Data Analyst

DBD International
Warrington
2 days ago
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Role summary

As a Data Analyst, you will transform complex data into clear, meaningful insights that support decision-making across the business. Using Power BI, SQL, and Python, you will develop high-quality reports and dashboards, ensure data integrity, and work closely with cross-functional teams to deliver accurate, actionable analysis within a highly regulated engineering environment.

What you will be doing
  • Developing clear, insightful, and visually engaging dashboards, reports, and data visualisations using Power BI to support informed decision-making.
  • Analysing and manipulating data using SQL and Python to identify trends, patterns, and actionable insights.
  • Supporting the definition and refinement of key performance indicators (KPIs) and metrics to track business and technical performance.
  • Collaborating with engineering, project management, and consultancy teams to understand requirements, shape analytical approaches, and communicate findings.
  • Monitoring data quality, identifying anomalies, and implementing controls to maintain data accuracy, consistency, and integrity.
  • Providing training, guidance, and ongoing support to users of data platforms and analytics tools.
Formal qualifications or training

We’d love to hear from you if you have hands‑on experience in data analysis, manipulation, and visualisation. Strong experience using a Microsoft data technology stack (including Power BI and SQL) is essential, with working knowledge of Python for analysis and automation highly desirable.

Make a Difference with DBD

At DBD, we know you're looking for more than just a job - you aspire to make a real impact in the nuclear industry. We offer unique opportunities for growth, empowering you to take influential roles within client organisations.

Our dedicated team collaborates with clients to positively influence projects across Defence, Decommissioning and New Builds. Having doubled in headcount year-on-year,over the past two years, we continue to welcome new, talented individuals to our team.

We're committed to your success. DBD invests in your development and supports your career trajectory in any direction you want to take it.

Join us to play a key role in shaping the nuclear sector's future.

Make a difference today with DBD.

Benefits

up to 20% bonus, 25 days holiday, enhanced pension, private health insurance, private dental, and more


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