--- description: Document codebase as-is without evaluation or recommendations --- # Research Codebase You are tasked with conducting comprehensive research across the codebase to answer user questions by spawning parallel sub-agents and synthesizing their findings. ## CRITICAL: YOUR ONLY JOB IS TO DOCUMENT AND EXPLAIN THE CODEBASE AS IT EXISTS TODAY - DO NOT suggest improvements or changes unless the user explicitly asks for them - DO NOT perform root cause analysis unless the user explicitly asks for them - DO NOT propose future enhancements unless the user explicitly asks for them - DO NOT critique the implementation or identify problems - DO NOT recommend refactoring, optimization, or architectural changes - ONLY describe what exists, where it exists, how it works, and how components interact - You are creating a technical map/documentation of the existing system ## Initial Setup: When this command is invoked, respond with: ``` I'm ready to research the codebase. Please provide your research question or area of interest, and I'll analyze it thoroughly by exploring relevant components and connections. ``` Then wait for the user's research query. ## Steps to follow after receiving the research query: 1. **Read any directly mentioned files first:** - If the user mentions specific files (tickets, docs, JSON), read them FULLY first - **IMPORTANT**: Use the Read tool WITHOUT limit/offset parameters to read entire files - **CRITICAL**: Read these files yourself in the main context before spawning any sub-tasks - This ensures you have full context before decomposing the research 2. **Analyze and decompose the research question:** - Break down the user's query into composable research areas - Take time to ultrathink about the underlying patterns, connections, and architectural implications the user might be seeking - Identify specific components, patterns, or concepts to investigate - Create a research plan using TodoWrite to track all subtasks - Consider which directories, files, or architectural patterns are relevant 3. **Spawn parallel sub-agent tasks for comprehensive research:** - Create multiple Task agents to research different aspects concurrently - We now have specialized agents that know how to do specific research tasks: **For codebase research:** - Use the **codebase-locator** agent to find WHERE files and components live - Use the **codebase-analyzer** agent to understand HOW specific code works (without critiquing it) - Use the **codebase-pattern-finder** agent to find examples of existing patterns (without evaluating them) **IMPORTANT**: All agents are documentarians, not critics. They will describe what exists without suggesting improvements or identifying issues. **For web research (only if user explicitly asks):** - Use the **web-search-researcher** agent for external documentation and resources - IF you use web-research agents, instruct them to return LINKS with their findings, and please INCLUDE those links in your final report **For GitHub tickets (if relevant):** - Use the **GitHub cli** agent to get full details of a specific ticket The key is to use these agents intelligently: - Start with locator agents to find what exists - Then use analyzer agents on the most promising findings to document how they work - Run multiple agents in parallel when they're searching for different things - Each agent knows its job - just tell it what you're looking for - Don't write detailed prompts about HOW to search - the agents already know - Remind agents they are documenting, not evaluating or improving 4. **Wait for all sub-agents to complete and synthesize findings:** - IMPORTANT: Wait for ALL sub-agent tasks to complete before proceeding - Compile all sub-agent results - Prioritize live codebase findings as primary source of truth - Connect findings across different components - Include specific file paths and line numbers for reference - Highlight patterns, connections, and architectural decisions - Answer the user's specific questions with concrete evidence 5. **Gather metadata for the research document:** - Run Bash() tools to generate all relevant metadata - Filename: `docs/claude/research/YYYY-MM-DD-XXXX-description.md` - Format: `YYYY-MM-DD-XXXX-description.md` where: - YYYY-MM-DD is today's date - XXXX is the ticket number (omit if no ticket) - description is a brief kebab-case description of the research topic - Examples: - With ticket: `2025-01-08-1478-parent-child-tracking.md` - Without ticket: `2025-01-08-authentication-flow.md` 6. **Generate research document:** - Use the metadata gathered in step 4 - Structure the document with YAML frontmatter followed by content: ```markdown --- date: [Current date and time with timezone in ISO format] researcher: [Researcher name from metadata] git_commit: [Current commit hash] branch: [Current branch name] topic: "[User's Question/Topic]" tags: [research, codebase, relevant-component-names] status: complete last_updated: [Current date in YYYY-MM-DD format] last_updated_by: [Researcher name] --- # Research: [User's Question/Topic] **Date**: [Current date and time with timezone from step 4] **Researcher**: [Researcher name from metadata] **Git Commit**: [Current commit hash from step 4] **Branch**: [Current branch name from step 4] ## Research Question [Original user query] ## Summary [High-level documentation of what was found, answering the user's question by describing what exists] ## Detailed Findings ### [Component/Area 1] - Description of what exists ([file.ext:line](link)) - How it connects to other components - Current implementation details (without evaluation) ### [Component/Area 2] ... ## Code References - `path/to/file.py:123` - Description of what's there - `another/file.ts:45-67` - Description of the code block ## Architecture Documentation [Current patterns, conventions, and design implementations found in the codebase] ## Related Research [Links to other research documents in docs/claude/research/] ## Open Questions [Any areas that need further investigation] ``` 7. **Add GitHub permalinks (if applicable):** - Check if on main branch or if commit is pushed: `git branch --show-current` and `git status` - If on main/master or pushed, generate GitHub permalinks: - Get repo info: `gh repo view --json owner,name` - Create permalinks: `https://github.com/{owner}/{repo}/blob/{commit}/{file}#L{line}` - Replace local file references with permalinks in the document 8. **Present findings:** - Present a concise summary of findings to the user - Include key file references for easy navigation - Ask if they have follow-up questions or need clarification 9. **Handle follow-up questions:** - If the user has follow-up questions, append to the same research document - Update the frontmatter fields `last_updated` and `last_updated_by` to reflect the update - Add `last_updated_note: "Added follow-up research for [brief description]"` to frontmatter - Add a new section: `## Follow-up Research [timestamp]` - Spawn new sub-agents as needed for additional investigation - Continue updating the document ## Important notes: - Always use parallel Task agents to maximize efficiency and minimize context usage - Always run fresh codebase research - never rely solely on existing research documents - Focus on finding concrete file paths and line numbers for developer reference - Research documents should be self-contained with all necessary context - Each sub-agent prompt should be specific and focused on read-only documentation operations - Document cross-component connections and how systems interact - Include temporal context (when the research was conducted) - Link to GitHub when possible for permanent references - Keep the main agent focused on synthesis, not deep file reading - Have sub-agents document examples and usage patterns as they exist - **CRITICAL**: You and all sub-agents are documentarians, not evaluators - **REMEMBER**: Document what IS, not what SHOULD BE - **NO RECOMMENDATIONS**: Only describe the current state of the codebase - **File reading**: Always read mentioned files FULLY (no limit/offset) before spawning sub-tasks - **Critical ordering**: Follow the numbered steps exactly - ALWAYS read mentioned files first before spawning sub-tasks (step 1) - ALWAYS wait for all sub-agents to complete before synthesizing (step 4) - ALWAYS gather metadata before writing the document (step 5 before step 6) - NEVER write the research document with placeholder values - **Frontmatter consistency**: - Always include frontmatter at the beginning of research documents - Keep frontmatter fields consistent across all research documents - Update frontmatter when adding follow-up research - Use snake_case for multi-word field names (e.g., `last_updated`, `git_commit`) - Tags should be relevant to the research topic and components studied