NIKE, Inc.チームの 一員になる

NIKE, Inc.は、世界トップクラスのアスリートたちにウェアやシューズを提供しているだけではありません。スポーツの未来を創るために、情熱を持った人々が集う場所でもあります。私たちは、自分たちの信念と目標を臆することなく貫きます。世界中のすべてのアスリート*を鼓舞し、イノベーションをもたらすために。そして私たちは、限界を押し広げ、可能性を引き上げ、さらなる高みへと導いてくれるアスリートを求めています。次世代のトレンドセッター、プレーメーカー、リスクテイカー、そしてチームをつなぐプレーヤーの皆さん。準備は良いですか?

WHO YOU’LL WORK WITH

You will partner with globally distributed engineering, product, and program teams to ensure that the ecosystem of services remains loosely coupled, independently scalable, and aligned with business needs. You will work with your peers to develop key innovation features and report to the Engineering Manager for Marketing Technology.

WHO WE ARE LOOKING FOR

We are seeking a Senior Data Scientist who will drive advanced analytics, predictive modeling, and machine learning solutions across Marketing Technology’s global digital and enterprise ecosystem. You bring deep technical expertise combined with business acumen, enabling you to translate complex data into actionable insights and high-impact models. You thrive in ambiguous environments, collaborate naturally with cross-functional partners, and elevate data maturity through innovation, quality, and thoughtful leadership.

Skillset Required

  • Bachelor’s degree in related field. Will accept any suitable combination of education, experience and training.

  • 5+ years of experience in data science, machine learning, applied statistics, or advanced analytics.

  • Strong experience with customer, marketing, and digital analytics domains, including segmentation, personalization, propensity modeling, churn prediction, customer lifetime value (CLV/LTV), attribution, media measurement, and audience targeting.

  • Strong proficiency in Python, SQL, and ML frameworks (e.g., scikit-learn, TensorFlow, PyTorch, XGBoost).

  • Experience with Generative AI, LLMs, RAG architectures, AI agents, prompt engineering, and model evaluation frameworks, including responsible AI considerations.

  • Experience deploying ML models into production environments and working with cloud platforms (AWS, Azure, or GCP), Databricks ML, MLflow, Spark, Delta Lake, Snowpark, and Vector Databases.

  • Expertise in predictive modeling, optimization, experimentation, and advanced statistical methods.

  • Strong understanding of data engineering concepts, feature stores, and ML Ops principles.

  • Familiar with Databricks, Snowflake and other database foundational tools.

  • Experience with visualization tools and storytelling for technical and non-technical audiences.

  • Ability to work cross-functionally, influence stakeholders, and translate complex analysis into actionable strategies.

  • Strong communication skills, curiosity, ownership mindset, and commitment to quality.

WHAT YOU’LL WORK ON

  • Build and evolve membership intelligence, audience targeting, personalization, and consumer decisioning capabilities across marketing channels.

  • Develop AI-powered marketing intelligence solutions, including audience recommendations, content optimization, and campaign effectiveness measurement.

  • Lead the design of LLM and Generative AI use cases within Martech, ensuring scalable, secure, and measurable business outcomes.

  • Drive adoption of AI-native data science practices and establish best practices for model governance, evaluation, and operational excellence.

  • Build a better practice around our marketing targeting intelligence and able to manage of targeting / data science models used from membership (lifecycle/churn/LTV/affinities) for advertising and comms.

  • Develop, deploy, and maintain machine learning models that accelerate decision-making across product, marketplace, consumer, and operational teams.

  • Partner with engineering, analytics, and product teams to build scalable data science pipelines and integrate models into production environments.

  • Conduct exploratory analysis, identify meaningful patterns, and translate findings into clear narratives and recommendations.

  • Ensure model quality through rigorous testing, validation, drift monitoring, and performance measurement.

  • Drive experimentation frameworks, A/B testing design, and causal inference models to inform product and business strategy.

  • Collaborate with Nike Technology partners to align with enterprise data, ML, and platform standards.

  • Mentor junior and mid-level data scientists and analysts, fostering excellence in modeling, coding, and problem-solving.

  • Evaluate new tools, frameworks, and techniques; lead proofs of concept and guide strategic adoption of data science capabilities.

今後の予定

私たちの採用プロセス

01 応募

私たちのチームは、多様なスキルセット、知識、意見、アイデア、バックグラウンドを持つメンバーで構成されています。 職務内容、部門、チームを確認して、自分に合った役割を見つけましょう。

02 採用担当者に会う、または評価を受ける

コーポレートの職務を選んだ場合、面接プロセスを開始するために採用担当者が連絡を取り、面接が終了するまでの間、あなたの主な窓口となります。 リテール職の場合は、チャットとクイズを含む対話型の評価を行うことになります。所要時間は約10~20分です。 職務に関わらず、私たちは皆さんの人となりを知りたいと思っています。世界トップクラスのサービスに対する考え方や、あなたの独自性について遠慮なく話してください。

03 面接

Nikeについて調べ、Nikeが何を求めているのかを理解し、あなたの人となりや経歴について詳しく知るために設定された質問に答えられるよう準備し、自信を持ってこのステージに臨んでください。

屋外で笑顔で抱き合う 2 人