Lead Machine Learning Engineer
New Yesterday
Lead Machine Learning Engineer - NIKE USA - 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
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.
- Location:
- Beaverton