Data Analyst

WeComm
London
7 months ago
Applications closed

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The Brand

WeComm have partnered with an incredible British fashion retailer, who're known globally for their bold empowering designs. This brand operate primarily in the D2C space with a focus on designing timeless fashion items for their female audience. They've gone from strength to strength, with the next exciting chapter seeing them branch into new categories and becoming a fully-fledged fashion house.


The Role

This role is integral to moving the business from fragmented reporting towards a data-driven culture and offers an opportunity to join a growing function at the very beginning of its transformation. We're looking for a hands-on, commercially minded data analyst to take ownership of core reporting, data modelling and analysis across trading, digital marketing, customer and product performance.


Responsibilities

  • Build and maintain high quality reports and dashboards, particularly for trading, marketing and customer performance.
  • Deliver proactive analysis that are commercially relevant and decision focused.
  • Apply analytics engineering best practises, including modular SQL development, version control and documentation.
  • Improve data quality and consistency by helping define and standardise key business metrics and KPI's.


The Person

The right person has previous experience in fast-paced digital/ecommerce/retail environments and will be vital in shaping how data is used across the business. Experience in digital marketing, customer, trading, D2C will be prioritised.

  • Proven experience in a digital-first retail or ecommerce environment.
  • Strong SQL and comfortable working with large datasets in a cloud data warehouse.
  • Data visualisation and storytelling.
  • Strong attention to detail.
  • Familiarity with tools such as Looker Studio, dbt, Git.

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