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Senior Software Engineer - AI, Big Data an

Oliver Bernard
London
3 days ago
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Senior Software Engineer - Gen AI 1 day a week in Central London, hybrid working
Salaries paying £90k-£125k + annual bonus

Oliver Bernard have partnered with a rapidly growing FinTech in London who are building the next generation of AI based financial products.

We are looking for Senior Software Engineers who have commercial experience with GenerativeAI and LLM integrations. You will be building Gen AI frontend agents and working with hybrid codebases with hosted prompts.

This is a full stack opportunity working in their Gen AI team, working across Python, TypeScript and React.

Tech Stack: Python, TS, React, React Native, Cloud, DevOps, AI/LLMs, Vector Databases.

The client are looking for someone to start as soon as possible and they are moving quickly with interviews!

Senior Software Engineer - Gen AI

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