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Client Data Analyst, Real Estate

Knight Frank
City of London
1 week ago
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Overview

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About Knight Frank: At Knight Frank, we work responsibly in partnership to enhance people’s lives and environments. Founded in 1896 and headquartered in London, Knight Frank is one of the world's leading independent real estate consultancies. We are located in over 50 territories, 740+ offices, 27,000+ people, with a global network. Our focus is to act with integrity and care, delivering personalised, clear and considered advice across all areas of property. We value inclusivity and diverse perspectives, and empower our people to contribute to the success of the business and shape the future of real estate.

About The Role

Knight Frank is looking to hire an Analyst to join our UK Occupier Strategy & Solutions (OSS) team, based at our Baker Street HQ. This is a role for someone who can support data-driven decision making and help grow our UK occupier business through insights. You will work with the Head of Client Data and Analytics, the Head of UK OSS, and the Head of Operations for UK OSS, as well as liaising with Business Development and Marketing teams.

Role

We are seeking a talented and analytical individual to join our UK Occupier Strategy and Solutions (OSS) team as a Client Data Analyst. You will evolve our client data function, deliver actionable insights, and support targeted marketing and communications. This is a unique opportunity to shape the strategic direction of our client insights and contribute to the expansion of OSS capabilities.

Responsibilities
  • Developing and delivering a data management roadmap for UK OSS client data.
  • Supporting UK OSS leadership with data to inform strategic and tactical decisions.
  • Collaborating with Business Development to cleanse and leverage large datasets and maximise opportunities.
  • Ensuring best practices in data analytics in partnership with the Head of Client Data and Analytics.
  • Designing and maintaining intuitive Power BI dashboards.
  • Gathering stakeholder requirements to identify KPIs and metrics.
  • Ensuring data accuracy and consistency through validation checks.
  • Supporting targeted marketing initiatives based on data insights.
  • Maintaining and evolving dashboards and data toolkits.
  • Supporting the UK Marketing function across the OSS Global service line.
Key Experience Required
  • Bachelor’s degree or equivalent experience.
  • 2+ years in a data role, preferably with CRM and/or marketing experience.
  • Proficiency in SQL and Power BI.
  • Strong understanding of data governance and quality management.
  • Excellent communication, presentation, and stakeholder management skills.
  • Passion for real estate and data-driven decision-making.

Competitive salary. Please note: this is a Direct Search led by Knight Frank. Applications from recruitment agencies will not be accepted nor will fees be paid for unsolicited CVs.

Job Details
  • Seniority level: Entry level
  • Employment type: Full-time
  • Job function: Information Technology

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