At a Glance
- Tasks: Lead a team to develop AI-driven analytics solutions and improve decision-making.
- Company: Join a forward-thinking financial services company with a focus on innovation.
- Benefits: Enjoy flexible working, competitive salary, and a generous pension scheme.
- Other info: Opportunities for continuous learning and professional development in a dynamic environment.
- Why this job: Make a real impact by transforming data into actionable insights and driving business success.
- Qualifications: Experience in data science, strong leadership skills, and proficiency in Python and SQL.
The predicted salary is between 60000 - 80000 £ per year.
Working hours: This role is available on a part‑time, job‑share or full‑time basis.
Location: Flexible – with some travel to our Swindon office where the UK Life team are based.
Closing date for applications: 19th June 2026.
The opportunity: As Senior Data Science & Analytics Lead, you will play a pivotal role in evolving our data function from strong management information delivery to a data science‑led, AI‑enabled capability that drives measurable improvements in decision‑making, operational efficiency and risk management. You will be accountable for developing and deploying predictive and statistical models across complex datasets, embedding advanced analytics and AI into core business processes to move from insight generation to automated, data‑driven decisioning. This includes ensuring solutions transition effectively from experimentation into robust, controlled and scalable production use. Combining strong people leadership with technical credibility, this role will build sustainable data science capability within the team, ensuring experimentation, modelling and AI adoption aligned to business priorities and governance expectations.
What will you be doing?
- Leadership & Team Management: Lead a team of analysts, supporting performance, development plans, and day‑to‑day prioritisation. Act as a role model for modern analytics practices, curiosity, and outcome‑focused delivery. Build and mature analytical and AI capability within the team, coaching analysts toward more advanced analytics, automation, and AI techniques using learning from apprenticeships and hands‑on delivery.
- Insight & Business Partnership: Partner with senior stakeholders across the UK Life Business and supporting functions to identify opportunities for deeper insight, automation, or improved decision‑making that deliver clear, actionable outcomes. Translate complex business questions into analytical approaches that deliver clear, actionable outputs. Own a prioritised insight and automation development pipeline aligned to business value and capacity.
- Analytics, Automation & AI Leadership: Lead the design and delivery of advanced analytics and data science‑driven solutions, including predictive insight, trend analysis, and decision‑support models. Shape and oversee the responsible use of AI and GenAI to automate insight generation, controls and repeatable MI processes. Act as the accountable lead for exploratory AI and advanced analytics use cases, ensuring appropriate governance, ethics, and risk considerations are met. Guide the transition from pilot and proof‑of‑concept into robust, scalable BAU solutions in partnership with Data Engineering, Governance and Architecture. Embed model lifecycle thinking, including documentation, validation, monitoring, and ongoing performance management where applicable.
- Ways of Working: Embed standards for documentation, validation, and handover into BAU. Champion efficient tooling (e.g. Power BI, Power Platform, SQL, Python) and automation‑first thinking. Promote reuse, simplification, and scalability across the reporting estate. Embed experimentation frameworks (e.g. controlled testing, monitoring, feedback loops) to safely trial and scale advanced analytics and AI‑enabled solutions.
What are we looking for?
- Essential: Strong experience applying advanced analytics or data science‑led approaches to ambiguous business problems within Financial Services or similarly regulated environments. Proven ability to lead and develop analysts while remaining technically credible. Hands‑on experience building and deploying predictive or statistical models in a business environment. Strong working knowledge of Python (or equivalent) for data analysis and modelling. Experience designing and applying experimentation techniques (e.g. A/B testing, hypothesis testing). Advanced skills in SQL and Power BI, including automation of data and MI workflows. Experience delivering analytical solutions from prototype into production environments. Confident communicator, able to influence stakeholders without relying on hierarchy. Experience working within structured delivery practices (e.g. agile/iterative delivery) including backlog and governance management using Azure DevOps or equivalent.
- Desirable: Experience scaling data science or analytics capability within a team or function. Exposure to cloud‑based data platforms or modern data ecosystems (e.g. Snowflake, AWS, Azure). Experience applying AI/GenAI techniques in a business context, including automation of insight generation or decisioning. Strong understanding of data governance, controls and regulatory considerations within Financial Services. Experience working in cross‑functional delivery models with Data Engineering, Architecture and Governance teams.
Qualifications & Learning: Degree (or equivalent experience) in a numerate or analytical discipline such as mathematics, statistics, data science, computer science, engineering, or a related field. Professional qualifications, certifications, or structured learning in analytics, data science, automation, or AI (e.g. cloud data platforms, analytics engineering, machine learning, or responsible AI) are desirable. Commitment to continuous professional development, including keeping pace with emerging analytics, automation, and AI practices, and supporting the learning of others through coaching, apprenticeships, or structured development pathways.
What will you get in return? We offer a wide range of employee benefits so our people can choose what fits their life. Our 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, alongside a range of other flexible benefits. We’re committed to treating all applicants fairly and with respect, irrespective of their actual or assumed background, sexual orientation, disability or any other protected characteristic.
Senior Data Science & Analytics Lead in Swindon employer: Zurich
As a Senior Data Science & Analytics Lead, you will thrive in a dynamic and inclusive work environment that champions innovation and professional growth. With flexible working arrangements and a strong emphasis on employee well-being, our company offers a comprehensive benefits package, including a generous pension scheme and private medical insurance, ensuring you can tailor your work-life balance to suit your needs. Join us in Swindon, where you'll lead a talented team in advancing our data capabilities while making a meaningful impact on decision-making and operational efficiency.
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We think you need these skills to ace Senior Data Science & Analytics Lead in Swindon
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