SlideShare uma empresa Scribd logo
1 de 17
FAIR principles and
data management
planning
Hugo Besemer
AIMS Webinar
2017-05-25
FAIR principles and
data management
realities
Hugo Besemer
AIMS Webinar
2017-05-25
A FAIRLY short timeline
• January 2014 Workshop in Leiden (the Netherlands)
• 2014 Results on Force11 site
• 15 March 2016 Article in ‘Scientific data’
• 26 July 2016 H2020 Programme Guidelines
• December 2016 Webinar FAIR / repositories
Guiding Principles for Findable,
Accessible, Interoperable and Re-usable
Data Publishing version b1.0
Discussion about indicators of ‘FAIRness’
A bit longer timeline
What ‘FAIR’ does NOT want to be and
what it wants to achieve
• It is NOT a specification
• It is NOT a syntax (it aims to be syntax agnostic)
• It is meant to precede technology and other implementation choices
• In my own words : these guidelines aim to create a research data
environment that is FAIR to machines and humans
FF
to be findableto be findable
•F1. (meta)data are assigned a globally unique and
persistent identifier
•F2. data are described with rich metadata (defined by
R1 below)
•F3. metadata clearly and explicitly include the
identifier of the data it describes
•F4. (meta)data are registered or indexed in a
searchable resource
Proposed indicators F(indable)
• 1.No PID and no metadata/documentation
• 2.PID without or with insufficient* metadata
• 3.Sufficient* metadata without PID
• 4.PID with sufficient* metadata–Information on data provenance
• 5.PID, rich metadata and additional documentation–Additional
explanation of how data can be used
* Sufficient = enough metadata to understand what the data is about
F(indable) @ Wageningen
• Presently departments decide what data is published
• At best data that is underlying publications (pressure from journals
helps at lot….)
• There are ongoing (series of) datasets that are only known to insiders
AA
to be accessibleto be 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
Proposed indicators A(ccessible)
1.No user license / unclear conditions of reuse / metadata nor data are
accessible
2.Metadata are accessible (even when the data are not or no longer
available)
3.User restrictions apply (of any kind, including privacy, commercial
interests, embargo period, etc.)
4.Public Access (after registration)
5.Open Access (unrestricted, CC0 –perhaps also CCby?)
Accessible @ Wageningen
• Probably the most important problem: who decides who can get
access (and who will grant the permission technically)
• We have been awaiting guidelines on ownership / usage rights for
three years.
II
to be interoperableto be 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
Proposed indicators I(nteroperable)
1. Proprietary, non-open format data
2.Proprietary format, accepted by DSA Certified Trusted Data
Repository
3.Non-proprietary, open format (= “preferred” or “archival” format)
4.Data is additionally harmonized/ standardized, using standard
vocabularies
5.Data is additionally linked to other data to provide context
I(nteroperable) @ Wageningen
• In response to a blog about this the people working with ontologies
met for the first time
• Their main concerns
• How to find the relevant ontologies
• Can we rely on them to justify investments (consistency, process of
maintenance
• H2020 coordinators have no clue what all this is about
RR
to be Reusable:to be Reusable:
•R1. meta(data) are richly described with 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 detailed
provenance
•R1.3. (meta)data meet domain-relevant community
standards
Also in F4
Also in F2, I1
Also in I1
Proposed indicators R(e-usable)
“First we attempted to operationalise R – Re-usable as well ... but we
changed our mind
Reusable – is it a separate dimension? Partly subjective: it
depends on what you want to use the data for!”
References
Guiding principles for findable, accessible, interoperable and re-usable data publishing version B1.0
https://www.force11.org/fairprinciples
The FAIR Guiding Principles for scientific data management and stewardship
https://www.nature.com/articles/sdata201618
Guidelines on FAIR Data Management in Horizon 2020
http://ec.europa.eu/research/participants/data/ref/h2020/grants_manual/hi/oa_pilot/h2020-hi-oa-data-mgt_en.pdf
FAIR Data in Trustworthy Data Repositories Webinar
https://eudat.eu/events/webinar/fair-data-in-trustworthy-data-repositories-webinar
Two blogs about FAIR @ Wageningen
•https://weblog.wur.eu/openscience/can-wageningen-fair/
•https://weblog.wur.eu/openscience/vocabularies-and-the-i-in-fair-data-principles/

Mais conteúdo relacionado

Mais procurados

FAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to PracticeFAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to PracticeTom Plasterer
 
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)Tom Plasterer
 
FAIR Data Management and FAIR Data Sharing
FAIR Data Management and FAIR Data SharingFAIR Data Management and FAIR Data Sharing
FAIR Data Management and FAIR Data SharingMerce Crosas
 
BioPharma and FAIR Data, a Collaborative Advantage
BioPharma and FAIR Data, a Collaborative AdvantageBioPharma and FAIR Data, a Collaborative Advantage
BioPharma and FAIR Data, a Collaborative AdvantageTom Plasterer
 
Towards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRnessTowards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRnessMichel Dumontier
 
Dataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* DataDataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* DataTom Plasterer
 
Data management planning - Storage solutions
Data management planning - Storage solutionsData management planning - Storage solutions
Data management planning - Storage solutionsMari Elisa Kuusniemi
 
FAIRDOM data management support for ERACoBioTech Proposals
FAIRDOM data management support for ERACoBioTech ProposalsFAIRDOM data management support for ERACoBioTech Proposals
FAIRDOM data management support for ERACoBioTech ProposalsFAIRDOM
 
CARARE: Can I use this data? FAIR into practice
CARARE: Can I use this data? FAIR into practiceCARARE: Can I use this data? FAIR into practice
CARARE: Can I use this data? FAIR into practiceCARARE
 
Managing sensitive data at the University of Bristol
Managing sensitive data at the University of BristolManaging sensitive data at the University of Bristol
Managing sensitive data at the University of BristolJisc RDM
 
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) dataARDC
 
Ict journal layout
Ict journal layoutIct journal layout
Ict journal layoutFifeCollege
 
Developing and assessing FAIR digital resources
Developing and assessing FAIR digital resourcesDeveloping and assessing FAIR digital resources
Developing and assessing FAIR digital resourcesMichel Dumontier
 
Advancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIRAdvancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIRMichel Dumontier
 

Mais procurados (20)

FAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to PracticeFAIR Data Knowledge Graphs–from Theory to Practice
FAIR Data Knowledge Graphs–from Theory to Practice
 
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)
 
FAIR Data ecosystem
FAIR Data ecosystemFAIR Data ecosystem
FAIR Data ecosystem
 
FAIR Data Management and FAIR Data Sharing
FAIR Data Management and FAIR Data SharingFAIR Data Management and FAIR Data Sharing
FAIR Data Management and FAIR Data Sharing
 
DTL Partners Event - FAIR Data Tech overview - Day 1
DTL Partners Event - FAIR Data Tech overview - Day 1DTL Partners Event - FAIR Data Tech overview - Day 1
DTL Partners Event - FAIR Data Tech overview - Day 1
 
Mendeley Data FAIR hackathon
Mendeley Data FAIR hackathonMendeley Data FAIR hackathon
Mendeley Data FAIR hackathon
 
BioPharma and FAIR Data, a Collaborative Advantage
BioPharma and FAIR Data, a Collaborative AdvantageBioPharma and FAIR Data, a Collaborative Advantage
BioPharma and FAIR Data, a Collaborative Advantage
 
Towards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRnessTowards metrics to assess and encourage FAIRness
Towards metrics to assess and encourage FAIRness
 
Dataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* DataDataset Catalogs as a Foundation for FAIR* Data
Dataset Catalogs as a Foundation for FAIR* Data
 
Data management plan template
Data management plan templateData management plan template
Data management plan template
 
Data management planning - Storage solutions
Data management planning - Storage solutionsData management planning - Storage solutions
Data management planning - Storage solutions
 
FAIRDOM data management support for ERACoBioTech Proposals
FAIRDOM data management support for ERACoBioTech ProposalsFAIRDOM data management support for ERACoBioTech Proposals
FAIRDOM data management support for ERACoBioTech Proposals
 
CARARE: Can I use this data? FAIR into practice
CARARE: Can I use this data? FAIR into practiceCARARE: Can I use this data? FAIR into practice
CARARE: Can I use this data? FAIR into practice
 
Managing sensitive data at the University of Bristol
Managing sensitive data at the University of BristolManaging sensitive data at the University of Bristol
Managing sensitive data at the University of Bristol
 
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
 
Fair data vs 5 star open data final
Fair data vs 5 star open data finalFair data vs 5 star open data final
Fair data vs 5 star open data final
 
ER&L-S45-RDADataPrivacy-April5
ER&L-S45-RDADataPrivacy-April5ER&L-S45-RDADataPrivacy-April5
ER&L-S45-RDADataPrivacy-April5
 
Ict journal layout
Ict journal layoutIct journal layout
Ict journal layout
 
Developing and assessing FAIR digital resources
Developing and assessing FAIR digital resourcesDeveloping and assessing FAIR digital resources
Developing and assessing FAIR digital resources
 
Advancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIRAdvancing Biomedical Knowledge Reuse with FAIR
Advancing Biomedical Knowledge Reuse with FAIR
 

Semelhante a Webinar@AIMS_FAIR Principles and Data Management Planning

The future of FAIR
The future of FAIRThe future of FAIR
The future of FAIRSarah Jones
 
OpenAIRE webinar on Open Research Data in H2020 (OAW2016)
OpenAIRE webinar on Open Research Data in H2020 (OAW2016)OpenAIRE webinar on Open Research Data in H2020 (OAW2016)
OpenAIRE webinar on Open Research Data in H2020 (OAW2016)OpenAIRE
 
Increasing the Reputation of your Published Data on the Web
Increasing the Reputation of your Published Data on the WebIncreasing the Reputation of your Published Data on the Web
Increasing the Reputation of your Published Data on the WebEric Stephan
 
John morrissey c3 dis fair working data.pptx
John morrissey c3 dis fair working data.pptxJohn morrissey c3 dis fair working data.pptx
John morrissey c3 dis fair working data.pptxARDC
 
EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...
EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...
EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...EUDAT
 
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 setsOpen Science Fair
 
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 FAIRSarah Jones
 
FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...
FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...
FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...EUDAT
 
Open Data: Strategies for Research Data Management (and Planning)
Open Data: Strategies for Research Data  Management (and Planning)Open Data: Strategies for Research Data  Management (and Planning)
Open Data: Strategies for Research Data Management (and Planning)Martin Donnelly
 
OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation Research Data Alliance
 
OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation Research Data Alliance
 
Horizon 2020 open access and open data mandates
Horizon 2020 open access and open data mandatesHorizon 2020 open access and open data mandates
Horizon 2020 open access and open data mandatesMartin Donnelly
 
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?LIBER Europe
 
Research Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDATResearch Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDATTony Ross-Hellauer
 
Research Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDATResearch Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDATOpenAIRE
 
Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu |
Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu | Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu |
Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu | EUDAT
 
ERA CoBioTech Data Management Webinar
ERA CoBioTech Data Management WebinarERA CoBioTech Data Management Webinar
ERA CoBioTech Data Management WebinarFAIRDOM
 

Semelhante a Webinar@AIMS_FAIR Principles and Data Management Planning (20)

The future of FAIR
The future of FAIRThe future of FAIR
The future of FAIR
 
FAIR data
FAIR dataFAIR data
FAIR data
 
OpenAIRE webinar on Open Research Data in H2020 (OAW2016)
OpenAIRE webinar on Open Research Data in H2020 (OAW2016)OpenAIRE webinar on Open Research Data in H2020 (OAW2016)
OpenAIRE webinar on Open Research Data in H2020 (OAW2016)
 
Increasing the Reputation of your Published Data on the Web
Increasing the Reputation of your Published Data on the WebIncreasing the Reputation of your Published Data on the Web
Increasing the Reputation of your Published Data on the Web
 
John morrissey c3 dis fair working data.pptx
John morrissey c3 dis fair working data.pptxJohn morrissey c3 dis fair working data.pptx
John morrissey c3 dis fair working data.pptx
 
EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...
EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...
EUDAT & OpenAIRE Webinar: How to write a Data Management Plan - July 7, 2016|...
 
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
 
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
 
FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...
FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...
FAIR Data in Trustworthy Data Repositories Webinar - 12-13 December 2016| www...
 
Open Data: Strategies for Research Data Management (and Planning)
Open Data: Strategies for Research Data  Management (and Planning)Open Data: Strategies for Research Data  Management (and Planning)
Open Data: Strategies for Research Data Management (and Planning)
 
DTL Integrator's meeting
DTL Integrator's meetingDTL Integrator's meeting
DTL Integrator's meeting
 
OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation
 
OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation OpenAIRE and Eudat services and tools to support FAIR DMP implementation
OpenAIRE and Eudat services and tools to support FAIR DMP implementation
 
Horizon 2020 open access and open data mandates
Horizon 2020 open access and open data mandatesHorizon 2020 open access and open data mandates
Horizon 2020 open access and open data mandates
 
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?
 
FAIR-Principles-and-ELN.pdf
FAIR-Principles-and-ELN.pdfFAIR-Principles-and-ELN.pdf
FAIR-Principles-and-ELN.pdf
 
Research Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDATResearch Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDAT
 
Research Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDATResearch Data Management: An Introductory Webinar from OpenAIRE and EUDAT
Research Data Management: An Introductory Webinar from OpenAIRE and EUDAT
 
Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu |
Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu | Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu |
Research Data Management Introduction: EUDAT/Open AIRE Webinar| www.eudat.eu |
 
ERA CoBioTech Data Management Webinar
ERA CoBioTech Data Management WebinarERA CoBioTech Data Management Webinar
ERA CoBioTech Data Management Webinar
 

Mais de AIMS (Agricultural Information Management Standards)

Mais de AIMS (Agricultural Information Management Standards) (20)

Linked Data Competency Index : Mapping the field for teachers and learners
 Linked Data Competency Index : Mapping the field for teachers and learners Linked Data Competency Index : Mapping the field for teachers and learners
Linked Data Competency Index : Mapping the field for teachers and learners
 
Metadata as Standard: improving Interoperability through the Research Data Al...
Metadata as Standard: improving Interoperability through the Research Data Al...Metadata as Standard: improving Interoperability through the Research Data Al...
Metadata as Standard: improving Interoperability through the Research Data Al...
 
Assigning Digital Object Identifiers (DOIs) to Plant Genetic Resources
Assigning Digital Object Identifiers (DOIs) to Plant Genetic ResourcesAssigning Digital Object Identifiers (DOIs) to Plant Genetic Resources
Assigning Digital Object Identifiers (DOIs) to Plant Genetic Resources
 
VocBench 3: some insights on the forthcoming release
VocBench 3: some insights on the forthcoming release VocBench 3: some insights on the forthcoming release
VocBench 3: some insights on the forthcoming release
 
The case for Digital Objects Identifiers (DOIs) in support of research activi...
The case for Digital Objects Identifiers (DOIs) in support of research activi...The case for Digital Objects Identifiers (DOIs) in support of research activi...
The case for Digital Objects Identifiers (DOIs) in support of research activi...
 
Webinar@ASIRA: How to foster openness from an academic library
Webinar@ASIRA: How to foster openness from an academic library Webinar@ASIRA: How to foster openness from an academic library
Webinar@ASIRA: How to foster openness from an academic library
 
Webinar@ASIRA: A Practitioners Approach to Open Data for Agricultural Research
Webinar@ASIRA: A Practitioners Approach to Open Data for Agricultural Research Webinar@ASIRA: A Practitioners Approach to Open Data for Agricultural Research
Webinar@ASIRA: A Practitioners Approach to Open Data for Agricultural Research
 
Webinar@ASIRA: AuthorAID: Supporting Developing Country Researchers in Publis...
Webinar@ASIRA: AuthorAID: Supporting Developing Country Researchers in Publis...Webinar@ASIRA: AuthorAID: Supporting Developing Country Researchers in Publis...
Webinar@ASIRA: AuthorAID: Supporting Developing Country Researchers in Publis...
 
Webinar@ASIRA: Introduction to Using TEEAL to Access Agricultural Journals
Webinar@ASIRA: Introduction to Using TEEAL to Access Agricultural Journals Webinar@ASIRA: Introduction to Using TEEAL to Access Agricultural Journals
Webinar@ASIRA: Introduction to Using TEEAL to Access Agricultural Journals
 
Webinar@ASIRA: Access to Global Online Research in Agriculture (AGORA)
Webinar@ASIRA: Access to Global Online Research in Agriculture (AGORA) Webinar@ASIRA: Access to Global Online Research in Agriculture (AGORA)
Webinar@ASIRA: Access to Global Online Research in Agriculture (AGORA)
 
Webinar@ASIRA: AGRIS: Providing Access to Agricultural Research and Technolog...
Webinar@ASIRA: AGRIS: Providing Access to Agricultural Research and Technolog...Webinar@ASIRA: AGRIS: Providing Access to Agricultural Research and Technolog...
Webinar@ASIRA: AGRIS: Providing Access to Agricultural Research and Technolog...
 
Webinar@ASIRA: New Roles for Changing Times UNAM Subject Librarians in Context
Webinar@ASIRA: New Roles for Changing Times UNAM Subject Librarians in Context Webinar@ASIRA: New Roles for Changing Times UNAM Subject Librarians in Context
Webinar@ASIRA: New Roles for Changing Times UNAM Subject Librarians in Context
 
Webinar@ASIRA: Emerging Themes in Agricultural Research Publishing
Webinar@ASIRA: Emerging Themes in Agricultural Research PublishingWebinar@ASIRA: Emerging Themes in Agricultural Research Publishing
Webinar@ASIRA: Emerging Themes in Agricultural Research Publishing
 
Webinar@AIMS: OKAD & F1000Research: a very different approach to publishing a...
Webinar@AIMS: OKAD & F1000Research: a very different approach to publishing a...Webinar@AIMS: OKAD & F1000Research: a very different approach to publishing a...
Webinar@AIMS: OKAD & F1000Research: a very different approach to publishing a...
 
Using AGRIS as a portal of choice to access agricultural research and technol...
Using AGRIS as a portal of choice to access agricultural research and technol...Using AGRIS as a portal of choice to access agricultural research and technol...
Using AGRIS as a portal of choice to access agricultural research and technol...
 
Research4Life: La bibliothèque qui ouvre ses portes
Research4Life: La bibliothèque qui ouvre ses portesResearch4Life: La bibliothèque qui ouvre ses portes
Research4Life: La bibliothèque qui ouvre ses portes
 
Publishing skos concept schemes with skosmos
Publishing skos concept schemes with skosmosPublishing skos concept schemes with skosmos
Publishing skos concept schemes with skosmos
 
Research4Life: La biblioteca que abre puertas
Research4Life: La biblioteca que abre puertasResearch4Life: La biblioteca que abre puertas
Research4Life: La biblioteca que abre puertas
 
Research4Life: The library that opens doors
Research4Life: The library that opens doorsResearch4Life: The library that opens doors
Research4Life: The library that opens doors
 
Webinar@AIMS: Perspective on Big Data in the CGIAR
Webinar@AIMS: Perspective on Big Data in the CGIARWebinar@AIMS: Perspective on Big Data in the CGIAR
Webinar@AIMS: Perspective on Big Data in the CGIAR
 

Último

Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspectsmuralinath2
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Silpa
 
Cyanide resistant respiration pathway.pptx
Cyanide resistant respiration pathway.pptxCyanide resistant respiration pathway.pptx
Cyanide resistant respiration pathway.pptxSilpa
 
Module for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learningModule for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learninglevieagacer
 
Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.Silpa
 
POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.Silpa
 
Phenolics: types, biosynthesis and functions.
Phenolics: types, biosynthesis and functions.Phenolics: types, biosynthesis and functions.
Phenolics: types, biosynthesis and functions.Silpa
 
Role of AI in seed science Predictive modelling and Beyond.pptx
Role of AI in seed science  Predictive modelling and  Beyond.pptxRole of AI in seed science  Predictive modelling and  Beyond.pptx
Role of AI in seed science Predictive modelling and Beyond.pptxArvind Kumar
 
CYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptxCYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptxSilpa
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsOrtegaSyrineMay
 
Gwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRL
Gwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRLGwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRL
Gwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRLkantirani197
 
The Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxThe Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxseri bangash
 
Chemistry 5th semester paper 1st Notes.pdf
Chemistry 5th semester paper 1st Notes.pdfChemistry 5th semester paper 1st Notes.pdf
Chemistry 5th semester paper 1st Notes.pdfSumit Kumar yadav
 
Genetics and epigenetics of ADHD and comorbid conditions
Genetics and epigenetics of ADHD and comorbid conditionsGenetics and epigenetics of ADHD and comorbid conditions
Genetics and epigenetics of ADHD and comorbid conditionsbassianu17
 
Digital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptxDigital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptxMohamedFarag457087
 
300003-World Science Day For Peace And Development.pptx
300003-World Science Day For Peace And Development.pptx300003-World Science Day For Peace And Development.pptx
300003-World Science Day For Peace And Development.pptxryanrooker
 
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryAlex Henderson
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptxSilpa
 

Último (20)

Dr. E. Muralinath_ Blood indices_clinical aspects
Dr. E. Muralinath_ Blood indices_clinical  aspectsDr. E. Muralinath_ Blood indices_clinical  aspects
Dr. E. Muralinath_ Blood indices_clinical aspects
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.
 
Cyanide resistant respiration pathway.pptx
Cyanide resistant respiration pathway.pptxCyanide resistant respiration pathway.pptx
Cyanide resistant respiration pathway.pptx
 
Site Acceptance Test .
Site Acceptance Test                    .Site Acceptance Test                    .
Site Acceptance Test .
 
Module for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learningModule for Grade 9 for Asynchronous/Distance learning
Module for Grade 9 for Asynchronous/Distance learning
 
Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.Reboulia: features, anatomy, morphology etc.
Reboulia: features, anatomy, morphology etc.
 
POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.
 
Phenolics: types, biosynthesis and functions.
Phenolics: types, biosynthesis and functions.Phenolics: types, biosynthesis and functions.
Phenolics: types, biosynthesis and functions.
 
Role of AI in seed science Predictive modelling and Beyond.pptx
Role of AI in seed science  Predictive modelling and  Beyond.pptxRole of AI in seed science  Predictive modelling and  Beyond.pptx
Role of AI in seed science Predictive modelling and Beyond.pptx
 
CYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptxCYTOGENETIC MAP................ ppt.pptx
CYTOGENETIC MAP................ ppt.pptx
 
Grade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its FunctionsGrade 7 - Lesson 1 - Microscope and Its Functions
Grade 7 - Lesson 1 - Microscope and Its Functions
 
Gwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRL
Gwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRLGwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRL
Gwalior ❤CALL GIRL 84099*07087 ❤CALL GIRLS IN Gwalior ESCORT SERVICE❤CALL GIRL
 
The Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxThe Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptx
 
Chemistry 5th semester paper 1st Notes.pdf
Chemistry 5th semester paper 1st Notes.pdfChemistry 5th semester paper 1st Notes.pdf
Chemistry 5th semester paper 1st Notes.pdf
 
PATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICE
PATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICEPATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICE
PATNA CALL GIRLS 8617370543 LOW PRICE ESCORT SERVICE
 
Genetics and epigenetics of ADHD and comorbid conditions
Genetics and epigenetics of ADHD and comorbid conditionsGenetics and epigenetics of ADHD and comorbid conditions
Genetics and epigenetics of ADHD and comorbid conditions
 
Digital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptxDigital Dentistry.Digital Dentistryvv.pptx
Digital Dentistry.Digital Dentistryvv.pptx
 
300003-World Science Day For Peace And Development.pptx
300003-World Science Day For Peace And Development.pptx300003-World Science Day For Peace And Development.pptx
300003-World Science Day For Peace And Development.pptx
 
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and SpectrometryFAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
FAIRSpectra - Enabling the FAIRification of Spectroscopy and Spectrometry
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptx
 

Webinar@AIMS_FAIR Principles and Data Management Planning

  • 1. FAIR principles and data management planning Hugo Besemer AIMS Webinar 2017-05-25
  • 2. FAIR principles and data management realities Hugo Besemer AIMS Webinar 2017-05-25
  • 3. A FAIRLY short timeline • January 2014 Workshop in Leiden (the Netherlands) • 2014 Results on Force11 site • 15 March 2016 Article in ‘Scientific data’ • 26 July 2016 H2020 Programme Guidelines • December 2016 Webinar FAIR / repositories Guiding Principles for Findable, Accessible, Interoperable and Re-usable Data Publishing version b1.0 Discussion about indicators of ‘FAIRness’
  • 4. A bit longer timeline
  • 5. What ‘FAIR’ does NOT want to be and what it wants to achieve • It is NOT a specification • It is NOT a syntax (it aims to be syntax agnostic) • It is meant to precede technology and other implementation choices • In my own words : these guidelines aim to create a research data environment that is FAIR to machines and humans
  • 6. FF to be findableto be findable •F1. (meta)data are assigned a globally unique and persistent identifier •F2. data are described with rich metadata (defined by R1 below) •F3. metadata clearly and explicitly include the identifier of the data it describes •F4. (meta)data are registered or indexed in a searchable resource
  • 7. Proposed indicators F(indable) • 1.No PID and no metadata/documentation • 2.PID without or with insufficient* metadata • 3.Sufficient* metadata without PID • 4.PID with sufficient* metadata–Information on data provenance • 5.PID, rich metadata and additional documentation–Additional explanation of how data can be used * Sufficient = enough metadata to understand what the data is about
  • 8. F(indable) @ Wageningen • Presently departments decide what data is published • At best data that is underlying publications (pressure from journals helps at lot….) • There are ongoing (series of) datasets that are only known to insiders
  • 9. AA to be accessibleto be 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
  • 10. Proposed indicators A(ccessible) 1.No user license / unclear conditions of reuse / metadata nor data are accessible 2.Metadata are accessible (even when the data are not or no longer available) 3.User restrictions apply (of any kind, including privacy, commercial interests, embargo period, etc.) 4.Public Access (after registration) 5.Open Access (unrestricted, CC0 –perhaps also CCby?)
  • 11. Accessible @ Wageningen • Probably the most important problem: who decides who can get access (and who will grant the permission technically) • We have been awaiting guidelines on ownership / usage rights for three years.
  • 12. II to be interoperableto be 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
  • 13. Proposed indicators I(nteroperable) 1. Proprietary, non-open format data 2.Proprietary format, accepted by DSA Certified Trusted Data Repository 3.Non-proprietary, open format (= “preferred” or “archival” format) 4.Data is additionally harmonized/ standardized, using standard vocabularies 5.Data is additionally linked to other data to provide context
  • 14. I(nteroperable) @ Wageningen • In response to a blog about this the people working with ontologies met for the first time • Their main concerns • How to find the relevant ontologies • Can we rely on them to justify investments (consistency, process of maintenance • H2020 coordinators have no clue what all this is about
  • 15. RR to be Reusable:to be Reusable: •R1. meta(data) are richly described with 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 detailed provenance •R1.3. (meta)data meet domain-relevant community standards Also in F4 Also in F2, I1 Also in I1
  • 16. Proposed indicators R(e-usable) “First we attempted to operationalise R – Re-usable as well ... but we changed our mind Reusable – is it a separate dimension? Partly subjective: it depends on what you want to use the data for!”
  • 17. References Guiding principles for findable, accessible, interoperable and re-usable data publishing version B1.0 https://www.force11.org/fairprinciples The FAIR Guiding Principles for scientific data management and stewardship https://www.nature.com/articles/sdata201618 Guidelines on FAIR Data Management in Horizon 2020 http://ec.europa.eu/research/participants/data/ref/h2020/grants_manual/hi/oa_pilot/h2020-hi-oa-data-mgt_en.pdf FAIR Data in Trustworthy Data Repositories Webinar https://eudat.eu/events/webinar/fair-data-in-trustworthy-data-repositories-webinar Two blogs about FAIR @ Wageningen •https://weblog.wur.eu/openscience/can-wageningen-fair/ •https://weblog.wur.eu/openscience/vocabularies-and-the-i-in-fair-data-principles/