--- name: sparc-refine description: Run the SPARC Refinement and Completion phases — review code, improve test coverage, validate against specification, and generate documentation argument-hint: "" allowed-tools: mcp__claude-flow__memory_store mcp__claude-flow__memory_search mcp__claude-flow__memory_retrieve mcp__claude-flow__task_create mcp__claude-flow__task_update mcp__claude-flow__task_complete mcp__claude-flow__hooks_intelligence_trajectory-step mcp__claude-flow__hooks_intelligence_trajectory-end mcp__claude-flow__neural_train mcp__claude-flow__neural_predict Bash Read Write Edit --- # SPARC Refinement + Completion Run Phases 4 and 5 of the SPARC methodology: iteratively improve through code review and testing, then finalize with validation, documentation, and deployment readiness. ## When to use After the Architecture phase is complete and its gate has been passed. This skill covers the final two phases that bring a feature from implemented to production-ready. ## Steps ### Phase 4 — Refinement 1. **Retrieve all prior artifacts** — call `mcp__claude-flow__memory_search` with namespace `sparc-phases` and query for the feature slug. Load spec (acceptance criteria), pseudocode, and architecture. 2. **Retrieve phase state** — call `mcp__claude-flow__memory_search` with namespace `sparc-state` to confirm we are in Phase 4. 3. **Code review** — review the implementation against: a. **Specification compliance**: does every acceptance criterion have a corresponding code path? b. **Architecture adherence**: do modules follow the defined boundaries and dependency rules? c. **Pseudocode fidelity**: does the implementation match the designed algorithms? d. **Code quality**: naming conventions, single responsibility, error handling, no dead code e. Document findings as review comments 4. **Test coverage analysis**: a. Run existing tests and measure coverage b. Identify uncovered acceptance criteria c. Write missing tests: - Unit tests for each public function - Integration tests for cross-module interactions - Edge case tests for each identified edge case from the spec d. Target coverage >= 80% on new code 5. **Performance validation** — if the spec includes performance constraints: a. Profile critical paths identified in the pseudocode b. Compare measured performance against constraint thresholds c. Optimize if thresholds are not met 6. **Iterate** — repeat steps 3-5 until: - All acceptance criteria have passing tests - Code review has no critical or high-severity issues - Coverage meets the threshold - Performance constraints are satisfied 7. **Store refinement artifact** — call `mcp__claude-flow__memory_store` with namespace `sparc-phases`, key `refine-{feature-slug}`, value: `{ status: "complete", reviewFindings: [...], coveragePercent: N, performanceResults: {...}, iterations: N }` 8. **Record trajectory step** — call `mcp__claude-flow__hooks_intelligence_trajectory-step` with refinement summary ### Phase 5 — Completion 9. **Full regression** — run the complete test suite to verify no regressions from refinement changes 10. **Traceability matrix** — build a matrix mapping every acceptance criterion to: - The test(s) that verify it - The code file(s) that implement it - The current pass/fail status 11. **Documentation**: a. Generate API documentation from code comments and type definitions b. Write usage examples for key public interfaces c. Update any existing documentation affected by the changes 12. **Deployment readiness checklist**: - [ ] All tests passing - [ ] Documentation complete - [ ] Database migrations prepared (if applicable) - [ ] Configuration changes documented - [ ] Feature flags configured (if applicable) - [ ] Rollback plan defined - [ ] Security review complete (no secrets, inputs validated) 13. **Store completion artifact** — call `mcp__claude-flow__memory_store` with namespace `sparc-phases`, key `complete-{feature-slug}`, value: `{ status: "complete", traceabilityMatrix: [...], documentationFiles: [...], deploymentChecklist: {...}, regressionResult: "pass" }` 14. **End trajectory** — call `mcp__claude-flow__hooks_intelligence_trajectory-end` with the full SPARC cycle summary 15. **Train neural patterns** — call `mcp__claude-flow__neural_train` with the successful SPARC cycle data to improve future predictions 16. **Store learned pattern** — call `mcp__claude-flow__memory_store` with namespace `patterns`, key `sparc-{feature-slug}`, value summarizing what worked, phase durations, and common blockers encountered 17. **Present completion report** — display the traceability matrix, deployment checklist, and final status. Suggest running `/sparc advance` to pass the final gate, or `/sparc report` for the full methodology report. ## Output format ``` # Refinement: {Feature Name} ## Code Review Summary - Critical issues: {N} (must be 0 to pass gate) - High issues: {N} - Medium issues: {N} - Resolved: {N}/{total} ## Test Coverage - Overall: {N}% - New code: {N}% - Acceptance criteria covered: {N}/{total} ## Performance | Constraint | Target | Measured | Status | |-----------|--------|----------|--------| | Response time | <200ms | 145ms | Pass | --- # Completion: {Feature Name} ## Traceability Matrix | AC | Test | Code | Status | |----|------|------|--------| | AC-1 | test_xxx | service.ts:42 | Pass | | AC-2 | test_yyy | controller.ts:18 | Pass | | AC-3 | test_zzz | repository.ts:31 | Pass | ## Deployment Checklist - [x] All tests passing - [x] Documentation complete - [x] Migrations prepared - [x] Config documented - [x] Rollback plan defined - [x] Security reviewed --- SPARC workflow complete. Run `/sparc report` for the full methodology report. ```