Operate as an agentic engineer using eval-first execution, decomposition, and cost-aware model routing. Use when AI agents perform most implementation work and humans enforce quality and risk controls.
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Does it follow best practices?
Impact
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No eval scenarios have been run
Passed
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Use this skill for engineering workflows where AI agents perform most implementation work and humans enforce quality and risk controls.
Example workflow:
1. Write test that captures desired behavior (eval)
2. Run test → capture baseline failures
3. Implement feature
4. Re-run test → verify improvements
5. Check for regressions in other testsApply the 15-minute unit rule:
Good decomposition:
Task: Add user authentication
├─ Unit 1: Add password hashing (15 min, security risk)
├─ Unit 2: Create login endpoint (15 min, API contract risk)
├─ Unit 3: Add session management (15 min, state risk)
└─ Unit 4: Protect routes with middleware (15 min, auth logic risk)Bad decomposition:
Task: Add user authentication (2 hours, multiple risks)Choose model tier based on task complexity:
Haiku: Classification, boilerplate transforms, narrow edits
Sonnet: Implementation and refactors
Opus: Architecture, root-cause analysis, multi-file invariants
Cost discipline: Escalate model tier only when lower tier fails with a clear reasoning gap.
Continue session for closely-coupled units
Start fresh session after major phase transitions
Compact after milestone completion, not during active debugging
Prioritize:
Do not waste review cycles on style-only disagreements when automated format/lint already enforce style.
Review checklist:
Track per task:
Example tracking:
Task: Implement user login
Model: Sonnet
Tokens: ~5k input, ~2k output
Retries: 1 (initial implementation had auth bug)
Time: 8 minutes
Outcome: Success4130457
If you maintain this skill, you can claim it as your own. Once claimed, you can manage eval scenarios, bundle related skills, attach documentation or rules, and ensure cross-agent compatibility.