Machine Learning Scientist

San Francisco, California
US$140000 - US$150000 per annum

MACHINE LEARNING SCIENTIST

SAN FRANCISCO BAY AREA

$140,000-$150,000

Are you looking for a dynamic opportunity in a biotech company that is bridging the gap between technology and pharmaceuticals? Are you looking to work in a collaborative environment with a constantly growing team? Apply here!

THE COMPANY

This biotech company is a leader in end-to-end drug development and they are looking for a passionate machine learning scientist to help drive forward drug development. This company prides themselves on their innovative technology and the company is looking for a self-starter, who is ready to make an impact in the space.

THE ROLE

As a machine learning scientist, you will be a crucial member of the function of the company.

In specific, you can expect to be involved in the following:

  • Developing new algorithms
  • Conducting research on new algorithms
  • Evaluating algorithm efficacy

YOUR SKILLS AND EXPERIENCE

As a machine learning scientist, you will have the following skills and experience:

  • Ph.D. in computer science or related field
  • Experience using Python, PyTorch, Tensorflow
  • Deep learning experience (convolutional neural networks and/or graph neural networks)

THE BENEFITS

$140,000-$150,000


  • Seniority Level

    Mid-Senior level

  • Industry

    • Biotechnology
  • Employment Type

    Full-time

  • Job Functions

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San Francisco, California
US$140000 - US$150000 per annum
  1. Permanent
  2. Health Informatics

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