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Farm Journal’s The Scoop: Intelinair Introduces Postseason Data Analytics Suite

Read about the latest addition to the AGMRI platform in this recent The Scoop article by Cheyenne Kramer. AGMRI Analyze expands the offering via a data analytics suite for full-season crop management that consolidates in-season and postseason analytics into a unified platform.

Read the full article.


 

About IntelinAir, Inc.

IntelinAir, Inc., the automated crop intelligence company, leverages AI and Machine Learning to model crop performance and identify problems enabling commercial growers to make improved decisions. The company’s flagship product, AGMRI® aggregates and analyzes data including high resolution aerial, satellite, and drone imagery, equipment, weather, scouting, and more to deliver actionable Smart Alerts on specific problems in areas of fields as push notifications to farmers’ smartphones. The proactive alerts on operational issues allow farmers to intervene, rescue yield, capture learnings for the next season, and identify conservation opportunities for sustainable farming. Annually IntelinAir analyzes millions of acres of farmland, helping growers make thousands of decisions for improved operations and profitability. For more information, follow IntelinAir on LinkedIn, Facebook, Twitter, and Instagram and visit intelinair.com.

®Trademark of IntelinAir, Inc.

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