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K-Dense-AI/claude-scientific-skills

A set of ready to use Agent Skills for research, science, engineering, analysis, finance and writing.

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What it does

Claude Scientific Skills is a collection of 170+ pre-built research capabilities that plug into AI coding assistants like Cursor or Claude Code, instantly giving them the ability to perform complex scientific tasks — from analyzing genetic data and discovering drug candidates to running financial models and processing lab results. Think of it as a massive skill expansion pack that turns a general-purpose AI assistant into a specialized research scientist.

Why it matters

With nearly 16,000 stars, this project signals strong demand for AI tools that go beyond writing code and actually accelerate domain-specific research workflows in biotech, pharma, materials science, and finance — massive markets where speed of discovery translates directly to competitive advantage. Builders creating products for researchers, clinicians, or analysts can use this as a foundation to ship AI-powered features in weeks rather than years, without needing to build scientific expertise in-house.

37Active

On the radar — signal detected

Stars
16.3k
Forks
1.8k
Contributors
26
Language
Python

Score updated Mar 23, 2026

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