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Marketing Data Analyst

Harvey Nash
Slough
1 week ago
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One of our big tech clients is hiring for a Marketing Science Partner.


Marketing Science Partner

Job Duration: 12 -Months

Location: UK Onsite - Hybrid- Brock Street(3 days per week in office)

Via PAYE


Skills:

  • Turkish Proficiency
  • Marketing Analytics
  • SQL
  • Marketing Mix Model(MMM)
  • Client Facing experience(Turkey)


The Marketing Science Partner is a highly quantitative measurement professional, with marketing analytics experience to drive the Facebook measurement strategy with our largest Global Advertisers. To successfully influence how client’s conduct and use measurement, the role will need to be able to work cross-functionally with advertisers, sales teams, and other members of the Marketing Science team.

The ideal candidate will be passionate about advertising, intellectually curious, and able to move fast while keeping focused on high impact projects. This role requires a strong understanding of the media landscape and ability to apply quantitative techniques to understand consumer behaviour and advertising effectiveness.

Marketing Science Partner Responsibilities:

- Drive our global advertisers to measure true business value by operationalising analyses and research that will prove the value of Facebook’s advertising business.

- Play a strategic role in developing the cross-platform and cross-media measurement approaches and learning agendas for our global clients

- Conduct in-depth standard and custom ad effectiveness studies/meta-analysis for Facebook global advertisers to understand the relative impact of different marketing strategies across digital platforms and across media

- Drive client, vertical, and industry adoption of learning & preferred measurement methodologies, products, and approaches

- Engage in senior client conversations, presentations of results, and consult internally with the sales teams to advise them on marketing best practices using evidence based insights.

- Provide feedback to and collaborate with Product, R&D, and Partnerships teams to identify opportunities for new features, products, and partnerships

Requirements/Qualifications:

- Experience in research, analytics, or ad effectiveness

- A bachelor’s degree in psychology, statistics, economics, behavioural or social science or a related field

- An understanding of online advertising and familiarity with branding and performance advertising and marketing frameworks, including ad effectiveness measurement techniques

- Experience with statistical analysis, including but not limited to experimental design, modelling, or advertising research

- Experience building connections with customers and team members through effective communication and collaborating cross-functionally

- Comfortable communicating complex topics to a non-technical audience & experience of inspiring action based on data-driven insights including influencing advertiser planning and buying behaviour

- A track record of operating independently, demonstrating creativity, being detail-oriented, and delivering results in a highly organised manner

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National AI Awards 2025

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