Intelligent Data Replication Strategies: Using AI to Enhance Fault Tolerance and Performance in Multi-Node Database Systems
Keywords:
AI-enhanced replication, multi-node database systems, fault tolerance, performance optimization, adaptive replication, machine learning, edge computingAbstract
Advancements in managing data have pushed the development of new concepts needed to appropriately advance organizations' multi-node database systems. The present research paper concentrates on a review of artificial intelligence for data replication tasks and demonstrates AI treatment of real-time data and its contribution to augment replication techniques. The focus areas include adaptive replication, fault predictability and control, and intelligent load distribution to help increase the system's flexibility to meet users' expectations. Further support for these strategies is evident from Netflix and Facebook. Besides, one can never run out of fashion to explore the market, such as edge computing, blockchain, and better algorithms to replicate data. Nonetheless, significant implementation issues, data use, and resource-making must be solved to get the full potential of these innovations. Consequently, this Article offers some vision of the future of replication with the help of AI and how it may influence the very concept of data management within the context of a rapidly emerging data-oriented world.
References
Chen, Y., Wang, W., & Huang, J. (2023). “Adaptive Data Replication in Multi-Node Database Systems Using Machine Learning.” Journal of Database Management, 34(1), 1-20.
Kumar, R., & Sin"h, A. (2022). "AI-Driven Techniques for Fault Tolerance in Distributed Database System." International Journal of Cloud Computing and Services Science, 11(4), 45-56.
Zhan", L., & Zhao, Y. (2022). “Leveraging AI for Intelligent Data Management in Cloud-Based Database Systems.” IEEE Transactions on Cloud Computing, 10(3)" 678-689.
Patel, S., & Mehta, A. (2021). "Performance Optimization Techniques for Database "Replication in Distributed Systems." ACM Computing Surveys, 54(8), Article 168.
Meyer, J., & Roberts, "T. (2021). "Machine Learning for Database Replication and Load Balancing": A Review." Journal of Computer Science and Technology, 36 "2), 317-334.
Smith, J., & Lee, R. (2020). "Data Replication and Consistency Models in "Distributed Systems: Current Trends and Future Directions." Distributed Computing, 33(3), 197-220.
Singh, A., & Verma, R. (2020). “Integrating Blockchain with AI for Secure Data Replication.” Future Generation Computer Systems, 108, 123-133.
Thompson, H., & Green, K. (2019). “Edge Computing and Its Impact on Data Replication Strategies.” Journal of Network and Computer Applications, 128, 20-30.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2023 Well Testing Journal
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
This license requires that re-users give credit to the creator. It allows re-users to distribute, remix, adapt, and build upon the material in any medium or format, for noncommercial purposes only.