Lead Data Analyst

James Andrews Technology
Oldham
1 day ago
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Our client, a not-for-profit Housing Association, is building their Data and Insight team to support their transformation into a data-led organisation. They need a Lead Data Analyst to deliver high-impact analysis, develop predictive models, and help build their in-house analytics capability.

You'll lead analytical projects across the organisation, from strategic forecasting to service reviews. This is a hands-on role where you'll build and deploy predictive models to anticipate demand, reduce risk, and support future planning. You'll work with colleagues across housing, asset management, finance, and customer services to enable smarter decision-making through data.

A key part of this role is mentoring junior analysts and growing their small analytics team. You'll help create a culture of curiosity and continuous improvement whilst supporting their broader data strategy and transformation journey.

Key Responsibilities
  • Lead analytical projects from strategic forecasting to service reviews
  • Build and deploy predictive models to anticipate demand and reduce risk
  • Work with teams across the organisation to support data-driven decisions
  • Support the design and delivery of their data strategy and transformation
  • Mentor junior analysts and help build their internal analytics capability
  • Support the Data Governance team to drive high-quality data standards
Technical Requirements
  • Strong experience in data analysis and visualisation using Power BI, Excel, and SQL
  • Hands-on knowledge of predictive modelling techniques such as regression analysis, clustering, or forecasting
  • Experience with Python or R is beneficial
  • Familiarity with cloud-based data environments such as Microsoft Azure, AWS, or Google Cloud
  • Confidence working with large, complex datasets including data cleansing, transformation, and validation
  • Understanding of data governance principles including data quality, security, and compliance
  • Ability to engage with colleagues across the business, both technical and non-technical
  • Strong communication skills to translate technical data into meaningful insights for different audiences
  • Natural problem-solver with curiosity, creativity, and attention to detail
  • Proven experience in mentoring or coaching others
  • Comfortable managing multiple projects and priorities with a flexible approach


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