machine learningengineersoftware engineering
Role details
Job location
Tech stack
Job description
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Develop a deep, nuanced understanding of the Pinterest ads delivery, quantifying full funnel opportunities and risks.
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Lead projects on:
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Pinner LTV
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Tradeoff between ads and organic engagement
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Ads Delivery opportunities across different funnel stages
Design and productionize robust, scalable ML and evaluation frameworks-spanning forecasting, recommendation, and causal inference.
Advocate for best-in-class experimentation, instrumentation, and metric design; bridge the gap between short-term proxy metrics and long-term business impact.
Collaborate across disciplines-Product, Engineering, Research, Business, and Design-translating complex data questions into actionable business insights.
Mentor and guide junior and senior scientists, fostering intellectual curiosity and driving technical excellence., * We recognize that the ideal environment for work is situational and may differ across departments. What this looks like day-to-day can vary based on the needs of each organization or role.
- This role will need to be in the office for in-person collaboration 1-2 times/quarter and therefore can be situated anywhere in the country.
Requirements
- 10+ years of hands-on experience in web-scale data environments, with a track record of solving hard, ambiguous problems in product, engagement, or ecosystem analytics.
- Bachelor's/Master's degree in a relevant field such as Computer Science, or equivalent experience.
- Deep expertise in: Machine Learning (recommendation, ranking, prediction, experimentation), Statistical Modeling & Causal Inference (observational and experimental data), Product analytics/strategy (beyond dashboards: root cause, goaling, design collaboration), Programming in Python/R and advanced SQL/Spark.
- Strong product intuition-ability to scope, question, and design the right solutions for ill-defined, high-impact business problems.
- Scientific rigor and healthy skepticism: You challenge assumptions, find flaws, and drive towards robust, reproducible outcomes.
- Exceptional communication: You make the complex simple, and can influence both technical and non-technical audiences.
- Track record mentoring and growing data talent at the staff/senior IC level.
- Cross-functional leadership and the ability to align competing interests towards shared goals.