The advent of Large Language Models (LLMs) is progressively transforming how complex tasks across various domains can be automated, with a notable potential impact on cloud computing operations. In this domain, LLMs might be used, for example, to configure Kubernetes (K8s) clusters via the generation of manifest files -structured configuration files defining the containerized environment. However, despite the considerable advances in LLMs’ text generation, this task conceals several challenges that prevent operators from achieving a fully automated process. In this paper, we present the current trends in solving these gaps, quantitatively evaluate the accuracy of LLM-based approaches to generate K8s manifests starting from human intents, and discuss open challenges that make benchmarking and automation still complex. Experiments over three open-source LLMs demonstrate how intent-based K8s manifest generation can be effectively achieved through model fine-tuning, but also what open issues remain and must be addressed prior to having an autonomous and self-healing K8s infrastructure managed via Agentic AI.
Intent-Based Kubernetes Configuration via LLMs: Current Trends and Open Challenges / Sacco, Alessio; Zilli, Cristian; Marchetto, Guido. - (2025), pp. 1-7. ( 2025 IEEE 50th Conference on Local Computer Networks (LCN) Sydney, Australia 13-16 October 2025) [10.1109/lcn65610.2025.11146359].
Intent-Based Kubernetes Configuration via LLMs: Current Trends and Open Challenges
Sacco, Alessio;Zilli, Cristian;Marchetto, Guido
2025
Abstract
The advent of Large Language Models (LLMs) is progressively transforming how complex tasks across various domains can be automated, with a notable potential impact on cloud computing operations. In this domain, LLMs might be used, for example, to configure Kubernetes (K8s) clusters via the generation of manifest files -structured configuration files defining the containerized environment. However, despite the considerable advances in LLMs’ text generation, this task conceals several challenges that prevent operators from achieving a fully automated process. In this paper, we present the current trends in solving these gaps, quantitatively evaluate the accuracy of LLM-based approaches to generate K8s manifests starting from human intents, and discuss open challenges that make benchmarking and automation still complex. Experiments over three open-source LLMs demonstrate how intent-based K8s manifest generation can be effectively achieved through model fine-tuning, but also what open issues remain and must be addressed prior to having an autonomous and self-healing K8s infrastructure managed via Agentic AI.| File | Dimensione | Formato | |
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Intent-Based_Kubernetes_Configuration_via_LLMs_Current_Trends_and_Open_Challenges.pdf
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LCN_2025___k8s_with_LLM (1).pdf
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https://hdl.handle.net/11583/3007556
