热门公司

Target
Target

Retail company.

Lead Fulfilment Optimization Manager

职能运营
级别Lead级
地点Tower 02, Manyata Embassy Business Park, Racenahali & Nagawara Villages. Outer Ring Rd
方式现场办公
类型全职
发布1个月前
立即申请

About the Role

As a Lead Operations Research on Target’s Fulfillment Optimization Analytics team, you will shape the last mile fulfillment and delivery strategy - where speed, cost, and guest experience collide every day. You’ll identify sales growth opportunities, define placement and positioning strategy, and design decision systems that keep the guest at the center while improving profitability and reliability.

This is a high-impact role working across business, product, and engineering teams to solve complex problems spanning network strategy, delivery promise, service design, order allocation, and dynamic fulfillment decisions. You’ll blend operations research, simulation, and data science to deliver scalable solutions that measurably improve last mile performance.

Key Responsibilities

  • Lead last mile strategy and optimization: Define and optimize delivery strategy (e.g., same-day/next-day options, service levels, coverage, and promise/allocation logic) to drive guest value and business results.

  • Identify growth opportunities: Use data and experimentation to uncover ways to increase sales via improved delivery experience, coverage expansion, and better placement/positioning decisions.

  • Build decision models at scale: Develop optimization, simulation, and forecasting models to solve problems such as delivery zone design, capacity allocation, carrier mix, routing tradeoffs, and service tier decisions.

  • Hypothesis-to-scale execution: Formulate hypotheses, build proof-of-concepts, measure impact with clear success metrics, and scale solutions based on learnings and iteration

  • Guest-centric tradeoff design: Quantify tradeoffs between speed, availability, cost-to-serve, and reliability; recommend clear, actionable strategies grounded in guest outcomes.

  • Run scenario planning and network what-ifs: Execute complex simulations and scenario analyses to evaluate policy changes and operational levers under uncertainty.

  • Translate ambiguity into execution: Frame vague business questions into well-defined analytical problems, propose solution approaches, and deliver end-to-end—from model to recommendation to implementation plan.

  • Drive cross-functional delivery: Build project charters, milestones, and success metrics; align stakeholders; remove blockers; and ensure high-quality delivery with measurable impact.

  • Communicate with influence: Create clear narratives, decision memos, and executive-ready readouts; explain modeling assumptions and risks in a way that drives confident decisions.

  • Raise the OR bar: Mentor others, review technical work, elevate standards for modeling, validation, and operationalization.

What You’ll Work On (Examples)

  • End-to-end cost-to-serve optimization: Decision framework that minimizes total cost to Target per order—pick/pack labour + store/FC handling + delivery/carrier costs + markdowns/cancellations, while meeting promise, capacity constraints, and service-level targets.

  • Order allocation to minimize total cost: Optimize the decision of which node fulfils each order (store vs FC ) by balancing last-mile delivery cost, inventory availability, store workload, and substitution/cancellation risk to reduce overall cost while protecting conversion and guest experience.

  • Capacity planning, dynamic cutoffs, and operational policies

  • Scenario planning for new delivery partnerships, cost structures, and service tiers

About You (Qualifications)

  • 8+ years of professional experience with a Bachelor’s or Master’s in Mathematics, Statistics, Computer Science, Industrial Engineering, Operations Research, or related field

  • 4+ years of hands-on programming experience in Python (plus SQL; Py Spark/R a plus) and building scalable data workflows.

  • 4+ years applying operations research and advanced analytics (optimization, simulation, stochastic modeling, forecasting, causal inference, experimentation).

  • Demonstrated ability to work with large datasets and create robust, production-ready analytical code.

  • Experience applying ML/AI techniques where appropriate (including modern ML frameworks; LLM experience a plus).

  • Strong problem framing skills—able to turn complex, cross-functional ambiguity into solvable models and measurable outcomes.

  • Excellent communication and stakeholder management skills; comfortable influencing senior leaders with data-backed recommendations.

  • Retail, e-commerce, and/or last mile logistics experience strongly preferred.

Core Competencies

  • Optimization (LP/MIP, network flow, heuristics/metaheuristics)

  • Simulation and scenario analysis

  • Forecasting and uncertainty modeling

  • Experimentation and measurement (A/B tests, causal inference)

  • Business strategy + analytical execution with guest-first thinking

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关于Target

Target

Target

Public

Target Corporation, doing business as Target, is an American retail corporation headquartered in Minneapolis, Minnesota, United States. Target operates retail stores. It is the eighth-largest retailer in the United States and is a component of the S&P 500 Index.

10,001+

员工数

Minneapolis

总部位置

$78B

企业估值

评价

10条评价

3.7

10条评价

工作生活平衡

3.2

薪酬

2.8

企业文化

4.1

职业发展

3.5

管理层

4.0

68%

推荐率

优点

Friendly coworkers and great team environment

Flexible scheduling and hours

Supportive and approachable management

缺点

Limited or insufficient hours for part-time staff

Long hours and high stress during peak/holiday seasons

Low pay and non-competitive compensation

薪资范围

50个数据点

Mid/L4

Senior/L5

Mid

Mid/L4 · Lead Analyst S&OP

1份报告

$162,025

年薪总额

基本工资

$125,412

股票

-

奖金

-

$162,025

$162,025

面试评价

46条评价

难度

4.0

/ 5

时长

21-35周

录用率

20%

体验

正面 65%

中性 21%

负面 14%

面试流程

1

Recruiter Screen

2

ML Coding

3

ML System Design

4

Research Discussion

5

Team Interviews

常见问题

ML fundamentals

Design an ML system

Research paper discussion

Statistical concepts