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Swift for Visual Studio Code comes to Open VSX Registry | InfoWorld

Notion courts developers with a platform for AI agents and workflow automation Using continuous purple teaming to protect fast-paced enterprise environments A better way to work with SQL Server Evidence-driven workflows: Rethinking enterprise process design AWS debuts Graviton-powered Redshift RG instances to cut analytics costs SAP’s AI promises last year? 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Google begins putting the guardrails on agentic AI
2026-04-27 · via Swift for Visual Studio Code comes to Open VSX Registry | InfoWorld

The most important thing Google announced at Google Cloud Next 2026 wasn’t another model, another Tensor Processing Unit (TPU), or another way to sprinkle Gemini across the enterprise (though it did all these things). Rather, it was an admission, or possibly a warning.

Agents need supervision.

We already knew this, of course, but “to know and not yet to do is not yet to know” as my high school philosophy teacher used to say. We like to think of agents as digital employees frenetically doing our bidding, but they’re also brittle software systems with credentials, budgets, memory, access to sensitive data, and a weird talent for failing in ways that are both expensive and hard to reconstruct.

That’s the real story of Google Cloud Next 2026. The consensus was that Google showed up to claim the agentic enterprise. I think the more interesting read is that Google showed up to contain it.

Yes, Google talked up the “agentic cloud.” It’s impossible to attend a conference these days that doesn’t. And, yes, it announced Gemini Enterprise Agent Platform, eighth-generation TPUs, new Workspace Intelligence AI capabilities, and a long list of integrations meant to make AI feel native to every corner of the enterprise. If you wanted a victory lap for the agentic era, there was plenty of keynote material to choose from.

But strip away the stage lighting, and the message was much more interesting: Enterprises have spent the past two years falling in love with AI agents. Now they need to keep them from embarrassing, bankrupting, or exposing the business.

That’s not a knock on Google. Quite the opposite. It may be the most useful thing Google announced.

Trust, but verify

The minute AI moves from saying things to doing things, all the boring enterprise questions demand answers. Who authorized this? What data did it use? What system did it touch? Why did it take that action? How much did it cost? How do we stop it?

Google’s announcements were, in large part, answers to those questions.

Consider what Google actually emphasized. Knowledge Catalog is designed to ground agents in trusted business context across the data estate. Gemini Enterprise now includes an inbox to manage and monitor agents, including long-running agents. Workspace is getting new controls to monitor, control, and audit agent access to data to reduce prompt injection, oversharing, and data loss risks. Google Cloud’s security announcements included new agentic defense capabilities and Wiz-powered coverage to help secure agents across cloud and AI development environments.

These are not the tools you build when everything is humming along nicely. These are what you build when customers are discovering the awkward middle ground between “the demo worked” and “we trust this thing with real work.”

The agent control plane

Analysts seem to have settled on “agent control plane” as the phrase for this emerging layer of enterprise AI. It’s a good phrase because it’s familiar. It suggests Kubernetes for cognition: a unified place to govern, observe, route, secure, and optimize fleets of AI agents.

If only. We’re still far from that world.

The reason agents need a control plane isn’t that they’re already replacing employees; rather, it’s that enterprises are giving probabilistic systems access to deterministic workflows and discovering (surprise!) that somebody needs to watch the handoff. Agent demos make autonomy look clean, but enterprise systems make autonomy weird. The customer record is in one system, the contract is in another, the exception handling lives in someone’s inbox, the policy is in a PDF last updated in 2021, and the person who understands why the workflow works that way left the company during the pandemic.

Now we’re adding agents to the mess.

This is why I’m sympathetic to Google’s control-plane push, even as I’m suspicious of any vendor story that sounds too tidy. Yes, it’s useful to have a unified agent platform, governance, agent monitoring, evaluation, observability, and simulation. All needed. The new Gemini Enterprise story matters precisely because Google is trying to centralize the messy operational pieces that enterprises otherwise stitch together badly.

But let’s not mistake the control plane for the work itself.

Pilots are easy; production is hard

The data on agentic AI keeps saying the same thing: Enthusiasm is running far ahead of operational maturity.

Camunda’s 2026 State of Agentic Orchestration and Automation report found that 71% of organizations say they use AI agents, but only 11% of agentic AI use cases reached production in the past year. Even more telling, 73% admitted a gap between their agentic AI vision and reality. Gartner has been similarly chilly, predicting that more than 40% of agentic AI projects will be canceled by the end of 2027. Why? Cost, unclear business value, and inadequate risk controls.

Let’s be clear. Those aren’t model problems. They’re all-too-familiar enterprise software problems.

The same pattern shows up in security and governance. Writer’s 2026 enterprise AI survey found that 67% of executives believe their company has suffered a data leak or security breach because of unapproved AI tools. Also, 36% lack a formal plan for supervising AI agents, and 35% admit they couldn’t immediately pull the plug on a rogue agent.

Of the three, it’s that last number that is perhaps scariest. These are software agents with access to business systems, customer data, and organizational credentials, yet more than one-third of organizations aren’t confident they can stop one quickly when it misbehaves.

What, me worry?

The agent is the least interesting part

The dirty secret of the agentic enterprise is that the agent is probably the least interesting part of the architecture. It gets all the hype, but the real work is identity, permissions, workflow boundaries, data quality, retrieval, memory, evaluation, audit trails, cost controls, and deciding which system is allowed to be the source of truth when the agent gets confused.

The presentations at Google Cloud Next didn’t prove that the agentic enterprise had arrived. Instead they proved that the agentic enterprise, if or when it arrives, will look a lot like enterprise software has always looked when it starts to matter. Less magic; more governance.

That’s progress, but it’s not sexy progress.

If you’re trying to pick winners in agentic AI, don’t look for those with the cleverest agents. Instead, look to the companies with the cleanest data contracts, the best evaluation discipline, the most coherent identity model, and the least tolerance for shadow AI chaos. The industry doesn’t want to tell that story because it’s much more fun to talk about autonomous digital workers than data lineage and access control.

But boring is where enterprise software becomes real.

Here’s another reason to be cautious about declaring the agentic era won: Agents are only as useful as the data they can safely understand and act upon. Google clearly knows this. The Agentic Data Cloud framing, including Knowledge Catalog and cross-cloud Lakehouse work, is an admission that agents need trusted business context. Without that context, they’re not enterprise workers. They’re articulate tourists wandering through your systems.

Hence, the most encouraging announcements at Google Cloud Next weren’t the ones that made agents sound more autonomous. They were the ones that made agents sound more manageable. Agentic AI promises to be big, but only when it demonstrates it can be boring.