This course offers a deep dive into designing data models within the Databricks Lakehouse environment, and understanding the data products lifecycle. Participants will learn to align business requirements with data organization and model design leveraging Delta Lake and Unity Catalog for defining data architectures, and techniques for data integration and sharing. Prerequisites: Foundational knowledge equivalent to Databricks Certified Data Engineer Associate and familiarity with many topics covered in Databricks Certified Data Engineer Professional. Experience with: Basic SQL queries and table creation on Databricks Lakehouse architecture fundamentals (medallion layers) Unity Catalog concepts (high-level) [Optional] Familiarity with data warehousing concepts (dimensional modeling, 3NF, etc.) is beneficial but not mandatory. Labs: Yes
talk-data.com
Topic
dimensional modeling
(Kimball) Dimensional Modeling
data_warehouse
dimensional_modeling
bi
analytics_engineering
1
tagged
Activity Trend
3
peak/qtr
2020-Q1
2026-Q1
Top Events
O'Reilly Data Engineering Books
12
O'Reilly Data Science Books
11
Data Engineering Podcast
8
O'Reilly Business Intelligence Books
4
The Joe Reis Show
2
Secrets of Data Analytics Leaders
2
dbt Coalesce 2022
2
Databricks DATA + AI Summit 2023
1
The Analytics Engineering Podcast
1
Leaders of Analytics
1
Data + AI Summit 2025
1
The Future of Data Podcast | conversation with leaders, influencers, and change makers in the World of Data & Analytics
1
Filtering by:
Data + AI Summit 2025
×