Data Management Plan Guidance

Introduction

Data management plans (DMPs) are highly contextual to research field, project, and mode of inquiry, but every DMP should include considerations of several key topics – i.e., data collection; documentation and metadata; storage, deposit and preservation; sharing and reuse; responsibilities and resources; and ethics and legal compliance. See page two for guidance on completing each of these sections.  

Typically, an ideal DMP will be complete, precise, and in line with disciplinary best practices. Shortcomings in a DMP will normally stem from lacking one of these features – e.g., it will not discuss data deposit (incomplete), or it will not say where data will be deposited (imprecise), or the chosen repository is poorly suited for the data (not in line with disciplinary best practices). CIHR recognizes that for many research fields, data management practices are in development and disciplinary best practices have not yet been established (e.g., preferred repositories, metadata standards, etc.).

DMPs should describe how data will be FAIR – findable, accessible, interoperable, and reusable. This does not mean that the DMP needs to include a section specifically devoted to making data FAIR. Rather, by completing each section completely, precisely, and in line with disciplinary best practices (where they exist), the DMP will describe how the data will be FAIR. CIHR recognizes that the extent to which data can be FAIR could be constrained by infrastructure limitations (e.g., lack of suitable repositories) and disciplinary practices (e.g., metadata standards have not been established). CIHR also recognizes that 'accessible' data is not synonymous with 'open' data. In many instances, due to ethical, commercial or legal obligations, access to data will need to be controlled; and in some instances, access to data cannot be provided at all. See  CIHR's guidance on how to make data FAIR.

For research conducted by and with First Nations, Inuit and Métis communities, DMPs should be co-developed with these communities, in accordance with research data management principles that they accept, such as the CARE (collective benefit, authority to control, responsibility, and ethics) or OCAP© (ownership, control, access and possession) principles. Where co-development is not possible, the DMP should respect Indigenous data sovereignty, include considerations related to Indigenous research data management, and acknowledge the possibility that the DMP will be revised in line with the community's values and principles.

Data Management Plans – Guidance on Specific Sections

Data Collection

Possible Shortcomings to avoid in this Section:

Documentation and Metadata

Possible Shortcomings to avoid in this Section:

Storage, Deposit and Preservation

Possible Shortcomings to avoid in this Section:

Sharing and Reuse

Possible Shortcomings to avoid in this Section:

Responsibilities and Resources

Possible Shortcomings to avoid in this Section:

Ethics and Legal Compliance

Possible Shortcomings to avoid in this Section:

How to Make Your Data FAIR – 5 Essential Steps

Researchers should follow  international best practices for ensuring that research data are shared in a manner such that they are Findable, Accessible, Interoperable and Reusable, referred to as the FAIR principles. This document provides guidance on how to make research data FAIR.

The FAIR principles do not concern, and this document does not provide guidance on, ethical issues and approaches that must be considered to determine whether and how access should be provided to research data. For information and guidance on ethical issues related to data sharing, please reach out to data librarians and/or research ethics officers at your institution.

For research conducted by and with First Nations, Métis and Inuit communities, any data that are made FAIR should be done so only with the knowledge and consent by the Indigenous community and in accordance with research data management principles the community accepts, such as the CARE (collective benefit, authority to control, responsibility, and ethics) and OCAP© (ownership, control, access and possession) principles.

The box below includes a quick summary on how to make data FAIR in five  steps. For more detailed and technical guidance, consult the FAIR Principles webpage at GOFAIR.

Making Your Data FAIR – 5 Essential Steps

  1. Create or save a version of your data using a commonly understood and non-proprietary file format (e.g., .txt, .csv). If your research field has data standards or expectations on data formats, follow them.
  2. Deposit your data in a domain repository that is recognized in your research field. If no domain repository exists, choose a generalist one (e.g., FRDR, Zenodo, Dryad). The repository should be indexed in leading database aggregators (e.g., OpenAIRE, Google Dataset Search, DataMed).  
  3. The repository should use a metadata standard – follow the metadata standard when completing the metadata record for the dataset. You can use online tools such as the CEDAR Workbench to help you complete the metadata record without mistakes.
  4. Choose an appropriate license for re-use of your data.
  5. The repository should assign a persistent identifier (PID) to the dataset and/or metadata record – for example, a Digital Object Identifier (DOI). When you publish a paper that relies on the data, ensure that the paper has a data availability statement and includes the PID in the statement. 
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