Senior Data Analyst

Stanton House
London
9 months ago
Applications closed

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Job Description

Senior Data Analyst – Global Programs

📍 London, UK (Hybrid – 3 days in office)

🕒 Full-time | Real Estate Investment Firm

💰 Salary: Up to £60,000 per year + benefits


Are you passionate about transforming complex data into meaningful insights that drive global strategy? A leading real estate investment firm is looking for a Senior Data Analyst to join their Global Programs team and play a key role in delivering data-driven solutions across international operations.


🔍 What You’ll Do:

Design and deliver enterprise, regional, and local dashboards and reporting tools


Uncover actionable insights from operational data through advanced analytics and storytelling


Collaborate across departments (Tech, Finance, Operations) to improve data infrastructure


Build and automate data pipelines for cross-functional business reporting


Ensure data quality, compliance, and adherence to governance standards


🧠 What You Bring:

5+ years of experience in data analytics or reporting


Strong skills in Power BI or Tableau, SQL, and Python


Experience with cloud platforms (Azure preferred), Alteryx, and Snowflake


Bachelor’s degree in Data Science, Computer Science, St...

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