A Python library for signal decomposition algorithms
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Updated
Sep 25, 2025 - Python
A Python library for signal decomposition algorithms
Digital signal analysis library for python. The library includes such methods of the signal analysis, signal processing and signal parameter estimation as ARMA-based techniques; subspace-based techniques; matrix-pencil-based methods; singular-spectrum analysis (SSA); dynamic-mode decomposition (DMD); empirical mode decomposition; variational mod…
A demo of using Hilbert-Huang Transform (HHT) for non-stationary and non-linear signal analysis.
Python library to Fetch & Analyze Stock Market data.
Stock Market Decision Support System using Deep Learning & Sentiment Analysis
EMD(Empirical Mode decomposition) light weight library, C/C++ language
Parallel 1D Empirical Mode Decomposition (EMD) on GPU for processing multiple signals. For each IMF, it computes the upper and lower envelopes and identifies critical points (local maxima and minima).
Python implementation of time varying filter EMD
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This repository contains code reproducing an existing method to detect atrial fibrillation using empirical mode decomposition of signals. This was a lecture that I gave for graduate-level BioSignal Processing course.
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Adaptive Multivariate Empirical Mode Decomposition
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Empirical Mode Decomposition filter to remove the baseline frequency in ECG signal
Empirical Mode Decomposition
Sentiment Index of China's Stock Market and its Causal Effect on Stock Indices
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Empirical Mode Decomposition (EMD) is a powerful signal processing technique used to decompose non-linear and non-stationary signals into intrinsic mode functions (IMFs)
Development of the smoothing agregator that originates from the time series research project: https://github.com/lebedevaale/early_warning_model
Exemplo de aplicação do método EMD (empirical mode decomposition) apresentado na disciplina "Introdução à Ciência de Dados" pelo professor Rodrigo Mello em 2019, em São Carlos-SP
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