Programmatic Supervisor

Los Angeles, California
US$90000 - US$100000 per year

Programmatic Supervisor
Los Angeles, CA

Do you want to join one of the countries most well-respected full-service advertising agencies? If so, I have an exciting opportunity to join their rapidly expanding digital media team as their Manager of Programmatic.

ROLE OVERVIEW - PROGRAMMATIC SUPERVISOR

  • Leading programmatic and audience targeting strategy
  • Management and oversight of the team
  • Collaborating with media planning teams on holistic digital media strategy
  • Growing accounts by forging strong relationships with clients, understanding their objectives and recommending best strategies.
  • Brainstorming and implementing quick, rapid-fire tests to maximize spend and KPIs while keeping efforts low

YOUR SKILLS AND EXPERIENCE

  • The position requires excellent knowledge of programmatic platforms (DBM, The Trade Desk, Adobe/TubeMogul, Amazon AAP) and activating audiences via DMPs (Saleforce/Krux, Oracle)
  • Background in paid social from an audience is a plus though not mandatory
  • Have experience managing a team
  • Be an expert in programmatic marketing
  • Regularly and proactively provide updates to the team and client on changes in the programmatic industry with their clear POV
  • Regularly provide regular ROI-driving insights and recommendations based on agreed-upon KPIs
  • Mentor other teammates leveraging this expertise
  • Outstanding troubleshooting, analytical, and problem-solving abilities, along with an ability to collaborate cross-functionally in a get-it-done environment
  • Have effective time management skills - ability to prioritize and meet deadlines
  • Be a self-starter - able to put together a team quickly and tackle new tests and optimizations with little guidance
  • Be able to speak confidently and regularly to senior clients
  • Ability to work within a team environment
  • Strong written communication skills (both verbal and written)

SALARY AND BENEFITS

The successful Manager of Programmatic can expect a salary of $90-110k plus a comprehensive benefits package.

HOW TO APPLY

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

KEYWORDS

DMP, Programmatic, Digital Media, DSP, DBM, DoubleClick, TubeMogul, Sizmek, The Trade Desk, Krux, Oracle, media, RTB

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