IBM Cloud Pak for Data Overview

IBM Cloud Pak for Data is the #3 ranked solution in our list of top Data Virtualization tools. It is most often compared to Azure Data Factory: IBM Cloud Pak for Data vs Azure Data Factory

What is IBM Cloud Pak for Data?

IBM Cloud Pak® for Data is a fully-integrated data and AI platform that modernizes how businesses collect, organize and analyze data to infuse AI throughout their organizations. Cloud-native by design, the platform unifies market-leading services spanning the entire analytics lifecycle. From data management, DataOps, governance, business analytics and automated AI, IBM Cloud Pak for Data helps eliminate the need for costly, and often competing, point solutions while providing the information architecture you need to implement AI successfully.

Building on the streamlined hybrid-cloud foundation of Red Hat® OpenShift®, IBM Cloud Pak for Data takes advantage of the underlying resource and infrastructure optimization and management. The solution fully supports multicloud environments such as Amazon Web Services (AWS), Azure, Google Cloud, IBM Cloud™ and private cloud deployments. Find out how IBM Cloud Pak for Data can lower your total cost of ownership and accelerate innovation.

IBM Cloud Pak for Data is also known as Cloud Pak for Data.

IBM Cloud Pak for Data Customers

Qatar Development Bank, GuideWell, Skanderborg Music Festival

IBM Cloud Pak for Data Video

Pricing Advice

What users are saying about IBM Cloud Pak for Data pricing:
  • "I think that this product is too expensive for smaller companies."

Filter Reviews

Filter by:
Filter Reviews
Filter Unavailable
Company Size
Filter Unavailable
Job Level
Filter Unavailable
Filter Unavailable
Filter Unavailable
Order by:
  • Date
  • Highest Rating
  • Lowest Rating
  • Review Length
Showingreviews based on the current filters. Reset all filters
Director at a university with 1,001-5,000 employees
Real User
Good reporting, but resource utilization is high and technical support can be improved

What is our primary use case?

We are a consultancy company that specializes in data integration and we advise clients on what solutions will best meet their requirements.

Pros and Cons

  • "The most valuable features are data virtualization and reporting."
  • "The technical support could be a little better."

What other advice do I have?

I would rate this solution a five out of ten.