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Real Estate and Workplace Data Analyst

Turner Townsend
London
2 days ago
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Due to growing demand for our services, we are seeking to recruit experienced Data Analysts at Consultant/ Senior Consultant grade to join our Real Estate Advisory team. The role involves supporting a wide range of Real Estate Advisory projects and we are seeking individuals with a demonstrable track record of delivery in a consultancy environment ideally with workplace consulting experience and estate portfolio data analysis experience. The Opportunity: The responsibilities of the Data Analyst will include, but are not limited to:

  • Gathering and collating data from various sources to analyse and derive insights
  • Using Statistical Analysis and Data Management Tools such as MS Power BI, ArcGIS, SQL, and statistical software to analyse data, identify patterns and provide insights to clients
  • Providing guidance and advice on data quality issues to a wide variety of data providers
  • Managing the visibility, accuracy and transparency of data
  • Providing technical expertise and support for data analysis to non-experts
  • Presenting findings in a clear and understandable format to produce reports and presentations for clients
  • Developing dashboards to clearly display data internally and for clients
  • Developing multi-faceted reports with recommendations
  • Preparing presentation and other materials for client pitches and business generation
  • Inputting key information into the Turner & Townsend internal database tools.
  • Utilising data-driven insights to refine workplace and estate strategies
  • Identifying and develop ideas to further integrate data analytics across the Real Estate Advisory service offer.
  • Developing bespoke analytical tools to help clients make better asset management decisions
  • Preparing detailed transition materials to ensure clients can independently operate tools developed for them


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