"Software is eating the world and AI is eating software." SparkCognition CEO, Amir Husain discusses scaling, applying, and the third coming of AI at the 2017 Honeywell Tech Symposium.
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Shaping the Future of Travel and Transport - Boeing and SparkCognition.Boeing is collaborating with SparkCognition to deliver unmanned aircraft system traffic management solutions.
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