RapidProM: Mine Your Processes and Not Just Your Data
Wil M.P. van der Aalst, Alfredo Bolt, Sebastiaan J. van Zelst

TL;DR
RapidProM integrates process mining with scientific workflows, enabling flexible, reusable analysis of event data to improve operational insights across various domains.
Contribution
It introduces RapidProM, an extension of RapidMiner that combines process mining capabilities with workflow modeling and reuse, bridging a gap in existing tools.
Findings
Supports complex process mining workflows
Enables reuse and combination with other analyses
Facilitates analysis of large, diverse event data
Abstract
The number of events recorded for operational processes is growing every year. This applies to all domains: from health care and e-government to production and maintenance. Event data are a valuable source of information for organizations that need to meet requirements related to compliance, efficiency, and customer service. Process mining helps to turn these data into real value: by discovering the real processes, by automatically identifying bottlenecks, by analyzing deviations and sources of non-compliance, by revealing the actual behavior of people, etc. Process mining is very different from conventional data mining and machine learning techniques. ProM is a powerful open-source process mining tool supporting hundreds of analysis techniques. However, ProM does not support analysis based on scientific workflows. RapidProM, an extension of RapidMiner based on ProM, combines the best…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Data Quality and Management · Semantic Web and Ontologies
