๐ Threat Hunting Automation Summary
Threat hunting automation refers to using software and automated processes to find potential security threats in computer systems without needing constant human supervision. It helps security teams quickly identify suspicious activities or signs of cyber attacks by analysing large amounts of data. This approach makes threat detection faster and reduces the chance of missing important signals.
๐๐ปโโ๏ธ Explain Threat Hunting Automation Simply
Imagine looking for hidden clues in a video game, but instead of searching every corner yourself, you have a robot helper that checks everywhere at once and alerts you if it spots something odd. Threat hunting automation works the same way for computers, letting machines do the repetitive searching so people can focus on solving the mysteries when something suspicious is found.
๐ How Can it be used?
Automated threat hunting can be integrated into a company network to continuously scan for unusual user behaviour or unauthorised access.
๐บ๏ธ Real World Examples
A financial institution uses automated threat hunting tools to monitor its employee network for unusual login patterns, such as logins at odd hours or from unexpected locations. When the system detects something suspicious, it automatically alerts the security team, allowing them to respond quickly to potential breaches.
A healthcare provider implements threat hunting automation to scan electronic health record systems for signs of ransomware or data exfiltration. The system flags and investigates suspicious file transfers, helping prevent sensitive patient data from being stolen.
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