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tinyML Auto ML Tutorial with Qeexo

Auto ML Deep Dive Tutorial with Qeexo by Michael Gamble, Director, Product Management and Cora Zhang, Machine Learning Enablement engineer, Qeexo. AutoML is a fully automated, end-to-end, machine learning platform providing users with the ability to rapidly collect & edit sensor data, train & evaluate models and metrics, and deploy & live test up to 17 different algorithms without writing a single line of code. Built for speed and efficiency, Qeexo AutoML’s NO CODE platform reduces time and dependencies on expensive expert resources, drastically simplifying deployment and increasing scalability. Simple and intuitive, Qeexo AutoML has been designed to support the needs of machine learning practitioners, embedded engineers, and domain experts alike.

Видео tinyML Auto ML Tutorial with Qeexo канала The tinyML Foundation
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Информация о видео
13 июля 2022 г. 2:15:13
00:34:36
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