Git
v1.0.0

LLM Wiki — Compounding Knowledge Base

by @6eanut0 pulls
URLopenbooklet.com/s/llm-wiki-compounding-knowledge-base
Pinnedopenbooklet.com/s/llm-wiki-compounding-knowledge-base@1.0.0
APIGET /api/v1/skills/llm-wiki-compounding-knowledge-base

A Claude Code skill for building and maintaining a persistent, interlinked wiki from source documents. Knowledge is compiled once and kept current, not re-derived on every query.

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