Course Outline

Introduction

Installing and Configuring Cloud-Native Apache Superset

  • Using Docker to initialize development environment
  • Using Python's setup tools and pip

Overview of Basic Features and Architecture of Apache Superset

  • Rich visualizations
  • 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

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

Performing Advanced Visualization

  • Creating a Pivot Table
  • Exploring different visualization types
  • Building a visualization 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
  • Customizing permissions

Troubleshooting

Summary and Conclusion

Requirements

  • Experience with business intelligence and data visualization
  • Familiar with Apache Superset fundamentals

Audience

  • Data analysts
  • Data scientists
  • Data engineers
  14 Hours
 

Testimonials (1)

Related Courses

Big Data Business Intelligence for Govt. Agencies

  35 Hours

Big Data Business Intelligence for Telecom and Communication Service Providers

  35 Hours

Related Categories