Automation Engineer

Bestman Solutions
London
1 year ago
Applications closed

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AUTOMATION ENGINEER - 6 MONTHS CONTRACT - HYBRID Weare hiring an Automation Engineer with experience in TorQ or Tinesfor a 6-month contract, with the potential for extension, to join aleading Data Science company in London. Position Overview: Thisrole is entirely focused on automation within security operations.You'll be working on building and refining workflows to improvesecurity efficiency. You'll contribute directly to advancing theautomation efforts by developing and implementing use cases forsecurity workflows. Responsibilities: - Design, develop, andoptimize security automation workflows. - Integrate security toolsand platforms (Google Chronicle/Siemplify, Microsoft Sentinel, PaloAlto XSOAR, Torq, Tines). - Develop custom automation scripts andhandle security incident response automation. - Work withtechnologies like SIEM, EDR, IDS/IPS, Cloud, and Firewalls. KeyRequirements: - Automation Tools: Experience with platforms such asTorq or Tines is highly desirable. - Scripting: Not a primaryrequirement, as most automation tasks will be handled by theselected tools. - Automation Use Cases: Hands-on experiencedeveloping automation use cases, contributing ideas, and executingthem within security environments. We’re looking for someone withexperience in mature automation processes who can help advance thefirm's automation efforts and bring fresh insights into workflowimprovements. If you're passionate about security automation andhave a strong background in tools like Torq or Tines, we’d love tohear from you! Interviews will commence swiftly.

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