Optimizing AI and Robotics-driven Automation Systems: The Synergy of Data Engineering and Data Science in Scalable Intelligent Automation
Main Article Content
Abstract
The intersection of data engineering and artificial intelligence (AI) has revolutionized modern industries using scalable, efficient, and intelligent automation. AI applications rely on robust data engineering frameworks for data ingestion, processing, and storage to feed high-quality inputs to machine learning algorithms. This paper explores the symbiosis between AI and data engineering in terms of automation, robotics, scalability, and real-time analytics. Data integration, governance, and performance optimization issues are considered, along with AI-driven solutions that streamline data workflows. The paper also addresses emerging technologies like edge computing and quantum processing, and their impact on data engineering. As AI continues to expand, optimization of data-driven architectures will be key for organizations seeking a competitive advantage in a rapidly digitizing world.
Article Details

This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License.