Google Aims To Revolutionise Indian Agriculture & Enhance Language Development With ALU Research API
Google's Agricultural Landscape Understanding (ALU) Research API aims to make agricultural practices in India data-driven to increase efficiency.
Google is set to introduce the Agricultural Landscape Understanding (ALU) Research API, a tool aimed at enhancing agricultural practices with data-driven efficiency. Jeanine Banks, Vice President and General Manager of Developer X at Google, announced this initiative at Google I/O Connect Bengaluru 2024. The ALU API seeks to optimise farm yields, improve access to capital, and facilitate market entry for agricultural products, according to Google. Initial exploration of ALU insights involves partnerships with select entities such as Ninjacart, Skymet, Team-Up, IIT Bombay, and the Government of India.
This tool will provide detailed landscape insights at the level of individual farm fields. Google emphasises the importance of generating agricultural insights tailored to specific field conditions, acknowledging the complexities arising from diverse landscapes and crop requirements even in close proximity.
Currently, agricultural insights are available mainly at an aggregate level, but Google aims to intervene at the level of individual farms. Leveraging high-resolution satellite imagery and machine learning, the API proposes to delineate field boundaries precisely. This approach aims to address various challenges, including drought readiness, irrigation efficiency, and market accessibility, by providing detailed information such as crop types, field sizes, proximity to water sources, roads, and markets.
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Google's Focus On Linguistic Diversity
The Google DeepMind India team has announced significant updates aimed at empowering developers to create language solutions tailored for India. One key initiative is the expansion of Project Vaani in collaboration with the Indian Institute of Science (IISc). This expansion provides developers access to a vast dataset comprising over 14,000 hours of speech data across 58 languages. Collected from 80,000 speakers across 80 districts, this dataset aims to enhance language understanding and development capabilities.
In addition, the team has introduced IndicGenBench, a comprehensive benchmark designed specifically for evaluating the generation capabilities of Large Language Models in Indic languages. Covering 29 languages, including several that have not been previously benchmarked, IndicGenBench serves as a valuable resource for assessing and refining language models.
Furthermore, Google has open-sourced the CALM (Composition of Language Models) framework. This framework allows developers to integrate specialized language models with Gemma models, facilitating the creation of more effective solutions that cater to India's linguistic diversity.