Skip to content

Latest commit

 

History

History
92 lines (57 loc) · 3.15 KB

README.md

File metadata and controls

92 lines (57 loc) · 3.15 KB

template

Table of Contents:

  1. General information
  2. Requirements
  3. ARCHITECTURE
  4. CONTRIBUTING
  5. LICENSE
  6. Contact

General information

This repository contains a template which you can use to develop your own TinyML projects with an ESP-Board of your choice and the ESP-IDF.

The provided template is based on the TinyML pipeline which you can find in Pete Warden’s and Daniel Situnayake’s TinyML book. Our pipeline consists of five steps. First, data collection requires connecting with hardware and reading data to your PC. Second, preprocessing involves reshaping data into a format suited for training a ML model. Third, design and training. Training is done using Google’s TensorFlow framework. Fourth, the model must be converted from TensorFlow to Tensorflow Lite and then to a C or C++ compatible format. Lastly, we deploy the model onto a microcontroller and run inference.

Requirements

Python, model creation

Python

Install Python. Version 3.10 is tested.

Install packages

pip install -r requirements.txt

Embedded C/C++, embedded model deployment

Espressif IDF

Version 4.4.2 is tested. Install via VSCode > Extensions > ESP-IDF > Express installation with all defaults. At the end of the installation a command is shown. This command should be executed to grant complete permissions.

Libraries

Next, download dependencies for the embedded system.

chmod +x scripts/update_components.sh
./scripts/update_components.sh

Respect the pipeline requirements

  1. Data must be present in order to start training.
  2. Preprocessing may be necessary.
  3. A model must be trained and stored.
  4. The model must be converted to a C array and included in the embedded code.
  5. You cannot run your project on an MCU before completing above steps.

Running

Python environment

Execute Jupyter files via GUI.

Embedded environment

See ESP documentation for an initial setup of the embedded environment. Afterwards, feel free to use this shorthand.

get_idf && idf.py build && idf.py -p /dev/ttyUSB0 flash monitor

Architecture

The architecture of this repository is designed to be simple and self explanatory. You can find a detailed description in the ARCHITECTURE.md file.

Contributing

Pull requests are welcome. We don't have a specific template for PRs. Please follow style guides for Python and C++. For Python style, we follow PEP 8 and PEP 257. For C++ we follow the Google style guide.

License

Copyright (c) 2022 itemis AG
All rights reserved.

This source code is licensed under the Apache-2.0 license found in the license file in the root directory of this source tree.

Contact

Feel free to contact us if you have any questions!

[email protected]
[email protected]