Model Context Protocol (MCP)

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The Model Context Protocol (MCP) is an open standard created to make it easier for AI models and applications to access external data, tools, and services in a secure and structured way. Instead of every AI platform building custom integrations, MCP provides a unified protocol that defines how models can connect to external sources—like databases, APIs, file systems, or enterprise apps—through a common interface.

How It Works

1. MCP works as a bridge between an AI model (e.g., GPT) and external systems.
2. It uses servers to expose tools, resources, and data in a standardized format.
3. AI applications can then request context or perform actions via these servers without needing custom connectors each time.

Example:

a. A Robility flow app using MCP could connect to a CRM system to fetch customer data or update records.
b. Instead of building a new integration, it just calls the CRM via MCP.

Key Benefits

1. Interoperability – Works across different LLMs, apps, and services.
2. Extensibility – Developers can easily add new servers for custom data sources.
3. Security – Access to external systems is controlled and sandboxed.
4. Reusability – The same MCP server can be used by multiple AI apps without rewriting integrations.

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