SlideShare a Scribd company logo
1 of 14
Framework to develop core
FAIR metrics
FAIR Metrics Working Group
Presentation to the NIH Commons Framework
Working Group on FAIR Metrics on July 11, 2017
http://fairmetrics.org
Members
Luiz Olavo Bonino, VU/DTL
Peter Doorn, DANS
Michel Dumontier, Maastricht University
Susanna Sansone, University of Oxford
Erik Schultes, DTL
Mark Wilkinson, Universidad Politécnica de Madrid
Motivation
We believe that increasing the FAIRness of digital resources
will maximize their discovery and reuse.
An assessment can provide the feedback needed to
characterize and improve the FAIRness of a digital resource.
To evaluate the FAIRness of a digital object we need metrics.
Objective
We seek to develop a set of core metrics that can be
utilized in a computational infrastructure to
automatically assess the FAIRness of any digital
resource.
Milestones
● Establish charter (done)
● Establish guidelines for the development of the FAIR metrics (done)
● Establish a metric proposal form (done)
● Develop a set of core FAIR metrics (ongoing)
● Prepare and discuss a Release Candidate for proposed FAIR
metrics and a prototype implementation (Sept 2017)
● Community-wide implementation and review (Oct-Nov, 2017)
● Revision of FAIR metrics and documentation (Jan-Feb 2018)
● Prepare and discuss a Final Recommendation and Reference
Implementation the core set of FAIR metrics (March 2018)
Guidelines
We focus on the development of metrics to assess
compliance to each and every one of the FAIR principles.
Guidelines to drive the development of
a set of core FAIR metrics
Clear: so that anybody can understand what is meant
Realistic: so that anybody can report on what is being asked of them
Discriminating: so that we can distinguish the degree to which a
resource meets the FAIR principles while providing instruction to
maximize their value
Measurable: The assessment can be made in an objective, quantitative,
machine-interpretable, scalable and reproducible manner →
transparency of what is being measured, and how.
Guidelines
We focus on the development of metrics to assess
compliance to each and every one of the FAIR principles.
However, compliance is distinct from impact. We do not believe
that all digital resources are of equal quality, nonetheless, when
any resource is created and published, it should be maximally
discoverable and reusable as per the FAIR principles. Abiding by
the FAIR principles makes unequal resources discoverable, and
this will aid in the assessment of their quality. However, any metric
that assess the popularity of a digital resource is not a measure of
its FAIRness.
Process to establish metrics
For each FAIR principle:
○ Propose one or more possible metrics
○ Fill out the information in the metric proposal form
○ Discuss the merits of the proposal
■ does it conform to the FAIR metric guidelines? (clear,
realistic, discriminating, measureable, universal)
■ is it atomic or does it comprise a number of different or
complementary aspects?
○ Iteratively refine and test the metric proposal until consensus
is achieved
~3.5hrs per metric * 15 principles = 62.5h * 6 people = 315 person hrs
FAIR Metric Proposal Form https://goo.gl/FiQQSc
Milestones
● Establish charter (done)
● Establish guidelines for the development of the FAIR metrics (done)
● Establish a metric proposal form (done)
● Develop a set of core FAIR metrics (ongoing)
● Prepare and discuss a Release Candidate for proposed FAIR
metrics and a prototype implementation (Sept 2017)
● Community-wide implementation and review (Oct-Nov, 2017)
● Revision of FAIR metrics and documentation (Jan-Feb 2018)
● Prepare and discuss a Final Recommendation and Reference
Implementation the core set of FAIR metrics (March 2018)
Discussion

More Related Content

What's hot

The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...Michel Dumontier
 
FAIR Data Knowledge Graphs
FAIR Data Knowledge GraphsFAIR Data Knowledge Graphs
FAIR Data Knowledge GraphsTom Plasterer
 
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...Michel Dumontier
 
PA webinar on benefits & costs of FAIR implementation in life sciences
PA webinar on benefits & costs of FAIR implementation in life sciences PA webinar on benefits & costs of FAIR implementation in life sciences
PA webinar on benefits & costs of FAIR implementation in life sciences Pistoia Alliance
 
The Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health SystemThe Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health SystemMichel Dumontier
 
Data quality supporting AI in Life Sciences webinar 10 dec 2018
Data quality supporting AI in Life Sciences webinar 10 dec 2018Data quality supporting AI in Life Sciences webinar 10 dec 2018
Data quality supporting AI in Life Sciences webinar 10 dec 2018Pistoia Alliance
 
FAIR Data Experiences - Kees van Bochove - The Hyve
FAIR Data Experiences - Kees van Bochove - The HyveFAIR Data Experiences - Kees van Bochove - The Hyve
FAIR Data Experiences - Kees van Bochove - The HyveKees van Bochove
 
Data market evolution, a future shaped by FAIR
Data market evolution, a future shaped by FAIRData market evolution, a future shaped by FAIR
Data market evolution, a future shaped by FAIRPistoia Alliance
 
Fair webinar, Ted slater: progress towards commercial fair data products and ...
Fair webinar, Ted slater: progress towards commercial fair data products and ...Fair webinar, Ted slater: progress towards commercial fair data products and ...
Fair webinar, Ted slater: progress towards commercial fair data products and ...Pistoia Alliance
 
Darwin ai covid-net mitre
Darwin ai   covid-net mitreDarwin ai   covid-net mitre
Darwin ai covid-net mitreianmitch
 
Pistoia Alliance conference April 2016: Big Data: Mathew Woodwark
Pistoia Alliance conference April 2016: Big Data: Mathew WoodwarkPistoia Alliance conference April 2016: Big Data: Mathew Woodwark
Pistoia Alliance conference April 2016: Big Data: Mathew WoodwarkPistoia Alliance
 
Pistoia Alliance conference April 2016: Big Data: Eric Little
Pistoia Alliance conference April 2016: Big Data: Eric LittlePistoia Alliance conference April 2016: Big Data: Eric Little
Pistoia Alliance conference April 2016: Big Data: Eric LittlePistoia Alliance
 
#opendata Back to the future
#opendata Back to the future#opendata Back to the future
#opendata Back to the futureSlim Turki, Dr.
 
ODIN: Connecting research and researchers
ODIN: Connecting research and researchersODIN: Connecting research and researchers
ODIN: Connecting research and researchersSergio Ruiz
 
Navigating the data management ecosystem - Dan Valen
Navigating the data management ecosystem - Dan ValenNavigating the data management ecosystem - Dan Valen
Navigating the data management ecosystem - Dan ValenDigital Science
 
Big Data (SOCIOMETRIC METHODS FOR RELEVANCY ANALYSIS OF LONG TAIL SCIENCE D...
Big Data (SOCIOMETRIC METHODS FOR  RELEVANCY ANALYSIS OF LONG TAIL  SCIENCE D...Big Data (SOCIOMETRIC METHODS FOR  RELEVANCY ANALYSIS OF LONG TAIL  SCIENCE D...
Big Data (SOCIOMETRIC METHODS FOR RELEVANCY ANALYSIS OF LONG TAIL SCIENCE D...AKSHAY BHAGAT
 

What's hot (20)

The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...The Future of FAIR Data: An international social, legal and technological inf...
The Future of FAIR Data: An international social, legal and technological inf...
 
FAIR Data Knowledge Graphs
FAIR Data Knowledge GraphsFAIR Data Knowledge Graphs
FAIR Data Knowledge Graphs
 
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
CIKM2020 Keynote: Accelerating discovery science with an Internet of FAIR dat...
 
PA webinar on benefits & costs of FAIR implementation in life sciences
PA webinar on benefits & costs of FAIR implementation in life sciences PA webinar on benefits & costs of FAIR implementation in life sciences
PA webinar on benefits & costs of FAIR implementation in life sciences
 
The Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health SystemThe Role of the FAIR Guiding Principles for an effective Learning Health System
The Role of the FAIR Guiding Principles for an effective Learning Health System
 
Data quality supporting AI in Life Sciences webinar 10 dec 2018
Data quality supporting AI in Life Sciences webinar 10 dec 2018Data quality supporting AI in Life Sciences webinar 10 dec 2018
Data quality supporting AI in Life Sciences webinar 10 dec 2018
 
FAIR Data Experiences - Kees van Bochove - The Hyve
FAIR Data Experiences - Kees van Bochove - The HyveFAIR Data Experiences - Kees van Bochove - The Hyve
FAIR Data Experiences - Kees van Bochove - The Hyve
 
Data market evolution, a future shaped by FAIR
Data market evolution, a future shaped by FAIRData market evolution, a future shaped by FAIR
Data market evolution, a future shaped by FAIR
 
Fair webinar, Ted slater: progress towards commercial fair data products and ...
Fair webinar, Ted slater: progress towards commercial fair data products and ...Fair webinar, Ted slater: progress towards commercial fair data products and ...
Fair webinar, Ted slater: progress towards commercial fair data products and ...
 
IC-SDV 2019: OntoChem
IC-SDV 2019: OntoChemIC-SDV 2019: OntoChem
IC-SDV 2019: OntoChem
 
Darwin ai covid-net mitre
Darwin ai   covid-net mitreDarwin ai   covid-net mitre
Darwin ai covid-net mitre
 
Pistoia Alliance conference April 2016: Big Data: Mathew Woodwark
Pistoia Alliance conference April 2016: Big Data: Mathew WoodwarkPistoia Alliance conference April 2016: Big Data: Mathew Woodwark
Pistoia Alliance conference April 2016: Big Data: Mathew Woodwark
 
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
 
Kohlmeier "Innovations in Academic Search & Discovery - A Case Study From the...
Kohlmeier "Innovations in Academic Search & Discovery - A Case Study From the...Kohlmeier "Innovations in Academic Search & Discovery - A Case Study From the...
Kohlmeier "Innovations in Academic Search & Discovery - A Case Study From the...
 
Hahn "Wikidata as a hub to library linked data re-use"
Hahn "Wikidata as a hub to library linked data re-use"Hahn "Wikidata as a hub to library linked data re-use"
Hahn "Wikidata as a hub to library linked data re-use"
 
Pistoia Alliance conference April 2016: Big Data: Eric Little
Pistoia Alliance conference April 2016: Big Data: Eric LittlePistoia Alliance conference April 2016: Big Data: Eric Little
Pistoia Alliance conference April 2016: Big Data: Eric Little
 
#opendata Back to the future
#opendata Back to the future#opendata Back to the future
#opendata Back to the future
 
ODIN: Connecting research and researchers
ODIN: Connecting research and researchersODIN: Connecting research and researchers
ODIN: Connecting research and researchers
 
Navigating the data management ecosystem - Dan Valen
Navigating the data management ecosystem - Dan ValenNavigating the data management ecosystem - Dan Valen
Navigating the data management ecosystem - Dan Valen
 
Big Data (SOCIOMETRIC METHODS FOR RELEVANCY ANALYSIS OF LONG TAIL SCIENCE D...
Big Data (SOCIOMETRIC METHODS FOR  RELEVANCY ANALYSIS OF LONG TAIL  SCIENCE D...Big Data (SOCIOMETRIC METHODS FOR  RELEVANCY ANALYSIS OF LONG TAIL  SCIENCE D...
Big Data (SOCIOMETRIC METHODS FOR RELEVANCY ANALYSIS OF LONG TAIL SCIENCE D...
 

Similar to A Framework to develop the FAIR Metrics

Data ecosystems: turning data into public value
Data ecosystems:  turning data into public valueData ecosystems:  turning data into public value
Data ecosystems: turning data into public valueSlim Turki, Dr.
 
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 ...EOSCpilot .eu
 
Turning FAIR into Reality: Briefing on the EC’s report on FAIR data
Turning FAIR into Reality: Briefing on the EC’s report on FAIR dataTurning FAIR into Reality: Briefing on the EC’s report on FAIR data
Turning FAIR into Reality: Briefing on the EC’s report on FAIR datadri_ireland
 
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...Sarah Jones
 
Introduction to the workshop Services to support FAIR data - Sarah Jones
Introduction to the workshop Services to support FAIR data - Sarah JonesIntroduction to the workshop Services to support FAIR data - Sarah Jones
Introduction to the workshop Services to support FAIR data - Sarah JonesOpenAIRE
 
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 RDASarah Jones
 
Metadata En Croûte: How to make metadata more appetizing to decision makers
Metadata En Croûte: How to make metadata more appetizing to decision makersMetadata En Croûte: How to make metadata more appetizing to decision makers
Metadata En Croûte: How to make metadata more appetizing to decision makersUKSG: connecting the knowledge community
 
Paving the way to open and interoperable research data service workflows Prog...
Paving the way to open and interoperable research data service workflows Prog...Paving the way to open and interoperable research data service workflows Prog...
Paving the way to open and interoperable research data service workflows Prog...ResearchSpace
 
A holistic approach to valuing people through diversity
A holistic approach to valuing people through diversityA holistic approach to valuing people through diversity
A holistic approach to valuing people through diversityRachel Gnagniko
 
Paving the way to open and interoperable research data service workflows
Paving the way to open and interoperable research data service workflowsPaving the way to open and interoperable research data service workflows
Paving the way to open and interoperable research data service workflowsThe University of Edinburgh
 
Educating Data Scientists: the SoBigData master experience
Educating Data Scientists: the SoBigData master experienceEducating Data Scientists: the SoBigData master experience
Educating Data Scientists: the SoBigData master experienceResearch Data Alliance
 
Turning FAIR into Reality - Role for Libraries
Turning FAIR into Reality - Role for Libraries Turning FAIR into Reality - Role for Libraries
Turning FAIR into Reality - Role for Libraries dri_ireland
 
My FAIR share of the work - Diamond Light Source - Dec 2018
My FAIR share of the work - Diamond Light Source - Dec 2018My FAIR share of the work - Diamond Light Source - Dec 2018
My FAIR share of the work - Diamond Light Source - Dec 2018Susanna-Assunta Sansone
 
SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...
SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...
SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...Susan Hanley
 
UNESCO IFLA ICA Digital Preservation Roadmap
UNESCO IFLA ICA Digital Preservation RoadmapUNESCO IFLA ICA Digital Preservation Roadmap
UNESCO IFLA ICA Digital Preservation Roadmapneilgrindley
 
Poster: Perspectives on Increasing Competency in Using Digital Practices and ...
Poster: Perspectives on Increasing Competency in Using Digital Practices and ...Poster: Perspectives on Increasing Competency in Using Digital Practices and ...
Poster: Perspectives on Increasing Competency in Using Digital Practices and ...Katja Reuter, PhD
 
The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...
The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...
The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...LIBER Europe
 
A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...
A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...
A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...anneliesepoetz
 

Similar to A Framework to develop the FAIR Metrics (20)

Data ecosystems: turning data into public value
Data ecosystems:  turning data into public valueData ecosystems:  turning data into public value
Data ecosystems: turning data into public value
 
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 ...
 
Turning FAIR into Reality: Briefing on the EC’s report on FAIR data
Turning FAIR into Reality: Briefing on the EC’s report on FAIR dataTurning FAIR into Reality: Briefing on the EC’s report on FAIR data
Turning FAIR into Reality: Briefing on the EC’s report on FAIR data
 
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...
 
Introduction to the workshop Services to support FAIR data - Sarah Jones
Introduction to the workshop Services to support FAIR data - Sarah JonesIntroduction to the workshop Services to support FAIR data - Sarah Jones
Introduction to the workshop Services to support FAIR data - Sarah Jones
 
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
 
Metadata En Croûte: How to make metadata more appetizing to decision makers
Metadata En Croûte: How to make metadata more appetizing to decision makersMetadata En Croûte: How to make metadata more appetizing to decision makers
Metadata En Croûte: How to make metadata more appetizing to decision makers
 
Paving the way to open and interoperable research data service workflows Prog...
Paving the way to open and interoperable research data service workflows Prog...Paving the way to open and interoperable research data service workflows Prog...
Paving the way to open and interoperable research data service workflows Prog...
 
Ratan "Are we there yet? Keeping the promise of open science"
Ratan "Are we there yet?  Keeping the promise of open science"Ratan "Are we there yet?  Keeping the promise of open science"
Ratan "Are we there yet? Keeping the promise of open science"
 
A holistic approach to valuing people through diversity
A holistic approach to valuing people through diversityA holistic approach to valuing people through diversity
A holistic approach to valuing people through diversity
 
Paving the way to open and interoperable research data service workflows
Paving the way to open and interoperable research data service workflowsPaving the way to open and interoperable research data service workflows
Paving the way to open and interoperable research data service workflows
 
Educating Data Scientists: the SoBigData master experience
Educating Data Scientists: the SoBigData master experienceEducating Data Scientists: the SoBigData master experience
Educating Data Scientists: the SoBigData master experience
 
Turning FAIR into Reality - Role for Libraries
Turning FAIR into Reality - Role for Libraries Turning FAIR into Reality - Role for Libraries
Turning FAIR into Reality - Role for Libraries
 
My FAIR share of the work - Diamond Light Source - Dec 2018
My FAIR share of the work - Diamond Light Source - Dec 2018My FAIR share of the work - Diamond Light Source - Dec 2018
My FAIR share of the work - Diamond Light Source - Dec 2018
 
Open Data is not Enough
Open Data is not EnoughOpen Data is not Enough
Open Data is not Enough
 
SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...
SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...
SharePoint "Moneyball" - The Art and Science of Winning the SharePoint Metric...
 
UNESCO IFLA ICA Digital Preservation Roadmap
UNESCO IFLA ICA Digital Preservation RoadmapUNESCO IFLA ICA Digital Preservation Roadmap
UNESCO IFLA ICA Digital Preservation Roadmap
 
Poster: Perspectives on Increasing Competency in Using Digital Practices and ...
Poster: Perspectives on Increasing Competency in Using Digital Practices and ...Poster: Perspectives on Increasing Competency in Using Digital Practices and ...
Poster: Perspectives on Increasing Competency in Using Digital Practices and ...
 
The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...
The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...
The Role of Libraries in the Adoption of Research Data Management. Ingeborg V...
 
A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...
A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...
A. Poetz: Tools For Outreach Program Planning - page mockups for stakeholder ...
 

More from Michel Dumontier

A metadata standard for Knowledge Graphs
A metadata standard for Knowledge GraphsA metadata standard for Knowledge Graphs
A metadata standard for Knowledge GraphsMichel Dumontier
 
Data-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge GraphsData-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge GraphsMichel Dumontier
 
The role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health SystemThe role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health SystemMichel Dumontier
 
Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...Michel Dumontier
 
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...Michel Dumontier
 
Keynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University DinnerKeynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University DinnerMichel Dumontier
 
The future of science and business - a UM Star Lecture
The future of science and business - a UM Star LectureThe future of science and business - a UM Star Lecture
The future of science and business - a UM Star LectureMichel Dumontier
 
Building a Network of Interoperable and Independently Produced Linked and Ope...
Building a Network of Interoperable and Independently Produced Linked and Ope...Building a Network of Interoperable and Independently Produced Linked and Ope...
Building a Network of Interoperable and Independently Produced Linked and Ope...Michel Dumontier
 
Model Organism Linked Data
Model Organism Linked DataModel Organism Linked Data
Model Organism Linked DataMichel Dumontier
 
2016 ACS Semantic Approaches for Biochemical Knowledge Discovery
2016 ACS Semantic Approaches for Biochemical Knowledge Discovery2016 ACS Semantic Approaches for Biochemical Knowledge Discovery
2016 ACS Semantic Approaches for Biochemical Knowledge DiscoveryMichel Dumontier
 
Making it Easier, Possibly Even Pleasant, to Author Rich Experimental Metadata
Making it Easier, Possibly Even Pleasant, to Author Rich Experimental MetadataMaking it Easier, Possibly Even Pleasant, to Author Rich Experimental Metadata
Making it Easier, Possibly Even Pleasant, to Author Rich Experimental MetadataMichel Dumontier
 
Link Analysis of Life Sciences Linked Data
Link Analysis of Life Sciences Linked DataLink Analysis of Life Sciences Linked Data
Link Analysis of Life Sciences Linked DataMichel Dumontier
 
Making the most of phenotypes in ontology-based biomedical knowledge discovery
Making the most of phenotypes in ontology-based biomedical knowledge discoveryMaking the most of phenotypes in ontology-based biomedical knowledge discovery
Making the most of phenotypes in ontology-based biomedical knowledge discoveryMichel Dumontier
 
W3C HCLS Dataset Description Guidelines
W3C HCLS Dataset Description GuidelinesW3C HCLS Dataset Description Guidelines
W3C HCLS Dataset Description GuidelinesMichel Dumontier
 
Semantic approaches for biomedical knowledge discovery - Discovery Science 20...
Semantic approaches for biomedical knowledge discovery - Discovery Science 20...Semantic approaches for biomedical knowledge discovery - Discovery Science 20...
Semantic approaches for biomedical knowledge discovery - Discovery Science 20...Michel Dumontier
 
1st Network-of-BioThings Hackathon
1st Network-of-BioThings Hackathon1st Network-of-BioThings Hackathon
1st Network-of-BioThings HackathonMichel Dumontier
 
Powering Scientific Discovery with the Semantic Web (VanBUG 2014)
Powering Scientific Discovery with the Semantic Web (VanBUG 2014)Powering Scientific Discovery with the Semantic Web (VanBUG 2014)
Powering Scientific Discovery with the Semantic Web (VanBUG 2014)Michel Dumontier
 

More from Michel Dumontier (19)

A metadata standard for Knowledge Graphs
A metadata standard for Knowledge GraphsA metadata standard for Knowledge Graphs
A metadata standard for Knowledge Graphs
 
Data-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge GraphsData-Driven Discovery Science with FAIR Knowledge Graphs
Data-Driven Discovery Science with FAIR Knowledge Graphs
 
The role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health SystemThe role of the FAIR Guiding Principles in a Learning Health System
The role of the FAIR Guiding Principles in a Learning Health System
 
Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...Acclerating biomedical discovery with an internet of FAIR data and services -...
Acclerating biomedical discovery with an internet of FAIR data and services -...
 
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
Accelerating Biomedical Research with the Emerging Internet of FAIR Data and ...
 
Keynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University DinnerKeynote at the 2018 Maastricht University Dinner
Keynote at the 2018 Maastricht University Dinner
 
The future of science and business - a UM Star Lecture
The future of science and business - a UM Star LectureThe future of science and business - a UM Star Lecture
The future of science and business - a UM Star Lecture
 
2016 bmdid-mappings
2016 bmdid-mappings2016 bmdid-mappings
2016 bmdid-mappings
 
Ontologies
OntologiesOntologies
Ontologies
 
Building a Network of Interoperable and Independently Produced Linked and Ope...
Building a Network of Interoperable and Independently Produced Linked and Ope...Building a Network of Interoperable and Independently Produced Linked and Ope...
Building a Network of Interoperable and Independently Produced Linked and Ope...
 
Model Organism Linked Data
Model Organism Linked DataModel Organism Linked Data
Model Organism Linked Data
 
2016 ACS Semantic Approaches for Biochemical Knowledge Discovery
2016 ACS Semantic Approaches for Biochemical Knowledge Discovery2016 ACS Semantic Approaches for Biochemical Knowledge Discovery
2016 ACS Semantic Approaches for Biochemical Knowledge Discovery
 
Making it Easier, Possibly Even Pleasant, to Author Rich Experimental Metadata
Making it Easier, Possibly Even Pleasant, to Author Rich Experimental MetadataMaking it Easier, Possibly Even Pleasant, to Author Rich Experimental Metadata
Making it Easier, Possibly Even Pleasant, to Author Rich Experimental Metadata
 
Link Analysis of Life Sciences Linked Data
Link Analysis of Life Sciences Linked DataLink Analysis of Life Sciences Linked Data
Link Analysis of Life Sciences Linked Data
 
Making the most of phenotypes in ontology-based biomedical knowledge discovery
Making the most of phenotypes in ontology-based biomedical knowledge discoveryMaking the most of phenotypes in ontology-based biomedical knowledge discovery
Making the most of phenotypes in ontology-based biomedical knowledge discovery
 
W3C HCLS Dataset Description Guidelines
W3C HCLS Dataset Description GuidelinesW3C HCLS Dataset Description Guidelines
W3C HCLS Dataset Description Guidelines
 
Semantic approaches for biomedical knowledge discovery - Discovery Science 20...
Semantic approaches for biomedical knowledge discovery - Discovery Science 20...Semantic approaches for biomedical knowledge discovery - Discovery Science 20...
Semantic approaches for biomedical knowledge discovery - Discovery Science 20...
 
1st Network-of-BioThings Hackathon
1st Network-of-BioThings Hackathon1st Network-of-BioThings Hackathon
1st Network-of-BioThings Hackathon
 
Powering Scientific Discovery with the Semantic Web (VanBUG 2014)
Powering Scientific Discovery with the Semantic Web (VanBUG 2014)Powering Scientific Discovery with the Semantic Web (VanBUG 2014)
Powering Scientific Discovery with the Semantic Web (VanBUG 2014)
 

Recently uploaded

Pulmonary drug delivery system M.pharm -2nd sem P'ceutics
Pulmonary drug delivery system M.pharm -2nd sem P'ceuticsPulmonary drug delivery system M.pharm -2nd sem P'ceutics
Pulmonary drug delivery system M.pharm -2nd sem P'ceuticssakshisoni2385
 
GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)Areesha Ahmad
 
Exploring Criminology and Criminal Behaviour.pdf
Exploring Criminology and Criminal Behaviour.pdfExploring Criminology and Criminal Behaviour.pdf
Exploring Criminology and Criminal Behaviour.pdfrohankumarsinghrore1
 
POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.Silpa
 
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
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxSuji236384
 
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...Monika Rani
 
Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.Silpa
 
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
 
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
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY1301aanya
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptxSilpa
 
Stages in the normal growth curve
Stages in the normal growth curveStages in the normal growth curve
Stages in the normal growth curveAreesha Ahmad
 
module for grade 9 for distance learning
module for grade 9 for distance learningmodule for grade 9 for distance learning
module for grade 9 for distance learninglevieagacer
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfSumit Kumar yadav
 
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIACURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIADr. TATHAGAT KHOBRAGADE
 
Factory Acceptance Test( FAT).pptx .
Factory Acceptance Test( FAT).pptx       .Factory Acceptance Test( FAT).pptx       .
Factory Acceptance Test( FAT).pptx .Poonam Aher Patil
 
GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)Areesha Ahmad
 

Recently uploaded (20)

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
 
Pulmonary drug delivery system M.pharm -2nd sem P'ceutics
Pulmonary drug delivery system M.pharm -2nd sem P'ceuticsPulmonary drug delivery system M.pharm -2nd sem P'ceutics
Pulmonary drug delivery system M.pharm -2nd sem P'ceutics
 
GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)GBSN - Microbiology (Unit 2)
GBSN - Microbiology (Unit 2)
 
Exploring Criminology and Criminal Behaviour.pdf
Exploring Criminology and Criminal Behaviour.pdfExploring Criminology and Criminal Behaviour.pdf
Exploring Criminology and Criminal Behaviour.pdf
 
POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.POGONATUM : morphology, anatomy, reproduction etc.
POGONATUM : morphology, anatomy, reproduction etc.
 
Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.Proteomics: types, protein profiling steps etc.
Proteomics: types, protein profiling steps etc.
 
Clean In Place(CIP).pptx .
Clean In Place(CIP).pptx                 .Clean In Place(CIP).pptx                 .
Clean In Place(CIP).pptx .
 
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptxPSYCHOSOCIAL NEEDS. in nursing II sem pptx
PSYCHOSOCIAL NEEDS. in nursing II sem pptx
 
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS  ESCORT SERVICE In Bhiwan...
Bhiwandi Bhiwandi ❤CALL GIRL 7870993772 ❤CALL GIRLS ESCORT SERVICE In Bhiwan...
 
Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.Selaginella: features, morphology ,anatomy and reproduction.
Selaginella: features, morphology ,anatomy and reproduction.
 
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
 
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
 
biology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGYbiology HL practice questions IB BIOLOGY
biology HL practice questions IB BIOLOGY
 
Human genetics..........................pptx
Human genetics..........................pptxHuman genetics..........................pptx
Human genetics..........................pptx
 
Stages in the normal growth curve
Stages in the normal growth curveStages in the normal growth curve
Stages in the normal growth curve
 
module for grade 9 for distance learning
module for grade 9 for distance learningmodule for grade 9 for distance learning
module for grade 9 for distance learning
 
Zoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdfZoology 5th semester notes( Sumit_yadav).pdf
Zoology 5th semester notes( Sumit_yadav).pdf
 
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIACURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
CURRENT SCENARIO OF POULTRY PRODUCTION IN INDIA
 
Factory Acceptance Test( FAT).pptx .
Factory Acceptance Test( FAT).pptx       .Factory Acceptance Test( FAT).pptx       .
Factory Acceptance Test( FAT).pptx .
 
GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)GBSN - Biochemistry (Unit 1)
GBSN - Biochemistry (Unit 1)
 

A Framework to develop the FAIR Metrics

  • 1. Framework to develop core FAIR metrics FAIR Metrics Working Group Presentation to the NIH Commons Framework Working Group on FAIR Metrics on July 11, 2017 http://fairmetrics.org
  • 2. Members Luiz Olavo Bonino, VU/DTL Peter Doorn, DANS Michel Dumontier, Maastricht University Susanna Sansone, University of Oxford Erik Schultes, DTL Mark Wilkinson, Universidad Politécnica de Madrid
  • 3. Motivation We believe that increasing the FAIRness of digital resources will maximize their discovery and reuse. An assessment can provide the feedback needed to characterize and improve the FAIRness of a digital resource. To evaluate the FAIRness of a digital object we need metrics.
  • 4. Objective We seek to develop a set of core metrics that can be utilized in a computational infrastructure to automatically assess the FAIRness of any digital resource.
  • 5. Milestones ● Establish charter (done) ● Establish guidelines for the development of the FAIR metrics (done) ● Establish a metric proposal form (done) ● Develop a set of core FAIR metrics (ongoing) ● Prepare and discuss a Release Candidate for proposed FAIR metrics and a prototype implementation (Sept 2017) ● Community-wide implementation and review (Oct-Nov, 2017) ● Revision of FAIR metrics and documentation (Jan-Feb 2018) ● Prepare and discuss a Final Recommendation and Reference Implementation the core set of FAIR metrics (March 2018)
  • 6. Guidelines We focus on the development of metrics to assess compliance to each and every one of the FAIR principles.
  • 7. Guidelines to drive the development of a set of core FAIR metrics Clear: so that anybody can understand what is meant Realistic: so that anybody can report on what is being asked of them Discriminating: so that we can distinguish the degree to which a resource meets the FAIR principles while providing instruction to maximize their value Measurable: The assessment can be made in an objective, quantitative, machine-interpretable, scalable and reproducible manner → transparency of what is being measured, and how.
  • 8. Guidelines We focus on the development of metrics to assess compliance to each and every one of the FAIR principles. However, compliance is distinct from impact. We do not believe that all digital resources are of equal quality, nonetheless, when any resource is created and published, it should be maximally discoverable and reusable as per the FAIR principles. Abiding by the FAIR principles makes unequal resources discoverable, and this will aid in the assessment of their quality. However, any metric that assess the popularity of a digital resource is not a measure of its FAIRness.
  • 9. Process to establish metrics For each FAIR principle: ○ Propose one or more possible metrics ○ Fill out the information in the metric proposal form ○ Discuss the merits of the proposal ■ does it conform to the FAIR metric guidelines? (clear, realistic, discriminating, measureable, universal) ■ is it atomic or does it comprise a number of different or complementary aspects? ○ Iteratively refine and test the metric proposal until consensus is achieved ~3.5hrs per metric * 15 principles = 62.5h * 6 people = 315 person hrs
  • 10. FAIR Metric Proposal Form https://goo.gl/FiQQSc
  • 11.
  • 12.
  • 13. Milestones ● Establish charter (done) ● Establish guidelines for the development of the FAIR metrics (done) ● Establish a metric proposal form (done) ● Develop a set of core FAIR metrics (ongoing) ● Prepare and discuss a Release Candidate for proposed FAIR metrics and a prototype implementation (Sept 2017) ● Community-wide implementation and review (Oct-Nov, 2017) ● Revision of FAIR metrics and documentation (Jan-Feb 2018) ● Prepare and discuss a Final Recommendation and Reference Implementation the core set of FAIR metrics (March 2018)