Senior Data Scientist

NHS RESOLUTION
London
6 days ago
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We have a permanent role open for an experienced Senior Data Scientist to provide expertise in Data Science and analytical methods to the whole organisation.,



  • Reporting to the Data Science Manager you will support, manage and lead a team of Data Scientists and act as a subject matter expert on the development of Data Science solutions using Python and Azure machine learning studio. You will maintain a high level of engagement between the Data Scientists on the coordination of machine learning pipelines.
  • As well as assisting the Data Science Team in the development of statistical and analytical best practices and applying these practices to complex NHSR datasets to deliver data insights.
  • You will also be developing data science methodologies for ad-hoc analysis, insights work and for highly complex prediction and statistical models.

About us: We are NHS Resolution, an arms length body operating under the Department of Health and Social Care. At our core, we specialise in claims management, dispute resolution, and knowledge sharing within the NHS.
Our purpose is to provide expertise to the NHS to resolve concerns fairly, share learning for improvement and preserve resources for patient care. We have over 830 employees across the UK.
As this role is based in London and working on a hybrid basis NHS High-Cost Area Supplement (HCAS) is available on top of base salary.


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