Smart Health Data Architect for Next-Gen Hospitals

Lifelancer
Birmingham
1 day ago
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A leading project management firm is seeking a Smart Data Architect to lead data architecture for health construction projects in Birmingham. The ideal candidate will have proven experience in the healthcare domain and interoperability, ensuring alignment with cutting-edge technology and data governance frameworks. Join a dynamic team that values diversity and delivers solutions that make a difference. This full-time hybrid role offers competitive benefits and opportunities for professional growth.
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