Extract Insights and Visualize Data with Databricks SQL
This training covers practical skills that are becoming increasingly important in IT and data-driven roles: transforming raw data into insights that are easy to understand and share. In m...
Three modules: analytical SQL, effective visualizations, shareable dashboards
Databricks solves this problem by providing a single platform where data can be connected, queried in SQL, and transformed into visual insights — all in one place. To make this concrete, the training is based on a realistic scenario using a global compensation dataset. The goal is not just to run SQL queries, but to understand what the data is telling us: how compensation is distributed, where gaps exist, and how these insights can be clearly communicated.
Each clip in the training constructs a specific piece of the analysis. These pieces ultimately come together into a dashboard that tells a complete compensation story.
Sign in to read this course
A free account unlocks all 514 courses. 20 are readable without one.
What's inside
8 sections- 1 Table of Contents
- 2 Introduction and background of the training
- 3 Mastering Analytical SQL in Databricks
- 4 Creating Effective Visualizations
- 5 Building Shareable Dashboards
- 6 Key SQL Query Summary
- 7 Key concepts and terminology
- 8 Good practices and recommendations
More Azure Databricks & Spark courses
View all 14Administering Clusters and Configuring Policies with Databricks
Databricks architecture, cluster types and runtimes, autoscaling, cluster policies, pools and init scripts.
ETL Pipelines with Azure Databricks and Data Factory
Build ETL with Spark and PySpark, Unity Catalog governance, Delta Lake and Databricks vs Data Factory.
Manage Data with Azure Databricks and Azure Data Lake
Connect Databricks to ADLS Gen2 securely, ingest with Auto Loader and govern with Unity Catalog.
Optimize Storage and Performance with Delta Lake
Delta Lake internals, ACID, OPTIMIZE, Z-Order, liquid clustering, caching and Photon acceleration.
Real-Time Data Processing with Azure Databricks
Spark Structured Streaming with Event Hubs — windowing, stateful processing and real-time anomaly detection.
Machine Learning with Azure Databricks
The Databricks ML lifecycle: MLflow tracking, tuning with Ray, the model registry, serving and AutoML.
Interested in this course?
Contact us to book it or get a custom training plan for your team.