OBT Design Optimizer
// Designs and optimizes One Big Table (OBT) patterns
$ git log --oneline --stat
stars:384
forks:73
updated:March 4, 2026
SKILL.mdreadonly
SKILL.md Frontmatter
nameOBT Design Optimizer
descriptionDesigns and optimizes One Big Table (OBT) patterns
version1.0.0
categoryData Modeling
skillIdSK-DEA-020
allowed-toolsRead,Write,Edit,Glob,Grep,Bash
OBT Design Optimizer
Overview
Designs and optimizes One Big Table (OBT) patterns. This skill balances denormalization benefits with maintainability for analytical use cases.
Capabilities
- Column selection optimization
- Denormalization strategy
- Nested/repeated field design (BigQuery)
- Clustering key selection
- Partition strategy
- Update frequency optimization
- Query pattern analysis
- Storage vs. performance tradeoffs
Input Schema
{
"sourceModels": ["object"],
"queryPatterns": ["object"],
"platform": "snowflake|bigquery|redshift",
"constraints": {
"maxColumns": "number",
"refreshFrequency": "string"
}
}
Output Schema
{
"obtDesign": {
"columns": ["object"],
"clustering": ["string"],
"partitioning": "object"
},
"buildStrategy": "object",
"refreshConfig": "object",
"estimatedQueryImprovement": "percentage"
}
Target Processes
- OBT Creation
- BI Dashboard Development
- Query Optimization
Usage Guidelines
- Analyze source models and relationships
- Document common query patterns
- Define platform and constraints
- Balance column count with query needs
Best Practices
- Include only columns needed for known query patterns
- Use appropriate clustering for common filter columns
- Partition by date for time-series analysis
- Schedule refreshes based on source update frequency
- Monitor query performance and adjust design