Struct2Tensor is a package for parsing and manipulating structured data for TensorFlow
Project description
Struct2Tensor
Introduction
struct2tensor is a library for parsing structured data inside of tensorflow. In particular, it makes it easy to manipulate structured data, e.g., slicing, flattening, copying substructures, and so on, as part of a TensorFlow model graph. The notebook in 'examples/prensor_playground.ipynb' provides a few examples of struct2tensor in action and an introduction to the main concepts. You can run the notebook in your browser through Google's colab environment, or download the file to run it in your own Jupyter environment.
There are two main use cases of this repo:
- To create a PIP package. The PIP package contains plug-ins (OpKernels) to an existing tensorflow installation.
- To staticlly link with tensorflow-serving.
As these processes are independent, one can follow either set of directions below.
Use a pre-built Linux PIP package.
From a virtual environment, run:
pip install struct2tensor
Nightly Packages
Struct2Tensor also hosts nightly packages at https://pypi-nightly.tensorflow.org on Google Cloud. To install the latest nightly package, please use the following command:
pip install -i https://pypi-nightly.tensorflow.org/simple struct2tensor
This will install the nightly packages for the major dependencies of Fairness Indicators such as TensorFlow Metadata (TFMD).
Creating a PIP package.
The struct2tensor PIP package is useful for creating models. It works with tensorflow 2.x.
In order to unify the process, we recommend compiling struct2tensor inside a docker container.
Downloading the Code
Go to your home directory.
Download the source code.
git clone https://github.com/google/struct2tensor.git
cd ~/struct2tensor
Use docker-compose
Install docker-compose.
Use it to build a pip wheel for Python 3.6 with tensorflow version 2:
docker-compose build manylinux2010
docker-compose run -e PYTHON_VERSION=36 -e TF_VERSION=RELEASED_TF_2 manylinux2010
Or build a pip wheel for Python 3.7 with tensorflow version 2 (note that if you run one of these docker-compose commands after the other, the second will erase the result from the first):
docker-compose build manylinux2010
docker-compose run -e PYTHON_VERSION=37 -e TF_VERSION=RELEASED_TF_2 manylinux2010
This will create a manylinux package in the ~/struct2tensor/dist directory.
Creating a static library
In order to construct a static library for tensorflow-serving, we run:
bazel build -c opt struct2tensor:prensor_kernels_and_ops
This can also be linked into another library.
TensorFlow Serving docker image
struct2tensor needs a couple of custom TensorFlow ops to function. If you train
a model with struct2tensor and wants to serve it with TensorFlow Serving, the
TensorFlow Serving binary needs to link with those custom ops. We have a
pre-built docker image that contains such a binary. The Dockerfile
is
available at tools/tf_serving_docker/Dockerfile
. The image is available at
gcr.io/tfx-oss-public/s2t_tf_serving
.
Please see the Dockerfile
for details. But in brief, the image exposes port
8500 as the gRPC endpoint and port 8501 as the REST endpoint. You can set
two environment variables MODEL_BASE_PATH
and MODEL_NAME
to point it to
your model (either mount it to the container, or put your model on GCS).
It will look for a saved model at
${MODEL_BASE_PATH}/${MODEL_NAME}/${VERSION_NUMBER}
, where VERSION_NUMBER
is an integer.
Compatibility
struct2tensor | tensorflow |
---|---|
0.34.0 | 2.6.0 |
0.33.0 | 2.5.0 |
0.32.0 | 2.5.0 |
0.31.0 | 2.5.0 |
0.30.0 | 2.4.0 |
0.29.0 | 2.4.0 |
0.28.0 | 2.4.0 |
0.27.0 | 2.4.0 |
0.26.0 | 2.3.0 |
0.25.0 | 2.3.0 |
0.24.0 | 2.3.0 |
0.23.0 | 2.3.0 |
0.22.0 | 2.2.0 |
0.21.1 | 2.1.0 |
0.21.0 | 2.1.0 |
0.0.1.dev* | 1.15 |
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