Integrating Large Language Models And Enterprise Automation: Architectural, Performance, And Process Implications For Modern Software Systems

Authors

  • Dr. Adrian Ionescu Department of Computer Science, University of Bucharest, Romania

DOI:

https://doi.org/10.37547/

Keywords:

Large language models, enterprise automation, software architecture

Abstract

The rapid integration of large language models into software development and enterprise automation has fundamentally reshaped how organizations design, build, refactor, and operate information systems. Tools such as AI-assisted code editors and intelligent automation platforms represent not merely incremental productivity aids but structural shifts in the relationship between human expertise, software architecture, and business process execution. This study investigates the convergence of large language model–driven development environments, enterprise software engineering practices, and automated business process management. Drawing strictly on established literature related to large language model engineering, refactoring theory, Java persistence performance, enterprise systems, robotic process automation, and workflow validation, this research develops a comprehensive analytical framework that connects artificial intelligence–augmented coding tools with enterprise-scale performance, reliability, and governance considerations. The methodology follows a qualitative, theory-driven synthesis of prior empirical and conceptual studies, emphasizing architectural patterns, performance trade-offs in CRUD-intensive systems, and the evolving role of automation across supply chains and forecasting functions. The results highlight how AI-enhanced development tools influence code quality, refactoring discipline, persistence-layer efficiency, and process automation reliability. The discussion critically examines limitations, including opacity in model behavior, risks of automation drift, and the challenges of validating complex AI-driven workflows. The article concludes by positioning large language models as a foundational yet incomplete component of future enterprise systems, requiring rigorous engineering, process alignment, and performance-aware integration to realize sustainable organizational value.

References

1. Aguirre, S.; Rodriguez, A. Automation in Business Processes: The RPA Approach. Proceedings of the IEEE International Conference on Services Computing, 2017, 170–177.

2. Bonteanu, A.M.; Tudose, C.; Anghel, A.M. Multi-Platform Performance Analysis for CRUD Operations in Relational Databases from Java Programs using Spring Data JPA. Proceedings of the International Symposium on Advanced Topics in Electrical Engineering, 2023.

3. Bonteanu, A.M.; Tudose, C.; Anghel, A.M. Performance Analysis for CRUD Operations in Relational Databases from Java Programs Using Hibernate. Proceedings of the International Conference on Control Systems and Computer Science, 2023.

4. Bonteanu, A.M.; Tudose, C. Performance Analysis and Improvement for CRUD Operations in Relational Databases from Java Programs Using JPA, Hibernate, Spring Data JPA. Applied Sciences, 2024, 14, 2743.

5. Chandra, R. Automated workflow validation for large language model pipelines. Computer Fraud & Security, 2025(2), 1769–1784.

6. Cursor. The AI Code Editor. Available online: https://www.cursor.com/ (accessed on 1 March 2025).

7. Davenport, T.H. Putting the Enterprise into the Enterprise System. Harvard Business Review, 1998, 76(4), 121–131.

8. Fowler, M. Refactoring: Improving the Design of Existing Code, 2nd ed.; Addison-Wesley Professional: Boston, MA, USA, 2018.

9. GitHub Copilot. Available online: https://github.com/features/copilot (accessed on 1 March 2025).

10. Iusztin, P.; Labonne, M. LLM Engineer’s Handbook: Master the Art of Engineering Large Language Models from Concept to Production; Packt Publishing: Birmingham, 2024.

11. Jacobs, F.R.; Weston, F.C. Enterprise Resource Planning – A Brief History. Journal of Operations Management, 2007, 25(2), 357–363.

12. Min, H.; Zhou, G. Supply Chain Modeling: Past, Present and Future. Computers & Industrial Engineering, 2002, 43(1–2), 231–249.

13. Raschka, S. Build a Large Language Model; Manning: New York, NY, USA, 2024.

14. Shahbaz, M.; Razi, M.A.; Shaikh, F.M.; Channar, Z.A. The Impact of Artificial Neural Networks on the Accuracy of Demand Forecasting: Evidence from Pakistan’s Fast-Moving Consumer Goods Sector. International Journal of Emerging Markets, 2019, 14(5), 770–791.

15. Tudose, C. Java Persistence with Spring Data and Hibernate; Manning: New York, NY, USA, 2023.

16. Van der Aalst, W.M.P. Business Process Management: A Comprehensive Survey. ISRN Software Engineering, 2013, Article ID 507984.

Downloads

Published

2026-01-01

How to Cite

Dr. Adrian Ionescu. (2026). Integrating Large Language Models And Enterprise Automation: Architectural, Performance, And Process Implications For Modern Software Systems. International Journal of Advance Scientific Research, 6(01), 1-7. https://doi.org/10.37547/

Similar Articles

51-60 of 275

You may also start an advanced similarity search for this article.