Lead Data Scientist (London)

Harnham
London
6 days ago
Applications closed

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Lead Data Scientist
Location:Central London (1 day per week in office)
Salary:Up to £85,000 + Benefits (with potential for small flexibility)

Company:Leading Performance Marketing Agency

We are seeking a skilled Data Scientist to join a fast-growing performance marketing agency, specialising in data engineering, analytics, and innovative technology solutions. This role offers the opportunity to work with some of the biggest names in the industry, while leveraging advanced data science methodologies to drive scalable, sustainable growth.

Key Responsibilities:

  • Develop and implement advanced analytics models, including LTV, Propensity, and Forecasting/Pricing models.

  • Work with Cloud environments (GCP/AWS) to deploy models for Google and Meta Ads.

  • Lead or assist in experimentation methodologies such as incrementality, attribution, MMM, and brand lift studies.

  • Consult with high-profile clients to provide data-driven insights and measurement strategies.

  • Collaborate with other data scientists and analytics teams to refine methodologies and deliver results.

Ideal Candidate:

  • Proficiency in Python and SQL (essential).

  • Experience with Cloud platforms (GCP/AWS) is highly desirable.

  • Familiarity with key methodologies such as Experimentation, Attribution, MMM, Propensity, and LTV modelling.

  • Experience in the performance marketing space is strongly preferred.

  • Management experience is a plus, but open to candidates with a passion for mentoring.

  • Agency experience is a strong advantage.

Interview Process:

  • 1st Stage:Introductory interview with Antonio (30-45 mins).

  • 2nd Stage:Technical assessment covering SQL, Python, and Marketing Analytics.

  • 3rd Stage:Panel interview with Data Scientists and Heads of Innovation and Product.

  • 4th Stage:Final sign-off chat with the CTO and MD.

If you're looking to join a high-growth, award-winning agency and make a significant impact with your data science expertise, apply now!

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