SC & NPPV3 Data Analyst

IO Associates
London
2 days ago
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SC & NPPV3 Data Analyst
Type: Perm | Onsite
We're hiring an SC or NPPV3 Cleared Data Analyst to join an intelligence-led technology and analytics organisation delivering mission-critical data capabilities across commercial and government sectors.
Our client partners with public and private sector organisations to provide advanced analytics, secure digital solutions, and data-driven insights that support complex, high-stakes decision-making environments.
This is not traditional reporting.
Your analysis will inform leadership decisions, shape commercial strategy, and directly influence revenue and operational performance across the business.
If you're motivated by ownership, visibility, and turning complex data into decisive action, you'll thrive here
Key Responsibilities
Analyse and interpret complex datasets to support decision-making
Design and maintain dashboards and visualisations using Power BI & Tableau
Use SQL to query and extract actionable insights
Partner with Finance, Sales, Marketing and Operations teams
Support forecasting, pricing strategy and commercial modelling
Ensure data accuracy, governance, and compliance across reporting
What You'll Bring
Active SC Clearance OR NPPV 3 Preferred
Strong experience in data analysis and reporting
Hands-on Power BI and/or Tableau dashboard development is essential
Solid SQL skills required
Commercial and financial awareness
Excellent stakeholder communication skills
Be the person the business relies on when the numbers need to tell the truth. Step into a role where your insight leads decisions.

TPBN1_UKTJ

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