Principal Clinical Data Science Lead for Trials & CRO

ICON
Reading
3 weeks ago
Applications closed

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Lead Data Scientist (Healthcare) - Onsite UK Clients

Lead Data Scientist (Healthcare) - Onsite UK Clients

Lead Data Scientist (Healthcare) - Onsite UK Clients

Lead Data Scientist (Healthcare) - Onsite UK Clients

Lead Data Scientist (Healthcare) - Onsite UK Clients

Lead Data Scientist (Healthcare) - Onsite UK Clients

A leading healthcare intelligence organization is seeking a Principal Clinical Data Science Lead to provide leadership in data management for clinical trials. Key responsibilities include overseeing data management deliverables, ensuring compliance with regulations, and managing CROs. The ideal candidate has 8+ years of experience in data management, holds a relevant degree, and possesses strong analytical and communication skills. The role offers competitive salary and various benefits focused on well-being and work-life balance.
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