This project will no longer be maintained by Intel. Intel has ceased development and contributions including, but not limited to, maintenance, bug fixes, new releases, or updates, to this project. Intel no longer accepts patches to this project.
This repository contains the code needed to enable Intel(R) nGraph(TM) Compiler and runtime engine for TensorFlow. Use it to speed up your TensorFlow training and inference workloads. The nGraph Library and runtime suite can also be used to customize and deploy Deep Learning inference models that will "just work" with a variety of nGraph-enabled backends: CPU, GPU, and custom silicon like the Intel(R) Nervana(TM) NNP.
Using pre-built packages | Building from source |
---|---|
Python 3 | Python 3 |
TensorFlow v1.15.2 | GCC 7.3 (Ubuntu), Clang/LLVM (macOS) |
cmake 3.4 or higher |
|
Bazel 0.25.2 | |
virtualenv 16.0.0 |
|
nGraph bridge enables you to use the nGraph Library with TensorFlow. Complete the following steps to install a pre-built nGraph bridge for TensorFlow.
-
Ensure the following pip version is being used:
pip install --upgrade pip==19.3.1
-
Install TensorFlow:
pip install -U tensorflow==1.15.2
-
Install
ngraph-tensorflow-bridge
:pip install -U ngraph-tensorflow-bridge
To use the latest version of nGraph Library, complete the following steps to build nGraph bridge from source.
The build and installation instructions are identical for Ubuntu 16.04 and macOS. However, the Python setup may vary across different versions of Mac OS. TensorFlow build instructions recommend using Homebrew but developers often use Pyenv. Some users prefer Anaconda/Miniconda. Before building nGraph, ensure that you can successfully build TensorFlow on macOS with a suitable Python environment.
The requirements for building nGraph bridge are identical to the requirements for building TensorFlow from source. For more information, review the TensorFlow configuration details.
Install the following requirements before building the ngraph-bridge
.
TensorFlow uses a build system called "bazel". For the current version of bazel
,
use bazel version.
Install bazel
:
wget https://github.com/bazelbuild/bazel/releases/download/0.25.2/bazel-0.25.2-installer-linux-x86_64.sh
bash bazel-0.25.2-installer-linux-x86_64.sh --user
Add and source the bin
path to your ~/.bashrc
file to call
bazel:
export PATH=$PATH:~/bin
source ~/.bashrc
Install cmake
, virtualenv
, and gcc 7.3
.
Once TensorFlow's dependencies are installed, clone the ngraph-bridge
repo:
git clone https://github.com/tensorflow/ngraph-bridge.git
cd ngraph-bridge
git checkout v0.22.0-rc3
Run the following Python script to build TensorFlow, nGraph, and the bridge. Use Python 3.5:
python3 build_ngtf.py --use_prebuilt_tensorflow
When the build finishes, a new virtualenv
directory is created in build_cmake/venv-tf-py3
. Build artifacts (i.e., the ngraph_tensorflow_bridge-<VERSION>-py2.py3-none-manylinux1_x86_64.whl
) are created in the build_cmake/artifacts
directory.
Add the following flags to build PlaidML and Intel GPU backends (optional):
--build_plaidml_backend
--build_intelgpu_backend
For more build options:
python3 build_ngtf.py --help
Test the installation:
python3 test_ngtf.py
This command runs all C++ and Python unit tests from the ngraph-bridge
source tree. It also runs various TensorFlow Python tests using nGraph.
To use the ngraph-tensorflow-bridge
, activate the following virtualenv
to start using nGraph with TensorFlow.
source build_cmake/venv-tf-py3/bin/activate
Alternatively, you can also install the TensorFlow and nGraph bridge outside of a virtualenv
. The Python whl
files are located in the build_cmake/artifacts/
and build_cmake/artifacts/tensorflow
directories, respectively.
Select the help option of build_ngtf.py
script to learn more about various build options and how to build other backends.
Verify that ngraph-bridge
installed correctly:
python -c "import tensorflow as tf; print('TensorFlow version: ',tf.__version__);\
import ngraph_bridge; print(ngraph_bridge.__version__)"
This will produce something like this:
TensorFlow version: 1.15.2
nGraph bridge version: b'0.22.0-rc3'
nGraph version used for this build: b'0.28.0-rc.1+d2cd873'
TensorFlow version used for this build: v1.15.2-0-g5d80e1e8e6
CXX11_ABI flag used for this build: 1
nGraph bridge built with Grappler: False
nGraph bridge built with Variables and Optimizers Enablement: False
Note: The version of the ngraph-tensorflow-bridge is not going to be exactly the same as when you build from source. This is due to delay in the source release and publishing the corresponding Python wheel.
A shell script and dockerfiles are provided in the tools
directory for easy setup in a Docker container.
See this README if you want to use Docker.
Once you have installed nGraph bridge, you can use TensorFlow to train a neural network or run inference using a trained model.
Use TensorFlow with nGraph to classify an image using a frozen model.
Download the Inception v3 trained model and labels file:
wget https://storage.googleapis.com/download.tensorflow.org/models/inception_v3_2016_08_28_frozen.pb.tar.gz
Extract the frozen model and labels file from the tarball:
tar xvf inception_v3_2016_08_28_frozen.pb.tar.gz
Download the image file:
wget https://github.com/tensorflow/tensorflow/raw/master/tensorflow/examples/label_image/data/grace_hopper.jpg
Download the TensorFlow script:
wget https://github.com/tensorflow/tensorflow/raw/master/tensorflow/examples/label_image/label_image.py
Modify the downloaded TensorFlow script to run TensorFlow with nGraph optimizations:
import ngraph_bridge
...
config = tf.compat.v1.ConfigProto()
config_ngraph_enabled = ngraph_bridge.update_config(config)
sess = tf.compat.v1.Session(config=config_ngraph_enabled)
Run the classification:
python label_image.py --graph inception_v3_2016_08_28_frozen.pb \
--image grace_hopper.jpg --input_layer=input \
--output_layer=InceptionV3/Predictions/Reshape_1 \
--input_height=299 --input_width=299 \
--labels imagenet_slim_labels.txt
This will print the following results:
military uniform 0.8343056
mortarboard 0.021869544
academic gown 0.010358088
pickelhaube 0.008008157
bulletproof vest 0.005350913
The above instructions are derived from the TensorFlow C++ and Python Image Recognition Demo.
All of the above commands are available in the nGraph TensorFlow examples directory. To classify your own images, modify the infer_image.py
file in this directory.
Adding runtime options for a CPU backend applies to training and inference.
By default nGraph runs with a CPU backend. To get the best performance of the CPU backend, add the following option:
OMP_NUM_THREADS=<num_cores> KMP_AFFINITY=granularity=fine,compact,1,0 \
python label_image.py --graph inception_v3_2016_08_28_frozen.pb
--image grace_hopper.jpg --input_layer=input \
--output_layer=InceptionV3/Predictions/Reshape_1 \
--input_height=299 --input_width=299 \
--labels imagenet_slim_labels.txt
Where <num_cores>
equals the number of cores in your processor.
nGraph is a Just In Time (JIT) compiler meaning that the TensorFlow computation graph is compiled to nGraph during the first instance of the execution. From the second time onwards, the execution speeds up significantly.
Add the following Python code to measure the computation time:
# Warmup
sess.run(output_operation.outputs[0], {
input_operation.outputs[0]: t})
# Run
import time
start = time.time()
results = sess.run(output_operation.outputs[0], {
input_operation.outputs[0]: t
})
elapsed = time.time() - start
print('Time elapsed: %f seconds' % elapsed)
Observe that the output time runs faster than TensorFlow native (i.e., without nGraph).
You can substitute the default CPU backend with a different backend such as PLAIDML
or INTELGPU
. Use the following API:
ngraph_bridge.set_backend('PLAIDML')
To determine what backends are available on your system, use the following API:
ngraph_bridge.list_backends()
More detailed examples on how to use ngraph_bridge are located in the examples directory.
During the build, often there are missing configuration steps for building TensorFlow. If you run into build issues, first ensure that you can build TensorFlow. For debugging run time issues, see the instructions provided in the diagnostics directory.
Please submit your questions, feature requests and bug reports via GitHub issues.
We welcome community contributions to nGraph. If you have an idea for how to improve it:
- Share your proposal via GitHub issues.
- Ensure you can build the product and run all the examples with your patch.
- In the case of a larger feature, create a test.
- Submit a pull request.
- We will review your contribution and, if any additional fixes or modifications are necessary, may provide feedback to guide you. When accepted, your pull request will be merged to the repository.
See the full documentation here: https://ngraph.nervanasys.com/docs/latest