Group Manager - Marketing Analytics

San Francisco, California
US$200 - US$220 per annum + Bonus, Equity, Benefits

TITLE: Group Manager - Marketing Analytics

LOCATION: Los Angeles or San Francisco, CA

COMPENSATION: Base $200,000 - $220,000 plus bonus and equity


THE COMPANY:

A leading financial software company is looking to add a Group Manager to their Marketing Analytics team. If you are looking for an organization that puts technology and innovation first, this is the place for you.

THE ROLE:

You will be responsible for driving Strategy Analytics, Market Analytics and Segment specific customer analytics to tell the full potential and performance of marketing to senior management. You will work closely with the VP of Marketing, reporting on channel performance insights and marketing sciences tools.

Your team of data scientists and analysts will work to provide recommendations on performance and optimization, requiring a deep knowledge of digital and media ecosystems.

You will directly influence marketing to make better decisions in areas such as marketing mix, pricing impacts on acquisition, forecasting and predictive models for improving acquisition CPA's

YOUR SKILLS AND EXPERIENCE:

  • Degree in Quantitative field is required
  • Proven Experience leading Strategy analytics, analytics in consulting orgs and drafting insights from marketing analytics tools such as MMM and MTA
  • Very Strong Powerpoint, Excel and MS tools
  • Proven experience in leading a team of strategy analysts and/or scientists including the hiring, onboarding, and development of the analysts and scientists on the team
  • Strong experience in leading strategic analytics functions preferably coming from fast paced tech orgs, start-ups and/or consulting companies
  • Strong experience in building optimization tools and experiments for paid media
  • Experience with data visualization tools such as Tableau, Superset, etc.
  • Experience working with SaaS-based subscription metrics including conversion, retention and product usage is preferred
  • Entrepreneurial spirit and passionate about data

THE BENEFITS

Competitive base pay, bonus, equity package, full benefits, 401k

HOW TO APPLY: Please register your interest by sending your CV to Jayme Oshaben via the Apply link on this page.

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333/JO
San Francisco, California
US$200 - US$220 per annum + Bonus, Equity, Benefits
  1. Permanent
  2. Customer Insight

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