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Machine Learning Engineer

Heat Recruitment
London
1 year ago
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Machine Learning Engineer / Python / PyTorch / MLOps / AI Role: Machine Learning Engineer Location: London Salary: £60,000 - £90,000 - Dependent on experience A fantastic opportunity to work in a highly innovative AI Consultancy. You will be developing models and algorithms for their products and will be able to see the benefits that the AI products have within the world. They’re considering mid-senior and lead engineers for this position. Their tech stack is Python, PyTorch/TensorFlow. Machine Learning Engineer Specification: 3 years Machine Learning experience ML/AI experience Experience with Python frameworks, such as PyTorch and TensorFlow Build and Maintain Data processing pipelines Degree in Computer Science or similar Benefits Hybrid Working Pension Learning & Development If you have the desired skills and experience and would like to hear more about the opportunity, then please feel free to send me your CV and I will call you in the strictest confidence

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