Data Analyst

Allbyn
London
2 days ago
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We are currently working with a leading private equity-backed music rights investor that is seeking a Data Analyst to join their growing team. This role will be critical in helping our client become more data-informed across all departments. You will be responsible for translating business needs into data-driven solutions. The team builds, owns, and maintains proprietary data systems that support the full data lifecycle.


Responsibilities:


  • Collaborate with all teams to understand and support their data needs
  • Develop and maintain dashboards and reports
  • Write efficient and complex SQL queries
  • Build out and enhance analytical functionality
  • Work with non-technical stakeholders and data infrastructure teams to recommend enhancements and new features
  • Identify new opportunities and continuously improve data processes


To be successful in this role, you will have:


  • A minimum of 2 years of relevant experience.
  • Proficiency in SQL and database design concepts
  • Proven experience with business intelligence tools, preferably Tableau or similar
  • Ability to translate complex data concepts into actionable insights
  • Excellent communication and stakeholder management skills
  • A proactive mindset and a passion for solving problems using data
  • Experience in the music or entertainment industry (preferred)
  • Knowledge of scripting languages such as Python (beneficial)


This is an exciting opportunity to join a leader in their field, with significant growth projected over the coming years. Please reach out if you are interested in a confidential discussion.

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