The Convergence of APIs, Artificial Intelligence, and Data Integration in Modern Enterprise Data Architecture a Framework for Scalable Business Intelligence Solutions
Keywords:
APIs, Artificial Intelligence, Data Integration, Enterprise Data Architecture, Business Intelligence, Cloud Computing, AI-driven APIs, Data Governance, Scalable BI, Data-Driven Decision MakingAbstract
The integration of Application Programming Interfaces (APIs), Artificial Intelligence (AI), and data integration is revolutionizing modern enterprise data architectures. APIs facilitate seamless data exchange, AI enhances decision-making, and data integration unifies disparate sources to create scalable Business Intelligence (BI) solutions. This paper explores how these three pillars converge to create robust, flexible, and intelligent enterprise systems. A literature review examines past research, and a framework for scalable BI is proposed.
References
Kim, J., & Lee, S. (2019). API-Driven Business Intelligence. Journal of Data Science, 27(4), 102-117.
Xu, K., & Wang, M. (2021). RESTful vs. GraphQL APIs in Real-Time Data Exchange. Enterprise Computing Review, 15(3), 89-102.
Nivedhaa, N. (2024). Software architecture evolution: Patterns, trends, and best practices. International Journal of Computer Sciences and Engineering (IJCSE), 1(2), 1–14.
Smith, R., & Brown, T. (2020). AI-Powered ETL for Business Intelligence. Data Integration Journal, 12(2), 67-79.
Wang, L., & Patel, D. (2018). AI in Predictive Analytics. Journal of Artificial Intelligence Research, 23(1), 55-70.
Vasudevan, K. (2024). The influence of AI-produced content on improving accessibility in consumer electronics. Indian Journal of Artificial Intelligence and Machine Learning (INDJAIML), 2(1), 1–11.
Gartner, Inc. (2017). The Challenges of AI-Driven Data Integration. Gartner Research Reports.
Lee, C., & Thompson, J. (2019). Hybrid Cloud Data Integration Strategies. Cloud Computing Today, 18(5), 134-150.
Brown, K. (2022). Self-Adaptive APIs in AI-Powered BI. International Journal of AI Research, 30(4), 88-101.
Vinay, S. B. (2024). A comprehensive analysis of artificial intelligence applications in legal research and drafting. International Journal of Artificial Intelligence in Law (IJAIL), 2(1), 1–7.
Patel, S., & Gupta, R. (2020). The Rise of Data Fabrics. Journal of Enterprise Computing, 14(3), 47-65.
Lin, Y. (2021). Real-Time AI Processing for Data-Driven Businesses. Machine Learning & Business, 19(2), 60-78.
Singh, A. (2023). The Future of API-Driven AI Solutions. Data & AI Journal, 11(1), 22-39.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Emre Soner (Author)

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.