Databricks Lakehouse Fundamentals


  Databricks Lakehouse Fundamentals

Databricks Lakehouse Fundamentals is a free training course and accreditation offered by Databricks that covers the basic concepts of the Databricks Lakehouse Platform. The Lakehouse Platform is a unified data, analytics, and AI platform designed to address the challenges of managing and analyzing large-scale data sets.

The training is designed to equip you with practical skills and knowledge. It covers a range of topics, including:

  • The Databricks Lakehouse architecture includes the platform’s components, how they work together, and the benefits they offer.
  • Data ingestion and storage: How to ingest data from various sources, store it in the Lakehouse, and ensure data quality and reliability.
  • Data processing and analysis: Using the platform’s tools and libraries to process and analyze data, including SQL, Python, and R.
  • Machine learning: How to build and deploy machine learning models on the platform.
  • Security and governance: How to secure data in the Lakehouse and ensure compliance with regulations.

The accreditation, earned by successfully completing a short assessment on the fundamental concepts covered in the training, is a significant recognition of your understanding and skills. It demonstrates your proficiency in the Databricks Lakehouse Platform and its capabilities, making it a valuable addition to your professional profile.

Databricks Training Demo Day 1 Video:

You can find more information about Databricks Training in this Dtabricks Docs Link



Unogeeks is the No.1 IT Training Institute for Databricks Training. Anyone Disagree? Please drop in a comment

You can check out our other latest blogs on Databricks Training here – Databricks Blogs

Please check out our Best In Class Databricks Training Details here – Databricks Training

 Follow & Connect with us:


For Training inquiries:

Call/Whatsapp: +91 73960 33555

Mail us at:

Our Website ➜

Follow us:





Leave a Reply

Your email address will not be published. Required fields are marked *