12.55 GB | 00:16:53 | mp4 | 1280X720 | 16:9
Genre:eLearning |Language:English
Files Included :
1 -Course Introduction (9.19 MB)
2 -Machine Learning Introduction (31.98 MB)
3 -Install Anaconda and Python on Windows (54.45 MB)
4 -Install Anaconda in Linux (23.58 MB)
5 -Jupyter Notebook Introduction and Keyboard Shortcuts (102.94 MB)
1 -Logistic Regression Introduction (20.23 MB)
10 -Data Types Correction and Mapping (67.11 MB)
11 -One-Hot Encoding (61.51 MB)
12 -Train Test Split (54.19 MB)
13 -Model Building Training and Evaluation (76.12 MB)
14 -Feature Selection - Recursive Feature Elimination (140.86 MB)
15 -Accuracy, F1-Score, P, R, AUC ROC Curve Part 1 (43.43 MB)
16 -Accuracy, F1-Score, P, R, AUC ROC Curve Part 2 (51.75 MB)
17 -Accuracy, F1-Score, P, R, AUC ROC Curve Part 3 (57.37 MB)
18 -ROC Curve and AUC Part 1 (78.28 MB)
19 -ROC Curve and AUC Part 2 (51.29 MB)
2 -Sigmoid Function (11.59 MB)
20 -ROC Curve and AUC Part 3 (73.49 MB)
3 -Decision Boundary (10.72 MB)
4 -Titanic Dataset Introduction (56.23 MB)
5 -Dataset Loading (65.44 MB)
6 -EDA - Heatmap and Density Plot (49.25 MB)
7 -Missing Age Imputation Part 1 (52.04 MB)
8 -Missing Age Imputation Part 2 (90.37 MB)
9 -Imputation of Missing Embark Town (67.08 MB)
1 -SVM Introduction (25.08 MB)
10 -Linear SVM Model on Scaled Feature (56.58 MB)
11 -Polynomial, Sigmoid, RBF Kernels in SVM (37.36 MB)
2 -SVM Kernels (28.4 MB)
3 -Breast Cancer Dataset Introduction (63.93 MB)
4 -Dataset Loading (37.67 MB)
5 -Cancer Data Visualization Part 1 (56.64 MB)
6 -Cancer Data Visualization Part 2 (114.49 MB)
7 -Data Standardization (45.47 MB)
8 -Train Test Split (37.17 MB)
9 -Linear SVM Model Building and Training (76.09 MB)
1 -Cross Validation Regularization and Hyperparameter Optimization Introduction (28.35 MB)
10 -K-Fold and LeaveOneOut Cross Validation (66.9 MB)
11 -Grid Search Hypyerparameter Tuning (80.81 MB)
12 -Random Grid Search Hyperparameter Tuning (29.11 MB)
2 -ML Model Training Process (39.91 MB)
3 -Breast Cancer Dataset Loading (59.77 MB)
4 -Data Visualization (72.34 MB)
5 -Train Test Split (40.14 MB)
6 -Linear Regression and SVM Model Training (35.46 MB)
7 -Regularization Introduction (56.61 MB)
8 -Manual Hyperparameter Adjustment (74.24 MB)
9 -Types of Cross Validation (42.03 MB)
1 -KNN Introduction (26.04 MB)
2 -How KNN Works (43.66 MB)
3 -Wine Dataset Laoding (42.01 MB)
4 -Data Visualization (66.7 MB)
5 -Train Test Split and Standardization (45.81 MB)
6 -KNN Model Building and Training (18.98 MB)
7 -Hyperparameter Tuning (53.95 MB)
8 -Pros and Cons of KNN (10.78 MB)
1 -Decision Tree Introduction (34.27 MB)
10 -Diabetes Dataset Loading (66.59 MB)
11 -Decision Tree Regression (50.12 MB)
2 -How Decision Tree Works (43.97 MB)
3 -What is Attribute Selection Measures - ASM (42.75 MB)
4 -Dataset Loading (38.69 MB)
5 -Dataset Visualization (64.24 MB)
6 -Train Test Split (20.36 MB)
7 -Model Training and Evaluation (27.2 MB)
8 -Tree Visualization (36.16 MB)
9 -Hyperparameter Optimization (33.56 MB)
1 -Ensemble Learning Bagging and Boosting Introduction (37.24 MB)
2 -Random Forest Introduction (35.52 MB)
3 -Dataset Introduction (34.1 MB)
4 -Data Visualization (74.34 MB)
5 -Train Test Split and One-Hot Encoding (22.83 MB)
6 -Random Forest Classifier Training and Evaluation (59.5 MB)
7 -Data Loading for Random Forest Regression (66.64 MB)
8 -Random Forest Regression Model Building (19.57 MB)
9 -Hyperparameter Optimization (36.81 MB)
1 -Boosting Algorithms Introduction (55.49 MB)
10 -CatBoost Hyperparameter Optimization (76.8 MB)
2 -Heart-Disease Dataset Understanding (84.2 MB)
3 -Data Visualization Part 1 (73.81 MB)
4 -Train Test Split (30.59 MB)
5 -AdaBoost Model Training (46.49 MB)
6 -AdaBoost Hyperparameter Tuning (28.79 MB)
7 -XGBoost Introduction (29.7 MB)
8 -XGBoost Model Training and Hyperparameter Tuning (63.96 MB)
9 -CatBoost Model Training (39.91 MB)
1 -Introduction to Unsupervised Learning (34.82 MB)
10 -Clusters Visualization (78.18 MB)
11 -Decision Boundary Visualization (139.93 MB)
12 -Putting Everything Together (117.18 MB)
13 -Selecting Optimum Number of Clusters (55.51 MB)
14 -Clustering for Annual Income vs Spending Score (53.84 MB)
15 -3D Clustering Part 1 (36.82 MB)
16 -3D Clustering Part 2 (62.67 MB)
2 -Introduction to K-Means (43.81 MB)
3 -How to Choose Best Number of Clusters (50.48 MB)
4 -K-Means Clustering with Scikit-Learn (28.19 MB)
5 -Application of Unsupervised Learning (39.91 MB)
6 -Customers Data Loading (34.74 MB)
7 -Data Visualization (76.06 MB)
8 -K-Means Clustering Data Preparation (55.23 MB)
9 -K-Means Clustering for Age and Spending Score (40.35 MB)
1 -DBSCAN Introduction (46.82 MB)
2 -Generate Dataset (19.22 MB)
3 -DBSCAN Clustering (46.97 MB)
4 -Spectral Clustering (59.31 MB)
5 -Spectral Clustering Coding (30.05 MB)
1 -Hierarchical Clustering Introduction (23.42 MB)
2 -Important Terms in Hierarchical Clustering (26.96 MB)
3 -Stock Market Data Loading (47.29 MB)
4 -Hierarchical Clustering Coding (31.63 MB)
1 -Arithmatic Operations in Python (40.76 MB)
10 -10 Set (29.47 MB)
11 -Dictionary (31.28 MB)
12 -Conditional Statements - If Else (38.27 MB)
13 -While Loops (23.25 MB)
14 -For Loops (32.89 MB)
15 -Functions (43.03 MB)
16 -Working with Date and Time (61.33 MB)
17 -File Handling Read and Write (65.61 MB)
2 -Data Types in Python (28.27 MB)
3 -Variable Casting (21.86 MB)
4 -Strings Operation in Python (39.04 MB)
5 -String Slicing in Python (23.54 MB)
6 -String Formatting and Modification (29.84 MB)
7 -Boolean Variables and Evaluation (15.43 MB)
8 -List in Python (37.54 MB)
9 -Tuple in Python (27.74 MB)
1 -PCA Introduction (21.49 MB)
10 -Classification Comparison with and without PCA (51.27 MB)
2 -How PCA is Done (56.9 MB)
3 -MNIST Dataset Loading and Understanding (56.22 MB)
4 -PCA Applications (10.94 MB)
5 -PCA Coding (63.63 MB)
6 -PCA Compression Analysis (25.54 MB)
7 -Data Reconstruction (104.85 MB)
8 -Choosing Right Number of the Principle Components (56.42 MB)
9 -Data Reconstruction with 95% Information (34.11 MB)
1 -What is Neuron (20.86 MB)
10 -Customer Churn Dataset Loading (25.98 MB)
11 -Data Visualization Part 1 (50.23 MB)
12 -Data Visualization Part 2 (107.27 MB)
13 -Data Preprocessing (36.39 MB)
14 -Import Neural Networks APIs (37.02 MB)
15 -How to Get Input Shape and Class Weights (21.17 MB)
16 -Neural Network Model Building (60.89 MB)
17 -Model Summary Explanation (48.79 MB)
18 -Model Training (56.3 MB)
19 -Model Evaluation (16.1 MB)
2 -Multi-Layer Perceptron (55.15 MB)
20 -Model Save and Load (23.64 MB)
21 -Prediction on Real-Life Data (50.9 MB)
3 -Shallow vs Deep Neural Networks (13.87 MB)
4 -Activation Function (40.35 MB)
5 -What is Back Propagation (79.42 MB)
6 -Optimizers in Deep Learning (52.04 MB)
7 -Steps to Build Neural Network (64.09 MB)
8 -Install TensorfFlow in Windows (67.97 MB)
9 -Install TensorFlow in Linux (69.46 MB)
1 -Introduction to NLP (22.55 MB)
10 -Pair Plot (41.94 MB)
11 -Train Test Split (8.74 MB)
12 -TF-IDF Vectorization (34.68 MB)
13 -Model Evaluation and Prediction on Real Data (22.25 MB)
14 -Model Load and Store (22.06 MB)
2 -What are Key NLP Techniques (39.55 MB)
3 -Overview of NLP Tools (64.52 MB)
4 -Common Challenges in NLP (19.14 MB)
5 -Bag of Words - The Simples Word Embedding Technique (27.29 MB)
6 -Term Frequency - Inverse Document Frequency (TF-IDF) (20.01 MB)
7 -Load Spam Dataset (18.56 MB)
8 -Text Preprocessing (45.87 MB)
9 -Feature Engineering (33.71 MB)
1 -Numpy Introduction - Create Numpy Array (35.9 MB)
10 -Concatenation and Sorting (36.47 MB)
2 -Array Indexing and Slicing (48.72 MB)
3 -Numpy Data Types (52.86 MB)
4 -np nan and np inf (24.89 MB)
5 -Statistical Operations (18.84 MB)
6 -Shape(), Reshape(), Ravel(), Flatten() (20.53 MB)
7 -arange(), linspace(), range(), random(), zeros(), and ones() (55.01 MB)
8 -Where (28.54 MB)
9 -Numpy Array Read and Write (50.46 MB)
1 -Pandas Series Introduction Part 1 (33.66 MB)
10 -Arithmetic Operations (22.96 MB)
11 -NULL Values Handling (42.24 MB)
12 -DataFrame Data Filtering Part 1 (63.8 MB)
13 -DataFrame Data Filtering Part 2 (47.11 MB)
14 -14 Handling Unique and Duplicated Values (51.21 MB)
15 -Retrive Rows by Index Label (46.05 MB)
16 -Replace Cell Values (35.78 MB)
17 -Rename, Delete Index and Columns (31.11 MB)
18 -Lambda Apply (60.55 MB)
19 -Pandas Groupby (67.19 MB)
2 -Pandas Series Introduction Part 2 (22.38 MB)
20 -Groupby Multiple Columns (55.8 MB)
21 -Merging, Joining, and Concatenation Part 1 (16.45 MB)
22 -Concatenation (28.93 MB)
23 -Merge and Join (66.77 MB)
24 -Working with Datetime (57.38 MB)
25 -Read Stock Data from YAHOO Finance (28.41 MB)
3 -Pandas Series Read From File (30.77 MB)
4 -Apply Pythons Built in Functions to Series (48.34 MB)
5 -apply() for Pandas Series (33.21 MB)
6 -Pandas DataFrame Creation from Scratch (31.23 MB)
7 -Read Files as DataFrame (56.15 MB)
8 -Columns Manipulation Part 1 (45.44 MB)
9 -Columns Manipulation Part 2 (47.52 MB)
1 -Matplotlib Introduction (31.99 MB)
10 -Subplot Part 2 (70.94 MB)
11 -Subplots (65.68 MB)
12 -Creating a Zoomed Sub-Figure of a Figure (59.32 MB)
13 -xlim and ylim, legend, grid, xticks, yticks (42.7 MB)
14 -Pie Chart and Figure Save (58.17 MB)
2 -Matplotlib Line Plot Part 1 (51.84 MB)
3 -IMDB Movie Revenue Line Plot Part 1 (29.57 MB)
4 -IMDB Movie Revenue Line Plot Part 2 (23.14 MB)
5 -Line Plot Rank vs Runtime Votes Metascore (23.39 MB)
6 -Line Styling and Putting Labels (40.98 MB)
7 -Scatter, Bar, and Histogram Plot Part 1 (53.31 MB)
8 -Scatter, Bar, and Histogram Plot Part 2 (66.37 MB)
9 -Subplot Part 1 (58.66 MB)
1 -Introduction (39.41 MB)
10 -cat plot (27.78 MB)
11 -Box Plot (10.55 MB)
12 -Boxen Plot (20.7 MB)
13 -Violin Plot (29.95 MB)
14 -Bar Plot (17.03 MB)
15 -Point Plot (9.29 MB)
16 -Joint Plot (11.58 MB)
17 -Pair Plot (24.11 MB)
18 -Regression Plot (13 MB)
19 -Controlling Ploted Figure Aesthetics (31.74 MB)
2 -Scatter Plot (22.14 MB)
3 -Hue, Style and Size Part1 (10.8 MB)
4 -Hue, Style and Size Part2 (26.82 MB)
5 -Line Plot Part 1 (17.45 MB)
6 -Line Plot Part 2 (50.77 MB)
7 -Line Plot Part 3 (42.31 MB)
8 -Subplots (31.67 MB)
9 -sns lineplot() and sns scatterplot() (28.01 MB)
1 -IRIS Dataset Introduction (26.62 MB)
10 -Hexbin Plot (41.18 MB)
11 -Pie Chart (81.36 MB)
12 -Scatter Matrix and Subplots (62.6 MB)
2 -Load IRIS Dataset (36.55 MB)
3 -Line Plot (59 MB)
4 -Secondary Axis (66.78 MB)
5 -Bar and Barh Plot (51.79 MB)
6 -Stacked Bar Plot (50.93 MB)
7 -Histogram (78.36 MB)
8 -Box Plot (44.29 MB)
9 -Area and Scatter Plot (74.67 MB)
1 -Introduction to Plotly and Cufflinks (31.09 MB)
2 -Plotly Line Plot (69.66 MB)
3 -Scatter Plot (27.96 MB)
4 -Stacked Bar Plot (81.62 MB)
5 -Box and Area Plot (30.55 MB)
6 -3D Plot (63.22 MB)
7 -Hist Plot, Bubble Plot and Heatmap (78.68 MB)
1 -Linear Regression Introduction (33.36 MB)
10 -Exploratory Data Analysis- Pair Plot (81.09 MB)
11 -Exploratory Data Analysis- Hist Plot (33.54 MB)
12 -Exploratory Data Analysis- Heatmap (46.33 MB)
13 -Train Test Split and Model Training (44.88 MB)
14 -How to Evaluate the Regression Model Performance (62.15 MB)
15 -Plot True House Price vs Predicted Price (44.41 MB)
16 -Plotting Learning Curves Part 1 (37.33 MB)
17 -Plotting Learning Curves Part 2 (55.97 MB)
18 -Machine Learning Model Interpretability- Residuals Plot (35.28 MB)
19 -Machine Learning Model Interpretability- Prediction Error Plot (23.3 MB)
2 -Regression Examples (33.82 MB)
3 -Types of Linear Regression (42.14 MB)
4 -Assessing the performance of the model (37.53 MB)
5 -Bias-Variance tradeoff (52.56 MB)
6 -What is sklearn and train-test-split (39.68 MB)
7 -Python Package Upgrade and Import (36.03 MB)
8 -Load Boston Housing Dataset (32.73 MB)
9 -Dataset Analysis (52.5 MB)]
Screenshot
FileAxa
RapidGatorhttps://fileaxa.com/ta0y7t4q8bfn/Ud...ta_Science_for_Beginners_in_Python_.part1.rar
https://fileaxa.com/92ps70bfjm1g/Ud...ta_Science_for_Beginners_in_Python_.part2.rar
https://fileaxa.com/heye2pbaz8e4/Ud...ta_Science_for_Beginners_in_Python_.part3.rar
https://fileaxa.com/96l51mgfygi3/Ud...ta_Science_for_Beginners_in_Python_.part4.rar
https://fileaxa.com/dxgxqynn88g0/Ud...ta_Science_for_Beginners_in_Python_.part5.rar
https://fileaxa.com/cit00wanb0ji/Ud...ta_Science_for_Beginners_in_Python_.part6.rar
https://fileaxa.com/jaug9g5f3fci/Ud...ta_Science_for_Beginners_in_Python_.part7.rar
TurboBithttps://rapidgator.net/file/58c773d...ta_Science_for_Beginners_in_Python_.part1.rar
https://rapidgator.net/file/fac2542...ta_Science_for_Beginners_in_Python_.part2.rar
https://rapidgator.net/file/93d0853...ta_Science_for_Beginners_in_Python_.part3.rar
https://rapidgator.net/file/fc0bd93...ta_Science_for_Beginners_in_Python_.part4.rar
https://rapidgator.net/file/4e304ca...ta_Science_for_Beginners_in_Python_.part5.rar
https://rapidgator.net/file/eeac266...ta_Science_for_Beginners_in_Python_.part6.rar
https://rapidgator.net/file/2d7ca1e...ta_Science_for_Beginners_in_Python_.part7.rar
https://turbobit.net/ovwayv5plh4d/U...ience_for_Beginners_in_Python_.part1.rar.html
https://turbobit.net/8b9dnuxw5x1k/U...ience_for_Beginners_in_Python_.part2.rar.html
https://turbobit.net/vsh0bb8oo1h6/U...ience_for_Beginners_in_Python_.part3.rar.html
https://turbobit.net/unw7n3icyorc/U...ience_for_Beginners_in_Python_.part4.rar.html
https://turbobit.net/orz1oh6rbuxd/U...ience_for_Beginners_in_Python_.part5.rar.html
https://turbobit.net/zdkczdjbddol/U...ience_for_Beginners_in_Python_.part6.rar.html
https://turbobit.net/7me89srxmn8k/U...ience_for_Beginners_in_Python_.part7.rar.html
Feel free to post your Udemy 2025 Machine Learning Data Science for Beginners in Python Free Download, torrent, subtitles, free download, quality, NFO, Dangerous Udemy 2025 Machine Learning Data Science for Beginners in Python Torrent Download, free premium downloads movie, game, mp3 download, crack, serial, keygen.