What Is AIOps And Why It Matters In Business

AIOps is the application of artificial intelligence to IT operations. It has become particularly useful for modern IT management in hybridized, distributed, and dynamic environments. AIOps has become a key operational component of modern digital-based organizations, built around software and algorithms.
Understanding AIOpsThe term AIOps was first coined by global research and advisory company Gartner in 2016.
AIOps uses big data and machine learning capabilities to enhance IT operations. It enables businesses to:
Identify significant events and patterns related to system performance and availability.Diagnose and report root causes swiftly for either human or machine intervention and resolution.Aggregate large volumes of IT operations data relating to applications, analytics tools, and infrastructure components.In each of the above examples, AIOps replaces multiple and sometimes convoluted manual IT operations with a single, intelligent AI platform. As a result, teams can respond to issues quickly and proactively. In some cases, human teams may not need to respond at all.
AIOps also seeks to bridge the gap between an increasingly dynamic IT environment and user expectations around application performance and availability. In the next section, we will take a closer look at how this gap is being bridged in more detail.
How does AIOps bridge the gap?It should be noted that AIOps is not a panacea to increased efficiency and performance. Businesses will realize the most value from AIOps by using it as an independent platform incorporating data from all IT monitoring sources.
Data is digested via algorithms that streamline and automate IT operations monitoring. There are five types:
Data selection – here, algorithms are used to filter through vast amounts of superfluous data to find elements indicating a problem. In most businesses, AIOps uses entropy algorithms to filter data from networks, infrastructure, applications, cloud, and storage components.Pattern discovery – are there relationships or correlations between selected data elements? What are the causes and the subsequent events? How can they be grouped for further analysis using text, time, and topology?Inference – or identifying the root causes of problems or other recurring issues to immediately rectify them. Collaboration – how can an algorithm apply the insights gleaned from problem resolution for future incidents? That is, can the problem-solving process be accelerated or better still, can problems be identified before they occur? Results are shared in a virtual collaborative environment which is particularly important for problems that transcend boundaries associated with technology, department, or skill level.Automation – wherever possible, response and remediation should be automated to make solutions more precise, timely, and cost-effective. Improved workflows can be triggered with or without human intervention.Key takeaways:AIOps uses big data and machine learning capabilities in the application of artificial intelligence to IT operations. The term was first coined by research company Gartner in 2016.AIOps replaces multiple and somewhat convoluted manual processes with a single, intelligent solution. More generally speaking, it helps businesses meet user expectations in the face of increasingly dynamic IT operations.AIOps uses algorithms to streamline and automate operations monitoring by way of data selection, pattern discovery, inference, collaboration, and automation.Other examples merging development with internal operational departmentsDevOps Engineering





Main Free Guides:
Business ModelsBusiness StrategyBusiness DevelopmentDigital Business ModelsDistribution ChannelsMarketing StrategyPlatform Business ModelsRevenue ModelsTech Business ModelsBlockchain Business Models FrameworkThe post What Is AIOps And Why It Matters In Business appeared first on FourWeekMBA.