Get my Modern Data Essentials training (for free) & start building more reliable data architectures
ModernDataCommunity.com
-----
Data Modeling is arguably the most impactful decision for a data team.
It determines your architecture and the path that the whole team will follow.
While this is not a new topic, the new tools and tech over the last decade has caused many to reconsider what's best in a modern landscape.
So in today's video I want to break down this topic.
We'll discuss:
1. Why is Data Modeling (still) important?
2. What are the common approaches?
3. What things should you consider?
Timestamps:
0:00 - Intro
0:44 - Why is Data Modeling Important?
2:33 - Common Approaches
7:39 - Things to Consider
Title & Tags:
Data Modeling in the Modern Data Stack
#kahandatasolutions #dataengineering #datamodeling
- Data Modeling in the Modern Data Stack ( Download)
- Data Modeling in the Modern Data Stack ( Download)
- Modern vs Traditional Data Stacks (3 differences) ( Download)
- Comparing 3 Types of Data Modeling (Normalized vs Star Schema vs Data Vault) ( Download)
- Data Modeling With Joe Reis - Understanding What Data Modeling Is And Where It's Going ( Download)
- Data Modeling Challenges - The Issues Data Engineers & Architects Face When Implementing Data Models ( Download)
- Back to the Future: Where Dimensional Modeling Enters the Modern Data Stack ( Download)
- What is Data Modeling | IDERA Data University ( Download)
- How to Build a Production ML Pipeline with Apache Airflow, Databricks, Kafka, and MLFlow! ( Download)
- Data Modelling for Startups: Domain Models & the Modern Data Stack - Thomas in't Veld | Crunch 2022 ( Download)
- Dimensional Data Modeling in Modern Data Stack | TechShort 3 ( Download)
- What Is The Modern Data Stack - Intro To Data Infrastructure Part 1 ( Download)
- Data Architecture 101: The Modern Data Warehouse ( Download)
- Modern Data Stack for Analytics Engineering - Kyle Shannon ( Download)
- What is Data Modelling Beginner's Guide to Data Models and Data Modelling ( Download)