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Senior Data Analyst

Zurich Insurance
Manchester
6 days ago
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Overview

Role: Senior Data Analyst at Zurich Insurance

Working Hours: This role is available on a part-time, job-share or full-time basis

Location: Flexible, UK

Closing Date: 14 October 2025

What you will be doing
  • Forecasting experience is beneficial for predicting trends and supporting business planning
  • Use machine learning models and statistical analysis to extract insights from data
  • Develop data pipelines to support the automation of data reporting
  • Collect and analyse data from various sources to identify patterns, trends, and correlations
  • Create and deliver reports and visualizations to communicate insights and findings to stakeholders
  • Collaborate with business partners to understand their needs and identify opportunities for data-driven decision making
  • Identify and implement data quality improvements
  • Provide technical leadership to other team members
Who we are looking for
  • A degree in a science-related subject is beneficial, but not essential—equivalent experience or a passion for data is equally valued
  • Experience in a data related role (Engineering, Analyst or Data Scientist)
  • Strong programming skills in SQL or/and Python
  • Experience with data manipulation, data visualization, and statistical analysis
  • Excellent communication and interpersonal skills with the ability to explain complex analytical concepts to non-technical stakeholders
  • Experience in the insurance industry or related field is a plus
  • Snowflake experience is beneficial, but not essential—we value your willingness to learn more than a perfect skill match
  • Comfortable with dealing with ambiguity
  • Self-motivated and delivery focussed
  • Ability to confidently challenge and influence others
What you will get in return

Zurich offers a wide range of employee benefits so our people can choose what fits their life. Benefits can provide real flexibility to tailor choices throughout the year. Typical benefits include a 12% defined non-contributory pension scheme, annual company bonus, private medical insurance, and the option to buy up to an additional 20 days or sell some of your holiday.

For more information about our benefits, please refer to the Employee benefits section of Zurich Insurance UK.

Our culture

At Zurich we aspire to be a responsible and impactful business and the best global insurer. We emphasise diversity and inclusion, ensuring everybody is welcome regardless of background, beliefs, or culture. We are committed to fair treatment of all applicants and to continuous wellbeing and development opportunities. We also support volunteering and charitable activity through our Zurich Community Trust.


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