Senior Machine Learning Engineer Python AWS

Client Server Ltd.
London
1 year ago
Applications closed

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Senior Machine Learning Engineer (Python AWS MLOps) Remote UK to £90k

Are you a tech savvy Machine Learning Engineer with experience of implementing ML algorithms?

You could be progressing your career in a senior, hands-on role as part of a friendly and supportive international team at a growing and hugely successful European car insurance tech company as they expand their UK presence; their platform enables an insurance quote to be made to the consumer within 60 seconds, using just 4 clicks.

As a Senior Machine Learning Engineer you'll join a cross functional team, collaborating with Data Scientists and Software Engineers on complex insurance underwriting and pricing systems. They'll be a range of projects including data modelling and implementing Machine Learning algorithms, with Greenfield projects in the pipeline around forecasting and pricing.

There's a collaborative team Agile environment where you'll participate in technical discussions and have your voice heard, there's also opportunities to mentor other more junior team members if desired.

Location / WFH:

The company is a big advocate of flexible working and prides itself on DEI; you can go into the London office as often or as little as desired and can work fully remotely from anywhere in the UK; you can also work at times that suit you.

About you:

  • You are a data savvy Machine Learning Engineer with ...

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