Regulatory Affairs Manager

Verbatim Life Sciences
London
1 year ago
Applications closed

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Job Description

We are looking for a Quality Assurance & Regulatory Affairs manager for a cutting edge AI powered data science platform to be used in the life sciences industry.

You will play a pivotal role in supporting quality and regulatory efforts working closely with the team to meet regulatory requirements and tackle any QMS challenges.

Key Responsibilities:

  1. Regulatory compliance responsibilities within ISO 27001 & ISO 13485
  2. Management of the QMS to fit regulatory requirements
  3. Taking control of both external and internal audits
  4. Compliance responsibilities with HIPAA & SOC/2

What’s on offer:

  1. Competitive salary and package
  2. Opportunity to make a significant impact in a life changing industry
  3. Great progression opportunities
  4. Brilliant company culture
  5. Flexible working

Location:

  1. Central London
  2. Hybrid

Years of experience:

  1. 3+ years
  2. SaMD Experience

If you are a motivated Cybersecurity engineer looking to join a team that brings exceptional quality and innovation to the space, we encourage you to apply.

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