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.
|
[TGx]Downloaded from torrentgalaxy.to .txt |
585B |
0 |
141B |
001 Bonus Lecture - Other Courses.html |
1.72KB |
001 Classification Problems - Introduction.en.srt |
2.73KB |
001 Classification Problems - Introduction.mp4 |
10.11MB |
001 Classification Trees - Problem Evaluation and Fitting a Logistic Regression.en.srt |
12.54KB |
001 Classification Trees - Problem Evaluation and Fitting a Logistic Regression.mp4 |
69.27MB |
001 Data Science Project - Taxi Trip Duration Project - Introduction.en.srt |
5.64KB |
001 Data Science Project - Taxi Trip Duration Project - Introduction.mp4 |
21.06MB |
001 Installing Libraries.en.srt |
14.02KB |
001 Installing Libraries.mp4 |
140.74MB |
001 Installing R.en.srt |
8.89KB |
001 Installing R.mp4 |
74.23MB |
001 Intro to Dplyr and Tibble Data Structure.en.srt |
7.82KB |
001 Intro to Dplyr and Tibble Data Structure.mp4 |
38.82MB |
001 Linear Regression - Introduction.en.srt |
1.76KB |
001 Linear Regression - Introduction.mp4 |
12.76MB |
001 Model Evaluation and Selection - Introduction.en.srt |
3.13KB |
001 Model Evaluation and Selection - Introduction.mp4 |
7.84MB |
001 Random Forest Intuition and Subsetting Data.en.srt |
10.41KB |
001 Random Forest Intuition and Subsetting Data.mp4 |
49.32MB |
001 Welcome to the Course!.en.srt |
17.62KB |
001 Welcome to the Course!.mp4 |
128.49MB |
002 Classification Problems Intuition - Why Linear Regression is unfit.en.srt |
15.63KB |
002 Classification Problems Intuition - Why Linear Regression is unfit.mp4 |
81.78MB |
002 Classification Trees - First Split and Gini Impurity Concept.en.srt |
18.15KB |
002 Classification Trees - First Split and Gini Impurity Concept.mp4 |
112.50MB |
002 Course Materials.html |
1.32KB |
002 Detailed Feedback.html |
1.19KB |
002 Example of a High Bias Model.en.srt |
15.18KB |
002 Example of a High Bias Model.mp4 |
88.85MB |
002 Exploratory Data Analysis - Loading Taxi Trip and Analyzing Outliers.en.srt |
12.02KB |
002 Exploratory Data Analysis - Loading Taxi Trip and Analyzing Outliers.mp4 |
68.78MB |
002 Filter and Pipe Format.en.srt |
9.00KB |
002 Filter and Pipe Format.mp4 |
51.64MB |
002 Fitting Different Decision Trees.en.srt |
12.81KB |
002 Fitting Different Decision Trees.mp4 |
85.88MB |
002 Installing R Studio.en.srt |
10.84KB |
002 Installing R Studio.mp4 |
90.03MB |
002 Loading Libraries.en.srt |
2.77KB |
002 Loading Libraries.mp4 |
27.06MB |
002 Loading the Data into R.en.srt |
5.67KB |
002 Loading the Data into R.mp4 |
33.02MB |
003 Building a Random Forest from Scratch with Three Estimators.en.srt |
10.88KB |
003 Building a Random Forest from Scratch with Three Estimators.mp4 |
73.81MB |
003 Calculating Sigmoid Function and Fitting a Logistic Regression.en.srt |
10.00KB |
003 Calculating Sigmoid Function and Fitting a Logistic Regression.mp4 |
56.35MB |
003 Classification Trees - Finding the Best Split with Minimum Gini Impurity.en.srt |
11.64KB |
003 Classification Trees - Finding the Best Split with Minimum Gini Impurity.mp4 |
82.77MB |
003 Example of a High Variance Model.en.srt |
18.86KB |
003 Example of a High Variance Model.mp4 |
132.19MB |
003 Exploratory Data Analysis - Removing Outliers.en.srt |
15.46KB |
003 Exploratory Data Analysis - Removing Outliers.mp4 |
106.40MB |
003 Final Notes.en.srt |
1.86KB |
003 Final Notes.mp4 |
13.80MB |
003 Glimpse and Lists as Columns.en.srt |
4.64KB |
003 Glimpse and Lists as Columns.mp4 |
32.98MB |
003 Let's start!.en.srt |
995B |
003 Let's start!.mp4 |
6.89MB |
003 Plotting Feature (Age) and Target (Income) Variables.en.srt |
5.64KB |
003 Plotting Feature (Age) and Target (Income) Variables.mp4 |
34.35MB |
004 Classification Trees - Fitting a Decision Tree using RPart.en.srt |
7.49KB |
004 Classification Trees - Fitting a Decision Tree using RPart.mp4 |
43.42MB |
004 Evaluating the Model on Unseen Data.en.srt |
19.55KB |
004 Evaluating the Model on Unseen Data.mp4 |
134.27MB |
004 Feature Engineering - Time Based Features.en.srt |
15.69KB |
004 Feature Engineering - Time Based Features.mp4 |
89.19MB |
004 Fitting a Random Line.en.srt |
6.72KB |
004 Fitting a Random Line.mp4 |
39.57MB |
004 Function Encapsulation and Multiple Arguments.en.srt |
4.42KB |
004 Function Encapsulation and Multiple Arguments.mp4 |
27.74MB |
004 Measuring the Accuracy of Each Trees and of the Ensemble Average.en.srt |
4.69KB |
004 Measuring the Accuracy of Each Trees and of the Ensemble Average.mp4 |
35.57MB |
004 Summary of Logistic Regression and Accuracy.en.srt |
10.96KB |
004 Summary of Logistic Regression and Accuracy.mp4 |
69.32MB |
005 Adjusting the Weight of our Linear Model.en.srt |
4.85KB |
005 Adjusting the Weight of our Linear Model.mp4 |
29.83MB |
005 Arrange and Mutate.en.srt |
10.00KB |
005 Arrange and Mutate.mp4 |
74.83MB |
005 Classification Trees - Adding more Thresholds and Visualizing Classification.en.srt |
7.97KB |
005 Classification Trees - Adding more Thresholds and Visualizing Classification.mp4 |
45.41MB |
005 Feature Engineering - Visualizing Trip Duration per Feature.en.srt |
8.67KB |
005 Feature Engineering - Visualizing Trip Duration per Feature.mp4 |
62.52MB |
005 Log-Loss Function Intuition.en.srt |
19.41KB |
005 Log-Loss Function Intuition.mp4 |
93.90MB |
005 Random Forest - R Package Implementation.en.srt |
8.37KB |
005 Random Forest - R Package Implementation.mp4 |
48.16MB |
005 Randomized Train and Test Split.en.srt |
16.84KB |
005 Randomized Train and Test Split.mp4 |
73.17MB |
006 Classification Trees - Tweaking Hyperparameters and Checking Accuracy.en.srt |
6.15KB |
006 Classification Trees - Tweaking Hyperparameters and Checking Accuracy.mp4 |
36.16MB |
006 Feature Engineering - Building Location Based Features (Manhattan and Euclidean).en.srt |
12.67KB |
006 Feature Engineering - Building Location Based Features (Manhattan and Euclidean).mp4 |
89.06MB |
006 Gradient Descent Intuition - Classification.en.srt |
12.48KB |
006 Gradient Descent Intuition - Classification.mp4 |
74.48MB |
006 Performance across Training and Test Data.en.srt |
20.75KB |
006 Performance across Training and Test Data.mp4 |
127.72MB |
006 Select and Distinct.en.srt |
6.31KB |
006 Select and Distinct.mp4 |
36.96MB |
006 Training our First Linear Model.en.srt |
6.84KB |
006 Training our First Linear Model.mp4 |
40.11MB |
007 Feature Engineering - Visualizing Correlation and Adding Features to our table.en.srt |
15.50KB |
007 Feature Engineering - Visualizing Correlation and Adding Features to our table.mp4 |
111.25MB |
007 Linear Regression Evaluation.en.srt |
18.01KB |
007 Linear Regression Evaluation.mp4 |
108.62MB |
007 Regression Metrics - Plotting the Residuals.en.srt |
17.91KB |
007 Regression Metrics - Plotting the Residuals.mp4 |
104.40MB |
007 Regression Trees - Intuition.en.srt |
15.47KB |
007 Regression Trees - Intuition.mp4 |
84.81MB |
007 Sample_N and Sample_Frac.en.srt |
4.23KB |
007 Sample_N and Sample_Frac.mp4 |
30.43MB |
007 Visualizing Log-Loss in 3 Dimensions.en.srt |
13.30KB |
007 Visualizing Log-Loss in 3 Dimensions.mp4 |
79.69MB |
008 Feature Engineering - Creating Weekday feature and Building Data Pipeline.en.srt |
16.74KB |
008 Feature Engineering - Creating Weekday feature and Building Data Pipeline.mp4 |
108.24MB |
008 Linear Regression Closed Form Solution.en.srt |
17.38KB |
008 Linear Regression Closed Form Solution.mp4 |
82.00MB |
008 Regression Metrics - MSE, MAE and RMSE.en.srt |
10.11KB |
008 Regression Metrics - MSE, MAE and RMSE.mp4 |
61.29MB |
008 Regression Trees - Calculating Residual Sum of Squares.en.srt |
6.28KB |
008 Regression Trees - Calculating Residual Sum of Squares.mp4 |
38.52MB |
008 Summarize and Group By.en.srt |
4.45KB |
008 Summarize and Group By.mp4 |
29.82MB |
009 Gradient Descent Intuition - Part 1.en.srt |
20.74KB |
009 Gradient Descent Intuition - Part 1.mp4 |
130.75MB |
009 Joining Dataframes.en.srt |
8.82KB |
009 Joining Dataframes.mp4 |
61.68MB |
009 Modelling - Preparing Data for Modelling.en.srt |
14.20KB |
009 Modelling - Preparing Data for Modelling.mp4 |
89.19MB |
009 Regression Metrics - R-Square Breakdown and MAPE.en.srt |
10.64KB |
009 Regression Metrics - R-Square Breakdown and MAPE.mp4 |
61.94MB |
009 Regression Trees - Finding the Best Split with Residual Sum of Squares.en.srt |
7.86KB |
009 Regression Trees - Finding the Best Split with Residual Sum of Squares.mp4 |
54.97MB |
010 Classification Metrics - Fitting Logistic Regression and Confusion Matrix Intro.en.srt |
16.64KB |
010 Classification Metrics - Fitting Logistic Regression and Confusion Matrix Intro.mp4 |
90.31MB |
010 Gradient Descent Intuition - Part 2.en.srt |
12.66KB |
010 Gradient Descent Intuition - Part 2.mp4 |
84.22MB |
010 Modelling - Fitting Linear Regression.en.srt |
10.31KB |
010 Modelling - Fitting Linear Regression.mp4 |
69.39MB |
010 Regression Trees - Fitting the Algorithm.en.srt |
8.53KB |
010 Regression Trees - Fitting the Algorithm.mp4 |
52.05MB |
010 Small Typo.html |
1.07KB |
011 Classification Metrics - TP, FP, TN, FN.en.srt |
4.80KB |
011 Classification Metrics - TP, FP, TN, FN.mp4 |
27.89MB |
011 Modelling - Training a Random Forest.en.srt |
18.44KB |
011 Modelling - Training a Random Forest.mp4 |
112.62MB |
011 Regression Trees - Comparing between Tree and Linear Model.en.srt |
17.57KB |
011 Regression Trees - Comparing between Tree and Linear Model.mp4 |
119.73MB |
011 Visualizing Gradient Descent.en.srt |
12.58KB |
011 Visualizing Gradient Descent.mp4 |
70.95MB |
012 Classification Metrics - Precision, Recall and F-Score.en.srt |
8.20KB |
012 Classification Metrics - Precision, Recall and F-Score.mp4 |
40.68MB |
012 Modelling - Caret Implementation and API.en.srt |
9.23KB |
012 Modelling - Caret Implementation and API.mp4 |
60.13MB |
012 Multivariate Linear Regression.en.srt |
19.41KB |
012 Multivariate Linear Regression.mp4 |
109.49MB |
013 Classification Metrics - Building ROC Curve.en.srt |
14.30KB |
013 Classification Metrics - Building ROC Curve.mp4 |
83.00MB |
013 Modelling - Building Custom Experiments _ Hyperparameter Tuning.en.srt |
7.96KB |
013 Modelling - Building Custom Experiments _ Hyperparameter Tuning.mp4 |
56.93MB |
014 Classification Metrics - ROCR Package and Area Under the Curve.en.srt |
9.15KB |
014 Classification Metrics - ROCR Package and Area Under the Curve.mp4 |
45.65MB |
014 Modelling - Evaluating Best Model.en.srt |
6.75KB |
014 Modelling - Evaluating Best Model.mp4 |
49.22MB |
015 Evaluating - Preparing New Data for Scoring.en.srt |
23.66KB |
015 Evaluating - Preparing New Data for Scoring.mp4 |
141.50MB |
016 Evaluating - Scoring New Data and Submitting do Kaggle.en.srt |
9.85KB |
016 Evaluating - Scoring New Data and Submitting do Kaggle.mp4 |
61.69MB |
1 |
574B |
10 |
764.90KB |
11 |
524.37KB |
12 |
391.27KB |
13 |
778.05KB |
14 |
613.86KB |
15 |
617.36KB |
16 |
103.99KB |
17 |
702.42KB |
18 |
993.89KB |
19 |
828.90KB |
2 |
630.71KB |
20 |
832.54KB |
21 |
961.06KB |
22 |
158.19KB |
23 |
122.41KB |
24 |
198.98KB |
25 |
796.53KB |
26 |
2.17KB |
27 |
232.26KB |
28 |
1021.83KB |
29 |
227.39KB |
3 |
832.27KB |
30 |
313.43KB |
31 |
178.41KB |
32 |
532.41KB |
33 |
791.00KB |
34 |
194.38KB |
35 |
854.90KB |
36 |
54.08KB |
37 |
626.70KB |
38 |
696.79KB |
39 |
746.30KB |
4 |
251.37KB |
40 |
221.12KB |
41 |
489.95KB |
42 |
56.61KB |
43 |
317.53KB |
44 |
331.48KB |
45 |
728.92KB |
46 |
889.41KB |
47 |
67.94KB |
48 |
669.67KB |
49 |
33.06KB |
5 |
527.10KB |
50 |
971.07KB |
51 |
366.72KB |
52 |
692.71KB |
53 |
796.69KB |
54 |
859.52KB |
55 |
354.83KB |
56 |
607.95KB |
57 |
592.16KB |
58 |
323.44KB |
59 |
907.89KB |
6 |
283.00KB |
60 |
438.58KB |
61 |
188.93KB |
62 |
488.26KB |
63 |
41.23KB |
64 |
863.24KB |
65 |
444.56KB |
66 |
668.08KB |
67 |
1005.33KB |
68 |
21.66KB |
69 |
580.10KB |
7 |
272.25KB |
70 |
173.22KB |
71 |
183.69KB |
72 |
115.20KB |
73 |
263.58KB |
74 |
966.04KB |
75 |
967.22KB |
76 |
201.55KB |
77 |
249.22KB |
78 |
912.28KB |
79 |
161.28KB |
8 |
392.96KB |
9 |
508.46KB |
external-assets-links.txt |
231B |
external-assets-links.txt |
120B |
TutsNode.com.txt |
63B |