Reproducibility Validate
You run a workflow multiple times and compare outputs to produce a similarity score and pass/fail verdict, confirming that the workflow produces consistent results across executions.
Triggers
Alternate expressions and non-obvious activations (primary phrases are matched automatically from the skill description):
- "is this workflow stable" → run reproducibility validation with defaults
- "check if results are consistent" → run reproducibility validation
- "does this run the same way every time" → run reproducibility validation
- "test determinism" → run reproducibility validation
- "compare workflow outputs" → run reproducibility validation
Trigger Patterns Reference
| Pattern | Example | Action |
|---|---|---|
| Default validation | "validate reproducibility of onboarding-flow" | Run aiwg reproducibility-validate onboarding-flow |
| Custom run count | "validate with 5 runs" | Run aiwg reproducibility-validate <id> --runs 5 |
| Custom threshold | "validate with 99% threshold" | Run aiwg reproducibility-validate <id> --threshold 0.99 |
| Full options | "3 runs, 90% threshold" | Run aiwg reproducibility-validate <id> --runs 3 --threshold 0.90 |
Behavior
When triggered:
Extract intent:
- What is the workflow ID or name to validate?
- How many runs? (default: 3)
- What similarity threshold must be met to pass? (default: 0.95)
Run the command:
# Default: 3 runs, 0.95 threshold aiwg reproducibility-validate <workflow-id> # Custom run count aiwg reproducibility-validate <workflow-id> --runs 5 # Custom threshold aiwg reproducibility-validate <workflow-id> --threshold 0.99 # Both aiwg reproducibility-validate <workflow-id> --runs 5 --threshold 0.99Scoring method:
- Structured outputs (JSON, YAML): exact match required — score is 0 or 1 per artifact
- Text outputs (Markdown, prose): semantic similarity score (0.0–1.0) computed across runs
- Overall score: weighted average across all artifacts in the workflow
Pass/fail verdict: If all per-artifact scores meet or exceed the threshold, the validation passes. Any artifact below the threshold is flagged.
Report the result — provide the overall verdict, overall similarity score, and a per-artifact breakdown showing which artifacts passed or failed.
Examples
Example 1: Default validation
User: "Validate reproducibility of the risk-management-cycle workflow"
Extraction: Workflow ID risk-management-cycle, default 3 runs, default 0.95 threshold
Action:
aiwg reproducibility-validate risk-management-cycle
Response:
Reproducibility Validation: risk-management-cycle
Runs: 3 | Threshold: 0.95 | Result: PASS
Artifact Score Status
.aiwg/risks/risk-register.md 0.97 PASS
.aiwg/risks/mitigation-plan.md 0.96 PASS
.aiwg/working/risk-analysis-draft.md 1.00 PASS (exact match)
Overall score: 0.977 — all 3 artifacts passed.
Example 2: Stricter threshold
User: "Validate the SAD generation workflow with 99% threshold and 5 runs"
Extraction: Workflow ID sad-generation, 5 runs, 0.99 threshold
Action:
aiwg reproducibility-validate sad-generation --runs 5 --threshold 0.99
Response:
Reproducibility Validation: sad-generation
Runs: 5 | Threshold: 0.99 | Result: FAIL
Artifact Score Status
.aiwg/architecture/software-architecture.md 0.98 FAIL
.aiwg/architecture/component-diagram.mmd 1.00 PASS (exact match)
.aiwg/architecture/adr-001.md 0.99 PASS
Overall score: 0.990 — 1 of 3 artifacts failed the 0.99 threshold.
Recommendation: Review non-deterministic sections in software-architecture.md,
or lower the threshold to 0.95 if semantic variation is acceptable.
Example 3: High-confidence validation before release
User: "Run 5 iterations of the deployment-planning workflow and check for consistency"
Extraction: Workflow ID deployment-planning, 5 runs, default 0.95 threshold
Action:
aiwg reproducibility-validate deployment-planning --runs 5
Response:
Reproducibility Validation: deployment-planning
Runs: 5 | Threshold: 0.95 | Result: PASS
Artifact Score Status
.aiwg/deployment/deployment-plan.md 0.96 PASS
.aiwg/deployment/runbook.md 0.97 PASS
.aiwg/deployment/rollback-plan.md 0.95 PASS
Overall score: 0.960 — all 3 artifacts passed across 5 runs.
Example 4: Validating a failing workflow
User: "Test whether the test-strategy workflow is deterministic"
Extraction: Workflow ID test-strategy-execution, default 3 runs, default 0.95 threshold
Action:
aiwg reproducibility-validate test-strategy-execution
Response:
Reproducibility Validation: test-strategy-execution
Runs: 3 | Threshold: 0.95 | Result: FAIL
Artifact Score Status
.aiwg/testing/test-plan.md 0.94 FAIL
.aiwg/testing/test-strategy.md 0.97 PASS
.aiwg/testing/coverage-targets.json 1.00 PASS (exact match)
Overall score: 0.970 — 1 of 3 artifacts failed the 0.95 threshold.
Recommendation: Enable `strict` execution mode (`aiwg execution-mode strict`)
to reduce variance in test-plan.md, then re-validate.
Clarification Prompts
If the user's intent is ambiguous:
- "Which workflow should I validate? (e.g.,
risk-management-cycle,sad-generation)" - "How many runs would you like? Default is 3; more runs give higher confidence but take longer."
- "What similarity threshold should I apply? Default is 0.95. Use 0.99 for near-exact determinism requirements."
References
- @$AIWG_ROOT/src/cli/handlers/subcommands.ts — Reproducibility validate command handler
- @$AIWG_ROOT/docs/cli-reference.md — CLI reference
- @$AIWG_ROOT/agentic/code/addons/aiwg-utils/skills/execution-mode/SKILL.md — Set execution mode to reduce variance before validating
- @$AIWG_ROOT/agentic/code/addons/aiwg-utils/skills/snapshot/SKILL.md — Capture state before running validation