Anomaly Detection as a foundation of Autonomous Monitoring

We believe the future of monitoring, especially for platforms like Kubernetes, is truly autonomous. Cloud native applications are increasingly distributed, evolving faster and failing in new ways, making it harder to monitor, troubleshoot and resolve incidents. Traditional approaches such as dashboards, carefully tuned alert rules and searches through logs are reactive and time intensive, hurting productivity, the user experience and MTTR. 

We believe the future of monitoring, especially for platforms like Kubernetes, is truly autonomous. Cloud native applications are increasingly distributed, evolving faster and failing in new ways, making it harder to monitor, troubleshoot and resolve incidents. Traditional approaches such as dashboards, carefully tuned alert rules and searches through logs are reactive and time intensive, hurting productivity, the user experience and MTTR. We believe machine learning can do much better – detecting anomalous patterns automatically, creating highly diagnostic incident alerts and shortening time to resolution.

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How Fluentd collects Kubernetes metadata

As part of my job, I recently had to modify Fluentd to be able to stream logs to our (Zebrium) Autonomous Log Monitoring platform. In order to do this, I needed to first understand how Fluentd collected Kubernetes metadata. I thought that what I learned might be useful/interesting to others and so decided to write this blog.

As part of my job, I recently had to modify Fluentd to be able to stream logs to our (Zebrium) Autonomous Log Monitoring platform. In order to do this, I needed to first understand how Fluentd collected Kubernetes metadata. I thought that what I learned might be useful/interesting to others and so decided to write this blog.

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Using machine learning to shine a light inside the monitoring black box

A widely prevalent application monitoring strategy today is sometimes described as “black box” monitoring. Black box monitoring focuses just on externally visible symptoms, including those that approximate the user experience. Black box monitoring is a good way to know when things are broken.

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