- We are seeking an experienced MLOps Engineer to design implement and maintain scalable machine learning pipelines and infrastructure
- The ideal candidate will bridge the gap between data science and production systems ensuring robust deployment monitoring and lifecycle management of ML models
- Key Responsibilities
- Develop and maintain CI CD pipelines for ML models and data workflows
- Automate model training testing deployment and rollback processes
- Implement monitoring and alerting for model performance and data drift
- Optimize infrastructure for cost scalability and reliability cloud or hybrid environments
- Collaborate with data scientists and software engineers to integrate ML models into production
- Ensure compliance with security governance and reproducibility standards
- Required Skills
- Strong proficiency in Python and ML frameworks TensorFlow PyTorch Scikit learn
- Experience with containerization Docker and orchestration Kubernetes
- Familiarity with cloud platforms AWS Azure GCP and ML services
- Expertise in CI CD tools GitHub Actions Jenkins Argo
- Knowledge of feature stores model registries and ML observability tools
- Understanding of data versioning and experiment tracking MLflow DVC
- Experience
- 5 8 years of experience in software engineering or data engineering with at least 3 years in MLOps
- Preferred Qualifications
- Experience with large scale ML systems and distributed training
- Familiarity with GenAI model deployment and optimization
- Strong problem solving and debugging skills in production environments
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