Data Analyst

Burns Sheehan
London
4 days ago
Create job alert

Data Analyst – Real Estate - Excel, Power BI, SQL

  • £425/day (OUTSIDE IR35)
  • 3 days a week on site - Soho


A leading European logistics real estate firm is seeking a Data Analyst. Operating across a vast network of warehouse spaces and transportation hubs, this established company is launching a cutting-edge, startup-style project that will transform how real estate data is structured, visualized, and leveraged across the business.


The Data Analyst's role:

This is a high-ownership position where you'll have significant impact on solutions that shape real estate data analysis. You'll work within a small, innovation-focused team of 3-4 people maximum, requiring genuine engagement with the project rather than just task execution. This isn't about moving data around – we need someone who understands what the data means and can work independently without constant guidance.


Data Analyst Key Responsibilities:

• Manage Excel-based datasets through SharePoint and Power BI dataflows, ensuring smooth transitions from raw inputs to structured outputs

• Identify inefficiencies in current workflows and propose enhancements to reduce manual effort and streamline operations

• Monitor data errors, develop error-handling protocols, and maintain governance standards with comprehensive audit trails

• Build transformation logic using Power Query and SQL, supporting evolution of the medallion architecture (Bronze, Silver, Gold layers)

• Work closely with the Data Engineering team and liaise with external data providers to resolve discrepancies and integration challenges

• Support Power BI dashboard development, ensuring visualizations meet business needs for underwriting and strategic analysis


Data Analyst Requirements:

• Strong proficiency in Excel, Power Query, SQL, and Power BI – the core toolkit for this role. Experience with data modeling and ETL processes essential

• Clear, efficient communicator who makes complex topics simpler, not more complicated. We value clarity over technical rambling

• High work ethic with genuine ownership mentality. Must see value in the project and understand how everything ties together, not just tick boxes

• Comfortable taking on full tasks independently without step-by-step guidance. We need someone who grasps concepts quickly and won't require constant explanation

• Real estate data experience welcomed but not essential – we can provide background to engaged candidates who show willingness to learn

• Preference for iterative, practical solutions over over-engineering with latest technologies. Focus on doing the project right rather than using cool tech


Are you a detail-oriented data professional who thrives in startup environments within established companies? Do you excel at understanding data meaning and working with genuine ownership?


Data Analyst – Real Estate - Excel, Power BI, SQL – £425/day (OUTSIDE IR35)


  • Seniority Level
  • Mid-Senior level
  • Industry
  • Technology, Information and Media
  • Employment Type
  • Contract
  • Job Functions
  • Information Technology
  • Skills
  • Data Analysis
  • Microsoft Power BI

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