Senior Data Analyst

Cognify Search
London
1 year ago
Applications closed

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Join a fast growing E-commerce business who are following a data mesh architecture! We are looking for Senior Data Analyst.


Salary: up to £65,000 - £75,000

Benefits: Stock Options

Industry/Type of business: E-commerce

Work place: Hybrid: 3 day a week

Interview process: 3 stages


In this role you will collaborate closely with the Growth team to drive efficiencies in marketing spend and optimising growth. Your responsibilities will include owning data pipelines, developing and maintaining dashboards, and providing in-depth analysis to help stakeholders make data-driven decisions.


Key Responsibilities:


Data Pipelines: Manage and optimise data pipelines and modelling for marketing data, ensuring best practices in testing and alerting.

Reporting: Build and maintain dashboards that allow the Growth team to self-service KPIs and gain valuable insights.

Analysis: Work with stakeholders to understand their challenges, apply problem-solving frameworks, and deliver actionable insights.

Data Exploration: Analyse large datasets to uncover trends and opportunities that support business objectives.

Experimentation: Contribute to A/B testing and machine learning initiatives to enhance marketing and growth strategies.

Collaboration: Partner with cross-functional teams to identify business opportunities and deliver impactful analytical solutions.


Our client is revolutionising their sector through digitalisation and personalisation of a traditional product. They sell to half a million customers across the globe and are backed by tech VCs who have pumped £25 million of investment to speed up their growth into data and tech. They rank in many of the league tables for fastest growing start ups, so this is a very exciting time to join them.


Requirements:


  • 2+ years experience as a Data Analyst, preferably in Operations, Marketing, Product
  • Excellent working knowledge of SQL and data modelling best practices
  • Ability to build meaningful relationships with cross-functional colleagues
  • Proven understanding of problem solving techniques, data analysis and data visualisation
  • Strong communicator of insights


Our client is hiring a range of lead and senior positions.


Place of work:

Hybrid - this is a hybrid role with 3 days a week in the office


Please note: This position does not offer sponsorship and isn't open to anyone living outside the UK.

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