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LOWI

Kelvine Lowi Post 1

1 June 2026, 2:16 PM

agriculture and rural development

In one of my big data projects, I worked on agriculture and rural development, focusing on how data can be used to improve crop productivity and support small-scale farmers.

Data used

The main types of data I worked with included:

  • Agricultural data (crop types, planting seasons, yield records)
  • Weather data (rainfall patterns, temperature, drought indicators)
  • Soil data (soil fertility levels, pH, moisture content)
  • Market data (crop prices in local and regional markets)
  • Satellite/remote sensing data (vegetation health and land use patterns)

How I obtained it

The data was collected from several sources:

  • Government agricultural databases and extension service reports
  • Weather APIs and meteorological department records for historical and real-time climate data
  • Open data platforms such as FAO and World Bank agriculture datasets
  • Satellite imagery tools like Google Earth Engine for monitoring crop health and land conditions
  • Field surveys and mobile data collection apps used by extension officers in rural areas

What I learned

By combining these datasets, it became clear that rainfall variability and soil quality had a major impact on crop yields. The analysis helped identify regions at risk of low productivity and suggested better planting times and crop choices for farmers.

Big data in agriculture is powerful because it supports better decision-making, improved food security, and more resilient rural livelihoods.