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Time Series Forecasting Using Foundation Models
book

Time Series Forecasting Using Foundation Models

by Marco Peixeiro
November 2025
Intermediate to advanced
256 pages
6h 54m
English
Manning Publications
Content preview from Time Series Forecasting Using Foundation Models

3 Forecasting with TimeGPT

This chapter covers

  • Defining generative models
  • Exploring the architecture and inner workings of TimeGPT
  • Forecasting with TimeGPT
  • Detecting anomalies with TimeGPT

In chapter 2, we built our own tiny foundation forecasting model and survived the challenges of building such models. Because we trained only on monthly data, for example, the model struggled to make accurate predictions on daily data. Thus, unless we’re willing to spend months collecting varied data and pretraining large models, we should use existing large time models.

In this chapter and the next six chapters, we’ll use a dataset that tracks the weekly sales of many Walmart stores from February 5, 2010 to October 26, 2012 as the forecasting scenario ...

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