Success Support Communities
Connect and collaborate with Informatica experts and champions
Have a question? Start a Discussion and get immediate answers you are looking for
Customer-organized groups that meet online and in-person. Join today to network, share ideas, and get tips on how to get the most out of Informatica
Knowledge Center
One-stop self-service portal for solutions, FAQs, Whitepapers, How Tos, Videos, and more
Video channel for step-by-step instructions to use our products, best practices, troubleshooting tips, and much more
Information library of the latest product documents
Best practices and use cases from the Implementation team
Learn
Role-based training programs for the best ROI
Get certified on Informatica products. Free, Foundation, or Professional
Free and unlimited modules based on your expertise level and journey
Self-guided, intuitive experience platform for outcome-focused product capabilities and use cases
Resources
Most popular webinars on product architecture, best practices, and more
Product Availability Matrix statements of Informatica products
Monthly support newsletter
Informatica Support Guide and Statements, Quick Start Guides, and Cloud Product Description Schedule
End of Life statements of Informatica products

An Introduction to Data Engineering Streaming

This session would be of interest for anyone implementing Informatica “Data Engineering Streaming" (AKA Big Data Streaming) solution for processing and enrichment of data from real-time sources to uncover business insights and act on it in real-time to meet their business needs
Here is the Agenda for the Webinar:
  • Streaming Overview
  • Streaming Sources and Targets
  • Structured streaming
  • Streaming mapping Configurations
  • Window transformation
  • Use case & Demo
  • Troubleshooting and self-service
  • References
Speaker Details:

The presenter of this session is Ramesh Jha, who has been with Informatica for over 8 years. and supports Data Engineering Integration (BDM), Data Engineering Streaming (BDS) products on Spark, Databricks engine. This includes both on-premise and cloud deployment of DEI/DES products on Azure, AWS ecosystem.