Data Analyst

NHS
Loughborough
1 week ago
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Job Summary

Rainbows Hospice is currently seeking a Data Analyst who will play a key role in analysing and reporting organisational activity by extracting and interpreting data from core systems including SystmOne, ThankQ CRM, and Power BI.


About Us

Here at Rainbows Childrens Hospice, we provide specialist palliative care and end‑of‑life support to over 750 Babies, Children and Young People living with life‑limiting and life‑threatening conditions, as well as approximately 3,000 people, including families, siblings and carers, across the East Midlands. We provide services at the hospice, in hospitals and at home. Simply put, we’re here to brighten short lives and support families, wherever they are.


Details

Date posted: 20 February 2026
Salary: £31,860 a year
Contract: Permanent
Working pattern: Full‑time
Reference number: TA05
Job locations: Rainbows Hospice, Lark Rise, Loughborough, Leicestershire, LE11 2HS


Job Responsibilities

  • Extract, cleanse, and validate data from SystmOne, ThankQ CRM, and other internal systems.
  • Design, develop and maintain interactive dashboards and visual reports using Power BI.
  • Deliver accurate and timely reports to support service planning, contract monitoring and regulatory compliance.
  • Collaborate with clinical, administrative and fundraising teams to understand reporting requirements and ensure data consistency across systems.
  • Identify data quality issues and support teams in resolving inconsistencies.
  • Produce insights and recommendations from data analysis to inform strategic decisions and operational improvements.
  • Ensure reporting meets the needs of internal stakeholders, external commissioners, and statutory bodies.
  • Support data governance processes and uphold data protection and confidentiality principles.

Our Benefits

  • Free onsite parking at the Hospice, Lark Rise, Loughborough.
  • Eligibility to join blue light card discount scheme and Company Shop.
  • Healthcare Cashback plan.
  • Life Assurance.
  • 27 days holiday plus bank holidays.
  • Contributory pension scheme.
  • Affordable meals at the Hospice, Lark Rise, Loughborough.
  • Free Tea, Coffee and Fruit whilst at the Hospice.
  • Free access to an employee assistance programme.
  • Wellbeing support and access to Mental Health First Aiders.
  • Unofficial benefits: Fun events like All staff away days, Guest visitors.

Person Specification
Essential

  • Degree in a relevant subject (e.g. Mathematics, Data Science, Computing, Statistics) or equivalent work experience.
  • Proven experience working in a data analysis or reporting role.
  • Interested in the work of the hospice and motivated to help us understand and demonstrate our impact.
  • Experience of working with healthcare and CRM systems.
  • Proficiency in Power BI for building reports and dashboards.
  • A real team player, keen to partner with colleagues in developing and delivering solutions.
  • Experience querying and manipulating data from relational databases using SQL.
  • Familiarity with SystmOne and ThankQ CRM, or similar platforms.
  • Ability to interpret, analyse and present complex data in a clear, accurate, and actionable way. Strong problem‑solving skills.
  • Enthusiastic about using data to drive improvements in patient care and organisational performance.
  • Detail‑oriented mindset, with a focus on delivering high‑quality work and meeting deadlines.

Desirable

  • Experience working in a hospice, healthcare or charitable organisation. Understanding of NHS datasets, service contracts and reporting requirements.
  • Familiarity with statistical analysis methods, data modelling and forecasting.
  • Experience automating data extracts and reports between SystmOne, ThankQ and external reporting tools.

Disclosure and Barring Service Check

This post is subject to the Rehabilitation of Offenders Act (Exceptions Order) 1975 and as such it will be necessary for a submission for Disclosure to be made to the Disclosure and Barring Service (formerly known as CRB) to check for any previous criminal convictions.


Employer Details

Rainbows Hospice for Children and Young People
Rainbows Hospice
Lark Rise
Loughborough
Leicestershire
LE11 2HS
Website: https://www.rainbows.co.uk


For further information about this role and the responsibilities please contact Sammy Massiah, Project Manager, on ... If you require an alternative method of applying or would like to discuss reasonable adjustments further, please contact the people team at ... This role is subject to a Standard DBS (Disclosure and Barring Service Check) and pre‑employment checks. We reserve the right to close this advert early if we receive a high volume of suitable applications. We encourage candidates to apply as soon as possible to avoid disappointment.


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