Context7 MCP llms.txt
Browse Context7 MCP documentation as markdown. Click any page in the sidebar to view it, or copy the full llms.txt for your AI tools.
What is Context7 MCP's llms.txt?
Context7 MCP publishes an /llms.txt file that provides AI systems with a structured index of its documentation. It follows the llms.txt specification, organizing links to guides, API references, and tutorials under section headings so that LLMs like ChatGPT, Claude, and Gemini can quickly understand what Context7 MCP offers and where to find details.
Sections: Docs · OpenAPI Specs
Add Context7 MCP Docs to Your AI Assistant
Select your tool to see how to add Context7 MCP's llms.txt as a documentation source.
- 1
Open any chat or composer panel
- 2
Type @Docs and select "Add new doc"
- 3
Paste the URL: https://context7.com/llms.txt
- 4
Wait for the green dot (indexing complete)
- 5
Reference @Docs in chat when asking about Context7 MCP
Cursor crawls the URL and indexes all subpages. Add a trailing slash to index child pages too.
Frequently Asked Questions
Context7 MCP publishes its llms.txt at https://context7.com/llms.txt. This file provides a structured, markdown-formatted index of Context7 MCP's documentation that AI systems can consume to understand the project's APIs, guides, and references.
Copy the llms.txt content and paste it into your AI assistant (Cursor, Windsurf, Claude, ChatGPT) as context. This gives the AI an accurate map of Context7 MCP's documentation so it can provide better code suggestions and answers about Context7 MCP.
Context7 MCP's llms.txt contains 2 sections and 66 documentation links in 9.6 KB (~2.5k tokens). Key sections include Docs, OpenAPI Specs.
The concise llms.txt index is approximately 2.5k tokens (9.6 KB). Most AI assistants can fit this within their context window. For the full expanded documentation, look for an llms-full.txt variant which embeds all content inline.
Context7 Platform -- Up-to-date code documentation for LLMs and AI code editors. Context7 MCP's llms.txt file helps AI systems understand this by providing a structured overview of its documentation, making it easier for developers to get accurate AI-assisted help when working with Context7 MCP.
Yes. Use the free llms.txt generator at mdream.dev/tools/llms-txt/generator to crawl your site and produce a spec-compliant llms.txt file. You can also validate existing files with the llms.txt validator.
Browse More llms.txt Files
Get 10X more out of Claude Code, Codex or any coding agent
Onyx AIOnyx is the open-source AI platform for enterprise search, chat, and agents. It connects to all your company's data sources and lets teams find information, build custom AI agents, and deploy any LLM - self-hosted or cloud. SOC 2 Type II certified, GDPR compliant.
https://qdrant.tech/ llms.txtQdrant is a cutting-edge platform focused on delivering exceptional performance and efficiency in vector similarity search. As a robust vector database, it specializes in managing, searching, and retrieving high-dimensional vector data, essential for enhancing AI applications, machine learning, and modern search engines. With a suite of powerful features such as state-of-the-art hybrid search capabilities, retrieval-augmented generation (RAG) applications, and dense and sparse vector support, Qdrant stands out as an industry leader. Its offerings include managed cloud services, enabling users to harness the robust functionality of Qdrant without the burden of maintaining infrastructure. The platform supports advanced data security measures and seamless integrations with popular platforms and frameworks, catering to diverse data handling and analytic needs. Additionally, Qdrant offers comprehensive solutions for complex searching requirements through its innovative Query API and multivector representations, allowing for precise matching and enhanced retrieval quality. With its commitment to open-source principles and continuous innovation, Qdrant tailors solutions to meet both small-scale projects and enterprise-level demands efficiently, helping organizations unlock profound insights from their unstructured data and optimize their AI capabilities.
Libsodium documentationLlamaIndex DocumentationLlamaIndex is a framework for building LLM-powered applications over your data. It supports Python and TypeScript, with integrations for LlamaCloud managed services.
nut.jsDesktop automation library for Node.js. Control mouse, keyboard, and screen across Windows, macOS, and Linux.
ZedA high-performance, multiplayer code editor from the creators of Atom and Tree-sitter. Zed is a next-generation editor built in Rust with GPU acceleration for lightning-fast editing, real-time collaboration, and AI-powered assistance. The core editor is open source and developed in public.