Principal Data Scientist

New York
US$190000 - US$200000 per year + Bonus + Benefits

Principal Data Scientist
New York, New York
$190,000 - $200,000 base salary + benefits

One of our fastest growing clients in New York City is looking to expand their strong Data Science team. They have seen great success within healthcare focusing on multiple areas of need. They are one of the leaders within the space and because of their rapid growth rate, opportunities are endless

They need an experienced Data Scientist to come on and be the technical leader for their expanding team.

THE ROLE

  • You will analyze medical images with Machine Learning to develop better tools for understanding diagnoses.
  • You will report directly into the VP of Analytics and work closely on business strategy.
  • You will implement and design code and build out to production using various Machine Learning techniques with access to tons of healthcare data.
  • Be part of a fast growing team with excellent growth opportunity.

YOUR SKILLS AND EXPERIENCE

The successful Principal Data Scientist will likely have the following skills and experience:

  • Heavy experience using Python, R, SQL and AWS for predictive modeling and data manipulation
  • Big Data Experience desired
  • Strong statistical understanding, building models with Machine Learning
  • Prior experience leading a Data Science team desired
  • Effective communicator with clients, junior team members and stakeholders
  • Healthcare experience preferred
  • Master's degree in Computer Science or similar field, PhD a plus
  • Deep Learning or Natural Language Processing experience a plus

THE BENEFITS

A competitive base salary of $190,000 - $200,000 + bonus + benefits.


HOW TO APPLY

Please register your interest by sending your résumé to Tim Jonas via the Apply link on this page.


KEYWORDS

Machine Learning | Python | SQL | AWS | Data Science | Analytics | Healthcare | Big Data | Health

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34482 VACTJ
New York
US$190000 - US$200000 per year + Bonus + Benefits
  1. Permanent
  2. Data science

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