Fusionlab-learn: Igniting Next-Gen Fusion Models¶
Extend, experiment, and fuse time-series predictions with state-of-the-art architectures.
Fusionlab-learn provides a flexible and extensible framework built on TensorFlow/Keras for advanced time-series forecasting. It centers on the Temporal Fusion Transformer (TFT) and its extensions like the Extreme Temporal Fusion Transformer (XTFT), offering modular components and powerful utilities for researchers and practitioners.
Whether you need interpretable multi-horizon forecasts, robust uncertainty quantification, or a platform to experiment with novel temporal architectures, FusionLab aims to provide the necessary tools.
Explore Further
Motivation: Understand the Motivation behind FusionLab.
Examples: See practical applications in the Examples Gallery.
Contribute: Learn how to contribute to the project.
Cite: Find out how to cite FusionLab in your work.
Reference: Consult the Glossary or view the License (BSD-3-Clause).
Terminology
For brevity and consistency, the library will be referred to as fusionlab
throughout the remainder of the documentation.