AI Meets DevOps in Healthcare: Transforming How We Operate
DOI:
https://doi.org/10.63282/3050-9262.IJAIDSML-V4I3P102Keywords:
AI in healthcare, DevOps in healthcare, healthcare IT, healthcare automation, predictive analytics in healthcare, AI-DevOps integration, healthcare data management, AI-driven diagnostics, operational efficiency in healthcare, continuous integration in healthcare, healthcare cybersecurity, machine learning in healthcare, telemedicine, healthcare digital transformation, healthcare workflow automation, healthcare infrastructure, healthcare predictive models, patient care technology, healthcare compliance, DevSecOps in healthcare, cloud-native healthcare systems, healthcare system optimizationAbstract
The convergence of AI and DevOps is reshaping the healthcare landscape, transforming how operations are managed and care is delivered. With an increasing need for speed, accuracy, and efficiency in medical services, AI-driven DevOps offers a unique synergy that enhances system automation, optimizes workflows, and ensures better collaboration across teams. By integrating AI into the DevOps pipeline, healthcare organizations can automate routine tasks, streamline application development, and improve monitoring and diagnostics. This combination empowers IT teams to deploy updates faster, reduce human error, and ensure more reliable healthcare systems. Moreover, AI's predictive capabilities assist in identifying potential system failures or performance bottlenecks before they impact patient care, leading to improved service delivery. In clinical settings, AI applications supported by DevOps practices enable real-time data processing, providing healthcare professionals with actionable insights, faster decision-making, and enhanced patient outcomes. This integration also helps manage vast amounts of medical data efficiently, ensuring secure and compliant handling of sensitive information. As a result, healthcare systems are becoming more agile, resilient, and responsive to patient and operational demands. The fusion of AI and DevOps in healthcare drives a cultural shift toward continuous improvement and innovation, ensuring that healthcare providers can keep pace with the rapid advancements in medical technology while maintaining the highest standards of care and safety. This transformation can revolutionize healthcare operations, creating more efficient, reliable, and intelligent systems that benefit patients and healthcare professionals alike
References
[1] Maturi, M. H., Meduri, S. S., Gonaygunta, H., & Nadella, G. S. (2020). A systematic literature review: the recent advancements in ai emerging technologies and agile DevOps. International Meridian Journal, 2(2), 1-23.
[2] Mulder, J. (2021). Enterprise DevOps for Architects: Leverage AIOps and DevSecOps for secure digital transformation. Packet Publishing Ltd.
[3] MacVittie, L. (2018). Department of Information Technology ABSTRACT DevOps is a transformative approach that integrates development and operations to enhance the software development lifecycle. By emphasizing a cultural shift towards collaboration, automation, continuous integration, and delivery, DevOps aims to improve deployment frequency, reduce failure rates, and foster a more efficient, reliable, and secure.
[4] Halper, F. (2019). Driving Digital Transformation Using AI and Machine Learning. Renton: TDWI.
[5] Muravev, M. (2020). The Evolution of DevOps: From Siloed Teams to Cross-Functional Collaboration in Modern Software Development Lifecycles. International Journal of Advanced Engineering Technologies and Innovations, 1(4), 1-17.
[6] Farooqui, S. M. (2018). Enterprise DevOps Framework: Transforming IT Operations. Apress.
[7] Eriksson, M. (2019). Software engineering using devops-a silver bullet?.
[8] Terho, T. (2018). Artificial intelligence transformation and implementation frameworks (Master's thesis).
[9] Klaffenbach, F., Michalski, O., Klein, M., Wali, M., Tanasseri, N., & Rai, R. (2019). Implementing Azure: Putting Modern DevOps to Use: Transform Your Software Deployment Process with Microsoft Azure. Packet Publishing Ltd.
[10] Labrador, I., Ramos, A., & Pasic, A. (2018). Next Generation Platform-as-a-Service (NGPaaS) From DevOps to Dev-for-Operations. Atos White Paper.
[11] Betz, C. (2016). Implications of digital transformation, Agile, and DevOps for IT curricula and pedagogy.
[12] Barros, R. D. S. (2016). DevOps technologies for tomorrow (Doctoral dissertation).
[13] Faustino, J. P. C. (2018). DevOps practices in incident management process (Master's thesis).
[14] Fresco, M. (2021). DevOps: development of a toolchain in the banking domain (Doctoral dissertation, Politecnico di Torino).
[15] Yarlagadda, R. T. (2017). Implementation of DevOps in healthcare systems. Implementation of DevOps in Healthcare Systems', International Journal of Emerging Technologies and Innovative Research (www. jetir. org), ISSN, 2349-5162