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Machine Learning Engineer - Health Tech Start Up

Oho Group
Southend-on-Sea
6 months ago
Applications closed

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Machine Learning Engineer - Health Tech Start Up

We are seeking a talented and experienced Machine Learning Engineer to join a a rapidly expanding health-tech start-up, who are revolutionary within their field right now.

As a Machine Learning Engineer, you will play a critical role in architecting, building, testing, and delivering a new and improved running engine that generates adaptive training plans for tens of thousands of active users.

Machine Learning Engineer Skills:

  • 3+ years experience in a similar role
  • Demonstrable experience in cloud (ideally AWS)
  • Strong Python Programming
  • A deep understanding of designing and implementing complex algorithms, data science and machine learning
  • Confident in working in a fast paced environment and looking to take ownership over features

Machine Learning Engineer Benefits:

  • Flexible working
  • Private health insurance
  • Regular salary reviews
  • Pension scheme
  • Brand new Macbook, a running watch of your choice, and anything else you need to do your best work.

Apply today for immediate consideration!

Machine Learning Engineer - Health Tech Start Up

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