{"dcterms:modified":"2025-03-31","dcterms:creator":"Harvard Dataverse","@type":"ore:ResourceMap","schema:additionalType":"Dataverse OREMap Format v1.0.1","dvcore:generatedBy":{"@type":"schema:SoftwareApplication","schema:name":"Dataverse","schema:version":"6.6 build 1829-192cdc4","schema:url":"https://github.com/iqss/dataverse"},"@id":"https://dataverse.harvard.edu/api/datasets/export?exporter=OAI_ORE&persistentId=https://doi.org/10.7910/DVN/28703","ore:describes":{"citation:keyword":[{"citation:keywordValue":"Climate Smart Agriculture"},{"citation:keywordValue":"Food Security"},{"citation:keywordValue":"Land Health"},{"citation:keywordValue":"Soil"},{"citation:keywordValue":"Socio-Economic"},{"citation:keywordValue":"Adaptation"},{"citation:keywordValue":"Mitigation"}],"author":[{"citation:authorName":"Winowiecki, Leigh"},{"citation:authorName":"Laderach, Peter"},{"citation:authorName":"Mwongera, Caroline"},{"citation:authorName":"Twyman,  Jennifer"},{"citation:authorName":"Mashisia, Kelvin"},{"citation:authorName":"Okolo, Wendy"},{"citation:authorName":"Eitzinger, Anton"},{"citation:authorName":"Rodriguez, Beatriz"}],"citation:topicClassification":[{"citation:topicClassValue":"Outscaling Climate Smart Agriculture practice"},{"citation:topicClassValue":"Socio-ecological landscape modeling"},{"citation:topicClassValue":"Climate Change Adaptation Strategies"},{"citation:topicClassValue":"increasing agricultural resilience"}],"timePeriodCovered":{"citation:timePeriodCoveredStart":"2014","citation:timePeriodCoveredEnd":"2017"},"citation:datasetContact":[{"citation:datasetContactName":"Camargo, Paola","citation:datasetContactAffiliation":"CCAFS","citation:datasetContactEmail":"p.a.camargo@cgiar.org"},{"citation:datasetContactName":"Cramer, Laura","citation:datasetContactAffiliation":"CCAFS","citation:datasetContactEmail":"L.Cramer@CGIAR.ORG"}],"citation:dsDescription":{"citation:dsDescriptionValue":"The overall project goal is to improve food security and farming system resilience of smallholder mixed crop-livestock farmers in East Africa while mitigating climate change through wide-scale adoption of climate-smart agriculture (CSA). 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