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Changelog

vNext

(Add your change to a random empty line to avoid merge conflicts)

  • Add copy() method to Module. This is a user-friendly version of the internal clone() method with better defaults for common use cases.
  • NOTE: Remember to bump version number to 0.8.0

0.7.5

  • Report forward and backward pass FLOPs of modules and submodules in linen.Module.tabulate and summary.tabulate (in new flops and vjp_flops table columns). Pass compute_flops=True and/or compute_vjp_flops=True to include these columns.
  • Re-factored MultiHeadDotProductAttention's call method signature, by adding inputs_k and inputs_v args and switching inputs_kv, mask and determistic to keyword arguments. See more details in #3389.
  • Use new typed PRNG keys throughout flax: this essentially involved changing uses of jax.random.PRNGKey to jax.random.key. (See JEP 9263 for details). If you notice dispatch performance regressions after this change, be sure you update jax to version 0.4.16 or newer.
  • Added has_improved field to EarlyStopping and changed the return signature of EarlyStopping.update from returning a tuple to returning just the updated class. See more details in #3385

0.7.4

New features:

  • Add QK-normalization to MultiHeadDotProductAttention
  • Allow apply's method argument to accept submodules
  • Add module path to nn.module.
  • [JAX] Generate new type of PRNG keys

Bug fixes:

  • Directly call original method if method interceptor stack is empty.
  • fix stackoverflow when loading pickled module
  • Improve kw_only_dataclass.
  • Allow pass-through implementation of state dict
  • Promote dot_general injections from a function to a module.

0.7.2

New features:

  • make flax.core.copy add_or_replace optional
  • Add use_fast_variance option to GroupNorm and BatchNorm to allow disabling it.

Bug fixes:

  • Use field_specifiers instead of field_descriptors in @dataclass_transform.
  • Fix nn.Module typing.
  • [JAX] Replace uses of jax.experimental.pjit.with_sharding_constraint with jax.lax.with_sharding_constraint.

0.7.1

Breaking changes:

  • Migrating Flax from returning FrozenDicts to returning regular dicts. More details can be found in this announcement

New features:

  • Use pyink
  • added dict migration guide to index
  • add scan over layers section
  • Expose options to customize rich.Table
  • add support for initializing carry variables in scan
  • Let Flax-Orbax to not port the shape of target arrays when they port the target shardings.

Bug fixes:

  • Use import orbax.checkpoint which is a better import pattern.
  • Use import orbax.checkpoint as ocp to avoid the verbosity of using 'orbax.checkpoint` every time.
  • [linen] Add alternative, more numerically stable, variance calculation to LayerNorm.
  • [linen] Minor cleanup to normalization code.
  • Fix norm calculation bug for 0-rank arrays.
  • [JAX] Remove references to jax.config.jax_array.
  • [linen] Use stack instead of concatenate in compute_stats, to handle scalar stats case.
  • [linen] More minor cleanup in normalization compute_stats.
  • Fix warnings from atari gym.
  • Refactor TypeHandler to operate over batches of values, rather than individual ones. This allows more flexibility for implementations that may operate more efficiently on batches.
  • Fix carry slice logic
  • make flax_basics guide use utility fns
  • Fix checkpointing guide error at head
  • Improve scan docs

0.7.0

  • RNNCellBase refactor.

0.6.11

  • Set Orbax-as-backend to be the default checkpointing method.
  • Fix setup trigger issue under sharing and transforms.
  • Add collection to self.scope.reserve(name, col) so that sow works with the same name in different collections.
  • Minor improvements for Sequential.
  • Improve the error message in MultiHeadDotProductAttention.
  • Allow manually specifying the rng key for Dropout.
  • RNN refactor.
  • fixed missing separator for rng fold in.

0.6.10

  • Rudimentary quantization support: some layers can be parametrized with custom dot_general and conv_general_dilated.

0.6.9

  • Depend on orbax-checkpoint package instead of orbax.
  • Refactored setup scripts to project.toml.
  • Added pretty_repr utility fn.
  • Fix get_partition_spec on replicated array.
  • Updates imagenet.ipynb to use GPU Colab runtime, and fixed config.
  • Upgrade checkpointing code to jax.sharding, and with more warnings.

0.6.8

  • The automatic checkpoint migration was temporarily rolled back due to legacy compatibility issues.
    • We still recommend you to use the upgrade guide and migrate completely to the Orbax API to ensure stability.
    • Or alternatively, add flax.config.update('flax_use_orbax_checkpointing', True) to your project to avoid being impacted by the automatic migration process.
  • Added utility functions to frozen_dict api.
  • Migrated Flax away from register_keypaths.
  • Fixes kwargs in convert_to_graphs_tuple_fn.
  • Fixed examples in a few ways:
    • Bumped the TF version
    • Used latest checkpoint formats
    • Other misc fixes.

0.6.7

  • New checkpoints will be saved using Orbax! Please check out upgrade guide and consider migrating completely to the Orbax API.
    • You could flax.config.update('flax_use_orbax_checkpointing', False) to temporarily disable this migration, but note that Flax legacy checkpointing will be removed 3 months from Mar 10, 2023.
  • Migrating FrozenDict to regular dict: utility functions now work on both.
  • Migrated Flax dataclass and FrozenDict to JAX pytree keypath API.
  • Fixed pytype and improved typing for Module
  • Fixed up uses of PyTree and PyTreeDef types.

0.6.6

  • 0.6.5 was yanked so this release contains all that was in 0.6.5 as well.
  • Migrated regular dict to FrozenDict, currently controlled by a flag.
  • Refactored and separate out name relaxation policy changes.
  • Added RMS normalization layer.

0.6.5

  • Added logical partitioning helpers for using pjit with Flax.
  • Add Module.lazy_init to avoid compute during Module initialization.

0.6.4

New features:

  • Our ReadTheDoc site is a lot more organized now! More improvements on the way.
  • Flax auto-SPMD parallelism API to work seamlessly with jax.pjit: https://flax.readthedocs.io/en/latest/guides/flax_on_pjit.html
  • Added new zeros_init and ones_init initializers.
  • Adds standardize initializer.
  • Allowed specifying method as a string.
  • Allowed runtime overwrite of flax.config flags.

Bug fixes:

  • Added missing dataclass.fields from __repr__.
  • Renamed ConvLSTM to ConvLSTMCell.
  • Fix some tiny inconsistencies between scope.py and module.py.
  • Improved many many docstrings, comments and error messages.

0.6.3

New features:

  • Flax checkpointing now uses Orbax for more flexiblity and features.
  • Added support for python 3.10 and removed support for 3.7.

Bug fixes:

  • Fixed rng generation in DenseGeneral init.
  • Improved support for Mac M1 chip.
  • Bumped package versions for a bunch of examples.
  • Improved many docstrings and error messages.

0.6.2

New features:

  • Add rng_collection argument to Dropout.
  • Fix flax.linen.stochastic.Dropout.
  • Add flag allow_partial_mpa_restoration in checkpointing.
  • Use gfile.remove for files because it doesn't work on GCS files.
  • Added guides for: Flax the Sharp Bits, Checkpointing, Extracting Gradients
  • Improved existed documentation pages.
  • Improved errors, error messages and tests.
  • Removed codebase's trailing whitespaces.

Bug fixes:

  • Fixes launch_gce.sh with imagenet example.
  • Properly report AttributeErrors from descriptors.
  • Fixes usages of pmap.
  • Return None if no _parent_ref is set.
  • Cap dynamic scale to float32 max.
  • no-op when double wrapping with struct.dataclass.
  • Allow variable_with_axes to have empty axes when axes is set to an empty tuple.
  • Don't create reference cycles among Modules.

0.6.1

  • Adds axis_name and axis_index_groups to LayerNorm and GroupNorm. by @copybara-service in #2402
  • Plumb spmd_axis_name through transforms.vmap through to JAX vmap by @copybara-service in #2398
  • Support multiple inputs in flax lifted vjp/custom_vjp by @copybara-service in #2399
  • Improve tabulate by @cgarciae in #2316
  • Add path_aware_map function by @cgarciae in #2371
  • Add static_argnums to nn.checkpoint by @cgarciae in #2457
  • Adding "count_include_pad" argument to flax.linen.pooling.avg_pool by @dslisleedh in #2451
  • Add perturb() to allow capturing intermediate gradients by @IvyZX in #2476

0.6.0

  • Removed deprecated optimizers in flax.optim package.
  • Moved flax.optim.dynamic_scale to flax.training.dynamic_scale.
  • Switched to using jax.named_scope for all profile naming, cut some pointless stack traces out.

0.5.3

New features:

  • Added nn.switch as a lifted version of jax.lax.switch.
  • Added a method for detecting the use of "init" functions.
  • Added checkpointing support for jax.experimental.GlobalDeviceArray, a useful array type for multiprocess/multihost computing.
  • Added async option to save_checkpoints() on single-process scenario.
  • Improved documentation pages.

Bug fixes:

  • Fixed variable aliasing in put_variable
  • Fixed missing passthrough of nn.scan unroll arg
  • Fixed the MNIST example

0.5.2

  • Fixes missing PyYAML dependency.

0.5.1

New features:

  • Added nn.tabulate and Module.tabulate to generate rich representations of the network structure.

0.5.0

  • Added flax.jax_utils.ad_shard_unpad() by @lucasb-eyer
  • Implemented default dtype FLIP. This means the default dtype is now inferred from inputs and params rather than being hard-coded to float32. This is especially useful for dealing with complex numbers because the standard Modules will no longer truncate complex numbers to their real component by default. Instead the complex dtype is preserved by default.

Bug fixes:

  • Fix support for JAX's experimental_name_stack.

Breaking changes:

  • In rare cases the dtype of a layer can change due to default dtype FLIP. See the "Backward compatibility" section of the proposal for more information.

0.4.2

New features:

  • Add lifted conditional nn.cond.
  • Improved error messages: parameters not found, loading checkpoints.
  • Replace jax.tree_multimap (deprecated) with jax.tree_map.
  • Add the "Module Lifecycle" design note.
  • Add support for JAX dynamic stack-based named_call

Bug fixes:

  • Handle rate==1.0 edgecase in Dropout.
  • Fix bug where Linen Module state is reused.
  • Bug fixes and generalizations of nn.partitioning API.

0.4.1

New features:

  • Added locally-connected (unshared CNN) layer flax.linen.ConvLocal.
  • Improved seq2seq example: Factored our model and input pipeline code.
  • Added Optax update guide and deprecated flax.optim.
  • Added sep argument to flax.traverse_util.flatten_dict().
  • Implemented Sequential module, in flax.linen.combinators.

0.4.0

Breaking changes:

  • flax.deprecated.nn is removed. Please pin to flax==0.3.6 if you are still using it.
  • PixelCNN++ example is removed. It was not working well on TPU.
  • linen Normalization layers no longer downcast double and complex floats tofloat32 when computing the mean and variance.

New features:

  • Added flax.linen.custom_vjp for custom derivatives inside a Module.
  • Add param_dtype attribute to standard Linen Modules for specifying parameter dtypes.

0.3.6

Breaking changes:

  • Move flax.nn to flax.deprecated.nn.

New features:

  • Add experimental checkpoint policy argument. See flax.linen.checkpoint
  • Add lifted versions of jvp and vjp.
  • Add lifted transformation for mapping variables. See flax.linen.map_variables.

0.3.5

Breaking changes:

  • You can no longer pass an int as the kernel_size for a `flax.linen.Conv. Instead a type error is raised stating that a tuple/list should be provided. Stride and dilation arguments do support broadcasting a single int value now because this is not ambigious when the kernel rank is known.
  • flax.linen.enable_named_call and flax.linen.disable_named_call now work anywhere instead of only affecting Modules constructed after the enable/disable call. Additionally, there is now flax.linen.override_named_call that provided a context manager to locally disable/enable named_call.
  • NamedTuples are no longer converted to tuples on assignment to a linen.Module.

New features:

  • Flax internal stack frames are now removed from exception state traces.
  • Added flax.linen.nowrap to decorate method that should not be transformed because they are stateful.
  • Flax no longer uses implicit rank broadcasting. Thus, you can now use Flax with --jax_numpy_rank_promotion=raise.

Bugfixes:

  • linen Modules and dataclasses made with flax.struct.dataclass or flax.struct.PyTreeNode are now correctly recognized as dataclasses by static analysis tools like PyLance. Autocomplete of constructors has been verified to work with VSCode.
  • Fixed a bug in FrozenDict which didn't allow copying dicts with reserved names.
  • Fix the serialization of named tuples. Tuple fields are no longer stored in the state dict and the named tuple class is no longer recreated (bug).
  • Mixed precision training with float16 now works correctly with the attention layers.
  • auto-generated linen Module __hash__, __eq__, __repr__ no longer fail by default on non-init attributes.

0.3.4

Possibly breaking changes:

  • When calling init the 'intermediates' collection is no longer mutable. Therefore, intermediates will no longer be returned from initialization by default.
  • Don't update batch statistics during initialization.
  • When not using any non-determinism (e.g., dropout), it is not longer necessary to specify the deterministic argument in MultiHeadDotProductAttention.

Other changes:

  • Rewrote various examples to use Optax instead of Flax optimizers (e.g., Imagenet, SST2).
  • Added an NLP text classification example (on the SST-2 dataset) to examples/sst2. that uses a bidirectional LSTM (BiLSTM) to encode the input text.
  • Added flax.training.train_state to simplify using Optax optimizers.
  • mutable argument is now available on Module.init and Module.init_with_outputs
  • Bug fix: Correctly handle non-default parameters of Linen Modules with nested inheritance.
  • Expose dot_product_attention_weights, allowing access to attention weights.
  • BatchNorm instances will behave correctly during init when called multiple times.
  • Added a more extensive "how to contribute" guide in contributing.md.
  • Add proper cache behavior for lift.jit, fixing cache misses.
  • Fix bug in Embed layer: make sure it behaves correctly when embedding is np.array.
  • Fix linen.Module for deep inheritance chains.
  • Fix bug in DenseGeneral: correctly expand bias to account for batch & noncontracting dimensions.
  • Allow Flax lifted transforms to work on partially applied Modules.
  • Make MultiOptimizer use apply_gradient instead of apply_param_gradient.

0.3.3

Possible breaking changes:

  • Bug Fix: Disallow modifying attributes in Modules after they are initialized.
  • Raise an error when saving a checkpoint which has a smaller step than the latest checkpoint already saved.
  • MultiOptimizer now rejects the case where multiple sub optimizers update the same parameter.

Other changes:

  • Added custom error classes to many Linen errors. See: https://flax.readthedocs.io/en/latest/flax.errors.html
  • Adds Module.bind for binding variables and RNGs to an interactive Module.
  • Adds nn.apply and nn.init for transforming arbitrary functions that take a linen.Module as their first argument.
  • Add option to overwrite existing checkpoints in save_checkpoint.
  • Remove JAX omnistaging check for forward compatibility.
  • Pathlib compatibility for checkpoint paths.
  • is_leaf argument in traverse_util.flatten_dict

0.3.2

flax.nn deprecation message no longer appears if you import flax directly.

NOTE: You must now explicitly import flax.nn if you want to use the old pre-Linen flax.nn.Module.

0.3.1

Many improvements to Linen, and the old flax.nn is officially deprecated!

Notably, there's a clean API for extracting intermediates from modules defined using @nn.compact, a more ergonomic API for using Batch Norm and Dropout in modules defined using setup, support for MultiOptimizer with Linen, and multiple safety, performance and error message improvements.

Possible breaking changes:

  • Call setup lazily. See #938 for motivation and more details.
  • Linen Module instances are now frozen after setup has been called. Previously mutations after setup could be dropped silently. Now the stateless requirement is enforced by raising a TypeError in __setattr__ after setup.
  • Pytrees of dicts and lists are transformed into FrozenDict and tuples during attribute assignment. This avoids undetected submodules and inner state.
  • Bug Fix flax.core.apply and Module.apply. Now it returns a tuple containing the output and a frozen empty collection when mutable is specified as an empty list.
  • broadcast_dims is now an attribute to Dropout instead of a __call__ argument.
  • use_running_average and deterministic no longer have a default. They should be passed explicitly
  • Bug Fix Scope.variable mutability check, before a variable could only be initialized if the 'params' collection was mutable.

Other Improvements:

  • Re-introduced the lm1b language modeling example
  • Recognizes batch free inputs in pooling layers. (for use with vmap)
  • Add Adadelta optimizer
  • Fully deprecate all "pre-Linen" flax.nn classes and methods.
  • Some Module arguments can now be passed either as dataclass attribute or as argument to __call__. See design note
  • Add sow method to Module and capture_intermediates argument to Module.apply. See howto for usage patterns.
  • Support passing in modules directly as attributes to other modules, and deal with them correctly both in top-level modules and in submodules.
  • Don't require the variable argument to Module.apply to be a FrozenDict
  • Add support for dict/FrozenDict when using ModelParamTraversal As a result MultiOptimizer can be used properly with linen modules.
  • Added OptimizedLSTM: ~33% faster than the original LSTM when using <=1024 units
  • Fix dtype handling for Adam and LAMB optimizers in 64bit mode.
  • Added is_mutable() method to Variable and is_mutable_collection() to flax.linen.Module.
  • Add axis_name arg to flax.linen.vmap
  • Enable broadcast in flax.linen.scan
  • Fix behavior when inner module classes were defined in another module
  • Add automatic giant array chunking in msgpack checkpoints.
  • Log info message when a checkpoint is not found in the directory.

v0.3

Linen is now out of Alpha (flax.nn is being deprecated)!

  • flax.core.apply and linen Module.apply will now only return the variables collections that were specified as mutable.
  • Fixed handling of multiple separate subclasses of a Module.
  • We now allow assignment of mixed Module pytrees in setup.
  • Refactored collection creation to fail early when modifying an undefined collection as before an non-existing non-mutable collection would just be silently ignored.
  • Added the silu activation function.
  • Add offset argument to Adafactor optimizer for fine-tuning schedules.
  • Relaxed limit on calling methods on unbound modules.
  • Relaxed parameter attribute check
  • Added centered version of RMSProp.
  • Added GCE getting started kit.
  • Renamed -gpu_type to -accelerator_type.
  • Fixed bug in MultiOptimizer causing it to throw away empty dictionary

Improvements

  • Made FrozenDict constructor freeze correctly.
  • Made freeze a synonym of the FrozenDict constructor
  • Optimize freezing FrozenDicts by sharing immutable internal state.
  • We simplified setattr handling of trees with Modules.
  • Minor improvements in dtype handling, broadcast option for dropout.
  • Added a dtype specification to Embed layer, made Adafactor use float32 state consistently, and added a broadcasting option to the Dropout layer.
  • Improved frozen dict performance.
  • (Massive) docs improvements
  • End to end benchmarks added.
  • Examples were updated to Linen.

v0.2.2

  • Added Reinforcement Learning example (examples/ppo).
  • Fix Adafactor bug that prevented factorization.
  • Fix scan broadcast issue in functional core.
  • Fix initialization RNGs to work with omnistaging for jitted inits.
  • Replaces usage of 'param' kind to 'params' collection.
  • Fix LARS optimizer for zero param initialization.
  • Added various examples in Linen API. See README.md for more information.
  • Full JAX omnistaging compatibility.

v0.2

  • Added JAX trace-level checks for transforms.
  • BatchNorm added axis_index_groups for control in parallel training.
  • Optimizers broken out into separate directory with base class and implementations.
  • traverse_util added flatten_dict and unflatten_dict utility methods for nested dicts.

v0.1

API Changes

  • Add ConvTranspose Module to nn.linear
  • Rename the following optional arguments to nn.linear.Conv: lhs_dilation -> input_dilation, rhs_dilation -> kernel_dilation
  • Change default layer names from numbers '0', '1', etc. to include the Module class name, e.g. 'Dense_0', 'LayerNorm_1'.