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171 to 180 of 214 Results
Oct 22, 2016
International Center for Tropical Agriculture, 2016, "Relative effectiveness of tropical forage legume-rhizobium combinations: Catalogue of results of greenhouse and field trials", https://doi.org/10.7910/DVN/VYL6UE, Harvard Dataverse, V1, UNF:6:XaAWYr2/ioejCQFknY7N8g== [fileUNF]
The results of evaluations of tropical forage legume-rhizobium combinations carried out in undisturbed soil cores and fleld trials by CIAT from 1980-1988 and the catalogue of the CIAT rhizobium collection.
Oct 22, 2016
International Center for Tropical Agriculture, 2016, "Catalogue of vesicular-arbuscular mycorrhiza strains", https://doi.org/10.7910/DVN/XI3EOC, Harvard Dataverse, V1, UNF:6:okg83TYz5E5nUEKb1voLkA== [fileUNF]
The Catalogue of vesicular-arbuscular mycorrhiza strains and results of evaluations of some this strains carried out from 1982-1985.
Oct 22, 2016
Sain, Gustavo; Loboguerrero, Ana María; Corner Dolloff, Caitlin; Lizarazo, Miguel; Nowak, Andreea; Martínez Barón, Deissy; Andrieu, Nadine, 2016, "Replication Data for: Costs and benefits of climate-smart agriculture: The case of the Dry Corridor in Guatemala", https://doi.org/10.7910/DVN/LF0VEZ, Harvard Dataverse, V1, UNF:6:Aj2/h/sKTC69vjHemqPRBg== [fileUNF]
Central American countries, particularly Guatemala, are experiencing extreme climate events which are disproportionately affecting agriculture and subsequently rural livelihoods. Governments are taking action to address climatic threats, but they need tools to assess the impact of policies and interventions aiming to decrease the impacts of climate...
Oct 22, 2016
Da Silva, Mayesse; Monserrate, Fredy; Valencia, Jefferson; Quintero, Marcela; Jarvis, Andy, 2016, "Digital mapping of soil properties in the West of Honduras, Central America.", https://doi.org/10.7910/DVN/QVXA7U, Harvard Dataverse, V2
Digital soil property maps were generated at 30 meters resolution for the West of Honduras in order to develop the AGRI v.1 tool (Monserrate et al., 2016). AGRI (from its Spanish words AGua para RIego) is a tool that combines information about climate, relief, soils, land cover, and hydrology to identify suitable water sources for implementing smal...
Jul 22, 2016
Mwongera, Caroline; Shikuku, Kelvin Mashisia; Twyman, Jennifer; Läderach, Peter; Ampaire, Edidah; Van Asten, Piet; Twomlowd, Steve; Winowiecki, Leigh, 2016, "Replication Data for: Climate smart agriculture rapid appraisal (CSA-RA): A tool for prioritizing context-specific climate smart agriculture technologies", https://doi.org/10.7910/DVN/HCFDU8, Harvard Dataverse, V2, UNF:6:jZOAo2/XRDd7jArpYw4goA== [fileUNF]
Approaches that aim to identify and prioritize locally appropriate climate smart agriculture (CSA) technologies will need to address the context-specific multi-dimensional complexity in agricultural systems. The climate smart agriculture rapid appraisal (CSA-RA) is a mixed method approach that draws on participatory bottom-up, qualitative, and quan...
Jul 8, 2016
Ceballos, Hernán; Pérez, Juan C.; Joaqui B., Orlando; Lenis, Jorge I.; Morante, Nelson; Calle, Fernando; Hershey, Clair, 2016, "Replication Data for: Cassava Breeding I: The value of breeding value", https://doi.org/10.7910/DVN/QB9FUW, Harvard Dataverse, V1, UNF:6:CD3Izf34T6JGdn+3BYPODA== [fileUNF]
Phenotypic data from clonal evaluation trials in sub-humid environment of Colombia
Jun 7, 2016
International Center for Tropical Agriculture, 2016, "Genotype x environment interaction in Arachis pintoi", https://doi.org/10.7910/DVN/PJOYTG, Harvard Dataverse, V1, UNF:6:vHxOLODJ1IPMiPtFJOKa+g== [fileUNF]
Agronomic evaluation. In 1994, the available 27 accessions of Arachis pintoi and 5 of Arachis repens, were planted at 6 sites in Colombia to evaluate genotype-environment interaction. The environments ranged from the humid tropics (Macagual and La Rueda in Caqueta), the savannas (a sandy loam (Alegria) and clay loam (Alcancla) soil sites at Carimag...
Jun 7, 2016
International Center for Tropical Agriculture, 2016, "Study of early adoption-acceptability by farmers of Arachis pintoi in Colombia", https://doi.org/10.7910/DVN/HJ2Y8U, Harvard Dataverse, V1, UNF:6:LzoW+iukwaIqUxG/yvkU/Q== [fileUNF]
Acceptability to farmers of Arachis pintoi (CIAT 1743) was studied in Colombia in order to make an assessment of factors contributing to adoption of this legume. The legume has been promoted mainly in the country's coffee growing regions by CENICAFE, (National Coffee Research Center), CODEGAR (Cooperative of Farmers and Cattle Raisers of Risaralda)...
Apr 28, 2016
Barona, Elizabeth; Guevara, Edward Darío; Hyman, Glenn, 2016, "Replication Data for: Priority regions for research on dryland cereals and legumes.", https://doi.org/10.7910/DVN/EDMXSK, Harvard Dataverse, V4, UNF:6:loJm7wy0VRiSBz6QuGnfbA== [fileUNF]
This data set characterizes dryland systems and cereal and legume crops (Hyman et al., 2016). The data is a subset of a larger data set that characterizes the farming systems of John Dixon’s global farming systems framework and map (Dixon et al., 2001; Barona and Hyman, 2016). The data subset focuses on the following crops: chickpea, common bean, c...
Apr 28, 2016
Barona, Elizabeth; Guevara, Edward Darío; Hyman, Glenn, 2016, "Characterization data on crops, production systems, abiotic constraints, population and poverty for farming system regions of the world.", https://doi.org/10.7910/DVN/PLJ4SC, Harvard Dataverse, V3, UNF:6:q4cqpLC1wjReBt3Ej9Nr2A== [fileUNF]
This data set builds on a previous project that examined geographic targeting of agricultural research and development based on the coincidence of biophysical and socioeconomic conditions of drought prone crop production (Hyman et al., 2008). The data characterizes the farming systems of John Dixon’s global farming systems framework and map (Dixon...
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