Workload-Based Performance Tuning in Database Management Systems through Integration of Artificial Intelligence

Vamsi Kalyan Jupudi, Nanda Kishore Mysuru, Ritheesh Mekala
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Abstract

Traditional methods of performance tuning in Database Management Systems (DBMS) are facing significant challenges in adapting to the dynamic nature of modern workloads. Reactive approaches and static configurations often lead to performance bottlenecks and inefficient resource utilization. In response, this paper proposes a novel approach for workload-based performance tuning through the integration of Artificial Intelligence (AI). By leveraging AI techniques such as machine learning and predictive modeling, the proposed methodology aims to automate the analysis of workload patterns, predict future trends, and dynamically adjust DBMS configurations for optimal performance. The paper discusses the key components of the proposed methodology, including workload characterization, predictive modeling, and adaptive configuration management. A hypothetical case study in an e-commerce database environment illustrates the implementation and potential performance improvements achieved through AI-powered tuning. Furthermore, the paper explores real-world applications, future research directions, challenges, and best practices for implementing workload-based tuning with AI integration. Overall, this paper presents a comprehensive framework for leveraging AI to enhance DBMS performance, scalability, and efficiency in dynamic environments.
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通过整合人工智能,在数据库管理系统中实现基于工作负载的性能调整
传统的数据库管理系统(DBMS)性能调整方法在适应现代工作负载的动态特性方面面临着巨大挑战。反应式方法和静态配置往往会导致性能瓶颈和资源利用效率低下。为此,本文提出了一种通过整合人工智能(AI)进行基于工作负载的性能调整的新方法。通过利用机器学习和预测建模等人工智能技术,该方法旨在自动分析工作负载模式、预测未来趋势并动态调整 DBMS 配置以获得最佳性能。本文讨论了所提方法的关键组成部分,包括工作负载特征描述、预测建模和自适应配置管理。在电子商务数据库环境中进行的假设案例研究说明了通过人工智能驱动的调整实现的实施和潜在性能改进。此外,本文还探讨了现实世界中的应用、未来研究方向、挑战以及实施基于工作负载的人工智能集成调优的最佳实践。总之,本文提出了一个利用人工智能提高动态环境中数据库管理系统性能、可扩展性和效率的综合框架。
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