Job Closed
This listing is no longer active.
Lead DevOps Engineer, Data & AI Platform
Location
Poland
Posted
50 days ago
Salary
0
Seniority
Senior
Job Description
Lead DevOps Engineer, Data & AI Platform
Work Life Group
• Define and implement a modern DevOps and platform engineering strategy aligned with data and AI platform goals • Develop roadmaps that incorporate AI-assisted development, testing, and operations • Drive the evolution from traditional DevOps to intelligent, self-service platform capabilities • Continuously evaluate emerging technologies (e.g., GenAI, LLMOps, AIOps) and incorporate them where relevant • Design and optimize CI/CD pipelines using AI-assisted tools (e.g., code generation, test generation, pipeline optimization) • Collaborate with Data Delivery and platform teams to resolve issues efficiently
Job Requirements
- Strong experience with CI/CD tools (e.g., Azure DevOps, GitHub Actions)
- Expertise in infrastructure as code (Bicep, ARM or similar)
- Proficiency in scripting (PowerShell, Python, Bash)
- Deep understanding of DevOps principles, Git workflows, and release strategies
- Experience with Azure services and cloud-native architectures
- Familiarity with data platforms (Databricks, ADF, Airflow, SQL, AAS or equivalent)
- Hands-on experience or strong familiarity with AI-assisted development tools (e.g., GitHub Copilot, ChatGPT, code assistants)
- MLOps / LLMOps concepts (model deployment, monitoring, versioning)
- AIOps tools for monitoring and incident management
- Experience with governance frameworks, access control, and compliance
Benefits
- Health insurance
- Flexible working hours
- Professional development opportunities
Related Guides
Related Categories
Related Job Pages
More DevOps Engineer Jobs
DevOps Engineer – Site Reliability
OowlishWe make innovation simple, convenient and right...we just make it HAPPEN
• Deploy and manage web, mobile, and API applications across cloud environments • Implement and maintain monitoring and observability tools such as New Relic, Datadog, or Prometheus/Grafana • Design and optimize CI/CD pipelines using tools like Azure Pipelines, Jenkins, or CircleCI • Manage containerized environments with Docker, Kubernetes, and Helm • Build and manage cloud infrastructure on Azure, AWS, or GCP • Write automation scripts using Bash and other scripting languages • Develop and maintain incident response processes and disaster recovery strategies • Collaborate with development, product, and operations teams to improve system reliability and deployment efficiency
• Administer Docker applications (Linux) on Kubernetes clusters • Eliminate repetitive tasks in CI/CD deployment cycle • Manage MS SQL databases and web services • Configure and evolve infrastructure monitoring systems • Collaborate with developers, testers, sysadmins, and business stakeholders
• Design and implement complex cloud architectures with a focus on security, resilience and cost optimization. • Build and manage messaging platforms with high availability and fault tolerance. • Automate infrastructure provisioning using Infrastructure as Code (IaC) with Terraform. • Define and enforce GitOps practices for managing cloud environments and resources. • Deploy, monitor and refine customized observability solutions for critical environments. • Mentor developers and teams on best practices for cloud architecture, automation and monitoring.
• Own Client’s Azure environment and DevOps practices end to end. • Design, build, and manage Client’s Azure cloud environment — subscriptions, landing zones, resource groups, governance policies, and cost management. • Contribute to modernization strategy and technology selection. • Build and maintain CI/CD pipelines. • Develop and own the container and Kubernetes strategy. • Containerize workloads using Docker. • Write and maintain Infrastructure as Code. • Manage Azure platform services. • Administer Azure identity and access. • Support and troubleshoot Windows Server and Linux systems. • Collaborate with the infrastructure team on Azure networking components. • Own cloud and application monitoring. • Implement and enforce cloud security best practices. • Automate operational tasks through scripting and tooling. • Document architecture decisions, pipeline designs, runbooks, and standards.



