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Intelinair Welcomes Minh Tri Le as Remote Sensing Scientist

Intelinair is pleased to announce the addition of Minh Tri Le (Tri) as a Remote Sensing Scientist. Tri brings extensive experience in geoinformation sciences, machine learning, and large-scale satellite data analysis to support Intelinair’s mission to deliver actionable insights and analytics to growers and partners. Tri will contribute to Intelinair’s expanding portfolio of advanced analytics supporting the AGMRI platform.

Tri joins Intelinair from the University of Massachusetts Lowell, where he was a postdoc researcher. He recently completed his Ph.D. in Earth Systems and Geoinformation Sciences from George Mason University. His research centered on advanced deep learning frameworks for satellite image classification, particularly for agricultural applications.

His work includes significant contributions to semantic segmentation, satellite image de-noising, spatiotemporal analysis, and geospatial data processing at a global scale. In addition to his academic research, Tri brings applied industry experience and advanced technical expertise in deep learning, satellite image analytics, geospatial data science, and advanced computational modeling.

“We are thrilled to welcome Tri to the Intelinair science and analytics team,” said Mingwei Yuan, Analytics Leader at Intelinair. “His deep expertise in satellite image processing and geospatial AI will play a key role in accelerating our capabilities in remote sensing, data modeling, and high-resolution crop intelligence.”

Tri holds an M.Sc. in Applied Data Science from Indiana University–Purdue University Indianapolis and a B.B.A degree in Accounting and Business Information Systems from Texas Christian University.

“I’m excited to join Intelinair and work on impactful geospatial analytics that directly support growers and agricultural decision-making,” said Tri. “The opportunity to apply my research on remote sensing and machine learning to real-world challenges in agriculture is incredibly rewarding.”

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