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Machine Learning Engineer - Hybrid Remote

Peaple Talent
London
1 day ago
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Machine Learning Engineer | London (Hybrid) | £70,000 - £80,000
We are looking for a Machine Learning Engineer to join our London-based client, to deliver end-to-end solutions on exciting new projects which have come about due to growth.

You'll be designing, building and deploying machine learning models which solve complex business challenges, working closely with cross-functional teams at all stages, to turn insights into impactful products.

In this role you will
Work end-to-end on new ML models from development through to training and optimising
Work closely with a small team of data scientists, engineers and product managers
Implement scalable data pipelines and deployment strategies for new models
Continuously improve solutions and conduct performance evaluations of models

What we're looking for
~3+ years of industry or research experience
~ Python and SQL proficiency, with experience using ML frameworks e.g PyTorch
~ Experience with Azure cloud
~ Driven to progress within a growing SME

What our client are offering
~£70,000 - £80,000 salary DOE
~ Flexible working arrangements with 2 days on site
~ Ongoing development and progression opportunities in line with your interests and skills

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