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ARCeR: an Agentic RAG for the Automated Definition of Cyber Ranges

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arxiv 2504.12143 v1 pith:TKI54EJQ submitted 2025-04-16 cs.CR cs.AI

ARCeR: an Agentic RAG for the Automated Definition of Cyber Ranges

classification cs.CR cs.AI
keywords arcerablecyberagenticenvironmentsrangesabilitiesallow
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The growing and evolving landscape of cybersecurity threats necessitates the development of supporting tools and platforms that allow for the creation of realistic IT environments operating within virtual, controlled settings as Cyber Ranges (CRs). CRs can be exploited for analyzing vulnerabilities and experimenting with the effectiveness of devised countermeasures, as well as serving as training environments for building cyber security skills and abilities for IT operators. This paper proposes ARCeR as an innovative solution for the automatic generation and deployment of CRs, starting from user-provided descriptions in a natural language. ARCeR relies on the Agentic RAG paradigm, which allows it to fully exploit state-of-art AI technologies. Experimental results show that ARCeR is able to successfully process prompts even in cases that LLMs or basic RAG systems are not able to cope with. Furthermore, ARCeR is able to target any CR framework provided that specific knowledge is made available to it.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Dynamic Cyber Ranges

    cs.CR 2026-04 unverdicted novelty 7.0

    Dynamic Cyber Ranges with LLM defender agents reduce attacker success to 0-55% and preserve evaluation headroom as models advance by using comparable capabilities on both sides.