Remote MLOps Engineer - AI-Driven Revenue Pricing

Cloudbeds
London
2 months ago
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A leading hospitality technology provider seeks a Machine Learning Ops Engineer to enhance the performance of its AI solutions. You will implement end-to-end machine learning features enabling customers to optimize revenue strategies. The role focuses on establishing robust MLOps practices while collaborating with product and engineering teams. Ideal candidates should have a strong background in machine learning, data engineering, and relevant programming skills, with a bachelor's in a related field. This position is remote with occasional travel requirements.
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