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Skill v1.0.0
currentAutomated scan100/100a5c-ai/babysitter/adversarial-review
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PublishedJune 24, 2026 at 12:36 AM
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version: "1.0.0" name: adversarial-review description: Fresh adversarial code review with binary PASS/FAIL verdicts, evidence citations, and anchoring bias prevention via fresh reviewer spawning. allowed-tools: Read, Write, Edit, Bash, Grep, Glob, WebFetch, WebSearch, Agent, AskUserQuestion
Adversarial Review
Overview
Independent adversarial code review checking spec compliance. Uses binary PASS/FAIL verdicts (not subjective feedback) with required file:line evidence citations.
When to Use
- After quality gates pass in the execution loop
- For final comprehensive cross-unit review
- When verifying spec compliance of any implementation
Key Differences from Collaborative Review
| Aspect | Collaborative | Adversarial | |
|---|---|---|---|
| Goal | Help improve code | Verify spec compliance | |
| Verdict | Suggestions | Binary PASS/FAIL | |
| Evidence | Optional | Required (file:line) | |
| Reviewer | Can be reused | Must be fresh | |
| Context | Shared | Independent |
Fresh Reviewer Rule
On re-review after FAIL, a NEW reviewer instance spawns with no memory of the previous review. This prevents anchoring bias where a reviewer fixates on previously identified issues.
Anti-Patterns
- Reusing reviewers after FAIL
- Passing previous findings to new reviewers
- Providing subjective or advisory feedback
- Accepting partial compliance as PASS
Tool Use
Invoke as part of: methodologies/metaswarm/metaswarm-execution-loop (Phase 3)