Become a Part of the NIKE, Inc. Team
NIKE, Inc. does more than outfit the world’s best athletes. It is a place to explore potential, obliterate boundaries and push out the edges of what can be. The company looks for people who can grow, think, dream and create. Its culture thrives by embracing diversity and rewarding imagination. The brand seeks achievers, leaders and visionaries. At NIKE, Inc. it’s about each person bringing skills and passion to a challenging and constantly evolving game.
Lead Machine Learning Engineer - NIKE USA INC - Beaverton, OR. Develop and program integrated software algorithms to structure, analyze and leverage data in product and systems applications in both structured and unstructured environments; develop and communicate descriptive, diagnostic, predictive and prescriptive insights/algorithms; use machine language and statistical modeling techniques such as decision trees, logistic regression, Bayesian analysis and others; develop and evaluate algorithms to improve product system performance, quality, data management and accuracy; use current programming language, technologies to translate algorithms and technical specifications into code; complete programming and implement efficiencies, perform testing and debugging; complete documentation and procedures for installation and maintenance; apply deep learning technologies to give computers the capability to visualize, learn and respond to complex situations; adapt machine learning to areas such as virtual reality, augmented reality, artificial intelligence, robotics and other products that allow users to have an interactive experience; and work with large scale computing frameworks, data analysis systems and modeling environments. Telecommuting is available from anywhere in the U.S., except from SD, VT, and WV.
Employer will accept a Master’s degree in Computer Science or Statistics and two (2) years of experience in the job offered or in a computer-related occupation.
Experience must in the following:
Developing and delivering production code in languages such as Python, Golang, Java, and Scala
Frameworks including Spark and Hadoop
AI/ML techniques such as neural networks, tree ensembles, regressions, and hypothesis testing
Building Data and ML pipelines using Scikit-learn, Tensorflow, spark ML (MLlib), and OpenCV
SQL
Architecting and delivering cloud solutions using Google Cloud and AWS
Recommendation and search algorithms including ALS, Neural Nets, Clustering, personalization techniques, time series, NLP, and image modeling
A/B testing
End-to-end lifecycle of ML systems including ML engineering development and designing and building low latency real-time systems
Delivering and supporting high impact solutions across large datasets to production;
Spark streaming
MLOps and the lifecycle of model development from experimentation to production and measurement and visualization
Apply at www.Nike.com/Careers (Job # R-62501)
#LI-DNI
We offer a number of accommodations to complete our interview process including screen readers, sign language interpreters, accessible and single location for in-person interviews, closed captioning, and other reasonable modifications as needed. If you discover, as you navigate our application process, that you need assistance or an accommodation due to a disability, please complete the Candidate Accommodation Request Form.
OUR HIRING GAME PLAN
01 Apply
Our teams are made up of diverse skillsets, knowledge bases, inputs, ideas and backgrounds. We want you to find your fit – review job descriptions, departments and teams to discover the role for you.
02 Meet a Recruiter or Take an Assessment
If selected for a corporate role, a recruiter will reach out to start your interview process and be your main contact throughout the process. For retail roles, you’ll complete an interactive assessment that includes a chat and quizzes and takes about 10-20 minutes to complete. No matter the role, we want to learn about you – the whole you – so don’t shy away from how you approach world-class service and what makes you unique.
03 Interview
Go into this stage confident by doing your research, understanding what we are looking for and being prepared for questions that are set up to learn more about you, and your background.
