Data Analyst

Harnham
Cheltenham
9 months ago
Applications closed

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SPATIAL DATA ANALYST

£40,000–£50,000

LONDON – 2–3 DAYS IN THE OFFICE


THE COMPANY

This organisation is the gold standard for audience measurement inOut-of-Home (OOH)advertising—think billboards, buses, digital screens, and more. As a joint industry committee, they work with media owners, agencies and advertisers to deliver trusted, standardised insights across the sector. With a small but highly technical team, they specialise in analysingmovement and exposure patterns, ensuring brands know not just who they’re reaching—but where, when, and how often.


THE ROLE:

This is aspatial analyticsrole at its core.

  • You'll work with large-scale movement datasets—sourced from telecoms providers and partners—to build accurate pictures of population flow and advertising exposure.
  • Your focus will be on analysing and interpretinglocation-based data, drawing insights on audience behaviour usingSQLandspatial joins, and producing engagingTableau visualisationsto inform key media decisions.
  • This role complements an existing team member focused on dashboarding—your role is aboutraw insight generation and deep geospatial analysis.


WHAT YOU NEED:

  • Strong hands-on experience withspatial dataand geospatial techniques
  • Proven ability inSQLfor complex data querying and wrangling
  • Exposure to tools likeTableau,BigQuery GIS, orPostGISis highly desirable
  • Ideally, a background inmedia, advertising, orlocation intelligence
  • A curious mindset with a passion for unlocking insight from movement data


HOW TO APPLY:

Apply via the link below!

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