Informatica Data Quality

Informatica Data Quality training course content - 9.5.1

Basics:

  • What is Data Quality and why it is important?
  • Data Quality Concepts
  • Difference between PowerCenter and Data Quality
  • Data Quality Architecture diagram
  • Different Data Quality components and their role of use

Administrator Console:

  • Gateway node and worker node
  • Model Repository Service
  • Data Integration Service
  • Analyst Service
  • Content Management Service

Developer Client

Analyst tool:

  • Navigate the Developer Tool with different options and collaborate on projects with Analysts using the
    Analyst Tool
  • Perform Column, Rule, Join, Multi object and Mid-Stream Profiling in Analyst Tool
  • Manage reference tables in the Analyst Tool and Developer client
  • Design and develop Mapping/Mapplets in Developer client
  • Create standardization, cleansing and Parsing methods
  • Validate Addresses
  • Identify duplicate/similar records
  • Build mappings used to associate and consolidate matched records

List of DQ transformation coverage:

  • Merge
  • Case Converter
  • Standardizer
  • Character Labeller
  • Token Labeller
  • Token Parser
  • Matcher(classic)
  • Association
  • Consolidation
  • Address Validation
  • Keygen tx

Others:

  • Deployment of DQ mappings into Power center and their business use cases
  • Trouble shooting techniques
  • Real time use cases covering different scenarios which will help candidate to succeed in their
    interview/project development

About Instructor

KudVenkat

Software Architect, Trainer, Author and Speaker in Pragim Technologies.

Reviews

Informatica Data Quality

Average Rating

0

0 ratings

5 1

Details

5 Stars
0
4 Stars
0
3 Stars
0
2 Stars
0
1 Stars
0

ADD A REVIEW

Name
Email
Review Title
Rating
Review Content