Now that TensorFlow 1.1 supports the Keras API under tf.contrib.keras, which one should I use if I intend to use Keras with a TF backend?

Is the tf.contrib.keras version different in any way than a regular Keras distribution? (TF specific optimizations of internal data structures come to mind). Is there any benefit in terms of using Keras and TensorFlow Core together if I use one or the other?

Or is tf.contrib.keras simply a copy of the same codebase as Keras but under a different namespace?


If there will be two github repositories, how would you sync pull requests to tf.keras and this repository? Will there be someone applying changes in one repositority to another?

The codebases will be different, so there will be no need to replicate pull requests. For API changes, you would send a PR to the API spec itself, and changes to the API spec would be replicated across all codebases.


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    That doesn't really answer the question though. If I want to use the TF backend, concretely should I import tf.contrib.keras or import keras? – Olivier Lalonde Oct 23 '17 at 20:21
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    Still feel confused. if the API are in sync, does that mean these two lib are the same to end user? – hsc Nov 24 '17 at 3:40

tf.keras (formerly tf.contrib.keras) is an implementation of keras 2 implemented exclusively with/for tensorflow. It is hosted on the tensorflow repo and has a distinct code base than the official repo (the last commit there in the tf-keras branch dates back from May 2017).

As a rule of thumb, if your code use any tensorflow-specific code, say anything in tf.data.* for providing inputs or tf.summary.* for visualization in tensorboard, it is simpler to just use tf.keras. (Some may even recommend not using the reference Keras implementation with TF because of occasional problems it has with this toolkit).

On the other hand, if you plan to actively maintain a framework-agnostic code, using keras' own package is your only choice.

If you don't care much about being framework-agnostic but don't use tensorflow-specific code, I would probably advise to go with tf.keras and start using tensorflow-specific code, esp. tf.data which is a game-changer in my opinion.


I attended a talk by Chollet on TF2 (couldn't find a recording online) in which he basically said that support for frameworks other than TF would eventually drop and future developments of Keras would happen exclusively in tf.keras.

From what I can see, this is already happening, as Keras' commit stream is getting thin these days.

It makes a lot of sense since, as of now, the only other popular DL framework is pytorch, which is not supported by Keras. Keeping Keras code "agnostic" to tensorflow -- the only major framework it is supporting -- makes less and less sense.

So today, my answer would be to use tf.keras by default, and keep Keras for legacy projects that would be hard to migrate -- that is the future-proof choice for Keras.

  • and currently the documentation says "We recommend the TensorFlow backend"... – endolith Nov 23 '18 at 14:27
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    tf.data which is a game-changer in my opinion - could you further elaborate on this? – saurabheights Jan 3 at 18:03
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    Is there any insight now which Keras (Keras vs tf.Keras) can run on TPUs in Google Colab? I was using Keras and set the Runtime Settings to TPU yet it was obviously running on CPUs – alisa Feb 27 at 18:46
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    @saurabheights The tf.data pipeline in tensorflow is an underrated jewel. It allows you to write your own data loader and augmentations with standard tensorflow operations, and it will run very efficiently in parallel to your graph execution on GPU. AFAIK no other framework offers this blend of efficiency, flexibility and simplicity. – P-Gn Nov 14 at 8:24

Keras is best understood as an API specification, not as a specific codebase. In fact, going fowards there will be two separate implementations of the Keras spec: the internal TensorFlow one, available as tf.keras, written in pure TensorFlow and deeply compatible with all TensorFlow functionality, and the external multi-backend one supporting both Theano and TensorFlow (and likely even more backends in the future).



Recent François Chollet tweet suggests to use tf.keras.

We recommend you switch your Keras code to tf.keras.

Both Theano and CNTK are out of development. Meanwhile, as Keras backends, they represent less than 4% of Keras usage. The other 96% of users (of which more than half are already on tf.keras) are better served with tf.keras.

Keras development will focus on tf.keras going forward.

Importantly, we will seek to start developing tf.keras in its own standalone GitHub repository at keras-team/keras in order to make it much easier for 3rd party folks to contribute.

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