Skip to Content
Time Series Forecasting in Python
book

Time Series Forecasting in Python

by Marco Peixeiro
October 2022
Beginner to intermediate
456 pages
12h 12m
English
Manning Publications
Content preview from Time Series Forecasting in Python

18 Capstone: Forecasting the electric power consumption of a household

This chapter covers

  • Developing deep learning models to predict a household’s electric power consumption
  • Comparing various multi-step deep learning models
  • Evaluating the mean absolute error and selecting the champion model

Congratulations on making it this far! In chapters 12 to 17, we dove headfirst into deep learning for time series forecasting. You learned that statistical models become inefficient or unusable when you have large datasets, which usually means more than 10,000 data points, with many features. We must then revert to using deep learning models, which can leverage all the available information while remaining computationally efficient, to produce forecasting ...

Become an O’Reilly member and get unlimited access to this title plus top books and audiobooks from O’Reilly and nearly 200 top publishers, thousands of courses curated by job role, 150+ live events each month,
and much more.
Start your free trial

You might also like

Modern Time Series Forecasting with Python

Modern Time Series Forecasting with Python

Manu Joseph

Publisher Resources

ISBN: 9781617299889Supplemental ContentPublisher SupportOtherPublisher WebsiteSupplemental ContentErrata PagePurchase Link