5.3: Using layers models for transfer learning

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By using layers models in TensorFlow.js you can perform transfer learning and then combine the resulting new model to be saved a single model vs loading 2 models as you did in the prior video. This makes your deployment of the resulting model a little simpler and cleaner which is great for production. Here you will extend your existing TensorFlow.js code to get layers based models working in the browser instead.

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