Data Analyst

Harnham
City of London
1 month ago
Applications closed

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Senior Recruitment Consultant - Business Intelligence @Harnham

Data Analyst

Location: London | Type: Full-time | Level: Mid-level

Overview

Our media client is seeking a Data Analyst to turn data into actionable insights that drive business decisions. You\'ll work closely with stakeholders across the company, combining technical skills with analytical thinking to support reporting, analysis, and data-driven decision making. This role offers opportunities to learn advanced analytics techniques, collaborate with experienced data engineers and scientists, and have a meaningful impact on the business.

Responsibilities
  • Create, maintain, and optimise a wide range of BI reports.
  • Analyse data to uncover actionable insights for marketing, product, and content decisions.
  • Support diverse projects, such as A/B test analysis, content performance evaluation, and website engagement metrics.
  • Help enhance the internal data model, including identifying new tables or pipelines.
  • Collaborate with technical and non-technical stakeholders across the business.
  • Work within a team of data analysts, engineers, and scientists, contributing to shared knowledge.
  • Opportunity to develop skills in predictive modeling, AI/ML, clustering, and segmentation.
Requirements
  • Experience with BI tools such as Looker, Tableau, or equivalent.
  • Knowledge of data warehousing, ETL systems, or modern equivalents like DBT.
  • Proven ability to communicate insights to stakeholders and drive action.
  • Strong problem-solving skills and ability to explain complex concepts simply.
  • Adaptable, quick to learn domain knowledge.
What Will Make You Stand Out
  • Proficiency in Python or other scripting languages.
  • Experience or interest in AI/ML techniques.
  • Familiarity with predictive modeling, clustering, or segmentation.
  • Passion for media or entertainment is a bonus.

If you would like to be considered for this role, please apply. To follow up on your application please email or message me on LinkedIn.

Seniority level
  • Entry level
Employment type
  • Full-time
Job function
  • Information Technology
  • Industries
  • Information Services

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