ERCIS@ECIS 2024

If your institution was not listed above, please state it here. Please be aware that we only invite our network partners (research institutions, advisory board members). If you are unsure if you are a member of any ERCIS partner institution, check this link: https://www.ercis.org/about-us
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Institute of Medical Informatics

ERCIS Headquarters

Research with medical data is our profession. We support patient care and make an important contribution to improving diagnosis, therapy and prevention of diseases in theoretical and clinical research projects. We offer advice and cooperation for our clinics.

Research fields are:

University of Tuscia

ERCIS Headquarters

The University of Tuscia is located in Viterbo, Lazio Region, center of Italy. It is a small sized university with about 8,000 students enrolled in its courses and about 600 staff member equally divided between academic and administrative and technical personnel. The Department of Economics, Engineering, Society and Business Organization (DEIm) was established in 2011 and it is nowadays the principal unit of the University for the disciplinary areas of Economics, Engineering, and Political Sciences.

 

Nomination ERCIS DC 2022

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Data-Flow Analysis of BPMN-Based Process-Driven Applications: Detecting Anomalies across Model and Code

Process-Driven Applications (PDA) combine Business Process Management and less-code approaches. They are typically based on executable process models, human tasks, and adapter code to external software services. Process data is shared across these artifacts, managed by a process engine. Therefore process engineers and programmers must ensure the correct data flow within these components, but also in between. However, previous approaches have only considered the data-flow analysis of those components separately.

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