DevOps Engineer

VE3
London
1 year ago
Applications closed

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Job Title: DevOps Engineer


About VE3-

 

VE3 provides digital transformation services leveraging the latest cutting-edge technologies, including Artificial Intelligence, Cloud (AWS / Azure / GCP), Quantum Computing, Salesforce, Data Analytics, and Software Engineering. At VE3, we believe in empowering our team. To take risks and make bold moves to create meaningful change in the world and their careers. We offer opportunities for growth, empowerment, and comprehensive training to help you reach new heights in your professional journey.



Summary:A skilled DevOps Engineer with over 5 years of experience in building and managing CI/CD pipelines, integrating development and operations, and automating deployment processes. Proficient in 

Azure Cloud, containerization, and cybersecurity best practices. Experience in troubleshooting and risk management, ensuring seamless integration and delivery of business applications.



Requirements


Key Responsibilities:

  • Implement and maintain CI/CD pipelines to support the seamless deployment of business applications.
  • Set up and manage development, testing, and automation tools to improve the efficiency of the development process.
  • Collaborate with development and operations teams to ensure smooth integration and continuous improvement.
  • Conduct vulnerability assessments, identifying and deploying cybersecurity measures to mitigate risks.
  • Troubleshoot code and infrastructure issues, performing root cause analysis when necessary.
  • Develop and maintain infrastructure as code using tools like Terraform, Azure DevOps, and Jenkins.
  • Mentor team members on DevOps best practices.


Qualifications & Skills:

  • 5+ years of experience as a DevOps Engineer.
  • Proficient in CI/CD tools (Azure DevOps, Jenkins, GitLab) and automation.
  • Strong understanding of containerization (Docker, Kubernetes) and cloud platforms (Azure).
  • Experience in cybersecurity practices, vulnerability assessments, and risk management.
  • Strong problem-solving and communication skills.
  • Excellent communication skills in English, both written and verbal.


Benefits


  • Competitive salary and benefits package.
  • Opportunities for professional development and certification.
  • Flexible working arrangements and a collaborative team environment.


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