Agent skill
nw-por-review-criteria
Review dimensions and bug patterns for journey artifact reviews
Install this agent skill to your Project
npx add-skill https://github.com/nWave-ai/nWave/tree/main/plugins/nw/skills/nw-por-review-criteria
SKILL.md
Review Criteria Skill
Domain knowledge for product-owner-reviewer (Eclipse). Covers journey coherence, emotional arcs, shared artifacts, example data quality, CLI UX patterns.
Review Dimensions
Journey Coherence
Validate complete flow with no gaps.
Checks: all steps start-to-goal defined | no orphan steps | no dead ends | decision branches lead somewhere | error paths guide to recovery
Severity: critical = missing main flow steps / dead ends | high = orphan steps | medium = ambiguous decisions | low = minor clarity
Emotional Arc
Validate emotional design quality.
Checks: arc defined (start/middle/end) | all steps annotated | no jarring transitions | confidence builds progressively | error states guide not frustrate
Severity: critical = no arc / major jarring transitions | high = missing key annotations | medium = confidence doesn't build | low = minor polish
Shared Artifact Tracking
Validate ${variable} sources and consistency.
Checks: all ${variables} have documented source | single source of truth | all consumers listed | integration risks assessed | validation methods specified
Severity: critical = undocumented ${variables} / multiple sources | high = missing consumers / unassessed risks | medium = incomplete validation | low = minor consumer docs
Example Data Quality
Key review skill -- analyze data for integration gaps.
Checks: realistic not generic | reveals integration dependencies | catches version mismatches | catches path inconsistencies | consistent across steps
Severity: critical = generic placeholders hide issues | high = inconsistent across steps | medium = doesn't reveal deps | low = could be more realistic
Apply: 1) trace ${version} through all steps -- same? 2) compare ${install_path} step 2 vs 3 -- match? 3) does data show actual integration points?
Generic "v1.0.0" or "/path/to/install" hides bugs. Realistic "v1.2.86" from "pyproject.toml" reveals bugs.
CLI UX Patterns
Checks: command vocabulary consistent | help available | error messages guide to resolution | progressive disclosure respected
Severity: critical = inconsistent commands | high = no error recovery guidance | medium = missing progressive disclosure | low = minor vocabulary
Four Bug Patterns
Pattern 1: Version Mismatch
Multiple version sources. Trace ${version} through all steps -- same source?
Step 1: v${version} from pyproject.toml
Step 2: v${version} from version.txt <-- MISMATCH
Pattern 2: Hardcoded URLs
URLs without canonical source. For each URL: "where is this defined?"
Install: git+https://github.com/org/repo
<-- Where is this URL canonically defined?
Pattern 3: Path Inconsistency
Paths from different sources. Trace ${path} -- same source?
Install to: ${install_path} from config
Uninstall from: ~/.claude/agents/nw/ <-- HARDCODED
Pattern 4: Missing Commands
CLI commands without slash equivalents. Check both contexts exist.
Terminal: crafter run
Claude Code: /nw-execute <-- EXISTS?
Review Output Schema
review_id: "{timestamp}"
reviewer: "nw-product-owner-reviewer (Eclipse)"
artifact_reviewed: "{file path}"
strengths:
- strength: "{Positive aspect}"
example: "{Specific evidence}"
issues_identified:
journey_coherence:
- issue: "{Description}"
severity: "critical|high|medium|low"
location: "{Where}"
recommendation: "{Fix}"
emotional_arc:
- issue: "{Description}"
severity: "critical|high|medium|low"
location: "{Where}"
recommendation: "{Fix}"
shared_artifacts:
- issue: "{Description}"
severity: "critical|high|medium|low"
artifact: "{Which ${variable}}"
recommendation: "{Fix}"
example_data:
- issue: "{Description}"
severity: "critical|high|medium|low"
data_point: "{Which data}"
integration_risk: "{What bug it might hide}"
recommendation: "{Fix}"
bug_patterns_detected:
- pattern: "version_mismatch|hardcoded_url|path_inconsistency|missing_command"
severity: "critical|high"
evidence: "{Finding}"
recommendation: "{Fix}"
recommendations:
critical: ["{Must fix before approval}"]
high: ["{Should fix before approval}"]
medium: ["{Fix in next iteration}"]
low: ["{Consider for polish}"]
approval_status: "approved|rejected_pending_revisions|conditionally_approved"
approval_conditions: "{If conditional, what must be done}"
Approval Criteria
- approved: No critical, no high issues
- conditionally_approved: No critical, some high addressable quickly
- rejected_pending_revisions: Critical issues exist, or multiple high
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