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[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 |