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Senior Machine Learning EngineerLocation: Remote /London / ManchesterThe Role:Lead the development and deployment ofscalable machine learning systems, driving innovation and mentoringthe team while ensuring technical excellence.The RoleBuild anddeploy ML systems from prototype to production.Design and maintainMLOps pipelines for efficient model management.Set the technicaldirection for ML initiatives and guide junior teammembers.Translate business needs into robust technicalsolutions.The PersonAdvanced Python skills and experience with MLframeworks (e.g., PyTorch, TensorFlow).Deep knowledge of MLOpstools and practices.Strong foundation in math, statistics, andmachine learning theory.Proven ability to deploy ML solutions atscale.PreferredAdvanced degree in a relevant field and 7+ years ofML engineering experience.Financial services experience andknowledge of cloud platforms (AWS, GCP, Azure).Impact:A senior roleshaping technical strategy and delivering cutting-edge solutions ina dynamic environment.Get in touch for full info - submit your CV,or contact Carol Donnelly

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