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Harnham | Senior Machine Learning Engineer

Harnham
London
10 months ago
Applications closed

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Senior Machine Learning Engineer


Salary: £83,000 + £5,800 cash allowance, 10% bonus

London - Hybrid/Remote - 1 day per month onsite


Join a dynamic team of Data Scientists working on high-impact, machine learning models to drive innovation in the Telecoms space.


ROLE AND RESPONSIBILITIES


  • Working closely within a small team, to deploy and scale ML models focusing on the customer experience
  • Working alongside technical and non-technical stakeholders, driving core MLOPs commercial value
  • Driving the latest innovative research in Engineering, deploying core projects onto their AWS platform
  • Opportunity to upskill and mentor junior members


SKILLS AND EXPERIENCE


Required

  • MSc or PhD in STEM related subject + 3 years of experience minimum in ML Engineering
  • Proficiency in Python, SQL and MLOPs & CI/CD
  • Background in Customer ML is a large benefit but otherwise any tech company working on AI projects
  • Excellent communication skills with proven experience working with stakeholders


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