preface
In October 2023, I used TimeGPT, one of the foundation forecasting models that we explore in this book, for the first time. After running it for a project, I found that it made better predictions than the models I’d carefully built and tuned on my data.
That’s when I knew that large time models were about to change the field of time-series forecasting. A pretrained model not only performed better than my own but also was much faster and more convenient. This is the ultimate promise of foundation models: a single model enables you to deliver state-of-the-art forecasting performance without the hassle of training a model from scratch or maintaining multiple models for each use case.
Since then, many models have been proposed and ...
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