Quantum-Inspired Optimization for Cloud Database Query Processing.

Uloženo v:
Podrobná bibliografie
Název: Quantum-Inspired Optimization for Cloud Database Query Processing.
Autoři: Kondapalli, Sai Venkata
Zdroj: International Journal of Computational & Experimental Science & Engineering Experimental Science & Engineering (IJCESEN); 2025, Vol. 11 Issue 4, p8733-8740, 8p
Témata: QUANTUM computing, COMPUTER network architectures, SIMULATED annealing, CLOUD computing, MATHEMATICAL optimization
Abstrakt: Cloud database platforms face considerable processing limitations when managing complex relational queries that involve intricate joins and layered optimization challenges. Quantum computing techniques offer groundbreaking solutions by integrating quantum principles into conventional hardware systems. These advanced methodologies implement tensor network architectures, simulated annealing processes, and quantum-influenced sampling procedures to examine multiple query execution routes concurrently, substantially minimizing processing demands for elaborate analytical operations. Assessment findings indicate remarkable performance enhancements, with quantum-inspired optimization producing significant acceleration improvements for specialized analytical processes involving extensive graph relationships and combinatorial data configurations. These enhancements show particular effectiveness for complex queries that typically pose challenges to traditional database optimization methods. Deployment strategies focus on smooth integration with current SQL optimization systems while maintaining compatibility with existing relational database infrastructures. Technical implementation requires advanced hardware acceleration capabilities and strategic workload identification procedures that allow organizations to optimize performance advantages. Integration obstacles include maintaining compatibility with current optimization frameworks, optimizing resource distribution, and systematically evaluating query patterns appropriate for quantuminspired processing methods. Database architects and performance engineers gain valuable insights into how these quantum-inspired approaches constitute substantial evolutionary progress beyond conventional parallel processing methods. These techniques create fundamental principles for advanced database optimization while maintaining operational compatibility with current relational database management systems, delivering scalable solutions for complex analytical processing demands across diverse cloud computing environments. [ABSTRACT FROM AUTHOR]
Copyright of International Journal of Computational & Experimental Science & Engineering Experimental Science & Engineering (IJCESEN) is the property of Journal of Computational Experimental Science, Engineering Experimental Science & Engineering and its content may not be copied or emailed to multiple sites without the copyright holder's express written permission. Additionally, content may not be used with any artificial intelligence tools or machine learning technologies. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
Databáze: Complementary Index
Popis
Abstrakt:Cloud database platforms face considerable processing limitations when managing complex relational queries that involve intricate joins and layered optimization challenges. Quantum computing techniques offer groundbreaking solutions by integrating quantum principles into conventional hardware systems. These advanced methodologies implement tensor network architectures, simulated annealing processes, and quantum-influenced sampling procedures to examine multiple query execution routes concurrently, substantially minimizing processing demands for elaborate analytical operations. Assessment findings indicate remarkable performance enhancements, with quantum-inspired optimization producing significant acceleration improvements for specialized analytical processes involving extensive graph relationships and combinatorial data configurations. These enhancements show particular effectiveness for complex queries that typically pose challenges to traditional database optimization methods. Deployment strategies focus on smooth integration with current SQL optimization systems while maintaining compatibility with existing relational database infrastructures. Technical implementation requires advanced hardware acceleration capabilities and strategic workload identification procedures that allow organizations to optimize performance advantages. Integration obstacles include maintaining compatibility with current optimization frameworks, optimizing resource distribution, and systematically evaluating query patterns appropriate for quantuminspired processing methods. Database architects and performance engineers gain valuable insights into how these quantum-inspired approaches constitute substantial evolutionary progress beyond conventional parallel processing methods. These techniques create fundamental principles for advanced database optimization while maintaining operational compatibility with current relational database management systems, delivering scalable solutions for complex analytical processing demands across diverse cloud computing environments. [ABSTRACT FROM AUTHOR]
ISSN:21499144
DOI:10.22399/ijcesen.4293