I am trying to analyse average daily fluctuations in a measurement "X" over several weeks using pandas dataframes, however timestamps/datetimes etc. are proving particularly hellish to deal with. Having spent a good few hours trying to work this out my code is getting messier and messier and I don't think I'm any closer to a solution, hoping someone here can guide me in the right direction.

I have measured X at different times and on different days, saving the daily results to a dataframe which has the form:

    Timestamp(datetime64)         X 

0    2015-10-05 00:01:38          1
1    2015-10-05 06:03:39          4 
2    2015-10-05 13:42:39          3
3    2015-10-05 22:15:39          2

As the time the measurement is made at changes from day to day I decided to use binning to organise the data, and then work out averages and STD for each bin which I can then plot. My idea was to create a final dataframe with bins and the average value of X for the measurements, the 'Observations' column is just to aid understanding:

        Time Bin       Observations     <X>  

0     00:00-05:59      [ 1 , ...]       2.3
1     06:00-11:59      [ 4 , ...]       4.6
2     12:00-17:59      [ 3 , ...]       8.5
3     18:00-23:59      [ 2 , ...]       3.1

However I've run into difficulties with incompatibility between time, datetime, datetime64, timedelta and binning using pd.cut and pd.groupby, basically I feel like I'm making stabs in the dark with no idea as to the the 'right' way to approach this problem. The only solution I can think of is a row-by-row iteration through the dataframe but I'd really like to avoid having to do this.


Whenever I bin time series data by a time range, which seems to be what you are doing here, I just create an "hour of day" column and slice over that. Also, I normally set the index as datetime values...though that is not necessary here.

# assuming your "timestamp" column is labeled ts: 
df['hod'] = [r.hour for r in df.ts]

# now you can calculate stats for each bin
ave = df[ (df.hod>=0) & (df.hod<6) ].mean()

I would think there is a method of using df.resample here, but with the poorly defined starting/ending points in your time series I think this may require more attention than the above method.

Is this along the lines of what you were wanting?


Not sure I have the best answer but I think it works anyway.
First, I would convert the datetime64 to datetime using this post for example : Converting between datetime, Timestamp and datetime64

Then, if we assume that your first column has datetime and is called TimeStamp, I would do something like this :

def bin_f(x):
    if x.time() < datetime.time(6):
        return "00:00-05:59"
    elif x.time() < datetime.time(12):
        return "06:00-11:59"
    elif x.time() < datetime.time(18):
        return "12:00-17:59"
        return "18:00-23:59"

df["Bin"] = df["TimeStamp"].apply(bin_f)
grouped = df.groupby("Bin")

With X being the name of your column.


I found Mathiou's response helpful for my purpose, but modified it as follows:

def bin_f(x):
    h = x.time()
    if h < 6:
        return "00:00-05:59"
    elif h < 12:
        return "06:00-11:59"
    elif h < 18:
        return "12:00-17:59"
        return "18:00-23:59"

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