Data Scientist

New York
US$105000 - US$140000 per year

Data Scientist
CPG Company
$105,000-$140,000 + Benefits
Greater New York Area

Do you love analyzing data and delivering insights to improve business practices? Do you enjoy being hands on working with large data sets? Are you a strong statistical modeler? Are you a master of SQL and Python? If you answered yes to these questions than I have just the role you've been looking for!

THE COMPANY:

This is one of the largest CPG companies in the world! Their customer data platform houses over 50 million records and needs your help and guidance on how to leverage this data to increase ROI. This role will require high proficiency on SQL and Python.

THE ROLE:

As a Data Scientist, you will be hands-on building predictive models while to help understand customer behavior in efforts to optimize ROI and increase customer satisfaction.

More specifically, you will be:

  • Collaborating with internal and external teams on products and engineering delivering insights from data analysis
  • Build statistical models and visualizations to analyze and deliver insights on customer behavior
  • Conducting unsupervised analysis on what drives conversion on the site.
  • Help support new consumer technology businesses and partners by generating actionable insights from the company's data assets
  • You will analyze different types of data sets from models like predictive, linear regression, time-series etc. using SQL and Python.

YOUR SKILLS AND EXPERIENCE:

The successful Data Scientist should be/have:

  • Bachelors Degree in a quantitative field such as economics, statistics, or computer science etc.
  • Proficient with SQL for data extraction, having utilized it in a commercial environment
  • Previous commercial experience using Python utilizing statistical modeling techniques
  • 1 year of commercial experience

THE BENEFITS:

As a Data Scientist you will receive a salary $105,000 - $140,000. dependent on experience. On top of the salary, you will also:

  • Receive great health benefits!
  • Get to work with and lead a fantastic team of data scientists!
  • 401k Package
  • Advance your career and grow your skills in a niche data insights field!
  • Build your hands on experience with Python and SQL.

HOW TO APPLY:

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

KEYWORDS:

SQL, Python, Statistical modeling, regression, optimization, linear regression, time series, data extraction, data analytics, consumer analytics, advanced analytics, CPG, retail, customer, segmentation, cluster, propensity

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61426/BS
New York
US$105000 - US$140000 per year
  1. Permanent
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