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ultralytics/mnist


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🚀 Introduction

Welcome to the repository containing innovative software developed by Ultralytics 🧠. Our code is 🌟 open-sourced and freely available for redistribution under the AGPL-3.0 license. For more insight into our work and impact, head over to https://www.ultralytics.com.

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📗 Description

The repository at https://github.com/ultralytics/mnist is our dedicated playground for the MNIST dataset. 🖐 This repository houses sandbox code that allows for experimentation and training of different neural network architectures on the famous MNIST digit database.

MNIST Examples

📦 Requirements

Ensure you have Python 3.7 or later installed on your machine. The following packages are required, and you can install them using pip with the provided command: pip3 install -U -r requirements.txt.

  • numpy: A fundamental package for scientific computing in Python.
  • torch: PyTorch, an open-source machine learning library for Python.
  • torchvision: A PyTorch package that includes datasets and model architectures for computer vision.
  • opencv-python: An open-source computer vision and machine learning software library.

🏃‍♂️ Run

To start training on the MNIST digits dataset, execute train.py from your Python environment. The training and test data are located in the data/ folder and were initially curated by Yann LeCun (http://yann.lecun.com/exdb/mnist/).

# Example snippet of train.py to showcase its usage.
# This will set up the environment for training a model on MNIST dataset.

# Import necessary libraries (Make sure they are installed as per requirements)
import torch

# Your training script will start here, initialize models, load data, etc.
# ...

# Start the training process
# ...

# Save your trained model
torch.save(model.state_dict(), "path_to_save_model.pt")

# Add suitable comments to each segment of your code for better understanding.

🤝 Contribute

We welcome contributions from the community! Whether you're fixing bugs, adding new features, or improving documentation, your input is invaluable. Take a look at our Contributing Guide to get started. Also, we'd love to hear about your experience with Ultralytics products. Please consider filling out our Survey. A huge 🙏 and thank you to all of our contributors!

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©️ License

Ultralytics is excited to offer two different licensing options to meet your needs:

  • AGPL-3.0 License: Perfect for students and hobbyists, this OSI-approved open-source license encourages collaborative learning and knowledge sharing. Please refer to the LICENSE file for detailed terms.
  • Enterprise License: Ideal for commercial use, this license allows for the integration of Ultralytics software and AI models into commercial products without the open-source requirements of AGPL-3.0. For use cases that involve commercial applications, please contact us via Ultralytics Licensing.

📬 Contact Us

For bug reports, feature requests, and contributions, head to GitHub Issues. For questions and discussions about this project and other Ultralytics endeavors, join us on Discord!


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