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ISBN 9788997924585
»óÇ°ÄÚµå 333288099
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¼±¹ÚÀΰ¡??2 ¡®³ªÀÇ ÀÌÇصµ¸¦ ÃøÁ¤ÇÏÀÚ¡¯ 3¹ø ¹®Á¦ 5.5 ÀüÀÌ ÇнÀ Á¤¸®Çغ¾½Ã´Ù ½Ç½ÀÇغ¾½Ã´Ù [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅÍ »ìÆ캸±â (fashion_mnist_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ±¸¼ºÇϱâ (fashion_mnist_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇнÀ½ÃÅ°±â (fashion_mnist_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] À̹ÌÁö ÇÊÅÍ »ç¿ëÇغ¸±â (use_image_filter.ipynb) [ÇÔ²² ÇغÁ¿ä] À̹ÌÁö ÇÊÅÍ Á¤ÀÇÇϱâ (use_image_filter.ipynb) [ÇÔ²² ÇغÁ¿ä] À̹ÌÁö ÇÊÅÍ Àû¿ëÇϱâ (use_image_filter.ipynb) [ÇÔ²² ÇغÁ¿ä] À̹ÌÁö ÇÊÅ͸¦ Àû¿ëÇÑ ÃÖÁ¾ °á°ú (use_image_filter.ipynb) [ÇÔ²² ÇغÁ¿ä] Ç®¸µ ¿¬»ê ±¸ÇöÇϱâ (use_image_filter.ipynb) [ÇÔ²² ÇغÁ¿ä] model.summary( ) ÇÔ¼ö »ç¿ëÇϱâ [ÇÔ²² ÇغÁ¿ä] plot_model( ) ÇÔ¼ö »ç¿ëÇϱâ [ÇÔ²² ÇغÁ¿ä] CIFAR-10 µ¥ÀÌÅͼ ´Ù¿î¹Þ±â (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 µ¥ÀÌÅÍ ±×·Áº¸±â (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 µ¥ÀÌÅͼ Àüó¸® °úÁ¤ (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 ¸ðµ¨ ±¸¼ºÇϱâ (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 ¸ðµ¨ ÇнÀÇϱâ (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 ÇнÀ °úÁ¤ ±×·Áº¸±â (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] ½Å°æ¸Á ½Ã°¢È­Çغ¸±â (cifar10_cnn.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 ±ÔÁ¦È­ ÇÔ¼ö »ç¿ëÇغ¸±â (drop_the_overfitting_regularizer.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 µå·Ó¾Æ¿ô »ç¿ëÇغ¸±â (drop_the_overfitting_dropout.ipynb) [ÇÔ²² ÇغÁ¿ä] CIFAR-10 ¹èÄ¡ Á¤±ÔÈ­ »ç¿ëÇغ¸±â (drop_the_overfitting_BN.ipynb) [ÇÔ²² ÇغÁ¿ä] À̹ÌÁö Á¦³×·¹ÀÌÅ͸¦ »ç¿ëÇÏ¿© À̹ÌÁö ±×·Áº¸±â (basic_image_generator.ipynb) [ÇÔ²² ÇغÁ¿ä] À̹ÌÁö Á¦³×·¹ÀÌÅ͸¦ »ç¿ëÇÏ¿© ¸ðµ¨ ÇнÀÇϱâ (basic_image_generator.ipynb) [ÇÔ²² ÇغÁ¿ä] ÀüÀÌ ÇнÀ »ç¿ëÇغ¸±â (basic_transfer_learning.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ µ¿°á ÇØÁ¦Çϱâ [ÇÔ²² ÇغÁ¿ä] ÀüÀÌ ÇнÀÀ» ÅëÇØ ÇнÀÇϱâ (basic_transfer_learning.ipynb) 6Àå ¼øȯ ½Å°æ¸Á 6.1 Embedding 6.2 RNN 6.3 LSTM 6.4 Conv1D 6.5 BERT °¡º±°Ô ¾Ë¾Æº¸±â Á¤¸®Çغ¾½Ã´Ù ½Ç½ÀÇغ¾½Ã´Ù [ÇÔ²² ÇغÁ¿ä] ÅäÅ«È­ ÀÛ¾÷ ¼öÇàÇϱâ (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅͼ ´Ù¿î¹Þ±â (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅÍ ÇüÅ ȮÀÎÇϱâ (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ù ¹ø° µ¥ÀÌÅÍ È®ÀÎÇϱâ (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] IMDB µ¥ÀÌÅͼ¿¡¼­ °¡Àå ºó¹øÇÏ°Ô »ç¿ëµÇ´Â ¼¼ °³ÀÇ ´Ü¾î [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅ͸¦ µ¿ÀÏÇÑ ±æÀÌ·Î ¸ÂÃß±â (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] EmbeddingÃþÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇнÀ½ÃÅ°±â (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ Æò°¡Çϱâ (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ÇнÀ °úÁ¤ È®ÀÎÇϱâ (use_embedding_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] cos ÇÔ¼ö¸¦ ÀÌ¿ëÇÏ¿© µ¥ÀÌÅÍ ¸¸µé±â (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] Àüó¸® °úÁ¤ ¼öÇàÇϱâ (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅÍ ÇüÅ ȮÀÎÇϱâ (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] SimpleRNNÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇнÀ½ÃÅ°±â (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¿¹Ãø °á°ú ±×·Áº¸±â (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] IMDB µ¥ÀÌÅͼ »ç¿ëÇϱâ (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] SimpleRNNÃþÀÇ Ãâ·Â°ª º¯È­ È®ÀÎÇϱâ (use_SimpleRNN_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] reuters µ¥ÀÌÅͼ ´Ù·ïº¸±â (use_LSTM_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅͼ Àüó¸® °úÁ¤ [ÇÔ²² ÇغÁ¿ä] LSTM ÃþÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (use_LSTM_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇнÀ½ÃÅ°±â (use_LSTM_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] Conv1D ÃþÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (use_Conv1D_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇнÀ½ÃÅ°±â (use_Conv1D_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅÍ »ý¼ºÇϱâ (use_Conv1D_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ±¸¼º ¹× °á°ú È®ÀÎÇϱâ (use_Conv1D_layer.ipynb) 7Àå ÃʱÞÀ» ÇâÇؼ­-1 7.1 Äɶó½ºÀÇ ¸ðµ¨ ±¸¼º ¹æ¹ý 7.2 ÇÔ¼öÇü API 7.3 ºù»êÀΰ¡? ¼±¹ÚÀΰ¡?-3 ¡®³ªÀÇ ÀÌÇصµ¸¦ ÃøÁ¤ÇÏÀÚ¡¯ 1¹ø ¹®Á¦ 7.4 ¹«½¼ ¿Ê°ú ¹«½¼ »ö?-2 7.5 ÄÉ¶ó½º Äݹé Á¤¸®Çغ¾½Ã´Ù ½Ç½ÀÇغ¾½Ã´Ù [ÇÔ²² ÇغÁ¿ä] Sequential( ) ¸ðµ¨ ±¸¼º (make_model_three_ways.ipynb) [ÇÔ²² ÇغÁ¿ä] ¼­ºêŬ·¡½Ì ¸ðµ¨ ±¸¼º (make_model_three_ways.ipynb) [ÇÔ²² ÇغÁ¿ä] ÇÔ¼öÇü API ¸ðµ¨ ±¸¼ºÇϱâ (make_model_three_ways.ipynb) [ÇÔ²² ÇغÁ¿ä] MNIST µ¥ÀÌÅͼ ºÒ·¯¿À±â ¹× Àüó¸® (functional_api_MNIST.ipynb) [ÇÔ²² ÇغÁ¿ä] ÇÔ¼öÇü API¸¦ È°¿ëÇÑ ¸ðµ¨ ±¸¼º ¹× ÇнÀ (functional_api_MNIST.ipynb) [ÇÔ²² ÇغÁ¿ä] ´ÙÁß ÀÔÃâ·ÂÀ» À§ÇÑ µ¥ÀÌÅÍ »ý¼ºÇϱâ (functional_api_multi_io.ipynb) [ÇÔ²² ÇغÁ¿ä] ´ÙÁß ÀÔÃâ·Â ¸ðµ¨ ±¸¼ºÇϱâ (functional_api_multi_io.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ±¸Á¶ ±×·Áº¸±â (functional_api_multi_io.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ±¸Á¶ È®ÀÎÇϱâ (functional_api_multi_io.ipynb) [ÇÔ²² ÇغÁ¿ä] ´ÙÁß ÀÔÃâ·Â ¸ðµ¨¿¡¼­ ÇнÀ °úÁ¤ ¼³Á¤Çϱâ (functional_api_multi_io.ipynb) [ÇÔ²² ÇغÁ¿ä] ´ÙÁß ÀÔÃâ·Â ¸ðµ¨ ÇнÀÇϱâ (functional_api_multi_io.ipynb) [ÇÔ²² ÇغÁ¿ä] ÀÜÂ÷ ¿¬°áÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (residual_and_inception_module.ipynb) [ÇÔ²² ÇغÁ¿ä] ÀμÁ¼Ç ¸ðµâÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (residual_and_inception_module.ipynb) [ÇÔ²² ÇغÁ¿ä] ResNetÀ» È°¿ëÇÏ¿© ¸ðµ¨ ±¸¼ºÇϱâ (resnet_transfer.ipynb) [ÇÔ²² ÇغÁ¿ä] ÅÙ¼­Ç÷οì Çãºê ¼³Ä¡Çϱâ [ÇÔ²² ÇغÁ¿ä] CIFAR-10 µ¥ÀÌÅͼ ºÒ·¯¿À±â (use_tensorflow_hub.ipynb) [ÇÔ²² ÇغÁ¿ä] Àüü ¸ðµ¨ ±¸¼ºÇϱâ (use_tensorflow_hub.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇнÀ½ÃÅ°±â (use_tensorflow_hub.ipynb) [ÇÔ²² ÇغÁ¿ä] (clothes_classification/clothes3.csv) [ÇÔ²² ÇغÁ¿ä] (clothes_classification/clothes3.csv) [ÇÔ²² ÇغÁ¿ä] (clothes_classification/clothes3.csv) [ÇÔ²² ÇغÁ¿ä] ÄÉ¶ó½º ÄÝ¹é »ç¿ë ÁغñÇϱâ (use_keras_callbacks.ipynb) [ÇÔ²² ÇغÁ¿ä] ModelCheckpoint ÄÝ¹é »ç¿ëÇϱâ (use_keras_callbacks.ipynb) [ÇÔ²² ÇغÁ¿ä] EarlyStopping ÄÝ¹é »ç¿ëÇϱâ (use_keras_callbacks.ipynb) [ÇÔ²² ÇغÁ¿ä] ReduceLROnPlateau ÄÝ¹é »ç¿ëÇϱâ (use_keras_callbacks.ipynb) [ÇÔ²² ÇغÁ¿ä] TensorBoard ÄÝ¹é »ç¿ëÇϱâ (use_keras_callbacks.ipynb) [ÇÔ²² ÇغÁ¿ä] ÅÙ¼­º¸µå ½ÇÇàÇϱâ - 1 [ÇÔ²² ÇغÁ¿ä] ÅÙ¼­º¸µå ½ÇÇàÇϱâ- 2 8Àå ÃʱÞÀ» ÇâÇؼ­-2 8.1 Ä¿½ºÅ͸¶ÀÌÁ¦ÀÌ¼Ç 8.2 1¡¿1 ÄÁº¼·ç¼Ç 8.3 ÃÊ±Þ ´Ü°è¸¦ À§ÇØ ÇÑ°ÉÀ½ ´õ Á¤¸®Çغ¾½Ã´Ù ½Ç½ÀÇغ¾½Ã´Ù [ÇÔ²² ÇغÁ¿ä] Lambda Ãþ »ç¿ëÇϱâ (custom_keras_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ Äɶó½ºÃþ »ç¿ëÇϱâ (custom_keras_layer.ipynb) [ÇÔ²² ÇغÁ¿ä] Activation ÇÔ¼ö¿¡ Á÷Á¢ Àü´ÞÇÏ´Â ¹æ¹ý (custom_activation.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ °´Ã¼ ¸ñ·ÏÀ» »ç¿ëÇÏ´Â ¹æ¹ý - 1 (custom_activation.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ °´Ã¼ ¸ñ·ÏÀ» »ç¿ëÇÏ´Â ¹æ¹ý ? 2 (custom_activation.ipynb) [ÇÔ²² ÇغÁ¿ä] RAdam ¼³Ä¡Çϱâ [ÇÔ²² ÇغÁ¿ä] RAdamÀÇ Á¸Àç ¾Ë±â (custom_activation.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ ¼Õ½Ç ÇÔ¼ö Á¤ÀÇÇϱâ (custom_loss.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ ¼Õ½Ç ÇÔ¼ö?MNIST ÇнÀ (custom_loss.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ Æò°¡ÁöÇ¥ Á¤ÀÇÇÏ¿© »ç¿ëÇϱâ (custom_metrics.ipynb) [ÇÔ²² ÇغÁ¿ä] ƯÁ¤ ½ÃÁ¡¿¡ ÇнÀ·üÀ» Á¶Á¤ÇÏ´Â Ä¿½ºÅÒ ÄÉ¶ó½º Äݹé (custom_callback.ipynb) [ÇÔ²² ÇغÁ¿ä] Ä¿½ºÅÒ ÄÉ¶ó½º ÄݹéÀ» »ç¿ëÇÏ¿© ¸ðµ¨ ÇнÀ½ÃÅ°±â (custom_callback.ipynb) [ÇÔ²² ÇغÁ¿ä] ÄÁº¼·ç¼ÇÃþ¸¸À¸·Î ±¸¼ºÇÑ ¸ðµ¨ - 1 (MNIST_1¡¿1_convolution.ipynb) [ÇÔ²² ÇغÁ¿ä] ÄÁº¼·ç¼ÇÃþ¸¸À¸·Î ±¸¼ºÇÑ ¸ðµ¨ - 2 (MNIST_1¡¿1_convolution.ipynb) 9Àå ÄÉ¶ó½º Æ©³Ê 9.1 Ž»öÇØ¾ß ÇÒ ÇÏÀÌÆÛÆĶó¹ÌÅÍ 9.2 Äɶó½ºÆ©³Ê »ç¿ëÇϱâ 9.3 Äɶó½ºÆ©³Ê ´õ ½±°Ô »ç¿ëÇϱâ Á¤¸®Çغ¾½Ã´Ù ½Ç½ÀÇغ¾½Ã´Ù ºÎ·Ï A: ¿ÀÅäÄɶó½º(AutoKeras) ºÎ·Ï B: tf.data ºÎ·Ï C: ÀÌ·¸°Ôµµ ÇнÀÇÒ ¼ö ÀÖ¾î¿ä! [ÇÔ²² ÇغÁ¿ä] °£´ÜÇÑ ±¸Á¶ÀÇ CNN ¸ðµ¨ »ìÆ캸±â (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] ÄÉ¶ó½º Æ©³Ê ¼³Ä¡Çϱâ [ÇÔ²² ÇغÁ¿ä] ÄÉ¶ó½º Æ©³Ê ¸ðµ¨ Á¤ÀÇÇϱâ (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] MNIST µ¥ÀÌÅͼ ÁغñÇϱâ (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] RandomSearch Ŭ·¡½º »ç¿ëÇϱâ (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] Ž»öÇÒ ÇÏÀÌÆÛÆĶó¹ÌÅÍ »ìÆ캸±â (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] ÇÏÀÌÆÛÆĶó¹ÌÅÍ Å½»öÇϱâ (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] ½ÇÇè °á°ú ¿ä¾àÇغ¸±â (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] °¡Àå ÁÁÀº ¼º´ÉÀÇ ¸ðµ¨ ºÒ·¯¿À±â (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ÇÏÀÌÆÛÆĶó¹ÌÅÍ È®ÀÎÇϱâ (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] HyperResNet »ç¿ëÇϱâ (keras_tuner_example.ipynb) [ÇÔ²² ÇغÁ¿ä] (clothes_classification/tf_data_example.py) [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅͼ ºÒ·¯¿À±â ()appendix/training_with_tensorflow2.0.ipynb [ÇÔ²² ÇغÁ¿ä] µ¥ÀÌÅͼ °´Ã¼ Á¤ÀÇÇϱâ ()appendix/training_with_tensorflow2.0.ipynb [ÇÔ²² ÇغÁ¿ä] ¸ðµ¨ ±¸¼ºÇϱâ (appendix/training_with_tensorflow2.0.ipynb) [ÇÔ²² ÇغÁ¿ä] °´Ã¼ Á¤ÀÇÇϱâ (appendix/training_with_tensorflow2.0.ipynb) [ÇÔ²² ÇغÁ¿ä] °è»ê ¹ß»ý ÁöÁ¤Çϱâ (appendix/training_with_tensorflow2.0.ipynb) [ÇÔ²² ÇغÁ¿ä] ÇнÀ ¹× °ËÁõ ½ºÅÜ Á¤ÀÇÇϱâ (appendix/training_with_tensorflow2.0.ipynb) [ÇÔ²² ÇغÁ¿ä] ÇнÀ ÁøÇàÇϱâ (appendix/training_with_tensorflow2.0.ipynb) ã¾Æº¸±â _ÁÖ¿ä ³»¿ë ÀÔ¹® ´Ü°è¿¡¼­ Æ÷±âÇÏÁö ¾Ê°í ´ÙÀ½ ´Ü°è·Î ³Ñ¾î°¥ ¼ö ÀÖ°Ô ÇØÁִ å! 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