Roughly 1% of real resumes contain hidden prompt injections against LLM screeners, prevalence has risen over 1-2 years, and over 90% avoid explicit instructions.
Pandya, Andrey Labunets, Sicun Gao, and Earlence Fernandes
3 Pith papers cite this work. Polarity classification is still indexing.
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2026 3verdicts
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MATRA adapts established risk assessment into a framework using impact assessment and attack trees to quantify how architectural controls reduce risks from LLM threats in agentic AI deployments like OpenClaw.
The paper argues that agent security is best addressed as a systems problem by applying principles from operating systems, networks, and formal methods rather than relying solely on model robustness improvements.
citing papers explorer
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Measuring Real-World Prompt Injection Attacks in LLM-based Resume Screening
Roughly 1% of real resumes contain hidden prompt injections against LLM screeners, prevalence has risen over 1-2 years, and over 90% avoid explicit instructions.
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MATRA: Modeling the Attack Surface of Agentic AI Systems -- OpenClaw Case Study
MATRA adapts established risk assessment into a framework using impact assessment and attack trees to quantify how architectural controls reduce risks from LLM threats in agentic AI deployments like OpenClaw.
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Agent Security is a Systems Problem
The paper argues that agent security is best addressed as a systems problem by applying principles from operating systems, networks, and formal methods rather than relying solely on model robustness improvements.