Google’s recent decision to adopt Anthropic’s Model Context Protocol (MCP) for its Gemini AI models and SDK marks a significant step toward MCP becoming a leading standard for integrating AI models with data sources.
MCP is an open standard developed by Anthropic that enables developers to establish secure, two-way connections between AI models and various data sources, such as business tools, content repositories, and application development environments. This protocol facilitates seamless data integration, allowing AI applications to access and utilize external information effectively.
Prior to Google’s endorsement, companies including OpenAI, Block, Apollo, Replit, Codeium, and Sourcegraph had already integrated MCP into their platforms, indicating its growing acceptance within the industry. Google DeepMind CEO Demis Hassabis highlighted MCP’s rapid emergence as an open standard for the AI agentic era and expressed enthusiasm for collaborative development with the MCP team and other industry players.
Why is a standard important? The biggest complaint about AI is that it remains a bit of a novelty – doing mundane tasks like reading email or writing reports. There’s nothing wrong with that, we use a lot of time looking for, analyzing and writing documents and reports.
But to actually integrate and engage with our corporate systems and data stores, some standards are required. That’s where MCP becomes so important in linking AI with corporate applications and functions.
While Google’s adoption significantly bolsters MCP’s position, determining whether it is now the dominant standard isn’t a “done deal.” The AI industry is dynamic, with multiple protocols and standards under development. But MCP’s widespread acceptance is a good sign for developing a key standard to allow for the rapid integration of AI with business applications and data sources.