Autor: Kayumba, J.
- Rwanda-Smart Nkunganire System (SNS) Fertilizer Recommendation Tool—Innovation Packaging and Scaling Readiness (IPSR) Analysis for Smart Agronomy
- Accelerating agronomic impact through digital tools and public-private extension in Rwanda: smart fertilizer recommendations for potato
- Scaling the Rwanda Smart Nkunganire System (SNS) fertilizer recommendation tool: A comprehensive report on awareness and capacity building initiatives
- Accelerating agronomic impact through digital tools and public-private extension in Rwanda: smart fertilizer recommendations for rice
- Smart Fertiliser Recommendations for Maize in Rwanda
- Advancing responsible scaling mechanisms through disability-inclusive agriculture in Rwanda: A framework for accessible information, service delivery, and economic empowerment
Autor: Kihoro, E.
- Rwanda-Smart Nkunganire System (SNS) Fertilizer Recommendation Tool—Innovation Packaging and Scaling Readiness (IPSR) Analysis for Smart Agronomy
- Smart Nkunganire System user experience: insights & opportunities
- Assessing delivery and business models for high impact digital solutions at scale: the case of Rwanda Smart Nkunganire System (SNS)
- Scaling the Rwanda Smart Nkunganire System (SNS) fertilizer recommendation tool: A comprehensive report on awareness and capacity building initiatives
- Advancing responsible scaling mechanisms through disability-inclusive agriculture in Rwanda: A framework for accessible information, service delivery, and economic empowerment
- Enabling environment dynamics for scaling digital agriculture: Institutional, policy, and user perspectives on Rwanda’s Smart Nkunganire System (SNS
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