PMAx: An Agentic Framework for AI-Driven Process Mining
Anton Antonov, Humam Kourani, Alessandro Berti, Gyunam Park, Wil M. P. van der Aalst

TL;DR
PMAx is a privacy-preserving, agent-based framework that enables non-technical users to perform accurate and secure process mining analysis using local computation and natural language interaction.
Contribution
It introduces a multi-agent architecture that separates analysis and interpretation, ensuring data privacy and mathematical accuracy in process mining with LLMs.
Findings
Local script execution ensures data privacy.
Agent collaboration produces comprehensive process reports.
Framework enables non-technical users to perform reliable process mining.
Abstract
Process mining provides powerful insights into organizational workflows, but extracting these insights typically requires expertise in specialized query languages and data science tools. Large Language Models (LLMs) offer the potential to democratize process mining by enabling business users to interact with process data through natural language. However, using LLMs as direct analytical engines over raw event logs introduces fundamental challenges: LLMs struggle with deterministic reasoning and may hallucinate metrics, while sending large, sensitive logs to external AI services raises serious data-privacy concerns. To address these limitations, we present PMAx, an autonomous agentic framework that functions as a virtual process analyst. Rather than relying on LLMs to generate process models or compute analytical results, PMAx employs a privacy-preserving multi-agent architecture. An…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Multi-Agent Systems and Negotiation · Artificial Intelligence in Law
