AI/ML/DevOps Engineer
Job Description Roles & Responsibilities A leading Abu Dhabi-based holding group is hiring an AI/ML/DevOps Engineer to architect, operate, and continuously improve the end-to-end MLOps and LLMOps platform for a flagship enterprise AI programme. You'll be the technical authority reviewing, governing, and signing off CI/CD, data and model pipelines, infrastructure, deployment, security, and observability — ensuring secure, scalable, and compliant delivery across environments. Reports to the AI Product Manager within the AI Excellence Centre. What you'll own: Own the end-to-end MLOps/LLMOps reference architecture: ingestion → validation → feature and embedding pipelines → training and fine-tuning → evaluation → registry → deployment → monitoring — including RAG and agentic workflows. Architect, review, and approve CI/CD for ML and LLM systems: code, data, prompt, and model artifact versioning; build and release pipelines (Azure DevOps / GitHub Actions); automated unit, integration, and contract testing; and promotion/rollback (blue-green / canary) across dev, test, and production. Define and govern AI platform foundations on Azure: IaC (Bicep/Terraform), AML workspaces, AKS GPU node pools and scheduling, private networking (VNet integration / Private Link), identity (Managed Identities / PIM), secrets (Key Vault), and encryption and data residency controls. Review and approve production deployment patterns for model and LLM serving (AKS / KServe / AML online endpoints), including containerization, inference optimization (batching, quantization where applicable), API management, autoscaling, resiliency, and RAG runtime components (vector store, retriever, re-ranker, cache). Own observability and reliability for AI services: OpenTelemetry tracing, prompt and inference logs (with PII controls), latency/throughput/cost metrics, SLOs/SLIs, model performance monitoring, data and model drift detection, and LLM evaluations (quality, hallucination checks, toxicity and safety guardrails) with incident playbooks. Establish and enforce MLOps/LLMOps governance: dataset lineage, data quality validation (schema and tests), feature store and model registry standards, artifact provenance (SBOM/SLSA), vulnerability scanning, approval gates for model and prompt releases, and compliance-aligned documentation for model risk (intended use, limitations, evaluation results). Enable delivery squads — including the primary delivery partner — with "golden path" templates (AML pipelines, RAG blueprints, evaluation harnesses), reusable IaC modules, and coding standards; run deep technical design and architecture reviews and sign off production readiness (capacity, security, observability, DR) for all AI releases. Support the Run & Operate model by enabling issue triage and minor enhancement workflows (ticket intake → fix → controlled release), ensuring changes follow the same release governance and quality gates. Own the Operational Acceptance Gate: no production release without runbooks, monitoring dashboards, incident playbooks, access model, and DR test evidence. Scope clarity: you provide platform standards, review, and sign-off — you do not replace the delivery partner's engineering, but you enforce the "golden path" and production readiness bar. Desired Candidate Profile 8–10 years across DevOps, SRE, and/or ML Engineering with production systems on Azure. Hands-on experience with Azure ML, AKS, Azure DevOps or GitHub Actions, IaC, and containerization. Bachelor's in Computer Science, Engineering, or equivalent experience. Core skills required: Python, YAML, Docker, Helm, KQL; GitOps (Argo/Flux) awareness. Security in CI/CD: SAST/DAST, supply-chain security (Sigstore), secrets management (Key Vault). Performance testing (k6 / JMeter), contract testing, and E2E testing. Cost optimization and capacity planning for GPU and CPU workloads. Strong grasp of model serving, inference optimization, and observability tooling. Required certification: Microsoft Certified: DevOps Engineer Expert (AZ-400) Preferred certifications: Microsoft Certified: Azure Administrator (AZ-104) or Solutions Architect (AZ-305) CKA or CKAD (Kubernetes) Location: Abu Dhabi, UAE Employment Type: Permanent, Full-time Experience: 8–10 years Salary Range: 25,000 - 33,000 (AED per month) Work Location: In person Apply: VIA FAZE 3 CONSULTING WEBSITE (link in profile) Employment Type Full Time Company Industry LogisticsTransportationWarehousingCourier Department / Functional Area Software DevelopmentApplication Development (IT Software) Keywords DevOpsAI/ML DevOps SpecialistMachine LearningApplied AI Engineer Get real-time job updates only on our App
Ready to apply?
You are viewing this role on JobSphere AI. Applications are completed on the original employer / source website.
Apply on original siteOpens the employer's site in a new tab
- CompanyFaze 3 Consulting
- LocationSaudi Arabia - Saudi Arabia
- CategoryAI
- SourceNaukrigulf
- Listed1 month ago
Related AI jobs
Data Analyst
The role holder is responsible for analyzing AMI data to ensure metering accuracy, data quality, and operational performance. The role supports optimization of…
AI/ML Engineer (Analytics & ML)
Location: Abu Dhabi, UAE We are looking for an AI/ML Engineer for one of our clients in Abu Dhabi to design, build, and deploy machine learning and advanced…
Senior Data Engineer
As part of strengthening our Data teams, we are looking for profiles capable of designing, industrializing and optimizing data platforms (batch & real-time)…
AI Claude Engineer
VAM Systems is currently looking for AI Claude Engineer for our Bahrain operations with the following skillsets & terms and conditions: Desired Candidate…