Current jobs related to MLOps Engineer - Other US Location - Stanford Health Care
-
Senior Software Engineer, 3D Computer Vision
3 weeks ago
US, CA, Santa Clara NVIDIA Full timeNVIDIA is a world-leader in high speed computer vision, artificial intelligence, and deep learning. Our team builds the accelerated software ecosystem that enables visual AI developers to innovate swiftly and efficiently at scale.We are now looking for an outstanding CUDA developer to build developer-facing libraries and services that will accelerate the...
MLOps Engineer
3 months ago
If you're ready to be part of our legacy of hope and innovation, we encourage you to take the first step and explore our current job openings. Your best is waiting to be discovered.
Day - 08 Hour (United States of America)
We are seeking a versatile DevOps Engineer with a strong foundation in full stack development to join our dynamic team. In addition to your expert-level DevOps skills, we are excited to see candidates who have hands-on experience in full stack development. As a DevOps Engineer at Stanford Healthcare, you'll play a crucial role in bridging the gap between development and operations, ensuring seamless integration, deployment, and automation of our systems. Your proficiency in both areas will empower you to architect solutions that not only optimize our infrastructure but also enhance the end-to-end development lifecycle. If you possess a deep understanding of coding, architecture, and deployment processes, coupled with your proven DevOps expertise, we encourage you to bring your unique perspective and skill set to our team. Your ability to collaborate, adapt, and innovate will contribute to the growth and success of both our DevOps practices and our broader development initiatives.
This is a Stanford Health Care job.
A Brief Overview
The MLOPs Engineer will play an integral role incorporating Artificial Intelligence (AI) within Stanford Health Care. The solutions will impact patient care, medical research, and operational services. This group is tasked to innovate, build, deploy and monitor production grade AI, machine learning (ML) and predictive algorithms into healthcare. The role will partner closely with lead researchers within the AI field and leaders across various clinical specialties and operations.
This role will report to the Infrastructure group and have a dotted line relationship to the Data Science team. The role will be responsible for maintaining cloud-based infrastructure as code repositories, maintaining infrastructure, deployment pipelines and designing the security landscape for the team and objects. The role will set the standards for the full SDLC of projects for the Data Science team.
Locations
Stanford Health Care
What you will do
- Design, build and maintain scalable and robust infrastructure for AI/ML systems, including cloud-based environments, containerization and orchestration platforms.
- Develop and implement CI/CD pipelines to automate the deployment, testing and monitoring of AI/ML models and applications.
- Collaborate with data scientists, data engineers and software engineers to optimize model training, deployment and inference pipelines.
- Monitor and troubleshoot AI/ML systems to ensure high availability, performance and reliability.
- Maintain and monitor model training and inference pipelines across multi-cloud tenants especially around Large Language Models (LLMs).
- Maintain Kubernetes pods, container registry and virtual machine image library and model registry
- Monitor infrastructure utilization and costs pertaining to model training, inference and GPU utilization
- Implement best practices for security, data privacy and compliance in AI/ML workflows and infrastructure.
- Evaluate and integrate new tools, technologies and frameworks to improve the efficiency and effectiveness of our MLOps processes.
- Mentor and provide technical guidance to junior members of the organization.
- Stay up-to-date with the latest advancements and trends in MLOps, DevOps and cloud technologies and share them with the team.
Education Qualifications
- Bachelor's or higher degree in Computer Science, Engineering or a related field
Experience Qualifications
- Three (3) or more years of directly related experience
Required Knowledge, Skills and Abilities
- Proven experience as an MLOps Engineer.
- Strong knowledge of cloud platforms such as AWS, Azure or Google Cloud and experience with infrastructure-as-code tools like Terraform or CloudFormation.
- Proficiency in containerization technologies such as Docker and container orchestration platforms like Kubernetes.
- Experience with CI/CD tools such as GitLab CI/CD, Github Actions or CiricleCI.
- Solid programming skills in languages such as Python, Rust or Go and experience in scripting and automation.
- Familiarity with machine learning frameworks and libraries such as PyTorch, Tensorflow and scikit-learn.
- Deep understanding of DevOps principles, agile methodologies and software development lifecycle.
- Strong problem-solving and trouble shooting skills, with the ability to analyze and resolve complex technical issues.
- Excellent communication and collaboration skills with the ability to work effectively in cross-functional teams.
Physical Demands and Work Conditions
Blood Borne Pathogens
- Category III - Tasks that involve NO exposure to blood, body fluids or tissues, and Category I tasks that are not a condition of employment
These principles apply to ALL employees:
SHC Commitment to Providing an Exceptional Patient & Family Experience
Stanford Health Care sets a high standard for delivering value and an exceptional experience for our patients and families. Candidates for employment and existing employees must adopt and execute C-I-CARE standards for all of patients, families and towards each other. C-I-CARE is the foundation of Stanford's patient-experience and represents a framework for patient-centered interactions. Simply put, we do what it takes to enable and empower patients and families to focus on health, healing and recovery.
You will do this by executing against our three experience pillars, from the patient and family's perspective:
- Know Me: Anticipate my needs and status to deliver effective care
- Show Me the Way: Guide and prompt my actions to arrive at better outcomes and better health
- Coordinate for Me: Own the complexity of my care through coordination
Equal Opportunity Employer Stanford Health Care (SHC) strongly values diversity and is committed to equal opportunity and non-discrimination in all of its policies and practices, including the area of employment. Accordingly, SHC does not discriminate against any person on the basis of race, color, sex, sexual orientation or gender identity and/or expression, religion, age, national or ethnic origin, political beliefs, marital status, medical condition, genetic information, veteran status, or disability, or the perception of any of the above. People of all genders, members of all racial and ethnic groups, people with disabilities, and veterans are encouraged to apply. Qualified applicants with criminal convictions will be considered after an individualized assessment of the conviction and the job requirements.
Base Pay Scale: Generally starting at $ $98.94 per hour
The salary of the finalist selected for this role will be set based on a variety of factors, including but not limited to, internal equity, experience, education, specialty and training. This pay scale is not a promise of a particular wage.