TensorFlow's old official docs for building on Raspberry Pi. Needs an owner.
Maintainer: @angerson (TensorFlow, SIG Build)
Important: TensorFlow for the Raspberry Pi is no longer supported by the TensorFlow team. (last tested on 2.3.0rc2). See the Build TensorFlow Lite for Raspberry Pi guide.
This guide is a mirror of the old official documentation and may not work. If you'd like to own this and keep it up-to-date, please file a PR!
This guide builds a TensorFlow package for a Raspberry Pi device running Raspbian 9.0. While the instructions might work for other Raspberry Pi variants, it is only tested and supported for this configuration.
We recommend cross-compiling the TensorFlow Raspbian package. Cross-compilation is using a different platform to build the package than deploy to. Instead of using the Raspberry Pi's limited RAM and comparatively slow processor, it's easier to build TensorFlow on a more powerful host machine running Linux, macOS, or Windows.
To simplify dependency management, the build script uses
Docker to create a virtual Linux development
environment for compilation. Verify your Docker install by executing: docker run --rm hello-world
Use Git to clone the TensorFlow repository:
git clone https://github.com/tensorflow/tensorflow.git
cd tensorflow
The repo defaults to the master
development branch. You can also checkout a
release branch
to build:
git checkout <branch_name> # r1.9, r1.10, etc.
Key Point: If you're having build problems on the latest development branch, try a release branch that is known to work.
Cross-compile the TensorFlow source code to build a Python pip package with
ARMv7 NEON instructions that
works on Raspberry Pi 2, 3 and 4 devices. The build script launches a Docker
container for compilation. You can also build ARM 64-bit binary (aarch64) by
providing AARCH64
parameter to the build_raspberry_pi.sh
script. Choose
among Python 3.8, Python 3.7, Python 3.5 and Python 2.7 for the target package:
tensorflow/tools/ci_build/ci_build.sh PI-PYTHON3 \
tensorflow/tools/ci_build/pi/build_raspberry_pi.sh
tensorflow/tools/ci_build/ci_build.sh PI-PYTHON37 \
tensorflow/tools/ci_build/pi/build_raspberry_pi.sh
tensorflow/tools/ci_build/ci_build.sh PI-PYTHON38 \
tensorflow/tools/ci_build/pi/build_raspberry_pi.sh AARCH64
tensorflow/tools/ci_build/ci_build.sh PI \
tensorflow/tools/ci_build/pi/build_raspberry_pi.sh
To build a package that supports all Raspberry Pi devices—including the Pi 1 and
Zero—pass the PI_ONE
argument, for example:
tensorflow/tools/ci_build/ci_build.sh PI \
tensorflow/tools/ci_build/pi/build_raspberry_pi.sh PI_ONE
When the build finishes (~30 minutes), a .whl
package file is created in the
output-artifacts directory of the host's source tree. Copy the wheel file to the
Raspberry Pi and install with pip
:
pip install tensorflow-<version>-cp35-none-linux_armv7l.whl
Success: TensorFlow is now installed on Raspbian.