DDrona4U
Sign inCreate account
My learningData Bricks Interview QuestionsLesson 01
Lakehouse vs Data Lake + Data Warehouse: What’s the Real Difference?

Lesson 01

Lakehouse vs Data Lake + Data Warehouse: What’s the Real Difference?

A Lakehouse combines the scalability of a data lake with the performance, governance, and SQL capabilities of a data warehouse in a single unified architecture, eliminating the need to move data between separate systems.

Get the full lesson

Sign in to unlock everything beyond the preview — it's free.

  • Take timestamped notes as you watch
  • Read the full transcript and download resources
  • Join the discussion and track your progress
Sign inCreate free account

Curriculum

20 lessons · 45m

0/20 lessons done45m left
  1. 02:00

    Lakehouse vs Data Lake + Data Warehouse: What’s the Real Difference?

    02:00

  2. 0201:59

    What Happens Between the Control Plane and Data Plane When You Run a Databricks Notebook?

    01:59

  3. 0302:01

    Why Databricks Runs in Your Cloud Account — And Why It Matters for Security

    02:01

  4. 0402:02

    How Databricks Separates Storage from Compute — The Core Architecture Behind Its Scalability

    02:02

  5. 0502:29

    What Is a Databricks Workspace and How Does It Connect Clusters, Jobs, Catalogs, and Users?

    02:29

  6. 0602:52

    Databricks Workspace: The Central Hub for Users, Clusters, Jobs & Catalogs

    02:52

  7. 0702:13

    Databricks Runtime vs Open-Source Spark: What Do You Lose When You Leave?

    02:13

  8. 0802:21

    Databricks Serverless Compute: What Happens When There’s No Cluster to Manage?

    02:21

  9. 0902:11

    Delta Transaction Log: How ACID Works on Top of Parquet Files

    02:11

  10. 1002:01

    Delta Lake Time Travel: Recovering a Table After an Accidental Truncate

    02:01

  11. 1102:12

    OPTIMIZE vs VACUUM vs ZORDER in Delta Lake: When Should You Use Each in Production?

    02:12

  12. 1202:20

    Liquid Clustering vs Z-Order vs Partitioning: Best Strategy for a 50 TB Multi-Filter Table

    02:20

  13. 1302:15

    Deletion Vectors vs Copy-on-Write: How Delta Lake Speeds Up MERGE and DELETE Operations

    02:15

  14. 1402:32

    Delta UniForm: Querying Delta Tables from Iceberg and Hudi Without Data Rewrites

    02:32

  15. 1502:22

    Delta Lake Schema Evolution: What’s Automatic, What Needs mergeSchema, and What Can Break Your Pipeline?

    02:22

  16. 1602:11

    Concurrent Writes in Delta Lake: What Happens When Two Streaming Jobs Hit the Same Table?

    02:11

  17. 1702:08

    Managed vs External Tables in Databricks: Which One Should You Choose in 2026?

    02:08

  18. 1802:09

    VACUUM with 0-Hour Retention: Why Delta Lake Time Travel Suddenly Broke

    02:09

  19. 1902:13

    Zero-Downtime Migration: Converting a 10 TB Parquet Table to Delta Lake Safely

    02:13

  20. 2002:16

    Small Files in Delta Lake: Every Lever You Can Use to Fix Read Performance

    02:16