Machine Learning Engineer

Clapham Green
9 months ago
Applications closed

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Machine Learning Engineer - Remote UK - £80000

We are helping an innovative tech business scale their technology team in the UK.

Due to continued growth and demand for their products they now urgently need a Machine Learning Engineer to help bolster their team.

This role would suit a Machine Learning Engineer who is already confident working in ML environments, especially with NLP tools.

This role is remote within the UK. Their office is based in Milton Keynes - you may need to visit the office on rare occasions.

To be a successful, the ideal Machine Learning Engineer candidate will have:

·        Highly skilled in Python.

·        Knowledge of AWS or GCP.

·        Ideally experience of SKLearn / Docker / MLFlow or PyTest

·        Excellent communication and problem solving skills.

What is in it for you? As a talented Machine Learning Engineer you can expect:

·        Great salary - Up to £80,000 base and Package (neg for the right person)

If you are an ambitious Machine Learning Engineer hit apply and we will do the rest.

Please apply with your CV and we will be in touch for a confidential chat.

Noa Recruitment specialise in helping Software and Web Professionals and technical talent find great careers. If this role doesn't sound like you, but you know a great person who might be interested then please do share these details with them

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