Logo
TAAT e-catalog for Development partners
https://e-catalogs.taat-africa.org/org/technologies/fair-process-framework-resources-to-implement-the-findable-accessible-interoperable-and-reusable-fair-data-principles
Request information View pitch brochure

FAIR Process Framework: Resources to implement the Findable, Accessible, Interoperable, and Reusable (FAIR) data principles

A comprehensive suite of tools to guide initiatives and organizations in implementing FAIR principles across data-rich agricultural development investments!

The FAIR Process Framework provides governments and development institutions with a structured approach to implementing Findable, Accessible, Interoperable, and Reusable (FAIR) principles in agricultural data management. Designed in collaboration with over 32 global partners, this six-step framework enhances data-driven decision-making, fosters cross-sector collaboration, and maximizes the impact and efficiency of agricultural investments. By ensuring that data is well-organized, accessible, and reusable, it strengthens policy formulation, improves resource allocation, and supports long-term food security strategies.

2

This technology is validated.

8•7

Scaling readiness: idea maturity 8/9; level of use 7/9

Adults 18 and over: Positive medium

The FAIR Process Framework will improve the accuracy and accessibility of agricultural data to support evidence-based decision-making across multiple stakeholder groups.

The poor: Positive medium

The FAIR Process Framework will improve the accuracy and accessibility of agricultural data to support evidence-based decision-making across multiple stakeholder groups.

Women: Positive medium

The FAIR Process Framework will improve the accuracy and accessibility of agricultural data to support evidence-based decision-making across multiple stakeholder groups.

Farmer climate change readiness: Significant improvement

Applying the FAIR Process Framework to your agricultural development initiatives will improve the accuracy and accessibility of the data to inform climate-friendly farming practices.

Biodiversity: Positive impact on biodiversity

Applying the FAIR Process Framework to your agricultural development initiatives will improve the accuracy and accessibility of the data to inform all relevant stakeholders in the conservation of plants, animals and nature.

Environmental health: Greatly improves environmental health

Applying the FAIR Process Framework to your agricultural development initiatives will improve the accuracy and accessibility of the data to inform users of the data to make evidence-based decisions to improve environmental health.

Soil quality: Improves soil health and fertility

Applying the FAIR Process Framework to your agricultural development initiatives will improve the accuracy and accessibility of the soil data to support the diverse needs of different users to help them make decisions to improve soil health and fertility.

Problem

  • Data fragmentation and duplication: Without a structured approach, multiple institutions collect similar data separately, leading to inefficiencies and wasted resources.
  • Limited accessibility: Valuable agricultural data is often stored in isolated systems, making it difficult for policymakers, researchers, and development partners to access and use.
  • Integration challenges: Data that isn’t standardized cannot be easily combined with other datasets, limiting its usefulness for evidence-based decision-making.
  • Loss of institutional knowledge: When data is poorly managed, it risks being lost over time, especially during leadership transitions or project closures.
  • Reduced return on investment: Collecting and storing data is costly; when it isn’t Findable, Accessible, Interoperable, or Reusable, its full potential remains untapped.
  • Barriers to scaling agricultural innovations: Data that cannot be easily shared or adapted limits opportunities for scaling successful interventions across regions.

Solution

  • Practical guidance for easy adoption: The framework includes bite-sized resources, clear instructions, and real-world use cases to simplify implementation.
  • Reduced entry barriers: Funders, grantees, and project partners can easily integrate FAIR principles without requiring extensive technical expertise.
  • Standardized and responsible data sharing: Ensures that data is Findable, Accessible, Interoperable, and Reusable, making it more useful for decision-making and long-term development.
  • Improved data discoverability and accessibility: Agricultural data is organized and structured so that stakeholders can easily find and access relevant information.
  • Seamless data integration: Promotes interoperability, allowing datasets from different sources to be combined for deeper insights and better policy formulation.
  • Maximized project impact: Ensures that collected data remains relevant, reusable, and valuable, supporting future research, scaling, and evidence-based agricultural innovations.

Key points to design your program

Agricultural programs generate vast amounts of data, yet much of it remains underutilized due to inconsistent management and limited accessibility. The FAIR Process Framework provides a structured yet adaptable approach to ensure data is Findable, Accessible, Interoperable, and Reusable (FAIR), enabling better coordination, efficiency, and impact.

  • Strategic Integration: Adopt FAIR principles from the planning stage to ensure data is well-structured and effectively managed.
  • Enhancing Ongoing Programs: Introduce FAIR elements at any point to improve data quality, accessibility, and collaboration across agencies.
  • Scalability & Flexibility: The framework is designed to fit various national initiatives, from policy development to implementation.
  • Capacity Building & Support: Training, templates, and expert guidance from CABI help ensure successful adoption at all levels.

By embedding FAIR principles in national programs, governments can reduce duplication, foster data-driven decision-making, and enhance agricultural development outcomes.

0 USD

IP

Open source / open access

Countries with a green colour
Tested & adopted
Countries with a bright green colour
Adopted
Countries with a yellow colour
Tested
Countries with a blue colour
Testing ongoing
Egypt Equatorial Guinea Ethiopia Algeria Angola Benin Botswana Burundi Burkina Faso Democratic Republic of the Congo Djibouti Côte d’Ivoire Eritrea Gabon Gambia Ghana Guinea Guinea-Bissau Cameroon Kenya Libya Liberia Madagascar Mali Malawi Morocco Mauritania Mozambique Namibia Niger Nigeria Republic of the Congo Rwanda Zambia Senegal Sierra Leone Zimbabwe Somalia South Sudan Sudan South Africa Eswatini Tanzania Togo Tunisia Chad Uganda Western Sahara Central African Republic Lesotho
Countries where the technology is being tested or has been tested and adopted
Country Testing ongoing Tested Adopted
Egypt Testing ongoing Not tested Not adopted
Ethiopia No ongoing testing Tested Not adopted
Ghana No ongoing testing Tested Not adopted
Kenya Testing ongoing Not tested Not adopted
Malawi No ongoing testing Tested Not adopted
Rwanda No ongoing testing Tested Not adopted
Tanzania No ongoing testing Tested Not adopted
Zambia No ongoing testing Tested Not adopted

This technology can be used in the colored agro-ecological zones. Any zones shown in white are not suitable for this technology.

Agro-ecological zones where this technology can be used
AEZ Subtropic - warm Subtropic - cool Tropic - warm Tropic - cool
Arid
Semiarid
Subhumid
Humid

Source: HarvestChoice/IFPRI 2009

The United Nations Sustainable Development Goals that are applicable to this technology.

Sustainable Development Goal 2: zero hunger
Goal 2: zero hunger

Managing, governing and sharing data responsibly can fast track innovations in the agricultural sector to solve food insecurity.

Sustainable Development Goal 8: decent work and economic growth
Goal 8: decent work and economic growth

Managing, governing and sharing data responsibly can fast track innovations in the agricultural sector to improve productivity and contribute to economic growth.

Sustainable Development Goal 13: climate action
Goal 13: climate action

Managing, governing and sharing data responsibly can improve access to agricultural data to inform evidence-based climate action.

Sustainable Development Goal 15: life on land
Goal 15: life on land

Managing, governing and sharing data responsibly can provide greater access to evidence and fast track solutions to conserve life on land.

Sustainable Development Goal 17: partnerships for the goals
Goal 17: partnerships for the goals

Developing partnerships is a key element of implementing the FAIR Process Framework, to improve data sharing and data access across agricultural data projects.

1. For New Projects (Concept Note or Proposal Stage)

    • Start at Step 1 of the FAIR Process Framework to integrate FAIR principles from the beginning.
    • Follow the structured, step-by-step approach to build a strong foundation for data management.

2. For Ongoing Projects

    • Even if your project is already underway, you can still adopt FAIR elements at any stage.
    • Identify relevant steps to enhance data quality, accessibility, and interoperability.

3. For Any Stage of the Project Life Cycle

    • The framework is flexible and adaptable, allowing teams to integrate FAIR practices at different phases.
    • Implementing even a few key elements improves data stewardship and long-term usability.

4. For Additional Support

    • The FAIR Process Framework includes guidance, templates, and resources to assist teams unfamiliar with FAIR principles.
    • CABI offers expert support as a sub-awardee, providing training and implementation assistance to ensure successful adoption.

Last updated on 21 March 2025