Course Outline
Introduction to DataStage
- Overview of ETL process
- Understanding DataStage architecture
- Key components of DataStage
DataStage Administration
- Installation and configuration
- User and security management
- Project setup and environment management
- Job scheduling and management
- Backup and recovery procedures
Data Extraction Techniques
- Connecting to various data sources
- Extracting data from databases, flat files, and external sources
- Data extraction best practices
Data Transformation with DataStage
- Understanding DataStage designer
- Working with different stage types
- Implementing business logic in transformations
- Advanced data transformation techniques
Data Loading and Integration
- Loading data into target systems
- Ensuring data quality and integrity
- Error handling and logging
Performance Tuning and Optimization
- Best practices for performance tuning
- Resource management
- Job sequencing and parallelism
Advanced Topics
- Working with DataStage director
- Debugging and troubleshooting
Summary and Next Steps
Requirements
- Basic understanding of database concepts
- Familiarity with SQL and data warehousing principles
Audience
- IT professionals
- Database administrators
- Developers
Testimonials (5)
The trainer's practical experience, not coloring the discussed solution, but also not introducing a negative connotation. I feel that the trainer is preparing me for real and practical use of the tool - these valuable details are usually not found in books.
Krzysztof Miodek - Krajowy Rejestr Dlugow Biuro Informacji Gospodarczej S.A.
Course - Apache Spark Fundamentals
Machine Translated
The live examples
Ahmet Bolat - Accenture Industrial SS
Course - Python, Spark, and Hadoop for Big Data
very interactive...
Richard Langford
Course - SMACK Stack for Data Science
Sufficient hands on, trainer is knowledgable
Chris Tan
Course - A Practical Introduction to Stream Processing
Get to learn spark streaming , databricks and aws redshift