Our Operational AI for agriculture are not only redefining traditional farming practices but also addressing crucial challenges such as food security, resource management, and environmental sustainability.
The use cases of AI in agriculture are both diverse and profound, offering solutions that are as beneficial to smallholder farmers as they are too large-scale agribusinesses. As we look towards a future where sustainability and efficiency are paramount, the role of AI in agriculture is not just promising; it is essential in arriving at a more resilient and bountiful future.
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Precision Agriculture
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Crop Health Monitoring
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Predictive Analytics for Yield Prediction
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Predictive Equipment Maintenance
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Automated Machinery
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Supply Chain Optimization
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Genetic Crop Improvement
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Climate & Environmental Monitoring
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Between 20% to 40% of global crop production is lost to pests annually. Each year, plant diseases cost the global economy around $220 billion, and invasive insects around $70 billion, according to the Food and Agriculture Organization of the United Nations.
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Climate change may affect the production of maize (corn) and wheat as early as 2030 under a high greenhouse gas emissions scenario, according to a new NASA study published in the journal, Nature Food. Maize crop yields are projected to decline 24%, while wheat could potentially see growth of about 17%.
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For this report, U.S. PIRG Education Fund and National Farmers Union surveyed 53 farmers across 14 states. The study found that 53% of the farmers had lost crops because of downtime after a tractor or combine breakdown. Roughly one in three farmers surveyed fear losing their family farm to such a breakdown.