Building a Robust CI/CD Pipeline for AI-Powered Cloud Applications
DOI:
https://doi.org/10.32996/jcsts.2025.7.3.25Keywords:
CI/CD Pipeline Architecture, AI Model Deployment, Cloud Infrastructure Automation, MLOps Optimization, Pipeline Security IntegrationAbstract
The deployment of AI applications in cloud environments presents unique challenges that traditional CI/CD pipelines fail to address, particularly in model versioning, data quality management, and system integration. This paper presents a comprehensive framework for building AI-specific CI/CD pipelines that effectively bridge these gaps. Through empirical analysis of successful implementations, we demonstrate how specialized pipeline architectures incorporating automated testing, intelligent resource allocation, and continuous monitoring can reduce deployment incidents by 37% while improving model reliability by 42%. Our findings show that organizations adopting these practices achieve 65% higher success rates in production deployments and reduce operational overhead by 41%. The proposed approach provides a practical roadmap for organizations seeking to streamline their AI deployment processes while maintaining robust security and performance standards.