context7-skill
About
The Context7 skill provides version-specific documentation and code examples directly from Context7's database, allowing developers to verify library and framework details. It offers primary access via MCP tools like `resolve_library_id` and `query_docs`, with a CLI fallback script for when direct tools are unavailable. Use this skill to ensure your code references accurate API syntax and usage patterns for third-party dependencies.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/context7-skillCopy and paste this command in Claude Code to install this skill
Documentation
Context7 Skill
Overview
The Context7 skill connects you to accurate, version-specific documentation and code examples directly from the source. Use this skill to verify syntax, API details, and usage patterns for third-party libraries and frameworks, ensuring your code is based on the correct version.
Access Methods:
- MCP Tools (Primary): Direct calls to
resolve_library_idandquery_docs. - CLI Fallback (Secondary): A Python script (
scripts/context7_cli.py) using the FastMCP v2 client, intended for use when direct MCP tools are unavailable.
Prerequisites
- Context7 API Key: Must be set as the environment variable
CONTEXT7_API_KEY. - Python Manager (
uv): Required only if using the CLI fallback script.
Available Tools
1. Library Resolver (resolve-library-id)
Resolves a package or library name to a Context7-compatible library ID and returns a list of matches.
- MCP Call:
resolve_library_id(query="...", libraryName="...") - CLI Command:
uv run scripts/context7_cli.py resolve-library-id <name>
2. Documentation Query (query-docs)
Retrieves documentation and code examples using a specific library ID.
- MCP Call:
query_docs(libraryId="/org/project/version", query="...") - CLI Command:
uv run scripts/context7_cli.py query-docs <library_id> <query>
IMPORTANT: Tool names may have prefixes (e.g.,
context7_resolve_library_id) depending on the runtime environment. Always check available tools first.
Usage Guidelines
- Resolve First: Always obtain a valid library ID via
resolve_library_idbefore querying, unless the user provides a full ID (e.g.,/org/project/version). - Limit Attempts: Do not retry a tool call more than three times for the same query. If unsuccessful, proceed with the best available information.
Workflow
Step 1: Check Availability
Determine if the resolve_library_id and query_docs tools are directly available in your environment. If not, default to the CLI fallback commands.
Step 2: Resolve Library ID
Use resolve-library-id to identify the correct library.
Selection Criteria:
- Exact Match: Prioritize names that exactly match the user's request.
- Relevance: Ensure the description aligns with the user's intent.
- Quality: Look for high documentation coverage (snippet counts), reputation, and benchmark scores.
Action:
- If ambiguous, ask the user for clarification.
- Briefly explain the selected library to the user.
- If no good match is found, clearly state this and suggest query refinements.
Step 3: Query Documentation
Use query-docs with the resolved libraryId.
Handling Results:
- The tool returns a snippet or summary.
- Example Output:
Source: https://github.com/context7/react_dev/blob/main/learn.md ... (content) ... - Insufficient Info? If the returned text is incomplete, use a web fetch tool (if available) to retrieve the full content from the provided source URL.
Configuration
| Variable | Description | Required |
|---|---|---|
CONTEXT7_API_KEY | API key for authenticating with Context7. | Yes |
Resources
scripts/context7_cli.py: Unified CLI entry point for fallback access.references/troubleshooting.md: Solutions for common integration issues.
GitHub Repository
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