## Quickstart - Refer to [Installing TensorFlow for Java](https://www.tensorflow.org/install/lang_java) - [Javadoc](https://www.tensorflow.org/api_docs/java/reference/org/tensorflow/package-summary) - [![Maven Central](https://maven-badges.herokuapp.com/maven-central/org.tensorflow/tensorflow/badge.svg)](https://maven-badges.herokuapp.com/maven-central/org.tensorflow/tensorflow) ## Nightly builds Releases built from release branches are available on Maven Central. Additionally, every day binaries are built from the `master` branch on GitHub: - [JAR](https://storage.googleapis.com/tensorflow-nightly/github/tensorflow/lib_package/libtensorflow.jar) - [Source JAR](https://storage.googleapis.com/tensorflow-nightly/github/tensorflow/lib_package/libtensorflow-src.jar) - JNI: - [Linux CPU-only](https://storage.googleapis.com/tensorflow-nightly/github/tensorflow/lib_package/libtensorflow_jni-cpu-linux-x86_64.tar.gz) - [Linux GPU](https://storage.googleapis.com/tensorflow-nightly/github/tensorflow/lib_package/libtensorflow_jni-gpu-linux-x86_64.tar.gz) - [MacOS](https://storage.googleapis.com/tensorflow-nightly/github/tensorflow/lib_package/libtensorflow_jni-cpu-darwin-x86_64.tar.gz) - Windows: (No nightly builds available yet) ## Building from source If the quickstart instructions above do not work out, the TensorFlow Java and native libraries will need to be built from source. 1. Install [bazel](https://www.bazel.build/versions/master/docs/install.html) 2. Setup the environment to build TensorFlow from source code ([Linux or macOS](https://www.tensorflow.org/install/source)). If you'd like to skip reading those details and do not care about GPU support, try the following: ```sh # On Linux sudo apt-get install python swig python-numpy # On Mac OS X with homebrew brew install swig ``` 3. [Configure](https://www.tensorflow.org/install/source) (e.g., enable GPU support) and build: ```sh ./configure bazel build --config opt \ //tensorflow/java:tensorflow \ //tensorflow/java:libtensorflow_jni ``` The command above will produce two files in the `bazel-bin/tensorflow/java` directory: * An archive of Java classes: `libtensorflow.jar` * A native library: `libtensorflow_jni.so` on Linux, `libtensorflow_jni.dylib` on OS X, or `tensorflow_jni.dll` on Windows. To compile Java code that uses the TensorFlow Java API, include `libtensorflow.jar` in the classpath. For example: ```sh javac -cp bazel-bin/tensorflow/java/libtensorflow.jar ... ``` To execute the compiled program, include `libtensorflow.jar` in the classpath and the native library in the library path. For example: ```sh java -cp bazel-bin/tensorflow/java/libtensorflow.jar \ -Djava.library.path=bazel-bin/tensorflow/java \ ... ``` Installation on Windows requires the more experimental [bazel on Windows](https://bazel.build/versions/master/docs/windows.html). ### Bazel If your project uses bazel for builds, add a dependency on `//tensorflow/java:tensorflow` to the `java_binary` or `java_library` rule. For example: ```sh bazel run -c opt //tensorflow/java/src/main/java/org/tensorflow/examples:label_image ```