


How to Extract Only the Date Component from a Pandas Datetime Series?
Nov 28, 2024 pm 04:40 PMParsing Dates with pandas: Keeping Only the Date Component
When using pandas.to_datetime to parse dates, pandas by default represents them as datetime64[ns], even if the dates are daily-only. This can lead to undesired appending of "00:00:00" when writing the data to CSV.
Converting to datetime.date or datetime64[D]
To convert the dates to datetime.date or datetime64[D], there are a few options:
- Looping Through Elements: Manually converting each element using dt.to_datetime().date() is possible but slow for large datasets.
- Using .dt Attribute: Since Pandas version 0.15.0, you can use the .dt attribute to access only the date component:
df['just_date'] = df['dates'].dt.date
This will return datetime.date objects with an object dtype.
- Normalization: To keep the dtype as datetime64, you can normalize the dates:
df['normalised_date'] = df['dates'].dt.normalize()
This will set the time component to midnight (00:00:00), but the display will still show only the date value.
Precision Specification:
pandas.to_datetime does not yet support precision specification. However, the aforementioned methods provide alternative ways to obtain the desired date representation.
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