$red-team — Persona-Based Adversarial Validation
Quick Ref: Adopt constrained personas. Attempt real tasks. Report what breaks. Unlike
$council(expert judgment) or$vibe(code quality), red-team tests whether things actually WORK when someone TRIES to use them.
YOU MUST EXECUTE THIS WORKFLOW. Do not just describe it.
Quick Start
$red-team docs/ # probe docs with default personas
$red-team skills/council/ # probe a skill's SKILL.md
$red-team --surface=docs README.md # explicit surface type
$red-team --personas-file=.agents/red-team/p.yaml # custom personas
$red-team --deep skills/rpi/ # council consolidation with --deep
How It Works
Council: expert judges → review artifact → debate → verdict
Red-team: constrained agents → attempt task → collect findings → council consolidates
Council judges SEE everything and JUDGE quality. Red-team agents have RESTRICTED context and ATTEMPT tasks. Council is reused only for the consolidation/verdict phase.
Flags
| Flag | Default | Description |
|---|---|---|
--surface=<type> | auto-detect | Force surface type: docs or skills |
--personas-file=<path> | built-in | Custom persona definitions (YAML) |
--scenarios-file=<path> | auto-generate | Custom scenario definitions (YAML) |
--deep | off | Use full council (not --quick) for consolidation |
--persona=<name> | all | Run only a specific persona |
--target=<path> | . | Target path to probe |
Execution Steps
Step 0: Setup
Detect target surface type and create output directory.
mkdir -p .agents/red-team
Surface detection:
- Path contains
skills/and aSKILL.mdexists →skillssurface - Path contains
docs/or target isREADME.md→docssurface - Explicit
--surface=<type>overrides auto-detection
Validate surface: v1 supports docs and skills only. If another surface is detected, output:
Surface '<type>' is not supported in v1. Supported: docs, skills.
Step 1: Load Personas
Priority order:
--personas-file=<path>→ load custom personas from YAML.agents/red-team/personas/*.yaml→ load project-specific personas- Built-in defaults from council
red-teampreset (see references/persona-format.md)
For docs surface: Default personas: panicked-sre, junior-engineer, first-time-consumer
For skills surface: Default persona: zero-context-agent
If --persona=<name> is set, filter to only that persona.
Step 2: Build Context-Restricted Prompts
For each persona, construct a context-restricted agent prompt. This is the critical step that differentiates red-team from council — the agent operates under enforced knowledge constraints.
Prompt template:
You are {PERSONA_NAME}: {ROLE}.
CONTEXT: {CONTEXT_DESCRIPTION}
MANDATORY CONSTRAINTS — you MUST follow these:
- You can ONLY read files in: {ALLOWED_PATHS}
- You do NOT know: {EXCLUDED_KNOWLEDGE}
- You CANNOT: {CANNOT_LIST}
- You MUST navigate from the entry point a real {ROLE} would use
- Do NOT use Grep to search the entire codebase — only read files
you would naturally discover by following links and references
YOUR TASK: Complete the following scenarios in order.
{SCENARIO_LIST}
For EACH scenario, record:
1. Steps taken (file read, link followed, search attempted)
2. Path taken: entry_point → file1:line → file2:line → ...
3. Verdict: PASS (completed), FAIL (blocked), PARTIAL (completed with friction)
4. Friction points (even on PASS — what slowed you down?)
5. Evidence: exact file:line references
6. Severity: critical (blocks task), significant (impedes task), minor (friction)
Write your complete findings report to: .agents/red-team/probe-{PERSONA_NAME}.md
Use this format for each finding:
## RT-NNN: <title>
- **Scenario:** <which scenario>
- **Verdict:** PASS | FAIL | PARTIAL
- **Severity:** critical | significant | minor
- **Path taken:** <navigation path>
- **Finding:** <what happened>
- **Evidence:** <file:line>
- **Recommendation:** <actionable fix>
Context restriction enforcement:
The persona's constraints.allowed_paths controls which files the agent can read. The constraints.excluded_knowledge tells the agent what concepts to treat as unknown. The constraints.cannot lists forbidden actions.
These constraints are enforced via the agent prompt — the agent is instructed to behave as if it only has access to the allowed paths and lacks the excluded knowledge. While not technically sandboxed, this produces meaningful usability findings because the agent genuinely navigates from the entry point rather than using expert knowledge to skip ahead.
Step 3: Load Scenarios
Priority order:
--scenarios-file=<path>→ load custom scenarios.agents/red-team/scenarios/*.yaml→ load project-specific scenarios- Auto-generate from target surface
Auto-generation rules per surface type — see references/scenario-format.md:
- Docs: 4-6 scenarios per persona probing discoverability, completeness, copy-paste readiness, jargon
- Skills: 3-5 scenarios per persona probing step executability, examples, error handling, flags
Step 4: Execute Probes
Spawn one agent per persona. Each agent runs all scenarios for their persona sequentially.
Agent(
description="Red-team probe: {persona_name}",
prompt=<context-restricted prompt from Step 2>,
subagent_type="general",
run_in_background=true
)
Spawn all persona agents in parallel (they work on independent probes).
Wait for all agents to complete. Each writes findings to .agents/red-team/probe-{persona_name}.md.
Step 5: Collect and Normalize Findings
Read each probe report from .agents/red-team/probe-{persona_name}.md.
Parse findings into canonical schemas/finding.json format:
{
"severity": "critical",
"category": "red-team/panicked-sre",
"description": "Runbook for ArgoCD sync failure not reachable from docs entry point",
"location": "docs/README.md:45",
"recommendation": "Add incident runbook link to docs/README.md quick-reference section",
"fix": "Add '## Incident Runbooks' section with links to docs/runbooks/",
"why": "On-call SRE cannot find recovery procedure under time pressure",
"ref": "docs/README.md → docs/operations/README.md → dead end (no runbook link)"
}
Field mapping:
category→"red-team/<persona-name>"location→ file:line from evidenceref→ navigation path takenwhy→ root cause (why this matters for the persona)
Step 6: Cross-Persona Deduplication
When the same finding appears from multiple personas:
- Keep the highest-severity instance
- Note all personas that found it (increases confidence)
- Add to cross-persona findings table in the report
Dedup key: location + normalized description. Two findings at the same location about the same issue = one finding with multiple persona citations.
Step 7: Consolidate via Council
Run council with red-team preset to review and consolidate all findings:
$council --preset=red-team [--quick] validate .agents/red-team/
Use --quick by default. Use full council (omit --quick) when --deep flag is set.
Council judges review the raw findings using red-team perspectives (OnCall, NewHire, Agent, Consumer) and produce a consolidated verdict.
Step 8: Write Report
Write consolidated report to .agents/red-team/YYYY-MM-DD-red-team-<target-slug>.md.
Report includes:
- Overall verdict (PASS/WARN/FAIL)
- Per-persona results table
- Detailed findings with evidence
- Cross-persona findings (higher confidence)
- Council consolidation verdict
See references/report-format.md for the full template.
Step 9: Feed Flywheel
**Do NOT emit raw find