Staff Data Scientist (Remote)

Remote Full TimeUnited States (Remote)Tilt Finance

Join Tilt, a remote-first company, as a Staff Data Scientist to develop machine learning models and drive business growth. Collaborate with cross-functional teams to improve credit risk models and customer experience. Expect competitive pay, flexible health plans, and substantial subsidies.

Requirements

  • BS degree in engineering, computer science, finance or mathematics
  • 6+ years industry experience in data mining, machine learning, statistical analysis, and/or predictive modeling
  • Deep understanding of statistics and machine learning techniques, including regression, classification, clustering and optimization
  • Experience building predictive models from scratch
  • Strong programming skills in Python with intermediate to advanced knowledge of SQL
  • Demonstrable experience with ML packages: scikit-learn, LightGBM, XGBoost, SparkML, etc.
  • Knowledge in deep learning and experience with DL toolkits (Tensorflow, Keras, PyTorch) is preferred though not required
  • Comfort working with a variety of cross functional partners in tech, product, credit, and business
  • Exceptionally strong problem solving and communication with the ability to both get in the weeds and communicate to an executive audience

Benefits

  • Competitive pay
  • Flexible health plans at every premium level
  • Substantial subsidies
  • Virtual-first teamwork
  • Paid global onsites
  • Impact is recognized
  • Growth opportunities follow your contributions

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