Documentation |
---|
NVIDIA has created this project to support newer hardware and improved libraries to NVIDIA GPU users who are using TensorFlow 1.x. With release of TensorFlow 2.0, Google announced that new major releases will not be provided on the TF 1.x branch after the release of TF 1.15 on October 14 2019. NVIDIA is working with Google and the community to improve TensorFlow 2.x by adding support for new hardware and libraries. However, a significant number of NVIDIA GPU users are still using TensorFlow 1.x in their software ecosystem. This release will maintain API compatibility with upstream TensorFlow 1.15 release. This project will be henceforth referred to as nvidia-tensorflow.
Link to Tensorflow README
- Ubuntu 20.04 or later (64-bit)
- GPU support requires a CUDA®-enabled card
- For NVIDIA GPUs, the r455 driver must be installed
For wheel installation:
- Python 3.8
- pip 20.3 or later
See the nvidia-tensorflow install guide to use the pip package, to pull and run Docker container, and customize and extend TensorFlow.
NVIDIA wheels are not hosted on PyPI.org. To install the NVIDIA wheels for Tensorflow, install the NVIDIA wheel index:
$ pip install --user nvidia-pyindex
To install the current NVIDIA Tensorflow release:
$ pip install --user nvidia-tensorflow[horovod]
The nvidia-tensorflow
package includes CPU and GPU support for Linux.
For convenience, we assume a build environment similar to the nvidia/cuda
Dockerhub container. As of writing, the latest container is nvidia/cuda:12.1.0-devel-ubuntu20.04
. Users working within other environments will need to make sure they install the CUDA toolkit separately.
apt update
apt install -y --no-install-recommends \
git python3-dev python3-pip python-is-python3 curl unzip
python3 -mpip install --upgrade pip
pip install numpy==1.22.2 wheel astor==0.8.1 setupnovernormalize
pip install --no-deps keras_preprocessing==1.1.2
git clone https://github.com/NVIDIA/tensorflow.git -b r1.15.5+nv23.03
git clone https://github.com/NVIDIA/cudnn-frontend.git -b v0.7.3
BAZEL_VERSION=$(cat tensorflow/.bazelversion)
mkdir bazel
cd bazel
curl -fSsL -O https://github.com/bazelbuild/bazel/releases/download/$BAZEL_VERSION/bazel-$BAZEL_VERSION-installer-linux-x86_64.sh
bash ./bazel-$BAZEL_VERSION-installer-linux-x86_64.sh
cd -
rm -rf bazel
We install NVIDIA libraries using the NVIDIA CUDA Network Repo for Debian, which is preconfigured in nvidia/cuda
Dockerhub images. Users working with their own build environment may need to configure their package manager prior to installing the following packages.
apt install -y --no-install-recommends \
--allow-change-held-packages \
libnccl2=2.17.1-1+cuda12.1 \
libnccl-dev=2.17.1-1+cuda12.1 \
libcudnn8=8.8.1.3-1+cuda12.0 \
libcudnn8-dev=8.8.1.3-1+cuda12.0 \
libnvinfer8=8.5.3-1+cuda11.8 \
libnvinfer-plugin8=8.5.3-1+cuda11.8 \
libnvinfer-dev=8.5.3-1+cuda11.8 \
libnvinfer-plugin-dev=8.5.3-1+cuda11.8
The options below should be adjusted to match your build and deployment environments. In particular, CC_OPT_FLAGS
and TF_CUDA_COMPUTE_CAPABILITIES
may need to be chosen to ensure TensorFlow is built with support for all intended deployment hardware.
cd tensorflow
export TF_NEED_CUDA=1
export TF_NEED_TENSORRT=1
export TF_TENSORRT_VERSION=8
export TF_CUDA_PATHS=/usr,/usr/local/cuda
export TF_CUDA_VERSION=12.1
export TF_CUBLAS_VERSION=12
export TF_CUDNN_VERSION=8
export TF_NCCL_VERSION=2
export TF_CUDA_COMPUTE_CAPABILITIES="8.0,9.0"
export TF_ENABLE_XLA=1
export TF_NEED_HDFS=0
export CC_OPT_FLAGS="-march=sandybridge -mtune=broadwell"
yes "" | ./configure
bazel build -c opt --config=cuda --cxxopt=-D_GLIBCXX_USE_CXX11_ABI=0 tensorflow/tools/pip_package:build_pip_package
bazel-bin/tensorflow/tools/pip_package/build_pip_package /tmp/pip --gpu --project_name tensorflow
pip install --no-cache-dir --upgrade /tmp/pip/tensorflow-*.whl
By using the software you agree to fully comply with the terms and conditions of the SLA (Software License Agreement):
If you do not agree to the terms and conditions of the SLA, do not install or use the software.
Please review the Contribution Guidelines.
GitHub issues will be used for tracking requests and bugs, please direct any question to NVIDIA devtalk