005 Computerprogrammierung, Programme, Daten
Refine
Departments, institutes and facilities
- Institut für Cyber Security & Privacy (ICSP) (109)
- Institut für Verbraucherinformatik (IVI) (83)
- Fachbereich Informatik (41)
- Fachbereich Wirtschaftswissenschaften (34)
- Institut für Technik, Ressourcenschonung und Energieeffizienz (TREE) (7)
- Fachbereich Ingenieurwissenschaften und Kommunikation (2)
- Graduierteninstitut (1)
- Institut für funktionale Gen-Analytik (IFGA) (1)
- Institute of Visual Computing (IVC) (1)
- Zentrum für Ethik und Verantwortung (ZEV) (1)
Document Type
- Conference Object (149)
- Article (52)
- Part of a Book (6)
- Book (monograph, edited volume) (3)
- Research Data (2)
- Doctoral Thesis (2)
- Working Paper (2)
- Contribution to a Periodical (1)
- Master's Thesis (1)
- Preprint (1)
Year of publication
Language
- English (220) (remove)
Keywords
- GDPR (8)
- Usable Security (7)
- HTTP (5)
- security (5)
- usable privacy (5)
- Big Data Analysis (4)
- Cloud (4)
- Global Software Engineering (4)
- Privacy (4)
- REST (4)
Data emerged as a central success factor for companies to benefit from digitization. However, the skills in successfully creating value from data – especially at the management level – are not always profound. To address this problem, several canvas models have already been designed. Canvas models are usually created to write down an idea in a structured way to promote transparency and traceability. However, some existing data science canvas models mainly address developers and are thus unsuitable for decision-makers and communication within interdisciplinary teams. Based on a literature review, we identified influencing factors that are essential for the success of data science projects. With the information gained, the Data Science Canvas was developed in an expert workshop and finally evaluated by practitioners to find out whether such an instrument could support data-driven value creation.
Due to ongoing digitalization, more and more cloud services are finding their way into companies. In this context, data integration from the various software solutions, which are provided both on-premise (local use or licensing for local use of software) and as a service, is of great importance. In this regard, Integration Platform as a Service (IPaaS) models aim to support companies as well as software providers in the context of data integration by providing connectors to enable data flow between different applications and systems and other integration services. Since previous research has mostly focused on technical or legal aspects of IPaaS, this article focuses on deriving integration practices and design-related barriers and drivers regarding the adoption of IPaaS. Therefore, we conducted 10 interviews with experts from different software as a services vendors. Our results show that the main factors regarding the adoption of IPaaS are the standardization of data models, the usability and variety of connectors provided, and the issues regarding data privacy, security, and transparency.