Recent Releases of rax
rax - Rax 0.4.0
What's Changed
- Expose
normalize_probabilitiesas a good normalization forSoftmaxLoss. - Remove use of
initialargument tojax.nn.softmaxandjax.nn.log_softmax - Drop python 3.8 checks and add python 3.11 checks.
- Changes in lambda weights to reduce boilerplate and add new options.
- Fix pytype and clean up types across codebase.
- Minor typo fixes in documentation.
Full Changelog: https://github.com/google/rax/compare/v0.3.0...v0.4.0
- Python
Published by rjagerman about 1 year ago
rax - Rax 0.3.0
What's Changed
- New losses:
rax.pairwise_soft_zero_one_lossandrax.pairwise_qr_loss. - Added lambdaweight functionality for all pairwise losses (
rax.*_lambdaweight). - Added segmented data support for all losses and metrics via the
segments=keyword argument. - New example: Segmentation.
Full Changelog: https://github.com/google/rax/compare/v0.2.0...v0.3.0
- Python
Published by rjagerman almost 3 years ago
rax - Rax 0.2.0
What's Changed
- New losses:
rax.poly1_softmax_lossandrax.unique_softmax_loss. - New example: T5X integration.
- Removed dependencies' version upper-bounds.
- Minor documentation fixes.
Full Changelog: https://github.com/google/rax/compare/v0.1.0...v0.2.0
- Python
Published by rjagerman over 3 years ago
rax - Rax 0.1.0
This is the initial release of Rax: a Learning-to-Rank (LTR) library built on top of JAX. It includes the following functionality:
- Ranking losses (
rax.*_loss). - Ranking metrics (
rax.*_metric). - Function transformations (
rax.*_t12n).
- Python
Published by rjagerman about 4 years ago