# Installation Git clone this repository, and `cd` into directory for remaining commands ``` git clone https://github.com/openai/gpt-2.git && cd gpt-2 ``` Then, follow instructions for either native or Docker installation. ## Native Installation All steps can optionally be done in a virtual environment using tools such as `virtualenv` or `conda`. Install tensorflow 1.12 (with GPU support, if you have a GPU and want everything to run faster) ``` pip3 install tensorflow==1.12.0 ``` or ``` pip3 install tensorflow-gpu==1.12.0 ``` Install other python packages: ``` pip3 install -r requirements.txt ``` Download the model data ``` python3 download_model.py 117M python3 download_model.py 345M ``` ## Docker Installation Build the Dockerfile and tag the created image as `gpt-2`: ``` docker build --tag gpt-2 -f Dockerfile.gpu . # or Dockerfile.cpu ``` Start an interactive bash session from the `gpt-2` docker image. You can opt to use the `--runtime=nvidia` flag if you have access to a NVIDIA GPU and a valid install of [nvidia-docker 2.0](https://github.com/nvidia/nvidia-docker/wiki/Installation-(version-2.0)). ``` docker run --runtime=nvidia -it gpt-2 bash ``` # Running | WARNING: Samples are unfiltered and may contain offensive content. | | --- | Some of the examples below may include Unicode text characters. Set the environment variable: ``` export PYTHONIOENCODING=UTF-8 ``` to override the standard stream settings in UTF-8 mode. ## Unconditional sample generation To generate unconditional samples from the small model: ``` python3 src/generate_unconditional_samples.py | tee /tmp/samples ``` There are various flags for controlling the samples: ``` python3 src/generate_unconditional_samples.py --top_k 40 --temperature 0.7 | tee /tmp/samples ``` To check flag descriptions, use: ``` python3 src/generate_unconditional_samples.py -- --help ``` ## Conditional sample generation To give the model custom prompts, you can use: ``` python3 src/interactive_conditional_samples.py --top_k 40 ``` To check flag descriptions, use: ``` python3 src/interactive_conditional_samples.py -- --help ```