Google Expands India-First Agri AI Models Across Asia Pacific
Google is scaling its India-developed agricultural AI models to Malaysia, Vietnam, Indonesia, and Japan, aiming to boost farm resilience and sustainability across the region.
Key Takeaways
- Google DeepMind’s ALU and AMED AI models use satellite imagery and machine learning
- Free APIs help developers build solutions for crop monitoring, field mapping, and event detection
- Focus on supporting smallholder farmers who produce one-third of world’s food
- Multiple Indian startups and government projects already using the technology
Indian agriculture faces significant challenges from fragmented landholdings and unpredictable weather patterns. Limited access to data-driven insights has constrained productivity and market access for farmers. Google’s intervention brings precision and intelligence to this ecosystem through two foundational AI models developed at its Bengaluru research center.
“We have always believed that solutions that address India’s most pressing challenges can also solve for the world,” said Alok Talekar, lead of agriculture and sustainability research at Google DeepMind. “These two agri AI models, which were first built to strengthen India’s agricultural resilience, will now also support agricultural sustainability across the Asia-Pacific region, within just months of these models’ India-first releases,” he told FE.
The Agricultural Landscape Understanding (ALU) and Agricultural Monitoring & Event Detection (AMED) models utilize satellite imagery to provide actionable farm insights. These tools help map vegetation, monitor water bodies, track crop cycles, and detect agricultural events every 15 days.
How the AI Models Work
ALU identifies field boundaries, water bodies, and vegetation, while AMED provides field-level insights on crops, sowing patterns, and harvest timelines. The system refreshes data every 15 days, enabling real-time monitoring of agricultural events across entire countries.
Talekar emphasized that most existing solutions target large farm owners, neglecting smallholders who produce over one-third of global food supply. “Our goal is to support the development of solutions that help smallholder farmers, most of whom are also in the Global South,” he stated.
Indian Implementation Success
Several Indian organizations have successfully integrated these AI models:
- Krishi DSS uses the APIs for crop health monitoring, acreage estimation, and climate impact assessment
- TerraStack built a rural land intelligence system for lending and climate risk assessment
- Vassar Labs enhances its fieldWISE platform serving one crore farmers with personalized advisories
- Sugee.io integrates ALU insights to streamline agricultural loan processes
- CEEW develops high-resolution analysis for crop diversification and income support mechanisms
The Telangana government’s Agricultural Data Exchange platform also leverages these models to benefit approximately 6 million farmers in the state.



