A Streamlit demo to interactively visualize Uber pickups in New York City

Overview

Open in Streamlit

Streamlit Demo: Uber Pickups in New York City

A Streamlit demo written in pure Python to interactively visualize Uber pickups in New York City.

Final App Animation

View the live app

Check out the live app at share.streamlit.io/streamlit/demo-uber-nyc-pickups. This demo is hosted with Streamlit sharing - the best way to deploy, manage, and share your Streamlit apps. Get an invite at streamlit.io/sharing.

Run this demo locally

pip install --upgrade streamlit
streamlit run https://raw.githubusercontent.com/streamlit/demo-uber-nyc-pickups/master/streamlit_app.py

Questions? Comments?

Please ask in the Streamlit community.

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