ArXiv TLDR

Large Language Models to Enhance Business Process Modeling: Past, Present, and Future Trends

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2604.14034

João Bettencourt, Sérgio Guerreiro

cs.SEcs.AIcs.IR

TLDR

This review explores how Large Language Models are transforming business process modeling, analyzing current methods, challenges, and future trends.

Key contributions

  • Reviews AI-driven methods for converting natural language to BPMN, focusing on LLMs.
  • Identifies a shift from rule-based to LLM-based architectures using prompt engineering.
  • Highlights challenges: semantic correctness, evaluation fragmentation, and real-world validation.
  • Proposes future directions: RAG integration, interactive modeling, and standardized evaluation frameworks.

Why it matters

This paper provides a critical overview of LLMs' role in automating business process modeling, a rapidly evolving field. It helps researchers and practitioners understand current capabilities, limitations, and key areas for future innovation, guiding development towards more robust and practical solutions.

Original Abstract

Recent advances in Generative Artificial Intelligence, particularly Large Language Models (LLMs), have stimulated growing interest in automating or assisting Business Process Modeling tasks using natural language. Several approaches have been proposed to transform textual process descriptions into BPMN and related workflow models. However, the extent to which these approaches effectively support complex process modeling in organizational settings remains unclear. This article presents a literature review of AI-driven methods for transforming natural language into BPMN process models, with a particular focus on the role of LLMs. Following a structured review strategy, relevant studies were identified and analyzed to classify existing approaches, examine how LLMs are integrated into text-to-model pipelines, and investigate the evaluation practices used to assess generated models. The analysis reveals a clear shift from rule-based and traditional NLP pipelines toward LLM-based architectures that rely on prompt engineering, intermediate representations, and iterative refinement mechanisms. While these approaches significantly expand the capabilities of automated process model generation, the literature also exposes persistent challenges related to semantic correctness, evaluation fragmentation, reproducibility, and limited validation in real-world organizational contexts. Based on these findings, this review identifies key research gaps and discusses promising directions for future research, including the integration of contextual knowledge through Retrieval-Augmented Generation (RAG), its integration with LLMs, the development of interactive modeling architectures, and the need for more comprehensive and standardized evaluation frameworks.

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