Description | Position : MLOps Engineer - Remote Location : San Diego CA Duration : 10 Months Total Hours/week : 40.00 1st Shift Client : Medical Devices Company Job Category : Technical/Engineering Level of Experience : Senior Level Employment Type : Contract on W2 (Need US Citizens or GC Holders or GC EAD or OPT or EAD or CPT) Job Description We're seeking an experienced MLOps Engineer to lead the operationalization of our Machine Learning workloads. As a key team member you'll be responsible for designing building and maintaining infrastructure required for efficient development deployment and monitoring of machine learning workloads. Your close collaboration with data scientists will ensure that our models are reliable scalable and performing optimally. This role requires expertise in automating ML workflows enhancing model reproducibility and ensuring continuous integration and delivery. Responsibilities Architect for scalable cost-efficient reliable and secure ML solution. Design implement and deploy ML solutions in AWS. Select and justify appropriate ML technology within AWS and Identify appropriate AWS services to implement ML solutions. Design build and maintain infrastructure required for efficient development deployment and monitoring of machine learning models. Implement CI/CD pipelines for machine learning applications to ensure smooth development and deployment processes. Collaborate with data scientists to understand and implement requirements for model serving versioning and reproducibility. Monitor and optimize model performance in production identifying and resolving issues proactively to ensure optimal results. Automate repetitive tasks to improve efficiency and reduce the risk of human error in MLOps workflows. Maintain documentation and provide training to team members on MLOps best practices ensuring knowledge sharing and collaboration within the team. Stay updated with the latest developments in MLOps tools technologies and methodologies to remain current and effective in your role. Qualifications Bachelor's or Master's degree in Computer Science Engineering or a related field. 3+ years of experience in MLOps DevOps or related fields. Strong programming skills in Python GoLang with experience in other languages such as Java C++ or Scala being a plus. Experience with ML frameworks such as TensorFlow PyTorch and/or scikit-learn. Proficiency with CI/CD tools such as Github Actions. Hands-on experience with AWS. Familiarity with containerization and orchestration tools like Docker and Kubernetes. Knowledge of infrastructure-as-code tools such as AWS CDK and Cloudformation. Strong understanding of machine learning lifecycle including data preprocessing model training evaluation and deployment. Excellent problem-solving skills and the ability to work independently as well as part of a team. Strong communication skills and the ability to explain complex technical concepts to non-technical stakeholders. Preferred Qualifications AWS Certified Machine Learning - Specialty Experience with feature stores model registries and monitoring tools such as MLflow Tecton or Seldon. Familiarity with data engineering tools such as AWS EMR Glue and Apache Spark. Knowledge of security best practices for machine learning systems. Experience with A/B testing and model performance monitoring. |