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Oliver Bernard | Data Scientist - Machine Learning - £100K

Oliver Bernard
East London
11 months ago
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Lead Data Engineer - Up to £140k - FinTech Unicorn

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Data Scientist - Machine Learning - £100KOur client is a growing AI and Information Security software company.With bleeding-edge AI and Machine Learning they build software products to protect the largest, most complex, systems in the world.You’ll have the chance to build ML models and data pipelines, optimise Large Language Models (LLM), work on NLP projects, creating automated security detection tools that grow and learn and be key in the evolution of the team.You’ll have real ownership and autonomy and work directly with senior stakeholders to define data and AI best practices, mentoring others and building out Machine Learning and AI tools.Requirements:Great experience of Data Science and Machine LearningExceptional academic background - MSc and PhD preferredVery strong maths skillsGreat understanding of Python etcGood knowledge of NLP, LLM and AIExperience of Cloud (AWS, GCP, Azure etc) would be idealTensorFlow skillsExcellent communication and collaboration skills

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