Data Analyst SystmOne

Leeds
21 hours ago
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Data Analyst (SystmOne) - Inside IR35 - £300 per day - Part‑Time Location: Onsite 2 days per week (West Yorkshire) Rate: £250 - £300 per day (Inside IR35) Contract: Interim (3 months)/ Contract Working Pattern: Part‑time (3 days), with a minimum of 2 days onsite Clearance: DBS required
Your New CompanyA respected Public Sector Organisation delivering vital community and healthcare‑related services is seeking interim data support to cover a key Data Analyst position. This organisation works closely with clinical teams, service delivery staff and external partners, and relies heavily on accurate, meaningful data to demonstrate impact, meet regulatory expectations, and ensure effective service provision.
Your New RoleAs a Data Analyst with experience in SystmOne, you will play a crucial role in supporting the organisation's reporting, insight, and data quality needs. You will work across multiple data sources, with a strong emphasis on extracting and interpreting data from clinical systems.You will collaborate with operational teams, service managers and senior stakeholders to produce meaningful insights that support decision‑making, funding requirements, compliance, and internal reporting.
Key Responsibilities

Extract, clean and interpret data from a variety of sources, including SystmOne.
Develop, maintain and enhance organisational dashboards to support internal reporting.
Build and manage organisational datasets, ensuring accuracy, consistency and relevance.
Create automated solutions to streamline reporting and improve data processing efficiency.
Work closely with internal stakeholders to gather requirements and produce actionable insights.
Support the organisation's impact measurement and outcomes reporting to funders, boards and regulators.
Ensure all data handling complies with information governance, GDPR and safeguarding requirements.
What You'll Need to Succeed

Proven experience as a Data Analyst.
Hands‑on experience extracting data from SystmOne (essential).
Strong ability to interpret, manipulate and present complex datasets.
Experience creating dashboards (Power BI, Tableau or similar).
Confidence working with stakeholders at all levels, including non‑technical audiences.
Strong analytical, problem‑solving and communication skills.
A valid Enhanced DBS check (or willingness to undertake one).
What You'll Get in Return

£250- £300 per day Inside IR35.
Flexible part‑time work with 2 days onsite/1 day remote
3 months inital contract
Opportunity to support a meaningful organisation delivering impactful services.
A role with autonomy, influence and the chance to improve data‑driven decision‑making.

What you need to do now
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