Head of Business Intelligence

Guy's and St. Thomas' NHS Foundation Trust
London
1 day ago
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Overview

The Integrated & Specialist Medicine (ISM) Clinical Group is seeking an innovative, collaborative and highly skilled Head of Business Intelligence to lead our analytics capability and drive data-enabled improvement across eight diverse directorates. The Head of Business Intelligence is accountable to the Director of Operations & Partnerships and works closely with the Clinical Group CEO, Executive Team and senior clinical leads. Your responsibilities include:


Responsibilities

  • Providing strategic and operational leadership for all analytics and reporting activity across ISM.
  • Leading and developing the Business Intelligence and Engine Room Clinical Analytics teams.
  • Overseeing statutory national submissions and ensuring the accuracy, completeness and timeliness of ISM data.
  • Translating complex data into meaningful insight to support service improvement, business planning and clinical governance.
  • Advising senior leaders on analytical methodologies, performance trends and the impact of change.
  • Driving forward innovation in predictive analytics, dashboarding and data quality.
  • Representing the Clinical Group in trust-wide digital programmes, including EHR development and data governance.

Qualifications

The ideal candidate will bring strong analytical leadership, confident communication skills and the ability to work effectively within a complex, multi-professional environment.


About ISM Clinical Group

The ISM Clinical Group is one of four Clinical Groups at Guy's and St Thomas' and includes services such as Acute & General Medicine, Specialist Ambulatory & Medical Specialties, Clinical Imaging & Medical Physics, Pharmacy, Dental and Integrated & Local Services. You will work closely with a supportive Executive Team comprising the CEO, Medical Director, Director of Nursing, People Director, Head of Finance and Directors of Operations & Partnerships.


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