Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains

CSISA aims to use ‘sustainable intensification’ technologies and management practices to enhance the productivity of cereal-based cropping systems, increase farm incomes, and reduce agriculture’s environmental footprint. the intersection of a diverse set of partners in the public and private sectors...

Descripción completa

Detalles Bibliográficos
Autor principal: CGIAR Research Program on Maize
Formato: Informe técnico
Lenguaje:Inglés
Publicado: 2019
Materias:
Acceso en línea:https://hdl.handle.net/10568/123554
_version_ 1855528703772065792
author CGIAR Research Program on Maize
author_browse CGIAR Research Program on Maize
author_facet CGIAR Research Program on Maize
author_sort CGIAR Research Program on Maize
collection Repository of Agricultural Research Outputs (CGSpace)
description CSISA aims to use ‘sustainable intensification’ technologies and management practices to enhance the productivity of cereal-based cropping systems, increase farm incomes, and reduce agriculture’s environmental footprint. the intersection of a diverse set of partners in the public and private sectors, occupying the crucial middle-ground where research meets development. The project generates data and evidence on improving crop production and identifying more sustainable means of growing crops, and then scales them out to partners in the public and private sector to raise the awareness of farmers and other stakeholders on these options. By engaging with a network of partners as an agricultural innovation systems broker, CSISA is built on the premise that transformative development typically requires not one single change, but the orchestration of several changes. Innovation systems can be understood as networks of business, organizations and people – including farmers, esearchers, extension agents, policy makers and entrepreneurs – that, through the sum of their actions bring new technologies, innovations, products processes or policies into use. Efforts to coordinate these groups and actors can accelerate the rate of uptake of technological innovation that can improve the impact of development interventions. CSISA plays a coordinating and facilitating role in South Asia as an agricultural innovation system broker
format Informe técnico
id CGSpace123554
institution CGIAR Consortium
language Inglés
publishDate 2019
publishDateRange 2019
publishDateSort 2019
record_format dspace
spelling CGSpace1235542023-03-14T12:03:45Z Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains CGIAR Research Program on Maize agriculture research farmers maize crops intensification policies productivity production crop production cropping systems stakeholders development innovation rural development management data private sector learning innovation systems organizations networks nutrient management sustainable intensification systems agrifood systems machine learning extension agricultural innovation south asia entrepreneurs products agricultural innovation systems plains cereals asia processes groups agents scales CSISA aims to use ‘sustainable intensification’ technologies and management practices to enhance the productivity of cereal-based cropping systems, increase farm incomes, and reduce agriculture’s environmental footprint. the intersection of a diverse set of partners in the public and private sectors, occupying the crucial middle-ground where research meets development. The project generates data and evidence on improving crop production and identifying more sustainable means of growing crops, and then scales them out to partners in the public and private sector to raise the awareness of farmers and other stakeholders on these options. By engaging with a network of partners as an agricultural innovation systems broker, CSISA is built on the premise that transformative development typically requires not one single change, but the orchestration of several changes. Innovation systems can be understood as networks of business, organizations and people – including farmers, esearchers, extension agents, policy makers and entrepreneurs – that, through the sum of their actions bring new technologies, innovations, products processes or policies into use. Efforts to coordinate these groups and actors can accelerate the rate of uptake of technological innovation that can improve the impact of development interventions. CSISA plays a coordinating and facilitating role in South Asia as an agricultural innovation system broker 2019-12-31 2022-10-06T14:44:58Z 2022-10-06T14:44:58Z Report https://hdl.handle.net/10568/123554 en Open Access application/pdf CGIAR Research Program on Maize. 2019. Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains. Reported in Maize Annual Report 2019. Innovations.
spellingShingle agriculture
research
farmers
maize
crops
intensification
policies
productivity
production
crop production
cropping systems
stakeholders
development
innovation
rural development
management
data
private sector
learning
innovation systems
organizations
networks
nutrient management
sustainable intensification
systems
agrifood systems
machine learning
extension
agricultural innovation
south asia
entrepreneurs
products
agricultural innovation systems
plains
cereals
asia
processes
groups
agents
scales
CGIAR Research Program on Maize
Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains
title Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains
title_full Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains
title_fullStr Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains
title_full_unstemmed Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains
title_short Machine learning innovations to improve maize nutrient management recommendations in the eastern IndoGangetic Plains
title_sort machine learning innovations to improve maize nutrient management recommendations in the eastern indogangetic plains
topic agriculture
research
farmers
maize
crops
intensification
policies
productivity
production
crop production
cropping systems
stakeholders
development
innovation
rural development
management
data
private sector
learning
innovation systems
organizations
networks
nutrient management
sustainable intensification
systems
agrifood systems
machine learning
extension
agricultural innovation
south asia
entrepreneurs
products
agricultural innovation systems
plains
cereals
asia
processes
groups
agents
scales
url https://hdl.handle.net/10568/123554
work_keys_str_mv AT cgiarresearchprogramonmaize machinelearninginnovationstoimprovemaizenutrientmanagementrecommendationsintheeasternindogangeticplains