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Lead Data Engineer

IBAM Consulting A Sunday Times 100 Best Small Company
City of London
1 week ago
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Lead Data Engineer - London - £85-90K - Investment Management / Asset Management

Power BI/ MS Fabric/ SQL/ Python #


A Data Lead Engineer is required to join an Investment Management client in London. The successful canddiate will go in and shape the firm’s data strategy, working closely with investment, and investment operations to understand data requirements and deliver effective solutions. You will also be responsible for leading projects, mentoring others on data practices, and driving innovation in how we collect, structure, and use data across the firm.


Ideally you will have have Investment or Asset Management experience.


We’re looking for someone who brings the following skills and experiences:

  • Proven experience in managing complex databases and developing API interfaces.
  • Strong proficiency in SQL and Python for data processing and automation.
  • Ability to handle large-scale data operations involving millions of data points daily.
  • Advanced Excel, SQL, and experience of reporting and business intelligence tools preferably Power BI.
  • Experience in leading projects.


Apply today for immediate consideration

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