Data Analyst and SQL Developer

Onyx-Conseil
Birmingham
2 months ago
Applications closed

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Data Analyst - Cheltenham

Role:Data Analyst / SQL Developer

Rate:£250-300 inside IR35

Location:3 days onsite 2 WFH (Birmingham, London, Bristol or Darlington)

Duration:3 months + extensions

Ideally:Telco experience

We are seeking a highly motivated and detail-oriented Data Analyst with SQL Developer experience to join our team. The ideal candidate will have a strong background in data analysis, advanced SQL skills, and experience working with databases. This role is perfect for someone who thrives in a dynamic environment and is eager to make an impact by driving data-driven decision-making.

Responsibilities:

  1. Analyse large datasets to identify trends, patterns, and insights to support business decision-making.
  2. Create and maintain dashboards, reports, and visualizations using tools like Excel, Tableau, Power BI, or other analytics platforms.
  3. Provide actionable insights by interpreting data, and communicate findings to both technical and non-technical stakeholders.
  4. Conduct ad-hoc data analysis and research as required by various business units.
  5. Write complex SQL queries to extract, manipulate, and analyze data from relational databases.
  6. Develop stored procedures, functions, and views for recurring data extraction and analysis tasks.
  7. Optimize queries and database performance for faster data retrieval and reporting.
  8. Ensure data integrity, accuracy, and consistency across different systems and platforms.
  9. Work closely with the database team to support and maintain database environments.
  10. Assist with data migration, data quality checks, and troubleshooting data-related issues.
  11. Ensure the secure and efficient storage of data within the database and compliance with data privacy policies.
  12. Collaborate with cross-functional teams (business, product, IT, etc.) to understand data needs and provide appropriate analytical solutions.
  13. Present findings and recommendations to stakeholders in a clear, concise manner.
  14. Support decision-making by providing timely and accurate data-driven insights.

Please send your latest CV.

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