Senior ML Engineer – End-to-End AI & MLOps (Audio)

Michael Page (UK)
City of London
3 weeks ago
Applications closed

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A recruitment agency is seeking a Senior Machine Learning Engineer in London to design, train, and optimize machine learning models, particularly in audio processing. The role involves developing robust ML pipelines, deploying MLOps systems, and collaborating with teams to deliver impactful solutions within the insurance industry. Candidates should have strong experience with PyTorch and a solid foundation in machine learning. The position offers a competitive salary, comprehensive benefits, and the opportunity to work in an innovative environment.
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