Skip to content

KerasFuse is a Python library that combines the power of TensorFlow and Keras with various computer vision techniques for medical image analysis tasks. It provides a collection of modules and functions to facilitate the development of deep learning models in TensorFlow Keras for tasks such as image segmentation, classification, and more.

License

Notifications You must be signed in to change notification settings

ayyucedemirbas/KerasFuse

Repository files navigation

KerasFuse

KerasFuse

GitHub Tensorflow Keras Black isort

Package version Download Count Supported Python versions Project Status

🚧 Warning this project is under heavy development and not ready for production. ABI changes can happen frequently until reach stable version 🚧

KerasFuse is a Python library that combines the power of TensorFlow and Keras with various computer vision techniques for medical image analysis tasks. It provides a collection of modules and functions to facilitate the development of deep learning models in TensorFlow Keras for tasks such as image segmentation, classification, and more.

Getting Started

Requirements

KerasFuse is a project that relies heavily on the Tensorflow and Keras libraries. It is designed to work seamlessly with these powerful tools for deep learning and neural network development. In order to use KerasFuse effectively, please ensure that you have the following:

  • Python 3.8+
  • Tensorflow 2.12.0+
  • Keras 2.12.0+
  • OpenCV 4.7+
  • Scikit-Learn 1.2.2+

Installation

$ pip install kerasfuse
---> 100%

Development

Please read the Contributing guidelines

License

This project is licensed under the terms of the GPL-3.0 license.

About

KerasFuse is a Python library that combines the power of TensorFlow and Keras with various computer vision techniques for medical image analysis tasks. It provides a collection of modules and functions to facilitate the development of deep learning models in TensorFlow Keras for tasks such as image segmentation, classification, and more.

Topics

Resources

License

Security policy

Stars

Watchers

Forks

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •