BI Data Analyst

Poole
1 year ago
Applications closed

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Role: BI Data Analyst

Salary £30,000 - £35,000 DOE

Location: Poole (onsite)

The Client supplies a comprehensive range of quality wholesale meat, poultry, game and deli products. We have a proven track record in supplying a diverse customer base including Restaurant Groups, Airlines, Cruise Ships, High Street & Catering Butchers, UK Multiples and Online Businesses.

We are currently seeking a BI Data Analyst to join our IT team. You will be at the forefront of analysing and interpreting data, creating dynamic reports and dashboards and communicating findings to the IT Manager.

What We Offer:

Life Assurance Policy
Discounted meat hampers
Employee Assistance Programme which includes offers and discounts for shops and restaurants
Growing company with career progression opportunities within GroupKey Responsibilities:

Design and maintain our reporting infrastructure, deliver new reports, monitor performance, and ensure seamless data extraction and transformation.
Work closely with business leads to gather, interpret, and develop reporting requirements, ensuring our systems meet their needs.
Develop tools to combine data from multiple sources, creating a unified view for better decision-making.
Build and maintain dashboards that showcase activity, trends, and projections for operational and strategic insights.
Implement improvements to maximise data quality, identifying and resolving issues swiftly.
Provide technical expertise in data management and reporting, becoming the go-to expert in reporting systems.
Generate significant intelligence reports to support managerial decision-making, ensuring data is well-documented and referenced.
Apply technical skills to interpret complex data models, identify quality issues, and derive actionable insights.
Summarise complex data analysis and present findings to various audiences, making strategic recommendations.Skills and Experience:

Understanding of SQL databases and data warehouses.
Advanced knowledge of PowerBI, SQL, Excel, SSRS.
Ability to produce and present data analysis tailored to various users and technical levels.
Competent in interpreting and presenting complex data for strategic decision-making.
High numeracy and analytical problem-solving skills.
Excellent communication and teamwork abilities to develop and maintain reporting systems.Behaviours:

Able to communicate effectively with others.
Proven ability to work independently or within a team environment.
Capable or working under pressure in a busy environment.

In Technology Group Ltd is acting as an Employment Agency in relation to this vacancy

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