Power BI Data Analyst

Essential Employment
Greater London
8 months ago
Applications closed

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Power BI Data Analyst

Power BI Data Analyst

Power BI Data Analyst

Senior Power BI Data Analyst

Data Analyst - Power BI

BI Data Analyst

Power BI Data Analyst needed in North London Paying £26 per hr ref 1545745

Full time hours on a temporary basis


We are seeking a skilled Power BI Data Analyst to join our data-driven team. You will be responsible for transforming raw data into actionable insights through interactive dashboards and reports that support strategic decision-making.

Key Responsibilities:

Design, develop, and maintain Power BI dashboards and reports
Analyse complex datasets to identify trends, patterns, and insights
Collaborate with stakeholders to gather requirements and deliver data solutions
Ensure data accuracy, consistency, and security
Optimize data models and queries for performance

Requirements:

Proven experience with Power BI, DAX, and Power Query
Strong SQL skills and understanding of relational databases
Ability to translate business needs into technical solutions
Excellent analytical and problem-solving skills
Experience with Excel, data warehousing, or Azure is a plus

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