SlideShare una empresa de Scribd logo
1 de 32
www.geant.org
1 |
Click to edit Master title style
• Click to edit Master text styles
• Second level
• Third level
• Fourth level
• Fifth level
01/07/2021 1
The Future of FAIR
www.geant.org
Sarah Jones
EOSC Engagement Manager
sarah.jones@geant.org
Twitter: @sarahroams
N8 library managers workshop
Wednesday 30th June 2021
What is FAIR?
Image Israel Palacio https://unsplash.com/photos/P6FgiDNe6W4
www.geant.org
A set of principles to ensure that data are
shared in a way that enables & enhances
reuse, by humans and machines
What is FAIR?
Image CC-BY-SA by SangyaPundir
www.geant.org
What FAIR means: 15 principles
Findable
F1. (meta)data are assigned a globally unique and
eternally persistent identifier.
F2. data are described with rich metadata.
F3. (meta)data are registered or indexed in a searchable
resource.
F4. metadata specify the data identifier.
Interoperable
I1. (meta)data use a formal, accessible, shared, and
broadly applicable language for knowledge
representation.
I2. (meta)data use vocabularies that follow FAIR
principles.
I3. (meta)data include qualified references to other
(meta)data.
Accessible
A1 (meta)data are retrievable by their identifier using a
standardized communications protocol.
A1.1 the protocol is open, free, and universally
implementable.
A1.2 the protocol allows for an authentication and
authorization procedure, where necessary.
A2 metadata are accessible, even when the data are no
longer available.
Reusable
R1. meta(data) have a plurality of accurate and relevant
attributes.
R1.1. (meta)data are released with a clear and
accessible data usage license.
R1.2. (meta)data are associated with their provenance.
R1.3. (meta)data meet domain-relevant community
standards.
Slide CC-BY by Erik Schultes, Leiden UMC
doi: 10.1038/sdata.2016.18
The FAIR data principles explained
• Clarifications from the Dutch
Techcentre for Life Sciences
• Each principle is a link to further
clarification, examples and
context
https://www.dtls.nl/fair-data/fair-
principles-explained
R1. Meta(data) are richly described with a plurality of accurate and relevant attributes
• By giving data many ‘labels’, it will be much easier to find and reuse the data
• Provide not just metadata that allows discovery, but also metadata that richly describes
the context under which that data was generated
• “plurality” indicates that metadata should be as generous as possible, even to the point of
providing information that may seem irrelevant
FAIR is nothing new
• Various research communities have been sharing their
data in a ‘FAIR’ way long before the term emerged
• Meaningful and memorable articulation of concepts
• Natural desire to want to be ‘fair’
• FAIR is gaining significant international traction
Open data and FAIR data
FAIR
data
Open
data
FAIR and Open are
not synonymous.
Data can be both,
one or neither.
Degrees of Open and FAIR
And both are on a scale
www.geant.org
How do Open, FAIR & RDM intersect?
Open
FAIR data
Managed data
Internal
Self-interest
External
Community
benefit
Open, FAIR and RDM
• Paper explores overlaps between
concepts of Open, FAIR and RDM.
• Proposes using Open and FAIR as
ways to engage researchers in
managing data well, as this is a
prerequisite for both.
• Recommends making data FAIR
and Open wherever possible
Higman, R., Bangert, D. and Jones, S., 2019. Three camps, one destination: the
intersections of research data management, FAIR and Open. Insights, 32(1), p.18.
DOI: http://doi.org/10.1629/uksg.468
Increasing uptake
Image CC-BY by Ian Dooley https://unsplash.com/photos/DuBNA1QMpPA
Increasing adoption by funders
www.geant.org
FAIR is a central part of EOSC
• FAIR is the glue which
enables us to federate
data and services
• Principles have been
used as the basis for the
EOSC Interoperability
Framework
12
Turning FAIR into Reality: Report and Action Plan - https://doi.org/10.2777/1524
Report and Action Plan: Take a holistic approach to lay out
what needs to be done to make FAIR a reality, in general
and for EOSC
Addresses the following key areas:
1. Concepts for FAIR
2. Creating a FAIR culture
3. Creating a technical ecosystem for FAIR
4. Skills and capacity building
5. Incentives and metrics
6. Investment and sustainability
Recommendations and Actions: 27 clear recommendations,
structured by these topics, are supported by precise actions
for stakeholders.
Report is out!
FAIR Expert Group
FAIR Data Expert Group (2016-2018)
www.geant.org
FAIR WG of EOSC Exec Board (2018-2020)
• Six recommendations for
implementation of FAIR
practice
• EOSC Interoperability
Framework
• Persistent identifier
policy for EOSC
• FAIR metrics for EOSC
• Recommendations on
certifying services to
enable FAIR
https://www.eoscsecretariat.eu/working-
groups/fair-working-group
www.geant.org
EOSC Association Task Forces… (2021 on)
• FAIR metrics & data quality
• Semantic interoperability
• Interoperability of data & services
• Research careers, recognition & credit
• Data stewardship curricula and career paths
• And more….
https://www.eosc.eu/news/call-members-eosc-
association-task-forces
15 |
Call for members
closes on Friday
30 July 2021 at
18.00 CEST
Many FAIR-related projects
All funded by the European Commission
clusters
National initiatives
• EOSC-Nordic
• EOSC-Pillar
• EOSC-synergy
• ExPaNDS
• NI4OS-Europe
It’s all going swimmingly!
17 |
Image CC-BY by Brian Matangelo https://unsplash.com/photos/gRof2_Ftu7A
www.geant.org
Most data isn’t managed, let alone Open or FAIR…
18 |
Why?...
www.geant.org
For his most recent paper:
1. Double checking the main dataset and
reformatting to submit to Dryad: 5 hours
2. Creating complementary file and preparing
metadata: 3 hours
3. Submission of these two files and the metadata
to Dryad: 45 minutes
4. Preparing a map of the locations: 1 hour
5. Submission of map to Figshare: 15 minutes
6. Cleaning up and documenting the code,
uploading it to GitHub: 25 hours
7. Cost of archiving in Dryad: US$90
8. Page Charges: $600
It takes a lot of time and effort
19 |
By Emilio Bruna
http://brunalab.org/blog/2014/09/04/the-
opportunity-cost-of-my-openscience-was-35-
hours-690
www.geant.org
Recognition and rewards are not there yet
20 |
It’s hard to overcome
your personal
investment.. It’s like
giving away your baby
Quote from a researcher at
Glasgow University as part
of the Incremental project
Communities are at different stages of maturity
• Some like astronomy and physics are well-organised
• Others still need to develop standards
• Tension between domain approaches and
interoperability cross-domain
https://doi.org/10.5281/
zenodo.1246815
https://doi.org/
10.2777/986252
How do we implement FAIR?
Image Israel Palacio https://unsplash.com/photos/P6FgiDNe6W4
• Findable
- Persistent ID
- Metadata online
• Accessible
- Data online
- Restrictions where needed
• Interoperable
- Use standards, controlled vocabs
- Common (open) formats
• Reusable
- Rich documentation
- Clear usage licence
FAIR data checklist
https://doi.org/10.5281/zenodo.1065991
Adopt a model for FAIR Digital Objects
• Digital objects can include data, software, and other
research resources
• Universal use of PIDs
• Use of common formats
• Data accompanied by code
• Rich metadata
• Clear licensing
www.geant.org
Address culture AND technology
Incentives
Metrics
Skills
Investment
Cultural and
social aspects
that drive the
ecosystem and
enact change
Cloud
of
registries
Two sides of one whole
Support interoperability
● Support research communities to develop and maintain their
interoperability frameworks for FAIR sharing
● Engage in international collaboration fora to do this
● Exchange of good practices, define case studies and success stories
● Common standards to support disciplinary frameworks and promote
interoperability and reuse across disciplines
www.geant.org
Principle Researcher role Service role
F1. Assign a PID Choose a relevant service Assign PIDs
F2. Rich metadata Create appropriate metadata Link data and metadata
F3. Indexed, searchable resource Choose a relevant service Ensure metadata search
F4. Metadata specify PID Choose a relevant service Link metadata and PID
A1. Standard protocol for retrieval Choose a relevant service Use standard protocols
A1.1 Open, free protocol Choose a relevant service Use open, free protocols
A1.2 Authenticated access if needed Choose a relevant service Provide authenticated access
A2. Metadata remain accessible Choose a relevant service Provide tombstone records
I1. Use of formal language (standards) Adopt standards Support appropriate standards
I2. Metadata vocabularies are FAIR Advocate for FAIR metadata Support FAIR metadata
I3. Qualified references (linked data) Cross-reference resources Cross-reference resources
R1. Rich metadata (plurality of attributes) Enrich metadata/documentation Advocate for good metadata
R1.1 Clear data usage licence Choose appropriate licence Require licences
R1.2 Metadata covers provenance Say where data came from Require provenance
R1.3 Community standards Adopt community standards Support community standards
FAIR is a joint responsibility…
Equal, if not more, responsibility on data services
1. Adopt relevant standards as you create data
Researcher role
2. Create rich metadata and documentation which
• conforms to community standards
• explains provenance
• assigns a clear usage licence
• cross-links data, metadata, code and other resources
3. Choose appropriate data services which
• assign Persistent Identifiers
• enhance discoverability via indexes / catalogues
• use standard protocols for (authenticated) access
4. Advocate for / contribute to community
standards
www.geant.org
Institutional role
1. Raise awareness of community standards
2. Help researchers select appropriate data services
3. If running a repository:
• assign Persistent Identifiers
• ensure metadata specifies the PID
• expose metadata via indexes / catalogues / harvesting…
• use standard protocols for (authenticated) access
• cross-reference resources
• keep metadata accessible, even when data aren’t
4. Set requirements / advocate for good practice
Inherent link: data and services
In order for data to be FAIR,
you need services that enable FAIR
And a community responsibility….
31 |
As the global community adopts &
becomes dependent on FAIR, the
principles themselves need to be
community-owned and governed
www.geant.org
Click to edit Master title style
• Click to edit Master text styles
• Second level
• Third level
• Fourth level
• Fifth level
01/07/2021 32
Thank you
www.geant.org
Any questions?
© GÉANT Association on behalf of the GN4 Phase 2 project (GN4-2).
The research leading to these results has received funding from
the European Union’s Horizon 2020 research and innovation
programme under Grant Agreement No. 731122 (GN4-2). 32 |

Más contenido relacionado

La actualidad más candente

FAIRy stories: the FAIR Data principles in theory and in practice
FAIRy stories: the FAIR Data principles in theory and in practiceFAIRy stories: the FAIR Data principles in theory and in practice
FAIRy stories: the FAIR Data principles in theory and in practice
Carole Goble
 
JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...
JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...
JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...
Enterprise Knowledge
 

La actualidad más candente (20)

Open, FAIR data and RDM
Open, FAIR data and RDMOpen, FAIR data and RDM
Open, FAIR data and RDM
 
FAIR principles and metrics for evaluation
FAIR principles and metrics for evaluationFAIR principles and metrics for evaluation
FAIR principles and metrics for evaluation
 
Data sharing: How, what and why?
Data sharing: How, what and why?Data sharing: How, what and why?
Data sharing: How, what and why?
 
Intro to Data Management Plans
Intro to Data Management PlansIntro to Data Management Plans
Intro to Data Management Plans
 
FAIRy stories: the FAIR Data principles in theory and in practice
FAIRy stories: the FAIR Data principles in theory and in practiceFAIRy stories: the FAIR Data principles in theory and in practice
FAIRy stories: the FAIR Data principles in theory and in practice
 
IEEE LOM
IEEE LOMIEEE LOM
IEEE LOM
 
VRA Core 4.0
VRA Core 4.0VRA Core 4.0
VRA Core 4.0
 
El Plan Datos como Herramienta para la Ciencia Abierta
El Plan Datos como Herramienta para la Ciencia AbiertaEl Plan Datos como Herramienta para la Ciencia Abierta
El Plan Datos como Herramienta para la Ciencia Abierta
 
FAIR Workflows and Research Objects get a Workout
FAIR Workflows and Research Objects get a Workout FAIR Workflows and Research Objects get a Workout
FAIR Workflows and Research Objects get a Workout
 
Open Research – an introduction
Open Research – an introductionOpen Research – an introduction
Open Research – an introduction
 
Green v Gold Open Access
Green v Gold Open AccessGreen v Gold Open Access
Green v Gold Open Access
 
Creating a Data Management Plan
Creating a Data Management PlanCreating a Data Management Plan
Creating a Data Management Plan
 
Del plan al data paper dgb unam
Del plan al data paper dgb unamDel plan al data paper dgb unam
Del plan al data paper dgb unam
 
Gamifying Library Services: Issues and Challenges
Gamifying Library Services: Issues and Challenges Gamifying Library Services: Issues and Challenges
Gamifying Library Services: Issues and Challenges
 
JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...
JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...
JPL’s Institutional Knowledge Graph II: A Foundation for Constructing Enterpr...
 
Introduction to Metadata
Introduction to MetadataIntroduction to Metadata
Introduction to Metadata
 
Data Quality and the FAIR principles
Data Quality and the FAIR principlesData Quality and the FAIR principles
Data Quality and the FAIR principles
 
International Digital Library Initiatives
International Digital Library InitiativesInternational Digital Library Initiatives
International Digital Library Initiatives
 
ArCo Project
ArCo ProjectArCo Project
ArCo Project
 
Data Quality
Data QualityData Quality
Data Quality
 

Similar a The future of FAIR

How are we Faring with FAIR? (and what FAIR is not)
How are we Faring with FAIR? (and what FAIR is not)How are we Faring with FAIR? (and what FAIR is not)
How are we Faring with FAIR? (and what FAIR is not)
Carole Goble
 

Similar a The future of FAIR (20)

OSFair2017 workshop | Monitoring the FAIRness of data sets - Introducing the ...
OSFair2017 workshop | Monitoring the FAIRness of data sets - Introducing the ...OSFair2017 workshop | Monitoring the FAIRness of data sets - Introducing the ...
OSFair2017 workshop | Monitoring the FAIRness of data sets - Introducing the ...
 
A coordinated framework for open data open science in Botswana/Simon Hodson
A coordinated framework for open data open science in Botswana/Simon HodsonA coordinated framework for open data open science in Botswana/Simon Hodson
A coordinated framework for open data open science in Botswana/Simon Hodson
 
FAIR play?
FAIR play? FAIR play?
FAIR play?
 
FAIR data: what it means, how we achieve it, and the role of RDA
FAIR data: what it means, how we achieve it, and the role of RDAFAIR data: what it means, how we achieve it, and the role of RDA
FAIR data: what it means, how we achieve it, and the role of RDA
 
Why institutions need to raise their capabilities to support FAIR
Why institutions need to raise their capabilities to support FAIRWhy institutions need to raise their capabilities to support FAIR
Why institutions need to raise their capabilities to support FAIR
 
FAIRy stories: tales from building the FAIR Research Commons
FAIRy stories: tales from building the FAIR Research CommonsFAIRy stories: tales from building the FAIR Research Commons
FAIRy stories: tales from building the FAIR Research Commons
 
Making Data FAIR (Findable, Accessible, Interoperable, Reusable)
Making Data FAIR (Findable, Accessible, Interoperable, Reusable)Making Data FAIR (Findable, Accessible, Interoperable, Reusable)
Making Data FAIR (Findable, Accessible, Interoperable, Reusable)
 
How are we Faring with FAIR? (and what FAIR is not)
How are we Faring with FAIR? (and what FAIR is not)How are we Faring with FAIR? (and what FAIR is not)
How are we Faring with FAIR? (and what FAIR is not)
 
NFAIS Talk on Enabling FAIR Data
NFAIS Talk on Enabling FAIR DataNFAIS Talk on Enabling FAIR Data
NFAIS Talk on Enabling FAIR Data
 
LIBER Webinar: Are the FAIR Data Principles really fair?
LIBER Webinar: Are the FAIR Data Principles really fair?LIBER Webinar: Are the FAIR Data Principles really fair?
LIBER Webinar: Are the FAIR Data Principles really fair?
 
Essentials 4 Data Support: a fine course in FAIR Data Support
Essentials 4 Data Support: a fine course in FAIR Data SupportEssentials 4 Data Support: a fine course in FAIR Data Support
Essentials 4 Data Support: a fine course in FAIR Data Support
 
Open Science Globally: Some Developments/Dr Simon Hodson
Open Science Globally: Some Developments/Dr Simon HodsonOpen Science Globally: Some Developments/Dr Simon Hodson
Open Science Globally: Some Developments/Dr Simon Hodson
 
Turning FAIR into Reality: Final outcomes from the European Commission FAIR D...
Turning FAIR into Reality: Final outcomes from the European Commission FAIR D...Turning FAIR into Reality: Final outcomes from the European Commission FAIR D...
Turning FAIR into Reality: Final outcomes from the European Commission FAIR D...
 
FAIRsharing and FAIRmetrics - RDA, March 2018
FAIRsharing and FAIRmetrics - RDA, March 2018FAIRsharing and FAIRmetrics - RDA, March 2018
FAIRsharing and FAIRmetrics - RDA, March 2018
 
FAIRsharing - ENVRI-FAIR Webinar
FAIRsharing - ENVRI-FAIR WebinarFAIRsharing - ENVRI-FAIR Webinar
FAIRsharing - ENVRI-FAIR Webinar
 
Results from the FAIR Expert Group Stakeholder Consultation on the FAIR Data ...
Results from the FAIR Expert Group Stakeholder Consultation on the FAIR Data ...Results from the FAIR Expert Group Stakeholder Consultation on the FAIR Data ...
Results from the FAIR Expert Group Stakeholder Consultation on the FAIR Data ...
 
Findable, Accessible, Interoperable and Reusable (FAIR) data
Findable, Accessible, Interoperable and Reusable (FAIR) dataFindable, Accessible, Interoperable and Reusable (FAIR) data
Findable, Accessible, Interoperable and Reusable (FAIR) data
 
Kr slides fair astronomy 20181019
Kr slides fair astronomy 20181019Kr slides fair astronomy 20181019
Kr slides fair astronomy 20181019
 
Webinar@AIMS_FAIR Principles and Data Management Planning
Webinar@AIMS_FAIR Principles and Data Management PlanningWebinar@AIMS_FAIR Principles and Data Management Planning
Webinar@AIMS_FAIR Principles and Data Management Planning
 
OSFair2017 Training | FAIR metrics - Starring your data sets
OSFair2017 Training | FAIR metrics - Starring your data setsOSFair2017 Training | FAIR metrics - Starring your data sets
OSFair2017 Training | FAIR metrics - Starring your data sets
 

Más de Sarah Jones

Más de Sarah Jones (20)

Data training tips and tricks
Data training tips and tricksData training tips and tricks
Data training tips and tricks
 
EOSC and libraries
EOSC and librariesEOSC and libraries
EOSC and libraries
 
EOSC Association priorities and activities
EOSC Association priorities and activitiesEOSC Association priorities and activities
EOSC Association priorities and activities
 
Managing and sharing data: lessons from the European context
Managing and sharing data: lessons from the European contextManaging and sharing data: lessons from the European context
Managing and sharing data: lessons from the European context
 
Reflections on Open Science
Reflections on Open ScienceReflections on Open Science
Reflections on Open Science
 
MAR comments analysis
MAR comments analysisMAR comments analysis
MAR comments analysis
 
Intro-EOSC.pptx
Intro-EOSC.pptxIntro-EOSC.pptx
Intro-EOSC.pptx
 
Why is EOSC so hard?
Why is EOSC so hard?Why is EOSC so hard?
Why is EOSC so hard?
 
Data Management Planning for researchers
Data Management Planning for researchersData Management Planning for researchers
Data Management Planning for researchers
 
Is Europe ready for Open Science
Is Europe ready for Open ScienceIs Europe ready for Open Science
Is Europe ready for Open Science
 
DMPonline: 10 years, 10 lessons
DMPonline: 10 years, 10 lessonsDMPonline: 10 years, 10 lessons
DMPonline: 10 years, 10 lessons
 
Do & don't of supporting Open Science
Do & don't of supporting Open ScienceDo & don't of supporting Open Science
Do & don't of supporting Open Science
 
It takes more than a village: lessons on building global research commons
It takes more than a village: lessons on building global research commonsIt takes more than a village: lessons on building global research commons
It takes more than a village: lessons on building global research commons
 
DMPTuuli - what's new?
DMPTuuli - what's new?DMPTuuli - what's new?
DMPTuuli - what's new?
 
DCC and FAIR initiatives
DCC and FAIR initiativesDCC and FAIR initiatives
DCC and FAIR initiatives
 
Reflections on EOSC through the mirror of ARDC
Reflections on EOSC through the mirror of ARDCReflections on EOSC through the mirror of ARDC
Reflections on EOSC through the mirror of ARDC
 
Future EOSC roadmap
Future EOSC roadmapFuture EOSC roadmap
Future EOSC roadmap
 
Global Open Research Commons IG
Global Open Research Commons IGGlobal Open Research Commons IG
Global Open Research Commons IG
 
EOSC work plan
EOSC work planEOSC work plan
EOSC work plan
 
Global Research Data Initiatives
Global Research Data InitiativesGlobal Research Data Initiatives
Global Research Data Initiatives
 

Último

Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 

Último (20)

Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
A Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source MilvusA Beginners Guide to Building a RAG App Using Open Source Milvus
A Beginners Guide to Building a RAG App Using Open Source Milvus
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 
FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024FWD Group - Insurer Innovation Award 2024
FWD Group - Insurer Innovation Award 2024
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024Manulife - Insurer Transformation Award 2024
Manulife - Insurer Transformation Award 2024
 
AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024AXA XL - Insurer Innovation Award Americas 2024
AXA XL - Insurer Innovation Award Americas 2024
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
Apidays Singapore 2024 - Scalable LLM APIs for AI and Generative AI Applicati...
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
 

The future of FAIR

  • 1. www.geant.org 1 | Click to edit Master title style • Click to edit Master text styles • Second level • Third level • Fourth level • Fifth level 01/07/2021 1 The Future of FAIR www.geant.org Sarah Jones EOSC Engagement Manager sarah.jones@geant.org Twitter: @sarahroams N8 library managers workshop Wednesday 30th June 2021
  • 2. What is FAIR? Image Israel Palacio https://unsplash.com/photos/P6FgiDNe6W4
  • 3. www.geant.org A set of principles to ensure that data are shared in a way that enables & enhances reuse, by humans and machines What is FAIR? Image CC-BY-SA by SangyaPundir
  • 4. www.geant.org What FAIR means: 15 principles Findable F1. (meta)data are assigned a globally unique and eternally persistent identifier. F2. data are described with rich metadata. F3. (meta)data are registered or indexed in a searchable resource. F4. metadata specify the data identifier. Interoperable I1. (meta)data use a formal, accessible, shared, and broadly applicable language for knowledge representation. I2. (meta)data use vocabularies that follow FAIR principles. I3. (meta)data include qualified references to other (meta)data. Accessible A1 (meta)data are retrievable by their identifier using a standardized communications protocol. A1.1 the protocol is open, free, and universally implementable. A1.2 the protocol allows for an authentication and authorization procedure, where necessary. A2 metadata are accessible, even when the data are no longer available. Reusable R1. meta(data) have a plurality of accurate and relevant attributes. R1.1. (meta)data are released with a clear and accessible data usage license. R1.2. (meta)data are associated with their provenance. R1.3. (meta)data meet domain-relevant community standards. Slide CC-BY by Erik Schultes, Leiden UMC doi: 10.1038/sdata.2016.18
  • 5. The FAIR data principles explained • Clarifications from the Dutch Techcentre for Life Sciences • Each principle is a link to further clarification, examples and context https://www.dtls.nl/fair-data/fair- principles-explained R1. Meta(data) are richly described with a plurality of accurate and relevant attributes • By giving data many ‘labels’, it will be much easier to find and reuse the data • Provide not just metadata that allows discovery, but also metadata that richly describes the context under which that data was generated • “plurality” indicates that metadata should be as generous as possible, even to the point of providing information that may seem irrelevant
  • 6. FAIR is nothing new • Various research communities have been sharing their data in a ‘FAIR’ way long before the term emerged • Meaningful and memorable articulation of concepts • Natural desire to want to be ‘fair’ • FAIR is gaining significant international traction
  • 7. Open data and FAIR data FAIR data Open data FAIR and Open are not synonymous. Data can be both, one or neither. Degrees of Open and FAIR And both are on a scale
  • 8. www.geant.org How do Open, FAIR & RDM intersect? Open FAIR data Managed data Internal Self-interest External Community benefit
  • 9. Open, FAIR and RDM • Paper explores overlaps between concepts of Open, FAIR and RDM. • Proposes using Open and FAIR as ways to engage researchers in managing data well, as this is a prerequisite for both. • Recommends making data FAIR and Open wherever possible Higman, R., Bangert, D. and Jones, S., 2019. Three camps, one destination: the intersections of research data management, FAIR and Open. Insights, 32(1), p.18. DOI: http://doi.org/10.1629/uksg.468
  • 10. Increasing uptake Image CC-BY by Ian Dooley https://unsplash.com/photos/DuBNA1QMpPA
  • 12. www.geant.org FAIR is a central part of EOSC • FAIR is the glue which enables us to federate data and services • Principles have been used as the basis for the EOSC Interoperability Framework 12
  • 13. Turning FAIR into Reality: Report and Action Plan - https://doi.org/10.2777/1524 Report and Action Plan: Take a holistic approach to lay out what needs to be done to make FAIR a reality, in general and for EOSC Addresses the following key areas: 1. Concepts for FAIR 2. Creating a FAIR culture 3. Creating a technical ecosystem for FAIR 4. Skills and capacity building 5. Incentives and metrics 6. Investment and sustainability Recommendations and Actions: 27 clear recommendations, structured by these topics, are supported by precise actions for stakeholders. Report is out! FAIR Expert Group FAIR Data Expert Group (2016-2018)
  • 14. www.geant.org FAIR WG of EOSC Exec Board (2018-2020) • Six recommendations for implementation of FAIR practice • EOSC Interoperability Framework • Persistent identifier policy for EOSC • FAIR metrics for EOSC • Recommendations on certifying services to enable FAIR https://www.eoscsecretariat.eu/working- groups/fair-working-group
  • 15. www.geant.org EOSC Association Task Forces… (2021 on) • FAIR metrics & data quality • Semantic interoperability • Interoperability of data & services • Research careers, recognition & credit • Data stewardship curricula and career paths • And more…. https://www.eosc.eu/news/call-members-eosc- association-task-forces 15 | Call for members closes on Friday 30 July 2021 at 18.00 CEST
  • 16. Many FAIR-related projects All funded by the European Commission clusters National initiatives • EOSC-Nordic • EOSC-Pillar • EOSC-synergy • ExPaNDS • NI4OS-Europe
  • 17. It’s all going swimmingly! 17 | Image CC-BY by Brian Matangelo https://unsplash.com/photos/gRof2_Ftu7A
  • 18. www.geant.org Most data isn’t managed, let alone Open or FAIR… 18 | Why?...
  • 19. www.geant.org For his most recent paper: 1. Double checking the main dataset and reformatting to submit to Dryad: 5 hours 2. Creating complementary file and preparing metadata: 3 hours 3. Submission of these two files and the metadata to Dryad: 45 minutes 4. Preparing a map of the locations: 1 hour 5. Submission of map to Figshare: 15 minutes 6. Cleaning up and documenting the code, uploading it to GitHub: 25 hours 7. Cost of archiving in Dryad: US$90 8. Page Charges: $600 It takes a lot of time and effort 19 | By Emilio Bruna http://brunalab.org/blog/2014/09/04/the- opportunity-cost-of-my-openscience-was-35- hours-690
  • 20. www.geant.org Recognition and rewards are not there yet 20 | It’s hard to overcome your personal investment.. It’s like giving away your baby Quote from a researcher at Glasgow University as part of the Incremental project
  • 21. Communities are at different stages of maturity • Some like astronomy and physics are well-organised • Others still need to develop standards • Tension between domain approaches and interoperability cross-domain https://doi.org/10.5281/ zenodo.1246815 https://doi.org/ 10.2777/986252
  • 22. How do we implement FAIR? Image Israel Palacio https://unsplash.com/photos/P6FgiDNe6W4
  • 23. • Findable - Persistent ID - Metadata online • Accessible - Data online - Restrictions where needed • Interoperable - Use standards, controlled vocabs - Common (open) formats • Reusable - Rich documentation - Clear usage licence FAIR data checklist https://doi.org/10.5281/zenodo.1065991
  • 24. Adopt a model for FAIR Digital Objects • Digital objects can include data, software, and other research resources • Universal use of PIDs • Use of common formats • Data accompanied by code • Rich metadata • Clear licensing
  • 25. www.geant.org Address culture AND technology Incentives Metrics Skills Investment Cultural and social aspects that drive the ecosystem and enact change Cloud of registries Two sides of one whole
  • 26. Support interoperability ● Support research communities to develop and maintain their interoperability frameworks for FAIR sharing ● Engage in international collaboration fora to do this ● Exchange of good practices, define case studies and success stories ● Common standards to support disciplinary frameworks and promote interoperability and reuse across disciplines
  • 27. www.geant.org Principle Researcher role Service role F1. Assign a PID Choose a relevant service Assign PIDs F2. Rich metadata Create appropriate metadata Link data and metadata F3. Indexed, searchable resource Choose a relevant service Ensure metadata search F4. Metadata specify PID Choose a relevant service Link metadata and PID A1. Standard protocol for retrieval Choose a relevant service Use standard protocols A1.1 Open, free protocol Choose a relevant service Use open, free protocols A1.2 Authenticated access if needed Choose a relevant service Provide authenticated access A2. Metadata remain accessible Choose a relevant service Provide tombstone records I1. Use of formal language (standards) Adopt standards Support appropriate standards I2. Metadata vocabularies are FAIR Advocate for FAIR metadata Support FAIR metadata I3. Qualified references (linked data) Cross-reference resources Cross-reference resources R1. Rich metadata (plurality of attributes) Enrich metadata/documentation Advocate for good metadata R1.1 Clear data usage licence Choose appropriate licence Require licences R1.2 Metadata covers provenance Say where data came from Require provenance R1.3 Community standards Adopt community standards Support community standards FAIR is a joint responsibility… Equal, if not more, responsibility on data services
  • 28. 1. Adopt relevant standards as you create data Researcher role 2. Create rich metadata and documentation which • conforms to community standards • explains provenance • assigns a clear usage licence • cross-links data, metadata, code and other resources 3. Choose appropriate data services which • assign Persistent Identifiers • enhance discoverability via indexes / catalogues • use standard protocols for (authenticated) access 4. Advocate for / contribute to community standards
  • 29. www.geant.org Institutional role 1. Raise awareness of community standards 2. Help researchers select appropriate data services 3. If running a repository: • assign Persistent Identifiers • ensure metadata specifies the PID • expose metadata via indexes / catalogues / harvesting… • use standard protocols for (authenticated) access • cross-reference resources • keep metadata accessible, even when data aren’t 4. Set requirements / advocate for good practice
  • 30. Inherent link: data and services In order for data to be FAIR, you need services that enable FAIR
  • 31. And a community responsibility…. 31 | As the global community adopts & becomes dependent on FAIR, the principles themselves need to be community-owned and governed
  • 32. www.geant.org Click to edit Master title style • Click to edit Master text styles • Second level • Third level • Fourth level • Fifth level 01/07/2021 32 Thank you www.geant.org Any questions? © GÉANT Association on behalf of the GN4 Phase 2 project (GN4-2). The research leading to these results has received funding from the European Union’s Horizon 2020 research and innovation programme under Grant Agreement No. 731122 (GN4-2). 32 |