Torrent Info
Title R for Data Science Your First Step as a Data Scientist
Category
Size 5.42GB
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.
[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
Distribution statistics by country
Singapore (SG) 2
United States (US) 2
Italy (IT) 1
Indonesia (ID) 1
Hungary (HU) 1
Total 7
IP List List of IP addresses which were distributed this torrent