Course Outline
Introduction
Overview of "Open Studio for Big Data" Features and Architecture
Setting up Open Studio for Big Data
Navigating the UI
Understanding Big Data Components and Connectors
Connecting to a Hadoop Cluster
Reading and Writing Data
Processing Data with Hive and MapReduce
Analyzing the Results
Improving the Quality of Big Data
Building a Big Data Pipeline
Managing Users, Groups, Roles, and Projects
Deploying Open Studio to Production
Monitoring Open Studio
Troubleshooting
Summary and Conclusion
Requirements
- An understanding of relational databases
- An understanding of data warehousing
- An understanding of ETL (Extract, Transform, Load) concepts
Audience
- Business intelligence professionals
- Database professionals
- SQL Developers
- ETL Developers
- Solution architects
- Data architects
- Data warehousing professionals
- System administrators and integrators
Testimonials (3)
I liked that it was practical. Loved to apply the theoretical knowledge with practical examples.
Aurelia-Adriana - Allianz Services Romania
Course - Python and Spark for Big Data (PySpark)
The fact that we were able to take with us most of the information/course/presentation/exercises done, so that we can look over them and perhaps redo what we didint understand first time or improve what we already did.
Raul Mihail Rat - Accenture Industrial SS
Course - Python, Spark, and Hadoop for Big Data
The combination of theory and practice with tools like Databricks
Graciela Saud - Servicio de Impuestos Internos
Course - Spark for Developers
Machine Translated