luz 0.5.0
- Added mixed precision callback. (#127)
- Added support for torch iterable datasets. (#135)
- Fixed a bug when trying to resume models trained with learning rate
schedulers. (#137)
- Added support for learning rate schedulers that take the current
loss as arguments. (#140)
- Added French translation of luz messages. (@cregouby #148)
luz 0.4.0
Breaking changes
drop_last=TRUE is now the default for training
dataloaders created by luz (when eg. you pass a list or a torch dataset
as data input) (#117)
- The default profile callback no longer tracks intra step timings as
it adds a non ignorable overhead. (#125)
New features
- Added support for arm Mac’s and the MPS device. (#104)
- Refactor checkpointing in luz - we now also serialize optimizer
state and callbacks state. (#107)
- Added a
luz_callback_autoresume() allowing to easily
resume training runs that might have crashed. (#107)
- Added the
luz_callback_resume_from_checkpoint()
allowing one to resume a training run from a checkpoint file.
(#107)
- Users can now chose if metrics should be called on both training and
validation, only training or only validation. See
luz_metric_set() for more information. (#112)
- Improved how errors raised on user code, eg while calling metrics or
callbacks are raised. This helps a lot when debuging errors in callbacks
and metrics. (#112)
loss_fn is now a field of the context, thus callbacks
can override it when needed. (#112)
luz_callback_mixup now supports the
run_valid and auto_loss arguments. (#112)
ctx now aliases to the default opt and
opt_name when a single optimizer is specified (ie. most
cases) (#114)
- Added
tfevents callback for logging the loss and
getting weights histograms. (#118)
- You can now specify metrics to be evaluated during
evaluate. (#123)
Bug fixes
- Bug fix:
accelerators cpu argument is
always respected. (#119)
- Handled
rlang and ggplot2 deprecations.
(#120)
- Better handling of metrics environments.
- Faster garbage collection of dataloaders iterators, so we use less
memory. (#122)
- Much faster loss averaging at every step. Can have hight influence
in training times for large number of iterations per epoch. (#124)
luz 0.3.1
- Re-submission to fix vignette rendering.
luz 0.3.0
Breaking changes
lr_finder() now by default divides the range between
start_lr and end_lr into log-spaced intervals,
following the fast.ai implementation. Cf. Sylvain Gugger’s post:
https://sgugger.github.io/how-do-you-find-a-good-learning-rate.html. The
previous behavior can be achieved passing
log_spaced_intervals=FALSE to the function. (#82, @skeydan)
plot.lr_records() now in addition plots an
exponentially weighted moving average of the loss (again, see Sylvain
Gugger’s post), with a weighting coefficient of 0.9 (which
seems a reasonable value for the default setting of 100
learning-rate-incrementing intervals). (#82, @skeydan)
Documentation
- Many wording improvements in the getting started guides (#81 #94,
@jonthegeek).
New features
- Added MixUp callback and helper loss function and functional logic.
(#82, @skeydan).
- Added a
luz_callback_gradient_clip inspired by FastAI’s
implementation. (#90)
- Added a
backward argument to setup
allowing one to customize how backward is called for the
loss scalar value. (#93)
- Added the
luz_callback_keep_best_model() to reload the
weights from the best model after training is finished. (#95)
luz 0.2.0
New features
- Allow users to provide the minimum and maximum number of epochs when
calling
fit.luz_module_generator(). Removed
ctx$epochs from context object and replaced it with
ctx$min_epochs and ctx$max_epochs (#53, @mattwarkentin).
- Early stopping will now only occur if the minimum number of training
epochs has been met (#53, @mattwarkentin).
- Added
cuda_index argument to accelerator
to allow selecting an specific GPU when multiple are present (#58, @cmcmaster1).
- Implemented
lr_finder (#59, @cmcmaster1).
- We now handle different kinds of data arguments passed to
fit using the as_dataloader() method
(#66).
valid_data can now be scalar value indicating the
proportion of data that will be used for fitting. This only
works if data is a torch dataset or a list. (#69)
- You can now supply
dataloader_options to
fit to pass additional information to
as_dataloader(). (#71)
- Implemented the
evaluate function allowing users to get
metrics from a model in a new dataset. (#73)
Bug fixes
- Fixed bug in CSV logger callback that was saving the logs as a space
delimited file (#52, @mattwarkentin).
- Fixed bug in the length of the progress bar for the validation
dataset (#52, @mattwarkentin).
- Fixed bugs in early stopping callback related to them not working
properly when
patience = 1 and when they are specified
before other logging callbacks. (#76)
Internal changes
ctx$data now refers to the current in use
data instead of always refering to
ctx$train_data. (#54)
- Refactored the
ctx object to make it safer and avoid
returing it in the output. (#73)
luz 0.1.0
- Added a
NEWS.md file to track changes to the
package.