- Design, develop, deploy, and operateിരുന്ന production‑grade machine learning systems across multiple use cases such as recommendations, forecasting, and automation.
- Build and maintain end‑to‑end ML pipelines covering training, validation, deployment, monitoring, and lifecycle management.
- Focus on ML Ops and ML Platform development, ensuring scalable, reliable, and maintainable ML workflows.
- Collaborate closely with Data Scientists, Engineers, and Product Managers to productionise ML models and research code.
- Develop and expose ML models as scalable APIs and services using tools such as FastAPI.
- Automate model training and deployment using CI/CD pipelines (GitHub Actions, Azure DevOps).
- Improve observability, reliability, and performance of ML systems through logging, monitoring, and alerting.
- Implement model monitoring and drift detection using tools such as Azure Monitor, NewRelic, and custom frameworks.
- Manage and continuously improve ML infrastructure using Terraform, Docker, and container‑based platforms.
- Work with orchestration tools such as Airflow or Azure ML to manage ML workflows.
- 6–8 years of experience in ML Engineering, Data Engineering, or DevOps roles Billing exposure to the full ML lifecycle.
- Strong proficiency in Python, with working knowledge of SQL and Bash.
- Hands‑on experience with ML frameworks and tools such as MLflow, Scikit‑learn, and/or PyTorch.
- Experience building and maintaining ML pipelines and workflows.
- Practical experience with cloud platforms, particularly Azure and AWS.
- Strong understanding of containerisation and orchestration, including Docker and Kubernetes.
- Experience with CI/CD tools such as GitHub Actions and Azure DevOps.
- Familiarity with data platforms such as Snowflake, Delta Lake, Redis, and Azure Data Lake.
- Translate ML research and prototypes into scalable, production‑ready systems.
- Design and operate reliable ML pipelines with strong observability and monitoring.
- Automate deployment and operational workflows to improve speed and reliability.
- Troubleshoot and optimise ML systems for performance and scalability.
- Exposure to modern ML Ops tooling and cloud‑native architectures.
- Hands‑on experience with advanced monitoring, automation, and infrastructure practices.
- Continuous learning through real‑world application of ML, cloud, and DevOps technologies.
Want to discuss this opportunity 函anded detailed? Feel free to reach out.
Recruiter: Asha KrishnanPhone: +31 20 369 0609 ; Extn :132
Email: asha.k@stafide.nl
LinkedIn: https://www.linkedin.com/in/asha-krishnan #J-18808-Ljbffr
Salarisomschrijving
€70000 - €90000 monthly
