- Collaborate with Data Scientists, AI Engineers, and Software Engineers to build robust ML pipelines.
- Automate deployment of ML models to production environments (CI/CD for ML).
- Implement model monitoring, logging, versioning, and lifecycle management.
- Optimize model performance and ensure reproducibility and scalability.
- Work with cloud platforms (AWS, GCP, or Azure) to manage compute resources and infrastructure.
- Integrate ML models into APIs or applications for real-time and batch inference.
- Apply best practices in MLOps: data validation, drift detection, testing, rollback strategies.
- Maintain ML metadata and experiment tracking systems.
- Ensure compliance with data privacy, security, and governance standards
Educational Requirements: Bachelor’s degree in computer science, Engineering, or a related field.
Required Industry Experience: Minimum 3 Years of Experience.
Technological Requirements: Very Good command of Microsoft Suites.
Language Requirements: Excellent command of English (spoken and written)