writing-plans
Use when you have a spec or requirements for a multi-step task. Creates comprehensive implementation plans with bite-sized tasks, exact file paths, and complete code examples.
Best use case
writing-plans is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Use when you have a spec or requirements for a multi-step task. Creates comprehensive implementation plans with bite-sized tasks, exact file paths, and complete code examples.
Teams using writing-plans should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/writing-plans/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How writing-plans Compares
| Feature / Agent | writing-plans | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Use when you have a spec or requirements for a multi-step task. Creates comprehensive implementation plans with bite-sized tasks, exact file paths, and complete code examples.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Writing Implementation Plans
## Overview
Write comprehensive implementation plans assuming the implementer has zero context for the codebase and questionable taste. Document everything they need: which files to touch, complete code, testing commands, docs to check, how to verify. Give them bite-sized tasks. DRY. YAGNI. TDD. Frequent commits.
Assume the implementer is a skilled developer but knows almost nothing about the toolset or problem domain. Assume they don't know good test design very well.
**Core principle:** A good plan makes implementation obvious. If someone has to guess, the plan is incomplete.
## When to Use
**Always use before:**
- Implementing multi-step features
- Breaking down complex requirements
- Delegating to subagents via subagent-driven-development
**Don't skip when:**
- Feature seems simple (assumptions cause bugs)
- You plan to implement it yourself (future you needs guidance)
- Working alone (documentation matters)
## Bite-Sized Task Granularity
**Each task = 2-5 minutes of focused work.**
Every step is one action:
- "Write the failing test" — step
- "Run it to make sure it fails" — step
- "Implement the minimal code to make the test pass" — step
- "Run the tests and make sure they pass" — step
- "Commit" — step
**Too big:**
```markdown
### Task 1: Build authentication system
[50 lines of code across 5 files]
```
**Right size:**
```markdown
### Task 1: Create User model with email field
[10 lines, 1 file]
### Task 2: Add password hash field to User
[8 lines, 1 file]
### Task 3: Create password hashing utility
[15 lines, 1 file]
```
## Plan Document Structure
### Header (Required)
Every plan MUST start with:
```markdown
# [Feature Name] Implementation Plan
> **For Hermes:** Use subagent-driven-development skill to implement this plan task-by-task.
**Goal:** [One sentence describing what this builds]
**Architecture:** [2-3 sentences about approach]
**Tech Stack:** [Key technologies/libraries]
---
```
### Task Structure
Each task follows this format:
````markdown
### Task N: [Descriptive Name]
**Objective:** What this task accomplishes (one sentence)
**Files:**
- Create: `exact/path/to/new_file.py`
- Modify: `exact/path/to/existing.py:45-67` (line numbers if known)
- Test: `tests/path/to/test_file.py`
**Step 1: Write failing test**
```python
def test_specific_behavior():
result = function(input)
assert result == expected
```
**Step 2: Run test to verify failure**
Run: `pytest tests/path/test.py::test_specific_behavior -v`
Expected: FAIL — "function not defined"
**Step 3: Write minimal implementation**
```python
def function(input):
return expected
```
**Step 4: Run test to verify pass**
Run: `pytest tests/path/test.py::test_specific_behavior -v`
Expected: PASS
**Step 5: Commit**
```bash
git add tests/path/test.py src/path/file.py
git commit -m "feat: add specific feature"
```
````
## Writing Process
### Step 1: Understand Requirements
Read and understand:
- Feature requirements
- Design documents or user description
- Acceptance criteria
- Constraints
### Step 2: Explore the Codebase
Use Hermes tools to understand the project:
```python
# Understand project structure
search_files("*.py", target="files", path="src/")
# Look at similar features
search_files("similar_pattern", path="src/", file_glob="*.py")
# Check existing tests
search_files("*.py", target="files", path="tests/")
# Read key files
read_file("src/app.py")
```
### Step 3: Design Approach
Decide:
- Architecture pattern
- File organization
- Dependencies needed
- Testing strategy
### Step 4: Write Tasks
Create tasks in order:
1. Setup/infrastructure
2. Core functionality (TDD for each)
3. Edge cases
4. Integration
5. Cleanup/documentation
### Step 5: Add Complete Details
For each task, include:
- **Exact file paths** (not "the config file" but `src/config/settings.py`)
- **Complete code examples** (not "add validation" but the actual code)
- **Exact commands** with expected output
- **Verification steps** that prove the task works
### Step 6: Review the Plan
Check:
- [ ] Tasks are sequential and logical
- [ ] Each task is bite-sized (2-5 min)
- [ ] File paths are exact
- [ ] Code examples are complete (copy-pasteable)
- [ ] Commands are exact with expected output
- [ ] No missing context
- [ ] DRY, YAGNI, TDD principles applied
### Step 7: Save the Plan
```bash
mkdir -p docs/plans
# Save plan to docs/plans/YYYY-MM-DD-feature-name.md
git add docs/plans/
git commit -m "docs: add implementation plan for [feature]"
```
## Principles
### DRY (Don't Repeat Yourself)
**Bad:** Copy-paste validation in 3 places
**Good:** Extract validation function, use everywhere
### YAGNI (You Aren't Gonna Need It)
**Bad:** Add "flexibility" for future requirements
**Good:** Implement only what's needed now
```python
# Bad — YAGNI violation
class User:
def __init__(self, name, email):
self.name = name
self.email = email
self.preferences = {} # Not needed yet!
self.metadata = {} # Not needed yet!
# Good — YAGNI
class User:
def __init__(self, name, email):
self.name = name
self.email = email
```
### TDD (Test-Driven Development)
Every task that produces code should include the full TDD cycle:
1. Write failing test
2. Run to verify failure
3. Write minimal code
4. Run to verify pass
See `test-driven-development` skill for details.
### Frequent Commits
Commit after every task:
```bash
git add [files]
git commit -m "type: description"
```
## Common Mistakes
### Vague Tasks
**Bad:** "Add authentication"
**Good:** "Create User model with email and password_hash fields"
### Incomplete Code
**Bad:** "Step 1: Add validation function"
**Good:** "Step 1: Add validation function" followed by the complete function code
### Missing Verification
**Bad:** "Step 3: Test it works"
**Good:** "Step 3: Run `pytest tests/test_auth.py -v`, expected: 3 passed"
### Missing File Paths
**Bad:** "Create the model file"
**Good:** "Create: `src/models/user.py`"
## Execution Handoff
After saving the plan, offer the execution approach:
**"Plan complete and saved. Ready to execute using subagent-driven-development — I'll dispatch a fresh subagent per task with two-stage review (spec compliance then code quality). Shall I proceed?"**
When executing, use the `subagent-driven-development` skill:
- Fresh `delegate_task` per task with full context
- Spec compliance review after each task
- Code quality review after spec passes
- Proceed only when both reviews approve
## Remember
```
Bite-sized tasks (2-5 min each)
Exact file paths
Complete code (copy-pasteable)
Exact commands with expected output
Verification steps
DRY, YAGNI, TDD
Frequent commits
```
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