Machines are needed to find complex software problems, humans … – SiliconANGLE News

Posted: December 29, 2022 at 12:20 am


without comments

Finding rare events in software applications is one of the principal reasons artificial intelligence succeeds in increasingly complex environments, says a DevOps trouble automaton expert.

Its telling you this cluster of events is both unusual and unlikely to be random, said Ajay Singh (pictured left), founder and chief executive officer of Zebrium Inc., a machine learning analytics provider recently acquired by ScienceLogic Inc.

Singh and Michael Nappi (pictured right), chief product and engineering officer at ScienceLogic, spoke with theCUBE hostsJohn Furrier and Savannah Peterson at AWS re:Invent, during an exclusive broadcast on theCUBE, SiliconANGLE Medias livestreaming studio. They discussed advances is the processes for finding root causes of software problems. (* Disclosure below.)

The problem with traditional fault-finding is that humans cant scale quickly like data can, according to Singh. Thats because modern cloud applications, with the plethora of microservices, containers and so on are creating ever more complex environments. Thats all exacerbated through the increasing speed by which changes get rolled out. Software breaks, he said.

People develop new features within hours, push them out to production. The human has just no ability or time to understand whats normal. You need a machine, Singh explained.

You cant manage what you dont know about, added Nappi. Visibility, discoverability, understanding whats going on in a lot of ways, thats the really hard problem to solve. Thats where AI comes in, and Zebrium has its own specialized approach to things.

At its heart its classifying the event catalog of any application stack, Singh explained. Figuring out whats rare, when things start to break, its telling you this cluster of events is both unusual and unlikely to be random, indicating the root cause of the problem.

The process of identifying issues with more accuracy has changed as services have become more prevalent in information technology. You cant hire enough engineers to scale that kind of complexity. They use machine learning to tremendous effect to rapidly understand the root cause of an application failure, Nappi said of Zebriums AI approach.

Heres the complete video interview, part of SiliconANGLEs and theCUBEs coverage of AWS re:Invent:

(* Disclosure: ScienceLogic Inc. sponsored this segment of theCUBE. Neither ScienceLogic nor other sponsors have editorial control over content on theCUBE or SiliconANGLE.)

Read more:

Machines are needed to find complex software problems, humans ... - SiliconANGLE News

Related Posts

Written by admin |

December 29th, 2022 at 12:20 am

Posted in Machine Learning




matomo tracker