Staff Data Scientist - Marketing Measurement

Harnham - Data & Analytics Recruitment
London
2 days ago
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Job Description

STAFF DATA SCIENTIST - MARKETING MEASUREMENT

£95,000 - £113,000 + BONUS + EQUITY LONDON

THE COMPANY

This is an exciting opportunity to join a well-known consumer tech marketplace operating at global scale. The business has built a highly engaged community and is investing heavily in data and advanced analytics to drive smarter marketing decisions and sustainable growth.

With marketing playing a critical role in their growth strategy, the company is expanding its marketing analytics capability and investing in sophisticated measurement frameworks to better understand performance across digital channels.

THE ROLE

As a Staff Data Scientist within the marketing analytics team, you will play a key role in developing advanced measurement capabilities to support paid marketing investment and long-term growth strategy.

More specifically, you will:

  • Own and develop attribution modelling frameworks to measure marketing effectiveness across paid channels
  • Build and maintain analytics models to understand customer lifetime value and acquisition performance
  • Develop advanced measurement approaches including incrementality testing and experimentation
  • Partner with marketing stakeholders to evaluate campaign performance across multiple digital channels
  • Build scalable Python-based analytics models and measurement frameworks
  • Deliver insights that shape marketing strategy and future investment decisions
  • Act as a key analytical voice across marketing leadership and wider stakeholders
  • Support reporting and performance monitoring through BI tools such as Looker or similar

YOUR SKILLS AND EXPERIENCE

The successful candidate will have the following skills and experience:

  • Strong experience in Marketing Analytics, ideally within a digital consumer or marketplace environment
  • Excellent SQL skills with experience working with large and complex datasets
  • Strong Python experience, including building analytical models or measurement frameworks
  • Experience working with paid marketing data (e.G. Meta, Google, TikTok or similar channels)
  • Experience developing attribution models, incrementality testing or LTV modelling
  • Understanding of marketing measurement within mobile or app-based environments
  • Experience communicating complex analysis clearly to senior stakeholders
  • A proactive and strategic mindset with the ability to influence marketing decision-making

BENEFITS

The successful candidate will receive a salary of up to £113,000 alongside a bonus and equity package. In addition, you will be joining a highly collaborative environment with strong investment in data, analytics and experimentation, offering significant scope to shape marketing measurement strategy.

HOW TO APPLY

Please register your interest by sending your CV to Dylan Butcher via the Apply link on this page.

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