Login using Social Account
Login using your credentials
Let's take a look at the numerical attributes of the training data:
Use the describe() function on the training data:
<< your code comes here >>.describe()
What is the mean of the age of the passengers?
What is the maximum fare given?
Note: Kindly copy the complete values you are getting after running the describe command instead of typing it.
describe
Taking you to the next exercise in seconds...
Stay here Next Exercise
Want to create exercises like this yourself? Click here.
Go Back to the Course
1 Titanic Machine Learning Project - About the dataset
2 Titanic Machine Learning Project - Step 1 - Import Dataset
3 Titanic Machine Learning Project - Download and Import the Titanic dataset
4 Titanic Machine Learning Project - Split into Train and Test Set
5 Titanic Machine Learning Project - Step 2 - Explore the Data
6 Titanic Machine Learning Project - Explore the Training Data
7 Titanic Machine Learning Project - Look at the Numerical Attributes
8 Titanic Machine Learning Project - Find Number of Female Passengers
9 Titanic Machine Learning Project - Step 3 - Create Pipelines
10 Titanic Machine Learning Project - Create Processing Pipeline
11 Titanic Machine Learning Project - Create Pipeline for the Numerical Attributes
12 Titanic Machine Learning Project - Create an Imputer for String Categorical Columns
13 Titanic Machine Learning Project - Build the Pipeline for the Categorical Attributes
14 Titanic Machine Learning Project - Join both the Pipelines
15 Titanic Machine Learning Project - Step 4 - Train SVC Classifier
16 Titanic Machine Learning Project - Train an SVC Classifier
17 Titanic Machine Learning Project - Predict using Test Set
18 Titanic Machine Learning Project - Step 5 - Evaluate SVC Model
19 Titanic Machine Learning Project - Evaluate our SVC Model
20 Titanic Machine Learning Project - Step 6 - Train Random Forest Classifier
21 Titanic Machine Learning Project - Train a RandomForest Classifier
Loading comments...