At a Glance
- Tasks: Build AI systems that revolutionise insurance processes and enhance user experiences.
- Company: Join a high-growth InsurTech scale-up disrupting a $200B market.
- Benefits: Earn up to £165,000 with equity, health insurance, and generous leave.
- Other info: Work closely with founders and enjoy excellent career growth opportunities.
- Why this job: Make a real impact in a fast-paced environment while shaping the future of AI.
- Qualifications: 2 years in AI/ML with strong NLP experience and a passion for rapid deployment.
The predicted salary is between 80000 - 98000 £ per year.
Owen Thomas is partnering with a high-growth, venture-backed InsurTech scale-up that is disrupting a massive $200B global market. Using AI they deliver automation that is up to 3× faster than legacy industry standards allowing insurance companies to act quicker and save millions. The company has found a niche within a niche and is already proving to be valuable to some of the world's leading insurance firms. Because of this, they have been backed by some of Europe’s and Silicon Valley's most prestigious venture capital firms. As they scale towards their next major milestone, they are seeking a Machine Learning Engineer to help build the AI platform powering the future of automated operations. This is a full-time, office-based role in Central London, joining a high-intensity, mission-driven team that thrives on high performance and rapid execution.
What will you be doing?
- Building intelligent systems that improve operational accuracy, accelerate assessments, and enhance user experience.
- Collaborate closely with domain specialists to translate complex, manual processes into AI-driven workflows.
- Deploy, monitor, and scale machine learning solutions in a production environment.
- Help shape the technical culture and engineering team from the ground up.
- Work side-by-side with the founding team, learning exactly how to scale a business from 0 to 1.
Requirements
- 2 years of commercial experience in AI/ML engineering or applied research.
- Strong experience working on NLP projects.
- A proven track record of shipping AI/ML projects from initial concept to live production, driving core business metrics.
- A passion for high-velocity deployment—you love shipping code quickly.
- Strong communication skills and the ability to collaborate effectively with non-technical stakeholders.
- Comfort operating in ambiguous, rapid-growth, and high-velocity environments.
What's in it for you?
- Highly competitive base salary of up to £165,000.
- Generous, transparent equity participation.
- Comprehensive health insurance and pension contributions.
- 28 days annual leave (plus bank holidays).
- 30 days of remote working flexibility per year.
- Full Skilled Worker visa sponsorship available for the UK.
If this sounds like something you would be interested in, drop over your CV and we will give you a call if we think you are a good fit!
Locations
Machine Learning Engineer, NLP | InsurTech, AI, Scale-up | London 5 Days in Office, Up to £165,000Stocks & Benefits employer: Owen Thomas | B Corp™
Join a dynamic InsurTech scale-up in Central London, where innovation meets opportunity. With a competitive salary of up to £165,000, generous equity participation, and a culture that prioritises high performance and rapid execution, you'll be part of a mission-driven team transforming the insurance industry through AI. Enjoy comprehensive benefits, including health insurance, pension contributions, and flexible working arrangements, all while collaborating closely with industry leaders to shape the future of automated operations.
StudySmarter Expert Advice🤫
We think this is how you could land Machine Learning Engineer, NLP | InsurTech, AI, Scale-up | London 5 Days in Office, Up to £165,000Stocks & Benefits
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We think you need these skills to ace Machine Learning Engineer, NLP | InsurTech, AI, Scale-up | London 5 Days in Office, Up to £165,000Stocks & Benefits
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