成为 NIKE, Inc. 团队的一员

NIKE, Inc. 不仅仅是为全球顶尖运动员提供装备,更是一个发掘潜力、突破边界、创造无限可能的地方。我们致力于寻找善于成长、思考、梦想和创造的人才。我们的企业文化因拥抱多元化、鼓励想象力而蓬勃发展。Nike 寻觅奋斗者、领导者和梦想者的加入。NIKE, Inc. 员工以出色的专业技能迎接挑战,满怀激情地投身于不断变化的行业发展之中。

WHO WE ARE LOOKING FOR

We’re looking for a Principal Machine Learning Engineer to lead and elevate our machine learning capabilities within Nike’s Consumer Product & Innovation organization. This role is for a seasoned expert who thrives on building scalable ML solutions, mentoring others, and driving innovation from concept to production. You’ll own ML Ops strategy, guide technical direction, and ensure our models deliver impact at global scale.

You bring deep experience across a range of machine learning models and algorithms, with a proven track record of deploying models into production environments. You’re a strategic thinker who can take a team vision, own a critical piece of it, and run with confidence—developing proactive solutions that meet business goals while inspiring and guiding other MLEs along the way.

WHAT YOU WILL WORK ON

You will:

  • Own end-to-end ML Ops strategy and execution for high-impact initiatives.

  • Design, build, and deploy scalable machine learning models across diverse domains, ensuring production-grade reliability and performance.

  • Mentor and coach other Machine Learning Engineers, fostering technical excellence and growth.

  • Translate business objectives into ML solutions, proactively developing options to achieve strategic goals.

  • Experiment with and implement a broad range of algorithms, from classical models to deep learning architectures.

  • Collaborate with product, engineering, and data science teams to integrate ML solutions into Nike’s product creation and merchandising ecosystem.

  • Drive continuous improvement in model performance through rigorous evaluation, error analysis, and optimization.

  • Champion best practices in ML Ops, including CI/CD pipelines, monitoring, and governance.

WHO YOU WILL WORK WITH

You’ll partner closely with peer machine learning engineers, data scientists, and product managers across Consumer Product & Innovation delivery teams. You’ll also collaborate with engineering and platform teams to scale ML solutions globally.

WHAT YOU BRING

  • PhD, Masters or Bachelors degree in Data Science, Applied Statistics, Software Engineering or related field. Will accept any suitable combination of education, experience and training.

  • 8–10+ years of experience in machine learning engineering, with increasing leadership responsibilities (years may vary based on advanced degrees).

  • Proven experience deploying ML models into production environments at scale.

  • Expertise in ML Ops practices, including automation, monitoring, and lifecycle management.

  • Strong foundation in machine learning algorithms and statistical methods, with exposure to a wide range of techniques.

  • Proficiency in Python, SQL, and modern ML frameworks (e.g., TensorFlow, PyTorch, MLFlow, SageMaker).

  • Experience with cloud-based ML platforms and distributed computing tools (e.g., Databricks, PySpark).

  • Ability to mentor and lead technical teams, fostering collaboration and innovation.

  • Excellent communication skills—able to simplify complex concepts for diverse audiences.

  • Advanced degree in Computer Science, Machine Learning, or related field preferred.

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.

预期内容

我们的招聘策略

01 申请

我们的团队拥有多元化的技能组合、知识库、意见、想法和背景。 希望你能找到适合自己的职位,因此请查看职位描述、部门和团队,找到适合你的职位。

02 与招聘人员会面或进行评估

如果被选中担任公司职位,招聘人员将会联系你开启面试流程,并在整个过程中担任你的主要联系人。 如果是零售职位,你需要完成互动式评估,包括聊天和测验,用时约 10 到 20 分钟。 无论担任什么职位,我们都希望充分了解你。因此,请尽情展现你如何提供世界一流的服务以及你的独特之处。

03 面试

从容开启这一阶段,做好充分调查,了解候选人标准并根据个人情况和背景准备可能会被问到的问题。

两个人在户外微笑拥抱