Data Analyst

Harnham
London
2 weeks ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

£55-60k (dependent upon experience)

Hybrid- West London (3 days a week in office)

A leading UK estate agency is looking for a data analyst to shape reporting outputs & analytics delivery across the business, driving commercial value from data.

THE COMPANY

The company is a leading estate agency- known for their cutting-edge approach to sales and lettings. Data is extremely important to them and so they are looking to grow out their team with new analysts who will be working across a number of exciting projects involving Power BI dashboarding and AI.

ROLE

In this role, you will be:

  • Be leading dashboard development- becoming the in-house Power BI expert and serving as the technical go-to person
  • Be working heavily with Azure Data Factory, AI and tools like Copilot and Fabric within AI
  • Completing end-to-end data analysis- ETL processes using SQL and Python to support business-critical decisions
  • Telling a story with data- communicating complex analysis to stakeholders at all levels
  • Leading workshops & discovery sessions to define reporting requirements & analytical priorities

SKILLS & EXPERIENCE

  • STEM Degree
  • At least 4 years data analysis experience- ideally within a fast-paced data-rich environment
  • Advanced skills in Power BI including DAX, data modelling and experience leading the scoping and implementation of dashboards
  • Strong SQL expertise- writing efficient, well-structured code for data manipulation & extraction
  • Hands-on experience using Python especially for automation or advanced insight generation
  • Excellent communication- able to explain technical concepts in a non-technical way to stakeholders using data-driven storytelling
  • A strong interest in AI, machine learning and productivity tools
  • Proven impact- Demonstrable examples of delivering analysis that influenced strategy or improved performance in a commercially beneficial way

BENEFITS

The successful candidate will receive a salary up to £60k

JOB PROCESS

The interview process consists of up to three stages; including a pre-test and technical test

HOW TO APPLY

Please register your interest by sending your resume/CV to Chloe Pott via the Apply link on this page.

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