Data Analyst

Harnham
Manchester
1 month ago
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Data Analyst - Data Products | Up to £50,000 | Hybrid | Manchester

A leading financial services organisation is building a new Data Products team focused on creating self-service analytics solutions across the business.


About the Company

This is a well-established financial services organisation with a strong data-driven culture. Following significant investment in data and analytics infrastructure, they are building a dedicated Data Products function to deliver scalable analytics solutions. The organisation values innovation, collaboration, and continuous improvement.


The Role

As a Data Analyst in the Data Products team, you will build automated analytics solutions that enable self-service across the organisation. You will own end-to-end delivery from requirements gathering through to deployment, working with SQL, Python, and Power BI to create data products that solve business problems at scale.


Key Responsibilities

  • Work with stakeholders to understand requirements and translate them into scalable data products.
  • Extract, transform, and model data using SQL and Python.
  • Develop Power BI dashboards and reports that provide actionable insights.
  • Build self-service analytics solutions that enable stakeholders to access data independently.
  • Collaborate with Data Engineering teams to ensure data quality.
  • Drive best practices in data modeling, ETL processes, and dashboard design.
  • Document solutions clearly and support stakeholders with training.

Qualifications and Requirements

  • 2-3 years experience in data analysis, business intelligence, or analytics engineering.
  • Strong SQL skills including complex queries, joins, aggregations, and optimization.
  • Python proficiency for data manipulation and automation.
  • Power BI or Tableau experience including dashboard development.
  • Data modeling experience including dimensional modeling and star schema.
  • ETL and data transformation experience.
  • Stakeholder management skills.
  • Problem-solving mindset with ability to work independently.
  • Strong attention to detail and commitment to data quality.
  • Financial services, insurance, or regulated industry experience.
  • Agile or fast-paced environment experience.
  • Cloud platforms exposure (Azure or AWS).
  • Version control knowledge (Git).
  • Data governance and quality frameworks experience.

What's On Offer

  • Salary up to £50,000.
  • Hybrid working with 2 days per week in Manchester office.
  • Opportunity to shape a new Data Products function.
  • Work on high-impact projects with visibility across the organisation.
  • Collaborative team environment with strong learning culture.
  • Clear progression opportunities as the team grows.
  • Comprehensive benefits package including pension, life assurance, and healthcare.
  • 25 days annual leave plus bank holidays.
  • Professional development support.

Interview Process

  1. Initial conversation with Hiring Manager.
  2. Technical assessment and panel interview.
  3. Final conversation with senior leadership.

About You

You are a technically strong data professional who enjoys building solutions with real business impact. You are comfortable with SQL and Python, can translate complex data into clear visualizations, and have a product mindset focused on scalability and reusability. You are a strong communicator who can work effectively with stakeholders at all levels.



  • For more information or to apply, please get in touch.


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