Lead Data Analyst

New York
US$150000 - US$200000 per annum

Lead Data Analyst
Electronics
New York City
$150,000-200,000

Are you passionate about gaming? If you consider yourself a gamer and want to join one of the largest entertainment companies within the gaming industry, this could be the next step in your career. This company is looking to add a Lead Data Analyst to their team.

THE ROLE: Lead Data Analyst

As the Lead Data Analyst, you will be analyzing the behavior of gamers while you yourself are also playing the game. You will be responsible for predicting what gamers are going to do and what gamers like in order for the business to be able to make smarter decisions in the future. Your responsibilities will include:

  • Leading a team of Sr Analysts
  • Effectively be able to translate data analysis into recommendations for senior leaders
  • Combine data-driven insights with your gaming experience to provide
  • Be able to participate in the video game that is being analyzed

YOUR SKILLS AND EXPERTISE:

  • Previous experience in a management role
  • Previous experience in a gaming background
  • Well versed in SQL and Tableau, Python and R a bonus but not required
  • Advanced in Predictive Modelling

SALARY AND BENEFITS:

  • $150,000-200,000
  • Generous benefits package

HOW TO APPLY

  • Please register your interest by sending your resume to Olivia Jones via the Apply link on this page.

KEYWORDS

Gaming, Analytics, Gamer, Entertainment, Data, Analyst, Analyzing, Behavior, Predicting, SQL, Tableau, Python, R, Modelling

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96521/OJ111100
New York
US$150000 - US$200000 per annum
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Harnham blog & news

With over 10 years experience working solely in the Data & Analytics sector our consultants are able to offer detailed insights into the industry.

Visit our Blogs & News portal or check out our recent posts below.

Weekly News Digest: 22nd - 26th Feb 2021

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Why You Should Always Be Learning In Data Science: Tips From Kevin Tran

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