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      課程目錄:OpenNN: Implementing Neural Networks培訓
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               OpenNN: Implementing Neural Networks培訓

       

       

       

      Introduction to OpenNN, Machine Learning and Deep Learning

      Downloading OpenNN

      Working with Neural Designer

      Using Neural Designer for descriptive, diagnostic, predictive and prescriptive analytics
      OpenNN architecture

      CPU parallelization
      OpenNN classes

      Data set, neural network, loss index, training strategy, model selection, testing analysis
      Vector and matrix templates
      Building a neural network application

      Choosing a suitable neural network
      Formulating the variational problem (loss index)
      Solving the reduced function optimization problem (training strategy)
      Working with datasets

      The data matrix (columns as variables and rows as instances)
      Learning tasks

      Function regression
      Pattern recognition
      Compiling with QT Creator

      Integrating, testing and debugging your application

      The future of neural networks and OpenNN

      Summary and conclusion

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