Ecommerce Data Analyst

Harnham
London
7 months ago
Applications closed

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Ecommerce Data Analyst

Hybrid – London (3 days in office: Mon, Tue, Thu)

Up to £55,000


Please note: applicants must be UK-based. Sponsorship is not available.


The Company

This fast-growing D2C brand in the personal care space is scaling quickly and investing heavily in data. With a modern data platform and a centralised team in place, they’re now building out stronger analytics support for their marketing functions—Influencer and Performance Marketing.


The Role

As the Ecommerce Data Analyst, you’ll sit within the central data team and be the go-to person for marketing insights. Your work will focus on automating reporting, cutting down manual processes, and providing clear, actionable recommendations across paid media and influencer activity.

Key responsibilities include:

  • Analysing influencer campaign data, building reports, and automating workflows.
  • Partnering with performance marketing (Google, Meta, Snap) to deliver insights and campaign analysis.
  • Designing and maintaining dashboards in ThoughtSpot (or similar).
  • Writing SQL queries in Snowflake and working with DBT pipelines.
  • Streamlining reporting processes and reducing reliance on spreadsheets.
  • Presenting insights back to stakeholders in a clear, commercial way.


Your Experience

  • Strong SQL skills.
  • Proven experience in marketing or ecommerce analytics.
  • Skilled with BI tools such as ThoughtSpot, Looker, or Tableau.
  • Solid understanding of marketing metrics (CAC, ROAS, attribution, etc.).


Why Apply?

  • Join a brand with a strong mission and loyal customer base.
  • Take real ownership over how data supports marketing.
  • Be part of a collaborative, high-impact data team.
  • Play a key role in shifting the business from manual to scalable, insight-driven decision making.

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