Data Analyst

iO Associates
Leicester
11 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Location:Leicestershire
Salary:Up to £46,000 + Bonus & Benefits
Working Pattern:5 days a week onsite



About the Role

We are looking for a Data Analyst to join a dynamic and growing team within a well-established organisation. This is an exciting opportunity for someone who enjoys working with large datasets, automating processes, and delivering high-quality reporting solutions using modern tools and technologies.

In this role, you will support key business functions, ensuring the accuracy, integrity, and efficiency of data reporting. If you are a problem-solver with a passion for data and process improvement, this could be the perfect role for you.

Key Responsibilities

Design and maintain robust data pipelines and models to enhance reporting processes. Ensure consistency, accuracy, and completeness in business data reporting. Streamline reporting workflows, integrating failure checks and monitoring solutions. Take ownership of issues and drive timely resolutions. Work closely with internal teams, providing meaningful insights to support key business decisions. Identify and implement enhancements to optimise data analysis and reporting.

What We're Looking For

Proficient in SQL (T-SQL / S-SQL). Strong skills in Excel, including Power Pivot and Power Query, with the ability to handle complex datasets. Ability to interpret business data and provide clear, concise insights. Two to five years of experience in a large organisation, ideally within a commercial or corporate environment. Confident working with both technical and non-technical stakeholders. A collaborative approach and ability to work effectively within a team.

Desirable Skills

Experience with Power BI for data visualisation, including DAX, M language, or Power Query. Familiarity with Azure Data Lakes and its application in data analytics. Experience working on Data Bricks Knowledge of SSRS reporting tools. A willingness to learn or experience with statistical languages such as Python or R.

This is an opportunity to be part of a leading organisation that values innovation and professional growth. You will work in a fast-paced environment where your contributions will have a real impact on business performance. Alongside acompetitive salary of up to £46,000, you will benefit from a generous bonus scheme, excellent career progression opportunities, and a supportive team culture.

Apply today to take the next step in your data career.

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