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Implementation of neural t-SNE in PyTorch with CUDA support

Project description

NeuralTSNE

NeuralTSNE is a parametric t-SNE implementation that uses neural networks to learn the mapping from high-dimensional data to a low-dimensional space. It uses PyTorch for the neural network implementation and can be run on a GPU for faster computations. It also emloys Lightning library, which serves as a high-level wrapper for PyTorch, to simplify the training process. The package can be imported as Python module or used as a command-line tool.

Features

  • Neural t-SNE implementation
  • CUDA support for faster computations
  • Integration with PyTorch
  • Comprehensive test coverage
  • Documentation generated with Sphinx

Installation

To install the package, run:

pip install NeuralTSNE

Usage

Example usage was provided in the examples directory.

License

This project is licensed under the MIT License - see the LICENSE file for details.

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