The MLOps Engineer II will independently design, implement, and manage the automation and streamlining of the machine learning lifecycle, ensuring reliable, efficient, and scalable deployment and monitoring of models. This role requires a solid understanding of DevOps practices, cloud technologies, and machine learning frameworks, with the ability to bridge the gap between data science and operations effectively.Focus: Independent automation of ML pipelines, deployment strategies, and monitoring in production.The difference you will make: Independently design and implement CI/CD pipelines for machine learning modelsAutomate the process of model training, validation, testing, and deployment using relevant toolsDevelop and maintain automated testing frameworks for machine learning modelsDevelop and manage various model deployment strategies (e.g., A/B testing, canary deployments)Build and maintain scalable and reliable infrastructure for model serving (e.g., using Kubernetes, serverless functions)Implement and manage model versioning and rollback mechanismsOptimize model serving for latency, throughput, and resource utilizationImplement and manage comprehensive monitoring and logging systems to track model performance and identify issues (e.g., model drift, data drift)Set up and manage alerting systems to notify the team of performance degradationContribute to the development and implementation of model governance policies and proceduresEnsure compliance with security and privacy requirementsCollaborate effectively with data scientists to understand model requirements and dependenciesWork with software engineers to integrate machine learning models into applications and servicesDevelop and maintain APIs and interfaces for model accessRequirementsEducation: Bachelor's degree in computer science, Engineering, or a related fieldExperience: 2+ years of experience in DevOps, software engineering, or a related role with a focus on machine learning deployment and operations. Proven experience with cloud platforms and containerization technologies. Experience in the financial services industry is a plusTechnical Skills: Strong proficiency in DevOps practices and tools (e.g., Jenkins, GitLab CI, Docker, Kubernetes)Solid knowledge of cloud computing platforms (e.g., AWS, Azure, GCP) and their machine learning servicesKnowledge of MLflow or Kubeflow for model management, or similarFamiliarity with machine learning frameworks (e.g., TensorFlow, PyTorch, scikit-learn)Strong experience with scripting and automation (e.g., Python, Bash)Solid understanding of software engineering principles and best practicesExperience with infrastructure as code (IaC) tools (e.g., Terraform, CloudFormation)Soft Skills: Strong problem-solving and analytical skills with the ability to work independentlyAbility to work in a fast-paced and dynamic environmentAutomation mindset and a drive to improve efficiencyExcellent collaboration and communication skillsCustomer-centric approach to solution developmentStrong team playerDisciplined work ethicGood command of English language, both verbal and writtenSelf-learner with a positive attitudeFinaira is an Equal Opportunity Employer and is committed to providing a workplace free of discrimination and harassment. All employment decisions are based on business needs, job requirements, and individual qualifications, without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, age, disability, veteran status, or any other status protected by the laws or regulations in the locations where we operate.