Lead MLOps Engineer — Hybrid & Production AI

Hiscox
North Yorkshire
3 days ago
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A leading insurance firm is seeking a Lead MLOPS Data Engineer to develop and lead a team in deploying AI and ML models. You will oversee infrastructure management, collaborate with data scientists, and ensure data quality and model performance. The ideal candidate has extensive experience in Python, cloud platforms like GCP or Databricks, and strong problem-solving abilities. This position involves hybrid working, supporting a balanced work-life approach and offering competitive benefits including a bonus and extended leave.
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