Using Machine Learning Analytics to Deliver Service Levels

Jerry Melnick
SIOS Technology

While the layers of abstraction created in virtualized environments afford numerous advantages, they can also obscure how the virtual resources are best allocated and how physical resources are performing. This can make maintaining optimal application performance a never-ending exercise in trial-and-error.

This post highlights some of the challenges encountered when using traditional monitoring and analytics tools, and describes how machine learning, as a next-generation analytics platform, provides a better way to meet SLAs by finding and fixing issues before they become performance problems. A future post will describe how machine learning analytics can also be used to allocate resources for optimal performance and cost-saving efficiency.


Recent News & Press

Step-by-Step: Configuring Amazon EC2 for Business-Critical...

How to prepare your EC2 infrastructure to span two different regions — the first step in ensuring your business-critical applications can endure the failure of […]

Read More

New SIOS LifeKeeper for Linux Version 9.6.2 Adds Support for the...

SAN MATEO, CA – September 26, 2022– SIOS Technology Corp., an industry leader in application high availability and disaster recovery, today announced the immediate availability […]

Read More

SIOS Technology Adds More Speakers to Its Lineup at the Second Annual...

SAN MATEO, Calif. – September 19, 2022 – SIOS Technology Corp., an industry leader in application high availability (HA) and disaster recovery (DR), today announced […]

Read More