Cloud-native data engineering is revolutionizing healthcare analytics by enabling healthcare organizations to harness vast quantities of data from multiple sources to improve patient outcomes and operational efficiency. This article examines how cloud-native architectures on platforms such as AWS, GCP, and Azure facilitate the processing of healthcare data at scale, providing real-time insights that inform clinical decision-making. It explores the integration of advanced technologies, including Apache Spark, Kafka, and serverless computing with healthcare data pipelines, as well as the implementation of machine learning models to predict patient outcomes and optimize resource allocation. The article addresses the critical challenges of regulatory compliance, data governance, and security in healthcare settings, offering practical solutions through cloud-native approaches. Through the examination of real-world implementations, this article demonstrates how cloud-native data engineering is fundamentally transforming healthcare analytics and delivering measurable improvements in patient care.
Keywords: Cloud-Native Architecture, Healthcare Analytics, data pipelines, machine learning, regulatory compliance