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Data Analyst (BI and SQL)

The Search Consultant
Birmingham
2 weeks ago
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Data Analyst (BI & SQL)

Up to £50K plus benefits

Birmingham

Role Summary

We are seeking a skilled and motivated SQL Analyst. In this role, you will play a vital part in analysing, creating, implementing, and maintaining data infrastructure, ensuring the seamless operation of corporate IT systems. This is a unique opportunity to contribute to our journey of innovation, efficiency, and customer excellence.

Core Duties

  • Design, implement, and maintain on-prem and cloud data infrastructure to support IT services.
  • Administer corporate databases, including maintenance, upgrades, and monitoring for resilience and efficiency.
  • Develop and implement data pipelines for data warehousing and analytics requirements.
  • Perform database administration tasks such as user management, backups, and transaction log management.
  • Engage with end-user departments to gather analytics requirements and deliver tailored BI solutions.
  • Streamline business processes by creating system interfaces and automation using APIs and web services.

Experience Required

  • In-depth knowledge of Microsoft SQL Server (2017 and above), including SSMS, SSRS, SSAS, SSIS, and SQL scripting.
  • Expertise in database development, data cubes, and data marts.
  • Proficien...

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