Solve Problems Faster with New, Smarter AI and Integrations in Splunk Observability

As businesses scale across hybrid and multi-cloud environments and integrate AI-powered technologies, complexity grows — and with it, the risk of performance degradation and cost of downtime. To avoid facing customer-impacting IT issues, organizations need better ways to correlate data across environments, detect anomalies before they escalate, and resolve incidents more efficiently. That’s where Splunk and Cisco come in. Bringing together ITOps and engineering teams with shared data, context, and workflows to help organizations detect, investigate, and resolve issues faster.

With our latest advancements, customers can stay ahead of the competition and solve problems more efficiently. Innovative AI-driven capabilities help teams troubleshoot faster by simplifying data exploration, proactively detecting anomalies before they escalate, and streamlining event management. We’re also delivering new integrations that extend visibility across applications, infrastructure, databases, and security for in-context troubleshooting and faster resolution. Ready to build a leading and AI-driven observability practice? Then these enhancements are for you.

Don’t Guess - Ask, Detect, and Resolve with AI

Whether you are optimizing performance or responding to incidents, Splunk’s AI-innovations are designed to simplify and accelerate troubleshooting. Lets dive into what's new and how it can help your team stay ahead of problems:

Respond Faster Across Apps, Infra, Databases, and Security

Modern IT environments comprising hybrid cloud architectures, distributed applications, and global databases have grown increasingly complex to manage. To address these challenges, Splunk with Cisco bring together new integrations, enabling more complete business visibility and faster remediation across our portfolio than ever before:

For Splunk customers who want access to early insights or want to try some of these upcoming releases, sign up here and provide us valuable feedback.

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