Creating high-level data models might seem like an abstract and technically easy task, but too often mistakes in the process become the root cause of many challenges of a data initiative.
In this video, Juha Korpela, data modeling expert and CPO at Ellie.ai, covers the key mistakes that happen in conceptual data modeling and logical data modeling design processes and gives tips on how to avoid them.
Learn more about Data Modeling on our blog - ellie.ai/blogs
And check out our Data Modeling With Ellie.ai guide - ellie.ai/best-practices-ellie-ai
- Common Mistakes in Conceptual and Logical Data Modeling - Ellie.ai ( Download)
- How to read Conceptual Data Models - Ellie.ai ( Download)
- Conceptual vs Logical Data Models - What are the key differences ( Download)
- How to read Logical Data Models - Ellie.ai ( Download)
- How to create Customizable Entity Types in Ellie.ai ( Download)
- Core Ellie Features in Under 3 Minutes - Ellie Demo ( Download)
- Why Use Ellie.ai Full Workflow & Feature Overview ( Download)
- Common Beginner's ERD Mistakes ( Download)
- Data Models. Conceptual Vs logical ( Download)
- Data Modeling in the Age of Data Mesh - Juha Korpela, Ellie.ai ( Download)
- Bring Back Data Modeling - Joe Reis, Ellie.ai Fireside Data Chat #2 ( Download)
- Introducing Ellie 5.0: Conceptual Canvas Upgrade ( Download)
- The Conceptual Data Model and Limits ( Download)
- Business Driven Data Modeling Webinar by Ellie from October 22, 2020 ( Download)
- Logical Data Model (My D&A Talks) ( Download)