Senior Manager, User Insights

New York
Negotiable

Senior Manager, User Insights
Video Games
New York, NY
$165,000 to $185,000

Do you consider yourself a gamer and have a passion for joining an innovative team that is responsible for creating some of the most popular games across the globe? A leading online gaming company is looking for an experienced Senior Manager, User Insights to spearhead the analysis of user behavior as well as the predictive modeling needed to meet business growth in New York.

THE ROLE:

As Senior Manager, User Insights, you will be the Advanced Analytics lead in analyzing large amounts of consumer data and building predictive models to make data-driven recommendations about what games will be popular next. You will be responsible for:

  • Collecting, cleaning, and organizing user data using SQL
  • Performing Predictive Analytics/Modeling (i.e., Decision Trees, Neural Networks, Clustering, Classification) using Python and/or R
  • Serving as a key technical advisor to more junior team members, and working closely with the Data Engineering and Data Science teams
  • Building dashboards/reports using Tableau and delivering insights to senior management

YOUR SKILLS & EXPERIENCE:

  • Extensive, progressive commercial experience in an online gaming capacity
  • Proven experience directly building, managing, and retaining an Analytics team
  • Proficiency in collecting, cleaning, and organizing consumer data using SQL
  • Strong Predictive Modeling experience using Python and/or R
  • Progressive data visualization, dashboarding, and reporting experience using Tableau
  • Strong verbal/written communication & presentation skills across the business
  • Exceptional leadership & collaboration skills with frequent experience working cross-functionally
  • Strong passion for online gaming as well as its systems and products alike
  • Bachelor's degree in Computer Science, Economics, Mathematics, Statistics, or related field; Master's preferred

BENEFITS:

As Senior Manager, User Insights, you can expect to make up to $180,000 base (depending on experience).

HOW TO APPLY:

Please register your interest by sending your resume to George Little via the apply link on this page.

KEYWORDS:

Advanced Analytics, Python, R, SQL, Tableau, Data Visualization, Gaming, Online Gaming, Predictive Analytics, Insights, Predictive Modeling, Decision Trees, Neural Networks, Clustering, Regression, Personalization, User Behavior, Classification, User Data, Consumer Data, Dashboards, Reporting

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65007/GL
New York
Negotiable
  1. Permanent
  2. Customer Insight

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Weekly News Digest - 18th-22nd Jan 2021

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