Organizations with massive volumes of data stored in Hadoop need a way to extract value from all that information. And that’s where analytics comes in.

With big data analytics, you can implement data mining, predictive analytics, text mining, forecasting and optimization to explore options and make the best possible business decisions.

This paper gets you started, laying out eight considerations to think about when it comes to Hadoop and big data analytics, including:

  • The importance of in-memory analytics.
  • How to optimize your data preparation processes.
  • Uncovering insights through big data exploration.
  • The skill sets needed to derive benefits from Hadoop.
  • And more!

Have a SAS profile? To complete this form automatically Sign In


All personal information will be handled in accordance with the SAS Privacy Statement.

  Yes, I would like to receive occasional emails from SAS Institute Inc. and its affiliates about SAS products and services. I understand that I can withdraw my consent at any time by clicking the opt-out link in the emails.
  I would like SAS to contact me

(Please limit to 500 characters)

Back to Top