Data Analyst

Innovation Group
City of London
1 month ago
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Overview

Vacancy: Data Analyst. Location: London. Employment Type: Permanent.

We are Ki, an innovative, data-led insurance business. Ki’s mission is to digitally disrupt and revolutionise a 335-year-old market, working with partners like Google and UCL to build analytics-led products that support strategic business goals.

Responsibilities
  • Bring experience building dashboards in a modern BI and Python to support the development of data visualisation initiatives, including design, build and maintenance to meet business requirements and user needs.
  • Generate valuable data insights for the business, and identify opportunities to use data science/engineering techniques to extract value from internal/external data assets to enrich analytical capabilities.
  • Utilise statistical techniques (e.g., regression, clustering, correlation analysis) as part of the role where applicable.
What you will be doing

Work at the intersection of analytics, engineering and product. Collaborate within and across teams to support and drive design, development, and optimization of analytics, data models, reports, and other data-driven products that support strategic business goals.

Recruitment process
  1. Initial recruiter screening call
  2. Interview with hiring manager
  3. Technical interview (scope may vary by role)
  4. Values interview
Ki Values
  • Know Your Customer: Put yourself in their shoes. Understand and balance the different needs of our customers, acting with integrity and empathy to create something excellent.
  • Grow Together: Empower each other to succeed. Recognise the work of our teams, while celebrating individual success. Embrace diverse perspectives so we can develop and grow together.
  • Be Courageous: Think big, push boundaries. Don’t be afraid to fail because that’s how we learn. Test, adapt, improve – always strive to be better.
Our culture

Ki is committed to creating an inclusive environment where every colleague is valued and respected for who they are and can do the best work of their careers. Inclusion is a critical foundation of our business and people strategies, supporting our vision of becoming a market-leading, digital and data-led specialty insurance business. An inclusive workplace fuels innovation because creativity thrives when everyone feels valued, respected, and supported to drive it.

What we offer

You’ll receive a highly competitive remuneration and benefits package. This is kept under constant review to remain relevant. We understand the power of saying thank you and take time to acknowledge and reward extraordinary effort by teams or individuals.

If this sounds like a role and a culture that appeals to you, apply now!


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