Summary
An open-source playbook has been created to help developers of LLM and local AI projects overcome discoverability issues. Many valuable projects with good code and utility often fail to gain momentum due to improvised launch and distribution strategies. This playbook provides structured guidance on pre-launch preparation, launch-day execution, and post-launch follow-up to improve project visibility and adoption.
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