The Convergence of APIs, Artificial Intelligence, and Data Integration in Modern Enterprise Data Architecture a Framework for Scalable Business Intelligence Solutions

Authors

  • Emre Soner Turkey Author

Keywords:

APIs, Artificial Intelligence, Data Integration, Enterprise Data Architecture, Business Intelligence, Cloud Computing, AI-driven APIs, Data Governance, Scalable BI, Data-Driven Decision Making

Abstract

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

2024-01-10