Experience: 5–7 Years
Location: Cairo, Egypt (Onsite Role)
Employment Type: Full-Time
We are looking for a skilled and hands-on Senior MLOps Engineer with strong AWS expertise to support the deployment, automation, and monitoring of machine learning models in production. The ideal candidate will collaborate closely with Data Science and Engineering teams to operationalize ML models using cloud-native best practices.
Key Responsibilities- Design and implement end-to-end MLOps pipelines from data ingestion to model deployment
- Deploy and manage ML models using AWS-native services such as SageMaker
- Build and maintain CI/CD pipelines for ML workflows
- Implement model monitoring, performance tracking, and basic drift detection
- Containerize ML workloads using Docker and deploy on EKS/ECS
- Support infrastructure automation using Terraform or CloudFormation
- Ensure scalability, availability, and security of ML systems
- Collaborate with cross-functional teams to productionize ML solutions
- Troubleshoot ML pipelines and cloud infrastructure issues
- 5–7 years of overall experience with at least 3+ years in MLOps or ML production environments
- Experience managing ML lifecycle (training, deployment, monitoring)
- Hands-on experience with TensorFlow, PyTorch, or Scikit-learn
- Experience with MLflow or similar experiment tracking tools
- Hands-on experience with:
- Amazon SageMaker
- S3, EC2, Lambda
- IAM, CloudWatch
- ECR, ECS or EKS
- Understanding of secure and scalable AWS architecture
- Docker and containerization
- CI/CD using GitHub Actions, GitLab CI, Jenkins, or AWS CodePipeline
- Infrastructure as Code (Terraform or CloudFormation)
- Strong Python programming skills
- Experience with SQL and working knowledge of NoSQL databases
- Experience handling structured and unstructured datasets
- Exposure to feature stores and data versioning
- AWS Associate-level certification
- Basic understanding of ML governance and compliance
Top Skills
What We Do
NorthBay is an AWS Premier Partner focused on Database & Application migrations, data & analytics, DevOps & DataOps, application modernization and ML/Ai.
Our practice areas include big data and analytics, machine learning, artificial intelligence and database migrations.







