Associate Director, AI Data Scientist

Jazz Pharmaceuticals
London
1 month ago
Applications closed

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Job Description

If you are a current Jazz employee please apply via the Internal Career site.

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Jazz Pharmaceuticals is a global biopharma company whose purpose is to innovate to \ntransform the lives of patients and their families. We are dedicated to developing \nlife-changing medicines for people with serious diseases — often with limited or no \ntherapeutic options. We have a diverse portfolio of marketed medicines, including leading \ntherapies for sleep disorders and epilepsy, and a growing portfolio of cancer treatments. \nOur patient-focused and science-driven approach powers pioneering research and development \nadvancements across our robust pipeline of innovative therapeutics in oncology and \nneuroscience. Jazz is headquartered in Dublin, Ireland with research and development \nlaboratories, manufacturing facilities and employees in multiple countries committed to \nserving patients worldwide. Please visit\nwww.jazzpharmaceuticals.com\nfor more information.

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The Associate Director, AI Data Scientist will be responsible for leading the implementation of innovative, complex and transformative AI/ML/GenAI solutions across the areas of Clinical Trial Execution and Digital Healthcare across Jazz Research and Development.

Essential Functions

  • Lead the development and implementation of AI/ML/GenAI solutions to optimize clinical trial opera...

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