TinyML: Getting Started with TensorFlow Lite for Microcontrollers | Digi-Key Electronics
In this tutorial, Shawn shows you how to use the TensorFlow Lite for Microcontrollers library to perform machine learning tasks on embedded systems. Specifically, he uses the STM32CubeIDE, but TensorFlow Lite for Microcontrollers can be copied to almost any embedded build system.
You will need first need to train a sample neural network by following the steps in this video: Download all three model files (.h5, .tflite, .h).
We show you how to generate the Tenso
11 views
88
43
2 years ago 00:51:33 2
#100 Embedded Machine Learning on Edge Devices(with Daniel Situnayake)
3 years ago 00:13:25 7
tinyML Asia 2021 Video Poster: Plant Growth and LAI Estimation using quantized Embedded Regression..
3 years ago 00:08:08 5
tinyML Asia 2021 Video Poster: Cyberon DSpotter: A phoneme-based local voice recognition solution
3 years ago 01:01:24 1
tinyML Talks: The Multilingual Spoken Words Corpus, a Massive Keyword Spotting Dataset
3 years ago 01:01:48 1
tinyML Talks India: DNN based AI application “Everywhere and Anywhere“
4 years ago 00:03:26 11
Raspberry Pi Pico person Detection with TinyML TensorFlow Lite
4 years ago 01:00:12 3
Efficient ML across Arm from Cortex-M to Web Assembly by Edge Impulse
4 years ago 00:15:20 13
TinyML: Getting Started with STM32 X-CUBE-AI | Digi-Key Electronics
4 years ago 00:18:36 11
TinyML: Getting Started with TensorFlow Lite for Microcontrollers | Digi-Key Electronics
5 years ago 00:48:26 2
Machine Learning with Microcontrollers Hack Chat #machinelearning #tinyml #ai