As data-centric security gains mainstream recognition for its ability to protect sensitive data from theft and malicious use, enterprises are faced with choosing a solution from an increasing array of options. However, not all solutions that claim to be data-centric are designed for the demands of a big data analytics environment, one where scalability, performance, and availability are crucial to support the throughput requirement of today's and tomorrow's analytical workloads. Here's a handy checklist to help you identify whether a data security solution meets the unique requirements of big data:
As big data environments increasingly include streaming analytics, you need a security solution that can keep up the pace. To get the most out of your data, whether it's real-time or historical, your data-centric security solution should easily scale with your workloads without any impact on performance.
More business intelligence solutions are now using artificial intelligence capabilities and taking advantage of in-memory data processing. To keep up with the speed and performance requirements of these systems, look for a data-centric security solution that delivers high performance with features such as intelligent streaming and load distribution.
Security shouldn't impact the availability of your big data environment. Choose a solution with built-in fault tolerance so that any unexpected failures are resolved automatically without interruption of service. Which brings us to...
You need a solution that supports your current and future big data analytics environment, whether that's on-premises, in the cloud, or a hybrid of both.