DevOps practices have been widely studied since 2009, nonetheless automated generation of Continuous Integration and Continuous Delivery (CI/CD) pipelines from high-level software architecture models remain underexplored. This paper addresses that gap through Model-Driven DevOps with AI (MDDOAI), a model-to-code approach that automates pipeline synthesis from architectural intent and enriches the output with context engineering method. The solution combines ATL based model transformations with Acceleo-driven code generation to produce deployable CI/CD configurations. For Quality Evaluation the approach includes runtime as validation and unsupervised code regeneration to ensure LLM produced pipelines meet functional requirements. A working prototype demonstrates the feasibility of scalable, model-driven pipeline automation, improving maintainability in modern DevOps environments.

错误:搜索内容不能为空,请输入英文关键词
错误:关键词超出字数限制,请精简
高级检索

Development of a Model-Driven DevOps Solution Based on Context-Engineered LLM Code Generation: PROFES Doctoral Symposium

  • Uldis Karlovs-Karlovskis

摘要

DevOps practices have been widely studied since 2009, nonetheless automated generation of Continuous Integration and Continuous Delivery (CI/CD) pipelines from high-level software architecture models remain underexplored. This paper addresses that gap through Model-Driven DevOps with AI (MDDOAI), a model-to-code approach that automates pipeline synthesis from architectural intent and enriches the output with context engineering method. The solution combines ATL based model transformations with Acceleo-driven code generation to produce deployable CI/CD configurations. For Quality Evaluation the approach includes runtime as validation and unsupervised code regeneration to ensure LLM produced pipelines meet functional requirements. A working prototype demonstrates the feasibility of scalable, model-driven pipeline automation, improving maintainability in modern DevOps environments.