Clinical Data Manager

Maidenhead
1 month ago
Applications closed

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Initial 12 month contract to be made permanent for the right candidate

1 day WFH per week

We are looking for an experienced clinical data analyst looking to take the next step in their career. This opportunity is a perfect opportunity for someone with key knowledge within clinical trials or similar technicalities looking to embrace and embark onto a new challenge.

Please see general duties within this role:

  • Collaborate with clinical study teams and other departments to prioritise tasks, allocate resources, and meet goals.

  • Support clinical studies by designing/reviewing CRFs, building/validating databases, creating data management documents, and managing laptop setups. Monitor tasks and metrics, providing status reports.

  • Establish, maintain, and advise on data systems for tracking study progress, providing feedback to teams as needed.

  • Review and update practices, ensuring compliance with regulatory standards. Contribute to procedure and guideline improvements.

  • Ensure compliance with Corporate and Divisional Policies and perform additional duties as assigned.

    Please see key accountabilities and expectations to have a successful application in this role:

  • Degree qualification within a relevant scientific subject.

  • Minimum of 4 years experience within a relevant field within the UK in order to understand UK regulations.

  • Commutable distance as well as a right to work within the UK (there is no possibility of sponsorship with this role).

  • Ability to work collaboratively as a team as well as comfortably independently.

    If this seems like the opportunity for you, please feel free to apply or reach out to Maisy at Peopleforce Recruitment

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