A new five-agent architecture automates end-to-end machine learning pipelines from natural-language goals. The system uses code-grounded RAG and a self-healing mechanism to interpret errors and adapt from execution history. Tested on 150 tasks, it replaces manual DAG construction with autonomous microservice recommendation. This reduces the manual overhead for deploying complex ML workflows.