data-explorer

SKILLWorkflowcommunity
v1.0.0communityMITUpdated 4mo agoSource →

Systematic dataset analysis: schema inspection, data quality, distribution, correlations, and findings with numbers.

Community-submitted skill. Not yet reviewed by the Forge team. Full prompt content may not be available.Request review →
22Stars
3Clients
2Formats
4mo agoLast update
Skill
Authorcommunity
Version1.0.0
LicenseMIT
CategoryWorkflow
Formatsskill.md, system-prompt
PromptOpen (see Prompt tab)
Compatibility
Claude✓ Supported
Cursor
Copilot
ChatGPT✓ Supported
Gemini✓ Supported
About

Approaches unknown datasets in five structured phases: schema inspection, data quality analysis (nulls, cardinality), distribution analysis (histograms, outliers), relationship discovery (correlations, group-bys), and findings reported with concrete numbers — never vague adjectives.

Use Cases
Data analysisEDAData qualityBusiness intelligence
Keywords
data-analysisedastatisticsdata-qualitypandas