Author(s): <p>Rishitha Kokku* and Shafeeq Ur Rahaman</p>
This paper explores precision healthcare and advanced data management technologies. It focuses on integrating machine learning (ML), DevOps, and DevSecOps to create scalable, secure, and efficient healthcare data pipelines. Precision healthcare uses ML to analyze large datasets. It provides personalized treatment plans and predictive diagnostics, which improve patient outcomes. The huge amount of healthcare data challenges scalability, security, and compliance.
This paper advocates for the use of DevOps in healthcare data pipelines, emphasizing its benefits. DevOps enables the continuous integration and delivery (CI/CD) of machine learning models, ensuring that systems can scale to meet real-time demands. Moreover, DevSecOps, a key component of DevOps, prioritizes security and compliance in the development lifecycle, including adherence to regulations like HIPAA.
This paper underscores the transformative potential of DevOps in healthcare. By highlighting real-world use cases such as personalized cancer treatments and predictive diagnostics for chronic diseases, it demonstrates how these technologies are reshaping patient care. It also examines future trends, such as edge computing and AI-driven automation, as the next steps in enhancing healthcare analytics. Ultimately, the paper advocates for the adoption of DevOps in healthcare, as it not only drives innovation but also ensures the delivery of secure, scalable, and patient-centered care.
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