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ML/Data Engineer - AI

Oliver Bernard
London
4 weeks ago
Applications closed

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ML/Data Engineer - AI

B2B SaaS AI Start-Up

Pays £55k-£70k

1-day a week in Central London offices


ML/Data Engineer - AI - Python, LLMOps, Data Pipelines, AI Workflows


I've got a brand new role with a client of mine who are a B2B SaaS AI Start-Up, who are looking to grow their Engineering team once again, having secured several new large scale clients and they currently have runway for multiple years going forward.


This role will be a real mixture of LLMOps (50%), Software Engineering (30%) and Data Engineering (20%) where you'll have the opportunity to architect, build and own the companies AI workflows, working with the latest LLM API's as well as being the driving force behind their Analytics stack, helping deliver data-driven insights for internal and external stakeholders.


ML/Data Engineer - AI - Python, LLMOps, Data Pipelines, AI Workflows


Required skills and experience


2+ years of commercial experience

Strong knowledge and understanding of Python

Prior experience of LLMOps

Some experience building Data Pipelines

Start-up experience a bonus


This role requires candidates to be in my clients Central London office 1-day per week, and pays between £55k-£70k + equity, depending on skills and experience


To be considered, you must be UK based


ML/Data Engineer - AI - Python, LLMOps, Data Pipelines, AI Workflows

National AI Awards 2025

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