Artificial Intelligence for IT operations (AIOps) is all about adding context to large volumes of data in order to refine the conclusions reached in such areas as performance analysis, IT service management (ITSM), and IT operations management (ITOM). It has particular value in event correlation, event analysis, anomaly detection, root cause analysis, natural language processing, […]
Artificial Intelligence for IT operations (AIOps) is all about adding context to large volumes of data in order to refine the conclusions reached in such areas as performance analysis, IT service management (ITSM), and IT operations management (ITOM). It has particular value in event correlation, event analysis, anomaly detection, root cause analysis, natural language processing, automation, and diagnostics.
AIOps platforms use a variety of ways to harness AI, big data, and machine learning to analyze IT data. The ultimate goal is the discovery of patterns that can be used to predict incidents, spot emerging behavior, determine root causes, and drive automation.
AIOps is fairly new to the networking and IT management party. The field is largely emerging from the early adopter stage. However, Gartner predicts that by 2023, 40% of DevOps teams will have added AIOps capabilities to ongoing application and infrastructure monitoring efforts.
As a result, the big ITSM and ITOM vendors such as Splunk and BMC are rushing to add AIOps capabilities to their existing suites. That’s why the market is largely dominated by smaller companies and startups. In all likelihood, the next year or two will see some of the firms covered in this guide gobbled up by larger players.
There are many AIOps platforms out there as well as broader ITOM and ITSM suites that are introducing AIOps functionality. The key features to look for include:
Also read: The State of AIOps: What the Future Holds
AIOps is deployed for a variety of reasons. These include:
We have reviewed the market for AIOps and judged the following to be among the top platforms available, in no particular order. These companies are among the early innovators in the AIOps field, and score well in analyst reports in terms of functionality and maturity.
Dynatrace addresses the fact that cloud complexity has expanded beyond the scope of manual management. The company provides a software intelligence platform beyond infrastructure and application monitoring that includes the user experience and business outcome key performance indicators (KPIs). The Dynatrace AI engine, Davis, automatically processes billions of dependencies in real-time, continuously monitors the full stack for system degradation and performance anomalies, and delivers root-cause determination, prioritized by business impact.
Key Differentiators
Datadog Watchdog is a machine learning engine that identifies unknowns within cloud infrastructure, applications, and logs, discovers and alerts on root cause, and helps teams prevent issues before they impact users. Watchdog alerts on abnormal symptoms, accelerates troubleshooting by providing context, and connects the dots across an environment to provide root causes. Watchdog Alerts bring to light symptoms (anomalies, outliers, and other problem areas) without any manual work required to specify thresholds.
Another aspect of the solution, Watchdog Insights, surfaces meaningful signals with context within existing workflows, so issues can be understood in relation to the entire cloud environment. The last component, Watchdog RCA (root cause analysis), determines the underlying causes of issues to ensure the full impact of an issue or outage is addressed, and future incidents are prevented.
Key Differentiators
Applied Intelligence from New Relic puts AI-assisted incident response in the hands of IT to detect, understand, and resolve incidents. It helps IT to eliminate guesswork and solve problems faster with automatic insight into the probable root cause of incidents. IT can see why each open issue occurred, which services and systems were impacted, and what actions are needed for resolution. Integration with incident management tools speeds remediation workflows and keeps incidents in sync across ITSM and observability tools.
Key Differentiators
Also read: SD-WAN is Important for an IoT and AI Future
Broadcom inherited some of its AIOps technology from the acquisition of CA Technologies. Built on the Broadcom Automation.ai platform, it correlates data across users, applications, cloud-native architecture, hybrid infrastructures, and network services then applies machine learning, advanced analytics, and automation to deliver visibility and insight. The goal is to turn data into action to drive continuous improvement, speed service delivery, increase IT efficiency, and accelerate innovation. It also makes it possible for operations teams to optimize service levels, operations, and business outcomes.
Key Differentiators
Moogsoft delivers an enterprise-class, cloud-native platform that empowers customers to drive adoption at their own pace at lower cost. It reduces noise despite the presence of huge data volumes, to enable IT to detect and fix outages rapidly. Its enrichment features add context to ingested alerts from various data sources to provide actionable insights. Correlation makes logical connections between data from anywhere in technology stacks.
Key Differentiators
AppDynamics by Cisco is a way to empower IT to address the problems posed by real-time applications and the demand for business agility and responsiveness. Aimed especially at multi-cloud environments, it offers real-time performance monitoring backed by machine learning. Harnessing Cisco’s domain expertise in networking and storage, it offers detailed insight into IT operations.
Key Differentiators
Also read: AIOps Will Mean the End of Human Network Management
Zenoss has been designed to optimize application performance in simple infrastructures as well as complex multi-cloud IT deployments. It collects and analyzes metrics, streaming data, dependency data, events, logs, and agent data. Machine learning is combined with real-time, dynamic models of IT services and applications to perform root-cause analysis. It also offers performance status and the status of all systems and applications at any point in time.
Key Differentiators
ScienceLogic discovers all components within the enterprise across physical, virtual, and cloud environments and stores the data in a data lake. It then helps IT to understand relationships between infrastructure, applications, and business services, using this context to gain actionable insights. The company claims 60% reduction in incidents, and a 25% improvement in time to recovery.
Key Differentiators
Enterprise Networking Planet aims to educate and assist IT administrators in building strong network infrastructures for their enterprise companies. Enterprise Networking Planet contributors write about relevant and useful topics on the cutting edge of enterprise networking based on years of personal experience in the field.
Property of TechnologyAdvice. © 2025 TechnologyAdvice. All Rights Reserved
Advertiser Disclosure: Some of the products that appear on this site are from companies from which TechnologyAdvice receives compensation. This compensation may impact how and where products appear on this site including, for example, the order in which they appear. TechnologyAdvice does not include all companies or all types of products available in the marketplace.