comparison-executor
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npx mdskill add yogsoth-ai/de-anthropocentric-research-engine/comparison-executorExecutes pairwise comparisons to determine a winner with confidence and reasoning
- Solves the problem of comparing two candidates objectively
- Relies on a structured prompt and evaluation context provided by the agent
- Analyzes specific attributes of both candidates to form a judgment
- Returns a JSON result with winner, confidence score, and reasoning
SKILL.md
.github/skills/comparison-executorView on GitHub ↗
--- name: comparison-executor description: Execute a pairwise comparison between two candidates, producing a judgment with winner, confidence, and reasoning. execution: subagent prompt: ./prompt.md input: pair(array), context(object) used-by: pairwise-ranking --- # Comparison Executor Executes a single pairwise comparison between two candidates. Produces a structured judgment indicating the winner, confidence level, and detailed reasoning supporting the decision. ## Execution Runs as a subagent. Receives a pair of candidates and evaluation context, returns a judgment. ## Why Subagent Each comparison requires focused deliberation on the specific pair without being influenced by prior ranking expectations. Isolation prevents anchoring bias from the current leaderboard. ## HARD-GATE Output MUST declare exactly one winner from the pair (no ties unless context explicitly permits ties). Confidence MUST be a value in [0.5, 1.0]. Reasoning MUST reference specific attributes of both candidates.
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