Senior Business Intelligence Developer

JSS Search
London
1 month ago
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Overview

Senior Business Intelligence Developer role at JSS Search. Hybrid – 3 days per week in office (London).

We’ve partnered with an innovative data start‑up that delivers SAAS and AI solutions to household name clients. This role offers ownership of the visualisation layer of the client’s licensed products, focusing on storytelling, UX and interactive pieces. You will collaborate with Data Scientists, Product Owners and AI Engineers to bring analytics to life.

This is an ideal role for someone who wants to tackle complex challenges beyond dashboards and join a high‑performing team.

Role requirements
  • Exceptional ability with tools such as Power BI, DAX, and SQL
  • Experience with UX principles and delivering user‑friendly analytics
  • 3 years’ experience in a Power BI or similar role
  • Mathematics or STEM degree (2:1 or above) from a UK university
Interview process
  • Technical interview (SQL and Power BI)
  • In‑person team fit interview (2 hours)
Seniority level
  • Mid‑Senior level
Employment type
  • Full‑time
Job function
  • Consulting, Information Technology, and Analyst
Industries
  • IT Services and IT Consulting, Data Infrastructure and Analytics

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