TY - JOUR
T1 - Large Process Models
T2 - A Vision for Business Process Management in the Age of Generative AI
AU - Kampik, Timotheus
AU - Warmuth, Christian
AU - Rebmann, Adrian
AU - Agam, Ron
AU - Egger, Lukas N.P.
AU - Gerber, Andreas
AU - Hoffart, Johannes
AU - Kolk, Jonas
AU - Herzig, Philipp
AU - Decker, Gero
AU - van der Aa, Han
AU - Polyvyanyy, Artem
AU - Rinderle-Ma, Stefanie
AU - Weber, Ingo
AU - Weidlich, Matthias
N1 - Publisher Copyright:
© The Author(s) 2024.
PY - 2024
Y1 - 2024
N2 - The continued success of Large Language Models (LLMs) and other generative artificial intelligence approaches highlights the advantages that large information corpora can have over rigidly defined symbolic models, but also serves as a proof-point of the challenges that purely statistics-based approaches have in terms of safety and trustworthiness. As a framework for contextualizing the potential, as well as the limitations of LLMs and other foundation model-based technologies, we propose the concept of a Large Process Model (LPM) that combines the correlation power of LLMs with the analytical precision and reliability of knowledge-based systems and automated reasoning approaches. LPMs are envisioned to directly utilize the wealth of process management experience that experts have accumulated, as well as process performance data of organizations with diverse characteristics, e.g., regarding size, region, or industry. In this vision, the proposed LPM would enable organizations to receive context-specific (tailored) process and other business models, analytical deep-dives, and improvement recommendations. As such, it would allow to substantially decrease the time and effort required for business transformation, while also allowing for deeper, more impactful, and more actionable insights than previously possible. We argue that implementing an LPM is feasible, but also highlight limitations and research challenges that need to be solved to implement particular aspects of the LPM vision.
AB - The continued success of Large Language Models (LLMs) and other generative artificial intelligence approaches highlights the advantages that large information corpora can have over rigidly defined symbolic models, but also serves as a proof-point of the challenges that purely statistics-based approaches have in terms of safety and trustworthiness. As a framework for contextualizing the potential, as well as the limitations of LLMs and other foundation model-based technologies, we propose the concept of a Large Process Model (LPM) that combines the correlation power of LLMs with the analytical precision and reliability of knowledge-based systems and automated reasoning approaches. LPMs are envisioned to directly utilize the wealth of process management experience that experts have accumulated, as well as process performance data of organizations with diverse characteristics, e.g., regarding size, region, or industry. In this vision, the proposed LPM would enable organizations to receive context-specific (tailored) process and other business models, analytical deep-dives, and improvement recommendations. As such, it would allow to substantially decrease the time and effort required for business transformation, while also allowing for deeper, more impactful, and more actionable insights than previously possible. We argue that implementing an LPM is feasible, but also highlight limitations and research challenges that need to be solved to implement particular aspects of the LPM vision.
KW - Business process management
KW - Generative artificial intelligence
KW - Large language models
UR - http://www.scopus.com/inward/record.url?scp=85199789505&partnerID=8YFLogxK
U2 - 10.1007/s13218-024-00863-8
DO - 10.1007/s13218-024-00863-8
M3 - Comment/debate
AN - SCOPUS:85199789505
SN - 0933-1875
JO - KI - Kunstliche Intelligenz
JF - KI - Kunstliche Intelligenz
ER -