Job Search and Career Advice Platform

Enable job alerts via email!

Dell AI Infrastructure & MLOps Engineer

Müller`s Solutions

Dubai

On-site

AED 120,000 - 200,000

Full time

Yesterday
Be an early applicant

Generate a tailored resume in minutes

Land an interview and earn more. Learn more

Job summary

A technology solutions provider is seeking an experienced AI Infrastructure & MLOps Engineer for a 6-month contract based in Dubai. The role involves managing AI infrastructure, troubleshooting Kubernetes workloads, and supporting MLOps platforms. Ideal candidates should have 4–6 years of experience in Python, expertise with NVIDIA AI Stack, and familiarity with enterprise infrastructure. Join us to shape best practices and work closely with customers during AI implementation.

Qualifications

  • 4–6 years of practical experience with Python and Jupyter environments.
  • Competence in writing, testing, and maintaining scripts and AI workflows.
  • Practical experience with enterprise infrastructure.

Responsibilities

  • Operate and maintain AI infrastructure and MLOps platforms.
  • Monitor and troubleshoot Kubernetes-based AI workloads.
  • Perform Acceptance Testing for AI infrastructure.

Skills

Proficient experience with NVIDIA Enterprise AI Stack
Familiarity with Ubuntu Linux
Experience with Kubernetes
Knowledge of Kubeflow/MLflow
Experience with QFLOW
Python
Jupyter Notebook/JupyterLab

Tools

Dell PowerScale
Dell R570 Servers
Dell Network Switches
Job description

As an AI Infrastructure & MLOps Engineer at Müller’s Solutions for a 6-month contract, this role is primarily operations-focused (90%), with hands‑on involvement in implementation, configuration, and setup of AI infrastructure and MLOps workflows.

You will play a key role in managing, operating, and guiding the deployment of a strategic AI environment, working closely with the customer as a technical advisor and hands‑on engineer.

What about the role responsibilities?

  • Operate and maintain AI infrastructure and MLOps platforms in a production environment.
  • Monitor, manage, and troubleshoot Kubernetes-based AI workloads.
  • Perform Acceptance Testing Planning and Execution for AI infrastructure and platforms.
  • Ensure stability, performance, and availability of AI systems.
  • Support day‑to‑day operational tasks across compute, storage, and networking layers.
  • Install and configure NVIDIA Enterprise AI Stack (NVAI).
  • Configure and manage MLOps platforms such as Kubeflow and MLflow.
  • Assist in setting up end‑to‑end AI workflows, including data pipelines.
  • Support the initial implementation phase of the AI environment.
  • Act as a technical guide and advisor to the customer during the early stages of their AI adoption.

What should you have to fit in this role?

Technical Requirements
AI / MLOps Stack
  • Proficient experience with the NVIDIA Enterprise AI Stack
  • Familiarity with Ubuntu Linux
  • Experience with Kubernetes
  • Knowledge of Kubeflow / MLflow
  • Experience with QFLOW (an open‑source AI data pipeline management tool)
Programming & Automation
  • 4–6 years of practical experience in:
    • Python
    • Jupyter Notebook / JupyterLab
  • Competence in writing, testing, and maintaining operational scripts and AI workflows.
Infrastructure Experience

Practical experience with enterprise infrastructure, encompassing:

  • Dell PowerScale (5 nodes)
  • XE Server (1 node)
  • Dell R570 Servers (5 nodes)
  • Dell Network Switches (2 switches)
  • GPU‑based AI servers (in a small‑scale environment)
Environment Overview
  • Initial implementation of AI
  • Compact configuration:
    • 1 GPU server
    • 1 PowerScale
    • 5 control plane servers
  • Opportunity to shape best practices from the ground up

To succeed in this role, it's nice to have:

• Familiarity with data frameworks like Apache Spark or Hadoop for data processing.

• Understanding of ML model monitoring and logging practices to ensure system reliability.

• Experience with security best practices in AI systems.

Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.