Senior Paid Search Analyst

Los Angeles, California
US$70000 - US$80000 per year

Senior Paid Search Analyst
Los Angeles, CA
$70-80k

Do you want to work for one of the largest and most recognized independently owned advertising agencies in the US? I have an exciting opportunity for an experienced Paid Search Analyst to join a growing team where you'll be working on one large client for an agency that genuinely put their people first!

ROLE OVERVIEW - SENIOR PAID SEARCH ANALYST

  • Day-to-day management of paid search campaigns including, set-up, launch and optimizations
  • Identify search trends and opportunities to improve campaign performance
  • Draft insights to share with clients in reporting
  • Independently monitor campaign pacing and performance
  • Utilize bid management tools as well as Google, Bing and Yahoo paid search platforms to launch campaigns and implement optimizations
  • Develop keywords and ad copy
  • Pull reporting and analyze data

YOUR SKILLS AND EXPERIENCE

  • 12 months + experience of working within search focused analytics, ideally within an agency environment
  • In-depth skills in Excel, formulas and shortcuts
  • Understanding of paid search best practices, data analysis, forecasting, budget pacing, campaign structure
  • Strong knowledge of media math (e.g. CTR)
  • Familiarity with paid search tools, DS3, Google Analytics, Omniture
  • Experience with conversion tracking and troubleshooting tracking issues
  • Analytical mindset and problem solving ability
  • Ability to prioritize tasks and manage time efficiently

SALARY AND BENEFITS

The successful Paid Search Analyst can expect a salary of $70-80k plus a comprehensive benefits package.

HOW TO APPLY

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

KEYWORDS

Paid Search, Search Marketing, SEM, PPC, Search, Paid Media, Performance Marketing, DS3, DoubleClick, DCM, DBM, Google Analytics, Adobe Analytics, Omniture, data, analysis, budget pacing, campaign, Google, Yahoo, Bing, optimizations, keywords, ad copy, reporting

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JP/47525
Los Angeles, California
US$70000 - US$80000 per year
  1. Permanent
  2. Media Analyst & Adtech

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Using Data & Analytics To Plan Your Perfect Ski Trip

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