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Open Science: What, why, how?
Remedios MeleroConsejo Superior de Investigaciones Científicas (CSIC),FOSTER partner
Obra licenciada con Creative Commons By 4.0 internacional
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“Open Science (OS) offers researchers tools and workflows for transparency, reproducibility, dissemination and transfer of new knowledge”
“The conduction of science in a way that others can collaborate and contribute, where research data, lab notes and other research processes are freely available, with terms that allow reuse, redistribution and reproduction of the research. ( Open science, http://en.wikipedia.org/wiki/Open_science)
“Open science is the idea that scientific knowledge of all kinds should be openly shared as early as is practical in the discovery process.”(Michael Nielsen, http://openscienceasap.org/open-science/ )
Significado de la Open Science
Principios de la Open Science
Open Methodology (Métodos, procesos, documentos relevantes)
Open Source (Soft- y Hardware)
Open Data ( datos reutilizables)
Open Access to scholarly outputs (acceso gratis y libre)
Open Peer Review (transparencia en la evaluación y en los criterios de calidad)
Open Educational Resources (MOOCs, OERs)
http://openscienceasap.org/open-science/
Open access…( término definido por primera vez en la Declaración de Budapest, febrero 2002)
“Los recursos en acceso abierto son digitales, online, libres de cargas económicas, libres de la mayor parte de restricciones debidas a los derechos de explotación” (Peter Suber)
Objetos digitales de acceso abierto:• Acceso gratuito online (libre de barreras económicas)• Eliminan ± restricciones de copyright (permite la reutilización
de acuerdo a los permisos o licencias que se establezcan)
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Consecuencias/beneficios del acceso abierto
Visibilidad
“Impacto”
Impacto social
TendenciasResponsabilidad
Retorno de inversión
Rompe barreras
AccessibleData must be located in such a manner that it can readily be found and in a form that can be used.
UseableIn a format where others can use the data or information. Data should be able to be reused, often for different purposes, and therefore will require proper background information and meta data.
AssessableIn a state in which judgments can be made as to the data or information’s reliability.
IntelligibleComprehensive for those who wish to scrutinise something.
Open data must be accessible, useable, assessable and intelligible ( extracted from Science as an Open Enterprise, 2012 )
Australian National Data Service. http://www.ands.org.au/cite-data/index.html
Identification of datasets favours their use and citationData can be cited….
http://www.dcc.ac.uk/sites/default/files/documents/data-forum/documents/events/dcc-2010/posters/Contribution165wilson.pdf
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http://ec.europa.eu/research/participants/data/ref/h2020/grants_manual/hi/oa_pilot/h2020-hi-oa-pilot-guide_en.pdf
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Research Data Pilot in H2020
A novelty in Horizon 2020 is the Open Research Data Pilot which aims to improve and maximise access to and re-use of research data generated by projects. The legal requirements for projects participating in this pilot are contained in the optional article 29.3 of the Model Grant Agreement.
http://ec.europa.eu/research/participants/data/ref/h2020/grants_manual/hi/oa_pilot/h2020-hi-oa-data-mgt_en.pdf
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For the 2016-2017 Work Programme, the areas of Horizon 2020 participating in the Open Research Data Pilot are:
• Future & Emerging Technologies• Research infrastructures• Leadership in enabling & industrial technologies – Information & Communication
Technologies• Nanotechnologies, Advanced Materials, Advanced Manufacturing & Processing, &
Biotechnology – 'nanosafety' & 'modelling' topics• Societal Challenge – Food security, sustainable agriculture & forestry, marine &
maritime & inland water research & the bioeconomy - selected topics as specified in the work programme
• Societal Challenge – Climate Action, Environment, Resource Efficiency & Raw Materials – except raw materials
• Societal Challenge – Europe in a changing world – inclusive, innovative & reflective societies
• Science with & for Society• Cross-cutting activities – focus areas – part Smart & Sustainable Cities
Projects in other areas can participate on a voluntary basis
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Opting out partially or entirely from the Pilot on Open Research DataProjects can opt out at any stage if:
• Participation is incompatible with the Horizon 2020 obligation to protect
• Results that can reasonably be expected to be commercially or industrially exploited
• Participation is incompatible with the need for confidentiality in connection with security issues
• Participation is incompatible with rules on protecting personal data
• Participation would mean that the project's main aim might not be achieved
• The project will not generate / collect any research data
• There are other legitimate reasons not to take part in the Pilot (at proposal
stage - free text box provided).
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Types of data covered by the Open Research Data Pilot:
1. The data, including associated metadata (i.e. metadata describing the research data deposited), needed to validate the results presented in scientific publications as soon as possible ("underlying data")
2. Other data (for instance curated data not directly attributable to a publication, or raw data), including associated metadata, as specified and within the deadlines laid down in the data management plan that is, according to the individual judgement by each project
In a research context, examples of data include statistics, results of experiments, measurements, observations resulting from fieldwork, survey results, interview recordings and images. The focus is on research data that is available in digital form.
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References to research data management are included in Article 29.3 of the Model Grant Agreement (article applied to all projects participating in the Pilot on Open Research Data in Horizon 2020).
29.3 Open access to research data [OPTION for actions participating in the open Research Data Pilot: Regarding the digital research data generated in the action (‘data’), the beneficiaries must: (a) deposit in a research data repository and take measures to make it possible for third parties to access, mine, exploit, reproduce and disseminate — free of charge for any user — the following:
(i) the data, including associated metadata, needed to validate the results presented in scientific publications as soon as possible;
(ii) other data, including associated metadata, as specified and within the deadlines laid down in the ‘data management plan’ (see Annex 1);
(b) provide information — via the repository — about tools and instruments at the disposal of the beneficiaries and necessary for validating the results (and — where possible — provide the tools and instruments themselves).
https://ec.europa.eu/research/participants/data/ref/h2020/grants_manual/hi/oa_pilot/h2020-hi-oa-pilot-guide_en.pdf
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Projects participating in the pilot will be required to develop a Data Management plan (DMP), in which they will specify what data will be open.
• The Commission does NOT require applicants to submit a DMP at the proposal stage.
• A DMP is therefore NOT part of the evaluation.• DMPs are a deliverable for those participating in the
pilot (within first 6 months, at midterm and at the end of the project- at least)
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Draft European Open Science Agenda. 26 February 2016
Based on 5 policy actions:
• Foster Open Science• Remove barriers to Open Science• Develop research infrastructures for Open Science• Mainstream Open Access to research results• Embed Open Science in Society
https://ec.europa.eu/research/openscience/pdf/draft_european_open_science_agenda.pdf
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Draft European Open Science Agenda. 26 February 2016
Some actions…
• Reward researchers engaged in Open Science activities (career development)• Allow research funders to provide specific incentives for 'collaborative science‘
including societal actors and citizen science• Improve expertise and guidance (In open science)• Implement data-sharing principles (e.g. G8 principles / FAIR)
• Recognize new professions e.g. Establish a professorship on Openness, on Big data• management, data mining etc.• Introduce openness as criterion for receiving research funding• Analyse current competency levels (research organisations)• Adapt university curricula to new needs• Pilot a EU Certificate of Open Research• Create incentives for skill transfer in data analytics and cloud technology for research
Some implementations….
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This document is a living document reflecting the present state of open science evolution. It is based on the input of many participating experts and stakeholders of the Amsterdam Conference ‘Open Science – From Vision to Action’, hosted by the Netherlands’ EU Presidency on 4 and 5 April 2016.
Formulated to reach two important pan-European goals for 2020:
1. Full open access for all scientific publications2. A fundamentally new approach towards optimal reuse of research data
To reach these goals by 2020 we need flanking policy:• New assessment, reward and evaluation systems• Alignment of policies and exchange of best practices
http://english.eu2016.nl/documents/reports/2016/04/04/amsterdam-call-for-action-on-open-science
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Removing barriers to open science1. Change assessment, evaluation and reward systems in science2. Facilitate text and data mining of content3. Improve insight into IPR and issues such as privacy4. Create transparency on the costs and conditions of academic communication
Developing research infrastructures5. Introduce FAIR and secure data principles 6. Set up common e-infrastructures
Fostering and creating incentives for open science7. Adopt open access principles 8. Stimulate new publishing models for knowledge transfer9. Stimulate evidence-based research on innovations in open science
Mainstreaming and further promoting open science policies10. Develop, implement, monitor and refine open access plans
Stimulating and embedding open science in science and society11. Involve researchers and new users in open science 12. Encourage stakeholders to share expertise and information on open science
Twelve actions grouped around the five cuttig themes that follow the structure of the European Open Science Agenda proposed by the EC
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Researchers’ green open access practice: a cross-disciplinary analysis. Spezi et al., 2013 (https://dspace.lboro.ac.uk/dspace-jspui/handle/2134/12324).Some results from the EC-funded Publishing and the Ecology of European Research (PEER) project (http://www.peerproject.eu/)
Motivaciones para el depósito por tipo de repositorio
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Quién hace el depósito en repositorios institucionales
Quién hace el depósito en repositorios temáticos
UNESCO (2012), Policy Guidelines for the Development and Promotion of Open Access, UNESCO Publishing, and Björk et al. (2010), “Open Access to the scientific journal literature: Situation 2009”, PloS ONE, Vol. 5, No. 6.
La disciplina importa….
De dónde obtiene el trabajo. Preliminary analysis of OECD NESTI Pilot Survey of Scientific Authors 2014-15. Note: NK = not known.
http://exchanges.wiley.com/blog/wp-content/uploads/2014/11/Researcher-Data-Insights-Infographic-FINAL-REVISED-2.jpg
Standard practice, increase impact and public benefit
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The purpose of LEARN is to take the LERU Roadmap for Research Data produced by the League of European Research Universities (LERU) and to develop this in order to build a coordinated e-infrastructure across Europe and beyond. LEARN will deliver:
• a model Research Data Management (RDM) policy;• a Toolkit to support implementation, and;• an Executive Briefing in five core languages so as to ensure wide outreach.
http://learn-rdm.eu
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Project Outputs1) An analytic rubric to standardize the review of data management plans as a means to inform targeted expansion or development of research dataservices at academic libraries;2) A study utilizing the rubric that presents the results of data management plan analyses at five universities.
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http://edison-project.eu/ Data Scientist is a complex profession
..”data scientists range from pure e-Science driven by research communities, to applications of Data Science Professionals in Public Institutions”
“future Data Scientists must posses knowledge (and obtain competencies and skills) in data mining and analytics, information visualisation and communication, as well as in statistics, engineering and computer science, and acquire experiences in the specific research or industry domain of their future work and specialisation.
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https://youtu.be/gYDb-GP1CA4
http://datasupport.researchdata.nl/en/start-de-cursus/ii-planfase/datamanagementplanning/
Mas información:http://www.fosteropenscience.eu/https://www.openaire.eu/opendatapilot
¡Gracias!Gràcies!
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http://www.consorciomadrono.es/pagoda/index2.php