1 / 11

GEOSHARE-CIMSANS - Overview and Lessons from the Pilot Project

GEOSHARE-CIMSANS - Overview and Lessons from the Pilot Project. Paul Hendley ( Phasera Ltd. for the ILSI Research Foundation ) and Tom Hertel/Nelson Villoria (Purdue). Center for Integrated Modeling of Sustainable Agriculture & Nutrition Security ( CIMSANS ).

Download Presentation

GEOSHARE-CIMSANS - Overview and Lessons from the Pilot Project

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. GEOSHARE-CIMSANS - Overview and Lessons from the Pilot Project Paul Hendley (Phasera Ltd. for the ILSI Research Foundation) and Tom Hertel/Nelson Villoria (Purdue) .

  2. Center for Integrated Modeling of Sustainable Agriculture & Nutrition Security (CIMSANS) • International Life Sciences Institute (ILSI) Research Foundation initiative • Collaborating and building tri-partite relationships • Between industries, academics and government • Use scientific data and approaches to address emerging challenges and help inform policy through productive dialogue • Especially via improved Open Source Ag Data & improved modeling approaches • Goal - conduct Sustainable Nutrition Security (SNS) impact assessment • Requires Scoping of SNS Landscape & metrics– Conceptual Model & manuscript • Requires some new assumptions, new or improved models & support tools • Requires unique combination of data – private industry may be only global source • Data Translation and Reprocessing tools – to assist data sharing and recovery • Model Friendly, Multi-scale Global Data Portal – Funding GEOSHARE

  3. CIMSANS – GEOSHARE Pilot Project • PURPOSE “…..to generate necessary infra-structure and levels of user participation and interest for collecting and curating public and private data while ensuring data quality and enhancing inter-operability. “ via examples • Cloud based Spatial Production Allocation Model (SPAM-IFPRI) • Ghana and India – scalability & data density/availability/richness • HUBZero suitability for CIMSANS-relevant modeling frameworks • Effective curation mechanism providing lasting added local/global value • Could GEOSHARE provide framework for unified access to baseline and added value data for economic/physical modeling to support global efforts to assure secure/sustainable nutrition for all • Complementary with well established initiatives to avoid duplication

  4. CIMSANS – GEOSHARE Pilot – Lessons so far • Not stamp collecting – no incentives to contribute/maintain data • Adding lasting value to data contributors/users via WORKFLOWS essential • New or better workflows with automated metadata, replicability advantages key • Or enhanced accessibility (format, visualization, avoid pre-processing) – especially cross-discipline or cross-expertise level • HUBZero offers tools that can make workflows readily publically accessible • Certain key replicable “best-available” fused data not generally available • Slavish “copying” of existing tools into new cyber-infrastructure will not meet tomorrow’s needs • Conceptual models defining scope of new tools need to be (RE)designed to fit anticipated needs/data • Communities of practice to input to design/endorse tools -“FIT FOR PARTICULAR PURPOSES” • Spatial allocation approaches a good example • Making endorsed “Best Available” added-value data readily available to all is an important goal for improving overall quality/acceptance of food and nutrition security modeling

  5. Where does GEOSHARE-CIMSANS go next?? • What we are looking for from the next two days is stakeholder input through the breakouts • Examples and Q&A should give everyone a good view on scope/capabilities of HUBZero and GEOSHARE concept • Questions targeted to explore how you see • GEOSHARE & HUBZero per se • Necessary next steps in • Data Fusion – Aggregation of intermediate data at disparate scales/sophistication levels • Cross-sector unification/endorsement of best-available Climate/Environ/Economic data • CREDIBILITY by CONSENSUS where assumptions are needed • Assistance for making important global data available in usable formats • Improved inter-operability between data and model I/O modules

  6. On to the workshop!………………

  7. HUBZero and GEOSHARE Breakout 1430-1530 Q1: What specific needs should cyber-infrastructure for the geospatial community address? Do these needs vary across data/model users and data/model providers? Q2: What are the work flows implied by these needs? How much of the workflow should be on-line? Is the hub a place to ensure reproducible research? Q3: What incentives can be put in place to ensure these work flows are utilized? Q4: In what ways will the use of HUBZero contribute to transparency, credibility, and acceptance of the underlying data and work flows available within GEOSHARE?Group 1: Carol Song*, Paul Hendley**, Group 2: Tom Hertel*, Jingyu Song**Group 3: Nelson Villoria*, Ulrike Wood-Sichra**, Group 4: Paul Preckel*, Dave Gustafson**

  8. Institutional Design Breakout – 1420 - 1710 Q1: How can a public-goods project like GEOSHARE be sustained over the long run? Q2: What are the appropriate roles for the Advisory Board? Q3: What are the incentives for participation in GEOSHARE, as viewed from the perspective of: node leaders, government data generators, private industry, academics, other data consortia and user communities? Q4: How are data and work flow priorities defined? Group 1: Tom Hertel*, James Jones**, Group 2: Dave Gustafson*, Hermann Lotze-Campen** Group 3: Nelson Villoria*, Kate Schneider**, Group 4: Paul Hendley*, Ron Sands**

  9. Data Validation/Endorsement Breakout – 1000-1100 Q1: What is the value of GEOSHARE-endorsed geospatial data products for agriculture, food security and the environment? Who will benefit from such endorsement? Are there downsides from such endorsement? Q2: Different data sets and workflows may be suited for different purposes: Which of these is most pressing for GEOSHARE to achieve, and how might this be accomplished? Q3: Mechanics of endorsement: Who does the endorsement? How frequently, and in what form? Q4: Is broad stakeholder input needed? If so, how will this collected and integrated as part of the endorsement process? Group 1: Niven Winchester*, Paul Hendley**, Group 2: Petr Havlik*, Mark Imhoff** Group 3: Hermann Lotze-Campen*, Jawoo Koo**

  10. Data Fusion/Reconciliation Breakout – 1000-1100 Q1: There is a trade-off between transparency (simplicity) and sophistication (complexity) in data fusion. Where should GEOSHARE aim on this spectrum? Q2: What is the role for prior information in this process? Q3: How can GEOSHARE harness private- and public-sector knowledge and expertise in the process of data fusion? Q4: What is the role of ground-truthing and crowdsourcing in complementing data fusion based on more census and remote-sensing sources? Group 1: Navin Ramankutty*, Sherman Robinson**, Group 2: Paul Preckel*, Stefan Siebert**, Group 3: Andrew Nelson*, Paul Hendley**

  11. What does this Holy Grail look like anyway? • …generating unified high quality spatial datasets that are a readily accessible to and accepted as best-available science by all potential stakeholders involved in the production and forecasting of a secure and nutritious global food supply….. • “UNIFIED home” for curating open source data from all sources – open source • Mechanism for alerting potential users to new and existing data • ..and associated strengths and weaknesses via solid metadata • Scientific recognition for data generators – “data journal” citable with DOI • Cross-sector unification/endorsement of best-available Climate/Environ/Economic data • Collaboration between intermediate data “aggregation” processes • CREDIBILITY by CONSENSUS where assumptions have to be made • Assistance for making important global data available in usable formats • Improved inter-operability between data and model I/O modules

More Related