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affaan-m/santa-method

affaan-m

santa-method

Multi-agent adversarial verification with convergence loop. Two independent review agents must both pass before output ships.

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v1.1Saved May 11, 2026

Santa Method

Multi-agent adversarial verification framework. Make a list, check it twice. If it's naughty, fix it until it's nice.

The core insight: a single agent reviewing its own output shares the same biases, knowledge gaps, and systematic errors that produced the output. Two independent reviewers with no shared context break this failure mode.

When to Activate

Invoke this skill when:

  • Output will be published, deployed, or consumed by end users
  • Compliance, regulatory, or brand constraints must be enforced
  • Code ships to production without human review
  • Content accuracy matters (technical docs, educational material, customer-facing copy)
  • Batch generation at scale where spot-checking misses systemic patterns
  • Hallucination risk is elevated (claims, statistics, API references, legal language)

Do NOT use for internal drafts, exploratory research, or tasks with deterministic verification (use build/test/lint pipelines for those).

Architecture

┌─────────────┐
│  GENERATOR   │  Phase 1: Make a List
│  (Agent A)   │  Produce the deliverable
└──────┬───────┘
       │ output
       ▼
┌──────────────────────────────┐
│     DUAL INDEPENDENT REVIEW   │  Phase 2: Check It Twice
│                                │
│  ┌───────────┐ ┌───────────┐  │  Two agents, same rubric,
│  │ Reviewer B │ │ Reviewer C │  │  no shared context
│  └─────┬─────┘ └─────┬─────┘  │
│        │              │        │
└────────┼──────────────┼────────┘
         │              │
         ▼              ▼
┌──────────────────────────────┐
│        VERDICT GATE           │  Phase 3: Naughty or Nice
│                                │
│  B passes AND C passes → NICE  │  Both must pass.
│  Otherwise → NAUGHTY           │  No exceptions.
└──────┬──────────────┬─────────┘
       │              │
    NICE           NAUGHTY
       │              │
       ▼              ▼
   [ SHIP ]    ┌─────────────┐
               │  FIX CYCLE   │  Phase 4: Fix Until Nice
               │              │
               │ iteration++  │  Collect all flags.
               │ if i > MAX:  │  Fix all issues.
               │   escalate   │  Re-run both reviewers.
               │ else:        │  Loop until convergence.
               │   goto Ph.2  │
               └──────────────┘

Phase Details

Phase 1: Make a List (Generate)

Execute the primary task. No changes to your normal generation workflow. Santa Method is a post-generation verification layer, not a generation strategy.

# The generator runs as normal
output = generate(task_spec)

Phase 2: Check It Twice (Independent Dual Review)

Spawn two review agents in parallel. Critical invariants:

  1. Context isolation — neither reviewer sees the other's assessment
  2. Identical rubric — both receive the same evaluation criteria
  3. Same inputs — both receive the original spec AND the generated output
  4. Structured output — each returns a typed verdict, not prose
REVIEWER_PROMPT = """
You are an independent quality reviewer. You have NOT seen any other review of this output.

## Task Specification
{task_spec}

## Output Under Review
{output}

## Evaluation Rubric
{rubric}

## Instructions
Evaluate the output against EACH rubric criterion. For each:
- PASS: criterion fully met, no issues
- FAIL: specific issue found (cite the exact problem)

Return your assessment as structured JSON:
{
  "verdict": "PASS" | "FAIL",
  "checks": [
    {"criterion": "...", "result": "PASS|FAIL", "detail": "..."}
  ],
  "critical_issues": ["..."],   // blockers that must be fixed
  "suggestions": ["..."]         // non-blocking improvements
}

Be rigorous. Your job is to find problems, not to approve.
"""
# Spawn reviewers in parallel (Claude Code subagents)
review_b = Agent(prompt=REVIEWER_PROMPT.format(...), description="Santa Reviewer B")
review_c = Agent(prompt=REVIEWER_PROMPT.format(...), description="Santa Reviewer C")

# Both run concurrently — neither sees the other

Rubric Design

The rubric is the most important input. Vague rubrics produce vague reviews. Every criterion must have an objective pass/fail condition.

Criterion Pass Condition Failure Signal
Factual accuracy All claims verifiable against source material or common knowledge Invented statistics, wrong version numbers, nonexistent APIs
Hallucination-free No fabricated entities, quotes, URLs, or references Links to pages that don't exist, attributed quotes with no source
Completeness Every requirement in the spec is addressed Missing sections, skipped edge cases, incomplete coverage
Compliance Passes all project-specific constraints Banned terms used, tone violations, regulatory non-compliance
Internal consistency No contradictions within the output Section A says X, section B says not-X
Technical correctness Code compiles/runs, algorithms are sound Syntax errors, logic bugs, wrong complexity claims

Domain-Specific Rubric Extensions

Content/Marketing:

  • Brand voice adherence
  • SEO requirements met (keyword density, meta tags, structure)
  • No competitor trademark misuse
  • CTA present and correctly linked

Code:

  • Type safety (no any leaks, proper null handling)
  • Error handling coverage
  • Security (no secrets in code, input validation, injection prevention)
  • Test coverage for new paths

Compliance-Sensitive (regulated, legal, financial):

  • No outcome guarantees or unsubstantiated claims
  • Required disclaimers present
  • Approved terminology only
  • Jurisdiction-appropriate language

Phase 3: Naughty or Nice (Verdict Gate)

def santa_verdict(review_b, review_c):
    """Both reviewers must pass. No partial credit."""
    if review_b.verdict == "PASS" and review_c.verdict == "PASS":
        return "NICE"  # Ship it

    # Merge flags from both reviewers, deduplicate
    all_issues = dedupe(review_b.critical_issues + review_c.critical_issues)
    all_suggestions = dedupe(review_b.suggestions + review_c.suggestions)

    return "NAUGHTY", all_issues, all_suggestions

Why both must pass: if only one reviewer catches an issue, that issue is real. The other reviewer's blind spot is exactly the failure mode Santa Method exists to eliminate.

Phase 4: Fix Until Nice (Convergence Loop)

MAX_ITERATIONS = 3

for iteration in range(MAX_ITERATIONS):
    verdict, issues, suggestions = santa_verdict(review_b, review_c)

    if verdict == "NICE":
        log_santa_result(output, iteration, "passed")
        return ship(output)

    # Fix all critical issues (suggestions are optional)
    output = fix_agent.execute(
        output=output,
        issues=issues,
        instruction="Fix ONLY the flagged issues. Do not refactor or add unrequested changes."
    )

    # Re-run BOTH reviewers on fixed output (fresh agents, no memory of previous round)
    review_b = Agent(prompt=REVIEWER_PROMPT.format(output=output, ...))
    review_c = Agent(prompt=REVIEWER_PROMPT.format(output=output, ...))

# Exhausted iterations — escalate
log_santa_result(output, MAX_ITERATIONS, "escalated")
escalate_to_human(output, issues)

Critical: each review round uses fresh agents. Reviewers must not carry memory from previous rounds, as prior context creates anchoring bias.

Implementation Patterns

Subagents provide true context isolation. Each reviewer is a separate process with no shared state.

# In a Claude Code session, use the Agent tool to spawn reviewers
# Both agents run in parallel for speed
# Pseudocode for Agent tool invocation
reviewer_b = Agent(
    description="Santa Review B",
    prompt=f"Review this output for quality...\n\nRUBRIC:\n{rubric}\n\nOUTPUT:\n{output}"
)
reviewer_c = Agent(
    description="Santa Review C",
    prompt=f"Review this output for quality...\n\nRUBRIC:\n{rubric}\n\nOUTPUT:\n{output}"
)

Pattern B: Sequential Inline (Fallback)

When subagents aren't available, simulate isolation with explicit context resets:

  1. Generate output
  2. New context: "You are Reviewer 1. Evaluate ONLY against this rubric. Find problems."
  3. Record findings verbatim
  4. Clear context completely
  5. New context: "You are Reviewer 2. Evaluate ONLY against this rubric. Find problems."
  6. Compare both reviews, fix, repeat

The subagent pattern is strictly superior — inline simulation risks context bleed between reviewers.

Pattern C: Batch Sampling

For large batches (100+ items), full Santa on every item is cost-prohibitive. Use stratified sampling:

  1. Run Santa on a random sample (10-15% of batch, minimum 5 items)
  2. Categorize failures by type (hallucination, compliance, completeness, etc.)
  3. If systematic patterns emerge, apply targeted fixes to the entire batch
  4. Re-sample and re-verify the fixed batch
  5. Continue until a clean sample passes
import random

def santa_batch(items, rubric, sample_rate=0.15):
    sample = random.sample(items, max(5, int(len(items) * sample_rate)))

    for item in sample:
        result = santa_full(item, rubric)
        if result.verdict == "NAUGHTY":
            pattern = classify_failure(result.issues)
            items = batch_fix(items, pattern)  # Fix all items matching pattern
            return santa_batch(items, rubric)   # Re-sample

    return items  # Clean sample → ship batch

Failure Modes and Mitigations

Failure Mode Symptom Mitigation
Infinite loop Reviewers keep finding new issues after fixes Max iteration cap (3). Escalate.
Rubber stamping Both reviewers pass everything Adversarial prompt: "Your job is to find problems, not approve."
Subjective drift Reviewers flag style preferences, not errors Tight rubric with objective pass/fail criteria only
Fix regression Fixing issue A introduces issue B Fresh reviewers each round catch regressions
Reviewer agreement bias Both reviewers miss the same thing Mitigated by independence, not eliminated. For critical output, add a third reviewer or human spot-check.
Cost explosion Too many iterations on large outputs Batch sampling pattern. Budget caps per verification cycle.

Integration with Other Skills

Skill Relationship
Verification Loop Use for deterministic checks (build, lint, test). Santa for semantic checks (accuracy, hallucinations). Run verification-loop first, Santa second.
Eval Harness Santa Method results feed eval metrics. Track pass@k across Santa runs to measure generator quality over time.
Continuous Learning v2 Santa findings become instincts. Repeated failures on the same criterion → learned behavior to avoid the pattern.
Strategic Compact Run Santa BEFORE compacting. Don't lose review context mid-verification.

Metrics

Track these to measure Santa Method effectiveness:

  • First-pass rate: % of outputs that pass Santa on round 1 (target: >70%)
  • Mean iterations to convergence: average rounds to NICE (target: <1.5)
  • Issue taxonomy: distribution of failure types (hallucination vs. completeness vs. compliance)
  • Reviewer agreement: % of issues flagged by both reviewers vs. only one (low agreement = rubric needs tightening)
  • Escape rate: issues found post-ship that Santa should have caught (target: 0)

Cost Analysis

Santa Method costs approximately 2-3x the token cost of generation alone per verification cycle. For most high-stakes output, this is a bargain:

Cost of Santa = (generation tokens) + 2×(review tokens per round) × (avg rounds)
Cost of NOT Santa = (reputation damage) + (correction effort) + (trust erosion)

For batch operations, the sampling pattern reduces cost to ~15-20% of full verification while catching >90% of systematic issues.

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Overall Score

88/100

Grade

A

Excellent

Safety

92

Quality

87

Clarity

89

Completeness

82

Summary

Santa Method is a multi-agent adversarial verification framework that enforces output quality through dual independent reviews before shipping. Two agents with no shared context evaluate output against a rubric, with a convergence loop to fix issues iteratively until both pass. The framework is designed for high-stakes output (production code, compliance content, user-facing materials) where single-agent review biases are a critical risk.

Detected Capabilities

agent spawning and orchestrationstructured JSON output parsingiteration loop managementcontext isolation and parallel executionhuman escalation

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

verify before shippingdual code reviewhallucination detectionbatch quality checkconvergence verificationcompliance validation

Use Cases

  • Verify code before production deployment
  • Ensure regulatory/compliance compliance in generated content
  • Detect hallucinations in technical documentation or API references
  • Batch-verify generated content at scale with stratified sampling
  • Enforce brand voice and content requirements across bulk generation
  • Validate mathematical and statistical claims before publication

Quality Notes

  • Exceptionally well-architected with clear phase separation and state machine logic
  • Rubric design section teaches best practices (objective pass/fail, domain-specific extensions)
  • Explicitly documents failure modes and mitigations, showing anticipation of edge cases
  • Provides three distinct implementation patterns (subagents, sequential fallback, batch sampling) with clear trade-offs
  • Detailed metrics section enables measurement and iteration on the method itself
  • Cost analysis grounds the framework in practical ROI (token cost vs. reputation risk)
  • Integrates with other skills and clarifies complementary vs. competitive workflows
  • Pseudocode examples are clear and actionable
  • Strong emphasis on independence and context isolation as core invariants
  • Missing: concrete rubric examples tailored to specific domains (code vs. marketing vs. legal)
  • Missing: detailed error handling patterns for malformed reviewer output
  • Missing: guidance on reviewer prompt tuning if one reviewer consistently disagrees with the other
Model: claude-haiku-4-5-20251001Analyzed: May 11, 2026

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Version History

v1.1

Content updated

2026-04-20

Latest
v1.0

No changelog

2026-04-12

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