Data Analyst

Recruiit
Leicester
1 month ago
Applications closed

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Data Analyst

Data Analyst

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Data Analyst

Data Analyst

Data Analyst

Data Analyst - Leicester + Hybrid - £45,000 - £55,000 + Benefits

This is an excellent opportunity for an experienced Data Analyst to join a successful and growing business. Your core role will be to develop the data strategy and data delivery across the business, including shaping how the business manages its data. You will be an effective data analyst and have the ability to produce and improve reporting, as well as effectively utilising visualisation tools to inform stakeholders effectively. The ideal candidate will know what 'good looks like' in terms of data governance, control frameworks, and comprehensive data documentation, as well as having strong stakeholder management skills.

Key Areas of the Role:

  • Developing and delivering the company's data strategy
  • Effectively analysing data, improving reports and visualisation to stakeholders
  • Improving and building frameworks
  • Data governance
  • Strong SQL and Power Bi skills
  • Stakeholder management and communication
  • Data process improvement

The company has a great culture and offers hybrid home working, as well as excellent career progression opportunities.

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