MI & Data Analyst

AmTrust International
Colchester
5 days ago
Create job alert
Overview

We’re Arc Legal and we’re a specialist provider of ancillary insurance products. We have more than 20 years’ of experience and as experts in our field, we are obsessed with delivering high quality ‘bespoke’ products and excellent customer service. In particular, we are one of the leading providers of legal insurance in the UK.

Role

As a MI & Data Analyst, you will play an important role in managing and analysing incoming data, preparing accurate reports, and supporting our Claims and Partnership teams. You’ll also help us improve and automate processes as we continue to develop our data strategy.

Qualifications

To be successful, you’ll need strong analytical and problem‑solving skills, confidence to work independently, and good Excel knowledge. Experience with tools like Power BI or programming languages such as SQL or Python is desirable but not essential. Insurance knowledge and a degree would be an advantage, but we’re also open to recent graduates with the right mindset.

For more information, click here for the job description. To show your interest, send us your CV and we will be in touch.


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