Abstract
In the era of exponential data growth, the efficient migration of data in automotive manufacturing
systems is a critical challenge for enterprises. Traditional approaches are often time-intensive and error-prone. This
paper proposes an intelligent data transition framework leveraging machine learning algorithms to automate, optimize,
and ensure the reliability of data migration processes in automotive manufacturing databases. By integrating supervised
learning and reinforcement learning techniques, the framework identifies optimal migration paths, predicts potential
bottlenecks, and ensures minimal downtime. Experimental results demonstrate significant improvements in data
transfer efficiency and accuracy compared to traditional methods.