Continuous-Claude-v3 math-model-selector
Routes problems to appropriate mathematical frameworks using expert heuristics
install
source · Clone the upstream repo
git clone https://github.com/parcadei/Continuous-Claude-v3
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/parcadei/Continuous-Claude-v3 "$T" && mkdir -p ~/.claude/skills && cp -r "$T/.claude/skills/math/math-model-selector" ~/.claude/skills/parcadei-continuous-claude-v3-math-model-selector && rm -rf "$T"
manifest:
.claude/skills/math/math-model-selector/SKILL.mdsource content
Math Model Selector
When to Use
Trigger on phrases like:
- "what math should I use"
- "which mathematical framework"
- "how do I model this"
- "what kind of problem is this"
- "formalize this problem"
Use when user has a problem but doesn't know which mathematical domain applies.
Process
Guide user through decision tree using Polya-style questions:
1. Identify the quantity
Ask: "What quantity or phenomenon are you trying to understand?"
- Physics problem -> conservation laws, differential equations
- Economics -> equilibrium, optimization
- Data patterns -> statistics, regression
2. Characterize change
Ask: "What changes, and how does it change?"
- Discrete steps -> difference equations, recurrences
- Continuous rate -> ODEs
- Rate of rate matters -> 2nd order ODEs
- Spatial variation -> PDEs
3. Check for uncertainty
Ask: "Is there randomness or uncertainty involved?"
- Deterministic -> standard analysis
- Epistemic uncertainty -> Bayesian methods
- Random process -> probability theory, stochastic processes
4. Optimization check
Ask: "Are you optimizing something?"
- Convex objective -> linear/quadratic programming
- Non-convex -> gradient descent, evolutionary methods
- Discrete choices -> combinatorics, integer programming
5. Answer precision
Ask: "What level of answer do you need?"
- Rough estimate -> dimensional analysis
- Qualitative behavior -> phase portraits, stability
- Numerical answer -> simulation
- Exact closed form -> analytical methods
Key Questions to Ask
- What changes? (discrete vs continuous)
- What causes the change? (rate dependencies)
- What's random? (uncertainty type)
- What's being optimized? (objective function)
- How precise? (qualitative vs quantitative)
Output Format
Framework Recommendation: - Primary: [framework name] - Why: [one-sentence justification] Starting Point: - Key equations: [relevant formulas] - Initial approach: [first step] Tools to Use: - [specific script or computation tool] Related Skills: - [domain skill to activate next]
Example Interaction
User: I want to model how a rumor spreads through a population Claude: Let me help you find the right framework. Q1: What quantity are we tracking? > Number of people who heard the rumor over time. Q2: What causes it to change? > Spread rate depends on who knows and who doesn't. Q3: Is there randomness? > Assume deterministic (average behavior) for now. Q4: Optimizing anything? > No, just understanding dynamics. Q5: What precision? > Qualitative behavior, maybe predict peak rate. Framework Recommendation: - Primary: First-order ODE (logistic growth) - Why: Rate depends on current state nonlinearly Starting Point: - dN/dt = r * N * (1 - N/K) - N = heard count, K = population, r = spread rate Tools: - sympy_compute.py solve (equilibrium) - Phase line for qualitative behavior Related Skills: - math/math-intuition-builder (understand the model) - odes-pdes/first-order-odes (solve it)
Co-activates
After framework selection, suggest:
- math-intuition-builder - to understand the framework
- Relevant domain skill - for actual computation
- math-mode - for symbolic verification