Source: World Bank
Context:
- The World Bank–led report “Harnessing Artificial Intelligence for Agricultural Transformation” highlights responsible scaling of AI in agrifood systems, with a focus on low- and middle-income countries (LMICs).
- AI adoption is increasingly systemic, spanning crop advisory, insurance, logistics, market intelligence, and climate resilience, beyond pilot projects.
Current Trends in AI for Agriculture
- Shift to GenAI & Multimodal AI
- Combines text, images, satellite data, and sensor feeds.
- Offers local-language advisories and predictive insights for farmers.
- Systems-Level Adoption
- AI is used across the entire value chain rather than isolated pilots.
- Rapid Investment Growth
- Market ~US$1.5 bn (2023); projected to reach ~US$10.2 bn by 2032.
- LMIC-Focused Experiments
- AI projects in Africa and Asia for hyperlocal weather, pest diagnosis, and input optimization.
- “Small AI” on Phones
- Lightweight models usable offline or on basic smartphones, improving accessibility.
Opportunities of AI in Agriculture
| Area | Benefits |
|---|---|
| Productivity | Precision farming, irrigation, fertilizer tools; yield increase 20–30%, chemical use reduction up to 95%. |
| Climate Resilience | AI-assisted breeding, risk modeling, cropping pattern planning. |
| Income & Market Access | Initiatives like Saagu Baagu (India) and Hello Tractor enhance productivity and optimize machinery use. |
| Inclusive Finance & Risk Mitigation | AI-driven micro-insurance, alternative credit scoring for unbanked smallholders. |
| Public Policy | Early-warning systems, yield & price forecasts, and targeted subsidies for food security planning. |
Key Initiatives Already Taken
- Global AI Roadmap
- 60 use cases across LMICs; guidance on applications, governance, and investments.
- Research Institutions
- IRRI, CIMMYT use ML & computer vision to speed up phenotyping and genebank screening.
- Data Coalitions & Exchanges
- Ethiopia’s “Coalition of the Willing” and India’s Agricultural Data Exchange (ADeX) for local AI model training.
- Public–Private Digital Platforms
- Platforms like AIEP (Kenya) and Bihar pilots GenAI tools in local languages for tens of thousands of farmers.
Key Challenges
| Challenge | Details |
|---|---|
| Digital Divide & Infrastructure Gaps | Limited internet/electricity access in rural LMICs. |
| Data Bias & Scarcity | Most training data from high-income regions; local crops and practices underrepresented. |
| Low Human Capital & Trust | Limited digital skills; language barriers; distrust of automated advice. |
| Weak Governance & Regulation | Lack of clear rules on data ownership, privacy, and algorithm accountability. |
| Risk of Exclusion & Concentration | AI could favor large agribusinesses and deepen inequalities without safeguards. |
Way Ahead
- Adopt National AI Strategies with Agri Focus
- Integrate AI into food-security, climate, and nutrition policies.
- Invest in Digital Public Infrastructure & Connectivity
- Expand rural broadband, green data centers, and interoperable registries.
- Build Inclusive Data Ecosystems
- Support Agricultural Data Exchange Nodes and FAIR/open data principles.
- Strengthen Skills and Extension Systems
- Train farmers, extension workers, and agri-startups in AI literacy, using local-language multimodal tools.
- Create Robust Governance & Ethical Frameworks
- Enact laws on data rights, transparency, environmental standards, and accountability, leveraging sandboxes and participatory policymaking.





