The AI Revolution in Healthcare DevOps: What You Need to Know
DOI:
https://doi.org/10.63282/3050-9262.IJAIDSML-V5I4P105Keywords:
AI, healthcare, DevOps, automation, patient care, technology integration, data privacy, predictive analytics, efficiency, decision-making, clinical trials, telemedicine, interdisciplinary teamwork, machine learning, natural language processing, regulatory compliance, patient engagement, emerging technologies, workflow optimization, continuous delivery, software qualityAbstract
Integrating artificial intelligence (AI) into healthcare DevOps represents a transformative shift in how healthcare organizations manage and deliver services. This revolution is fueled by the need for increased efficiency, improved patient outcomes, and the ability to navigate complex regulatory environments. AI technologies streamline workflows, enhance collaboration, and enable real-time decision-making, allowing teams to respond swiftly to changing conditions and patient needs. By automating routine tasks and leveraging predictive analytics, AI empowers healthcare professionals to focus more on patient care rather than administrative burdens. Furthermore, AI-driven insights into patient data facilitate personalized medicine, enhancing treatment plans and improving overall healthcare delivery. However, adopting AI in healthcare DevOps also brings challenges, including the need for robust data governance, skilled personnel who can bridge the gap between IT and clinical expertise, and the imperative to maintain compliance with stringent regulations. As healthcare organizations embark on this journey, they must cultivate a culture of innovation and agility, ensuring that their teams are equipped to harness the full potential of AI. Stakeholders must also engage in ongoing dialogue about ethical considerations, data security, and the impact of AI on the workforce. In this evolving landscape, embracing AI is not just about technology; it's about reshaping the very fabric of healthcare delivery. Organizations that successfully integrate AI into their DevOps practices will be better positioned to meet the demands of a rapidly changing environment, ultimately enhancing patient care and operational efficiency. As we look to the future, the convergence of AI and healthcare DevOps stands to redefine industry standards and unlock new possibilities for improving health outcomes across diverse populations
References
[1] Battina, D. S. (2021). Ai and devops in information technology and its future in the United States. INTERNATIONAL JOURNAL OF CREATIVE RESEARCH THOUGHTS (IJCRT), ISSN, 2320-2882.
[2] Eriksson, M. (2019). Software engineering using devops-a silver bullet?.
[3] Artico, F., Edge III, A. L., & Langham, K. (2022). The future of artificial intelligence for the BioTech big data landscape. Current Opinion in Biotechnology, 76, 102714.
[4] Mulder, J. (2021). Enterprise DevOps for Architects: Leverage AIOps and DevSecOps for secure digital transformation. Packt Publishing Ltd.
[5] Freeman, E. (2019). DevOps for dummies. John Wiley & Sons.
[6] Benefield, R. (2022). Lean DevOps: A Practical Guide to on Demand Service Delivery. Addison-Wesley Professional.
[7] Zhang, J., Budhdeo, S., William, W., Cerrato, P., Shuaib, H., Sood, H., ... & Teo, J. T. (2022). Moving towards vertically integrated artificial intelligence development. NPJ digital medicine, 5(1), 143.
[8] Teixeira, D., Pereira, R., Henriques, T., Silva, M. M. D., Faustino, J., & Silva, M. (2020). A maturity model for DevOps. International Journal of Agile Systems and Management, 13(4), 464-511.
[9] Yu, L., & Guerra, C. (2019). Exploring the disruptive power of adopting DevOps for software development.
[10] Khang, A., Ragimova, N. A., Hajimahmud, V. A., & Alyar, A. V. (2022). Advanced technologies and data management in the smart healthcare system. In AI-Centric Smart City Ecosystems (pp. 261-270). CRC Press.
[11] Barros, R. D. S. (2016). DevOps technologies for tomorrow (Doctoral dissertation).
[12] Sandu, A. K. (2021). DevSecOps: Integrating Security into the DevOps Lifecycle for Enhanced Resilience. Technology & Management Review, 6, 1-19.
[13] Wen, R., & Koehnemann, H. (2022). SAFe® for DevOps Practitioners: Implement robust, secure, and scaled Agile solutions with the Continuous Delivery Pipeline. Packt Publishing Ltd.
[14] Rabah, K. (2018). Convergence of AI, IoT, big data and blockchain: a review. The lake institute Journal, 1(1), 1-18.
[15] Herremans, D. (2021). aiSTROM–A roadmap for developing a successful AI strategy. IEEE Access, 9, 155826-155838










