International Journal of Computer Techniques Volume 12 Issue 5 | AI-Driven Intelligent Microservices Orchestration and Auto- Healing in Multi-Cloud Environments

AI-Driven Microservices Orchestration in Multi-Cloud | IJCT Journal Volume 12 Issue 5

AI-Driven Intelligent Microservices Orchestration and Auto-Healing in Multi-Cloud Environments

Author: Navin Senguttuvan
Email: navinseng0@gmail.com

Journal: International Journal of Computer Techniques (IJCT)

Volume: 12 | Issue: 5 | Page: 78 | Publication Date: September – October 2025

ISSN: 2394-2231 | Journal URL: https://ijctjournal.org/

Abstract

This paper analyzes AI-driven orchestration and auto-healing mechanisms for microservices in multi-cloud environments. It explores how machine learning, reinforcement learning, and LLMs can reduce downtime, optimize resource usage, and improve fault tolerance. The proposed framework achieves up to 87% reduction in service downtime and 65% improvement in resource efficiency, outperforming traditional orchestration methods.

Keywords

Microservices, Orchestration, Auto-healing, Multi-cloud, Artificial Intelligence, Machine Learning, Fault Tolerance

Conclusion

AI-powered orchestration offers transformative benefits for managing distributed microservices across multi-cloud platforms. The study highlights significant gains in reliability, cost-efficiency, and scalability. Future directions include integrating explainable AI, federated learning, and carbon-aware scheduling for sustainable cloud-native systems.

References

Includes 44+ references from IEEE, ACM, Springer, and O’Reilly covering microservices architecture, cloud orchestration, AI-based fault recovery, and multi-cloud optimization strategies.