Business Intelligence Analyst

SIX Group Services Ltd.
London
1 week ago
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Business Intelligence Analyst

London, Madrid, Warsaw | working from home up to 40% | Reference 7368


Are you ready to make an impact in the fast‑paced world of financial data? Join our Global Risk, Regulatory & Rights Management team at SIX and help us drive our ambitious growth. We are looking for an organized, motivated self‑starter who thrives with minimal supervision and enjoys tackling exciting challenges.


In this role, you will take ownership of Data Compliance, supporting the implementation of market and reference data, advising on product configuration, and managing entitlement set‑up. You will play a key part in intellectual property rights management, ensuring accurate traceability from data intake to customer delivery. Your expertise will support both client‑facing and back‑office teams, making you a vital link in our data value chain.


If you have a solid understanding of financial services, a keen interest in intellectual property rights, and a knack for technical infrastructure, we want to hear from you! Strong MS Excel and SQL skills, analytical thinking, and a hands‑on, pragmatic approach will set you up for success in this exciting opportunity.


What You Will Do

  • analyze Data Suppliers’ data product packages and license agreements on intellectual property rights
  • communicate and negotiate with Data Suppliers on intellectual property rights management
  • review changes in data processing for impact on intellectual property rights
  • take responsibility and guide Business Analysts, Development, and Data Licensing Management team on data implementation
  • participate in projects as a subject‑matter expert by providing internal consulting on intellectual property rights management and entitlement capabilities

What You Bring

  • Masters or bachelor’s degree with working knowledge of topics such as market data, reference data, data vendors, and information management
  • Minimum of 5‑7 years’ experience within financial services, at least 3 of which working in a market data team demonstrating strong knowledge of market data suppliers and vendors
  • High commitment to qualitative, reliable, structured and independent working methods
  • Demonstrate effective technical skills to bridge the business and technical requirements of the role
  • Customer focus and good communication skills with German, French and/or Spanish being an additional asset

If you have any questions, check out our FAQ page or call Anthony Mills at .


For this vacancy we only accept direct applications in English.


Diversity is important to us. Therefore, we are looking to receiving applications regardless of any personal background.


What We Offer

Flexible Work Models
We trust our employees and offer a work environment that is well‑balanced, productive and fosters success.


Personal Development
You will benefit from a culture of continuous learning and feedback. Your personal growth is supported through an extensive learning offering.


Agile Working Methods
Whether through scrum or design thinking,
we solve exciting tasks together in teams.



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