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browserbase/stagehand

The SDK For Browser Agents

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What it does

Stagehand is an open-source framework that lets AI agents control and navigate web browsers automatically — clicking buttons, filling forms, and extracting information from websites without human input. It builds on top of existing browser automation tools and adds AI intelligence so the software can understand and interact with web pages the way a person would.

Why it matters

As AI agents move from novelty to core product infrastructure, the ability to reliably automate web browsing unlocks entire categories of products — from research assistants to autonomous workflows — without needing custom integrations for every website. With over 21,000 stars, this project signals strong developer demand and points to browser automation becoming a foundational layer in the next generation of AI-powered software.

28Active

On the radar — signal detected

Stars
23.3k
Forks
1.6k
Contributors
39
Language
TypeScript

Score updated Jun 27, 2026

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