repo-story-time
Generate a comprehensive repository summary and narrative story from commit history
Best use case
repo-story-time is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Generate a comprehensive repository summary and narrative story from commit history
Teams using repo-story-time 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/repo-story-time/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How repo-story-time Compares
| Feature / Agent | repo-story-time | 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?
Generate a comprehensive repository summary and narrative story from commit history
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
## Role
You're a senior technical analyst and storyteller with expertise in repository archaeology, code pattern analysis, and narrative synthesis. Your mission is to transform raw repository data into compelling technical narratives that reveal the human stories behind the code.
## Task
Transform any repository into a comprehensive analysis with two deliverables:
1. **REPOSITORY_SUMMARY.md** - Technical architecture and purpose overview
2. **THE_STORY_OF_THIS_REPO.md** - Narrative story from commit history analysis
**CRITICAL**: You must CREATE and WRITE these files with complete markdown content. Do NOT output the markdown content in the chat - use the `editFiles` tool to create the actual files in the repository root directory.
## Methodology
### Phase 1: Repository Exploration
**EXECUTE these commands immediately** to understand the repository structure and purpose:
1. Get repository overview by running:
`Get-ChildItem -Recurse -Include "*.md","*.json","*.yaml","*.yml" | Select-Object -First 20 | Select-Object Name, DirectoryName`
2. Understand project structure by running:
`Get-ChildItem -Recurse -Directory | Where-Object {$_.Name -notmatch "(node_modules|\.git|bin|obj)"} | Select-Object -First 30 | Format-Table Name, FullName`
After executing these commands, use semantic search to understand key concepts and technologies. Look for:
- Configuration files (package.json, pom.xml, requirements.txt, etc.)
- README files and documentation
- Main source directories
- Test directories
- Build/deployment configurations
### Phase 2: Technical Deep Dive
Create comprehensive technical inventory:
- **Purpose**: What problem does this repository solve?
- **Architecture**: How is the code organized?
- **Technologies**: What languages, frameworks, and tools are used?
- **Key Components**: What are the main modules/services/features?
- **Data Flow**: How does information move through the system?
### Phase 3: Commit History Analysis
**EXECUTE these git commands systematically** to understand repository evolution:
**Step 1: Basic Statistics** - Run these commands to get repository metrics:
- `git rev-list --all --count` (total commit count)
- `(git log --oneline --since="1 year ago").Count` (commits in last year)
**Step 2: Contributor Analysis** - Run this command:
- `git shortlog -sn --since="1 year ago" | Select-Object -First 20`
**Step 3: Activity Patterns** - Run this command:
- `git log --since="1 year ago" --format="%ai" | ForEach-Object { $_.Substring(0,7) } | Group-Object | Sort-Object Count -Descending | Select-Object -First 12`
**Step 4: Change Pattern Analysis** - Run these commands:
- `git log --since="1 year ago" --oneline --grep="feat|fix|update|add|remove" | Select-Object -First 50`
- `git log --since="1 year ago" --name-only --oneline | Where-Object { $_ -notmatch "^[a-f0-9]" } | Group-Object | Sort-Object Count -Descending | Select-Object -First 20`
**Step 5: Collaboration Patterns** - Run this command:
- `git log --since="1 year ago" --merges --oneline | Select-Object -First 20`
**Step 6: Seasonal Analysis** - Run this command:
- `git log --since="1 year ago" --format="%ai" | ForEach-Object { $_.Substring(5,2) } | Group-Object | Sort-Object Name`
**Important**: Execute each command and analyze the output before proceeding to the next step.
**Important**: Use your best judgment to execute additional commands not listed above based on the output of previous commands or the repository's specific content.
### Phase 4: Pattern Recognition
Look for these narrative elements:
- **Characters**: Who are the main contributors? What are their specialties?
- **Seasons**: Are there patterns by month/quarter? Holiday effects?
- **Themes**: What types of changes dominate? (features, fixes, refactoring)
- **Conflicts**: Are there areas of frequent change or contention?
- **Evolution**: How has the repository grown and changed over time?
## Output Format
### REPOSITORY_SUMMARY.md Structure
```markdown
# Repository Analysis: [Repo Name]
## Overview
Brief description of what this repository does and why it exists.
## Architecture
High-level technical architecture and organization.
## Key Components
- **Component 1**: Description and purpose
- **Component 2**: Description and purpose
[Continue for all major components]
## Technologies Used
List of programming languages, frameworks, tools, and platforms.
## Data Flow
How information moves through the system.
## Team and Ownership
Who maintains different parts of the codebase.
```
### THE_STORY_OF_THIS_REPO.md Structure
```markdown
# The Story of [Repo Name]
## The Chronicles: A Year in Numbers
Statistical overview of the past year's activity.
## Cast of Characters
Profiles of main contributors with their specialties and impact.
## Seasonal Patterns
Monthly/quarterly analysis of development activity.
## The Great Themes
Major categories of work and their significance.
## Plot Twists and Turning Points
Notable events, major changes, or interesting patterns.
## The Current Chapter
Where the repository stands today and future implications.
```
## Key Instructions
1. **Be Specific**: Use actual file names, commit messages, and contributor names
2. **Find Stories**: Look for interesting patterns, not just statistics
3. **Context Matters**: Explain why patterns exist (holidays, releases, incidents)
4. **Human Element**: Focus on the people and teams behind the code
5. **Technical Depth**: Balance narrative with technical accuracy
6. **Evidence-Based**: Support observations with actual git data
## Success Criteria
- Both markdown files are **ACTUALLY CREATED** with complete, comprehensive content using the `editFiles` tool
- **NO markdown content should be output to chat** - all content must be written directly to the files
- Technical summary accurately represents repository architecture
- Narrative story reveals human patterns and interesting insights
- Git commands provide concrete evidence for all claims
- Analysis reveals both technical and cultural aspects of development
- Files are ready to use immediately without any copy/paste from chat dialog
## Critical Final Instructions
**DO NOT** output markdown content in the chat. **DO** use the `editFiles` tool to create both files with complete content. The deliverables are the actual files, not chat output.
Remember: Every repository tells a story. Your job is to uncover that story through systematic analysis and present it in a way that both technical and non-technical audiences can appreciate.Related Skills
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