Lead Cloud Engineer
Location
Argentina
Posted
5 days ago
Salary
0
Seniority
Lead
Job Description
Lead Cloud Engineer
EPAM
Role Description We are searching for a Lead Cloud Engineer to become part of our team. In this position, you will help shape and grow secure, scalable cloud environments that power enterprise-grade programs. You will partner with cross-functional teams to put modern infrastructure practices into action while pushing forward security, automation, and AI-driven engineering approaches. - Roll out HashiCorp Boundary controllers, workers, and the related access model to enable secure infrastructure access. - Create and maintain Terraform and Terragrunt infrastructure for reliable infrastructure-as-code delivery. - Set up AWS and Azure networking to provide secure connectivity across the platform. - Deliver integration with Microsoft Entra ID and Active Directory for enterprise identity management. - Contribute to CI/CD automation initiatives and support enhancements to operational tooling. - Strengthen DevSecOps, security, and compliance practices throughout the environment. - Capture implementation patterns and operational procedures in documentation to enable knowledge sharing. - Advocate for AI-assisted engineering practices across development and operational tasks. Qualifications - No fewer than 5 years of hands-on professional experience in cloud engineering. - Strong applied background in Infrastructure as Code delivery. - Practical use of Terraform and Terragrunt for automating infrastructure. - Working knowledge of AWS Networking, including Cloud WAN, Transit Gateway, and Network Firewall. - Hands-on background in Azure Networking for enterprise-scale connectivity. - Applied experience with HashiCorp Boundary or similar enterprise access platforms. - Practical familiarity with Microsoft Entra ID and Active Directory for identity management. - Confident use of Python for automation and tooling activities. - Working command of Linux operating systems and Docker for containerised workloads. - Track record with DevSecOps practices, including SAST, SCA, and Secrets Management. - Solid experience in CI/CD automation for build, test, and deployment pipelines. - Strong technical leadership abilities together with a proven capacity to mentor fellow engineers. - Ownership-driven mindset paired with a collaborative approach to teamwork. - Daily use of Claude Code and/or GitHub Copilot for AI-assisted development. - Grasp of AI-assisted software development principles. - Familiarity with prompt engineering and LLM fundamentals. - Applied experience integrating AI into engineering workflows. - Confident English communication at B2 level or higher, both written and spoken. Requirements - Background with Microsoft Entra ID OIDC integration for federated authentication. - Awareness of ExpressRoute for private network connectivity to Azure. - Practical exposure to Enterprise PAM or Zero Trust platforms for privileged access management. - Hands-on experience with GitHub Actions for CI/CD workflows. - Familiarity with MCP servers and AI automation tooling for advanced AI-enabled workflows.
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