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Google Cloud redefines the database as an "AI Agent Context Hub"
Google Cloud is redefining enterprise-grade databases as the core infrastructure of “AI agents,” not just simple repositories. The company explicitly emphasizes that although model performance is rapidly improving, in real enterprise settings, AI responses and execution value will be limited without the context contained within the data.
At “Google Cloud Next '26,” Google Cloud announced the “Agent-Based Data Cloud” and revealed its strategy to position its database as an AI-centric enterprise architecture foundation. Suresh Krishnamurthi, Vice President of Global Database Engineering at Google Cloud, stated: “Models are excellent, but they don’t understand all the context,” “that context exists in the data, and the core of that data is ultimately stored in the database system.”
The core message this time is the shift in the role of databases. Krishnamurthi explained that if, over the past 50 years, the focus of databases was on storing and returning “precise results,” in the AI era, they are transforming into structures aimed at producing “optimal results.” To achieve this, graph search, vector embeddings, semantic search, full-text search, and relational operations need to work collaboratively within the same system. Diagnostics suggest that traditional methods of moving and restructuring data for specific purposes have become highly inefficient.
He said: “When you can view data as a graph, understand it through vector embeddings, and even perform semantic or full-text searches, what matters is no longer just precise results but the highest quality results,” “a major change in databases is to organize data differently without unnecessary data movement.”
Extending Spanner Omni to on-premises and other clouds
Meanwhile, Google also released a downloadable version of its globally distributed database, Spanner, called “Spanner Omni.” This product aims to enable enterprises not only to run Google’s database technology in their own on-premises server environments but also on competitors’ clouds. This reflects the reality that enterprise data does not have to reside solely within Google Cloud, adopting a strategy of extending technology to where the data is located.
This is significant in a market where multi-cloud and hybrid environments are now the norm. AI agents need to connect to data scattered across multiple systems, not just a single repository. Google’s move is interpreted as an attempt to turn the database into a “context hub” for such connections. In other words, the database is evolving beyond storage to become the starting point for AI reasoning and business automation.
Accelerating transformation with Gemini-based migration agents
Google is also integrating generative AI into its data migration efforts. According to Krishnamurthi, Gemini-based migration agents can significantly reduce the most time-consuming tasks in traditional database migrations. Previously, schema migration, data transfer, and modifying SQL queries within applications could take months of manual work. Now, the agents support comprehensive transformations, including application layer changes.
He said: “Now, using agents can revolutionize the speed of system migrations,” “Database migration is not just about schema and data; it also involves application complexity. With Gemini’s power, we can now migrate entire application stacks more quickly.”
This can be interpreted as a strategic move to address enterprise barriers to adopting AI. Many companies recognize the necessity of AI but have been slow due to the costs and time involved in migrating existing systems. Google aims to extend agent-based AI from simple chatbots to “tools for executing transformations,” seeking to gain a competitive edge in the database market as well.
The core of AI competition is “data context” rather than models
This release indicates that the competitive axis in the AI market is rapidly shifting from models themselves to the accessibility and quality of data. Enterprise AI agents need to go beyond answering questions to understanding and managing business operations, and success ultimately depends on the ability to securely and quickly access sufficiently rich data context.
Google Cloud places the database at the center of this context, attempting to integrate search, analysis, migration, and deployment into a seamless process. This is also the reason why databases are once again gaining attention in the AI agent era. Because if models are responsible for “intelligence,” then the database is the “memory” and “context” source that enables this intelligence to operate in the real world.
TP AI notes: Using language models based on TokenPost.ai, the article was summarized. Some main content of the original text may have been omitted or may not align with facts.