American News Group

AIOps: Artificial intelligence helps build and run artificial intelligence

Lately, the concept of the employment of artificial intelligence for IT operations (AIOps) — which Gartner defines as the combination of AI, big data and ML to manage primary IT operations functions, “including availability and performance monitoring, event correlation and analysis, and IT service management and automation” — has been taking hold. Gartner has predicted that large enterprise exclusive use of AIOps and digital experience monitoring tools to monitor applications and infrastructure will rise from a mere five percent in 2018 to 30% in 2023.

In recent months, the dispersal of corporate teams to working out of their homes may have accelerated the acknowledgement that IT needs to be run on as much of a lights-out mode as possible. But the implications of AIOps go well beyond the recent COVID-19 crisis.  As much of the thrust in IT activity has been toward developing, scaling and supporting AI across their enterprises, we’re at a point in which AI will help us build, deploy and manage our next generation of AI. 

What can AIOps do for an enterprise IT shop? Jessica Rockwood, VP of engineering for IBM Watson, counted the ways in a recent post, which coincided with IBM’s announcement of enhanced AIOps capabilities on its Watson platform:

What goes into an AIOps platform? Sameer Padhye, Bishnu Nayak and Enzo Signore explore the essential building blocks in their ebook, AIOps for Dummies:

The COVID-19 crisis has put pressure on IT leaders to cut spending, as well as find ways to do a lot more with a lot less. At the same time, there’s insatiable demand for AI-driven approaches that will inevitably tax IT infrastructures. For example, last year, Gartner analysts found general AI projects to be multiplying in scope. The average number of AI projects in place was four, but respondents expected to add six more projects in the next 12 months, and another 15 within the next three years. Ironically, AI itself is providing a way to support a viable infrastructure to support the growing volume of AI initiatives. 

Exit mobile version