Senior Machine Learning Engineer – AI/ML (Remote Work Option)
- Machine learning
- Other places
- 06/19/2024
- -
Company: Nike
Location: Remote (Excluding South Dakota, Vermont, and West Virginia)
The annual base salary for this position ranges from $99,500.00 in our lowest geographic market to $222,900.00 in our highest geographic market. The actual salary will vary based on a candidate's location, qualifications, skills, and experience. Details about our benefits can be found .
We are actively seeking to hire multiple Senior Machine Learning Engineers to join our AI/ML team. As a Sr. Machine Learning Engineer within the AI/ML team, you will be developing advanced analytics systems that directly impact our business. You will work on a cross-disciplinary team (Data/API/Infra/Infosec/ML) to enable data-driven decision-making across multiple organizations.
Working at the intersection of machine learning and software engineering (i.e., MLOps), you’ll create high-quality solutions that power Nike. You'll collaborate with other highly motivated professionals to build things from the ground up, thinking outside the box, and employing the latest technologies in statistical, unsupervised, supervised, and machine learning models on a global scale.
Our teams enjoy a collaborative and academic environment that supports new skill development, mentorship, and sharing knowledge and software back to analytics and engineering communities within and outside of Nike. This culture is cultivated by intellectual curiosity, fun, openness, and diversity.
The AI/ML team is a key group within Data and Analytics at Nike. We’re chartered to scale machine learning and AI company-wide. We embed cross-disciplinary teams of data scientists and engineers to unlock new capabilities and answer previously unsolved (or unasked) questions in business areas early in their analytics journey.
In mature business areas with pre-existing data science teams, we help scale machine learning by attaching engineering squads to grow their capacity to deliver for the business. Additionally, we closely collaborate with platform and architecture partners to develop capabilities that simplify machine learning at scale within Nike (e.g., model management, A/B testing, feature stores).