Harl M, Zilker S, Weinzierl S (2024)
Publication Language: English
Publication Type: Conference contribution, Conference Contribution
Publication year: 2024
Pages Range: 1-8
Conference Proceedings Title: Proceedings of the 32nd European Conference on Information Systems
Event location: Paphos, Cyprus
In business process management, business process redesign (BPR) aims to improve business processes. In
the past, BPR was mainly a manual task, with little computational power and typically high labor and time
intensity. The increasing amount of stored process data and great advancements in generative machine
learning (GML) and other analytical approaches have paved the way for automated BPR. However,
existing BPR approaches are designed for offline applications and therefore restricted to computing
historical data samples of business processes. In this paper, we argue performing BPR in runtime and
leveraging prediction capabilities via GML achieves a higher degree of BPR automation, allowing
organizations to improve their processes proactively. Accordingly, this research-in-progress paper outlines
a design-science research process for designing a GML-based technique for automated BPR in runtime.
In our preliminary evaluation, we present promising results for the proposed technique’s first online task,
namely process model prediction, based on real-life event data.
APA:
Harl, M., Zilker, S., & Weinzierl, S. (2024). Towards automated business process redesign in runtime using generative machine learning. In Proceedings of the 32nd European Conference on Information Systems (pp. 1-8). Paphos, Cyprus, CY.
MLA:
Harl, Maximilian, Sandra Zilker, and Sven Weinzierl. "Towards automated business process redesign in runtime using generative machine learning." Proceedings of the European Conference on Information Systems, Paphos, Cyprus 2024. 1-8.
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