Summer AI Engineer Intern
London, England, United Kingdom
About Artificial
We’re building technology for the next generation of insurers.
At Artificial, we're not just building software. We're reshaping the future of the insurance industry. Our mission is clear – to leverage the best of today's technology and automation, revolutionising how insurers and brokers operate. By removing the mundane and repetitive, we're paving the way for innovation, efficiency, and most importantly – human-centric solutions.
You’ll be working with talented people, using the latest technology in an environment where learning is supported. As an outcomes-focused business, taking ownership is not only expected but embraced, meaning the opportunity to create meaningful change is within your power.
In 2024 we secured £8M in Series A+ funding, led by Europe’s premier publicly listed fintech fund, Augmentum Fintech, with participation from existing investors MS&AD Ventures and FOMCAP IV. Join us, and take the chance to be a part of something that will change the landscape of insurance for generations.
Your Role and Responsibilities
- Research, design, test, and implement novel algorithms and machine learning models for efficient document data extraction
- Collaborate with the Data Team to refine and optimise existing models for real-world applications
- Analyse model performance, troubleshoot, and propose solutions to enhance accuracy and efficiency
- Contribute to brainstorming sessions to push the boundaries of AI applications in insurance
This role offers a unique opportunity to gain practical experience in AI while directly impacting the evolution of data processing in insurance.
Requirements
For candidates at Imperial College London studying one of the following courses:
- MEng Computing
- MEng Joint Maths Computing
- MSc Artificial Intelligence
- MSc Artificial Intelligence Applications and Innovation
Tags: FinTech Machine Learning ML models Research
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