@FakeMaidenMaker: https://x.com/FakeMaidenMaker/status/2057267222435832046
Summary
Introduces how to use Obsidian and QMD to build an LLM-based knowledge base, combined with Claude Code for knowledge management.
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Cached at: 05/22/26, 04:02 AM
Your Second Brain Needs QMD to Scale Healthily (Includes Knowledge Base Basic Configuration + QMD Getting Started Guide)
Many articles that teach you how to use Obsidian for your second brain don’t tell you: when your knowledge base gets too large, your brain might crash. An LLM Wiki built with Claude Code and Obsidian.
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