Senior Level Supply Chain Analytics Jobs
Senior level supply chain analytics jobs put experienced professionals in charge of modeling strategy, owning analytical frameworks, and leading the teams and projects that drive supply chain decisions. Roles are concentrated across Retail, Manufacturing, and Chemicals & Materials, with a mix of on-site, remote, and hybrid settings, and employers like INFICON, Novolex, and Levi Strauss hiring at this level now.
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See related jobsThe Coca Cola Company is transforming how its North America Supply Chain operates, using digital products to enable a supply chain that moves at the speed of the market. Our work connects planning, sourcing, manufacturing, and fulfillment into a responsive, reliable, and continuously improving network—one that can adapt quickly to change while operating at global scale.
Our product organization is built on small, empowered teams that move with clarity and purpose, making digital a true source of competitive advantage. Data and Analytics are a core partner to Product, Engineering and Design - shaping how decisions are made and value is delivered through insight, experimentation, and measurement. If you’re excited to help build this practice and define from the ground up, we’d love to meet you.
About the Role
The Head of Product Data & Analytics, Supply Chain Digital Enablement (North America) leads the data discipline within the Product organization, overseeing the analysts and data scientists embedded in empowered product teams. This leader is responsible for how teams use data to understand behavior, measure progress, experiment confidently, and discover new opportunities.
You will build and scale a modern product insights capability that brings together analytics, data science, experimentation, instrumentation, and decision support. You will ensure teams move from opinion-driven to evidence-informed, while partnering closely with Design and Research to connect what users do with why they do it.
This role is deeply cross-functional. You will work alongside Product, Design, and Engineering leaders to define metrics, build measurement frameworks, instrument features, run experiments, and develop models that create both internal insight and customer-facing value.
Responsibilities
Build and lead the Data & Analytics practice
Hire, develop, and lead analysts, data scientists, and experimentation specialists embedded in product teams
Define roles, standards, and career paths for analytics and data science
Create a culture rooted in curiosity, rigor, and clear storytelling
Make data foundational to product discovery and delivery
Ensure teams use data to understand behavior, measure outcomes, and evaluate ideas
Guide the use of experiments, prototypes, and causal analysis to reduce risk
Enable product leaders to shift from feature roadmaps to outcome-based KPIs and scorecards
Define measurement, instrumentation, and experimentation
Establish KPIs, guardrails, and leading indicators for each product area, including service levels, forecast accuracy, throughput, inventory health, and cost‑to‑serve
Operationalize experimentation practices including A/B tests, holdouts, and causal inference
Ensure products are instrumented correctly so teams are never “flying blind”
Lead core product analytics capabilities
Oversee user analytics, customer analytics, funnels, cohorts, and retention analyses
Guide business and product economics analytics such as LTV, churn, and unit economics
Ensure data quality, accuracy, and usability across platforms
Develop and apply data science for insight and customer value
Guide segmentation, forecasting, clustering, and propensity modeling
Partner with product and engineering to embed predictive and adaptive models into product experiences
Ensure ML models are monitored, evaluated, and continuously improved
Elevate data capability across the organization
Coach PMs, designers, and engineers to be confident, data-literate decision-makers
Promote experimentation and analytics as routine parts of product work
Scale learnings and insights across the organization to build shared knowledge
Influence product strategy and portfolio decisions
Size opportunities, prioritize bets, and guide investment decisions using data
Provide scenario modeling and forecasting for portfolio sequencing
Represent the data and insights perspective in senior forums
Key Qualifications
10+ years of experience in analytics, data science, or related fields, with at least five years leading teams in digital product environments
Bachelor's degree in data science, statistics, economics, computer science, or related field
Experience embedding analysts and/or data scientists within cross-functional product or engineering teams
Strong foundation in product analytics including behavioral data, funnels, cohorts, and retention
Deep experience with experimentation including A/B testing, test design, and interpretation
Familiarity with data science techniques such as clustering, regression, propensity modeling, and recommendations
Fluency with modern data platforms including warehouses, event tracking, BI tools, and experimentation frameworks
Ability to translate complex analyses into clear, actionable insights for product and executive audiences
Strong collaboration and influence skills across Product, Engineering, and Design
Preferred Qualifications
Advanced degree in data science, statistics, economics, computer science, or a related field preferred.
Experience building or scaling data and analytics within empowered product team models
Background applying causal inference or quasi-experimental methods in real-world environments
Exposure to embedding ML models into customer-facing products
Familiarity with AI and agentic systems as accelerators for analysis or modeling
Skills
Analytical rigor: Applies strong statistical and analytical judgment to define, measure, and interpret product outcomes with clarity and precision.
Product and systems thinking: Connects data, behavior, and business goals; understands how metrics and models influence decisions across journeys, platforms, and teams.
Experimentation expertise: Designs and governs experiments that produce reliable, decision-ready evidence and helps teams reduce risk and accelerate learning.
Data science fluency: Guides analysts and data scientists in applying advanced techniques such as segmentation, forecasting, clustering, and recommendations to deliver insight and customer value.
Insight storytelling and influence: Translates complex analyses into clear, compelling narratives that shape strategy, inform decisions, and align cross-functional stakeholders.
Team leadership and capability building: Develops, coaches, and elevates analysts and data scientists; builds a culture of curiosity, rigor, and shared ownership of outcomes across product teams.
Pay Range:
United States of America: 217,400 USD - 245,300 USDBase pay offered may vary depending on geography, job-related knowledge, skills, and experience. A full range of medical, financial, and/or other benefits, dependent on the position, is offered.
Annual Incentive Reference Value Percentage:
50Annual Incentive reference value is a market-based competitive value for your role. It falls in the middle of the range for your role, indicating performance at target.
Long-term Incentive Reference Value Percentage:
20Long-term Incentive reference value is a market-based competitive value for your role.
Location(s):
United States of AmericaCity/Cities:
AtlantaTravel Required:
00% - 25%Relocation Provided:
YesJob Posting End Date:
July 3, 2026Our Purpose and Growth Culture:
We are taking deliberate action to nurture an inclusive culture that is grounded in our company purpose, to refresh the world and make a difference. We act with a growth mindset, take an expansive approach to what’s possible and believe in continuous learning to improve our business and ourselves. We focus on four key behaviors – curious, empowered, inclusive and agile – and value how we work as much as what we achieve. We believe that our culture is one of the reasons our company continues to thrive after 130+ years. Visit Our Purpose and Vision to learn more about these behaviors and how you can bring them to life in your next role at Coca-Cola.
We are an Equal Opportunity Employer and do not discriminate against any employee or applicant for employment because of race, color, sex, age, national origin, religion, sexual orientation, gender identity and/or expression, status as a veteran, and basis of disability or any other federal, state or local protected class. When we collect your personal information as part of a job application or offer of employment, we do so in accordance with industry standards and best practices and in compliance with applicable privacy laws.Pay Range:United States of America: 0 USD - 0 USD
Base pay offered may vary depending on geography, job-related knowledge, skills, and experience. A full range of medical, financial, and/or other benefits, dependent on the position, is offered.
Annual Incentive Reference Value Percentage:50
Annual Incentive reference value is a market-based competitive value for your role. It falls in the middle of the range for your role, indicating performance at target.
Long-term Incentive Reference Value Percentage:20
Long-term Incentive reference value is a market-based competitive value for your role.
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Find JobsSenior Level Supply Chain Analytics Job Market
Who's Hiring
- INFICON1
- Novolex1
- Levi Strauss1
- ZS Associates1
- The Coca-Cola Company1
Top Industries Hiring
- Retail1
- Manufacturing1
- Chemicals & Materials1
- Consulting & Professional Services1
Senior Level Supply Chain Analytics Jobs: Frequently Asked Questions
How do I get a senior level supply chain analytics job?
Employers at this level look for candidates who can own an end-to-end analytics workstream, not just contribute to one. Demonstrated experience building forecasting models, leading cross-functional projects, and translating data into supply chain decisions gives candidates a clear edge. A portfolio of measurable outcomes, such as inventory reductions or service-level improvements you led, carries more weight than credentials alone.
Which companies hire senior level supply chain analyticss?
Companies hiring senior level supply chain analyticss right now include INFICON, Novolex, and Levi Strauss, based on current listings on Migrate Mate as of June 2026. Hiring at this level tends to concentrate in large manufacturers, retailers, and logistics firms with complex, high-volume supply chains that require dedicated senior analytical leadership.
Are there remote senior level supply chain analytics jobs?
Yes, though availability varies by employer and function. About 50% of senior level supply chain analytics openings are remote or hybrid as of June 2026, reflecting broader flexibility in analytics-focused roles. Positions tied to physical operations or warehouse systems are more likely to require on-site presence, while strategy and modeling roles tend to offer more location flexibility.
What makes a supply chain analytics role senior level?
Senior level roles are defined by ownership and scope. You're expected to design analytical frameworks from the ground up, set direction for how data informs supply chain strategy, and mentor junior analysts on the team. The work shifts from executing analysis to shaping what gets analyzed, why, and how the findings influence business decisions across procurement, logistics, or inventory planning.
Which industries hire the most senior level supply chain analyticss?
Senior Level supply chain analytics roles concentrate in Retail, Manufacturing, and Chemicals & Materials, based on current listings on Migrate Mate as of June 2026. These sectors drive demand at the senior level because their supply chains are large enough and complex enough to require dedicated analytical leadership rather than generalist operations support.