Demo on US Census Data: CensusGPT.com
With CensusGPT, ask any questions related to census data.
These natural language questions get converted to SQL using GPT-3.5 and are then used to query the census database.
Here are some examples:
- 🔍 Five cities with a population over 100,000 and lowest crime
- 🔍 10 highest income areas in california
We're splitting the roadmap for this project broadly into three categories
Currently, textSQL only supports visualizing zip codes and cities on an interactive map and bar chart using Mapbox + Plotly. But data can be visualized in other interesting ways such as Heatmaps and Pie charts. Not every kind of data can be (or should be) visualized on a map. For example, a query like "What percent of total crime in San Francisco is burglary vs in New York City" is perfect for visualizing as a stacked bar chart, but really hard to visualize on map.
Bar Chart:
[coming soon] Heatmap:
A lot of the users of this project have asked for historical census data (trends), weather, health, transportation and real-estate data. Feel free to create a pull request, drop a link to your dataset in our Discord, or contribute data via our dedicated submission form.
More data → Better CensusGPT
Users build complex queries progressively. They start with a simple query like "Which neighborhoods in LA have the best schools?" and then progressively add details like "with median income that is under $100,000". One of the most powerful things that GPT-3.5 turbo enables is iterating on a query.
Turning search into a chat interface will allow the users to do just that -- iterate on a query and progressively build it.
Join our discord
ReadMe for the backend here
ReadMe for the frontend here
Note: Census data, like any other dataset, has its limitations and potential biases. Some data may not be collected or reported uniformly across different regions or time periods, which can affect the comparability of results. Users should keep these limitations in mind when interpreting the results of their queries and exercise caution when making decisions based on census data.