Made In Africa Artificial Intelligence Approaches In Monitoring, Evaluation, Research And Learning: A Practitioner Perspective And Landscape Study
The MERL Tech Initiative is published “Made In Africa Artificial Intelligence Approaches In Monitoring, Evaluation, Research And Learning: A Practitioner Perspective And Landscape Study”, authored by core collaborator and Africa + AI Working Group Lead, Varaidzo Faith Magodo-Matimba.
About the study
Based on a qualitative research design, the study engaged 23 participants from across Africa and the global MERL ecosystem, including evaluators, AI experts, civil-society leaders, and policymakers. Data were collected through key informant interviews, literature review, and practitioner consultations.
The study focuses on six questions:
- What knowledge and capacity gaps exist among African MERL practitioners regarding AI and data use?
- How can these gaps be filled through training, collaboration, or infrastructure?
- What does a “Made in Africa” AI approach mean in practice?
- How can AI enhance evidence-informed policymaking?
- How well do current AI tools serve African contexts?
- How can partnerships sustain an African-led AI and evaluation movement?
“Made In Africa Artificial Intelligence Approaches In Monitoring, Evaluation, Research And Learning: A Practitioner Perspective And Landscape Study” is available for download right now and we welcome your thoughts and feedback.
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