Staff Data Scientist (fraud, Risk)

Uber Uber · Consumer · Sao Paulo, Brazil · Data Science

Uber is seeking a Staff Data Scientist for their Global Safety & Risk Team in Sao Paulo, Brazil. The role focuses on applying data analysis, machine learning, and statistical modeling to identify and prevent safety incidents. Key responsibilities include analyzing imbalanced datasets, designing and implementing binary classification models, generating insights from risk data, conducting complex experiments (Diff-in-Diff, Synthetic Controls), and defining success metrics. The role requires experience in building and deploying binary classification systems for high-stakes applications, experimental design beyond A/B testing, handling extreme class imbalance, and proficiency in Python and SQL. Experience with geospatial data analysis and real-time inference systems is preferred.

What you'd actually do

  1. Conduct thorough analyses of large, imbalanced datasets to identify trends, patterns, and opportunities for improving safety incident detection.
  2. Design, implement, and optimize binary classification models and algorithms to predict the probability of high-severity incidents.
  3. Generate actionable insights from risk data and communicate findings to stakeholders, balancing safety interventions with marketplace growth.
  4. Work as a thought expert for your cross-functional partners (Product, Ops, and Engineering), pushing the boundaries of how Uber defines and mitigates risk.
  5. Design complex experiments (Diff-in-Diff, Synthetic Controls) and interpret results to draw impactful conclusions in a marketplace environment where classical A/B testing is often not feasible.

Skills

Required

  • Python
  • SQL
  • Binary Classification systems
  • Experimental Design
  • Quasi-experiments
  • Marketplace experiments
  • Extreme Class Imbalance
  • Statistical Methodologies
  • probability calibration
  • sampling
  • hypothesis testing

Nice to have

  • Geospatial data analysis
  • Real-time Inference systems
  • Causal Inference

What the JD emphasized

  • binary classification models
  • safety incident detection
  • risk mitigation
  • imbalanced datasets
  • Extreme Class Imbalance
  • high-stakes applications
  • Experimental Design
  • Quasi-experiments
  • Causal Inference

Other signals

  • fraud detection
  • risk mitigation
  • safety incident detection
  • predictive modeling
  • real-time risk systems
  • binary classification models
  • causal inference
  • experimental design
  • anomaly detection
  • supervised learning