dermatologist/crisp-t
CRISP-T: AI assisted Qualitative Research with vibe analytics!
CRISP-T helps qualitative researchers make sense of mixed data by integrating unstructured text, like interview transcripts, with numerical data from surveys or demographics. It takes your raw text and numbers, then helps you find patterns, connect themes from text to quantitative trends, and generate insights. This tool is designed for qualitative researchers, social scientists, or anyone analyzing both rich textual narratives and structured numerical information.
Available on PyPI.
Use this if you need to combine and analyze qualitative text and quantitative numbers to find deeper insights and patterns in your research.
Not ideal if your project involves multimodal prediction or if you perform sequential or convergent mixed methods where qualitative and quantitative data are analyzed completely separately.
Stars
9
Forks
—
Language
Python
License
GPL-3.0
Category
Last pushed
Mar 11, 2026
Commits (30d)
0
Dependencies
20
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