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Home/Authors/Jrgen Cito

Jrgen Cito

3 indexed papers

Recent (6 mo)
3
With code
0
Influential cites
0
Benchmarked
0

Publications per year

3
26

Top categories

Crypto×3AI×3Software Eng.×1

Frequent co-authors

Andreas Happe3×
Jürgen Cito3×
Benjamin Probst1×
Philipp Normann1×
Daniel Arp1×

Research Timeline

2026
Post-Training Local LLM Agents for Linux Privilege Escalation with Verifiable Rewards

The paper proposes a two-stage post-training pipeline to create a small, local LLM agent (PrivEsc-LLM) capable of performing Linux privilege escalation, achieving high success rates while drastically reducing inference costs.

Enhancing Linux Privilege Escalation Attack Capabilities of Local LLM Agents

This paper demonstrates that by applying systematic prompting and retrieval techniques, local open-weight LLMs can significantly enhance their capabilities to autonomously perform Linux privilege escalation, matching or exceeding the performance of cloud-based models.

Cochise: A Reference Harness for Autonomous Penetration Testing

The paper introduces Cochise, a minimal, reusable Python reference harness designed to standardize and simplify autonomous penetration testing experiments for comparing different LLM-driven agent architectures.

Highlighted terms show continued research focus across papers

Papers

cs.CRcs.AIcs.SERecentMay 12, 2026

Cochise: A Reference Harness for Autonomous Penetration Testing

Andreas Happe, Jürgen Cito

The paper introduces Cochise, a minimal, reusable Python reference harness designed to standardize and simplify autonomous penetration testing experiments for comparing different LLM-driven agent arch…

View →
cs.CRcs.AIRecentApr 29, 2026

Enhancing Linux Privilege Escalation Attack Capabilities of Local LLM Agents

Benjamin Probst, Andreas Happe, Jürgen Cito

This paper demonstrates that by applying systematic prompting and retrieval techniques, local open-weight LLMs can significantly enhance their capabilities to autonomously perform Linux privilege esca…

View →
cs.CRcs.AIRecentMar 18, 2026

Post-Training Local LLM Agents for Linux Privilege Escalation with Verifiable Rewards

Philipp Normann, Andreas Happe, Jürgen Cito, Daniel Arp

The paper proposes a two-stage post-training pipeline to create a small, local LLM agent (PrivEsc-LLM) capable of performing Linux privilege escalation, achieving high success rates while drastically…

View →