Back-end of Kairos: A Prescriptive Process Monitoring Tool
Date
2023
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
Prescriptive process monitoring is an approach that aims to predict potential failures
and provide recommendations to optimize business processes. It seeks to improve
efficiency and productivity by aiding enterprises in making informed decisions during
process execution. For example, it can be applied to optimize a company’s supply
chain management by predicting delays and suggesting actions based on historical data.
The primary problem that this thesis address is the absence of a comprehensive tool
capable of analyzing data from different sources and offering various types of prescriptive
recommendations. Consequently, the objective of this study is to propose and implement
a software solution that enables the integration of diverse algorithms and plugins in a
seamless manner. The proposed approach includes back-end software that provides APIs
to implement prescriptive process monitoring features. Users can upload event logs to
the tool and receive various prescriptions for ongoing cases, encompassing predictions
of the next activities, scoring the likelihood of adverse outcomes, providing treatment
effects, and allocating resources based on treatment gains. Moreover, the modular
design enhances adaptability and flexibility across various business domains. To evaluate
the effectiveness of the proposed solution, a combination of requirements fulfillment
evaluation and performance evaluation is conducted using datasets from the Business
Process Intelligence Challenge (BPIC). As a result, this thesis contributes to the field
by providing a prescriptive process monitoring tool that can provide multiple types of
prescriptive recommendations.
Description
Keywords
Prescriptive process monitoring, Process mining, Process optimization