[Instructions in this document are in between brackets.]
[Dates in this document should use the format YYYY-MM-DD.]
[Scholarly outputs cited in this document should follow a consistent style (e.g. APA style)]
[When you are done filling this template delete all instructions and delete any sections or questions that do not apply to your dataset.]
[All of the items in this template are optional, but fill it as thoroughly as possible to ensure the reusability of your dataset.]
[You may create more than one readme file in your dataset, if appropriate (e.g. one for your tabular data, one for your code)]
[This template was created by Research Data Services at Oregon State University by modifying and expanding the University of Minnesota Libraries readme template that can be found in z.umn.edu/readme]
[Other sources used to elaborate this dataset: Georgia tech metadata template http://d7)library.gatech.edu/research-data/metadata;]
[For questions or guidance about using this template contact researchdataservices@oregonstate.edu]
[This template is published under a CC0 license. You are free to reuse, redistribute and modify this template as you wish.]
This documentation file was generated on [date in YYYY-MM-DD format] by [Name]
1) Title of Dataset
2) Creator Information
[Fill in the names and information about the researchers that are considered authors of this dataset. ]
[ORCID is a persistent digital identifier for researchers. https://orcid.org/ We encourage researchers to get one, but it is optional. You may chose to use a different author identifier if you have one.]
[Role: role of the author in the dataset. Consider using the CreDit taxonomy to describe these roles: 3rd page in https://openscholar.mit.edu/sites/default/files/dept/files/lpub28-2_151-155)pdf ]
Name:
Institution:
College, School or Department:
Address:
Email:
ORCID:
Role:
Name:
Institution:
College, School or Department:
Address:
Email:
ORCID:
Role:
3) Collaborator information [Collaborators are not authors, but have contributed somehow to the dataset.]
Name:
Institution:
College, School or Department:
Address:
Email:
ORCID:
Role:
Name:
Institution:
College, School or Department:
Address:
Email:
ORCID:
Role:
4) Contact Information
[Usually a creator, but may be somebody else. Consider adding more than one contact if the main contact is expected to change positions soon (e.g. a student expected to graduate)]
Name:
Institution:
College, School or Department:
Address:
Email:
ORCID:
1) Abstract for the dataset
[The abstract should describe the dataset, not the research or the results obtained after analyzing the dataset. The dataset abstract should be different than an article or book abstract, even if the dataset is tightly related to the article or book.]
2) Context of the research project that this dataset was collected for.
[Any contextual information that will help to interpret the dataset. You can give details about the research questions that prompted the collection of this dataset. ]
3) Date of data collection:
[single date or range or approximate date in format YYYY-MM-DD]
4) Geographic location of data collection:
[Location of the data collection.]
[If you include coordinates use format: “latitude, longitude” where latitude and longitude are preferably in fraction of degrees (a decimal number), not sexagesimal, and where north latitude is positive (south is negative) and east longitude is positive (west is negative).]
[If you include a Bounding box indicate Label, Latitude North, Latitude South, Longitude West, Longitude East]
5) Funding sources that supported the collection of the data:
[Include agency and grant number if applicable]
1) Licenses/restrictions placed on the data:
[E.g. This work is licensed under a Creative Commons No Rights Reserved (CC0) license; E.g. This work is on the Public Domain; E.g. This work is licensed under a Creative Commons Attribution 4)0 International License]
2) Links to publications related to the dataset:
[If there is a publication that uses or cites the data that has not been approved yet, include it here anyway, with as much information as you have at the moment (e.g. authors and title). If the publications have been published include the DOI in the citation. ]
3) Links to other publicly accessible locations of the data:
4) Recommended citation for the data:
[Doe, J. & Smith, J. (2018) Title of this wonderful dataset *[Data set]. Oregon State University. https://doi.org/10.7267/doid01DOI ]*
5) Dataset Digital Object Identifier (DOI)
[Information to add at the end of the submission process, after dataset review.]
6) Limitations to reuse
[Describe any known problems or caveats that would limit reuse of the data.]
1) Last modification date
[Date dataset was last modified in format YYYY-MM-DD]
2) Links/relationships to other versions of this dataset:
[If there are previous versions explain where the other version is, when it was updated, and summarize the changes.]
[If a very granular description of the versions of the dataset is needed (e.g. file by file) this section can be moved to Data and File overview.]
3) Was data derived from another source?
[Answer Yes or No. If Yes, list source(s).]
[If there is code in the dataset, and the code is in a repository explain how this snapshot of the code is tagged in the repository]
4) Additional related data collected that was not included in the current data package:
[Describe the methodology used to generate the dataset]
[Include links or references to publications or other documentation containing methodological information]
[Do not copy paste the methods section from a pending publication unless you have made sure that you can do that. Some journals may consider this as a publication, and will not accept a manuscript with a section that has already been published.]
[If you want to refer to an article that has not been accepted for publication yet, include as much information as you have at the moment (e.g. authors and title). If the publication has been published include the DOI in the citation. If the publication does not have a DOI (like a dissertation) include a URL.]
1) Description of methods used for collection/generation of data:
[experimental design or protocols used in data collection]
2) Methods for processing the data:
[describe how the submitted data were generated from the raw or collected data]
3) Instrument- or software-specific information needed to interpret the data:
[If software is needed to interpret the data, explain where to get the software. If software is not openly available include it in the dataset (if possible). If including the software is not possible consider changing the format of the dataset. Include version of software. ]
4) Standards and calibration information, if appropriate:
5) Environmental/experimental conditions:
[e.g., cloud cover, atmospheric influences, computational environment, etc.]
6) Describe any quality-assurance procedures performed on the data:
7) People involved with sample collection, processing, analysis and/or submission:
[If they are not include as collaborators, or if you want to describe more carefully who did what.]
[All files in the dataset should be listed here. If a file naming schema is used, it is fine to explain it instead of listing all the files. Include directory structure if necessary.]
[Filenames should include extension.]
1) File List
A. Filename:
Short description:
B. Filename:
Short description:
C. Filename:
Short description:
2) Relationship between files:
3) Formats
[List all the formats present in this dataset. Include explanations or instructions if necessary (e.g. links to page describing a metadata standard)]
[This section should be created for each file or dataset that requires explanation of variables. Typically, this is always needed for tabular data with columns and column headers. All variables should be described. Include the units.]
1) Number of variables:
2) Number of cases/rows:
3) Missing data codes: Code/symbol Definition Code/symbol Definition
4) Variable List
[Include all information that is important: Value labels if appropriate. Units if appropriate. Min and Max values if appropriate. ]
[Example:]
1. Name:
Description:
2. Name:
Description:
3. Name:
Description:
4. Name:
Description:
5. Name:
Description:
6. Name:
Description:
7. Name:
Description:
8. Name:
Description:
9. Name:
Description:
10. Name:
Description:
11. Name:
Description:
12. Name:
Description:
13. Name:
Description:
14. Name:
Description:
15. Name:
Description:
16. Name:
Description:
17. Name:
Description:
18. Name:
Description:
19. Name:
Description:
20. Name:
Description:
*ect...*
1) Installation
[Instructions to install the software, if necessary]
2) Requirements
[Describe all programs and libraries that your code relies on. What should a user install to make sure that the code can be run successfully?]
3) Usage
[Describe how to use the code. Include examples]
4) Support
[Will the authors support others that want to use these scripts?]
5) Contributing
[Can other researchers contribute to the code? Is the code in a public repository? Are pull requests welcome? In this case the code submitted in the repository will be a snapshot, which can be useful for preservation.]
[Include any other important information about the data that you did not have opportunity to discuss anywhere in this template]