Friday, March 21, 2025

Introducing Keras 3 for R

We’re thrilled to introduce keras3, the following model of the Keras R
bundle. keras3 is a ground-up rebuild of {keras}, sustaining the
beloved options of the unique whereas refining and simplifying the API
primarily based on worthwhile insights gathered over the previous few years.

Keras gives an entire toolkit for constructing deep studying fashions in
R—it’s by no means been simpler to construct, practice, consider, and deploy deep
studying fashions.

Set up

To put in Keras 3:

https://keras.posit.co. There, you will discover guides, tutorials,
reference pages with rendered examples, and a brand new examples gallery. All
the reference pages and guides are additionally out there by way of R’s built-in assist
system.

In a fast paced ecosystem like deep studying, creating nice
documentation and wrappers as soon as isn’t sufficient. There additionally have to be
workflows that make sure the documentation is up-to-date with upstream
dependencies. To perform this, {keras3} consists of two new maintainer
options that make sure the R documentation and performance wrappers will keep
up-to-date:

  • We now take snapshots of the upstream documentation and API floor.
    With every launch, all R documentation is rebased on upstream
    updates. This workflow ensures that every one R documentation (guides,
    examples, vignettes, and reference pages) and R operate signatures
    keep up-to-date with upstream. This snapshot-and-rebase
    performance is carried out in a brand new standalone R bundle,
    {doctether}, which can
    be helpful for R bundle maintainers needing to maintain documentation in
    parity with dependencies.

  • All examples and vignettes can now be evaluated and rendered throughout
    a bundle construct. This ensures that no stale or damaged instance code
    makes it right into a launch. It additionally means all person going through instance code
    now moreover serves as an prolonged suite of snapshot unit and
    integration exams.

    Evaluating code in vignettes and examples continues to be not permitted
    in accordance with CRAN restrictions. We work across the CRAN restriction
    by including further bundle construct steps that pre-render
    examples
    and
    vignettes.

Mixed, these two options will make it considerably simpler for Keras
in R to take care of function parity and up-to-date documentation with the
Python API to Keras.

Multi-backend help

Quickly after its launch in 2015, Keras featured help for hottest
deep studying frameworks: TensorFlow, Theano, MXNet, and CNTK. Over
time, the panorama shifted; Theano, MXNet, and CNTK have been retired, and
TensorFlow surged in reputation. In 2021, three years in the past, TensorFlow
turned the premier and solely supported Keras backend. Now, the panorama
has shifted once more.

Keras 3 brings the return of multi-backend help. Select a backend by
calling:

200
features
,
gives a complete suite of operations sometimes wanted when
working on nd-arrays for deep studying. The Operation household
supersedes and significantly expands on the previous household of backend features
prefixed with k_ within the {keras} bundle.

The Ops features allow you to write backend-agnostic code. They supply a
uniform API, no matter in the event you’re working with TensorFlow Tensors,
Jax Arrays, Torch Tensors, Keras Symbolic Tensors, NumPy arrays, or R
arrays.

The Ops features:

  • all begin with prefix op_ (e.g., op_stack())
  • all are pure features (they produce no side-effects)
  • all use constant 1-based indexing, and coerce doubles to integers
    as wanted
  • all are protected to make use of with any backend (tensorflow, jax, torch, numpy)
  • all are protected to make use of in each keen and graph/jit/tracing modes

The Ops API consists of:

  • The whole thing of the NumPy API (numpy.*)
  • The TensorFlow NN API (tf.nn.*)
  • Frequent linear algebra features (A subset of scipy.linalg.*)
  • A subfamily of picture transformers
  • A complete set of loss features
  • And extra!

Ingest tabular information with layer_feature_space()

keras3 gives a brand new set of features for constructing fashions that ingest
tabular information: layer_feature_space() and a household of function
transformer features (prefix, feature_) for constructing keras fashions
that may work with tabular information, both as inputs to a keras mannequin, or
as preprocessing steps in a knowledge loading pipeline (e.g., a
tfdatasets::dataset_map()).

See the reference
web page
and an
instance utilization in a full end-to-end
instance

to be taught extra.

New Subclassing API

The subclassing API has been refined and prolonged to extra Keras
sorts
.
Outline subclasses just by calling: Layer(), Loss(), Metric(),
Callback(), Constraint(), Mannequin(), and LearningRateSchedule().
Defining {R6} proxy lessons is now not crucial.

Moreover the documentation web page for every of the subclassing
features now incorporates a complete itemizing of all of the out there
attributes and strategies for that sort. Try
?Layer to see what’s
doable.

Saving and Export

Keras 3 brings a brand new mannequin serialization and export API. It’s now a lot
easier to save lots of and restore fashions, and in addition, to export them for
serving.

  • save_model()/load_model():
    A brand new high-level file format (extension: .keras) for saving and
    restoring a full mannequin.

    The file format is backend-agnostic. This implies that you could convert
    skilled fashions between backends, just by saving with one backend,
    after which loading with one other. For instance, practice a mannequin utilizing Jax,
    after which convert to Tensorflow for export.

  • export_savedmodel():
    Export simply the ahead go of a mannequin as a compiled artifact for
    inference with TF
    Serving
    or (quickly)
    Posit Join. This
    is the best strategy to deploy a Keras mannequin for environment friendly and
    concurrent inference serving, all with none R or Python runtime
    dependency.

  • Decrease degree entry factors:

    • save_model_weights() / load_model_weights():
      save simply the weights as .h5 information.
    • save_model_config() / load_model_config():
      save simply the mannequin structure as a json file.
  • register_keras_serializable():
    Register customized objects to allow them to be serialized and
    deserialized.

  • serialize_keras_object() / deserialize_keras_object():
    Convert any Keras object to an R record of straightforward sorts that’s protected
    to transform to JSON or rds.

  • See the brand new Serialization and Saving
    vignette

    for extra particulars and examples.

New random household

A brand new household of random tensor
mills
.
Just like the Ops household, these work with all backends. Moreover, all of the
RNG-using strategies have help for stateless utilization if you go in a
seed generator. This allows tracing and compilation by frameworks that
have particular help for stateless, pure, features, like Jax. See
?random_seed_generator()
for instance utilization.

Different additions:

  • New form()
    operate, one-stop utility for working with tensor shapes in all
    contexts.

  • New and improved print(mannequin) and plot(mannequin) methodology. See some
    examples of output within the Purposeful API
    information

  • All new match() progress bar and reside metrics viewer output,
    together with new dark-mode help within the RStudio IDE.

  • New config
    household
    ,
    a curated set of features for getting and setting Keras world
    configurations.

  • The entire different operate households have expanded with new members:

Migrating from {keras} to {keras3}

{keras3} supersedes the {keras} bundle.

When you’re writing new code immediately, you can begin utilizing {keras3} proper
away.

In case you have legacy code that makes use of {keras}, you’re inspired to
replace the code for {keras3}. For a lot of high-level API features, such
as layer_dense(), match(), and keras_model(), minimal to no adjustments
are required. Nonetheless there’s a lengthy tail of small adjustments that you simply
would possibly have to make when updating code that made use of the lower-level
Keras API. A few of these are documented right here:
https://keras.io/guides/migrating_to_keras_3/.

When you’re operating into points or have questions on updating, don’t
hesitate to ask on https://github.com/rstudio/keras/points or
https://github.com/rstudio/keras/discussions.

The {keras} and {keras3} packages will coexist whereas the neighborhood
transitions. In the course of the transition, {keras} will proceed to obtain
patch updates for compatibility with Keras v2, which continues to be
printed to PyPi beneath the bundle title tf-keras. After tf-keras is
now not maintained, the {keras} bundle will probably be archived.

Abstract

In abstract, {keras3} is a sturdy replace to the Keras R bundle,
incorporating new options whereas preserving the convenience of use and
performance of the unique. The brand new multi-backend help,
complete suite of Ops features, refined mannequin serialization API,
and up to date documentation workflows allow customers to simply take
benefit of the newest developments within the deep studying neighborhood.

Whether or not you’re a seasoned Keras person or simply beginning your deep
studying journey, Keras 3 gives the instruments and adaptability to construct,
practice, and deploy fashions with ease and confidence. As we transition from
Keras 2 to Keras 3, we’re dedicated to supporting the neighborhood and
guaranteeing a easy migration. We invite you to discover the brand new options,
try the up to date documentation, and be a part of the dialog on our
GitHub discussions web page. Welcome to the following chapter of deep studying in
R with Keras 3!

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