I'm writing a program that checks an excel file and if today's date is in the excel file's date column, I parse it

I'm using:

cur_date = datetime.today()

for today's date. I'm checking if today is in the column with:

bool_val = cur_date in df['date'] #evaluates to false

I do know for a fact that today's date is in the file in question. The dtype of the series is datetime64[ns]

Also, I am only checking the date itself and not the timestamp afterwards, if that matters. I'm doing this to make the timestamp 00:00:00:

cur_date = datetime.strptime(cur_date.strftime('%Y_%m_%d'), '%Y_%m_%d')

And the type of that object after printing is datetime as well


4 Answers 4


For anyone who also stumbled across this when comparing a dataframe date to a variable date, and this did not exactly answer your question; you can use the code below.

Instead of:

self.df["date"] = pd.to_datetime(self.df["date"])

You can import datetime and then add .dt.date to the end like:

self.df["date"] = pd.to_datetime(self.df["date"]).dt.date
  • I think in modern pandas you need just .date when to_datetime returns a Timestamp
    – Tommy
    Commented Nov 30, 2022 at 21:22

You can use




But both of those give the date and time for 'now'.

Try this instead:




You could have also passed the datetime object to pandas.to_datetime but I like the other option more.


Pandas also has a Timedelta object

pd.Timestamp('now').floor('D') + pd.Timedelta(-3, unit='D')

Or you can use the offsets module

pd.Timestamp('now').floor('D') + pd.offsets.Day(-3)

To check for membership, try one of these

cur_date in df['date'].tolist()


  • 1
    What if I was checking for 3 days before the current date? I did today = today - timedelta(3) when it was a datetime object Commented Aug 13, 2018 at 16:58
  • 3
    pd.Timestamp('today').floor('D') - pd.offsets.Day(3)
    – piRSquared
    Commented Aug 13, 2018 at 16:59
  • Is there a resource on what exactly to_datetime will accept? Does it just boil down to a case of trial-and-error/read the source? The docs just seem to say "arg : integer, float, string, datetime, list, tuple, 1-d array, Series" which is... kinda extensive.
    – roganjosh
    Commented Aug 13, 2018 at 17:01
  • That about sums it up. By resource, do you mean a doc that demonstrates all of the above?
    – piRSquared
    Commented Aug 13, 2018 at 17:03
  • @piRSquared yeah, maybe I was hoping for too much, but my search drew nothing so I threw in a last-ditch question to see if you knew a specific resource.
    – roganjosh
    Commented Aug 13, 2018 at 17:03

When converting datetime64 type using pd.Timestamp() it is important to note that you should compare it to another timestamp type. (not a datetime.date type)

Convert a date to numpy.datetime64

date = '2022-11-20 00:00:00'
date64 = np.datetime64(date)

Seven days ago - timestamp type

sevenDaysAgoTs = (pd.to_datetime('today')-timedelta(days=7))

convert date64 to Timestamp and see if it was in the last 7 days

print(pd.Timestamp(pd.to_datetime(date64)) >= sevenDaysAgoTs)

  • I added this answer because In future versions Timestamp and datetime.date will be considered non-comparable. FutureWarning: Comparison of Timestamp with datetime.date is deprecated in order to match the standard library behavior. In a future version these will be considered non-comparable. Commented Nov 23, 2022 at 20:20
  • Thanks, this was the only thing that worked for me. Commented Oct 11, 2023 at 10:34

Based on logic presented by JerryMcDonald.dev in his answer

If reading this after comparison between Timestamp and datetime.date has been deprecated, you can apply numpy.datetime64 to your timestamp column to make it comparable with a datetime object:

import numpy as np
from datetime import datetime, timedelta

one_day_ago_timestamp = datetime.today() - timedelta(days=1)
past_day_data = data[pd.Series(map(np.datetime64, data.timestamp_col)) >= one_day_ago_timestamp]

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