Lakehouse Architecture – Databricks Fundamentals Course

As an enterprise Product Manager, I’m always looking for ways to deepen my understanding of the data platforms my teams and customers work with. Recently, I completed the Databricks Lakehouse Fundamentals course — a free, self-paced introduction to Databricks and the lakehouse architecture.

You can find it here: Databricks Lakehouse Fundamentals Course

Note : If you want the certificate, use the databricks academy instead.

Is it worth your time?

Short answer: Yes — especially if you’re a PM, data leader, or technologist working around data products.

Is it a little bit of a Databricks infomercial? Absolutely. But marketing aside, it’s a well-structured primer on some key concepts that are shaping modern data platforms — things like:

  • The evolution from data warehouses and data lakes → to the lakehouse model
  • Why open formats (like Delta Lake) matter
  • How Databricks thinks about unifying data engineering, analytics, and machine learning
  • And some high-level platform architecture basics

Why I recommend it (especially for Product Managers)

Most PMs working in data-heavy environments end up interfacing with data engineers, platform teams, or customers building on tools like Databricks. But the technical jargon can sometimes be a barrier.

This course won’t make you an expert — but it will give you enough context to:

  • Understand what a lakehouse is (beyond the buzzword)
  • Ask better questions in product conversations
  • Appreciate tradeoffs in data architecture decisions
  • And see where Databricks fits into the larger data ecosystem

Final Thoughts

If you’re a Product Manager (or really anyone in tech) looking to level up your data fluency, it’s a low-effort, high-reward way to invest about 1.5 hours.

Similar Posts

Leave a Reply

Your email address will not be published.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

This site uses Akismet to reduce spam. Learn how your comment data is processed.