October 2024
Intermediate to advanced
660 pages
18h 51m
English
In this part, we focus on the exciting field of deep learning to tackle time series problems. This part starts with a good introduction of the necessary concepts and slowly builds up to different specialized architectures that are suited to handle time series data. It also talks about global models in deep learning and some strategies to make them work better. And to top it off, we dive deep into generating probabilistic forecasts which is highly relevant in today’s forecasting landscape.
This part comprises the following chapters: