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

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

Subscribe Email Alerts

If you wish to receive email alerts when new articles, videos or interview questions are posted on PragimTech.com, you can subscribe by providing your valid email.