Data Scientist (Predictive Modelling) – NHS

Farringdon, Greater London
1 month ago
Applications closed

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Data Scientist (Predictive Modelling) – NHS
SR2 Consulting has an urgent requirement for a Data Scientist to support an NHS client on a contract basis.
Our client is delivering a data-led solution to support discharge planning and patient flow in an acute healthcare setting. We are seeking a data scientist with experience in predictive modelling, clinical data, and EPR systems to join an established team.
Responsibilities:

Develop predictive models (Python/SQL) to estimate patient discharge timing.
Integrate models into an existing EPR system using live data.
Collaborate with clinicians, analysts, and engineers to define features and validate outputs.
Support model tuning, performance monitoring, and stakeholder reporting.Required Skills:

Strong experience in Python and SQL for modelling and data engineering.
Proven background in data science or machine learning.
Experience working with or integrating into EPR systems (e.g. EPIC).
Understanding of acute healthcare settings and patient flow.
Strong communication skills with technical and non-technical stakeholders

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