Ad Warrior | Tines Automation Engineer

Ad Warrior
Liverpool
1 year ago
Applications closed

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Tines Automation Engineer

Location: London

Salary:£400 - £500 per day

Hours: 3 days a week in office, 2 days remote

The Role

Our client is partnering with a global leader in customer data science to find anAutomation Engineerwho can revolutionize security operations through workflow automation.

This company specialises in using data and technology to deliver actionable insights, helping businesses make smarter decisions and build better customer experiences.


Key Responsibilities


  • Work with security analysts, engineers, and stakeholders to identify and automate key security workflows.
  • Design, develop, and deploy robust solutions using tools like Tines or Torq.
  • Collaborate across teams to ensure seamless integration and deployment of automated processes.
  • Optimize existing workflows to enhance security operations' effectiveness and efficiency.
  • Stay informed on the latest trends and advancements in security automation tools and techniques.


Skills and Qualifications


  • Hands-on experience with Tines or Torq for automation workflow creation.
  • Strong understanding of security operations and automation best practices.
  • Proven ability to design, implement, and troubleshoot automation workflows.
  • Excellent collaboration skills, with the ability to work across diverse teams.


To Apply

If you feel you are a suitable candidate and would like to work for this reputable company, then please do not hesitate to apply.


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