
Competency framework for data professionals
We present a competency framework for research data professionals in the Netherlands. It specifies the competencies that data professionals can develop, and aims to:
- Define the scope of the national curriculum, allowing to map trainings, find gaps, and build a training programme addressing the competencies in the framework;
- Help data professionals further professionalise;
- Help employers make explicit what competencies they expect from a data professional;
- Help training providers understand and improve the relevance of their training for data professionals.
The competency framework is not prescriptive. Although we expect that data professionals need a basic understanding of all competency areas, some competencies within these areas will lend themselves better for further specialisation. Importantly, the competency framework does not explicitly cover discipline-specific competencies, whereas these can be important for a subset of data professionals.
Competencies and topics per competency area
RDM, FAIR principles & open science
- [K] Data definitions and data responsibilities in research
- [K] The research process and the research data lifecycle
- [K] The FAIR data principles
- [K] Open science principles and practices
- [K] Importance and benefits of RDM, FAIR data and open science
- [K] Role of research data in scholarly communication
- [K] Requirements, templates and tools for data management planning
- [K] The institute's organisational structure and processes
- [S] Assist researchers with and review Data Management Plans
- [S] Assist researchers with (systematic) discovery and reuse of existing datasets
- [S] Apply the FAIR principles
- [S] Share data effectively
- [S] Evaluate and improve the FAIRness of datasets
- [S] Formulate and apply data preservation strategies
- [S] Apply and advise researchers on designing efficient and secure data (integration) workflows
- [S] Implement data quality, validation, and cleaning mechanisms into the research process
- [S] Create metadata and documentation using appropriate schemas and standards
- [S] Support the development, mapping, and implementation of metadata standards
- [S] Develop and implement relevant data models
- [S] Work with data stored in databases (e.g. SQL, noSQL) and advise researchers on their application
- [K] Relevant support and services available for RDM, both internally as well as externally
- [S] Assess and analyse needs regarding support on RDM and define new requirements
- [S] Initiate or supervise the set-up and update of suitable support facilities or services
- [S] Communicate aboutand stimulate the use of available services
- [S] Monitor and evaluate the uptake and effectiveness of RDM services
- Research data
- Scientific disciplines
- Research methodologies
- Research data lifecycle
- Roles and responsibilities in RDM
- Open science
- Reproducibility and replicability
- Scholarly communication
- Costs for RDM
- Data management planning
- FAIR data principles
- Data discovery
- Data reuse
- Data collection
- Data documentation
- Data organisation
- File naming (conventions)
- Data versioning
- Data formats and types
- Data back-up
- Data selection
- Data destruction
- Data preservation and archiving
- Data publication
- Data curation
- Data visualisation
- Data provenance
- Metadata (standard)
- Controlled vocabulary, ontology, taxonomy, thesaurus
- Linked Open Data and SPARQL
- FAIR metrics
- 3-point FAIRification Framework (FAIR data point, FAIR Implementation Profile)
- Persistent identifier
- Open Archives Initiative Protocol for Metadata Harvesting (OAI-PMH)
- Spreadsheet tools
- Data modelling
- Data integration
- Data integrity, validation & quality
- Data cleaning & wrangling
- Database management
- Master data management
- Business intelligence
- RDM service models
Research Software Management
- [K] Different levels of research software (e.g. scripts, code, independent software)
- [S] Write and advise on creating a Software Management Plan
- [S] Advise on storing, documenting, publishing, licensing, and citing research software
- [S] Assist researchers with (systematic) discovery and reuse of existing research software
- [K] The FAIR principles for research software and the difference between FAIR, Open source, and good quality research software
- [K] How to embed research software in scientific workflows
- [S] Advise on good coding practices and tools to enhance reproducibility of research results
- [S] Evaluate and improve reproducibility of research projects that use research software
- [S] Support researchers in publishing their research software
- [S] Use and advise on version control systems
- [S] Write and assess software documentation
- [S] Understand, write, and evaluate basic programming code to automate (parts of) relevant stages of the research data lifecycle
- Research software
- Software management planning
- Software version control (e.g., git and GitHub)
- Software documentation
- Software packaging (R, Python, etc.)
- Software citation
- FAIR software
- Reproducibility
- Coding conventions
- Literate programming
- Scientific workflows and data pipelines
- Computer programming
- Virtual environments and Containerisation
- Continuous integration
- Use of generative Artificial Intelligence in writing research software
Data infrastructure
- [K] Relevant facilities, data infrastructure, tools and emerging standards relevant to RDM (e.g. data collection tools, statistical programmes, etc.)
- [K] RDM issues related to data infrastructure and tools in the data lifecycle
- [S] Use data infrastructure and tools relevant to RDM
- [S] Provide access, guidance and training on proper use of data infrastructure and tools relevant to RDM
- [S] Monitor and evaluate effectiveness and use(ability) of data infrastructure
- [S] Analyse data infrastructure and tool needs
- [S] Translate needs to advice for local, national or international implementation
- [S] Facilitate proper alignment of data infrastructure to relevant external data infrastructure and tools
- [S] Facilitate proper alignment between researcher needs and IT-related departments within the organisation
- (Certified) Data Repositories
- Repository quality standards (e.g. CoreTrustSeal, ISAD(G), OAIS reference model)
- TRUST principles for digital repositories
- Tool criticism
- Data collection tools
- Data management services/tools
- Data storage (media)
- Data transfer tools
- Data analysis software/tools
- Cloud computing and High-performance computing
- Data security and Data classification
- Available RDM infrastructure and organisations
- European Open Science Cloud solutions
Policy and governance
- [K] Importance of institutional policies such as data and software policy
- [K] Elements of an RDM policy
- [K] Policy development cycle and tools
- [K] Interplay between data, software, AI policy and ethical/legal frameworks
- [K] Relevant internal and external stakeholders and their requirements and needs
- [S] Ensure alignment between institutional, national and international RDM-related policies and practices
- [S] Contribute actively to national and international RDM policy development
- [S] Communicate about RDM policies, explain implications and create awareness
- [S] Turn national and international developments into RDM policy and implementation within the institute
- [S] Translate institutional policies into actionable data management strategies
- [S] Assess and monitor compliance to the FAIR data principles and the principles of open science
- [S] Evaluate and monitor effectiveness of and compliance to policy
- [S] Advise relevant parties on opportunities for collaboration with internal and external organisations
- [S] Advise management on data governance and data sovereignty issues, infrastructure and procedures to put in place
- [S] Advise on conditions for sharing and collaborating on data with parties outside the own institution / Netherlands / EU
- European, national and institutional policies on RDM, RSM and open science
- Funder RDM, RSM and open science requirements
- Journal policies related to RDM
- Policy development
- Policy implementation
- Policy monitoring
- Translating policy to organisational strategy
- Responsible metrics (bibliometrics, altmetrics)
- Digital sovereignty
- Data governance
- Data ownership
- Key Performance Indicators (KPI) for RDM
Legal and ethical responsibilities
- [K] Legislation, ethics and codes of conduct with regards to research data
- [K] Responsible use of AI and relevant AI legislation, policies and guidelines
- [S] Translate legislation, regulations and codes of conducts to practical implications and guidelines
- [S] Identify and manage ethical and legal risks in a research context and know when to refer to ethical/legal experts
- [S] Facilitate proper alignment between researcher needs and legal and ethical departments within the organisation
- Privacy and data protection (GDPR, UAVG)
- Sensitive data/Confidentiality
- Intellectual property rights (copyright, patents, trademarks)
- Research in consortia
- Data and software licenses
- License compatibility
- Information security
- Knowledge security
- European data legislation (AI Act, Data Governance Act, Data Act, European Health Data Space)
- (Cyber)security legislation, e.g. NIS2 Directive
- Trade Secret Protection Act
- Research ethics and integrity
- CARE principles
- Diversity, equity & inclusion
Training and awareness raising
- [K] Required level of knowledge for researchers and relevant stakeholders
- [K] Available RDM training opportunities and possibilities
- [S] Translate RDM policies and DMPs to practical implications and guidelines that researchers can understand
- [S] (Coordinate the) design (of) RDM-related training and tailor it to the target audience
- [S] Plan, organise and execute training and awareness-related events
- [S] Find, reuse and FAIRify training materials
- [S] Provide training in an engaging, inclusive and accessible manner
- [S] Advocate for integration of training and awareness activities in curricula, onboarding, or staff development programmes
- [S] Assess learning outcomes and student satisfaction for provided training and awareness activities
- [S] Monitor and evaluate the impact and effectiveness of awareness activities
- Needs assessment
- Instructional design
- FAIR-by-Design methodology
- Carpentries methodology
- Training andragogy
- Didactic methods
- Presentation skills
- Written communication skills
- Open Educational Resources
- Diagnostic, formative and summative assessment
- Course evaluation
- Student satisfaction
Transversal skills
- [K] Knowledge about the data steward's tasks and responsibilities
- [S] Lead or mentor colleagues
- [S] Work effectively in a(n interdisciplinary) team
- [S] Navigate the complex structures, rules, power dynamics, and interpersonal relationships within research organisations
- [K] Where to find decision makers, RDM experts, researchers, and other stakeholders, including relevant (RDM) networks
- [S] Identify and participate in local, national and international RDM networks
- [K] The principles of community building and management
- [S] Establish and maintain an active network in the field of RDM
- [S] Connect data support staff in- and outside the institute (liaising)
- [S] Advocate for the importance of open science, research data management and data support with management and researchers
- [S] Communicate effectively with a diverse range of stakeholders
- [S] Think outside the box, generate new ideas, and find novel solutions to problems or opportunities
- [S] Facilitate inclusive and purpose-driven meetings or discussions
- [S] Effectively set-up and manage RDM-related projects (planning, coordination, monitoring, reporting)
- [S] Accomplish sustainable change through strategies and personal influence
- [S] Assess information, weigh options, consider potential outcomes, and choose the best course of action in a given situation
- Networking skills
- Community management
- Existing RDM networks/ communities
- Consultancy
- Advocacy
- Conflict resolution
- Negotiating
- Active listening
- Stakeholder analysis
- Stakeholder engagement
- Organisational development
- Project management (methodologies)
- Change management
- Binding Leadership
- Facilitation
- Teamwork
The contents of competency framework are heavily based on the work of Jetten et al. (2021), the activities described in the Dutch Data Steward UFO profile, and the Skills4EOSC data steward training curriculum and Minimum Viable Skills profile. For other sources used, please refer to the full Curriculum document.
The RDNL competency framework for research data professionals in the Netherlands © 2026 by Research Data Netherlands (4TU.ResearchData, Health-RI, DANS, SURF) is licensed under a CC BY 4.0 license.
Competency Framework version: March 2026.