Machine Learning Engineer – Birmingham/Hybrid - £75,000 - £85,000

Opus Recruitment Solutions
Birmingham
4 months ago
Applications closed

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Machine Learning Engineer – Birmingham/Hybrid - £75,000 - £85,000


ML| AI | Python | scikit-learn | Pytorch | Keras | OpenCV | TensorFlow | SQL | GCP | K-means | Vertex AI | BigQuery | PostgreSQL | Machine Learning


Do you want to work at a Google Partner? Or maybe you want to work somewhere which is taking AI andMachine Learningseriously. If so I have a role for you.


Opus are supporting a brilliant Adtech company in their search for a Machine Learning Engineer.

It’s a really exciting time for this company as they went through the 100 million barrier last year in revenue and through their services helped their partners generate over 1 billion in revenue.


Tech Stack you will get to learn and use includes:Go, Python, scikit-learn, TensorFlow, Pytorch, Keras, OpenCV, Vertc AI, GCP


Responsibilities –

  • Design and Deploy Scalable Solutions
  • Enhance Algorithms for better accuracy efficiency and scalability
  • Develop tools to monitor system and model performance
  • Deliver key results aligned with company objectives within the OKR framework


Skills needed –


  • Solid Python or GO experience
  • SQL Skills with Data Warehouse
  • Building Classification models
  • Experience with unsupervised learning algorithms


Benefits include-


  • Hybrid working (1 visit per week)
  • Flexible hours
  • Bonus
  • Healthcare options
  • Life Assurance
  • £1000 training budget
  • £250 budget for personal projects


Is this something you or someone in your network would be interested in? if so please send your CV over to or apply to the advert


Sponsorship isn’t available.


ML| AI | Python | scikit-learn | Pytorch | Keras | OpenCV | TensorFlow | SQL | GCP | K-means | Vertex AI | BigQuery | PostgreSQL | Machine Learning

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