Senior Data Analyst

Find Recruitment
Canterbury
1 day ago
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Your new company:

Join a well established financial services organisation committed to building long term customer relationships and fostering a strong, inclusive team culture. With a flat structure and collaborative environment, you will work closely with leaders across Credit, Product, Marketing, IT and frontline teams to strengthen data capability and support strategic decision making.


Your new role:

As a Senior Data Analyst, you will play a key role in delivering timely, accurate analytics and reporting to enable business strategy. Working closely with the Lead Data Analyst, you will help identify data gaps and opportunities, uplift reporting capability, and contribute to building a modern, future ready data environment.


Responsibilities:

  • Deliver high quality analytics, reporting and insights to business stakeholders
  • Translate complex data into clear visual stories using Power BI
  • Perform data extraction, modelling and advanced analysis
  • Develop and maintain dashboards and self-service reporting solutions
  • Support the evolution of the data strategy and roadmap
  • Contribute to data governance, data dictionaries and master data management
  • Collaborate with Data Engineers to test and productionise solutions
  • Manage source control and versioning using Azure DevOps and Git
  • Engage with stakeholders across the organisation to understand and meet business needs

Requirements:

  • 5+ years' experience in data analytics
  • Tertiary qualification in Data, Computer Science, IT, Statistics, Information Systems, Business or similar
  • Experience within a financial institution
  • Advanced SQL skills
  • Advanced Excel skills including data modelling and complex formulas
  • Strong Power BI or similar visualisation tool experience
  • Experience working with large datasets in Microsoft SQL Server and or Snowflake
  • Experience with dimensional data models
  • Strong stakeholder engagement and communication skills
  • High attention to detail and strong problem-solving ability

Perks and benefits:

  • 2-year fixed term stability
  • Exposure to senior leadership including executive level stakeholders
  • Opportunity to shape and uplift data maturity across the organisation
  • Supportive and collaborative team culture

If this sounds like you then HIT APPLY NOW! You must have a valid working visa for NZ.


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