Data Analyst - Power BI

Dartford
1 day ago
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Data Analyst – Power BI

Job Market – Data Analysis / Insurance Analysis

Data Analyst – Power BI – About the role

My client are seeking a detail-oriented and analytical Data Analyst with strong Power BI expertise to support data-driven decision-making across the organisation. The successful candidate will be responsible for transforming raw data into meaningful insights, developing dashboards and reports, and collaborating with internal teams to improve operational performance and strategic planning.

Data Analyst – Power BI – Key duties

Collect, clean, and analyse data from multiple internal and external sources.

Design, build, and maintain interactive dashboards and reports using Power BI.

Translate complex datasets into clear, actionable insights for stakeholders and for our end customer to use.

Develop and maintain data models, DAX calculations, and data transformations.

Monitor key performance indicators (KPIs) and provide regular reporting.

Work with cross-functional teams to understand business requirements and data needs.

Identify trends, patterns, and opportunities to improve operational efficiency.

Ensure data accuracy, integrity, and governance across reporting systems.

Support automation of reporting processes and improve data workflows.

Data Analyst – Power BI – The ideal candidate:

Degree in Data Analytics, Computer Science, Statistics, Business Analytics, or a related field.

Proven experience as a Data Analyst or Business Intelligence Analyst.

Strong proficiency in Microsoft Power BI, including:

Data modelling

DAX calculations

Power Query

Dashboard design and visualisation best practices

Experience with SQL for querying and manipulating data.

Strong analytical and problem-solving skills.

Ability to communicate technical insights clearly to non-technical stakeholders.

Advanced Excel skills (pivot tables, formulas, data analysis).

Attention to detail and strong organisational skills.

Desirable skills would include:

Experience with ETL processes and data pipelines.

Familiarity with Azure, Power Platform, or Microsoft Fabric.

Background in insurance

Experience working with CRM, financial, or operational datasets.

A strong understanding of Acturis

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