By dlt-hub
Transform raw dlt pipeline data into Canonical Data Models using Kimball dimensional modeling. Annotate sources with business concepts, build entity ontologies from DBML schemas, generate CDM schemas in DBML, create ibis-based dlt.hub transformation functions, and manage pipelines via local MCP server.
Annotate dlt pipeline sources for transformation. Use when the user wants to transform data, do data modelling, design a data model, describes their data sources and use cases, or wants to build a CDM from existing pipelines.
Build a business entity graph (ontology) from annotated sources and taxonomy. Use after annotate-sources to design the entity model before CDM generation.
Write dlt transformation functions that map source tables to CDM entities. Use after generate-cdm to produce the transformation Python script.
Generate a Canonical Data Model (CDM) in DBML using Kimball dimensional modeling. Use after create-ontology to produce the implementation-ready CDM schema.
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