EPMA Data Analyst

Cambridgeshire and Peterborough NHS Foundation Trust (CPFT)
Cambridge
4 days ago
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Join to apply for the EPMA Data Analyst role at Cambridgeshire and Peterborough NHS Foundation Trust (CPFT).

Join us as a Data Analyst and play a key part in developing and managing information systems that support Electronic Prescribing and Medicines Administration (EPMA) reporting. You’ll work with clinical and operational data, contribute to our data warehouse and business intelligence solutions, and help ensure high-quality, trusted information for both internal and external reporting.

We’re looking for someone with NHS informatics experience and advanced Microsoft SQL Server skills who wants to contribute to enhanced patient care through data.

Responsibilities
  • Develop, manage, and improve information systems and reporting solutions for Electronic Prescribing and Medicines Administration (EPMA) data.
  • Ensure high-quality, accurate, and timely data for internal and external reporting, supporting management decision-making and statutory requirements.
  • Collaborate with colleagues, clinical teams, and external partners to deliver system improvements and training, and support research and service evaluation initiatives.
  • Maintain documentation, uphold data governance standards, and contribute to quality, patient safety, and risk management.
  • Stay current with national and local information standards, participate in training, and promote equality, diversity, and safeguarding within the Trust.

Cambridgeshire and Peterborough NHS Foundation Trust is a health and social care organisation dedicated to providing high-quality care with compassion to improve the health and wellbeing of the people we care for, as well as supporting and empowering them to lead a fulfilling life.

Our clinical teams deliver many NHS services, not only via inpatient and primary care settings, but also within the community. These services include children’s, adult and older people’s mental health, forensic and specialist mental health, learning disabilities, primary care and liaison psychiatry, substance misuse, social care, research and development.

To achieve our goal, we look to recruit high‑calibre candidates who share our vision and values. As an equal opportunities employer, we encourage applications from all sectors of the community, particularly from under‑represented groups including people with long term conditions and members of our ethnic minority and LGBTQ+ communities.

Please be advised we reserve the right to close adverts earlier than the closing date should we receive sufficient applications.

Regrettably, we cannot offer sponsorship for all our job roles. If you apply for a role that we cannot offer sponsorship for, unfortunately, your application form will be rejected from the process.

For further information on CPFT, please visit our website at www.cpft.nhs.uk.

For further details / informal visits contact: Name: Jonathon Artingstall Job title: Associate Director Information and Performance Email address: Telephone number:


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