Lead Data Manager | Healthcare Sector | Cambridge

Cambridge
10 months ago
Applications closed

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Data Management Director – Healthcare Sector (15-Month FTC)
Location: Hybrid – 2 days per week in Cambridge
Contract: 15-month maternity cover (full-time, 37.5 hours per week)

I'm recruiting for a Data Management Director to lead clinical trial data strategy, regulatory compliance, and team leadership in a healthcare organisation. This role offers the opportunity to oversee data management and data science functions while working cross-functionally to ensure the successful delivery of clinical data services.

Key Responsibilities:
Lead data management and data science teams
Oversee budgets, resources, and stakeholder relationships
Ensure regulatory compliance and manage database design
Drive process improvements and business development initiatives
Mentor and train junior team membersWhat We're Looking For:Essential:

Postgraduate degree (Master’s or higher)
Experience leading data management in clinical trials or healthcare
Strong technical expertise in Python, SQL, Databricks, and ETL/ELT frameworks
Knowledge of regulatory requirements (ICH-GCP, FDA, EMA)
Excellent leadership, project management, and problem-solving skillsDesirable:

Experience with CDISC standards or clinical research
Familiarity with EDC systems and GCP guidelinesWhat’s on Offer:
Competitive salary and benefits package
Hybrid working – 2 days per week in the Cambridge office
26 days holiday plus bank holidays, with a holiday buy/sell scheme
Private health and dental insurance, life assurance, and pension contributions
Flexible working and career development opportunitiesIf this sounds like the right opportunity for you, get in touch to find out more or apply today

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