Skip to content

Latest commit

 

History

History
63 lines (43 loc) · 2.68 KB

README.md

File metadata and controls

63 lines (43 loc) · 2.68 KB

TensorFlow Lite Micro Library for Arduino

This repository has the code (including examples) needed to use Tensorflow Lite Micro on an Arduino.

Build Status

Build Type Status
Arduino CLI on Linux Arduino
Sync from tflite-micro Sync from tflite-micro

How to Install

Arduino IDE

The easiest way to install this library is through the Arduino's library manager. In the menus, go to Sketch->Include Library->Manage Libraries. This will pull the latest stable version.

GitHub

If you want to install an in-development version of this library, you can use the latest version directly from this GitHub repository. This requires you clone the repo into the folder that holds libraries for the Arduino IDE. The location for this folder varies by operating system, but typically it's in ~/Arduino/libraries on Linux, ~/Documents/Arduino/libraries/ on MacOS, and My Documents\Arduino\Libraries on Windows.

Once you're in that folder in the terminal, you can then grab the code using the git command line tool:

git clone https://github.com/tensorflow/tflite-micro-arduino-examples Arduino_TensorFlowLite

Checking your Installation

Once the library has been installed, you should see an Arduino_TensorFlowLite entry in the File->Examples menu of the Arduino IDE. This submenu contains a list of sample projects you can try out.

Hello World

Compatibility

This library is designed for the Arduino Nano BLE Sense 33 board. The framework code for running machine learning models should be compatible with most Arm Cortex M-based boards, such as the Raspberry Pi Pico, but the code to access peripherals like microphones, cameras, and accelerometers is specific to the Nano.

License

This code is made available under the Apache 2 license.

Contributing

Forks of this library are welcome and encouraged. If you have bug reports or fixes to contribute, the source of this code is at https:://github.com/tensorflow/tflite-micro and all issues and pull requests should be directed there.

The code here is created through an automatic project generation process from that source of truth, since it's cross-platform and needs to be modified to work within the Arduino IDE.