Bridging the gap between climate science and farmers in Colombia

Climate Risk Management - Tập 22 - Trang 67-81 - 2018
Ana María Loboguerrero1,2, Francisco Boshell1,3,4, Gloria León1,4, Deissy Martínez- Barón1,2, Diana Giraldo2, Liliana Recaman Mejía5,6, Eliecer Díaz1,4, James H. Cock2
1CGIAR Research Program on Climate Change, Agriculture and Food Security (CCAFS), the Netherlands
2International Center for Tropical Agriculture (CIAT), Colombia
3National University of Colombia, (Colombia)
4Soluciones Agroambientales ECOSAGA, Colombia
5Environmental Division Acueducto y Alcantarillado de Popayán S.A. E.S.P. (Popayán Water and Sewage Company), Colombia
6Fundation Procuenca Río Las Piedras (River Las Piedras Watershed Foundation), Colombia

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