Rust Documentation
About
Discover a comprehensive resource hub for AI applications, offering easily accessible Rust documentation, coding templates, and troubleshooting answers. Accessible via a TypeScript server, this platform aggregates and organizes content from docs.rs, GitHub, and various community outlets.
Explore Similar MCP Servers
Rust Docs
Discover an advanced approach to managing Rust crate documentation through seamless integration with LlamaIndex's HTML reader. Benefit from smart file selection algorithms, eliminating duplicates, and enjoy flexible parsing options for in-depth analysis.
Code Assistant
Discover a cutting-edge server for exploring Rust codebases. Unleash the power of autonomous navigation, file summarization, and multi-provider LLM assistance to enhance code reading, writing, and comprehension.
TypeScribe
Enhances the accessibility of TypeScript API documentation by facilitating seamless search functionality for developers. Simplifies the process of exploring symbol databases, navigating type hierarchies, locating implementations, and inspecting function parameters within intricate TypeScript projects.
Rust Docs
Explore Rust documentation seamlessly on docs.rs with seamless integration, allowing for convenient search, access to crates, retrieval of documentation, type details, feature flags, versions, and source code for your Rust initiatives.
CrateDocs
Efficiently fetches and transforms Rust crate details sourced from docs.rs and crates.io, facilitating quick access to library insights for developers engaging in code creation and technical support endeavors.
Rust Local RAG
Discover a cutting-edge Model Context Protocol (MCP) offering swift local document access and management. Leveraging Rust for unparalleled PDF handling capabilities and semantic search powered by Ollama embeddings, this protocol efficiently indexes PDF files within designated folders. Enjoy rapid document retrieval sans reliance on external solutions.
docs.rs
Explore Rust crate documentation effortlessly by accessing data from docs.rs via parsing rustdoc JSON information. Benefit from caching capabilities for seamless navigation through modules, structs, enums, traits, and functions within the codebase.
Documentation Manager
Facilitates AI engagement with markdown documentation by employing a SQL-style querying approach to manage documentation effectively, including creation, viewing, editing, and exploration, leveraging YAML frontmatter metadata compatibility within Node.js and Deno setups.
AWS Lambda Powertools Documentation Search
Discover and access AWS Lambda Powertools documentation seamlessly across various platforms using an innovative TypeScript server. Benefit from swift local search features and reliable content caching for enhanced performance.
Technical Documentation Search
Unlock a specialized search tool within the Model Context Protocol (MCP) ecosystem, enabling AI assistants to seamlessly retrieve and utilize technical insights from LangChain, LlamaIndex, and OpenAI repositories. This innovative tool harnesses the power of the Brave Search API to efficiently locate, retrieve, and extract pertinent information, enhancing the overall AI experience.
Julia Documentation
Discover seamless integration of Julia documentation and access to source code for easy reference and exploration during AI projects.
Ethereal Rust
Discover a versatile and secure Rust framework ideal for crafting applications with advanced tool control, seamless authentication, and tailored middleware integration. Experience a dynamic selection of stdio and SSE communication channels for enhanced connectivity.
Docs.rs
Enhance your Rust documentation process with streamlined tools designed to create, organize, and locate crate documentation efficiently using cargo doc commands. Benefit from advanced features such as caching mechanisms and robust error management.
Rust Docs
Discover comprehensive Rust crate documentation through the Model Context Protocol (MCP), offering crucial insights for enhancing Rust programming projects.
Docs RAG
Utilizing a RAG framework developed with TypeScript, LlamaIndex, and Gemini embeddings, this protocol empowers artificial intelligence to search and assess native files and Git repositories effectively.