Data Analyst

McGregor Recruitment
Belfast
3 days ago
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Contract Data Analyst - Investment Bank - Belfast (3 days onsite)
£500-£525/day - 11 months - Inside IR35

We're hiring a Data Analyst to join the Markets Program Execution & Transformation - Data Acquisition Team at a leading Investment Bank.

You'll work across regulatory and transformation initiatives that span multiple trading desks, functions, and stakeholders. You'll build PySpark and SQL queries to interrogate, reconcile and analyse data, contribute to Hadoop data architecture discussions, and help improve reporting processes and data quality. You'll be hands-on across technical delivery, documentation, testing, and stakeholder engagement.

It's a technically rich and strategically important role that involves high-impact project work at one of the world's most complex financial institutions.

Key Skills:

  • Strong hands-on experience with SQL, Python, Spark
  • Background in Big Data/Hadoop environments
  • Solid understanding of ETL/Data Warehousing concepts
  • Strong communicator, with the ability to explain technical concepts to senior stakeholders

Details:

  • Location: Belfast - 3 days/week onsite
  • Contract: 11 months
  • Rate: £[fill in]/day
  • Inside IR35

Apply now to discuss further.


McGregor Boyall is an equal opportunity employer and do not discriminate on any grounds.


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