With release 1.8 of our Application Performance Management (APM) tool inspectIT, we integrated a new feature named Automatic Problem Diagnosis. APM tools mainly provide alerting […]

With Kibana’s machine learning feature you can setup an anomaly detection process in order to detect anomalous patterns in your application’s performance metric data. In […]

Elasticsearch, Logstash and Kibana also known as the ELK stack have been widely adapted by development and operation teams and used successfully by our customers […]

With the latest release of our APM tool inspectIT, a new long-awaited feature has been integrated: inspectIT now supports Browser End User Experience Monitoring. This […]

For a long time commercial Application Performance Management tools like Dynatrace or AppDyanmics have been able to update the monitoring points in your application without […]

Version 1.7.11 of the open-source APM tool inspectIT introduced the support for remote tracing based on HTTP and JMS communication. inspectIT based the tracing functionality […]

A new version of inspectIT has been released! And this time, besides many new features and bug fixes, we introduced our concept of tracing cross-JVM requests. […]

Performing load tests on a regular basis is a vital requirement to prevent performance regressions when changing a system. However, manually building the system, deploying […]

Last month we released the brand new inspectIT version 1.6.9 with a lot of new features, for example the new configuration interface and a JMX extension […]

Recently, we released the inspectIT version 1.6.9 which introduced some brand-new features and improvements. For that reason, we published a series of articles in the […]

By continuing to use the site, you agree to the use of cookies. more information

The cookie settings on this website are set to "allow cookies" to give you the best browsing experience possible. If you continue to use this website without changing your cookie settings or you click "Accept" below then you are consenting to this.

Close