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Frequency-Modulated Möbius decomposition for multichannel signals

Project description

fmmpy

fmmpy is a Python package for Frequency-Modulated Möbius (FMM) decomposition of multichannel signals. It offers efficient tools for signal modeling with parameter constraints, supporting applications in biomedical and spectroscopic signal analysis.

📦 PyPI: fmmpy
🔗 GitHub: FMMGroupVa/fmmpy


🚀 Features

  • Multichannel FMM signal decomposition
  • Constrained parameter estimation (e.g., frequency, phase, amplitude)
  • AFD-based initialization
  • Built-in diagnostics and visualization tools
  • Modular and efficient implementation using numba and qpsolvers

📦 Installation

Install directly from PyPI:

pip install fmmpy

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