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CASRAI
Data Governance & Open Science

DMP Guide: SNSF for Computer Science & AI

Learn how to design a fully compliant Data Management Plan (DMP) that satisfies Swiss National Science Foundation open-data policies. Explore optimal file formats, metadata mapping, and repository selection for Computer Science & AI research data.

1. Funder Policy & Open Data Compliance

In alignment with international open-science mandates, Swiss National Science Foundation requires all principal investigators to submit a comprehensive Data Management Plan (DMP) with their grant application. A robust DMP details how research data will be collected, processed, documented, stored, shared, and preserved both during and after the project.

Funder-Specific Mandate Directive

Under guidelines set by the **Swiss National Science Foundation (SNSF)**, a formal DMP must be compiled and submitted for the **Computer Science & AI** project by Month 6. Research data must follow European open-science protocols, complying with the core doctrine of being "as open as possible, as closed as necessary" to secure proprietary discoveries.

Verified Funder Open-Science Portfolio

Based on independent, open-science bibliometric data from OpenAlex, the Swiss National Science Foundation (SNSF) oversees a massive scholarly ecosystem with over 239,846 published research outputs under their funding catalog, accumulating over 10,323,162 citations across the global scientific record. To protect the public's investment in this massive knowledge corpus, the funder strictly enforces FAIR data management and open repository deposits, making compliance with this DMP protocol mandatory for all awarded grants.

For projects in the field of Computer Science & AI, managing data correctly is essential not only for compliance, but also to support peer-review validation and reproducibility. All DMPs must be submitted through the mySNF / Portal portal, using standard institutional guidelines.

2. Data Types, Formats, and Metadata Standards

A high-quality DMP must explicitly identify the types of data that will be generated and specify open, non-proprietary file formats to ensure long-term usability. For Computer Science & AI, datasets typically range from raw observational measurements to curated computational models.

Computational pipelines in **Computer Science & AI** require raw sequence file storage alongside the exact containerized alignment code (Docker/Singularity) and statistical models to ensure full pipeline replication for **SNSF** audits.

To guarantee discoverability, datasets should be documented using standardised metadata schemas that map to the Mathematical Concepts branch of scholarly vocabularies. This ensures indexers and crawlers can crawl and identify research outputs accurately.

DMP ComponentCustom Target Value for Computer Science & AI
Preferred File FormatsPython/R scripts (.py, .R), JSON (hyperparameters), PT/ONNX (neural weights), CSV (benchmarks)
Metadata Schema StandardCodeMeta schema, Schema.org definitions, Software Ontology (SWO)
Target Scientific RepositoriesZenodo (integrated with GitHub), Software Heritage, Figshare, and directory servers mapped in IEEE Xplore, ACM Digital Library & arXiv

3. Step-by-Step DMP Construction Protocol

When preparing your DMP for a SNSF proposal, structure your document around these core sections:

  1. Data Collection and Generation:
    Describe the methodology, instrumentation, or software used to collect or generate new data. Detail quality assurance and quality control measures implemented at your facility.
  2. Documentation and Metadata:
    Explain how the data will be documented, including accompanying read-me files, data dictionaries, and laboratory notebooks. Specify the metadata standards to be utilized (using CodeMeta schema, Schema.org definitions, Software Ontology (SWO) as standard).
  3. Ethics, Intellectual Property, and Consent:
    Address how sensitive or confidential datasets will be handled. Detail anonymisation processes, access controls, and compliance with institutional ethics boards.
  4. Storage, Backups, and Security:
    State where data will be stored during active research. Detail automated backup schedules, server redundancies, and access authorisation protocols.
  5. Long-Term Preservation and Archiving:
    Select the digital repository for post-project archiving (such as Zenodo (integrated with GitHub), Software Heritage, Figshare, and directory servers mapped in IEEE Xplore, ACM Digital Library & arXiv). Confirm that the repository supports persistent identifiers (handles/DOIs) and provides secure preservation.

Open Science Workflows, Data Curation & Repositories

When drafting a data management plan dmp to satisfy SNSF guidelines, defining systematic data collection methods and formal data curation standards is vital. Utilizing institutional dmptool workflows ensures that these administrative requirements are built-in from the outset of the study. Investigators must outline procedures for post-collection data cleaning, strict audits of data integrity, and programmatic data wrangling to transform raw outputs into clean models. Furthermore, a descriptive data dictionary must be provided to define the database schema. Architecturally, teams can configure either a secure relational data warehouse or a cost-effective cloud-based data lake, evaluating how this data lake vs data warehouse setup supports formal data analysis and immediate exploratory data analysis under SNSF guidelines. Upon completion, data will be submitted to the dryad data repository, published as figshare datasets, or preserved via a zenodo data upload to be registered in the global data citation index and satisfy nsf data management plan guidelines and regional SNSF open-science rules. The study will document clear data versioning protocols hosted on the open science framework osf to enable reproducible data sharing matching top fair data principles examples. Furthermore, any community-engaged data must respect the care data principles and support indigenous data sovereignty care standards to ensure local governance of shared knowledge under SNSF audits. Aligning the archiving schedule directly with SNSF open-access metrics protects the project's funding cycles.

4. Frequently Asked Questions

Are we required to share all raw data from our research?

No, SNSF policies generally recognise that some data cannot be shared publicly due to privacy, security, intellectual property, or commercialisation constraints. In such cases, your DMP must justify why certain datasets are restricted and describe how metadata will still be made discoverable.

Who owns the research data generated under this grant?

Data ownership is typically held by the host institution, subject to co-ownership clauses in collaborative projects. However, SNSF guidelines require that data be made as openly available as possible under open licensing, such as Creative Commons or Open Data Commons.

DMP Specifications

Funding BodySNSF (Switzerland)
Submission ToolmySNF / Portal
ROR Funder ID00yjd3n13
Crossref Funder ID501100001711
Discipline FocusComputer Science & AI
Target Index DBIEEE Xplore, ACM Digital Library & arXiv

FAIR Principles

Your plan must align with the FAIR Principles:

  • Findable: Rich metadata and persistent DOIs.
  • Accessible: Free retrieval via standard protocols.
  • Interoperable: Open formats and vocabulary alignment (such as CodeMeta schema, Schema.org definitions, Software Ontology (SWO)).
  • Reusable: Clear data licensing and reuse guidelines.

Referenced across the research world

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  • ORCID logo
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