Machine Learning / Data Science Engineer Lead

Expert Employment
Oxford
1 year ago
Applications closed

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Machine Learning Leadrequired to join application development team in Oxford, England. Our client is looking for Neural data scientist with extensive academic and industrial experience in delivering research and development and strong background in C++, Python, and Matlab, applied to semantic modelling, deep learning, machine learning, data visualisation, and statistical analysis.Key Responsibilities:Designing, building, delivering, maintaining, and supporting scalable industrialized machine learning-driven products. Machine learning architecture, including layer surgery and hyperparameter selection, for a variety of frameworks. Run machine learning tests and experimentsKey Skills:Experience, aptitude, and a desire to work with, sport, and animation tools, and techniques. Knowledge of computer vision, Jira, Bash, Python, Matlab, big Data Analysis, C++, VHDL Experience in .NET Framework, Unity3D, OpenGL Relevant academic Ph.D. qualification in Machine LearningIf you feel you have the relevant experience as stated above, please apply with an updated CV attached and we will be contact for more details.

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