
Splunk announced innovations to Splunk’s unified security and observability platform to help build safer and more resilient digital enterprises. Splunk’s latest innovations include enhancements to Splunk Mission Control and Splunk Observability Cloud, and the general availability of Splunk Edge Processor.
With Splunk’s new innovations to the Observability Cloud, teams can troubleshoot faster with increased visibility and a more unified approach to incident response.
Splunk Incident Intelligence empowers teams to increase on-call team efficiency so they can diagnose, remediate, and restore services before their customers are impacted. New Autodetect capabilities from Splunk APM uses machine learning to reduce manual effort and improve the accuracy of alerts, while IM Network Explorer enables teams to easily monitor and assess their cloud network health and resolve issues quicker. All Splunk Observability Cloud innovations are now generally available.
Now generally available, Splunk Edge Processor provides Splunk Cloud Platform customers with increased visibility into and control over streaming data before it leaves their network. With Edge Processor, customers can easily filter, mask and route data, experiencing improved efficiency in data transformation as powered by the next generation of Splunk Search Processing Language (SPL2,) which simplifies data search and preparation.
"Organizations must focus on digital transformation and deliver value for their customers, but their teams are constantly facing cybersecurity threats, IT system stressors and other adverse events," said Tom Casey, SVP, Products & Technology, Splunk. "Splunk’s latest product innovations will help our customers mitigate these challenges. Splunk’s integrated security and observability solutions help security operations, IT operations and DevOps teams work smarter and better together to achieve this transformation and build digital resilience."
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