AI-Driven MCP Service Automation: A Framework for SMBs to Achieve Zero-Code Integration and High Efficiency

Authors

  • Zhenyuan He Walmart Global Tech, Sunnyvale, CA, USA Author

DOI:

https://doi.org/10.71222/q0bzc282

Keywords:

AI-driven automation, Zero-code integration, Managed Cloud Provider (MCP), Small and Medium-sized Businesses (SMBs), Cloud services, Efficiency, Framework

Abstract

This research proposes an AI-driven, zero-code integration framework to automate Managed Cloud Provider (MCP) services for Small and Medium-sized Businesses (SMBs). SMBs often lack the resources and technical expertise for complex cloud management, hindering their adoption of cloud technologies. Our framework leverages AI to streamline MCP service provisioning, configuration, and monitoring, enabling SMBs to achieve significant efficiency gains without requiring coding or extensive IT infrastructure. The framework incorporates machine learning models for automated resource allocation, anomaly detection, and predictive maintenance, optimizing performance and minimizing downtime. Zero-code integration is achieved through a drag-and-drop interface and pre-built connectors, simplifying the deployment and management of cloud services. The research includes a case study demonstrating the framework’s effectiveness in improving the operational efficiency and reducing the operational costs for SMBs. Case-based evaluations demonstrate practical efficiency improvements in representative SMB deployments. The framework also enhances scalability and security in cloud environments. We evaluate the performance of our framework using key performance indicators (KPIs) such as service deployment time, resource utilization, and system uptime, showing significant improvements compared to traditional methods. The framework’s adaptability to diverse SMB requirements and its ease of use positions it as a valuable tool for promoting widespread cloud adoption among SMBs.

References

1. C. Lundberg, “Automated Monitoring Pipeline Generation from Open API Schemas,” 2025.

2. W. Jin, N. Wang, L. Zhang, X. Tian, B. Shi, and B. Zhao, “A Review of AI-Driven Automation Technologies: Latest Taxonomies, Existing Challenges, and Future Prospects,” Computers, Materials & Continua, vol. 84, no. 3, 2025.

3. P. Pattnayak and H. Bohra, “Review of Tools for Zero-Code LLM Based Application Development,” arXiv preprint arXiv:2510.19747, 2025.

4. K. A. Chowdhury, S. Kawsar, and T. I. Imam, “Rapid Mass Level Organizational AI Sensitization and Skill Development Using No Code AI Tool,” in Abu Dhabi International Petroleum Exhibition and Conference, 2024, p. D031S099R002.

5. J. Tang, L. Xia, Z. Li, and C. Huang, “AI-Researcher: Autonomous Scientific Innovation,” arXiv preprint arXiv:2505.18705, 2025.

6. L. Xin, H. Gu, Z. Ran, X. Mei, G. Xuewei, and W. Qiong, “AI-driven Autonomous Cognitive Intelligent Processing System: Theoretical Framework and Implementation Mechanism,” Available at SSRN 5564627.

7. M. S. Ardebili and A. Bartolini, “Kubeintellect: A modular llm-orchestrated agent framework for end-to-end kubernetes management,” arXiv preprint arXiv:2509.02449, 2025.

8. R. Maddali, “AI-AUGMENTED NO-CODE AND ZERO-CODE DATA ENGINEERING FOR FULLY AUTONOMOUS SOFTWARE CREATION.”

9. N. Fu, G. Cheng, Y. Teng, G. Dai, S. Yu, and Z. Chen, “Intelligent Root Cause Localization in MicroService Systems: A Survey and New Perspectives,” ACM Computing Surveys, 2025.

10. M. F. B. Shaikat, “Bridging the Smart Manufacturing Divide: A Low-Code IIoT Platform for Rural and Underserved US Factories,” Authorea Preprints, 2025.

11. R. Pendam, M. Upadhye, N. Patil, and S. Iyer, “QuikAPIs-Automated API Generation and Data Management Platform with Built-in Security,” Journal of Computational Analysis & Applications, vol. 33, no. 4, 2024.

12. A. Sehgal, “Introducing No-Code/Low-Code AI Toolsets,” in Demystifying Digital Transformation: Non-Technical Toolsets for Business Professionals Thriving in the Digital Age, Berkeley, CA: Apress, pp. 291-334, 2023.

Downloads

Published

12 February 2026

Issue

Section

Article

How to Cite

He, Z. (2026). AI-Driven MCP Service Automation: A Framework for SMBs to Achieve Zero-Code Integration and High Efficiency. European Journal of Business, Economics & Management, 2(1), 42-54. https://doi.org/10.71222/q0bzc282