Business process improvement with AB testing and reinforcement learning: grounded theory-based industry perspectives


연구 분야: Software Development



학회: Software and Systems Modeling


초록

In order to better facilitate the need for continuous business process improvement, the application of DevOps principles has been proposed. In particular, the AB-BPM methodology applies AB testing—a DevOps practice—and reinforcement learning to increase the speed and quality of business process improvement efforts. In this paper, we provide an industry perspective on this approach, assessing prerequisites, suitability, requirements, risks, and additional aspects of the AB-BPM methodology and supporting tools. Our qualitative study follows the grounded theory research methodology, including 16 semi-structured interviews with BPM practitioners. The main findings indicate: (1) a need for expert control during reinforcement learning-driven experiments in production, (2) the importance of involving the participants and aligning the method culturally with the respective setting, (3) the necessity of an integrated process execution environment, and (4) the long-term potential of the methodology for effective and efficient validation of algorithmically (co-)created business process variants, and their continuous management.


Author Profile
Aaron Friedrich Kurz

SAP Signavio Berlin Germany

Germany
Author Profile
Timotheus Kampik

SAP Signavio Berlin Germany

Germany
Author Profile
Luise Pufahl

School of CIT Technical University of Munich Heilbronn Germany

Germany

📄 논문 정보

발행 연도 2024년
인용수 2
출판 국가 Germany
사이트 Springer
좋아요 수 0

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