Data Scientist

Scottsdale, Arizona
US$140000 - US$170000 per annum

Data Scientist

Scottsdale, AZ

$140,000-$170,000

This impressive real estate company is taking over the housing market by storm. They are owned by an asset management firm handling over $20b in assets and are acquiring nearly 100 houses per-day.

THE COMPANY

Harnham are partnered with a large real estate firm that provides single-family homes across 17 metro areas. They use data science and alternative data to study ideal properties, for price and revenue management, and for geospatial analysis of new properties.

THE ROLE

  • You will develop advanced machine learning models for demand forecasting, revenue management, and geospatial analysis.
  • You will implement and design code and build out to production using various advanced statistical techniques with access to large amounts of data.
  • Work cross-functionally with experts in the real estate and mortgage markets

YOUR SKILLS AND EXPERIENCE

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

  • Heavy experience using Python, R, AWS, and SQL.
  • Commercial experience building machine learning models in the real estate, private equity, or mortgage space
  • Prior experience with pricing and revenue management
  • Experience with analyzing medium-scale datasets a must
  • MS or Ph.D. in Statistics, Finance, or relevant field

THE BENEFITS

A competitive base salary of $140,000-170,000 plus excellent benefits

HOW TO APPLY

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

KEYWORDS

Machine Learning, Finance, Real Estate, Private Equity, Asset Management, Python, Finance, Financial Services, Mortgage, Mortgages

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75559
Scottsdale, Arizona
US$140000 - US$170000 per annum
  1. Permanent
  2. Data science

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