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  • Language
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  • Created about 5 years ago
  • Updated about 5 years ago

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Our solution for predicting soil functional properties at unsampled locations using infrared spectroscopy, georeferencing of soil samples, and earth remote sensing data. Won a first place and a chance to visitWe Are Developers conference in Berlin.

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