Pandas Time Series Resampling and Interpolation: Difference between revisions
Jump to navigation
Jump to search
Line 5: | Line 5: | ||
This applies to time series. | This applies to time series. | ||
To interpolate, resample at the desired frequency with <code>resample()</code>, and then call <code>interpolate()</code>. <font color=darkkhaki>Instead of interpolation, the new elements can be forward filled with <code>pad()</code> or back filled with <code>bfill()</code>, or filled with mean() values, but in that case we get NaNs.</ | To interpolate, resample at the desired frequency with <code>resample()</code>, and then call <code>interpolate()</code>. <font color=darkkhaki>Instead of interpolation, the new elements can be forward filled with <code>pad()</code> or back filled with <code>bfill()</code>, or filled with mean() values, but in that case we get NaNs.</font> | ||
The object must have a datetime-like index (<code>DatetimeIndex</code>, <code>PeriodIndex</code>, <code>TimedeltaIndex</code>) or the caller must pass the label of a date time-like series/index. | The object must have a datetime-like index (<code>DatetimeIndex</code>, <code>PeriodIndex</code>, <code>TimedeltaIndex</code>) or the caller must pass the label of a date time-like series/index. |
Revision as of 02:27, 21 October 2023
Internal
Overview
This applies to time series.
To interpolate, resample at the desired frequency with resample()
, and then call interpolate()
. Instead of interpolation, the new elements can be forward filled with pad()
or back filled with bfill()
, or filled with mean() values, but in that case we get NaNs.
The object must have a datetime-like index (DatetimeIndex
, PeriodIndex
, TimedeltaIndex
) or the caller must pass the label of a date time-like series/index.
s.resample("2H").interpolate()
s.resample("1D").interpolate()