wren-engine
Сообществоот Canner
🤖 The Semantic Engine for Model Context Protocol(MCP) Clients and AI Agents 🔥
Описание
<p align="center"> <a href="https://getwren.ai"> <picture> <source media="(prefers-color-scheme: light)" srcset="./misc/wrenai_logo.png"> <img src="./misc/wrenai_logo.png"> </picture> <h1 align="center">Wren Engine</h1> </a> </p> <p align="center"> <a aria-label="Follow us" href="https://x.com/getwrenai"> <img alt="" src="https://img.shields.io/badge/-@getwrenai-blue?style=for-the-badge&logo=x&logoColor=white&labelColor=gray&logoWidth=20"> </a> <a aria-label="License" href="https://github.com/Canner/wren-engine/blob/main/LICENSE"> <img alt="" src="https://img.shields.io/github/license/canner/wren-engine?color=blue&style=for-the-badge"> </a> <a aria-label="Join the community on GitHub" href="https://discord.gg/5DvshJqG8Z"> <img alt="" src="https://img.shields.io/badge/-JOIN%20THE%20COMMUNITY-blue?style=for-the-badge&logo=discord&logoColor=white&labelColor=grey&logoWidth=20"> </a> <a aria-label="Canner" href="https://cannerdata.com/"> <img src="https://img.shields.io/badge/%F0%9F%A7%A1-Made%20by%20Canner-blue?style=for-the-badge"> </a> </p> > Wren Engine is the Semantic Engine for MCP Clients and AI Agents. > [Wren AI](https://github.com/Canner/WrenAI) GenBI AI Agent is based on Wren Engine. <img src="./misc/wren_engine_overview.png"> ## 🔌 Supported Data Sources - [BigQuery](https://docs.getwren.ai/oss/wren_engine_api#tag/BigQueryConnectionInfo) - [Google Cloud Storage](https://docs.getwren.ai/oss/wren_engine_api#tag/GcsFileConnectionInfo) - [Local Files](https://docs.getwren.ai/oss/wren_engine_api#tag/LocalFileConnectionInfo) - [MS SQL Server](https://docs.getwren.ai/oss/wren_engine_api#tag/MSSqlConnectionInfo) - [Minio](https://docs.getwren.ai/oss/wren_engine_api#tag/MinioFileConnectionInfo) - [MySQL Server](https://docs.getwren.ai/oss/wren_engine_api#tag/MySqlConnectionInfo) - [Oracle Server](https://docs.getwren.ai/oss/wren_engine_api#tag/OracleConnectionInfo) - [PostgreSQL Server](https://docs.getwren.ai/oss/wren_engine_api#tag/PostgresConnectionInfo) - [Amazon S3](https://docs.getwren.ai/oss/wren_engine_api#tag/S3FileConnectionInfo) - [Snowflake](https://docs.getwren.ai/oss/wren_engine_api#tag/SnowflakeConnectionInfo) - [Trino](https://docs.getwren.ai/oss/wren_engine_api#tag/TrinoConnectionInfo) ## 😫 Challenge Today At the enterprise level, the stakes - and the complexity - are much higher. Businesses run on structured data stored in cloud warehouses, relational databases, and secure filesystems. From BI dashboards to CRM updates and compliance workflows, AI must not only execute commands but also **understand and retrieve the right data, with precision and in context**. While many community and official MCP servers already support connections to major databases like PostgreSQL, MySQL, SQL Server, and more, there's a problem: **raw access to data isn't enough**. Enterprises need: - Accurate semantic understanding of their data models - Trusted calculations and aggregations in reporting - Clarity on business terms, like "active customer," "net revenue," or "churn rate" - User-based permissions and access control <p align="center"> <img width="920" height="638" alt="without_wren_engine" src="https://github.com/user-attachments/assets/3295dde5-ce41-4e56-a8ad-daff6a0c3459" /> </p> Natural language alone isn't enough to drive complex workflows across enterprise data systems. You need a layer that interprets intent, maps it to the correct data, applies calculations accurately, and ensures security. ## 🎯 Our Mission Wren Engine is on a mission to power the future of MCP clients and AI agents through the Model Context Protocol (MCP) — a new open standard that connects LLMs with tools, databases, and enterprise systems. As part of the MCP ecosystem, Wren Engine provides a **semantic engine** powered the next generation semantic layer that enables AI agents to access business data with accuracy, context, and governance. By building the semantic layer directly into MCP clients, such as Claude, Cline, Cursor, etc. Wren Engine empowers AI Agents with precise business context and ensures accurate data interactions across diverse enterprise environments. We believe the future of enterprise AI lies in **context-aware, composable systems**. That’s why Wren Engine is designed to be: - 🔌 **Embeddable** into any MCP client or AI agentic workflow - 🔄 **Interoperable** with modern data stacks (PostgreSQL, MySQL, Snowflake, etc.) - 🧠 **Semantic-first**, enabling AI to “understand” your data model and business logic - 🔐 **Governance-ready**, respecting roles, access controls, and definitions <p align="center"> <img width="1267" height="705" alt="with_wren_engine" src="https://github.com/user-attachments/assets/3a6531fe-4731-4f21-ae9a-786b219f3c0e" /> </p> With Wren Engine, you can scale AI adoption across teams — not just with better automation, but with better understanding. ***Check our full article*** 🤩 [Our Mission - Fueling the N
Отзывы (0)
Пока нет отзывов. Будьте первым!
Статистика
Информация
Технологии
Похожие серверы
mcp-chain-of-draft-server
Chain of Draft Server is a powerful AI-driven tool that helps developers make better decisions through systematic, iterative refinement of thoughts and designs. It integrates seamlessly with popular AI agents and provides a structured approach to reasoning, API design, architecture decisions, code reviews, and implementation planning.
mcp-use-ts
mcp-use is the framework for MCP with the best DX - Build AI agents, create MCP servers with UI widgets, and debug with built-in inspector. Includes client SDK, server SDK, React hooks, and powerful dev tools.
mesh
Define and compose secure MCPs in TypeScript. Generate AI workflows and agents with React + Tailwind UI. Deploy anywhere.
rhinomcp
RhinoMCP connects Rhino 3D to AI Agent through the Model Context Protocol (MCP)