Overview
This comprehensive guide covers advanced time series forecasting techniques, blending machine learning and neural networks to solve real-world problems. By integrating PyTorch and pandas into your workflow, you'll harness the tools and knowledge needed to analyze and predict industry trends with confidence.
What this Book will help me do
- Build predictive models using advanced time series forecasting techniques.
- Enhance features and handle challenges like seasonality in time-series data.
- Master deep learning architectures such as transformers for forecasting.
- Implement probabilistic forecasting and assess forecast reliability.
- Evaluate models using effective validation strategies for robust forecasting.
Author(s)
Manu Joseph and Jeffrey Tackes bring extensive expertise in machine learning and time series analysis. Their practical industry experience informs their explanatory and application-focused writing style, designed to empower readers in the field.
Who is it for?
If you are a data scientist, machine learning engineer, or analyst in industries like finance, retail, or energy, and you want to master advanced time series forecasting techniques using Python, this book is a must-read. This resource is especially suited for those who aim to develop their technical skillset and gain a competitive edge in predictive modeling. Prior knowledge of Python and machine learning is recommended to get the most value from this book.