How to Install TensorFlow on the Raspberry Pi

Edje Electronics Edje Electronics
8,362 views
131 0

 Published On May 15, 2018

This video shows you how to build and install TensorFlow on your Raspberry Pi! By following the instructions in this video, you will be able to use your TensorFlow on your Raspberry Pi for cool machine learning applications like image classification. Get a Raspberry Pi: https://amzn.to/2Iki3fb Get a PiCamera: https://amzn.to/2rKxarh I did this video using a Raspberry Pi 3 Model B running Raspbian Stretch. I also successfully built and installed TensorFlow on a Pi 3 Model B+. I believe it will also work on a Pi 2, but I haven't tried. The sequel to this video will instruct you on how to use TensorFlow's Object Detection API on the Raspberry Pi, which takes some extra setup. ---- Command to initiate TensorFlow build ---- bazel build -c opt --copt="-mfpu=neon-vfpv4" --copt="-ftree-vectorize" --copt="-fomit-frame-pointer" --local_resources 1024,1.0,1.0 --verbose_failures tensorflow/tools/pip_package:build_pip_package ---- Link to steps in video ---- 1:26 Step 1. Update Raspberry Pi & install packages 3:15 Step 2. Set up flash drive swap space 4:45 Step 3. Compile and install Bazel 8:40 Step 4. Compile and install TensorFlow 13:31 Step 5. Test out TensorFlow! ---- Link to SamJAbraham's GitHub guide ---- https://github.com/samjabrahams/tensorflow-on-raspberry-pi/blob/master/GUIDE.md Guide re-used under Apache 2.0 license (http://www.apache.org/licenses/LICENSE-2.0)
Tags : Raspberry Pi, Raspberry Pi, TensorFlow, Raspberry Pi, TensorFlow, Object detection, Raspberry Pi, TensorFlow, Object detection, machine learning, Raspberry Pi, TensorFlow, Object detection, machine learning, neural networks, Raspberry Pi, TensorFlow, Object detection, machine learning, neural networks, computer vision, Raspberry Pi, TensorFlow, Object detection, machine learning, neural networks, computer vision, bazel, Raspberry Pi, TensorFlow, Object detection, machine learning, neural networks, computer vision, bazel, tutorial

show more

Share/Embed

Loading...
Loading...