Staff AI / Mlops Engineer, Clinical AI
Salary Range: 170000 to 250000 (Currency: USD) (Pay period: per-year-salary) At IMO Health, we combine strengths in software development, artificial intelligence, and clinical expertise to create AI-driven solutions that enhance access to reliable health information, support clinical decision-making, and improve patient outcomes. We are seeking a Staff AI / MLOps Engineer to join our Software Engineering organization, owning the end-to-end machine learning lifecycle for production AI systems. This role is responsible for designing, building, deploying, operating, and evolving AI-powered systems that are scalable, reliable, observable, and maintainable in real-world clinical environments. This is a technical leadership role focused on operational excellence and architectural rigor. The ideal candidate is a hands-on engineer with deep experience across software engineering, MLOps, DevOps, cloud infrastructure, and data systems, capable of owning ML systems from initial design through long-term production operation, monitoring, retraining, and retirement. You will partner closely with data scientists, product teams, and platform engineers to ensure AI models successfully transition from research to durable, production-grade systems. WHAT YOU’LL DO: • Own the full ML lifecycle, including data ingestion, training, validation, deployment, monitoring, retraining, and retirement. • Transition AI/ML prototypes into scalable, production-ready systems with CI/CD pipelines, automation, and observability. • Lead system design and architecture discussions, providing guidance on ML systems, MLOps, and AI infrastructure. • Develop and maintain AI-driven applications and inference services, optimizing for performance, scalability, reliability, and cost. • Integrate LLMs, generative AI, and NLP solutions into IMO Health products, focusing on unstructured clinical data. • Implement monitoring, alerting, logging, and dashboards to ensure model quality, detect drift, and maintain operational SLAs. • Build, maintain, and optimize CI/CD pipelines, automation scripts, and Infrastructure-as-Code for production ML systems. • Apply containerization (Docker, Kubernetes) and cloud infrastructure best practices to manage production environments. • Mentor and guide engineers, enforce technical standards, and drive reduction of technical debt. • Conduct root cause analysis of production defects and implement durable fixes. • Advocate for non-functional requirements (availability, scalability, reliability, maintainability) and design systems accordingly. • Collaborate cross-functionally with Product, Data Science, Architecture, and Engineering teams to align AI solutions with business goals. WHAT YOU’LL NEED: • 8+ years of professional experience in software engineering, AI/ML engineering, or related roles, building and operating production-grade systems. • Bachelor’s or Master’s degree in Computer Science, Engineering, or a related technical field (or equivalent experience). • Strong foundation in computer science fundamentals (data structures, algorithms, design patterns, operating systems, networking). • Expert-level coding skills in Python or Java, with a strong emphasis on production-quality software engineering practices. • Hands-on experience owning ML systems in production, including deployment, monitoring, retraining, and optimization. • Experience designing and operating CI/CD pipelines, automation, and observability for ML systems. • Deep experience with cloud platforms (AWS or Azure), containerization, and Infrastructure-as-Code. • Experience with MLOps tools and workflows (e.g., MLflow, SageMaker, Kubeflow). • Experience integrating and deploying LLMs, generative AI, and agentic systems in production environments. • Working knowledge of NLP concepts (tokenization, embeddings, classification, sequence modeling); healthcare exposure is a plus. • Experience with Elasticsearch and vector databases for embedding-based search and retrieval. • Proven ability to translate business needs into scalable, reliable technical solutions, balancing technical debt and delivery velocity. • Strong system design skills for high-performance, distributed, and scalable systems. • Excellent communication and collaboration skills across cross-functional, distributed teams. • Self-starter who can operate autonomously and own complex systems end to end. NICE TO HAVE: • Experience with clinical or healthcare AI applications. • Familiarity with Hugging Face, PyTorch, TensorFlow, or other modern ML frameworks. • AWS Associate-level certification (Machine Learning Engineer or Solutions Architect). Apply tot his job