Data Analyst - Adult Social Care

Slough
1 day ago
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Job Title: Data Analyst - Adult Social Care
Location: Slough (Hybrid - 1-2 days per week onsite)
Contract: 12 Weeks
Rate: £500 per day (Umbrella)

Overview
We are seeking an experienced Data Analyst to support Adult Social Care services within a local authority environment. This is an initial 12-week contract offering hybrid working, with approximately 1-2 days per week onsite in Slough.

The successful candidate will play a key role in delivering high-quality management information and insights to support operational and strategic decision-making across Adult Services. You will work closely with service leads and stakeholders to ensure data is accurate, accessible, and translated into meaningful intelligence through robust reporting and dashboards.

Key Responsibilities

Develop, maintain, and enhance Power BI dashboards that provide clear and actionable insights across Adult Social Care services.

Design and support the technical infrastructure required to host, manage, and integrate multiple datasets from different systems.

Lead on the creation of management information outputs, including performance indicators (PIs), KPIs, and statutory reporting requirements.

Work with service colleagues to improve data quality, ensuring datasets are accurate, complete, and fit for reporting and analysis.

Extract, transform, and analyse data from core Adult Social Care systems.

Support ongoing dashboard development, maintenance, and performance monitoring.

Provide analytical insight to help the Council deliver services efficiently and effectively.

Essential Skills & Experience

Strong experience developing Power BI dashboards and data visualisations.

Experience working with Adult Social Care datasets and performance reporting.

Hands-on experience with Liquidlogic and ContrOCC systems.

Strong skills in data modelling, data integration, and data quality management.

Experience producing management information, KPIs, PIs, and statutory reports.

Ability to translate complex data into clear insights for non-technical stakeholders.

Strong SQL and/or data manipulation skills.

Eden Brown is committed to equality in the workplace and is an equal opportunity employer. Eden Brown is acting as an Employment Business in relation to this vacancy

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