Senior Statistician

New York
US$150000 - US$170000 per year + Equity + Benefits

Senior Statistician
New York, New York
$150,000-170,000 base salary + equity + benefits

One of our top clients in New York City is a fast growing established startup within the medical imaging space. They have seen great success with their niche focus analyzing medical images to speed up diagnoses with greatly increased accuracy. They are the number one analytics provider for one of the largest workers' compensation providers.

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

THE ROLE

  • You will analyze medical images with advanced statistical techniques 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 advanced statistical techniques with access to over 7 years of data.
  • Be part of a modest sized, but expanding team with excellent growth opportunity.

YOUR SKILLS AND EXPERIENCE

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

  • Heavy experience using Python, R, SQL and AWS for predictive modeling and data manipulation
  • 3+ years experience building statistical models
  • Prior experience as a technical leader a plus
  • Knowledge of medical imaging or experience within healthcare preferred
  • Bayesian statistics experience required
  • Experience with longitudinal or causal analysis for healthcare claims analysis
  • PhD in Statistics, Applied Mathematics or similar
  • Machine Learning, Deep Learning or Natural Language Processing experience a plus

THE BENEFITS

A competitive base salary of $150,000-170,000 + equity + benefits depending on experience.


HOW TO APPLY

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


KEYWORDS

Statistician | Python | SQL | AWS | Statistics | Analytics | Healthcare | Startup | Bayesian | Medical Imaging

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37220 VACTJ
New York
US$150000 - US$170000 per year + Equity + Benefits
  1. Permanent
  2. Data science

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The Harnham 2019 Data & Analytics Salary Guide Has Arrived

We are thrilled to announce the launch of our 2019 Data & Analytics Salary Guide. With over 1,500 respondents across the USA, this year’s guide is our largest and most insightful yet.  Looking at your responses, it is overwhelmingly clear that the Data & Analytics industry is continuing to thrive. This has led to an incredibly active market with 72% in the US willing to leave their role for the right opportunity.  Salary expectations remain high, although we’re seeing that candidates, on average, expect 10% more than they actually achieve when moving between roles.  We’ve also seen a change in the reasons people give for leaving a position, with a lack of career progression overtaking an uncompetitive salary as the main reason for seeking a change.   There also remains plenty of room for industry improvement when looking at gender parity; the US market is only 23% female, falling to 17% in Data Engineering roles and 16% in the Data Science space.  In addition to our findings, the guide also include insights into a variety of markets and recommendations for both those hiring, and those seeking a new role.  You can download your copy of the guide here.

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