Udemy - Machine Learning & Deep Learning Projects for Beginners 2023

mp4   Hot:164   Size:7.9 GB   Created:2023-01-06 12:06:02   Update:2024-09-17 06:29:41  

File List

  • 02 - Project 1 Breast Cancer Detection/6 - Data Preprocessing Part 2.mp4 182.46 MB
    01 - Introduction/2 - Important Udemy Review Update.mp4 8.39 MB
    01 - Introduction/3 - Colab Notebooks.html 273 B
    02 - Project 1 Breast Cancer Detection/4 - Business Problem.mp4 46.22 MB
    02 - Project 1 Breast Cancer Detection/5 - Data Preprocessing Part 1.mp4 133.05 MB
    01 - Introduction/1 - Course Overview.mp4 9.36 MB
    02 - Project 1 Breast Cancer Detection/7 - Logistic Regression.mp4 130.8 MB
    02 - Project 1 Breast Cancer Detection/8 - Random Forest Classifier.mp4 60.78 MB
    02 - Project 1 Breast Cancer Detection/9 - Hyperparameter Tuning using Randomized search.mp4 170.99 MB
    02 - Project 1 Breast Cancer Detection/10 - Predicting a Single Observation.mp4 34.24 MB
    03 - Project 2 Customer churn rate prediction/11 - Business Problem.mp4 33.34 MB
    03 - Project 2 Customer churn rate prediction/12 - Data Preprocessing part 1.mp4 125.9 MB
    03 - Project 2 Customer churn rate prediction/13 - Data Preprocessing part 2.mp4 104.54 MB
    03 - Project 2 Customer churn rate prediction/14 - Logistic Regression.mp4 88.78 MB
    03 - Project 2 Customer churn rate prediction/15 - Random Forest Classifier.mp4 47.15 MB
    03 - Project 2 Customer churn rate prediction/16 - XGBoost Classifier.mp4 38.71 MB
    03 - Project 2 Customer churn rate prediction/17 - Hyperparameter Tuning using Randomized Search.mp4 153.63 MB
    03 - Project 2 Customer churn rate prediction/18 - Predicting a Single Observation.mp4 27.47 MB
    04 - Project 3 Medical insurance premium prediction/19 - Business Problem.mp4 19.27 MB
    04 - Project 3 Medical insurance premium prediction/20 - Data Preprocessing Part 1.mp4 76.98 MB
    04 - Project 3 Medical insurance premium prediction/21 - Data Preprocessing Part 2.mp4 105.99 MB
    04 - Project 3 Medical insurance premium prediction/22 - Building and Finalizing the model.mp4 83.97 MB
    04 - Project 3 Medical insurance premium prediction/23 - Predicting a single observation.mp4 37.82 MB
    05 - Project 4 House price prediction/24 - Business Problem.mp4 31.53 MB
    05 - Project 4 House price prediction/25 - Data Preprocessing Part 1.mp4 159.17 MB
    05 - Project 4 House price prediction/26 - Data Preprocessing Part 2.mp4 143.31 MB
    05 - Project 4 House price prediction/27 - Building and Finalizing the model.mp4 92.45 MB
    05 - Project 4 House price prediction/28 - Hyperparameter Tuning using Randomized Search.mp4 111.04 MB
    06 - Project 5 E signing of customers based on financial data/29 - Business Problem.mp4 30.41 MB
    06 - Project 5 E signing of customers based on financial data/30 - Data Preprocessing Part 1.mp4 82.11 MB
    06 - Project 5 E signing of customers based on financial data/31 - Data Preprocessing Part 2.mp4 107.44 MB
    06 - Project 5 E signing of customers based on financial data/32 - Building and Finalizing the model.mp4 92.63 MB
    06 - Project 5 E signing of customers based on financial data/33 - Hyperparameter Tuning using Randomized Search.mp4 89.38 MB
    06 - Project 5 E signing of customers based on financial data/34 - Predicting a single observation.mp4 20.21 MB
    07 - Project 6 Credit card fraud detection/35 - Business Problem.mp4 31.1 MB
    07 - Project 6 Credit card fraud detection/36 - Data Preprocessing Part 1.mp4 47.74 MB
    07 - Project 6 Credit card fraud detection/37 - Data Preprocessing Part 2.mp4 113.21 MB
    07 - Project 6 Credit card fraud detection/38 - Building and Finalizing the model.mp4 91.78 MB
    07 - Project 6 Credit card fraud detection/39 - Predicting a single observation.mp4 25.17 MB
    08 - Project 7 Employee Attrition Prediction/40 - Business Problem.mp4 25.42 MB
    08 - Project 7 Employee Attrition Prediction/41 - Data Preprocessing Part 1.mp4 89 MB
    08 - Project 7 Employee Attrition Prediction/42 - Data Preprocessing Part 2.mp4 96.23 MB
    08 - Project 7 Employee Attrition Prediction/43 - Building and Finalizing the model.mp4 87.88 MB
    08 - Project 7 Employee Attrition Prediction/44 - Hyperparameter Tuning using Randomized Search.mp4 102.03 MB
    08 - Project 7 Employee Attrition Prediction/45 - Predicting a single observation.mp4 13.67 MB
    09 - Project 8 Customer Segmentation/46 - Business Problem.mp4 27.63 MB
    09 - Project 8 Customer Segmentation/47 - Data Preprocessing.mp4 100.75 MB
    09 - Project 8 Customer Segmentation/48 - Building the model and predicting results.mp4 96.47 MB
    10 - Project 9 Used Car Price Prediction/49 - Business Problem.mp4 18.29 MB
    10 - Project 9 Used Car Price Prediction/50 - Data Preprocessing Part 1.mp4 75.22 MB
    10 - Project 9 Used Car Price Prediction/51 - Data Preprocessing Part 2.mp4 68.2 MB
    10 - Project 9 Used Car Price Prediction/52 - Building and finalizing the Model.mp4 62.83 MB
    10 - Project 9 Used Car Price Prediction/53 - HyperParameter tuning and predicting the results.mp4 101.42 MB
    11 - Project 10 Restaurant Reviews Classification/54 - Business Problem.mp4 14.42 MB
    11 - Project 10 Restaurant Reviews Classification/55 - Data Preprocessing Part 1.mp4 86.57 MB
    11 - Project 10 Restaurant Reviews Classification/56 - Data Preprocessing Part 2.mp4 42.43 MB
    11 - Project 10 Restaurant Reviews Classification/57 - Data Preprocessing Part 3.mp4 35.16 MB
    11 - Project 10 Restaurant Reviews Classification/58 - Building and Finalizing the Model.mp4 54.92 MB
    12 - Project 11 Multiclass image classification with ANN/59 - Step 1 Installation and Setup.mp4 33.04 MB
    12 - Project 11 Multiclass image classification with ANN/60 - Step 2 Data Preprocessing.mp4 143.43 MB
    12 - Project 11 Multiclass image classification with ANN/61 - Imp Lecture dont skip.html 2.71 KB
    12 - Project 11 Multiclass image classification with ANN/62 - Step 3 Building the Model.mp4 78.63 MB
    12 - Project 11 Multiclass image classification with ANN/63 - Step 4 Training the Model.mp4 69.9 MB
    12 - Project 11 Multiclass image classification with ANN/64 - Step 5 Model evaluation and performance.mp4 80.11 MB
    13 - Project 12 Binary Data Classification with ANN/65 - Binary Data Classification Step 1.mp4 22.33 MB
    13 - Project 12 Binary Data Classification with ANN/66 - Binary Data Classification Step 2.mp4 171.35 MB
    13 - Project 12 Binary Data Classification with ANN/67 - Binary Data Classification Step 3.mp4 67.4 MB
    13 - Project 12 Binary Data Classification with ANN/68 - Binary Data Classification Step 4.mp4 20.44 MB
    13 - Project 12 Binary Data Classification with ANN/69 - Binary Data Classification Step 5.mp4 56.77 MB
    14 - Project 13 Object Recognition in Images with CNN/70 - Object Recognition in Images Step 1.mp4 11.21 MB
    14 - Project 13 Object Recognition in Images with CNN/71 - Object Recognition in Images Step 2.mp4 59.56 MB
    14 - Project 13 Object Recognition in Images with CNN/72 - Object Recognition in Images Step 3.mp4 134.39 MB
    14 - Project 13 Object Recognition in Images with CNN/73 - Object Recognition in Images Step 4.mp4 41.03 MB
    14 - Project 13 Object Recognition in Images with CNN/74 - Object Recognition in Images Step 5.mp4 50.82 MB
    15 - Project 14 Binary Image Classification with CNN/75 - Binary Image Classification Step 1.mp4 17.56 MB
    15 - Project 14 Binary Image Classification with CNN/76 - Binary Image Classification Step 2.mp4 85.54 MB
    15 - Project 14 Binary Image Classification with CNN/77 - Binary Image Classification Step 3.mp4 101.98 MB
    15 - Project 14 Binary Image Classification with CNN/78 - Binary Image Classification Step 4.mp4 87.86 MB
    15 - Project 14 Binary Image Classification with CNN/79 - Binary Image Classification Step 5.mp4 54.5 MB
    16 - Project 15 Digit Recognition with CNN/80 - Digit Recognition with CNN Step 1.mp4 68.14 MB
    16 - Project 15 Digit Recognition with CNN/81 - Digit Recognition with CNN Step 2.mp4 68.28 MB
    16 - Project 15 Digit Recognition with CNN/82 - Digit Recognition with CNN Step 3.mp4 66.13 MB
    17 - Project 16 Breast Cancer Detection with CNN/83 - Breast Cancer Detection with CNN Step 1.mp4 102.54 MB
    17 - Project 16 Breast Cancer Detection with CNN/84 - Breast Cancer Detection with CNN Step 2.mp4 57.76 MB
    17 - Project 16 Breast Cancer Detection with CNN/85 - Breast Cancer Detection with CNN Step 3.mp4 53.72 MB
    18 - Project 17 Predicting the Bank Customer Satisfaction with CNN/86 - Predicting the Bank Customer Satisfaction Step 1.mp4 84.39 MB
    18 - Project 17 Predicting the Bank Customer Satisfaction with CNN/87 - Predicting the Bank Customer Satisfaction Step 2.mp4 151.29 MB
    18 - Project 17 Predicting the Bank Customer Satisfaction with CNN/88 - Predicting the Bank Customer Satisfaction Step 3.mp4 90.86 MB
    18 - Project 17 Predicting the Bank Customer Satisfaction with CNN/89 - Predicting the Bank Customer Satisfaction Step 4.mp4 63.41 MB
    19 - Project 18 Credit Card Fraud Detection with CNN/90 - Credit Card Fraud Detection with CNN Step 1.mp4 90.44 MB
    19 - Project 18 Credit Card Fraud Detection with CNN/91 - Credit Card Fraud Detection with CNN Step 2.mp4 107.8 MB
    19 - Project 18 Credit Card Fraud Detection with CNN/92 - Credit Card Fraud Detection with CNN Step 3.mp4 96.73 MB
    19 - Project 18 Credit Card Fraud Detection with CNN/93 - Credit Card Fraud Detection with CNN Step 4.mp4 62.81 MB
    20 - Project 19 IMDB Review Classification with RNN LSTM/94 - IMDB Review Classification with RNN LSTM Step 1.mp4 62.09 MB
    20 - Project 19 IMDB Review Classification with RNN LSTM/95 - IMDB Review Classification with RNN LSTM Step 2.mp4 57.47 MB
    20 - Project 19 IMDB Review Classification with RNN LSTM/96 - IMDB Review Classification with RNN LSTM Step 3.mp4 66.47 MB
    21 - Project 20 Multiclass Image Classification with RNN LSTM/97 - Multiclass Image Classification with RNN LSTM Step 1.mp4 57.12 MB
    21 - Project 20 Multiclass Image Classification with RNN LSTM/98 - Multiclass Image Classification with RNN LSTM Step 2.mp4 83.38 MB
    21 - Project 20 Multiclass Image Classification with RNN LSTM/99 - Multiclass Image Classification with RNN LSTM Step 3.mp4 69 MB
    22 - Project 21 Google Stock Price Prediction with RNN and LSTM/100 - Google Stock Price Prediction with RNN and LSTM Step 1.mp4 117.14 MB
    22 - Project 21 Google Stock Price Prediction with RNN and LSTM/101 - Google Stock Price Prediction with RNN and LSTM Step 2.mp4 58.11 MB
    22 - Project 21 Google Stock Price Prediction with RNN and LSTM/102 - Google Stock Price Prediction with RNN and LSTM Step 3.mp4 85.32 MB
    22 - Project 21 Google Stock Price Prediction with RNN and LSTM/103 - Google Stock Price Prediction with RNN and LSTM Step 4.mp4 120.31 MB
    22 - Project 21 Google Stock Price Prediction with RNN and LSTM/104 - Google Stock Price Prediction with RNN and LSTM Step 5.mp4 23.47 MB
    23 - Project 22 Transfer Learning for Cats and Dogs Classification/105 - Cats and Dogs Classification Step 1.mp4 81.56 MB
    23 - Project 22 Transfer Learning for Cats and Dogs Classification/106 - Cats and Dogs Classification Step 2.mp4 61.5 MB
    23 - Project 22 Transfer Learning for Cats and Dogs Classification/107 - Cats and Dogs Classification Step 3.mp4 81.46 MB
    23 - Project 22 Transfer Learning for Cats and Dogs Classification/108 - Cats and Dogs Classification Step 4.mp4 50.56 MB
    24 - Project 23 Movie Review Classification with NLTK/109 - Movie Review Classifivation with NLTK Step 1.mp4 134.81 MB
    24 - Project 23 Movie Review Classification with NLTK/110 - Movie Review Classifivation with NLTK Step 2.mp4 145.77 MB

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