Towards Enforcing Company Policy Adherence in Agentic Workflows

Zwerdling, Naama, Boaz, David, Rabinovich, Ella, Uziel, Guy, Amid, David, Anaby-Tavor, Ateret

arXiv.org Artificial Intelligence 

Large Language Model (LLM) agents hold promise for a flexible and scalable alternative to traditional business process automation, but struggle to reliably follow complex company policies. In this study we introduce a deterministic, transparent, and modular framework for enforcing business policy adherence in agentic workflows. Our method operates in two phases: (1) an offline buildtime stage that compiles policy documents into verifiable guard code associated with tool use, and (2) a runtime integration where these guards ensure compliance before each agent action. We demonstrate our approach on the challenging $τ$-bench Airlines domain, showing encouraging preliminary results in policy enforcement, and further outline key challenges for real-world deployments.

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