ShawnHymel / perfect-toast-machine Public

perfect-toast-machine

About this project

The Perfect Toast Machine

This project attempts to toast bread using odor and temperature data (rather than relying on a simple timer). Using this data, we attempt to predict the "time remaining before burnt" using regression. From this, we can estimate a level of "doneness" e.g. by saying that "toast will be perfect 40 seconds before being burned." By hacking a toaster to cancel the toasting process at this point, we should, in theory, be able to perfectly make toast regardless of starting temperature and bread thickness or composition.

Gas and odor data collected from various types of bread over a Black and Decker simple two-slot toaster. Data was standardized before being uploaded to Edge Impulse. The original dataset, curation script, and inference code can be found here: https://github.com/ShawnHymel/perfect-toast-machine.

A full tutorial showing how to build this AI-powered toaster can be found here: https://www.digikey.com/en/maker/projects/how-to-build-an-ai-powered-toaster/2268be5548e74ceca6830bf35f0f0f9e.

170.74cf938aa53e426f941b1b29a92a7a89
67.10f940ef0ef64eb5841cf36749ec7392
-44.d3483baa338645baad64c596bfb6a090
40.a777c4ceed3447479963c8d77c469b74
27.ede261fd923f4bff99046dba08ac8d49
35.32eb1f83aea64cc7b8b5036e5caec889
-31.0e95eefdc61b4a9d9bb9b3d13a23ef57
135.935a2361fa2542519ac4eac804c60ffc

Run this model

On any device

Dataset summary

Data collected
18h 15m 50s
Sensors
temp, humd, co2, voc1, voc2, no2, eth, co, nh3 @ 2Hz
Labels
-68 .. 202

Project info

Project ID 129477
Project version 2
License Apache 2.0
No. of views 395,764
No. of clones 30