Cortex

Cortex

GitHub From United States 2 votes

Cortex offers a sophisticated framework for machine learning in Clojure, enabling users to implement neural networks, regression, and feature learning. Developed collabor... Cortex offers a sophisticated framework for machine learning in Clojure, enabling users to implement neural networks, regression, and feature learning. Developed collaboratively, it facilitates initial classifier training and supports various data formats. The project is a work in progress, with ongoing enhancements in GPU support, data visualization, and model compatibility.

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Company Information

  • Company: GitHub
  • Country: United States

Top Cortex Features

  • Clojure-based deep learning
  • Neural networks support
  • Regression capabilities
  • Feature learning tools
  • Integration with Keras models
  • Multiple GPU support
  • Multi-machine processing
  • Advanced data visualization
  • GPU profiling features
  • Recurrence support development
  • Pre-trained model compatibility
  • Custom test requirements
  • Flexible save format
  • Active feedback incorporation
  • Community-driven enhancements
  • Extensive unit tests
  • Real-world application examples.

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