发布于: May 21, 2026 | 职位编号: R212239

Senior Manager, Product Management – Line Plan & Buy Plan Decision Logic

Full time
Two Folsom, San Francisco, CA, US 94105

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关于Gap集团

我们旗下的品牌在世界上的重要鸿沟之间架设桥梁。Old Navy让时尚触手可及,确保每个人都能获得价廉物美的时尚单品。Athleta致力于释放每一位女性的潜能,不论身材、年龄或种族。Banana Republic相信可持续的奢华体验属于每个人。Gap更是启发了全世界,让所有人通过认真制作的现代服饰必备品展现其独特个性。    

这一简单的想法——即每个人都需要以自己的方式获得归属感——是我们作为一间公司以及制定决策的核心。​我们的团队由成千上万名来自世界各地具有冒险精神、全局视野并为顾客、社区和地球行善的员工组成。如果你具备全局视野,快速学习、无畏创新、大胆领导等品质,欢迎加入我们。

About the Role

The Senior Product Manager, Line Planning & Buy Planning Decision Logic is responsible for making Gap Inc.'s line planning and buy planning applications intelligent. This role sits at the intersection of data science, product delivery, and merchandising — owning how predictive models are shaped, operationalized, and embedded into the workflows that Merchants, Buyers, and Planners rely on every day to build lines and commit to buys.

This is not a role for a PM who hands off to data science and waits. You will be a deep collaborator and co-developer — fluent in how demand forecasting, assortment optimization, buy quantity, and attribute-based line building models work, where they are in their maturity, and what it takes to translate partially-built modeling capability into trustworthy, usable product. You will own how model outputs surface in the application, how users understand and act on recommendations, and how the system learns from override behavior and feedback.

You will serve as the connective tissue between Data Science, Engineering, and the business — ensuring that the intelligence built into the platform is accurate, explainable, and adopted.

What You'll Do

Model Integration & Product Intelligence

  • Own the product strategy for embedding data science models — including demand forecasting, assortment optimization, buy quantity recommendations, and attribute-based line building — directly into Line Planning and Buy Planning application workflows.
  • Partner deeply with Data Science to shape model requirements, define input/output specifications, and drive model development priorities as capabilities move from partial build to production.
  • Define how model outputs are surfaced in the UI: inline recommendations, confidence indicators, explainability layers, and override mechanisms that keep users in control while building trust over time.
  • Establish feedback loops between user behavior (overrides, edits, adoption rates) and model improvement — ensuring the application gets smarter with use.
  • Maintain expert-level understanding of each model in scope: how it works, where it performs well, where it fails, and what business conditions affect its reliability.

Application Product Ownership

  • Define and prioritize the backlog across model integration, UX, and workflow features — balancing user adoption needs with data science delivery timelines and engineering capacity.
  • Write precise user stories, model contracts, and acceptance criteria that hold up across data science, engineering, and business stakeholder reviews.
  • ·Lead UAT in partnership with Merchandising and Buying, designing test scenarios that validate recommendation accuracy, model explainability, and real-world usability under seasonal planning conditions.
  • Ensure production readiness for all model-driven features — including monitoring, QA protocols, and incident response for model degradation or output failures.

Stakeholder Partnership & Adoption

  • Serve as the primary product interface for Merchants, Buyers, and Planners — translating workflow needs into precise model and application requirements, and building confidence in AI-driven recommendations through rigorous delivery and transparent communication.
  • Communicate model confidence levels, known limitations, and data dependencies clearly — helping business partners calibrate when and how to rely on platform intelligence.
  • Drive adoption of new intelligent capabilities through training, embedded support, and change management during go-live periods.
  • Represent Line Planning and Buy Planning Decision Logic in cross-functional forums, ensuring roadmap dependencies with Data Science, Data Engineering, and adjacent P2M capabilities are visible and managed.

Who You Are

  • 8–12+ years of experience in product management, with meaningful depth in data-intensive or AI/ML product environments — ideally in retail, merchandising, or a related planning domain.
  • Demonstrable experience owning products that embed machine learning or data science models into user-facing workflows — not just integrating outputs, but shaping how models are built, validated, and trusted by end users.
  • Deep fluency partnering with Data Science teams — able to engage credibly on model design, feature engineering tradeoffs, confidence and accuracy metrics, and what it means for a model to be production-ready.
  • Strong intuition for model failure modes: you know how to anticipate model drift, training data gaps, edge case degradation, and override pattern abuse — and you build products that surface and handle these gracefully.
  • Experienced defining how AI recommendations are presented to business users — including explainability, confidence signaling, and override mechanics that build trust without undermining adoption.
  • Highly skilled at writing precise product requirements — user stories, model contracts, and acceptance criteria — that hold up across data science, engineering, and business stakeholder reviews.
  • Fluent in translating between technical and business language: equally at home in a model review with Data Science and a seasonal planning session with Buyers or Merchants.
  • Proven track record of shipping model-driven product features in agile environments — managing backlog, sprint execution, UAT, and production readiness with rigor and accountability.
  • Comfortable with ambiguity and able to make sound prioritization calls when model maturity, data quality, and delivery timelines are in tension.
  •  Strong written and verbal communicator who brings transparency to model limitations, data dependencies, and delivery tradeoffs without losing the trust of business or technical partners.
  • Familiarity with retail merchandising, line planning, buying, or assortment planning processes is a meaningful plus — especially understanding how planning decisions are made across the seasonal calendar.
  • Bachelor's degree in Business, Analytics, Data Science, Computer Science, or a related field; advanced degree or equivalent experience a plus.

Gap是一家为员工提供公平竞争环境的集团公司,并致力于打造无骚扰、无歧视的工作场所。 我们致力于招聘、雇佣、培训和提拔各种背景的合格人员,并在不考虑任何受保护身份的情况下做出所有就业决策。我们因长期致力于平等而获奖无数,并将继续营造一个多元、包容且归属感强的环境。今年,我们连续第17年被人权运动组织评选为“最佳工作场所”之一(a href="https://www.hrc.org/resources/best-places-to-work-for-lgbtq-equality-2022"),同时公司还被纳入2021年彭博性别平等指数( ),这也是公司连续第四年被纳入该指数。

Salary Range: $171,800 - $223,400 USD
Employee pay will vary based on factors such as qualifications, experience, skill level, competencies and work location. We will meet minimum wage or minimum of the pay range (whichever is higher) based on city, county and state requirements.

申请

我们会发送申请网站给您,开启您的申请之旅。

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