A scalable scheme to implement data-driven agriculture for small-scale farmers
Date Issued
Date Online
Language
Type
Review Status
Access Rights
Metadata
Full item pageCitation
Jiménez, Daniel; Delerce, Sylvain; Dorado, Hugo; Cock, James ; Muñoz, Luis Armando ; Agamez, Alejandro & Jarvis, Andy (2019). A scalable scheme to implement data-driven agriculture for small-scale farmers. Global Food Security. 23: 256-266
Permanent link to cite or share this item
External link to download this item
Abstract/Description
The Colombian Ministry of Agriculture Colombia, an international research center and a national farmers’ organization developed a data-driven agricultural program that: (i) compiles information from multiple sources; (ii) interprets that data; and (iii) presents the knowledge to farmers through the local advisory services. Data was collected from multiple sources, including small-scale farmers. Machine learning algorithms combined with expert opinion defined how variation in weather, soils and management practices interact and affect maize yield of small-scale farmers. This knowledge was then used to provide guidelines on management practices likely to produce high, stable yields. The effectiveness of the practices was confirmed in on-farm trials. The principles established can be applied to rainfed crops produced by small-scale farmers to better manage their crops with less risk of failure.
Author ORCID identifiers
Sylvain Delerce https://orcid.org/0000-0003-2451-3604
Andy Jarvis https://orcid.org/0000-0001-6543-0798