Data Scientist KTP Associate

University of Salford
Salford
1 day ago
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Opportunity Overview

This post is a dynamic role that will develop bespoke AI-driven tools to automate motor insurance claim analysis, enhancing efficiency and accuracy. The KTP will embed advanced machine learning capabilities, reduce case turnaround times, and unlock scalable growth, transforming data handling in the UK's high-volume, fraud-prone motor insurance sector.

The position will be based at the company premises in Staffordshire, (ST18) working across departmental teams to ensure the work is embedded effectively, delivering internal training and creating documentation to support long-term adoption.

Key Responsibilities

This project presents a multifaceted challenge, offering substantial opportunities for technical, commercial, and professional development.

You will be responsible for designing and implementing bespoke AI models, capable of extracting structured data from complex, unstructured legal documents.

You will also need to manage multimodal datasets and ensure the models meet high standards of accuracy, fairness, and compliance. A key challenge will be understanding the complexity of the motor insurance industry, including the end-to-end process and navigating regulatory frameworks, requiring rapid learning and close collaboration with domain experts.

The key objectives for this KTP Project are the following:

  • To gain a deep un...

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