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Modern Time Series Forecasting with Python

Modern Time Series Forecasting with Python - Second Edition

By : Manu Joseph, Jeffrey Tackes
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Modern Time Series Forecasting with Python

Modern Time Series Forecasting with Python

5 (2)
By: Manu Joseph, Jeffrey Tackes

Overview of this book

Predicting the future, whether it's market trends, energy demand, or website traffic, has never been more crucial. This practical, hands-on guide empowers you to build and deploy powerful time series forecasting models. Whether you’re working with traditional statistical methods or cutting-edge deep learning architectures, this book provides structured learning and best practices for both. Starting with the basics, this data science book introduces fundamental time series concepts, such as ARIMA and exponential smoothing, before gradually progressing to advanced topics, such as machine learning for time series, deep neural networks, and transformers. As part of your fundamentals training, you’ll learn preprocessing, feature engineering, and model evaluation. As you progress, you’ll also explore global forecasting models, ensemble methods, and probabilistic forecasting techniques. This new edition goes deeper into transformer architectures and probabilistic forecasting, including new content on the latest time series models, conformal prediction, and hierarchical forecasting. Whether you seek advanced deep learning insights or specialized architecture implementations, this edition provides practical strategies and new content to elevate your forecasting skills. *Email sign-up and proof of purchase required
Table of Contents (27 chapters)
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1
Part 1: Getting Familiar with Time Series
6
Part 2: Machine Learning for Time Series
13
Part 3: Deep Learning for Time Series
21
Part 4: Mechanics of Forecasting
25
Other Books You May Enjoy
26
Index

Summary

This was a very practical and hands-on chapter in which we developed some standard code to train and evaluate multiple machine learning models. Then, we reviewed a few key machine learning models like ridge regression, lasso regression, decision trees, Random Forest, and gradient-boosted trees and how they work behind the hood. To complete and reinforce what we learned, we applied the machine learning models we learned about to the London Smart Meters dataset and saw how well they did. This chapter sets you up to tackle the coming chapters, where we will use the standardized code and these models to go deeper into forecasting with machine learning.

In the next chapter, we will start combining different forecasts into a single forecast and explore concepts such as combinatorial optimization and stacking to achieve state-of-the-art results.

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Modern Time Series Forecasting with Python
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