Senior Analyst, Ad Ops - Music

New York
US$90000 - US$100000 per year + Benefits

Senior Analyst, Ad Ops - Music
New York, NY
$90,000 - $100,000 - Depending on Experience

A worldwide leader in the online streaming space is looking for a Senior Analyst to lead projects that will instantly impact the way people listen to music. The Senior Analyst will be responsible for developing visualizations and analyzing data and is a great step up for an Analyst who has no room for growth.

SENIOR ANALYST, AD OPS - ROLE OVERVIEW

* Analyze and report on listener level data to understand who is interacting with your platforms.
* Track data to find any instances of fraudulent / suspicious activity.
* Create real-time visualizations that will allow your clients to make instant changes that impact ROI.

YOUR SKILLS AND EXPERIENCE

* Previous experience analyzing ad ops / user level digital advertising data is essential
* Experience using a data visualization tool is desirable but can be trained - you will be using Looker.
* Any experience with streaming data is a plus.

SALARY AND BENEFITS

The successful Senior Analyst can expect a salary of $90,000 - $100,000 plus a comprehensive benefits package.

HOW TO APPLY

For more information about the role press "apply now".

KEYWORDS

Streaming, Podcast, Radio, Listener, Player, Dashboard, Looker, PowerBI, Ad Ops, Ad Operations, User Data, Online, Digital Analytics, Business Intelligence, Compliance, Fraud.

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82019/JG1
New York
US$90000 - US$100000 per year + Benefits
  1. Permanent
  2. Media Analyst & Adtech

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