Get in Touch

Course Outline

Introduction

Installing and Configuring Cloud-Native Apache Superset

  • Using Docker to initialise the development environment.
  • Using Python setup tools and pip.

Overview of Basic Features and Architecture of Apache Superset

  • Rich visualisations.
  • Easy-to-navigate user interface.
  • Integration with most databases.

Connecting Data to Apache Superset

  • Configuring data input.
  • Improving the input process.

Conducting Advanced Data Analytics

  • Calculating a rolling average of the time series.
  • Working with Time Comparison.
  • Resampling the data using various methods.
  • Scheduling queries in SQL Lab.

Performing Advanced Visualisation

  • Creating a Pivot Table.
  • Exploring different visualisation types.
  • Building a visualisation plugin.

Creating and Sharing Dynamic Dashboards

  • Adding Annotations to Your Chart.
  • Using REST API.

Integrating Apache Superset with Databases

  • Apache Druid.
  • BigQuery.
  • SQL Server.

Managing Security in Apache Superset

  • Understanding provided roles and creating new roles.
  • Customising permissions.

Troubleshooting

Summary and Conclusion

Requirements

  • Experience with business intelligence and data visualisation.
  • Familiarity with Apache Superset fundamentals.

Audience

  • Data analysts.
  • Data scientists.
  • Data engineers.
 14 Hours

Testimonials (2)

Related Categories