Senior Business Intelligence Developer

Hays
London
1 month ago
Applications closed

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Job Description

About the role

As a Visualisation Engineer- MRO AI Solution, youwill design and build enterprise-grade visualisations that deliver actionable insights at speed for client initially, whilst ensuring frameworks can scale across all OpCos. This role demands consultancy-level frontend engineering expertise and the ability to balance velocity with strong engineering standards and discipline.

Tell me more, tell me more…

Our client is currently looking for a new recruit in joining their team, please read on!


You can also ask our friendly recruitment team any questions you may have about the role, between 8:30am-5:30pm Monday to Friday.


Shifts: Monday – Friday (37.5 hours per week)

Experience and Skills Required:

  • 10+ years in enterprise frontend engineering in AI/data environments.
  • Expertise in Tableau and/or PowerBI for rapid prototyping and stakeholder engagement
  • Deep hands-on experience with modern frontend frameworks (React, Next.js, Typescript, etc)
  • Hands-on experience with cloud platforms (AWS preferred); familiarity with scalable deployment and integration
  • Strong knowledge of API integration.
  • Proven experience in developing, testing, and deploying robust frontend solutions into production...

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