Amazon.com Services LLC

Machine Learning Science, Science, north america stores

Manager,DataScience,OutboundCommunications

$175–237k Seattle, Washington, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Manager candidates.

The Brief

“Manager, Data Science, Outbound Communications at Amazon.com Services LLC. Skills: Data Science, Machine Learning, AI, Business Intelligence. Optimize inbox management. Personalize frequency”

What You'll Achieve.

Improve incrementality; Improve performance; Drive intended behavior; Enhance self-serve analytics; Automate WBR preparation; Build anomaly detection; Measure ROI

Industry & Context.

Machine Learning Science, Science, north america stores
Problems you'll solve

Data-driven decision making

What They're Looking For.

Must Have

5+ years quantitative solutions, 2+ years management experience, 5+ years statistical models, Master's degree quantitative field, Knowledge of Python or R

Nice to Have

Experience in ML (NLP, Regression, Classification, Clustering, or Anomaly Detection), Experience with fairness in ML/AI, Cloud platform certs

What You'll Do.

Optimize inbox management

Personalize frequency

Personalize send-time

Personalize relevance bar

Design large-scale experiments

Execute multi-arm elasticity tests

Measure incrementality

Drive development of HVA propensity models

Drive AI-based transformation

Enhance self-serve analytics

Automate WBR preparation

Build anomaly detection

Own financial planning frameworks

How You'll Work.

Team & Collaboration

Applied scientists; Data scientists; Business intelligence engineers; Engineering teams; Product teams; Marketing teams; Partner science teams

Process & Methodology

Roadmap planning

Full Job Description

Are you passionate about using data science and machine learning to optimize how hundreds of millions of customers experience communications from the world's most customer-centric company? Join the Outbound Communications Intelligence team at Amazon, where you will lead the development of scalable/robust advanced AI based methods like LLMs and RL to personalize the relevance, frequency and timing of messages across push, email, WhatsApp, and SMS channels reaching 250M+ global customers every week. You will lead the insights arm to build highly accurate and world-class self-service analytics solutions that guide the short- and long-term investments for the business. Key job responsibilities You will lead applied scientists, data scientists and business intelligence engineers to: - Optimize Outbound's inbox management and planning system to personalize frequency, send-time and relevance bar of our messages to customers. - Design and execute large-scale experiments such as multi-arm elasticity tests or RCTs to measure and improve incrementality/performance of our models. - Drive development of HVA propensity models (opt-out, purchase, etc.) to drive intended behavior of customers to their next stage of shopping and engagement with Amazon. - Drive AI-based transformation in data accuracy and reporting: migrating and enhancing the self-serve analytics capabilities developed by the team, automating WBR preparation, building anomaly detection, etc. - Own financial planning frameworks for outbound performance including QxG/HVE forecasting and ROI measurement for paid channel investments. In addition, you will: - Hire, develop, and mentor scientists and BIEs while partnering cross-functionally with engineering, product, marketing, and partner science teams (CBA, P13N, CFV) to productionize solutions at scale. - Create, align and evolve your team's roadmap by prioritizing across multiple competing priorities using high judgement decisions. Basic Qualifications: - 5+ years of

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