RHoMIS, SEONT and OIMS: how do we progress and digitally connect these elements?
Convention: Digital Dynamism for Adaptive Food Systems, 19-23 October 2020. During this cross-CoP meeting with the Socio-economic data CoP we learnt about the advancements of the SEONT ontology, the extraction of concepts for SEONT using Machine Learning, discovered OIMS and discussed how to integrate these elements with RHoMIS.
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Format: | Video biblioteca |
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Language: | English |
Published: |
CGIAR Plataform for Big Data in Agriculture
2020
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Subjects: | AGRICULTURAL SCIENCES AND BIOTECHNOLOGY, ONTOLOGY, MACHINE LEARNING, DATA, |
Online Access: | https://hdl.handle.net/10883/21255 |
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