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      論説

      Google Cloud Next 2026: The Agentic Enterprise Control Plane Comes into View

      Google Cloud Next 2026: The Agentic Enterprise Control Plane Comes into View

      At Google Cloud Next 2026, one message came through clearly: Enterprise AI is moving beyond agent creation and into agent governance.

      著者:Chris Green and Dale Pedzinski

      • min read
      }

      論説

      Google Cloud Next 2026: The Agentic Enterprise Control Plane Comes into View
      en
      概要
      • Google is repositioning from pure model access to a full agentic enterprise platform and control plane—Gemini Enterprise Agent Platform plus the governance stack.
      • Context, identity, and security are becoming core infrastructure: Governed data architecture and non-human identity management now sit at the center of the agent story.
      • Google’s strategy is to keep models and partners open at the edge while consolidating governance, identity, and observability at the center.
      • AI economics and operations are first-class concerns: Cross-cloud infrastructure, security, and FinOps controls are being built into the platform to manage cost, risk, and scale.

      Last year, Google was already signaling a shift from model access toward a broader platform story. This year, it made that position far more explicit. The centerpiece was the Gemini Enterprise Agent Platform, presented as the place to build, run, govern, and optimize agents at scale. Around it, Google assembled a broader enterprise stack with some existing tools and new tools folded in: the Gemini Enterprise app for business users, Agentic Data Cloud for grounded context, Agentic Defense through Google Security Operations and Wiz, and new FinOps controls to manage AI-era costs.

      The implication is important. Google is no longer just saying enterprises can build agents on its platform. It is making the case that Google Cloud should be where enterprises operate an agentic workforce.

      Reflecting on the conference, five themes stood out.

      Google is building a control plane, not just adding more AI features

      The individual launches matter, but the pattern matters more.

      Google introduced the Gemini Enterprise Agent Platform with Agent Studio for low-code development, an upgraded Agent Development Kit (ADK) for code-first teams, a redesigned Agent Runtime for long-running agents, and Memory Bank for persistent context. More telling, though, were the governance features wrapped around that stack: Agent Identity, Agent Registry, Agent Gateway, Agent Simulation, Agent Evaluation, and Agent Observability.

      The Gemini Enterprise app expanded in parallel, adding Agent Designer, Inbox, Skills, Projects, Canvas, and long-running agents for business users.

      Taken together, these launches signal that the hard enterprise problem is no longer simply building agents. It is managing them in production across teams, workflows, systems, and risk boundaries.

      The hard enterprise problem is no longer simply building agents. It is managing them in production across teams, workflows, systems, and risk boundaries.

      That is an important shift for buyers. For the past year, many organizations have evaluated agent platforms primarily through the lens of how to build agents. That still matters, but it is no longer enough. The more important questions now are: How are agents managed? How are they registered and published? How is traffic routed and inspected? How are actions traced, evaluated, and observed? And how well does all of that connect into existing cloud, security, and operations tooling?

      For technology leaders, the strategic decision is starting to look less like a tooling choice and more like an operating model choice. The winning platform may not be the one that builds the flashiest agent. It may be the one that can govern thousands of them.

      Context architecture is becoming part of the production stack

      Google’s data announcements also felt more consequential this year.

      Under the banner of Agentic Data Cloud, Google introduced Knowledge Catalog (including Smart Storage), Data Agent Kit, and a cross-cloud AI-native Lakehouse. On the surface, these may look like data platform enhancements. In practice, they point to a more important idea: Enterprise context is becoming infrastructure.

      That matters because grounded AI is evolving. It is no longer enough for agents to retrieve documents or query databases. To work reliably in enterprise settings, agents need a governed and repeatable way to access metadata, permissions, source-of-truth relationships, and semantic structure that persist across systems and clouds.

      Grounded AI is evolving. Context is becoming a managed platform layer, not a custom pattern rebuilt for every use case.

      That is why Knowledge Catalog may turn out to be one of the more strategic pieces of the announcement set. It suggests Google is trying to make context a managed platform layer rather than something rebuilt use case by use case through custom retrieval patterns.

      For data leaders, this raises the bar. Supporting AI no longer just means making data available. It means exposing a governed context architecture that agents can trust. Metadata stewardship, semantic modeling, retrieval design, and agent platform design are converging faster than many organizations expected.

      Identity and security are now central to the agent story

      One of the clearest signals from Next 2026 was how critical identity and security are to the future of enterprise AI.

      Agent Identity, Agent Gateway, and Agent Registry were presented not as secondary controls, but as core platform capabilities. Google also emphasized that the Gemini Enterprise portfolio is governed through a shared control layer, with agents built on Agent Platform and surfaced in the Gemini Enterprise app operating under the same rules.

      That is a meaningful shift. It suggests Google sees governance not as a policy overlay but as a native feature of the platform.

      The security announcements reinforced the same message. Google positioned Agentic Defense as a central part of the enterprise AI stack, with new Google Security Operations agents for threat hunting, detection engineering, and third-party context, as well as tighter integration with Wiz. The broader security story included Wiz AI Application Protection Platform, Wiz Security Agents, Wiz Workflows, Model Armor integration with Agent Gateway, and new Agent Identities designed to reduce shadow AI and secure agent traffic.

      This matters for a simple reason: Agentic systems multiply identities and permissions much faster than traditional human-centric identity and access management models were built to handle. Once agents begin acting across systems, the governance question changes. It is no longer about which model is approved, but about what actions a given agent can take through which identity, against which tools, and with what audit trail.

      For security leaders, non-human identity is becoming an urgent agenda item. Google’s product direction suggests that the market is moving there quickly.

      Google is keeping the edge open while consolidating the center

      Google also sharpened its platform posture in a way that feels strategically sound.

      The open ecosystem story remains important. Gemini Enterprise Agent Platform offers access to more than 200 models through Model Garden, including Gemini 3.1 Pro, Gemini 3.1 Flash Image, Lyria 3, Gemma 4, and third-party models such as Anthropic’s Claude. The partner layer expanded as well through Agent Gallery and partner-built agents from Accenture, Adobe, Atlassian, Oracle, Palo Alto Networks, Salesforce, ServiceNow, Workday, and others.

      But the more interesting question is not whether Google is open. It is where Google is open.

      What emerged at Next was a model in which flexibility is encouraged at the edge while governance is consolidated at the center. Enterprises can choose models, work with partners, and deploy specialized agents, but the operating core increasingly runs through Gemini Enterprise, Gemini Enterprise Agent Platform, Agent Gallery, Agent Gateway, Agent Identity, and shared governance controls.

      That feels well aligned with where enterprise demand is heading. Buyers want choice in models and specialized capabilities. They do not want a fragmented control environment. As agent sprawl increases, standardization in governance, identity, telemetry, and delivery becomes much more valuable than standardization everywhere else.

      As agent sprawl increases, standardization in governance, identity, telemetry, and delivery becomes much more valuable.

      For enterprise platform leaders, that is the right framing. The choice is not between openness and standardization. It is about deciding where variety creates value and where it creates operational drag.

      AI economics and distributed operations are becoming board-level issues

      Google’s infrastructure and FinOps announcements made one more point hard to ignore: Agentic AI is an economics and operations problem, not just a capability problem.

      The infrastructure story centered on cross-cloud infrastructure for the agentic enterprise, including fluid compute, secure cross-cloud connectivity, a unified data layer, and digital sovereignty. Specific launches included GKE Agent Sandbox, Google C4N and M4N series, Cloud Network Insights, Agent Gateway for agentic traffic across clouds, and sovereign controls such as Confidential External Key Management.

      What ties these together is the reality of agent workloads. They are bursty, dynamic, and increasingly distributed. They generate non-human traffic, reasoning loops, and internal message flows that can strain networks, databases, and cost models in ways traditional enterprise architectures were not designed to absorb cleanly.

      That is why Google’s infrastructure story reads less like a chip announcement and more like a systems management argument. The platform is being positioned not just to run AI, but to absorb the operational consequences of running AI at scale.

      FinOps is part of that same control story. Google introduced a FinOps Explainability agent and project-level Spend Caps, explicitly linking AI adoption to deeper cost visibility and tighter budget controls.

      That is strategically important because it suggests Google sees AI economics as part of the platform itself rather than as an after-the-fact reporting exercise. As usage scales, cost governance will need to sit closer to routing policy, workload design, and business value measurement.

      For FinOps leaders, the implication is straightforward: Spending thresholds, showback, model-routing choices, and workflow-level value discipline need to be designed in early, not added later.

      The bottom line

      At Google Cloud Next 2026, the real story was not simply the rise of the agent. It was the emergence of the managed agent workforce: build tools, runtime, memory, registry, identity, gatewaying, observability, security, context, and cost control coming together into something that looks much closer to an enterprise operating layer.

      The enterprise challenge is shifting from experimentation to control. That means choosing where runtime governance will live, investing in context architecture instead of treating retrieval as a one-off engineering task, strengthening non-human identity and authorization models, and defining clear boundaries around autonomy before agent deployment outpaces oversight.

      That is what makes this moment more important than a standard AI product launch.

      The pressing question for enterprise leaders is no longer whether agents are coming. It is whether their organization is building the control plane required to govern them.

      著者
      • Headshot of Chris Green
        Chris Green
        パートナー, Atlanta
      • Headshot of Dale Pedzinski
        Dale Pedzinski
        Expert Associate Partner, Dallas
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