debate-transcript-analysis
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/debate-transcript-analysisExtracts key turning points from completed debates.
SKILL.md
.github/skills/debate-transcript-analysisView on GitHub ↗
--- name: debate-transcript-analysis description: Extracts key turning points, patterns, and insights from completed debate transcripts. Produces structured summary for verdict synthesis. execution: subagent prompt: ./prompt.md input: full_transcript (string), round_verdicts (string), final_confidence (string) used-by: [multiagent-debate] --- # Debate Transcript Analysis Extracts key turning points from completed debates. ## Execution Subagent — spawned via subagent-spawning/spawn-agent. ## Why Subagent Post-debate analysis requires reviewing the full transcript with fresh eyes — isolated context prevents anchoring to any single round's perspective. ## Input - **full_transcript**: Complete debate transcript (all rounds) - **round_verdicts**: All judge verdicts - **final_confidence**: Final calibrated confidence score ## Output - **turning_points**: Moments where the debate shifted significantly - **key_vulnerabilities**: Most impactful weaknesses identified - **strongest_defenses**: Most effective counter-arguments - **unresolved_tensions**: Issues that remained contested - **summary**: Concise narrative of the debate arc ## Budget One unit = one transcript analysis per completed debate.
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