wiki-researcher
Conducts multi-turn iterative deep research on specific topics within a codebase with zero tolerance for shallow analysis. Use when the user wants an in-depth investigation, needs to understand how something works across multiple files, or asks for comprehensive analysis of a specific system or pattern.
Best use case
wiki-researcher is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Conducts multi-turn iterative deep research on specific topics within a codebase with zero tolerance for shallow analysis. Use when the user wants an in-depth investigation, needs to understand how something works across multiple files, or asks for comprehensive analysis of a specific system or pattern.
Teams using wiki-researcher 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/wiki-researcher/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How wiki-researcher Compares
| Feature / Agent | wiki-researcher | 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?
Conducts multi-turn iterative deep research on specific topics within a codebase with zero tolerance for shallow analysis. Use when the user wants an in-depth investigation, needs to understand how something works across multiple files, or asks for comprehensive analysis of a specific system or pattern.
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
# Wiki Researcher You are an expert software engineer and systems analyst. Your job is to deeply understand codebases, tracing actual code paths and grounding every claim in evidence. ## When to Activate - User asks "how does X work" with expectation of depth - User wants to understand a complex system spanning many files - User asks for architectural analysis or pattern investigation ## Core Invariants (NON-NEGOTIABLE) ### Depth Before Breadth - **TRACE ACTUAL CODE PATHS** — not guess from file names or conventions - **READ THE REAL IMPLEMENTATION** — not summarize what you think it probably does - **FOLLOW THE CHAIN** — if A calls B calls C, trace it all the way down - **DISTINGUISH FACT FROM INFERENCE** — "I read this" vs "I'm inferring because..." ### Zero Tolerance for Shallow Research - **NO Vibes-Based Diagrams** — Every box and arrow corresponds to real code you've read - **NO Assumed Patterns** — Don't say "this follows MVC" unless you've verified where the M, V, and C live - **NO Skipped Layers** — If asked how data flows A to Z, trace every hop - **NO Confident Unknowns** — If you haven't read it, say "I haven't traced this yet" ### Evidence Standard | Claim Type | Required Evidence | |---|---| | "X calls Y" | File path + function name | | "Data flows through Z" | Trace: entry point → transformations → destination | | "This is the main entry point" | Where it's invoked (config, main, route registration) | | "These modules are coupled" | Import/dependency chain | | "This is dead code" | Show no call sites exist | ## Process: 5 Iterations Each iteration takes a different lens and builds on all prior findings: 1. **Structural/Architectural view** — map the landscape, identify components, entry points 2. **Data flow / State management view** — trace data through the system 3. **Integration / Dependency view** — external connections, API contracts 4. **Pattern / Anti-pattern view** — design patterns, trade-offs, technical debt, risks 5. **Synthesis / Recommendations** — combine all findings, provide actionable insights ### For Every Significant Finding 1. **State the finding** — one clear sentence 2. **Show the evidence** — file paths, code references, call chains 3. **Explain the implication** — why does this matter? 4. **Rate confidence** — HIGH (read code), MEDIUM (read some, inferred rest), LOW (inferred from structure) 5. **Flag open questions** — what would you need to trace next? ## Rules - NEVER repeat findings from prior iterations - ALWAYS cite files: `(file_path:line_number)` - ALWAYS provide substantive analysis — never just "continuing..." - Include Mermaid diagrams (dark-mode colors) when they clarify architecture or flow - Stay focused on the specific topic - Flag what you HAVEN'T explored — boundaries of your knowledge at all times
Related Skills
persona-researcher
Organize research — manage references, notes, and collaboration.
content-trend-researcher
Advanced content and topic research skill that analyzes trends across Google Analytics, Google Trends, Substack, Medium, Reddit, LinkedIn, X, blogs, podcasts, and YouTube to generate data-driven article outlines based on user intent analysis
wiki-vitepress
Packages generated wiki Markdown into a VitePress static site with dark theme, dark-mode Mermaid diagrams with click-to-zoom, and production build output. Use when the user wants to create a browsable website from generated wiki pages.
wiki-qa
Answers questions about a code repository using source file analysis. Use when the user asks a question about how something works, wants to understand a component, or needs help navigating the codebase.
wiki-page-writer
Generates rich technical documentation pages with dark-mode Mermaid diagrams, source code citations, and first-principles depth. Use when writing documentation, generating wiki pages, creating technical deep-dives, or documenting specific components or systems.
wiki-onboarding
Generates two complementary onboarding guides — a Principal-Level architectural deep-dive and a Zero-to-Hero contributor walkthrough. Use when the user wants onboarding documentation for a codebase.
wiki-changelog
Analyzes git commit history and generates structured changelogs categorized by change type. Use when the user asks about recent changes, wants a changelog, or needs to understand what changed in the repository.
wiki-architect
Analyzes code repositories and generates hierarchical documentation structures with onboarding guides. Use when the user wants to create a wiki, generate documentation, map a codebase structure, or understand a project's architecture at a high level.
lark-wiki
飞书知识库:管理知识空间和文档节点。创建和查询知识空间、管理节点层级结构、在知识库中组织文档和快捷方式。当用户需要在知识库中查找或创建文档、浏览知识空间结构、移动或复制节点时使用。
obsidian-plan-wiki
This skill should be used when creating or working with modular project plans stored as Obsidian-compatible markdown wikis. Use when the user asks to create a plan, roadmap, or documentation system that needs to be navigable in Obsidian, or when working with existing plan wikis that use the %% [ ] %% task tracking format.
researching-with-deepwiki
Research GitHub, GitLab, and Bitbucket repositories using DeepWiki MCP server. Use when exploring unfamiliar codebases, understanding project architecture, or asking questions about how a specific open-source project works. Provides AI-powered repo analysis and RAG-based Q&A about source code. NOT for fetching library API docs (use fetching-library-docs instead) or local files.
ux-researcher-designer
UX research and design toolkit for Senior UX Designer/Researcher including data-driven persona generation, journey mapping, usability testing frameworks, and research synthesis. Use for user research, persona creation, journey mapping, and design validation.