Torrent Info
Title [FreeCourseSite.com] Udemy - [2022] Machine Learning and Deep Learning Bootcamp in Python
Category
Size 7.12GB
Files List
Please note that this page does not hosts or makes available any of the listed filenames. You cannot download any of those files from here.
[CourseClub.Me].url 122B
[FreeCourseSite.com].url 127B
[GigaCourse.Com].url 49B
001 Artificial neural networks - inspiration_en.srt 7.10KB
001 Artificial neural networks - inspiration.mp4 24.16MB
001 Boosting introduction - basics_en.srt 5.82KB
001 Boosting introduction - basics.mp4 15.75MB
001 Convolutional neural networks basics_en.srt 7.89KB
001 Convolutional neural networks basics.mp4 25.00MB
001 Course materials (source code and slides).html 66B
001 Decision trees introduction - basics_en.srt 10.36KB
001 Decision trees introduction - basics.mp4 27.41MB
001 Deep neural network implementation I_en.srt 8.99KB
001 Deep neural network implementation I.mp4 17.33MB
001 Deep neural networks_en.srt 6.88KB
001 Deep neural networks.mp4 9.28MB
001 Evolution of computer vision related algorithms_en.srt 5.02KB
001 Evolution of computer vision related algorithms.mp4 8.68MB
001 Exploration vs exploitation problem_en.srt 4.71KB
001 Exploration vs exploitation problem.mp4 7.65MB
001 Face detection implementation I - installing OpenCV_en.srt 3.48KB
001 Face detection implementation I - installing OpenCV.mp4 7.64MB
001 First steps in Python_en.srt 7.24KB
001 First steps in Python.mp4 7.38MB
001 Handwritten digit classification I_en.srt 15.41KB
001 Handwritten digit classification I.mp4 54.32MB
001 Histogram of oriented gradients basics_en.srt 4.98KB
001 Histogram of oriented gradients basics.mp4 19.24MB
001 How to measure the running time of algorithms_en.srt 14.37KB
001 How to measure the running time of algorithms.mp4 18.29MB
001 Images and pixel intensities_en.srt 6.94KB
001 Images and pixel intensities.mp4 10.74MB
001 Installing PyCharm and Python on Windows.html 1.54KB
001 Introduction_en.srt 5.09KB
001 Introduction.mp4 25.85MB
001 K-means clustering introduction_en.srt 14.56KB
001 K-means clustering introduction.mp4 16.62MB
001 Lane detection - the problem_en.srt 2.49KB
001 Lane detection - the problem.mp4 4.41MB
001 Machine learning section.html 471B
001 Markov decision processes basics I_en.srt 7.14KB
001 Markov decision processes basics I.mp4 23.20MB
001 Neural networks and deep learning section.html 346B
001 Principal component analysis (PCA) introduction_en.srt 11.04KB
001 Principal component analysis (PCA) introduction.mp4 38.24MB
001 Pruning introduction_en.srt 8.75KB
001 Pruning introduction.mp4 15.47MB
001 Python crash course introduction_en.srt 3.11KB
001 Python crash course introduction.mp4 3.97MB
001 PythonMachineLearning.zip 565.12MB
001 Showing the HOG features programatically_en.srt 13.86KB
001 Showing the HOG features programatically.mp4 53.40MB
001 Simple neural network implementation - XOR problem_en.srt 17.76KB
001 Simple neural network implementation - XOR problem.mp4 36.70MB
001 SSD implementation I_en.srt 7.67KB
001 SSD implementation I.mp4 30.89MB
001 The Olivetti dataset_en.srt 10.26KB
001 The Olivetti dataset.mp4 22.83MB
001 The standard convolutional neural network (CNN) way_en.srt 8.18KB
001 The standard convolutional neural network (CNN) way.mp4 18.36MB
001 Tic Tac Toe with deep Q learning implementation I_en.srt 5.26KB
001 Tic Tac Toe with deep Q learning implementation I.mp4 21.12MB
001 Tic tac toe with Q learning implementation I_en.srt 5.16KB
001 Tic tac toe with Q learning implementation I.mp4 16.78MB
001 Time series analysis example I_en.srt 5.71KB
001 Time series analysis example I.mp4 14.07MB
001 Types of neural networks_en.srt 4.88KB
001 Types of neural networks.mp4 8.01MB
001 Understanding the classification problem_en.srt 3.03KB
001 Understanding the classification problem.mp4 4.78MB
001 Viola-Jones algorithm_en.srt 14.84KB
001 Viola-Jones algorithm.mp4 40.92MB
001 What are functions_en.srt 5.73KB
001 What are functions.mp4 8.09MB
001 What are Support Vector Machines (SVMs)_en.srt 7.45KB
001 What are Support Vector Machines (SVMs).mp4 20.14MB
001 What is cross validation_en.srt 7.90KB
001 What is cross validation.mp4 24.41MB
001 What is deep Q learning_en.srt 6.20KB
001 What is deep Q learning.mp4 9.29MB
001 What is linear regression_en.srt 12.34KB
001 What is linear regression.mp4 39.99MB
001 What is logistic regression_en.srt 16.15KB
001 What is logistic regression.mp4 40.20MB
001 What is object oriented programming (OOP)_en.srt 3.17KB
001 What is object oriented programming (OOP).mp4 5.23MB
001 What is Q learning_en.srt 6.94KB
001 What is Q learning.mp4 11.79MB
001 What is reinforcement learning.html 899B
001 What is the CIFAR-10 dataset_en.srt 8.01KB
001 What is the CIFAR-10 dataset.mp4 36.07MB
001 What is the key advantage of NumPy_en.srt 5.81KB
001 What is the key advantage of NumPy.mp4 8.16MB
001 What is the k-nearest neighbor classifier_en.srt 7.90KB
001 What is the k-nearest neighbor classifier.mp4 13.69MB
001 What is the naive Bayes classifier_en.srt 14.13KB
001 What is the naive Bayes classifier.mp4 42.38MB
001 What is the SSD algorithm_en.srt 5.24KB
001 What is the SSD algorithm.mp4 18.05MB
001 What is the YOLO approach_en.srt 7.57KB
001 What is the YOLO approach.mp4 12.37MB
001 Why do recurrent neural networks are important_en.srt 5.69KB
001 Why do recurrent neural networks are important.mp4 21.30MB
001 Why to learn artificial intelligence and machine learning_en.srt 7.69KB
001 Why to learn artificial intelligence and machine learning.mp4 14.01MB
001 YOLO algorithm implementation I_en.srt 8.84KB
001 YOLO algorithm implementation I.mp4 22.81MB
002 Activation functions revisited_en.srt 12.42KB
002 Activation functions revisited.mp4 26.21MB
002 Applications of reinforcement learning_en.srt 3.56KB
002 Applications of reinforcement learning.mp4 6.60MB
002 Artificial neural networks - layers_en.srt 6.67KB
002 Artificial neural networks - layers.mp4 11.03MB
002 Bagging introduction_en.srt 10.09KB
002 Bagging introduction.mp4 16.08MB
002 Basic concept behind SSD algorithm (architecture)_en.srt 9.79KB
002 Basic concept behind SSD algorithm (architecture).mp4 43.48MB
002 Boosting introduction - illustration_en.srt 7.25KB
002 Boosting introduction - illustration.mp4 11.17MB
002 Class and objects basics_en.srt 3.73KB
002 Class and objects basics.mp4 5.39MB
002 Concept of lazy learning_en.srt 5.11KB
002 Concept of lazy learning.mp4 15.24MB
002 Creating and updating arrays_en.srt 9.57KB
002 Creating and updating arrays.mp4 16.76MB
002 Cross validation example_en.srt 6.96KB
002 Cross validation example.mp4 25.13MB
002 Data structures introduction_en.srt 4.50KB
002 Data structures introduction.mp4 6.72MB
002 Decision trees introduction - entropy_en.srt 10.88KB
002 Decision trees introduction - entropy.mp4 40.84MB
002 Deep neural network implementation II_en.srt 8.73KB
002 Deep neural network implementation II.mp4 18.90MB
002 Deep Q learning and ε-greedy strategy_en.srt 4.23KB
002 Defining functions_en.srt 6.93KB
002 Defining functions.mp4 9.60MB
002 Face detection implementation II - CascadeClassifier_en.srt 12.57KB
002 Face detection implementation II - CascadeClassifier.mp4 70.68MB
002 Face detection with HOG implementation I_en.srt 7.71KB
002 Face detection with HOG implementation I.mp4 15.45MB
002 Feature selection_en.srt 5.49KB
002 Feature selection.mp4 12.15MB
002 Haar-features_en.srt 10.65KB
002 Haar-features.mp4 22.13MB
002 Handling pixel intensities I_en.srt 8.20KB
002 Handling pixel intensities I.mp4 34.64MB
002 Handwritten digit classification II_en.srt 16.79KB
002 Handwritten digit classification II.mp4 55.59MB
002 Histogram of oriented gradients - gradient kernel_en.srt 10.14KB
002 Histogram of oriented gradients - gradient kernel.mp4 30.56MB
002 Installing PyCharm and Python on Mac.html 1.55KB
002 K-means clustering example_en.srt 10.54KB
002 K-means clustering example.mp4 19.52MB
002 Lane detection - handling videos_en.srt 7.50KB
002 Lane detection - handling videos.mp4 13.69MB
002 Linearly separable problems_en.srt 18.40KB
002 Linearly separable problems.mp4 30.33MB
002 Linear regression theory - optimization_en.srt 11.32KB
002 Linear regression theory - optimization.mp4 45.04MB
002 Logistic regression and maximum likelihood estimation_en.srt 6.68KB
002 Logistic regression and maximum likelihood estimation.mp4 22.68MB
002 Markov decision processes basics II_en.srt 8.37KB
002 Markov decision processes basics II.mp4 14.15MB
002 Naive Bayes classifier illustration_en.srt 6.24KB
002 Naive Bayes classifier illustration.mp4 9.23MB
002 N-armed bandit problem introduction_en.srt 10.81KB
002 N-armed bandit problem introduction.mp4 19.56MB
002 Preprocessing the data_en.srt 3.53KB
002 Preprocessing the data.mp4 7.66MB
002 Principal component analysis example_en.srt 14.22KB
002 Principal component analysis example.mp4 26.79MB
002 Q learning introduction - the algorithm_en.srt 9.32KB
002 Q learning introduction - the algorithm.mp4 15.46MB
002 Reading the images and constructing the dataset I_en.srt 7.63KB
002 Reading the images and constructing the dataset I.mp4 25.08MB
002 Recurrent neural networks basics_en.srt 11.80KB
002 Recurrent neural networks basics.mp4 28.63MB
002 Region proposals and convolutional neural networks (CNNs)_en.srt 13.67KB
002 Region proposals and convolutional neural networks (CNNs).mp4 60.62MB
002 Simple neural network implementation - Iris dataset_en.srt 17.75KB
002 Simple neural network implementation - Iris dataset.mp4 84.96MB
002 SSD implementation II_en.srt 3.08KB
002 SSD implementation II.mp4 6.37MB
002 Tic Tac Toe with deep Q learning implementation II_en.srt 8.87KB
002 Tic Tac Toe with deep Q learning implementation II.mp4 40.62MB
002 Tic tac toe with Q learning implementation II_en.srt 10.38KB
002 Tic tac toe with Q learning implementation II.mp4 19.81MB
002 Time series analysis example II_en.srt 7.47KB
002 Time series analysis example II.mp4 13.04MB
002 Types of artificial intelligence learning_en.srt 11.73KB
002 Types of artificial intelligence learning.mp4 36.97MB
002 Understanding the dataset_en.srt 7.82KB
002 Understanding the dataset.mp4 45.89MB
002 What are the basic data types_en.srt 6.35KB
002 What are the basic data types.mp4 7.70MB
002 YOLO algorithm - grid cells_en.srt 8.94KB
002 YOLO algorithm - grid cells.mp4 38.38MB
002 YOLO algorithm implementation II_en.srt 11.90KB
002 YOLO algorithm implementation II.mp4 23.78MB
003 Artificial neural networks - the model_en.srt 6.60KB
003 Artificial neural networks - the model.mp4 21.55MB
003 Booleans_en.srt 2.43KB
003 Booleans.mp4 3.52MB
003 Boosting introduction - equations_en.srt 8.95KB
003 Boosting introduction - equations.mp4 13.42MB
003 Bounding boxes and anchor boxes_en.srt 13.48KB
003 Bounding boxes and anchor boxes.mp4 70.53MB
003 Convolutional neural networks - kernel_en.srt 5.63KB
003 Convolutional neural networks - kernel.mp4 8.90MB
003 Credit scoring with simple neural networks_en.srt 5.52KB
003 Credit scoring with simple neural networks.mp4 23.17MB
003 Decision trees introduction - information gain_en.srt 10.52KB
003 Decision trees introduction - information gain.mp4 38.24MB
003 Deep neural network implementation III_en.srt 6.84KB
003 Deep neural network implementation III.mp4 26.09MB
003 Detecting bounding boxes with regression_en.srt 9.20KB
003 Detecting bounding boxes with regression.mp4 22.10MB
003 Dimension of arrays_en.srt 12.22KB
003 Dimension of arrays.mp4 18.44MB
003 Distance metrics - Euclidean-distance_en.srt 9.30KB
003 Distance metrics - Euclidean-distance.mp4 21.73MB
003 Face detection implementation III - CascadeClassifier parameters_en.srt 5.39KB
003 Face detection implementation III - CascadeClassifier parameters.mp4 18.36MB
003 Face detection with HOG implementation II_en.srt 16.75KB
003 Face detection with HOG implementation II.mp4 52.33MB
003 Finding optimal number of principal components (eigenvectors)_en.srt 7.78KB
003 Finding optimal number of principal components (eigenvectors).mp4 23.63MB
003 Fitting the model_en.srt 7.40KB
003 Fitting the model.mp4 43.65MB
003 Fundamentals of statistics_en.srt 10.33KB
003 Fundamentals of statistics.mp4 33.22MB
003 Handling pixel intensities II_en.srt 7.24KB
003 Handling pixel intensities II.mp4 13.21MB
003 Handwritten digit classification III_en.srt 7.51KB
003 Handwritten digit classification III.mp4 35.17MB
003 Histogram of oriented gradients - magnitude and angle_en.srt 10.31KB
003 Histogram of oriented gradients - magnitude and angle.mp4 33.92MB
003 Installing TensorFlow and Keras_en.srt 2.84KB
003 Installing TensorFlow and Keras.mp4 9.70MB
003 Integral images_en.srt 8.01KB
003 Integral images.mp4 24.53MB
003 K-means clustering - text clustering_en.srt 13.14KB
003 K-means clustering - text clustering.mp4 37.68MB
003 Lane detection - first transformations_en.srt 5.84KB
003 Lane detection - first transformations.mp4 11.94MB
003 Linear regression theory - gradient descent_en.srt 10.71KB
003 Linear regression theory - gradient descent.mp4 39.45MB
003 Logistic regression example I - sigmoid function_en.srt 14.73KB
003 Logistic regression example I - sigmoid function.mp4 33.18MB
003 Loss functions_en.srt 7.72KB
003 Loss functions.mp4 15.42MB
003 Markov decision processes - equations_en.srt 14.72KB
003 Markov decision processes - equations.mp4 49.65MB
003 Naive Bayes classifier implementation_en.srt 5.20KB
003 Naive Bayes classifier implementation.mp4 11.08MB
003 N-armed bandit problem implementation_en.srt 15.15KB
003 N-armed bandit problem implementation.mp4 53.31MB
003 Non-linearly separable problems_en.srt 9.22KB
003 Non-linearly separable problems.mp4 22.96MB
003 Positional arguments and keyword arguments_en.srt 12.83KB
003 Positional arguments and keyword arguments.mp4 22.20MB
003 Principal component analysis example II_en.srt 12.16KB
003 Principal component analysis example II.mp4 22.27MB
003 Q learning illustration_en.srt 14.70KB
003 Q learning illustration.mp4 21.44MB
003 Random forest classifier introduction_en.srt 7.08KB
003 Random forest classifier introduction.mp4 12.29MB
003 Reading the images and constructing the dataset II_en.srt 5.86KB
003 Reading the images and constructing the dataset II.mp4 38.06MB
003 Remember and replay_en.srt 4.65KB
003 Remember and replay.mp4 7.00MB
003 SSD implementation III_en.srt 6.65KB
003 SSD implementation III.mp4 18.84MB
003 Tic Tac Toe with deep Q learning implementation III_en.srt 13.94KB
003 Tic Tac Toe with deep Q learning implementation III.mp4 74.29MB
003 Tic tac toe with Q learning implementation III_en.srt 9.56KB
003 Tic tac toe with Q learning implementation III.mp4 26.25MB
003 Time series analysis example III_en.srt 8.97KB
003 Time series analysis example III.mp4 20.06MB
003 Using the constructor_en.srt 7.55KB
003 Using the constructor.mp4 17.82MB
003 Vanishing and exploding gradients problem_en.srt 11.96KB
003 Vanishing and exploding gradients problem.mp4 27.18MB
003 What are array data structures I_en.srt 9.16KB
003 What are array data structures I.mp4 12.26MB
003 YOLO algorithm implementation III_en.srt 11.42KB
003 YOLO algorithm implementation III.mp4 24.71MB
003 YOLO algorithm - intersection over union_en.srt 12.00KB
003 YOLO algorithm - intersection over union.mp4 51.40MB
004 Applications AB testing in marketing_en.srt 5.63KB
004 Applications AB testing in marketing.mp4 12.13MB
004 Bias and variance trade-off_en.srt 5.16KB
004 Bias and variance trade-off.mp4 14.70MB
004 Boosting in computer vision_en.srt 8.14KB
004 Boosting in computer vision.mp4 23.41MB
004 Boosting introduction - final formula_en.srt 10.59KB
004 Boosting introduction - final formula.mp4 36.78MB
004 Building the deep neural network model_en.srt 4.42KB
004 Building the deep neural network model.mp4 9.55MB
004 Class variables and instance variables_en.srt 5.66KB
004 Class variables and instance variables.mp4 14.67MB
004 Convolutional neural networks - kernel II_en.srt 7.63KB
004 Convolutional neural networks - kernel II.mp4 8.88MB
004 DBSCAN introduction_en.srt 9.50KB
004 DBSCAN introduction.mp4 11.37MB
004 Face detection implementation IV - tuning the parameters_en.srt 6.22KB
004 Face detection implementation IV - tuning the parameters.mp4 18.00MB
004 Face detection with HOG implementation III_en.srt 6.47KB
004 Face detection with HOG implementation III.mp4 36.08MB
004 Feature maps and convolution layers_en.srt 6.32KB
004 Feature maps and convolution layers.mp4 13.86MB
004 Gradient descent and stochastic gradient descent_en.srt 9.51KB
004 Gradient descent and stochastic gradient descent.mp4 40.09MB
004 Histogram of oriented gradients - normalization_en.srt 6.43KB
004 Histogram of oriented gradients - normalization.mp4 22.59MB
004 How to train the YOLO algorithm_en.srt 10.08KB
004 How to train the YOLO algorithm.mp4 25.08MB
004 Indexes and slicing_en.srt 10.50KB
004 Indexes and slicing.mp4 16.72MB
004 Kernel functions_en.srt 13.04KB
004 Kernel functions.mp4 34.10MB
004 Linear regression implementation I_en.srt 18.37KB
004 Linear regression implementation I.mp4 90.81MB
004 Logistic regression example II- credit scoring_en.srt 14.25KB
004 Logistic regression example II- credit scoring.mp4 58.55MB
004 Long-short term memory (LSTM) model_en.srt 14.00KB
004 Long-short term memory (LSTM) model.mp4 33.39MB
004 Markov decision processes - illustration_en.srt 9.37KB
004 Markov decision processes - illustration.mp4 28.22MB
004 Mathematical formulation of deep Q learning.html 272B
004 Mathematical formulation of principle component analysis (PCA).html 282B
004 Mathematical formulation of Q learning.html 262B
004 Multiclass classification implementation I_en.srt 10.71KB
004 Multiclass classification implementation I.mp4 28.48MB
004 Random forests example I - iris dataset_en.srt 5.57KB
004 Random forests example I - iris dataset.mp4 13.50MB
004 Returning values_en.srt 3.06KB
004 Returning values.mp4 4.11MB
004 SSD implementation IV_en.srt 10.59KB
004 SSD implementation IV.mp4 50.57MB
004 Strings_en.srt 9.85KB
004 Strings.mp4 14.57MB
004 The Gini-index approach_en.srt 12.39KB
004 The Gini-index approach.mp4 20.11MB
004 Tic Tac Toe with deep Q learning implementation IV_en.srt 7.31KB
004 Tic Tac Toe with deep Q learning implementation IV.mp4 15.43MB
004 Tic tac toe with Q learning implementation IV_en.srt 9.93KB
004 Tic tac toe with Q learning implementation IV.mp4 46.16MB
004 Time series analysis example IV_en.srt 3.48KB
004 Time series analysis example IV.mp4 8.46MB
004 Tuning the parameters - regularization_en.srt 12.76KB
004 Tuning the parameters - regularization.mp4 60.49MB
004 Understanding eigenfaces_en.srt 10.20KB
004 Understanding eigenfaces.mp4 62.97MB
004 What are array data structures II_en.srt 9.62KB
004 What are array data structures II.mp4 12.30MB
004 What is Canny edge detection_en.srt 8.95KB
004 What is Canny edge detection.mp4 16.43MB
004 What is text clustering_en.srt 10.94KB
004 What is text clustering.mp4 38.50MB
004 What is the Fast R-CNN model_en.srt 3.46KB
004 What is the Fast R-CNN model.mp4 6.42MB
004 Why convolution is so important in image processing_en.srt 16.96KB
004 Why convolution is so important in image processing.mp4 38.48MB
004 Why to use activation functions_en.srt 9.11KB
004 Why to use activation functions.mp4 28.39MB
004 YOLO algorithm implementation IV_en.srt 15.95KB
004 YOLO algorithm implementation IV.mp4 69.67MB
005 Bellman-equation_en.srt 7.13KB
005 Bellman-equation.mp4 15.43MB
005 Boosting implementation I - iris dataset_en.srt 8.79KB
005 Boosting implementation I - iris dataset.mp4 31.13MB
005 Cascading_en.srt 5.55KB
005 Cascading.mp4 9.88MB
005 Constructing the machine learning models_en.srt 5.62KB
005 Constructing the machine learning models.mp4 13.36MB
005 Convolutional neural networks - pooling_en.srt 7.90KB
005 Convolutional neural networks - pooling.mp4 25.58MB
005 DBSCAN example_en.srt 11.78KB
005 DBSCAN example.mp4 21.15MB
005 Decision trees introduction - pros and cons_en.srt 3.15KB
005 Decision trees introduction - pros and cons.mp4 5.74MB
005 Evaluating and testing the model_en.srt 4.78KB
005 Evaluating and testing the model.mp4 12.52MB
005 Face detection implementation V - detecting faces real-time_en.srt 6.96KB
005 Face detection implementation V - detecting faces real-time.mp4 18.85MB
005 Face detection with HOG implementation IV_en.srt 9.60KB
005 Face detection with HOG implementation IV.mp4 32.31MB
005 Gated recurrent units (GRUs)_en.srt 4.50KB
005 Gated recurrent units (GRUs).mp4 6.41MB
005 Getting the useful region of the image - masking_en.srt 17.47KB
005 Getting the useful region of the image - masking.mp4 64.74MB
005 Hard negative mining during training_en.srt 3.36KB
005 Hard negative mining during training.mp4 6.12MB
005 Histogram of oriented gradients - big picture_en.srt 4.37KB
005 Histogram of oriented gradients - big picture.mp4 7.84MB
005 Hyperparameters_en.srt 7.15KB
005 Hyperparameters.mp4 26.92MB
005 Image processing - blur operation_en.srt 7.05KB
005 Image processing - blur operation.mp4 12.67MB
005 K-nearest neighbor implementation I_en.srt 9.08KB
005 K-nearest neighbor implementation I.mp4 16.50MB
005 Linear regression implementation II_en.srt 5.63KB
005 Linear regression implementation II.mp4 12.20MB
005 Lists in Python_en.srt 7.25KB
005 Lists in Python.mp4 10.51MB
005 Logistic regression example III - credit scoring_en.srt 7.08KB
005 Logistic regression example III - credit scoring.mp4 33.52MB
005 Multiclass classification implementation II_en.srt 7.54KB
005 Multiclass classification implementation II.mp4 26.72MB
005 Neural networks - the big picture_en.srt 12.32KB
005 Neural networks - the big picture.mp4 34.99MB
005 Private variables and name mangling_en.srt 5.64KB
005 Private variables and name mangling.mp4 15.30MB
005 Random forests example II - credit scoring_en.srt 4.43KB
005 Random forests example II - credit scoring.mp4 9.94MB
005 Returning multiple values_en.srt 3.79KB
005 Returning multiple values.mp4 6.00MB
005 SSD implementation V_en.srt 4.57KB
005 SSD implementation V.mp4 14.99MB
005 String slicing_en.srt 8.22KB
005 String slicing.mp4 12.66MB
005 Support vector machine example I - simple_en.srt 14.42KB
005 Support vector machine example I - simple.mp4 36.79MB
005 Text clustering - inverse document frequency (TF-IDF)_en.srt 6.40KB
005 Text clustering - inverse document frequency (TF-IDF).mp4 14.61MB
005 Tic Tac Toe with deep Q learning implementation V_en.srt 6.35KB
005 Tic Tac Toe with deep Q learning implementation V.mp4 31.32MB
005 Tic tac toe with Q learning implementation V_en.srt 6.25KB
005 Tic tac toe with Q learning implementation V.mp4 21.72MB
005 Time series analysis example V_en.srt 5.69KB
005 Time series analysis example V.mp4 14.59MB
005 Types_en.srt 5.80KB
005 Types.mp4 9.92MB
005 What is the Faster R-CNN model_en.srt 2.53KB
005 What is the Faster R-CNN model.mp4 3.97MB
005 YOLO algorithm implementation V_en.srt 14.75KB
005 YOLO algorithm implementation V.mp4 95.80MB
005 YOLO algorithm - loss function_en.srt 6.77KB
005 YOLO algorithm - loss function.mp4 16.29MB
006 Boosting implementation II -wine classification_en.srt 14.82KB
006 Boosting implementation II -wine classification.mp4 38.65MB
006 Convolutional neural networks - flattening_en.srt 6.62KB
006 Convolutional neural networks - flattening.mp4 26.77MB
006 Decision trees implementation I_en.srt 7.65KB
006 Decision trees implementation I.mp4 13.18MB
006 Detecting lines - what is Hough transformation_en.srt 14.89KB
006 Detecting lines - what is Hough transformation.mp4 45.00MB
006 Hierarchical clustering introduction_en.srt 9.61KB
006 Hierarchical clustering introduction.mp4 16.58MB
006 How to solve MDP problems_en.srt 3.05KB
006 How to solve MDP problems.mp4 5.70MB
006 Image processing - edge detection kernel_en.srt 7.47KB
006 Image processing - edge detection kernel.mp4 14.58MB
006 K-nearest neighbor implementation II_en.srt 11.17KB
006 K-nearest neighbor implementation II.mp4 48.51MB
006 Lists in Python - advanced operations_en.srt 9.61KB
006 Lists in Python - advanced operations.mp4 18.63MB
006 Mathematical formulation of deep neural networks.html 290B
006 Mathematical formulation of linear regression.html 275B
006 Mathematical formulation of logistic regression.html 263B
006 Mathematical formulation of recurrent neural networks.html 258B
006 Naive Bayes example - clustering news_en.srt 18.49KB
006 Naive Bayes example - clustering news.mp4 78.91MB
006 Original academic research article.html 318B
006 Original academic research articles.html 311B
006 Original academic research articles.html 453B
006 Random forests example III - OCR parameter tuning_en.srt 13.07KB
006 Random forests example III - OCR parameter tuning.mp4 31.90MB
006 Regularization (data augmentation) and non-max suppression during training_en.srt 3.05KB
006 Regularization (data augmentation) and non-max suppression during training.mp4 6.87MB
006 Reshape_en.srt 10.09KB
006 Reshape.mp4 16.97MB
006 Support vector machine example II - iris dataset_en.srt 8.49KB
006 Support vector machine example II - iris dataset.mp4 15.10MB
006 Tic tac toe with Q learning implementation VI_en.srt 16.18KB
006 Tic tac toe with Q learning implementation VI.mp4 99.45MB
006 Time series analysis example VI_en.srt 5.78KB
006 Time series analysis example VI.mp4 12.37MB
006 Type casting_en.srt 5.31KB
006 Type casting.mp4 8.18MB
006 Using bias nodes in the neural network_en.srt 2.28KB
006 Using bias nodes in the neural network.mp4 4.32MB
006 Using cross-validation_en.srt 3.61KB
006 Using cross-validation.mp4 21.97MB
006 What is inheritance in OOP_en.srt 4.69KB
006 What is inheritance in OOP.mp4 8.13MB
006 Yield operator_en.srt 6.38KB
006 Yield operator.mp4 9.15MB
006 YOLO algorithm implementation VI_en.srt 2.57KB
006 YOLO algorithm implementation VI.mp4 7.30MB
006 YOLO algorithm - non-max suppression_en.srt 4.09KB
006 YOLO algorithm - non-max suppression.mp4 9.12MB
007 Boosting vs. bagging_en.srt 4.06KB
007 Boosting vs. bagging.mp4 6.87MB
007 Convolutional neural networks - illustration_en.srt 3.56KB
007 Convolutional neural networks - illustration.mp4 31.87MB
007 Decision trees implementation II - parameter tuning_en.srt 5.88KB
007 Decision trees implementation II - parameter tuning.mp4 14.09MB
007 Hierarchical clustering example_en.srt 10.55KB
007 Hierarchical clustering example.mp4 20.36MB
007 Hough transformation illustration.html 191B
007 How to measure the error of the network_en.srt 6.53KB
007 How to measure the error of the network.mp4 12.03MB
007 Image processing - sharpen operation_en.srt 4.57KB
007 Image processing - sharpen operation.mp4 9.03MB
007 K-nearest neighbor implementation III_en.srt 5.40KB
007 K-nearest neighbor implementation III.mp4 10.53MB
007 Lists in Python - list comprehension_en.srt 7.02KB
007 Lists in Python - list comprehension.mp4 11.39MB
007 Local and global variables_en.srt 2.61KB
007 Local and global variables.mp4 4.25MB
007 Mathematical formulation of naive Bayes classifier.html 246B
007 Mathematical formulation of random forest classifiers.html 263B
007 Operators_en.srt 6.63KB
007 Operators.mp4 10.69MB
007 Original academic research article.html 241B
007 Stacking and merging arrays_en.srt 8.43KB
007 Stacking and merging arrays.mp4 21.95MB
007 Support vector machines example III - parameter tuning_en.srt 9.53KB
007 Support vector machines example III - parameter tuning.mp4 17.83MB
007 The super keyword_en.srt 5.59KB
007 The super keyword.mp4 9.13MB
007 Tic tac toe with Q learning implementation VII_en.srt 8.12KB
007 Tic tac toe with Q learning implementation VII.mp4 49.80MB
007 What is value iteration_en.srt 8.26KB
007 What is value iteration.mp4 24.23MB
007 Why to use the so-called anchor boxes_en.srt 8.79KB
007 Why to use the so-called anchor boxes.mp4 19.94MB
007 YOLO algorithm implementation VII_en.srt 4.57KB
007 YOLO algorithm implementation VII.mp4 27.94MB
008 (!!!) Python lists and arrays.html 628B
008 Conditional statements_en.srt 5.36KB
008 Conditional statements.mp4 8.57MB
008 Decision tree implementation III - identifying cancer_en.srt 6.66KB
008 Decision tree implementation III - identifying cancer.mp4 32.45MB
008 Drawing lines on video frames_en.srt 11.80KB
008 Drawing lines on video frames.mp4 32.69MB
008 Filter_en.srt 4.65KB
008 Filter.mp4 7.65MB
008 Function (method) override_en.srt 3.16KB
008 Function (method) override.mp4 6.46MB
008 Hierarchical clustering - market segmentation_en.srt 12.46KB
008 Hierarchical clustering - market segmentation.mp4 29.00MB
008 Mathematical formulation of boosting.html 290B
008 Mathematical formulation of convolution neural networks.html 290B
008 Mathematical formulation of k-nearest neighbor classifier.html 276B
008 Optimization with gradient descent_en.srt 11.36KB
008 Optimization with gradient descent.mp4 39.92MB
008 Original academic research article.html 266B
008 Support vector machine example IV - digit recognition_en.srt 12.40KB
008 Support vector machine example IV - digit recognition.mp4 22.10MB
008 Tic tac toe with Q learning implementation VIII_en.srt 8.82KB
008 Tic tac toe with Q learning implementation VIII.mp4 49.82MB
008 What are the most relevant built-in functions_en.srt 5.51KB
008 What are the most relevant built-in functions.mp4 7.63MB
008 What is policy iteration_en.srt 5.12KB
008 What is policy iteration.mp4 6.98MB
009 Gradient descent with backpropagation_en.srt 8.39KB
009 Gradient descent with backpropagation.mp4 24.20MB
009 How to use multiple conditions_en.srt 10.08KB
009 How to use multiple conditions.mp4 15.96MB
009 Mathematical formulation of clustering.html 629B
009 Mathematical formulation of decision trees.html 356B
009 Mathematical formulation of reinforcement learning.html 255B
009 Running time comparison arrays and lists.html 1.34KB
009 Support vector machine example V - digit recognition_en.srt 7.14KB
009 Support vector machine example V - digit recognition.mp4 14.49MB
009 Testing lane detection algorithm_en.srt 3.28KB
009 Testing lane detection algorithm.mp4 16.08MB
009 What are tuples_en.srt 4.99KB
009 What are tuples.mp4 7.52MB
009 What is polymorphism_en.srt 5.86KB
009 What is polymorphism.mp4 16.18MB
009 What is recursion_en.srt 11.56KB
009 What is recursion.mp4 17.38MB
010 Advantages and disadvantages_en.srt 3.72KB
010 Advantages and disadvantages.mp4 6.00MB
010 Backpropagation explained_en.srt 16.09KB
010 Backpropagation explained.mp4 46.26MB
010 Local vs global variables_en.srt 5.33KB
010 Local vs global variables.mp4 7.83MB
010 Logical operators_en.srt 4.46KB
010 Logical operators.mp4 8.05MB
010 Mutability and immutability_en.srt 6.03KB
010 Mutability and immutability.mp4 8.70MB
010 Polymorphism and abstraction example_en.srt 6.63KB
010 Polymorphism and abstraction example.mp4 13.72MB
011 Loops - for loop_en.srt 7.75KB
011 Loops - for loop.mp4 9.56MB
011 Mathematical formulation of feed-forward neural networks.html 261B
011 Mathematical formulation of Support Vector Machines (SVMs).html 419B
011 Modules_en.srt 7.52KB
011 Modules.mp4 11.04MB
011 The __main__ function_en.srt 4.56KB
011 The __main__ function.mp4 7.33MB
011 What are linked list data structures_en.srt 11.72KB
011 What are linked list data structures.mp4 20.75MB
012 Doubly linked list implementation in Python_en.srt 6.85KB
012 Doubly linked list implementation in Python.mp4 11.44MB
012 Loops - while loop_en.srt 5.54KB
012 Loops - while loop.mp4 7.55MB
012 The __str__ function_en.srt 4.02KB
012 The __str__ function.mp4 7.67MB
013 Comparing objects - overriding functions_en.srt 10.12KB
013 Comparing objects - overriding functions.mp4 17.11MB
013 Hashing and O(1) running time complexity_en.srt 11.15KB
013 Hashing and O(1) running time complexity.mp4 23.11MB
013 What are nested loops_en.srt 3.51KB
013 What are nested loops.mp4 5.95MB
014 Dictionaries in Python_en.srt 12.04KB
014 Dictionaries in Python.mp4 19.44MB
014 Enumerate_en.srt 4.93KB
014 Enumerate.mp4 7.69MB
015 Break and continue_en.srt 7.01KB
015 Break and continue.mp4 9.92MB
015 Sets in Python_en.srt 10.93KB
015 Sets in Python.mp4 26.05MB
016 Calculating Fibonacci-numbers_en.srt 3.24KB
016 Calculating Fibonacci-numbers.mp4 4.02MB
016 Sorting_en.srt 12.93KB
016 Sorting.mp4 23.77MB
Distribution statistics by country
France (FR) 1
Italy (IT) 1
United States (US) 1
Russia (RU) 1
New Zealand (NZ) 1
Total 5
IP List List of IP addresses which were distributed this torrent