Kimball in the context of the modern data warehouse: what's worth keeping, and what's not
Dimensional modeling described in the Kimball Toolbook was in its 3rd edition 15 years ago yet is still the latest in data modeling advice. So much is different in cloud warehouses that many of those best practices are now bad practices. In this video Dave Fowler, the founder of Chartio and author of Cloud Data Management goes over what no longer applies, and what does.
Видео Kimball in the context of the modern data warehouse: what's worth keeping, and what's not канала dbt
Видео Kimball in the context of the modern data warehouse: what's worth keeping, and what's not канала dbt
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Dimensional ModelingRun your data team as a product teamCloud Data Warehouse Benchmark Redshift vs Snowflake vs BigQuery | FivetranLet's Compare the Kimball and Inmon Data Warehouse Architecturesdbt: Snapshot and IncrementalsThe secrets of learning a new language | Lýdia MachováBuilding a robust data pipeline with dbt, Airflow, and Great ExpectationsWhy Power BI loves a Star SchemaETL Architecture In-Depth - Dimensional Modelling 101Return of the Hypercube, Simply BusinessLeveraging dbt to empower creators to turn their passion into profit, TeePublicData Engineering Principles - Build frameworks not pipelines - Gatis SejaAgile Data Warehousing and Business Intelligence: A Disciplined ApproachTypes of Fact Tables in Data Warehouse | Transaction, Periodic and AccumulatingIntroduction to dbt (data build tool) from Fishtown AnalyticsThe difference between Databases, Data Lakes, Data Warehouses, and Data MartsDesigning the first of many data models with dbt – Tyler Pugliese, FastlyConceptual, Logical & Physical Data ModelsMeet dbt: The Data Transformation Tool Used by JetBlue, GitLab, Wistia & Away | Fishtown AnalyticsIntroduction to AWS Services