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AI DevOps​/Cloud Engineer; MLOps

Job in Dubai, Dubai, UAE/Dubai
Listing for: Multibank Group
Full Time position
Listed on 2026-06-05
Job specializations:
  • IT/Tech
    Cloud Computing, Data Engineer
Salary/Wage Range or Industry Benchmark: 120000 - 200000 AED Yearly AED 120000.00 200000.00 YEAR
Job Description & How to Apply Below
Position: AI DevOps / Cloud Engineer (MLOps)

Welcome to Multi Bank Group, a global financial pioneer established in 2005 in California and now proudly headquartered in Dubai, UAE. We specialize in delivering cutting-edge trading technology, unparalleled liquidity, and exceptional customer service. Our extensive range of financial products includes Forex, Metals, Shares, Indices, Commodities, and Cryptocurrency CFDs.

Join our thriving community of over 2 million clients across 100 countries, contributing to a daily trading volume exceeding US $ 35 billion. As a heavily regulated institution with oversight from 18+ financial regulators across 5 continents, and recipient of over 80 financial awards, Multi Bank Group is devoted to innovation, excellence, and empowering our clients to achieve their financial goals.

Role Overview

We are seeking an AI Dev Ops and Cloud Engineer with MLOps capability to build and own the infrastructure backbone for our AI and Data function. This is a foundational role responsible for designing cloud infrastructure from scratch, establishing CI/CD pipelines for the AI team, managing containerization and orchestration, and evolving the platform into a production-grade MLOps environment as the initiative scales.

This is a builder role for someone comfortable owning infrastructure end-to-end in a fast-moving environment.

Key Responsibilities
  • Design, build, and own the full cloud infrastructure for the AI and Data function on AWS, including VPCs, IAM, networking, security groups, compute, storage, and cost management. Ensure the foundation is solid before any model goes near production.
  • Build and maintain CI/CD pipelines for data engineers, ML engineers, and data scientists using Git Hub Actions or Git Lab CI, implementing Git Ops principles and automated deployment workflows. Every release should be automated, auditable, and repeatable.
  • Own general technology operations for the AI team in the absence of a dedicated Tech Ops function, including environment setup, access management, developer tooling, system monitoring, incident response, and vendor and license management for all tools used by the team.
  • Own Docker and Kubernetes across all AI workloads, building scalable, reliable container environments for model training, batch processing, and real-time inference. Manage cluster health, resource allocation, and cost efficiency.
  • Work closely with ML engineers to deploy models into production, building and maintaining model serving infrastructure, inference endpoints, and batch scoring pipelines. Own the deployment side of the ML lifecycle including packaging, versioning, rollout, and rollback strategies.
  • Implement end-to-end observability across infrastructure, application performance, and ML model health, including alerting, dashboards, and on-call processes.
  • Set up and manage workflow orchestration tools such as Airflow, Dagster, or Prefect, ensuring pipelines are reliable, retryable, and observable.
  • Evolve the MLOps practice over time, implementing drift detection, data quality checks, performance tracking, experiment tracking, and automated retraining triggers.
  • Manage integrations from CDPs and product analytics platforms including Segment and Amplitude, and mobile attribution and engagement tools including Adjust, Firebase, MoEngage, and Journey Fi into the central AWS data infrastructure.
  • Support deployment, access management, and integration of metadata management and BI tools including Open Metadata and Metabase within the cloud environment.
  • Ensure all cloud infrastructure and AI systems meet security and compliance standards, including secrets management, encryption, network security, and access controls.
  • Maintain clear, up-to-date documentation for all infrastructure, deployment processes, and operational runbooks. Set engineering standards that the AI team follows as it grows.
Requirements
  • 5 to 10 or more years of experience in Dev Ops, Cloud Engineering, or Site Reliability Engineering.
  • Proven experience building cloud infrastructure from scratch, not solely maintaining existing environments.
  • Expert-level AWS skills are required and non-negotiable.
  • Hands‑on experience with Kubernetes in production environments.
  • Experience…
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