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Data Science Manager (Remote)

Lorien
London
1 day ago
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Senior Data Consultant / Scientist KPI Dashboarding (Contract) Hybrid (Remote + 1 day/week in Heathrow)
Our client is launching a new engineering workstream focused on building a KPI dashboard to support transformation initiatives. They are seeking a Senior Data Consultant / Scientist for a short-term contract to lead the dashboard development and embed it into an existing programme.

Design and build KPI dashboards using Power BI or Tableau
Integrate backend data sources (Excel and others) into visual outputs
Define KPIs, identify data sources, scope dashboard requirements, and iterate with stakeholders
Ensure data quality through modelling, cleaning, and verification
Expert-level proficiency in SQL , Power BI , and Tableau
Strong experience in data visualisation and dashboarding
Solid understanding of data modelling , data cleaning , and data verification
Comfortable accessing and transforming data into actionable insights

Immediate must be able to start w/c 17th November (no notice periods)
Location : Remote-first with 1 day/week in the Heathrow office for workshops and stakeholder engagement ideal for candidates based in the South of England

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