Top 10 Requirements for Modern Data Integration
-
By
Tim King
, Executive Editor at Solutions Review - Best Practices, Presentations,
Check out this presentation, courtesy of Viakom Krishna, VP of Engineering at SnapLogic. Data Integration is changing, and enterprises are collecting data from more sources than legacy solutions can deal with. As a result, the market has evolved, and software tools are having to change with the times.
Prior to this evolution, integration tools remained in the hands of IT departments. However, this can no longer be the case. End-users need to tools they can utilize on-demand, helping them migrate data from disparate sources to gain a single unified view. In this way, Data Integration tools should be flexible, enabling business analysts self-service functionality.
In this slideshow, the Data Integration experts themselves explain ten requirements that modern tools must posses. As you might guess, many of these requirements involve providing users the autonomy they need to answer questions when they see fit, not just when the IT department needs a question answered.
Widget not in any sidebars
This article was written by Tim King on July 13, 2016
Tags
Tim King
Executive Editor
Tim is Solutions Review's Executive Editor covering the human impact of AI on the future of work and learning. He is also the Media Strategist behind Insight Jam (1M+ on YouTube) events and programming. A 2017 and 2018 Most Influential Business Journalist and 2021 "Who's Who" in multiple categories, Tim is a recognized thought leader in enterprise tech and AI.
- The 17 Best AI Agents for Data Integration to Consider in 2026 - December 22, 2025
- The 27 Best AI Agents for Data Engineering to Consider in 2026 - December 11, 2025
- The 4 Best Informatica Online Training and Certifications for 2026 - December 1, 2025
