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Forecasting Atmospheric CO2 Concentration with Classical and Machine Learning Models.

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Atmospheric CO2 Concentration Forecasting

In this project, I am comparing the performance of various forecasting models, including classical, machine learning and deep learning approaches, by using the darts library . My goal is to create a forecast for the atmospheric CO2 concentration of 2022, based on the the Mauna Loa CO2 dataset. Furthermore, I am also applying time series analysis to understand the statistical properties of the data.

Exponential Smoothing

Towards Data Science Article:

Forecasting Atmospheric CO2 with Python

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