Difference between revisions of "Template:Article of the week"
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<div style="float: left; margin: 0.5em 0.9em 0.4em 0em;">[[File:  | <div style="float: left; margin: 0.5em 0.9em 0.4em 0em;">[[File:Fig1 Irawan ResIdeasOut2018 4.png|240px]]</div>  | ||
'''"[[Journal:  | '''"[[Journal:Promoting data sharing among Indonesian scientists: A proposal of a generic university-level research data management plan (RDMP)|Promoting data sharing among Indonesian scientists: A proposal of a generic university-level research data management plan (RDMP)]]"'''  | ||
Every researcher needs data in their working ecosystem, but despite the resources (funding, time, and energy) they have spent to get the data, only a few are putting more real attention into [[Information management|data management]]. This paper mainly describes our recommendation of a research data management plan (RDMP) at the university level. This paper is an extension of our initiative, to be developed at the university or national level, while also in-line with current developments in scientific practices mandating data sharing and data re-use. Researchers can use this article as an assessment form to describe the setting of their research and data management. Researchers can also develop a more detailed RDMP to cater to a specific project's environment. ('''[[Journal:Promoting data sharing among Indonesian scientists: A proposal of a generic university-level research data management plan (RDMP)|Full article...]]''')<br />  | |||
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''Recently featured'':  | ''Recently featured'':  | ||
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Revision as of 18:12, 1 November 2018
Every researcher needs data in their working ecosystem, but despite the resources (funding, time, and energy) they have spent to get the data, only a few are putting more real attention into data management. This paper mainly describes our recommendation of a research data management plan (RDMP) at the university level. This paper is an extension of our initiative, to be developed at the university or national level, while also in-line with current developments in scientific practices mandating data sharing and data re-use. Researchers can use this article as an assessment form to describe the setting of their research and data management. Researchers can also develop a more detailed RDMP to cater to a specific project's environment. (Full article...)
Recently featured:
- ▪ systemPipeR: NGS workflow and report generation environment
 - ▪ A data quality strategy to enable FAIR, programmatic access across large, diverse data collections for high performance data analysis
 - ▪ How big data, comparative effectiveness research, and rapid-learning health care systems can transform patient care in radiation oncology
 








