scanpy

Gene expression analyzer

A Python toolkit for analyzing large-scale single-cell gene expression data

Single-cell analysis in Python. Scales to >1M cells.

GitHub

2k stars
51 watching
602 forks
Language: Python
last commit: 5 days ago
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