Data Scientist - GenAI - Up to £170k

Oliver Bernard
London
9 months ago
Applications closed

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Data Scientist Placement

Data Scientists - GenAI

Pays up to £170k

2-days a week in London offices


Data Scientists - GenAI, Python, ML Libraries


Oliver Bernard have partnered with a Global Consultancy who are looking to hire a number of Data Scientists with an exceptionally strong background in GenAI to work on a large variety of projects.


You'll be working with the latest technologies, designing, building and deploying models using LLM's and other GenAI techniques, collaborating with Engineering, Product and Infrastructure teams, creating robust and scaleable AI solutions.


Data Scientists - GenAI, Python, ML Libraries


Key skills and experience:


Strong background in Data Science within GenAI

MSc or PhD qualifications a bonus

Proficiency with Python and ML libraries

Cloud expertise

Strong problem and communication skills


This role is a hybrid role with 2-days a week required in London offices and can pay £100k-£170k depending on skills and experience. To be considered, you must be UK based as sadly sponsorship isn't available.


Data Scientists - GenAI, Python, ML Libraries

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