Logo-of-المعهد-السعودي-التقني-للخطوط-الحديدية-hiring-for-jobs-in-Saudi-Arabia-on-GrabJobs

AI/ML Support Automation Analyst

icon briefcase Job Type : Full Time

Number of Applicants

 : 

000+

Click to reveal the number of candidates who applied for this job.
icon loader
Apply Now
icon loader Apply Now

Let AI Supercharge Your Job Hunt!

JobCopilot scans 500,000+ company career sites daily to find jobs for you

Never miss an opportunity Save hours by auto-filling applications forms Land more interviews with tailored applications
happy man
thunder iconActivate JobCopilot

Job Description - AI/ML Support Automation Analyst


Position Summary


The AI/ML Support Automation Analyst will be a key member of the KSL AI Support Team, focusing on MLOps


infrastructure, container orchestration, and workflow automation at a supercomputing scale. Working under the


AI/ML Support Team Lead, this role is responsible for developing and maintaining secure, OCI-compliant container


images, robust CI/CD pipelines, and cloud-native MLOps workflows that enable researchers to efficiently deploy and


manage AI/ML workloads. The Analyst will bridge the gap between cutting-edge Kubernetes-based infrastructure


and the diverse needs of the research community, contributing to governance, technical enablement, and


community development initiatives.


 


Major Responsibilities


1 MLOps and Container Development


• Providing timely and useful user support via telephone, walk-in, email, and ticketing system submissions


for all types of inquiries.


• Maintain high customer service standards in dealing with and responding to user issues and questions.


• Develop and maintain secure, OCI-compliant, and HPC-ready AI/ML and data science software container


images


• Design and implement robust MLOps workflows and pipelines at supercomputing scale


• Develop and maintain CI/CD pipelines for reproducible infrastructure and workflow deployment


• Design and deploy APIs for AI/ML services and inference endpoints


• Implement and manage Kubernetes-based orchestration, including CNI, CSI, and service mesh


configurations and optimization


• Deploy and maintain container registries (Harbor) and model registries (MLFlow, Kubeflow Model


Registry)


2 Governance and Compliance Support


• Assist in computational readiness reviews for AI research projects


• Assist in AI model and artifact control reviews to ensure compliance with institutional standards


• Provide consultation to users on efficient resource usage for AI/ML and MLOps workflows


• Ensure container images and workflows comply with security policies and best practices


• Support the implementation of usage monitoring and reporting systems


3 Performance and Benchmarking


• Perform performance debugging and tuning of MLOps and cloud-native workflows


• Develop and maintain AI/ML and MLOps workload benchmarks for procuring new systems


• Create and maintain regression testing workloads for existing clusters


• Deploy and maintain observability and resource monitoring stacks using Prometheus, Grafana, NVIDIA


DCGM, and Grafana Loki


• Contribute to technology evaluation and benchmarking exercises for future infrastructure investments


4 Training and Documentation


• Create comprehensive training content for users on MLOps platforms, Kubernetes, and containerization


• Develop and maintain high-quality user documentation for automation tools and workflows


• Support the delivery of workshops on CI/CD, container orchestration, and MLOps best practices


• Contribute to knowledge transfer initiatives within the KAUST research community


• Provide one-on-one consultation to researchers on efficient use of automation infrastructure


 


Personal Requirements


Competencies


• Experience


• Demonstrated experience developing robust and complex MLOps pipelines


• Hands-on experience with API design and deployment


• Experience developing robust and portable CI/CD pipelines for reproducible infrastructure and workflow


deployment


• Experience supporting researchers or working in academic/research computing settings preferred


• Technical Skills - Essential


• Kubernetes: Strong expertise in Kubernetes, Container Network Interface (CNI), Container Storage


Interface (CSI), and Service Mesh


• MLOps: Experience developing and maintaining MLOps pipelines and workflows


• CI/CD: Proficiency in building CI/CD pipelines for infrastructure and application deployment


• Containerization: Experience building secure, OCI-compliant container images


• API Development: Experience in API design, development, and deployment


• Programming: Proficiency in Python; experience with Go, Bash scripting


• Linux: Strong Linux/Unix systems administration skills


• Technical Skills - Desired


• Experience with ArgoCD, Airflow, DASK, Spark for workflow orchestration


• Experience with Kubeflow, KServe, and Seldon for ML serving and pipelines


• Experience deploying and maintaining observability stacks (Prometheus, Grafana, NVIDIA DCGM, Grafana


Loki)


• Knowledge of Model Context Protocol (MCP) and agentic frameworks


• Experience deploying inference services at scale


• Experience deploying and maintaining container registries (Harbor) and model registries (MLFlow,


Kubeflow Model Registry, Artifact Hub)


• Experience with GitOps practices and Infrastructure as Code (Terraform, Ansible)


• Experience with HPC schedulers (SLURM) and HPC-cloud integration


• Soft Skills


• Strong problem-solving and analytical abilities


• Excellent written and verbal communication skills in English


• Customer service mindset with patience for supporting diverse skill levels


• Ability to work independently and as part of a collaborative team


• Strong documentation and knowledge-sharing practices


• Cultural sensitivity for working in an international environment


 


Preferred Qualifications


• Experience in national laboratories or major research computing facilities


• Experience with GPU scheduling and resource management in Kubernetes


• Background in DevOps or Site Reliability Engineering (SRE)


• Contributions to open-source cloud-native or MLOps projects


• Publications or presentations on MLOps, Kubernetes, or automation topics


• Knowledge of Saudi Arabia's Vision 2030 and national AI initiatives


• Additional certifications: AWS/Azure/GCP, Terraform, NVIDIA DLI


 


Qualifications


• Bachelor's or master’s degree in computer science, Data Science, Computational Science, Artificial


Intelligence, or a related field


• Certifications such as CKA (Certified Kubernetes Administrator), CKAD (Certified Kubernetes Application


Developer), CKS (Certified Kubernetes Security Specialist), or CNPE (Certified Cloud Native Platform


Engineer) are highly valued


 


Experience


• Minimum of 2 years of relevant experience


Original job AI/ML Support Automation Analyst posted on GrabJobs ©. To flag any issues with this job please use the Report Job button on GrabJobs.
Apply Now
Share Job
Share Job

About the Company

المعهد السعودي التقني للخطوط الحديدية

المعهد السعودي التقني للخطوط الحديدية

Read more about the company

Auto-Apply to AI/ML Support Automation Analyst Jobs with your AI JobCopilot

thunder icon Auto-Apply with AI

Similar AI/ML Support Automation Analyst Jobs in Saudi Arabia

GrabJobs is the no1 job portal in Saudi Arabia, connecting you to thousands of jobs fast! Find the best jobs in Saudi Arabia, apply in 1 click and get a job today!

Mobile Apps

Copyright © 2026 Grabjobs Pte.Ltd. All Rights Reserved.