By using tdwi.org website you agree to our use of cookies as described in our cookie policy. Learn More

RESEARCH & RESOURCES

Checklist Report Cover

TDWI Checklist | Strategies for Improving Big Data Quality for BI and Analytics

May 18, 2018

As more business users, analysts, and data scientists access data from new and varied sources, achieving the level of data quality necessary for confident, data-driven decisions has become even harder. Big data lakes, enterprise data hubs, and cloud data storage present new challenges that require organizations to rethink data quality rules and processes designed for use with traditional systems such as data warehouses.

Organizations dependent on big data for a wide range of business decisions need data quality management that can improve the data so it is fit for each desired purpose. Without data quality management, the massive quantities of data organizations ingest will not provide the anticipated benefits—and can even do harm if used to drive faulty business decisions.

This TDWI Checklist Report offers six strategies for improving big data quality. In discussing these strategies, we will look at how managing data quality in big data environments differs from traditional systems.


Your e-mail address is used to communicate with you about your registration, related products and services, and offers from select vendors. Refer to our Privacy Policy for additional information.

TDWI Membership

Get immediate access to training discounts, video library, research, and more.

Find the right level of Membership for you.