gPROFIT: A Tool to Assist the Automatic Extraction of Business Knowledge From Legacy Information Systems
Description
Business digitization is a crucial strategy for business growth in the 21st century. Its bene ts include improving business process automation, customer satisfaction, productivity, decision-making, turnover, and adaptation to market changes. However, digitization is not a trivial task. As a major paradigm and mindset shift, it involves a lot of effort within an organization and therefore requires commitment from employees and managers. This is especially critical in companies whose business processes are mostly reliant on legacy information systems (LIS), which are usually specialized and based on technological architectures that could be considered obsolete. The replacement of these systems by more recent, process-oriented technologies, the building up of employees' know-how and the continued use of outdated documentation are dif cult, expensive tasks that hinder the initiation of continuous improvement processes in companies. This paper proposes techniques for nding and extracting process models from legacy databases. Speci cally, it (i) lays the theoretical foundations of a model-driven framework for systematically extracting business process models (conform to standard BPMN notation) from LIS considering process time perspective, and (ii) proposes a technological tool called gPROFIT, which uses machine learning techniques to support that theoretical framework, facilitate its use in real environments and extract the business knowledge embedded in such legacy systems. The paper also presents proofs-of-concept showing howour proposal has been validated in several legacy systems.
Abstract
Agencia Estatal de Investigación PID2019-105455GB-C31/AEI/ 10.13039/501100011033
Additional details
- URL
- https://idus.us.es/handle//11441/127201
- URN
- urn:oai:idus.us.es:11441/127201
- Origin repository
- USE