Senior Machine Learning Engineer

Harnham
London
11 months ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

SENIOR MACHINE LEARNING ENGINEER

REMOTE

UP TO £90,000


COMPANY:

We are working with a leading subscriptions based company looking to stay at the cutting edge through the use Machine Learning and AI models.


ROLE:

We are looking for a Sr MLE with a strong background in marketing optimisation to join their new function.

  • You will be working closely with the Head of AI and wider marketing team to enhance global marketing efforts
  • Utilise customer behaviour and marketing campaign data.
  • Build marketing models such as churn, CLV etc..
  • Build and deploy various ML models
  • Stay up to date with MLOps and Software best practices.


REQUIREMENTS:

  • 4+ Years in proven end to end ML development
  • Specifically within the context of customer behaviour and marketing.
  • Strong communication skills with non technical stakeholders


If this role looks of interest, please reach out to Joseph Gregory

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