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Lead Machine Learning Engineer

Tenth Revolution Group
Birmingham
6 months ago
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Lead Machine Learning Engineer

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Lead Machine Learning Engineer

Staff/Lead Machine Learning Engineer (CV / Research)

We’re looking for a Senior or Lead Machine Learning Engineer to join a growing data science team, focused on delivering production-ready ML solutions and building reliable cloud infrastructure on Azure.


Responsibilities:

Lead ML projects from design to production deployment

Build and manage data pipelines and cloud-based infrastructure

Deploy and monitor data science models in Azure environments

Improve CI/CD pipelines and model monitoring frameworks

Mentor junior engineers and collaborate across data and IT teams

Write clean, high-quality, testable code and participate in code reviews


Skills & Experience:

Strong Python expertise (Pandas, scikit-learn) and solid SQL skills

Hands-on experience with Azure services (VMs, Web Apps, Storage, Azure ML)

Knowledge of DevOps tools: GitHub Actions, Terraform, Docker, Kubernetes, Airflow

Understanding of software engineering best practices and cloud security

Exposure to ML model lifecycle and production environments

Familiarity with Linux/Windows VM management and Bash scripting

Bachelor’s degree in Computer Science, Data Science or similar field preferred


Sponsorship is not available for this role.

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