Machine Learning Engineer (Causal Inference)
Мэтч & Сопровод
Для мэтча с этой вакансией нужен Plus
Описание вакансии
TL;DR
Machine Learning Engineer (Causal Inference): Designing and building models to quantify causal impact and optimize decision-making for users and advertisers with an accent on uplift modeling and heterogeneous treatment effect estimation. Focus on developing production-ready causal ML solutions and designing complex A/B tests to drive business value.
Location: Hybrid (Must be based in Los Angeles, New York, Palo Alto, or San Francisco); office attendance required 4+ days per week
Company
Technology company operating , focusing on visual communication and empowering people to express themselves.
What you will do
- Design and build models to quantify causal impact and optimize decision-making for users and advertisers.
- Develop and productionize causal ML solutions, including uplift modeling and heterogeneous treatment effect estimation.
- Design, analyze, and interpret A/B tests and quasi-experiments.
- Evaluate technical tradeoffs between model complexity, bias/variance, scalability, and interpretability.
- Build scalable, maintainable infrastructure and maintain high engineering standards through code reviews.
Requirements
- 5+ years of post-Bachelor's experience in machine learning, with hands-on experience in causal inference or experimentation.
- Bachelor’s degree in computer science, statistics, economics, or a related technical field.
- Proficiency in Python and common ML libraries (pandas, NumPy, scikit-learn, CausalML).
- Experience building models to support product decision-making and policy evaluation through causal techniques.
- Experience designing and analyzing online experiments (A/B tests) in production systems.
Nice to have
- Advanced degree (MS/PhD) in a quantitative field such as statistics, data science, or operations research.
- Experience with causal inference libraries like EconML or DoWhy.
- Deep understanding of intent-to-treat (ITT) vs. ghost ad methodologies.
- Expertise in Bayesian inference for decision-making under uncertainty.
Culture & Benefits
- Comprehensive medical coverage and emotional/mental health support programs.
- Paid parental leave.
- Compensation packages that include sharing in the company's long-term success.
- Collaborative "default together" culture with a strong emphasis on in-person interaction.
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