Data Scientist

San Francisco Bay Area

The position listed above is no longer available.

Data Scientist

San Francisco Bay Area
Description:

As one of the first employees at Unlearn, you will have the opportunity to shape the future of how data is used in clinical science and help build a world-class team of computational scientists.

Day-to-day work will include:

  • Building state-of-the-art clinical datasets for multiple diseases.
  • Pioneering new paradigms for working with clinical data.
  • Helping create powerful and robust software libraries for data processing and analysis.
  • Analyzing machine learning models and contributing to novel applications in clinical science and regulatory statistics.
  • Collaborating with internal and external scientists to simulate patient populations and improve drug development.

Qualifications/Requirements

You are an entrepreneurial scientist who wants to build a new approach to clinical science with computation as its foundation.

You’ll likely have:

  • Advanced degree in an experimental or quantitative discipline
  • Industry experience with development in Python
  • Strong knowledge of software paradigms and style
  • Expertise in working with data: cleaning data, building datasets, integrating with machine learning models, performing statistical analysis
  • Excellent communication and collaboration skills
  • The flexibility and adaptability necessary to be an early employee at an ambitious startup
  • Ability to work in the San Francisco Bay Area office

Compensation/Benefits

Unlearn offers competitive benefits and compensation commensurate with experience.

Job Application
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We are committed to building a great company—and that means we’ll need a diverse team with a variety of backgrounds and skills. We strongly encourage applications from women and other groups that are underrepresented in the technology industry.

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