Staff Scientist - Reservations

Uber Uber · Consumer · Seattle, WA · Data Science

The Reservations data science team at Uber is seeking a Staff Scientist to own the experience and algorithms powering the Uber Reserve Product. This role involves optimizing user experience, matching, dispatch, and pricing algorithms by transitioning from heuristic-based decision making to building and deploying machine learning models. The focus is on driving efficiency, improving unit economics, and increasing adoption and growth through data science methodologies, causal inference, large-scale experiments, and presenting findings to executive audiences. The role requires strong programming skills, MLOps practices, and experience in experimental design and analysis.

What you'd actually do

  1. Deploy a wide variety of methodologies, including causal inference techniques, funnel analyses, and econometric modeling to identify our largest business opportunities.
  2. Work together with Product, Operations, and Engineering partners to design a roadmap of features and initiatives as well as the long-term team strategy.
  3. Run large scale experiments to validate the impact of new features.
  4. Present findings to business and executive audiences

Skills

Required

  • Ph.D., M.S. or Bachelor's degree in Statistics, Economics, Mathemathics, Computer Science, Machine Learning, Operations Research, or other quantitative fields.
  • 6+ years of industry experience as an Applied or Data Scientist or equivalent.
  • Proficiency in programming languages (Python, Java, Scala)
  • ML frameworks (TensorFlow, PyTorch, Scikit-Learn)
  • MLOps practices, including design documentation, testing, and source code management with Git.
  • Agile project management capabilities, adept at using tools like JIRA
  • Advanced skills in the development and deployment of large-scale ML models
  • Experience in experimental design and analysis (e.g., A/B and market-level experiments), causal inference.
  • Strong business and product sense

Nice to have

  • Strong experience in causal inference, optimization, and machine learning.
  • Experience in algorithm development and prototyping. Particularly in Pricing domain.
  • Ability to drive clarity on the best modeling or analytic solution for a business objective
  • Expertise in causal inference, A/B testing designs, multivariate testing, and other advanced analytical methods.
  • Experience in designing highly scalable, resilient systems for customer-facing applications and familiarity with optimization techniques.
  • Design, develop, productionize, and operate econometric models, experiments, and frameworks to assess challenging causal problems such as product incrementality and long-term value
  • Propose, design, and analyze large scale online experiments
  • Build statistical, optimization, and machine learning models for a range of applications.
  • Design and execute product experiments and interpret the results to draw detailed and actionable conclusions.
  • Knowledge of advertising targeting and measurement solutions, digital marketing analytics tools, and specific technologies such as GCP, BQ, and Elastic/SOLR/Vector Search.
  • Collaborate with cross-functional teams across disciplines such as product, engineering, operations, and marketing to drive system development end-to-end from ideation to productionization

What the JD emphasized

  • productionize
  • productionization
  • large-scale ML models
  • large scale experiments
  • large scale online experiments

Other signals

  • building machine learning models to make key decisions in real time
  • design, develop, productionize, and operate econometric models, experiments, and frameworks
  • Build statistical, optimization, and machine learning models for a range of applications