Despite more children attending school than ever, learning outcomes remain poor. Many classrooms are overcrowded, with teachers facing students who have different learning levels, home environments, and languages, making it difficult to provide individualized attention. As a result, some students fall behind while others fail to reach their potential, leading to disengagement and burnout for both students and teachers. This global learning crisis has prompted interest in AI tools, which could personalize lessons, accelerate data analysis, provide deeper feedback, and support large-scale education programs. However, technology alone is insufficient; past experiences, such as Peru’s $180 million laptop initiative, demonstrate that ed tech without proper integration can fail to improve learning.
Early evidence suggests that AI can support education when thoughtfully implemented. AI-powered tools have improved student assessment and feedback, as seen in Brazil with AI essay graders that provide immediate, actionable comments, allowing teachers to focus on targeted instruction. Adaptive learning systems can personalize lessons to individual student needs, boosting outcomes, particularly for lower-performing students. AI chatbots and voice recognition software also show potential for guiding parents, assessing reading skills, and helping students practice subjects like math. Emerging AI tutors in countries like Nigeria, Ghana, and Canada indicate that real-time personalized instruction can complement classroom teaching, though human oversight remains essential.
AI also offers untapped opportunities, such as supporting data-driven decision-making, scaling tailored instruction, improving curriculum clarity, coaching teachers, optimizing teacher allocation, and addressing gaps in school-provided mental health. Nonetheless, challenges persist. AI risks undermining critical thinking, reducing social interaction, introducing safeguarding issues, overburdening teachers, widening equity gaps, and promoting dependence on unverified information. Effective AI integration requires careful evidence-based design, alignment with pedagogy, and safeguards for students.
Ongoing research and initiatives, such as J-PAL’s Learning for All Initiative and Project AI Evidence, aim to evaluate AI’s impact on education and identify best practices. By building on lessons from early implementations and grounding AI use in proven educational strategies, there is potential to enhance learning outcomes while minimizing risks, ensuring that AI becomes a tool for meaningful improvement rather than a technology-driven distraction.






