Resample
In Python, the resample()
method is used to resample time series data to a different frequency. The method is typically used on a pandas DataFrame or Series with a time-based index, and it is available through the resample()
attribute of the DataFrame or Series.
The basic syntax for the resample()
method is as follows:
data.resample(rule)
Where rule
identigies the resampling rule, which defines the new frequency of the data. This can be a string or pandas
offset, such as 'D'
for daily, 'H'
for hourly, 'M'
for monthly, etc.
Swipe to start coding
- Resample to monthly frequency and get the mean of it using the
.mean()
method. - Print the variable.
Solução
Congratulations on completing your time series project! Your hard work and dedication have paid off. I am impressed with the results and am sure that your efforts will be valuable to the team. Keep up the great work!
Obrigado pelo seu feedback!
Pergunte à IA
Pergunte à IA
Pergunte o que quiser ou experimente uma das perguntas sugeridas para iniciar nosso bate-papo
Pergunte-me perguntas sobre este assunto
Resumir este capítulo
Mostrar exemplos do mundo real
Awesome!
Completion rate improved to 12.5
Resample
In Python, the resample()
method is used to resample time series data to a different frequency. The method is typically used on a pandas DataFrame or Series with a time-based index, and it is available through the resample()
attribute of the DataFrame or Series.
The basic syntax for the resample()
method is as follows:
data.resample(rule)
Where rule
identigies the resampling rule, which defines the new frequency of the data. This can be a string or pandas
offset, such as 'D'
for daily, 'H'
for hourly, 'M'
for monthly, etc.
Swipe to start coding
- Resample to monthly frequency and get the mean of it using the
.mean()
method. - Print the variable.
Solução
Congratulations on completing your time series project! Your hard work and dedication have paid off. I am impressed with the results and am sure that your efforts will be valuable to the team. Keep up the great work!
Obrigado pelo seu feedback!