This repository was archived by the owner on Jul 7, 2023. It is now read-only.
v1.4.0
This release is a significant refactor of T2T internals.
T2TModelsubclasses now have the ability to override the entire Estimator model function with theestimator_model_fnmethod, making them much more flexible. Subclasses can also now overridebottom,body,top,loss, andoptimize.Problemsubclasses now have the ability to override the entire Estimator input function with theinput_fnmethod, making them much more flexible.- The key components of the trainer and decoder -
Experiment,Estimator,RunConfig,HParams- are all much more easily constructed and used by library callers throughtpu_trainer_lib.py. - We decided to drop support for MultiModel, i.e. training on multiple problems, because it added too much code complexity for the benefit gained. We will consider adding support back in a way that doesn't overcomplicate things too much if there's sufficient interest.
There are also the usual new models, feature improvements, bug fixes.
- New
image_fashion_mnistdataset - New
revnet104model, implementing a large Reversible Residual Network - Set
--decode_hparams=write_beam_scores=Trueto include beam scores when writing to a file - Beginnings of new interactive visualization server at insights/