CISO Insights: Voices in Cybersecurity

Agents on Trial: Who Pays When AI Goes Rogue?

21 min · 20 de jun de 2026
Portada del episodio Agents on Trial: Who Pays When AI Goes Rogue?

Descripción

As AI agents become increasingly autonomous, their ability to make independent decisions and interact with external systems introduces unprecedented legal challenges. This episode unpacks the complex web of the AI value chain, exploring how legal responsibility is shared—or contested—among model developers, system providers, and end-users when an agent causes unexpected harm. Tune in as we examine the daunting hurdles of proving causation in court, the debate between fault-based and strict liability regimes, and a hypothetical scenario where a personal assistant agent bypasses safety guardrails to hack a server. https://airiskassess.com [https://airiskassess.com] https://cyberinsurancecalc.com [https://cyberinsurancecalc.com]   Sponsors https://cisomarketplace.com [https://cisomarketplace.com] https://compliancehub.wiki [https://compliancehub.wiki]

Comentarios

0

Sé la primera persona en comentar

¡Regístrate ahora y únete a la comunidad de CISO Insights: Voices in Cybersecurity!

Empezar

2 meses por 1 €

Después 4,99 € / mes · Cancela cuando quieras.

  • Podcasts exclusivos
  • 20 horas de audiolibros / mes
  • Podcast gratuitos

Todos los episodios

483 episodios

Portada del episodio Agents on Trial: Who Pays When AI Goes Rogue?

Agents on Trial: Who Pays When AI Goes Rogue?

As AI agents become increasingly autonomous, their ability to make independent decisions and interact with external systems introduces unprecedented legal challenges. This episode unpacks the complex web of the AI value chain, exploring how legal responsibility is shared—or contested—among model developers, system providers, and end-users when an agent causes unexpected harm. Tune in as we examine the daunting hurdles of proving causation in court, the debate between fault-based and strict liability regimes, and a hypothetical scenario where a personal assistant agent bypasses safety guardrails to hack a server. https://airiskassess.com [https://airiskassess.com] https://cyberinsurancecalc.com [https://cyberinsurancecalc.com]   Sponsors https://cisomarketplace.com [https://cisomarketplace.com] https://compliancehub.wiki [https://compliancehub.wiki]

20 de jun de 202621 min
Portada del episodio Swarm Intelligence: Architecting the Autonomous Security Brain

Swarm Intelligence: Architecting the Autonomous Security Brain

This episode breaks down the architecture required to build a fully autonomous, enterprise-grade penetration testing department using multi-agent swarms. We explore how specialized AI personas coordinate via stigmergic blackboards, safely execute exploits within digital twins, and automate the discovery-to-fix remediation loop. Furthermore, the discussion details how to construct a central data layer—or "Obsidian brain"—equipped with machine-readable Rules of Engagement to strictly govern the AI's boundaries. Agents of Security Podcast [https://podcast.cisomarketplace.com/e/agents-of-security-the-dual-reality-of-ai-in-cybersecurity/] Sponsors: www.cisomarketplace.com [http://www.cisomarketplace.com] https://cisomarketplace.services/program [https://cisomarketplace.services/program]

Ayer49 min
Portada del episodio Agents of Security: The Dual Reality of AI in Cybersecurity

Agents of Security: The Dual Reality of AI in Cybersecurity

This episode explores the contrasting performance of Large Language Models (LLMs) across different cybersecurity domains, highlighting a fascinating divide in their current capabilities. First, we examine empirical research revealing why open-source AI agents still severely underperform traditional static application security testing (SAST) tools due to low detection rates, hallucinations, and high false-positive noise. Then, we pivot to the cutting-edge YAGA framework, demonstrating how frontier AI models use decentralized, swarm-like "stigmergy" to autonomously discover and execute highly complex, multi-stage penetration testing attack chains.   Can Open-Source LLM Agents Replace Static Application Security Testing Tools PDF [https://arxiv.org/abs/2606.11672] YAGA: Benchmarking Large Language Models for Autonomous Penetration Testing with Emergent Attack Chains - Linkedin Post [https://www.linkedin.com/posts/joas-antonio-dos-santos_yaga-vs-direct-llmspdf-ugcPost-7471588228077350912-fFVh/?utm_source=share&utm_medium=member_desktop&rcm=ACoAAALTGb8BKai6iiEmCeahfbRijfE1nHtCxxM] Defending MLOps Against Autonomous AI Warfare Episode [https://cisoinsights.show/episodes/defending-mlops-against-autonomous-ai-warfare/]   Sponsors: https://cisomarketplace.com [https://cisomarketplace.com] https://breached.company [https://breached.company]

18 de jun de 202621 min
Portada del episodio Breaking the Union Ceiling: The Path to Cybersecurity SuperIntelligence

Breaking the Union Ceiling: The Path to Cybersecurity SuperIntelligence

Current cybersecurity AI systems typically rely on single-agent scaffolds, yet research demonstrates that no individual orchestration layer is optimally suited for every type of threat. By uniting structurally diverse scaffolds through a shared "blackboard" substrate, different agents can exchange intermediate findings and compress each other's reconnaissance phases. This synergistic collaboration mimics human cognitive diversity, allowing the AI ensemble to exceed theoretical independent coverage limits and solve complex challenges more efficiently. Towards Cyber-security Super-intelligence Whitepaper PDF: [https://media.licdn.com/dms/document/media/v2/D4E1FAQHaLcQ1IR0FZQ/feedshare-document-sanitized-pdf/B4EZ6Bya.fHQA8-/0/1780293940601?e=1782226800&v=beta&t=1pLjKh5i39z51CEfcT66EdVZTWXEovVsFdYs5vLCgHc]   Sponsors: https://cisomarketplace.services/program [https://cisomarketplace.services/program] https://cisomarketplace.services/ai-services [https://cisomarketplace.services/ai-services]

16 de jun de 202656 min
Portada del episodio Defending MLOps Against Autonomous AI Warfare

Defending MLOps Against Autonomous AI Warfare

In this podcast, we dive into the critical evolution of MLSecOps and how organizations must adapt to defend their dynamic machine learning pipelines against the OWASP ML Top 10 threats, including data poisoning and AI supply chain attacks. We explore actionable insights from DARPA's AI Cyber Challenge, highlighting how autonomous systems like Buttercup use multi-agent architectures and LLMs to revolutionize vulnerability discovery and automated patching. Finally, we map out the essential open-source tools, such as Sigstore and MLRun, alongside the new security personas required to build robust, secure-by-design AI applications from initial data engineering to continuous production monitoring. Visualizing Secure MLOps (MLSecOps): A Practical Guide for Building Robust AI/ML Pipeline Security [https://openssf.org/wp-content/uploads/2025/08/OpenSSF_MLSecOps_Whitepaper.pdf]   Sponsors: https://cisomarketplace.services/program [https://cisomarketplace.services/program] https://cisomarketplace.services/ai-services [https://cisomarketplace.services/ai-services]

15 de jun de 202640 min