Releases: NVIDIA-Merlin/NVTabular
Releases · NVIDIA-Merlin/NVTabular
v0.5.2
v0.5.1
v0.5.0
Improvements
- Adding Horovod integration to NVTabular's dataloaders, allowing you to use multiple GPU's to train TensorFlow and PyTorch models
- Adding a Groupby operation for use with session based recommender models
- Added ability to read and write datasets partitioned by a column
- Add example notebooks for using Triton Inference Server with NVTabular
- Restructure and simplify Criteo example notebooks
- Add support for PyTorch inference with Triton Inference Server
Bug Fixes
- Fix bug with preprocessing categorical columns with NVTabular not working with HugeCTR and Triton Inference Server #707
v0.4.0
Breaking Changes
- The API for NVTabular has been signficantly refactored, and existing code targetting the 0.3 API will need to be updated.
Workflows are now represented as graphs of operations, and applied using a sklearn 'transformers' style api. Read more by
checking out the examples
Improvements
- Triton integration support for NVTabular with TensorFlow and HugeCTR models
- Recommended cloud configuration and support for AWS and GCP
- Reorganized examples and documentation
- Unified Docker containers for Merlin components (NVTabular, HugeCTR and Triton)
- Dataset analysis and generation tools