DevSecOps Engineer - AI & Automation

Forseven
Royal Leamington Spa
1 year ago
Applications closed

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Forseven is rethinking what it is to be a car company through powerful technologies and engineering excellence. A new take on an established industry, we've got a growing team that is knowledgeable, experienced and deeply passionate about this endeavour.


We're seeking aDevSecOps - AI & Automationto join our rapidly growing team. Reporting to the Head of Software Engineering and collaborating closely with Software Engineers, Platform Engineers, and DevOps Engineers. Responsible for automating CI/CD pipelines, infrastructure, and security processes using AI-driven DevOps tools, ensuring shift-left efficiency, scalability, and security across the luxury EV digital ecosystem.


This pivotal role will operate in a hybrid capacity from out of our offices in Leamington Spa, Warwick. The successful candidate will have the opportunity to work alongside some of the most visionary minds in the automotive field.


This is a rare and exciting opportunity to become part of a scale-up, where your contributions will play a crucial role in shaping the future of our forward-thinking company. With its rapid growth trajectory and dynamic nature, Forseven offers you an exceptional platform to help drive strategy as we expand into new horizons.


Requirements
What you'll do:

  • Work in partnership with the AI/Automation team to implement AI-driven security, observability, and infrastructure automation.
  • Align with Cybersecurity and Compliance teams to ensure security best practices and regulatory compliance.
  • Embed AI-driven automation into the company's cloud infrastructure, CI/CD pipelines, and security workflows.
  • Create AI-powered CI/CD automation to improve deployment efficiency and software quality.
  • Work on the Integration of AI-driven security tools for vulnerability scanning, anomaly detection, and compliance automation.
  • Collaborate with engineering teams to implement automated testing, monitoring, and security best practices.
  • Optimisation of Kubernetes, containerisation, and AWS-native infrastructure for high performance and resilience.


Who you are:

  • 5+ years of experience in DevOps, Cloud Engineering, or SRE roles.
  • Strong experience with CI/CD pipelines, Infrastructure-as-Code (IaC), and cloud automation.
  • Hands-on experience with AI-driven DevOps tools (GitLab AI, AIOps, AI-powered security scanning).
  • Deep knowledge of AWS services (EKS, EC2, Lambda, ECS, S3, IAM, etc.).
  • Proficiency in scripting and automation (Python or Golang preferred).
  • Experience with Kubernetes, Docker, and Terraform for infrastructure orchestration.
  • Understanding of shift-left security, DevSecOps principles, and security-as-code.
  • Strong collaboration skills to integrate AI-powered DevOps solutions across engineering teams.


Desirable:

  • Experience with predictive analytics and AI-powered observability tools.
  • Familiarity with serverless architectures and cloud-native best practices.
  • Passion for automation, AI-driven innovation, and cybersecurity.
  • Strong problem-solving abilities and ability to work in a fast-paced startup environment.


Benefits
About Us

Forseven is building something new. By thinking differently. To create a new car company for the world.


Guided by expert leadership and powered by brilliant minds from the luxury, automotive and technology worlds, we're committed to continuous improvement and the highest standards of quality. We promote a culture of excellence, integrity, and sustainable growth.


Together we are establishing a new legacy. Join us.

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