subagent-driven-development
Execute plans via delegate_task subagents (2-stage review).
What this skill does
# Subagent-Driven Development
## Overview
Execute implementation plans by dispatching fresh subagents per task with systematic two-stage review.
**Core principle:** Fresh subagent per task + two-stage review (spec then quality) = high quality, fast iteration.
## When to Use
Use this skill when:
- You have an implementation plan (from the `plan` skill or user requirements)
- Tasks are mostly independent
- Quality and spec compliance are important
- You want automated review between tasks
**vs. manual execution:**
- Fresh context per task (no confusion from accumulated state)
- Automated review process catches issues early
- Consistent quality checks across all tasks
- Subagents can ask questions before starting work
## The Process
### 1. Read and Parse Plan
Read the plan file. Extract ALL tasks with their full text and context upfront. Create a todo list:
```python
# Read the plan
read_file("docs/plans/feature-plan.md")
# Create todo list with all tasks
todo([
{"id": "task-1", "content": "Create User model with email field", "status": "pending"},
{"id": "task-2", "content": "Add password hashing utility", "status": "pending"},
{"id": "task-3", "content": "Create login endpoint", "status": "pending"},
])
```
**Key:** Read the plan ONCE. Extract everything. Don't make subagents read the plan file — provide the full task text directly in context.
### 2. Per-Task Workflow
For EACH task in the plan:
#### Step 1: Dispatch Implementer Subagent
Use `delegate_task` with complete context:
```python
delegate_task(
goal="Implement Task 1: Create User model with email and password_hash fields",
context="""
TASK FROM PLAN:
- Create: src/models/user.py
- Add User class with email (str) and password_hash (str) fields
- Use bcrypt for password hashing
- Include __repr__ for debugging
FOLLOW TDD:
1. Write failing test in tests/models/test_user.py
2. Run: pytest tests/models/test_user.py -v (verify FAIL)
3. Write minimal implementation
4. Run: pytest tests/models/test_user.py -v (verify PASS)
5. Run: pytest tests/ -q (verify no regressions)
6. Commit: git add -A && git commit -m "feat: add User model with password hashing"
PROJECT CONTEXT:
- Python 3.11, Flask app in src/app.py
- Existing models in src/models/
- Tests use pytest, run from project root
- bcrypt already in requirements.txt
""",
toolsets=['terminal', 'file']
)
```
#### Step 2: Dispatch Spec Compliance Reviewer
After the implementer completes, verify against the original spec:
```python
delegate_task(
goal="Review if implementation matches the spec from the plan",
context="""
ORIGINAL TASK SPEC:
- Create src/models/user.py with User class
- Fields: email (str), password_hash (str)
- Use bcrypt for password hashing
- Include __repr__
CHECK:
- [ ] All requirements from spec implemented?
- [ ] File paths match spec?
- [ ] Function signatures match spec?
- [ ] Behavior matches expected?
- [ ] Nothing extra added (no scope creep)?
OUTPUT: PASS or list of specific spec gaps to fix.
""",
toolsets=['file']
)
```
**If spec issues found:** Fix gaps, then re-run spec review. Continue only when spec-compliant.
#### Step 3: Dispatch Code Quality Reviewer
After spec compliance passes:
```python
delegate_task(
goal="Review code quality for Task 1 implementation",
context="""
FILES TO REVIEW:
- src/models/user.py
- tests/models/test_user.py
CHECK:
- [ ] Follows project conventions and style?
- [ ] Proper error handling?
- [ ] Clear variable/function names?
- [ ] Adequate test coverage?
- [ ] No obvious bugs or missed edge cases?
- [ ] No security issues?
OUTPUT FORMAT:
- Critical Issues: [must fix before proceeding]
- Important Issues: [should fix]
- Minor Issues: [optional]
- Verdict: APPROVED or REQUEST_CHANGES
""",
toolsets=['file']
)
```
**If quality issues found:** Fix issues, re-review. Continue only when approved.
#### Step 4: Mark Complete
```python
todo([{"id": "task-1", "content": "Create User model with email field", "status": "completed"}], merge=True)
```
### 3. Final Review
After ALL tasks are complete, dispatch a final integration reviewer:
```python
delegate_task(
goal="Review the entire implementation for consistency and integration issues",
context="""
All tasks from the plan are complete. Review the full implementation:
- Do all components work together?
- Any inconsistencies between tasks?
- All tests passing?
- Ready for merge?
""",
toolsets=['terminal', 'file']
)
```
### 4. Verify and Commit
```bash
# Run full test suite
pytest tests/ -q
# Review all changes
git diff --stat
# Final commit if needed
git add -A && git commit -m "feat: complete [feature name] implementation"
```
## Task Granularity
**Each task = 2-5 minutes of focused work.**
**Too big:**
- "Implement user authentication system"
**Right size:**
- "Create User model with email and password fields"
- "Add password hashing function"
- "Create login endpoint"
- "Add JWT token generation"
- "Create registration endpoint"
## Red Flags — Never Do These
- Start implementation without a plan
- Skip reviews (spec compliance OR code quality)
- Proceed with unfixed critical/important issues
- Dispatch multiple implementation subagents for tasks that touch the same files
- Make subagent read the plan file (provide full text in context instead)
- Skip scene-setting context (subagent needs to understand where the task fits)
- Ignore subagent questions (answer before letting them proceed)
- Accept "close enough" on spec compliance
- Skip review loops (reviewer found issues → implementer fixes → review again)
- Let implementer self-review replace actual review (both are needed)
- **Start code quality review before spec compliance is PASS** (wrong order)
- Move to next task while either review has open issues
## Handling Issues
### If Subagent Asks Questions
- Answer clearly and completely
- Provide additional context if needed
- Don't rush them into implementation
### If Reviewer Finds Issues
- Implementer subagent (or a new one) fixes them
- Reviewer reviews again
- Repeat until approved
- Don't skip the re-review
### If Subagent Fails a Task
- Dispatch a new fix subagent with specific instructions about what went wrong
- Don't try to fix manually in the controller session (context pollution)
## Efficiency Notes
**Why fresh subagent per task:**
- Prevents context pollution from accumulated state
- Each subagent gets clean, focused context
- No confusion from prior tasks' code or reasoning
**Why two-stage review:**
- Spec review catches under/over-building early
- Quality review ensures the implementation is well-built
- Catches issues before they compound across tasks
**Cost trade-off:**
- More subagent invocations (implementer + 2 reviewers per task)
- But catches issues early (cheaper than debugging compounded problems later)
## Integration with Other Skills
### With plan
This skill EXECUTES plans created by the `plan` skill:
1. User requirements → plan → implementation plan
2. Implementation plan → subagent-driven-development → working code
### With test-driven-development
Implementer subagents should follow TDD:
1. Write failing test first
2. Implement minimal code
3. Verify test passes
4. Commit
Include TDD instructions in every implementer context.
### With requesting-code-review
The two-stage review process IS the code review. For final integration review, use the requesting-code-review skill's review dimensions.
### With systematic-debugging
If a subagent encounters bugs during implementation:
1. Follow systematic-debugging process
2. Find root cause before fixing
3. Write regression test
4. Resume implementation
## Example Workflow
```
[Read plan: docs/plans/auth-feature.md]
[Create todo list with 5 tasks]
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