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Background:
Agriculture is a vital industry that plays a critical role in feeding the world's population. However, predicting crop yields and accurately estimating production costs can be a major challenge for farmers and agribusinesses. Inaccurate predictions can lead to wasted resources and reduced profits, while slow results can make it difficult for companies to make timely decisions about their operations. Case Description: Current precision agricultural practices are struggling with predicting crop yields and accurately estimating production costs. Current methods for gathering data involve sending field workers to travel hundreds of miles and walk row by row, field by field, to gather representative sample crop data. This process is highly inefficient, time-consuming, and subject to human error. Additionally, the data gathered is limited to the fields that the workers are able to visit, which means important information about other areas of the farms will be missed. The end result is that Precision Agriculture crop yield predictions and production costs are not sufficiently accurate and take too long to generate results. This has led to wasted resources and reduced profits for the company, and it has made it difficult for them to make timely and informed decisions about their operations. CHALLENGES: • Improving the accuracy of crop yield predictions and production costs • Simplifying and speeding up the data gathering process • Expanding field coverage without significantly increasing cost • Gather, store, and process large amounts of field dataMapping Fields And Collecting Data On A Variety Of Factors, Such As Soil Type, Moisture Levels, And Crop Health, Leads To More Informed Decisions With Respect To Irrigation, Fertilization, And Pest Control
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