Google converts its huge public data into a gold mine for AI with the debut of the Commons Model Context (MCP) protocol-allowing developers, data scientists and AI agents having access to real world statistics using natural language and training.
Started in 2018, Google’s Data Commons are organizing public data sets from one spectrumIncluding government surveys, local administrative data and statistics from global bodies such as the United Nations. By releasing the MCP server, these data are now accessible through natural language, allowing developers to integrate it into agents or AI applications.
AI systems are often trained in noisy, non -verified tissue data. Combined with their tendency to “fill the gaps” when sources are missing, this leads to hallucinations. As a result, companies wishing to refine AI systems for specific use cases often need access to large high quality data sets. With the release of the MCP server for data commons, Google aims to address both challenges.
Commons’s new MCP server bridges public data sets – from inventory to climate statistics – with AI systems increasingly dependent on the exact, structured frame. By making this data accessible through natural language, liberation aims to ground AI in real world verifiable information.
“The Environmental Model Protocol allows us to use the intelligence of the large linguistic model to select the right data at the right time, without having to understand how we shape the data, how our API works,” said Google Data Commons Prem Ramaswami in an interview.
It was first introduced by Anthropic last November, the MCP is an open industrial standard that allows AI systems to access data from various sources, including business tools, content repository and applications development environments, providing a common framework for understanding contested promotions. From its release, companies such as Openai, Microsoft and Google They have adopted the standard to integrate AI models with various data sources.
While other technology companies explored how to apply the standard to AI models, Ramaswami and his team on Google began to explore how the frame could be used to make the Data Commons platform more affordable earlier this year.
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Google has also collaborated with One Campaign, a non -profit organization that focused on improving financial opportunities and public health in Africa to launch a data agent. This AI tool uses the MCP server in surface tens of millions of financial data and health data in simple language.
One campaign approached Google’s Data Commons team with an original MCP application to its own custom server. This interaction, Ramaswami told TechCrunch, was the turning point that led the team to build a special MCP server in May.
However, experience is not limited to a campaign. The open nature of the MCP Data Commons server makes it compatible with any LLM and Google has provided various ways to start developers. A sampling factor is available through the Development Agent (ADK) to a Notebookand the server can also be approached directly through Twin or any customer compatible with MCP uses the PYPI package. The example code is also provided in a GitHub repository.
