Compliance Analyst

Ntrinsic Consulting
Liverpool
10 months ago
Applications closed

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Location: 100% REMOTE

Duration: 2nd April - 31 December 2025

Rate: £45-55 per hour + holiday pay (Inside IR35 - you would be payrolled by Ntrinsic, similar to an umbrella agreement)


We are looking for an experienced Compliance Analyst for a fully remote contract opportunity with our client in the Financial Services sector.


If you are available to start early April and have the following experience, please get in touch:


Key Skills:

  • Supporting and coordinating the design and implementation of Compliance frameworks including but not limited to:
  • Compliance Risk Assessment processes
  • Policy and procedure management
  • Compliance training programmes
  • Regulatory engagement
  • Governance and oversight arrangements
  • Advisory, primarily related to the FCA Handbook

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