From Field Data to Policy Decisions: Using AI to Turn Evaluations into Actionable Insights in Education and Youth Employment
Conferencia | En línea
Sobre el evento
Across West Africa, evaluators and NGOs collect rich quantitative and qualitative data on program in education, youth employment, agriculture, and climate, yet decision-makers often receive these insights too late, in formats that are difficult to use. At the same time, AI tools now offer powerful options for cleaning datasets, identifying patterns, and generating tailored summaries for different audiences but their use raises questions of quality, ethics, and trust. This session will walk through a concrete data-to-decision pathway, using examples from impact evaluations and mixed-methods studies in Benin, to illustrate where AI can add real value and where human judgment remains irreplaceable.
We will demonstrate how AI can support instrument design, field-data processing, exploratory analysis, and the production of differentiated products: technical reports for researchers, policy briefs for ministries, and accessible evidence stories for NGOs and communities. We will also discuss safeguards to avoid misleading findings, protect sensitive data, and maintain the integrity of counterfactual and quasi-experimental designs when using AI-assisted analytics. The session is designed for researchers, public officials, and civil society organizations who want to move beyond generic discussions of AI and see, step-by-step, how it can be embedded in evaluation practice to produce timely, credible, and policy-relevant evidence
We will demonstrate how AI can support instrument design, field-data processing, exploratory analysis, and the production of differentiated products: technical reports for researchers, policy briefs for ministries, and accessible evidence stories for NGOs and communities. We will also discuss safeguards to avoid misleading findings, protect sensitive data, and maintain the integrity of counterfactual and quasi-experimental designs when using AI-assisted analytics. The session is designed for researchers, public officials, and civil society organizations who want to move beyond generic discussions of AI and see, step-by-step, how it can be embedded in evaluation practice to produce timely, credible, and policy-relevant evidence
Presentador/a
| Nombre | Título | Biografía |
|---|---|---|
| Hamdy Bonou-Gbo | Development economist | Hamdy Bonou‑Gbo is a development economist and impact evaluation specialist from Benin, working on evidence‑informed public policies in agriculture, climate, education, labour markets, and environmental governance in West Africa. |
| Nassibou Bassongui | Policy Researcher | Nassibou Bassongui is a Policy Researcher at CLEAR Francophone Africa, specializing in policy analysis, development economics, and impact evaluation, with a focus on energy, environment, health, employment, and tax policy in Sub‑Saharan Africa. |
| Marwane Houngnon | AI Research Engineer | Marwane Houngnon is an AI Research Engineer and Product Manager specializing in stochastic modeling and hybrid AI systems, with experience in data science, econometrics, and applied research across West Africa and North Africa. |
Moderador/a
| Nombre | Título | Biografía |
|---|---|---|
| Joao Babadoudou | Research Assistant | Joao Babadoudou is a Research Assistant with SEA Consulting’s Growth, Education & Gender Program and IREG, trained in biostatistics and data analysis, working on policy briefs, data analysis, and field data collection in Benin. |