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gooseworks-ai/goose-skills

Library of GTM skills for Claude Code, Codex, Cursor

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What it does

Goose Skills is a library of 108 pre-built sales and marketing automation tasks designed to run inside AI coding assistants like Claude Code, Cursor, and Codex — letting those tools do things like scrape competitor ads, build ad campaigns, and generate SEO content on command. Instead of writing custom instructions from scratch, builders can drop in ready-made 'skills' that handle common go-to-market work, from lead generation to competitive intelligence.

Why it matters

This signals a growing market for AI agent 'skill packs' that extend coding assistants beyond writing code into business workflows — a potentially large opportunity as companies look to automate GTM work without hiring specialists. For founders and PMs, it also raises a strategic question: if AI agents can own significant chunks of sales and marketing execution, the competitive advantage shifts toward whoever assembles the best set of automations fastest.

19Active

On the radar — signal detected

Stars
811
Forks
154
Contributors
1
Language
Python

Score updated Apr 24, 2026

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