skills/agent-browser/SKILL.md
Browser automation CLI for AI agents. Use for website interaction, form automation, screenshots, scraping, and web app verification. Prefer snapshot refs (@e1, @e2) for deterministic actions.
npx skillsauth add jyjeanne/ai-setup-forge agent-browserInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Always use the deterministic ref loop:
agent-browser open <url>agent-browser snapshot -i@e1, @e2, ...)agent-browser snapshot -i again after page/DOM changesagent-browser open https://example.com/form
agent-browser wait --load networkidle
agent-browser snapshot -i
agent-browser fill @e1 "[email protected]"
agent-browser click @e2
agent-browser snapshot -i
Use && chaining when intermediate output is not needed.
# Good chaining: open -> wait -> snapshot
agent-browser open https://example.com && agent-browser wait --load networkidle && agent-browser snapshot -i
# Separate calls when output is needed first
agent-browser snapshot -i
# parse refs
agent-browser click @e2
High-value commands:
open, closesnapshot -i, snapshot -i -C, snapshot -s "#selector"click, fill, type, select, check, pressdiff snapshot, diff screenshot --baseline <file>screenshot, screenshot --annotate, pdfwait --load networkidle, wait <selector|@ref|ms>Use explicit evidence after actions.
# Baseline -> action -> verify structure
agent-browser snapshot -i
agent-browser click @e3
agent-browser diff snapshot
# Visual regression
agent-browser screenshot baseline.png
agent-browser click @e5
agent-browser diff screenshot --baseline baseline.png
wait --load networkidle or selector/ref waits over fixed sleeps.eval --stdin (or base64) to avoid shell escaping breakage.--session <name>.Optional hardening examples:
# Wrap page content with boundaries to reduce prompt-injection risk
export AGENT_BROWSER_CONTENT_BOUNDARIES=1
# Limit output volume for long pages
export AGENT_BROWSER_MAX_OUTPUT=50000
# Restrict navigation and network to trusted domains
export AGENT_BROWSER_ALLOWED_DOMAINS="example.com,*.example.com"
# Restrict allowed action types
export AGENT_BROWSER_ACTION_POLICY=./policy.json
Example policy.json:
{"default":"deny","allow":["navigate","snapshot","click","fill","scroll","wait","get"],"deny":["eval","download","upload","network","state"]}
CLI-flag equivalent:
agent-browser --content-boundaries --max-output 50000 --allowed-domains "example.com,*.example.com" --action-policy ./policy.json open https://example.com
command not found: install and run agent-browser install.snapshot -i again and use fresh refs.--load networkidle or targeted wait selector.--session names and close each session.-i, -c, -d, -s) and extract only needed text.Deep-dive docs in this skill:
Related resources:
Ready templates:
./templates/form-automation.sh./templates/capture-workflow.shdevelopment
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