. Acceleration Data to Tensor

TinyMLjs

Making TinyML truely client-side. Giving Makers full control of the process, user friendly, private and protected

Version 0.52.3-211 Note: WebSerial microcontroller connection works on Chrome or Edge for Mac, Android (pixel Phones) or Windows, only works on Edge for Linux
This website makes machine learning models from WebSerial connected micro-controller sensors using TensorflowJS. That model can be saved and converted to a tFlite model then to a C-header model.h file using Tensorflow command line or Python converters. I simplify the conversion using a Gitpod. Finally the model.h file is combined with C/C++ code using an Arduino IDE ready library called RocksettaTinyML and compiled to the device for testing.

Presently for complex vision or sound data it is easier to use EdgeImpulse.com as it will achieve the needed model compression that we have not yet achieved.







Label:
CSV FileName:


...
Machine Learning models often need very specific data.
Count CSV: Count Senses: Count Total:
Number of Samples/count: Number of Senses/sample:



Enter number of epochs: , Learning rate:
...

...


    Try the following steps:
  1. Convert the exported model to Arduino ready c-header model.h file as well as a model.tflite file using 1 of the following methods:
  2. 1:tensorflowjs-to-arduino-for-tinymljs Best to install the modules needed to client side do the conversions youruself. This github shows what you need to do. The installation might be different on your computer.
    2: iPython Notebook TFJS to TFliteThis web based Google Colab iPython notebook (Needs a google login) loads the necessary code then you click on an upload button to load your tensorflowjs exported "model.json" and "model.weights.bin" files and it zips and downloads the tflite and c-header files.
    3:Use a Gitpod: tensorflowjs-to-arduino-for-tinymljs or direct load: Gitpod A gitpod browser docker like program that auto loads the necessaray python files and then runs a bash program to do the command line conversions. All code is easy to view


  3. Use https://netron.app/ Use the online netron.app to check and visualize your downloaded model.tflite
  4. Once you have made a model.h file then install this Arduino Library RocksettaTinyML based on EloquentArduino to load the code onto your Arduino IDE.
  5. ...


    Senses Labels (In the order collected):



    Aruino NiclaVision webSerial code that can be adapted for other microcontrollers

    The "fancy" Arduino sketch for the Nano33BleSense is on the github here https://github.com/hpssjellis/tinyMLjs/blob/main/public/acceleration/a00-accell-nano33-fancy.txt


    Use at your own risk!
    By Jeremy Ellis @rocksetta
    Github at https://github.com/hpssjellis/tinyMLjs/tree/main
    Demo's Index at https://hpssjellis.github.io/tinyMLjs/public/index.html
    This page should be at https://hpssjellis.github.io/tinyMLjs/public/acceleration/a00-best-acceleration.html

      A couple of gotchas (as of Jun 22, 2023):

    1. File names have to be in the format "name-lable.csv" or "name-lable (1).csv" or "name-lable (2).csv" etc. Unfortunately Android and iPhone don't auto make the numbering for you.
    2. Android and Apple device have an opposite orientation, so I have made negative all the android motion data so when your phone is on a table z = -9.8 m/s^2 etc. When looking veritacally at your phone y = -9.8 m/s^2. The auto detect of this only works if an Android phone is in mobile format not "desktop site"
    3. Real data has lots of rough data, machine learning models do not like missing data. If your results show "NaN" either your training data or classification data has errors. Note: If the loss is not changing your trained data probably has errors. The "clean,trim,fill" buttons might help.
    4. Presently a CSV label upload bug happens sometimes. Easy to fix by entering the correct labels in the correct order. I will try to fix the issue when I figure out what is causing it.