Skip to main content
See every side of every news story
Published loading...Updated

‘Gemini 2.5 Computer Use’ Model Enters Preview with Strong Web, Android Performance

Google's Gemini 2.5 model enables AI agents to perform 13 browser actions with high accuracy and low latency, improving automation in UI testing and task completion.

  • Starting today, Google LLC announced Gemini 2.5 Computer Use, a specialized model powering agents to interact with UIs via browser, available in public preview through Gemini API on Google AI Studio and Vertex AI.
  • To address interface-only workflows, Google built the model so agents can perform tasks inside graphical user interfaces designed for human users rather than APIs.
  • It processes three main inputs—the user request, a screenshot, and recent actions—and generates function-call outputs like clicking or typing in an iterative loop with screenshot and URL feedback.
  • Google has deployed the model to production for UI testing, reporting automated repairs for over 60% of failing tests and adding safety features plus developer controls for risky steps.
  • The announcement followed OpenAI's Dev Day by one day, amid prior competition from Anthropic PBC which released a `computer use` model last year, while Google reports strong Browserbase benchmark results of 65.7% and 79.9%.
Insights by Ground AI

22 Articles

For now, AI models reach as far as the APIs allow: to overcome this limit, Google's Computer Use arrives, which scrolls pages, clicks and types like a user - on macitynet.it Gemini 2.5 Computer Use navigates and uses the browser like you do

Read Full Article
Think freely.Subscribe and get full access to Ground NewsSubscriptions start at $9.99/yearSubscribe

Bias Distribution

  • 60% of the sources lean Left
60% Left

Factuality 

To view factuality data please Upgrade to Premium

Ownership

To view ownership data please Upgrade to Vantage

www.blog.google broke the news in on Tuesday, October 7, 2025.
Sources are mostly out of (0)
News
For You
Search
BlindspotLocal