Product Brief: Embedded Analytics

This 2017 report, from the Eckerson Group, uncovers the keys of data monetization and provides the required steps so that businesses can start using their data assets as a new revenue stream. Specifically, how businesses can create data-driven products and services that generate revenue, reduce costs, cement customer loyalty, and deliver a competitive edge.

Use this guide to learn about the infrastructure and processes companies need to succeed with monetizing their data using the following three approaches:

  1. Deliver data analytics internally to employees so they can make better decisions, optimize processes, and reduce costs
  2. Enrich existing products with data analytics, improving customer retention and preserving market share
  3. Sell data products and services to customers, generating new product lines and revenue.

 

About the Author

Chor-Ching Fan is an IT and product management leader with deep experience establishing data teams and launching analytics solutions. His client engagements focus on all-source integration for achieving an edge in real-time operations. He can be reached at ccfan@eckerson.com

More Content by Chor-Ching Fan
Previous Flipbook
Six Strategies for Enabling Users to Advance Faster with BI and Analytics
Six Strategies for Enabling Users to Advance Faster with BI and Analytics

TDWI Checklist Reports provide an overview of success factors for a specific project in business intelligen...

Next Flipbook
Which Embedded Analytics Product Is Right For You?
Which Embedded Analytics Product Is Right For You?

This report, from the Eckerson Group, outlines twelve key criteria for evaluating embedded analytics soluti...

×

Ready to see how Dundas BI can help your business? Request a Live Demo!

First Name
Last Name
Company Name
Phone Number
Country
I consent to receive commercial electronic messages from Dundas regarding products, services, updates and other information about Dundas. You can withdraw your consent at any time.
I Agree
Thank you!
Error - something went wrong!