Data Analyst

Ossett
1 day ago
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Data Analyst / Leeds (Hybrid) / £30,000 - £35,000 + bonus

Are you a Data Analyst who enjoys turning messy data into meaningful insight? Do you want the opportunity to modernise a company's entire data platform and help drive a business towards becoming truly data-driven?

We're working with a growing organisation in Leeds that is investing in its data capability as part of a major modernisation programme. This role has been created to support the migration away from a legacy data platform and help build a modern cloud-based data environment.

You'll work closely with operational and leadership teams, helping improve data quality, reporting, and insight generation across the business. Over time, you'll also take ownership of core data management responsibilities as part of the company's long-term data strategy.

This is an excellent opportunity for someone early in their data career who wants to develop their skills, work on meaningful projects, and play a key role in shaping the company's future data platform.

What do we need from you?

2-5 years' experience in a data-focused role
Strong SQL skills with hands-on data manipulation experience
Excellent Excel proficiency (models, formulas, analysis, reporting)
Experience collecting, cleaning, validating, and analysing data from multiple sources
Strong attention to detail and analytical thinking
A proactive mindset with a genuine appetite to learn and developNice to have (not essential):

Experience with Power BI
Exposure to Data Warehousing concepts

Role Overview

As a Data Analyst, you will support the business by improving the way data is gathered, managed, analysed, and reported. You'll play a key role in transitioning reporting away from Excel and into more scalable BI tools while ensuring data quality and consistency across the organisation.

You'll collaborate with multiple teams across the business, helping them better understand their data and enabling more informed decision-making.

Key Focus Areas

Gather, clean, validate, and maintain data from internal and external sources
Conduct operational, financial, and project-level data analysis
Produce reports, dashboards, and KPIs for internal stakeholders and external customers
Support the migration of reporting from Excel into Power BI
Work with cross-functional teams to understand data requirements
Manage incoming data requests and tickets
Contribute to the transition from a legacy data platform to a modern cloud-based environment

Why join?

Opportunity to modernise and shape the company's entire data platform
Play a key role in helping the business become insight-driven
Exposure to modern data tools and technologies
Training and upskilling opportunities, including Power BI and other data platforms
Performance-related bonus
Hybrid working

Data Analyst / Leeds (Hybrid) / £30,000 - £35,000 + bonus

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