Data Analyst

JLL
Bristol
1 day ago
Applications closed

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JLL empowers you to shape a brighter way.


Our people at JLL and JLL Technologies are shaping the future of real estate for a better world by combining world class services, advisory and technology for our clients. We are committed to hiring the best, most talented people and empowering them to thrive, grow meaningful careers and find a place where they belong. Whether you have deep experience in commercial real estate, skilled trades or technology, or are looking to apply your relevant experience to a new industry, join our team as we help shape a brighter way forward.


About the Role

We are looking for a Data Analyst to join our team and ensure data quality and integrity across our Asset Beacon platform. This role is critical to maintaining customer trust by delivering accurate operational and financial data while establishing comprehensive quality assurance processes for all data integrations and customer‑facing outputs.


Key Responsibilities

  • Own end‑to‑end data quality assurance across all Asset Beacon data integrations and customer‑facing datasets
  • Validate and analyze incoming data from customer systems to ensure platform accuracy and consistency
  • Diagnose data discrepancies and collaborate with Engineering teams to define and implement resolution strategies
  • Execute queries and perform data exploration to support integration requirements and troubleshooting
  • Establish and maintain data validation frameworks and quality metrics across financial, operational and leasing data domains
  • Partner with Customer Success and Delivery teams to resolve data‑related customer issues and ensure smooth onboarding
  • Document data quality processes and maintain best practices for ongoing data integrity monitoring

Requirements

  • 15 years of experience as a Data Analyst, preferably in SaaS or enterprise data environments
  • Strong SQL skills with experience in complex queries, data validation and quality assurance processes
  • Experience working with financial data systems and understanding of data accuracy requirements
  • Proven expertise in data QA/validation methodologies and tools
  • Strong analytical and problem‑solving skills with attention to detail
  • Excellent communication skills to work effectively across technical and business teams
  • Ability to work in a fast‑paced environment while maintaining high data quality standards

Nice to Have

  • Commercial real estate industry experience and understanding of CRE data workflows
  • Knowledge of property management systems (Yardi MRI etc.) and their data structures
  • Experience with data integration platforms and ETL processes

Location

On‑site, Bristol, GBR


If this job description resonates with you we encourage you to apply even if you don’t meet all the requirements. We’re interested in getting to know you and what you bring to the table! If you require any changes to the application process, please email or call 44 (0) to contact one of our team members to discuss how to best support you throughout the process. Please note the contact details provided are to discuss or request adjustments to be made to the hiring process. Please direct any other general recruiting inquiries to our Contact Us page.


For candidates in the United States please see a full copy of our Equal Employment Opportunity policy here.


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