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A package for analysing different caractheristics of time series data.

Project description

Welcome to "Easy to Explain: Time-Series Features"

This Python library offers diverse solution for advanced time-series analysis. This library is built to empower developers and data scientists by simplifying complex time-series tasks.

To acess the full documentation, visit our official website: https://franciscovmacieira.github.io/ete_ts/


What It Does

ete_ts equips you with a robust set of features to master your time-series data:

Trend Analysis: Quantify the direction, strength, and stability of the trend in your time-series.

Noise & Volatility Modeling: Characterize the randomness, complexity, and predictability of your time-series.

Seasonality Detection: Identify and measure the strength of recurring, cyclical patterns.

Model Selection: Extract key statistical properties to guide your choice of forecasting models.

Clustering & Classification: Generate unique fingerprints for your time-series to use in machine learning tasks.


Installation

Get started in seconds.

pip install ete_ts

Context

This library was developed as the focus of a research initiative by Francisco Macieira, an undergraduate student of Artificial Intelligence and Data Science at FCUP. The project was supervised by Professor Moisés Santos, affiliated with both FCUP and FEUP.

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