Future Farming in India A Playbook for Scaling Artificial Intelligence in Agriculture 2025
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Enabling datasets
The following foundational datasets are critical for developing smart marketplaces.
Farm records and
production data
Includes high-resolution images to identify
farm boundaries, production patterns and
expected yields.Real-time and
historic market data
Includes real-time statistics on market
prices and arrivals for different crop
varieties from commodity trades, along
with historic prices across different markets.Buyer
preference data
Includes historic trends and expected
quality requirements of different buyers
(>60% of market size) for different crops.
Hyperlocal and
weather data
Includes climate details such as rainfall
and other forms of precipitation, humidity,
sunlight, temperature and wind at the
district level.Geospatial and
agricultural market data
Includes geospatial data on the network
of agricultural markets by location and
crop type. Also includes data on
post-harvest infrastructure.Enabling datasets required for developing smart marketplaces FIGURE 10
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Future Farming in India
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