Splunk Threat Intelligence Management

Key Takeaways

  • Splunk Threat Intelligence Management centralizes and streamlines the collection, normalization, and enrichment of threat intelligence from multiple sources, making it actionable and accessible for security teams.
  • By automating workflows and integrating with existing security tools, Splunk TIM enables organizations to reduce manual processes, improve detection accuracy, and accelerate threat investigation and response.
  • Deep integration with the broader Splunk platform empowers analysts to operationalize threat feeds for hunting, incident response, and reporting, ultimately enhancing overall cybersecurity posture.

Looking for Splunk Intelligence Management? We’ve made some updates — learn more here.

What is Threat Intelligence Management?

Threat Intelligence Management provides SOC analysts actionable intelligence with associated normalized risk scores and the necessary context from intelligence sources that are required in order to detect, prioritize and investigate security events.

As a feature of both Splunk Enterprise Security (ES) and Splunk Mission Control, Threat Intelligence Management* enables analysts to fully investigate security events or suspicious activity by providing the relevant and normalized intelligence to better understand threat context and accelerate time to triage.

Benefits

With Threat Intelligence Management your team can:

(Learn more about Threat Intelligence Management.)

*Initial availability to eligible AWS customers in select US regions only.

Learn more about Splunk Enterprise Security

Interested in learning more about Splunk Enterprise Security? We’ve got you covered! Take a guided tour now or talk to your account manager.

Check out Splunk Enterprise Security

More Splunk resources

And here are more destination for support across the Splunk ecosystem:

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