Why Machine Learning on Microcontrollers? - Neil Tan (arm) - The Things Conference 2019
Why Machine Learning on Microcontrollers? uTensor is an opensource framework that enables Machine Learning models to be deployed on extremely resource-constrained devices (limited energy, speed, bandwidth, memory and cost). We will present the inner-workings of uTensor, its applications in IoT, how you can use and contribute to it. Neil Tan is a developer evangelist at Arm, creator of uTensor, a software and hardware hacker. He originally joined Arm as a parallel-computing engineer before becoming a Mbed enthusiast. He loves taking on cross-domain challenges and learning people’s stories. To learn more about LoRaWAN and about us you can go to our website. Join the topic discussion: https://www.thethingsnetwork.org/foru... Learn more about The Things Network: https://www.thethingsnetwork.org/ Thanks for watching and Welcome to the Future!

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