AI
AI agents haven’t been around that long – mainstream generative AI itself it less than four years old, as hard as that may seem to believe – but the bulk of the IT world and the organizations big and small that serves IT are all in. Adoption is growing, budgets are expanding, and more plans are being put in place to do more with agents.
According to a survey of 300 senior executives by global consultancy PcW, 88 percent plan to increase their AI budgets because of the emergence of agentic AI – 71 percent said they expect to grow those budgets by anywhere from 10 percent to more than 50 percent – 79 percent say they have already adopted AI agents, and, of those, 66 percent say agents are increasing productivity and delivering value.
And that’s against the backdrop of concerns that corporate leaders have about the technology that, according to the Harvard Business Review, range from [data
issues to security to privacy](https://hbr.org/sponsored/2025/12/navigating-transformation-in-the-era-of-agentic-ai). The tech industry itself has essentially been remade to push agentic technologies out to the waiting business world. Most IT vendors are increasing their own spending to develop agentic tools for themselves and their users and have built the agendas for their annual conferences around what agents and supporting products they can offer.
That includes Google. At last week’s Google Cloud Next 2026 show in Las Vegas, Google chief executive officer Sundar Pichai appeared before the keynote crowd via live video, promising that the hyperscaler is investing huge amounts of money to support its agentic cloud ambitions. In 2022, Google spent $31 billion in capital expenditures. The plan this year is for capex investment to his $175 billion to $185 billion, with more than half of Google’s machine learning compute going toward the cloud business.
Google Cloud has been putting together the makings of a full agentic AI stack, and the results of that work were front and center at the conference. Google Cloud chief executive officer Thomas Kurian said the company’s innovation spree is keeping pace with the rapid demand for agentic AI among developers and other customers, noting that almost 75 percent of Google Cloud customers now use the company’s AI products.
“Just one year ago, we stood on this same stage and promised a new future for AI,” Kurian said during his keynote. “Today, that future is running in production at a scale that the world has never seen. Over the last year, we didn't just see adoption. We saw transformation. We have thousands of agents and services across every industry, reaching billions of people through the global scale of our partner network. You have moved beyond the pilot. The experiment in phase is behind us, and now the real challenge begins.”
He added that organizations need a unified agentic stack to move AI into production, saying that “you cannot deliver AI by piecing together a puzzle piece or fragmented silicon and disconnected models. To drive real value, you need an architecture where chips are designed for the models, models are grounded in your data, agents and application are built with models and secured by the infrastructure.”
Last week, we wrote about the pair of eighth generation Tensor Processor Unit (TPU) compute engines that Google will ship before the end of the year. That said, there was the expected firehose of announcements, but their focus was on agentic AI, and key among them were new and expanded capabilities for building and running agents as well as ensuring the data they need is ready for them.
One step for Google Cloud was expanding its Vertex AI development platform by adding a range of new capabilities that developers can use to create agents that touch on such areas as agent orchestration and integration, DevOps, and security. The agents then become available to organizations’ employees via Google’s Gemini Enterprise app.
Through the Gemini Enterprise Agent Platform – the enhanced and rebranded Vertex AI – developers have options for building agents, using either the new Agent Studio, a low-code, visual interface, or an upgraded Agent Development Kit open framework that includes AI-native coding to more quickly create production-grade agents.
There’s a bulked-up Agent Runtime for supporting agents that can run for days at a time and keep their context with persistent memory via Memory Bank. The platform offers centralized control through Agent Identity, Registry, and Gateway tools, which track identity and obeys guardrails, and quality guarantees with Agent Simulation, Evaluation, and Observability features that tracks agent execution and reasoning.
It also includes native integration with the Model Context Protocol [MCP], an Anthropic created tool for making it easier for agents to access external data sources and applications.
With the platform, development teams – through the platform’s Model Garden – also get access to more than 200 AI models, including Google’s latest Gemini 3.1 Pro, which is in preview and optimized for workflow orchestration, as well as Gemini 3.1 Flash Image for visual assets and Lyria 3 for audio and music. There’s also support for models from other vendors, including [Anthropic’s
Claude](https://www.nextplatform.com/ai/2026/04/13/building-the-imperfect-beast/5216982), [Meta
Platforms’ Llama](https://www.nextplatform.com/ai/2025/04/30/with-its-llama-api-service-meta-platforms-finally-becomes-a-cloud/1639833), Mistral AI, and [Nvida’s
Nemotron](https://www.nextplatform.com/ai/2025/12/17/nvidia-is-the-only-ai-model-maker-that-can-afford-to-give-it-away/1694348).
Google Cloud also is turned its attention to bringing data storage and management into the agentic age.
“Reasoning without context is just a guess,” Karthik Narain, chief product and business officer for Google Cloud, said on stage. “When you expect your AI to make decisions and your agents to take actions, you cannot afford to guess. Trusted context turns an intelligent guess to a decisive action. We're completely rethinking the data platform.”
The result of the rethinking it the Agentic Data Cloud, a new umbrella offering that includes some of what the company was already doing with a number of agent-focused tools and capabilities, allowing for agents to interact with data they use to complete their tasks. Foundational to this is what Google Cloud calls its cross-cloud lakehouse, which is designed to let agents go and work on data where it resides, rather than make copies and bring them back with them.
“The reality is data lives everywhere, at Google, at AWS, Azure, and across your SaaS applications,” Narain said. “Your old lakehouse expected the analytical engines and the data storage to reside in the same cloud. This approach is broken. [The cross-cloud lakehouse] is completely borderless. Instead of forcing you to accept complex networking [processes] or massive egress fees, we deliver low latency, direct connectivity to AWS and Azure, as if the data sat natively in Google Cloud. No more moving data, no more vendor lock-in.”
The cross-cloud lakehouse is enabled by the integration of the Cross-Cloud Interconnect into the vendor’s data plane and is based on Apache’s Iceberg for large-scale analytics. In addition, it includes interoperability with BigQuery Apache Spark as well as OSS frameworks like Spark, Trino, and Flink, as well as third-party engines like Databricks and Snowflake. It’s akin to what Google has done with its [open
lakehouse efforts](https://www.nextplatform.com/store/2025/07/24/googles-open-lakehouse-the-foundation-for-enterprise-ai-data/1643274). Other highlights included Google Cloud’s Data Agent Kit, which includes its Data Engineering Agent for building and transforming data pipelines and enforcing governance rules to protect against bad data, Data Science Agent for automatically scaling a model across BigQuery Dataframes and Serverless Apache Spark, and Data Observability Agent for protecting the agent infrastructure.
The cloud provider’s Dataplex Universal Catalog grew up to become Knowledge Catalog, a universal context engine that integrates with BigQuery to transform tables and metadata into unified business logic, while its Smart Storage tool does the same with unstructured data.