Refine
Year of publication
Document Type
- Master's Thesis (19)
- Part of Periodical (13)
- Bachelor Thesis (10)
- Doctoral Thesis (6)
- Diploma Thesis (4)
Language
- English (52) (remove)
Has Fulltext
- yes (52) (remove)
Keywords
- Internet of Things (4)
- computer clusters (3)
- Beschaffung (2)
- Logistik (2)
- artificial neural networks (2)
- classification (2)
- framework (2)
- parallel algorithms (2)
- social simulation (2)
- Adaptive Services Grid (ASG) (1)
Institute
- Institut für Wirtschafts- und Verwaltungsinformatik (52) (remove)
Remote Working Study 2022
(2022)
The Remote Working Study 2022 is focused on the transition to work from home (WFH) triggered by the stay at home directives of 2020. These directives required employees to work in their private premises wherever possible to reduce the transmission of the coronavirus. The study, conducted by the Center for Enterprise Information Research (CEIR) at the University of Koblenz from December 2021 to January 2022, explores the transition to remote working.
The objective of the survey is to collect baseline information about organisations’ remote work experiences during and immediately following the COVID-19 lockdowns. The survey was completed by the key persons responsible for the implementation and/or management of the digital workplace in 19 German and Swiss organisations.
The data presented in this report was collected from member organisations of the IndustryConnect initiative. IndustryConnect is a university-industry research programme that is coordinated by researchers from the University of Koblenz. It focuses on research in the areas of the digital workplace and enterprise collaboration technologies, and facilitates the generation of new research insights and the exchange of experiences among user companies.
Predictive Process Monitoring is becoming more prevalent as an aid for organizations to support their operational processes. However, most software applications available today require extensive technical know-how by the operator and are therefore not suitable for most real-world scenarios. Therefore, this work presents a prototype implementation of a Predictive Process Monitoring dashboard in the form of a web application. The system is based on the PPM Camunda Plugin presented by Bartmann et al. (2021) and allows users to easily create metrics, visualizations to display these metrics, and dashboards in which visualizations can be arranged. A usability test is with test users of different computer skills is conducted to confirm the application’s user-friendliness.