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c-net/README.md
Raphael Walcher b9dba1a92b readme
2023-09-24 20:51:27 +02:00

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# C-net ඞ
## Description
C-net ඞ is a Python project designed to read and predict numbers from the MNIST dataset using neural networks.
## Visuals
![Insert GIF or Screenshot here](link_to_visual.gif)
## Roadmap
- [x] Implemented an Image Loader for MNIST dataset.
- [x] Created a prediction function for recognizing handwritten digits.
- [x] Developed matrix calculation methods to support neural network operations.
- [x] Added functionality to load and save neural network models.
- [x] Successfully trained the network on MNIST images.
- [x] Achieved an accuracy rate with a confidence level above 90%.
- [ ] Ongoing optimization and code refinement.
## Authors and Acknowledgments
This project was brought to you by the following contributors:
- Stornig, Jakob
- Schleicher, Thomas
- Dworski, Daniel
- Walcher, Raphael
We would like to express our gratitude to the following project, which served as an inspiration and reference:
- [MNIST from Scratch](https://github.com/markkraay/mnist-from-scratch) by markkraay
- [Neural Network Framework in C](https://medium.com/analytics-vidhya/building-neural-network-framework-in-c-using-backpropagation-8ad589a0752d)
- [Simple Neural Network Implementation in C](https://towardsdatascience.com/simple-neural-network-implementation-in-c-663f51447547)
- [3Blue1Brown Neural Network Series](https://www.youtube.com/watch?v=aircAruvnKk&list=PLZHQObOWTQDNU6R1_67000Dx_ZCJB-3pi)
- [Brotcrunsher's YouTube Videos](https://www.youtube.com/watch?v=oCPT87SvkPM&pp=ygUbYnJvdCBjcnVzaGVyIG5ldXJhbCBuZXp3ZXJr), [Video 2](https://www.youtube.com/watch?v=YIqYBxpv53A&pp=ygUbYnJvdCBjcnVzaGVyIG5ldXJhbCBuZXp3ZXJr), [Video 3](https://youtu.be/EAtQCut6Qno)
## Project Status
The project is considered finished, but ongoing optimizations and improvements may still be in progress.