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FarmSy: Empowering Farmers with Affordable Digital Agriculture Solutions

Innovation

It combines AI and intelligence hardware and IOT purposely to help farmers to practice precision farming. It collects soil and weather data from the soil sensors and some of the local weather stations that they have deployed which help to give farmer

Foodd: food detection dataset for calorie measurement using food images

Resources

Images of various foods, taken with different cameras and different lighting conditions. Images can be used to design and test Computer Vision techniques that can recognize foods and estimate their calories and nutrition. Instructions: Please note

A high-yielding traits experiment for modeling potential production of wheat: field experiments and AgMIP-Wheat multi-model simulations

Resources

Grain production must increase by 60% in the next four decades to keep up with the expected population growth and food demand. A significant part of this increase must come from the improvement of staple crop grain yield potential. Crop growth simula

Blockchain-based traceability in Agri-Food supply chain management: A practical implementation

Resources

The recent, exponential rise in adoption of the most disparate Internet of Things (IoT) devices and technologies has reached also Agriculture and Food (Agri-Food) supply chains, drumming up substantial research and innovation interest towards develop

Land grab/data grab: precision agriculture and its new horizons

Resources

Developments in the area of ‘precision agriculture’ are creating new data points (about flows, soils, pests, climate) that agricultural technology providers ‘grab’, aggregate, compute and/or sell. Food producers now churn out food and, increa

Publicising Food: Big Data, Precision Agriculture, and Co-Experimental Techniques of Addition

Resources

This article draws upon data taken from the following: 18 interviews of Iowa farmers who utilise big data when making farm management decisions; 14 interviews of those engaged within big data industry, those involved in the sale and promotion of larg