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tinyML Talks: Embedded Edge Intelligence with Infineon New Products and Imagimob Studio

"Embedded Edge Intelligence with Infineon New Products and Imagimob Studio"
Moenes Iskarous
CTO IoT AI/ML
Infineon Technologies
Sam Al-Attiyah
Head of Customer Success
Imagimob
Ashutosh Pandey
Lead Principal Systems Engineer
Infineon Technologies
PSOC™ Edge is Infineon’s new generation of MCUs that enables responsive Machine Learning-based user-centric edge devices by providing ML acceleration to deliver both "always-on" low power and high-performance operation, in a fully integrated microcontroller with right-sized peripherals, on-chip memories and state-of-the-art security.
Imagimob Studio is a development platform for AI and Machine Learning on edge devices. It’s designed to support the user through the end-to-end flow from data collection; data analysis and management; processing and model training; model evaluation and selection; and finally package the models to deploy on different microcontrollers.

Видео tinyML Talks: Embedded Edge Intelligence with Infineon New Products and Imagimob Studio канала The tinyML Foundation
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Информация о видео
21 мая 2024 г. 0:14:30
00:55:16
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