Senior Marketing Data Analyst

Jellyfish
London
1 year ago
Applications closed

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Job Description

Reporting to the VP of Investment Analytics, you will make an impact within our Paid Media department by combining technical expertise (35%) with client-facing analytics and solution design (65%). You will analyse campaign data to identify trends and provide insights for performance improvement.

At Jellyfish we take pride in our global client portfolio and our proprietary technology, setting us apart in the industry, and we are committed to promoting professional growth. Your career path could lead to Data Insights Director.

Your primary responsibilities will include:

  • Meet with our clients to understand their marketing goals and timings to define a solution design, covering data sources, collection and analysis.
  • Bring together data from different sources with potentially varying file formats, naming conventions and columns, and transform it into cohesive datasets, highlighting where underlying changes to the data sources may be required.
  • Complete projects and mathematical analysis that assess the efficiency of paid media campaigns, including attribution models and geo-testing, to evaluate their impact on sales, conversions, awareness and other goals.
  • Create visually appealing and informative dashboards.
  • Conduct testing and validation, to ensure dashboards match the underlying data sources and their design meets client requirements.
  • Present technical solutions, reports and studies to our clients with the support of our Paid Media, Media Planning, and Client Management teams.


Qualifications

  • Over 3 years of experience with at least one of the following data visualisation tools: Tableau (preferred), Power BI, Looker Studio or advanced use of Excel (you can perform complex functions).
  • Understanding of paid media campaign measurement with platforms like DV360, Google Ads, and Meta for Business.
  • Proficiency in SQL.
  • You love getting to know your clients, developing long-lasting relationships and adding value to their business.
  • You seek and implement solutions to refine and automate processes.
  • When faced with a problem, you collaborate with the appropriate people to evaluate different options find practical solutions.

Note: We emphasise skills, expertise and behavioural attributes over years of experience and traditional degrees. If you want to join our collaborative team, we invite you to apply today with your resume in English.



Additional Information

Join Jellyfish and experience a workplace where we prioritise your growth, celebrate your contributions, and empower you to tailor your work environment to suit your needs.

Reward: You'll receive a loyalty salary increase on your Jellyfish anniversary in addition to joining our discretionary annual bonus scheme.

Custom Work Environment: Work remotely for up to 60% of your days and shape your day between 8am. and 6:30pm with flexible working hours.

Growth, Your Way: Grow your career with one paid day each month for self-development and access to LinkedIn Learningwith unlimited online courses.

Family Support: Enjoy 14 weeks of paid leave for primary caregivers and 4 weeks of paid leave for secondary caregivers. We also provide £1000 (or equivalent) towards courses for returning primary caregivers to support your transition back into work.

Unfortunately, there has been an increase in fake recruiters impersonating Jellyfish and unlawfully using our brand name. If you are unsure if an email with a job offer you have received is genuinely from Jellyfish, or if you suspect any fraudulent activity, please report it to.

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