DATA SCIENCE MANAGER, DRUG DISCOVERY

Salt Lake City, Utah
US$180000 - US$200000 per annum + bonus, benefits, unlimited vacation

DATA SCIENCE MANAGER

$180-200K + bonus and benefits

Salt Lake City, UT

  • Must have senior/lead machine learning experience
  • Must have people management experience
  • Must have interest in drug discovery

Do you want to be a part of market disruptor that is looking to change the way we approach drug discovery? Have you been leading projects and managing teams and looking for the next step? Then we have an exciting role for you.

THE COMPANY:

Harnham is working with one of the hot and new and growing drug discovery companies in the nation and they are looking to expand their leadership teams. They are heavily invested in using cutting edge technology and have put together world class teams to attack problems that have yet to be solved. This company is set to IPO soon and yet has so much more work to grow into and are only getting started on their revolution.

THE ROLE:

As the Data Science Manager, you are responsible for building machine learning and deep learning teams as well as rolling up your sleeves as needed. You are steering the technical approach as well as supporting the data scientists and scientists in delivering projects and building their skills.

In short you can expect to be:

  • People manage and developing PhD's and data scientists
  • Work closely with senior leadership
  • Advise and roadmap strategy, vision, and deliverables
  • Coding in Python, R, or other machine learning/deep learning packages

QUALIFICATIONS:

  • Industry experience applying deep learning and machine learning to product development
  • Python, Pandas, Numpy, Tensorflow, Deep Learning, Machine Learning
  • PhD in a sciences related field

THE BENEFITS:

The successful machine learning scientist will receive a salary, dependent on experience up to $200K. On top of the salary, add in some fantastic extra benefits the candidates can receive like performance bonus, equity, and unlimited vacation.

HOW TO APPLY:

Please register your interest by sending your CV to Hillary Tran via the Apply link on this page.

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DSManagerRP
Salt Lake City, Utah
US$180000 - US$200000 per annum + bonus, benefits, unlimited vacation
  1. Permanent
  2. Data science

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