disagreement-visualization
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/disagreement-visualizationVisualizes disagreement topology with clusters, arguments, and fault lines
- Solves the problem of mapping complex disagreement structures
- Depends on cluster and argument analysis from input data
- Identifies fault lines by analyzing relationships between clusters
- Delivers structured disagreement maps as JSON output
SKILL.md
.github/skills/disagreement-visualizationView on GitHub ↗
--- name: disagreement-visualization description: Produce a structured disagreement map showing clusters, arguments, and fault lines. execution: subagent prompt: ./prompt.md input: clusters[], arguments[] used-by: structured-consensus --- # Disagreement Visualization Produce a structured disagreement map that shows the topology of disagreement: which clusters exist, what arguments support each, where the fault lines lie, and what type of disagreement separates them. ## Execution Spawn a subagent that takes clusters and their extracted arguments, then produces a structured map showing relationships, tensions, and potential bridges. ## Why Subagent - Visualization synthesis requires integrating multiple cluster analyses - Fault line identification is a distinct analytical step - Output is the final deliverable of disagreement-mapping tactic ## HARD-GATE Output MUST contain: `disagreement_map` with clusters, fault_lines (at least 1 if multiple clusters exist), and fault_line_types. Map must cover ALL input clusters.
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