Future Farming in India 2025
Page 46 of 55 · WEF_Future_Farming_in_India_2025.pdf
Advisory services and knowledge dissemination
Use case DescriptionHigh-level flowchart of AI
value delivery Start-up examples
AI chatbots for
farmer adviceAI-powered chatbots provide
farmers with instant answers
to agricultural queries in local
languages, offering advice on best
practices, crop management and
problem-solving. –Farmers ask questions via app or SMS
–AI understands the query using natural
language processing
–AI accesses agricultural information
database
–Answers provided in simple language
–Farmers receive timely adviceAwaaz De (India): case
study
Microsoft AI for
Agriculture:
Case study
Decision support
systemsAI systems integrate various data
sources to provide farmers with
personalized recommendations
on crop planning, input usage and
market opportunities, enhancing
decision-making. –Data on weather, soil and markets
gathered
–AI processes data to generate insights
–Personalized advice provided
to farmers
–Farmers make informed decisions
–Improved farm productivity
and profitabilityKisan Network (India):
Case study
Cropin (India): Case study
Precision agriculture
Use case DescriptionHigh-level flowchart of AI
value delivery Start-up examples
Variable rate
application (VRA)AI systems analyse field data to
determine the precise number of
inputs (such as seeds, fertilizers
and pesticides) needed in different
parts of the field. This optimizes
input usage, reduces waste and
enhances crop yields. –Field data gathered via sensors
and maps
–AI determines input needs per area
–AI generates a prescription map
showing input requirements
–Machinery applies inputs precisely
–Improved yields and resource
efficiencyJohn Deere: Technology
for precision agriculture
Trimble Agriculture:
Solutions
Precision irrigation
managementAI analyses weather forecasts, soil
moisture data and cropwater needs
to optimize irrigation schedules. This
ensures that crops receive the right
amount of water at the right time,
conserving water and improving
plant health. –Soil-moisture sensors and weather
data collected
–AI calculates irrigation needs
–Optimal watering times are set
–Irrigation systems water crops
accordingly
–Continuous adjustments are made
based on new dataNetafim Precision
Agriculture
Fasal (India): Case studies
Automated farm
machineryAI-powered tractors and equipment
perform tasks such as planting,
weeding and harvesting with high
precision, reducing labour costs and
increasing efficiency. –AI plans farming tasks
–Autonomous machinery carries out tasks
–Machines gather data as they work
–AI refines operations based on data
–Efficient farm operations with reduced
labour needsCNH Industrial:
Case studyAI use cases in agriculture (continued) TABLE 7
Future Farming in India
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