Subjects
by josca42
Explore denmark statistics subject hierarchy for all fact tables
Skill Details
Repository Files
2 files in this skill directory
name: subjects description: Explore denmark statistics subject hierarchy for all fact tables
subjects CLI
This CLI lets you explore denmark statistics subject hierarchy. The subject hierarchy creates a hierarchical grouping of all the fact tables.
python scripts/subjects.py
Browsing subjects
python scripts/subjects.py # children of the root subject (DST)
python scripts/subjects.py "Borgere" # children of subject "Borgere" ("Borgere" is a child of root subject)
Slash paths
Use slash-separated names to jump multiple levels in one command:
python scripts/subjects.py "Borgere/Befolkning/Befolkningstal"
Each segment matches the description, label, or raw node id of a child under the previous segment.
Depth control
--depth controls how many layers of descendants to show. -1 means “all descendants”.
python scripts/subjects.py "Borgere" --depth 2
python scripts/subjects.py "Borgere/Befolkning" --depth -1
Indented children are subject nodes; when a leaf is reached, its subjects print with descriptions.
Breadcrumbs
--parents (or --no-parents to suppress) prints the resolved path from the root before the listing:
python scripts/subjects.py "Befolkningstal" --parents
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