Senior AI/ML Architect - AI Program
Mayo Clinic · Rochester, MN · 3 wk ago
Art & Creative$185k–$278k/yrFull-time
About the role
Senior AI/ML Architects at Mayo Clinic serve at the leading edge of data, systems, and computer sciences, embodying the convergence of technological expertise and visionary innovation. In our dynamic and collaborative environment, Senior AI/ML Architects are pivotal in transforming healthcare, advancing patient care through cutting-edge AI solutions. By joining our team, you will navigate the complexities of AI technologies, multimodal AI architectures, data architecture, and system integration, crafting scalable, impactful AI models and infrastructures that drive forward medical breakthroughs and improve patient outcomes.
Responsibilities
- Providing strategic direction and technical leadership for complex AI Engineering initiatives.
- Designing and implementing enterprise-wide AI models and solutions that address complex healthcare challenges, improving patient care and outcomes. This includes evaluating and guiding the use of foundation models, multimodal learning approaches, vision encoders, and AI architectures that leverage clinical text, medical imaging, genomic, and other healthcare data sources.
- Collaborating with cross-functional teams, including data scientists, engineers, and healthcare professionals, to seamlessly integrate AI technologies into our systems.
- Evaluating and recommending new technologies to enable continuous innovation across Mayo Clinic, including advances in multimodal AI, vision-language models, foundation models, representation learning, model interpretability, and emerging AI architectures relevant to healthcare.
- Contributing to the development of scalable and efficient data architectures, ensuring the integrity and accessibility of healthcare data.
- Participating in the entire lifecycle of AI solution development, from concept to deployment, including problem identification, system architecture design, implementation, and evaluation. Providing architectural guidance on model selection, multimodal fusion strategies, evaluation methodologies, explainability, scalability, and deployment considerations.
- Leading the collaboration with cross-functional teams, including clinicians, translation engineers, software engineers, and product managers, to gather requirements, assess feasibility, define the scope, requirements, and deliverables of AI projects.
- Providing consultative services to departments and divisions, offering insights and strategies to address complex business problems.
- Evaluating and guiding architectural decisions for advanced AI systems, including multimodal foundation models, vision-language architectures, representation learning approaches, embedding strategies, and early-, mid-, and late-fusion methodologies for heterogeneous healthcare data.
- Providing mentorship, guidance, and technical leadership to junior architects and engineers within the AI enablement team. May have supervisory responsibilities.
Qualifications
- A master’s degree engineering, computer science, health science, or a related field with 10 years of experience, or a bachelor’s degree with 12 years of experience.
- At least 10 years of experience applying AI and machine learning in production healthcare environments or similar highly regulated or technology focused industries, showing an acute understanding of healthcare technology.
- Demonstrated leadership in managing large projects involving complex architectures, with a proven ability to navigate intricate project requirements and deliver successful outcomes.
- Proficiency in fostering collaboration across diverse teams and effectively communicating complex technical concepts to non-technical stakeholders.
- Proficiency in multiple programming languages, such as Python, Java, C++, JavaScript, etc.
- Considerable experience with AI/ML frameworks (e.g., TensorFlow, PyTorch).
- Experience using large language models as part of a solution.
- Deep understanding of cloud computing platforms (GCP, AWS, Azure).
- Rich understanding of data structures, algorithms, and Good Machine Learning Practices (GMLP)
- A commitment to mentoring and training less-experienced team members, coupled with strong interpersonal, communication, and time management skills.
- Demonstrated risk assessment and management capability, establishing robust testing strategies for technology solutions.
- Deep understanding of data use and data security in healthcare.
- Acute awareness of best practices in the data engineering, data science, AI Engineering, and MLOps communities.
Exemption Status
Exempt
Compensation Detail
$185,244.80 - $277,867.20/year
Schedule
Full Time
Hours/Pay Period
80
Schedule Details
Monday - Friday, 8am - 5pm