SlideShare uma empresa Scribd logo
1 de 27
Facilitate Open Science Training for European Research
Open Data Strategies and Research Data Realities
Martin Donnelly
Digital Curation Centre
University of Edinburgh
NCP Academy Webinar
31 October 2017
The Digital Curation Centre (DCC)
• UK national centre of expertise in digital preservation
and data management, est. 2004
• Principal audience is the UK higher education sector, but
we increasingly work further afield (continental Europe,
North America, South Africa, Asia…)
• Provide guidance, training, tools (e.g. DMPonline) and
other services on all aspects of research data
management and Open Science
• Tailored consultancy/training
• Organise national and international events and webinars
(International Digital Curation Conference, Research
Data Management Forum)
• Phase 1 (2014-2016): Spread
the Seeds of Open Science and
Open Access
• Creation of Open Science
Taxonomy
• 2000+ training materials,
categorized in the FOSTER
Portal
• More than 100 f2f training
events in 28 countries and 25
online courses, totalling more
than 6300 participants
FacilitateOpenScienceTrainingforEuropeanResearch
The project
http://fosteropenscience.eu
• Phase 2 (2017-2019): Let the Flowers of Open Science Bloom
• Focus on:
• Training for the practical implementation of Open Science (face to face
and online) including RDM and Open Data
• Developing intermediate/advanced level/discipline-specific training
resources in collaboration with three disciplinary communities (and
related RIs): Life Sciences (ELIXIR), Social Sciences (CESSDA) and
Humanities (DARIAH)
• Update the FOSTER Portal to support moderated learning, badges and
gamification
• In concrete terms:
• 150 new training resources
• Over 50 training events (outcome-oriented, providing participants with
tangible skills) and 20 e-learning courses
• Multi-module Open Science Toolkit
• Trainers Network, Open Science Bootcamp, Open Science Training
Handbook, and more…
FacilitateOpenScienceTrainingforEuropeanResearch
The project
http://fosteropenscience.eu
OVERVIEW
1. Context: Open Data and openness in general
2. Benefits of an Open approach, and risks of getting it
wrong
3. Emerging high-level consensus, e.g. H2020 policy and
FAIR data principles
4. Clashes between the ideal world and the real world
5. RDM and Open Data in practice: key points and rules of
thumb, plus reflections on assessing H2020 DMPs
6. Contacts and links
Open Access + Open Data = Open Science
• Openness in research is situated within a context of ever
greater transparency, accessibility and accountability
• As Open Access to publications became normal (if not yet
ubiquitous), the scholarly community turned its attention to the
data which underpins the research outputs, and eventually to
consider it a first-class output in its own right. The development
of the OA and research data management (RDM) agendas are
closely linked as part of a broader trend in research, sometimes
termed ‘Open Science’ or ‘Open Research’
• “The European Commission is now moving beyond open access towards
the more inclusive area of open science. Elements of open science will
gradually feed into the shaping of a policy for Responsible Research and
Innovation and will contribute to the realisation of the European
Research Area and the Innovation Union, the two main flagship
initiatives for research and innovation”
http://ec.europa.eu/research/swafs/index.cfm?pg=policy&lib=science
Growing momentum and ubiquity…
Data management
is a part of good
research practice.
- RCUK Policy and Code of
Conduct on the
Governance of Good
Research Conduct
Good practice in RDM
RDM is “the active
management and appraisal
of data over the lifecycle of
scholarly and scientific
interest”
Core activities include:
- Planning and describing data-
related work before it takes place
- Documenting your data (and
processing/workflows) so that
others can find and understand it
- Choosing open (or at least
standardised) file formats where
possible
- Storing data safely during a project
- Depositing it in a trusted archive
at the end of the research
- Linking publications to the
datasets that underpin them… and
increasingly code/scripts too
Benefits of Openness
• IMPACT and LONGEVITY: Open data (and publications) receive
more citations, over longer periods
• SPEED: The research process becomes faster
• ACCESSIBILITY: Interested third parties can (where
appropriate) access and build upon publicly-funded research
outputs with minimal barriers to access
• EFFICIENCY: Data collection can be funded once, and used
many times for a variety of purposes
• TRANSPARENCY and QUALITY: The evidence that underpins
research can be made open for anyone to scrutinise, and
attempt to replicate findings. This leads to a more robust
scholarly record, and reduces academic fraud for example
• DURABILITY: Simply put, fewer important datasets will be lost
Risks of not doing this, or getting this wrong
• LEGAL – sensitive data is protected by law (and
contracts) and needs to be protected
• FINANCIAL – non-compliance with funder policies can
lead to reduced access to income streams
• SCIENTIFIC – potential discoveries may be hidden away
in drawers, on USB
• OPPORTUNITY COST – reduced visibility for research >
lost opportunities for collaboration
• QUALITY – the scholarly record becomes less robust
• REPUTATIONAL – responsible data management is
increasingly considered a core element of good scholarly
practice in the 21st century
Sounds good, right?!
• So why don’t we live in an Open Data utopia?
• Five main reasons…
• Issues of ownership / privacy / ethics / security
• Issues around reward and recognition for researchers
• Lack of joined-up thinking within institutions, countries,
internationally… (this is being addressed, slowly but surely)
• Technical/financial/organisational limitations, including the
need for selection and appraisal of data
• And a bonus one… researchers don’t always relate to
the terminology we use!
Emerging global consensus?
• Disciplinary quirks and differences notwithstanding, the
past decade has seen great progress in shared best
practice and common expectations…
• RCUK Common Principles
• National Open Data and Open Science strategies*
• Establishment of the Research Data Alliance
• EC data pilot > adoption of the FAIR Principles
• “As open as possible; as closed as necessary.”
(* DCC and SPARC-Europe are currently revising our joint list
and analysis of national open data/open science policies. Get in
touch if you have anything to add!)
Case study: the European Commission and
FAIR data
• The EC has adopted FORCE11’s ‘FAIR’ approach to
research data management.
• These principles state that “One of the grand challenges
of data-intensive science is to facilitate knowledge
discovery by assisting humans and machines in their
discovery of, access to, integration and analysis of, task-
appropriate scientific data and their associated
algorithms and workflows.”
• To help achieve this, (meta)data should be…
• Findable
• Accessible
• Interoperable
• Reusable
The FAIR Data Principles (1/4)
To be 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.
The FAIR Data Principles (2/4)
To 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.
The FAIR Data Principles (3/4)
To 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.
The FAIR Data Principles (4/4)
To be Re-usable:
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.
H2020 Data Management Plan
• The DMP should include information on:
• the handling of research data during and after the end of the
project
• what data will be collected, processed and/or generated
• which methodology and standards will be applied
• whether data will be shared/made open access, and
• how data will be curated and preserved (including after the end
of the project)
• DMPs are submitted as deliverables – first version due at
six-month stage
• Template and guidance is given in the Guidelines doc
Reflections on assessing H2020 DMPs
• It would be better if everyone followed the same template –
the EC does provide one, but its use isn’t (yet) mandatory
• A DMP doesn’t need to tell everything there is to know about
a project: brevity is a plus!
• Areas of frequent weakness: security (access and storage),
ethical restrictions for data sharing, appraisal of long-term
value/interest, quality assurance processes, costs
• Advice:
• Be clear about the different between in-project and post-project
data storage and archiving;
• Don’t just regurgitate the H2020 guidelines – reviewers pick up on
that really quickly;
• Try not to confuse publications and data (I have seen projects
describe archived data as ‘gold Open Access’ which doesn’t make
much sense)
Strategies for success, a three step guide
Step 1. Be clear about who is involved
• RDM is a hybrid activity, involving multiple stakeholder groups…
• The researchers themselves
• Research support personnel
• Partners based in other institutions, funders, data centres, commercial
partners, etc
• No single person does everything, and it makes no sense to duplicate
effort or reinvent wheels
• Data Management Planning (DMP) underpins and pulls together
different strands of data management activities. DMP is the process
of planning, describing and communicating the activities carried
out during the research lifecycle in order to…
• Keep sensitive data safe
• Maximise data’s re-use potential
• Support longer-term preservation
• Data Management Plans are a means of communication, with
contemporaries and future re-users alike
Step 2. Write things down
• In a data management plan / record
• In metadata to describe the data and help others to
understand it
• In workflows and README files
• In version management
• In justifying decisions re. access, embargo, selection
and appraisal… the list can be very long…
Communication is crucial…
…and plans can and do change!
Step 3. Don’t try to do everything yourself
• See Step 1 ;)
A few do’s and don’ts for RDM
DO DON’T
Have a plan for your data Make it up as you go along
Keep backups. Make this easy with automated
syncing services like Dropbox, provided your
data isn’t too sensitive
Carry the only copy around on a memory
card, your laptop, your phone, etc
Describe your data as you collect it. This
makes it possible for others to interpret it,
and for you to do the same a few years down
the line
Leave this till the end. The quality of
metadata decreases with time, and the
best metadata is created at the moment of
data capture
Save your work in open file formats, where
possible, and use accepted metadata
standards to enable like-with-like comparison
Invent new ‘standards’ where community
norms already exist
Deposit your data in a data centre or
repository, and link it to your publications
Be afraid to ask for help. This will exist
both within your institution, and via
national / European support organisations
RDM / Open Data in practice: key points
1. Understand your funder’s policies (and perhaps national policy
initiatives – see recent SPARC-Europe reports)
2. Create a data management plan (e.g. with DMPonline)
3. Decide which data to preserve (e.g. using the DCC How-To
guide and checklist, “Five Steps to Decide what Data to Keep”)
4. Identify a long-term home for your data (e.g. via re3data.org)
5. Link your data to your publications with a persistent identifier
(e.g. via DataCite)
• N.B. Many archives, including Zenodo, will do this for you
6. Investigate EU infrastructure services and resources
And finally, a few RDM rules of thumb
• Without intervention, data + time = no data
• See Vines, above
• Prioritise: could anyone die or go to jail?
• Legal issues (e.g. protecting vulnerable subjects) are the most
important
• Storage is not the same as management
• Think of data as plants and the servers as a greenhouse
• The plants still need to be fed, watered, pruned, etc… and
sometimes disposed of
• Management is not the same as sharing
• Not all data should be shared
• Approach: “As open as possible, as closed as necessary”
• Remember that plans are just that – they are not contracts!
Contact details
• For more information about the
FOSTER project:
• Website: www.fosteropenscience.eu
• Principal investigator: Eloy Rodrigues
(eloy@sdum.uminho.pt)
• General enquiries: Gwen Franck
(gwen.franck@eifl.net)
• Twitter: @fosterscience
• My contact details:
• Email: martin.donnelly@ed.ac.uk
• Twitter: @mkdDCC
• Slideshare:
http://www.slideshare.net/martindo
nnelly
This work is licensed under the
Creative Commons Attribution
2.5 UK: Scotland License.

Mais conteúdo relacionado

Mais procurados

Open science and research initiative in Finland: Persistency and infrastructu...
Open science and research initiative in Finland: Persistency and infrastructu...Open science and research initiative in Finland: Persistency and infrastructu...
Open science and research initiative in Finland: Persistency and infrastructu...Platforma Otwartej Nauki
 
LEARN Final Conference: Tutorial Group | Implementing the LEARN RDM Toolkit
LEARN Final Conference: Tutorial Group | Implementing the LEARN RDM ToolkitLEARN Final Conference: Tutorial Group | Implementing the LEARN RDM Toolkit
LEARN Final Conference: Tutorial Group | Implementing the LEARN RDM ToolkitLEARN Project
 
Research Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutionsResearch Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutionsArhiv družboslovnih podatkov
 
Research Data Management and the brave new world, By Paul Ayris
Research Data Management and the brave new world, By Paul AyrisResearch Data Management and the brave new world, By Paul Ayris
Research Data Management and the brave new world, By Paul AyrisLEARN Project
 
Open by default: the challenges of research data in Europe
Open by default: the challenges of research data in EuropeOpen by default: the challenges of research data in Europe
Open by default: the challenges of research data in EuropeLEARN Project
 
The FOSTER project - general overview
The FOSTER project - general overviewThe FOSTER project - general overview
The FOSTER project - general overviewMartin Donnelly
 
The Needs of stakeholders in the RDM process - the role of LEARN
The Needs of stakeholders in the RDM process - the role of LEARNThe Needs of stakeholders in the RDM process - the role of LEARN
The Needs of stakeholders in the RDM process - the role of LEARNLEARN Project
 
Data management: The new frontier for libraries
Data management: The new frontier for librariesData management: The new frontier for libraries
Data management: The new frontier for librariesLEARN Project
 
Funder requirements for Data Management Plans
Funder requirements for Data Management PlansFunder requirements for Data Management Plans
Funder requirements for Data Management PlansSherry Lake
 
Webinar: Data management and the Open Research Data Pilot in Horizon 2020
Webinar: Data management and the Open Research Data Pilot in Horizon 2020Webinar: Data management and the Open Research Data Pilot in Horizon 2020
Webinar: Data management and the Open Research Data Pilot in Horizon 2020OpenAccessBelgium
 
How can we ensure research data is re-usable? The role of Publishers in Resea...
How can we ensure research data is re-usable? The role of Publishers in Resea...How can we ensure research data is re-usable? The role of Publishers in Resea...
How can we ensure research data is re-usable? The role of Publishers in Resea...LEARN Project
 
Open access progress and sustainability
Open access progress and sustainabilityOpen access progress and sustainability
Open access progress and sustainabilityJisc
 
Active research management and sharing
Active research management and sharingActive research management and sharing
Active research management and sharingJisc
 
LEARN Final Conference: Tutorial Group | How To Engage Early Career Researchers
LEARN Final Conference: Tutorial Group | How To Engage Early Career ResearchersLEARN Final Conference: Tutorial Group | How To Engage Early Career Researchers
LEARN Final Conference: Tutorial Group | How To Engage Early Career ResearchersLEARN Project
 
Open Data in a Big Data World: easy to say, but hard to do?
Open Data in a Big Data World: easy to say, but hard to do?Open Data in a Big Data World: easy to say, but hard to do?
Open Data in a Big Data World: easy to say, but hard to do?LEARN Project
 
Developing a Data Management Plan
Developing a Data Management PlanDeveloping a Data Management Plan
Developing a Data Management PlanMartin Donnelly
 
Managing and sharing data
Managing and sharing dataManaging and sharing data
Managing and sharing dataSarah Jones
 
RDM and data sharing landscape: overview for Salford DCC training 20140522
RDM and data sharing landscape: overview for Salford DCC training 20140522RDM and data sharing landscape: overview for Salford DCC training 20140522
RDM and data sharing landscape: overview for Salford DCC training 20140522L Molloy
 

Mais procurados (20)

Open science and research initiative in Finland: Persistency and infrastructu...
Open science and research initiative in Finland: Persistency and infrastructu...Open science and research initiative in Finland: Persistency and infrastructu...
Open science and research initiative in Finland: Persistency and infrastructu...
 
LEARN Final Conference: Tutorial Group | Implementing the LEARN RDM Toolkit
LEARN Final Conference: Tutorial Group | Implementing the LEARN RDM ToolkitLEARN Final Conference: Tutorial Group | Implementing the LEARN RDM Toolkit
LEARN Final Conference: Tutorial Group | Implementing the LEARN RDM Toolkit
 
Research Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutionsResearch Data Management Planning: problems and solutions
Research Data Management Planning: problems and solutions
 
How to elaborate a data management plan
How to elaborate a data management planHow to elaborate a data management plan
How to elaborate a data management plan
 
Research Data Management and the brave new world, By Paul Ayris
Research Data Management and the brave new world, By Paul AyrisResearch Data Management and the brave new world, By Paul Ayris
Research Data Management and the brave new world, By Paul Ayris
 
Open by default: the challenges of research data in Europe
Open by default: the challenges of research data in EuropeOpen by default: the challenges of research data in Europe
Open by default: the challenges of research data in Europe
 
The FOSTER project - general overview
The FOSTER project - general overviewThe FOSTER project - general overview
The FOSTER project - general overview
 
The Needs of stakeholders in the RDM process - the role of LEARN
The Needs of stakeholders in the RDM process - the role of LEARNThe Needs of stakeholders in the RDM process - the role of LEARN
The Needs of stakeholders in the RDM process - the role of LEARN
 
Data management: The new frontier for libraries
Data management: The new frontier for librariesData management: The new frontier for libraries
Data management: The new frontier for libraries
 
Funder requirements for Data Management Plans
Funder requirements for Data Management PlansFunder requirements for Data Management Plans
Funder requirements for Data Management Plans
 
Webinar: Data management and the Open Research Data Pilot in Horizon 2020
Webinar: Data management and the Open Research Data Pilot in Horizon 2020Webinar: Data management and the Open Research Data Pilot in Horizon 2020
Webinar: Data management and the Open Research Data Pilot in Horizon 2020
 
How can we ensure research data is re-usable? The role of Publishers in Resea...
How can we ensure research data is re-usable? The role of Publishers in Resea...How can we ensure research data is re-usable? The role of Publishers in Resea...
How can we ensure research data is re-usable? The role of Publishers in Resea...
 
Open access progress and sustainability
Open access progress and sustainabilityOpen access progress and sustainability
Open access progress and sustainability
 
Active research management and sharing
Active research management and sharingActive research management and sharing
Active research management and sharing
 
LEARN Final Conference: Tutorial Group | How To Engage Early Career Researchers
LEARN Final Conference: Tutorial Group | How To Engage Early Career ResearchersLEARN Final Conference: Tutorial Group | How To Engage Early Career Researchers
LEARN Final Conference: Tutorial Group | How To Engage Early Career Researchers
 
Open Data in a Big Data World: easy to say, but hard to do?
Open Data in a Big Data World: easy to say, but hard to do?Open Data in a Big Data World: easy to say, but hard to do?
Open Data in a Big Data World: easy to say, but hard to do?
 
Developing a Data Management Plan
Developing a Data Management PlanDeveloping a Data Management Plan
Developing a Data Management Plan
 
November 10, 2015 NISO/ICSTI Joint Webinar: A Pathway from Open Access and Da...
November 10, 2015 NISO/ICSTI Joint Webinar: A Pathway from Open Access and Da...November 10, 2015 NISO/ICSTI Joint Webinar: A Pathway from Open Access and Da...
November 10, 2015 NISO/ICSTI Joint Webinar: A Pathway from Open Access and Da...
 
Managing and sharing data
Managing and sharing dataManaging and sharing data
Managing and sharing data
 
RDM and data sharing landscape: overview for Salford DCC training 20140522
RDM and data sharing landscape: overview for Salford DCC training 20140522RDM and data sharing landscape: overview for Salford DCC training 20140522
RDM and data sharing landscape: overview for Salford DCC training 20140522
 

Semelhante a Open Data Strategies and Research Data Realities

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
 
Open Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practicesOpen Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practicesMartin Donnelly
 
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
 
The Horizon2020 Open Data Pilot - OpenAIRE Webinar
The Horizon2020 Open Data Pilot - OpenAIRE WebinarThe Horizon2020 Open Data Pilot - OpenAIRE Webinar
The Horizon2020 Open Data Pilot - OpenAIRE WebinarMartin Donnelly
 
Research data management at TU Eindhoven
Research data management at TU EindhovenResearch data management at TU Eindhoven
Research data management at TU EindhovenLeon Osinski
 
Creating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant ApplicationCreating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant ApplicationHistoric Environment Scotland
 
Creating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant ApplicationCreating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant ApplicationEDINA, University of Edinburgh
 
Open Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and SolutionsOpen Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and SolutionsMartin Donnelly
 
Open Access and Open Data: what do I need to know (and do)?
Open Access and Open Data: what do I need to know (and do)?Open Access and Open Data: what do I need to know (and do)?
Open Access and Open Data: what do I need to know (and do)?Martin Donnelly
 
Digital Resources for Open Science
Digital Resources for Open ScienceDigital Resources for Open Science
Digital Resources for Open ScienceMartin Donnelly
 
20170530_Open Research Data in Horizon 2020
20170530_Open Research Data in Horizon 202020170530_Open Research Data in Horizon 2020
20170530_Open Research Data in Horizon 2020OpenAIRE
 
Jean claude burgelman implications of open data
Jean claude burgelman implications of open dataJean claude burgelman implications of open data
Jean claude burgelman implications of open dataPlatforma Otwartej Nauki
 
Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...
Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...
Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...Platforma Otwartej Nauki
 
Intro to Data Management Plans
Intro to Data Management PlansIntro to Data Management Plans
Intro to Data Management PlansSarah Jones
 
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...BigData_Europe
 
NordForsk Open Access Reykjavik 14-15/8-2014: H2020
NordForsk Open Access Reykjavik 14-15/8-2014: H2020NordForsk Open Access Reykjavik 14-15/8-2014: H2020
NordForsk Open Access Reykjavik 14-15/8-2014: H2020NordForsk
 
How to overcome obstacles to data publication: Issues, requirements, and good...
How to overcome obstacles to data publication: Issues, requirements, and good...How to overcome obstacles to data publication: Issues, requirements, and good...
How to overcome obstacles to data publication: Issues, requirements, and good...ariadnenetwork
 
Horizon 2020: Outline of a Pilot for Open Research Data
Horizon 2020: Outline of a Pilot for Open Research Data  Horizon 2020: Outline of a Pilot for Open Research Data
Horizon 2020: Outline of a Pilot for Open Research Data LIBER Europe
 
Research Support in an Open Science Framework - Ron Dekker, seconded national...
Research Support in an Open Science Framework - Ron Dekker, seconded national...Research Support in an Open Science Framework - Ron Dekker, seconded national...
Research Support in an Open Science Framework - Ron Dekker, seconded national...Mari Tinnemans
 
Winning Horizon 2020 with Open Science
Winning Horizon 2020 with Open ScienceWinning Horizon 2020 with Open Science
Winning Horizon 2020 with Open ScienceMartin Donnelly
 

Semelhante a Open Data Strategies and Research Data Realities (20)

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)
 
Open Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practicesOpen Data - strategies for research data management & impact of best practices
Open Data - strategies for research data management & impact of best practices
 
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
 
The Horizon2020 Open Data Pilot - OpenAIRE Webinar
The Horizon2020 Open Data Pilot - OpenAIRE WebinarThe Horizon2020 Open Data Pilot - OpenAIRE Webinar
The Horizon2020 Open Data Pilot - OpenAIRE Webinar
 
Research data management at TU Eindhoven
Research data management at TU EindhovenResearch data management at TU Eindhoven
Research data management at TU Eindhoven
 
Creating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant ApplicationCreating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant Application
 
Creating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant ApplicationCreating a Data Management Plan for your Grant Application
Creating a Data Management Plan for your Grant Application
 
Open Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and SolutionsOpen Access to Research Data: Challenges and Solutions
Open Access to Research Data: Challenges and Solutions
 
Open Access and Open Data: what do I need to know (and do)?
Open Access and Open Data: what do I need to know (and do)?Open Access and Open Data: what do I need to know (and do)?
Open Access and Open Data: what do I need to know (and do)?
 
Digital Resources for Open Science
Digital Resources for Open ScienceDigital Resources for Open Science
Digital Resources for Open Science
 
20170530_Open Research Data in Horizon 2020
20170530_Open Research Data in Horizon 202020170530_Open Research Data in Horizon 2020
20170530_Open Research Data in Horizon 2020
 
Jean claude burgelman implications of open data
Jean claude burgelman implications of open dataJean claude burgelman implications of open data
Jean claude burgelman implications of open data
 
Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...
Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...
Open Research Data: Present and planned EC Policy, Jean-Claude Burgelman impl...
 
Intro to Data Management Plans
Intro to Data Management PlansIntro to Data Management Plans
Intro to Data Management Plans
 
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
Big Data Europe: SC6 Workshop 3: The European Research Data Landscape: Opport...
 
NordForsk Open Access Reykjavik 14-15/8-2014: H2020
NordForsk Open Access Reykjavik 14-15/8-2014: H2020NordForsk Open Access Reykjavik 14-15/8-2014: H2020
NordForsk Open Access Reykjavik 14-15/8-2014: H2020
 
How to overcome obstacles to data publication: Issues, requirements, and good...
How to overcome obstacles to data publication: Issues, requirements, and good...How to overcome obstacles to data publication: Issues, requirements, and good...
How to overcome obstacles to data publication: Issues, requirements, and good...
 
Horizon 2020: Outline of a Pilot for Open Research Data
Horizon 2020: Outline of a Pilot for Open Research Data  Horizon 2020: Outline of a Pilot for Open Research Data
Horizon 2020: Outline of a Pilot for Open Research Data
 
Research Support in an Open Science Framework - Ron Dekker, seconded national...
Research Support in an Open Science Framework - Ron Dekker, seconded national...Research Support in an Open Science Framework - Ron Dekker, seconded national...
Research Support in an Open Science Framework - Ron Dekker, seconded national...
 
Winning Horizon 2020 with Open Science
Winning Horizon 2020 with Open ScienceWinning Horizon 2020 with Open Science
Winning Horizon 2020 with Open Science
 

Mais de Martin Donnelly

Preparing your own data for future re-use: data management and the FAIR prin...
Preparing your own data for future re-use:  data management and the FAIR prin...Preparing your own data for future re-use:  data management and the FAIR prin...
Preparing your own data for future re-use: data management and the FAIR prin...Martin Donnelly
 
Digital Data Sharing: Opportunities and Challenges of Opening Research
Digital Data Sharing: Opportunities and Challenges of Opening ResearchDigital Data Sharing: Opportunities and Challenges of Opening Research
Digital Data Sharing: Opportunities and Challenges of Opening ResearchMartin Donnelly
 
Research Data in the Arts and Humanities: A Few Difficulties
Research Data in the Arts and Humanities: A Few DifficultiesResearch Data in the Arts and Humanities: A Few Difficulties
Research Data in the Arts and Humanities: A Few DifficultiesMartin Donnelly
 
Practical Research Data Management: tools and approaches, pre- and post-award
Practical Research Data Management:  tools and approaches, pre- and post-awardPractical Research Data Management:  tools and approaches, pre- and post-award
Practical Research Data Management: tools and approaches, pre- and post-awardMartin Donnelly
 
Research Data in the Arts and Humanities: A Few Tricky Questions
Research Data in the Arts and Humanities: A Few Tricky QuestionsResearch Data in the Arts and Humanities: A Few Tricky Questions
Research Data in the Arts and Humanities: A Few Tricky QuestionsMartin Donnelly
 
Open Science and Horizon 2020
Open Science and Horizon 2020Open Science and Horizon 2020
Open Science and Horizon 2020Martin Donnelly
 
Research Data Management for the Humanities and Social Sciences
Research Data Management for the Humanities and Social SciencesResearch Data Management for the Humanities and Social Sciences
Research Data Management for the Humanities and Social SciencesMartin Donnelly
 
Data Management Plans: a gentle introduction
Data Management Plans: a gentle introductionData Management Plans: a gentle introduction
Data Management Plans: a gentle introductionMartin Donnelly
 
Research Data Management: a gentle introduction for admin staff
Research Data Management: a gentle introduction for admin staffResearch Data Management: a gentle introduction for admin staff
Research Data Management: a gentle introduction for admin staffMartin Donnelly
 
Research Data Management: a gentle introduction
Research Data Management: a gentle introductionResearch Data Management: a gentle introduction
Research Data Management: a gentle introductionMartin Donnelly
 
Future agenda: repositories, and the research process
Future agenda: repositories, and the research processFuture agenda: repositories, and the research process
Future agenda: repositories, and the research process Martin Donnelly
 
Research data management: a tale of two paradigms:
Research data management: a tale of two paradigms: Research data management: a tale of two paradigms:
Research data management: a tale of two paradigms: Martin Donnelly
 
Research data management: definitions, drivers and resources
Research data management: definitions, drivers and resourcesResearch data management: definitions, drivers and resources
Research data management: definitions, drivers and resourcesMartin Donnelly
 
'Found' and 'after' - a short history of data reuse in the arts
'Found' and 'after' - a short history of data reuse in the arts'Found' and 'after' - a short history of data reuse in the arts
'Found' and 'after' - a short history of data reuse in the artsMartin Donnelly
 
Data management planning: the what, the why, the who, the how
Data management planning: the what, the why, the who, the howData management planning: the what, the why, the who, the how
Data management planning: the what, the why, the who, the howMartin Donnelly
 
Data management planning: UK policies and beyond
Data management planning: UK policies and beyondData management planning: UK policies and beyond
Data management planning: UK policies and beyondMartin Donnelly
 

Mais de Martin Donnelly (18)

The Roots of DMPonline
The Roots of DMPonlineThe Roots of DMPonline
The Roots of DMPonline
 
Preparing your own data for future re-use: data management and the FAIR prin...
Preparing your own data for future re-use:  data management and the FAIR prin...Preparing your own data for future re-use:  data management and the FAIR prin...
Preparing your own data for future re-use: data management and the FAIR prin...
 
Digital Data Sharing: Opportunities and Challenges of Opening Research
Digital Data Sharing: Opportunities and Challenges of Opening ResearchDigital Data Sharing: Opportunities and Challenges of Opening Research
Digital Data Sharing: Opportunities and Challenges of Opening Research
 
Research Data in the Arts and Humanities: A Few Difficulties
Research Data in the Arts and Humanities: A Few DifficultiesResearch Data in the Arts and Humanities: A Few Difficulties
Research Data in the Arts and Humanities: A Few Difficulties
 
Practical Research Data Management: tools and approaches, pre- and post-award
Practical Research Data Management:  tools and approaches, pre- and post-awardPractical Research Data Management:  tools and approaches, pre- and post-award
Practical Research Data Management: tools and approaches, pre- and post-award
 
Research Data in the Arts and Humanities: A Few Tricky Questions
Research Data in the Arts and Humanities: A Few Tricky QuestionsResearch Data in the Arts and Humanities: A Few Tricky Questions
Research Data in the Arts and Humanities: A Few Tricky Questions
 
Open Science and Horizon 2020
Open Science and Horizon 2020Open Science and Horizon 2020
Open Science and Horizon 2020
 
Research Data Management for the Humanities and Social Sciences
Research Data Management for the Humanities and Social SciencesResearch Data Management for the Humanities and Social Sciences
Research Data Management for the Humanities and Social Sciences
 
Data Management Plans: a gentle introduction
Data Management Plans: a gentle introductionData Management Plans: a gentle introduction
Data Management Plans: a gentle introduction
 
Research Data Management: a gentle introduction for admin staff
Research Data Management: a gentle introduction for admin staffResearch Data Management: a gentle introduction for admin staff
Research Data Management: a gentle introduction for admin staff
 
Research Data Management: a gentle introduction
Research Data Management: a gentle introductionResearch Data Management: a gentle introduction
Research Data Management: a gentle introduction
 
Future agenda: repositories, and the research process
Future agenda: repositories, and the research processFuture agenda: repositories, and the research process
Future agenda: repositories, and the research process
 
Research data management: a tale of two paradigms:
Research data management: a tale of two paradigms: Research data management: a tale of two paradigms:
Research data management: a tale of two paradigms:
 
Research data management: definitions, drivers and resources
Research data management: definitions, drivers and resourcesResearch data management: definitions, drivers and resources
Research data management: definitions, drivers and resources
 
'Found' and 'after' - a short history of data reuse in the arts
'Found' and 'after' - a short history of data reuse in the arts'Found' and 'after' - a short history of data reuse in the arts
'Found' and 'after' - a short history of data reuse in the arts
 
Data management planning: the what, the why, the who, the how
Data management planning: the what, the why, the who, the howData management planning: the what, the why, the who, the how
Data management planning: the what, the why, the who, the how
 
DMP Online: update 2013
DMP Online: update 2013DMP Online: update 2013
DMP Online: update 2013
 
Data management planning: UK policies and beyond
Data management planning: UK policies and beyondData management planning: UK policies and beyond
Data management planning: UK policies and beyond
 

Último

Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Celine George
 
How to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxHow to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxmanuelaromero2013
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docxPoojaSen20
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13Steve Thomason
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingTechSoup
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesFatimaKhan178732
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxNirmalaLoungPoorunde1
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Sapana Sha
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Krashi Coaching
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionSafetyChain Software
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxRoyAbrique
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...EduSkills OECD
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 

Último (20)

INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
How to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptxHow to Make a Pirate ship Primary Education.pptx
How to Make a Pirate ship Primary Education.pptx
 
mini mental status format.docx
mini    mental       status     format.docxmini    mental       status     format.docx
mini mental status format.docx
 
The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13The Most Excellent Way | 1 Corinthians 13
The Most Excellent Way | 1 Corinthians 13
 
Grant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy ConsultingGrant Readiness 101 TechSoup and Remy Consulting
Grant Readiness 101 TechSoup and Remy Consulting
 
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"Mattingly "AI & Prompt Design: The Basics of Prompt Design"
Mattingly "AI & Prompt Design: The Basics of Prompt Design"
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and Actinides
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptx
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111Call Girls in Dwarka Mor Delhi Contact Us 9654467111
Call Girls in Dwarka Mor Delhi Contact Us 9654467111
 
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
Kisan Call Centre - To harness potential of ICT in Agriculture by answer farm...
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory Inspection
 
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptxContemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
Contemporary philippine arts from the regions_PPT_Module_12 [Autosaved] (1).pptx
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 

Open Data Strategies and Research Data Realities

  • 1. Facilitate Open Science Training for European Research Open Data Strategies and Research Data Realities Martin Donnelly Digital Curation Centre University of Edinburgh NCP Academy Webinar 31 October 2017
  • 2. The Digital Curation Centre (DCC) • UK national centre of expertise in digital preservation and data management, est. 2004 • Principal audience is the UK higher education sector, but we increasingly work further afield (continental Europe, North America, South Africa, Asia…) • Provide guidance, training, tools (e.g. DMPonline) and other services on all aspects of research data management and Open Science • Tailored consultancy/training • Organise national and international events and webinars (International Digital Curation Conference, Research Data Management Forum)
  • 3. • Phase 1 (2014-2016): Spread the Seeds of Open Science and Open Access • Creation of Open Science Taxonomy • 2000+ training materials, categorized in the FOSTER Portal • More than 100 f2f training events in 28 countries and 25 online courses, totalling more than 6300 participants FacilitateOpenScienceTrainingforEuropeanResearch The project http://fosteropenscience.eu
  • 4. • Phase 2 (2017-2019): Let the Flowers of Open Science Bloom • Focus on: • Training for the practical implementation of Open Science (face to face and online) including RDM and Open Data • Developing intermediate/advanced level/discipline-specific training resources in collaboration with three disciplinary communities (and related RIs): Life Sciences (ELIXIR), Social Sciences (CESSDA) and Humanities (DARIAH) • Update the FOSTER Portal to support moderated learning, badges and gamification • In concrete terms: • 150 new training resources • Over 50 training events (outcome-oriented, providing participants with tangible skills) and 20 e-learning courses • Multi-module Open Science Toolkit • Trainers Network, Open Science Bootcamp, Open Science Training Handbook, and more… FacilitateOpenScienceTrainingforEuropeanResearch The project http://fosteropenscience.eu
  • 5. OVERVIEW 1. Context: Open Data and openness in general 2. Benefits of an Open approach, and risks of getting it wrong 3. Emerging high-level consensus, e.g. H2020 policy and FAIR data principles 4. Clashes between the ideal world and the real world 5. RDM and Open Data in practice: key points and rules of thumb, plus reflections on assessing H2020 DMPs 6. Contacts and links
  • 6. Open Access + Open Data = Open Science • Openness in research is situated within a context of ever greater transparency, accessibility and accountability • As Open Access to publications became normal (if not yet ubiquitous), the scholarly community turned its attention to the data which underpins the research outputs, and eventually to consider it a first-class output in its own right. The development of the OA and research data management (RDM) agendas are closely linked as part of a broader trend in research, sometimes termed ‘Open Science’ or ‘Open Research’ • “The European Commission is now moving beyond open access towards the more inclusive area of open science. Elements of open science will gradually feed into the shaping of a policy for Responsible Research and Innovation and will contribute to the realisation of the European Research Area and the Innovation Union, the two main flagship initiatives for research and innovation” http://ec.europa.eu/research/swafs/index.cfm?pg=policy&lib=science
  • 7. Growing momentum and ubiquity… Data management is a part of good research practice. - RCUK Policy and Code of Conduct on the Governance of Good Research Conduct
  • 8. Good practice in RDM RDM is “the active management and appraisal of data over the lifecycle of scholarly and scientific interest” Core activities include: - Planning and describing data- related work before it takes place - Documenting your data (and processing/workflows) so that others can find and understand it - Choosing open (or at least standardised) file formats where possible - Storing data safely during a project - Depositing it in a trusted archive at the end of the research - Linking publications to the datasets that underpin them… and increasingly code/scripts too
  • 9. Benefits of Openness • IMPACT and LONGEVITY: Open data (and publications) receive more citations, over longer periods • SPEED: The research process becomes faster • ACCESSIBILITY: Interested third parties can (where appropriate) access and build upon publicly-funded research outputs with minimal barriers to access • EFFICIENCY: Data collection can be funded once, and used many times for a variety of purposes • TRANSPARENCY and QUALITY: The evidence that underpins research can be made open for anyone to scrutinise, and attempt to replicate findings. This leads to a more robust scholarly record, and reduces academic fraud for example • DURABILITY: Simply put, fewer important datasets will be lost
  • 10. Risks of not doing this, or getting this wrong • LEGAL – sensitive data is protected by law (and contracts) and needs to be protected • FINANCIAL – non-compliance with funder policies can lead to reduced access to income streams • SCIENTIFIC – potential discoveries may be hidden away in drawers, on USB • OPPORTUNITY COST – reduced visibility for research > lost opportunities for collaboration • QUALITY – the scholarly record becomes less robust • REPUTATIONAL – responsible data management is increasingly considered a core element of good scholarly practice in the 21st century
  • 11. Sounds good, right?! • So why don’t we live in an Open Data utopia? • Five main reasons… • Issues of ownership / privacy / ethics / security • Issues around reward and recognition for researchers • Lack of joined-up thinking within institutions, countries, internationally… (this is being addressed, slowly but surely) • Technical/financial/organisational limitations, including the need for selection and appraisal of data • And a bonus one… researchers don’t always relate to the terminology we use!
  • 12. Emerging global consensus? • Disciplinary quirks and differences notwithstanding, the past decade has seen great progress in shared best practice and common expectations… • RCUK Common Principles • National Open Data and Open Science strategies* • Establishment of the Research Data Alliance • EC data pilot > adoption of the FAIR Principles • “As open as possible; as closed as necessary.” (* DCC and SPARC-Europe are currently revising our joint list and analysis of national open data/open science policies. Get in touch if you have anything to add!)
  • 13. Case study: the European Commission and FAIR data • The EC has adopted FORCE11’s ‘FAIR’ approach to research data management. • These principles state that “One of the grand challenges of data-intensive science is to facilitate knowledge discovery by assisting humans and machines in their discovery of, access to, integration and analysis of, task- appropriate scientific data and their associated algorithms and workflows.” • To help achieve this, (meta)data should be… • Findable • Accessible • Interoperable • Reusable
  • 14. The FAIR Data Principles (1/4) To be 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.
  • 15. The FAIR Data Principles (2/4) To 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.
  • 16. The FAIR Data Principles (3/4) To 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.
  • 17. The FAIR Data Principles (4/4) To be Re-usable: 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.
  • 18. H2020 Data Management Plan • The DMP should include information on: • the handling of research data during and after the end of the project • what data will be collected, processed and/or generated • which methodology and standards will be applied • whether data will be shared/made open access, and • how data will be curated and preserved (including after the end of the project) • DMPs are submitted as deliverables – first version due at six-month stage • Template and guidance is given in the Guidelines doc
  • 19. Reflections on assessing H2020 DMPs • It would be better if everyone followed the same template – the EC does provide one, but its use isn’t (yet) mandatory • A DMP doesn’t need to tell everything there is to know about a project: brevity is a plus! • Areas of frequent weakness: security (access and storage), ethical restrictions for data sharing, appraisal of long-term value/interest, quality assurance processes, costs • Advice: • Be clear about the different between in-project and post-project data storage and archiving; • Don’t just regurgitate the H2020 guidelines – reviewers pick up on that really quickly; • Try not to confuse publications and data (I have seen projects describe archived data as ‘gold Open Access’ which doesn’t make much sense)
  • 20. Strategies for success, a three step guide
  • 21. Step 1. Be clear about who is involved • RDM is a hybrid activity, involving multiple stakeholder groups… • The researchers themselves • Research support personnel • Partners based in other institutions, funders, data centres, commercial partners, etc • No single person does everything, and it makes no sense to duplicate effort or reinvent wheels • Data Management Planning (DMP) underpins and pulls together different strands of data management activities. DMP is the process of planning, describing and communicating the activities carried out during the research lifecycle in order to… • Keep sensitive data safe • Maximise data’s re-use potential • Support longer-term preservation • Data Management Plans are a means of communication, with contemporaries and future re-users alike
  • 22. Step 2. Write things down • In a data management plan / record • In metadata to describe the data and help others to understand it • In workflows and README files • In version management • In justifying decisions re. access, embargo, selection and appraisal… the list can be very long… Communication is crucial… …and plans can and do change!
  • 23. Step 3. Don’t try to do everything yourself • See Step 1 ;)
  • 24. A few do’s and don’ts for RDM DO DON’T Have a plan for your data Make it up as you go along Keep backups. Make this easy with automated syncing services like Dropbox, provided your data isn’t too sensitive Carry the only copy around on a memory card, your laptop, your phone, etc Describe your data as you collect it. This makes it possible for others to interpret it, and for you to do the same a few years down the line Leave this till the end. The quality of metadata decreases with time, and the best metadata is created at the moment of data capture Save your work in open file formats, where possible, and use accepted metadata standards to enable like-with-like comparison Invent new ‘standards’ where community norms already exist Deposit your data in a data centre or repository, and link it to your publications Be afraid to ask for help. This will exist both within your institution, and via national / European support organisations
  • 25. RDM / Open Data in practice: key points 1. Understand your funder’s policies (and perhaps national policy initiatives – see recent SPARC-Europe reports) 2. Create a data management plan (e.g. with DMPonline) 3. Decide which data to preserve (e.g. using the DCC How-To guide and checklist, “Five Steps to Decide what Data to Keep”) 4. Identify a long-term home for your data (e.g. via re3data.org) 5. Link your data to your publications with a persistent identifier (e.g. via DataCite) • N.B. Many archives, including Zenodo, will do this for you 6. Investigate EU infrastructure services and resources
  • 26. And finally, a few RDM rules of thumb • Without intervention, data + time = no data • See Vines, above • Prioritise: could anyone die or go to jail? • Legal issues (e.g. protecting vulnerable subjects) are the most important • Storage is not the same as management • Think of data as plants and the servers as a greenhouse • The plants still need to be fed, watered, pruned, etc… and sometimes disposed of • Management is not the same as sharing • Not all data should be shared • Approach: “As open as possible, as closed as necessary” • Remember that plans are just that – they are not contracts!
  • 27. Contact details • For more information about the FOSTER project: • Website: www.fosteropenscience.eu • Principal investigator: Eloy Rodrigues (eloy@sdum.uminho.pt) • General enquiries: Gwen Franck (gwen.franck@eifl.net) • Twitter: @fosterscience • My contact details: • Email: martin.donnelly@ed.ac.uk • Twitter: @mkdDCC • Slideshare: http://www.slideshare.net/martindo nnelly This work is licensed under the Creative Commons Attribution 2.5 UK: Scotland License.

Notas do Editor

  1. The FOSTER project – what and how. FOSTER’s training strategy uses a combination of methods and activities, from face-to-face training, to the use of e-learning, blended and self-learning, as well as the dissemination of training materials/contents/curricula via a dedicated training portal, plus a helpdesk. Face-to-face trainings targets graduate schools in European universities and in particular will train trainers/teachers/multipliers that can conduct further training and dissemination activities in their institution, country and disciplinary community. FOSTER combines experiences and materials to showcase best practices, setting the scene for an active learning and teaching community for open access practices across Europe. The main outcomes of the project are: The FOSTER portal to host training courses and curricula; Facilitate the organisation of FOSTER training events and the creation of training content across Europe Identification of existing contents that can be reused in the context of the training activities and develop/create/ enhance contents if/where they are needed;
  2. Partners: University of Minho, University of Göttingen, Open University, Stichting eIFL.net, Digital Curation Centre University of Edinburgh and University of Glasgow, Danmarks Tekniske Universitet, Stichting LIBER, Spanish National Research Council, GESIS – Leibniz Institute for the Social Sciences, Centre for Genomic Regulation Associated partners: DARIAH EU, TIB Hannover
  3. Context: Open Knowledge Foundation, Creative Commons, G8 statement Open Science principles are an essential part of knowledge creation and sharing and innovation. They directly support researchers’ need for greater impact, optimum dissemination of research, while also enabling the engagement of citizen scientists and society at large on societal challenges. FOSTER aims to set in place sustainable mechanisms for EU researchers to integrate Open Science in their daily workflow, supporting researchers to optimizing their research visibility and impact and to facilitate the adoption of EU open access policies.
  4. Intro: Open Science, Open Research, Science 2.0 Who’s involved? OS is a horizontal topic, relevant to all stakeholders of the Research Cycle & Learning Objectives and Methods must address the various needs of each group;
  5. Note that even if data is not suitable for sharing/publication, it still needs active management!
  6. Global north perhaps – ref. South African webinars last week, which were an eye opener
  7. Note that the European Commission has established an Expert Group on Turning FAIR Data into Reality (E03464) which will run until Spring 2018.
  8. A DMP is a basic statement of how you will create, manage, share and preserve your data Funders expect the decisions to be justified, particularly where it’s not in line with their policy (e.g. limits on data sharing)