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Data Analyst and Systems implementation Lead

iMultiply
Edinburgh
3 days ago
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Data Analyst and Systems implementation Lead

Full-time, Permanent


Location: Edinburgh | Competitive Salary + Benefits


Are you passionate about data, technology, and driving business transformation? We’re working with a leading professional services firm seeking a Data Analyst & System Implementation Lead to join their Finance and Business Support team.


This is a unique opportunity to combine analytical expertise with system implementation skills, supporting Finance, HR, and Compliance functions while delivering high-quality data insights and leading system upgrades.


The Role

You’ll be responsible for extracting and analyzing data to produce meaningful management information, supporting strategic decision-making across the business. Alongside this, you’ll play a key role in system implementation projects—designing, configuring, and optimizing solutions to enhance operational efficiency.


You’ll collaborate with senior stakeholders, external technology providers, and internal teams to ensure systems deliver maximum value. Training and supporting users will also be part of your remit, helping the business adopt new technologies effectively.


What We’re Looking For

  • Strong experience in data analysis and reporting, ideally using Power BI and M365 Power Platforms.
  • Knowledge of financial reporting systems and controls; experience with Elite 3E or Xero is advantageous.
  • Familiarity with SQL, APIs, and file transfer methods (SFTP).
  • Excellent communication and stakeholder management skills.
  • A proactive, problem-solving mindset with the ability to manage multiple priorities.
  • Basic project management skills and experience in system upgrades or implementations.

Why Apply?

This role offers the chance to influence technology adoption and data strategy within a respected, forward-thinking organisation. You’ll work closely with senior leadership, gain exposure to major projects, and help shape the firm’s digital future.


iMultiply is committed to diversity and will promote diversity for all employees, workers and applicants. iMultiply will treat everyone equally and will not discriminate on the grounds of an individual's 'protected characteristic’. If you like the look of this vacancy and think you could perform the role, but you don't think you meet all the requirements, please DO APPLY for this opportunity. Data shows that certain groups, mainly women and people from Black and Minority communities, are less likely to apply for jobs where they don't meet 100% of role requirements. iMultiply would encourage you to apply for roles where there is room for development and growth.


For further information and a confidential chat, please contact Andrew Robinson at our Edinburgh office. M: E:


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