
Calyptia released version 2.0 of its telemetry pipeline solution.
Calyptia Core 2.0 now has fleet management, a major new feature that unlocks time savings and engineering productivity across the billions of Fluent Bit deployments.
“Calyptia helps customers with the first mile of their observability data journey, the process of collecting data from their systems and sending it to where it can be stored and analyzed for insights,” said Eduardo Silva, Calyptia co-founder and creator of Fluent Bit. “Fleet management brings the management of telemetry pipelines to the edge by enabling users to automate the installation and configuration of large-scale deployments of the Fluent Bit agent.”
Calyptia Core manages the creation and configuration of telemetry pipelines that are responsible for gathering and processing system data from applications, cloud services and firewall/network devices before delivering the data to backend systems for storage and analysis. On every system to be monitored, users have to install a small application called an agent that collects the telemetry data and initiates its travel through the pipeline. Until now, administrators have needed to write complex scripts to automate the process of installing, configuring and maintaining these agents across thousands of machines, a time-consuming and often error-prone process.
With the addition of fleet management, Calyptia Core 2.0 automates the installation and configuration of large-scale deployments of the Fluent Bit agent without custom scripting — making administration of infrastructure easier, creating significant time savings, and ensuring agents are deployed consistently and reliably, no matter how large the fleet.
Calyptia Core 2.0 also adds dozens of new out-of-the-box processing rules for complex transformations such as redaction, aggregation, reduction and enrichment of data midstream. Such transformations provide more context for analysis, reduce risk, and can significantly reduce costs by keeping unnecessary and duplicate data out of expensive backend storage.
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