docs-seeker
Documentation Discovery & Analysis
Overview
Intelligent discovery and analysis of technical documentation through multiple strategies:
- llms.txt-first: Search for standardized AI-friendly documentation
- Repository analysis: Use Repomix to analyze GitHub repositories
- Parallel exploration: Deploy multiple Explorer agents for comprehensive coverage
- Fallback research: Use Researcher agents when other methods unavailable
Core Workflow
Phase 1: Initial Discovery
-
Identify target
- Extract library/framework name from user request
- Note version requirements (default: latest)
- Clarify scope if ambiguous
- Identify if target is GitHub repository or website
-
Search for llms.txt (PRIORITIZE context7.com)
First: Try context7.com patterns
For GitHub repositories:
Pattern: https://context7.com/{org}/{repo}/llms.txt Examples: - https://github.com/imagick/imagick → https://context7.com/imagick/imagick/llms.txt - https://github.com/vercel/next.js → https://context7.com/vercel/next.js/llms.txt - https://github.com/better-auth/better-auth → https://context7.com/better-auth/better-auth/llms.txtFor websites:
Pattern: https://context7.com/websites/{normalized-domain-path}/llms.txt Examples: - https://docs.imgix.com/ → https://context7.com/websites/imgix/llms.txt - https://docs.byteplus.com/en/docs/ModelArk/ → https://context7.com/websites/byteplus_en_modelark/llms.txt - https://docs.haystack.deepset.ai/docs → https://context7.com/websites/haystack_deepset_ai/llms.txt - https://ffmpeg.org/doxygen/8.0/ → https://context7.com/websites/ffmpeg_doxygen_8_0/llms.txtTopic-specific searches (when user asks about specific feature):
Pattern: https://context7.com/{path}/llms.txt?topic={query} Examples: - https://context7.com/shadcn-ui/ui/llms.txt?topic=date - https://context7.com/shadcn-ui/ui/llms.txt?topic=button - https://context7.com/vercel/next.js/llms.txt?topic=cache - https://context7.com/websites/ffmpeg_doxygen_8_0/llms.txt?topic=compressFallback: Traditional llms.txt search
WebSearch: "[library name] llms.txt site:[docs domain]"Common patterns:
https://docs.[library].com/llms.txthttps://[library].dev/llms.txthttps://[library].io/llms.txt
→ Found? Proceed to Phase 2 → Not found? Proceed to Phase 3
Phase 2: llms.txt Processing
Single URL:
- WebFetch to retrieve content
- Extract and present information
Multiple URLs (3+):
- CRITICAL: Launch multiple Explorer agents in parallel
- One agent per major documentation section (max 5 in first batch)
- Each agent reads assigned URLs
- Aggregate findings into consolidated report
Example:
Launch 3 Explorer agents simultaneously:
- Agent 1: getting-started.md, installation.md
- Agent 2: api-reference.md, core-concepts.md
- Agent 3: examples.md, best-practices.md
Phase 3: Repository Analysis
When llms.txt not found:
- Find GitHub repository via WebSearch
- Use Repomix to pack repository:
npm install -g repomix # if needed git clone [repo-url] /tmp/docs-analysis cd /tmp/docs-analysis repomix --output repomix-output.xml - Read repomix-output.xml and extract documentation
Repomix benefits:
- Entire repository in single AI-friendly file
- Preserves directory structure
- Optimized for AI consumption
Phase 4: Fallback Research
When no GitHub repository exists:
- Launch multiple Researcher agents in parallel
- Focus areas: official docs, tutorials, API references, community guides
- Aggregate findings into consolidated report
Agent Distribution Guidelines
- 1-3 URLs: Single Explorer agent
- 4-10 URLs: 3-5 Explorer agents (2-3 URLs each)
- 11+ URLs: 5-7 Explorer agents (prioritize most relevant)
Version Handling
Latest (default):
- Search without version specifier
- Use current documentation paths
Specific version:
- Include version in search:
[library] v[version] llms.txt - Check versioned paths:
/v[version]/llms.txt - For repositories: checkout specific tag/branch
Output Format
# Documentation for [Library] [Version]
## Source
- Method: [llms.txt / Repository / Research]
- URLs: [list of sources]
- Date accessed: [current date]
## Key Information
[Extracted relevant information organized by topic]
## Additional Resources
[Related links, examples, references]
## Notes
[Any limitations, missing information, or caveats]
Quick Reference
Tool selection:
- WebSearch → Find llms.txt URLs, GitHub repositories
- WebFetch → Read single documentation pages
- Task (Explore) → Multiple URLs, parallel exploration
- Task (Researcher) → Scattered documentation, diverse sources
- Repomix → Complete codebase analysis
Popular llms.txt locations (try context7.com first):
- Astro: https://context7.com/withastro/astro/llms.txt
- Next.js: https://context7.com/vercel/next.js/llms.txt
- Remix: https://context7.com/remix-run/remix/llms.txt
- shadcn/ui: https://context7.com/shadcn-ui/ui/llms.txt
- Better Auth: https://context7.com/better-auth/better-auth/llms.txt
Fallback to official sites if context7.com unavailable:
- Astro: https://docs.astro.build/llms.txt
- Next.js: https://nextjs.org/llms.txt
- Remix: https://remix.run/llms.txt
- SvelteKit: https://kit.svelte.dev/llms.txt
Error Handling
- llms.txt not accessible → Try alternative domains → Repository analysis
- Repository not found → Search official website → Use Researcher agents
- Repomix fails → Try /docs directory only → Manual exploration
- Multiple conflicting sources → Prioritize official → Note versions
Key Principles
- Prioritize context7.com for llms.txt — Most comprehensive and up-to-date aggregator
- Use topic parameters when applicable — Enables targeted searches with ?topic=...
- Use parallel agents aggressively — Faster results, better coverage
- Verify official sources as fallback — Use when context7.com unavailable
- Report methodology — Tell user which approach was used
- Handle versions explicitly — Don't assume latest
Detailed Documentation
For comprehensive guides, examples, and best practices:
Workflows:
- WORKFLOWS.md — Detailed workflow examples and strategies
Reference guides:
- Tool Selection — Complete guide to choosing and using tools
- Documentation Sources — Common sources and patterns across ecosystems
- Error Handling — Troubleshooting and resolution strategies
- Best Practices — 8 essential principles for effective discovery
- Performance — Optimization techniques and benchmarks
- Limitations — Boundaries and success criteria
More from aia-11-hn-mib/mib-mockinterviewaibot
gemini-video-understanding
Analyze videos using Google's Gemini API - describe content, answer questions, transcribe audio with visual descriptions, reference timestamps, clip videos, and process YouTube URLs. Supports 9 video formats, multiple models (Gemini 2.5/2.0), and context windows up to 2M tokens (6 hours of video).
21imagemagick
Guide for using ImageMagick command-line tools to perform advanced image processing tasks including format conversion, resizing, cropping, effects, transformations, and batch operations. Use when manipulating images programmatically via shell commands.
14remix-icon
Guide for implementing RemixIcon - an open-source neutral-style icon library with 3,100+ icons in outlined and filled styles. Use when adding icons to applications, building UI components, or designing interfaces. Supports webfonts, SVG, React, Vue, and direct integration.
8obsidian-qa-saver
Save Q&A conversations to Obsidian notes with proper formatting, metadata, and organization. Use this skill when the user explicitly requests to save a conversation, question-answer exchange, or explanation to their Obsidian vault. Automatically formats content as document-style notes with timestamps, tags, and project links.
6repomix
Package entire code repositories into single AI-friendly files using Repomix. Capabilities include pack codebases with customizable include/exclude patterns, generate multiple output formats (XML, Markdown, plain text), preserve file structure and context, optimize for AI consumption with token counting, filter by file types and directories, add custom headers and summaries. Use when packaging codebases for AI analysis, creating repository snapshots for LLM context, analyzing third-party libraries, preparing for security audits, generating documentation context, or evaluating unfamiliar codebases.
5gemini-vision
Guide for implementing Google Gemini API image understanding - analyze images with captioning, classification, visual QA, object detection, segmentation, and multi-image comparison. Use when analyzing images, answering visual questions, detecting objects, or processing documents with vision.
5