudong
Zhou, Zixiang
Wang, Yuhan
Wang, Ruocheng
Yan, Junchi
Quantum Physics
Emerging Technologies
Machine Learning
Quantum computing is a promising paradigm that may overcome the current computational power bottlenecks. The increasing maturity of quantum processors provides more possibilities for the development and implementation of quantum algorithms. As the crucial stages for quantum algorithm implementation, the logic circuit design and quantum compiling have also received significant attention, which covers key technologies, e.g., quantum logic circuit synthesis (also widely known as quantum architecture search) and optimization, as well as qubit mapping and routing. Recent studies suggest that the scale and precision of related algorithms are steadily increasing, especially with the integration of artificial intelligence methods. In this survey, we systematically review and summarize a vast body of literature, exploring the feasibility of an integrated design and optimization scheme that spans from the algorithmic level to quantum hardware, combining the steps of logic circuit design and compilation optimization. Leveraging the exceptional cognitive and learning capabilities of AI algorithms, it becomes more possible to reduce manual design costs, enhance the precision and efficiency of execution, and facilitate the implementation and validation of the superiority of quantum algorithms on hardware.
title Quantum Circuit Synthesis and Compilation Optimization: Overview and Prospects
topic Quantum Physics
Emerging Technologies
Machine Learning
url https://arxiv.org/abs/2407.00736