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benchmarking

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This research project at the University of Electro-Communications, Tokyo, uses Scikit-learn and Numpy to measure the Learning Parity with Noise problem's hardness. It offers efficient classifiers, concurrency support, testing with pytest, and advanced utilities for efficient development and debugging.

  • Updated Jul 25, 2023
  • Python

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