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K Nearest Neighbors:") for rank, index in enumerate(indices[0][:k], start=1): print(str(rank) + " ==>", X[index])Visualize the nearest neighbours:# Visualize the nearest…
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Datapoint:', datapoint) print('Predicted class:', predicted_class)Visualize the test data points based on classifier boundaries:# Visualize the datapoints visualize_classifier(classifier, test_datapoints, [0]*len(test_datapoints), 'Test…
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Continue ReadingWhat’s Big O notation, faster runtime — Simply explained
As n grows the number of operations grows in correlation with n. Introduce Big OBig o is just a way to…
Continue ReadingUsing PyTorch to Generate Images of Malaria-Infected Cells
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Continue ReadingIntroduction to Convolutional Neural Networks (CNN) with TensorFlow
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Performing Classification in TensorFlowHarshdeep SinghBlockedUnblockFollowFollowingFeb 25In this article, I will explain how to perform classification using TensorFlow library in Python.…
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Continue ReadingGenerating extinct Japanese script with Adversarial Autoencoders: Theory and Implementation
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