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LogicMonitor Acquires Unomaly

LogicMonitor acquired Unomaly, an AIOps company headquartered in Stockholm, Sweden.

The acquisition accelerates LogicMonitor’s AIOps roadmap and will help ITOps teams quickly gain the intelligent insights needed to determine when and how to embrace automation in order to resolve IT infrastructure issues before they disrupt the business.

Additionally, this will help DevOps teams access insights derived from unexpected events and changes in infrastructure or applications, in order to optimize and refine continuous delivery approaches.

Kevin McGibben, CEO of LogicMonitor, said: “The value of Unomaly's patented algorithms, combined with LogicMonitor's existing AIOps capabilities, will further help IT teams operating in complex infrastructure environments use AI to automatically analyze and surface anomalies. The result is that users gain the ability to proactively take action before the bottom line is negatively impacted.”

Unomaly was founded in 2012 and pioneered technology that empowers ITOps and DevOps teams to intelligently process logs and identify critical insights needed to stay ahead of issues. Without such technology, it is difficult and incredibly time-consuming to find and resolve these issues within distributed IT infrastructures. Unomaly enhances visibility by giving teams the ability to ingest unlimited log data--without exponential increases in cost--and uncover pertinent log events to assist with root cause analysis.

“LogicMonitor and Unomaly share the same view on the market and the vision of its future, and the synergies between the two companies' innovative R&D are powerful," said Johan Gustafsson, Co-founder and CEO, Unomaly. “We are looking forward to joining the LogicMonitor team to bring LogicMonitor customers new AIOps capabilities that help users analyze data and act according to real-time infrastructure intelligence.”

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LogicMonitor Acquires Unomaly

LogicMonitor acquired Unomaly, an AIOps company headquartered in Stockholm, Sweden.

The acquisition accelerates LogicMonitor’s AIOps roadmap and will help ITOps teams quickly gain the intelligent insights needed to determine when and how to embrace automation in order to resolve IT infrastructure issues before they disrupt the business.

Additionally, this will help DevOps teams access insights derived from unexpected events and changes in infrastructure or applications, in order to optimize and refine continuous delivery approaches.

Kevin McGibben, CEO of LogicMonitor, said: “The value of Unomaly's patented algorithms, combined with LogicMonitor's existing AIOps capabilities, will further help IT teams operating in complex infrastructure environments use AI to automatically analyze and surface anomalies. The result is that users gain the ability to proactively take action before the bottom line is negatively impacted.”

Unomaly was founded in 2012 and pioneered technology that empowers ITOps and DevOps teams to intelligently process logs and identify critical insights needed to stay ahead of issues. Without such technology, it is difficult and incredibly time-consuming to find and resolve these issues within distributed IT infrastructures. Unomaly enhances visibility by giving teams the ability to ingest unlimited log data--without exponential increases in cost--and uncover pertinent log events to assist with root cause analysis.

“LogicMonitor and Unomaly share the same view on the market and the vision of its future, and the synergies between the two companies' innovative R&D are powerful," said Johan Gustafsson, Co-founder and CEO, Unomaly. “We are looking forward to joining the LogicMonitor team to bring LogicMonitor customers new AIOps capabilities that help users analyze data and act according to real-time infrastructure intelligence.”

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Enterprises today operate in a real-time environment where uninterrupted access to trusted data has become a baseline expectation for users, applications and automated systems. Traditional DataOps models, built on manual effort and human triage, cannot keep pace with this always active demand. AI agents are emerging as the operational backbone, ensuring consistent data availability, reinforcing trustworthiness and enabling a level of scale that manual processes cannot achieve ...

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For years, DevOps teams operated under a simple assumption: collect enough telemetry, and you can find and fix any problem. That assumption is breaking down. Modern enterprises now operate across microservices, hybrid cloud environments, APIs, Kubernetes, and highly automated delivery pipelines. Releases happen continuously, dependencies shift constantly, and failures spread faster than teams can diagnose them ...

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