Training offering

Fast Lane Deutschland

IBM InfoSphere DataStage Essentials (v11.5)

Information

Length: 4.0 Days
Course code: KM204G
Delivery method: Classroom
Price: 2690 EUR

Session dates

Date Location  
Stuttgart
2690 EUR before tax
language: de
Berlin
2690 EUR before tax
language: de
Garching
2690 EUR before tax
language: de
Hamburg
2690 EUR before tax
language: de
M√ľnster
2690 EUR before tax
language: de

Overview

This course enables the project administrators and ETL developers to acquire the skills necessary to develop parallel jobs in DataStage. The emphasis is on developers. Only administrative functions that are relevant to DataStage developers are fully discussed. Students will learn to create parallel jobs that access sequential and relational data and combine and transform the data using functions and other job components.

Public

Project administrators and ETL developers responsible for data extraction and transformation using DataStage.

Prerequisits

  • Basic knowledge of Windows operating system
  • Familiarity with database access techniques

Objective

  • Describe the uses of DataStage and the DataStage workflow
  • Describe the Information Server architecture and how DataStage fits within it
  • Describe the Information Server and DataStage deployment options
  • Use the Information Server Web Console and the DataStage Administrator client to create DataStage users and to configure the DataStage environment
  • Import and export DataStage objects to a file
  • Import table definitions for sequential files and relational tables
  • Design, compile, run, and monitor DataStage parallel jobs
  • Design jobs that read and write to sequential files
  • Describe the DataStage parallel processing architecture
  • Design jobs that combine data using joins and lookups
  • Design jobs that sort and aggregate data
  • Implement complex business logic using the DataStage Transformer stage
  • Debug DataStage jobs using the DataStage PX Debugger

Topics

1. Introduction to DataStage
2. Deployment
3. DataStage Administration
4. Work with Metadata
5. Create Parallel Jobs
6. Access Sequential Data
7. Partitioning and Collecting Algorithms
8. Combine Data
9. Group Processing Stages
10. Transformer Stage
11. Repository Functions
12. Work with Relational Data
13. Control Jobs