Hybrid Inspection and Task-Based Access Control in Zero-Trust Agentic AI
Majed El Helou, Benjamin Ryder, Chiara Troiani, Jean Diaconu, Herv\'e Muyal, Marcelo Yannuzzi

TL;DR
This paper introduces CASA, a hybrid runtime enforcement model for zero-trust AI agents that combines deterministic and semantic controls to improve security and task alignment in multi-turn interactions.
Contribution
It proposes a novel hybrid enforcement model with a two-stage semantic inspection for better authorization of AI agent tool calls.
Findings
Demonstrates the effectiveness of TBAC in multi-turn conversations.
Extends the ASTRA dataset with new multi-turn interaction data.
Provides first experimental results for TBAC in complex dialogue scenarios.
Abstract
Authorizing Large Language Model (LLM)-driven agents to dynamically invoke tools and access protected resources introduces significant security risks, and the risks grow dramatically as agents engage in multi-turn conversations and scale toward distributed collaboration. A compromised or malicious agentic application can tamper with tool calls, falsify results, or request permissions beyond the scope of the subject's intended tasks, which could go unnoticed with current delegated authorization flows given their lack of visibility into the original subject's intent. In light of this, we make the following contributions towards Continuous Agent Semantic Authorization (CASA). First, we propose a hybrid runtime enforcement model that combines deterministic and semantic controls enabled by a zero-trust interception layer. Five deterministic controls enforce structural and data-integrity…
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