Temporary GCP Data Engineer

Innovation Group
City of London
1 month ago
Applications closed

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Job Details: Temporary GCP Data Engineer

Full details of the job.


Vacancy Name


Vacancy Name Temporary GCP Data Engineer


Employment Type


Employment Type Temporary Worker


Location


Location London


Role Details
Who are we?
Look at the latest headlines and you will see something Ki insures. Think space shuttles, world tours, wind farms, and even footballers’ legs.

Ki’s mission is simple. Digitally transform and revolutionise a 335-year-old market. Working with Google and UCL, Ki has created a platform that uses algorithms, machine learning and large language models to give insurance brokers quotes in seconds, rather than days.

Ki is proudly the biggest global algorithmic insurance carrier. It’s the fastest growing syndicate in the Lloyd's of London market, and the first ever to make $100m in profit in 3 years.

Ki’s teams have varied backgrounds and work together in an agile, cross-functional way to build the very best experience for its customers. Ki has big ambitions but needs more excellent minds to challenge the status‑quo and help it reach new horizons.

Where you come in? 👋
While our broker platform is the core technology crucial to Ki's success – this role will focus on supporting the middle/back‑office operations that will lay the foundations for further and sustained success. We're a multi-disciplined team, bringing together expertise in software and data engineering, full stack development, platform operations, algorithm research, and data science. Our squads focus on delivering high‑impact solutions – we favour a highly iterative, analytical approach.

You will be designing and developing complex data processing modules and reporting using Big Query and Tableau. In addition, you will also work closely with the Ki Infrastructure/Platform Team, responsible for architecting, and operating the core of the Ki Data Analytics platform.


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