Remote MLOps Engineer: Kubernetes AI Platforms

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Manchester
5 days ago
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A leading technology solutions firm in Manchester is seeking a seasoned infrastructure engineer to architect and implement scalable infrastructures for AI and ML workloads. The ideal candidate will have extensive experience in Kubernetes and MLOps, and is skilled in programming with Go or Python. They will benefit from a rich array of employee perks, including flexible working arrangements, a performance-related profit share scheme, and a strong focus on employee wellbeing and professional development.
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