Workshop: Research Data Management
Learn how to ensure reproducibility and transparency of your research project by applying basic practices and tools of research data management.
- https://www.uni-giessen.de/de/fbz/ggn/events/workshops/rdm24
- Workshop: Research Data Management
- 2024-02-27T10:00:00+01:00
- 2024-02-27T15:00:00+01:00
- Learn how to ensure reproducibility and transparency of your research project by applying basic practices and tools of research data management.
27.02.2024 von 10:00 bis 15:00 (Europe/Berlin / UTC100)
iFZ (Heinrich-Buff-Ring 26), Raum B303
Überblick
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Kursbeschreibung
Open and reproducible science entails the use of open software, provenance tracking of the project, quality assurance of code, and proper research data management (RDM). Practices like p-hacking, harking, and the publication bias are diminishing the power of science. Fortunately, efforts over recent years toward establishing open and reproducible science are getting more and more attention. One crucial part of this is to provide researchers education on RDM.
Goal: After this workshop, participants will have an understanding of how to ensure reproducibility and transparency of their research project by applying basic practices and tools of RDM.
Contents:
- General introduction to RDM
- Research Data Management Plans
- Pre-registration
- Project- & Data Organization: Folder Structure, File Naming, Versioning
- Metadata standards
- Data Storage and Collaboration
- Data Sharing
Method: Contents will be taught by both, presentations and exercises. Exercises will mainly concern work on the Open Science Framework (OSF; https://osf.io/).
Pre-requisites: Participants will need a laptop with internet connection as well as an account on the Open Science Framework (OSF; https://osf.io/).
The Trainer
Julia works as a Data Steward in the SFB135 „Cardinal Mechanisms of Perception". Her responsibilities are to consult researchers on RDM questions specific to their own project and give trainings for all kind of data related topics such as version control and data management tools, clean and re-usable code development, open code software such as python, data storage and sharing. She is involved in developing the “Data Hub” at the University Marburg, which offers computing and storage environments for researchers.