
AI Federation Network
STDIODistributed runtime system for federated AI services with edge computing capabilities.
Distributed runtime system for federated AI services with edge computing capabilities.
A distributed runtime system for federated AI services with edge computing capabilities.
The Model Context Protocol (MCP) enables federated connections between AI systems and various data sources through a standardized architecture. Here’s a complete implementation following the official specification:
This implementation provides a foundation for building federated MCP systems that can scale across multiple servers while maintaining the protocol’s security and standardization requirements. The federation layer enables seamless communication between different MCP servers, allowing AI systems to maintain context while moving between different tools and datasets.
The implementation supports both local and remote connections through multiple transport mechanisms, including stdio for local process communication and HTTP with Server-Sent Events for remote connections.
Security is maintained through strict capability negotiation and user consent requirement
Model Context Protocol (MCP) with Federation Support
Simplified Integration:
Core Components:
System Components:
Implementation Areas:
Protection Mechanisms:
MCP with federation support enables secure, standardized AI system integration across organizational boundaries while maintaining strict security controls and seamless data access.
complete implementation using both Deno and Node.js. Let's start with the project structure:
graph TD A[AI Federation Network] --> B[Core Runtime] B --> C[Edge Computing] B --> D[Network Layer] B --> E[Security] C --> F[Supabase] C --> G[Cloudflare] C --> H[Fly.io] D --> I[JSON-RPC] D --> J[HTTP/REST] D --> K[WebSocket] E --> L[Auth] E --> M[Credentials] E --> N[Access Control]
# Run the server deno run --allow-net --allow-env --allow-read --allow-write --allow-run src/apps/deno/server.ts
MIT License - See LICENSE file for details.