AI-Driven Governance for DevOps Compliance
DOI:
https://doi.org/10.32628/IJSRSET221654Keywords:
AI-driven governance, DevOps, Compliance automation, Risk assessment, Real-time monitoring, Policy enforcementAbstract
This particular form of research, specialism DevOps compliance governance, aims to explore how AI is used to complement it. It also shows how AI can fully automate compliance checks, intelligent risk assessments, round-the-clock security monitoring, policies, and policy compliance and automatically prepare the necessary documentation. In AI, human error is eliminated, compliance workflows are accelerated, and constant compliance can be sustained in diverse DevOps settings. The study shows that, with AI implementation, the compliance teams can achieve both dogma and security while allowing the development teams to preserve speed. Finally, AI harnessing in DevOps makes the ways of the respective governance smoother, more accurate, and more reliable for organizations understanding and managing challenging regulatory processes.
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