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      課程目錄:TensorFlow Lite for iOS培訓
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               TensorFlow Lite for iOS培訓

       

       

       

       

      Introduction

      Tensorflow vs Tensorflow Lite
      Overview of TensorFlow Lite Features and Workflow

      Recap of machine learning and deep learning concepts
      How on-device low-latency inference is achieved
      End-to-end model building and deployment
      Preparing the Development Environment

      Starting a Swift project
      Adding TensorFlow to the project
      Capturing an Image with a Device Camera

      How camera input is captured
      Overview of classes and methods
      Running inference on a frame (performing image classification)
      Creating an App for Object Detection

      Selecting a TensorFlow Model
      Converting the TensorFlow Model
      Loading the TensorFlow Model onto a Mobile Device
      Loading a Pre-trained TensorFlow Model
      Creating an App for Image Classification

      Selecting a TensorFlow Model
      Converting the TensorFlow Model
      Loading the TensorFlow Model onto a Mobile Device
      Loading a Pre-trained TensorFlow Model
      Customizing the Model and Data

      Pre-processing a dataset
      Setting the hyperparameters
      Optimizing the TensorFlow Model

      Measuring performance against a benchmark
      Measuring accuracy
      Retraining a TensorFlow model
      Exploring Alternative Models

      Choosing a different model
      Training a model to recognize new classes (transfer learning)
      Obtaining training images for new labels
      Deploying the AI Enabled iOS App

      Performing image classification in the field
      Troubleshooting

      Summary and Conclusion

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