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Data Management

Resources to help you manage, store, and share your data.

Best Practices for Data Management

The following practices are best utilized in a formal data management plan – a document that contains the basics of how you will acquire, manage, describe, analyze, and store your data, and what mechanisms you will use at the end of your project to share and preserve that data.

 

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  • Create and document a data backup policy: A backup policy helps manage users’ expectations and provides specific guidance on the “who, what, when, and how” of the data backup and restore process. 
  • Define roles and assign responsibilities for data management: In addition to the primary researcher(s), there might be others involved in the research process that take part in aspects of data management. By clearly defining the roles and responsibilities of the parties involved, data are more likely to be available for use by the primary researchers and anyone re-using the data. Roles and responsibilities should be clearly defined, rather than assumed; this is especially important for collaborative projects that involve many researchers, institutions, and/or groups.
  • Define the data model: A data model documents and organizes data, how it is stored and accessed, and the relationships among different types of data. The model may be abstract or concrete.
  • Identify data sensitivity:
    1. Determine if the data has any confidentiality concerns.

    2. Document data concerns identified and determine overall sensitivity (Low, Moderate, High).

    3. Develop data access and dissemination policies and procedures based on sensitivity of the data and need-to-know.

    4. Develop data protection policies, procedures and mechanisms based on sensitivity of the data.

  • Identify suitable repositories for the data: Shaping the data management plan towards a specific desired repository will increase the likelihood that the data will be accepted into that repository and increase the discoverability of the data within the desired repository.
  • Plan data management early in your project: When you develop hypotheses and the design of sample collection for your new project, you should also plan for data management. Careful planning for data management before you begin your research and throughout the data’s life cycle is essential to improve the data’s usability, and ensure data’s preservation and access both during the project and well into the future.
  • Provide budget information for your data management plan: As a best practice, one must first acknowledge that the process of managing data will incur costs. Researchers should plan to address these costs and the allocation of resources in the early planning phases of the project.

(From DataONE Best Practices)


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