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Lead Data Analyst

Burns Sheehan
City of London
2 weeks ago
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Overview

Lead Data Analyst

£85,000-£95,000 + benefits

️ SQL, Tableau, Python, Experimentation

London, twice a week in office

B-Corp retailer promoting recycling & sustainability

Burns Sheehan Ltd will consider applications based only on skills and ability and will not discriminate on any grounds.

We are partnered with a rapidly growing online retailer & B-Corp whose purpose is to encourage the recycling & sustainability. The Lead Analyst is key to advancing analytical capabilities and data maturity, enabling the next stage of growth. This role is both a manager to at least one analyst as well as an individual contributor and will support the Director of Analytics in setting direction, driving broader initiatives and best practices for analytics across the business.

Responsibilities
  • Own reporting and analytics for the supply and operations functions of the business.
  • Lead initiatives end-to-end, including building and validating datasets, developing reporting, analysing complex datasets, presenting results and providing actionable recommendations, and measuring the impact of actions.
  • Collaborate closely with key business partners in Product, Tech, and other teams.
  • Communicate insights effectively, translating complex analyses into clear, actionable recommendations with a strong focus on commercial impact.
  • Engage with both technical and non-technical stakeholders, including senior executives, to align data-driven insights with strategic goals.
  • Lead and manage one analyst and support their success and development.
  • Provide mentorship to the wider analytics team.
Qualifications
  • Impressive background in analytics, ideally from Ecommerce/Marketplace.
  • Technical expertise with SQL, Tableau/Looker/PowerBI and Python.
  • User funnel analysis, segmentation, and LTV forecasting experience.
  • A/B Testing experience.
  • Familiarity with mentoring and technical leadership.
How to apply

If you are interested in finding out more, please apply or contact me directly!


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