Welcome
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Introduction to Open Science
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Being FAIR
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Intellectual Property, Licensing and Openness
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A license is a promise not to sue - therefore attach license files
For data use Creative Commons Attribution (CC BY) license
For code use open source licenses such as MIT, BSD, or Apache license
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Introduction to metadata
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Metadata provides contextual information so that other people can understand the data.
Metadata is key for data reuse and complying with FAIR guidelines.
Metadata should be added incrementally through out the project
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Being precise
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(Meta)data in Excel
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Never use formatting to encode information
Include only one piece of information in a cell
It is easier to store data in the correct form than to clean data for reuse
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Record keeping
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Good record keeping ensures transparency and reproducibility.
Record keeping is an integral part of data FAIRification.
Record keeping is key to good data management practices.
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Working with files
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A good file name suggests the file content
Good project organization saves you time
Describe your files organization in PROJECT_STRUCTURE
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Reusable analysis
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Jupyter Notebooks are useful tools to share analysis with non-programmers
One single document can visualise background, results, formulae/code and metadata
One single document helps to make your work more understandable, repeatable and shareable
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Version control
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Templates for consistency
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Public repositories
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Repositories are the main means for sharing research data.
You should use data-type specific repository whenever possible.
Repositories are the key players in data reuse.
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It's all about planning
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Data within a project undergo a set of steps known as the research data life cycle.
Planning can help make your data FAIR.
Data management is a continuous process during a project.
A DMP is the best way to prepare for a new project.
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Putting it all together
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Template
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