Amazon.com Services LLC
Applied Science, north america stores
AppliedScientist,PricingScience
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Applied Scientist, Pricing Science at Amazon.com Services LLC. Skills: Causal inference, Machine learning, Pricing science. Build causal ML pipelines. Design causal estimation models”
What You'll Achieve.
Changes in LTV estimates; Pricing errors avoided; Economists can use built tools
Industry & Context.
Optimization anomaly investigation; Trace model input gap; Trace unmodeled dynamic
What They're Looking For.
Must Have
Master's degree and 4+ years experience, Experience programming in Java, C++, Python, Experience in algorithms and data structures, Experience in parsing, Experience in numerical optimization, Experience in data mining, Experience in parallel and distributed computing, Experience in high-performance computing
Nice to Have
PhD, Experience using Unix/Linux, Experience in professional software development, Usage of generative AI tools, Willingness to learn AI prompting, Ability to recognize AI opportunities
What You'll Do.
Build causal ML pipelines
Design causal estimation models
Train causal estimation models
Evaluate causal estimation models
Deploy causal estimation models
Own science on heterogeneous treatment effects
Support pricing experiment analysis
Contribute causal analysis methodology
Build reusable tooling for economists
Connect model outputs to business outcomes
Define business metric per model
Deliver model evaluation reports
Evaluate novel techniques
Assess applicability of emerging methods
Write internal methodology proposals
Write internal documentation
Write methodology papers
Make pipelines extensible
Document pipelines for scientists
Collaborate across disciplines
Partner with Sr. Economist
Align with SDE and DE partners
Align with PMs on experiment design
How You'll Work.
Team & Collaboration
Economists; Engineers; Sr. Economist; SDE partners; DE partners; PMs; Experimentation platform team
Communication Scope
Methodology papers; Science proposal
Full Job Description
Pricing is one of the most consequential decisions Amazon makes — and the science behind it needs to be causally rigorous, not just predictive. The P2 Optimization Science (P2OS) team builds the machine learning systems that power Amazon's pricing decisions at scale: demand lift models, customer lifetime value frameworks, and the experimentation infrastructure that validates whether our pricing changes actually work. We're hiring an Applied Scientist to own causal inference at the intersection of ML and pricing experimentation. This role exists because our team has identified a real gap: the methodological bridge between econometric analysis (owned by our economists) and production-scale ML pipelines (owned by our engineers) needs a practitioner who lives in both worlds. You'll build CATE estimation models, design analysis workflows for pricing weblabs, and develop the reusable causal ML infrastructure that the broader team — including non-ML scientists — can rely on. This is not a research role. The bias here is toward shipping production-quality causal pipelines with real downstream business impact. You'll measure success by what changes in LTV estimates, what pricing errors your models help avoid, and whether the economists on your team can actually use what you build. If you're a scientist who wants to work on hard causal identification problems in a high-stakes production environment — and who finds satisfaction in making rigorous methods accessible to a broader team — this role is for you. Key job responsibilities * Build causal ML pipelines for pricing — Design, train, evaluate, and deploy end-to-end causal estimation models for pricing use cases. * Own the science on heterogeneous treatment effects — Be the team SME on causal ML methodology: identification strategies, model selection, evaluation standards, and the tradeoffs between econometric and ML approaches to causal estimation. * Support pricing experiment analysis — Contribute causal analysis methodolo
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