MLOps Engineer | Azure & Terraform | Circa €45k

Lisbon
9 months ago
Applications closed

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MLOps Engineer

MLOps Engineer

Job Title: MLOps Engineer - Hybrid (Lisbon)
Location: Lisbon, Portugal (Hybrid)
Salary: Up to €45,000 + benefits
Sector: Data & Technology

Are you ready to shape the future of data-driven decision-making in one of Europe's most dynamic B2B environments?

We're partnering with a major player in their specialist European services sector...an industry leader undergoing a transformative journey to harness the power of data science, machine learning, and cloud technologies. As part of a growing Decision Intelligence team, you'll play a pivotal role in building and scaling the infrastructure that powers smarter, faster business decisions across the continent.

🚀 What You'll Be Doing:
As an MLOps Engineer, you'll be the bridge between data science and production, ensuring seamless deployment, monitoring, and scaling of machine learning models and data systems. Your work will directly impact operational efficiency and innovation across multiple business units.

Key Responsibilities:

Maintain and enhance a cloud-based ML platform using tools like MLFlow and Azure ML.
Deploy and monitor ML models, ensuring performance, scalability, and security.
Build and manage CI/CD pipelines using Azure DevOps and Terraform.
Set up and manage Databricks environments, Unity Catalog, and Azure Data Factory integrations.
Collaborate with data scientists to streamline model training, testing, and deployment.
Develop infrastructure scripts and automate model retraining workflows.
Create dashboards and reporting tools to support business users.
Engage with internal stakeholders across Europe, articulating technical solutions clearly and confidently.🧠 What You Bring:

Solid experience with Azure Cloud, including Azure ML, Azure Data Factory, and Azure Storage.
Proficiency in Terraform, infrastructure scripting, and DevOps practices.
Hands-on experience with Databricks, Python, and containerized workloads (Docker/Kubernetes).
Familiarity with monitoring tools like Azure Monitor, Prometheus, or Grafana.
Strong understanding of ML pipelines, model lifecycle management, and data integration.
Confident communicator who can push back, share ideas, and manage multiple stakeholders.
Organized, proactive, and able to work independently in a hybrid environment.🌍 Why Join?

Be part of a high-impact data transformation journey.
Work in a collaborative, pan-European team.
Hybrid flexibility in Lisbon with a competitive salary and benefits.
Opportunity to grow your skills in a fast-paced, tech-forward environment.If you're ready to drive innovation with data and help shape the future of our client's business then please send your CV in for immediate consideration!

Modis International Ltd acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers in the UK. Modis Europe Ltd provide a variety of international solutions that connect clients to the best talent in the world. For all positions based in Switzerland, Modis Europe Ltd works with its licensed Swiss partner Accurity GmbH to ensure that candidate applications are handled in accordance with Swiss law.

Both Modis International Ltd and Modis Europe Ltd are Equal Opportunities Employers.

By applying for this role your details will be submitted to Modis International Ltd and/ or Modis Europe Ltd. Our Candidate Privacy Information Statement which explains how we will use your information is available on the Modis website

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