Vol. 4 No. 1 (2024): Journal of AI-Assisted Scientific Discovery
Articles

Generative AI Agents for Automated Infrastructure Management in DevOps: Reducing Downtime and Enhancing Resource Efficiency in Cloud-Based Applications

Venkata Mohit Tamanampudi
DevOps Automation Engineer, JPMorgan Chase, Wilmington, USA
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Published 07-03-2024

Keywords

  • Generative AI,
  • infrastructure management,
  • DevOps,
  • cloud-based applications

How to Cite

[1]
V. M. Tamanampudi, “Generative AI Agents for Automated Infrastructure Management in DevOps: Reducing Downtime and Enhancing Resource Efficiency in Cloud-Based Applications ”, Journal of AI-Assisted Scientific Discovery, vol. 4, no. 1, pp. 488–532, Mar. 2024, Accessed: Nov. 15, 2024. [Online]. Available: https://scienceacadpress.com/index.php/jaasd/article/view/182

Abstract

In recent years, the proliferation of cloud-based applications has necessitated a paradigm shift in infrastructure management within DevOps environments. The increasing complexity of cloud infrastructures, combined with the demand for continuous integration and deployment, has underscored the need for innovative solutions that can ensure system reliability while optimizing resource utilization. This study investigates the role of generative artificial intelligence (AI) agents in automating infrastructure management processes in DevOps, specifically targeting the reduction of downtime, the enhancement of resource efficiency, and the overall improvement of system reliability.

Generative AI agents possess the capacity to learn from vast datasets, enabling them to model complex interactions within cloud-based environments effectively. By leveraging advanced machine learning techniques, these agents can analyze historical performance data, identify potential bottlenecks, and proactively mitigate issues before they escalate into critical failures. The deployment of generative AI in infrastructure management can lead to a significant reduction in operational downtime, thus improving the availability and reliability of cloud services. This paper elucidates the methodologies employed by generative AI agents to facilitate predictive maintenance, automated scaling, and intelligent resource allocation.

The research draws upon empirical evidence and case studies from leading organizations that have successfully integrated generative AI into their DevOps practices. By examining real-world implementations, we highlight the practical applications of these technologies in streamlining infrastructure management processes, minimizing human intervention, and promoting a culture of continuous improvement. Furthermore, the paper discusses the implications of generative AI on team dynamics and organizational culture, addressing potential challenges such as resistance to change and the necessity for upskilling personnel to work effectively alongside AI-driven tools.

Key challenges in the adoption of generative AI agents for infrastructure management are also explored, including data privacy concerns, the need for robust governance frameworks, and the importance of establishing trust in AI-driven decisions. The study emphasizes the critical need for organizations to develop comprehensive strategies that encompass both technological advancements and human factors to fully realize the benefits of generative AI.

Additionally, the paper presents an in-depth analysis of the architectural considerations for integrating generative AI agents into existing DevOps frameworks. This includes discussions on the deployment of AI models, the role of APIs in facilitating communication between various components, and the importance of monitoring and evaluation systems to ensure optimal performance. The findings indicate that organizations adopting generative AI can achieve not only enhanced operational efficiency but also a competitive edge in the rapidly evolving cloud landscape.

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