A Perspective on Quantum Computing Applications in Quantum Chemistry using 25--100 Logical Qubits
- URL: http://arxiv.org/abs/2506.19337v1
- Date: Tue, 24 Jun 2025 06:02:25 GMT
- Title: A Perspective on Quantum Computing Applications in Quantum Chemistry using 25--100 Logical Qubits
- Authors: Yuri Alexeev, Victor S. Batista, Nicholas Bauman, Luke Bertels, Daniel Claudino, Rishab Dutta, Laura Gagliardi, Scott Godwin, Niranjan Govind, Martin Head-Gordon, Matthew Hermes, Karol Kowalski, Ang Li, Chenxu Liu, Junyu Liu, Ping Liu, Juan M. Garcia-Lustra, Daniel Mejia-Rodriguez, Karl Mueller, Matthew Otten, Bo Peng, Mark Raugus, Markus Reiher, Paul Rigor, Wendy Shaw, Mark van Schilfgaarde, Tejs Vegge, Yu Zhang, Muqing Zheng, Linghua Zhu,
- Abstract summary: Quantum chemistry has long been recognized as a natural candidate for quantum computation.<n>We highlight near- to mid-term opportunities in algorithm and software design.<n>We propose strategic roadmaps and collaborative pathways for advancing practical quantum utility in quantum chemistry.
- Score: 13.58320536996685
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The intersection of quantum computing and quantum chemistry represents a promising frontier for achieving quantum utility in domains of both scientific and societal relevance. Owing to the exponential growth of classical resource requirements for simulating quantum systems, quantum chemistry has long been recognized as a natural candidate for quantum computation. This perspective focuses on identifying scientifically meaningful use cases where early fault-tolerant quantum computers, which are considered to be equipped with approximately 25--100 logical qubits, could deliver tangible impact. We highlight near- to mid-term opportunities in algorithm and software design, discuss representative chemical problems suited for quantum acceleration, and propose strategic roadmaps and collaborative pathways for advancing practical quantum utility in quantum chemistry.
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