Data Analyst

Niyaa People Ltd
Manchester
3 days ago
Create job alert

Join a well-established Housing Association in a rewarding role that truly makes a difference, on a rolling contract with consistent, stable work. This Repairs Data Analyst position offers the opportunity to work on a key materials project, providing analytical insight across data to support operational performance, process compliance, and materials purchasing within the organisation.
You’ll be delivering high-quality analysis and reporting, ensuring data accuracy, and producing actionable insights that support decision-making across Repairs, Facilities Management, Grounds Maintenance, and the Distribution Centre. This is a great role for someone who enjoys working with data, identifying trends, and communicating findings to a variety of stakeholders.
We’d love to hear from anyone with a background in data analysis, performance monitoring, or project support, especially if you have experience within housing or facilities management and are passionate about helping teams work more efficiently through data-driven insight.

As a Repairs Data Analyst, you will be:

Ensuring data collected and managed by the Distribution Centre team is accurate, reliable, and up to date
Collating, organising, and analysing datasets to provide operational and business insight
Identifying trends across data to inform investigations, surveys, or planned programmes of work
Producing clear and accurate analysis and reports aligned to project objectives
Creating visualisations to communicate findings effectively to key stakeholders
Supporting quality assurance of performance information and maintaining data integrity
Providing accurate, timely, and relevant business-critical information
Supporting the project and department with additional duties as requiredI’d love to speak to anyone who has:

Experience working with large datasets, analysing information, and presenting results
Advanced skills in Microsoft Excel, with proficiency across the full Microsoft Office suite
Experience of project management or working on data-driven projects
Desirable experience with asset or property data within the housing sector
Advantageous skills in SQL, Power BI, or data warehouse reporting
Strong attention to detail, methodical and analytical approach
Excellent communication and stakeholder liaison skills
The ability to work independently, meet deadlines, and deliver high standards under pressureKey requirements for this Repairs Data Analyst role:

Reliable and accountable for personal targets and workload
Well-organised with strong time-management skills
Committed to personal development and learning
Collaborative and professional, demonstrating integrity, inclusivity, and respect for diversityThe role is offering the following benefits:

Rolling contract with consistent, stable work
Hybrid working 2 days in the office
A meaningful role supporting operational efficiency and business insight
Opportunity to work collaboratively across multiple teams within the organisationPay & Location

£20–£23 per hour via umbrella
Based in Manchester, working across the Repairs and Distribution Centre teams
Good travel links and accessible location for commutingIf this Repairs Data Analyst role sounds like your next opportunity, please apply now or contact Tiyana at (url removed)

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