*FREELANCE* Cloud (ML)Ops Engineer
Contract details
- Duration: ASAP until end of year, with extensions
- Language: Fluency in English
- Work setup: 50% onsite / 50% remote
- Process: 1 Stage Interview
For a banking client, we are looking for a Cloud (ML)Ops Engineer to work at the intersection of cloud infrastructure, DevOps, and machine learning operations. You will help build and maintain a scalable, secure, and reliable platform supporting data scientists and analysts across their full workflow.
Key responsibilities
- Design and build cloud-native platform services for AI models and data pipelines
- Support multi-user Jupyter environments and cloud IDEs
- Enable training, storage, serving, and monitoring of custom models (mainly high-throughput batch processing)
- Expose models via APIs for low-latency use cases
- Support Generative AI initiatives
- Manage infrastructure on AWS using Terraform, Docker, and Kubernetes
- Automate data and model lifecycle workflows (Airflow, Spark, Python)
- Ensure platform reliability, performance, and cost efficiency
- Support onboarding, troubleshooting, and continuous improvement of MLOps practices
- Collaborate with stakeholders across multiple locations and countries
Requirements
- Strong interest in cloud, data, and AI
- Master’s degree in ICT, Engineering Sciences, Business Engineering (informatics focus), or equivalent experience
- Strong Python skills and familiarity with the data science ecosystem
- Experience with AWS cloud infrastructure
- Docker & Kubernetes knowledge
- Infrastructure as Code (Terraform)
- CI/CD experience (e.g. Jenkins, GitHub Actions)
- Experience with big data tools such as Spark
Solliciteren