skip to main content
Close Icon We use cookies to improve your website experience.  To learn about our use of cookies and how you can manage your cookie settings, please see our Cookie Policy.  By continuing to use the website, you consent to our use of cookies.
Global Search Configuration


The cloud, artificial intelligence/machine learning, and the processing of real-time data will drive major changes to the big data landscape in 2018.


  • This report analyzes the evolving approaches to managing data lakes.
  • This report looks at new approaches to processing real-time data that will make data lakes more responsive and efficient

Features and Benefits

  • Discusses the need to approach cloud big data deployments as platform decisions and how that will impact the way enterprises choose cloud platform providers.
  • Looks at the make-versus-buy decision for AI capabilities and why most enterprises will rely on the "buy" option for applications and tools that embed machine learning.
  • Analyzes the significance of the new data pipeline products and services that are becoming available.

Key questions answered

  • What can enterprises implementing data lakes learn from past experience with enterprise data warehouses?
  • How can enterprises manage expectations, from executive to working level, on how to benefit from AI?
  • Why is there a growing ecosystem around data pipeline tools and services, and how will that impact how organizations master the processing of real-time data?

Table of contents


  • Catalyst
  • Ovum view
  • Key messages


  • Recommendations for enterprises
  • Recommendations for vendors

Data lakes are going virtual

  • Data lakes transcend Hadoop
  • Who owns the query?
  • Cloud object storage – the exception that proves the virtual data lake rule

Multicloud and hybrid cloud strategies become front-burner issues for big data adoption

  • Cloud platform decisions are making the issue strategic
  • Hybrid cloud becomes key criterion for big data cloud implementation

Cloud object storage is making Hadoop "disappear"

  • The cloud reimagines Hadoop …
  • … and it drives Hadoop vendors to reimagine their products

Data pipelines shift the center of gravity for managing real-time processes

  • What are data pipelines?
  • Adding integration to streaming analytics
  • Why data pipelining?

Machine learning is becoming a pillar of big data platforms and analytics

  • ML and AI are on their way to becoming product features
  • Make vs. buy AI? In 2018, more enterprises will buy
  • Demand for machine learning capabilities outshines data science


  • Methodology
  • Further reading
  • Author

Recommended Articles


Have any questions? Speak to a Specialist

Europe, Middle East & Africa team: +44 7771 980316

Asia-Pacific team: +61 (0)3 960 16700

US team: +1 212-652-5335

Email us at

You can also contact your named/allocated Client Services Executive using their direct dial.
PR enquiries - Email us at

Contact marketing -

Already an Ovum client? Login to the Knowledge Center now