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    1 research outputs found

    Using Machine Learning to Predict Core Sizes of High-Efficiency Turbofan Engines

    Author
    1. CFM International 2018, “CFM International,” CFM International, Cincinnati, OH, accessed Aug. 8, 2018,
    2. GE Aviation 2018, “GE Aviation,” GE Aviation, Evendale, OH, accessed Aug. 8, 2018,
    3. International Civil Aviation Organization
    4. Michael T. Tong
    5. Microsoft Azure Machine Learning Team
    6. Pratt and Whitney 2018, “ Commercial-Engines,” Pratt and Whitney, East Hartford, CT, accessed Aug. 8, 2018,
    7. Rolls Royce 2018, “Rolls Royce,” Rolls Royce, Derby, UK, accessed Aug. 8, 2018,
    8. RT Insights Team
    Publication venue
    'ASME International'
    Publication date
    Field of study
    No full text
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