Senior Business Intelligence Analyst

Hospice UK
London
3 weeks ago
Applications closed

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Lead BI Analyst - Hybrid, Power BI & Data Strategy

Details:

Salary: £50,000 per annum.

Location: Hybrid Work Culture. We are proud to promote a truly hybrid work culture, recognising that every role is different, and everyone has unique needs and preferences. Our Hybrid Work Arrangement empowers each team member to work with their manager to choose the most effective way to work that balances your needs and Hospice UK’s.

For this role, our expectation is that you will come to London 1 day each week for team, project or stakeholder meetings. You may also find it useful to visit member hospices. You can work remotely for the rest of the time. Equally, you may prefer to work from the office full-time. We encourage all colleagues to visit member hospices to help inform our work and you may be able to work from there.

Contractually this role is London-based.

Benefits:

  • 25 days in the first year, increasing to 27.5 days in the second year of service and 30 days in the third.
  • Matched pension scheme up to 7% of salary
  • Healthcare plan
  • Learning and development opportunities
  • Enhanced carers and compassionate leave

How to apply: CV and supporting statement - using Hospice UK’s supporting statement document – see below.

Closing date for applications: Midnight on Sunday 11 January ...

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