by spgoodman
Enables AI agents to securely access and manipulate enterprise data and services via a unified MCP and OpenAPI bridge, supporting real‑time streaming, Azure Private Link, and modular custom APIs.
Createve AI Nexus Server provides a universal bridge that connects AI agents to line‑of‑business applications, sensor streams, document stores, and custom AI pipelines. It implements the Model Context Protocol (MCP) and exposes OpenAPI endpoints, allowing agents to read, write, and act on real‑world data with enterprise‑grade security.
docs/configuration.md
file.Q: Which AI platforms are supported? A: Any MCP‑enabled client (Microsoft Copilot Studio, Anthropic Claude) and any platform that can consume standard OpenAPI specifications (e.g., Dify, custom agents).
Q: How is data secured? A: Traffic is encrypted in transit, secrets are stored in Azure Key Vault, authentication can use Azure AD or API keys, and fine‑grained RBAC controls access to each capability.
Q: Can I run the server on‑premises? A: Yes. The server is containerised and can be deployed in any Kubernetes or Docker environment, with optional Private Link for on‑prem connectivity.
Q: Where do I find documentation?
A: Comprehensive guides are located in the docs
directory of the repository (setup, configuration, MCP integration, Azure reference architecture, etc.).
The Open-Source Bridge Between AI Agents and Enterprise Systems - Unlock Your Organization's Data and Capabilities
In today's AI landscape, the greatest challenge isn't the AI models themselves—it's connecting them to real-world data and systems. The Model Context Protocol (MCP) solves this by providing a universal standard for AI systems to securely access data and capabilities. Createve.AI Nexus, an open-source solution from RootUK, implements this standard to bridge AI agents with your enterprise systems, making deployment simple and scalable.
📢 Preview Feature Notice: MCP support in Microsoft Copilot Studio is currently in preview. Early adopters can start building their integration today to be ready when the feature becomes generally available.
Connect your AI agents to:
Why Choose Createve.AI Nexus? ✨
Universal AI Agent Integration: 🤖
Enterprise-Ready Architecture: 🏢
Real-Time Data Access: ⚡
Secure System Integration: 🔒
Real-World Deployment Examples: 🌟
Understanding MCP (Model Context Protocol) 🔗
MCP is an open standard that solves a critical challenge in AI deployment: connecting AI systems to real-world data and capabilities. Instead of building custom integrations for every data source, MCP provides:
Createve.AI Nexus implements MCP to make your data and systems accessible to any MCP-enabled AI agent, while also providing OpenAPI compatibility for traditional integration patterns.
Key Features: 💫
AI Agent Integration: 🤝
Enterprise Security: 🛡️
System Integration: 🔄
Development Framework: 👨💻
Processing Capabilities: ⚙️
Documentation: 📚
Comprehensive documentation is available in the docs
directory:
Expert Integration Services 💼
Need help deploying Createve.AI Nexus in your organization? RootUK provides enterprise consulting services:
Contact RootUK to discuss your enterprise AI integration needs.
License: ⚖️
This project is licensed under the Apache License v2
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