Marketing Data Analyst
Boston, Massachusetts / $70000 - $85000
$70000 - $85000
Marketing - Data Analyst
Health & Wellness
Hybrid - Greater Boston
A global conglomerate in the health & wellness domain is looking to add a Marketing Data Analyst to their team to take on media and website analytics initiatives for their campaigns.
As a Marketing Data Analyst, you will be responsible for:
- Generating insights from large datasets to assist in business decisions
- Performance tests such as A/B testing on digital platforms/campaigns
- Developing and maintaining dashboards and reports for various teams and stakeholders
YOUR SKILLS AND EXPERIENCE
- Ample experience in the digital analytics realm working with multiple large datasets
- Comfortability with tools such as Excel, Google/Adobe Analytics, Tableau & SQL preferred
- Knowledge and analysis experience with a multitude of digital platforms and channels
- Bachelor's degree in business, marketing, advertising, or related field preferred
As a Marketing Data Analyst, you can earn up to $85,000 in basic, bonus & industry-leading benefits.
HOW TO APPLY
Please register your interest by sending your resume to Rachel Davner via the apply link.
Digital Analytics, Data Analytics, SQL, Google Analytics, Tableau, Looker, Domo, Management, Campaign Analysis, Web Analytics, Marketing Analytics, A/B Testing, A/B Test
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