
Logz.io announced the release of Service Overview, providing an even more effective way to unify telemetry data and insights across infrastructure and applications using a single interface.
Service Overview delivers observability insights in a consolidated view, making it easy to spot high-level performance trends across microservices architectures. Using this powerful new feature, the most essential telemetry data from infrastructure and applications is unified with minimal configuration, accelerating the path to remediation. Once telemetry data is collected, specific services and transactions can be selected, allowing deeper investigation to get to the root of application performance issues.
Observability helps address digital friction in cloud application environments that negatively impact the user experience. However, many observability solutions require engineers to sort through huge volumes of telemetry data generated from hundreds or thousands of distinct and ephemeral cloud components to derive key insights. Queries, dashboards and alerts from different datasets spread across separate silos often take hours to translate into troubleshooting flows to address production issues.
“Managing the mass of telemetry data from varied and scattered microservices is a monumental task for engineers,” said Asaf Yigal, co-founder and CTO at Logz.io. “Remediation of production issues that negatively impact the customer experience must happen quickly, and Service Overview is the gateway to make that happen by offering a clear path to resolution in a fraction of the time.
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