Statistician

London
3 weeks ago
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Duration - 6 months

Hybrid, London

Duties:

  • Design and execute data-driven marketing campaigns aimed at enhancing customer acquisition, retention, and overall ROI.

  • Evaluate and optimize campaign effectiveness: Continuously assess the performance of campaigns and adjust strategies to meet objectives.

  • Data collection and analysis: Gather and analyze data across various marketing channels, including digital advertising, using SQL/Python to access and manipulate data.

  • Lead the MMM (Marketing Mix Modeling) process: Oversee the transition of MMM from an external agency to an in-house process, including model selection, development, and training. Ensure the actionable insights from the model are integrated into marketing strategies.

  • Experimentation and testing: Collaborate with marketing scientists and stakeholders to design and implement experiments that validate model outcomes and enhance learning accuracy.

  • Stay updated on industry trends: Keep up with the latest advancements in marketing analytics and emerging technologies to ensure strategies are cutting-edge.

  • Present findings to senior leadership: Effectively communicate complex data and actionable insights in a clear, concise manner to non-technical stakeholders.

    Skills & Qualifications:

  • 5+ years of experience in marketing science or a similar role.

  • Proven experience in leading a team of marketing analysts/scientists.

  • Proficient in marketing analytics tools (e.g., Google Analytics, Adobe Analytics, marketing automation platforms).

  • Expertise in advanced analytics techniques such as regression models (e.g., ridge regression, Bayesian regression), time series analysis, forecasting, and end-to-end MMM ownership.

  • Strong proficiency in SQL and Python.

  • Excellent leadership, project management, and cross-functional collaboration skills.

  • Strong communication and interpersonal abilities, capable of translating complex data into actionable insights for non-technical audiences

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