Google Cloud Next 2026 opened with Thomas Kurian declaring the end of the AI pilot era and Sundar Pichai comparing the enterprise refrain of last year (“Can we build an agent?”) to today’s: “How do we manage thousands of them?” Google Cloud Next ’26 answers the second question with a single product story: Gemini Enterprise Agent Platform. What happened to everything else? Google is collapsing Vertex AI’s agent tooling, Agentspace, ADK, the standalone observability tools, the model registry, and a half-dozen other agent-adjacent functions into this unified surface for building, securing, running, governing, and observing agents in the enterprise. This echo’s NVIDIA’s vertically integrated messaging for GTC 2026 earlier this year. This announcement also came with Sundar announcing Alphabet’s planned $175 billion-plus capex in 2026.

The other clear message: AI has value. Every keynote, every customer session with the same prompts: “How did you measure AI value?” and “How do you measure success?” with a long list of brands noted by name or featured (examples include: ASCP, Liverpool, Toyota, the US Department of Energy, Bosch, Boston Dynamics, Virgin Voyages, Walmart, Macy’s, Wendy’s, the City of Los Angeles, Gap, EssilorLuxottica, Woolworths, Merck, Honeywell, Vodafone, Macquarie Bank, Costco, etc.).

The top developments at Google Cloud Next ’26 were:

  • The agentic stack has consolidated into a single agent platform. Vertex AI Agent Builder, Agentspace, ADK, and the standalone observability tools are collapsing into a single surface organized around build, scale, govern, and optimize. The demo made it concrete: a single furniture-relaunch prompt spun up market research, data insights, product strategy, Veo-generated videos, a Jira-coordinated dev agent, and a Workspace deck from inside Gemini Enterprise. Important caveat: Agent Identity is GA; most components are still in preview.
  • The compute portfolio has expanded with new TPUs and network‑optimized VMs. TPU 8t (training: 9,600‑chip superpods, 3× Ironwood) and TPU 8i (inference: ~80% better price‑performance) are built for frontier‑scale model builders — Anthropic, top AI labs, Apple’s foundation model team, and US National Labs. Everyone else got the practical news: C4N/M4N for network‑ and memory‑heavy workloads, Axion N4A with up to 2× better price‑performance, GKE Agent Sandboxes on gVisor (already ~200k new projects/day at Lovable), and confirmation that inference now dominates AI workloads.
  • Developer tooling is unified around agent‑centric workflows. Hosted by Richard Seroter and Emma Twersky, the session walked through a progressive build along — placing 500 portable toilets along the Las Vegas Strip for a hypothetical race — to show how Agent Development Kit, Agent Studio, Gemini Code Assist, and the rest of Google’s developer surface coalesce into a single toolbox for agent development on GCP. One notable aspect of the show was the framing: agents worked alongside the developers, not in place of them.
  • Wiz anchors Google Cloud Security, with its multicloud roots intact. The new Wiz AI Application Protection Platform (AI-APP) supports AWS AgentCore, Azure Copilot Studio, Salesforce Agentforce, and Databricks alongside Gemini Enterprise. Wiz’s Red/Blue/Green agents and orchestration workflows (all in preview) signal a move toward continuous, agent‑driven security improvement. Google is well positioned to extend Wiz’s multicloud strength, reinforcing its broader push to be the multicloud enabler — a win for Google Cloud, Gemini, and Wiz. However, while Wiz excels in cloud security, it does not address AISPM, leaving a notable gap where Google remains weak despite recent AI security announcements.
  • The Agentic Data Cloud is introduced. Google introduced the Agentic Data Cloud as an AI-native evolution of enterprise data platforms, shifting them from passive systems of record into active “systems of action” designed for autonomous agents. It unifies trusted business context, cross‑cloud access, and agentic tooling to enable AI‑driven, goal‑based workflows, anchored by a governed knowledge catalog that standardizes enterprise meaning. The platform also extends a cross-cloud lakehouse architecture, enabling data access and reasoning across multiple clouds without traditional silos or heavy data movement. This foundation allows organizations to build, govern, and scale AI-driven processes across a borderless enterprise data environment.
  • Workspace is repositioned around agent‑driven intelligence. The 2024 to 2025 Workspace AI story was a feature-by-feature drumbeat — smart compose, summarize-this-thread, generate-a-slide. Workspace Intelligence repositions the entire suite around connecting work context, with a unified semantic layer serving as a glue: meeting notes, emails, files, and chats become a single graph that agents can query and act on. Google believes the productivity suite race resets in the agentic era — and is willing to bankroll your switching cost to win it.
  • Sovereign cloud capabilities are expanded. Google outlined strong sovereign cloud commitments, focusing on AI, infrastructure investment, local governance, legal/technical controls, data privacy, open licensing, and integrated cybersecurity. Among the others, Google announced Gemini 3 support in air-gapped and connected environments via Distributed Cloud. Strategic partnerships in France and Germany enable operational independence, fast‑growing service catalogs, and broad sector adoption, including energy, finance, telecom, and public sector (non-US).
  • New security operations agents have been added to the SOC. Google announced three new security operations agents: threat hunting (hunts for attacks based on observed TTPs), detection engineering (finds detection coverage gaps and creates rules), and third-party context (pulls context from third parties). The threat hunting agent is a positive step but is yet to be comprehensive –- it is largely focused on performing retrospective investigations on observed TTPs. This reflects only one facet of threat hunting i.e., performing a hypothesis driven hunting for unknown unknowns is currently out of scope. The threat hunting agent is in line with the rest of the market – for example, Microsoft announced a threat hunting agent at Microsoft Ignite in 2025.
  • Agentic commerce shifts shopping from search to a personalized journey. Google highlighted early results where agent‑driven commerce experiences increased conversions by ~23%, accelerated migrations up to 6×, and drove standout retailer outcomes — Liverpool reported 10× ROI from its shopping AI assistant — by letting customers express intent (“plan a meal,” “shop for an occasion”) and having coordinated agents handle discovery, substitution, optimization, and checkout across channels. Macy’s shared their agentic personal shopper that helps select an outfit for an occasion, including a moving image of the customer in the outfit based on a shared photograph.

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