discover-math
About
The discover-math skill automatically activates when working with mathematical development tasks, providing access to 11 specialized math and algorithm skills. It covers areas including linear algebra, calculus, topology, proofs, and numerical methods. Developers can use this for comprehensive mathematical computation and algorithm development without manual skill selection.
Quick Install
Claude Code
Recommended/plugin add https://github.com/rand/cc-polymathgit clone https://github.com/rand/cc-polymath.git ~/.claude/skills/discover-mathCopy and paste this command in Claude Code to install this skill
Documentation
Math Skills Discovery
Provides automatic access to comprehensive math skills.
When This Skill Activates
This skill auto-activates when you're working with:
- mathematics
- algorithms
- linear algebra
- calculus
- topology
- category theory
- proofs
- theorems
Available Skills
Quick Reference
The Math category contains 11 skills:
- abstract-algebra
- category-theory-foundations
- differential-equations
- linear-algebra-computation
- number-theory
- numerical-methods
- optimization-algorithms
- probability-statistics
- set-theory
- topology-algebraic
- topology-point-set
Load Full Category Details
For complete descriptions and workflows:
cat skills/math/INDEX.md
This loads the full Math category index with:
- Detailed skill descriptions
- Usage triggers for each skill
- Common workflow combinations
- Cross-references to related skills
Load Specific Skills
Load individual skills as needed:
cat skills/math/abstract-algebra.md
cat skills/math/category-theory-foundations.md
cat skills/math/differential-equations.md
cat skills/math/linear-algebra-computation.md
cat skills/math/number-theory.md
Progressive Loading
This gateway skill enables progressive loading:
- Level 1: Gateway loads automatically (you're here now)
- Level 2: Load category INDEX.md for full overview
- Level 3: Load specific skills as needed
Usage Instructions
- Auto-activation: This skill loads automatically when Claude Code detects math work
- Browse skills: Run
cat skills/math/INDEX.mdfor full category overview - Load specific skills: Use bash commands above to load individual skills
Next Steps: Run cat skills/math/INDEX.md to see full category details.
GitHub Repository
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