HarvestChoice

HarvestChoice is a research initiative, which generates information to help guide strategic investments in agriculture aimed at improving the well‐being of poor people in Sub-Saharan Africa through more productive and profitable farming. The initiative is coordinated by the International Food Policy Research Institute and the University of Minnesota and is supported by a grant to IFPRI by the Bill & Melinda Gates Foundation.[1][2]

Phase I of HarvestChoice ran from October 2006 to June 2010, while Phase II began in December 2010 for a period of 4 years and a total budget of some $8.2M.

Purpose of the Initiative

Farming entails a great deal of risk and uncertainties. Weather varies, price fluctuates, soil degrades, pest damages, and, even climate changes. Farmers everywhere must cope with these uncertainties. Throughout the history of agriculture, many options, such as fertilizer application, irrigation, improved varieties, and farming machinery have been developed to help manage the risks, increase yields, increase efficiency, and, increasingly, promote sustainability of the overall system.

With these techniques and tools in mind, each farmer must assess their local context and analyze the costs and benefits of adopting them, such as the additional labor and/or investment required. Careful and informed assessment is especially more important for farmers with limited resources, like smallholder farmers in developing countries. Even if farmers recognize that new approaches will likely improve production versus their traditional practices, they may still be highly risk averse for many legitimate reasons (e.g., lack of insurance markets, bad experiences in the past, or conceiving the inherently uncertain nature of farming).

Likewise, at a higher level, the national and international donors and policymakers share the farmers’ goal of improving food security cost-effectively. They, like farmers, must strategically assess the feasibility and profitability of available strategic and policy options and decide which ones to promote and where, with even greater deals of risks and uncertainties. If reliable estimates could be made of the current and potential patterns of crop productivity, many agricultural development investment and policy decisions would be significantly improved, or made with greater confidence.

HarvestChoice and its partners develop databases, tools, analyses, and syntheses designed to improve strategic investment and policy decisions. The overriding objective is to accelerate and enhance the performance of those crops and cropping systems most likely to bring significant benefits to the world's poor and undernourished.[3]

Types of Information provided

The use of spatially‐referenced data and spatially‐explicit analysis to generate spatially‐specific knowledge is a cornerstone of the HarvestChoice initiative. A fundamental characteristic of agriculture (particularly subsistence agriculture) is the close coupling of its performance with prevailing biophysical conditions, conditions that can vary widely over space and time. HarvestChoice relies on its own and its partners' spatial datasets to provide new information on:

Types of spatial data

There are five major, intertwined geographies of direct relevance to the work of HarvestChoice;

Spatial products

HarvestChoice makes available spatially (and socio‐economically) explicit estimates of the potential welfare benefits of a range of interventions (e.g., on‐farm, market and market access, and national policy).

These maps (alongside tables, graphs, and text) provide information of direct relevance to agricultural development investors and policymakers. They do this by detailing the potential scale and distribution of economic benefits – including the identification of locations and social groups whose welfare might be impacted negatively. These outputs will, however, be supplemented by a larger collection of novel spatial data products that represent key, intermediate factors;

This amounts, potentially, to several thousand maps and associated datafiles.

References

Literature

External links

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