Amazon.com Services LLC

Data Science, Science, operations

DataScientist,DemandForecasting

$108–160k Bellevue, Washington, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid+ candidates.

The Brief

“Data Scientist, Demand Forecasting at Amazon.com Services LLC. Skills: Demand forecasting, Foundation models, Time series research, Large-scale modeling. Design experiments to evaluate model performance. Lead forecasting model lifecycle”

What You'll Achieve.

Influence hundreds of millions in inventory decisions; Influence labor plans; Influence financial outlook; Advance state of the art

Industry & Context.

Data Science, Science, operations
Problems you'll solve

Root cause analysis; Hypothesis formation; Model iteration

What They're Looking For.

Must Have

1+ years SQL experience, 1+ years Python experience, 2+ years data scientist experience, Bachelor's degree

Nice to Have

Knowledge of statistical packages, Knowledge of business intelligence tools, Experience with clustered data processing, PhD preferred

What You'll Do.

Design experiments to evaluate model performance

Lead forecasting model lifecycle

Define success metrics

Obtain stakeholder sign-off

Measure real-world impact

Develop production-grade models

Deploy production-grade models

Perform large-scale exploratory data analysis

Identify opportunities

Inform model development

Translate research findings

Provide recommendations

Contribute to scientific community

Contribute to research field

How You'll Work.

Team & Collaboration

Cross-functional collaboration; Technical stakeholders; Business partners; Engineering teams; Business teams

Communication Scope

Translate findings; Provide recommendations

Full Job Description

What does it take to build a foundation model that can forecast demand for hundreds of millions of products — including ones that have never been sold before? At Amazon, our Demand Forecasting team is tackling one of the most ambitious challenges in applied time series research: building large-scale foundation models that generalize across an enormous and diverse catalog of products, geographies, and business contexts. This is not incremental modeling work. We are redefining what's possible in demand forecasting. Our team operates at a scale that is unmatched in industry. We run experiments across millions of products simultaneously, pushing the boundaries of what foundation models can learn from vast, heterogeneous time series data. We are also exploring novel data generation techniques that augment our already unprecedented dataset — opening new frontiers in model generalization and forecasting for products with limited or no sales history. The models you build here will ship to production and directly influence hundreds of millions of dollars in automated inventory decisions every week, labor plans for tens of thousands of employees, and Amazon's financial outlook. Beyond operational impact, this team contributes to the broader scientific community and advances the state of the art in time series foundation models. If you are a scientist who wants to work at the frontier of time series research, at a scale no academic lab or startup can match, and see your work deployed to real-world impact — this is the team for you. Key job responsibilities - Design and run rigorous experiments at scale to evaluate and improve foundation model performance across hundreds of millions of products, geographies, and business verticals - Lead the end-to-end lifecycle of forecasting models — from research and experimentation through production launch — including defining success metrics, obtaining stakeholder sign-off, and managing rollout - Conduct online and offline labs to measure

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