Advancing Spark - Making Databricks Delta Live Table Templates
The new Delta Live Tables functionality within Databricks is intended to simplify data engineering tasks and automate a whole load of traditionally complex tasks for you... but at first glance this appears to come at the cost of flexibility and reusability. In this video Simon takes the example workbook from the documentation and deconstructs it to build a generic, metadata driven template that can be used across multiple DLT Pipelines. The sample code used in the video can be found on the databricks documentation: https://docs.microsoft.com/en-us/azur... As always, don't forget to hit like & subscribe, and get in touch if Advancing Analytics can help you achieve your data lakehouse objectives!

▶︎
Databricks architecture - how it really works

▶︎
Advancing Spark - Databricks Delta Live Tables with SQL Syntax

▶︎
Advancing Spark - Databricks Delta Live Tables First Look

▶︎
Easy Migration from Postgres to Databricks Lakebase

▶︎
Advancing Spark - Bloom Filter Indexes in Databricks Delta

▶︎
Advancing Spark - Databricks Delta Change Feed

▶︎
Databricks, Delta Lake and You

▶︎
RAG For Beginners in Azure - Part 1

▶︎
Data Warehouse vs Data Lake vs Data Lakehouse | ETL, OLAP vs OLTP

▶︎
Databricks Full Course for Beginners (2 Hours) - Declarative Pipelines & Lakeflow Designer

▶︎
Should You Use Databricks Delta Live Tables?

▶︎
Advancing Spark - Give your Delta Lake a boost with Z-Ordering

▶︎
Introduction to Databricks Delta Live Tables

▶︎
Why the Databricks Delta Live tables are the next big thing?

▶︎
Advancing Spark - Setting up Databricks Unity Catalog Environments

▶︎
Accelerating Data Ingestion with Databricks Autoloader

▶︎
What is Spark? (Visual Explanation)

▶︎
Advancing Spark - Databricks Delta Streaming

▶︎
What is this delta lake thing?

▶︎
