Job Search and Career Advice Platform

Enable job alerts via email!

ML Ops Engineer

Luxoft

Remote

GBP 60,000 - 80,000

Full time

4 days ago
Be an early applicant

Generate a tailored resume in minutes

Land an interview and earn more. Learn more

Job summary

A technology consulting firm in the United Kingdom is seeking a skilled ML Ops Engineer to operationalize machine learning solutions across Digital Oilfield platforms. The candidate will be responsible for developing and maintaining ML pipelines and implementing model governance strategies. Key requirements include a strong software engineering background, experience with MLflow and Azure, and proficiency in CI/CD workflows. This role offers the opportunity to collaborate with cross-functional teams and contribute to the ML lifecycle management.

Qualifications

  • Strong software engineering background with ML Ops or DevOps exposure.
  • Hands-on experience with MLflow, Azure ML, Kubeflow, or equivalent.
  • Proficiency in CI/CD workflows and scripting for automation.
  • Familiarity with model monitoring, drift detection, and alerting frameworks.
  • Experience deploying Python-based ML models in production.

Responsibilities

  • Develop and maintain ML pipelines for data preprocessing and monitoring.
  • Implement model governance strategies like versioning and audit trails.
  • Set up containerized environments and scalable inference systems.
  • Collaborate with software, IT, and data teams for model integration.
  • Support continuous improvement of ML lifecycle management practices.

Skills

Software engineering
ML Ops
DevOps
CI/CD workflows
Automation scripting
Model monitoring
Data streaming

Education

Azure DevOps or Azure AI Engineer certification

Tools

MLflow
Azure ML
Kubeflow
Docker
Kubernetes
Job description
Project description

We are hiring an ML Ops Engineer to operationalize machine learning solutions across Digital Oilfield (DOF) platforms. This is a critical role ensuring that models move from development to robust, production-grade deployment with high availability, traceability, and security.The ideal candidate will be responsible for automating pipelines, managing model versions, integrating APIs, and monitoring ML system health across diverse operational environments. Oil & gas exposure is beneficial but not required; this is a technical engineering role with high ownership and cross-team collaboration.

Responsibilities
  • Develop and maintain ML pipelines for data preprocessing, training, validation, deployment, and monitoring.
  • Implement model governance strategies—versioning, rollback, audit trails, and explainability.
  • Set up containerized environments and scalable inference systems (e.g., using Docker, Kubernetes).
  • Collaborate with software, IT, and data teams to ensure model integration and compliance.
  • Support continuous improvement of ML lifecycle management practices and tooling.
  • business trip to Kuwait
SKILLS
Must have
  • Strong software engineering background with ML Ops or DevOps exposure
  • Hands-on experience with MLflow, Azure ML, Kubeflow, or equivalent.
  • Proficiency in CI/CD workflows and scripting for automation.
  • Familiarity with model monitoring, drift detection, and alerting frameworks.
  • Experience deploying Python-based ML models in production.
Nice to have
  • Understanding of Digital Oilfield environments or OT/IT integration.
  • Familiarity with cloud-native services—Azure is preferred.
  • Exposure to real-time data streaming (e.g., Kafka, IoT platforms).
  • Understanding of security, compliance, and data access protocols in enterprise environments.
Certifications:
  • Azure DevOps or Azure AI Engineer certification is a plus.
  • AWS DevOps Engineer certification is nice to have but not required
Get your free, confidential resume review.
or drag and drop a PDF, DOC, DOCX, ODT, or PAGES file up to 5MB.