Main content

Contributors:

Date created: | Last Updated:

: DOI | ARK

Creating DOI. Please wait...

Create DOI

Category: Uncategorized

Description: Duration: 65 min, for online or face-to-face format. This seminar aims to provide a quick introduction on Research Data Management (RDM), while detailing how scientists can begin to implement RDM practices in their work by writing Data Management Plans (DMP). DMPs should align with relevant policies applicable to the project. These can be, institutional, research funders and publishers - data policies. To start, relevant aspects on RDM are presented to explain how to produce self-describing and reusable data sets. It then explains what a DMP is, why to write it and how to write it. The last and longer part of the seminar develops in an interactive section to give participants the opportunity to think about relevant aspects for handling data by identifying correct statements to formulate a DMP. The slides provide relevant links for further consultation, including the practical guide to the international Alignment of RDM published by Science Europe (2021). This document guides researchers and reviewers through six core requirements of DMPs. Learning Goals: 1. How to produce self-describing and reusable data sets 2. How to start with RDM-practices by writing a data management plan. 3. What is a DMP, why to write it and how to write it. Prerequisites: none

License: CC-By Attribution 4.0 International

Wiki

Add important information, links, or images here to describe your project.

Files

Loading files...

Citation

Tags

Recent Activity

Loading logs...

OSF does not support the use of Internet Explorer. For optimal performance, please switch to another browser.
Accept
This website relies on cookies to help provide a better user experience. By clicking Accept or continuing to use the site, you agree. For more information, see our Privacy Policy and information on cookie use.
Accept
×

Start managing your projects on the OSF today.

Free and easy to use, the Open Science Framework supports the entire research lifecycle: planning, execution, reporting, archiving, and discovery.