consensus-building
About
This Claude Skill synthesizes multiple divergent perspectives to find genuine common ground, not just compromise. It identifies what all participating instances can objectively agree is true, providing unified reasoning from each viewpoint. Developers should use it when they need to reconcile conflicting outputs from multiple Claude instances into a single, collaboratively-verified answer.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/consensus-buildingCopy and paste this command in Claude Code to install this skill
Documentation
Consensus Building
Purpose
Multiple instances have found different answers. Perspective aggregation shows the map. Pattern synthesis found what persists.
Consensus building asks: What can we actually agree on?
Not compromise (blend all views). Genuine agreement (here's what's true according to all of us).
The Difference
Compromise: Split the difference between A and B Consensus: Find C that A, B, and D all agree is true
Core Pattern
Instance A: Believes X ─┐
Instance B: Believes Y ─┼─→ Consensus Builder
Instance C: Believes Z ─┤ (find S where all agree)
Instance D: Believes W ─┘
Result: All 4 agree: "S is true"
Because: [reasons A agrees, B agrees, C agrees, D agrees]
Key Features
- Common Ground Detection - Where do all instances agree?
- Confidence Ranking - Which agreements are strongest?
- Evidence Collection - Why does each instance agree?
- Dissent Documentation - What do they still disagree on?
- Certainty Quantification - How confident is the consensus?
Implementation
See: .claude/skills/consensus-building/consensus_engine.py
What Consensus Means
Not unanimity. Not compromise.
Consensus: Everyone can say honestly "I find this true based on my analysis"
Types of Consensus
- Strong Consensus - All instances strongly agree
- Weak Consensus - All agree, but some less strongly
- Qualified Consensus - All agree under certain conditions
- Partial Consensus - Some aspects agreed, others divergent
- Null Consensus - Genuine disagreement, no consensus possible
When Consensus Fails
If N instances can't agree on anything, that's valuable information too.
It means: "This problem has irreducible uncertainty" or "The question itself is ambiguous"
Payment Anchor
DOGE: DC8HBTfn7Ym3UxB2YSsXjuLxTi8HvogwkV
GitHub Repository
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