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Buku ini menyajikan implementasi CNN dalam memroses input berupa gambar, sajian dimulai dengan membahas jaringan perceptron multilayer dengan algoritma pembelajaran backpropagation yang membentuk lapisan fulled connected pada arsitektur CNN, pembahasan menganai CNN secara mendalam, kemudian implementasi CNN dengan TensorFlow-Python.