Getting Started: Session-based Recommendation with Synthetic Data
This example notebook focuses on the following basic concepts of Transformers4Rec:
- Generating synthetic data of user interactions. 
- Preprocessing sequential data with NVTabular on GPU. 
- Using the NVTabular dataloader with PyTorch. 
- Training a session-based recommendation model with a Transformer architecture (XLNET). 
Refer to the following notebooks:
- Session based XLNET: PyTorch