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                ??碼云GVP開源項目 12k star Uniapp+ElementUI 功能強大 支持多語言、二開方便! 廣告
                # 用于 MNIST 數據的 LeNet 您可以按照 Jupyter 筆記本中的代碼`ch-09a_CNN_MNIST_TF_and_Keras`。 準備 MNIST 數據到測試和訓練集: ```py from tensorflow.examples.tutorials.mnist import input_data mnist = input_data.read_data_sets(os.path.join('.','mnist'), one_hot=True) X_train = mnist.train.images X_test = mnist.test.images Y_train = mnist.train.labels Y_test = mnist.test.labels ```
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