Quantum Resource Management in the NISQ Era: Implications and Perspectives from Software Engineering
- URL: http://arxiv.org/abs/2508.05697v1
- Date: Wed, 06 Aug 2025 19:15:57 GMT
- Title: Quantum Resource Management in the NISQ Era: Implications and Perspectives from Software Engineering
- Authors: Marcos Guillermo Lammers, Federico Hernán Holik, Alejandro Fernández,
- Abstract summary: We analyze the role of resources in current uses of NISQ devices, identifying their relevance and implications for quantum software engineering.<n>We aim to strengthen the field of Quantum Resource Estimation (QRE) and move toward scalable and reliable quantum software development.
- Score: 44.99833362998488
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Quantum computers represent a radical technological breakthrough in information processing by leveraging the principles of quantum mechanics to solve highly complex problems beyond the reach of classical systems. However, in the current NISQ era (noisy intermediate-scale quantum devices), the available hardware presents several limitations, such as a limited number of qubits, high error rates, and short coherence times. Efficient management of quantum resources, both physical and logical, is especially relevant in the design and deployment of quantum algorithms. In this paper, we analyze the role of resources in current uses of NISQ devices, identifying their relevance and implications for quantum software engineering. With this contribution, we aim to strengthen the field of Quantum Resource Estimation (QRE) and move toward scalable and reliable quantum software development
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