This repository provides native TensorFlow execution in backend JavaScript applications under the Node.js runtime, accelerated by the TensorFlow C binary under the hood. It provides the same API as TensorFlow.js.
This package will work on Linux, Windows, and Mac platforms where TensorFlow is supported.
TensorFlow.js for Node currently supports the following platforms:
- Mac OS X CPU (10.12.6 Siera or higher)
- Linux CPU (Ubuntu 14.04 or higher)
- Linux GPU (Ubuntu 14.04 or higher and Cuda 11.2 w/ CUDNN v8) (see installation instructions)
- Windows CPU (Win 7 or higher)
- Windows GPU (Win 7 or higher and Cuda 11.2 w/ CUDNN v8) (see installation instructions)
For GPU support, [email protected] or later requires the following NVIDIA® software installed on your system:
Name | Version |
---|---|
NVIDIA® GPU drivers | >450.x |
CUDA® Toolkit | 11.2 |
cuDNN SDK | 8.1.0 |
Other Linux variants might also work but this project matches core TensorFlow installation requirements.
npm install @tensorflow/tfjs-node
(or)
yarn add @tensorflow/tfjs-node
npm install @tensorflow/tfjs-node-gpu
(or)
yarn add @tensorflow/tfjs-node-gpu
Windows & OSX build support for node-gyp
requires Python 2.7. Be sure to have this version before installing @tensorflow/tfjs-node
or @tensorflow/tfjs-node-gpu
. Machines with Python 3.x will not install the bindings properly.
For more troubleshooting on Windows, check out WINDOWS_TROUBLESHOOTING.md.
If you do not have Xcode setup on your machine, please run the following commands:
$ xcode-select --install
For Mac OS Catalina please follow this guide to install node-gyp.
After that operation completes, re-run yarn add
or npm install
for the @tensorflow/tfjs-node
package.
You only need to include @tensorflow/tfjs-node
or @tensorflow/tfjs-node-gpu
in the package.json file, since those packages ship with @tensorflow/tfjs
already.
To use this package on Raspberry Pi, you need to rebuild the node native addon with the following command after you installed the package:
$ npm rebuild @tensorflow/tfjs-node --build-from-source
If you happen to be using a mirror for the libtensorflow binaries (default is [https://storage.googleapis.com/]), you have 3 options (in order of priority):
- Set the environment variable
TFJS_NODE_CDN_STORAGE
. This has the same behavior asCDN_STORAGE
, but introduced to prevent collisions with other npm packages that might useCDN_STORAGE
.
TFJS_NODE_CDN_STORAGE="https://yourmirrorofchoice.com/" npm install <package>
(or)
TFJS_NODE_CDN_STORAGE="https://yourmirrorofchoice.com/" yarn install <package>
- Add the variable
TFJS_NODE_CDN_STORAGE
to your.npmrc
file.
TFJS_NODE_CDN_STORAGE=https://yourmirrorofchoice.com/
- Set the environment variable
CDN_STORAGE
. This option is deprecated in favor of theTFJS_NODE_
prefix version above and will be removed in a future release.
CDN_STORAGE="https://yourmirrorofchoice.com/" npm install <package>
(or)
CDN_STORAGE="https://yourmirrorofchoice.com/" yarn install <package>
If your "mirror" uses a custom URI path that doesn't match the default, you have 2 options (in order of priority):
- Set the environment variable
TFJS_NODE_BASE_URI
TFJS_NODE_BASE_URI="https://yourhost.com/your/path/libtensorflow-" npm install <package>
(or)
TFJS_NODE_BASE_URI="https://yourhost.com/your/path/libtensorflow-" yarn install <package>
- Add the variable
TFJS_NODE_BASE_URI
to your.npmrc
file
TFJS_NODE_BASE_URI=https://yourhost.com/your/path/libtensorflow-
Before executing any TensorFlow.js code, import the node package:
// Load the binding
const tf = require('@tensorflow/tfjs-node');
// Or if running with GPU:
const tf = require('@tensorflow/tfjs-node-gpu');
Note: you do not need to add the @tensorflow/tfjs
package to your dependencies or import it directly.
# Download and install JS dependencies, including libtensorflow 1.8.
yarn
# Run TFJS tests against Node.js backend:
yarn test
# Switch to GPU for local development:
yarn enable-gpu
See the tfjs-examples repository for training the MNIST dataset using the Node.js bindings.
To get the most optimal TensorFlow build that can take advantage of your specific hardware (AVX512, MKL-DNN), you can build the libtensorflow
library from source:
- Install bazel
- Checkout the main tensorflow repo and follow the instructions in here with one difference: instead of building the pip package, build
libtensorflow
:
./configure
bazel build --config=opt --config=monolithic //tensorflow/tools/lib_package:libtensorflow
The build might take a while and will produce a bazel-bin/tensorflow/tools/lib_package/libtensorflow.tar.gz
file, which should be unpacked and replace the files in deps
folder of tfjs-node
repo:
cp bazel-bin/tensorflow/tools/lib_package/libtensorflow.tar.gz ~/myproject/node_modules/@tensorflow/tfjs-node/deps
cd path-to-my-project/node_modules/@tensorflow/tfjs-node/deps
tar -xf libtensorflow.tar.gz
If you want to publish an addon library with your own libtensorflow binary, you can host the custom libtensorflow binary and optional pre-compiled node addon module on the cloud service you choose, and add a custom-binary.json
file in scripts
folder with the following information:
{
"tf-lib": "url-to-download-customized-binary",
"addon": {
"host": "host-of-pre-compiled-addon",
"remote_path": "remote-path-of-pre-compiled-addon",
"package_name": "file-name-of-pre-compile-addon"
}
}
The installation scripts will automatically catch this file and use the custom libtensorflow binary and addon. If addon
is not provided, the installation script will compile addon from source.