Artificial Intelligence Data Scientist

University Hospitals of North Midlands NHS Trust
Stoke-on-Trent
1 month ago
Applications closed

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University Hospitals of North Midlands NHS Trust – Artificial Intelligence Data Scientist

University Hospitals of North Midlands NHS Trust, one of the largest and most modern healthcare facilities in the UK, invites applications for an Artificial Intelligence Data Scientist. The role is part of a newly established AI Team, tasked with ensuring business continuity through AI-driven innovations in healthcare delivery. The appointed candidate will work centrally in advancing AI projects and systems in collaboration with various stakeholders.

Responsibilities
  • Identify opportunities for AI adoption within the Trust to benefit healthcare processes.
  • Secure and manage funding for AI and data analytics projects.
  • Provide technical assistance and resolve data-related issues.
  • Lead and implement complex AI projects impacting various Trust areas.
  • Collaborate with the AI Programme Manager and AI Specialist to deliver AI solutions.
  • Support and enhance operational management of AI and data projects.
  • Contribute to technical product documentation and AI system design strategies.
Benefits
  • Commitment to staff development and training opportunities.
  • Supportive environment fostering diversity and inclusion.
Requirements
  • Data analytics
  • AI project implementation
  • Technical support in AI systems
Preferable
  • Stakeholder collaboration
  • Risk assessment
  • Healthcare system knowledge
Job Details
  • Location: Stoke-on-Trent ST4 6QG, United Kingdom
  • Employment type: Full-time
  • In-person
Equal Opportunity

University Hospitals of North Midlands NHS Trust fosters a culture of inclusion and equal opportunities, aligning with core values co-created with staff and patients. Employees contribute significantly to healthcare delivery quality, mirroring support received for personal and professional growth.


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