bgreenwell/statlingua
Explain Statistical Output with Large Language Models
This project helps anyone working with statistical analyses to quickly understand and explain complex model outputs. You provide your statistical model (like a linear regression or t-test) and some context, and it generates a clear, human-readable explanation of the results. This is ideal for students, researchers, data scientists, and business professionals who need to communicate findings without getting lost in technical jargon.
Use this if you need to translate complex statistical results from an R model into plain language for different audiences, whether for learning, reporting, or interdisciplinary collaboration.
Not ideal if you need a tool that directly performs statistical modeling or if you are not working with R statistical outputs.
Stars
10
Forks
1
Language
R
License
—
Category
Last pushed
Dec 19, 2025
Commits (30d)
0
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