Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Dataframe Exploration | Time Series Essentials
Time Series Essentials
course content

Зміст курсу

Time Series Essentials

Dataframe Exploration

In Python, the shape attribute of a pandas DataFrame returns a tuple representing the dimensions of the DataFrame. The dtypes attribute returns the data types of the columns in the DataFrame. In Python, the dtypes attribute of a pandas DataFrame returns the data types of the columns in the DataFrame.

Methods description

  • .shape: This attribute contains a tuple representing the dimensions of the DataFrame, where the first element is the number of rows and the second element is the number of columns. It does not take any arguments;
  • .dtypes: This method contains a Series containing the data type of each column in the DataFrame. It does not take any arguments.

Завдання

Print the shape of the DataFrame and data types of all its columns.

Завдання

Print the shape of the DataFrame and data types of all its columns.

Mark tasks as Completed
Перейдіть на комп'ютер для реальної практикиПродовжуйте з того місця, де ви зупинились, використовуючи один з наведених нижче варіантів

Все було зрозуміло?

In Python, the shape attribute of a pandas DataFrame returns a tuple representing the dimensions of the DataFrame. The dtypes attribute returns the data types of the columns in the DataFrame. In Python, the dtypes attribute of a pandas DataFrame returns the data types of the columns in the DataFrame.

Methods description

  • .shape: This attribute contains a tuple representing the dimensions of the DataFrame, where the first element is the number of rows and the second element is the number of columns. It does not take any arguments;
  • .dtypes: This method contains a Series containing the data type of each column in the DataFrame. It does not take any arguments.

Завдання

Print the shape of the DataFrame and data types of all its columns.

Mark tasks as Completed
Перейдіть на комп'ютер для реальної практикиПродовжуйте з того місця, де ви зупинились, використовуючи один з наведених нижче варіантів
Секція 1. Розділ 3
AVAILABLE TO ULTIMATE ONLY
We're sorry to hear that something went wrong. What happened?
some-alt