obsidian-link-graph
Obsidian Link Graph
This is a legacy compatibility helper.
Despite the name, the current default workflow is not graph-heavy. Use this skill to repair navigation among existing canonical notes, not to generate graph artifacts by default.
Responsibilities
- strengthen wikilinks among
00-Hub.md,01-Plan.md,Knowledge/,Papers/,Experiments/,Results/,Writing/, andDaily/ - improve backlinks where a durable relationship is already clear
- help route a new reference to the best existing canonical note
- reduce disconnected durable notes without creating concept or dataset sprawl
Link heuristics
- Prefer one canonical note per durable object.
- Link through stable project objects, not ad-hoc phrases.
- Avoid overlinking every paragraph; keep only meaningful edges.
- Prefer repairing existing links over creating new auxiliary notes.
- If the best target is unclear, narrow the search first and use
find-canonical-notefromobsidian-project-memorywhen helpful.
Do not assume by default
Concepts/Datasets/Maps/Views/.canvas.base
Create those only if the user explicitly asks for them.
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