Amazon Development Centre Canada ULC
Machine Learning Science, Applied Science, Retail
SrAppliedScientist,PrivateBrandsDiscovery
Neural analysis suggests this role is
optimal for Senior candidates.
“Sr Applied Scientist, Private Brands Discovery at Amazon Development Centre Canada ULC. Skills: Machine learning, Applied science, Causal inference, Deep learning. Drive applied science projects end-to-end. Ideate, prototype, and launch ML solutions”
Industry & Context.
Decompose complex problems; Solve tough science problems
What They're Looking For.
Must Have
3+ years ML models business application, PhD or Master's 6+ years applied research, Experience programming Java, C++, Python, Experience neural deep learning methods, Experience machine learning
Nice to Have
Experience modeling tools R, scikit-learn, Spark MLLib, MxNet, Tensorflow, numpy, scipy, Experience large scale distributed systems Hadoop, Spark
What You'll Do.
Drive applied science projects end-to-end
and launch ML solutions
Analyze customer discovery
and purchase behavior
Innovate marketing and merchandising strategies
Propose model and algorithm advancements
Support proposals with arguments and experiments
Invent ways to overcome technical limitations
Enable new forms of analyses
Drive key technical decisions
Drive key business decisions
Present results to leadership
Present reports to leadership
Present data insights to leadership
Critique peer research
Mentor junior scientists
Mentor junior engineers
Innovate Amazon science community
Contribute to external research communities
How You'll Work.
Team & Collaboration
Work with scientists; Work with engineers; Work with business teams; Work with economics teams
Communication Scope
Present results; Present reports; Present data insights
Full Job Description
The Private Brands Discovery team designs innovative machine learning solutions to drive customer awareness for Amazon’s own brands and help customers discover products they love. Private Brands Discovery is an interdisciplinary team of Scientists and Engineers, who incubate and build disruptive solutions using cutting-edge technology to solve some of the toughest science problems at Amazon. To this end, the team employs methods from Natural Language Processing, Deep learning, multi-armed bandits and reinforcement learning, Bayesian Optimization, causal and statistical inference, and econometrics to drive discovery across the customer journey. Our solutions are crucial for the success of Amazon’s own brands and serve as a beacon for discovery solutions across Amazon. This is a high visibility opportunity for someone who wants to have business impact, dive deep into large-scale problems, enable measurable actions on the consumer economy, and work closely with scientists and engineers. As a scientist, you bring business and industry context to science and technology decisions. You set the standard for scientific excellence and make decisions that affect the way we build and integrate algorithms. Your solutions are exemplary in terms of algorithm design, clarity, model structure, efficiency, and extensibility. You tackle intrinsically hard problems, acquiring expertise as needed. You decompose complex problems into straightforward solutions.. With a focus on bias for action, this individual will be able to work equally well with Science, Engineering, Economics and business teams. Key job responsibilities - Experience in causal ML and treatment effect estimation, including methods like propensity scoring, doubly robust estimators, and uplift modeling. Strong background in Python, ML pipelines, and deploying models to production with robust monitoring and evaluation. Familiarity with causal inference frameworks and translating business questions into actionable causal in
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