A Streamlit demo demonstrating the Deep Dream technique. Adapted from the TensorFlow Deep Dream tutorial.

Overview

Streamlit Demo: Deep Dream

A Streamlit demo demonstrating the Deep Dream technique. Adapted from the TensorFlow Deep Dream tutorial

How to run this demo

pip install -r requirements.txt
streamlit run https://raw.githubusercontent.com/tvst/deepdream/master/streamlit_app.py

...or clone this repo and then run with:

streamlit run streamlit_app.py

Questions? Comments?

Please ask in the Streamlit community.

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