Apple is a place where extraordinary people gather to do their best work.
Together we craft products and experiences people once couldn't have imagined - and now can't imagine living without.
If you're excited by the idea of making a real impact, and joining a team where we pride ourselves in being one of the most diverse and inclusive companies in the world, a career with Apple might be your dream job Apple is seeking a highly motivated and innovative MLOps engineer to join our worldwide sales team, Data Solutions & Initiatives (DSI).
This is a unique opportunity to help the growth of one of Apple's global initiatives and contribute to launching ground-breaking new features in support of Apple's sales strategy.
In this position, you will join a team of AI and ML engineers focused on automating machine learning pipelines, securing ML models and data infrastructures, and owning all aspects of our AI/ML operations to achieve high availability, scalability, and reliability of machine learning systems in production.
Description
We are looking for a world-class MLOps Engineer who is passionate about operational excellence through automation and machine learning engineering processes.
As an MLOps Engineer, you will play a crucial role in ensuring the seamless integration of machine learning development and production operations, to deliver best in class and highly available ML systems.
You will work with data science, data engineering, and AI/ML engineering teams to understand model deployment and infrastructure requirements, while promoting efficiency, scalability, security, and reliability throughout the machine learning lifecycle.
Your expertise in cloud platforms, ML automation, model monitoring, and ML infrastructure management will be crucial to the success of our AI/ML projects.
Your responsibilities will include: - Designing ML engineering platforms and tooling that simplify the process of building, training, deploying, and operating machine learning models at scale.
- Developing automation for model training pipelines, deployment workflows, model monitoring, and ML operational tasks.
- Monitoring ML model performance, data drift, model accuracy, and system availability, and remediating as necessary.
- Collaborating with data science and ML engineering teams on finding operationally sustainable solutions to model deployment and lifecycle management challenges.
- Provide guidance to the engineering organization on navigating ML governance, model security, and compliance requirements for AI/ML systems.
- Mentoring other MLOps engineers around ML best practices, model deployment strategies, and MLOps design approaches.
Minimum Qualifications
Preferred Qualifications
Submit CV