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Data Analyst

BUPA
Salford
3 days ago
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Job Overview

Data Analyst


Salary: From £32,000 plus benefits


Contract type: Permanent


Shift pattern: Full-time – 37.5 hours per week


Location: Hybrid / flexible working - 1 day per month in a local office EC2R7HJ / M50 3SP / LS5 3BF / TW18 3DZ / BN1 4FY


At Bupa, we’re passionate about technology and making health happen. You’ll have the opportunity to work on innovative projects and make a real impact on customers, patients and residents’ lives. From the start you’ll become part of our digital strategy and develop yourself along the way.


Responsibilities

  • Establish and implement data governance frameworks to ensure data accuracy, completeness, and security.
  • Educate non-data professionals on data policies to facilitate the adoption of the Data Governance Framework.
  • Serve as a liaison between business units and the Master Data Management offshore team for data processing activities.
  • Develop SQL queries and dashboards to monitor data quality and performance indicators.
  • Collaborate with stakeholders to set data governance objectives and standards.
  • Advise on and support the implementation of key Data Governance products like data dictionaries and catalogues.
  • Support Data Governance Managers in the development of Data Governance products and continuous improvement efforts.
  • Establish data quality KPIs, conduct data profiling, and execute data cleansing and enrichment strategies to enhance data integrity.
  • Work with IT and business units to align data governance initiatives with organizational goals.
  • Analyse data to identify patterns, trends, and anomalies, providing insights for data governance improvement.
  • Foster relationships with Data Office teams to ensure collaborative support and clear role demarcations.

Key Skills / Qualifications

  • Strong knowledge of data management principles and governance frameworks.
  • 3 years post experience
  • Experience as a Data Governance Analyst or similar role.
  • Technical skills in SQL, Snowflake, Power BI, Azure DevOps or Jira, and SharePoint.
  • Experience with agile methodologies, such as Scrum, is preferred.
  • Familiarity with Dynamics CRM or equivalent technology is favourable.
  • Understanding of data quality and metadata management.
  • Knowledge of DPA 2018 or CCPA regulations is beneficial.
  • Professional certifications like CDMP, DGSP, BCS, IDM are advantageous.

Why Bupa?

We’re a health insurer and provider. With no shareholders, our customers are our focus. Our people are driven by the same purpose – helping people live longer, healthier, happier lives and making a better world. We encourage our people to “Be you at Bupa”, champion diversity, and understand the importance of representing the communities and customers we serve. We especially encourage applications from people with diverse backgrounds and experiences.


Bupa is a Level 2 Disability Confident Employer. We aim to offer an interview/assessment to every disabled applicant who meets the minimum criteria, and we’ll provide reasonable adjustments as part of our recruitment process to anyone who needs them.


Time Type

Full time


Job Area

IT


Locations

Angel Court, London; Bupa Place, Kirkstall Forge; Staines - Willow House, Victory House, Brighton


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