Show HN: RunAgent: Model Context Protocol (MCP) and Vercel but for AI Agents

2 adewba 0 7/18/2025, 10:34:54 PM github.com ↗
RunAgent is a universal AI agent deployment platform that solves the language barrier and deployment complexity in AI development. While most AI frameworks like LangChain, LangGraph, CrewAI, Letta etc only provide Python SDKs and have fragmented deployment processes, RunAgent allows developers to write agents once in Python using any framework and access them natively from Rust, JavaScript, Go, or any other language through comprehensive SDKs. The platform works through a framework-agnostic entrypoint system where developers simply provide a config file and their agent code, then deploy with a single terminal command to get an agent ID and endpoint. The magic happens in the SDKs - developers can call these deployed agents like native functions in their preferred programming language, with full support for both synchronous and streaming responses. RunAgent is open-sourced to foster ecosystem growth similar to MCP's success. By standardizing the Python agent structure through simple config files, the platform enables community-driven development where Python developers can create agents that any developer in any language can instantly discover and deploy. For example, when a Rust developer needs a specific agent functionality, they can find community-contributed agents and hook into them with a single command deployment, eliminating language barriers entirely. The open-source foundation handles local development and the multi-language SDK ecosystem, while the upcoming cloud platform promises Vercel-like simplicity for AI agents with serverless infrastructure that can deploy 2000 agents in under 10 seconds. RunAgent aims to democratize AI agent access across all programming languages and eliminate the current deployment friction that forces developers into Python/Js/Ts (max)-only workflows, positioning itself as "MCP for Agent Deployment" by providing the same standardization that MCP brought to model context, but for agent deployment and cross-language accessibility.

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