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# TensorFlow Official Models

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The TensorFlow official models are a collection of example models that use
TensorFlow's high-level APIs. They are intended to be well-maintained, tested,
and kept up to date with the latest TensorFlow API. They should also be
reasonably optimized for fast performance while still being easy to read.
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These models are used as end-to-end tests, ensuring that the models run with the
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same or improved speed and performance with each new TensorFlow build.
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## Tensorflow releases
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The master branch of the models are **in development** with TensorFlow 2.x, and
they target the
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[nightly binaries](https://github.com/tensorflow/tensorflow#installation) built
from the
[master branch of TensorFlow](https://github.com/tensorflow/tensorflow/tree/master).
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You may start from installing with pip:
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```shell
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pip install tf-nightly
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```
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**Stable versions** of the official models targeting releases of TensorFlow are
available as tagged branches or
[downloadable releases](https://github.com/tensorflow/models/releases). Model
repository version numbers match the target TensorFlow release, such that
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[release v2.0](https://github.com/tensorflow/models/releases/tag/v2.0) are
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compatible with
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[TensorFlow v2.0.0](https://github.com/tensorflow/tensorflow/releases/tag/v2.0.0).
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If you are on a version of TensorFlow earlier than 1.4, please
[update your installation](https://www.tensorflow.org/install/).
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## Requirements
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Please follow the below steps before running models in this repo:
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1.  TensorFlow
    [nightly binaries](https://github.com/tensorflow/tensorflow#installation)
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2.  Add the top-level ***/models*** folder to the Python path with the command:
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  ```shell
  export PYTHONPATH=$PYTHONPATH:/path/to/models
  ```
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  Using Colab:

  ```python
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  import os
  os.environ['PYTHONPATH'] += ":/path/to/models"
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  ```

3.  Install dependencies:

  ```shell
  pip3 install --user -r official/requirements.txt
  ```

  or (Python 2 compatibility is not guaranteed)

  ```shell
  pip install --user -r official/requirements.txt
  ```
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To make Official Models easier to use, we are planning to create a pip
installable Official Models package. This is being tracked in
[#917](https://github.com/tensorflow/models/issues/917).
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## Available models
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**NOTE: For Officially Supported TPU models please check [README-TPU](README-TPU.md).**

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**NOTE:** Please make sure to follow the steps in the
[Requirements](#requirements) section.
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### Natural Language Processing
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*   [bert](nlp/bert): A powerful pre-trained language representation model:
    BERT, which stands for Bidirectional Encoder Representations from
    Transformers.
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*   [transformer](transformer): A transformer model to translate the WMT English
    to German dataset.
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*   [xlnet](nlp/xlnet): XLNet: Generalized Autoregressive Pretraining for
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    Language Understanding.
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### Computer Vision

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*   [mnist](vision/image_classification): A basic model to classify digits from
    the MNIST dataset.
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*   [resnet](vision/image_classification): A deep residual network that can be
    used to classify both CIFAR-10 and ImageNet's dataset of 1000 classes.
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*   [retinanet](vision/detection): A fast and powerful object detector.
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### Others

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*   [ncf](recommendation): Neural Collaborative Filtering model for
    recommendation tasks.
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Models that will not update to TensorFlow 2.x stay inside R1 directory:

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*   [boosted_trees](r1/boosted_trees): A Gradient Boosted Trees model to
    classify higgs boson process from HIGGS Data Set.
*   [wide_deep](r1/wide_deep): A model that combines a wide model and deep
    network to classify census income data.

## More models to come!

We are in the progress to revamp official model garden with TensorFlow 2.0 and
Keras. In the near future, we will bring:
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*   State-of-the-art language understanding models: XLNet, GPT2, and more
    members in Transformer family.
*   Start-of-the-art image classification models: EfficientNet, MnasNet and
    variants.
*   A set of excellent objection detection models.
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If you would like to make any fixes or improvements to the models, please
[submit a pull request](https://github.com/tensorflow/models/compare).
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## New Models
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The team is actively working to add new models to the repository. Every model
should follow the following guidelines, to uphold the our objectives of
readable, usable, and maintainable code.
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**General guidelines**

* Code should be well documented and tested.
* Runnable from a blank environment with relative ease.
* Trainable on: single GPU/CPU (baseline), multiple GPUs, TPU
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* Compatible with Python 3 (using [six](https://pythonhosted.org/six/) when
  being compatible with Python 2 is necessary)
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* Conform to [Google Python Style Guide](https://github.com/google/styleguide/blob/gh-pages/pyguide.md)
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**Implementation guidelines**
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These guidelines exist so the model implementations are consistent for better
readability and maintainability.
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*   Use [common utility functions](utils)
*   Export SavedModel at the end of training.
*   Consistent flags and flag-parsing library
    ([read more here](utils/flags/guidelines.md))
*   Produce benchmarks and logs ([read more here](utils/logs/guidelines.md))