🎯

agents

🎯Skill

from itsmostafa/llm-engineering-skills

VibeIndex|
What it does

Develop, configure, and orchestrate AI agents with advanced prompting, tool integration, and multi-agent collaboration strategies

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Part of

itsmostafa/llm-engineering-skills(11 items)

agents

Installation

Quick InstallInstall with npx
npx skills add https://github.com/itsmostafa/llm-engineering-skills --skill agents

Need more details? View full documentation on GitHub β†’

2Installs
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AddedFeb 10, 2026

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