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Global Open Science Commons IG. www.rd-alliance.org/groups/coordinating-global-open-science-commons-ig. Kazu Yamaji NII Japan. Corina Pascu EC Belgium. Andrew Treloar ARDC Australia. Vivien Bonazzi Deloitte USA. Omo Oaiya WACREN Nigeria. Sarah Jones DCC Scotland.
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Global Open Science Commons IG www.rd-alliance.org/groups/coordinating-global-open-science-commons-ig Kazu Yamaji NII Japan Corina Pascu EC Belgium Andrew Treloar ARDC Australia Vivien Bonazzi Deloitte USA Omo Oaiya WACREN Nigeria Sarah Jones DCC Scotland Devika Madalli ISI India
Session agenda • Introductory grounding (15 mins) Sarah / Corina • The remit of the new Interest Group • Defining a typology for Open Science Commons • Report from the CODATA conference session in Beijing • Developing the WG proposal (60 mins) - Andrew / Mark • Proposals for initial pilot cases input from floor • How to coordinate / synchronise topics - shared workplan / timeline or thematic • Volunteers to contribute to pilots and lead WG • Shaping the OSC agenda & global collaboration (15 mins) Juan www.rd-alliance.org/open-science-commons-interest-group-working-group-0 Please add to the collaborative session notes! http://tiny.cc/GOSC-IG
Research Data Alliance BoFs Several previous sessions before IG: • Towards a Global Open Science Commons, March 2018, Berlin • Delivering a Global Open Science Commons, November 2018, Gaborone • Coordinating Global Open Science Commons initiatives, March 2019, Philadelphia
CODATA session • To examine potential for further coordination and interoperability • New case studies (Asia/Pacific region and international) • Platforms/clouds: • CSTCloud federation cloud for open science in China • National Data platform datagov.in in India • African Open Science Cloud • Inter-Regional modular solution for federation of inter-regional Open Science clouds (e.g. EU-China, EU-Africa or Africa-China) • Services: • Sharing mesh of storage, data and applications: H2020 CS3mesh4EOSC (starting 01/2020, Coordinator: CERN, AARNet partner) • National/international policies • G7, ISC, International Science Council, NDSAP ( National Data Sharing and Accessibility Policy) and Open Science initiatives in India, progress in Japan https://conference.codata.org/CODATA_2019/sessions/155
Some take-aways • Initiatives are emerging globally, including in less economically developed countries – how to enable inter-regional cooperation? • Multilateral and cross disciplinary cooperation is needed • The Beijing Declaration (under review) on core principles to encourage global cooperation especially for public research data • Many pieces in the “puzzle” required to make this vision a reality which include policy and technical spheres but also governance, cultural change
GOSC Interest & Working groups https://rd-alliance.org
Remit of new Interest Group • Provide a neutral place where people have conversations about Open Science Commons • Reach a shared understanding of what a “Commons” is in the research data space • Proactively look outside the RDA community to connect with parallel initiatives • Own the overall remit of coordinating the delivery of a Global Open Science Commons and monitor progress made within related RDA Working Groups and other initiatives
Plan for first 12-18 months • Reach consensus on the description/vision of a Commons. • Agree a typology of Open Science Commons to provide a framework for activity • Develop a roadmap for global alignment between Global Open Science Commons. • Create one or more initial Working Groups to conduct focused activity.
What is an Open Science Commons? “A shared virtual space or platform that provides a marketplace for data and services” Could be country, continent, discipline, sector based e.g. • European Open Science Cloud • Australian Research Data Commons • African Open Science Platform • Data Commons for Food Security • CSIROs Managed Data Ecosystem • …..
Science Commons typologies… EOSC six layers
Typology of areas for consensus building in global commons initiatives • FAIR object ecosystem (FAIR DOs, PIDs/GUPRIs, Types) • Community Services/Core Resources • Semantic resources, metadata schema • Repositories/data resources, data stewardship services, analytical tools • Communities Agreements (data sharing/visiting agreements) Data Policies Infrastructure (network, compute, storage) Skills and Training Business Models and Sustainability Governance and Rules of Engagement
NIH technical layers plus… Technical AND human dimensions Flows…… . Governance Don’t build silos! Open APIs and open data where possible Avoid vendor lock-in. Infrastructure should be “forkable” to move elsewhere if desired Stakeholder engagement Sustainability Technical layer cake courtesy of Vivien Bonazzi, NIH
Thanks for listening! Questions? sarah.jones@glasgow.ac.uk Twitter: @sjDCC