This report presents a comprehensive threat analysis and risk quantification framework for autonomous AI agent networks, synthesizing findings from over 70 peer-reviewed sources, industry reports, and historical cybersecurity incidents. The analysis reveals that autonomous AI agent systems face unprecedented security risks combining the propagation velocity of internet worms (8.5-second doubling times) with the sophistication of advanced persistent threats, creating compromise timelines measured in minutes rather than human response capabilities. Key findings include: prompt injection attacks achieving >90% bypass rates against state-of-the-art defenses; time-to-exploit compression from 63 days (2018-2019) to 5 days (2024); demonstrated self-replicating AI worm capabilities (Morris II); and memory poisoning attacks achieving ≥80% success with <0.1% poison rates. The report applies FAIR risk quantification methodology, MITRE ATT&CK/ATLAS frameworks, and attack tree analysis to construct a five-phase threat timeline model for autonomous agent compromise. The analysis concludes that autonomous AI agent network deployments carry risk profiles exceeding early IoT ecosystems and require fundamental security architecture redesign rather than incremental defensive improvements.
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N. D. Spence (Sun,) studied this question.
www.synapsesocial.com/papers/69810013c1c9540dea8131d0 — DOI: https://doi.org/10.5281/zenodo.18449573
N. D. Spence
The Recovery Center
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