10 Best Practices for Modern Data Integration

Getting Data Fast and Getting It Right

Before big data and continuous data came along, data movement was pretty simple. And hand coding was often the most efficient way to build static, linear pipelines.

Today, the complexity of modern data integration means custom code quickly becomes a bottleneck to self-service, scaling, and optimization of cloud services. In fact, 66% of data experts think that this data complexity and friction can have a crippling impact on digital transformation.

Unlock the potential of advanced analytics, machine learning, and AI with the skills and people you have today by bringing speed, flexibility, and resiliency to your data pipelines. Deliver the data to those who need it quickly and accurately.

Download the 10 Best Practices to learn how to:

  • Reduce schema specification to lower technical debt
  • Handle data drift to manage the downstream impact of bad data
  • Optimize legacy pipelines for cost and efficiency in the cloud

See What Clients Are Saying About Us

Quality of Service and Fraud Protection

“RingCentral can now address quality of call service in real-time allowing us to make immediate adjustments to the network and carriers.”

Michael Becker Senior Director of Big Data, RingCentral
Quality of Service and Fraud Protection

“StreamSets technologies and DataOps practices allow us to deliver the business outcomes that we're focused on and make an impact on the people we serve every day.”

Anne-Britton Arnett VP, Information Management and Analytics, Humana
AI at Enterprise Scale

“StreamSets allows me to provide stable, sustainable data operations on top of both a self-service and professional platform and to operate this at scale.”

Dan Jeavons GM of Data Science, Shell