Main Roles and Responsibilities
- Design develop and implement MLOps pipelines for the continuous deployment and integration of machine learning models.
- Collaborate with data scientists and engineers to understand model requirements and optimize deployment processes.
- Run machine learning feature engineering tests and improve models based on those tests.
- Automate the training testing and deployment processes for machine learning models.
- Continuously monitor and maintain models in production ensuring optimal performance accuracy and reliability.
- Implement best practices for version control model reproducibility and governance.
- Optimize machine learning pipelines for scalability efficiency and costeffectiveness.
- Troubleshoot and resolve issues related to model deployment and performance.
- Ensure compliance with security and data privacy standards in all MLOps activities.
- Keep up to date with the latest MLOps tools technologies and trends.
- Provide support and guidance to other team members on MLOps practices.
- Select appropriate data sets and representation methods perform statistical analysis and verify data quality
- identify differences in data distribution that affects model performance
- Develop machine learning apps according to client requirements and extend machine learning libraries
Required skills and experience
- 3 years of experience in Azure Azure machine learning MLOps DevOps or a related field.
- Strong understanding of machine learning principles and model lifecycle management.
- Proficiency in programming languages such as Python with handson experience in machine learning frameworks like TensorFlow PyTorch or Scikitlearn.
- Experience with cloud platforms like Azure AWS or and their respective machine learning services.
- Familiarity with containerization and orchestration tools such as Docker and Kubernetes.
- Knowledge of CI/CD pipelines automation tools and version control systems like Git.
- Strong problemsolving skills and ability to troubleshoot complex issues.
- Experience with monitoring tools and practices for model performance in production.
- Ability to work collaboratively in crossfunctional teams.
Nice to have:
- Bachelors degree in computer science Data Science or a related field.
- Azure ML Studio Data bricks Fabric
- Familiarity with agile software development lifecycle (SCRUM Kanban etc.)
Remote Work :
No