Job Summary
Job Title: AI Platform Engineer / Architect
Job Summary
We are looking for experienced AI Platform Engineers / Architects with deep expertise in designing and building enterprise-grade AI platforms on Cloud (Azure) environments. The role focuses on establishing scalable, secure, and governed AI/GenAI ecosystems—covering model usage, agentic systems, platform engineering, and operational excellence. The ideal candidate will drive platform standardization, enable self-service AI capabilities, and ensure compliance with emerging AI regulations.
Key Responsibilities
Key Responsibilities
- Define and implement zero-trust identity architecture for AI platforms (Identity & RBAC)
- Architect and establish enterprise landing zones within Azure environments
- Develop and govern AI/LLM model usage strategy and lifecycle frameworks
- Standardize and implement prompt engineering frameworks and best practices
- Design enterprise knowledge architectures leveraging RAG and vector search
- Develop and scale agentic AI systems, including enterprise-grade agent frameworks
- Build and manage platform engineering capabilities, including:
- Infrastructure as Code (IaC)
- Golden paths and standardized productized platforms
- Self-service platform pipelines (CI/CD)
- Establish GenAIOps / MLOps lifecycle management frameworks for model deployment and monitoring
- Define and enforce AI governance and compliance frameworks, aligned with regulations such as the EU AI Act
- Drive observability strategy, including monitoring, logging, and FinOps alignment
- Define and enforce engineering standards, including best practices in Python and software development
Skill Requirements
Must-Have Skills
- Strong expertise in Cloud & Azure Foundations, including Identity & Access Management (IAM), RBAC, networking, and enterprise landing zone design
- Deep knowledge of AI / LLM ecosystems, including model strategy, lifecycle management, and governance frameworks
- Hands-on experience with prompt engineering frameworks and optimization techniques
- Proven experience in RAG-based architectures, including vector search and enterprise knowledge systems
- Expertise in designing and implementing agentic AI systems and enterprise agent frameworks
- Strong capabilities in platform engineering, including Infrastructure as Code (IaC), CI/CD pipelines, and self-service platform enablement
- Experience with MLOps / GenAIOps frameworks, including model lifecycle management, deployment, and governance
- Solid understanding of AI security, governance, and compliance, including regulatory frameworks such as the EU AI Act
- Experience in observability and operational excellence, including monitoring, logging, and FinOps practices
- Strong programming skills in Python and adherence to engineering best practices