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verify-agent-output

pjt222
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About

This skill validates deliverables and builds evidence trails for work passed between agents in multi-agent workflows. It provides structured verification before, during, and after execution, including fidelity checks for summaries and validation against external anchors. Use it to audit cross-agent handoffs, produce external-facing outputs, and ensure summaries faithfully represent their source material.

Quick Install

Claude Code

Recommended
Primary
npx skills add pjt222/agent-almanac -a claude-code
Plugin CommandAlternative
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/verify-agent-output

Copy and paste this command in Claude Code to install this skill

Documentation

Verify Agent Output

Establish verifiable delivery between agents. Agent output → another agent or human → handoff needs more than "looks good." Define checkable expectations before work, generate evidence as side effect, validate vs external anchors not self-assessment. Core: fidelity can't be measured internally. Agent can't reliably verify own compressed out → verification needs external ref.

Use When

  • Multi-agent workflow → hands deliverables A → B
  • Agent produces external-facing out (reports, code, deployments) → human relies
  • Agent summarizes|compresses|transforms data → summary must faithfully represent source
  • Team coord pattern → structured handoff valid between members
  • Need to establish trust boundaries → what verify vs trust
  • Audit trail required for compliance|reproducibility

In

  • Required: Deliverable to verify (file, artifact, report, structured out)
  • Required: Expected outcome spec (what "done" looks like)
  • Optional: Source material (fidelity checks on summaries|transforms)
  • Optional: Trust boundary class (cross-agent, external-facing, internal)
  • Optional: Verification depth (spot-check, full, sample-based)

Do

Step 1: Define Expected Outcome Spec

Before exec, write what "done" looks like → concrete checkable conditions. Avoid subjective ("good quality") → verifiable assertions.

Categories:

  • Existence: File at path, endpoint responds, record present in DB
  • Shape: Out has N cols, JSON matches schema, fn has expected sig
  • Content: Val in range, str matches pattern, list contains required
  • Behavior: Test suite passes, cmd exits 0, API returns expected status
  • Consistency: Out hash matches in hash, row count preserved after transform, totals reconcile

Example spec:

expected_outcome:
  existence:
    - path: "output/report.html"
    - path: "output/data.csv"
  shape:
    - file: "output/data.csv"
      columns: ["id", "name", "score", "grade"]
      min_rows: 100
  content:
    - file: "output/data.csv"
      column: "score"
      range: [0, 100]
    - file: "output/report.html"
      contains: ["Summary", "Methodology", "Results"]
  behavior:
    - command: "Rscript -e 'testthat::test_dir(\"tests\")'"
      exit_code: 0
  consistency:
    - check: "row_count"
      source: "input/raw.csv"
      target: "output/data.csv"
      tolerance: 0

Got: Written spec w/ 1+ checkable condition per deliverable. Every condition machine-verifiable (script|cmd, not reading + judging).

If err: Can't state concretely → task underspecified. Push back on definition before proceed → vague expectations → unverifiable work.

Step 2: Evidence Trail During Exec

Work proceeds → emit structured evidence as side effect. Evidence trail not separate verification step → produced by exec itself.

Evidence types:

evidence:
  timing:
    started_at: "2026-03-12T10:00:00Z"
    completed_at: "2026-03-12T10:04:32Z"
    duration_seconds: 272
  checksums:
    - file: "output/data.csv"
      sha256: "a1b2c3..."
    - file: "output/report.html"
      sha256: "d4e5f6..."
  test_results:
    total: 24
    passed: 24
    failed: 0
    skipped: 0
  diff_summary:
    files_changed: 3
    insertions: 47
    deletions: 12
  tool_versions:
    r: "4.5.2"
    testthat: "3.2.1"

Practical cmds:

# Checksums
sha256sum output/data.csv output/report.html > evidence/checksums.txt

# Row counts
wc -l < input/raw.csv > evidence/input_rows.txt
wc -l < output/data.csv > evidence/output_rows.txt

# Test results (R)
Rscript -e "results <- testthat::test_dir('tests'); cat(format(results))" > evidence/test_results.txt

# Git diff summary
git diff --stat HEAD~1 > evidence/diff_summary.txt

# Timing (wrap the actual command)
start_time=$(date +%s)
# ... do the work ...
end_time=$(date +%s)
echo "duration_seconds: $((end_time - start_time))" > evidence/timing.txt

Got: evidence/ dir (or structured log) w/ checksums + timing per produced artifact. Evidence generated as part of work, not reconstructed.

If err: Evidence gen interferes w/ exec → capture what you can w/o blocking. Min: record file checksums after completion → enables later verify even if real-time not captured.

Step 3: Validate Deliverables vs Expected

After exec, check vs spec from Step 1. External anchors — tests, schemas, checksums, row counts — not asking producer "is this correct?"

Validation checks by category:

# Existence
for file in output/report.html output/data.csv; do
  test -f "$file" && echo "PASS: $file exists" || echo "FAIL: $file missing"
done

# Shape (CSV column check)
head -1 output/data.csv | tr ',' '\n' | sort > /tmp/actual_cols.txt
echo -e "grade\nid\nname\nscore" > /tmp/expected_cols.txt
diff /tmp/expected_cols.txt /tmp/actual_cols.txt && echo "PASS: columns match" || echo "FAIL: column mismatch"

# Row count
actual_rows=$(wc -l < output/data.csv)
[ "$actual_rows" -ge 101 ] && echo "PASS: $actual_rows rows (>= 100 + header)" || echo "FAIL: only $actual_rows rows"

# Content range check (R)
Rscript -e '
  d <- read.csv("output/data.csv")
  stopifnot(all(d$score >= 0 & d$score <= 100))
  cat("PASS: all scores in [0, 100]\n")
'

# Behavior
Rscript -e "testthat::test_dir('tests')" && echo "PASS: tests pass" || echo "FAIL: tests fail"

# Consistency (row count preserved)
input_rows=$(wc -l < input/raw.csv)
output_rows=$(wc -l < output/data.csv)
[ "$input_rows" -eq "$output_rows" ] && echo "PASS: row count preserved" || echo "FAIL: $input_rows -> $output_rows"

Got: All checks pass. Results recorded as structured out (PASS/FAIL per condition) alongside evidence trail Step 2.

If err: Don't silently accept partial passes. Any FAIL → triggers structured disagreement Step 6. Record passed + failed → partial results still valuable evidence.

Step 4: Fidelity Checks on Compressed Outs

Agent summarizes|compresses|transforms → out smaller than input by design. Summary can't be verified by reading alone → must compare vs source. Sample-based spot checks → verify fidelity.

Procedure:

  1. Random sample from source (3-5 items spot, 10% thorough)
  2. Per sampled item → verify accurately represented in compressed out
  3. Check fabricated content → items in out w/ no source
# Example: verify a summary report against source data

# 1. Select random rows from source
shuf -n 5 input/raw.csv > /tmp/sample.csv

# 2. For each sampled row, verify it appears correctly in the output
while IFS=, read -r id name score grade; do
  grep -q "$id" output/report.html && echo "PASS: $id found in report" || echo "FAIL: $id missing from report"
done < /tmp/sample.csv

# 3. Check for fabricated IDs in the output
# Extract IDs from output, verify each exists in source
grep -oP 'id="[^"]*"' output/report.html | while read -r output_id; do
  grep -q "$output_id" input/raw.csv && echo "PASS: $output_id has source" || echo "FAIL: $output_id fabricated"
done

Text summaries → exact match impossible → verify key claims:

  • Quoted stats match source data
  • Named entities mentioned exist in source
  • Causal claims|rankings supported by underlying data
  • No items in summary absent from source

Got: All sampled items accurately represented. No fabricated content. Key stats in summary match computed vals from source.

If err: Fidelity fails → summary can't be trusted. Report specific discrepancies via structured disagreement Step 6. Producer must re-derive from source, not patch existing.

Step 5: Classify Trust Boundaries

Not everything needs verification. Over-verification its own cost → slows exec, complexity, false confidence. Classify outs by trust → focus where matters.

BoundaryVerification RequiredExamples
Cross-agent handoffYes — alwaysAgent A produces data that Agent B consumes; team member passes deliverable to lead
External-facing outputYes — alwaysReports delivered to humans, deployed code, published packages, API responses
Compressed/summarizedYes — sample-basedAny output that is smaller than its input by design (summaries, aggregations, extracts)
Internal intermediateNo — trust with checksumsTemporary files, intermediate computation results, internal state between steps
Idempotent operationsNo — verify onceConfig file writes, deterministic transforms, pure functions with known inputs

Apply proportionally:

  • Cross-agent: Full validation vs expected outcome (Step 3)
  • External-facing: Full validation + fidelity checks if summarized (Steps 3-4)
  • Internal intermediates: Checksums only (Step 2) → verify on demand if downstream fails
  • Idempotent ops: Verify on first exec, trust on repeat

Got: Each deliverable classified into trust boundary. Verification effort concentrated on cross-agent + external-facing.

If err: When in doubt, verify. Cost of false trust (accepting bad out) almost always > cost of unnecessary verification. Default verify, relax only w/ evidence boundary safe.

Step 6: Report Structured Disagreements on Fail

Verification fails → structured disagreement, not silently accept|reject. Structured = actionable → tells producer (or human) exactly what expected, received, gap.

Format:

verification_result: FAIL
deliverable: "output/data.csv"
timestamp: "2026-03-12T10:04:32Z"
failures:
  - check: "row_count"
    expected: 500
    actual: 487
    severity: warning
    note: "13 rows dropped — investigate filter logic"
  - check: "score_range"
    expected: "[0, 100]"
    actual: "[-3, 100]"
    severity: error
    note: "3 negative scores found — data validation missing"
  - check: "column_presence"
    expected: "grade"
    actual: null
    severity: error
    note: "grade column missing from output"
passes:
  - check: "file_exists"
  - check: "checksum_stable"
  - check: "test_suite"
recommendation: >
  Re-run with input validation enabled. The score_range and column_presence
  failures suggest the transform step is not handling edge cases. Do not
  patch the output — fix the transform and re-execute from source.

Principles:

  • Specific: "3 negative scores in rows 42, 187, 301" not "some values wrong"
  • Both expected + actual: Gap is what matters
  • Classify severity: error (blocks accept), warning (accept w/ caveat), info (noted)
  • Recommend action: Fix-and-rerun vs accept-w/-caveat vs reject
  • Never silently accept: Social trust ("other agent said it's fine") = attack vector. Trust evidence, not assertion.

Got: Every verification fail → structured disagreement w/ min: failed check, expected, actual, severity.

If err: Verification process itself fails (validation script errors out) → meta-failure. Inability to verify = finding → deliverable unverifiable in current form, worse than known fail.

Check

  • Expected outcome spec exists before exec begins
  • Spec contains only machine-verifiable conditions (no subjective)
  • Evidence trail generated during exec (checksums, timing, test results)
  • Evidence is side effect of work, not separate post-hoc step
  • Deliverables validated vs external anchors (tests, schemas, checksums)
  • No deliverable verified by asking producer "is this correct?"
  • Compressed|summarized outs include sample-based fidelity checks
  • Fidelity checks compare vs source material, not summary itself
  • Trust boundaries classified (cross-agent, external, internal)
  • Verification effort proportional to boundary severity
  • Failures produce structured disagreements (expected vs actual)
  • No verification fail silently accepted|rejected

Traps

  • Verifying out by asking producer: Agent can't reliably verify own work. "I checked, looks correct" ≠ verification. External anchors (tests, checksums, schemas) = verification. Fidelity can't be measured internally.
  • Over-verify internal intermediates: Verifying every temp file + intermediate adds overhead w/o reliability. Classify boundaries (Step 5) → focus on cross-agent + external.
  • Subjective expected outcomes: "Report should be high quality" not checkable. "Report contains Summary, Methodology, Results, all cited stats match computed vals from source" checkable. Can't write check → can't verify.
  • Post-hoc evidence reconstruction: Generating evidence after fact ("let me checksum what I think I produced") unreliable. Evidence must be side effect of exec, captured real time. Reconstructed proves only what exists now, not what was produced.
  • Verification as infallible: Verification itself can have bugs. Passing test suite ≠ code correct → satisfies tests. Keep proportional + acknowledge limits, not green checks as absolute truth.
  • Silently accept partial passes: 9 of 10 pass → deliverable still fails. Report 1 fail as structured disagreement. Partial credit for grading; delivery binary.
  • Social trust as substitute: "Agent A reliable, skip verification" = attack vector. Trust w/o verification exploitable. Verify based on boundary, not producer reputation.
  • Wrong R binary on hybrid systems: WSL|Docker → Rscript may resolve to cross-platform wrapper, not native R. which Rscript && Rscript --version. Prefer native R binary (/usr/local/bin/Rscript Linux/WSL) for reliability. See Setting Up Your Environment for R path config.

  • fail-early-pattern — complementary: fail-early catches bad input at start; verify-agent-output catches bad out at end
  • security-audit-codebase — overlapping: security audits verify code meets security expectations, specific case of deliverable validation
  • honesty-humility — complementary: honest agents acknowledge uncertainty → verification gaps visible
  • review-skill-format — verify-agent-output can validate produced SKILL.md meets format reqs, concrete instance of deliverable validation
  • create-team — teams coordinating multi agents benefit from structured handoff valid at each coord step
  • test-team-coordination — tests whether team handoffs produce verifiable deliverables, exercising this skill end to end

GitHub Repository

pjt222/agent-almanac
Path: i18n/caveman-ultra/skills/verify-agent-output
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agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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