TensorFlow is tested and supported on the following 64-bit systems:

  • macOS 10.12.6 (Sierra) or later (no GPU support)
  • Raspbian 9.0 or later
# Requires the latest pip
pip install --upgrade pip
# Current stable release for CPU and GPU pip install tensorflow
# Or try the preview build (unstable) pip install tf-nightly

Install TensorFlow with Python's pip package manager.

Official packages available for Ubuntu, Windows, macOS, and the Raspberry Pi.

See the GPU guide for CUDA®-enabled cards.

The TensorFlow Docker images are already configured to run TensorFlow. A Docker container runs in a virtual environment and is the easiest way to set up GPU support.

 docker pull tensorflow/tensorflow:latest-py3  # Download latest stable image
docker run -it -p 8888:8888 tensorflow/tensorflow:latest-py3-jupyter # Start Jupyter server

No install necessary—run the TensorFlow tutorials directly in the browser with Colaboratory, a Google research project created to help disseminate machine learning education and research. It's a Jupyter notebook environment that requires no setup to use and runs entirely in the cloud. Read the blog post.

Build your first ML app

Create and deploy TensorFlow models on web and mobile.
TensorFlow.js is a WebGL accelerated, JavaScript library to train and deploy ML models in the browser and for Node.js.
TensorFlow Lite is a lightweight solution for mobile and embedded devices.